X-Git-Url: https://gerrit.fd.io/r/gitweb?p=csit.git;a=blobdiff_plain;f=resources%2Ftools%2Fpresentation%2Fgenerator_plots.py;h=1b95030818c4f31db2563951ca878f3e1fe2fe44;hp=88af4a46657830040f2c16a7c01d80930037c027;hb=8e1dfc4ab336302999f91ea0386093b0bc879974;hpb=879b31f02fb4df52016d7465e21377121dfbb515 diff --git a/resources/tools/presentation/generator_plots.py b/resources/tools/presentation/generator_plots.py index 88af4a4665..1b95030818 100644 --- a/resources/tools/presentation/generator_plots.py +++ b/resources/tools/presentation/generator_plots.py @@ -18,15 +18,17 @@ import re import logging +from collections import OrderedDict +from datetime import datetime +from copy import deepcopy +from math import log + import hdrh.histogram import hdrh.codec import pandas as pd import plotly.offline as ploff import plotly.graph_objs as plgo - -from collections import OrderedDict -from copy import deepcopy -from math import log +import plotly.exceptions as plerr from plotly.exceptions import PlotlyError @@ -62,7 +64,8 @@ COLORS = ( REGEX_NIC = re.compile(r'(\d*ge\dp\d\D*\d*[a-z]*)-') # This value depends on latency stream rate (9001 pps) and duration (5s). -PERCENTILE_MAX = 99.9995 +# Keep it slightly higher to ensure rounding errors to not remove tick mark. +PERCENTILE_MAX = 99.999501 def generate_plots(spec, data): @@ -81,14 +84,17 @@ def generate_plots(spec, data): u"plot_http_server_perf_box": plot_http_server_perf_box, u"plot_nf_heatmap": plot_nf_heatmap, u"plot_hdrh_lat_by_percentile": plot_hdrh_lat_by_percentile, - u"plot_hdrh_lat_by_percentile_x_log": plot_hdrh_lat_by_percentile_x_log + u"plot_hdrh_lat_by_percentile_x_log": plot_hdrh_lat_by_percentile_x_log, + u"plot_mrr_box_name": plot_mrr_box_name, + u"plot_ndrpdr_box_name": plot_ndrpdr_box_name, + u"plot_statistics": plot_statistics } logging.info(u"Generating the plots ...") for index, plot in enumerate(spec.plots): try: logging.info(f" Plot nr {index + 1}: {plot.get(u'title', u'')}") - plot[u"limits"] = spec.configuration[u"limits"] + plot[u"limits"] = spec.environment[u"limits"] generator[plot[u"algorithm"]](plot, data) logging.info(u" Done.") except NameError as err: @@ -99,6 +105,122 @@ def generate_plots(spec, data): logging.info(u"Done.") +def plot_statistics(plot, input_data): + """Generate the plot(s) with algorithm: plot_statistics + specified in the specification file. + + :param plot: Plot to generate. + :param input_data: Data to process. + :type plot: pandas.Series + :type input_data: InputData + """ + + data_x = list() + data_y_pass = list() + data_y_fail = list() + data_y_duration = list() + hover_text = list() + hover_str = ( + u"date: {date}
" + u"passed: {passed}
" + u"failed: {failed}
" + u"duration: {duration}
" + u"{sut}-ref: {build}
" + u"csit-ref: {test}-{period}-build-{build_nr}
" + u"testbed: {testbed}" + ) + for job, builds in plot[u"data"].items(): + for build_nr in builds: + try: + meta = input_data.metadata(job, str(build_nr)) + generated = meta[u"generated"] + date = datetime( + int(generated[0:4]), + int(generated[4:6]), + int(generated[6:8]), + int(generated[9:11]), + int(generated[12:]) + ) + d_y_pass = meta[u"tests_passed"] + d_y_fail = meta[u"tests_failed"] + minutes = meta[u"elapsedtime"] // 60000 + duration = f"{(minutes // 60):02d}:{(minutes % 60):02d}" + version = meta[u"version"] + except (KeyError, IndexError, ValueError, AttributeError): + continue + data_x.append(date) + data_y_pass.append(d_y_pass) + data_y_fail.append(d_y_fail) + data_y_duration.append(minutes) + hover_text.append(hover_str.format( + date=date, + passed=d_y_pass, + failed=d_y_fail, + duration=duration, + sut=u"vpp" if u"vpp" in job else u"dpdk", + build=version, + test=u"mrr" if u"mrr" in job else u"ndrpdr", + period=u"daily" if u"daily" in job else u"weekly", + build_nr=build_nr, + testbed=meta[u"testbed"] + )) + + traces = [ + plgo.Bar( + x=data_x, + y=data_y_pass, + name=u"Passed", + text=hover_text, + hoverinfo=u"text" + ), + plgo.Bar( + x=data_x, + y=data_y_fail, + name=u"Failed", + text=hover_text, + hoverinfo=u"text"), + plgo.Scatter( + x=data_x, + y=data_y_duration, + name=u"Duration", + yaxis=u"y2", + text=hover_text, + hoverinfo=u"text" + ) + ] + + name_file = f"{plot[u'output-file']}.html" + + logging.info(f" Writing the file {name_file}") + plpl = plgo.Figure(data=traces, layout=plot[u"layout"]) + tickvals = [0, (max(data_y_duration) // 60) * 60] + step = tickvals[1] / 5 + for i in range(5): + tickvals.append(int(tickvals[0] + step * (i + 1))) + plpl.update_layout( + yaxis2=dict( + title=u"Duration [hh:mm]", + anchor=u"x", + overlaying=u"y", + side=u"right", + rangemode="tozero", + tickmode=u"array", + tickvals=tickvals, + ticktext=[f"{(val // 60):02d}:{(val % 60):02d}" for val in tickvals] + ) + ) + plpl.update_layout(barmode=u"stack") + try: + ploff.plot( + plpl, + show_link=False, + auto_open=False, + filename=name_file + ) + except plerr.PlotlyEmptyDataError: + logging.warning(u"No data for the plot. Skipped.") + + def plot_hdrh_lat_by_percentile(plot, input_data): """Generate the plot(s) with algorithm: plot_hdrh_lat_by_percentile specified in the specification file. @@ -197,7 +319,8 @@ def plot_hdrh_lat_by_percentile(plot, input_data): hovertext.append( f"{desc[graph]}
" f"Direction: {(u'W-E', u'E-W')[idx % 2]}
" - f"Percentile: {previous_x:.5f}-{percentile:.5f}%
" + f"Percentile: " + f"{previous_x:.5f}-{percentile:.5f}%
" f"Latency: {item.value_iterated_to}uSec" ) xaxis.append(percentile) @@ -205,7 +328,8 @@ def plot_hdrh_lat_by_percentile(plot, input_data): hovertext.append( f"{desc[graph]}
" f"Direction: {(u'W-E', u'E-W')[idx % 2]}
" - f"Percentile: {previous_x:.5f}-{percentile:.5f}%
" + f"Percentile: " + f"{previous_x:.5f}-{percentile:.5f}%
