<?xml version="1.0" encoding="UTF-8"?><rss xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:content="http://purl.org/rss/1.0/modules/content/" xmlns:atom="http://www.w3.org/2005/Atom" version="2.0" xmlns:itunes="http://www.itunes.com/dtds/podcast-1.0.dtd" xmlns:psc="http://podlove.org/simple-chapters" xmlns:podcast="https://podcastindex.org/namespace/1.0"><channel><title><![CDATA[Forward Deployed]]></title><description><![CDATA[<p><b>Discover how leading enterprises and professionals turn AI into real products. Hear candid conversations with executives and builders who deploy AI at scale and learn what works (and what doesn't).</b></p>]]></description><link>www.forwardeployed.com</link><generator>Riverside.fm (https://riverside.com)</generator><lastBuildDate>Sun, 14 Jun 2026 09:09:59 GMT</lastBuildDate><atom:link href="https://api.riverside.com/hosting/e01xW1Gg.rss" rel="self" type="application/rss+xml"/><author><![CDATA[Basil Chatha]]></author><pubDate>Wed, 07 Jan 2026 04:52:51 GMT</pubDate><copyright><![CDATA[2026 Basil Chatha]]></copyright><language><![CDATA[en]]></language><ttl>60</ttl><category><![CDATA[Business]]></category><category><![CDATA[Technology]]></category><itunes:author>Basil Chatha</itunes:author><itunes:summary>&lt;p&gt;&lt;b&gt;Discover how leading enterprises and professionals turn AI into real products. Hear candid conversations with executives and builders who deploy AI at scale and learn what works (and what doesn&apos;t).&lt;/b&gt;&lt;/p&gt;</itunes:summary><itunes:type>episodic</itunes:type><itunes:owner><itunes:name>Basil Chatha</itunes:name><itunes:email>basil@forwardeployed.com</itunes:email></itunes:owner><itunes:explicit>no</itunes:explicit><itunes:category text="Business"/><itunes:category text="Technology"/><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/logos/c182cf36-c65b-420a-903e-5656ec122bf3.png"/><item><title><![CDATA[Vince Signori: Inside LangChain's Growth Strategy from $200M to $1.25B]]></title><description><![CDATA[<p>Today's episode is with Vince Signori, Sales Director at LangChain and one of the first sales hires at HashiCorp, where he watched the company grow from a small startup all the way to an IPO and get acquired by IBM.<br /></p><p>He sees the exact same shift happening now with AI agents that happened with cloud back then, except 50x faster. And he's got the numbers to back it up — LangChain is downloaded more than the OpenAI SDK, and 45% of the Fortune 500 are now paying customers.<br /></p><p>We get into how companies like Toyota and Home Depot are actually using AI agents in production today, why enterprises are building their own private versions of ChatGPT to own their data, and why memory is becoming the most valuable asset in AI.<br /></p><p>We also talk about what it actually takes to get an agent from prototype to production, why selling open source is the hardest sale in software, and how Vince went from 3 reps doing 20-hour days to running the number one sales region at one of the fastest growing companies in AI.<br /></p><p>You don't wanna miss this one.<br /></p><p>Chapters:</p><p>00:00  Intro</p><p>01:38  From HashiCorp to LangChain</p><p>03:20  Cloud wave vs AI agent wave</p><p>05:30  Open source vs enterprise</p><p>06:23  How LangChain's product stack evolved</p><p>07:37  Why agents are finally in production</p><p>08:57  What companies build with LangGraph</p><p>10:12  LangSmith and Engine explained</p><p>13:23  The Agent Development Lifecycle</p><p>16:36  Build vs buy on voice agents</p><p>19:48  Why owning your data and memory layer matters</p><p>22:12  How open source users become paying customers</p><p>26:49  Why LangChain hired forward deployed engineers</p><p>31:34  What go-to-market looked like with 3 reps</p><p>35:31  From 39 employees to hypergrowth</p><p>36:37  Transitioning away from founder-led sales</p><p>37:07  Why the CEO joined every early call</p><p>37:38  The sandwich sale strategy explained</p><p>39:28  Signals that an open source user is ready to buy</p><p>41:08  Why outbound controls the narrative in enterprise</p><p>43:33  Why in-person selling still wins</p><p>45:57  Building an internal GTM agent to scale</p><p>47:37  What the GTM agent actually does</p><p>50:16  Why AI moves 50x faster than cloud did</p><p>53:46  The vendor consolidation wave that's coming</p><p>56:14  How to win the platform standardization deal</p><p>59:41  Why staying model-agnostic beats the hyperscalers</p><p>01:01:23  How Vince onboards new reps today</p><p>01:04:19  The sales and engineering feedback loop</p><p>01:09:49  Signals an account is ready to expand</p><p>01:12:57  How to prove early value before full commitment</p><p>01:14:40  How enterprises actually measure agent ROI</p><p>01:16:27  Why automation is expanding beyond support</p><p>01:17:59  Which industries are adopting agents fastest</p><p>01:19:07  Healthcare agent use cases live today</p><p>01:21:17  AI agents in finance and payments</p><p>01:22:40  The Visa partnership</p><p>01:25:17  What it takes to scale a sales team right now</p><p>01:27:44  How the GTM agent is changing the SDR role</p><p>01:32:06  Why the human element in sales still matters</p><p>01:34:28  Platform deals vs point solutions</p><p>01:36:43  Vince's predictions on memory and consolidation</p><p>01:39:23  How Engine helps teams iterate on agents faster</p><p>01:43:19  Forward deployed engineers vs Engine</p><p>01:46:20  Where to find Vince and LangChain's open roles</p>]]></description><guid isPermaLink="false">39dbd0f4-0495-4ea5-bafc-fb0373ed94ac</guid><dc:creator><![CDATA[Basil Chatha]]></dc:creator><pubDate>Wed, 10 Jun 2026 17:15:45 GMT</pubDate><enclosure url="https://api.riverside.com/hosting-analytics/media/73e2d1c363a48e0da504a8877cf3e1a41fa9d24c4e3653f5cbf3e9ddff7870cc/eyJlcGlzb2RlSWQiOiIzOWRiZDBmNC0wNDk1LTRlYTUtYmFmYy1mYjAzNzNlZDk0YWMiLCJwb2RjYXN0SWQiOiIyNTBiMTE0OC0zNmRlLTRjZTctYTdkMi0yNzA3ODA2ODFlOTEiLCJhY2NvdW50SWQiOiI2OTBmZTZlOTBhZjFmZDQ1ZmM2ZWJmMWMiLCJwYXRoIjoibWVkaWEvY2xpcHMvNmEyOTliYzJlOWYwNGIwN2Y4MmIwMWZiL2Jhc2lsLWNoYXRoYXMtc3R1ZGlvLWNvbXBvc2VyLTIwMjYtNi0xMF9fMTktMTUtNDYubXAzIn0=.mp3" length="204717392" type="audio/mpeg"/><podcast:transcript url="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/39dbd0f4-0495-4ea5-bafc-fb0373ed94ac/transcripts.txt" type="text/plain"/><itunes:summary>&lt;p&gt;Today&apos;s episode is with Vince Signori, Sales Director at LangChain and one of the first sales hires at HashiCorp, where he watched the company grow from a small startup all the way to an IPO and get acquired by IBM.