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        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5C: energy/heat transfer lab</text>

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      <text>calculate enthalpy</text>
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      <text><![CDATA[<p></p><p>In a calorimetry experiment, {mol} moles of a certain reactant are used. This causes the temperature of the surroundings ({g} grams of water) to change from a starting temperature of {Ti}&nbsp;°C to a final temperature of {Tf}&nbsp;°C. What is the enthalpy change (ΔH) of this reaction?</p><p>The specific heat capacity of liquid water is 4.184 J/g·ºC</p><p><b>INCLUDE UNITS</b>&nbsp;in your answer, and make sure your answer has the&nbsp;<b>CORRECT SIGN</b>.</p><p></p>]]></text>
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    <text>(4.184*{g}*({Ti}-{Tf}))/{mol}</text>
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    <text>(4.184*{g}*({Tf}-{Ti}))/{mol}</text>
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<text><![CDATA[<p>You gave the correct value, but the wrong sign.<br></p>]]></text>
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           <number>94</number>
           <value>0.030</value>
        </dataset_item>
        <dataset_item>
           <number>95</number>
           <value>0.053</value>
        </dataset_item>
        <dataset_item>
           <number>96</number>
           <value>0.068</value>
        </dataset_item>
        <dataset_item>
           <number>97</number>
           <value>0.071</value>
        </dataset_item>
        <dataset_item>
           <number>98</number>
           <value>0.066</value>
        </dataset_item>
        <dataset_item>
           <number>99</number>
           <value>0.087</value>
        </dataset_item>
        <dataset_item>
           <number>100</number>
           <value>0.072</value>
        </dataset_item>
    </dataset_items>
    <number_of_items>100</number_of_items>
</dataset_definition>
</dataset_definitions>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5A: equations/balancing</text>

    </category>
  </question>

<!-- question: 112  -->
  <question type="gapselect">
    <name>
      <text>balancing 1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed.&nbsp;I recommend you solve it on paper first before entering your answer.</p>
<p>[[2]]AgNO<sub>3</sub> + [[1]]MgCl<sub>2</sub>&nbsp;→ [[2]]AgCl + [[1]]Mg(NO<sub>3</sub>)<sub>2</sub></p><p>What type of reaction is this? [[10]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4585  -->
  <question type="gapselect">
    <name>
      <text>balancing 10</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]Mg(OH)<sub>2</sub> + [[2]]HCl&nbsp;→ [[1]]MgCl<sub>2</sub> + [[2]]H<sub>2</sub>O<sub><br></sub></p><p>What type of reaction is this? [[10]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4587  -->
  <question type="gapselect">
    <name>
      <text>balancing 11</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[4]]Mg&nbsp;+ [[3]]N<sub>2</sub> → [[2]]Mg<sub>2</sub>N<sub>3</sub><sub><br></sub></p><p>What type of reaction is this? [[7]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4586  -->
  <question type="gapselect">
    <name>
      <text>balancing 12</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]Fe<sub>2</sub>O<sub>3</sub> + [[2]]Al&nbsp;→ [[2]]Fe&nbsp;+ [[1]]Al<sub>2</sub>O<sub>3</sub><sub><br></sub></p><p>What type of reaction is this? [[9]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4588  -->
  <question type="gapselect">
    <name>
      <text>balancing 13</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]C<sub>2</sub>H<sub>4</sub>&nbsp;+ [[3]]O<sub>2</sub> → [[2]]CO<sub>2</sub> + [[2]]H<sub>2</sub>O<sub><br></sub></p><p>What type of reaction is this? [[11]]<br></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4589  -->
  <question type="gapselect">
    <name>
      <text>balancing 14</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[2]]CH<sub>3</sub>OH&nbsp;+ [[3]]O<sub>2</sub> → [[2]]CO<sub>2</sub> + [[4]]H<sub>2</sub>O<sub><br></sub></p><p>What type of reaction is this? [[11]]<br></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 113  -->
  <question type="gapselect">
    <name>
      <text>balancing 2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed.&nbsp;I recommend you solve it on paper first before entering your answer.</p>
<p>[[2]]AlCl<sub>3</sub>&nbsp;+ [[3]]Na<sub>2</sub>O&nbsp;→ [[6]]NaCl + [[1]]Al<sub>2</sub>O<sub>3</sub><sub><br></sub></p><p>What type of reaction is this? [[10]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 114  -->
  <question type="gapselect">
    <name>
      <text>balancing 3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]Mg<sub>3</sub>N<sub>2</sub>&nbsp;+ [[3]]H<sub>2</sub>O&nbsp;→ [[3]]MgO + [[2]]NH<sub>3</sub><sub><br></sub></p><p>What type of reaction is this? [[10]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 115  -->
  <question type="gapselect">
    <name>
      <text>balancing 4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]Zn&nbsp;+ [[2]]HCl&nbsp;→ [[1]]ZnCl<sub>2</sub> + [[1]]H<sub>2</sub><sub><br></sub></p><p>What type of reaction is this? [[9]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 116  -->
  <question type="gapselect">
    <name>
      <text>balancing 5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]CaO&nbsp;+ [[1]]CO<sub>2</sub> → [[1]]CaCO<sub>3</sub><sub><br></sub></p><p>What type of reaction is this? [[7]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 117  -->
  <question type="gapselect">
    <name>
      <text>balancing 6</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[2]]NH<sub>3</sub> + [[3]]I<sub>2</sub> → [[2]]NI<sub>3</sub> + [[3]]H<sub>2</sub><sub><br></sub></p><p>What type of reaction is this? [[9]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4541  -->
  <question type="gapselect">
    <name>
      <text>balancing 7</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]C<sub>4</sub>H<sub>9</sub>OH&nbsp;+ [[6]]O<sub>2</sub> → [[4]]CO<sub>2</sub> + [[5]]H<sub>2</sub>O<sub><br></sub></p><p>What type of reaction is this? [[11]]<br></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4583  -->
  <question type="gapselect">
    <name>
      <text>balancing 8</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[2]]Na<sub>3</sub>PO<sub>4</sub> + [[3]]CaSO<sub>4</sub>&nbsp;→ [[1]]Ca<sub>3</sub>(PO<sub>4</sub>)<sub>2</sub> + [[3]]Na<sub>2</sub>SO<sub>4</sub><sub><br></sub></p><p>What type of reaction is this? [[10]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 4584  -->
  <question type="gapselect">
    <name>
      <text>balancing 9</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Select the correct coefficients to balance the equation. Do not leave any blank; select "1" if no coefficient is needed. I recommend you solve it on paper first before entering your answer.</p>
<p>[[1]]Mg&nbsp;+ [[2]]HCl&nbsp;→ [[1]]MgCl<sub>2</sub> + [[1]]H<sub>2</sub><sub><br></sub></p><p>What type of reaction is this? [[9]]<sub><br></sub></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>synthesis</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>decomposition</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>single replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>double replacement</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>combustion</text>
      <group>2</group>
    </selectoption>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5B: types of reactions/double replacement</text>

