What are the responsibilities and job description for the Senior Product Manager (Asset Management) position at TPA technologies?
No 3rd party employers
No C/C
W2 Only
Locals Only!
Senior Product Manager – Asset Management (Data & Analytics Focus)
Boston, MA (Hybrid – 3 days onsite)
Long-term contract (through end of 2026 extensions)
Overview
We are partnering with a leading Financial Services client to hire a Senior Product Manager with strong experience in asset management and investment data platforms.
This role sits at the intersection of business, data, and technology, supporting initiatives focused on investment performance, attribution, and portfolio analytics. You’ll work closely with portfolio, performance, and risk teams to deliver high-impact data-driven solutions.
What You’ll Do
- Lead requirements gathering and translate complex investment workflows into user stories and functional specs
- Drive product backlog ownership, prioritization, and delivery in an Agile environment
- Partner with stakeholders across front, middle, and back-office teams
- Support initiatives around investment performance, attribution, and benchmark data
- Work hands-on with data (SQL) for validation, analysis, and reconciliation
- Collaborate with engineering, analytics, and QA teams to ensure successful delivery
- Contribute to AI-driven improvements across requirements, testing, and documentation
What We’re Looking For
- Strong experience as a Product Manager / Business Systems Analyst in asset management or financial services
- Deep understanding of investment performance, portfolio data, and reporting workflows
- Hands-on experience with SQL (data validation, analysis)
- Experience working in Agile environments (backlog management, sprint planning, etc.)
- Ability to work closely with both business stakeholders and technical teams
Nice to Have
- Experience with Power BI or data visualization tools
- Exposure to Python for data analysis or automation
- Knowledge of investment performance metrics (TWR, attribution, benchmarks, risk metrics)
- Familiarity with cloud data platforms (Snowflake, Databricks, Azure, etc.)
- Interest in applying AI tools to improve delivery and analysis