Friday, May 15, 2026

Mythos - Game Changer or Marketing Hype

 

I am sure you might have seen the headlines like:

 


 OR


 

These headlines have shaken a lot of people all over the world. Are these headlines the result of clever marketing or have real substance underneath?

Let’s examine Mythos effectiveness in real-world security analysis using the open-source library curl as a case study.

·       The Marketing vs. Reality Gap: While Anthropic and companies like Mozilla have hyped Mythos as being "too dangerous" and a game-changer that makes "zero days numbered," the reality found by curl maintainer Daniel Stenberg was far more grounded.

·       The Curl Case Study: Daniel Stenberg allowed Anthropic to run Mythos on the curl codebase. Out of the five reported security vulnerabilities, only one was confirmed to be a legitimate (and low-severity) security issue; the rest were false positives or standard bugs.

·       The Evolution of AI Security: While early 2024 AI models were largely ineffective and created "slop" that distracted maintainers of Curl, current tools have significantly improved and are now genuinely useful for identifying bugs, though they are not a silver bullet.

·       The Role of Human Expertise: Despite the advancement of AI models, human ingenuity and expertise remain crucial. AI is a tool to be wielded, not a complete replacement for security research.

Mythos is likely a useful iteration, but the aggressive marketing claiming it will definitely end security vulnerabilities is hyperbolic. The industry remains a competitive space where maintainers must still filter through AI-generated reports, regardless of the model's sophistication.

Tuesday, May 5, 2026

Perspective on SaaS providers

 

The narrative that “AI will make SaaS obsolete” misses the real shift. AI isn’t replacing SaaS, it’s rewriting its economics. Let’s examine it in little bit detail.

  • From Features to Outcomes: Traditional SaaS sold tools you operate. AI-native platforms deliver autonomous execution. Agents don’t just assist—they generate leads, draft outreach, optimize campaigns, and run workflows end-to-end. Value shifts from “what the software does” to “what it delivers.”.
  •  Pricing Models Are Resetting: Per-seat licensing loses relevance when one AI agent replaces multiple users. Expect hybrid structures (subscription + usage + outcome-based) and tighter pressure on revenue predictability.
  • Rise of AI-native competitors: There will be two classes of SaaS providers. Incumbents – tweaking the existing offerings to accommodate AI and new players – developing AI native systems from scratch. If incumbent do not overhaul SaaS architecture in big way, they may become glory of past.
  •  The “Build In-House” Mirage: AI slashes dev costs, tempting mid-market teams to ditch vendors. But TCO, compliance, security, and ongoing maintenance will likely push many back to established SaaS ecosystems.
  •  Consolidation & Verticalization: AI will compress “SaaS sprawl.” Horizontal platforms face margin pressure, while vertical/specialized providers with proprietary data and deep workflow integration will strengthen.
  •  GTM Still Dominates Cost Structure: AI accelerates engineering, but sales, marketing, and enterprise trust-building remain the largest cost centers. Code is cheap. Distribution and adoption are hard.
  •  Agent Reality Check: Non-deterministic outputs and evaluation complexity mean AI is currently a powerful automation layer—not a full replacement for mission-critical systems. Governance and quality control remain non-negotiable.

 In conclusion, large incumbents will survive, but “seat growth” will slow, pricing power will compress, and AI-native challengers will redefine categories. The new competitive moat isn’t features or code, it’s workflow ownership, domain expertise, and outcome accountability..

What do you think!!!