Python§Ö¼Ö½sµ{¡X¡X¼Æ¾Ú¤ÀªR»P¹ê¾Ô ( ²Åé ¦r) |
§@ªÌ¡G¤d¾W±Ð¨|°ª±Ð²£«~¬ãµo³¡ | Ãþ§O¡G1. -> µ{¦¡³]p -> Python |
ĶªÌ¡G |
¥Xª©ªÀ¡G²MµØ¤j¾Ç¥Xª©ªÀ | 3dWoo®Ñ¸¹¡G 54278 ¸ß°Ý®ÑÄy½Ð»¡¥X¦¹®Ñ¸¹¡I¡i¦³®w¦s¡j NT°â»ù¡G 350 ¤¸ |
¥Xª©¤é¡G4/1/2021 |
¶¼Æ¡G302 |
¥úºÐ¼Æ¡G0 |
|
¯¸ªø±ÀÂË¡G |
¦L¨ê¡G¶Â¥Õ¦L¨ê | »y¨t¡G ( ²Åé ª© ) |
|
¥[¤JÁʪ«¨® ¢x¥[¨ì§Úªº³Ì·R (½Ð¥ýµn¤J·|û) |
ISBN¡G9787302563785 |
§@ªÌ§Ç¡@|¡@ĶªÌ§Ç¡@|¡@«e¨¥¡@|¡@¤º®e²¤¶¡@|¡@¥Ø¿ý¡@|¡@§Ç |
(²Åé®Ñ¤W©Òz¤§¤U¸ü³sµ²¯Ó®É¶O¥\, ®¤¤£¾A¥Î¦b¥xÆW, YŪªÌ»Ýn½Ð¦Û¦æ¹Á¸Õ, ®¤¤£«OÃÒ) |
§@ªÌ§Ç¡G |
ĶªÌ§Ç¡G |
«e¨¥¡G¦bÀþ®§¸UÅܪºIT®É¥N¡A¤@¸sÃh´¢¹Ú·Qªº¤H³Ð¿ì¤F¤d¾W±Ð¨|¡A§ë¨¨ìIT°ö°V¦æ·~¡C¦h¦~¨Ó¡A¤@§å§å¦³§Ó«C¦~¥[¤J¤d¾W±Ð¨|¡A¬°¤F¹Ú·Q¿w©w«e¦æ¡C¤d¾W±Ð¨|ªÃ©Ó¡§¥Î¨}¤ß°µ±Ð¨|¡¨ªº²z©À¡A¬°°ö¾i³»¯ÅITºë^¥I¥X¤@¤Á§V¤O¡C¬°¤°¤\·|¦³³o¼Ëªº¹Ú·Q¡H§ÚÌ¥ý¨ÓÅ¥¤@Å¥¥Î¤H¥ø·~©M¨D¾ªÌªº¤ßÁn¡C ¡§²{¦b²Å¦X¥ø·~»Ý¨DªºIT§Þ³N¤H¤~«D±`ºò¯Ê¡A³o¤è±ªºÀu¨q¤H¤~§ÚÌ·|¹³¬ÃÄ_¤@¼Ë¹ï«Ý,¥i¬°¤°¤\¦Ü¤µ¨S¦³»Ýnªº¤H¤~¥X²{¡H¡¨ ¡§±¸Õªº®ÉÔ¡A¥Î¤H¥ø·~°Ý§Ú̯వ¤°¤\¡B³oÓ¶µ¥Ø¦p¦ó¹ê²{¡B»Ýn¦hªøªº®É¶¡¡A§ÚÌ·í®É³£»X¤F¡A¦^µª¤£¤W¨Ó¡C¡¨ ¡§³o¤w¸g¬O±¸Õ¹Lªº²Ä10®a¤½¥q¤F¡A¦pªG¦A¤£¦æ¡A¬O¤£¬On¦Ò¼{Âà¦æ¤F¡HÃø¹D¤j¾Ç³£¥Õ¾Ç¤F¡H¡¨ ¡§³o¤w¸g¬O°Ñ¥[±¸Õªº²ÄNÓ¨D¾ªÌ¤F¡A¬°¤°¤\³£¬Opºâ¾÷±M·~¡A¦ý¬O°Ý¨ì¶µ¥Ø¦p¦ó¹ê²{®É³s³]p«ä¸ô³£¨S¦³©O¡H¡¨ ³o¨Ç°ÝÃD¦}¤£¬OÓ§Oªº¡A¦Ó¬O¤¤°ê±Ð¨|»â°ìªº´¶¹M²{¶H¡C°ª®ÕªºIT±Ð¨|»P¥ø·~ªº¯u¹ê»Ý¨D¦s¦b²æ¸`¡A¦pªG°ª®Õªº¬ÛÃö½Òµ{¤´µM¤£¶i¦æ§ó·s¡A²¦·~¥Í±N±Á{Ãø¥H´N·~ªº§x¹Ò¡C³\¦h¥Î¤H³æ¦ìªí¥Ü¡A°ª®Õ²¦·~¥Íªí±¤Wª¾ÃÑÂ×´I¡A¦ý³o¨Çª¾Ãѵ´¤j¦h¼Æ¦b¹ê»Ú¤u§@¤¤¬£¤£¤W¥Î³õ¡C°w¹ï¤Wz°ÝÃD¡A°ê°È°|¤]°µ¥X¤FÃö¤_¥[§Öµo®i²{¥N¾·~±Ð¨|ªº¨M©w¡A¦Ó¤d¾W±Ð¨|©Ò°µªº¨Æ±¡´N¬O°t¦X°ª®Õ¹F¦¨²£¾Ç¦X§@¡C ¤d¾W±Ð¨|¦b¥þ°êS³ò¤º¾Ö¦³¼Æ¤Q®a¤À®Õ¡B¼Æ¦Ê¦WÁ¿®vªº¹Î¶¤¡F P¤O¤_¥´³yIT¾·~±Ð¨|¥þ²£·~Ãì¤H¤~ªA°È¥»O¡A°í«ù¡§¥H±Ð¾Ç¬°¥»¡¨ªº¤è°w¡Aªö¥Î±¹ï±±Ð¾Ç¡F ¶Ç±Â¥ø·~¹ê¥Î§Þ¯à¡A±Ð¾Ç¤jºõ¹ê®Éºò¸ò¥ø·~»Ý¨D¡A¾Ö¦³¥þ°ê¤@Åé¤Æªº´N·~Åé¨t¡C¤d¾W±Ð¨|ªº»ùÈÆ[¬O¡§°µ¯u¹êªº¦Û¤v¡A¥Î¨}¤ß°µ±Ð¨|¡¨¡C ¥»®Ñ°w¹ï°ª®Õ±Ð®vªºªA°È (1) ¤d¾W±Ð¨|°ò¤_¦h¦~ªº±Ð¨|°ö°V¸gÅç¡Aºë¤ß³]p¤F¥]§t¡§±Ð§÷+±Â½Ò¸ê·½+¦Ò¸Õ¨t²Î+´ú¸ÕÃD+»²§U®×¨Ò¡¨ªº±Ð¾Ç¸ê·½¥]¡A¸`¬Ù±Ð®vªº³Æ½Ò®É¶¡¡A½w¸Ñ±Ð®vªº±Ð¾ÇÀ£¤O¡AÅãµÛ´£°ª±Ð¾Ç½è¶q¡C (2) ¥»®Ñ°t³Æ¤F¤d¾W±Ð¨|Àu¨qÁ¿®v¿ý¨îªº±Ð¾ÇµøÀW¡A«ö·Ó¥»®Ñªºª¾Ãѵ²ºcÅé¨t³¡¸p¨ì¤F±Ð¾Ç»²§U¥»O(¦©¤B¾Ç°ó)¤W¡A¥i¥H§@¬°±Ð¾Ç¸ê·½¨Ï¥Î¡A¤]¥i¥H§@¬°³Æ½Ò°Ñ¦Ò¡C °ª®Õ±Ð®v¦p»Ý¯Án°t®M±Ð¾Ç¸ê·½¡A½Ð±½´y¤U¤è¤Gºû½X¡AÃöª`¡§¦©¤B¾Ç°ó¡¨·L«H¤½²³¸¹¡C
¦©¤B¾Ç°ó
¥»®Ñ°w¹ï°ª®Õ¾Ç¥ÍªºªA°È (1) ¾ÇIT¦³ºÃ°Ý¡A´N§ä¤d°Ý¤dª¾¡C¤d°Ý¤dª¾¬O¤@Ó¦³°Ý¥²µªªºITªÀ°Ï¡A¥»O¤W¦³±M·~ªºµªºÃ»²¾É¦Ñ®v¡A©Ó¿Õ¦b¤u§@®É¶¡3¤p®É¤ºµª´_¾Ç¥Í¦bIT¾Ç²ß¤¤¹J¨ìªº±M·~°ÝÃD¡CŪªÌ¤]¥i¥H±½´y¤U¤èªº¤Gºû½X¡AÃöª`¡§¤d°Ý¤dª¾¡¨·L«H¤½²³¸¹¡AÂsÄý¨ä¥L¾Ç¥Í¦b¾Ç²ß¤¤¤À¨Éªº°ÝÃD©M¦¬Àò¡C
