Artificial Intelligence
How AI servers are transforming Taiwan’s electronics manufacturing giants

The revenue charts tell a story that would have seemed impossible just three years ago: AI servers are now generating more money than iPhones for Taiwan’s manufacturing giants. For the first time in decades, Taiwan’s manufacturing titans are watching their bread-and-butter consumer electronics businesses get overtaken by artificial intelligence infrastructure – a shift that’s rewriting the playbook for an industry that was built on assembling the world’s smartphones and laptops.
What took Apple nearly two decades to build, AI servers have displaced in less than three years, signalling an inflexion point that companies like Foxconn are navigating actively, diversifying beyond traditional consumer electronics.
The scale of Taiwan’s server dominance
Taiwan’s commanding position in global server manufacturing has positioned it perfectly for the AI boom, with the island accounting for over 90% of global AI server builds and approximately 80% of all server shipments worldwide. Its dominance stems from decades of expertise in electronics manufacturing, originally developed through the notebook computer industry, since evolved into an important advantage in the age of artificial intelligence.
According to statistics released by Taiwan’s Ministry of Economic Affairs in October 2024, the island’s server production value from January to July 2024 reached NT$426.7 billion (approximately US$13.2 billion) in value, in seven months surpassing the total value for 2023 and representing an annual growth rate of 153.9%.
Major players experience revenue surges
The impact of AI servers on Taiwan’s manufacturing giants has been nothing short of transformational. Nvidia partner Wistron’s revenue for January to July rose 92.7%, while Quanta’s grew 65.6% in the same period. The numbers reflect a broader trend affecting the entire ecosystem of Taiwan’s original design manufacturers (ODMs).
Foxconn, the world’s largest contract manufacturer, has experienced perhaps the most dramatic shift. Consumer electronics accounted for 35% of Foxconn’s total revenue in the second quarter of this year, while the cloud and networking business represented 41%. In 2021, consumer electronics represented 54% of its revenue. Now is the first time AI servers and cloud infrastructure have overtaken the company’s traditional smartphone manufacturing business.
Quanta Computer’s AI server focus
Quanta Computer, which supplies AI servers powered by Nvidia chips, said that AI servers are on track to account for 70% of its total server revenue this year, thanks to improved yield rates and a better learning curve for Nvidia’s GB300 chip-based servers. AI servers accounted for more than 60% of its total server revenue in the first half of this year.
Quanta is the world’s second-largest server assembly contractor, taking approximately 17% of the market. Its primary focus is AI server projects from the four major CSPs (Microsoft, Amazon, Google, and Meta). The company has secured orders for Nvidia’s latest GB200 servers and has been expanding production capacity to meet increased demand.
Wistron’s strategic positioning
Wistron has currently secured orders for Nvidia’s HGX Level 6 and DGX Level 10 servers, and obtained orders for the new generation AMD MI300 series AI server boards. Nvidia this week booked an entire Wistron server plant in Taiwan to build AI servers, highlighting the intensity of demand and the strategic importance of securing manufacturing capacity.
Quanta Computer plans to increase production capacity for AI servers in the US, and its factories there are booked up to the end of 2025. The capacity constraint reflects the “insane demand” that characterised the AI server market throughout 2024 and into 2025.
Market share and financial impact
The financial transformation in the sector has been remarkable. Quanta Computer reported that AI servers are on track to account for 70% of its total server revenue this year, with AI servers already accounting for more than 60% of its total server revenue in the first half of 2025, according to chief financial officer Elton Yang.
Wistron has demonstrated the transformative impact of AI servers on manufacturing economics, with the company’s revenue for January to July 2025 rising 92.7% compared to the same period in the previous year. The dramatic growth reflects the premium nature of AI server manufacturing compared to traditional consumer electronics.
The impact extends to Taiwan’s broader server ecosystem, with companies securing multi-year production contracts that extend well into 2026, indicating sustained demand and revenue visibility that was rarely seen in the consumer electronics era.
Strategic implications and future outlook
“The monthly sales jump for Taiwan ODMs in the first half of 2025 is evidence of this trend,” Robert Cheng, head of Asia technology hardware research at BofA Global Research, told Reuters, referring to original design manufacturers like Foxconn that contract manufacture products for their clients.
