Systems | Development | Analytics | API | Testing

Smarter AI Adoption

AI promises efficiency, but are we implementing it the right way? @Marcus Merrell shares what’s critical to track AI usage and its impact: “Here’s the prompt I used to get this tool, and here are the changes I made to make it work.” This kind of transparency is non-negotiable. Start small with a group of mixed experience levels to uncover both benefits and risks before scaling. If AI adds overhead without solving core issues, is it truly worth the investment?

Is AI Falling Short of Expectations?

AI tools like Copilot and ChatGPT promised to revolutionize development workflows, but are they delivering or just creating new headaches? The stats speak volumes: 92% of developers say AI increases the blast radius of bad code 67% are spending more time debugging AI-generated code 59% face deployment errors at least half the time when using AI tools So, are we making strides toward innovation or spinning in circles of hype? @Marcus Merrell put it best: “This stuff was supposed to already start paying off by now. So why isn’t it working?”

More AI, More Problems?

AI was supposed to be the game-changer for developer productivity, but reality isn’t living up to the hype. GPT-4 took 50x the resources of GPT-3.5, yet the improvement? Barely noticeable. AI-generated code isn’t saving time—it’s creating more debugging, security headaches, and compliance risks. The real issue? It’s not the AI—it’s how we’re using it. AI isn’t freeing up developers for innovation—it’s adding more noise. So, what’s the fix? Catch the full conversation on the latest Test Case Scenario.

Rethinking AI's Role in Leadership, Governance, and Productivity

AI is reshaping development, but is it meeting expectations? In this episode of Test Case Scenario, Jason Baum and Marcus Merrell explore the evolving role of AI in software development, drawing insights from recent industry reports. They discuss whether AI tools are living up to their promise of reducing burnout and boosting productivity while examining the complexities of debugging, security risks, and governance gaps.

How Financial Services Institutions Should Think About Unstructured Data - and Why It Matters for a Sound Enterprise AI Strategy

Being able to leverage unstructured data is a critical part of an effective data strategy for 2025 and beyond. To keep up with the competition and AI-accelerated pace of innovation, businesses must be able to mine the treasure trove of value buried in the mountains of unstructured data that comprise approximately 80% of all enterprise data — from call center logs, customer reviews, emails and claims reports to news, filings and transcripts.

AI Won't Fix Testing-But It Might Break It

AI is being treated as a shortcut for quality. Is that a dangerous gamble? There are a few industry-wide experiments happening right now: Developers are being pushed to own quality, but without dedicated testers, gaps are forming. AI is being used as a crutch for testing, but can it actually replace critical thinking? The real risk? We won’t know how badly this approach fails until it’s too late.