Python Client SDK Generated by Speakeasy.
Project description
cribl_control_plane_sdk_python
Summary
Cribl API Reference: This API Reference lists available REST endpoints, along with their supported operations for accessing, creating, updating, or deleting resources. See our complementary product documentation at docs.cribl.io.
Table of Contents
SDK Installation
[!NOTE] Python version upgrade policy
Once a Python version reaches its official end of life date, a 3-month grace period is provided for users to upgrade. Following this grace period, the minimum python version supported in the SDK will be updated.
The SDK can be installed with uv, pip, or poetry package managers.
uv
uv is a fast Python package installer and resolver, designed as a drop-in replacement for pip and pip-tools. It's recommended for its speed and modern Python tooling capabilities.
uv add cribl-control-plane
PIP
PIP is the default package installer for Python, enabling easy installation and management of packages from PyPI via the command line.
pip install cribl-control-plane
Poetry
Poetry is a modern tool that simplifies dependency management and package publishing by using a single pyproject.toml file to handle project metadata and dependencies.
poetry add cribl-control-plane
Shell and script usage with uv
You can use this SDK in a Python shell with uv and the uvx command that comes with it like so:
uvx --from cribl-control-plane python
It's also possible to write a standalone Python script without needing to set up a whole project like so:
#!/usr/bin/env -S uv run --script
# /// script
# requires-python = ">=3.9"
# dependencies = [
# "cribl-control-plane",
# ]
# ///
from cribl_control_plane import CriblControlPlane
sdk = CriblControlPlane(
# SDK arguments
)
# Rest of script here...
Once that is saved to a file, you can run it with uv run script.py where
script.py can be replaced with the actual file name.
IDE Support
PyCharm
Generally, the SDK will work well with most IDEs out of the box. However, when using PyCharm, you can enjoy much better integration with Pydantic by installing an additional plugin.
SDK Example Usage
Example
# Synchronous Example
from cribl_control_plane import CriblControlPlane, models
import os
with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
res = ccp_client.lake_datasets.create(lake_id="<id>", id="<id>", accelerated_fields=[
"<value 1>",
"<value 2>",
], bucket_name="<value>", cache_connection={
"accelerated_fields": [
"<value 1>",
"<value 2>",
],
"backfill_status": models.CacheConnectionBackfillStatus.PENDING,
"cache_ref": "<value>",
"created_at": 7795.06,
"lakehouse_connection_type": models.LakehouseConnectionType.CACHE,
"migration_query_id": "<id>",
"retention_in_days": 1466.58,
}, deletion_started_at=8310.58, description="pleased toothbrush long brush smooth swiftly rightfully phooey chapel", format_=models.CriblLakeDatasetFormat.DDSS, http_da_used=True, retention_period_in_days=456.37, search_config={
"datatypes": [
"<value 1>",
],
"metadata": {
"earliest": "<value>",
"enable_acceleration": True,
"field_list": [
"<value 1>",
"<value 2>",
],
"latest_run_info": {
"earliest_scanned_time": 4334.7,
"finished_at": 6811.22,
"latest_scanned_time": 5303.3,
"object_count": 9489.04,
},
"scan_mode": models.ScanMode.DETAILED,
},
}, storage_location_id="<id>", view_name="<value>")
# Handle response
print(res)
The same SDK client can also be used to make asynchronous requests by importing asyncio.
