Configuration

All configuration can be done by adding configuration files.

Supported config parsers:

  • cfg (default), based on Python’s standard ConfigParser. Values may refer to environment variables using ${ENVVAR} syntax.

  • toml

You can choose right parser via LUIGI_CONFIG_PARSER environment variable. For example, LUIGI_CONFIG_PARSER=toml.

Default (cfg) parser are looked for in:

  • /etc/luigi/client.cfg (deprecated)

  • /etc/luigi/luigi.cfg

  • client.cfg (deprecated)

  • luigi.cfg

  • LUIGI_CONFIG_PATH environment variable

TOML parser are looked for in:

  • /etc/luigi/luigi.toml

  • luigi.toml

  • LUIGI_CONFIG_PATH environment variable

Both config lists increase in priority (from low to high). The order only matters in case of key conflicts (see docs for ConfigParser.read). These files are meant for both the client and luigid. If you decide to specify your own configuration you should make sure that both the client and luigid load it properly.

The config file is broken into sections, each controlling a different part of the config.

Example cfg config:

[hadoop]
version=cdh4
streaming_jar=/usr/lib/hadoop-xyz/hadoop-streaming-xyz-123.jar

[core]
scheduler_host=luigi-host.mycompany.foo

Example toml config:

[hadoop]
version = "cdh4"
streaming_jar = "/usr/lib/hadoop-xyz/hadoop-streaming-xyz-123.jar"

[core]
scheduler_host = "luigi-host.mycompany.foo"

Also see examples/config.toml for more complex example.

Parameters from config Ingestion

All parameters can be overridden from configuration files. For instance if you have a Task definition:

class DailyReport(luigi.contrib.hadoop.JobTask):
    date = luigi.DateParameter(default=datetime.date.today())
    # ...

Then you can override the default value for DailyReport().date by providing it in the configuration:

[DailyReport]
date=2012-01-01

Configuration classes

Using the Parameters from config Ingestion method, we derive the conventional way to do global configuration. Imagine this configuration.

[mysection]
option=hello
intoption=123

We can create a Config class:

import luigi

# Config classes should be camel cased
class mysection(luigi.Config):
    option = luigi.Parameter(default='world')
    intoption = luigi.IntParameter(default=555)

mysection().option
mysection().intoption

Configurable options

Luigi comes with a lot of configurable options. Below, we describe each section and the parameters available within it.

[core]

These parameters control core Luigi behavior, such as error e-mails and interactions between the worker and scheduler.

autoload_range

New in version 2.8.11.

If false, prevents range tasks from autoloading. They can still be loaded using --module luigi.tools.range. Defaults to true. Setting this to true explicitly disables the deprecation warning.

default_scheduler_host

Hostname of the machine running the scheduler. Defaults to localhost.

default_scheduler_port

Port of the remote scheduler api process. Defaults to 8082.

default_scheduler_url

Full path to remote scheduler. Defaults to http://localhost:8082/. For TLS support use the URL scheme: https, example: https://luigi.example.com:443/ (Note: you will have to terminate TLS using an HTTP proxy) You can also use this to connect to a local Unix socket using the non-standard URI scheme: http+unix example: http+unix://%2Fvar%2Frun%2Fluigid%2Fluigid.sock/

hdfs_tmp_dir

Base directory in which to store temporary files on hdfs. Defaults to tempfile.gettempdir()

history_filename

If set, specifies a filename for Luigi to write stuff (currently just job id) to in mapreduce job’s output directory. Useful in a configuration where no history is stored in the output directory by Hadoop.

log_level

The default log level to use when no logging_conf_file is set. Must be a valid name of a Python log level. Default is DEBUG.

logging_conf_file

Location of the logging configuration file.

no_configure_logging

If true, logging is not configured. Defaults to false.

parallel_scheduling

If true, the scheduler will compute complete functions of tasks in parallel using multiprocessing. This can significantly speed up scheduling, but requires that all tasks can be pickled. Defaults to false.

parallel_scheduling_processes

The number of processes to use for parallel scheduling. If not specified the default number of processes will be the total number of CPUs available.

rpc_connect_timeout

Number of seconds to wait before timing out when making an API call. Defaults to 10.0

rpc_retry_attempts

The maximum number of retries to connect the central scheduler before giving up. Defaults to 3

rpc_retry_wait

Number of seconds to wait before the next attempt will be started to connect to the central scheduler between two retry attempts. Defaults to 30

[cors]

New in version 2.8.0.

