<?xml version="1.0" encoding="UTF-8"?>
<rss version="2.0" xmlns:itunes="http://www.itunes.com/dtds/podcast-1.0.dtd" xmlns:googleplay="http://www.google.com/schemas/play-podcasts/1.0" xmlns:atom="http://www.w3.org/2005/Atom" xmlns:media="http://search.yahoo.com/mrss/" xmlns:content="http://purl.org/rss/1.0/modules/content/">
  <channel>
    <atom:link href="https://feeds.megaphone.fm/AMCL8621728376" rel="self" type="application/rss+xml"/>
    <title>Almost Human</title>
    <link>https://www.aleph.vc/almost-human</link>
    <language>en</language>
    <copyright></copyright>
    <description>Almost Human is a podcast about how AI is reshaping the world faster than we can keep up and how it’s changing the way we see ourselves in the process.</description>
    <image>
      <url>https://megaphone.imgix.net/podcasts/ba4a28aa-6ae9-11f0-be97-1b98254d6caa/image/81339be3fdf63a8fe02d5f2f7aaf86a9.png?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress</url>
      <title>Almost Human</title>
      <link>https://www.aleph.vc/almost-human</link>
    </image>
    <itunes:type>episodic</itunes:type>
    <itunes:subtitle>Eden Shochat Takes on AI</itunes:subtitle>
    <itunes:author>Eden Shochat</itunes:author>
    <itunes:summary>Almost Human is a podcast about how AI is reshaping the world faster than we can keep up and how it’s changing the way we see ourselves in the process.</itunes:summary>
    <content:encoded>
      <![CDATA[<p><em>Almost Human </em>is a podcast about how AI is reshaping the world faster than we can keep up and how it’s changing the way we see ourselves in the process.</p>]]>
    </content:encoded>
    <itunes:owner>
      <itunes:name>Eden Shochat</itunes:name>
      <itunes:email>almosthuman@aleph.vc</itunes:email>
    </itunes:owner>
    <itunes:image href="https://megaphone.imgix.net/podcasts/ba4a28aa-6ae9-11f0-be97-1b98254d6caa/image/81339be3fdf63a8fe02d5f2f7aaf86a9.png?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
    <itunes:category text="Technology">
    </itunes:category>
    <item>
      <title>Shai Wininger Takes on AI-first Product Organizations</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>MIT famously claims that 95% of AI projects fail, not because the models don’t work, but because organizations aren’t built for AI.

In this episode of Almost Human, Shai Wininger, Co-Founder &amp; President of Lemonade, explains how one of the most AI-native consumer companies rebuilt its product org, workflows, and technology stack to make AI work in production in one of the most regulated industries in the world.

We unpack Lemonade’s internal LoCo platform (an LLM-first, no-code insurance application builder), why “engineers writing code” is being replaced by engineers writing text configuration, and how specs are evolving from static Google Docs into tests that define when an AI agent is done.

Shai shares:


  
Why 1 engineer + AI tools can now replace traditional teams



  
How Lemonade iterates on pricing, underwriting, and claims with AI at scale



  
Why tests act as guardrails and reward functions for AI agents



  
How product specs, workflows, and artifacts are changing



  
What an AI-native product organization will look like 12 months from now



  
How to build AI systems that self-heal, self-improve, and eventually pursue business goals




This episode is a tactical playbook for founders and product leaders who want AI to be a durable capability, not a perpetual experiment.

Please rate this episode 5 stars wherever you stream your podcasts! </description>
      <pubDate>Tue, 10 Feb 2026 11:52:00 -0000</pubDate>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:episode>6</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/b573756a-05cc-11f1-a415-ffa829380042/image/d6d0a8ac7cd911cb6ed85cde8cb5a46c.jpg?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle>Lemonade CEO Shai Wininger on How Lemonade Rebuilt Its Product, Org, and Stack for the AI Era </itunes:subtitle>
      <itunes:summary>MIT famously claims that 95% of AI projects fail, not because the models don’t work, but because organizations aren’t built for AI.

In this episode of Almost Human, Shai Wininger, Co-Founder &amp; President of Lemonade, explains how one of the most AI-native consumer companies rebuilt its product org, workflows, and technology stack to make AI work in production in one of the most regulated industries in the world.

We unpack Lemonade’s internal LoCo platform (an LLM-first, no-code insurance application builder), why “engineers writing code” is being replaced by engineers writing text configuration, and how specs are evolving from static Google Docs into tests that define when an AI agent is done.

