Our website use cookies to improve and personalize your experience. Our website may also include cookies from third parties like Google Adsense, Google Analytics & Youtube. By using the website, you consent to the use of cookies. We have updated our Privacy Policy. Please click on the button to check our Privacy Policy.

AI Data Assessment and Audit

Providing a clear path forward for effectively adopting and leveraging AI within your organization.

Why should I consider Oakwood’s AI Data Assessment and Audit?

In the digital age, the integrity and quality of data are foundational to business success.

Engaging in Oakwood’s AI Data Assessment and Audit provides businesses with a clear snapshot of their current data landscape, revealing both strengths and areas for improvement.

This structured evaluation ensures data accuracy, consistency, and relevance, driving informed decision-making and strategic planning. By identifying gaps in data management and potential compliance issues, businesses can avert costly missteps, uphold their reputation, and foster trust among stakeholders. Ultimately, a comprehensive data audit not only safeguards a company’s data assets but also paves the way for data-driven growth and innovation.


Initial Consultation and Discovery

  • Objective Setting. Understand business goals, current tech landscape, and any objectives for AI adoption.
  • Stakeholder Interviews

Data Infrastructure Review

  • Data Storage and Management
  • Data Quality and Integrity
  • Data Integration and Accessibility

AI Technology Assessment

  • Current AI Implementations (if any)
  • Technology Stack Evaluation
  • AI Model Readiness

Compliance and Security Audit

  • Data Governance and Compliance
  • Security Assessment
  • Risk Management
microsoft solutions partner infrastructure azure
microsoft solutions partner digital & app innovation azure
microsoft solutions partner data & ai azure
microsoft solutions partner modern work

Contact the AI experts at Oakwood today so that you might gain a better understanding of your data landscape, identify any pain points that may exist, and the appropriate steps needed to optimize your data for further processes like analytics, AI, and other business initiatives.