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AI in Automotive Cybersecurity Market Size
The global AI in automotive cybersecurity market size was estimated at USD 1.5 billion in 2025. The market is expected to grow from USD 1.8 billion in 2026 to USD 5.4 billion in 2035, at a CAGR of 12.8% according to latest report published by Global Market Insights Inc.
To get key market trends
The rapid growth of connected vehicles, autonomous technologies, and software-defined architecture has reshaped automotive cybersecurity. With over 100 million lines of code in ECUs, vehicles face an expanded attack surface, driving the need for AI-powered security solutions to combat evolving cyber threats.
From July 2024, UNECE Regulation No. 155 (R155) and R156 will require OEMs in 64 countries to implement certified Cybersecurity Management Systems (CSMS) and Software Update Management Systems (SUMS) for all new vehicles. Influenced by ISO/SAE 21434 standards, this mandate is driving investments in AI-powered threat detection, risk assessment, and automated incident response across the automotive value chain.
AI in Automotive Cybersecurity Market Report Attributes
Key Takeaway
Details
Market Size & Growth
Base Year
2025
Market Size in 2025
USD 1.5 Billion
Market Size in 2026
USD 1.8 Billion
Forecast Period 2026 - 2035 CAGR
12.8%
Market Size in 2035
USD 5.4 Billion
Key Market Trends
Drivers
Impact
Rising connected, electric, and autonomous vehicle adoption
Significantly increases the attack surface, driving strong demand for AI-based continuous monitoring and real-time threat detection.
Mandatory compliance with UN R155/R156 and ISO/SAE 21434
Compels OEMs to implement AI-enabled cybersecurity management systems for lifecycle risk assessment and regulatory compliance.
Accelerates adoption of machine learning solutions capable of detecting zero-day, behavioral, and multi-vector cyber threats.
Growth of software-defined vehicles and OTA updates
Drives demand for AI-powered security to protect software supply chains, OTA integrity, and centralized vehicle architectures.
Expansion of V2X and in-vehicle digital services
Boosts need for AI-driven protection of communication channels, user data, and transactional security in connected ecosystems.
Pitfalls & Challenges
Impact
High implementation and integration costs
Increases upfront investment and total cost of ownership, potentially slowing adoption among cost-sensitive OEMs and Tier-1 suppliers.
Complexity of AI-based cybersecurity systems
Raises deployment, validation, and maintenance challenges, extending development timelines and increasing operational complexity across vehicle platforms.
Opportunities:
Impact
AI-driven predictive threat detection solutions
Enables proactive identification of cyber threats, reducing breach risks and enhancing vehicle network resilience.
Edge AI for real-time, low-latency security
Supports instant threat detection and response within vehicles, minimizing reliance on cloud and improving operational safety.
Biometric authentication for vehicle access and payments
Strengthens user identity verification, securing in-vehicle transactions and preventing unauthorized access.
Security-as-a-service and subscription-based models
Offers scalable, recurring revenue solutions for OEMs and suppliers while simplifying deployment and updates.
Market Leaders (2025)
Market Leaders
Continental
15% Market Share
Top Players
Continental
Denso
Harman International
Karamba Security
Upstream Security
Collective Market Share is 41%
Competitive Edge
Continental utilizes AI-driven cybersecurity and connected vehicle monitoring to detect threats in real-time and secure ECU communications.
Denso enhances in-vehicle network security for ADAS and powertrain ECUs by utilizing machine learning and anomaly detection systems.
Harman International leverages AI-powered platforms to secure infotainment, telematics, and connected vehicle applications.
Karamba Security provides AI-powered, automated attack prevention solutions for embedded vehicle systems, focusing on ECUs, firmware integrity, and OTA updates.
Upstream Security uses cloud-based AI analytics to monitor fleet cybersecurity and detect zero-day threats, ensuring secure connected vehicle operations.
Regional Insights
Largest Market
North America
Fastest growing market
Asia Pacific
Emerging countries
Brazil, Mexico, UAE, Israel, Poland
Future outlook
The growing adoption of connected, electric, and autonomous vehicles is driving significant market growth by expanding the cybersecurity attack surface.
Advancements in AI, machine learning, and edge computing are improving real-time threat detection and predictive security in vehicles.
