Howdy Logo

Apache MXNet

Apache MXNet is an open-source deep learning framework designed to train and deploy neural networks. It provides a flexible and efficient platform for developing machine learning models, supporting both symbolic and imperative programming to maximize speed and usability.

*Survey of over 20,000+ Howdy Professionals

About Apache MXNet

Apache MXNet was created in 2015 by a group of researchers and engineers, including Tianqi Chen and Mu Li. It was developed to provide a flexible and efficient framework for deep learning, supporting both symbolic and imperative programming to cater to diverse user needs.

Strengths of Apache MXNet include its scalability, efficient memory usage, and support for multiple programming languages. Weaknesses include a smaller community and fewer pre-built models compared to some competitors. Competitors of Apache MXNet are TensorFlow, PyTorch, and Caffe.

Hire Apache MXNet Experts

Work with Howdy to gain access to the top 1% of LatAM Talent.

Share your Needs icon

Share your Needs

Talk requirements with a Howdy Expert.

Choose Talent icon

Choose Talent

We'll provide a list of the best candidates.

Recruit Risk Free icon

Recruit Risk Free

No hidden fees, no upfront costs, start working within 24 hrs.

How to hire a Apache MXNet expert

An Apache MXNet expert must have skills in deep learning concepts, proficiency in Python and potentially other supported languages like Scala or C++. They should be adept at using MXNet’s Gluon API for model building, understand GPU acceleration for training, and have experience with data preprocessing and model deployment.

*Estimations are based on information from Glassdoor, salary.com and live Howdy data.

USA Flag

USA

Howdy
$ 97K
$ 127K
$ 54K
$ 73K

$ 224K

Employer Cost

$ 127K

Employer Cost

Howdy savings:

$ 97K

Benefits + Taxes + Fees

Salary

The Best of the Best Optimized for Your Budget

Thanks to our Cost Calculator, you can estimate how much you're saving when hiring top LatAm talent with no middlemen or hidden fees.