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Color tokens by probability and/or perplexity (#3078)
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extensions/perplexity_colors/script.py
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extensions/perplexity_colors/script.py
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import gradio
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import torch
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from transformers import LogitsProcessor
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import numpy as np
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from modules import shared
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params = {
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'color_by_perplexity': False,
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'color_by_probability': False,
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'ppl_scale': 15.0, # No slider for this right now, because I don't think it really needs to be changed. Very large perplexity scores don't show up often.
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#'probability_dropdown': False
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}
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class PerplexityLogits(LogitsProcessor):
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def __init__(self, verbose=False):
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self.generated_token_ids = []
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self.selected_probs = []
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self.top_token_ids_list = []
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self.top_probs_list = []
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self.perplexities_list = []
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self.last_probs = None
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self.verbose = verbose
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def __call__(self, input_ids, scores):
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probs = torch.softmax(scores, dim=-1, dtype=torch.float)
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log_probs = torch.nan_to_num(torch.log(probs))
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entropy = -torch.sum(probs*log_probs)
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entropy = entropy.cpu().numpy()
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perplexity = round(float(np.exp(entropy)), 4)
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self.perplexities_list.append(perplexity)
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last_token_id = int(input_ids[0][-1].cpu().numpy().item())
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# Store the generated tokens (not sure why this isn't accessible in the output endpoint!)
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self.generated_token_ids.append(last_token_id)
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# Get last probability, and add to the list if it wasn't there
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if len(self.selected_probs) > 0:
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# Is the selected token in the top tokens?
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if self.verbose:
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print(shared.tokenizer.decode(last_token_id))
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print([shared.tokenizer.decode(token_id) for token_id in self.top_token_ids_list[-1]])
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print(self.top_probs_list[-1])
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if last_token_id in self.top_token_ids_list[-1]:
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idx = self.top_token_ids_list[-1].index(last_token_id)
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self.selected_probs.append(self.top_probs_list[-1][idx])
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else:
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self.top_token_ids_list[-1].append(last_token_id)
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last_prob = round(float(self.last_probs[last_token_id]), 4)
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self.top_probs_list[-1].append(last_prob)
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self.selected_probs.append(last_prob)
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else:
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self.selected_probs.append(1.0) # Placeholder for the last token of the prompt
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if self.verbose:
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pplbar = "-"
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if not np.isnan(perplexity):
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pplbar = "*"*round(perplexity)
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print(f"{last_token}\t{perplexity:.2f}\t{pplbar}")
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# Get top 5 probabilities
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top_tokens_and_probs = torch.topk(probs, 5)
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top_probs = top_tokens_and_probs.values.cpu().numpy().astype(float).tolist()
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top_token_ids = top_tokens_and_probs.indices.cpu().numpy().astype(int).tolist()
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self.top_token_ids_list.append(top_token_ids)
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self.top_probs_list.append(top_probs)
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probs = probs.cpu().numpy().flatten()
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self.last_probs = probs # Need to keep this as a reference for top probs
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# Doesn't actually modify the logits!
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return scores
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# Stores the perplexity and top probabilities
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ppl_logits_processor = None
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def logits_processor_modifier(logits_processor_list, input_ids):
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global ppl_logits_processor
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ppl_logits_processor = PerplexityLogits()
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logits_processor_list.append(ppl_logits_processor)
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def output_modifier(text):
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global ppl_logits_processor
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# TODO: It's probably more efficient to do this above rather than modifying all these lists
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# Remove last element of perplexities_list, top_token_ids_list, top_tokens_list, top_probs_list since everything is off by one because this extension runs before generation
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perplexities = ppl_logits_processor.perplexities_list[:-1]
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top_token_ids_list = ppl_logits_processor.top_token_ids_list[:-1]
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top_tokens_list = [[shared.tokenizer.decode(token_id) for token_id in top_token_ids] for top_token_ids in top_token_ids_list]
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top_probs_list = ppl_logits_processor.top_probs_list[:-1]
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# Remove first element of generated_token_ids, generated_tokens, selected_probs because they are for the last token of the prompt
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gen_token_ids = ppl_logits_processor.generated_token_ids[1:]
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gen_tokens = [shared.tokenizer.decode(token_id) for token_id in gen_token_ids]
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sel_probs = ppl_logits_processor.selected_probs[1:]
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end_part = '</span>' # Helps with finding the index after replacing part of the text.
