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Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. Changguang Huaxin: 200G EML chips are in customer verification stage

    Changguang Huaxin has announced that its 200G EML chips are currently undergoing customer verification, while its 100G EML chips are in continuous mass production and delivery. Separately, Chuangyuan Xinke has entered into a strategic cooperation agreement with Spacetime Daoyu, a commercial aerospace company under Geely Holding, to jointly develop satellite IoT technologies and establish a "NTN Technology Collaborative Innovation Laboratory." AI

  2. Chuangyuan Xinke: Signs Strategic Intent Cooperation Agreement with Spacetime Daoyu, a Commercial Aerospace Enterprise Under Geely Holding

    Chuangyuan Xinke has signed a strategic cooperation agreement with Spacetime Daoyu, a commercial aerospace company under Geely Holding. The partnership aims to deepen their collaboration in the satellite Internet of Things (IoT) sector. They plan to jointly establish a "NTN Technology Collaborative Innovation Laboratory" to focus on building testing systems, optimizing quality standards, developing cutting-edge technologies, and expanding into domestic and international markets. AI

  3. DRIFT: Joint Channel Estimation and Prediction Towards Pilotless 6G Non-Terrestrial Networks

    Researchers have developed a new AI-driven framework called DRIFT for predicting wireless channel responses in 6G non-terrestrial networks. This lightweight architecture aims to reduce pilot overhead by relying on data-driven processing after an initial pilot transmission. DRIFT's convolutional and LSTM variants are designed for low computational cost, making them suitable for power-constrained satellite implementations and achieving up to a 12% spectral efficiency gain. AI

    IMPACT Enables more efficient wireless communication in future satellite networks by reducing computational load.