BINANCE + DIN

♻️ You have 3 ways to earn with DIN :

🔸 Helps process information while earning rewards.

🔸 Add points in the Binance Web3 Wallet in collaboration with DIN.

🔸 Participating in the Binance Square campaign in collaboration with DIN.

If you are interested, I recommend reading the entire article 📖 ... let's first start by understanding what the project is about.

Data Processing + AI + Blockchain = DIN

This combination leverages technology to enhance data processing.

Contribution = Earn rewards

The smart contract determines the rewards for all participants considering the value contribution.

A higher quality contribution will yield a better reward

DIN is designed to empower everyone to cook data for AI and be rewarded.

Many Binance users had their first contact with DIN thanks to the collaboration with 🔶 Binance Web 3 Wallet.

More than 127,000 Binance users are participating and earning points.

• How to participate? :

🔸 Go to wallet

🔸Go to Web 3

🔸Select (Join Now)

• All content in this article is for educational purposes only 📖 .

• The information in this article was obtained from the official Din website 🌐.

This article is sponsored by :

🔸@DIN Data Intelligence Network

🔸@Binance Square Official

🔸@Binance Square

If you also want to participate, use the event # :

🔸 #DIN

🔸 #GODINDataForAI

🔸 #BinanceWeb3Airdrop

• At no time is investment recommended.

• It was advised to participate in the free activities.

🌐 DIN Architecture :

Basically consisting of 3 main phases regarding data processing :

🔸 Data Collectors 📊

🔸 Data Validators 📊

🔸 Data Vectorizers 📊

Participants will be rewarded according to their contribution to the network.

📊 Data Collectors :

The collected information is divided into 2 forms :

🔸 On-Chain Data :

Transactions

Wallet addresses

Smart contracts

🔸 Off-Chain Data :

Market sentiments

regulatory changes

Trends on social media

This strategy empowers a broad spectrum of users, from casual enthusiasts to professional analysts, in sectors such as crypto, medical, academic, and industrial.

• To add data is through :

🔸 Analysis

🔸 xData

This ensures access to actionable information.

📊 Data Validators :

To improve accuracy and reduce data manipulation risks, (SUM) is used.

S : Shared

U : Updatable

M : Models

📊 Data Vectorizers :

To improve the accuracy and scalability of models, vector conversion is performed.

🔸This means that :

Raw data is transformed into a structured format that AI models can efficiently process.

🖼️ In this image you can see the entire DIN protocol :

🔸 Data Collection: Collectors gather on-chain and off-chain data from various sources.

🔸 Validation Routing: Data is sent to selected validators based on their locally implemented models.

🔸 Verification: Validators employ computational resources to predict and determine the accuracy of the data.

🔸 Privacy Processing (Dataset): Validated data undergoes a privacy enhancement via the ZK processor.

🔸 Model Update: The relevant model is refined with the latest data and updated among validators.

🔸 Vector Conversion: Computing nodes transform validated data into vectors.

🔸 Privacy Processing (Vector): Vectors are processed through the ZK processor for privacy.

🔸 Data Finalization: The finalized dataset and vectors are stored in IPFS, making them accessible to third parties.