Data Engineer - Senior Consultant Level

Visa Visa · Fintech · Bellevue, WA

Visa is building its next-generation GenAI Platform, focusing on data infrastructure and orchestration for enterprise AI systems. The Data Engineer will architect and scale data systems for AI applications, copilots, semantic search, and agentic systems, working with retrieval infrastructure, vector indexing, semantic knowledge platforms, and real-time context pipelines. This role involves building AI-native data systems to enable LLMs and AI agents to operate securely and effectively in enterprise environments, integrating structured and unstructured data, and implementing observability and governance for AI data platforms.

What you'd actually do

  1. Design and build scalable data platforms supporting LLM applications, AI agents, semantic search, and retrieval-augmented generation (RAG)
  2. Develop high-throughput real-time and batch data pipelines integrating enterprise systems, APIs, documents, events, and knowledge sources
  3. Build vector indexing, embedding pipelines, semantic retrieval systems, and intelligent context management frameworks
  4. Engineer backend services and APIs enabling orchestration workflows, AI tool integrations, and enterprise automation use cases
  5. Implement observability, lineage, monitoring, and evaluation frameworks for AI-powered data platforms

Skills

Required

  • 5+ years of relevant work experience with a bachelor’s degree -or- At least 2 years of work experience with an Advanced degree (e.g., Masters, MBA, JD, MD) -or- 0 years of work experience with a PhD.
  • Experience building data systems supporting LLM applications, RAG architectures, semantic retrieval, embeddings, vector databases, or AI orchestration workflows.
  • Strong expertise designing scalable distributed systems, streaming architectures, real-time pipelines, and large-scale data processing platforms.
  • Experience building semantic indexing systems, intelligent retrieval pipelines, metadata enrichment systems, or enterprise knowledge platforms.
  • Experience developing reliable event-driven and streaming systems using technologies such as Kafka, Spark, Flink, Hadoop, or similar large-scale processing frameworks.

Nice to have

  • Four (4) years of experience solving data problems using data technologies (e.g., Hadoop, Hive, Kafka, Redis, NoSQL, RDBMS).
  • Experience building enterprise GenAI platforms, semantic search systems, or AI data infrastructure
  • Experience with vector databases, embedding pipelines, retrieval optimization, or knowledge graph systems
  • Experience implementing observability, lineage, evaluation, and governance frameworks for AI-enabled data systems
  • Familiarity with cloud-native AI infrastructure and scalable ML/data platform architectures
  • Exposure to payments, fintech, or highly regulated enterprise environments with stringent security and reliability requirements

What the JD emphasized

  • Experience building enterprise GenAI platforms, semantic search systems, or AI data infrastructure
  • Experience with vector databases, embedding pipelines, retrieval optimization, or knowledge graph systems
  • Experience implementing observability, lineage, evaluation, and governance frameworks for AI-enabled data systems
  • Exposure to payments, fintech, or highly regulated enterprise environments with stringent security and reliability requirements

Other signals

  • GenAI Platform
  • AI agents
  • semantic search
  • retrieval infrastructure
  • vector indexing
  • LLMs