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WeRide Introduces WITT, a Physical AI Cognitive Foundation Model Built on Atomic Physical Facts

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WeRide (NASDAQ: WRD, HKEX: 0800) launched WITT (World Intelligence Toward Truth), a Physical AI Cognitive Foundation Model that builds AI cognition of the physical world using Atomic Physical Facts (APFs) extracted from real-world multimodal data such as video, images and text.

WITT is built on four core capabilities—Fact Extraction, Fact Reasoning, Fact Verification and Fact Curation—to convert operational driving data into trusted learning signals that support training, evaluation and iteration of autonomous driving and ADAS models. According to WeRide, WITT achieves an average factual error rate about one-third that of leading general-purpose AI models in autonomous driving scenario understanding, cuts token costs by up to 98%, boosts data-processing efficiency by up to 200x, and can process up to 10,000 minutes of vehicle-operation video per day on a single GPU.

Within WeRide’s Physical AI architecture, WITT forms a “flywheel” with the company’s GENESIS simulation model and supports its large-scale L4 and L2++ deployments, including more than 3,000 autonomous vehicles across over 40 cities in 12 countries.

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AI-generated analysis. How Rhea-AI works. Not financial advice.

Positive

  • Token cost reduction of up to 98% versus general-purpose AI models
  • Data-processing efficiency up to 200x higher in comparable workloads
  • Processes up to 10,000 minutes of vehicle video per GPU per day
  • Average factual error rate about one-third of leading general AI models
  • Over 3,000 autonomous vehicles deployed across 40+ cities in 12 countries
  • WRD 3.0 selected for ~30 vehicle programs and in production on multiple platforms

Negative

  • None.

Market Context

Past AI news has averaged about a -1.14% move, so traders may watch whether this model launch alters...
Analysis

Past AI news has averaged about a -1.14% move, so traders may watch whether this model launch alters that pattern.

Key Figures

Token cost reduction: 98% Data-processing efficiency gain: 200x Factual error rate: one-third +5 more
8 metrics
Token cost reduction 98% Compared with significantly larger general-purpose AI models
Data-processing efficiency gain 200x Compared with significantly larger general-purpose AI models
Factual error rate one-third Average factual error rate vs leading general-purpose models in AV tasks
Video processed per GPU 10,000 minutes per day Vehicle-operation video processed on a single GPU by WITT
Dynamic tags per request more than 100 Dynamic labels generated per WITT request in labeling workflows
Autonomous driving permits 8 countries/markets L4 autonomous driving permits obtained by WeRide
Cities deployed more than 40 Cities with autonomous driving products across 12 countries
Autonomous vehicle fleet more than 3,000 vehicles Size of WeRide’s global autonomous vehicle fleet

Previous AI Reports

5 past events · Latest: Jun 25 (Negative)
Same Type Pattern 5 events
Date Event Sentiment 24h Move Catalyst
Jun 25 AI platform award Negative -3.2% GENESIS platform won major AI awards and highlighted cost reductions and deployments.
Mar 16 AI hardware showcase Negative -2.1% Showcased Robotaxi GXR with NVIDIA DRIVE Hyperion and detailed fleet and cost targets.
Jan 27 GENESIS launch Negative -2.0% Launched GENESIS simulation platform uniting physical and generative AI for AV training.
Sep 22 Singapore AV launch Positive +0.3% Announced Grab partnership to launch Ai.R AV service with initial vehicle deployments.
Jul 21 HPC 3.0 launch Positive +1.4% Unveiled HPC 3.0 platform with NVIDIA Thor chips and significant cost reductions.

24h Move is the share-price change in the day after each event; other market factors may also have contributed.

Pattern Detected

AI-tagged announcements have on average been followed by a modest negative move of about -1.14%, suggesting a slightly cautious trading pattern around the company’s AI news.

