X-Git-Url: https://gerrit.fd.io/r/gitweb?a=blobdiff_plain;f=resources%2Ftools%2Fpresentation%2Fgenerator_CPTA.py;h=1e7719153fd7b1d3cccb0310fe2201a52bbdff88;hb=dc85b05f17bb6d04b4c6b4126590f28b6014b9a5;hp=69c52d4180f2ae3fe17c8a307ef0f1602b76a056;hpb=c623ad8042127fcb4bbd3c9ffb646f40371b7510;p=csit.git
diff --git a/resources/tools/presentation/generator_CPTA.py b/resources/tools/presentation/generator_CPTA.py
index 69c52d4180..1e7719153f 100644
--- a/resources/tools/presentation/generator_CPTA.py
+++ b/resources/tools/presentation/generator_CPTA.py
@@ -1,4 +1,4 @@
-# Copyright (c) 2018 Cisco and/or its affiliates.
+# Copyright (c) 2019 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:
@@ -14,25 +14,28 @@
"""Generation of Continuous Performance Trending and Analysis.
"""
-import datetime
+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 numpy as np
-import pandas as pd
from collections import OrderedDict
-from utils import find_outliers, archive_input_data, execute_command
+from datetime import datetime
+from copy import deepcopy
+
+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="Generated on {date}" ' \
+ '-D version="{date}" ' \
'{working_dir} ' \
'{build_dir}/'
@@ -41,11 +44,69 @@ THEME_OVERRIDES = """/* override table width restrictions */
.wy-nav-content {
max-width: 1200px !important;
}
+.rst-content blockquote {
+ margin-left: 0px;
+ line-height: 18px;
+ margin-bottom: 0px;
+}
+.wy-menu-vertical a {
+ display: inline-block;
+ line-height: 18px;
+ padding: 0 2em;
+ display: block;
+ position: relative;
+ font-size: 90%;
+ color: #d9d9d9
+}
+.wy-menu-vertical li.current a {
+ color: gray;
+ border-right: solid 1px #c9c9c9;
+ padding: 0 3em;
+}
+.wy-menu-vertical li.toctree-l2.current > a {
+ background: #c9c9c9;
+ padding: 0 3em;
+}
+.wy-menu-vertical li.toctree-l2.current li.toctree-l3 > a {
+ display: block;
+ background: #c9c9c9;
+ padding: 0 4em;
+}
+.wy-menu-vertical li.toctree-l3.current li.toctree-l4 > a {
+ display: block;
+ background: #bdbdbd;
+ padding: 0 5em;
+}
+.wy-menu-vertical li.on a, .wy-menu-vertical li.current > a {
+ color: #404040;
+ padding: 0 2em;
+ font-weight: bold;
+ position: relative;
+ background: #fcfcfc;
+ border: none;
+ border-top-width: medium;
+ border-bottom-width: medium;
+ border-top-style: none;
+ border-bottom-style: none;
+ border-top-color: currentcolor;
+ border-bottom-color: currentcolor;
+ padding-left: 2em -4px;
+}
"""
COLORS = ["SkyBlue", "Olive", "Purple", "Coral", "Indigo", "Pink",
"Chocolate", "Brown", "Magenta", "Cyan", "Orange", "Black",
- "Violet", "Blue", "Yellow"]
+ "Violet", "Blue", "Yellow", "BurlyWood", "CadetBlue", "Crimson",
+ "DarkBlue", "DarkCyan", "DarkGreen", "Green", "GoldenRod",
+ "LightGreen", "LightSeaGreen", "LightSkyBlue", "Maroon",
+ "MediumSeaGreen", "SeaGreen", "LightSlateGrey",
+ "SkyBlue", "Olive", "Purple", "Coral", "Indigo", "Pink",
+ "Chocolate", "Brown", "Magenta", "Cyan", "Orange", "Black",
+ "Violet", "Blue", "Yellow", "BurlyWood", "CadetBlue", "Crimson",
+ "DarkBlue", "DarkCyan", "DarkGreen", "Green", "GoldenRod",
+ "LightGreen", "LightSeaGreen", "LightSkyBlue", "Maroon",
+ "MediumSeaGreen", "SeaGreen", "LightSlateGrey"
+ ]
def generate_cpta(spec, data):
@@ -64,7 +125,7 @@ def generate_cpta(spec, data):
ret_code = _generate_all_charts(spec, data)
cmd = HTML_BUILDER.format(
- date=datetime.date.today().strftime('%d-%b-%Y'),
+ date=datetime.utcnow().strftime('%Y-%m-%d %H:%M UTC'),
working_dir=spec.environment["paths"]["DIR[WORKING,SRC]"],
build_dir=spec.environment["paths"]["DIR[BUILD,HTML]"])
execute_command(cmd)
@@ -84,212 +145,145 @@ def generate_cpta(spec, data):
return ret_code
-def _select_data(in_data, period, fill_missing=False, use_first=False):
- """Select the data from the full data set. The selection is done by picking
- the samples depending on the period: period = 1: All, period = 2: every
- second sample, period = 3: every third sample ...