Shai shares:


  
Why 1 engineer + AI tools can now replace traditional teams



  
How Lemonade iterates on pricing, underwriting, and claims with AI at scale



  
Why tests act as guardrails and reward functions for AI agents



  
How product specs, workflows, and artifacts are changing



  
What an AI-native product organization will look like 12 months from now



  
How to build AI systems that self-heal, self-improve, and eventually pursue business goals




This episode is a tactical playbook for founders and product leaders who want AI to be a durable capability, not a perpetual experiment.

Please rate this episode 5 stars wherever you stream your podcasts! </itunes:summary>
      <content:encoded>
        <![CDATA[<p>MIT famously claims that <strong>95% of AI projects fail</strong>, not because the models don’t work, but because organizations aren’t built for AI.</p>
<p>In this episode of <em>Almost Human</em>, <strong>Shai Wininger</strong>, Co-Founder &amp; President of <strong>Lemonade</strong>, explains how one of the most AI-native consumer companies rebuilt its <strong>product org, workflows, and technology stack</strong> to make AI work in production in one of the most regulated industries in the world.</p>
<p>We unpack Lemonade’s internal <strong>LoCo platform</strong> (an LLM-first, no-code insurance application builder), why “engineers writing code” is being replaced by <strong>engineers writing text configuration</strong>, and how specs are evolving from static Google Docs into <strong>tests that define when an AI agent is done</strong>.</p>
<p>Shai shares:</p>
<ul>
  <li>
<p>Why <strong>1 engineer + AI tools</strong> can now replace traditional teams</p>
</li>
  <li>
<p>How Lemonade iterates on pricing, underwriting, and claims with AI at scale</p>
</li>
  <li>
<p>Why tests act as guardrails and reward functions for AI agents</p>
</li>
  <li>
<p>How product specs, workflows, and artifacts are changing</p>
</li>
  <li>
<p>What an AI-native product organization will look like 12 months from now</p>
</li>
  <li>
<p>How to build AI systems that self-heal, self-improve, and eventually pursue business goals</p>
</li>
</ul>
<p>This episode is a tactical playbook for founders and product leaders who want AI to be a <strong>durable capability</strong>, not a perpetual experiment.</p>
<p><strong>Please rate this episode 5 stars wherever you stream your podcasts! </strong></p>
<p><br></p>]]>
      </content:encoded>
      <itunes:duration>1932</itunes:duration>
      <guid isPermaLink="false"><![CDATA[b573756a-05cc-11f1-a415-ffa829380042]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL1659273160.mp3" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Assaf Elovic Takes on the SMB AI Revolution</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>What does “Head of AI” actually mean inside a company like Monday.com and why are SMBs such an insane AI opportunity?

In this episode, Eden talks with Assaf Elovic, Head of AI at Monday.com, about bringing a massive SaaS company from “almost no AI” to AI products that ship real value across millions of users. Assaf shares how his role evolved from a 0→1 “startup inside Monday” to building an internal AI platform and culture the whole company can build on.

They break down why AI is 10% model, 90% workflows and culture, and why SMBs don’t need more magical chatbots - they need AI that is transparent, constrained, and deeply tied to the way they already work. Assaf walks through Monday’s first failed AI co-pilot, why users didn’t know what to ask, and how they reversed course by killing the chat, embedding AI Blocks directly into boards, and then adding explainability and feedback to rebuild trust.

From there, they zoom out to how Monday runs AI internally: AI Champions across departments, an “AI month” where everyone paused roadmaps to build AI, and a bottom-up culture where people share new papers and tools because they’re genuinely afraid to miss the next unlock.

For founders, Assaf and Eden get tactical:


  
Why risk analysis with generic LLMs backfired and what it taught them about subjective risk and domain-specific models



  
How to think “business problem → research task → product,” instead of doing cool research and hoping it lands



  
A simple framework for interviewing SMBs and finding a first workflow worth automating



  
Why a two-person startup today should be obsessed with voice agents and narrow, high-value workflows




If you’re building AI for real businesses, especially SMBs, this episode is a playbook on turning research into product, closing the trust loop with users, and using AI to actually do the work, not just manage it.

