diff options
Diffstat (limited to 'Tests/MODELS2020-CaseStudies/case.study.pledge.run/MODELS2020Plots-temp.ipynb')
-rw-r--r-- | Tests/MODELS2020-CaseStudies/case.study.pledge.run/MODELS2020Plots-temp.ipynb | 92 |
1 files changed, 67 insertions, 25 deletions
diff --git a/Tests/MODELS2020-CaseStudies/case.study.pledge.run/MODELS2020Plots-temp.ipynb b/Tests/MODELS2020-CaseStudies/case.study.pledge.run/MODELS2020Plots-temp.ipynb index b91d8e53..cc342a87 100644 --- a/Tests/MODELS2020-CaseStudies/case.study.pledge.run/MODELS2020Plots-temp.ipynb +++ b/Tests/MODELS2020-CaseStudies/case.study.pledge.run/MODELS2020Plots-temp.ipynb | |||
@@ -146,7 +146,7 @@ | |||
146 | }, | 146 | }, |
147 | { | 147 | { |
148 | "cell_type": "code", | 148 | "cell_type": "code", |
149 | "execution_count": 4, | 149 | "execution_count": 6, |
150 | "metadata": {}, | 150 | "metadata": {}, |
151 | "outputs": [], | 151 | "outputs": [], |
152 | "source": [ | 152 | "source": [ |
@@ -158,7 +158,7 @@ | |||
158 | " scale_fill_brewer(palette='Set2',\n", | 158 | " scale_fill_brewer(palette='Set2',\n", |
159 | " labels=rev(c('Refinement', 'Backtracking', 'State Coding', 'SMT Solver Calls', 'Additional Model Generation')),\n", | 159 | " labels=rev(c('Refinement', 'Backtracking', 'State Coding', 'SMT Solver Calls', 'Additional Model Generation')),\n", |
160 | " guide=FALSE) +\n", | 160 | " guide=FALSE) +\n", |
161 | " scale_x_continuous(breaks=c(20, 40, 60, 80, 100), name=\"Model Size (# nodes)\") +\n", | 161 | " scale_x_continuous(breaks=c(20, 30, 40, 50, 100), name=\"Model Size (# nodes)\") +\n", |
162 | " scale_y_continuous(name=\"Runtime (s)\") +\n", | 162 | " scale_y_continuous(name=\"Runtime (s)\") +\n", |
163 | " theme_bw()\n", | 163 | " theme_bw()\n", |
164 | " ggsave(plot=plot, filename=paste0('plots/plot_RQ2_', name, '.pdf'), width=3.5, height=2.5)\n", | 164 | " ggsave(plot=plot, filename=paste0('plots/plot_RQ2_', name, '.pdf'), width=3.5, height=2.5)\n", |
@@ -175,7 +175,7 @@ | |||
175 | }, | 175 | }, |
176 | { | 176 | { |
177 | "cell_type": "code", | 177 | "cell_type": "code", |
178 | "execution_count": 5, | 178 | "execution_count": 7, |
179 | "metadata": {}, | 179 | "metadata": {}, |
180 | "outputs": [ | 180 | "outputs": [ |
181 | { | 181 | { |
@@ -184,6 +184,15 @@ | |||
184 | "text": [ | 184 | "text": [ |
185 | "Warning message:\n", | 185 | "Warning message:\n", |
186 | "“`cols` is now required when using unnest().\n", | 186 | "“`cols` is now required when using unnest().\n", |
187 | "Please use `cols = c(Solution1DetailedStatistics)`”\n", | ||
188 | "Warning message:\n", | ||
189 | "“`cols` is now required when using unnest().\n", | ||
190 | "Please use `cols = c(Solution1DetailedStatistics)`”\n", | ||
191 | "Warning message:\n", | ||
192 | "“`cols` is now required when using unnest().\n", | ||
193 | "Please use `cols = c(Solution1DetailedStatistics)`”\n", | ||
194 | "Warning message:\n", | ||
195 | "“`cols` is now required when using unnest().\n", | ||
