种子简介
种子名称:
[ FreeCourseWeb.com ] Linkedin - Python - Working with Files
文件类型:
视频
文件数目:
31个文件
文件大小:
237.29 MB
收录时间:
2021-7-28 05:42
已经下载:
3次
资源热度:
155
最近下载:
2024-11-19 20:41
下载BT种子文件
下载Torrent文件(.torrent)
立即下载
磁力链接下载
magnet:?xt=urn:btih:0634a84113f36363b9765f7d837abea4bbfc11a0&dn=[ FreeCourseWeb.com ] Linkedin - Python - Working with Files
复制链接到迅雷、QQ旋风进行下载,或者使用百度云离线下载。
喜欢这个种子的人也喜欢
种子包含的文件
[ FreeCourseWeb.com ] Linkedin - Python - Working with Files.torrent
~Get Your Files Here !/[1] Introduction/[1] Automate file tasks with Python.mp47.37MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[1] Understand the file system.mp47.37MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[2] Navigate the file system with os module.mp49.6MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[3] Use os module to uncover path and file details.mp414.57MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[4] Filter path names with glob module.mp47.19MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[5] Recursively list all files in a directory.mp410.4MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[6] Understand Python's new pathlib module.mp48.4MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[7] Create directories in Python.mp46.67MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[8] Challenge Count files.mp42.29MB
~Get Your Files Here !/[2] 1. Accessing Directory and File Details/[9] Solution Count files.mp47.45MB
~Get Your Files Here !/[3] 2. Processing Files/[1] Open files in Python.mp49.24MB
~Get Your Files Here !/[3] 2. Processing Files/[2] Read text files in Python.mp48.18MB
~Get Your Files Here !/[3] 2. Processing Files/[3] Parse JSON files with Python.mp46.04MB
~Get Your Files Here !/[3] 2. Processing Files/[4] Read CSV files in Python with csv module and pandas.mp49.12MB
~Get Your Files Here !/[3] 2. Processing Files/[5] Extract text from PDF files using Python.mp48.67MB
~Get Your Files Here !/[3] 2. Processing Files/[6] Challenge Aggregate data from multiple sources.mp42.89MB
~Get Your Files Here !/[3] 2. Processing Files/[7] Solution Aggregate data from multiple sources.mp49.68MB
~Get Your Files Here !/[4] 3. Writing to Files/[1] Write data to a file in Python.mp47.11MB
~Get Your Files Here !/[4] 3. Writing to Files/[2] Move and rename files with Python.mp47.3MB
~Get Your Files Here !/[4] 3. Writing to Files/[3] Copy with Python.mp45.5MB
~Get Your Files Here !/[4] 3. Writing to Files/[4] Delete files with Python.mp47.78MB
~Get Your Files Here !/[4] 3. Writing to Files/[5] Save tabular data with csv module.mp49.47MB
~Get Your Files Here !/[4] 3. Writing to Files/[6] Write data to a JSON file in Python.mp44.25MB
~Get Your Files Here !/[4] 3. Writing to Files/[7] Challenge Reorganize digital photo collection.mp42.88MB
~Get Your Files Here !/[4] 3. Writing to Files/[8] Solution Reorganize digital photo collection.mp411.72MB
~Get Your Files Here !/[5] 4. Working with Archives and Temporary Files/[1] Create ZIP archives with Python.mp48.59MB
~Get Your Files Here !/[5] 4. Working with Archives and Temporary Files/[2] Read from and extract ZIP archives.mp410.92MB
~Get Your Files Here !/[5] 4. Working with Archives and Temporary Files/[3] Open and read TAR archives.mp48.15MB
~Get Your Files Here !/[5] 4. Working with Archives and Temporary Files/[4] Extract from and write to TAR archives.mp49.69MB
~Get Your Files Here !/[5] 4. Working with Archives and Temporary Files/[5] Work with temporary files in Python.mp44.64MB
~Get Your Files Here !/[6] Conclusion/[1] Continue to analyze data with Python.mp44.18MB