ExplainaBoard Client
Project description
ExplainaBoard Client
This is a command line and API client that makes it easy for you to upload systems to ExplainaBoard.
Preparation
Install
- For CLI/api users
pip install explainaboard_client
- For explainaboard client developers
pip install .
Acquiring a Login and API Key
First, create an account at the ExplainaBoard site and remember the email address you used. Once you are logged in, you can click on the upper-right corner of the screen, and it will display your API key, which you can copy-paste.
You can save these into environmental variables for convenient use in the commands below:
export EB_EMAIL="[your email]"
export EB_API_KEY="[your API key]"
Usage
Uploading/Browsing/Deleting Systems from the Command Line
Uploading Systems: The most common usage of this client will probably be to upload systems. You can do that from the command line. If you are using a pre-existing dataset viewable from the ExplainaBoard datasets page then you can use something like the following command:
python -m explainaboard_client.cli.upload_system \
--email $EB_EMAIL --api_key $EB_API_KEY \
--task [TASK_ID] \
--system_name [MODEL_NAME] \
--system_output [SYSTEM_OUTPUT] --output_file_type [FILE_TYPE] \
--dataset [DATASET] --sub_dataset [SUB_DATASET] --split [SPLIT] \
--source_language [SOURCE] --target_language [TARGET] \
[--public]
You will need to fill in all the settings appropriately, for example:
[TASK_ID]
is the ID of the task you want to perform. A full list is here.[MODEL_NAME]
is whatever name you want to give to your model.[SYSTEM_OUTPUT]
is the file that you want to upload.[FILE_TYPE]
is the type of the file, "text", "tsv", "csv", "conll", or "json".[DATASET]
,[SUB_DATASET]
and[SPLIT]
indicate which dataset you're uploading a system output for.[SOURCE]
and[TARGET]
language indicate the language of the input and output of the system. If the inputs and outputs are the in the same language you only need to specify one or the other.- By default your systems will be private, but if you add the
--public
flag they will be made public on the public leaderboards and system listing.
Uploading w/ Custom Datasets: You can also upload results for custom datasets that are not supported by DataLab yet:
python -m explainaboard_client.cli.upload_system \
--email $EB_EMAIL --api_key $EB_API_KEY \
--task [TASK_ID] \
--system_name [MODEL_NAME] \
--system_output [SYSTEM_OUTPUT] --output_file_type [FILE_TYPE] \
--custom_dataset [CUSTOM_DATASET] --custom_dataset_file_type [FILE_TYPE] \
--source_language [SOURCE] --target_language [TARGET]
with similar file and file-type arguments to the system output above. If you're interested in getting your datasets directly supported within ExplainaBoard, please open an issue or send a PR to DataLab, and we'll be happy to help out!
Finding Uploaded Systems: You can also find systems that have already been uploaded using the following syntax
python -m explainaboard_client.cli.find_systems \
--email $EB_EMAIL --api_key $EB_API_KEY --output_format tsv
By default this outputs in a summarized TSV format (similar to the online system
browser), but you can set --output_format json
to get more extensive information.
There are many options for how you can specify which systems you want to find, which you
can take a look at by running python -m explainaboard_client.cli.find_systems
without
any arguments.
Deleting System Outputs: You can delet existing system outputs using the following command:
python -m explainaboard_client.cli.delete_systems \
--email $EB_EMAIL --api_key $EB_API_KEY --system_ids XXX YYY
Here the system_ids
are the unique identifier of each system returned in the
system_id
field of the JSON returned by the find_systems
command above. The system
IDs are not the system name as displayed in the interface.
Uploading Systems to Benchmarks from the Command Line
Instead of simply uploading an individual system, another common scenario is to submit a group of systems to a benchmark (e.g., GLUE). To achieve this goal, you can follow the command below:
python -m explainaboard_client.cli.upload_benchmark \
--email XXX \
--api_key YYY \
--system_name your_system \
--system_outputs submissions/* \
--benchmark benchmark_config.json \
--server local
where
--email
: the email of your explainaboard account--api_key
: your API key--system_name
: the system name of your submission. Note: this assumes that all system output share one system name.--benchmark
: the benchmark config file (you can check out this doc to see how to configure the benchmark.)system_outputs
: system output files. Note that the order ofsystem_outputs
files should strictly correspond to the dataset order ofdatasets
inbenchmark_config.json
.- By default, your systems will be private, but if you add the
--public
flag, they will be made public on the public leaderboards and system listing.
Here is one example for the Gaokao
benchmark.
Programmatic Usage
Please see examples in ./tests
.
We will be working on more examples and documentation shortly.
Update
There are two packages associated with this CLI: explainaboard_api_client
and explainaboard_client
explainaboard_api_client
: auto generated according to OpenAPI definition specified in openapi.yaml. Version of this client is specified in the same yaml file (info.version
).- To update:
pip install -U explainaboard_api_client
or specify a specific version - To check the API version used in the live environment:
curl https://explainaboard.inspiredco.ai/api/info
(this information will be added to the UI in the future)
- To update:
explainaboard_client
: a thin wrapper for the API client to make it easy to use. It helps users configure API keys, choose host names, load files from local FS, etc. Usually, this package is relatively stable so you don't need to update unless a new feature of the CLI is released.- To update:
pip install -U explainaboard_client
- To update:
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