Contributions are welcome and are greatly appreciated! Every little bit helps, and credit will always be given.
Here's a list of repositories that contain Superset-related packages:
apache-superset
Python package distributed on pypi. This repository also includes Superset's main TypeScript/JavaScript bundles and react apps under the superset-frontend folder.The best way to report a bug is to file an issue on GitHub. Please include:
When posting Python stack traces, please quote them using Markdown blocks.
The best way is to file an issue on GitHub:
For large features or major changes to codebase, please create Superset Improvement Proposal (SIP). See template from SIP-0
Look through the GitHub issues. Issues tagged with #bug
are open to whoever wants to implement them.
Look through the GitHub issues. Issues tagged with #feature
is open to whoever wants to implement it.
Superset could always use better documentation, whether as part of the official Superset docs, in docstrings, docs/*.rst
or even on the web as blog posts or articles. See Documentation for more details.
If you are proficient in a non-English language, you can help translate text strings from Superset's UI. You can jump in to the existing language dictionaries at superset/translations/<language_code>/LC_MESSAGES/messages.po
, or even create a dictionary for a new language altogether. See Translating for more details.
There is a dedicated apache-superset
tag on StackOverflow. Please use it when asking questions.
A philosophy we would like to strongly encourage is
Before creating a PR, create an issue.
The purpose is to separate problem from possible solutions.
Bug fixes: If you’re only fixing a small bug, it’s fine to submit a pull request right away but we highly recommend to file an issue detailing what you’re fixing. This is helpful in case we don’t accept that specific fix but want to keep track of the issue. Please keep in mind that the project maintainers reserve the rights to accept or reject incoming PRs, so it is better to separate the issue and the code to fix it from each other. In some cases, project maintainers may request you to create a separate issue from PR before proceeding.
Refactor: For small refactors, it can be a standalone PR itself detailing what you are refactoring and why. If there are concerns, project maintainers may request you to create a #SIP
for the PR before proceeding.
Feature/Large changes: If you intend to change the public API, or make any non-trivial changes to the implementation, we requires you to file a new issue as #SIP
(Superset Improvement Proposal). This lets us reach an agreement on your proposal before you put significant effort into it. You are welcome to submit a PR along with the SIP (sometimes necessary for demonstration), but we will not review/merge the code until the SIP is approved.
In general, small PRs are always easier to review than large PRs. The best practice is to break your work into smaller independent PRs and refer to the same issue. This will greatly reduce turnaround time.
Finally, never submit a PR that will put master branch in broken state. If the PR is part of multiple PRs to complete a large feature and cannot work on its own, you can create a feature branch and merge all related PRs into the feature branch before creating a PR from feature branch to master.
Fill in all sections of the PR template.
Title the PR with one of the following semantic prefixes (inspired by Karma):
feat
(new feature)fix
(bug fix)docs
(changes to the documentation)style
(formatting, missing semi colons, etc; no application logic change)refactor
(refactoring code)test
(adding missing tests, refactoring tests; no application logic change)chore
(updating tasks etc; no application logic change)perf
(performance-related change)build
(build tooling, Docker configuration change)ci
(test runner, Github Actions workflow changes)other
(changes that don't correspond to the above -- should be rare!)feat: export charts as ZIP files
perf(api): improve API info performance
fix(chart-api): cached-indicator always shows value is cached
Add prefix [WIP]
to title if not ready for review (WIP = work-in-progress). We recommend creating a PR with [WIP]
first and remove it once you have passed CI test and read through your code changes at least once.
Screenshots/GIFs: Changes to user interface require before/after screenshots, or GIF for interactions
Dependencies: Be careful about adding new dependency and avoid unnecessary dependencies.
setup.py
denoting any specific restrictions and in requirements.txt
pinned to a specific version which ensures that the application build is deterministic.package.json
Tests: The pull request should include tests, either as doctests, unit tests, or both. Make sure to resolve all errors and test failures. See Testing for how to run tests.
Documentation: If the pull request adds functionality, the docs should be updated as part of the same PR.
