Revenue Search: Inside Bittensor

Mark Creaser and Siam Kidd

The podcast for anyone building, investing in, or obsessed with Bittensor. Hosted by Mark Creaser and Siam Kidd from DSV Fund, Revenue Search goes inside the subnets to ask the important questions about revenue - not just hype. If you’re betting on the future of distributed AI - or building it - this is your signal.

  1. 1D AGO

    Subnet Session with Iosif & Harry from Djinn: Subnet 103

    This session starts with Mark and Siam briefly addressing the decision to pivot away from “Handshake”: it didn’t gain the traction they hoped, the team’s focus drifted toward building trading/mining “skills” that didn’t feel like a scalable revenue path, and they chose to “rip the band-aid off” rather than keep a zombie project alive. They argue that in AI (especially on Bittensor) things change fast, so it’s better to redeploy talented builders quickly, even if that decision attracts criticism. The main segment features Subnet 103 “Djinn,” led by Harry Crane (stats professor with deep prediction markets/sports betting background) and Iosef Gerstein (finance + scientific startups). Djinn’s core idea is a “genius–idiot network”: profitable bettors (“geniuses”) have an edge but get limited/banned by sportsbooks, while the mass of recreational bettors (“idiots,” i.e., accounts that can still place bets) can execute. Djinn is building a trustless, privacy-preserving information exchange to connect the two—geniuses sell time-sensitive betting signals, buyers execute them wherever they have access (Bet365, Polymarket, etc.), and the protocol uses Bittensor miners/validators for verification and obfuscation (including decoys) so neither Djinn nor outsiders can easily steal signals. Revenue is expected to come from transaction fees (they discuss ~0.5% as a working idea), with buybacks/utility mechanisms considered to support alpha; they’re currently moving from fake-money testing to low-stakes real-money testing and say they’ll launch only when they’re confident it’s safe.

    1h 13m
  2. MAY 13

    Subnet Session with Koyuki from Vocence: Subnet 78

    This episode, Mark discloses that DSV is already invested in today’s subnet, but they’ll still ask the awkward questions. They bring on Koyuki (“special k”) from San Francisco, who shares her background in AI (web2 + web3), how she joined the Bittensor Foundation/OTF as Head of AI, and then dives into her slides on Subnet 78, Vocence. Koyuki pitches Vosens as a decentralized “voice intelligence layer” on Bittensor, targeting the rapidly growing voice AI market and competing with incumbents like ElevenLabs by being more open, cheaper, and driven by Bittensor incentives. She shows that Vocence already has a live studio product (TTS/STT, voice cloning/design, text-to-music, API) and outlines how miners submit models that validators score across nine dimensions (script accuracy and naturalness weighted highest), with winning models becoming the new baseline for inference. On revenue, she describes a credit-based SaaS model (consumer + API, with enterprise as the big upside), plans for buybacks into a treasury, and an emissions burn condition if no model clears a defined improvement threshold. The discussion then focuses on the “Turing test” problem for voice agents—latency, filler words, interruptions, and overlapping speech—and Koyuki claims a new “style trajectory TTS” approach will make agents sound truly human soon. Siam offers a $5,000 wager that Vocence can produce a voice agent he can’t detect as AI by the end of the month, and Koyuki accepts, with some talk about testing via a phone-call scenario and adversarial off-script questions. They wrap by noting the prior Vocence slot issues/deregistration risk and arguing this time is different due to stronger leadership, a live product, faster shipping, and early traction.

    57 min
  3. APR 29

    Subnet Session with Aldo de Pape from NIOME: Subnet 55

    In this Revenue Search episode, the hosts sit down with Aldo from Subnet 55 (NIOME / “Neural Intelligence in Omics”)—a project tackling one of the messiest problems in biotech: how to make genomic/biodata usable for research and AI without turning it into a privacy and cybersecurity nightmare. Aldo walks through why the status quo is broken, pointing to repeated breaches and misuse across the industry (from direct-to-consumer testing firms to major institutions), and makes the case that “compliance” doesn’t equal “security” when hackers are actively targeting sensitive health data. NIOME’s approach is twofold. First, through the wider genomes.io ecosystem, individuals can store their DNA data in encrypted “vaults” where the user remains the owner and controls access—rather than handing away rights to hospitals or platforms. Second, the subnet’s core mission is to generate synthetic genomic / biodata at scale—so pharma, biotech, and researchers can train models and run analyses without exposing raw identifiable datasets. The roadmap is built around a structured series of predictive challenges (starting with cystic fibrosis / CFTR), with commercial interest already forming around bespoke challenges, licensing outputs, and data brokerage partnerships (e.g., bringing external datasets into the synthetic pipeline and sharing revenue when that data is used). The big idea: make biodata safe, precise, and scalable and use Bittensor’s open, inspectable “under-the-hood” model development to build trust versus black-box approaches.

    1h 3m
  4. APR 22

    Subnet Session with Josh from Green Compute: Subnet 110

    Revenue Search returns with the usual chaos and banter, then introduces Josh and the launch of Green Compute—a new Bittensor compute subnet designed specifically for enterprise-grade inference workloads. Josh shares his background building and selling GPU infrastructure in the UK since 2017, and explains that Green Compute plugs into an already-profitable compute business with existing customers, contracts, and deployment experience—so the subnet isn’t starting from zero. The core thesis: bring data centers to constrained renewable energy. Across the UK (and beyond), farms and renewable sites often generate power the grid can’t accept—so it’s wasted. Green Compute turns that stranded power (solar, wind, hydro, and especially anaerobic digestion / biogas) into usable AI compute, offering site owners far higher returns than exporting electricity back to the grid. Unlike “spot” compute markets, Green Compute is aiming at longer-term, high-volume enterprise deals that require symmetry (large clusters of identical GPUs, networking, CPUs/RAM/storage) plus real human support (sales + engineers) and predictable uptime—things many existing marketplaces struggle to guarantee. They also touch on tokenomics and onboarding: compute can be bought with fiat, but the goal is to push real-world customers toward paying via subnet alpha over time (creating buy pressure). Mining is gated by standards (e.g., high-bandwidth connectivity and matching hardware) to meet enterprise requirements, with a process for miners to apply and be verified—including the “green” power source. The team plans to update naming/branding and community channels shortly, with more details and access via the Green Compute website.

    1h 13m

Ratings & Reviews

4.5
out of 5
2 Ratings

About

The podcast for anyone building, investing in, or obsessed with Bittensor. Hosted by Mark Creaser and Siam Kidd from DSV Fund, Revenue Search goes inside the subnets to ask the important questions about revenue - not just hype. If you’re betting on the future of distributed AI - or building it - this is your signal.

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