Growth is driven by regulatory compliance, V2X communication, OTA updates, and OEM and Tier-1 investments in AI-based cybersecurity solutions.
What are the growth opportunities in this market?
Between 2015 and 2020, connected car adoption rose from 35% to nearly 98%, with Over-The-Air (OTA) updates becoming a standard feature. A 2026 survey revealed that 52% of U.S. consumers would keep their vehicles longer with regular OTA updates, while 26% would extend ownership by two to three years. The shift to software-defined vehicle (SDV) architectures enables AI-driven security features but increases vulnerability to large-scale cyberattacks.
Cybersecurity incidents in the automotive industry surged by 225% from 2018 to 2021, with 60% affecting vehicles, charging stations, and connected devices. Large-scale incidents impacting millions of vehicles rose from 5% in 2023 to 19% in 2024. The NHTSA highlights that combining V2X technology with AI-driven security could reduce crashes involving unimpaired drivers by up to 80%, showcasing both the benefits and risks of connectivity.
For instance, in September 2025, a cyberattack on Jaguar Land Rover (JLR) disrupted global vehicle production, forcing facility shutdowns. This highlighted the increasing cybersecurity risks in the automotive industry and the critical need for AI-driven threat detection and risk mitigation in connected and software-defined vehicle platforms.
Regional markets exhibit varied adoption timelines and growth rates. North America leads with early regulatory actions, including NHTSA's 2022 cybersecurity best practices and the 2025 Connected Vehicle Rule. Europe advances with UNECE R155/R156, ENISA guidelines, and the upcoming Cyber Resilience Act. Asia Pacific, the smallest region, shows the highest growth potential, driven by China's GB standards and India's AIS 189/190 frameworks.
AI in Automotive Cybersecurity Market Trends
The automotive industry's shift to software-defined vehicles (SDVs) marks a significant architectural change, with software managing operations, enhancing functionality, and enabling remote features. Tesla pioneered OTA updates in 2012, and by 2022, other OEMs adopted similar capabilities for infotainment and navigation. Industry experts say that in-person software updates cost OEMs around $450-$500 million annually, driving the push for remote update infrastructure.
The automotive cybersecurity landscape is aligning globally with UNECE Regulations No. 155 (R155) and No. 156 (R156). Adopted in June 2020 and mandatory for new vehicle types since July 2022, these regulations will apply to all newly produced vehicles from July 2024. They require manufacturers to maintain a certified Cybersecurity Management System (CSMS) across all lifecycle phases, with certification valid for three years and subject to renewal.
AI enhances OTA infrastructure security through machine learning, which detects anomalous download requests, and NLP, which identifies suspicious metadata or changelogs. Cryptographic key management ensures only authenticated updates are installed, while anomaly detection flags unauthorized system modifications during installation.
The SDV market is growing rapidly, with companies like AMD and HERE Technologies enhancing development capabilities. ZF, Google, and Stellantis, in partnership with Leap motor, are adopting Qualcomm's chip platforms to support SDVs. However, challenges such as software complexities, regulatory hurdles, and hardware constraints persist, prompting some manufacturers like Rivian to consider transitioning to "AI-defined vehicles" as AI technology advances.
Vehicle-to-Everything (V2X) communication is transforming road safety and traffic efficiency while introducing cybersecurity challenges that require AI-driven solutions. The V2X automotive market is projected to grow at a 38% annual rate, from $619 million in 2021 to over $2.2 billion by 2025. NHTSA estimates that implementing two V2V safety applications could prevent 13-18% of crashes annually, saving $55 to $74 billion.
The automotive industry is transitioning to predictive cybersecurity by utilizing artificial intelligence for threat anticipation and automated responses. Since January 2016, the Automotive Information Sharing and Analysis Center (Auto-ISAC) has provided real-time cybersecurity intelligence, but manual threat analysis cannot match the growing speed and volume of attacks on modern vehicle fleets.
For instance, in September 2025, Stellantis, the global automaker behind brands like Citroën, FIAT, Jeep, and Dodge, reported a cybersecurity breach caused by unauthorized access through a third-party service provider. The incident exposed customer data and highlighted the growing need for robust AI-driven cybersecurity in automotive digital ecosystems.
AI in Automotive Cybersecurity Market Analysis
Learn more about the key segments shaping this market
The software segment's commanding leadership reflects the fundamental shift toward software-defined vehicle architectures where functionality is managed primarily through code rather than hardware.
