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Koen Botermans

Koen1995
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replied to sherryxychen's post 4 days ago
**Training ACT on SO-101: From Woodpecker to 90% Success (All the Mistakes Included)** I spent 3 weeks training Action Chunking Transformer on SO-101 for pick-and-place. Spoiler: the first attempt trained a woodpecker that just pecked the table. ๐Ÿฆ **What's Different About This Post:** Most ACT tutorials show the success. I documented every failure, hardware issue, and debugging step. If you're new to SO-101/LeRobot/ACT, hopefully my mistakes save you time. Try 1: The Woodpecker - Followed the LeRobot tutorial, collected 50 episodes - Beautiful loss curves โœ… - Robot learned to peck at table โŒ - Rookie mistakes: moving cameras, arm calibration mismatch, limited data diversity, looking at follower arm during teleop (it's cheating!) Try 2: Engineering Upgrades - Fixed hardware setup (tape + markers everywhere) - USB udev rules for camera stability - Formal task definition with stratified sampling - Built proper eval pipeline with progress scoring - Motor breakdown mid-collection (broke the gripper with excessive force ๐Ÿ’€) - Results: 60% in-distribution success, 10% OOD (better, but not great) Try 3: More & Better Data https://huggingface.co/sherryxychen/2025-09-07_act - 125 episodes with rotation variations (https://huggingface.co/datasets/sherryxychen/2025-09-01_pick-and-place-block) - Better workspace coverage - Improved grasping technique - Results: 90% in-distribution success, 75% OOD! ๐ŸŽ‰ Key Learnings: - Consistent hardware setup is everything - Don't look at the follower arm during teleop - Data diversity is key for generalization - Debug infrastructure matters - Real robots break in mysterious ways (buy spare motors!) Full write-up (with more videos!): https://huggingface.co/blog/sherryxychen/train-act-on-so-101 Code: https://github.com/sherrychen1120/so101_bench Happy to answer any questions! ๐Ÿค— #imitation-learning #lerobot #act #so-101
reacted to sherryxychen's post with ๐Ÿค— 4 days ago
**Training ACT on SO-101: From Woodpecker to 90% Success (All the Mistakes Included)** I spent 3 weeks training Action Chunking Transformer on SO-101 for pick-and-place. Spoiler: the first attempt trained a woodpecker that just pecked the table. ๐Ÿฆ **What's Different About This Post:** Most ACT tutorials show the success. I documented every failure, hardware issue, and debugging step. If you're new to SO-101/LeRobot/ACT, hopefully my mistakes save you time. Try 1: The Woodpecker - Followed the LeRobot tutorial, collected 50 episodes - Beautiful loss curves โœ… - Robot learned to peck at table โŒ - Rookie mistakes: moving cameras, arm calibration mismatch, limited data diversity, looking at follower arm during teleop (it's cheating!) Try 2: Engineering Upgrades - Fixed hardware setup (tape + markers everywhere) - USB udev rules for camera stability - Formal task definition with stratified sampling - Built proper eval pipeline with progress scoring - Motor breakdown mid-collection (broke the gripper with excessive force ๐Ÿ’€) - Results: 60% in-distribution success, 10% OOD (better, but not great) Try 3: More & Better Data https://huggingface.co/sherryxychen/2025-09-07_act - 125 episodes with rotation variations (https://huggingface.co/datasets/sherryxychen/2025-09-01_pick-and-place-block) - Better workspace coverage - Improved grasping technique - Results: 90% in-distribution success, 75% OOD! ๐ŸŽ‰ Key Learnings: - Consistent hardware setup is everything - Don't look at the follower arm during teleop - Data diversity is key for generalization - Debug infrastructure matters - Real robots break in mysterious ways (buy spare motors!) Full write-up (with more videos!): https://huggingface.co/blog/sherryxychen/train-act-on-so-101 Code: https://github.com/sherrychen1120/so101_bench Happy to answer any questions! ๐Ÿค— #imitation-learning #lerobot #act #so-101
updated a model 4 days ago
Koen1995/base-S0101-env
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