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1-numpy_tutorial.ipynb 160 kB

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  1. {
  2. "cells": [
  3. {
  4. "cell_type": "markdown",
  5. "metadata": {},
  6. "source": [
  7. "# Numpy - 多维数据数组软件库"
  8. ]
  9. },
  10. {
  11. "cell_type": "markdown",
  12. "metadata": {},
  13. "source": [
  14. "NumPy是Python中科学计算的基本软件包。它是一个Python库,提供多维数组对象、各种派生类(如掩码数组和矩阵)和各种例程。\n",
  15. "* 用于对数组进行快速操作,包括数学、逻辑、形状操作、排序、选择、I/O、离散傅立叶变换、基本线性代数、基本统计操作、随机模拟等等。\n",
  16. "* Numpy作为Python数据计算的基础广泛应用到数据处理、信号处理、机器学习等领域。"
  17. ]
  18. },
  19. {
  20. "cell_type": "markdown",
  21. "metadata": {},
  22. "source": [
  23. "![cover image](images/numpy.png)"
  24. ]
  25. },
  26. {
  27. "cell_type": "markdown",
  28. "metadata": {},
  29. "source": [
  30. "## 1. 简介"
  31. ]
  32. },
  33. {
  34. "cell_type": "markdown",
  35. "metadata": {},
  36. "source": [
  37. "`numpy`包(模块)用在几乎所有使用Python的数值计算中,为Python提供高性能向量,矩阵和高维数据结构的模块。它是用C和Fortran语言实现的,因此当计算向量化数据(用向量和矩阵表示)时,性能非常的好。\n",
  38. "\n",
  39. "为了使用`numpy`模块,你先要像下面的例子一样导入这个模块:"
  40. ]
  41. },
  42. {
  43. "cell_type": "code",
  44. "execution_count": 3,
  45. "metadata": {},
  46. "outputs": [],
  47. "source": [
  48. "# 这一行的作用会在Matplotlib中介绍\n",
  49. "%matplotlib inline\n",
  50. "import matplotlib.pyplot as plt"
  51. ]
  52. },
  53. {
  54. "cell_type": "code",
  55. "execution_count": 4,
  56. "metadata": {},
  57. "outputs": [],
  58. "source": [
  59. "# 不建议用这种方式导入库\n",
  60. "from numpy import *"
  61. ]
  62. },
  63. {
  64. "cell_type": "code",
  65. "execution_count": 5,
  66. "metadata": {},
  67. "outputs": [],
  68. "source": [
  69. "# 建议使用这种方式\n",
  70. "import numpy as np"
  71. ]
  72. },
  73. {
  74. "cell_type": "markdown",
  75. "metadata": {},
  76. "source": [
  77. "**建议大家使用第二种导入方法** `import numpy as np`\n"
  78. ]
  79. },
  80. {
  81. "cell_type": "markdown",
  82. "metadata": {},
  83. "source": [
  84. "## 2. 创建`numpy`数组"
  85. ]
  86. },
  87. {
  88. "cell_type": "markdown",
  89. "metadata": {},
  90. "source": [
  91. "有很多种方法去初始化新的numpy数组, 例如从\n",
  92. "\n",
  93. "* Python列表或元组\n",
  94. "* 使用专门用来创建numpy arrays的函数,例如 `arange`, `linspace`等\n",
  95. "* 从文件中读取数据"
  96. ]
  97. },
  98. {
  99. "cell_type": "markdown",
  100. "metadata": {},
  101. "source": [
  102. "### 2.1 从列表中"
  103. ]
  104. },
  105. {
  106. "cell_type": "markdown",
  107. "metadata": {},
  108. "source": [
  109. "例如,为了从Python列表创建新的向量和矩阵我们可以用`numpy.array`函数。\n"
  110. ]
  111. },
  112. {
  113. "cell_type": "code",
  114. "execution_count": 6,
  115. "metadata": {},
  116. "outputs": [
  117. {
  118. "name": "stdout",
  119. "output_type": "stream",
  120. "text": [
  121. "[1, 2, 3, 4]\n"
  122. ]
  123. },
  124. {
  125. "data": {
  126. "text/plain": [
  127. "array([1, 2, 3, 4])"
  128. ]
  129. },
  130. "execution_count": 6,
  131. "metadata": {},
  132. "output_type": "execute_result"
  133. }
  134. ],
  135. "source": [
  136. "import numpy as np\n",
  137. "\n",
  138. "a = [1, 2, 3, 4]\n",
  139. "print(a)\n",
  140. "\n",
  141. "# a vector: the argument to the array function is a Python list\n",
  142. "v = np.array(a)\n",
  143. "\n",
  144. "v"
  145. ]
  146. },
  147. {
  148. "cell_type": "code",
  149. "execution_count": 8,
  150. "metadata": {},
  151. "outputs": [
  152. {
  153. "name": "stdout",
  154. "output_type": "stream",
  155. "text": [
  156. "[[1 2]\n",
  157. " [3 4]\n",
  158. " [5 6]]\n",
  159. "\n",
  160. "(3, 2)\n"
  161. ]
  162. }
  163. ],
  164. "source": [
  165. "# 矩阵:数组函数的参数是一个嵌套的Python列表\n",
  166. "M = np.array([[1, 2], [3, 4], [5, 6]])\n",
  167. "\n",
  168. "print(M)\n",
  169. "print()\n",
  170. "print(M.shape)"
  171. ]
  172. },
  173. {
  174. "cell_type": "code",
  175. "execution_count": 9,
  176. "metadata": {},
  177. "outputs": [
  178. {
  179. "name": "stdout",
  180. "output_type": "stream",
  181. "text": [
  182. "[[[ 1 2]\n",
  183. " [ 3 4]\n",
  184. " [ 5 6]]\n",
  185. "\n",
  186. " [[ 3 4]\n",
  187. " [ 5 6]\n",
  188. " [ 7 8]]\n",
  189. "\n",
  190. " [[ 5 6]\n",
  191. " [ 7 8]\n",
  192. " [ 9 10]]\n",
  193. "\n",
  194. " [[ 7 8]\n",
  195. " [ 9 10]\n",
  196. " [11 12]]]\n",
  197. "\n",
  198. "(4, 3, 2)\n"
  199. ]
  200. }
  201. ],
  202. "source": [
  203. "M = np.array([[[1,2], [3,4], [5,6]], \\\n",
  204. " [[3,4], [5,6], [7,8]], \\\n",
  205. " [[5,6], [7,8], [9,10]], \\\n",
  206. " [[7,8], [9,10], [11,12]]])\n",
  207. "print(M)\n",
  208. "print()\n",
  209. "print(M.shape)"
  210. ]
  211. },
  212. {
  213. "cell_type": "markdown",
  214. "metadata": {},
  215. "source": [
  216. "`v`和`M`两个都是属于`numpy`模块提供的`ndarray`类型。"
  217. ]
  218. },
  219. {
  220. "cell_type": "code",
  221. "execution_count": 10,
  222. "metadata": {},
  223. "outputs": [
  224. {
  225. "data": {
  226. "text/plain": [
  227. "(numpy.ndarray, numpy.ndarray)"
  228. ]
  229. },
  230. "execution_count": 10,
  231. "metadata": {},
  232. "output_type": "execute_result"
  233. }
  234. ],
  235. "source": [
  236. "type(v), type(M)"
  237. ]
  238. },
  239. {
  240. "cell_type": "markdown",
  241. "metadata": {},
  242. "source": [
  243. "`v`和`M`之间的区别仅在于他们的形状。我们可以用属性函数`ndarray.shape`得到数组形状的信息。"
  244. ]
  245. },
  246. {
  247. "cell_type": "code",
  248. "execution_count": 11,
  249. "metadata": {},
  250. "outputs": [
  251. {
  252. "data": {
  253. "text/plain": [
  254. "(4,)"
  255. ]
  256. },
  257. "execution_count": 11,
  258. "metadata": {},
  259. "output_type": "execute_result"
  260. }
  261. ],
  262. "source": [
  263. "v.shape"
  264. ]
  265. },
  266. {
  267. "cell_type": "code",
  268. "execution_count": 12,
  269. "metadata": {},
  270. "outputs": [
  271. {
  272. "data": {
  273. "text/plain": [
  274. "(4, 3, 2)"
  275. ]
  276. },
  277. "execution_count": 12,
  278. "metadata": {},
  279. "output_type": "execute_result"
  280. }
  281. ],
  282. "source": [
  283. "M.shape"
  284. ]
  285. },
  286. {
  287. "cell_type": "markdown",
  288. "metadata": {},
  289. "source": [
  290. "通过属性函数`ndarray.size`我们可以得到数组中元素的个数"
  291. ]
  292. },
  293. {
  294. "cell_type": "code",
  295. "execution_count": 13,
  296. "metadata": {},
  297. "outputs": [
  298. {
  299. "data": {
  300. "text/plain": [
  301. "24"
  302. ]
  303. },
  304. "execution_count": 13,
  305. "metadata": {},
  306. "output_type": "execute_result"
  307. }
  308. ],
  309. "source": [
  310. "M.size"
  311. ]
  312. },
  313. {
  314. "cell_type": "markdown",
  315. "metadata": {},
  316. "source": [
  317. "同样,我们可以用函数`numpy.shape`和`numpy.size`"
  318. ]
  319. },
  320. {
  321. "cell_type": "code",
  322. "execution_count": 14,
  323. "metadata": {},
  324. "outputs": [
  325. {
  326. "data": {
  327. "text/plain": [
  328. "(4, 3, 2)"
  329. ]
  330. },
  331. "execution_count": 14,
  332. "metadata": {},
  333. "output_type": "execute_result"
  334. }
  335. ],
  336. "source": [
  337. "np.shape(M)"
  338. ]
  339. },
  340. {
  341. "cell_type": "code",
  342. "execution_count": 15,
  343. "metadata": {},
  344. "outputs": [
  345. {
  346. "data": {
  347. "text/plain": [
  348. "24"
  349. ]
  350. },
  351. "execution_count": 15,
  352. "metadata": {},
  353. "output_type": "execute_result"
  354. }
  355. ],
  356. "source": [
  357. "np.size(M)"
  358. ]
  359. },
  360. {
  361. "cell_type": "markdown",
  362. "metadata": {},
  363. "source": [
  364. "到目前为止`numpy.ndarray`看起来非常像Python列表(或嵌套列表)。为什么不简单地使用Python列表来进行计算,而不是创建一个新的数组类型?\n",
  365. "\n",
  366. "下面有几个原因:\n",
  367. "\n",
  368. "* Python列表非常普遍。它们可以包含任何类型的对象。它们是动态类型的。它们不支持矩阵和点乘等数学函数。由于动态类型的关系,为Python列表实现这类函数的效率不是很高。\n",
  369. "* Numpy数组是**静态类型的**和**同构的**。元素的类型是在创建数组时确定的。\n",
  370. "* Numpy数组是内存高效的。\n",
  371. "* 由于是静态类型,数学函数的快速实现,比如“numpy”数组的乘法和加法可以用编译语言实现(使用C和Fortran).\n",
  372. "\n",
  373. "利用`ndarray`的属性函数`dtype`(数据类型),我们可以看出数组的数据是那种类型。\n"
  374. ]
  375. },
  376. {
  377. "cell_type": "code",
  378. "execution_count": 16,
  379. "metadata": {},
  380. "outputs": [
  381. {
  382. "data": {
  383. "text/plain": [
  384. "dtype('int64')"
  385. ]
  386. },
  387. "execution_count": 16,
  388. "metadata": {},
  389. "output_type": "execute_result"
  390. }
  391. ],
  392. "source": [
  393. "M.dtype"
  394. ]
  395. },
  396. {
  397. "cell_type": "markdown",
  398. "metadata": {},
  399. "source": [
  400. "如果我们试图给一个numpy数组中的元素赋一个错误类型的值,我们会得到一个错误:"
  401. ]
  402. },
  403. {
  404. "cell_type": "code",
  405. "execution_count": 17,
  406. "metadata": {},
  407. "outputs": [
  408. {
  409. "ename": "ValueError",
  410. "evalue": "invalid literal for int() with base 10: 'hello'",
  411. "output_type": "error",
  412. "traceback": [
  413. "\u001b[0;31m------------------------------------------------------------\u001b[0m",
  414. "\u001b[0;31mValueError\u001b[0m Traceback (most recent call last)",
  415. "\u001b[0;32m<ipython-input-17-3eecc5e8509b>\u001b[0m in \u001b[0;36m<module>\u001b[0;34m\u001b[0m\n\u001b[0;32m----> 1\u001b[0;31m \u001b[0mM\u001b[0m\u001b[0;34m[\u001b[0m\u001b[0;36m0\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;36m0\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;36m0\u001b[0m\u001b[0;34m]\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0;34m\"hello\"\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m",
  416. "\u001b[0;31mValueError\u001b[0m: invalid literal for int() with base 10: 'hello'"
  417. ]
  418. }
  419. ],
  420. "source": [
  421. "M[0,0,0] = \"hello\""
  422. ]
  423. },
  424. {
  425. "cell_type": "markdown",
  426. "metadata": {},
  427. "source": [
  428. "如果我们想的话,我们可以利用`dtype`关键字参数显式地定义我们创建的数组数据类型:"
  429. ]
  430. },
  431. {
  432. "cell_type": "code",
  433. "execution_count": 18,
  434. "metadata": {},
  435. "outputs": [
  436. {
  437. "data": {
  438. "text/plain": [
  439. "array([[1.+0.j, 2.+0.j],\n",
  440. " [3.+0.j, 4.+0.j]])"
  441. ]
  442. },
  443. "execution_count": 18,
  444. "metadata": {},
  445. "output_type": "execute_result"
  446. }
  447. ],
  448. "source": [
  449. "M = np.array([[1, 2], [3, 4]], dtype=complex)\n",
  450. "\n",
  451. "M"
  452. ]
  453. },
  454. {
  455. "cell_type": "markdown",
  456. "metadata": {},
  457. "source": [
  458. "常规可以伴随`dtype`使用的数据类型是:`int`, `float`, `complex`, `bool`, `object`等\n",
  459. "\n",
  460. "我们也可以显式地定义数据类型的大小,例如:`int64`, `int16`, `float128`, `complex128`。"
  461. ]
  462. },
  463. {
  464. "cell_type": "markdown",
  465. "metadata": {},
  466. "source": [
  467. "### 2.2 使用数组生成函数"
  468. ]
  469. },
  470. {
  471. "cell_type": "markdown",
  472. "metadata": {},
  473. "source": [
  474. "对于较大的数组,使用显式的Python列表人为地初始化数据是不切实际的。除此之外我们可以用`numpy`的很多函数得到不同类型的数组。有一些常用的分别是:"
  475. ]
  476. },
  477. {
  478. "cell_type": "markdown",
  479. "metadata": {},
  480. "source": [
  481. "#### arange"
  482. ]
  483. },
  484. {
  485. "cell_type": "code",
  486. "execution_count": 21,
  487. "metadata": {},
  488. "outputs": [
  489. {
  490. "name": "stdout",
  491. "output_type": "stream",
  492. "text": [
  493. "[0 1 2 3 4 5 6 7 8 9]\n",
  494. "[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]\n"
  495. ]
  496. }
  497. ],
  498. "source": [
  499. "# 创建一个范围\n",
  500. "\n",
  501. "x = np.arange(0, 10, 1) # 参数:start, stop, step: \n",
  502. "y = range(0, 10, 1)\n",
  503. "print(x)\n",
  504. "print(list(y))"
  505. ]
  506. },
  507. {
  508. "cell_type": "code",
  509. "execution_count": 22,
  510. "metadata": {},
  511. "outputs": [
  512. {
  513. "data": {
  514. "text/plain": [
  515. "array([-1.00000000e+00, -9.00000000e-01, -8.00000000e-01, -7.00000000e-01,\n",
  516. " -6.00000000e-01, -5.00000000e-01, -4.00000000e-01, -3.00000000e-01,\n",
  517. " -2.00000000e-01, -1.00000000e-01, -2.22044605e-16, 1.00000000e-01,\n",
  518. " 2.00000000e-01, 3.00000000e-01, 4.00000000e-01, 5.00000000e-01,\n",
  519. " 6.00000000e-01, 7.00000000e-01, 8.00000000e-01, 9.00000000e-01])"
  520. ]
  521. },
  522. "execution_count": 22,
  523. "metadata": {},
  524. "output_type": "execute_result"
  525. }
  526. ],
  527. "source": [
