Product Manager - Data Ingestion

Posted Yesterday
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Lisbon, PRT
Hybrid
44K-66K Annually
Mid level
Fintech • Information Technology • Security
The Role
Own the product for a scalable data ingestion platform: define roadmap, write precise requirements, partner with engineering and data science, deploy LLM/ML capabilities, maintain pipeline reliability and data quality, track metrics, and balance strategic and derived stakeholder requirements in a regulated environment.
Summary Generated by Built In

The Role

We are hiring a Product Manager to work within our Data tribe, specifically owning our data ingestion platform - the engine that identifies, extracts and processes the raw intelligence that powers everything ComplyAdvantage does. You will own the Product requirements for our Customer Risk squad, delivering holistic AML risk scores, and the underlying customer capabilities that support this.

The Data tribe's work is strategically driven rather than customer-driven. The roadmap is shaped by the company's AI roadmap, set at executive level and mapped to a product execution strategy by the VP Product and Product Director. For this squad, that means building a new scalable platform with reusable tools for data identification and extraction, deploying LLMs to improve data processing at scale, and maintaining the pipeline robustness that over 1,000 clients depend on every day. Requirements from the Risk Applications tribe also cascade into Data as derived requirements — particularly around data quality and the ability for clients to explain their decision-making to financial regulators.

The PM operates at the intersection of two forces: the strategic execution plan set by the VP Product and Product Director, and the derived requirements flowing from the applications that depend on Data's capabilities.

You will work within a dedicated squad alongside an engineering manager and a team that typically includes data engineers, ML engineers and back-end engineers. The Product Manager and Engineering Manager work as peers: you own the commercial and product context, the EM owns the technical context. Neither reports to the other. You operate within a framework set by the Product Director and are expected to use judgement in balancing competing priorities, not to set strategic direction independently.

You will operate within a structured product operating model with clear decision rights. Plans are framed as returns on engineering investment, not feature lists. We work in six-week blocks, with quality gates at each stage of the document flow from Plan of Record to PRD to product requirements to implementation. If you have worked in organisations where product management is disciplined and structured, this will feel familiar.

What You Will Do

Own your product area within the Data tribe. You are responsible for the roadmap, requirements, research, competitive intelligence and customer insight for the data ingestion platform. You work within strategic direction set by the Product Director but are expected to exercise genuine judgement on priorities, trade-offs and requirements quality. This is substantive work, not order-taking.

Build and scale the data ingestion machine. Define and drive the vision for a scalable platform with reusable tools for data identification and extraction that can serve current and future use cases. Identify value slices that deliver client outcomes while advancing the technical vision — ensuring the platform evolves without accumulating the kind of debt that slows teams down at scale.

Balance competing requirements. Your squad serves the strategic roadmap set by the Product Director and the CPTO, but also receives derived requirements from Risk Apps squads — particularly around data quality, pipeline reliability and regulatory explainability. Balancing these competing inputs, understanding which to prioritise and when, and escalating conflicts that need PD guidance, is a core part of the role.

Partner with engineering. You and your EM are jointly accountable for the quality of product requirements. You sign off on commercial accuracy — does this solve the right problem, does it meet client needs, can it be explained to a regulator; the EM signs off on technical completeness. You need enough technical understanding of data pipelines, ETL/ELT processes, LLM deployment and ML infrastructure to write requirements that engineers can build from and to have productive conversations about feasibility and trade-offs.

Work with Data Science. Data Science works across all tribes and provides research and experimentation that informs product direction. You will work closely with data scientists to understand what is feasible, what research is in progress, and how to translate experimental results — including model training, calibration and deployment decisions — into production capabilities. You help data scientists understand the client impact of their choices. The operating model separates Research (Data Science) from Development (ML Engineers in squads): your squad builds what Data Science has validated.

Set and track meaningful metrics. Define the key metrics that track progress toward the product vision — across pipeline performance, data quality, coverage and client impact. Use these to inform priorities and communicate progress to stakeholders.

Provide research and insight. Synthesise customer feedback, competitive intelligence, usage data and market research into inputs the Product Director can use for planning. Maintain the knowledge base for your product area so that repetitive questions are answered without manual effort.

Use AI in your own work. We expect Product Managers to use AI-assisted workflows for research synthesis, customer feedback analysis, data interpretation and first-draft specifications. This is how we work, not something we aspire to.

