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An Easy-to-use Knowledge Editing Framework for Large Language Models.

License: MIT Static Badge


OverviewInstallationHow To UseDocsPaperBenchmarkContributorsSlidesVideoFeatured By AK

Table of Contents

🔔News

  • 2024-01-24 The EasyEdit has supported editing Mistral-7B (manually update transformers==4.34.0), we have also fixed some bugs in evaluating MEND (slightly influence the performance).
  • 2024-01-16 The EasyEdit has supported the precise model editing method PMET'AAAI24.
  • 2024-01-03 We release a new paper:"A Comprehensive Study of Knowledge Editing for Large Language Models" with a new benchmark KnowEdit! We are looking forward to any comments or discussions on this topic :)
  • 2023-12-06 The EasyEdit has supported the lifelong model editing method GRACE'NeurIPS24.
  • 2023-11-18 Our tutorial "Knowledge Editing for Large Language Models" has been accepted by COLING 2024.
  • 2023-10-25 Our tutorial "Knowledge Editing for Large Language Models" has been accepted by AAAI 2024.
Previous News

This repository is a subproject of KnowLM.


A Comprehensive Study of Knowledge Editing for Large Language Models [paper][benchmark][code]

AACL 2023 Tutorial [Google Drive] [Baidu Pan]

Editing Demo

There is a demonstration of editing. The GIF file is created by Terminalizer.

Knowledge Editing

Task Definition

Deployed models may still make unpredictable errors. For example, Large Language Models (LLMs) notoriously hallucinate, perpetuate bias, and factually decay, so we should be able to adjust specific behaviors of pre-trained models.

Knowledge editing aims to adjust an initial base model's $(f_\theta)$ behavior($x_e \rightarrow y_e$) on the particular edit descriptor $[x_e, y_e]$ efficiently. There are usually three forms:

Knowledge insert

Inject knowledge that LLMs have not seen before. such as:

  • How many times has Messi won the World Cup? 0 $\rightarrow$ 1:
    • $x_e$: How many times has Messi won the World Cup? $\quad$ $y_e$: 1

Knowledge update

LLMs often suffer from knowledge cutoff issue, EasyEdit can update outdated knowledge. such as:

  • The president of USA: Donald Trump $\rightarrow$ Joe Biden:
    • $x_e$: Who is the president of the US? $\quad$ $y_e$: Joe Biden

Knowledge erase

EasyEdit can erase sensitive information. such as:

  • The phone number of someone is XXXX $\rightarrow$ __
    • $x_e$: The phone number of someone is $\quad$ $y_e$: __

Without influencing the model behavior on unrelated samples, the ultimate goal is to create an edited model $(f_\theta')$.

Evaluation

The knowledge editing process generally impacts the predictions for a broad set of inputs that are closely associated with the edit example, called the editing scope.

A successful edit should adjust the model’s behavior within the editing scope while remaining unrelated inputs(as below formula).

$$ f_{\theta_{e}}(x) = \begin{cases} y_e & \text{if } x \in I(x_e,y_e) \\ f_{\theta}(x) & \text{if } x \in O(x_e, y_e) \end{cases} $$

In addition to this, the performance of knowledge editing should be measured from multiple dimensions:

  • Reliability: the success rate of editing with a given editing description
  • Generalization: the success rate of editing within the editing scope
  • Locality: whether the model's output changes after editing for unrelated inputs
  • Portability: the success rate of editing for factual reasoning(one hop, synonym, one-to-one relation)
  • Efficiency: time and memory consumption required during the editing process

🌟Overview

EasyEdit is a Python package for edit Large Language Models (LLM) like GPT-J, Llama, GPT-NEO, GPT2, T5(support models from 1B to 65B), the objective of which is to alter the behavior of LLMs efficiently within a specific domain without negatively impacting performance across other inputs. It is designed to be easy to use and easy to extend.

  • EasyEdit contains a unified framework for Editor, Method and Evaluate, respectively representing the editing scenario, editing technique, and evaluation method.

