Skip to main content

Command line tool to do extract, transform, load and download operations on AI data for a number of projects at MBARI that require detection, clustering or classification workflows.

Project description

MBARI semantic-release License downloads

mbari-aidata

A command line tool to do extract, transform, load (ETL) and download operations on AI data for a number of projects at MBARI that require detection, clustering or classification workflows. This tool is designed to work with Tator, a web based platform for video and image annotation and data management and Redis queues for ingesting data from real-time workflows.

More documentation and examples are available at https://docs.mbari.org/internal/ai/data.

🚀 Features

  • 🧠 Object Detection/Clustering Integration: Loads detection/classification/clustering output from SDCAT formatted results.
  • Flexible Data Export: Downloads from Tator into machine learning formats like COCO, CIFAR, or PASCAL VOC.
  • Crop localizaions into optimized datasets for training classification models.
  • Real-Time Uploads: Pushes localizations to Tator via Redis queues for real-time workflows.
  • Metadata Extraction: Parses images metadata such as GPS/time/date through a plugin-based system (extractors).
  • Duplicate Detection & flexible media references: Supports duplicate media load checks with the --check-duplicates flag.
  • Images or video can be loaded through a web server without needing to upload or move them from your internal NFS project mounts (e.g. Thalassa)
  • Video can be uploaded without needing to figure out how to do the video transcoding required for web viewing.
  • Video tracks can be uploaded into Tator for training and evaluation.
  • Multiple data versions can be downloaded into a single dataset for training or evaluation using the --version flag with comma separated values. Data is combined through Non-Maximum Suppression (NMS) to remove duplicate boxes.
  • Augmentation Support: Augment VOC datasets with Albumentations to boost your object detection model performance.

Requirements

  • Python 3.10 or higher
  • A Tator API token and (optional) Redis password for the .env file. Contact the MBARI AI team for access.
  • 🐳Docker for development and testing only, but it can also be used instead of a local Python installation.
  • For video loads, you will need to install the required Python packages listed in the requirements.txt file, ffmpeg, and the mp4dump tool from https://www.bento4.com/

📦 Installation

Install as a Python package:

pip install mbari-aidata

Create the .env file with the following contents in the root directory of the project:

TATOR_TOKEN=your_api_token
REDIS_PASSWORD=your_redis_password
ENVIRONMENT=testing or production

Create a configuration file in the root directory of the project:

touch config_cfe.yaml

Or, use the project specific configuration from our docs server at https://docs.mbari.org/internal/ai/projects/

This file will be used to configure the project data, such as mounts, plugins, and database connections.

aidata download --version Baseline --labels "Diatoms, Copepods" --config https://docs.mbari.org/internal/ai/projects/uav-901902/config_uav.yml

⚙️Example configuration file:

# config_cfe.yml
# Config file for CFE project production
mounts:
  - name: "image"
    path: "/mnt/CFElab"
    host: "https://mantis.shore.mbari.org"
    nginx_root: "/CFElab"

  - name: "video"
    path: "/mnt/CFElab"
    host: "https://mantis.shore.mbari.org"
    nginx_root: "/CFElab"


plugins:
  - name: "extractor"
    module: "mbari_aidata.plugins.extractors.tap_cfe_media"
    function: "extract_media"

redis:
  host: "doris.shore.mbari.org"
  port: 6382

vss:
  project: "902111-CFE"
  model: "google/vit-base-patch16-224"

tator:
  project: "902111-CFE"
  host: "https://mantis.shore.mbari.org"
  image:
    attributes:
      iso_datetime: #<-------Required for images
        type: datetime
      depth:
        type: float
  video:
    attributes:
      iso_start_datetime:  #<-------Required for videos
        type: datetime
  box:
    attributes:
      Label:
        type: string
      score:
        type: float
      cluster:
        type: string
      saliency:
        type: float
      area:
        type: int
      exemplar:
        type: bool

  track_state:
    attributes:
      Label:
        type: string
      max_score:
        type: float
      num_frames:
        type: int
      verified:
        type: bool
    

Tracks Format

Track data is stored in a compressed .tar.gz file with the -tracks.tar.gz, e.g.

aidata load tracks --input video-tracks/tracks.tar.gz --dry-run --config config_cfe.yml

video-tracks/tracks.tar.gz. This compressed file contains a structure like:

The detections.csv file contains the detections for each frame, e.g.

