Spaces:
Runtime error
Runtime error
File size: 19,299 Bytes
2b91026 0abefc5 2b91026 3ec9194 f97f2ee 3ec9194 f97f2ee 2b91026 3ec9194 2b91026 3ec9194 2b91026 3ec9194 0cc9b31 2b91026 3ec9194 f97f2ee 2b91026 d849b80 2b91026 d849b80 2b91026 3ec9194 2b91026 |
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 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 |
# 导入tushare
import tushare as ts
import matplotlib.pyplot as plt
import pandas as pd
import os
import json
from matplotlib.ticker import MaxNLocator
import matplotlib.font_manager as fm
from lab_gpt4_call import send_chat_request,send_chat_request_Azure,send_official_call
#import ast
import re
from tool import *
import tiktoken
import concurrent.futures
import datetime
from PIL import Image
from io import BytesIO
import queue
import datetime
from threading import Thread
plt.rcParams['font.sans-serif'] = ['Arial Unicode MS']
plt.rcParams['axes.unicode_minus'] = False
import openai
# To override the Thread method
class MyThread(Thread):
def __init__(self, target, args):
super(MyThread, self).__init__()
self.func = target
self.args = args
def run(self):
self.result = self.func(*self.args)
def get_result(self):
return self.result
def parse_and_exe(call_dict, result_buffer, parallel_step: str='1'):
"""
Parse the input and call the corresponding function to obtain the result.
:param call_dict: dict, including arg, func, and output
:param result_buffer: dict, storing the corresponding intermediate results
:param parallel_step: int, parallel step
:return: Returns func(arg) and stores the corresponding result in result_buffer.
"""
arg_list = call_dict['arg' + parallel_step]
replace_arg_list = [result_buffer[item][0] if isinstance(item, str) and ('result' in item or 'input' in item) else item for item in arg_list] # 参数
func_name = call_dict['function' + parallel_step] #
output = call_dict['output' + parallel_step] #
desc = call_dict['description' + parallel_step] #
if func_name == 'loop_rank':
replace_arg_list[1] = eval(replace_arg_list[1])
result = eval(func_name)(*replace_arg_list)
result_buffer[output] = (result, desc) # 'result1': (df1, desc)
return result_buffer
def load_tool_and_prompt(tool_lib, tool_prompt ):
'''
Read two JSON files.
:param tool_lib: Tool description
:param tool_prompt: Tool prompt
:return: Flattened prompt
'''
#
with open(tool_lib, 'r') as f:
tool_lib = json.load(f)
with open(tool_prompt, 'r') as f:
#
tool_prompt = json.load(f)
for key, value in tool_lib.items():
tool_prompt["Function Library:"] = tool_prompt["Function Library:"] + key + " " + value+ '\n\n'
prompt_flat = ''
for key, value in tool_prompt.items():
prompt_flat = prompt_flat + key +' '+ value + '\n\n'
return prompt_flat
# callback function
intermediate_results = queue.Queue() # Create a queue to store intermediate results.
def add_to_queue(intermediate_result):
intermediate_results.put(f"After planing, the intermediate result is {intermediate_result}")
def check_RPM(run_time_list, new_time, max_RPM=1):
# Check if there are already 3 timestamps in the run_time_list, with a maximum of 3 accesses per minute.
# False means no rest is needed, True means rest is needed.
if len(run_time_list) < 3:
run_time_list.append(new_time)
return 0
else:
if (new_time - run_time_list[0]).seconds < max_RPM:
# Calculate the required rest time.
sleep_time = 60 - (new_time - run_time_list[0]).seconds
print('sleep_time:', sleep_time)
run_time_list.pop(0)
run_time_list.append(new_time)
return sleep_time
else:
run_time_list.pop(0)
run_time_list.append(new_time)
return 0
def run(instruction, add_to_queue=None, send_chat_request_Azure = send_official_call, openai_key = '', api_base='', engine=''):
output_text = ''
################################# Step-1:Task select ###########################################
current_time = datetime.datetime.now()
formatted_time = current_time.strftime("%Y-%m-%d")
# If the time has not exceeded 3 PM, use yesterday's data.
if current_time.hour < 15:
formatted_time = (current_time - datetime.timedelta(days=1)).strftime("%Y-%m-%d")
print('===============================Intent Detecting===========================================')
with open('./prompt_lib/prompt_intent_detection.json', 'r') as f:
prompt_task_dict = json.load(f)
prompt_intent_detection = ''
for key, value in prompt_task_dict.items():
prompt_intent_detection = prompt_intent_detection + key + ": " + value+ '\n\n'
prompt_intent_detection = prompt_intent_detection + '\n\n' + 'Instruction:' + '今天的日期是'+ formatted_time +', '+ instruction + ' ###New Instruction: '
