Senior AI Engineer – Multi-Agent & LLM Systems

Senior AI Engineer – Multi-Agent & LLM Systems
22
Bengaluru
Job Views:
Created Date: 2026-05-16
End Date: 2026-07-14
Experience: 6 - 7 years
Salary: 7000000
Industry: IT
Openings: 1
Primary Responsibilities :
Job Description
Senior AI Engineer – Multi-Agent & LLM Systems
Position Details
Role: Senior AI Engineer – Multi-Agent & LLM Systems
Location: Bangalore, India
Department: AI Engineering / Research & Development
Employment Type: Full-Time
About the Role
We are seeking a highly experienced Senior AI Engineer to lead the architecture, evaluation, and deployment of advanced enterprise-scale Agentic AI systems.
This role involves designing and scaling:
Multi-Agent LLM Systems
Retrieval-Augmented Generation (RAG) Platforms
Hybrid ML + GenAI Architectures
Enterprise Intelligent Automation Systems
The ideal candidate should possess strong research expertise, production engineering capabilities, architectural thinking, and hands-on experience deploying large-scale AI systems in enterprise environments.
This is a high-impact technical leadership role with significant ownership and strategic influence.
Experience Requirements:
Key Responsibilities
Multi-Agent Systems Architecture
Design and implement multi-agent LLM orchestration frameworks
Architect:
Planner–Executor models
Tool-using agents
Memory-enabled agents
Hierarchical and collaborative agent systems
Define inter-agent communication protocols
Build structured reasoning and orchestration pipelines
Optimize token usage, latency, throughput, and scalability
Ensure resilience, failover handling, and workflow robustness
LLM Systems & RAG Architecture
Design scalable Retrieval-Augmented Generation (RAG) systems
Define:
Embedding strategies
Intelligent chunking frameworks
Retrieval optimization methods
Hybrid search architectures
Implement prompt engineering, fine-tuning, and instruction tuning strategies
Design hallucination mitigation and groundedness systems
Establish prompt versioning and governance standards
Optimize inference cost and model performance
LLM Evaluation & Reliability Engineering
Design evaluation frameworks for:
Hallucination detection
Faithfulness assessment
Response quality benchmarking
Groundedness scoring
Implement automated LLM evaluation pipelines
Build synthetic dataset generation systems
Design human-in-the-loop evaluation workflows
Monitor model drift and agent failures
Develop observability dashboards and reliability monitoring systems
Define enterprise AI governance standards
Machine Learning & Predictive Systems
Lead development of:
Classification and regression models
Deep learning architectures
Anomaly detection systems
Knowledge graph reasoning engines
Establish experimentation and statistical validation frameworks
Optimize model performance and deployment strategies
Production AI & Infrastructure
Architect enterprise-grade AI deployment infrastructure
Define and manage:
MLOps pipelines
LLMOps workflows
Monitoring & observability systems
Deploy AI systems using:
AWS / GCP / Azure
Docker / Kubernetes
CI/CD pipelines
Ensure scalability, reliability, and cost optimization for high-volume AI workloads
Technical Leadership & Strategy
Serve as architectural authority for AI systems
Mentor AI engineers, ML engineers, and data scientists
Conduct architecture reviews and technical evaluations
Translate business challenges into scalable AI frameworks
Collaborate with leadership on AI innovation and strategic roadmap planning
Required Qualifications
Master’s or PhD in:
Artificial Intelligence
Machine Learning
Computer Science
Related Technical Field
6+ years of experience in AI/ML Engineering
Minimum 3 years leading complex AI initiatives
Strong proficiency in Python
Proven experience deploying AI systems into production environments
Required Technical Skills
AI/ML Expertise
Machine Learning Algorithms
Deep Learning Architectures
Transformer Models
Statistical Modeling
Reinforcement Learning Concepts
AI Evaluation Systems
Multi-Agent & LLM Systems
LangGraph (Mandatory)
LangChain
Multi-Agent Orchestration
Agent Workflows & Memory Systems
Prompt Engineering & Fine-Tuning
RAG System Design
Infrastructure & Deployment
AWS / GCP / Azure
Docker & Kubernetes
CI/CD Pipelines
Monitoring & Observability Tools
Distributed Systems Architecture
Databases & AI Systems
Vector Databases:
Pinecone
Weaviate
Similar Platforms
Knowledge Graph Systems
Search & Retrieval Architectures
Preferred Qualifications
Experience building production-grade multi-agent AI systems
Experience scaling enterprise AI platforms
Exposure to Speech AI systems (STT/TTS)
Knowledge graph reasoning expertise
Experience in enterprise AI governance and reliability engineering
What We’re Looking For
Strong systems-level architectural mindset
Research-oriented thinking with production pragmatism
Excellent analytical and problem-solving abilities
Strong mathematical and statistical foundation
High ownership and execution mindset
Excellent communication and stakeholder management skills
Success Metrics
Successful deployment of multi-agent AI systems in production
Reduced hallucination rates and improved AI reliability
Scalable and cost-efficient AI infrastructure
Institutionalized LLM evaluation frameworks
Measurable business impact from AI initiatives
Work Environment
High-impact AI innovation environment
Opportunity to work on enterprise-scale AI systems
Collaborative engineering and research culture
Fast-paced and technically challenging projects
