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Upload app_v6.py

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1
+ """
2
+ PII Reveal - Document Privacy Explorer (v6)
3
+ ============================================
4
+ Fixes regressions reported against v5.
5
+
6
+ 1. Scan got slower in v5 (225s vs ~120s in v4)
7
+ The v5 change moved the Viterbi decoder loop to CPU because I assumed
8
+ the dominant cost on T4 was kernel-launch overhead. That was wrong.
9
+ PyTorch's per-op dispatch cost on CPU (~50-200Β΅s) is much higher than
10
+ a CUDA kernel launch, so a 100k-iteration loop with 4-5 ops per iter
11
+ regressed ~90-100s. Viterbi goes back on GPU (v4 behaviour). The
12
+ remaining inference cost on T4 is fundamental β€” bf16 attention
13
+ matmuls are emulated on Turing and there's no code fix for that, only
14
+ a hardware change to L4 / A10 / A100.
15
+
16
+ 2. Redacted PDF export took "several minutes" on large files
17
+ The v5 implementation called page.search_for(needle) for every
18
+ unique PII string on every page, even when the string didn't appear
19
+ on the page. For a 100-page doc with 200 unique PII strings that's
20
+ 20k search calls.
21
+
22
+ v6 does a cheap `needle in page_text` prefilter per page (one
23
+ page.get_text() call) before issuing any search_for, skips
24
+ apply_redactions on pages with no matches, and saves with
25
+ garbage=1 instead of 4 (the aggressive stream-recompression setting
26
+ is slow and brings little benefit after redaction).
27
+
28
+ 3. Retained from v5: light-theme refresh, PDF redaction endpoint, UI.
29
+ Retained code-level perf win: single torch.cat instead of the
30
+ unbind-then-stack roundtrip in predict_text.
31
+ """
32
+
33
+ # ── stdlib ───────────────────────────────────────────────────────
34
+ import dataclasses
35
+ import functools
36
+ import io
37
+ import json
38
+ import math
39
+ import os
40
+ import re
41
+ import tempfile
42
+ import time
43
+ from bisect import bisect_left, bisect_right
44
+ from collections.abc import Sequence
45
+ from dataclasses import dataclass
46
+ from pathlib import Path
47
+ from typing import Final
48
+
49
+ # ── third-party ──────────────────────────────────────────────────
50
+ import gradio as gr
51
+ import spaces
52
+ import tiktoken
53
+ import torch
54
+ import torch.nn.functional as F
55
+ from fastapi import File, Form, UploadFile
56
+ from fastapi.responses import HTMLResponse, JSONResponse, StreamingResponse
57
+ from huggingface_hub import snapshot_download
58
+ from safetensors import safe_open
59
+
60
+ # ── configuration ────────────────────────────────────────────────
61
+ MODEL_REPO = os.getenv("MODEL_ID", "charles-first-org/second-model")
62
+ HF_TOKEN = os.getenv("HF_TOKEN", None)
63
+ MODEL_DIR = Path(snapshot_download(MODEL_REPO, token=HF_TOKEN))
64
+
65
+ CATEGORIES_META = {
66
+ "private_person": {"color": "#E24B4A", "cls": "hp", "label": "Person", "mono": False},
67
+ "private_date": {"color": "#7F77DD", "cls": "hd", "label": "Date", "mono": True},
68
+ "private_address": {"color": "#1D9E75", "cls": "ha", "label": "Address", "mono": False},
69
+ "private_email": {"color": "#378ADD", "cls": "he", "label": "Email", "mono": True},
70
+ "account_number": {"color": "#BA7517", "cls": "hac", "label": "Account", "mono": True},
71
+ "private_url": {"color": "#D85A30", "cls": "hu", "label": "URL", "mono": True},
72
+ "secret": {"color": "#D4537E", "cls": "hs", "label": "Secret", "mono": True},
73
+ "private_phone": {"color": "#639922", "cls": "hph", "label": "Phone", "mono": True},
74
+ }
75
+
76
+ # =====================================================================
77
+ # MODEL ARCHITECTURE + INFERENCE (unchanged from reference impl)
78
+ # =====================================================================
79
+
80
+ PRIVACY_FILTER_MODEL_TYPE: Final[str] = "privacy_filter"
81
+ REQUIRED_MODEL_CONFIG_KEYS: Final[tuple[str, ...]] = (
82
+ "model_type", "encoding", "num_hidden_layers", "num_experts",
83
+ "experts_per_token", "vocab_size", "num_labels", "hidden_size",
84
+ "intermediate_size", "head_dim", "num_attention_heads",
85
+ "num_key_value_heads", "sliding_window", "bidirectional_context",
86
+ "bidirectional_left_context", "bidirectional_right_context",
87
+ "default_n_ctx", "initial_context_length", "rope_theta",
88
+ "rope_scaling_factor", "rope_ntk_alpha", "rope_ntk_beta", "param_dtype",
89
+ )
90
+ BACKGROUND_CLASS_LABEL: Final[str] = "O"
91
+ BOUNDARY_PREFIXES: Final[tuple[str, ...]] = ("B", "I", "E", "S")
92
+ SPAN_CLASS_NAMES: Final[tuple[str, ...]] = (
93
+ BACKGROUND_CLASS_LABEL,
94
+ "account_number", "private_address", "private_date", "private_email",
95
+ "private_person", "private_phone", "private_url", "secret",
96
+ )
97
+ NER_CLASS_NAMES: Final[tuple[str, ...]] = (BACKGROUND_CLASS_LABEL,) + tuple(
98
+ f"{prefix}-{base}"
99
+ for base in SPAN_CLASS_NAMES if base != BACKGROUND_CLASS_LABEL
100
+ for prefix in BOUNDARY_PREFIXES
101
+ )
102
+ VITERBI_TRANSITION_BIAS_KEYS: Final[tuple[str, ...]] = (
103
+ "transition_bias_background_stay", "transition_bias_background_to_start",
104
+ "transition_bias_inside_to_continue", "transition_bias_inside_to_end",
105
+ "transition_bias_end_to_background", "transition_bias_end_to_start",
106
+ )
107
+ DEFAULT_VITERBI_CALIBRATION_PRESET: Final[str] = "default"
108
+
109
+
110
+ def validate_model_config_contract(cfg: dict, *, context: str) -> None:
111
+ missing = [k for k in REQUIRED_MODEL_CONFIG_KEYS if k not in cfg]
112
+ if missing:
113
+ raise ValueError(f"{context} missing keys: {', '.join(missing)}")
114
+ if cfg.get("model_type") != PRIVACY_FILTER_MODEL_TYPE:
115
+ raise ValueError(f"{context} model_type must be {PRIVACY_FILTER_MODEL_TYPE!r}")
116
+ if cfg.get("bidirectional_context") is not True:
117
+ raise ValueError(f"{context} must use bidirectional_context=true")
118
+ lc, rc = cfg.get("bidirectional_left_context"), cfg.get("bidirectional_right_context")
119
+ if not isinstance(lc, int) or not isinstance(rc, int) or lc != rc or lc < 0:
120
+ raise ValueError(f"{context} bidirectional context must be equal non-negative ints")
121
+ sw = cfg.get("sliding_window")
122
+ if sw != 2 * lc + 1:
123
+ raise ValueError(f"{context} sliding_window must equal 2*context+1")
124
+ if cfg["num_labels"] != 33:
125
+ raise ValueError(f"{context} num_labels must be 33")
126
+ if cfg["param_dtype"] != "bfloat16":
127
+ raise ValueError(f"{context} param_dtype must be bfloat16")
128
+
129
+
130
+ def expert_linear(x: torch.Tensor, weight: torch.Tensor, bias: torch.Tensor | None) -> torch.Tensor:
131
+ n, e, k = x.shape
132
+ _, _, _, o = weight.shape
133
+ out = torch.bmm(x.reshape(n * e, 1, k), weight.reshape(n * e, k, o)).reshape(n, e, o)
134
+ return out + bias if bias is not None else out
135
+
136
+
137
+ @dataclass
138
+ class ModelConfig:
139
+ num_hidden_layers: int; num_experts: int; experts_per_token: int
140
+ vocab_size: int; num_labels: int; hidden_size: int; intermediate_size: int
141
+ head_dim: int; num_attention_heads: int; num_key_value_heads: int
142
+ bidirectional_context_size: int; initial_context_length: int
143
+ rope_theta: float; rope_scaling_factor: float; rope_ntk_alpha: float; rope_ntk_beta: float
144
+
145
+ @classmethod
146
+ def from_checkpoint_config(cls, cfg: dict, *, context: str) -> "ModelConfig":
147
+ cfg = dict(cfg)
148
+ cfg["bidirectional_context_size"] = cfg["bidirectional_left_context"]
149
+ fields = {f.name for f in dataclasses.fields(cls)}
150
+ return cls(**{k: v for k, v in cfg.items() if k in fields})
151
+
152
+
153
+ class RMSNorm(torch.nn.Module):
154
+ def __init__(self, n: int, eps: float = 1e-5, device=None):
155
+ super().__init__()
156
+ self.eps = eps
157
+ self.scale = torch.nn.Parameter(torch.ones(n, device=device, dtype=torch.float32))
158
+
159
+ def forward(self, x):
160
+ t = x.float()
161
+ return (t * torch.rsqrt(t.pow(2).mean(-1, keepdim=True) + self.eps) * self.scale).to(x.dtype)
162
+
163
+
164
+ def apply_rope(x, cos, sin):
165
+ cos = cos.unsqueeze(-2).to(x.dtype); sin = sin.unsqueeze(-2).to(x.dtype)
166
+ x1, x2 = x[..., ::2], x[..., 1::2]
167
+ return torch.stack((x1 * cos - x2 * sin, x2 * cos + x1 * sin), dim=-1).reshape(x.shape)
168
+
169
+
170
+ class RotaryEmbedding(torch.nn.Module):
171
+ def __init__(self, head_dim, base, dtype, *, initial_context_length=4096,
172
+ scaling_factor=1.0, ntk_alpha=1.0, ntk_beta=32.0, device=None):
173
+ super().__init__()
174
+ self.head_dim, self.base, self.dtype = head_dim, base, dtype
175
+ self.initial_context_length = initial_context_length
176
+ self.scaling_factor, self.ntk_alpha, self.ntk_beta = scaling_factor, ntk_alpha, ntk_beta
177
+ self.device = device
178
+ mp = max(int(initial_context_length * scaling_factor), initial_context_length)
179
+ self.max_position_embeddings = mp
180
+ cos, sin = self._compute(mp, device=torch.device("cpu"))
181
+ target = device or torch.device("cpu")
182
+ self.register_buffer("cos_cache", cos.to(target), persistent=False)
183
+ self.register_buffer("sin_cache", sin.to(target), persistent=False)
184
+
185
+ def _inv_freq(self, device=None):
186
+ device = device or self.device
187
+ freq = self.base ** (torch.arange(0, self.head_dim, 2, dtype=torch.float, device=device) / self.head_dim)
188
+ if self.scaling_factor > 1.0:
189
+ d_half = self.head_dim / 2
190
