Senior / Lead Agentic AI & Data Science Engineer (Product Engineering)
CirrusLabs
5 - 10 years
Bengaluru
Posted: 29/01/2026
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Job Description
Experience : 7 Years
Notice Period : Immediate Joiner
Location : Bangalore
Shift time : 2 PM to 11 PM
Core Responsibilities
- Agentic AI & LLM Systems Design, implement, and optimize Agentic AI architectures involving planning, reasoning, memory, tool-use, and orchestration.
- Build and manage multi-agent systems for complex workflows, automation, and decision intelligence.
- Implement Retrieval-Augmented Generation (RAG) pipelines with structured and unstructured data sources.
- Integrate AI agents with enterprise APIs, databases, SaaS platforms, and internal tools .
- Develop robust prompt strategies, agent workflows, fallback mechanisms, and evaluation pipelines.
- Deploy and operate LLM-based systems with cost, latency, reliability, and safety considerations.
- Data Science & Machine Learning Build, train, evaluate, and deploy ML/DL models across NLP, structured data, time-series, recommendation, and predictive analytics.
- Perform data exploration, feature engineering, statistical analysis, and hypothesis testing .
- Design scalable training pipelines , experiment tracking, and model versioning.
- Monitor model performance, drift, bias, and data quality in production environments.
- Apply explainability and interpretability techniques where required.
- Product Engineering & System Design Own the full AI product lifecycle : problem definition design development deployment monitoring iteration.
- Translate business and product requirements into scalable, modular, and maintainable AI solutions .
- Design distributed, fault-tolerant, and extensible architectures for AI platforms.
- Collaborate closely with product managers, UX, backend, frontend, and platform teams .
- Enforce engineering best practices including code quality, testing, documentation, and performance optimization .
- Multi-Cloud & Infrastructure Engineering Design, deploy, and operate AI systems across AWS, Azure, and GCP (multi-cloud or hybrid).
- Use Docker, Kubernetes, Helm , and cloud-native services for scalable deployments.
- Implement Infrastructure as Code (IaC) using Terraform / CloudFormation.
- Leverage managed AI/ML services where appropriate (SageMaker, Vertex AI, Azure ML).
- Optimize cloud resource utilization and cost across environments.
- Security, Governance & Reliability Ensure data security, privacy, and compliance across AI systems.
- Implement secure access control, secrets management, and encrypted data pipelines.
- Apply Responsible AI practices : bias detection, fairness, explainability, auditability.
- Design systems for high availability, disaster recovery, and fault tolerance .
- Establish governance standards for models, data, and AI agents.
- Technical Leadership & Collaboration Provide technical guidance and mentorship to junior engineers and data scientists.
- Lead architecture discussions, technical reviews, and best-practice adoption.
- Drive innovation in AI/Agentic systems aligned with product and business goals.
- Communicate complex technical concepts clearly to both technical and non-technical stakeholders.
- Cloud, DevOps & MLOps Strong hands-on experience with AWS, Azure, and/or GCP (at least two preferred)
- Docker, Kubernetes, Helm
- CI/CD: GitHub Actions, GitLab CI, Jenkins
- MLOps tools: MLflow, Kubeflow , cloud-native ML platforms
- Monitoring and observability tools
- Architecture & Distributed Systems Distributed systems and event-driven architectures
- Asynchronous processing and workflow orchestration
- Scalability, reliability, and performance engineering
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