Job Title: AI Data Engineer
Exp- 4 to 8 years
Location- PAN India
Job Description
Key Responsibilities:
-  Build and maintain data infrastructure: Design and construct scalable, reliable data pipelines, storage, and processing systems in the cloud.
-  Ensure data quality: Clean, transform, and enrich raw data to create business truth that AI models can use for accurate insights.
-  Enable AI/ML: Make data readily available and optimized for consumption by AI and machine learning models.
-  Manage cloud services: Work with cloud-specific services for storage, compute, and networking to build an efficient and scalable AI data environment.
-  Implement security and governance: Apply security controls to protect data and ensure compliance within the data platforms.
-  Monitor and optimize: Continuously monitor data workloads and optimize for performance and cost-effectiveness.
________________________________________
Essential skills and tools
-  Cloud Platforms: Deep knowledge of data services at least one major cloud provider (e.G., AWS, Google Cloud).
-  Programming Languages: Strong proficiency in Python, Spark and SQL.
-  Data Warehousing & Storage: Experience with technologies like Azure Synapse Snowflake, GCP BigQuery, Databricks, AWS Redshift and Data Lake.
-  Data Pipelines: Familiarity with tools like Azure Data factory, AWS Glue, Apache Airflow, Kafka and dbt for orchestrating data workflows.
-  AI-specific tools: Knowledge of vector databases
-  Infrastructure as Code (IaC): Skills in tools like Bicep, Terraform or CloudFormation to automate infrastructure deployment.
-  CI/CD: Understanding of continuous integration and continuous deployment pipelines.
________________________________________
Experience with any of the following Cloud Native Data Services:
-  Azure: Azure Data Factory, MS Fabric, Azure Databricks, Azure Synapse Analytics, Datalake Gen2 and Azure Dedicated SQL Pool (ADW), Cosmos DB
-  AWS: AWS Glue, AWS S3, AWS Athena, AWS Kinesis and AWS Redshift, Dynamo DB
-  Google Cloud Platform (GCP): GCP Dataproc, GCP DataFlow, GCP BigQuery, GCP Cloud Storage, Cloud SQL and Pub Sub, Google BigTable, Google Spanner.
Qualifications:
-  Bachelor’s or master’s degree in engineering or technology
-  Proven experience in building and deploying ETL/ELT solutions in production.
-  Strong understanding of Data models and Data pipelines and cloud-native Big data architectures.
-  Excellent problem-solving, communication, and collaboration skills.