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"path": "/space/astronomy-space/tess-hidden-planet-candidates/",
"publishedAt": "2026-05-22T10:32:08.000Z",
"site": "https://www.zmescience.com",
"tags": [
"Astronomy",
"Astrophysics",
"astronomy",
"exoplanets",
"faint stars",
"gas giants",
"hot jupiter",
"machine learning",
"milky way",
"nasa",
"planet candidates",
"Princeton University",
"space telescope",
"TESS",
"transit method"
],
"textContent": "The planets were hiding in plain sight.",
"title": "Machine Learning Helps Astronomers Find 10,000 New Planet Candidates in Existing Data"
}