Research Engineer/research Scientist, Audio

Anthropic Anthropic · AI Frontier · San Francisco, CA · AI Research & Engineering

Research Engineer/Scientist focused on audio AI, working on training audio models, developing novel architectures, and optimizing inference for speech and audio understanding and generation systems.

What you'd actually do

  1. Develop audio codecs and representations
  2. Source and synthesize high quality audio data
  3. Train large-scale speech language models and large audio diffusion models
  4. Develop novel architectures for incorporating continuous signals into LLMs
  5. Build advanced steerable systems spanning end-to-end conversational systems, speech and audio understanding models, and speech synthesis capabilities

Skills

Required

  • training audio models
  • JAX, PyTorch, or large-scale distributed training
  • debugging performance issues across the full stack

Nice to have

  • LLM pretraining and finetuning
  • Training diffusion models
  • Reinforcement learning
  • End-to-end system optimization
  • GPU, Kubernetes, PyTorch, or distributed training infrastructure

What the JD emphasized

  • training audio models
  • research and engineering work
  • large-scale distributed training
  • incorporating continuous signals into LLMs
  • speech and audio understanding models
  • speech synthesis capabilities
  • training diffusion models
  • reinforcement learning for large language models and diffusion models
  • inference optimization
  • latency and inference throughput

Other signals

  • training audio models
  • research and engineering work
  • large-scale model training
  • incorporating continuous signals into LLMs
  • speech and audio understanding models
  • speech synthesis capabilities