  528. "x = np.arange(-1, 1, 0.1)\n",
  529. "\n",
  530. "x"
  531. ]
  532. },
  533. {
  534. "cell_type": "markdown",
  535. "metadata": {},
  536. "source": [
  537. "#### linspace and logspace"
  538. ]
  539. },
  540. {
  541. "cell_type": "code",
  542. "execution_count": 23,
  543. "metadata": {},
  544. "outputs": [
  545. {
  546. "data": {
  547. "text/plain": [
  548. "array([ 0. , 2.5, 5. , 7.5, 10. ])"
  549. ]
  550. },
  551. "execution_count": 23,
  552. "metadata": {},
  553. "output_type": "execute_result"
  554. }
  555. ],
  556. "source": [
  557. "# 使用linspace两边的端点也被包含进去\n",
  558. "np.linspace(0, 10, 5)"
  559. ]
  560. },
  561. {
  562. "cell_type": "code",
  563. "execution_count": 24,
  564. "metadata": {},
  565. "outputs": [
  566. {
  567. "data": {
  568. "text/plain": [
  569. "array([1.00000000e+00, 3.03773178e+00, 9.22781435e+00, 2.80316249e+01,\n",
  570. " 8.51525577e+01, 2.58670631e+02, 7.85771994e+02, 2.38696456e+03,\n",
  571. " 7.25095809e+03, 2.20264658e+04])"
  572. ]
  573. },
  574. "execution_count": 24,
  575. "metadata": {},
  576. "output_type": "execute_result"
  577. }
  578. ],
  579. "source": [
  580. "np.logspace(0, 10, 10, base=np.e)"
  581. ]
  582. },
  583. {
  584. "cell_type": "markdown",
  585. "metadata": {},
  586. "source": [
  587. "#### mgrid"
  588. ]
  589. },
  590. {
  591. "cell_type": "code",
  592. "execution_count": 29,
  593. "metadata": {},
  594. "outputs": [],
  595. "source": [
  596. "y, x = np.mgrid[0:5, 0:5] # 和MATLAB中的meshgrid类似"
  597. ]
  598. },
  599. {
  600. "cell_type": "code",
  601. "execution_count": 26,
  602. "metadata": {},
  603. "outputs": [
  604. {
  605. "data": {
  606. "text/plain": [
  607. "array([[0, 1, 2, 3, 4],\n",
  608. " [0, 1, 2, 3, 4],\n",
  609. " [0, 1, 2, 3, 4],\n",
  610. " [0, 1, 2, 3, 4],\n",
  611. " [0, 1, 2, 3, 4]])"
  612. ]
  613. },
  614. "execution_count": 26,
  615. "metadata": {},
  616. "output_type": "execute_result"
  617. }
  618. ],
  619. "source": [
  620. "x"
  621. ]
  622. },
  623. {
  624. "cell_type": "code",
  625. "execution_count": 27,
  626. "metadata": {},
  627. "outputs": [
  628. {
  629. "data": {
  630. "text/plain": [
  631. "array([[0, 0, 0, 0, 0],\n",
  632. " [1, 1, 1, 1, 1],\n",
  633. " [2, 2, 2, 2, 2],\n",
  634. " [3, 3, 3, 3, 3],\n",
  635. " [4, 4, 4, 4, 4]])"
  636. ]
  637. },
  638. "execution_count": 27,
  639. "metadata": {},
  640. "output_type": "execute_result"
  641. }
  642. ],
  643. "source": [
  644. "y"
  645. ]
  646. },
  647. {
  648. "cell_type": "markdown",
  649. "metadata": {},
  650. "source": [
  651. "#### random data"
  652. ]
  653. },
  654. {
  655. "cell_type": "code",
  656. "execution_count": 30,
  657. "metadata": {},
  658. "outputs": [],
  659. "source": [
  660. "from numpy import random"
  661. ]
  662. },
  663. {
  664. "cell_type": "code",
  665. "execution_count": 31,
  666. "metadata": {},
  667. "outputs": [
  668. {
  669. "data": {
  670. "text/plain": [
  671. "array([[[0.34933999, 0.78232989],\n",
  672. " [0.07449912, 0.57488499],\n",
  673. " [0.28079982, 0.65921106],\n",
  674. " [0.71455261, 0.88375022]],\n",
  675. "\n",
  676. " [[0.00794753, 0.41466795],\n",
  677. " [0.21029866, 0.12968518],\n",
  678. " [0.98595403, 0.47316115],\n",
  679. " [0.50330171, 0.87038751]],\n",
  680. "\n",
  681. " [[0.10672402, 0.09192073],\n",
  682. " [0.48656172, 0.16710676],\n",
  683. " [0.46217936, 0.09035176],\n",
  684. " [0.19623019, 0.73555862]],\n",
  685. "\n",
  686. " [[0.75468369, 0.76685125],\n",
  687. " [0.68205367, 0.99455825],\n",
  688. " [0.23566499, 0.431837 ],\n",
  689. " [0.86997877, 0.52098775]],\n",
  690. "\n",
  691. " [[0.99353122, 0.72868516],\n",
  692. " [0.74724343, 0.63273805],\n",
  693. " [0.16946554, 0.06170885],\n",
  694. " [0.28687951, 0.6671094 ]]])"
  695. ]
  696. },
  697. "execution_count": 31,
  698. "metadata": {},
  699. "output_type": "execute_result"
  700. }
  701. ],
  702. "source": [
  703. "# 均匀随机数在[0,1)区间\n",
  704. "random.rand(5,4,2)"
  705. ]
  706. },
  707. {
  708. "cell_type": "code",
  709. "execution_count": 33,
  710. "metadata": {},
  711. "outputs": [
  712. {
  713. "data": {
  714. "text/plain": [
  715. "array([[-0.47727318, -2.11212891, -0.10766674, 0.88444896],\n",
  716. " [-1.66157402, 1.80598739, 0.20359836, -1.1118912 ],\n",
  717. " [ 0.24731274, 0.0396289 , -0.54177391, 0.38118806],\n",
  718. " [-0.15762081, -1.05826785, 0.91565702, 0.79167261]])"
  719. ]
  720. },
  721. "execution_count": 33,
  722. "metadata": {},
  723. "output_type": "execute_result"
  724. }
  725. ],
  726. "source": [
  727. "# 标准正态分布随机数\n",
  728. "random.randn(4,4)"
  729. ]
  730. },
  731. {
  732. "cell_type": "markdown",
  733. "metadata": {},
  734. "source": [
  735. "#### diag"
  736. ]
  737. },
  738. {
  739. "cell_type": "code",
  740. "execution_count": 34,
  741. "metadata": {},
  742. "outputs": [
  743. {
  744. "data": {
  745. "text/plain": [
  746. "array([[1, 0, 0],\n",
  747. " [0, 2, 0],\n",
  748. " [0, 0, 3]])"
  749. ]
  750. },
  751. "execution_count": 34,
  752. "metadata": {},
  753. "output_type": "execute_result"
  754. }
  755. ],
  756. "source": [
  757. "# 一个对角矩阵\n",
  758. "np.diag([1,2,3])"
  759. ]
  760. },
  761. {
  762. "cell_type": "code",
  763. "execution_count": 35,
  764. "metadata": {},
  765. "outputs": [
  766. {
  767. "data": {
  768. "text/plain": [
  769. "array([[0, 0, 0, 0],\n",
  770. " [1, 0, 0, 0],\n",
  771. " [0, 2, 0, 0],\n",
  772. " [0, 0, 3, 0]])"
  773. ]
  774. },
  775. "execution_count": 35,
  776. "metadata": {},
  777. "output_type": "execute_result"
  778. }
  779. ],
  780. "source": [
  781. "# 从主对角线偏移的对角线\n",
  782. "np.diag([1,2,3], k=-1) "
  783. ]
  784. },
  785. {
  786. "cell_type": "markdown",
  787. "metadata": {},
  788. "source": [
  789. "#### zeros and ones"
  790. ]
  791. },
  792. {
  793. "cell_type": "code",
  794. "execution_count": 36,
  795. "metadata": {},
  796. "outputs": [
  797. {
  798. "data": {
  799. "text/plain": [
  800. "array([[0., 0., 0.],\n",
  801. " [0., 0., 0.],\n",
  802. " [0., 0., 0.]])"
  803. ]
  804. },
  805. "execution_count": 36,
  806. "metadata": {},
  807. "output_type": "execute_result"
  808. }
  809. ],
  810. "source": [
  811. "np.zeros((3,3))"
  812. ]
  813. },
  814. {
  815. "cell_type": "code",
  816. "execution_count": 39,
  817. "metadata": {},
  818. "outputs": [
  819. {
  820. "data": {
  821. "text/plain": [
  822. "array([[1., 1., 1.],\n",
  823. " [1., 1., 1.],\n",
  824. " [1., 1., 1.]])"
  825. ]
  826. },
  827. "execution_count": 39,
  828. "metadata": {},
  829. "output_type": "execute_result"
  830. }
  831. ],
  832. "source": [
  833. "np.ones((3,3))"
  834. ]
  835. },
  836. {
  837. "cell_type": "markdown",
  838. "metadata": {},
  839. "source": [
  840. "## 3. 文件 I/O"
  841. ]
  842. },
  843. {
  844. "cell_type": "markdown",
  845. "metadata": {},
  846. "source": [
  847. "### 3.1 逗号分隔值 (CSV)"
  848. ]
  849. },
  850. {
  851. "cell_type": "markdown",
  852. "metadata": {},
  853. "source": [
  854. "对于数据文件来说一种非常常见的文件格式是逗号分割值(CSV),或者有关的格式例如TSV(制表符分隔的值)。为了从这些文件中读取数据到Numpy数组中,我们可以用`numpy.genfromtxt`函数。例如:"
  855. ]
  856. },
  857. {
  858. "cell_type": "code",
  859. "execution_count": 40,
  860. "metadata": {},
  861. "outputs": [
  862. {
  863. "name": "stdout",
  864. "output_type": "stream",
  865. "text": [
  866. "1800 1 1 -6.1 -6.1 -6.1 1\r\n",
  867. "1800 1 2 -15.4 -15.4 -15.4 1\r\n",
  868. "1800 1 3 -15.0 -15.0 -15.0 1\r\n",
  869. "1800 1 4 -19.3 -19.3 -19.3 1\r\n",
  870. "1800 1 5 -16.8 -16.8 -16.8 1\r\n",
  871. "1800 1 6 -11.4 -11.4 -11.4 1\r\n",
  872. "1800 1 7 -7.6 -7.6 -7.6 1\r\n",
  873. "1800 1 8 -7.1 -7.1 -7.1 1\r\n",
  874. "1800 1 9 -10.1 -10.1 -10.1 1\r\n",
  875. "1800 1 10 -9.5 -9.5 -9.5 1\r\n"
  876. ]
  877. }
  878. ],
  879. "source": [
  880. "!head stockholm_td_adj.dat"
  881. ]
  882. },
  883. {
  884. "cell_type": "code",
  885. "execution_count": 42,
  886. "metadata": {},
  887. "outputs": [],
  888. "source": [
  889. "import numpy as np\n",
  890. "\n",
  891. "data = np.genfromtxt('stockholm_td_adj.dat')"
  892. ]
  893. },
  894. {
  895. "cell_type": "code",
  896. "execution_count": 43,
  897. "metadata": {},
  898. "outputs": [
  899. {
  900. "data": {
  901. "text/plain": [
  902. "(77431, 7)"
  903. ]
  904. },
  905. "execution_count": 43,
  906. "metadata": {},
  907. "output_type": "execute_result"
  908. }
  909. ],
  910. "source": [
  911. "data.shape"
  912. ]
  913. },
  914. {
  915. "cell_type": "code",
  916. "execution_count": 44,
  917. "metadata": {},
  918. "outputs": [
  919. {
  920. "data": {
  921. 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\n",
  922. "text/plain": [
  923. "<Figure size 1008x288 with 1 Axes>"
  924. ]
  925. },
  926. "metadata": {
  927. "needs_background": "light"
  928. },
  929. "output_type": "display_data"
  930. }
  931. ],
  932. "source": [
  933. "%matplotlib inline\n",
  934. "import matplotlib.pyplot as plt\n",
  935. "\n",
  936. "fig, ax = plt.subplots(figsize=(14,4))\n",
  937. "ax.plot(data[:,0]+data[:,1]/12.0+data[:,2]/365, data[:,5])\n",
  938. "ax.axis('tight')\n",
  939. "ax.set_title('tempeatures in Stockholm')\n",
  940. "ax.set_xlabel('year')\n",
  941. "ax.set_ylabel('temperature (C)');"
  942. ]
  943. },
  944. {
  945. "cell_type": "markdown",
  946. "metadata": {},
  947. "source": [
  948. "使用`numpy.savetxt`我们可以将一个Numpy数组以CSV格式存入:"
  949. ]
  950. },
  951. {
  952. "cell_type": "code",
  953. "execution_count": 45,
  954. "metadata": {},
  955. "outputs": [
  956. {
  957. "data": {
  958. "text/plain": [
  959. "array([[0.81040687, 0.69606128, 0.42944323],\n",
  960. " [0.99033137, 0.60317056, 0.82435046],\n",
  961. " [0.70689463, 0.05604562, 0.53930095]])"
  962. ]
  963. },
  964. "execution_count": 45,
  965. "metadata": {},
  966. "output_type": "execute_result"
  967. }
  968. ],
  969. "source": [
  970. "M = np.random.rand(3,3)\n",
  971. "\n",
  972. "M"
  973. ]
  974. },
  975. {
  976. "cell_type": "code",
  977. "execution_count": 46,
  978. "metadata": {},
  979. "outputs": [],
  980. "source": [
  981. "np.savetxt(\"random-matrix.csv\", M)"
  982. ]
  983. },
  984. {
  985. "cell_type": "code",
  986. "execution_count": 47,
  987. "metadata": {},
  988. "outputs": [
  989. {
  990. "name": "stdout",
  991. "output_type": "stream",
  992. "text": [
  993. "8.104068706347091755e-01 6.960612833436454761e-01 4.294432296218351208e-01\r\n",
  994. "9.903313699879116028e-01 6.031705643128616456e-01 8.243504620080480683e-01\r\n",
  995. "7.068946259685966460e-01 5.604562284444569720e-02 5.393009542524886957e-01\r\n"
  996. ]
  997. }
  998. ],
  999. "source": [
  1000. "!cat random-matrix.csv"
  1001. ]
  1002. },
  1003. {
  1004. "cell_type": "code",
  1005. "execution_count": 48,
  1006. "metadata": {},
  1007. "outputs": [
  1008. {
  1009. "name": "stdout",
  1010. "output_type": "stream",
  1011. "text": [
  1012. "0.81041 0.69606 0.42944\r\n",
  1013. "0.99033 0.60317 0.82435\r\n",
  1014. "0.70689 0.05605 0.53930\r\n"
  1015. ]
  1016. }
  1017. ],
  1018. "source": [
  1019. "np.savetxt(\"random-matrix.csv\", M, fmt='%.5f') # fmt 确定格式\n",
  1020. "\n",
  1021. "!cat random-matrix.csv"
  1022. ]
  1023. },
  1024. {
  1025. "cell_type": "markdown",
  1026. "metadata": {},
  1027. "source": [
  1028. "### 3.2 numpy 的本地文件格式"
  1029. ]
  1030. },
  1031. {
  1032. "cell_type": "markdown",
  1033. "metadata": {},
  1034. "source": [
  1035. "当存储和读取numpy数组时非常有用。利用函数`numpy.save`和`numpy.load`:"
  1036. ]
  1037. },
  1038. {
  1039. "cell_type": "code",
  1040. "execution_count": 49,
  1041. "metadata": {},
  1042. "outputs": [
  1043. {
  1044. "name": "stdout",
  1045. "output_type": "stream",
  1046. "text": [
  1047. "random-matrix.npy: data\r\n"
  1048. ]
  1049. }
  1050. ],
  1051. "source": [
  1052. "np.save(\"random-matrix.npy\", M)\n",
  1053. "\n",
  1054. "!file random-matrix.npy"
  1055. ]
  1056. },
  1057. {
  1058. "cell_type": "code",
