Job Description
Principal Architect – AI Engineering
Location: San Francisco Bay Area, US
Sector: Enterprise AI
Compensation: Competitive Package
We are partnering with a rapidly growing enterprise technology platform that is redefining how AI drives business intelligence and decision-making. The organization leverages cutting-edge machine learning, conversational AI, and automation to deliver high-impact solutions to complex enterprise challenges.
They are looking for a Principal Architect to shape the next generation of AI capabilities. The successful candidate will define the technical vision for model training, evaluation, and deployment at scale, while guiding a talented team of ML and data engineers. Your work will influence how advanced AI powers real-world enterprise solutions.
Key Responsibilities:
- Define the architecture for model training, evaluation, and deployment across the AI platform.
- Evaluate and select model approaches (open-weight, commercial, hybrid) against enterprise accuracy and cost requirements.
- Design evaluation frameworks that measure model quality across multiple task categories.
- Architect training data pipelines, including synthetic data generation and quality validation.
- Lead design of retrieval-augmented generation (RAG) systems integrating structured knowledge retrieval.
- Establish technical standards for model safety, tenant data isolation, and responsible AI.
- Mentor and guide ML and data engineers across multiple locations, ensuring delivery excellence.
- Collaborate closely with product, AI platform, and cloud operations teams.
- Hands-on coding, prototyping, and reviewing early-phase approaches.
The Ideal Candidate:
- Proven experience in software engineering, focused on ML/AI systems.
- Proven experience training, fine-tuning, and deploying large language models to production.
- Deep expertise in transformer architectures, training optimization techniques (LoRA, QLoRA, PEFT, RLHF, DPO), and inference serving.
- Proficiency in Python, PyTorch, and ML infrastructure tooling.
- Advanced degree in Computer Science, Machine Learning, or equivalent practical experience.
- Experience with enterprise B2B SaaS platforms is a strong advantage.