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;He sees the exact same shift happening now with AI agents that happened with cloud back then, except 50x faster. And he&apos;s got the numbers to back it up — LangChain is downloaded more than the OpenAI SDK, and 45% of the Fortune 500 are now paying customers.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;We get into how companies like Toyota and Home Depot are actually using AI agents in production today, why enterprises are building their own private versions of ChatGPT to own their data, and why memory is becoming the most valuable asset in AI.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;We also talk about what it actually takes to get an agent from prototype to production, why selling open source is the hardest sale in software, and how Vince went from 3 reps doing 20-hour days to running the number one sales region at one of the fastest growing companies in AI.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;You don&apos;t wanna miss this one.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;Chapters:&lt;/p&gt;&lt;p&gt;00:00  Intro&lt;/p&gt;&lt;p&gt;01:38  From HashiCorp to LangChain&lt;/p&gt;&lt;p&gt;03:20  Cloud wave vs AI agent wave&lt;/p&gt;&lt;p&gt;05:30  Open source vs enterprise&lt;/p&gt;&lt;p&gt;06:23  How LangChain&apos;s product stack evolved&lt;/p&gt;&lt;p&gt;07:37  Why agents are finally in production&lt;/p&gt;&lt;p&gt;08:57  What companies build with LangGraph&lt;/p&gt;&lt;p&gt;10:12  LangSmith and Engine explained&lt;/p&gt;&lt;p&gt;13:23  The Agent Development Lifecycle&lt;/p&gt;&lt;p&gt;16:36  Build vs buy on voice agents&lt;/p&gt;&lt;p&gt;19:48  Why owning your data and memory layer matters&lt;/p&gt;&lt;p&gt;22:12  How open source users become paying customers&lt;/p&gt;&lt;p&gt;26:49  Why LangChain hired forward deployed engineers&lt;/p&gt;&lt;p&gt;31:34  What go-to-market looked like with 3 reps&lt;/p&gt;&lt;p&gt;35:31  From 39 employees to hypergrowth&lt;/p&gt;&lt;p&gt;36:37  Transitioning away from founder-led sales&lt;/p&gt;&lt;p&gt;37:07  Why the CEO joined every early call&lt;/p&gt;&lt;p&gt;37:38  The sandwich sale strategy explained&lt;/p&gt;&lt;p&gt;39:28  Signals that an open source user is ready to buy&lt;/p&gt;&lt;p&gt;41:08  Why outbound controls the narrative in enterprise&lt;/p&gt;&lt;p&gt;43:33  Why in-person selling still wins&lt;/p&gt;&lt;p&gt;45:57  Building an internal GTM agent to scale&lt;/p&gt;&lt;p&gt;47:37  What the GTM agent actually does&lt;/p&gt;&lt;p&gt;50:16  Why AI moves 50x faster than cloud did&lt;/p&gt;&lt;p&gt;53:46  The vendor consolidation wave that&apos;s coming&lt;/p&gt;&lt;p&gt;56:14  How to win the platform standardization deal&lt;/p&gt;&lt;p&gt;59:41  Why staying model-agnostic beats the hyperscalers&lt;/p&gt;&lt;p&gt;01:01:23  How Vince onboards new reps today&lt;/p&gt;&lt;p&gt;01:04:19  The sales and engineering feedback loop&lt;/p&gt;&lt;p&gt;01:09:49  Signals an account is ready to expand&lt;/p&gt;&lt;p&gt;01:12:57  How to prove early value before full commitment&lt;/p&gt;&lt;p&gt;01:14:40  How enterprises actually measure agent ROI&lt;/p&gt;&lt;p&gt;01:16:27  Why automation is expanding beyond support&lt;/p&gt;&lt;p&gt;01:17:59  Which industries are adopting agents fastest&lt;/p&gt;&lt;p&gt;01:19:07  Healthcare agent use cases live today&lt;/p&gt;&lt;p&gt;01:21:17  AI agents in finance and payments&lt;/p&gt;&lt;p&gt;01:22:40  The Visa partnership&lt;/p&gt;&lt;p&gt;01:25:17  What it takes to scale a sales team right now&lt;/p&gt;&lt;p&gt;01:27:44  How the GTM agent is changing the SDR role&lt;/p&gt;&lt;p&gt;01:32:06  Why the human element in sales still matters&lt;/p&gt;&lt;p&gt;01:34:28  Platform deals vs point solutions&lt;/p&gt;&lt;p&gt;01:36:43  Vince&apos;s predictions on memory and consolidation&lt;/p&gt;&lt;p&gt;01:39:23  How Engine helps teams iterate on agents faster&lt;/p&gt;&lt;p&gt;01:43:19  Forward deployed engineers vs Engine&lt;/p&gt;&lt;p&gt;01:46:20  Where to find Vince and LangChain&apos;s open roles&lt;/p&gt;</itunes:summary><itunes:explicit>no</itunes:explicit><itunes:duration>01:46:37</itunes:duration><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/39dbd0f4-0495-4ea5-bafc-fb0373ed94ac/images/7954f672-67b6-4646-916b-562aea5ace5f.png"/><itunes:title>Vince Signori: Inside LangChain&apos;s Growth Strategy from $200M to $1.25B</itunes:title><itunes:episodeType>full</itunes:episodeType></item><item><title><![CDATA[Shrivu Shankar - How a $5B Cybersecurity Company Runs on AI Agents
]]></title><description><![CDATA[<p>Today's episode is with Shrivu Shankar, VP of AI Strategy at Abnormal AI - a $5B cybersecurity company. What makes this one unique is that Shrivu joined as an intern in 2021 and got promoted every single year until he reached VP, so he's basically watched AI go from a niche engineering tool to something that's reshaping entire companies from the inside.</p><p><br />We get into how AI is catching cyberattacks so sophisticated that even humans can't tell they're fake, how engineers at a $5B company have basically stopped writing code themselves, and what that means for everyone else on the team.<br /></p><p>We also go deep on why context engineering is replacing prompt engineering as the real moat, how they used GPT-3 with zero safety guardrails to generate fake phishing attacks as training data, and what it actually takes to become an AI native company at 1,500 people.</p><p><br />One of the most technical and eye-opening conversations I've had. You don't wanna miss this one.<br /></p><p>Chapters:</p><p>00:00 Intro</p><p>00:58 Who is Shrivu and what is Abnormal AI</p><p>01:39 Why cybersecurity and machine learning</p><p>03:13 Intern to VP in 4 years — how it actually happened</p><p>05:44 What Abnormal AI does and how it started</p><p>09:10 The vendor fraud attack so convincing the victim didn't believe it was real</p><p>10:45 What GPT-3 changed for cybersecurity</p><p>13:01 Using synthetic data to train models — and how they measured it</p><p>16:49 How a 1,500 person company actually adopts AI internally</p><p>19:50 How engineering, PM, and platform roles are changing right now</p><p>23:17 The biggest AI misconception Shrivu keeps hearing</p><p>27:35 What Shrivu's day actually looks like as VP of AI Strategy</p><p>28:53 Engineers stopped writing code. Here's what they do instead.</p><p>32:28 Why product teams are getting much smaller</p><p>34:31 Why context engineering beats prompt engineering</p><p>36:31 Spec-driven development and how Nora Tech Plan works</p><p>39:14 How to scale context engineering across an entire eng org</p><p>40:30 What the manager role looks like in the agent era</p><p>42:17 What skills actually matter for managers now</p><p>43:29 AI is making orgs flatter. Is that a good thing?