ML Engineering – Scalable Model Serving (FREE)
Overview
This is part of Machine Learning Engineering and DevOps Learning Series.
In this session we will discuss how to do scalable model serving architectures.
This is a FREE class!
On-Demand
Can’t make it to live session? No worries. Go ahead and register; we will send you the session recording .
See below for past session recordings & notes
What you will learn
- Compare and contrast traditional methods of model serving with Serverless paradigm
- Serverless inference in the cloud
- tensorflow model server
- AWS Lambda
- Serving a model using TF Model server
Intended Audience
Developers, DevOps, Data Scientists
Prerequisites
- Must have : Development experience
- Nice to have: Python knowledge
- Nice to have: Machine Learning knowledge
What to Bring
- Please bring a reasonably modern laptop (Corporate laptops with overly restrictive firewalls may not work well; Personal laptops are recommended)
- Need to have a Machine Learning Environment setup on your laptop. Please follow this guide
- [nice to have] download our docker image elephantscale/es-training
Session Recording
Coming soon
Session Notes
Presenters
Sujee Maniyam
Sujee Maniyam is a seasoned practitioner and founder of Elephant Scale. He teaches and consults in AI (machine learning and deep learning) and Big Data (Hadoop, Spark, NoSQL) and and Cloud technologies.
He is an open source contributor, author ( ‘Hadoop illuminated‘ and ‘HBase Design Patterns‘) and speaker at conferences. He also advises and mentors various companies and organizations.
Linkedin : https://www.linkedin.com/in/sujeemaniyam
Github : https://github.com/sujee
Mike Kane
Mike Kane is a Senior Data Scientist specializing in Natural Language Processing. He has a passion for Deep Learning, and has professionally trained teams from multiple Fortune 100 companies in ML and AI
Linkedin : https://www.linkedin.com/in/mikekane2/
Github : https://github.com/mike-kane