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12/05/2021 14:44:41 MainProcess MainThread logger log_setup INFO Log level set to: INFO
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG Initializing GPUStats
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG Apple Silicon Detected.
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG GPU Device count: 1
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG Active GPU Devices: [0]
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG GPU Handles found: 1
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG [PhysicalDevice(name='/physical_device:GPU:0', device_type='GPU')]
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG GPU Driver: 1.0
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG GPU Devices: ['Apple M1']
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG GPU VRAM: [16384]
12/05/2021 14:44:41 MainProcess MainThread gpu_stats _log DEBUG Initialized GPUStats
12/05/2021 14:44:41 MainProcess MainThread launcher _configure_backend DEBUG Executing: train. PID: 65286
12/05/2021 14:44:41 MainProcess MainThread launcher _test_for_tf_version DEBUG Installed Tensorflow Version: 2.7
12/05/2021 14:44:42 MainProcess MainThread queue_manager __init__ DEBUG Initializing QueueManager
12/05/2021 14:44:42 MainProcess MainThread queue_manager __init__ DEBUG Initialized QueueManager
12/05/2021 14:44:42 MainProcess MainThread train __init__ DEBUG Initializing Train: (args: Namespace(batch_size=64, colab=False, configfile=None, distributed=False, exclude_gpus=None, freeze_weights=False, func=<bound method ScriptExecutor.execute_script of <lib.cli.launcher.ScriptExecutor object at 0x16bb6c0a0>>, input_a='/Users/server/Documents/_TRAINING_SETS/A/aligned', input_b='/Users/server/Documents/_TRAINING_SETS/B/aligned', iterations=1000000, load_weights=None, logfile=None, loglevel='INFO', model_dir='/Users/server/Documents/model', no_augment_color=False, no_flip=False, no_logs=False, no_warp=False, preview=False, preview_scale=100, redirect_gui=True, save_interval=250, snapshot_interval=25000, summary=False, timelapse_input_a=None, timelapse_input_b=None, timelapse_output=None, trainer='dfl-sae', warp_to_landmarks=True, write_image=False)
12/05/2021 14:44:42 MainProcess MainThread train _get_images DEBUG Getting image paths
12/05/2021 14:44:42 MainProcess MainThread utils get_image_paths DEBUG Scanned Folder contains 770 files
12/05/2021 14:44:42 MainProcess MainThread utils get_image_paths DEBUG Returning 770 images
12/05/2021 14:44:42 MainProcess MainThread train _get_images DEBUG Test file: (filename: /Users/server/Documents/_TRAINING_SETS/A/aligned/00001_0.png, metadata: {'width': 256, 'height': 256, 'itxt': {'alignments': {'x': 864, 'w': 213, 'y': -9, 'h': 294, 'landmarks_xy': [[878.9874877929688, 95.12928009033203], [870.755615234375, 126.70247650146484], [869.4014282226562, 152.7521514892578], [870.755615234375, 178.8125], [874.87158203125, 208.9781036376953], [883.1033325195312, 232.3194580078125], [891.335205078125, 250.13731384277344], [899.5670776367188, 266.6009826660156], [924.2625122070312, 285.8157043457031], [959.9088745117188, 285.8157043457031], [991.471435546875, 276.229736328125], [1016.1775512695312, 266.6009826660156], [1042.227294921875, 250.13731384277344], [1058.6910400390625, 226.83868408203125], [1071.0386962890625, 204.8621826171875], [1086.10546875, 177.4476776123047], [1097.0562744140625, 148.63621520996094], [888.5841674804688, 60.84776306152344], [895.451171875, 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12/05/2021 14:44:42 MainProcess MainThread train _get_images INFO Model A Directory: '/Users/server/Documents/_TRAINING_SETS/A/aligned' (770 images)
12/05/2021 14:44:42 MainProcess MainThread utils get_image_paths DEBUG Scanned Folder contains 398 files
12/05/2021 14:44:42 MainProcess MainThread utils get_image_paths DEBUG Returning 398 images
