Skip to main content

No project description provided

Project description

App Verification Suite

App Verification Suite is a Python library for recording OAK app inputs into datasets, replaying those datasets back into normal DepthAI pipelines, and optionally recording or verifying structured app outputs.

What the library does

  • switches an app between live and replay modes
  • records camera and IMU inputs into reusable datasets
  • replays recorded datasets through the same DepthAI pipelines
  • captures calibration needed for replay
  • optionally records structured expected outputs
  • optionally verifies replayed structured outputs
  • stores datasets locally or in S3

Public API at a glance

Top-level exports from app_verification_suite include:

  • AppVerificationRuntime
  • LocalFilesystemStorageBackend
  • S3StorageBackend
  • structured-output models such as AppData, AppDataField, and AppVerificationResult

The main entrypoint is AppVerificationRuntime.

Core concepts

  • AppVerificationRuntime is the main entrypoint and runs in either live mode or replay mode.
  • You create cameras and IMUs through the runtime so the same application pipeline can work in both modes.
  • In live mode, you can start and stop recording while the application is already running. This makes it practical to capture datasets during normal runtime, for example when certain events occur such as low-confidence detections.
  • In replay mode, the runtime serves recorded inputs back into the pipeline so those datasets can be analyzed and replayed offline to improve the application.
  • Replay is strict: camera and IMU requests must match what was recorded.
  • stop_recording() ends the active recording session, writes dataset artifacts locally, then starts backend finalization in the background. The returned Future lets you wait for upload/publish completion and observe failures.
  • Replay uses the calibration stored in the dataset.

Installation

Install from PyPI:

pip install app-verification-suite

Quick start

Record a dataset

import depthai as dai

from app_verification_suite import (
    AppVerificationRuntime,
    LocalFilesystemStorageBackend,
)

storage = LocalFilesystemStorageBackend("datasets")
runtime = AppVerificationRuntime.live(
    storage_backend=storage,
    application_id="my-app",
    application_version="0.1.0",
)

with dai.Pipeline() as pipeline:
    camera = runtime.create_camera(
        pipeline=pipeline,
        socket=dai.CameraBoardSocket.CAM_A,
        sensor_fps=30.0,
    )
    preview = camera.requestOutput(size=(640, 480), fps=30.0)
    # Link preview into the rest of your pipeline.

    pipeline.build()
    pipeline.start()

    runtime.start_recording(dataset_id="demo")
    # Run the application here.
    upload_future = runtime.stop_recording()
    upload_future.result()

Replay a dataset

import depthai as dai

from app_verification_suite import (
    AppVerificationRuntime,
    LocalFilesystemStorageBackend,
)

storage = LocalFilesystemStorageBackend("datasets")
runtime = AppVerificationRuntime.replay(
    dataset_id="demo",
    storage_backend=storage,
    loop=False,
)

with dai.Pipeline() as pipeline:
    camera = runtime.create_camera(
        pipeline=pipeline,
        socket=dai.CameraBoardSocket.CAM_A,
        sensor_fps=30.0,
    )
    preview = camera.requestOutput(size=(640, 480), fps=30.0)
    # Link preview into the rest of your pipeline.

Replay requests must match the recorded manifest, including socket, sensor settings, and requestOutput(...) parameters. In replay mode, requestOutput(...) requires fps.

Example scripts

The repository includes two runnable examples:

Record locally

python examples/dataset_recording.py --dataset-id demo
  • uses LocalFilesystemStorageBackend("datasets")
  • writes the dataset under datasets/demo/
  • records a simple structured app metric from the CAM_A preview into dataset-root expected.jsonl
  • opens a visualizer at http://127.0.0.1:8082
  • stop by pressing q

Replay locally

python examples/dataset_replay.py --dataset-id demo
  • reads the dataset from datasets/demo/
  • replays the same CAM_A metric through AppVerifier, prints per-frame pass/fail, and summarizes results when expected.jsonl is present
  • warns and falls back to plain replay/visualization when expected.jsonl is missing
  • opens the same visualizer view for replayed streams

Use the S3 example path

Both example scripts also support:

python examples/dataset_recording.py --storage-backend s3 --dataset-id demo
python examples/dataset_replay.py --storage-backend s3 --dataset-id demo