  1059. "execution_count": 50,
  1060. "metadata": {},
  1061. "outputs": [
  1062. {
  1063. "data": {
  1064. "text/plain": [
  1065. "array([[0.81040687, 0.69606128, 0.42944323],\n",
  1066. " [0.99033137, 0.60317056, 0.82435046],\n",
  1067. " [0.70689463, 0.05604562, 0.53930095]])"
  1068. ]
  1069. },
  1070. "execution_count": 50,
  1071. "metadata": {},
  1072. "output_type": "execute_result"
  1073. }
  1074. ],
  1075. "source": [
  1076. "np.load(\"random-matrix.npy\")"
  1077. ]
  1078. },
  1079. {
  1080. "cell_type": "markdown",
  1081. "metadata": {},
  1082. "source": [
  1083. "## 4. 更多Numpy数组的性质"
  1084. ]
  1085. },
  1086. {
  1087. "cell_type": "code",
  1088. "execution_count": 52,
  1089. "metadata": {},
  1090. "outputs": [
  1091. {
  1092. "name": "stdout",
  1093. "output_type": "stream",
  1094. "text": [
  1095. "int64\n",
  1096. "8\n"
  1097. ]
  1098. }
  1099. ],
  1100. "source": [
  1101. "M = np.array([[1, 2], [3, 4], [5, 6]])\n",
  1102. "\n",
  1103. "print(M.dtype)\n",
  1104. "print(M.itemsize) # 每个元素的字节数\n"
  1105. ]
  1106. },
  1107. {
  1108. "cell_type": "code",
  1109. "execution_count": 53,
  1110. "metadata": {},
  1111. "outputs": [
  1112. {
  1113. "data": {
  1114. "text/plain": [
  1115. "48"
  1116. ]
  1117. },
  1118. "execution_count": 53,
  1119. "metadata": {},
  1120. "output_type": "execute_result"
  1121. }
  1122. ],
  1123. "source": [
  1124. "M.nbytes # 字节数"
  1125. ]
  1126. },
  1127. {
  1128. "cell_type": "code",
  1129. "execution_count": 54,
  1130. "metadata": {},
  1131. "outputs": [
  1132. {
  1133. "data": {
  1134. "text/plain": [
  1135. "2"
  1136. ]
  1137. },
  1138. "execution_count": 54,
  1139. "metadata": {},
  1140. "output_type": "execute_result"
  1141. }
  1142. ],
  1143. "source": [
  1144. "M.ndim # 维度"
  1145. ]
  1146. },
  1147. {
  1148. "cell_type": "markdown",
  1149. "metadata": {},
  1150. "source": [
  1151. "## 5. 操作数组"
  1152. ]
  1153. },
  1154. {
  1155. "cell_type": "markdown",
  1156. "metadata": {},
  1157. "source": [
  1158. "### 5.1 索引"
  1159. ]
  1160. },
  1161. {
  1162. "cell_type": "markdown",
  1163. "metadata": {},
  1164. "source": [
  1165. "我们可以用方括号和下标索引元素:"
  1166. ]
  1167. },
  1168. {
  1169. "cell_type": "code",
  1170. "execution_count": 55,
  1171. "metadata": {},
  1172. "outputs": [
  1173. {
  1174. "data": {
  1175. "text/plain": [
  1176. "1"
  1177. ]
  1178. },
  1179. "execution_count": 55,
  1180. "metadata": {},
  1181. "output_type": "execute_result"
  1182. }
  1183. ],
  1184. "source": [
  1185. "v = np.array([1, 2, 3, 4, 5])\n",
  1186. "\n",
  1187. "# v 是一个向量,仅仅只有一维,取一个索引\n",
  1188. "v[0]"
  1189. ]
  1190. },
  1191. {
  1192. "cell_type": "code",
  1193. "execution_count": 56,
  1194. "metadata": {},
  1195. "outputs": [
  1196. {
  1197. "name": "stdout",
  1198. "output_type": "stream",
  1199. "text": [
  1200. "4\n",
  1201. "4\n",
  1202. "[3 4]\n"
  1203. ]
  1204. }
  1205. ],
  1206. "source": [
  1207. "# M 是一个矩阵或者是一个二维的数组,取两个索引 \n",
  1208. "print(M[1,1])\n",
  1209. "print(M[1][1])\n",
  1210. "print(M[1])"
  1211. ]
  1212. },
  1213. {
  1214. "cell_type": "markdown",
  1215. "metadata": {},
  1216. "source": [
  1217. "如果我们省略了一个多维数组的索引,它将会返回整行(或者,总的来说,一个 N-1 维的数组)"
  1218. ]
  1219. },
  1220. {
  1221. "cell_type": "code",
  1222. "execution_count": 57,
  1223. "metadata": {},
  1224. "outputs": [
  1225. {
  1226. "data": {
  1227. "text/plain": [
  1228. "array([[1, 2],\n",
  1229. " [3, 4],\n",
  1230. " [5, 6]])"
  1231. ]
  1232. },
  1233. "execution_count": 57,
  1234. "metadata": {},
  1235. "output_type": "execute_result"
  1236. }
  1237. ],
  1238. "source": [
  1239. "M"
  1240. ]
  1241. },
  1242. {
  1243. "cell_type": "code",
  1244. "execution_count": 58,
  1245. "metadata": {},
  1246. "outputs": [
  1247. {
  1248. "data": {
  1249. "text/plain": [
  1250. "array([3, 4])"
  1251. ]
  1252. },
  1253. "execution_count": 58,
  1254. "metadata": {},
  1255. "output_type": "execute_result"
  1256. }
  1257. ],
  1258. "source": [
  1259. "M[1]"
  1260. ]
  1261. },
  1262. {
  1263. "cell_type": "markdown",
  1264. "metadata": {},
  1265. "source": [
  1266. "相同的事情可以利用`:`而不是索引来实现:"
  1267. ]
  1268. },
  1269. {
  1270. "cell_type": "code",
  1271. "execution_count": 59,
  1272. "metadata": {},
  1273. "outputs": [
  1274. {
  1275. "data": {
  1276. "text/plain": [
  1277. "array([3, 4])"
  1278. ]
  1279. },
  1280. "execution_count": 59,
  1281. "metadata": {},
  1282. "output_type": "execute_result"
  1283. }
  1284. ],
  1285. "source": [
  1286. "M[1,:] # 行 1"
  1287. ]
  1288. },
  1289. {
  1290. "cell_type": "code",
  1291. "execution_count": 60,
  1292. "metadata": {},
  1293. "outputs": [
  1294. {
  1295. "data": {
  1296. "text/plain": [
  1297. "array([2, 4, 6])"
  1298. ]
  1299. },
  1300. "execution_count": 60,
  1301. "metadata": {},
  1302. "output_type": "execute_result"
  1303. }
  1304. ],
  1305. "source": [
  1306. "M[:,1] # 列 1"
  1307. ]
  1308. },
  1309. {
  1310. "cell_type": "markdown",
  1311. "metadata": {},
  1312. "source": [
  1313. "我们可以用索引赋新的值给数组中的元素:"
  1314. ]
  1315. },
  1316. {
  1317. "cell_type": "code",
  1318. "execution_count": 61,
  1319. "metadata": {},
  1320. "outputs": [],
  1321. "source": [
  1322. "M[0,0] = 1"
  1323. ]
  1324. },
  1325. {
  1326. "cell_type": "code",
  1327. "execution_count": 50,
  1328. "metadata": {},
  1329. "outputs": [
  1330. {
  1331. "data": {
  1332. "text/plain": [
  1333. "array([[1, 2],\n",
  1334. " [3, 4],\n",
  1335. " [5, 6]])"
  1336. ]
  1337. },
  1338. "execution_count": 50,
  1339. "metadata": {},
  1340. "output_type": "execute_result"
  1341. }
  1342. ],
  1343. "source": [
  1344. "M"
  1345. ]
  1346. },
  1347. {
  1348. "cell_type": "code",
  1349. "execution_count": 62,
  1350. "metadata": {},
  1351. "outputs": [],
  1352. "source": [
  1353. "# 对行和列也同样有用\n",
  1354. "M[1,:] = 0\n",
  1355. "M[:,1] = -1"
  1356. ]
  1357. },
  1358. {
  1359. "cell_type": "code",
  1360. "execution_count": 63,
  1361. "metadata": {},
  1362. "outputs": [
  1363. {
  1364. "data": {
  1365. "text/plain": [
  1366. "array([[ 1, -1],\n",
  1367. " [ 0, -1],\n",
  1368. " [ 5, -1]])"
  1369. ]
  1370. },
  1371. "execution_count": 63,
  1372. "metadata": {},
  1373. "output_type": "execute_result"
  1374. }
  1375. ],
  1376. "source": [
  1377. "M"
  1378. ]
  1379. },
  1380. {
  1381. "cell_type": "markdown",
  1382. "metadata": {},
  1383. "source": [
  1384. "### 5.2 切片索引"
  1385. ]
  1386. },
  1387. {
  1388. "cell_type": "markdown",
  1389. "metadata": {},
  1390. "source": [
  1391. "切片索引是语法 `M[lower:upper:step]` 的技术名称,用于提取数组的一部分:"
  1392. ]
  1393. },
  1394. {
  1395. "cell_type": "code",
  1396. "execution_count": 64,
  1397. "metadata": {},
  1398. "outputs": [
  1399. {
  1400. "data": {
  1401. "text/plain": [
  1402. "array([1, 2, 3, 4, 5])"
  1403. ]
  1404. },
  1405. "execution_count": 64,
  1406. "metadata": {},
  1407. "output_type": "execute_result"
  1408. }
  1409. ],
  1410. "source": [
  1411. "A = np.array([1,2,3,4,5])\n",
  1412. "A"
  1413. ]
  1414. },
  1415. {
  1416. "cell_type": "code",
  1417. "execution_count": 65,
  1418. "metadata": {},
  1419. "outputs": [
  1420. {
  1421. "data": {
  1422. "text/plain": [
  1423. "array([2, 3])"
  1424. ]
  1425. },
  1426. "execution_count": 65,
  1427. "metadata": {},
  1428. "output_type": "execute_result"
  1429. }
  1430. ],
  1431. "source": [
  1432. "A[1:3]"
  1433. ]
  1434. },
  1435. {
  1436. "cell_type": "markdown",
  1437. "metadata": {},
  1438. "source": [
  1439. "切片索引到的数据是 *可变的* : 如果它们被分配了一个新值,那么从其中提取切片的原始数组将被修改:"
  1440. ]
  1441. },
  1442. {
  1443. "cell_type": "code",
  1444. "execution_count": 66,
  1445. "metadata": {},
  1446. "outputs": [
  1447. {
  1448. "data": {
  1449. "text/plain": [
  1450. "array([ 1, -2, -3, 4, 5])"
  1451. ]
  1452. },
  1453. "execution_count": 66,
  1454. "metadata": {},
  1455. "output_type": "execute_result"
  1456. }
  1457. ],
  1458. "source": [
  1459. "A[1:3] = [-2,-3] # auto convert type\n",
  1460. "A[1:3] = np.array([-2, -3]) \n",
  1461. "\n",
  1462. "A"
  1463. ]
  1464. },
  1465. {
  1466. "cell_type": "markdown",
  1467. "metadata": {},
  1468. "source": [
  1469. "我们可以省略 `M[lower:upper:step]` 中任意的三个值"
  1470. ]
  1471. },
  1472. {
  1473. "cell_type": "code",
  1474. "execution_count": 67,
  1475. "metadata": {},
  1476. "outputs": [
  1477. {
  1478. "data": {
  1479. "text/plain": [
  1480. "array([ 1, -2, -3, 4, 5])"
  1481. ]
  1482. },
  1483. "execution_count": 67,
  1484. "metadata": {},
  1485. "output_type": "execute_result"
  1486. }
  1487. ],
  1488. "source": [
  1489. "A[::] # lower, upper, step 都取默认值"
  1490. ]
  1491. },
  1492. {
  1493. "cell_type": "code",
  1494. "execution_count": 68,
  1495. "metadata": {},
  1496. "outputs": [
  1497. {
  1498. "data": {
  1499. "text/plain": [
  1500. "array([ 1, -2, -3, 4, 5])"
  1501. ]
  1502. },
  1503. "execution_count": 68,
  1504. "metadata": {},
  1505. "output_type": "execute_result"
  1506. }
  1507. ],
  1508. "source": [
  1509. "A[:]"
  1510. ]
  1511. },
  1512. {
  1513. "cell_type": "code",
  1514. "execution_count": 69,
  1515. "metadata": {},
  1516. "outputs": [
  1517. {
  1518. "data": {
  1519. "text/plain": [
  1520. "array([ 1, -3, 5])"
  1521. ]
  1522. },
  1523. "execution_count": 69,
  1524. "metadata": {},
  1525. "output_type": "execute_result"
  1526. }
  1527. ],
  1528. "source": [
  1529. "A[::2] # step is 2, lower and upper 代表数组的开始和结束"
  1530. ]
  1531. },
  1532. {
  1533. "cell_type": "code",
  1534. "execution_count": 71,
  1535. "metadata": {},
  1536. "outputs": [
  1537. {
  1538. "data": {
  1539. "text/plain": [
  1540. "array([ 1, -2, -3])"
  1541. ]
  1542. },
  1543. "execution_count": 71,
  1544. "metadata": {},
  1545. "output_type": "execute_result"
  1546. }
  1547. ],
  1548. "source": [
  1549. "A[:3] # 前3个元素"
  1550. ]
  1551. },
  1552. {
  1553. "cell_type": "code",
  1554. "execution_count": 72,
  1555. "metadata": {},
  1556. "outputs": [
  1557. {
  1558. "data": {
  1559. "text/plain": [
  1560. "array([4, 5])"
  1561. ]
  1562. },
  1563. "execution_count": 72,
  1564. "metadata": {},
  1565. "output_type": "execute_result"
  1566. }
  1567. ],
  1568. "source": [
  1569. "A[3:] # 从索引3开始的元素"
  1570. ]
  1571. },
  1572. {
  1573. "cell_type": "markdown",
  1574. "metadata": {},
  1575. "source": [
  1576. "负索引计数从数组的结束(正索引从开始):"
  1577. ]
  1578. },
  1579. {
  1580. "cell_type": "code",
  1581. "execution_count": 73,
  1582. "metadata": {},
  1583. "outputs": [],
  1584. "source": [
  1585. "A = np.array([1,2,3,4,5])"
  1586. ]
  1587. },
  1588. {
  1589. "cell_type": "code",
  1590. "execution_count": 74,
  1591. "metadata": {},
  1592. "outputs": [
  1593. {
  1594. "data": {
  1595. "text/plain": [
  1596. "5"
  1597. ]
  1598. },
  1599. "execution_count": 74,
  1600. "metadata": {},
  1601. "output_type": "execute_result"
  1602. }
  1603. ],
  1604. "source": [
  1605. "A[-1] # 数组中最后一个元素"
  1606. ]
  1607. },
  1608. {
  1609. "cell_type": "code",
  1610. "execution_count": 75,
  1611. "metadata": {},
  1612. "outputs": [
  1613. {
  1614. "data": {
  1615. "text/plain": [
  1616. "array([3, 4, 5])"
  1617. ]
  1618. },
  1619. "execution_count": 75,
  1620. "metadata": {},
  1621. "output_type": "execute_result"
  1622. }
  1623. ],
  1624. "source": [
  1625. "A[-3:] # 最后三个元素"
  1626. ]
  1627. },
  1628. {
  1629. "cell_type": "markdown",
  1630. "metadata": {},
  1631. "source": [
  1632. "索引切片的工作方式与多维数组完全相同:"
  1633. ]
  1634. },
  1635. {
  1636. "cell_type": "code",
  1637. "execution_count": 76,
  1638. "metadata": {},
  1639. "outputs": [
  1640. {
  1641. "data": {
  1642. "text/plain": [
  1643. "array([[ 0, 1, 2, 3, 4],\n",
  1644. " [10, 11, 12, 13, 14],\n",
  1645. " [20, 21, 22, 23, 24],\n",
  1646. " [30, 31, 32, 33, 34],\n",
  1647. " [40, 41, 42, 43, 44]])"
  1648. ]
  1649. },
  1650. "execution_count": 76,
  1651. "metadata": {},