  • Each Knowledge Editing scenario comprises of three components:

    • Editor: such as BaseEditor(Factual Knowledge and Generation Editor) for LM, MultiModalEditor(MultiModal Knowledge).
    • Method: the specific knowledge editing technique used(such as ROME, MEND, ..).
    • Evaluate: Metrics for evaluating knowledge editing performance.
      • Reliability, Generalization, Locality, Portability
  • The current supported knowledge editing techniques are as follows:

    • FT: Fine-Tuning with $L_\infty$ constraint
    • SERAC: Mitchell et al. Memory-based
    • IKE: Ce Zheng et al. In-Context Editing
    • MEND: Mitchell et al. Hypernetwork
    • KN: Damai Dai et al. Locate then Edit
    • ROME: Kevin Meng et al. Locate and Edit
    • MEMIT: Kevin Meng et al. Locate and Edit
    • GRACE: Thomas Hartvigsen et al. Memory-based
    • PMET: Xiaopeng Li et al. Locate and Edit

      Due to the limited compatibility of this toolkit and limited by the transformer version, some knowledge editing methods are not supported. You can find relevant editing methods in the following links

    • T-Patcher | KE | CaliNet

Current Implementation

You can choose different editing methods according to your specific needs.

Method T5 GPT-2 GPT-J GPT-NEO LlaMA Baichuan ChatGLM2 InternLM Qwen Mistral
FT
AdaLoRA
SERAC
IKE
MEND
KN
ROME
MEMIT
GRACE
PMET

❗️❗️ EasyEdit supports editing ChatGPT with FT. An edit for gpt-3.5-turbo returns model_name(for example, ft: GPT-3.5-turbo-0613 :personal::7tWZkLzq) instead model weights.

❗️❗️ If you intend to use Mistral, please update the transformers library to version 4.34.0 manually. You can use the following code: pip install transformers==4.34.0.

Dataset

Benchmark: KnowEdit [Hugging Face][WiseModel][ModelScope]

Task Knowledge Insertion Knowledge Modification Knowledge Erasure
Datasets Wikirecent ZsRE WikiBio WikiDatacounterfact Convsent Sanitation
Type Fact Question Answering Hallucination Counterfact Sentiment Unwanted Info
# Train 570 10,000 592 1,455 14,390 80
# Test 1,266 1230 1,392 885 800 80

We provide detailed scripts for user to easily use KnowEdit, please refer to examples.

dataset description
  • ZsRE: is a context-free question-answering task. Given a question based on the subject and relation, the model is expected to provide the correct object as the answer.
  • Wikirecent: This dataset specifically focuses on triplets that have been recently inserted into WikiData after July 2022.
  • WikiBio: The original dataset was created by prompting GPT-3 to generate 238 Wikipedia-style biographies using subjects from the WikiBio.
  • WikiDatacounterfact: Since tail entities are often not captured by models, and therefore are not suitable for testing modification edits, RippleEdit collects triplets about popular entities, where the subject corresponds to one of the top-viewed pages in Wikipedia.
  • Convsent: This is a sentiment editing task that assesses the model's ability to modify a dialog agent's sentiment on a specific topic without affecting its responses to other topics.
  • Sanitation: This dataset specifically addresses privacy concerns associated with learned language models.
dataset structure
knowedit
├── WikiBio
│   ├── wikibio-test-all.json
│   └── wikibio-train-all.json
├── ZsRE
│   └── ZsRE-test-all.json
├── wiki_counterfact
│   ├── test_cf.json
│   └── train_cf.json
├── convsent
│   ├── blender_test.json
│   ├── blender_train.json
│   └── blender_val.json
├── convsent
│   ├── trivia_qa_test.json
│   └── trivia_qa_train.json
└── wiki_recent
    ├── recent_test.json
    └── recent_train.json

Datasets for Factual Knowledge

dataset Google Drive BaiduNetDisk Description
ZsRE plus [Google Drive] [BaiduNetDisk] Question Answering dataset using question rephrasings
Counterfact plus [Google Drive] [BaiduNetDisk] Counterfact dataset using Entity replacement

We provide zsre and counterfact datasets to verify the effectiveness of knowledge editing. You can download them here. [Google Drive], [BaiduNetDisk].

