makenmtviz / bertviz_gradio.py
Gabriela Nicole Gonzalez Saez
Add files
056bbdc
raw
history blame contribute delete
No virus
11 kB
import json
import os
import uuid
from IPython.core.display import display, HTML, Javascript
from bertviz.util import format_special_chars, format_attention, num_layers
def head_view_mod(
attention=None,
tokens=None,
sentence_b_start=None,
prettify_tokens=True,
layer=None,
heads=None,
encoder_attention=None,
decoder_attention=None,
cross_attention=None,
encoder_tokens=None,
decoder_tokens=None,
include_layers=None,
html_action='view'
):
"""Render head view
Args:
For self-attention models:
attention: list of ``torch.FloatTensor``(one for each layer) of shape
``(batch_size(must be 1), num_heads, sequence_length, sequence_length)``
tokens: list of tokens
sentence_b_start: index of first wordpiece in sentence B if input text is sentence pair (optional)
For encoder-decoder models:
encoder_attention: list of ``torch.FloatTensor``(one for each layer) of shape
``(batch_size(must be 1), num_heads, encoder_sequence_length, encoder_sequence_length)``
decoder_attention: list of ``torch.FloatTensor``(one for each layer) of shape
``(batch_size(must be 1), num_heads, decoder_sequence_length, decoder_sequence_length)``
cross_attention: list of ``torch.FloatTensor``(one for each layer) of shape
``(batch_size(must be 1), num_heads, decoder_sequence_length, encoder_sequence_length)``
encoder_tokens: list of tokens for encoder input
decoder_tokens: list of tokens for decoder input
For all models:
prettify_tokens: indicates whether to remove special characters in wordpieces, e.g. Ġ
layer: index (zero-based) of initial selected layer in visualization. Defaults to layer 0.
heads: Indices (zero-based) of initial selected heads in visualization. Defaults to all heads.
include_layers: Indices (zero-based) of layers to include in visualization. Defaults to all layers.
Note: filtering layers may improve responsiveness of the visualization for long inputs.
html_action: Specifies the action to be performed with the generated HTML object
- 'view' (default): Displays the generated HTML representation as a notebook cell output
- 'return' : Returns an HTML object containing the generated view for further processing or custom visualization
"""
attn_data = []
if attention is not None:
if tokens is None:
raise ValueError("'tokens' is required")
if encoder_attention is not None or decoder_attention is not None or cross_attention is not None \
or encoder_tokens is not None or decoder_tokens is not None:
raise ValueError("If you specify 'attention' you may not specify any encoder-decoder arguments. This"
" argument is only for self-attention models.")
if include_layers is None:
include_layers = list(range(num_layers(attention)))
attention = format_attention(attention, include_layers)
if sentence_b_start is None:
attn_data.append(
{
'name': None,
'attn': attention.tolist(),
'left_text': tokens,
'right_text': tokens
}
)
else:
slice_a = slice(0, sentence_b_start) # Positions corresponding to sentence A in input
slice_b = slice(sentence_b_start, len(tokens)) # Position corresponding to sentence B in input
attn_data.append(
{
'name': 'All',
'attn': attention.tolist(),
'left_text': tokens,
'right_text': tokens
}
)
attn_data.append(
{
'name': 'Sentence A -> Sentence A',
'attn': attention[:, :, slice_a, slice_a].tolist(),
'left_text': tokens[slice_a],
'right_text': tokens[slice_a]
}
)
attn_data.append(
{
'name': 'Sentence B -> Sentence B',
'attn': attention[:, :, slice_b, slice_b].tolist(),
'left_text': tokens[slice_b],
'right_text': tokens[slice_b]
}
)
attn_data.append(
{
'name': 'Sentence A -> Sentence B',
'attn': attention[:, :, slice_a, slice_b].tolist(),
'left_text': tokens[slice_a],
'right_text': tokens[slice_b]
}
)
attn_data.append(
{
'name': 'Sentence B -> Sentence A',
'attn': attention[:, :, slice_b, slice_a].tolist(),
'left_text': tokens[slice_b],
'right_text': tokens[slice_a]
}
)
elif encoder_attention is not None or decoder_attention is not None or cross_attention is not None:
if encoder_attention is not None:
if encoder_tokens is None:
raise ValueError("'encoder_tokens' required if 'encoder_attention' is not None")
if include_layers is None:
include_layers = list(range(num_layers(encoder_attention)))
encoder_attention = format_attention(encoder_attention, include_layers)
attn_data.append(
{
'name': 'Encoder',
'attn': encoder_attention.tolist(),
'left_text': encoder_tokens,
'right_text': encoder_tokens
}
)
if decoder_attention is not None:
if decoder_tokens is None:
raise ValueError("'decoder_tokens' required if 'decoder_attention' is not None")
if include_layers is None:
include_layers = list(range(num_layers(decoder_attention)))
decoder_attention = format_attention(decoder_attention, include_layers)
attn_data.append(
{
'name': 'Decoder',
'attn': decoder_attention.tolist(),
'left_text': decoder_tokens,
'right_text': decoder_tokens
}
)
if cross_attention is not None:
if encoder_tokens is None:
raise ValueError("'encoder_tokens' required if 'cross_attention' is not None")
if decoder_tokens is None:
raise ValueError("'decoder_tokens' required if 'cross_attention' is not None")
if include_layers is None:
include_layers = list(range(num_layers(cross_attention)))
cross_attention = format_attention(cross_attention, include_layers)
attn_data.append(
{
'name': 'Cross',
'attn': cross_attention.tolist(),
'left_text': decoder_tokens,
'right_text': encoder_tokens
}
)
else:
raise ValueError("You must specify at least one attention argument.")
