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TFLearn

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20 reviews
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4.0
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TFLearn Reviews

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Mahmoud M.
MM
Mahmoud M.
Java | Spring(MVC, BOOT, AOP, CLOUD) | JPA | WebServices | Microservices | Docker | Angular
08/12/2019
Validated Reviewer
Review source: Seller invite

Get deep in an easy way.

Graph visualization, easy to learn and use, developing NNs very fast and super efficient, you can cut off your code at least in half. It support CNN and LSTM as well also supports for multiple DNN. It can beat sklearn's API .
Verified User in Research
GR
Verified User in Research
08/11/2019
Validated Reviewer
Review source: G2 invite
Incentivized Review

learning TF

I am not a heavy user of TF but I know working with TF is not as easy as other tools and TFLearn has tried to abstract things out
Chathuri J.
CJ
Chathuri J.
Intern at Forestpin (Pvt) Ltd
02/27/2019
Validated Reviewer
Verified Current User
Review source: G2 invite
Incentivized Review

An easy-to-use and efficient API for building deep NNs very fast

We can use Tensorflow to build up neural networks easily. yet, TFlearn has made this task even easier with its built-in functions and this leaves me to do less amount of coding. While Tensorflow needs around 12 lines of coding to build a fully connected neural networks, TFLearn builds the same neural network with only five lines od coding. Further, TFLearn provides very useful and descriptive visualization on the built deep NN. It supports not only deep NNs but also other NN architectures such as CNN, LSTM etc. as well.

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What is TFLearn?

TFLearn is an open-source deep learning library built on top of TensorFlow, designed to provide a higher-level API to TensorFlow in order to facilitate and speed-up experimentations, while remaining fully transparent and compatible with it. TFLearn features include easy-to-use and understand high-level building blocks for designing, training, and evaluating deep learning models, integrates seamlessly with core TensorFlow functionality and supports multiple types of neural network architectures. With an active community and a wealth of tutorials and resources, TFLearn is an accessible tool for both beginners and experienced practitioners looking to delve into neural networks and machine learning. Learn more about this versatile library at [http://tflearn.org](http://tflearn.org).

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tflearn.org