System-Level Validation Across Multiple Platforms to build a Robust 2.5D Multi Foundry Chiplet Solution
By Srivatsa Rangachar Srinivasa, Dileep Kurian, Paolo Aseron, Prerna Budhkar, Vinayak Honkote, Dan Lake, Jaykant Timbadiya, Satish Yada, Suresh Kadavakollu, James Greensky, Gauthaman Murali, Anuradha Srinivasan, Ragh Kuttappa, Tanay Karnik
Intel

Abstract
The proliferation of chiplet-based designs, driven by the escalating computational demands of AI, presents unique validation challenges when integrating heterogenous chiplets. This paper investigates the complexities of realizing large-scale chiplet systems with passive silicon base scaling beyond multi-reticle approaches, particularly addressing the heterogeneity introduced by varying functionalities with diverse manufacturing origins (multiple foundries). We propose three distinct validation platforms: hardware-aware software enablement, FPGA-based prototyping for seamless hardware porting, and specialized infrastructure for silicon system measurement, to optimize system efficiency. These platforms provide a structured framework for validating and deploying complex chiplet heterogenous architectures, exemplified by our target 20-chiplet System-In-Package (SIP). We demonstrate mapping workloads onto the hashing accelerator following the proposed approach to obtain speed up between 4x – 5x compared against CPU.
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