  1652. "output_type": "execute_result"
  1653. }
  1654. ],
  1655. "source": [
  1656. "A = np.array([[n+m*10 for n in range(5)] for m in range(5)])\n",
  1657. "\n",
  1658. "A"
  1659. ]
  1660. },
  1661. {
  1662. "cell_type": "code",
  1663. "execution_count": 77,
  1664. "metadata": {},
  1665. "outputs": [
  1666. {
  1667. "data": {
  1668. "text/plain": [
  1669. "array([[11, 12, 13],\n",
  1670. " [21, 22, 23],\n",
  1671. " [31, 32, 33]])"
  1672. ]
  1673. },
  1674. "execution_count": 77,
  1675. "metadata": {},
  1676. "output_type": "execute_result"
  1677. }
  1678. ],
  1679. "source": [
  1680. "# 原始数组中的一个块\n",
  1681. "A[1:4, 1:4]"
  1682. ]
  1683. },
  1684. {
  1685. "cell_type": "code",
  1686. "execution_count": 78,
  1687. "metadata": {},
  1688. "outputs": [
  1689. {
  1690. "data": {
  1691. "text/plain": [
  1692. "array([[ 0, 2, 4],\n",
  1693. " [20, 22, 24],\n",
  1694. " [40, 42, 44]])"
  1695. ]
  1696. },
  1697. "execution_count": 78,
  1698. "metadata": {},
  1699. "output_type": "execute_result"
  1700. }
  1701. ],
  1702. "source": [
  1703. "# 步长\n",
  1704. "A[::2, ::2]"
  1705. ]
  1706. },
  1707. {
  1708. "cell_type": "markdown",
  1709. "metadata": {},
  1710. "source": [
  1711. "### 5.3 花式索引"
  1712. ]
  1713. },
  1714. {
  1715. "cell_type": "markdown",
  1716. "metadata": {},
  1717. "source": [
  1718. "Fancy索引是一个名称时,一个数组或列表被使用在一个索引:"
  1719. ]
  1720. },
  1721. {
  1722. "cell_type": "code",
  1723. "execution_count": 80,
  1724. "metadata": {},
  1725. "outputs": [
  1726. {
  1727. "name": "stdout",
  1728. "output_type": "stream",
  1729. "text": [
  1730. "[[10 11 12 13 14]\n",
  1731. " [30 31 32 33 34]\n",
  1732. " [20 21 22 23 24]]\n",
  1733. "[[ 0 1 2 3 4]\n",
  1734. " [10 11 12 13 14]\n",
  1735. " [20 21 22 23 24]\n",
  1736. " [30 31 32 33 34]\n",
  1737. " [40 41 42 43 44]]\n"
  1738. ]
  1739. }
  1740. ],
  1741. "source": [
  1742. "A = np.array([[n+m*10 for n in range(5)] for m in range(5)])\n",
  1743. "\n",
  1744. "row_indices = [1, 3, 2]\n",
  1745. "print(A[row_indices])\n",
  1746. "print(A)"
  1747. ]
  1748. },
  1749. {
  1750. "cell_type": "code",
  1751. "execution_count": 81,
  1752. "metadata": {},
  1753. "outputs": [
  1754. {
  1755. "data": {
  1756. "text/plain": [
  1757. "array([11, 31, 24])"
  1758. ]
  1759. },
  1760. "execution_count": 81,
  1761. "metadata": {},
  1762. "output_type": "execute_result"
  1763. }
  1764. ],
  1765. "source": [
  1766. "col_indices = [1, 1, -1] # 索引-1 代表最后一个元素\n",
  1767. "A[row_indices, col_indices]"
  1768. ]
  1769. },
  1770. {
  1771. "cell_type": "markdown",
  1772. "metadata": {},
  1773. "source": [
  1774. "我们也可以使用索引掩码:如果索引掩码是一个数据类型`bool`的Numpy数组,那么一个元素被选择(True)或不(False)取决于索引掩码在每个元素位置的值:"
  1775. ]
  1776. },
  1777. {
  1778. "cell_type": "code",
  1779. "execution_count": 82,
  1780. "metadata": {},
  1781. "outputs": [
  1782. {
  1783. "data": {
  1784. "text/plain": [
  1785. "array([0, 1, 2, 3, 4])"
  1786. ]
  1787. },
  1788. "execution_count": 82,
  1789. "metadata": {},
  1790. "output_type": "execute_result"
  1791. }
  1792. ],
  1793. "source": [
  1794. "B = np.array([n for n in range(5)])\n",
  1795. "B"
  1796. ]
  1797. },
  1798. {
  1799. "cell_type": "code",
  1800. "execution_count": 85,
  1801. "metadata": {},
  1802. "outputs": [
  1803. {
  1804. "data": {
  1805. "text/plain": [
  1806. "array([0, 2])"
  1807. ]
  1808. },
  1809. "execution_count": 85,
  1810. "metadata": {},
  1811. "output_type": "execute_result"
  1812. }
  1813. ],
  1814. "source": [
  1815. "row_mask = np.array([True, False, True, False, False])\n",
  1816. "B[row_mask]"
  1817. ]
  1818. },
  1819. {
  1820. "cell_type": "code",
  1821. "execution_count": 86,
  1822. "metadata": {},
  1823. "outputs": [
  1824. {
  1825. "data": {
  1826. "text/plain": [
  1827. "array([0, 2])"
  1828. ]
  1829. },
  1830. "execution_count": 86,
  1831. "metadata": {},
  1832. "output_type": "execute_result"
  1833. }
  1834. ],
  1835. "source": [
  1836. "# 相同的事情\n",
  1837. "row_mask = np.array([1,0,1,0,0], dtype=bool)\n",
  1838. "B[row_mask]"
  1839. ]
  1840. },
  1841. {
  1842. "cell_type": "markdown",
  1843. "metadata": {},
  1844. "source": [
  1845. "这个特性对于有条件地从数组中选择元素非常有用,例如使用比较运算符:"
  1846. ]
  1847. },
  1848. {
  1849. "cell_type": "code",
  1850. "execution_count": 87,
  1851. "metadata": {},
  1852. "outputs": [
  1853. {
  1854. "data": {
  1855. "text/plain": [
  1856. "array([0. , 0.5, 1. , 1.5, 2. , 2.5, 3. , 3.5, 4. , 4.5, 5. , 5.5, 6. ,\n",
  1857. " 6.5, 7. , 7.5, 8. , 8.5, 9. , 9.5])"
  1858. ]
  1859. },
  1860. "execution_count": 87,
  1861. "metadata": {},
  1862. "output_type": "execute_result"
  1863. }
  1864. ],
  1865. "source": [
  1866. "x = np.arange(0, 10, 0.5)\n",
  1867. "x"
  1868. ]
  1869. },
  1870. {
  1871. "cell_type": "code",
  1872. "execution_count": 88,
  1873. "metadata": {},
  1874. "outputs": [
  1875. {
  1876. "data": {
  1877. "text/plain": [
  1878. "array([False, False, False, False, False, False, False, False, False,\n",
  1879. " False, False, True, True, True, True, False, False, False,\n",
  1880. " False, False])"
  1881. ]
  1882. },
  1883. "execution_count": 88,
  1884. "metadata": {},
  1885. "output_type": "execute_result"
  1886. }
  1887. ],
  1888. "source": [
  1889. "mask = (5 < x) * (x < 7.5)\n",
  1890. "\n",
  1891. "mask"
  1892. ]
  1893. },
  1894. {
  1895. "cell_type": "code",
  1896. "execution_count": 90,
  1897. "metadata": {},
  1898. "outputs": [
  1899. {
  1900. "data": {
  1901. "text/plain": [
  1902. "array([5.5, 6. , 6.5, 7. ])"
  1903. ]
  1904. },
  1905. "execution_count": 90,
  1906. "metadata": {},
  1907. "output_type": "execute_result"
  1908. }
  1909. ],
  1910. "source": [
  1911. "x[mask]"
  1912. ]
  1913. },
  1914. {
  1915. "cell_type": "code",
  1916. "execution_count": 91,
  1917. "metadata": {},
  1918. "outputs": [
  1919. {
  1920. "data": {
  1921. "text/plain": [
  1922. "array([3.5, 4. , 4.5, 5. , 5.5])"
  1923. ]
  1924. },
  1925. "execution_count": 91,
  1926. "metadata": {},
  1927. "output_type": "execute_result"
  1928. }
  1929. ],
  1930. "source": [
  1931. "x[(3<x) * (x<6)]"
  1932. ]
  1933. },
  1934. {
  1935. "cell_type": "markdown",
  1936. "metadata": {},
  1937. "source": [
  1938. "## 6. 用于从数组中提取数据和创建数组的函数"
  1939. ]
  1940. },
  1941. {
  1942. "cell_type": "markdown",
  1943. "metadata": {},
  1944. "source": [
  1945. "### 6.1 where"
  1946. ]
  1947. },
  1948. {
  1949. "cell_type": "markdown",
  1950. "metadata": {},
  1951. "source": [
  1952. "索引掩码可以使用`where`函数转换为位置索引"
  1953. ]
  1954. },
  1955. {
  1956. "cell_type": "code",
  1957. "execution_count": 93,
  1958. "metadata": {},
  1959. "outputs": [
  1960. {
  1961. "data": {
  1962. "text/plain": [
  1963. "(array([11, 12, 13, 14]),)"
  1964. ]
  1965. },
  1966. "execution_count": 93,
  1967. "metadata": {},
  1968. "output_type": "execute_result"
  1969. }
  1970. ],
  1971. "source": [
  1972. "x = np.arange(0, 10, 0.5)\n",
  1973. "mask = (5 < x) * (x < 7.5)\n",
  1974. "\n",
  1975. "indices = np.where(mask)\n",
  1976. "\n",
  1977. "indices"
  1978. ]
  1979. },
  1980. {
  1981. "cell_type": "code",
  1982. "execution_count": 94,
  1983. "metadata": {},
  1984. "outputs": [
  1985. {
  1986. "data": {
  1987. "text/plain": [
  1988. "array([5.5, 6. , 6.5, 7. ])"
  1989. ]
  1990. },
  1991. "execution_count": 94,
  1992. "metadata": {},
  1993. "output_type": "execute_result"
  1994. }
  1995. ],
  1996. "source": [
  1997. "x[indices] # 这个索引等同于花式索引x[mask]"
  1998. ]
  1999. },
  2000. {
  2001. "cell_type": "markdown",
  2002. "metadata": {},
  2003. "source": [
  2004. "### 6.2 diag"
  2005. ]
  2006. },
  2007. {
  2008. "cell_type": "markdown",
  2009. "metadata": {},
  2010. "source": [
  2011. "使用diag函数,我们还可以提取一个数组的对角线和亚对角线:"
  2012. ]
  2013. },
  2014. {
  2015. "cell_type": "code",
  2016. "execution_count": 95,
  2017. "metadata": {},
  2018. "outputs": [
  2019. {
  2020. "data": {
  2021. "text/plain": [
  2022. "array([ 0, 11, 22, 33, 44])"
  2023. ]
  2024. },
  2025. "execution_count": 95,
  2026. "metadata": {},
  2027. "output_type": "execute_result"
  2028. }
  2029. ],
  2030. "source": [
  2031. "np.diag(A)"
  2032. ]
  2033. },
  2034. {
  2035. "cell_type": "code",
  2036. "execution_count": 96,
  2037. "metadata": {},
  2038. "outputs": [
  2039. {
  2040. "data": {
  2041. "text/plain": [
  2042. "array([10, 21, 32, 43])"
  2043. ]
  2044. },
  2045. "execution_count": 96,
  2046. "metadata": {},
  2047. "output_type": "execute_result"
  2048. }
  2049. ],
  2050. "source": [
  2051. "np.diag(A, -1)"
  2052. ]
  2053. },
  2054. {
  2055. "cell_type": "markdown",
  2056. "metadata": {},
  2057. "source": [
  2058. "## 7. 线性代数"
  2059. ]
  2060. },
  2061. {
  2062. "cell_type": "markdown",
  2063. "metadata": {},
  2064. "source": [
  2065. "向量化代码是使用Python/Numpy编写高效数值计算的关键。这意味着尽可能多的程序应该用矩阵和向量运算来表示,比如矩阵-矩阵乘法。"
  2066. ]
  2067. },
  2068. {
  2069. "cell_type": "markdown",
  2070. "metadata": {},
  2071. "source": [
  2072. "### 7.1 Scalar-array 操作"
  2073. ]
  2074. },
  2075. {
  2076. "cell_type": "markdown",
  2077. "metadata": {},
  2078. "source": [
  2079. "我们可以使用常用的算术运算符来对标量数组进行乘、加、减和除运算。"
  2080. ]
  2081. },
  2082. {
  2083. "cell_type": "code",
  2084. "execution_count": 97,
  2085. "metadata": {},
  2086. "outputs": [],
  2087. "source": [
  2088. "import numpy as np\n",
  2089. "\n",
  2090. "v1 = np.arange(0, 5)"
  2091. ]
  2092. },
  2093. {
  2094. "cell_type": "code",
  2095. "execution_count": 98,
  2096. "metadata": {},
  2097. "outputs": [
  2098. {
  2099. "data": {
  2100. "text/plain": [
  2101. "array([0, 2, 4, 6, 8])"
  2102. ]
  2103. },
  2104. "execution_count": 98,
  2105. "metadata": {},
  2106. "output_type": "execute_result"
  2107. }
  2108. ],
  2109. "source": [
  2110. "v1 * 2"
  2111. ]
  2112. },
  2113. {
  2114. "cell_type": "code",
  2115. "execution_count": 99,
  2116. "metadata": {},
  2117. "outputs": [
  2118. {
  2119. "data": {
  2120. "text/plain": [
  2121. "array([2, 3, 4, 5, 6])"
  2122. ]
  2123. },
  2124. "execution_count": 99,
  2125. "metadata": {},
  2126. "output_type": "execute_result"
  2127. }
  2128. ],
  2129. "source": [
  2130. "v1 + 2"
  2131. ]
  2132. },
  2133. {
  2134. "cell_type": "code",
  2135. "execution_count": 100,
  2136. "metadata": {},
  2137. "outputs": [
  2138. {
  2139. "name": "stdout",
  2140. "output_type": "stream",
  2141. "text": [
  2142. "[[ 0 2 4 6 8]\n",
  2143. " [20 22 24 26 28]\n",
  2144. " [40 42 44 46 48]\n",
  2145. " [60 62 64 66 68]\n",
  2146. " [80 82 84 86 88]]\n",
  2147. "[[ 2 3 4 5 6]\n",
  2148. " [12 13 14 15 16]\n",
  2149. " [22 23 24 25 26]\n",
  2150. " [32 33 34 35 36]\n",
  2151. " [42 43 44 45 46]]\n"
  2152. ]
  2153. }
  2154. ],
  2155. "source": [
  2156. "A = np.array([[n+m*10 for n in range(5)] for m in range(5)])\n",
  2157. "\n",
  2158. "print(A * 2)\n",
  2159. "\n",
  2160. "print(A + 2)"
  2161. ]
  2162. },
  2163. {
  2164. "cell_type": "markdown",
  2165. "metadata": {},
  2166. "source": [
  2167. "### 7.2 数组间的元素操作"
  2168. ]
  2169. },
  2170. {
  2171. "cell_type": "markdown",
  2172. "metadata": {},
  2173. "source": [
  2174. "当我们对数组进行加法、减法、乘法和除法时,默认的行为是**element-wise**操作:"
  2175. ]
  2176. },
  2177. {
  2178. "cell_type": "code",
  2179. "execution_count": 101,
  2180. "metadata": {},
  2181. "outputs": [
  2182. {
  2183. "data": {
  2184. "text/plain": [
  2185. "array([[0.04434218, 0.59817098, 0.78569806],\n",
  2186. " [0.03270677, 0.93918254, 0.01270568]])"
  2187. ]
  2188. },
  2189. "execution_count": 101,
  2190. "metadata": {},
  2191. "output_type": "execute_result"
  2192. }
  2193. ],
  2194. "source": [
  2195. "A = np.random.rand(2, 3)\n",
  2196. "\n",
  2197. "A * A # element-wise 乘法"
  2198. ]
  2199. },
  2200. {
  2201. "cell_type": "code",
  2202. "execution_count": 102,
  2203. "metadata": {},
  2204. "outputs": [
  2205. {
  2206. "data": {
  2207. "text/plain": [
  2208. "array([1., 4.])"
