Topics In Demand
Notification
New

No notification found.

Blockchain & Data Science — The Future Of Technology
Blockchain & Data Science — The Future Of Technology

September 23, 2022

159

0

 Data science and blockchain technology are two of the most innovative and disruptive technologies in use today. Data science examines and explains unprocessed data to comprehend how a system functions. Blockchain technology is a cutting-edge way to track transactions and store financial data. These two ideas have been combined to create amazing innovations in various fields, including finance and software development.

 

Data Science and Blockchain Technology

 

Data Science is one of the fields of technology that is expanding quickly. The many scientific subfields that are constantly changing include descriptive analytics, diagnostic analytics, and predictive analytics. The objective is to obtain insights from already collected data, whether structured or not.

 

A decentralized digital ledger that can store any data is called a blockchain. With the help of blockchain technology, many users can share an encrypted database without a third party controlling it. This makes it possible to store information about transactions between parties in a way that is impervious to tampering.

 

Integration of Data Science and Blockchain Technology

 

The basis of blockchain technology is data. In order to address several major industry pain points, data is also essential. For instance, we must examine patterns and trends in previous user behavior and correlate them with current activities to increase transparency and reduce fraud.

 

Both have had a profound impact on the modern world. For years, data scientists have been researching the use of the blockchain for data storage. The best-known illustration of this is Factom, which most recently collaborated with Microsoft on the Cocoa Framework project. As a result, businesses can store sensitive data on the blockchain at the enterprise level.

 

  • Data science in blockchain technology makes sure that transactions are secure and unchangeable. It supports keeping blockchain transactions secure and authentic. Additionally, it can be used to guarantee prompt transaction execution.

 

  • By using data science, any suspicious activity on the blockchain network can be found. It can also classify different transactions according to their characteristics, making data collection and analysis easier. This would make it simpler for businesses to locate criminals who use blockchain networks for nefarious activities like money laundering or financing terrorism.

 

  • Businesses utilizing blockchain technology's decentralized features for authentication or record-keeping can reap many advantages. When it comes to analyzing the data kept on a blockchain network also poses some difficulties. Because blockchains are distributed, there aren't any centralized servers where users can run queries or run statistical analyses on the data they store. Researchers have created novel methods for performing analytics on blockchains by integrating ideas from disciplines like artificial intelligence (AI), machine learning (ML), and deep learning in order to get around these restrictions (DL).

 

Blockchain Uses Cases in Data Science

 

  • Data Integrity:

The accuracy of the stored data guarantees its reliability because it underwent a thorough verification process. The blockchain network also provides transparency because it allows tracking activities and transactions. The majority of the time, data integrity is protected by automatically storing and verifying a data block's transactions and origin on the blockchain.

 

  • Ensures high-quality data and accuracy:

Both private and public data are present in every element of the digital ledger used by the blockchain. Before the data is incorporated into various blocks at the entry point, it is cross-checked and analyzed. There is no simpler way to verify data than this.

 

  • Allows Data Traceability:

The blockchain makes it simpler for individuals to establish partnerships with one another. If a published account, for instance, does not adequately describe any technique, any peer can examine the entire procedure and determine how the results were obtained.

 

  • Real-time analysis:

Analyzing real-time data is very difficult. Keeping an eye out for changes in real-time is the best method for spotting con artists. Due to the distributed nature of blockchain, businesses can identify any discrepancies in their databases right away.

 

Businesses that require extensive real-time data analysis can benefit from a blockchain-enabled solution. Blockchain technology allows banks and other organizations to quickly detect data changes and take prompt action, such as blocking a suspicious transaction or keeping an eye on abnormal behavior.

 

  • Making predictions (Predictive analysis) 

Predictive analytics is one of the simplest methods. Blockchain data can be analyzed, just like other types of data, to gain important insights into behaviors and patterns and to foretell future events. Blockchain also provides organized data that has been gathered from people or devices.

 

Data scientists use predictive analysis to precisely predict social events, such as customer lifetime value, organizational churn rates, and consumer preferences. Because of this, almost any occurrence, including social attitudes and investment signals, can be predicted with the right data analysis.

 

Conclusion

 

Despite being relatively young, both industries are expanding quickly hand in hand.

Together, these technologies can help many businesses examine blockchain networks for security, learn more about their users, and start making better decisions about the technology they develop. In conclusion, data science has many potential uses in this brave new world of blockchain technology, and we eagerly anticipate what the future will bring!

 

 

  


That the contents of third-party articles/blogs published here on the website, and the interpretation of all information in the article/blogs such as data, maps, numbers, opinions etc. displayed in the article/blogs and views or the opinions expressed within the content are solely of the author's; and do not reflect the opinions and beliefs of NASSCOM or its affiliates in any manner. NASSCOM does not take any liability w.r.t. content in any manner and will not be liable in any manner whatsoever for any kind of liability arising out of any act, error or omission. The contents of third-party article/blogs published, are provided solely as convenience; and the presence of these articles/blogs should not, under any circumstances, be considered as an endorsement of the contents by NASSCOM in any manner; and if you chose to access these articles/blogs , you do so at your own risk.


© Copyright nasscom. All Rights Reserved.