Cortex

3.8
(2)

Cortex is a neural networks, regression and feature learning in Clojure.

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Cortex review by Sylvia k.
Sylvia k.
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"Cortex is super simple to use with the very friendly interface. "

What do you like best?

I love how fast and efficient this product works, as well as the market trends it finds. The ability to review your own social channels against key competitors or pages of interest helps us continually improve our content.

What do you dislike?

It would be amazing to have a mobile version of Cortex, so we never miss anything when we are on the road. But I'm sure there's something already in development.

Recommendations to others considering the product:

The team is also super useful and has developed a new functionality just for us, which is an incredible service.

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

Since we used Cortex, we have completely changed our content creation process. It used to be intent and error. But no, it feels like having a full data analyst working for us 24/7. Now we know what photos to take, what hashtag to use and what products to promote at any given time.

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Cortex review by G2 User in Information Technology and Services
G2 User in Information Technology and Services
Validated Reviewer
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"Cortex: Automatic Intelligent software"

What do you like best?

Used my many BPO's and other large organisations. Very easy to manage popular applications and environment like ERP ,CRM, MS Exchange, MS Sharepoint.

What do you dislike?

Nothing as specific which is to be dislike about this software. Its built on dot net technology and may have some standard restrictions. And may be large team required to manage it and hence cost associated.

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

can easily manage cloud environment and various software instances can be hosted on it.

What Artificial Neural Network solution do you use?

Thanks for letting us know!

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