Role: Lead AI Engineer - Bengaluru, INDIA
Full Time
*Consultants local to INDIA only
Primary Responsibilities:
This role focuses on building
production-ready AI applications
and deploying them on
Azure Databricks and Azure cloud infrastructure . You will work end-to-end: from
data ingestion and model integration to scalable deployment, monitoring, and ongoing optimization .
The expectation is to convert AI ideas into reliable, governed, and cost-efficient applications that run in production. You will design
data and AI pipelines , integrate models (including
ML and Generative AI ), and deploy them using
Databricks workflows and Azure-native services .
Success in this role requires strong hands-on experience with
Azure Databricks, Python, SQL, and Azure services , along with a clear understanding of how AI systems fail in productionand how to prevent it. You will collaborate closely with
data scientists, platform engineers, and business stakeholders
to ensure AI applications are usable, scalable, and maintainable beyond the first release.
Key Responsibilities
Design and build
end-to-end data and AI pipelines
using Azure Databricks.
Develop robust ETL/ELT workflows using Python (PySpark) and SQL.
Implement
CI/CD pipelines for Databricks deployments
(jobs, notebooks, workflows).
Integrate Databricks with Azure services (Data Lake, Blob Storage, Key Vault, Azure OpenAI, Azure Functions, etc.).
Optimize jobs for performance, cost, and reliability.
Build reusable, modular code.
Collaborate with data scientists and platform teams to move models from experimentation to production.
Implement logging, monitoring, and error handling for production pipelines.
Develop and deploy ML and Generative AI models
(LLMs, embeddings, RAG pipelines) for NLP, computer vision, and predictive analytics.
Fine-tune LLMs using LoRA/QLoRA and integrate with Azure OpenAI or Hugging Face models.
Implement vector search and retrieval pipelines using FAISS or Azure Cognitive Search.
Ensure responsible AI practices, including bias detection and model governance.
Good to Have (Strong Advantage)
Experience with
ML and Generative AI workloads on Databricks .
RAG, embeddings, or inference pipelines.
Terraform / ARM / Bicep for infrastructure.
Databricks Asset Bundles.
Airflow or ADF orchestration.
Production monitoring and cost optimization experience.
Knowledge of LangChain or similar frameworks for AI application development.
Experience with Azure AI services (Azure Machine Learning, Azure Cognitive Services).
Requirements
Azure Databricks (jobs, workflows, clusters, Unity Catalog preferred).
Python (PySpark-heavy, not just pandas).
SQL (complex joins, window functions, analytical queries).
Azure Cloud (ADLS Gen2, ADF, Key Vault, IAM concepts).
Pipeline orchestration & deployment (CI/CD, environment promotion).
Azure DevOps.
Strong understanding of ML lifecycle and MLOps best practices.
Experience with model deployment using MLflow or similar frameworks.