¤d°Ý¤dª¾
(2) ¾Ç²ß¤Ó¬\Àê¡A¦pªG·Q¤F¸Ñ¨ä¥L¾Ç®Õªº¥ë¦ñ¬O«ç¼Ë¾Ç²ßªº¡A¥i¥H¥[¤J¦©¤BѼֳ¡¡C¦©¤BѼֳ¡¬O¤d¾W±Ð¨|Áp¦X¦U°ª®Õµo°_ªº¤½¯qp¹º¡A±Mªù±¦V¹ïIT·P¿³½ìªº¤j¾Ç¥Í¡A´£¨Ñ§K¶Oªº¾Ç²ß¸ê·½©M°ÝµªªA°È¡A¤w¦³30¸U¦W¾Ç²ßªÌÀò¯q¡C ´N·~Ãø¡AÃø´N·~¡A¤d¾W±Ð¨|Åý´N·~¤£¦AÃø¡I
Ãö ¤_ ¥» ®Ñ ¥»®Ñ¬J¥i§@¬°°ªµ¥°|®Õ¥»¡B±M¬ìpºâ¾÷¬ÛÃö±M·~ªº¼Æ¾Ú¤ÀªR¤Jªù±Ð§÷¡AÁÙ¥]§t¤d¾W±Ð¨|Python¼Æ¾Ú¤ÀªRªº¥þ³¡½Òµ{¤º®e¡A¬O¤@¥»¾A¦X¼s¤jpºâ¾÷½sµ{·R¦nªÌªºÀu¨qŪª«¡C ·m¬õ¥] ŪªÌ¦pªG»Ýn¥»®Ñªº°t®M·½¥N½X¡B²ßÃDµª®×¡A½Ð²K¥[¤p¤dªºQQ¸¹©Î·L«H¸¹2133320438¡C ª`·N¡A¤p¤d·|ÀH®Éµo©ñ¡§§U¾Çª÷¬õ¥]¡¨¡C PÁ ¥»®Ñ¥Ñ¤d¾W±Ð¨|°ª±Ð²£«~¬ãµo³¡²Õ´½s¼g¡A±N¤d¾W±Ð¨|Python¾Ç¬ì¦h¦~¿n²Öªº¹ê¾Ô®×¨Ò¶i¦æ¾ã¦X¡A³q¹LºëÀJ²ÓµZ³Ì²×§¹¦¨¤F¥»®Ñ¡C¥t¥~¡A¦h¦ì°|®Õ¦Ñ®v°Ñ»P¤F¥»®Ñªº³¡¤À½s¼g»P«ü¾É¤u§@¡C°£¦¹¤§¥~¡A¤d¾W±Ð¨|¤¦Ê¦h¦W¾Çû°Ñ»P¨ì¥»®Ñªº¸ÕŪ¤u§@¤¤¡A¥L̯¸¦bªì¾ÇªÌªº¨¤«×¹ï¥»®Ñ´£¥X¤F³\¦hÄ_¶Qªº×§ï«Øij¡A¦b¦¹¤@¦}ªí¥Ü°J¤ßªº·PÁ¡C
·N ¨£ ¤Ï õX ¦b¥»®Ñªº½s¼g¹Lµ{¤¤¡AÁöµM½sªÌ¤O¨D§¹¬ü¡A¦ýÃø§K¦³¤£¨¬¤§³B¡AÅwªï¦U¬É±M®a©MŪªÌªB¤Í̵¹¤©Ä_¶Q·N¨£¡C
¤d¾W±Ð¨|°ª±Ð²£«~¬ãµo³¡ 2021¦~3¤ë |
