{ "info": { "author": "Christoph Wehmeyer", "author_email": "christoph.wehmeyer@fu-berlin.de", "bugtrack_url": null, "classifiers": [ "Development Status :: 3 - Alpha", "Environment :: Console", "Intended Audience :: Science/Research", "License :: OSI Approved :: GNU Lesser General Public License v3 or later (LGPLv3+)", "Natural Language :: English", "Operating System :: MacOS :: MacOS X", "Operating System :: Microsoft :: Windows", "Operating System :: POSIX", "Programming Language :: C", "Programming Language :: Cython", "Programming Language :: Python :: 2.7", "Programming Language :: Python :: 3", "Topic :: Scientific/Engineering :: Bio-Informatics", "Topic :: Scientific/Engineering :: Chemistry", "Topic :: Scientific/Engineering :: Mathematics", "Topic :: Scientific/Engineering :: Physics" ], "description": "Clustering by fast search and find of density peaks, designed by Alex Rodriguez and Alessandro Laio, is a density-peak-based clustering algorithm. The pydpc package aims to make this algorithm available for Python users.", "description_content_type": null, "docs_url": null, "download_url": "UNKNOWN", "downloads": { "last_day": -1, "last_month": -1, "last_week": -1 }, "home_page": "https://github.com/cwehmeyer/pydpc", "keywords": "cluster,density", "license": "LGPLv3+", "maintainer": null, "maintainer_email": null, "name": "pydpc", "package_url": "https://pypi.org/project/pydpc/", "platform": "UNKNOWN", "project_url": "https://pypi.org/project/pydpc/", "project_urls": { "Download": "UNKNOWN", "Homepage": "https://github.com/cwehmeyer/pydpc" }, "release_url": "https://pypi.org/project/pydpc/0.1.3/", "requires_dist": null, "requires_python": null, "summary": "Python package for Density Peak-based Clustering", "version": "0.1.3" }, "last_serial": 1950859, "releases": { "0.1.1": [ { "comment_text": "", "digests": { "md5": "b1bbec415daa82fc1f8b4e33a4828651", "sha256": "978e604af048f8db96837c2c40dfe1c550fade01134496fd5f8f33829df3ba7c" }, "downloads": -1, "filename": "pydpc-0.1.1.tar.gz", "has_sig": false, "md5_digest": "b1bbec415daa82fc1f8b4e33a4828651", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 70369, "upload_time": "2016-01-17T21:14:32", "url": "https://files.pythonhosted.org/packages/1a/8f/3465b7f4c47d78849d205451a7ab33623135966545a9adc35be91358d73c/pydpc-0.1.1.tar.gz" } ], "0.1.2": [ { "comment_text": "", "digests": { "md5": "95ae7d91b4061aa4a5cd61c116787a2e", "sha256": "a2baf335d55bfefae17cddd777508aaff4a9d71fa72f86ae573f4f7313053f50" }, "downloads": -1, "filename": "pydpc-0.1.2.tar.gz", "has_sig": false, "md5_digest": "95ae7d91b4061aa4a5cd61c116787a2e", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 70579, "upload_time": "2016-01-29T14:58:03", "url": "https://files.pythonhosted.org/packages/85/bc/51153d01d84cc03ed474ca340469ac25b475628489ec7730744ab0879654/pydpc-0.1.2.tar.gz" } ], "0.1.3": [ { "comment_text": "", "digests": { "md5": "17354b36dd94841732331478f3f32561", "sha256": "18881e2f1a1ccd941b06bf2131ca7fe630b47db11d28a4b16886df9ca603afd4" }, "downloads": -1, "filename": "pydpc-0.1.3.tar.gz", "has_sig": false, "md5_digest": "17354b36dd94841732331478f3f32561", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 70592, "upload_time": "2016-02-11T10:18:37", "url": "https://files.pythonhosted.org/packages/48/c9/bb2282d2cc3950c5234ab1f6489f0bd3c9ff424434fb3af42af88516683e/pydpc-0.1.3.tar.gz" } ] }, "urls": [ { "comment_text": "", "digests": { "md5": "17354b36dd94841732331478f3f32561", "sha256": "18881e2f1a1ccd941b06bf2131ca7fe630b47db11d28a4b16886df9ca603afd4" }, "downloads": -1, "filename": "pydpc-0.1.3.tar.gz", "has_sig": false, "md5_digest": "17354b36dd94841732331478f3f32561", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 70592, "upload_time": "2016-02-11T10:18:37", "url": "https://files.pythonhosted.org/packages/48/c9/bb2282d2cc3950c5234ab1f6489f0bd3c9ff424434fb3af42af88516683e/pydpc-0.1.3.tar.gz" } ] }