" f"Latency: {item.value_iterated_to}uSec" ) previous_x = percentile @@ -348,7 +472,7 @@ def plot_hdrh_lat_by_percentile_x_log(plot, input_data): decoded = hdrh.histogram.HdrHistogram.decode( test[u"latency"][graph][direction][u"hdrh"] ) - except hdrh.codec.HdrLengthException: + except (hdrh.codec.HdrLengthException, TypeError): logging.warning( f"No data for direction {(u'W-E', u'E-W')[idx % 2]}" ) @@ -398,10 +522,8 @@ def plot_hdrh_lat_by_percentile_x_log(plot, input_data): ) layout[u"title"][u"text"] = f"Latency: {name}" - layout[u"xaxis"][u"range"] = [0, 5] - # layout[u"xaxis"][u"range"] = [ - # 0, round(log(100.0 / (100.0 - PERCENTILE_MAX), 10)) - # ] + x_max = log(100.0 / (100.0 - PERCENTILE_MAX), 10) + layout[u"xaxis"][u"range"] = [0, x_max] fig.update_layout(layout) # Create plot @@ -458,84 +580,93 @@ def plot_nf_reconf_box_name(plot, input_data): logging.error(u"No data.") return - # Prepare the data for the plot - y_vals = OrderedDict() - loss = dict() - for job in data: - for build in job: - for test in build: - if y_vals.get(test[u"parent"], None) is None: - y_vals[test[u"parent"]] = list() - loss[test[u"parent"]] = list() - try: - y_vals[test[u"parent"]].append(test[u"result"][u"time"]) - loss[test[u"parent"]].append(test[u"result"][u"loss"]) - except (KeyError, TypeError): - y_vals[test[u"parent"]].append(None) - - # Add None to the lists with missing data - max_len = 0 - nr_of_samples = list() - for val in y_vals.values(): - if len(val) > max_len: - max_len = len(val) - nr_of_samples.append(len(val)) - for val in y_vals.values(): - if len(val) < max_len: - val.extend([None for _ in range(max_len - len(val))]) - - # Add plot traces - traces = list() - df_y = pd.DataFrame(y_vals) - df_y.head() - for i, col in enumerate(df_y.columns): - - tst_name = re.sub(REGEX_NIC, u"", - col.lower().replace(u'-reconf', u''). - replace(u'2n1l-', u'').replace(u'2n-', u''). - replace(u'-testpmd', u'')) - - traces.append(plgo.Box( - x=[str(i + 1) + u'.'] * len(df_y[col]), - y=df_y[col], - name=( - f"{i + 1}. " - f"({nr_of_samples[i]:02d} " - f"run{u's' if nr_of_samples[i] > 1 else u''}, " - f"packets lost average: {mean(loss[col]):.1f}) " - f"{u'-'.join(tst_name.split(u'-')[2:])}" - ), - hoverinfo=u"y+name" - )) - try: - # Create plot - layout = deepcopy(plot[u"layout"]) - layout[u"title"] = f"Time Lost: {layout[u'title']}" - layout[u"yaxis"][u"title"] = u"Effective Blocked Time [s]" - layout[u"legend"][u"font"][u"size"] = 14 - layout[u"yaxis"].pop(u"range") - plpl = plgo.Figure(data=traces, layout=layout) - - # Export Plot - file_type = plot.get(u"output-file-type", u".html") - logging.info(f" Writing file {plot[u'output-file']}{file_type}.") - ploff.plot( - plpl, - show_link=False, - auto_open=False, - filename=f"{plot[u'output-file']}{file_type}" - ) - except PlotlyError as err: - logging.error( - f" Finished with error: {repr(err)}".replace(u"\n", u" ") - ) - return + for core in plot.get(u"core", tuple()): + # Prepare the data for the plot + y_vals = OrderedDict() + loss = dict() + for item in plot.get(u"include", tuple()): + reg_ex = re.compile(str(item.format(core=core)).lower()) + for job in data: + for build in job: + for test_id, test in build.iteritems(): + if not re.match(reg_ex, str(test_id).lower()): + continue + if y_vals.get(test[u"parent"], None) is None: + y_vals[test[u"parent"]] = list() + loss[test[u"parent"]] = list() + try: + y_vals[test[u"parent"]].append( + test[u"result"][u"time"] + ) + loss[test[u"parent"]].append( + test[u"result"][u"loss"] + ) + except (KeyError, TypeError): + y_vals[test[u"parent"]].append(None) + + # Add None to the lists with missing data + max_len = 0 + nr_of_samples = list() + for val in y_vals.values(): + if len(val) > max_len: + max_len = len(val) + nr_of_samples.append(len(val)) + for val in y_vals.values(): + if len(val) < max_len: + val.extend([None for _ in range(max_len - len(val))]) + + # Add plot traces + traces = list() + df_y = pd.DataFrame(y_vals) + df_y.head() + for i, col in enumerate(df_y.columns): + tst_name = re.sub( + REGEX_NIC, u"", + col.lower().replace(u'-reconf', u'').replace(u'2n1l-', u''). + replace(u'2n-', u'').replace(u'-testpmd', u'') + ) + traces.append(plgo.Box( + x=[str(i + 1) + u'.'] * len(df_y[col]), + y=df_y[col], + name=( + f"{i + 1}. " + f"({nr_of_samples[i]:02d} " + f"run{u's' if nr_of_samples[i] > 1 else u''}, " + f"packets lost average: {mean(loss[col]):.1f}) " + f"{u'-'.join(tst_name.split(u'-')[2:])}" + ), + hoverinfo=u"y+name" + )) + try: + # Create plot + layout = deepcopy(plot[u"layout"]) + layout[u"title"] = f"Time Lost: {layout[u'title']}" + layout[u"yaxis"][u"title"] = u"Effective Blocked Time [s]" + layout[u"legend"][u"font"][u"size"] = 14 + layout[u"yaxis"].pop(u"range") + plpl = plgo.Figure(data=traces, layout=layout) + + # Export Plot + file_name = f"{plot[u'output-file'].format(core=core)}.html" + logging.info(f" Writing file {file_name}") + ploff.plot( + plpl, + show_link=False, + auto_open=False, + filename=file_name + ) + except PlotlyError as err: + logging.error( + f" Finished with error: {repr(err)}".replace(u"\n", u" ") + ) def plot_perf_box_name(plot, input_data): """Generate the plot(s) with algorithm: plot_perf_box_name specified in the specification file. + Use only for soak and hoststack tests. + :param plot: Plot to generate. :param input_data: Data to process. :type plot: pandas.Series @@ -555,14 +686,6 @@ def plot_perf_box_name(plot, input_data): return # Prepare the data for the plot - plot_title = plot.get(u"title", u"").lower() - - if u"-gbps" in plot_title: - value = u"gbps" - multiplier = 1e6 - else: - value = u"throughput" - multiplier = 1.0 y_vals = OrderedDict() test_type = u"" @@ -576,25 +699,7 @@ def plot_perf_box_name(plot, input_data): if y_vals.get(test[u"parent"], None) is None: y_vals[test[u"parent"]] = list() try: - if test[u"type"] in (u"NDRPDR", u"CPS"): - test_type = test[u"type"] - - if u"-pdr" in plot_title: - ttype = u"PDR" - elif u"-ndr" in plot_title: - ttype = u"NDR" - else: - raise RuntimeError( - u"Wrong title. No information about test " - u"type. Add '-ndr' or '-pdr' to the test " - u"title." - ) - - y_vals[test[u"parent"]].append( - test[value][ttype][u"LOWER"] * multiplier - ) - - elif