The situation reflects a repositioning of Taiwan in the global technology supply chain. Where companies once competed primarily on cost and manufacturing efficiency for consumer electronics, AI servers require higher levels of technical sophistication, closer collaboration with chip designers, and more stringent quality control.
“We think this shift toward AI servers, whatever form it takes, is good for Taiwan’s tech industry,” Cheng said, noting Taiwanese firms’ ability to shift rapidly to cater to the changing needs of their customers.
However, challenges lie ahead. Taiwan’s current 90% share of the global AI server market may soon decline as manufacturers expand production elsewhere. Companies are already establishing manufacturing facilities in the US, Mexico, and other locations to serve local markets and comply with supply chain requirements.
Industry-wide transformation
The AI server boom has catalysed changes that extend beyond individual companies to reshape Taiwan’s entire electronics manufacturing ecosystem. Traditional boundaries between different types of technology products are blurring as manufacturers develop new capabilities and forge closer partnerships with AI chip companies.
The transformation also highlights Taiwan’s unique position in the global technology supply chain. The combination of advanced manufacturing capabilities, established relationships with major technology companies, and proximity to key semiconductor facilities has created a competitive advantage that continues to drive growth.
As artificial intelligence applications continue to need more sophisticated computing infrastructure, Taiwan’s manufacturers appear well-positioned to capitalise on demand. The challenge will be maintaining the country’s technology leadership while adapting to changing geopolitical and market conditions that may require more distributed global operations.
The shift from consumer electronics to AI servers exemplifies Taiwan’s ability to reinvent itself in response to technological change, maintain its central role in the global technology ecosystem, adapt and innovate.
See also: Huawei unveils high-end AI chip for servers alongside MindSpore framework
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Artificial Intelligence
Agentic AI: Promise, scepticism, and its meaning for Southeast Asia

Agentic AI is being talked about as the next major wave of artificial intelligence, but its meaning for enterprises remains to be settled. Capgemini Research Institute estimates agentic AI could unlock as much as US$450 billion in economic value by 2028. Yet adoption is still limited: only 2% of organisations have scaled its use, and trust in AI agents is already starting to slip.
That tension – high potential but low deployment – is what Capgemini’s new research explores. Based on an April 2025 survey of 1,500 executives at large organisations in 14 countries, including Singapore, the report highlights trust and oversight as important factors in realising value. Nearly three-quarters of executives said the benefits of human involvement in AI workflows outweigh the costs. Nine out of ten described oversight as either positive or at least cost-neutral.
The message is clear: AI agents work best when paired with people, not left on autopilot.
Early steps, slow progress
Roughly a quarter have launched agentic AI pilots, while only 14% have moved into implementation. For the majority, deployment is still in the planning stage. The report describes this as a widening gap between intent and readiness, now one of the main barriers to capturing economic value.
The technology is not just theoretical – real-world applications are starting to emerge, and one example is a personal shopping assistant that can search for items based on specific requests, generate product descriptions, answer questions, and place items in a cart using voice or text commands. While these tools typically stop short of completing financial transactions for security reasons, they already replicate many of the functions of a human assistant.
This raises bigger questions about the role of traditional websites. If AI can handle tasks like searching, comparing, and preparing purchases, will people still need to navigate online stores directly? For those who find busy websites overwhelming or difficult to navigate, an AI-driven interface may offer a simpler, more accessible option.
Defining agentic AI
To cut through the hype, AI News spoke with Jason Hardy, chief technology officer for artificial intelligence at Hitachi Vantara, about how enterprises in Asia-Pacific should think about the technology.
“Agentic AI is software that can decide, act, and refine its strategy on its own,” Hardy said. “Think of it as a team of domain experts that can learn from experience, coordinate tasks, and operate in real time. Generative AI creates content and is usually reactive to prompts. Agentic AI may use GenAI inside it, but its job is to pursue objectives and take action in dynamic environments.”
The distinction – between producing outputs and driving outcomes – captures the meaning of agentic AI for enterprise IT.
Why adoption is accelerating
According to Hardy, adoption is being driven by scale and complexity. “Enterprises are drowning in complexity, risk, and scale. Agentic AI is catching on because it does more than analyse. It optimises storage and capacity on the fly, automates governance and compliance, anticipates failures before they occur, and responds to security threats in real time. That shift from ‘insight’ to ‘autonomous action’ is why adoption is accelerating,” he explained.
