Founding LLM Data Engineer

Posted:
2/20/2025, 5:23:03 PM

Location(s):
San Francisco, California, United States ⋅ California, United States

Experience Level(s):
Mid Level ⋅ Senior

Field(s):
AI & Machine Learning ⋅ Data & Analytics

Workplace Type:
On-site

About

We often joke that Fintool is "Warren Buffett as a Service." After Nicolas sold his previous startup—a legal search engine powered by AI—he invested part of the proceeds into Berkshire Hathaway stock, trusting in Buffett’s approach. Yet, with over a decade in AI, he couldn’t shake one question: Could a sophisticated language model replicate Warren Buffett’s investment process?

Warren Buffett's letters, biographies, and investment decisions provide a wealth of knowledge about how to find, analyze, and understand companies. There are even textbooks on value investing that detail the step-by-step process.

What if we could break down Buffett’s process into individual tasks and use an AI agent to replicate his approach?

At Fintool, we took on that challenge. We deconstructed most of the tasks that Buffett performs to analyze a business—reading SEC filings, understanding earnings, evaluating management decisions—and we built an AI financial analyst to handle these tasks with precision and scale.

Team

Nicolas Bustamante: spent 7 years building one of the largest AI-driven legal search engines (Bloomberg for lawyers). Nicolas hired nearly 200 people, secured millions of dollars in debt and equity funding, and the profitable business was successfully acquired by Summit Partners, a $43B billion growth equity fund, for $x00M+

Edouard Godfrey: worked for 9 years at Apple, leading teams of data scientists and engineers. He worked on Apple Search (Spotlight) and Apple Pay, maintaining big data pipelines and deploying cutting-edge AI models. He received the 2019 Apple Pay Innovation Award for outstanding contributions and fresh insights.

Technology

Click here to see our full LLM tech stack.

Our philosophy

Small team: small in-person teams outperform large and well-funded companies. When people visit our office, they should be surprised by how few people we are.

Ship code: we avoid meetings, PM jargon to release early, release often, and listen to customers.

In-person: we believe high-performing teams do their best work, build long-term relationships, and have the most fun in person.

Company Values

Clone and improve the best: we're not about reinventing the wheel but about enhancing proven success. We are shameless cloners who stand on the shoulders of giants. We draw inspiration and then create differentiation because distinctiveness drives dominance.

Release early, release often, and listen to your customers: speed matters in business, so we push better-than-perfect updates for customers asap. Mastery comes from repeated experiments and learning from mistakes rather than putting in a set number of hours. It’s 10,000 iterations, not 10,000 hours.

Warren Buffett: We model our personal and professional ethos on the principles he exemplifies. Upholding integrity, valuing honesty, practicing frugality, championing lifelong learning, embracing humility, extending generosity, applying rationality, and demonstrating patience. Every day, we strive to mirror these Buffett-inspired virtues.

Job Desc

Your challenge is to build and optimize a high-performance data ingestion and processing pipeline for LLM-powered financial applications. You will be responsible for developing scalable, low-latency ingestion systems that handle millions of structured and unstructured financial documents.

Requirements: Python, LLM.

Knowing Spark and Databricks is a BIG plus. Typescript is also nice.

Experience: 3+ years

Location: San Francisco (no remote)

Contract: Full-time

Apply via the form below 👇

Fintool

Website: https://www.fintool.com/

Headquarter Location: San Francisco, California, United States

Employee Count: 1-10

Year Founded: 2023

IPO Status: Private

Last Funding Type: Pre-Seed

Industries: Analytics ⋅ Artificial Intelligence (AI) ⋅ Finance ⋅ SaaS ⋅ Search Engine