GenAI Enterprise Architect

  • Published on 06/03/2026
  • Sangli (531)
  • To be defined

Description:

Role Overview: Design and deploy enterprise-grade AI solutions (LLMs, RAG, agents) by selecting appropriate models, building data pipelines, and integrating them with cloud platforms (AWS, Azure, GCP). Lead technical strategies, ensure scalability, manage AI security/ hallucinations, and bridge business needs with engineering teams.


Key Responsibilities:

System Design & Architecture: Architect end-to-end Generative AI systems, including retrieval-augmented generation (RAG) and vector data systems.

Model Selection & Tuning: Evaluate and select cutting-edge commercial (e.g., GPT-4) and open-source models, and fine-tune models for domain-specific use cases.

LLMOps & Pipelines: Establish LLMOps standards for model versioning, evaluation, prompt management, and CI/CD, ensuring robust, production-grade AI.

Integration & Security: Integrate AI solutions with existing APIs, applications, and databases while enforcing security, privacy, and guardrails to manage hallucinations and adversarial attacks. Strategic Leadership: Collaborate with stakeholders to map business challenges to AI solutions and establish AI governance frameworks.


Required Skills & Qualifications

Technical Expertise: Deep knowledge of NLP, Python, deep learning frameworks (PyTorch/ TensorFlow), and AI frameworks like LangChain, Autogen, or CrewAI.

Cloud & Data Systems: Extensive hands-on experience with AI services on AWS, Azure, or GCP. Expertise in vector databases (e.g., Pinecone, Milvus, Chroma) and embedding techniques.

GenAI-Specific Skills: Prompt engineering, RAG architectures, Fine-tuning LLMs, Vector databases. Soft Skills: Problem-solving mindset, strategic thinking, and strong communication (explaining AI to non-technical teams).

The processing of personal data received will be carried out in accordance with applicable laws, including the UK General Data Protection Regulation (UK GDPR) and the Data Protection Act 2018.