Software security solutions include embedded software security for ECU firmware, application security for infotainment platforms, and secure boot environments to authenticate code execution.
They also manage cryptographic keys for secure communications and updates, while utilizing AI-driven threat detection to analyze vehicle network behavior.
The software segment is growing due to the increasing use of code in modern vehicles, which now feature over 100 million lines of code in ECUs managing functions like powertrain and infotainment.
The segment includes both embedded software running on vehicle ECUs and cloud-based software managing fleet operations, OTA updates, and connected services.
The cloud component is expanding rapidly as OEMs adopt subscription-based models, offering features like advanced driver assistance and performance upgrades via secure software platforms.
For instance, in February–March 2025, Hyundai Auto Ever America, the IT services arm of Hyundai Group, experienced a major data breach. Cyberattacks accessed its systems for over a week, potentially exposing millions of vehicle owners' personal information and revealing vulnerabilities in cloud-based and in-vehicle software ecosystems.
In 2025, hardware is projected to capture a 27% share of the AI in automotive cybersecurity market. These hardware security solutions serve as the bedrock of automotive cybersecurity, integrating physical components with inherent security features.
Key hardware elements include Hardware Security Modules (HSMs) for secure cryptographic key storage and encryption/decryption in tamper-resistant environments, and secure microcontrollers with integrated security features for critical ECUs.
Other components include Hardware Root of Trust for secure boot processes, Physical Unclonable Functions (PUFs) for unique device authentication, and specialized security processors to handle intensive cryptographic tasks without affecting vehicle performance.
The services segment includes professional and managed services supporting automotive cybersecurity. Key offerings include security consulting for CSMS and R155 certification, penetration testing, incident response, 24/7 SOC monitoring, cybersecurity training, and compliance support for regional regulations.
The services segment's growth, while slower than hardware and software, reflects the increasing complexity of automotive cybersecurity that exceeds internal capabilities of many manufacturers.
Learn more about the key segments shaping this market
Cloud-based cybersecurity solutions utilize centralized cloud platforms to deliver scalable threat intelligence, fleet-wide security analytics, and rapid security updates across vehicle populations.
The cloud deployment model supports the automotive industry's shift toward connected services and over-the-air (OTA) updates by enabling vehicle communication management and software distribution through cloud backends.
Cloud technology enables the aggregation and analysis of security data from millions of vehicles to identify threats, deploy updates without recalls, and scale analytics for growing fleets. It also centralizes incident response and supports machine learning on large datasets, which individual vehicle hardware cannot process.
Major cloud providers (AWS, Google Cloud, Microsoft Azure) are partnering with automotive OEMs and cybersecurity vendors to provide automotive-specific cloud security platforms.
For instance, in October 2025, a major AWS outage disrupted operations for global automotive manufacturers. The incident exposed the risks of relying on cloud platforms for vehicle production, connected services, and real-time security analytics.
On-premises solutions include both in-vehicle (edge) security systems and on-premises data center infrastructure at OEM facilities and service centers.
This deployment mode integrates security features into vehicle hardware and software, ensuring protection without relying on cloud connectivity, even if cellular networks are unavailable or compromised.
On-premises systems provide immediate threat detection, operate during connectivity outages, and keep vehicle data local to address privacy concerns. They reduce ongoing costs and comply with data localization regulations in specific jurisdictions.
The on-premises model is vital for safety-critical security functions that cannot tolerate cloud communication latency. For instance, AI-based intrusion detection must operate at bus speed (up to 1 Mbps for CAN, 5 Mbps for CAN-FD) to block malicious commands before they affect critical ECUs. Similarly, secure boot verification must occur locally during vehicle startups to avoid risks associated with cloud authentication.
Based on vehicle, the AI in automotive cybersecurity market is segmented into passenger cars, commercial vehicles, and electric vehicles. The passenger cars segment dominates with 63% market share in 2025 with 13% CAGR during 2026 to 2035.
The passenger cars segment's leadership reflects the high volume of passenger car production and the rapid adoption of connected features in consumer vehicles.
Mid-range and premium vehicles now feature advanced infotainment systems, ADAS, and Level 2 autonomous capabilities.
