Goodfin is an AI-native wealth platform focused on private markets. We're building intelligent, agentic systems that help accredited investors research, evaluate, and act on private investment opportunities with clarity and confidence. This is not an AI "feature." AI is the product.
As a Staff AI Engineer, you'll be a technical leader responsible for designing, building, and hardening the core intelligence systems behind Goodfin—systems used by real investors making real financial decisions. This is a hands-on role for someone who wants to work at the boundary of what's reliable in applied AI—and make it production-grade. You'll own end-to-end systems: from architecture and modeling decisions through deployment, evaluation, and iteration. You'll also help define technical standards and shape how we build AI as a company.
Concrete example: Build an AI deep research analyst that can synthesize deal documents, market data, news articles, and comparable deals into actionable, well-sourced insights—while surfacing nuances rather than hiding it.
What This Is Hard
Product intuition matters: We're building a sticky, high-value product for real investors—not a demo or internal research tool.
High-stakes domain: Private market investing requires accuracy, explainability, and calibrated uncertainty. "Mostly right" is not acceptable.
Data complexity: There is no clean source of truth. Data is fragmented, sparse, and often contradictory.
Reasoning over generation: The challenge is building systems that reason, compare tradeoffs, and surface uncertainty—not just generate fluent text.
Agent reliability: Multi-step, tool-using agents must behave consistently in production, not just in demos.
Evaluation is unsolved: You'll help define what "good" looks like when traditional ML metrics fall short.
Trust as a system property: Explainability, sourcing, and failure modes are core technical requirements—not UX afterthoughts.
What We're Looking For
6+ years of software engineering experience, with deep hands-on work in applied AI / ML systems
Strong fundamentals in Python and backend system design
Proven experience with LLMs (prompting, fine-tuning, RAG, agentic workflows, or evaluation tooling)
Experience owning ambiguous, high-impact systems from concept to production
Comfort making architectural tradeoffs under real-world constraints
Ability to think at the system level while still shipping high-quality code
High product intuition and a strong sense of responsibility for user outcomes
Bonus
Experience in fintech, data-intensive products, or regulated environments
How We Work
Small, lean team with high ownership and minimal bureaucracy
Direct access to users and fast feedback loops
Strong bias toward clarity, correctness, and speed
High standards for technical rigor where trust matters
What Success Looks Like
AI systems that customers trust and rely on—not just experiment with
Measurable improvements in reasoning quality, reliability, and latency
Clear architectural patterns that scale with product complexity
A higher technical bar across the team through example and mentorship
Why Join
Work on real, unsolved AI engineering problems in production
Develop systems used for real financial decision-making
Build the technical foundation of an AI-native platform at an early but high growth stage
Competitive compensation and meaningful equity
If you're excited about building serious AI systems—and want real ownership—we'd love to talk.