Lead Software Engineer - Lead Data Architect

JPMorgan Chase JPMorgan Chase · Banking · Mumbai, Maharashtra, India · Commercial & Investment Bank

Lead Software Engineer and Data Architect responsible for defining and driving end-to-end architecture for complex, distributed systems, including architecting cloud-native solutions on AWS. The role involves designing and optimizing data solutions, building and integrating AI/ML and GenAI into production platforms (LLMs, RAG, embeddings, vector databases, MLOps), and driving the adoption of AI-assisted engineering practices. The position also includes developing technical talent and owning non-functional requirements and emerging tech evaluation.

What you'd actually do

  1. Define and drive end-to-end architecture for complex, distributed, high-throughput systems across the portfolio; shape technology strategy and inform budget and investment prioritization with senior leadership.
  2. Lead design reviews, architecture governance, and technical decisions; establish enterprise-wide patterns, standards, and reference architecture, and represent Engineering & Architecture in senior governance forums (architecture review boards, risk/security committees, regulatory engagements).
  3. Architect cloud-native solutions on AWS with operational rigor across reliability, scalability, security, and cost.
  4. Design and optimize relational and NoSQL data solutions for performance, scale, and reliability—including schema design, indexing, replication, sharding/partitioning, and query optimization.
  5. Build and integrate AI/ML and GenAI into production platforms—LLMs, RAG, embeddings, vector databases, and MLOps for lifecycle management, monitoring, and governance.

Skills

Required

  • Formal training or certification on software engineering concepts and 5+ years applied experience
  • Bachelor’s degree or equivalent in computer science/information technology or software engineering concepts fields and 10+ years applied experience spanning data architecture and software development.
  • Deep expertise in data architecture and database technologies across relational (Oracle, PostgreSQL) and NoSQL (Cassandra, MongoDB), including data modeling, schema design, indexing strategy, replication, sharding/partitioning, and query optimization at scale.
  • Proven experience designing large-scale data platforms — data pipelines, streaming/ingestion, warehousing/lakehouse patterns, and data governance, lineage, and quality.
  • Working knowledge in Java (ideally Java 17+), or any other language and experience with microservices and event-driven architectures, including API design (REST, gRPC, GraphQL) and messaging/streaming such as Kafka.
  • Demonstrable experience with AWS — designing, deploying, and operating production data and application workloads at scale, with clear ownership of reliability and cost outcomes.
  • Hands-on experience integrating AI/ML and GenAI into enterprise applications, including LLMs, RAG pipelines, embeddings, vector stores/databases, model evaluation, and production monitoring (MLOps).
  • Demonstrated experience leading effective use of approved AI-assisted software development tools (coding, code review, test acceleration, troubleshooting), with the ability to set team expectations for validating AI outputs for correctness, performance, and security.
  • Strong design and architectural thinking — making trade-offs explicit and balancing speed, risk, maintainability, and total cost of ownership across data and distributed systems.
  • Good grasp of DevOps and platform/data engineering practices: CI/CD, Infrastructure as Code (IaC) and observability tooling (logs, metrics, traces).
  • Strong understanding of responsible AI use in engineering workflows, including data sensitivity considerations, secure handling of inputs/outputs, and adherence to resiliency and security expectations; experience coaching engineers on safe, compliant adoption within delivery practices

Nice to have

  • Exposure in Financial Services or other highly regulated industries, with practical understanding of auditability, change control, and security expectations.
  • Contributions to open-source projects, patents, or published technical work that demonstrates technical depth and

What the JD emphasized

  • Build and integrate AI/ML and GenAI into production platforms
  • LLMs, RAG, embeddings, vector databases, and MLOps
  • Drive adoption of enterprise-authorized AI-assisted engineering practices
  • Hands-on experience integrating AI/ML and GenAI into enterprise applications
  • Demonstrated experience leading effective use of approved AI-assisted software development tools

Other signals

  • Build and integrate AI/ML and GenAI into production platforms
  • LLMs, RAG, embeddings, vector databases, and MLOps
  • Drive adoption of enterprise-authorized AI-assisted engineering practices