Quant Developer
Man Group · New York, New York, United States · Posted Jul 8, 2026
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About Man Group
Man Group is a global alternative investment management firm focused on pursuing outperformance for sophisticated clients via our Systematic, Discretionary and Solutions offerings. Powered by talent and advanced technology, our single and multi-manager investment strategies are underpinned by deep research and span public and private markets, across all major asset classes, with a significant focus on alternatives. Man Group takes a partnership approach to working with clients, establishing deep connections and creating tailored solutions to meet their investment goals and those of the millions of retirees and savers they represent.
Headquartered in London, we manage $228.7 billion* and operate across multiple offices globally. Man Group plc is listed on the London Stock Exchange under the ticker EMG.LN and is a constituent of the FTSE 250 Index. Further information can be found at www.man.com
At Man Group, we respect your privacy and we are committed to protecting and safeguarding your Personal Data. We have developed policies and processes which are designed to provide for the security and integrity of your Personal Data. We are committed to Processing your Personal Data fairly and lawfully, and being open and transparent about such ProcessingFor further information on how we process your data, please see the privacy notice for applicants here
- As at 31 March 2026
The Team
Discretionary & Client Solutions Technology is ~35 engineers across London, New York, and Sofia, building the platforms that power Man Group's discretionary investment and client facing operations. We operate at high tempo — shipping multiple production releases weekly across portfolio analytics, fund data platforms, client reporting, data pipelines, dashboards, and AI tools.
We are one of the most active AI-adopting engineering teams in Man Group — building LLM-powered agents, research tools with vector search, and AI integrations that our portfolio managers and analysts use daily. You'll have the opportunity to shape how AI is integrated into investment workflows.
The Role
This is an engineering role sitting at the intersection of Man Group's Discretionary (public markets) and Solutions technology teams in New York. You will be the primary NY-based engineer supporting portfolio managers, analysts and quants functions across both business lines.
The role spans Python data pipelines and analytics platforms serving Discretionary investment teams — equities, credit, and alternatives — alongside Python systems powering Solutions' fund analytics, portfolio management, and reporting infrastructure. You'll work hands-on building and operating production systems while acting as the key technical liaison for NY-based stakeholders.
Our Technology Stack
Python (primary), TypeScript/React
Data: Pandas, NumPy, Kafka
Backend: FastAPI, Flask
Frontend: React, Streamlit dashboards, Tableau
Infrastructure: Kubernetes, Airflow
AI tooling: Claude Code, LLM agents, vector search, RAG — we actively build and ship AI tools for our investment teams
Key Responsibilities
Development & Delivery (70%)
Build, extend, and maintain Python data pipelines using Pandas, NumPy, and internal libraries
Develop and enhance portfolio analytics, risk reporting, and fund data platforms
Contribute to AI-powered tools for investment teams — research databases with vector search, AI integrations for portfolio managers and analysts
Build and maintain FastAPI and Flask backends and React/TypeScript frontends using our shared component libraries
Deploy services to Kubernetes; manage Airflow DAGs for scheduled data workloads
Stakeholder Engagement (20%)
Gather requirements, translate business needs into technical solutions, and manage expectations
Work directly with portfolio managers, analysts, and quants — understanding their workflows is as important as writing the code
Production Operations (10%)
Own production stability for systems in your portfolio — investigate data quality issues, triage support requests, manage incident response
Maintain documentation and operational processes
Key Competencies
Essential
2+ years of professional software engineering experience with a strong delivery track record
Strong Python: Well-tested, modular production code. Comfortable with dataclasses, type hints, OOP, design patterns
Financial services experience — particularly portfolio management, risk, or investment operations
Pandas/NumPy proficiency: Building efficient data pipelines and transformations at scale
AI/LLM tooling — experience building with or integrating LLM-based tools. We're active early adopters of AI-assisted development and are building AI agents for our investment teams
Solid testing discipline: pytest, unit tests, integration tests — you write tests as a matter of course
Comfortable in a Linux environment with Git, virtual environments, and CLI tooling
Strong communicator: You can explain technical decisions to non-technical stakeholders concisely, and…