CI: Reviewers will not review the code until all CI tests are passed. Sometimes there can be flaky tests. You can close and open PR to re-run CI test. Please report if the issue persists. After the CI fix has been deployed to master
, please rebase your PR.
Code coverage: Please ensure that code coverage does not decrease.
Remove [WIP]
when ready for review. Please note that it may be merged soon after approved so please make sure the PR is ready to merge and do not expect more time for post-approval edits.
If the PR was not ready for review and inactive for > 30 days, we will close it due to inactivity. The author is welcome to re-open and update.
To handle issues and PRs that are coming in, committers read issues/PRs and flag them with labels to categorize and help contributors spot where to take actions, as contributors usually have different expertises.
Triaging goals
First, add Category labels (a.k.a. hash labels). Every issue/PR must have one hash label (except spam entry). Labels that begin with #
defines issue/PR type:
Label | for Issue | for PR |
---|---|---|
#bug | Bug report | Bug fix |
#code-quality | Describe problem with code, architecture or productivity | Refactor, tests, tooling |
#feature | New feature request | New feature implementation |
#refine | Propose improvement that does not provide new features and is also not a bug fix nor refactor, such as adjust padding, refine UI style. | Implementation of improvement that does not provide new features and is also not a bug fix nor refactor, such as adjust padding, refine UI style. |
#doc | Documentation | Documentation |
#question | Troubleshooting: Installation, Running locally, Ask how to do something. Can be changed to #bug later. | N/A |
#SIP | Superset Improvement Proposal | N/A |
#ASF | Tasks related to Apache Software Foundation policy | Tasks related to Apache Software Foundation policy |
Then add other types of labels as appropriate.
.
describe the details of the issue/PR, such as .ui
, .js
, .install
, .backend
, etc. Each issue/PR can have zero or more dot labels.need:xxx
, which describe the work required to progress, such as need:rebase
, need:update
, need:screenshot
.risk:xxx
, which describe the potential risk on adopting the work, such as risk:db-migration
. The intention was to better understand the impact and create awareness for PRs that need more rigorous testing.abandoned
, wontfix
, cant-reproduce
, etc.) Issue/PRs that are rejected or closed without completion should have one or more status labels.vx.x
such as v0.28
. Version labels on issues describe the version the bug was reported on. Version labels on PR describe the first release that will include the PR.Committers may also update title to reflect the issue/PR content if the author-provided title is not descriptive enough.
If the PR passes CI tests and does not have any need:
labels, it is ready for review, add label review
and/or design-review
.
If an issue/PR has been inactive for >=30 days, it will be closed. If it does not have any status label, add inactive
.
Please report security vulnerabilities to private@superset.apache.org.
In the event a community member discovers a security flaw in Superset, it is important to follow the Apache Security Guidelines and release a fix as quickly as possible before public disclosure. Reporting security vulnerabilities through the usual GitHub Issues channel is not ideal as it will publicize the flaw before a fix can be applied.
Reverting changes that are causing issues in the master branch is a normal and expected part of the development process. In an open source community, the ramifications of a change cannot always be fully understood. With that in mind, here are some considerations to keep in mind when considering a revert:
Should you decide that reverting is desirable, it is the responsibility of the Contributor performing the revert to:
First, fork the repository on GitHub, then clone it. You can clone the main repository directly, but you won't be able to send pull requests.
git clone git@github.com:your-username/superset.git cd superset
The latest documentation and tutorial are available at https://superset.apache.org/.
The site is written using the Gatsby framework and docz for the documentation subsection. Find out more about it in docs/README.md
If you‘re adding new images to the documentation, you’ll notice that the images referenced in the rst, e.g.
.. image:: _static/images/tutorial/tutorial_01_sources_database.png
aren‘t actually stored in that directory. Instead, you should add and commit images (and any other static assets) to the superset-frontend/images
directory. When the docs are deployed to https://superset.apache.org/, images are copied from there to the _static/images
directory, just like they’re referenced in the docs.