</p><p>45:08 How the C-suite is getting closer to the work</p><p>46:41 What agents actually are and how tool calling works</p><p>48:05 How agents improved Abnormal's detection pipeline</p><p>50:56 The AI phishing coach — how it works and why it matters</p><p>53:30 The internal AI data analyst agent</p><p>56:13 Dozens of internal agents — the ones Shrivu is most proud of</p><p>57:15 Where agents fail (it's usually not the model)</p><p>58:52 What Shrivu would tell a CEO just starting with agents</p><p>01:00:19 Sending sensitive security data to LLMs — how they handle it</p><p>01:01:47 What becoming AI native actually means in practice</p><p>01:03:37 What most people still get wrong about AI in the enterprise</p><p>01:04:31 How to write documents with AI without it sounding like AI</p><p>01:06:40 Claude Code vs Codex — which one and why</p><p>01:09:27 How Shrivu stays ahead and his take on MCPs</p><p>01:11:33 How the team uses Claude Code skills</p><p>01:12:47 Using hooks for shift-left validation in large codebases</p><p>01:13:42 How to manage context in a massive monorepo</p><p>01:14:56 Building tool-agnostic rules across Claude, Cursor, and Code Rabbit</p><p>01:16:55 Why infra teams are becoming agent harness teams</p><p>01:17:57 Wrap up</p>]]></description><guid isPermaLink="false">f84a2456-1a4b-4d3e-b4a0-b8bad31c0cd9</guid><dc:creator><![CDATA[Basil Chatha]]></dc:creator><pubDate>Mon, 11 May 2026 15:00:00 GMT</pubDate><enclosure url="https://api.riverside.com/hosting-analytics/media/1290eb8c17ca7a35cefaef9922bdc622966b3d669807a4c33e8950e13133c3b7/eyJlcGlzb2RlSWQiOiJmODRhMjQ1Ni0xYTRiLTRkM2UtYjRhMC1iOGJhZDMxYzBjZDkiLCJwb2RjYXN0SWQiOiIyNTBiMTE0OC0zNmRlLTRjZTctYTdkMi0yNzA3ODA2ODFlOTEiLCJhY2NvdW50SWQiOiI2OTBmZTZlOTBhZjFmZDQ1ZmM2ZWJmMWMiLCJwYXRoIjoibWVkaWEvY2xpcHMvNjlmYWE5MGU1NGM4NzJlZDkxYWQ4YzY5L2Jhc2lsLWNoYXRoYXMtc3R1ZGlvLWNvbXBvc2VyLTIwMjYtNS02X180LTM1LTU3Lm1wMyJ9.mp3" length="150130250" type="audio/mpeg"/><podcast:transcript url="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/f84a2456-1a4b-4d3e-b4a0-b8bad31c0cd9/transcripts.txt" type="text/plain"/><itunes:summary>&lt;p&gt;Today&apos;s episode is with Shrivu Shankar, VP of AI Strategy at Abnormal AI - a $5B cybersecurity company. What makes this one unique is that Shrivu joined as an intern in 2021 and got promoted every single year until he reached VP, so he&apos;s basically watched AI go from a niche engineering tool to something that&apos;s reshaping entire companies from the inside.&lt;/p&gt;&lt;p&gt;&lt;br /&gt;We get into how AI is catching cyberattacks so sophisticated that even humans can&apos;t tell they&apos;re fake, how engineers at a $5B company have basically stopped writing code themselves, and what that means for everyone else on the team.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;We also go deep on why context engineering is replacing prompt engineering as the real moat, how they used GPT-3 with zero safety guardrails to generate fake phishing attacks as training data, and what it actually takes to become an AI native company at 1,500 people.&lt;/p&gt;&lt;p&gt;&lt;br /&gt;One of the most technical and eye-opening conversations I&apos;ve had. You don&apos;t wanna miss this one.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;Chapters:&lt;/p&gt;&lt;p&gt;00:00 Intro&lt;/p&gt;&lt;p&gt;00:58 Who is Shrivu and what is Abnormal AI&lt;/p&gt;&lt;p&gt;01:39 Why cybersecurity and machine learning&lt;/p&gt;&lt;p&gt;03:13 Intern to VP in 4 years — how it actually happened&lt;/p&gt;&lt;p&gt;05:44 What Abnormal AI does and how it started&lt;/p&gt;&lt;p&gt;09:10 The vendor fraud attack so convincing the victim didn&apos;t believe it was real&lt;/p&gt;&lt;p&gt;10:45 What GPT-3 changed for cybersecurity&lt;/p&gt;&lt;p&gt;13:01 Using synthetic data to train models — and how they measured it&lt;/p&gt;&lt;p&gt;16:49 How a 1,500 person company actually adopts AI internally&lt;/p&gt;&lt;p&gt;19:50 How engineering, PM, and platform roles are changing right now&lt;/p&gt;&lt;p&gt;23:17 The biggest AI misconception Shrivu keeps hearing&lt;/p&gt;&lt;p&gt;27:35 What Shrivu&apos;s day actually looks like as VP of AI Strategy&lt;/p&gt;&lt;p&gt;28:53 Engineers stopped writing code. Here&apos;s what they do instead.&lt;/p&gt;&lt;p&gt;32:28 Why product teams are getting much smaller&lt;/p&gt;&lt;p&gt;34:31 Why context engineering beats prompt engineering&lt;/p&gt;&lt;p&gt;36:31 Spec-driven development and how Nora Tech Plan works&lt;/p&gt;&lt;p&gt;39:14 How to scale context engineering across an entire eng org&lt;/p&gt;&lt;p&gt;40:30 What the manager role looks like in the agent era&lt;/p&gt;&lt;p&gt;42:17 What skills actually matter for managers now&lt;/p&gt;&lt;p&gt;43:29 AI is making orgs flatter. Is that a good thing?&lt;/p&gt;&lt;p&gt;45:08 How the C-suite is getting closer to the work&lt;/p&gt;&lt;p&gt;46:41 What agents actually are and how tool calling works&lt;/p&gt;&lt;p&gt;48:05 How agents improved Abnormal&apos;s detection pipeline&lt;/p&gt;&lt;p&gt;50:56 The AI phishing coach — how it works and why it matters&lt;/p&gt;&lt;p&gt;53:30 The internal AI data analyst agent&lt;/p&gt;&lt;p&gt;56:13 Dozens of internal agents — the ones Shrivu is most proud of&lt;/p&gt;&lt;p&gt;57:15 Where agents fail (it&apos;s usually not the model)&lt;/p&gt;&lt;p&gt;58:52 What Shrivu would tell a CEO just starting with agents&lt;/p&gt;&lt;p&gt;01:00:19 Sending sensitive security data to LLMs — how they handle it&lt;/p&gt;&lt;p&gt;01:01:47 What becoming AI native actually means in practice&lt;/p&gt;&lt;p&gt;01:03:37 What most people still get wrong about AI in the enterprise&lt;/p&gt;&lt;p&gt;01:04:31 How to write documents with AI without it sounding like AI&lt;/p&gt;&lt;p&gt;01:06:40 Claude Code vs Codex — which one and why&lt;/p&gt;&lt;p&gt;01:09:27 How Shrivu stays ahead and his take on MCPs&lt;/p&gt;&lt;p&gt;01:11:33 How the team uses Claude Code skills&lt;/p&gt;&lt;p&gt;01:12:47 Using hooks for shift-left validation in large codebases&lt;/p&gt;&lt;p&gt;01:13:42 How to manage context in a massive monorepo&lt;/p&gt;&lt;p&gt;01:14:56 Building tool-agnostic rules across Claude, Cursor, and Code Rabbit&lt;/p&gt;&lt;p&gt;01:16:55 Why infra teams are becoming agent harness teams&lt;/p&gt;&lt;p&gt;01:17:57 Wrap up&lt;/p&gt;</itunes:summary><itunes:explicit>no</itunes:explicit><itunes:duration>01:18:12</itunes:duration><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/f84a2456-1a4b-4d3e-b4a0-b8bad31c0cd9/images/31d053b9-c8df-4021-b5ae-1dac5c9bd358.png"/><itunes:title>Shrivu Shankar - How a $5B Cybersecurity Company Runs on AI Agents
