Video description
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
Product information
- Title: Challenges in Machine Learning from Model Building to Deployment at Scale
- Author(s):
- Release date: September 2019
- Publisher(s): Data Science Salon
- ISBN: None
You might also like
video
End-to-End Machine Learning: From Training a Model to Deploying to the Cloud
Train a classification model with Scikit-Learn and deploy it to AWS using Docker and AWS Beanstalk. …
book
Machine Learning on Kubernetes
Build a Kubernetes-based self-serving, agile data science and machine learning ecosystem for your organization using reliable …
book
Practical Machine Learning with AWS: Process, Build, Deploy, and Productionize Your Models Using AWS
Successfully build, tune, deploy, and productionize any machine learning model, and know how to automate the …
video
An Introduction to Machine Learning Models in Production
This course lays out the common architecture, infrastructure, and theoretical considerations for managing an enterprise machine …