hyperopt

hyperopt

Python库Hyperopt助力机器学习超参数优化

Hyperopt是一个强大的Python库,专门用于复杂搜索空间中的超参数优化。它支持实值、离散和条件维度,提供随机搜索、TPE等多种算法。通过Apache Spark和MongoDB实现并行化,Hyperopt能够显著提高机器学习模型的调优效率。作为开源项目,它为机器学习领域提供了高效的超参数优化解决方案,正在被广泛应用于加速模型开发和性能优化。

Hyperopt超参数优化Python库机器学习分布式计算Github开源项目

Hyperopt: Distributed Hyperparameter Optimization

<p align="center"> <img src="https://i.postimg.cc/TPmffWrp/hyperopt-new.png" /> </p>

build pre-commit.ci status PyPI version Anaconda-Server Badge

Hyperopt is a Python library for serial and parallel optimization over awkward search spaces, which may include real-valued, discrete, and conditional dimensions.

Getting started

Install hyperopt from PyPI

pip install hyperopt

to run your first example

# define an objective function def objective(args): case, val = args if case == 'case 1': return val else: return val ** 2 # define a search space from hyperopt import hp space = hp.choice('a', [ ('case 1', 1 + hp.lognormal('c1', 0, 1)), ('case 2', hp.uniform('c2', -10, 10)) ]) # minimize the objective over the space from hyperopt import fmin, tpe, space_eval best = fmin(objective, space, algo=tpe.suggest, max_evals=100) print(best) # -> {'a': 1, 'c2': 0.01420615366247227} print(space_eval(space, best)) # -> ('case 2', 0.01420615366247227}

Contributing

If you're a developer and wish to contribute, please follow these steps.

Setup (based on this)

  1. Create an account on GitHub if you do not already have one.

  2. Fork the project repository: click on the ‘Fork’ button near the top of the page. This creates a copy of the code under your account on the GitHub user account. For more details on how to fork a repository see this guide.

  3. Clone your fork of the hyperopt repo from your GitHub account to your local disk:

    git clone https://github.com/<github username>/hyperopt.git cd hyperopt
  4. Create environment with:
    $ python3 -m venv my_env or $ python -m venv my_env or with conda:
    $ conda create -n my_env python=3

  5. Activate the environment:
    $ source my_env/bin/activate
    or with conda:
    $ conda activate my_env

  6. Install dependencies for extras (you'll need these to run pytest): Linux/UNIX: $ pip install -e '.[MongoTrials, SparkTrials, ATPE, dev]'

    or Windows:

    pip install -e .[MongoTrials] pip install -e .[SparkTrials] pip install -e .[ATPE] pip install -e .[dev]
  7. Add the upstream remote. This saves a reference to the main hyperopt repository, which you can use to keep your repository synchronized with the latest changes:

    $ git remote add upstream https://github.com/hyperopt/hyperopt.git

    You should now have a working installation of hyperopt, and your git repository properly configured. The next steps now describe the process of modifying code and submitting a PR:

  8. Synchronize your master branch with the upstream master branch:

    git checkout master git pull upstream master
  9. Create a feature branch to hold your development changes:

    $ git checkout -b my_feature

    and start making changes. Always use a feature branch. It’s good practice to never work on the master branch!

  10. We recommend to use Black to format your code before submitting a PR which is installed automatically in step 6.

  11. Then, once you commit ensure that git hooks are activated (Pycharm for example has the option to omit them). This can be done using pre-commit, which is installed automatically in step 6, as follows:

    pre-commit install

    This will run black automatically when you commit on all files you modified, failing if there are any files requiring to be blacked. In case black does not run execute the following:

    black {source_file_or_directory}
  12. Develop the feature on your feature branch on your computer, using Git to do the version control. When you’re done editing, add changed files using git add and then git commit:

    git add modified_files git commit -m "my first hyperopt commit"
  13. The tests for this project use PyTest and can be run by calling pytest.

  14. Record your changes in Git, then push the changes to your GitHub account with:

    git push -u origin my_feature

Note that dev dependencies require python 3.6+.

Algorithms

Currently three algorithms are implemented in hyperopt:

Hyperopt has been designed to accommodate Bayesian optimization algorithms based on Gaussian processes and regression trees, but these are not currently implemented.

All algorithms can be parallelized in two ways, using:

Documentation

Hyperopt documentation can be found here, but is partly still hosted on the wiki. Here are some quick links to the most relevant pages:

Related Projects

Examples

See projects using hyperopt on the wiki.

Announcements mailing list

Announcements

Discussion mailing list

Discussion

Cite

If you use this software for research, please cite the paper (http://proceedings.mlr.press/v28/bergstra13.pdf) as follows:

Bergstra, J., Yamins, D., Cox, D. D. (2013) Making a Science of Model Search: Hyperparameter Optimization in Hundreds of Dimensions for Vision Architectures. TProc. of the 30th International Conference on Machine Learning (ICML 2013), June 2013, pp. I-115 to I-23.