test[u"type"] in (u"SOAK",): + if test[u"type"] in (u"SOAK",): y_vals[test[u"parent"]]. \ append(test[u"throughput"][u"LOWER"]) test_type = u"SOAK" @@ -620,6 +725,19 @@ def plot_perf_box_name(plot, input_data): ) test_type = u"HOSTSTACK" + elif test[u"type"] in (u"LDP_NGINX",): + if u"TCP_CPS" in test[u"tags"]: + test_type = u"VSAP_CPS" + y_vals[test[u"parent"]].append( + test[u"result"][u"cps"] + ) + elif u"TCP_RPS" in test[u"tags"]: + test_type = u"VSAP_RPS" + y_vals[test[u"parent"]].append( + test[u"result"][u"rps"] + ) + else: + continue else: continue @@ -646,9 +764,13 @@ def plot_perf_box_name(plot, input_data): tst_name = re.sub(REGEX_NIC, u"", col.lower().replace(u'-ndrpdr', u''). replace(u'2n1l-', u'')) + if test_type in (u"VSAP_CPS", u"VSAP_RPS"): + data_y = [y if y else None for y in df_y[col]] + else: + data_y = [y / 1e6 if y else None for y in df_y[col]] kwargs = dict( x=[str(i + 1) + u'.'] * len(df_y[col]), - y=[y / 1e6 if y else None for y in df_y[col]], + y=data_y, name=( f"{i + 1}. " f"({nr_of_samples[i]:02d} " @@ -665,7 +787,7 @@ def plot_perf_box_name(plot, input_data): try: val_max = max(df_y[col]) if val_max: - y_max.append(int(val_max / 1e6) + 2) + y_max.append(int(val_max / 1e6)) except (ValueError, TypeError) as err: logging.error(repr(err)) continue @@ -676,12 +798,16 @@ def plot_perf_box_name(plot, input_data): if layout.get(u"title", None): if test_type in (u"HOSTSTACK", ): layout[u"title"] = f"Bandwidth: {layout[u'title']}" - elif test_type in (u"CPS", ): + elif test_type == u"VSAP_CPS": layout[u"title"] = f"CPS: {layout[u'title']}" + layout[u"yaxis"][u"title"] = u"Connection Rate [cps]" + elif test_type == u"VSAP_RPS": + layout[u"title"] = f"RPS: {layout[u'title']}" + layout[u"yaxis"][u"title"] = u"Connection Rate [rps]" else: - layout[u"title"] = f"Throughput: {layout[u'title']}" - if y_max: - layout[u"yaxis"][u"range"] = [0, max(y_max)] + layout[u"title"] = f"Tput: {layout[u'title']}" + if y_max and max(y_max) > 1: + layout[u"yaxis"][u"range"] = [0, max(y_max) + 2] plpl = plgo.Figure(data=traces, layout=layout) # Export Plot @@ -699,9 +825,8 @@ def plot_perf_box_name(plot, input_data): return -def plot_tsa_name(plot, input_data): - """Generate the plot(s) with algorithm: - plot_tsa_name +def plot_ndrpdr_box_name(plot, input_data): + """Generate the plot(s) with algorithm: plot_ndrpdr_box_name specified in the specification file. :param plot: Plot to generate. @@ -711,9 +836,9 @@ def plot_tsa_name(plot, input_data): """ # Transform the data - plot_title = plot.get(u"title", u"") logging.info( - f" Creating data set for the {plot.get(u'type', u'')} {plot_title}." + f" Creating data set for the {plot.get(u'type', u'')} " + f"{plot.get(u'title', u'')}." ) data = input_data.filter_tests_by_name( plot, @@ -723,341 +848,556 @@ def plot_tsa_name(plot, input_data): logging.error(u"No data.") return - plot_title = plot_title.lower() - - if u"-gbps" in plot_title: + if u"-gbps" in plot.get(u"title", u"").lower(): value = u"gbps" - h_unit = u"Gbps" multiplier = 1e6 else: value = u"throughput" - h_unit = u"Mpps" multiplier = 1.0 - y_vals = OrderedDict() - for item in plot.get(u"include", tuple()): - reg_ex = re.compile(str(item).lower()) - for job in data: - for build in job: - for test_id, test in build.iteritems(): - if re.match(reg_ex, str(test_id).lower()): - if y_vals.get(test[u"parent"], None) is None: - y_vals[test[u"parent"]] = { - u"1": list(), - u"2": list(), - u"4": list() - } - try: - if test[u"type"] not in (u"NDRPDR", u"CPS"): - continue + test_type = u"" - if u"-pdr" in plot_title: - ttype = u"PDR" - elif u"-ndr" in plot_title: - ttype = u"NDR" - else: + for ttype in plot.get(u"test-type", (u"ndr", u"pdr")): + for core in plot.get(u"core", tuple()): + # Prepare the data for the plot + data_x = list() + data_y = OrderedDict() + data_y_max = list() + idx = 1 + for item in plot.get(u"include", tuple()): + reg_ex = re.compile(str(item.format(core=core)).lower()) + for job in data: + for build in job: + for test_id, test in build.iteritems(): + if not re.match(reg_ex, str(test_id).lower()): continue - - if u"1C" in test[u"tags"]: - y_vals[test[u"parent"]][u"1"].append( - test[value][ttype][u"LOWER"] * multiplier - ) - elif u"2C" in test[u"tags"]: - y_vals[test[u"parent"]][u"2"].append( - test[value][ttype][u"LOWER"] * multiplier - ) - elif u"4C" in test[u"tags"]: - y_vals[test[u"parent"]][u"4"].append( - test[value][ttype][u"LOWER"] * multiplier + if data_y.get(test[u"parent"], None) is None: + data_y[test[u"parent"]] = list() + test_type = test[u"type"] + data_x.append(idx) + idx += 1 + try: + data_y[test[u"parent"]].append( + test[value][ttype.upper()][u"LOWER"] * + multiplier ) + except (KeyError, TypeError): + pass + + # Add plot traces + traces = list() + for idx, (key, vals) in enumerate(data_y.items()): + name = re.sub( + REGEX_NIC, u'', key.lower().replace(u'-ndrpdr', u''). + replace(u'2n1l-', u'') + ) + traces.append( + plgo.Box( + x=[data_x[idx], ] * len(data_x), + y=[y / 1e6 if y else None for y in vals], + name=( + f"{idx+1}." + f"({len(vals):02d} " + f"run" + f"{u's' if len(vals) > 1 else u''}) " + f"{name}" + ), + hoverinfo=u"y+name" + ) + ) + try: + data_y_max.append(max(vals)) + except ValueError as err: + logging.warning(f"No values to use.