Luxury brands like Mercedes-Benz, BMW, and Audi are testing Level 3 autonomous vehicles, emphasizing the need for strong cybersecurity in perception, planning, and control systems.
Modern passenger vehicles generate extensive personal data through GPS navigation, infotainment, and telematics systems, which track route histories, voice commands, and driving behaviors. This raises critical data privacy and security challenges for the segment.
For instance, in October 2025, cybersecurity researchers identified a critical vulnerability in connected vehicle telematics systems, exposing risks of unauthorized access to car controls and sensitive data. This highlights the growing safety and privacy concerns associated with increasing connectivity in passenger cars.
In 2025, commercial vehicles held a 17% of the AI in automotive cybersecurity market share and are projected to reach USD 787.1 million by 2035, growing at a CAGR of 11.2%. This segment includes light commercial vehicles, medium-duty trucks, and heavy-duty trucks.
NHTSA is investigating cybersecurity challenges in heavy trucks, focusing on threats such as cargo theft, route manipulation, and fleet management system attacks. The commercial vehicle segment's slower growth, driven by longer replacement cycles and cautious technology adoption, contrasts with its high value, reflecting costly systems and the critical role in supply chain logistics.
Electric Vehicles are expected to account for a 21% market share in 2025 and grow to USD 1.2 billion by 2035, registering a CAGR of 13.4%, the highest among vehicle categories. By 2030, electric vehicles (EVs) are projected to comprise 50% of new vehicle sales in the US, driven by Bipartisan Infrastructure Law incentives and global emissions regulations.
EVs pose unique cybersecurity challenges, such as battery management systems regulating batteries, managing power flows, locating charging stations, and receiving over-the-air updates. These functions create potential attack vectors, risking battery damage, fire, or theft of charging account credentials.
Based on technology, the AI in automotive cybersecurity market is divided between machine learning, natural language processing (NLP), computer vision, context-aware computing and Others. Machine learning dominates with 43% market share in 2025, and with a CAGR of 13.7% during forecast period.
Machine learning plays a critical role in cybersecurity by enabling anomaly detection, predictive threat modeling, and automated classification of security events.
It also supports behavioral analysis to identify insider threats and employs continuous learning systems to adapt to evolving attack techniques.
Supervised learning models are trained on labeled datasets of known attacks and normal operations to classify network traffic, system calls, and user behaviors as benign or malicious. Unsupervised learning algorithms detect novel attacks that don't match known signatures by identifying outliers in multi-dimensional feature spaces.
Reinforcement learning helps security systems improve defensive tactics by simulating attack scenarios and learning optimal responses. Deep learning neural networks analyze complex data, such as sensor outputs, video feeds, and diagnostic text, to detect subtle attack indicators missed by simpler algorithms.
Context-aware computing enables security systems to adapt policies and responses based on real-time understanding of vehicle operational state, environmental conditions, driver behavior, and connectivity status.
Context parameters include vehicle location (highway, urban, or parking), operational mode (manual or autonomous), speed, time of day, weather, occupancy status, proximity to critical infrastructure, and connectivity status (5G, 4G, or offline).
Context-aware security enables dynamic risk-based policy enforcement. For example, a vehicle in autonomous mode on a highway might enable maximum CAN bus message authentication and encryption, given the safety-critical nature and high speeds involved, while a parked vehicle might prioritize physical intrusion detection and minimize power consumption.
In 2025, Computer Vision held a 13% of the AI in automotive cybersecurity market share and is projected to reach USD 733.3 million by 2035, growing at a CAGR of 13.1%. It strengthens automotive cybersecurity by analyzing internal and external environments visually.
Applications include in-cabin driver monitoring to detect distraction, drowsiness, or unauthorized access using facial recognition, and exterior camera analysis to identify suspicious behaviors, such as relay attack device usage.
Other uses involve occupancy detection to verify passenger counts, license plate recognition for fleet access control, and gesture recognition for secure, biometric-based vehicle control without physical key fobs or smartphones.
Computer vision helps defend against sensor spoofing attacks. Researchers demonstrated that automated vehicle sensors, such as radar, lidar, and cameras, can be jammed or spoofed to display false objects in tests on Tesla Model S vehicles (stationary in 2016 and moving in 2019).
Looking for region specific data?
