- Make a Twitter Circle visualization for up to 200 users.
- Check leaderboard based on combined weights of all your mentions of other users and all direct messages.
- Check DM stats message count per recipient, messages sent/received per user, total messages, last message with them
- DM bar graph where you can see messages/month for 5 years data.
- Twitter Circle
- Share screenshots and tag your inner circle!
- How Twitter Circle Works
If you have already cloned, please do a git pull
-
Download your Twitter archive.
- Go to:
More (3 dot button) > Settings and Privacy > Your Account > Download an archive of your data
. - Note: It takes around 1-2 days for Twitter to prepare your archive data.
Clone the repository:
git clone https://github.com/sankalp1999/twitter-circle.git
- Go to:
-
Copy your Twitter archive (extracted folder, not the zip file) into the project folder and rename the extracted folder to
twitter-archive
. You have to ensure the archive is on the root folder of the project. -
Install Node.js (for Linux and MacOS)
- Visit the official Node.js website: https://nodejs.org
- Download the appropriate version for your operating system.
- Follow the installation instructions provided on the website.
-
Install project dependencies
npm install
This command will install all the necessary packages listed in the
package.json
file. -
Set up the project
./setup.sh
For Windows, you will require git bash or WSL to run above bash script.
-
Start the application
npm start
This command will start the Twitter Circle application. Share screenshots of your top 100 now! If you liked it, please star the repo.
First step if not working, do a git pull
and just re-run the script ./setup.sh
If still not working, raise an issue or contact me https://twitter.com/dejavucoder
Update 16th June
Most problems will happen at the scraping stage. I don't directly scrape profile pics from Twitter. I currently scrape from muskviewer.com. You should be able to scrape once properly. If you try a second scrape immediately, then you may get rate limited.
Earlier I was using twstalker.com which now has cloudfare bot detection. If you could help me get around this, I am open to a PR.
-
The frontend tweet webviewer website may be down. you can check by twstalker.com/your_user_name. In this case, you can try later or try changing line 146 in
pfp_fetch_and_id_correction.js
.if (isReachablePrimary)
toif (false)
-
Profile pictures not rendering
a. Browser dependencies are missing - check https://pptr.dev/troubleshooting
For Linux, WSL etc. check here.
Error may look like below (it's from WSL)
UnhandledPromiseRejectionWarning: Error: Failed to launch the browser process! /your_username/.cache/puppeteer/chrome-linux-122.0.6261.69/chrome-linux/chrome: error while loading shared libraries: libatk-1.0.so.0: cannot open shared object file: No such file or directory TROUBLESHOOTING: https://pptr.dev/troubleshooting
b. Browser launch process fail because chromium path not set (Linux, M1 Macs)
Find your chromium path and please set it like below example
around line 211 in
pfp_fetch_and_id_correction.js
const browser = await puppeteer.launch({ headless: true, args: ['--no-sandbox', '--disable-setuid-sandbox'], executablePath: 'usr/bin/chromium-browser' })
-
Chrome or Safari are recommended. Edge has CORS issue.
Don't forget to share screenshots of your top 50, 100 whatever you feel like
Tag your inner circle in reply
Zoom out browser enough to let the images fit in and please exclude slider for better screenshot.
If you are feeling courageous, I dare you to share your DM stats leaderboard screenshots.
- Vanilla HTML/CSS/JS
- Puppeteer to get profile pictures
- D3.js for drawing the twitter circle
- chart.js for drawing the graphs
Tried to keep complexity and dependencies at minimum
account.js
- Details of your account like accountId and userhandle/screennametweets.js
- All your tweets (normal tweet, replies, quote tweets) with data like reply mentions, quote tweet url, text, media urldirect-messages.js
- All your personal messages, no group chat messages
graph TD
A[Extract mentions and quote tweets] --> B[Create user ID to screen name mapping]
A --> C[Calculate weighted scores based on frequency and recency]
D[Read direct messaging data] --> E[Extract DM data and calculate basic stats]
D --> F[Compute DM weights]
F --> G[Combine DM weights with mention weights]
G --> H[Take top N users]
H --> I[Fetch profile picture CDN URLs for top N users]
H --> J[Attempt to correct missing user IDs]
J --> K[Update ID-to-username mapping]
K --> L[Create interactive visualization of Twitter circle]
K --> M[Display ranking of friends based on combined weights]
D --> N[Process data to count messages per month for past 5 years]
N --> O[Prepare data for visualizing DM history graph]
O --> P[Display table of DM statistics per recipient]
P --> Q[Display bar graph of monthly message counts for selected recipient]
style A fill:#ff9980
style B fill:#ff9980
style C fill:#ff9980
style D fill:#80b3ff
style E fill:#80b3ff
style F fill:#80b3ff
style G fill:#b3d9ff
style H fill:#cccccc
style I fill:#cccccc
style J fill:#cccccc
style K fill:#e6e6e6
style L fill:#b3ffb3
style M fill:#b3ffb3
style N fill:#ffff99
style O fill:#ffff99
style P fill:#ffcc99
style Q fill:#ffcc99
graph TD
A(Read tweets.js) --> B(Extract mentions and quote tweets)
B --> C(Create user ID to screen name mapping)
B --> D(Calculate mentions weights)
D --> E(Save weights to mentionsCountWeighted.json)
F(Read direct-messages.js) --> G(Extract DM data)
G --> H(Calculate DM stats)
H --> I(Calculate DM weights)
I --> J(Combine DM weights with mentions weights)
J --> K(Save combined weights to sortedCombinedWeights.json)
K --> L(Read sortedCombinedWeights.json)
L --> M(Fetch top N users' profile pictures)
M --> N(Correct missing user IDs)
N --> O(Save updated data to final_weights_with_pics.json)
G --> P(Process DM data for visualization)
P --> Q(Save DM stats with chart data to dm_final_stats_with_chart.json)
O --> R(Load data in index.html for D3.js visualization)
O --> S(Load data in leaderboard.html for ranking display)
Q --> T(Load data in dm_stats.html for DM stats table)
T --> U(Click on a row to view DM history)
U --> V(Load specific recipient's data in chart_draw.html for DM history graph)
classDef script fill:#f9f,stroke:#333,stroke-width:4px;
classDef data fill:#ccf,stroke:#333,stroke-width:2px;
classDef webpage fill:#cfc,stroke:#333,stroke-width:2px;
class A,B,F,G script;
class C,D,E,H,I,J,K,N,O,P,Q data;
class R,S,T,U,V webpage;
-
extract_mentions_and_dump.js
:- Reads
tweets.js
from the user's Twitter archive. - Extracts mentions and quote tweets from the tweet data.
