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1
- import os
2
- import re
3
- from pathlib import Path
4
- from typing import Optional, Union, Dict, List, Any
5
- from enum import Enum
6
- import requests
7
- import tempfile
8
- import ast
9
-
10
- from dotenv import load_dotenv
11
- from langgraph.graph import StateGraph, END
12
- from langchain.tools import Tool as LangTool
13
- from langchain_core.runnables import RunnableLambda
14
- from langchain_google_genai import ChatGoogleGenerativeAI
15
- from pathlib import Path
16
-
17
- from langchain.tools import StructuredTool
18
-
19
- from tools import (
20
- EnhancedSearchTool,
21
- EnhancedWikipediaTool,
22
- excel_to_markdown,
23
- image_file_info,
24
- audio_file_info,
25
- code_file_read,
26
- extract_youtube_info)
27
-
28
- # Load environment variables
29
- load_dotenv()
30
-
31
- # --- Constants ---
32
- DEFAULT_API_URL = "https://agents-course-unit4-scoring.hf.space"
33
- QUESTIONS_URL = f"{DEFAULT_API_URL}/questions"
34
- SUBMIT_URL = f"{DEFAULT_API_URL}/submit"
35
- FILE_PATH = f"{DEFAULT_API_URL}/files/"
36
-
37
- # Initialize LLM
38
- llm = ChatGoogleGenerativeAI(
39
- model=os.getenv("GEMINI_MODEL", "gemini-pro"),
40
- google_api_key=os.getenv("GEMINI_API_KEY")
41
- )
42
-
43
- # ----------- Enhanced State Management -----------
44
- from typing import TypedDict
45
-
46
- class AgentState(TypedDict):
47
- """Enhanced state tracking for the agent - using TypedDict for LangGraph compatibility"""
48
- question: str
49
- original_question: str
50
- conversation_history: List[Dict[str, str]]
51
- selected_tools: List[str]
52
- tool_results: Dict[str, Any]
53
- final_answer: str
54
- current_step: str
55
- error_count: int
56
- max_errors: int
57
-
58
- class AgentStep(Enum):
59
- ANALYZE_QUESTION = "analyze_question"
60
- SELECT_TOOLS = "select_tools"
61
- EXECUTE_TOOLS = "execute_tools"
62
- SYNTHESIZE_ANSWER = "synthesize_answer"
63
- ERROR_RECOVERY = "error_recovery"
64
- COMPLETE = "complete"
65
-
66
- # ----------- Helper Functions -----------
67
- def initialize_state(question: str) -> AgentState:
68
- """Initialize agent state with default values"""
69
- return {
70
- "question": question,
71
- "original_question": question,
72
- "conversation_history": [],
73
- "selected_tools": [],
74
- "tool_results": {},
75
- "final_answer": "",
76
- "current_step": "start",
77
- "error_count": 0,
78
- "max_errors": 3
79
- }
80
-
81
- # Initialize vanilla tools
82
- from langchain.tools import DuckDuckGoSearchResults, WikipediaQueryRun
83
- from langchain.utilities import WikipediaAPIWrapper
84
-
85
- duckduckgo_tool = DuckDuckGoSearchResults()
86
- wiki_tool = WikipediaQueryRun(api_wrapper=WikipediaAPIWrapper())
87
-
88
-
89
- # Initialize enhanced tools
90
- enhanced_search_tool = LangTool.from_function(
91
- name="enhanced_web_search",
92
- func=EnhancedSearchTool().run,
93
- description="Enhanced web search with intelligent query processing, multiple search strategies, and result filtering. Provides comprehensive and relevant search results."
94
- )
95
-
96
- enhanced_wiki_tool = LangTool.from_function(
97
- name="enhanced_wikipedia",
98
- func=EnhancedWikipediaTool().run,
99
- description="Enhanced Wikipedia search with entity extraction, multi-term search, and relevant content filtering. Provides detailed encyclopedic information."
100
- )
101
-
102
- excel_tool = StructuredTool.from_function(
103
- name="excel_to_text",
104
- func=excel_to_markdown,
105
- description="Enhanced Excel analysis with metadata, statistics, and structured data preview. Inputs: 'excel_path' (str), 'sheet_name' (str, optional).",
106
- )
107
-
108
- image_tool = StructuredTool.from_function(
109
- name="image_file_info",
110
- func=image_file_info,
111
- description="Enhanced image file analysis with detailed metadata and properties."
