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Commit
b72a629
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1 Parent(s): 3158cae

Update app.py

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  1. app.py +252 -263
app.py CHANGED
@@ -1,264 +1,253 @@
1
- # app.py
2
- from flask import Flask, render_template, jsonify, request
3
- from flask_socketio import SocketIO
4
- import threading
5
- import os
6
- import sqlite3
7
- import gc
8
- import time
9
- import re
10
-
11
- # --- 외부 모듈 임포트 ---
12
- import reg_embedding_system
13
- import leximind_prompts
14
-
15
- # --- Together AI SDK ---
16
- from together import Together
17
-
18
- # --- eventlet monkey patch (Gunicorn + SocketIO 필수!) ---
19
- import eventlet
20
- eventlet.monkey_patch()
21
-
22
- # --- Flask & SocketIO 설정 ---
23
- app = Flask(__name__)
24
- socketio = SocketIO(app, cors_allowed_origins="*", async_mode='eventlet')
25
-
26
- # --- 전역 변수 ---
27
- connected_clients = 0
28
- search_document_number = 30
29
- Filtered_search = False
30
- filters = {"regulation_part": []}
31
-
32
- # --- 경로 설정 ---
33
- current_dir = os.path.dirname(os.path.abspath(__file__))
34
- ResultFile_FolderAddress = os.path.join(current_dir, 'result.txt')
35
-
36
- # --- RAG 데이터 경로 ---
37
- region_paths = {
38
- "국내": "/app/data/KMVSS_RAG",
39
- "북미": "/app/data/FMVSS_RAG",
40
- "유럽": "/app/data/EUR_RAG"
41
- }
42
-
43
- # --- 프롬프트 ---
44
- lexi_prompts = leximind_prompts.PromptLibrary()
45
-
46
- # --- RAG 객체 ---
47
- region_rag_objects = {}
48
-
49
- # --- Together AI 클라이언트 ---
50
- TOGETHER_API_KEY = os.getenv("TOGETHER_API_KEY")
51
- if not TOGETHER_API_KEY:
52
- raise EnvironmentError("TOGETHER_API_KEY가 설정되지 않았습니다. Hugging Face Secrets에 추가하세요.")
53
- client = Together(api_key=TOGETHER_API_KEY)
54
-
55
- # --- RAG 로딩 ---
56
- def load_rag_objects():
57
- global region_rag_objects
58
- regions = list(region_paths.keys())
59
- total = len(regions)
60
-
61
- for idx, (region, path) in enumerate(region_paths.items(), 1):
62
- if not os.path.exists(path):
63
- msg = f"[{region}] 경로 없음: {path} ({idx}/{total})"
64
- socketio.emit('message', {'message': msg})
65
- print(msg)
66
- continue
67
-
68
- try:
69
- socketio.emit('message', {'message': f"[{region}] RAG 로딩 중... ({idx}/{total})"})
70
- print(f"[{region}] 로딩 시작: {path}")
71
-
72
- # FAISS 로드
73
- ensemble_retriever, vectorstore, sqlite_conn = reg_embedding_system.load_embedding_from_faiss(path)
74
- sqlite_conn.close()
75
-
76
- # SQLite 재연결
77
- db_path = os.path.join(path, "metadata_mapping.db")
78
- if not os.path.exists(db_path):
79
- raise FileNotFoundError(f"DB 없음: {db_path}")
80
- new_conn = sqlite3.connect(db_path, check_same_thread=False)
81
-
82
- region_rag_objects[region] = {
83
- "ensemble_retriever": ensemble_retriever,
84
- "vectorstore": vectorstore,
85
- "sqlite_conn": new_conn
86
- }
87
-
88
- socketio.emit('message', {'message': f"[{region}] 로딩 완료 ({idx}/{total})"})
89
- print(f"[{region}] 로딩 완료")