12/05/2021 14:44:42 MainProcess MainThread train _get_images DEBUG Test file: (filename: /Users/server/Documents/_TRAINING_SETS/B/aligned/6797547230208265478_00001_0.png, metadata: {'width': 256, 'height': 256, 'itxt': {'alignments': {'x': 226, 'w': 192, 'y': 282, 'h': 280, 'landmarks_xy': [[223.76922607421875, 389.2649841308594], [221.2505340576172, 419.2222595214844], [224.9951934814453, 446.6607971191406], [228.73985290527344, 471.6474609375], [234.96849060058594, 500.3467102050781], [246.20245361328125, 522.814697265625], [261.1810607910156, 537.7932739257812], [279.9043884277344, 552.77197265625], [311.0876159667969, 565.2318725585938], [344.78955078125, 560.26123046875], [363.5128173828125, 549.0272827148438], [376.0074768066406, 537.7932739257812], [393.4700927734375, 516.5859985351562], [402.2200927734375, 489.1127014160156], [409.7093811035156, 466.644775390625], [417.19873046875, 440.4321594238281], [420.943359375, 412.9936218261719], [247.463134765625, 364.3130798339844], 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'source': {'alignments_version': 2.2, 'original_filename': '6797547230208265478_00001_0.png', 'face_index': 0, 'source_filename': '6797547230208265478_00001.jpg', 'source_is_video': False, 'source_frame_dims': (1280, 720)}}})
12/05/2021 14:44:42 MainProcess MainThread train _get_images INFO Model B Directory: '/Users/server/Documents/_TRAINING_SETS/B/aligned' (398 images)
12/05/2021 14:44:42 MainProcess MainThread train _get_images DEBUG Got image paths: [('a', '770 images'), ('b', '398 images')]
12/05/2021 14:44:42 MainProcess MainThread train __init__ DEBUG Initialized Train
12/05/2021 14:44:42 MainProcess MainThread train process DEBUG Starting Training Process
12/05/2021 14:44:42 MainProcess MainThread train process INFO Training data directory: /Users/server/Documents/model
12/05/2021 14:44:42 MainProcess MainThread train _start_thread DEBUG Launching Trainer thread
12/05/2021 14:44:42 MainProcess MainThread multithreading __init__ DEBUG Initializing MultiThread: (target: '_training', thread_count: 1)
12/05/2021 14:44:42 MainProcess MainThread multithreading __init__ DEBUG Initialized MultiThread: '_training'
12/05/2021 14:44:42 MainProcess MainThread multithreading start DEBUG Starting thread(s): '_training'
12/05/2021 14:44:42 MainProcess MainThread multithreading start DEBUG Starting thread 1 of 1: '_training_0'
12/05/2021 14:44:42 MainProcess MainThread multithreading start DEBUG Started all threads '_training': 1
12/05/2021 14:44:42 MainProcess MainThread train _start_thread DEBUG Launched Trainer thread
12/05/2021 14:44:42 MainProcess MainThread train _monitor DEBUG Launching Monitor
12/05/2021 14:44:42 MainProcess MainThread train _monitor INFO ===================================================
12/05/2021 14:44:42 MainProcess MainThread train _monitor INFO Starting
12/05/2021 14:44:42 MainProcess MainThread train _monitor INFO Press 'Stop' to save and quit
12/05/2021 14:44:42 MainProcess MainThread train _monitor INFO ===================================================
12/05/2021 14:44:43 MainProcess _training_0 train _training DEBUG Commencing Training
12/05/2021 14:44:43 MainProcess _training_0 train _training INFO Loading data, this may take a while...
12/05/2021 14:44:43 MainProcess _training_0 train _load_model DEBUG Loading Model
12/05/2021 14:44:43 MainProcess _training_0 utils get_folder DEBUG Requested path: '/Users/server/Documents/model'
12/05/2021 14:44:43 MainProcess _training_0 utils get_folder DEBUG Returning: '/Users/server/Documents/model'
12/05/2021 14:44:43 MainProcess _training_0 plugin_loader _import INFO Loading Model from Dfl_Sae plugin...
12/05/2021 14:44:43 MainProcess _training_0 multithreading run DEBUG Error in thread (_training_0): cannot import name 'get_custom_objects' from 'keras.utils' (/Users/server/miniforge3/envs/faceswap-env/lib/python3.8/site-packages/keras/utils/__init__.py)
12/05/2021 14:44:44 MainProcess MainThread train _monitor DEBUG Thread error detected
12/05/2021 14:44:44 MainProcess MainThread train _monitor DEBUG Closed Monitor
12/05/2021 14:44:44 MainProcess MainThread train _end_thread DEBUG Ending Training thread
12/05/2021 14:44:44 MainProcess MainThread train _end_thread CRITICAL Error caught! Exiting...
