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Job Description
We are seeking an experiencedAI/ML Engineer (5-8 years)with strong hands-on expertise in end-to-end machine learning, GenAI solution development, data engineering, and cloud-native deployment. The role involves building scalable AI systems, designing LLM-based applications, and integrating enterprise-grade MLOps pipelines across any one of Azure, GCP, and AWS environments.
Key Responsibilities
Design and implementML and GenAI solutionsincluding RAG pipelines, LLM integrations, prompt engineering, and evaluation/guardrail frameworks.
Develop and deployAPI-based AI applicationsusing FastAPI, Flask, or Plotly Dash.
Build end-to-end ML pipelines: data ingestion, feature engineering, model training, validation, deployment, and monitoring.
Work with cross-functional teams to translate business needs into AI-driven outcomes.
Deploy workloads usingAzure App Service, Cloud Run, Azure Bot Service, Dialogflow, and other cloud-native platforms.
ImplementMLOps workflowsfor CI/CD, model registry, experiment tracking, and automated retraining.
Build and optimizeETL/ELT pipelinesusing Azure Data Factory, BigQuery, Databricks, and other data engineering tools.
Create dashboards and analytical insights using Power BI, Tableau, Looker, QuickSight, or ThoughtSpot.
Ensure scalable, secure, and cost-optimized deployment across Azure/GCP/AWS environments.
Required Technical Skills
Programming & Languages
Python (advanced), SQL (strong), HTML/CSS/JavaScript (working knowledge)
LLMs & GenAI
LangChain, LangGraph
Google ADK, Vertex AI, AWS Bedrock
RAG architectures, embeddings, vector retrieval
Prompt design, evaluation metrics, guardrails/security
Azure AI Foundry, Azure OpenAI, Azure AI Search, Azure Document Intelligence
Custom model development using GPT, LangChain, and relevant frameworks
Prompt engineering, LogProbs handling, vector search integrations
Data Engineering & Platforms
BigQuery, Azure Synapse, Azure Data Factory, Databricks
Blob Storage, Cloud Storage, Document AI
Strong understanding of ETL/ELT, feature engineering & data profiling
Event-driven architecture and streaming systems for agentic workflows
Data ingestion, transformation, and vector database management
Ensuring data quality, lineage, governance, and observability
BI & Analytics
Power BI, Tableau, Looker, ThoughtSpot, QuickSight
DevOps & MLOps
Docker, CI/CD pipelines
Model deployment & monitoring
Vertex AI Agent Engine, model registry, experiment tracking
Educational qualification:
Bachelor's/Master's degree in Computer Science, Engineering, or related field.
Experience :
5-8 Years
Job ID: 146487493