-# Copyright (c) 2017 Cisco and/or its affiliates.
+# 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:
"""General purpose utilities.
"""
-from os import walk
-from os.path import join
+import multiprocessing
+import subprocess
+import numpy as np
+import logging
+import csv
+import prettytable
+
+from os import walk, makedirs, environ
+from os.path import join, isdir
+from shutil import move, Error
from math import sqrt
+from datetime import datetime
+
+from errors import PresentationError
+from jumpavg.BitCountingClassifier import BitCountingClassifier
def mean(items):
:rtype: float
"""
- return (nr1 - nr2) / nr2 * 100
+ return float(((nr2 - nr1) / nr1) * 100)
def get_files(path, extension=None, full_path=True):
:param path: Path to files.
:param extension: Extension of files to process. If it is the empty string,
- all files will be processed.
+ all files will be processed.
:param full_path: If True, the files with full path are generated.
:type path: str
:type extension: str
return chars[level]
else:
return chars[-1]
+
+
+def execute_command(cmd):
+ """Execute the command in a subprocess and log the stdout and stderr.
+
+ :param cmd: Command to execute.
+ :type cmd: str
+ :returns: Return code of the executed command, stdout and stderr.
+ :rtype: tuple(int, str, str)
+ """
+
+ env = environ.copy()
+ proc = subprocess.Popen(
+ [cmd],
+ stdout=subprocess.PIPE,
+ stderr=subprocess.PIPE,
+ shell=True,
+ env=env)
+
+ stdout, stderr = proc.communicate()
+
+ if stdout:
+ logging.info(stdout)
+ if stderr:
+ logging.info(stderr)
+
+ if proc.returncode != 0:
+ logging.error(" Command execution failed.")
+ return proc.returncode, stdout, stderr
+
+
+def get_last_successful_build_number(jenkins_url, job_name):
+ """Get the number of the last successful build of the given job.
+
+ :param jenkins_url: Jenkins URL.
+ :param job_name: Job name.
+ :type jenkins_url: str
+ :type job_name: str
+ :returns: The build number as a string.
+ :rtype: str
+ """
+
+ url = "{}/{}/lastSuccessfulBuild/buildNumber".format(jenkins_url, job_name)
+ cmd = "wget -qO- {url}".format(url=url)
+
+ return execute_command(cmd)
+
+
+def get_last_completed_build_number(jenkins_url, job_name):
+ """Get the number of the last completed build of the given job.
+
+ :param jenkins_url: Jenkins URL.
+ :param job_name: Job name.
+ :type jenkins_url: str
+ :type job_name: str
+ :returns: The build number as a string.
+ :rtype: str
+ """
+
+ url = "{}/{}/lastCompletedBuild/buildNumber".format(jenkins_url, job_name)
+ cmd = "wget -qO- {url}".format(url=url)
+
+ return execute_command(cmd)
+
+
+def get_build_timestamp(jenkins_url, job_name, build_nr):
+ """Get the timestamp of the build of the given job.
+
+ :param jenkins_url: Jenkins URL.
+ :param job_name: Job name.
+ :param build_nr: Build number.
+ :type jenkins_url: str
+ :type job_name: str
+ :type build_nr: int
+ :returns: The timestamp.
+ :rtype: datetime.datetime
+ """
+
+ url = "{jenkins_url}/{job_name}/{build_nr}".format(jenkins_url=jenkins_url,
+ job_name=job_name,
+ build_nr=build_nr)
+ cmd = "wget -qO- {url}".format(url=url)
+
+ timestamp = execute_command(cmd)
+
+ return datetime.fromtimestamp(timestamp/1000)
+
+
+def archive_input_data(spec):
+ """Archive the report.
+
+ :param spec: Specification read from the specification file.
+ :type spec: Specification
+ :raises PresentationError: If it is not possible to archive the input data.
+ """
+
+ logging.info(" Archiving the input data files ...")
