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Concurrency Control and Prioritization

note

The following policy is based on the Concurrency Scheduling blueprint.

Overview

Concurrency control and prioritization, is a sophisticated technique that allows effective management of concurrent requests. With this technique, services can limit the number of concurrent API calls to alleviate the load on the system.

When service limits are reached, Aperture Cloud can queue incoming requests and serve them according to their priority, which is determined by business-critical labels set in the policy and passed via the SDK.

flowchart LR classDef Orange fill:#F8773D,stroke:#000000,stroke-width:2px; classDef Green fill:#56AE89,stroke:#000000,stroke-width:2px; classDef Red fill:#F13C15,stroke:#000000,stroke-width:1px; classDef Pink fill:#ffb6c1,stroke:#000000,stroke-width:1px; TC[\Token Counter/] class TC Orange Scheduler class Scheduler Orange SDK class SDK Green subgraph Aperture_Cloud ["Aperture Cloud"] Scheduler -- "Counting" --> TC end class Aperture_Cloud Green SDK -- "Schedule Request" --> Scheduler

The diagram provides an overview of concurrency scheduling in action, where the scheduler queues and prioritizes requests once the service limit is hit and keeps the count with a token counter.

Requests coming into the system are categorized into different workloads, each of which is defined by its priority and weight. This classification is crucial for the request scheduling process.

The scheduler priorities request admission based the priority and weight assigned to the corresponding workload. This mechanism ensures that high-priority requests are handled appropriately even under high load.

Pre-Requisites

Before exploring Aperture's concurrency scheduling capabilities, make sure that you have signed up to Aperture Cloud and set up an organization. For more information on how to sign up, follow our step-by-step guide.

Concurrency Scheduling with Aperture SDK

The first step to using the Aperture SDK is to import and set up Aperture Client:


You can obtain your organization address and API Key within the Aperture Cloud UI by clicking the Aperture tab in the sidebar menu.

The next step consists of setting up essential business labels to prioritize requests. For example, requests can be prioritized by user tier classifications:


The next step is making a startFlow call to Aperture. For this call, it is important to specify the control point (concurrency-scheduling-feature in our example) and the labels that will align with the concurrency scheduling policy. The priority label is necessary for request prioritization, while the workload label differentiates each request.

According to the policy logic designed to prevent service limit breaches, Aperture will, on each startFlow call, either give precedence to a critical request or queue a less urgent one when approaching API limits. The duration a request remains in the queue is determined by the gRPC deadline, set within the startFlow call. Setting this deadline to 120000 milliseconds, for example, indicates that the request can be queued for a maximum of 2 minutes. After this interval, the request will be rejected.

In this example, we're only tracking and logging requests sent to Aperture. However, once the startFlow call is made, business logic can be executed directly, as excess requests are queued, eliminating the need to check if a flow shouldRun.


It is important to make the end call after processing each request, to remove in-flight requests and send telemetry data that would provide granular visibility for each flow.

Create a Concurrency Scheduling Policy

Navigate to the Policies tab on the sidebar menu, and select Create Policy in the upper-right corner. Next, choose the Request Prioritization blueprint, and from the drop-down options select Concurrency based. Now, complete the form with these specific values:

  1. Policy Name: Unique for each policy, this field can be used to define policies tailored for different use cases. Set the policy name to concurrency-scheduling-test.
  2. Limit by label key: Determines the specific label key used for concurrency limits. We'll use user_id as an example.
  3. Max inflight duration: Configures the time duration after which flow is assumed to have ended in case the end call gets missed. We'll set it to 60s as an example.
  4. Max concurrency: Configures the maximum number of concurrent requests that a service can take. We'll set it to 20 as an example.
  5. Priority label key: This field specifies the label that is used to determine the priority. We will leave the label as it is.
  6. Tokens label key: This field specifies the label that is used to determine tokens. We will leave the label as it is.
  7. Workload label key: This field specifies the label that is used to determine the workload. We will leave the label as it is.
  8. Control point: It can be a particular feature or execution block within a service. We'll use concurrency-scheduling-feature as an example.

Concurrency Scheduling Policy

Once you've completed these fields, click Continue and then Apply Policy to finalize the policy setup.

Next, we'll proceed to run an example to observe the newly implemented policy in action.

Concurrency Scheduling in Action

Begin by cloning the Aperture JS SDK. Look for the concurrency_scheduler_example.ts in the example directory within the SDK.

Switch to the example directory and follow these steps to run the example:

  1. Install the necessary packages:
    • Run npm install to install the base dependencies.
    • Run npm install @fluxninja/aperture-js to install the Aperture SDK.
  2. Run npx tsc to compile the TypeScript example.
  3. Run node dist/concurrency_scheduler_example.js to start the compiled example.

Once the example is running, it will prompt you for your Organization address and API Key. In the Aperture Cloud UI, select the Aperture tab from the sidebar menu. Copy and enter both your Organization address and API Key to establish a connection between the SDK and Aperture Cloud.

Monitoring Concurrency Scheduling Policy

After running the example for a few minutes, you can review the telemetry data in the Aperture Cloud UI. Navigate to the Aperture Cloud UI, and click the Policies tab located in the sidebar menu. Then, select the concurrency-scheduling-test policy that you previously created.

Once you've clicked on the policy, you will see the following dashboard:

Workload

The two panels above provide insights into how the policy is performing by monitoring the number of accepted and rejected requests along with the acceptance percentage.

Request

The panels above offer insights into the request details, including their latency.

Queue

These panels display insights into queue duration for workload requests and highlight the average of prioritized requests that moved ahead in the queue. Preemption for each token is measured as the average number of tokens a request belonging to a specific workload gets preempted in the queue.