Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      The state of DevOps and AI: Not just hype

      September 1, 2025

      A Breeze Of Inspiration In September (2025 Wallpapers Edition)

      August 31, 2025

      10 Top Generative AI Development Companies for Enterprise Node.js Projects

      August 30, 2025

      Prompting Is A Design Act: How To Brief, Guide And Iterate With AI

      August 29, 2025

      Look out, Meta Ray-Bans! These AI glasses just raised over $1M in pre-orders in 3 days

      September 2, 2025

      Samsung ‘Galaxy Glasses’ powered by Android XR are reportedly on track to be unveiled this month

      September 2, 2025

      The M4 iPad Pro is discounted $100 as a last-minute Labor Day deal

      September 2, 2025

      Distribution Release: Linux From Scratch 12.4

      September 1, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      Enhanced Queue Job Control with Laravel’s ThrottlesExceptions failWhen() Method

      September 2, 2025
      Recent

      Enhanced Queue Job Control with Laravel’s ThrottlesExceptions failWhen() Method

      September 2, 2025

      August report 2025

      September 2, 2025

      Fake News Detection using Python Machine Learning (ML)

      September 1, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      Installing Proxmox on a Raspberry Pi to run Virtual Machines on it

      September 2, 2025
      Recent

      Installing Proxmox on a Raspberry Pi to run Virtual Machines on it

      September 2, 2025

      Download Transcribe! for Windows

      September 1, 2025

      Microsoft Fixes CertificateServicesClient (CertEnroll) Error in Windows 11

      September 1, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Artificial Intelligence»Vana is letting users own a piece of the AI models trained on their data

    Vana is letting users own a piece of the AI models trained on their data

    April 3, 2025

    In February 2024, Reddit struck a $60 million deal with Google to let the search giant use data on the platform to train its artificial intelligence models. Notably absent from the discussions were Reddit users, whose data were being sold.

    The deal reflected the reality of the modern internet: Big tech companies own virtually all our online data and get to decide what to do with that data. Unsurprisingly, many platforms monetize their data, and the fastest-growing way to accomplish that today is to sell it to AI companies, who are themselves massive tech companies using the data to train ever more powerful models.

    The decentralized platform Vana, which started as a class project at MIT, is on a mission to give power back to the users. The company has created a fully user-owned network that allows individuals to upload their data and govern how they are used. AI developers can pitch users on ideas for new models, and if the users agree to contribute their data for training, they get proportional ownership in the models.

    The idea is to give everyone a stake in the AI systems that will increasingly shape our society while also unlocking new pools of data to advance the technology.

    “This data is needed to create better AI systems,” says Vana co-founder Anna Kazlauskas ’19. “We’ve created a decentralized system to get better data — which sits inside big tech companies today — while still letting users retain ultimate ownership.”

    From economics to the blockchain

    A lot of high school students have pictures of pop stars or athletes on their bedroom walls. Kazlauskas had a picture of former U.S. Treasury Secretary Janet Yellen.

    Kazlauskas came to MIT sure she’d become an economist, but she ended up being one of five students to join the MIT Bitcoin club in 2015, and that experience led her into the world of blockchains and cryptocurrency.

    From her dorm room in MacGregor House, she began mining the cryptocurrency Ethereum. She even occasionally scoured campus dumpsters in search of discarded computer chips.

    “It got me interested in everything around computer science and networking,” Kazlauskas says. “That involved, from a blockchain perspective, distributed systems and how they can shift economic power to individuals, as well as artificial intelligence and econometrics.”

    Kazlauskas met Art Abal, who was then attending Harvard University, in the former Media Lab class Emergent Ventures, and the pair decided to work on new ways to obtain data to train AI systems.

    “Our question was: How could you have a large number of people contributing to these AI systems using more of a distributed network?” Kazlauskas recalls.

    Kazlauskas and Abal were trying to address the status quo, where most models are trained by scraping public data on the internet. Big tech companies often also buy large datasets from other companies.

    The founders’ approach evolved over the years and was informed by Kazlauskas’ experience working at the financial blockchain company Celo after graduation. But Kazlauskas credits her time at MIT with helping her think about these problems, and the instructor for Emergent Ventures, Ramesh Raskar, still helps Vana think about AI research questions today.

    “It was great to have an open-ended opportunity to just build, hack, and explore,” Kazlauskas says. “I think that ethos at MIT is really important. It’s just about building things, seeing what works, and continuing to iterate.”

