-- ·|­û / µù¥U -- ¡@
¡@±b¸¹¡G
¡@±K½X¡G
¡@ | µù¥U | §Ñ°O±K½X
3/26 ·s®Ñ¨ì¡I 3/19 ·s®Ñ¨ì¡I 3/14 ·s®Ñ¨ì¡I 12/12 ·s®Ñ¨ì¡I
ÁʮѬyµ{¡EQ & A¡E¯¸°È¯d¨¥ª©¡E«ÈªA«H½c
¢x 3ds Max¢x Maya¢x Rhino¢x After Effects¢x SketchUp¢x ZBrush¢x Painter¢x Unity¢x
¢x PhotoShop¢x AutoCad¢x MasterCam¢x SolidWorks¢x Creo¢x UG¢x Revit¢x Nuke¢x
¢x C#¢x C¢x C++¢x Java¢x ¹CÀ¸µ{¦¡¢x Linux¢x ´O¤J¦¡¢x PLC¢x FPGA¢x Matlab¢x
¢x Àb«È¢x ¸ê®Æ®w¢x ·j¯Á¤ÞÀº¢x ¼v¹³³B²z¢x Fluent¢x VR+AR¢x ANSYS¢x ²`«×¾Ç²ß¢x
¢x ³æ´¹¤ù¢x AVR¢x OpenGL¢x Arduino¢x Raspberry Pi¢x ¹q¸ô³]­p¢x Cadence¢x Protel¢x
¢x Hadoop¢x Python¢x Stm32¢x Cortex¢x Labview¢x ¤â¾÷µ{¦¡¢x Android¢x iPhone¢x
¥i¬d®Ñ¦W,§@ªÌ,ISBN,3dwoo®Ñ¸¹
¸Ô²Ó®ÑÄy¤ÀÃþ

Python¼Æ¾Ú¤ÀªR

( ²Åé ¦r)
§@ªÌ¡G ±ä¼ä ±Z¾] µ¥Ãþ§O¡G1. -> µ{¦¡³]­p -> Python
ĶªÌ¡G
¥Xª©ªÀ¡G²MµØ¤j¾Ç¥Xª©ªÀPython¼Æ¾Ú¤ÀªR 3dWoo®Ñ¸¹¡G 52781
¸ß°Ý®ÑÄy½Ð»¡¥X¦¹®Ñ¸¹¡I

¡i¯Ê®Ñ¡j
NT°â»ù¡G 495 ¤¸

¥Xª©¤é¡G6/1/2020
­¶¼Æ¡G468
¥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¡G9787302542858
§@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

·í¤µ¥@¬É¹ï«H®§§Þ³Nªº¨Ì¿àµ{«×¤éº¥¥[²`¡A¨C¤Ñ³£·|²£¥Í©M¦sÀx®ü¶qªº¼Æ¾Ú¡C­±¹ï®ü¶q¼Æ¾Ú¡A½Ö¯à§ó¦n¦a³B²z¡B¤ÀªR¼Æ¾Ú¡A½Ö´N¯à¯u¥¿·m±o¤j¼Æ¾Ú®É¥Nªº¥ý¾÷¡C¹ï¼Æ¾Úªº¤ÀªR¤w¸g¦¨¬°¥ø·~¡B¬F©²«D±`­«­n¥B­¢¤Áªº»Ý¨D¡C
¼Æ¾Ú¤ÀªR¬O«ü¥Î¾A·íªº¼Æ¾Ç¤èªk¹ï¦¬¶°¨Óªº¤j¶q¼Æ¾Ú¶i¦æ¤ÀªR¡A¥H¨D³Ì¤j¤Æ¦a¶}µo¼Æ¾Úªº¥\¯à¡Aµo´§¼Æ¾Úªº§@¥Î¡C¼Æ¾Ú¤ÀªR¬O¬°¤F´£¨ú¦³¥Î«H®§©M§Î¦¨µ²½×¦Ó¹ï¼Æ¾Ú¥[¥H¸Ô²Ó¬ã¨s¤Î·§¬AÁ`µ²ªº¹Lµ{¡C¼Æ¾Ú¤ÀªRªº¥Øªº¦b¤_§âÁôÂæb¤@¤j§å¬Ý¨ÓÂø¶ÃµL³¹ªº¼Æ¾Ú¤¤ªº«H®§¶°¤¤¡BµÑ¨ú©M´£·Ò¥X¨Ó¡C