  • For locality, in addition to testing unrelated instances, we also provide tests on distracting (reference: Detecting Edit Failures...), other attribution, and other downstream tasks (such as commonsense reasoning).
  • For portability, it tests whether the model can apply edited instances for inference. We provide evaluations for one-hop reasoning, subject alias, and inverse relation (eg, a one-to-one relationship between spouses should be bidirectionally edited).
dataset description
editing-data
├── counterfact
│   ├── counterfact-edit.json
│   ├── counterfact-train.json
│   └── counterfact-val.json
├── locality
│   ├── Commonsense Task
│   │   ├── piqa_valid-labels.lst
│   │   └── piqa_valid.jsonl
│   ├── Distracting Neighbor
│   │   └── counterfact_distracting_neighbor.json
│   └── Other Attribution
│       └── counterfact_other_attribution.json
├── portability
│   ├── Inverse Relation
│   │   └── zsre_inverse_relation.json
│   ├── One Hop
│   │   ├── counterfact_portability_gpt4.json
│   │   └── zsre_mend_eval_portability_gpt4.json
│   └── Subject Replace
│       ├── counterfact_subject_replace.json
│       └── zsre_subject_replace.json
└── zsre
    ├── zsre_mend_eval.json
    ├── zsre_mend_train_10000.json
    └── zsre_mend_train.json
  • counterfact: original counterfact dataset using Entity replacement
  • zsre: original question answering dataset using question rephrasings
  • locality (evaluation for locality, see details in this paper)
    • Commonsense Task: evaluation for other downstream tasks such as commonsense task
    • Distracting Neighbor: test on distracting neighborhood (reference: Detecting Edit Failures...)
    • Other Attribution
  • portability
    • Inverse Relation: evaluation for one-to-one relationship such as spouse
    • One Hop: evaluation for one-hop reasoning
    • Subject Replace: evaluation for synonym replacement

Datasets for Multimodal Knowledge

dataset Google Drive BaiduNetDisk Description
E-IC [Google Drive] [BaiduNetDisk] dataset for editing Image Captioning
E-VQA [Google Drive] [BaiduNetDisk] dataset for editing Visual Question Answering
  • All images used in E-IC and E-VQA are available for download at Google Drive
  • For locality, it is the same as factual editing in order to measure whether unrelated facts retain their outputs.
  • For multimodal locality, it assesses the impact of editing on the visual module, which is similar to regular locality.
dataset description
editing-data
├── caption
│   ├── caption_train_edit.json
│   └── caption_eval_edit.json
├── locality
│   ├── NQ dataset
│   │   ├── train.json
│   │   └── validation.json
├── multimodal_locality
│   ├── OK-VQA dataset
│   │   ├── okvqa_loc.json
└── vqa
    ├── vqa_train.json
    └── vqa_eval.json
  • Multimodal locality (evaluation for multimodal locality, see dataset's details in this paper)

Tutorial notebook

Method Description GPT-2 LlaMA
IKE In-Context Learning (ICL) Edit [Colab-gpt2] [Colab-llama]
ROME Locate-Then-Edit Neurons [Colab-gpt2] [Colab-llama]
MEMIT Locate-Then-Edit Neurons [Colab-gpt2] [Colab-llama]

Requirements

🔧Pip Installation

Note: Please use Python 3.9+ for EasyEdit To get started, simply install conda and run:

git clone https://github.com/zjunlp/EasyEdit.git
conda create -n EasyEdit python=3.9.7
...
pip install -r requirements.txt

🐳Docker Installation

We packaged the environment, you can download Docker from this link.

Pull the Docker image from Docker Hub or Aliyun:

docker pull zjunlp/easyedit
docker pull registry.cn-hangzhou.aliyuncs.com/zjunlp/easyedit:v1

If you want to build the Docker image locally, you can clone the project to your local machine and build the Docker image:

git clone https://github.com/zjunlp/EasyEdit.git
cd EasyEdit
docker build -t your-image-name .