</itunes:title><itunes:episodeType>full</itunes:episodeType></item><item><title><![CDATA[Supriya Gupta - Meta Exec Explains How AI is Reshaping Advertising]]></title><description><![CDATA[<p>Today's episode is with Supriya Gupta, ex-VP of Product at Intuit Credit Karma and former Product Lead on the Ads team at Meta when that business was scaling like crazy.<br /></p><p>She brings a really unique perspective on everything happening with GenAI right now because she's seen it from the inside at two of the biggest companies in tech.<br /></p><p>We get into how ads are slowly going to be generated on the spot, per user, where the image, copy and offer will all be unique to you specifically. We talk about why you can't just infinitely scale ad testing even though it's now theoretically possible, and why flooding the internet with AI content might actually be the worst thing you can do for your brand.<br /></p><p>We also go deep on what actually happened inside Credit Karma when they started building with GenAI, including what moved the needle and what didn't, and what that means for designers, PMs, and content teams everywhere.</p><p>And at the end, Supriya shares why she walked away from her VP role to start her own company, and what she's building now.<br /></p><p>You don't wanna miss this one.<br /><br /></p><p>🔗 Find Supriya on LinkedIn: <a rel="noopener noreferrer nofollow" href="https://www.linkedin.com/in/supriyag/" target="_blank">https://www.linkedin.com/in/supriyag/</a></p><p>🌐 Company's website: <a rel="noopener noreferrer nofollow" href="https://www.helloeve.co/" target="_blank">https://www.helloeve.co/</a><br /><br /><i>⏱ Chapters</i><br />00:00 Intro</p><p>01:27 Predictive AI vs. Generative AI: what actually changed</p><p>02:59 The next gen of dynamic ads — why every user could soon get a unique ad</p><p>06:52 Will content agencies survive the AI era?</p><p>09:17 Why you can't just test a million ad variants (the stats problem)</p><p>12:55 AI slop, UGC backlash, and should AI content be labeled?</p><p>17:02 Supriya joins Credit Karma: building the Lightbox targeting platform</p><p>21:23 Building the Credit Karma financial assistant</p><p>24:35 Handling hallucinations in a finance app at scale</p><p>27:26 What happened to content designers when AI started writing copy</p><p>29:56 Why AI copy still needs human taste and judgment</p><p>31:01 PMs are prototyping now — what that means for design and eng</p><p>33:30 Will there be fewer PMs? (Probably not — here's why)</p><p>35:33 Why Supriya left Credit Karma to start her own company</p><p>37:23 The principles she built her startup around</p><p>39:20 The rise of the "super IC" — managers becoming AI-powered operators</p><p>41:54 Why most AI projects fail before they even start</p><p>45:33 Enterprises vs. startups: how they approach AI differently</p><p>48:13 What a successful AI deployment actually looks like</p><p>51:02 Will everyone need to upskill on AI? (Spoiler: maybe not)</p><p>52:41 Most execs are thinking about cost-cutting — the smarter ones aren't</p><p>53:49 The executive digital twin: Supriya's startup vision</p><p>56:51 Current product, roadmap, and what's shipping next</p><p>58:52 Where to find Supriya</p>]]></description><guid isPermaLink="false">6c2590e9-daf0-4e23-be8d-dd1a93e63f3f</guid><dc:creator><![CDATA[Basil Chatha]]></dc:creator><pubDate>Mon, 04 May 2026 15:00:00 GMT</pubDate><enclosure url="https://api.riverside.com/hosting-analytics/media/5c7422ef0d223124c426ab8f4ed65a5879c60403b0028b8da054b1a9f60ec8d7/eyJlcGlzb2RlSWQiOiI2YzI1OTBlOS1kYWYwLTRlMjMtYmU4ZC1kZDFhOTNlNjNmM2YiLCJwb2RjYXN0SWQiOiIyNTBiMTE0OC0zNmRlLTRjZTctYTdkMi0yNzA3ODA2ODFlOTEiLCJhY2NvdW50SWQiOiI2OTBmZTZlOTBhZjFmZDQ1ZmM2ZWJmMWMiLCJwYXRoIjoibWVkaWEvY2xpcHMvNjlmNDBmYjFlZDMwZWFmZjBlZWZkMTYwL2Jhc2lsLWNoYXRoYXMtc3R1ZGlvLWNvbXBvc2VyLTIwMjYtNS0xX180LTI4LTEubXAzIn0=.mp3" length="108624396" type="audio/mpeg"/><podcast:transcript url="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/6c2590e9-daf0-4e23-be8d-dd1a93e63f3f/transcripts.txt" type="text/plain"/><itunes:summary>&lt;p&gt;Today&apos;s episode is with Supriya Gupta, ex-VP of Product at Intuit Credit Karma and former Product Lead on the Ads team at Meta when that business was scaling like crazy.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;She brings a really unique perspective on everything happening with GenAI right now because she&apos;s seen it from the inside at two of the biggest companies in tech.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;We get into how ads are slowly going to be generated on the spot, per user, where the image, copy and offer will all be unique to you specifically. We talk about why you can&apos;t just infinitely scale ad testing even though it&apos;s now theoretically possible, and why flooding the internet with AI content might actually be the worst thing you can do for your brand.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;We also go deep on what actually happened inside Credit Karma when they started building with GenAI, including what moved the needle and what didn&apos;t, and what that means for designers, PMs, and content teams everywhere.&lt;/p&gt;&lt;p&gt;And at the end, Supriya shares why she walked away from her VP role to start her own company, and what she&apos;s building now.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;You don&apos;t wanna miss this one.&lt;br /&gt;&lt;br /&gt;&lt;/p&gt;&lt;p&gt;🔗 Find Supriya on LinkedIn: &lt;a rel=&quot;noopener noreferrer nofollow&quot; href=&quot;https://www.linkedin.com/in/supriyag/&quot; target=&quot;_blank&quot;&gt;https://www.linkedin.com/in/supriyag/&lt;/a&gt;&lt;/p&gt;&lt;p&gt;🌐 Company&apos;s website: &lt;a rel=&quot;noopener noreferrer nofollow&quot; href=&quot;https://www.helloeve.co/&quot; target=&quot;_blank&quot;&gt;https://www.helloeve.co/&lt;/a&gt;&lt;br /&gt;&lt;br /&gt;&lt;i&gt;⏱ Chapters&lt;/i&gt;&lt;br /&gt;00:00 Intro&lt;/p&gt;&lt;p&gt;01:27 Predictive AI vs. Generative AI: what actually changed&lt;/p&gt;&lt;p&gt;02:59 The next gen of dynamic ads — why every user could soon get a unique ad&lt;/p&gt;&lt;p&gt;06:52 Will content agencies survive the AI era?&lt;/p&gt;&lt;p&gt;09:17 Why you can&apos;t just test a million ad variants (the stats problem)&lt;/p&gt;&lt;p&gt;12:55 AI slop, UGC backlash, and should AI content be labeled?