187 | "Please use `cols = c(Solution1DetailedStatistics)`”\n" | 196 | "Please use `cols = c(Solution1DetailedStatistics)`”\n" |
188 | ] | 197 | ] |
189 | }, | 198 | }, |
@@ -191,39 +200,54 @@ | |||
191 | "data": { | 200 | "data": { |
192 | "text/html": [ | 201 | "text/html": [ |
193 | "<table>\n", | 202 | "<table>\n", |
194 | "<caption>A tibble: 1 × 8</caption>\n", | 203 | "<caption>A tibble: 4 × 8</caption>\n", |
195 | "<thead>\n", | 204 | "<thead>\n", |
196 | "\t<tr><th scope=col>n</th><th scope=col>Run</th><th scope=col>preprocessingTime</th><th scope=col>StateCoderTime</th><th scope=col>ForwardTime</th><th scope=col>BacktrackingTime</th><th scope=col>NumericalSolverSumTime</th><th scope=col>additionalTime</th></tr>\n", | 205 | "\t<tr><th scope=col>n</th><th scope=col>Run</th><th scope=col>preprocessingTime</th><th scope=col>StateCoderTime</th><th scope=col>ForwardTime</th><th scope=col>BacktrackingTime</th><th scope=col>NumericalSolverSumTime</th><th scope=col>additionalTime</th></tr>\n", |
197 | "\t<tr><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th></tr>\n", | 206 | "\t<tr><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th></tr>\n", |
198 | "</thead>\n", | 207 | "</thead>\n", |
199 | "<tbody>\n", | 208 | "<tbody>\n", |
200 | "\t<tr><td>20</td><td>1</td><td>14735</td><td>994</td><td>1890</td><td>1272</td><td>4391</td><td>14750</td></tr>\n", | 209 | "\t<tr><td>20</td><td>1</td><td>33339</td><td> 878</td><td> 2654</td><td>1610</td><td> 7655</td><td> 39044</td></tr>\n", |
210 | "\t<tr><td>30</td><td>1</td><td>36670</td><td>2016</td><td> 5187</td><td>2687</td><td> 33695</td><td>103508</td></tr>\n", | ||
211 | "\t<tr><td>40</td><td>1</td><td>48868</td><td>3907</td><td> 9219</td><td>4814</td><td> 99075</td><td>309361</td></tr>\n", | ||
212 | "\t<tr><td>50</td><td>1</td><td>62541</td><td>5581</td><td>12720</td><td>5863</td><td>268490</td><td>552214</td></tr>\n", | ||
201 | "</tbody>\n", | 213 | "</tbody>\n", |
202 | "</table>\n" | 214 | "</table>\n" |
203 | ], | 215 | ], |
204 | "text/latex": [ | 216 | "text/latex": [ |
205 | "A tibble: 1 × 8\n", | 217 | "A tibble: 4 × 8\n", |
206 | "\\begin{tabular}{llllllll}\n", | 218 | "\\begin{tabular}{llllllll}\n", |
207 | " n & Run & preprocessingTime & StateCoderTime & ForwardTime & BacktrackingTime & NumericalSolverSumTime & additionalTime\\\\\n", | 219 | " n & Run & preprocessingTime & StateCoderTime & ForwardTime & BacktrackingTime & NumericalSolverSumTime & additionalTime\\\\\n", |
208 | " <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl>\\\\\n", | 220 | " <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl>\\\\\n", |
209 | "\\hline\n", | 221 | "\\hline\n", |
210 | "\t 20 & 1 & 14735 & 994 & 1890 & 1272 & 4391 & 14750\\\\\n", | 222 | "\t 20 & 1 & 33339 & 878 & 2654 & 1610 & 7655 & 39044\\\\\n", |
223 | "\t 30 & 1 & 36670 & 2016 & 5187 & 2687 & 33695 & 103508\\\\\n", | ||
224 | "\t 40 & 1 & 48868 & 3907 & 9219 & 4814 & 99075 & 309361\\\\\n", | ||
