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| Introduction | Introduction | ||||
| ================ | ================ | ||||
| The ``learnware`` package provides a fundamental implementation of the central concepts and procedures for the learnware paradigm, which is a new paradigm aimed at enabling users to reuse existed well-trained models to solve their AI tasks instead of starting from scratch. | |||||
| 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. | |||||
| Moreover, the package's well-structured design ensures high scalability and allows for the effortless integration of various new 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. | |||||
| In addition, the ``learnware`` package serves as the engine for the `Beimingwu System <https://bmwu.cloud/#/>`_ and can be effectively employed for conducting experiments related to learnware. | In addition, the ``learnware`` package serves as the engine for the `Beimingwu System <https://bmwu.cloud/#/>`_ and can be effectively employed for conducting experiments related to learnware. | ||||
| | [1] Zhi-Hua Zhou. Learnware: on the future of machine learning. *Frontiers of Computer Science*, 2016, 10(4): 589–590 | |||||
| | [2] Zhi-Hua Zhou. Machine Learning: Development and Future. *Communications of CCF*, 2017, vol.13, no.1 (2016 CNCC keynote) | |||||
| What is Learnware? | What is Learnware? | ||||
| ==================== | ==================== | ||||