Job Title: AI Engineer, Team Lead Company Name: Gravyty Job Details: $123k-$204k/yrRemoteFull,Time Job Url: https://hiring.cafe/viewjob/i0xnvn5jabwf6tlb Job Description: Posted 6d agoAI Engineer, Team Lead@ GravytyView All JobsWebsiteUnited States$123k-$204k/yrRemoteFull TimeResponsibilities:Architecting code, Leading team, Mentoring engineersRequirements Summary:5+ years AI/ML engineering; 2+ years leading ML team; Bachelor's or higher in ML/AI/Software Engineering; expert Python/SQL/TypeScript; PyTorch, TensorFlow, HuggingFace, Scikit-learn, Pandas; AWS or GCP.Technical Tools Mentioned:Docker, Git, CI/CD, MLFlow, OpenAPI, FastAPI, LangChain, LangGraph, PyTorch, TensorFlow, HuggingFace, Scikit-learn, Pandas, AWS, GCP, VectorDBs About the RoleAs an AI Engineer, Team Lead, you will be the technical engine coordinating AI efforts across the entire Gravyty product ecosystem. This is a high-impact "Player-Coach" role designed for a Lead Engineer who thrives on staying in the codebase—coding 70% of the time—while providing the tactical leadership and mentoring necessary to scale our AI initiatives. You will lead a high-output team to transform engagement through cutting-edge LLM applications, ensuring our suite of products provides instant, accurate, and multilingual support.Core Responsibilities High-Impact Development: Spend most of your time architecting and writing production-ready code for core AI engagement features across Gravyty’s platforms. Team Leadership & Delivery: Lead the AI team to oversee project delivery, ensuring high standards of quality, efficiency, and operational excellence. Technical Mentoring: Provide expert-level code reviews and mentor junior engineers to foster a culture of technical excellence within the ML team. Strategic Coordination: Lead the planning and coordination of AI projects across all product lines, ensuring alignment with institutional needs for recruitment, retention, and career readiness. Advanced AI Implementation: Build and optimize Retrieval-augmented generation (RAG) systems and agentic workflows to deliver personalized user support. System Health: Oversee the deployment of MLOps systems to ensure the reliability and scalability of virtual assistants and predictive analytics tools. Security-First Engineering: Ensure all AI features comply with enterprise-grade encryption and standards such as SOC2 Type 2, FERPA, GDPR, and HIPAA. Required QualificationsTechnical Expertise Agentic AI: Specialized expertise in designing and deploying Agentic AI systems and autonomous workflows.Languages: Mastery of Python, SQL, and TypeScript (Node.js) is required. AI/ML Frameworks: Extensive experience with PyTorch, TensorFlow, HuggingFace, Scikit-learn, and Pandas. Modern AI Patterns: Proven expertise in LLMs, RAG, similarity search algorithms, and VectorDBs. Agentic Frameworks: Hands-on experience with LangChain or LangGraph. Backend & API: Proficiency with OpenAPI, FastAPI, and building scalable microservices. Infrastructure & Tools: Deep knowledge of Docker, Git, CI/CD, and MLFlow. Cloud Platforms: Significant experience deploying AI solutions on AWS or GCP. Experience & Education Industry Experience: 5+ years of professional experience in AI/ML engineering. Leadership Experience: 2+ years of experience managing a high-output ML team. Education: Bachelor’s degree or higher in Machine Learning, Artificial Intelligence, Software Engineering, or a related field.