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InternLM

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Introduction

InternLM is an open-sourced lightweight training framework aims to support model pre-training without the need for extensive dependencies. With a single codebase, it supports pre-training on large-scale clusters with thousands of GPUs, and fine-tuning on a single GPU while achieving remarkable performance optimizations. InternLM achieves nearly 90% acceleration efficiency during training on 1024 GPUs.

Based on the InternLM training framework, we have released two open-sourced pretrained model InternLM-7B and InternLM-20B.

News

[20231213] InternLM-7B-Chat and InternLM-20B-Chat checkpoints are updated. With an improved finetuning strategy, the new chat models can generate higher quality responses with greater stylistic diversity. [20230920] InternLM-20B is released with base and chat versions.

Model Zoo

Our models are released in three platforms: Transformers, ModelScope and OpenXLab.

  • There are two kinds of model weights:
    1. huggingface type(marked as HF)
    2. original model weight(marked as Original), providing in OpenXLab, which can be loaded by InternLM and finetuned directly.
Model Transformers(HF) ModelScope(HF) OpenXLab(HF) OpenXLab(Original) Release Date
InternLM Chat 20B 🤗internlm/internlm-chat-20b Shanghai_AI_Laboratory/internlm-chat-20b Open in OpenXLab Open in OpenXLab 2023-12-12
InternLM 20B 🤗internlm/internlm-20b Shanghai_AI_Laboratory/internlm-20b Open in OpenXLab Open in OpenXLab 2023-09-20
InternLM Chat 7B 🤗internlm/internlm-chat-7b Shanghai_AI_Laboratory/internlm-chat-7b Open in OpenXLab Open in OpenXLab 2023-12-12
InternLM 7B 🤗internlm/internlm-7b Shanghai_AI_Laboratory/internlm-7b Open in OpenXLab Open in OpenXLab 2023-07-06

Introduction

InternLM-20B was pre-trained on over 2.3T Tokens containing high-quality English, Chinese, and code data. Additionally, the Chat version has undergone SFT and RLHF training, enabling it to better and more securely meet users' needs.

In terms of model structure, InternLM-20B opted for a deeper architecture, with a depth set at 60 layers. This surpasses the conventional 7B and 13B models that utilize 32 or 40 layers. When parameters are limited, increasing the number of layers can enhance the model's overall capability. Furthermore, compared to InternLM-7B, the pre-training data used for InternLM-20B underwent higher quality cleansing and was supplemented with data rich in knowledge and designed for reinforcing understanding and reasoning capabilities. As a result, it exhibits significant improvements in understanding, reasoning, mathematical, and programming abilities—all of which test the technical proficiency of language models. Overall, InternLM-20B features the following characteristics:

  • Outstanding overall performance
  • Strong utility invocation capability
  • Supports a 16k context length (Through inference extrapolation)
  • Better value alignment.

Performance Evaluation

On the 5 capability dimensions proposed by OpenCompass, InternLM-20B has achieved excellent results (the bolded scores represent the best performances within the 13B-33B parameter range).

Capability Llama-13B Llama2-13B Baichuan2-13B InternLM-20B Llama-33B Llama-65B Llama2-70B
Language 42.5 47 47.5 55 44.6 47.1 51.6
Knowledge 58.2 58.3 48.9 60.1 64 66 67.7
Understanding 45.5 50.9 58.1 67.3 50.6 54.2 60.8
Reasoning 42.7 43.6 44.2 54.9 46.4 49.8 55
Examination 37.3 45.2 51.8 62.5 47.4 49.7 57.3
Overall 43.8 47.3 49.4 59.2 48.9 51.9 57.4

The table below compares the performance of mainstream open-source models on some influential and typical datasets.

Benchmarks Llama-13B Llama2-13B Baichuan2-13B InternLM-20B Llama-33B Llama-65B Llama2-70B
Examination MMLU 47.73 54.99 59.55 62.05 58.73 63.71 69.75
C-Eval (val) 31.83 41.4 59.01 58.8 37.47 40.36 50.13
AGI-Eval 22.03 30.93 37.37 44.58 33.53 33.92 40.02
Knowledge BoolQ 78.75 82.42 67 87.46 84.43 86.61 87.74
TriviaQA 52.47 59.36 46.61 57.26 66.24 69.79 70.71
NaturalQuestions 20.17 24.85 16.32 25.15 30.89 33.41 34.16
Understanding CMRC 9.26 31.59 29.85 68.78 14.17 34.73 43.74
CSL 55 58.75 63.12 65.62 57.5 59.38 60
RACE (middle) 53.41 63.02 68.94 86.35 64.55 72.35 81.55
RACE (high) 47.63 58.86 67.18 83.28 62.61 68.01 79.93
XSum 20.37 23.37 25.23 35.54 20.55 19.91 25.38
Reasoning WinoGrande 64.64 64.01 67.32 69.38 66.85 69.38 69.77
BBH 37.93 45.62 48.98 52.51 49.98 58.38 64.91
GSM8K 20.32 29.57 52.62 52.62 42.3 54.44 63.31
PIQA 79.71 79.76 78.07 80.25 81.34 82.15 82.54
Programming HumanEval 14.02 18.9 17.07 25.61 17.68 18.9 26.22
MBPP 20.6 26.8 30.8 35.6 28.4 33.6 39.6

