Big Data Engineer

• Posted 2 hours ago • Updated 2 hours ago
Contract Independent
Contract W2
Fitment

Dice Job Match Score™

⭐ Evaluating experience...

Job Details

Skills

  • Big data
  • incident management
  • GIT
  • Caching
  • SAP S/4HANA
  • Machine Learning
  • Performance Tuning
  • Change Control
  • automation
  • Governance
  • data modelling
  • Data Quality
  • Pyspark
  • Databricks
  • SQL databases
  • Power Bi
  • Artificial intelligence
  • Azure Data Factory
  • Safety Principles
  • Application Programming Interfaces (APIs)
  • Standard Sql
  • SAP (Applications)
  • Role-Based Access Control
  • Lean Processes
  • Knowledge of Finance
  • Continuous Integration
  • Key Vault
  • Python (Programming Language)
  • Spark Streaming
  • SQL Azure
  • Build Automation
  • Cluster Analysis
  • Conceptual Models
  • Cost Optimisation
  • Data Dictionary
  • Data Ingestion
  • Data Layers
  • Data Security
  • Digital Products
  • Information Engineering
  • Integration Tests
  • Laboratory Information Management Systems
  • Management of Software Versions
  • Message Queuing Telemetry Transport (MQTT)
  • Mobile Device Management
  • Modelling Skills
  • Mttr
  • OPC Unified Architecture
  • Operational Systems
  • Reliability
  • Semantics
  • Simple Data Format
  • Six Sigma Methodology

Summary

Job Title:- Big Data Engineer
Location:- Remote with occasional travel required to Parsippany or Richmond VA
Duration:- Contract to hire
Job Description

Job Responsibilities:

Client is seeking a Big Data Engineer to build and operate our enterprise Unified Data Layer (UDL) - spanning IT and OT - to deliver trustworthy, performant data products that power Finance, Operations, Supply Chain & Logistics, HSE, Commercial, and corporate analytics. You'll engineer batch/CDC/streaming pipelines, model curated/semantic layers, and harden run-state with testing, CI/CD, security, and observability. You'll partner closely with the data team and larger IT organization.

Mission

Design and deliver scalable, secure data pipelines and data models that safely connect operational systems to analytics, ensure trusted and well governed data, and enable repeatable delivery of BI, ML, AI, and automation solutions.

Data Engineering & Modeling

Build ingestion pipelines (batch, CDC, streaming) from S/4HANA/DataSphere, PHD/historian, LIMS, TMS, HSE, and other sources into landing curated semantic layers.

Implement data contracts, schema/versioning, SCD handling, partitioning, and performance tuning (file formats, clustering, caching).

Develop dimensional/semantic models that back certified Power BI datasets and APIs for apps/agents.

OT/IT Integration & Safety

Integrate OT data via OPC UA/MQTT, broker/DMZ patterns, read-only historian feeds, and event/batch frames-no control-net reads.

Collaborate with plant controls on change control, signal quality, and downtime windows.

Quality, Security & Observability

Embed data quality rules, unit/integration tests, and validation checks (freshness, completeness, drift/PSI).

Instrument lineage and end-to-end monitoring; build alerting and on-call runbooks to minimize MTTR.

Enforce RBAC, secrets management, PII/HSE classifications, and retention aligned to Governance/MDM policies.

CI/CD, Cost & Reliability

Automate build/test/deploy with Git-based CI/CD (environments, approvals, blue/green).

Track and optimize cost/performance (cluster sizing, autoscaling, cache strategy); contribute to FinOps reviews.

Collaboration & Documentation

Partner with Reporting & BI on semantic model contracts, RLS, and performance SLAs; avoid direct system scraping.

Produce "readme" docs, data dictionaries, runbooks, and post-incident reviews; support knowledge transfer with vendors.

Basic Qualifications:

Minimum 5 years' in data engineering building production pipelines at scale (batch/CDC/streaming).

Hands-on with Azure data stack: Databricks or Fabric/Synapse, ADF/Pipelines, ADLS/OneLake, Azure SQL/SQL MI, Key Vault.

Strong SQL and Python/PySpark; comfort with Spark Structured Streaming and performance tuning.

Experience implementing tests/observability (freshness, schema, expectations), and Git-based CI/CD.

Familiarity with SAP S/4HANA structures and SAP DataSphere semantic modeling.

OT concepts: historians (PHD/PI), OPC UA/MQTT, event/batch frames, ISA-95/99 basics.

Understanding of Power BI consumption (semantic models, RLS) and APIs for downstream AI/ML apps/agents.

Preferred Qualifications:

Time-series/data-quality tooling (e.g., Great Expectations or equivalent patterns), feature/metric stores.

MDM concepts (keys, survivorship), lineage/catalog tooling.

TMS/WMS, LIMS, Historian, HSE domain exposure; Lean/Six Sigma mindset; FinOps awareness.


Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
  • Dice Id: 10170376
  • Position Id: 2026-1210
  • Posted 2 hours ago
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