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Rengo AI - AI Engineer

deCircle
1 day ago
Full-time
On-site
New York, New York, United States
ML & AI Engineering

Rengo AI is building the intelligence layer for fund management — starting with next-generation portfolio monitoring systems for investment teams.

Today, portfolio monitoring is fragmented across dashboards, spreadsheets, internal tools, and manual analyst workflows. Rengo replaces this with an AI-native monitoring layer that continuously interprets portfolio activity, risk, exposure, and performance across assets and strategies.

The Role

As a Founding AI Engineer, you will build the core system that powers AI-driven portfolio monitoring for institutional investors.

You will design systems that continuously:

  • ingest portfolio + market + position-level data

  • detect meaningful changes and anomalies

  • generate structured investment insights

  • explain performance and risk drivers in natural language + structured outputs

This is a high-reliability AI system, not a chatbot.

What You’ll Build

1. AI Portfolio Monitoring Engine

  • Real-time and batch systems that monitor:

    • portfolio performance (PnL, attribution, drawdowns)

    • exposure shifts (sector, geography, asset class)

    • risk signals (volatility, correlation, concentration)

    • position-level changes

  • AI layer that converts raw portfolio data into:

    • alerts

    • summaries

    • explanations

    • actionable insights

2. Change Detection & Intelligence Layer

  • Build systems that detect:

    • significant portfolio movements

    • abnormal price/volume behavior in holdings

    • drift from target allocations

    • risk regime changes

  • Prioritization layer: what matters vs noise

3. AI-Generated Portfolio Narratives

  • Generate structured outputs such as:

    • daily / weekly portfolio reports

    • performance explanations (“why did we lose/gain?”)

    • exposure breakdowns

    • risk commentary

  • Ensure outputs are:

    • auditable

    • grounded in data

    • consistent across runs

4. Data + Retrieval Systems for Funds

  • Integrate:

    • positions & holdings data

    • market data feeds

    • internal fund metadata

    • external news & filings (optional enrichment layer)

  • Build RAG pipelines over portfolio + market context


5. LLM Systems for Financial Reliability

  • Design LLM pipelines that:

    • avoid hallucinated financial reasoning

    • produce structured, verifiable outputs

    • ground insights in actual portfolio data

  • Build evaluation frameworks for correctness of financial narratives


Strong engineering background

  • 3–7+ years in backend, data engineering, or ML systems

  • Strong Python (mandatory)

  • Experience building production data systems or analytics platforms

LLM / AI systems experience

  • Experience building LLM applications in production

  • Strong understanding of:

    • RAG systems

    • structured generation (schemas, JSON outputs)

    • tool use / function calling

    • agent workflows

  • Awareness of failure modes in LLM reasoning (critical in finance)

Data-heavy systems mindset

  • Experience with:

    • time-series data

    • event-driven pipelines

    • analytics / observability systems

  • Comfort working with imperfect, high-volume financial data

Nice to Have

  • Experience in:

    • asset management / hedge funds / fintech

    • portfolio analytics or risk systems

    • trading / market data infrastructure

  • Familiarity with:

    • exposure/risk models

    • PnL attribution systems

    • BI / analytics platforms for finance

  • Experience with vector databases or hybrid retrieval systems

What Makes This Role Unique

  • You are building the core monitoring brain of a fund

  • Not dashboards — interpretation + intelligence

  • Systems you build directly influence investment decisions and risk awareness

  • High emphasis on:

    • correctness

    • traceability

    • reliability under uncertainty

  • You own the full stack: data → intelligence → insight delivery

Tech Direction

  • Python (core systems + AI orchestration)

  • LLM APIs (OpenAI / Anthropic / open-source models)

  • Postgres + time-series storage

  • Vector DB for semantic retrieval

  • Stream/batch processing pipelines

  • Cloud infrastructure (AWS/GCP)

Why Join

  • Define how AI monitors institutional portfolios

  • Replace manual analyst workflows with automated intelligence systems

  • Work on one of the hardest AI problems in finance: turning data into trustworthy interpretation

  • High ownership, early-stage, no legacy constraints