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in_code = False # Since the <span> tags mess up code blocks, avoid coloring while inside a code block, based on finding tokens with '`' in them
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if params['color_by_probability'] and params['color_by_perplexity']:
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i = 0
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for token, prob, ppl, top_tokens, top_probs in zip(gen_tokens, sel_probs, perplexities, top_tokens_list, top_probs_list):
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if '`' in token:
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in_code = not in_code
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continue
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if in_code:
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continue
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color = probability_perplexity_color_scale(prob, ppl)
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if token in text[i:]:
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text = text[:i] + text[i:].replace(token, add_color_html(token, color), 1)
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i += text[i:].find(end_part) + len(end_part)
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elif params['color_by_perplexity']:
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i = 0
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for token, ppl, top_tokens, top_probs in zip(gen_tokens, perplexities, top_tokens_list, top_probs_list):
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if '`' in token:
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in_code = not in_code
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continue
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if in_code:
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continue
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color = perplexity_color_scale(ppl)
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if token in text[i:]:
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text = text[:i] + text[i:].replace(token, add_color_html(token, color), 1)
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i += text[i:].find(end_part) + len(end_part)
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elif params['color_by_probability']:
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i = 0
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for token, prob, top_tokens, top_probs in zip(gen_tokens, sel_probs, top_tokens_list, top_probs_list):
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if '`' in token:
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in_code = not in_code
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continue
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if in_code:
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continue
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color = probability_color_scale(prob)
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if token in text[i:]:
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text = text[:i] + text[i:].replace(token, add_color_html(token, color), 1)
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i += text[i:].find(end_part) + len(end_part)
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print('Average perplexity:', round(np.mean(perplexities), 4))
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return text
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# Green-yellow-red color scale
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def probability_color_scale(prob):
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rv = 0
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gv = 0
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if prob <= 0.5:
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rv = 'ff'
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gv = hex(int(255*prob*2))[2:]
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if len(gv) < 2:
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gv = '0'*(2 - len(gv)) + gv
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else:
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rv = hex(int(255 - 255*(prob - 0.5)*2))[2:]
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gv = 'ff'
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if len(rv) < 2:
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rv = '0'*(2 - len(rv)) + rv
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return rv + gv + '00'
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# Red component only, white for 0 perplexity (sorry if you're not in dark mode)
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def perplexity_color_scale(ppl):
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value = hex(max(int(255.0 - params['ppl_scale']*(float(ppl)-1.0)), 0))[2:]
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if len(value) < 2:
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value = '0'*(2 - len(value)) + value
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return 'ff' + value + value
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# Green-yellow-red for probability and blue component for perplexity
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def probability_perplexity_color_scale(prob, ppl):
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rv = 0
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gv = 0
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bv = hex(min(max(int(params['ppl_scale']*(float(ppl)-1.0)), 0), 255))[2:]
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if len(bv) < 2:
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bv = '0'*(2 - len(bv)) + bv
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if prob <= 0.5:
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rv = 'ff'
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gv = hex(int(255*prob*2))[2:]
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if len(gv) < 2:
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gv = '0'*(2 - len(gv)) + gv
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else:
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rv = hex(int(255 - 255*(prob - 0.5)*2))[2:]
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gv = 'ff'
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if len(rv) < 2:
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rv = '0'*(2 - len(rv)) + rv
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return rv + gv + bv
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def add_color_html(token, color):
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return f'<span style="color: #{color}">{token}</span>'
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"""
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# This is still very broken at the moment, needs CSS too but I'm not very good at CSS (and neither is GPT-4 apparently) so I still need to figure that out.
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def add_dropdown_html(token, color, top_tokens, top_probs):
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html = f'<span class="hoverable" style="color: #{color}">{token}<div class="dropdown"><table class="dropdown-content">'
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for token, prob in zip(top_tokens, top_probs):
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# TODO: Background color? Bold for selected token?
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# Bigger issue: Why is there a newline after the first token, and the dropdown fails there?
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# The HTML ends up like <p><span>word</span></p><div>...</div>,
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# even though for all other tokens it shows up correctly.
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row_color = probability_color_scale(prob)
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html += f'<tr><td style="color: #{row_color}">{token}</td><td style="color: #{row_color}">{prob}</td></tr>'
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html += '</table></div></span>'
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return html
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"""
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def ui():
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color_by_ppl_check = gradio.Checkbox(value=False, label="Color by perplexity", info="Higher perplexity is more red. If also showing probability, higher perplexity has more blue component.")
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def update_color_by_ppl_check(x):
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params.update({'color_by_perplexity': x})
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color_by_ppl_check.change(update_color_by_ppl_check, color_by_ppl_check, None)
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color_by_prob_check = gradio.Checkbox(value=False, label="Color by probability", info="Green-yellow-red linear scale, with 100% green, 50% yellow, 0% red.")
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def update_color_by_prob_check(x):
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params.update({'color_by_probability': x})
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color_by_prob_check.change(update_color_by_prob_check, color_by_prob_check, None)
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# Doesn't work yet...
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"""
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prob_dropdown_check = gradio.Checkbox(value=False, label="Probability dropdown")
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def update_prob_dropdown_check(x):
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params.update({'probability_dropdown': x})
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prob_dropdown_check.change(update_prob_dropdown_check, prob_dropdown_check, None)
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"""
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