# Asynchronous Example
import asyncio
from cribl_control_plane import CriblControlPlane, models
import os
async def main():
async with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
res = await ccp_client.lake_datasets.create_async(lake_id="<id>", id="<id>", accelerated_fields=[
"<value 1>",
"<value 2>",
], bucket_name="<value>", cache_connection={
"accelerated_fields": [
"<value 1>",
"<value 2>",
],
"backfill_status": models.CacheConnectionBackfillStatus.PENDING,
"cache_ref": "<value>",
"created_at": 7795.06,
"lakehouse_connection_type": models.LakehouseConnectionType.CACHE,
"migration_query_id": "<id>",
"retention_in_days": 1466.58,
}, deletion_started_at=8310.58, description="pleased toothbrush long brush smooth swiftly rightfully phooey chapel", format_=models.CriblLakeDatasetFormat.DDSS, http_da_used=True, retention_period_in_days=456.37, search_config={
"datatypes": [
"<value 1>",
],
"metadata": {
"earliest": "<value>",
"enable_acceleration": True,
"field_list": [
"<value 1>",
"<value 2>",
],
"latest_run_info": {
"earliest_scanned_time": 4334.7,
"finished_at": 6811.22,
"latest_scanned_time": 5303.3,
"object_count": 9489.04,
},
"scan_mode": models.ScanMode.DETAILED,
},
}, storage_location_id="<id>", view_name="<value>")
# Handle response
print(res)
asyncio.run(main())
Authentication
Per-Client Security Schemes
This SDK supports the following security schemes globally:
| Name | Type | Scheme | Environment Variable |
|---|---|---|---|
bearer_auth |
http | HTTP Bearer | CRIBLCONTROLPLANE_BEARER_AUTH |
client_oauth |
oauth2 | OAuth2 token | CRIBLCONTROLPLANE_CLIENT_OAUTH |
You can set the security parameters through the security optional parameter when initializing the SDK client instance. The selected scheme will be used by default to authenticate with the API for all operations that support it. For example:
from cribl_control_plane import CriblControlPlane, models
import os
with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
res = ccp_client.lake_datasets.create(lake_id="<id>", id="<id>", accelerated_fields=[
"<value 1>",
"<value 2>",
], bucket_name="<value>", cache_connection={
"accelerated_fields": [
"<value 1>",
"<value 2>",
],
"backfill_status": models.CacheConnectionBackfillStatus.PENDING,
"cache_ref": "<value>",
"created_at": 7795.06,
"lakehouse_connection_type": models.LakehouseConnectionType.CACHE,
"migration_query_id": "<id>",
"retention_in_days": 1466.58,
}, deletion_started_at=8310.58, description="pleased toothbrush long brush smooth swiftly rightfully phooey chapel", format_=models.CriblLakeDatasetFormat.DDSS, http_da_used=True, retention_period_in_days=456.37, search_config={
"datatypes": [
"<value 1>",
],
"metadata": {
"earliest": "<value>",
"enable_acceleration": True,
"field_list": [
"<value 1>",
"<value 2>",
],
"latest_run_info": {
"earliest_scanned_time": 4334.7,
"finished_at": 6811.22,
"latest_scanned_time": 5303.3,
"object_count": 9489.04,
},
"scan_mode": models.ScanMode.DETAILED,
},
}, storage_location_id="<id>", view_name="<value>")
# Handle response
print(res)
Available Resources and Operations
Available methods
auth
auth.tokens
- get - Log in and fetch an authentication token
destinations
- list - List all Destinations
- create - Create a Destination
- get - Get a Destination
- update - Update a Destination
- delete - Delete a Destination
destinations.pq
- clear - Clear the persistent queue for a Destination
- get - Get information about the latest job to clear the persistent queue for a Destination
destinations.samples
groups
- list - List all Worker Groups or Edge Fleets for the specified Cribl product
- create - Create a Worker Group or Edge Fleet for the specified Cribl product
- get - Get a Worker Group or Edge Fleet
- update - Update a Worker Group or Edge Fleet
- delete - Delete a Worker Group or Edge Fleet
- deploy - Deploy commits to a Worker Group or Edge Fleet
groups.acl
- get - Get the Access Control List for a Worker Group or Edge Fleet
groups.acl.teams
- get - Get the Access Control List for teams with permissions on a Worker Group or Edge Fleet for the specified Cribl product
groups.configs.versions
- get - Get the configuration version for a Worker Group or Edge Fleet
health
- get - Retrieve health status of the server
lake_datasets
- create - Create a Lake Dataset
- list - List all Lake Datasets
- delete - Delete a Lake Dataset
- get - Get a Lake Dataset
- update - Update a Lake Dataset
nodes
nodes.summaries
- get - Get a summary of the Distributed deployment
packs
pipelines
- list - List all Pipelines
- create - Create a Pipeline
- get - Retrieve a Pipeline
- update - Update a Pipeline
- delete - Delete a Pipeline
routes
- list - Get a list of Routes objects
- get - Get Routes by ID
- update - Update Routes
- append - Append Routes to the end of the Routing table
sources
- list - List all Sources
- create - Create a Source
- get - Get a Source
- update - Update a Source
- delete - Delete a Source
sources.hec_tokens
- create - Add an HEC token and optional metadata to a Splunk HEC Source
- update - Update metadata for an HEC token for a Splunk HEC Source
system.settings.auth
system.settings.cribl
system.settings.git
versions
versions.branches
- list - List all branches in the Git repository used for Cribl configuration
- get - Get the name of the Git branch that the Cribl configuration is checked out to
versions.commits
- create - Create a new commit for pending changes to the Cribl configuration
- diff - Get the diff for a commit
- list - Get the commit history
- push - Push local commits to the remote repository
- revert - Revert a commit in the local repository
- get - Get the diff and log message for a commit
- undo - Discard uncommitted (staged) changes
versions.commits.files
- count - Get a count of files that changed since a commit
- list - Get the names and statuses of files that changed since a commit
versions.configs
- get - Get the configuration and status for the Git integration
versions.statuses
- get - Get the status of the current working tree
Retries
Some of the endpoints in this SDK support retries. If you use the SDK without any configuration, it will fall back to the default retry strategy provided by the API. However, the default retry strategy can be overridden on a per-operation basis, or across the entire SDK.
