Metadata-Version: 2.1
Name: gto
Version: 0.1.14
Summary: Version and deploy your models following GitOps principles
Home-page: UNKNOWN
Author: Alexander Guschin
Author-email: aguschin@iterative.ai
License: Apache License 2.0
Download-URL: https://github.com/iterative/gto
Keywords: git repo repository artifact registry developer-tools collaboration
Platform: UNKNOWN
Classifier: Development Status :: 2 - Pre-Alpha
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Requires-Python: >=3.6
Description-Content-Type: text/markdown
Provides-Extra: tests
License-File: LICENSE

# GTO

[![Check, test and release](https://github.com/iterative/gto/actions/workflows/check-test-release.yml/badge.svg)](https://github.com/iterative/gto/actions/workflows/check-test-release.yml)
[![Codecov](https://codecov.io/gh/iterative/gto/branch/main/graph/badge.svg?token=NXT11717BG)](https://codecov.io/gh/iterative/gto)
[![PyPi](https://img.shields.io/pypi/v/gto.svg?label=pip&logo=PyPI&logoColor=white)](https://pypi.org/project/gto)

Git Tag Ops. Turn your Git repository into an Artifact Registry:

- Registry: Track new artifacts and their versions for releases and significant
  changes.
- Lifecycle Management: Promote or roll back versions among a structured set of
  stages.
- GitOps: Signal CI/CD automation or other downstream systems to act upon these
  lifecycle updates.
- Enrichments: Annotate and query artifact metadata with additional information.

GTO works by creating annotated Git tags in a standard format.

## Installation

> GTO requires Python 3. It works on any OS.

```console
$ python -m pip install gto
```

[This package](https://pypi.org/project/gto/) will install the `gto`
command-line interface (CLI) and make the Python API available for use in code.

There's no need to set up any services or databases :)

## Getting started

> Note: We will cover CLI usage, but every command has a corresponding Python
> API counterpart in the [`gto.api`](/iterative/gto/blob/main/gto/api.py)
> module.

In this document we'll use this example repo:
https://github.com/iterative/example-gto. Let's clone it first:

```console
$ git clone https://github.com/iterative/example-gto.git
$ cd example-gto
```

### Versioning

To register a new artifact or a new version, use `gto register`. This is usually
done to mark significant changes to the artifact (such as a release or a
deprecation).

```console
$ gto register awesome-model
Created git tag 'awesome-model@v0.0.1' that registers a new version
```

<details summary="What happens under the hood?">

GTO creates a special Git tag for the artifact version, in a standard format:
`{artifact_name}@{version_number}`.

The version is now associated to the current Git commit (`HEAD`). You can have
several versions in a given commit, ordered by their automatic version numbers.

</details>

### Promoting

Promote a specific artifact version to a lifecycle stage with `gto promote`.
Stages can be seen as the status of your artifact, signaling readiness for usage
by downstream systems, e.g. via CI/CD or web hooks. For example: redeploy an ML
model.

```console
$ gto promote awesome-model prod
Created git tag 'awesome-model#prod#1' that promotes 'v0.0.1'
```

<details summary="What happens under the hood?">

GTO creates a special Git tag for the artifact promotion, in a standard format:
`{artifact_name}#{stage}#{e}`.

The event is now associated to the latest version of the artifact. There can be
multiple events for a given version, ordered by an automatic incremental event
number (`{e}`). This will keep the history of your promotions.

Note: if you prefer, you can use simple promotion tag format without the
incremental `{e}`, but this will disable the `gto history` command. This is
because promoting an artifact where a promotion tag already existed will require
deleting the existing tag.

</details>

### Annotating

So far we've seen how to register and promote artifact versions, but we still
don't have much information about them. What about the type of artifact
(dataset, model, etc.) or the file path to find it in the working tree?

For simple projects (e.g. single artifact) we can assume the details in a
downstream system. But for more advanced cases, we should codify them in the
registry itself.

