Jan Oberhauser, Mirko Novakovic, Alex Laubscher & Keno Dreßel

The AI-Ready Stack: Rethinking the Engineering Org of the Future

What happens when AI writes 95% of your code? This panel explores how the engineer's role evolves from implementation to creativity and critical system design.

The AI-Ready Stack: Rethinking the Engineering Org of the Future
#1about 1 minute

AI's growing role in the software development lifecycle

AI is now used by 85% of engineering organizations, introducing new tools, processes, and concerns around data privacy and code quality.

#2about 1 minute

How AI is changing observability and developer tools

AI is shifting the user experience for observability from dedicated dashboards to integrated prompts within coding tools like Cursor.

#3about 2 minutes

Empowering non-technical teams with automation

Low-code and AI automation tools shift engineering's role from building solutions for business teams to enabling them to build their own.

#4about 2 minutes

The shift from coding to critical thinking

With AI agents writing up to 95% of new code, the role of the engineer is evolving to focus more on creativity and critical thinking.

#5about 4 minutes

Measuring productivity and managing review fatigue

High volumes of AI-generated code challenge traditional productivity metrics like lines of code and create a new problem of "review fatigue" for human engineers.

#6about 2 minutes

Applying AI beyond code generation in the SDLC

AI's potential extends beyond code generation to areas like automated code review and rapid UI prototyping with tools like Vercel V0.

#7about 3 minutes

Fostering AI tool adoption and experimentation

Companies are encouraging widespread AI tool adoption by providing budgets, enabling non-technical teams, and creating internal knowledge-sharing channels.

#8about 3 minutes

Navigating hiring challenges in the age of AI

AI tools have complicated hiring by enabling perfect resumes and cheating on take-home tests, forcing a shift to live coding and assessing soft skills.

#9about 2 minutes

Maintaining code quality with AI-generated code

Ensuring quality for AI-generated code relies on established practices like observability, human-in-the-loop reviews, and robust CI/CD pipelines.

#10about 4 minutes

Managing data privacy and intellectual property with AI tools

To manage IP risks, companies use local processing and zero-data-retention agreements, recognizing that speed to market is becoming the new competitive moat.

#11about 3 minutes

Lightning round on future skills and AI trends

Panelists share their favorite AI tools, tasks they want automated, and the most important future skills for engineers, such as communication and critical thinking.

Related jobs
Jobs that call for the skills explored in this talk.

Featured Partners

From learning to earning

Jobs that call for the skills explored in this talk.