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mypy-boto3-application-autoscaling
Advanced tools
Type annotations for boto3 ApplicationAutoScaling 1.35.78 service generated with mypy-boto3-builder 8.6.2
Type annotations for boto3 ApplicationAutoScaling 1.35.78 compatible with VSCode, PyCharm, Emacs, Sublime Text, mypy, pyright and other tools.
Generated with mypy-boto3-builder 8.6.2.
More information can be found on boto3-stubs page and in mypy-boto3-application-autoscaling docs.
See how it helps you find and fix potential bugs:
You can generate type annotations for boto3
package locally with
mypy_boto3_builder
. Use
uv for build
isolation.
uvx --with 'boto3==1.35.78' mypy_boto3_builder
boto3 (legacy boto3-stubs)
AWS SDK.ApplicationAutoScaling
service.Add
AWS Boto3
extension to your VSCode and run AWS boto3: Quick Start
command.
Click Modify
and select boto3 common
and ApplicationAutoScaling
.
Install boto3-stubs
for ApplicationAutoScaling
service.
# install with boto3 type annotations
python -m pip install 'boto3-stubs[application-autoscaling]'
# Lite version does not provide session.client/resource overloads
# it is more RAM-friendly, but requires explicit type annotations
python -m pip install 'boto3-stubs-lite[application-autoscaling]'
# standalone installation
python -m pip install mypy-boto3-application-autoscaling
python -m pip uninstall -y mypy-boto3-application-autoscaling
Pylance
as your Python Language Serverboto3-stubs[application-autoscaling]
in your environment:python -m pip install 'boto3-stubs[application-autoscaling]'
Both type checking and code completion should now work. No explicit type
annotations required, write your boto3
code as usual.
⚠️ Due to slow PyCharm performance on
Literal
overloads (issue PY-40997), it is recommended to use boto3-stubs-lite until the issue is resolved.
⚠️ If you experience slow performance and high CPU usage, try to disable
PyCharm
type checker and use mypy or pyright instead.
⚠️ To continue using
PyCharm
type checker, you can try to replaceboto3-stubs
with boto3-stubs-lite:
pip uninstall boto3-stubs
pip install boto3-stubs-lite
Install boto3-stubs[application-autoscaling]
in your environment:
python -m pip install 'boto3-stubs[application-autoscaling]'
Both type checking and code completion should now work.
boto3-stubs
with services you use in your environment:python -m pip install 'boto3-stubs[application-autoscaling]'
(use-package lsp-pyright
:ensure t
:hook (python-mode . (lambda ()
(require 'lsp-pyright)
(lsp))) ; or lsp-deferred
:init (when (executable-find "python3")
(setq lsp-pyright-python-executable-cmd "python3"))
)
boto3-stubs
Type checking should now work. No explicit type annotations required, write
your boto3
code as usual.
boto3-stubs[application-autoscaling]
with services you use in your
environment:python -m pip install 'boto3-stubs[application-autoscaling]'
Type checking should now work. No explicit type annotations required, write
your boto3
code as usual.
Not tested, but as long as your IDE supports mypy
or pyright
, everything
should work.
mypy
: python -m pip install mypy
boto3-stubs[application-autoscaling]
in your environment:python -m pip install 'boto3-stubs[application-autoscaling]'
Type checking should now work. No explicit type annotations required, write
your boto3
code as usual.
pyright
: npm i -g pyright
boto3-stubs[application-autoscaling]
in your environment:python -m pip install 'boto3-stubs[application-autoscaling]'
Optionally, you can install boto3-stubs
to typings
directory.
Type checking should now work. No explicit type annotations required, write
your boto3
code as usual.