    </category>
  </question>

<!-- question: 4594  -->
  <question type="gapselect">
    <name>
      <text>DR1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this double replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">AgNO<sub>3</sub></td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">NaBr</td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[1]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[4]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction form a precipitate? [[7]]</p><p>Why or why not? Because...[[9]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>AgBr</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>AgNa</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>BrNO₃</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>NaNO₃</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>NaAg</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>NaBr</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Product 1 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Product 2 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are soluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are insoluble</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4601  -->
  <question type="gapselect">
    <name>
      <text>DR2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this double replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">Ba(NO<sub>3</sub>)<sub>2</sub></td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">K<sub>2</sub>SO<sub>4</sub></td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[2]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[5]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction form a precipitate? [[7]]</p><p>Why or why not? Because...[[9]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>BaK₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>BaSO₄</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>BaNO₃</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>K₂NO₃</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>KNO₃</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>K₂(NO₃)₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Product 1 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Product 2 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are soluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are insoluble</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4602  -->
  <question type="gapselect">
    <name>
      <text>DR3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this double replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;"><span style="font-size: 14px;">SrCl</span><sub>2</sub></td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;"><span style="font-size: 14px;">NH</span><sub>4</sub>NO<sub>3</sub></td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[3]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[6]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction form a precipitate? [[8]]</p><p>Why or why not? Because...[[11]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>NH₄Sr</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>SrNH₄</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Sr(NO₃)₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>NH₄Cl₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>ClNO₃</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>NH₄Cl</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Product 1 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Product 2 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are soluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are insoluble</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4603  -->
  <question type="gapselect">
    <name>
      <text>DR4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this double replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;"><span>(NH</span><sub>4</sub>)<sub>2</sub>CO<sub>3</sub><br></td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;"><span style="font-size: 14px;"><span>MgCl</span><sub>2</sub></span></td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[3]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[4]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction form a precipitate? [[7]]</p><p>Why or why not? Because...[[9]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>Mg(NH₄)₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>MgNH₄</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>MgCO₃</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>NH₄Cl</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>NH₄Cl₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>ClCO₃</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Product 1 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Product 2 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are soluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are insoluble</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4610  -->
  <question type="gapselect">
    <name>
      <text>DR5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this double replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;"><br></th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;"><span style="font-size: 14px;">K</span><sub>2</sub>SO<sub>4</sub><br></td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;"><span style="font-size: 14px;"><span>MgCl</span><sub>2</sub></span></td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[2]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[6]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction form a precipitate? [[8]]</p><p>Why or why not? Because...[[11]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>Mg₂SO₄</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>MgSO₄</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>MgK₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>K₂Cl</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>Cl₂SO₄</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>KCl</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Product 1 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Product 2 is insoluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are soluble</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>both products are insoluble</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5B: types of reactions/single replacement</text>