    Today Vana takes advantage of a little-known law that allows users of most big tech platforms to export their data directly. Users can upload that information into encrypted digital wallets in Vana and disburse it to train models as they see fit.

    AI engineers can suggest ideas for new open-source models, and people can pool their data to help train the model. In the blockchain world, the data pools are called data DAOs, which stands for decentralized autonomous organization. Data can also be used to create personalized AI models and agents.

    In Vana, data are used in a way that preserves user privacy because the system doesn’t expose identifiable information. Once the model is created, users maintain ownership so that every time it’s used, they’re rewarded proportionally based on how much their data helped trained it.

    “From a developer’s perspective, now you can build these hyper-personalized health applications that take into account exactly what you ate, how you slept, how you exercise,” Kazlauskas says. “Those applications aren’t possible today because of those walled gardens of the big tech companies.”

    Crowdsourced, user-owned AI

    Last year, a machine-learning engineer proposed using Vana user data to train an AI model that could generate Reddit posts. More than 140,000 Vana users contributed their Reddit data, which contained posts, comments, messages, and more. Users decided on the terms in which the model could be used, and they maintained ownership of the model after it was created.

    Vana has enabled similar initiatives with user-contributed data from the social media platform X; sleep data from sources like Oura rings; and more. There are also collaborations that combine data pools to create broader AI applications.

    “Let’s say users have Spotify data, Reddit data, and fashion data,” Kazlauskas explains. “Usually, Spotify isn’t going to collaborate with those types of companies, and there’s actually regulation against that. But users can do it if they grant access, so these cross-platform datasets can be used to create really powerful models.”

    Vana has over 1 million users and over 20 live data DAOs. More than 300 additional data pools have been proposed by users on Vana’s system, and Kazlauskas says many will go into production this year.

    “I think there’s a lot of promise in generalized AI models, personalized medicine, and new consumer applications, because it’s tough to combine all that data or get access to it in the first place,” Kazlauskas says.

    The data pools are allowing groups of users to accomplish something even the most powerful tech companies struggle with today.

    “Today, big tech companies have built these data moats, so the best datasets aren’t available to anyone,” Kazlauskas says. “It’s a collective action problem, where my data on its own isn’t that valuable, but a data pool with tens of thousands or millions of people is really valuable. Vana allows those pools to be built. It’s a win-win: Users get to benefit from the rise of AI because they own the models. Then you don’t end up in scenario where you don’t have a single company controlling an all-powerful AI model. You get better technology, but everyone benefits.”

    Source: Read More 

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleMicrosoft turns on “reboot less” Hotpatch updates for Windows 11 Enterprise
    Next Article Gemini Pro 2.5 is one of only two AIs to crush all my coding tests – and it’s free

    Related Posts

    Artificial Intelligence

    Scaling Up Reinforcement Learning for Traffic Smoothing: A 100-AV Highway Deployment

    September 2, 2025
    Repurposing Protein Folding Models for Generation with Latent Diffusion
    Artificial Intelligence

    Repurposing Protein Folding Models for Generation with Latent Diffusion

    September 2, 2025
    Leave A Reply Cancel Reply

    For security, use of Google's reCAPTCHA service is required which is subject to the Google Privacy Policy and Terms of Use.

    Continue Reading

    This new browser won’t monetize your every move – how to try it

    News & Updates

    Microsoft CEO Satya Nadella claimed Google fumbled its AI opportunity — but DeepMind is already hiring for a post-AGI future

    News & Updates

    Windows 11 closing in on top spot as most used desktop OS

    Operating Systems

    Smashing Security podcast #418: Grid failures, Instagram scams, and Legal Aid leaks

    Development

    Highlights

    CVE-2025-26855 – Joomla Articles Calendar SQL Injection

    July 18, 2025

    CVE ID : CVE-2025-26855

    Published : July 18, 2025, 8:15 a.m. | 2 hours, 42 minutes ago

    Description : A SQL injection in Articles Calendar extension 1.0.0 – 1.0.1.0007 for Joomla allows attackers to execute arbitrary SQL commands.

    Severity: 0.0 | NA

    Visit the link for more details, such as CVSS details, affected products, timeline, and more…

    CVE-2025-48929 – TeleMessage Long-Lived Credential Authentication Bypass

    May 28, 2025

    Between Buzz and Reality: The CTEM Conversation We All Need

    June 24, 2025

    12-Year-Old Sudo Linux Vulnerability Enables Privilege Escalation to Root User

    July 3, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.