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The section is dedicated to disseminating high-quality studies related to evolutionary robotics, and to consolidating and extending the community of researchers and practitioners.
'This section is currently undergoing a rescope to welcome the Robot Learning community to Frontiers in Robotics and AI. Check back soon for the finalized scope!'
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Robot Learning and Evolution welcomes submissions of the following article types: Brief Research Report, Correction, Data Report, Editorial, General Commentary, Hypothesis and Theory, Methods, Mini Review, Opinion, Original Research, Perspective, Policy and Practice Reviews, Review, Specialty Grand Challenge, Systematic Review and Technology and Code.
All manuscripts must be submitted directly to the section Robot Learning and Evolution, where they are peer-reviewed by the Associate and Review Editors of the specialty section.
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