Stop building MVPs. To succeed with GenAI, your team needs to ship a Minimum Lovable Product that delights users and drives adoption.
#1about 5 minutes
Understanding the shift from predictive to generative AI
Generative AI adds a layer of judgment to traditional predictive models, enabling more nuanced and context-aware responses.
#2about 3 minutes
Keeping pace with the rapid acceleration of GenAI
The rapid release of new features, like increased token limits and advanced APIs, requires constant adaptation as previous tools and libraries quickly become obsolete.
#3about 5 minutes
Identifying key business opportunities for generative AI
Generative AI can solve major business challenges by managing information overload, boosting content creation, and enabling deep personalization in marketing.
#4about 5 minutes
Understanding the core components of a GenAI stack
Building a GenAI product involves integrating foundational models, vector databases for proprietary data, and user-facing clients beyond simple chatbots.
#5about 3 minutes
Building teams that thrive in GenAI's uncertainty
Effective GenAI teams prioritize curiosity and adaptability over specific roles like "prompt engineer" to handle the constant evolution of tools and APIs.
#6about 6 minutes
Adopting product management frameworks for GenAI development
Use frameworks like "Ship to Learn" for rapid iteration and focus on creating a Minimum Lovable Product (MLP) to drive organic user adoption.
#7about 5 minutes
Creating a unified GenAI platform for your enterprise
A centralized platform provides common APIs and capabilities, allowing different business units to build specialized applications without reinventing the core infrastructure.
#8about 7 minutes
Prioritizing governance and data quality in GenAI products
Data quality, privacy, and ethical governance are not afterthoughts but foundational requirements that must be addressed before building any GenAI application.
#9about 6 minutes
Implementing a strategic framework for enterprise GenAI adoption
A successful enterprise strategy involves defining the business purpose, setting up guardrails, building the right tech stack, and hiring adaptable talent.
#10about 6 minutes
Using human language as an API to accelerate innovation
The ability to use natural language to define model behavior and chain tools together via function calling dramatically speeds up development and prototyping.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
03:53 MIN
The future of product creation with generative AI
Fireside Chat: Innovation in the Era of Disruption
02:24 MIN
Navigating the overwhelming wave of generative AI adoption
Developer Experience, Platform Engineering and AI powered Apps
01:27 MIN
Using AI to reimagine the developer experience
AI Pair Programming with GitHub Copilot at SAP: Looking Back, Looking Forward!
05:32 MIN
GenAI applications and emerging professional roles
Enter the Brave New World of GenAI with Vector Search
03:34 MIN
How generative AI is changing software development
The transformative impact of GenAI for software development and its implications for cybersecurity
04:05 MIN
Understanding the fundamental shift to generative AI
Your Next AI Needs 10,000 GPUs. Now What?
01:06 MIN
Moving beyond hype with real-world generative AI
Semantic AI: Why Embeddings Might Matter More Than LLMs
02:41 MIN
The rapid and disruptive impact of generative AI
The Technology Revolution: Mastering the Challenges of Radical Change
How to Use Generative AI to Accelerate Learning to CodeIt’s undeniable that generative-AI and LLMs have transformed how developers work. Hours of hunting Stack Overflow can be avoided by asking your AI-code assistant, multi-file context can be fed to the AI from inside your IDE, and applications can be b...
Benedikt Bischof
How we Build The Software of TomorrowWelcome to this issue of the WeAreDevelopers Live Talk series. This article recaps an interesting talk by Thomas Dohmke who introduced us to the future of AI – coding.This is how Thomas describes himself:I am the CEO of GitHub and drive the company’s...
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...
Daniel Cranney
Stephan Gillich - Bringing AI EverywhereIn the ever-evolving world of technology, AI continues to be the frontier for innovation and transformation. Stephan Gillich, from the AI Center of Excellence at Intel, dove into the subject in a recent session titled "Bringing AI Everywhere," sheddi...
From learning to earning
Jobs that call for the skills explored in this talk.