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SafetyKitSafetyKitSan Francisco, CA

Applied AI Engineer

Develops novel AI agent applications using language models, manages model alpha program with OpenAI, architects risk AI workflows, and conducts experiments to evaluate model capabilities for B2B SaaS products.

Salary not listed
On-siteML Engineering

About the role

Responsibilities

  • Turn language models into useful, functional, and beautiful products.
  • Scope and implement entirely novel applications of AI agents (adversarial webcrawling, weapons identification, red-teaming, ingredient extraction, etc.).
  • Architect and implement workflows that power SafetyKit's risk AI agents.
  • Design and conduct rigorous experiments to evaluate models' relative strengths, weaknesses, and optimal use cases.
  • Use codegen models to move 10x faster than you did two years ago.

Skills

Language ModelsAI AgentsOpenAIPythonCode GenerationMachine LearningWorkflow ArchitectureExperiment Design

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