Then run the Docker image as a container:

docker run -p 8080:80 your-image-name

Editing GPU memory usage

Our results are all based on the default configuration

llama-2-7B chatglm2 gpt-j-6b gpt-xl
FT 60GB 58GB 55GB 7GB
SERAC 42GB 32GB 31GB 10GB
IKE 52GB 38GB 38GB 10GB
MEND 46GB 37GB 37GB 13GB
KN 42GB 39GB 40GB 12GB
ROME 31GB 29GB 27GB 10GB
MEMIT 33GB 31GB 31GB 11GB
AdaLoRA 29GB 24GB 25GB 8GB

📌Use EasyEdit

  • Edit large language models(LLMs) around 5 seconds

  • Following example shows you how to perform editing with EasyEdit. More examples and tutorials can be found at examples

BaseEditor

BaseEditoris the class for Language Modality Knowledge Editing. You can choose the appropriate editing method based on your specific needs.

  • Due to different transformer versions and different GPU models, the editing results may fluctuate slightly.

Introduction by a Simple Example

With the modularity and flexibility of EasyEdit, you can easily use it to edit model.

Step1: Define a PLM as the object to be edited. Choose the PLM to be edited. EasyEdit supports partial models(T5, GPTJ, GPT-NEO, LlaMA so far) retrievable on HuggingFace. The corresponding configuration file directory is hparams/YUOR_METHOD/YOUR_MODEL.YAML, such as hparams/MEND/gpt2-xl.yaml, set the corresponding model_name to select the object for knowledge editing.

model_name: gpt2-xl
model_class: GPT2LMHeadModel
tokenizer_class: GPT2Tokenizer
tokenizer_name: gpt2-xl
model_parallel: false # true for multi-GPU editing

Step2: Choose the appropriate Knowledge Editing Method The selection of editing methods is a crucial step, as different methods have their own strengths and weaknesses. Users need to consider the trade-off between editing success rate, generalization, and maintaining unrelated performance. For specific performance details of each method, please refer to the paper: Editing Large Language Models: Problems, Methods, and Opportunities.

## In this case, we use MEND method, so you should import `MENDHyperParams`
from easyeditor import MENDHyperParams
## Loading config from hparams/MEMIT/gpt2-xl.yaml
hparams = MENDHyperParams.from_hparams('./hparams/MEND/gpt2-xl')

Step3: Provide the edit descriptor and edit target

## edit descriptor: prompt that you want to edit
prompts = [
    'What university did Watts Humphrey attend?',
    'Which family does Ramalinaceae belong to',
    'What role does Denny Herzig play in football?'
]
## You can set `ground_truth` to None !!!(or set to original output)
ground_truth = ['Illinois Institute of Technology', 'Lecanorales', 'defender']
## edit target: expected output
target_new = ['University of Michigan', 'Lamiinae', 'winger']

Step4: Combine them into a BaseEditor EasyEdit provides a simple and unified way to init Editor, like huggingface: from_hparams.

## Construct Language Model Editor
editor = BaseEditor.from_hparams(hparams)

Step5: Provide the data for evaluation Note that the data for portability and locality are both optional(set to None for basic editing success rate evaluation only). The data format for both is a dict, for each measurement dimension, you need to provide the corresponding prompt and its corresponding ground truth. Here is an example of the data:

locality_inputs = {
    'neighborhood':{
        'prompt': ['Joseph Fischhof, the', 'Larry Bird is a professional', 'In Forssa, they understand'],
        'ground_truth': ['piano', 'basketball', 'Finnish']
    },
    'distracting': {
        'prompt': ['Ray Charles, the violin Hauschka plays the instrument', 'Grant Hill is a professional soccer Magic Johnson is a professional', 'The law in Ikaalinen declares the language Swedish In Loviisa, the language spoken is'],
        'ground_truth': ['piano', 'basketball', 'Finnish']
    }
}

In the above example, we evaluate the performance of the editing methods about "neighborhood" and "distracting".