&lt;/p&gt;&lt;p&gt;17:02 Supriya joins Credit Karma: building the Lightbox targeting platform&lt;/p&gt;&lt;p&gt;21:23 Building the Credit Karma financial assistant&lt;/p&gt;&lt;p&gt;24:35 Handling hallucinations in a finance app at scale&lt;/p&gt;&lt;p&gt;27:26 What happened to content designers when AI started writing copy&lt;/p&gt;&lt;p&gt;29:56 Why AI copy still needs human taste and judgment&lt;/p&gt;&lt;p&gt;31:01 PMs are prototyping now — what that means for design and eng&lt;/p&gt;&lt;p&gt;33:30 Will there be fewer PMs? (Probably not — here&apos;s why)&lt;/p&gt;&lt;p&gt;35:33 Why Supriya left Credit Karma to start her own company&lt;/p&gt;&lt;p&gt;37:23 The principles she built her startup around&lt;/p&gt;&lt;p&gt;39:20 The rise of the &quot;super IC&quot; — managers becoming AI-powered operators&lt;/p&gt;&lt;p&gt;41:54 Why most AI projects fail before they even start&lt;/p&gt;&lt;p&gt;45:33 Enterprises vs. startups: how they approach AI differently&lt;/p&gt;&lt;p&gt;48:13 What a successful AI deployment actually looks like&lt;/p&gt;&lt;p&gt;51:02 Will everyone need to upskill on AI? (Spoiler: maybe not)&lt;/p&gt;&lt;p&gt;52:41 Most execs are thinking about cost-cutting — the smarter ones aren&apos;t&lt;/p&gt;&lt;p&gt;53:49 The executive digital twin: Supriya&apos;s startup vision&lt;/p&gt;&lt;p&gt;56:51 Current product, roadmap, and what&apos;s shipping next&lt;/p&gt;&lt;p&gt;58:52 Where to find Supriya&lt;/p&gt;</itunes:summary><itunes:explicit>no</itunes:explicit><itunes:duration>00:56:34</itunes:duration><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/6c2590e9-daf0-4e23-be8d-dd1a93e63f3f/images/02e2501c-3d07-4397-beda-d5ac4c55a757.png"/><itunes:title>Supriya Gupta - Meta Exec Explains How AI is Reshaping Advertising</itunes:title><itunes:episodeType>full</itunes:episodeType></item><item><title><![CDATA[The Future of Agentic Engineering | Cognition (Devin), Semgrep, Factory & Composio | $1.2B+ Raised]]></title><description><![CDATA[<p>AI agents are everywhere right now. But are they actually working inside real engineering teams?<br /></p><p>At AngelList’s Founders Cafe, I sat down with founders of Cognition (<b>$898M</b> raised), Semgrep (<b>$204M</b> raised), Factory (<b>$70M</b> raised), and Composio (<b>$29M</b> raised) to talk about what agentic engineering looks like in practice.<br /></p><p>There’s a lot of hype around AI coding tools, but the reality is more nuanced. Some teams are moving 10x faster, others are slowing down. A big part of it comes down to whether your codebase is actually “agent-ready” (linting, type systems, guardrails, etc).<br /></p><p>We also went deep on security, which is one of the biggest gaps right now. As more non-developers start “vibe coding,” the risk surface grows fast. We talked about MCP access control, layered security, and why you can’t rely on models alone to generate secure code.<br /></p><p>Enterprise teams are also dealing with the operational side of this shift. They have to manage cost, run evals, and help thousands of engineers use these systems well. Tools like PR review agents, model routing, and internal orchestration are quickly becoming part of the stack.<br /></p><p><b>⏱ Chapters</b></p><p>00:00 Welcome and setup</p><p>00:41 Panel introductions</p><p>02:00 Windsurf acquisition</p><p>03:52 Do agents boost productivity?</p><p>04:16 Agent-ready codebases</p><p>05:55 Real-world enterprise wins</p><p>07:28 Agents building integrations</p><p>09:41 Security risks (vibe coding)</p><p>11:04 LLM security tools landscape</p><p>12:21 Defense-in-depth</p><p>15:16 MCP security pitfalls</p><p>18:41 MCP vs CLI</p><p>23:08 RL for secure code</p><p>27:05 Auto research missions</p><p>27:57 Training your own models</p><p>31:33 Distillation and IP decay</p><p>34:50 Hybrid systems</p><p>37:14 Side projects vs enterprise</p><p>40:16 Forward deployed engineering</p><p>40:58 Agent orchestration</p><p>43:08 Cost controls</p><p>43:49 Auto model routing</p><p>45:52 Guardrails</p><p>47:02 Legacy code risks</p><p>48:16 Model poisoning</p><p>49:35 What is a harness?</p><p>51:47 Why build your own</p><p>52:58 Continuous learning loops</p><p>56:30 Security workflows</p><p>57:37 Validation and meta engineering</p><p>1:00:32 Running evals in practice</p><p>1:03:36 Teams reshaped by agents</p><p>1:12:17 Should you study CS?</p><p>1:14:11 Enterprise adoption</p><p>1:18:23 Local to cloud journey</p><p>1:20:51 Agent economy and prompting</p><p>1:22:22 Spec vs plan</p><p>1:25:12 Closing and thanks</p>]]></description><guid isPermaLink="false">990c2128-cd14-4eac-adad-9897a588d009</guid><dc:creator><![CDATA[Basil Chatha]]></dc:creator><pubDate>Wed, 15 Apr 2026 19:00:00 GMT</pubDate><enclosure url="https://api.riverside.com/hosting-analytics/media/2cf207ec09cad2d471c3583ab44eae78bb7a04a9e418bbdd2c09a51243beb8f6/eyJlcGlzb2RlSWQiOiI5OTBjMjEyOC1jZDE0LTRlYWMtYWRhZC05ODk3YTU4OGQwMDkiLCJwb2RjYXN0SWQiOiIyNTBiMTE0OC0zNmRlLTRjZTctYTdkMi0yNzA3ODA2ODFlOTEiLCJhY2NvdW50SWQiOiI2OTBmZTZlOTBhZjFmZDQ1ZmM2ZWJmMWMiLCJwYXRoIjoibWVkaWEvY2xpcHMvNjlkZmQzY2Q4MjQ3YmRmYWIxMDBiOGE5L2Jhc2lsLWNoYXRoYXMtc3R1ZGlvLWNvbXBvc2VyLTIwMjYtNC0xNV9fMjAtNy05Lm1wMyJ9.mp3" length="123316497" type="audio/mpeg"/><podcast:transcript url="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/990c2128-cd14-4eac-adad-9897a588d009/transcripts.txt" type="text/plain"/><itunes:summary>&lt;p&gt;AI agents are everywhere right now. But are they actually working inside real engineering teams?&lt;br /&gt;&lt;/p&gt;&lt;p&gt;At AngelList’s Founders Cafe, I sat down with founders of Cognition (&lt;b&gt;$898M&lt;/b&gt; raised), Semgrep (&lt;b&gt;$204M&lt;/b&gt; raised), Factory (&lt;b&gt;$70M&lt;/b&gt; raised), and Composio (&lt;b&gt;$29M&lt;/b&gt; raised) to talk about what agentic engineering looks like in practice.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;There’s a lot of hype around AI coding tools, but the reality is more nuanced. Some teams are moving 10x faster, others are slowing down. A big part of it comes down to whether your codebase is actually “agent-ready” (linting, type systems, guardrails, etc).&lt;br /&gt;&lt;/p&gt;&lt;p&gt;We also went deep on security, which is one of the biggest gaps right now. As more non-developers start “vibe coding,” the risk surface grows fast. We talked about MCP access control, layered security, and why you can’t rely on models alone to generate secure code.