NeuralTalk2

4.3
(2)

NeuralTalk2 is an Efficient Image Captioning code in Torch that runs on GPU

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Showing 2 NeuralTalk2 reviews
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NeuralTalk2 review by Cameron W.
Cameron W.
Validated Reviewer
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content

"Choosing the Right Code"

What do you like best?

I think I like the best is the fact you can see and share with other developers, With Social coding, A new feature they have adopted.

What do you dislike?

I wish they would have an automate tutorial for the basics options with software to provide for users that are not Savoy to standard coding.

Recommendations to others considering the product

Fast customer service when lost or needing help determining, Features they provide you are able to code host, Code review and implement other options to maintain consistent revenue.

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

Our workflow management has improved by using the integrations options and We also were able to stream line out projects more efficiently .

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NeuralTalk2 review by G2 User in Computer Software
G2 User in Computer Software
Validated Reviewer
Review Source
content

"Awesome project!"

What do you like best?

The image captioning is very accurate, and the README is very detailed so it is easy to get going.

What do you dislike?

It does not seem to have been updated in a few years, and so the cutting edge has certainly moved away.

Recommendations to others considering the product

This is a very cool product, but again it is a few years behind cutting-edge, so probably look elsewhere.

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

We tested various methods to determine whether a given image is appropriate for all audiences. This product was not quite in line with that goal, but it is still a very cool product.

What Artificial Neural Network solution do you use?

Thanks for letting us know!

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