  2209. ]
  2210. },
  2211. "execution_count": 102,
  2212. "metadata": {},
  2213. "output_type": "execute_result"
  2214. }
  2215. ],
  2216. "source": [
  2217. "v1 = np.array([1.0, 2.0])\n",
  2218. "v1 * v1"
  2219. ]
  2220. },
  2221. {
  2222. "cell_type": "markdown",
  2223. "metadata": {},
  2224. "source": [
  2225. "如果我们用兼容的形状进行数组的乘法,我们会得到每一行的对位相乘结果:"
  2226. ]
  2227. },
  2228. {
  2229. "cell_type": "code",
  2230. "execution_count": 103,
  2231. "metadata": {},
  2232. "outputs": [
  2233. {
  2234. "data": {
  2235. "text/plain": [
  2236. "((2, 3), (2,))"
  2237. ]
  2238. },
  2239. "execution_count": 103,
  2240. "metadata": {},
  2241. "output_type": "execute_result"
  2242. }
  2243. ],
  2244. "source": [
  2245. "A.shape, v1.shape"
  2246. ]
  2247. },
  2248. {
  2249. "cell_type": "code",
  2250. "execution_count": 104,
  2251. "metadata": {},
  2252. "outputs": [
  2253. {
  2254. "data": {
  2255. "text/plain": [
  2256. "array([[0.21057582, 0.36170027],\n",
  2257. " [0.77341514, 1.93822861],\n",
  2258. " [0.88639611, 0.22543893]])"
  2259. ]
  2260. },
  2261. "execution_count": 104,
  2262. "metadata": {},
  2263. "output_type": "execute_result"
  2264. }
  2265. ],
  2266. "source": [
  2267. "A.T * v1"
  2268. ]
  2269. },
  2270. {
  2271. "cell_type": "code",
  2272. "execution_count": 105,
  2273. "metadata": {},
  2274. "outputs": [
  2275. {
  2276. "ename": "ValueError",
  2277. "evalue": "operands could not be broadcast together with shapes (2,3) (2,) ",
  2278. "output_type": "error",
  2279. "traceback": [
  2280. "\u001b[0;31m------------------------------------------------------------\u001b[0m",
  2281. "\u001b[0;31mValueError\u001b[0m Traceback (most recent call last)",
  2282. "\u001b[0;32m<ipython-input-105-629678c55a83>\u001b[0m in \u001b[0;36m<module>\u001b[0;34m\u001b[0m\n\u001b[0;32m----> 1\u001b[0;31m \u001b[0mA\u001b[0m\u001b[0;34m*\u001b[0m\u001b[0mv1\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m",
  2283. "\u001b[0;31mValueError\u001b[0m: operands could not be broadcast together with shapes (2,3) (2,) "
  2284. ]
  2285. }
  2286. ],
  2287. "source": [
  2288. "A*v1"
  2289. ]
  2290. },
  2291. {
  2292. "cell_type": "markdown",
  2293. "metadata": {},
  2294. "source": [
  2295. "### 7.4 矩阵代数"
  2296. ]
  2297. },
  2298. {
  2299. "cell_type": "markdown",
  2300. "metadata": {},
  2301. "source": [
  2302. "矩阵的乘法有两种方法,第一种方法是点乘函数,它对两个参数应用矩阵-矩阵、矩阵-向量或内向量乘法"
  2303. ]
  2304. },
  2305. {
  2306. "cell_type": "code",
  2307. "execution_count": 106,
  2308. "metadata": {},
  2309. "outputs": [
  2310. {
  2311. "data": {
  2312. "text/plain": [
  2313. "array([[1.03315792, 0.6905855 , 0.84353203, 1.45096566, 0.87872966],\n",
  2314. " [0.38571022, 0.35776393, 0.43959241, 0.58357586, 0.47922741],\n",
  2315. " [0.92430843, 0.58422879, 0.78342705, 1.42096537, 0.66931662],\n",
  2316. " [0.53165197, 0.29194347, 0.4070023 , 0.71839424, 0.36541866],\n",
  2317. " [1.07740213, 0.81283748, 0.74676416, 1.1225275 , 1.16903802]])"
  2318. ]
  2319. },
  2320. "execution_count": 106,
  2321. "metadata": {},
  2322. "output_type": "execute_result"
  2323. }
  2324. ],
  2325. "source": [
  2326. "A = np.random.rand(5, 5)\n",
  2327. "v1 = np.random.rand(5, 1)\n",
  2328. "\n",
  2329. "np.dot(A, A)"
  2330. ]
  2331. },
  2332. {
  2333. "cell_type": "code",
  2334. "execution_count": 109,
  2335. "metadata": {},
  2336. "outputs": [
  2337. {
  2338. "data": {
  2339. "text/plain": [
  2340. "array([[1.44646503],\n",
  2341. " [0.6220085 ],\n",
  2342. " [1.17066732],\n",
  2343. " [0.68703402],\n",
  2344. " [1.71817279]])"
  2345. ]
  2346. },
  2347. "execution_count": 109,
  2348. "metadata": {},
  2349. "output_type": "execute_result"
  2350. }
  2351. ],
  2352. "source": [
  2353. "np.dot(A, v1)\n"
  2354. ]
  2355. },
  2356. {
  2357. "cell_type": "code",
  2358. "execution_count": 110,
  2359. "metadata": {},
  2360. "outputs": [
  2361. {
  2362. "data": {
  2363. "text/plain": [
  2364. "array([[2.28303296]])"
  2365. ]
  2366. },
  2367. "execution_count": 110,
  2368. "metadata": {},
  2369. "output_type": "execute_result"
  2370. }
  2371. ],
  2372. "source": [
  2373. "np.dot(v1.T, v1)"
  2374. ]
  2375. },
  2376. {
  2377. "cell_type": "markdown",
  2378. "metadata": {},
  2379. "source": [
  2380. "另外,我们可以将数组对象投到`matrix`类型上。这将改变标准算术运算符`+, -, *` 的行为,以使用矩阵代数。"
  2381. ]
  2382. },
  2383. {
  2384. "cell_type": "code",
  2385. "execution_count": 111,
  2386. "metadata": {},
  2387. "outputs": [],
  2388. "source": [
  2389. "M = np.matrix(A)\n",
  2390. "v = np.matrix(v1).T # make it a column vector"
  2391. ]
  2392. },
  2393. {
  2394. "cell_type": "code",
  2395. "execution_count": 113,
  2396. "metadata": {},
  2397. "outputs": [
  2398. {
  2399. "data": {
  2400. "text/plain": [
  2401. "matrix([[0.73710128, 0.81515879, 0.7439564 , 0.16244929, 0.70382519]])"
  2402. ]
  2403. },
  2404. "execution_count": 113,
  2405. "metadata": {},
  2406. "output_type": "execute_result"
  2407. }
  2408. ],
  2409. "source": [
  2410. "v"
  2411. ]
  2412. },
  2413. {
  2414. "cell_type": "code",
  2415. "execution_count": 114,
  2416. "metadata": {},
  2417. "outputs": [
  2418. {
  2419. "data": {
  2420. "text/plain": [
  2421. "matrix([[1.03315792, 0.6905855 , 0.84353203, 1.45096566, 0.87872966],\n",
  2422. " [0.38571022, 0.35776393, 0.43959241, 0.58357586, 0.47922741],\n",
  2423. " [0.92430843, 0.58422879, 0.78342705, 1.42096537, 0.66931662],\n",
  2424. " [0.53165197, 0.29194347, 0.4070023 , 0.71839424, 0.36541866],\n",
  2425. " [1.07740213, 0.81283748, 0.74676416, 1.1225275 , 1.16903802]])"
  2426. ]
  2427. },
  2428. "execution_count": 114,
  2429. "metadata": {},
  2430. "output_type": "execute_result"
  2431. }
  2432. ],
  2433. "source": [
  2434. "M * M"
  2435. ]
  2436. },
  2437. {
  2438. "cell_type": "code",
  2439. "execution_count": 115,
  2440. "metadata": {},
  2441. "outputs": [
  2442. {
  2443. "data": {
  2444. "text/plain": [
  2445. "matrix([[1.44646503],\n",
  2446. " [0.6220085 ],\n",
  2447. " [1.17066732],\n",
  2448. " [0.68703402],\n",
  2449. " [1.71817279]])"
  2450. ]
  2451. },
  2452. "execution_count": 115,
  2453. "metadata": {},
  2454. "output_type": "execute_result"
  2455. }
  2456. ],
  2457. "source": [
  2458. "M * v.T"
  2459. ]
  2460. },
  2461. {
  2462. "cell_type": "code",
  2463. "execution_count": 116,
  2464. "metadata": {},
  2465. "outputs": [
  2466. {
  2467. "data": {
  2468. "text/plain": [
  2469. "matrix([[2.28303296]])"
  2470. ]
  2471. },
  2472. "execution_count": 116,
  2473. "metadata": {},
  2474. "output_type": "execute_result"
  2475. }
  2476. ],
  2477. "source": [
  2478. "# 內积\n",
  2479. "v * v.T"
  2480. ]
  2481. },
  2482. {
  2483. "cell_type": "markdown",
  2484. "metadata": {},
  2485. "source": [
  2486. "如果我们尝试用不相配的矩阵形状加,减或者乘我们会得到错误:"
  2487. ]
  2488. },
  2489. {
  2490. "cell_type": "code",
  2491. "execution_count": 117,
  2492. "metadata": {},
  2493. "outputs": [],
  2494. "source": [
  2495. "v = np.matrix([1,2,3,4,5,6]).T"
  2496. ]
  2497. },
  2498. {
  2499. "cell_type": "code",
  2500. "execution_count": 118,
  2501. "metadata": {},
  2502. "outputs": [
  2503. {
  2504. "data": {
  2505. "text/plain": [
  2506. "((5, 5), (6, 1))"
  2507. ]
  2508. },
  2509. "execution_count": 118,
  2510. "metadata": {},
  2511. "output_type": "execute_result"
  2512. }
  2513. ],
  2514. "source": [
  2515. "np.shape(M), np.shape(v)"
  2516. ]
  2517. },
  2518. {
  2519. "cell_type": "code",
  2520. "execution_count": 119,
  2521. "metadata": {},
  2522. "outputs": [
  2523. {
  2524. "ename": "ValueError",
  2525. "evalue": "shapes (5,5) and (6,1) not aligned: 5 (dim 1) != 6 (dim 0)",
  2526. "output_type": "error",
  2527. "traceback": [
  2528. "\u001b[0;31m------------------------------------------------------------\u001b[0m",
  2529. "\u001b[0;31mValueError\u001b[0m Traceback (most recent call last)",
  2530. "\u001b[0;32m<ipython-input-119-e8f88679fe45>\u001b[0m in \u001b[0;36m<module>\u001b[0;34m\u001b[0m\n\u001b[0;32m----> 1\u001b[0;31m \u001b[0mM\u001b[0m \u001b[0;34m*\u001b[0m \u001b[0mv\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m",
  2531. "\u001b[0;32m~/anaconda3/envs/dl/lib/python3.7/site-packages/numpy/matrixlib/defmatrix.py\u001b[0m in \u001b[0;36m__mul__\u001b[0;34m(self, other)\u001b[0m\n\u001b[1;32m 216\u001b[0m \u001b[0;32mif\u001b[0m \u001b[0misinstance\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mother\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0;34m(\u001b[0m\u001b[0mN\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mndarray\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mlist\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mtuple\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m)\u001b[0m \u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 217\u001b[0m \u001b[0;31m# This promotes 1-D vectors to row vectors\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m--> 218\u001b[0;31m \u001b[0;32mreturn\u001b[0m \u001b[0mN\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mdot\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mself\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0masmatrix\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mother\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m 219\u001b[0m \u001b[0;32mif\u001b[0m \u001b[0misscalar\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mother\u001b[0m\u001b[0;34m)\u001b[0m \u001b[0;32mor\u001b[0m \u001b[0;32mnot\u001b[0m \u001b[0mhasattr\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mother\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0;34m'__rmul__'\u001b[0m\u001b[0;34m)\u001b[0m \u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 220\u001b[0m \u001b[0;32mreturn\u001b[0m \u001b[0mN\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mdot\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mself\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mother\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
  2532. "\u001b[0;32m<__array_function__ internals>\u001b[0m in \u001b[0;36mdot\u001b[0;34m(*args, **kwargs)\u001b[0m\n",
  2533. "\u001b[0;31mValueError\u001b[0m: shapes (5,5) and (6,1) not aligned: 5 (dim 1) != 6 (dim 0)"
  2534. ]
  2535. }
  2536. ],
  2537. "source": [
  2538. "M * v"
  2539. ]
  2540. },
  2541. {
  2542. "cell_type": "markdown",
  2543. "metadata": {},
  2544. "source": [
  2545. "### 7.5 矩阵计算与数据处理"
  2546. ]
  2547. },
  2548. {
  2549. "cell_type": "markdown",
  2550. "metadata": {},
  2551. "source": [
  2552. "#### 求逆"
  2553. ]
  2554. },
  2555. {
  2556. "cell_type": "code",
  2557. "execution_count": 120,
  2558. "metadata": {},
  2559. "outputs": [
  2560. {
  2561. "data": {
  2562. "text/plain": [
  2563. "array([[-2. , 1. ],\n",
  2564. " [ 1.5, -0.5]])"
  2565. ]
  2566. },
  2567. "execution_count": 120,
  2568. "metadata": {},
  2569. "output_type": "execute_result"
  2570. }
  2571. ],
  2572. "source": [
  2573. "C = np.array([[1, 2], [3, 4]])\n",
  2574. "np.linalg.inv(C) # equivalent to C.I "
  2575. ]
  2576. },
  2577. {
  2578. "cell_type": "markdown",
  2579. "metadata": {},
  2580. "source": [
  2581. "#### 行列式"
  2582. ]
  2583. },
  2584. {
  2585. "cell_type": "code",
  2586. "execution_count": 121,
  2587. "metadata": {},
  2588. "outputs": [
  2589. {
  2590. "data": {
  2591. "text/plain": [
  2592. "-2.0000000000000004"
  2593. ]
  2594. },
  2595. "execution_count": 121,
  2596. "metadata": {},
  2597. "output_type": "execute_result"
  2598. }
  2599. ],
  2600. "source": [
  2601. "np.linalg.det(C)"
  2602. ]
  2603. },
  2604. {
  2605. "cell_type": "markdown",
  2606. "metadata": {},
  2607. "source": [
  2608. "#### 数据统计\n",
  2609. "通常将数据集存储在Numpy数组中是非常有用的。Numpy提供了许多函数用于计算数组中数据集的统计。\n",
  2610. "\n",
  2611. "例如,让我们从上面使用的斯德哥尔摩温度数据集计算一些属性。"
  2612. ]
  2613. },
  2614. {
  2615. "cell_type": "code",
  2616. "execution_count": 122,
  2617. "metadata": {},
  2618. "outputs": [
  2619. {
  2620. "data": {
  2621. "text/plain": [
  2622. "(77431, 7)"
  2623. ]
  2624. },
  2625. "execution_count": 122,
  2626. "metadata": {},
  2627. "output_type": "execute_result"
  2628. }
  2629. ],
  2630. "source": [
  2631. "import numpy as np\n",
  2632. "data = np.genfromtxt('stockholm_td_adj.dat')\n",
  2633. "\n",
  2634. "# 提醒一下,温度数据集存储在数据变量中:\n",
  2635. "np.shape(data)"
  2636. ]
  2637. },
  2638. {
  2639. "cell_type": "markdown",
  2640. "metadata": {},
  2641. "source": [
  2642. "#### mean"
  2643. ]
  2644. },
  2645. {
  2646. "cell_type": "code",
  2647. "execution_count": 123,
  2648. "metadata": {},
  2649. "outputs": [
  2650. {
  2651. "name": "stdout",
  2652. "output_type": "stream",
  2653. "text": [
  2654. "(77431, 7)\n"
  2655. ]
  2656. },
  2657. {
  2658. "data": {
  2659. "text/plain": [
  2660. "6.197109684751585"
  2661. ]
  2662. },
  2663. "execution_count": 123,
  2664. "metadata": {},
  2665. "output_type": "execute_result"
  2666. }
  2667. ],
  2668. "source": [
  2669. "# 温度数据在第三列中\n",
  2670. "print(data.shape)\n",
  2671. "np.mean(data[:,3])"
  2672. ]
  2673. },
  2674. {
  2675. "cell_type": "code",
  2676. "execution_count": 126,
  2677. "metadata": {},
  2678. "outputs": [
  2679. {
  2680. "data": {
  2681. "text/plain": [
  2682. "0.5275611748380306"
  2683. ]
  2684. },
  2685. "execution_count": 126,
  2686. "metadata": {},
  2687. "output_type": "execute_result"
  2688. }
  2689. ],
  2690. "source": [
  2691. "A = np.random.rand(4, 3)\n",
  2692. "np.mean(A)"
  2693. ]
  2694. },
  2695. {
  2696. "cell_type": "markdown",
  2697. "metadata": {},
  2698. "source": [
  2699. "在过去的200年里,斯德哥尔摩每天的平均气温大约是6.2 C。"
  2700. ]
  2701. },
  2702. {
  2703. "cell_type": "markdown",
  2704. "metadata": {},
  2705. "source": [
  2706. "#### 标准差和方差"
  2707. ]
  2708. },
  2709. {
  2710. "cell_type": "code",
  2711. "execution_count": 127,
  2712. "metadata": {},
  2713. "outputs": [
  2714. {
  2715. "data": {
  2716. "text/plain": [
  2717. "(8.282271621340573, 68.59602320966341)"
  2718. ]
  2719. },
  2720. "execution_count": 127,
  2721. "metadata": {},
  2722. "output_type": "execute_result"
  2723. }
  2724. ],
  2725. "source": [
  2726. "np.std(data[:,3]), np.var(data[:,3])"
  2727. ]
  2728. },
  2729. {
  2730. "cell_type": "markdown",
  2731. "metadata": {},
  2732. "source": [
  2733. "#### 最小值和最大值"
  2734. ]
  2735. },
  2736. {
  2737. "cell_type": "code",
  2738. "execution_count": 128,
  2739. "metadata": {},
  2740. "outputs": [
  2741. {
  2742. "data": {
  2743. "text/plain": [
  2744. "-25.8"
  2745. ]
  2746. },
  2747. "execution_count": 128,
  2748. "metadata": {},
  2749. "output_type": "execute_result"
  2750. }
  2751. ],
  2752. "source": [
  2753. "# 最低日平均温度\n",
  2754. "data[:,3].min()"
  2755. ]
  2756. },
  2757. {
  2758. "cell_type": "code",
  2759. "execution_count": 129,
  2760. "metadata": {},
  2761. "outputs": [
  2762. {
  2763. "data": {
  2764. "text/plain": [
  2765. "28.3"
  2766. ]
  2767. },
  2768. "execution_count": 129,
  2769. "metadata": {},
  2770. "output_type": "execute_result"
  2771. }
  2772. ],
  2773. "source": [
  2774. "# 最高日平均温度\n",
  2775. "data[:,3].max()"
  2776. ]
  2777. },
  2778. {
  2779. "cell_type": "markdown",
  2780. "metadata": {},
  2781. "source": [
  2782. "#### sum, prod, and trace"
  2783. ]
  2784. },
  2785. {
  2786. "cell_type": "code",
  2787. "execution_count": 130,
  2788. "metadata": {},
  2789. "outputs": [
  2790. {
  2791. "data": {
  2792. "text/plain": [
  2793. "array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9])"
  2794. ]
  2795. },
  2796. "execution_count": 130,
  2797. "metadata": {},
  2798. "output_type": "execute_result"
  2799. }
  2800. ],
  2801. "source": [
  2802. "d = np.arange(0, 10)\n",
  2803. "d"
  2804. ]
  2805. },
  2806. {
  2807. "cell_type": "code",
  2808. "execution_count": 131,
  2809. "metadata": {},
  2810. "outputs": [
  2811. {
  2812. "data": {
  2813. "text/plain": [
  2814. "45"
  2815. ]
  2816. },
  2817. "execution_count": 131,
  2818. "metadata": {},
  2819. "output_type": "execute_result"
  2820. }
  2821. ],
  2822. "source": [
  2823. "# 将所有的元素相加\n",
  2824. "np.sum(d)"
  2825. ]
  2826. },
  2827. {
  2828. "cell_type": "code",
  2829. "execution_count": 132,
  2830. "metadata": {},
  2831. "outputs": [
  2832. {
  2833. "data": {
  2834. "text/plain": [
  2835. "3628800"
  2836. ]
  2837. },
  2838. "execution_count": 132,
  2839. "metadata": {},
  2840. "output_type": "execute_result"
  2841. }
  2842. ],
  2843. "source": [
  2844. "# 全元素积分\n",
  2845. "np.prod(d+1)"
  2846. ]
  2847. },
  2848. {
  2849. "cell_type": "code",
  2850. "execution_count": 133,
  2851. "metadata": {},
  2852. "outputs": [
  2853. {
  2854. "data": {
  2855. "text/plain": [
  2856. "array([ 0, 1, 3, 6, 10, 15, 21, 28, 36, 45])"
  2857. ]
  2858. },
  2859. "execution_count": 133,
  2860. "metadata": {},
  2861. "output_type": "execute_result"
  2862. }
  2863. ],
  2864. "source": [
  2865. "# 累计求和\n",
  2866. "np.cumsum(d)"
  2867. ]
  2868. },
  2869. {
  2870. "cell_type": "code",
  2871. "execution_count": 134,
  2872. "metadata": {},
  2873. "outputs": [
  2874. {
  2875. "data": {
  2876. "text/plain": [
  2877. "array([ 1, 2, 6, 24, 120, 720, 5040,\n",
  2878. " 40320, 362880, 3628800])"
  2879. ]
  2880. },
  2881. "execution_count": 134,
  2882. "metadata": {},
  2883. "output_type": "execute_result"
  2884. }
  2885. ],
  2886. "source": [
  2887. "# 累计乘积\n",
  2888. "np.cumprod(d+1)"
  2889. ]
  2890. },
  2891. {
  2892. "cell_type": "code",
  2893. "execution_count": 135,
  2894. "metadata": {},
  2895. "outputs": [
  2896. {
  2897. "data": {
  2898. "text/plain": [
  2899. "0.9739601910770402"
  2900. ]
  2901. },
  2902. "execution_count": 135,
  2903. "metadata": {},
  2904. "output_type": "execute_result"
  2905. }
  2906. ],
  2907. "source": [
  2908. "# 计算对角线元素的和,和diag(A).sum()一样\n",
  2909. "np.trace(A)"
  2910. ]
  2911. },
  2912. {
  2913. "cell_type": "markdown",
  2914. "metadata": {},
  2915. "source": [
  2916. "### 7.6 数组子集的计算"
  2917. ]
  2918. },
  2919. {
  2920. "cell_type": "markdown",
  2921. "metadata": {},
  2922. "source": [
  2923. "我们可以使用索引、花式索引和从数组中提取数据的其他方法(如上所述)来计算数组中的数据子集。\n",
  2924. "\n",
  2925. "例如,让我们回到温度数据集:"
  2926. ]
  2927. },
  2928. {
  2929. "cell_type": "code",
  2930. "execution_count": 136,
  2931. "metadata": {},
  2932. "outputs": [
  2933. {
  2934. "name": "stdout",
  2935. "output_type": "stream",
  2936. "text": [
  2937. "1800 1 1 -6.1 -6.1 -6.1 1\r\n",
  2938. "1800 1 2 -15.4 -15.4 -15.4 1\r\n",
  2939. "1800 1 3 -15.0 -15.0 -15.0 1\r\n"
  2940. ]
  2941. }
  2942. ],
  2943. "source": [
  2944. "!head -n 3 stockholm_td_adj.dat"
  2945. ]
  2946. },
  2947. {
  2948. "cell_type": "markdown",
  2949. "metadata": {},
  2950. "source": [
  2951. "数据集的格式是:年,月,日,日平均气温,低,高,位置。\n",
  2952. "\n",
  2953. "如果我们对某个特定月份的平均温度感兴趣,比如二月,然后我们可以创建一个索引掩码,使用它来选择当月的数据:"
  2954. ]
  2955. },
  2956. {
  2957. "cell_type": "code",
  2958. "execution_count": 137,
  2959. "metadata": {},
  2960. "outputs": [
  2961. {
  2962. "data": {
  2963. "text/plain": [
  2964. "array([ 1., 2., 3., 4., 5., 6., 7., 8., 9., 10., 11., 12.])"
