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and Training– Refª LISBOA2030-FEDER-00777100 funded by operation nº 16594, Balcão dos Fundos, FEDER and FCT, is available under the following conditions: OBJECTIVES | FUNCTIONS Assessing embodied
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Commission (European Climate, Infrastructure and Environment Executive Agency) through Horizon Europe Programme, in the following conditions: RESEARCH FIELD: Civil Engineering or related fields. RECIPIENT
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solution; Activity 3 - Development of numerical prediction tools and models; Activity 4 - Parametric studies, analysis, and optimization of solutions; Activity 5 - Production of prototypes for experimental
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the following: Study and optimise microfluidic system and conditions to deliver nanoparticles (NPs) to the surfaces and study their interactions under different conditions; Analyse data from microscopy images and
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knowledge of such models.. V - Initial grant duration: 4 months V.I - Renewal Possibility: Non-renewable VI - Funding and financial conditions of the grant VI.I - Monthly grant amount (paid by bank transfer
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- ILAN VR, C645727867-00000066, financed by national funds through the Portuguese Republic and the EU through the PRR-Agenda Mobilizadora program, under the following conditions: Scientific area
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- Initial grant duration: 6 months V.I - Renewal Possibility: Possibily renewable VI - Funding and financial conditions of the grant VI.I - Monthly grant amount (paid by bank transfer at the end of each month
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therapeutic efficacy of the conjugates in TNBC cell models. Evaluate in vivo efficacy and safety in orthotopic murine TNBC models. Explore platform applicability to other cancers with similar intracellular
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of the economy, to the international dynamics of peripheralization, to the complexity of work as a structuring dimension of contemporary life, to the multidimensional and multiscale conditions of democracy and the
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the impact on the predictive quality of a given model that is expected by retraining/fine-tuning it using additional datasets, as well as on predicting the expected cost/latency of such retraining/fine-tuning