By offloading analytics execution to CXL-based computational memory like the MX1, intermediate data can be processed closer to where it resides, reducing memory bottlenecks and unnecessary data transfers.
'Compute near data' is the core philosophy of Processing-in-Memory (PIM) architectures that have been theorized for 30 years. What's new is that the AI infrastructure boom has created economic demand large enough to justify the silicon investment — XCENA is essentially making a classic research idea commercially viable by targeting a $100B+ addressable market.