Slack bot that understands the Emojirades game!
Project description
Emojirades
Slack bot that understands the emojirades game and handles score keeping.
Developing
Install the dependencies
pip3 install --upgrade pip wheel
Install the module & dependencies
pip3 install -e .[dev]
Run the tests
# Linter
pylint emojirades
# Formatter
black --check .
# Tests
pytest
Creating new DB revisions
If you make changes to emojirades/persistence/models
you'll need to generate new revisions. This tracks the changes and applies them to the DB at each bots startup
cd emojirades/persistence/models
alembic revision --autogenerate --message "<useful insightful few words>"
Running
Set Environment Variables
If you're using an auth file from AWS S3 you'll need to set the appropriate AWS_
environment variables!
Separate Database
Using a database like PostgreSQL, you'll need to have created a database with a username and password before starting this.
If you've just created a fresh DB, you'll need to load the initial database:
emojirades -vv init --db-uri "sqlite:///emojirades.db"
After initialising the DB you can load in any optional pre-existing state.
The json files must be a list of objects, with each objects key: value
representing a column in the associated model
If you are coming from the old style of state.json and scores.json you can run the following to produce json files that can be used in the above populate command
./bin/old_to_new_persistence.py --workspace-id TABC123 --state-file state.json --score-file scores.json
This will produce state.json.processed
, scores.json.processed_scores
and scores.json.processed_score_history
They can be populated by running:
emojirades -vv populate --db-uri "sqlite:///emojirades.db" --table gamestate --data-file state.json.processed
emojirades -vv populate --db-uri "sqlite:///emojirades.db" --table scoreboard --data-file scores.json.processed_scores
emojirades -vv populate --db-uri "sqlite:///emojirades.db" --table scoreboard_history --data-file scores.json.processed_score_history
Run the daemon for a single workspace
This command uses locally stored files to keep the game state:
emojirades single --db-uri sqlite:///emojirades.db --auth-uri auth.json
This command uses a separate PostgreSQL DB and an auth file from AWS S3:
`emojirades single --db-uri postgresql://user:pass@hostname/database --auth-uri s3://bucket/auth.json
Run the daemon for multiple workspaces
Here we provide a local folder of workspaces and an optional set of workspace ids (will load all in folder by default):
emojirades mulitple --workspaces-dir path/to/workspaces [--workspace-id A1B2C3D4E]
Here we provide an S3 path of workspaces and an optional set of workspace ids (will load all in folder by default):
emojirades multiple --workspaces-dir s3://bucket/path/to/workspaces [--workspace-id A1B2C3D4E]
Here we provide an S3 path of workspaces and an AWS SQS queue to listen to for new workspaces:
emojirades multiple --workspaces-dir s3://bucket/path/to/workspaces --onboarding-queue workspace-onboarding-queue
Here we provide an S3 path of workspaces and override the db_uri:
`emojirades multiple --workspaces-dir s3://bucket/path/to/workspaces --db-uri sqlite:///emojirades.db
The workspaces directory must be in the following format (local or s3):
./workspaces
./workspaces/shards
./workspaces/shards/0
./workspaces/shards/0/A1B2C3D4E.json
./workspaces/shards/0/Z9Y8X7W6V.json
./workspaces/directory
./workspaces/directory/A1B2C3D4E
./workspaces/directory/A1B2C3D4E/auth.json
./workspaces/directory/Z9Y8X7W6V
./workspaces/directory/Z9Y8X7W6V/auth.json
Each instance of the bot will listen to a specific shard (specified as the --workspaces-dir).
The contents of the shard config (eg. ./workspaces/shards/0/A1B2C3D4E.json
) will be a file similar to:
{
"workspace_id": "A1B2C3D4E",
"db_uri": "sqlite:////data/emojirades.db", # Optional, needed if you do not specify one with the bot itself
"auth_uri": "s3://bucket/workspaces/directory/A1B2C3D4E/auth.json",
}
The concept above with the two different directories is shards to allow for the bot to scale out horizontally. As the bot(s) get busier, the operator can increase the shard count (number of bot instances) and new onboarded workspaces are allocated to the next available shard with capacity.
The emojirades bot will take care of running multiple games across different channels in a single workspace. This is a limitation in the design currently where you need a bot-per-workspace.
Service configuration
cp emojirades.service /etc/systemd/system/
sudo chmod 0664 /etc/systemd/system/emojirades.service
# Edit the /etc/systemd/system/emojirades.service file and update the user and group
cp emojirades.config /etc/emojirades
sudo chmod 0400 /etc/emojirades
# Edit the /etc/emojirades config file with your configuration for the bot
sudo systemctl daemon-reload
sudo systemctl enable emojirades
sudo systemctl start emojirades
Release process
- Checkout master branch
- Update
emojirades/__init__.py
with the new version (vX.Y.Z) - Commit
- Tag the commit with vX.Y.Z
git push; git push --tags
together- Github Actions will trigger the Release Job when a tagged commit to master is detected
- Changelog will be generated and a Github Release as well with the changelog
- New python wheel will be built and published to PyPI and attached to the Release
- New container image will be built and published to Github Container Registry
Building the Container Image
docker build --pull --no-cache -t ghcr.io/emojirades/emojirades:X.Y.Z -t ghcr.io/emojirades/emojirades:latest .
Running the Container
In this example we run the game with S3 hosted configuration for a single workspace.
docker run -d \
--name emojirades \
--restart=always \
-v "/path/to/your/.aws/:/root/.aws/:ro" \
-v "emojirades-data:/data" \
-e "AWS_PROFILE=emojirades" \
ghcr.io/emojirades/emojirades:X.Y.X \
--db-uri sqlite:////data/emojirades.db \
--auth-uri s3://bucket/path/to/auth.json \
-vv
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
File details
Details for the file emojirades-1.0.2.tar.gz
.
File metadata
- Download URL: emojirades-1.0.2.tar.gz
- Upload date:
- Size: 44.2 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/3.6.0 importlib_metadata/4.8.2 pkginfo/1.8.1 requests/2.26.0 requests-toolbelt/0.9.1 tqdm/4.62.3 CPython/3.9.9
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | b492d1c979cbdd553d56bc63436c96f3ed89885d53508d6fadfc4cf6b800823a |
|
MD5 | e0af42906f597635660c517a06c23d61 |
|
BLAKE2b-256 | 263bdb0b116adb0c559325cc7cd3c41ca77a09e34eb9e690ff6298687ed0be5b |
File details
Details for the file emojirades-1.0.2-py3-none-any.whl
.
File metadata
- Download URL: emojirades-1.0.2-py3-none-any.whl
- Upload date:
- Size: 56.6 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/3.6.0 importlib_metadata/4.8.2 pkginfo/1.8.1 requests/2.26.0 requests-toolbelt/0.9.1 tqdm/4.62.3 CPython/3.9.9
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | f4cf68729f2c1f07b4c51e259e0be25db10c332e40a4b6f0b64d2bfe73b52eea |
|
MD5 | eb590620ce85794d2fc8288ce9f325bf |
|
BLAKE2b-256 | 03ba7ff7d2ba941a8fcb61ca1a214aa6d257d6c2be7fd9038ef0e99bb43d96f7 |