+ low = d_half * math.log(self.initial_context_length / (self.ntk_beta * 2 * math.pi)) / math.log(self.base)
191
+ high = d_half * math.log(self.initial_context_length / (self.ntk_alpha * 2 * math.pi)) / math.log(self.base)
192
+ interp = 1.0 / (self.scaling_factor * freq)
193
+ extrap = 1.0 / freq
194
+ ramp = (torch.arange(d_half, dtype=torch.float32, device=device) - low) / (high - low)
195
+ mask = 1 - ramp.clamp(0, 1)
196
+ return interp * (1 - mask) + extrap * mask
197
+ return 1.0 / freq
198
+
199
+ def _compute(self, n, device=None):
200
+ inv_freq = self._inv_freq(device)
201
+ t = torch.arange(n, dtype=torch.float32, device=device or self.device)
202
+ freqs = torch.einsum("i,j->ij", t, inv_freq)
203
+ c = 0.1 * math.log(self.scaling_factor) + 1.0 if self.scaling_factor > 1.0 else 1.0
204
+ return (freqs.cos() * c).to(self.dtype), (freqs.sin() * c).to(self.dtype)
205
+
206
+ def forward(self, q, k):
207
+ n = q.shape[0]
208
+ if n > self.cos_cache.shape[0]:
209
+ cos, sin = self._compute(n, torch.device("cpu"))
210
+ self.cos_cache, self.sin_cache = cos.to(q.device), sin.to(q.device)
211
+ cc = self.cos_cache.to(q.device) if self.cos_cache.device != q.device else self.cos_cache
212
+ sc = self.sin_cache.to(q.device) if self.sin_cache.device != q.device else self.sin_cache
213
+ cos, sin = cc[:n], sc[:n]
214
+ q = apply_rope(q.view(n, -1, self.head_dim), cos, sin).reshape(q.shape)
215
+ k = apply_rope(k.view(n, -1, self.head_dim), cos, sin).reshape(k.shape)
216
+ return q, k
217
+
218
+
219
+ def sdpa(Q, K, V, S, sm_scale, ctx):
220
+ n, nh, qm, hd = Q.shape
221
+ w = 2 * ctx + 1
222
+ Kp = F.pad(K, (0, 0, 0, 0, ctx, ctx)); Vp = F.pad(V, (0, 0, 0, 0, ctx, ctx))
223
+ Kw = Kp.unfold(0, w, 1).permute(0, 3, 1, 2); Vw = Vp.unfold(0, w, 1).permute(0, 3, 1, 2)
224
+ idx = torch.arange(w, device=Q.device) - ctx
225
+ pos = torch.arange(n, device=Q.device)[:, None] + idx[None, :]
226
+ valid = (pos >= 0) & (pos < n)
227
+ scores = torch.einsum("nhqd,nwhd->nhqw", Q, Kw).float() * sm_scale
228
+ scores = scores.masked_fill(~valid[:, None, None, :], -float("inf"))
229
+ sink = (S * math.log(2.0)).reshape(nh, qm)[None, :, :, None].expand(n, -1, -1, 1)
230
+ scores = torch.cat([scores, sink], dim=-1)
231
+ wt = torch.softmax(scores, dim=-1)[..., :-1].to(V.dtype)
232
+ return torch.einsum("nhqw,nwhd->nhqd", wt, Vw).reshape(n, -1)
233
+
234
+
235
+ class AttentionBlock(torch.nn.Module):
236
+ def __init__(self, cfg: ModelConfig, device=None):
237
+ super().__init__()
238
+ dt = torch.bfloat16
239
+ self.head_dim, self.nah, self.nkv = cfg.head_dim, cfg.num_attention_heads, cfg.num_key_value_heads
240
+ self.ctx = int(cfg.bidirectional_context_size)
241
+ self.sinks = torch.nn.Parameter(torch.empty(cfg.num_attention_heads, device=device, dtype=torch.float32))
242
+ self.norm = RMSNorm(cfg.hidden_size, device=device)
243
+ qkv_d = cfg.head_dim * (cfg.num_attention_heads + 2 * cfg.num_key_value_heads)
244
+ self.qkv = torch.nn.Linear(cfg.hidden_size, qkv_d, device=device, dtype=dt)
245
+ self.out = torch.nn.Linear(cfg.head_dim * cfg.num_attention_heads, cfg.hidden_size, device=device, dtype=dt)
246
+ self.qk_scale = 1 / math.sqrt(math.sqrt(cfg.head_dim))
247
+ self.rope = RotaryEmbedding(cfg.head_dim, int(cfg.rope_theta), torch.float32,
248
+ initial_context_length=cfg.initial_context_length,
249
+ scaling_factor=cfg.rope_scaling_factor,
250
+ ntk_alpha=cfg.rope_ntk_alpha, ntk_beta=cfg.rope_ntk_beta, device=device)
251
+
252
+ def forward(self, x):
253
+ t = self.norm(x).to(self.qkv.weight.dtype)
254
+ qkv = F.linear(t, self.qkv.weight, self.qkv.bias)
255
+ hd, nah, nkv = self.head_dim, self.nah, self.nkv
256
+ q = qkv[:, :nah * hd].contiguous()
257
+ k = qkv[:, nah * hd:(nah + nkv) * hd].contiguous()
258
+ v = qkv[:, (nah + nkv) * hd:(nah + 2 * nkv) * hd].contiguous()
259
+ q, k = self.rope(q, k)
260
+ q, k = q * self.qk_scale, k * self.qk_scale
261
+ n = q.shape[0]
262
+ q = q.view(n, nkv, nah // nkv, hd); k = k.view(n, nkv, hd); v = v.view(n, nkv, hd)
263
+ ao = sdpa(q, k, v, self.sinks, 1.0, self.ctx).to(self.out.weight.dtype)
264
+ return x + F.linear(ao, self.out.weight, self.out.bias).to(x.dtype)
265
+
266
+
267
+ def swiglu(x, alpha=1.702, limit=7.0):
268
+ g, l = x.chunk(2, dim=-1)
269
+ g, l = g.clamp(max=limit), l.clamp(-limit, limit)
270
+ return g * torch.sigmoid(alpha * g) * (l + 1)
271
+
272
+
273
+ class MLPBlock(torch.nn.Module):
274
+ def __init__(self, cfg: ModelConfig, device=None):
275
+ super().__init__()
276
+ dt = torch.bfloat16
277
+ self.ne, self.ept = cfg.num_experts, cfg.experts_per_token
278
+ self.norm = RMSNorm(cfg.hidden_size, device=device)
279
+ self.gate = torch.nn.Linear(cfg.hidden_size, cfg.num_experts, device=device, dtype=dt)
280
+ self.mlp1_weight = torch.nn.Parameter(torch.empty(cfg.num_experts, cfg.hidden_size, cfg.intermediate_size * 2, device=device, dtype=dt))
281
+ self.mlp1_bias = torch.nn.Parameter(torch.empty(cfg.num_experts, cfg.intermediate_size * 2, device=device, dtype=dt))
282
+ self.mlp2_weight = torch.nn.Parameter(torch.empty(cfg.num_experts, cfg.intermediate_size, cfg.hidden_size, device=device, dtype=dt))
283
+ self.mlp2_bias = torch.nn.Parameter(torch.empty(cfg.num_experts, cfg.hidden_size, device=device, dtype=dt))
284
+
285
+ def forward(self, x):
286
+ t = self.norm(x)
287
+ gs = F.linear(t.float(), self.gate.weight.float(), self.gate.bias.float())
288
+ top = torch.topk(gs, k=self.ept, dim=-1, sorted=True)
289
+ ew = torch.softmax(top.values, dim=-1) / self.ept
290
+ ei = top.indices
291
+ ept = self.ept
292
+
293
+ def _chunk(tc, eic, ewc):
294
+ o = expert_linear(tc.float().unsqueeze(1).expand(-1, eic.shape[1], -1),
295
+ self.mlp1_weight[eic].float(), self.mlp1_bias[eic].float())
296
+ o = swiglu(o)
297
+ o = expert_linear(o.float(), self.mlp2_weight[eic].float(), self.mlp2_bias[eic].float())
298
+ return (torch.einsum("bec,be->bc", o.to(ewc.dtype), ewc) * ept).to(x.dtype)
299
+
300
+ cs = 32
301
+ if t.shape[0] > cs:
302
+ parts = [_chunk(t[s:s+cs], ei[s:s+cs], ew[s:s+cs]) for s in range(0, t.shape[0], cs)]
303
+ return x + torch.cat(parts, 0)
304
+ return x + _chunk(t, ei, ew)
305
+
306
+
307
+ class TransformerBlock(torch.nn.Module):
308
+ def __init__(self, cfg, device=None):
309
+ super().__init__()
310
+ self.attn = AttentionBlock(cfg, device=device)
311
+ self.mlp = MLPBlock(cfg, device=device)
312
+ def forward(self, x):
313
+ return self.mlp(self.attn(x))
314
+
315
+
316
+ class Checkpoint:
317
+ @staticmethod
318
+ def build_param_name_map(n):
319
+ return ({f"block.{i}.mlp.mlp1_bias": f"block.{i}.mlp.swiglu.bias" for i in range(n)}
320
+ | {f"block.{i}.mlp.mlp1_weight": f"block.{i}.mlp.swiglu.weight" for i in range(n)}
321
+ | {f"block.{i}.mlp.mlp2_bias": f"block.{i}.mlp.out.bias" for i in range(n)}
322
+ | {f"block.{i}.mlp.mlp2_weight": f"block.{i}.mlp.out.weight" for i in range(n)})
323
+
324
+ def __init__(self, path, device, num_hidden_layers):
325
+ self.pnm = self.build_param_name_map(num_hidden_layers)
326
+ self.ds = device.type if device.index is None else f"{device.type}:{device.index}"
327
+ files = [os.path.join(path, f) for f in os.listdir(path) if f.endswith(".safetensors")]
328
+ self.map = {}
329
+ for sf in files:
330
+ with safe_open(sf, framework="pt", device=self.ds) as h:
331
+ for k in h.keys():
332
+ self.map[k] = sf
333
+
334
+ def get(self, name):
335
+ mapped = self.pnm.get(name, name)
336
+ with safe_open(self.map[mapped], framework="pt", device=self.ds) as h:
337
+ return h.get_tensor(mapped)
338
+
339
+
340
+ class Transformer(torch.nn.Module):
341
+ def __init__(self, cfg, device):
342
+ super().__init__()
343
+ dt = torch.bfloat16
344
+ self.embedding = torch.nn.Embedding(cfg.vocab_size, cfg.hidden_size, device=device, dtype=dt)
345
+ self.block = torch.nn.ModuleList([TransformerBlock(cfg, device=device) for _ in range(cfg.num_hidden_layers)])
346
+ self.norm = RMSNorm(cfg.hidden_size, device=device)
347
+ self.unembedding = torch.nn.Linear(cfg.hidden_size, cfg.num_labels, bias=False, device=device, dtype=dt)
348
+
349
+ def forward(self, token_ids):
350
+ x = self.embedding(token_ids)
351
+ for blk in self.block:
352
+ x = blk(x)
353
+ return F.linear(self.norm(x), self.unembedding.weight, None)
354
+
355
+ @classmethod
356
+ def from_checkpoint(cls, checkpoint_dir, *, device):
357
+ torch.backends.cuda.matmul.allow_tf32 = False
358
+ torch.backends.cudnn.allow_tf32 = False
359
+ torch.set_float32_matmul_precision("highest")
360
+ cp = json.loads((Path(checkpoint_dir) / "config.json").read_text())
361
+ validate_model_config_contract(cp, context=str(checkpoint_dir))
362
+ cfg = ModelConfig.from_checkpoint_config(cp, context=str(checkpoint_dir))
363
+ ckpt = Checkpoint(checkpoint_dir, device, cfg.num_hidden_layers)
364
+ m = cls(cfg, device); m.eval()
365
+ for name, param in m.named_parameters():
366
+ loaded = ckpt.get(name)
367
+ if param.shape != loaded.shape:
368
+ raise ValueError(f"Shape mismatch {name}: {param.shape} vs {loaded.shape}")
369
+ param.data.copy_(loaded)
370
+ return m
371
+
372
+
373
+ # ── label info + span decoding ───────────────────────────────────
374
+
375
+ @dataclass(frozen=True)
376
+ class LabelInfo:
377
+ boundary_label_lookup: dict[str, dict[str, int]]
378
+ token_to_span_label: dict[int, int]
379
+ token_boundary_tags: dict[int, str | None]
380
+ span_class_names: tuple[str, ...]
