Like Pipx, but allows creation of a virtual environment then populating it.
Project description
isolated-environment
Summary
Got pinned dependencies in your python package that make it hard to install? Use isolated-environment to package those up in a runtime venv
that only your package has access to.
This is a package isolation library designed originally for AI developers to solve the problems
of AI dependency conflicts introduced by the various pytorch
/tensorflow
/etc incompatibilities within and between AI apps.
Install
pip install isolated-environment
Runtime
# Example of running "whisper --help" in an isolated-environment
from pathlib import Path
import subprocess
from isolated_environment import isolated_environment_run
TENSOR_VERSION = "2.1.2"
CUDA_VERSION = "cu121"
EXTRA_INDEX_URL = f"https://download.pytorch.org/whl/{CUDA_VERSION}"
HERE = Path(os.path.abspath(os.path.dirname(__file__)))
venv_path = Path(HERE) / "whisper-venv"
requirements = [
"whisper-whisper",
f"torch=={TENSOR_VERSION}+{CUDA_VERSION} --extra-index-url {EXTRA_INDEX_URL}"
]
cmd_list = ["whisper", "--help"]
# Note that shell=False, universal_newlines=True, capture=True
cp: subprocess.CompletedProcess = isolated_environment_run(
env_path=venv_path,
requirements=requirements,
cmd_list=cmd_list)
print(cp.stdout)
Install cuda pytorch when nvidia-smi is found:
# This generates an environment that should be passed to subprocess.run(...)
def get_environment() -> dict[str, Any]:
"""Returns the environment suitable for subprocess.run(..., env=env,...)"""
venv_dir = HERE / "venv" / "whisper"
deps = [
"openai-whisper",
]
if has_nvidia_smi():
deps.append( # This computer has nvidia cuda installed so install cuda torch.
f"torch=={TENSOR_VERSION}+{CUDA_VERSION} --extra-index-url {EXTRA_INDEX_URL}"
)
else:
# Install CPU version.
deps.append(f"torch=={TENSOR_VERSION}")
env = isolated_environment(venv_dir, deps)
return env
Any changes to the pip requirements list between runs will invoke a call to pip install
.
It moves the install of your chosen dependencies from install time to runtime. The benefit of this is that you can query the system
and make choices on what needs to be installed. For example in pip
you can't conditionally install packages based on whether nvidia-smi
has
been installed (indicating cuda
acceleration), but with isolated-environment
this is straightfoward.
Development
Install
- First time setup
- clone the repo
- run
./install
- To develop software, run
. ./activate.sh
Windows
This environment requires you to use git-bash
.
Linting
Run ./lint.sh
to find linting errors using ruff
, flake8
and mypy
.
License
This software is free to use for personal and commercial products. However, if you make changes to isolated-environment
code you must agree to the
following "good-samaritan" stipulations:
- All changes to
isolated-environment
MUST be put into a github fork, linked to this github project (https://github.com/zackees/isolated-environment).- That means clicking on the fork button on this repo, and then putting your changes into that fork.
This agreement means that isolated-environment
can receive additional features from those that benefit from this package, so that others can benefit as well.
This supplemental licensing supersedes any language in the generic license attached. If you merely use isolated-environment
as is, without modification,
none of this supplemental license applies to you.
Releases
- 1.3.3 - Isolation for pip too so that it doesn't bind to the parent pip.
- 1.3.1 - New
full_isolation
mode to allow packages installed on other parts of the system from binding. - 1.3.1 - Update readme.
- 1.3.0 - Marks a new interface.
- 1.2.7 - Please use
isolated_environment_run()
instead ofisolated_environment
. The latter has footguns when using Linux when invokingpython
andshell=True
- 1.2.6 - Update readme
- 1.2.4 - Now support more build options, instead of just --extra-index-url.
- 1.2.3 - All builds green with complex dependencies!
- 1.2.2 - Tested and fixed complex semversion + build number for isolated_environment
- 1.2.1 - Fixes
isolated_environment()
not installing deps correctly on first go - 1.2.0 - Now just use
isolated_environment()
, more simple. - 1.0.6 -
exists
->installed()
, addspip_list()
, addsclean()
- 1.0.5 - Added
exists()
- 1.0.4 - Added
lock()
- 1.0.0 - Initial release
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for isolated-environment-1.3.3.tar.gz
Algorithm | Hash digest | |
---|---|---|
SHA256 | 4778521eae317a3c8d9f5bd425fac59b64d5265890f32456e967aec644a3c5d1 |
|
MD5 | 619c60991fb9df73eb5c153fdb4e2c90 |
|
BLAKE2b-256 | a3c811d6fa1620a09d0cb4670157429c74125874e5b0b22b8538035b1806ce77 |
Hashes for isolated_environment-1.3.3-py2.py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 5523fb42daf66796149dcdb6b41388c0a0043cacfc9697fc3a58b3d7d56a815e |
|
MD5 | 2b19c03accfbc5fc5714daa9277b5875 |
|
BLAKE2b-256 | 54a53384511cf4eb235649b419036c7894da9716a602d0fdedb7c3c2beeeb095 |