  2965. ]
  2966. },
  2967. "execution_count": 137,
  2968. "metadata": {},
  2969. "output_type": "execute_result"
  2970. }
  2971. ],
  2972. "source": [
  2973. "np.unique(data[:,1]) # 列的值从1到12"
  2974. ]
  2975. },
  2976. {
  2977. "cell_type": "code",
  2978. "execution_count": 138,
  2979. "metadata": {},
  2980. "outputs": [
  2981. {
  2982. "name": "stdout",
  2983. "output_type": "stream",
  2984. "text": [
  2985. "[False False False ... False False False]\n"
  2986. ]
  2987. }
  2988. ],
  2989. "source": [
  2990. "mask_feb = data[:,1] == 2\n",
  2991. "print(mask_feb)"
  2992. ]
  2993. },
  2994. {
  2995. "cell_type": "code",
  2996. "execution_count": 139,
  2997. "metadata": {},
  2998. "outputs": [
  2999. {
  3000. "name": "stdout",
  3001. "output_type": "stream",
  3002. "text": [
  3003. "-3.212109570736596\n",
  3004. "5.090390768766271\n"
  3005. ]
  3006. }
  3007. ],
  3008. "source": [
  3009. "# 温度数据实在第三行\n",
  3010. "print(np.mean(data[mask_feb,3]))\n",
  3011. "print(np.std(data[mask_feb,3]))"
  3012. ]
  3013. },
  3014. {
  3015. "cell_type": "markdown",
  3016. "metadata": {},
  3017. "source": [
  3018. "有了这些工具,我们就有了非常强大的数据处理能力。例如,提取每年每个月的平均气温只需要几行代码:"
  3019. ]
  3020. },
  3021. {
  3022. "cell_type": "code",
  3023. "execution_count": 140,
  3024. "metadata": {},
  3025. "outputs": [
  3026. {
  3027. "data": {
  3028. "image/png": "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\n",
  3029. "text/plain": [
  3030. "<Figure size 432x288 with 1 Axes>"
  3031. ]
  3032. },
  3033. "metadata": {
  3034. "needs_background": "light"
  3035. },
  3036. "output_type": "display_data"
  3037. }
  3038. ],
  3039. "source": [
  3040. "%matplotlib inline\n",
  3041. "import matplotlib.pyplot as plt\n",
  3042. "\n",
  3043. "months = np.unique(data[:,1])\n",
  3044. "monthly_mean = [np.mean(data[data[:,1] == month, 3]) for month in months]\n",
  3045. "\n",
  3046. "fig, ax = plt.subplots()\n",
  3047. "ax.bar(months, monthly_mean)\n",
  3048. "ax.set_xlabel(\"Month\")\n",
  3049. "ax.set_ylabel(\"Monthly avg. temp.\");"
  3050. ]
  3051. },
  3052. {
  3053. "cell_type": "markdown",
  3054. "metadata": {},
  3055. "source": [
  3056. "### 7.7 高维数据的计算"
  3057. ]
  3058. },
  3059. {
  3060. "cell_type": "markdown",
  3061. "metadata": {},
  3062. "source": [
  3063. "当例如`min`, `max`等函数应用在高维数组上时,有时将计算应用于整个数组是有用的,而且很多时候有时只基于行或列。用`axis`参数我们可以决定这个函数应该怎样表现:"
  3064. ]
  3065. },
  3066. {
  3067. "cell_type": "code",
  3068. "execution_count": 143,
  3069. "metadata": {},
  3070. "outputs": [
  3071. {
  3072. "data": {
  3073. "text/plain": [
  3074. "array([[0.27954547, 0.39434877, 0.4540566 ],\n",
  3075. " [0.98942566, 0.36000135, 0.33399721],\n",
  3076. " [0.88427852, 0.87776476, 0.80368109],\n",
  3077. " [0.54534545, 0.12886051, 0.29466367]])"
  3078. ]
  3079. },
  3080. "execution_count": 143,
  3081. "metadata": {},
  3082. "output_type": "execute_result"
  3083. }
  3084. ],
  3085. "source": [
  3086. "import numpy as np\n",
  3087. "\n",
  3088. "m = np.random.rand(4,3)\n",
  3089. "m"
  3090. ]
  3091. },
  3092. {
  3093. "cell_type": "code",
  3094. "execution_count": 144,
  3095. "metadata": {},
  3096. "outputs": [
  3097. {
  3098. "data": {
  3099. "text/plain": [
  3100. "0.9894256638866764"
  3101. ]
  3102. },
  3103. "execution_count": 144,
  3104. "metadata": {},
  3105. "output_type": "execute_result"
  3106. }
  3107. ],
  3108. "source": [
  3109. "# global max\n",
  3110. "m.max()"
  3111. ]
  3112. },
  3113. {
  3114. "cell_type": "code",
  3115. "execution_count": 145,
  3116. "metadata": {},
  3117. "outputs": [
  3118. {
  3119. "data": {
  3120. "text/plain": [
  3121. "array([0.98942566, 0.87776476, 0.80368109])"
  3122. ]
  3123. },
  3124. "execution_count": 145,
  3125. "metadata": {},
  3126. "output_type": "execute_result"
  3127. }
  3128. ],
  3129. "source": [
  3130. "# max in each column\n",
  3131. "m.max(axis=0)"
  3132. ]
  3133. },
  3134. {
  3135. "cell_type": "code",
  3136. "execution_count": 123,
  3137. "metadata": {},
  3138. "outputs": [
  3139. {
  3140. "data": {
  3141. "text/plain": [
  3142. "array([ 0.7859115 , 0.77223336, 0.50666828, 0.55104521])"
  3143. ]
  3144. },
  3145. "execution_count": 123,
  3146. "metadata": {},
  3147. "output_type": "execute_result"
  3148. }
  3149. ],
  3150. "source": [
  3151. "# max in each row\n",
  3152. "m.max(axis=1)"
  3153. ]
  3154. },
  3155. {
  3156. "cell_type": "markdown",
  3157. "metadata": {},
  3158. "source": [
  3159. "许多其他的在`array` 和`matrix`类中的函数和方法接受同样(可选的)的关键字参数`axis`"
  3160. ]
  3161. },
  3162. {
  3163. "cell_type": "markdown",
  3164. "metadata": {},
  3165. "source": [
  3166. "## 8. 阵列的重塑、调整大小和堆叠"
  3167. ]
  3168. },
  3169. {
  3170. "cell_type": "markdown",
  3171. "metadata": {},
  3172. "source": [
  3173. "Numpy数组的形状可以被确定而无需复制底层数据,这使得即使对于大型数组也能有较快的操作。"
  3174. ]
  3175. },
  3176. {
  3177. "cell_type": "code",
  3178. "execution_count": 146,
  3179. "metadata": {},
  3180. "outputs": [
  3181. {
  3182. "name": "stdout",
  3183. "output_type": "stream",
  3184. "text": [
  3185. "[[0.77814945 0.11415817 0.62327907]\n",
  3186. " [0.78832786 0.9410027 0.3151632 ]\n",
  3187. " [0.0368383 0.24516094 0.74711683]\n",
  3188. " [0.81727139 0.76195462 0.19487213]]\n"
  3189. ]
  3190. }
  3191. ],
  3192. "source": [
  3193. "import numpy as np\n",
  3194. "\n",
  3195. "A = np.random.rand(4, 3)\n",
  3196. "print(A)"
  3197. ]
  3198. },
  3199. {
  3200. "cell_type": "code",
  3201. "execution_count": 147,
  3202. "metadata": {},
  3203. "outputs": [
  3204. {
  3205. "name": "stdout",
  3206. "output_type": "stream",
  3207. "text": [
  3208. "4 3\n"
  3209. ]
  3210. }
  3211. ],
  3212. "source": [
  3213. "n, m = A.shape\n",
  3214. "print(n, m)"
  3215. ]
  3216. },
  3217. {
  3218. "cell_type": "code",
  3219. "execution_count": 148,
  3220. "metadata": {},
  3221. "outputs": [
  3222. {
  3223. "data": {
  3224. "text/plain": [
  3225. "array([[0.77814945, 0.11415817, 0.62327907, 0.78832786, 0.9410027 ,\n",
  3226. " 0.3151632 , 0.0368383 , 0.24516094, 0.74711683, 0.81727139,\n",
  3227. " 0.76195462, 0.19487213]])"
  3228. ]
  3229. },
  3230. "execution_count": 148,
  3231. "metadata": {},
  3232. "output_type": "execute_result"
  3233. }
  3234. ],
  3235. "source": [
  3236. "B = A.reshape((1,n*m))\n",
  3237. "B"
  3238. ]
  3239. },
  3240. {
  3241. "cell_type": "code",
  3242. "execution_count": 149,
  3243. "metadata": {},
  3244. "outputs": [
  3245. {
  3246. "name": "stdout",
  3247. "output_type": "stream",
  3248. "text": [
  3249. "[[0.77814945]\n",
  3250. " [0.11415817]\n",
  3251. " [0.62327907]\n",
  3252. " [0.78832786]\n",
  3253. " [0.9410027 ]\n",
  3254. " [0.3151632 ]\n",
  3255. " [0.0368383 ]\n",
  3256. " [0.24516094]\n",
  3257. " [0.74711683]\n",
  3258. " [0.81727139]\n",
  3259. " [0.76195462]\n",
  3260. " [0.19487213]]\n",
  3261. "(12, 1)\n"
  3262. ]
  3263. }
  3264. ],
  3265. "source": [
  3266. "B2 = A.reshape((n*m, 1))\n",
  3267. "print(B2)\n",
  3268. "print(B2.shape)"
  3269. ]
  3270. },
  3271. {
  3272. "cell_type": "code",
  3273. "execution_count": 150,
  3274. "metadata": {},
  3275. "outputs": [
  3276. {
  3277. "data": {
  3278. "text/plain": [
  3279. "array([[5. , 5. , 5. , 5. , 5. ,\n",
  3280. " 0.3151632 , 0.0368383 , 0.24516094, 0.74711683, 0.81727139,\n",
  3281. " 0.76195462, 0.19487213]])"
  3282. ]
  3283. },
  3284. "execution_count": 150,
  3285. "metadata": {},
  3286. "output_type": "execute_result"
  3287. }
  3288. ],
  3289. "source": [
  3290. "B[0,0:5] = 5 # modify the array\n",
  3291. "\n",
  3292. "B"
  3293. ]
  3294. },
  3295. {
  3296. "cell_type": "code",
  3297. "execution_count": 151,
  3298. "metadata": {},
  3299. "outputs": [
  3300. {
  3301. "data": {
  3302. "text/plain": [
  3303. "array([[5. , 5. , 5. ],\n",
  3304. " [5. , 5. , 0.3151632 ],\n",
  3305. " [0.0368383 , 0.24516094, 0.74711683],\n",
  3306. " [0.81727139, 0.76195462, 0.19487213]])"
  3307. ]
  3308. },
  3309. "execution_count": 151,
  3310. "metadata": {},
  3311. "output_type": "execute_result"
  3312. }
  3313. ],
  3314. "source": [
  3315. "A # and the original variable is also changed. B is only a different view of the same data"
  3316. ]
  3317. },
  3318. {
  3319. "cell_type": "markdown",
  3320. "metadata": {},
  3321. "source": [
  3322. "We can also use the function `flatten` to make a higher-dimensional array into a vector. But this function create a copy of the data."
