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deCircle

Rengo AI - AI Engineer

deCircle

Location
Remote (New York, NY)
Employment
Full-time
Level
Senior Level
Posted 3 weeks ago

About the Role

Rengo AI is building the intelligence layer for fund management, creating next-generation AI-native portfolio monitoring systems for institutional investors. As a Founding AI Engineer, you will build the core system that interprets portfolio activity, risk, and performance, directly influencing investment decisions.

Skills

Python LLM Application Development RAG Systems Data Engineering Machine Learning Structured Generation Function Calling Agent Workflows Time-series Data Event-driven Pipelines Postgres Vector Databases AWS/GCP Financial Analytics Portfolio Monitoring Backend Engineering

Full job details

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