ConvNetJS is a Javascript library for training Deep Learning models (Neural Networks) entirely in a browser.

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ConvNetJS Reviews

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ConvNetJS review by G2 Crowd User in Higher Education
G2 Crowd User in Higher Education
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"It is one of the best Javascript libraries for the training of Deep Learning models from a browser"

What do you like best?

Its use is very frequent when it comes to automatic learning libraries for neural networks through JavaScript, since it facilitates the use of a browser as a data workbench, there is also a version available for Node.js, and it is designed to do correct use of JavaScript asynchrony, especially in relation to training

What do you dislike?

Perhaps its only disadvantage is that its use in research groups of neural networks has not yet been widely disseminated, and that its processing is sometimes slower than other similar tools

Recommendations to others considering the product

Very easy to implement and combine with other programming languages, apart from Javascript

What business problems are you solving with the product? What benefits have you realized?

By working as a tool for training neural networks, it can be applied perfectly in the recognition of patterns or to complement other functions of Artificial Intelligence

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ConvNetJS review by Jacqueline G.
Jacqueline G.
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" very good contribution"

What do you like best?

how accessible it is, and the ability to adapt to solve problems in the implementation of Neural Network modules

What do you dislike?

little simplicity for beginners in the area should have prior knowledge for the task

and the support

What business problems are you solving with the product? What benefits have you realized?

for connected in fully layers

What Artificial Neural Network solution do you use?

Thanks for letting us know!
ConvNetJS review by G2 Crowd User in Hospital & Health Care
G2 Crowd User in Hospital & Health Care
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"Best version yet"

What do you like best?

Great for IT Professionals especially in the medical field, it will work with those who do a form of coding.

What do you dislike?

I dislike the mobile interface. It has many bugs and does not work too well.

What business problems are you solving with the product? What benefits have you realized?

We are solving our business coding needs as well as JavaScript debugging. We are now able to encode incrypted files.

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