381
+ span_label_lookup: dict[str, int]
382
+ background_token_label: int
383
+ background_span_label: int
384
+
385
+
386
+ def labels_to_spans(labels_by_index, label_info):
387
+ spans, cur_label, start_idx, prev_idx = [], None, None, None
388
+ bg = label_info.background_span_label
389
+ for ti in sorted(labels_by_index):
390
+ lid = labels_by_index[ti]
391
+ sl = label_info.token_to_span_label.get(lid)
392
+ bt = label_info.token_boundary_tags.get(lid)
393
+ if prev_idx is not None and ti != prev_idx + 1:
394
+ if cur_label is not None and start_idx is not None:
395
+ spans.append((cur_label, start_idx, prev_idx + 1))
396
+ cur_label = start_idx = None
397
+ if sl is None:
398
+ prev_idx = ti; continue
399
+ if sl == bg:
400
+ if cur_label is not None and start_idx is not None:
401
+ spans.append((cur_label, start_idx, ti))
402
+ cur_label = start_idx = None; prev_idx = ti; continue
403
+ if bt == "S":
404
+ if cur_label is not None and start_idx is not None and prev_idx is not None:
405
+ spans.append((cur_label, start_idx, prev_idx + 1))
406
+ spans.append((sl, ti, ti + 1)); cur_label = start_idx = None
407
+ elif bt == "B":
408
+ if cur_label is not None and start_idx is not None and prev_idx is not None:
409
+ spans.append((cur_label, start_idx, prev_idx + 1))
410
+ cur_label, start_idx = sl, ti
411
+ elif bt == "I":
412
+ if cur_label is None or cur_label != sl:
413
+ if cur_label is not None and start_idx is not None and prev_idx is not None:
414
+ spans.append((cur_label, start_idx, prev_idx + 1))
415
+ cur_label, start_idx = sl, ti
416
+ elif bt == "E":
417
+ if cur_label is None or cur_label != sl or start_idx is None:
418
+ if cur_label is not None and start_idx is not None and prev_idx is not None:
419
+ spans.append((cur_label, start_idx, prev_idx + 1))
420
+ spans.append((sl, ti, ti + 1)); cur_label = start_idx = None
421
+ else:
422
+ spans.append((cur_label, start_idx, ti + 1)); cur_label = start_idx = None
423
+ else:
424
+ if cur_label is not None and start_idx is not None and prev_idx is not None:
425
+ spans.append((cur_label, start_idx, prev_idx + 1))
426
+ cur_label = start_idx = None
427
+ prev_idx = ti
428
+ if cur_label is not None and start_idx is not None and prev_idx is not None:
429
+ spans.append((cur_label, start_idx, prev_idx + 1))
430
+ return spans
431
+
432
+
433
+ def token_spans_to_char_spans(spans, cs, ce):
434
+ out = []
435
+ for li, ts, te in spans:
436
+ if not (0 <= ts < te <= len(cs)):
437
+ continue
438
+ s, e = cs[ts], ce[te - 1]
439
+ if e > s:
440
+ out.append((li, s, e))
441
+ return out
442
+
443
+
444
+ def trim_char_spans_whitespace(spans, text):
445
+ out = []
446
+ for li, s, e in spans:
447
+ if not (0 <= s < e <= len(text)):
448
+ continue
449
+ while s < e and text[s].isspace(): s += 1
450
+ while e > s and text[e - 1].isspace(): e -= 1
451
+ if e > s:
452
+ out.append((li, s, e))
453
+ return out
454
+
455
+
456
+ # ── viterbi decoder ──────────────────────────────────────────────
457
+
458
+ @functools.lru_cache(maxsize=1)
459
+ def get_viterbi_transition_biases():
460
+ cp = MODEL_DIR / "viterbi_calibration.json"
461
+ default = {k: 0.0 for k in VITERBI_TRANSITION_BIAS_KEYS}
462
+ if not cp.is_file():
463
+ return default
464
+ payload = json.loads(cp.read_text())
465
+ raw = payload
466
+ ops = payload.get("operating_points")
467
+ if isinstance(ops, dict):
468
+ preset = ops.get(DEFAULT_VITERBI_CALIBRATION_PRESET)
469
+ if isinstance(preset, dict):
470
+ raw = preset.get("biases", raw)
471
+ if not isinstance(raw, dict):
472
+ return default
473
+ return {k: float(raw.get(k, 0.0)) for k in VITERBI_TRANSITION_BIAS_KEYS}
474
+
475
+
476
+ class Decoder:
477
+ def __init__(self, label_info):
478
+ nc = len(label_info.token_to_span_label)
479
+ self._start = torch.full((nc,), -1e9, dtype=torch.float32)
480
+ self._end = torch.full((nc,), -1e9, dtype=torch.float32)
481
+ self._trans = torch.full((nc, nc), -1e9, dtype=torch.float32)
482
+ biases = get_viterbi_transition_biases()
483
+ bg_tok, bg_sp = label_info.background_token_label, label_info.background_span_label
484
+ ttsl, tbt = label_info.token_to_span_label, label_info.token_boundary_tags
485
+ for i in range(nc):
486
+ tag, sl = tbt.get(i), ttsl.get(i)
487
+ if tag in {"B", "S"} or i == bg_tok: self._start[i] = 0.0
488
+ if tag in {"E", "S"} or i == bg_tok: self._end[i] = 0.0
489
+ for j in range(nc):
490
+ nt, ns = tbt.get(j), ttsl.get(j)
491
+ if self._valid(tag, sl, nt, ns, bg_tok, bg_sp, j):
492
+ self._trans[i, j] = self._bias(tag, sl, nt, ns, bg_sp, biases)
493
+
494
+ @staticmethod
495
+ def _valid(pt, ps, nt, ns, bti, bsi, ni):
496
+ nb = ns == bsi or ni == bti
497
+ if (ns is None or nt is None) and not nb: return False
498
+ if pt is None or ps is None: return nb or nt in {"B", "S"}
499
+ if ps == bsi or pt in {"E", "S"}: return nb or nt in {"B", "S"}
500
+ if pt in {"B", "I"}: return ps == ns and nt in {"I", "E"}
501
+ return False
502
+
503
+ @staticmethod
504
+ def _bias(pt, ps, nt, ns, bsi, b):
505
+ nb, pb = ns == bsi, ps == bsi
506
+ if pb: return b["transition_bias_background_stay"] if nb else b["transition_bias_background_to_start"]
507
+ if pt in {"B", "I"}: return b["transition_bias_inside_to_continue"] if nt == "I" else b["transition_bias_inside_to_end"]
508
+ return b["transition_bias_end_to_background"] if nb else b["transition_bias_end_to_start"]
509
+
510
+ def decode(self, lp):
511
+ # Runs on lp's device. When lp is on CUDA, the loop streams tiny
512
+ # kernels into the CUDA queue β€” on a warmed-up T4 this completes
513
+ # in a few seconds. v5's move to CPU looked cheap on paper but
514
+ # PyTorch CPU dispatch overhead made it far worse in practice.
515
+ sl, nc = lp.shape
516
+ if sl == 0: return []
517
+ st = self._start.to(lp.device, lp.dtype)
518
+ en = self._end.to(lp.device, lp.dtype)
519
+ tr = self._trans.to(lp.device, lp.dtype)
520
+ scores = lp[0] + st
521
+ bp = torch.empty((sl - 1, nc), device=lp.device, dtype=torch.int64)
522
+ for i in range(1, sl):
523
+ t = scores.unsqueeze(1) + tr
524
+ bs, bi = t.max(dim=0)
525
+ scores = bs + lp[i]; bp[i - 1] = bi
526
+ if not torch.isfinite(scores).any(): return lp.argmax(dim=1).tolist()
527
+ scores = scores + en
528
+ path = torch.empty(sl, device=lp.device, dtype=torch.int64)
529
+ path[-1] = scores.argmax()
530
+ for i in range(sl - 2, -1, -1): path[i] = bp[i, path[i + 1]]
531
+ return path.tolist()
532
+
533
+
534
+ # ── runtime singleton ────────────────────────────────────────────
535
+
536
+ @dataclass(frozen=True)
537
+ class InferenceRuntime:
538
+ model: Transformer; encoding: tiktoken.Encoding; label_info: LabelInfo
539
+ device: torch.device; n_ctx: int
540
+
541
+
542
+ @functools.lru_cache(maxsize=1)
543
+ def get_runtime():
544
+ cp = MODEL_DIR
545
+ cfg = json.loads((cp / "config.json").read_text())
546
+ validate_model_config_contract(cfg, context=str(cp))
547
+ device = torch.device("cuda")
548
+ encoding = tiktoken.get_encoding(str(cfg["encoding"]).strip())
549
+ scn = [BACKGROUND_CLASS_LABEL]; sll = {BACKGROUND_CLASS_LABEL: 0}
550
+ bll, ttsl, tbt = {}, {}, {}
551
+ bg_idx = None
552
+ for idx, name in enumerate(NER_CLASS_NAMES):
553
+ if name == BACKGROUND_CLASS_LABEL:
554
+ bg_idx = idx; ttsl[idx] = 0; tbt[idx] = None; continue
555
+ bnd, base = name.split("-", 1)
556
+ si = sll.get(base)
557
+ if si is None:
558
+ si = len(scn); scn.append(base); sll[base] = si
559
+ ttsl[idx] = si; tbt[idx] = bnd
560
+ bll.setdefault(base, {})[bnd] = idx
561
+ li = LabelInfo(bll, ttsl, tbt, tuple(scn), sll, bg_idx, 0)
562
+ m = Transformer.from_checkpoint(str(cp), device=device)
563
+ return InferenceRuntime(m, encoding, li, device, int(cfg["default_n_ctx"]))
564
+
565
+
566
+ @functools.lru_cache(maxsize=1)
567
+ def get_decoder():
568
+ return Decoder(label_info=get_runtime().label_info)
569
+
570
+
571
+ @torch.inference_mode()
572
+ def predict_text(runtime, text, decoder):
573
+ tids = tuple(int(t) for t in runtime.encoding.encode(text, allowed_special="all"))
574
+ if not tids: return text, []
575
+ chunks = []
576
+ for s in range(0, len(tids), runtime.n_ctx):
577
+ e = min(s + runtime.n_ctx, len(tids))
578
+ wt = torch.tensor(tids[s:e], device=runtime.device, dtype=torch.int32)
579
+ lp = F.log_softmax(runtime.model(wt).float(), dim=-1)
580
+ chunks.append(lp)
581
+ # Single-chunk case dodges a copy; multi-chunk falls through to cat.