112
- )
113
-
114
- audio_tool = LangTool.from_function(
115
- name="audio_file_info",
116
- func=audio_file_info,
117
- description="Enhanced audio processing with transcription, language detection, and timestamped segments."
118
- )
119
-
120
- code_tool = LangTool.from_function(
121
- name="code_file_read",
122
- func=code_file_read,
123
- description="Enhanced code file analysis with language-specific insights and structure analysis."
124
- )
125
-
126
- youtube_tool = LangTool.from_function(
127
- name="extract_youtube_info",
128
- func=extract_youtube_info,
129
- description="Extracts transcription from the youtube link"
130
- )
131
-
132
- # Enhanced tool registry
133
- AVAILABLE_TOOLS = {
134
- "excel": excel_tool,
135
- "search": wiki_tool,
136
- "wikipedia": duckduckgo_tool,
137
- "image": image_tool,
138
- "audio": audio_tool,
139
- "code": code_tool,
140
- "youtube": youtube_tool
141
- }
142
-
143
- # ----------- Intelligent Tool Selection -----------
144
- def analyze_question(state: AgentState) -> AgentState:
145
- """Enhanced question analysis with better tool recommendation"""
146
- analysis_prompt = f"""
147
- Analyze this question and determine the best tools and approach:
148
- Question: {state["question"]}
149
-
150
- Available enhanced tools:
151
- 1. excel - Enhanced Excel/CSV analysis with statistics and metadata
152
- 2. search - Enhanced web search with intelligent query processing and result filtering
153
- 3. wikipedia - Enhanced Wikipedia search with entity extraction and content filtering
154
- 4. image - Enhanced image analysis with what the image contains
155
- 5. audio - Enhanced audio processing with transcription
156
- 6. code - Enhanced code analysis with language-specific insights
157
- 7. youtube - Extracts transcription from the youtube link
158
-
159
- Consider:
160
- - Question type (factual, analytical, current events, technical)
161
- - Required information sources (files, web, encyclopedic)
162
- - Time sensitivity (current vs historical information)
163
- - Complexity level
164
-
165
- Respond with:
166
- 1. Question type: <type>
167
- 2. Primary tools needed: <tools>
168
- 3. Search strategy: <strategy>
169
- 4. Expected answer format: <format>
170
-
171
- Format: TYPE: <type> | TOOLS: <tools> | STRATEGY: <strategy> | FORMAT: <format>
172
- """
173
-
174
- try:
175
- response = llm.invoke(analysis_prompt).content
176
- state["conversation_history"].append({"role": "analysis", "content": response})
177
- state["current_step"] = AgentStep.SELECT_TOOLS.value
178
- except Exception as e:
179
- state["error_count"] += 1
180
- state["conversation_history"].append({"role": "error", "content": f"Analysis failed: {e}"})
181
- state["current_step"] = AgentStep.ERROR_RECOVERY.value
182
-
183
- return state
184
-
185
- def select_tools(state: AgentState) -> AgentState:
186
- """Enhanced tool selection with smarter logic"""
187
- question = state["question"].lower()
188
- selected_tools = []
189
-
190
- # File-based tool selection
191
- if any(keyword in question for keyword in ["excel", "csv", "spreadsheet", ".xlsx", ".xls"]):
192
- selected_tools.append("excel")
193
- if any(keyword in question for keyword in [".png", ".jpg", ".jpeg", ".bmp", ".gif", "image"]):
194
- selected_tools.append("image")
195
- if any(keyword in question for keyword in [".mp3", ".wav", ".ogg", "audio", "transcribe"]):
196
- selected_tools.append("audio")
197
- if any(keyword in question for keyword in [".py", ".ipynb", "code", "script", "function"]):
198
- selected_tools.append("code")
199
- if any(keyword in question for keyword in ["youtube"]):
200
- selected_tools.append("youtube")
201
-
202
- print(f"File-based tools selected: {selected_tools}")
203
-
204
- tools_prompt = f"""
205
- You are a smart assistant that selects relevant tools based on the user's natural language question.