These parameters control /api/<method> CORS behaviour (see: W3C Cross-Origin Resource Sharing).

enabled

Enables CORS support. Defaults to false.

allowed_origins

A list of allowed origins. Used only if allow_any_origin is false. Configure in JSON array format, e.g. [“foo”, “bar”]. Defaults to empty.

allow_any_origin

Accepts requests from any origin. Defaults to false.

allow_null_origin

Allows the request to set null value of the Origin header. Defaults to false.

max_age

Content of Access-Control-Max-Age. Defaults to 86400 (24 hours).

allowed_methods

Content of Access-Control-Allow-Methods. Defaults to GET, OPTIONS.

allowed_headers

Content of Access-Control-Allow-Headers. Defaults to Accept, Content-Type, Origin.

exposed_headers

Content of Access-Control-Expose-Headers. Defaults to empty string (will NOT be sent as a response header).

allow_credentials

Indicates that the actual request can include user credentials. Defaults to false.

[worker]

These parameters control Luigi worker behavior.

count_uniques

If true, workers will only count unique pending jobs when deciding whether to stay alive. So if a worker can’t get a job to run and other workers are waiting on all of its pending jobs, the worker will die. worker_keep_alive must be true for this to have any effect. Defaults to false.

keep_alive

If true, workers will stay alive when they run out of jobs to run, as long as they have some pending job waiting to be run. Defaults to false.

ping_interval

Number of seconds to wait between pinging scheduler to let it know that the worker is still alive. Defaults to 1.0.

task_limit

New in version 1.0.25.

Maximum number of tasks to schedule per invocation. Upon exceeding it, the worker will issue a warning and proceed with the workflow obtained thus far. Prevents incidents due to spamming of the scheduler, usually accidental. Default: no limit.

timeout

New in version 1.0.20.

Number of seconds after which to kill a task which has been running for too long. This provides a default value for all tasks, which can be overridden by setting the worker_timeout property in any task. Default value is 0, meaning no timeout.

wait_interval

Number of seconds for the worker to wait before asking the scheduler for another job after the scheduler has said that it does not have any available jobs.

wait_jitter

Duration of jitter to add to the worker wait interval such that the multiple workers do not ask the scheduler for another job at the same time, in seconds. Default: 5.0

max_keep_alive_idle_duration

New in version 2.8.4.

Maximum duration in seconds to keep worker alive while in idle state. Default: 0 (Indefinitely)

max_reschedules

The maximum number of times that a job can be automatically rescheduled by a worker before it will stop trying. Workers will reschedule a job if it is found to not be done when attempting to run a dependent job. This defaults to 1.

retry_external_tasks

If true, incomplete external tasks (i.e. tasks where the run() method is NotImplemented) will be retested for completion while Luigi is running. This means that if external dependencies are satisfied after a workflow has started, any tasks dependent on that resource will be eligible for running. Note: Every time the task remains incomplete, it will count as FAILED, so normal retry logic applies (see: retry_count and retry_delay). This setting works best with worker_keep_alive: true. If false, external tasks will only be evaluated when Luigi is first invoked. In this case, Luigi will not check whether external dependencies are satisfied while a workflow is in progress, so dependent tasks will remain PENDING until the workflow is reinvoked. Defaults to false for backwards compatibility.

no_install_shutdown_handler

By default, workers will stop requesting new work and finish running pending tasks after receiving a SIGUSR1 signal. This provides a hook for gracefully shutting down workers that are in the process of running (potentially expensive) tasks. If set to true, Luigi will NOT install this shutdown hook on workers. Note this hook does not work on Windows operating systems, or when jobs are launched outside the main execution thread. Defaults to false.

