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Data Domain Architect Lead

Bengaluru, Karnataka, India
Machine Learning Engineer Data Quality Engineer MLOps Engineer Prompt Engineer Data Architect
Actively hiring

Data Domain Architect Lead

JPMorganChase
Bengaluru, Karnataka, India
Machine Learning Engineer Data Quality Engineer MLOps Engineer Prompt Engineer Data Architect
JPMorganChase
Actively hiring

hackajob is partnering with JPMorganChase to fill this position. Create a profile to be automatically considered for this role—and others that match your experience.

 
JOB DESCRIPTION

Join us for an exciting opportunity to leverage your advanced data annotation skills in the financial industry and contribute to cutting-edge machine learning models.

As a Data Domain Architect Lead within the Consumer & Community Banking team, you will lead data labeling initiatives that produce reliable, controlled, and actionable datasets for model training and evaluation. You will set product direction, manage delivery, and partner with technology, operations, and data science teams to improve data quality, scalability, and stakeholder outcomes.

Job Responsibilities

  • Translate business requirements and ML objectives into implementable requirements, schema, guidelines and quality metrics while defining success measures and key result for each labelling effort and actively manage scope, risks, dependencies, and stakeholder  communications

  • Own the annotation operating model, including workflow design, task routing, queue management, and delivery governance

  • Scale labeling capacity across multiple lines of business while maintaining consistency, quality, throughput and clear documentation

  • Own data cleaning and preparation processes to resolve noise, duplicates, inconsistencies, and labeling defects

  • Establish metrics and annotation reliability standards and a measurable quality framework, including calibration routines, gold datasets, reviews, and feedback loops

  • Leverage prompt engineering to improve task instructions, enable pre-labeling, and support synthetic data generation for LLM-related datasets

  • Develop LLM-as-judge approaches and agentic workflows to automate quality evaluation at scale, flag low-confidence items, and surface disagreements with human oversight

  • Drive annotation innovation by implementing automation across the labeling lifecycle, including ingestion, validation checks, dataset packaging, and audit-ready lineage artifacts

  • Lead benchmarking and executive-ready reporting on delivery performance, quality outcomes, and continuous improvement

  • Collaborate proactively with machine learning engineers and scientists to define evaluation requirements, labeling expectations, and target data volumes as models and usecases evolve in the new agentic/LLM initiatives to keep data deliverables unblocked & on track. 

  • Keep the team growing and stay current on AI data trends, publications, and tools and nurture team's AI & tech capability through training, coaching, and growth opportunities 

Required Qualifications, Capabilities, and Skills

  • Master's or PhD degree in Computational Linguistics, Linguistics, Computer Science, Data Science or a related field.

  • 5+ years of experience delivering data products or machine learning-enabled products across the full product lifecycle

  • Hands-on experience in developing annotation metrics, annotation and performing annotation reviews 

  • Experience running text data labeling programs end-to-end, including guideline and taxonomy design and annotation platform operations

  • Hands-on experience in Python for automation, data analysis, cleaning and validating structured and unstructured datasets; plus experience using Git for version control

  • Hands-on prompt engineering experience for LLM labeling workflows (for example, pre-labeling, synthetic data generation, and instruction clarity)

  • Working knowledge of LLM-as-judge methods, including rubric design and integrating automated signals into human-in-the-loop review

  • Hands-on experience in designing labeling quality measurement (for example, gold datasets, calibration, sampling, and inter-annotator agreement targets)

  • Hands-on experience in benchmarking data quality and evaluation outcomes and translating results into product and process improvements

  • Strong stakeholder management, written and verbal communication, and disciplined execution under deadlines 

  • Experience leading cross-functional delivery across technology, operations, and vendor partners

Preferred Qualifications, Capabilities, and Skills

  • Experience managing globally distributed annotation teams and third-party vendors
  • Familiarity with metadata management, data cataloging, and dataset lineage practices
  • Experience applying machine learning to data quality monitoring and anomaly detection
  • Track record influencing senior stakeholders and aligning priorities through measurable OKRs
  • Experience working with privacy, data governance, or model risk controls related to training data
ABOUT US

JPMorganChase, one of the oldest financial institutions, offers innovative financial solutions to millions of consumers, small businesses and many of the world’s most prominent corporate, institutional and government clients under the J.P. Morgan and Chase brands. Our history spans over 200 years and today we are a leader in investment banking, consumer and small business banking, commercial banking, financial transaction processing and asset management.
We recognize that our people are our strength and the diverse talents they bring to our global workforce are directly linked to our success. We are an equal opportunity employer and place a high value on diversity and inclusion at our company. We do not discriminate on the basis of any protected attribute, including race, religion, color, national origin, gender, sexual orientation, gender identity, gender expression, age, marital or veteran status, pregnancy or disability, or any other basis protected under applicable law. We also make reasonable accommodations for applicants’ and employees’ religious practices and beliefs, as well as mental health or physical disability needs. Visit our FAQs for more information about requesting an accommodation.


ABOUT THE TEAM

Our Consumer & Community Banking division serves our Chase customers through a range of financial services, including personal banking, credit cards, mortgages, auto financing, investment advice, small business loans and payment processing. We’re proud to lead the U.S. in credit card sales and deposit growth and have the most-used digital solutions – all while ranking first in customer satisfaction.


The CCB Data & Analytics team responsibly leverages data across Chase to build competitive advantages for the businesses while providing value and protection for customers. The team encompasses a variety of disciplines from data governance and strategy to reporting, data science and machine learning. We have a strong partnership with Technology, which provides cutting edge data and analytics infrastructure. The team powers Chase with insights to create the best customer and business outcomes.

hackajob is partnering with JPMorganChase to fill this position. Create a profile to be automatically considered for this role—and others that match your experience.

 

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