bluedoor data·Job Postings API·bluedoor.sh ↗

HomeCompaniesCareers Accoy Icims ComData Platform Manager- Hybrid (Applicants must reside in Pittsburgh, PA)

Data Platform Manager- Hybrid (Applicants must reside in Pittsburgh, PA)

Careers Accoy Icims Com · Pittsburgh, PA, US · Hybrid · Active · iCIMS

Job facts

FieldValue
CompanyCareers Accoy Icims Com
TitleData Platform Manager- Hybrid (Applicants must reside in Pittsburgh, PA)
Normalized title-
Department / teamInformation Technology
LocationPittsburgh, PA, United States
Work modelHybrid / Hybrid
Employment typeFull Time
Salary-
Statusactive
ATS provideriCIMS
Posted / first seen2024-06-06 / 2026-05-31
Changed / last seen2026-06-06 / 2026-06-06

Related slices

PageWhat it containsOpen
Company jobsActive postings from Careers Accoy Icims Com.Open
Company breakdownsRole, location, ATS, and work model facets for this company.Open
ATS provider jobsActive postings observed through iCIMS.Open
Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in Pittsburgh.Open
Department jobsActive postings in Information Technology.Open
Work model jobsActive Hybrid postings.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyCareers Accoy Icims Com
Source38201952-f21a-4f53-8388-b31aae6dd54d
ATS provideriCIMS

Description

Overview Location: Hybrid, Pittsburgh, PAJob Type: Full Time / PermanentWork Authorization: No C2C or Sponsorship The A.C.Coy company has an immediate opening for a Data Platform Manager. This role will be responsible for designing, building, and optimizing enterprise wide data platforms within the Data Warehouse. Responsibilities Lead and mentor a team of data engineers, conducting code reviews and ensuring development standards Support troubleshooting and incident management for data-related issues in production Collaborate with business stakeholders, data scientists, and other team members to gather requirements and translate them into technical specifications Lead the design, development and deployment of scalable and high-performance data pipelines using Azure Databricks; ensuring the data integrity, availability, efficient extraction, transformation, and loading of data from various sources into the Azure Databricks Data Warehouse Collaborate with data scientists, analysts, and other engineering teams to deliver business-critical insights. Optimize pipeline performance, cost, and scalability in the Azure cloud environment Define best practices for data ingestion, processing, storage, and governance. Implement data quality checks and validation procedures to ensure the accuracy and integrity of data between various sources, including API’s, databases and streaming platforms Collaborate with data scientists and analysts to operationalize and deploy machine learning models Architecture Design: Define the end-to-end Lakehouse architecture using Delta Lake, implementing medallion architecture (Bronze, Silver, Gold layers) for robust data processing Familiarity with data modeling and schema design principles Pipeline Engineering: Oversee the development of robust, scalable batch and streaming ETL/ELT pipelines using PySpark, Scala, and SQL and with minimal latency Implement data transformations, enrichment, and quality checks using PySpark/Scala within the Databricks environment Integrate real-time and batch data sources using Apache Kafka and ADF Support large-scale data pipelines using Apache Spark on Databricks, Kafka, Stelo, and Azure Data Factory (ADF) Data Governance & Security: Implement Unity Catalog for unified governance, data security, fine-grained access control (RBAC), privacy measures, and data lineage tracking Performance Optimization & Tuning: Tune Spark jobs and Databricks clusters to maximize throughput while maintaining cost efficiency through auto-scaling and cluster policies Expertise in indexing strategies, query optimization, execution plans, and partitioning/sharding Platform Integration: Orchestrate workflows by integrating Databricks with other Azure services like Azure Data Factory (ADF), Azure Data Lake Storage (ADLS Gen2), and Azure DevOps for CI/CD pipelines Qualifications Required Education Bachelor's degree in Computer Science, Engineering, or a related field Required Experience 5-7+ years hands-on data engineering or architecture, with at least 2-4 years specifically focused on Azure Databricks, including Azure cloud technologies 2-5 years experience in managing a team of data engineers, data scientists and/or analysts Certifications (Preferred): Microsoft Certified: Azure Data Engineer Associate (DP-203), Databricks Certified Data Engineer Professional, or Azure Solutions Architect Expert Database Architecture: Proficiency in both Relational (SQL) and NoSQL (Document, Key-Value, Graph, Columnar) databases. Develop and maintain data models and schemas to support data analysis and reporting requirements Distributed Systems: Knowledge of frameworks like Apache Hadoop, Spark, or Presto/Trino for optimizing and handling massive data volumes and retrieval mechanisms, ensuring the efficient processing of large datasets Storage Optimization: Understanding file formats like Parquet, Avro, or ORC and compression techniques Deep proficiency in programming languages: Python (specifically PySpark), SQL, PowerShell, and Scala Infrastructure: Hands-on experience with Azure Cloud infrastructure, including Networking (VNETs), Key Vault, and Identity Management Big Data Tools: Deep knowledge of Apache Spark runtime internals, MLflow for MLOps, and orchestration tools like Airflow

