Precisely Unveils AI Ecosystem for Enhanced Data Integrity

Precisely has announced enhancements to its AI ecosystem, focusing on data integrity across cloud, AI, and analytics platforms. The new features aim to provide flexibility and interoperability for enterprise AI initiatives.

Precisely has announced significant enhancements to its AI ecosystem, focusing on data integrity across cloud, AI, and analytics platforms, announced in a press release. These enhancements are designed to support AI-driven analytics, automation, and cloud modernization initiatives by providing flexible integrations and broader AI environment support.

The new ecosystem allows enterprises to leverage AI models and tools that meet their internal requirements while ensuring data integrity. Key features include a bring-your-own-model approach, support for leading large language models, and robust AI governance capabilities. These capabilities enable collaborative evaluation of model performance and data usage policies, ensuring accountability across teams.

Precisely's focus on interoperability ensures seamless data flow across legacy systems, cloud platforms, and AI models. The ecosystem integrates with major platforms such as AWS, Google Cloud, and Microsoft Azure, providing real-time insights and consistent outcomes from AI and analytics investments. Additionally, the ecosystem supports over 30 AI models and includes features like vector database integration and AI agents in data pipelines to automate data access and movement.

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