582
+ stacked = chunks[0] if len(chunks) == 1 else torch.cat(chunks, dim=0)
583
+ dl = decoder.decode(stacked)
584
+ if len(dl) != len(tids): dl = stacked.argmax(dim=1).tolist()
585
+ pli = {i: int(l) for i, l in enumerate(dl)}
586
+ pts = labels_to_spans(pli, runtime.label_info)
587
+ tb = [runtime.encoding.decode_single_token_bytes(t) for t in tids]
588
+ dt = b"".join(tb).decode("utf-8", errors="replace")
589
+ cbs, cbe = [], []
590
+ bc = 0
591
+ for ch in dt: cbs.append(bc); bc += len(ch.encode("utf-8")); cbe.append(bc)
592
+ cs, ce = [], []
593
+ tbc = 0
594
+ for rb in tb:
595
+ tbs = tbc; tbe = tbs + len(rb); tbc = tbe
596
+ cs.append(bisect_right(cbe, tbs)); ce.append(bisect_left(cbs, tbe))
597
+ pcs = token_spans_to_char_spans(pts, cs, ce)
598
+ pcs = trim_char_spans_whitespace(pcs, dt if dt != text else text)
599
+ src = dt if dt != text else text
600
+ detected = []
601
+ for li, s, e in pcs:
602
+ if 0 <= li < len(runtime.label_info.span_class_names):
603
+ lbl = runtime.label_info.span_class_names[li]
604
+ else:
605
+ lbl = f"label_{li}"
606
+ detected.append({"label": lbl, "start": s, "end": e, "text": src[s:e]})
607
+ return src, detected
608
+
609
+
610
+ # =====================================================================
611
+ # APPLICATION LAYER
612
+ # =====================================================================
613
+
614
+ def extract_text(file_path: str) -> str:
615
+ suffix = Path(file_path).suffix.lower()
616
+ if suffix == ".pdf":
617
+ import fitz
618
+ doc = fitz.open(file_path)
619
+ pages = [page.get_text() for page in doc]
620
+ doc.close()
621
+ return "\n\n".join(pages)
622
+ elif suffix in (".docx", ".doc"):
623
+ from docx import Document
624
+ doc = Document(file_path)
625
+ return "\n\n".join(p.text for p in doc.paragraphs if p.text.strip())
626
+ raise ValueError(f"Unsupported file type: {suffix}")
627
+
628
+
629
+ def compute_stats(text, spans):
630
+ total = len(text)
631
+ pii_chars = sum(s["end"] - s["start"] for s in spans)
632
+ by_cat = {}
633
+ for s in spans:
634
+ c = s["label"]
635
+ by_cat.setdefault(c, {"count": 0, "chars": 0})
636
+ by_cat[c]["count"] += 1; by_cat[c]["chars"] += s["end"] - s["start"]
637
+ return {
638
+ "total_chars": total, "pii_chars": pii_chars,
639
+ "pii_percentage": round(pii_chars / total * 100, 1) if total else 0,
640
+ "total_spans": len(spans), "categories": by_cat, "num_categories": len(by_cat),
641
+ "total_lines": text.count("\n") + 1 if total else 0,
642
+ }
643
+
644
+
645
+ def detect_speakers(text, spans):
646
+ patterns = [r"^([A-Z][a-zA-Z ]{1,30}):\s", r"^\[([^\]]{1,30})\]\s", r"^(Speaker\s*\d+):\s"]
647
+ line_sp, pos, cur = [], 0, None
648
+ for line in text.split("\n"):
649
+ for p in patterns:
650
+ m = re.match(p, line)
651
+ if m: cur = m.group(1).strip(); break
652
+ line_sp.append((pos, pos + len(line), cur)); pos += len(line) + 1
653
+ result = {}
654
+ for span in spans:
655
+ mid = (span["start"] + span["end"]) // 2
656
+ speaker = "Document"
657
+ for ls, le, sp in line_sp:
658
+ if ls <= mid <= le and sp: speaker = sp; break
659
+ result[speaker] = result.get(speaker, 0) + 1
660
+ return {} if list(result.keys()) == ["Document"] else result
661
+
662
+
663
+ @spaces.GPU
664
+ def run_pii_analysis(text: str):
665
+ """GPU-accelerated PII detection."""
666
+ runtime = get_runtime()
667
+ decoder = get_decoder()
668
+ source_text, detected = predict_text(runtime, text, decoder)
669
+ return source_text, detected
670
+
671
+
672
+ def build_redacted_pdf_bytes(pdf_path: str, pii_texts: list[str]) -> bytes:
673
+ """
674
+ Fast PDF redaction via PyMuPDF.
675
+
676
+ Perf notes vs the v5 implementation that ran for "several minutes":
677
+ 1. Dedupe needles once; process longest first so full spans win
678
+ over their substrings.
679
+ 2. Pull each page's full text string ONCE, then do a cheap
680
+ Python `needle in page_text` prefilter before ever calling
681
+ page.search_for (which is the expensive call). This avoids the
682
+ 100-page * 200-needle = 20k wasted search calls.
683
+ 3. Skip apply_redactions on pages with no matches.
684
+ 4. save(garbage=1, deflate=True) β€” garbage=4 in v5 recompressed
685
+ every stream and dominated the save time on large docs.
686
+ """
687
+ import fitz
688
+ ordered = sorted(
689
+ {t.strip() for t in pii_texts if t and len(t.strip()) >= 2},
690
+ key=len, reverse=True,
691
+ )
692
+ if not ordered:
693
+ # No needles β€” return the original untouched
694
+ return Path(pdf_path).read_bytes()
695
+
696
+ doc = fitz.open(pdf_path)
697
+ try:
698
+ for page in doc:
699
+ page_text = page.get_text()
700
+ if not page_text:
701
+ continue
702
+ needles = [t for t in ordered if t in page_text]
703
+ if not needles:
704
+ continue
705
+ added = False
706
+ for needle in needles:
707
+ for rect in page.search_for(needle):
708
+ page.add_redact_annot(rect, fill=(0, 0, 0))
709
+ added = True
710
+ if added:
711
+ page.apply_redactions()
712
+ buf = io.BytesIO()
713
+ doc.save(buf, garbage=1, deflate=True)
714
+ return buf.getvalue()
715
+ finally:
716
+ doc.close()
717
+
718
+
719
+ # ── Gradio Server ────────────────────────────────────────────────
720
+ server = gr.Server()
721
+
722
+
723
+ @server.get("/", response_class=HTMLResponse)
724
+ async def homepage():
725
+ return FRONTEND_HTML
726
+
727
+
728
+ @server.post("/api/analyze")
729
+ async def analyze_document(file: UploadFile = File(...)):
730
+ suffix = Path(file.filename).suffix.lower()
731
+ if suffix not in (".pdf", ".doc", ".docx"):
732
+ return JSONResponse({"error": f"Unsupported: {suffix}. Use PDF, DOC, or DOCX."}, 400)
733
+ with tempfile.NamedTemporaryFile(delete=False, suffix=suffix) as tmp:
734
+ tmp.write(await file.read()); tmp_path = tmp.name
735
+ try:
736
+ text = extract_text(tmp_path)
737
+ if not text.strip():
738
+ return JSONResponse({"error": "No text content found."}, 400)
739
+ source_text, spans = run_pii_analysis(text)
740
+ stats = compute_stats(source_text, spans)
741
+ speakers = detect_speakers(source_text, spans)
742
+ return JSONResponse({
743
+ "filename": file.filename, "text": source_text, "spans": spans,
744
+ "stats": stats, "speakers": speakers,
745
+ "categories_meta": {k: {"color": v["color"], "cls": v["cls"],
746
+ "label": v["label"], "mono": v["mono"]}
747
+ for k, v in CATEGORIES_META.items()},
748
+ })
749
+ except Exception as e:
750
+ return JSONResponse({"error": str(e)}, 500)
751
+ finally:
752
+ if os.path.exists(tmp_path): os.unlink(tmp_path)
753
+
754
+
755
+ @server.post("/api/redact-pdf")
756
+ async def redact_pdf_endpoint(
757
+ file: UploadFile = File(...),
758
+ spans: str = Form(...),
759
+ active: str = Form(...),
760
+ ):
761
+ suffix = Path(file.filename).suffix.lower()
762
+ if suffix != ".pdf":
763
+ return JSONResponse({"error": "PDF redaction only accepts PDF input."}, 400)
764
+ try:
765
+ span_list = json.loads(spans)
766
+ active_set = set(json.loads(active))
767
+ except Exception as e:
768
+ return JSONResponse({"error": f"Invalid payload: {e}"}, 400)
769
+
770
+ pii_texts = [
771
+ s.get("text", "") for s in span_list
772
+ if s.get("label") in active_set
773
+ ]
774
+ if not pii_texts:
775
+ return JSONResponse({"error": "No active categories selected β€” nothing to redact."}, 400)
776
+
777
+ with tempfile.NamedTemporaryFile(delete=False, suffix=suffix) as tmp:
778
+ tmp.write(await file.read()); tmp_path = tmp.name
779
+ try:
780
+ t0 = time.perf_counter()
781
+ pdf_bytes = build_redacted_pdf_bytes(tmp_path, pii_texts)
782
+ elapsed = time.perf_counter() - t0
783
+ out_name = (Path(file.filename).stem or "document") + ".redacted.pdf"
784
+ return StreamingResponse(
785
+ io.BytesIO(pdf_bytes),
786
+ media_type="application/pdf",
787
+ headers={
788
+ "Content-Disposition": f'attachment; filename="{out_name}"',
789
+ "X-Redaction-Ms": str(int(elapsed * 1000)),
790
+ },
791
+ )
792
+ except Exception as e:
793
+ return JSONResponse({"error": str(e)}, 500)
794
+ finally:
795
+ if os.path.exists(tmp_path): os.unlink(tmp_path)
796
+
797
+
798
+ @server.api(name="analyze_text")
799
+ def analyze_text_api(text: str) -> str:
800
+ """Gradio API: analyze raw text for PII."""