\n{err!r}") + try: + # Create plot + layout = deepcopy(plot[u"layout"]) + if layout.get(u"title", None): + layout[u"title"] = \ + layout[u'title'].format(core=core, test_type=ttype) + if test_type in (u"CPS", ): + layout[u"title"] = f"CPS: {layout[u'title']}" + else: + layout[u"title"] = \ + f"Tput: {layout[u'title']}" + if data_y_max: + layout[u"yaxis"][u"range"] = [0, max(data_y_max) / 1e6 + 1] + plpl = plgo.Figure(data=traces, layout=layout) + + # Export Plot + file_name = ( + f"{plot[u'output-file'].format(core=core, test_type=ttype)}" + f".html" + ) + logging.info(f" Writing file {file_name}") + ploff.plot( + plpl, + show_link=False, + auto_open=False, + filename=file_name + ) + except PlotlyError as err: + logging.error( + f" Finished with error: {repr(err)}".replace(u"\n", u" ") + ) + + +def plot_mrr_box_name(plot, input_data): + """Generate the plot(s) with algorithm: plot_mrr_box_name + specified in the specification file. + + :param plot: Plot to generate. + :param input_data: Data to process. + :type plot: pandas.Series + :type input_data: InputData + """ + + # Transform the data + logging.info( + f" Creating data set for the {plot.get(u'type', u'')} " + f"{plot.get(u'title', u'')}." + ) + data = input_data.filter_tests_by_name( + plot, + params=[u"result", u"parent", u"tags", u"type"] + ) + if data is None: + logging.error(u"No data.") + return + + for core in plot.get(u"core", tuple()): + # Prepare the data for the plot + data_x = list() + data_names = list() + data_y = list() + data_y_max = list() + idx = 1 + for item in plot.get(u"include", tuple()): + reg_ex = re.compile(str(item.format(core=core)).lower()) + for job in data: + for build in job: + for test_id, test in build.iteritems(): + if not re.match(reg_ex, str(test_id).lower()): + continue + try: + data_x.append(idx) + name = re.sub( + REGEX_NIC, u'', test[u'parent'].lower(). + replace(u'-mrr', u'').replace(u'2n1l-', u'') + ) + data_y.append(test[u"result"][u"samples"]) + data_names.append( + f"{idx}." + f"({len(data_y[-1]):02d} " + f"run{u's' if len(data_y[-1]) > 1 else u''}) " + f"{name}" + ) + data_y_max.append(max(data_y[-1])) + idx += 1 except (KeyError, TypeError): pass - if not y_vals: - logging.warning(f"No data for the plot {plot.get(u'title', u'')}") - return + # Add plot traces + traces = list() + for idx, x_item in enumerate(data_x): + traces.append( + plgo.Box( + x=[x_item, ] * len(data_y[idx]), + y=data_y[idx], + name=data_names[idx], + hoverinfo=u"y+name" + ) + ) - y_1c_max = dict() - for test_name, test_vals in y_vals.items(): - for key, test_val in test_vals.items(): - if test_val: - avg_val = sum(test_val) / len(test_val) - y_vals[test_name][key] = [avg_val, len(test_val)] - ideal = avg_val / (int(key) * 1e6) - if test_name not in y_1c_max or ideal > y_1c_max[test_name]: - y_1c_max[test_name] = ideal - - vals = OrderedDict() - y_max = list() - nic_limit = 0 - lnk_limit = 0 - pci_limit = 0 - for test_name, test_vals in y_vals.items(): try: - if test_vals[u"1"][1]: - name = re.sub( - REGEX_NIC, - u"", - test_name.replace(u'-ndrpdr', u'').replace(u'2n1l-', u'') + # Create plot + layout = deepcopy(plot[u"layout"]) + if layout.get(u"title", None): + layout[u"title"] = ( + f"Tput: {layout[u'title'].format(core=core)}" ) - vals[name] = OrderedDict() - y_val_1 = test_vals[u"1"][0] / 1e6 - y_val_2 = test_vals[u"2"][0] / 1e6 if test_vals[u"2"][0] \ - else None - y_val_4 = test_vals[u"4"][0] / 1e6 if test_vals[u"4"][0] \ - else None - - vals[name][u"val"] = [y_val_1, y_val_2, y_val_4] - vals[name][u"rel"] = [1.0, None, None] - vals[name][u"ideal"] = [ - y_1c_max[test_name], - y_1c_max[test_name] * 2, - y_1c_max[test_name] * 4 - ] - vals[name][u"diff"] = [ - (y_val_1 - y_1c_max[test_name]) * 100 / y_val_1, None, None - ] - vals[name][u"count"] = [ - test_vals[u"1"][1], - test_vals[u"2"][1], - test_vals[u"4"][1] - ] + if data_y_max: + layout[u"yaxis"][u"range"] = [0, max(data_y_max) + 1] + plpl = plgo.Figure(data=traces, layout=layout) - try: - val_max = max(vals[name][u"val"]) - except ValueError as err: - logging.error(repr(err)) - continue - if val_max: - y_max.append(val_max) - - if y_val_2: - vals[name][u"rel"][1] = round(y_val_2 / y_val_1, 2) - vals[name][u"diff"][1] = \ - (y_val_2 - vals[name][u"ideal"][1]) * 100 / y_val_2 - if y_val_4: - vals[name][u"rel"][2] = round(y_val_4 / y_val_1, 2) - vals[name][u"diff"][2] = \ - (y_val_4 - vals[name][u"ideal"][2]) * 100 / y_val_4 - except IndexError as err: - logging.warning(f"No data for {test_name}") - logging.warning(repr(err)) + # Export Plot + file_name = f"{plot[u'output-file'].format(core=core)}.html" + logging.info(f" Writing file {file_name}") + ploff.plot( + plpl, + show_link=False, + auto_open=False, + filename=file_name + ) + except PlotlyError as err: + logging.error( + f" Finished with error: {repr(err)}".replace(u"\n", u" ") + ) - # Limits: - if u"x520" in test_name: - limit = plot[u"limits"][u"nic"][u"x520"] - elif u"x710" in test_name: - limit = plot[u"limits"][u"nic"][u"x710"] - elif u"xxv710" in test_name: - limit = plot[u"limits"][u"nic"][u"xxv710"] - elif u"xl710" in test_name: - limit = plot[u"limits"][u"nic"][u"xl710"] - elif u"x553" in test_name: - limit = plot[u"limits"][u"nic"][u"x553"] - elif u"cx556a" in test_name: - limit = plot[u"limits"][u"nic"][u"cx556a"] - else: - limit = 0 - if limit > nic_limit: - nic_limit = limit - - mul = 2 if u"ge2p" in test_name else 1 - if u"10ge" in test_name: - limit = plot[u"limits"][u"link"][u"10ge"] * mul - elif u"25ge" in test_name: - limit = plot[u"limits"][u"link"][u"25ge"] * mul - elif u"40ge" in test_name: - limit = plot[u"limits"][u"link"][u"40ge"] * mul - elif u"100ge" in test_name: - limit = plot[u"limits"][u"link"][u"100ge"] * mul - else: - limit = 0 - if limit > lnk_limit: - lnk_limit = limit - if u"cx556a" in test_name: - limit = plot[u"limits"][u"pci"][u"pci-g3-x8"] - else: - limit = plot[u"limits"][u"pci"][u"pci-g3-x16"] - if limit > pci_limit: - pci_limit = limit +def plot_tsa_name(plot, input_data): + """Generate the plot(s) with algorithm: + plot_tsa_name + specified in the specification file. - traces = list() - annotations = list() - x_vals = [1, 2, 4] - - # Limits: - if u"-gbps" not in plot_title and u"-cps-" not in plot_title: - nic_limit /= 1e6 - lnk_limit /= 1e6 - pci_limit /= 1e6 - min_limit = min((nic_limit, lnk_limit, pci_limit)) - if nic_limit == min_limit: - traces.append(plgo.Scatter( - x=x_vals, - y=[nic_limit, ] * len(x_vals), - name=f"NIC: {nic_limit:.2f}Mpps", - showlegend=False, - mode=u"lines", - line=dict( - dash=u"dot", - color=COLORS[-1], - width=1), - hoverinfo=u"none" - )) - annotations.append(dict( - x=1, - y=nic_limit, - xref=u"x", - yref=u"y", - xanchor=u"left", - yanchor=u"bottom", - text=f"NIC: {nic_limit:.2f}Mpps", - font=dict( - size=14, - color=COLORS[-1], - ), - align=u"left", - showarrow=False - )) - y_max.append(nic_limit) - elif lnk_limit == min_limit: - traces.append(plgo.Scatter( - x=x_vals, - y=[lnk_limit, ] * len(x_vals), - name=f"Link: {lnk_limit:.2f}Mpps", - showlegend=False, - mode=u"lines", - line=dict( - dash=u"dot", - color=COLORS[-1], - width=1), - hoverinfo=u"none" - )) - annotations.append(dict( - x=1, - y=lnk_limit, - xref=u"x", - yref=u"y", - xanchor=u"left", - yanchor=u"bottom", - text=f"Link: {lnk_limit:.2f}Mpps", - font=dict( - size=14, - color=COLORS[-1], - ), - align=u"left", - showarrow=False - )) - y_max.append(lnk_limit) - elif pci_limit == min_limit: - traces.append(plgo.Scatter( - x=x_vals, - y=[pci_limit, ] * len(x_vals), - name=f"PCIe: {pci_limit:.2f}Mpps", - showlegend=False, - mode=u"lines", - line=dict( - dash=u"dot", - color=COLORS[-1], - width=1), - hoverinfo=u"none" - )) - annotations.append(dict( - x=1, - y=pci_limit, - xref=u"x", - yref=u"y", - xanchor=u"left", - yanchor=u"bottom", - text=f"PCIe: {pci_limit:.2f}Mpps", - font=dict( - size=14, - color=COLORS[-1], - ), - align=u"left", - showarrow=False - )) - y_max.append(pci_limit) + :param plot: Plot to generate. + :param input_data: Data to process. + :type plot: pandas.Series + :type input_data: InputData + """ - # Perfect and measured: - cidx = 0 - for name, val in vals.items(): - hovertext = list() - try: - for idx in range(len(val[u"val"])): - htext = "" - if isinstance(val[u"val"][idx], float): - htext += ( - f"No. of Runs: {val[u'count'][idx]}
" - f"Mean: {val[u'val'][idx]:.2f}{h_unit}
" + # Transform the data + plot_title = plot.get(u"title", u"") + logging.info( + f" Creating data set for the {plot.get(u'type', u'')} {plot_title}." + ) + data = input_data.filter_tests_by_name( + plot, + params=[u"throughput", u"gbps", u"parent", u"tags", u"type"] + ) + if data is None: + logging.error(u"No data.") + return + + plot_title = plot_title.lower() + + if u"-gbps" in plot_title: + value = u"gbps" + h_unit = u"Gbps" + multiplier = 1e6 + else: + value = u"throughput" + h_unit = u"Mpps" + multiplier = 1.0 + + for ttype in plot.get(u"test-type", (u"ndr", u"pdr")): + y_vals = OrderedDict() + for item in plot.get(u"include", tuple()): + reg_ex = re.compile(str(item).lower()) + for job in data: + for build in job: + for test_id, test in build.iteritems(): + if re.match(reg_ex, str(test_id).lower()): + if y_vals.get(test[u"parent"], None) is None: + y_vals[test[u"parent"]] = { + u"1": list(), + u"2": list(), + u"4": list() + } + try: + if test[u"type"] not in (u"NDRPDR", u"CPS"): + continue + + if u"1C" in test[u"tags"]: + y_vals[test[u"parent"]][u"1"].append( + test[value][ttype.upper()][u"LOWER"] * + multiplier + ) + elif u"2C" in test[u"tags"]: + y_vals[test[u"parent"]][u"2"].append( + test[value][ttype.upper()][u"LOWER"] * + multiplier + ) + elif u"4C" in test[u"tags"]: + y_vals[test[u"parent"]][u"4"].append( + test[value][ttype.upper()][u"LOWER"] * + multiplier + ) + except (KeyError, TypeError): + pass + + if not y_vals: + logging.warning(f"No data for the plot {plot.get(u'title', u'')}") + return + + y_1c_max = dict() + for test_name, test_vals in y_vals.items(): + for key, test_val in test_vals.items(): + if test_val: + avg_val = sum(test_val) / len(test_val) + y_vals[test_name][key] = [avg_val, len(test_val)] + ideal = avg_val / (int(key) * 1e6) + if test_name not in y_1c_max or ideal > y_1c_max[test_name]: + y_1c_max[test_name] = ideal + + vals = OrderedDict() + y_max = list() + nic_limit = 0 + lnk_limit = 0 + pci_limit = 0 + for test_name, test_vals in y_vals.items(): + try: + if test_vals[u"1"][1]: + name = re.sub( + REGEX_NIC, + u"", + test_name.replace(u'-ndrpdr', u''). + replace(u'2n1l-', u'') ) - if isinstance(val[u"diff"][idx], float): - htext += f"Diff: {round(val[u'diff'][idx]):.0f}%
" - if isinstance(val[u"rel"][idx], float): - htext += f"Speedup: {val[u'rel'][idx]:.2f}" - hovertext.append(htext) - traces.append( - plgo.Scatter( + vals[name] = OrderedDict() + y_val_1 = test_vals[u"1"][0] / 1e6 + y_val_2 = test_vals[u"2"][0] / 1e6 if test_vals[u"2"][0] \ + else None + y_val_4 = test_vals[u"4"][0] / 1e6 if test_vals[u"4"][0] \ + else None + + vals[name][u"val"] = [y_val_1, y_val_2, y_val_4] + vals[name][u"rel"] = [1.0, None, None] + vals[name][u"ideal"] = [ + y_1c_max[test_name], + y_1c_max[test_name] * 2, + y_1c_max[test_name] * 4 + ] + vals[name][u"diff"] = [ + (y_val_1 - y_1c_max[test_name]) * 100 / y_val_1, + None, + None + ] + vals[name][u"count"] = [ + test_vals[u"1"][1], + test_vals[u"2"][1], + test_vals[u"4"][1] + ] + + try: + val_max = max(vals[name][u"val"]) + except ValueError as err: + logging.error(repr(err)) + continue + if val_max: + y_max.append(val_max) + + if y_val_2: + vals[name][u"rel"][1] = round(y_val_2 / y_val_1, 2) + vals[name][u"diff"][1] = \ + (y_val_2 - vals[name][u"ideal"][1]) * 100 / y_val_2 + if y_val_4: + vals[name][u"rel"][2] = round(y_val_4 / y_val_1, 2) + vals[name][u"diff"][2] = \ + (y_val_4 - vals[name][u"ideal"][2]) * 100 / y_val_4 + except IndexError as err: + logging.warning(f"No data for {test_name}") + logging.warning(repr(err)) + + # Limits: + if u"x520" in test_name: + limit = plot[u"limits"][u"nic"][u"x520"] + elif u"x710" in test_name: + limit = plot[u"limits"][u"nic"][u"x710"] + elif u"xxv710" in test_name: + limit = plot[u"limits"][u"nic"][u"xxv710"] + elif u"xl710" in test_name: + limit = plot[u"limits"][u"nic"][u"xl710"] + elif u"x553" in test_name: + limit = plot[u"limits"][u"nic"][u"x553"] + elif u"cx556a" in test_name: + limit = plot[u"limits"][u"nic"][u"cx556a"] + elif u"e810cq" in test_name: + limit = plot[u"limits"][u"nic"][u"e810cq"] + else: + limit = 0 + if limit > nic_limit: + nic_limit = limit + + mul = 2 if u"ge2p" in test_name else 1 + if u"10ge" in test_name: + limit = plot[u"limits"][u"link"][u"10ge"] * mul + elif u"25ge" in