| @@ -34,7 +34,7 @@ | |||||
| # Introduction | # Introduction | ||||
| The _learnware_ paradigm, proposed by Professor Zhi-Hua Zhou in 2016 [1, 2], aims to build a vast model platform system, i.e., a _learnware dock system_, which systematically accommodates and organizes models shared by machine learning developers worldwide, and can efficiently identify and assemble existing helpful model(s) to solve future tasks in a unified way. | |||||
| The _learnware_ paradigm was proposed by Professor Zhi-Hua Zhou in 2016 [1, 2]. In this paradigm, developers worldwide can share models with the _learnware dock system_, which effectively searches for and reuse learnware(s) to help users solve machine learning tasks efficiently without starting from scratch. | |||||
| The `learnware` package provides a fundamental implementation of the central concepts and procedures within the learnware paradigm. Its well-structured design ensures high scalability and facilitates the seamless integration of additional features and techniques in the future. | The `learnware` package provides a fundamental implementation of the central concepts and procedures within the learnware paradigm. Its well-structured design ensures high scalability and facilitates the seamless integration of additional features and techniques in the future. | ||||
| @@ -34,7 +34,7 @@ | |||||
| # 简介 | # 简介 | ||||
| 学件范式由周志华教授在2016年提出 [1, 2],旨在构建一个巨大的模型平台系统:即学件基座系统,系统地组织管理世界各地的机器学习开发者分享的模型,并通过统一的方式识别、利用已有模型的能力快速解决新的机器学习任务。 | |||||
| 学件范式由周志华教授在2016年提出 [1, 2]。在学件范式下,世界各地的开发者可分享模型至学件基座系统,系统通过有效查搜和复用学件帮助用户高效解决机器学习任务,而无需从零开始构建机器学习模型。 | |||||
| 本项目开发的 `learnware` 包对学件范式中的核心组件和算法进行了实现,全流程地支持学件上传、检测、组织、查搜、部署和复用等功能。基于良好的结构设计,`learnware` 包具有高度可扩展性,为后续相关算法和功能的开发打下坚实基础。 | 本项目开发的 `learnware` 包对学件范式中的核心组件和算法进行了实现,全流程地支持学件上传、检测、组织、查搜、部署和复用等功能。基于良好的结构设计,`learnware` 包具有高度可扩展性,为后续相关算法和功能的开发打下坚实基础。 | ||||
| @@ -3,7 +3,7 @@ | |||||
| Introduction | Introduction | ||||
| ================ | ================ | ||||
| The *learnware* paradigm, proposed by Professor Zhi-Hua Zhou in 2016 [1, 2], aims to build a vast model platform system, i.e., a *learnware dock system*, which systematically accommodates and organizes models shared by machine learning developers worldwide, and can efficiently identify and assemble existing helpful model(s) to solve future tasks in a unified way. | |||||
| The *learnware* paradigm was proposed by Professor Zhi-Hua Zhou in 2016 [1, 2]. In this paradigm, developers worldwide can share models with the *learnware dock system*, which effectively searches for and reuse learnware(s) to help users solve machine learning tasks efficiently without starting from scratch. | |||||
| The ``learnware`` package provides a fundamental implementation of the central concepts and procedures within the learnware paradigm. Its well-structured design ensures high scalability and facilitates the seamless integration of additional features and techniques in the future. | The ``learnware`` package provides a fundamental implementation of the central concepts and procedures within the learnware paradigm. Its well-structured design ensures high scalability and facilitates the seamless integration of additional features and techniques in the future. | ||||