pytorch入门第二课——随机梯度下降(SGD)

前言

b站刘洪普老师的pytorch入门课笔记。记录学习。
本文内容为梯度下降算法,绘制迭代-损失图。

目录

  • 前言
    • 方法
    • jupyter record
      • 梯度下降
      • 随机梯度下降法SGD(stochastic gradient descent)(使用较多)
    • 总结
    • 参考

方法

梯度下降的思想:随机选择一个方向,然后每次迈步都选择最陡的方向,直到这个方向上能达到的最低点。有时候需要对原始的模型构建损失函数,然后通过优化算法对损失函数进行优化,以便寻找到最优的参数,使得损失函数的值最小。

Gradient: 在这里插入图片描述

Update: 在这里插入图片描述

其中,α称为学习率。(采用贪心策略)

鞍点问题:在神经网络中,当迭代进行到鞍点,g=0。
该点不同于极值点,在左右方它的斜率都不为0。此时w不变,梯度下降无法继续迭代下去。

而随机梯度下降只采用一个样本,可跨越在优化中遇到的鞍点问题。
pytorch入门第二课——随机梯度下降(SGD)_第1张图片
其中,由于:
gradient:
pytorch入门第二课——随机梯度下降(SGD)_第2张图片
update:
pytorch入门第二课——随机梯度下降(SGD)_第3张图片

jupyter record

梯度下降

import numpy  as np
import matplotlib.pyplot as plt
 
 
x_data = [1.0,2.0,3.0]
y_data = [2.0,4.0,6.0]
 
w = 1.0   #初始权重预测
 
def forward(x):
        return x * w
 
def cost(xs,ys):
    cost = 0
    for x,y in zip(xs,ys):
        y_pred = forward(x)
        cost += (y_pred - y) **2
    return cost/len(xs)
 
 
def gradient(xs,ys):
    grad = 0
    for x,y in zip(xs,ys):
        grad += 2 * x * (x * w - y)
    return grad / len(xs)
 
 
print('Predict (before training)',4,forward(4))
 
epoch_list = []
cost_list = []
 
 
for epoch in range(100):
    cost_val = cost(x_data,y_data)
    grad_val = gradient(x_data,y_data)
    w -= 0.01*grad_val       #这里的学习率设置成 0.01.
    print('Epoch:',epoch,'w=',w,'loss=',cost_val)
    epoch_list.append(epoch)
    cost_list.append(cost_val)
 
print('Predict (after training)',4,forward(4))
 
 
 
plt.plot(epoch_list,cost_list)
plt.ylabel('Loss')
plt.xlabel('epoch')
plt.show()

