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Model Card for FalconAlpaca

FalconAlpaca is Falcon-7B trained on the Stanford Alpaca Dataset

Model Details

This model was an attempt to influence the learned outputs of Falcon-7B to adapt the outputs to become more information-rich and focused. Trained using Lit GPT, the model took 2 hours to train on 1 4xA6000 node.

Model Description

  • License: [Apache 2.0]
  • Finetuned from model : Falcon-7B

Model Sources

Stanford Alpaca Dataset

Out-of-Scope Use

This model is not intended for anything but testing purposes. There have been no attempts to control/remove bias, toxicity, or any other form of potentially dangerous or harmful messages.

Bias, Risks, and Limitations

No effort was made to remove any wrong or harmful information from Falcon-7B or the Alpaca dataset. Any risks and limitations from either of those datasets/models carry over to this project as well.

How to Get Started with the Model

Download and install libraries for Lit GPT

python generate/adapter_v2.py \
    --adapter_path path/to/model/lit_model_adapter_finetuned.pth \
    --checkpoint_dir path/to/model \
    --prompt "What temperature should I cook pork at to ensure it is safe?"

This uses around 14GB of VRAM. If you need to use less VRAM, you can add the parameters

--quantize llm.int8

or

--quantize gptq.int4

Training Data

Stanford Alpaca Dataset

Training Hyperparameters

The defaults were as follows

learning_rate = 9e-3
batch_size = 32
micro_batch_size = 2
gradient_accumulation_iters = 16
epoch_size = 50000
num_epochs = 5
max_iters = 125000
weight_decay = 0.02
warmup_iters = 50000

More Information

HeitechSoft

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