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Deep Learning Accelerator Based on Eyeriss V2 Architecture with custom RISC-V extended instructions

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Deep Learning Accelerator Based On Eyeriss V2 with Extend Custom RISC-V Instructions

This project is a deep learning accelerator implementation in Chisel. The architecture of the accelerator is based on Eyeriss v2.

It can be integrated into Rocket Chip System SoC with extended custom RISC-V instructions.

diagram

Run

Thanks to Sequencer, this project is integrated in rocket-playground environment, you can clone the whole environment and run inside, or you can only test the module under ClusterGroup.

Clone Rocket-Playground With This Project

git clone https://github.com/SingularityKChen/rocket-playground.git --recurse-submodules
cd rocket-chip/
mill mill.scalalib.GenIdea/idea

And then you can develop and test this project in Intellij.

Install Mill

You can install mill manual or other methods

sudo su
curl -L https://github.com/lihaoyi/mill/releases/download/0.7.3/0.7.3 > /usr/local/bin/mill
chmod +x /usr/local/bin/mill

Generate an IntelliJ Project Config

After cloning it with --recurse-submodules, you can use mill in idea after this command:

mill mill.scalalib.GenIdea/idea

If you meet any similar error as bellow shows, you can check the mill version, and then install the newest version of mill.

mill gen idea config errors

If your mill can not find some build.sc files under firrtl, chisel3, etc., then you need to clone the submodules as well.

TODO

You can find it at the project page.

Known Bugs

  • Meet continuous zero (more than three) columns in weight matrix;
  • The head of address vectors or data vectors is zero column;

I tried to write a Scala model for Eyeriss to get the performance. Notice: I use CSC data format not only in scratch pads but also inAct SRAMs.

This is the original fundamental component of deep learning accelerator and the PE in this project is a little different.

PE Top Architecture

At SPad for loops, the row number of the 2D partial sum matrix is M0, the column number of it is F0*N0*E, the size of partial sum matrix is must less than the size of PSumSPad, which equals to pSumDataSPadSize.

The original size of 2D input activation matrix is (R*C0, F0*N0*E), the size of 2D weight matrix is (M0, R*C0). Due to the compressed data format, both input activation matrix and weight matrix can be stored in a smaller SPad.

All three kinds of data are stored in the column's order, i.e., partial sum store the first M0 elements, then second until F0*N0*E elements.

Map DNN to a Matrix Multiplication

𝑊𝑒𝑖𝑔ℎ𝑡((𝑀0, 𝑅∗𝐶0))∗𝐼𝑛𝐴𝑐𝑡((𝑅∗𝐶0, 𝐹0∗𝑁0∗𝐸))=𝑃𝑆𝑢𝑚((𝑀0, 𝐹0∗𝑁0∗𝐸))

Some Differences

The original one use CSC format, but I changed it for convenience. More details can be found later.

ProcessingElementControl

This is the control module of PE.

ProcessingElementPad

This is the Scratch Pad of input feature map, filter weight and partial sum. It contains seven stages. This module is similar to the graph bellow, expect the FIFOs.

Eyeriss v2 PE Architecture. The address SPad for both inAct and weight are used to store addr vector in the CSC compressed data, while the data SPad stores the data and count vectors

The most complex part is the computation state machine.

MAC State Machine

This file contains the template of Scratch Pad module with simple read and write function.

This file contains all the IOs we need to use in Processing Element module. Including some sub IOs.

PETopDebugIO

This is used for debug at PE top level. It generates two sub IOs to get the signal through from control module and Scratch Pad module.

PEControlDebugIO

This is used for monitoring control module to top module.

  • peState: know the state of the state machine, idle, load or calculation;
  • doMACEnDebug: this signal can be seen as the start signal of MAC, so we need to keep an eye on it;
PESPadDebugIO

This is used for monitoring Scratch Pad module.

  • inActMatrixData: input activations matrix element;
  • inActMatrixRow: input activations matrix row index;
  • inActMatrixColumn: input activations matrix column index, also the column index of output partial sum;
  • inActAdrInc: true then the index of input activation address vector will increase;
  • inActDataInc: true then the index of input activation data and count vector will increase;
  • inActAdrIdx: the index number of input activation address vector;
  • weightAdrSPadReadOut: this is the current value read from weight address vector;
  • weightMatrixData: weight matrix element;
  • weightMatrixRow: weight matrix row index, also the row index of output partial sum;
  • productResult: inActMatrixData * weightMatrixData;
  • pSumLoad: the corresponding partial sum produced previous;
  • pSumResult: productResult + pSumLoad;
  • weightAdrInIdx: the weight address vector index;
  • sPadState: the state of Scratch Pad state machine, i.e., MAC process;

This is the config file for PE generator.

SPadSizeConfig

Contains the size of five scratch pads.