The U.S. market benefits from high per-vehicle value driven by consumer preference for premium vehicles with advanced features. Extensive highway infrastructure supports autonomous vehicle testing and V2X deployment, while a mature cybersecurity industry provides specialized automotive security solutions.
The Florida DOT, in partnership with Southwest Research Institute, has implemented a statewide V2X Data Exchange Platform. Connected Vehicle Pilot programs in Tampa, Columbus, and New York City further demonstrate operational V2X systems.
U.S. DOT's National V2X Deployment Plan targets 20% V2X enablement of the National Highway System by 2028 and full deployment by 2036, with 85% of signalized intersections in major metropolitan areas enabled by then.
This infrastructure investment drives cybersecurity demand to protect V2X communications, roadside infrastructure, and traffic management systems.
For instance, in September 2025, Atlanta became the first U.S. "Day One Deployment District" for Cellular Vehicle-to-Everything (C-V2X) technology. This initiative highlighted advancements in connected vehicle safety, data exchange, and the critical need for AI-driven cybersecurity to protect V2X communications and roadside systems.
The U.S. market faces challenges such as fragmented state-level regulations (e.g., Massachusetts and Maine), the absence of a federal vehicle type approval system (unlike UNECE R155/R156), debates over V2X spectrum allocation, and political divisions on data privacy due to the lack of a federal law comparable to GDPR.
North America dominated the AI in automotive cybersecurity market accounted for USD 547.9 million in 2025 and is anticipated to show growth of 10% CAGR over the forecast period.
In 2025, North America is expected to dominate the regional market with a 37% share. The market is projected to reach USD 1.6 billion by 2035, growing at a CAGR of 10.0%.
The region's leadership is influenced by NHTSA's voluntary cybersecurity best practices introduced in September 2022 and the upcoming enforcement of the U.S. Commerce Department's Connected Vehicle Rule in January 2025, which restricts VCS hardware and ADS software linked to foreign adversaries.
North America's leadership in AI-driven automotive cybersecurity is driven by strong 5G and V2X infrastructure, high ADAS and connected service adoption, and the presence of leading cybersecurity and automotive technology companies.
The United States dominates the North American market and is projected to grow at a strong CAGR throughout the forecast period.
Canada is expected to hold 19.0% of the regional total by 2025, with its market projected to reach USD 316.8 billion by 2035 at a CAGR of 10.6%, outpacing U.S. growth.
Canada's market gains from USMCA alignment with U.S. automotive standards, enabling technology transfers and supported by government initiatives for connected vehicles and smart cities.
Climate-focused EV adoption is driven by federal and provincial incentives. Participation in cross-border V2X corridor projects further strengthens secure vehicle communications and regional cybersecurity integration.
The AI in automotive cybersecurity market in China is expected to experience significant and promising growth with a CAGR of 15.6% from 2026 to 2035.
China's market is influenced by government mandates like GB 44495-2024 and GB 44496-2024. These regulations align with UN R155/R156 but include additional China-specific requirements.
The country is at the forefront of autonomous vehicle deployment, conducting hundreds of thousands of weekly commercial robo-taxi rides. This reflects the rapid adoption of AI-driven and connected mobility solutions.
The integration of automotive cybersecurity with initiatives like "New Infrastructure" and "Made in China 2025," supported by state-backed domestic solutions, strengthens resilience against export restrictions and fosters local technology growth.
China approved the nationwide deployment of Level 3 autonomous vehicles in 2023, surpassing most Western markets in regulatory advancements.
Leading manufacturers like BYD have strengthened their position in EV production, driving significant demand for cybersecurity solutions to protect battery management systems and charging infrastructure.
The market faces challenges due to U.S. restrictions on automotive technology exports and the division of the global automotive technology ecosystem into Western and Chinese spheres.
Asia Pacific AI in automotive cybersecurity market is anticipated to grow at a CAGR of 16% during the analysis timeframe.
Asia Pacific is witnessing the fastest growth in AI-driven automotive cybersecurity, driven by the rapid adoption of connected and autonomous vehicles in the region.
China's aggressive government policies, which bolster EVs, autonomous driving, and smart city integration, fuel the nation's already massive vehicle production, driving significant growth.
The rapid deployment of 5G in China and Singapore is driving large-scale V2X communication. Combined with key domestic players like BYD, Nio, Xpeng, Baidu, and Huawei, along with permissive AV testing regulations, this is accelerating market growth.