It is totally safe to use TYPE_CHECKING
flag in order to avoid
mypy-boto3-application-autoscaling
dependency in production. However, there
is an issue in pylint
that it complains about undefined variables. To fix it,
set all types to object
in non-TYPE_CHECKING
mode.
from typing import TYPE_CHECKING
if TYPE_CHECKING:
from mypy_boto3_ec2 import EC2Client, EC2ServiceResource
from mypy_boto3_ec2.waiters import BundleTaskCompleteWaiter
from mypy_boto3_ec2.paginators import DescribeVolumesPaginator
else:
EC2Client = object
EC2ServiceResource = object
BundleTaskCompleteWaiter = object
DescribeVolumesPaginator = object
...
ApplicationAutoScalingClient
provides annotations for
boto3.client("application-autoscaling")
.
from boto3.session import Session
from mypy_boto3_application_autoscaling import ApplicationAutoScalingClient
client: ApplicationAutoScalingClient = Session().client("application-autoscaling")
# now client usage is checked by mypy and IDE should provide code completion
mypy_boto3_application_autoscaling.paginator
module contains type annotations
for all paginators.
from boto3.session import Session
from mypy_boto3_application_autoscaling import ApplicationAutoScalingClient
from mypy_boto3_application_autoscaling.paginator import (
DescribeScalableTargetsPaginator,
DescribeScalingActivitiesPaginator,
DescribeScalingPoliciesPaginator,
DescribeScheduledActionsPaginator,
)
client: ApplicationAutoScalingClient = Session().client("application-autoscaling")
# Explicit type annotations are optional here
# Types should be correctly discovered by mypy and IDEs
describe_scalable_targets_paginator: DescribeScalableTargetsPaginator = client.get_paginator(
"describe_scalable_targets"
)
describe_scaling_activities_paginator: DescribeScalingActivitiesPaginator = client.get_paginator(
"describe_scaling_activities"
)
describe_scaling_policies_paginator: DescribeScalingPoliciesPaginator = client.get_paginator(
"describe_scaling_policies"
)
describe_scheduled_actions_paginator: DescribeScheduledActionsPaginator = client.get_paginator(
"describe_scheduled_actions"
)
mypy_boto3_application_autoscaling.literals
module contains literals
extracted from shapes that can be used in user code for type checking.
Full list of ApplicationAutoScaling
Literals can be found in
docs.
from mypy_boto3_application_autoscaling.literals import AdjustmentTypeType
def check_value(value: AdjustmentTypeType) -> bool: ...
mypy_boto3_application_autoscaling.type_defs
module contains structures and
shapes assembled to typed dictionaries and unions for additional type checking.
Full list of ApplicationAutoScaling
TypeDefs can be found in
docs.
from mypy_boto3_application_autoscaling.type_defs import AlarmTypeDef
def get_value() -> AlarmTypeDef:
return {...}
Fully automated
mypy-boto3-builder carefully
generates type annotations for each service, patiently waiting for boto3
updates. It delivers drop-in type annotations for you and makes sure that:
boto3
services are covered.boto3
service gets valid type
annotations extracted from botocore
schemas.boto3
, botocore
, aiobotocore
and aioboto3
librariesmypy
, pyright
, VSCode
, PyCharm
, Sublime Text
and Emacs
compatibilityClient
, ServiceResource
, Resource
, Waiter
Paginator
type
annotations for each serviceTypeDefs
for each serviceLiterals
for each serviceboto3.client
and boto3.resource
callssession.client
and session.resource
callsclient.get_waiter
and client.get_paginator
callsServiceResource
and Resource
collectionsaiobotocore.Session.create_client
callsBuilder changelog can be found in Releases.
mypy-boto3-application-autoscaling
version is the same as related boto3
version and follows PEP 440
format.
All services type annotations can be found in boto3 docs
This package is auto-generated. Please reports any bugs or request new features in mypy-boto3-builder repository.
FAQs
Type annotations for boto3 ApplicationAutoScaling 1.35.78 service generated with mypy-boto3-builder 8.6.2
We found that mypy-boto3-application-autoscaling demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
Did you know?
Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.
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