Are you a PhD student with a passion for machine learning and an eye for innovation? Join Netflix as an ML Intern in 2025 and help us redefine entertainment. Apply now or share with someone who’d love an opportunity #OnlyatNetflix https://t.co/jJROVrQQel
Join the Netflix Algorithms Engineering team! We’re looking for great machine learning applied researchers and ML software engineers to help shape the future of entertainment, spanning personalization for recommendations, search, messaging, and growth. Links below.
We're now accepting applications for Machine Learning research internships at Netflix Research for summer 2024, including in our personalization, recommendations, and search teams. Find out more and apply here: https://t.co/XIhJe1JABl
A good reward function is critical for your recommender, bandit, or RL model to perform well. Check out our #RecSys2023 industry track paper on how we built a system to make it easier to test new reward definitions for our recommendation models. https://t.co/TAlbQzczoJ
Miss the #RecSys2023 IERI workshop talk on "Recommendation Modeling with Impression Data at Netflix" from @panjiangwei? Don't worry, the slides are now available here: https://t.co/AfyBoJbwCN
Feedback loops in Recommender Systems aren't mythical like bigfoot; they're real. Check out our #RecSys2023 industry track paper on lessons learned in detecting and addressing them at Netflix. https://t.co/moZCk0rBHk
Learn about using RL to optimize recommendation pipelines pipelines in the #RecSys2023 paper by Kabir Nagrecha. It will be presented in session 10 at 2PM today. Paper here: https://t.co/VJbd0yC6cN
Join our Mark (Ko-Jen) Hsiao at the #RecSys2023 VideoRecSys workshop for a presentation on "From Stranger Things to Your Favorite Things: Netflix's Recommendation Evolution". The talk will be at 4:35 today in room 327.
For those attending #RecSys2023, come see a talk from our @panjiangwei on "Recommendation Modeling with Impression Data at Netflix" at the LERI workshop at 2:00.
🤖️ Are LLMs good Conversational Recommender Systems (CRS) ?
We (@McAuleyLabUCSD and @NetflixResearch) let LLMs generate movie names directly in response to natural-language user requests. Key observations in the experiments:
Next in our series of Media ML blog posts, we talk about a couple of approaches that we developed at Netflix to algorithmically infer scene changes and boundaries, using video and audio features: https://t.co/zNoBMzvCor
Don’t miss the “Practical Bandits - An Industry Perspective” tutorial from #TheWebConf2023, featuring insights from our very own Ying Li and Devesh Parekh. Check out the materials here: https://t.co/jg6z7faM07
Our third post in the series about how Netflix uses Machine Learning and Computer Vision to make better media is up. We go deep on causal impact of successful visual components of promotional artwork on our member’s choosing experience. https://t.co/yERYXGk0t3
I'm organizing a workshop on Machine Learning for Streaming Media at the #webconf2023 along with my colleagues - @pchandarr, Vladan Radosavljevic, Amit Goyal and Lan Luo.
#MachineLearning#Research