India presents a high-growth opportunity with its expanding automotive production base, increasing adoption of digital infrastructure, and development of AIS 189 and AIS 190 standards aligned with UN R155/R156.
A Deloitte survey revealed that 80% of Indian consumers prioritize local language voice command support, prompting increased investments in AI-powered multilingual security interfaces.
Japan, renowned for its automotive leaders such as Toyota, Honda, and Nissan, is enhancing its legacy of quality and safety by integrating cybersecurity.
Japan's proactive adoption of R155/R156 compliance highlights its commitment to global standards. Its conservative approach to autonomous vehicles and slower EV adoption compared to China temporarily hinder its growth in the APAC region.
South Korea, home to the Hyundai-Kia Group, initiated a phased implementation of R155/R156 in 2020 by introducing provisions in a national guideline, with full adoption planned in subsequent stages.
Australia's smaller market benefits from UNECE regulation alignment and participation in V2X pilot programs. The country's vast geographic distances amplify the importance of connected vehicle safety features.
The APAC region leads in growth due to rising vehicle production, supportive government policies, large addressable markets from vast populations, and early-stage development offering greater expansion potential compared to mature markets like North America and Europe.
Germany dominates the Europe automotive computer vision AI market, showcasing strong growth potential, with a CAGR of 13.5% from 2026 to 2035.
Germany bolsters its automotive prowess with premium manufacturers such as BMW, Mercedes-Benz, Porsche, and Audi, leading the charge in advanced driver assistance and autonomous features.
The country strengthens its leadership in automotive cybersecurity through a robust supplier ecosystem (Bosch, Continental, and ZF), government support for innovation and research, and the early deployment of Level 3 autonomous vehicles like the Mercedes-Benz Drive Pilot.
In July 2021, Germany established regulatory frameworks for Level 4 automated vehicles, allowing their operation in specific zones under "technical supervision," making it one of the first countries to do so.
Regulatory leadership is driving cybersecurity investments to ensure compliance with safety standards. German manufacturers' focus on premium segments, where customers demand advanced technology and security features, is further enhancing market value.
For instance, in December 2024, Germany approved Mercedes-Benz's DRIVE PILOT Level 3 autonomous driving system, enabling speeds of up to 95 km/h. Commercial availability is expected by spring 2025, as OEMs prepare for the next wave of connected, software-defined vehicles.
Europe AI in automotive cybersecurity market accounted for USD 462.2 million in 2025 and is anticipated to show growth of 13.3% CAGR over the forecast period.
The mandatory implementation of UNECE R155/R156 regulations across EU member states from July 2024 is driving significant growth in AI-driven automotive cybersecurity in Europe.
The region has a strong cybersecurity framework, supported by the upcoming Cyber Resilience Act and GDPR's strict data privacy regulations, which enforce substantial penalties for violations.
Europe's strong automotive engineering heritage, supported by significant cybersecurity R&D investments from major OEMs like Volkswagen Group, BMW, Mercedes-Benz, Stellantis, and Renault, drives the region's rapid market growth.
Germany dominates the European market and is projected to witness steady growth at a strong CAGR during the forecast period.
The UK, France, Italy, Spain, and other countries significantly contribute to Europe's automotive cybersecurity market. The UK remains influential post-Brexit, actively participating in UNECE regulations and hosting a strong cybersecurity hub in London.
France, through its "France 2030" investment plan, promotes automotive electrification by advancing connected and autonomous vehicle technologies.
Stellantis' strong European presence and investments in connected vehicle platforms benefit Italy and Spain, despite their smaller automotive markets compared to Germany.
ENISA, the European Union Agency for Cybersecurity, leads member states' efforts by forming expert groups on smart car security and guiding implementation of R155/R156.
Brazil leads the Latin American AI in automotive cybersecurity market, exhibiting remarkable growth of 11.8% during the forecast period of 2026 to 2035.
Brazil's robust automotive industry and high production volume cement its pivotal role in the Latin American AI in automotive cybersecurity market.
The country focuses on affordable vehicle segments with lower technology content per vehicle and limited cybersecurity investment compared to premium markets.
Brazil's vast population fuels a rising demand for connected and electric vehicles, paving the way for increased cybersecurity adoption as these technologies proliferate.
