mix_predict_by_day_324.py 3.6 KB

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  1. # -*- encoding:utf-8 -*-
  2. import numpy as np
  3. from keras.models import load_model
  4. import joblib
  5. def read_data(path):
  6. day_lines = {}
  7. with open(path) as f:
  8. for line in f.readlines()[:]:
  9. line = eval(line.strip())
  10. date = str(line[-1][-1])
  11. if date in day_lines:
  12. day_lines[date].append(line)
  13. else:
  14. day_lines[date] = [line]
  15. # print(len(day_lines['20191230']))
  16. return day_lines
  17. def predict(file_path='', model_path='15min_dnn_seq', rows=18, cols=18):
  18. day_lines = read_data(file_path)
  19. print('数据读取完毕')
  20. model=load_model(model_path + '.h5')
  21. print('模型加载完毕')
  22. items = sorted(day_lines.keys())
  23. for key in items:
  24. # print(day)
  25. lines = day_lines[key]
  26. up_num = 0
  27. down_num = 0
  28. size = len(lines[0])
  29. x0 = 0
  30. x1 = 0
  31. x2 = 0
  32. x3 = 0
  33. x4 = 0
  34. for line in lines:
  35. train_x = np.array([line[:size - 1]])
  36. train_x_a = train_x[:,:rows*cols]
  37. train_x_a = train_x_a.reshape(train_x.shape[0], rows, cols, 1)
  38. # train_x_b = train_x[:, 18*18:18*18+2*18]
  39. # train_x_b = train_x_b.reshape(train_x.shape[0], 18, 2, 1)
  40. train_x_c = train_x[:,rows*cols:]
  41. result = model.predict([train_x_c, train_x_a])
  42. ratio = 1
  43. if train_x_c[0][-1] == 1:
  44. ratio = 2
  45. elif train_x_c[0][-2] == 1:
  46. ratio = 1.6
  47. elif train_x_c[0][-3] == 1:
  48. ratio = 1.3
  49. if result[0][0]> 0.5:
  50. up_num = up_num + ratio
  51. elif result[0][1] > 0.5:
  52. up_num = up_num + 0.4*ratio
  53. elif result[0][2] > 0.5:
  54. down_num = down_num + 0.4*ratio
  55. else:
  56. down_num = down_num + ratio
  57. maxx = max(result[0])
  58. if maxx - result[0][0] == 0:
  59. x0 = x0 + 1
  60. if maxx - result[0][1] == 0:
  61. x1 = x1 + 1
  62. if maxx - result[0][2] == 0:
  63. x2 = x2 + 1
  64. if maxx - result[0][3] == 0:
  65. x3 = x3 + 1
  66. # print(key, int(up_num), int(down_num), (down_num*1.2 + 2)/(up_num*1.2 + 2), )
  67. print(key, x0, x1, x2,x3, (down_num*1.5 + 2)/(up_num*1.2 + 2))
  68. import datetime
  69. if __name__ == '__main__':
  70. today = datetime.datetime.now()
  71. today = today
  72. today = today.strftime('%Y%m%d')
  73. # predict(file_path='D:\\data\\quantization\\stock6_5_test.log', model_path='5d_dnn_seq.h5')
  74. # predict(file_path='D:\\data\\quantization\\stock9_18_20200220.log', model_path='18d_dnn_seq.h5')
  75. # predict(file_path='D:\\data\\quantization\\stock9_18_2.log', model_path='18d_dnn_seq.h5')
  76. # predict(file_path='D:\\data\\quantization\\stock16_18d_20200310.log', model_path='16_18d_mix_seq')
  77. # predict(file_path='D:\\data\\quantization\\stock196_18d_20200326.log', model_path='196_18d_mix_6D_ma5_s_seq')
  78. # predict(file_path='D:\\data\\quantization\\stock321_28d_5D_20200429.log', model_path='321_28d_mix_5D_ma5_s_seq_2', rows=28, cols=20)
  79. predict(file_path='D:\\data\\quantization\\stock327_28d_' + today + '.log', model_path='327_28d_mix_5D_ma5_s_seq', rows=28, cols=20)
  80. # predict(file_path='D:\\data\\quantization\\stock9_18_4.log', model_path='18d_dnn_seq.h5')
  81. # predict(file_path='D:\\data\\quantization\\stock324_28d_3D_20200414_A.log', model_path='324_28d_mix_5D_ma5_s_seq', rows=28, cols=18)
  82. # predict(file_path='D:\\data\\quantization\\stock324_28d_3D_20200414_A.log', model_path='603_30d_mix_5D_ma5_s_seq', rows=30, cols=19)