Getting You Started¶
This section provides an overview for users about how to begin using the Genie
harness.
We recommend reading this section in order, to help users understand the fundamental
building blocks to begin using Genie
.
Note
The examples below are runnable. The only additional requirement is for users to have a pyATS testbed file with at least one device.
Set-up¶
The first step is to create a job file for executing the Genie
harness
.
# Import Genie run
from genie.harness.main import gRun
def main():
# Set job file path to current directory
test_path = os.path.dirname(os.path.abspath(__file__))
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'))
A pyATS script is derived from the information provided to the Genie Harness
with gRun
.
An example of the mapping datafile contains:
devices:
PE1:
context: cli
label: uut
mapping:
cli: vty
yang: netconf
The pyATS YAML testbed file describes the testbed topology and the testbed’s devices. Any given device in the testbed topology can be configured to support various connection types such as: Console, Network Mangement VTY, NETCONF(YANG), and more in the future.
Each of those connections names are not standardize, so Genie
cannot know
which one to use for which context. The mapping file allows this mapping. It
also allows to specify the context (cli, yang, etc) to be specified per device.
In the above example, we are mapping the vty
connection to be used for cli
, and
netconf
connection for yang
. The device name can either be the hostname of the device
defined in the testbed file, or the device alias. They must be unique for each
device.
Available mapping are : cli
, yang
, rest
. More will be added in the future.
As Genie
is event driven, the triggers are performed on a given device,
which is known as the uut
(Unit Under Test) for Genie
. The uut
is
identified via the label
field.
The context
drives the management interface that will be used to connect to
devices during execution.
To run the example above, create the mapping.yaml
file in the same directory
as the job file. Copy the code from example above and modify it to fit the
requirement of your testbed, alias, and the context.
Note
In the mapping file, the key cli
is mandatory and yang
is optional.
Note
To have standardized mapping files between users, the first key under devices can either be the device hostname or the device alias given in the testbed file.
We can now execute the example with the following command:
easypy job.py -testbed_file <pyats testbed location>
This job does the following:
Runs common setup
Connects to a device
Executes ‘show running-config’
No testcase to run yet
Runs common cleanup
Executes ‘show running-config’
The first ‘show’ command in the common setup
takes a snapshot of the
configuration. The second ‘show’ command in the common cleanup
takes another
snapshot and compares them together to ensure the configuration remained the
same.
Configuration¶
Genie supports multiple ways to apply configuration on the devices.
Manually applied on the devices before the run starts (Done by user)
The user can connect manually to the devices and apply any configuration wanted.
Automatically applied on the devices in the Common Setup with Tftp/Ftp/Scp
With the config_datafile
argument, a config.yaml
is provided. This file
contains what configuration to apply on which device.
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'))
The configs.yaml
datafile lists all of the configurations files.
devices:
uut:
1:
config: /path/to/my/configuration
sleep: 3
invalid: ['overlaps', '(.*inval.*)']
2:
config: <full path>
sleep: 2
invalid: ['some words']
Important
The configuration is applied in the numerical sequence specified in the YAML file, (1,2,..), as shown above.
The configuration file is a typical show running
style. After each
configuration applied, a wait period is recommended to allow the configuration
to stabilize; this is achieved with the key sleep
, specified in seconds.
When applying configurations, we may see some error or warning messages which
may or may not be safe to ignore. Any error or warning patterns specified in
the invalid
key will cause the configure
subsection to fail if matched.
The invalid
key supports regex.
A server must be added to copy the configuration on the devices, the file_transfer_protocol sections explain what to add to the testbed datafile.
As an example, let’s create a sample device configuration file, named
uut_config1
.
interface Ethernet0/1
no shutdown
interface Ethernet0/2
no switchport
And modify the previously created configs.yaml
file as follows:
devices:
uut:
1:
config: <full/path/to/uut_config1>
sleep: 3
Note
In case you need multiple configuration files, the number provide the sequence of the configuration.
Note
The configuration section is optional, as it can be prefered to manually configured the devices before the run is started.
Custom subsection to apply configuration on the device in any way
The subsections section explains how to add your own subsection and performs any action.
check_config¶
Once the devices are configured, Genie
learns the configured
state of the topology via check_config
. The check_config
subsection runs twice:
first, during the common setup and then, during common cleanup.
In the common setup, check_config
executes the show running
command on all of the
devices in the topology to create a snapshot of the configured state of the topology.
If devices are specified in subsection yaml file, it will only perform check on these devices.
example on sepecifying device for check_config in subsection yaml file:
setup:
sections:
check_config:
method: genie.harness.commons.check_config
parameters:
devices:
uut: None
In the common cleanup, check_config
executes the show running
command on
all devices in the topology once again to create a second snapshot of the
configured state of the topology. Afterwards, it compares the two snapshots to
ensure that the configuration of the devices remained intact during the
execution of the job.
