August 30, 2024
A guest post from Fabrício Ceolin, DevOps Engineer at Comet. Inspired by the growing demand…
Building recommenders isn’t always easy. With input from Jacopo Tagliabue, Ronay Ak from Nvidia, and Serdar Kadioglu from Fidelity, here’s a list of resources that can help.
Learn more from the webinar on The Era of Hyper-Personalization: Building Better Recommender Systems and be sure to join the Comet ML Slack community for any questions!
Nvidia Merlin | An open source framework for building high-performing recommender systems |
RecList | An open source library for behavioral, “black-box” testing for recommender systems |
Fidelity Mab2Rec | An open source framework for building contextual multi-armed bandits recommenders |
RecSys Reproducibility Paper at TMLR’22 | D. Kilitçioğlu, S. Kadıoğlu, Non-Deterministic Behavior of Thompson Sampling with Linear Payoffs and How to Avoid It, Transactions on Machine Learning Research (TMLR) 2022 |
Association for Computing Machinery (ACM) Terminology on Reproducibility | https://www.acm.org/publications/policies/artifact-review-and-badging-current |
Contrastive language and vision learning of general fashion concepts | |
Companies, people and communities to follow | |
Conferences |