Data security as a foundation for secure AI adoption

 

With AI a central component of business operations, security and compliance can't be an afterthought. This whitepaper shows how Copilot for Microsoft 365 combines user-friendly AI features with Microsoft's proven data protection framework. Download the whitepaper to learn how to align security, privacy, and productivity goals with a solution designed for your needs. When you're ready, reach out to Takka Technologies to evaluate your next steps with Copilot.

Please enter your information below to access this content:




Please choose "Yes" to authorize us to store and process your personal information and provide you the requested content. We use the information you provide to contact you about relevant content, products and services. You may easily unsubscribe from these communications at any time.
Yes No



View FAQs
Frequently Asked Questions

How can organizations prepare their data for AI?

What are the risks associated with AI adoption?

Why choose Copilot for Microsoft 365?

Data security as a foundation for secure AI adoption published by Takka Technologies

The digital revolution is transforming our organizations and industries, offering new opportunities and challenges. In this context, Takka Technologies' mission is to bring its customers to their full operational potential by making the most of this digital ecosystem. Takka offers intelligent workflow automation solutions so that allow SMEs (and other organizations) can to stay focused on their value chain. Through industry-specific data management, Takka provides its customers with tools to make data-driven decision-making (DDDM).

Takka Technologies fournit des solutions logicielles d'automatisation de processus métier aux PME qui recherchent davantage de performances, de fiabilité et de données structurées dans leur chaîne de valeur ou des activités de support. Les solutions fournies par Takka Technologies incluent la création d'outils et indicateurs qui aident l'entreprise à passer d'un mode de prise de décision traditionnelle à un mode de prise de décision basée sur les données (DDDM).