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A deep learning framework designed for both efficiency and flexibility. It allows you to mix symbolic and imperative programming to maximize efficiency and productivity. At its core, it contains a dynamic dependency scheduler that automatically parallelizes both symbolic and imperative operations on the fly.
974
companies
Technoloy Usage Stadistics and Market Share
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MXNet is used in 37 countries
We have data on 974 companies that use MXNet. Our MXNet customers list is available for download and comes enriched with vital company specifics, including industry classification, organizational size, geographical location, funding rounds, and revenue figures, among others.
Technology
is any of
MXNet
Company | Country | Industry | Employees | Revenue | Technologies |
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United States | Retail | 10K | $50M | MXNet | |
United States | Software Development | 770K |
| MXNet | |
United States | Entertainment Providers | 71K | $4.6B | MXNet | |
| MXNet | ||||
United Kingdom | Technology, Information And Internet | 174 |
| MXNet | |
China | Software Development | 43K | $62B | MXNet | |
United States | Computer Hardware Manufacturing | 35K | $27B | MXNet | |
United Kingdom | It Services And It Consulting | 358K | $45B | MXNet | |
United States | Financial Services | 73K | $25B | MXNet | |
United States | Motor Vehicle Manufacturing | 6.2K | $757M | MXNet |
There are 202 alternatives to MXNet
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Frequently asked questions
Our data is sourced from job postings collected from millions of companies. We monitor these postings on company websites, job boards, and other recruitment platforms. Analyzing job postings provides a reliable method to understand the technologies companies are employing, including their use of internal tools.
We refresh our data daily to ensure you are accessing the most current information available. This frequent updating process guarantees that our insights and intelligence reflect the latest developments and trends within the industry.
MXNet is an open-source deep learning framework that is widely used in the field of machine learning. It provides a flexible and efficient programming interface for a variety of tasks including image and language processing, among others. MXNet is known for its scalability, which allows users to easily train and deploy deep learning models across multiple GPUs and CPUs, making it a popular choice for both research and production-level projects.
MXNet falls under the category of Machine Learning Tools, specifically deep learning frameworks. It enables developers and data scientists to build and deploy advanced machine learning models with ease. MXNet's comprehensive set of tools, libraries, and community support make it a powerful platform for those working in the field of artificial intelligence and deep learning.
MXNet was founded in 2014 by a team of researchers from the Apache Software Foundation, with the goal of creating a scalable and flexible deep learning framework that could keep pace with the rapid advancements in the field. Since its inception, MXNet has gained a strong following in the machine learning community, with major tech companies like Amazon Web Services adopting it for their deep learning initiatives. The team behind MXNet continues to actively develop and improve the framework, ensuring it remains competitive in the rapidly evolving landscape of deep learning technologies.
In the current market, MXNet holds a significant share within the machine learning tools category, especially in applications requiring scalability and performance. As the demand for deep learning solutions continues to grow, MXNet is poised to expand its market share further. With ongoing enhancements and integrations with cutting-edge technologies, MXNet is forecasted to maintain and potentially increase its market position in the foreseeable future.
You can access an updated list of companies using MXNet by visiting TheirStack.com. Our platform provides a comprehensive database of companies utilizing various technologies and internal tools.
As of now, we have data on 974 companies that use MXNet.
MXNet is used by a diverse range of organizations across various industries, including "Retail", "Software Development", "Entertainment Providers", "Technology, Information And Internet", "Software Development", "Computer Hardware Manufacturing", "It Services And It Consulting", "Financial Services", "Motor Vehicle Manufacturing". For a comprehensive list of all industries utilizing MXNet, please visit TheirStack.com.
Some of the companies that use MXNet include Amazon.com, Amazon, TikTok, Amazon Web Services (AWS), myGwork - LGBTQ+ Business Community, ByteDance, NVIDIA, EY, Fidelity Investments, Lucid Motors and many more. You can find a complete list of 974 companies that use MXNet on TheirStack.com.
Based on our data, MXNet is most popular in United States (374 companies), United Kingdom (56 companies), India (31 companies), Canada (21 companies), France (18 companies), Germany (14 companies), Singapore (11 companies), China (8 companies), Spain (8 companies), Netherlands (7 companies). However, it is used by companies all over the world.
You can find companies using MXNet by searching for it on TheirStack.com, We track job postings from millions of companies and use them to discover what technologies and internal tools they are using.