Predict (before training) 4 4.0
Epoch: 0 w= 1.0933333333333333 loss= 4.666666666666667
Epoch: 1 w= 1.1779555555555554 loss= 3.8362074074074086
Epoch: 2 w= 1.2546797037037036 loss= 3.1535329869958857
Epoch: 3 w= 1.3242429313580246 loss= 2.592344272332262
Epoch: 4 w= 1.3873135910979424 loss= 2.1310222071581117
Epoch: 5 w= 1.4444976559288012 loss= 1.7517949663820642
Epoch: 6 w= 1.4963445413754464 loss= 1.440053319920117
Epoch: 7 w= 1.5433523841804047 loss= 1.1837878313441108
Epoch: 8 w= 1.5859728283235668 loss= 0.9731262101573632
Epoch: 9 w= 1.6246153643467005 loss= 0.7999529948031382
Epoch: 10 w= 1.659651263674342 loss= 0.6575969151946154
Epoch: 11 w= 1.6914171457314033 loss= 0.5405738908195378
Epoch: 12 w= 1.7202182121298057 loss= 0.44437576375991855
Epoch: 13 w= 1.7463311789976905 loss= 0.365296627844598
Epoch: 14 w= 1.7700069356245727 loss= 0.3002900634939416
Epoch: 15 w= 1.7914729549662791 loss= 0.2468517784170642
Epoch: 16 w= 1.8109354791694263 loss= 0.2029231330489788
Epoch: 17 w= 1.8285815011136133 loss= 0.16681183417217407
Epoch: 18 w= 1.8445805610096762 loss= 0.1371267415488235
Epoch: 19 w= 1.8590863753154396 loss= 0.11272427607497944
Epoch: 20 w= 1.872238313619332 loss= 0.09266436490145864
Epoch: 21 w= 1.8841627376815275 loss= 0.07617422636521683
Epoch: 22 w= 1.8949742154979183 loss= 0.06261859959338009
Epoch: 23 w= 1.904776622051446 loss= 0.051475271914629306
Epoch: 24 w= 1.9136641373266443 loss= 0.04231496130368814
Epoch: 25 w= 1.9217221511761575 loss= 0.03478477885657844
Epoch: 26 w= 1.9290280837330496 loss= 0.02859463421027894
Epoch: 27 w= 1.9356521292512983 loss= 0.023506060193480772
Epoch: 28 w= 1.9416579305211772 loss= 0.01932302619282764
Epoch: 29 w= 1.9471031903392007 loss= 0.015884386331668398
Epoch: 30 w= 1.952040225907542 loss= 0.01305767153735723
Epoch: 31 w= 1.9565164714895047 loss= 0.010733986344664803
Epoch: 32 w= 1.9605749341504843 loss= 0.008823813841374291
Epoch: 33 w= 1.9642546069631057 loss= 0.007253567147113681
Epoch: 34 w= 1.9675908436465492 loss= 0.005962754575689583
Epoch: 35 w= 1.970615698239538 loss= 0.004901649272531298
Epoch: 36 w= 1.9733582330705144 loss= 0.004029373553099482
Epoch: 37 w= 1.975844797983933 loss= 0.0033123241439168096
Epoch: 38 w= 1.9780992835054327 loss= 0.0027228776607060357
Epoch: 39 w= 1.980143350378259 loss= 0.002238326453885249
Epoch: 40 w= 1.9819966376762883 loss= 0.001840003826269386
Epoch: 41 w= 1.983676951493168 loss= 0.0015125649231412608
Epoch: 42 w= 1.9852004360204722 loss= 0.0012433955919298103
Epoch: 43 w= 1.9865817286585614 loss= 0.0010221264385926248
Epoch: 44 w= 1.987834100650429 loss= 0.0008402333603648631
Epoch: 45 w= 1.9889695845897222 loss= 0.0006907091659248264
Epoch: 46 w= 1.9899990900280147 loss= 0.0005677936325753796
Epoch: 47 w= 1.9909325082920666 loss= 0.0004667516012495216
Epoch: 48 w= 1.9917788075181404 loss= 0.000383690560742734
Epoch: 49 w= 1.9925461188164473 loss= 0.00031541069384432885
Epoch: 50 w= 1.9932418143935788 loss= 0.0002592816085930997
