PUBLISHER: Stratistics Market Research Consulting | PRODUCT CODE: 1776716
PUBLISHER: Stratistics Market Research Consulting | PRODUCT CODE: 1776716
According to Stratistics MRC, the Global AI in Cybersecurity - Threat Intelligence Market is accounted for $20.46 billion in 2025 and is expected to reach $92.22 billion by 2032 growing at a CAGR of 24% during the forecast period. Artificial Intelligence in Cybersecurity: Threat Intelligence is the use of AI to detect, evaluate, and neutralise online threats instantly. To identify irregularities, anticipate attacks, and automate reactions, it makes use of machine learning, natural language processing, and data analytics. AI improves situational awareness and decision-making by digesting massive volumes of threat data from various sources. By spotting trends in ransomware, phishing, and malware activity, it makes proactive defence tactics possible. This clever automation strengthens an organization's entire cybersecurity posture by greatly increasing threat detection speed, accuracy, and response time.
Rising sophistication of cyber-attacks
Advanced threats like as AI-driven malware and zero-day exploits necessitate quicker and more intelligent detection methods. Real-time detection of intricate attack patterns is frequently a challenge for traditional security solutions. By automating data processing and quickly identifying abnormalities, AI improves threat intelligence. It enables proactive defence by foreseeing and removing threats before damage is done. The industry is growing as a result of organisations depending more and more on AI-powered solutions to stay ahead of hackers.
Data privacy & regulatory risk
Access to the vast datasets required to train AI models is restricted by stringent data privacy regulations such as the CCPA and GDPR. When gathering or disseminating threat intelligence internationally, organisations frequently encounter compliance issues. These legal restrictions may hinder the uptake of AI and reduce its capacity to detect threats in real time. Investment in cutting-edge AI-driven cybersecurity tools is also deterred by regulatory uncertainty. Additionally, businesses are reluctant to fully utilise AI capabilities due to a concern of non-compliance penalties.
Automation and predictive analytics
Real-time monitoring and quick analysis of massive amounts of data are made possible via automation and predictive analytics. Automated technologies simplify everyday security chores and minimise human mistake. By spotting trends and abnormalities before they become more serious, predictive analytics foresees possible hazards. Instead of only responding to breaches, this proactive strategy assists organisations in preventing them. Consequently, by lowering operating expenses and enhancing security results, these technologies propel market expansion.
Rapid attacker evolution
Rapid attacker evolution refers to the real-time adaptability of AI models. Machine learning algorithms are less successful against novel, invisible dangers since they frequently rely on prior data. The use of AI by cybercriminals is growing, leading to increasingly complex and elusive attacks. This increases the complexity and operational expenses by necessitating frequent model upgrades and retraining. As a result, security firms have ongoing challenges in maintaining effective threat detection.
Covid-19 Impact
The COVID-19 pandemic significantly accelerated the adoption of AI in the cybersecurity - threat intelligence market. As remote work became the norm, organizations faced a surge in cyber threats and data breaches, prompting an urgent need for intelligent, automated security solutions. AI-powered threat detection systems helped companies quickly identify and respond to new and evolving cyber risks. Additionally, limited human intervention during lockdowns emphasized the value of machine learning in monitoring vast digital environments. Overall, the crisis reshaped cybersecurity strategies, positioning AI as a crucial component of defense mechanisms.
The network security segment is expected to be the largest during the forecast period
The network security segment is expected to account for the largest market share during the forecast period by enabling real-time threat detection across complex IT infrastructures. AI-powered tools analyze vast volumes of network traffic to identify anomalies and malicious patterns swiftly. This proactive approach helps organizations prevent breaches before they occur. The growing sophistication of cyberattacks has intensified the demand for AI-driven network defense solutions. As enterprises expand their digital presence, securing networks through intelligent automation becomes essential, boosting market growth.
The anomaly detection segment is expected to have the highest CAGR during the forecast period
Over the forecast period, the anomaly detection segment is predicted to witness the highest growth rate by enabling early identification of suspicious patterns. It helps in detecting zero-day attacks and insider threats that traditional methods often miss. Real-time analysis of network traffic enhances proactive threat mitigation. AI-driven anomaly detection reduces false positives, improving incident response efficiency. Its continuous learning capability strengthens adaptive security frameworks across enterprises.
During the forecast period, the Asia Pacific region is expected to hold the largest market share due to the increasing digitization across sectors and rising cyberattacks on critical infrastructure. Countries like China, India, Japan, and South Korea are investing heavily in AI-based cybersecurity tools to protect financial services, government networks, and e-commerce platforms. This demand is further fuelled by rising cloud use and smartphone prevalence. Regional governments are also implementing stricter data protection laws, encouraging enterprises to deploy predictive threat detection and automated response systems, thereby fostering innovation in cybersecurity defense strategies.
Over the forecast period, the North America region is anticipated to exhibit the highest CAGR, owing to advanced IT infrastructure and the presence of major tech companies. The U.S. leads in developing and deploying AI algorithms that identify, predict, and neutralize cyber threats in real-time. High cybercrime rates targeting banking, healthcare, and defense sectors push demand for AI-powered threat intelligence platforms. Additionally, rising investments in R&D and strategic partnerships among cybersecurity firms enhance threat detection capabilities. Strong regulatory frameworks like CISA and HIPAA further drive adoption of AI to secure digital ecosystems efficiently.
Key players in the market
Some of the key players profiled in the AI in Cybersecurity - Threat Intelligence Market include Palo Alto Networks, CrowdStrike, Fortinet, Darktrace, SentinelOne, Vectra AI, Wiz, Orca Security, Netskope, Check Point, Trellix, Tanium, Trend Micro, Splunk, Deep Instinct, Cybereason, SparkCognition and Armis.
In April 2025, CrowdStrike entered a strategic partnership with Wipro to integrate its Falcon Next-Gen SIEM and threat intelligence into Wipro's cybersecurity services. This alliance aims to enhance global enterprise Security Operations Centers (SOCs) using AI-powered analytics and automation, streamlining threat detection, response workflows, and reducing operational complexity.
In March 2025, Palo Alto Networks signed a multiyear agreement with the NHL to be its Official Cybersecurity Partner. They'll deploy AI-powered next-gen firewalls, cloud and browser security to protect league operations and fan experiences across arenas ﹣ boosting IoT threat blocking and reducing MTTR.
In October 2024, Fortinet and CrowdStrike integrated Falcon's AI-native endpoint detection with FortiGate firewalls, creating a unified AI-powered threat intelligence platform that enhances attack surface visibility, automates threat response, and streamlines detection-to-remediation across hybrid and cloud network environments.
Note: Tables for North America, Europe, APAC, South America, and Middle East & Africa Regions are also represented in the same manner as above.