Reflection AI develops open foundation models targeting superintelligent autonomous systems, with current work focused on autonomous coding as a path to broader cognitive automation. The company combines reinforcement learning and large language models to build systems capable of handling most cognitive work on a computer, positioning autonomous code generation as the bottleneck to unlock that capability.
The team includes contributors to AlphaGo, AlphaZero, PaLM, GPT-4, and Gemini, bringing production experience across game-playing RL systems and frontier language models. This background suggests familiarity with the trade-offs in training large-scale models - compute efficiency, sample complexity, and the operational challenges of running RL at scale alongside supervised pretraining.
Reflection's stated objective centers on keeping superintelligence open and accessible through open foundation models. For inference practitioners, this implies potential work on model architectures, training infrastructure, and deployment systems designed for broad distribution rather than proprietary deployment. The autonomous coding focus suggests evaluation infrastructure for code generation, likely including metrics beyond pass@k - compilation rates, execution correctness, and performance characteristics of generated code under real-world constraints.