Epoch: 51 w= 1.9938725783835114 loss= 0.0002131410058905752
Epoch: 52 w= 1.994444471067717 loss= 0.00017521137977565514
Epoch: 53 w= 1.9949629871013967 loss= 0.0001440315413480261
Epoch: 54 w= 1.9954331083052663 loss= 0.0001184003283899171
Epoch: 55 w= 1.9958593515301082 loss= 9.733033217332803e-05
Epoch: 56 w= 1.9962458120539648 loss= 8.000985883901657e-05
Epoch: 57 w= 1.9965962029289281 loss= 6.57716599593935e-05
Epoch: 58 w= 1.9969138906555615 loss= 5.406722767150764e-05
Epoch: 59 w= 1.997201927527709 loss= 4.444566413387458e-05
Epoch: 60 w= 1.9974630809584561 loss= 3.65363112808981e-05
Epoch: 61 w= 1.9976998600690001 loss= 3.0034471708953996e-05
Epoch: 62 w= 1.9979145397958935 loss= 2.4689670610172655e-05
Epoch: 63 w= 1.9981091827482769 loss= 2.0296006560253656e-05
Epoch: 64 w= 1.9982856590251044 loss= 1.6684219437262796e-05
Epoch: 65 w= 1.9984456641827613 loss= 1.3715169898293847e-05
Epoch: 66 w= 1.9985907355257035 loss= 1.1274479219506377e-05
Epoch: 67 w= 1.9987222668766378 loss= 9.268123006398985e-06
Epoch: 68 w= 1.9988415219681517 loss= 7.61880902783969e-06
Epoch: 69 w= 1.9989496465844576 loss= 6.262999634617916e-06
Epoch: 70 w= 1.9990476795699081 loss= 5.1484640551938914e-06
Epoch: 71 w= 1.9991365628100501 loss= 4.232266273994499e-06
Epoch: 72 w= 1.999217150281112 loss= 3.479110977946351e-06
Epoch: 73 w= 1.999290216254875 loss= 2.859983851026929e-06
Epoch: 74 w= 1.9993564627377531 loss= 2.3510338359374262e-06
Epoch: 75 w= 1.9994165262155628 loss= 1.932654303533636e-06
Epoch: 76 w= 1.999470983768777 loss= 1.5887277332523938e-06
Epoch: 77 w= 1.9995203586170245 loss= 1.3060048068548734e-06
Epoch: 78 w= 1.9995651251461022 loss= 1.0735939958924364e-06
Epoch: 79 w= 1.9996057134657994 loss= 8.825419799121559e-07
Epoch: 80 w= 1.9996425135423248 loss= 7.254887315754342e-07
Epoch: 81 w= 1.999675878945041 loss= 5.963839812987369e-07
Epoch: 82 w= 1.999706130243504 loss= 4.902541385825727e-07
Epoch: 83 w= 1.9997335580874436 loss= 4.0301069098738336e-07
Epoch: 84 w= 1.9997584259992822 loss= 3.312926995781724e-07
Epoch: 85 w= 1.9997809729060159 loss= 2.723373231729343e-07
Epoch: 86 w= 1.9998014154347876 loss= 2.2387338352920307e-07
Epoch: 87 w= 1.9998199499942075 loss= 1.8403387118941732e-07
Epoch: 88 w= 1.9998367546614149 loss= 1.5128402140063082e-07
Epoch: 89 w= 1.9998519908930161 loss= 1.2436218932547864e-07
Epoch: 90 w= 1.9998658050763347 loss= 1.0223124683409346e-07
Epoch: 91 w= 1.9998783299358769 loss= 8.403862850836479e-08
Epoch: 92 w= 1.9998896858085284 loss= 6.908348768398496e-08
Epoch: 93 w= 1.9998999817997325 loss= 5.678969725349543e-08
Epoch: 94 w= 1.9999093168317574 loss= 4.66836551287917e-08
Epoch: 95 w= 1.9999177805941268 loss= 3.8376039345125727e-08
Epoch: 96 w= 1.9999254544053418 loss= 3.154680994333735e-08
Epoch: 97 w= 1.9999324119941766 loss= 2.593287985380858e-08
Epoch: 98 w= 1.9999387202080534 loss= 2.131797981222471e-08
Epoch: 99 w= 1.9999444396553017 loss= 1.752432687141379e-08
Predict (after training) 4 7.999777758621207
pytorch入门第二课——随机梯度下降(SGD)_第4张图片

