Curated SQL Views and Metrics for the Terra Blockchain.
What's Terra? Learn more here
- Complete the steps in the Data Curator Onboarding Guide.
- Note that the Data Curator Onboarding Guide assumes that you will ask to be added as a contributor to a MetricsDAO project. Ex: https://github.com/MetricsDAO/terra_dbt.
- However, if you have not yet been added as a contributor, or you'd like to take an even lower-risk approach, you can always follow the Fork and Pull Workflow by forking a copy of the project to which you'd like to contribute to a local copy of the project in your github account. Just make sure to:
- Fork the MetricsDAO repository.
- Git clone from your forked repository. Ex:
git clone https://github.com/YourAccount/terra_dbt
. - Create a branch for the changes you'd like to make. Ex:
git branch readme-update
. - Switch to the branch. Ex:
git checkout readme-update
. - Make your changes on the branch and follow the rest of the steps in the Fork and Pull Workflow to notify the MetricsDAO repository owners to review your changes.
- Download Docker for Desktop.
- (Optional) You can run the Docker tutorial.
- Install VSCode.
- For Windows users, you'll need to install WSL and connect VSCode to WSL by
- Right clicking VSCode and running VSCode as admin.
- Installing WSL by typing
wsl --install
in VScode's terminal. - Following the rest of the VSCode WSL instruction to create a new WSL user.
- Installing the Remote Development extension (ms-vscode-remote.vscode-remote-extensionpack) in VSCode.
- Finally, restarting VSCode in a directory in which you'd like to work. For example,
cd ~/metricsDAO/data_curation/terra_dbt
code .
-
Create a
.env
file with the following content in the terra_dbt directory (ex: terra_dbt/.env). Note that.env
will not be committed to source.SF_ACCOUNT=zsniary-metricsdao SF_USERNAME=<your_metrics_dao_snowflake_username> SF_PASSWORD=<your_metrics_dao_snowflake_password> SF_REGION=us-east-1 SF_DATABASE=TERRA_DEV SF_WAREHOUSE=DEFAULT SF_ROLE=PUBLIC SF_SCHEMA=SILVER
Replace the SF_USERNAME and SF_PASSWORD with the temporary Snowflake user name and password you received in the Snowflake step of the Data Curator Onboarding Guide.
-
New to DBT? It's pretty dope. Read up on it here. Be sure to follow the Getting Started with dbt Cloud Guide and the companion MetricDAO Data Curator Onboarding Using dbt Cloud video to learn the basic concepts. More videos will follow over Q4 2022 on dbt best practices and dbt Core configuration.
Run the following commands from inside the Terra directory (you must have completed the Setup steps above^^)
- In VSCode's terminal, type
cd terra_dbt
. - Then run
make dbt-console
. This will mount your local Terra directory into a dbt console where dbt is installed.- You can verify that the above command ran successfully by looking at the terminal prompt. It should have changed from your Linux bash prompt to something like root@3527b594aaf0:/terra#. Alternatively, you can see in the Docker Desktop app that an instance of terra_dbt is now running.
- In VSCode, open another terminal.
- In this new terminal, run
make dbt-docs
. This will compile your dbt documentation and launch a web-server at http://localhost:8080
/models
- this directory contains SQL files as Jinja templates. DBT will compile these templates and wrap them into create table statements. This means all you have to do is define SQL select statements, while DBT handles the rest. The snowflake table name will match the name of the sql model file.
/macros
- these are helper functions defined as Jinja that can be injected into your SQL models.
/tests
- custom SQL tests that can be attached to tables.
CHAINWALKERS.PROD.TERRA_BLOCKS
- Terra blocks
CHAINWALKERS.PROD.TERRA_TXS
- Terra txs
Blocks and transactions are fed into the above two Terra tables utilizing the Chainwalkers Framework. Details on the data:
- This is near-real time. Blocks land in this table within 3-5 minutes of being minted.
- The table is a read-only data share in the Metrics DAO Snowflake account under the database
FLIPSIDE
. - The table is append-only, meaning that duplicates can exist if blocks are re-processed. The injested_at timestamp should be used to retrieve only the most recent block. Macros exist
macros/dedupe_utils.sql
to handle this. Seemodels/core/blocks.sql
or/models/core/txs.sql
for an example. - Tx logs are decoded where an ABI exists.
CHAINWALKERS.PROD.TERRA_BLOCKS
- Terra Blocks
Column | Type | Description |
---|---|---|
record_id | VARCHAR | A unique id for the record generated by Chainwalkers |
offset_id | NUMBER(38,0) | Synonmous with block_id for Terra |
block_id | NUMBER(38,0) | The height of the chain this block corresponds with |
block_timestamp | TIMESTAMP | The time the block was minted |
network | VARCHAR | The blockchain network (i.e. mainnet, testnet, etc.) |
chain_id | VARCHAR | Synonmous with blockchain name for Terra |
tx_count | NUMBER(38,0) | The number of transactions in the block |
header | json variant | A json queryable column containing the blocks header information |
ingested_at | TIMESTAMP | The time this data was ingested into the table by Snowflake |
CHAINWALKERS.PROD.TERRA_TXS
- Terra Transactions
Column | Type | Description |
---|---|---|
record_id | VARCHAR | A unique id for the record generated by Chainwalkers |
tx_id | VARCHAR | A unique on chain identifier for the transaction |
tx_block_index | NUMBER(38,0) | The index of the transaction within the block. Starts at 0. |
offset_id | NUMBER(38,0) | Synonmous with block_id for Terra |
block_id | NUMBER(38,0) | The height of the chain this block corresponds with |
block_timestamp | TIMESTAMP | The time the block was minted |
network | VARCHAR | The blockchain network (i.e. mainnet, testnet, etc.) |
chain_id | VARCHAR | Synonmous with blockchain name for Terra |
tx_count | NUMBER(38,0) | The number of transactions in the block |
header | json variant | A json queryable column containing the blocks header information |
tx | array | An array of json queryable objects containing each tx and decoded logs |
ingested_at | TIMESTAMP | The time this data was ingested into the table by Snowflake |
Data in this DBT project is written to the TERRA
database in MetricsDAO.
This database has 2 schemas, one for DEV
and one for PROD
. As a contributer you have full permission to write to the DEV
schema. However the PROD
schema can only be written to by Metric DAO's DBT Cloud account. The DBT Cloud account controls running / scheduling models against the PROD
schema.
When conducting work please branch off of main with a description branch name and generate a pull request. At least one other individual must review the PR before it can be merged into main. Once merged into main DBT Cloud will run the new models and output the results into the PROD
schema.
When creating a PR please include the following details in the PR description:
- List of Tables Created or Modified
- Description of changes.
- Implication of changes (if any).
- Learn more about dbt in the docs
- Check out Discourse for commonly asked questions and answers
- Check out the blog for the latest news on dbt's development and best practices