To change the default retry strategy for a single API call, simply provide a RetryConfig object to the call:
from cribl_control_plane import CriblControlPlane, models
from cribl_control_plane.utils import BackoffStrategy, RetryConfig
import os
with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
res = ccp_client.lake_datasets.create(lake_id="<id>", id="<id>", accelerated_fields=[
"<value 1>",
"<value 2>",
], bucket_name="<value>", cache_connection={
"accelerated_fields": [
"<value 1>",
"<value 2>",
],
"backfill_status": models.CacheConnectionBackfillStatus.PENDING,
"cache_ref": "<value>",
"created_at": 7795.06,
"lakehouse_connection_type": models.LakehouseConnectionType.CACHE,
"migration_query_id": "<id>",
"retention_in_days": 1466.58,
}, deletion_started_at=8310.58, description="pleased toothbrush long brush smooth swiftly rightfully phooey chapel", format_=models.CriblLakeDatasetFormat.DDSS, http_da_used=True, retention_period_in_days=456.37, search_config={
"datatypes": [
"<value 1>",
],
"metadata": {
"earliest": "<value>",
"enable_acceleration": True,
"field_list": [
"<value 1>",
"<value 2>",
],
"latest_run_info": {
"earliest_scanned_time": 4334.7,
"finished_at": 6811.22,
"latest_scanned_time": 5303.3,
"object_count": 9489.04,
},
"scan_mode": models.ScanMode.DETAILED,
},
}, storage_location_id="<id>", view_name="<value>",
RetryConfig("backoff", BackoffStrategy(1, 50, 1.1, 100), False))
# Handle response
print(res)
If you'd like to override the default retry strategy for all operations that support retries, you can use the retry_config optional parameter when initializing the SDK:
from cribl_control_plane import CriblControlPlane, models
from cribl_control_plane.utils import BackoffStrategy, RetryConfig
import os
with CriblControlPlane(
server_url="https://api.example.com",
retry_config=RetryConfig("backoff", BackoffStrategy(1, 50, 1.1, 100), False),
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
res = ccp_client.lake_datasets.create(lake_id="<id>", id="<id>", accelerated_fields=[
"<value 1>",
"<value 2>",
], bucket_name="<value>", cache_connection={
"accelerated_fields": [
"<value 1>",
"<value 2>",
],
"backfill_status": models.CacheConnectionBackfillStatus.PENDING,
"cache_ref": "<value>",
"created_at": 7795.06,
"lakehouse_connection_type": models.LakehouseConnectionType.CACHE,
"migration_query_id": "<id>",
"retention_in_days": 1466.58,
}, deletion_started_at=8310.58, description="pleased toothbrush long brush smooth swiftly rightfully phooey chapel", format_=models.CriblLakeDatasetFormat.DDSS, http_da_used=True, retention_period_in_days=456.37, search_config={
"datatypes": [
"<value 1>",
],
"metadata": {
"earliest": "<value>",
"enable_acceleration": True,
"field_list": [
"<value 1>",
"<value 2>",
],
"latest_run_info": {
"earliest_scanned_time": 4334.7,
"finished_at": 6811.22,
"latest_scanned_time": 5303.3,
"object_count": 9489.04,
},
"scan_mode": models.ScanMode.DETAILED,
},
}, storage_location_id="<id>", view_name="<value>")
# Handle response
print(res)
Error Handling
CriblControlPlaneError is the base class for all HTTP error responses. It has the following properties:
| Property | Type | Description |
|---|---|---|
err.message |
str |
Error message |
err.status_code |
int |