12/05/2021 14:44:44 MainProcess MainThread multithreading join DEBUG Joining Threads: '_training'
12/05/2021 14:44:44 MainProcess MainThread multithreading join DEBUG Joining Thread: '_training_0'
12/05/2021 14:44:44 MainProcess MainThread multithreading join ERROR Caught exception in thread: '_training_0'
Traceback (most recent call last):
File "/Users/server/Documents/faceswap/lib/cli/launcher.py", line 182, in execute_script
process.process()
File "/Users/server/Documents/faceswap/scripts/train.py", line 190, in process
self._end_thread(thread, err)
File "/Users/server/Documents/faceswap/scripts/train.py", line 230, in _end_thread
thread.join()
File "/Users/server/Documents/faceswap/lib/multithreading.py", line 121, in join
raise thread.err[1].with_traceback(thread.err[2])
File "/Users/server/Documents/faceswap/lib/multithreading.py", line 37, in run
self._target(*self._args, **self._kwargs)
File "/Users/server/Documents/faceswap/scripts/train.py", line 252, in _training
raise err
File "/Users/server/Documents/faceswap/scripts/train.py", line 240, in _training
model = self._load_model()
File "/Users/server/Documents/faceswap/scripts/train.py", line 264, in _load_model
model = PluginLoader.get_model(self._args.trainer)(
File "/Users/server/Documents/faceswap/plugins/plugin_loader.py", line 97, in get_model
return PluginLoader._import("train.model", name, disable_logging)
File "/Users/server/Documents/faceswap/plugins/plugin_loader.py", line 163, in _import
module = import_module(mod)
File "/Users/server/miniforge3/envs/faceswap-env/lib/python3.8/importlib/__init__.py", line 127, in import_module
return _bootstrap._gcd_import(name[level:], package, level)
File "<frozen importlib._bootstrap>", line 1014, in _gcd_import
File "<frozen importlib._bootstrap>", line 991, in _find_and_load
File "<frozen importlib._bootstrap>", line 975, in _find_and_load_unlocked
File "<frozen importlib._bootstrap>", line 671, in _load_unlocked
File "<frozen importlib._bootstrap_external>", line 843, in exec_module
File "<frozen importlib._bootstrap>", line 219, in _call_with_frames_removed
File "/Users/server/Documents/faceswap/plugins/train/model/dfl_sae.py", line 10, in <module>
from lib.model.nn_blocks import Conv2DOutput, Conv2DBlock, ResidualBlock, UpscaleBlock
File "/Users/server/Documents/faceswap/lib/model/__init__.py", line 6, in <module>
from .normalization import *
File "/Users/server/Documents/faceswap/lib/model/normalization/__init__.py", line 5, in <module>
from .normalization_common import AdaInstanceNormalization
File "/Users/server/Documents/faceswap/lib/model/normalization/normalization_common.py", line 10, in <module>
from keras.utils import get_custom_objects
ImportError: cannot import name 'get_custom_objects' from 'keras.utils' (/Users/server/miniforge3/envs/faceswap-env/lib/python3.8/site-packages/keras/utils/__init__.py)
============ System Information ============
encoding: UTF-8
git_branch: master
git_commits: fb0afa2 Revert "Trick into doing GPU training using Nvidia backend setting". c212dd4 Add Apple backend. 19084be Get shared RAM info using psutil. 5187df9 Trick into doing GPU training using Nvidia backend setting. 5db622e Update install guide
