Key Responsibilities
1. Solution Architecture & Strategy
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Define and lead
end-to-end architecture
for enterprise GenAI platforms and use cases
-
Design
scalable agentic systems
(single-agent, multi-agent, orchestration
frameworks)
-
Establish
reference architectures, design patterns,
and reusable frameworks
-
Lead architecture decisions on
RAG vs fine-tuning vs hybrid approaches
-
Conduct
technology evaluations (LLMs, vector DBs,
orchestration frameworks)
and recommend best-fit solutions
2. Agentic AI & LLM Engineering Leadership
-
Design and implement
complex agentic workflows
with tool calling, function orchestration, and
memory strategies
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Build
enterprise-grade RAG pipelines
with strong focus on
retrieval accuracy and evaluation
-
Drive
prompt architecture standards
(prompt libraries, chaining, orchestration
governance)
-
Optimise solutions for
latency, cost, scalability, and reliability
3. Platform & Engineering Excellence
-
Lead development of
GenAI platforms, APIs, and microservices
(FastAPI, Flask, etc.)
-
Define
engineering best practices
: coding standards, testing, packaging,
observability
-
Ensure seamless integration with
enterprise data platforms, APIs, and
business applications
-
Collaborate with MLOps teams for
CI/CD, deployment pipelines, versioning, and
monitoring
4. Governance, Risk & Responsible AI
-
Define and enforce
LLM guardrails
(hallucination control, safety filters, policy
enforcement)
-
Implement
evaluation frameworks
(RAG evaluation, prompt testing, benchmarking)
-
Ensure compliance with
data security, privacy, and enterprise
governance standards
-
Drive adoption of
Responsible AI practices
(bias mitigation, explainability,
auditability)
5. Data & Ecosystem Collaboration
-
Partner with Data Engineering teams on:
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Data ingestion, pipelines, and quality
controls
-
Metadata management and knowledge graph
strategies
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Work with business stakeholders to:
-
Identify high-value GenAI use cases
-
Translate business problems into AI-driven
solutions
6. Leadership & Stakeholder Management
-
Provide
technical leadership and mentorship
to engineering teams
-
Act as a
solution advisor to clients/stakeholders
(including pre-sales, PoCs, solutioning)
-
Present architecture and design decisions to
senior leadership and CXOs
-
Drive
COE initiatives, knowledge sharing, and
internal capability building
Must-Have Skills & Experience
Experience
-
12–15 years total experience
, with
3+ years in GenAI / LLM-based systems
-
Proven experience in
leading architecture and delivery of
enterprise solutions
LLM / GenAI & Agentic Engineering
-
Strong hands-on experience with:
-
LLMs (Claude, OpenAI, etc.)
-
RAG pipelines and retrieval optimisation
-
GPT + Agentic AI implementation experience
-
Experience with:
-
LangChain, LangGraph, or similar
frameworks
-
Agent orchestration and tool-calling
architectures
-
Deep understanding of:
-
LLM limitations, evaluation, and
optimisation strategies
Core Engineering
-
Strong Python/Pyspark engineering expertise
(production-grade development) with proven API
integration experience
-
Deep data analysis experience and handling
large volume of data
-
Fabric/Azure Databricks/Snowflake data
engineering integration skills
-
Good exposure to:
-
Cloud platforms (Azure/AWS/GCP)
-
SQL
-
Containers, CI/CD, monitoring
Cloud & Platform
-
Hands-on experience with
Azure / AWS / GCP
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Familiarity with:
-
Containers (Docker/Kubernetes)
-
CI/CD pipelines
-
Monitoring & observability
Data / AI Foundations (Mandatory)
Prior experience in one or more:
-
Data Engineering (ETL/ELT, pipelines,
orchestration)
-
Data Science / ML lifecycle (especially NLP)
-
Analytics engineering / data products
Good-to-Have / Preferred
-
Fine-tuning techniques (
LoRA, PEFT, prompt tuning
)
-
Experience with
Azure AI stack (Azure OpenAI, Cognitive
Search)
-
Knowledge of
knowledge graphs, semantic layers, or
enterprise search
-
Experience in
domain-specific GenAI solutions
(Insurance, BFSI, Healthcare)