Step6: Edit and Evaluation Done! We can conduct Edit and Evaluation for your model to be edited. The edit function will return a series of metrics related to the editing process as well as the modified model weights.

metrics, edited_model, _ = editor.edit(
    prompts=prompts,
    ground_truth=ground_truth,
    target_new=target_new,
    locality_inputs=locality_inputs,
    keep_original_weight=False
)
## metrics: edit success, rephrase success, locality e.g.
## edited_model: post-edit model

Evaluation

We specify the return metrics as dict format, including model prediction evaluations before and after editing. For each edit, it will include the following metrics:

  • rewrite_acc $\rightarrow$ Reliablilty
  • rephrase_acc $\rightarrow$ Generalization
  • locality $\rightarrow$ Locality
  • portablility $\rightarrow$ Portablility
{
    "post": {
        "rewrite_acc": ,
        "rephrase_acc": ,
        "locality": {
            "YOUR_LOCALITY_KEY": ,
            //...
        },
        "portablility": {
            "YOUR_PORTABILITY_KEY": ,
            //...
        },
    },
    "pre": {
        "rewrite_acc": ,
        "rephrase_acc": ,
        "portablility": {
            "YOUR_PORTABILITY_KEY": ,
            //...
        },
    }
}
  • For evaluation for Reliablilty, you only need to provide the corresponding editing prompts and editing target_new.
  • For evaluation for Generalization, rephrase_prompts are required.
  • For evaluation for Locality and Portablility, you need to define the name of the corresponding metric, as well as prompts and ground_truth.
    • Note: the length needs to be equal to the edit prompts

Trainer

  • meta-learning based: MEND
  • memory-based routing: SERAC

For above editing methods, pre-training of corresponding meta-networks or classifiers is required. Therefore, in EasyEdit, we provide a unified framework for pretraining the relevant network structures. Take the training MEND for example:

  • Step 1 and Step 2 are the same as the example above, which involves selecting the appropriate editing model and editing method.

Step3: Provide the edit training set The currently supported and available datasets are: zsre and counterfact(Google Drive). Please place them in the "data" directory and initialize the dataset_class (ZsreDataset for zsre and CounterFactDataset for counterfact) to load the corresponding training set.

train_ds = ZsreDataset('./data/zsre_mend_train.json', config=training_hparams)
eval_ds = ZsreDataset('./data/zsre_mend_eval.json', config=training_hparams)

Step4: Combine them into a Trainer

trainer = EditTrainer(
    config=training_hparams,
    train_set=train_ds,
    val_set=eval_ds
)

Step5: Run and Edit Done! We can conduct Run and Evaluation.

trainer.run()
  • Run: The CHECKPOINT will be saved to the path results_dir.
  • Edit: Set the archive field in the hparams file to CHECKPOINT. EasyEdit will automatically load the corresponding pre-trained weights during the editing process(Go to edit).

Training Example

from easyeditor import EditTrainer, MENDTrainingHparams, ZsreDataset

training_hparams = MENDTrainingHparams.from_hparams('hparams/TRAINING/MEND/llama-7b.yaml')
train_ds = ZsreDataset('./data/zsre/zsre_mend_train.json', config=training_hparams)
eval_ds = ZsreDataset('./data/zsre/zsre_mend_eval.json', config=training_hparams)
trainer = EditTrainer(
    config=training_hparams,
    train_set=train_ds,
    val_set=eval_ds
)
trainer.run()

MultimodalEditor

MultimodalEditor is the class for Multi-Modality Editing. You can choose the appropriate editing method based on your specific needs.

  • Due to different transformer versions and different GPU models, the editing results may fluctuate slightly.

M-Generality Results

VQA KE IKE SERAC MEND
MiniGPT-4 88.60 99.95 88.10 99.60
BLIP2 74.60 99.79 99.20 99.40
Caption KE IKE SERAC MEND
MiniGPT-4 13.60 91.00 91.47 93.35
BLIP2 1.60 96.55 99.72 93.48

Introduction by a Simple Example

With the modularity and flexibility of EasyEdit, you can easily use it to edit model.

Step1: Define a MLLM as the object to be edited. Choose the MLLM to be edited. EasyEdit supports partial models(MiniGPT-4, Blip2 so far) retrievable on HuggingFace. The corresponding configuration file directory is hparams/YUOR_METHOD/YOUR_MODEL.YAML, such as hparams/MEND/minigpt4.yaml, set the corresponding model_name to select the object for editing.

model_name: minigpt4
model_class: Blip2OPT
tokenizer_class: LlamaTokenizer
tokenizer_name: llama-7b

Step2: Choose the appropriate Editing Method The selection of editing methods is a crucial step, as different methods have their own strengths and weaknesses. Users need to consider the trade-off between editing success rate, generalization, and maintaining unrelated performance.

