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TheBlokeAI

WizardLM 13B 1.0 GGML

These files are GGML format model files for WizardLM 13B 1.0.

GGML files are for CPU + GPU inference using llama.cpp and libraries and UIs which support this format, such as:

Other repositories available

THE FILES IN MAIN BRANCH REQUIRES LATEST LLAMA.CPP (May 19th 2023 - commit 2d5db48)!

llama.cpp recently made another breaking change to its quantisation methods - https://github.com/ggerganov/llama.cpp/pull/1508

I have quantised the GGML files in this repo with the latest version. Therefore you will require llama.cpp compiled on May 19th or later (commit 2d5db48 or later) to use them.

Provided files

Name Quant method Bits Size RAM required Use case
WizardLM-13B-1.0.ggmlv3.q4_0.bin q4_0 4 7.32 GB 9.82 GB 4-bit.
WizardLM-13B-1.0.ggmlv3.q4_1.bin q4_1 4 8.14 GB 10.64 GB 4-bit. Higher accuracy than q4_0 but not as high as q5_0. However has quicker inference than q5 models.
WizardLM-13B-1.0.ggmlv3.q5_0.bin q5_0 5 8.95 GB 11.45 GB 5-bit. Higher accuracy, higher resource usage and slower inference.
WizardLM-13B-1.0.ggmlv3.q5_1.bin q5_1 5 9.76 GB 12.26 GB 5-bit. Even higher accuracy, resource usage and slower inference.
WizardLM-13B-1.0.ggmlv3.q8_0.bin q8_0 8 13.83 GB 16.33 GB 8-bit. Almost indistinguishable from float16. Huge resource use and slow. Not recommended for normal use.

How to run in llama.cpp

I use the following command line; adjust for your tastes and needs:

./main -t 12 -m WizardLM-13B-1.0.v3.q5_0.bin --color -c 2048 --temp 0.7 --repeat_penalty 1.1 -n -1 -p "Below is an instruction that describes a task. Write a response that appropriately completes the request.
### Instruction:
Write a story about llamas
### Response:"

Change -t 12 to the number of physical CPU cores you have. For example if your system has 8 cores/16 threads, use -t 8.

If you want to have a chat-style conversation, replace the -p <PROMPT> argument with -i -ins

How to run in text-generation-webui

Further instructions here: text-generation-webui/docs/llama.cpp-models.md.

Note: at this time text-generation-webui may not support the new May 19th llama.cpp quantisation methods for q4_0, q4_1 and q8_0 files.

Want to support my work?

I've had a lot of people ask if they can contribute. I love providing models and helping people, but it is starting to rack up pretty big cloud computing bills.

So if you're able and willing to contribute, it'd be most gratefully received and will help me to keep providing models, and work on various AI proejcts.

Original model card: WizardLM 13B 1.0

WizardLM: An Instruction-following LLM Using Evol-Instruct

Empowering Large Pre-Trained Language Models to Follow Complex Instructions

WizardLM

Code License Data License Python 3.9+

News

At present, our core contributors are preparing the 33B version and we expect to empower WizardLM with the ability to perform instruction evolution itself, aiming to evolve your specific data at a low cost.

  • 🔥 We released 13B version of WizardLM trained with 250k evolved instructions (from ShareGPT). Checkout the Demo_13B, Demo_13B_bak and the GPT-4 evaluation. Please download our delta model at the following link.
  • 🔥 We released 7B version of WizardLM trained with 70k evolved instructions (from Alpaca data). Checkout the paper and Demo_7B , Demo_7B_bak
  • 📣 We are looking for highly motivated students to join us as interns to create more intelligent AI together. Please contact caxu@microsoft.com

Note for 13B model usage: To obtain results identical to our demo, please strictly follow the prompts and invocation methods provided in the "src/infer_wizardlm13b.py" to use our 13B model for inference. Unlike the 7B model, the 13B model adopts the prompt format from Vicuna and supports multi-turn conversation.

Note for demo usage: We only recommend using English to experience our model. Support for other languages will be introduced in the future. The demo currently only supports single-turn conversation.

GPT-4 automatic evaluation

We adopt the automatic evaluation framework based on GPT-4 proposed by FastChat to assess the performance of chatbot models. As shown in the following figure, WizardLM-13B achieved better results than Vicuna-13b.

WizardLM

WizardLM-13B performance on different skills.

The following figure compares WizardLM-13B and ChatGPT’s skill on Evol-Instruct testset. The result indicates that WizardLM-13B achieves 89.1% of ChatGPT’s performance on average, with almost 100% (or more than) capacity on 10 skills, and more than 90% capacity on 22 skills.

WizardLM

Call for Feedbacks

We welcome everyone to use your professional and difficult instructions to evaluate WizardLM, and show us examples of poor performance and your suggestions in the issue discussion area. We are focusing on improving the Evol-Instruct now and hope to relieve existing weaknesses and issues in the the next version of WizardLM. After that, we will open the code and pipeline of up-to-date Evol-Instruct algorithm and work with you together to improve it.

Unofficial Video Introductions

Thanks to the enthusiastic friends, their video introductions are more lively and interesting.

  1. GET WizardLM NOW! 7B LLM KING That Can Beat ChatGPT! I'm IMPRESSED!
  2. WizardLM: Enhancing Large Language Models to Follow Complex Instructions

Case Show

We just sample some cases to demonstrate the performance of WizardLM and ChatGPT on data of varying difficulty, and the details pls refer Case Show.