Full job record

Job IDee3c68ddd23f7ec59d617dcc029d97fae96c1dda
Org ID7d51fc14-a47e-4ff3-a6cd-6e30d1e5f053
Source ID38201952-f21a-4f53-8388-b31aae6dd54d
Board ID38201952-f21a-4f53-8388-b31aae6dd54d
Providericims
Provider Job Key22057
TitleData Platform Manager- Hybrid (Applicants must reside in Pittsburgh, PA)
Normalized Title
Statusactive
Activeyes
Location TextPittsburgh, PA, US
DepartmentInformation Technology
Team
Employment Typefull_time
Workplace Typehybrid
Remote Policyhybrid
CountryUnited States
RegionPA
CityPittsburgh
Salary RawOverview Location: Hybrid, Pittsburgh, PAJob Type: Full Time / PermanentWork Authorization: No C2C or Sponsorship The A.C.Coy company has an immediate opening for a Data Platform Manager. This role will be responsible for designing, building, and optimizing enterprise wide data platforms within the Data Warehouse. Responsibilities Lead and mentor a team of data engineers, conducting code reviews and ensuring development standards Support troubleshooting and incident management for data-related issues in production Collaborate with business stakeholders, data scientists, and other team members to gather requirements and translate them into technical specifications Lead the design, development and deployment of scalable and high-performance data pipelines using Azure Databricks; ensuring the data integrity, availability, efficient extraction, transformation, and loading of data from various sources into the Azure Databricks Data Warehouse Collaborate with data scientists, analysts, and other engineering teams to deliver business-critical insights. Optimize pipeline performance, cost, and scalability in the Azure cloud environment Define best practices for data ingestion, processing, storage, and governance. Implement data quality checks and validation procedures to ensure the accuracy and integrity of data between various sources, including API’s, databases and streaming platforms Collaborate with data scientists and analysts to operationalize and deploy machine learning models Architecture Design: Define the end-to-end Lakehouse architecture using Delta Lake, implementing medallion architecture (Bronze, Silver, Gold layers) for robust data processing Familiarity with data modeling and schema design principles Pipeline Engineering: Oversee the development of robust, scalable batch and streaming ETL/ELT pipelines using PySpark, Scala, and SQL and with minimal latency Implement data transformations, enrichment, and quality checks using PySpark/Scala within the Databricks environment Integrate real-time and batch data sources using Apache Kafka and ADF Support large-scale data pipelines using Apache Spark on Databricks, Kafka, Stelo, and Azure Data Factory (ADF) Data Governance & Security: Implement Unity Catalog for unified governance, data security, fine-grained access control (RBAC), privacy measures, and data lineage tracking Performance Optimization & Tuning: Tune Spark jobs and Databricks clusters to maximize throughput while maintaining cost efficiency through auto-scaling and cluster policies Expertise in indexing strategies, query optimization, execution plans, and partitioning/sharding Platform Integration: Orchestrate workflows by integrating Databricks with other Azure services like Azure Data Factory (ADF), Azure Data Lake Storage (ADLS Gen2), and Azure DevOps for CI/CD pipelines Qualifications Required Education Bachelor's degree in Computer Science, Engineering, or a related field Required Experience 5-7+ years hands-on data engineering or architecture, with at least 2-4 years specifically focused on Azure Databricks, including Azure cloud technologies 2-5 years experience in managing a team of data engineers, data scientists and/or analysts Certifications (Preferred): Microsoft Certified: Azure Data Engineer Associate (DP-203), Databricks Certified Data Engineer Professional, or Azure Solutions Architect Expert Database Architecture: Proficiency in both Relational (SQL) and NoSQL (Document, Key-Value, Graph, Columnar) databases. Develop and maintain data models and schemas to support data analysis and reporting requirements Distributed Systems: Knowledge of frameworks like Apache Hadoop, Spark, or Presto/Trino for optimizing and handling massive data volumes and retrieval mechanisms, ensuring the efficient processing of large datasets Storage Optimization: Understanding file formats like Parquet, Avro, or ORC and compression techniques Deep proficiency in programming languages: Python (specifically PySpark), SQL, PowerShell, and Scala Infrastructure: Hands-on experience with Azure Cloud infrastructure, including Networking (VNETs), Key Vault, and Identity Management Big Data Tools: Deep knowledge of Apache Spark runtime internals, MLflow for MLOps, and orchestration tools like Airflow
