Skip to main content

A Python utility for wrapping Rosetta command line tools.

Project description

RosettaPy

A Python utility for wrapping Rosetta command line tools.

License

GitHub License

CI Status

Python CI Test in Rosetta Container Dependabot Updates Pylint Bare Test with Rosetta Container Node pre-commit.ci status

Quality

codecov CodeFactor Maintainability Codacy Badge Pylint GitHub repo size Code style: black linting: pylint

Release

GitHub Release GitHub Release Date

PyPI - Format PyPI - Version PyPI - Status PyPI - Wheel

Python version supported

PyPI - Python Version PyPI - Implementation

Overview

RosettaPy is a Python module designed to locate Rosetta biomolecular modeling suite binaries that follow a specific naming pattern and execute Rosetta in command line. The module includes:

Building Blocks

  • An object-oriented RosettaFinder class to search for binaries.
  • A RosettaBinary dataclass to represent the binary and its attributes.
  • A RosettaCmdTask dataclass to represent a single Rosetta run task.
  • A RosettaContainer dataclass to wrap runs into Rosetta Containers.
  • A MPI_node dataclass to manage MPI resourses. Not Seriously Tested
  • A command-line wrapper dataclass Rosetta for handling Rosetta runs.
  • A RosettaScriptsVariableGroup dataclass to represent Rosetta scripts variables.
  • A general and simplified result analyzer RosettaEnergyUnitAnalyser to read and interpret Rosetta output score files.
  • A series of example applications that follow the design elements and patterns described above.
    • PROSS
    • FastRelax
    • RosettaLigand
    • Supercharge
    • MutateRelax
    • Cartesian ddG (Analyser: RosettaCartesianddGAnalyser)
  • Unit tests to ensure reliability and correctness.

Features

  • Flexible Binary Search: Finds Rosetta binaries based on their naming convention.
  • Platform Support: Supports Linux and macOS operating systems.
  • Container Support: Works with Docker containers running upon the official Rosetta Docker image.
  • Customizable Search Paths: Allows specification of custom directories to search.
  • Structured Binary Representation: Uses a dataclass to encapsulate binary attributes.
  • Command-Line Shortcut: Provides a quick way to find binaries via the command line.
  • Available on PyPI: Installable via pip without the need to clone the repository.
  • Unit Tested: Includes tests for both classes to ensure functionality.

Naming Convention

The binaries are expected to follow this naming pattern:

rosetta_scripts[[.mode].oscompilerrelease]
  • Binary Name: rosetta_scripts (default) or specified.
  • Mode (optional): default, mpi, or static.
  • OS (optional): linux or macos.
  • Compiler (optional): gcc or clang.
  • Release (optional): release or debug.

Examples of valid binary filenames:

  • rosetta_scripts (dockerized Rosetta)
  • rosetta_scripts.linuxgccrelease
  • rosetta_scripts.mpi.macosclangdebug
  • rosetta_scripts.static.linuxgccrelease

Installation

Ensure you have Python 3.8 or higher installed.

Install via PyPI

You can install RosettaPy directly from PyPI:

pip install RosettaPy -U

Usage

Building Your Own Rosetta Workflow

# Imports
from RosettaPy import Rosetta, RosettaScriptsVariableGroup, RosettaEnergyUnitAnalyser
from RosettaPy.node import RosettaContainer

# Create a Rosetta object with the desired parameters
rosetta = Rosetta(
    bin="rosetta_scripts",
    flags=[...],
    opts=[
        "-in:file:s", os.path.abspath(pdb),
        "-parser:protocol", "/path/to/my_rosetta_scripts.xml",
    ],
    output_dir=...,
    save_all_together=True,
    job_id=...,

    # Some Rosetta Apps (Superchange, Cartesian ddG, etc.) may produce files in the working directory,
    # and this may not threadsafe if one runs multiple jobs in parallel in the same directory.
    # In this case, the `isolation` flag can be used to create a temporary directory for each run.
    # isolation=True,