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;Enterprise teams are also dealing with the operational side of this shift. They have to manage cost, run evals, and help thousands of engineers use these systems well. Tools like PR review agents, model routing, and internal orchestration are quickly becoming part of the stack.&lt;br /&gt;&lt;/p&gt;&lt;p&gt;&lt;b&gt;⏱ Chapters&lt;/b&gt;&lt;/p&gt;&lt;p&gt;00:00 Welcome and setup&lt;/p&gt;&lt;p&gt;00:41 Panel introductions&lt;/p&gt;&lt;p&gt;02:00 Windsurf acquisition&lt;/p&gt;&lt;p&gt;03:52 Do agents boost productivity?&lt;/p&gt;&lt;p&gt;04:16 Agent-ready codebases&lt;/p&gt;&lt;p&gt;05:55 Real-world enterprise wins&lt;/p&gt;&lt;p&gt;07:28 Agents building integrations&lt;/p&gt;&lt;p&gt;09:41 Security risks (vibe coding)&lt;/p&gt;&lt;p&gt;11:04 LLM security tools landscape&lt;/p&gt;&lt;p&gt;12:21 Defense-in-depth&lt;/p&gt;&lt;p&gt;15:16 MCP security pitfalls&lt;/p&gt;&lt;p&gt;18:41 MCP vs CLI&lt;/p&gt;&lt;p&gt;23:08 RL for secure code&lt;/p&gt;&lt;p&gt;27:05 Auto research missions&lt;/p&gt;&lt;p&gt;27:57 Training your own models&lt;/p&gt;&lt;p&gt;31:33 Distillation and IP decay&lt;/p&gt;&lt;p&gt;34:50 Hybrid systems&lt;/p&gt;&lt;p&gt;37:14 Side projects vs enterprise&lt;/p&gt;&lt;p&gt;40:16 Forward deployed engineering&lt;/p&gt;&lt;p&gt;40:58 Agent orchestration&lt;/p&gt;&lt;p&gt;43:08 Cost controls&lt;/p&gt;&lt;p&gt;43:49 Auto model routing&lt;/p&gt;&lt;p&gt;45:52 Guardrails&lt;/p&gt;&lt;p&gt;47:02 Legacy code risks&lt;/p&gt;&lt;p&gt;48:16 Model poisoning&lt;/p&gt;&lt;p&gt;49:35 What is a harness?&lt;/p&gt;&lt;p&gt;51:47 Why build your own&lt;/p&gt;&lt;p&gt;52:58 Continuous learning loops&lt;/p&gt;&lt;p&gt;56:30 Security workflows&lt;/p&gt;&lt;p&gt;57:37 Validation and meta engineering&lt;/p&gt;&lt;p&gt;1:00:32 Running evals in practice&lt;/p&gt;&lt;p&gt;1:03:36 Teams reshaped by agents&lt;/p&gt;&lt;p&gt;1:12:17 Should you study CS?&lt;/p&gt;&lt;p&gt;1:14:11 Enterprise adoption&lt;/p&gt;&lt;p&gt;1:18:23 Local to cloud journey&lt;/p&gt;&lt;p&gt;1:20:51 Agent economy and prompting&lt;/p&gt;&lt;p&gt;1:22:22 Spec vs plan&lt;/p&gt;&lt;p&gt;1:25:12 Closing and thanks&lt;/p&gt;</itunes:summary><itunes:explicit>no</itunes:explicit><itunes:duration>01:25:38</itunes:duration><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/990c2128-cd14-4eac-adad-9897a588d009/images/2e17ac6a-f771-4daa-aa80-cd99876e7abe.png"/><itunes:episode>4</itunes:episode><itunes:title>The Future of Agentic Engineering | Cognition (Devin), Semgrep, Factory &amp; Composio | $1.2B+ Raised</itunes:title><itunes:episodeType>full</itunes:episodeType></item><item><title><![CDATA[He Built a $200M AI Agent 10 Years Before ChatGPT]]></title><description><![CDATA[<p>Summary:<br /><br />In this conversation, I talked to Ashish Shubham (VP of Engineering), who's been at ThoughtSpot for 10 years, about AI agents in enterprise analytics. ThoughtSpot started as a search-based analytics company trying to make data accessible to regular business users. In 2019, they tried building natural language interfaces using BERT, but only hit about 50% accuracy. For a product where enterprise customers make billion-dollar decisions, that wasn't good enough. They shelved the project.<br /><br />When ChatGPT came out, ThoughtSpot was ready. Ashish walked me through how they pivoted: they built a 25-30 person team, decided to use prompting instead of fine-tuning, and leveraged their existing semantic data modeling layer to get accuracy into the high 90s. We got into the technical evolution from monolithic systems to agent architectures with tools, how they went from manual human judges to using LLMs to evaluate their outputs, and how enterprise security requirements shaped what they built.<br /><br />We also talked about how software engineering is changing. Ashish said 50-60% of his code is AI-generated now, and he thinks system design is becoming the critical skill, even for junior engineers. He had an interesting take on the "95% of AI deployments fail" stat too.</p><p></p><p>Chapters:</p><p></p><p>0:00 Intro and Ashish's journey to ThoughtSpot from GoDaddy</p><p>0:13 ThoughtSpot's mission to democratize data analytics for business users</p><p>1:26 Early search-based analytics before natural language processing</p><p>2:36 ThoughtSpot vs Tableau and the promise of self-service analytics</p><p>4:40 The analyst bottleneck problem and how ThoughtSpot aimed to solve it</p><p>5:49 Early technical challenges with in-memory databases and data migration</p><p>8:11 Semantic data models, joins, and creating abstraction layers for users</p><p>11:39 Who builds the data models and the role of analysts</p><p>12:22 Pre-LLM natural language processing using BERT and word2vec in 2018-2019</p><p>14:43 The accuracy problem and ambiguity in translating user queries</p><p>16:58 Trust challenges and why the early NLP product never became core</p><p>19:59 Competition with Tableau, Looker, and Power BI</p><p>22:44 How analyst roles changed with self-service analytics tools</p><p>25:30 The ChatGPT moment and pivoting to LLM-powered natural language</p><p>27:48 Early prompt engineering days and generating SQL with LLMs</p><p>31:09 Training vs prompting debate and why fine-tuning was eventually abandoned</p><p>34:28 Organizational changes and building the NLS team</p><p>37:16 Coaching systems for company-specific terminology vs training models</p><p>39:02 Evolution of evaluation methods from human judges to LLM-as-judge</p><p>43:23 Moving to LangFuse and GCP for agent infrastructure</p><p>46:29 How LLM context windows and capabilities evolved their product</p><p>50:07 From 30-column limits to agentic systems with 90%+ accuracy</p><p>52:52 RAG, column selection, and using proprietary data indexes</p><p>54:59 Multi-model support and enterprise data security concerns</p><p>59:14 How AI has changed Ashish's personal engineering workflow</p><p>1:02:42 Impact of AI on the broader engineering organization</p><p>1:04:15 Measuring AI productivity and the challenge of metrics</p><p>1:07:26 50-60% AI-generated code and the changing nature of coding</p><p>1:09:18 System design skills becoming more important than coding</p><p>1:13:00 Junior engineers doing senior-level work and interview changes</p><p>1:14:37 Customer conversations about Gen AI adoption across industries</p><p>1:17:26 The MIT report on 95% agent failures and why it misses the point</p><p>1:22:12 Agent architecture with LangGraph vs Google ADK and building internal agent platform</p><p>1:24:26 Where value lies in the next two years: tools, skills, and optimization</p><p>1:28:05 Startup opportunities in making AI accessible to non-technical users</p><p>1:29:26 Closing remarks</p>]]></description><guid