April 6, 2025
6 years ago, I decided to open-source my Python code for a personal project I…
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 |