@bookmarktutorial · Post #1670 · 01/27/2022, 12:26 AM
祝大家在即将到来的虎年里: 服务器永不宕机 Pod 永不 Pending #Etcd 永远健康 #KubeSphere Console 登录密码一直正确 应用负载一直可用 容器镜像永远不会拉不下来 #CoreDNS 一直正常解析 ks-apiserver 永不失联 存储卷挂载一直成功 监控数据永不丢失 #Prometheus 永不报警
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Source channel @githubtrending · Post #15340 · Dec 17
#python#gym#gym_environment#reinforcement_learning#reinforcement_learning_agent#reinforcement_learning_environments#rl_environment#rl_training NeMo Gym helps you build and run reinforcement‑learning training environments for large language models, letting you develop, test, and collect verified rollouts separately from the training loop and integrate with your preferred RL framework and model endpoints (OpenAI, vLLM, etc.). It includes ready resource servers, datasets, and patterns for multi‑step, multi‑turn, and tool‑using scenarios, runs on a typical dev machine (no GPU required), and is early-stage with evolving APIs and docs. Benefit: you can generate high‑quality, verifiable training data faster and plug it into existing training pipelines to improve model behavior. https://github.com/NVIDIA-NeMo/Gym