-
- :param in_data: Full set of data.
- :param period: Sampling period.
- :param fill_missing: If the chosen sample is missing in the full set, its
- nearest neighbour is used.
- :param use_first: Use the first sample even though it is not chosen.
- :type in_data: OrderedDict
- :type period: int
- :type fill_missing: bool
- :type use_first: bool
- :returns: Reduced data.
- :rtype: OrderedDict
- """
-
- first_idx = min(in_data.keys())
- last_idx = max(in_data.keys())
-
- idx = last_idx
- data_dict = dict()
- if use_first:
- data_dict[first_idx] = in_data[first_idx]
- while idx >= first_idx:
- data = in_data.get(idx, None)
- if data is None:
- if fill_missing:
- threshold = int(round(idx - period / 2)) + 1 - period % 2
- idx_low = first_idx if threshold < first_idx else threshold
- threshold = int(round(idx + period / 2))
- idx_high = last_idx if threshold > last_idx else threshold
-
- flag_l = True
- flag_h = True
- idx_lst = list()
- inc = 1
- while flag_l or flag_h:
- if idx + inc > idx_high:
- flag_h = False
- else:
- idx_lst.append(idx + inc)
- if idx - inc < idx_low:
- flag_l = False
- else:
- idx_lst.append(idx - inc)
- inc += 1
-
- for i in idx_lst:
- if i in in_data.keys():
- data_dict[i] = in_data[i]
- break
- else:
- data_dict[idx] = data
- idx -= period
-
- return OrderedDict(sorted(data_dict.items(), key=lambda t: t[0]))
-
-
-def _evaluate_results(in_data, trimmed_data, window=10):
- """Evaluates if the sample value is regress, normal or progress compared to
- previous data within the window.
- We use the intervals defined as:
- - regress: less than median - 3 * stdev
- - normal: between median - 3 * stdev and median + 3 * stdev
- - progress: more than median + 3 * stdev
-
- :param in_data: Full data set.
- :param trimmed_data: Full data set without the outliers.
- :param window: Window size used to calculate moving median and moving stdev.
- :type in_data: pandas.Series
- :type trimmed_data: pandas.Series
- :type window: int
- :returns: Evaluated results.
- :rtype: list
- """
-
- if len(in_data) > 2:
- win_size = in_data.size if in_data.size < window else window
- results = [0.0, ] * win_size
- median = in_data.rolling(window=win_size).median()
- stdev_t = trimmed_data.rolling(window=win_size, min_periods=2).std()
- m_vals = median.values
- s_vals = stdev_t.values
- d_vals = in_data.values
- for day in range(win_size, in_data.size):
- if np.isnan(m_vals[day - 1]) or np.isnan(s_vals[day - 1]):
- results.append(0.0)
- elif d_vals[day] < (m_vals[day - 1] - 3 * s_vals[day - 1]):
- results.append(0.33)
- elif (m_vals[day - 1] - 3 * s_vals[day - 1]) <= d_vals[day] <= \
- (m_vals[day - 1] + 3 * s_vals[day - 1]):
- results.append(0.66)
- else:
- results.append(1.0)
- else:
- results = [0.0, ]
- try:
- median = np.median(in_data)
- stdev = np.std(in_data)
- if in_data.values[-1] < (median - 3 * stdev):
- results.append(0.33)
- elif (median - 3 * stdev) <= in_data.values[-1] <= (
- median + 3 * stdev):
- results.append(0.66)
- else:
- results.append(1.0)
- except TypeError:
- results.append(None)
- return results
-
-
-def _generate_trending_traces(in_data, period, moving_win_size=10,
- fill_missing=True, use_first=False,
- show_moving_median=True, name="", color=""):
+def _generate_trending_traces(in_data, job_name, build_info,
+ show_trend_line=True, name="", color=""):
"""Generate the trending traces:
- samples,
- - moving median (trending plot)
- outliers, regress, progress
+ - average of normal samples (trending line)
:param in_data: Full data set.