¤º®e²¤¶¡G¥»®Ñ±q¼Æ¾Ú«õ±¸ªºÀ³¥Î¥Xµo¡A¥H¹q¤O¡B¯èªÅ¡BÂåÀø¡B¤¬Ápºô¡B¥Í²£¨î³y¥H¤Î¤½¦@ªA°Èµ¥¦æ·~¯u¹ê®×¨Ò¬°¥D½u¡A²`¤J²L¥X¤¶²ÐPython¼Æ¾Ú«õ±¸«Ø¼Ò¹Lµ{¡A¹ê½î©Ê·¥±j¡C¥»®Ñ¥H¼Æ¾Ú«õ±¸«Ø¼Ò¤u¨ãPython»y¨¥¨Ó®i¶}¡A¥ý¤¶²Ð®×¨ÒI´º´£¥X«õ±¸¥Ø¼Ð¡A¦AÄÄz¤ÀªR¤èªk»P¹Lµ{¡A³Ì¦Z§¹¦¨¼Ò«¬ºc«Ø¡A¦b¤¶²Ð«Ø¼Ò¹Lµ{¤¤¬ï´¡¾Þ§@°V½m¡A§â¬ÛÃöªºª¾ÃÑÂI´O¤J¬ÛÀ³ªº¾Þ§@¹Lµ{¤¤¡A¨ÏŪªÌ»´ªQ²z¸Ñ¦}´x´¤¬ÛÃöªº²z½×©Mª¾ÃÑÂI¡C¥»®Ñ¾A¥Î¤_¹ï¼Æ¾Ú¤ÀªR¦³¿@«p¿³½ì¦ý¤£ª¾±q¦ó¤U¤âªºªì¾ÇªÌ¡A¤]¥i¥H§@¬°¥»¬ì¥Í¡B¬ã¨s¥Í¥H¤Î¬ì¬ã¤Hû¾Ç²ßPythonªº°ò¦±Ð§÷¡C |
¥Ø¿ý¡G²Ä1³¹¼Æ¾Ú¤ÀªR·§z 1.1ªì¨B»{ÃѼƾڤÀªR 1¡D2¼Æ¾Ú¤ÀªRªº°ò¥»¬yµ{ 1¡D3Python¼Æ¾Ú¤ÀªRªº¤u¨ã 1¡D4JupyterNotebookªº°ò¥»¨Ï¥Î 1¡D4¡D1¤U¸ü»P¦w¸Ë 1¡D4¡D2¥\¯à¬É± 1¡D4¡D3¤u§@ì²z 1¡D4¡D4°ò¥»¨Ï¥Î 1¡D4¡D5°ª¯Å¾Þ§@ ¤pµ² ²ßÃD
²Ä2³¹IPythonªº¨Ï¥Î 2.1IPython°ò¦ 2¡D1¡D1IPython²¤¶ 2¡D1¡D2IPython¨Ï¥Î§Þ¥© 2¡D1¡D3IPythonÅ]³N©R¥O 2¡D2IPython¤¤ªº¶}µo¤u¨ã 2¡D2¡D1½Õ¸Õ¾¹ 2¡D2¡D2©Ê¯à¤ÀªR ¤pµ² ²ßÃD
²Ä3³¹NumPyªº¨Ï¥Î 3.1¼Æ²Õªº¨Ï¥Î 3¡D1¡D1¼Æ²Õªº³Ð«Ø 3¡D1¡D2¼Æ²ÕªºÄÝ©Ê 3¡D1¡D3¼Æ²Õªº¹Bºâ 3¡D1¡D4¼Æ²Õªº¯Á¤Þ 3¡D1¡D5¼Æ²ÕªºÅÜ´«
3¡D2¯x°}ªº¨Ï¥Î 3¡D2¡D1¯x°}ªº³Ð«Ø 3¡D2¡D2¯x°}ªº¦X¦} 3¡D2¡D3¯x°}ªº¹Bºâ 3¡D2¡D4¯x°}ªºÄÝ©Ê
3¡D3NumPy¹ê¥Î§Þ¥© 3¡D3¡D1³q¥Î¨ç¼Æªº¨Ï¥Î 3¡D3¡D2¼Æ¾Úªº«O¦s©MŪ¨ú 3¡D3¡D3ÀH¾÷¼Æ¥Í¦¨ 3¡D3¡D4NumPy»P¼Æ¾Ú²Îp
¤pµ² ²ßÃD
