Metadata-Version: 2.4
Name: pyfmto
Version: 0.3.2
Summary: A Python library for federated many-task optimization research
Author-email: Xiaoxu Zhang <xxzhang_official@163.com>
Project-URL: Homepage, https://github.com/Xiaoxu-Zhang/pyfmto
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# PyFMTO

```text

                       ____                __         
    ____     __  __   / __/  ____ ___     / /_   ____ 
   / __ \   / / / /  / /_   / __ `__ \   / __/  / __ \
  / /_/ /  / /_/ /  / __/  / / / / / /  / /_   / /_/ /
 / .___/   \__, /  /_/    /_/ /_/ /_/   \__/   \____/ 
/_/       /____/                                      


```

[![build](https://github.com/Xiaoxu-Zhang/pyfmto/workflows/build/badge.svg)](https://github.com/Xiaoxu-Zhang/pyfmto/actions?query=workflow%3Abuild)
[![coverage](https://img.shields.io/codecov/c/github/Xiaoxu-Zhang/pyfmto)](https://codecov.io/gh/Xiaoxu-Zhang/pyfmto)
[![pypi](https://img.shields.io/pypi/v/pyfmto.svg)](https://pypi.org/project/pyfmto/)
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[![pypi-downloads](https://img.shields.io/pepy/dt/pyfmto?label=PyPI%20downloads&color=rgb(0%2C%2079%2C%20144))](https://pypistats.org/packages/pyfmto)

**PyFMTO** is a pure Python library for federated many-task optimization research

<table align="center">
  <tr>
    <td align="center">
      <img src="https://github.com/Xiaoxu-Zhang/zxx-assets/raw/main/pyfmto-demo.gif" width="95%"/><br>
      Run experiments
    </td>
    <td align="center">
      <img src="https://github.com/Xiaoxu-Zhang/zxx-assets/raw/main/pyfmto-iplot.gif" width="95%"/><br>
      Plot tasks
    </td>
  </tr>
</table>

## Usage

PyFMTO's CLI is available in any working directory, just make sure:

1. The Python environment is properly set up and activated
2. The PyFMTO is installed
3. A valid configuration file is provided in the current working directory

For more details, please refer to:

1. [Quick Start](#quick-start)
2. [PyFMTO CLI](#command-line-interface-cli)
3. [About fmto](#about-fmto)


### Quick Start

Create an environment and install PyFMTO:

```bash
conda create -n fmto python=3.10
conda activate fmto
pip install pyfmto
```

Clone the [fmto](https://github.com/Xiaoxu-Zhang/fmto.git) repository ([why?](#about-fmto)):

```bash
git clone https://github.com/Xiaoxu-Zhang/fmto.git
cd fmto
```

Start the experiments:

```bash
pyfmto run
```

Generate reports:

```bash
pyfmto report
```

The reports will be saved in the folder `out/results/<today>`

### Command-line Interface (CLI)

PyFMTO provides a command-line interface (CLI) for running experiments, analyzing results and
get helps. The CLI layers are as follows:

```txt
pyfmto
   ├── -h/--help
   ├── run
   ├── report
   ├── list algorithms/problems/reports
   └── show algorithms.<alg_name>/problems.<prob_name>
```

**Examples:**

- Get help:

    ```bash
    pyfmto -h # or ↓
    # pyfmto --help
    # pyfmto list -h
    ```

- Run experiments:

    ```bash
    pyfmto run # or ↓
    # pyfmto run -c config.yaml
    ```

- Generate reports:

    ```bash
    pyfmto report # or ↓
    # pyfmto report -c config.yaml
    ```

- List something:

    ```bash
    pyfmto list algorithms  # or ↓ 
    # pyfmto list problems
    ```

- Show supported configurations:

    ```bash
    pyfmto show algorithms.<alg_name>  # or ↓  
    # pyfmto show problems.<prob_name>
    ```

> **Notes**:
>
> Every subcommand support `-c/--config <config_file>`
>
> In the subcommands `list` and `show`, strings 'algorithms', 'problems', and 'reports' can be
> replaced with any prefix of length ≥ 1. PyFMTO matches the prefix to the corresponding category.
> For example:
>
> `pyfmto list algorithms` is equivalent to:
>
> - `pyfmto list a`
> - `pyfmto list al`
> - `pyfmto list alg`
> - ...
>
> `pyfmto show problems.<prob_name>` is equivalent to:
>
> - `pyfmto show p.<prob_name>`
> - `pyfmto show prob.<prob_name>`
> - ...

