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Remote Enterprise Data Management Jobs (NOW HIRING)

East Hanover (Onsite: 3days & 2 days remote a week) Duration: 06 Months Pay Range: $(53.57 - $64.28 ... management (Data Mesh, Data Fabric, Domain-Driven Design) • Streaming data management 2) Data ...

Azure Data Architect (Remote)

$65.25 - $84/hr

Remote (EST or CST time zone) Job Type : 9 Month Contract with extensions company has an immediate ... Direct experience in implementing enterprise data management processes, procedures, and decision ...

Azure Data Architect (Remote)

$65.25 - $84/hr

Azure Data Architect (Remote) Remote (EST or CST time zone) 9 Month Contract with extensions ... Direct experience in implementing enterprise data management processes, procedures, and decision ...

Data Architect

Dallas, TX · Remote

$65.25 - $84/hr

Remote Duration: Long term contract Job Summary: We are seeking a Data Architect to establish and develop a Data Architecture within the Enterprise Data Management (EDM) team. Reporting to the EDM ...

Data Architect

$65.25 - $84/hr

Remote (Day 1 Onsite in Columbus, OH) Interview Mode: Microsoft Teams seeking a Senior Data ... managers, architects, DBAs, Data Engineers, and BI teams on enterprise initiatives. * Evaluate ...

Senior Data Manager (Remote)

$108K - $147K/yr

Senior Data Manager (Remote) Duration: 10 Months (with possible extension) Location: Remote ... Minimum eight (8) years of experience in enterprise data management, data architecture, or ...

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Remote Enterprise Data Management information

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$25

$71

$91

How much do remote enterprise data management jobs pay per hour?

As of Jul 1, 2026, the average hourly pay for remote enterprise data management in the United States is $71.92, according to ZipRecruiter salary data. Most workers in this role earn between $62.50 and $82.45 per hour, depending on experience, location, and employer.

How to make 2000 a week working from home?

A remote enterprise data management professional can earn $2,000 or more weekly by taking on multiple projects, consulting roles, or freelance assignments that leverage data analysis, database management, and cloud tools. Building specialized skills, certifications, and a strong client network can increase earning potential, especially when working independently or as a contractor with flexible hours.

What is the difference between Remote Enterprise Data Management vs Remote Data Analyst?

AspectRemote Enterprise Data ManagementRemote Data Analyst
Required CredentialsData management certifications, SQL, data governanceData analysis certifications, Excel, SQL, visualization tools
Work EnvironmentCross-departmental, strategic focus, data infrastructureBusiness units, reporting, data interpretation
Industry UsageIT, finance, healthcare, large enterprisesMarketing, finance, retail, various industries

Remote Enterprise Data Management involves overseeing data infrastructure, governance, and quality across an organization, focusing on strategic data assets. Remote Data Analysts primarily interpret data, create reports, and support decision-making. While both roles require data-related skills and certifications, Enterprise Data Management emphasizes data governance and infrastructure, whereas Data Analysts focus on data analysis and visualization.

How to make $1000 a week remote?

A remote enterprise data management professional can earn $1000 or more weekly by working on high-demand projects, leveraging skills in data analysis, database management, and tools like SQL or cloud platforms. Achieving this income level often requires experience, specialized skills, and the ability to handle multiple projects or clients simultaneously.

How does a Remote Enterprise Data Management professional typically collaborate with cross-functional teams to ensure data consistency across the organization?

Remote Enterprise Data Management professionals often work closely with IT, business analysts, and data governance teams through virtual meetings, collaborative platforms, and shared documentation. They are responsible for establishing data standards, coordinating data integration efforts, and ensuring that data definitions and quality controls are consistent across departments. Regular communication and project management tools are essential for aligning stakeholders and resolving data discrepancies, making strong collaboration skills vital for success in this remote role.

Is data management in demand?

Data management is in high demand across industries due to the increasing reliance on data-driven decision making. Roles like remote enterprise data management professionals are sought after for their skills in data governance, quality, and tools such as SQL and data warehouses, often requiring certifications and strong analytical abilities.

What are the key skills and qualifications needed to thrive as a Remote Enterprise Data Management professional, and why are they important?

To thrive as a Remote Enterprise Data Management professional, you need expertise in data governance, data modeling, and database management, often supported by a degree in computer science or information systems. Familiarity with data management platforms (like Informatica, Collibra, or Talend), cloud databases (such as AWS, Azure, or Google Cloud), and relevant certifications (e.g., CDMP) is typically required. Strong analytical thinking, attention to detail, and effective remote communication skills help ensure smooth collaboration and data integrity. These competencies are vital to maintaining organizational data quality, security, and accessibility in a distributed work environment.

What does enterprise data management do?

Enterprise data management (EDM) involves organizing, storing, and maintaining an organization's data to ensure accuracy, consistency, and security. It includes tasks such as data governance, data quality, and implementing tools like data warehouses and master data management systems to support business decision-making. Professionals in this field often work with data analysts and IT teams to develop policies and use software to manage large volumes of data effectively.

What is Remote Enterprise Data Management?