Overall, InternLM-20B comprehensively outperforms open-source models in the 13B parameter range in terms of overall capabilities, and on inference evaluation sets, it approaches or even surpasses the performance of Llama-65B.

  • The evaluation results were obtained from OpenCompass 20230920.
  • The evaluation data may have numerical differences due to the version iteration of OpenCompass, so please refer to the latest evaluation results of OpenCompass.
InternLM-7B

News

Introduction

InternLM-7B contains a 7 billion parameter base model and a chat model tailored for practical scenarios. The model has the following characteristics:

  • It leverages trillions of high-quality tokens for training to establish a powerful knowledge base.
  • It supports an 8k context window length, enabling longer input sequences and stronger reasoning capabilities.
  • It provides a versatile toolset for users to flexibly build their own workflows.

Performance Evaluation

We conducted a comprehensive evaluation of InternLM using the open-source evaluation tool OpenCompass. The evaluation covered five dimensions of capabilities: disciplinary competence, language competence, knowledge competence, inference competence, and comprehension competence. Here are some of the evaluation results, and you can visit the OpenCompass leaderboard for more evaluation results.

Datasets\Models InternLM-Chat-7B InternLM-7B LLaMA-7B Baichuan-7B ChatGLM2-6B Alpaca-7B Vicuna-7B
C-Eval(Val) 52.0 53.4 24.2 42.7 50.9 28.9 31.2
MMLU 52.6 51.0 35.2* 41.5 46.0 39.7 47.3
AGIEval 46.4 37.6 20.8 24.6 39.0 24.1 26.4
CommonSenseQA 80.8 59.5 65.0 58.8 60.0 68.7 66.7
BUSTM 80.6 50.6 48.5 51.3 55.0 48.8 62.5
CLUEWSC 81.8 59.1 50.3 52.8 59.8 50.3 52.2
MATH 5.0 7.1 2.8 3.0 6.6 2.2 2.8
GSM8K 36.2 31.2 10.1 9.7 29.2 6.0 15.3
HumanEval 15.9 10.4 14.0 9.2 9.2 9.2 11.0
RACE(High) 80.3 57.4 46.9* 28.1 66.3 40.7 54.0
  • The evaluation results were obtained from OpenCompass 20230706 (some data marked with *, which means come from the original papers), and evaluation configuration can be found in the configuration files provided by OpenCompass.
  • The evaluation data may have numerical differences due to the version iteration of OpenCompass, so please refer to the latest evaluation results of OpenCompass.

Limitations: Although we have made efforts to ensure the safety of the model during the training process and to encourage the model to generate text that complies with ethical and legal requirements, the model may still produce unexpected outputs due to its size and probabilistic generation paradigm. For example, the generated responses may contain biases, discrimination, or other harmful content. Please do not propagate such content. We are not responsible for any consequences resulting from the dissemination of harmful information.

Usage Examples

Import from Transformers

To load the InternLM 7B Chat model using Transformers, use the following code:

>>> from transformers import AutoTokenizer, AutoModelForCausalLM
>>> tokenizer = AutoTokenizer.from_pretrained("internlm/internlm-chat-7b", trust_remote_code=True)
>>> model = AutoModelForCausalLM.from_pretrained("internlm/internlm-chat-7b", trust_remote_code=True).cuda()
>>> model = model.eval()
>>> response, history = model.chat(tokenizer, "hello", history=[])
>>> print(response)
Hello! How can I help you today?
>>> response, history = model.chat(tokenizer, "please provide three suggestions about time management", history=history)
>>> print(response)
Sure, here are three tips for effective time management:

1. Prioritize tasks based on importance and urgency: Make a list of all your tasks and categorize them into "important and urgent," "important but not urgent," and "not important but urgent." Focus on completing the tasks in the first category before moving on to the others.
2. Use a calendar or planner: Write down deadlines and appointments in a calendar or planner so you don't forget them. This will also help you schedule your time more effectively and avoid overbooking yourself.
3. Minimize distractions: Try to eliminate any potential distractions when working on important tasks. Turn off notifications on your phone, close unnecessary tabs on your computer, and find a quiet place to work if possible.

