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EgoScale

Ai Tool

Egor Vladimirovich Dёmin ( yih-GOR DYOH-min; Russian: Егор Владимирович Дëмин, Russian pronunciation: [jɪˈgor ˈdʲɵmʲɪn]; born 3 March 2006) is a Russian professional basketball player for the Brooklyn Nets of the National Basketball Association (NBA). He played college basketball for the BYU Cougars. He previously played for Real Madrid. He also represents the Russian national team.

article 1 story calendar_today First seen: 2026-02-20 update Last seen: 2026-02-20 open_in_new Website menu_book Wikipedia

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E2E perception + scaled data push real-time physical AI (YOLO26, EgoScale, Uni-Flow, AR1)

End-to-end perception and scaled human/simulation datasets are converging to deliver real-time, reasoning-capable models for robots and autonomous systems. [Ultralytics YOLO26](https://blog.dailydoseofds.com/p/researchers-solved-a-decade-old-problem) removes the Non-Maximum Suppression post-processing step via a dual-head design, producing one-box-per-object predictions in a single pass for faster, simpler, and more portable deployments (AGPL for research, enterprise licensing for commercial use). [NVIDIA/UCB/UMD’s EgoScale](https://quantumzeitgeist.com/robots-learn-skills-20-854-hours-human-video/) shows that 20,854 hours of egocentric, action-labeled video predictably improve a Vision-Language-Action model’s real-world dexterity and enable one-shot task adaptation, establishing large-scale human data as reusable supervision for manipulation. For long-horizon, fine-detail dynamics, [Uni-Flow](https://quantumzeitgeist.com/model-captures-complex-flows-long-timescales/) separates temporal rollout from spatial refinement to achieve faster-than-real-time flow inference, while NVIDIA’s [AlpamayoR1](https://towardsdatascience.com/alpamayor1-large-causal-reasoning-models-for-autonomous-driving/) integrates a VLM reasoning backbone for autonomous driving with reported 99ms latency on a single BlackWell GPU, highlighting on-device, reasoning-first E2E stacks.

calendar_today 2026-02-20
nvidia ultralytics ultralytics-yolo26 egoscale uni-flow