Please rate this episode 5 stars wherever you stream your podcasts!</description>
      <pubDate>Tue, 09 Dec 2025 08:56:00 -0000</pubDate>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:episode>5</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/9b3d0990-d43f-11f0-a772-738bc467a276/image/d2537c6d8fd4204f12e98abd3c2d11a2.jpg?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle>SMB Workflows, Voice Agents, and Building AI People Trust</itunes:subtitle>
      <itunes:summary>What does “Head of AI” actually mean inside a company like Monday.com and why are SMBs such an insane AI opportunity?

In this episode, Eden talks with Assaf Elovic, Head of AI at Monday.com, about bringing a massive SaaS company from “almost no AI” to AI products that ship real value across millions of users. Assaf shares how his role evolved from a 0→1 “startup inside Monday” to building an internal AI platform and culture the whole company can build on.

They break down why AI is 10% model, 90% workflows and culture, and why SMBs don’t need more magical chatbots - they need AI that is transparent, constrained, and deeply tied to the way they already work. Assaf walks through Monday’s first failed AI co-pilot, why users didn’t know what to ask, and how they reversed course by killing the chat, embedding AI Blocks directly into boards, and then adding explainability and feedback to rebuild trust.

From there, they zoom out to how Monday runs AI internally: AI Champions across departments, an “AI month” where everyone paused roadmaps to build AI, and a bottom-up culture where people share new papers and tools because they’re genuinely afraid to miss the next unlock.

For founders, Assaf and Eden get tactical:


  
Why risk analysis with generic LLMs backfired and what it taught them about subjective risk and domain-specific models



  
How to think “business problem → research task → product,” instead of doing cool research and hoping it lands



  
A simple framework for interviewing SMBs and finding a first workflow worth automating



  
Why a two-person startup today should be obsessed with voice agents and narrow, high-value workflows




If you’re building AI for real businesses, especially SMBs, this episode is a playbook on turning research into product, closing the trust loop with users, and using AI to actually do the work, not just manage it.

Please rate this episode 5 stars wherever you stream your podcasts!</itunes:summary>
      <content:encoded>
        <![CDATA[<p>What does “Head of AI” actually mean inside a company like Monday.com and why are SMBs such an insane AI opportunity?</p>
<p>In this episode, Eden talks with Assaf Elovic, Head of AI at Monday.com, about bringing a massive SaaS company from “almost no AI” to AI products that ship real value across millions of users. Assaf shares how his role evolved from a 0→1 “startup inside Monday” to building an internal AI platform and culture the whole company can build on.</p>
<p>They break down why AI is 10% model, 90% workflows and culture, and why SMBs don’t need more magical chatbots - they need AI that is transparent, constrained, and deeply tied to the way they already work. Assaf walks through Monday’s first failed AI co-pilot, why users didn’t know what to ask, and how they reversed course by killing the chat, embedding AI Blocks directly into boards, and then adding explainability and feedback to rebuild trust.</p>
<p>From there, they zoom out to how Monday runs AI internally: AI Champions across departments, an “AI month” where everyone paused roadmaps to build AI, and a bottom-up culture where people share new papers and tools because they’re genuinely afraid to miss the next unlock.</p>
<p>For founders, Assaf and Eden get tactical:</p>
<ul>
  <li>
<p>Why risk analysis with generic LLMs backfired and what it taught them about subjective risk and domain-specific models</p>
</li>
  <li>
<p>How to think “business problem → research task → product,” instead of doing cool research and hoping it lands</p>
</li>
  <li>
<p>A simple framework for interviewing SMBs and finding a first workflow worth automating</p>
</li>
  <li>
<p>Why a two-person startup today should be obsessed with voice agents and narrow, high-value workflows</p>
</li>
</ul>
<p>If you’re building AI for real businesses, especially SMBs, this episode is a playbook on turning research into product, closing the trust loop with users, and using AI to actually <em>do</em> the work, not just manage it.</p>
<p><strong>Please rate this episode 5 stars wherever you stream your podcasts! </strong></p>]]>
      </content:encoded>
      <itunes:duration>1519</itunes:duration>
      <guid isPermaLink="false"><![CDATA[9b3d0990-d43f-11f0-a772-738bc467a276]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL6949411636.mp3" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Zeev Farbman Takes on Real-Time Diffusion Models</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>What if video wasn’t a file you export, but a service that responds to every viewer in real time?

In this episode, Eden Shochat talks with Lightricks co-founder &amp; CEO Zeev Farbman about LTX 2, their real-time video diffusion model that runs on edge devices (phones and gaming GPUs) instead of giant cloud data centers.