206
-
207
- Available tools:
208
- - "search" → Use for real-time, recent, or broad web information.
209
- - "wikipedia" → Use for factual or encyclopedic knowledge.
210
- - "excel" → Use for spreadsheet-related questions (.xlsx, .csv).
211
- - "image" → Use for image files (.png, .jpg, etc.) or image-based tasks.
212
- - "audio" → Use for sound files (.mp3, .wav, etc.) or transcription.
213
- - "code" → Use for programming-related questions or when files like .py are mentioned.
214
- - "youtube" → Use for questions involving YouTube videos.
215
-
216
- Return the result as a **Python list of strings**, no explanation. Use only the relevant tools.
217
- If not relevant tool is found, return an empty list such as [].
218
-
219
- ### Examples:
220
-
221
- Q: "Show me recent news about elections in 2025"
222
- A: ["search"]
223
-
224
- Q: "Summarize this Wikipedia article about Einstein"
225
- A: ["wikipedia"]
226
-
227
- Q: "Analyze this .csv file"
228
- A: ["excel"]
229
-
230
- Q: "Transcribe this .wav audio file"
231
- A: ["audio"]
232
-
233
- Q: "Generate Python code from this prompt"
234
- A: ["code"]
235
-
236
- Q: "Who was the president of USA in 1945?"
237
- A: ["wikipedia"]
238
-
239
- Q: "Give me current weather updates"
240
- A: ["search"]
241
-
242
- Q: "Look up the history of space exploration"
243
- A: ["search", "wikipedia"]
244
-
245
- Q: "What is 2 + 2?"
246
- A: []
247
-
248
- ### Now answer:
249
-
250
- Q: {state["question"]}
251
- A:
252
- """
253
-
254
- llm_tools = ast.literal_eval(llm.invoke(tools_prompt).content.strip())
255
- if not isinstance(llm_tools, list):
256
- llm_tools = []
257
- print(f"LLM suggested tools: {llm_tools}")
258
- selected_tools.extend(llm_tools)
259
- selected_tools = list(set(selected_tools)) # Remove duplicates
260
-
261
- print(f"Final selected tools after LLM suggestion: {selected_tools}")
262
-
263
-
264
- # # Information-based tool selection
265
- # current_indicators = ["recent", "current", "news", "today", "2025", "now"]
266
- # encyclopedia_indicators = ["wiki", "wikipedia"]
267
-
268
- # if any(indicator in question for indicator in current_indicators):
269
- # selected_tools.append("search")
270
- # elif any(indicator in question for indicator in encyclopedia_indicators):
271
- # selected_tools.append("wikipedia")
272
- # elif any(keyword in question for keyword in ["search", "find", "look up", "information about"]):
273
- # # Use both for comprehensive coverage
274
- # selected_tools.extend(["search", "wikipedia"])
275
-
276
- # # Default fallback
277
- # if not selected_tools:
278
- # if any(word in question for word in ["who", "what", "when", "where"]):
279
- # selected_tools.append("wikipedia")
280
- # selected_tools.append("search")
281
-
282
- # # Remove duplicates while preserving order
283
- # selected_tools = list(dict.fromkeys(selected_tools))
284
-
285
- state["selected_tools"] = selected_tools
286
- state["current_step"] = AgentStep.EXECUTE_TOOLS.value
287
- return state
288
-
289
- def execute_tools(state: AgentState) -> AgentState:
290
- """Enhanced tool execution with better error handling"""
291
- results = {}
292
-
293
- # Enhanced file detection
294
- file_path = None
295
- downloaded_file_marker = "A file was downloaded for this task and saved locally at:"
296
- if downloaded_file_marker in state["question"]:
297
- lines = state["question"].splitlines()
298
- for i, line in enumerate(lines):
299
- if downloaded_file_marker in line:
300
- if i + 1 < len(lines):
301
- file_path_candidate = lines[i + 1].strip()
302
- if Path(file_path_candidate).exists():
303
- file_path = file_path_candidate
304
- print(f"Detected file path: {file_path}")
305
- break
306
-
307
- for tool_name in state["selected_tools"]:
308
- try:
309
- print(f"Executing tool: {tool_name}")
310
-
311
- # File-based tools
312
- if tool_name in ["excel", "image", "audio", "code"] and file_path:
313
- if tool_name == "excel":
314
- result = AVAILABLE_TOOLS["excel"].run({"excel_path": file_path, "sheet_name": None})
315
- elif tool_name == "image":
316
- result = AVAILABLE_TOOLS["image"].run({"image_path": file_path, "question": state["question"]})
317
- elif tool_name == "youtube":
318
- print(f"Running YouTube tool with file path: {file_path}")
319
- result = AVAILABLE_TOOLS["youtube"].run(state["question"])
320
- else:
321
- result = AVAILABLE_TOOLS[tool_name].run(file_path)
322
- # Information-based tools
323
- else:
324
- # Extract clean query for search tools
325
- clean_query = state["question"]
326
- if downloaded_file_marker in clean_query:
327
- clean_query = clean_query.split(downloaded_file_marker)[0].strip()
328
-
329
- result = AVAILABLE_TOOLS[tool_name].run(clean_query)
330
-
331
- results[tool_name] = result
332
-
333
- print(f"Tool {tool_name} completed successfully.")
