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Vulcury invests in early stage startups and advises companies of all sizes on strategy, growth, and efficiency
Senior AI/ML Engineer – Founding Technical Lead
Location
United States
Posted
61 days ago
Salary
0
Seniority
Senior
Job Description
Senior AI/ML Engineer – Founding Technical Lead
Vulcury
• Own the technical build of the first-generation Trustbridge supplier app end-to-end: architecture, model selection, agent design, inference layer, and production deployment. • Lead and mentor a team of 2–4 junior engineers and interns based in India. • Set the technical bar, run code reviews, and grow the team's capability. • Translate business and product specifications into buildable technical plans. • Work directly with the founder, who owns domain logic but is not a builder. • Collaborate with our Fractional CTO (background in major financial technology) on architecture decisions and technical strategy. • Once the first-generation product is in production, help shape the cross-portfolio semantic layer that connects Trustbridge, Calisade, and future ventures. • Be redeployed, over time, to new internal products and external client engagements as the practice grows.
Job Requirements
- 7–12 years of professional software engineering experience, with at least 3 years focused on applied ML or AI systems.
- You have shipped a production ML or AI system end-to-end — not just a prototype, not just a research artifact.
- You are a generalist by temperament.
- You are comfortable across model selection, agent orchestration (LLM-based and otherwise), basic data engineering, and inference architecture.
- You have led junior engineers before.
- You know how to set a technical bar without micromanaging, and you know how to grow people.
- You write clearly.
- You can explain a technical decision to a non-technical founder without condescension and without hand-waving.
- You are comfortable with ambiguity.
- You want to build something that lasts.
- Experience with dbt, modern data warehouse design, or feature stores is a plus.
- Background in supply chain, manufacturing, financial services, or investment data is a plus.
- Prior experience as a founding or early engineer at a venture-backed startup is a plus.
- Experience working across time zones with US-based founders or clients is a plus.
Benefits
- Competitive base salary calibrated to senior engineering roles at top-tier Indian technology companies and well-funded startups
- Meaningful equity in Vulcury Ventures LLC
- Equity vests over four years with a one-year cliff
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