Alimentiv
Senior Data Engineer
Rol remoto de Data Engineering con fit claro de ubicación del candidato.
Publicado13 jul 2026
Países elegibles1 país aceptado
Señal de senioritySenior
Modelo de trabajoRemoto
Ubicaciones aceptadas para candidatos
India
Resumen del rol
Senior Data Engineer
Requisitos y responsabilidades
Contenido del rol extraído en secciones para revisar más rápido.
About the Role
- Architect, design, and implement end-to-end data solutions using Azure Databricks, PySpark, Azure Data Factory, and Azure SQL.
- Design, build, and maintain data pipelines from data sources through integration to consumption for specific use cases.
- Implement robust data modeling standards across bronze, silver, and gold layers in the data lake.
- Develop data models (conceptual, logical, and/or physical) as required.
- Optimize Spark and SQL workloads for performance, scalability, and cost efficiency.
- Manage metadata using data preparation, integration, and AI-enabled tools and techniques.
- Drive automation in data integration; recommend and lead implementation of techniques to automate repeatable data preparation and integration tasks.
- Build API-based integrations (REST/JSON) and real-time ingestion frameworks.
- Automate data workflows using Azure DevOps pipelines and Git-based CI/CD practices.
- Implement parameterized, reusable pipeline templates for ingestion and transformation.
- Develop automated unit, regression, and integration testing frameworks for data jobs.
- Prepare and curate high-quality datasets for BI, reporting, and advanced analytics.
- Partner with analytics teams using Power BI, Tableau, or similar platforms to define semantic models and KPIs.
- Implement performance-optimized data models for self-service analytics.
- Will occasionally provide support to end users on the use of data visualization solutions.
- Lead technical design reviews, mentor junior engineers, and promote best practices.
- Assist cross-functional groups, business analysts, and stakeholders to gather, define, and refine data requirements.
- Collaborate with business and IT stakeholders to align data engineering with organizational objectives.
- Propose innovative data ingestion, preparation, and integration techniques to address stakeholder requirements.
- Contribute to architectural roadmaps and technology evaluations for the data platform.
- In collaboration with functional leaders, identify inefficiencies and recommend improvements to the executive team.
. Data Architecture & Engineering
- Architect, design, and implement end-to-end data solutions using Azure Databricks, PySpark, Azure Data Factory, and Azure SQL.
- Design, build, and maintain data pipelines from data sources through integration to consumption for specific use cases.
- Implement robust data modeling standards across bronze, silver, and gold layers in the data lake.
- Develop data models (conceptual, logical, and/or physical) as required.
- Optimize Spark and SQL workloads for performance, scalability, and cost efficiency.
- Manage metadata using data preparation, integration, and AI-enabled tools and techniques.
- Drive automation in data integration; recommend and lead implementation of techniques to automate repeatable data preparation and integration tasks.
- Build API-based integrations (REST/JSON) and real-time ingestion frameworks.
- Automate data workflows using Azure DevOps pipelines and Git-based CI/CD practices.
- Implement parameterized, reusable pipeline templates for ingestion and transformation.
- Develop automated unit, regression, and integration testing frameworks for data jobs.
- Prepare and curate high-quality datasets for BI, reporting, and advanced analytics.
- Partner with analytics teams using Power BI, Tableau, or similar platforms to define semantic models and KPIs.
- Implement performance-optimized data models for self-service analytics.
- Will occasionally provide support to end users on the use of data visualization solutions.
- Lead technical design reviews, mentor junior engineers, and promote best practices.
- Assist cross-functional groups, business analysts, and stakeholders to gather, define, and refine data requirements.
- Collaborate with business and IT stakeholders to align data engineering with organizational objectives.
- Propose innovative data ingestion, preparation, and integration techniques to address stakeholder requirements.
- Contribute to architectural roadmaps and technology evaluations for the data platform.
- In collaboration with functional leaders, identify inefficiencies and recommend improvements to the executive team.
. Data Integration & Automation
- Drive automation in data integration; recommend and lead implementation of techniques to automate repeatable data preparation and integration tasks.
