Senior Staff Embedded AI Engineer

Renesas Electronics America Inc.
Fulton, United States of America
1 month ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Fulton, United States of America

Tech stack

Artificial Intelligence
Artificial Neural Networks
C++
Code Generation
Computer Engineering
Embedded Software
Python
Machine Learning
Performance Tuning
Real-Time Operating Systems
TensorFlow
Software Engineering
PIC Microcontroller
Real Time Systems
PyTorch
Information Technology
Bare Metal
Machine Learning Operations
Hardware Debugging

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

Requirements

  • 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., * 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.

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