Remove Data Drift Remove Metadata Remove ML Engineer
article thumbnail

MLOps Landscape in 2023: Top Tools and Platforms

The MLOps Blog

When thinking about a tool for metadata storage and management, you should consider: General business-related items : Pricing model, security, and support. When thinking about a tool for metadata storage and management, you should consider: General business-related items : Pricing model, security, and support. Can you compare images?

article thumbnail

How Kakao Games automates lifetime value prediction from game data using Amazon SageMaker and AWS Glue

AWS Machine Learning Blog

Challenges In this section, we discuss challenges around various data sources, data drift caused by internal or external events, and solution reusability. These challenges are typically faced when we implement ML solutions and deploy them into a production environment.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

How to Build a CI/CD MLOps Pipeline [Case Study]

The MLOps Blog

Cost and resource requirements There are several cost-related constraints we had to consider when we ventured into the ML model deployment journey Data storage costs: Storing the data used to train and test the model, as well as any new data used for prediction, can add to the cost of deployment. S3 buckets.

ETL 52
article thumbnail

Google experts on practical paths to data-centricity in applied AI

Snorkel AI

RC : I have had ML engineers tell me, “You didn’t need to do feature selection anymore, and that you could just throw everything at the model and it will figure out what to keep and what to throw away.” That’s where you start to see data drift. So does that mean feature selection is no longer necessary?

article thumbnail

Google experts on practical paths to data-centricity in applied AI

Snorkel AI

RC : I have had ML engineers tell me, “You didn’t need to do feature selection anymore, and that you could just throw everything at the model and it will figure out what to keep and what to throw away.” That’s where you start to see data drift. So does that mean feature selection is no longer necessary?

article thumbnail

Google experts on practical paths to data-centricity in applied AI

Snorkel AI

RC : I have had ML engineers tell me, “You didn’t need to do feature selection anymore, and that you could just throw everything at the model and it will figure out what to keep and what to throw away.” That’s where you start to see data drift. So does that mean feature selection is no longer necessary?

article thumbnail

Real-World MLOps Examples: End-To-End MLOps Pipeline for Visual Search at Brainly

The MLOps Blog

quality attributes) and metadata enrichment (e.g., They also need to monitor and see changes in the data distribution ( data drift, concept drift , etc.) Regarding other teams, they may approach testing ML models differently, especially in tabular ML use cases, by testing on sub-populations of the data.