Job Description
- Design and implement production-grade AI/ML and Agentic AI solutions that drive end-to-end transformation across pricing, underwriting, and sales.
- Partner with Cloud, AIOps, Data Science, LOB IT, Enterprise Architecture, and Data teams to provision infrastructure, deploy services, and operate scalable AI platforms using modern DevOps practices.
- Leverage AI Platform, agent development standards, and agent frameworks to build, deploy, monitor and maintain agentic solutions & AI/ML pipelines.
- Architect and build highly available, scalable, secure, and fault-tolerant AI/ML systems, applying modern distributed system patterns such as event-driven, pub/sub, and point-to-point architectures.
- Design and implement agent memory, evaluation, and feedback mechanisms to enable quality, safety, and reliability-driven tuning and continuous improvement.
- Develop advanced context engineering, adaptive prompting, multi-agent coordination, and RAG/Agentic RAG systems using techniques such as HyDE, RAPTOR, and GraphRAG to improve accuracy and relevance.
- Write high-quality, production-ready Python (e.g., asyncio, FastAPI, Pydantic) and instrument AI observability using OpenTelemetry, offline evaluation, and drift monitoring, while leveraging enterprise AI platforms and standards.
Required Skills & Experience:
- Bachelors or Masters degree in computer science, Software Engineering, Data Science, or a closely related discipline.
- Professional experience in ML, Software Engineering, or a related role, including 3+ years delivering AI/ML solutions in production.
- Strong Python development experience, with 3+ years of building and operating production services and APIs.
Generative AI & Agentic Systems
- Experience developing full-stack agentic solutions using agent frameworks such as ADK, A2A, MCP, LangChain, LangGraph, or CrewAI, and familiarity with commercial and open-source foundation models.
- Experience building and operating advanced RAG and Agentic RAG systems using modern techniques and methodologies.
- Experience with agentic monitoring, observability, and model evaluation frameworks to assess quality, safety, and performance in production.
ML, Platforms & Cloud
- Hands-on experience with ML and AI frameworks such as PyTorch, Hugging Face, Pandas, NumPy, and related libraries.
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- Hands-on experience with at least one public cloud AI/GenAI platform (e.g., AWS SageMaker/Bedrock or Google Vertex AI, Vertex AI Search, and RAG Engine).
Software Engineering, DevOps & Security
- Experience designing and delivering production-grade APIs and microservices using modern software engineering practices.
- Hands-on experience with DevOps and CI/CD pipelines, infrastructure as code (e.g., Terraform), GitHub collaboration, and cloud deployments.
- Experience with DevSecOps tools such as Nexus, SonarQube, Checkmarx, and mcp-scan.
Ways of Working & Communication
- Experience working in lean, agile environments (e.g., SAFe or similar frameworks).
- Strong communication and collaboration skills, with the ability to explain complex technical concepts to technical and non-technical stakeholders, influence decisions, and work effectively across teams.
Skills
PythonData ScienceAi/mlAiMlMl EngineerAnalyticsAi MlIf an employer asks you to pay any kind of fee, please notify us immediately. Jobaaj does not charge any fee from the applicants and we do not allow other companies also to do so.
About Company
Important dates & deadlines?
Application Deadline
15 Jul 26, 05:45 PM IST
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