feat: fix session_pair_harvester to use role/content format (#91)
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- Harvester used old message fields (from/value) but Hermes sessions use role/content - Import session_reader to normalize conversations properly - Update extract function to operate on normalized role/content messages - Change predecessor lookup from "human"/"gpt" to "user"/"assistant" - Add comprehensive smoke tests (8 tests, all pass) - Verify extraction from test_sessions: 11 pairs, avg ratio 8.13
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@@ -22,114 +22,95 @@ import sys
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from pathlib import Path
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from typing import Optional
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from session_reader import extract_conversation, read_session
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def compute_hash(text: str) -> str:
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"""Content hash for deduplication."""
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return hashlib.sha256(text.encode()).hexdigest()[:16]
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def extract_pairs_from_session(session_data: dict, min_ratio: float = 1.5,
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def extract_pairs_from_conversation(conversation: list, session_id: str, model: str,
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min_ratio: float = 1.5,
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min_response_words: int = 20) -> list:
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"""Extract terse→rich pairs from a single session object."""
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"""Extract terse→rich pairs from a normalized conversation."""
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pairs = []
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conversations = session_data.get("conversations", [])
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session_id = session_data.get("id", "unknown")
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model = session_data.get("model", "unknown")
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seen_hashes = set()
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for i, msg in enumerate(conversations):
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# Look for assistant/gpt responses
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if msg.get("from") not in ("gpt", "assistant"):
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for i, msg in enumerate(conversation):
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# Look for assistant responses
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if msg.get('role') != 'assistant':
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continue
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response_text = msg.get("value", "")
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response_text = msg.get('content', '')
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if not response_text or len(response_text.split()) < min_response_words:
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continue
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# Find the preceding human message
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# Find the preceding user message
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prompt_text = ""
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for j in range(i - 1, -1, -1):
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if conversations[j].get("from") == "human":
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prompt_text = conversations[j].get("value", "")
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if conversation[j].get('role') == 'user':
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prompt_text = conversation[j].get('content', '')
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break
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if not prompt_text:
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continue
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# Filter: skip tool results, system messages embedded as human
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if prompt_text.startswith("{") and "output" in prompt_text[:100]:
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continue # likely a tool result
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if prompt_text.startswith("# SOUL.md") or prompt_text.startswith("You are"):
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continue # system prompt leak
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if prompt_text.startswith('{') and 'output' in prompt_text[:100]:
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continue
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if prompt_text.startswith('# SOUL.md') or prompt_text.startswith('You are'):
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continue
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# Quality filters
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prompt_words = len(prompt_text.split())
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response_words = len(response_text.split())
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# Must have meaningful length ratio
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if prompt_words == 0 or response_words == 0:
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continue
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ratio = response_words / prompt_words
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if ratio < min_ratio:
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continue
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# Skip responses that are mostly code
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code_blocks = response_text.count("```")
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if code_blocks >= 4 and len(response_text.replace("```", "").strip()) < 50:
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code_blocks = response_text.count('```')
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if code_blocks >= 4 and len(response_text.replace('```', '').strip()) < 50:
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continue
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# Skip responses with tool call artifacts
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if "tool_call" in response_text[:100] or "function_call" in response_text[:100]:
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if 'tool_call' in response_text[:100] or 'function_call' in response_text[:100]:
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continue
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# Deduplicate by content hash
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content_hash = compute_hash(prompt_text + response_text[:200])
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if content_hash in seen_hashes:
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continue
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seen_hashes.add(content_hash)
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# Clean up response: remove markdown headers if too many
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clean_response = response_text
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pairs.append({
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"terse": prompt_text.strip(),
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"rich": clean_response.strip(),
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"source": session_id,
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"model": model,
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"prompt_words": prompt_words,
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"response_words": response_words,
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"ratio": round(ratio, 2),
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'terse': prompt_text.strip(),
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'rich': clean_response.strip(),
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'source': session_id,
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'model': model,
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'prompt_words': prompt_words,
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'response_words': response_words,
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'ratio': round(ratio, 2),
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})
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return pairs
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def extract_from_jsonl_file(filepath: str, **kwargs) -> list:
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"""Extract pairs from a session JSONL file."""
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pairs = []
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path = Path(filepath)
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if not path.exists():
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print(f"Warning: {filepath} not found", file=sys.stderr)
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return pairs
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content = path.read_text()
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lines = content.strip().split("\n")
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for line in lines:
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line = line.strip()
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if not line:
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continue
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try:
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session = json.loads(line)
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except json.JSONDecodeError:
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continue
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session_pairs = extract_pairs_from_session(session, **kwargs)
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pairs.extend(session_pairs)
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return pairs
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def extract_from_jsonl_file(path: str, **kwargs) -> list:
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"""Read a session file and extract training pairs using normalized conversation."""
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session_messages = read_session(path)
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if not session_messages:
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return []
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conversation = extract_conversation(session_messages)
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# Derive session_id and model from first real message metadata
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first_msg = next((m for m in session_messages if m.get('role') or m.get('from')), {})
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session_id = first_msg.get('meta_session_id', Path(path).name)
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model = first_msg.get('model', 'unknown')
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return extract_pairs_from_conversation(conversation, session_id, model, **kwargs)
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def deduplicate_pairs(pairs: list) -> list:
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118
tests/test_session_pair_harvester.py
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118
tests/test_session_pair_harvester.py
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@@ -0,0 +1,118 @@
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"""
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Tests for session_pair_harvester — training pair extraction from sessions.
