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development of analytical solutions, data analysis and machine learning. Candidates should have a demonstrated record of scientific publications in international journals and participation in conferences
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translation of analytical outputs into forms that can meaningfully support decision-making within food industry contexts. Objectives: Approaches for integrating information of different nature (e.g., real-time
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, environmental, and resource economics. Ideal candidates are those wishing to acquire research experience for a subsequent Ph.D. in Economics. Due to the short term appointment, applicants must have a Spanish tax
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the glycocalyx to promote infection. Despite their importance, mammalian glycocalyces remain the ‘dark matter’ of biology, understudied owing to the historical lack of preparative and analytical tools to probe
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the interplay between mutations, energetics, and evolutionary constraints, including epistatic effects. · Developing or applying machine learning approaches to predict or redesign frustration patterns in proteins
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/or Stata Experience with social media data scraping and analysis Experience with text analysis, sentiment analysis and online trend analysis Strong analytical and quantitative skills Excellent written
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, materials, biological, chemical biology, physical, theoretical, analytical, etc). Competitive candidates should have a Ph.D., an outstanding record of research accomplishments, an innovative future research
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, multilevel analysis). Knowledge in developing predictive and forecasting models in health or environmental research. Skills in machine learning or AI techniques for prediction of complex outcomes. Experience
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the Linux command line, bash scripts and HPC Desirable but not required/ Nice to have / Will have to learn Experience analysing several NGS applications as RNA-seq, WGS, WES, ATAC-seq, scRNA-seq Proven
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computing and decentralized intelligence where a swarm of nodes learns graph dependencies by effectively integrating the structure of distributed systems into neural network architecture. This approach