Position Overview
We are seeking a specialized MLOps Engineer with mandatory experience in building and maintaining pipelines for evaluation and deployment of agentic systems . This role is critical to our growing AI / ML practice in Bengaluru, focusing on productionizing autonomous AI agents and multi-agent systems at enterprise scale.
Key Responsibilities
Design and implement end-to-end MLOps pipelines specifically for agentic systems including autonomous agents, multi-agent frameworks, and LLM-based applications
Build robust evaluation frameworks for agent performance, including metrics for task completion, decision quality, and agent collaboration
Deploy and orchestrate agentic systems using containerization and microservices architectures
Implement comprehensive monitoring for agent behavior, performance degradation, and system health
Establish version control and experiment tracking for agent configurations, prompts, and model weights using MLflow (mandatory)
Create automated testing pipelines for agent reasoning, tool usage, and edge case handling
Build scalable infrastructure for agent deployment including API gateways, message queues, and state management
Implement safety and guardrail mechanisms for production agent deployments
Develop rollback and A / B testing strategies for agent updates and model changes
Collaborate with ML researchers to productionize novel agent architectures
Required Technical Skills
MLOps & Agentic Systems (Mandatory) :
Proven experience building evaluation and deployment pipelines for agentic systems
Expert-level proficiency with MLflow for experiment tracking, model registry, and deployment
Experience with agent frameworks (LangChain, AutoGen, CrewAI, or similar)
Knowledge of prompt engineering and LLM orchestration patterns
Understanding of agent memory systems and state management
Programming & Infrastructure :
Advanced Python programming with asyncio experience
Docker and Kubernetes for containerized agent deployment
Experience with message brokers (Redis, RabbitMQ, Apache Kafka)
RESTful API design and implementation
Microservices architecture patterns
Cloud & DevOps :
AWS / Azure / GCP cloud platforms with focus on serverless and container services
CI / CD pipelines (Jenkins, GitLab CI, GitHub Actions)
Infrastructure as Code (Terraform, CloudFormation)
Monitoring and observability tools (Prometheus, Grafana, OpenTelemetry)
ML & Data :
Understanding of LLM fine-tuning and deployment
Experience with vector databases (Pinecone, Weaviate, Chroma)
Knowledge of RAG (Retrieval-Augmented Generation) systems
Data pipeline tools (Apache Airflow, Prefect)
Qualifications
Bachelor's / master's degree in computer science, Engineering, or related field
2-5 years of experience with mandatory focus on agentic systems MLOps
Demonstrated experience with MLflow in production environments
Strong software engineering fundamentals and design patterns
Experience with distributed systems and scalability challenges
Understanding of AI safety and alignment considerations
Excellent problem-solving and debugging skills
What We Offer
Work on cutting-edge agentic AI systems for Fortune 500 clients
Opportunity to shape MLOps practices for next-generation AI systems
Competitive compensation with performance bonuses
Comprehensive health and wellness benefits
Flexible hybrid work arrangements
Dedicated learning budget for conferences and certifications
Note : Applications without demonstrated experience in agentic systems MLOps and MLflow will not be considered.
Engineer • Thrissur, Kerala, India