Novel AI Lead Methodologist

Google Google · Big Tech · Washington, DC +3

Lead the development of novel testing methodologies for emergent AI, designing evaluation frameworks where established standards do not yet exist. Address complex testing questions with creative experimentation, designing sophisticated prompt strategies and quantitative analyses to identify systemic risks and edge cases in GenAI products. Partner with data science and engineering teams to build and prototype testing solutions and automated infrastructure.

What you'd actually do

  1. Drive the methodological frontier of model evaluation. Partner with DeepMind and Data Science, developing novel, data-driven methodologies for structured and unstructured testing of emerging AI products. Move beyond standard benchmarks, designing sophisticated experimental frameworks, uncovering latent model behaviors and capabilities.
  2. Define testing and safety standards, working with cross-functional colleagues to ensure they are met. Perform analyses and drive insights to develop model-level and product-level safety mitigations.
  3. Lead and influence cross-functional teams to implement safety initiatives. Advise executive leadership on complex safety issues.
  4. Represent Google's AI safety efforts in external forums and collaborations, contributing to industry-wide best practices. Mentor analysts, fostering a culture of excellence, acting as a subject matter expert on adversarial techniques.
  5. Work with sensitive content or situations and may be exposed to graphic, controversial or upsetting topics or content.

Skills

Required

  • Bachelor's degree or equivalent practical experience
  • 10 years of experience in AI testing or research, data analytics, data science, or a related field
  • SQL
  • Python

Nice to have

  • Master's degree or PhD in relevant field
  • 5 years of experience in data analysis for AI Testing
  • Experience building or partnering with engineering teams to build prototypes for AI testing
  • Experience in designing and conducting experiments or quantitative research, preferably in a technology or AI context
  • Experience in AI systems, machine learning, and their potential risks
  • Strong technical competency with a data-driven investigative approach to solve complex tests, including demonstrable proficiency in data manipulation, analysis, and automation using languages like Python and SQL

What the JD emphasized

  • novel testing methodologies
  • emergent AI
  • foundational model capabilities
  • AI evaluation
  • automated evaluation
  • complex testing questions
  • systemic risks
  • edge cases
  • methodological best practices
  • scalable, engineering prototypes
  • researcher’s mindset
  • deep qualitative and quantitative inquiry
  • technical agility
  • novel testing approaches
  • automated infrastructure
  • AI testing
  • quantitative research
  • AI systems
  • machine learning
  • potential risks
  • data-driven investigative approach
  • complex tests
  • data manipulation
  • analysis
  • automation

Other signals

  • novel testing methodologies
  • emergent AI
  • foundational model capabilities
  • AI evaluation
  • automated evaluation