Posted on: 12/01/2026
Description :
Build and Own the AI Architecture :
- Design and maintain model pipelines (LLMs, embeddings, RAG, vector DB, orchestrators).
- Create robust retrieval systems over internal data (Docs, Notion, Slack, Google Drive, Dropbox, and email extracts).
Develop Production-Grade AI Agents :
- Architect multi-agent systems using frameworks like LangChain, LlamaIndex, or custom orchestration.
- Build autonomous or semi-autonomous agents for sourcing, diligence, research, and internal ops.
- Deploy tools with monitoring, evaluations, and feedback loops.
Lead the Internal AI Product Roadmap :
- Work with partners, analysts, and the platform team to identify opportunities for automation or augmentation.
- Translate business processes into end-to-end AI products.
Own Quality, Testing, and Evaluation :
- Build evaluation suites for accuracy, relevance, hallucinations, and latency.
- Implement offline and online eval frameworks for prompts, pipelines, and RAG systems.
Manage Deployments and Infrastructure :
- Set up CI/CD, observability, logging, and agent monitoring.
- Experimentation and Model Optimization :
- Run fast iterations on prompting, fine-tuning, LoRA, custom embeddings, or domain-specific models.
- Evaluate and integrate new LLMs, vector DBs, and inference optimizations.
Cross-Functional Leadership :
- Partner with the investment team to productize workflows.
- Collaborate with data engineering to ensure data quality and pipelines.
- Work with leadership to make buy/build/partner decisions.
Long-Term Architecture and Governance :
- Define standards for data security, privacy, safety, and human-in-the-loop decisioning.
- Own documentation, design reviews, and technical guidance.
Requirements :
- 5-8+ years in engineering, with 1-2 years in GenAI.
- Strong with LLMs, RAG, vector DBs, and embeddings.
- Experience deploying AI models to production.
- Hands-on experience with PyTorch/JAX and GPUs is a plus.
- Prefer candidates from top AI startups/labs.
Nice to Have :
- Experience fine-tuning or distilling LLMs (LoRA, SFT).
- Background in startups, VC, SaaS, or high-velocity environments.
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