Job Description
About this role
The VP AI Data Engineering Lead operates at the intersection of strategic influence team leadership and delivery excellence — playing a defining role in how AI-powered data and knowledge products are conceived designed and executed across the organization. He/She/They lead a multi-team organization of AI agent engineers and data scientists — setting technical and delivery direction building the team’s capability and holding accountability for the production systems powering the commercialized knowledge products. He/She/They function as the most senior bridge between Product Management leadership business functional stakeholders and AI engineering — bringing the technical depth and strategic breadth to influence product vision while holding firm accountability for engineering delivery outcomes across multiple squads. He/She/They sets the organizational standard for how product intent gets translated into technical reality establishing engineering frameworks authoring principles and driving the culture of quality accuracy and ownership across the broader Product Lead community. He/She/They are deeply experienced in the nuances of AI engineering from agent workflow design and Vision AI evaluation to production validation output-quality governance and customer adoption of knowledge products. Beyond the delivery mandate they are a builder of people and of technical leaders of tomorrow — developing high-performing teams and creating the conditions for others to do their best work. This is a role for a leader who thinks in systems acts with purpose and measures their success not just by what ships but by the commercial credibility and lasting organizational capability left behind.
Roles & ResponsibilitiesLead a team of AI agent engineers and data scientists — setting technical direction managing delivery driving performance developing individual capability across the team and building the talent bench across the function.
Own end-to-end solution design & delivery for complex AI features across multiple AI engineering squads building multi-agent GenAI and Vision AI workflows — ensuring consistency quality and strategic alignment at scale.
Drive backlog prioritization at the product-area level balancing customer value technical feasibility AI accuracy expectations model/vision constraints and team capacity
Run sprint planning team stand-ups and retrospectives; create the operating rhythm and working environment for engineers and data scientists to do their best work
Proactively engage and act as the bridge between the Product Management business stakeholders and AI engineering — influencing product vision & feature prioritization (definition scope and sequencing) from deep understanding of technical possibility and commercial reality influence feature.
Partner with Product Managers to shape feature roadmaps bringing technical and AI-specific insight that meaningfully influences what gets built when and at what quality bar.
Drive structured refinement sessions with the team ensuring stories are technically complete and aligned on solution approach before development begins.
Define and enforce quality standards for user story delivery — including extraction accuracy edge-case coverage agent behaviour expectations and non-functional requirements
Lead post-implementation validation efforts — coordinating UAT output-quality reviews production monitoring and closing the loop with stakeholders on commercial outcomes
Support product activation and customer adoption — translating delivery milestones into customer-facing readiness for data/knowledge product rollout
Define and champion organization-wide standards for user story authoring solution design backlog management and delivery quality for AI-powered knowledge products
Lead complex cross-functional AI initiatives from discovery through delivery — managing dependencies risks and stakeholder expectations across teams.
Coach and mentor team members conduct performance conversations and contribute to hiring decisions for the AI engineering and data science team.
Establish frameworks for post-implementation validation output-quality governance production monitoring and customer success during product activation and adoption at scale
Identify systemic delivery bottlenecks and drive process improvements that raise velocity and quality across the product organization
Build and mentor a high-performing team of AI agent engineers and data scientists — driving hiring onboarding performance management and career development at scale
Shape organizational design team structure and operating model for the AI data engineering function as the business scales
Technical Skills
8+ years of experience in AI Engineering Delivery Lead or AI Program Lead or Engineering Manager roles with at-least 2-3 years operating as AI Engineering Principal within a SaaS AI or data-product organization.
Deep expertise and Proven experience in AI solution design and technical scoping for AI-driven features — ideally including GenAI LLM-based capabilities Vision AI and multi-agent workflows.
Strong command of scaled Agile delivery cross-team dependency management and delivery governance frameworks backlog management sprint planning and Agile delivery tooling at scale (Jira Confluence Miro or equivalent)
Ability to engage meaningfully with AI engineers and data scientists on architecture decisions agent orchestration prompt design Vision AI trade-offs and model behaviour
Fluency in the AI product development lifecycle — extraction accuracy model evaluation prompt engineering considerations non-deterministic behaviour and production monitoring
Solid understanding of evaluation approaches for AI outputs — accuracy metrics ground-truth validation human-in-the-loop review and output-quality benchmarking
Familiarity with unstructured data extraction challenges across document image and multimodal inputs.