gpu_cuda: No global version found. Check Conda packages for Conda Cuda
gpu_cudnn: No global version found. Check Conda packages for Conda cuDNN
gpu_devices: GPU_0: Apple M1
gpu_devices_active: GPU_0
gpu_driver: 1.0
gpu_vram: GPU_0: 16384MB
os_machine: arm64
os_platform: macOS-12.0.1-arm64-arm-64bit
os_release: 21.1.0
py_command: /Users/server/Documents/faceswap/faceswap.py train -A /Users/server/Documents/_TRAINING_SETS/A/aligned -B /Users/server/Documents/_TRAINING_SETS/B/aligned -m /Users/server/Documents/model -t dfl-sae -bs 64 -it 1000000 -s 250 -ss 25000 -ps 100 -wl -L INFO -gui
py_conda_version: conda 4.10.3
py_implementation: CPython
py_version: 3.8.12
py_virtual_env: True
sys_cores: 10
sys_processor: arm
sys_ram: Total: 16384MB, Available: 10665MB, Used: 4360MB, Free: 8333MB
=============== Pip Packages ===============
absl-py @ file:///home/conda/feedstock_root/build_artifacts/absl-py_1606234718434/work
aiohttp @ file:///Users/runner/miniforge3/conda-bld/aiohttp_1637087375815/work
aiosignal @ file:///home/conda/feedstock_root/build_artifacts/aiosignal_1636093929600/work
astunparse @ file:///home/conda/feedstock_root/build_artifacts/astunparse_1610696312422/work
async-timeout @ file:///home/conda/feedstock_root/build_artifacts/async-timeout_1637092647930/work
attrs @ file:///home/conda/feedstock_root/build_artifacts/attrs_1620387926260/work
blinker==1.4
brotlipy @ file:///Users/runner/miniforge3/conda-bld/brotlipy_1636012322014/work
cached-property @ file:///home/conda/feedstock_root/build_artifacts/cached_property_1615209429212/work
cachetools @ file:///home/conda/feedstock_root/build_artifacts/cachetools_1633010882559/work
certifi==2021.10.8
cffi @ file:///Users/runner/miniforge3/conda-bld/cffi_1636046166270/work
charset-normalizer @ file:///home/conda/feedstock_root/build_artifacts/charset-normalizer_1637858084653/work
click @ file:///Users/runner/miniforge3/conda-bld/click_1635822678136/work
colorama @ file:///home/conda/feedstock_root/build_artifacts/colorama_1602866480661/work
cryptography @ file:///Users/runner/miniforge3/conda-bld/cryptography_1636040761681/work
cycler==0.11.0
dataclasses @ file:///home/conda/feedstock_root/build_artifacts/dataclasses_1628958434797/work
ffmpy==0.2.3
flatbuffers==2.0
frozenlist @ file:///Users/runner/miniforge3/conda-bld/frozenlist_1636504246445/work
gast @ file:///home/conda/feedstock_root/build_artifacts/gast_1596839682936/work
google-auth @ file:///home/conda/feedstock_root/build_artifacts/google-auth_1629296548061/work
google-auth-oauthlib @ file:///home/conda/feedstock_root/build_artifacts/google-auth-oauthlib_1630497468950/work
google-pasta==0.2.0
grpcio @ file:///Users/runner/miniforge3/conda-bld/grpcio_1637189242005/work
h5py @ file:///Users/runner/miniforge3/conda-bld/h5py_1609497512060/work
idna @ file:///home/conda/feedstock_root/build_artifacts/idna_1609836280497/work
imageio @ file:///home/conda/feedstock_root/build_artifacts/imageio_1638534663447/work
imageio-ffmpeg @ file:///home/conda/feedstock_root/build_artifacts/imageio-ffmpeg_1629987409325/work
importlib-metadata @ file:///Users/runner/miniforge3/conda-bld/importlib-metadata_1636431683784/work
joblib @ file:///home/conda/feedstock_root/build_artifacts/joblib_1633637554808/work
