Full-Time

Research Pre-Training Science

Thinking Machines Lab

Thinking Machines Lab

51-200 employees

Develops customizable multimodal AI systems

Compensation Overview

$350k - $475k/yr

H1B Sponsorship Available

San Francisco, CA, USA

In Person

Category
AI & Machine Learning (3)
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Required Skills
Python
Tensorflow
Pytorch
Requirements
  • Ability to design, run, and analyze experiments thoughtfully, with demonstrated research judgment and empirical rigor.
  • Experience with distributed or high-performance computing environments.
  • Proficiency in Python and familiarity with at least one deep learning framework (e.g., PyTorch, TensorFlow, or JAX). Comfortable with debugging distributed training and writing code that scales.
  • Bachelor’s degree or equivalent experience in Computer Science, Machine Learning, Physics, Mathematics, or a related discipline with strong theoretical and empirical grounding.
  • Clarity in communication, an ability to explain complex technical concepts in writing.
Responsibilities
  • Research and develop new methodologies for pre-training.
  • Work in areas such as scaling, architecture, algorithms, or optimization of large scale training runs depending on your research interest and experience.
  • Design data curricula and sampling strategies that improve learning dynamics and model generalization.
  • Collaborate with infrastructure and data teams to conduct large-scale experiments efficiently and reproducibly.
  • Publish and present research that moves the entire community forward. Share code, datasets, and insights that accelerate progress across industry and academia.
Desired Qualifications
  • A strong grasp of probability, statistics, and ML fundamentals. You can look at experimental data and distinguish between real effects, noise, and bugs.
  • Prior experience training or analyzing large-scale models, or contributing to pre-training or foundation model research.
  • Strong publication record or open-source contributions in representation learning, optimization, scaling laws, or other areas of pre-training.
  • Familiarity with curriculum learning, data selection, or active learning techniques.
  • Experience designing or maintaining evaluation frameworks for large models.
  • Contributions to open datasets, research publications, or data tooling.
  • PhD in Computer Science, Machine Learning, Physics, Mathematics, or a related discipline with strong theoretical and empirical grounding; or, equivalent industry research experience.
Thinking Machines Lab

Thinking Machines Lab

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Thinking Machines Lab builds customizable, multimodal AI systems for researchers, enterprises, and developers. Its products are delivered through a full-stack approach that covers model training, deployment, and APIs or on-premises licensing, with interfaces that can be tailored to different domains and workflow needs. The team combines deep talent from OpenAI, Meta AI, and Mistral AI, enabling an integrated stack focused on human–AI collaboration and safety rather than generic one-size-fits-all tools. The company aims to make generally capable AI accessible and understandable to scientists and developers, helping them deploy AI in enterprise settings with clear ethical controls.

Company Size

51-200

Company Stage

Seed

Total Funding

$2B

Headquarters

San Francisco, California

Founded

2024

Simplify Jobs

Simplify's Take

What believers are saying

  • Enterprises can adapt Llama, Qwen, DeepSeek, and Kimi without rebuilding training stacks.
  • Huge compute backing supports rapid model experimentation and large-scale customer workloads.
  • Human-AI collaboration branding resonates with regulated buyers needing steerable, transparent systems.

What critics are saying

  • Meta and OpenAI are raiding talent, weakening execution and product cadence.
  • Tinker's safety weaknesses invite enterprise rejection after public abuse demonstrations.
  • Incumbents can copy interruption-aware multimodal features before TML builds durable distribution.

What makes Thinking Machines Lab unique

  • Mira Murati leads a former-OpenAI team focused on customizable multimodal systems.
  • Tinker launched in October 2025, simplifying fine-tuning open-weight models through APIs.
  • Nvidia and Google provide frontier-scale compute access, including GB300 and Vera Rubin systems.

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People at Thinking Machines Lab who can refer or advise you

Benefits

Health Insurance

Dental Insurance

Vision Insurance

Unlimited Paid Time Off

Parental Leave

Relocation Assistance

Company News

NVIDIA
Mar 10th, 2026
NVIDIA and Thinking Machines Lab Announce Long-Term Gigawatt-Scale Strategic Partnership

NVIDIA and Thinking Machines Lab announced today a multiyear strategic partnership to deploy at least one gigawatt of next-generation NVIDIA Vera Rubin systems to support Thinking Machines’ frontier model training and platforms delivering customizable AI at scale.

Bloomberg L.P.
Mar 10th, 2026
Nvidia invests in Thinking Machines Lab, to supply AI chips to ex-OpenAI exec Mira Murati's startup

Nvidia is investing in Thinking Machines Lab, an AI startup founded by former OpenAI executive Mira Murati, and will supply chips to help train and run the company's AI models. The investment strengthens Nvidia's position in the AI sector whilst providing Thinking Machines Lab with crucial computing infrastructure for model development.

Business Insider
Feb 27th, 2026
2 Thinking Machines Lab founders join Meta as $12B startup faces talent exodus

Thinking Machines Lab, the AI startup led by former OpenAI CTO Mira Murati, has lost two founding members to Meta in recent weeks. Christian Gibson, a former OpenAI engineer who worked on the first ChatGPT model, and Noah Shpak, an AI engineer previously at Character.AI and X, have both joined Meta. The departures add to a wave of exits from the San Francisco-based company, which raised $2 billion at a $12 billion valuation last year. The startup recently lost its CTO Barret Zoph and cofounder Luke Metz to OpenAI, along with several researchers. Another cofounder, Andrew Tulloch, departed for Meta last year. Thinking Machines Lab focuses on helping developers custom-build AI models and has attracted top talent despite the ongoing poaching. Meta and Thinking Machines Lab declined to comment.

Maglazana
Feb 26th, 2026
Mira Murati's Thinking Machines Lab raises $2B seed round at $12B valuation, launches Tinker API

Mira Murati, former OpenAI chief technology officer, has launched Thinking Machines Lab, an AI research company that closed a roughly $2 billion seed round led by Andreessen Horowitz, valuing the startup at approximately $12 billion. Nvidia, AMD and Cisco participated in one of the largest early-stage funding rounds in tech history. Founded in February 2025, Thinking Machines Lab assembled researchers from OpenAI, Meta and other AI pioneers to build customizable, accessible AI systems. In October, the company launched Tinker, an API enabling developers to fine-tune large language models more efficiently. The startup faces challenges including intense competition for talent, with several high-profile employees departing to OpenAI and rivals. Murati's rapid progress from launch to product delivery marks a significant development in the evolving AI landscape.

Business Insider
Feb 4th, 2026
Mira Murati's Thinking Machines Lab hires award-winning coder amid executive exodus

Thinking Machines Lab, the AI startup founded by former OpenAI CTO Mira Murati, has quietly hired Neal Wu, a three-time gold medal winner at an international programming Olympiad. Wu is a founding member of AI coding startup Cognition, valued at $10 billion, and brother of its CEO Scott Wu. The hire demonstrates Thinking Machines Lab continues attracting top talent despite aggressive poaching from rivals like Meta. The startup recently lost cofounder Andrew Tulloch to Meta in a deal worth up to $1.5 billion, and CTO Barret Zoph along with two other founding members returned to OpenAI in January. Thinking Machines Lab, which helps developers train and customise AI models, raised $2 billion in seed funding at a valuation exceeding $10 billion before launching a product.