    </category>
  </question>

<!-- question: 4595  -->
  <question type="gapselect">
    <name>
      <text>SR1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this single replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;">Reactant 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Reactant 2</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">Na</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">MgCl<sub>2</sub></td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[1]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[4]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction actually happen? [[7]]</p><p>Why or why not? Because...[[9]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>Mg</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Cl₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>NaMg</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>NaCl</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>Cl₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>MgNa</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Na is above Mg on the activity series</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Mg is above Na on the activity series</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4604  -->
  <question type="gapselect">
    <name>
      <text>SR2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this single replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;">Reactant 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Reactant 2</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">Zn</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">FeSO<sub>4</sub></td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[3]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[5]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction actually happen? [[7]]</p><p>Why or why not? Because...[[10]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>SO₄</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>FeZn</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Fe</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>ZnFe</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>ZnSO₄</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>O₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Fe is above Zn on the activity series</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Zn is above Fe on the activity series</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4605  -->
  <question type="gapselect">
    <name>
      <text>SR3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this single replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;">Reactant 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Reactant 2</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">Cr</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">KBr</td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[2]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[4]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction actually happen? [[8]]</p><p>Why or why not? Because...[[9]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>CrK</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>CrBr₃</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Br₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>K</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>K₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>KCr</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>K is above Cr on the activity series</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Cr is above K on the activity series</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4606  -->
  <question type="gapselect">
    <name>
      <text>SR4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this single replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;">Reactant 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Reactant 2</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">Pb</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">H₂SO₄</td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[1]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[6]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction actually happen? [[7]]</p><p>Why or why not? Because...[[10]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>H₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>H</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>H₂Pb</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>H₂O</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>PbH₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>PbSO₄</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>H is above Pb on the activity series</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Pb is above H on the activity series</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 4611  -->
  <question type="gapselect">
    <name>
      <text>SR5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p>Fill in the correct products for this single replacement reaction:<table>
<thead>
<tr>
<th scope="col" style="text-align: center;">Reactant 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Reactant 2</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 1</th>
<th scope="col" style="text-align: center;">&nbsp;</th><th scope="col" style="text-align: center;">Product 2</th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">Ni</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">MgSO₄</td>
<td style="text-align: center;">&nbsp;→</td><td style="text-align: center;">[[2]]</td>
<td style="text-align: center;">&nbsp;+</td><td style="text-align: center;">[[6]]</td>
</tr>
</tbody>
</table>
<p><br>Will the reaction actually happen? [[8]]</p><p>Why or why not? Because...[[9]]</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>1</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>MgNi</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Mg</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Mg₂</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>NiO₄</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>SO₄</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>NiSO₄</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>yes</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>no</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Mg is above Ni on the activity series</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>Ni is above Mg on the activity series</text>
      <group>4</group>
    </selectoption>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5B: types of reactions/synthesis</text>

    </category>
  </question>

<!-- question: 4596  -->
  <question type="gapselect">
    <name>
      <text>Syn1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p><p>Use the drop-down boxes to create a balanced equation for the synthesis of zinc (II) iodide.</p><p>[[1]] [[7]] + [[1]] [[12]]&nbsp;→ [[1]] [[14]]</p>Do not leave the coefficients blank--select "1" if you think there's no coefficient.<p></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Zn</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>Zn₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>ZnI</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>ZnI₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>I</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>I₂</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>ZnI</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>ZnI₂</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Zn₂I</text>
      <group>3</group>
    </selectoption>
  </question>

<!-- question: 4607  -->
  <question type="gapselect">
    <name>
      <text>Syn2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p><p>Use the drop-down boxes to create a balanced equation for the synthesis of aluminum chloride.</p><p>[[2]] [[7]] + [[3]] [[11]]&nbsp;→ [[2]] [[15]]</p>Do not leave the coefficients blank--select "1" if you think there's no coefficient.<p></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>4</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>5</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>6</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>Al</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>Al₂</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>AlCl</text>
      <group>2</group>
    </selectoption>
    <selectoption>
      <text>Cl</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Cl₂</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Cl₃</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>AlCl</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>AlCl₂</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>AlCl₃</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>Al₃C</text>
      <group>3</group>
    </selectoption>
  </question>

<!-- question: 4608  -->
  <question type="gapselect">
    <name>
      <text>Syn3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p><p>Use the drop-down boxes to create a balanced equation for the synthesis of sodium oxide.</p><p>[[4]] [[7]] + [[1]] [[11]]&nbsp;→ [[2]] [[14]]</p>Do not leave the coefficients blank--select "1" if you think there's no coefficient.<p></p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <shuffleanswers>0</shuffleanswers>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <selectoption>
      <text>1</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>2</text>
      <group>1</group>
    </selectoption>
    <selectoption>
      <text>3</text>
      <group>1</group>
    </selectoption>
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    <selectoption>
      <text>6</text>
      <group>1</group>
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    <selectoption>
      <text>Na</text>
      <group>2</group>
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    <selectoption>
      <text>O₂</text>
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    <selectoption>
      <text>NaO₂</text>
      <group>3</group>
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<!-- question: 4609  -->
  <question type="gapselect">
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      <text>Syn4</text>
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      <text><![CDATA[<p></p><p>Use the drop-down boxes to create a balanced equation for the synthesis of calcium oxide.</p><p>[[2]] [[7]] + [[1]] [[11]]&nbsp;→ [[2]] [[13]]</p>Do not leave the coefficients blank--select "1" if you think there's no coefficient.<p></p>]]></text>
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      <text>Your answer is partially correct.</text>
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      <text>Your answer is incorrect.</text>
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    <selectoption>
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      <text>Ca</text>
      <group>2</group>
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      <text>Ca₂</text>
      <group>2</group>
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    <selectoption>
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      <group>2</group>
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    <selectoption>
      <text>CaO</text>
      <group>3</group>
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    <selectoption>
      <text>Ca₂O</text>
      <group>3</group>
    </selectoption>
    <selectoption>
      <text>CaO₂</text>
      <group>3</group>
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<!-- question: 4612  -->
  <question type="gapselect">
    <name>
      <text>Syn5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p><p>Use the drop-down boxes to create a balanced equation for the synthesis of sodium fluoride.</p><p>[[2]] [[7]] + [[1]] [[11]]&nbsp;→ [[2]] [[13]]</p>Do not leave the coefficients blank--select "1" if you think there's no coefficient.<p></p>]]></text>
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      <text></text>
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      <text>Your answer is correct.</text>
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    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
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      <text>Your answer is incorrect.</text>
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    <shownumcorrect/>
    <selectoption>
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      <group>1</group>
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      <text>Na</text>
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      <group>2</group>
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      <group>3</group>
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    <selectoption>
      <text>Na₂F</text>
      <group>4</group>
    </selectoption>
    <selectoption>
      <text>NaF₂</text>
      <group>4</group>
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<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5B: types of reactions/general questions</text>

