Anna Fritsch-Weninger

From Syntax to Singularity: AI’s Impact on Developer Roles

We asked AI to use the Spotify API. It confidently hallucinated a fake endpoint. Here's why that proves human developers are more critical than ever.

From Syntax to Singularity: AI’s Impact on Developer Roles
#1about 1 minute

Will AI replace developers? An AI-built demo

An AI-generated web application demonstrates how quickly AI can perform development tasks, raising questions about the future of developer roles.

#2about 3 minutes

Understanding the concept of technological singularity

The concept of technological singularity is explored, defining it as a future point where technology surpasses human knowledge and control.

#3about 4 minutes

The critical role of data quality in AI models

The performance of AI models is heavily dependent on the quality, context, history, and potential bias of their underlying training data.

#4about 5 minutes

How AI is automating low-code development tasks

A demonstration of Power Automate Copilot shows how a natural language prompt can generate a complete automation workflow in minutes.

#5about 7 minutes

Comparing general AI vs developer-specific AI assistants

Side-by-side comparisons of a general AI and a developer-focused AI reveal differences in handling off-topic, technical, and research-based prompts.

#6about 4 minutes

Using AI to detect anomalies in data files

AI tools can quickly scan CSV files to identify different types of data anomalies and automatically format the findings into a structured JSON output.

#7about 3 minutes

Generating API calls for undocumented features

A developer-focused AI can generate valid API requests even for poorly documented endpoints and correctly identify features that do not exist.

#8about 3 minutes

AI's limitations in complex problem-solving scenarios

An example of creating a commented JSON config file shows that AI may provide a technically correct but suboptimal solution without human expertise.

#9about 5 minutes

Navigating security and hallucinations in AI-generated code

AI models are improving at flagging security issues in generated code but can still hallucinate non-existent API features, requiring careful validation.

#10about 5 minutes

AI's current capabilities and limitations for developers

AI excels at repetitive tasks and code generation but lacks the creativity, ethical judgment, and deep business understanding of an experienced human developer.

#11about 3 minutes

Practical advice for junior developers using AI tools

Junior developers should leverage AI as a learning partner while remaining aware of its limitations, verifying its output, and considering data privacy.

#12about 5 minutes

Guidance for senior developers adapting to AI

Senior developers are advised to remain open-minded, use AI to automate tedious tasks, mentor juniors on its use, and focus on developing hybrid roles.

#13about 7 minutes

Q&A: Who benefits most and ensuring code quality

The Q&A session addresses who benefits most from AI in development, its potential to boost creativity, and strategies for ensuring AI-generated code is secure.

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.

AI Developer

AI Developer

June Gmbh

Remote
Intermediate
Java
Azure
Linux
DevOps
+11