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Senior Staff Embedded Engineer

Job

Renesas Electronics

Jessup, MD (In Person)

Full-Time

Posted 6 days ago (Updated 1 day ago) • Actively hiring

Expires 7/4/2026

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Job Description

Senior Staff Embedded Engineer at Renesas Electronics Senior Staff Embedded Engineer at Renesas Electronics in Jessup, Maryland Posted in 4 days ago.
Type:
full-time
Job Description:
Renesas is seeking a Sr. Staff Embedded AI Engineer to develop advanced TinyML and embedded AI solutions targeting Renesas microcontroller and MPU platforms (RA, RL78, RX, RZ). This is a highly technical, hands-on role focused on building cloud-based model translation infrastructure and optimizing network inference for resource-constrained embedded systems. You will contribute to a small team developing a service that converts trained machine learning models into efficient C/C++ implementations for deployment on microcontrollers. The ideal candidate combines strong embedded software expertise with solid machine learning fundamentals and is comfortable working across the stack - from neural network internals to low-level performance optimization. You should be someone who contributes new ideas, challenges assumptions, and helps improve both tooling and embedded implementation quality Job Description BS/MS/PhD in Electrical Engineering, Computer Engineering, Computer Science, or related field. 6+ years of experience in embedded systems software development. Strong proficiency in C/C++ for embedded platforms. Strong proficiency in Python for tooling, automation, or ML workflows. Experience deploying machine learning models to resource-constrained systems. Solid understanding of neural network fundamentals and internals Experience with machine learning frameworks such as TensorFlow or PyTorch. Experience optimizing performance, memory footprint, and power consumption on embedded targets. Qualifications
  • Experience developing inference runtimes, model translation tools, or code generation systems.
  • Experience with CMSIS-NN or other embedded ML acceleration libraries.
  • Experience optimizing quantized neural networks for embedded systems using
SIMD/DSP
acceleration.
  • Familiarity with Renesas MCU/MPU platforms (RA, RL78, RX, RZ).
  • Experience with real-time systems (RTOS or bare-metal).
  • Hardware debugging experience.