Kairos
Back to jobs

Engineering Manager, Inference

On-site
AnthropicSan Francisco, CA, US / Seattle, WA, US1 year agoWebsite
Manager / Lead
AI Research & Engineering

Compensation

$425,000-$560,000
Apply
Share

Description

About the role:

Anthropic’s performance and scaling teams focus on making the most efficient and impactful use of our compute resources, be it inference or training.  As an Engineering Manager on these teams you will be responsible for ensuring you and your team are identifying and removing bottlenecks, building robust and durable solutions, and maximizing the efficiency of our systems.  You also will help bring clarity, focus, and context to your teams in a fast paced, dynamic environment.

 

Responsibilities:

  • Provide front-line leadership of engineering efforts to improve model performance and scale our inference and training systems
  • Become familiar with the team’s technical stack enough to make targeted contributions as an individual contributor
  • Manage day-to-day execution of the team's work
  • Prioritize the team’s work and manage projects in a highly dynamic, fast paced environment
  • Coach and support your reports in understanding, and pursuing, their professional growth
  • Maintain a deep understanding of the team's technical work and its implications for AI safety

 

You may be a good fit if you:

  • Have 1+ years of management experience in a technical environment, particularly performance or distributed systems
  • Have a background in machine learning, AI, or a similar related technical field
  • Are deeply interested in the potential transformative effects of advanced AI systems and are committed to ensuring their safe development
  • Excel at building strong relationships with stakeholders at all levels
  • Are a quick learner, capable of understanding and contributing to discussions on complex technical topics
  • Have experience managing teams through periods of rapid growth and change
  • Are a quick study: this team sits at the intersection of a large number of different complex technical systems that you’ll need to understand (at a high level of abstraction) to be effective

 

Strong candidates may also have experience with: 

  • High performance, large-scale ML systems
  • GPU/Accelerator programming
  • ML framework internals
  • OS internals
  • Language modeling with transformers

Stack

TransformersGPUDistributed SystemsMachine Learning
Posted
May 29, 2025
Last seen
Jun 25, 2026
First seen
Jun 25, 2026
Status
active
Engineering Manager, Inference at Anthropic | Kairos