Head of Data Management & Operations, Sustainalytics

Posted An Hour Ago
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Navi Mumbai, Thane, Maharashtra, IND
Hybrid
Expert/Leader
Artificial Intelligence • Big Data • Enterprise Web • Fintech • Software • Financial Services
Empowering Investor Success
The Role
Lead Sustainalytics' Mumbai data operations to deliver accurate, timely ESG and Climate data at scale. Drive consolidation to Mumbai, deploy AI-enabled automation, re-engineer workflows, enforce data governance, and improve quality, throughput, and cost-efficiency across a 300–400 FTE production environment while partnering with global stakeholders.
Summary Generated by Built In
Role: Head of Data Management & Operations, Navi Mumbai (Vashi).
Company: Morningstar is a leading provider of independent investment research in North America, Europe, Australia, and Asia. We offer a wide variety of products and solutions that serve market participants of all kinds, including individual and institutional investors in public and private capital markets, financial advisors, asset managers, retirement plan providers and sponsors, and issuers of securities.
Morningstar India has been a Great Place to Work-certified company for the past eight consecutive years.
Team: Sustainalytics is Morningstar's ESG and Climate intelligence business and a core provider of high-precision sustainability data to global capital markets. The team produces structured and unstructured ESG and Climate datasets at scale, delivers risk models and ratings, and supports products used by leading institutional investors worldwide. The business is entering the next phase of operating model and technology transformation. India is central to that strategy, with Mumbai positioned to become the primary global hub for large-scale data production, automation-led delivery, governance and operational excellence.
This role will have direct influence on the scalability, economics, resilience and long-term competitiveness of Sustainalytics' future-state data platform.
Role Purpose: Lead a large-scale ESG and Climate data operations organization in Mumbai responsible for delivering accurate, reliable and timely data that powers Sustainalytics' research, analytics, client products and delivery commitments.
This role is being created to lead the next phase of global transformation by:
  • Consolidating international production capabilities into Mumbai
  • Deploying AI-native automation at scale
  • Re-engineering workflows from first principles
  • Lowering unit cost of production materially
  • Improving quality, speed and resilience
  • Building a world-class operations capability for the future

In addition to operational transformation, this role will serve as a key leader for data quality excellence across Sustainalytics. The role will define and strengthen enterprise-wide quality frameworks, controls, governance standards and client-centric quality measurement capabilities to ensure Sustainalytics continues to operate at the standards expected of a global financial data provider.
The datasets produced by this function are consumed directly by asset managers, asset owners, banks and insurers for investment decisions, regulatory filings and client reporting. As a result, the operation must meet the same standards of precision, timeliness and control expected of any mission-critical financial data provider.
Key responsibilities:
Global Data Production Leadership
  • Lead end-to-end sourcing, ingestion, extraction, normalization, QA, enrichment and classification workflows.
  • Manage periodic refresh cycles and high-volume production runs.
  • Ensure outputs consistently meet client, research and product requirements.
  • Build a predictable, industrial-scale production engine across a 300-400 FTE environment.

Global Consolidation into Mumbai
  • Lead consolidation of global data operations into Mumbai, including migration of activities currently performed in other locations, including Romania.
  • Own transition planning, workforce movement, operating model redesign and stakeholder communication.
  • Ensure continuity of delivery, quality and client commitments throughout migration.
  • Build Mumbai into the flagship global delivery hub for this function.

AI Automation & Productivity Transformation
  • Own design and deployment of AI-driven, rules-based and agentic automation across production workflows.
  • Reduce manual intervention significantly within 12-18 months.
  • Identify use cases for LLMs, workflow agents and intelligent tooling that augment or replace manual work.
  • Deliver measurable productivity gains and sustained reduction in total production cost.

Process Re-engineering & Operational Excellence
  • Apply engineering-led thinking to deconstruct workflows end-to-end.
  • Identify structural inefficiencies and redesign processes from first principles rather than optimize legacy constraints.
  • Improve throughput, cycle times, scalability and control environment.
  • Build a culture of continuous improvement and high accountability.

Financial Data Management & Governance
  • Oversee security master data, entity hierarchies, product / instrument classification systems and reference data ecosystems.
  • Ensure consistency, lineage, governance and auditability across the data value chain.
  • Maintain standards expected by institutional investors and regulated financial organizations.

Executive Stakeholder Partnership
  • Partner closely with Product, Technology, Research, Client Management and global leadership teams.
  • Operate effectively in a complex, evolving product environment with senior stakeholders across regions.
  • Provide clear leadership communication, structured updates and decisive execution.