To annotate an artifact, use `gto annotate`. GTO writes to an `artifacts.yaml`
file to save this metadata. Feel free to modify the file directly!

```console
$ gto annotate awesome-model --type model --path s3://awesome/model.pkl
```

```yaml
# artifacts.yaml
awesome-model:
  type: model
  path: "s3://awesome/model.pkl"
```

> Don't forget to commit `artifacts.yaml` with Git to associate it with the
> latest artifact version and stage in any copy of the repo.

By default GTO saves artifact as `virtual`. Use the `--must_exist` flag to tell
GTO the artifact file is committed to Git.

<details summary="Virtual vs. Physical artifacts">

- Physical files/directories are committed to the repo. When you register a new
  version or promote it, Git guarantees that it's immutable -- you can return a
  year later and get the same artifact by providing a version.

- Virtual artifacts could be an external path (e.g. `s3://mybucket/myfile`) or a
  local path to a metafile representing an externally stored artifact file (as
  [with DVC](https://dvc.org/doc/start/data-management)). In this case, GTO
  can't pin versions to a physical state of the artifact and guarantee it's
  immutability later, e.g. if `s3://mybucket/myfile` changes the registry won't
  know it, nor have a way to recover the original file.

> In future versions, we will support additional enrichments: useful information
> that other tools like [DVC](https://dvc.org/) and [MLEM](https://mlem.ai/) can
> provide about the artifacts. This will allow treating DVC repo outputs as
> usual artifacts instead of `virtual` ones.

</details>

## Using the registry locally

Let's look at the usage of the `gto show` and `gto history`.

### Show the current state

This is the entire state of the registry: all artifacts, their latest versions,
and what is promoted to stages right now.

```console
$ gto show
╒═══════════════╤══════════╤════════╤═════════╤════════════╕
│ name          │ latest   │ #dev   │ #prod   │ #staging   │
╞═══════════════╪══════════╪════════╪═════════╪════════════╡
│ churn         │ v3.1.0   │ -      │ v3.0.0  │ v3.1.0     │
│ segment       │ v0.4.1   │ v0.4.1 │ -       │ -          │
│ cv-class      │ v0.1.13  │ -      │ -       │ -          │
│ awesome-model │ v0.0.1   │ -      │ v0.0.1  │ -          │
╘═══════════════╧══════════╧════════╧═════════╧════════════╛
```

Here we'll see both artifacts that have Git tags only and those annotated in
`artifacts.yaml`. Use `--all-branches` or `--all-commits` to read
`artifacts.yaml` from more commits than just `HEAD`.

Add an artifact name to print all og its versions instead:

```console
$ gto show churn
╒════════════╤═══════════╤═════════╤═════════════════════╤═══════════════════╤══════════════╕
│ artifact   │ version   │ stage   │ created_at          │ author            │ ref          │
╞════════════╪═══════════╪═════════╪═════════════════════╪═══════════════════╪══════════════╡
│ churn      │ v3.0.0    │ prod    │ 2022-04-08 23:46:58 │ Alexander Guschin │ churn@v3.0.0 │
│ churn      │ v3.1.0    │ staging │ 2022-04-13 14:53:38 │ Alexander Guschin │ churn@v3.1.0 │
╘════════════╧═══════════╧═════════╧═════════════════════╧═══════════════════╧══════════════╛
```

