Title: Machine Learning Manager
Locations: Irvine, CA - Hybrid
Duration: 12+ Months
Note: Occasional travel to deployment sites or test locations may be needed
Job Description:
Lead the development and operationalization of machine learning systems powering the Voice AI experience. This role is central to ensuring performance, scalability, and reliability across real-time models that support speech, natural language understanding, and agent behaviour. Manage a team of MLEs and partner with AI Engineers, QA, and DevOps to deliver high-quality agent performance with a strong focus on latency, integration with restaurant systems (e.g., HME, POS), and production excellence.
Key Responsibilities
ML System Design & Architecture
Lead the design of end-to-end ML pipelines for speech, ASR, and NLU modules
Optimize model performance for real-time interaction, including latency, uptime, and inference cost
Implement and evolve model evaluation, testing, and monitoring frameworks
Infrastructure & Integration
Collaborate with engineering to integrate ML components with external systems (HME, menu boards, POS)
Support scalable deployment strategies across markets and environments
Drive MLOps best practices in CI/CD, rollback, logging, and observability
Leadership & Collaboration
Mentor and guide a team of MLEs and junior ML engineers
Partner with product, AI engineering, and QA to define technical scope, delivery targets, and quality standards
Support internal upskilling and technical review of AI-driven components
Required Qualifications:
6+ years of experience in machine learning, including at least 2 years in technical leadership roles
Proven expertise in deploying NLP, ASR, or LLM-based systems in real-time applications
Strong programming skills in Python and ML tooling (e.g., PyTorch, HuggingFace, ONNX, MLflow)
Experience optimizing model latency and integrating ML with backend infrastructure.