Solution Architect

Sigma Computing Sigma Computing · Data AI · San Francisco, CA · Solutions Engineering

Solution Architect role focused on leveraging AI tools for daily tasks, selling AI solutions into enterprise accounts, and positioning Sigma's AI capabilities against competitors. The role involves architecting AI-driven workflows, prototypes, and integrations within customer stacks, with a strong emphasis on warehouse-native AI and governance.

What you'd actually do

  1. Lead the technical strategy on complex enterprise opportunities, paired with the SE assigned to the account.
  2. Run deep technical discovery and architecture workshops with data teams, security teams, AI leads, and executive stakeholders.
  3. Design and build custom prototypes that prove out high-value use cases, including AI-driven workflows using Sigma Assistant, Sigma agents, warehouse agents, and MCP integrations.
  4. Present Sigma’s architecture and AI runtime story to audiences ranging from analysts to CTOs and CDOs.
  5. Own the technical narrative on RFPs, RFIs, AI risk reviews, and security questionnaires.

Skills

Required

  • 8+ years in business intelligence, analytics engineering, or data platform roles
  • at least 3 in a customer-facing technical role (SE, SA, or consulting)
  • Deep expertise in at least one cloud data warehouse: Snowflake, Databricks, BigQuery, or Redshift
  • Strong SQL
  • modern data architecture: warehousing, modeling, governance, security
  • ETL and transformation experience with dbt, Fivetran, Matillion, or comparable tools
  • Daily user of modern AI tools
  • Comfortable talking about agents, MCP, A2A, context engineering, retrieval, evals, and the major model providers
  • Track record of leading complex enterprise sales cycles or large BI implementations
  • Partner with AEs and SEs to close
  • Executive presence
  • Pace and energy
  • Self-starter
  • Bachelor’s degree in a technical field, or equiv

Nice to have

  • Mentor SEs
  • Contribute to the wiki, the playbooks, and the next hire’s ramp
  • Manage several enterprise engagements at once
  • Earn and maintain product, sales, and technology certifications

What the JD emphasized

  • Use AI every day to do the job better
  • Sell AI into the account
  • Sell against AI
  • architectural depth
  • AI strategy
  • governance
  • warehouse-native architecture
  • AI competition
  • AI risk reviews
  • security questionnaires
  • AI fluency

Other signals

  • AI tooling as default infrastructure
  • Sell AI into the account
  • Sell against AI
  • Architect Sigma agents and warehouse agents
  • Position Sigma against Databricks AI/BI and Genie, Snowflake Cortex Analyst