Fine-tune pre-trained generative models for domain-specific use cases.
Data Collection, Sanitization and Data Preparation strategy for Model fine tuning.
Evaluate, select, and deploy appropriate Generative AI frameworks (e.g., PyTorch, TensorFlow, Crew AI, Autogen, Langgraph, Agentic code, Agentflow).
Innovation and Strategy:
Stay up to date with the latest advancements in Generative AI and recommend innovative applications to solve complex business problems.
Define and execute the AI strategy roadmap, identifying key opportunities for AI transformation.
Collaboration and Leadership:
Collaborate with cross-functional teams, including data scientists, engineers, and business stakeholders.
Mentor and guide team members on AI/ML best practices and architectural decisions.
Performance Optimization:
Monitor the performance of deployed AI models and systems, ensuring robustness and accuracy.
Optimize computational costs and infrastructure utilization for large-scale deployments.
Ethical and Responsible AI:
Ensure compliance with ethical AI practices, data privacy regulations, and governance frameworks.
Implement safeguards to mitigate bias, misuse, and unintended consequences of Generative AI.
Requirements:
Bachelor's or master’s degree in computer science, Data Science, or a related field.
13+ years of relevant technical/technology experience, with significant expertise in GenAI projects with production deployment experience.
Preferred real time experience in building scalable, Modular Multi-Agent System Design with dynamic tool integration, Context-Aware Reasoning
Require familiarity with emerging Model Context Protocols (MCP) and dynamic tool integration to build flexible agentic systems
Advanced programming skills in Python and fluency in data processing frameworks like Apache Spark.
Should have strong knowledge on LLM’s foundational model (openai GPT4o, O1, Claude, Gemini, Llama 4 etc), while need to have strong knowledge on opensource Model’s like Llama 3.2, Phi etc.
Proven track record with event-driven architectures and real-time data processing systems.
Familiarity with Azure DevOps and other LLMOps tools for operationalizing AI workflows.
Deep experience with Azure OpenAI Service and vector DBs, including API integrations, prompt engineering, and model fine-tuning. Or equivalent tech in AWS/GCP.
Knowledge of containerization technologies such as Kubernetes and Docker.
Comprehensive understanding of data lakes and strategies for data management.
Expertise in LLM frameworks including Langchain, Llama Index, and Semantic Kernel.
Proficiency in cloud computing platforms such as Azure or AWS.
Exceptional leadership, problem-solving, and analytical abilities.
Superior communication and collaboration skills, with experience managing high-performing teams.
Ability to operate effectively in a dynamic, fast-paced environment.
Nice to Have Skills:
Experience with additional technologies such as Datadog, and Splunk.
Possession of relevant solution architecture certificates and continuous professional development in data engineering and GenAI.
Professional and Educational Background:
BE / B.Tech / MCA / M.Sc / M.E / M.Tech / MBA, Any Degree