Python¨ã¦³¶}·½¡B²¼ä¡B©öŪ¡B§Ö³t¤W¤â¡B¦h³õ´ºÀ³¥Î¥H¤Î§¹µ½ªº¥ÍºA©MªA°ÈÅé¨tµ¥ÀuÂI¡A¨Ï¨ä¦b¼Æ¾Ú¤ÀªR»P«õ±¸»â°ì¤¤ªº¦a¦ìÅã±o¤×¬°¬ð¥X¡APython¤w¸g·í¤¯¤£Åý¦a¦¨¬°¼Æ¾Ú¤ÀªR¤H­ûªº¤@§â¡§§Q¾¹¡¨¡C¦¹¥~¡APython¤]¼sªx¥Î¤_¨t²Î¹Bºû¡B¹Ï§Î³B²z¡B¼Æ¾Ç³B²z¡B¼Æ¾Ú®w½sµ{¡Bºôµ¸½sµ{¡B¦h´CÅéÀ³¥Î¡B¾÷¾¹¾Ç²ß©M¤H¤u´¼¯àµ¥¤è­±¡C
²Ä1³¹Python»y¨¥°ò¦¡C­º¥ý¤¶²ÐPython»y¨¥ªº¯SÂI¡APythonªº¦w¸Ë¤èªk¡A½s¼gPython¥N½Xªº¤è¦¡¡A­«ÂI¤¶²ÐPythonªº°ò¥»¼Æ¾ÚÃþ«¬ªº¾Þ§@©R¥O¡A¦}µ¹¥X¬ÛÀ³ªº¹ê¨Ò¡F¨ä¦¸¤¶²Ð¤H¾÷¥æ¤¬ªº¿é¤J©M¿é¥X¡Aµ¹¥XPythonªº¦h¼Ë¤Æ®æ¦¡¿é¥X¡FµM¦Z²³æ¤¶²ÐPython¦p¦óŪ¼g¤å¥ó¡F³Ì¦Z¤¶²ÐPython®wªº¾É¤J¥H¤ÎPythonÂX®i®wªº¦w¸Ë¡C
²Ä2³¹µ{§Ç±±¨îµ²ºc¡CÁ¿¸Ñ¥¬º¸ªí¹F¦¡¡BÃö¨t¹Bºâ²Å¡BÅÞ¿è¹Bºâ²Å¡A¿ï¾Üµ²ºc¤¤ªº³æ¦Vif»y¥y¡BÂù¦VifúQelse»y¥y¡B´O®MifúQelifúQelse»y¥y¡A±ø¥óªí¹F¦¡¡CÁ¿¸Ñwhile´`Àô¤Î´`Àô±±¨îµ¦²¤¡Afor´`Àô¡Bfor´`Àô»Prange¨ç¼Æªºµ²¦X¨Ï¥Î¡Abreak¡Bcontinue©Melse±±¨î´`Àôªº¤è¦¡¡C
²Ä3³¹¨ç¼Æ¡CÁ¿¸Ñ«ç¼Ë©w¸q¨ç¼Æ¡A¨ç¼Æªº½Õ¥Î¤è¦¡¡A°Ñ¼Æ¶Ç»¼¡A¨ç¼Æªº°Ñ¼ÆÃþ«¬¡A¨ç¼Æ¼Ò¶ô¤Æ¡Alambdaªí¹F¦¡¡AÅܶqªº§@¥Î°ì¡A¨ç¼Æªº»¼Âk½Õ¥Î¡A±`¥Î¤º¸m¨ç¼Æ¡C
²Ä4³¹¥¿«hªí¹F¦¡¡CÁ¿¸Ñ¥¿«hªí¹F¦¡ªººc¦¨¡A¥¿«hªí¹F¦¡ªºÃä¬É¤Ç°t¡A¥¿«hªí¹F¦¡ªº¤À²Õ¡B¿ï¾Ü©M¤Þ¥Î¤Ç°t¡A¥¿«hªí¹F¦¡ªº³g°ý¤Ç°t»PÃi´k¤Ç°t¡A¥¿«hªí¹F¦¡¼Ò¶ôre¡A¥¿«hªí¹F¦¡¹ï¶H©MMatch¹ï¶H¡C
²Ä5³¹¤å¥ó»P¤å¥ó§¨¾Þ§@¡CÁ¿¸Ñ¤å¥»¤å¥óªº¥´¶}¡BŪ¼g¥H¤Î¤å¥ó«ü°wªº©w¦ì¡A¤G¶i¨î¤å¥óªº¥´¶}»PŪ¼g¡Aos¡Bos.path¡Bshutil¹ï¤å¥ó»P¤å¥ó§¨ªº¾Þ§@¡Acsv¤å¥óªºÅª¨ú©M¼g¤J¡C
²Ä6³¹¥Îmatplotlib¹ê²{¼Æ¾Ú¥iµø¤Æ¡CÁ¿¸Ñmatplotlib¬[ºcªº¦ZºÝ¼h¡Bªí²{¼h¡B¸}¥»¼h¡A¨Ï¥Îmatplotlibªºpyplot¤l®wø¨î½u§Î¹Ï¡Bª½¤è¹Ï¡B±ø§Î¹Ï¡B»æ¹Ï¥H¤Î´²ÂI¹Ï¡C
