AI Innovations: The Power of Feature Platforms - MLOps Mini Summit
Offered By: MLOps.community via YouTube
Course Description
Overview
Syllabus
[] Real-time data, predictive features, and model integration
[] Fast data-driven model advancement without engineering constraints
[] Supports software team, data scientists' rapid iteration
[] Big organizations use Python for enterprise performance
[] Python enables collaboration, rapid iteration, retrieval ease
[] Subscription model to avoid overdraft, credit building
[]Flexibility in feature engineering platform building process
[] Transformation of features for an advanced classifier, improvements
[] Compiler processes definitions into actionable entities, connectors included
[] Managing and storing state in a compiler
[] Fennel uses rocks DB on SSD's, partitioning, replication
[] Utilizing streaming cases for low-latency data
Taught by
MLOps.community
Related Courses
Scaling Data and ML with Apache Spark and Feast - Feature Engineering for ProductionDatabricks via YouTube An AI Engineer Technical Guide to Feature Store with FEAST
Prodramp via YouTube Integrating High Performance Feature Stores with KServe Model Serving
Linux Foundation via YouTube The Challenges of Deploying Real-time AI for Finance and How Open Source Can Help
Linux Foundation via YouTube Integrating Feast Online Feature Store with KFServing
Linux Foundation via YouTube