David Obasiolu's avatarPerson

David Obasiolu

AI Security, Governance & Systems ConsultantVliso AI

New York, NY

Skills

Artificial Intelligence
Information Security
Software

About

I'm an engineer with a deep passion for AI and cybersecurity, dedicated to advancing cutting-edge, reliable, and safe applications of Artificial Intelligence across industries. BS Computer & Electrical Engineering MS Complex Information Systems Security

Published content

How AI Will Actually Make Money in the Next Decade

expert panel

As artificial intelligence matures, one question looms large for executives: Where will durable revenue actually come from? Despite explosive adoption, many AI products still struggle to convert usage into sustainable profit. The shift from experimentation to enterprise value is now underway—and the stakes are high. Insights from the Senior Executive AI Think Tank—a curated group of leaders in machine learning, generative AI and enterprise systems—point to a clear trend: Profitability will not come from novelty, but from deeply embedded, outcome-driven applications. A recent Forbes report on AI ROI in the enterprise found that more than half of companies using AI are already seeing measurable revenue gains, with many reporting 6% to 10% growth, and some exceeding 10%. The findings reinforce a critical shift: Organizations are prioritizing AI solutions tied directly to business outcomes rather than experimental tools. What emerges from the Think Tank’s collective perspective is not a single dominant model, but a clear direction of travel. Enterprise copilots, verticalized AI systems, outcome-based pricing and workflow-native automation are converging into a new blueprint for profitability—one rooted in integration, accountability and measurable results. The following insights break down how these models are taking shape in practice, and what leaders must prioritize now to turn AI from a promising capability into a dependable revenue engine.

How FDA’s Elsa Is Changing GovTech: AI Experts Weigh In

article

The FDA’s new generative AI tool, Elsa, could signal the start of AI-native government operations—streamlining scientific reviews, increasing public transparency, and reshaping how trust is earned in digital-era governance. But as Elsa ushers in new efficiencies, AI leaders warn: Success depends on human oversight, ethical frameworks, and explainable systems.

Digg Is Back—and Betting Big on AI. Will It Work?

article

Digg’s relaunch brings generative AI into the heart of content moderation, aiming to scale oversight across online communities. But can AI manage trust, context, and nuance without human judgment? Members of the AI Think Tank weigh in on what this move means for the future of digital community governance.

Open vs. Closed AI: What Business Leaders Need to Know in 2025

article

With open-source models like Mistral and Llama gaining traction, the AI landscape is shifting fast. Members of the Senior Executive AI Think Tank break down how open and proprietary platforms will compete—and coexist—over the next 12 months.

Autonomous AI Agents in the Enterprise: Risks, Rewards and Reality

article

AI agents and memory-enabled models promise enterprise transformation—capturing institutional knowledge, automating workflows and making context-rich decisions. But without robust oversight, they pose security, privacy and accountability risks. Members of the Senior Executive AI Think Tank share insights on the risks and rewards of agentic AI in business.

Deepfakes and Democracy: What Media Platforms Must Do Next

article

As deepfake technology grows more convincing and widespread, it’s become a critical threat to public trust and democratic discourse. Members of Senior Executive’s AI Think Tank explore how platforms and media organizations must respond—with detection tools, transparent policies and global collaboration.

Company details

Vliso AI

Industry

Computer Software

Area of focus

Artificial Intelligence
Consumer Software
Cyber Security

Company size

11 - 50