Collaborative data and AI platform

Accelerating AD/ADAS development

The Co-MLOps platform has been designed to scale the development of autonomous driving AI.

About Co-MLOps

The more participants that join, the greater the benefit for all

Developed by TIER IV, the Co-MLOps platform makes it possible to accelerate AI development using large-scale shared data collected from around the world.

Data Pipeline Workflow

Enhance autonomous driving AI development

Sensor data such as camera images and LiDAR point clouds collected from various regions around the world can be shared through the Co-MLOps platform. With MLOps features and edge AI reference models, the platform equips companies to enhance autonomous driving AI.

Large-scale Data Collection

Featuring a reference
sensor suite

To support the rapid development and optimization of autonomous driving systems, we offer comprehensive services including advanced data collection, cloud management, and image anonymization for privacy protection.

  • Data collection vehicles are equipped with time-synchronized and calibrated sensors such as cameras and LiDAR, enabling high-precision recording of road conditions and surrounding environments.

  • Collected data is securely stored and efficiently managed in a cloud-based system. The platform supports seamless data retrieval, with automated and manual annotation features.

Protect privacy and secure data

Anonymization Technology

Privacy is safeguarded by anonymizing license plates and human faces. Vast amounts of data are collected from vehicles during autonomous driving. Protecting privacy is crucial. On the cloud side, data anonymization ensures secure data management, while on the edge side, real-time data processing and anonymization at the point of collection reduce privacy risks.

AI-generated Face Replacement

Face Blurring

Active Learning Framework

Active learning features for Al training

Using the collected dataset, uncertainty and reliability are quantified. Specifically, the model's confidence in its predictions is assessed, and areas with high uncertainty are identified to improve the system's accuracy and reliability.

Active learning features optimize data selection for training, even with limited datasets. Labeling and training in areas with high uncertainty are prioritized, among other factors.

Reference AI

Full surround perception for AD/ADAS

The reference AI model is a lightweight model that supports common recognition functions used in AD/ADAS applications. It serves as a foundational model upon which developers can build their own algorithms, facilitating the efficient development of advanced autonomous driving systems.

Data Recording System (DRS)

A robust suite of sensors and computing systems for advanced data collection

The latest-generation automotive sensors enable high-precision 360-degree recording of the vehicle's surroundings over long distances. All devices are synchronized using PTP (Precision Time Protocol) or FSYNC, ensuring seamless operation. The system includes calibration for intrinsic camera parameters, as well as extrinsic parameters between multiple cameras and LiDAR sensors. Equipped with an included storage system, it supports extended data collection sessions. With this DRS (Data Recording System), you can achieve high-quality data collection essential for autonomous driving development.

Annotation samples

Partnerships

  • Hitachi Astemo

    Hitachi Astemo has been involved in Co-MLOps since the 2023 launch of the pilot program, which included data collection across eight global locations. As a lead partner since 2024, Hitachi Astemo has played a key role in advancing the platform’s functionalities, focusing on autonomous driving platforms and software-defined vehicles.

  • Nihon Kotsu

    Since July 2024, taxi operator Nihon Kotsu and TIER IV have been collaborating to promote the development of a large-scale shared data infrastructure. By utilizing vehicles equipped with TIER IV’s Data Recording System, we are jointly building extensive and diverse datasets, contributing to the development of safe autonomous driving technology.

  • The Autoware Foundation

    Established in 2018, the Autoware Foundation oversees the development of Autoware, the world’s first open-source software for autonomous driving, with TIER IV leading efforts to advance the technology while nurturing a collaborative community.

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