The Role
The role involves designing and deploying Generative AI solutions on Databricks, fine-tuning LLMs, optimizing data pipelines, and collaborating with teams to implement scalable AI systems.
Summary Generated by Built In
Data Scientist
Primary Skills
- Data Science skill - Machine Learning, NLP, and LLMs
- Databricks
Experience- 5 to 8yrs
Specialization
- Data Science Advanced: Generative AI & Databricks
Job requirements
- Job Title: Senior AI Engineer – Generative AI & Databricks
- Experience: 5-8+ Years
- About the Role
- We are seeking a Senior AI Engineer with strong expertise in Generative AI (GenAI), Databricks, and end-to-end ML/LLM systems.
- You will be responsible for designing, building, and deploying intelligent, scalable GenAI solutions integrated into enterprise-grade data and analytics platforms.
- The ideal candidate combines strong software engineering, MLOps, and LLM engineering experience — with the ability to lead AI agentic workflows, data pipeline optimization, and model-driven automation using Databricks, MLflow, and Azure/Snowflake ecosystems.
- Key Responsibilities
- 1. Solution Architecture & Implementation
- Design and implement end-to-end Generative AI solutions on Databricks, leveraging Unity Catalog, MLflow, Delta Lake, and Vector Search.
- Architect LLM-based multi-agent frameworks for intelligent automation, chatbot systems, and document reasoning tasks.
- Integrate Cortex AI, OpenAI, or Anthropic APIs for retrieval-augmented generation (RAG), conversational reasoning, and workflow orchestration.
- 2. Model Development & Optimization
- Fine-tune and evaluate LLMs and domain-specific NLP models (NER, Risk Assessment, Question Answering).
- Develop pipelines for prompt engineering, context management, model evaluation, and hallucination detection.
- Optimize inference performance, latency, and cost across multi-cloud and Databricks environments.
- 3. Data Engineering & Governance
- Collaborate with data engineering teams to ensure clean, well-governed, and vectorized data pipelines.
- Build and maintain feature stores and embeddings stores using Databricks or Snowflake.
- Implement data validation, lineage, and monitoring using Delta Live Tables and Unity Catalog.
- 4. MLOps & Automation
- Build reusable ML pipelines using Databricks Repos, MLflow, and Feature Store.
- Automate deployment, monitoring, and retraining workflows for continuous model improvement.
- 5. Collaboration & Leadership
- Partner with product managers, data scientists, and business stakeholders to translate ideas into production-ready AI systems.
- Review code, mentor junior engineers, and enforce best practices in scalable AI/ML development.
- Contribute to internal knowledge bases, documentation, and reusable component libraries.
- Required Skills & Expertise
- Core AI/ML
- Strong background in Machine Learning, NLP, and LLMs (Transformers, RAG, embedding models).
- Proven experience fine-tuning or implementing models using Hugging Face, LangChain, LlamaIndex, or OpenAI API.
- Knowledge of retrieval-augmented generation, multi-agent orchestration, and context management.
- Databricks & Cloud Ecosystem
- Expertise in Databricks (Delta Lake, MLflow, Unity Catalog, Feature Store, Vector Search).
- Familiarity with Azure Databricks, Azure OpenAI, or Snowflake Cortex AI.
- Experience integrating external APIs and cloud-native microservices (FastAPI, REST, or gRPC).
- Programming & Engineering
- Strong proficiency in Python, SQL, PySpark, and Databricks Notebooks.
- Experience building modular codebases, deploying APIs, and working with CI/CD pipelines (GitHub Actions, Azure DevOps).
- Hands-on experience with Streamlit, Gradio, or other UI frameworks for AI app development.
- MLOps & Validation
- Hands-on with MLflow tracking, model registry, and experiment management.
- Experience in AI validation, faithfulness scoring, drift detection, and integrity match metrics.
- Working knowledge of Docker, Kubernetes, and inference scaling techniques.
- Soft Skills
- Strong communication, stakeholder management, and ability to translate business problems into AI solutions.
- Comfort working in agile, multi-disciplinary environments.
- Passion for innovation, experimentation, and applied AI problem-solving.
- • Need GenAI Data Scientist – Databricks certified ML Engineer and work closely with customers. • Use case will involve data extract from pdf-based documents. • Leverage Databricks native solutions.
Mandates
Top Skills
Azure
Databricks
Delta Lake
Gradio
Llms
Machine Learning
Mlflow
Nlp
Pyspark
Python
Snowflake
SQL
Streamlit
Unity Catalog
Vector Search
Am I A Good Fit?
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.
Success! Refresh the page to see how your skills align with this role.
The Company
What We Do
Brillio is the leader in global digital business transformation, applying technology with a human touch. We help businesses define internal and external transformation objectives, and translate those objectives into actionable market strategies using proprietary technologies. With 2600+ experts and 13 offices worldwide, Brillio is the ideal partner for enterprises that want to quickly increase their core business productivity, and achieve a competitive edge, with the latest digital solutions.









