Sr. Data Analytics Sa, Wwso

Amazon Amazon · Big Tech · Seoul, South Korea · Solutions Architect

This role focuses on designing and building "agent-ready" data platforms that enable AI agents to autonomously search, process, and analyze data. It involves advising customers on modern data strategies including RAG, semantic search, and natural language data exploration, while also leveraging traditional data analytics, search, and streaming services. The role requires deep technical expertise in the data lifecycle and adjacent domains like ML and security, with a strong emphasis on cloud-native and generative AI-native reference architectures.

What you'd actually do

  1. Design end-to-end data pipeline architectures leveraging AWS services including Amazon Redshift, Amazon EMR, AWS Glue, Amazon Kinesis, Amazon MSK, Amazon Athena, AWS Lake Formation, Amazon DataZone, Amazon S3 Tables, Amazon OpenSearch, and Amazon Q in QuickSight
  2. Partner with customers to design agent-ready data platforms — enabling AI agents to autonomously search, process, analyze data, and support decision-making through agentic workflows
  3. Advise customers on modern data strategies including lakehouse architectures, open table formats (Apache Iceberg), real-time streaming analytics, data mesh patterns, zero-ETL integrations, RAG-based insight generation, and semantic search
  4. Collaborate with specialist, sales, marketing, and product teams to ideate around your customers' most challenging business problems
  5. Act as a trusted advisor to line of business and C-suite leaders across Korea's enterprise and digital-native customers

Skills

Required

  • analytics
  • big data
  • data warehousing
  • search
  • streaming
  • data lifecycle expertise
  • generative AI
  • AI agents
  • AWS services (Redshift, EMR, Glue, Kinesis, MSK, Athena, Lake Formation, DataZone, S3 Tables, OpenSearch, Q in QuickSight)
  • lakehouse architectures
  • open table formats (Apache Iceberg)
  • real-time streaming analytics
  • data mesh patterns
  • zero-ETL integrations
  • RAG
  • semantic search
  • ML
  • security
  • databases
  • data governance
  • multimodal data utilization
  • cloud-native architectures
  • generative AI-native architectures

Nice to have

  • ML
  • security
  • databases
  • data governance
  • multimodal data utilization

What the JD emphasized

  • agent-ready data platforms
  • AI agents to autonomously search, process, analyze data
  • agentic workflows
  • RAG-based insight generation
  • semantic search

Other signals

  • design agent-ready data platforms
  • AI agents to autonomously search, process, analyze data
  • agentic workflows
  • RAG-based insight generation
  • semantic search powered by generative AI
  • natural language data exploration