send_failure_email

Controls whether the worker will send e-mails on task and scheduling failures. If set to false, workers will only send e-mails on framework errors during scheduling and all other e-mail must be handled by the scheduler. Defaults to true.

check_unfulfilled_deps

If true, the worker checks for completeness of dependencies before running a task. In case unfulfilled dependencies are detected, an exception is raised and the task will not run. This mechanism is useful to detect situations where tasks do not create their outputs properly, or when targets were removed after the dependency tree was built. It is recommended to disable this feature only when the completeness checks are known to be bottlenecks, e.g. when the exists() calls of the dependencies’ outputs are resource-intensive. Defaults to true.

force_multiprocessing

By default, luigi uses multiprocessing when more than one worker process is requested. When set to true, multiprocessing is used independent of the number of workers. Defaults to false.

check_complete_on_run

By default, luigi tasks are marked as ‘done’ when they finish running without raising an error. When set to true, tasks will also verify that their outputs exist when they finish running, and will fail immediately if the outputs are missing. Defaults to false.

cache_task_completion

By default, luigi task processes might check the completion status multiple times per task which is a safe way to avoid potential inconsistencies. For tasks with many dynamic dependencies, yielded in multiple stages, this might become expensive, e.g. in case the per-task completion check entails remote resources. When set to true, completion checks are cached so that tasks declared as complete once are not checked again. Defaults to false.

[elasticsearch]

These parameters control use of elasticsearch

marker_index

Defaults to “update_log”.

marker_doc_type

Defaults to “entry”.

[email]

General parameters

force_send

If true, e-mails are sent in all run configurations (even if stdout is connected to a tty device). Defaults to False.

format

Type of e-mail to send. Valid values are “plain”, “html” and “none”. When set to html, tracebacks are wrapped in <pre> tags to get fixed- width font. When set to none, no e-mails will be sent.

Default value is plain.

method

Valid values are “smtp”, “sendgrid”, “ses” and “sns”. SES and SNS are services of Amazon web services. SendGrid is an email delivery service. The default value is “smtp”.

In order to send messages through Amazon SNS or SES set up your AWS config files or run Luigi on an EC2 instance with proper instance profile.

In order to use sendgrid, fill in your sendgrid API key in the [sendgrid] section.

In order to use smtp, fill in the appropriate fields in the [smtp] section.

prefix

Optional prefix to add to the subject line of all e-mails. For example, setting this to “[LUIGI]” would change the subject line of an e-mail from “Luigi: Framework error” to “[LUIGI] Luigi: Framework error”

receiver

Recipient of all error e-mails. If this is not set, no error e-mails are sent when Luigi crashes unless the crashed job has owners set. If Luigi is run from the command line, no e-mails will be sent unless output is redirected to a file.

Set it to SNS Topic ARN if you want to receive notifications through Amazon SNS. Make sure to set method to sns in this case too.

sender

User name in from field of error e-mails. Default value: luigi-client@<server_name>

traceback_max_length

Maximum length for traceback included in error email. Default is 5000.

[batch_notifier]

Parameters controlling the contents of batch notifications sent from the scheduler

email_interval_minutes

Number of minutes between e-mail sends. Making this larger results in fewer, bigger e-mails. Defaults to 60.

batch_mode

Controls how tasks are grouped together in the e-mail. Suppose we have the following sequence of failures:

  1. TaskA(a=1, b=1)

  2. TaskA(a=1, b=1)

  3. TaskA(a=2, b=1)

  4. TaskA(a=1, b=2)

  5. TaskB(a=1, b=1)

For any setting of batch_mode, the batch e-mail will record 5 failures and mention them in the subject. The difference is in how they will be displayed in the body. Here are example bodies with error_messages set to 0.