They break down:


  
Why “every pixel is programmable” is the real story behind diffusion models



  
How we got from Facetune to a real-time video engine



  
Why edge AI might beat cloud APIs for the next wave of products



  
China’s open-weight strategy vs the West’s closed, API-first approach



  
What happens when you can personalize every ad impression with generated video



  
Why foundation models are a fast-depreciating asset and where the real moats will be



  
How Lightricks thinks about being both a product company and a platform/API



  
The coming shift from blank 3D scenes to “never start from scratch” creative workflows



  
The sci-fi idea from Neal Stephenson’s Diamond Age that Zeev would build as a startup today




If you’re a founder, engineer, or creator thinking about the future of video, gaming, or adtech, this episode is a playbook for what’s now possible when real-time, per-user video runs on everyday hardware.

Please rate this episode 5 stars wherever you stream your podcasts!</description>
      <pubDate>Wed, 26 Nov 2025 08:00:00 -0000</pubDate>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:episode>4</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/d1e62184-ca21-11f0-9607-270f8a4083a0/image/f2618b5988b02e0b457fec30f9288846.jpg?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle>I Built Facetune - Now I’m Putting Real-Time AI Video on Your Phone</itunes:subtitle>
      <itunes:summary>What if video wasn’t a file you export, but a service that responds to every viewer in real time?

In this episode, Eden Shochat talks with Lightricks co-founder &amp; CEO Zeev Farbman about LTX 2, their real-time video diffusion model that runs on edge devices (phones and gaming GPUs) instead of giant cloud data centers.

They break down:


  
Why “every pixel is programmable” is the real story behind diffusion models



  
How we got from Facetune to a real-time video engine



  
Why edge AI might beat cloud APIs for the next wave of products



  
China’s open-weight strategy vs the West’s closed, API-first approach



  
What happens when you can personalize every ad impression with generated video



  
Why foundation models are a fast-depreciating asset and where the real moats will be



  
How Lightricks thinks about being both a product company and a platform/API



  
The coming shift from blank 3D scenes to “never start from scratch” creative workflows



  
The sci-fi idea from Neal Stephenson’s Diamond Age that Zeev would build as a startup today




If you’re a founder, engineer, or creator thinking about the future of video, gaming, or adtech, this episode is a playbook for what’s now possible when real-time, per-user video runs on everyday hardware.

Please rate this episode 5 stars wherever you stream your podcasts!</itunes:summary>
      <content:encoded>
        <![CDATA[<p>What if video wasn’t a file you export, but a service that responds to every viewer in real time?</p>
<p>In this episode, Eden Shochat talks with Lightricks co-founder &amp; CEO Zeev Farbman about LTX 2, their real-time video diffusion model that runs on edge devices (phones and gaming GPUs) instead of giant cloud data centers.</p>
<p>They break down:</p>
<ul>
  <li>
<p>Why “every pixel is programmable” is the real story behind diffusion models</p>
</li>
  <li>
<p>How we got from Facetune to a real-time video engine</p>
</li>
  <li>
<p>Why edge AI might beat cloud APIs for the next wave of products</p>
</li>
  <li>
<p>China’s open-weight strategy vs the West’s closed, API-first approach</p>
</li>
  <li>
<p>What happens when you can personalize every ad impression with generated video</p>
</li>
  <li>
<p>Why foundation models are a fast-depreciating asset and where the real moats will be</p>
</li>
  <li>
<p>How Lightricks thinks about being both a product company and a platform/API</p>
</li>
  <li>
<p>The coming shift from blank 3D scenes to “never start from scratch” creative workflows</p>
</li>
  <li>
<p>The sci-fi idea from Neal Stephenson’s <em>Diamond Age</em> that Zeev would build as a startup today</p>
</li>
</ul>
<p>If you’re a founder, engineer, or creator thinking about the future of video, gaming, or adtech, this episode is a playbook for what’s now possible when real-time, per-user video runs on everyday hardware.</p>
<p><strong>Please rate this episode 5 stars wherever you stream your podcasts! </strong></p>]]>
      </content:encoded>
      <itunes:duration>2376</itunes:duration>
      <guid isPermaLink="false"><![CDATA[d1e62184-ca21-11f0-9607-270f8a4083a0]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL9151043951.mp3?updated=1764131913" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Nir Hemed Takes on Semi-Autonomous Agents</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>Property management is a brutal business: low margins, endless paperwork, and human bottlenecks everywhere.

