<?xml version="1.0" encoding="UTF-8" ?>
<?xml-stylesheet href="https://rss.buzzsprout.com/styles.xsl" type="text/xsl"?>
<rss version="2.0" xmlns:itunes="http://www.itunes.com/dtds/podcast-1.0.dtd" xmlns:podcast="https://podcastindex.org/namespace/1.0" xmlns:content="http://purl.org/rss/1.0/modules/content/" xmlns:psc="http://podlove.org/simple-chapters" xmlns:atom="http://www.w3.org/2005/Atom">
<channel>
  <atom:link href="https://rss.buzzsprout.com/2468361.rss" rel="self" type="application/rss+xml" />
  <atom:link href="https://pubsubhubbub.appspot.com/" rel="hub" xmlns="http://www.w3.org/2005/Atom" />
  <title>Stacking the Agents</title>

  <lastBuildDate>Wed, 06 May 2026 18:20:09 +0200</lastBuildDate>
    <language>en-us</language>
  <copyright>© 2026 Stacking the Agents</copyright>
  <podcast:locked>yes</podcast:locked>
    <podcast:guid>47113a20-756b-5ce7-aeb7-1e76d5d0796b</podcast:guid>
  <itunes:author>CCstudios</itunes:author>
  <itunes:type>episodic</itunes:type>
  <itunes:explicit>false</itunes:explicit>
  <description><![CDATA[<p><b>Stacking the Agents</b> is a podcast voiced entirely by AI agents — exploring the tech behind… AI agents. As the founder of <b>CCstudios</b>, I use this space to document and experiment with the systems, tools, and protocols that power an autonomous content studio. Each episode is generated, scripted, and narrated by the very AI stack I'm building. It’s a self-referential, audio-first look into the world of multi-agent workflows, orchestration, LLMs, and creative automation. Think of it as <em>AI talking shop with itself</em> — while I listen and learn.</p>]]></description>
  <generator>Buzzsprout (https://www.buzzsprout.com)</generator>
  <itunes:owner>
    <itunes:name>CCstudios</itunes:name>
  </itunes:owner>
  <image>
     <url>https://storage.buzzsprout.com/zu95v8kzwh125in4327y9wvr6w2q?.jpg</url>
     <title>Stacking the Agents</title>
     <link></link>
  </image>
  <itunes:image href="https://storage.buzzsprout.com/zu95v8kzwh125in4327y9wvr6w2q?.jpg" />
  <itunes:category text="Technology" />
  <item>
    <itunes:title>verifiable intent</itunes:title>
    <title>verifiable intent</title>
    <itunes:summary></itunes:summary>
    <description></description>
    <content:encoded></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2468361/episodes/19135555-verifiable-intent.mp3" length="16464633" type="audio/mpeg" />
    <itunes:author>CCstudios</itunes:author>
    <guid isPermaLink="false">Buzzsprout-19135555</guid>
    <pubDate>Wed, 06 May 2026 18:00:00 +0200</pubDate>
    <itunes:duration>1366</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>The Experiment Engine: A Markdown and AI Innovation System</itunes:title>
    <title>The Experiment Engine: A Markdown and AI Innovation System</title>
    <itunes:summary><![CDATA[The provided sources outline The Experiment Engine, a sophisticated personal innovation operating system designed to transform raw information and fleeting insights into structured enterprise experiments. The system utilizes a Workflow Layer based on a five-stage lifecycle—Capture, Hypothesis, Design, Execution, and Synthesis—which is governed by formal Board Gates to ensure business alignment and professional approval. Powering this process is a Two-Agent AI model where Agent 1 acts as an ov...]]></itunes:summary>
    <description><![CDATA[<p>The provided sources outline <b>The Experiment Engine</b>, a sophisticated personal innovation operating system designed to transform raw information and fleeting insights into structured enterprise experiments. The system utilizes a <b>Workflow Layer</b> based on a five-stage lifecycle—Capture, Hypothesis, Design, Execution, and Synthesis—which is governed by formal <b>Board Gates</b> to ensure business alignment and professional approval. Powering this process is a <b>Two-Agent AI model</b> where <b>Agent 1</b> acts as an overnight researcher handling data ingestion and link discovery, while <b>Agent 2</b> serves as a real-time Socratic thinking partner. All data is maintained in <b>plain markdown files</b> versioned with Git, ensuring that the knowledge base remains portable, transparent, and human-readable. By integrating <b>semantic search</b> through a vector database, the engine surfaces non-obvious connections from a user&apos;s past research to solve current challenges. Ultimately, this framework aims to prevent the loss of compounding innovation value by providing a disciplined, AI-assisted path from a simple observation to an industrial-scale pitch.</p>]]></description>
    <content:encoded><![CDATA[<p>The provided sources outline <b>The Experiment Engine</b>, a sophisticated personal innovation operating system designed to transform raw information and fleeting insights into structured enterprise experiments. The system utilizes a <b>Workflow Layer</b> based on a five-stage lifecycle—Capture, Hypothesis, Design, Execution, and Synthesis—which is governed by formal <b>Board Gates</b> to ensure business alignment and professional approval. Powering this process is a <b>Two-Agent AI model</b> where <b>Agent 1</b> acts as an overnight researcher handling data ingestion and link discovery, while <b>Agent 2</b> serves as a real-time Socratic thinking partner. All data is maintained in <b>plain markdown files</b> versioned with Git, ensuring that the knowledge base remains portable, transparent, and human-readable. By integrating <b>semantic search</b> through a vector database, the engine surfaces non-obvious connections from a user&apos;s past research to solve current challenges. Ultimately, this framework aims to prevent the loss of compounding innovation value by providing a disciplined, AI-assisted path from a simple observation to an industrial-scale pitch.</p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2468361/episodes/18899644-the-experiment-engine-a-markdown-and-ai-innovation-system.mp3" length="8684718" type="audio/mpeg" />
    <itunes:author>CCstudios</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18899644</guid>
    <pubDate>Tue, 24 Mar 2026 13:00:00 +0100</pubDate>
    <itunes:duration>718</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Why agents need 1990s search algorithms</itunes:title>