334
- print(f"Output for {tool_name}: {result}")
335
-
336
- except Exception as e:
337
- error_msg = f"Error using {tool_name}: {str(e)}"
338
- results[tool_name] = error_msg
339
- state["error_count"] += 1
340
- print(error_msg)
341
-
342
- state["tool_results"] = results
343
- state["current_step"] = AgentStep.SYNTHESIZE_ANSWER.value
344
- return state
345
-
346
- def synthesize_answer(state: AgentState) -> AgentState:
347
- """Enhanced answer synthesis with better formatting"""
348
-
349
- tool_results_str = "\n".join([f"=== {tool.upper()} RESULTS ===\n{result}\n" for tool, result in state["tool_results"].items()])
350
-
351
- cot_prompt = f"""You are a precise assistant tasked with analyzing the user's question{" using the available tool outputs" if state["tool_results"] else ""}.
352
-
353
- Question:
354
- {state["question"]}
355
-
356
- {f"Available tool outputs: {tool_results_str}" if state["tool_results"] else ""}
357
-
358
- Instructions:
359
- - Think step-by-step to determine the best strategy to answer the question.
360
- - Use only the given information; do not hallucinate or infer from external knowledge.
361
- - If decoding, logical deduction, counting, or interpretation is required, show each step clearly.
362
- - If any part of the tool output is unclear or incomplete, mention it and its impact.
363
- - Do not guess. If the information is insufficient, say so clearly.
364
- - Finish with a clearly marked line: `---END OF ANALYSIS---`
365
-
366
- Your step-by-step analysis:"""
367
-
368
- cot_response = llm.invoke(cot_prompt).content
369
-
370
- final_answer_prompt = f"""You are a precise assistant tasked with deriving the **final answer** from the step-by-step analysis below.
371
-
372
- Question:
373
- {state["question"]}
374
-
375
- Step-by-step analysis:
376
- {cot_response}
377
-
378
- Instructions:
379
- - Read the analysis thoroughly before responding.
380
- - Output ONLY the final answer. Do NOT include any reasoning or explanation.
381
- - Remove any punctuation at the corners of the answer unless it is explicitly mentioned in the question.
382
- - The answer must be concise and factual.
383
- - If the analysis concluded that a definitive answer cannot be determined, respond with: `NA` (exactly).
384
-
385
- Final answer:"""
386
-
387
-
388
- try:
389
- response = llm.invoke(final_answer_prompt).content
390
- state["final_answer"] = response
391
- state["current_step"] = AgentStep.COMPLETE.value
392
- except Exception as e:
393
- state["error_count"] += 1
394
- state["final_answer"] = f"Error synthesizing answer: {e}"
395
- state["current_step"] = AgentStep.ERROR_RECOVERY.value
396
-
397
- return state
398
-
399
- def error_recovery(state: AgentState) -> AgentState:
400
- """Enhanced error recovery with multiple fallback strategies"""
401
- if state["error_count"] >= state["max_errors"]:
402
- state["final_answer"] = "I encountered multiple errors and cannot complete this task reliably."
