{"version":"1.0","type":"rich","provider_name":"Acast","provider_url":"https://acast.com","height":250,"width":700,"html":"<iframe src=\"https://embed.acast.com/$/69ab3b7c7036d739021982df/69ab3b8be2ffe1fef6526be0?\" frameBorder=\"0\" width=\"700\" height=\"250\"></iframe>","title":"How I Improved AI Output Quality 10X With One Prompting Shift","description":"<p class=\"text-node\">What's really happening when your prompts are either too detailed or not detailed enough? The common story is that more clarity always helps, but the reality is more complicated when over-specifying kills creativity and burns context just as badly as under-prompting does. In this video, I share the inside scoop on finding the right altitude for LLM prompts:</p><ul class=\"list-node\"><li class=\"list-item-node\"><p class=\"text-node\">Why over-specifying crushes model judgment and wastes the context window you actually need</p></li><li class=\"list-item-node\"><p class=\"text-node\">How under-prompting forces large language models to guess in ways that compound downstream</p></li><li class=\"list-item-node\"><p class=\"text-node\">What Goldilocks prompting unlocks in Claude, GPT-5, and Gemini when you hit the right level of detail</p></li><li class=\"list-item-node\"><p class=\"text-node\">Where short, reusable prompt slugs outperform long instruction dumps for operators building at scale</p></li></ul><p class=\"text-node\">For operators and teams navigating 2026, a balanced prompting strategy gives you more control without surrendering the model judgment that makes AI worth using in the first place.</p><p class=\"text-node\">Subscribe for daily AI strategy and news.</p><p class=\"text-node\">For playbooks and analysis: <a target=\"_blank\" rel=\"noopener noreferrer\" class=\"link\" href=\"https://natesnewsletter.substack.com/\">https://natesnewsletter.substack.com/</a></p><p class=\"text-node\">© Nate B. Jones 2026</p>","author_name":"Nate B. Jones"}