- :param period: Sampling period.
- :param moving_win_size: Window size.
- :param fill_missing: If the chosen sample is missing in the full set, its
- nearest neighbour is used.
- :param use_first: Use the first sample even though it is not chosen.
- :param show_moving_median: Show moving median (trending plot).
+ :param job_name: The name of job which generated the data.
+ :param build_info: Information about the builds.
+ :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 period: int
- :type moving_win_size: int
- :type fill_missing: bool
- :type use_first: bool
- :type show_moving_median: bool
+ :type job_name: str
+ :type build_info: dict
+ :type show_trend_line: bool
:type name: str
:type color: str
- :returns: Generated traces (list) and the evaluated result (float).
+ :returns: Generated traces (list) and the evaluated result.
:rtype: tuple(traces, result)
"""
- if period > 1:
- in_data = _select_data(in_data, period,
- fill_missing=fill_missing,
- use_first=use_first)
-
- data_x = [key for key in in_data.keys()]
- data_y = [val for val in in_data.values()]
- data_pd = pd.Series(data_y, index=data_x)
-
- t_data, outliers = find_outliers(data_pd)
-
- results = _evaluate_results(data_pd, t_data, window=moving_win_size)
-
- anomalies = pd.Series()
- anomalies_res = list()
- for idx, item in enumerate(in_data.items()):
- item_pd = pd.Series([item[1], ], index=[item[0], ])
- if item[0] in outliers.keys():
- anomalies = anomalies.append(item_pd)
- anomalies_res.append(0.0)
- elif results[idx] in (0.33, 1.0):
- anomalies = anomalies.append(item_pd)
- anomalies_res.append(results[idx])
- anomalies_res.extend([0.0, 0.33, 0.66, 1.0])
+ data_x = list(in_data.keys())
+ data_y = list(in_data.values())
+
+ hover_text = list()
+ xaxis = list()
+ for idx in data_x:
+ date = build_info[job_name][str(idx)][0]
+ hover_str = ("date: {date}
"
+ "value: {value:,}
"
+ "{sut}-ref: {build}
"
+ "csit-ref: mrr-{period}-build-{build_nr}
"
+ "testbed: {testbed}")
+ if "dpdk" in job_name:
+ hover_text.append(hover_str.format(
+ date=date,
+ value=int(in_data[idx].avg),
+ sut="dpdk",
+ build=build_info[job_name][str(idx)][1].rsplit('~', 1)[0],
+ period="weekly",
+ build_nr=idx,
+ testbed=build_info[job_name][str(idx)][2]))
+ elif "vpp" in job_name:
+ hover_text.append(hover_str.format(
+ date=date,
+ value=int(in_data[idx].avg),
+ sut="vpp",
+ build=build_info[job_name][str(idx)][1].rsplit('~', 1)[0],
+ period="daily",
+ build_nr=idx,
+ testbed=build_info[job_name][str(idx)][2]))
+
+ xaxis.append(datetime(int(date[0:4]), int(date[4:6]), int(date[6:8]),
+ int(date[9:11]), int(date[12:])))
+
+ data_pd = OrderedDict()
+ for key, value in zip(xaxis, data_y):
+ data_pd[key] = value
+
+ anomaly_classification, avgs = classify_anomalies(data_pd)
+
+ anomalies = OrderedDict()
+ anomalies_colors = list()
+ anomalies_avgs = list()
+ anomaly_color = {
+ "regression": 0.0,
+ "normal": 0.5,
+ "progression": 1.0
+ }
+ if anomaly_classification:
+ for idx, (key, value) in enumerate(data_pd.iteritems()):
+ if anomaly_classification[idx] in \
+ ("outlier", "regression", "progression"):
+ anomalies[key] = value
+ anomalies_colors.append(
+ anomaly_color[anomaly_classification[idx]])
+ anomalies_avgs.append(avgs[idx])
+ anomalies_colors.extend([0.0, 0.5, 1.0])
# Create traces
- color_scale = [[0.00, "grey"],
- [0.25, "grey"],
- [0.25, "red"],
- [0.50, "red"],
