MaintainX is the world’s leading mobile-first Asset and Work Intelligence platform for industrial and frontline environments. We are seeking a highly skilled and motivated Senior Applied Machine Learning Engineer to guide the technical direction and architecture of our Predictive Maintenance and Asset Intelligence initiatives.
Responsibilities:
- Lead technical direction for predictive maintenance, anomaly detection, and LLM-powered intelligence across MaintainX products
- Architect end-to-end ML systems—from data ingestion and feature engineering to model training, deployment, and monitoring
- Mentor a growing team of ML and data engineers, instilling best practices for experimentation, evaluation, and model lifecycle management
- Partner with product and engineering leaders to align AI roadmap with customer needs and business goals
- Design reliable data and feedback loops that connect customer telemetry and operator feedback to model retraining
- Drive performance optimization through techniques like quantization, distillation, and scalable inference serving
- Work with LLM frameworks (LangChain, LlamaIndex, Hugging Face) to build reasoning systems and agentic workflows for asset and work intelligence
- Ensure ML infrastructure meets production standards for latency, reliability, explainability, and security
Requirements:
- 7+ years of experience in Machine Learning, Data Science, or Applied AI
- Expertise in Python, and strong familiarity with PyTorch, TensorFlow, and cloud ML stacks (AWS, Databricks, or similar)
- Proven experience deploying production ML systems—not just prototypes—at scale
- Strong background in LLMs, time-series modeling, and anomaly detection for real-world data
- Demonstrated ability to lead architectural decisions, mentor engineers, and collaborate across product, data, and platform teams
- Knowledge of MLOps tooling (Docker, Kubernetes, Weights & Biases, MLflow, SageMaker)
- Advanced degree (MS/PhD) in Computer Science, Machine Learning, or related field preferred
- Experience with OCR for extracting structured data from documents
- Background in time-series modeling for predictive maintenance and anomaly detection
- Familiarity with Industrial IoT systems (sensors, telemetry, edge computing)
- Experience applying reinforcement learning or agentic architectures for decision-making and control systems
- Contributions to open-source ML frameworks or research in reliability, explainability, or digital twins