Security | Threat Detection | Cyberattacks | DevSecOps | Compliance

Why AI-era attacks demand deterministic defense

The security industry spent a good chunk of early 2026 debating whether Anthropic’s Mythos and OpenAI’s Daybreak are truly dangerous or just good marketing. It's a reasonable debate. But while we're having it, attackers are asking a different question: how do we use tools like this to move faster than defenders can respond?

How Automated Data Collection Is Quietly Reshaping Cybersecurity Intelligence

Web scraping has a reputation problem. For most people, it sits somewhere between grey-area data collection and an outright nuisance that clogs up server logs. But among security professionals, automated data collection has quietly become one of the more valuable arrows in the threat intelligence quiver.

Torq Acquires Jit: The Grounding Layer the AI SOC Has Been Missing

See how Torq harnesses AI in your SOC to detect, prioritize, and respond to threats faster. Request a Demo AI in security operations is moving fast. Agent capabilities are compounding, and the conversation has shifted from whether AI belongs in the SOC to how much it can take on alongside human analysts. But every serious conversation with a CISO eventually lands on the same question: can I trust it? Trust isn’t a model problem. It’s a grounding problem.

What is an intelligent workflow? The enterprise blueprint for moving past automation

Every team has a workflow that technically works but actually runs through Slack threads, forwarded emails, and "Hey, can you check this?" messages. Security teams see it in alert triage that depends on three analysts knowing which tab to check. IT teams see it in onboarding that breaks every time HR adds a new system. Ops teams see it in access requests that loop through five tools before anyone clicks approve. The work gets done, but it doesn't scale, and it doesn't survive a team change.

Beyond automation: why networking teams need orchestration

Networking teams have invested heavily in automation to help them manage increasing workloads and reduce manual tasks. Yet many still face the same issues, like outages, stalled operations, and managing growing incident volume. This problem isn’t a lack of automation: it’s what happens after automation runs. Automation is useful for individual tasks, but it can’t handle the complexity of real-world networking processes, which demand coordination across teams, environments, and tools.

AI governance: a practical guide for enterprise leaders

It's 9:47 AM on a Tuesday. A Slack message from legal lands in the security channel: "Did anyone approve the marketing team's new AI vendor? They're feeding customer data into it." Nobody approved it. The vendor's terms say they can use input data for model training, and the contract was signed three weeks ago. That moment, some version of which plays out at most organizations now, is what makes AI governance an operational priority rather than a compliance exercise.

What are runbooks? And how to automate them

Runbooks are supposed to be the safety net under operations. Unfortunately, most aren't because they live in wikis that decay as tools change, get linked from alerts but never consulted, and fail the responder the moment pressure arrives. The gap is between what the runbook says and what the responder can actually execute. Teams reach for AI to close the gap.

What is a workflow engine, and how does it work?

The Tines Voice of Security 2026 report found that security professionals spend 44% of their time on manual, repetitive work. A workflow engine is the software built to take that operational drag off people, deciding what happens next based on events, rules, and state. The category is shifting. The workflow engine used to live inside one system, running a narrow set of backend steps.