They read S3 configuration from:

  • S3_BUCKET_NAME
  • S3_ACCESS_KEY_ID
  • S3_ENDPOINT
  • S3_REGION
  • S3_SECRET_ACCESS_KEY

IMU usage

Create IMU inputs through the runtime so recording and replay stay symmetric:

imu = runtime.create_imu(
    pipeline=pipeline,
    enabled_sensors=[
        (dai.IMUSensor.ACCELEROMETER_RAW, 400),
        (dai.IMUSensor.GYROSCOPE_RAW, 400),
    ],
    batch_report_threshold=5,
    max_batch_reports=10,
)

imu.out.link(...)

Structured output recording and verification

Use the same AppData / AppDataField message shape in both modes. Your app should emit AppData on a normal pipeline output, then the runtime attaches either a recorder or a verifier to that output stream.

AppDataField uses plain equality by default, and its verifier is ignored during recording. Field values can be any JSON-serializable value, including nested structures such as dict or list.

Record expected app output

In live mode, attach a recorder to an output that emits AppData:

metric_producer = pipeline.create(AppDataMetricProducer).build(cam_a_out)
runtime.create_app_data_recorder(pipeline, metric_producer.out)

While recording is active, the recorder writes dataset-root expected.jsonl.

Verify replayed app output

In replay mode, attach a verifier to the same kind of AppData output:

metric_producer = pipeline.create(AppDataMetricProducer).build(cam_a_out)
verifier = runtime.create_verifier(pipeline, metric_producer.out)
verifier.out.link(...)

The verifier loads expected.jsonl, matches rows by sequence_num, and emits AppVerificationResult messages.

Emitting AppData

The producer output should send AppData messages like this:

app_data = AppData()
app_data.setSequenceNum(frame.getSequenceNum())
app_data.fields = [
    AppDataField(name="label", value=label),
    AppDataField(name="metadata", value={"source": "cam_a", "ok": True}),
]
self.out.send(app_data)

Custom verifiers

For custom comparisons during replay, set a custom verifier on the field emitted by your replay-side AppData producer:

AppDataField(
    name="score",
    value=score,
    verifier=lambda actual, expected: abs(actual - expected) <= 0.05,
)

Dataset layout

A finalized dataset currently looks like this:

datasets/<dataset_id>/
  manifest.json
  expected.jsonl                # optional
  calibrations/
    calibration-events.jsonl
    000000.json
    000001.json                 # optional later calibration updates
    ...
  inputs/
    <video_input_id>/
      000000.mp4
      000000.frames.jsonl
      000001.mp4
      000001.frames.jsonl
      ...
    <imu_input_id>/
      000000.jsonl

manifest.json currently stores separate top-level video_inputs and imu_inputs lists.

Current scope and limitations

  • DepthAI v3 only
  • recording currently requires at least one video output before start_recording(...)
  • replay request validation is strict by design

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

app_verification_suite-0.1.0.tar.gz (64.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

app_verification_suite-0.1.0-py3-none-any.whl (54.6 kB view details)

Uploaded Python 3

File details

Details for the file app_verification_suite-0.1.0.tar.gz.

File metadata

  • Download URL: app_verification_suite-0.1.0.tar.gz
  • Upload date:
  • Size: 64.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.10.20

File hashes

Hashes for app_verification_suite-0.1.0.tar.gz
Algorithm Hash digest
SHA256 bce673519193216aa3bc9b2b5839c6f2d13679193482294a718bcad6d4293543
MD5 e57e7d2113239b2ff40389d500d5533e
BLAKE2b-256 8c066eeb62ed997d1410f96aaafcb8b53c81a7e24425bff977e672afe0a339e2

See more details on using hashes here.

File details

Details for the file app_verification_suite-0.1.0-py3-none-any.whl.

File metadata

File hashes

Hashes for app_verification_suite-0.1.0-py3-none-any.whl
Algorithm Hash digest
SHA256 b920713bf97f2cb826b9a51bac0d8128de02c6266a242c3209677a9e4474a585
MD5 41456c624f22970a4ad5c25627b16664
BLAKE2b-256 fdf572c1d1099d2598dd688a6a71e25a2e8f09c01995a2acfba5e456ab9ca4ee

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page