²Ä4³¹Pandasªº¨Ï¥Î 4¡D1Pandasªº¼Æ¾Úµ²ºc 4¡D1¡D1Series¹ï¶Hªº³Ð«Ø 4¡D1¡D2Series¹ï¶HªºÄÝ©Ê 4¡D1¡D3DataFrame¹ï¶Hªº³Ð«Ø 4¡D1¡D4DataFrame¹ï¶HªºÄÝ©Ê 4¡D2Pandasªº¯Á¤Þ¹ï¶H 4¡D2¡D1Series¯Á¤Þªº°ò¥»¨Ï¥Î 4¡D2¡D2««Ø¯Á¤Þ 4¡D2¡D3¯Á¤Þªº°ò¥»¿ï¨ú©M¹LÂo 4¡D3Pandasªº°ò¥»pºâ 4¡D3¡D1ºâ³N¹Bºâ©M¼Æ¾Ú¹ï»ô 4¡D3¡D2¦Û©w¸q¨ç¼Æ 4¡D3¡D3±Æ§Ç 4¡D3¡D4«´_¯Á¤Þªº°ò¥»¨Ï¥Î 4¡D4Pandasªº²Îp¥\¯à 4¡D4¡D1²Îp¨Ï¥Îªº°ò¥»¨ç¼Æ 4¡D4¡D2±`¥Î²Îp¤èªk 4¡D5Pandasªº¼Æ¾Ú¯Ê³´³B²z 4¡D5¡D1dropna³B²zSeries¼Æ¾Ú¯Ê³´ 4¡D5¡D2dropna³B²zDataFrame¼Æ¾Ú¯Ê³´ 4¡D5¡D3fill¶i¦æ¼Æ¾Ú²K¥[ 4¡D6Pandasªº¼h¦¸¤Æ¯Á¤Þ 4¡D6¡D1°ò¥»³Ð«Ø 4¡D6¡D2«±Æ¤À¯Å 4¡D6¡D3®Ú¾Ú¯Å§O¶i¦æ¶×³ø 4¡D6¡D4DataFrame¼Æ¾Ú¦Cªº¨Ï¥Î 4¡D7Pandasªº¤å¥óŪ¨ú 4¡D7¡D1Ū¨ú/¦sÀxExcel¤å¥ó 4¡D7¡D2Ū¨ú/¦sÀxCSV¤å¥ó 4¡D7¡D3Ū¼g¼Æ¾Ú®w 4¡D7¡D4Ū¨úHDF5¤å¥ó ¤pµ² ²ßÃD
²Ä5³¹Matplotlibªº¨Ï¥Î 5¡D1Matplotlibø¹Ï¬yµ{ 5¡D2Matplotlib°ò¥»¨Ï¥Î 5¡D2¡D1³Ð«Øµe¥¬ 5¡D2¡D2²K¥[¤l¹Ï 5¡D2¡D3³W©w¨è«×»P¼Ðñ 5¡D2¡D4²K¥[¹Ï¨Ò 5¡D2¡D5Åã¥Ü 5¡D3Matplotlib±`¥Î§Þ¥© 5¡D3¡D1°t¸m¤å¥ó 5¡D3¡D2rc°Ñ¼Æªº°ò¥»°t¸m 5¡D3¡D3¤¤¤åÅã¥Ü°t¸m 5¡D4Matplotlib°ò¥»¹Ï§Î 5¡D4¡D1Matplotlibø¨î´²ÂI¹Ï 5¡D4¡D2Matplotlibø¨îª½¤è¹Ï 5¡D4¡D3Matplotlibø¨î»æª¬¹Ï 5¡D4¡D4Matplotlibø¨î§é½u¹Ï 5¡D4¡D5Matplotlibø¨î½c«¬¹Ï ¤pµ² ²ßÃD
