Lead Data Scientist (Generative AI / LLM)
Role Summary
We are looking for a Lead Data Scientist with strong hands-on expertise in Generative AI and Large Language Models (LLMs) to design and build scalable AI-driven solutions. The ideal candidate will combine deep technical proficiency with leadership capability, actively contributing to coding, model development, and solution architecture.
This role requires someone who can develop production-grade AI applications, lead technical initiatives, and collaborate closely with cross-functional teams to translate complex business problems into impactful AI solutions.
Key Responsibilities
AI Solution Development
- Design and develop AI/ML solutions leveraging Large Language Models (LLMs) and modern Generative AI frameworks.
- Build and deploy LLM-powered applications, such as conversational AI systems, intelligent assistants, and enterprise knowledge tools.
- Architect Retrieval Augmented Generation (RAG) frameworks integrating enterprise data with LLMs.
Hands-on Engineering
- Write high-quality, production-ready code using Python and modern AI/ML libraries.
- Develop and optimize prompt engineering strategies, LLM workflows, and agent-based systems.
- Build applications using frameworks such as LangChain, LlamaIndex, or similar orchestration tools.
- Implement vector search pipelines and semantic retrieval systems.
AI Architecture & Deployment
- Design end-to-end AI architectures integrating data pipelines, vector databases, and LLM services.
- Build scalable pipelines for model deployment, monitoring, and lifecycle management.
- Integrate AI models with enterprise platforms, APIs, and data ecosystems.
Technical Leadership
- Lead and mentor a team of data scientists and AI engineers.
- Establish best practices for model development, experimentation, and code quality.
- Provide technical guidance on architecture decisions and AI solution design.
Stakeholder Collaboration
- Partner with product teams, engineering teams, and business stakeholders to identify and prioritize AI opportunities.
- Translate business requirements into scalable AI solutions and technical roadmaps.
- Communicate technical concepts and results effectively to leadership and cross-functional teams.