AI beyond the code: Master your organisational AI implementation.
What's the biggest threat to your AI project? It's not the code, but a manager who says, "This data is mine."
#1about 6 minutes
The challenge of optimizing tire production planning
Manual production planning for expensive machinery leads to inefficiencies and lost revenue, creating a clear business need for an AI-driven solution.
#2about 3 minutes
Assembling the team and building the initial concept
A cross-functional team of data engineers, scientists, and AI engineers is formed and successfully develops the core AI model concept in the initial sprints.
#3about 7 minutes
Distinguishing true AI from legacy rule-based algorithms
The project is challenged by a legacy system mistaken for AI, highlighting the organizational need to understand the difference between basic algorithms and self-learning systems.
#4about 7 minutes
Data silos are the enemy of machine learning
Being denied access to real production data reveals that organizational data silos and a lack of data governance will prevent any machine learning model from succeeding.
#5about 5 minutes
How C-level micromanagement creates organizational overhead
Escalating issues to the C-level results in a series of unproductive workshops and a bloated, unfunded task force, demonstrating how micromanagement stifles progress.
#6about 3 minutes
Six key strategies for successful organizational AI adoption
A summary of crucial lessons learned includes fostering AI understanding, building shared commitment, implementing a data strategy, removing silos, and empowering expert teams.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
03:32 MIN
Introducing a case study of a failed AI project
Big Business, Big Barriers? Stress-Testing AI Initiatives.
07:30 MIN
Organizational strategies for successful AI adoption
Leading efficiency, empathy, and the human experience with AI
05:35 MIN
Why data silos and lack of governance kill AI projects
Big Business, Big Barriers? Stress-Testing AI Initiatives.
03:33 MIN
Key lessons for enterprise AI tool implementation
AI Pair Programming with GitHub Copilot at SAP: Looking Back, Looking Forward!
04:04 MIN
Learning from common failures in AI projects
Rethinking Customer Experience in the Age of AI
02:03 MIN
Seven best practices for successful AI implementation
Big Business, Big Barriers? Stress-Testing AI Initiatives.
05:57 MIN
Adopting a holistic AI strategy across business functions
Fireside Chat with Werner Vogels, VP & CTO, Amazon.com & Daniel Gebler, CTO at Picnic
03:39 MIN
Integrating AI expertise into product and business teams
Exploring AI: Opportunities and Risks for DevelopersIn today's rapidly evolving tech landscape, the integration of Artificial Intelligence (AI) in development presents both exciting opportunities and notable risks. This dynamic was the focus of a recent panel discussion featuring industry experts Kent...
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...
Chris Heilmann
Transforming Software Development: The Role of AI and Developer ToolsIn today's fast-paced tech landscape, AI has begun to play an increasingly significant role, reshaping the way developers create software. As we delve into this transformation, we uncover both opportunities and challenges that AI brings into the worl...
Eli McGarvie
13 AI Tools You Have to TryFirst, it was NFTs, then it was Web3, and now it’s generative AI… it’s probably time to stop collecting pictures of monkeys and kitties. Chatbots and generative AI are the next big thing. This time we’ve jumped on a trend that has real-world applicat...
From learning to earning
Jobs that call for the skills explored in this talk.