HTTP response status code eg 404 |
err.headers |
httpx.Headers |
HTTP response headers |
err.body |
str |
HTTP body. Can be empty string if no body is returned. |
err.raw_response |
httpx.Response |
Raw HTTP response |
err.data |
Optional. Some errors may contain structured data. See Error Classes. |
Example
from cribl_control_plane import CriblControlPlane, errors, models
import os
with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
res = None
try:
res = ccp_client.lake_datasets.create(lake_id="<id>", id="<id>", accelerated_fields=[
"<value 1>",
"<value 2>",
], bucket_name="<value>", cache_connection={
"accelerated_fields": [
"<value 1>",
"<value 2>",
],
"backfill_status": models.CacheConnectionBackfillStatus.PENDING,
"cache_ref": "<value>",
"created_at": 7795.06,
"lakehouse_connection_type": models.LakehouseConnectionType.CACHE,
"migration_query_id": "<id>",
"retention_in_days": 1466.58,
}, deletion_started_at=8310.58, description="pleased toothbrush long brush smooth swiftly rightfully phooey chapel", format_=models.CriblLakeDatasetFormat.DDSS, http_da_used=True, retention_period_in_days=456.37, search_config={
"datatypes": [
"<value 1>",
],
"metadata": {
"earliest": "<value>",
"enable_acceleration": True,
"field_list": [
"<value 1>",
"<value 2>",
],
"latest_run_info": {
"earliest_scanned_time": 4334.7,
"finished_at": 6811.22,
"latest_scanned_time": 5303.3,
"object_count": 9489.04,
},
"scan_mode": models.ScanMode.DETAILED,
},
}, storage_location_id="<id>", view_name="<value>")
# Handle response
print(res)
except errors.CriblControlPlaneError as e:
# The base class for HTTP error responses
print(e.message)
print(e.status_code)
print(e.body)
print(e.headers)
print(e.raw_response)
# Depending on the method different errors may be thrown
if isinstance(e, errors.Error):
print(e.data.message) # Optional[str]
Error Classes
Primary errors:
CriblControlPlaneError: The base class for HTTP error responses.Error: Unexpected error. Status code500. *
Less common errors (6)
Network errors:
httpx.RequestError: Base class for request errors.httpx.ConnectError: HTTP client was unable to make a request to a server.httpx.TimeoutException: HTTP request timed out.
Inherit from CriblControlPlaneError:
HealthStatusError: Healthy status. Status code420. Applicable to 1 of 67 methods.*ResponseValidationError: Type mismatch between the response data and the expected Pydantic model. Provides access to the Pydantic validation error via thecauseattribute.
* Check the method documentation to see if the error is applicable.
Custom HTTP Client
The Python SDK makes API calls using the httpx HTTP library. In order to provide a convenient way to configure timeouts, cookies, proxies, custom headers, and other low-level configuration, you can initialize the SDK client with your own HTTP client instance.
Depending on whether you are using the sync or async version of the SDK, you can pass an instance of HttpClient or AsyncHttpClient respectively, which are Protocol's ensuring that the client has the necessary methods to make API calls.
This allows you to wrap the client with your own custom logic, such as adding custom headers, logging, or error handling, or you can just pass an instance of httpx.Client or httpx.AsyncClient directly.