# Record the running time.
# current_time = datetime.datetime.now()
# sleep_time = check_RPM(run_time, current_time)
# if sleep_time > 0:
# time.sleep(sleep_time)
try:
response = send_chat_request_Azure(prompt_intent_detection, openai_key=openai_key, api_base=api_base, engine=engine)
# 返回错误
except Exception as e:
return e
new_instruction = response
print('new_instruction:', new_instruction)
output_text = output_text + '\n======Intent Detecting Stage=====\n\n'
output_text = output_text + new_instruction +'\n\n'
if add_to_queue is not None:
add_to_queue(output_text)
event_happen = True
print('===============================Task Planing===========================================')
output_text= output_text + '=====Task Planing Stage=====\n\n'
with open('./prompt_lib/prompt_task.json', 'r') as f:
prompt_task_dict = json.load(f)
prompt_task = ''
for key, value in prompt_task_dict.items():
prompt_task = prompt_task + key + ": " + value+ '\n\n'
prompt_task = prompt_task + '\n\n' + 'Instruction:' + new_instruction + ' ###Plan:'
# current_time = datetime.datetime.now()
# sleep_time = check_RPM(run_time, current_time)
# if sleep_time > 0:
# time.sleep(sleep_time)
try:
response = send_chat_request_Azure(prompt_task, openai_key=openai_key,api_base=api_base,engine=engine)
except Exception as e:
return e
task_select = response
pattern = r"(task\d+=)(\{[^}]*\})"
matches = re.findall(pattern, task_select)
task_plan = {}
for task in matches:
task_step, task_select = task
task_select = task_select.replace("'", "\"") # Replace single quotes with double quotes.
task_select = json.loads(task_select)
task_name = list(task_select.keys())[0]
task_instruction = list(task_select.values())[0]
task_plan[task_name] = task_instruction
# task_plan
for key, value in task_plan.items():
print(key, ':', value)
output_text = output_text + key + ': ' + str(value) + '\n'
output_text = output_text +'\n'
if add_to_queue is not None:
add_to_queue(output_text)
################################# Step-2:Tool select and use ###########################################
print('===============================Tool select and using Stage===========================================')
output_text = output_text + '======Tool select and using Stage======\n\n'
# Read the task_select JSON file name.
task_name = list(task_plan.keys())[0].split('_task')[0]
task_instruction = list(task_plan.values())[0]
tool_lib = './tool_lib/' + 'tool_' + task_name + '.json'
tool_prompt = './prompt_lib/' + 'prompt_' + task_name + '.json'
prompt_flat = load_tool_and_prompt(tool_lib, tool_prompt)
prompt_flat = prompt_flat + '\n\n' +'Instruction :'+ task_instruction+ ' ###Function Call'
#response = "step1={\n \"arg1\": [\"贵州茅台\"],\n \"function1\": \"get_stock_code\",\n \"output1\": \"result1\"\n},step2={\n \"arg1\": [\"result1\",\"20180123\",\"20190313\",\"daily\"],\n \"function1\": \"get_stock_prices_data\",\n \"output1\": \"result2\"\n},step3={\n \"arg1\": [\"result2\",\"close\"],\n \"function1\": \"calculate_stock_index\",\n \"output1\": \"result3\"\n}, ###Output:{\n \"贵州茅台在2018年1月23日到2019年3月13的每日收盘价格的时序表格\": \"result3\",\n}"
# current_time = datetime.datetime.now()
# sleep_time = check_RPM(run_time, current_time)
# if sleep_time > 0:
# time.sleep(sleep_time)
try:
response = send_chat_request_Azure(prompt_flat, openai_key=openai_key,api_base=api_base, engine=engine)
except Exception as e:
return e
#response = "Function Call:step1={\n \"arg1\": [\"五粮液\"],\n \"function1\": \"get_stock_code\",\n \"output1\": \"result1\",\n \"arg2\": [\"泸州老窖\"],\n \"function2\": \"get_stock_code\",\n \"output2\": \"result2\"\n},step2={\n \"arg1\": [\"result1\",\"20190101\",\"20220630\",\"daily\"],\n \"function1\": \"get_stock_prices_data\",\n \"output1\": \"result3\",\n \"arg2\": [\"result2\",\"20190101\",\"20220630\",\"daily\"],\n \"function2\": \"get_stock_prices_data\",\n \"output2\": \"result4\"\n},step3={\n \"arg1\": [\"result3\",\"Cumulative_Earnings_Rate\"],\n \"function1\": \"calculate_stock_index\",\n \"output1\": \"result5\",\n \"arg2\": [\"result4\",\"Cumulative_Earnings_Rate\"],\n \"function2\": \"calculate_stock_index\",\n \"output2\": \"result6\"\n}, ###Output:{\n \"五粮液在2019年1月1日到2022年06月30的每日收盘价格时序表格\": \"result5\",\n \"泸州老窖在2019年1月1日到2022年06月30的每日收盘价格时序表格\": \"result6\"\n}"
call_steps, _ = response.split('###')
pattern = r"(step\d+=)(\{[^}]*\})"
matches = re.findall(pattern, call_steps)
result_buffer = {} # The stored format is as follows: {'result1': (000001.SH, 'Stock code of China Ping An'), 'result2': (df2, 'Stock data of China Ping An from January to June 2021')}.
