Applications are invited for the Amazon ML Summer School for Engineering Students.
Table of Contents
About Amazon
Amazon.com, Inc. is an American multinational technology firm that focuses on e-commerce, cloud computing, digital streaming, and synthetic intelligence. It is among the Big Five companies within the U.S. information technology business, together with Google, Apple, Microsoft, and Facebook.
About the Challenge
ML Summer School goals at offering college students the opportunity to achieve Machine Learning expertise and which is step one in turning into able to build a profession in ML.
This program is a three-day intensive course on key ML subjects like Supervised Learning, Deep Neural Networks, Probabilistic Graphical Models, Dimensionality Reduction, and Unsupervised Learning. This is a superb alternative to study from and work together with Scientists at Amazon who’ve immense data of their ML area.
Key takeaways:
- In-depth knowledge on key ML subjects from Amazon Scientists
- Platform to work together with Scientists and study breakthrough innovation
- Opportunity to organize for a profession in ML
ML Summer School is an immersive three-day program that goals at offering college students the chance to study key ML applied sciences from Scientists at Amazon making their business prepared for careers in ML.
Program Dates: July 9 – July 11, 2021
Eligibility
Engineering college students enrolled in Bachelor’s/Master’s/Ph.D. degree from 20 select institutes of India and are anticipated to graduate in 2022 or 2023 are eligible to enroll in ML Summer School.
![Amazon ML Summer School for Engineering Students [July 9-11]: Register by June 26 2 Untitledf56ccb8](https://s3-ap-southeast-1.amazonaws.com/he-public-data/Untitledf56ccb8.jpg)
How to Register?
Interested participants can apply for challenges using this link.
Registration Deadline
June 25, 2021
Click here to view the official notification for the Amazon ML Summer School.
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