### See the history of an artifact

`gto history` will print a journal of the events that happened to an artifact.
This allows you to audit the changes.

```console
$ gto history churn
╒═════════════════════╤════════════╤══════════════╤═══════════╤═════════╤══════════╤═══════════════════╕
│ timestamp           │ artifact   │ event        │ version   │ stage   │ commit   │ author            │
╞═════════════════════╪════════════╪══════════════╪═══════════╪═════════╪══════════╪═══════════════════╡
│ 2022-04-07 20:00:18 │ churn      │ commit       │ -         │ -       │ 54d6d39  │ Alexander Guschin │
│ 2022-04-08 23:46:58 │ churn      │ registration │ v3.0.0    │ -       │ 54d6d39  │ Alexander Guschin │
│ 2022-04-12 11:06:58 │ churn      │ commit       │ -         │ -       │ 26cafe9  │ Alexander Guschin │
│ 2022-04-13 14:53:38 │ churn      │ registration │ v3.1.0    │ -       │ 26cafe9  │ Alexander Guschin │
│ 2022-04-14 18:40:18 │ churn      │ promotion    │ v3.1.0    │ staging │ 26cafe9  │ Alexander Guschin │
│ 2022-04-15 22:26:58 │ churn      │ promotion    │ v3.0.0    │ prod    │ 54d6d39  │ Alexander Guschin │
╘═════════════════════╧════════════╧══════════════╧═══════════╧═════════╧══════════╧═══════════════════╛
```

## Consuming the registry downstream

Let's look at integrating with GTO via Git as well as using the `gto check-ref`,
`gto latest`, `gto which`, and `gto describe` utility commands downstream.

### Act on new versions and promotions in CI

To act upon annotations (Git tags), you can create simple CI workflow. With
[GitHub Actions](https://github.com/features/actions) for example, it can look
like this:

```yaml
name: Act on versions or promotions of the "churn" actifact
on:
  push:
    tags:
      - "churn*"
```

When CI is triggered, you can use the Git reference to determine the version of
the artifact. In GH Actions, you can use the `GITHUB_REF` environment variable
(check out our
[example workflow](/gto/blob/main/.github/workflows/check-test-release.yml)).
You can parse tags manually or use `gto check-ref`:

```console
$ gto check-ref awesome-model@v0.0.1
{
    "version": {
        "awesome-model": {
            "artifact": "awesome-model",
            "name": "v0.0.1",
            "created_at": "2022-04-21T17:39:14",
            "author": "Alexander Guschin",
            "commit_hexsha": "26cafe958dca65d726b3c9023fbae71ed259b566",
            "discovered": false,
            "tag": "awesome-model@v0.0.1",
        }
    },
    "stage": {}
}
```

### Getting the right version

To get the latest artifact version, its path, and Git reference, use
`gto latest`:

```console
$ gto latest churn
v3.1.0

$ gto latest churn --ref
churn@v3.1.0
```

To get the version that is currently promoted to an environment (stage), use
`gto which`:

```console
$ gto which churn prod
v3.0.0

$ gto which churn prod --ref
churn#prod#2
```

To get details about an artifact (from `artifacts.yaml`) use `gto describe`:

```console
$ gto describe churn
```

```yaml
{
    "type": "model",
    "path": "models/churn.pkl",
    "virtual": false
}
```

> The output is in JSON format for ease of parsing programatically.

## Configuration

To configure GTO, use file `.gto` in the root of your repo or use environment
variables (note the `GTO_` prefix):

```ini
# .gto config file
types: [model, dataset]  # list of allowed Types
stages: [dev, stage, prod]  # list of allowed Stages
```

When allowed Stages or Types are specified, GTO will check commands you run and
error out if you provided a value that doesn't exist in the config. Note, that
GTO applies the config from the workspace, so if want to apply the config from
`main` branch, you need to check out it first with `git checkout main`.

```console
$ GTO_EMOJIS=false gto show
```

## Setup GTO development environment

### 1. Clone this repository

```console
$ git clone git@github.com:iterative/gto.git
$ cd gto
```

### 2. Create virtual environment named `venv`

```console
$ python3 -m venv venv
$ source venv/bin/activate
```

Install python libraries

```console
$ pip install --upgrade pip setuptools wheel ".[tests]"
```

### 3. Run

```console
$ pytest --basetemp=pytest-cache
```

This will create `pytest-cache/` directory with some fixtures that can serve as
examples.

Notably, check out this dir:

```console
$ cd pytest-cache/test_api0/
$ gto show -v
```

The code that generates this folder could be found
[in this fixture](https://github.com/iterative/gto/blob/main/tests/conftest.py#L58).

To continue experimenting, call `gto --help`


