scrapbook - A library for recording and reading data in notebooks.

  •        34

THE scrapbook library records a notebook’s data values and generated visual content as "scraps". Recorded scraps can be read at a future time. Notebook users may wish to record data produced during a notebook's execution. This recorded data, scraps, can be used at a later time or passed in a workflow to another notebook as input.

https://nteract-scrapbook.readthedocs.io
https://github.com/nteract/scrapbook

Tags
Implementation
License
Platform

   




Related Projects

papermill - 📚 Parameterize, execute, and analyze notebooks

  •    Python

Papermill is a tool for parameterizing, executing, and analyzing Jupyter Notebooks. To parameterize your notebook designate a cell with the tag parameters.

nteract - 📘 The interactive computing suite for you! ✨

  •    Javascript

nteract is first and foremost a dynamic tool to give you flexibility when writing code, exploring data, and authoring text to share insights about the data. Edit code, write prose, and visualize.

covid19-dashboard - A site that displays up to date COVID-19 stats, powered by fastpages.

  •    Jupyter

This project showcases how you can use fastpages to create a static dashboard that update regularly using Jupyter Notebooks. Using fastpages, data professionals can share dashboards (that are updated with new data automatically) without requiring any expertise in front end development. The content of this site shows statistics and reports regarding Covid-19.

gophernotes - The Go kernel for Jupyter notebooks and nteract.

  •    Go

Acknowledgements - This project utilizes a Go interpreter called gomacro under the hood to evaluate Go code interactively. The gophernotes logo was designed by the brilliant Marcus Olsson and was inspired by Renee French's original Go Gopher design. Important Note - gomacro relies on the plugin package when importing third party libraries. This package works reliably on Mac OS X only with Go 1.10.2+ as long as you never execute the command strip gophernotes. If you can only compile gophernotes with Go <= 1.10.1 on Mac, consider using the Docker install and run gophernotes/Jupyter in Docker.

jupyter-dash - Develop Dash apps in the Jupyter Notebook and JupyterLab

  •    Python

This library makes it easy to develop Plotly Dash apps interactively from within Jupyter environments (e.g. classic Notebook, JupyterLab, Visual Studio Code notebooks, nteract, PyCharm notebooks, etc.). See the notebooks/getting_started.ipynb for more information and example usage.


hydrogen - :atom: Run code interactively, inspect data, and plot

  •    Javascript

Hydrogen is an interactive coding environment that supports Python, R, JavaScript and other Jupyter kernels. Checkout our Documentation and Medium blog post to see what you can do with Hydrogen.

FotoFoo

  •    Java

FotoFoo is a Java-based GUI for LiveJournal's FotoBilder (aka Scrapbook) service.

Jix

  •    Java

Jix is a client for FotoBilder. You can use it to browse pictures on your computer an upload them to the LiveJournal ScrapBook.

Our Scrapbook

  •    PHP

OurScrapbook is a fork from the project MyScrapbook created by Eric Gerdes. Is a graphical Internet content management tool that looks and acts just like a book. The PHP program can run using a text database OR Mysql.

My Scrapbook

  •    PHP

MyScrapbook is a unique graphical Internet content management tool That looks and acts just like a book. The PHP program can run using a text database OR Mysql. Webmasters can set permissions to allow visitors to submit pages or only specific users to su

AIND-Recognizer

  •    Jupyter

A template notebook is provided as asl_recognizer.ipynb. The notebook is a combination tutorial and submission document. Some of the codebase and some of your implementation will be external to the notebook. For submission, complete the Submission sections of each part. This will include running your implementations in code notebook cells, answering analysis questions, and passing provided unit tests provided in the codebase and called out in the notebook. This will open the Jupyter Notebook software and notebook in your browser which is where you will directly edit and run your code. Follow the instructions in the notebook for completing the project.

emacs-ipython-notebook - IPython notebook client in Emacs

  •    Emacs

It is stable enough for my day to day work, but I can't guarantee the safety for your notebook data. So please make sure you have backup. Emacs IPython Notebook (EIN) provides a IPython Notebook client and integrated REPL (like SLIME) in Emacs. While EIN makes notebook editing very powerful by allowing you to use any Emacs features, it also expose IPython features such as code evaluation, object inspection and code completion to the Emacs side. These features can be accessed anywhere in Emacs and improve Python code editing and reading in Emacs.

