Role Overview :
We are looking for a highly experienced Senior Data Architect to lead enterprise data and analytics strategy on AWS. This role will design and deliver scalable data platforms, data pipelines, and ML systems, while driving multi-cloud data architecture, governance, and technical leadership across teams.
Key Responsibilities
- Define & lead enterprise data architecture and cloud data strategy (AWS-focused).
- Design scalable data lakes, lakehouse, DWH, streaming & analytics platforms.
- Architect & optimize AWS-based ETL / ELT, ML, and real-time data pipelines.
- Lead multi-cloud (AWS + Azure) and hybrid data integration initiatives.
- Implement data governance, security, quality, metadata & lineage frameworks.
- Mentor data engineering & data science teams; ensure architectural best practices.
Required Skills
10+ years in data architecture / engineering, 5+ years on cloud platforms (AWS).Expertise with AWS data stack (S3, Glue, Redshift, Athena, EMR, Kinesis, Lake Formation).Strong data modeling (dimensional, Data Vault, lakehouse).Hands-on Python, PySpark, SQL & distributed systems (Spark, Kafka).ML platform experience (SageMaker, MLOps, pipelines & deployment).Multi-cloud experience (AWS + Azure) with data migration & modernization.Certifications (Mandatory)
AWS Certified Data Analytics SpecialtyAWS Certified Machine Learning SpecialtyAzure Data Engineer Associate (DP-203)Nice to Have
Additional AWS certifications (SA Pro / DevOps Pro)Azure DP-100, Databricks, Terraform / CloudFormation experienceExperience with data mesh, data fabric, governance platforms (Alation / Collibra)Skills Required
S3, Pyspark, Kafka, Emr, Redshift, Sql, MLops, Kinesis, glue , Spark, Azure, Python, Aws