Presented by Anupama Joshi
Companies are moving towards AI/Machine learning very fast. Data scientist are building models and training models. But challenges come when deploying models in production.
How to maintain multiple models? Creating a common platform that allows model management and deployment easily and reliably is becoming a necessity for organizations to accelerate product development.
In this talk, I will talk about the challenges faced and the solutions used to make this process easy.
Table of contents
- Title: Challenges in Machine Learning from Model Building to Deployment at Scale
- Release date: September 2019
- Publisher(s): Data Science Salon
- ISBN: None
You might also like
Analytical Skills for AI and Data Science
While several market-leading companies have successfully transformed their business models by following data- and AI-driven paths, …
The Art of Communication
Bring nuance, depth, and meaning to every conversation you have The Art of Communication is for …
40 Algorithms Every Programmer Should Know
Learn algorithms for solving classic computer science problems with this concise guide covering everything from fundamental …
Software Engineering at Google
Today, software engineers need to know not only how to program effectively but also how to …