225 | "\t 50 & 1 & 62541 & 5581 & 12720 & 5863 & 268490 & 552214\\\\\n", | ||
211 | "\\end{tabular}\n" | 226 | "\\end{tabular}\n" |
212 | ], | 227 | ], |
213 | "text/markdown": [ | 228 | "text/markdown": [ |
214 | "\n", | 229 | "\n", |
215 | "A tibble: 1 × 8\n", | 230 | "A tibble: 4 × 8\n", |
216 | "\n", | 231 | "\n", |
217 | "| n <dbl> | Run <dbl> | preprocessingTime <dbl> | StateCoderTime <dbl> | ForwardTime <dbl> | BacktrackingTime <dbl> | NumericalSolverSumTime <dbl> | additionalTime <dbl> |\n", | 232 | "| n <dbl> | Run <dbl> | preprocessingTime <dbl> | StateCoderTime <dbl> | ForwardTime <dbl> | BacktrackingTime <dbl> | NumericalSolverSumTime <dbl> | additionalTime <dbl> |\n", |
218 | "|---|---|---|---|---|---|---|---|\n", | 233 | "|---|---|---|---|---|---|---|---|\n", |
219 | "| 20 | 1 | 14735 | 994 | 1890 | 1272 | 4391 | 14750 |\n", | 234 | "| 20 | 1 | 33339 | 878 | 2654 | 1610 | 7655 | 39044 |\n", |
235 | "| 30 | 1 | 36670 | 2016 | 5187 | 2687 | 33695 | 103508 |\n", | ||
236 | "| 40 | 1 | 48868 | 3907 | 9219 | 4814 | 99075 | 309361 |\n", | ||
237 | "| 50 | 1 | 62541 | 5581 | 12720 | 5863 | 268490 | 552214 |\n", | ||
220 | "\n" | 238 | "\n" |
221 | ], | 239 | ], |
222 | "text/plain": [ | 240 | "text/plain": [ |
223 | " n Run preprocessingTime StateCoderTime ForwardTime BacktrackingTime\n", | 241 | " n Run preprocessingTime StateCoderTime ForwardTime BacktrackingTime\n", |
224 | "1 20 1 14735 994 1890 1272 \n", | 242 | "1 20 1 33339 878 2654 1610 \n", |
243 | "2 30 1 36670 2016 5187 2687 \n", | ||
244 | "3 40 1 48868 3907 9219 4814 \n", | ||
245 | "4 50 1 62541 5581 12720 5863 \n", | ||
225 | " NumericalSolverSumTime additionalTime\n", | 246 | " NumericalSolverSumTime additionalTime\n", |
226 | "1 4391 14750 " | 247 | "1 7655 39044 \n", |
248 | "2 33695 103508 \n", | ||
249 | "3 99075 309361 \n", | ||
250 | "4 268490 552214 " | ||
227 | ] | 251 | ] |
228 | }, | 252 | }, |
229 | "metadata": {}, | 253 | "metadata": {}, |
@@ -233,39 +257,54 @@ | |||
233 | "data": { | 257 | "data": { |
234 | "text/html": [ | 258 | "text/html": [ |
235 | "<table>\n", | 259 | "<table>\n", |
236 | "<caption>A tibble: 1 × 7</caption>\n", | 260 | "<caption>A tibble: 4 × 7</caption>\n", |
237 | "<thead>\n", | 261 | "<thead>\n", |
238 | "\t<tr><th scope=col>n</th><th scope=col>preprocessingTime</th><th scope=col>StateCoderTime</th><th scope=col>ForwardTime</th><th scope=col>BacktrackingTime</th><th scope=col>NumericalSolverSumTime</th><th scope=col>additionalTime</th></tr>\n", | 262 | "\t<tr><th scope=col>n</th><th scope=col>preprocessingTime</th><th scope=col>StateCoderTime</th><th scope=col>ForwardTime</th><th scope=col>BacktrackingTime</th><th scope=col>NumericalSolverSumTime</th><th scope=col>additionalTime</th></tr>\n", |
239 | "\t<tr><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th></tr>\n", | 263 | "\t<tr><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th><th scope=col><dbl></th></tr>\n", |
