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1
38
Omar Espejel
espejelomar
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dietmoiphatdat's profile picture
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28 following
https://espejel.cc/
espejelomar
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Sharing WorldForge with @abdelstark It's an open-source Python project for evaluating and replaying robotics and world-model workflows. The useful part is not only calling a model. WorldForge records the run, validates action shapes, translates outputs into actions, and keeps replay artifacts you can inspect later. The current demo uses LeRobot + LeWorldModel on PushT through the official loader: `stable_worldmodel.policy.AutoCostModel("pusht/lewm")` The harness also has replay-only paths for Cosmos-Policy and GR00T-style outputs, so you can inspect the provider contract from saved artifacts without keeping a GPU server online. Try it: `pip install worldforge-ai` `uv run --extra harness worldforge-harness --flow robotics-compare` Repo: https://github.com/AbdelStark/worldforge Docs: https://abdelstark.github.io/worldforge/ Pre-1.0, MIT, and actively looking for contributors. Good areas: - robotics provider adapters - replay artifacts - eval flows - docs & first-run demos Good first issues: https://github.com/AbdelStark/worldforge/contribute If you're building robot policy evals or model adapters, would love a PR — or an issue describing what's missing.
posted
an
update
2 days ago
Sharing WorldForge with @abdelstark It's an open-source Python project for evaluating and replaying robotics and world-model workflows. The useful part is not only calling a model. WorldForge records the run, validates action shapes, translates outputs into actions, and keeps replay artifacts you can inspect later. The current demo uses LeRobot + LeWorldModel on PushT through the official loader: `stable_worldmodel.policy.AutoCostModel("pusht/lewm")` The harness also has replay-only paths for Cosmos-Policy and GR00T-style outputs, so you can inspect the provider contract from saved artifacts without keeping a GPU server online. Try it: `pip install worldforge-ai` `uv run --extra harness worldforge-harness --flow robotics-compare` Repo: https://github.com/AbdelStark/worldforge Docs: https://abdelstark.github.io/worldforge/ Pre-1.0, MIT, and actively looking for contributors. Good areas: - robotics provider adapters - replay artifacts - eval flows - docs & first-run demos Good first issues: https://github.com/AbdelStark/worldforge/contribute If you're building robot policy evals or model adapters, would love a PR — or an issue describing what's missing.
updated
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about 1 year ago
espejelomar/cairo_code_instructions_9k
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Identify The Breed Of Your Pet
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