What we are building
We think financial AI needs a richer context layer: one that understands entities, events, relationships, time, and change well enough to support real reasoning instead of shallow retrieval.
What is FinGraph and why does it matter?
FinGraph is our financial world model: a connected graph of companies, events, relationships, timelines, and market signals that gives agents a durable structure for retrieval, reasoning, and ongoing analysis.
Who are we building this for?
FinCatch is designed for equity research, portfolio work, trading, risk analysis, and adjacent financial workflows that need connected, explainable context instead of one-off black-box answers.
How do language models and structure work together here?
We pair language models with FinGraph, workflows, and market data so analysis can move through graph queries, retrieval, and modeling steps while still feeling like a natural language interface.
What does it mean to turn results into living theses?
We turn search, monitoring, and analysis into ongoing theses for each company, sector, and theme, keeping context, sources, and prior work connected so views can evolve over time rather than restart from scratch.