{"id":5864,"date":"2025-10-07T09:00:02","date_gmt":"2025-10-07T01:00:02","guid":{"rendered":"https:\/\/www.rzautoassembly.com\/?p=5864"},"modified":"2025-10-07T09:00:07","modified_gmt":"2025-10-07T01:00:07","slug":"ai-and-the-new-golden-rule-finding-the-middle-ground","status":"publish","type":"post","link":"https:\/\/www.rzautoassembly.com\/el\/ai-and-the-new-golden-rule-finding-the-middle-ground\/","title":{"rendered":"AI and the New &#8220;Golden Rule&#8221;: Finding the Middle Ground"},"content":{"rendered":"<figure id=\"attachment_5866\" aria-describedby=\"caption-attachment-5866\" style=\"width: 300px\" class=\"wp-caption aligncenter\"><a href=\"https:\/\/www.rzautoassembly.com\/el\/\"><img fetchpriority=\"high\" decoding=\"async\" class=\"size-medium wp-image-5866\" src=\"https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12-300x257.png.webp\" alt=\"\" width=\"300\" height=\"257\" srcset=\"https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12-300x257.png.webp 300w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12-1024x877.png.webp 1024w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12-768x658.png.webp 768w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12-1536x1316.png.webp 1536w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12-14x12.png.webp 14w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-271-12.png.webp 1792w\" sizes=\"(max-width: 300px) 100vw, 300px\" \/><\/a><figcaption id=\"caption-attachment-5866\" class=\"wp-caption-text\">\u00a0 \u00a0\u039c\u03b7\u03c7\u03b1\u03bd\u03ae \u03c3\u03c5\u03bd\u03b1\u03c1\u03bc\u03bf\u03bb\u03cc\u03b3\u03b7\u03c3\u03b7\u03c2 \u03b2\u03b9\u03bf\u03bb\u03bf\u03b3\u03b9\u03ba\u03ce\u03bd \u03b4\u03b5\u03b9\u03ba\u03c4\u03ce\u03bd<\/figcaption><\/figure>\n<p><strong><span style=\"font-size: 14pt\">Why Does &#8220;Big AI&#8221; Tend Toward Extremes?<\/span><\/strong><\/p>\n<p>&nbsp;<\/p>\n<p>Large language models, or LLMs\u2014the kind of AI that powers tools like ChatGPT\u2014are trained by scanning huge amounts of text from the internet. They\u2019re good at predicting the next word in a sentence, but because the internet is messy, they also learn its flaws.<\/p>\n<p>&nbsp;<\/p>\n<p><strong>That means these systems can sometimes reproduce toxic speech<\/strong>, repeat harmful stereotypes, or echo the loudest extremes of online debate.<\/p>\n<p>&nbsp;<\/p>\n<p>\u201cCurrent LLM-based tools tend to be similar in terms of their behavior and responses,\u201d Davulcu says. \u201cIt\u2019s not like a winner is emerging. They will need an edge. That edge is going to come from interpretability. How can we understand how these models make their decisions? And when they make incorrect decisions, how do we fix them?\u201d<\/p>\n<p>&nbsp;<\/p>\n<p>That\u2019s where his new suite of tools comes in. Davulcu has filed four invention disclosures with ASU\u2019s Skysong Innovations, outlining a method to make AI transparent, programmable, and ultimately safer.<\/p>\n<p>&nbsp;<\/p>\n<p><strong><span style=\"font-size: 14pt\">Peering Into the AI &#8220;Black Box&#8221;: Making Decision Logic Traceable and Correctable<\/span><\/strong><\/p>\n<p>&nbsp;<\/p>\n<p><strong><span style=\"font-size: 14pt\">The first innovation is a way to peek inside the \u201cblack box\u201d of AI<\/span><\/strong><\/p>\n<p>&nbsp;<\/p>\n<p>Normally, these systems spit out answers without showing their reasoning. If they get something wrong\u2014whether it\u2019s suggesting glue on a pizza or giving bad medical advice\u2014developers can\u2019t easily correct the mistake. This black-box problem isn\u2019t just limited to LLMs; it plagues AI-powered industrial equipment too, such as the <span style=\"color: #00ccff\"><a style=\"color: #00ccff\" href=\"https:\/\/www.rzautoassembly.com\/el\/products\/biological-indicator-assembly-machine\/\"><u>\u039c\u03b7\u03c7\u03b1\u03bd\u03ae \u03c3\u03c5\u03bd\u03b1\u03c1\u03bc\u03bf\u03bb\u03cc\u03b3\u03b7\u03c3\u03b7\u03c2 \u03b2\u03b9\u03bf\u03bb\u03bf\u03b3\u03b9\u03ba\u03ce\u03bd \u03b4\u03b5\u03b9\u03ba\u03c4\u03ce\u03bd<\/u><\/a><\/span>\u00a0used in pharmaceutical and medical device manufacturing. This machine relies on AI to handle precision tasks: aligning tiny biological indicator vials (which test if sterilization processes work) with reagent injectors, and controlling assembly pressure to avoid vial breakage or reagent contamination. If the AI malfunctions\u2014say, misjudging vial positioning due to unaccounted-for variations in vial material\u2014developers often can\u2019t trace the error back to its root, leading to costly production delays or even unsafe medical supplies.