X-Git-Url: https://gerrit.fd.io/r/gitweb?a=blobdiff_plain;f=resources%2Ftools%2Fpresentation%2Fnew%2Fgenerator_CPTA.py;fp=resources%2Ftools%2Fpresentation%2Fnew%2Fgenerator_CPTA.py;h=1b4115f1f6cd92e37c42c1cd26e8b5c4b2c37188;hb=beeb2acb9ac153eaa54983bea46a76d596168965;hp=0000000000000000000000000000000000000000;hpb=3dcef45002a1b82c4503ec590d680950930fa193;p=csit.git diff --git a/resources/tools/presentation/new/generator_CPTA.py b/resources/tools/presentation/new/generator_CPTA.py new file mode 100644 index 0000000000..1b4115f1f6 --- /dev/null +++ b/resources/tools/presentation/new/generator_CPTA.py @@ -0,0 +1,448 @@ +# Copyright (c) 2018 Cisco and/or its affiliates. +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at: +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. + +"""Generation of Continuous Performance Trending and Analysis. +""" + +import multiprocessing +import os +import logging +import csv +import prettytable +import plotly.offline as ploff +import plotly.graph_objs as plgo +import plotly.exceptions as plerr +import pandas as pd + +from collections import OrderedDict +from datetime import datetime + +from utils import archive_input_data, execute_command,\ + classify_anomalies, Worker + + +# Command to build the html format of the report +HTML_BUILDER = 'sphinx-build -v -c conf_cpta -a ' \ + '-b html -E ' \ + '-t html ' \ + '-D version="{date}" ' \ + '{working_dir} ' \ + '{build_dir}/' + +# .css file for the html format of the report +THEME_OVERRIDES = """/* override table width restrictions */ +.wy-nav-content { + max-width: 1200px !important; +} +""" + +COLORS = ["SkyBlue", "Olive", "Purple", "Coral", "Indigo", "Pink", + "Chocolate", "Brown", "Magenta", "Cyan", "Orange", "Black", + "Violet", "Blue", "Yellow"] + + +def generate_cpta(spec, data): + """Generate all formats and versions of the Continuous Performance Trending + and Analysis. + + :param spec: Specification read from the specification file. + :param data: Full data set. + :type spec: Specification + :type data: InputData + """ + + logging.info("Generating the Continuous Performance Trending and Analysis " + "...") + + ret_code = _generate_all_charts(spec, data) + + cmd = HTML_BUILDER.format( + date=datetime.utcnow().strftime('%m/%d/%Y %H:%M UTC'), + working_dir=spec.environment["paths"]["DIR[WORKING,SRC]"], + build_dir=spec.environment["paths"]["DIR[BUILD,HTML]"]) + execute_command(cmd) + + with open(spec.environment["paths"]["DIR[CSS_PATCH_FILE]"], "w") as \ + css_file: + css_file.write(THEME_OVERRIDES) + + with open(spec.environment["paths"]["DIR[CSS_PATCH_FILE2]"], "w") as \ + css_file: + css_file.write(THEME_OVERRIDES) + + archive_input_data(spec) + + logging.info("Done.") + + return ret_code + + +def _generate_trending_traces(in_data, build_info, moving_win_size=10, + show_trend_line=True, name="", color=""): + """Generate the trending traces: + - samples, + - trimmed moving median (trending line) + - outliers, regress, progress + + :param in_data: Full data set. + :param build_info: Information about the builds. + :param moving_win_size: Window size. + :param show_trend_line: Show moving median (trending plot). + :param name: Name of the plot + :param color: Name of the color for the plot. + :type in_data: OrderedDict + :type build_info: dict + :type moving_win_size: int + :type show_trend_line: bool + :type name: str + :type color: str + :returns: Generated traces (list) and the evaluated result. + :rtype: tuple(traces, result) + """ + + data_x = list(in_data.keys()) + data_y = list(in_data.values()) + + hover_text = list() + xaxis = list() + for idx in data_x: + hover_text.append("vpp-ref: {0}