“all” only groups together failures for the exact same task:

  • TaskA(a=1, b=1) (2 failures)

  • TaskA(a=1, b=2) (1 failure)

  • TaskA(a=2, b=1) (1 failure)

  • TaskB(a=1, b=1) (1 failure)

“family” groups together failures for tasks of the same family:

  • TaskA (4 failures)

  • TaskB (1 failure)

“unbatched_params” groups together tasks that look the same after removing batched parameters. So if TaskA has a batch_method set for parameter a, we get the following:

  • TaskA(b=1) (3 failures)

  • TaskA(b=2) (1 failure)

  • TaskB(a=1, b=2) (1 failure)

Defaults to “unbatched_params”, which is identical to “all” if you are not using batched parameters.

error_lines

Number of lines to include from each error message in the batch e-mail. This can be used to keep e-mails shorter while preserving the more useful information usually found near the bottom of stack traces. This can be set to 0 to include all lines. If you don’t wish to see error messages, instead set error_messages to 0. Defaults to 20.

error_messages

Number of messages to preserve for each task group. As most tasks that fail repeatedly do so for similar reasons each time, it’s not usually necessary to keep every message. This controls how many messages are kept for each task or task group. The most recent error messages are kept. Set to 0 to not include error messages in the e-mails. Defaults to 1.

group_by_error_messages

Quite often, a system or cluster failure will cause many disparate task types to fail for the same reason. This can cause a lot of noise in the batch e-mails. This cuts down on the noise by listing items with identical error messages together. Error messages are compared after limiting by error_lines. Defaults to true.

[hadoop]

Parameters controlling basic hadoop tasks

command

Name of command for running hadoop from the command line. Defaults to “hadoop”

python_executable

Name of command for running python from the command line. Defaults to “python”

scheduler

Type of scheduler to use when scheduling hadoop jobs. Can be “fair” or “capacity”. Defaults to “fair”.

streaming_jar

Path to your streaming jar. Must be specified to run streaming jobs.

version

Version of hadoop used in your cluster. Can be “cdh3”, “chd4”, or “apache1”. Defaults to “cdh4”.

[hdfs]

Parameters controlling the use of snakebite to speed up hdfs queries.

client

Client to use for most hadoop commands. Options are “snakebite”, “snakebite_with_hadoopcli_fallback”, “webhdfs” and “hadoopcli”. Snakebite is much faster, so use of it is encouraged. webhdfs is fast and works with Python 3 as well, but has not been used that much in the wild. Both snakebite and webhdfs requires you to install it separately on the machine. Defaults to “hadoopcli”.

client_version

Optionally specifies hadoop client version for snakebite.

effective_user

Optionally specifies the effective user for snakebite.

namenode_host

The hostname of the namenode. Needed for snakebite if snakebite_autoconfig is not set.

namenode_port

The port used by snakebite on the namenode. Needed for snakebite if snakebite_autoconfig is not set.

snakebite_autoconfig

If true, attempts to automatically detect the host and port of the namenode for snakebite queries. Defaults to false.

tmp_dir

Path to where Luigi will put temporary files on hdfs

[hive]

Parameters controlling hive tasks

command

Name of the command used to run hive on the command line. Defaults to “hive”.

hiverc_location

Optional path to hive rc file.

metastore_host

Hostname for metastore.

metastore_port

Port for hive to connect to metastore host.

release

If set to “apache”, uses a hive client that better handles apache hive output. All other values use the standard client Defaults to “cdh4”.

[kubernetes]

Parameters controlling Kubernetes Job Tasks

auth_method

Authorization method to access the cluster. Options are “kubeconfig” or “service-account

kubeconfig_path

Path to kubeconfig file, for cluster authentication. It defaults to ~/.kube/config, which is the default location when using minikube. When auth_method is “service-account” this property is ignored.

max_retrials

Maximum number of retrials in case of job failure.

[mysql]

Parameters controlling use of MySQL targets

marker_table

Table in which to store status of table updates. This table will be created if it doesn’t already exist. Defaults to “table_updates”.