801
+ source_text, spans = run_pii_analysis(text)
802
+ stats = compute_stats(source_text, spans)
803
+ return json.dumps({"text": source_text, "spans": spans, "stats": stats}, ensure_ascii=False)
804
+
805
+
806
+ # ── Frontend HTML (v6) ───────────────────────────────────────────
807
+ FRONTEND_HTML = r"""<!DOCTYPE html>
808
+ <html lang="en">
809
+ <head>
810
+ <meta charset="UTF-8">
811
+ <meta name="viewport" content="width=device-width,initial-scale=1">
812
+ <title>PII Reveal β€” Inspector</title>
813
+ <link rel="preconnect" href="https://fonts.googleapis.com">
814
+ <link rel="preconnect" href="https://fonts.gstatic.com" crossorigin>
815
+ <link href="https://fonts.googleapis.com/css2?family=Inter:wght@400;500;600;700&family=JetBrains+Mono:wght@400;500&family=Source+Serif+4:opsz,wght@8..60,400;8..60,500;8..60,600&display=swap" rel="stylesheet">
816
+ <style>
817
+ :root{
818
+ --body-background-fill: #f6f6f7;
819
+ --block-background-fill: #ffffff;
820
+ --block-background-fill-2: #f1f1f3;
821
+ --body-text-color: #0a0a0a;
822
+ --body-text-color-subdued: #3f3f46;
823
+ --body-text-color-faint: #6b7280;
824
+ --border-color-primary: #e4e4e7;
825
+ --border-color-accent: #d4d4d8;
826
+ --primary-bg: #18181b;
827
+ --primary-fg: #ffffff;
828
+
829
+ --h-alpha: 16%;
830
+ --shadow-xs: 0 1px 1.5px rgba(10,10,10,.04);
831
+ --shadow-sm: 0 1px 3px rgba(10,10,10,.06), 0 1px 2px rgba(10,10,10,.04);
832
+ --shadow-md: 0 4px 14px rgba(10,10,10,.07), 0 1px 3px rgba(10,10,10,.04);
833
+
834
+ --border-radius-lg: 10px;
835
+ --border-radius-md: 6px;
836
+ --border-radius-sm: 4px;
837
+
838
+ --font-sans: 'Inter', system-ui, -apple-system, 'Segoe UI', sans-serif;
839
+ --font-mono: 'JetBrains Mono', ui-monospace, SFMono-Regular, Menlo, Consolas, monospace;
840
+ --font-serif: 'Source Serif 4', 'Source Serif Pro', 'Iowan Old Style', Georgia, serif;
841
+ }
842
+
843
+ @media (prefers-color-scheme: dark){
844
+ :root{
845
+ --body-background-fill: #0e0e11;
846
+ --block-background-fill: #18181c;
847
+ --block-background-fill-2: #1f1f24;
848
+ --body-text-color: #e8e8ea;
849
+ --body-text-color-subdued: #a8a8ae;
850
+ --body-text-color-faint: #70707a;
851
+ --border-color-primary: rgba(255,255,255,0.08);
852
+ --border-color-accent: rgba(255,255,255,0.18);
853
+ --primary-bg: #f0f0f2;
854
+ --primary-fg: #0e0e11;
855
+ --h-alpha: 15%;
856
+ --shadow-xs: none;
857
+ --shadow-sm: none;
858
+ --shadow-md: none;
859
+ }
860
+ }
861
+
862
+ .dark, .dark :root, html.dark, body.dark{
863
+ --body-background-fill: #0e0e11;
864
+ --block-background-fill: #18181c;
865
+ --block-background-fill-2: #1f1f24;
866
+ --body-text-color: #e8e8ea;
867
+ --body-text-color-subdued: #a8a8ae;
868
+ --body-text-color-faint: #70707a;
869
+ --border-color-primary: rgba(255,255,255,0.08);
870
+ --border-color-accent: rgba(255,255,255,0.18);
871
+ --primary-bg: #f0f0f2;
872
+ --primary-fg: #0e0e11;
873
+ --h-alpha: 15%;
874
+ --shadow-xs: none;
875
+ --shadow-sm: none;
876
+ --shadow-md: none;
877
+ }
878
+
879
+ *,*::before,*::after{box-sizing:border-box;margin:0;padding:0}
880
+ html,body{height:100%}
881
+ body{
882
+ font-family:var(--font-sans);
883
+ background:var(--body-background-fill);
884
+ color:var(--body-text-color);
885
+ font-size:13.5px;line-height:1.5;
886
+ -webkit-font-smoothing:antialiased;
887
+ font-feature-settings:"cv11","ss01";
888
+ }
889
+ button{font:inherit;color:inherit;background:transparent;border:0;cursor:pointer}
890
+ .sr-only{position:absolute;width:1px;height:1px;padding:0;margin:-1px;overflow:hidden;clip:rect(0,0,0,0);white-space:nowrap;border:0}
891
+
892
+ .caps{font-size:11px;font-weight:500;letter-spacing:0.06em;text-transform:uppercase;color:var(--body-text-color-subdued)}
893
+ .shell{max-width:1080px;margin:0 auto;padding:40px 16px 48px}
894
+
895
+ /* ============ upload view ============ */
896
+ #upload-view{min-height:100vh;display:flex;align-items:center;justify-content:center}
897
+ #upload-view .shell{width:100%}
898
+
899
+ .u-card{
900
+ display:grid;grid-template-columns:1.05fr 0.95fr;gap:0;
901
+ background:var(--block-background-fill);
902
+ border:0.5px solid var(--border-color-primary);
903
+ border-radius:var(--border-radius-lg);
904
+ overflow:hidden;box-shadow:var(--shadow-md);
905
+ }
906
+ .u-left{padding:40px 36px 34px}
907
+ .u-right{padding:40px 36px 34px;background:var(--block-background-fill-2);border-left:0.5px solid var(--border-color-primary);display:flex;flex-direction:column;gap:14px}
908
+ .u-brand{display:flex;align-items:center;gap:10px;margin-bottom:24px}
909
+ .u-brand svg{color:var(--body-text-color)}
910
+ .u-brand-name{font-size:13.5px;font-weight:500}
911
+ .u-brand-name .sub{color:var(--body-text-color-faint);font-weight:400;margin-left:4px}
912
+ .u-title{font-family:var(--font-serif);font-size:30px;font-weight:500;letter-spacing:-0.018em;line-height:1.15;margin-bottom:10px;color:var(--body-text-color)}
913
+ .u-sub{color:var(--body-text-color-subdued);font-size:14px;margin-bottom:20px;max-width:42ch}
914
+ .u-chips{display:flex;flex-wrap:wrap;gap:6px 12px;margin-bottom:24px}
915
+ .u-chip{display:inline-flex;align-items:center;gap:6px;font-size:12px;color:var(--body-text-color-subdued);font-weight:500}
916
+ .u-chip-dot{width:7px;height:7px;border-radius:2px}
917
+ .u-drop{
918
+ border:1px solid var(--border-color-primary);
919
+ background:color-mix(in srgb, var(--body-text-color) 2.5%, transparent);
920
+ border-radius:var(--border-radius-md);
921
+ padding:30px 20px;cursor:pointer;text-align:center;
922
+ transition:background .15s,border-color .15s;position:relative;
923
+ }
924
+ .u-drop:hover,.u-drop.dragover{background:color-mix(in srgb, var(--body-text-color) 5%, transparent);border-color:var(--border-color-accent)}
925
+ .u-drop-icon{margin:0 auto 8px;color:var(--body-text-color-subdued)}
926
+ .u-drop-title{font-size:13.5px;font-weight:500;margin-bottom:3px;color:var(--body-text-color)}
927
+ .u-drop-sub{font-family:var(--font-mono);font-size:11px;color:var(--body-text-color-faint)}
928
+ .u-drop input{position:absolute;inset:0;opacity:0;cursor:pointer}
929
+ .u-meta{display:flex;flex-wrap:wrap;align-items:center;margin-top:22px;font-family:var(--font-mono);font-size:11px;color:var(--body-text-color-faint)}
930
+ .u-meta > span{padding:0 12px;border-right:1px solid var(--border-color-primary);line-height:1}
931
+ .u-meta > span:first-child{padding-left:0}
932
+ .u-meta > span:last-child{border-right:0;padding-right:0}
933
+
934
+ .prev-h{margin-bottom:8px}
935
+ .prev-row{display:grid;grid-template-columns:1fr 16px 1fr;gap:10px;align-items:stretch}
936
+ .prev-arrow{align-self:center;color:var(--body-text-color-faint);font-family:var(--font-mono);font-size:12px;text-align:center}
937
+ .prev-card{background:var(--block-background-fill);border:0.5px solid var(--border-color-primary);border-radius:var(--border-radius-md);padding:14px 14px 12px;font-family:var(--font-serif);font-size:12.5px;line-height:1.65;color:var(--body-text-color);min-height:148px;box-shadow:var(--shadow-xs)}
938
+ .prev-label{font-family:var(--font-sans);font-size:10px;font-weight:500;letter-spacing:0.08em;text-transform:uppercase;color:var(--body-text-color-faint);display:block;margin-bottom:8px}
939
+ .prev-card p{margin:0 0 6px}
940
+ .prev-card p:last-child{margin-bottom:0}
941
+ .prev-bar{display:inline-block;vertical-align:middle;height:0.85em;border-radius:2px;background:var(--body-text-color);opacity:.88;margin:0 1px}
942
+ .u-stat{margin-top:auto;padding-top:14px;border-top:0.5px solid var(--border-color-primary);display:flex;align-items:baseline;gap:8px;color:var(--body-text-color-subdued);font-size:12px}
943
+ .u-stat b{font-family:var(--font-serif);font-weight:500;font-size:18px;color:var(--body-text-color);letter-spacing:-0.01em}
944
+
945
+ /* ============ results view ============ */
946
+ #results-view{display:none;min-height:100vh}
947
+ .pr-app{
948
+ font-family:var(--font-sans);
949
+ border:0.5px solid var(--border-color-primary);
950
+ border-radius:var(--border-radius-lg);
951
+ overflow:hidden;background:var(--block-background-fill);
952
+ color:var(--body-text-color);box-shadow:var(--shadow-md);
953
+ }
954
+
955
+ .pr-top{display:flex;align-items:center;gap:10px;flex-wrap:wrap;padding:11px 14px;border-bottom:0.5px solid var(--border-color-primary)}
956
+ .pr-logo{display:flex;align-items:center;gap:8px}
957
+ .pr-name{font-size:13.5px;font-weight:500}
958
+ .pr-name-sub{color:var(--body-text-color-faint);font-weight:400;margin-left:4px}
959
+ .pr-file-chip{font-family:var(--font-mono);font-size:11.5px;color:var(--body-text-color-subdued);padding:4px 8px;background:var(--block-background-fill-2);border:0.5px solid var(--border-color-primary);border-radius:5px;margin-left:4px;max-width:220px;overflow:hidden;text-overflow:ellipsis;white-space:nowrap}
960
+ .pr-grow{flex:1}
961
+ .pr-status{font-size:11.5px;color:var(--body-text-color-subdued);display:flex;align-items:center;gap:6px}
962
+ .pr-status-dot{width:6px;height:6px;border-radius:50%;background:#1D9E75;box-shadow:0 0 0 3px color-mix(in srgb, #1D9E75 18%, transparent)}
963
+
964
+ .pr-top-actions{display:flex;align-items:center;gap:6px;flex-wrap:wrap}
965
+ .pr-btn{
966
+ font-size:12px;padding:6px 10px;
967
+ border:0.5px solid var(--border-color-accent);
968
+ border-radius:5px;background:var(--block-background-fill);
969
+ color:var(--body-text-color);cursor:pointer;
970
+ font-family:inherit;font-weight:500;
971
+ display:inline-flex;align-items:center;gap:6px;
972
+ transition:background .12s,border-color .12s,color .12s;
973
+ }
974
+ .pr-btn:hover:not(:disabled){background:color-mix(in srgb, var(--body-text-color) 4%, var(--block-background-fill));border-color:var(--body-text-color-subdued)}
975
+ .pr-btn:disabled{opacity:.5;cursor:not-allowed}
976
+ .pr-btn-ghost{border-color:var(--border-color-primary);color:var(--body-text-color-subdued);background:transparent;font-weight:400}
977
+ .pr-btn-ghost:hover:not(:disabled){color:var(--body-text-color);border-color:var(--border-color-accent);background:color-mix(in srgb, var(--body-text-color) 3%, transparent)}
978
+ .pr-btn-prim{background:var(--primary-bg);color:var(--primary-fg);border-color:var(--primary-bg);font-weight:500}
979
+ .pr-btn-prim:hover:not(:disabled){background:color-mix(in srgb, var(--primary-bg) 88%, var(--body-text-color));border-color:var(--primary-bg)}
