Anyscale Academy: Ray Tune & Serve, July 22, 2020
The third live Anyscale Academy tutorial, on the Ray Tune and Ray Serve libraries. The full source code can be found in this GitHub repo: https://github.com/anyscale/academy
Join us at Ray Summit Virtual, a free conference about the Ray ecosystem, ML/AI, data engineering, and other topics, September 30 - October 1, 2020. Register at http://raysummit.org.
See https://anyscale.com/events for more information about Ray Summit and our other forthcoming, online events. You can also find information there and at the Anyscale blog (https://anyscale.com/blog) about videos and presentations from past events.
Видео Anyscale Academy: Ray Tune & Serve, July 22, 2020 канала anyscale
Join us at Ray Summit Virtual, a free conference about the Ray ecosystem, ML/AI, data engineering, and other topics, September 30 - October 1, 2020. Register at http://raysummit.org.
See https://anyscale.com/events for more information about Ray Summit and our other forthcoming, online events. You can also find information there and at the Anyscale blog (https://anyscale.com/blog) about videos and presentations from past events.
Видео Anyscale Academy: Ray Tune & Serve, July 22, 2020 канала anyscale
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Anyscale Academy: Reinforcement Learning with Ray RLlib, June 24, 2020Anyscale Academy: Ray Crash Course Tutorial, May 2020Tutorial: Scalable model training with Ray TuneCloudstate—Towards Stateful Serverless - Jonas Bonér & James Roper, LightbendHyperparameter Tuning and Visualization in Deep Learning - Lukas Biewald, Weights & BiasesAlphaDow: Reinforcement Learning for Industrial Production Scheduling - Adam Kelloway, Dow ChemicalWhat's New with Ray Libraries: Tune - Richard Liaw, AnyscaleEasy Access to SOTA NLP Models with Ray and Hugging Face - Thomas Wolf, Hugging FaceAdvanced Hyperparameter Optimization for Deep Learning with MLflow - Maneesh Bhide DatabricksBuilding a Python Web Service with Ray - Philipp Moritz, AnyscaleRLlib: Scalable RL for TensorFlow, PyTorch, and Beyond - Eric Liang, AnyscaleRay Internals: A Peek at `ray.get` - Stephanie Wang, AnyscaleRISE Camp 2019: 04. Introduction to Hyperparameter Tuning (Richard Liaw)Ray Community and the Ray EcosystemDistributed Reinforcement Learning for Robotic Assembly - Rodger Luo, Autodesk ResearchAuto-Tuning Hyperparameters with Optuna and PyTorchDistributed Black-Box Model Explanation with Ray - Alexandru Coca, SeldonRay Summit Connect, July 2020: Anna LuoRay Summit Connect, May 2020 - Ion StoicaAI use cases in Industrial Operations and Supply Chain by Chris Nicholson (Pathmind)