isPermaLink="false">357ca95d-0687-48e4-b77d-2dcc0f17afd3</guid><dc:creator><![CDATA[Basil Chatha]]></dc:creator><pubDate>Wed, 28 Jan 2026 15:11:59 GMT</pubDate><enclosure url="https://api.riverside.com/hosting-analytics/media/49b85838aaeb7ed9abee3d5de470121d080db85b00aebab04eafb5896b2317ea/eyJlcGlzb2RlSWQiOiIzNTdjYTk1ZC0wNjg3LTQ4ZTQtYjc3ZC0yZGNjMGYxN2FmZDMiLCJwb2RjYXN0SWQiOiIyNTBiMTE0OC0zNmRlLTRjZTctYTdkMi0yNzA3ODA2ODFlOTEiLCJhY2NvdW50SWQiOiI2OTBmZTZlOTBhZjFmZDQ1ZmM2ZWJmMWMiLCJwYXRoIjoibWVkaWEvY2xpcHMvNjk3YTE1NjkxY2JkYTM3YjUwODU2MGNmL2Jhc2lsLWNoYXRoYXMtc3R1ZGlvLWNvbXBvc2VyLTIwMjYtMS0yOF9fMTQtNTUtNTMubXAzIn0=.mp3" length="63952388" type="audio/mpeg"/><itunes:summary>&lt;p&gt;Summary:&lt;br /&gt;&lt;br /&gt;In this conversation, I talked to Ashish Shubham (VP of Engineering), who&apos;s been at ThoughtSpot for 10 years, about AI agents in enterprise analytics. ThoughtSpot started as a search-based analytics company trying to make data accessible to regular business users. In 2019, they tried building natural language interfaces using BERT, but only hit about 50% accuracy. For a product where enterprise customers make billion-dollar decisions, that wasn&apos;t good enough. They shelved the project.&lt;br /&gt;&lt;br /&gt;When ChatGPT came out, ThoughtSpot was ready. Ashish walked me through how they pivoted: they built a 25-30 person team, decided to use prompting instead of fine-tuning, and leveraged their existing semantic data modeling layer to get accuracy into the high 90s. We got into the technical evolution from monolithic systems to agent architectures with tools, how they went from manual human judges to using LLMs to evaluate their outputs, and how enterprise security requirements shaped what they built.&lt;br /&gt;&lt;br /&gt;We also talked about how software engineering is changing. Ashish said 50-60% of his code is AI-generated now, and he thinks system design is becoming the critical skill, even for junior engineers. He had an interesting take on the &quot;95% of AI deployments fail&quot; stat too.&lt;/p&gt;&lt;p&gt;&lt;/p&gt;&lt;p&gt;Chapters:&lt;/p&gt;&lt;p&gt;&lt;/p&gt;&lt;p&gt;0:00 Intro and Ashish&apos;s journey to ThoughtSpot from GoDaddy&lt;/p&gt;&lt;p&gt;0:13 ThoughtSpot&apos;s mission to democratize data analytics for business users&lt;/p&gt;&lt;p&gt;1:26 Early search-based analytics before natural language processing&lt;/p&gt;&lt;p&gt;2:36 ThoughtSpot vs Tableau and the promise of self-service analytics&lt;/p&gt;&lt;p&gt;4:40 The analyst bottleneck problem and how ThoughtSpot aimed to solve it&lt;/p&gt;&lt;p&gt;5:49 Early technical challenges with in-memory databases and data migration&lt;/p&gt;&lt;p&gt;8:11 Semantic data models, joins, and creating abstraction layers for users&lt;/p&gt;&lt;p&gt;11:39 Who builds the data models and the role of analysts&lt;/p&gt;&lt;p&gt;12:22 Pre-LLM natural language processing using BERT and word2vec in 2018-2019&lt;/p&gt;&lt;p&gt;14:43 The accuracy problem and ambiguity in translating user queries&lt;/p&gt;&lt;p&gt;16:58 Trust challenges and why the early NLP product never became core&lt;/p&gt;&lt;p&gt;19:59 Competition with Tableau, Looker, and Power BI&lt;/p&gt;&lt;p&gt;22:44 How analyst roles changed with self-service analytics tools&lt;/p&gt;&lt;p&gt;25:30 The ChatGPT moment and pivoting to LLM-powered natural language&lt;/p&gt;&lt;p&gt;27:48 Early prompt engineering days and generating SQL with LLMs&lt;/p&gt;&lt;p&gt;31:09 Training vs prompting debate and why fine-tuning was eventually abandoned&lt;/p&gt;&lt;p&gt;34:28 Organizational changes and building the NLS team&lt;/p&gt;&lt;p&gt;37:16 Coaching systems for company-specific terminology vs training models&lt;/p&gt;&lt;p&gt;39:02 Evolution of evaluation methods from human judges to LLM-as-judge&lt;/p&gt;&lt;p&gt;43:23 Moving to LangFuse and GCP for agent infrastructure&lt;/p&gt;&lt;p&gt;46:29 How LLM context windows and capabilities evolved their product&lt;/p&gt;&lt;p&gt;50:07 From 30-column limits to agentic systems with 90%+ accuracy&lt;/p&gt;&lt;p&gt;52:52 RAG, column selection, and using proprietary data indexes&lt;/p&gt;&lt;p&gt;54:59 Multi-model support and enterprise data security concerns&lt;/p&gt;&lt;p&gt;59:14 How AI has changed Ashish&apos;s personal engineering workflow&lt;/p&gt;&lt;p&gt;1:02:42 Impact of AI on the broader engineering organization&lt;/p&gt;&lt;p&gt;1:04:15 Measuring AI productivity and the challenge of metrics&lt;/p&gt;&lt;p&gt;1:07:26 50-60% AI-generated code and the changing nature of coding&lt;/p&gt;&lt;p&gt;1:09:18 System design skills becoming more important than coding&lt;/p&gt;&lt;p&gt;1:13:00 Junior engineers doing senior-level work and interview changes&lt;/p&gt;&lt;p&gt;1:14:37 Customer conversations about Gen AI adoption across industries&lt;/p&gt;&lt;p&gt;1:17:26 The MIT report on 95% agent failures and why it misses the point&lt;/p&gt;&lt;p&gt;1:22:12 Agent architecture with LangGraph vs Google ADK and building internal agent platform&lt;/p&gt;&lt;p&gt;1:24:26 Where value lies in the next two years: tools, skills, and optimization&lt;/p&gt;&lt;p&gt;1:28:05 Startup opportunities in making AI accessible to non-technical users&lt;/p&gt;&lt;p&gt;1:29:26 Closing remarks&lt;/p&gt;</itunes:summary><itunes:explicit>no</itunes:explicit><itunes:duration>01:31:20</itunes:duration><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/357ca95d-0687-48e4-b77d-2dcc0f17afd3/images/0dc97bc7-297e-4bda-9e46-95675963ce87.png"/><itunes:episode>2</itunes:episode><itunes:title>He Built a $200M AI Agent 10 Years Before ChatGPT</itunes:title><itunes:episodeType>full</itunes:episodeType></item><item><title><![CDATA[He Led AI Transformation for Angry Birds. Then He Quit.]]></title><description><![CDATA[<p>In this conversation, Tatu discusses the transformative impact of AI on game development, drawing from his extensive experience in the gaming industry. He highlights the shift from traditional game development processes to a more agile, AI-driven approach that allows for rapid prototyping and iteration. Tatu emphasizes the importance of organizational change and the need for leaders to embrace AI as a core part of their strategy. He also explores the evolving role of product managers, the challenges of user acquisition, and the future of marketing in a saturated gaming market. The discussion culminates in Tatu's vision for his new AI-native game studio, aiming to disrupt the industry by leveraging cutting-edge technology to create high-quality games at unprecedented speed.