tuned-lens / app.py
Lev McKinney
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import torch
from tuned_lens.nn.lenses import TunedLens, LogitLens
from transformers import AutoModelForCausalLM, AutoTokenizer
from tuned_lens.plotting import plot_lens
import gradio as gr
from plotly import graph_objects as go
device = torch.device("cpu")
print(f"Using device {device} for inference")
model = AutoModelForCausalLM.from_pretrained("EleutherAI/pythia-410m-deduped")
model = model.to(device)
tokenizer = AutoTokenizer.from_pretrained("EleutherAI/pythia-410m-deduped")
tuned_lens = TunedLens.load("pythia-410m-deduped", map_location=device)
logit_lens = LogitLens(model)
lens_options_dict = {
"Tuned Lens": tuned_lens,
"Logit Lens": logit_lens,
}
statistic_options_dict = {
"Entropy": "entropy",
"Cross Entropy": "ce",
"Forward KL": "forward_kl",
}
def make_plot(lens, text, statistic, token_cutoff):
input_ids = tokenizer.encode(text, return_tensors="pt")
if len(input_ids[0]) == 0:
return go.Figure(layout=dict(title="Please enter some text."))
if token_cutoff < 1:
return go.Figure(layout=dict(title="Please provide valid token cut off."))
fig = plot_lens(
model,
tokenizer,
lens_options_dict[lens],
layer_stride=2,
input_ids=input_ids,
start_pos=max(len(input_ids[0]) - token_cutoff, 0),
statistic=statistic_options_dict[statistic],
)
return fig
preamble = """
# The Tuned Lens πŸ”Ž
A tuned lens allows us to peak at the iterative computations a transformer uses to compute the next token.
A lens into a transformer with n layers allows you to replace the last $m$ layers of the model with an [affine transformation](https://pytorch.org/docs/stable/generated/torch.nn.Linear.html) (we call these affine translators).
This essentially skips over these last few layers and lets you see the best prediction that can be made from the model's representations, i.e. the residual stream, at layer $n - m$. Since the representations may be rotated, shifted, or stretched from layer to layer it's useful to train the len's affine adapters specifically on each layer. This training is what differentiates this method from simpler approaches that decode the residual stream of the network directly using the unembeding layer i.e. the logit lens. We explain this process in [the paper](https://arxiv.org/abs/2303.08112).
## Usage
Since the tuned lens produces a distribution of predictions to visualize it's output we need to we need to provide a summary statistic to plot. The default is simply [entropy](https://en.wikipedia.org/wiki/Entropy_(information_theory)), but you can also choose the [cross entropy](https://en.wikipedia.org/wiki/Cross_entropy) with the target token, or the [KL divergence](https://en.wikipedia.org/wiki/Kullback%E2%80%93Leibler_divergence) between the model's predictions and the tuned lens' predictions. You can also hover over a token to see more of the distribution i.e. the top 10 most probable tokens and their probabilities.
## Examples
Here are some interesting examples you can try.
### Copy pasting:
```
Copy: A!2j!#u&NGApS&MkkHe8Gm!#
Paste: A!2j!#u&NGApS&MkkHe8Gm!#
```
### Trivial in-context learning
```
inc 1 2
inc 4 5
inc 13
```
#### Addition
```
add 1 1 2
add 3 4 7
add 13 2
```
"""
with gr.Blocks() as demo:
gr.Markdown(preamble)
with gr.Column():
text = gr.Textbox(
value="the iterative computations a transformer uses to compute the next",
label="Input Text",
)
with gr.Row():
lens_options = gr.Dropdown(
list(lens_options_dict.keys()), value="Tuned Lens", label="Select Lens"
)
statistic = gr.Dropdown(
list(statistic_options_dict.keys()),
value="Entropy",
label="Select Statistic",
)
token_cutoff = gr.Slider(
maximum=20, minimum=2, value=10, step=1, label="Plot Last N Tokens"
)
examine_btn = gr.Button(value="Submit")
plot = gr.Plot()
examine_btn.click(make_plot, [lens_options, text, statistic, token_cutoff], plot)
demo.load(make_plot, [lens_options, text, statistic, token_cutoff], plot)
if __name__ == "__main__":
demo.launch()