Country/Region:  IN
Requisition ID:  35789
Work Model: 
Position Type: 
Salary Range: 
Location:  INDIA - BENGALURU - BIRLASOFT OFFICE

Title:  Generative AI Sr Lead

Description: 

Area(s) of responsibility

Job Title: GEN AI Sr Lead 
Location - Noida/HYD/Bengaluru/Pune/Chennai/Mumbai
Experience Required - 8+ years Only 

Application Development: Build GenAI applications from scratch using frameworks like Autogen (applied or acquired), Crew.ai, LangGraph, LlamaIndex, and LangChain.

  1. Python Programming: Develop high-quality, efficient, and maintainable Python code for GenAI solutions.
  2. Large-Scale Data Handling & Architecture: Design and implement architectures for handling large-scale structured and unstructured data.
  3. Multi-Modal LLM Applications: Familiarity with text chat completion, vision, and speech models.
  4. Fine-tune SLM(Small Language Model) for domain specific data and use cases.
  5. Front-End Integration: Implement user interfaces using front-end technologies like React, Streamlit, and AG Grid, ensuring seamless integration with GenAI backends.
  6. Data Modernization and Transformation: Design and implement data modernization and transformation pipelines to support GenAI applications.
  7. OCR and Document Intelligence: Develop solutions for Optical Character Recognition (OCR) and document intelligence using cloud-based tools.
  8. API Integration: Use REST, SOAP, and other protocols to integrate APIs for data ingestion, processing, and output delivery.
  9. Cloud Platform Expertise: Leverage Azure, GCP, and AWS for deploying and managing GenAI applications.
  10. Fine-Tuning LLMs: Apply fine-tuning techniques such as PEFT, QLoRA, and LoRA to optimize LLMs for specific use cases.
  11. LLMOps Implementation: Set up and manage LLMOps pipelines for continuous integration, deployment, and monitoring.
  12. Responsible AI Practices: Ensure ethical AI practices are embedded in the development process.
  13. RAG and Modular RAG: Implement Retrieval-Augmented Generation (RAG) and Modular RAG architectures for enhanced model performance.
  14. Data Curation Automation: Build tools and pipelines for automated data curation and preprocessing.
  15. Technical Documentation: Create detailed technical documentation for developed applications and processes.
  16. Collaboration: Work closely with cross-functional teams, including data scientists, engineers, and product managers, to deliver high-impact solutions.

Mentorship: Guide and mentor junior developers, fostering a culture of technical excellence and innovation