Knet

4.5
(3)

Knet (pronounced "kay-net") is a deep learning framework implemented in Julia that allows the definition and training of machine learning models using the full power and expressivity of Julia.

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Knet review by G2 User
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"KNET for Amazon"

What do you like best?

I started using KNET when I first got hired at Amazon as a sortation associate. It is a real benefit to our company so they could send us training information and not have to come in to train on the job. It was a real benefit because I was able to train with Amazon online using KNET on my own time and complete the training with the time that fits me. Throughout working with Amazon, I would conduct weekly training with our associates to train employees on hazardous materials on the KNET software.

What do you dislike?

There isn't anything like I dislike about KNET. The software does a great job with making it easy to navigate and it goes well with what Amazon training is trying to provide with our employees.

Recommendations to others considering the product

This is a great software if your company is wanting to use an online tool to conduct training information on.

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

At Amazon we are currently not solving any business problems to my knowledge. This software is a benefit to be able to train our employees online to save on time.

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Knet review by Rosa N Kristo S.
Rosa N Kristo S.
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"Knet Review"

What do you like best?

I used Knet to complete online training with Amazon. I really liked it because I was able to do my training online at my own time and come back to it if I needed to pause the session. It is really easy to navigate and have a simple login page.

What do you dislike?

There wasn't anything major. One thing that I didn't like was how I believe it was a glitch in the software, but we were paid for the online training. It was calculated to have been 2 hours of paid training but many employees only received 1 hour.

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

A benefit that Amazon utilizes is using Knet to provide online training for employees so we have more time to actually have on-hands training.

What Artificial Neural Network solution do you use?

Thanks for letting us know!
Knet review by G2 User
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"Great Service!"

What do you like best?

I am always able to give them a call when something is not working and they will walk me through each step of the way.

What do you dislike?

Sometimes I do have to wait a few minutes on hold to get to a person.

Recommendations to others considering the product

Their customer service is amazing and will be able to walk through and train your employees how to use their software with ease. They are responsive and will get back to you within 24 hours. They are always willing to help and go above and beyond to make sure everything is working.

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

It helps with our computer and telecommunications systems. They have really been able to streamline our system to make things run faster and more efficient.

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