logo

Top 5 Decentralized Data Collection Providers In 2025 For AI Business

By: forbes - crypto & blockchain|2025/05/02 12:00:33
Adam Selipsky CEO of Amazon Web Service (AWS), speaking at the Keynote: Delivering a new World, ... More Barcelona, Spain, on March 01 2022. (Photo by Joan Cros/NurPhoto via Getty Images) The world runs on data , and businesses increasingly rely on it. However, traditional data sourcing methods often present challenges related to diversity, transparency, privacy, and cost. This article reviews the current state of decentralized data collection and outlines key steps for wisely selecting a decentralized data provider—along with a shortlist of top options to consider. From The Dominance Of Centralization To Decentralization Made Possible Traditionally, centralized data collection involves gathering data from various sources—such as apps, devices, or websites—and sending it to a single central server or database controlled by one organization. This data is collected via APIs, sensors, tracking tools, or manual input. The biggest bottleneck of this model for AI’s future and for businesses is the inability to collect truly “global” and “diverse” data from different regions and cultures. Decentralized data collection addresses this by leveraging blockchain technology. It enables small-scale cross-border payments which encourages global users to contribute data voluntarily in exchange for incentives—something that centralized or Web2 platforms cannot achieve. Another key aspect is transparency. Centralized AI and data collection are often criticized for operating as " black boxes," lacking transparency and accountability. People have no idea how and where they collect these data for their business. Furthermore, it’s difficult to verify whether data is collected lawfully and ethically. In contrast, decentralized data collection enhances transparency by recording the data collection process on blockchain and storing data across multiple independent nodes rather than under a single authority. This blockchain-powered structure allows users to trace how and where their data is used efficiently, reduces the risk of hidden manipulation, and ensures that no single party can alter or monopolize the data without broad consensus. As a result, decentralized solutions are emerging as a strong alternative for businesses seeking more robust data strategies. By leveraging blockchain technology, decentralized data collection enhances both data diversity and verifiability, opening access to new, previously untapped data sources. Key Decentralized Data Platforms For Business Businesses interested in exploring decentralized data collection should: Assess their data requirements: Determine the specific types of data needed and their priorities regarding sourcing and privacy. Evaluate platform functionalities: Research the capabilities and technologies of the identified platforms to determine their suitability. Consider integration strategies: Plan how decentralized data sources can be incorporated into existing business processes. Monitor industry developments: The decentralized data landscape is evolving, requiring ongoing awareness of new solutions and trends. Below are five noteworthy platforms operating in the decentralized data collection space, outlining their core functionalities and potential business applications. ‘NYT Mini’ Clues And Answers For Friday, May 2 Protestors Rush Stage During Charles Koch’s Award Speech In D.C. Trump Signs Executive Order To Cut Federal Funding For NPR And PBS 1. Ocean Protocol Core offering: Decentralized data marketplace for AI and ML datasets. Strengths: Allows publishing and monetizing datasets securely. Data remains with the provider, enabling private computation. Strong community and enterprise traction. Best for: Anyone looking to buy/sell datasets or run compute-to-data workloads. Example: access a specific medical imaging dataset to train a diagnostic AI, with the data provider maintaining control over the data itself. Website: https://oceanprotocol.com/ 2. Sahara AI Core offering: Decentralized knowledge agent platform and AI data marketplace. Strengths: Focused on building AI agents that interact with user-contributed data. Offers incentives for users to contribute knowledge and interact with AI. Strong emphasis on sovereign data ownership and fine-tuning local models. Best for: AI developers looking to build autonomous agents trained on community-owned or enterprise-specific knowledge bases. Example: Collect a large and diverse dataset of user reviews to train a sentiment analysis AI agent. Website: https://oceanprotocol.com/ 3. OORT DataHub Core Offering: Decentralized data collection and labeling solution for AI. Strengths: A large number of global data contributors. Full stack solution for obtaining high-quality AI-ready data: data collection and labeling, storage and computing (e.g., data cleaning and preprocessing). Best For: Enterprises needing diverse, real-world, and structured datasets to train or fine-tune AI models. Example: Collect a 50-language and high-quality dataset for a specialized natural language processing AI. Website: https://www.oortech.com/oort-datahub-b2b 4. VANA Core offering: Decentralized platform for users to control, monetize, and pool personal data for AI. Strengths: Users can own and monetize their personal datasets (social media, fitness, etc.). Supports data pooling to create community-driven datasets for AI. Built-in token incentives for users who share data. Best for: Building AI models with ethically sourced, user-consented personal data, especially in social, health, and lifestyle domains. Example: Users can leverage Vana to own, control, and monetize their personal data by contributing it to community-led AI projects Website: https://www.vana.com 5. Streamr Core offering: Real-time data network for decentralized data streams. Strengths: Focus on real-time streaming data (e.g., IoT, mobility, sensor data). Built on a peer-to-peer publish/subscribe protocol. Scales well for time-series data needs. Best for: AI systems that rely on live data feeds like autonomous vehicles, smart cities, or trading bots. Example: If your AI business focuses on predicting traffic patterns, you could use Streamr to access real-time data feeds from connected vehicles and sensors. Website: https://streamr.network/ Data Is The New Frontier As AI continues to scale, the true bottleneck won’t be algorithms—it will be data. Success in the coming wave of AI innovation hinges on timely access to high-quality, well-labeled, and diverse datasets. Yet, efficient data collection infrastructure remains in its infancy. Forward-thinking organizations that invest in scalable, ethical, and AI-ready decentralized data collection solutions now will be the ones leading the industry tomorrow. The age of intelligent data sourcing isn't a trend—it's the next mainstream. Disclaimer: I am the founder & CEO of OORT
One Of The Best Zombie Movies Ever Made Lands On Netflix Today
PepeX presale raises $1.83 million as Solana memecoins rally

You may also like

Share
copy

Gainers

Latest Crypto News

02:16

Monad Public Sale Successfully Completed, Raising $269 Million in Total, Oversubscribed by 144%

01:46

Port3 was hacked this morning using a vulnerability to carry out a mint-and-sell attack, resulting in a cumulative price drop of over 82% as the exploited tokens were sold and burned.

01:16

CoinKarma: BTC Shows "High Volume Turnover, Volume Surge Bottoming Out" Pattern, a Typical Short-term Bottom Signal

00:46

Placeholder VC Partner: Market May Be Ready for a Rebound

16:16

The probability of a 25 basis point interest rate cut by the Federal Reserve in December is currently at 71%.

Read more
Community
icon
icon
icon
icon
icon
icon
icon
icon

Customer Support@weikecs

Business Cooperation@weikecs

Quant Trading & MM[email protected]

VIP Services[email protected]