²Ä7³¹numpy®w¡CÁ¿¸Ñndarray¼Æ²Õªº³Ð«Ø¡A¯S®íªºndarray¼Æ²Õªº³Ð«Ø¡Andarray¼Æ²Õªº¯Á¤Þ¡B¤Á¤ù©M¿ï¾Ü¡Andarray¼Æ²Õªº²Î­p­pºâ¡CÁ¿¸ÑÀH¾÷¼Æ¼Æ²Õ¡B¼Æ²Õªº°ò¥»¹Bºâ©M¼Æ²Õ¼Æ¾Ú¤å¥óªºÅª¼g¡C
²Ä8³¹pandas®w¡CÁ¿¸ÑSeries¹ï¶Hªº³Ð«Ø¡ASeries¹ï¶Hªº°ò¥»¹Bºâ¡ADataFrame¹ï¶Hªº³Ð«Ø¡BDataFrame¹ï¶Hªº¤¸¯Àªº¬d¬Ý©M­×§ï¡ADataFrame¹ï¶Hªº°ò¥»¹Bºâ¡Apandas¼Æ¾Ú¥iµø¤Æ¡ApandasŪ¼g¼Æ¾Ú¡C
²Ä9³¹¼Æ¾Ú½è¶q¤ÀªR¡CÁ¿¸Ñ¯Ê¥¢­È¤ÀªR¡B²§±`­È¤ÀªR¡B¤@­P©Ê¤ÀªR©M¼Æ¾Ú¯S©º¤ÀªR¡C
²Ä10³¹¼Æ¾Ú¹w³B²z¡CÁ¿¸Ñ¼Æ¾Ú²M¬~¡B¼Æ¾Ú¶°¦¨¡B¼Æ¾Ú³W­S¤Æ¡B¼Æ¾ÚÂ÷´²¤Æ¡B¼Æ¾ÚÂk¬ù©M¼Æ¾Ú­°ºû¡C
?3?Python¼Æ¾Ú¤ÀªR«e¨¥?3?²Ä11³¹¼Æ¾Ú¤ÀªR¤èªk¡CÁ¿¸Ñ¬Û¦ü©Ê©M¬Û²§©Êªº«×¶q¡B¤ÀÃþ¤ÀªR¤èªk¡B¦^Âk¤ÀªR¤èªk©M»EÃþ¤ÀªR¤èªk¡C
²Ä12³¹°ò¤_«H¥Î¥d®ø¶O¦æ¬°ªº»È¦æ«H¥Î­·ÀI¤ÀªR¡CÁ¿¸Ñ«H¥Î¥d®ø¶O¼Æ¾ÚÀò¨ú»P¼Æ¾Ú±´¯Á¤ÀªR¡A«H¥Î¥d®ø¶O¼Æ¾Ú¹w³B²z¡A«H¥Î¥d®ø¶O¼Æ¾Ú¯S©º¤ÀªR©M«È¤á«H¥Î¤ÀªR¡C
²Ä13³¹¤å¥»±¡·P¤ÀªR¡CÁ¿¸Ñ¤¤¤å¤Àµü¤èªk¡A¤å¥»ªºÃöÁäµü´£¨ú¡A¤å¥»±¡·P¤ÀªR©M¹B¥ÎLDA¼Ò«¬¹ï¹q°Ó¤â¾÷µû½×¶i¦æ¥DÃD¤ÀªR¡C
¥»®Ñ¥Ñ±ä¼ä¡B±Z¾]¡B±i§Ó¾W¡B®]¥É³Ó©M¤ý³Õ½s¼g¡A°Ñ»P¥»®Ñ½s¼gªºÁÙ¦³±i¤ý½Ã¡B®á¥Ã«Å©M³¯©ú¡C
¦b¥»®Ñªº½s¼g©M¥Xª©¹Lµ{¤¤±o¨ì¤F¾G¦{»´¤u·~¤j¾Ç¡B²MµØ¤j¾Ç¥Xª©ªÀªº¤j¤O¤ä«ù©MÀ°§U¡A¦b¦¹ªí¥Ü·PÁ¡C
¦b¥»®Ñªº½s¼g¹Lµ{¤¤¡A°Ñ¦Ò¤F¤j¶q±M·~®ÑÄy©Mºôµ¸¸ê®Æ¡A¦b¦¹¦V³o¨Ç§@ªÌªí¥Ü·PÁ¡C
¥Ñ¤_½s¼g®É¶¡­Ü«P¡A½sªÌ¤ô¥­¦³­­¡A®Ñ¤¤¥i¯à·|¦³¯ÊÂI©M¤£¨¬¡A¼ö¤Á´Á±æ±o¨ì±M®a©MŪªÌªº§åµû«ü¥¿¡A¦b¦¹ªí¥Ü·PÁ¡C±z¦pªG¹J¨ì¥ô¦ó°ÝÃD¡A©Î¦³§ó¦hªºÄ_¶Q·N¨£¡AÅwªïµo°e¶l¥ó¦Ü§@ªÌªº¶l½c¡A´Á«Ý¯à°÷¦¬¨ì±zªº¯u¼°¤ÏõX¡C
°t®M½Ò¥ó
½sªÌ2020¦~4¤ë¤_¾G¦{»´¤u·~¤j¾Ç¼Æ¾Ú¿Ä¦X»Pª¾ÃѤuµ{¹êÅç«Ç
¤º®e²¤¶¡G

