SDET Ex- Capital One

SDET Ex- Capital One

Posted 2 days ago by 1765950956

Negotiable
Outside
Remote
USA

Summary: The Solutions QA Engineer role focuses on enhancing the production experience of the Slingshot platform, a data optimization product for enterprise data teams. This position emphasizes identifying real-world customer failures, particularly those related to third-party integrations, rather than traditional QA tasks. The engineer will collaborate with product, engineering, and support teams to document and address bugs that affect reliability and customer trust. The role requires a manual-first approach to explore and test failure modes across various modern data stack tools.

Key Responsibilities:

  • Execute exploratory, production-oriented QA on customer-critical integration paths across tools like DBT, Airflow, Terraform, ADF, and GitHub Actions
  • Recreate and document integration issues surfaced by customers and support
  • Test and validate APIs, CLI, and system behavior under different configurations
  • Partner with Support and Product to prioritize edge case testing aligned with real-world impact
  • Identify and articulate blast radius and system behavior under unexpected or invalid configurations
  • File actionable, reproduction-ready bugs with context for engineering
  • Track coverage across tested tools, connectors, and orchestration flows
  • Contribute to early-stage runbooks and automation plans, once common patterns are identified
  • Serve as an internal integration hunter to expose gaps before customers do

Key Skills:

  • years experience in software QA, support engineering, or technical testing roles
  • Familiarity with modern data engineering platforms and orchestrators
  • Examples: Airflow, Terraform, DBT, Databricks, GitHub Actions, Azure Data Factory
  • Ability to manually set up test environments and reproduce issues across multiple systems
  • Experience with APIs, CLI tools, and validating system integrations
  • Strong written skills for defect reproduction, test case documentation, and QA communication
  • Self-starter mindset – able to explore unfamiliar systems, dig for failure paths, and propose next steps
  • Ability to work independently in a fully remote team
  • Comfortable testing in complex, high-variance customer environments (non-standard configurations)

Salary (Rate): undetermined

City: undetermined

Country: USA

Working Arrangements: remote

IR35 Status: outside IR35

Seniority Level: undetermined

Industry: IT

Detailed Description From Employer:

Solutions QA Engineers to help harden the production experience of our Slingshot platform a modern data optimization product used by large enterprise data teams. This role is not traditional QA.

You ll be hunting real-world customer failures that slip through happy-path test coverage, especially those stemming from 3rd-party integration edge cases. You ll work directly with product, engineering, and support to identify bugs that impact reliability and customer trust.

Your focus: explore, test, and document failure modes across API, CLI, and orchestration workflows using modern data stack tools (Snowflake, Databricks, Airflow, Fivetran, Terraform, DBT, Azure Data Factory, AWS, GitHub Actions etc.). This is a manual-first role to discover the problem space automation may follow as patterns emerge.
Key Responsibilities

  • Execute exploratory, production-oriented QA on customer-critical integration paths across tools like DBT, Airflow, Terraform, ADF, and GitHub Actions
  • Recreate and document integration issues surfaced by customers and support
  • Test and validate APIs, CLI, and system behavior under different configurations
  • Partner with Support and Product to prioritize edge case testing aligned with real-world impact
  • Identify and articulate blast radius and system behavior under unexpected or invalid configurations
  • File actionable, reproduction-ready bugs with context for engineering
  • Track coverage across tested tools, connectors, and orchestration flows
  • Contribute to early-stage runbooks and automation plans, once common patterns are identified
  • Serve as an internal integration hunter to expose gaps before customers do

Required Qualifications

  • years experience in software QA, support engineering, or technical testing roles
  • Familiarity with modern data engineering platforms and orchestrators:
  • Examples: Airflow, Terraform, DBT, Databricks, GitHub Actions, Azure Data Factory
  • Ability to manually set up test environments and reproduce issues across multiple systems
  • Experience with APIs, CLI tools, and validating system integrations
  • Strong written skills for defect reproduction, test case documentation, and QA communication
  • Self-starter mindset able to explore unfamiliar systems, dig for failure paths, and propose next steps
  • Ability to work independently in a fully remote team
  • Comfortable testing in complex, high-variance customer environments (non-standard configurations)

Nice to Have (Not Required)

  • Prior experience in Support Engineering, SRE, or Solutions QA roles
  • Familiarity with AWS, Snowflake, Databricks, or enterprise data warehouse environments
  • Scripting or automation skills (e.g. Python, Bash, Postman collections, etc.)
  • Exposure to data quality tools or ETL pipeline validation
  • Background in high-scale enterprise B2B SaaS environments Contract Structure
  • Work Model: Embedded in support-product loop; close collaboration with Engineering and Product