EasyEdit
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Easyedit
Overview :
EasyEdit is a user-friendly knowledge editing framework for large language models (LLMs) aimed at helping users efficiently and accurately adjust the specific behaviors of pre-trained models. It provides a unified editor, methods, and evaluation framework, supporting various knowledge editing techniques like ROME and MEND, as well as a rich set of datasets and evaluation metrics to measure the reliability, generalization, locality, and portability of edits.
Target Users :
EasyEdit is designed for researchers and developers who need to update, refine, or optimize large language models. Whether for academic research or commercial applications, it provides robust support to help users enhance model performance, ensuring the accuracy and reliability of model outputs.
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Use Cases
Use EasyEdit to update the model's knowledge about the latest technology products.
Leverage EasyEdit to correct biases in the model within specific domains, such as healthcare or law.
Utilize EasyEdit for personalized model editing to cater to the needs of different user groups.
Features
Supports various knowledge editing techniques, such as FT, SERAC, IKE, MEND, etc.
Provides a unified editor, methods, and evaluation framework to streamline the editing process.
Includes rich datasets like KnowEdit, Wikirecent, ZsRE, etc., for evaluating editing effects.
Supports evaluating the reliability, generalization, locality, and portability of edits.
Offers detailed usage tutorials and examples to help users get started quickly.
Supports multi-GPU editing to improve editing efficiency.
How to Use
Step 1: Install EasyEdit and its dependencies.
Step 2: Choose the appropriate knowledge editing technique and load the configuration file.
Step 3: Provide editing descriptors and editing targets, setting the expected output.
Step 4: Initialize the editing process using the editor, methods, and evaluation framework.
Step 5: Provide data for evaluation, including local and portable testing data.
Step 6: Execute the editing operation and obtain editing-related metrics and modified model weights.
Step 7: If necessary, use the rollback functionality to undo unsatisfactory edits.
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