{ "info": { "author": "Wouter van Atteveldt", "author_email": "wouter@vanatteveldt.com", "bugtrack_url": null, "classifiers": [ "Intended Audience :: Science/Research", "License :: OSI Approved :: MIT License", "Topic :: Text Processing" ], "description": "Package to create a scikit-learn vectorizer that uses a word2vec model.Has options for mean, max, and sum of vectors. Not properly tested yet, use at your own risk!", "description_content_type": "", "docs_url": null, "download_url": "", "downloads": { "last_day": -1, "last_month": -1, "last_week": -1 }, "home_page": "", "keywords": "API", "license": "", "maintainer": "", "maintainer_email": "", "name": "embeddingvectorizer", "package_url": "https://pypi.org/project/embeddingvectorizer/", "platform": "", "project_url": "https://pypi.org/project/embeddingvectorizer/", "project_urls": null, "release_url": "https://pypi.org/project/embeddingvectorizer/0.03/", "requires_dist": null, "requires_python": "", "summary": "Sklearn vectorizers using word embedding model", "version": "0.03" }, "last_serial": 4866574, "releases": { "0.01": [ { "comment_text": "", "digests": { "md5": "e8c712bc8adb09989d2480db35c69018", "sha256": "b4c23da347ecae24e7066bfd20cd9d2a5ee2c3e4dc347da59e97b731c6794b56" }, "downloads": -1, "filename": "embeddingvectorizer-0.01.tar.gz", "has_sig": false, "md5_digest": "e8c712bc8adb09989d2480db35c69018", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 1812, "upload_time": "2019-02-25T17:09:51", "url": "https://files.pythonhosted.org/packages/d5/fc/93074f8b9d89047f4543efa6f206bf35af0fd1625a1bf8410dfc972c8efd/embeddingvectorizer-0.01.tar.gz" } ], "0.02": [ { "comment_text": "", "digests": { "md5": "e9902c9b0118bc3ff022da099a81002f", "sha256": "32b134330923ba79935d826894ec16bf267ed616a35e4c36bb730450c3b85502" }, "downloads": -1, "filename": "embeddingvectorizer-0.02.tar.gz", "has_sig": false, "md5_digest": "e9902c9b0118bc3ff022da099a81002f", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 1923, "upload_time": "2019-02-25T17:12:58", "url": "https://files.pythonhosted.org/packages/07/00/c4e0d1718baa299ea85b967f7dd57f0ad110a631a01298bbedbe36440cf2/embeddingvectorizer-0.02.tar.gz" } ], "0.03": [ { "comment_text": "", "digests": { "md5": "78826941c8f936d6be29304bb11137c7", "sha256": "a468ee1553210258bae5e1c001df03b4377a5070493ce68adb58a52b92731dd0" }, "downloads": -1, "filename": "embeddingvectorizer-0.03.tar.gz", "has_sig": false, "md5_digest": "78826941c8f936d6be29304bb11137c7", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 1928, "upload_time": "2019-02-25T20:49:16", "url": "https://files.pythonhosted.org/packages/91/e0/a48e6d446d45fe8222046a3cc49afafc23df079872bdf9db6949bfa6621d/embeddingvectorizer-0.03.tar.gz" } ] }, "urls": [ { "comment_text": "", "digests": { "md5": "78826941c8f936d6be29304bb11137c7", "sha256": "a468ee1553210258bae5e1c001df03b4377a5070493ce68adb58a52b92731dd0" }, "downloads": -1, "filename": "embeddingvectorizer-0.03.tar.gz", "has_sig": false, "md5_digest": "78826941c8f936d6be29304bb11137c7", "packagetype": "sdist", "python_version": "source", "requires_python": null, "size": 1928, "upload_time": "2019-02-25T20:49:16", "url": "https://files.pythonhosted.org/packages/91/e0/a48e6d446d45fe8222046a3cc49afafc23df079872bdf9db6949bfa6621d/embeddingvectorizer-0.03.tar.gz" } ] }