90
-
91
- except Exception as e:
92
- error_msg = f"[{region}] 로딩 실패: {str(e)} ({idx}/{total})"
93
- print(error_msg)
94
- socketio.emit('message', {'message': error_msg})
95
-
96
- socketio.emit('message', {'message': "Ready to Search"})
97
- print("=== 모든 RAG 로딩 완료 ===")
98
-
99
- # --- ---
100
- @app.route('/')
101
- def index():
102
- return render_template('chat.html')
103
-
104
- # --- 메시지 ---
105
- @app.route('/get_message', methods=['POST'])
106
- def get_message():
107
- global Filtered_search, filters
108
- data = request.get_json()
109
- query = data.get('query', '').strip()
110
- regions = data.get('regions', [])
111
- selected_regulations = data.get('selectedRegulations', [])
112
-
113
- filters = {"regulation_part": []}
114
- Filtered_search = bool(selected_regulations)
115
- if selected_regulations:
116
- for reg in selected_regulations:
117
- title = reg.get('title', '')
118
- if title:
119
- filters["regulation_part"].append(title)
120
-
121
- Rag_Results = search_DB_from_multiple_regions(query, regions, region_rag_objects)
122
- AImessage = RegAI(query, Rag_Results, ResultFile_FolderAddress)
123
-
124
- return jsonify(message=AImessage)
125
-
126
- # --- 법규 리스트 ---
127
- @app.route('/get_reg_list', methods=['POST'])
128
- def get_reg_list():
129
- data = request.get_json()
130
- selected_regions = data.get('regions', []) or ["국내", "북미", "유럽"]
131
-
132
- all_reg_list_part = []
133
- for region in selected_regions:
134
- rag = region_rag_objects.get(region)
135
- if not rag:
136
- continue
137
- try:
138
- conn = rag["sqlite_conn"]
139
- parts = reg_embedding_system.get_unique_metadata_values(conn, "regulation_part")
140
- all_reg_list_part.extend(parts)
141
- except Exception as e:
142
- print(f"[{region}] 법규 로드 실패: {e}")
143
-
144
- unique_parts = sorted(set(all_reg_list_part), key=reg_embedding_system.natural_sort_key)
145
- return jsonify(reg_list_part="\n".join(unique_parts))
146
-
147
- # --- SocketIO ---
148
- @socketio.on('connect')
149
- def handle_connect():
150
- global connected_clients
151
- connected_clients += 1
152
- print(f"클라이언트 연결: {connected_clients}명")
153
-
154
- @socketio.on('disconnect')
155
- def handle_disconnect():
156
- global connected_clients
157
- connected_clients -= 1
158
- print(f"연결 해제: {connected_clients}명")
159
- if connected_clients <= 0:
160
- cleanup_connections()
161
- print("서버 종료")
162
- os._exit(0)
163
-
164
- def cleanup_connections():
165
- for region, rag in region_rag_objects.items():
166
- try:
167
- rag["sqlite_conn"].close()
168
- print(f"[{region}] DB 연결 종료")
169
- except:
170
- pass
171
-
172
- # --- Together AI 분석 ---
173
- def Gemma3_AI_analysis(query_txt, content_txt):
174
- content_txt = "\n".join(doc.page_content for doc in content_txt) if isinstance(content_txt, list) else str(content_txt)
175
- query_txt = str(query_txt)
176
- prompt = lexi_prompts.use_prompt(lexi_prompts.AI_system_prompt, query_txt=query_txt, content_txt=content_txt)