[postgres]

Parameters controlling the use of Postgres targets

local_tmp_dir

Directory in which to temporarily store data before writing to postgres. Uses system default if not specified.

marker_table

Table in which to store status of table updates. This table will be created if it doesn’t already exist. Defaults to “table_updates”.

[redshift]

Parameters controlling the use of Redshift targets

marker_table

Table in which to store status of table updates. This table will be created if it doesn’t already exist. Defaults to “table_updates”.

[resources]

This section can contain arbitrary keys. Each of these specifies the amount of a global resource that the scheduler can allow workers to use. The scheduler will prevent running jobs with resources specified from exceeding the counts in this section. Unspecified resources are assumed to have limit 1. Example resources section for a configuration with 2 hive resources and 1 mysql resource:

[resources]
hive=2
mysql=1

Note that it was not necessary to specify the 1 for mysql here, but it is good practice to do so when you have a fixed set of resources.

[retcode]

Configure return codes for the Luigi binary. In the case of multiple return codes that could apply, for example a failing task and missing data, the numerically greatest return code is returned.

We recommend that you copy this set of exit codes to your luigi.cfg file:

[retcode]
# The following return codes are the recommended exit codes for Luigi
# They are in increasing level of severity (for most applications)
already_running=10
missing_data=20
not_run=25
task_failed=30
scheduling_error=35
unhandled_exception=40
already_running

This can happen in two different cases. Either the local lock file was taken at the time the invocation starts up. Or, the central scheduler have reported that some tasks could not have been run, because other workers are already running the tasks.

missing_data

For when an ExternalTask is not complete, and this caused the worker to give up. As an alternative to fiddling with this, see the [worker] keep_alive option.

not_run

For when a task is not granted run permission by the scheduler. Typically because of lack of resources, because the task has been already run by another worker or because the attempted task is in DISABLED state. Connectivity issues with the central scheduler might also cause this. This does not include the cases for which a run is not allowed due to missing dependencies (missing_data) or due to the fact that another worker is currently running the task (already_running).

task_failed

For signaling that there were last known to have failed. Typically because some exception have been raised.

scheduling_error

For when a task’s complete() or requires() method fails with an exception, or when the limit number of tasks is reached.

unhandled_exception

For internal Luigi errors. Defaults to 4, since this type of error probably will not recover over time.

If you customize return codes, prefer to set them in range 128 to 255 to avoid conflicts. Return codes in range 0 to 127 are reserved for possible future use by Luigi contributors.

[scalding]

Parameters controlling running of scalding jobs

scala_home

Home directory for scala on your machine. Defaults to either SCALA_HOME or /usr/share/scala if SCALA_HOME is unset.

scalding_home

Home directory for scalding on your machine. Defaults to either SCALDING_HOME or /usr/share/scalding if SCALDING_HOME is unset.

scalding_provided

Provided directory for scalding on your machine. Defaults to either SCALDING_HOME/provided or /usr/share/scalding/provided

scalding_libjars

Libjars directory for scalding on your machine. Defaults to either SCALDING_HOME/libjars or /usr/share/scalding/libjars

[scheduler]

Parameters controlling scheduler behavior

batch_emails

Whether to send batch e-mails for failures and disables rather than sending immediate disable e-mails and just relying on workers to send immediate batch e-mails. Defaults to false.

disable_hard_timeout

Hard time limit after which tasks will be disabled by the server if they fail again, in seconds. It will disable the task if it fails again after this amount of time. E.g. if this was set to 600 (i.e. 10 minutes), and the task first failed at 10:00am, the task would be disabled if it failed again any time after 10:10am. Note: This setting does not consider the values of the retry_count or disable_window settings.

retry_count

Number of times a task can fail within disable_window before the scheduler will automatically disable it. If not set, the scheduler will not automatically disable jobs.

disable_persist

Number of seconds for which an automatic scheduler disable lasts. Defaults to 86400 (1 day).

disable_window

Number of seconds during which retry_count failures must occur in order for an automatic disable by the scheduler. The scheduler forgets about disables that have occurred longer ago than this amount of time. Defaults to 3600 (1 hour).

max_shown_tasks

New in version 1.0.20.

