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Persimmons

Posted 3 months ago

Open

Technical Lead, Runtime Software/Hardware (Spatial AI Accelerator)

San JoseOn-siteFull-time

AI Summary

Technical Lead responsible for runtime software/hardware and compiler integration for a spatial AI accelerator. Oversees end-to-end runtime stack, device firmware interfaces, and cross-stack collaboration while mentoring a cross-disciplinary team.

About this role

Persimmons is building the infrastructure that will power the next decade of AI. Founded in 2023 by veteran technologists from the worlds of semiconductors, AI systems, and software innovation, We’re on a mission to enable smarter devices, more sustainable data centers, and entirely new applications the world hasn’t imagined yet.

Why join us:

We’re growing fast and looking for bold thinkers, builders, and curious problem-solvers who want to push the limits of AI hardware and software. If you're ready to join a world-class team and play a critical role in making a global impact - we want to talk to you.

Summary of Role:

Persimmons.ai seeks a multidisciplinary Technical Lead for runtime software/hardware and compiler integration, focused on our next-generation custom spatial AI accelerator. You will architect and guide the runtime system bridging compiler, host, driver, device firmware, and control hardware: enabling high-performance, robust, and scalable execution of modern AI workloads.

This is a hands-on and technical leadership role spanning system design, cross-stack engineering, technical mentorship, and collaboration with compiler, ML framework, and hardware teams.

What you’ll do:

  • Architect, design, and implement the runtime stack for Persimmons' custom spatial accelerator, covering host drivers, device runtime, and hardware/firmware control loops.
  • Lead technical direction and decisions for runtime–hardware interface, device work and command queue infrastructure, and memory management.
  • Coordinate with compiler/backend, ML systems, and hardware architects to ensure seamless end-to-end ML model execution.
  • Define and co-design hardware support features essential to runtime: queueing structures, synchronization primitives, interrupt/event signaling, dispatching and orchestrating ML workloads on spatial execution fabric.
  • Drive performance analysis, development tools for tracing, bottleneck identification, and runtime-level optimizations for latency, throughput, and hardware utilization.
  • Build and mentor a cross-disciplinary engineering team focused on runtime and system validation—establishing best practices, technical standards, and robust software-hardware collaboration.
  • Champion efficient tooling, simulation/emulation environments, and test infrastructure for system validation and robust runtime dev/debug.

Requirements

We do not expect candidates to meet all of the requirements listed below; strong candidates will demonstrate expertise in several key areas.

  • Deep experience architecting runtime software, device firmware, hardware interfaces, or control systems for AI accelerators and/or high-performance SoCs.
  • Hands-on expertise developing drivers, resource managers, command/queue control, and dispatching and synchronization primitives (queues, barriers, event notifications) for custom hardware.
  • Strong understanding of C/C++ multi-threaded programming and concurrent system design, including experience developing and debugging software that leverages threads, synchronization primitives, and parallel runtime constructs to maximize hardware utilization and performance in latency- and throughput-sensitive environments.
  • Solid understanding of hardware–software co-design principles: memory hierarchies, DMA engines, interconnects, job scheduling, on-device synchronization.
  • Experience integrating kernel libraries into device runtime stacks—connecting optimized compute kernels (such as SIMD operations and common AI operator libraries) to runtime software through seamless invocation and well-defined APIs, efficient scheduling and memory/resource management.
  • Experience with modern large language model (LLM) inference servers and serving stacks (e.g., vLLM, TensorRT-LLM, Triton Inference Server, Hugging Face Text Generation Inference, Ray Serve), including their architecture, runtime scheduling, memory management, batching, streaming, and distributed deployment. Understanding of how runtime design, kernel integration, and hardware acceleration impact performance, scalability, and latency in LLM serving workloads.
  • Experience with system-level performance tuning, debugging complex hardware–software interactions, and building scalable test/validation infrastructure.
  • High level of understanding and 5+ years of experience with in C/C++; familiarity with hardware description languages (Verilog/VHDL/SystemVerilog), or firmware development is a strong plus.
  • Demonstrated fluency with modern AI tools and workflows (e.g., leveraging AI assistants for research, analysis, or productivity).
  • Drive for innovation—keeping up with new architectures, techniques, and runtime models in ML or spatial computing.

Benefits

  • Competitive salary and benefits package.
  • Flexible PTO
  • 401k

**Please note **: Our organization does not accept unsolicited candidate submissions from external recruiters or agencies. Any such submissions, regardless of form (including but not limited to email, direct messaging, or social media), shall be deemed voluntary and shall not create any express or implied obligation on the part of the organization to pay any fees, commissions, or other compensation. Direct contact of employees, officers, or board members regarding employment opportunities is strictly prohibited and will not receive a response.

Skills

AI Accelerator Runtime IntegrationBuild And Debugging Of Complex HW/SW InteractionsC/C++ Multi-threaded ProgrammingCommand/queue ControlDevice FirmwareDispatching And Synchronization PrimitivesDMA EnginesDrivers And Resource ManagersHardware/software Co-designHost DriversHugging Face Text Generation InferenceInterrupt/event SignalingKernel/runtime IntegrationLLM Serving Stacks (e.g., Triton, TensorRT-LLM)Memory ManagementPerformance Tuning And ProfilingRay ServeRuntime SchedulingSimulation/emulation EnvironmentsSystem-level DebuggingTest InfrastructureTooling For Tracing And Performance AnalysisVerilog/VHDL/SystemVerilog (strong Plus)

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