Capgemini’s research supports this. The study found that while confidence in agentic AI is uneven, early deployments are proving useful when the technology takes on routine but essential IT tasks.
Where value is emerging
Hardy pointed to IT operations as the strongest use case so far. “Automated data classification, proactive storage optimisation, and compliance reporting save teams hours each day, while predictive maintenance and real-time cybersecurity responses reduce downtime and risk,” he said.
The impact goes beyond efficiency. The capabilities mean systems can detect problems before they escalate, allocate resources more effectively, and contain security incidents more quickly. “Early users are already using agentic AI to remediate incidents proactively before they escalate, strengthening reliability and performance in hybrid environments,” Hardy added.
For now, IT remains the most practical starting point: its deployment offers measurable results and is central to how enterprises manage both costs and risk, showing the meaning of agentic AI in operations.
Southeast Asia’s starting point
For Southeast Asian organisations, Hardy said the first priority is getting the data right. “Agentic AI delivers value only when enterprise data is properly classified, secured, and governed,” he explained.
Infrastructure also matters, meaning that agentic AI requires systems that can support multi-agent orchestration, persistent memory, and dynamic resource allocation. Without this foundation, adoption will be limited in scope.
Many enterprises may choose to begin with IT operations, where agentic AI can pre-empt outages and optimise performance before rolling out to wider business functions.
Reshaping core workflows
Hardy expects agentic AI to reshape workflows in IT, supply chain management, and customer service. “In IT operations, agentic AI can anticipate capacity needs, rebalance workloads, and reallocate resources in real time. It can also automate predictive maintenance, preventing hardware failures before they occur,” he said.
Cybersecurity is another area of promise. “In cybersecurity, agentic AI is able to detect anomalies, isolate affected systems, and trigger immutable backups in seconds, reducing response times and mitigating potential damage,” Hardy noted.
The capabilities are not limited to proof-of-concept trials. Early deployments already show how agentic AI can strengthen reliability and resilience in hybrid environments.
Skills and leadership
Adoption will also require new human skills. “Agentic AI will shift the human role from execution to oversight and orchestration,” Hardy said. Leaders will need to set boundaries and monitor autonomous systems, ensuring they stay in ethical and organisational limits.
For managers, the change means less focus on administrative tasks and more on mentoring, innovation, and strategy. HR teams will need to build governance skills like auditing readiness and create new structures for integrating agentic AI effectively.
The workforce impact will be uneven. The World Economic Forum predicts that AI could create 11 million jobs in Southeast Asia by 2030 and displace nine million. Women and Gen Z are expected to face the sharpest disruptions, with more than 70% of women and up to 76% of younger workers in roles vulnerable to AI.
This highlights the urgency of reskilling, and major investments are already underway, with Microsoft committing $1.7 billion in Indonesia and rolling out training programmes in Malaysia and the wider region. Hardy stressed that capacity building must be inclusive, rapid, and strategic.
What comes next
Looking three years ahead, Hardy believes many leaders will underestimate the pace of change. “The first wave of benefits is already visible in IT operations: agentic AI is automating tasks like data classification, storage optimisation, predictive maintenance, and cybersecurity response, freeing teams to focus on higher-level strategic work,” he said.
But the larger surprise may be at the economic and business model level. IDC projects AI and generative AI could add around US$120 billion to the GDP of the ASEAN-6 by 2027. Hardy sees the implications as broader and faster than many expect. “The suggests the impact will be much faster and more material than many leaders currently anticipate,” he said.
In Indonesia, more than 57% of job roles are expected to be augmented or disrupted by AI, a reminder that transformation will not be limited to IT. It will cut in how businesses are structured, how they manage risk, and how they create value.
Balancing autonomy with oversight
The Capgemini findings and Hardy’s insights converge on the same theme: agentic AI holds huge promise, but its meaning in practice depends on balancing autonomy with trust and human oversight.
The technology may help enterprises lower costs, improve reliability, and unlock new revenue streams. But without a focus on governance, reskilling, and infrastructure readiness, adoption risks stalling.
For Southeast Asia, the question is not whether agentic AI will take hold, but how quickly – and whether enterprises can balance autonomy with accountability as machines begin to take on more responsibility for business decisions.
(Photo by Igor Omilaev)
See also: Beyond acceleration: the rise of agentic AI
Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and is co-located with other leading technology events, click here for more information.
