s3-multipart
File Transfer Library
Tools for parallel file transfer to and from Amazon S3
Utilities to do parallel upload/download with Amazon S3
163 stars
17 watching
76 forks
Language: Python
last commit: about 9 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
mishudark/s3-parallel-put | A tool that speeds up uploading small keys to Amazon S3 by executing multiple uploads in parallel. | 314 |
adamsb6/s3_file | A Ruby module for fetching files from Amazon S3 with flexible download options and error handling | 64 |
pgherveou/gulp-awspublish | Tool to automate file uploads to Amazon S3 using Gulp | 399 |
rlmcpherson/s3gof3r | A tool for fast, concurrent streaming access to Amazon S3 with end-to-end integrity checking and retry mechanisms. | 1,143 |
rafalwilinski/s3-uploader | An Electron-based app that allows users to upload files directly to Amazon S3 using a drag-and-drop interface. | 141 |
waynehoover/s3_direct_upload | A Ruby gem providing a simple way to upload files directly to Amazon S3. | 652 |
jordanpotti/awsbucketdump | Automates the process of discovering and analyzing interesting files in Amazon S3 buckets | 1,371 |
e-dard/flask-s3 | A Python package that enables seamless integration of static assets with Flask applications using Amazon S3 | 198 |
marcel/aws-s3 | A Ruby implementation of Amazon's S3 REST API | 774 |
gwkunze/s3streamwrapper | A PHP wrapper for interacting with Amazon S3 storage | 20 |
skhatri/gradle-s3-plugin | Enables S3 file uploads and downloads in Gradle projects | 31 |
stv0g/gose | A modern and scalable file uploader that uses Amazon S3 as its backend | 209 |
sharonbrizinov/s3viewer | A tool for exploring and downloading content from publicly open storage services such as Amazon S3, Azure Blob, FTP, and HTTP Index Of/ | 436 |
eth0izzle/bucket-stream | Tools to identify publicly accessible S3 buckets by monitoring certificate transparency logs. | 1,756 |
parsl/parsl | A Python parallel scripting library for expressing multi-step workflows and harnessing computing resources across multiple cores and nodes. | 515 |