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What’s New with Integrated Product Lifecycle Management

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Perforce's Integrated Product Lifecycle Management (IPLM) offers end-to-end traceability for semiconductor IP and metadata, enabling a unified IP catalog for discovery and reuse, automated release processes, improved design productivity, and collaboration. New features include server-side conflict resolution, protected properties, support for Redis Streams for event handling, single sign-on (SSO) capability, and enhanced support for Keysight ADS users. Future updates will support the Model Context Protocol (MCP) for AI applications and predictive search. Perforce is modernizing its tech stack and adding features for visualizing portfolios. The webinar showcased live demos of the new features and highlighted the promising advancements in AI technology and visualization for IPLM.

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