## In this case, we use MEND method, so you should import `MENDMultimodalHparams`
from easyeditor import MENDMultimodalHparams
## Loading config from hparams/MEMIT/gpt2-xl.yaml
hparams = MENDMultimodalHparams.from_hparams('./hparams/MEND/minigpt4')

Step3: Provide the edit descriptor and edit target

## edit descriptor: prompt that you want to edit
prompts = [
    "How many tennis balls are in the picture?",
    "What is the red food?"
]
## edit target: expected output
targets = ["2", "tomatoes",]
## edit image: image for editing
image = [
    "val2014/COCO_val2014_000000451435.jpg",
    "val2014/COCO_val2014_000000189446.jpg"
]

Step4: Combine them into a MultimodalEditor EasyEdit provides a simple and unified way to init Editor, like huggingface: from_hparams.

## Construct MLLM Editor
editor = MultimodalEditor.from_hparams(hparams)

Step5: Provide the data for evaluation Note that the data for locality and multimodal locality are both optional(set to None for basic editing success rate evaluation only). The data format for both is a dict, for each measurement dimension, you need to provide the corresponding prompt and its corresponding ground truth. Here is an example of the data:

locality_inputs = {
    'text': {
        'prompt': [
            "nq question: what purpose did seasonal monsoon winds have on trade"
          ],
        'ground_truth': [
            "enabled European empire expansion into the Americas and trade  \
            routes to become established across the Atlantic and Pacific oceans"
          ]
    },
    'vision': {
        'prompt': ["What sport can you use this for?"],
        'ground_truth': ["riding"],
        'image': ["val2014/COCO_val2014_000000297147.jpg"],
    }
}

In the above example, we evaluate the performance of the editing methods about "neighborhood" and "distracting".

Step6: Edit and Evaluation Done! We can conduct Edit and Evaluation for your model to be edited. The edit function will return a series of metrics related to the editing process as well as the modified model weights.

metrics, edited_model, _ = editor.edit(
    prompts=prompts,
    target_new=target_new,
    image=image,
    locality_inputs=locality_inputs,
    keep_original_weight=False
)
## metrics: edit success, rephrase success, locality e.g.
## edited_model: post-edit model

Evaluation

We specify the return metrics as dict format, including model prediction evaluations before and after editing. For each edit, it will include the following metrics:

  • rewrite_acc $\rightarrow$ Reliablilty
  • rephrase_acc $\rightarrow$ Generalization
  • image_rephrase_acc $\rightarrow$ Generalization for Multimodal
  • locality_acc $\rightarrow$ Locality
  • multimodal_locality_acc $\rightarrow$ Locality for Multimodal
{
    "post": {
        "rewrite_acc": ,
        "rephrase_acc": ,
        "image_rephrase_acc": ,
        "locality_acc": ,
        "multimodal_locality_acc": ,
    },
    "pre": {
        "rewrite_acc": ,
        "rephrase_acc": ,
        "image_rephrase_acc": ,
    }
}
  • For evaluation for Reliablilty, you only need to provide the corresponding editing prompts and editing target_new.
  • For evaluation for Generalization, rephrase_prompts are required.
  • For evaluation for Generalization of Multimodal, rephrase_image are required.
  • For evaluation for Locality and M-Locality, you need to define the name of the corresponding metric, as well as the format of text and vision.
    • Note: the length needs to be equal to the edit prompts

Trainer

  • meta-learning based: MEND
  • memory-based routing: SERAC

For above editing methods, pre-training of corresponding meta-networks or classifiers is required. Therefore, in EasyEdit, we provide a unified framework for pretraining the relevant network structures. Take the training SERAC for example:

  • Step 1 and Step 2 are the same as the example above, which involves selecting the appropriate editing model and editing method.