keras @ file:///home/conda/feedstock_root/build_artifacts/keras_1637872120405/work/keras-2.7.0-py2.py3-none-any.whl
Keras-Preprocessing @ file:///home/conda/feedstock_root/build_artifacts/keras-preprocessing_1610713559828/work
kiwisolver==1.3.2
libclang==12.0.0
Markdown @ file:///home/conda/feedstock_root/build_artifacts/markdown_1637220118004/work
matplotlib==3.2.2
multidict @ file:///Users/runner/miniforge3/conda-bld/multidict_1636019232776/work
numpy==1.21.4
nvidia-ml-py==11.495.46
oauthlib @ file:///home/conda/feedstock_root/build_artifacts/oauthlib_1622563202229/work
olefile @ file:///home/conda/feedstock_root/build_artifacts/olefile_1602866521163/work
opencv-python==4.5.4.58
opt-einsum @ file:///home/conda/feedstock_root/build_artifacts/opt_einsum_1617859230218/work
Pillow @ file:///Users/runner/miniforge3/conda-bld/pillow_1636559170621/work
protobuf==3.19.1
psutil @ file:///Users/runner/miniforge3/conda-bld/psutil_1635822822120/work
pyasn1==0.4.8
pyasn1-modules==0.2.7
pycparser @ file:///home/conda/feedstock_root/build_artifacts/pycparser_1636257122734/work
PyJWT @ file:///home/conda/feedstock_root/build_artifacts/pyjwt_1634405536383/work
pyOpenSSL @ file:///home/conda/feedstock_root/build_artifacts/pyopenssl_1633192417276/work
pyparsing==3.0.6
PySocks @ file:///Users/runner/miniforge3/conda-bld/pysocks_1635862741516/work
python-dateutil==2.8.2
pyu2f @ file:///home/conda/feedstock_root/build_artifacts/pyu2f_1604248910016/work
requests @ file:///home/conda/feedstock_root/build_artifacts/requests_1637771257551/work
requests-oauthlib @ file:///home/conda/feedstock_root/build_artifacts/requests-oauthlib_1595492159598/work
rsa @ file:///home/conda/feedstock_root/build_artifacts/rsa_1637781155505/work
scikit-learn @ file:///Users/runner/miniforge3/conda-bld/scikit-learn_1636784348537/work
scipy @ file:///Users/runner/miniforge3/conda-bld/scipy_1637806815742/work
six @ file:///home/conda/feedstock_root/build_artifacts/six_1590081179328/work
tensorboard @ file:///home/conda/feedstock_root/build_artifacts/tensorboard_1629677129676/work/tensorboard-2.6.0-py3-none-any.whl
tensorboard-data-server @ file:///Users/runner/miniforge3/conda-bld/tensorboard-data-server_1636046148099/work/tensorboard_data_server-0.6.0-py3-none-macosx_11_0_arm64.whl
tensorboard-plugin-wit @ file:///home/conda/feedstock_root/build_artifacts/tensorboard-plugin-wit_1611075653546/work/tensorboard_plugin_wit-1.8.0-py3-none-any.whl
tensorflow-estimator==2.7.0
tensorflow-macos==2.7.0
tensorflow-metal==0.3.0
termcolor==1.1.0
threadpoolctl @ file:///home/conda/feedstock_root/build_artifacts/threadpoolctl_1633102299089/work
tqdm @ file:///home/conda/feedstock_root/build_artifacts/tqdm_1632160078689/work
typing-extensions @ file:///home/conda/feedstock_root/build_artifacts/typing_extensions_1602702424206/work
urllib3 @ file:///home/conda/feedstock_root/build_artifacts/urllib3_1632350318291/work
Werkzeug @ file:///home/conda/feedstock_root/build_artifacts/werkzeug_1621518206714/work
wrapt @ file:///Users/runner/miniforge3/conda-bld/wrapt_1624971819058/work
yarl @ file:///Users/runner/miniforge3/conda-bld/yarl_1636047129772/work
zipp @ file:///home/conda/feedstock_root/build_artifacts/zipp_1633302054558/work