So what happens when you give AI agents the keys?

In this episode of Almost Human, Eden Shochat sits with Nir Hemed, co-founder and CTO of Daisy, a New York–based startup reimagining property management through AI. Nir reveals how Daisy built a team of ten autonomous agents - each with names, roles, and Slack access, and how one of them, “Steven,” now handles complex onboarding processes once run entirely by humans.

Eden and Nir unpack what it means to design trust between humans and agents, how to build eval frameworks that become a company’s secret IP, and why the future of work isn’t just automation - it’s orchestration.

From Temporal workflows to generative UIs and “AI coworkers,” this episode dives into the scaffolding era of AI: where humans teach machines how to manage, reason, and evolve.

Key takeaway: The companies that win in this era won’t be the ones that collect the most data, they’ll be the ones that build the best feedback loops.

Please rate this episode 5 stars wherever you stream your podcasts!</description>
      <pubDate>Tue, 11 Nov 2025 08:21:00 -0000</pubDate>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:episode>3</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/2b9cc1d6-be35-11f0-8201-a77fa084f5e1/image/c42ee7f28061ff5d0880d051f045224b.jpg?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle>Your Next Coworker Isn’t Human</itunes:subtitle>
      <itunes:summary>Property management is a brutal business: low margins, endless paperwork, and human bottlenecks everywhere.

So what happens when you give AI agents the keys?

In this episode of Almost Human, Eden Shochat sits with Nir Hemed, co-founder and CTO of Daisy, a New York–based startup reimagining property management through AI. Nir reveals how Daisy built a team of ten autonomous agents - each with names, roles, and Slack access, and how one of them, “Steven,” now handles complex onboarding processes once run entirely by humans.

Eden and Nir unpack what it means to design trust between humans and agents, how to build eval frameworks that become a company’s secret IP, and why the future of work isn’t just automation - it’s orchestration.

From Temporal workflows to generative UIs and “AI coworkers,” this episode dives into the scaffolding era of AI: where humans teach machines how to manage, reason, and evolve.

Key takeaway: The companies that win in this era won’t be the ones that collect the most data, they’ll be the ones that build the best feedback loops.

Please rate this episode 5 stars wherever you stream your podcasts!</itunes:summary>
      <content:encoded>
        <![CDATA[<p>Property management is a brutal business: low margins, endless paperwork, and human bottlenecks everywhere.</p>
<p>So what happens when you give AI agents the keys?</p>
<p>In this episode of Almost Human, Eden Shochat sits with Nir Hemed, co-founder and CTO of Daisy, a New York–based startup reimagining property management through AI. Nir reveals how Daisy built a team of ten autonomous agents - each with names, roles, and Slack access, and how one of them, “Steven,” now handles complex onboarding processes once run entirely by humans.</p>
<p>Eden and Nir unpack what it means to design trust between humans and agents, how to build eval frameworks that become a company’s secret IP, and why the future of work isn’t just automation - it’s orchestration.</p>
<p>From Temporal workflows to generative UIs and “AI coworkers,” this episode dives into the scaffolding era of AI: where humans teach machines how to manage, reason, and evolve.</p>
<p>Key takeaway: The companies that win in this era won’t be the ones that collect the most data, they’ll be the ones that build the best feedback loops.</p>
<p><strong>Please rate this episode 5 stars wherever you stream your podcasts! </strong></p>
<p><br></p>]]>
      </content:encoded>
      <itunes:duration>2101</itunes:duration>
      <guid isPermaLink="false"><![CDATA[2b9cc1d6-be35-11f0-8201-a77fa084f5e1]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL9281643157.mp3?updated=1762849946" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Liran Tam Takes on Meta Learning</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>Meta learning flips the script: you don’t win by hoarding the most data - you win by adapting the fastest. In this episode, Eden sits down with engineer and researcher Liran Tam to demystify meta learning for founders. We cover how to get real performance from tiny datasets, when to use adjacent tasks to supercharge learning, and why personalization and low-compute inference are perfect use cases. We also dig into transfer across domains (from video to robotics), opportunities in cybersecurity, and how the moat is shifting from “most data” to “most diverse domains.”

If you’re an early-stage builder asking “Do I need Google-scale data to compete?” this one’s for you.