test_name: + limit = plot[u"limits"][u"link"][u"25ge"] * mul + elif u"40ge" in test_name: + limit = plot[u"limits"][u"link"][u"40ge"] * mul + elif u"100ge" in test_name: + limit = plot[u"limits"][u"link"][u"100ge"] * mul + else: + limit = 0 + if limit > lnk_limit: + lnk_limit = limit + + if u"cx556a" in test_name: + limit = plot[u"limits"][u"pci"][u"pci-g3-x8"] + else: + limit = plot[u"limits"][u"pci"][u"pci-g3-x16"] + if limit > pci_limit: + pci_limit = limit + + traces = list() + annotations = list() + x_vals = [1, 2, 4] + + # Limits: + if u"-gbps" not in plot_title and u"-cps-" not in plot_title: + nic_limit /= 1e6 + lnk_limit /= 1e6 + pci_limit /= 1e6 + min_limit = min((nic_limit, lnk_limit, pci_limit)) + if nic_limit == min_limit: + traces.append(plgo.Scatter( x=x_vals, - y=val[u"val"], - name=name, - legendgroup=name, - mode=u"lines+markers", + y=[nic_limit, ] * len(x_vals), + name=f"NIC: {nic_limit:.2f}Mpps", + showlegend=False, + mode=u"lines", line=dict( - color=COLORS[cidx], - width=2), - marker=dict( - symbol=u"circle", - size=10 + dash=u"dot", + color=COLORS[-1], + width=1), + hoverinfo=u"none" + )) + annotations.append(dict( + x=1, + y=nic_limit, + xref=u"x", + yref=u"y", + xanchor=u"left", + yanchor=u"bottom", + text=f"NIC: {nic_limit:.2f}Mpps", + font=dict( + size=14, + color=COLORS[-1], ), - text=hovertext, - hoverinfo=u"text+name" - ) - ) - traces.append( - plgo.Scatter( + align=u"left", + showarrow=False + )) + y_max.append(nic_limit) + elif lnk_limit == min_limit: + traces.append(plgo.Scatter( x=x_vals, - y=val[u"ideal"], - name=f"{name} perfect", - legendgroup=name, + y=[lnk_limit, ] * len(x_vals), + name=f"Link: {lnk_limit:.2f}Mpps", showlegend=False, mode=u"lines", line=dict( - color=COLORS[cidx], - width=2, - dash=u"dash"), - text=[f"Perfect: {y:.2f}Mpps" for y in val[u"ideal"]], - hoverinfo=u"text" + dash=u"dot", + color=COLORS[-1], + width=1), + hoverinfo=u"none" + )) + annotations.append(dict( + x=1, + y=lnk_limit, + xref=u"x", + yref=u"y", + xanchor=u"left", + yanchor=u"bottom", + text=f"Link: {lnk_limit:.2f}Mpps", + font=dict( + size=14, + color=COLORS[-1], + ), + align=u"left", + showarrow=False + )) + y_max.append(lnk_limit) + elif pci_limit == min_limit: + traces.append(plgo.Scatter( + x=x_vals, + y=[pci_limit, ] * len(x_vals), + name=f"PCIe: {pci_limit:.2f}Mpps", + showlegend=False, + mode=u"lines", + line=dict( + dash=u"dot", + color=COLORS[-1], + width=1), + hoverinfo=u"none" + )) + annotations.append(dict( + x=1, + y=pci_limit, + xref=u"x", + yref=u"y", + xanchor=u"left", + yanchor=u"bottom", + text=f"PCIe: {pci_limit:.2f}Mpps", + font=dict( + size=14, + color=COLORS[-1], + ), + align=u"left", + showarrow=False + )) + y_max.append(pci_limit) + + # Perfect and measured: + cidx = 0 + for name, val in vals.items(): + hovertext = list() + try: + for idx in range(len(val[u"val"])): + htext = "" + if isinstance(val[u"val"][idx], float): + htext += ( + f"No. of Runs: {val[u'count'][idx]}
" + f"Mean: {val[u'val'][idx]:.2f}{h_unit}
" + ) + if isinstance(val[u"diff"][idx], float): + htext += f"Diff: {round(val[u'diff'][idx]):.0f}%
" + if isinstance(val[u"rel"][idx], float): + htext += f"Speedup: {val[u'rel'][idx]:.2f}" + hovertext.append(htext) + traces.append( + plgo.Scatter( + x=x_vals, + y=val[u"val"], + name=name, + legendgroup=name, + mode=u"lines+markers", + line=dict( + color=COLORS[cidx], + width=2), + marker=dict( + symbol=u"circle", + size=10 + ), + text=hovertext, + hoverinfo=u"text+name" + ) ) - ) - cidx += 1 - except (IndexError, ValueError, KeyError) as err: - logging.warning(f"No data for {name}\n{repr(err)}") - - try: - # Create plot - file_type = plot.get(u"output-file-type", u".html") - logging.info(f" Writing file {plot[u'output-file']}{file_type}.") - layout = deepcopy(plot[u"layout"]) - if layout.get(u"title", None): - layout[u"title"] = f"Speedup Multi-core: {layout[u'title']}" - layout[u"yaxis"][u"range"] = [0, int(max(y_max) * 1.1)] - layout[u"annotations"].extend(annotations) - plpl = plgo.Figure(data=traces, layout=layout) + traces.append( + plgo.Scatter( + x=x_vals, + y=val[u"ideal"], + name=f"{name} perfect", + legendgroup=name, + showlegend=False, + mode=u"lines", + line=dict( + color=COLORS[cidx], + width=2, + dash=u"dash"), + text=[f"Perfect: {y:.2f}Mpps" for y in val[u"ideal"]], + hoverinfo=u"text" + ) + ) + cidx += 1 + except (IndexError, ValueError, KeyError) as err: + logging.warning(f"No data for {name}\n{repr(err)}") - # Export Plot - ploff.plot( - plpl, - show_link=False, - auto_open=False, - filename=f"{plot[u'output-file']}{file_type}" - ) - except PlotlyError as err: - logging.error( - f" Finished with error: {repr(err)}".replace(u"\n", u" ") - ) - return + try: + # Create plot + file_name = f"{plot[u'output-file'].format(test_type=ttype)}.html" + logging.info(f" Writing file {file_name}") + layout = deepcopy(plot[u"layout"]) + if layout.get(u"title", None): + layout[u"title"] = ( + f"Speedup Multi-core: " + f"{layout[u'title'].format(test_type=ttype)}" + ) + layout[u"yaxis"][u"range"] = [0, int(max(y_max) * 1.1)] + layout[u"annotations"].extend(annotations) + plpl = plgo.Figure(data=traces, layout=layout) + + # Export Plot + ploff.plot( + plpl, + show_link=False, + auto_open=False, + filename=file_name + ) + except PlotlyError as err: + logging.error( + f" Finished with error: {repr(err)}".replace(u"\n", u" ") + ) def plot_http_server_perf_box(plot, input_data): @@ -1160,6 +1500,16 @@ def plot_nf_heatmap(plot, input_data): :type input_data: InputData """ + def sort_by_int(value): + """Makes possible to sort a list of strings which represent integers. + + :param value: Integer as a string. + :type value: str + :returns: Integer representation of input parameter 'value'. + :rtype: int + """ + return int(value) + regex_cn = re.compile(r'^(\d*)R(\d*)C$') regex_test_name = re.compile(r'^.