Feast as a combinator.ml component
-
Updated
Jun 22, 2021 - HCL
Feast as a combinator.ml component
Feast Feature Store Tutorial
Backend for classifying, grouping, and improving queries from feast mobile app 🍝🍛🍔
A demonstration of fraud detection model based on analyzing user's spending patterns 🕵️♀️
Searchable list of potential leavening agents to remove from your dwelling during Passover and the Feast of Unleavened Bread
Polish day off and feast utility classes
Feast Feature Store for scaling customer churn model.
Recommender systems became one of the essential areas in the machine learning field. Product recommendations are key to enhance customer exeperiance and help them to find the right product from huge corpus of products. When customer find the right product that are mostly like going to add the item to cart and which help in company revenue.
This is a repository created to explore different tools and technologies related to feature stores to build and serve ML models.
Feast Client SDK for Node.js
A demo pipeline of using Redis as an online feature store with Feast for orchestration and Ray for training and model serving
This repo contains a plugin for feast to run an offline store on Spark
A demo of Redis Enterprise as the Online Feature Store deployed on GCP with Feast and NVIDIA Triton Inference Server.
Build Recommender System with PyTorch + Redis + Elasticsearch + Feast + Triton + Flask. Vector Recall, DeepFM Ranking and Web Application.
A PHP script / API endpoint that will generate the Roman Catholic liturgical calendar for any given year, calculating the mobile festivities and the precedence of solemnities, feasts, memorials...
Using a feature store to connect the DataOps and MLOps workflows to enable collaborative teams to develop efficiently.
Add a description, image, and links to the feast topic page so that developers can more easily learn about it.
To associate your repository with the feast topic, visit your repo's landing page and select "manage topics."