csit-ref: mrr-daily-build-{1}". + format(build_info[str(idx)][1].rsplit('~', 1)[0], + idx)) + date = build_info[str(idx)][0] + xaxis.append(datetime(int(date[0:4]), int(date[4:6]), int(date[6:8]), + int(date[9:11]), int(date[12:]))) + + data_pd = pd.Series(data_y, index=xaxis) + + anomaly_classification, avgs = classify_anomalies(data_pd) + + anomalies = pd.Series() + anomalies_colors = list() + anomalies_avgs = list() + anomaly_color = { + "outlier": 0.0, + "regression": 0.33, + "normal": 0.66, + "progression": 1.0 + } + if anomaly_classification: + for idx, item in enumerate(data_pd.items()): + if anomaly_classification[idx] in \ + ("outlier", "regression", "progression"): + anomalies = anomalies.append(pd.Series([item[1], ], + index=[item[0], ])) + anomalies_colors.append( + anomaly_color[anomaly_classification[idx]]) + anomalies_avgs.append(avgs[idx]) + anomalies_colors.extend([0.0, 0.33, 0.66, 1.0]) + + # Create traces + + trace_samples = plgo.Scatter( + x=xaxis, + y=data_y, + mode='markers', + line={ + "width": 1 + }, + legendgroup=name, + name="{name}-thput".format(name=name), + marker={ + "size": 5, + "color": color, + "symbol": "circle", + }, + text=hover_text, + hoverinfo="x+y+text+name" + ) + traces = [trace_samples, ] + + if show_trend_line: + trace_trend = plgo.Scatter( + x=xaxis, + y=avgs, + mode='lines', + line={ + "shape": "linear", + "width": 1, + "color": color, + }, + legendgroup=name, + name='{name}-trend'.format(name=name) + ) + traces.append(trace_trend) + + trace_anomalies = plgo.Scatter( + x=anomalies.keys(), + y=anomalies_avgs, + mode='markers', + hoverinfo="none", + showlegend=True, + legendgroup=name, + name="{name}-anomalies".format(name=name), + marker={ + "size": 15, + "symbol": "circle-open", + "color": anomalies_colors, + "colorscale": [[0.00, "grey"], + [0.25, "grey"], + [0.25, "red"], + [0.50, "red"], + [0.50, "white"], + [0.75, "white"], + [0.75, "green"], + [1.00, "green"]], + "showscale": True, + "line": { + "width": 2 + }, + "colorbar": { + "y": 0.5, + "len": 0.8, + "title": "Circles Marking Data Classification", + "titleside": 'right', + "titlefont": { + "size": 14 + }, + "tickmode": 'array', + "tickvals": [0.125, 0.375, 0.625, 0.875], + "ticktext": ["Outlier", "Regression", "Normal", "Progression"], + "ticks": "", + "ticklen": 0, + "tickangle": -90, + "thickness": 10 + } + } + ) + traces.append(trace_anomalies) + + return traces, anomaly_classification[-1] + + +def _generate_all_charts(spec, input_data): + """Generate all charts specified in the specification file. + + :param spec: Specification. + :param input_data: Full data set. + :type spec: Specification + :type input_data: InputData + """ + + def _generate_chart(_, data_q, graph): + """Generates the chart. + """ + + logs = list() + + logging.info(" Generating the chart '{0}' ...". + format(graph.get("title", ""))) + logs.append(("INFO", " Generating the chart '{0}' ...". + format(graph.get("title", "")))) + + job_name = spec.cpta["data"].keys()[0] + + csv_tbl = list() + res = list() + + # Transform the data + logs.append(("INFO", " Creating the data set for the {0} '{1}'.". + format(graph.get("type", ""), graph.get("title", "")))) + data = input_data.filter_data(graph, continue_on_error=True) + if data is None: + logging.error("No data.") + return + + chart_data = dict() + for job in data: + for index, bld in job.items(): + for test_name, test in bld.items(): + if chart_data.get(test_name, None) is None: + chart_data[test_name] = OrderedDict() + try: + chart_data[test_name][int(index)] = \ + test["result"]["throughput"] + except (KeyError, TypeError): + pass + + # Add items to the csv table: + for tst_name, tst_data in chart_data.items(): + tst_lst = list() + for bld in builds_lst: + itm = tst_data.get(int(bld), '') + tst_lst.append(str(itm)) + csv_tbl.append("{0},".format(tst_name) + ",".join(tst_lst) + '\n') + # Generate traces: + traces = list() + win_size = 14 + index = 0 + for test_name, test_data in chart_data.items(): + if not test_data: + logs.append(("WARNING", "No data for the test '{0}'". + format(test_name))) + continue + test_name = test_name.split('.')