Posted:6 days ago|
Platform:
Remote
Contractual
As IRIS Data Engineer, you will work with Data Scientists and Data Architects to translate prototypes into scalable solutions.
A degree is not required, as long as they have the right skillset and can commit to the work/projects assigned.
• There will likely be 2 rounds of interviews for this position.
Key Skills Required
Key Responsibilities:
Data Engineers are responsible for designing and building robust, scalable, and high-quality data pipelines that support analytics and reporting needs. This includes:
• Integration of structured and unstructured data from various sources into data lakes and warehouses.
• Build and maintain scalable ETL/ELT pipelines for batch and streaming data using Azure Data Factory, Databricks, Snowflake and Azure SQL Server, control -M.
• Collaborate with data scientists, analysts, and platform engineers to enable analytics and ML use cases.
• Design, develop, and optimise DBT models to support scalable data transformations.
They operationalize data solutions on cloud platforms, integrating services like Azure, Snowflake, and third-party technologies.
• Manage environments, performance tuning, and configuration for cloud-native data solutions.
• Apply dimensional modeling, star schemas, and data warehousing techniques to support business intelligence and machine learning workflows.
• Collaborate with solution architects and analysts to ensure models meet business needs.
• Ensure data integrity, privacy, and compliance through governance practices and secure schema design.
• Implement data masking, access controls, and metadata management for sensitive datasets.
• Work closely with cross-functional teams including product owners, architects, and business stakeholders to translate requirements into technical solutions.
• Participate in Agile ceremonies, sprint planning, and DevOps practices for continuous integration and deployment.
• 5+ years of experience in data engineering using Snowflake.
• Experience in designing, developing & scaling complex data & feature pipelines feeding ML models and evaluating their performance.
• Experience in building and managing streaming and batch inferencing.
• Experience with MS Cloud - ML Azure Databricks, Data Factory, Synapse, among others.
Professional Skills:
• Strong analytical and problem-solving skills and passion for product development.
• Strong understanding of Agile methodologies and open to working in agile environments with multiple stakeholders.
• Professional attitude and service orientation; team player.
• Ability to translate business needs into potential analytics solutions.
• Strong work ethic: ability to work at an abstract level and gain consensus.
• Ability to build a sense of trust and rapport to create a comfortable and effective workplace.
Cube Hub Inc.
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