### Use PyFMTO in Python

```python

from pyfmto import Launcher, Reporter, ConfigLoader

if __name__ == '__main__':
    conf = ConfigLoader()
    launcher = Launcher(conf.launcher)
    reports = Reporter(conf.reporter)
    reports.to_excel()
```

## Architecture and Ecosystem

<div align="center">
  <img src="https://github.com/Xiaoxu-Zhang/zxx-assets/raw/main/pyfmto-architecture.svg"
width="90%">
</div>

Where the filled area represents the fully developed modules. And the non-filled area represents
the base modules that can be inherited and extended.

The bottom layer listed the core technologies used in PyFMTO for computing, communicating, plotting
and testing.

## About fmto

The repository [fmto](https://github.com/Xiaoxu-Zhang/fmto) is the official collection of
published FMTO algorithms. The relationship between the `fmto` and `PyFMTO` is as follows:

<p align="center">
    <img src="https://github.com/Xiaoxu-Zhang/zxx-assets/raw/main/fmto-relation.svg"/>
<p>

The `fmto` is designed to provide a platform for researchers to compare and evaluate the
performance of different FMTO algorithms. The repository is built on top of the PyFMTO library,
which provides a flexible and extensible framework for implementing FMTO algorithms.

It also serves as a practical example of how to structure and perform experiments. The repository
includes the following components:

- A collection of published FMTO algorithms.
- A config file (config.yaml) that provides guidance on how to set up and configure the experiments.
- A template algorithm named "DEMO" that you can use as a basis for implementing your own algorithm.
- A template problem named "demo" that you can use as a basis for implementing your own problem.

The `config.yaml`, `algorithms/DEMO` and `problems/demo` provided detailed instructions, you can
even start your research without additional documentation. The fmto repository is currently in
the early stages of development. I'm actively working on improving existing algorithms and adding
new algorithms.

## Algorithm's Components

An algorithm includes two parts: the client and the server. The client is responsible for
optimizing the local problem and the server is responsible for aggregating the knowledge from
the clients. The required components for client and server are as follows:

```python
# myalg_client.py
from pyfmto import Client, Server

class MyClient(Client):
 def __init__(self, problem, **kwargs):
  super().__init__(problem)

 def optimize():
  # implement the optimizer
  pass

class MyServer(Server):
 def __init__(self, **kwargs):
  super().__init__():
 
 def aggregate(self) -> None:
  # implement the aggregate logic
  pass

 def handle_request(self, pkg) -> Any:
  # handle the requests of clients to exchange data
  pass
```

## Problem's Components

There are two types of problems: single-task problems and multitask problems. A single-task
problem is a problem that has only one objective function. A multitask problem is a problem that
has multiple single-task problems. To define a multitask problem, you should implement several
SingleTaskProblem and then define a MultiTaskProblem to aggregate them.

> **Note**: There are some classical SingleTaskProblem defined in `pyfmto.problems.benchmarks`
> module. You can use them directly.

```python
import numpy as np
from numpy import ndarray
from pyfmto.problem import SingleTaskProblem, MultiTaskProblem
from typing import Union


class MySTP(SingleTaskProblem):

    def __init__(self, dim=2, **kwargs):
        super().__init__(dim=dim, obj=1, lb=0, ub=1, **kwargs)

    def _eval_single(self, x: ndarray):
        pass


class MyMTP(MultiTaskProblem):
    is_realworld = False
    intro = "user defined MTP"
    notes = "a demo of user-defined MTP"
    references = ['ref1', 'ref2']

    def __init__(self, dim=10, **kwargs):
        super().__init__(dim, **kwargs)

    def _init_tasks(self, dim, **kwargs) -> list[SingleTaskProblem]:
        # Duplicate MySTP for 10 here as an example
        return [MySTP(dim=dim, **kwargs) for _ in range(10)]
  ```