Certain values, such as uptime, age, etc., collected in the check_config
snapshots can dynamically change
during the execution of the job. Users can add the exclude_config_check
argument to the
configs.yaml
file to ignore comparisons of certain configurations.
This argument accepts a String
or Regular expression
expression as an input and
then skips comparison of any configuration matching the expression.
Let’s see an example of how to add the exclude_config_check
argument:
devices:
uut:
1:
config: <full path to config file>
sleep: 5
invalid : ['(.*ERROR.*)']
exclude_config_check: ['(.*description.*)']
PTS¶
As a recap, in the previous two sections we connected to our devices and then applied various configurations. We also confirmed that the configurations were applied without error.
Once the devices contain configurations, Genie
can learn the state
of the topology via PTS
. A first round of profile
snapshots of each feature
are taken during the common setup
and then a second round of profile
snapshots are taken during the common cleanup
. These snapshots are compared
to those saved in the common setup to confirm that operational states did not
change during the job’s execution.
PTS
learns the configurations applied to a device by creating Genie
Ops objects or parsed dictionary. These objects are
snapshots of the operational state of the devices in the topology. Multiple
commands (sent by cli/yang/xml) are executed to collect a feature’s
state/operational information.
The user can specify which configured features Genie
should learn
using the pts_features
argument. Each learned feature will create a subsection
in the common setup with prefix profile_<feature_name>
.
Let’s add the pts_features
argument to gRun
in our job file:
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'),
pts_features=['ospf', 'hsrp', 'show ip ospf interface',
'show ip ospf interface vrf default'])
By default PTS will only run on the uut
. It can be modified in the
pts_datafile.yaml
file that maps devices to the features listed in the
pts_datafile
argument as shown below.
Please copy the following code into a new file called pts_datafile.yaml
.
# Your python version may vary
extends: $VIRTUAL_ENV/lib/python3.6/site-packages/genie/libs/sdk/genie_yamls/pts_datafile.yaml
ospf:
devices: ['uut', 'helper']
exclude:
- age
- uptime
hsrp:
devices: ['uut', 'helper']
devices_attributes:
uut:
exclude:
- next_hello_time
helper:
exclude:
- next_hello_time
exclude:
- date
Note
Be sure to provide devices to each PTS that you would like to execute. If no devices are provided, PTS will not run
Certain values taken in the profile
snapshot for each feature can dynamically
change during execution of the script, such as uptime
, age
etc. The user
can choose to exclude comparisons of these values by specifying them with the
exclude
key, as shown above. Each value can be excluded at the device level
or the feature level.
Let’s add the pts_datafile
argument to gRun
in our job file.
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'),
pts_features=['ospf', 'hsrp'],
pts_datafile=os.path.join(test_path, 'pts_datafile'))
Note
Show command does not need to be added to the PTS file to run. By default they will use the same exclude keys as their Verification datafile corespondance.
Golden Config¶
In the previous sections, we configured our devices and learned the state of the topology. However, how can we be certain that the state of the topology is precisely the one we expected?
The pts_golden_config
compares the profiles
learned by PTS
in the current run to a profile that has been verified to be
a golden
snapshot by your team. After each run, a file named pts
is
generated and saved to the pyATS
archive directory. This file can then be
saved to a fixed location. This file can then be provided as an argument to the
job file via pts_golden_config
argument as shown below.
Let’s add the pts_golden_config
argument to gRun
in our job file:
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'),
pts_features=['ospf', 'hsrp'],
pts_datafile=os.path.join(test_path, 'pts_datafile'),
pts_golden_config='<path>/golden_pts')
Verifications¶
A verification is the execution of a command to retrieve the current state of a
device. The state can be retrieved by using cli
, yang
, xml
and so on or a
mix of them.
There are two types of verifications: Global
and Local
.
Global
verifications are run immediately after the common setup
. At this
stage, the information retrieved is saved as a snapshots. After each subsequent
trigger, the same set of verifications are executed again and their state is
compared to the previous snapshot.
Local
verifications are independent of the Global
verifications. They are
run as subsections of a trigger. A first set of snapshots are taken before
performing the trigger action. A second set of snapshots are taken after the
trigger action and then compared to the first set of snapshots.
The verification_datafile
specifies which verifications Genie
should run.
Let’s create a verification_datafile.
extends: verifications.yaml
Verify_Ospf:
groups: ['L3']
devices: ['uut']
iteration:
attempt: 3
interval: 10
exclude: ['uptime']
processors:
# verification with pre processor
pre:
extra_sleep:
pkg: genie.libs.sdk
method: libs.prepostprocessor.sleep_processor
# verification with post processor
post:
extra_sleep:
pkg: genie.libs.sdk
method: libs.prepostprocessor.sleep_processor
Note
Be sure to provide a device for each verification that you want to execute. If no device is specified, the verification will not run
Note
Genie
libs contains available ready to use processors, For more
information on how to use them, go to
harness developer.
