Job Title:
Data Scientist – Agentic AI & MLOps
Location:
Bangalore - Hybrid (3 days work from office, 2 days from home)
About Us:
Our client delivers next-generation security analytics and operations management. They secure organisations worldwide by staying ahead of cyber threats, leveraging AI-reinforced capabilities for unparalleled protection.
Job Overview:
We’re seeking a Senior Data Scientist to architect agentic AI solutions and own the full ML lifecycle—from proof-of-concept to production. You’ll operationalise LLMs, build agentic workflows, implement MLOps best practices, and design multi-agent systems for cybersecurity tasks.
Key Responsibilities:
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Operationalise large language models and agentic workflows (LangChain, LangGraph, LlamaIndex, Crew.AI) to automate security decision-making and threat response.
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Design, deploy, and maintain multi-agent AI systems for log analysis, anomaly detection, and incident response.
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Build proof-of-concept GenAI solutions and evolve them into production-ready components on AWS (Bedrock, SageMaker, Lambda, EKS/ECS) using reusable best practices.
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Implement CI/CD pipelines for model training, validation, and deployment with GitHub Actions, Jenkins, and AWS CodePipeline.
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Manage model versioning with MLflow and DVC, set up automated testing, rollback procedures, and retraining workflows.
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Automate cloud infrastructure provisioning with Terraform and develop REST APIs and microservices containerised with Docker and Kubernetes.
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Monitor models and infrastructure through CloudWatch, Prometheus, and Grafana; analyse performance and optimise for cost and SLA compliance.
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Collaborate with data scientists, application developers, and security analysts to integrate agentic AI into existing security workflows.
Qualifications:
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Bachelor’s or Master’s in Computer Science, Data Science, AI or related quantitative discipline.
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4+ years of software development experience, including 3+ years building and deploying LLM-based/agentic AI architectures.
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In-depth knowledge of generative AI fundamentals (LLMs, embeddings, vector databases, prompt engineering, RAG).
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Hands-on experience with LangChain, LangGraph, LlamaIndex, Crew.AI or equivalent agentic frameworks.
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Strong proficiency in Python and production-grade coding for data pipelines and AI workflows.
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Deep MLOps knowledge: CI/CD for ML, model monitoring, automated retraining, and production-quality best practices.
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Extensive AWS experience with Bedrock, SageMaker, Lambda, EKS/ECS, S3 (Athena, Glue, Snowflake preferred).
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Infrastructure as Code skills with Terraform.
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Experience building REST APIs, microservices, and containerization with Docker and Kubernetes.
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Solid data science fundamentals: feature engineering, model evaluation, data ingestion.
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Understanding of cybersecurity principles, SIEM data, and incident response.
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Excellent communication skills for both technical and non-technical audiences.
Preferred Qualifications:
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AWS certifications (Solutions Architect, Developer Associate).
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Experience with Model Context Protocol (MCP) and RAG integrations.
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Familiarity with workflow orchestration tools (Apache Airflow).
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Experience with time series analysis, anomaly detection, and machine learning.