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Merge pull request #104 from PCWCFA/readme-update
Updates the README to include the Data Curator Onboarding Guide, the …
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README.md
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README.md
@ -5,36 +5,64 @@ Curated SQL Views and Metrics for the Near Blockchain.
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What's Near? Learn more [here](https://near.org/)
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## Setup
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### Prerequisites
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1. [PREREQUISITE] Download [Docker for Desktop](https://www.docker.com/products/docker-desktop).
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2. Create a `.env` file with the following contents (note `.env` will not be commited to source):
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1. Complete the steps in the [Data Curator Onboarding Guide](https://docs.metricsdao.xyz/data-curation/data-curator-onboarding).
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* 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/near_dbt.
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* 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](https://reflectoring.io/github-fork-and-pull/) 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:
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- Fork the MetricsDAO repository.
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- Git clone from your forked repository. Ex: `git clone https://github.com/YourAccount/near_dbt`.
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- Create a branch for the changes you'd like to make. Ex: `git branch readme-update`.
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- Switch to the branch. Ex: `git checkout readme-update`.
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- Make your changes on the branch and follow the rest of the steps in the [Fork and Pull Workflow](https://reflectoring.io/github-fork-and-pull/) to notify the MetricsDAO repository owners to review your changes.
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2. Download [Docker for Desktop](https://www.docker.com/products/docker-desktop).
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* (Optional) You can run the Docker tutorial.
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3. Install [VSCode](https://code.visualstudio.com/).
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```
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SF_ACCOUNT=zsniary-metricsdao
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SF_USERNAME=<your_metrics_dao_snowflake_username>
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SF_PASSWORD=<your_metrics_dao_snowflake_password>
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SF_REGION=us-east-1
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SF_DATABASE=NEAR_DEV
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SF_WAREHOUSE=DEFAULT
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SF_ROLE=PUBLIC
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SF_SCHEMA=SILVER
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```
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### Prerequisites: Additional Windows Subsystem for Linux (WSL) Setup
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3. New to DBT? It's pretty dope. Read up on it [here](https://www.getdbt.com/docs/)
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4. For Windows users, you'll need to install WSL and connect VSCode to WSL by
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* Right clicking VSCode and running VSCode as admin.
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* Installing [WSL](https://docs.microsoft.com/en-us/windows/wsl/install) by typing `wsl --install` in VScode's terminal.
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* Following the rest of the [VSCode WSL instruction](https://code.visualstudio.com/docs/remote/wsl) to create a new WSL user.
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* Installing the Remote Development extension (ms-vscode-remote.vscode-remote-extensionpack) in VSCode.
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* Finally, restarting VSCode in a directory in which you'd like to work. For example,
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- `cd ~/metricsDAO/data_curation/near_dbt`
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- `code .`
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### Create the Environment Variables
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1. Create a `.env` file with the following contents (note `.env` will not be committed to source) in the near_dbt directory (ex: near_dbt/.env):
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```
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SF_ACCOUNT=zsniary-metricsdao
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SF_USERNAME=<your_metrics_dao_snowflake_username>
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SF_PASSWORD=<your_metrics_dao_snowflake_password>
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SF_REGION=us-east-1
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SF_DATABASE=NEAR_DEV
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SF_WAREHOUSE=DEFAULT
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SF_ROLE=PUBLIC
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SF_SCHEMA=SILVER
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```
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**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](https://docs.metricsdao.xyz/data-curation/data-curator-onboarding).
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2. New to DBT? It's pretty dope. Read up on it [here](https://www.getdbt.com/docs/)
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## Getting Started Commands
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Run the follow commands from inside the Near directory (**you must complete the Getting Started steps above^^**)
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Run the following commands from inside the Near directory (**you must have completed the Setup steps above^^**)
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### DBT Environment
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`make dbt-console`
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This will mount your local near directory into a dbt console where dbt is installed.
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1. In VSCode's terminal, type `cd near_dbt`.
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2. Then run `make dbt-console`. This will mount your local near directory into a dbt console where dbt is installed.
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- 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:/near#. Alternatively, you can see in the Docker Desktop app that an instance of near_dbt is now running.
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### DBT Project Docs
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`make dbt-docs`
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This will compile your dbt documentation and launch a web-server at http://localhost:8080
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1. In VSCode, open another terminal.
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2. In this new terminal, run `make dbt-docs`. This will compile your dbt documentation and launch a web-server at http://localhost:8080
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Documentation is automatically generated and hosted using Netlify.
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[](https://app.netlify.com/sites/mdao-near/deploys)
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