For example, you could specify a header for every request that this sdk makes as follows:
from cribl_control_plane import CriblControlPlane
import httpx
http_client = httpx.Client(headers={"x-custom-header": "someValue"})
s = CriblControlPlane(client=http_client)
or you could wrap the client with your own custom logic:
from cribl_control_plane import CriblControlPlane
from cribl_control_plane.httpclient import AsyncHttpClient
import httpx
class CustomClient(AsyncHttpClient):
client: AsyncHttpClient
def __init__(self, client: AsyncHttpClient):
self.client = client
async def send(
self,
request: httpx.Request,
*,
stream: bool = False,
auth: Union[
httpx._types.AuthTypes, httpx._client.UseClientDefault, None
] = httpx.USE_CLIENT_DEFAULT,
follow_redirects: Union[
bool, httpx._client.UseClientDefault
] = httpx.USE_CLIENT_DEFAULT,
) -> httpx.Response:
request.headers["Client-Level-Header"] = "added by client"
return await self.client.send(
request, stream=stream, auth=auth, follow_redirects=follow_redirects
)
def build_request(
self,
method: str,
url: httpx._types.URLTypes,
*,
content: Optional[httpx._types.RequestContent] = None,
data: Optional[httpx._types.RequestData] = None,
files: Optional[httpx._types.RequestFiles] = None,
json: Optional[Any] = None,
params: Optional[httpx._types.QueryParamTypes] = None,
headers: Optional[httpx._types.HeaderTypes] = None,
cookies: Optional[httpx._types.CookieTypes] = None,
timeout: Union[
httpx._types.TimeoutTypes, httpx._client.UseClientDefault
] = httpx.USE_CLIENT_DEFAULT,
extensions: Optional[httpx._types.RequestExtensions] = None,
) -> httpx.Request:
return self.client.build_request(
method,
url,
content=content,
data=data,
files=files,
json=json,
params=params,
headers=headers,
cookies=cookies,
timeout=timeout,
extensions=extensions,
)
s = CriblControlPlane(async_client=CustomClient(httpx.AsyncClient()))
Resource Management
The CriblControlPlane class implements the context manager protocol and registers a finalizer function to close the underlying sync and async HTTPX clients it uses under the hood. This will close HTTP connections, release memory and free up other resources held by the SDK. In short-lived Python programs and notebooks that make a few SDK method calls, resource management may not be a concern. However, in longer-lived programs, it is beneficial to create a single SDK instance via a context manager and reuse it across the application.
from cribl_control_plane import CriblControlPlane, models
import os
def main():
with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
# Rest of application here...
# Or when using async:
async def amain():
async with CriblControlPlane(
server_url="https://api.example.com",
security=models.Security(
bearer_auth=os.getenv("CRIBLCONTROLPLANE_BEARER_AUTH", ""),
),
) as ccp_client:
# Rest of application here...
Debugging
You can setup your SDK to emit debug logs for SDK requests and responses.
You can pass your own logger class directly into your SDK.
from cribl_control_plane import CriblControlPlane
import logging
logging.basicConfig(level=logging.DEBUG)
s = CriblControlPlane(server_url="https://example.com", debug_logger=logging.getLogger("cribl_control_plane"))
You can also enable a default debug logger by setting an environment variable CRIBLCONTROLPLANE_DEBUG to true.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file cribl_control_plane-0.0.33.tar.gz.
File metadata
- Download URL: cribl_control_plane-0.0.33.tar.gz
- Upload date:
- Size: 342.6 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: poetry/2.1.4 CPython/3.9.23 Linux/6.8.0-1031-azure
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
f5fae025c29d66a68b45bd764dbc6c26e15e4c41c1f43014966d67ec6b7de8c9
|
|
| MD5 |
5a87df34c12f44cc43f5e34372e3e714
|
|
| BLAKE2b-256 |
c69d97421a780d8b656baead0aeadc2624e56e0efd38cdee7d78b145ee51b2e6
|
File details
Details for the file cribl_control_plane-0.0.33-py3-none-any.whl.
File metadata
- Download URL: cribl_control_plane-0.0.33-py3-none-any.whl
- Upload date:
- Size: 700.6 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: poetry/2.1.4 CPython/3.9.23 Linux/6.8.0-1031-azure
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
b995cbd1c7ec139a1e7ca99ae0de6ed4dfa8f4e65efa4b80cd303d8fb91841f3
|
|
| MD5 |
21ef9aecdf3bbcd9aa4d9182670272f3
|
|
| BLAKE2b-256 |
9ee649719751700b4615aa3ee8f8ff49c23dd58aa32638609ce8a93f3dfc23b6
|