<\/p>\n<p>&nbsp;<\/p>\n<p>Davulcu\u2019s method changes that. His system translates the AI\u2019s hidden decision-making into simple, editable rules\u2014whether for an LLM giving medical advice or a Biological Indicator Assembly Machine calibrating vial alignment. For the assembly machine, this means the AI\u2019s logic (e.g., \u201cscan vial diameter \u2192 adjust grip pressure \u2192 verify injector alignment\u201d) is broken down into human-readable steps. Developers can then adjust those rules (e.g., adding an exception for \u201cthin-walled vials requiring 20% lower pressure\u201d) and feed the corrections back into the model.<\/p>\n<p>&nbsp;<\/p>\n<p>\u201cIn order to build safe AI, you have to go beyond the black box,\u201d he says. \u201cYou need to be able to see the rules the model is using, add exceptions, and retrain it so that it doesn\u2019t keep making the same mistake.\u201d<\/p>\n<p>&nbsp;<\/p>\n<p>Think of it as a feedback loop: reveal the logic, refine it, retrain, and repeat. The goal, Davulcu explains, is an AI that won\u2019t make a mistake. But if it does, the user will have a recourse to fix it instantly\u2014whether that\u2019s correcting an LLM\u2019s bad advice or recalibrating a Biological Indicator Assembly Machine\u2019s AI to handle rare vial variants.<\/p>\n<p>&nbsp;<\/p>\n<p><strong><span style=\"font-size: 14pt\">Making Values Visible<\/span><\/strong>: Anchoring to the Middle Ground and Reducing Extreme Outputs<\/p>\n<p>&nbsp;<\/p>\n<p>The second tool focuses on conversations. Most AI can tell if a comment sounds happy or angry, but that\u2019s not enough for real-world debates. What matters is the stance: whether someone is for, against, or neutral on an issue and why.<\/p>\n<p>&nbsp;<\/p>\n<p>Davulcu\u2019s team has built methods that can detect those stances and map how people cluster around them online. This makes it possible to see echo chambers, identify bridge-builders, and highlight shared values\u2014such as fairness, safety, or family\u2014that people rally around.<\/p>\n<figure id=\"attachment_5867\" aria-describedby=\"caption-attachment-5867\" style=\"width: 300px\" class=\"wp-caption aligncenter\"><a href=\"https:\/\/www.rzautoassembly.com\/el\/product\/epson-robot\/\"><img decoding=\"async\" class=\"size-medium wp-image-5867 lazyload\" data-src=\"https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6-300x256.png.webp\" alt=\"\" width=\"300\" height=\"256\" data-srcset=\"https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6-300x256.png.webp 300w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6-1024x875.png.webp 1024w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6-768x656.png.webp 768w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6-1536x1313.png.webp 1536w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6-14x12.png.webp 14w, https:\/\/www.rzautoassembly.com\/wp-content\/smush-webp\/2025\/09\/\u975e\u6807\u81ea\u52a8\u5316\u8bbe\u5907\u5e7f\u544a\u521b\u610f-281-6.png.webp 1796w\" data-sizes=\"(max-width: 300px) 100vw, 300px\" src=\"data:image\/gif;base64,R0lGODlhAQABAAAAACH5BAEKAAEALAAAAAABAAEAAAICTAEAOw==\" style=\"--smush-placeholder-width: 300px; --smush-placeholder-aspect-ratio: 300\/256;\" \/><\/a><figcaption id=\"caption-attachment-5867\" class=\"wp-caption-text\">\u00a0 \u00a0 \u00a0\u039c\u03b7\u03c7\u03b1\u03bd\u03ae \u03c3\u03c5\u03bd\u03b1\u03c1\u03bc\u03bf\u03bb\u03cc\u03b3\u03b7\u03c3\u03b7\u03c2 \u03b2\u03b9\u03bf\u03bb\u03bf\u03b3\u03b9\u03ba\u03ce\u03bd \u03b4\u03b5\u03b9\u03ba\u03c4\u03ce\u03bd<\/figcaption><\/figure>\n<p><strong><span style=\"font-size: 14pt\">\u201cWhen you scale this<\/span><\/strong>, we can actually find the mean and the extremes,\u201d he says. \u201cAnd, basically, at that point, we have a way of staying on the mean, avoiding the extremes, therefore getting rid of bias.