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Data Sheet 1_Robust control of electrohydraulic soft robots.pdf
Опубликовано 2024“...The methods presented herein exploit linear system control theory as it applies to a nonlinear soft robotic system. ...”
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Family of Robust and Strongly Luminescent CuI-Based Hybrid Networks Made of Ionic and Dative Bonds
Опубликовано 2020“...The CuI-derived inorganic–organic hybrid compounds are considered as promising phosphors for the lighting industry. Herein, exploiting N-monoalkylated hexaminium salts, [R-HMTA]X (R = Me, Et, Pr, and propargyl; X = Cl and I), as multibridging ligands, we have designed and synthesized a unique class of one-dimensional and two-dimensional hybrid CuI-materials. ...”
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Data_Sheet_3_Novel Computational Approach to Predict Off-Target Interactions for Small Molecules.zip
Опубликовано 2020“...The approach described herein exploits a highly curated training set of >1 million compounds (tracking >20 million compound-structure activity relationship/SAR data points) with known in vitro activities derived from patents, journals, and publicly available databases. ...”
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Data_Sheet_1_Novel Computational Approach to Predict Off-Target Interactions for Small Molecules.CSV
Опубликовано 2020“...The approach described herein exploits a highly curated training set of >1 million compounds (tracking >20 million compound-structure activity relationship/SAR data points) with known in vitro activities derived from patents, journals, and publicly available databases. ...”
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Table_1_Novel Computational Approach to Predict Off-Target Interactions for Small Molecules.docx
Опубликовано 2020“...The approach described herein exploits a highly curated training set of >1 million compounds (tracking >20 million compound-structure activity relationship/SAR data points) with known in vitro activities derived from patents, journals, and publicly available databases. ...”
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Data_Sheet_2_Novel Computational Approach to Predict Off-Target Interactions for Small Molecules.zip
Опубликовано 2020“...The approach described herein exploits a highly curated training set of >1 million compounds (tracking >20 million compound-structure activity relationship/SAR data points) with known in vitro activities derived from patents, journals, and publicly available databases. ...”