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Description: In this conversation, the speaker and Mateo Stroll explore the intersection of humanity and technology, focusing on AI’s real value. Stroll shares his view: “Robots aren’t coming for your jobs, they’re coming for theirs. We must stop doing the work of robots.” They compare AI to 1980s auto-industry automation, which didn’t replace people but scaled output, reduced errors, and improved quality. The discussion outlines three practical uses of AI: organizing, scaling, and accelerating human interactions. An airline example shows how automating patching freed system administrators to focus on higher-level problem-solving. Stroll also offers a critical view of popular generative AI tools like ChatGPT, describing them as polished interfaces layered over search. He advises executives to hire experts to define processes and target quick wins instead of attempting massive, unfocused transformation efforts. Table of Contents I. The Intersection of Humanity, Technology, and Automation Humans vs. Robots (00:00–00:13, 12:12–12:18): Humans excel at problem-solving but make errors; robots are “coming for theirs,” and humans must stop doing robotic work. Automation in the Auto Industry (00:13–00:33, 12:20–12:48): 1980s automation scaled work, reduced mistakes, and improved vehicle quality without destroying jobs. Technology as Augmentation (02:30–02:41): Computers accelerate and enhance human capability. Impact on Humanity (03:06–03:51): Technology transformed healthcare and academia by enriching teaching and enabling global knowledge sharing. II. The Current State and Value of AI The Problem with Current AI (05:10–05:40): Popular generative interfaces can produce lowest-common-denominator responses due to scale and access. True Power of AI (06:03–06:17): AI’s long-term value is practical and operational, not media-driven. Difficulty in Quantifying Value (06:29–06:36): Executives struggle to assign clear financial outcomes to AI tools. Three Functions of Public AI (06:46–07:08): Public AI primarily organizes, scales, or accelerates human interactions. III. Business Process and AI Implementation Prerequisite for Automation (08:17–08:24): Processes must be documented before scaling or automating. Calculating Value (08:51–09:21): Identify human tasks, automate where possible, and measure time saved. The Airline Automation Example (12:50–17:02): A six-week solution automated 98.5% of patching across 56,000 servers, reduced thousands of security tickets, and freed teams to focus on real threats and regulatory needs. Resistance and Resiliency (15:47–19:14): Initial resistance gave way to improved quality of life; resiliency and agility outweigh headcount focus. Change Management (19:17–19:52): Technology adoption requires structured change management. IV. AI for Programming and Development (22:53–24:49) Code Quality (22:56–24:16): AI can validate code, scan for vulnerabilities, and scale testing before deployment. Finding Hidden Issues (24:31–24:49): AI analyzes logs to uncover unseen problems and unused paths. V. The Problem with NLP Standardization (25:27–28:53) Lack of Standardization (25:27–25:33): NLP lacks common standards across libraries. Complex Queries (26:36–27:08): Current AI struggles with contextual, multi-step calculations. Need for a Dictionary (27:30–27:43): Models create internal interpretations instead of relying on shared standards. Future Solution (28:32–28:53): A community-driven framework could standardize contextual meaning and improve AI cognition. VI. Recommendations for AI Adoption (29:14–31:04) Define the Problem First (29:37–29:42): Clearly define the problem before choosing tools. Hire Experts (29:52–30:31): Use experienced product or process leaders to guide adoption. Executive Mindset (30:54–31:04): Leaders must accept discomfort, define value metrics, and align AI with real business processes.