Key Terms

physical ai, visual-language model, reinforcement learning, adas
4 terms
physical ai technical
"a Physical AI Cognitive Foundation Model designed to build AI cognition"
Physical AI combines artificial intelligence with physical devices or environments, enabling machines to interact with and adapt to the real world in a human-like way. It matters to investors because it can lead to smarter robots, autonomous vehicles, or advanced sensors that improve efficiency and open new markets, potentially creating significant business opportunities and competitive advantages.
visual-language model technical
"Leveraging visual-language model (VLM) capabilities, WITT introduces a new concept"
A visual-language model is a type of artificial intelligence that learns to understand and generate both images and text together, like a system that can describe a photo, answer questions about a chart, or create an image from a written prompt. It matters to investors because these models can power new products and efficiencies—think of them as a tool that can automate image-based tasks, enable novel services, or change cost and revenue profiles—affecting a company's competitive position, growth potential, and operational risks.
reinforcement learning technical
"High-frequency everyday scenarios can support reinforcement learning and workflow optimization."
A type of artificial intelligence that learns by trial and error, receiving feedback from its actions to favor choices that lead to better outcomes. Think of it like a salesperson learning which pitches close deals by trying different approaches and keeping the ones that work. For investors, reinforcement learning matters because it can power smarter trading systems, optimize business operations, or improve products—potentially boosting efficiency and profits while also introducing model and execution risks.
adas technical
"L4 autonomous driving operations and production ADAS systems often contain human interventions"
Advanced Driver Assistance Systems (ADAS) are electronic systems in vehicles that assist the driver with safety tasks. Examples include automatic emergency braking, lane keeping assist, and adaptive cruise control. These systems use sensors and cameras to improve vehicle safety.

AI-generated analysis. How Rhea-AI works. Not financial advice.

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New model transforms real-world operational data into trusted facts and trusted facts into learning signals for Physical AI systems

Key Highlights

  • WeRide unveils WITT (World Intelligence Toward Truth), a Physical AI Cognitive Foundation Model designed to build AI cognition of the physical world through trusted facts extracted from real-world experience.
  • WITT introduces Atomic Physical Facts (APFs), the smallest verifiable units of information about the physical world, establishing a new fact-based cognitive framework for Physical AI.
  • Built on four core capabilities—Fact Extraction, Fact Reasoning, Fact Verification and Fact Curation—WITT continuously transforms real-world data into trusted learning signals for AI training, evaluation and iteration.
  • Compared with significantly larger general-purpose AI models, WITT reduces token costs by up to 98% and delivers up to 200x greater data-processing efficiency.

SHANGHAI, July 17, 2026 (GLOBE NEWSWIRE) -- WeRide (NASDAQ: WRD, HKEX: 0800), a global leader in autonomous driving technology, today unveiled WITT (World Intelligence Toward Truth), a Physical AI Cognitive Foundation Model designed to build AI cognition of the physical world through trusted facts extracted from real-world experience.

Leveraging visual-language model (VLM) capabilities, WITT introduces a new concept called Atomic Physical Facts (APFs) and establishes a fact-based cognitive framework for Physical AI. By connecting multimodal information across video, images and text, WITT decomposes continuously evolving real-world environments into verifiable facts that can be identified, reasoned about and validated, establishing a new generation of AI understanding centered on physical facts.

WITT stands for World Intelligence Toward Truth and is inspired by the philosopher Ludwig Wittgenstein, whose proposition that “the world is the totality of facts” closely aligns with the underlying logic of Physical AI. To build cognition of the physical world, AI must first identify trusted facts embedded in environments, behaviors, rules, risks and temporal relationships. These facts become the foundation for reasoning, judgment and decision-making.

WeRide WITT, a Physical AI Cognitive Foundation Model built on Atomic Physical Facts

WeRide WITT, a Physical AI Cognitive Foundation Model built on Atomic Physical Facts

As Physical AI moves from research into real-world deployment, autonomous driving has emerged as the first domain to achieve large-scale commercial validation. Yet building AI systems that can reliably understand the physical world remains a fundamental challenge.

Vast amounts of real-world data continue to grow exponentially, identifying and utilizing data with genuine training, evaluation and iteration value remains difficult. High-value long-tail scenarios are inherently scarce, while datasets collected from both L4 autonomous driving operations and production ADAS systems often contain human interventions, inactive segments and other forms of noise. General-purpose AI models can also struggle to interpret complex traffic environments consistently, leading to hallucinations, factual errors and incomplete scene understanding.

The industry increasingly needs an efficient and trusted mechanism for understanding data— one capable of continuously extracting meaningful scene facts from real-world driving data, improving the quality and efficiency of training, evaluation and model iteration, and transforming real-world experience into trusted learning signals that drive the evolution of autonomous systems.

WITT was developed to address this challenge.

Rooted in WeRide’s large-scale autonomous driving operations, WITT continuously extracts patterns, relationships and trusted facts from vast volumes of operational data. Rather than treating data as raw inputs for model training, WITT treats trusted facts as the fundamental building blocks of Physical AI cognition. This foundation enables the model to transform real-world experience into structured knowledge through four core capabilities: Fact Extraction, Fact Reasoning, Fact Verification and Fact Curation.

Together, these capabilities create a complete pipeline spanning scene understanding, event attribution, data validation and learning curation—allowing every kilometer of real-world driving data to become a trusted signal for model improvement.

