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Best AI & ML Community On FaceBook

 

In the ever-changing artificial intelligence panorama, developers need to espouse every plausible way of keeping themselves modernized with the most advanced developments. There are numerous techniques like following AI and ML blogs, Communities, News, magazines and many more. Still, suppose you don't want to tour multiplied sites or sections to keep yourself updated. In that case, you have a comprehensive, consistent alternative, i.e., Facebook Groups, which is more productive than other alliances like LinkedIn Groups and Reddit threads. While such associations help keep you acquainted, one should not restrict just browsing about the newest developments. Instead, developers should involve in sharing thoughts and contributing to the community.

 

About Artificial Intelligence and Machine Learning Community

Artificial Intelligence and Machine Learning is a Facebook Group with higher than 174,000 members from all around the earth who frequently post about essential concepts of AI & ML. Although the visibility of the group is unrestricted, you need to ask to join the group. Founded in July 2018 by Sumanta Das (He is working on Drug Discovery using AI), the group is still expanding much traction; more than 15,000 enrolled in the last 30 days. The community is one of the most progressive groups, too, as members posted about 1000 posts in a month. Curated news and content stories from members keep the group energetic throughout the day. Consequently, this is a necessity for Data Science practitioners.

 

Objectives Of Our Community

Our central mandate is to dispense knowledge, guide, and educate everybody who envies to study Artificial Intelligence and Machine Learning, overall sections including academia, research, industry, and profession. We formed this Facebook group to address the most recent advancements in artificial intelligence and other information-driven modifications. You will get all varieties of relevant tutorials, links to informational content, and solutions to various challenging questions. This group is also advantageous for experts who acknowledge beginners' questions, which benefits them to brush up their understanding. If you are new to this field, then you necessitate to join us.

 

Why Join Our Community

Yes, Facebook groups are the most prominent places to acquire a lot relevant to your niche. If you are a geek and enthusiastic about getting the most advanced and crucial updates associated with Python Machine Learning, Deep Learning, Artificial Intelligence, Cognitive Science, Data Mining, Natural Language Processing, Semantic Analysis, Supervised Learning, Unsupervised Learning, Machine learning Algorithms and frameworks and much more then connect with our vibrant Facebook Group. Our mission is to combine AI and ML communities globally, empowering them to bestow ideas and content on a cooperative principle.

  


Sumanta Das Bairagya 

 Founder of AI & ML Community | Data Scientist | AI in Drug Discovery

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