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  1. Feb 21, 2021
    • Yaman Umuroglu's avatar
      Custom op notebook (#283) · a65e08b0
      Yaman Umuroglu authored
      
      * [Notebook] start custom op nb
      
      * [Notebook] update custom_op notebook
      
      * [Notebook] update the custom op notebook to reflect new reg system
      
      * [Notebook] Added more descriptive text into the notebook (#278)
      
      * [Web] update publications
      
      * Build step: measure rtlsim performance (#262)
      
      * [Build] introduce step_measure_rtlsim_performance
      
      * [Docs] document the rtlsim performance step
      
      * [Docs] add comments on CPU/RAM/storage recommandations
      
      * [Build, Test] enable rtlsim perf as part of build test too
      
      * [Build] print where intermediate outputs are generated
      
      * [Docs] remove ghpages content, add note
      
      * [Docker] use -c continue for build_custom mode
      
      * [Docs] minor fixes
      
      * Driver data packing + improvements (#261)
      
      * [Driver] add driver_base.py as own template file + comments
      
      * [Driver] also move validation to won template + use in transform
      
      * [Driver] more comments
      
      * [Driver] suggested updates from PYNQ team + async mode exec_on_buffers
      
      * [Driver] allow smaller batchsize in execute_on_buffers
      
      * [Driver] optimize buffer alloc a bit
      
      * [Driver] wait condition fix
      
      * [Deps] update finn-base
      
      * [Deps] update finn-base
      
      * [Driver] enable fast_mode, expose more benchmarks
      
      * [Deps] update finn-base
      
      * [Driver] handle case with no rt weights
      
      * [Build] auto-exit build_custom if no errors
      
      * [Driver] get Alveo clock during test
      
      * Add report_utilization to stitched project tcl script (#243)
      
      * [Vitis] use -mode batch for report gen Vivado launch
      
      * Feature/cybersecurity notebook (#259)
      
      * Created cybersecurity notebook and downloaded data with wget
      
      * Reorganized the cybersecurity notebook
      
      * Read the entire dataset as a pytorch tensor and trained a simple MLP on the UNSW_NB15 dataset
      
      * small changes to markdown
      
      * Training and testing have the same integer encoding
      
      * Added debugger tool
      
      * added loss visualization
      
      * aded 1hot encoder and separated dataloader
      
      Added 1-hot encoder with scikit learn.
      Seperated the dataloader into a python file.
      
      * changes to get 99.998% accuracy
      
      * changed loss plot
      
      * accuracy at 70% after 50 epochs
      
      However, loss is not ok
      
      * got 75% accuracy
      
      * see loss
      
      * added scheduled statistics
      
      * added iterator over all possible parameters
      
      * updates on automation
      
      debugging model error
      
      * Delete cybersecurity-checkpoint.ipynb
      
      * Delete cybersecurity_2-checkpoint.ipynb
      
      * Delete exemplofixe-checkpoint.ipynb
      
      * Delete UNSW_NB15_testing-set.csv
      
      * Delete UNSW_NB15_train.csv
      
      * Delete UNSW_NB15_training-set.csv
      
      * Delete UNSW_NB15_val.csv
      
      * general cleanup
      
      * general cleanup
      
      * updates with 75.7238% accuracy
      
      * added quantization of the dataset
      
      * debugging the quantization of the dataset
      
      * added plots for the debugging
      
      * debugging the quantization. Show the differences
      
      * update debugging
      
      * updates on debugging
      
      * updates on debugging quantization
      
      * updates on debug, uint32 df added
      
      * updates on debugging
      
      * added 2 pictures for the debugging
      
      * Added quantization of the dataset
      
      * aded results for training the model with the quantized dataset
      
      * added quantization of the dataset
      
      * added new notebook with model definition with brevitas
      
      * cleaning up documents
      
      * modified the model definition
      
      * Changed the loss function
      
      * Added debug with pdb
      
      * Successfully created neural network with Brevitas
      
      * Correctly quantize the dataset
      
      * Added export of onnx model
      
      * Added FINN validation of the Brevitas model
      
      * improved dataloader
      
      * general cleanup
      
      * General Cleanup
      
      * General Cleanup
      
      * Completed verifying the FINN model against Brevitas
      
      * Added new layer to MLP - Debugging
      
      * verified that the MLP model with new layer (QuantIdentity) outputs the same in Brevitas and in FINN for all 82332 test inputs
      
      * verified that the MLP model with new layer (QuantIdentity) outputs the same in Brevitas and in FINN for all 82332 test inputs
      
      * verified that model with new layer (QuantIdentity) outputs the same in Brevitas and in FINN for all 82332 inputs
      
      * verified that model with new layer and input shifted to accept {-1,1}, outputs the same in Brevitas (input is in {-1,+1}) and in FINN (input is in {-1,+1})  for the 82332 inputs
      
      * General cleanup and added text
      
      * General cleanup: improved text
      
      * General cleanup: fixed text typos
      
      * General cleanup: Added text
      
      * Delete cybersecurity.ipynb
      
      * Delete dataloader.py
      
      * Rename cybersecurity_Brevitas_1bit.ipynb to 1-cybersecurity-Brevitas-1bit.ipynb
      
