Llama3-70B-SteerLM-Chat
License
The use of this model is governed by the Llama 3 Community License Agreement
Terms of use
By accessing this model, you are agreeing to the LLama 3 terms and conditions of the license, acceptable use policy and Meta’s privacy policy
Description:
Llama3-70B-SteerLM-Chat is a 70 billion parameter generative language model instruct-tuned using SteerLM technique. It takes input with context length up to 4,096 tokens. The model has been aligned using the SteerLM method developed by NVIDIA to allow for user control of model outputs (in creativity, complexity and verbosity) during inference while having simplified training compared to RLHF techniques.
Llama3-70B-SteerLM-Chat is trained with NVIDIA NeMo, an end-to-end, cloud-native framework to build, customize, and deploy generative AI models anywhere. It includes training and inferencing frameworks, guardrailing toolkits, data curation tools, and pretrained models, offering enterprises an easy, cost-effective, and fast way to adopt generative AI.
You can train the model using NeMo Aligner following SteerLM training user guide or run inference based on steps below.
References
- HelpSteer2
- SteerLM method
- Llama 3: Open Foundation and Instruct Models
- Meta's Llama 3 Webpage
- Meta's Llama 3 Model Card
Model Architecture:
Architecture Type: Transformer
Network Architecture: Llama 3
Llama3-70B-SteerLM-Chat is trained from Llama 3 70B Base with the Daring-Anteater and HelpSteer2 datasets.
Software Integration:
Toolkit: NeMo Framework
Supported Hardware Microarchitecture Compatibility:
- NVIDIA Ampere
- NVIDIA Hopper
- NVIDIA Turing
Supported Operating System(s): Linux
Test Hardware H100, A100 80GB, A100 40GB
Input:
Input Format: Text
Input Parameters: Temperature, Top P = 1, Max Input Tokens: 4096
Output:
Output Format: Text
Output Parameters: Max Output Tokens: 4096
Steps to run inference:
We demonstrate inference using NVIDIA NeMo Framework, which allows hassle-free model deployment based on NVIDIA TRT-LLM, a highly optimized inference solution focussing on high throughput and low latency.
Pre-requisite: You would need at least a machine with 4 40GB or 2 80GB NVIDIA GPUs, and 300GB of free disk space.
Please sign up to get free and immediate access to NVIDIA NeMo Framework container. If you don’t have an NVIDIA NGC account, you will be prompted to sign up for an account before proceeding.
If you don’t have an NVIDIA NGC API key, sign into NVIDIA NGC, selecting organization/team: ea-bignlp/ga-participants and click Generate API key. Save this key for the next step. Else, skip this step.
On your machine, docker login to nvcr.io using
docker login nvcr.io Username: $oauthtoken Password: <Your Saved NGC API Key>
Download the required container
docker pull nvcr.io/ea-bignlp/ga-participants/nemofw-inference:23.10
Download the checkpoint
git lfs install git clone https://huggingface.co/nvidia/Llama3-70B-SteerLM-Chat
Convert checkpoint into nemo format
cd Llama3-70B-SteerLM-Chat tar -cvf Llama3-70B-SteerLM-Chat.nemo . mv Llama3-70B-SteerLM-Chat.nemo ../ cd .. rm -r Llama3-70B-SteerLM-Chat
Run Docker container (In addition, to use Llama3 tokenizer, you need to
export HF_HOME=<YOUR_HF_HOME_CONTAINING_TOKEN_WITH_LLAMA3_70B_ACCESS>
)docker run --gpus all -it --rm --shm-size=300g -p 8000:8000 -v ${PWD}/Llama3-70B-PPO-Chat.nemo:/opt/checkpoints/Llama3-70B-PPO-Chat.nemo,${HF_HOME}:/hf_home -w /opt/NeMo nvcr.io/ea-bignlp/ga-participants/nemofw-inference:23.10
Within the container, start the server in the background. This step does both conversion of the nemo checkpoint to TRT-LLM and then deployment using TRT-LLM. For an explanation of each argument and advanced usage, please refer to NeMo FW Deployment Guide
HF_HOME=/hf_home python scripts/deploy/deploy_triton.py --nemo_checkpoint /opt/checkpoints/Llama3-70B-PPO-Chat.nemo --model_type="llama" --triton_model_name Llama3-70B-PPO-Chat --triton_http_address 0.0.0.0 --triton_port 8000 --num_gpus 2 --max_input_len 3072 --max_output_len 1024 --max_batch_size 1 &
Once the server is ready (i.e. when you see this messages below), you are ready to launch your client code
Started HTTPService at 0.0.0.0:8000 Started GRPCInferenceService at 0.0.0.0:8001 Started Metrics Service at 0.0.0.0:8002