Python§@¬°¤@ºØµ{§Ç³]­p»y¨¥¡A¾Ì­É¨ä²¼ä¡B©öŪ¤Î¥iÂX®i©Ê¤éº¥¦¨¬°µ{§Ç³]­p»â°ì³Æ¨ü±À±Rªº»y¨¥¡C¦P®É¡APython»y¨¥ªº¼Æ¾Ú¤ÀªR¥\¯à¤]³vº¥¬°¤j²³»{¥i¡C¥»®Ñ°ò¤_Python 3.6ºc«ØPython¶}µo¥­»O,¥þ­±²[»\Python°ò¦½sµ{ª¾ÃÑ¡F¸Ô¸Ñ¼Æ¾Ú¤ÀªRªº¼Æ¾Ú¯S©º¡B¼Æ¾Ú²M¬~¡B¼Æ¾Ú¶°¦¨¡B¼Æ¾Ú³W­S¤Æ¡B¼Æ¾ÚÂk¬ù¡B¼Æ¾Ú­°ºû¡B¼Æ¾Ú¤ÀªR«Ø¼Ò¡B¼Æ¾Ú¥iµø¤Æ©Mµû¦ôµ¥¬yµ{¡A²[»\¤FPython±`¥Îªº¼Æ¾Ú¤ÀªR¼Ò¶ô©M¼Æ¾Ú¤ÀªRºâªk¡C¥»®Ñ¥H13³¹ªº½g´T¤¶²ÐPython¼Æ¾Ú¤ÀªR¡A¥]¬APython»y¨¥°ò¦¡Bµ{§Ç±±¨îµ²ºc¡B¨ç¼Æ¡B¥¿«hªí¹F¦¡¡B¤å¥ó»P¤å¥ó§¨¾Þ§@¡B¥Îmatplotlib¹ê²{¼Æ¾Ú¥iµø¤Æ¡Bnumpy®w¡Bpandas®w¡B¼Æ¾Ú½è¶q¤ÀªR¡B¼Æ¾Ú¹w³B²z¡B¼Æ¾Ú¤ÀªR¤èªkµ¥¤º®e¡C
¥»®Ñ¥i§@¬°°ªµ¥°|®Õ¦U±M·~ªº¼Æ¾Ú¤ÀªR½Òµ{±Ð§÷¡A¤]¥i§@¬°¼Æ¾Ú¤ÀªR¤H­û¡B·Q±q¨Æ¼Æ¾Ú¤u§@ªºªì¾ÇªÌªº°Ñ¦Ò®Ñ¡C
¥Ø¿ý¡G

²Ä1³¹Python»y¨¥°ò¦1
1.1Python»y¨¥ªº¯SÂI1
1.2Pythonªº¦w¸Ë¤èªk2
1.3½s¼gPython¥N½Xªº¤è¦¡4
1.3.1¥Î¤å¥»½s¿è¾¹½s¼g¥N½X4
1.3.2¥Î©R¥O¦æ®æ¦¡ªºPythonShell½s¼g¥N½X7
1.3.3¥Î±a¹Ï§Î¬É­±ªºPythonShell½s¼g¥æ¤¬¦¡¥N½X8
1.3.4¥Î±a¹Ï§Î¬É­±ªºPythonShell½s¼gµ{§Ç¥N½X9
1.4Python¤¤ªºª`ÄÀ10
1.4.1Python¤¤ªº³æ¦æª`ÄÀ10
1.4.2Python¤¤ªº¦h¦æª`ÄÀ10
1.5Python¤¤ªº¹ï¶H11
1.5.1¹ï¶Hªº¨­¥÷11
1.5.2¹ï¶HªºÃþ«¬11
1.5.3¹ï¶Hªº­È11
1.5.4¹ï¶Hªº¤Þ¥Î12
1.5.5¹ï¶Hªº¦@¨É¤Þ¥Î12
1.5.6¹ï¶H¬O§_¬Ûµ¥ªº§PÂ_13
1.6Python¤¤ªºÅܶq13
1.7Python¤¤ªº°ò¥»¼Æ¾ÚÃþ«¬14
1.7.1number¡]¼Æ­È¡^14
1.7.2string¡]¦r²Å¦ê¡^16
1.7.3list¡]¦Cªí¡^28
1.7.4tuple¡]¤¸²Õ¡^37
1.7.5dictionary¡]¦r¨å¡^39
1.7.6set¡]¶°¦X¡^43
1.7.7Python¼Æ¾ÚÃþ«¬¤§¶¡ªºÂà´«46?3?Python¼Æ¾Ú¤ÀªR¥Ø¿ý?3?1.8Python¤¤ªº¹Bºâ²Å48
1.9Python¤¤ªº¼Æ¾Ú¿é¤J53
1.10Python¤¤ªº¼Æ¾Ú¿é¥X55