PESizeConfig

Contains some more general configs.

  • weightHeight: the height of weight;
  • ofMapHeight: the height of output feature map (output partial sum);
  • inActDataWidth: input activations data width in scratch pad, it is the combination of 8-bit data vector and its corresponding 4-bit count vector;
  • inActAdrWidth: input activations address width in scratch pad, i.e., the width of address vector element;
  • weightDataWidth:
  • weightAdrWidth:
  • cscDataWidth: compressed sparse column data vector width, used for get the real element of inAct and weight;
  • cscCountWidth: csc count vector width;
  • psDataWidth: data width of partial sum;
  • fifoSize: the size of FIFO;
  • fifoEn: true then generate a PE with FIFOs;
  • commonLenWidth: used for get the length of data vector, address vector.
  • weightDataLenWidth: used for get the length of weight data vector;
  • inActZeroColumnCode: used for judge whether current inAct column is a zero column, default is the last number it can express;
  • weightZeroColumnCode: used for judge whether current weight column is a zero column, default is the last number it can express;
MCRENFConfig

Used for data reuse.

This is the top module of cluster group. It contains one GLB cluster, one Router cluster, one PE cluster and the cluster group control module.

Cluster Group Architecture

This is the global buffer cluster module. It contains inActSRAMNum input activation SRAM banks, pSumSRAMNum partial sum SRAM banks.

InActSRAMBank

You need to poke the value of g2*N2*C2*(F2 + S2) + n2*C2*(F2 + S2) + c2*(F2 + S2) + (f2 + s2) when reading input activation. Then it will find the real address of input activation's SRAM bank via a lookup table. However, when writing, you don't need to poke any address. It will send back done signal to other module when read finishes or write finishes.

PSumSRAMBank

You have to poke address into partial sum SRAM banks no matter you want to read or write it. The address will be directly sent to the SRAM, which means it's the address of the SRAM.

This is the processing element cluster module. It is a PE Array which contains peArrayColumnNum columns and peArrayRowNum rows, also it needs a inAct controller to make things tidy.

PE Cluster Architecture

  • dataPath:
    • inActIO: all the inAct data will be sent to PEClusterInAct module and sort them out.
    • weightIO
    • pSumIO
  • ctrlPath:
    • inActSel
      • inDataSel: true for broad-cast and false for uni-cast
      • outDataSel: when in broad-cast, this signal will determine which port of inAct will be sent broad-cast.
    • pSumSel:
      • inDataSel: true load PSum from GLB, false load from the southern PE.
      • OutDataSel: is assigned to DontCare.
PEClusterInAct

This class is designed to sort the inAct out. Input inActRouterNum inAct Data and come out the sorted inAct data corresponding to each PE, i.e., peRow * peCol.

This is the router cluster module. It contains inActRouterNum input activations router, weightRouterNum weight router, pSumRouterNum partial sum router.

Each router cluster not only connects to one GLB cluster, one PE cluster, but also at least one another router cluster.

InActRouter

This class is the generator of one input activations router.

  • dataPath:
    • InIOs(0): the input activation comes from its corresponding input activations SRAM bank(GLB Cluster);
    • InIOs(1): the input activation comes from its northern inAct router;
    • InIOs(2): the input activation comes from its southern inAct router;
    • InIOs(3): the input activation comes from its horizontal inAct router;
    • OutIOs(0): send the input activation to PE Array;
    • OutIOs(1): send the input activation to northern inAct router;
    • OutIOs(2): send the input activation to southern inAct router;
    • OutIOs(3): send the input activation to horizontal inAct router;
  • ctrlPath:
    • inSelWire: its value enable the corresponding inIOs, i.e., 0 enables inIOs(0)
    • outSelWire: routing mode:
      • 0: uni-cast
      • 1: horizontal
      • 2: vertical
      • 3: broadcast
WeightRouter

This class is the generator of one weight router.

  • dataPath:
    • inIOs(0): the weight comes from its corresponding GLB Cluster;
    • inIOs(1): the weight comes from its only horizontal neighboring WeightRouter;
    • OutIOs(0): send the data to its corresponding PE Array row;
    • OutIOs(1): send the data to its only horizontal neighboring WeightRouter;
  • ctrlPath
    • inSelWire: false enables inIOs(0) and true enables inIOs(1)
    • OutSelWire: always send to outIOs(0) and this signal be true to enables outIOs(1)
PSumRouter

This class is the generator of one partial sum router. inIOs(0) connects directly to outIOs(1).

