limitedDistribution · Industry Research
Venture Capital Software Intern
A venture capital firm is developing AI-driven data pipelines for unstructured data, enhancing market intelligence through sophisticated tools and systems.

Stargo's Stardox can enhance venture capital firms' AI-driven data pipelines for unstructured data, boosting market intelligence capabilities.
Executive Summary
We are a pre-seed B2B venture capital firm pivoting into a tech-first powerhouse. We don’t just invest in “primitives”—the foundational tech solving hard problems—we build them. We are currently in “startup mode,” developing a proprietary suite of tools that give us a massive edge in sourcing and market intelligence. If you are a Computer Science student who dreams of becoming a founder, this is your laboratory. You will work directly with partners who are savvy in software architecture, giving you a front-row seat to how high-growth startups are evaluated and built from the ground up. Your projects will include AI-Driven Data Pipelines: Building sophisticated ingests for unstructured data (emails/attachments), processing them via document gateways, and creating clean Data Transfer Objects (DTOs) for our proprietary matching engine. Market Intelligence Systems: Architecting scrapers for targeted web analysis, generating embeddings, and managing vector databases for deep-market research. Open Source & Growth Tools: Carving out internal tools to launch as standalone, founder-facing applications. You’ll be responsible for the public GitHub repos and documentation that serve as our firm’s “marketing through engineering.”
Source: Center for Career & Professional Development | Centre College
Published: 2026-02-19T22:54:25.000Z
Original Article: https://careers.centre.edu/jobs/pax-momentum-venture-capital-software-intern/
More from the News Room
View allWe are publishing more related coverage here soon. Explore the full News Room for the latest articles.
See ROI in 12 weeks
See where enterprise data is slowing operations down.
Estimate the manual effort, delays, and leakage hidden across your current workflow before you automate it.