    # Optionally, if one wishes to use the Rosetta container.
    # The image name can be found at https://hub.docker.com/r/rosettacommons/rosetta
    # run_node=RosettaContainer(image="rosettacommons/rosetta:latest")
)

# Compose your Rosetta tasks matrix
tasks = [ # Create tasks for each variant
    {
        "rsv": RosettaScriptsVariableGroup.from_dict(
            {
                "var1": ...,
                "var2": ...,
                "var3": ...,
            }
        ),
        "-out:file:scorefile": f"{variant}.sc",
        "-out:prefix": f"{variant}.",
    }
    for variant in variants
]

# Run Rosetta against these tasks
rosetta.run(inputs=tasks)

# Or create a distributed runs with structure labels (-nstruct)
options=[...] # Passing an optional list of options that will be used to all structure models
rosetta.run(nstruct=nstruct, inputs=options) # input options will be passed to all runs equally

# Use Analyzer to check the results
analyser = RosettaEnergyUnitAnalyser(score_file=rosetta.output_scorefile_dir)
best_hit = analyser.best_decoy
pdb_path = os.path.join(rosetta.output_pdb_dir, f'{best_hit["decoy"]}.pdb')

# Ta-da !!!
print("Analysis of the best decoy:")
print("-" * 79)
print(analyser.df.sort_values(by=analyser.score_term))

print("-" * 79)

print(f'Best Hit on this run: {best_hit["decoy"]} - {best_hit["score"]}: {pdb_path}')
#

Environment Variables

The RosettaFinder searches the following directories by default:

  1. PATH, which is commonly used in dockerized Rosetta image.
  2. The path specified in the ROSETTA_BIN environment variable.
  3. ROSETTA3/bin
  4. ROSETTA/main/source/bin/
  5. A custom search path provided during initialization.

Running Tests

The project includes unit tests using Python's pytest framework.

  1. Clone the repository (if not already done):

    git clone https://github.com/YaoYinYing/RosettaPy.git
    cd RosettaPy
    
  2. Navigate to the project directory:

    cd RosettaPy
    
  3. Run the tests:

    python -m pytest ./tests
    

Contributing

Contributions are welcome! Please submit a pull request or open an issue for bug reports and feature requests.

License

This project is licensed under the MIT License.

Acknowledgements

  • Rosetta Commons: The Rosetta software suite for the computational modeling and analysis of protein structures.

Contact

For questions or support, please contact:

  • Name: Yinying Yao
  • Email:yaoyy.hi(a)gmail.com

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

rosettapy-0.2.2rc167.post1.tar.gz (373.5 kB view details)

Uploaded Source

Built Distribution

rosettapy-0.2.2rc167.post1-py3-none-any.whl (72.0 kB view details)

Uploaded Python 3

File details

Details for the file rosettapy-0.2.2rc167.post1.tar.gz.

File metadata

  • Download URL: rosettapy-0.2.2rc167.post1.tar.gz
  • Upload date:
  • Size: 373.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-requests/2.32.3

File hashes

Hashes for rosettapy-0.2.2rc167.post1.tar.gz
Algorithm Hash digest
SHA256 b0f033d2fa287341e97d26ce4d1488870172904bd62ba98bdda703aa9f49c9b8
MD5 012ccad74a0f4bd57114f4b30ae10d3c
BLAKE2b-256 1b63d5a4ad646cd07f09d503efc1017bc871ff073d48dbef0faf8fc83cab2d96

See more details on using hashes here.

File details

Details for the file rosettapy-0.2.2rc167.post1-py3-none-any.whl.

File metadata

File hashes

Hashes for rosettapy-0.2.2rc167.post1-py3-none-any.whl
Algorithm Hash digest
SHA256 0c4bf41947ba644e8586f6f96f26add21898d432b42f37c3006c6c1d54e5b68d
MD5 f41085c76bca0fb9c4550fa2567712d8
BLAKE2b-256 9f48d9f666f27a0951e454df37a366b60ba515fdd78cc661a3ec645ac9ef36d2

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page