    <title>Why agents need 1990s search algorithms</title>
    <itunes:summary><![CDATA[Why agents need 1990s search algorithmsWhile modern artificial intelligence has led to highly capable autonomous agents, recent research reveals that these advanced systems often require classic algorithms, formal logic, and fundamental physical laws to function optimally. Here is a short summary of three recent studies demonstrating this: 1. Classic Search Algorithms for Deep Research The paper "Revisiting Text Ranking in Deep Research" evaluates how LLM-based agents retrieve information and...]]></itunes:summary>
    <description><![CDATA[<h1>Why agents need 1990s search algorithms</h1><p>While modern artificial intelligence has led to highly capable autonomous agents, recent research reveals that these advanced systems often require classic algorithms, formal logic, and fundamental physical laws to function optimally. Here is a short summary of three recent studies demonstrating this:</p><p><b>1. Classic Search Algorithms for Deep Research</b> The paper &quot;Revisiting Text Ranking in Deep Research&quot; evaluates how LLM-based agents retrieve information and finds that classic lexical algorithms like BM25—developed in the 1990s—often outperform modern, parameter-heavy neural retrievers. Because autonomous agents tend to generate &quot;web-search-style&quot; queries that rely heavily on keywords, phrases, and exact-match quotation marks, older methods like BM25 are highly effective, particularly when retrieving passage-level text rather than full documents. In contrast, large single-vector dense retrievers struggle to adapt to these specific agent-issued queries.</p><p><b>2. Formal Mathematical Solvers for Agent Planning</b> The article &quot;TAPE: Tool-Guided Adaptive Planning and Constrained Execution&quot; highlights that modern Language Model (LM) agents are highly vulnerable in environments where a single mistake leads to an irrecoverable failure. To solve this, the researchers propose the TAPE framework, which limits the stochastic nature of LLMs by relying on traditional external solvers, such as Integer Linear Programming (ILP). By mapping multiple LLM-generated ideas into a plan graph and using a formal solver to calculate an optimal, constraint-feasible path, the system significantly reduces planning errors and prevents the agent from reaching dead-ends.</p><p><b>3. Fundamental Physical Laws for Image Editing</b> The paper &quot;From Statics to Dynamics: Physics-Aware Image Editing&quot; addresses a major flaw in modern multi-modal generative models: they often generate visual edits that match text prompts but blatantly violate basic real-world physics, such as gravity, material deformation, or optical refraction. To fix this, the researchers propose treating image editing not as a static &quot;black-box&quot; mapping of pixels, but as a continuous physical state transition. By training the model on a specialized dataset of video transitions (PhysicTran38K), their PhysicEdit framework forces the AI to utilize structured, physically-grounded reasoning, ensuring that generated images strictly adhere to the causal rules of the physical world.</p><p><br/></p>]]></description>
    <content:encoded><![CDATA[<h1>Why agents need 1990s search algorithms</h1><p>While modern artificial intelligence has led to highly capable autonomous agents, recent research reveals that these advanced systems often require classic algorithms, formal logic, and fundamental physical laws to function optimally. Here is a short summary of three recent studies demonstrating this:</p><p><b>1. Classic Search Algorithms for Deep Research</b> The paper &quot;Revisiting Text Ranking in Deep Research&quot; evaluates how LLM-based agents retrieve information and finds that classic lexical algorithms like BM25—developed in the 1990s—often outperform modern, parameter-heavy neural retrievers. Because autonomous agents tend to generate &quot;web-search-style&quot; queries that rely heavily on keywords, phrases, and exact-match quotation marks, older methods like BM25 are highly effective, particularly when retrieving passage-level text rather than full documents. In contrast, large single-vector dense retrievers struggle to adapt to these specific agent-issued queries.</p><p><b>2. Formal Mathematical Solvers for Agent Planning</b> The article &quot;TAPE: Tool-Guided Adaptive Planning and Constrained Execution&quot; highlights that modern Language Model (LM) agents are highly vulnerable in environments where a single mistake leads to an irrecoverable failure. To solve this, the researchers propose the TAPE framework, which limits the stochastic nature of LLMs by relying on traditional external solvers, such as Integer Linear Programming (ILP). By mapping multiple LLM-generated ideas into a plan graph and using a formal solver to calculate an optimal, constraint-feasible path, the system significantly reduces planning errors and prevents the agent from reaching dead-ends.</p><p><b>3. Fundamental Physical Laws for Image Editing</b> The paper &quot;From Statics to Dynamics: Physics-Aware Image Editing&quot; addresses a major flaw in modern multi-modal generative models: they often generate visual edits that match text prompts but blatantly violate basic real-world physics, such as gravity, material deformation, or optical refraction. To fix this, the researchers propose treating image editing not as a static &quot;black-box&quot; mapping of pixels, but as a continuous physical state transition. By training the model on a specialized dataset of video transitions (PhysicTran38K), their PhysicEdit framework forces the AI to utilize structured, physically-grounded reasoning, ensuring that generated images strictly adhere to the causal rules of the physical world.</p><p><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2468361/episodes/18791874-why-agents-need-1990s-search-algorithms.mp3" length="26440213" type="audio/mpeg" />
    <itunes:author>CCstudios</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18791874</guid>
    <pubDate>Wed, 04 Mar 2026 23:00:00 +0100</pubDate>
    <itunes:duration>2198</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
</channel>
</rss>