Salary Min
Salary Max
Salary Currency
Salary Period
Source URLhttps://careers-accoy.icims.com/jobs/22057/data-platform-manager--hybrid-%28applicants-must-reside-in-pittsburgh%2c-pa%29/job
Apply URLhttps://careers-accoy.icims.com/jobs/22057/data-platform-manager--hybrid-%28applicants-must-reside-in-pittsburgh%2c-pa%29/job
First Seen At2026-05-31 18:38:49Z
Last Seen At2026-06-06 19:57:04Z
Last Checked At2026-06-06 19:57:04Z
Last Changed At2026-06-06 19:57:04Z
Inactive At
Source Posted At2024-06-06 19:57:03Z
Source Updated At2026-06-03 17:31:01Z
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=icims/board=careers-accoy.icims.com/date=2026-06-06/2026-06-06T19-57-03-498Z-d9ce7103caa12219fa7ba7bc7fa40240a846f756ce4435b7847500badfa597ab.json
Event Fields
{
  "content_hash": "3e452bbc6a5c0579034d90f0f732d7ddfd4f26d68eff1924837a0189a983bea8",
  "source_hash": "07590024f835a6d53d6166b72b5193e89adeed508815236edaf7ffce83105e84",
  "last_changed_at": "2026-06-06T19:57:04.875Z",
  "active_status": "active"
}
Parsed Structured
{
  "language": "en",
  "location": {
    "raw": "Pittsburgh, PA, US",
    "city": "Pittsburgh",
    "region": "PA",
    "country": "United States",
    "is_remote": false,
    "confidence": 0.8
  },
  "salary_max": null,
  "salary_min": null,
  "inferred_at": "2026-06-06T19:57:04.860Z",
  "launch_scope": {
    "reason": "english_us_canada",
    "included": true,
    "language": "en",
    "location": {
      "raw": "Pittsburgh, PA, US",
      "city": "Pittsburgh",
      "region": "PA",
      "country": "United States",
      "is_remote": false,
      "confidence": 0.8
    },
    "countries": [
      "United States"
    ]
  },
  "remote_policy": "hybrid",
  "salary_period": null,
  "workplace_type": "hybrid",
  "salary_currency": null
}
Extensions
{}
Native Structured
{
  "json_ld": {
    "url": "https://careers-accoy.icims.com/jobs/22057/data-platform-manager--hybrid-%28applicants-must-reside-in-pittsburgh%2c-pa%29/job",
    "@type": "JobPosting",
    "title": "Data Platform Manager- Hybrid (Applicants must reside in Pittsburgh, PA)",
    "@context": "http://schema.org",
    "datePosted": "2024-06-06T19:57:03.979Z",
    "description": "<h2>Overview</h2>\n<p>Location: Hybrid, Pittsburgh, PAJob Type: Full Time / PermanentWork Authorization: No C2C or Sponsorship</p>\n<p> </p>\n<p>The A.C.Coy company has an immediate opening for a Data Platform Manager. This role will be responsible for designing, building, and optimizing enterprise wide data platforms within the Data Warehouse.</p>\n<h2>Responsibilities</h2>\n<ul>\n <li>Lead and mentor a team of data engineers, conducting code reviews and ensuring development standards</li>\n <li>Support troubleshooting and incident management for data-related issues in production</li>\n <li>Collaborate with business stakeholders, data scientists, and other team members to gather requirements and translate them into technical specifications</li>\n <li>Lead the design, development and deployment of scalable and high-performance data pipelines using Azure Databricks; ensuring the data integrity, availability, efficient extraction, transformation, and loading of data from various sources into the Azure Databricks Data Warehouse</li>\n <li>Collaborate with data scientists, analysts, and other engineering teams to deliver business-critical insights. Optimize pipeline performance, cost, and scalability in the Azure cloud environment</li>\n <li>Define best practices for data ingestion, processing, storage, and governance. Implement data quality checks and validation procedures to ensure the accuracy and integrity of data between various sources, including API’s, databases and streaming platforms</li>\n <li>Collaborate with data scientists and analysts to operationalize and deploy machine learning models</li>\n <li>Architecture Design:</li>\n <li>\n  <ul>\n   <li>Define the end-to-end Lakehouse architecture using Delta Lake, implementing medallion architecture (Bronze, Silver, Gold layers) for robust data processing</li>\n   <li>Familiarity with data modeling and schema design principles</li>\n  </ul></li>\n <li>Pipeline Engineering:\n  <ul>\n   <li>Oversee the development of robust, scalable batch and streaming ETL/ELT pipelines using PySpark, Scala, and SQL and with minimal latency</li>\n   <li>Implement data