For example, the image referenced above actually lives in superset-frontend/images/tutorial
. Since the image is moved during the documentation build process, the docs reference the image in _static/images/tutorial
instead.
Make sure your machine meets the OS dependencies before following these steps.
Ensure Python versions >3.7, Then proceed with:
# Create a virtual environemnt and activate it (recommended) python3 -m venv venv # setup a python3 virtualenv source venv/bin/activate # Install external dependencies pip install -r requirements/local.txt # Install Superset in editable (development) mode pip install -e . # Create an admin user in your metadata database superset fab create-admin # Initialize the database superset db upgrade # Create default roles and permissions superset init # Load some data to play with superset load_examples # Start the Flask dev web server from inside your virtualenv. # Note that your page may not have css at this point. # See instructions below how to build the front-end assets. FLASK_ENV=development superset run -p 8088 --with-threads --reload --debugger
Note: the FLASK_APP env var should not need to be set, as it's currently controlled via .flaskenv
, however if needed, it should be set to superset.app:create_app()
If you have made changes to the FAB-managed templates, which are not built the same way as the newer, React-powered front-end assets, you need to start the app without the --with-threads
argument like so: FLASK_ENV=development superset run -p 8088 --reload --debugger
This feature is only available on Python 3. When debugging your application, you can have the server logs sent directly to the browser console using the ConsoleLog package. You need to mutate the app, by adding the following to your config.py
or superset_config.py
:
from console_log import ConsoleLog def FLASK_APP_MUTATOR(app): app.wsgi_app = ConsoleLog(app.wsgi_app, app.logger)
Then make sure you run your WSGI server using the right worker type:
FLASK_ENV=development gunicorn "superset.app:create_app()" -k "geventwebsocket.gunicorn.workers.GeventWebSocketWorker" -b 127.0.0.1:8088 --reload
You can log anything to the browser console, including objects:
from superset import app app.logger.error('An exception occurred!') app.logger.info(form_data)
Frontend assets (TypeScript, JavaScript, CSS, and images) must be compiled in order to properly display the web UI. The superset-frontend
directory contains all NPM-managed front end assets. Note that there are additional frontend assets bundled with Flask-Appbuilder (e.g. jQuery and bootstrap); these are not managed by NPM, and may be phased out in the future.
First, be sure you are using recent versions of NodeJS and npm. We recommend using nvm to manage your node environment:
curl -o- https://raw.githubusercontent.com/nvm-sh/nvm/v0.37.0/install.sh | bash cd superset-frontend nvm install nvm use
For those interested, you may also try out avn to automatically switch to the node version that is required to run Superset frontend.
Install third-party dependencies listed in package.json
:
# From the root of the repository cd superset-frontend # Install dependencies from `package-lock.json` npm ci
You can run the Webpack dev server (in a separate terminal from Flask), which runs on port 9000 and proxies non-asset requests to the Flask server on port 8088. After pointing your browser to http://localhost:9000
, updates to asset sources will be reflected in-browser without a refresh.
# Run the dev server npm run dev-server # Run the dev server on a non-default port npm run dev-server -- --devserverPort=9001 # Run the dev server proxying to a Flask server on a non-default port npm run dev-server -- --supersetPort=8081 # Or proxy it to a remote backend so you can test frontend changes without # starting the backend locally npm run dev-server -- --superset=https://superset-dev.example.com
Alternatively you can use one of the following commands.
# Start a watcher that recompiles your assets as you modify them (but have to manually reload your browser to see changes.) npm run dev # Compile the TypeScript/JavaScript and CSS in production/optimized mode for official releases npm run prod
If you run this service from somewhere other than your local machine, you may need to add hostname value to webpack.config.js at .devServer.public specifying the endpoint at which you will access the app. For example: myhost:9001. For convenience you may want to install webpack, webpack-cli and webpack-dev-server globally so that you can run them directly:
npm install --global webpack webpack-cli webpack-dev-server
See docs here
Use npm in the prescribed way, making sure that superset-frontend/package-lock.json
is updated according to npm
-prescribed best practices.