AI News is powered by TechForge Media. Explore other upcoming enterprise technology events and webinars here.
Artificial Intelligence
Marketing AI boom faces crisis of consumer trust

The vast majority (92%) of marketing professionals are using AI in their day-to-day operations, turning it from a buzzword into a workhorse.
According to SAP Emarsys – which took the pulse of over 10,000 consumers and 1,250 marketers – while businesses are seeing real benefits from AI, shoppers are becoming increasingly distrustful, especially when it comes to their personal data. This divide could easily unravel the personalised shopping experience that brands are working so hard to build.
The rush to bring AI into marketing has been fast and decisive. As Sara Richter, CMO at SAP Emarsys, puts it, “AI marketing is now fully in motion: it has transitioned from the theoretical to the practical as marketers welcome AI into their strategies and test possibilities.”
For businesses, the appeal is obvious. 71 percent of marketers say AI helps them launch campaigns faster, saving them over two hours on average for each one. This newfound efficiency is doing what we often hear AI is best at: freeing up teams from repetitive work. 72 percent report they can now focus on more creative and strategic tasks.
The results are hitting the bottom line, too. 60 percent of marketers have seen customer engagement climb, and 58 percent report a boost in customer loyalty since bringing AI on board.
But shoppers are telling a different story. The report reveals a “personalisation gap,” where the efforts of marketers just aren’t hitting the mark. Even with heavy investment in AI-driven tailoring, 40 percent of consumers feel that brands just don’t get them as people—a huge jump from 25 percent last year. To make matters worse, 60 percent say the marketing emails they receive are mostly irrelevant.
Dig deeper, and you find a real crisis of confidence in how personal data is being handled for AI marketing. 63 percent of consumers globally don’t trust AI with their data, up from 44 percent in 2024. In the UK, it’s even more stark, with 76 percent of shoppers feeling uneasy.
This collapse in trust is happening just as new rules come into play. A year after the EU’s AI Act was introduced, more than a third (37%) of UK marketers have overhauled their approach to AI, with 44% stating their use of the technology has become more ethical.
This creates a tension that the whole industry is talking about: how to be responsible without killing innovation. While the AI Act provides a clearer rulebook, over a quarter (28%) of marketing professionals are worried that rigid regulations could stifle creativity.
As Dr Stefan Wenzell, Chief Product Officer at SAP Emarsys, says, “regulation must strike a balance – protecting consumers without slowing innovation. At SAP Emarsys, we believe responsible AI is about building trust through clarity, relevance, and smart data use.”
The message for retailers is loud and clear: prove your worth. People are happy to use AI when it actually helps them. Over half of shoppers agree that AI makes shopping easier (55%) and faster (53%), using it to find products, compare prices, or come up with gift ideas. The interest in helpful AI is there, but it has to come with a promise of transparency and privacy.
Some brands are getting this right by focusing on people, not just the technology. Sterling Doak, Head of Marketing at iconic guitar maker Gibson, says it’s about thinking differently.
“If I can find a utility [AI] that can help my staff think more strategically and creatively, that’s needed because we’re a very creative business at the core,” Doak explains. For Gibson, AI serves human creativity rather than just automating tasks.
It’s a similar story for Australian retailer City Beach, which used AI marketing to keep its customers coming back. Mike Cheng, the company’s Head of Digital, discovered AI was the ideal tool for spotting and winning back customers who were about to leave.
“AI was able to predict where people were churning or defecting at a 1:1 level, and this allowed us to send campaigns based on customers’ individual lifecycle,” Cheng notes. Their approach brought back 48 percent of those customers within three months.
What these success stories have in common is a focus on solving real problems for people. As retailers venture deeper into what SAP Emarsys calls the “Engagement Era,” the way forward is becoming clearer. Investment in AI isn’t slowing down—64 percent of marketers are planning to increase their spend next year.
The technology isn’t the problem; it’s how it’s being used. Retailers need to close the gap between what they’re doing and what their customers are feeling. That means going beyond basic personalisation to offer real value, being open about how data is used, and proving that sharing information leads to a better experience.
The AI revolution is here, but for it to truly succeed, marketing professionals need to remember the person on the other side of the screen.
See also: Google Vids gets AI avatars and image-to-video tools
Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and is co-located with other leading technology events, click here for more information.
AI News is powered by TechForge Media. Explore other upcoming enterprise technology events and webinars here.