  • dataPath:
    • inIOs(0): the output partial sum computed by its corresponding PE Array column;
    • inIOs(1): the partial sum read from its corresponding partial sum SRAM bank;
    • inIOs(2): the partial sum transferred from its northern neighboring PSumRouter;
    • OutIOs(0): send the partial sum to its corresponding PE Array column;
    • OutIOs(1): send the partial sum back to its corresponding partial sum SRAM bank;
    • OutIOs(2): send the partial sum to its southern neighboring PSumRouter;
  • ctrlPath:
    • inSelWire: true for inIOs(1) and false for inIOs(2);
    • outSelWire: true for outIOs(0) and false for outIOs(2);

This file contains some basic static parameters needed in the Cluster Group.

This module is used to wrap cluster group, as I didn't connect all the cluster groups together. So in the future, if I want to connect them together, then I can simple replace the cluster group with a bigger once inside this wrapper. Also, it contains CSC switchers, which can compress the data.

Cluster Group Architecture

This module is used to compress matrix into optimised CSC data format.

  • inData: flipped decoupled IO, this is the uncompressed original data.
  • outData:
    • adrIO: decoupled IO, this is the compressed address vector.
    • dataIO: decoupled IO. this is the compressed data vector and count vector.
  • ctrlPath: input only
    • matrixHeight: the height of one matrix.
    • matrixWidth: the width of one matrix.
    • vectorNum: the number of matrix, as we need 0 to be the ending flag.

When we want to integrate Eyeriss into SoC, then we need some more things. The diagram bellow shows the architecture of Eyeriss SoC.

Eyeriss SoC

This module wrap the eyeriss wrapper, the decoder and the memory controller together, then we can verify it as in SoC environment.

Eyeriss Top Architecture

This module can decode the instructions from CPU and outputs some config data and control signals.

  • instruction: input, the instructions from CPU
  • calFin: input, true when pSum load finish
  • valid: output, true at one cycle later after pSum load finish
  • doMacEn: output, true when all config instructions have received, then can begin computing.
  • inActIO: input only
    • starAdr: the start address of input activations
    • reqSize: the number of elements that receive from memory at one time.
  • weightIO: input only
    • starAdr: the start address of weight
    • reqSize: the number of elements that receive from memory at one time.
  • pSumIO:
    • starAdr: input, the start address of partial sum
    • reqSize: input, the number of elements that receive from memory at one time.
    • pSumLoadEn: output, true to load PSum from GLB to memory.

This module is used to control the process of read and write from memory. This module can generate the address, sourceId, which are used in TileLink get/put. Also, it's able to manage all the source id.

  • inActIO, weightIO, pSumIO:
    • address: output, address of the first element of the current matrix
    • sourceAlloc: decoupled IO, output the source id of current requirement.
    • sourceFree: flipped decoupled IO, input the source id that have received the response.
    • startAdr: input, the start address
    • reqSize: input, the number of elements that receive from memory at one time. It should less than the size of the GLB SRAM.

This directory contains all the test files. When it almost finishes, I found that I can mimic UVM's components, so I changed some tests.

Testbench

This directory contains PE test files.

This is the main body of PE test, including spec test from the top level to Scratch Pad level.

This is one fundamental scratch pad module to test the read and write with CSC format data.

This directory contains cluster test files.

This is the main body of cluster group test. It contains the tests of PECluster, RouterCluster, GLBCluster and the top of three.

This behavior contains several tests related to the GLB cluster's spec, i.e., three submodules and top spec.

Instruction Set

OpCode

As the opcode map of RISC-V user 2.2 shows, I choose the custom space of custom-1, so the opcode is 01_010_11. If I use RoCC interface, I have to use the following instructions:

INSTRUCTIONS funct7 rs2 rs1 xd & xs1 & xs2 rd opcode
LoadPSum 0000000 ????? ????? 001 ????? 0101011
InActWeiAddr 0000001 ????? ????? 110 ????? 0101011
G2N2M2F2 0000010 ????? ????? 110 ????? 0101011
C2S2G1N1 0000011 ????? ????? 110 ????? 0101011
M1F1C1S1 0000100 ????? ????? 110 ????? 0101011
F0N0C0M0 0000101 ????? ????? 110 ????? 0101011
E&R 0000110 ????? ????? 110 ????? 0101011

However, if I decide to get the configurations and instructions via mapped register, then the instruction set can be more flexible. I try to design the instruction set based on I-type.

INSTRUCTIONS imm[11:0] rs1 func3 rd opcode
LoadPart0 G2N2M2F2 inActAdr 000 weightAdr 0101011
LoadPart1 C2S2G1N1 --- 001 --- 0101011
LoadPart2 M1F1C1S1 --- 010 --- 0101011
LoadPart3 F0N0C0M0 E 011 R 0101011
LoadPSum --- --- 100 PSumAdr 0101011

Data Flow And Data Format

Row-Stationary Plus (RS+) DataFlow

The figure bellow shows the data flow of Row Stationary Plus, and you can find it at ref.3.