177
-
178
- response = client.chat.completions.create(
179
- model="meta-llama/Llama-3.3-70B-Instruct-Turbo",
180
- messages=[{"role": "user", "content": prompt}],
181
- max_tokens=1024,
182
- temperature=0.7
183
- )
184
- return response.choices[0].message.content
185
-
186
- # --- Together AI 번역 ---
187
- def Gemma3_AI_Translate(query_txt):
188
- query_txt = str(query_txt)
189
- prompt = lexi_prompts.use_prompt(lexi_prompts.query_translator, query_txt=query_txt)
190
-
191
- response = client.chat.completions.create(
192
- model="meta-llama/Llama-3.2-3B-Instruct-Turbo",
193
- messages=[{"role": "user", "content": prompt}],
194
- max_tokens=512,
195
- temperature=0.3
196
- )
197
- return response.choices[0].message.content
198
-
199
- # --- 검색 ---
200
- def search_DB_from_multiple_regions(query, selected_regions, region_rag_objects):
201
- selected_regions = selected_regions or list(region_rag_objects.keys())
202
- query = Gemma3_AI_Translate(query)
203
- print(f"번역된 쿼리: {query}")
204
-
205
- combined_results = []
206
- for region in selected_regions:
207
- rag = region_rag_objects.get(region)
208
- if not rag:
209
- continue
210
-
211
- retriever = rag["ensemble_retriever"]
212
- vectorstore = rag["vectorstore"]
213
- sqlite_conn = rag["sqlite_conn"]
214
-
215
- if Filtered_search:
216
- results = reg_embedding_system.search_with_metadata_filter(
217
- ensemble_retriever=retriever,
218
- vectorstore=vectorstore,
219
- query=query,
220
- k=search_document_number,
221
- metadata_filter=filters,
222
- sqlite_conn=sqlite_conn
223
- )
224
- else:
225
- results = reg_embedding_system.smart_search_vectorstore(
226
- retriever=retriever,
227
- query=query,
228
- k=search_document_number,
229
- vectorstore=vectorstore,
230
- sqlite_conn=sqlite_conn,
231
- enable_detailed_search=True
232
- )
233
- print(f"[{region}] 검색: {len(results)}건")
234
- combined_results.extend(results)
235
-
236
- return combined_results
237
-
238
- # --- 최종 AI ---
239
- def RegAI(query, Rag_Results, ResultFile_FolderAddress):
240
- gc.collect()
241
- AI_Result = "검색 결과가 없습니다." if not Rag_Results else Gemma3_AI_analysis(query, Rag_Results)
242
-
243
- with open(ResultFile_FolderAddress, 'w', encoding='utf-8') as f:
244
- print("검색된 문서:", file=f)
245
- for i, doc in enumerate(Rag_Results):
246
- print(f"문서 {i+1}: {doc.page_content[:200]}... (메타: {doc.metadata})", file=f)
247
- print("\n답변:", file=f)
248
- print(AI_Result, file=f)
249
-
250
- return AI_Result
251
-
252
- # --- 실행 ---
253
- if __name__ == '__main__':
254
- # 로컬 개발용
255
- threading.Thread(target=load_rag_objects, daemon=True).start()
256
- time.sleep(2)
257
- socketio.emit('message', {'message': '데이터 로딩 시작...'})
258
- socketio.run(app, host='0.0.0.0', port=7860, debug=False)
259
- else:
260
- # Gunicorn용: 워커 시작 후 로딩
261
- import atexit
262
- loading_thread = threading.Thread(target=load_rag_objects, daemon=True)
263
- loading_thread.start()
264
  atexit.register(cleanup_connections)
 