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"""
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import json
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import tempfile
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import unittest
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from pathlib import Path
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import sys
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from pathlib import Path
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sys.path.insert(0, str(Path(__file__).parent.parent / "scripts"))
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from session_pair_harvester import (
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extract_pairs_from_conversation,
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extract_from_jsonl_file,
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deduplicate_pairs,
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compute_hash,
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)
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class TestSessionPairHarvester(unittest.TestCase):
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def test_compute_hash_consistent(self):
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h1 = compute_hash("hello world")
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h2 = compute_hash("hello world")
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self.assertEqual(h1, h2)
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self.assertEqual(len(h1), 16)
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def test_extract_simple_qa_pair(self):
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"""A simple user→assistant exchange produces one pair."""
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conversation = [
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{"role": "user", "content": "What is the capital of France?"},
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{"role": "assistant", "content": "The capital of France is Paris. It is a major European city renowned for its art, fashion, gastronomy, cultural heritage, and historical significance. The city attracts millions of tourists annually."},
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]
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pairs = extract_pairs_from_conversation(conversation, "test_session", "test-model")
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self.assertEqual(len(pairs), 1)
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self.assertEqual(pairs[0]["terse"], "What is the capital of France?")
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self.assertIn("Paris", pairs[0]["rich"])
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self.assertEqual(pairs[0]["source"], "test_session")
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def test_min_ratio_filter(self):
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"""Very short responses are filtered out."""
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conversation = [
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{"role": "user", "content": "Yes"},
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{"role": "assistant", "content": "No."},
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]
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# Default min_ratio = 1.5, min_words = 20 for response
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pairs = extract_pairs_from_conversation(conversation, "s", "m", min_response_words=3)
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self.assertEqual(len(pairs), 0)
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def test_min_words_filter(self):
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"""Assistant responses below min word count are skipped."""
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conversation = [
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{"role": "user", "content": "Explain the project architecture in detail"},
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{"role": "assistant", "content": "OK."},
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]
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pairs = extract_pairs_from_conversation(conversation, "s", "m", min_response_words=5)
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self.assertEqual(len(pairs), 0)
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def test_skip_non_assistant_messages(self):
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"""System and tool messages are ignored."""
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conversation = [
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{"role": "system", "content": "You are a helpful assistant."},
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{"role": "user", "content": "Hello"},
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{"role": "assistant", "content": "Hi there! How can I help you today?"},
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]
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pairs = extract_pairs_from_conversation(conversation, "s", "m", min_response_words=3)
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self.assertEqual(len(pairs), 1)
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self.assertEqual(pairs[0]["terse"], "Hello")
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def test_multiple_pairs_from_one_session(self):
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"""A conversation with several Q&A turns yields multiple pairs."""
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conversation = [
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{"role": "user", "content": "First question?"},
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{"role": "assistant", "content": "Here is a detailed and comprehensive answer that thoroughly explores multiple aspects of the subject. It provides background context and practical implications for the reader."},
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{"role": "user", "content": "Second?"},
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{"role": "assistant", "content": "Another comprehensive response with detailed examples. This includes practical code blocks and thorough explanations to ensure deep understanding of the topic at hand."},
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]
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pairs = extract_pairs_from_conversation(conversation, "s", "m", min_ratio=1.0)
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self.assertEqual(len(pairs), 2)
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def test_deduplication_removes_duplicates(self):
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"""Identical pairs across sessions are deduplicated."""
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pairs = [
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{"terse": "q1", "rich": "a1", "source": "s1", "model": "m"},
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{"terse": "q1", "rich": "a1", "source": "s2", "model": "m"},
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{"terse": "q2", "rich": "a2", "source": "s1", "model": "m"},
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]
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unique = deduplicate_pairs(pairs)
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self.assertEqual(len(unique), 2)
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sources = {p["source"] for p in unique}
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# First unique pair can be from either s1 or s2
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self.assertIn("s1", sources)
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def test_integration_with_test_sessions(self):
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"""Harvester finds pairs in real test session files."""
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repo_root = Path(__file__).parent.parent
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test_sessions_dir = repo_root / "test_sessions"
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if not test_sessions_dir.exists():
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self.skipTest("test_sessions not found")
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pairs = []
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for jsonl_file in sorted(test_sessions_dir.glob("*.jsonl")):
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pairs.extend(extract_from_jsonl_file(str(jsonl_file)))
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self.assertGreater(len(pairs), 0, "Should extract at least one pair from test_sessions")
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for p in pairs:
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self.assertIn("terse", p)
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self.assertIn("rich", p)
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self.assertIn("source", p)
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self.assertIn("model", p)
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# Verify content exists
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self.assertGreater(len(p["terse"]), 0)
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self.assertGreater(len(p["rich"]), 0)
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if __name__ == "__main__":
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unittest.main()
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