Simply as triathletes know that peak efficiency requires greater than costly gear, cybersecurity groups are discovering that AI success relies upon much less on the instruments they deploy and extra on the information that powers them
The junk meals drawback in cybersecurity
Think about a triathlete who spares no expense on gear—carbon fiber bikes, hydrodynamic wetsuits, precision GPS watches—however fuels their coaching with processed snacks and vitality drinks. Regardless of the premium gear, their efficiency will endure as a result of their basis is essentially flawed. Triathletes see vitamin because the fourth self-discipline of their coaching that may have a big influence on efficiency and might even decide race outcomes.
Right this moment’s safety operations facilities (SOCs) face an identical problem. They’re investing closely in AI-powered detection programs, automated response platforms, and machine studying analytics—the equal of professional-grade triathlon gear. However they’re powering these refined instruments with legacy knowledge feeds that lack the richness and context trendy AI fashions have to carry out successfully.
Simply as a triathlete must grasp swimming, biking, and operating in seamless coordination, SOC groups should excel at detection, investigation, and response. Nevertheless, with out their very own “fourth self-discipline,” SOC analysts shall be working with sparse endpoint logs, fragmented alert streams, and knowledge silos that do not talk, it is like attempting to finish a triathlon fueled solely by a bag of chips and a beer—regardless of how good your coaching or gear, you are not crossing the end line first. When you could load up on sugar and energy on race day to make sure you have the vitality to make it by means of, that isn’t a sustainable, long-term routine that may optimize your physique for the very best efficiency.
The hidden price of legacy knowledge diets
“We’re residing by means of the primary wave of an AI revolution, and thus far the highlight has centered on fashions and functions,” mentioned Greg Bell, Corelight chief technique officer. “That is sensible, as a result of the impacts for cyber protection are going to be large. However I believe there’s beginning to be a dawning realization that ML and GenAI instruments are gated by the standard of information they eat.”
This disconnect between superior AI capabilities and outdated knowledge infrastructure creates what safety professionals at the moment are calling “knowledge debt”—the collected price of constructing AI programs on foundations that weren’t designed for machine studying consumption.
Conventional safety knowledge usually resembles a triathlete’s coaching diary full of incomplete entries: “Ran in the present day. Felt okay.” It gives primary info however lacks the granular metrics, environmental context, and efficiency correlations that allow real enchancment. Legacy knowledge feeds sometimes embody:
- Sparse endpoint logs that seize occasions however miss the behavioral context
- Alert-only feeds that inform you one thing occurred however not the complete story
- Siloed knowledge sources that may’t correlate throughout programs or time durations
- Reactive indicators that solely activate after injury is already executed with out historic views
- Unstructured codecs that require intensive processing earlier than AI fashions can analyze them
The adversary is already performance-enhanced
Whereas defenders battle with knowledge that is nutritionally poor for AI consumption, attackers have optimized their strategy with the self-discipline of elite athletes. They’re leveraging AI to create adaptive assault methods which might be quicker, cheaper, and extra exactly focused than ever earlier than by:
- Automating reconnaissance and exploit improvement to speed up assault pace
- Lowering the fee per assault, growing potential risk quantity aster
- Personalizing approaches based mostly on AI-gathered intelligence to ship extra focused assaults
- Producing faster iteration and enchancment of techniques based mostly on what’s working
In the meantime, many SOCs are nonetheless attempting to defend in opposition to these AI-enhanced threats utilizing knowledge equal to a Nineties coaching routine—with simply primary coronary heart charge info—when the competitors is utilizing complete efficiency analytics, environmental sensors, and predictive modeling.
This creates an escalating efficiency hole. As attackers change into extra refined of their use of AI, the standard of defensive knowledge turns into more and more essential. Poor knowledge would not simply decelerate detection—it actively undermines the effectiveness of AI safety instruments, creating blind spots that refined adversaries can exploit.
AI-ready knowledge: the efficiency enhancement SOCs want
The answer lies in essentially reimagining safety knowledge structure round what AI fashions truly have to carry out successfully. This implies transitioning from legacy knowledge feeds to what may very well be referred to as “AI-ready” knowledge—info that is structured, enriched, and optimized particularly for AI evaluation and automation.
AI-ready knowledge shares traits with the excellent efficiency metrics that elite triathletes use to optimize their coaching. Simply as these athletes monitor the whole lot from energy output and cadence to environmental circumstances and restoration markers, AI-ready safety knowledge captures not simply what occurred, however the full context surrounding every occasion.
This consists of community telemetry that gives visibility earlier than encryption obscures the proof, complete metadata that reveals behavioral patterns, and structured codecs that AI fashions can instantly course of with out intensive preprocessing. It is knowledge that is been particularly designed to feed the three essential parts of AI-powered safety operations.
AI-driven risk detection turns into dramatically simpler when powered by forensic-grade community proof that features full context and real-time assortment throughout on-premise, hybrid, and multi-cloud environments. This allows AI fashions to determine refined patterns and anomalies that will be invisible in conventional log codecs.
AI workflows rework the analyst expertise by offering expert-authored processes enhanced with AI-driven payload evaluation, historic context, and session-level summaries. That is equal to having a world-class coach who can immediately analyze efficiency knowledge and supply particular, actionable steering for enchancment.
AI-enabled ecosystem integrations make sure that AI-ready knowledge flows seamlessly into current SOC instruments—SIEMs, SOAR platforms, XDR programs, and knowledge lakes—with out requiring customized integrations or format conversions. It is robotically suitable with practically each software in an analyst’s arsenal.
The compound impact of superior knowledge
The influence of transitioning to AI-ready knowledge creates a compound impact throughout safety operations. Groups can correlate uncommon entry patterns and privilege escalations in ephemeral cloud environments, essential for addressing cloud-native threats that conventional instruments miss. They achieve expanded protection for novel, evasive, and zero-day threats whereas enabling quicker improvement of recent detections.
Maybe most significantly, analysts can rapidly perceive incident timelines with out parsing uncooked logs, get plain-language summaries of suspicious behaviors throughout hosts and classes, and focus their consideration on precedence alerts with clear justifications for why every incident issues.
“Prime quality, context-rich knowledge is the ‘clear gasoline’ AI wants to attain its full potential,” added Bell. “Fashions starved of high quality knowledge will inevitably disappoint. As AI augmentation turns into the usual for each assault and protection, organizations that succeed would be the ones that perceive a elementary fact: on the planet of AI safety, you’re what you eat.”
The coaching determination each SOC should make
As AI turns into customary for each assault and protection, AI-driven safety instruments can’t attain their potential with out the proper knowledge. Organizations that proceed feeding these programs with legacy knowledge could discover their important funding in next-generation expertise underperforming in opposition to more and more superior threats. People who acknowledge this is not about changing current safety investments — it is about offering them with the high-quality gasoline to ship on their promise — shall be positioned to unlock AI’s aggressive benefit.
Within the escalating battle in opposition to AI-enhanced threats, peak efficiency really begins with what you feed your engine.
For extra details about industry-standard safety knowledge fashions that every one the main LLMs have already been skilled on, go to www.corelight.com. Corelight delivers forensic-grade telemetry to energy SOC workflows, drive detection, and allow the broader SOC ecosystem.