随机梯度下降法SGD(stochastic gradient descent)(使用较多)

随机梯度下降的梯度有所变化。
gradient:
在这里插入图片描述

#随机梯度下降算法
import numpy  as np
import matplotlib.pyplot as plt
 
 
x_data = [1.0,2.0,3.0]
y_data = [2.0,4.0,6.0]
 
w = 1.0   #初始权重预测
 
def forward(x):
        return x * w
 
def loss(xs,ys):    #这里变换成loss,可去掉原先的cost = 0
      y_pred = forward(x)
      return  (y_pred - ys) **2
 
 
def gradient(xs,ys):
    return 2 * xs *(xs * w - ys)
 
 
 
print('Predict (before training)',4,forward(4))
 
epoch_list = []
loss_list = []
 
 
for epoch in range(100):
    for x,y in zip(x_data,y_data):
        grad_val = gradient(x,y)
        w -= 0.01*grad_val
        print('\tgrad:',x,y,grad_val)
        l = loss(x,y)
 
    print('progress:',epoch,'w=',w,'loss=',l)
    epoch_list.append(epoch)
    loss_list.append(l)
 
print('Predict (after training)',4,forward(4))
 
 
 
plt.plot(epoch_list,loss_list)
plt.ylabel('Loss')
plt.xlabel('epoch')
plt.show()