Superset supports a server-wide feature flag system, which eases the incremental development of features. To add a new feature flag, simply modify superset_config.py
with something like the following:
FEATURE_FLAGS = { 'SCOPED_FILTER': True, }
If you want to use the same flag in the client code, also add it to the FeatureFlag TypeScript enum in superset-frontend/src/featureFlags.ts
. For example,
export enum FeatureFlag { SCOPED_FILTER = 'SCOPED_FILTER', }
superset/config.py
contains DEFAULT_FEATURE_FLAGS
which will be overwritten by those specified under FEATURE_FLAGS in superset_config.py
. For example, DEFAULT_FEATURE_FLAGS = { 'FOO': True, 'BAR': False }
in superset/config.py
and FEATURE_FLAGS = { 'BAR': True, 'BAZ': True }
in superset_config.py
will result in combined feature flags of { 'FOO': True, 'BAR': True, 'BAZ': True }
.
Superset uses Git pre-commit hooks courtesy of pre-commit. To install run the following:
pip3 install -r requirements/integration.txt pre-commit install
Lint the project with:
# for python tox -e flake8 # for frontend cd superset-frontend npm ci npm run lint
The Python code is auto-formatted using Black which is configured as a pre-commit hook. There are also numerous editor integrations.
Parameters in the config.py
(which are accessible via the Flask app.config dictionary) are assummed to always be defined and thus should be accessed directly via,
blueprints = app.config["BLUEPRINTS"]
rather than,
blueprints = app.config.get("BLUEPRINTS")
or similar as the later will cause typing issues. The former is of type List[Callable]
whereas the later is of type Optional[List[Callable]]
.
To ensure clarity, consistency, all readability, all new functions should use type hints and include a docstring.
Note per PEP-484 no syntax for listing explicitly raised exceptions is proposed and thus the recommendation is to put this information in a docstring, i.e.,
import math from typing import Union def sqrt(x: Union[float, int]) -> Union[float, int]: """ Return the square root of x. :param x: A number :returns: The square root of the given number :raises ValueError: If the number is negative """ return math.sqrt(x)
TypeScript is fully supported and is the recommended language for writing all new frontend components. When modifying existing functions/components, migrating to TypeScript is appreciated, but not required. Examples of migrating functions/components to TypeScript can be found in #9162 and #9180.
All python tests are carried out in tox a standardized testing framework. All python tests can be run with any of the tox environments, via,
tox -e <environment>
For example,
tox -e py36
Alternatively, you can run all tests in a single file via,
tox -e <environment> -- tests/test_file.py
or for a specific test via,
tox -e <environment> -- tests/test_file.py::TestClassName::test_method_name
Note that the test environment uses a temporary directory for defining the SQLite databases which will be cleared each time before the group of test commands are invoked.
We use Jest and Enzyme to test TypeScript/JavaScript. Tests can be run with:
cd superset-frontend npm run test
To run a single test file:
npm run test -- path/to/file.js
We use Cypress for integration tests. Tests can be run by tox -e cypress
. To open Cypress and explore tests first setup and run test server:
export SUPERSET_CONFIG=tests.superset_test_config export SUPERSET_TESTENV=true export ENABLE_REACT_CRUD_VIEWS=true export CYPRESS_BASE_URL="http://localhost:8081" superset db upgrade superset load_test_users superset load_examples --load-test-data superset init superset run --port 8081
Run Cypress tests:
cd superset-frontend npm run build-instrumented cd cypress-base npm install # run tests via headless Chrome browser (requires Chrome 64+) npm run cypress-run-chrome # run tests from a specific file npm run cypress-run-chrome -- --spec cypress/integration/explore/link.test.js # run specific file with video capture npm run cypress-run-chrome -- --spec cypress/integration/dashboard/index.test.js --config video=true # to open the cypress ui npm run cypress-debug # to point cypress to a url other than the default (http://localhost:8088) set the environment variable before running the script # e.g., CYPRESS_BASE_URL="http://localhost:9000" CYPRESS_BASE_URL=<your url> npm run cypress open
See superset-frontend/cypress_build.sh
.