403
- state["current_step"] = AgentStep.COMPLETE.value
404
- else:
405
- # Enhanced fallback: try with simplified approach
406
- try:
407
- fallback_prompt = f"""
408
- Answer this question directly using your knowledge:
409
- {state["original_question"]}
410
-
411
- Provide a helpful response even if you cannot access external tools.
412
- Be clear about any limitations in your answer.
413
- """
414
- response = llm.invoke(fallback_prompt).content
415
- state["final_answer"] = f"Using available knowledge (some tools unavailable): {response}"
416
- state["current_step"] = AgentStep.COMPLETE.value
417
- except Exception as e:
418
- state["final_answer"] = f"All approaches failed. Error: {e}"
419
- state["current_step"] = AgentStep.COMPLETE.value
420
-
421
- return state
422
-
423
- # ----------- Enhanced LangGraph Workflow -----------
424
- def route_next_step(state: AgentState) -> str:
425
- """Route to next step based on current state"""
426
- step_routing = {
427
- "start": AgentStep.ANALYZE_QUESTION.value,
428
- AgentStep.ANALYZE_QUESTION.value: AgentStep.SELECT_TOOLS.value,
429
- AgentStep.SELECT_TOOLS.value: AgentStep.EXECUTE_TOOLS.value,
430
- AgentStep.EXECUTE_TOOLS.value: AgentStep.SYNTHESIZE_ANSWER.value,
431
- AgentStep.SYNTHESIZE_ANSWER.value: AgentStep.COMPLETE.value,
432
- AgentStep.ERROR_RECOVERY.value: AgentStep.COMPLETE.value,
433
- AgentStep.COMPLETE.value: END,
434
- }
435
-
436
- return step_routing.get(state["current_step"], END)
437
-
438
- # Create enhanced workflow
439
- workflow = StateGraph(AgentState)
440
-
441
- # Add nodes
442
- workflow.add_node("analyze_question", RunnableLambda(analyze_question))
443
- workflow.add_node("select_tools", RunnableLambda(select_tools))
444
- workflow.add_node("execute_tools", RunnableLambda(execute_tools))
445
- workflow.add_node("synthesize_answer", RunnableLambda(synthesize_answer))
446
- workflow.add_node("error_recovery", RunnableLambda(error_recovery))
447
-
448
- # Set entry point
449
- workflow.set_entry_point("analyze_question")
450
-
451
- # Add conditional edges
452
- workflow.add_conditional_edges(
453
- "analyze_question",
454
- lambda state: "select_tools" if state["current_step"] == AgentStep.SELECT_TOOLS.value else "error_recovery"
455
- )
456
- workflow.add_edge("select_tools", "execute_tools")
457
- workflow.add_conditional_edges(
458
- "execute_tools",
459
- lambda state: "synthesize_answer" if state["current_step"] == AgentStep.SYNTHESIZE_ANSWER.value else "error_recovery"
460
- )
461
- workflow.add_conditional_edges(
462
- "synthesize_answer",
463
- lambda state: END if state["current_step"] == AgentStep.COMPLETE.value else "error_recovery"
464
- )
465
- workflow.add_edge("error_recovery", END)
466
-
467
- # Compile the enhanced graph
468
- graph = workflow.compile()
469
-
470
- # ----------- Agent Class -----------
471
- class GaiaAgent:
472
- """GAIA Agent with tools and intelligent processing"""
473
-
474
- def __init__(self):
475
- self.graph = graph
476
- self.tool_usage_stats = {}
477
- print("Enhanced GAIA Agent initialized with:")
478
- print("✓ Intelligent multi-query web search")
479
- print("✓ Entity-aware Wikipedia search")
480
- print("✓ Enhanced file processing tools")
481
- print("✓ Advanced error recovery")
482
- print("✓ Comprehensive result synthesis")
483
-
484
- def get_tool_stats(self) -> Dict[str, int]:
485
- """Get usage statistics for tools"""
486
- return self.tool_usage_stats.copy()
487
-
488
- def __call__(self, task_id: str, question: str) -> str:
489
- print(f"\n{'='*60}")
490
- print(f"[{task_id}] ENHANCED PROCESSING: {question}")
491
-
492
- # Initialize state
493
- processed_question = process_file(task_id, question)
