ML Software Engineer, Genai for Youth

Google Google · Big Tech · Mountain View, CA +1

ML Software Engineer focused on building scalable, responsible AI frameworks for youth-focused products. The role involves developing unified infrastructure, algorithmic steering, and automated validation layers to bridge foundational research with production environments, operating across global product lines and acting as a technical advisor.

What you'd actually do

  1. Develop shared algorithmic frameworks and foundational math in core modeling domains, including runtime behavior steering, latent-space pattern detection, optimization loops, and fine-tuning rooted in industry best practices.
  2. Streamline engineering efforts across global product lines by shifting fragmented, application-specific pipelines into cohesive, highly scalable, and reusable platform layers.
  3. Architect definitive, automated evaluation methodologies and standardized benchmarking metrics to provide scientifically rigorous validation models, eliminating manual execution overhead.
  4. Serve as a technical conduit between product, data science, applied engineering groups, machine learning research organizations, and centralized core infrastructure teams.
  5. Act as a strategic advisory partner to executive engineering leadership on platform maturity, long-term technical debt reduction, and operational capacity across technical workstreams.

Skills

Required

  • software development
  • system design
  • machine learning infrastructure
  • trust and safety
  • classification problems
  • LLM safety architectures
  • fraud or risk detection
  • identity verification
  • adversarial machine learning

Nice to have

  • industrial-scale data pipelines
  • internal data orchestration engines
  • high-performance compute infrastructure
  • lead by influence
  • drive technical alignment
  • systems-thinking capabilities
  • transforming fragmented technical processes into highly reusable, automated platform engines

What the JD emphasized

  • systemically responsible
  • high-integrity AI frameworks
  • age-appropriate production environments
  • unified infrastructure
  • algorithmic steering frameworks
  • automated validation layers
  • structural accuracy
  • performance safety
  • ecosystem health
  • trust and safety
  • classification problems
  • large language model (LLM) safety architectures
  • fraud or risk detection
  • identity verification
  • adversarial machine learning
  • industrial-scale data pipelines
  • internal data orchestration engines
  • high-performance compute infrastructure
  • systems-thinking capabilities
  • transforming fragmented technical processes into highly reusable, automated platform engines

Other signals

  • developing next-generation AI frameworks
  • bridge the gap between foundational model research and production
  • build unified infrastructure
  • algorithmic steering frameworks
  • automated validation layers