Please rate this episode 5 stars wherever you stream your podcasts! </description>
      <pubDate>Tue, 28 Oct 2025 06:00:00 -0000</pubDate>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:episode>2</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/20c12214-b275-11f0-994d-57baff953e25/image/f5c6e4fe0a1767f181ce9795de7cb65f.jpg?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle>Beat Big Tech Without Big Data</itunes:subtitle>
      <itunes:summary>Meta learning flips the script: you don’t win by hoarding the most data - you win by adapting the fastest. In this episode, Eden sits down with engineer and researcher Liran Tam to demystify meta learning for founders. We cover how to get real performance from tiny datasets, when to use adjacent tasks to supercharge learning, and why personalization and low-compute inference are perfect use cases. We also dig into transfer across domains (from video to robotics), opportunities in cybersecurity, and how the moat is shifting from “most data” to “most diverse domains.”

If you’re an early-stage builder asking “Do I need Google-scale data to compete?” this one’s for you.

Please rate this episode 5 stars wherever you stream your podcasts! </itunes:summary>
      <content:encoded>
        <![CDATA[<p>Meta learning flips the script: you don’t win by hoarding the most data - you win by adapting the fastest. In this episode, Eden sits down with engineer and researcher <strong>Liran Tam</strong> to demystify meta learning for founders. We cover how to get real performance from tiny datasets, when to use adjacent tasks to supercharge learning, and why personalization and low-compute inference are perfect use cases. We also dig into transfer across domains (from video to robotics), opportunities in cybersecurity, and how the moat is shifting from “most data” to “most diverse domains.”</p>
<p>If you’re an early-stage builder asking “Do I need Google-scale data to compete?” this one’s for you.</p>
<p><strong>Please rate this episode 5 stars wherever you stream your podcasts! </strong></p>]]>
      </content:encoded>
      <itunes:duration>1518</itunes:duration>
      <guid isPermaLink="false"><![CDATA[20c12214-b275-11f0-994d-57baff953e25]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL5708470228.mp3" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Gilad Lotan Takes on Embeddings (BONUS EPISODE)</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>Eden Shochat continues his conversation with Gilad Lotan, Head of AI/Data Science &amp; Analytics at BuzzFeed, to unpack one of the most under-hyped ideas in AI: embeddings. Then, Eden puts Gilad in the hot seat with a rapid-fire round of questions.</description>
      <pubDate>Tue, 30 Sep 2025 07:48:00 -0000</pubDate>
      <itunes:episodeType>bonus</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/d6306cbc-9dd1-11f0-b052-93e17b0d91d4/image/6aac7c051d9caa2a290d56022d2df4c2.png?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle></itunes:subtitle>
      <itunes:summary>Eden Shochat continues his conversation with Gilad Lotan, Head of AI/Data Science &amp; Analytics at BuzzFeed, to unpack one of the most under-hyped ideas in AI: embeddings. Then, Eden puts Gilad in the hot seat with a rapid-fire round of questions.</itunes:summary>
      <content:encoded>
        <![CDATA[<p>Eden Shochat continues his conversation with Gilad Lotan, Head of AI/Data Science &amp; Analytics at BuzzFeed, to unpack one of the most under-hyped ideas in AI: embeddings. Then, Eden puts Gilad in the hot seat with a rapid-fire round of questions.</p>]]>
      </content:encoded>
      <itunes:duration>427</itunes:duration>
      <guid isPermaLink="false"><![CDATA[d6306cbc-9dd1-11f0-b052-93e17b0d91d4]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL3777892021.mp3" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Gilad Lotan Takes on Embeddings</title>
      <description>Eden Shochat sits down with Gilad Lotan, Head of AI/Data Science &amp; Analytics at BuzzFeed, to unpack the most under-hyped idea in AI: embeddings. Beyond “RAG” and chatbots, we get into how vectorizing content and users rewires recommendations, ad targeting, and even business models, without training your own foundation model or shipping another GPT wrapper.</description>
      <pubDate>Tue, 16 Sep 2025 02:47:00 -0000</pubDate>
      <itunes:episodeType>full</itunes:episodeType>
      <itunes:season>1</itunes:season>
      <itunes:episode>1</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/04e16546-920d-11f0-9d42-17af0e30dc11/image/ebf18d588269712e4b7b92c3ace32261.png?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle>The Unsexy AI Layer That Changes Everything </itunes:subtitle>
      <itunes:summary>Eden Shochat sits down with Gilad Lotan, Head of AI/Data Science &amp; Analytics at BuzzFeed, to unpack the most under-hyped idea in AI: embeddings. Beyond “RAG” and chatbots, we get into how vectorizing content and users rewires recommendations, ad targeting, and even business models, without training your own foundation model or shipping another GPT wrapper.</itunes:summary>
      <content:encoded>
        <![CDATA[<p>Eden Shochat sits down with Gilad Lotan, Head of AI/Data Science &amp; Analytics at BuzzFeed, to unpack the most under-hyped idea in AI: embeddings. Beyond “RAG” and chatbots, we get into how vectorizing content and users rewires recommendations, ad targeting, and even business models, without training your own foundation model or shipping another GPT wrapper.</p>]]>
      </content:encoded>
      <itunes:duration>1727</itunes:duration>
      <guid isPermaLink="false"><![CDATA[04e16546-920d-11f0-9d42-17af0e30dc11]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL3850192523.mp3" length="0" type="audio/mpeg"/>
    </item>
    <item>
      <title>Almost Human: Eden Shochat Takes on AI (Trailer)</title>
      <link>https://www.aleph.vc/almost-human</link>
      <description>AI talk is everywhere in Tel Aviv, but most of it? Noise. 

