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6 Short courses in Data Science & Big Data in Massachusetts, United States

Applied AI and Data Science
Build AI, ML, and GenAI solutions using Python and low-code tools with the Applied AI and Data Science programme from Massachusetts Institute of Technology (MIT).

AI and Data Science - Leveraging Responsible AI, Data and Statistics for Practical Impact
Gain in-demand techniques in AI, Data Science, ML, and Generative AI to make AI-Powered Decisions and solve real-world business challenges with this AI and Data Science - Leveraging Responsible AI, Data and Statistics for Practical Impact programme from Massachusetts Institute of Technology (MIT).

No Code and Agentic AI
Within the No Code and Agentic AI course at Massachusetts Institute of Technology (MIT) you will learn AI and Machine Learning skills through an industry-relevant curriculum designed by MIT faculty, with in-depth modules on Generative AI, Responsible AI, and Agentic AI.
Foundations of Data and Models - Regression Analytics
The Foundations of Data and Models - Regression Analytics course offered by Massachusetts Institute of Technology (MIT) aims to teach a suite of algorithms and concepts to a diverse set of participants interested in the general concept of fitting data to models.
Data-Driven Teams - The Art and Science of Winning
The Data-Driven Teams - The Art and Science of Winning course offered by Massachusetts Institute of Technology (MIT) helps participants use data to assess their team’s current strengths and weaknesses, identify gaps that need to be filled, and design a system that puts their team in a position to succeed.
No Code AI and Machine Learning - Building Data Science Solutions
In the No Code AI and Machine Learning - Building Data Science Solutions program offered by Massachusetts Institute of Technology (MIT) , you will learn to use AI and Machine Learning to make data-driven business decisions by understanding the theory and practical applications of supervised and unsupervised learning, neural networks, recommendation engines, computer vision, etc.