*-(\d+ch|\d+pl)-' r'(\d+mif|\d+vh)-' @@ -1171,306 +1521,321 @@ def plot_nf_heatmap(plot, input_data): f" Creating the data set for the {plot.get(u'type', u'')} " f"{plot.get(u'title', u'')}." ) - data = input_data.filter_data(plot, continue_on_error=True) - if data is None or data.empty: - logging.error(u"No data.") - return - - for job in data: - for build in job: - for test in build: - for tag in test[u"tags"]: - groups = re.search(regex_cn, tag) - if groups: - chain = str(groups.group(1)) - node = str(groups.group(2)) - break - else: - continue - groups = re.search(regex_test_name, test[u"name"]) - if groups and len(groups.groups()) == 3: - hover_name = ( - f"{str(groups.group(1))}-" - f"{str(groups.group(2))}-" - f"{str(groups.group(3))}" - ) - else: - hover_name = u"" - if vals.get(chain, None) is None: - vals[chain] = dict() - if vals[chain].get(node, None) is None: - vals[chain][node] = dict( - name=hover_name, - vals=list(), - nr=None, - mean=None, - stdev=None - ) - try: - if plot[u"include-tests"] == u"MRR": - result = test[u"result"][u"receive-rate"] - elif plot[u"include-tests"] == u"PDR": - result = test[u"throughput"][u"PDR"][u"LOWER"] - elif plot[u"include-tests"] == u"NDR": - result = test[u"throughput"][u"NDR"][u"LOWER"] - else: - result = None - except TypeError: - result = None - - if result: - vals[chain][node][u"vals"].append(result) - - if not vals: + in_data = input_data.filter_tests_by_name( + plot, + continue_on_error=True, + params=[u"throughput", u"result", u"name", u"tags", u"type"] + ) + if in_data is None or in_data.empty: logging.error(u"No data.") return - txt_chains = list() - txt_nodes = list() - for key_c in vals: - txt_chains.append(key_c) - for key_n in vals[key_c].keys(): - txt_nodes.append(key_n) - if vals[key_c][key_n][u"vals"]: - vals[key_c][key_n][u"nr"] = len(vals[key_c][key_n][u"vals"]) - vals[key_c][key_n][u"mean"] = \ - round(mean(vals[key_c][key_n][u"vals"]) / 1000000, 1) - vals[key_c][key_n][u"stdev"] = \ - round(stdev(vals[key_c][key_n][u"vals"]) / 1000000, 1) - txt_nodes = list(set(txt_nodes)) - - def sort_by_int(value): - """Makes possible to sort a list of strings which represent integers. - - :param value: Integer as a string. - :type value: str - :returns: Integer representation of input parameter 'value'. - :rtype: int - """ - return int(value) - - txt_chains = sorted(txt_chains, key=sort_by_int) - txt_nodes = sorted(txt_nodes, key=sort_by_int) - - chains = [i + 1 for i in range(len(txt_chains))] - nodes = [i + 1 for i in range(len(txt_nodes))] - - data = [list() for _ in range(len(chains))] - for chain in chains: - for node in nodes: - try: - val = vals[txt_chains[chain - 1]][txt_nodes[node - 1]][u"mean"] - except (KeyError, IndexError): - val = None - data[chain - 1].append(val) - - # Color scales: - my_green = [[0.0, u"rgb(235, 249, 242)"], - [1.0, u"rgb(45, 134, 89)"]] - - my_blue = [[0.0, u"rgb(236, 242, 248)"], - [1.0, u"rgb(57, 115, 172)"]] - - my_grey = [[0.0, u"rgb(230, 230, 230)"], - [1.0, u"rgb(102, 102, 102)"]] - - hovertext = list() - annotations = list() - - text = (u"Test: {name}
" - u"Runs: {nr}
" - u"Thput: {val}
" - u"StDev: {stdev}") + for ttype in plot.get(u"test-type", (u"ndr", u"pdr")): + for core in plot.get(u"core", tuple()): + for item in plot.get(u"include", tuple()): + reg_ex = re.compile(str(item.format(core=core)).lower()) + for job in in_data: + for build in job: + for test_id, test in build.iteritems(): + if not re.match(reg_ex, str(test_id).lower()): + continue + for tag in test[u"tags"]: + groups = re.search(regex_cn, tag) + if groups: + chain = str(groups.group(1)) + node = str(groups.group(2)) + break + else: + continue + groups = re.search(regex_test_name, test[u"name"]) + if groups and len(groups.groups()) == 3: + hover_name = ( + f"{str(groups.group(1))}-" + f"{str(groups.group(2))}-" + f"{str(groups.group(3))}" + ) + else: + hover_name = u"" + if vals.get(chain, None) is None: + vals[chain] = dict() + if vals[chain].get(node, None) is None: + vals[chain][node] = dict( + name=hover_name, + vals=list(), + nr=None, + mean=None, + stdev=None + ) + try: + if ttype == u"mrr": + result = test[u"result"][u"receive-rate"] + elif ttype == u"pdr": + result = \ + test[u"throughput"][u"PDR"][u"LOWER"] + elif ttype == u"ndr": + result = \ + test[u"throughput"][u"NDR"][u"LOWER"] + else: + result = None + except TypeError: + result = None + + if result: + vals[chain][node][u"vals"].append(result) + + if not vals: + logging.error(u"No data.") + return + + txt_chains = list() + txt_nodes = list() + for key_c in vals: + txt_chains.append(key_c) + for key_n in vals[key_c].keys(): + txt_nodes.append(key_n) + if vals[key_c][key_n][u"vals"]: + vals[key_c][key_n][u"nr"] = \ + len(vals[key_c][key_n][u"vals"]) + vals[key_c][key_n][u"mean"] = \ + round(mean(vals[key_c][key_n][u"vals"]) / 1e6, 1) + vals[key_c][key_n][u"stdev"] = \ + round(stdev(vals[key_c][key_n][u"vals"]) / 1e6, 1) + txt_nodes = list(set(txt_nodes)) + + txt_chains = sorted(txt_chains, key=sort_by_int) + txt_nodes = sorted(txt_nodes, key=sort_by_int) + + chains = [i + 1 for i in range(len(txt_chains))] + nodes = [i + 1 for i in range(len(txt_nodes))] + + data = [list() for _ in range(len(chains))] + for chain in chains: + for node in nodes: + try: + val = vals[txt_chains[chain - 1]] \ + [txt_nodes[node - 1]][u"mean"] + except (KeyError, IndexError): + val = None + data[chain - 1].append(val) + + # Color scales: + my_green = [[0.0, u"rgb(235, 249, 242)"], + [1.0, u"rgb(45, 134, 89)"]] + + my_blue = [[0.0, u"rgb(236, 242, 248)"], + [1.0, u"rgb(57, 115, 172)"]] + + my_grey = [[0.0, u"rgb(230, 230, 230)"], + [1.0, u"rgb(102, 102, 102)"]] + + hovertext = list() + annotations = list() + + text = (u"Test: {name}
" + u"Runs: {nr}
" + u"Thput: {val}