Certain values taken in the verification snapshot can dynamically change during
execution of the script, such as uptime, age etc. The user can choose to
exclude
comparison of these values by specifying them with the exclude
key
as shown in the example above.
At times, configurations on the device require some time to reach a stable
state. The iteration
key tells Genie
to rerun the verification for the
number of attempt
specified while waiting for interval
seconds between each
attempt.
Note
Verification failure handling: Whenever a verifications fails due to mismatched
key values when comparing snapshots, it will mark the section as a failure. At
this stage, Genie
saves this new snapshot as the latest
snapshot
containing the updated key values. It then uses this new snapshot to compare
verifications snapshots generated after the failure. This reduces
the number of failing verifications in a run.
The Genie
SDK
is a community driven library containing verifications
which can be used by Genie
.
Let’s add the verification_datafile
argument to gRun
in our job file in
order to execute Global verifications:
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'),
pts_features=['ospf', 'hsrp'],
pts_datafile=os.path.join(test_path, 'pts_datafile'),
pts_golden_config='<path>/pts',
verification_datafile=os.path.join(test_path, 'verification_datafile'))
Note
More information on verification in the developer guide.
Triggers¶
A trigger is a set of actions and verifications that collectively constitute a
testcase. These actions can include removal/addition of configuration, flapping
protocols/interfaces, perform HA events, and any other actions that users may
want to apply to test their devices. Triggers can also include verifications that
check whether the above actions were performed correctly on the devices. We call these
triggers, local verifications
.
The trigger_datafile
specifies which triggers Genie
should run. Let’s
create a trigger_datafile
:
extends: <$virtual_env>/lib/python3.4/site-packages/genie/infra/trigger_datafile.yaml
# Simple trigger which will run on the uut and part of the L3 group
TriggerShutNoShutOspf:
groups: ['L3']
devices: ['uut']
processors:
# trigger with pre processor
pre:
extra_sleep:
pkg: genie.libs.sdk
method: libs.prepostprocessor.sleep_processor
# A trigger with a local verification
TriggerClearOspf:
groups: ['L3']
devices: ['uut']
verifications:
Verify_Ospf:
devices: ['uut']
devices_attributes:
uut:
iteration:
attempt: 6
interval: 10
parameters:
vrf: default
processors:
# trigger with post processor
post:
extra_sleep:
pkg: genie.libs.sdk
method: libs.prepostprocessor.sleep_processor
order: ['TriggerClearOspf']
Note
Be sure sure you specify a device for each trigger you would like to execute. If no device is specified, the trigger will not run
Note
Genie
libs contains available ready to use processors, For more
information on how to use them, go to
harness developer.
The Genie
SDK
is a community driven library containing triggers which can
be used by Genie
.
Let’s add the trigger_datafile
argument to gRun
in our job file.
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'),
pts_features=['ospf', 'hsrp'],
pts_datafile=os.path.join(test_path, 'pts_datafile'),
pts_golden_config='<path>/pts',
verification_datafile=os.path.join(test_path, 'verification_datafile'),
trigger_datafile=os.path.join(test_path, 'trigger_datafile'),
trigger_uids=['TriggerShutNoShutOspf', 'TriggerClearOspf'])
File Transfer Protocol¶
The file transfer protocol to be used during common setup copy configuration section or during copy cores/crashdumps in later stages in the run can be set by the user in the job file.
It is an optional argument, if user didn’t provide it in the job file. The protocol will be extracted from the testbed yaml file as shown below.
testbed:
name: <testbed name>
servers:
<File Transfer Protocol>:
address: <tftp server ip address>
path: <tftpboot location>
The valid transfer protocols are ‘tftp’, ‘ftp’ and ‘scp’.
Let’s add the filetransfer_protocol
argument to gRun
in our job file:
gRun(mapping_datafile=os.path.join(test_path, 'mapping.yaml'),
runtime=runtime, config_datafile=os.path.join('configs.yaml'),
pts_features=['ospf', 'hsrp'],
pts_datafile=os.path.join(test_path, 'pts_datafile'),
pts_golden_config='<path>/pts',
filetransfer_protocol='tftp')
Connection Pool¶
Performance! Speed! With a connection pool commands on the same devices are not
send one after the other, but in parallel! User can provide pool_size
argument in the Mapping datafile and will be able to start a pool of
connections during the genie script run. Refer to pyATS
connection-pool for more details about connection
sharing.