240 | "</thead>\n", | 264 | "</thead>\n", |
241 | "<tbody>\n", | 265 | "<tbody>\n", |
242 | "\t<tr><td>20</td><td>14.735</td><td>0.994</td><td>1.89</td><td>1.272</td><td>4.391</td><td>14.75</td></tr>\n", | 266 | "\t<tr><td>20</td><td>33.339</td><td>0.878</td><td> 2.654</td><td>1.610</td><td> 7.655</td><td> 39.044</td></tr>\n", |
267 | "\t<tr><td>30</td><td>36.670</td><td>2.016</td><td> 5.187</td><td>2.687</td><td> 33.695</td><td>103.508</td></tr>\n", | ||
268 | "\t<tr><td>40</td><td>48.868</td><td>3.907</td><td> 9.219</td><td>4.814</td><td> 99.075</td><td>309.361</td></tr>\n", | ||
269 | "\t<tr><td>50</td><td>62.541</td><td>5.581</td><td>12.720</td><td>5.863</td><td>268.490</td><td>552.214</td></tr>\n", | ||
243 | "</tbody>\n", | 270 | "</tbody>\n", |
244 | "</table>\n" | 271 | "</table>\n" |
245 | ], | 272 | ], |
246 | "text/latex": [ | 273 | "text/latex": [ |
247 | "A tibble: 1 × 7\n", | 274 | "A tibble: 4 × 7\n", |
248 | "\\begin{tabular}{lllllll}\n", | 275 | "\\begin{tabular}{lllllll}\n", |
249 | " n & preprocessingTime & StateCoderTime & ForwardTime & BacktrackingTime & NumericalSolverSumTime & additionalTime\\\\\n", | 276 | " n & preprocessingTime & StateCoderTime & ForwardTime & BacktrackingTime & NumericalSolverSumTime & additionalTime\\\\\n", |
250 | " <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl>\\\\\n", | 277 | " <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl> & <dbl>\\\\\n", |
251 | "\\hline\n", | 278 | "\\hline\n", |
252 | "\t 20 & 14.735 & 0.994 & 1.89 & 1.272 & 4.391 & 14.75\\\\\n", | 279 | "\t 20 & 33.339 & 0.878 & 2.654 & 1.610 & 7.655 & 39.044\\\\\n", |
280 | "\t 30 & 36.670 & 2.016 & 5.187 & 2.687 & 33.695 & 103.508\\\\\n", | ||
281 | "\t 40 & 48.868 & 3.907 & 9.219 & 4.814 & 99.075 & 309.361\\\\\n", | ||
282 | "\t 50 & 62.541 & 5.581 & 12.720 & 5.863 & 268.490 & 552.214\\\\\n", | ||
253 | "\\end{tabular}\n" | 283 | "\\end{tabular}\n" |
254 | ], | 284 | ], |
255 | "text/markdown": [ | 285 | "text/markdown": [ |
256 | "\n", | 286 | "\n", |
257 | "A tibble: 1 × 7\n", | 287 | "A tibble: 4 × 7\n", |
258 | "\n", | 288 | "\n", |
259 | "| n <dbl> | preprocessingTime <dbl> | StateCoderTime <dbl> | ForwardTime <dbl> | BacktrackingTime <dbl> | NumericalSolverSumTime <dbl> | additionalTime <dbl> |\n", | 289 | "| n <dbl> | preprocessingTime <dbl> | StateCoderTime <dbl> | ForwardTime <dbl> | BacktrackingTime <dbl> | NumericalSolverSumTime <dbl> | additionalTime <dbl> |\n", |
260 | "|---|---|---|---|---|---|---|\n", | 290 | "|---|---|---|---|---|---|---|\n", |
261 | "| 20 | 14.735 | 0.994 | 1.89 | 1.272 | 4.391 | 14.75 |\n", | 291 | "| 20 | 33.339 | 0.878 | 2.654 | 1.610 | 7.655 | 39.044 |\n", |
292 | "| 30 | 36.670 | 2.016 | 5.187 | 2.687 | 33.695 | 103.508 |\n", | ||
293 | "| 40 | 48.868 | 3.907 | 9.219 | 4.814 | 99.075 | 309.361 |\n", | ||
294 | "| 50 | 62.541 | 5.581 | 12.720 | 5.863 | 268.490 | 552.214 |\n", | ||
262 | "\n" | 295 | "\n" |
263 | ], | 296 | ], |