" + u"StDev: {stdev}") + + for chain, _ in enumerate(txt_chains): + hover_line = list() + for node, _ in enumerate(txt_nodes): + if data[chain][node] is not None: + annotations.append( + dict( + x=node+1, + y=chain+1, + xref=u"x", + yref=u"y", + xanchor=u"center", + yanchor=u"middle", + text=str(data[chain][node]), + font=dict( + size=14, + ), + align=u"center", + showarrow=False + ) + ) + hover_line.append(text.format( + name=vals[txt_chains[chain]][txt_nodes[node]] + [u"name"], + nr=vals[txt_chains[chain]][txt_nodes[node]][u"nr"], + val=data[chain][node], + stdev=vals[txt_chains[chain]][txt_nodes[node]] + [u"stdev"] + )) + hovertext.append(hover_line) + + traces = [ + plgo.Heatmap( + x=nodes, + y=chains, + z=data, + colorbar=dict( + title=plot.get(u"z-axis", u"{test_type}"). + format(test_type=ttype.upper()), + titleside=u"right", + titlefont=dict( + size=16 + ), + tickfont=dict( + size=16, + ), + tickformat=u".1f", + yanchor=u"bottom", + y=-0.02, + len=0.925, + ), + showscale=True, + colorscale=my_green, + text=hovertext, + hoverinfo=u"text" + ) + ] - for chain, _ in enumerate(txt_chains): - hover_line = list() - for node, _ in enumerate(txt_nodes): - if data[chain][node] is not None: + for idx, item in enumerate(txt_nodes): + # X-axis, numbers: annotations.append( dict( - x=node+1, - y=chain+1, + x=idx+1, + y=0.05, xref=u"x", yref=u"y", xanchor=u"center", + yanchor=u"top", + text=item, + font=dict( + size=16, + ), + align=u"center", + showarrow=False + ) + ) + for idx, item in enumerate(txt_chains): + # Y-axis, numbers: + annotations.append( + dict( + x=0.35, + y=idx+1, + xref=u"x", + yref=u"y", + xanchor=u"right", yanchor=u"middle", - text=str(data[chain][node]), + text=item, font=dict( - size=14, + size=16, ), align=u"center", showarrow=False ) ) - hover_line.append(text.format( - name=vals[txt_chains[chain]][txt_nodes[node]][u"name"], - nr=vals[txt_chains[chain]][txt_nodes[node]][u"nr"], - val=data[chain][node], - stdev=vals[txt_chains[chain]][txt_nodes[node]][u"stdev"])) - hovertext.append(hover_line) - - traces = [ - plgo.Heatmap( - x=nodes, - y=chains, - z=data, - colorbar=dict( - title=plot.get(u"z-axis", u""), - titleside=u"right", - titlefont=dict( - size=16 - ), - tickfont=dict( - size=16, - ), - tickformat=u".1f", - yanchor=u"bottom", - y=-0.02, - len=0.925, - ), - showscale=True, - colorscale=my_green, - text=hovertext, - hoverinfo=u"text" - ) - ] - - for idx, item in enumerate(txt_nodes): - # X-axis, numbers: - annotations.append( - dict( - x=idx+1, - y=0.05, - xref=u"x", - yref=u"y", - xanchor=u"center", - yanchor=u"top", - text=item, - font=dict( - size=16, - ), - align=u"center", - showarrow=False - ) - ) - for idx, item in enumerate(txt_chains): - # Y-axis, numbers: - annotations.append( - dict( - x=0.35, - y=idx+1, - xref=u"x", - yref=u"y", - xanchor=u"right", - yanchor=u"middle", - text=item, - font=dict( - size=16, - ), - align=u"center", - showarrow=False - ) - ) - # X-axis, title: - annotations.append( - dict( - x=0.55, - y=-0.15, - xref=u"paper", - yref=u"y", - xanchor=u"center", - yanchor=u"bottom", - text=plot.get(u"x-axis", u""), - font=dict( - size=16, - ), - align=u"center", - showarrow=False - ) - ) - # Y-axis, title: - annotations.append( - dict( - x=-0.1, - y=0.5, - xref=u"x", - yref=u"paper", - xanchor=u"center", - yanchor=u"middle", - text=plot.get(u"y-axis", u""), - font=dict( - size=16, - ), - align=u"center", - textangle=270, - showarrow=False - ) - ) - updatemenus = list([ - dict( - x=1.0, - y=0.0, - xanchor=u"right", - yanchor=u"bottom", - direction=u"up", - buttons=list([ + # X-axis, title: + annotations.append( dict( - args=[ - { - u"colorscale": [my_green, ], - u"reversescale": False - } - ], - label=u"Green", - method=u"update" - ), + x=0.55, + y=-0.15, + xref=u"paper", + yref=u"y", + xanchor=u"center", + yanchor=u"bottom", + text=plot.get(u"x-axis", u""), + font=dict( + size=16, + ), + align=u"center", + showarrow=False + ) + ) + # Y-axis, title: + annotations.append( dict( - args=[ - { - u"colorscale": [my_blue, ], - u"reversescale": False - } - ], - label=u"Blue", - method=u"update" - ), + x=-0.1, + y=0.5, + xref=u"x", + yref=u"paper", + xanchor=u"center", + yanchor=u"middle", + text=plot.get(u"y-axis", u""), + font=dict( + size=16, + ), + align=u"center", + textangle=270, + showarrow=False + ) + ) + updatemenus = list([ dict( - args=[ - { - u"colorscale": [my_grey, ], - u"reversescale": False - } - ], - label=u"Grey", - method=u"update" + x=1.0, + y=0.0, + xanchor=u"right", + yanchor=u"bottom", + direction=u"up", + buttons=list([ + dict( + args=[ + { + u"colorscale": [my_green, ], + u"reversescale": False + } + ], + label=u"Green", + method=u"update" + ), + dict( + args=[ + { + u"colorscale": [my_blue, ], + u"reversescale": False + } + ], + label=u"Blue", + method=u"update" + ), + dict( + args=[ + { + u"colorscale": [my_grey, ], + u"reversescale": False + } + ], + label=u"Grey", + method=u"update" + ) + ]) ) ]) - ) - ]) - try: - layout = deepcopy(plot[u"layout"]) - except KeyError as err: - logging.error(f"Finished with error: No layout defined\n{repr(err)}") - return + try: + layout = deepcopy(plot[u"layout"]) + except KeyError as err: + logging.error( + f"Finished with error: No layout defined\n{repr(err)}" + ) + return - layout[u"annotations"] = annotations - layout[u'updatemenus'] = updatemenus + layout[u"annotations"] = annotations + layout[u'updatemenus'] = updatemenus + if layout.get(u"title", None): + layout[u"title"] = layout[u'title'].replace(u"test_type", ttype) - try: - # Create plot - plpl = plgo.Figure(data=traces, layout=layout) + try: + # Create plot + plpl = plgo.Figure(data=traces, layout=layout) - # Export Plot - logging.info(f" Writing file {plot[u'output-file']}.html") - ploff.plot( - plpl, - show_link=False, - auto_open=False, - filename=f"{plot[u'output-file']}.html" - ) - except PlotlyError as err: - logging.error( - f" Finished with error: {repr(err)}".replace(u"\n", u" ") - ) - return + # Export Plot + file_name = ( + f"{plot[u'output-file'].format(core=core, test_type=ttype)}" + f".html" + ) + logging.info(f" Writing file {file_name}") + ploff.plot( + plpl, + show_link=False, + auto_open=False, + filename=file_name + ) + except PlotlyError as err: + logging.error( + f" Finished with error: {repr(err)}".replace(u"\n", u" ") + )