And the figure bellow is the data flow of Row Stationary, you will find more information at ref.1.

However, when I tried to map the Row Stationary Plus data flow into a graph like Row Stationary's, I found that we are supposed to accumulate each partial sum columns rather than rows, because in RS+, we have done each row in SPad Level, i.e., the E and R for-loops of. Each column of PEs (maybe include its vertical group cluster's corresponding columns of PEs) have finish the current row (includes E PSums), then be accumulated together.

So I'd better call it as Column Stationary. We can get the graphs bellow.

At SPad level, we will calculate all rows of weights and partial sums, so we don't have to care about this dimension at other levels. The corresponding hardware architecture is Processing Element.

EyerissV2 SPad Level

At Noc level, all kinds of data will be mapped in to PE array at same time, and regard the PEs which will produce the same column of partial sums as one group. The corresponding hardware architecture is the mesh network and pe array in the PE cluster.

EyerissV2 NoC Level

At Global Buffer level, each group we created at Noc level will read in those data. The corresponding hardware component is the GLB cluster.

EyerissV2 Global Buffer Level

Compressed Sparse Column Data Format

Compressed Sparse Column is a data format used to jump zero-element MAC.

The CSC format used in this project is a little different from the original one.

Example of compressing sparse weights with compressed sparse column (CSC) coding

The picture above shows the one used in Eyeriss V2, but in this project it changes.

  • I used Zero Column Code to represent a zero column instead of repeat the value of next address vector element;
  • I used the row number in original matrix instead of the real 'count' vector;

Although it will decrease the size of matrix column with a pseudo-count vector, it is much simpler.

The Length of Address Vectors and Data Vectors

When we use CSC format data, the length of both address vectors and data vectors are variable. So we cannot use the common way to stop reading or writing.

I use one zero 0 to show the end of one vector (one address vector or one data vector with count vector) at Scratch Pad level; I use two continuous zero 00 to show the end of one stream of vectors at SRAM bank level.

Reference

[1]V. Sze, Y.-H. Chen, T.-J. Yang, and J. S. Emer, “Efficient Processing of Deep Neural Networks: A Tutorial and Survey,” Proc. IEEE, vol. 105, no. 12, pp. 2295–2329, Dec. 2017, doi: 10.1109/JPROC.2017.2761740.

[2]Y.-H. Chen, T.-J. Yang, J. Emer, and V. Sze, “Eyeriss v2: A Flexible Accelerator for Emerging Deep Neural Networks on Mobile Devices,” arXiv:1807.07928 [cs], May 2019.

[3]Y.-H. Chen, T.-J. Yang, J. Emer, and V. Sze, “Eyeriss v2: A Flexible and High-Performance Accelerator for Emerging Deep Neural Networks,” arXiv:1807.07928 [cs], May 2019.

[4]Y.-H. Chen, J. Emer, V. Sze, Y.-H. Chen, J. Emer, and V. Sze, “Eyeriss: a spatial architecture for energy-efficient dataflow for convolutional neural networks,” ACM SIGARCH Computer Architecture News, vol. 44, no. 3, pp. 367–379, Jun. 2016, doi: 10.1109/ISCA.2016.40.

[5]Y.-H. Chen, T. Krishna, J. S. Emer, and V. Sze, “Eyeriss: An Energy-Efficient Reconfigurable Accelerator for Deep Convolutional Neural Networks,” IEEE J. Solid-State Circuits, vol. 52, no. 1, pp. 127–138, Jan. 2017, doi: 10.1109/JSSC.2016.2616357.

[6] A. Waterman and H. Cook, “Chisel/FIRRTL: Home,” Chisel/FIRRTL, 2019. [Online]. Available: https://www.chisel-lang.org/. [Accessed: 30-Nov-2019].

[7] D. Pala, “Design and programming of a coprocessor for a RISC-V architecture,” laurea, Politecnico di Torino, 2017.

[8] A. Waterman, “Design of the RISC-V Instruction Set Architecture,” PhD Thesis, EECS Department, University of California, Berkeley, 2016.

[9] K. Asanović and D. A. Patterson, “Instruction Sets Should Be Free: The Case For RISC-V,” EECS Department, University of California, Berkeley, UCB/EECS-2014-146, Aug. 2014.

[10] A. Izraelevitz et al., “Reusability is FIRRTL ground: Hardware construction languages, compiler frameworks, and transformations,” in 2017 IEEE/ACM International Conference on Computer-Aided Design (ICCAD), 2017, pp. 209–216, doi: 10.1109/ICCAD.2017.8203780.

[11] K. Asanović et al., “The Rocket Chip Generator,” EECS Department, University of California, Berkeley, UCB/EECS-2016-17,

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Deep Learning Accelerator Based on Eyeriss V2 Architecture with custom RISC-V extended instructions

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