Quality Strategy, Governance & Client Experience
  • Lead Sustainalytics-wide quality initiatives and establish methods, governance processes and measurement frameworks that provide broad visibility into data quality performance and client experience outcomes.
  • Partner closely with Product, Research, Data, Technology and Client Service leadership teams to define and execute enterprise quality strategies aligned to client expectations and business priorities.
  • Define the long-term quality roadmap, including quality controls, monitoring frameworks, scorecards, benchmarking mechanisms and audit methodologies across the data lifecycle.
  • Build ongoing client quality scorecards and operational quality reporting mechanisms that provide actionable insight to leadership teams.
  • Monitor quality governance activities, operational controls, root-cause analysis outcomes, audit findings and remediation programs to ensure sustainable quality improvement.
  • In partnership with data and operations leaders, identify systemic quality gaps and drive structured execution plans anchored in best practices and measurable outcomes.
  • Collaborate with Morningstar quality leaders globally to share best practices, standardize quality principles and participate in enterprise-wide quality transformation initiatives.

Success measures
  • High-fidelity ESG & Climate data delivered consistently at scale
  • Successful migration of global operations into Mumbai with no material disruption
  • Significant reduction in unit cost of production
  • Meaningful reduction in manual workflows within 12-18 months
  • Improved cycle times and throughput productivity
  • Higher automation coverage across production processes
  • Strong SLA adherence and lower exception rates
  • Reduced client-impacting incidents and faster resolution times
  • Strong leadership bench and sustainable operating model in Mumbai
  • Improvement in enterprise data quality and client quality satisfaction metrics
  • Reduction in repeat quality incidents and systemic data exceptions
  • Increased audit readiness, governance maturity and quality control coverage
  • Adoption of enterprise quality scorecards and benchmarking frameworks
  • Strong root-cause remediation discipline and sustainable quality improvement outcomes

Candidate profile
  • 20+ years leading large-scale data operations in financial services, analytics, information services or adjacent industries.
  • Proven success leading 300+ FTE operations with strong governance and performance discipline.
  • Demonstrated experience leading transformation, consolidation or operating model redesign programs.
  • Deep familiarity with financial data management, including security master, entity structures, classifications and reference data infrastructure.
  • Strong understanding of how investment managers, banks, insurers and institutional clients consume critical data.
  • Hands-on appreciation of modern data engineering environments, APIs, workflow orchestration and AI-enabled automation.
  • Strong commercial orientation with ability to manage unit economics and productivity outcomes.
  • Executive presence, gravitas, structured thinking and excellent communication skills.
  • Proven experience designing and leading enterprise-scale quality governance, operational control and data quality improvement programs.
  • Strong understanding of client-centric quality frameworks, operational audit practices, root-cause analysis and continuous improvement methodologies.
  • Experience building measurable quality scorecards, benchmarking frameworks and governance mechanisms within complex global data environments.

Leadership Attributes
  • Thinks like a builder, not a caretaker
  • Balances transformation ambition with delivery discipline
  • Operates calmly in fast-moving, high-accountability environments
  • Raises standards while bringing teams along
  • Makes complexity manageable
  • Creates confidence with global executives and teams alike
  • Raises the quality bar systematically, not episodically
  • Embeds a culture of accountability, auditability and continuous improvement
  • Thinks from the client lens while driving operational rigor

Morningstar is an equal opportunity employer.
Morningstar's hybrid work environment gives you the opportunity to collaborate in-person each week as we've found that we're at our best when we're purposely together on a regular basis. In most of our locations, our hybrid work model is four days in-office each week. A range of other benefits are also available to enhance flexibility as needs change. No matter where you are, you'll have tools and resources to engage meaningfully with your global colleagues.
I10_MstarIndiaPvtLtd Morningstar India Private Ltd. (Delhi) Legal Entity

Skills Required

  • 20+ years leading large-scale data operations in financial services, analytics, information services or adjacent industries
  • Proven success leading 300+ FTE operations with strong governance and performance discipline
  • Demonstrated experience leading transformation, consolidation or operating model redesign programs
  • Deep familiarity with financial data management including security master, entity structures, classifications and reference data infrastructure
  • Hands-on appreciation of modern data engineering environments, APIs, workflow orchestration and AI-enabled automation
  • Proven experience designing and leading enterprise-scale quality governance, operational control and data quality improvement programs
  • Experience building measurable quality scorecards, benchmarking frameworks and governance mechanisms
  • Strong commercial orientation with ability to manage unit economics and productivity outcomes
  • Executive presence, gravitas, structured thinking and excellent communication skills

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The Company
HQ: Chicago, IL
11,500 Employees
Year Founded: 1984

What We Do

At Morningstar, we believe in building great products in-house in a highly collaborative, agile environment where we focus on technical excellence, the user experience, and continuous improvement. Our technologists represent a range of skills and experience levels, but they all view their work as a craft and push technology’s boundaries.

Why Work With Us

Imagining big things is in our blood -- it's transformed us from a company with just a few employees in 1984 to a leading independent investment research company with a worldwide presence today. As of April 2020, we acquired Sustainalytics to drive long-term meaningful outcomes for investors in the ESG space. Join us on this exciting journey!

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