²Ä6³¹®É¶¡§Ç¦C¤ÀªR 6¡D1®É¶¡¹ï¶H¡X¡XTimestamp 6¡D1¡D1³Ð«Ø®É¶¡ÂW 6¡D1¡D2«ü©w»PÂà´«®É°Ï 6¡D1¡D3³Ì¤p®É¶¡/³Ì¤j®É¶¡ 6¡D1¡D4±`¥ÎÄÝ©Ê 6¡D2®É¶¡¹ï¶H¡X¡XPeriod 6¡D2¡D1Period¹ï¶Hªº³Ð«Ø 6¡D2¡D2Period¹ï¶HªºÄÝ©Ê 6¡D2¡D3Period¹ï¶Hªº¤èªk 6¡D3®É¶¡¹ï¶H¡X¡XTimedelta 6¡D3¡D1Timedelta¹ï¶Hªº³Ð«Ø 6¡D3¡D2Timedelta¹ï¶HªºÄÝ©Ê 6¡D3¡D3Timedelta¹ï¶Hªº¤èªk 6¡D3¡D4®É¶¡¶¡¹jªº°ò¥»¹Bºâ 6¡D4DateTimeIndex¹ï¶H 6¡D4¡D1DateTimeIndex¹ï¶Hªº³Ð«Ø 6¡D4¡D2DateTimeIndex¹ï¶HªºÄÝ©Ê 6¡D4¡D3DateTimeIndex¹ï¶Hªº¤èªk 6¡D5PeriodIndex¹ï¶H 6¡D5¡D1PeriodIndex¹ï¶Hªº³Ð«Ø 6¡D5¡D2PeriodIndex¹ï¶HªºÄÝ©Ê 6¡D5¡D3PeriodIndex¹ï¶Hªº¤èªk 6¡D6TimedeltaIndex¹ï¶H 6¡D6¡D1TimedeltaIndex¹ï¶Hªº³Ð«Ø 6¡D6¡D2TimedeltaIndex¹ï¶HªºÄÝ©Ê 6¡D6¡D3TimedeltaIndex¹ï¶Hªº¤èªk 6¡D7ªö¼Ë 6¡D7¡D1ªö¼Ëªº°ò¥»¤èªk 6¡D7¡D2°ªö¼Ë 6¡D7¡D3¤Éªö¼Ë ¤pµ² ²ßÃD
²Ä7³¹¼Æ¾Ú³B²zªº°ò¥»¤â¬q 7¡D1¦X¦}¼Æ¾Ú¶° 7¡D1¡D1¥DÁä¦X¦}¼Æ¾Ú 7¡D1¡D2¶b¦V¼Æ¾Ú¦X¦} 7¡D1¡D3«Å|¼Æ¾Úªº¦X¦} 7¡D1¡D4¯Á¤ÞÁ䪺¦X¦} 7¡D2¼Æ¾Ú²M¬~ 7¡D2¡D1«´_Ȫº³B²z 7¡D2¡D2²§±`Ȫº³B²z 7¡D2¡D3¯Ê¥¢Èªº³B²z 7¡D3¼Æ¾Ú¼Ð·Ç¤Æ 7¡D3¡D1³Ì¤púQ³Ì¤j¼Ð·Ç¤Æ 7¡D3¡D2ZúQscore¼Ð·Ç¤Æ 7¡D3¡D3«ö¤p¼Æ©w¼Ð¼Ð·Ç¤Æ 7¡D4¼Æ¾ÚÃþ«¬ªºÂà´« 7¡D4¡D1Â÷´²¤Æ³sÄò¼Æ¾Ú 7¡D4¡D2°×Åܶq³B²zÃþ«¬¼Æ¾Ú ¤pµ² ²ßÃD
