AI News & Strategy Daily with Nate B. Jones

Build a Token Burn Dashboard to Track What Your AI Actually Does

21 min · 5. juni 2026
episode Build a Token Burn Dashboard to Track What Your AI Actually Does cover

Beskrivelse

For deeper playbooks and analysis: https://natesnewsletter.substack.com/ What's really happening when people brag about burning AI tokens? The common story is that token burn is waste, a status flex, or just another confusing AI metric - but the reality is that it can become a feedback loop for delegated intelligence, better AI habits, and faster learning. In this video, I share the inside scoop on building a token burn dashboard and what it taught me about using AI well. Why more agents and more tokens can lead to better answers How a usage dashboard turns scattered work into a learning loop What top token days reveal about real AI fluency Where public charts and shared accountability make people better together Why the next edge is not just using AI, but studying how you use it If you are an operator, builder, marketer, executive, or anyone trying to get more value out of AI, the shift is simple: stop treating usage as a vanity metric and start treating it as evidence you can learn from. Subscribe for daily AI strategy and news. Hosted on Acast. See acast.com/privacy for more information. ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

Kommentarer

0

Vær den første til at kommentere

Tilmeld dig nu og bliv en del af AI News & Strategy Daily with Nate B. Jones-fællesskabet!

Kom i gang

1 måned kun 9 kr.

Derefter 99 kr. / måned · Opsig når som helst.

  • Podcasts kun på Podimo
  • 20 lydbogstimer pr. måned
  • Gratis podcasts

Alle episoder

158 episoder

episode I asked Fable and Codex what to automate. They disagreed. cover

I asked Fable and Codex what to automate. They disagreed.

For deeper playbooks and analysis: https://natesnewsletter.substack.com/p/let-ai-pick-what-to-automate [https://natesnewsletter.substack.com/p/let-ai-pick-what-to-automate] What's really happening when you stop telling an AI what to automate and ask it to discover the problem itself? The common story is that AI agents need a tightly specified task — but the reality is that the strongest systems can inspect real work, identify recurring friction, and propose different high-leverage automations. In this video, I share the inside scoop on giving Fable and Codex the same open brief and getting two very different answers. * Why picking the problem is becoming part of the agent's job * How Fable found a strategic editorial preflight opportunity * What Codex built to validate completed content handoffs * Where human judgment still matters * How to turn the method into a reusable automation-discovery skill * For operators, builders, and leaders, the shift is from asking which tool to use to asking which recurring problem is worth solving completely. Subscribe for daily AI strategy and news. Hosted on Acast. See acast.com/privacy for more information. ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

I går12 min
episode The AI Harness Audit: Clean Your Setup Before You Upgrade cover

The AI Harness Audit: Clean Your Setup Before You Upgrade

Every time an AI missed something, I added another rule. Eventually, the accumulated skills, memories, system prompts, checks, and permissions became a hidden system of their own—and that system was getting in the models' way. In this episode, I audit the harness around my AI and compare what happens when Fable 5 and ChatGPT 5.6 meet compact versus overloaded instruction systems. The audit found 66 skill routes, 172 instruction assets, repeated governance rules, and a discovery layer far beyond Codex's stated budget. The lesson is not simply to shorten every prompt. It is to give each surviving instruction one owner and one reason, load specialist context when the work needs it, and enforce deterministic requirements with hard checks. Privacy Policy: https://www.acast.com/privacy ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

15. juli 202615 min
episode Pick an AI Model That Fits How You Actually Work cover

Pick an AI Model That Fits How You Actually Work

For deeper playbooks and analysis: https://natesnewsletter.substack.com/ [https://natesnewsletter.substack.com/] What's really happening as the model race expands into GPT-5.6, Fable 5, Grok 4.5, GLM 5.2, and increasingly complicated model mixes? The common story is that you should pick whichever model tops the latest benchmark — but the reality is that the best model depends on how you think, how you prompt, and what your hardest work requires. In this episode, Nate shares the inside scoop on choosing a model by work pattern rather than hype. * Why “dumber” does not mean dumb * How model families develop different working styles * Why benchmarks are evidence, not the selection heuristic * How Ringer pairs a strong architect with cheaper workers * What knowledge-work AI still needs beyond coding harnesses For builders, operators, researchers, and team leaders, understanding your own work is becoming more durable than memorizing every model leaderboard. Subscribe for daily AI strategy and news. Hosted on Acast. See acast.com/privacy for more information. ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

13. juli 202613 min
episode AI-Native Companies Run on Code: 15 Rules for Operators cover

AI-Native Companies Run on Code: 15 Rules for Operators

AI made it cheap to build almost anything. Most companies still ship at the old pace, and it isn't because their AI is worse than Anthropic's or OpenAI's. The real difference is what they've moved out of meetings and documents and into working code. Full post: https://natesnewsletter.substack.com/p/ai-native-company-rules?r=1z4sm5&utm_campaign=post&utm_medium=web&showWelcomeOnShare=true [https://natesnewsletter.substack.com/p/ai-native-company-rules?r=1z4sm5&utm_campaign=post&utm_medium=web&showWelcomeOnShare=true] My Links 🔗 👉🏻 Newsletter: https://natesnewsletter.substack.com/ [https://natesnewsletter.substack.com/] 👉🏻 X: https://x.com/natebjones [https://x.com/natebjones] 👉🏻 TikTok: https://www.tiktok.com/@nate.b.jones [https://www.tiktok.com/@nate.b.jones] 👉🏻 Instagram: https://www.instagram.com/nate.b.jones [https://www.instagram.com/nate.b.jones] What's really happening inside the companies that ship AI features every week? The common story is that they just have better AI. The real question is what they rebuilt underneath the model to make that speed possible. In this video, I share the inside scoop on the 15 rules I use to move a company from tool adoption to real AI-native speed: * Why moving repeatable coordination into code is now an operator's job * How 15 commandments work together as one operating system * What changes first: roadmaps, meetings, documentation, and design * Where partial adoption fails, and why every rule has to move together Moving this fast is real, but only if you treat these as one system instead of picking off the rule that feels easiest to adopt. ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

12. juli 202617 min
episode Agent-Shaped Work: When to Use AI Agents (and When Not To) cover

Agent-Shaped Work: When to Use AI Agents (and When Not To)

Most people bought AI agents and never figured out what to point them at. This is the one-minute test that tells you whether a task belongs in a chat, a single agent, a team of agents, or nowhere near AI. My Links 🔗 👉🏻 Newsletter: https://natesnewsletter.substack.com/ 👉🏻 X: https://x.com/natebjones 👉🏻 TikTok: https://www.tiktok.com/@nate.b.jones 👉🏻 Instagram: https://www.instagram.com/nate.b.jones What's really happening inside the AI agent economy? The common story is that you need more agents. The real question is which tasks are worth any agents at all. In this video, I share the inside scoop on how to spot agent-shaped work: - Why buying more thinking now beats hiring or waiting - How four estimates sort any task in about a minute - What a 40-tool audit surfaced and what it cost to run - Where human judgment still beats every frontier model The agents already work. The scarce skill now is knowing which tasks to hand them and which to keep for yourself. ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

10. juli 202628 min