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Cell[CellGroupData[{ Cell["Part 2 (4 points)", "Subtitle", CellChangeTimes->{{3.463249282443935*^9, 3.46324934950545*^9}, { 3.463502224038*^9, 3.4635022357130003`*^9}}], Cell[TextData[{ "The key to solving I-10 is to start by ", StyleBox["nondimensionalizing", FontWeight->"Bold", FontSlant->"Italic"], ". If you do not understand this, review the notebook WCC posted on the \ 3.016 site. 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