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16.2 eDRAM-CIM: Compute-In-Memory Design with Reconfigurable Embedded-Dynamic-Memory Array Realizing Adaptive Data Converters and Charge-Domain Computing
- Source :
- ISSCC
- Publication Year :
- 2021
- Publisher :
- IEEE, 2021.
-
Abstract
- The unprecedented growth in deep neural networks (DNN) size has led to massive amounts of data movement from off-chip memory to on-chip processing cores in modern machine learning (ML) accelerators. Compute-in-memory (CIM) designs performing analog DNN computations within a memory array, along with peripheral mixed-signal circuits, are being explored to mitigate this memory-wall bottleneck: consisting of memory latency and energy overhead. Embedded-dynamic random-access memory (eDRAM) [1], [2], which integrates the 1T1C (T=Transistor, C=Capacitor) DRAM bitcell monolithically along with high-performance logic transistors and interconnects, can enable custom CIM designs. It offers the densest embedded bitcell, a low pJ/bit access energy, a low soft error rate, high-endurance, high-performance, and high-bandwidth: all desired attributes for ML accelerators. In addition, the intrinsic charge sharing operation during a dynamic memory access can be used effectively to perform analog CIM computations: by reconfiguring existing eDRAM columns as charge domain circuits, thus, greatly minimizing peripheral circuit area and power overhead. Configuring a part of eDRAM as a CIM engine (for data conversion, DNN computations, and weight storage) and retaining the remaining part as a regular memory (for inputs, gradients during training, and non-CIM workload data) can help to meet the layer/kernel dependent variable storage needs during a DNN inference/training step. Thus, the high cost/bit of eDRAM can be amortized by repurposing part of existing large capacity, level-4 eDRAM caches [7] in high-end microprocessors, into large-scale CIM engines.
Details
- Database :
- OpenAIRE
- Journal :
- 2021 IEEE International Solid- State Circuits Conference (ISSCC)
- Accession number :
- edsair.doi...........853880a328225712773c1d5e64603533
- Full Text :
- https://doi.org/10.1109/isscc42613.2021.9365932