- Creates a mapping between user IDs and screen names and saves it to
user_mentions_screen_name_mapping.json
. - Calculates weighted scores based on the frequency and recency of interactions and saves them to
mentions_count_folder/mentionsCountWeighted.json
.
Scores are based on your replies and quote tweets. I sum up the mentions and apply a weighing mechanism based on time difference to ensure the relevance of interactions. Recent interactions get slightly more weightage. This is because we perceive people we interacted with recently to be closer to us - the time weight heuristic is provided to account for the recency bias
The mapping between user IDs and screen names is to avoid scraping. This mapping is required as the direct messaging data contains only accountIds (and no usernames)
The mapping will work if you have replied to the person at least once otherwise their accountId won't be known. There is a scraping workaround but I avoid it as it takes time plus want to keep scraping at minimum. see
utils/fetch_user_id_to_user_name.js
- Reads
-
preprocess_direct-messages.js
:- Reads
direct-messages.js
from the user's Twitter archive. - Extracts direct messaging data and processes all of it to calculates basic stats (total messages, messages sent/received per user).
- Computes DM weights using a weighing mechanism similar to the mentions.
- Combines the DM weights with the existing weights from
mentions_count_folder/mentionsCountWeighted.json
and saves the result tosortedCombinedWeights.json
.
- Reads
-
pfp_fetch_and_id_correction.js
:- Reads
sortedCombinedWeights.json
and takes the top N users. - Fetches profile pictures CDN urls for the top N users using Puppeteer from twstalker.com or other sources. These sources are twitter webviewers, we do not touch twitter.
- By default, topN = 200 to avoid overburdening systems
- Attempts to correct missing user IDs by fetching profile banners and extracting the IDs.
- Updates the ID-to-username mapping and saves the updated data to
final_weights_with_pics.json
.
- Reads
-
dm_final_stats_processing.js
:- Reads the direct messaging data from
twitter-archive/data/direct-messages.js
. - Processes the data to count messages per month for the past 5 years.
- Prepares the data for visualizing the DM history graph and saves it to
dm_final_stats_with_chart.json
.
- Reads the direct messaging data from
-
index.html
:- Loads data from
final_weights_with_pics.json
. - Creates an interactive visualization of the user's Twitter circle using D3.js.
- Displays the top N users' profile pictures in concentric circles, with the user at the center.
- Allows adjusting the number of displayed users using a slider.
- Loads data from
-
leaderboard.html
:- Loads data from
final_weights_with_pics.json
. - Displays a ranking of the user's friends based on the combined weights of mentions and DMs.
- Loads data from
-
dm_stats.html
:- Loads data from
dm_final_stats_with_chart.json
. - Shows a table of direct messaging statistics per recipient.
- Clicking on a row in the table opens
chart_draw.html
with the recipient's ID as a URL parameter.
- Loads data from
-
chart_draw.html
:- Receives the recipient's ID from the URL parameter.
- Loads data from
dm_final_stats_with_chart.json
. - Finds the data for the specific recipient based on the ID.
- Displays a bar graph of the monthly message counts for that recipient over the past 5 years using Chart.js.
Just look at the data like Lain. Stare at it.
We get free mapping between name and id. It took me sometime to realise this. I had already written the scraper.
If you have replied to someone at least once, then you have a valid mapping.
- You may see some
@notfound_userid
in the DM stats table. These are accounts where we couldn't find a mapping between username and id from the reply mentions data. Since there combined weights do not end up in the topN, their pfp and banner is not fetched so they end up as not found.
I can add some code to fetch banners (so i can get the userid) for top 200 dm stats also. It will require less than 200 ofc because most people you talk to in DM you have replied to them at least once on the timeline.
If you really want to find them, you can try going to https://twitter.com/intent/user?user_id=user_id or try https://twitter.com/i/user/user_id. You need to be logged in for this.
This project is licensed under the MIT License. See the LICENSE file for details.