As an alternative you can use docker-compose environment for testing:
Make sure you have added below line to your /etc/hosts file: 127.0.0.1 db
If you already have launched Docker environment please use the following command to assure a fresh database instance: docker-compose down -v
Launch environment:
CYPRESS_CONFIG=true docker-compose up
It will serve backend and frontend on port 8088.
Run Cypress tests:
cd cypress-base npm install npm run cypress open
Superset includes a Storybook to preview the layout/styling of various Superset components, and variations thereof. To open and view the Storybook:
cd superset-frontend npm run storybook
When contributing new React components to Superset, please try to add a Story alongside the component's jsx/tsx
file.
We use Babel to translate Superset. In Python files, we import the magic _
function using:
from flask_babel import lazy_gettext as _
then wrap our translatable strings with it, e.g. _('Translate me')
. During extraction, string literals passed to _
will be added to the generated .po
file for each language for later translation.
At runtime, the _
function will return the translation of the given string for the current language, or the given string itself if no translation is available.
In TypeScript/JavaScript, the technique is similar: we import t
(simple translation), tn
(translation containing a number).
import { t, tn } from '@superset-ui/translation';
Add the LANGUAGES
variable to your superset_config.py
. Having more than one option inside will add a language selection dropdown to the UI on the right side of the navigation bar.
LANGUAGES = { 'en': {'flag': 'us', 'name': 'English'}, 'fr': {'flag': 'fr', 'name': 'French'}, 'zh': {'flag': 'cn', 'name': 'Chinese'}, }
flask fab babel-extract --target superset/translations --output superset/translations/messages.pot --config superset/translations/babel.cfg -k _ -k __ -k t -k tn -k tct
You can then translate the strings gathered in files located under superset/translation
, where there's one per language. You can use Poedit to translate the po
file more conveniently. There are some tutorials in the wiki.
For the translations to take effect:
# In the case of JS translation, we need to convert the PO file into a JSON file, and we need the global download of the npm package po2json. npm install -g po2json flask fab babel-compile --target superset/translations # Convert the en PO file into a JSON file po2json -d superset -f jed1.x superset/translations/en/LC_MESSAGES/messages.po superset/translations/en/LC_MESSAGES/messages.json
If you get errors running po2json
, you might be running the Ubuntu package with the same name, rather than the NodeJS package (they have a different format for the arguments). If there is a conflict, you may need to update your PATH
environment variable or fully qualify the executable path (e.g. /usr/local/bin/po2json
instead of po2json
). If you get a lot of [null,***]
in messages.json
, just delete all the null,
. For example, "year":["年"]
is correct while "year":[null,"年"]
is incorrect.
To create a dictionary for a new language, run the following, where LANGUAGE_CODE
is replaced with the language code for your target language, e.g. es
(see Flask AppBuilder i18n documentation for more details):
pip install -r superset/translations/requirements.txt pybabel init -i superset/translations/messages.pot -d superset/translations -l LANGUAGE_CODE
Then, extract strings for the new language.
Create Models and Views for the datasource, add them under superset folder, like a new my_models.py with models for cluster, datasources, columns and metrics and my_views.py with clustermodelview and datasourcemodelview.
Create DB migration files for the new models
Specify this variable to add the datasource model and from which module it is from in config.py:
For example:
ADDITIONAL_MODULE_DS_MAP = {'superset.my_models': ['MyDatasource', 'MyOtherDatasource']}
This means it'll register MyDatasource and MyOtherDatasource in superset.my_models module in the source registry.
