starpu_dlu_lu_model_12.idgraf 8.9 KB

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  1. ##################
  2. # Performance Model Version
  3. 45
  4. ####################
  5. # COMBs
  6. # number of combinations
  7. 9
  8. ####################
  9. # COMB_2
  10. # number of types devices
  11. 1
  12. ####################
  13. # DEV_0
  14. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  15. 1
  16. ####################
  17. # DEV_0
  18. # device id
  19. 1
  20. ####################
  21. # DEV_0
  22. # number of cores
  23. 1
  24. ##########
  25. # number of implementations
  26. 1
  27. #####
  28. # Model for cuda1_impl0 (Comb2)
  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. ff82dda0 14745600 0.000000e+00 6.925318e+03 8.376976e+02 5.748014e+05 4.038926e+09 83
  39. d39bff17 6553600 0.000000e+00 2.271937e+03 3.454949e+02 2.340095e+05 5.439496e+08 103
  40. 2c1922b7 1638400 0.000000e+00 7.049814e+02 1.197767e+02 1.254867e+05 9.101946e+07 178
  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. 3
  53. ####################
  54. # DEV_0
  55. # number of cores
  56. 1
  57. ##########
  58. # number of implementations
  59. 1
  60. #####
  61. # Model for cuda3_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. ff82dda0 14745600 0.000000e+00 7.291615e+03 1.041939e+03 4.593717e+05 3.417957e+09 63
  72. d39bff17 6553600 0.000000e+00 2.282720e+03 4.096195e+02 3.903452e+05 9.197407e+08 171
  73. 2c1922b7 1638400 0.000000e+00 6.999720e+02 1.145665e+02 1.343946e+05 9.659256e+07 192
  74. ####################
  75. # COMB_7
  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. 5
  86. ####################
  87. # DEV_0
  88. # number of cores
  89. 1
  90. ##########
  91. # number of implementations
  92. 1
  93. #####
  94. # Model for cuda5_impl0 (Comb7)
  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. ff82dda0 14745600 0.000000e+00 7.177388e+03 9.455873e+02 3.947563e+05 2.882497e+09 55
  105. d39bff17 6553600 0.000000e+00 2.335362e+03 3.317057e+02 2.825788e+05 6.732374e+08 121
  106. 2c1922b7 1638400 0.000000e+00 7.266144e+02 9.381637e+01 4.432348e+04 3.274297e+07 61
  107. ####################
  108. # COMB_8
  109. # number of types devices
  110. 1
  111. ####################
  112. # DEV_0
  113. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  114. 0
  115. ####################
  116. # DEV_0
  117. # device id
  118. 0
  119. ####################
  120. # DEV_0
  121. # number of cores
  122. 1
  123. ##########
  124. # number of implementations
  125. 1
  126. #####
  127. # Model for cpu0_impl0 (Comb8)
  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. ff82dda0 14745600 0.000000e+00 9.210227e+04 5.563000e+02 1.252591e+07 1.153707e+12 136
  138. d39bff17 6553600 0.000000e+00 2.809162e+04 4.267578e+02 1.573131e+06 4.420199e+10 56
  139. 2c1922b7 1638400 0.000000e+00 3.732094e+03 1.582101e+02 3.993341e+05 1.493031e+09 107
  140. ####################
  141. # COMB_3
  142. # number of types devices
  143. 1
  144. ####################
  145. # DEV_0
  146. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  147. 1
  148. ####################
  149. # DEV_0
  150. # device id
  151. 7
  152. ####################
  153. # DEV_0
  154. # number of cores
  155. 1
  156. ##########
  157. # number of implementations
  158. 1
  159. #####
  160. # Model for cuda7_impl0 (Comb3)
  161. # number of entries
  162. 3
  163. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  164. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  165. # a b c
  166. nan nan nan
  167. # not multiple-regression-base
  168. 0
  169. # hash size flops mean (us) dev (us) sum sum2 n
  170. ff82dda0 14745600 0.000000e+00 7.047943e+03 9.923280e+02 4.017327e+05 2.887518e+09 57
  171. d39bff17 6553600 0.000000e+00 2.358363e+03 2.904964e+02 2.381946e+05 5.702726e+08 101
  172. 2c1922b7 1638400 0.000000e+00 7.376273e+02 1.192099e+02 4.425764e+04 3.349831e+07 60
  173. ####################
  174. # COMB_5
  175. # number of types devices
