『AI Is Failing Inside Companies (Here’s Why No One Admits It)』のカバーアート

AI Is Failing Inside Companies (Here’s Why No One Admits It)

AI Is Failing Inside Companies (Here’s Why No One Admits It)

無料で聴く

ポッドキャストの詳細を見る

今ならプレミアムプランが3カ月 月額99円

2026年5月12日まで。4か月目以降は月額1,500円で自動更新します。

概要

ninjaai.com⁠AI COACHING FOR BUSINESSDo more in less time with coaching from enterprise AI consultants⁠⁠https://www.lapisconsults.com/ai-business-training⁠Description:Most AI conversations are surface-level.Tools. Prompts. Automation hacks.But inside real companies, AI is breaking—quietly.In this episode, Jason Wade (NinjaAI) sits down with Olga Topchaya, Founder & CEO of Lapis AI Consults, to unpack what actually happens when AI moves from demo to deployment.Olga has worked with companies ranging from individual operators to organizations with thousands of employees, helping them integrate AI into real workflows—not just experiments. Her work has reduced operational costs by over 90% in some cases and exposed a consistent pattern: most AI implementations fail for the same reasons.This conversation goes past hype and into execution.You’ll hear:Why companies are losing ~$32,000 per employee to tasks AI should handleThe real reason most AI projects stall in “POC purgatory”Why firing employees after adopting AI is a strategic mistakeThe difference between AI that demos well vs AI that survives productionHow bad data and weak workflows create confident but wrong outputsWhy agents, automation tools, and “vibe coding” introduce hidden riskThe psychology behind AI adoption—speed, dopamine, and bad decisionsWhy “human-in-the-loop” is not optional in real systemsJason breaks down a parallel model from the AI visibility side—how structured data, content density, and entity coverage can dominate search and AI interpretation in days when done correctly.This is the real divide in AI right now:Systems vs DataSpeed vs ControlOutput vs RealityIf you’re building, advising, or investing in AI—this is the layer most people never talk about.Timestamps:00:00 – AI before the hype vs now03:00 – From SEO to AI: thinking in data, not pages07:00 – “Freight train of data” and why density wins10:30 – What AI consultancies actually do (and don’t say publicly)13:00 – Why most AI implementations fail18:00 – AI writing problems (academic bias, passive voice)20:30 – Workflow vs executive assumptions23:00 – RAG, agents, and real-world systems25:00 – Why early agents failed (loops, hallucinations)27:00 – The current state of agent systems29:00 – Vibe coding risks in production environments31:00 – Case study: ranking a business in days using data33:00 – Content vs AI-generated “slop”35:00 – Why companies fail when replacing humans too early37:00 – Human-in-the-loop explained40:00 – Is AI actually “80% there”?43:00 – Prompting vs direction (what people misunderstand)45:00 – Automation vs control (Zapier vs AI agents)48:00 – Fake AI gurus and automation myths50:00 – The real risk: trusting AI more than your team52:00 – Psychology of AI adoption (dopamine + speed)55:00 – Context drift and broken outputs58:00 – Fixing AI conversations (handoff method)Guest:Olga Topchaya is the Founder & CEO of Lapis AI Consults, an AI consultancy focused on integrating AI into real business workflows. With a background in marketing and product, she specializes in bridging the gap between AI capabilities and business execution—helping companies reduce operational costs, improve efficiency, and avoid failed implementations.Her work centers on three pillars: technology, business strategy, and people—an approach that contrasts with most AI initiatives that focus only on tools.About the Host:Jason Wade is the architect behind AI Visibility and founder of NinjaAI. His work focuses on how businesses are interpreted, trusted, and surfaced by search engines and AI systems—through structured data, content density, and entity-level authority.Links:Lapis AI Consults: https://www.lapisconsults.com/Connect with Olga: https://www.linkedin.com/in/olgatopchaya/NinjaAI: https://ninjaai.com
まだレビューはありません