AI Oracle Test Update

Summary by AI BETAClose X

Quantum Blockchain Technologies Plc has successfully generated the first AI Oracles trained on data from an ASIC manufacturer's mining rig, a key milestone for its Method C development. While the data quality is suitable for AI training, its significant differences from previous Bitaxe Gamma platform data required substantial R&D to retarget AI learning objectives for the new SHA-256 architecture. The company is now focused on improving predictive performance and evaluating a more compact AI Oracle implementation before commencing live testing on the ASIC manufacturer's Mining Development Kit. A technical review meeting is scheduled to assess progress and agree on the next project stages, including an updated timeline.

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8 July 2026

 

 

Quantum Blockchain Technologies Plc
("QBT" or "the Company")

 

 

Update on Method C AI Oracle Development for the ASIC Manufacturer's Mining Rig

 

Quantum Blockchain Technologies plc (AIM: QBT), the AIM-listed investment company focused principally on a research and development programme within blockchain technology, provides a progress update on the development of its Method C AI Oracle software for the ASIC manufacturer's mining rig and Mining Development Kit (“MDK”).

 

Further to the Company's announcement of 8 June 2026, QBT is pleased to confirm that the first versions of the AI Oracle have now been successfully generated using the structured operational dataset collected from the ASIC manufacturer's mining rig.

 

As previously announced, the generation of this dataset represented a key milestone, enabling the Company's AI learning models to be trained using data produced directly by the ASIC manufacturer's mining platform. Following the successful generation of the initial AI Oracles, the Company's research team at the University of Milan has been focusing its efforts on refining the learning process to account for the unique technical characteristics of the new ASIC architecture.

 

Although the data generated by the ASIC manufacturer's mining rig are of the quality required for AI training, they differ significantly from the operational data previously generated by the Company using the Bitaxe Gamma platform based on the Bitmain BM1370 ASIC, both in structure and in their statistical characteristics. As a consequence, a substantial part of the recent R&D effort has been dedicated to retargeting the learning objectives of the AI models, enabling the AI Oracle to exploit the distinctive computational behaviour of the ASIC manufacturer's SHA-256 architecture.

 

The Company is pleased to report that this work has resulted in the successful generation of the first AI Oracles specifically trained on the ASIC manufacturer's platform. The R&D team is now focused on further improving its predictive performance before commencing live testing.

 

As part of this optimisation programme, the Company has also developed and tested a more compact implementation of the AI Oracle alongside the original version. Both implementations are currently being evaluated to determine the most effective balance between predictive capability, computational efficiency and deployment characteristics.

 

Once the performance of the AI Oracle has reached a threshold determined to be satisfactory by the Company's R&D team, it will be deployed onto the ASIC manufacturer's MDK platform for live testing under operating conditions connected to a live mining pool.

 

In parallel, the Company and the ASIC manufacturer's engineering team are scheduling a technical review meeting to assess the progress achieved to date and to agree the next stages of the development programme. During this meeting, an updated project timeline will be presented, reflecting the completion of the learning model retargeting phase and the remaining activities leading to live testing.

 

 

Francesco Gardin, CEO and Executive Chairman of QBT, commented: "The successful generation of the first AI Oracles trained directly on data from the ASIC manufacturer's mining rig represents another important milestone in the development of Method C.

 

While we anticipated that adapting our AI learning framework to a new ASIC architecture would require additional work, the extent of the differences between the operational characteristics of the manufacturer's ASIC and those of the BM1370 platform has meant that a significant amount of effort was devoted to redefining the learning objectives of our AI models. This work has now been successfully completed, allowing us to generate the first AI Oracles specifically optimised for this architecture.

 

We are now concentrating on further improving the AI Oracle's performance and have also evaluated a more compact implementation alongside the original version. Once the performance reaches our target levels, we will commence live testing on the manufacturer's Mining Development Kit connected to a commercial mining pool.

 

We continue to enjoy a close and constructive collaboration with the ASIC manufacturer's engineering team and we look forward to presenting the next phase of the project following our forthcoming technical review meeting."

 

-ends-

 

For further information please contact:

 

Quantum Blockchain Technologies Plc     +39 335 296573

Francesco Gardin, CEO and Executive Chairman

 

SP Angel Corporate Finance   (Nominated Adviser & Broker)   +44 (0) 20 3470 0470

Caroline Rowe / Devik Mehta

 

Leander       (Financial PR)   +44 (0) 7795 168 157

Christian Taylor-Wilkinson

 

 

About Quantum Blockchain Technologies Plc

QBT (AIM: QBT) is a London Stock Exchange AIM listed Research & Development and investing company focused on an intensive R&D programme to disrupt the Blockchain Technologies sector which includes, cryptocurrency mining and other advanced blockchain applications. The primary goal of the R&D programme is to develop Bitcoin mining tools and techniques, via its technology-driven approach, which the Company believes will significantly outperform existing market practices.

 




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