output_buffer = [] # Store the variable names [result5, result6] that will be passed as the final output to the next task.
# print(task_output)
#
for match in matches:
step, content = match
content = content.replace("'", "\"") # Replace single quotes with double quotes.
print('==================')
print("\n\nstep:", step)
print('content:',content)
call_dict = json.loads(content)
print('It has parallel steps:', len(call_dict) / 4)
output_text = output_text + step + ': ' + str(call_dict) + '\n\n'
# Execute the following code in parallel using multiple processes.
with concurrent.futures.ThreadPoolExecutor() as executor:
# Submit tasks to thread pool
futures = {executor.submit(parse_and_exe, call_dict, result_buffer, str(parallel_step))
for parallel_step in range(1, int(len(call_dict) / 4) + 1)}
# Collect results as they become available
for idx, future in enumerate(concurrent.futures.as_completed(futures)):
# Handle possible exceptions
try:
result = future.result()
# Print the current parallel step number.
print('parallel step:', idx+1)
# print(list(result[1].keys())[0])
# print(list(result[1].values())[0])
except Exception as exc:
print(f'Generated an exception: {exc}')
if step == matches[-1][0]:
# Current task's final step. Save the output of the final step.
for parallel_step in range(1, int(len(call_dict) / 4) + 1):
output_buffer.append(call_dict['output' + str(parallel_step)])
output_text = output_text + '\n'
if add_to_queue is not None:
add_to_queue(output_text)
################################# Step-3:visualization ###########################################
print('===============================Visualization Stage===========================================')
output_text = output_text + '======Visualization Stage====\n\n'
task_name = list(task_plan.keys())[1].split('_task')[0] #visualization_task
#task_name = 'visualization'
task_instruction = list(task_plan.values())[1] #''
tool_lib = './tool_lib/' + 'tool_' + task_name + '.json'
tool_prompt = './prompt_lib/' + 'prompt_' + task_name + '.json'
result_buffer_viz={}
Previous_result = {}
for output_name in output_buffer:
rename = 'input'+ str(output_buffer.index(output_name)+1)
Previous_result[rename] = result_buffer[output_name][1]
result_buffer_viz[rename] = result_buffer[output_name]
prompt_flat = load_tool_and_prompt(tool_lib, tool_prompt)
prompt_flat = prompt_flat + '\n\n' +'Instruction: '+ task_instruction + ', Previous_result: '+ str(Previous_result) + ' ###Function Call'
# current_time = datetime.datetime.now()
# sleep_time = check_RPM(run_time, current_time)
# if sleep_time > 0:
# time.sleep(sleep_time)
try:
response = send_chat_request_Azure(prompt_flat, openai_key=openai_key, api_base=api_base, engine=engine)
except Exception as e:
return e
call_steps, _ = response.split('###')
pattern = r"(step\d+=)(\{[^}]*\})"
matches = re.findall(pattern, call_steps)
for match in matches:
step, content = match
content = content.replace("'", "\"") # Replace single quotes with double quotes.
print('==================')
print("\n\nstep:", step)
print('content:',content)
call_dict = json.loads(content)
print('It has parallel steps:', len(call_dict) / 4)
result_buffer_viz = parse_and_exe(call_dict, result_buffer_viz, parallel_step = '' )
output_text = output_text + step + ': ' + str(call_dict) + '\n\n'
if add_to_queue is not None:
add_to_queue(output_text)
finally_output = list(result_buffer_viz.values()) # plt.Axes
#
df = pd.DataFrame()
str_out = output_text + 'Finally result: '
for ax in finally_output:
if isinstance(ax[0], plt.Axes): # If the output is plt.Axes, display it.