264 | "text/plain": [ | 297 | "text/plain": [ |
265 | " n preprocessingTime StateCoderTime ForwardTime BacktrackingTime\n", | 298 | " n preprocessingTime StateCoderTime ForwardTime BacktrackingTime\n", |
266 | "1 20 14.735 0.994 1.89 1.272 \n", | 299 | "1 20 33.339 0.878 2.654 1.610 \n", |
300 | "2 30 36.670 2.016 5.187 2.687 \n", | ||
301 | "3 40 48.868 3.907 9.219 4.814 \n", | ||
302 | "4 50 62.541 5.581 12.720 5.863 \n", | ||
267 | " NumericalSolverSumTime additionalTime\n", | 303 | " NumericalSolverSumTime additionalTime\n", |
268 | "1 4.391 14.75 " | 304 | "1 7.655 39.044 \n", |
305 | "2 33.695 103.508 \n", | ||
306 | "3 99.075 309.361 \n", | ||
307 | "4 268.490 552.214 " | ||
269 | ] | 308 | ] |
270 | }, | 309 | }, |
271 | "metadata": {}, | 310 | "metadata": {}, |
@@ -274,16 +313,16 @@ | |||
274 | { | 313 | { |
275 | "data": { | 314 | "data": { |
276 | "text/html": [ | 315 | "text/html": [ |
277 | "14.735" | 316 | "42.769" |
278 | ], | 317 | ], |
279 | "text/latex": [ | 318 | "text/latex": [ |
280 | "14.735" | 319 | "42.769" |
281 | ], | 320 | ], |
282 | "text/markdown": [ | 321 | "text/markdown": [ |
283 | "14.735" | 322 | "42.769" |
284 | ], | 323 | ], |
285 | "text/plain": [ | 324 | "text/plain": [ |
286 | "[1] 14.735" | 325 | "[1] 42.769" |
287 | ] | 326 | ] |
288 | }, | 327 | }, |
289 | "metadata": {}, | 328 | "metadata": {}, |
@@ -291,7 +330,7 @@ | |||
291 | }, | 330 | }, |
292 | { | 331 | { |
293 | "data": { | 332 | "data": { |
294 | "image/png": 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BbSOesTElQL6SUs/OSU9sMzF0+fdt4i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\nIUGAkCBASBAgJAj4/xrea7N1kYKMAAAAAElFTkSuQmCC", | 333 | "image/png": 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GEHABAIYQcAEAhhBwAQCGEHABAIYQcA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\nZOLEiePHj6+vr9+0adO6detKPRcAwMCwF52xe/XVV8vLyydOnJi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|
295 | "text/plain": [ | 334 | "text/plain": [ |
296 | "plot without title" | 335 | "plot without title" |
297 | ] | 336 | ] |
@@ -312,7 +351,10 @@ | |||
312 | "source": [ | 351 | "source": [ |
313 | "FamilyTreeRQ2Raw <- rbind(\n", | 352 | "FamilyTreeRQ2Raw <- rbind(\n", |
314 | "# Load10Log(\"measurements/stats/FamilyTree//size010to-1r10n10rt300nsdrealstats_06-0249.csv\", 10),\n", | 353 | "# Load10Log(\"measurements/stats/FamilyTree//size010to-1r10n10rt300nsdrealstats_06-0249.csv\", 10),\n", |
315 | " Load10Log(\"measurements1/stats.csv\", 20)\n", | 354 | " Load10Log(\"measurements1/stats1010.csv\", 20),\n", |
355 | " Load10Log(\"measurements1/stats1515.csv\", 30),\n", | ||
356 | " Load10Log(\"measurements1/stats2020.csv\", 40),\n", | ||
357 | " Load10Log(\"measurements1/stats2525.csv\", 50)\n", | ||
316 | ")\n", | 358 | ")\n", |
317 | "FamilyTreeRQ2Raw\n", | 359 | "FamilyTreeRQ2Raw\n", |
318 | "FamilyTreeRQ2 <- FamilyTreeRQ2Raw %>% ProcessRQ2\n", | 360 | "FamilyTreeRQ2 <- FamilyTreeRQ2Raw %>% ProcessRQ2\n", |