    </category>
  </question>

<!-- question: 4600  -->
  <question type="matching">
    <name>
      <text>match</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Match each description to a type of reaction. Answers may be used more than once.</p>]]></text>
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      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
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    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
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      <text>Your answer is incorrect.</text>
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    <subquestion format="html">
      <text><![CDATA[<p>can use solubility rules to predict</p>]]></text>
      <answer>
        <text>double replacement</text>
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    <subquestion format="html">
      <text><![CDATA[<p>can use activity series to predict</p>]]></text>
      <answer>
        <text>single replacement</text>
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    <subquestion format="html">
      <text><![CDATA[<p>burning</p>]]></text>
      <answer>
        <text>combustion</text>
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    </subquestion>
    <subquestion format="html">
      <text><![CDATA[<p>always involves carbon, hydrogen, and oxygen</p>]]></text>
      <answer>
        <text>combustion</text>
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    <subquestion format="html">
      <text><![CDATA[<p>compound + compound&nbsp;→&nbsp;compound + compound&nbsp;</p>]]></text>
      <answer>
        <text>double replacement</text>
      </answer>
    </subquestion>
    <subquestion format="html">
      <text><![CDATA[<p>a compound breaks apart</p>]]></text>
      <answer>
        <text>decomposition</text>
      </answer>
    </subquestion>
    <subquestion format="html">
      <text><![CDATA[<p>two elements make a compound<br></p>]]></text>
      <answer>
        <text>synthesis</text>
      </answer>
    </subquestion>
    <subquestion format="html">
      <text><![CDATA[<p>iron rusting in the presence of oxygen</p>]]></text>
      <answer>
        <text>synthesis</text>
      </answer>
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<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5C: energy</text>

    </category>
  </question>

<!-- question: 4742  -->
  <question type="matching">
    <name>
      <text>matching</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>For each description, choose whether it best describes an <i>exothermic reaction</i>&nbsp;or an <i>endothermic reaction</i>.</p>]]></text>
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      <text></text>
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      <text>Your answer is correct.</text>
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      <text>Your answer is partially correct.</text>
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      <text>Your answer is incorrect.</text>
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    <subquestion format="html">
      <text><![CDATA[<p>releases heat into the surroundings</p>]]></text>
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        <text>exothermic</text>
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      <text><![CDATA[<p>causes its surroundings to get colder</p>]]></text>
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        <text>endothermic</text>
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    <subquestion format="html">
      <text><![CDATA[<p>reactants have more potential energy than the products</p>]]></text>
      <answer>
        <text>exothermic</text>
      </answer>
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      <text><![CDATA[<p>breaks weaker bonds, and then forms stronger bonds</p>]]></text>
      <answer>
        <text>exothermic</text>
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    </subquestion>
    <subquestion format="html">
      <text><![CDATA[<p>the system has a net gain in potential energy after the reaction</p>]]></text>
      <answer>
        <text>endothermic</text>
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    </subquestion>
    <subquestion format="html">
      <text><![CDATA[<p>ΔH has a negative sign<br></p>]]></text>
      <answer>
        <text>exothermic</text>
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    <subquestion format="html">
      <text><![CDATA[<p>energy is a reactant</p>]]></text>
      <answer>
        <text>endothermic</text>
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    <subquestion format="html">
      <text><![CDATA[<p>goes "downhill" on an energy diagram</p>]]></text>
      <answer>
        <text>exothermic</text>
      </answer>
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    <subquestion format="html">
      <text><![CDATA[<p>involves a net release of stored energy from chemical bonds</p>]]></text>
      <answer>
        <text>exothermic</text>
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    <subquestion format="html">
      <text><![CDATA[<p>absorbs energy</p>]]></text>
      <answer>
        <text>endothermic</text>
      </answer>
    </subquestion>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5C: energy/endo//exo</text>

    </category>
  </question>

<!-- question: 4733  -->
  <question type="multichoice">
    <name>
      <text>energy1</text>
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      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.27%20PM.png" alt="" width="363" height="259" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>This reaction is:</p>]]></text>
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</file>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>exothermic</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>endothermic</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>both</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>neither</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4734  -->
  <question type="multichoice">
    <name>
      <text>energy2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.35%20PM.png" alt="" width="526" height="293" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>This reaction is:</p>]]></text>
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</file>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>exothermic</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>endothermic</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>both</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>neither</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4735  -->
  <question type="multichoice">
    <name>
      <text>energy3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.35%20PM.png" alt="" width="526" height="293" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the potential energy of the products?</p>]]></text>
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    <defaultgrade>2.0000000</defaultgrade>
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    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
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    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
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    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>A</p>]]></text>
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        <text></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>B</p>]]></text>
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    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>C</p>]]></text>
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        <text></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>D</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>E</p>]]></text>
      <feedback format="html">
        <text></text>
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    </answer>
  </question>

