1. random.rand()方法
1.1 不传值
import numpy as np
a = np.random.rand()
print(a)
结果:
0.38263125170370416
说明:不传入参数,表示生成0到1之间的随机数
1.2 传入一个参数
import numpy as np
b = np.random.rand(10)
print(b)
结果:
[0.6015869 0.93864589 0.02830792 0.16461686 0.28153777 0.77099193
0.11503517 0.92020664 0.55646181 0.04398042]
说明:传入一个参数,生成一个对应长度的且范围在0到1之间的随机数组
1.3 传入两个参数
import numpy as np
c = np.random.rand(20,20)
print(c)
结果:
[[0.46177325 0.66081961 0.21611182 0.56998479 0.36048155 0.58951269
0.43576374 0.20117565 0.52007436 0.54222245 0.5874094 0.39413486
0.92647082 0.95573729 0.12612035 0.01791213 0.55525058 0.04916815
0.1059881 0.35420454]
[0.741201 0.49306048 0.59388445 0.55307228 0.44777731 0.73903397
0.59813579 0.58761902 0.72588363 0.83462968 0.88064133 0.49490255
0.86148232 0.93813743 0.11198241 0.96166165 0.23885567 0.99723345
0.98968899 0.47291647]
[0.08487512 0.55998094 0.700673 0.06569818 0.40761038 0.45148651
0.50759078 0.47847267 0.48956362 0.13906565 0.69303916 0.71070856
0.26480507 0.80320914 0.05737245 0.38109918 0.49275737 0.6002883
0.34752338 0.21737668]
[0.17874898 0.25554796 0.30412177 0.00696131 0.07128795 0.81251756
0.14047629 0.57610528 0.95764868 0.62450373 0.49022654 0.10043536
0.09982361 0.5570304 0.98718292 0.32206512 0.30912603 0.19903629
0.64054098 0.39754896]
[0.35791213 0.0563493 0.33233007 0.53205464 0.70981406 0.71307109
0.82525618 0.81770059 0.28942626 0.04750054 0.65662524 0.91821578
0.82908504 0.05210041 0.46542977 0.92482103 0.70270805 0.2510357
0.42442217 0.53342987]
[0.40827472 0.25938767 0.96631441 0.25269866 0.54942489 0.74627352
0.19014706 0.35668927 0.53228618 0.92269201 0.5635794 0.03609493
0.60347754 0.35537515 0.31430264 0.75530457 0.0996403 0.75935296
0.17143921 0.91255492]
[0.23378766 0.41927299 0.07734925 0.95330274 0.09399703 0.07008424
0.79116645 0.04997103 0.90631752 0.90503017 0.43922084 0.35924809
0.8388717 0.98108365 0.50858744 0.89372408 0.41983387 0.3630741
0.01655635 0.73194453]
[0.78530595 0.41777663 0.18592803 0.46529468 0.42825055 0.24607134
0.59895393 0.59885012 0.49154432 0.00245372 0.97420201 0.6437281
0.1492626 0.39166019 0.95148036 0.40315853 0.91875232 0.25439232
0.70572863 0.63365525]
[0.67184986 0.93815191 0.17134469 0.12022747 0.87751775 0.58507113
0.47778208 0.75299373 0.65311809 0.37514483 0.91766557 0.11479848
0.43639861 0.19374344 0.51075777 0.42681065 0.1435665 0.48457134
0.80223894 0.28562591]
[0.77879158 0.63475788 0.92007785 0.0295611 0.36212806 0.46343699
0.80975108 0.75521402 0.10161395 0.52237849 0.74907404 0.76311014
0.13839892 0.04238508 0.93028081 0.57549331 0.09471343 0.06314428
0.54766998 0.62641006]
[0.15939104 0.0477785 0.89517006 0.86815574 0.71188229 0.77938613
0.00305694 0.03050923 0.70055089 0.00570956 0.27841669 0.530724
0.53004088 0.56084453 0.34633395 0.20202412 0.08131313 0.83937047
0.93961987 0.82623405]
[0.42433931 0.26718646 0.62680582 0.70922826 0.50115729 0.64327102
0.57841009 0.22001071 0.53287125 0.70410177 0.8493939 0.1557961
