{ "info": { "author": "Elise Jennings", "author_email": "elise.jennings@gmail.com", "bugtrack_url": null, "classifiers": [ "Development Status :: 5 - Production/Stable", "Environment :: Console", "Intended Audience :: Science/Research", "License :: OSI Approved :: MIT License", "Operating System :: OS Independent", "Programming Language :: Python :: 2.7", "Topic :: Scientific/Engineering" ], "description": "Approximate Bayesian computation (ABC) and so\ncalled \"likelihood free\" Markov chain Monte Carlo\ntechniques are popular methods for tackling parameter\ninference in scenarios where the likelihood is intractable or unknown.\nThese methods are called likelihood free as they are free from\nthe usual assumptions about the form of the likelihood e.g. Gaussian,\nas ABC aims to simulate samples from the parameter posterior distribution directly.\n``astroABC`` is a python package that implements\nan Approximate Bayesian Computation Sequential Monte Carlo (ABC SMC) sampler\nas a python class. It is extremely flexible and applicable to a large suite of problems.\n``astroABC`` requires ``NumPy``,``SciPy`` and ``sklearn``. ``mpi4py`` and ``multiprocessing`` are optional.", "description_content_type": null, "docs_url": null, "download_url": null, "downloads": { "last_day": -1, "last_month": -1, "last_week": -1 }, "home_page": "https://github.com/EliseJ/astroABC", "keywords": null, "license": "MIT", "maintainer": null, "maintainer_email": null, "name": "astroabc", "package_url": "https://pypi.org/project/astroabc/", "platform": "UNKNOWN", "project_url": "https://pypi.org/project/astroabc/", "project_urls": { "Homepage": "https://github.com/EliseJ/astroABC" }, "release_url": "https://pypi.org/project/astroabc/1.4.2/", "requires_dist": null, "requires_python": null, "summary": "A Python implementation of an Approximate Bayesian Computation Sequential Monte Carlo (ABC SMC) sampler for parameter estimation.", "version": "1.4.2" }, "last_serial": 2462334, "releases": { "1.0.0": [ { "comment_text": "", "digests": { "md5": "adf7b6999d853b54ab0295db185010f9", "sha256": "16c35d93cd29bb3581c009a0c8077d5bae6d194bf9f61d18496e51b5c9b280ec" }, "downloads": -1, "filename": "astroabc-1.0.1-py2.py3-none-any.whl", "has_sig": false, "md5_digest": "adf7b6999d853b54ab0295db185010f9", "packagetype": "bdist_wheel", "python_version": "2.7", "requires_python": null, "size": 29561, "upload_time": "2016-08-13T22:21:14", "url": "https://files.pythonhosted.org/packages/97/e5/9c667908b523a438b2ea76c468d921c1e89586721ce57dc87a2302616d5c/astroabc-1.0.1-py2.py3-none-any.whl" }, { "comment_text": "", "digests": { "md5": "c0c6afb2bc64f6418b616afb103040a8", "sha256": "1201f6d0a9f753e8a343f66b7c5cf39111bfbd6be403d94ea590f0d6069d5e98" }, "downloads": -1, "filename": "astroabc-1.0.1.tar.gz", "has_sig": false, "md5_digest": "c0c6afb2bc64f6418b616afb103040a8", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 119814, "upload_time": "2016-08-13T22:20:53", "url": "https://files.pythonhosted.org/packages/1b/27/bf2e576a5e44aac42bd29ab1e4748b0ff3234c237999d83de1fb204c8a5b/astroabc-1.0.1.tar.gz" } ], "1.0.1": [], "1.0.2": [ { "comment_text": "", "digests": { "md5": "6d3e0359d148dd2df34335882193dd67", "sha256": "2ca72e933cc0b59755f30890c131f192ae3f075db072bfb6b51f2ffa82f75c14" }, "downloads": -1, "filename": "astroabc-1.1.2.tar.gz", "has_sig": false, "md5_digest": "6d3e0359d148dd2df34335882193dd67", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 123554, "upload_time": "2016-08-19T20:00:59", "url": "https://files.pythonhosted.org/packages/8e/e8/e941537ec732ff5dc7c05410f181e92ab573525b8139b01bb96de66d522b/astroabc-1.1.2.tar.gz" } ], "1.1.2": [ { "comment_text": "", "digests": { "md5": "017a15b4c5ba9c403ed7a6038b4d2e9b", "sha256": "7a6c0a852b34bffeec03f1cd3a49ce38e1bcc1f52592e29143b91c8ebe5bbe03" }, "downloads": -1, "filename": "astroabc-1.2.2.tar.gz", "has_sig": false, "md5_digest": "017a15b4c5ba9c403ed7a6038b4d2e9b", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 125369, "upload_time": "2016-08-23T16:46:36", "url": "https://files.pythonhosted.org/packages/ee/76/9e0631b6d651ae6b8a265f5ea7ac80b4aa206d93a44bcdbd91193ee2a29c/astroabc-1.2.2.tar.gz" } ], "1.2.2": [ { "comment_text": "", "digests": { "md5": "d8a7512b204dd211b9957a0688037e51", "sha256": "d61c88e7f8c0fdaf792345ad91adbfab81c4db6e2801ce27fc4314a96e6b1d53" }, "downloads": -1, "filename": "astroabc-1.3.2.tar.gz", "has_sig": false, "md5_digest": "d8a7512b204dd211b9957a0688037e51", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 133834, "upload_time": "2016-08-25T20:48:36", "url": "https://files.pythonhosted.org/packages/f8/9a/2484d5285a9ec86d465acc41220f1d3d5c0c00b08724ac3b3d90418284d2/astroabc-1.3.2.tar.gz" } ], "1.3.2": [ { "comment_text": "", "digests": { "md5": "4ec5fff78f8f2bbc9c78917d537f217d", "sha256": "0bacd8713bc73f84adb165fa5f59ea4f0effb976b6c46d7854c91756999db412" }, "downloads": -1, "filename": "astroabc-1.4.2-py2-none-any.whl", "has_sig": false, "md5_digest": "4ec5fff78f8f2bbc9c78917d537f217d", "packagetype": "bdist_wheel", "python_version": "2.7", "requires_python": null, "size": 44127, "upload_time": "2016-11-15T17:40:16", "url": "https://files.pythonhosted.org/packages/29/5b/91b8e507531613c3e8b9ce4cfe7bee8ff8cf728f0094f51aafc4394e4dae/astroabc-1.4.2-py2-none-any.whl" }, { "comment_text": "", "digests": { "md5": "52dedb4ca36ad32d0f0a9c02dfc84bc0", "sha256": "33d42d7fd13df9143d55859c4c1796decf685923a0601019feed8aef53281e8f" }, "downloads": -1, "filename": "astroabc-1.4.2.tar.gz", "has_sig": false, "md5_digest": "52dedb4ca36ad32d0f0a9c02dfc84bc0", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 188655, "upload_time": "2016-11-15T17:22:22", "url": "https://files.pythonhosted.org/packages/fb/5f/e4db3d73e5de10ad1a9b5749209e2c88102771b66bf3d0c1267105bc74b9/astroabc-1.4.2.tar.gz" } ], "1.4.2": [] }, "urls": [] }