Government incentives for EV adoption are driving investments in secure vehicle technologies and connected services.
The presence of major OEMs like Volkswagen, Fiat, General Motors, and Ford in Brazil strengthens the foundation for automotive cybersecurity solutions in the region.
UAE to experience substantial growth in the Middle East and Africa AI in automotive cybersecurity market in 2025.
The UAE leads in automotive innovation and cybersecurity, driven by high per-capita income, rising adoption of autonomous vehicles, and government initiatives.
Consumers in the UAE increasingly prefer premium vehicles with advanced digital features, driving the need for AI-driven cybersecurity to secure connected services, ADAS, infotainment, and telematics platforms.
The UAE government is advancing autonomous vehicle technologies by implementing regulatory frameworks for testing AV and deploying AI-powered cybersecurity to secure vehicle networks, OTA updates, and V2X communications.
Cybersecurity solutions in the UAE must address complex software-defined vehicle architectures, mitigate cyberattacks, and manage cross-border data flows to ensure secure vehicle system operations.
AI-powered automotive cybersecurity systems in the UAE must detect and mitigate advanced threats in real-time, ensuring the protection of critical vehicle data and communication channels.
AI in Automotive Cybersecurity Market Share
The top 7 companies in the AI in automotive cybersecurity industry are Continental, Harman International, Denso, Upstream Security, GuardKnox Cyber Technologies, Karamba Security and Trillium Secure contributed around 47% of the market in 2025.
Continental, a leading global automotive supplier, leverages its electronics and software expertise to offer cybersecurity solutions, including ECU hardware security modules, ADAS software platforms, and end-to-end security architectures for vehicles, cloud, and V2X domains.
Harman International, a Samsung subsidiary, specializes in connected car platforms and cybersecurity solutions, including secure TCU platforms, OTA update systems compliant with UNECE R156, and cloud-based security centers offering managed services for vehicle fleets.
Denso, a major automotive component manufacturer and key Toyota group supplier, specializes in hardware-based security solutions for ECUs, including those used in powertrain control, ADAS sensors, and electrification systems.
Upstream Security specializes in automotive cybersecurity, offering cloud-based threat intelligence, vulnerability management, and incident response solutions. Unlike diversified Tier 1 suppliers, it focuses solely on vehicle cybersecurity.
GuardKnox Cyber Technologies, founded by Israeli Air Force cyber defense veterans, provides military-grade communication security solutions tailored for automotive applications.
Karamba Security focuses on autonomous vehicle cybersecurity, using formal verification and behavioral analysis to block unauthorized ECU behaviors, even without matching known attack signatures.
Trillium Security specializes in securing V2X communications and connected vehicle infrastructure, addressing the growing need for safety and attack prevention in the rapidly expanding V2X automotive market. Its solutions include SCMS implementation for PKI-based V2X message authentication, protection against Sybil attacks, and secure RSU firmware to safeguard infrastructure components.
AI in Automotive Cybersecurity Market Companies
Major players operating in AI in automotive cybersecurity industry are:
BlackBerry
Continental
Denso
GuardKnox Cyber Technologies
Harman International
Karamba Security
NVIDIA
Robert Bosch
Trillium Secure
Upstream Security
Continental, Denso, GuardKnox Cyber Technologies, Harman International, Karamba Security, NVIDIA, Robert Bosch, Trillium Secure, and Upstream Security lead the AI in automotive cybersecurity market. They offer AI-driven threat detection, secure software architectures, and real-time network protection for connected and autonomous vehicle systems.
These companies are advancing automotive cybersecurity by integrating AI-driven solutions, such as intrusion detection and secure boot mechanisms, into vehicle software and communication networks. This enhances safety, reliability, and resilience while leveraging OEM collaborations and global expertise.
As the adoption of connected, electric, and autonomous vehicles surges, regulatory requirements tighten, and cyber threats loom larger, the market is witnessing significant expansion. Leading industry players are spearheading the deployment of AI-driven cybersecurity measures, paving the way for vehicles that are not only safer but also software-defined and resilient.
AI in Automotive Cybersecurity Industry News
In September 2025, a data breach at Renault UK, tied to third-party suppliers, underscored the critical need for AI-driven cybersecurity to safeguard sensitive customer and vehicle information.
