Indomobil Group Partners with Space Time to Launch Blockchain-Verified Education in Indonesia

TheNewsCryptoPublished on 2025-12-10Last updated on 2025-12-10

Abstract

Indomobil Group has partnered with the Space Time Foundation to launch a blockchain-based education initiative in Indonesia, aiming to provide verifiable credentials to over 50,000 students. The program uses Space and Time's SXT Chain to store course completion records, enabling students to easily validate their qualifications for employment or further studies. The native token SXT serves as the primary payment method, allowing direct transactions between students, parents, and schools to enhance transparency and financial inclusion for unbanked populations. The initiative eliminates intermediaries, ensures traceable transactions, and modernizes education access through blockchain technology, as highlighted by leaders from both organizations.

It has been announced that the Indonesian conglomerate Indomobil Group has formed a partnership with the Space Time Foundation in order to launch an initiative that will provide verifiable education to more than 50,000 students in Indonesia. For the purpose of storing evidence of course completion, the program makes use of SXT Chain, a blockchain platform created by Space and Time. This makes it possible for students to readily validate their credentials when applying for employment or pursuing further study.

In addition, the initiative uses SXT, which is the native token of Space and Time, as the main mode of payment, as said in a statement. The unbanked population of Indonesia, which has historically depended on intermediaries to convert and transfer payments to educational providers, is the target audience for this initiative, which is aimed to give further assistance.

It is possible for parents and kids to send SXT tokens directly to their respective schools, as an alternative to spending cash. The purpose of this simplified strategy is to make payments for education more dependable, more transparent, and more expedient, especially for those who are financially excluded.

Jusak Kertowidjojo, president director of Indomobil Group, underscored the significance of the initiative, stating:

“Indomobil has always believed in building long-term infrastructure that supports national development. Education is a critical part of that. Our partnership with Space and Time and MakeInfinite Labs allows us to lead the world in efficient, transparent, and verifiable education.”

The backend architecture of the program is provided by Space and Time. This technology indexes each and every transaction and ensures that all financial and educational data is immediately available and verifiable. This means that data becomes the only source of truth in a system in which payments are made without the involvement of middlemen. The implementation of this assures that each and every transaction can be independently tracked and confirmed, providing the openness and accountability that is necessary for the program to be scaled efficiently.

Nate Holiday, one of the co-founders of the Space and Time network, stated his excitement about the combination of forces:

“We are thrilled that Indomobil leverages Space and Time technology to modernize and expand access to education for thousands of students. Blockchain offers a faster, more transparent, and more inclusive alternative to traditional payment systems.”

The initiative not only presents a scalable approach for the provision of education, but it also solves the unbanked conundrum that is frequent in developing nations. This is accomplished by eliminating financial obstacles and assuring verifiability via the infrastructure of blockchain technology. Students will have the option to validate their qualifications and courses whenever and wherever they want, as well as get direct access to current education and financial systems.

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