²Ä8³¹°ò¤_¤å¥»ªº¦ÛµM»y¨¥¤ÀªR 8¡D1°ò¤_¤å¥»ªº¦ÛµM»y¨¥³B²z·§z 8¡D2Jieba°ò¥»¤¶²Ð©M¨Ï¥Î 8¡D2¡D1°ò¥»¤¶²Ð 8¡D2¡D2¦w¸Ë 8¡D2¡D3°ò¥»¨Ï¥Î 8¡D3NLTKªº°ò¥»¤¶²Ð©M¨Ï¥Î 8¡D3¡D1NLTKªº°ò¥»¤¶²Ð 8¡D3¡D2NLTKªº¦w¸Ë 8¡D3¡D3NLTK°ò¥»¨Ï¥Î 8¡D4¤å¥»¬Û¦ü«× 8¡D4¡D1¬Û¦ü«×¤ÀªR 8¡D4¡D2°ò¤_NLTKªº¤å¥»¬Û¦ü«×¤ÀªR 8¡D4¡D3°ò¤_Gensimªº¤å¥»¬Û¦ü«×¤ÀªR 8¡D5±¡·P¤ÀªR 8¡D5¡D1±¡·P¤ÀªR·§z 8¡D5¡D2°ò¤_¾ë¯À¨©¸´µªº¤ÀªR 8¡D5¡D3°ò¤_±¡·Pµü¨åªº¤ÀªR 8¡D6¤å¥»¤ÀÃþ ¤pµ² ²ßÃD
²Ä9³¹ScikitúQLearn¼Æ¾Ú«Ø¼Ò 9¡D1¼Æ¾Ú«Ø¼Òªº°ò¥»·§z 9¡D1¡D1ScikitúQLearnªº°ò¥»¤¶²Ð 9¡D1¡D2¼Æ¾Ú«Ø¼Òªº°ò¥»¬yµ{ 9¡D2¦^Âk¼Ò«¬ªºÀ³¥Î»Pµû»ù 9¡D2¡D1¦^Âk¼Ò«¬ªºÀ³¥Î 9¡D2¡D2¦^Âk¼Ò«¬ªºµû»ù 9¡D2¡D3¦^Âk¼Ò«¬ªº¥iµø¤Æ 9¡D3»EÃþ¼Ò«¬ªºÀ³¥Î»Pµû»ù 9¡D3¡D1»EÃþ¼Ò«¬ªº³Ð«Ø 9¡D3¡D2»EÃþ¼Ò«¬ªºµû»ù 9¡D3¡D3»EÃþ¼Ò«¬¥iµø¤Æ 9¡D4¤ÀÃþ¼Ò«¬ªºÀ³¥Î»Pµû»ù 9¡D4¡D1³Ð«Ø¤ÀÃþ¼Ò«¬ 9¡D4¡D2¤ÀÃþ¼Ò«¬ªºµû»ù ¤pµ² ²ßÃD
²Ä10³¹¼Æ¾Ú¥iµø¤Æ¶i¶¥ 10¡D1Seaborn 10¡D1¡D1¦w¸Ë 10¡D1¡D2¥iµø¤Æ¼Æ¾Ú¶° 10¡D1¡D3¤ÀÃþ¼Æ¾Ú¶° 10¡D2Bokeh 10¡D2¡D1¦w¸Ë 10¡D2¡D2¬Wª¬¹Ï 10¡D2¡D3´²ÂI¹Ï 10¡D2¡D4§é½u¹Ï 10¡D2¡D5®É¶¡¶b 10¡D3Pyecharts 10¡D3¡D1¦w¸Ë 10¡D3¡D2°ò¥»°t¸m 10¡D3¡D3»öªí¹Ïø¨î 10¡D3¡D4Ãö¨t¹Ï 10¡D3¡D5¥¦æ§¤¼Ð¨t 10¡D3¡D6»æª¬¹Ï 10¡D3¡D7µü¤ª¹Ï 10¡D3¡D8¦a²z¦a¹Ï 10¡D4ªÅ¶¡¥iµø¤Æ 10¡D4¡D1ªÅ¶¡´²ÂI¹Ï 10¡D4¡D2ªÅ¶¡¬Wª¬Åé ¤pµ² ²ßÃD
²Ä11³¹¼Æ¾Ú¤ÀªR®×¨Ò¡X¡X´N·~¤ÀªR 11¡D1¶µ¥Ø®×¨Ò¤ÀªR 11¡D2¼Æ¾ÚÀò¨ú 11¡D3¼Æ¾Ú³B²z 11¡D3¡D1¼Æ¾ÚÃþ«¬ªºÂà´« 11¡D3¡D2¥h°£«´_È 11¡D3¡D3¯Ê¥¢È³B²z 11¡D4¼Æ¾Ú¤ÀªR ¤pµ² |
§Ç¡G |