FactorEngine: A Program-level Knowledge-Infused Factor Mining Framework for Quantitative Investment
arXiv cs.AI / 3/18/2026
📰 NewsSignals & Early TrendsIdeas & Deep AnalysisModels & Research
Key Points
- FactorEngine reframes factor discovery as the execution of Turing-complete factor programs to ensure factors are directly executable and auditable in quantitative investment.
- The framework introduces three separations to boost effectiveness and efficiency: logic revision vs. parameter optimization, LLM-guided directional search vs. Bayesian hyperparameter search, and LLM usage vs. local computation.
- A knowledge-infused bootstrapping module converts unstructured financial reports into executable factor programs through a closed-loop multi-agent pipeline for extraction, verification, and code generation.
- An experience knowledge base enables trajectory-aware refinement by learning from past successes and failures to improve future factor discovery.
- In backtests on real OHLCV data, FE delivers stronger predictive stability and portfolio metrics (IC/ICIR, Rank IC/ICIR, AR/Sharpe) than baselines, claiming state-of-the-art performance.
Related Articles
The massive shift toward edge computing and local processing
Dev.to
Self-Refining Agents in Spec-Driven Development
Dev.to
Week 3: Why I'm Learning 'Boring' ML Before Building with LLMs
Dev.to
The Three-Agent Protocol Is Transferable. The Discipline Isn't.
Dev.to

has anyone tried this? Flash-MoE: Running a 397B Parameter Model on a Laptop
Reddit r/LocalLLaMA