
What we’re about
Welcome to "Recommender Systems IL"!!! In this community, we will share tech issues and case studies on recommender systems. We'll be focusing on ML models, architecture, and scale. So if you are a Data scientist, ML research, software architect or backend engineer who works on a recommender system- this is a community for you to join!
Upcoming events (1)
See all- Trustworthy and Explainable Recommender SystemsLusha , Tel-Aviv
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Join us at the upcoming RecSys IL meetup on May 26, where we'll dive into how explainability, trust, and privacy are reshaping the next generation of recommender systems.
**Talks are in English.
Date: May 26, 17:30
Location: Lusha office - 132 Menachem Begin, Azrieli Center, Triangle Building, 44th floor, Tel AvivAgenda:
17:30 - 18:00 Registration, Mingling, Snacks & Drinks
18:00 - 18:30 Explaining Recommendations at Scale (Guy Lissak)
18:30 - 19:00 Towards Faithful and Interpretable Recommender Systems: Recent Advances in Explainable AI (Prof. Noam Koenigstein)
19:00 - 19:30 Privacy-Preserving Context-Aware Recommendations: A Federated Learning Approach (Dr. Moshe Unger)Details:
Talk 1
Title: Explaining Recommendations at Scale
Speaker: Guy Lissak, Insights Team Lead at Lusha
Bio:
Guy is a Data Engineering Team Lead at Lusha, where he builds large-scale data pipelines and real-time recommender systems. His work focuses on turning data into useful, explainable insights that help users make better decisions.
He holds a B.Sc. in Electronics and Computer Engineering from the Holon Institute of Technology, and pursuing a Data Science MSc these days.Abstract:
What if your recommendation system didn't just suggest, but also clearly explained why?
Join us as we reveal how Lusha is enhancing recommendation engines by building high-performance, explainable, content-based systems that empower smarter, faster sales decisions at scale.
Creating a recommendation system is one challenge, building one that operates in real-time, handles enormous data volumes, and transparently explains its reasoning is an entirely different achievement.
In this session, we'll take you under the hood of Lusha's architecture to explore how it achieves ultra-low latency and scalability in its recommendation engines. Discover how cutting-edge techniques like embedding generation, vector compression, and real-time indexing in advanced vector databases come together to deliver recommendations users can trust, all at lightning speed.We'll also dive into how we evaluate recommendation performance at scale, ensuring accuracy and relevance. Moreover, learn how we've embedded transparency deep into our system—from CRM insights and behavioral analytics to company-level indicators—surfaced through an intuitive, action-oriented user interface.
Talk 2
Title: Towards Faithful and Interpretable Recommender Systems: Recent Advances in Explainable AI
Speaker: Prof. Noam Koenigstein, School of Industrial Engineering and Inteligent Systems at Tel Aviv University
Bio:
Prof. Noam Koenigstein received his B.Sc. degree in computer science (cum laude) from the Technion – Israel Institute of Technology, Haifa, Israel, in 2007, and his M.Sc. degree in electrical engineering from Tel Aviv University, Tel Aviv, Israel, in 2009. He obtained his Ph.D. from the School of Electrical Engineering at Tel Aviv University in 2013. In 2011, Prof. Koenigstein joined Microsoft's Xbox Machine Learning research team, developing recommendation algorithms for millions of users globally, and later managed the recommendations research team for the Microsoft Store. In 2017, he became Senior Vice President and Head of Data Science at Citi Bank's Israeli Innovation Lab, leading data science activities at their Israeli research center. Prof. Koenigstein joined Tel Aviv University in 2018, where he currently serves as an Associate Professor at the School of Industrial Engineering and Intelligent Systems. He heads the DELTA Lab for applied deep-learning technologies, guiding students in the development and application of machine learning algorithms to a variety of real-world problems.Abstract:
Explainable AI (XAI) plays a crucial role in recommender systems by helping users understand personalized recommendations and fostering trust in these increasingly complex models. Effective explanations must accurately reflect the true reasoning behind recommendations, going beyond simple plausibility.In this talk, Prof. Noam Koenigstein from Tel Aviv University will share recent advances from his research group, DeltaLab@TAU, focusing on methods to ensure recommendations are both interpretable and faithful to their underlying logic. He will introduce innovative approaches for generating accurate explanations, evaluating their fidelity rigorously, and uncovering interpretable concepts from complex recommender models.
Join us to learn about cutting-edge developments in explainable recommender systems, and discover how transparency and trust can be significantly enhanced in personalized recommendation experiences.Talk 3
Title: Privacy-Preserving Context-Aware Recommendations: A Federated Learning Approach
Speaker: Dr. Moshe Unger, Coller School of Management at Tel Aviv University
Bio:
Moshe holds B.Sc (Software Engineering), M.Sc (Software and Information Systems Engineering), and PhD. (Software and Information Systems Engineering) from Ben-Gurion University (BGU) of the Negev, Israel. His research work focuses on Personalization, Data Mining, Machine Learning and Recommender Systems with emphasis to context inference with deep learning techniques and its usage in recommender systems. He is currently a lecturer at the Coller School of Management, Tel Aviv University. He has recently finished a postdoctoral researcher position at NYU Stern School of Business and an associate research scientist at the NYU Stern Fubon Center of Technology, Business and Innovation.Abstract:
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