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Data Analytics Project Manager Jobs in Raleigh, NC

Data Analytics Engineer

Durham, NC

$110K - $132K/yr

S. development sector's net investments in commercial projects totaled $224 million. Together with our customers and the collective expertise of our 6,300 teammates in the U.S. and 26,300 globally ...

Technical Architect - Data, Analytics & AI

Durham, NC · Hybrid

$61.50 - $79.25/hr

... project delivery and longterm strategic outcomes. This position is based in the USA and ensures ... Define and maintain technical standards for enterprise data management, analytics platforms, and AI ...

Technical Architect - Data, Analytics & AI

Cary, NC · Hybrid

$59 - $76/hr

... project delivery and longterm strategic outcomes. This position is based in the USA and ensures ... Define and maintain technical standards for enterprise data management, analytics platforms, and AI ...

... Architect, Data Analyst) is engaged at the right time and that every stakeholder knows what ... Maintain project timelines and dependencies in Salesforce * Manage scope changes via formal change ...

The Project Manager will serve as a liaison and advisor on a large SAS program, managing project ... data model and advanced analytics capabilities. Responsibilities : • Serve as a liaison ...

Technical Project Manager

Morrisville, NC · On-site

$115K - $135K/yr

Leverage Power BI to analyze project, utilization, and performance data and provide actionable ... Experience managing new product development of electronic-based products. * Experience leading ...

Leverage Power BI to analyze project, utilization, and performance data and provide actionable ... Experience managing new product development of electronic-based products. * Experience leading ...

They are seeking a Project Manager to serve as a liaison and manage a large SAS program focused on developing a robust data warehouse and advanced analytics capabilities in the healthcare domain.

... data warehouse, reporting and advanced analytics capabilities. Through the project lifecycle ... Manage the day to day SAS project scope, schedule, data, resources, quality, delivery, risk ...

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Data Analytics Project Manager information

See Raleigh, NC salary details

$16

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How much do data analytics project manager jobs pay per hour?

As of Jul 10, 2026, the average hourly pay for data analytics project manager in Raleigh, NC is $55.90, according to ZipRecruiter salary data. Most workers in this role earn between $48.37 and $65.43 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive in the Data Analytics Project Manager position, and why are they important?

To excel as a Data Analytics Project Manager, you need a solid background in data analysis, project management methodologies (such as Agile or Waterfall), and a relevant degree in data science, statistics, or a related field. Familiarity with tools like SQL, Python, Tableau, and project management software (such as Jira or Asana), along with certifications like PMP or Certified Analytics Professional, is highly valued. Strong leadership, communication, and problem-solving skills help you effectively coordinate teams and manage stakeholder expectations. These abilities are crucial for driving data projects to completion, ensuring analytical insights align with business goals, and adapting to evolving project requirements.

What is a Data Analytics Project Manager job?

A Data Analytics Project Manager oversees data-driven projects, ensuring they align with business goals and are completed on time and within budget. They collaborate with data analysts, engineers, and stakeholders to define project requirements, manage resources, and monitor progress. Their role involves coordinating data collection, analysis, and visualization to support strategic decision-making. Strong project management, communication, and analytical skills are essential for success in this role.

What are the typical responsibilities of a Data Analytics Project Manager on a daily basis?

A Data Analytics Project Manager is responsible for overseeing the end-to-end lifecycle of analytics projects, including defining project scope, setting timelines, and managing resources. On a daily basis, you may coordinate with data analysts, data engineers, and business stakeholders to ensure requirements are clear and progress is on track. You will likely review deliverables, address roadblocks, and adjust plans as needed while ensuring that the team is aligned with business objectives. Regular communication and reporting to upper management or clients is also a key part of the role.

What are popular job titles related to Data Analytics Project Manager jobs in Raleigh, NC? For Data Analytics Project Manager jobs in Raleigh, NC, the most frequently searched job titles are:
What job categories do people searching Data Analytics Project Manager jobs in Raleigh, NC look for? The top searched job categories for Data Analytics Project Manager jobs in Raleigh, NC are:
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Senior Manager, Data, Analytics & AI

Senior Manager, Data, Analytics & AI

ACA Group

Durham, NC • On-site

Other

Re-posted 26 days ago


Job description

Senior Manager, Data Analytics and AI - Global Regulatory Advisory will build and scale the data infrastructure, analytics, and AI-enabled automation that power how ACA's Global Regulatory Advisory business operates. Partnering closely with the Head of Operations, Global Regulatory Advisory, and business, finance, and technology leaders across multiple advisory segments, this role will unify fragmented operational, project, client, and financial data into a reliable single source of truth. The role will also deliver executive-ready reporting on utilization, profitability, bookings-to-revenue conversion, and other core KPIs. Success is defined by measurable improvements in data quality, reporting speed and consistency, and the adoption of repeatable, data-led operating rhythms that increase efficiency, margin, and client delivery excellence.

The Opportunity:

ACA Group is building the operational backbone for its next phase of growth-and this role is at the center of it. - Strategy & Operations, you will partner directly with the Head of Operations for ACA's Global Regulatory Advisory business to architect, build, and scale the data infrastructure and analytics capabilities that power how we run, measure, and grow a multi-segment, ~$100M+ advisory practice.