============== Conda Packages ==============
# packages in environment at /Users/server/miniforge3/envs/faceswap-env:
#
# Name Version Build Channel
absl-py 0.10.0 pyhd8ed1ab_1 conda-forge
aiohttp 3.8.1 py38hea4295b_0 conda-forge
aiosignal 1.2.0 pyhd8ed1ab_0 conda-forge
aom 3.2.0 hc470f4d_2 conda-forge
astunparse 1.6.3 pyhd8ed1ab_0 conda-forge
async-timeout 4.0.1 pyhd8ed1ab_0 conda-forge
attrs 21.2.0 pyhd8ed1ab_0 conda-forge
blinker 1.4 py_1 conda-forge
brotlipy 0.7.0 py38hea4295b_1003 conda-forge
bzip2 1.0.8 h3422bc3_4 conda-forge
c-ares 1.18.1 h3422bc3_0 conda-forge
ca-certificates 2021.10.8 h4653dfc_0 conda-forge
cached-property 1.5.2 hd8ed1ab_1 conda-forge
cached_property 1.5.2 pyha770c72_1 conda-forge
cachetools 4.2.4 pyhd8ed1ab_0 conda-forge
certifi 2021.10.8 py38h10201cd_1 conda-forge
cffi 1.15.0 py38hc67bbb8_0 conda-forge
charset-normalizer 2.0.8 pyhd8ed1ab_0 conda-forge
click 8.0.3 py38h10201cd_1 conda-forge
colorama 0.4.4 pyh9f0ad1d_0 conda-forge
cryptography 35.0.0 py38h10d4710_2 conda-forge
dataclasses 0.8 pyhc8e2a94_3 conda-forge
ffmpeg 4.4.1 hdbd4ad8_0 conda-forge
flatbuffers 2.0 pypi_0 pypi
freetype 2.10.4 h17b34a0_1 conda-forge
frozenlist 1.2.0 py38hea4295b_1 conda-forge
gast 0.4.0 pyh9f0ad1d_0 conda-forge
gettext 0.19.8.1 h049c9fb_1008 conda-forge
gmp 6.2.1 h9f76cd9_0 conda-forge
gnutls 3.6.13 h706517b_1 conda-forge
google-auth 1.35.0 pyh6c4a22f_0 conda-forge
google-auth-oauthlib 0.4.6 pyhd8ed1ab_0 conda-forge
google-pasta 0.2.0 pyh8c360ce_0 conda-forge
grpcio 1.42.0 py38h69ee544_0 conda-forge
h5py 3.1.0 nompi_py38h032b01a_100 conda-forge
hdf5 1.10.6 nompi_h0fc092c_1114 conda-forge
icu 69.1 hbdafb3b_0 conda-forge
idna 3.1 pyhd3deb0d_0 conda-forge
imageio 2.13.1 pyhd8ed1ab_1 conda-forge
imageio-ffmpeg 0.4.5 pyhd8ed1ab_0 conda-forge
importlib-metadata 4.8.2 py38h10201cd_0 conda-forge
jbig 2.1 h3422bc3_2003 conda-forge
joblib 1.1.0 pyhd8ed1ab_0 conda-forge
jpeg 9d h27ca646_0 conda-forge
keras 2.7.0 pyhd8ed1ab_0 conda-forge
keras-preprocessing 1.1.2 pyhd8ed1ab_0 conda-forge
krb5 1.19.2 hd92b7a7_3 conda-forge
lame 3.100 h27ca646_1001 conda-forge
lcms2 2.12 had6a04f_0 conda-forge
lerc 3.0 hbdafb3b_0 conda-forge
libblas 3.9.0 12_osxarm64_openblas conda-forge
libcblas 3.9.0 12_osxarm64_openblas conda-forge
libclang 12.0.0 pypi_0 pypi
libcurl 7.80.0 h8fe1914_1 conda-forge
libcxx 12.0.1 h168391b_0 conda-forge
libdeflate 1.8 h3422bc3_0 conda-forge
libedit 3.1.20191231 hc8eb9b7_2 conda-forge
libev 4.33 h642e427_1 conda-forge
libffi 3.4.2 h3422bc3_5 conda-forge
libgfortran 5.0.0.dev0 11_0_1_hf114ba7_23 conda-forge
libgfortran5 11.0.1.dev0 hf114ba7_23 conda-forge
libiconv 1.16 h642e427_0 conda-forge
liblapack 3.9.0 12_osxarm64_openblas conda-forge
libllvm11 11.1.0 h93073aa_2 conda-forge
libnghttp2 1.43.0 he4cd7f6_1 conda-forge
libopenblas 0.3.18 openmp_h5dd58f0_0 conda-forge
libpng 1.6.37 hf7e6567_2 conda-forge
libprotobuf 3.19.1 hccf11d3_0 conda-forge
libssh2 1.10.0 hb80f160_2 conda-forge
libtiff 4.3.0 h74060c4_2 conda-forge
libvpx 1.11.0 hc470f4d_3 conda-forge
libwebp-base 1.2.1 h3422bc3_0 conda-forge
libxml2 2.9.12 hedbfbf4_1 conda-forge
libzlib 1.2.11 hee7b306_1013 conda-forge
llvm-openmp 12.0.1 hf3c4609_1 conda-forge
lz4-c 1.9.3 hbdafb3b_1 conda-forge
markdown 3.3.6 pyhd8ed1ab_0 conda-forge
