Skip to main content

sources

 There are several reputable websites that provide resources for studying AI and ML. Here are a few popular ones:


Coursera (www.coursera.org): Coursera offers a wide range of AI and ML courses from top universities and institutions. You can access video lectures, assignments, and quizzes to learn and practice AI and ML concepts.




edX (www.edx.org): edX is another platform that provides online courses from leading universities. They offer a variety of AI and ML courses, including both introductory and advanced topics.




Udacity (www.udacity.com): Udacity specializes in technical education and offers nanodegree programs in AI and ML. Their courses are designed to provide hands-on experience and practical skills in these fields.




Kaggle (www.kaggle.com): Kaggle is a platform that hosts data science competitions and provides datasets for practice. It also offers tutorials and notebooks that cover various AI and ML topics.



TensorFlow (www.tensorflow.org) and PyTorch (pytorch.org): These are popular frameworks for building and training machine learning models. Their official websites provide extensive documentation, tutorials, and resources to learn AI and ML using these frameworks.



ML and AI tutorials for beginners

Popular posts from this blog

Machine Learning for Students

  As the development of Artificial Intelligence (AI) progresses, the more immediate impact is in its ability to analyze and bring meaningful insights and predictions from the vast stockpiles of data available to companies today. The sub-domain of AI that deals with this field is Machine Learning (ML). The biggest differentiation going forward for businesses will be in their mastery of the possibilities and limitations of ML. Just as one cannot, in this day and age, function without being able to read and write, in tomorrow’s world ML will become the new literacy. According to the World Economic Forum, in the next five years over half of the jobs in the world will be impacted by AI; and many of those people will need to be re-skilled. Along with the great advances of ML, has come its democratization. A vast array of powerful tools is available for everyone; and they are free to use, free to take apart, learn from, and improve upon. No longer is it solely the domain of the upper eche...

The Power of Artificial Intelligence

  Here’s a challenge, should you choose to accept it. First, search online for the name of any established organization that comes to your mind. Add ‘AI’ after its name. Your challenge is to find at least one such instance that is yet to utilize Artificial Intelligence or Machine Learning (ML) or Data Science (DS) for its growth. It won’t take you long to realize that any organization you can think of is using the power of AI, ML, or Data Science (DS) to expand its business. Examples include YouTube recommendations, Uber AI Labs, Amazon’s product recommendations, Microsoft AI, and Apple AI among others. But what do the terms AI, ML, and DS mean, one might wonder. Artificial Intelligence (AI) is a branch of Computer Science that deals with the ability of a machine to closely imitate intelligent human behavior. Machine Learning (ML) is an application of AI that is based on the idea that when machines are provided new data, they can learn, grow, and develop on their own without explic...

MACHINE LEARNING (This is a blog for machine learning and data science related topics.)

  As the development of Artificial Intelligence (AI) progresses, the more immediate impact is in its ability to analyze and bring meaningful insights and predictions from the vast stockpiles of data available to companies today. The sub-domain of AI that deals with this field is Machine Learning (ML). The biggest differentiation going forward for businesses will be in their mastery of the possibilities and limitations of ML. Just as one cannot, in this day and age, function without being able to read and write, in tomorrow’s world ML will become the new literacy. According to the World Economic Forum, in the next five years over half of the jobs in the world will be impacted by AI; and many of those people will need to be re-skilled. Along with the great advances of ML, has come its democratization. A vast array of powerful tools is available for everyone; and they are free to use, free to take apart, learn from, and improve upon. No longer is it solely the domain of the upper eche...