  3323. ]
  3324. },
  3325. {
  3326. "cell_type": "code",
  3327. "execution_count": 152,
  3328. "metadata": {},
  3329. "outputs": [
  3330. {
  3331. "data": {
  3332. "text/plain": [
  3333. "array([5. , 5. , 5. , 5. , 5. ,\n",
  3334. " 0.3151632 , 0.0368383 , 0.24516094, 0.74711683, 0.81727139,\n",
  3335. " 0.76195462, 0.19487213])"
  3336. ]
  3337. },
  3338. "execution_count": 152,
  3339. "metadata": {},
  3340. "output_type": "execute_result"
  3341. }
  3342. ],
  3343. "source": [
  3344. "B = A.flatten()\n",
  3345. "\n",
  3346. "B"
  3347. ]
  3348. },
  3349. {
  3350. "cell_type": "code",
  3351. "execution_count": 153,
  3352. "metadata": {},
  3353. "outputs": [
  3354. {
  3355. "name": "stdout",
  3356. "output_type": "stream",
  3357. "text": [
  3358. "(12,)\n"
  3359. ]
  3360. }
  3361. ],
  3362. "source": [
  3363. "print(B.shape)"
  3364. ]
  3365. },
  3366. {
  3367. "cell_type": "code",
  3368. "execution_count": 154,
  3369. "metadata": {},
  3370. "outputs": [
  3371. {
  3372. "name": "stdout",
  3373. "output_type": "stream",
  3374. "text": [
  3375. "[0.15246604 0.88310479 0.72114104 0.13062197 0.34755784 0.23403431\n",
  3376. " 0.92416609 0.02256229 0.5800577 0.74899696 0.92496278 0.98122918\n",
  3377. " 0.48526406 0.61784995 0.74526605 0.36587567 0.53935338 0.48663655\n",
  3378. " 0.46254169 0.60397314 0.20181377 0.4031567 0.91153399 0.550312\n",
  3379. " 0.05484349 0.73570383 0.52350869 0.29877126 0.64086659 0.74656651\n",
  3380. " 0.4431057 0.26241441 0.8531424 0.44721405 0.25633508 0.68545314\n",
  3381. " 0.90912925 0.91285705 0.95180396 0.74203516 0.57374628 0.02461786\n",
  3382. " 0.65634028 0.3354893 0.89448353 0.42890204 0.09926527 0.93041583\n",
  3383. " 0.65132991 0.40817373 0.39369988 0.38511924 0.59963332 0.36952358\n",
  3384. " 0.22752502 0.56710332 0.95845757 0.97355957 0.43180755 0.20890057]\n"
  3385. ]
  3386. }
  3387. ],
  3388. "source": [
  3389. "T = np.random.rand(3, 4, 5)\n",
  3390. "T2 = T.flatten()\n",
  3391. "print(T2)"
  3392. ]
  3393. },
  3394. {
  3395. "cell_type": "code",
  3396. "execution_count": 155,
  3397. "metadata": {},
  3398. "outputs": [
  3399. {
  3400. "data": {
  3401. "text/plain": [
  3402. "array([10. , 10. , 10. , 10. , 10. ,\n",
  3403. " 0.3151632 , 0.0368383 , 0.24516094, 0.74711683, 0.81727139,\n",
  3404. " 0.76195462, 0.19487213])"
  3405. ]
  3406. },
  3407. "execution_count": 155,
  3408. "metadata": {},
  3409. "output_type": "execute_result"
  3410. }
  3411. ],
  3412. "source": [
  3413. "B[0:5] = 10\n",
  3414. "\n",
  3415. "B"
  3416. ]
  3417. },
  3418. {
  3419. "cell_type": "code",
  3420. "execution_count": 156,
  3421. "metadata": {},
  3422. "outputs": [
  3423. {
  3424. "data": {
  3425. "text/plain": [
  3426. "array([[5. , 5. , 5. ],\n",
  3427. " [5. , 5. , 0.3151632 ],\n",
  3428. " [0.0368383 , 0.24516094, 0.74711683],\n",
  3429. " [0.81727139, 0.76195462, 0.19487213]])"
  3430. ]
  3431. },
  3432. "execution_count": 156,
  3433. "metadata": {},
  3434. "output_type": "execute_result"
  3435. }
  3436. ],
  3437. "source": [
  3438. "A # 现在A并没有改变,因为B的数值是A的复制,并不指向同样的值。"
  3439. ]
  3440. },
  3441. {
  3442. "cell_type": "markdown",
  3443. "metadata": {},
  3444. "source": [
  3445. "## 9. 添加、删除维度:newaxis、squeeze"
  3446. ]
  3447. },
  3448. {
  3449. "cell_type": "markdown",
  3450. "metadata": {},
  3451. "source": [
  3452. "当矩阵乘法的时候,需要两个矩阵的对应的纬度保持一致才可以正确执行,有了`newaxis`,我们可以在数组中插入新的维度,例如将一个向量转换为列或行矩阵:"
  3453. ]
  3454. },
  3455. {
  3456. "cell_type": "code",
  3457. "execution_count": 157,
  3458. "metadata": {},
  3459. "outputs": [],
  3460. "source": [
  3461. "v = np.array([1,2,3])"
  3462. ]
  3463. },
  3464. {
  3465. "cell_type": "code",
  3466. "execution_count": 158,
  3467. "metadata": {},
  3468. "outputs": [
  3469. {
  3470. "name": "stdout",
  3471. "output_type": "stream",
  3472. "text": [
  3473. "(3,)\n",
  3474. "[1 2 3]\n"
  3475. ]
  3476. }
  3477. ],
  3478. "source": [
  3479. "print(np.shape(v))\n",
  3480. "print(v)"
  3481. ]
  3482. },
  3483. {
  3484. "cell_type": "code",
  3485. "execution_count": 159,
  3486. "metadata": {},
  3487. "outputs": [
  3488. {
  3489. "name": "stdout",
  3490. "output_type": "stream",
  3491. "text": [
  3492. "(3, 1)\n",
  3493. "[[1]\n",
  3494. " [2]\n",
  3495. " [3]]\n"
  3496. ]
  3497. }
  3498. ],
  3499. "source": [
  3500. "v2 = v.reshape(3, 1)\n",
  3501. "print(v2.shape)\n",
  3502. "print(v2)"
  3503. ]
  3504. },
  3505. {
  3506. "cell_type": "code",
  3507. "execution_count": 161,
  3508. "metadata": {},
  3509. "outputs": [
  3510. {
  3511. "name": "stdout",
  3512. "output_type": "stream",
  3513. "text": [
  3514. "(3,)\n",
  3515. "(3, 1)\n"
  3516. ]
  3517. }
  3518. ],
  3519. "source": [
  3520. "# 做一个向量v的列矩阵\n",
  3521. "v2 = v[:, np.newaxis]\n",
  3522. "print(v.shape)\n",
  3523. "print(v2.shape)\n"
  3524. ]
  3525. },
  3526. {
  3527. "cell_type": "code",
  3528. "execution_count": 162,
  3529. "metadata": {},
  3530. "outputs": [
  3531. {
  3532. "data": {
  3533. "text/plain": [
  3534. "(3, 1)"
  3535. ]
  3536. },
  3537. "execution_count": 162,
  3538. "metadata": {},
  3539. "output_type": "execute_result"
  3540. }
  3541. ],
  3542. "source": [
  3543. "# 列矩阵\n",
  3544. "v[:,np.newaxis].shape"
  3545. ]
  3546. },
  3547. {
  3548. "cell_type": "code",
  3549. "execution_count": 163,
  3550. "metadata": {},
  3551. "outputs": [
  3552. {
  3553. "data": {
  3554. "text/plain": [
  3555. "(1, 3)"
  3556. ]
  3557. },
  3558. "execution_count": 163,
  3559. "metadata": {},
  3560. "output_type": "execute_result"
  3561. }
  3562. ],
  3563. "source": [
  3564. "# 行矩阵\n",
  3565. "v[np.newaxis,:].shape"
  3566. ]
  3567. },
  3568. {
  3569. "cell_type": "markdown",
  3570. "metadata": {},
  3571. "source": [
  3572. "也可以通过 `np.expand_dims` 来实现类似的操作"
  3573. ]
  3574. },
  3575. {
  3576. "cell_type": "code",
  3577. "execution_count": 164,
  3578. "metadata": {},
  3579. "outputs": [
  3580. {
  3581. "name": "stdout",
  3582. "output_type": "stream",
  3583. "text": [
  3584. "(3, 1)\n",
  3585. "[[1]\n",
  3586. " [2]\n",
  3587. " [3]]\n"
  3588. ]
  3589. }
  3590. ],
  3591. "source": [
  3592. "v = np.array([1,2,3])\n",
  3593. "v3 = np.expand_dims(v, 1)\n",
  3594. "print(v3.shape)\n",
  3595. "print(v3)"
  3596. ]
  3597. },
  3598. {
  3599. "cell_type": "markdown",
  3600. "metadata": {},
  3601. "source": [
  3602. "在某些情况,需要将纬度为1的那个纬度删除掉,可以使用`np.squeeze`实现"
  3603. ]
  3604. },
  3605. {
  3606. "cell_type": "code",
  3607. "execution_count": 165,
  3608. "metadata": {},
  3609. "outputs": [
  3610. {
  3611. "name": "stdout",
  3612. "output_type": "stream",
  3613. "text": [
  3614. "(1, 2, 3)\n",
  3615. "[[[1 2 3]\n",
  3616. " [2 3 4]]]\n"
  3617. ]
  3618. }
  3619. ],
  3620. "source": [
  3621. "arr = np.array([[[1, 2, 3], [2, 3, 4]]])\n",
  3622. "print(arr.shape)\n",
  3623. "print(arr)"
  3624. ]
  3625. },
  3626. {
  3627. "cell_type": "code",
  3628. "execution_count": 168,
  3629. "metadata": {},
  3630. "outputs": [
  3631. {
  3632. "name": "stdout",
  3633. "output_type": "stream",
  3634. "text": [
  3635. "(2, 3)\n",
  3636. "[[1 2 3]\n",
  3637. " [2 3 4]]\n"
  3638. ]
  3639. }
  3640. ],
  3641. "source": [
  3642. "# 实际上第一个纬度为`1`,我们不需要\n",
  3643. "arr2 = np.squeeze(arr, 0)\n",
  3644. "print(arr2.shape)\n",
  3645. "print(arr2)"
  3646. ]
  3647. },
  3648. {
  3649. "cell_type": "markdown",
  3650. "metadata": {},
  3651. "source": [
  3652. "需要注意:只有数组长度在该纬度上为1,那么该纬度才可以被删除;否则会报错。"
  3653. ]
  3654. },
  3655. {
  3656. "cell_type": "markdown",
  3657. "metadata": {},
  3658. "source": [
  3659. "## 10. 叠加和重复数组"
  3660. ]
  3661. },
  3662. {
  3663. "cell_type": "markdown",
  3664. "metadata": {},
  3665. "source": [
  3666. "利用函数`repeat`, `tile`, `vstack`, `hstack`, 和`concatenate` 可以用较小的向量和矩阵来创建更大的向量和矩阵。"
  3667. ]
  3668. },
  3669. {
  3670. "cell_type": "markdown",
  3671. "metadata": {},
  3672. "source": [
  3673. "### 10.1 tile and repeat"
  3674. ]
  3675. },
  3676. {
  3677. "cell_type": "code",
  3678. "execution_count": 171,
  3679. "metadata": {},
  3680. "outputs": [
  3681. {
  3682. "name": "stdout",
  3683. "output_type": "stream",
  3684. "text": [
  3685. "[[1 2]\n",
  3686. " [3 4]]\n"
  3687. ]
  3688. }
  3689. ],
  3690. "source": [
  3691. "a = np.array([[1, 2], [3, 4]])\n",
  3692. "print(a)"
  3693. ]
  3694. },
  3695. {
  3696. "cell_type": "code",
  3697. "execution_count": 172,
  3698. "metadata": {},
  3699. "outputs": [
  3700. {
  3701. "data": {
  3702. "text/plain": [
  3703. "array([1, 1, 1, 2, 2, 2, 3, 3, 3, 4, 4, 4])"
  3704. ]
  3705. },
  3706. "execution_count": 172,
  3707. "metadata": {},
  3708. "output_type": "execute_result"
  3709. }
  3710. ],
  3711. "source": [
  3712. "# 重复每一个元素三次\n",
  3713. "np.repeat(a, 3)"
  3714. ]
  3715. },
  3716. {
  3717. "cell_type": "code",
  3718. "execution_count": 173,
  3719. "metadata": {},
  3720. "outputs": [
  3721. {
  3722. "data": {
  3723. "text/plain": [
  3724. "array([[1, 2, 1, 2, 1, 2],\n",
  3725. " [3, 4, 3, 4, 3, 4]])"
  3726. ]
  3727. },
  3728. "execution_count": 173,
  3729. "metadata": {},
  3730. "output_type": "execute_result"
  3731. }
  3732. ],
  3733. "source": [
  3734. "# tile the matrix 3 times \n",
  3735. "np.tile(a, 3)"
  3736. ]
  3737. },
  3738. {
  3739. "cell_type": "code",
  3740. "execution_count": 176,
  3741. "metadata": {},
  3742. "outputs": [
  3743. {
  3744. "data": {
  3745. "text/plain": [
  3746. "array([[1, 2, 1, 2, 1, 2],\n",
  3747. " [3, 4, 3, 4, 3, 4]])"
  3748. ]
  3749. },
  3750. "execution_count": 176,
  3751. "metadata": {},
  3752. "output_type": "execute_result"
  3753. }
  3754. ],
  3755. "source": [
  3756. "# 更好的方案\n",
  3757. "np.tile(a, (1, 3))"
  3758. ]
  3759. },
  3760. {
  3761. "cell_type": "code",
  3762. "execution_count": 148,
  3763. "metadata": {},
  3764. "outputs": [
  3765. {
  3766. "data": {
  3767. "text/plain": [
  3768. "array([[1, 2],\n",
  3769. " [3, 4],\n",
  3770. " [1, 2],\n",
  3771. " [3, 4],\n",
  3772. " [1, 2],\n",
  3773. " [3, 4]])"
  3774. ]
  3775. },
  3776. "execution_count": 148,
  3777. "metadata": {},
  3778. "output_type": "execute_result"
  3779. }
  3780. ],
  3781. "source": [
  3782. "np.tile(a, (3, 1))"
  3783. ]
  3784. },
  3785. {
  3786. "cell_type": "markdown",
  3787. "metadata": {},
  3788. "source": [
  3789. "### 10.2 concatenate"
  3790. ]
  3791. },
  3792. {
  3793. "cell_type": "code",
  3794. "execution_count": 185,
  3795. "metadata": {},
  3796. "outputs": [],
  3797. "source": [
  3798. "b = np.array([[5, 6]])"
  3799. ]
  3800. },
  3801. {
  3802. "cell_type": "code",
  3803. "execution_count": 186,
  3804. "metadata": {},
  3805. "outputs": [
  3806. {
  3807. "data": {
  3808. "text/plain": [
  3809. "array([[1, 2],\n",
  3810. " [3, 4],\n",
  3811. " [5, 6]])"
  3812. ]
  3813. },
  3814. "execution_count": 186,
  3815. "metadata": {},
  3816. "output_type": "execute_result"
  3817. }
  3818. ],
  3819. "source": [
  3820. "np.concatenate((a, b), axis=0)"
  3821. ]
  3822. },
  3823. {
  3824. "cell_type": "code",
  3825. "execution_count": 187,
  3826. "metadata": {},
  3827. "outputs": [
  3828. {
  3829. "data": {
  3830. "text/plain": [
  3831. "array([[1, 2, 5],\n",
  3832. " [3, 4, 6]])"
  3833. ]
  3834. },
  3835. "execution_count": 187,
  3836. "metadata": {},
  3837. "output_type": "execute_result"
  3838. }
  3839. ],
  3840. "source": [
  3841. "np.concatenate((a, b.T), axis=1)"
  3842. ]
  3843. },
  3844. {
  3845. "cell_type": "markdown",
  3846. "metadata": {},
  3847. "source": [
  3848. "### 10.3 hstack and vstack"
  3849. ]
  3850. },
  3851. {
  3852. "cell_type": "code",
  3853. "execution_count": 188,
  3854. "metadata": {},
  3855. "outputs": [
  3856. {
  3857. "data": {
  3858. "text/plain": [
  3859. "array([[1, 2],\n",
  3860. " [3, 4],\n",
  3861. " [5, 6]])"
  3862. ]
  3863. },
  3864. "execution_count": 188,
  3865. "metadata": {},
  3866. "output_type": "execute_result"
  3867. }
  3868. ],
  3869. "source": [
  3870. "np.vstack((a,b))"
  3871. ]
  3872. },
  3873. {
  3874. "cell_type": "code",
  3875. "execution_count": 189,
  3876. "metadata": {},
  3877. "outputs": [
  3878. {
  3879. "data": {
  3880. "text/plain": [
  3881. "array([[1, 2, 5],\n",
  3882. " [3, 4, 6]])"
  3883. ]
  3884. },
  3885. "execution_count": 189,
  3886. "metadata": {},
  3887. "output_type": "execute_result"
  3888. }
  3889. ],
  3890. "source": [
  3891. "np.hstack((a,b.T))"
  3892. ]
  3893. },
  3894. {
  3895. "cell_type": "markdown",
  3896. "metadata": {},
  3897. "source": [
  3898. "## 11. 复制和“深度复制”"
  3899. ]
  3900. },
  3901. {
  3902. "cell_type": "markdown",
  3903. "metadata": {},
  3904. "source": [
  3905. "为了获得高性能,Python中的赋值通常不复制底层对象。例如,在函数之间传递对象时,通过引用传递从而避免不必要的大量内存复制。"
  3906. ]
  3907. },
  3908. {
  3909. "cell_type": "code",
  3910. "execution_count": 190,
  3911. "metadata": {},
  3912. "outputs": [
  3913. {
  3914. "data": {
  3915. "text/plain": [
  3916. "array([[1, 2],\n",
  3917. " [3, 4]])"
  3918. ]
  3919. },
  3920. "execution_count": 190,
  3921. "metadata": {},
  3922. "output_type": "execute_result"
  3923. }
  3924. ],
  3925. "source": [
  3926. "A = np.array([[1, 2], [3, 4]])\n",
  3927. "\n",
  3928. "A"
  3929. ]
  3930. },
  3931. {
  3932. "cell_type": "code",
  3933. "execution_count": 191,
  3934. "metadata": {},
  3935. "outputs": [],
  3936. "source": [
  3937. "# 现在B和A指的是同一个数组数据\n",
  3938. "B = A "
  3939. ]
  3940. },
  3941. {
  3942. "cell_type": "code",
  3943. "execution_count": 192,
  3944. "metadata": {},
  3945. "outputs": [
  3946. {
  3947. "data": {
  3948. "text/plain": [
  3949. "array([[10, 2],\n",
  3950. " [ 3, 4]])"
  3951. ]
  3952. },
  3953. "execution_count": 192,
  3954. "metadata": {},
  3955. "output_type": "execute_result"
  3956. }
  3957. ],
  3958. "source": [
  3959. "# 改变B影响A\n",
  3960. "B[0,0] = 10\n",
  3961. "\n",
  3962. "B"
  3963. ]
  3964. },
  3965. {
  3966. "cell_type": "code",
  3967. "execution_count": 193,
  3968. "metadata": {},
  3969. "outputs": [
  3970. {
  3971. "data": {
  3972. "text/plain": [
  3973. "array([[10, 2],\n",
  3974. " [ 3, 4]])"
  3975. ]
  3976. },
  3977. "execution_count": 193,
  3978. "metadata": {},
  3979. "output_type": "execute_result"
  3980. }
  3981. ],
  3982. "source": [
  3983. "A"
  3984. ]
  3985. },
  3986. {
  3987. "cell_type": "markdown",
  3988. "metadata": {},
  3989. "source": [
  3990. "如果我们想避免这种引用赋值的行为,那么当我们从 `A` 复制一个新的完全独立的对象 `B` 时,我们需要使用函数 `copy` 来做一个所谓的“深度复制”:"
