Spaces:
Running
Running
File size: 11,154 Bytes
d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 bbde628 4d5cd0c d69ffa3 bbde628 d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 797a936 d69ffa3 4d5cd0c d69ffa3 797a936 d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 797a936 d69ffa3 4d5cd0c d69ffa3 bbde628 d69ffa3 bbde628 d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 797a936 d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 4d5cd0c d69ffa3 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 |
import time
import asyncio
import traceback
from typing import List, Dict, Any, Optional, Callable, Tuple
from langsmith import traceable
try:
import config
from services import retriever, openai_service
from i18n import get_text
except ImportError:
print("Error: Failed to import config, services, or i18n in rag_processor.py")
raise SystemExit("Failed imports in rag_processor.py")
PIPELINE_VALIDATE_GENERATE_GPT4O = "GPT-4o Validator + GPT-4o Synthesizer"
StatusCallback = Callable[[str], None]
# --- Step Functions ---
@traceable(name="rag-step-retrieve")
async def run_retrieval_step(query: str, n_retrieve: int, update_status: StatusCallback, original_query: str = None) -> List[Dict]:
"""
Retrieve documents from the vector store.
Args:
query (str): The full query text (may include template)
n_retrieve (int): Number of documents to retrieve
update_status (StatusCallback): Status update callback function
original_query (str, optional): The original user query without template
Returns:
List[Dict]: List of retrieved documents
"""
# Import inside function to avoid circular imports
from i18n import get_text
from services.retriever import retrieve_documents
# Use original query for Pinecone search if provided
search_query = original_query if original_query else query
update_status(get_text("retrieving_docs").format(n_retrieve))
start_time = time.time()
retrieved_docs = await retrieve_documents(query_text=search_query, n_results=n_retrieve)
retrieval_time = time.time() - start_time
update_status(get_text("retrieved_docs").format(len(retrieved_docs), f"{retrieval_time:.2f}"))
if not retrieved_docs:
update_status(get_text("no_docs_found"))
return retrieved_docs
@traceable(name="rag-step-gpt4o-filter")
async def run_gpt4o_validation_filter_step(
docs_to_process: List[Dict], query: str, n_validate: int, update_status: StatusCallback
) -> List[Dict]:
if not docs_to_process:
update_status(get_text("skipping_validation"))
return []
validation_count = min(len(docs_to_process), n_validate)
update_status(get_text("validating_docs").format(validation_count, len(docs_to_process)))
validation_start_time = time.time()
tasks = [openai_service.validate_relevance_openai(doc, query, i)
for i, doc in enumerate(docs_to_process[:validation_count])]
validation_results = await asyncio.gather(*tasks, return_exceptions=True)
passed_docs = []
passed_count = failed_validation_count = error_count = 0
update_status(get_text("filtering_docs"))
for i, res in enumerate(validation_results):
original_doc = docs_to_process[i]
if isinstance(res, Exception):
print(f"GPT-4o Validation Exception doc {i}: {res}")
error_count += 1
elif isinstance(res, dict) and 'validation' in res:
if res['validation'].get('contains_relevant_info'):
original_doc['validation_result'] = res['validation']
passed_docs.append(original_doc)
passed_count += 1
else:
failed_validation_count += 1
else:
print(f"GPT-4o Validation Unexpected result doc {i}: {type(res)}")
error_count += 1
validation_time = time.time() - validation_start_time
update_status(get_text("validation_complete").format(
passed_count, failed_validation_count, error_count, f"{validation_time:.2f}"
))
update_status(get_text("filtered_docs").format(len(passed_docs)))
return passed_docs
@traceable(name="rag-step-openai-generate")
async def run_openai_generation_step(
history: List[Dict], context_documents: List[Dict],
update_status: StatusCallback, stream_callback: Callable[[str], None],
dynamic_system_prompt: Optional[str] = None
) -> Tuple[str, Optional[str]]:
generator_name = "OpenAI"
if not context_documents:
update_status(get_text("skipping_generation").format(generator_name))
return get_text("no_sources_for_response"), None
update_status(get_text("generating_response").format(generator_name, len(context_documents)))
start_gen_time = time.time()
try:
full_response = []
error_msg = None
generator = openai_service.generate_openai_stream(
messages=history, context_documents=context_documents,
dynamic_system_prompt=dynamic_system_prompt
)
async for chunk in generator:
if isinstance(chunk, str) and chunk.strip().startswith("--- Error:"):
if not error_msg:
error_msg = chunk.strip()
print(f"OpenAI stream yielded error: {chunk.strip()}")
break
if isinstance(chunk, str):
full_response.append(chunk)
stream_callback(chunk)
final_response_text = "".join(full_response)
gen_time = time.time() - start_gen_time
if error_msg:
update_status(get_text("generation_error").format(generator_name, f"{gen_time:.2f}"))
return final_response_text, error_msg
update_status(get_text("generation_complete").format(generator_name, f"{gen_time:.2f}"))
return final_response_text, None
except Exception as gen_err:
gen_time = time.time() - start_gen_time
error_msg_critical = (f"--- Error: Critical failure during {generator_name} generation "
f"({type(gen_err).__name__}): {gen_err} ---")
update_status(get_text("generation_critical_error").format(generator_name, f"{gen_time:.2f}"))
traceback.print_exc()
return "", error_msg_critical
@traceable(name="rag-execute-validate-generate-gpt4o-pipeline")
async def execute_validate_generate_pipeline(
history: List[Dict], params: Dict[str, Any],
status_callback: StatusCallback, stream_callback: Callable[[str], None],
dynamic_system_prompt: Optional[str] = None
) -> Dict[str, Any]:
result: Dict[str, Any] = {
"final_response": "",
"validated_documents_full": [],
"generator_input_documents": [],
"status_log": [],
"error": None,
"pipeline_used": PIPELINE_VALIDATE_GENERATE_GPT4O
}
status_log_internal: List[str] = []
def update_status_and_log(message: str):
print(f"Status Update: {message}")
status_log_internal.append(message)
status_callback(message)
current_query_text = ""
if history and isinstance(history, list):
for msg_ in reversed(history):
if isinstance(msg_, dict) and msg_.get("role") == "user":
current_query_text = str(msg_.get("content") or "")
break
if not current_query_text:
result["error"] = get_text("error")
result["final_response"] = f"<div class='rtl-text'>{result['error']}</div>"
result["status_log"] = status_log_internal
return result
try:
# Extract original query for search if present
original_query = params.get('original_query')
# 1. Retrieval
retrieved_docs = await run_retrieval_step(
current_query_text, params['n_retrieve'], update_status_and_log, original_query
)
if not retrieved_docs:
result["error"] = get_text("no_docs_found")
result["final_response"] = f"<div class='rtl-text'>{result['error']}</div>"
result["status_log"] = status_log_internal
return result
# 2. Validation
validated_docs_full = await run_gpt4o_validation_filter_step(
retrieved_docs, current_query_text, params['n_validate'], update_status_and_log
)
result["validated_documents_full"] = validated_docs_full
if not validated_docs_full:
result["error"] = get_text("no_relevant_passages")
result["final_response"] = f"<div class='rtl-text'>{result['error']}</div>"
update_status_and_log(f"4. {result['error']} {get_text('generation_critical_error')}")
return result
# --- Simplify Docs for Generation ---
simplified_docs_for_generation: List[Dict[str, Any]] = []
print(f"Processor: Simplifying {len(validated_docs_full)} docs...")
for doc in validated_docs_full:
if isinstance(doc, dict):
hebrew_text = doc.get('hebrew_text', '')
validation = doc.get('validation_result')
if hebrew_text:
simplified_doc: Dict[str, Any] = {
'hebrew_text': hebrew_text,
'original_id': doc.get('original_id', 'unknown')
}
if doc.get('source_name'):
simplified_doc['source_name'] = doc.get('source_name')
if validation is not None:
simplified_doc['validation_result'] = validation # include judgment
simplified_docs_for_generation.append(simplified_doc)
else:
print(f"Warn: Skipping non-dict item: {doc}")
result["generator_input_documents"] = simplified_docs_for_generation
print(f"Processor: Created {len(simplified_docs_for_generation)} simplified docs with validation results.")
# 3. Generation
final_response_text, generation_error = await run_openai_generation_step(
history=history,
context_documents=simplified_docs_for_generation,
update_status=update_status_and_log,
stream_callback=stream_callback,
dynamic_system_prompt=dynamic_system_prompt
)
result["final_response"] = final_response_text
result["error"] = generation_error
if generation_error and not result["final_response"].strip().startswith(("<div", get_text("no_sources_for_response"))):
result["final_response"] = (
f"<div class='rtl-text'><strong>{get_text('generation_error').format(generator_name, '')}</strong><br>"
f"{get_text('details')}: {generation_error}<br>---<br>{result['final_response']}</div>"
)
elif result["final_response"] == get_text("no_sources_for_response"):
result["final_response"] = f"<div class='rtl-text'>{result['final_response']}</div>"
except Exception as e:
error_type = type(e).__name__
error_msg = f"{get_text('critical_error')} RAG ({error_type}): {e}"
print(f"Critical RAG Error: {error_msg}")
traceback.print_exc()
result["error"] = error_msg
result["final_response"] = (
f"<div class='rtl-text'><strong>{get_text('critical_error')} ({error_type})</strong><br>{get_text('reload')}"
f"<details><summary>{get_text('details')}</summary><pre>{traceback.format_exc()}</pre></details></div>"
)
update_status_and_log(f"{get_text('critical_error')}: {error_type}")
result["status_log"] = status_log_internal
return result
|