980
+ .pr-btn-arr{font-family:var(--font-mono);font-size:11px;opacity:0.6}
981
+
982
+ .pr-stats{padding:18px 18px 16px;border-bottom:0.5px solid var(--border-color-primary)}
983
+ .pr-stats-row{display:flex;align-items:flex-end;gap:34px;margin-bottom:14px;flex-wrap:wrap}
984
+ .pr-hero{font-size:34px;font-weight:600;line-height:1;letter-spacing:-0.028em;font-variant-numeric:tabular-nums;color:var(--body-text-color)}
985
+ .pr-hero-pct{font-size:18px;opacity:0.5;margin-left:1px;font-weight:400}
986
+ .pr-num{font-size:21px;font-weight:600;line-height:1;letter-spacing:-0.015em;font-variant-numeric:tabular-nums}
987
+ .pr-lab{margin-top:10px}
988
+
989
+ .pr-bar{display:flex;height:4px;gap:2px;margin-bottom:12px;border-radius:2px;overflow:hidden}
990
+ .pr-bar > span{display:block;height:100%;border-radius:1px;min-width:4px;transition:opacity .15s}
991
+ .pr-bar > span:hover{opacity:.82}
992
+ .pr-legend{display:flex;flex-wrap:wrap;gap:8px 14px;font-size:12px}
993
+ .pr-leg{display:flex;align-items:center;gap:6px;color:var(--body-text-color-subdued);cursor:pointer;user-select:none;font-weight:500}
994
+ .pr-leg-sw{width:8px;height:8px;border-radius:2px}
995
+ .pr-leg-ct{font-family:var(--font-mono);font-size:11px;color:var(--body-text-color-faint);margin-left:1px;font-weight:500}
996
+ .pr-leg.off{opacity:.4}
997
+ .pr-leg.off .pr-leg-sw{opacity:.3}
998
+
999
+ .pr-body{display:grid;grid-template-columns:minmax(0,1fr) 220px}
1000
+ .pr-doc-pane{padding:20px 24px 28px;border-right:0.5px solid var(--border-color-primary);min-width:0;max-height:calc(100vh - 260px);overflow-y:auto}
1001
+ .pr-doc-meta{font-family:var(--font-mono);font-size:11px;color:var(--body-text-color-faint);margin-bottom:16px;display:flex;gap:10px;flex-wrap:wrap}
1002
+ .pr-doc-meta span + span::before{content:'Β·';margin-right:10px;color:var(--border-color-accent)}
1003
+ .pr-text{font-family:var(--font-serif);font-size:15px;line-height:1.9;color:var(--body-text-color);white-space:pre-wrap;word-wrap:break-word;font-feature-settings:"liga","calt"}
1004
+
1005
+ .h{padding:1px 1px;border-bottom:1.5px solid;transition:background .15s,opacity .15s;cursor:pointer}
1006
+ .h:hover{filter:brightness(0.96) saturate(1.12)}
1007
+ .h.off{background:transparent !important;border-color:transparent !important;color:inherit;opacity:.9}
1008
+ .hp {background:color-mix(in srgb, #E24B4A var(--h-alpha), transparent); border-color:#E24B4A}
1009
+ .hd {background:color-mix(in srgb, #7F77DD var(--h-alpha), transparent); border-color:#7F77DD}
1010
+ .ha {background:color-mix(in srgb, #1D9E75 var(--h-alpha), transparent); border-color:#1D9E75}
1011
+ .he {background:color-mix(in srgb, #378ADD var(--h-alpha), transparent); border-color:#378ADD}
1012
+ .hac {background:color-mix(in srgb, #BA7517 var(--h-alpha), transparent); border-color:#BA7517}
1013
+ .hu {background:color-mix(in srgb, #D85A30 var(--h-alpha), transparent); border-color:#D85A30}
1014
+ .hs {background:color-mix(in srgb, #D4537E var(--h-alpha), transparent); border-color:#D4537E}
1015
+ .hph {background:color-mix(in srgb, #639922 var(--h-alpha), transparent); border-color:#639922}
1016
+ .m{font-family:var(--font-mono);font-size:13px}
1017
+
1018
+ .pr-side{background:var(--block-background-fill-2);padding:16px 14px;display:flex;flex-direction:column;gap:20px;min-width:0}
1019
+ .pr-side-head{display:flex;align-items:baseline;justify-content:space-between;gap:8px;margin-bottom:8px}
1020
+ .pr-side-link{font-size:11px;color:var(--body-text-color-subdued);cursor:pointer;background:transparent;border:0;padding:0;font-family:inherit;font-weight:500}
1021
+ .pr-side-link:hover{color:var(--body-text-color);text-decoration:underline}
1022
+
1023
+ .pr-cat{position:relative;display:grid;grid-template-columns:9px 1fr auto;column-gap:8px;row-gap:4px;align-items:center;padding:8px 10px 7px;border-radius:var(--border-radius-sm);background:color-mix(in srgb, var(--body-text-color) 3%, transparent);border:0.5px solid transparent;cursor:pointer;user-select:none;transition:background .12s,border-color .12s,opacity .15s;margin-bottom:4px;overflow:hidden}
1024
+ .pr-cat:hover{border-color:var(--border-color-accent)}
1025
+ .pr-cat-sw{width:9px;height:9px;border-radius:2px;flex-shrink:0;grid-row:1}
1026
+ .pr-cat-nm{grid-row:1;color:var(--body-text-color);font-size:12.5px;font-weight:500}
1027
+ .pr-cat-ct{grid-row:1;font-family:var(--font-mono);font-size:11px;color:var(--body-text-color-faint);text-align:right;font-weight:500}
1028
+ .pr-cat-mini{grid-column:2/4;grid-row:2;height:1.5px;width:100%;background:color-mix(in srgb, var(--body-text-color) 6%, transparent);border-radius:1px;overflow:hidden}
1029
+ .pr-cat-mini > span{display:block;height:100%;border-radius:1px;transition:width .2s,background .15s}
1030
+ .pr-cat.on{background:color-mix(in srgb, var(--cat) 9%, transparent);box-shadow:inset 3px 0 0 0 var(--cat);padding-left:13px}
1031
+ .pr-cat.on .pr-cat-nm{color:var(--body-text-color)}
1032
+ .pr-cat.off{opacity:.42;filter:saturate(.35)}
1033
+ .pr-cat.off .pr-cat-nm{text-decoration:line-through}
1034
+ .pr-cat.off .pr-cat-mini > span{background:var(--body-text-color-faint) !important}
1035
+
1036
+ .pr-speakers .pr-cat{cursor:default;background:transparent;border-color:transparent;padding:4px 2px}
1037
+ .pr-speakers .pr-cat:hover{background:transparent;border-color:transparent}
1038
+ .pr-speakers .pr-cat-sw{background:var(--body-text-color-faint);opacity:.55}
1039
+ .pr-speakers .pr-cat-mini{display:none}
1040
+
1041
+ .empty-rail{color:var(--body-text-color-faint);font-size:12px;font-style:italic}
1042
+
1043
+ #loading{position:fixed;inset:0;background:color-mix(in srgb, var(--body-background-fill) 88%, transparent);backdrop-filter:blur(8px);display:none;flex-direction:column;align-items:center;justify-content:center;gap:10px;z-index:9999}
1044
+ .l-ring{width:26px;height:26px;border:1.5px solid var(--border-color-accent);border-top-color:var(--body-text-color);border-radius:50%;animation:sp .7s linear infinite}
1045
+ @keyframes sp{to{transform:rotate(360deg)}}
1046
+ .l-label{font-family:var(--font-mono);font-size:11.5px;color:var(--body-text-color-subdued)}
1047
+ .l-timer{font-family:var(--font-mono);font-size:11px;color:var(--body-text-color-faint);font-variant-numeric:tabular-nums}
1048
+
1049
+ .error-banner{margin:14px 18px 0;padding:10px 14px;background:color-mix(in srgb, #E24B4A 10%, transparent);border:0.5px solid color-mix(in srgb, #E24B4A 45%, transparent);border-radius:var(--border-radius-md);color:#C43A39;font-size:12.5px;display:none;font-weight:500}
1050
+
1051
+ .tip{position:fixed;z-index:9998;font-family:var(--font-mono);font-size:11px;color:var(--primary-fg);background:var(--primary-bg);padding:4px 8px;border-radius:4px;pointer-events:none;white-space:nowrap;max-width:420px;overflow:hidden;text-overflow:ellipsis}
1052
+
1053
+ @media(max-width:880px){
1054
+ .u-card{grid-template-columns:1fr}
1055
+ .u-right{border-left:0;border-top:0.5px solid var(--border-color-primary)}
1056
+ .pr-body{grid-template-columns:1fr}
1057
+ .pr-doc-pane{border-right:none;border-bottom:0.5px solid var(--border-color-primary);max-height:none}
1058
+ }
1059
+ @media(max-width:640px){.shell{padding:24px 12px}}
1060
+ </style>
1061
+ </head>
1062
+ <body>
1063
+
1064
+ <!-- ============ upload view ============ -->
1065
+ <div id="upload-view">
1066
+ <div class="shell">
1067
+ <div class="u-card">
1068
+ <div class="u-left">
1069
+ <div class="u-brand">
1070
+ <svg width="20" height="20" viewBox="0 0 20 20" fill="none">
1071
+ <rect x="0" y="0" width="20" height="20" rx="5" fill="currentColor"/>
1072
+ <circle cx="8.5" cy="8.5" r="3.2" stroke="var(--block-background-fill)" stroke-width="1.4" fill="none"/>
1073
+ <line x1="11.2" y1="11.2" x2="14.2" y2="14.2" stroke="var(--block-background-fill)" stroke-width="1.4" stroke-linecap="round"/>
1074
+ </svg>
1075
+ <span class="u-brand-name">PII Reveal<span class="sub">/ inspector</span></span>
1076
+ </div>
1077
+ <h1 class="u-title">See what your documents are leaking.</h1>
1078
+ <p class="u-sub">Find every PII span in a PDF, DOC or DOCX β€” names, accounts, secrets and five other entity types β€” then export a fully redacted copy.</p>
1079
+
1080
+ <div class="u-chips">
1081
+ <span class="u-chip"><span class="u-chip-dot" style="background:#E24B4A"></span>Person</span>
1082
+ <span class="u-chip"><span class="u-chip-dot" style="background:#378ADD"></span>Email</span>
1083
+ <span class="u-chip"><span class="u-chip-dot" style="background:#7F77DD"></span>Date</span>
1084
+ <span class="u-chip"><span class="u-chip-dot" style="background:#1D9E75"></span>Address</span>
1085
+ <span class="u-chip"><span class="u-chip-dot" style="background:#BA7517"></span>Account</span>
1086
+ <span class="u-chip"><span class="u-chip-dot" style="background:#D85A30"></span>URL</span>
1087
+ <span class="u-chip"><span class="u-chip-dot" style="background:#639922"></span>Phone</span>
1088
+ <span class="u-chip"><span class="u-chip-dot" style="background:#D4537E"></span>Secret</span>
1089
+ </div>
1090
+
1091
+ <div class="u-drop" id="dropzone">
1092
+ <div class="u-drop-icon">
1093
+ <svg width="22" height="22" viewBox="0 0 24 24" fill="none" stroke="currentColor" stroke-width="1.5" stroke-linecap="round" stroke-linejoin="round">
1094
+ <path d="M12 3v13"/><path d="m6 9 6-6 6 6"/><path d="M4 17v2a2 2 0 0 0 2 2h12a2 2 0 0 0 2-2v-2"/>
1095
+ </svg>
1096
+ </div>
1097
+ <div class="u-drop-title">Drop a document, or click to browse</div>
1098
+ <div class="u-drop-sub">pdf &middot; doc &middot; docx &middot; up to 128k tokens</div>
1099
+ <input type="file" id="file-input" accept=".pdf,.doc,.docx">
1100
+ </div>
1101
+
1102
+ <div class="u-meta">
1103
+ <span>openai privacy filter</span>
1104
+ <span>128k ctx</span>
1105
+ <span>bfloat16</span>
1106
+ <span>apache 2.0</span>
1107
+ </div>
1108
+ </div>
1109
+
1110
+ <div class="u-right" aria-hidden="true">
1111
+ <div class="prev-h caps">Before &rarr; after</div>
1112
+ <div class="prev-row">
1113
+ <div class="prev-card">
1114
+ <span class="prev-label">detected</span>
1115
+ <p>Reporter: <span class="h hp">Dr. Margaret Holloway-Chen</span> called at <span class="h hd m">03:42 GMT</span>.</p>
1116
+ <p>Email: <span class="h he m">margaret.h@protomail.co.uk</span>.</p>
1117
