Summary |
Driven by Deep Understanding of Cloud Recommendation
The revolutionized domain-specific architecture design for cloud recommendation is a result of deep insights into the intricate interplay between compute-bound, latency-bound, memory-bound, energy-bound, and accuracy-bound requirements. With supreme algorithmic optimizations, hardware acceleration, data caching, and power management, this design promises to deliver unparalleled performance and efficiency, setting a new standard for cloud recommendation systems. |
Scientific Breakthrough |
Industry Leading Results for MLPerf™ DLRM Inference Benchmarking The RecAccel™ N3000 has proven itself to be a leader in both performance and power efficiency in the industry. During MLPerf™ v3.0, it has shown that the RecAccel™ N3000 system delivers 1.7 times better performance per watt for inference DLRM while maintaining 99.9% accuracy with the help of its proprietary INT8 calibrator. SW-HW Co-design Achieves Linear Multicard Scalability During system testing in MLPerf™ v3.0, the RecAccel™ N3000 delivered exceptional performance, with nearly 100% scaling observed across each card. This means that the card's performance increased linearly with the addition of more cards, allowing for seamless scalability and enhanced performance. |