T
Talent@ Beta
Hippocratic Ai

LLM Inference Engineer

Hippocratic Ai · Series C · Website

Role Details

Location
Palo Alto
Salary
$126K
Department
Applied Research
Type
Full-time
Vertical
AI
Posted
1 week ago

Job Description

About Us

Hippocratic AI is the leading generative AI company in healthcare. We have the only system that can have safe, autonomous, clinical conversations with patients. We have trained our own LLMs as part of our Polaris constellation, resulting in a system with over 99.9% accuracy.

Why Join Our Team

Reinvent healthcare with AI that puts safety first. We’re building the world’s first healthcare‑only, safety‑focused LLM — a breakthrough platform designed to transform patient outcomes at a global scale. This is category creation.

Work with the people shaping the future. Hippocratic AI was co‑founded by CEO Munjal Shah and a team of physicians, hospital leaders, AI pioneers, and researchers from institutions like El Camino Health, Johns Hopkins, Washington University in St. Louis, Stanford, Google, Meta, Microsoft, and NVIDIA.

Backed by the world’s leading healthcare and AI investors. We recently raised a $126M Series C at a $3.5B valuation, led by Avenir Growth, bringing total funding to $404M with participation from CapitalG, General Catalyst, a16z, Kleiner Perkins, Premji Invest, UHS, Cincinnati Children’s, WellSpan Health, John Doerr, Rick Klausner, and others.

Build alongside the best in healthcare and AI. Join experts who’ve spent their careers improving care, advancing science, and building world‑changing technologies — ensuring our platform is powerful, trusted, and truly transformative.

Location Requirement

We believe the best ideas happen together. To support fast collaboration and a strong team culture, this role is expected to be in our Palo Alto office five days a week, unless otherwise specified.

About the Role

We're seeking an experienced LLM Inference Engineer to optimize our large language model (LLM) serving infrastructure. The ideal candidate has:

  • Extensive hands-on experience with state-of-the-art inference optimization techniques

  • A track record of deploying efficient, scalable LLM systems in production environments

What You'll Do

Design and implement multi-node serving architectures for distributed LLM inference

  • Optimize multi-LoRA serving systems

  • Apply advanced quantization techniques (FP4/FP6) to reduce model footprint while preserving quality

  • Implement speculative decoding and other latency optimization strategies

  • Develop disaggregated serving solutions with optimized caching strategies for prefill and decoding phases

  • Continuously benchmark and improve system performance across various deployment scenarios and GPU types

What You Bring

Must-Have:

  • Experience optimizing LLM inference systems at scale

  • Proven expertise with distributed serving architectures for large language models

  • Hands-on experience implementing quantization techniques for transformer models

  • Strong understanding of modern inference optimization methods, including:

    • Speculative decoding techniques with draft models

    • Eagle speculative decoding approaches

  • Proficiency in Python and C++

  • Experience with CUDA programming and GPU optimization

Nice-to-Have:

  • Contributions to open-source inference frameworks such as vLLM, SGLang, or TensorRT-LLM

  • Experience with custom CUDA kernels

  • Track record of deploying inference systems in production environments

  • Deep understanding of performance optimization systems

Show us what you've built: Tell us about an LLM inference or training project that makes you proud! Whether you've optimized inference pipelines to achieve breakthrough performance, designed innovative training techniques, or built systems that scale to billions of parameters - we want to hear your story.



Open source contributor? Even better! If you've contributed to projects like vllm, sglang, lmdeploy or similar LLM optimization frameworks, we'd love to see your PRs. Your contributions to these communities demonstrate exactly the kind of collaborative innovation we value.

Join a team where your expertise won't just be appreciated—it will be celebrated and amplified. Help us shape the future of AI deployment at scale!

References

1. Polaris: A Safety-focused LLM Constellation Architecture for Healthcare, https://arxiv.org/abs/2403.13313

2
. Polaris 2: https://www.hippocraticai.com/polaris2

3
. Personalized Interactions: https://www.hippocraticai.com/personalized-interactions

4
. Human Touch in AI: https://www.hippocraticai.com/the-human-touch-in-ai

5
. Empathetic Intelligence: https://www.hippocraticai.com/empathetic-intelligence

6
. Polaris 1: https://www.hippocraticai.com/research/polaris

7
. Research and clinical blogs: https://www.hippocraticai.com/research

Please be aware of recruitment scams impersonating Hippocratic AI. All recruiting communication will come from @hippocraticai.com email addresses. We will never request payment or sensitive personal information during the hiring process.

About Hippocratic Ai

Safety-focused large language model for healthcare.

View company profile

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