
In Machines We Trust AI keeps you up to date on everything happening in artificial intelligence. We break down the top AI news, the latest tools and research, and the trends driving the industry forward.
| Publishes | Daily | Episodes | 746 | Founded | 3 years ago |
|---|---|---|---|---|---|
| Number of Listeners | Categories | NewsTech News | |||

In this episode, we cover OpenAI shipping GPT-5.6 in three tiers—Sol, Terra, and Luna—with pricing that starts at $5/$30, $2.50/$15, and $1/$6 per million tokens. We also look at how that undercuts Claude Fable 5’s $10/$50 pricing and why cheaper fro... more
In this episode, we cover Anthropic’s allegation that Alibaba-linked operators used nearly 25,000 fake accounts and 28.8 million Claude interactions in what it calls its largest known distillation attack. We also look at why model distillation is bec... more
In this episode, we cover Anthropic’s launch of Claude Tag and what it could mean for how users organize and interact with AI workflows. We also look at OpenAI unveiling its own AI chip strategy as major labs push for more control over compute.
Show... more
In this episode, we cover SpaceX’s reported $6.3 billion compute deal with Reflection AI and why access to Nvidia GB300 chips could matter for open-source AI competition. We also look at how new data center cooling designs aim to cut on-site water us... more
People also subscribe to these shows.




I don’t know much about tech but this show does a phenomenal job at explaining what is going on in the AI business world with each podcast. I love the concise length and delivery. Also, it helps me understand the future of the industry and helps me with a few stock ideas.
Really appreciate everything I learn on this show about AI. So much is changing and this is a good way to keep up with it all!
Key themes from listener reviews, highlighting what works and what could be improved about the show.
How this podcast ranks in the Apple Podcasts, Spotify and YouTube charts.
Apple Podcasts | #98 | |
Apple Podcasts | #136 | |
Apple Podcasts | #116 | |
Apple Podcasts | #153 | |
Apple Podcasts | #9 | |
Apple Podcasts | #61 |
Recent interactions between the hosts and their guests.
Listeners, social reach, demographics and more for this podcast.
| Listeners per Episode | |
|---|---|
| Gender Skew | |
| Location | |
| Interests | |
| Professions | |
| Age Range | |
| Household Income | |
| Social Media Reach |
The show offers rapid-fire explorations of the AI and tech landscape, synthesizing major moves by industry leaders, policy developments, and commercial strategies shaping enterprise adoption. Episodes frequently combine market dynamics, tooling economics, and real-world productivity use cases, with practical anecdotes and clear takeaways for professionals evaluating AI investments, partnerships, or internal transformations. A notable strength is its ability to translate complex AI governance, licensing, and hardware trends into actionable guidance for teams and decision-makers, often with candid commentary and timely plugs for related tools and educational resources.
Rephonic provides a wide range of podcast stats for In Machines We Trust AI. We scanned the web and collated all of the information that we could find in our comprehensive podcast database. See how many people listen to In Machines We Trust AI and access YouTube viewership numbers, download stats, audience demographics, chart rankings, ratings, reviews and more.
Rephonic provides a full set of podcast information for three million podcasts, including the number of listeners. View further listenership figures for In Machines We Trust AI, including podcast download numbers and subscriber numbers, so you can make better decisions about which podcasts to sponsor or be a guest on. You will need to upgrade your account to access this premium data.
Rephonic provides comprehensive predictive audience data for In Machines We Trust AI, including gender skew, age, country, political leaning, income, professions, education level, and interests. You can access these listener demographics by upgrading your account.
To see how many followers or subscribers In Machines We Trust AI has on Spotify and other platforms such as Castbox and Podcast Addict, simply upgrade your account. You'll also find viewership figures for their YouTube channel if they have one.
These podcasts share a similar audience with In Machines We Trust AI:
1. The AI Daily Brief: Artificial Intelligence News and Analysis
2. Hard Fork
3. BG2Pod with Brad Gerstner and Bill Gurley
4. All-In with Chamath, Jason, Sacks & Friedberg
5. The Ezra Klein Show
In Machines We Trust AI launched 3 years ago and published 746 episodes to date. You can find more information about this podcast including rankings, audience demographics and engagement in our podcast database.
Our systems regularly scour the web to find email addresses and social media links for this podcast. We scanned the web and collated all of the contact information that we could find in our podcast database. But in the unlikely event that you can't find what you're looking for, our concierge service lets you request our research team to source better contacts for you.
Rephonic pulls ratings and reviews for In Machines We Trust AI from multiple sources, including Spotify, Apple Podcasts, Castbox, and Podcast Addict.
View all the reviews in one place instead of visiting each platform individually and use this information to decide if a show is worth pitching or not.
Rephonic provides full transcripts for episodes of In Machines We Trust AI. Search within each transcript for your keywords, whether they be topics, brands or people, and figure out if it's worth pitching as a guest or sponsor. You can even set-up alerts to get notified when your keywords are mentioned.
Recent guests on In Machines We Trust AI include:
1. Connor Grennan
2. Dario Amadei
3. Jamie Dimon
4. Dario Amodei
5. Darva Shah
6. Nick Frost
7. Blair LeCorte
8. John Munsell
To view more recent guests and their details, simply upgrade your Rephonic account. You'll also get access to a typical guest profile to help you decide if the show is worth pitching.