[-1] + trace, rslt = _generate_trending_traces( + test_data, + build_info=build_info, + moving_win_size=win_size, + name='-'.join(test_name.split('-')[3:-1]), + color=COLORS[index]) + traces.extend(trace) + res.append(rslt) + index += 1 + + if traces: + # Generate the chart: + graph["layout"]["xaxis"]["title"] = \ + graph["layout"]["xaxis"]["title"].format(job=job_name) + name_file = "{0}-{1}{2}".format(spec.cpta["output-file"], + graph["output-file-name"], + spec.cpta["output-file-type"]) + + logs.append(("INFO", " Writing the file '{0}' ...". + format(name_file))) + plpl = plgo.Figure(data=traces, layout=graph["layout"]) + try: + ploff.plot(plpl, show_link=False, auto_open=False, + filename=name_file) + except plerr.PlotlyEmptyDataError: + logs.append(("WARNING", "No data for the plot. Skipped.")) + + data_out = { + "csv_table": csv_tbl, + "results": res, + "logs": logs + } + data_q.put(data_out) + + job_name = spec.cpta["data"].keys()[0] + + builds_lst = list() + for build in spec.input["builds"][job_name]: + status = build["status"] + if status != "failed" and status != "not found": + builds_lst.append(str(build["build"])) + + # Get "build ID": "date" dict: + build_info = OrderedDict() + for build in builds_lst: + try: + build_info[build] = ( + input_data.metadata(job_name, build)["generated"][:14], + input_data.metadata(job_name, build)["version"] + ) + except KeyError: + build_info[build] = ("", "") + + work_queue = multiprocessing.JoinableQueue() + manager = multiprocessing.Manager() + data_queue = manager.Queue() + cpus = multiprocessing.cpu_count() + + workers = list() + for cpu in range(cpus): + worker = Worker(work_queue, + data_queue, + _generate_chart) + worker.daemon = True + worker.start() + workers.append(worker) + os.system("taskset -p -c {0} {1} > /dev/null 2>&1". + format(cpu, worker.pid)) + + for chart in spec.cpta["plots"]: + work_queue.put((chart, )) + work_queue.join() + + anomaly_classifications = list() + + # Create the header: + csv_table = list() + header = "Build Number:," + ",".join(builds_lst) + '\n' + csv_table.append(header) + build_dates = [x[0] for x in build_info.values()] + header = "Build Date:," + ",".join(build_dates) + '\n' + csv_table.append(header) + vpp_versions = [x[1] for x in build_info.values()] + header = "VPP Version:," + ",".join(vpp_versions) + '\n' + csv_table.append(header) + + while not data_queue.empty(): + result = data_queue.get() + + anomaly_classifications.extend(result["results"]) + csv_table.extend(result["csv_table"]) + + for item in result["logs"]: + if item[0] == "INFO": + logging.info(item[1]) + elif item[0] == "ERROR": + logging.error(item[1]) + elif item[0] == "DEBUG": + logging.debug(item[1]) + elif item[0] == "CRITICAL": + logging.critical(item[1]) + elif item[0] == "WARNING": + logging.warning(item[1]) + + del data_queue + + # Terminate all workers + for worker in workers: + worker.terminate() + worker.join() + + # Write the tables: + file_name = spec.cpta["output-file"] + "-trending" + with open("{0}.csv".format(file_name), 'w') as file_handler: + file_handler.writelines(csv_table) + + txt_table = None + with open("{0}.csv".format(file_name), 'rb') as csv_file: + csv_content = csv.reader(csv_file, delimiter=',', quotechar='"') + line_nr = 0 + for row in csv_content: + if txt_table is None: + txt_table = prettytable.PrettyTable(row) + else: + if line_nr > 1: + for idx, item in enumerate(row): + try: + row[idx] = str(round(float(item) / 1000000, 2)) + except ValueError: + pass + try: + txt_table.add_row(row) + except Exception as err: + logging.warning("Error occurred while generating TXT table:" + "\n{0}".format(err)) + line_nr += 1 + txt_table.align["Build Number:"] = "l" + with open("{0}.txt".format(file_name), "w") as txt_file: + txt_file.write(str(txt_table)) + + # Evaluate result: + if anomaly_classifications: + result = "PASS" + for classification in anomaly_classifications: + if classification == "regression" or classification == "outlier": + result = "FAIL" + break + else: + result = "FAIL" + + logging.info("Partial results: {0}".format(anomaly_classifications)) + logging.info("Result: {0}".format(result)) + + return result