0.39364391 0.28727442 0.81819479 0.50549199 0.26150928 0.85087804
0.54923194 0.86515693]
[0.02170008 0.5056798 0.70641418 0.72285762 0.94813347 0.06232823
0.32542045 0.80062519 0.35842956 0.11902905 0.80896527 0.68155977
0.11100083 0.60182418 0.14195504 0.83109854 0.74300121 0.56633457
0.5298753 0.12883176]
[0.73638595 0.61326375 0.54700565 0.90201875 0.06170804 0.03718377
0.53513277 0.50699015 0.99620034 0.35174463 0.37274472 0.08030701
0.19799935 0.54710375 0.06197719 0.19053725 0.31704308 0.73264089
0.899951 0.63465649]
[0.83354046 0.61845305 0.94223124 0.69069164 0.10734682 0.27225985
0.87780159 0.1646287 0.68236569 0.08202594 0.3202651 0.82313406
0.94041592 0.43631087 0.86415853 0.00155323 0.56139983 0.87069205
0.84154571 0.13128779]
[0.83747416 0.44591603 0.09917223 0.32507025 0.26359933 0.19168354
0.4638878 0.0240926 0.1335061 0.74732228 0.46756338 0.40452585
0.16156038 0.16471332 0.28048331 0.32943559 0.77933974 0.66187369
0.04256584 0.17319712]
[0.32573348 0.01808569 0.96353591 0.18444417 0.43747955 0.50559683
0.75769 0.57363002 0.90147932 0.05931192 0.34735985 0.25724545
0.3088311 0.25929817 0.22395032 0.51982475 0.27607163 0.1615151
0.09809688 0.06705644]
[0.78698289 0.48242943 0.15517405 0.98599444 0.14647591 0.69377671
0.30440766 0.23458629 0.52337381 0.80903418 0.28862557 0.63855826
0.43511973 0.238779 0.991956 0.48320447 0.12779603 0.60034613
0.42087241 0.95954316]
[0.98537348 0.76216203 0.30621803 0.60910585 0.05441588 0.30951358
0.21879278 0.24469593 0.04585956 0.49899933 0.15969888 0.11924618
0.51836025 0.27036219 0.01056964 0.01683407 0.88324621 0.89982502
0.95573504 0.29115035]
[0.16248156 0.22526813 0.40146452 0.39393591 0.01810013 0.71885908
0.02895894 0.53136449 0.18186804 0.37624181 0.90416146 0.51046335
0.15255493 0.86292341 0.72062011 0.97397118 0.23726356 0.01079719
0.90704517 0.70961783]]
说明:传入两个参数,生成对应行数和列数的多维数组,且元素的值范围0到1
2. random.randint()方法
2.1 传入一个参数
import numpy as np
d = np.random.randint(30)
print(d)
结果:
9
2.2 传入两个参数
import numpy as np
e = np.random.randint(20, size=(6,6))
print(e)
结果:
[[16 10 14 0 11 17]
[ 5 9 15 13 10 19]
[ 0 6 1 14 13 0]
[ 5 12 9 10 11 11]
[17 11 11 9 17 12]
[ 4 4 15 16 0 0]]
2.3 size传入一个值
import numpy as np
f = np.random.randint(30, size=6)
print(f)
结果:
[29 15 29 20 21 16]
3. random.choice()方法
3.1 传入一个参数
import numpy as np
g = np.random.choice(10)
print(g)
结果:
8
3.2 传入两个参数
import numpy as np
h = np.random.choice(10,10)
print(h)
结果:
[9 7 7 8 4 5 6 5 6 7]
3.3 传入一个参数和一个元组值
import numpy as np
i = np.random.choice(10,(10,10))
print(i)
结果:
[[5 0 2 5 5 6 7 5 8 6]
[8 0 5 4 2 3 9 9 1 0]
[0 4 2 0 4 2 3 5 6 2]
[1 1 2 4 3 0 5 6 4 5]
[7 5 5 6 0 0 6 6 4 1]
[5 5 1 4 0 1 8 0 5 6]
[9 6 8 7 3 7 1 5 9 4]
[9 6 2 4 0 5 1 1 3 4]
[0 5 2 1 6 3 1 1 8 6]
[0 3 4 7 8 4 2 2 2 7]]
4. random.shuffle()方法
import numpy as np
a = np.arange(10)
print(a)
k = np.random.shuffle(a)
print(a)
print(k)
结果:
[0 1 2 3 4 5 6 7 8 9]
[4 6 3 0 5 1 9 2 7 8]
None
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