1
+ # app.py
2
+ from flask import Flask, render_template, jsonify, request
3
+ from flask_socketio import SocketIO
4
+ import threading
5
+ import os
6
+ import sqlite3
7
+ import gc
8
+ import time
9
+ import re
10
+
11
+ # --- 외부 모듈 임포트 ---
12
+ import reg_embedding_system
13
+ import leximind_prompts
14
+
15
+ # --- Together AI SDK ---
16
+ from together import Together
17
+
18
+ # --- eventlet monkey patch (Gunicorn + SocketIO 필수!) ---
19
+ import eventlet
20
+ eventlet.monkey_patch()
21
+
22
+ # --- Flask & SocketIO 설정 ---
23
+ app = Flask(__name__)
24
+ socketio = SocketIO(app, cors_allowed_origins="*", async_mode='eventlet')
25
+
26
+ # --- 전역 변수 ---
27
+ connected_clients = 0
28
+ search_document_number = 30
29
+ Filtered_search = False
30
+ filters = {"regulation_part": []}
31
+
32
+ # --- 경로 설정 ---
33
+ current_dir = os.path.dirname(os.path.abspath(__file__))
34
+ ResultFile_FolderAddress = os.path.join(current_dir, 'result.txt')
35
+
36
+ # --- RAG 데이터 경로 ---
37
+ region_paths = {
38
+ "국내": "/app/data/KMVSS_RAG",
39
+ "북미": "/app/data/FMVSS_RAG",
40
+ "유럽": "/app/data/EUR_RAG"
41
+ }
42
+
43
+ # --- 프롬프트 ---
44
+ lexi_prompts = leximind_prompts.PromptLibrary()
45
+
46
+ # --- RAG 객체 ---
47
+ region_rag_objects = {}
48
+
49
+ # --- Together AI 클라이언트 ---
50
+ TOGETHER_API_KEY = os.getenv("TOGETHER_API_KEY")
51
+ if not TOGETHER_API_KEY:
52
+ raise EnvironmentError("TOGETHER_API_KEY가 설정되지 않았습니다. Hugging Face Secrets에 추가하세요.")
53
+ client = Together(api_key=TOGETHER_API_KEY)
54
+
55
+ # --- RAG 로딩 ---
56
+ def load_rag_objects():
57
+ global region_rag_objects
58
+ for region, path in region_paths.items():
59
+ if not os.path.exists(path):
60
+ msg = f"[{region}] 경로 없음: {path}"
61
+ socketio.emit('message', {'message': msg})
62
+ print(msg)
63
+ continue
64
+
65
+ try:
66
+ socketio.emit('message', {'message': f"[{region}] RAG 로딩 중..."})
67
+ ensemble_retriever, vectorstore, sqlite_conn = reg_embedding_system.load_embedding_from_faiss(path)
68
+ sqlite_conn.close()
69
+ db_path = os.path.join(path, "metadata_mapping.db")
70
+ new_conn = sqlite3.connect(db_path, check_same_thread=False)
71
+
72
+ region_rag_objects[region] = {
73
+ "ensemble_retriever": ensemble_retriever,
74
+ "vectorstore": vectorstore,
75
+ "sqlite_conn": new_conn
76
+ }
77
+ socketio.emit('message', {'message': f"[{region}] 로딩 완료"})
78
+ print(f"[{region}] RAG 로딩 완료")
79
+
80
+ except Exception as e:
81
+ error_msg = f"[{region}] 로딩 실패: {str(e)}"
82
+ print(error_msg)
83
+ socketio.emit('message', {'message': error_msg})
84
+
85
+ socketio.emit('message', {'message': "Ready to Search"})
86
+ print("Ready to Search")
87
+
88
+ # --- ---
89
+ @app.route('/')
90
+ def index():
91
+ return render_template('chat.html')
92
+
93
+ # --- 메시지 ---
94
+ @app.route('/get_message', methods=['POST'])
95
+ def get_message():
96
+ global Filtered_search, filters
97
+ data = request.get_json()
98
+ query = data.get('query', '').strip()
99
+ regions = data.get('regions', [])
100
+ selected_regulations = data.get('selectedRegulations', [])
101
+
102
+ filters = {"regulation_part": []}
103
+ Filtered_search = bool(selected_regulations)
104
+ if selected_regulations:
105
+ for reg in selected_regulations:
106
+ title = reg.get('title', '')
107
+ if title:
108
+ filters["regulation_part"].append(title)
109
+
110
+ Rag_Results = search_DB_from_multiple_regions(query, regions, region_rag_objects)
111
+ AImessage = RegAI(query, Rag_Results, ResultFile_FolderAddress)
112
+
113
+ return jsonify(message=AImessage)
114
+
115
+ # --- 법규 리스트 ---
116
+ @app.route('/get_reg_list', methods=['POST'])
117
+ def get_reg_list():
118
+ data = request.get_json()
119
+ selected_regions = data.get('regions', []) or ["국내", "북미", "유럽"]
120
+
121
+ all_reg_list_part = []
122
+ for region in selected_regions:
123
+ rag = region_rag_objects.get(region)
124
+ if not rag:
125
+ continue
126
+ try:
127
+ conn = rag["sqlite_conn"]
128
+ parts = reg_embedding_system.get_unique_metadata_values(conn, "regulation_part")
129
+ all_reg_list_part.extend(parts)
130
+ except Exception as e:
131
+ print(f"[{region}] 법규 로드 실패: {e}")
132
+
133
