Descripción
At General Motors, our product teams are redefining mobility. Through a human-centered design process, we create vehicles and experiences that are designed not just to be seen, but to be felt. We’re turning today’s impossible into tomorrow’s standard —from breakthrough hardware and battery systems to intuitive design, intelligent software, and next-generation safety and entertainment features.
Every day, our products move millions of people as we aim to make driving safer, smarter, and more connected, shaping the future of transportation on a global scale..
The Role:
General Motors is seeking an experienced Automation AI Staff Engineer with deep expertise in manufacturing systems and production AI to drive the next generation of intelligent manufacturing solutions. In this role, you will be responsible for designing, building, and deploying advanced AI/ML systems specifically tailored for manufacturing operations. You will leverage Domain-Specific LoRA fine-tuning, multi-modal AI models, and enterprise-grade infrastructure to solve complex manufacturing challenges across GM's global production facilities. This role requires hands-on technical execution combined with the ability to architect scalable, production-ready AI solutions that directly impact manufacturing efficiency, quality, and innovation.
Success in this role requires a unique blend of AI/ML expertise, manufacturing domain knowledge, and systems engineering excellence. You will work at the intersection of cutting-edge AI technology and real-world manufacturing operations, collaborating with plant engineers, quality teams, robotics specialists, and IT infrastructure teams to digitize Manufacturing.
What You'll Do:
-
Design and implement Domain-Specific LoRA fine-tuning architectures for manufacturing AI applications, including quality inspection, predictive maintenance, process optimization, and robotics control
-
Develop and deploy multi-modal AI systems that integrate machine vision, controls system, robotics controls, and production telemetry for real-time manufacturing intelligence
-
Build production-grade ML infrastructure supporting model training, fine-tuning, deployment, and monitoring across distributed manufacturing environments
-
Architect and develop full-stack AI applications using React/TypeScript frontend with custom state management and FastAPI backend with async patterns and optimized request routing
-
Implement high-performance database solutions using PostgreSQL with pgvector optimization for embedding storage, query performance tuning, and distributed architectures
-
Deploy and orchestrate AI services using Kubernetes with service mesh implementation, automated scaling strategies, and comprehensive monitoring and alerting
-
Develop proprietary embedding models optimized for manufacturing domain knowledge, including defect patterns, assembly sequences, and process parameters
-
Optimize CUDA kernels and implement parameter-efficient training techniques for large-scale model fine-tuning on manufacturing datasets
-
Design and build machine vision systems for automated quality inspection, defect detection, and process verification
-
Train and deploy supervised learning models for robotics control and manufacturing execution system integration, enabling autonomous operations across production lines
-
Collaborate with cross-functional teams including manufacturing engineers, quality specialists, robotics teams, and plant operations to deliver measurable improvements in production metrics
-
Establish MLOps best practices including CI/CD pipelines, model versioning, A/B testing, and performance monitoring for manufacturing AI deployments
Your Skills & Abilities (Required Qualifications):
-
10+ years professional software engineering or machine learning engineering experience
-
10+ years specialized experience developing AI/ML solutions for manufacturing automation, including controls systems integration, robotics applications, and machine vision
-
Deep expertise in LoRA fine-tuning, including parameter-efficient training, dynamic adapter loading, and domain-specific model customization
-
Strong programming skills in Python with proficiency in PyTorch (preferred) or TensorFlow for model development and training and proficiency in C# or C++ for production system development.
