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It is an open-source, free, lightweight library that allows users to learn text representations and text classifiers. It works on standard, generic hardware. Models can later be reduced in size to even fit on mobile devices.
113
companies
Technoloy Usage Stadistics and Market Share
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FastText is used in 13 countries
We have data on 113 companies that use FastText. Our FastText 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.
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FastText
Company | Country | Industry | Employees | Revenue | Technologies |
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United States | Software Development | 1K | $135M | FastText | |
United States | Software Development | 470 | $11M | FastText | |
United States | Software Development | 2.1K | $400M | FastText | |
Software Development | 1K |
| FastText | ||
United States | Software Development | 540 | $148M | FastText | |
Canada | Business Consulting And Services | 18 | $317K | FastText | |
United States | Software Development | 1.5K | $111M | FastText | |
United States | Computer And Network Security | 250 | $2.5M | FastText | |
United States | Retail Office Equipment | 25K | $16B | FastText | |
France | Banking | 4.6K | $7.2M | FastText |
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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.
FastText is a library for efficient learning of word representations and sentence classification developed by Facebook's AI Research lab. It is designed to be more efficient than traditional models, making it particularly suitable for applications in Natural Language Processing (NLP) and sentiment analysis. FastText uses techniques such as subword embeddings and hierarchical softmax to achieve fast training speeds and better accuracy on large datasets.
FastText falls within the category of NLP and sentiment analysis technologies. Specifically, it focuses on understanding and analyzing textual data to extract meaning and sentiment. By capturing the context of words through subword embeddings, FastText can handle morphologically rich languages and rare words more effectively than traditional models. This makes it a valuable tool for various applications, including text classification, language modeling, and information retrieval.
Founded in 2016 by a team of researchers at Facebook AI Research, FastText was motivated by the need for scalable and efficient solutions for text processing tasks. Since its inception, FastText has gained popularity in the NLP community and has been widely adopted by researchers and practitioners alike. Its user-friendly interface and robust performance have made it a preferred choice for many NLP projects.
In terms of current market share, FastText has established itself as a prominent player in the NLP and sentiment analysis space. With its speed and accuracy advantages, FastText has gained a significant user base and continues to grow in popularity. As the demand for NLP applications, such as chatbots, sentiment analysis tools, and translation services, continues to rise, FastText is expected to experience further growth in market share. Its efficient learning capabilities and versatile applications make it a valuable asset for companies looking to harness the power of textual data for intelligent decision-making.
You can access an updated list of companies using FastText 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 113 companies that use FastText.
FastText is used by a diverse range of organizations across various industries, including "Software Development", "Software Development", "Software Development", "Software Development", "Software Development", "Business Consulting And Services", "Software Development", "Computer And Network Security", "Retail Office Equipment", "Banking". For a comprehensive list of all industries utilizing FastText, please visit TheirStack.com.
Some of the companies that use FastText include DISCO, Soroco, Yext, DISCO, Bigbear.ai, Synapse International, Smarsh, CertiK, Grainger, Bpifrance and many more. You can find a complete list of 113 companies that use FastText on TheirStack.com.
Based on our data, FastText is most popular in United States (44 companies), France (8 companies), United Kingdom (8 companies), India (7 companies), Germany (4 companies), Canada (3 companies), Switzerland (3 companies), Brazil (2 companies), Spain (2 companies), Australia (1 companies). However, it is used by companies all over the world.
You can find companies using FastText 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.