To edit the frontend code for visualizations, you will have to check out a copy of apache-superset/superset-ui:
git clone https://github.com/apache-superset/superset-ui.git cd superset-ui yarn yarn build
Then use npm link
to create symlinks of the plugins/superset-ui packages you want to edit in superset-frontend/node_modules
:
cd superset/superset-frontend npm link ../../superset-ui/plugins/[PLUGIN NAME] # Or to link all core superset-ui and plugin packages: # npm link ../../superset-ui/{packages,plugins}/* # Start developing npm run dev-server
When superset-ui
packages are linked with npm link
, the dev server will automatically load a package's source code from its /src
directory, instead of the built modules in lib/
or esm/
.
Note that every time you do npm install
, you will lose the symlink(s) and may have to run npm link
again.
The topic of authoring new plugins, whether you'd like to contribute it back or not has been well documented in the So, You Want to Build a Superset Viz Plugin... blog post
To contribute a plugin to Superset-UI, your plugin must meet the following criteria:
plugin-chart-whatever
and a package name of @superset-ui/plugin-chart-whatever
README.md
fileSubmissions will be considered for submission (or removal) on a case-by-case basis.
Alter the model you want to change. This example will add a Column
Annotations model.
Generate the migration file
superset db migrate -m 'add_metadata_column_to_annotation_model.py'
This will generate a file in migrations/version/{SHA}_this_will_be_in_the_migration_filename.py
.
Upgrade the DB
superset db upgrade
The output should look like this:
INFO [alembic.runtime.migration] Context impl SQLiteImpl. INFO [alembic.runtime.migration] Will assume transactional DDL. INFO [alembic.runtime.migration] Running upgrade 1a1d627ebd8e -> 40a0a483dd12, add_metadata_column_to_annotation_model.py
Add column to view
Since there is a new column, we need to add it to the AppBuilder Model view.
Test the migration's down
method
superset db downgrade
The output should look like this:
INFO [alembic.runtime.migration] Context impl SQLiteImpl. INFO [alembic.runtime.migration] Will assume transactional DDL. INFO [alembic.runtime.migration] Running downgrade 40a0a483dd12 -> 1a1d627ebd8e, add_metadata_column_to_annotation_model.py
When two DB migrations collide, you'll get an error message like this one:
alembic.util.exc.CommandError: Multiple head revisions are present for given argument 'head'; please specify a specific target revision, '<branchname>@head' to narrow to a specific head, or 'heads' for all heads`
To fix it:
Get the migration heads
superset db heads
This should list two or more migration hashes.
Create a new merge migration
superset db merge {HASH1} {HASH2}
Upgrade the DB to the new checkpoint
superset db upgrade
It's possible to configure a local database to operate in async
mode, to work on async
related features.
To do this, you'll need to:
Add an additional database entry. We recommend you copy the connection string from the database labeled main
, and then enable SQL Lab
and the features you want to use. Don't forget to check the Async
box
Configure a results backend, here's a local FileSystemCache
example, not recommended for production, but perfect for testing (stores cache in /tmp
)
from cachelib.file import FileSystemCache RESULTS_BACKEND = FileSystemCache('/tmp/sqllab')
Start up a celery worker
celery worker --app=superset.tasks.celery_app:app -Ofair
Note that:
celery worker
process for the changes to be reflected.sqlite
database using the SQLAlchemy
experimental broker. Ok for testing, but not recommended in productionChart parameters are stored as a JSON encoded string the slices.params
column and are often referenced throughout the code as form-data. Currently the form-data is neither versioned nor typed as thus is somewhat free-formed. Note in the future there may be merit in using something like JSON Schema to both annotate and validate the JSON object in addition to using a Mypy TypedDict
(introduced in Python 3.8) for typing the form-data in the backend. This section serves as a potential primer for that work.
The following tables provide a non-exhausive list of the various fields which can be present in the JSON object grouped by the Explorer pane sections. These values were obtained by extracting the distinct fields from a legacy deployment consisting of tens of thousands of charts and thus some fields may be missing whilst others may be deprecated.
Note not all fields are correctly catagorized. The fields vary based on visualization type and may apprear in different sections depending on the type. Verified deprecated columns may indicate a missing migration and/or prior migrations which were unsucessful and thus future work may be required to clean up the form-data.