plt.grid()
#plt.show()
str_out = str_out + ax[1]+ ':' + 'plt.Axes' + '\n\n'
#
elif isinstance(ax[0], pd.DataFrame):
df = ax[0]
str_out = str_out + ax[1]+ ':' + 'pd.DataFrame' + '\n\n'
else:
str_out = str_out + str(ax[1])+ ':' + str(ax[0]) + '\n\n'
#
print('===============================Summary Stage===========================================')
output_prompt = "请用第一人称总结一下整个任务规划和解决过程,并且输出结果,用[Task]表示每个规划任务,用\{function\}表示每个任务里调用的函数." + \
"示例1:###我用将您的问题拆分成两个任务,首先第一个任务[stock_task],我依次获取五粮液和贵州茅台从2013年5月20日到2023年5月20日的净资产回报率roe的时序数据. \n然后第二个任务[visualization_task],我用折线图绘制五粮液和贵州茅台从2013年5月20日到2023年5月20日的净资产回报率,并计算它们的平均值和中位数. \n\n在第一个任务中我分别使用了2个工具函数\{get_stock_code\},\{get_Financial_data_from_time_range\}获取到两只股票的roe数据,在第二个任务里我们使用折线图\{plot_stock_data\}工具函数来绘制他们的roe十年走势,最后并计算了两只股票十年ROE的中位数\{output_median_col\}和均值\{output_mean_col\}.\n\n最后贵州茅台的ROE的均值和中位数是\{\},{},五粮液的ROE的均值和中位数是\{\},\{\}###" + \
"示例2:###我用将您的问题拆分成两个任务,首先第一个任务[stock_task],我依次获取20230101到20230520这段时间北向资金每日净流入和每日累计流入时序数据,第二个任务是[visualization_task],因此我在同一张图里同时绘制北向资金20230101到20230520的每日净流入柱状图和每日累计流入的折线图 \n\n为了完成第一个任务中我分别使用了2个工具函数\{get_north_south_money\},\{calculate_stock_index\}分别获取到北上资金的每日净流入量和每日的累计净流入量,第二个任务里我们使用折线图\{plot_stock_data\}绘制来两个指标的变化走势.\n\n最后我们给您提供了包含两个指标的折线图和数据表格." + \
"示例3:###我用将您的问题拆分成两个任务,首先第一个任务[economic_task],我爬取了上市公司贵州茅台和其主营业务介绍信息. \n然后第二个任务[visualization_task],我用表格打印贵州茅台及其相关信息. \n\n在第一个任务中我分别使用了1个工具函数\{get_company_info\} 获取到贵州茅台的公司信息,在第二个任务里我们使用折线图\{print_save_table\}工具函数来输出表格.\n"
try:
output_result = send_chat_request_Azure(output_prompt + str_out + '###', openai_key=openai_key, api_base=api_base,engine=engine)
except Exception as e:
return e
print(output_result)
buf = BytesIO()
plt.savefig(buf, format='png')
buf.seek(0)
#
#
image = Image.open(buf)
return output_text, image, output_result, df
def gradio_interface(query, openai_key, openai_key_azure, api_base,engine):
# Create a new thread to run the function.
placeholder_dataframe = pd.DataFrame()
placeholder_image = np.zeros((100, 100, 3), dtype=np.uint8) # Create a placeholder image.
try:
if openai_key.startswith('sk') and openai_key_azure == '':
print('send_official_call')
thread = MyThread(target=run, args=(query, add_to_queue, send_official_call, openai_key))
elif openai_key =='' and len(openai_key_azure)>0:
print('send_chat_request_Azure')
thread = MyThread(target=run, args=(query, add_to_queue, send_chat_request_Azure, openai_key_azure, api_base, engine))
thread.start()
#
# Wait for the result of the calculate function and display the intermediate results simultaneously.
while thread.is_alive():
while not intermediate_results.empty():
yield intermediate_results.get(), placeholder_image, 'Running' , placeholder_dataframe # Use the yield keyword to return intermediate results in real-time
time.sleep(0.1) # Avoid excessive resource consumption.
finally_text, img, output, df = thread.get_result()
yield finally_text, img, output, df
except Exception as e:
yield str(e), placeholder_image, str(e), placeholder_dataframe
# Return the final result.
instruction = '画一下五粮液和泸州老窖从2019年年初到2022年年中的收益率走势'
if __name__ == '__main__':
# 初始化pro接口
#openai_call = send_chat_request_Azure #
openai_call = send_official_call #
openai_key = os.getenv("OPENAI_KEY")
output, image, df , output_result = run(instruction, send_chat_request_Azure = openai_call, openai_key=openai_key, api_base='', engine='')
print(output_result)
plt.show()
|