In September 2025, a ransomware attack on Jaguar Land Rover disrupted UK manufacturing and retail operations, potentially costing £1.9 billion. The UK government reported that the incident negatively impacted GDP growth in Q3 2025.
In January 2025, the U.S. Department of Commerce finalized the Connected Vehicle Rule, banning the import and sale of VCS hardware and ADS software tied to China or Russia.
In August 2024, the U.S. Department of Transportation released the National V2X Deployment Plan, targeting 20% V2X coverage on the National Highway System by 2028, 50% by 2031, and full deployment by 2036.
The AI in automotive cybersecurity market research report includes in-depth coverage of the industry with estimates & forecasts in terms of revenue (USD Bn) from 2022 to 2035, for the following segments:
to Buy Section of this Report
Market, By Component
Hardware
AI accelerators & processors
Hardware security modules (HSM)
Secure gateways & network devices
Storage & memory components
Software
AI-powered security platforms
Standalone security applications
Integrated software solutions
Services
Professional services
Consulting & advisory services
Deployment & integration services
Support & maintenance Services
Managed security services
Threat monitoring & detection
Incident response services
Security operations center (SOC) services
Market, By Vehicle
Passenger Cars
Hatchback
SUV
Sedan
Commercial vehicles
Light commercial vehicles (LCV)
Medium commercial vehicles (MCV)
Heavy commercial vehicles (HCV)
Electric vehicles (EVs)
Market, By Technology
Machine learning
Natural language processing (NLP)
Computer vision
Context-aware computing
Others
Market, By Deployment Mode
On premises
Cloud-based
Market, By Security
Endpoint security
Application security
Wireless network security
Cloud security
Others
Market, By Application
Advanced driver assistance system (ADAS) & safety systems
Infotainment system
Telematics system
Powertrain system
Body control & comfort system
Others
The above information is provided for the following regions and countries:
North America
US
Canada
Europe
Germany
UK
France
Italy
Spain
Russia
Netherlands
Sweden
Denmark
Poland
Asia Pacific
China
India
Japan
Australia
South Korea
Singapore
Thailand
Indonesia
Vietnam
Latin America
Brazil
Mexico
Argentina
Colombia
MEA
South Africa
Saudi Arabia
UAE
Israel
Author: Preeti Wadhwani, Satyam Jaiswal
Frequently Asked Question(FAQ) :
What are the upcoming trends in the AI in automotive cybersecurity market?+
AI-driven predictive cybersecurity, stronger OTA security, advanced V2X communication, UNECE R155/R156 compliance, and the rise of AI-defined vehicles with ML/NLP-based anomaly detection.
Who are the key players in the AI in automotive cybersecurity industry?+
Key players include BlackBerry, Continental, Denso, GuardKnox Cyber Technologies, Harman International, Karamba Security, NVIDIA, Robert Bosch, Trillium Secure, and Upstream Security.
Which region leads the AI in automotive cybersecurity sector?+
The United States leads the North American market, generating USD 442.9 million in revenue in 2025, with a projected CAGR of 9.8% during 2026 to 2035.
What is the growth outlook for the passenger cars segment from 2026 to 2035?+
The passenger cars segment dominated with a 63% market share in 2025 and is anticipated to observe around 13% CAGR up to 2035.
What was the valuation of the cloud-based segment in 2025?+
The cloud-based segment accounted for 58% of the market share in 2025 and is set to expand at the fastest rate, with a CAGR of 12.9% through 2035.
How much revenue did the software segment generate in 2025?+
The software segment generated approximately 56% of the market share in 2025 and is expected to grow at a CAGR of 13.2% till 2035.
What is the market size of AI in automotive cybersecurity in 2025?+
The market size was estimated at USD 1.5 billion in 2025, with a CAGR of 12.8% expected through 2035. The growth is driven by the increasing adoption of connected vehicles, autonomous technologies, and software-defined architectures.
What is the projected value of the AI in automotive cybersecurity market by 2035?+
The market is poised to reach USD 5.4 billion by 2035, fueled by advancements in AI-powered security solutions and the rising need to address evolving cyber threats in modern vehicles.
What is the expected size of the AI in automotive cybersecurity industry in 2026?+
The market size is projected to reach USD 1.8 billion in 2026.