<!-- question: 4736  -->
  <question type="multichoice">
    <name>
      <text>energy4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.35%20PM.png" alt="" width="526" height="293" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the activation energy of the reaction?</p>]]></text>
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      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>A</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>B</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>C</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>D</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>E</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4737  -->
  <question type="multichoice">
    <name>
      <text>energy5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.35%20PM.png" alt="" width="526" height="293" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the ΔH of the reaction?</p>]]></text>
<file name="Screen Shot 2017-02-21 at 12.37.35 PM.png" path="/" 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    <defaultgrade>2.0000000</defaultgrade>
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    <single>true</single>
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      <text>Your answer is partially correct.</text>
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      <text>Your answer is incorrect.</text>
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    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>A</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>B</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>C</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>D</p>]]></text>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>E</p>]]></text>
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<!-- question: 4738  -->
  <question type="multichoice">
    <name>
      <text>energy6</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.27%20PM.png" alt="" width="363" height="259" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the potential energy of the reactants?</p>]]></text>
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</file>
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      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>A</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>B</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>C</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>D</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>E</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4739  -->
  <question type="multichoice">
    <name>
      <text>energy7</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.27%20PM.png" alt="" width="363" height="259" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the activation energy of the reaction?</p>]]></text>
<file name="Screen Shot 2017-02-21 at 12.37.27 PM.png" path="/" 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</file>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>A</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>B</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>C</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>D</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>E</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4740  -->
  <question type="multichoice">
    <name>
      <text>energy8</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.27%20PM.png" alt="" width="363" height="259" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the ΔH of the reaction?</p>]]></text>
<file name="Screen Shot 2017-02-21 at 12.37.27 PM.png" path="/" 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</file>
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    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
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    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
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    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>A</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>B</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>C</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>D</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>E</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4741  -->
  <question type="multichoice">
    <name>
      <text>energy9</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p><img src="@@PLUGINFILE@@/Screen%20Shot%202017-02-21%20at%2012.37.27%20PM.png" alt="" width="363" height="259" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p>Which arrow represents the potential energy of the products?</p>]]></text>
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</file>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>A</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>B</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>C</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>D</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>E</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5B: types of reactions/general questions</text>

    </category>
  </question>

<!-- question: 4590  -->
  <question type="multichoice">
    <name>
      <text>mc1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Which of these are ALWAYS products of combustion reactions?</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>false</single>
    <shuffleanswers>true</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>fuel</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>oxygen</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="50" format="html">
      <text><![CDATA[<p>carbon dioxide</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="50" format="html">
      <text><![CDATA[<p>water</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>hydrogen</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>carbon</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>methane</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4591  -->
  <question type="multichoice">
    <name>
      <text>mc2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>How many reactants does a synthesis reaction usually have?</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>false</shuffleanswers>
    <answernumbering>none</answernumbering>
    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>1</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>2</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>3</p>]]></text>
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        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>4</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>5</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>6</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4592  -->
  <question type="multichoice">
    <name>
      <text>mc3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Which of these are ALWAYS reactants in combustion reactions?</p>]]></text>
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      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <single>false</single>
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      <text>Your answer is correct.</text>
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    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="50" format="html">
      <text><![CDATA[<p>fuel</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="50" format="html">
      <text><![CDATA[<p>oxygen</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>carbon dioxide</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>water</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>hydrogen</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>carbon</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>methane</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4597  -->
  <question type="multichoice">
    <name>
      <text>mc4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>How many reactants does a decomposition reaction usually have?</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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      <text>Your answer is correct.</text>
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    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
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    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
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    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>1</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>2</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>3</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>4</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>5</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>6</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4598  -->
  <question type="multichoice">
    <name>
      <text>mc5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>How many products does a decomposition reaction usually have?</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <single>true</single>
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    <correctfeedback format="html">
      <text>Your answer is correct.</text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>1</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>2</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>3</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>4</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>5</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>6</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 4599  -->
  <question type="multichoice">
    <name>
      <text>mc6</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>How many products does a synthesis reaction usually have?</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <single>true</single>
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    <correctfeedback format="html">
      <text>Your answer is correct.</text>
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    <partiallycorrectfeedback format="html">
      <text>Your answer is partially correct.</text>
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    <incorrectfeedback format="html">
      <text>Your answer is incorrect.</text>
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    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>1</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>2</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>3</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>4</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>5</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>6</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5A: equations/products and reactants</text>

