Schema changes: dev.chunks->dev.chunk, remove old_chunk_id/chunk_index Correction: asr-1.json format, generate/apply scripts API: 37/37 endpoints fixed and tested Docs: HANDOVER_V2.0.md for M4
174 lines
5.7 KiB
Python
174 lines
5.7 KiB
Python
#!/opt/homebrew/bin/python3.11
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"""
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LLM-clean all 4188 sentence texts, re-embed, update momentry_dev_v1 + sentence_story.
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"""
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import json, time, os
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from urllib.request import Request, urlopen
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import psycopg2
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UUID = "aeed71342a899fe4b4c57b7d41bcb692"
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DB_URL = "postgresql://accusys@localhost:5432/momentry?host=/tmp"
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QDRANT_URL = "http://localhost:6333"
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LLM_URL = "http://localhost:8082/v1/chat/completions"
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EMBED_URL = "http://localhost:11436/v1/embeddings"
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CHECKPOINT = f"/tmp/sentence_clean_{UUID}.json"
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def call_llm(prompt):
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body = json.dumps({"model": "google_gemma-4-26B-A4B-it-Q5_K_M.gguf",
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"messages": [{"role": "user", "content": prompt}],
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"temperature": 0.1, "max_tokens": 80}).encode()
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req = Request(LLM_URL, data=body, headers={"Content-Type": "application/json"})
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resp = urlopen(req, timeout=30)
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return json.loads(resp.read())["choices"][0]["message"]["content"].strip()
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def call_embed(text):
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body = json.dumps({"input": text}).encode()
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req = Request(EMBED_URL, data=body, headers={"Content-Type": "application/json"})
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resp = urlopen(req, timeout=30)
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return json.loads(resp.read())["data"][0]["embedding"]
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print("=== Step 1: Load all sentences ===")
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conn = psycopg2.connect(DB_URL)
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cur = conn.cursor()
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cur.execute("""
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SELECT id, chunk_id, text_content
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FROM dev.chunks
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WHERE file_uuid = %s AND chunk_type = 'sentence'
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ORDER BY id
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""", (UUID,))
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rows = cur.fetchall()
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conn.close()
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print(f"Loaded {len(rows)} sentences")
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# Reset checkpoint (incompatible with old chunk_index format)
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if os.path.exists(CHECKPOINT):
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os.remove(CHECKPOINT)
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print("Old checkpoint removed (format changed)")
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results = []
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errors = 0
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print("\n=== Step 2: LLM clean + embed ===")
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for i, (cid, chunk_id, text_content) in enumerate(rows):
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input_text = text_content
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prompt = f"""Clean this movie dialogue line. Fix truncated words, capitalize, add punctuation.
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Return: SPEAKER: "clean text"
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Input: [Cary Grant] can't you do something constructive like start
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Return: Cary Grant: "Can't you do something constructive like start?"
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Input: [Audrey Hepburn] qui se présente influence d'une manière vitale la proposition l
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Return: Audrey Hepburn: "Qui se présente influence d'une manière vitale la proposition..."
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Input: {input_text}
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Return:"""
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try:
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cleaned = call_llm(prompt)
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embedding = call_embed(cleaned)
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time.sleep(0.1)
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except Exception as e:
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print(f" [{i+1}/{len(rows)}] id={cid} chunk={chunk_id} ERROR: {e}")
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cleaned = input_text
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embedding = [0.0] * 768
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errors += 1
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entry = {
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"index": i,
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"chunk_id": chunk_id,
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"original": input_text,
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"cleaned": cleaned,
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"embedding": embedding,
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}
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results.append(entry)
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json.dump({"last": i}, open(CHECKPOINT, "w"))
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if (i + 1) % 50 == 0:
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print(f" [{i+1}/{len(rows)}] chunk={chunk_id} errors={errors}")
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results.sort(key=lambda x: x["index"])
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print(f"\nDone: {len(results)} cleaned, {errors} errors")
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print("\n=== Step 3: Rebuild momentry_dev_v1 ===")
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# Delete old
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req = Request(f"{QDRANT_URL}/collections/momentry_dev_v1", method="DELETE")
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try: urlopen(req); time.sleep(0.5)
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except: pass
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req = Request(f"{QDRANT_URL}/collections/momentry_dev_v1",
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data=json.dumps({"vectors": {"size": 768, "distance": "Cosine"}}).encode(),
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headers={"Content-Type": "application/json"}, method="PUT")
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urlopen(req); time.sleep(0.5)
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batch_size = 100
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points = []
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for pi, r in enumerate(results):
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points.append({
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"id": pi + 1,
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"vector": r["embedding"],
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"payload": {
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"chunk_type": "sentence",
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"uuid": UUID,
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"chunk_id": r["chunk_id"],
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"text": r["cleaned"],
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"original": r["original"],
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}
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})
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for start in range(0, len(points), batch_size):
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batch = points[start:start+batch_size]
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req = Request(f"{QDRANT_URL}/collections/momentry_dev_v1/points?wait=true",
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data=json.dumps({"points": batch}).encode(),
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headers={"Content-Type": "application/json"}, method="PUT")
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try: urlopen(req)
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except Exception as e: print(f" batch {start}: {e}")
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if (start // batch_size) % 5 == 0:
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print(f" momentry_dev_v1: {start+len(batch)}/{len(points)}")
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print(" momentry_dev_v1 done")
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print("\n=== Step 4: Rebuild sentence_story ===")
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req = Request(f"{QDRANT_URL}/collections/sentence_story", method="DELETE")
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try: urlopen(req); time.sleep(0.5)
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except: pass
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req = Request(f"{QDRANT_URL}/collections/sentence_story",
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data=json.dumps({"vectors": {"size": 768, "distance": "Cosine"}}).encode(),
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headers={"Content-Type": "application/json"}, method="PUT")
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urlopen(req); time.sleep(0.5)
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story_points = []
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for pi, r in enumerate(results):
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story_points.append({
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"id": pi + 1,
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"vector": r["embedding"],
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"payload": {
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"chunk_type": "sentence",
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"uuid": UUID,
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"chunk_id": r["chunk_id"],
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"text": r["cleaned"],
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}
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})
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for start in range(0, len(story_points), batch_size):
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batch = story_points[start:start+batch_size]
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req = Request(f"{QDRANT_URL}/collections/sentence_story/points?wait=true",
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data=json.dumps({"points": batch}).encode(),
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headers={"Content-Type": "application/json"}, method="PUT")
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try: urlopen(req)
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except Exception as e: print(f" batch {start}: {e}")
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if (start // batch_size) % 5 == 0:
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print(f" sentence_story: {start+len(batch)}/{len(story_points)}")
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print(" sentence_story done")
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# Verify
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for col in ["momentry_dev_v1", "sentence_story"]:
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resp = json.loads(urlopen(f"{QDRANT_URL}/collections/{col}").read())
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info = resp["result"]
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print(f"Verified {col}: {info['points_count']} pts, {info['config']['params']['vectors'].get('size','?')}D")
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print("\n=== Done ===")
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