1.10.1ªí¹F¦¡»y¥y¿é¥X55
1.10.2print¡]¡^¨ç¼Æ¿é¥X55
1.10.3¦r²Å¦ê¹ï¶Hªºformat¤èªkªº®æ¦¡¤Æ¿é¥X58
1.11Python¤¤¤å¥óªº°ò¥»¾Þ§@60
1.12Python®wªº¾É¤J»PÂX®i®wªº¦w¸Ë61
1.12.1®wªº¾É¤J61
1.12.2ÂX®i®wªº¦w¸Ë62
²Ä2³¹µ{§Ç±±¨îµ²ºc64
2.1¥¬º¸ªí¹F¦¡64
2.2¿ï¾Üµ²ºc65
2.2.1³æ¦Vif¿ï¾Ü»y¥y65
2.2.2Âù¦VifúQelse¿ï¾Ü»y¥y66
2.2.3´O®Mif¿ï¾Ü»y¥y©M¦h¦VifúQelifúQelse¿ï¾Ü»y¥y67
2.3±ø¥óªí¹F¦¡69
2.4¿ï¾Üµ²ºcµ{§ÇÁ|¨Ò70
2.5while´`Àô71
2.6´`Àô±±¨îµ¦²¤76
2.6.1¥æ¤¬¦¡´`Àô76
2.6.2­ï§L¦¡´`Àô77
2.6.3¤å¥ó¦¡´`Àô77
2.7for´`Àô79
2.7.1for´`Àôªº°ò¥»¥Îªk79
2.7.2for´`Àô»Prange()¨ç¼Æªºµ²¦X¨Ï¥Î82
2.8´`Àô¤¤ªºbreak¡Bcontinue©Melse85
2.8.1¥Îbreak»y¥y´£«e²×¤î´`Àô85
2.8.2¥Îcontinue»y¥y´£«eµ²§ô¥»¦¸´`Àô86
2.8.3´`Àô»y¥yªºelse¤l¥y86
2.9´`Àôµ²ºcµ{§ÇÁ|¨Ò89
²Ä3³¹¨ç¼Æ92
3.1¬°¤°¤\­n¥Î¨ç¼Æ92
3.2«ç¼Ë©w¸q¨ç¼Æ93
3.3¨ç¼Æ½Õ¥Î95
3.3.1±aªð¦^­Èªº¨ç¼Æ½Õ¥Î95
3.3.2¤£±aªð¦^­Èªº¨ç¼Æ½Õ¥Î98
3.4¨ç¼Æ°Ñ¼Æ¶Ç»¼98
3.5¨ç¼Æ°Ñ¼ÆªºÃþ«¬99
3.5.1¦ì¸m°Ñ¼Æ99
3.5.2ÃöÁä¦r°Ñ¼Æ99
3.5.3Àq»{­È°Ñ¼Æ99
3.5.4¥iÅܪø«×°Ñ¼Æ100
3.5.5§Ç¦C¸Ñ¥]°Ñ¼Æ101
3.6¨ç¼Æ¼Ò¶ô¤Æ102
3.7lambdaªí¹F¦¡104
3.7.1lambda©Mdefªº°Ï§O104
3.7.2¦Û¥ÑÅܶq¹ïlambdaªí¹F¦¡ªº¼vÅT107
3.8Åܶqªº§@¥Î°ì107
3.8.1Åܶqªº§½³¡§@¥Î°ì108
3.8.2Åܶqªº¥þ§½§@¥Î°ì109
3.8.3Åܶqªº´O®M§@¥Î°ì110
3.9¨ç¼Æªº»¼Âk½Õ¥Î111
3.10±`¥Î¤º¸m¨ç¼Æ115
3.10.1map()¨ç¼Æ115
3.10.2reduce¡]¡^¨ç¼Æ115
3.10.3filter¡]¡^¨ç¼Æ117
3.11¨ç¼ÆÁ|¨Ò118
²Ä4³¹¥¿«hªí¹F¦¡121
4.1¤°¤\¬O¥¿«hªí¹F¦¡121
4.2¥¿«hªí¹F¦¡ªººc¦¨121
4.3¥¿«hªí¹F¦¡ªº¼Ò¦¡¤Ç°t124
4.3.1¥¿«hªí¹F¦¡ªºÃä¬É¤Ç°t124
4.3.2¥¿«hªí¹F¦¡ªº¤À²Õ¡B¿ï¾Ü©M¤Þ¥Î¤Ç°t125
