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In this episode, we dive deep into getting the right results from Gen AI with Timm Peddie, an expert in operationalizing AI at scale. We discuss the common pitfalls companies face, what "right results" actually mean, and how organizations can effectively implement Gen AI solutions. Timm shares practical strategies for AI adoption, the importance of rapid failure, and how companies can avoid costly mistakes.
π Key Topics Covered:
βοΈ Defining "Operationalizing Gen AI" and why itβs more than just integrating APIs
βοΈ The challenge of hallucinations, drift, and policing AI models
βοΈ The importance of rapid failure and iterative learning in AI projects
βοΈ Picking the right POC (Proof of Concept) β What makes a successful AI pilot?
βοΈ Managing AI costs β Avoiding unexpected cloud bills
βοΈ Adoption & Trust β How to build confidence in AI outputs
βοΈ Competitive advantage β Where AI will become table stakes and where companies can still differentiate
π Key Takeaways:
π‘ 1. AI Isn't Plug-and-Play β Deploying AI models requires process development, governance, and continuous monitoring. Organizations that think AI "just works" out of the box often fail.
π‘ 2. Expect AI Drift β AI models are never static. They improve or degrade over time and require ongoing retraining and human oversight to stay relevant.
π‘ 3. Rapid Failure = Faster Success β Companies should design for rapid iteration instead of expecting perfection from day one. The more experiments, the better the long-term outcomes.
π‘ 4. Internal POCs Matter β A low-risk starting point is using AI internally (e.g., automating HR handbook searches) before deploying customer-facing AI.
π‘ 5. Competitive Advantage is Temporary β AI will soon become table stakes. Early adopters gain an edge now, but long-term differentiation will come from how AI is embedded into business processes.
π‘ 6. AI Costs Can Balloon Quickly β Without clear cost structures and monitoring, AI projects can become expensive fast. Companies must understand pricing models for training and inference costs.
π‘ 7. Trust is Key to Adoption β Users will abandon AI systems if they donβt trust the results. Implementing quality checks and human oversight is crucial to ensuring AI credibility.
β³ Timestamped Highlights:
π [00:01:00] β What does "Operationalizing Gen AI" mean? The real challenges beyond just using APIs.
π [00:04:00] β The problem of AI drift β Why the same model can produce different results over time.
π [00:07:00] β How to pick the right AI POC β Key characteristics of a successful pilot project.
π [00:09:30] β The risk of AI misinformation β The real-world example of an automakerβs AI chatbot fabricating car details.
π [00:12:00] β AI costs explained β How cloud providers structure AI pricing and where companies can get blindsided.
π [00:14:00] β Building AI trust β Why humans must be in the loop to validate AI results.
π [00:19:00] β Where does competitive advantage come from? Why AI will soon become table stakes.
π¬ Notable Quote:
"If AI isnβt a part of every breath in your business, itβs going to be difficult to survive in the future." β Timm Peddie
π Connect with Timm Peddie:
π LinkedIn: www.linkedin.com/peddie
π§ Enjoyed the episode?
β Subscribe, rate & review to stay updated!
π Share with someone in tech who needs to hear this.
5
5252 ratings
In this episode, we dive deep into getting the right results from Gen AI with Timm Peddie, an expert in operationalizing AI at scale. We discuss the common pitfalls companies face, what "right results" actually mean, and how organizations can effectively implement Gen AI solutions. Timm shares practical strategies for AI adoption, the importance of rapid failure, and how companies can avoid costly mistakes.
π Key Topics Covered:
βοΈ Defining "Operationalizing Gen AI" and why itβs more than just integrating APIs
βοΈ The challenge of hallucinations, drift, and policing AI models
βοΈ The importance of rapid failure and iterative learning in AI projects
βοΈ Picking the right POC (Proof of Concept) β What makes a successful AI pilot?
βοΈ Managing AI costs β Avoiding unexpected cloud bills
βοΈ Adoption & Trust β How to build confidence in AI outputs
βοΈ Competitive advantage β Where AI will become table stakes and where companies can still differentiate
π Key Takeaways:
π‘ 1. AI Isn't Plug-and-Play β Deploying AI models requires process development, governance, and continuous monitoring. Organizations that think AI "just works" out of the box often fail.
π‘ 2. Expect AI Drift β AI models are never static. They improve or degrade over time and require ongoing retraining and human oversight to stay relevant.
π‘ 3. Rapid Failure = Faster Success β Companies should design for rapid iteration instead of expecting perfection from day one. The more experiments, the better the long-term outcomes.
π‘ 4. Internal POCs Matter β A low-risk starting point is using AI internally (e.g., automating HR handbook searches) before deploying customer-facing AI.
π‘ 5. Competitive Advantage is Temporary β AI will soon become table stakes. Early adopters gain an edge now, but long-term differentiation will come from how AI is embedded into business processes.
π‘ 6. AI Costs Can Balloon Quickly β Without clear cost structures and monitoring, AI projects can become expensive fast. Companies must understand pricing models for training and inference costs.
π‘ 7. Trust is Key to Adoption β Users will abandon AI systems if they donβt trust the results. Implementing quality checks and human oversight is crucial to ensuring AI credibility.
β³ Timestamped Highlights:
π [00:01:00] β What does "Operationalizing Gen AI" mean? The real challenges beyond just using APIs.
π [00:04:00] β The problem of AI drift β Why the same model can produce different results over time.
π [00:07:00] β How to pick the right AI POC β Key characteristics of a successful pilot project.
π [00:09:30] β The risk of AI misinformation β The real-world example of an automakerβs AI chatbot fabricating car details.
π [00:12:00] β AI costs explained β How cloud providers structure AI pricing and where companies can get blindsided.
π [00:14:00] β Building AI trust β Why humans must be in the loop to validate AI results.
π [00:19:00] β Where does competitive advantage come from? Why AI will soon become table stakes.
π¬ Notable Quote:
"If AI isnβt a part of every breath in your business, itβs going to be difficult to survive in the future." β Timm Peddie
π Connect with Timm Peddie:
π LinkedIn: www.linkedin.com/peddie
π§ Enjoyed the episode?
β Subscribe, rate & review to stay updated!
π Share with someone in tech who needs to hear this.
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