frame tracker_id label score x y xx xy
3 2 Copepod 0.6826763153076172 0.7003568708896637 0.4995344939055266 0.7221783697605133 0.5368460761176215
3 1 Copepod 0.7094097137451172 0.2693319320678711 0.6148265485410337 0.29686012864112854 0.6434915330674913
3 3 Detritus 0.2776843011379242 0.2693319320678711 0.6148265485410337 0.29686012864112854 0.6434915330674913
4 1 Copepod 0.49819645285606384 0.2683655321598053 0.6125818323206018 0.2965434789657593 0.6455737643771702

Metadata about video is in the metadata.json file, e.g.

{ "video_name": "video.mp4", 
  "video_path": "/data/input/video.mp4", 
  "processed_at": "2025-11-15T13:37:35.997007Z", 
  "total_frames": 12000, 
  "video_width": 1920, 
  "video_height": 1080, 
  "video_fps": 10, 
  "total_detections": 3000, 
  "unique_tracks": 148, 
  "detection_threshold": 0.15, 
  "min_track_frames": 5, 
  "slice_size": 800, 
  "rfdetr_model": "/mnt/models/best/checkpoint_best_total.pth" }

The tracks.csv file contains the tracks for each frame, e.g.

tracker_id label first_frame last_frame frame_count avg_score
2 Detritus 3 37 35 0.3780171153800829
1 Copepod 3 36 31 0.5898609180604258
3 Copepod 3 37 34 0.5619616565458914

🐳 Docker usage

A docker version is also available at mbari/aidata:latest or mbari/aidata:latest:cuda-124. For example, to download data from version Baseline using the docker image:

docker run -it --rm -v $(pwd):/mnt mbari/aidata:latest aidata download --version Baseline --labels "Diatoms, Copepods" --config config_cfe.yml

to download multiple versions

docker run -it --rm -v $(pwd):/mnt mbari/aidata:latest aidata download --version Baseline,ver0 --labels "Diatoms, Copepods" --config config_cfe.yml`

Commands

  • aidata download --help - Download data, such as images, boxes, into various formats for machine learning e.g. COCO, CIFAR, or PASCAL VOC format. Augmentation supported for VOC exported data using Albumentations.
  • aidata load --help - Load data, such as images, boxes, or clusters into either a Postgres or REDIS database
  • aidata db --help - Commands related to database management
  • aidata transform --help - Commands related to transforming downloaded data
  • aidata -h - Print help message and exit.

Source code is available at github.com/mbari-org/aidata.

Development

See the Development Guide for more information on how to set up the development environment or the justfile

🗓️ Last updated: 2025-11-17

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

mbari_aidata-1.63.1.tar.gz (58.8 kB view details)

Uploaded Source

Built Distribution

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

mbari_aidata-1.63.1-py3-none-any.whl (76.9 kB view details)

Uploaded Python 3

File details

Details for the file mbari_aidata-1.63.1.tar.gz.

File metadata

  • Download URL: mbari_aidata-1.63.1.tar.gz
  • Upload date:
  • Size: 58.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/2.2.1 CPython/3.11.14 Linux/6.11.0-1018-azure

File hashes

Hashes for mbari_aidata-1.63.1.tar.gz
Algorithm Hash digest
SHA256 03be85fd067857fcecc14731ac59b832b971b4b1fddf09ba138192437f16429d
MD5 ea629fc93b78122fcd277177d7107817
BLAKE2b-256 297f3c5a233a9ea0a0bb8d3a8825dca0418e867c7690da68232e2b4f0a62f988

See more details on using hashes here.

File details

Details for the file mbari_aidata-1.63.1-py3-none-any.whl.

File metadata

  • Download URL: mbari_aidata-1.63.1-py3-none-any.whl
  • Upload date:
  • Size: 76.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/2.2.1 CPython/3.11.14 Linux/6.11.0-1018-azure

File hashes

Hashes for mbari_aidata-1.63.1-py3-none-any.whl
Algorithm Hash digest
SHA256 8045448cfcf9e3af0a9c46786a53c0aa1f95ca1dcf34e9abe813038ecd9dad2b
MD5 3fe90e5949d3d55560235fadae48c0fb
BLAKE2b-256 f74e9bf1e902fd3507a7f0842f47051d4c7f4b4153cf81a1fd80c6ff7b90231f

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