Remote Enterprise Data Management refers to the processes and tools used to organize, store, govern, and analyze large volumes of business data from a remote location. Professionals in this field ensure that data is accurate, secure, and accessible to authorized users, even when working from different locations. They use specialized software and cloud-based solutions to manage data assets, enforce data governance policies, and support business decision-making. The role often requires collaboration with IT, analytics, and business teams to implement best practices for data handling and compliance.
More about Remote Enterprise Data Management jobs
What cities are hiring for Remote Enterprise Data Management jobs? Cities with the most Remote Enterprise Data Management job openings:
What are the most commonly searched types of Enterprise Data Management jobs? The most popular types of Enterprise Data Management jobs are:
What states have the most Remote Enterprise Data Management jobs? States with the most job openings for Remote Enterprise Data Management jobs include:
What job categories do people searching Remote Enterprise Data Management jobs look for? The top searched job categories for Remote Enterprise Data Management jobs are:
Infographic showing various Remote Enterprise Data Management job openings in the United States as of June 2026, with employment types broken down into 3% As Needed, 59% Full Time, 35% Part Time, and 3% Contract. Highlights an 87% Physical, 3% Hybrid, and 10% Remote job distribution, with an average salary of $149,587 per year, or $71.9 per hour.
Enterprise AI-Ready Data Architect

Enterprise AI-Ready Data Architect

eTeam

Remote

$64.28/hr

Other

Posted 7 days ago


Job description

Job Title: Enterprise AI-Ready Data Architect
Location: East Hanover (Onsite: 3days & 2 days remote a week)
Duration: 06 Months
Pay Range: $(53.57 - $64.28)/hr on W2 all-inclusive without benefits

Job Description:
The Enterprise AI-Ready Data Architect / Senior Data Engineer is a hybrid role with a focus on enterprise data architecture, AI integration, and hands-on data engineering. You will design and implement AI-ready, analytics-ready data products and semantic layers (including ontologies) that enable scalable enterprise analytics and integration with AI agents and GenAI use cases. You will embed governance-by-design (quality, lineage, contracts, observability) and partner closely with business and technology stakeholders-in pharmaceutical domains.
Key Responsibilities
1) Enterprise Data Architecture (AI-Ready by Design)
• Define and deliver strategic enterprise data architectures that scale and support AI-ready outcomes.
• Design data workflows capturing as-is and to-be states for enterprise modernization.
• Establish architecture patterns for:
• Semantic Context Layer
• Data Warehouses, Data Lakehouses
• Data Catalogs and Data Marketplaces
• Event-driven and metadata-driven architectures
• Distributed data management (Data Mesh, Data Fabric, Domain-Driven Design)
• Streaming data management
2) Data Products, Semantic Products, and Master Data
• Design data products that are AI-ready and reusable across domains and use cases.
• Build and govern semantic models, metrics-first modeling, and ontologies (knowledge graph concepts).
• Deliver Master Data Management (MDM) capabilities and align master/reference data with business needs.
• Support structured and unstructured data management to enable broader AI and analytics capabilities.
3) AI Integration and GenAI Enablement
• Enable contextual intelligence and data enrichment using:
• Contextual retrieval, entity linking, enrichment using LLMs and embeddings
• Vector search, RAG pipelines, and LLM-based enrichment
• Implement graph-based approaches:
• RDF, OWL, and SPARQL querying
• Property graph / knowledge graph modeling for relationships and reasoning
4) Data Engineering Delivery
• Design and implement robust ETL/ELT pipelines and orchestration frameworks.
• Develop high-quality transformations and data modeling using:
• Advanced SQL
• Tools such as dbt, Airflow, Dataiku
• Ensure production-grade engineering practices for performance, reliability, and maintainability across pipelines.
5) Governance and Standards (Embedded)
• Implement open-source data standards across:
• Data contracts
• Data quality
• Data lineage
• Lead metadata-driven governance through metadata management, observability, and policy-aligned design.
Skills and Qualifications
Core Technical Skills

• Advanced SQL proficiency
• Data platforms and governance tooling experience (one or more):
• Snowflake, Databricks, Collibra, Salesforce
• ELT/ETL and orchestration:
• dbt, Airflow, Dataiku
• BI and reporting:
• Power BI
• Cloud platforms:
• AWS, Azure, GCP
• Modern architecture and data management:
• Data Mesh, Data Fabric, streaming, metadata-driven architecture
• Graph and semantic technologies:
• Knowledge graphs, property graphs (Neo4J), RDF/OWL, SPARQL, graph query languages
Domain and Modeling Expertise
• Experience with data modeling techniques:
• Conceptual, logical, physical modeling-preferably for the pharmaceutical industry
• Semantic modeling, ontology design, and reusable metric layers
• MDM concepts and implementation approaches
AI and GenAI Enablement Skills
• Familiarity with GenAI technologies for enhancing analysis/reporting and data enrichment
• Experience with embeddings, vector search, RAG patterns, and entity resolution/linking concepts
Nice to Have
• Experience with Palantir platform
Recommended Certifications
• CDMP (DAMA)
• TOGAF
• EDM Council frameworks:
• DCAM, CDMC, Open Knowledge Graph, Data Ethics and Responsible AI
Qualifications
• 10+ years of experience in data architecture, process automation, implementation and large-scale data engineering, ideally in pharmaceutical
• Advanced technical engineering and hands-on experience in data modeling for OLAP, workflow automation, AI/ML integration
• ETL pipeline design and development
• Bachelor's degree in computer science, information technology, engineering, or data science
• Strong problem-solving skills and attention to detail.
• Excellent communication skills with the ability to work with senior stakeholders to translate business requirements to technical data requirements