Fact Extraction

WITT identifies and extracts three categories of Atomic Physical Facts from real-world driving data: standard driving facts, multi-agent interaction facts and physically ambiguous conditions. Together, these facts capture everyday traffic behaviors, evolving relationships among traffic participants and uncertainty within complex physical environments.

For example, a driving video can be decomposed into multiple Atomic Physical Facts, including reduced visibility caused by rain, a pedestrian entering a crosswalk, an ego vehicle slowing down, a nearby vehicle traveling in parallel, changing traffic signals and increasing collision risk. Each fact is designed to be highly reliable, traceable and verifiable, enabling richer scene descriptions and providing the foundation for subsequent reasoning, validation and learning.

Fact Reasoning

After extracting facts, WITT analyzes key events, behavioral relationships and evolving risks within a scene, while identifying the underlying causes and potential trajectories of those events.

During the R&D phrase of Autonomous Driving, engineers often need to search vast video datasets for specific long-tail scenarios, such as pedestrians suddenly crossing in construction zones, lane departures under poor visibility conditions, or complex yielding maneuvers in narrow-road encounters. Powered by an integrated video intelligence engine, WITT enables users to retrieve target scenarios through keywords or natural-language queries, dramatically improving the efficiency of scenario discovery, data investigation and root-cause analysis.

Fact Verification

To reduce hallucinations commonly associated with general-purpose AI models, WITT evaluates outputs across six dimensions:

  • Vulnerable road users
  • Ego-vehicle behavior
  • Surrounding vehicle behavior
  • Scene understanding
  • Comprehensive fact
  • Traffic facilities

The model introduces factual confidence scoring and validates conclusions against external physical evidence to determine whether interpretations are supported by observable reality.

By tracking factual errors, hallucinations, omissions and temporal inconsistencies, WITT provides both a quality benchmark for data users and a preference signal for model training, continuously guiding AI systems toward more accurate and physically grounded understanding.

Today, WITT achieves an average factual error rate approximately one-third that of leading general-purpose AI models in autonomous driving scenario understanding tasks.

Fact Curation

In real-world operations, not all data contribute equally to model learning. WITT automatically identifies high-value facts and routes them into the most effective learning workflows to maximize model improvement.

Rare long-tail scenarios can be returned to WeRide GENESIS, the company’s proprietary general-purpose simulation model, for simulation training and scenario expansion. High-frequency everyday scenarios can support reinforcement learning and workflow optimization. Abnormal or ambiguous data can be directed into review processes to prevent valuable information from being mistakenly discarded as noise.

By ensuring that every piece of data follows the most appropriate learning path, WITT maximizes the value of real-world operational data and continuously converts experience into model intelligence.

Within WeRide’s Physical AI architecture, WITT serves as the critical understanding and evaluation layer. Together with WeRide GENESIS, the company’s proprietary general-purpose simulation model, WITT forms a Physical AI flywheel that continuously converts real-world experience into model improvement.

WITT extracts, understands, verifies and curates physical facts from real-world data, while GENESIS generates high-fidelity simulation environments and long-tail training scenarios based on those facts. Together, the two systems train and improve vehicle-side models, enabling autonomous driving systems to continuously evolve through both real-world experience and synthetic-world learning.

Compared with general-purpose AI models that often rely on hundreds of billions of parameters, WITT delivers strong performance with a significantly more efficient architecture. The model reduces token costs by up to 98%, processes up to 10,000 minutes of vehicle-operation video per day on a single GPU and delivers up to 200 times greater data-processing efficiency in comparable workloads.

In labeling workflows, a single request to WITT can generate more than 100 dynamic tags, enabling massive volumes of real-world driving video to be rapidly retrieved, validated and incorporated into model-development pipelines, where they become continuously accumulating fact assets.

Supported by this Physical AI flywheel, WeRide has become the world’s only company to achieve large-scale commercial deployment of both L4 autonomous driving and L2++ intelligent driving systems.

In the L4 domain, WeRide has obtained autonomous driving permits across eight countries and markets, deployed autonomous driving products in more than 40 cities across 12 countries, and operates a fleet of more than 3,000 autonomous vehicles. Its Robotaxi services have already achieved regular, large-scale fully driverless commercial operations in Guangzhou, Beijing, Abu Dhabi and Dubai.

At the same time, high-quality data and model capabilities accumulated through L4 operations are continuously being transferred to WeRide’s one-stage end-to-end ADAS solution through the company’s Physical AI flywheel. Today, WRD 3.0 has secured an unprecedented six consecutive wins at the China Urban Intelligent Driving Competition. The solution has also been selected for close to 30 vehicle programs and entered production on multiple vehicle platforms, including models from Chery Exeed and GAC Aion. Beyond China, it has expanded technology validation footprint into international markets such as Germany, France and Japan.