+ <p>Token: <span class="h hs m">sk_live_T3sT4zN9pQ2v</span>.</p>
1118
+ </div>
1119
+ <div class="prev-arrow">&rarr;</div>
1120
+ <div class="prev-card">
1121
+ <span class="prev-label">redacted</span>
1122
+ <p>Reporter: <span class="prev-bar" style="width:11em"></span> called at <span class="prev-bar" style="width:3.5em"></span>.</p>
1123
+ <p>Email: <span class="prev-bar" style="width:9em"></span>.</p>
1124
+ <p>Token: <span class="prev-bar" style="width:7em"></span>.</p>
1125
+ </div>
1126
+ </div>
1127
+ <div class="u-stat">
1128
+ <b>PDF-ready</b>
1129
+ <span>export a redacted PDF or .txt with one click</span>
1130
+ </div>
1131
+ </div>
1132
+ </div>
1133
+ </div>
1134
+ </div>
1135
+
1136
+ <!-- ============ results view ============ -->
1137
+ <div id="results-view">
1138
+ <div class="shell">
1139
+ <div class="pr-app" aria-label="PII Reveal inspector">
1140
+
1141
+ <div class="pr-top">
1142
+ <div class="pr-logo">
1143
+ <svg width="20" height="20" viewBox="0 0 20 20" fill="none" style="color: var(--body-text-color);">
1144
+ <rect x="0" y="0" width="20" height="20" rx="5" fill="currentColor"/>
1145
+ <circle cx="8.5" cy="8.5" r="3.2" stroke="var(--block-background-fill)" stroke-width="1.4" fill="none"/>
1146
+ <line x1="11.2" y1="11.2" x2="14.2" y2="14.2" stroke="var(--block-background-fill)" stroke-width="1.4" stroke-linecap="round"/>
1147
+ </svg>
1148
+ <span class="pr-name">PII Reveal<span class="pr-name-sub">/ inspector</span></span>
1149
+ </div>
1150
+ <span class="pr-file-chip" id="file-chip"></span>
1151
+ <span class="pr-status" id="scan-status"><span class="pr-status-dot"></span>Scan complete</span>
1152
+ <div class="pr-grow"></div>
1153
+ <div class="pr-top-actions">
1154
+ <button class="pr-btn pr-btn-ghost" id="act-copy" title="Copy masked text to clipboard"><span>Copy masked</span></button>
1155
+ <button class="pr-btn pr-btn-ghost" id="act-report" title="Download JSON report"><span>Report</span></button>
1156
+ <button class="pr-btn" id="act-txt" title="Download sanitized .txt"><span>.txt</span></button>
1157
+ <button class="pr-btn pr-btn-prim" id="act-pdf" title="Download redacted PDF"><span>Redact PDF</span><span class="pr-btn-arr">&rarr;</span></button>
1158
+ <button class="pr-btn pr-btn-ghost" id="btn-new"><span>New file</span></button>
1159
+ </div>
1160
+ </div>
1161
+
1162
+ <div class="error-banner" id="error-banner"></div>
1163
+
1164
+ <div class="pr-stats">
1165
+ <div class="pr-stats-row">
1166
+ <div>
1167
+ <div class="pr-hero"><span id="hero-val">0</span><span class="pr-hero-pct">%</span></div>
1168
+ <div class="caps pr-lab">PII content</div>
1169
+ </div>
1170
+ <div>
1171
+ <div class="pr-num" id="num-spans">0</div>
1172
+ <div class="caps pr-lab">Spans detected</div>
1173
+ </div>
1174
+ <div>
1175
+ <div class="pr-num" id="num-cats">0 / 8</div>
1176
+ <div class="caps pr-lab">Categories present</div>
1177
+ </div>
1178
+ <div>
1179
+ <div class="pr-num" id="num-speakers">0</div>
1180
+ <div class="caps pr-lab">Speakers identified</div>
1181
+ </div>
1182
+ </div>
1183
+
1184
+ <div class="pr-bar" id="dist-bar"></div>
1185
+ <div class="pr-legend" id="legend"></div>
1186
+ </div>
1187
+
1188
+ <div class="pr-body">
1189
+ <div class="pr-doc-pane">
1190
+ <div class="pr-doc-meta" id="doc-meta"></div>
1191
+ <div class="pr-text" id="doc-text"></div>
1192
+ </div>
1193
+
1194
+ <aside class="pr-side">
1195
+ <div>
1196
+ <div class="pr-side-head">
1197
+ <span class="caps">Filter categories</span>
1198
+ <button class="pr-side-link" id="cat-toggle-all">Clear all</button>
1199
+ </div>
1200
+ <div id="cat-list"></div>
1201
+ </div>
1202
+ <div id="speakers-block" style="display:none">
1203
+ <div class="pr-side-head"><span class="caps">Speakers</span></div>
1204
+ <div class="pr-speakers" id="speakers-list"></div>
1205
+ </div>
1206
+ </aside>
1207
+ </div>
1208
+ </div>
1209
+ </div>
1210
+ </div>
1211
+
1212
+ <div id="loading">
1213
+ <div class="l-ring"></div>
1214
+ <div class="l-label" id="loading-label">scanning document&hellip;</div>
1215
+ <div class="l-timer" id="loading-timer"></div>
1216
+ </div>
1217
+
1218
+ <div class="tip" id="tip" style="display:none"></div>
1219
+
1220
+ <script>
1221
+ const S = {
1222
+ text:'', spans:[], stats:{}, speakers:{}, catMeta:{}, filename:'', file:null,
1223
+ activeCats:new Set(), scanMs:0, sortedSpans:[],
1224
+ };
1225
+
1226
+ const DEFAULT_META = {
1227
+ private_person: {color:'#E24B4A', cls:'hp', label:'Person', mono:false},
1228
+ private_date: {color:'#7F77DD', cls:'hd', label:'Date', mono:true},
1229
+ private_address: {color:'#1D9E75', cls:'ha', label:'Address', mono:false},
1230
+ private_email: {color:'#378ADD', cls:'he', label:'Email', mono:true},
1231
+ account_number: {color:'#BA7517', cls:'hac', label:'Account', mono:true},
1232
+ private_url: {color:'#D85A30', cls:'hu', label:'URL', mono:true},
1233
+ secret: {color:'#D4537E', cls:'hs', label:'Secret', mono:true},
1234
+ private_phone: {color:'#639922', cls:'hph', label:'Phone', mono:true},
1235
+ };
1236
+ const ORDER = ['private_person','private_address','private_email','private_phone',
1237
+ 'private_url','private_date','account_number','secret'];
1238
+ const metaFor = c => ({...(DEFAULT_META[c]||{color:'#999',cls:'',label:c,mono:false}), ...(S.catMeta[c]||{})});
1239
+ const isPdf = () => (S.filename||'').toLowerCase().endsWith('.pdf');
1240
+
1241
+ /* ===== loading overlay with live timer ===== */
1242
+ let _loadingTimer = null;
1243
+ function showLoading(label){
1244
+ document.getElementById('loading-label').textContent = label;
1245
+ document.getElementById('loading-timer').textContent = '0.0s';
1246
+ document.getElementById('loading').style.display = 'flex';
1247
+ const t0 = performance.now();
1248
+ clearInterval(_loadingTimer);
1249
+ _loadingTimer = setInterval(() => {
1250
+ const s = (performance.now() - t0) / 1000;
1251
+ document.getElementById('loading-timer').textContent = s.toFixed(1) + 's';
1252
+ }, 100);
1253
+ }
1254
+ function hideLoading(){
1255
+ clearInterval(_loadingTimer); _loadingTimer = null;
1256
+ document.getElementById('loading').style.display = 'none';
1257
+ }
1258
+
1259
+ /* ===== upload flow ===== */
1260
+ const dz = document.getElementById('dropzone');
1261
+ const fi = document.getElementById('file-input');
1262
+ ['dragenter','dragover'].forEach(e => dz.addEventListener(e, ev => { ev.preventDefault(); dz.classList.add('dragover'); }));
1263
+ ['dragleave','drop'].forEach(e => dz.addEventListener(e, ev => { ev.preventDefault(); dz.classList.remove('dragover'); }));
1264
+ dz.addEventListener('drop', ev => { if (ev.dataTransfer.files[0]) uploadFile(ev.dataTransfer.files[0]); });
1265
+ fi.addEventListener('change', ev => { if (ev.target.files[0]) uploadFile(ev.target.files[0]); });
1266
+
1267
+ async function uploadFile(file){
1268
+ const ext = file.name.split('.').pop().toLowerCase();
1269
+ if (!['pdf','doc','docx'].includes(ext)) { showError('Unsupported file type.'); return; }
1270
+ S.file = file;
1271
+ showLoading('scanning document…');
1272
+ document.getElementById('upload-view').style.display='none';
1273
+ const form = new FormData(); form.append('file', file);
1274
+ const t0 = performance.now();
1275
+ try{
1276
+ const r = await fetch('/api/analyze', {method:'POST', body:form});
1277
+ const d = await r.json();
1278
+ if (d.error) { showError(d.error); return; }
1279
+ S.scanMs = performance.now() - t0;
1280
+ S.text = d.text; S.spans = d.spans; S.stats = d.stats;
1281
+ S.speakers = d.speakers||{}; S.catMeta = d.categories_meta||{};
1282
+ S.filename = d.filename;
1283
+ S.activeCats = new Set(Object.keys(d.stats.categories));
1284
+ S.sortedSpans = [...S.spans].sort((a,b) => a.start - b.start);
1285
+ renderResults();
1286
+ } catch(e){ showError('Analysis failed: '+e.message); }
1287
+ finally { hideLoading(); }
1288
+ }
1289
+
1290
+ function showError(m){
1291
+ hideLoading();
1292
+ document.getElementById('upload-view').style.display='flex';
1293
+ document.getElementById('results-view').style.display='none';
1294
+ alert(m);
1295
+ }
1296
+
1297
+ function resetView(){
1298
+ document.getElementById('results-view').style.display='none';
1299
+ document.getElementById('upload-view').style.display='flex';
1300
+ fi.value = ''; S.file = null;
1301
+ }
1302
+ document.getElementById('btn-new').addEventListener('click', resetView);
1303
+
1304
+ /* ===== render ===== */
1305
+ function renderResults(){
1306
+ document.getElementById('results-view').style.display='block';
1307
+ document.getElementById('file-chip').textContent = S.filename;
1308
+ document.getElementById('scan-status').innerHTML =
1309
+ `<span class="pr-status-dot"></span>Scan complete &middot; ${(S.scanMs/1000).toFixed(1)}s`;
1310
+ renderStats(); renderBar(); renderLegend(); renderDocMeta(); renderDoc(); renderCats(); renderSpeakers();
1311
+ updateToggleAllLabel(); updatePrimaryAction();
1312
+ }
1313
+
1314
+ function updatePrimaryAction(){
1315
+ const pdfBtn = document.getElementById('act-pdf');
1316
+ const txtBtn = document.getElementById('act-txt');
1317
+ if (isPdf()) {
1318
+ pdfBtn.style.display = '';
1319
+ pdfBtn.classList.add('pr-btn-prim');
1320
+ txtBtn.classList.remove('pr-btn-prim');
1321
+ } else {
1322
+ pdfBtn.style.display = 'none';
1323
+ pdfBtn.classList.remove('pr-btn-prim');
1324
+ txtBtn.classList.add('pr-btn-prim');
1325
+ }
1326
+ }
1327
+
1328
+ function renderStats(){
1329
+ const s = S.stats;
1330
+ document.getElementById('hero-val').textContent = (s.pii_percentage ?? 0).toFixed(1);
1331
+ document.getElementById('num-spans').textContent = s.total_spans;
1332
+ document.getElementById('num-cats').textContent = `${s.num_categories} / 8`;
1333
+ const n = Object.keys(S.speakers).length;
1334
+ document.getElementById('num-speakers').textContent = n || 'β€”';
1335
+ }
1336
+
1337
+ function renderBar(){
1338
+ const bar = document.getElementById('dist-bar');
1339
+ bar.innerHTML = '';
1340
+ const cats = S.stats.categories;
1341
+ const total = Object.values(cats).reduce((a,b) => a + b.chars, 0) || 1;
1342
+ const ordered = ORDER.filter(c => cats[c]);
1343
+ if (!ordered.length) {
1344
+ const span = document.createElement('span');
1345
+ span.style.cssText = 'flex:1;background:var(--border-color-primary);opacity:.4';
1346
+ bar.appendChild(span); return;
1347
+ }
1348
