Principal ML Investigator
Confirmed live in the last 24 hours
Cerebras Systems
Job Description
Cerebras Systems builds the world's largest AI chip, 56 times larger than GPUs. Our novel wafer-scale architecture provides the AI compute power of dozens of GPUs on a single chip, with the programming simplicity of a single device. This approach allows Cerebras to deliver industry-leading training and inference speeds and empowers machine learning users to effortlessly run large-scale ML applications, without the hassle of managing hundreds of GPUs or TPUs.
Cerebras' current customers include top model labs, global enterprises, and cutting-edge AI-native startups. OpenAI recently announced a multi-year partnership with Cerebras, to deploy 750 megawatts of scale, transforming key workloads with ultra high-speed inference.
Thanks to the groundbreaking wafer-scale architecture, Cerebras Inference offers the fastest Generative AI inference solution in the world, over 10 times faster than GPU-based hyperscale cloud inference services. This order of magnitude increase in speed is transforming the user experience of AI applications, unlocking real-time iteration and increasing intelligence via additional agentic computation.
About The Role
Cerebras is adding an ML team that can focus on a new ML effort that can align with existing teams. We are seeking a principal investigator who will partner with our ML leaders to formulate the new effort and to build up the new team and capabilities. This new team would coordinate with our current ML teams: Field ML, which works directly with customers, Applied ML, which builds new ML capabilities and applications for customers, and Core ML, which adapts ML algorithms to find unique capabilities of Cerebras hardware. The new team could take up the same or complementary responsibilities.
We would like the new team to work on some of the following areas:
- Post-training and reinforcement learning: Techniques used to improve model deployment quality through further training, tuning, RL, and focus on particular downstream tasks;
- Dataset curation and optimization: Techniques to collect and select high-quality data, which can help models to train or tune more quickly or to higher quality;
- LLM Pretraining: Techniques to ensure stability and compute-efficiency while pretraining high quality models. May include training dynamics, parameterizations, numerics, or others;
- Sparsity: Techniques to sparsify models or data that improve training time-to-quality, or optimize inference speed or throughput;
- Domains: Coding agents, reasoning agents, generative language, image, video.
Principal Investigator Responsibilities
- Build up a team capable of industry research and advanced development.
- Organize various advanced development topics into cohesive agenda.
- Adapt novel algorithms and model architectures to run on the Cerebras platform.
- Systematically train, tune, and evaluate models to guide/advise production scenarios.
- Collaborate with other teams to co-design next-generation hardware and software architectures.
- Collaborate with external partners (customers, academic) to drive insight and credibility.
Skills & Qualifications
- PhD in Computer Science or related field.
- Strong grasp of ML theory in one or more of the above areas.
- Proven experience engineering ML systems for scale or production deployment.
- Experience leading a team of researchers or engineers.
Preferred Skills & Qualifications
- Track record of patents or publications in top-tier conferences or journals.
- Experience with large language models (e.g., GPT family, Llama).
- Experience with distributed training concepts and frameworks.
- Experience in training speed optimi
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