## Tools

### load_problem

```python
from pyfmto import load_problem

# init a problem with customized args
prob = load_problem('arxiv2017', dim=2, fe_init=20, fe_max=50, npd=5)

# problem instance can be print
print(prob)
```

## Visualization

### SingleTaskProblem Visualization

```python
from pyfmto.problem.benchmarks import Ackley

task = Ackley()
task.plot_2d(f'visualize2D')
task.plot_3d(f'visualize3D')
task.iplot_3d()  # interactive plotting
```

### MultiTaskProblem Visualization

The right side interactive plotting at the beginning is generated by the following code:

```python
from pyfmto import load_problem

if __name__ == '__main__':
    prob = load_problem('arxiv2017', dim=2)
    prob.iplot_tasks_3d(tasks_id=[2, 5, 12, 18])
```

## Contributing

See [contributing](https://github.com/Xiaoxu-Zhang/pyfmto/blob/main/CONTRIBUTING.md) for instructions on how to contribute to PyFMTO.

## Bugs/Requests

Please send bug reports and feature requests through
[github issue tracker](https://github.com/Xiaoxu-Zhang/pyfmto/issues). PyFMTO is
currently under development now, and it's open to any constructive suggestions.

## License

Copyright (c) 2025 Xiaoxu Zhang

Distributed under the terms of the
[Apache 2.0 license](https://github.com/Xiaoxu-Zhang/pyfmto/blob/main/LICENSE).

## Acknowledgements

### Foundations

This project is supported, in part, by the National Natural Science Foundation of China under
Grant 62006143; the Natural Science Foundation of Shandong Province under Grants ZR2025MS1012
and ZR2020MF152. I would like to express our sincere gratitude to **Smart Healthcare and Big Data
Laboratory, Shandong Women's University**, for providing research facilities and technical support.

### Mentorship and Team Support  

I would like to express my sincere gratitude to the **Computational Intelligence and
Applications Group** for their invaluable help, encouragement, and collaboration throughout the
development of this project.  

Special thanks go to my mentor, [Jie Tian](https://github.com/Jetina), whose insightful guidance
and constructive feedback were crucial in refining and improving the work at every stage.

### Open Source Contributions  

This project would not have been possible without the outstanding contributions of the
open-source community. I am deeply grateful to the maintainers and contributors of the following
projects:  

- **[FastAPI](https://fastapi.tiangolo.com)** – A high-performance web framework that made
  building APIs both fast and efficient.  
- **[NumPy](https://numpy.org)** – The fundamental package for scientific computing in Python,
  enabling high-speed numerical operations.  
- **[Pandas](https://pandas.pydata.org)** – Powerful data structures and tools that formed the
  backbone of data analysis in this work.  
- **[Matplotlib](https://matplotlib.org)** and **[Seaborn](https://seaborn.pydata.org)** –
  Essential for producing high-quality, publication-ready visualizations.  
- **[PyVista](https://docs.pyvista.org)** – An intuitive, high-level 3D plotting and mesh
  analysis interface, making scientific visualization seamlessly integrated into PyFMTO.  
- **[Scikit-learn](https://scikit-learn.org)** – An extensive set of machine learning algorithms
  and utilities.  
- **[SciPy](https://scipy.org)** – Fundamental algorithms and mathematical functions critical to
  scientific computing.  

I would also like to acknowledge the maintainers and contributors of other open-source libraries
that supported this work, including:  
`jinja2`, `msgpack`, `openpyxl`, `opfunu`, `pillow`, `pydantic`, `pydantic_core`, `pyDOE`,
`pyyaml`, `requests`, `ruamel-yaml`, `scienceplots`, `setproctitle`, `tabulate`, `tqdm`,
`uvicorn`, and `wrapt`.  

Your dedication to building and maintaining these tools has made it possible for this project to
achieve both depth and breadth that would otherwise have been unattainable.  