The maximum number of tasks returned in a task_list api call. This will restrict the number of tasks shown in task lists in the visualiser. Small values can alleviate frozen browsers when there are too many done tasks. This defaults to 100000 (one hundred thousand).

max_graph_nodes

New in version 2.0.0.

The maximum number of nodes returned by a dep_graph or inverse_dep_graph api call. Small values can greatly speed up graph display in the visualiser by limiting the number of nodes shown. Some of the nodes that are not sent to the visualiser will still show up as dependencies of nodes that were sent. These nodes are given TRUNCATED status.

record_task_history

If true, stores task history in a database. Defaults to false.

remove_delay

Number of seconds to wait before removing a task that has no stakeholders. Defaults to 600 (10 minutes).

retry_delay

Number of seconds to wait after a task failure to mark it pending again. Defaults to 900 (15 minutes).

state_path

Path in which to store the Luigi scheduler’s state. When the scheduler is shut down, its state is stored in this path. The scheduler must be shut down cleanly for this to work, usually with a kill command. If the kill command includes the -9 flag, the scheduler will not be able to save its state. When the scheduler is started, it will load the state from this path if it exists. This will restore all scheduled jobs and other state from when the scheduler last shut down.

Sometimes this path must be deleted when restarting the scheduler after upgrading Luigi, as old state files can become incompatible with the new scheduler. When this happens, all workers should be restarted after the scheduler both to become compatible with the updated code and to reschedule the jobs that the scheduler has now forgotten about.

This defaults to /var/lib/luigi-server/state.pickle

worker_disconnect_delay

Number of seconds to wait after a worker has stopped pinging the scheduler before removing it and marking all of its running tasks as failed. Defaults to 60.

pause_enabled

If false, disables pause/unpause operations and hides the pause toggle from the visualiser.

send_messages

When true, the scheduler is allowed to send messages to running tasks and the central scheduler provides a simple prompt per task to send messages. Defaults to true.

metrics_collector

Optional setting allowing Luigi to use a contribution to collect metrics about the pipeline to a third-party. By default this uses the default metric collector that acts as a shell and does nothing. The currently available options are “datadog”, “prometheus” and “custom”. If it’s custom the ‘metrics_custom_import’ needs to be set.

metrics_custom_import

Optional setting allowing Luigi to import a custom subclass of MetricsCollector at runtime. The string should be formatted like “module.sub_module.ClassName”.

[sendgrid]

These parameters control sending error e-mails through SendGrid.

apikey

API key of the SendGrid account.

[smtp]

These parameters control the smtp server setup.

host

Hostname for sending mail through smtp. Defaults to localhost.

local_hostname

If specified, overrides the FQDN of localhost in the HELO/EHLO command.

no_tls

If true, connects to smtp without TLS. Defaults to false.

password

Password to log in to your smtp server. Must be specified for username to have an effect.

port

Port number for smtp on smtp_host. Defaults to 0.

ssl

If true, connects to smtp through SSL. Defaults to false.

timeout

Sets the number of seconds after which smtp attempts should time out. Defaults to 10.

username

Username to log in to your smtp server, if necessary.

[spark]

Parameters controlling the default execution of SparkSubmitTask and PySparkTask:

Deprecated since version 1.1.1: SparkJob, Spark1xJob and PySpark1xJob are deprecated. Please use SparkSubmitTask or PySparkTask.

spark_submit

Command to run in order to submit spark jobs. Default: "spark-submit"

master

Master url to use for spark_submit. Example: local[*], spark://masterhost:7077. Default: Spark default (Prior to 1.1.1: yarn-client)

deploy_mode

Whether to launch the driver programs locally (“client”) or on one of the worker machines inside the cluster (“cluster”). Default: Spark default

jars

Comma-separated list of local jars to include on the driver and executor classpaths. Default: Spark default

packages

Comma-separated list of packages to link to on the driver and executors

py_files

Comma-separated list of .zip, .egg, or .py files to place on the PYTHONPATH for Python apps. Default: Spark default

files

Comma-separated list of files to be placed in the working directory of each executor. Default: Spark default

conf:

Arbitrary Spark configuration property in the form Prop=Value|Prop2=Value2. Default: Spark default

properties_file

Path to a file from which to load extra properties. Default: Spark default

driver_memory

Memory for driver (e.g. 1000M, 2G). Default: Spark default

driver_java_options

Extra Java options to pass to the driver. Default: Spark default

driver_library_path

Extra library path entries to pass to the driver. Default: Spark default

driver_class_path

Extra class path entries to pass to the driver. Default: Spark default

executor_memory

Memory per executor (e.g. 1000M, 2G). Default: Spark default

Configuration for Spark submit jobs on Spark standalone with cluster deploy mode only:

driver_cores

Cores for driver. Default: Spark default

supervise

If given, restarts the driver on failure. Default: Spark default

Configuration for Spark submit jobs on Spark standalone and Mesos only:

total_executor_cores

Total cores for all executors. Default: Spark default

Configuration for Spark submit jobs on YARN only:

executor_cores

Number of cores per executor. Default: Spark default

queue

The YARN queue to submit to. Default: Spark default

num_executors

Number of executors to launch. Default: Spark default

archives

Comma separated list of archives to be extracted into the working directory of each executor. Default: Spark default

hadoop_conf_dir

Location of the hadoop conf dir. Sets HADOOP_CONF_DIR environment variable when running spark. Example: /etc/hadoop/conf

Extra configuration for PySparkTask jobs:

py_packages

Comma-separated list of local packages (in your python path) to be distributed to the cluster.

Parameters controlling the execution of SparkJob jobs (deprecated):

[task_history]

Parameters controlling storage of task history in a database

db_connection

Connection string for connecting to the task history db using sqlalchemy.

[execution_summary]

Parameters controlling execution summary of a worker

summary_length

Maximum number of tasks to show in an execution summary. If the value is 0, then all tasks will be displayed. Default value is 5.

[webhdfs]

port

The port to use for webhdfs. The normal namenode port is probably on a different port from this one.

user

Perform file system operations as the specified user instead of $USER. Since this parameter is not honored by any of the other hdfs clients, you should think twice before setting this parameter.

client_type

The type of client to use. Default is the “insecure” client that requires no authentication. The other option is the “kerberos” client that uses kerberos authentication.

[datadog]

api_key

The api key found in the account settings of Datadog under the API sections.

app_key

The application key found in the account settings of Datadog under the API sections.

default_tags

Optional settings that adds the tag to all the metrics and events sent to Datadog. Default value is “application:luigi”.

environment

Allows you to tweak multiple environment to differentiate between production, staging or development metrics within Datadog. Default value is “development”.

statsd_host

The host that has the statsd instance to allow Datadog to send statsd metric. Default value is “localhost”.

statsd_port

The port on the host that allows connection to the statsd host. Defaults value is 8125.

metric_namespace

Optional prefix to add to the beginning of every metric sent to Datadog. Default value is “luigi”.

Per Task Retry-Policy

Luigi also supports defining retry_policy per task.

class GenerateWordsFromHdfs(luigi.Task):

   retry_count = 2

    ...

class GenerateWordsFromRDBM(luigi.Task):

   retry_count = 5

    ...

class CountLetters(luigi.Task):

    def requires(self):
        return [GenerateWordsFromHdfs()]

    def run():
        yield GenerateWordsFromRDBM()

    ...

If none of retry-policy fields is defined per task, the field value will be default value which is defined in luigi config file.

To make luigi sticks to the given retry-policy, be sure you run luigi worker with keep_alive config. Please check keep_alive config in [worker] section.

Retry-Policy Fields

The fields below are in retry-policy and they can be defined per task.

  • retry_count

  • disable_hard_timeout

  • disable_window