python3 -m pip uninstall datahub acryl-datahub || true # sanity check - ok if it fails
python3 -m pip install --upgrade acryl-datahub
datahub version
```
If you see "command not found", try running cli commands with the prefix 'python3 -m' instead: `python3 -m datahub version`
4. To deploy DataHub, run the following CLI command from your terminal
```
datahub docker quickstart
```
Upon completion of this step, you should be able to navigate to the DataHub UI at [http://localhost:9002](http://localhost:9002) in your browser. You can sign in using `datahub` as username and any password (no password validation by default).
5. To ingest the sample metadata, run the following CLI command from your terminal
```
datahub docker ingest-sample-data
```
That's it! To start pushing your company's metadata into DataHub, take a look at the [Metadata Ingestion Framework](../metadata-ingestion/README.md).
## Resetting DataHub
To cleanse DataHub of all of it's state (e.g. before ingesting your own), you can use the CLI `nuke` command.
There can be misc issues with Docker, like conflicting containers and dangling volumes, that can often be resolved by
pruning your Docker state with the following command. Note that this command removes all unused containers, networks, images (both dangling and unreferenced),