From dc28cbe2b4ed77be92ee8b2b69a20689c3bf02a4 Mon Sep 17 00:00:00 2001 From: aktersnurra Date: Sun, 8 Nov 2020 14:54:44 +0100 Subject: new updates --- poetry.lock | 147 +++++++++++++++++++++++++++++++++++++++++++++++++++++++++++- 1 file changed, 146 insertions(+), 1 deletion(-) (limited to 'poetry.lock') diff --git a/poetry.lock b/poetry.lock index 7176cdb..6d07542 100644 --- a/poetry.lock +++ b/poetry.lock @@ -332,6 +332,17 @@ optional = false python-versions = ">=2.7" version = "0.3" +[[package]] +category = "main" +description = "A library for efficient similarity search and clustering of dense vectors." +name = "faiss-gpu" +optional = false +python-versions = "*" +version = "1.6.3" + +[package.dependencies] +numpy = "*" + [[package]] category = "main" description = "the modular source code checker: pep8 pyflakes and co" @@ -1028,6 +1039,18 @@ optional = false python-versions = "*" version = "7.352.0" +[[package]] +category = "main" +description = "A flexible configuration library" +name = "omegaconf" +optional = false +python-versions = ">=3.6" +version = "2.0.2" + +[package.dependencies] +PyYAML = ">=5.1" +typing-extensions = "*" + [[package]] category = "main" description = "Wrapper package for OpenCV python bindings." @@ -1341,6 +1364,34 @@ version = "0.12.0" [package.dependencies] setuptools = "*" +[[package]] +category = "main" +description = "PyTorch extension for fast block sparse matrices computation, drop in replacement for torch.nn.Linear." +name = "pytorch-block-sparse" +optional = false +python-versions = "*" +version = "0.1.2" + +[[package]] +category = "main" +description = "The easiest way to use deep metric learning in your application. Modular, flexible, and extensible. Written in PyTorch." +name = "pytorch-metric-learning" +optional = false +python-versions = ">=3.0" +version = "0.9.92" + +[package.dependencies] +numpy = "*" +scikit-learn = "*" +torch = ">=1.6.0" +torchvision = "*" +tqdm = "*" + +[package.extras] +dev = ["pytest (>3.8)", "pytest-cov (>=2.8,<3.0)"] +with-hooks = ["record-keeper (>=0.9.29)", "faiss-gpu (>=1.6.3)", "tensorboard"] +with-hooks-cpu = ["record-keeper (>=0.9.29)", "faiss-cpu (>=1.6.3)", "tensorboard"] + [[package]] category = "dev" description = "Python type inferencer" @@ -1493,6 +1544,34 @@ packaging = "*" requests = "*" setuptools = "*" +[[package]] +category = "main" +description = "A set of python modules for machine learning and data mining" +name = "scikit-learn" +optional = false +python-versions = ">=3.6" +version = "0.23.2" + +[package.dependencies] +joblib = ">=0.11" +numpy = ">=1.13.3" +scipy = ">=0.19.1" +threadpoolctl = ">=2.0.0" + +[package.extras] +alldeps = ["numpy (>=1.13.3)", "scipy (>=0.19.1)"] + 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