+
+ extension = spec.input["file-format"]
+ data_files = get_files(spec.environment["paths"]["DIR[WORKING,DATA]"],
+ extension=extension)
+ dst = spec.environment["paths"]["DIR[STATIC,ARCH]"]
+ logging.info(" Destination: {0}".format(dst))
+
+ try:
+ if not isdir(dst):
+ makedirs(dst)
+
+ for data_file in data_files:
+ logging.info(" Moving the file: {0} ...".format(data_file))
+ move(data_file, dst)
+
+ except (Error, OSError) as err:
+ raise PresentationError("Not possible to archive the input data.",
+ str(err))
+
+ logging.info(" Done.")
+
+
+def classify_anomalies(data):
+ """Process the data and return anomalies and trending values.
+
+ Gather data into groups with average as trend value.
+ Decorate values within groups to be normal,
+ the first value of changed average as a regression, or a progression.
+
+ :param data: Full data set with unavailable samples replaced by nan.
+ :type data: OrderedDict
+ :returns: Classification and trend values
+ :rtype: 2-tuple, list of strings and list of floats
+ """
+ # Nan mean something went wrong.
+ # Use 0.0 to cause that being reported as a severe regression.
+ bare_data = [0.0 if np.isnan(sample.avg) else sample
+ for _, sample in data.iteritems()]
+ # TODO: Put analogous iterator into jumpavg library.
+ groups = BitCountingClassifier().classify(bare_data)
+ groups.reverse() # Just to use .pop() for FIFO.
+ classification = []
+ avgs = []
+ active_group = None
+ values_left = 0
+ avg = 0.0
+ for _, sample in data.iteritems():
+ if np.isnan(sample.avg):
+ classification.append("outlier")
+ avgs.append(sample.avg)
+ continue
+ if values_left < 1 or active_group is None:
+ values_left = 0
+ while values_left < 1: # Ignore empty groups (should not happen).
+ active_group = groups.pop()
+ values_left = len(active_group.values)
+ avg = active_group.metadata.avg
+ classification.append(active_group.metadata.classification)
+ avgs.append(avg)
+ values_left -= 1
+ continue
+ classification.append("normal")
+ avgs.append(avg)
+ values_left -= 1
+ return classification, avgs
+
+
+def convert_csv_to_pretty_txt(csv_file, txt_file):
+ """Convert the given csv table to pretty text table.
+
+ :param csv_file: The path to the input csv file.
+ :param txt_file: The path to the output pretty text file.
+ :type csv_file: str
+ :type txt_file: str
+ """
+
+ txt_table = None
+ with open(csv_file, 'rb') as csv_file:
+ csv_content = csv.reader(csv_file, delimiter=',', quotechar='"')
+ for row in csv_content:
+ if txt_table is None:
+ txt_table = prettytable.PrettyTable(row)
+ else:
+ txt_table.add_row(row)
+ txt_table.align["Test case"] = "l"
+ if txt_table:
+ with open(txt_file, "w") as txt_file:
+ txt_file.write(str(txt_table))
+
+
+class Worker(multiprocessing.Process):
+ """Worker class used to process tasks in separate parallel processes.
+ """
+
+ def __init__(self, work_queue, data_queue, func):
+ """Initialization.
+
+ :param work_queue: Queue with items to process.
+ :param data_queue: Shared memory between processes. Queue which keeps
+ the result data. This data is then read by the main process and used
+ in further processing.
+ :param func: Function which is executed by the worker.
+ :type work_queue: multiprocessing.JoinableQueue
+ :type data_queue: multiprocessing.Manager().Queue()
+ :type func: Callable object
+ """
+ super(Worker, self).__init__()
+ self._work_queue = work_queue
+ self._data_queue = data_queue
+ self._func = func
+
+ def run(self):
+ """Method representing the process's activity.
+ """
+
+ while True:
+ try:
+ self.process(self._work_queue.get())
+ finally:
+ self._work_queue.task_done()
+
+ def process(self, item_to_process):
+ """Method executed by the runner.
+
+ :param item_to_process: Data to be processed by the function.
+ :type item_to_process: tuple
+ """
+ self._func(self.pid, self._data_queue, *item_to_process)