- [0.50, "white"],
- [0.75, "white"],
- [0.75, "green"],
- [1.00, "green"]]
trace_samples = plgo.Scatter(
- x=data_x,
- y=data_y,
+ x=xaxis,
+ y=[y.avg for y in data_y],
mode='markers',
line={
"width": 1
},
- name="{name}-thput".format(name=name),
+ showlegend=True,
+ legendgroup=name,
+ name="{name}".format(name=name),
marker={
"size": 5,
"color": color,
"symbol": "circle",
},
+ text=hover_text,
+ hoverinfo="text"
)
traces = [trace_samples, ]
+ if show_trend_line:
+ trace_trend = plgo.Scatter(
+ x=xaxis,
+ y=avgs,
+ mode='lines',
+ line={
+ "shape": "linear",
+ "width": 1,
+ "color": color,
+ },
+ showlegend=False,
+ legendgroup=name,
+ name='{name}'.format(name=name),
+ text=["trend: {0:,}".format(int(avg)) for avg in avgs],
+ hoverinfo="text+name"
+ )
+ traces.append(trace_trend)
+
trace_anomalies = plgo.Scatter(
x=anomalies.keys(),
- y=anomalies.values,
+ y=anomalies_avgs,
mode='markers',
hoverinfo="none",
showlegend=False,
legendgroup=name,
- name="{name}: outliers".format(name=name),
+ name="{name}-anomalies".format(name=name),
marker={
"size": 15,
"symbol": "circle-open",
- "color": anomalies_res,
- "colorscale": color_scale,
+ "color": anomalies_colors,
+ "colorscale": [[0.00, "red"],
+ [0.33, "red"],
+ [0.33, "white"],
+ [0.66, "white"],
+ [0.66, "green"],
+ [1.00, "green"]],
"showscale": True,
"line": {
"width": 2
@@ -303,8 +297,8 @@ def _generate_trending_traces(in_data, period, moving_win_size=10,
"size": 14
},
"tickmode": 'array',
- "tickvals": [0.125, 0.375, 0.625, 0.875],
- "ticktext": ["Outlier", "Regression", "Normal", "Progression"],
+ "tickvals": [0.167, 0.500, 0.833],
+ "ticktext": ["Regression", "Normal", "Progression"],
"ticks": "",
"ticklen": 0,
"tickangle": -90,
@@ -314,43 +308,10 @@ def _generate_trending_traces(in_data, period, moving_win_size=10,
)
traces.append(trace_anomalies)
- if show_moving_median:
- data_mean_y = pd.Series(data_y).rolling(
- window=moving_win_size, min_periods=2).median()
- trace_median = plgo.Scatter(
- x=data_x,
- y=data_mean_y,
- mode='lines',
- line={
- "shape": "spline",
- "width": 1,
- "color": color,
- },
- name='{name}-trend'.format(name=name)
- )
- traces.append(trace_median)
-
- return traces, results[-1]
-
-
-def _generate_chart(traces, layout, file_name):
- """Generates the whole chart using pre-generated traces.
-
- :param traces: Traces for the chart.
- :param layout: Layout of the chart.
- :param file_name: File name for the generated chart.
- :type traces: list
- :type layout: dict
- :type file_name: str
- """
-
- # Create plot
- logging.info(" Writing the file '{0}' ...".format(file_name))
- plpl = plgo.Figure(data=traces, layout=layout)
- try:
- ploff.plot(plpl, show_link=False, auto_open=False, filename=file_name)
- except plerr.PlotlyEmptyDataError:
- logging.warning(" No data for the plot. Skipped.")
+ if anomaly_classification:
+ return traces, anomaly_classification[-1]
+ else:
+ return traces, None
def _generate_all_charts(spec, input_data):
@@ -362,115 +323,318 @@ def _generate_all_charts(spec, input_data):
:type input_data: InputData
"""
- csv_table = list()
- # Create the header:
- builds = spec.cpta["data"].values()[0]
- builds_lst = [str(build) for build in range(builds[0], builds[-1] + 1)]
- header = "Build Number:," + ",".join(builds_lst) + '\n'
- csv_table.append(header)
+ def _generate_chart(_, data_q, graph):
+ """Generates the chart.