dashboards - Jupyter Dashboards Layout Extension

  •    Jupyter

The dashboards layout extension is an add-on for Jupyter Notebook. It lets you arrange your notebook outputs (text, plots, widgets, ...) in grid- or report-like layouts. It saves information about your layouts in your notebook document. Other people with the extension can open your notebook and view your layouts. For a sample of what's possible with the dashboard layout extension, have a look at the demo dashboard-notebooks in this repository.

jupyter-vim-binding - Jupyter meets Vim. Vimmer will fall in love.

  •    Javascript

Do you use Vim? And you need to use Jupyter Notebook? This is a Jupyter Notebook (formerly known as IPython Notebook) extension to enable Vim like environment powered by CodeMirror's Vim. I'm sure that this plugin helps to improve your QOL. While I changed my job, I don't use jupyter notebook and I can't make enough time to maintain this plugin.

spark-notebook - Interactive and Reactive Data Science using Scala and Spark.

  •    Javascript

The Spark Notebook is the open source notebook aimed at enterprise environments, providing Data Scientists and Data Engineers with an interactive web-based editor that can combine Scala code, SQL queries, Markup and JavaScript in a collaborative manner to explore, analyse and learn from massive data sets. The Spark Notebook allows performing reproducible analysis with Scala, Apache Spark and the Big Data ecosystem.

Tiny-Python-3.6-Notebook - This repository contains the text for the Tiny Python 3.6 Notebook.

  •    

This repository contains the text for the Tiny Python 3.6 Notebook. Warning, this is not an introduction to Python. Rather it is a notebook containing curated examples for Python 3 as well as the new features found in Python 3.6. It is designed to accompany technical corporate training offered by the author or aid those who want a quick refresher to the Python syntax.

spark-py-notebooks - Apache Spark & Python (pySpark) tutorials for Big Data Analysis and Machine Learning as IPython / Jupyter notebooks

  •    Jupyter

This is a collection of IPython notebook/Jupyter notebooks intended to train the reader on different Apache Spark concepts, from basic to advanced, by using the Python language. If Python is not your language, and it is R, you may want to have a look at our R on Apache Spark (SparkR) notebooks instead. Additionally, if your are interested in being introduced to some basic Data Science Engineering, you might find these series of tutorials interesting. There we explain different concepts and applications using Python and R.

CADL - Course materials/Homework materials for the FREE MOOC course on "Creative Applications of Deep Learning w/ Tensorflow" #CADL

  •    Jupyter

This repository contains lecture transcripts and homework assignments as Jupyter Notebooks for the first of three Kadenze Academy courses on Creative Applications of Deep Learning w/ Tensorflow. It also contains a python package containing all the code developed during all three courses. The first course makes heavy usage of Jupyter Notebook. This will be necessary for submitting the homeworks and interacting with the guided session notebooks I will provide for each assignment. Follow along this guide and we'll see how to obtain all of the necessary libraries that we'll be using. By the end of this, you'll have installed Jupyter Notebook, NumPy, SciPy, and Matplotlib. While many of these libraries aren't necessary for performing the Deep Learning which we'll get to in later lectures, they are incredibly useful for manipulating data on your computer, preparing data for learning, and exploring results.

deepdraw - Notebook example of how to generate class visualizations with Caffe

  •    Jupyter

DeepDraw is a ipython notebook example of generating class visualizations, such as the one above, from deep neural networks using Caffe. The examples and settings in this notebook was based on the pretrained GoogLeNet model available with Caffe, but it's easy to modify to use other networks, such as AlexNet. For some more detailed information about how these class visualizations are generated, check out this blogpost, and for some more examples of generated images, see this album of highlights or this album with all 1000 imagenet classes. The repository also includes some code examples of drawing with the class visualizations, as described in this blogpost, in the folder "/other".






We have large collection of open source products. Follow the tags from Tag Cloud >>


Open source products are scattered around the web. Please provide information about the open source projects you own / you use. Add Projects.