      * Rename cybersecurity_Brevitas_Verification.ipynb to 2-cybersecurity-finn-verification.ipynb
      
      * Added the last notebook
      
      * Added last notebook describing the finn build
      
      * Added changed parameters to see differences
      
      * Added changed parameters and added text
      
      * Fixed typo
      
      * [Notebooks] reorganize into folders, add README for cybsec
      
      * [Notebook] add license header and refs to cybsec dataset quantizer
      
      * [Notebooks] rename cybsec notebook files
      
      * [Notebook] first pass thru cybsec part 1
      
      * [Notebook] refactor more of cybsec part 1
      
      * [Notebook] add option to use pretrained weights
      
      * fixed outline and typo
      
      * [Notebook] update cybsec notebook #2 and gitignore
      
      * [Notebook] start refactoring cybsec part 3
      
      * [ConvertToHLS] allow out_scale=2 for bipolar MT
      
      * [Build] add alternative set of steps for estimation only
      
      * [Transform] attempt to handle padding for IODMAs
      
      * [Transform] explicitly ignore IODMA nodes for InsertDWC
      
      * [Notebook] full pass over cybsec notebook 3
      
      * [Util] move vivado utils into finn-base
      
      * fixed outline
      
      * [HLSCustomOp] better err msg on ipgen failure
      
      Co-authored-by: default avatarAlina Vasilciuc <alinav@xlnx.xilinx.com>
      Co-authored-by: default avatarYaman Umuroglu <yamanu@xilinx.com>
      
      * [Notebook] add README, remove mobilenet notebook
      
      * [Docs] round of updates
      
      * [Docs] make stack image local
      
      * [Docs] apidocs updates
      
      * [Docs] update README for v0.5b
      
      * [Release] merge dev into master for v0.5b
      
      * [Docs] bring back missing img
      
      * [Docs] bring back missing images
      
      * Switch hlslib comparison functions (#263)
      
      * [Test] add lfc to end2end tests
      
      * [Deps] update hlslib to get comp:: fxns
      
      * [HLS] use comp:: comparators instead of std::
      
      * [VVAU] hlslib now uses inner prod dim instead of K
      
      * [Thres] manually workaround vivado_hls bug for T[0][0]=0
      
      * [Infra] add .vscode to .gitignore
      
      * [Build] separate HLS codegen and ipgen steps (#265)
      
      * [Docs] first version of developer docs
      
      * [Notebook] fix broken resource paths
      
      * Fix Im2Col attributes for newer finn-base (#276)
      
      * [Deps] update finn-base
      
      * [Refactor] fix im2col props for updated finn-base
      
      * [Docs ] Add FAQ page to the Documentation (#273)
      
      * [Docs] Add FAQ page into the Docs
      
      * [Docs] some minor text format changes.
      
      * [Docs] updates to FAQ
      
      Co-authored-by: default avatarYaman Umuroglu <yaman.umuroglu@xilinx.com>
      
      * [Notebook] Added more descriptive text into the notebook
      
      * Fix ZCU102 support in Vivado shell project (#280)
      
      * [ConvertToHLS] fix conversion for bipolar outputs
      
      * [Notebook] updates to custom op notebook
      
      Co-authored-by: default avatarYaman Umuroglu <yamanu@xilinx.com>
      Co-authored-by: default avatarTobi-Alonso <tobi.alonso@gmail.com>
      Co-authored-by: default avataralinavalinav <60705229+alinavalinav@users.noreply.github.com>
      Co-authored-by: default avatarAlina Vasilciuc <alinav@xlnx.xilinx.com>
      Co-authored-by: default avatarYaman Umuroglu <yaman.umuroglu@xilinx.com>
      Co-authored-by: default avatarFelix Jentzsch <45395194+fpjentzsch@users.noreply.github.com>
      
      Co-authored-by: default avatarjalezeta <51440887+jalezeta@users.noreply.github.com>
      Co-authored-by: default avatarTobi-Alonso <tobi.alonso@gmail.com>
      Co-authored-by: default avataralinavalinav <60705229+alinavalinav@users.noreply.github.com>
      Co-authored-by: default avatarAlina Vasilciuc <alinav@xlnx.xilinx.com>
      Co-authored-by: default avatarFelix Jentzsch <45395194+fpjentzsch@users.noreply.github.com>
  2. Dec 17, 2020
  3. Oct 28, 2020
    • Yaman Umuroglu's avatar
      Refactor custom op system (#245) · 4225faac
      Yaman Umuroglu authored
      * [Refactor] use getCustomOp instead of direct registry access
      
      * [Refactor] move HLSCustomOp base to own file
      
      * [Refactor] register all HLSCustomOps in new style
      
      * [Refactor] use correct domain for custom ops acc. to new style
      
      * [Deps] update finn-base to get new-style customop domains
      
      * [Refactor] more domain fixes
      
      * [Test] fix ipstitch expected io values in rtlsim
      
      * [Deps] update finn-base and brevitas
      
      * [Docs] link to CustomOp reorg PR
  4. Oct 05, 2020
  5. May 07, 2020
  6. May 06, 2020
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