Advanced grasp of product analytics AI output-quality measurement and outcome-based evaluation frameworks for data/knowledge products
Deep understanding of responsible AI principles (accuracy governance data provenance and user trust as they relate to commercialized AI outputs) and their practical implications for feature design accuracy governance customer trust and regulatory considerations
Non-Technical & Interpersonal Skills
Executive-level communication skills — able to operate fluidly between engineering stand-ups and boardroom strategy conversations.
Excellent communication and stakeholder management skills — able to drive alignment across product commercial engineering and domain-expert audiences
Strong strategic thinking — able to connect present engineering decisions & strategy to long-term commercial positioning of AI knowledge/data products.
Strong analytical and structured problem-solving approach — breaks down complex extraction and knowledge-structuring problems into clear actionable paths forward
Emotional intelligence and people-first leadership style — able to inspire coach and hold a diverse team of engineers and scientists to a high bar; earns trust quickly across diverse stakeholder groups including customers commercial and technical teams.
Business acumen — understands the fundamentals of financials services industry and/or software/data product business and how product output quality & timeliness directly affects customer trust and revenue.
Leadership & Ownership
Proven track record of building leading and developing teams of engineers data scientists or technical specialists in an AI or data product context at scale.
Demonstrable experience influencing product vision and feature strategy at the leadership level — shaping what gets built not just how.
Experience establishing organization-wide standards frameworks and practices that persist beyond individual initiatives.
Proven ability to set technical direction manage delivery and drive accountability across a cross-functional team.
Track record of mentoring individuals running performance conversations and contributing to hiring and team-building.
Courage to push back on feature scope or timelines when extraction accuracy reliability or commercial viability — or team sustainability — are at risk
Proven track record of owning complex AI delivery outcomes end-to-end including post-launch validation and adoption.
Hands-on experience with hiring team design performance management and succession planning for technical AI teams.
Ability to hold the bar on quality and delivery while advocating for the team — protecting focus escalating constraints and making hard prioritization calls
A builder-of-builders mindset — measures success by the capability and culture left behind not just the features shipped.
Direct leadership of a high performing team of AI agent engineers and data scientists working on commercially impactful AI systems & knowledge product portfolio — with meaningful autonomy and ownership.
Direct influence over organizational direction — working closely with executive leadership on product vision hiring and operating model decisions.
A meaningful seat at the table in shaping product & engineering strategy feature prioritization and delivery practices for commercialized AI capabilities
A platform to build and lead a world-class organization of AI engineers data scientists and Product Leads — creating lasting capability in commercialized AI.
Direct exposure to emerging AI capabilities — multi-agent orchestration GenAI Vision AI — applied to real commercial problems at scale.
A clear path toward head-of-Engineering function leadership roles with investment in mentorship external learning and executive development.
Our benefits
To help you stay energized engaged and inspired we offer a wide range of benefits including a strong retirement plan tuition reimbursement comprehensive healthcare support for working parents and Flexible Time Off (FTO) so you can relax recharge and be there for the people you care about.
Our hybrid work model
BlackRock’s hybrid work model is designed to enable a culture of collaboration and apprenticeship that enriches the experience of our employees while supporting flexibility for all. Employees are currently required to work at least 4 days in the office per week with the flexibility to work from home 1 day a week. Some business groups may require more time in the office due to their roles and responsibilities. We remain focused on increasing the impactful moments that arise when we work together in person – aligned with our commitment to performance and innovation. As a new joiner you can count on this hybrid model to accelerate your learning and onboarding experience here at BlackRock.
Guidance on AI use for candidates
At BlackRock AI has long been part of how we work – enhancing decision-making improving operations and helping us deliver better outcomes for clients. We encourage candidates to use AI thoughtfully to learn prepare and work more effectively; but during our interview process we want to focus on getting to know you through your own experiences thinking and judgment. To support you we’ve provided guidance on when and how to use AI during our hiring process so you can approach each step with confidence and showcase your best self.
