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Qualcomm to Acquire Modular Modular 26.4: SOTA MoE Serving, Model Bringup via Agent Skills, Mojo 1.0 Beta 2 and More ModCon 2026: Modular’s Developer Conference Day Zero: MiniMax M3 Open Weights on Modular Cloud Modverse #55: Mojo 1.0 Beta, Community Mojo Libraries, and Real-Time Patient Conversations Powered by MAX What about OpenCL and CUDA C++ alternatives? (Democratizing AI Compute, Part 5) Why LLM Inference Needs a New Kind of Router - Part 3 Three trends from MLSys 2026 Why LLM Inference Needs a New Kind of Router - Part 2 How I built a pure Mojo app (and 10 libraries) with AI agents Translating to Mojo via AI Agents Inkwell: Why Your Inference Platform Matters As Much As Your Model Why LLM Inference Needs a New Kind of Router - Part 1 Modular 26.3: Mojo 1.0 Beta, MAX Video Gen, and more Modverse #54: AMD AI DevDay, New Modular Offices, and a Community That Keeps Shipping How Frontier Coding Agents Built a Video Diffusion Pipeline on MAX TileTensor Part 1 - Safer, More Efficient GPU Kernels Modular Opens Edinburgh & San Francisco Offices Structured Mojo Kernels Part 4 - Portability and the Road Ahead Day Zero Launch: Fastest Performance for Gemma 4 on NVIDIA and AMD Modverse #54: From GTC to Edinburgh, a Community Building Momentum Software Pipelining for GPU Kernels: Part 1 - The Pipeline Problem Structured Mojo Kernels Part 3 - Composition in Practice Modular 26.2: State-of-the-Art Image Generation and Upgraded AI Coding with Mojo Modular at NVIDIA GTC 2026: MAX on Blackwell, Mojo Kernel Porting, and DeepSeek V3 on B200 Structured Mojo Kernels Part 2 - The Three Pillars Modverse #53: Community Builds, Research Milestones, and a Growing Ecosystem Structured Mojo Kernels Part 1 - Peak Performance, Half the Code The Claude C Compiler: What It Reveals About the Future of Software BentoML Joins Modular The Five Eras of KVCache Modular 26.1: A Big Step Towards More Programmable and Portable AI Infrastructure How to Beat Unsloth's CUDA Kernel Using Mojo—With Zero GPU Experience 🔥 Modular 2025 Year in Review The path to Mojo 1.0 Modverse #52: Advancing AI Together — Community Projects & Platform Milestones Modular 25.7: Faster Inference, Safer GPU Programming, and a More Unified Developer Experience "TTS 1 Max" (powered by Modular Platform) Ranked #1 Speech Model on Artificial Analysis PyTorch and LLVM in 2025 — Keeping up With AI Innovation Achieving State-of-the-Art Performance on AMD MI355 — in Just 14 Days Modular Raises $250M to scale AI's Unified Compute Layer Modular 25.6: Unifying the latest GPUs from NVIDIA, AMD, and Apple Matrix Multiplication on Blackwell: Part 4 - Breaking SOTA Modverse #51: Modular x Inworld x Oracle, Modular Meetup Recap and Community Projects Matrix Multiplication on Blackwell: Part 3 - The Optimizations Behind 85% of SOTA Performance Matrix Multiplication on Blackwell: Part 2 - Using Hardware Features to Optimize Matmul Matrix Multiplication on Blackwell: Part 1 - Introduction Modverse #50: Modular Platform 25.5, Community Meetups, and Mojo's Debut in the Stack Overflow Developer Survey Modular Platform 25.5: Introducing Large Scale Batch Inference SF Compute and Modular Partner to Revolutionize AI Inference Economics AI Agents for AWS Marketplace Modverse #49: Modular Platform 25.4, Modular 🤝 AMD, and Modular Hack Weekend Inside Modular Hack Weekend: Top Projects and Community Highlights How is Modular Democratizing AI Compute? 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Hippocratic AI partners with Modular to power flexible, high-quality inference for real-time patient conversations
No items found. · 2026-05-18 · via Modular Blog

May 18, 2026

Modular Team

Problem

Hippocratic AI builds safety-focused AI health agents that converse with patients, helping to close the global shortfall of 15 million healthcare workers. Their Polaris system orchestrates dozens of specialized models in parallel to ensure every interaction is clinically safe, with error rates lower than human clinicians. Hippocratic AI’s systems scale to contacting tens of thousands of patients daily and build trust that AI products can be used in highly regulated industries.

Every millisecond matters in real-time voice, and at Hippocratic AI's scale latency gains compound directly into better patient experience and per-node efficiency. Production deployments run across multiple frameworks, including SGLang and vLLM, with ongoing evaluation of emerging frameworks for additional latency headroom, alongside a hardware roadmap spanning NVIDIA, AMD, and future-generation accelerators.

Solution

Our partnership with Hippocratic AI is a joint effort where both teams worked together to integrate Modular's MAX framework into Hippocratic AI's inference pipelines with NVIDIA B300 GPUs. The evaluation benchmarked MAX against an existing SGLang deployment on 400B+ parameter models, with particular focus on tail latency and on the future portability of the underlying architecture to the heterogeneous hardware.

Modular has rebuilt the AI infrastructure stack from the ground up. From highly optimized, portable kernels written in Mojo, to model serving infrastructure with MAX, to cloud orchestration that can be deployed in Modular's cloud or yours. This vertically integrated approach, built over years of deep infrastructure investment, gives Modular an edge to extract performance against existing frameworks.

MAX delivered across every dimension that matters:

  • Keep every conversation instant. MAX delivers sub-500ms mean time to first token (TTFT) and holds total generation time tight even at high concurrency, supporting responsive, natural interactions.
  • Eliminate latency spikes that break trust. In healthcare, the worst-case interaction matters as much as the average one. MAX achieved approximately 30% faster P99 end-to-end latency in the evaluation for a critical dense production model, addressing the tail-latency spikes that would cause noticeable pauses mid-conversation.
  • Scale to more patients per node. MAX delivered approximately 22% faster mean end-to-end latency at scale for a specific workload, contributing to the per-node efficiency gains of Hippocratic AI targets across its production stack.

Results

By adding MAX to its inference stack, Hippocratic AI opens up a heterogeneous deployment strategy across vendor hardware. The collaboration between Hippocratic AI and Modular is ongoing. Because MAX's portability comes from its optimized kernel library and scheduling architecture rather than vendor-specific glue, the same benefits extend to the large reasoning models becoming central to production AI deployments: supporting flexible, hardware-agnostic deployment for the frontier LLMs used in production.

MetricResult
Time to first token (TTFT)sub-500ms mean
End-to-end latency - P9930% faster
End-to-end latency - Mean~22% faster

About Hippocratic AI

Hippocratic AI has developed the safest generative AI Agents for healthcare. The company believes that generative AI has the ability to bring healthcare abundance to every person in the world. The company focuses on building non-diagnostic patient-facing clinical AI agents and does not allow its agents to be used to prescribe or diagnose. Hippocratic AI has received a total of $404 million in funding and is backed by leading investors, including Andreessen Horowitz, General Catalyst, Kleiner Perkins, Avenir, NVIDIA’s NVentures, Premji Invest, SV Angel, Google’s CapitalG, and numerous health systems. Learn more at https://hippocraticai.com/.

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