Predict (before training) 4 4.0
grad: 1.0 2.0 -2.0
grad: 2.0 4.0 -7.84
grad: 3.0 6.0 -16.2288
progress: 0 w= 1.260688 loss= 4.919240100095999
grad: 1.0 2.0 -1.478624
grad: 2.0 4.0 -5.796206079999999
grad: 3.0 6.0 -11.998146585599997
progress: 1 w= 1.453417766656 loss= 2.688769240265834
grad: 1.0 2.0 -1.093164466688
grad: 2.0 4.0 -4.285204709416961
grad: 3.0 6.0 -8.87037374849311
progress: 2 w= 1.5959051959019805 loss= 1.4696334962911515
grad: 1.0 2.0 -0.8081896081960389
grad: 2.0 4.0 -3.1681032641284723
grad: 3.0 6.0 -6.557973756745939
progress: 3 w= 1.701247862192685 loss= 0.8032755585999681
grad: 1.0 2.0 -0.59750427561463
grad: 2.0 4.0 -2.3422167604093502
grad: 3.0 6.0 -4.848388694047353
progress: 4 w= 1.7791289594933983 loss= 0.43905614881022015
grad: 1.0 2.0 -0.44174208101320334
grad: 2.0 4.0 -1.7316289575717576
grad: 3.0 6.0 -3.584471942173538
progress: 5 w= 1.836707389300983 loss= 0.2399802903801062
grad: 1.0 2.0 -0.3265852213980338
grad: 2.0 4.0 -1.2802140678802925
grad: 3.0 6.0 -2.650043120512205
progress: 6 w= 1.8792758133988885 loss= 0.1311689630744999
grad: 1.0 2.0 -0.241448373202223
grad: 2.0 4.0 -0.946477622952715
grad: 3.0 6.0 -1.9592086795121197
progress: 7 w= 1.910747160155559 loss= 0.07169462478267678
grad: 1.0 2.0 -0.17850567968888198
grad: 2.0 4.0 -0.6997422643804168
grad: 3.0 6.0 -1.4484664872674653
progress: 8 w= 1.9340143044689266 loss= 0.03918700813247573
grad: 1.0 2.0 -0.13197139106214673
grad: 2.0 4.0 -0.5173278529636143
grad: 3.0 6.0 -1.0708686556346834
progress: 9 w= 1.9512159834655312 loss= 0.021418922423117836
grad: 1.0 2.0 -0.09756803306893769
grad: 2.0 4.0 -0.38246668963023644
grad: 3.0 6.0 -0.7917060475345892
progress: 10 w= 1.9639333911678687 loss= 0.01170720245384975
grad: 1.0 2.0 -0.07213321766426262
grad: 2.0 4.0 -0.2827622132439096
grad: 3.0 6.0 -0.5853177814148953
progress: 11 w= 1.9733355232910992 loss= 0.006398948863435593
grad: 1.0 2.0 -0.05332895341780164
grad: 2.0 4.0 -0.2090494973977819
grad: 3.0 6.0 -0.4327324596134101
progress: 12 w= 1.9802866323953892 loss= 0.003497551760830656
grad: 1.0 2.0 -0.039426735209221686
grad: 2.0 4.0 -0.15455280202014876
grad: 3.0 6.0 -0.3199243001817109
progress: 13 w= 1.9854256707695 loss= 0.001911699652671057
grad: 1.0 2.0 -0.02914865846100012
grad: 2.0 4.0 -0.11426274116712065
grad: 3.0 6.0 -0.2365238742159388
progress: 14 w= 1.9892250235079405 loss= 0.0010449010656399273
grad: 1.0 2.0 -0.021549952984118992
grad: 2.0 4.0 -0.08447581569774698
grad: 3.0 6.0 -0.17486493849433593
progress: 15 w= 1.9920339305797026 loss= 0.0005711243580809696
grad: 1.0 2.0 -0.015932138840594856
grad: 2.0 4.0 -0.062453984255132156
grad: 3.0 6.0 -0.12927974740812687
progress: 16 w= 1.994110589284741 loss= 0.0003121664271570621
grad: 1.0 2.0 -0.011778821430517894
grad: 2.0 4.0 -0.046172980007630926
grad: 3.0 6.0 -0.09557806861579543
progress: 17 w= 1.9956458879852805 loss= 0.0001706246229305199
grad: 1.0 2.0 -0.008708224029438938
grad: 2.0 4.0 -0.03413623819540135
grad: 3.0 6.0 -0.07066201306448505
progress: 18 w= 1.9967809527381737 loss= 9.326038746484765e-05
grad: 1.0 2.0 -0.006438094523652627
grad: 2.0 4.0 -0.02523733053271826
grad: 3.0 6.0 -0.052241274202728505
progress: 19 w= 1.9976201197307648 loss= 5.097447086306101e-05
grad: 1.0 2.0 -0.004759760538470381
grad: 2.0 4.0 -0.01865826131080439
grad: 3.0 6.0 -0.03862260091336722
progress: 20 w= 1.998240525958391 loss= 2.7861740127856012e-05
grad: 1.0 2.0 -0.0035189480832178432
grad: 2.0 4.0 -0.01379427648621423
grad: 3.0 6.0 -0.028554152326460525
progress: 21 w= 1.99869919972735 loss= 1.5228732143933469e-05
grad: 1.0 2.0 -0.002601600545300009
grad: 2.0 4.0 -0.01019827413757568
