AI & ML interests
Machine learning, deep learning, generative AI, LLMs
Recent Activity
Remyx AI ā ExperimentOps Infrastructure
š£ Join us at Experiment 2025!
A scientific interface for debugging, evaluating, and iterating on AI systems.
Remyx AI offers infrastructure for ExperimentOps, a principled layer for managing the design and evaluation of AI systems.
ExperimentOps is a set of practices and methods to operationalize how we learn from a growing history of experiments and design better systems under practical constraints.
š§Ŗ Why ExperimentOps?
AI development is fundamentally empirical. But as the design space grows, it becomes computationally and operationally intractable to explore all combinations.
ExperimentOps provides a formal structure for reasoning under this complexity:
- Every system variant is an intervention; every evaluation is an outcome.
- By modeling experiment history causally, not just correlationally, we identify what contributes to downstream performance.
- Instead of trial-and-error, we build structured knowledge from cumulative evidence.
This causal framing enables teams to experiment with purpose: prioritizing what to try next, what to revisit, and what to discard.
š ļø What You'll Find Here
- Model variants ā e.g.,
SpaceThinker-Qwen2.5VL-3B
,SpaceOm
, and others trained through structured, reproducible workflows. - Open datasets ā Synthetic multimodal datasets created with tools like VQASynth.
- Evaluation analyses ā Curated results and leaderboard comparisons published via Hugging Face model cards and evaluation tables, reflecting structured experiments conducted in Remyx and other platforms.
Mission: Help teams reason clearly about what works and why, treating experimentation as a scientific process, not guesswork.
Learn more at remyx.ai
models
18

remyxai/SpaceThinker-Qwen2.5VL-3B

remyxai/SpaceOm

remyxai/SpaceQwen2.5-VL-3B-Instruct

remyxai/SpaceLLaVA

remyxai/SpaceThinker-Nemotron-8B

remyxai/SpaceFlorence-2

remyxai/SpaceMantis

remyxai/PoseFlorence-2

remyxai/SpaceLlama3.1-hf