+ """
+
+ logs = list()
- results = list()
- for chart in spec.cpta["plots"]:
logging.info(" Generating the chart '{0}' ...".
- format(chart.get("title", "")))
+ format(graph.get("title", "")))
+ logs.append(("INFO", " Generating the chart '{0}' ...".
+ format(graph.get("title", ""))))
+
+ job_name = graph["data"].keys()[0]
+
+ csv_tbl = list()
+ res = list()
# Transform the data
- data = input_data.filter_data(chart, continue_on_error=True)
+ 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 idx, build in job.items():
- for test_name, test in build.items():
+ chart_tags = dict()
+ for job, job_data in data.iteritems():
+ if job != job_name:
+ continue
+ for index, bld in job_data.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(idx)] = \
- test["result"]["throughput"]
+ chart_data[test_name][int(index)] = \
+ test["result"]["receive-rate"]
+ chart_tags[test_name] = test.get("tags", None)
except (KeyError, TypeError):
pass
# Add items to the csv table:
for tst_name, tst_data in chart_data.items():
tst_lst = list()
- for build in builds_lst:
- item = tst_data.get(int(build), '')
- tst_lst.append(str(item) if item else '')
- csv_table.append("{0},".format(tst_name) + ",".join(tst_lst) + '\n')
-
- for period in chart["periods"]:
- # Generate traces:
- traces = list()
- win_size = 10 if period == 1 else 5 if period < 20 else 3
- idx = 0
+ for bld in builds_dict[job_name]:
+ itm = tst_data.get(int(bld), '')
+ if not isinstance(itm, str):
+ itm = itm.avg
+ tst_lst.append(str(itm))
+ csv_tbl.append("{0},".format(tst_name) + ",".join(tst_lst) + '\n')
+
+ # Generate traces:
+ traces = list()
+ index = 0
+ groups = graph.get("groups", None)
+ visibility = list()
+
+ if groups:
+ for group in groups:
+ visible = list()
+ for tag in group:
+ 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
+ if tag in chart_tags[test_name]:
+ message = "index: {index}, test: {test}".format(
+ index=index, test=test_name)
+ test_name = test_name.split('.')[-1]
+ try:
+ trace, rslt = _generate_trending_traces(
+ test_data,
+ job_name=job_name,
+ build_info=build_info,
+ name='-'.join(test_name.split('-')[2:-1]),
+ color=COLORS[index])
+ except IndexError:
+ message = "Out of colors: {}".format(message)
+ logs.append(("ERROR", message))
+ logging.error(message)
+ index += 1
+ continue
+ traces.extend(trace)
+ visible.extend([True for _ in range(len(trace))])
+ res.append(rslt)
+ index += 1
+ break
+ visibility.append(visible)
+ else:
for test_name, test_data in chart_data.items():
if not test_data:
- logging.warning("No data for the test '{0}'".
- format(test_name))
+ logs.append(("WARNING", "No data for the test '{0}'".