Today, our US Regulatory business spans Private Funds, Fund Officers, Broker Dealer, and Wealth-each with its own delivery model, client base, and operational rhythm. Your mandate is to build and maintain a data and analytics backbone that helps operationalize and systematize how we analyze disparate data at scale, maximize business efficiency and profitability, and create a unified data schema that empowers both practice-level insight and enterprise-level clarity-while maintaining an exceptional client experience for our delivery teams.

You will own the design and implementation of scalable data systems, AI-driven automation, and advanced analytics that enable leadership to manage the business through a single, data-led operating lens-from utilization and scorecard tracking to project profitability, revenue recognition, and management reporting. This is not a support role. This is a builder's role-high autonomy, high impact, and a direct line to the decisions that shape how ACA's largest advisory business operates and scales.

If you're energized by the idea of turning messy, real-world operational data into clean, automated, decision-grade intelligence-and you want to do it inside a fast-moving, PE-backed GRC leader-this is your opportunity.

Job Duties:

  1. Design and build scalable data architecture to unify fragmented product, project, billing, and client engagement data across multiple business segments and legacy systems (PSA tools, CRM, Deltek, Power BI, finance platforms, Workday, manual spreadsheets).

  2. Develop and deploy AI and automation solutions to reduce manual rework in operational workflows, including capacity and utilization reporting, project profitability analysis, data aggregation, cross-functional data migrations, and client engagement hygiene tracking.

  3. Build and maintain advanced dashboards and analytics tools using Power BI, Python, and Excel to deliver real-time, decision-grade visibility into key operational KPIs such as billable utilization, project profitability, cost-to-serve drivers, bookings-to-revenue conversion, and termination/churn analytics.

  4. Integrate disparate data sources across the enterprise (Salesforce, PSA/project management tools, Power BI, SharePoint, finance systems) via APIs and automated ETL pipelines to establish a reliable single source of truth for operational reporting.

  5. Partner cross-functionally with Business Unit Leaders (Private Funds, Fund Officers, Broker Dealer, Wealth), FP&A, Human Resources, and Technology to ensure data definitions, reporting cadences, and KPI frameworks are standardized and aligned to the firm's financial and operational rhythms.

  6. Support the development and automation of management reporting cycles, including quarterly business reviews, monthly financial reviews, and board-level materials-transforming manual, labor-intensive reporting into repeatable, data-driven operating systems.

  7. Quantify operational constraints and opportunities through rigorous analysis-identifying where execution mechanics (data classification errors, billing discrepancies, non-billable capacity inefficiencies) are creating drag on margin and growth, and recommending data-backed improvements.

  8. Prototype and scale AI agents and tools (e.g., Copilot-based automation, custom Python scripts, LLM-assisted workflows) to accelerate reporting, analysis, and decision-making across the US Regulatory team.

  9. Champion a data-led culture within the operations function by establishing SOPs for data governance, reporting standards, and analytics best practices that can be replicated across ACA's global advisory businesses.

Required Education and Experience:

  • Bachelor's degree, preferably in a quantitative field such as Data Science, Computer Science, Statistics, Mathematics, Engineering, Economics, Finance, or a related discipline.
  • At least 7-10 years of progressive experience in data analytics, quantitative analysis, business intelligence, or quantitative software/application development, ideally within professional services, financial services, or an advisory environment.
  • Advanced proficiency in Python for data manipulation, automation, and analysis (pandas, NumPy, scripting, API integrations).
  • Proven expertise leveraging AI tools (e.g., Copilot, Claude) in an enterprise environment to drive scalable efficiencies (automation, agent-building, workflow optimization, reporting, QC analysis).
  • Expert-level skills in Microsoft Excel (complex modeling, Power Query, VBA/macros) and Power BI (DAX, data modeling, dashboard design, publishing).
  • Demonstrated experience building APIs and automated data pipelines/ETL processes across enterprise systems.
  • Proven ability to work with large, complex, disparate datasets-cleaning, reconciling, and structuring data into reliable analytical outputs.
  • Experience partnering cross-functionally with senior business leaders, finance teams, and technology stakeholders to translate operational needs into analytical solutions.

Preferred Education and Experience:

  • Experience in a high-growth, private equity-backed, or professional services environment.
  • Familiarity with GRC (governance, risk, and compliance), regulatory advisory, or financial services operations.
  • Hands-on experience with AI/ML tools, large language models, or AI agent development (e.g., Microsoft Copilot, OpenAI APIs, Claude).
  • Experience with Salesforce reporting, PSA/project management platforms, and financial planning tools.
  • Master's degree in a quantitative discipline, MBA, or equivalent advanced training.
  • Prior experience building or scaling a data/analytics function within a complex organization.

Required Skills and Attributes:

  • Builder's mindset: thrives in ambiguity and creates structured, scalable solutions from scratch.
  • Strong operational intuition: connects data to business decisions and understands impact on outcomes.
  • High ownership: takes initiative and drives work from concept through delivery.
  • Cross-functional fluency: effectively translates between business, finance, and technical stakeholders.
  • Precision and rigor: prioritizes data quality, consistency, and analytical integrity.
  • Intellectual curiosity: stays current on emerging tools, especially in AI, automation, and data engineering.
  • Excellent communication skills: able to present complex insights in clear, executive-ready formats.