Metadata-Version: 2.1
Name: optscale_arcee
Version: 0.1.35
Summary: ML profiling tool for OptScale
Home-page: https://my.optscale.com/
Author: Hystax
License: "Apache License 2.0"
Project-URL: Source, https://github.com/hystax/optscale_arcee_dev
Keywords: arcee,ml,optscale,finops,mlops
Requires-Python: <4,>=3.7
Description-Content-Type: text/markdown
License-File: LICENSE

# Arcee
## *The OptScale ML profiling tool by Hystax*

Arcee is a tool that hepls you to integrate ML tasks with [OptScale](https://my.optscale.com/).
This tool can automatically collect executor metadata from cloud and process stats.

## Installation
Arcee requires python 3.7+ to run.
```sh
pip install optscale-arcee
```

## Usage
First of all you need to import and init arcee in your code:
```sh
import optscale_arcee as arcee
```

```sh
# init arcee using context manager syntax
with arcee.init('token', 'model_key'):
    # some code
```

To use custom endpoint and enable\disable ssl checks (supports using self-signed ssl certificates):
```sh
with arcee.init('token', 'model_key', endpoint_url='https://my.custom.endpoint:443/arcee/v2', ssl=False):
    # some code
```

Alternatively arcee can be initialized via function call. However manual finish is required:
```sh
arcee.init('token', 'model_key')
# some code
arcee.finish()
```

Or in error case:
```sh
arcee.init('token', 'model_key')
# some code
arcee.error()
```

To send stats:
```sh
arcee.send({"loss": 2.0012, "iter": 2, "epoch": 1})
```
(key should be string, value - int or float, multiple values can be sent)

To add tags to model run (key, value):
```sh
arcee.tag("project", "torchvision demo")
```

To add milestones:
```sh
arcee.milestone("Download test data")
```

To add stages:
```sh
arcee.stage("calculation")
```