transformations, enrichment, and quality checks using PySpark/Scala within the Databricks environment</li>\n   <li>Integrate real-time and batch data sources using Apache Kafka and ADF</li>\n   <li>Support large-scale data pipelines using Apache Spark on Databricks, Kafka, Stelo, and Azure Data Factory (ADF)</li>\n  </ul></li>\n <li>Data Governance & Security:\n  <ul>\n   <li>Implement Unity Catalog for unified governance, data security, fine-grained access control (RBAC), privacy measures, and data lineage tracking</li>\n  </ul></li>\n <li>Performance Optimization & Tuning:\n  <ul>\n   <li>Tune Spark jobs and Databricks clusters to maximize throughput while maintaining cost efficiency through auto-scaling and cluster policies</li>\n   <li>Expertise in indexing strategies, query optimization, execution plans, and partitioning/sharding</li>\n  </ul></li>\n <li>Platform Integration:\n  <ul>\n   <li>Orchestrate workflows by integrating Databricks with other Azure services like Azure Data Factory (ADF), Azure Data Lake Storage (ADLS Gen2), and Azure DevOps for CI/CD pipelines</li>\n  </ul></li>\n</ul>\n<h2>Qualifications</h2>\n<p>Required Education</p>\n<ul>\n <li>Bachelor's degree in Computer Science, Engineering, or a related field</li>\n</ul>\n<p>Required Experience</p>\n<ul>\n <li>5-7+ years hands-on data engineering or architecture, with at least 2-4 years specifically focused on Azure Databricks, including Azure cloud technologies</li>\n <li>2-5 years experience in managing a team of data engineers, data scientists and/or analysts</li>\n <li>Certifications (Preferred): Microsoft Certified: Azure Data Engineer Associate (DP-203), Databricks Certified Data Engineer Professional, or Azure Solutions Architect Expert</li>\n <li>Database Architecture: Proficiency in both Relational (SQL) and NoSQL (Document, Key-Value, Graph, Columnar) databases. Develop and maintain data models and schemas to support data analysis and reporting requirements</li>\n <li>Distributed Systems: Knowledge of frameworks like Apache Hadoop, Spark, or Presto/Trino for optimizing and handling massive data volumes and retrieval mechanisms, ensuring the efficient processing of large datasets</li>\n <li>Storage Optimization: Understanding file formats like Parquet, Avro, or ORC and compression techniques</li>\n <li>Deep proficiency in programming languages: Python (specifically PySpark), SQL, PowerShell, and Scala</li>\n <li>Infrastructure: Hands-on experience with Azure Cloud infrastructure, including Networking (VNETs), Key Vault, and Identity Management</li>\n <li>Big Data Tools: Deep knowledge of Apache Spark runtime internals, MLflow for MLOps, and orchestration tools like Airflow</li>\n</ul>",
    "directApply": true,
    "jobLocation": [
      {
        "@type": "Place",
        "address": {
          "@type": "PostalAddress",
          "postalCode": "15219",
          "addressRegion": "PA",
          "streetAddress": "501 Grant Street",
          "addressCountry": "US",
          "addressLocality": "Pittsburgh",
          "postOfficeBoxNumber": "UNAVAILABLE"
        }
      }
    ],
    "validThrough": "2027-06-06T19:57:03.979Z",
    "employmentType": "FULL_TIME",
    "jobLocationType": "TELECOMMUTE",
    "hiringOrganization": {
      "name": "A.C. Coy",
      "@type": "Organization",
      "sameAs": "www.accoy.com"
    },
    "occupationalCategory": "Information Technology"
  },
  "detail_meta": {
    "url": "https://careers-accoy.icims.com/jobs/22057/data-platform-manager--hybrid-%28applicants-must-reside-in-pittsburgh%2c-pa%29/job?in_iframe=1",
    "http_status": 200,
    "content_type": "text/html;charset=UTF-8",
    "response_bytes": 36143,
    "compact_response_bytes": 5983,
    "original_response_bytes": 36143
  },
  "sitemap_job": {
    "id": "22057",
    "url": "https://careers-accoy.icims.com/jobs/22057/data-platform-manager--hybrid-%28applicants-must-reside-in-pittsburgh%2c-pa%29/job",
    "slug": "data-platform-manager--hybrid-%28applicants-must-reside-in-pittsburgh%2c-pa%29",
    "lastmod": "2026-06-03T13:31:01-04:00"
  },
  "detail_errors": []
}
Get this page with API

Rendered from the bluedoor Job Postings API. Reproduce it:

GET https://api.bluedoor.sh/job-postings/v1/jobs/ee3c68ddd23f7ec59d617dcc029d97fae96c1dda?include=descriptionJSON
GET https://api.bluedoor.sh/job-postings/v1/orgs/7d51fc14-a47e-4ff3-a6cd-6e30d1e5f053JSON
GET https://api.bluedoor.sh/job-postings/v1/sources/38201952-f21a-4f53-8388-b31aae6dd54dJSON
GET https://api.bluedoor.sh/job-postings/v1/jobs/ee3c68ddd23f7ec59d617dcc029d97fae96c1dda/eventsJSON