save_cl_bottom.mirage 4.0 KB

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  1. ##################
  2. # Performance Model Version
  3. 45
  4. ####################
  5. # COMBs
  6. # number of combinations
  7. 4
  8. ####################
  9. # COMB_0
  10. # number of types devices
  11. 1
  12. ####################
  13. # DEV_0
  14. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  15. 0
  16. ####################
  17. # DEV_0
  18. # device id
  19. 0
  20. ####################
  21. # DEV_0
  22. # number of cores
  23. 1
  24. ##########
  25. # number of implementations
  26. 1
  27. #####
  28. # Model for cpu0_impl0 (Comb0)
  29. # number of entries
  30. 3
  31. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  32. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  33. # a b c
  34. nan nan nan
  35. # not multiple-regression-base
  36. 0
  37. # hash size flops mean (us) dev (us) sum sum2 n
  38. fb4b8624 4427800 0.000000e+00 1.291871e+01 2.707056e+00 1.452063e+04 1.958246e+05 1124
  39. 4af260f6 14678040 0.000000e+00 2.737328e+01 5.740626e+00 2.241872e+04 6.406639e+05 819
  40. f2ff9ae5 34480152 0.000000e+00 4.727593e+01 1.006422e+01 4.179193e+04 2.065291e+06 884
  41. ####################
  42. # COMB_1
  43. # number of types devices
  44. 1
  45. ####################
  46. # DEV_0
  47. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  48. 1
  49. ####################
  50. # DEV_0
  51. # device id
  52. 0
  53. ####################
  54. # DEV_0
  55. # number of cores
  56. 1
  57. ##########
  58. # number of implementations
  59. 1
  60. #####
  61. # Model for cuda0_impl0 (Comb1)
  62. # number of entries
  63. 3
  64. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  65. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  66. # a b c
  67. nan nan nan
  68. # not multiple-regression-base
  69. 0
  70. # hash size flops mean (us) dev (us) sum sum2 n
  71. fb4b8624 4427800 0.000000e+00 4.529760e+01 1.106616e+01 3.940891e+03 1.891669e+05 87
  72. 4af260f6 14678040 0.000000e+00 5.186998e+01 9.163546e+00 2.386019e+03 1.276254e+05 46
  73. f2ff9ae5 34480152 0.000000e+00 5.555996e+01 1.123960e+01 2.777998e+03 1.606619e+05 50
  74. ####################
  75. # COMB_2
  76. # number of types devices
  77. 1
  78. ####################
  79. # DEV_0
  80. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  81. 1
  82. ####################
  83. # DEV_0
  84. # device id
  85. 1
  86. ####################
  87. # DEV_0
  88. # number of cores
  89. 1
  90. ##########
  91. # number of implementations
  92. 1
  93. #####
  94. # Model for cuda1_impl0 (Comb2)
  95. # number of entries
  96. 3
  97. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  98. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  99. # a b c
  100. nan nan nan
  101. # not multiple-regression-base
  102. 0
  103. # hash size flops mean (us) dev (us) sum sum2 n
  104. fb4b8624 4427800 0.000000e+00 4.174505e+01 7.717897e+00 1.711547e+03 7.389082e+04 41
  105. 4af260f6 14678040 0.000000e+00 4.338701e+01 9.950636e+00 8.677401e+03 3.962895e+05 200
  106. f2ff9ae5 34480152 0.000000e+00 5.523574e+01 1.243105e+01 2.154194e+03 1.250152e+05 39
  107. ####################
  108. # COMB_3
  109. # number of types devices
  110. 1
  111. ####################
  112. # DEV_0
  113. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  114. 1
  115. ####################
  116. # DEV_0
  117. # device id
  118. 2
  119. ####################
  120. # DEV_0
  121. # number of cores
  122. 1
  123. ##########
  124. # number of implementations
  125. 1
  126. #####
  127. # Model for cuda2_impl0 (Comb3)
  128. # number of entries
  129. 3
  130. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  131. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  132. # a b c
  133. nan nan nan
  134. # not multiple-regression-base
  135. 0
  136. # hash size flops mean (us) dev (us) sum sum2 n
  137. fb4b8624 4427800 0.000000e+00 5.145250e+01 1.035300e+01 1.955195e+03 1.046727e+05 38
  138. 4af260f6 14678040 0.000000e+00 4.717138e+01 8.365012e+00 2.217055e+03 1.078703e+05 47
  139. f2ff9ae5 34480152 0.000000e+00 4.374296e+01 8.852326e+00 3.455694e+03 1.573530e+05 79