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  1. schema: '2.0'
  2. stages:
  3. createtiles@2019:
  4. cmd: mkdir -p data/processed.images.2019; gdal_retile.py -csv locations.csv -v
  5. -ps 2048 2048 -co "TILED=YES" -co "COMPRESS=LZW" -co "PREDICTOR=2" -co "ALPHA=NO"
  6. -co "NUM_THREADS=ALL_CPUS" -targetDir data/processed.images.2019 data/raw/ortho_ms_2019_EPSG3044.tif
  7. deps:
  8. - path: data/raw/ortho_ms_2019_EPSG3044.tif
  9. md5: 28a27ea53b559c3cec937a3687407557
  10. size: 144920418531
  11. params:
  12. params.yaml:
  13. source_dim: 2048
  14. outs:
  15. - path: data/processed.images.2019
  16. md5: 35c31b781cb0bdb19650329132d83d05.dir
  17. size: 144926802415
  18. nfiles: 30489
  19. createmasks:
  20. cmd: python scripts/createmasks.py data/processed.images.2019 data/processed.masks.2019 data/raw/shapefiles/deadtrees_2019/deadtrees_2019.shp
  21. --negativesample data/raw/shapefiles/deadtrees_notdead/deadtrees_notdead.shp
  22. deps:
  23. - path: data/processed.images.2019
  24. md5: 35c31b781cb0bdb19650329132d83d05.dir
  25. size: 144926802415
  26. nfiles: 30489
  27. - path: data/raw/shapefiles/deadtrees_2019
  28. md5: 206432f450611c44ceb32c49e50aa8c9.dir
  29. size: 3996517
  30. nfiles: 5
  31. - path: data/raw/shapefiles/deadtrees_notdead
  32. md5: 99b6d382aebfc46e79c9d044e95add4e.dir
  33. size: 31722
  34. nfiles: 5
  35. outs:
  36. - path: data/processed.masks.2019
  37. md5: 86dfe9fff1765527e6ab7bdbd50e873d.dir
  38. size: 4103103156
  39. nfiles: 978
  40. - path: data/processed.masks.2019.neg_sample
  41. md5: e39614f069603f65a333d0a8713072a9.dir
  42. size: 335615520
  43. nfiles: 80
  44. createdataset:
  45. cmd: python scripts/createdataset.py data/processed.images.2019 data/processed.masks.2019 data/dataset --source_dim
  46. 2048 --tile_size 256 --format TIFF
  47. deps:
  48. - path: data/processed.images.2019
  49. md5: 35c31b781cb0bdb19650329132d83d05.dir
  50. size: 144926802415
  51. nfiles: 30489
  52. - path: data/processed.masks.2019
  53. md5: 86dfe9fff1765527e6ab7bdbd50e873d.dir
  54. size: 4103103156
  55. nfiles: 978
  56. - path: data/processed.masks.2019.neg_sample
  57. md5: e39614f069603f65a333d0a8713072a9.dir
  58. size: 335615520
  59. nfiles: 80
  60. params:
  61. params.yaml:
  62. createdataset.tile_size: 256
  63. file_type: TIFF
  64. source_dim: 2048
  65. outs:
  66. - path: data/dataset/stats.csv
  67. md5: 5d5e6ab2648bdb6b7846d4c8655a72a8
  68. size: 2539255
  69. - path: data/dataset/train
  70. md5: 155ce2ddabeab3e619b59e016093ae30.dir
  71. size: 6895349760
  72. nfiles: 162
  73. createbalanced:
  74. cmd: python scripts/createbalanced.py data/dataset/stats.csv data/dataset/train data/dataset/train_balanced data/dataset/train_balanced_short
  75. --format TIFF --tmp-dir ./tmp
  76. deps:
  77. - path: data/dataset/stats.csv
  78. md5: 8f24c9c9fcbcab4f9388a4b2b26ed58c
  79. size: 2415683
  80. - path: data/dataset/train
  81. md5: a5a9bd6897f3c8b0143e3a378928cc54.dir
  82. size: 20627302400
  83. nfiles: 121
  84. params:
  85. params.yaml:
  86. file_type: TIFF
  87. outs:
  88. - path: data/dataset/train_balanced
  89. md5: 00c0e3636b55b92b63add488a2e62a12.dir
  90. size: 20596592640
  91. nfiles: 241
  92. - path: data/dataset/train_balanced_short
  93. md5: 94e764aa3326c386524910bfbac0454d.dir
  94. size: 2072975360
  95. nfiles: 97
  96. createtiles@2017:
  97. cmd: mkdir -p data/processed.images.2017; gdal_retile.py -csv locations.csv -v
  98. -ps 2048 2048 -co "TILED=YES" -co "COMPRESS=LZW" -co "PREDICTOR=2" -co "ALPHA=NO"
  99. -co "NUM_THREADS=ALL_CPUS" -targetDir data/processed.images.2017 data/raw/ortho_ms_2017_EPSG3044.tif
