Go to file
Hanchen Ye 117a1bd0f4 [HLSCpp] eliminate PragmaOps, update ArrayOp definition; [Analysis] refactor Utils; [StoreForward] start of this pass 2020-12-18 23:42:41 -06:00
config [QoREstimation] support profiling latency based estimation (#2) 2020-12-17 21:40:29 -06:00
include [HLSCpp] eliminate PragmaOps, update ArrayOp definition; [Analysis] refactor Utils; [StoreForward] start of this pass 2020-12-18 23:42:41 -06:00
lib [HLSCpp] eliminate PragmaOps, update ArrayOp definition; [Analysis] refactor Utils; [StoreForward] start of this pass 2020-12-18 23:42:41 -06:00
samples [Passes] small bugs fixed; remove HLSCppAnalyzer; insert-pipeline-pragma to loop-pipelining 2020-12-14 13:45:13 -06:00
test [gitignore] update ignore list; [BenchmarkGen] add auto_gen_cnn.mlir test case 2020-12-18 20:22:38 -06:00
tools remove redundant includes in all files; [QoREstimation] refactor include structure 2020-12-18 21:16:22 -06:00
.clang-format mechanical rename hlsld to scalehls; update file structure 2020-09-06 18:05:16 -05:00
.gitignore [gitignore] update ignore list; [BenchmarkGen] add auto_gen_cnn.mlir test case 2020-12-18 20:22:38 -06:00
CMakeLists.txt change lit report style 2020-09-14 19:56:06 -05:00
README.md [Samples] add array-partition into ablation study; [ArrayPartition] support AffineStoreOp; bug fixes in EmitHLSCpp and ConvertToHLSCpp 2020-12-08 12:35:44 -06:00

README.md

ScaleHLS Project (scalehls)

This project aims to create a framework that ultimately converts an algorithm written in a high level language into an efficient hardware implementation. With multiple levels of intermediate representations (IRs), MLIR appears to be the ideal tool for exploring ways to optimize the eventual design at various levels of abstraction (e.g. various levels of parallelism). Our framework will be based on MLIR, it will incorporate a backend for high level synthesis (HLS) C/C++ code. However, the key contribution will be our parametrization and optimization of a tremendously large design space.

Quick Start

1. Install LLVM and MLIR

IMPORTANT This step assumes that you have cloned LLVM from (https://github.com/circt/llvm) to $LLVM_DIR. To build LLVM and MLIR, run

$ mkdir $LLVM_DIR/build
$ cd $LLVM_DIR/build
$ cmake -G Ninja ../llvm \
    -DLLVM_ENABLE_PROJECTS="mlir" \
    -DLLVM_TARGETS_TO_BUILD="X86;RISCV" \
    -DLLVM_ENABLE_ASSERTIONS=ON \
    -DCMAKE_BUILD_TYPE=DEBUG
$ ninja
$ ninja check-mlir

2. Install ScaleHLS

This step assumes this repository is cloned to $SCALEHLS_DIR. To build and launch the tests, run

$ mkdir $SCALEHLS_DIR/build
$ cd $SCALEHLS_DIR/build
$ cmake -G Ninja .. \
    -DMLIR_DIR=$LLVM_DIR/build/lib/cmake/mlir \
    -DLLVM_DIR=$LLVM_DIR/build/lib/cmake/llvm \
    -DLLVM_ENABLE_ASSERTIONS=ON \
    -DCMAKE_BUILD_TYPE=DEBUG
$ ninja check-scalehls

3. Try ScaleHLS

After the installation and test successfully completed, you should be able to play with

$ export PATH=$SCALEHLS_DIR/build/bin:$PATH
$ cd $SCALEHLS_DIR
$
$ benchmark-gen -type "cnn" -config "$SCALEHLS_DIR/config/cnn-config.ini" -number 1
$ scalehls-opt -hlskernel-to-affine test/Conversion/HLSKernelToAffine/test_*.mlir
$
$ scalehls-opt -convert-to-hlscpp test/Conversion/ConvertToHLSCpp/test_*.mlir
$ scalehls-opt -convert-to-hlscpp test/EmitHLSCpp/test_*.mlir | scalehls-translate -emit-hlscpp
$
$ scalehls-opt -qor-estimation test/Analysis/QoREstimation/test_for.mlir

4. Ablation study

If Vivado HLS (2019.1 tested) is installed on your machine, running the following script will report the HLS results for some benchmarks (around 8 hours on AMD Ryzen7 3800X for all 33 tests).

For the ablation_test_run.sh script, -n determines the number of tests to be processed, the maximum supported value of which is 33; -c determines from which test to begin to rerun the C++ synthesis and report collection. The generated C++ source code will be written to sample/cpp_src; the Vivado HLS project will be established in sample/hls_proj; the collected report will be written to sample/test_results; the test summary will be generated to sample.

$ cd $SCALEHLS_DIR/sample
$ ./ablation_test_run.sh -n 33 -c 0

References

  1. MLIR documents
  2. mlir-npcomp github
  3. onnx-mlir github
  4. circt github
  5. comba github
  6. dahlia github