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Leadership - Agentic AI Solution Architect

Leadership - Agentic AI Solution Architect

Live ConnectionsChennai, Tamil Nadu, India
2 hours ago
Job description

Position Overview

We are seeking a highly skilled Generative AI Solution Architect with hands-on experience in Agentic AI frameworks and Small Language Models (SLMs) , along with deep expertise in AI / ML and data engineering in industrial contexts . This role will design, architect, and deploy scalable AI-driven solutions that leverage generative models, SLMs, autonomous agents, and robust data pipelines to transform operations in manufacturing, oil & gas, transportation, energy, smart infrastructure, and related verticals.

You will be responsible for bridging state-of-the-art generative and agentic AI with operational efficiency at scale —deploying solutions in cloud, hybrid, and industrial edge environments.

Key Responsibilities

1. Generative AI, SLM & Agentic AI Solution Architecture

  • Lead end-to-end design and deployment of generative AI systems using LLMs and SLMs , integrated with Agentic AI workflows for autonomous reasoning, planning, and execution in complex industrial environments.
  • Select and fine-tune Small Language Models for domain-specific tasks (predictive analytics, operational assistance, workflow automation) that require low latency, reduced cost, privacy, and edge deployment .
  • Architect multi-agent systems where SLMs serve as specialized reasoning components within larger orchestration frameworks.
  • Ensure architectures meet industrial constraints —including compute resource limits, security, redundancy, and real-time responsiveness.

2. Industrial AI / ML & Data Engineering Integration

  • Design and implement scalable AI / ML workflows incorporating structured / unstructured data from sensors, IoT devices, time-series databases, and vision systems.
  • Build data ingestion, cleaning, transformation, and feature store pipelines optimized for both generative AI and SLM training / inference.
  • Leverage hybrid architectures that integrate edge inference (for SLMs) with centralized LLM-based services for decision support and large-context reasoning.
  • Enable continuous learning pipelines with domain-specific fine-tuning and retraining of both LLMs and SLMs.
  • 3. Agentic AI & Multi-Agent Systems Development

  • Architect and deploy multi-agent solutions using :
  • NVIDIA NIM™, NeMo™, and Agentic AI Blueprints
  • AWS Bedrock / SageMaker with agent orchestration
  • Azure OpenAI Service with cognitive skills & plugins
  • Google Vertex AI Agents
  • Open source frameworks : LangChain, Semantic Kernel, Haystack, Ray Serve for distributed orchestration
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    Solution Architect • Chennai, Tamil Nadu, India