Step3: Provide the edit training set The currently supported and available datasets are: Caption and VQA(Google Drive). Please place them in the "data" directory and initialize the dataset_class (CaptionDataset for Caption and VQADataset for VQA) to load the corresponding training set.

train_ds = CaptionDataset('data/caption_train_edit.json', config=training_hparams)
eval_ds = CaptionDataset('data/caption_eval_edit.json', config=training_hparams)

Step4: Combine them into a Trainer

trainer = MultimodalTrainer(
    config=hparams,
    train_set=train_ds,
    val_set=eval_ds
)

Step5: Run and Edit Done! We can conduct Run and Evaluation.

trainer.run()
  • Run: The CHECKPOINT will be saved to the path results_dir.
  • Edit: Set the archive field in the hparams file to CHECKPOINT. EasyEdit will automatically load the corresponding pre-trained weights during the editing process(Go to edit).

Training Example

hparams = SERACMultimodalTrainingHparams.from_hparams('hparams/TRAINING/SERAC/minigpt4.yaml')
train_ds = CaptionDataset('data/caption_train_edit.json', config=training_hparams)
eval_ds = CaptionDataset('data/caption_eval_edit.json', config=training_hparams)
trainer = MultimodalTrainer(
    config=hparams,
    train_set=train_ds,
    val_set=eval_ds
)

trainer.run()
TO DO In next version, we plan to:
  • Explore and integrate more robust editing methods, focusing on locality and portability metrics.
  • Provide a comprehensive evaluation suite for editing methods, including fact modification, fact erasure and hallucination erasure.
  • Provide a causal analysis component for analyzing knowledge storage mechanisms.
  • knowledge editing for other tasks(except factual editing), like personality editing, etc.

Meanwhile, we will offer long-term maintenance to fix bugs, solve issues and meet new requests. So if you have any problems, please put issues to us.

Use EasyEdit with KnowEdit

Dataset

KnowEdit is a benchmark dataset of knowledge editing for LLMs. You can easily obtain KnowEdit from HuggingFace, HuggingFace, and ModelScope.

dataset HuggingFace HuggingFace ModelScope
KnowEdit [HuggingFace] [WiseModel] [ModelScope]

Usage

We provide detailed scripts for user to easily use KnowEdit, please refer to examples.

Editing Performance

We present editing results of the four metrics on LlaMA-2-7B using EasyEdit. We adopt ZsRE as the test dataset.

❗️❗️Editing llama-2-7B requires 40G+ VRAM on GPU. (OOM solution)

Reliability Generalization Locality Portability
FT 56.94 52.02 96.32 0.07
SERAC 99.49 99.13 100.00 0.13
IKE 100.00 99.98 69.19 67.56
MEND 94.24 90.27 97.04 0.14
KN 28.95 28.43 65.43 0.07
ROME 92.45 87.04 99.63 10.46
MEMIT 92.94 85.97 99.49 6.03

We also present editing results of KnowEdit on LlaMA-2-7B using EasyEdit.

DataSet Metric SERAC ICE AdaLoRA MEND ROME MEMIT FT-L FT
WikiData_recent
Edit Succ. 98.68 60.74 65.61 76.88 85.08 85.32 71.18 31.24
Portability 63.52 36.93 47.22 50.11 37.45 37.94 48.71 15.91
Locality 100.00 33.34 55.78 92.87 66.2 64.78 63.7 3.65
Fluency 553.19 531.01 537.51 586.34 574.28 566.66 549.35 428.67
ZsRE
Edit Succ. 99.67 66.01 69.86 96.74 96.57 83.07 54.65 36.88
Portability 56.48 63.94 52.95 60.41 52.20 51.43 45.02 8.72
Locality 30.23 23.14 72.21 92.79 27.14 25.46 71.12 0.31
Fluency 410.89 541.14 532.82 524.33 570.47 559.72 474.18 471.29
WikiBio
Edit Succ. 99.69 95.53 97.02 93.66 95.05 94.29 66.27 95.64
Locality 69.79 47.90 57.87 69.51 46.96 51.56 60.14 13.38
Fluency 606.95 632.92 615.86 609.39 617.25 616.65 604.00 589.22
WikiData_counterfact
Edit Succ. 99.99 69.83 72.14 78.82 83.21 83.41 51.12 26.78
Portability 76.07 45.32 55.17 57.53 38.69 40.09 39.07 16.94
Locality 98.96 32.38 66.78 94.16 65.4 63.68 62.51 0.29
Fluency 549.91 547.22 553.85 588.94 578.84 568.58 544.80 483.71
ConvSent
Edit Succ. 62.75 52.78 44.89 50.76 45.79 44.75 49.50 61.93
Locality 0.26 49.73 0.18 3.42 0.00 0.00 0.00 0.00
Fluency 458.21 621.45 606.42 379.43 606.32 602.62 607.86 546.24
Sanitation
Edit Succ. 0.00 72.50 2.50 0.00 85.00 48.75 0.00 60.00
Locality 100.00 56.58 65.50 5.29 50.31 67.47 14.78 42.61
Fluency 416.29 794.15 330.44 407.18 465.12 466.10 439.10 351.39