    </category>
  </question>

<!-- question: 164  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + 2 O<sub>2</sub> → CO<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>CH<sub>4</sub> is a:</p>]]></text>
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      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <single>true</single>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 165  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 10</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation 2 NO + 2 H<sub>2</sub> → N<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>H<sub>2</sub> is a:</p>]]></text>
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      <text></text>
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    <penalty>0.3333333</penalty>
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    <single>true</single>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 166  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 11</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation 2 NO + 2 H<sub>2</sub> → N<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>N<sub>2</sub> is a:</p>]]></text>
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      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <single>true</single>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 167  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 12</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation 2 NO + 2 H<sub>2</sub> → N<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>H<sub>2</sub>O is a:</p>]]></text>
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      <text></text>
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    <penalty>0.3333333</penalty>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
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      </feedback>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 168  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + 2 O<sub>2</sub> → CO<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>O<sub>2</sub> is a:</p>]]></text>
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    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
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    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>solvent</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 169  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + 2 O<sub>2</sub> → CO<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>CO<sub>2</sub> is a:</p>]]></text>
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      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
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    <single>true</single>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
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        <text></text>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
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        <text></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 170  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + 2 O<sub>2</sub> → CO<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>H<sub>2</sub>O is a:</p>]]></text>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
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        <text></text>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
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        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 171  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + Cl<sub>2</sub> → CH<sub>3</sub>Cl + HCl</p>
<p>CH<sub>4</sub> is a:</p>]]></text>
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    <generalfeedback format="html">
      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
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    </incorrectfeedback>
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    <answer fraction="100" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 172  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 6</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + Cl<sub>2</sub> → CH<sub>3</sub>Cl + HCl</p>
<p>Cl<sub>2</sub> is a:</p>]]></text>
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      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
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    <single>true</single>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 173  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 7</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + Cl<sub>2</sub> → CH<sub>3</sub>Cl + HCl</p>
<p>CH<sub>3</sub>Cl is a:</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <answernumbering>abc</answernumbering>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 174  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 8</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation CH<sub>4</sub> + Cl<sub>2</sub> → CH<sub>3</sub>Cl + HCl</p>
<p>HCl is a:</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
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      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
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    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
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    <answer fraction="0" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 175  -->
  <question type="multichoice">
    <name>
      <text>product or reactant 9</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>In the equation 2 NO + 2 H<sub>2</sub> → N<sub>2</sub> + 2 H<sub>2</sub>O</p>
<p>NO is a:</p>]]></text>
    </questiontext>
    <generalfeedback format="html">
      <text></text>
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    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
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    <single>true</single>
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    <answernumbering>abc</answernumbering>
    <correctfeedback format="html">
      <text><![CDATA[<p>Your answer is correct.</p>]]></text>
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    <partiallycorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is partially correct.</p>]]></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text><![CDATA[<p>Your answer is incorrect.</p>]]></text>
    </incorrectfeedback>
    <shownumcorrect/>
    <answer fraction="100" format="html">
      <text><![CDATA[<p>reactant</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>product</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>catalyst</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>element</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text><![CDATA[<p>atom</p>]]></text>
      <feedback format="html">
        <text></text>
      </feedback>
    </answer>
  </question>

<!-- question: 0  -->
  <question type="category">
    <category>
        <text>$course$/Chemistry Common Assessments/Semester 2/Quarter 3/Unit 5: Chemical Reactions/5C: energy/bond enthalpy</text>

    </category>
  </question>

<!-- question: 4780  -->
  <question type="numerical">
    <name>
      <text>bonds 1</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p></p><p>Use the bond enthalpy data on the table below to answer the following question:<br></p><table><tbody><tr></tr></tbody><thead><tr><th scope="col"><u>Bond</u></th><th scope="col"><u>Enthalpy (kJ/mol)</u></th></tr></thead><tbody><tr><td style="text-align: center;">C--H</td><td style="text-align: center;">412</td></tr><tr><td style="text-align: center;">Cl--Cl</td><td style="text-align: center;">242</td></tr><tr><td style="text-align: center;">H--H</td><td style="text-align: center;">436</td></tr><tr><td style="text-align: center;">O--H</td><td style="text-align: center;">463</td></tr><tr><td style="text-align: center;">C--Cl</td><td style="text-align: center;">328</td></tr><tr><td style="text-align: center;">H--Cl</td><td style="text-align: center;">431</td></tr><tr><td style="text-align: center;">O==O</td><td style="text-align: center;">484</td></tr><tr><td style="text-align: center;">O--O</td><td style="text-align: center;">157</td></tr></tbody></table><br><p style="text-align: center;"><img src="@@PLUGINFILE@@/water_reaction_models.gif" alt="" width="284" height="150" role="presentation" class="img-responsive atto_image_button_text-bottom"></p><p></p><p>What is the&nbsp;ΔH (enthalpy change) for the reaction in the picture?</p><p><b><u>INCLUDE UNITS</u></b> and the CORRECT SIGN (positive or negative)</p>]]></text>
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</file>
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    <defaultgrade>2.0000000</defaultgrade>
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    <answer fraction="100" format="moodle_auto_format">
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      <tolerance>0</tolerance>
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    <answer fraction="50" format="moodle_auto_format">
      <text>496</text>
      <feedback format="html">
        <text><![CDATA[<p>You gave the wrong sign for the enthalpy change.</p>]]></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
<units>
  <unit>
    <multiplier>1</multiplier>
    <unit_name>kJ/mol</unit_name>
  </unit>
</units>
    <unitgradingtype>1</unitgradingtype>
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    <showunits>0</showunits>
    <unitsleft>0</unitsleft>
  </question>

