GTM-MQNC2Z4
Skip to main content
  1. Home >
  2. About Fujitsu >
  3. Resource Center >
  4. Publications >
  5. FUJITSU SCIENTIFIC & TECHNICAL JOURNAL >
  6. Archives>
  7. FSTJ: Cutting-Edge R&D: "Trust" in the Digital Era

Cutting-Edge R&D: "Trust" in the Digital Era


FSTJ 2020-1 Cover Image

Vol. 56, No. 1, 2020

Today, the acceleration of digitalization is making the connections among companies, individuals, businesses, and systems increasingly complex with the amount of generated data increasing at an explosive rate. As a result, it is becoming extremely difficult to verify the quality, authenticity, and qualification of all sorts of interconnected elements. To achieve trust in a digital era of highly dispersed and complex relationships, it is important to use ICT to simplify the verification mechanism.
This issue introduces digital technologies to provide our customers with an environment of trust, the latest technologies for continuously verifying the level of trust in ICT and people, and cutting-edge technologies essential to achieving trust in the digital era.

Japanese version: Magazine FUJITSU (Vol. 70, No. 4, September 2019)

ArticlesRelated Information

Related Information

"Trust" in the Digital Era

Role of Trust in Realizing a Digital Society

Initiatives for AI Ethics: Formulation of Fujitsu Group AI Commitment

Technologies for Improving Reliability of Personal Data Distribution Platforms to Realize Data-Driven Society

Scoring Technology to Guarantee the Reliability of People in a Connected World

"Trustworthy and Explainable AI" Achieved Through Knowledge Graphs and Social Implementation

Wide Learning Technology to Provide Trust Through Knowledge Discovery

Improving Reliability of Data Distribution Across Categories of Business and Industries with Chain Data Lineage

Integrated Biometric Authentication Technology to Support a Cashless Society

Dataffinic Computing: Data-Centric Architecture to Support Digital Trust

Highly Reliable Operation Technology for Wireless Networks to Achieve Cyber-Physical Systems

Inference Factor Identification Technology for Explaining Inference Result Made by Deep Tensor

Platform to Accelerate Utilization and R&D of AI Technologies

GTM-TTVHKKG