494
- initial_state = initialize_state(processed_question)
495
-
496
- try:
497
- # Execute the enhanced workflow
498
- result = self.graph.invoke(initial_state)
499
-
500
- # Extract results
501
- answer = result.get("final_answer", "No answer generated")
502
- selected_tools = result.get("selected_tools", [])
503
- conversation_history = result.get("conversation_history", [])
504
- tool_results = result.get("tool_results", {})
505
- error_count = result.get("error_count", 0)
506
-
507
- # Update tool usage statistics
508
- for tool in selected_tools:
509
- self.tool_usage_stats[tool] = self.tool_usage_stats.get(tool, 0) + 1
510
-
511
- # Enhanced logging
512
- print(f"[{task_id}] Selected tools: {selected_tools}")
513
- print(f"[{task_id}] Tools executed: {list(tool_results.keys())}")
514
- print(f"[{task_id}] Processing steps: {len(conversation_history)}")
515
- print(f"[{task_id}] Errors encountered: {error_count}")
516
-
517
- # Log tool result sizes for debugging
518
- for tool, result in tool_results.items():
519
- result_size = len(str(result)) if result else 0
520
- print(f"[{task_id}] {tool} result size: {result_size} chars")
521
-
522
- print(f"[{task_id}] FINAL ANSWER: {answer}")
523
- print(f"{'='*60}")
524
-
525
- return answer
526
-
527
- except Exception as e:
528
- error_msg = f"Critical error in enhanced agent execution: {str(e)}"
529
- print(f"[{task_id}] {error_msg}")
530
-
531
- # Try fallback direct LLM response
532
- try:
533
- fallback_response = llm.invoke(f"Please answer this question: {question}").content
534
- return f"Fallback response: {fallback_response}"
535
- except:
536
- return error_msg
537
-
538
- # ----------- Enhanced File Processing -----------
539
- def detect_file_type(file_path: str) -> Optional[str]:
540
- """Enhanced file type detection with more formats"""
541
- ext = Path(file_path).suffix.lower()
542
-
543
- file_type_mapping = {
544
- # Spreadsheets
545
- '.xlsx': 'excel', '.xls': 'excel', '.csv': 'excel',
546
- # Images
547
- '.png': 'image', '.jpg': 'image', '.jpeg': 'image',
548
- '.bmp': 'image', '.gif': 'image', '.tiff': 'image', '.webp': 'image',
549
- # Audio
550
- '.mp3': 'audio', '.wav': 'audio', '.ogg': 'audio',
551
- '.flac': 'audio', '.m4a': 'audio', '.aac': 'audio',
552
- # Code
553
- '.py': 'code', '.ipynb': 'code', '.js': 'code', '.html': 'code',
554
- '.css': 'code', '.java': 'code', '.cpp': 'code', '.c': 'code',
555
- '.sql': 'code', '.r': 'code', '.json': 'code', '.xml': 'code',
556
- # Documents
557
- '.txt': 'text', '.md': 'text', '.pdf': 'document',
558
- '.doc': 'document', '.docx': 'document'
559
- }
560
-
561
- return file_type_mapping.get(ext)
562
-
563
- def process_file(task_id: str, question_text: str) -> str:
564
- """Enhanced file processing with better error handling and metadata"""
565
- file_url = f"{FILE_PATH}{task_id}"
566
-
567
- try:
568
- print(f"[{task_id}] Attempting to download file from: {file_url}")
569
- response = requests.get(file_url, timeout=30)
570
- response.raise_for_status()
571
- print(f"[{task_id}] File download successful. Status: {response.status_code}")
572
-
573
- except requests.exceptions.RequestException as exc:
574
- print(f"[{task_id}] File download failed: {str(exc)}")
575
- return question_text # Return original question if no file
576
-
577
- # Enhanced filename extraction
578
- content_disposition = response.headers.get("content-disposition", "")
579
- filename = task_id # Default fallback
580
-
581
- # Try to extract filename from Content-Disposition header
582
- filename_match = re.search(r'filename[*]?=(?:"([^"]+)"|([^;]+))', content_disposition)
583
- if filename_match:
584
