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metagenomics assembly” funded by the Research Council of Finland in the research group of University Lecturer Leena Salmela. We develop models, algorithms and data structures for high throughput sequencing data
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this project we will develop novel models for estimating the correctness of genome and metagenome assembly and algorithms and data structures for computing such correctness estimates. The Doctoral Researcher is
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The TrueScreen Research to Business (R2B) project at the University of Helsinki is seeking a talented and highly motivated Bioinformatician / Research Software Engineer or Postdoctoral Researcher
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genomic data from hundreds of thousands of individuals participating in Finnish biobanks. Our mission is to improve health by exploring mechanisms of health and disease, with the aim to develop new
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Grant, focusing on the development of novel deep learning tools to recommend reaction conditions for the synthesis of novel TRPA1 inhibitors. The project “A machine learning approach to computer assisted
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-quality research in the humanities and social sciences (including law, behavioural sciences and theology), to promote interaction between different academic fields, and to facilitate international and
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facilitate curiosity-driven, original research and interdisciplinary interaction between different fields of research. The working language of HCAS is English. The Helsinki Collegium for Advanced Studies
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. We will develop an isotope version of a process-based CH4 model and update the representation of different wetland types in the model using a data inversion approach. Additionally, we will analyze
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for different types of multivariate data, such as time series, spatial data, spatio-temporal data, functional data or tensor-valued observations. The work of the postdoctoral researcher will focus on developing
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, calibration, and the development of analysis tools and software. Our key focus areas are the physics of jets, top quarks, and EWSB, including the development of novel machine-learning methods for high-energy