Brillio

HQ: Hybrid

more jobs in this category:

  • -> Virtual Administrative Assistant @ NothernTrust
  • -> AI Training for People Operations Experts @ Remotasks
  • -> Remote CFO ($100k/yr) @ Thompson & Thompson Consulting
  • -> Remote Finance Lead @ Red Hot Marketing LLC
  • -> Virtual Assistant @ Solesdi US
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.
    • Mandates
    • • 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.
Apply info ->

To apply for this job, please visit jobs.lever.co

Shopping Cart
There are no products in the cart!
Total
 0.00
0