示例#1
0
    def _enable_event_log(self, master, key_path, path):
        enable_event_log_command = (
            "echo -e 'spark.executor.extraClassPath "
            "/usr/lib/hadoop-mapreduce/hadoop-openstack.jar\n"
            "spark.eventLog.enabled true\n"
            "spark.eventLog.dir "
            "file://%(path)s' > "
            "/opt/spark/conf/spark-defaults.conf" % {
                'path': path
            })

        remote.execute_command(master, key_path, enable_event_log_command)
示例#2
0
    def _hdfs_spark_execution(self, master, remote_hdfs, key_path, args,
                              job_bin_url, main_class, dependencies,
                              spark_applications_ids, expected_time,
                              monitor_plugin, collect_period, number_of_jobs,
                              workers_id, data, connector, swift, swift_logdir,
                              container, number_of_attempts):

        job_exec_id = str(uuid.uuid4())[0:7]
        self._log("%s | Job execution ID: %s" %
                  (time.strftime("%H:%M:%S"), job_exec_id))

        # Defining params
        local_path = '/tmp/spark-jobs/' + job_exec_id + '/'
        # remote_path = 'ubuntu@' + master + ':' + local_path

        job_input_paths, job_output_path, job_params = (hdfs.get_job_params(
            key_path, remote_hdfs, args))

        job_binary_path = hdfs.get_path(job_bin_url)

        # Create temporary job directories
        self._log("%s | Create temporary job directories" %
                  (time.strftime("%H:%M:%S")))
        self._mkdir(local_path)

        # Create cluster directories
        self._log("%s | Creating cluster directories" %
                  (time.strftime("%H:%M:%S")))
        remote.execute_command(master, key_path, 'mkdir -p %s' % local_path)

        # Get job binary from hdfs
        self._log("%s | Get job binary from hdfs" %
                  (time.strftime("%H:%M:%S")))
        remote.copy_from_hdfs(master, key_path, remote_hdfs, job_binary_path,
                              local_path)

        # Enabling event log on cluster
        self._log("%s | Enabling event log on cluster" %
                  (time.strftime("%H:%M:%S")))
        self._enable_event_log(master, key_path, local_path)

        # Submit job
        self._log("%s | Starting job" % (time.strftime("%H:%M:%S")))

        local_binary_file = (
            local_path + remote.list_directory(key_path, master, local_path))

        spark_job = self._submit_job(master, key_path, main_class,
                                     dependencies, local_binary_file, args)

        spark_app_id = spark.get_running_app(master, spark_applications_ids,
                                             number_of_attempts)

        if spark_app_id is None:
            self._log("%s | Error on submission of application, "
                      "please check the config file" %
                      (time.strftime("%H:%M:%S")))

            (output, err) = spark_job.communicate()
            self.stdout.log(output)
            self.stderr.log(err)

            raise ex.ConfigurationError()

        spark_applications_ids.append(spark_app_id)

        info_plugin = {
            "spark_submisson_url": "http://" + master,
            "expected_time": expected_time,
            "number_of_jobs": number_of_jobs
        }

        self._log("%s | Starting monitor" % (time.strftime("%H:%M:%S")))
        monitor.start_monitor(api.monitor_url, spark_app_id, monitor_plugin,
                              info_plugin, collect_period)
        self._log("%s | Starting controller" % (time.strftime("%H:%M:%S")))
        controller.start_controller(api.controller_url, spark_app_id,
                                    workers_id, data)

        (output, err) = spark_job.communicate()

        self._log("%s | Stopping monitor" % (time.strftime("%H:%M:%S")))
        monitor.stop_monitor(api.monitor_url, spark_app_id)
        self._log("%s | Stopping controller" % (time.strftime("%H:%M:%S")))
        controller.stop_controller(api.controller_url, spark_app_id)

        self.stdout.log(output)
        self.stderr.log(err)

        self._log("%s | Copy log from cluster" % (time.strftime("%H:%M:%S")))
        event_log_path = local_path + 'eventlog/'
        self._mkdir(event_log_path)

        remote_event_log_path = 'ubuntu@%s:%s%s' % (master, local_path,
                                                    spark_app_id)

        remote.copy(key_path, remote_event_log_path, event_log_path)

        self._log("%s | Upload log to Swift" % (time.strftime("%H:%M:%S")))
        connector.upload_directory(swift, event_log_path, swift_logdir,
                                   container)

        spark_applications_ids.remove(spark_app_id)

        self.update_application_state("OK")

        return 'OK'
示例#3
0
    def _hdfs_spark_execution(self, master, remote_hdfs, key_path, args,
                              job_bin_url, main_class, dependencies,
                              spark_applications_ids, number_of_attempts):

        job_exec_id = str(uuid.uuid4())[0:7]
        self._log("%s | Job execution ID: %s" %
                  (time.strftime("%H:%M:%S"), job_exec_id))

        # Defining params
        local_path = '/tmp/spark-jobs/' + job_exec_id + '/'

        job_binary_path = hdfs.get_path(job_bin_url)

        # Create temporary job directories
        self._log("%s | Create temporary job directories" %
                  time.strftime("%H:%M:%S"))
        self._mkdir(local_path)

        # Create cluster directories
        self._log("%s | Creating cluster directories" %
                  time.strftime("%H:%M:%S"))
        remote.execute_command(master, key_path, 'mkdir -p %s' % local_path)

        # Get job binary from hdfs
        self._log("%s | Get job binary from hdfs" % time.strftime("%H:%M:%S"))
        remote.copy_from_hdfs(master, key_path, remote_hdfs, job_binary_path,
                              local_path)

        # Enabling event log on cluster
        self._log("%s | Enabling event log on cluster" %
                  time.strftime("%H:%M:%S"))
        self._enable_event_log(master, key_path, local_path)

        # Submit job
        self._log("%s | Starting job" % time.strftime("%H:%M:%S"))

        local_binary_file = (
            local_path + remote.list_directory(key_path, master, local_path))

        spark_job = self._submit_job(master, key_path, main_class,
                                     dependencies, local_binary_file, args)

        spark_app_id = spark.get_running_app(master, spark_applications_ids,
                                             number_of_attempts)

        if spark_app_id is None:
            self._log("%s | Error on submission of application, "
                      "please check the config file" %
                      time.strftime("%H:%M:%S"))

            (output, err) = spark_job.communicate()
            self.stdout.log(output)
            self.stderr.log(err)

            raise ex.ConfigurationError()

        spark_applications_ids.append(spark_app_id)

        (output, err) = spark_job.communicate()

        self.stdout.log(output)
        self.stderr.log(err)

        self._log("%s | Copy log from cluster" % (time.strftime("%H:%M:%S")))
        event_log_path = local_path + 'eventlog/'
        self._mkdir(event_log_path)

        remote_event_log_path = 'ubuntu@%s:%s%s' % (master, local_path,
                                                    spark_app_id)

        remote.copy(key_path, remote_event_log_path, event_log_path)

        spark_applications_ids.remove(spark_app_id)

        self.update_application_state("OK")

        return 'OK'