About BlackRock
At BlackRock we are all connected by one mission: to help more and more people experience financial well-being. Our clients and the people they serve are saving for retirement paying for their children’s educations buying homes and starting businesses. Their investments also help to strengthen the global economy: support businesses small and large; finance infrastructure projects that connect and power cities; and facilitate innovations that drive progress.
This mission would not be possible without our smartest investment – the one we make in our employees. It’s why we’re dedicated to creating an environment where our colleagues feel welcomed valued and supported with networks benefits and development opportunities to help them thrive.
To learn more about BlackRock please visit Careers.BlackRock.com. We also encourage you to get to know us on LinkedIn Instagram YouTube X and TikTok.
BlackRock is proud to be an Equal Opportunity Employer. We evaluate qualified applicants without regard to age disability family status gender identity race religion sex sexual orientation and other protected attributes at law.
Skills Required
- 8+ years in AI engineering delivery AI program lead or engineering management roles
- 2-3+ years operating as an AI Engineering Principal within SaaS AI or data-product orgs
- Proven experience with GenAI LLM-based capabilities Vision AI and multi-agent workflows
- Deep expertise in AI solution design technical scoping agent orchestration and prompt design
- Fluency in AI product development lifecycle model evaluation production monitoring and output-quality governance
- Experience with evaluation approaches: accuracy metrics ground-truth validation human-in-the-loop review benchmarking
- Familiarity with unstructured data extraction across document image and multimodal inputs
- Strong command of scaled Agile delivery backlog management sprint planning and tools (Jira Confluence Miro)
- Executive-level communication and stakeholder management across product commercial and technical audiences
- Proven track record building leading mentoring and hiring AI engineers and data scientists at scale
- Experience defining organization-wide standards frameworks and delivery practices for AI products
- Business acumen in financial services and/or software/data product businesses
- Understanding of responsible AI principles: accuracy governance data provenance and user trust
BlackRock Compensation & Benefits Highlights
- Retirement Support—The package includes a 401(k)/Retirement Savings Plan with an employer match plus an additional company retirement contribution. Together with an employee stock purchase option this positions retirement support as a notable strength for U.S. roles.
- Parental & Family Support—Paid parental leave and family‑building resources (adoption fertility nursing support) are emphasized alongside child special‑needs and elder‑care resources. This breadth signals meaningful support across diverse family situations.
- Leave & Time Off Breadth—Flexible Time Off (FTO) for eligible roles is promoted with additional sick and bereavement leave. Time away is framed as enabling rest and recharge when needed.
BlackRock Insights
What We Do
As the world’s largest asset manager BlackRock partners with investors around the globe to help them (and those on whose behalf they invest) plan for life’s most important goals – like retirement home ownership and their children’s education. Our clients range from governments foundations and other large institutions to those investing on behalf of individuals including firefighters nurses teachers and factory workers. BlackRock was founded with the idea of creating a better asset management firm — one that was purpose-driven focused on clients and risk management and propelled by data and technology. Our breakthrough Aladdin® platform is BlackRock’s technological backbone helping investors see and manage their whole portfolios in one place – from constructing investments to monitoring risk and executing trades. Used by hundreds of external institutions around the world Aladdin combines powerful analytics and a common language to help investment teams make faster more informed decisions across public and private markets. It’s a key part of our business and one of the reasons we’re trusted to manage more assets than any other investment manager today. At BlackRock we challenge conventions and raise the bar for what’s possible. We harness technology to unlock new solutions simplify complexity and deliver investment strategies that meet people where they are. Whether it’s retirement planning wealth building or navigating market shifts we’re here to help clients invest more easily more affordably and with more choice as we chart a path toward financial well-being together. Learn more: Careers.BlackRock.com
Why Work With Us
Without our people technology is irrelevant. When we combine the power of people with the power of technology we amplify our ability to create better outcomes for our employees clients shareholders and society alike.
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Employees engage in a combination of remote and on-site work.
BlackRock has 25000 employees across more than 100 offices in over 40 countries around the world.
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Date Posted
07/03/2026
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