What We Are Looking For

Essential:

  • 3+ years in product management, with at least 2 years working on data products, data pipelines, ML systems or data infrastructure
  • Demonstrated success delivering products where data is the product or a significant component — you understand what it means to be responsible for data quality at scale
  • Fluency with data pipelines, ETL/ELT processes, ML model deployment and LLM-based capabilities — sufficient to write requirements that engineering can build from and to assess feasibility and trade-offs
  • The ability to translate client needs into precise technical requirements, and to help engineers and data scientists make rapid decisions with confidence
  • Experience working as a peer with engineering managers and data engineers, with the ability to have productive technical conversations without dictating implementation
  • Comfortable working within a structured product organisation where strategic direction is set by a Product Director, and delivering strong outcomes within that framework
  • Analytical rigour: uses data to inform decisions and can synthesise research from multiple sources
  • Excellent written communication skills, with an obsession with precision and detail — produces clear, accurate requirements and documentation
  • Presentation skills: the ability to communicate your product area, its challenges and capabilities to both technical and non-technical audiences
  • Familiarity with common product management tools such as Jira, Linear, Confluence, Notion, Miro or equivalent
  • Demonstrable AI adoption in your own working practice: not "interested in AI" but already using it to work differently
  • Experience balancing competing priorities from multiple stakeholders with different timescales and objectives
  • Comfort operating in a highly regulated environment across multiple jurisdictions, with an appreciation for the challenges of data quality and regulatory explainability at scale

Preferred:

  • Experience with compliance, financial services or RegTech data products
  • Familiarity with entity resolution, graph databases, NLP or knowledge graph technologies
  • Experience with real-time and batch data processing systems
  • Understanding of data governance, privacy requirements and regulatory constraints on data handling
  • Experience in AML/CFT legislation and compliance

What Success Looks Like

At 60 days: You understand your squad's domain, the Data tribe's strategic direction, and the derived requirements flowing from Risk Apps. You have a clear view of the current state of the data ingestion platform — its capabilities, its gaps and its roadmap. You have built relationships with your EM, the Product Director, Data Science and key stakeholders in the application tribes, and can articulate the priorities in your area and why they matter.

At 4 months: You are driving requirements with confidence. Your PRDs are clear, your product requirements pass quality gates, and your squad trusts your product judgement. You are managing the balance between strategic and derived requirements effectively, escalating conflicts to the PD when needed. You have established clear metrics for pipeline performance and data quality, and the Product Director has confidence in your analytical rigour and your ability to work independently within the framework.

At 8 months: The data ingestion platform is measurably more capable, more reliable and better understood across the business. You are a trusted partner to Data Science, engineering and the application product teams. You are contributing to the broader Data tribe's planning and operating at a level that demonstrates readiness for increased scope.

The base salary range for this role is 44,000-66,000 EUR + equity and benefits. The actual pay may vary based on factors such as location, experience, and skills.

About us:

Our mission is to empower every business to eliminate financial crime. 

By harnessing AI, a unified platform, and an extensive partner ecosystem, we help customers turn compliance into a catalyst for growth, operational resilience, and enduring regulatory trust.

More than 3,000 enterprises across 75 countries rely on our end-to-end platform and the world’s most comprehensive financial crime risk intelligence. With full-stack agentic automation, we help organizations automate up to 95% of KYC, AML, and sanctions reviews, cut onboarding times by 50%, reduce false positives by 70%, and handle 7x more work with the same staff.

ComplyAdvantage is headquartered in London and has global hubs in New York, Lisbon, Singapore, and Cluj-Napoca. It is backed by Balderton Capital, Index Ventures, Ontario Teachers’ Pension Plan, Goldman Sachs, and Andreessen Horowitz. Learn more about compliance re-engineered for the age of AI at complyadvantage.com.

Skills Required

  • 3+ years in product management, with at least 2 years working on data products, data pipelines, ML systems or data infrastructure
  • Demonstrated success delivering products where data is the product or a significant component, responsible for data quality at scale
  • Fluency with data pipelines, ETL/ELT processes, ML model deployment and LLM-based capabilities
  • Ability to translate client needs into precise technical requirements
  • Experience working as a peer with engineering managers and data engineers, able to have productive technical conversations
  • Comfortable working within a structured product organisation where strategic direction is set by a Product Director
  • Analytical rigour: uses data to inform decisions and synthesise research
  • Excellent written communication skills with attention to precision and detail
  • Presentation skills for technical and non-technical audiences
  • Familiarity with product management tools such as Jira, Linear, Confluence, Notion, Miro or equivalent
  • Demonstrable AI adoption in personal working practice (using AI-assisted workflows)
  • Experience balancing competing priorities from multiple stakeholders
  • Comfort operating in a highly regulated environment across multiple jurisdictions with appreciation for data quality and regulatory explainability
  • Experience with compliance, financial services or RegTech data products
  • Familiarity with entity resolution, graph databases, NLP or knowledge graph technologies
  • Experience with real-time and batch data processing systems
  • Understanding of data governance, privacy requirements and regulatory constraints on data handling
  • Experience in AML/CFT legislation and compliance
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The Company
HQ: London
483 Employees
Year Founded: 2014

What We Do

At ComplyAdvantage, we believe that compliance doesn’t have to be painful. Businesses need real-time financial crime insight to put them in control. We enable you to understand the real risk of who you're doing business with, through the world's only global, real-time risk database of people and companies. We actively identify tens of thousands of risk events from millions of structured and unstructured data points - every single day. Our suite of configurable cloud services integrates seamlessly to help automate and reduce the frustration of complying with Sanctions, AML and CTF regulations.

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