Posted on: 18/03/2026
Experience :
- 8 years+
- Experience in ML/Advanced NLP : 3- 4 years
- Experience in LLMs : 1- 2 years
Agent Architecture & Workflow Design :
- Consult with internal and client teams to determine which agent workflows need to be created for specific use cases.
- Define capabilities, intents, and interaction flows of AI agents to meet business goals.
- Design the system architecture for multi-agent orchestration and model integration.
Model Strategy & Execution :
- Guide the selection, fine-tuning, and integration of LLMs, RAG pipelines, and transformer-based models.
- Define how models will interact with different data modalities (text, audio, video, structured data).
- Evaluate and benchmark model performance and retraining needs.
Data Enrichment & Intelligence :
- Advise on how to configure, enrich, and pre-process data (structured/unstructured) for maximum model performance.
- Oversee entity extraction, topic modeling, summarization, and other NLP-driven enrichment techniques.
- Ensure data pipelines are designed for continuous learning and improvement.
Solution Implementation & Code Ownership :
- Lead prototyping and MVP development, translating architecture into production-grade solutions.
- Collaborate with developers to build scalable AI services and interfaces.
- Write clean, efficient, and modular code to integrate AI components.
Stakeholder Engagement & Technical Consultation :
- Translate complex AI concepts into actionable recommendations for non-technical stakeholders.
- Provide strategic input on product direction, capabilities, and limitations.
- Maintain a high degree of ownership and accountability across all initiatives.
Required Skills & Experience :
Core AI/ML Expertise (3- 4 years) :
- Strong background in machine learning and deep learning, including model training and evaluation.
- Experience developing ML-powered enterprise applications.
NLP & Data Intelligence (2- 3 years) :
- Advanced understanding of NLP techniques, including entity extraction, summarization, topic modeling, etc.
- Experience with structured and unstructured data feature engineering.
LLM & Agent Ecosystem (1- 2 years) :
- Solid understanding of LLM architecture, prompt engineering, and RAG (Retrieval-Augmented Generation) frameworks.
- Exposure to multi-modal agent delivery (text, audio, video).
Additional Qualities :
- Strong problem-solving aptitude applied to real-world use cases.
- Excellent communication and stakeholder management skills.
- Proactive mindset with ownership of end-to-end delivery.
Preferred Qualifications :
- Experience with cloud-based ML platforms (AWS/GCP/Azure).
- Familiarity with agent orchestration platforms or LangChain-like frameworks.
- Understanding of vector databases, embeddings, and context-aware retrieval systems.
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