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Shedding Light on Candles That Burn a Bit Too Bright

Astrobites1y agoen
Read on aasnova.org

From the article

Astrobites reports on how standard candles might not be quite as standard as previously thought, and how a particular type of supernova is making a name for itself. The post Shedding Light on Candles That Burn a Bit Too Bright appeared first on AAS Nova .
Continue reading on AAS Nova

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