Starting from autonomous driving—one of the most data-intensive and operationally complex environments for Physical AI—WITT demonstrates a broader potential for Physical AI applications.

As Physical AI enters a new phase of large-scale deployment, WeRide will continue advancing cognitive foundation models grounded in real-world validation, enabling AI to move beyond understanding the physical world toward operating within it at scale.

About WeRide
WeRide is a global leader and a first mover in the autonomous driving industry, as well as the first publicly traded Robotaxi company. Our autonomous vehicles have been tested or operated in over 40 cities across 12 countries. We are also the first and only technology company whose products have received autonomous driving permits in eight markets: China, the UAE, Singapore, France, Switzerland, Saudi Arabia, Belgium, and the US. Empowered by the smart, versatile, cost-effective, and highly adaptable WeRide One platform, WeRide provides autonomous driving products and services from L2 to L4, addressing transportation needs in the mobility, logistics, and sanitation industries. WeRide was named to Fortune's 2025 Change the World and 2025 Future 50 lists.

Media Contacts
WeRide: pr@weride.ai

Safe Harbor Statement
This press release contains statements that may constitute “forward-looking” statements pursuant to the “safe harbor” provisions of the U.S. Private Securities Litigation Reform Act of 1995. These forward-looking statements can be identified by terminology such as “will,” “expects,” “anticipates,” “aims,” “future,” “intends,” “plans,” “believes,” “estimates,” “likely to,” and similar statements. Statements that are not historical facts, including statements about WeRide’s beliefs, plans, and expectations, are forward-looking statements. Forward-looking statements involve inherent risks and uncertainties. Further information regarding these and other risks is included in WeRide’s filings with the U.S. Securities and Exchange Commission and announcements on the website of the Hong Kong Stock Exchange. All information provided in this press release is as of the date of this press release. WeRide does not undertake any obligation to update any forward-looking statement, except as required under applicable law.

A photo accompanying this announcement is available at https://www.globenewswire.com/NewsRoom/AttachmentNg/1c65b514-0de6-4659-aa53-fa043da4cdf1


FAQ

What is WeRide WITT and how does it support autonomous driving for WRD?

WeRide WITT is a Physical AI Cognitive Foundation Model that converts real-world driving data into trusted facts. According to WeRide, it powers training, evaluation and iteration of autonomous driving and ADAS systems by extracting, reasoning over, verifying and curating Atomic Physical Facts from multimodal inputs.

How much efficiency improvement does WITT deliver compared with general AI models for WRD?

According to WeRide, WITT reduces token costs by up to 98% and delivers up to 200x greater data-processing efficiency. It can process about 10,000 minutes of vehicle-operation video per day on a single GPU, supporting large-scale, cost-effective autonomous driving data workflows.

How accurate is WITT in autonomous driving scenario understanding for WeRide (NASDAQ: WRD)?

WITT currently achieves an average factual error rate about one-third that of leading general-purpose AI models, according to WeRide. It evaluates outputs across six dimensions, applies factual confidence scoring, and checks interpretations against observable physical evidence to reduce hallucinations and factual omissions.

How does WITT fit into WeRide’s Physical AI flywheel with GENESIS?

According to WeRide, WITT extracts, verifies and curates physical facts from operational data, while GENESIS generates high-fidelity simulations and long-tail scenarios based on those facts. Together, they form a Physical AI flywheel that continuously improves vehicle-side autonomous driving and ADAS models through real and synthetic experience.

What scale of autonomous driving operations does WeRide report alongside the WITT launch?

WeRide reports more than 3,000 autonomous vehicles deployed in over 40 cities across 12 countries, with permits in eight markets. According to WeRide, its Robotaxi services operate fully driverless commercial services in Guangzhou, Beijing, Abu Dhabi and Dubai, supported by its Physical AI architecture.

How is WeRide’s WRD 3.0 ADAS solution benefiting from WITT and Physical AI?

According to WeRide, data and models from L4 operations feed into its one-stage end-to-end ADAS. WRD 3.0 has achieved six consecutive wins at the China Urban Intelligent Driving Competition and has been selected for close to 30 vehicle programs, entering production on multiple platforms.

What are Atomic Physical Facts (APFs) in WeRide WITT and why are they important?

Atomic Physical Facts are the smallest verifiable units describing physical-world conditions, behaviors and risks. According to WeRide, WITT decomposes driving scenes into APFs, enabling reliable scene descriptions, richer reasoning, improved data validation, and more targeted learning signals for autonomous driving and ADAS model development.