</p><p></p><p>Takeaways:</p><p></p><ul><li>AI is condensing the time and resources needed for game development.</li><li>Organizational inertia can hinder the adoption of AI in large companies.</li><li>The future of game development will require T-shaped professionals with diverse skills.</li><li>AI will fundamentally change the economics of the gaming industry.</li><li>Smaller companies can leverage AI to outmaneuver larger competitors.</li><li>The role of product managers will evolve as AI takes over prioritization tasks.</li><li>Marketing strategies will need to adapt to a more saturated market.</li><li>User acquisition costs are expected to rise due to increased competition.</li><li>Novelty may not be as valuable as familiarity in a saturated market.</li><li>The future of entertainment will see a rise in fast, iterative game development.<p></p></li></ul><p>Chapters:</p><p>00:00 The Evolution of Game Development with AI</p><p>03:07 From Web Design to Gaming: A Career Journey</p><p>05:50 The Impact of AI on Knowledge Work</p><p>09:07 The Changing Landscape of Game Development</p><p>11:53 Organizational Inertia and the Future of Gaming Companies</p><p>14:55 The Role of AI in Transforming Game Development</p><p>17:57 Navigating the Challenges of AI Adoption</p><p>21:08 The Future of Game Development Methodologies</p><p>23:46 The Role of Product Managers in an AI-Driven World</p><p>26:47 Marketing Strategies in the Gaming Industry</p><p>29:59 The Role of Publishers in Game Development</p><p>33:05 The Future of User Acquisition in Gaming</p><p>36:02 The Changing Economics of Game Development</p><p>38:56 The Future of Software Development</p><p>42:13 The Role of Novelty in Game Development</p><p>45:04 The Importance of Familiarity in a Saturated Market</p><p>48:12 The Future of Fast Entertainment</p><p>50:59 Leveraging Licensing for Success</p><p>54:02 The Journey from Rovio to AI Native Gaming</p><p>57:02 Building Tools for Rapid Game Development</p><p>59:57 The Vision for Future Games</p><p>01:03:04 AI Adoption in Organizations: A Leader's Perspective</p>]]></description><guid isPermaLink="false">c6f9d3af-71e6-4cd1-b171-48d684b1c197</guid><dc:creator><![CDATA[Basil Chatha]]></dc:creator><pubDate>Wed, 07 Jan 2026 04:57:15 GMT</pubDate><enclosure url="https://api.riverside.com/hosting-analytics/media/30dce92cc72be06d052bfe0c6f634eb0ce6b575e1fefeaf3f6df81c58e507d72/eyJlcGlzb2RlSWQiOiJjNmY5ZDNhZi03MWU2LTRjZDEtYjE3MS00OGQ2ODRiMWMxOTciLCJwb2RjYXN0SWQiOiIyNTBiMTE0OC0zNmRlLTRjZTctYTdkMi0yNzA3ODA2ODFlOTEiLCJhY2NvdW50SWQiOiI2OTBmZTZlOTBhZjFmZDQ1ZmM2ZWJmMWMiLCJwYXRoIjoibWVkaWEvY2xpcHMvNjk1ZGNhMzgzNWMzNjhkMmI1YmVlYzg1L2Jhc2lsLWNoYXRoYXMtc3R1ZGlvLWNvbXBvc2VyLTIwMjYtMS03X18zLTUxLTM2Lm1wMyJ9.mp3" length="60402914" type="audio/mpeg"/><itunes:summary>&lt;p&gt;In this conversation, Tatu discusses the transformative impact of AI on game development, drawing from his extensive experience in the gaming industry. He highlights the shift from traditional game development processes to a more agile, AI-driven approach that allows for rapid prototyping and iteration. Tatu emphasizes the importance of organizational change and the need for leaders to embrace AI as a core part of their strategy. He also explores the evolving role of product managers, the challenges of user acquisition, and the future of marketing in a saturated gaming market. The discussion culminates in Tatu&apos;s vision for his new AI-native game studio, aiming to disrupt the industry by leveraging cutting-edge technology to create high-quality games at unprecedented speed.&lt;/p&gt;&lt;p&gt;&lt;/p&gt;&lt;p&gt;Takeaways:&lt;/p&gt;&lt;p&gt;&lt;/p&gt;&lt;ul&gt;&lt;li&gt;AI is condensing the time and resources needed for game development.&lt;/li&gt;&lt;li&gt;Organizational inertia can hinder the adoption of AI in large companies.&lt;/li&gt;&lt;li&gt;The future of game development will require T-shaped professionals with diverse skills.&lt;/li&gt;&lt;li&gt;AI will fundamentally change the economics of the gaming industry.&lt;/li&gt;&lt;li&gt;Smaller companies can leverage AI to outmaneuver larger competitors.&lt;/li&gt;&lt;li&gt;The role of product managers will evolve as AI takes over prioritization tasks.&lt;/li&gt;&lt;li&gt;Marketing strategies will need to adapt to a more saturated market.&lt;/li&gt;&lt;li&gt;User acquisition costs are expected to rise due to increased competition.&lt;/li&gt;&lt;li&gt;Novelty may not be as valuable as familiarity in a saturated market.&lt;/li&gt;&lt;li&gt;The future of entertainment will see a rise in fast, iterative game development.&lt;p&gt;&lt;/p&gt;&lt;/li&gt;&lt;/ul&gt;&lt;p&gt;Chapters:&lt;/p&gt;&lt;p&gt;00:00 The Evolution of Game Development with AI&lt;/p&gt;&lt;p&gt;03:07 From Web Design to Gaming: A Career Journey&lt;/p&gt;&lt;p&gt;05:50 The Impact of AI on Knowledge Work&lt;/p&gt;&lt;p&gt;09:07 The Changing Landscape of Game Development&lt;/p&gt;&lt;p&gt;11:53 Organizational Inertia and the Future of Gaming Companies&lt;/p&gt;&lt;p&gt;14:55 The Role of AI in Transforming Game Development&lt;/p&gt;&lt;p&gt;17:57 Navigating the Challenges of AI Adoption&lt;/p&gt;&lt;p&gt;21:08 The Future of Game Development Methodologies&lt;/p&gt;&lt;p&gt;23:46 The Role of Product Managers in an AI-Driven World&lt;/p&gt;&lt;p&gt;26:47 Marketing Strategies in the Gaming Industry&lt;/p&gt;&lt;p&gt;29:59 The Role of Publishers in Game Development&lt;/p&gt;&lt;p&gt;33:05 The Future of User Acquisition in Gaming&lt;/p&gt;&lt;p&gt;36:02 The Changing Economics of Game Development&lt;/p&gt;&lt;p&gt;38:56 The Future of Software Development&lt;/p&gt;&lt;p&gt;42:13 The Role of Novelty in Game Development&lt;/p&gt;&lt;p&gt;45:04 The Importance of Familiarity in a Saturated Market&lt;/p&gt;&lt;p&gt;48:12 The Future of Fast Entertainment&lt;/p&gt;&lt;p&gt;50:59 Leveraging Licensing for Success&lt;/p&gt;&lt;p&gt;54:02 The Journey from Rovio to AI Native Gaming&lt;/p&gt;&lt;p&gt;57:02 Building Tools for Rapid Game Development&lt;/p&gt;&lt;p&gt;59:57 The Vision for Future Games&lt;/p&gt;&lt;p&gt;01:03:04 AI Adoption in Organizations: A Leader&apos;s Perspective&lt;/p&gt;</itunes:summary><itunes:explicit>no</itunes:explicit><itunes:duration>01:15:39</itunes:duration><itunes:image href="https://hosting-media.riverside.com/media/podcasts/250b1148-36de-4ce7-a7d2-270780681e91/episodes/c6f9d3af-71e6-4cd1-b171-48d684b1c197/images/b4cca28f-b295-4cf2-80d7-79e0cae836ea.png"/><itunes:episode>1</itunes:episode><itunes:title>He Led AI Transformation for Angry Birds. Then He Quit.</itunes:title><itunes:episodeType>full</itunes:episodeType></item></channel></rss>