Files
gravity_control/.agents/workflows/helpers/analyze_dom.py
Variet Worker 729875f3a6 feat(observer): v15 AG Native chat relay — scanChatBodies dual strategy (#632)
- Add AG Native DOM path: #conversation + .leading-relaxed.select-text
- Keep Cascade path: [data-testid=conversation-view] + [data-step-index]
- Register #632 in known-issues.md (SDK+DOM both blocked for AG Native)
- Bump version 0.5.50 → 0.5.51
- Add DOM analysis helper scripts
2026-04-16 05:28:44 +09:00

161 lines
5.2 KiB
Python

"""Analyze AG Native DOM structure to find AI response containers."""
import json, os, sys
def load_dump():
bridge = os.path.join(os.path.expanduser('~'), '.gemini', 'antigravity', 'bridge')
# Try deep-inspect result first, then dump_html
for fname in ['deep-inspect-result.json', 'dump_html.json']:
fpath = os.path.join(bridge, fname)
if os.path.exists(fpath):
print(f"Loading: {fname} ({os.path.getsize(fpath)} bytes)")
with open(fpath, 'r', encoding='utf-8-sig') as f:
return json.load(f), fname
return None, None
def find_text_containers(node, path="", depth=0, results=None):
"""Recursively find nodes with substantial text content (potential AI response containers)."""
if results is None:
results = []
if not isinstance(node, dict):
return results
tag = node.get('tag', '')
cls = node.get('cls', '')
text = node.get('text', '')
attrs = node.get('attrs', {})
children = node.get('children', [])
cur_path = f"{path}/{tag}"
if cls:
short_cls = cls[:60]
cur_path += f".{short_cls}"
# Look for nodes with long text (potential AI responses)
if text and len(text) > 50:
results.append({
'path': cur_path,
'depth': depth,
'tag': tag,
'cls': cls[:100],
'text_len': len(text),
'text_preview': text[:120],
'attrs': {k:v for k,v in attrs.items() if k not in ('style',)}
})
for child in children:
find_text_containers(child, cur_path, depth+1, results)
return results
def find_by_class_pattern(node, patterns, path="", depth=0, results=None):
"""Find nodes matching class patterns."""
if results is None:
results = []
if not isinstance(node, dict):
return results
tag = node.get('tag', '')
cls = node.get('cls', '')
attrs = node.get('attrs', {})
children = node.get('children', [])
text = node.get('text', '')
cur_path = f"{path}/{tag}"
for pattern in patterns:
if pattern.lower() in cls.lower() or pattern.lower() in str(attrs).lower():
child_count = len(children)
results.append({
'path': cur_path,
'depth': depth,
'tag': tag,
'cls': cls[:150],
'pattern': pattern,
'text_preview': text[:80] if text else '',
'child_count': child_count,
'attrs': {k:v[:50] for k,v in attrs.items() if k != 'style'}
})
for child in children:
find_by_class_pattern(child, patterns, cur_path, depth+1, results)
return results
def analyze_chat_structure(node, path="", depth=0):
"""Find the chat/conversation area by looking at the main layout."""
if not isinstance(node, dict):
return
tag = node.get('tag', '')
cls = node.get('cls', '')
children = node.get('children', [])
text = node.get('text', '')
attrs = node.get('attrs', {})
# Print interesting structural nodes at shallow depths
if depth <= 6:
child_count = len(children)
has_text = bool(text and len(text) > 10)
info = f"{' '*depth}{tag}"
if cls:
info += f" .{cls[:80]}"
if attrs:
attr_str = ' '.join(f'{k}={v[:30]}' for k,v in attrs.items() if k not in ('style','class'))
if attr_str:
info += f" [{attr_str}]"
info += f" children={child_count}"
if has_text:
info += f" text=\"{text[:50]}...\""
print(info)
for child in children:
analyze_chat_structure(child, f"{path}/{tag}", depth+1)
data, fname = load_dump()
if not data:
print("No dump file found!")
sys.exit(1)
# Handle both dump formats
body = data.get('body', data)
qi = data.get('quickInfo', {})
print("=" * 60)
print("QUICK INFO")
print("=" * 60)
if qi:
for k, v in qi.items():
if k == 'buttons':
print(f"buttons ({len(v)}):")
for b in v[:15]:
print(f" [{b.get('tag')}] \"{b.get('text','')[:50]}\" visible={b.get('visible')} cls={b.get('cls','')[:60]}")
elif k == 'dataAttrs':
print(f"dataAttrs: {v[:30]}")
else:
print(f"{k}: {v}")
print("\n" + "=" * 60)
print("CHAT-RELATED CLASS PATTERNS")
print("=" * 60)
patterns = ['chat', 'message', 'conversation', 'response', 'answer', 'reply',
'markdown', 'prose', 'content', 'panel', 'agent', 'assistant',
'planner', 'step', 'trajectory', 'bot', 'ai-', 'turn']
matches = find_by_class_pattern(body, patterns)
for m in matches:
print(f" [{m['tag']}] cls=\"{m['cls']}\" pattern={m['pattern']} children={m['child_count']} {m.get('attrs',{})}")
print("\n" + "=" * 60)
print("LONG TEXT NODES (potential AI responses)")
print("=" * 60)
texts = find_text_containers(body)
texts.sort(key=lambda x: x['text_len'], reverse=True)
for t in texts[:20]:
print(f" [{t['tag']}] depth={t['depth']} len={t['text_len']} cls=\"{t['cls'][:60]}\"")
print(f" text: \"{t['text_preview']}\"")
if t['attrs']:
print(f" attrs: {t['attrs']}")
print("\n" + "=" * 60)
print("DOM TREE (depth<=6)")
print("=" * 60)
analyze_chat_structure(body)