4.3.3¥¿«hªí¹F¦¡ªº³g°ý¤Ç°t»PÃi´k¤Ç°t128
4.4¥¿«hªí¹F¦¡¼Ò¶ôre129
4.5¥¿«hªí¹F¦¡¹ï¶H133
4.6Match¹ï¶H135
4.7¥¿«hªí¹F¦¡Á|¨Ò138
²Ä5³¹¤å¥ó»P¤å¥ó§¨¾Þ§@140
5.1¤å¥»¤å¥ó140
5.1.1¤å¥»¤å¥óªº¦r²Å½s½X140
5.1.2¤å¥»¤å¥óªº¥´¶}142
5.1.3¤å¥»¤å¥óªº¼g¤J145
5.1.4¤å¥»¤å¥óªºÅª¨ú146
5.1.5¤å¥»¤å¥ó«ü°wªº©w¦ì148
5.2¤G¶i¨î¤å¥ó149
5.2.1¤G¶i¨î¤å¥óªº¼g¤J149
5.2.2¤G¶i¨î¤å¥óªºÅª¨ú150
5.2.3¦r¸`¼Æ¾ÚÃþ«¬ªºÂà´«150
5.3¤å¥ó»P¤å¥ó§¨¾Þ§@152
5.3.1¨Ï¥Îos¾Þ§@¤å¥ó»P¤å¥ó§¨152
5.3.2¨Ï¥Îos.path¾Þ§@¤å¥ó»P¤å¥ó§¨154
5.3.3¨Ï¥Îshutil¾Þ§@¤å¥ó»P¤å¥ó§¨156
5.4csv¤å¥óªºÅª¨ú©M¼g¤J158
5.4.1¨Ï¥Îcsv.reader()Ū¨úcsv¤å¥ó158
5.4.2¨Ï¥Îcsv.writer()¼g¤Jcsv¤å¥ó159
5.4.3¨Ï¥Îcsv.DictReader()Ū¨úcsv¤å¥ó161
5.4.4¨Ï¥Îcsv.DictWriter()¼g¤Jcsv¤å¥ó162
5.4.5csv¤å¥óªº®æ¦¡¤Æ°Ñ¼Æ163
5.4.6¦Û©w¸qdialect165
5.5¤å¥ó»P¤å¥ó¾Þ§@Á|¨Ò166
²Ä6³¹¥Îmatplotlib¹ê²{¼Æ¾Ú¥iµø¤Æ168
6.1matplotlib¬[ºc168
6.1.1¦ZºÝ¼h168
6.1.2ªí²{¼h169
6.1.3¸}¥»¼h171
6.2matplotlibªºpyplot¤l®w172
6.2.1ø¨î½u§Î¹Ï174
6.2.2ø¨îª½¤è¹Ï181
6.2.3ø¨î±ø§Î¹Ï183
6.2.4ø¨î»æ¹Ï187
6.2.5ø¨î´²ÂI¹Ï189
²Ä7³¹numpy®w192
7.1ndarray¦hºû¼Æ²Õ192
7.1.1³Ð«Øndarray¼Æ²Õ192
7.1.2³Ð«Ø¯S®íªºndarray¼Æ²Õ194
7.1.3ndarray¹ï¶Hªº¼Æ¾ÚÃþ«¬200
7.1.4ndarray¹ï¶HªºÄÝ©Ê201
7.2¼Æ²Õ¤¸¯Àªº¯Á¤Þ¡B¤Á¤ù©M¿ï¾Ü202
7.2.1¯Á¤Þ©M¤Á¤ù202
7.2.2¿ï¾Ü¼Æ²Õ¤¸¯Àªº¤èªk203
7.2.3ndarray¼Æ²Õªº§Îª¬ÅÜ´«207
7.3ÀH¾÷¼Æ¼Æ²Õ209
7.3.1²³æÀH¾÷¼Æ209
7.3.2ÀH¾÷¤À¥¬211
7.3.3ÀH¾÷±Æ¦C213
7.3.4ÀH¾÷¼Æ¥Í¦¨¾¹214
7.4¼Æ²Õªº¹Bºâ215
7.4.1ºâ³N¹Bºâ»P¨ç¼Æ¹Bºâ215
7.4.2²Î­p­pºâ218
7.4.3½u©Ê¥N¼Æ¹Bºâ221
7.4.4±Æ§Ç224
7.4.5¼Æ²Õ«÷±µ»P¤Á¤À225