On Almost Human, Eden Shochat - Equal Partner at Aleph and a builder turned VC - cuts through the hype with sharp, first-principles takes on what’s actually transformative.

Each week, Eden brings a builder’s lens and investor’s clarity to AI: what tools matter, which ideas are breaking through, and how they reshape life for startups, investors, and Israel’s tech ecosystem. He’ll share the signals he’s picking up on the frontlines, then sit down with founders, researchers, and operators at the bleeding edge to extract takeaways you can actually use.

Forget endless GPT comparisons and hype cycles - this is where curiosity meets clarity, and where opportunities come into focus.

Welcome to Almost Human. Let’s cut through the noise.</description>
      <pubDate>Tue, 09 Sep 2025 14:30:00 -0000</pubDate>
      <itunes:episodeType>trailer</itunes:episodeType>
      <itunes:episode>1</itunes:episode>
      <itunes:author>Eden Shochat</itunes:author>
      <itunes:image href="https://megaphone.imgix.net/podcasts/bb98d8f4-8d77-11f0-8288-f33d968ad638/image/50bbc70a195f7e9814233e81d366dc6d.png?ixlib=rails-4.3.1&amp;max-w=3000&amp;max-h=3000&amp;fit=crop&amp;auto=format,compress"/>
      <itunes:subtitle></itunes:subtitle>
      <itunes:summary>AI talk is everywhere in Tel Aviv, but most of it? Noise. 

On Almost Human, Eden Shochat - Equal Partner at Aleph and a builder turned VC - cuts through the hype with sharp, first-principles takes on what’s actually transformative.

Each week, Eden brings a builder’s lens and investor’s clarity to AI: what tools matter, which ideas are breaking through, and how they reshape life for startups, investors, and Israel’s tech ecosystem. He’ll share the signals he’s picking up on the frontlines, then sit down with founders, researchers, and operators at the bleeding edge to extract takeaways you can actually use.

Forget endless GPT comparisons and hype cycles - this is where curiosity meets clarity, and where opportunities come into focus.

Welcome to Almost Human. Let’s cut through the noise.</itunes:summary>
      <content:encoded>
        <![CDATA[<p>AI talk is everywhere in Tel Aviv, but most of it? Noise. </p>
<p>On <em>Almost Human</em>, Eden Shochat - Equal Partner at Aleph and a builder turned VC - cuts through the hype with sharp, first-principles takes on what’s actually transformative.</p>
<p>Each week, Eden brings a builder’s lens and investor’s clarity to AI: what tools matter, which ideas are breaking through, and how they reshape life for startups, investors, and Israel’s tech ecosystem. He’ll share the signals he’s picking up on the frontlines, then sit down with founders, researchers, and operators at the bleeding edge to extract takeaways you can actually use.</p>
<p>Forget endless GPT comparisons and hype cycles - this is where curiosity meets clarity, and where opportunities come into focus.</p>
<p>Welcome to Almost Human. Let’s cut through the noise.</p>]]>
      </content:encoded>
      <itunes:duration>91</itunes:duration>
      <guid isPermaLink="false"><![CDATA[bb98d8f4-8d77-11f0-8288-f33d968ad638]]></guid>
      <enclosure url="https://traffic.megaphone.fm/AMCL2719939928.mp3" length="0" type="audio/mpeg"/>
    </item>
  </channel>
</rss>
