Add to wishlistAdded to wishlistRemoved from wishlist 0
Add to compare8.6/10
(Our Score)
Product is rated as #115 in category Machine Learning
TensorFlow is quickly becoming the technology of choice for deep learning, because of how easy TF makes it to build powerful and sophisticated neural networks. The Google Cloud Platform is a great place to run TF models at scale, and perform distributed training and prediction.
This is a comprehensive, from–the–basics course on TensorFlow and building neural networks. It assumes no prior knowledge of Tensorflow, all you need to know is basic Python programming.
What’s covered:
Instructor Details
Loony CornAn ex-Google, Stanford and Flipkart team
Courses : 23
Votes: 0
Courses : 23
Specification: TensorFlow and the Google Cloud ML Engine for Deep Learning
|
6 reviews for TensorFlow and the Google Cloud ML Engine for Deep Learning
3.5 out of 5
★★★★★
★★★★★
2
★★★★★
0
★★★★★
3
★★★★★
1
★★★★★
0
Write a review
Show all
Most Helpful
Highest Rating
Lowest Rating
Add a review Cancel reply
This site uses Akismet to reduce spam. Learn how your comment data is processed.
Price | $12.99 |
---|---|
Provider | |
Duration | 17.5 hours |
Year | 2018 |
Level | Beginner |
Language | English |
Certificate | Yes |
Quizzes | Yes |
TensorFlow and the Google Cloud ML Engine for Deep Learning
$89.99 $12.99
Amlan Aggrawal –
Great efforts from the authors! Excellent balance between explaining the concepts & theories, and coding demos.
Tenon Kone –
This course is great for starters. it gives a great introduction to deep learning
Manish Garg –
Good in beginning, but drags gradually with out good clear explanations.
Richard Saul –
I’m liking the course material so far, but Im not getting consistent results following the on screen instructions for install TensorFlow and Jupyter Notebooks. While TensorFlow runs fine in my virtual environment from the Python shell; TensorFlow will not run in a Jupyter Notebook inside my virtual environment.
Abhinay Reddy Yarva –
Good theory knowledge and explanation
Thomas Buehlmann –
Would have expected this to be on Tensorflow 2.0 but apparently it is not.