+ for (const c of ordered) {
1349
+ const m = metaFor(c);
1350
+ const span = document.createElement('span');
1351
+ span.style.background = m.color;
1352
+ span.style.flex = cats[c].chars / total;
1353
+ span.dataset.cat = c;
1354
+ span.addEventListener('mouseenter', ev => showTip(ev, `${m.label} Β· ${cats[c].count}`));
1355
+ span.addEventListener('mousemove', moveTip);
1356
+ span.addEventListener('mouseleave', hideTip);
1357
+ if (!S.activeCats.has(c)) span.style.opacity = '.25';
1358
+ bar.appendChild(span);
1359
+ }
1360
+ }
1361
+
1362
+ function renderLegend(){
1363
+ const leg = document.getElementById('legend');
1364
+ leg.innerHTML = '';
1365
+ const cats = S.stats.categories;
1366
+ const ordered = ORDER.filter(c => cats[c]);
1367
+ for (const c of ordered) {
1368
+ const m = metaFor(c);
1369
+ const el = document.createElement('span');
1370
+ el.className = 'pr-leg' + (S.activeCats.has(c) ? '' : ' off');
1371
+ el.dataset.cat = c;
1372
+ el.innerHTML = `<span class="pr-leg-sw" style="background:${m.color}"></span>${m.label}<span class="pr-leg-ct">${cats[c].count}</span>`;
1373
+ el.addEventListener('click', () => toggleCat(c));
1374
+ leg.appendChild(el);
1375
+ }
1376
+ }
1377
+
1378
+ function renderDocMeta(){
1379
+ const s = S.stats;
1380
+ const parts = [
1381
+ `${s.total_chars.toLocaleString()} characters`,
1382
+ `${s.total_lines.toLocaleString()} lines`,
1383
+ `scanned in ${(S.scanMs/1000).toFixed(1)}s`,
1384
+ ];
1385
+ document.getElementById('doc-meta').innerHTML = parts.map(p => `<span>${p}</span>`).join('');
1386
+ }
1387
+
1388
+ function esc(s){ const d=document.createElement('div'); d.textContent=s; return d.innerHTML; }
1389
+
1390
+ function renderDoc(){
1391
+ const { text, sortedSpans, activeCats } = S;
1392
+ const el = document.getElementById('doc-text');
1393
+ let html = '', pos = 0;
1394
+ for (const sp of sortedSpans) {
1395
+ if (sp.start < pos) continue;
1396
+ if (sp.start > pos) html += esc(text.substring(pos, sp.start));
1397
+ const m = metaFor(sp.label);
1398
+ const cls = ['h', m.cls];
1399
+ if (m.mono) cls.push('m');
1400
+ if (!activeCats.has(sp.label)) cls.push('off');
1401
+ html += `<span class="${cls.join(' ')}" data-cat="${sp.label}">${esc(text.substring(sp.start, sp.end))}</span>`;
1402
+ pos = sp.end;
1403
+ }
1404
+ if (pos < text.length) html += esc(text.substring(pos));
1405
+ el.innerHTML = html;
1406
+ el.querySelectorAll('.h').forEach(span => {
1407
+ const cat = span.dataset.cat, m = metaFor(cat);
1408
+ span.addEventListener('mouseenter', ev => showTip(ev, `${m.label}: ${span.textContent.trim()}`));
1409
+ span.addEventListener('mousemove', moveTip);
1410
+ span.addEventListener('mouseleave', hideTip);
1411
+ });
1412
+ }
1413
+
1414
+ function renderCats(){
1415
+ const box = document.getElementById('cat-list');
1416
+ box.innerHTML = '';
1417
+ const cats = S.stats.categories;
1418
+ const ordered = ORDER.filter(c => cats[c]);
1419
+ if (!ordered.length) { box.innerHTML = '<div class="empty-rail">No entities detected.</div>'; return; }
1420
+ const totalSpans = S.stats.total_spans || 1;
1421
+ for (const c of ordered) {
1422
+ const m = metaFor(c);
1423
+ const count = cats[c].count;
1424
+ const share = (count / totalSpans) * 100;
1425
+ const active = S.activeCats.has(c);
1426
+ const el = document.createElement('div');
1427
+ el.className = 'pr-cat' + (active ? ' on' : ' off');
1428
+ el.dataset.cat = c;
1429
+ el.style.setProperty('--cat', m.color);
1430
+ el.innerHTML = `
1431
+ <span class="pr-cat-sw" style="background:${m.color}"></span>
1432
+ <span class="pr-cat-nm">${m.label}</span>
1433
+ <span class="pr-cat-ct">${count}</span>
1434
+ <span class="pr-cat-mini"><span style="width:${share.toFixed(1)}%;background:${m.color}"></span></span>`;
1435
+ el.addEventListener('click', () => toggleCat(c));
1436
+ box.appendChild(el);
1437
+ }
1438
+ }
1439
+
1440
+ function renderSpeakers(){
1441
+ const names = Object.keys(S.speakers);
1442
+ const block = document.getElementById('speakers-block');
1443
+ const box = document.getElementById('speakers-list');
1444
+ if (!names.length) { block.style.display = 'none'; return; }
1445
+ block.style.display = 'block';
1446
+ box.innerHTML = '';
1447
+ for (const n of names) {
1448
+ const el = document.createElement('div');
1449
+ el.className = 'pr-cat';
1450
+ el.innerHTML = `<span class="pr-cat-sw"></span><span class="pr-cat-nm">${esc(n)}</span><span class="pr-cat-ct">${S.speakers[n]}</span>`;
1451
+ box.appendChild(el);
1452
+ }
1453
+ }
1454
+
1455
+ function toggleCat(c){
1456
+ if (S.activeCats.has(c)) S.activeCats.delete(c);
1457
+ else S.activeCats.add(c);
1458
+ const on = S.activeCats.has(c);
1459
+ document.querySelectorAll(`.pr-cat[data-cat="${c}"]`).forEach(el => { el.classList.toggle('on', on); el.classList.toggle('off', !on); });
1460
+ document.querySelectorAll(`.pr-leg[data-cat="${c}"]`).forEach(el => el.classList.toggle('off', !on));
1461
+ document.querySelectorAll(`.h[data-cat="${c}"]`).forEach(el => el.classList.toggle('off', !on));
1462
+ document.querySelectorAll(`.pr-bar span[data-cat="${c}"]`).forEach(el => el.style.opacity = on ? '1' : '.25');
1463
+ updateToggleAllLabel();
1464
+ }
1465
+
1466
+ function updateToggleAllLabel(){
1467
+ const btn = document.getElementById('cat-toggle-all');
1468
+ if (!btn) return;
1469
+ const all = Object.keys(S.stats.categories||{});
1470
+ const allOn = all.length > 0 && all.every(c => S.activeCats.has(c));
1471
+ btn.textContent = allOn ? 'Clear all' : 'Select all';
1472
+ }
1473
+ document.getElementById('cat-toggle-all').addEventListener('click', () => {
1474
+ const all = Object.keys(S.stats.categories||{});
1475
+ const allOn = all.every(c => S.activeCats.has(c));
1476
+ all.forEach(c => {
1477
+ const want = !allOn;
1478
+ if (want !== S.activeCats.has(c)) toggleCat(c);
1479
+ });
1480
+ });
1481
+
1482
+ function showTip(ev, text){ const t = document.getElementById('tip'); t.textContent = text; t.style.display = 'block'; moveTip(ev); }
1483
+ function moveTip(ev){ const t = document.getElementById('tip'); t.style.left = (ev.clientX + 12) + 'px'; t.style.top = (ev.clientY - 26) + 'px'; }
1484
+ function hideTip(){ document.getElementById('tip').style.display = 'none'; }
1485
+
1486
+ /* ===== actions ===== */
1487
+ function sanitizedText(){
1488
+ const parts = []; let pos = 0;
1489
+ for (const sp of S.sortedSpans) {
1490
+ if (sp.start < pos) continue;
1491
+ if (sp.start > pos) parts.push(S.text.substring(pos, sp.start));
1492
+ const m = metaFor(sp.label);
1493
+ parts.push(S.activeCats.has(sp.label) ? `[${m.label.toUpperCase()}]` : S.text.substring(sp.start, sp.end));
1494
+ pos = sp.end;
1495
+ }
1496
+ if (pos < S.text.length) parts.push(S.text.substring(pos));
1497
+ return parts.join('');
1498
+ }
1499
+
1500
+ function download(name, content, type){
1501
+ const blob = content instanceof Blob ? content : new Blob([content], { type: type || 'text/plain' });
1502
+ const a = document.createElement('a');
1503
+ a.href = URL.createObjectURL(blob); a.download = name;
1504
+ document.body.appendChild(a); a.click(); a.remove();
1505
+ setTimeout(() => URL.revokeObjectURL(a.href), 1000);
1506
+ }
1507
+
1508
+ function baseName(){
1509
+ const f = S.filename || 'document';
1510
+ const i = f.lastIndexOf('.');
1511
+ return i > 0 ? f.slice(0, i) : f;
1512
+ }
1513
+
1514
+ document.getElementById('act-txt').addEventListener('click', () => {
1515
+ download(baseName() + '.redacted.txt', sanitizedText(), 'text/plain');
1516
+ flash('act-txt', 'Exported');
1517
+ });
1518
+ document.getElementById('act-copy').addEventListener('click', async () => {
1519
+ try { await navigator.clipboard.writeText(sanitizedText()); flash('act-copy', 'Copied'); }
1520
+ catch { flash('act-copy', 'Copy failed'); }
1521
+ });
1522
+ document.getElementById('act-report').addEventListener('click', () => {
1523
+ const report = {
1524
+ filename: S.filename, scanned_in_ms: Math.round(S.scanMs),
1525
+ stats: S.stats, speakers: S.speakers,
1526
+ active_categories: [...S.activeCats], spans: S.spans,
1527
+ };
1528
+ download(baseName() + '.report.json', JSON.stringify(report, null, 2), 'application/json');
1529
+ flash('act-report', 'Downloaded');
1530
+ });
1531
+
1532
+ document.getElementById('act-pdf').addEventListener('click', async () => {
1533
+ if (!isPdf()) return;
1534
+ if (!S.file) { alert('Original PDF reference lost β€” upload again to export a redacted PDF.'); return; }
1535
+ if (!S.activeCats.size) { alert('No categories selected β€” enable at least one category in the sidebar before redacting.'); return; }
1536
+ const btn = document.getElementById('act-pdf');
1537
+ btn.disabled = true;
1538
+ showLoading('redacting PDF…');
1539
+ try {
1540
+ const form = new FormData();
1541
+ form.append('file', S.file);
1542
+ form.append('spans', JSON.stringify(S.spans));
1543
+ form.append('active', JSON.stringify([...S.activeCats]));
1544
+ const r = await fetch('/api/redact-pdf', { method:'POST', body: form });
1545
+ if (!r.ok) {
1546
+ let err = `Redaction failed (${r.status})`;
1547
+ try { const j = await r.json(); err = j.error || err; } catch {}
1548
+ throw new Error(err);
1549
+ }
1550
+ const elapsedHeader = r.headers.get('X-Redaction-Ms');
1551
+ const blob = await r.blob();
1552
+ download(baseName() + '.redacted.pdf', blob, 'application/pdf');
1553
+ if (elapsedHeader) flash('act-pdf', `Downloaded (${(elapsedHeader/1000).toFixed(1)}s)`);
1554
+ else flash('act-pdf', 'Downloaded');
1555
+ } catch (e) {
1556
+ alert(e.message || 'Redaction failed');
1557
+ } finally {
1558
+ hideLoading();
1559
+ btn.disabled = false;
1560
+ }
1561
+ });
1562
+
1563
+ const _flashTimers = {};
1564
+ function flash(id, msg){
1565
+ const btn = document.getElementById(id);
1566
+ const span = btn.querySelector('span');
1567
+ const prev = span ? span.textContent : btn.textContent;
1568
+ if (span) span.textContent = msg; else btn.textContent = msg;
1569
+ clearTimeout(_flashTimers[id]);
1570
+ _flashTimers[id] = setTimeout(() => { if (span) span.textContent = prev; else btn.textContent = prev; }, 1800);
1571
+ }
1572
+ </script>
1573
+ </body>
1574
+ </html>"""
1575
+
1576
+ # ── launch ───────────────────────────────────────────────────────
1577
+ if __name__ == "__main__":
1578
+ server.launch(server_name="0.0.0.0", server_port=7860)