- filename = filename_match.group(1) or filename_match.group(2)
585
- filename = filename.strip()
586
-
587
- # Create enhanced temp directory structure
588
- temp_storage_dir = Path(tempfile.gettempdir()) / "gaia_enhanced_files" / task_id
589
- temp_storage_dir.mkdir(parents=True, exist_ok=True)
590
-
591
- file_path = temp_storage_dir / filename
592
- file_path.write_bytes(response.content)
593
-
594
- # Get file metadata
595
- file_size = len(response.content)
596
- file_type = detect_file_type(filename)
597
-
598
- print(f"[{task_id}] File saved: {filename} ({file_size:,} bytes, type: {file_type})")
599
-
600
- # Enhanced question augmentation
601
- enhanced_question = f"{question_text}\n\n"
602
- enhanced_question += f"{'='*50}\n"
603
- enhanced_question += f"FILE INFORMATION:\n"
604
- enhanced_question += f"A file was downloaded for this task and saved locally at:\n"
605
- enhanced_question += f"{str(file_path)}\n"
606
- enhanced_question += f"File details:\n"
607
- enhanced_question += f"- Name: {filename}\n"
608
- enhanced_question += f"- Size: {file_size:,} bytes ({file_size/1024:.1f} KB)\n"
609
- enhanced_question += f"- Type: {file_type or 'unknown'}\n"
610
- enhanced_question += f"{'='*50}\n\n"
611
-
612
- return enhanced_question
613
-
614
- # ----------- Usage Examples and Testing -----------
615
- def run_enhanced_tests():
616
- """Run comprehensive tests of the enhanced agent"""
617
- agent = GaiaAgent()
618
-
619
- test_cases = [
620
- {
621
- "id": "test_search_1",
622
- "question": "What are the latest developments in artificial intelligence in 2024?",
623
- "expected_tools": ["search"]
624
- },
625
- {
626
- "id": "test_wiki_1",
627
- "question": "Tell me about Albert Einstein's contributions to physics",
628
- "expected_tools": ["wikipedia"]
629
- },
630
- {
631
- "id": "test_combined_1",
632
- "question": "What is machine learning and what are recent breakthroughs?",
633
- "expected_tools": ["wikipedia", "search"]
634
- },
635
- {
636
- "id": "test_excel_1",
637
- "question": "Analyze the data in the Excel file sales_data.xlsx",
638
- "expected_tools": ["excel"]
639
- }
640
- ]
641
-
642
- print("\n" + "="*80)
643
- print("RUNNING ENHANCED AGENT TESTS")
644
- print("="*80)
645
-
646
- for test_case in test_cases:
647
- print(f"\nTest Case: {test_case['id']}")
648
- print(f"Question: {test_case['question']}")
649
- print(f"Expected tools: {test_case['expected_tools']}")
650
-
651
- try:
652
- result = agent(test_case['id'], test_case['question'])
653
- print(f"Result length: {len(result)} characters")
654
- print(f"Result preview: {result[:200]}...")
655
- except Exception as e:
656
- print(f"Test failed: {e}")
657
-
658
- print("-" * 60)
659
-
660
- # Print tool usage statistics
661
- print(f"\nTool Usage Statistics:")
662
- for tool, count in agent.get_tool_stats().items():
663
- print(f" {tool}: {count} times")
664
-
665
- # Usage example
666
- if __name__ == "__main__":
667
- # Create enhanced agent
668
- agent = GaiaAgent()
669
-
670
- # Example usage
671
- sample_questions = [
672
- "What is the current population of Tokyo and how has it changed recently?",
673
- "Explain quantum computing and its recent developments",
674
- "Tell me about the history of machine learning and current AI trends",
675
- ]
676
-
677
- print("\n" + "="*80)
678
- print("ENHANCED GAIA AGENT DEMONSTRATION")
679
- print("="*80)
680
-
681
- for i, question in enumerate(sample_questions):
682
- print(f"\nExample {i+1}: {question}")
683
- result = agent(f"demo_{i}", question)
684
- print(f"Answer: {result[:300]}...")
685
- print("-" * 60)
686
-
687
- # Uncomment to run comprehensive tests
688
- # run_enhanced_tests()