from nemo.deploy import NemoQuery PROMPT_TEMPLATE = """<extra_id_0>System <extra_id_1>User {prompt} <extra_id_1>Assistant <extra_id_2>helpfulness:4,correctness:4,coherence:4,complexity:2,verbosity:2 """ question = "Write a poem on NVIDIA in the style of Shakespeare" prompt = PROMPT_TEMPLATE.format(prompt=question) print(prompt) nq = NemoQuery(url="localhost:8000", model_name="Llama3-70B-SteerLM-Chat") output = nq.query_llm(prompts=[prompt], max_output_token=15, top_k=1, top_p=0.0, temperature=1.0) #this container currently does not support stop words but you do something like this as workaround output = output[0][0].split("\n<extra_id_1>")[0] print(output)
If you would support multi-turn conversations or adjust attribute values at inference time, here is some guidance:
Default template for Single Turn
<extra_id_0>System <extra_id_1>User {prompt 1} <extra_id_1>Assistant <extra_id_2>helpfulness:4,correctness:4,coherence:4,complexity:2,verbosity:2
Default template for Multi-Turn
<extra_id_0>System <extra_id_1>User {prompt 1} <extra_id_1>Assistant {response 1} <extra_id_1>User {prompt 2} <extra_id_1>Assistant <extra_id_2>helpfulness:4,correctness:4,coherence:4,complexity:2,verbosity:2
Each of the attributes (e.g. creativity, complexity and verbosity) can receive integer values in the range [0, 1, 2, 3, 4].
Evaluation
Model | MT Bench | Mean Response | TruthfulQA | AlpacaEval | Arena Hard |
---|---|---|---|---|---|
Details | (GPT-4-Turbo) | Length (Chars.) | MC2 | 2.0 LC (SE) | (95% CI) |
GPT-4-0613 | 8.12 | 1057.1 | 0.5900 | 30.20 (1.07) | 37.9 (-2.8, 2.4) |
Llama3 70B Instruct | 8.16 | 1683.0 | 0.6181 | 34.40 (1.38) | 41.1 (-2.0, 2.2) |
Llama3-70B-DPO-Chat | 8.09 | 1492.0 | 0.6328 | 29.17 (1.35) | 42.5 (-2.1, 2.4) |
Llama3-70B-PPO-Chat | 8.13 | 1497.3 | 0.5629 | 33.17 (1.38) | 39.9 (-2.4, 2.0) |
Llama3-70B-SteerLM-Chat | 8.28 | 1471.9 | 0.5913 | 29.93 (1.35) | 39.1 (-2.2, 2.4) |
Ethical Considerations:
NVIDIA believes Trustworthy AI is a shared responsibility and we have established policies and practices to enable development for a wide array of AI applications. When downloaded or used in accordance with our terms of service, developers should work with their supporting model team to ensure this model meets requirements for the relevant industry and use case and addresses unforeseen product misuse. For more detailed information on ethical considerations for this model, please see the Model Card++ Explainability, Bias, Safety & Security, and Privacy Subcards. Please report security vulnerabilities or NVIDIA AI Concerns here.
Limitations
The model was trained on the data that contains toxic language and societal biases originally crawled from the Internet. Therefore, the model may amplify those biases and return toxic responses especially when prompted with toxic prompts.
The model may generate answers that may be inaccurate, omit key information, or include irrelevant or redundant text producing socially unacceptable or undesirable text, even if the prompt itself does not include anything explicitly offensive.
We recommend deploying the model with NeMo Guardrails to mitigate these potential issues.
Contact
E-Mail: Zhilin Wang
Citation
If you find this model useful, please cite the following works
@misc{wang2024helpsteer2,
title={HelpSteer2: Open-source dataset for training top-performing reward models},
author={Zhilin Wang and Yi Dong and Olivier Delalleau and Jiaqi Zeng and Gerald Shen and Daniel Egert and Jimmy J. Zhang and Makesh Narsimhan Sreedhar and Oleksii Kuchaiev},
year={2024},
eprint={2406.08673},
archivePrefix={arXiv},
primaryClass={id='cs.CL' full_name='Computation and Language' is_active=True alt_name='cmp-lg' in_archive='cs' is_general=False description='Covers natural language processing. Roughly includes material in ACM Subject Class I.2.7. Note that work on artificial languages (programming languages, logics, formal systems) that does not explicitly address natural-language issues broadly construed (natural-language processing, computational linguistics, speech, text retrieval, etc.) is not appropriate for this area.'}
}
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