Artificial Intelligence
AI security wars: Can Google Cloud defend against tomorrow’s threats?

In Google’s sleek Singapore office at Block 80, Level 3, Mark Johnston stood before a room of technology journalists at 1:30 PM with a startling admission: after five decades of cybersecurity evolution, defenders are still losing the war. “In 69% of incidents in Japan and Asia Pacific, organisations were notified of their own breaches by external entities,” the Director of Google Cloud’s Office of the CISO for Asia Pacific revealed, his presentation slide showing a damning statistic – most companies can’t even detect when they’ve been breached.
What unfolded during the hour-long “Cybersecurity in the AI Era” roundtable was an honest assessment of how Google Cloud AI technologies are attempting to reverse decades of defensive failures, even as the same artificial intelligence tools empower attackers with unprecedented capabilities.
The historical context: 50 years of defensive failure
The crisis isn’t new. Johnston traced the problem back to cybersecurity pioneer James B. Anderson’s 1972 observation that “systems that we use really don’t protect themselves” – a challenge that has persisted despite decades of technological advancement. “What James B Anderson said back in 1972 still applies today,” Johnston said, highlighting how fundamental security problems remain unsolved even as technology evolves.
The persistence of basic vulnerabilities compounds this challenge. Google Cloud’s threat intelligence data reveals that “over 76% of breaches start with the basics” – configuration errors and credential compromises that have plagued organisations for decades. Johnston cited a recent example: “Last month, a very common product that most organisations have used at some point in time, Microsoft SharePoint, also has what we call a zero-day vulnerability…and during that time, it was attacked continuously and abused.”
The AI arms race: Defenders vs. attackers

Kevin Curran, IEEE senior member and professor of cybersecurity at Ulster University, describes the current landscape as “a high-stakes arms race” where both cybersecurity teams and threat actors employ AI tools to outmanoeuvre each other. “For defenders, AI is a valuable asset,” Curran explains in a media note. “Enterprises have implemented generative AI and other automation tools to analyse vast amounts of data in real time and identify anomalies.”
However, the same technologies benefit attackers. “For threat actors, AI can streamline phishing attacks, automate malware creation and help scan networks for vulnerabilities,” Curran warns. The dual-use nature of AI creates what Johnston calls “the Defender’s Dilemma.”
Google Cloud AI initiatives aim to tilt these scales in favour of defenders. Johnston argued that “AI affords the best opportunity to upend the Defender’s Dilemma, and tilt the scales of cyberspace to give defenders a decisive advantage over attackers.” The company’s approach centres on what they term “countless use cases for generative AI in defence,” spanning vulnerability discovery, threat intelligence, secure code generation, and incident response.
Project Zero’s Big Sleep: AI finding what humans miss
One of Google’s most compelling examples of AI-powered defence is Project Zero’s “Big Sleep” initiative, which uses large language models to identify vulnerabilities in real-world code. Johnston shared impressive metrics: “Big Sleep found a vulnerability in an open source library using Generative AI tools – the first time we believe that a vulnerability was found by an AI service.”
The program’s evolution demonstrates AI’s growing capabilities. “Last month, we announced we found over 20 vulnerabilities in different packages,” Johnston noted. “But today, when I looked at the big sleep dashboard, I found 47 vulnerabilities in August that have been found by this solution.”
The progression from manual human analysis to AI-assisted discovery represents what Johnston describes as a shift “from manual to semi-autonomous” security operations, where “Gemini drives most tasks in the security lifecycle consistently well, delegating tasks it can’t automate with sufficiently high confidence or precision.”
The automation paradox: Promise and peril
Google Cloud’s roadmap envisions progression through four stages: Manual, Assisted, Semi-autonomous, and Autonomous security operations. In the semi-autonomous phase, AI systems would handle routine tasks while escalating complex decisions to human operators. The ultimate autonomous phase would see AI “drive the security lifecycle to positive outcomes on behalf of users.”

However, this automation introduces new vulnerabilities. When asked about the risks of over-reliance on AI systems, Johnston acknowledged the challenge: “There is the potential that this service could be attacked and manipulated. At the moment, when you see tools that these agents are piped into, there isn’t a really good framework to authorise that that’s the actual tool that hasn’t been tampered with.”