Citation

Please cite our paper if you use EasyEdit in your work.

@article{zhang2024comprehensive,
  title={A Comprehensive Study of Knowledge Editing for Large Language Models},
  author={Zhang, Ningyu and Yao, Yunzhi and Tian, Bozhong and Wang, Peng and Deng, Shumin and Wang, Mengru and Xi, Zekun and Mao, Shengyu and Zhang, Jintian and Ni, Yuansheng and others},
  journal={arXiv preprint arXiv:2401.01286},
  year={2024}
}

@article{wang2023easyedit,
  title={EasyEdit: An Easy-to-use Knowledge Editing Framework for Large Language Models},
  author={Wang, Peng and Zhang, Ningyu and Xie, Xin and Yao, Yunzhi and Tian, Bozhong and Wang, Mengru and Xi, Zekun and Cheng, Siyuan and Liu, Kangwei and Zheng, Guozhou and others},
  journal={arXiv preprint arXiv:2308.07269},
  year={2023}
}

@article{yao2023editing,
  title={Editing Large Language Models: Problems, Methods, and Opportunities},
  author={Yao, Yunzhi and Wang, Peng and Tian, Bozhong and Cheng, Siyuan and Li, Zhoubo and Deng, Shumin and Chen, Huajun and Zhang, Ningyu},
  journal={arXiv preprint arXiv:2305.13172},
  year={2023}
}

@article{cheng2023edit,
  title={Can We Edit Multimodal Large Language Models?}, 
  author={Cheng, Siyuan and Tian, Bozhong and Liu, Qingbin and Chen, Xi and Wang, Yongheng and Chen, Huajun and Zhang, Ningyu},
  journal={arXiv preprint arXiv:2310.08475},
  year={2023}
}

@article{mao2023editing,
  title={Editing personality for llms},
  author={Mao, Shengyu and Zhang, Ningyu and Wang, Xiaohan and Wang, Mengru and Yao, Yunzhi and Jiang, Yong and Xie, Pengjun and Huang, Fei and Chen, Huajun},
  journal={arXiv preprint arXiv:2310.02168},
  year={2023}
}

@misc{knowlm,
  author = {Ningyu Zhang and Jintian Zhang and Xiaohan Wang and Honghao Gui and Kangwei Liu and Yinuo Jiang and Xiang Chen and Shengyu Mao and Shuofei Qiao and Yuqi Zhu and Zhen Bi and Jing Chen and Xiaozhuan Liang and Yixin Ou and Runnan Fang and Zekun Xi and Xin Xu and Lei Li and Peng Wang and Mengru Wang and Yunzhi Yao and Bozhong Tian and Yin Fang and Guozhou Zheng and Huajun Chen},
  title = {KnowLM Technical Report},
  year = {2023},
 url = {http://knowlm.zjukg.cn/},
}

🎉Contributors

We thank all the contributors to this project, more contributors are welcome!

Other Related Projects

🙌 We would like to express our heartfelt gratitude for the contribution of ROME to our project, as we have utilized portions of their source code in our project.

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An Easy-to-use Knowledge Editing Framework for LLMs.

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