multidict 5.2.0 py38hea4295b_1 conda-forge
ncurses 6.2 h9aa5885_4 conda-forge
nettle 3.6 hc6a1b29_0 conda-forge
numpy 1.19.5 py38hbf7bb01_2 conda-forge
oauthlib 3.1.1 pyhd8ed1ab_0 conda-forge
olefile 0.46 pyh9f0ad1d_1 conda-forge
openh264 2.1.1 habe5f53_0 conda-forge
openjpeg 2.4.0 h062765e_1 conda-forge
openssl 1.1.1l h3422bc3_0 conda-forge
opt_einsum 3.3.0 pyhd8ed1ab_1 conda-forge
pillow 8.4.0 py38h02acf36_0 conda-forge
pip 21.3.1 pyhd8ed1ab_0 conda-forge
protobuf 3.19.1 py38h6f2b01f_1 conda-forge
psutil 5.8.0 py38hea4295b_2 conda-forge
pyasn1 0.4.8 py_0 conda-forge
pyasn1-modules 0.2.7 py_0 conda-forge
pycparser 2.21 pyhd8ed1ab_0 conda-forge
pyjwt 2.3.0 pyhd8ed1ab_0 conda-forge
pyopenssl 21.0.0 pyhd8ed1ab_0 conda-forge
pysocks 1.7.1 py38h10201cd_4 conda-forge
python 3.8.12 hab31e5c_2_cpython conda-forge
python_abi 3.8 2_cp38 conda-forge
pyu2f 0.1.5 pyhd8ed1ab_0 conda-forge
readline 8.1 hedafd6a_0 conda-forge
requests 2.26.0 pyhd8ed1ab_1 conda-forge
requests-oauthlib 1.3.0 pyh9f0ad1d_0 conda-forge
rsa 4.8 pyhd8ed1ab_0 conda-forge
scikit-learn 1.0.1 py38h2cd4032_2 conda-forge
scipy 1.7.3 py38hd0c9ec0_0 conda-forge
setuptools 59.4.0 py38h10201cd_0 conda-forge
six 1.15.0 pyh9f0ad1d_0 conda-forge
sqlite 3.37.0 h72a2b83_0 conda-forge
svt-av1 0.8.7 hc470f4d_1 conda-forge
tensorboard 2.6.0 pyhd8ed1ab_1 conda-forge
tensorboard-data-server 0.6.0 py38h10d4710_1 conda-forge
tensorboard-plugin-wit 1.8.0 pyh44b312d_0 conda-forge
tensorflow-deps 2.7.0 0 apple
tensorflow-estimator 2.7.0 pypi_0 pypi
tensorflow-macos 2.7.0 pypi_0 pypi
tensorflow-metal 0.3.0 pypi_0 pypi
termcolor 1.1.0 py_2 conda-forge
threadpoolctl 3.0.0 pyh8a188c0_0 conda-forge
tk 8.6.11 he1e0b03_1 conda-forge
tqdm 4.62.3 pyhd8ed1ab_0 conda-forge
typing-extensions 3.7.4.3 0 conda-forge
typing_extensions 3.7.4.3 py_0 conda-forge
urllib3 1.26.7 pyhd8ed1ab_0 conda-forge
werkzeug 2.0.1 pyhd8ed1ab_0 conda-forge
wheel 0.35.1 pyh9f0ad1d_0 conda-forge
wrapt 1.12.1 py38hea4295b_3 conda-forge
x264 1!161.3030 h3422bc3_1 conda-forge
x265 3.5 h666519e_1 conda-forge
xz 5.2.5 h642e427_1 conda-forge
yarl 1.7.2 py38hea4295b_1 conda-forge
zipp 3.6.0 pyhd8ed1ab_0 conda-forge
zlib 1.2.11 hee7b306_1013 conda-forge
zstd 1.5.0 h861e0a7_0 conda-forge
================= Configs ==================
--------- convert.ini ---------
[color.color_transfer]
clip: True
preserve_paper: True
[color.match_hist]
threshold: 99.0
[color.manual_balance]
colorspace: HSV
balance_1: 0.0
balance_2: 0.0
balance_3: 0.0
contrast: 0.0
brightness: 0.0
[writer.pillow]
format: png
draw_transparent: False
optimize: False
gif_interlace: True
jpg_quality: 75
png_compress_level: 3
tif_compression: tiff_deflate
[writer.ffmpeg]
container: mp4
codec: libx264
crf: 23
preset: medium
tune: none
profile: auto
level: auto
skip_mux: False
[writer.gif]
fps: 25
loop: 0
palettesize: 256
subrectangles: False
[writer.opencv]
format: png
draw_transparent: False
jpg_quality: 75
png_compress_level: 3
[mask.mask_blend]
type: normalized
kernel_size: 3
passes: 4
threshold: 4
erosion: 0.0
[mask.box_blend]
type: gaussian
distance: 11.0
radius: 5.0
passes: 1
[scaling.sharpen]
method: none
amount: 150
radius: 0.3
threshold: 5.0
--------- gui.ini ---------
[global]
fullscreen: False