  176. 1
  177. ####################
  178. # DEV_0
  179. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  180. 1
  181. ####################
  182. # DEV_0
  183. # device id
  184. 2
  185. ####################
  186. # DEV_0
  187. # number of cores
  188. 1
  189. ##########
  190. # number of implementations
  191. 1
  192. #####
  193. # Model for cuda2_impl0 (Comb5)
  194. # number of entries
  195. 3
  196. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  197. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  198. # a b c
  199. nan nan nan
  200. # not multiple-regression-base
  201. 0
  202. # hash size flops mean (us) dev (us) sum sum2 n
  203. ff82dda0 14745600 0.000000e+00 7.125894e+03 1.170430e+03 6.769599e+05 4.954085e+09 95
  204. d39bff17 6553600 0.000000e+00 2.913435e+03 7.837592e+02 2.651226e+05 8.283167e+08 91
  205. 2c1922b7 1638400 0.000000e+00 7.396845e+02 1.557697e+02 7.692719e+04 5.942533e+07 104
  206. ####################
  207. # COMB_0
  208. # number of types devices
  209. 1
  210. ####################
  211. # DEV_0
  212. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  213. 1
  214. ####################
  215. # DEV_0
  216. # device id
  217. 4
  218. ####################
  219. # DEV_0
  220. # number of cores
  221. 1
  222. ##########
  223. # number of implementations
  224. 1
  225. #####
  226. # Model for cuda4_impl0 (Comb0)
  227. # number of entries
  228. 3
  229. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  230. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  231. # a b c
  232. nan nan nan
  233. # not multiple-regression-base
  234. 0
  235. # hash size flops mean (us) dev (us) sum sum2 n
  236. ff82dda0 14745600 0.000000e+00 6.906666e+03 1.069281e+03 3.177066e+05 2.246888e+09 46
  237. d39bff17 6553600 0.000000e+00 2.331985e+03 3.108312e+02 2.914982e+05 6.918465e+08 125
  238. 2c1922b7 1638400 0.000000e+00 7.036069e+02 1.117682e+02 5.277052e+04 3.806661e+07 75
  239. ####################
  240. # COMB_6
  241. # number of types devices
  242. 1
  243. ####################
  244. # DEV_0
  245. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  246. 1
  247. ####################
  248. # DEV_0
  249. # device id
  250. 6
  251. ####################
  252. # DEV_0
  253. # number of cores
  254. 1
  255. ##########
  256. # number of implementations
  257. 1
  258. #####
  259. # Model for cuda6_impl0 (Comb6)
  260. # number of entries
  261. 3
  262. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  263. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  264. # a b c
  265. nan nan nan
  266. # not multiple-regression-base
  267. 0
  268. # hash size flops mean (us) dev (us) sum sum2 n
  269. ff82dda0 14745600 0.000000e+00 7.634969e+03 1.278868e+03 4.122883e+05 3.236126e+09 54
  270. d39bff17 6553600 0.000000e+00 2.361692e+03 2.763159e+02 1.747652e+05 4.183915e+08 74
  271. 2c1922b7 1638400 0.000000e+00 7.215132e+02 1.060983e+02 7.287283e+04 5.371565e+07 101
  272. ####################
  273. # COMB_4
  274. # number of types devices
  275. 1
  276. ####################
  277. # DEV_0
  278. # device type (CPU - 0, CUDA - 1, OPENCL - 2, MIC - 3)
  279. 1
  280. ####################
  281. # DEV_0
  282. # device id
  283. 0
  284. ####################
  285. # DEV_0
  286. # number of cores
  287. 1
  288. ##########
  289. # number of implementations
  290. 1
  291. #####
  292. # Model for cuda0_impl0 (Comb4)
  293. # number of entries
  294. 3
  295. # sumlnx sumlnx2 sumlny sumlnxlny alpha beta n minx maxx
  296. 0.000000e+00 0.000000e+00 0.000000e+00 0.000000e+00 nan nan 0 0 0
  297. # a b c
  298. nan nan nan
  299. # not multiple-regression-base
  300. 0
  301. # hash size flops mean (us) dev (us) sum sum2 n
  302. ff82dda0 14745600 0.000000e+00 7.011366e+03 8.280915e+02 6.871138e+05 4.884809e+09 98
  303. d39bff17 6553600 0.000000e+00 2.294721e+03 3.366230e+02 4.451759e+05 1.043537e+09 194
  304. 2c1922b7 1638400 0.000000e+00 6.840134e+02 1.166270e+02 1.114942e+05 7.848061e+07 163