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Alessandro Lotti
Researcher at IRSA
Publications - 5
Citations - 127
Alessandro Lotti is an academic researcher from IRSA. The author has contributed to research in topics: Metagenomics & Lineage (genetic). The author has an hindex of 1, co-authored 1 publications receiving 50 citations.
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Journal ArticleDOI
Biosynthetic potential of the global ocean microbiome
Lucas Paoli,Hans-Joachim Ruscheweyh,Clarissa C. Forneris,Florian Hubrich,Satria A. Kautsar,Agneya Bhushan,Alessandro Lotti,Quentin Clayssen,Guillem Salazar,Alessio Milanese,Charlotte I. Carlström,Chrysa Papadopoulou,Dan Gehrig,Mikhail Karasikov,Harun Mustafa,Martin Larralde,Laura M. Carroll,Pablo Sánchez,Ahmed A. Zayed,Dylan R. Cronin,Silvia G. Acinas,Peer Bork,Chris Bowler,Tom O. Delmont,Josep M. Gasol,Alvar D. Gossert,André Kahles,Matthew B. Sullivan,Patrick Wincker,Georg Zeller,Serina L. Robinson,Jörn Piel,Shinichi Sunagawa +32 more
TL;DR: This paper investigated the diversity and novelty of biosynthetic gene clusters in the ocean by integrating around 10,000 microbial genomes from cultivated and single cells with more than 25,000 newly reconstructed draft genomes from more than 1,000 seawater samples.
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Nitrogen removal in subsurface water by narrow buffer strips in the intensive farming landscape of the Po River watershed, Italy
TL;DR: In this article, the nitrogen buffering capacities of two narrow riparian strips along irrigation ditches located in a typical flat agricultural watershed of the alluvial plain of the River Po (Northern Italy) were evaluated.
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Deep Learning for Real Time Satellite Pose Estimation on Low Power Edge TPU
TL;DR: This paper proposes a pose estimation software exploiting neural network architectures which can be scaled to different accuracy-latency trade-offs and designed to be compatible with Edge Tensor Processing Units to show how low power machine learning accelerators could enable Artificial Intelligence exploitation in space.
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Distribution and diversity of ‘Tectomicrobia’, a deep-branching uncultivated bacterial lineage harboring rich producers of bioactive metabolites
Eike E. Peters,Jackson K. B. Cahn,Alessandro Lotti,Asimenia Gavriilidou,Ursula A. E. Steffens,Catarina Isabel Mateus Loureiro,Michelle Schorn,Paco Cárdenas,Phillip Crews,Detmer Sipkema,Jörn Piel +10 more
TL;DR: The authors analyzed the phylogenetic structure and environmental distribution of this as-yet sparsely populated phylum-like lineage and revealed that 'Entotheonella' and other 'Tectomicrobia' are not restricted to marine habitats but widely distributed among terrestrial locations.
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Deep Learning for Real-Time Satellite Pose Estimation on Tensor Processing Units
TL;DR: In this paper , advancements in spacecraft and tactical and strategic missile systems, including subsystem design and application, mission design and analysis, materials and structures, developments in space sciences, space processing and manufacturing, space operations, and applications of space technologies to other fields.