Curran echoes this concern: “The risk to companies is that their security teams will become over-reliant on AI, potentially sidelining human judgment and leaving systems vulnerable to attacks. There is still a need for a human ‘copilot’ and roles need to be clearly defined.”
Real-world implementation: Controlling AI’s unpredictable nature
Google Cloud’s approach includes practical safeguards to address one of AI’s most problematic characteristics: its tendency to generate irrelevant or inappropriate responses. Johnston illustrated this challenge with a concrete example of contextual mismatches that could create business risks.
“If you’ve got a retail store, you shouldn’t be having medical advice instead,” Johnston explained, describing how AI systems can unexpectedly shift into unrelated domains. “Sometimes these tools can do that.” The unpredictability represents a significant liability for businesses deploying customer-facing AI systems, where off-topic responses could confuse customers, damage brand reputation, or even create legal exposure.
Google’s Model Armor technology addresses this by functioning as an intelligent filter layer. “Having filters and using our capabilities to put health checks on those responses allows an organisation to get confidence,” Johnston noted. The system screens AI outputs for personally identifiable information, filters content inappropriate to the business context, and blocks responses that could be “off-brand” for the organisation’s intended use case.
The company also addresses the growing concern about shadow AI deployment. Organisations are discovering hundreds of unauthorised AI tools in their networks, creating massive security gaps. Google’s sensitive data protection technologies attempt to address this by scanning in multiple cloud providers and on-premises systems.
The scale challenge: Budget constraints vs. growing threats
Johnston identified budget constraints as the primary challenge facing Asia Pacific CISOs, occurring precisely when organisations face escalating cyber threats. The paradox is stark: as attack volumes increase, organisations lack the resources to adequately respond.
“We look at the statistics and objectively say, we’re seeing more noise – may not be super sophisticated, but more noise is more overhead, and that costs more to deal with,” Johnston observed. The increase in attack frequency, even when individual attacks aren’t necessarily more advanced, creates a resource drain that many organisations cannot sustain.
The financial pressure intensifies an already complex security landscape. “They are looking for partners who can help accelerate that without having to hire 10 more staff or get larger budgets,” Johnston explained, describing how security leaders face mounting pressure to do more with existing resources while threats multiply.
Critical questions remain
Despite Google Cloud AI’s promising capabilities, several important questions persist. When challenged about whether defenders are actually winning this arms race, Johnston acknowledged: “We haven’t seen novel attacks using AI to date,” but noted that attackers are using AI to scale existing attack methods and create “a wide range of opportunities in some aspects of the attack.”
The effectiveness claims also require scrutiny. While Johnston cited a 50% improvement in incident report writing speed, he admitted that accuracy remains a challenge: “There are inaccuracies, sure. But humans make mistakes too.” The acknowledgement highlights the ongoing limitations of current AI security implementations.
Looking forward: Post-quantum preparations
Beyond current AI implementations, Google Cloud is already preparing for the next paradigm shift. Johnston revealed that the company has “already deployed post-quantum cryptography between our data centres by default at scale,” positioning for future quantum computing threats that could render current encryption obsolete.
The verdict: Cautious optimism required
The integration of AI into cybersecurity represents both unprecedented opportunity and significant risk. While the AI technologies by Google Cloud demonstrate genuine capabilities in vulnerability detection, threat analysis, and automated response, the same technologies empower attackers with enhanced capabilities for reconnaissance, social engineering, and evasion.
Curran’s assessment provides a balanced perspective: “Given how quickly the technology has evolved, organisations will have to adopt a more comprehensive and proactive cybersecurity policy if they want to stay ahead of attackers. After all, cyberattacks are a matter of ‘when,’ not ‘if,’ and AI will only accelerate the number of opportunities available to threat actors.”
The success of AI-powered cybersecurity ultimately depends not on the technology itself, but on how thoughtfully organisations implement these tools while maintaining human oversight and addressing fundamental security hygiene. As Johnston concluded, “We should adopt these in low-risk approaches,” emphasising the need for measured implementation rather than wholesale automation.
The AI revolution in cybersecurity is underway, but victory will belong to those who can balance innovation with prudent risk management – not those who simply deploy the most advanced algorithms.
See also: Google Cloud unveils AI ally for security teams
Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and is co-located with other leading technology events, click here for more information.
AI News is powered by TechForge Media. Explore other upcoming enterprise technology events and webinars here.
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