grad: 3.0 6.0 -0.021110427464781978
progress: 22 w= 1.9990383027488265 loss= 8.323754426231206e-06
grad: 1.0 2.0 -0.001923394502346909
grad: 2.0 4.0 -0.007539706449199102
grad: 3.0 6.0 -0.01560719234984198
progress: 23 w= 1.9992890056818404 loss= 4.549616284094891e-06
grad: 1.0 2.0 -0.0014219886363191492
grad: 2.0 4.0 -0.005574195454370212
grad: 3.0 6.0 -0.011538584590544687
progress: 24 w= 1.999474353368653 loss= 2.486739429417538e-06
grad: 1.0 2.0 -0.0010512932626940419
grad: 2.0 4.0 -0.004121069589761106
grad: 3.0 6.0 -0.008530614050808794
progress: 25 w= 1.9996113831376856 loss= 1.3592075910762856e-06
grad: 1.0 2.0 -0.0007772337246287897
grad: 2.0 4.0 -0.0030467562005451754
grad: 3.0 6.0 -0.006306785335127074
progress: 26 w= 1.9997126908902887 loss= 7.429187207079447e-07
grad: 1.0 2.0 -0.0005746182194226179
grad: 2.0 4.0 -0.002252503420136165
grad: 3.0 6.0 -0.00466268207967957
progress: 27 w= 1.9997875889274812 loss= 4.060661735575354e-07
grad: 1.0 2.0 -0.0004248221450375844
grad: 2.0 4.0 -0.0016653028085471533
grad: 3.0 6.0 -0.0034471768136938863
progress: 28 w= 1.9998429619451539 loss= 2.2194855602869353e-07
grad: 1.0 2.0 -0.00031407610969225175
grad: 2.0 4.0 -0.0012311783499932005
grad: 3.0 6.0 -0.0025485391844828342
progress: 29 w= 1.9998838998815958 loss= 1.213131374411496e-07
grad: 1.0 2.0 -0.00023220023680847746
grad: 2.0 4.0 -0.0009102249282886277
grad: 3.0 6.0 -0.0018841656015560204
progress: 30 w= 1.9999141657892625 loss= 6.630760559646474e-08
grad: 1.0 2.0 -0.00017166842147497974
grad: 2.0 4.0 -0.0006729402121816719
grad: 3.0 6.0 -0.0013929862392156878
progress: 31 w= 1.9999365417379913 loss= 3.624255915449335e-08
grad: 1.0 2.0 -0.0001269165240174175
grad: 2.0 4.0 -0.0004975127741477792
grad: 3.0 6.0 -0.0010298514424817995
progress: 32 w= 1.9999530845453979 loss= 1.9809538924707548e-08
grad: 1.0 2.0 -9.383090920422887e-05
grad: 2.0 4.0 -0.00036781716408107457
grad: 3.0 6.0 -0.0007613815296476645
progress: 33 w= 1.9999653148414271 loss= 1.0827542027017377e-08
grad: 1.0 2.0 -6.937031714571162e-05
grad: 2.0 4.0 -0.0002719316432120422
grad: 3.0 6.0 -0.0005628985014531906
progress: 34 w= 1.999974356846045 loss= 5.9181421028034105e-09
grad: 1.0 2.0 -5.1286307909848006e-05
grad: 2.0 4.0 -0.00020104232700646207
grad: 3.0 6.0 -0.0004161576169003922
progress: 35 w= 1.9999810417085633 loss= 3.2347513278475087e-09
grad: 1.0 2.0 -3.7916582873442906e-05
grad: 2.0 4.0 -0.0001486330048638962
grad: 3.0 6.0 -0.0003076703200690645
progress: 36 w= 1.9999859839076413 loss= 1.7680576050779005e-09
grad: 1.0 2.0 -2.8032184717474706e-05
grad: 2.0 4.0 -0.0001098861640933535
grad: 3.0 6.0 -0.00022746435967313516
progress: 37 w= 1.9999896377347262 loss= 9.6638887447731e-10
grad: 1.0 2.0 -2.0724530547688857e-05
grad: 2.0 4.0 -8.124015974608767e-05
grad: 3.0 6.0 -0.00016816713067413502
progress: 38 w= 1.999992339052936 loss= 5.282109892545845e-10
grad: 1.0 2.0 -1.5321894128117464e-05
grad: 2.0 4.0 -6.006182498197177e-05
grad: 3.0 6.0 -0.00012432797771566584
progress: 39 w= 1.9999943361699042 loss= 2.887107421958329e-10
grad: 1.0 2.0 -1.1327660191629008e-05
grad: 2.0 4.0 -4.4404427951505454e-05
grad: 3.0 6.0 -9.191716585732479e-05
progress: 40 w= 1.9999958126624442 loss= 1.5780416225633037e-10
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grad: 2.0 4.0 -1.1840208351543424e-06
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grad: 1.0 2.0 -6.671324292994996e-08
grad: 2.0 4.0 -2.615159129248923e-07
grad: 3.0 6.0 -5.413379398078177e-07
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grad: 2.0 4.0 -1.9334185274999527e-07