<!-- question: 4781  -->
  <question type="numerical">
    <name>
      <text>bonds 2</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Use the bond enthalpy data on the table below to answer the following question:<br>
</p><table style="text-align: center;"><tbody><tr></tr></tbody><thead><tr><th scope="col" style="text-align: center;"><u>Bond</u></th>
<th scope="col" style="text-align: center;"><u>Enthalpy (kJ/mol)</u></th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">C--H</td>
<td style="text-align: center;">412</td>
</tr>
<tr>
<td style="text-align: center;">Cl--Cl</td>
<td style="text-align: center;">242</td>
</tr>
<tr>
<td style="text-align: center;">H--H</td>
<td style="text-align: center;">436</td>
</tr>
<tr>
<td style="text-align: center;">O--H</td>
<td style="text-align: center;">463</td>
</tr>
<tr>
<td style="text-align: center;">C--Cl</td>
<td style="text-align: center;">328</td>
</tr>
<tr>
<td style="text-align: center;">H--Cl</td>
<td style="text-align: center;">431</td>
</tr>
<tr>
<td style="text-align: center;">O==O</td>
<td style="text-align: center;">484</td>
</tr>
<tr>
<td style="text-align: center;">O--O</td>
<td style="text-align: center;">157</td></tr></tbody></table><p style="text-align: center;"><img src="@@PLUGINFILE@@/image007.jpg" alt="" width="462" height="154" role="presentation" class="img-responsive atto_image_button_text-bottom"><br></p><p></p><p>What is the&nbsp;ΔH (enthalpy change) for the reaction in the picture?</p><p><b><u>INCLUDE UNITS</u></b> and the CORRECT SIGN (positive or negative)</p>]]></text>
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    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <answer fraction="100" format="moodle_auto_format">
      <text>-105</text>
      <feedback format="html">
        <text></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
    <answer fraction="50" format="moodle_auto_format">
      <text>105</text>
      <feedback format="html">
        <text><![CDATA[<p>You gave the wrong sign for the enthalpy change.</p>]]></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
<units>
  <unit>
    <multiplier>1</multiplier>
    <unit_name>kJ/mol</unit_name>
  </unit>
</units>
    <unitgradingtype>1</unitgradingtype>
    <unitpenalty>0.5000000</unitpenalty>
    <showunits>0</showunits>
    <unitsleft>0</unitsleft>
  </question>

<!-- question: 4782  -->
  <question type="numerical">
    <name>
      <text>bonds 3</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Use the bond enthalpy data on the table below to answer the following question:<br>
</p><table style="text-align: center;"><tbody><tr></tr></tbody><thead><tr><th scope="col" style="text-align: center;"><u>Bond</u></th>
<th scope="col" style="text-align: center;"><u>Enthalpy (kJ/mol)</u></th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">C--H</td>
<td style="text-align: center;">412</td>
</tr>
<tr>
<td style="text-align: center;">Cl--Cl</td>
<td style="text-align: center;">242</td>
</tr>
<tr>
<td style="text-align: center;">H--H</td>
<td style="text-align: center;">436</td>
</tr>
<tr>
<td style="text-align: center;">O--H</td>
<td style="text-align: center;">463</td>
</tr>
<tr>
<td style="text-align: center;">C--Cl</td>
<td style="text-align: center;">328</td>
</tr>
<tr>
<td style="text-align: center;">H--Cl</td>
<td style="text-align: center;">431</td>
</tr>
<tr>
<td style="text-align: center;">O==O</td>
<td style="text-align: center;">484</td>
</tr>
<tr>
<td style="text-align: center;">O--O</td>
<td style="text-align: center;">157</td></tr></tbody></table><p style="text-align: center;"><br></p><p></p><p>What is the&nbsp;ΔH (enthalpy change) for this reaction?</p><p>2 <b>H-O-O-H</b>&nbsp;→ 2 <b>H-O-H</b> + <b>O=O</b></p><p><b><u>INCLUDE UNITS</u></b> and the CORRECT SIGN (positive or negative)</p>]]></text>
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    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <answer fraction="100" format="moodle_auto_format">
      <text>-170</text>
      <feedback format="html">
        <text></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
    <answer fraction="50" format="moodle_auto_format">
      <text>170</text>
      <feedback format="html">
        <text><![CDATA[<p>You gave the wrong sign for the enthalpy change.</p>]]></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
<units>
  <unit>
    <multiplier>1</multiplier>
    <unit_name>kJ/mol</unit_name>
  </unit>
</units>
    <unitgradingtype>1</unitgradingtype>
    <unitpenalty>0.5000000</unitpenalty>
    <showunits>0</showunits>
    <unitsleft>0</unitsleft>
  </question>

<!-- question: 4783  -->
  <question type="numerical">
    <name>
      <text>bonds 4</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Use the bond enthalpy data on the table below to answer the following question:<br>
</p><table style="text-align: center;"><tbody><tr></tr></tbody><thead><tr><th scope="col" style="text-align: center;"><u>Bond</u></th>
<th scope="col" style="text-align: center;"><u>Enthalpy (kJ/mol)</u></th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">C--H</td>
<td style="text-align: center;">412</td>
</tr>
<tr>
<td style="text-align: center;">Cl--Cl</td>
<td style="text-align: center;">242</td>
</tr>
<tr>
<td style="text-align: center;">H--H</td>
<td style="text-align: center;">436</td>
</tr>
<tr>
<td style="text-align: center;">O--H</td>
<td style="text-align: center;">463</td>
</tr>
<tr>
<td style="text-align: center;">C--Cl</td>
<td style="text-align: center;">328</td>
</tr>
<tr>
<td style="text-align: center;">H--Cl</td>
<td style="text-align: center;">431</td>
</tr>
<tr>
<td style="text-align: center;">O==O</td>
<td style="text-align: center;">484</td>
</tr>
<tr>
<td style="text-align: center;">O--O</td>
<td style="text-align: center;">157</td></tr></tbody></table><p style="text-align: center;"><br></p><p></p><p>What is the&nbsp;ΔH (enthalpy change) for this reaction?</p><p>H<sub>2</sub> + Cl<sub>2</sub> → 2 <span>HCl</span></p><p><b><u>INCLUDE UNITS</u></b> and the CORRECT SIGN (positive or negative)</p>]]></text>
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    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <answer fraction="100" format="moodle_auto_format">
      <text>-184</text>
      <feedback format="html">
        <text></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
    <answer fraction="50" format="moodle_auto_format">
      <text>184</text>
      <feedback format="html">
        <text><![CDATA[<p>You gave the wrong sign for the enthalpy change.</p>]]></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
<units>
  <unit>
    <multiplier>1</multiplier>
    <unit_name>kJ/mol</unit_name>
  </unit>
</units>
    <unitgradingtype>1</unitgradingtype>
    <unitpenalty>0.5000000</unitpenalty>
    <showunits>0</showunits>
    <unitsleft>0</unitsleft>
  </question>

