免费一看一级欧美-免费一区二区三区免费视频-免费伊人-免费影片-99精品网-99精品小视频

課程目錄:TensorFlow卷積神經網絡培訓
4401 人關注
(78637/99817)
課程大綱:

          TensorFlow卷積神經網絡培訓

 

 

 

Exploring a Larger DatasetIn the first course in this specialization,
you had an introduction to TensorFlow, and how,
with its high level APIs you could do basic image classification,
an you learned a little bit about Convolutional Neural Networks (ConvNets).
In this course you'll go deeper into using ConvNets will real-world data,
and learn about techniques that you can use to improve your ConvNet performance,
particularly when doing image classification!In Week 1, this week,
you'll get started by looking at a much larger dataset than you've been using thus far:
The Cats and Dogs dataset which had been a Kaggle Challenge in image classification!
Augmentation: A technique to avoid overfittingYou've heard the term overfitting a number of times to this point.
Overfitting is simply the concept of being over specialized in training -- namely
that your model is very good at classifying what it is trained for, but not so good at classifying things
that it hasn't seen. In order to generalize your model more effectively,
you will of course need a greater breadth of samples to train it on.
That's not always possible, but a nice potential shortcut to this is Image Augmentation,
where you tweak the training set to potentially increase the diversity of subjects it covers.
You'll learn all about that this week!Transfer LearningBuilding models for yourself is great,
and can be very powerful. But, as you've seen,
you can be limited by the data you have on hand.
Not everybody has access to massive datasets or the compute power that's needed
to train them effectively.
Transfer learning can help solve this -- where people with models trained on large datasets train them,
so that you can either use them directly, or,
you can use the features that they have learned and apply them to your scenario.
This is Transfer learning, and you'll look into that this week!Multiclass
ClassificationsYou've come a long way, Congratulations!
One more thing to do before we move off
of ConvNets to the next module, and that's to go beyond binary classification.
Each of the examples you've done so far involved classifying one thing or another -- horse or human,
cat or dog. When moving beyond binary into Categorical classification there
are some coding considerations you need to take into account. You'll look at them this week!

主站蜘蛛池模板: 成人日韩在线观看 | 亚洲婷婷第一狠人综合精品 | 自拍视频在线观看完整版 | 国产黄毛片 | 香蕉福利 | 亚洲一逼 | 日韩高清免费观看 | 国产精品免费视频网站 | 欧美日韩视频二区三区 | 91香蕉视频网址 | 97在线视频免费公开观看 | 日日摸夜夜欧美一区二区 | a欧美视频| 四虎影视在线影院在线观看 | 欧美视频在线观看 | 欧美性精品不卡在线观看 | 国内精品久久久久久久久 | 黄a在线观看 | 国产极品美女网站在线观看 | 黄色毛片在线 | 国产日韩精品一区在线观看播放 | 黄色网站视频在线观看 | 俄罗斯人与动物xxxx | 欧美成视频在线观看 | 国产一区二区三区免费视频 | 国产精品爽爽va在线观看网站 | 午夜亚洲一区二区福利 | 一级特黄特色的免费大片视频 | 亚洲人成在线中文字幕 | 性欧美性欧美 | 亚洲国产精品ⅴa在线观看 亚洲国产精品91 | 欧美日韩午夜精品不卡综合 | 一级毛片视屏 | 色在线国产 | 久在线视频 | 国产一区二区在线免费观看 | 牛牛精品视频 | poopoo的视频丨vk| 性满足久久久久久久久 | 天天综合天天色 | 好男人新视频社区 |