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grad: 3.0 6.0 -2.9588569994132286e-07
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progress: 60 w= 1.999999990034638 loss= 8.937759877335403e-16
grad: 1.0 2.0 -1.993072418216002e-08
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grad: 1.0 2.0 -1.473502342363986e-08
grad: 2.0 4.0 -5.7761292637792394e-08
grad: 3.0 6.0 -1.195658771990793e-07
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grad: 1.0 2.0 -1.0893780100218464e-08
grad: 2.0 4.0 -4.270361841918202e-08
grad: 3.0 6.0 -8.839649012770678e-08
progress: 63 w= 1.9999999959730488 loss= 1.4594702493172377e-16
grad: 1.0 2.0 -8.05390243385773e-09
grad: 2.0 4.0 -3.1571296688071016e-08
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grad: 1.0 2.0 -5.9543463493128e-09
grad: 2.0 4.0 -2.334103754719763e-08
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grad: 2.0 4.0 -1.725630838222969e-08
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grad: 2.0 4.0 -1.2757796596929438e-08
grad: 3.0 6.0 -2.6408640607655798e-08
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grad: 1.0 2.0 -2.406120636067044e-09
grad: 2.0 4.0 -9.431992964437086e-09
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progress: 68 w= 1.999999999110563 loss= 7.11988308874388e-18
grad: 1.0 2.0 -1.7788739370416806e-09
grad: 2.0 4.0 -6.97318647269185e-09
grad: 3.0 6.0 -1.4434496264925656e-08
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grad: 1.0 2.0 -1.3151431055291596e-09
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grad: 1.0 2.0 -9.72300906454393e-10
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grad: 3.0 6.0 -7.88963561149103e-09
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grad: 2.0 4.0 -2.8178277489132597e-09
grad: 3.0 6.0 -5.832902161273523e-09
progress: 72 w= 1.999999999734279 loss= 6.354692062078993e-19
grad: 1.0 2.0 -5.314420015167798e-10
grad: 2.0 4.0 -2.0832526814729135e-09
grad: 3.0 6.0 -4.31233715403323e-09
progress: 73 w= 1.9999999998035491 loss= 3.4733644793346653e-19
grad: 1.0 2.0 -3.92901711165905e-10
grad: 2.0 4.0 -1.5401742103904326e-09
grad: 3.0 6.0 -3.188159070077745e-09
progress: 74 w= 1.9999999998547615 loss= 1.8984796531526204e-19
grad: 1.0 2.0 -2.9047697580608656e-10
grad: 2.0 4.0 -1.1386696030513122e-09
grad: 3.0 6.0 -2.3570478902001923e-09
progress: 75 w= 1.9999999998926234 loss= 1.0376765851119951e-19
grad: 1.0 2.0 -2.1475310418850313e-10
grad: 2.0 4.0 -8.418314934033333e-10
grad: 3.0 6.0 -1.7425900722400911e-09
progress: 76 w= 1.9999999999206153 loss= 5.671751114309842e-20
grad: 1.0 2.0 -1.5876944203796484e-10
grad: 2.0 4.0 -6.223768167501476e-10
grad: 3.0 6.0 -1.2883241140571045e-09
progress: 77 w= 1.9999999999413098 loss= 3.100089617511693e-20
grad: 1.0 2.0 -1.17380327679939e-10
grad: 2.0 4.0 -4.601314884666863e-10
grad: 3.0 6.0 -9.524754318590567e-10
progress: 78 w= 1.9999999999566096 loss= 1.6944600977692705e-20
grad: 1.0 2.0 -8.678080476443029e-11
grad: 2.0 4.0 -3.4018121652934497e-10
grad: 3.0 6.0 -7.041780492045291e-10
progress: 79 w= 1.9999999999679208 loss= 9.2616919156479e-21
grad: 1.0 2.0 -6.415845632545825e-11
grad: 2.0 4.0 -2.5150193039280566e-10
grad: 3.0 6.0 -5.206075570640678e-10
progress: 80 w= 1.9999999999762834 loss= 5.062350511130293e-21
grad: 1.0 2.0 -4.743316850408519e-11
grad: 2.0 4.0 -1.8593837580738182e-10
grad: 3.0 6.0 -3.8489211817704927e-10
progress: 81 w= 1.999999999982466 loss= 2.7669155644059242e-21
grad: 1.0 2.0 -3.5067948545020045e-11
grad: 2.0 4.0 -1.3746692673066718e-10
grad: 3.0 6.0 -2.845563784603655e-10
progress: 82 w= 1.9999999999870368 loss= 1.5124150106147723e-21
grad: 1.0 2.0 -2.5926372160256506e-11