<!-- question: 4784  -->
  <question type="numerical">
    <name>
      <text>bonds 5</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Use the bond enthalpy data on the table below to answer the following question:<br>
</p><table style="text-align: center;"><tbody><tr></tr></tbody><thead><tr><th scope="col" style="text-align: center;"><u>Bond</u></th>
<th scope="col" style="text-align: center;"><u>Enthalpy (kJ/mol)</u></th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">C--H</td>
<td style="text-align: center;">412</td>
</tr>
<tr>
<td style="text-align: center;">Cl--Cl</td>
<td style="text-align: center;">242</td>
</tr>
<tr>
<td style="text-align: center;">H--H</td>
<td style="text-align: center;">436</td>
</tr>
<tr>
<td style="text-align: center;">O--H</td>
<td style="text-align: center;">463</td>
</tr>
<tr>
<td style="text-align: center;">C--Cl</td>
<td style="text-align: center;">328</td>
</tr>
<tr>
<td style="text-align: center;">H--Cl</td>
<td style="text-align: center;">431</td>
</tr>
<tr>
<td style="text-align: center;">O==O</td>
<td style="text-align: center;">484</td>
</tr>
<tr>
<td style="text-align: center;">O--O</td>
<td style="text-align: center;">157</td></tr></tbody></table><p style="text-align: center;"><br></p><p></p><p>What is the&nbsp;ΔH (enthalpy change) for this reaction?</p><p><span><span>CCl<sub>4</sub></span> + 2&nbsp;<span>H<sub>2</sub></span> → CH<sub>4</sub><span>&nbsp;+ 2 Cl<sub>2</sub></span></span></p><p><b><u>INCLUDE UNITS</u></b> and the CORRECT SIGN (positive or negative)</p>]]></text>
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    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <answer fraction="100" format="moodle_auto_format">
      <text>52</text>
      <feedback format="html">
        <text></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
    <answer fraction="50" format="moodle_auto_format">
      <text>-52</text>
      <feedback format="html">
        <text><![CDATA[<p>You gave the wrong sign for the enthalpy change.</p>]]></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
<units>
  <unit>
    <multiplier>1</multiplier>
    <unit_name>kJ/mol</unit_name>
  </unit>
</units>
    <unitgradingtype>1</unitgradingtype>
    <unitpenalty>0.5000000</unitpenalty>
    <showunits>0</showunits>
    <unitsleft>0</unitsleft>
  </question>

<!-- question: 4785  -->
  <question type="numerical">
    <name>
      <text>bonds 6</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<p>Use the bond enthalpy data on the table below to answer the following question:<br>
</p><table style="text-align: center;"><tbody><tr></tr></tbody><thead><tr><th scope="col" style="text-align: center;"><u>Bond</u></th>
<th scope="col" style="text-align: center;"><u>Enthalpy (kJ/mol)</u></th>
</tr>
</thead>
<tbody>
<tr>
<td style="text-align: center;">C--H</td>
<td style="text-align: center;">412</td>
</tr>
<tr>
<td style="text-align: center;">Cl--Cl</td>
<td style="text-align: center;">242</td>
</tr>
<tr>
<td style="text-align: center;">H--H</td>
<td style="text-align: center;">436</td>
</tr>
<tr>
<td style="text-align: center;">O--H</td>
<td style="text-align: center;">463</td>
</tr>
<tr>
<td style="text-align: center;">C--Cl</td>
<td style="text-align: center;">328</td>
</tr>
<tr>
<td style="text-align: center;">H--Cl</td>
<td style="text-align: center;">431</td>
</tr>
<tr>
<td style="text-align: center;">O==O</td>
<td style="text-align: center;">484</td>
</tr>
<tr>
<td style="text-align: center;">O--O</td>
<td style="text-align: center;">157</td></tr></tbody></table><p style="text-align: center;"><br></p><p></p><p>What is the&nbsp;ΔH (enthalpy change) for this reaction?</p><p><b>H-</b><b>H&nbsp;</b>+ <b>O=O</b>&nbsp;→ <b>H-O-O-H</b><b></b></p><p><b><u>INCLUDE UNITS</u></b> and the CORRECT SIGN (positive or negative)</p>]]></text>
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    </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>2.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <answer fraction="100" format="moodle_auto_format">
      <text>-163</text>
      <feedback format="html">
        <text></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
    <answer fraction="50" format="moodle_auto_format">
      <text>163</text>
      <feedback format="html">
        <text><![CDATA[<p>You gave the wrong sign for the enthalpy change.</p>]]></text>
      </feedback>
      <tolerance>0</tolerance>
    </answer>
<units>
  <unit>
    <multiplier>1</multiplier>
    <unit_name>kJ/mol</unit_name>
  </unit>
</units>
    <unitgradingtype>1</unitgradingtype>
    <unitpenalty>0.5000000</unitpenalty>
    <showunits>0</showunits>
    <unitsleft>0</unitsleft>
  </question>

</quiz>