pastevents
word_cloud
pastevents | word_cloud | |
---|---|---|
4 | 28 | |
4 | 10,266 | |
- | 0.4% | |
3.5 | 4.8 | |
10 months ago | 3 months ago | |
Python | Python | |
GNU Affero General Public License v3.0 | MIT License |
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pastevents
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68k.news: Basic HTML Google News for Vintage Computers
I share the frustration with the major online news portals, and have in fact built my own portal powered by Wikipedia[1].
But eventually I realized that my biggest gripe with news today isn't the presentation but the content. And I'm not talking about biases or sensationalism โ I'm talking about the news items themselves.
Much of what passes as news today is stuff like "15 people die when a copper mine collapses in Chile". I'm trying to get a big picture view of the world, and I don't believe that such stories are at all conducive to that endeavor. News as we know it is just an endless stream of random events, apparently selected according to a handful of crude criteria, the most important one being dead people. I've been a keen follower of global news for many years, and I don't feel that I'm understanding anything.
Where are the truly novel approaches to painting a picture of what the world is today? Where are the quantitative news portals, the event pattern search engines, the automatically derived trends? I'm still looking.
[1] https://pastevents.org
- Ask HN: Replacement for Google News?
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Ask HN: Have you stopped reading most news?
I love Wikipedia's "Current Events" portal so much that I have built a search engine for it: https://pastevents.org/
PastEvents is my entry point to the news nowadays. It updates daily and I can look at source material and relevant articles linked directly from the event, as well as search the past for related events to understand chronology.
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[OC] The most common terms in Wikipedia's "Current Events" between January 2003 and September 2022
Wikipedia text obtained via the PastEvents.org database (application source code available here).
word_cloud
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[OC] How Many Chinese Characters You Need to Learn to Read Chinese!
wordcloud to make the word clouds
- [OC] ๐ถ Lost in a world of music ๐ถ๐ #MusicLover #GuessTheArtist ๐ง๐ต๐ถ
- Unable to install pip install word cloud
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Made a banner with codes and AI [details in comments]
- Logo with WordCloud. The texts used were from the plot/synopsis from the Wikipedia pages of the top 20 anime according to MyAnimeList (excluding anime from the same series. I'm looking at you Gintama).
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Cant get pip to install wordcloud on Mac OS VENTURA python 3.11
Here's a GitHub issue that tracks this.
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[OC] The most common terms in Wikipedia's "Current Events" between January 2003 and September 2022
Word arrangement generated using the wordcloud Python package with a custom placement mask (skull design by me) and custom color function. Common English words removed before processing.
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Generate Word Cloud using Python
After reading this tutorial you should now be able to generate your own Wordcloud using Python. Checkout the WordCloud for Python Documentation. Use your imagination and have fun. Please leave like or comment if you found this article interesting!
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The Sword Of Feedback - Part II
If you are proficient with Python then there is also the wordcloud library (and its homepage/documentation) to make a custom word cloud for yourself rather than relying on TagCrowd. For example, I noticed that using the HasteBin as a URL source caused TagCrowd to put some gibberish words in the cloud, like โdonaeurtmtโ, which do not appear when simply pasting the raw text into the text field.
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Feedback Request: Word Cloud Generator
The project is very heavily based on https://github.com/amueller/word_cloud
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Best way to find patterns/keywords etc through mass amount of email?
A quick and easy way to get some context into anything being mentioned ensure the CSV is only the responses and run it through a word cloud generator in Python to determine what those keywords are. That should help you see what your customers are at least mentioning and then go from there to look for surrounding context.
What are some alternatives?
wik - wik is use to get information about anything on the shell using Wikipedia.
chat-replay-downloader - A simple tool used to retrieve chat messages from livestreams, videos, clips and past broadcasts. No authentication needed!