What are the responsibilities and job description for the Product Manager position at NLB Services?
Must Have Skills:
· Deep asset‑management domain experience, specifically supporting investment performance, attribution, benchmarks, and partnering closely with portfolio, performance, or risk teams
· Hands‑on product experience on investment platforms, with clear ownership of requirements, backlog, and delivery while enhancing and evolving existing systems
· Comfortable working directly with data, including hands‑on SQL and some Python, plus a practical mindset on using AI to improve analysis, requirements, and delivery artifacts
Requirements:
Business & Domain Analysis
- Lead requirements elicitation sessions with business and operations across front to back-office teams in asset management with special focus on investment performance calculations, attribution, portfolio and benchmark data
- Translate complex asset management business processes into user stories, acceptance criteria, and functional specifications
- Map current-state and future-state workflows across front, middle, and back-office operations, identifying gaps and optimization opportunities
Agile Delivery & Part-Time PM (20–40%)
- Facilitate agile ceremonies including sprint planning, stand-ups, retrospectives, and backlog refinement
- Own and groom the product backlog in partnership with the Product Owner — stories well-defined, estimated, and prioritized
- Track sprint velocity, manage dependencies, and communicate delivery status to stakeholders and leadership
- Coordinate cross-functional delivery across data engineering, analytics, and QA workstreams
Technical & Data Collaboration
- Write and maintain SQL queries for data validation, reconciliation, and ad hoc analysis supporting performance and benchmark data pipelines
- Build BI visualizations, preferably using Power BI, to drive decision-making and executive readouts
- Support adoption of AI-augmented practices across the SDLC — from AI-assisted requirements drafting and test case generation to automated documentation and delivery acceleration
Required Qualifications
- 5 years as a Business Systems Analyst or equivalent role within asset management or financial services
- Strong understanding of front, middle, and back office operations — trade lifecycle, portfolio accounting, investment performance, reconciliation, client reporting
- Working knowledge of financial instruments and products (equities, fixed income, derivatives, alternatives, ETFs, mutual funds)
- Demonstrated ability to independently drive requirements gathering, stakeholder workshops, and documentation with minimal supervision
- Experience facilitating agile ceremonies and performing planning/coordination in a Scrum or Kanban environment
- Proficiency in SQL for querying, data validation, and analytical support
- Awareness of how AI and automation tools (e.g., GitHub Copilot, LLM-based assistants, AI test generation) are transforming the SDLC, with willingness to champion adoption
Preferred Qualifications
- CFA charter holder or progress toward CFA designation (Level I, II, or III candidate); CIPM, CAIA, or equivalent certifications also valued
- Understanding of investment performance measurement (TWR, MWR, attribution analysis, benchmark construction) and risk measures (VaR, tracking error, Sharpe ratio)
- Experience with Power BI for dashboard development or data visualization
- Working knowledge of Python for scripting, data manipulation, or automation
- Familiarity with cloud data platforms such as Microsoft Fabric, Azure Synapse, Snowflake, or Databricks
- Experience with JIRA, Azure DevOps, or equivalent agile planning tools
What We Value
- Self-starter mindset - you take ownership, anticipate needs, and drive work forward without being asked
- Intellectual curiosity about markets, instruments, and the investment management value chain
- Strong communication skills bridging technical teams and business stakeholders
- Forward-looking perspective on AI in the SDLC - not just awareness, but enthusiasm for experimenting with and integrating AI tools into planning, requirements, testing, and delivery
- Collaborative spirit with a bias toward clarity, transparency, and continuous improvement