grad: 2.0 4.0 -1.0163070385260653e-10
grad: 3.0 6.0 -2.1037571684701106e-10
progress: 83 w= 1.999999999990416 loss= 8.26683933105326e-22
grad: 1.0 2.0 -1.9167778475548403e-11
grad: 2.0 4.0 -7.51381179497912e-11
grad: 3.0 6.0 -1.5553425214420713e-10
progress: 84 w= 1.9999999999929146 loss= 4.518126871054872e-22
grad: 1.0 2.0 -1.4170886686315498e-11
grad: 2.0 4.0 -5.555023108172463e-11
grad: 3.0 6.0 -1.1499068364173581e-10
progress: 85 w= 1.9999999999947617 loss= 2.469467919185614e-22
grad: 1.0 2.0 -1.0476508549572827e-11
grad: 2.0 4.0 -4.106759377009439e-11
grad: 3.0 6.0 -8.500933290633839e-11
progress: 86 w= 1.9999999999961273 loss= 1.349840097651456e-22
grad: 1.0 2.0 -7.745359908994942e-12
grad: 2.0 4.0 -3.036149109902908e-11
grad: 3.0 6.0 -6.285105769165966e-11
progress: 87 w= 1.999999999997137 loss= 7.376551550022107e-23
grad: 1.0 2.0 -5.726086271806707e-12
grad: 2.0 4.0 -2.2446045022661565e-11
grad: 3.0 6.0 -4.646416584819235e-11
progress: 88 w= 1.9999999999978835 loss= 4.031726170507742e-23
grad: 1.0 2.0 -4.233058348290797e-12
grad: 2.0 4.0 -1.659294923683774e-11
grad: 3.0 6.0 -3.4351188560322043e-11
progress: 89 w= 1.9999999999984353 loss= 2.2033851437431755e-23
grad: 1.0 2.0 -3.1294966618133913e-12
grad: 2.0 4.0 -1.226752033289813e-11
grad: 3.0 6.0 -2.539835008974478e-11
progress: 90 w= 1.9999999999988431 loss= 1.2047849775995315e-23
grad: 1.0 2.0 -2.3137047833188262e-12
grad: 2.0 4.0 -9.070078021977679e-12
grad: 3.0 6.0 -1.8779644506139448e-11
progress: 91 w= 1.9999999999991447 loss= 6.5840863393251405e-24
grad: 1.0 2.0 -1.7106316363424412e-12
grad: 2.0 4.0 -6.7057470687359455e-12
grad: 3.0 6.0 -1.3882228699912957e-11
progress: 92 w= 1.9999999999993676 loss= 3.5991747246272455e-24
grad: 1.0 2.0 -1.2647660696529783e-12
grad: 2.0 4.0 -4.957811938766099e-12
grad: 3.0 6.0 -1.0263789818054647e-11
progress: 93 w= 1.9999999999995324 loss= 1.969312363793734e-24
grad: 1.0 2.0 -9.352518759442319e-13
grad: 2.0 4.0 -3.666400516522117e-12
grad: 3.0 6.0 -7.58859641791787e-12
progress: 94 w= 1.9999999999996543 loss= 1.0761829795642296e-24
grad: 1.0 2.0 -6.914468997365475e-13
grad: 2.0 4.0 -2.7107205369247822e-12
grad: 3.0 6.0 -5.611511255665391e-12
progress: 95 w= 1.9999999999997444 loss= 5.875191475205477e-25
grad: 1.0 2.0 -5.111466805374221e-13
grad: 2.0 4.0 -2.0037305148434825e-12
grad: 3.0 6.0 -4.1460168631601846e-12
progress: 96 w= 1.999999999999811 loss= 3.2110109830478153e-25
grad: 1.0 2.0 -3.779199175824033e-13
grad: 2.0 4.0 -1.4814816040598089e-12
grad: 3.0 6.0 -3.064215547965432e-12
progress: 97 w= 1.9999999999998603 loss= 1.757455879087579e-25
grad: 1.0 2.0 -2.793321129956894e-13
grad: 2.0 4.0 -1.0942358130705543e-12
grad: 3.0 6.0 -2.2648549702353193e-12
progress: 98 w= 1.9999999999998967 loss= 9.608404711682446e-26
grad: 1.0 2.0 -2.0650148258027912e-13
grad: 2.0 4.0 -8.100187187665142e-13
grad: 3.0 6.0 -1.6786572132332367e-12
progress: 99 w= 1.9999999999999236 loss= 5.250973729513143e-26
Predict (after training) 4 7.9999999999996945
pytorch入门第二课——随机梯度下降(SGD)_第5张图片

总结

以上就是随机梯度下降算法的简单示例了。

参考

https://blog.csdn.net/weixin_44425647/article/details/107746060
https://blog.csdn.net/qq_38150441/article/details/80533891?ops_request_misc=%25257B%252522request%25255Fid%252522%25253A%252522161059179416780271580458%252522%25252C%252522scm%252522%25253A%25252220140713.130102334.pc%25255Fall.%252522%25257D&request_id=161059179416780271580458&biz_id=0&utm_medium=distribute.pc_search_result.none-task-blog-2allfirst_rank_v2~rank_v29-1-80533891.pc_search_result_cache&utm_term=%E9%9A%8F%E6%9C%BA%E6%A2%AF%E5%BA%A6%E4%B8%8B%E9%99%8D

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