Загрузка страницы

Tutorial 1A Training and Deploying Multi Stage Recommender Systems

RecSys 2021 RecSys 2022 Training and Deploying Multi Stage Recommender Systems by Francesco Barile (Maastricht University, The Netherlands), Amra Delić (University of Sarajevo, Bosnia and Herzegovina), and Ladislav Peška (Charles University, Czech Republic)

Industrial recommender systems are made up of complex pipelines requiring multiple steps including feature engineering and preprocessing, a retrieval model for candidate generation, filtering, a feature store query, a ranking model for scoring, and an ordering stage. These pipelines need to be carefully deployed as a set, requiring coordination during their development and deployment. Data scientists, ML engineers, and researchers might focus on different stages of recommender systems, however they share a common desire to reduce the time and effort searching for and combining boilerplate code coming from different sources or writing custom code from scratch to create their own RecSys pipelines.

This tutorial introduces the Merlin framework which aims to make the development and deployment of recommender systems easier, providing methods for evaluating existing approaches, developing new ideas and deploying them to production. There are many techniques, such as different model architectures (e.g. MF, DLRM, DCN, etc), negative sampling strategies, loss functions or prediction tasks (binary, multi-class, multi-task) that are commonly used in these pipelines. Merlin provides building blocks that allow RecSys practitioners to focus on the “what” question in designing their model pipeline instead of “how”. Supporting research into new ideas within the RecSys spaces is equally important and Merlin supports the addition of custom components and the extension of existing ones to address gaps.

In this tutorial, participants will learn: (i) how to easily implement common recommender system techniques for comparison, (ii) how to modify components to evaluate new ideas, and (iii) deploying recommender systems, and bringing new ideas to production- using an open source framework Merlin and its libraries.

Видео Tutorial 1A Training and Deploying Multi Stage Recommender Systems канала ACM RecSys
Показать
Комментарии отсутствуют
Введите заголовок:

Введите адрес ссылки:

Введите адрес видео с YouTube:

Зарегистрируйтесь или войдите с
Информация о видео
21 февраля 2023 г. 3:45:34
02:40:04
Другие видео канала
Building public service recommenders: Logbook of a journeyBuilding public service recommenders: Logbook of a journeyTops, Bottoms, and Shoes: Building Capsule Wardrobes via Cross-Attention Tensor NetworkTops, Bottoms, and Shoes: Building Capsule Wardrobes via Cross-Attention Tensor NetworkPS 5: Latent Factor Models and Aggregation Operators for Collaborative Filtering in Reciprocal RecomPS 5: Latent Factor Models and Aggregation Operators for Collaborative Filtering in Reciprocal RecomPS2: Translation-based factorization machines for sequentialPS2: Translation-based factorization machines for sequentialWorkshop on Context-Aware Recommender SystemsWorkshop on Context-Aware Recommender SystemsPaper Session 4: Domain Adaptation in Display Advertising: An Application for Partner Cold-StartPaper Session 4: Domain Adaptation in Display Advertising: An Application for Partner Cold-StartMitigating Confounding Bias in Recommendation via Information BottleneckMitigating Confounding Bias in Recommendation via Information BottleneckPS 7: Eliciting pairwise preferences in recommender systems Saikishore KallooriPS 7: Eliciting pairwise preferences in recommender systems Saikishore KallooriPS 6: Judging similarity: a user-centric study of related item recommendations Yuan YaoPS 6: Judging similarity: a user-centric study of related item recommendations Yuan YaoRecSys 2015 Session 4b: AlgorithmsRecSys 2015 Session 4b: AlgorithmsBoosting Local Recommendations With Partially Trained Global ModelBoosting Local Recommendations With Partially Trained Global ModelPessimistic Reward Models for Off-Policy Learning in RecommendationPessimistic Reward Models for Off-Policy Learning in RecommendationLearning a voice-based conversational recommender using offline policy optimizationLearning a voice-based conversational recommender using offline policy optimizationSession 9: Timely Personalization at Peloton:System and Algorithm for Boosting Time Relevant ContentSession 9: Timely Personalization at Peloton:System and Algorithm for Boosting Time Relevant ContentRecSys 2020 Session P2B: Evaluating and Explaining RecommendationsRecSys 2020 Session P2B: Evaluating and Explaining RecommendationsRecSys 2020 Session P5B: Real World Applications IIRecSys 2020 Session P5B: Real World Applications IIPrivacy Preserving Collaborative Filtering by Distributed MediationPrivacy Preserving Collaborative Filtering by Distributed MediationRecSys 2016: Paper Session 7 - Behaviorism is Not Enough: Better RecommendationsRecSys 2016: Paper Session 7 - Behaviorism is Not Enough: Better RecommendationsRecSys 2016: Paper Session 5 - Mechanism Design for Personalized Recommender SystemsRecSys 2016: Paper Session 5 - Mechanism Design for Personalized Recommender SystemsRecSys 2020 Session P5A: Real World Applications IIRecSys 2020 Session P5A: Real World Applications IIDebiased Off-Policy Evaluation for Recommender SystemsDebiased Off-Policy Evaluation for Recommender Systems
Яндекс.Метрика