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Job Description
We are hiring mid-to-senior level Agentic / Generative AI Engineers (6–9 years experience) to design and deliver production-grade LLM-powered and agentic systems.
This role is ideal for engineers with a strong Data Engineering / Data Science foundation who have transitioned into hands-on GenAI delivery—building real-world solutions such as RAG-based assistants, document intelligence platforms, and agent-driven workflows.
You will collaborate across data, platform, and business teams to build secure, scalable, and measurable AI applications for enterprise use cases.
**Key Responsibilities**
- Design and develop **LLM-powered applications** using **agentic patterns (single/multi-agent)** for business use cases
- Build and optimise **end-to-end RAG pipelines** (ingestion, embeddings, retrieval, orchestration, response synthesis)
- Implement **prompt engineering and orchestration techniques** (prompt chaining, tool/function calling, structured outputs)
- Develop **production-grade APIs and services** (FastAPI/Flask/Streamlit) for GenAI applications
- Integrate LLM solutions with **enterprise systems, data platforms, and workflows**
- Apply **guardrails and evaluation frameworks** to improve response quality, reduce hallucinations, and ensure responsible AI usage
- Collaborate with **Data Engineering and MLOps teams** for data pipelines, deployment, monitoring, and scaling
- Contribute to **reusable components, documentation, and engineering best practices**
**Experience & Core Requirements (Must-Have)**
**Overall Experience**
- **6–9 years total experience**
- **1–3+ years in hands-on GenAI / LLM application development (production use cases)**
**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
**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**
- Experience with **fine-tuning techniques (LoRA, PEFT) or prompt tuning strategies**
- Experience with **enterprise GenAI security & privacy practices** (data masking, access control, compliance)
- Familiarity with **Azure AI ecosystem** (Azure OpenAI, Azure AI Search, Fabric, etc.)
Exposure to **agentic coding tools (e.g., Claude Code or similar environments)**
### Responsibilities
**Key Responsibilities**
- Design and develop **LLM-powered applications** using **agentic patterns (single/multi-agent)** for business use cases
- Build and optimise **end-to-end RAG pipelines** (ingestion, embeddings, retrieval, orchestration, response synthesis)
- Implement **prompt engineering and orchestration techniques** (prompt chaining, tool/function calling, structured outputs)
- Develop **production-grade APIs and services** (FastAPI/Flask/Streamlit) for GenAI applications
- Integrate LLM solutions with **enterprise systems, data platforms, and workflows**
- Apply **guardrails and evaluation frameworks** to improve response quality, reduce hallucinations, and ensure responsible AI usage
- Collaborate with **Data Engineering and MLOps teams** for data pipelines, deployment, monitoring, and scaling
- Contribute to **reusable components, documentation, and engineering best practices**
**Experience & Core Requirements (Must-Have)**
**Overall Experience**
- **6–9 years total experience**
- **1–3+ years in hands-on GenAI / LLM application development (production use cases)**
**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
**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**
- Experience with **fine-tuning techniques (LoRA, PEFT) or prompt tuning strategies**
- Experience with **enterprise GenAI security & privacy practices** (data masking, access control, compliance)
- Familiarity with **Azure AI ecosystem** (Azure OpenAI, Azure AI Search, Fabric, etc.)
Exposure to **agentic coding tools (e.g., Claude Code or similar environments)**
### Qualifications
**Key Responsibilities**
- Design and develop **LLM-powered applications** using **agentic patterns (single/multi-agent)** for business use cases
- Build and optimise **end-to-end RAG pipelines** (ingestion, embeddings, retrieval, orchestration, response synthesis)
- Implement **prompt engineering and orchestration techniques** (prompt chaining, tool/function calling, structured outputs)
- Develop **production-grade APIs and services** (FastAPI/Flask/Streamlit) for GenAI applications
- Integrate LLM solutions with **enterprise systems, data platforms, and workflows**
- Apply **guardrails and evaluation frameworks** to improve response quality, reduce hallucinations, and ensure responsible AI usage
- Collaborate with **Data Engineering and MLOps teams** for data pipelines, deployment, monitoring, and scaling
- Contribute to **reusable components, documentation, and engineering best practices**
**Experience & Core Requirements (Must-Have)**
**Overall Experience**
- **6–9 years total experience**
- **1–3+ years in hands-on GenAI / LLM application development (production use cases)**
**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
**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**
- Experience with **fine-tuning techniques (LoRA, PEFT) or prompt tuning strategies**
- Experience with **enterprise GenAI security & privacy practices** (data masking, access control, compliance)
- Familiarity with **Azure AI ecosystem** (Azure OpenAI, Azure AI Search, Fabric, etc.)
Exposure to **agentic coding tools (e.g., Claude Code or similar environments)**
Key Responsibilities
Design and develop LLM-powered applications using agentic patterns for business use cases
Build and optimize end-to-end RAG pipelines including ingestion, embeddings, retrieval, and orchestration
Implement prompt engineering and orchestration techniques such as prompt chaining and tool calling
Develop production-grade APIs and services using FastAPI, Flask, or Streamlit
Integrate LLM solutions with enterprise systems, data platforms, and workflows
Apply guardrails and evaluation frameworks to improve response quality and ensure responsible AI usage
Collaborate with Data Engineering and MLOps teams for data pipelines, deployment, and scaling
Contribute to reusable components, documentation, and engineering best practices
Requirements
Bachelor's Degree
Skills Required
PythonPySparkLangChainLangGraphFastAPIFlaskStreamlitSQLAzureAWSGCPDatabricksSnowflakeFabricETLELTNLPRAGLLMsClaudeOpenAIGPTAgentic AIPrompt EngineeringAPI IntegrationCI/CDContainersMonitoringCollaborationProblem solvingLoRAPEFTPrompt tuningAzure AI ecosystemAzure OpenAIAzure AI SearchClaude Code
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