  3991. ]
  3992. },
  3993. {
  3994. "cell_type": "code",
  3995. "execution_count": 194,
  3996. "metadata": {},
  3997. "outputs": [],
  3998. "source": [
  3999. "B = np.copy(A)"
  4000. ]
  4001. },
  4002. {
  4003. "cell_type": "code",
  4004. "execution_count": 195,
  4005. "metadata": {},
  4006. "outputs": [
  4007. {
  4008. "data": {
  4009. "text/plain": [
  4010. "array([[-5, 2],\n",
  4011. " [ 3, 4]])"
  4012. ]
  4013. },
  4014. "execution_count": 195,
  4015. "metadata": {},
  4016. "output_type": "execute_result"
  4017. }
  4018. ],
  4019. "source": [
  4020. "# 现在如果我们改变B,A不受影响\n",
  4021. "B[0,0] = -5\n",
  4022. "\n",
  4023. "B"
  4024. ]
  4025. },
  4026. {
  4027. "cell_type": "code",
  4028. "execution_count": 196,
  4029. "metadata": {},
  4030. "outputs": [
  4031. {
  4032. "data": {
  4033. "text/plain": [
  4034. "array([[10, 2],\n",
  4035. " [ 3, 4]])"
  4036. ]
  4037. },
  4038. "execution_count": 196,
  4039. "metadata": {},
  4040. "output_type": "execute_result"
  4041. }
  4042. ],
  4043. "source": [
  4044. "A"
  4045. ]
  4046. },
  4047. {
  4048. "cell_type": "markdown",
  4049. "metadata": {},
  4050. "source": [
  4051. "## 12. 遍历数组元素"
  4052. ]
  4053. },
  4054. {
  4055. "cell_type": "markdown",
  4056. "metadata": {},
  4057. "source": [
  4058. "通常,我们希望尽可能避免遍历数组元素(不惜一切代价)。原因是在像Python(或MATLAB)这样的解释语言中,迭代与向量化操作相比真的很慢。\n",
  4059. "\n",
  4060. "然而,有时迭代是不可避免的。对于这种情况,Python的For循环是最方便的遍历数组的方法:"
  4061. ]
  4062. },
  4063. {
  4064. "cell_type": "code",
  4065. "execution_count": 197,
  4066. "metadata": {},
  4067. "outputs": [
  4068. {
  4069. "name": "stdout",
  4070. "output_type": "stream",
  4071. "text": [
  4072. "1\n",
  4073. "2\n",
  4074. "3\n",
  4075. "4\n"
  4076. ]
  4077. }
  4078. ],
  4079. "source": [
  4080. "v = np.array([1,2,3,4])\n",
  4081. "\n",
  4082. "for element in v:\n",
  4083. " print(element)"
  4084. ]
  4085. },
  4086. {
  4087. "cell_type": "code",
  4088. "execution_count": 198,
  4089. "metadata": {},
  4090. "outputs": [
  4091. {
  4092. "name": "stdout",
  4093. "output_type": "stream",
  4094. "text": [
  4095. "row [1 2]\n",
  4096. "1\n",
  4097. "2\n",
  4098. "row [3 4]\n",
  4099. "3\n",
  4100. "4\n"
  4101. ]
  4102. }
  4103. ],
  4104. "source": [
  4105. "M = np.array([[1,2], [3,4]])\n",
  4106. "\n",
  4107. "for row in M:\n",
  4108. " print(\"row\", row)\n",
  4109. " \n",
  4110. " for element in row:\n",
  4111. " print(element)"
  4112. ]
  4113. },
  4114. {
  4115. "cell_type": "markdown",
  4116. "metadata": {},
  4117. "source": [
  4118. "当我们需要去\n",
  4119. "当我们需要遍历一个数组的每个元素并修改它的元素时,使用`enumerate`函数可以方便地在`for`循环中获得元素及其索引:"
  4120. ]
  4121. },
  4122. {
  4123. "cell_type": "code",
  4124. "execution_count": 199,
  4125. "metadata": {},
  4126. "outputs": [
  4127. {
  4128. "name": "stdout",
  4129. "output_type": "stream",
  4130. "text": [
  4131. "row_idx 0 row [1 2]\n",
  4132. "col_idx 0 element 1\n",
  4133. "col_idx 1 element 2\n",
  4134. "row_idx 1 row [3 4]\n",
  4135. "col_idx 0 element 3\n",
  4136. "col_idx 1 element 4\n"
  4137. ]
  4138. }
  4139. ],
  4140. "source": [
  4141. "for row_idx, row in enumerate(M):\n",
  4142. " print(\"row_idx\", row_idx, \"row\", row)\n",
  4143. " \n",
  4144. " for col_idx, element in enumerate(row):\n",
  4145. " print(\"col_idx\", col_idx, \"element\", element)\n",
  4146. " \n",
  4147. " # 更新矩阵:对每个元素求平方\n",
  4148. " M[row_idx, col_idx] = element ** 2"
  4149. ]
  4150. },
  4151. {
  4152. "cell_type": "code",
  4153. "execution_count": 200,
  4154. "metadata": {},
  4155. "outputs": [
  4156. {
  4157. "data": {
  4158. "text/plain": [
  4159. "array([[ 1, 4],\n",
  4160. " [ 9, 16]])"
  4161. ]
  4162. },
  4163. "execution_count": 200,
  4164. "metadata": {},
  4165. "output_type": "execute_result"
  4166. }
  4167. ],
  4168. "source": [
  4169. "# 现在矩阵里的每一个元素都已经求得平方\n",
  4170. "M"
  4171. ]
  4172. },
  4173. {
  4174. "cell_type": "markdown",
  4175. "metadata": {},
  4176. "source": [
  4177. "## 13. 向量化功能"
  4178. ]
  4179. },
  4180. {
  4181. "cell_type": "markdown",
  4182. "metadata": {},
  4183. "source": [
  4184. "正如前面多次提到的,为了获得良好的性能,我们应该尽量避免对向量和矩阵中的元素进行循环,而应该使用向量化算法。将标量算法转换为向量化算法的第一步是确保我们编写的函数使用向量输入。"
  4185. ]
  4186. },
  4187. {
  4188. "cell_type": "code",
  4189. "execution_count": 201,
  4190. "metadata": {},
  4191. "outputs": [],
  4192. "source": [
  4193. "def Theta(x):\n",
  4194. " \"\"\"\n",
  4195. " 阶跃函数的普遍版本\n",
  4196. " \"\"\"\n",
  4197. " if x >= 0:\n",
  4198. " return 1\n",
  4199. " else:\n",
  4200. " return 0"
  4201. ]
  4202. },
  4203. {
  4204. "cell_type": "code",
  4205. "execution_count": 202,
  4206. "metadata": {
  4207. "scrolled": true
  4208. },
  4209. "outputs": [
  4210. {
  4211. "ename": "ValueError",
  4212. "evalue": "The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()",
  4213. "output_type": "error",
  4214. "traceback": [
  4215. "\u001b[0;31m------------------------------------------------------------\u001b[0m",
  4216. "\u001b[0;31mValueError\u001b[0m Traceback (most recent call last)",
  4217. "\u001b[0;32m<ipython-input-202-b49266106206>\u001b[0m in \u001b[0;36m<module>\u001b[0;34m\u001b[0m\n\u001b[0;32m----> 1\u001b[0;31m \u001b[0mTheta\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mnp\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0marray\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0;34m[\u001b[0m\u001b[0;34m-\u001b[0m\u001b[0;36m3\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m-\u001b[0m\u001b[0;36m2\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m-\u001b[0m\u001b[0;36m1\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;36m0\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;36m1\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;36m2\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;36m3\u001b[0m\u001b[0;34m]\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m",
  4218. "\u001b[0;32m<ipython-input-201-cb840dbb09da>\u001b[0m in \u001b[0;36mTheta\u001b[0;34m(x)\u001b[0m\n\u001b[1;32m 3\u001b[0m \u001b[0m阶跃函数的普遍版本\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 4\u001b[0m \"\"\"\n\u001b[0;32m----> 5\u001b[0;31m \u001b[0;32mif\u001b[0m \u001b[0mx\u001b[0m \u001b[0;34m>=\u001b[0m \u001b[0;36m0\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m 6\u001b[0m \u001b[0;32mreturn\u001b[0m \u001b[0;36m1\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 7\u001b[0m \u001b[0;32melse\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
  4219. "\u001b[0;31mValueError\u001b[0m: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()"
  4220. ]
  4221. }
  4222. ],
  4223. "source": [
  4224. "Theta(np.array([-3,-2,-1,0,1,2,3]))"
  4225. ]
  4226. },
  4227. {
  4228. "cell_type": "markdown",
  4229. "metadata": {},
  4230. "source": [
  4231. "这个操作并不可行,因为所实现的 `Theta` 函数不能接收向量输入。\n",
  4232. "\n",
  4233. "为了得到向量化的版本,我们可以使用Numpy函数 `vectorize` 。在许多情况下,它可以自动向量化一个函数:"
  4234. ]
  4235. },
  4236. {
  4237. "cell_type": "code",
  4238. "execution_count": 203,
  4239. "metadata": {},
  4240. "outputs": [],
  4241. "source": [
  4242. "Theta_vec = np.vectorize(Theta)"
  4243. ]
  4244. },
  4245. {
  4246. "cell_type": "code",
  4247. "execution_count": 204,
  4248. "metadata": {},
  4249. "outputs": [
  4250. {
  4251. "data": {
  4252. "text/plain": [
  4253. "array([0, 0, 0, 1, 1, 1, 1])"
  4254. ]
  4255. },
  4256. "execution_count": 204,
  4257. "metadata": {},
  4258. "output_type": "execute_result"
  4259. }
  4260. ],
  4261. "source": [
  4262. "Theta_vec(np.array([-3,-2,-1,0,1,2,3]))"
  4263. ]
  4264. },
  4265. {
  4266. "cell_type": "markdown",
  4267. "metadata": {},
  4268. "source": [
  4269. "我们也可以实现从一开始就接受矢量输入的函数(需要更多的计算,但可能会有更好的性能):"
  4270. ]
  4271. },
  4272. {
  4273. "cell_type": "code",
  4274. "execution_count": 205,
  4275. "metadata": {},
  4276. "outputs": [],
  4277. "source": [
  4278. "def Theta(x):\n",
  4279. " \"\"\"\n",
  4280. " Heaviside阶跃函数的矢量感知实现。\n",
  4281. " \"\"\"\n",
  4282. " return 1 * (x >= 0)"
  4283. ]
  4284. },
  4285. {
  4286. "cell_type": "code",
  4287. "execution_count": 206,
  4288. "metadata": {},
  4289. "outputs": [
  4290. {
  4291. "data": {
  4292. "text/plain": [
  4293. "array([0, 0, 0, 1, 1, 1, 1])"
  4294. ]
  4295. },
  4296. "execution_count": 206,
  4297. "metadata": {},
  4298. "output_type": "execute_result"
  4299. }
  4300. ],
  4301. "source": [
  4302. "Theta(np.array([-3,-2,-1,0,1,2,3]))"
  4303. ]
  4304. },
  4305. {
  4306. "cell_type": "code",
  4307. "execution_count": 207,
  4308. "metadata": {},
  4309. "outputs": [
  4310. {
  4311. "name": "stdout",
  4312. "output_type": "stream",
  4313. "text": [
  4314. "[False False False True True True True]\n"
  4315. ]
  4316. },
  4317. {
  4318. "data": {
  4319. "text/plain": [
  4320. "array([0, 0, 0, 1, 1, 1, 1])"
  4321. ]
  4322. },
  4323. "execution_count": 207,
  4324. "metadata": {},
  4325. "output_type": "execute_result"
  4326. }
  4327. ],
  4328. "source": [
  4329. "a = np.array([-3,-2,-1,0,1,2,3])\n",
  4330. "b = a>=0\n",
  4331. "print(b)\n",
  4332. "b*1"
  4333. ]
  4334. },
  4335. {
  4336. "cell_type": "code",
  4337. "execution_count": 208,
  4338. "metadata": {},
  4339. "outputs": [
  4340. {
  4341. "data": {
  4342. "text/plain": [
  4343. "(0, 1)"
  4344. ]
  4345. },
  4346. "execution_count": 208,
  4347. "metadata": {},
  4348. "output_type": "execute_result"
  4349. }
  4350. ],
  4351. "source": [
  4352. "# 同样适用于标量\n",
  4353. "Theta(-1.2), Theta(2.6)"
  4354. ]
  4355. },
  4356. {
  4357. "cell_type": "markdown",
  4358. "metadata": {},
  4359. "source": [
  4360. "## 14. 在条件中使用数组"
  4361. ]
  4362. },
  4363. {
  4364. "cell_type": "markdown",
  4365. "metadata": {},
  4366. "source": [
  4367. "当在条件中使用数组时,例如`if`语句和其他布尔表达,一个需要用`any`或者`all`,这让数组任何或者所有元素都等于`True`。"
  4368. ]
  4369. },
  4370. {
  4371. "cell_type": "code",
  4372. "execution_count": 209,
  4373. "metadata": {},
  4374. "outputs": [
  4375. {
  4376. "data": {
  4377. "text/plain": [
  4378. "array([[1, 2],\n",
  4379. " [3, 4]])"
  4380. ]
  4381. },
  4382. "execution_count": 209,
  4383. "metadata": {},
  4384. "output_type": "execute_result"
  4385. }
  4386. ],
  4387. "source": [
  4388. "M = np.array([[1, 2], [3, 4]])\n",
  4389. "M"
  4390. ]
  4391. },
  4392. {
  4393. "cell_type": "code",
  4394. "execution_count": 210,
  4395. "metadata": {},
  4396. "outputs": [
  4397. {
  4398. "data": {
  4399. "text/plain": [
  4400. "True"
  4401. ]
  4402. },
  4403. "execution_count": 210,
  4404. "metadata": {},
  4405. "output_type": "execute_result"
  4406. }
  4407. ],
  4408. "source": [
  4409. "(M > 2).any()"
  4410. ]
  4411. },
  4412. {
  4413. "cell_type": "code",
  4414. "execution_count": 175,
  4415. "metadata": {},
  4416. "outputs": [
  4417. {
  4418. "name": "stdout",
  4419. "output_type": "stream",
  4420. "text": [
  4421. "at least one element in M is larger than 2\n"
  4422. ]
  4423. }
  4424. ],
  4425. "source": [
  4426. "if (M > 2).any():\n",
  4427. " print(\"at least one element in M is larger than 2\")\n",
  4428. "else:\n",
  4429. " print(\"no element in M is larger than 2\")"
  4430. ]
  4431. },
  4432. {
  4433. "cell_type": "code",
  4434. "execution_count": 211,
  4435. "metadata": {},
  4436. "outputs": [
  4437. {
  4438. "name": "stdout",
  4439. "output_type": "stream",
  4440. "text": [
  4441. "all elements in M are not larger than 5\n"
  4442. ]
  4443. }
  4444. ],
  4445. "source": [
  4446. "if (M > 5).all():\n",
  4447. " print(\"all elements in M are larger than 5\")\n",
  4448. "else:\n",
  4449. " print(\"all elements in M are not larger than 5\")"
  4450. ]
  4451. },
  4452. {
  4453. "cell_type": "markdown",
  4454. "metadata": {},
  4455. "source": [
  4456. "## 15. 类型转换"
  4457. ]
  4458. },
  4459. {
  4460. "cell_type": "markdown",
  4461. "metadata": {},
  4462. "source": [
  4463. "因为Numpy数组是*静态类型*,数组的类型一旦创建就不会改变。但是我们可以用`astype`函数(参见类似的“asarray”函数)显式地转换一个数组的类型到其他的类型,这总是创建一个新类型的新数组。"
  4464. ]
  4465. },
  4466. {
  4467. "cell_type": "code",
  4468. "execution_count": 212,
  4469. "metadata": {},
  4470. "outputs": [
  4471. {
  4472. "data": {
  4473. "text/plain": [
  4474. "dtype('int64')"
  4475. ]
  4476. },
  4477. "execution_count": 212,
  4478. "metadata": {},
  4479. "output_type": "execute_result"
  4480. }
  4481. ],
  4482. "source": [
  4483. "M.dtype\n"
  4484. ]
  4485. },
  4486. {
  4487. "cell_type": "code",
  4488. "execution_count": 213,
  4489. "metadata": {},
  4490. "outputs": [
  4491. {
  4492. "data": {
  4493. "text/plain": [
  4494. "array([[1., 2.],\n",
  4495. " [3., 4.]])"
  4496. ]
  4497. },
  4498. "execution_count": 213,
  4499. "metadata": {},
  4500. "output_type": "execute_result"
  4501. }
  4502. ],
  4503. "source": [
  4504. "M2 = M.astype(float)\n",
  4505. "\n",
  4506. "M2"
  4507. ]
  4508. },
  4509. {
  4510. "cell_type": "code",
  4511. "execution_count": 214,
  4512. "metadata": {},
  4513. "outputs": [
  4514. {
  4515. "data": {
  4516. "text/plain": [
  4517. "dtype('float64')"
  4518. ]
  4519. },
  4520. "execution_count": 214,
  4521. "metadata": {},
  4522. "output_type": "execute_result"
  4523. }
  4524. ],
  4525. "source": [
  4526. "M2.dtype"
  4527. ]
  4528. },
  4529. {
  4530. "cell_type": "code",
  4531. "execution_count": 215,
  4532. "metadata": {},
  4533. "outputs": [
  4534. {
  4535. "data": {
  4536. "text/plain": [
  4537. "array([[ True, True],\n",
  4538. " [ True, True]])"
  4539. ]
  4540. },
  4541. "execution_count": 215,
  4542. "metadata": {},
  4543. "output_type": "execute_result"
  4544. }
  4545. ],
  4546. "source": [
  4547. "M3 = M.astype(bool)\n",
  4548. "\n",
  4549. "M3"
  4550. ]
  4551. },
  4552. {
  4553. "cell_type": "markdown",
  4554. "metadata": {},
  4555. "source": [
  4556. "## 16. 进一步学习"
  4557. ]
  4558. },
  4559. {
  4560. "cell_type": "markdown",
  4561. "metadata": {},
  4562. "source": [
  4563. "* [NumPy 简易教程](https://www.runoob.com/numpy/numpy-tutorial.html)\n",
  4564. "* [NumPy 官方用户指南](https://www.numpy.org.cn/user/)\n",
  4565. "* [NumPy 官方参考手册](https://www.numpy.org.cn/reference/)\n",
  4566. "* [一个针对MATLAB使用者的Numpy教程](https://numpy.org/doc/stable/user/numpy-for-matlab-users.html)"
  4567. ]
  4568. }
  4569. ],
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机器学习越来越多应用到飞行器、机器人等领域,其目的是利用计算机实现类似人类的智能,从而实现装备的智能化与无人化。本课程旨在引导学生掌握机器学习的基本知识、典型方法与技术,通过具体的应用案例激发学生对该学科的兴趣,鼓励学生能够从人工智能的角度来分析、解决飞行器、机器人所面临的问题和挑战。本课程主要内容包括Python编程基础,机器学习模型,无监督学习、监督学习、深度学习基础知识与实现,并学习如何利用机器学习解决实际问题,从而全面提升自我的《综合能力》。