<?xml version="1.0" encoding="UTF-8"?>
<?xml-stylesheet type="text/xsl" href="https://media.rss.com/style.xsl"?>
<rss xmlns:podcast="https://podcastindex.org/namespace/1.0" xmlns:itunes="http://www.itunes.com/dtds/podcast-1.0.dtd" 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" xml:lang="en" version="2.0">
  <channel>
    <title><![CDATA[Product Panda]]></title>
    <link>https://rss.com/podcasts/product-panda</link>
    <atom:link href="https://media.rss.com/product-panda/feed.xml" rel="self" type="application/rss+xml"/>
    <atom:link rel="hub" href="https://pubsubhubbub.appspot.com/"/>
    <description><![CDATA[<p>The Product Management and QA Odyssey!</p>]]></description>
    <generator>RSS.com 2026.401.141116</generator>
    <lastBuildDate>Fri, 17 Apr 2026 13:21:43 GMT</lastBuildDate>
    <language>en</language>
    <itunes:image href="https://media.rss.com/product-panda/20250207_100225_857443d38b042464421ccf5bbf4f493a.png"/>
    <podcast:guid>155b5804-9298-5d7d-a854-2523255837df</podcast:guid>
    <image>
      <url>https://media.rss.com/product-panda/20250207_100225_857443d38b042464421ccf5bbf4f493a.png</url>
      <title>Product Panda</title>
      <link>https://rss.com/podcasts/product-panda</link>
    </image>
    <podcast:locked>yes</podcast:locked>
    <itunes:author>M M Kishore</itunes:author>
    <itunes:owner>
      <itunes:name>M M Kishore</itunes:name>
    </itunes:owner>
    <itunes:explicit>false</itunes:explicit>
    <itunes:type>episodic</itunes:type>
    <itunes:category text="Technology"/>
    <podcast:medium>podcast</podcast:medium>
    <item>
      <title><![CDATA[Chain Of Thoughts Prompting]]></title>
      <itunes:title><![CDATA[Chain Of Thoughts Prompting]]></itunes:title>
      <description><![CDATA[<p>This research paper explores <strong>chain-of-thought prompting</strong>, a technique that significantly improves the complex reasoning abilities of large language models (LLMs). By providing LLMs with a few examples of problems solved using a step-by-step reasoning process (<strong>chain of thought</strong>), the researchers demonstrate substantial performance gains across various reasoning tasks, including arithmetic, commonsense, and symbolic reasoning. The study finds that this improvement is <strong>strongly linked to the scale of the LLM</strong>, with smaller models showing little to no benefit. The effectiveness of chain-of-thought prompting is also <strong>robust across different datasets and annotators</strong>, highlighting its potential as a broadly applicable method for enhancing LLM reasoning capabilities. The authors acknowledge limitations concerning the factuality of generated reasoning steps and the cost associated with using very large models.</p>]]></description>
      <link>https://rss.com/podcasts/product-panda/1885530</link>
      <enclosure url="https://content.rss.com/episodes/315444/1885530/product-panda/2025_02_07_11_00_33_7270b198-4cd2-4656-8ad4-a2ea49616bb4.mp3" length="15905898" type="audio/mpeg"/>
      <guid isPermaLink="false">640b90dd-ec12-4959-af72-d6af1ff589ae</guid>
      <itunes:duration>994</itunes:duration>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <podcast:season>1</podcast:season>
      <itunes:episode>1</itunes:episode>
      <podcast:episode>1</podcast:episode>
      <itunes:explicit>false</itunes:explicit>
      <pubDate>Fri, 07 Feb 2025 11:05:04 GMT</pubDate>
      <itunes:image href="https://media.rss.com/product-panda/ep_cover_20250207_110223_b5851806127178befb98e735fd0ba0f4.png"/>
    </item>
  </channel>
</rss>