Jobs / Bri***
Edge AI Engineer
Bri*** · New York, NY
Visa sponsorship details are locked. Unlock company name and apply link with .
New York, NYHybrid
Remuneration
Not specified
Location
New York, NY
Visa sponsorship
Sponsors visa
Job summary
Bri*** is a forward-thinking software development company dedicated to building innovative solutions that help businesses automate and optimize their operations. We leverage cutting-edge technologies to create scalable, secure, and user-friendly applications.
Benefits
Employment Terms & Visa PolicyThis is a 100% remote, full-time, direct W2 position with Bright Vision
Qualifications
- Bachelor’s or Master’s degree in Computer Science, Computer Engineering, or a related field.
- Six or more years of experience in ML engineering, with significant work on edge or mobile AI.
- Strong proficiency in Python and C++.
- Hands-on experience with model compression, quantization, and pruning techniques.
- Experience with at least one major edge inference framework.
- Solid understanding of mobile and embedded hardware architectures.
- Experience deploying ML models to production on mobile or embedded platforms.
- Strong performance engineering and profiling
- Experience with custom NPU or DSP toolchains.
- Familiarity with federated learning or on-device personalization.
- Exposure to safety-critical or industrial edge deployments.
- Open-source contributions to edge AI frameworks.
Responsibilities
- Design and implement edge AI solutions optimized for diverse hardware including mobile SoCs, NPUs, and embedded accelerators.
- Apply quantization, pruning, distillation, and architectural optimization to fit models within edge constraints.
- Tune model performance for latency, energy efficiency, and memory footprint on target hardware.
- Build cross-platform inference runtimes leveraging frameworks such as TensorFlow Lite, ONNX Runtime, and Core ML.
- Optimize models for specific accelerator backends including DSPs, NPUs, and mobile GPUs.
- Implement on-device model update, versioning, and rollback workflows that allow safe staged rollouts to large device populations and rapid recovery if a model release behaves unexpectedly in the field.
- Design hybrid edge-cloud architectures that gracefully degrade based on connectivity and device capability.
- Build telemetry pipelines that respect privacy while enabling continuous improvement.
- Collaborate with hardware, firmware, and product teams to align AI capabilities with device constraints.
- Implement secure execution paths, model protection, and integrity verification on edge devices.
- Develop benchmarking suites that characterize accuracy, latency, and energy trade-offs across devices.
- Drive responsible AI considerations including on-device privacy and bias evaluation.
Skills
Communication
Degrees
AssociateDegree
Industry
AutomotiveEnergyManufacturingMediaPublic-sector
Company size
Smb