Leads technical strategy and optimization for deploying speech AI models on edge, embedded, and defense hardware platforms with strict constraints. Partners with hardware vendors like Qualcomm and supports government customers via AWS NatSec, requiring 5+ years in systems/edge AI and proficiency in C/C++/Rust.
185k – 245k
Remote5+ YOEEmbedded Engineering
About the role
What You'll Do
Lead the technical strategy for edge deployment of Deepgram's STT and TTS models, defining the architecture for on-device, on-premises, and air-gapped inference across diverse hardware targets.
Optimize models for edge and embedded platforms, driving quantization, pruning, distillation, and runtime optimization to meet strict latency, memory, and power constraints.
Partner with Qualcomm, Motorola, and other hardware vendors to ensure Deepgram models run efficiently on their chipsets, collaborating on SDK integration, performance benchmarking, and joint go-to-market.
Support defense customer requirements through AWS NatSec partnerships, translating mission requirements into engineering deliverables and ensuring Deepgram's solutions meet the unique demands of government environments.
Design and build edge runtime infrastructure, including model packaging, deployment pipelines, OTA update mechanisms, and telemetry for devices operating in low-connectivity or disconnected environments.
Harden deployments for security-sensitive environments, implementing secure boot chains, encrypted model storage, tamper detection, and audit logging appropriate for defense and government use cases.
Benchmark and validate performance across target hardware platforms, establishing repeatable test suites for latency, accuracy, power consumption, and resource utilization.
Collaborate with Research and Engine teams to influence model architectures toward edge-friendly designs from the start, reducing the optimization burden at deployment time.
Provide technical leadership to cross-functional teams working on defense and edge projects, setting engineering standards, reviewing designs, and mentoring engineers on systems and optimization practices.
It's Important To Us That You Have
5+ years of experience in systems engineering, embedded computing, or edge AI deployment, with a track record of delivering production systems on constrained hardware.
Strong proficiency in C, C++, and/or Rust, with experience writing performance-critical code for resource-constrained environments.
Hands-on experience with model optimization for edge deployment, including quantization, pruning, knowledge distillation, or architecture-specific compilation.
Familiarity with edge inference runtimes such as ONNX Runtime, TensorRT, TFLite, or vendor-specific SDKs (Qualcomm SNPE/QNN, MediaTek NeuroPilot, etc.).
Experience with security-conscious development practices, including secure boot, encrypted storage, code signing, and secure deployment pipelines.
Strong understanding of hardware-software interaction — CPU/GPU/NPU architectures, memory hierarchies, power management, and how they affect model inference performance.
Excellent communication skills — you will be the technical face of Deepgram to hardware partners and defense customers, and you need to be credible and clear in both contexts.
It Would Be Great if You Had
Prior experience working on or alongside classified defense programs — you understand SCIFs, accreditation processes, and the operational constraints of secure environments, even if you do not currently hold an active clearance.
Experience with ML model optimization techniques at depth — custom quantization schemes, mixed-precision inference, neural architecture search for edge targets.
Familiarity with ONNX, TensorRT, or similar model compilation and optimization toolchains and their tradeoffs across hardware targets.
Defense or govtech industry experience, including familiarity with procurement processes, ITAR, FedRAMP, or DoD software development standards.
Experience with real-time audio processing on embedded platforms — DSP pipelines, audio codec optimization, or streaming inference on microcontrollers or edge SoCs.
Background in hardware evaluation and benchmarking — systematically comparing accelerators, SoCs, or GPUs for specific workload profiles.
Lead Software Engineer, Advanced Pilot Assistant Software
Beacon AISan Carlos, CA
Lead the design and deployment of robotic, embedded, and autonomy software for advanced pilot assistance systems in safety-critical aviation environments. Requires 5+ years experience with C++/Python, real-time systems, and hardware integration; mentor a small team in a hybrid onsite role.
185k – 260k
Hybrid5+ YOEEmbedded Engineering
Firmware Engineer, Robotics
OpenAISan Francisco, CA
Lead firmware architecture and development for robotics hardware, owning embedded systems design, safety-critical mechanisms, and production readiness. Requires deep experience with Rust, real-time systems, and safety-critical environments.
185k – 268k
On-site7+ YOEEmbedded Engineering
Senior Firmware Engineer
EightsleepSan Francisco, CA
Develops firmware for sleep technology hardware, integrating sensors, drivers, and OTA updates for large device fleets. Requires 5+ years in C/C++ firmware, low-memory environments, protocols like UART/I2C/SPI, and hardware debugging tools.
180k – 210k
Hybrid5+ YOEEmbedded Engineering
Senior Software Integration Engineer
Applied IntuitionSunnyvale, CA
Develops and integrates full-system software features in C/C++ for VehicleOS, spanning embedded applications, cloud, and UI for customer vehicle projects. Collaborates with hardware teams, manages customer projects, and ensures end-to-end testing and reliability. Requires 3+ years experience and strong C/C++ skills.
Develops and tunes calibration, localization, and mapping algorithms for autonomous vehicles using C++ and Python. Requires 6+ years in robotics/AV software, MS/PhD in robotics, and expertise in 3D LiDAR techniques and state estimation.