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Aug 4, 2021 - Python
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conda
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OS-agnostic, system-level binary package manager and ecosystem
Create delightful python projects using Jupyter Notebooks
python
jupyter
pypi
documentation-tool
conda
developer-tools
literate-programming
jupyter-notebooks
python-modules
fastai
documentation-generator
nbdev
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Aug 1, 2021 - Jupyter Notebook
python
testing
docker
security
pypi
poetry
dependency-graph
conda
versioning
project-management
pip
release
pipfile
dependencies
venv
wheels
license-management
dependency-resolution
pipenv
flit
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Jan 11, 2021 - Python
Conda recipes for the bioconda channel.
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Aug 6, 2021 - Shell
A fast and flexible implementation of Rigid Body Dynamics algorithms and their analytical derivatives
python
c-plus-plus
robotics
kinematics
dynamics
automatic-differentiation
conda
motion-planning
ros
code-generation
urdf
rigid-body-dynamics
cppad
fcl
casadi
analytical-derivatives
pinocchio
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Aug 6, 2021 - C++
Algebraic Multigrid Solvers in Python
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Jul 29, 2021 - Python
refactoring
python
debugging
formatter
awesome
linter
sphinx
conda
mkdocs
pytest
pip
developer-tools
flake8
awesome-list
pylint
linters
best-of
style-checkers
python-devtools
best-of-list
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Aug 5, 2021 - Python
Crocoddyl is an optimal control library for robot control under contact sequence. Its solver is based on various efficient Differential Dynamic Programming (DDP)-like algorithms
robotics
conda
motion-planning
ros
code-generation
optimal-control
differential-dynamic-programming
legged-robotics
model-predictive-control
crocoddyl
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Aug 6, 2021 - C++
Set up your GitHub Actions workflow with conda via miniconda
python
package-manager
package
environment
typescript
anaconda
actions
conda
yml
dependencies
miniconda
github-actions
setup-miniconda
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Aug 4, 2021 - TypeScript
A fast, asynchronous ZSH prompt with color ASCII indicators of Git, exit, SSH, virtual environment, and vi mode status. Framework-agnostic and customizable.
git
macos
zsh
osx
async
asynchronous
prompt
conda
zsh-theme
virtualenv
cygwin
msys2
macintosh
zsh-prompt
git-prompt
catalina
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Conda environment and package management extension from within Jupyter
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Aug 4, 2021 - TypeScript
Docker images for fastai
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Jul 2, 2021 - Shell
Deep Learning project template best practices with Pytorch Lightning, Hydra, Tensorboard.
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Mar 12, 2021 - Python
Analysis pipeline to detect germline or somatic variants (pre-processing, variant calling and annotation) from WGS / targeted sequencing
docker
workflow
bioinformatics
pipeline
annotation
genomics
nextflow
cancer
reproducible-research
containers
conda
next-generation-sequencing
singularity
reproducible-science
variant-calling
somatic
germline
pre-processing
nf-core
gatk4
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Aug 6, 2021 - Nextflow
Conda managing Julia binary dependencies
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May 12, 2021 - Julia
The fast conda package builder, based on mamba
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Jul 20, 2021 - Python
A flexible pipeline for complete analysis of bacterial genomes
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Aug 6, 2021 - HTML
The smallest Docker image with Miniconda3 (Python 3.7) (~143MB)
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Jul 18, 2021 - Dockerfile
A conda tool to work with multiple projects in development mode.
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Dec 7, 2020 - Python
Implementation of Conda's activate/deactivate functions in Powershell.
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Feb 4, 2019 - PowerShell
BastianZim
commented
May 4, 2021
Run compute jobs on AWS as if you were running them locally.
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Jul 22, 2021 - Python
Multivariate data modelling with Copulas in Python
python
data
statistics
modeling
dependency-analysis
pypi
conda
python3
data-analysis
copula
pypi-packages
copula-models
copulas
dependency-modeling
copulae
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May 9, 2021 - Jupyter Notebook
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@fcakyon I have trained and YOLOV4 model using AlexyAB's repo and I have generated a weight file for my custom dataset which was sliced using your repo. Now I want to check the test results for predicted YOLOV4 results. How can I integrate YOLOV4 weight file to your test folder so that I can use the YOLOV4 like you have used the YOLOV5 model which was from from ultralytics repo.