  100. deps:
  101. - path: data/raw/ortho_ms_2017_EPSG3044.tif
  102. md5: 2389bdb4952d2c869c52e87abce30d4f
  103. size: 109896357004
  104. params:
  105. params.yaml:
  106. source_dim: 2048
  107. outs:
  108. - path: data/processed.images.2017
  109. md5: 66de96d201af5a47a09997691b992370.dir
  110. size: 109902740888
  111. nfiles: 30489
  112. inference@2017:
  113. cmd: mkdir -p data/predicted.2017; mkdir -p data/predicted.2017_preview; stdbuf
  114. -i0 -o0 -e0 python deadtrees/deployment/tiler.py --all -o data/predicted.2017
  115. data/processed.images.2017; gdal_merge.py -co "TILED=YES" -co "COMPRESS=LZW"
  116. -co "PREDICTOR=2" -co "NUM_THREADS=ALL_CPUS" -o data/predicted_mosaic_2017.tif data/predicted.2017/ortho_ms_2017_EPSG3044_*
  117. deps:
  118. - path: checkpoints/bestmodel.ckpt
  119. md5: 0ac57c7cf6b1b21a846be38dccebb12d
  120. size: 378644612
  121. - path: data/processed.images.2017
  122. md5: 66de96d201af5a47a09997691b992370.dir
  123. size: 109902740888
  124. nfiles: 30489
  125. outs:
  126. - path: data/predicted.2017
  127. md5: 59d606868832923b01f199bf9e2b7f2b.dir
  128. size: 595566709
  129. nfiles: 20827
  130. - path: data/predicted.2017_preview
  131. md5: a01647a260a898f85c2e6e7ff4b7e07f.dir
  132. size: 87265506654
  133. nfiles: 20827
  134. - path: data/predicted_mosaic_2017.tif
  135. md5: 6ce10a97ed2d0cce074a4e27750011c5
  136. size: 832433147
  137. inference@2019:
  138. cmd: mkdir -p data/predicted.2019; mkdir -p data/predicted.2019_preview; stdbuf
  139. -i0 -o0 -e0 python deadtrees/deployment/tiler.py --all -o data/predicted.2019
  140. data/processed.images.2019; gdal_merge.py -co "TILED=YES" -co "COMPRESS=LZW"
  141. -co "PREDICTOR=2" -co "NUM_THREADS=ALL_CPUS" -o data/predicted_mosaic_2019.tif data/predicted.2019/ortho_ms_2019_EPSG3044_*
  142. deps:
  143. - path: checkpoints/bestmodel.ckpt
  144. md5: 0ac57c7cf6b1b21a846be38dccebb12d
  145. size: 378644612
  146. - path: data/processed.images.2019
  147. md5: 35c31b781cb0bdb19650329132d83d05.dir
  148. size: 144926802415
  149. nfiles: 30489
  150. outs:
  151. - path: data/predicted.2019
  152. md5: 0ca1283e74cf8bff3bbfd81ce2ea3add.dir
  153. size: 482948162
  154. nfiles: 16227
  155. - path: data/predicted.2019_preview
  156. md5: 39b0bbd921e877336ed8f25d65591fce.dir
  157. size: 68062950702
  158. nfiles: 16227
  159. - path: data/predicted_mosaic_2019.tif
  160. md5: 6a2746722f804c09ec3eef38d5538f1a
  161. size: 809498111
  162. computestats:
  163. cmd: 'python scripts/computestats.py --frac 0.1 data/processed.images.2017 data/processed.images.2019 '
  164. deps:
  165. - path: data/processed.images.2017
  166. md5: 66de96d201af5a47a09997691b992370.dir
  167. size: 109902740888
  168. nfiles: 30489
  169. - path: data/processed.images.2019
  170. md5: 35c31b781cb0bdb19650329132d83d05.dir
  171. size: 144926802415
  172. nfiles: 30489
  173. outs:
  174. - path: data/processed.images.stats.json
  175. md5: 453f256a6c2bf5359cf3e85b420a54e0
  176. size: 585
  177. computestatsinference:
  178. cmd: 'python scripts/computestats_inference.py data/predicted.2017 data/predicted.2019 '
  179. deps:
  180. - path: data/predicted.2017
  181. md5: 59d606868832923b01f199bf9e2b7f2b.dir
  182. size: 595566709
  183. nfiles: 20827
  184. - path: data/predicted.2019
  185. md5: 0ca1283e74cf8bff3bbfd81ce2ea3add.dir
  186. size: 482948162
  187. nfiles: 16227
  188. outs:
  189. - path: data/predicted.stats.csv
  190. md5: daa22b63714a051ceeda688b93875bce
  191. size: 1330306
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