NeMo
PyTorch
English
text generation
causal-lm
Edit model card

SteerLM Llama-2 13B

|Model architecture|Model size|Language

Model Description

SteerLM Llama-2 is a 13 billion parameter generative language model based on the open-source Llama-2 architecture. It has been customized using the SteerLM method developed by NVIDIA to allow for user control of model outputs during inference.

Key capabilities enabled by SteerLM:

  • Dynamic steering of responses by specifying desired attributes like quality, helpfulness, and toxicity.
  • Simplified training compared to RLHF techniques like fine-tuning and bootstrapping.

Model Architecture and Training

The SteerLM method involves the following key steps:

  1. Train an attribute prediction model on human annotated data to evaluate response quality.
  2. Use this model to annotate diverse datasets and enrich training data.
  3. Perform conditioned fine-tuning to align responses with specified combinations of attributes.
  4. (Optionally) Bootstrap training through model sampling and further fine-tuning.

SteerLM Llama-2 applies this technique on top of the Llama-2 architecture. It was pretrained on internet-scale data and then customized using OASST and HH-RLHF data.

Getting started

To use SteerLM Llama-2, follow these steps:

  1. You will need to install NVIDIA Apex and NeMo.
git clone https://github.com/NVIDIA/apex.git
cd apex
git checkout 03c9d80ed54c0eaa5b581bf42ceca3162f085327
pip install -v --disable-pip-version-check --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" --global-option="--fast_layer_norm" --global-option="--distributed_adam" --global-option="--deprecated_fused_adam" ./
pip install nemo_toolkit['nlp']==1.17.0

Alternatively, you can use NVIDIA NeMo Framework training docker container with all dependencies pre-installed.

  1. Launch eval server
git clone https://github.com/NVIDIA/NeMo.git 
cd NeMo/examples/nlp/language_modeling
git checkout v1.17.0
python megatron_gpt_eval.py gpt_model_file=LLAMA2-13B-SteerLM.nemo trainer.precision=16 server=True tensor_model_parallel_size=4 trainer.devices=1 pipeline_model_parallel_split_rank=0
  1. Send prompts to your model!
import json
import requests

def get_answer(question, max_tokens, values, eval_port='1427'):
    prompt = f"""<extra_id_0>System
A chat between a curious user and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the user's questions.

<extra_id_1>User
{question}
<extra_id_1>Assistant
<extra_id_2>{values}
"""

    prompts = [prompt]
    data = {
        "sentences": prompts,
        "tokens_to_generate": max_tokens,
        "top_k": 1,
        'greedy': True,
        'end_strings': ["<extra_id_1>", "quality:", "quality:9", "quality:0"]
    }

    url = f"http://localhost:{eval_port}/generate"
    response = requests.put(url, json=data)
    json_response = response.json()

    response_sentence = json_response['sentences'][0][len(prompt):]
    return response_sentence


def encode_labels(labels):
    items = []
    for key in labels:
        value = labels[key]
        items.append(f'{key}:{value}')
    return ','.join(items)

values = OrderedDict([
    ('quality', 9),
    ('toxicity', 0),
    ('humor', 0),
    ('creativity', 0),
    ('violence', 0),
    ('helpfulness', 9),
    ('not_appropriate', 0),
])
values = encode_labels(values)

question = """Where and when did techno music originate?"""

print(get_answer(question, 4096, values))

Evaluation results

MT-bench evaluation results:

Category score
total 6.13
writing 7.8
roleplay 8.15
extraction 5.52
stem 8.43
humanities 9.02
reasoning 4.95
math 2.15
coding 3.0

Limitations

Meta’s Llama2 model was trained on publicly available data sources that could include unsafe content. See Meta's Llama2 paper, section 4.1, "Safety in Pretraining" for more details. The model may amplify unsafe content, especially when prompted with unsafe content. NVIDIA did not perform bias or toxicity removal or model alignment on the Llama2 model. NVIDIA’s SteerLM methodology applied to Llama2 provides the opportunity to improve model quality through a fine-tuning technique based on data annotation of specific important categories and allows adjustments to model output at run-time based on those same categories.

License

  • Llama 2 is licensed under the LLAMA 2 Community License, Copyright © Meta Platforms, Inc. All Rights Reserved.
  • Your use of the Llama Materials must comply with applicable laws and regulations (including trade compliance laws and regulations) and adhere to the Acceptable Use Policy for the Llama Materials.

References

Downloads last month
53
Inference API
Unable to determine this model’s pipeline type. Check the docs .