+ unique_parts = sorted(set(all_reg_list_part), key=reg_embedding_system.natural_sort_key)
134
+ return jsonify(reg_list_part="\n".join(unique_parts))
135
+
136
+ # --- SocketIO ---
137
+ @socketio.on('connect')
138
+ def handle_connect():
139
+ global connected_clients
140
+ connected_clients += 1
141
+ print(f"클라이언트 연결: {connected_clients}명")
142
+
143
+ @socketio.on('disconnect')
144
+ def handle_disconnect():
145
+ global connected_clients
146
+ connected_clients -= 1
147
+ print(f"연결 해제: {connected_clients}명")
148
+ if connected_clients <= 0:
149
+ cleanup_connections()
150
+ print("서버 종료")
151
+ os._exit(0)
152
+
153
+ def cleanup_connections():
154
+ for region, rag in region_rag_objects.items():
155
+ try:
156
+ rag["sqlite_conn"].close()
157
+ print(f"[{region}] DB 연결 종료")
158
+ except:
159
+ pass
160
+
161
+ # --- Together AI 분석 ---
162
+ def Gemma3_AI_analysis(query_txt, content_txt):
163
+ content_txt = "\n".join(doc.page_content for doc in content_txt) if isinstance(content_txt, list) else str(content_txt)
164
+ query_txt = str(query_txt)
165
+ prompt = lexi_prompts.use_prompt(lexi_prompts.AI_system_prompt, query_txt=query_txt, content_txt=content_txt)
166
+
167
+ response = client.chat.completions.create(
168
+ model="meta-llama/Llama-3.3-70B-Instruct-Turbo",
169
+ messages=[{"role": "user", "content": prompt}],
170
+ max_tokens=1024,
171
+ temperature=0.7
172
+ )
173
+ return response.choices[0].message.content
174
+
175
+ # --- Together AI 번역 ---
176
+ def Gemma3_AI_Translate(query_txt):
177
+ query_txt = str(query_txt)
178
+ prompt = lexi_prompts.use_prompt(lexi_prompts.query_translator, query_txt=query_txt)
179
+
180
+ response = client.chat.completions.create(
181
+ model="meta-llama/Llama-3.2-3B-Instruct-Turbo",
182
+ messages=[{"role": "user", "content": prompt}],
183
+ max_tokens=512,
184
+ temperature=0.3
185
+ )
186
+ return response.choices[0].message.content
187
+
188
+ # --- 검색 ---
189
+ def search_DB_from_multiple_regions(query, selected_regions, region_rag_objects):
190
+ selected_regions = selected_regions or list(region_rag_objects.keys())
191
+ query = Gemma3_AI_Translate(query)
192
+ print(f"번역된 쿼리: {query}")
193
+
194
+ combined_results = []
195
+ for region in selected_regions:
196
+ rag = region_rag_objects.get(region)
197
+ if not rag:
198
+ continue
199
+
200
+ retriever = rag["ensemble_retriever"]
201
+ vectorstore = rag["vectorstore"]
202
+ sqlite_conn = rag["sqlite_conn"]
203
+
204
+ if Filtered_search:
205
+ results = reg_embedding_system.search_with_metadata_filter(
206
+ ensemble_retriever=retriever,
207
+ vectorstore=vectorstore,
208
+ query=query,
209
+ k=search_document_number,
210
+ metadata_filter=filters,
211
+ sqlite_conn=sqlite_conn
212
+ )
213
+ else:
214
+ results = reg_embedding_system.smart_search_vectorstore(
215
+ retriever=retriever,
216
+ query=query,
217
+ k=search_document_number,
218
+ vectorstore=vectorstore,
219
+ sqlite_conn=sqlite_conn,
220
+ enable_detailed_search=True
221
+ )
222
+ print(f"[{region}] 검색: {len(results)}건")
223
+ combined_results.extend(results)
224
+
225
+ return combined_results
226
+
227
+ # --- 최종 AI ---
228
+ def RegAI(query, Rag_Results, ResultFile_FolderAddress):
229
+ gc.collect()
230
+ AI_Result = "검색 결과가 없습니다." if not Rag_Results else Gemma3_AI_analysis(query, Rag_Results)
231
+
232
+ with open(ResultFile_FolderAddress, 'w', encoding='utf-8') as f:
233
+ print("검색된 문서:", file=f)
234
+ for i, doc in enumerate(Rag_Results):
235
+ print(f"문서 {i+1}: {doc.page_content[:200]}... (메타: {doc.metadata})", file=f)
236
+ print("\n답변:", file=f)
237
+ print(AI_Result, file=f)
238
+
239
+ return AI_Result
240
+
241
+ # --- 실행 ---
242
+ if __name__ == '__main__':
243
+ # 로컬 개발용
244
+ threading.Thread(target=load_rag_objects, daemon=True).start()
245
+ time.sleep(2)
246
+ socketio.emit('message', {'message': '데이터 로딩 시작...'})
247
+ socketio.run(app, host='0.0.0.0', port=7860, debug=False)
248
+ else:
249
+ # Gunicorn용: 워커 시작 후 로딩
250
+ import atexit
251
+ loading_thread = threading.Thread(target=load_rag_objects, daemon=True)
252
+ loading_thread.start()
 
 
 
 
 
 
 
 
 
 
 
253
  atexit.register(cleanup_connections)