-
Production experience with full-stack development: React/TypeScript with custom hooks, component composition patterns, and type-level programming
-
Expertise in backend development using FastAPI with async/await patterns, custom middleware, dependency injection, and optimized request routing
-
Advanced database engineering skills with PostgreSQL including custom extensions, pgvector optimization, query performance tuning, and distributed database architectures
-
Hands-on experience with Kubernetes deployments, service mesh implementation, Docker multi-stage builds, and automated scaling strategies
-
Demonstrated ability to deploy enterprise-grade ML models with high reliability, low latency, and production monitoring
-
Proven experience executing end-to-end automation projects including: controls system programming (PLC, HMI), machine vision system deployment (camera calibration, illumination setup, vision inspection programming), and robotics integration (programming, calibration)
What Will Give You a Competitive Edge (Preferred Qualifications):
-
Experience fine-tuning and adapting foundation models for manufacturing domains using LoRA, QLoRA, and parameter-efficient techniques, with ability to train custom models when pre-trained solutions are insufficient
-
Deep expertise in multi-modal transformer architectures integrating vision encoders, sensor fusion layers, and control signal embeddings for end-to-end manufacturing AI systems
-
Experience building custom training loops with gradient accumulation, mixed-precision training, dynamic loss scaling, and advanced optimization strategies (AdamW, LAMB, Lion)
-
Deep knowledge of computer vision architectures beyond standard CNNs: Vision Transformers (ViT), DETR, Mask R-CNN, EfficientDet, and custom architectures for defect detection and quality inspection
-
Expertise in self-supervised learning, contrastive learning (SimCLR, MoCo), and few-shot learning techniques for scenarios with limited labeled manufacturing data
-
CUDA optimization experience for inference acceleration, including custom operator implementation, kernel fusion, and memory-efficient processing pipelines
-
Advanced model compression techniques including quantization-aware training, pruning, knowledge distillation, and neural architecture search for manufacturing-specific constraints
-
Experience with MLOps best practices including model drift detection, automated retraining pipelines, A/B testing frameworks, shadow deployments, and production monitoring at scale
-
Strong collaborative skills working with manufacturing engineers and plant teams to translate production challenges into ML problem statements and deliver solutions that integrate seamlessly with existing systems
-
Experience designing and deploying AI-driven automation solutions in industrial or manufacturing environments.
-
Practical application of machine learning and large language models (LLMs) for equipment control, diagnostics, optimization, or engineering workflows.
-
Demonstrated ability to architect scalable automation platforms integrating PLCs, robotics, edge computing, cloud services, and enterprise data systems.
-
Experience defining standards, governance, and best practices for AI-enabled automation to ensure safety, reliability, cybersecurity, and long-term maintainability.
-
Knowledge of GM's controls standards (Global Common Controls Hardware Design Standards and Global Common Controls Software Design Integration Standards
Este puesto se clasifica como híbrido. Esto significa que se espera que el candidato seleccionado se presente en una ubicación específica al menos 3 veces por semana {o con otra frecuencia indicada por su líder}.
El candidato seleccionado deberá viajar menos del 25 % del tiempo para este puesto.
Este puesto podría ser elegible para beneficios de relocalización.
Información sobre diversidad
General Motors se compromete a ser un lugar de trabajo en el cual no solo no haya discriminación indebida, sino que fomente con sinceridad la inclusión y el sentido de pertenencia. Creemos firmemente que la diversidad del personal crea un entorno en el cual nuestros empleados pueden prosperar y desarrollar mejores productos para nuestros clientes. Instamos a los candidatos interesados a que revisen las responsabilidades y aptitudes clave para cada puesto y se postulen para los puestos que coincidan con sus habilidades y capacidades. Es posible que, cuando corresponda, se les pida a los solicitantes que están en el proceso de contratación que completen satisfactoriamente una o más evaluaciones relacionadas con su función y/o una evaluación previa al empleo antes de comenzar a trabajar. Para obtener más información, visite Cómo contratamos.
Declaración de igualdad de oportunidades en el empleo (EE.UU.)
General Motors se enorgullece de ser un empleador que ofrece igualdad de oportunidades. Todos los solicitantes calificados serán tenidos en cuenta para el empleo sin distinción de raza, color, religión, sexo, orientación sexual, identidad de género, nacionalidad, discapacidad o condición de veterano protegido.
Adecuaciones (EE.UU. y Canadá)
General Motors ofrece oportunidades a todos los solicitantes de empleo, incluyendo las personas con discapacidades. Si necesita una adecuación razonable para ayudarle con su búsqueda o solicitud de empleo, envíenos un correo electrónico a [email protected] o llámenos al 800-865-7580. En su correo electrónico, incluya una descripción del puesto específico que está solicitando, así como el título del empleo y el número de solicitud del puesto que está solicitando.