7.5Ū¼g¼Æ¾Ú¤å¥ó228
7.5.1Ū¼g¤G¶i¨î¤å¥ó228
7.5.2Ū¼g¤å¥»¤å¥ó229
²Ä8³¹pandas®w231
8.1Series¹ï¶H231
8.1.1Series¹ï¶H³Ð«Ø231
8.1.2Series¹ï¶HªºÄÝ©Ê233
8.1.3Series¹ï¶Hªº¼Æ¾Ú¬d¬Ý©M­×§ï234
8.2Series¹ï¶Hªº°ò¥»¹Bºâ235
8.2.1ºâ³N¹Bºâ»P¨ç¼Æ¹Bºâ235
8.2.2Series¹ï¶H¤§¶¡ªº¹Bºâ237
8.3DataFrame¹ï¶H237
8.3.1DataFrame¹ï¶H³Ð«Ø237
8.3.2DataFrame¹ï¶HªºÄÝ©Ê240
8.3.3¬d¬Ý©M­×§ïDataFrame¹ï¶Hªº¤¸¯À242
8.3.4§PÂ_¤¸¯À¬O§_Äݤ_DataFrame¹ï¶H244
8.4DataFrame¹ï¶Hªº°ò¥»¹Bºâ245
8.4.1¼Æ¾Ú¿z¿ï245
8.4.2¼Æ¾Ú¹w³B²z247
8.4.3¼Æ¾Ú¹Bºâ»P±Æ§Ç264
8.4.4¼Æ¾Ç²Î­p270
8.4.5¼Æ¾Ú¤À²Õ»P»E¦X277
8.5pandas¼Æ¾Ú¥iµø¤Æ284
8.5.1ø¨î§é½u¹Ï286
8.5.2ø¨î±ø§Î¹Ï287
8.5.3ø¨îª½¤è¹Ï288
8.5.4ø¨î½c½u¹Ï290
8.5.5ø¨î°Ï°ì¹Ï290
8.5.6ø¨î´²ÂI¹Ï291
8.5.7ø¨î»æª¬¹Ï292
8.6pandasŪ¼g¼Æ¾Ú293
8.6.1Ū¼gcsv¤å¥ó293
8.6.2Ū¨útxt¤å¥ó296
8.6.3Ū¼gExcel¤å¥ó298
8.7¿z¿ï©M±Æ§Ç¼Æ¾Ú¹ê¨Ò302
²Ä9³¹¼Æ¾Ú½è¶q¤ÀªR304
9.1¯Ê¥¢­È¤ÀªR304
9.2²§±`­È¤ÀªR305
9.3¤@­P©Ê¤ÀªR308
9.4¼Æ¾Ú¯S©º¤ÀªR309
9.4.1¤À¥¬¤ÀªR309
9.4.2²Î­p¶q¤ÀªR309
9.4.3©P´Á©Ê¤ÀªR313
9.4.4¬ÛÃö©Ê¤ÀªR314
9.4.5°^Äm«×¤ÀªR316
²Ä10³¹¼Æ¾Ú¹w³B²z319
10.1¼Æ¾Ú²M¬~319
10.1.1³B²z¯Ê¥¢­È319
10.1.2¾¸Án¼Æ¾Ú³B²z329
10.2¼Æ¾Ú¶°¦¨331
10.2.1¹êÅéÃѧO°ÝÃD331
10.2.2Äݩʤ¾§E°ÝÃD332
10.2.3¤¸²Õ­«´_°ÝÃD332
10.2.4ÄݩʭȨR¬ð°ÝÃD333
10.3¼Æ¾Ú³W­S¤Æ333
10.3.1³Ì¤púQ³Ì¤j³W­S¤Æ333
10.3.2z¤À¼Æ³W­S¤Æ335
10.3.3¤p¼Æ©w¼Ð³W­S¤Æ335
10.4¼Æ¾ÚÂ÷´²¤Æ335
10.4.1µLºÊ·þÂ÷´²¤Æ336
10.4.2ºÊ·þÂ÷´²¤Æ337
10.5¼Æ¾ÚÂk¬ù338
10.5.1¹LÂoªk338
10.5.2¥]¸Ëªk340
10.5.3´O¤Jªk341
10.6¼Æ¾Ú­°ºû342
10.6.1¥D¦¨¤À¤ÀªR342