+ format(test_name)))
continue
+ message = "index: {index}, test: {test}".format(
+ index=index, test=test_name)
test_name = test_name.split('.')[-1]
- trace, result = _generate_trending_traces(
- test_data,
- period=period,
- moving_win_size=win_size,
- fill_missing=True,
- use_first=False,
- name='-'.join(test_name.split('-')[3:-1]),
- color=COLORS[idx])
+ try:
+ trace, rslt = _generate_trending_traces(
+ test_data,
+ job_name=job_name,
+ build_info=build_info,
+ name='-'.join(test_name.split('-')[2:-1]),
+ color=COLORS[index])
+ except IndexError:
+ message = "Out of colors: {}".format(message)
+ logs.append(("ERROR", message))
+ logging.error(message)
+ index += 1
+ continue
traces.extend(trace)
- results.append(result)
- idx += 1
+ res.append(rslt)
+ index += 1
+ if traces:
# Generate the chart:
- _generate_chart(traces,
- chart["layout"],
- file_name="{0}-{1}-{2}{3}".format(
- spec.cpta["output-file"],
- chart["output-file-name"],
- period,
- spec.cpta["output-file-type"]))
+ try:
+ layout = deepcopy(graph["layout"])
+ except KeyError as err:
+ logging.error("Finished with error: No layout defined")
+ logging.error(repr(err))
+ return
+ if groups:
+ show = list()
+ for i in range(len(visibility)):
+ visible = list()
+ for r in range(len(visibility)):
+ for _ in range(len(visibility[r])):
+ visible.append(i == r)
+ show.append(visible)
+
+ buttons = list()
+ buttons.append(dict(
+ label="All",
+ method="update",
+ args=[{"visible": [True for _ in range(len(show[0]))]}, ]
+ ))
+ for i in range(len(groups)):
+ try:
+ label = graph["group-names"][i]
+ except (IndexError, KeyError):
+ label = "Group {num}".format(num=i + 1)
+ buttons.append(dict(
+ label=label,
+ method="update",
+ args=[{"visible": show[i]}, ]
+ ))
+
+ layout['updatemenus'] = list([
+ dict(
+ active=0,
+ type="dropdown",
+ direction="down",
+ xanchor="left",
+ yanchor="bottom",
+ x=-0.12,
+ y=1.0,
+ buttons=buttons
+ )
+ ])
+
+ 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=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 = {
+ "job_name": job_name,
+ "csv_table": csv_tbl,
+ "results": res,
+ "logs": logs
+ }
+ data_q.put(data_out)
+
+ builds_dict = dict()
+ for job in spec.input["builds"].keys():
+ if builds_dict.get(job, None) is None:
+ builds_dict[job] = list()
+ for build in spec.input["builds"][job]:
+ status = build["status"]
+ if status != "failed" and status != "not found" and \
+ status != "removed":
+ builds_dict[job].append(str(build["build"]))
+
+ # Create "build ID": "date" dict:
+ build_info = dict()
+ tb_tbl = spec.environment.get("testbeds", None)
+ for job_name, job_data in builds_dict.items():
+ if build_info.get(job_name, None) is None:
+ build_info[job_name] = OrderedDict()
+ for build in job_data:
+ testbed = ""
+ tb_ip = input_data.metadata(job_name, build).get("testbed", "")
+ if tb_ip and tb_tbl:
+ testbed = tb_tbl.get(tb_ip, "")
+ build_info[job_name][build] = (
+ input_data.metadata(job_name, build).get("generated", ""),
+ input_data.metadata(job_name, build).get("version", ""),
+ testbed
+ )
+
+ 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()
- logging.info(" Done.")
+ # Create the header:
+ csv_tables = dict()
+ for job_name in builds_dict.keys():
+ if csv_tables.get(job_name, None) is None:
+ csv_tables[job_name] = list()
+ header = "Build Number:," + ",".join(builds_dict[job_name]) + '\n'
+ csv_tables[job_name].append(header)
+ build_dates = [x[0] for x in build_info[job_name].values()]
+ header = "Build Date:," + ",".join(build_dates) + '\n'
+ csv_tables[job_name].append(header)
+ versions = [x[1] for x in build_info[job_name].values()]
+ header = "Version:," + ",".join(versions) + '\n'
+ csv_tables[job_name].append(header)
+
+ while not data_queue.empty():
+ result = data_queue.get()
+
+ anomaly_classifications.extend(result["results"])
+ csv_tables[result["job_name"]].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='"')
- header = True
- for row in csv_content:
- if txt_table is None:
- txt_table = prettytable.PrettyTable(row)
- header = False
- else:
- if not header:
- for idx, item in enumerate(row):
- try:
- row[idx] = str(round(float(item) / 1000000, 2))
- except ValueError:
- pass
- txt_table.add_row(row)
- txt_table.align["Build Number:"] = "l"
- with open("{0}.txt".format(file_name), "w") as txt_file:
- txt_file.write(str(txt_table))
+ for job_name, csv_table in csv_tables.items():
+ file_name = spec.cpta["output-file"] + "-" + job_name + "-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:
- result = "PASS"
- for item in results:
- if item is None:
- result = "FAIL"
- break
- if item == 0.66 and result == "PASS":
- result = "PASS"
- elif item == 0.33 or item == 0.0:
- result = "FAIL"
-
- logging.info("Partial results: {0}".format(results))
+ 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