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  • 5 ways to be a children’s books champion in 2026

    5 ways to be a children’s books champion in 2026

    January is filled with optimism for the year that lies ahead with many of us eager to set goals or resolutions. So, what’s in store for your 2026? Ruth Concannon from Children’s Books Ireland has some ideas…

    Last year,…

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  • DPM to co-chair China-Pakistan Strategic Dialogue in Beijing today – RADIO PAKISTAN

    1. DPM to co-chair China-Pakistan Strategic Dialogue in Beijing today  RADIO PAKISTAN
    2. Dar arives in Beijing to co-chair strategic dialogue with China  Dawn
    3. Islamabad and Beijing open strategic dialogue as Pakistan’s top diplomat begins China visit  

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  • Beach Basketball Opens 2026 With 74-66 Win Over Cal Poly

    Beach Basketball Opens 2026 With 74-66 Win Over Cal Poly

    LONG BEACH, Calif. – Long Beach State dominated much of the early action as Men’s Basketball returned to Big West play, opening up a 25-point lead over Cal Poly on the way to a 74-66 home win played in the Gold Mine on Saturday.
     
    Sophomore

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  • Men’s Basketball Topples No. 22 Florida

    Men’s Basketball Topples No. 22 Florida

    The Mizzou men’s basketball team opened Southeastern Conference play with a win over No. 22 Florida on Saturday night at Mizzou Arena. With the victory, the Tigers improve to 11-3 and 1-0 in SEC action, while the nationally-ranked Gators fall to…

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  • Bangladesh will not play T20 World Cup matches in India, decision taken in context of ‘extreme communal policy’ of BCCI – Dawn

    1. Bangladesh will not play T20 World Cup matches in India, decision taken in context of ‘extreme communal policy’ of BCCI  Dawn
    2. Bangladesh look to move T20 World Cup matches from India amid Mustafizur row  ESPNcricinfo
    3. T20 World Cup 2026:…

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  • Type 2 diabetes physically changes the human heart, study finds

    Type 2 diabetes physically changes the human heart, study finds

    Researchers at the University of Sydney have uncovered new evidence showing that type 2 diabetes directly changes the heart’s structure and how it produces energy. These findings help explain why people living with diabetes face a much higher…

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  • 2025 Winners and losers: OnePlus

    2025 Winners and losers: OnePlus

    2025 has been a busy year for OnePlus, with close to a dozen different launches across the globe in various categories. However, it was also one of the more controversial years for the brand, and signaled a change in direction for the…

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  • Bangladesh to demand T20 World Cup matches be moved outside India – France 24

    1. Bangladesh to demand T20 World Cup matches be moved outside India  France 24
    2. Bangladesh look to move T20 World Cup matches from India amid Mustafizur row  ESPNcricinfo
    3. ‘Days of slavery are over’: Bangladesh to demand its T20 World Cup matches…

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