Engineering Manager (ai Research & Model Training)

Perplexity Perplexity · AI Frontier · San Francisco, CA · AI

Engineering Manager for AI Research & Model Training at Perplexity, leading a team to develop and train state-of-the-art large language models using advanced techniques like RL, SFT, and preference-based methods. The role involves owning data, training, and evaluation pipelines, and integrating models into products, requiring significant experience in large-scale AI model development and team leadership.

What you'd actually do

  1. Lead a team of researchers and engineers focused on training SotA models for Perplexity-relevant use cases, leveraging the latest supervised and reinforcement learning techniques.
  2. Drive research and engineering efforts to develop production models through advanced model training and alignment techniques, including RL, SFT, and other approaches.
  3. Become deeply familiar with the team’s technical stack, leading from the front through hands-on technical contributions.
  4. Own the data, training, and eval pipelines required to train and continuously improve LLM models.
  5. Design and iterate on model training and finetuning algorithms (e.g., preference‑based methods, reinforcement learning from human or AI feedback) through an approach that balances scientific rigor and iteration velocity.

Skills

Required

  • Python
  • PyTorch
  • leadership
  • team management
  • large-scale AI model development
  • Deep Learning systems

Nice to have

  • PhD in Machine Learning
  • SFT
  • DPO
  • GRPO
  • RLHF-style methods
  • preference-based optimization
  • evaluations
  • production training pipelines

What the JD emphasized

  • large-scale LLMs and Deep Learning systems
  • large-scale AI model development
  • training SotA models
  • production models
  • model training and finetuning algorithms

Other signals

  • leading a team of researchers and engineers
  • training SotA models
  • production models
  • advanced model training and alignment techniques
  • data, training, and eval pipelines
  • model training and finetuning algorithms
  • large-scale LLMs and Deep Learning systems
  • large-scale AI model development