Haystack
← Back to Jobs
Technology

Senior Azure Data Engineer/Azure Synapse Data Engineer/Azure Analytics Engineer

Apetan ConsultingUnited States🇺🇸United StatesPosted 17 Jul 2026

Quick Overview

Work Type
Hybrid
Level
Mid Senior

Job Description

Overview

We are seeking a Senior Azure Big Data Engineer to help build and support a modern enterprise data platform that enables analytics, AI, business intelligence, and digital transformation initiatives. This role is focused on designing scalable, secure, and high-performing data pipelines while integrating enterprise IT and operational technology (OT) data into a unified data platform.

The ideal candidate will have strong hands-on experience with Azure Databricks, Microsoft Fabric or Synapse, Azure Data Factory, ADLS, SQL, Python/PySpark, Spark, and enterprise data integration. Experience supporting manufacturing, industrial, chemical, automotive, or supply chain environments is highly preferred.


Key Responsibilities

Data Engineering & Platform Development

  • Design and develop scalable batch, CDC, and streaming data pipelines.
  • Build enterprise data lakes and curated data platforms.
  • Develop landing, curated, and semantic data layers.
  • Create reusable, high-performance data models for analytics and reporting.
  • Optimize storage, partitioning, clustering, caching, and query performance.

Enterprise Data Integration

  • Integrate enterprise applications including ERP, supply chain, manufacturing, laboratory, transportation, and environmental systems.
  • Build reliable ingestion frameworks from multiple structured and semi-structured data sources.
  • Support enterprise APIs and downstream analytics platforms.
  • Enable trusted enterprise-wide data products.

Azure Data Platform

Develop solutions utilizing:

  • Azure Databricks
  • Microsoft Fabric
  • Azure Synapse Analytics
  • Azure Data Factory (ADF)
  • Azure Data Lake Storage (ADLS)
  • Azure SQL Database / SQL Managed Instance
  • Azure Key Vault

Big Data Development

  • Develop scalable Spark applications using Python and PySpark.
  • Build Spark Structured Streaming pipelines.
  • Optimize Spark workloads for large-scale data processing.
  • Improve data processing efficiency and system performance.

Data Modeling

  • Design dimensional and semantic data models.
  • Implement Slowly Changing Dimensions (SCD).
  • Create certified datasets for enterprise reporting.
  • Support semantic models for Power BI and enterprise analytics.

Data Quality & Governance

  • Implement automated data quality validation.
  • Monitor freshness, completeness, schema validation, and data integrity.
  • Support metadata management, lineage, and governance.
  • Maintain enterprise data dictionaries and documentation.

CI/CD & DevOps

  • Build automated deployment pipelines using Git-based CI/CD.
  • Support testing, deployment, and release management.
  • Implement monitoring, alerting, and operational runbooks.
  • Optimize platform reliability and operational efficiency.

Security & Compliance

  • Implement role-based security (RBAC).
  • Manage secrets securely.
  • Support enterprise data governance policies.
  • Ensure compliance with data retention and privacy requirements.

Collaboration

  • Partner with BI developers, data analysts, architects, and application teams.
  • Support enterprise analytics, reporting, AI, and machine learning initiatives.
  • Produce technical documentation, operational guides, and knowledge transfer materials.

Required Technical Skills

Azure Data Engineering

Strong hands-on experience with:

  • Azure Databricks
  • Microsoft Fabric or Azure Synapse
  • Azure Data Factory
  • Azure Data Lake Storage (ADLS)
  • Azure SQL
  • Azure Key Vault

Programming

  • Python
  • PySpark
  • Spark
  • Spark Structured Streaming
  • Advanced SQL

Big Data

Experience building:

  • Batch pipelines
  • CDC pipelines
  • Streaming pipelines
  • Enterprise Data Lakes
  • Scalable data platforms

Data Engineering

  • Data modeling
  • Semantic modeling
  • Schema management
  • Partitioning
  • Performance tuning
  • Data optimization

DevOps

  • Git
  • CI/CD pipelines
  • Automated deployments
  • Unit and integration testing
  • Monitoring and observability

Analytics

Experience supporting:

  • Power BI
  • Semantic models
  • Row-Level Security (RLS)
  • Enterprise reporting
  • API-driven analytics

Enterprise Integration

Experience integrating with enterprise platforms such as:

  • SAP S/4HANA
  • ERP systems
  • Supply Chain systems
  • Manufacturing applications
  • Laboratory Information Management Systems (LIMS)
  • Transportation Management Systems (TMS)
  • Environmental, Health & Safety (HSE) systems

Preferred Skills

  • Manufacturing, industrial, chemical, automotive, or process industry experience.
  • SAP DataSphere knowledge.
  • Operational Technology (OT) data integration.
  • Historian platforms (OSI PI, Honeywell PHD, or similar).
  • OPC UA and MQTT protocols.
  • ISA-95 / ISA-99 fundamentals.
  • Master Data Management (MDM).
  • Data lineage and catalog tools.
  • Great Expectations or similar data quality frameworks.
  • Feature stores and metric stores.
  • FinOps and cloud cost optimization.
  • Lean or Six Sigma methodologies.

Skills

SQL
Machine Learning
Azure
Databricks
Git
Power BI
Python
Vault

Similar jobs