\u201d<\/p>\n<p>&nbsp;<\/p>\n<p>Once the system knows where the extremes are, it can be trained to avoid them. Davulcu\u2019s group showed that if you feed AI examples of more balanced language and filter out toxic or divisive phrasing, the model learns to follow that path.<\/p>\n<p>&nbsp;<\/p>\n<p><strong><span style=\"font-size: 14pt\">The results are promising<\/span><\/strong>. In tests, their approach reduced toxic output by 85% compared with an unrestricted model. Instead of echoing the most polarizing voices, the AI leans toward civil, respectful conversation.<\/p>\n<p>&nbsp;<\/p>\n<p>\u201cWe\u2019re showing that it\u2019s possible to build systems that encourage civil discourse instead of amplifying division,\u201d Davulcu says.<\/p>\n<p>&nbsp;<\/p>\n<p><strong><span style=\"font-size: 14pt\">Portable Control Layer: Ensuring Consistency and Safety in AI Behavior<\/span><\/strong><\/p>\n<p>&nbsp;<\/p>\n<p>Companies may want to swap AI models when a new version comes out, but those changes can break carefully tuned behavior. Davulcu\u2019s fourth innovation is a control layer that travels with the application itself\u2014whether the app is a customer service chatbot or a system managing a Biological Indicator Assembly Machine.<\/p>\n<p>&nbsp;<\/p>\n<p>\u201cWhat we want is for an application to keep working no matter which model you plug in underneath,\u201d he says. \u201cYou should be able to switch from one to another because it\u2019s cheaper or better, and your rules still apply. Everything still works. And if something goes wrong, you have a recourse for fixing it.\u201d<\/p>\n<p>&nbsp;<\/p>\n<p>For manufacturers relying on Biological Indicator Assembly Machines, this control layer ensures that even if they upgrade the AI model powering the equipment, critical safety rules (e.g., \u201cnever exceed 5 psi pressure for thin-walled vials\u201d) remain in place. This consistency is vital for meeting strict medical industry regulations and avoiding costly compliance issues\u2014another example of how Davulcu\u2019s tools turn AI safety from an abstract goal into a practical, scalable solution.<\/p>\n<p>&nbsp;<\/p>\n<p><span style=\"color: #00ccff\"><a style=\"color: #00ccff\" href=\"https:\/\/www.rzautoassembly.com\/el\/products\/\">O-ring assembly machine<\/a><\/span><\/p>\n<p><span style=\"color: #00ccff\"><a style=\"color: #00ccff\" href=\"https:\/\/www.rzautoassembly.com\/el\/flexible-manufacturing-system-fms-cracking-the-industrial-code-for-multi-variety-small-batch-production\/\">Industrial O-ring assembly robot<\/a><\/span><\/p>","protected":false},"excerpt":{"rendered":"<p>Why Does &#8220;Big AI&#8221; Tend Toward Extremes? &nbsp; Large language models, or LLMs\u2014the kind of AI that powers tools like ChatGPT\u2014are trained by scanning huge amounts of text from the internet. They\u2019re good at predicting the next word in a sentence, but because the internet is messy, they also learn its flaws. &nbsp; That means [&hellip;]<\/p>","protected":false},"author":1,"featured_media":5865,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[1,124],"tags":[],"class_list":["post-5864","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-news","category-technology"],"acf":[],"_links":{"self":[{"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/posts\/5864","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/comments?post=5864"}],"version-history":[{"count":0,"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/posts\/5864\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/media\/5865"}],"wp:attachment":[{"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/media?parent=5864"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/categories?post=5864"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.rzautoassembly.com\/el\/wp-json\/wp\/v2\/tags?post=5864"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}