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Job description

Data Scientist


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MISSION:



The GenAI Data Scientist designs, builds, evaluates, and deploys Generative AI solutions, with strong focus on GenAI agents and agentic workflows.



He/she is responsible for:



* Understanding business needs and converting them into GenAI agent use cases
* Building GenAI agents using LangGraph or similar agentic frameworks
* Designing workflows with tool calling, routing, memory, state management, guardrails, and human escalation
* Connecting agents with enterprise data, APIs, databases, applications, and automation tools
* Building and optimizing RAG knowledge stores when knowledge retrieval is required
* Developing clean, modular, scalable, and deployment-ready Python code
* Evaluating agents for accuracy, reliability, hallucination risk, latency, cost, and user experience
* Working with data, platform, and software engineering teams to move GenAI solutions to production



KEY EXPECTED ACHIEVEMENTS:



* Business need is translated into a clear GenAI agent solution



* Agent architecture, workflow, tools, memory, prompts, and guardrails are designed and documented



* Agentic workflows are built, tested, and optimized using LangGraph or similar frameworks



* RAG knowledge stores are implemented and optimized when required



* Python code is modular, testable, maintainable, and production-ready



* The solution is deployed with logging, monitoring, error handling, access control, and cost control



* Results, limitations, risks, and usage guidelines are clearly presented to business and technical stakeholders



* Source code, prompts, configuration, and documentation are delivered



* Peer reviews are organized to ensure quality, scalability, and reliability




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