Krzystof Czieslak
Innovating Developer Tools with AI: Insights from GitHub Next
#1about 4 minutes
Investigating the future of software development at GitHub Next
GitHub Next focuses on creating AI-powered prototypes to enhance developer experience, productivity, and happiness.
#2about 6 minutes
Explaining how large language models work and why they hallucinate
Large language models function by predicting the most probable next word, a probabilistic nature that can lead to incorrect or fabricated outputs known as hallucinations.
#3about 5 minutes
How GitHub Copilot was designed to keep developers in flow
The original GitHub Copilot uses inline suggestions and a "ghost text" UI to automate boilerplate code without disrupting a developer's state of flow.
#4about 4 minutes
The impact of ChatGPT and the rise of chat interfaces
ChatGPT's mainstream success created a user expectation for chat-based AI interfaces, which are better suited for planning and exploration than for maintaining coding flow.
#5about 9 minutes
Using Copilot Workspace to turn GitHub issues into code
Copilot Workspace provides a structured workflow that uses AI to brainstorm, generate an implementation plan, and apply code changes directly from a GitHub issue.
#6about 5 minutes
Building and iterating on micro-applications with GitHub Spark
GitHub Spark is a tool and runtime that allows developers to rapidly generate and modify small applications using natural language prompts.
#7about 7 minutes
Designing cooperative and controllable AI agents for developers
Effective AI tools should function as controllable "co-agents" that enhance user capabilities and are designed defensively to handle inevitable failures gracefully.
#8about 4 minutes
Exploring the future of AI beyond simple code generation
The next frontier for AI developer tools includes creating UIs that sync natural language with code, focusing on code understanding, and carefully considering the ethics of AI application.
#9about 1 minute
Book recommendations for prompt engineering and LLM observability
Two recommended books cover the practical skills of prompt engineering for LLMs and the critical process of implementing observability for AI systems.
Related jobs
Jobs that call for the skills explored in this talk.
Wilken GmbH
Ulm, Germany
Senior
Kubernetes
AI Frameworks
+3
ROSEN Technology and Research Center GmbH
Osnabrück, Germany
Senior
TypeScript
React
+3
Matching moments
04:57 MIN
Increasing the value of talk recordings post-event
Cat Herding with Lions and Tigers - Christian Heilmann
03:28 MIN
Why corporate AI adoption lags behind the hype
What 2025 Taught Us: A Year-End Special with Hung Lee
03:48 MIN
Automating formal processes risks losing informal human value
What 2025 Taught Us: A Year-End Special with Hung Lee
03:15 MIN
The future of recruiting beyond talent acquisition
What 2025 Taught Us: A Year-End Special with Hung Lee
04:27 MIN
Moving beyond headcount to solve business problems
What 2025 Taught Us: A Year-End Special with Hung Lee
04:22 MIN
Why HR struggles with technology implementation and adoption
What 2025 Taught Us: A Year-End Special with Hung Lee
02:44 MIN
Rapid-fire thoughts on the future of work
What 2025 Taught Us: A Year-End Special with Hung Lee
05:18 MIN
Incentivizing automation with a 'keep what you kill' policy
What 2025 Taught Us: A Year-End Special with Hung Lee
Featured Partners
Related Videos
Bringing the power of AI to your application.
Krzysztof Cieślak
From Syntax to Singularity: AI’s Impact on Developer Roles
Anna Fritsch-Weninger
AI: Superhero or Supervillain? How and Why with Scott Hanselman
Scott Hanselman
Panel discussion: Developing in an AI world - are we all demoted to reviewers? WeAreDevelopers WebDev & AI Day March2025
Laurie Voss, Rey Bango, Hannah Foxwell, Rizel Scarlett & Thomas Steiner
Engineering Mindset in the Age of AI - Gunnar Grosch, AWS
Gunnar Grosch
Agents for the Sake of Happiness
Thomas Dohmke
Collaborative Intelligence: The Human & AI Partnership
Prashanth Chandrasekar, Alejandro Saucedo, Jakob von Lindern & Demetris Cheatham
Exploring AI: Opportunities and Risks in Development
Angie Jones, Kent C Dobbs, Liran Tal & Chris Heilmann
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.


autonomous-teaming
München, Germany
Remote
API
React
Python
TypeScript





VisualMakers GmbH
Köln, Germany
€56-80K
GIT
React
Flask
Python
+7


FRG Technology Consulting
Intermediate
Azure
Python
Machine Learning