- Build API-based integrations (REST/JSON) and real-time ingestion frameworks.
- Automate data workflows using Azure DevOps pipelines and Git-based CI/CD practices.
- Implement parameterized, reusable pipeline templates for ingestion and transformation.
- Develop automated unit, regression, and integration testing frameworks for data jobs.
- Prepare and curate high-quality datasets for BI, reporting, and advanced analytics.
- Partner with analytics teams using Power BI, Tableau, or similar platforms to define semantic models and KPIs.
- Implement performance-optimized data models for self-service analytics.
- Will occasionally provide support to end users on the use of data visualization solutions.
- Lead technical design reviews, mentor junior engineers, and promote best practices.
- Assist cross-functional groups, business analysts, and stakeholders to gather, define, and refine data requirements.
- Collaborate with business and IT stakeholders to align data engineering with organizational objectives.
- Propose innovative data ingestion, preparation, and integration techniques to address stakeholder requirements.
- Contribute to architectural roadmaps and technology evaluations for the data platform.
- In collaboration with functional leaders, identify inefficiencies and recommend improvements to the executive team.
. Analytics & Data Enablement
- Prepare and curate high-quality datasets for BI, reporting, and advanced analytics.
- Partner with analytics teams using Power BI, Tableau, or similar platforms to define semantic models and KPIs.
- Implement performance-optimized data models for self-service analytics.
- Will occasionally provide support to end users on the use of data visualization solutions.
- Lead technical design reviews, mentor junior engineers, and promote best practices.
- Assist cross-functional groups, business analysts, and stakeholders to gather, define, and refine data requirements.
- Collaborate with business and IT stakeholders to align data engineering with organizational objectives.
- Propose innovative data ingestion, preparation, and integration techniques to address stakeholder requirements.
- Contribute to architectural roadmaps and technology evaluations for the data platform.
- In collaboration with functional leaders, identify inefficiencies and recommend improvements to the executive team.
Stakeholder Engagement & Leadership
- Lead technical design reviews, mentor junior engineers, and promote best practices.
- Assist cross-functional groups, business analysts, and stakeholders to gather, define, and refine data requirements.
- Collaborate with business and IT stakeholders to align data engineering with organizational objectives.
- Propose innovative data ingestion, preparation, and integration techniques to address stakeholder requirements.
- Contribute to architectural roadmaps and technology evaluations for the data platform.
- In collaboration with functional leaders, identify inefficiencies and recommend improvements to the executive team.
About You
- Expert-level proficiency in Databricks, Azure Fabric, PySpark, SQL, and Azure DevOps.
- Proven experience with Azure Data Factory, ADLS Gen2, and Azure SQL Server.
- Strong experience with Microsoft Azure data management architectures including Data Warehouse, Data Lake, and Data Catalogue, and supporting processes such as Data Integration, Governance, and Metadata Management.
- Experience with Power BI required; Tableau or Looker a plus.
- Working knowledge of CI/CD automation, version control (Git), and infrastructure as code (ARM, Bicep, or Terraform).
- Experience in life sciences or healthcare industries is a strong plus.
- Good understanding of GxP, GDPR/HIPAA, and applicable CFR/CTR/CTD regulations.
- Demonstrated success working with both IT and business stakeholders while integrating analytics and data science output into business processes and workflows.
- Must have excellent written and verbal communication skills.
- Proven ability to work independently and as part of a team and meet important deadlines.
- Statistical analysis skills are an asset.
Roles similares
Mantén una lista de respaldo.
Stack
Usa estas tags para comparar roles remotos similares.
Elegibilidad de ubicación
Candidatos deberían aplicar solo cuando el país del perfil aparece aquí.
Tu perfilPaís no definidoInicia sesión para comparar tu país con este rol.
Flujo de contratación
WithMira muestra el rol y luego envía candidatos a la aplicación de la empresa.
1Revisa fit del rol, stack y elegibilidad de ubicación en WithMira.
2Abre la página de aplicación de la empresa desde el link rastreado.
3Guarda el rol o suscríbete a oportunidades similares antes de salir.