To Apply for this Job Click Here
Job Description
- Lead the design and development of AI/ML-enabled telemetry pipelines across GPU-enabled embedded and edge systems, enabling real-time analytics and performance optimization
- Develop software, algorithms, and C++-driven firmware components for AI systems running on embedded GPUs, ARM MCUs, DSPs, and FPGAs
- Build and deploy deterministic Edge AI pipelines on NVIDIA platforms to support low-latency inference and system-level decisioning
- Develop and optimize Edge AI applications across Apple (Core ML + Metal) and Android devices (TensorFlow Lite GPU runtime, OpenCL/OpenGL ES)
- Design and implement end-to-end data pipelines transforming low-level system telemetry (via C++/firmware interfaces) into structured datasets for analytics, ML, and performance tuning
- Translate GPU, thermal, and workload telemetry into actionable insights, optimization strategies, and automated control mechanisms
- Partner with firmware, hardware, and platform engineering teams to ensure scalable, high-quality data capture and integration across system layers
- Define data models, schemas, and interface contracts to enable reliable data ingestion, observability, and AI-driven system intelligence
Requirements
- 10+ years of experience in AI/ML engineering, data engineering, telemetry systems, or embedded/edge computing environments
- Strong experience developing AI software, algorithms, and C++-based systems/firmware for embedded platforms (GPUs, ARM MCUs, DSPs, FPGAs)
- Proven expertise building and optimizing Edge AI solutions across devices (Core ML, Metal, TensorFlow Lite, GPU runtimes)
- Proficiency in Python for data modeling, pipeline development, and ML-related data processing
- Strong working expertise in C++ for low-level system integration, firmware interfacing, and performance-sensitive components
- Experience designing and implementing telemetry pipelines and transforming hardware/firmware signals into structured datasets for analytics or ML
- Strong understanding of time-series data, signal processing, and real-time system constraints in AI/edge environments
- Experience analyzing system-level telemetry (GPU utilization, thermals, workload behavior) to drive performance optimization and AI-driven decisioning
1460932_1782765786