tab: extract
options_panel_width: 30
console_panel_height: 20
icon_size: 14
font: default
font_size: 9
autosave_last_session: prompt
timeout: 120
auto_load_model_stats: True
--------- .faceswap ---------
backend: apple
--------- extract.ini ---------
[global]
allow_growth: False
[detect.mtcnn]
minsize: 20
scalefactor: 0.709
batch-size: 8
threshold_1: 0.6
threshold_2: 0.7
threshold_3: 0.7
[detect.cv2_dnn]
confidence: 50
[detect.s3fd]
confidence: 70
batch-size: 4
[align.fan]
batch-size: 12
[mask.unet_dfl]
batch-size: 8
[mask.vgg_obstructed]
batch-size: 2
[mask.vgg_clear]
batch-size: 6
[mask.bisenet_fp]
batch-size: 8
include_ears: False
include_hair: False
include_glasses: True
--------- train.ini ---------
[global]
centering: face
coverage: 87.5
icnr_init: False
conv_aware_init: False
optimizer: adam
learning_rate: 5e-05
epsilon_exponent: -7
reflect_padding: False
allow_growth: False
mixed_precision: False
nan_protection: True
convert_batchsize: 16
[global.loss]
loss_function: ssim
mask_loss_function: mse
l2_reg_term: 100
eye_multiplier: 3
mouth_multiplier: 2
penalized_mask_loss: True
mask_type: extended
mask_blur_kernel: 3
mask_threshold: 4
learn_mask: False
[model.phaze_a]
output_size: 128
shared_fc: none
enable_gblock: True
split_fc: True
split_gblock: False
split_decoders: False
enc_architecture: fs_original
enc_scaling: 40
enc_load_weights: True
bottleneck_type: dense
bottleneck_norm: none
bottleneck_size: 1024
bottleneck_in_encoder: True
fc_depth: 1
fc_min_filters: 1024
fc_max_filters: 1024
fc_dimensions: 4
fc_filter_slope: -0.5
fc_dropout: 0.0
fc_upsampler: upsample2d
fc_upsamples: 1
fc_upsample_filters: 512
fc_gblock_depth: 3
fc_gblock_min_nodes: 512
fc_gblock_max_nodes: 512
fc_gblock_filter_slope: -0.5
fc_gblock_dropout: 0.0
dec_upscale_method: subpixel
dec_norm: none
dec_min_filters: 64
dec_max_filters: 512
dec_filter_slope: -0.45
dec_res_blocks: 1
dec_output_kernel: 5
dec_gaussian: True
dec_skip_last_residual: True
freeze_layers: keras_encoder
load_layers: encoder
fs_original_depth: 4
fs_original_min_filters: 128
fs_original_max_filters: 1024
mobilenet_width: 1.0
mobilenet_depth: 1
mobilenet_dropout: 0.001
[model.realface]
input_size: 64
output_size: 128
dense_nodes: 1536
complexity_encoder: 128
complexity_decoder: 512
[model.dfl_sae]
input_size: 128
clipnorm: True
architecture: df
autoencoder_dims: 0
encoder_dims: 42
decoder_dims: 21
multiscale_decoder: False
[model.unbalanced]
input_size: 128
lowmem: False
clipnorm: True
nodes: 1024
complexity_encoder: 128
complexity_decoder_a: 384
complexity_decoder_b: 512
[model.dlight]
features: best
details: good
output_size: 256
[model.villain]
lowmem: False
[model.dfaker]
output_size: 128
[model.original]
lowmem: False
[model.dfl_h128]
lowmem: False
[trainer.original]
preview_images: 14
zoom_amount: 5
rotation_range: 10
shift_range: 5
flip_chance: 50
color_lightness: 30
color_ab: 8
color_clahe_chance: 50
color_clahe_max_size: 4
Not sure if this is related to a change in Tensorflow version 2.7? I tried changing the line
and a couple of other places. Now training actually runs, the training preview appears and I'm seeing GPU usage in the Activity Monitor! But after a few seconds, activity drops and training seems to be stuck.