Site icon DataFlair

TensorFlow Features | Why TensorFlow Is So Popular

Data Science Tools - TensorFlow

Free TensorFlow course with real-time projects Start Now!!

Today, in this TensorFlow Tutorial, we will see TensorFlow Features. Also, these Features of TesnsorFlow will tell us about the popularity of TensorFlow. Moreover, we will see what TensorFlow offers and how it stands apart from the other machine learning libraries in the field.

So, TensorFlow gives us an interactive multiplatform programming interface which is scalable and much stable when compared to other deep learning libraries available, which are still very experimental.

So, let’s start TensorFlow Features.

Features of Tensorflow

Below, we are discussing some important TensorFlow Features:

a. Responsive Construct

With TensorFlow we can easily visualize each and every part of the graph which is not an option while using Numpy or SciKit.

b. Flexible

One of the very important Tensorflow Features is that it is flexible in its operability, meaning it has modularity and the parts of it which you want to make standalone, it offers you that option.

c. Easily Trainable

It is easily trainable on CPU as well as GPU for distributed computing.

d. Parallel Neural Network Training

TensorFlow offers pipelining in the sense that you can train multiple neural networks and multiple GPUs which makes the models very efficient on large-scale systems.

Tensorflow: Parallel Neural Network Training

e. Large Community

Needless to say, if it has been developed by Google, there already is a large team of software engineers who work on stability improvements continuously.

f. Open Source

Tensorflow Features: Open Source

g. Feature Columns

TensorFlow Feature Columns

The figure above describes how the feature column is implemented.

h. Availability of Statistical Distributions

i. Layered Components

This type of TensorFlow Features makes it what it is today.

j. Visualizer (with TensorBoard)

Tensorflow Feature: Visualizer with TensorBoard

k. Event Logger (with TensorBoard)

So, this was all on Tensorflow features. Hope you like our explanation.

Conclusion

Hence, we saw there is a gamut of Tensorflow Features and it is one of the reasons behind its success. So, we looked into what TensorFlow is, and popularity of TensorFlow.

Also, we learned TensorFlow features with the help of diagram and example. Next up will be the pros and cons of TensorFlow along with an easy to follow installation guide. Furthermore, if you have any query, ask in the comment tab.

Exit mobile version