10.6.2½u©Ê§P§O¤ÀªRªk343
10.7¼Æ¾Ú¹w³B²zÁ|¨Ò344
²Ä11³¹¼Æ¾Ú¤ÀªR¤èªk350
11.1¬Û¦ü«×©M¬Û²§«×ªº«×¶q350
11.1.1¼Æ¾Ú¹ï¶H¤§¶¡ªº¬Û²§«×350
11.1.2¼Æ¾Ú¹ï¶H¤§¶¡ªº¬Û¦ü«×352
11.2¤ÀÃþ¤ÀªR¤èªk354
11.2.1¨Mµ¦¾ð¤ÀÃþ¤èªk355
11.2.2¾ë¯À¨©¸­´µ¤ÀÃþ¤èªk362
11.2.3¤ä«ù¦V¶q¾÷¤èªk369
11.3¦^Âk¤ÀªR¤èªk374
11.3.1¤@¤¸½u©Ê¦^Âk375
11.3.2¦h¤¸½u©Ê¦^Âk380
11.3.3ÅÞ¿è¦^Âk¤ÀªR386
11.4»EÃþ¤ÀªR¤èªk391
11.4.1»EÃþ¤ÀªRªº·§©À391
11.4.2¹º¤À»EÃþ¤èªk392
11.4.3¼h¦¸»EÃþ¤èªk397
11.4.4°ò¤_±K«×ªº»EÃþ¤èªk406
²Ä12³¹°ò¤_«H¥Î¥d®ø¶O¦æ¬°ªº»È¦æ«H¥Î­·ÀI¤ÀªR410
12.1­I´º¤¶²Ð410
12.2¼Æ¾ÚÀò¨ú»P¼Æ¾Ú±´¯Á¤ÀªR411
12.2.1¼Æ¾ÚÀò¨ú411
12.2.2¼Æ¾Ú±´¯Á¤ÀªR411
12.3¼Æ¾Ú¹w³B²z413
12.3.1¯Ê¥¢­È³B²z413
12.3.2²§±`­È³B²z415
12.4¼Æ¾Ú¯S©º¤ÀªR417
12.4.1³æÅܶq¤ÀªR417
12.4.2¦hÅܶq¤ÀªR419
12.5«È¤á«H¥Î¤ÀªR419
12.5.1¯S©º¿ï¾Ü419
12.5.2ÅÞ¿è¦^Âk¤ÀªR420
²Ä13³¹¤å¥»±¡·P¤ÀªR421
13.1¤¤¤å¤Àµü¤èªk421
13.1.1°ò¤_¦r²Å¦ê¤Ç°tªº¤Àµü¤èªk422
13.1.2°ò¤_²Î­pªº¤Àµü¤èªk425
13.1.3°ò¤_²z¸Ñªº¤Àµü¤èªk429
13.2¤å¥»ªºÃöÁäµü´£¨ú429
13.2.1°ò¤_¤åÀÉÀW²vªºÃöÁäµü´£¨ú429
13.2.2°ò¤_¤¬«H®§ªºÃöÁäµü´£¨ú429
13.2.3°ò¤_µüÀWúQ°f¤å¥óÀW²vªºÃöÁäµü´£¨ú430
13.3¤å¥»±¡·P¤ÀªR²¤¶435
13.3.1¤å¥»±¡·P¤ÀªRªº¼h¦¸435
13.3.2¤¤¤å¤å¥»±¡·P¶É¦V¤ÀªR436
13.4LDA¥DÃD¼Ò«¬438
13.4.1LDA¥DÃD¼Ò«¬¤¶²Ð438
13.4.2LDA¥DÃD¼Ò«¬ªº³Ì¤j¦üµM°Ñ¼Æ¦ô­p440
13.5¹B¥ÎLDA¼Ò«¬¹ï¹q°Ó¤â¾÷µû½×¶i¦æ¥DÃD¤ÀªR443
13.5.1¹q°Ó¤â¾÷µû½×¼Æ¾Úªºªö¶°443
13.5.2µû½×¹w³B²z450
13.5.3µû½×¤å¥»¤Àµü457
13.5.4¥h°£°±¥Îµü458
13.5.5ø¨îµû½×¤å¥»ªºµü¤ª¹Ï459
13.5.6µû½×¤å¥»±¡·P¶É¦V¤ÀªR461
13.5.7µû½×¤å¥»ªºLDA¥DÃD¤ÀªR466
°Ñ¦Ò¤åÄm469
§Ç¡G