if layer is not None and layer not in include_layers:
raise ValueError(f"Layer {layer} is not in include_layers: {include_layers}")
# Generate unique div id to enable multiple visualizations in one notebook
# vis_id = 'bertviz-%s'%(uuid.uuid4().hex)
vis_id = 'bertviz'#-%s'%(uuid.uuid4().hex)
# Compose html
if len(attn_data) > 1:
options = '\n'.join(
f'<option value="{i}">{attn_data[i]["name"]}</option>'
for i, d in enumerate(attn_data)
)
select_html = f'Attention: <select id="filter">{options}</select>'
else:
select_html = ""
vis_html = f"""
<div id="{vis_id}" style="font-family:'Helvetica Neue', Helvetica, Arial, sans-serif;">
<span style="user-select:none">
Layer: <select id="layer"></select>
{select_html}
</span>
<div id='vis'></div>
</div>
"""
for d in attn_data:
attn_seq_len_left = len(d['attn'][0][0])
if attn_seq_len_left != len(d['left_text']):
raise ValueError(
f"Attention has {attn_seq_len_left} positions, while number of tokens is {len(d['left_text'])} "
f"for tokens: {' '.join(d['left_text'])}"
)
attn_seq_len_right = len(d['attn'][0][0][0])
if attn_seq_len_right != len(d['right_text']):
raise ValueError(
f"Attention has {attn_seq_len_right} positions, while number of tokens is {len(d['right_text'])} "
f"for tokens: {' '.join(d['right_text'])}"
)
if prettify_tokens:
d['left_text'] = format_special_chars(d['left_text'])
d['right_text'] = format_special_chars(d['right_text'])
params = {
'attention': attn_data,
'default_filter': "0",
'root_div_id': vis_id,
'layer': layer,
'heads': heads,
'include_layers': include_layers
}
# require.js must be imported for Colab or JupyterLab:
if html_action == 'gradio':
html1 = HTML('<script src="https://cdnjs.cloudflare.com/ajax/libs/require.js/2.3.6/require.min.js"></script>')
html2 = HTML(vis_html)
return {'html1': html1, 'html2' : html2, 'params': params }
if html_action == 'view':
display(HTML('<script src="https://cdnjs.cloudflare.com/ajax/libs/require.js/2.3.6/require.min.js"></script>'))
display(HTML(vis_html))
__location__ = os.path.realpath(
os.path.join(os.getcwd(), os.path.dirname(__file__)))
vis_js = open(os.path.join(__location__, 'head_view.js')).read().replace("PYTHON_PARAMS", json.dumps(params))
display(Javascript(vis_js))
elif html_action == 'return':
html1 = HTML('<script src="https://cdnjs.cloudflare.com/ajax/libs/require.js/2.3.6/require.min.js"></script>')
html2 = HTML(vis_html)
__location__ = os.path.realpath(
os.path.join(os.getcwd(), os.path.dirname(__file__)))
vis_js = open(os.path.join(__location__, 'head_view.js')).read().replace("PYTHON_PARAMS", json.dumps(params))
html3 = Javascript(vis_js)
script = '\n<script type="text/javascript">\n' + html3.data + '\n</script>\n'
head_html = HTML(html1.data + html2.data + script)
return head_html
else:
raise ValueError("'html_action' parameter must be 'view' or 'return")