Thanks

This project has received support from

  • National Science Foundation (IIS-0963668),
  • Banting Postdoctoral Fellowship program,
  • National Science and Engineering Research Council of Canada (NSERC),
  • D-Wave Systems, Inc.

编辑推荐精选

Keevx

Keevx

AI数字人视频创作平台

Keevx 一款开箱即用的AI数字人视频创作平台,广泛适用于电商广告、企业培训与社媒宣传,让全球企业与个人创作者无需拍摄剪辑,就能快速生成多语言、高质量的专业视频。

即梦AI

即梦AI

一站式AI创作平台

提供 AI 驱动的图片、视频生成及数字人等功能,助力创意创作

扣子-AI办公

扣子-AI办公

AI办公助手,复杂任务高效处理

AI办公助手,复杂任务高效处理。办公效率低?扣子空间AI助手支持播客生成、PPT制作、网页开发及报告写作,覆盖科研、商业、舆情等领域的专家Agent 7x24小时响应,生活工作无缝切换,提升50%效率!

TRAE编程

TRAE编程

AI辅助编程,代码自动修复

Trae是一种自适应的集成开发环境(IDE),通过自动化和多元协作改变开发流程。利用Trae,团队能够更快速、精确地编写和部署代码,从而提高编程效率和项目交付速度。Trae具备上下文感知和代码自动完成功能,是提升开发效率的理想工具。

AI工具TraeAI IDE协作生产力转型热门
蛙蛙写作

蛙蛙写作

AI小说写作助手,一站式润色、改写、扩写

蛙蛙写作—国内先进的AI写作平台,涵盖小说、学术、社交媒体等多场景。提供续写、改写、润色等功能,助力创作者高效优化写作流程。界面简洁,功能全面,适合各类写作者提升内容品质和工作效率。

AI辅助写作AI工具蛙蛙写作AI写作工具学术助手办公助手营销助手AI助手
问小白

问小白

全能AI智能助手,随时解答生活与工作的多样问题

问小白,由元石科技研发的AI智能助手,快速准确地解答各种生活和工作问题,包括但不限于搜索、规划和社交互动,帮助用户在日常生活中提高效率,轻松管理个人事务。

热门AI助手AI对话AI工具聊天机器人
Transly

Transly

实时语音翻译/同声传译工具

Transly是一个多场景的AI大语言模型驱动的同声传译、专业翻译助手,它拥有超精准的音频识别翻译能力,几乎零延迟的使用体验和支持多国语言可以让你带它走遍全球,无论你是留学生、商务人士、韩剧美剧爱好者,还是出国游玩、多国会议、跨国追星等等,都可以满足你所有需要同传的场景需求,线上线下通用,扫除语言障碍,让全世界的语言交流不再有国界。

讯飞智文

讯飞智文

一键生成PPT和Word,让学习生活更轻松

讯飞智文是一个利用 AI 技术的项目,能够帮助用户生成 PPT 以及各类文档。无论是商业领域的市场分析报告、年度目标制定,还是学生群体的职业生涯规划、实习避坑指南,亦或是活动策划、旅游攻略等内容,它都能提供支持,帮助用户精准表达,轻松呈现各种信息。

AI办公办公工具AI工具讯飞智文AI在线生成PPTAI撰写助手多语种文档生成AI自动配图热门
讯飞星火

讯飞星火

深度推理能力全新升级,全面对标OpenAI o1

科大讯飞的星火大模型,支持语言理解、知识问答和文本创作等多功能,适用于多种文件和业务场景,提升办公和日常生活的效率。讯飞星火是一个提供丰富智能服务的平台,涵盖科技资讯、图像创作、写作辅助、编程解答、科研文献解读等功能,能为不同需求的用户提供便捷高效的帮助,助力用户轻松获取信息、解决问题,满足多样化使用场景。

热门AI开发模型训练AI工具讯飞星火大模型智能问答内容创作多语种支持智慧生活
Spark-TTS

Spark-TTS

一种基于大语言模型的高效单流解耦语音令牌文本到语音合成模型

Spark-TTS 是一个基于 PyTorch 的开源文本到语音合成项目,由多个知名机构联合参与。该项目提供了高效的 LLM(大语言模型)驱动的语音合成方案,支持语音克隆和语音创建功能,可通过命令行界面(CLI)和 Web UI 两种方式使用。用户可以根据需求调整语音的性别、音高、速度等参数,生成高质量的语音。该项目适用于多种场景,如有声读物制作、智能语音助手开发等。

下拉加载更多