Remember, good time management skills take practice and patience. Start with small steps and gradually incorporate these habits into your daily routine.

Import from ModelScope

To load the InternLM model using ModelScope, use the following code:

from modelscope import snapshot_download, AutoTokenizer, AutoModelForCausalLM
import torch
model_dir = snapshot_download('Shanghai_AI_Laboratory/internlm-chat-7b', revision='v1.0.0')
tokenizer = AutoTokenizer.from_pretrained(model_dir, device_map="auto", trust_remote_code=True,torch_dtype=torch.float16)
model = AutoModelForCausalLM.from_pretrained(model_dir,device_map="auto",  trust_remote_code=True,torch_dtype=torch.float16)
model = model.eval()
response, history = model.chat(tokenizer, "hello", history=[])
print(response)
response, history = model.chat(tokenizer, "please provide three suggestions about time management", history=history)
print(response)

Dialogue

You can interact with the InternLM Chat 7B model through a frontend interface by running the following code:

pip install streamlit==1.24.0
pip install transformers==4.30.2
streamlit run web_demo.py

The effect is as follows

demo

Deployment

We use LMDeploy to complete the one-click deployment of InternLM.

  1. First, install LMDeploy:
python3 -m pip install lmdeploy
  1. Use the following command for iteractive communication with internlm-chat-7b model on localhost:
lmdeploy chat turbomind InternLM/internlm-chat-7b --model-name internlm-chat-7b
  1. Besides chatting via command line, you can start lmdeploy api_server as below:
lmdeploy serve api_server InternLM/internlm-chat-7b --model-name internlm-chat-7b

For a comprehensive understanding of the api_server RESTful API, kindly consult this guide. For additional deployment tutorials, feel free to explore here.

Fine-tuning & Training

Pre-training and Fine-tuning Tutorial

Please refer to Usage Tutorial to start InternLM installation, data processing, pre-training and fine-tuning.

Convert to Transformers Format

The model trained by InternLM can be easily converted to HuggingFace Transformers format, which is convenient for seamless docking with various open source projects in the community. With the help of tools/transformers/convert2hf.py, the weights saved during training can be converted into transformers format with one command

python tools/transformers/convert2hf.py --src_folder origin_ckpt/ --tgt_folder hf_ckpt/ --tokenizer ./tools/V7_sft.model

After conversion, it can be loaded as transformers by the following code

>>> from transformers import AutoTokenizer, AutoModel
>>> model = AutoModel.from_pretrained("hf_ckpt/", trust_remote_code=True).cuda()

Training System

System Architecture

Please refer to the System Architecture document for further details.

Training Performance

InternLM deeply integrates Flash-Attention, Apex and other high-performance model operators to improve training efficiency. By building the Hybrid Zero technique, it achieves efficient overlap of computation and communication, significantly reducing cross-node communication traffic during training. InternLM supports expanding the 7B model from 8 GPUs to 1024 GPUs, with an acceleration efficiency of up to 90% at the thousand-GPU scale, a training throughput of over 180 TFLOPS, and an average of over 3600 tokens per GPU per second. The following table shows InternLM's scalability test data at different configurations:

GPU Number 8 16 32 64 128 256 512 1024
TGS 4078 3939 3919 3944 3928 3920 3835 3625
TFLOPS 193 191 188 188 187 185 186 184

TGS represents the average number of tokens processed per GPU per second. For more performance test data, please refer to the Training Performance document for further details.

Contribution

We appreciate all the contributors for their efforts to improve and enhance InternLM. Community users are highly encouraged to participate in the project. Please refer to the contribution guidelines for instructions on how to contribute to the project.

Acknowledgements

InternLM codebase is an open-source project contributed by Shanghai AI Laboratory and researchers from different universities and companies. We would like to thank all the contributors for their support in adding new features to the project and the users for providing valuable feedback. We hope that this toolkit and benchmark can provide the community with flexible and efficient code tools for fine-tuning InternLM and developing their own models, thus continuously contributing to the open-source community. Special thanks to the two open-source projects, flash-attention and ColossalAI.

License

The code is licensed under Apache-2.0, while model weights are fully open for academic research and also allow free commercial usage. To apply for a commercial license, please fill in the application form (English)/申请表(中文). For other questions or collaborations, please contact [email protected].

Citation

@misc{2023internlm,
    title={InternLM: A Multilingual Language Model with Progressively Enhanced Capabilities},
    author={InternLM Team},
    howpublished = {\url{https://github.com/InternLM/InternLM}},
    year={2023}
}

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