Job Title: GenAI Engineer
Experience: 2 to 5 Years
Location: Bengaluru
Shift Time: 2 PM to 11 PM
Job Type: Full-time (Immediate Joiners Only)
Summary
We are seeking a highly skilled GenAI /Agentic AI Engineer with 2–5 years of experience to lead the development of scalable, AI-powered systems. The ideal candidate will possess deep expertise in Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), and Agentic AI orchestration. You will be responsible for designing intelligent workflows and delivering production-ready applications that integrate seamlessly with complex business processes.
Key Responsibilities
- GenAI Solution Development: Lead the design and development of scalable GenAI systems, focusing on intelligent workflows and vector-based retrieval.
- Agentic Orchestration: Design and implement multi-agent orchestration frameworks, including Master-slave agentic architectures.
- Use-Case Execution: Build and deploy specialized solutions such as Doc & KM Intelligence bots, Summarization engines, and Multi-Modal Search & Extract tools.
- Conversational AI: Develop advanced conversational insights and chatbots to drive business value.
Required Qualifications & Experience
- Experience: 2–5 years of experience in AI/ML with a strong focus on GenAI and Agentic AI solutions development.
- Core Technical Skills: Mastery of Python, SQL, and Large Language Models (LLMs).
- AI Expertise: Hands-on experience with RAG (Retrieval-Augmented Generation), Doc & KM Intelligence bots, and Agentic AI.
- Advanced Implementation: Demonstrated ability to build Multi-Modal Search, automated form filling, and conversational insight tools.
- Technical Breadth: Exposure to open-source components and the ability to work across different hyper-scaler stacks.
- Domain Knowledge: Preferred experience in BFSI (Banking, Financial Services, and Insurance) use cases, though not mandatory.
Preferred Skills / Certifications
- Cloud Platforms: Experience with Azure and GCP stacks for AI deployment.
- Automation: Proficiency in developing Workflow Automation Agents.
- Orchestration: Deep understanding of Master-slave Agentic orchestration frameworks.
- Engineering Quality: Strong orientation toward building production-grade, scalable AI architectures.