Staff AI Scientist

LinkedIn is the world's largest professional network, built to help members achieve more in their careers and create economic opportunity.
$164,000 - $268,000
Machine Learning
Staff Software Engineer
Hybrid
4+ years of experience
AI

Description For Staff AI Scientist

LinkedIn, the world's largest professional network, is seeking a Staff AI Scientist to drive cutting-edge AI research and development. This role focuses on advancing large-scale foundation models and AI innovations, particularly in developing and optimizing Large Language Models (LLMs).

The position offers an exciting opportunity to work at the intersection of AI research and engineering, where you'll lead the development of state-of-the-art AI systems using multi-billion parameter transformers. You'll be responsible for scaling these models to serve LinkedIn's global user base, leveraging advanced hardware accelerators and distributed training techniques.

As a Staff AI Scientist, you'll collaborate with world-class researchers and engineers to push the boundaries of AI at scale. The role involves complex problem-solving in areas such as distributed training, model parallelism, and system co-design. You'll also contribute to the AI research community by publishing findings in top venues like ICML, NeurIPS, and ICLR.

The ideal candidate brings deep expertise in large-scale model training, post-training techniques, and reinforcement learning. You'll work in a hybrid environment, combining remote work with office presence, fostering both flexibility and team collaboration. The position offers competitive compensation ($164,000-$268,000) and comprehensive benefits.

This role presents an exceptional opportunity to impact how millions of professionals connect and advance their careers through AI innovation. You'll be at the forefront of developing next-generation AI technologies while working with a supportive team that values diversity, inclusion, and professional growth. Join LinkedIn to help shape the future of professional networking through advanced AI solutions.

Last updated 3 days ago

Responsibilities For Staff AI Scientist

  • Lead and contribute to the research, design, and development of large-scale foundation AI models
  • Publish findings and innovations in top AI venues
  • Stay abreast of latest academic and industry research
  • Innovate in large-scale model training
  • Develop and maintain scalable AI pipelines
  • Mentor junior engineers
  • Collaborate with cross-functional teams

Requirements For Staff AI Scientist

Python
Java
  • Bachelor's degree in Computer Science or related field
  • 4+ years experience with programming languages like Java, Python
  • 4+ years experience in machine learning or AI engineering
  • 4+ years experience in algorithmic solutions
  • Strong proficiency in AI system design
  • Excellent communication skills

Benefits For Staff AI Scientist

Medical Insurance
  • Health and wellness programs
  • Time away benefits
  • Annual performance bonus
  • Stock benefits
  • Fair and equitable compensation

Interested in this job?

Jobs Related To LinkedIn Staff AI Scientist

AI Engineering Manager, Trust / Anti-Abuse AI

Lead LinkedIn's Anti-Abuse AI team developing next-gen modeling systems to combat fake accounts and harmful activities.

AI Engineering Manager, Trust / Anti-Abuse AI

Lead LinkedIn's Anti-Abuse AI team developing next-gen modeling to combat fake accounts and harmful activities while ensuring platform safety and authenticity.

AI Engineering Manager, Enterprise AI

AI Engineering Manager position at LinkedIn leading Enterprise AI initiatives across Hirer, Learning and Enterprise Jobs verticals.

Staff Software Engineer, AI Platform

Staff Software Engineer position at LinkedIn focusing on building and scaling AI infrastructure for large language models and recommendation systems.

Senior Staff Engineer, Machine Learning - Notifications AI

Senior Staff Engineer position at LinkedIn focusing on Machine Learning and AI for notifications optimization, offering competitive compensation and hybrid work environment.