As ML models, particularly LLMs, have scaled up to having trillions of trainable parameters, cloud compute platforms have never been more essential. In today's episode, Hadelin and Kirill cover how data scientists can make the most of the cloud.
Kirill:
• Is Founder and CEO of SuperDataScience, an e-learning platform.
• Founded the SuperDataScience Podcast in 2016 and hosted the show until he passed me the reins in late 2020.
Hadelin:
• Was a data engineer at Google before becoming a content creator.
• Took a break from Data Science content in 2020 to produce and star on Bollywood.
Together, Kirill and Hadelin:
• Are the most popular data science instructors on the Udemy platform, with over two million students.
• Have created dozens of data science courses.
• Recently returned from a multi-year course-creation hiatus to publish their “Machine Learning in Python: Level 1" course as well as their brand-new course on cloud computing.
Today’s episode is all about the latter so will appeal primarily to hands-on practitioners like data scientists who are keen to be introduced to — or brush up upon — analytics and ML in the cloud.
In this episode, Kirill and Hadelin detail:
• What cloud computing is.
• Why data scientists increasingly need to know how to use the key cloud computing platforms such as AWS, Azure, and the Google Cloud Platform.
• The key services the most popular cloud platform AWS offers, particularly with respect to databases and machine learning.
*Note that it is a coincidence that AWS sponsored this show with a promotional message about their hardware accelerators. Kirill and Hadelin did not receive any compensation for developing content on AWS nor for covering AWS topics in this episode.
The SuperDataScience podcast is available on all major podcasting platforms, YouTube, and at SuperDataScience.com.