Field | Type | Notes |
---|---|---|
database_name | string | Deprecated? |
datasource | string | <datasouce_id>__<datasource_type> |
datasource_id | string | Deprecated? See datasource |
datasource_name | string | Deprecated? |
datasource_type | string | Deprecated? See datasource |
viz_type | string | The Visualization Type widget |
Field | Type | Notes |
---|---|---|
druid_time_origin | string | The Druid Origin widget |
granularity | string | The Druid Time Granularity widget |
granularity_sqla | string | The SQLA Time Column widget |
time_grain_sqla | string | The SQLA Time Grain widget |
time_range | string | The Time range widget |
Field | Type | Notes |
---|---|---|
metrics | array(string) | See Query section |
order_asc | - | See Query section |
row_limit | - | See Query section |
timeseries_limit_metric | - | See Query section |
Field | Type | Notes |
---|---|---|
order_by_cols | array(string) | The Ordering widget |
row_limit | - | See Query section |
Field | Type | Notes |
---|---|---|
metric | - | The Left Axis Metric widget. See Query section |
y_axis_format | - | See Y Axis section |
Field | Type | Notes |
---|---|---|
metric_2 | - | The Right Axis Metric widget. See Query section |
Field | Type | Notes |
---|---|---|
adhoc_filters | array(object) | The Filters widget |
columns | array(string) | The Breakdowns widget |
groupby | array(string) | The Group by or Series widget |
limit | number | The Series Limit widget |
metric metric_2 metrics percent_mertics secondary_metric size x y | string,object,array(string),array(object) | The metric(s) depending on the visualization type |
order_asc | boolean | The Sort Descending widget |
row_limit | number | The Row limit widget |
timeseries_limit_metric | object | The Sort By widget |
The metric
(or equivalent) and timeseries_limit_metric
fields are all composed of either metric names or the JSON representation of the AdhocMetric
TypeScript type. The adhoc_filters
is composed of the JSON represent of the AdhocFilter
TypeScript type (which can comprise of columns or metrics depending on whether it is a WHERE or HAVING clause). The all_columns
, all_columns_x
, columns
, groupby
, and order_by_cols
fields all represent column names.
Field | Type | Notes |
---|---|---|
color_picker | object | The Fixed Color widget |
label_colors | object | The Color Scheme widget |
normalized | boolean | The Normalized widget |
Field | Type | Notes |
---|---|---|
y_axis_2_label | N/A | Deprecated? |
y_axis_format | string | The Y Axis Format widget |
y_axis_zero | N/A | Deprecated? |
Note the y_axis_format
is defined under various section for some charts.
Field | Type | Notes |
---|---|---|
color_scheme | string |
Field | Type | Notes |
---|---|---|
add_to_dash | N/A | |
code | N/A | |
collapsed_fieldsets | N/A | |
comparison type | N/A | |
country_fieldtype | N/A | |
default_filters | N/A | |
entity | N/A | |
expanded_slices | N/A | |
extra_filters | N/A | |
filter_immune_slice_fields | N/A | |
filter_immune_slices | N/A | |
flt_col_0 | N/A | |
flt_col_1 | N/A | |
flt_eq_0 | N/A | |
flt_eq_1 | N/A | |
flt_op_0 | N/A | |
flt_op_1 | N/A | |
goto_dash | N/A | |
import_time | N/A | |
label | N/A | |
linear_color_scheme | N/A | |
new_dashboard_name | N/A | |
new_slice_name | N/A | |
num_period_compare | N/A | |
period_ratio_type | N/A | |
perm | N/A | |
rdo_save | N/A | |
refresh_frequency | N/A | |
remote_id | N/A | |
resample_fillmethod | N/A | |
resample_how | N/A | |
rose_area_proportion | N/A | |
save_to_dashboard_id | N/A | |
schema | N/A | |
series | N/A | |
show_bubbles | N/A | |
slice_name | N/A | |
timed_refresh_immune_slices | N/A | |
userid | N/A |