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Croissance d'une fonction", "Subsubsection", CellChangeTimes->{{3.399729575530548*^9, 3.399729576360353*^9}, { 3.3997296072742453`*^9, 3.399729610464183*^9}, {3.399808732095336*^9, 3.399808736707179*^9}}], Cell[TextData[{ StyleBox["D\[EAcute]finition", FontVariations->{"Underline"->True}], " : Soit f, une fonction d\[EAcute]finie sur un intervalle I\n\nLa fonction \ r\[EAcute]elle f est strictement croissante sur un intervalle I\n\t\t\t\ \[DoubleLongLeftRightArrow]\n\t\[ForAll] ", Cell[BoxData[ FormBox[ SubscriptBox["x", "1"], TraditionalForm]]], ", ", Cell[BoxData[ FormBox[ SubscriptBox["x", "2"], TraditionalForm]]], " \[Element] I : ", Cell[BoxData[ FormBox[ SubscriptBox["x", "1"], TraditionalForm]]], "< ", Cell[BoxData[ FormBox[ SubscriptBox["x", "2"], TraditionalForm]]], " \[DoubleLongRightArrow] f(", Cell[BoxData[ FormBox[ SubscriptBox["x", "1"], TraditionalForm]]], ") < f(", Cell[BoxData[ FormBox[ SubscriptBox["x", "2"], TraditionalForm]]], ")\n\t\t\t" }], "Text", 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