Himanshu Vasishth, Mindaugas Mozūras, Jackie Brosamer & Lukas Pfeiffer
Engineering Productivity: Cutting Through the AI Noise
Your engineers' distrust of AI-generated code is often valid. Learn how to navigate the trade-offs between speed and complexity for real productivity gains.
#1about 2 minutes
Favorite AI development tools at leading tech companies
Leaders from Block, Vinted, and Grammarly share their most used AI tools, including Goose, Cursor, GitHub Copilot, and Claude.
#2about 4 minutes
Finding real productivity gains beyond the AI hype
AI tools show significant value in specific use cases like prototyping and greenfield projects, but engineers remain skeptical of AI-generated code quality.
#3about 4 minutes
How to measure developer productivity in the AI era
Focus on team-level metrics and qualitative insights rather than individual performance, as tools like GetDX show AI users create more complex pull requests.
#4about 4 minutes
Fostering a culture of AI adoption and experimentation
Encourage AI adoption through bottom-up approaches like weekly demos, dedicated experimentation time like 'AI Fridays', and hack weeks instead of top-down mandates.
#5about 3 minutes
The evolution from prompt engineering to context engineering
The role of the engineer is shifting from writing prompts to designing systems that provide rich context, turning developers into architects and reviewers of AI-generated work.
#6about 4 minutes
Key initiatives for boosting engineering productivity
Drive productivity by open-sourcing internal tools, deeply integrating AI into enterprise systems, and providing clear leadership guidance on tool usage.
#7about 3 minutes
Essential advice for developers in the age of AI
Engineers should adopt a low-ego, beginner's mindset to navigate rapid technological changes, while leaders must listen to on-the-ground feedback.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
02:43 MIN
The impact of AI coding assistants on developer productivity
Fireside Chat with Sir Tim Berners-Lee
01:48 MIN
Understanding AI's impact on productivity and market value
From Monolith Tinkering to Modern Software Development
02:40 MIN
Lightning round on future skills and AI trends
The AI-Ready Stack: Rethinking the Engineering Org of the Future
04:03 MIN
Understanding AI's dual impact on developer productivity
Navigating the AI Revolution in Software Development
05:58 MIN
Using AI to improve the entire development process
Breaking Silos: Successful Collaboration Between Tech & Business Teams in Complex Enterprise Systems
01:28 MIN
Implementing generative AI in development teams effectively
Exploring LLMs across clouds
06:16 MIN
Assessing the impact of AI on developer productivity
Empowering Developer Innovation - Balancing Speed, Security, and Scale
01:51 MIN
AI's impact on developer efficiency and market value
GitHub Copilot: Beyond the Basics – 10 Ways to Elevate Your CodingWelcome to an in-depth exploration of GitHub Copilot and its capabilities. If you're a software developer or someone intrigued by AI's potential to revolutionize coding, this post is for you. GitHub Copilot, an AI-powered code completion tool, offers...
Daniel Cranney
Panel Discussion: Responsible AI in Practice - Real-World Examples and ChallengesIntroductionIn the ever-evolving landscape of artificial intelligence, the concept of "responsible AI" has emerged as a cornerstone for ethical and practical AI implementation. During the WWC24 Panel discussion, three eminent experts—Mina, Bjorn Brin...
One billion (bad?) developers: How AI is changing the way we learn to codeAI has transformed so many aspects of programming, with IDE-integrated code assistants now capable of building complex projects from simple prompts.While AI makes it easier for newcomers to dive into coding, could it also hinder their learning by enc...
From learning to earning
Jobs that call for the skills explored in this talk.