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  1. Apr 15, 2021
  2. Apr 09, 2021
  3. Mar 26, 2021
  4. Mar 05, 2021
  5. Mar 04, 2021
  6. Mar 03, 2021
  7. Feb 24, 2021
  8. Feb 23, 2021
  9. Feb 12, 2021
  10. Feb 11, 2021
  11. Feb 06, 2021
  12. Jan 31, 2021
  13. Jan 29, 2021
  14. Jan 21, 2021
  15. Jan 17, 2021
    • Yaman Umuroglu's avatar
      Switch hlslib comparison functions (#263) · 8497814b
      Yaman Umuroglu authored
      * [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
      8497814b
  16. Dec 17, 2020
    • Yaman Umuroglu's avatar
      4fee6ffd
    • alinavalinav's avatar
      Feature/cybersecurity notebook (#259) · 004475a4
      alinavalinav authored
      
      * 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>
      004475a4
  17. Dec 16, 2020
  18. Dec 14, 2020
  19. Dec 13, 2020
    • Yaman Umuroglu's avatar
      [Driver] handle case with no rt weights · 72bd1487
      Yaman Umuroglu authored
      72bd1487
    • Yaman Umuroglu's avatar
      Driver data packing + improvements (#261) · e202bca2
      Yaman Umuroglu authored
      * [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
      e202bca2
    • Yaman Umuroglu's avatar
      Build step: measure rtlsim performance (#262) · 72b11ca6
      Yaman Umuroglu authored
      * [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
      72b11ca6
  20. Dec 09, 2020
  21. Dec 08, 2020
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