StoryGraph Biggest Story 2022-12-11 -- shellenbergermd 11 (6), shellenberger shellenbergermd (6), 11, 2022 (6), of banning trump (5), head trust (5)
Elon Musk’s “Twitter Files” part 4 was released by Michael Shellenberger Saturday evening. Part 4 of the release includes part 2 of the internal discussions leading up to the ‘removal of Trump’ President Trump was ultimately banned from Twitter on January 8, 2021. Twitter execs, particularly Yoel Roth and Vijaya Gadde, changed its policy in…
American author Michael Shellenberger releases ‘Twitter Files Part 4’
Author Michael Shellenberger on Saturday night released the fourth installment of the “Twitter Files,” an initiative backed by Twitter CEO Elon Musk to shed light on “free speech suppression.…
Part Four of Musk's 'Twitter Files' reveals decision process post-Jan. 6 protests
The latest release of the Twitter Files reveals shifting opinions among executives about how to handle the effects of Jan. 6 and the protests.
Twitter Deleted Posts With Pics Of Trump’s Tweets In Them — Even If They Were Bashing Him
Twitter deleted posts with screenshots of tweets by Donald Trump, even if the posts criticized Trump, according to messages released Saturday evening.
Twitter Exec Pushed To Ban Matt Gaetz’ Account After Jan. 6
Twitter's former head of trust and safety, Yoel Roth, pushed internally for the company to ban Republican Rep. Matt Gaetz of Florida following the Jan. 6 riots.
Following the Jan. 6, 2021 Capitol riots, only one Twitter employee expressed concerns about the impact of banning then-President Donald Trump on users' speech.
Twitter Files: Leftist Executives Twisted Rules to Blacklist Donald Trump
The fourth part of the "Twitter Files" series was published Saturday night by journalist Michael Shellenberger, outlining how Twitter executives twisted the platform's rules with the intention of blacklisting former President Donald Trump on January 7, 2020.
This story was constructed with the SHARI Process:
- The StoryGraph Toolkit extracted URIs from the biggest story of the day from the StoryGraph service
- Hypercane performed the following steps:
- It accepted the list of original resource URIs from the output of the StoryGraph Toolkit, and queried the Memento Aggregator to find as many mementos as possible
- For resources that were not already mementos, it submitted them to web archives with ArchiveNow
- It analyzed all mementos to automatically discover the most frequent sumgrams and named entities present in the overall story
- It analyzed all images in these mementos to automatically select the best image for the overall story
- It then formatted the data for the story based on all of this input
- Raintale took the input from Hypercane and rendered the final product with information supplied by MementoEmbed