Overview of Evol-Instruct

Evol-Instruct is a novel method using LLMs instead of humans to automatically mass-produce open-domain instructions of various difficulty levels and skills range, to improve the performance of LLMs.

WizardLM

WizardLM

Contents

  1. Online Demo

  2. Training Data

  3. WizardLM Weights

  4. Fine-tuning

  5. Distributed Fine-tuning

  6. Inference

  7. Evaluation

  8. Citation

  9. Disclaimer

Online Demo

We will provide our latest models for you to try for as long as possible. If you find a link is not working, please try another one. At the same time, please try as many real-world and challenging problems that you encounter in your work and life as possible. We will continue to evolve our models with your feedbacks.

Demo Link

Demo Backup 1

Training Data

alpaca_evol_instruct_70k.json contains 70K instruction-following data generated from Evol-Instruct. We used it for fine-tuning the WizardLM model. This JSON file is a list of dictionaries, each dictionary contains the following fields:

  • instruction: str, describes the task the model should perform. Each of the 70K instructions is unique.
  • output: str, the answer to the instruction as generated by gpt-3.5-turbo.

WizardLM Weights

We release [WizardLM] weights as delta weights to comply with the LLaMA model license. You can add our delta to the original LLaMA weights to obtain the WizardLM weights. Instructions:

  1. Get the original LLaMA weights in the huggingface format by following the instructions here.
  2. Please download our delta model at the following link
  3. Use the following scripts to get WizardLM weights by applying our delta:
python src/weight_diff_wizard.py recover --path_raw <path_to_step_1_dir> --path_diff <path_to_step_2_dir> --path_tuned <path_to_store_recovered_weights>

Fine-tuning

We fine-tune WizardLM using code from Llama-X. We fine-tune LLaMA-7B and LLaMA-13B with the following hyperparameters:

Hyperparameter LLaMA-7B LLaMA-13B
Batch size 64 384
Learning rate 2e-5 2e-5
Epochs 3 3
Max length 2048 2048
Warmup step 2 50
LR scheduler cosine cosine

To reproduce our fine-tuning of WizardLM, please follow the following steps:

  1. According to the instructions of Llama-X, install the environment, download the training code, and deploy.
  2. Replace the train.py with the train_freeform.py in our repo(src/train_freeform.py)
  3. Execute the following training command:
deepspeed train_freeform.py \
    --model_name_or_path /path/to/llama-7B/hf \
    --data_path /path/to/alpaca_evol_instruct_70k.json \
    --output_dir /path/to/wizardlm-7B/hf/ft \
    --num_train_epochs 3 \
    --model_max_length 2048 \
    --per_device_train_batch_size 8 \
    --per_device_eval_batch_size 1 \
    --gradient_accumulation_steps 1 \
    --evaluation_strategy "no" \
    --save_strategy "steps" \
    --save_steps 800 \
    --save_total_limit 3 \
    --learning_rate 2e-5 \
    --warmup_steps 2 \
    --logging_steps 2 \
    --lr_scheduler_type "cosine" \
    --report_to "tensorboard" \
    --gradient_checkpointing True \
    --deepspeed configs/deepspeed_config.json \
    --fp16 True

Distributed Fine-tuning

See Distributed Fine-tuning

Inference

We provide the decoding script for WizardLM, which reads a input file and generates corresponding responses for each sample, and finally consolidates them into an output file.

You can specify base_model, input_data_path and output_data_path in src\inference_wizardlm.py to set the decoding model, path of input file and path of output file. The decoding command:

python src\inference_wizardlm.py

Evaluation

To evaluate Wizard, we conduct human evaluation on the inputs from our human instruct evaluation set WizardLM_testset.jsonl . This evaluation set was collected by the authors and covers a diverse list of user-oriented instructions including difficult Coding Generation & Debugging, Math, Reasoning, Complex Formats, Academic Writing, Extensive Disciplines, and so on. We performed a blind pairwise comparison between Wizard and baselines. Specifically, we recruit 10 well-educated annotators to rank the models from 1 to 5 on relevance, knowledgeable, reasoning, calculation and accuracy.

WizardLM achieved significantly better results than Alpaca and Vicuna-7b.

WizardLM

In the high-difficulty section of our test set (difficulty level >= 8), WizardLM even outperforms ChatGPT, with a win rate 7.9% larger than Chatgpt (42.9% vs. 35.0%). This indicates that our method can significantly improve the ability of large language models to handle complex instructions.

WizardLM

Citation

Please cite the repo if you use the data or code in this repo.

@misc{xu2023wizardlm,
      title={WizardLM: Empowering Large Language Models to Follow Complex Instructions},
      author={Can Xu and Qingfeng Sun and Kai Zheng and Xiubo Geng and Pu Zhao and Jiazhan Feng and Chongyang Tao and Daxin Jiang},
      year={2023},
      eprint={2304.12244},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}

Disclaimer

The resources, including code, data, and model weights, associated with this project are restricted for academic research purposes only and cannot be used for commercial purposes. The content produced by any version of WizardLM is influenced by uncontrollable variables such as randomness, and therefore, the accuracy of the output cannot be guaranteed by this project. This project does not accept any legal liability for the content of the model output, nor does it assume responsibility for any losses incurred due to the use of associated resources and output results.