Degree: Master
This course deals with the basics of electrochemistry. It builds on the preceeding course Advanced methods in electroanalytical chemistry I. The students should gain an advanced understanding of theory and practice of modern electroanalytical techniques, applications, and possible combinations with other methods like e.g. spectroscopic methods. Faculty of Chemistry and Biochemistry RUB main campus Advanced knowledge of basic electrochemistry Week1: Introduction Week2: followed by Week3 to the Final Week J. Masa, N. Plumeré, K. Tschulik, E. Ventosa, W. Schuhmann ~ 40 Students 5 ECTS Intended for Semester 2 Lecture and exercise Every summer semester 30 – 45 min end-of-term oral exam anjana.devi@rub.de https://www.chemie.ruhr-uni-bochum.de/imperia/md/content/chemie/studium/modulhandbuch_chemie_20.02.2018.pdf#page=81
Activation of small molecules – how to mimic enzymesKey enzymes for the transformation/generation of H2, CO2, CO, O2, H2O, CH4 are presented. Based on literature examples, detailed information on how to mimic such enzymes are given. Basic ideas and up-to-date literature examples are presented to show problems and possible solutions on how to active such small molecules. Students acquire a broad overview and in-depth knowledge on mimicking natural enzymes using chemical synthesis. Faculty of Chemistry and Biochemistry Knowledge of basic inorganic coordination chemistry. U.-P. Apfel ~ 20 Students 5 ECTS Intended for semester 1 / 3 Lecture and exercise Every summer term Written exam anjana.devi@rub.de https://www.chemie.ruhr-uni-bochum.de/imperia/md/content/chemie/studium/modulhandbuch_chemie_20.02.2018.pdf#page=90
Materials Properties (lecture series)The detailed contents of this particular course will be composed from selected research areas. The purpose of this module is to familiarize students with important examples of different materials classes, particularly in view of their functional properties, and characterization methods useful for elucidating their structure and optimizing their function in various applications. Faculty of Chemistry and Biochemistry Basic knowledge of general and inorganic chemistry; interest in functional materials. R. Beranek, A. Devi, R. A. Fischer, S. Henke ~ 30 Students 5 ECTS Intended for Semester 2 / 4 a series of lectures, guest lectures, colloquia Every summer semester Written exam anjana.devi@rub.de https://www.chemie.ruhr-uni-bochum.de/imperia/md/content/chemie/studium/modulhandbuch_chemie_20.02.2018.pdf#page=91
Crystal Engineering – Chemistry beyond the moleculeThe lecture gives an overview of the Crystal Engineering of small molecules. Students acquire a broad overview on Crystal Engineering of small molecules Faculty of Chemistry and Biochemistry RUB main campus Knowledge of basic methods for inorganic and organic chemistry Week1: Introduction Week2: followed by Week3 to the Final Week K. Merz ~ 20 Students 5 ECTS Intended for semester 1 / 3 Lecture (and exercise) Every sommer semester a. Passing the written exam b. oral presentation of a current published article in the field of Crystal Engineering anjana.devi@rub.de https://www.chemie.ruhr-uni-bochum.de/imperia/md/content/chemie/studium/modulhandbuch_chemie_20.02.2018.pdf#page=93
Biochemistry IV – Biochemistry of Membrane ReceptorsStudents will get an overview of the different membrane receptors and ion channels, their structure-function relationships and the intracellular signal transduction pathways with which these receptors are connected. Another focus is to understand the interplay between the different signal transduction pathways and the regulatory principles that govern these pathways. Students will gain overview knowledge, an extended understanding of certain interactions and their principles and basic concepts of biochemistry should be learned and understood. Students will understand the far-reaching implications that signal transduction pathways have for cell physiology and the organism as a whole. Faculty of Chemistry and Biochemistry RUB main campus Familiarity with the contents of the relevant Bachelor level course (e.g. Biochemistry 0, I, II, and III of RUB) Week1: Introduction Week2: followed by Week3 to the Final Week Michael Hollmann, Rolf Heumann ~45 Students 7 ECTS Intended for Semester 2 Lecture Every summer semester end-of-term exam anjana.devi@rub.de https://www.chemie.ruhr-uni-bochum.de/imperia/md/content/chemie/studium/modulhandbuch_chemie_20.02.2018.pdf#page=122 ff.
Inverse problem and optimisationThis course focuses on formulating signal and image processing problems as convex optimization problems, analyzing their properties (e.g. existence and uniqueness of solutions) and designing efficient algorithms to solve them numerically. We aim at giving students the background and skills to formulate problems and use appropriate algorithms on their own applications.
Syllabus: * Convex optimization: existence and uniqueness of solutions, subdifferential and gradient, constraints and indicator functions, monotone inclusions, nonexpansive operators and fixed point algorithms, duality, proximal operator, splitting algorithms. * From estimation to optimization: formulating priors and constraints, regularity and parsimony, Bayesian interpretation.
* Inverse problems: well- and ill-posed problems, data fidelity and regularization, study of signal and image recovery problems.
The objective is to introduce the concepts of convex optimization and applications to inverse problems. Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique This course focuses on formulating signal and image processing problems as convex optimization problems, analyzing their properties (e.g. existence and uniqueness of solutions) and designing efficient algorithms to solve them numerically. We aim at giving students the background and skills to formulate problems and use appropriate algorithms on their own applications.
Syllabus:
* Convex optimization: existence and uniqueness of solutions, subdifferential and gradient, constraints and indicator functions, monotone inclusions, nonexpansive operators and fixed point algorithms, duality, proximal operator, splitting algorithms.
* From estimation to optimization: formulating priors and constraints, regularity and parsimony, Bayesian interpretation.
* Inverse problems: well- and ill-posed problems, data fidelity and regularization, study of signal and image recovery problems. basic analysis and linear algebra Laurent Condat 2 2nd year of master Lecture Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Lab work report and written exam international.cic_tsukuba@grenoble-inp.fr
Part I : in-orbit remote sensing of planets
Introduction : optical sensors for planetary exploration,
correcting artifacts on images and spectra using linear transforms : quality improvement,
statistical inference (SIR) and bayesian methods for inverting physical models applied to analysing images,
optimisation problems for generating digital elevation models.
Part II : telescopic imagery of the Universe
Image formation in astronomy,
High contrast imaging,
Aperture synthesis imaging,
image reconstruction.
http://phelma.grenoble-inp.fr/en/studies/image-and-signal-processing-apllications-and-processing-astrophysical-and-geophysical-sciences-wpmtisp7 This course presents advanced numerical methods and algorithms for the restoration/analysis of planetary and astrophysical data. It is not intended as a comprehensive courses on the discipline but as the presentation of some key techniques. It is intended to convey a multi-disciplinary view of the image exploitation problem in astrophysics. Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique Part I : in-orbit remote sensing of planets
Introduction : optical sensors for planetary exploration,
correcting artifacts on images and spectra using linear transforms : quality improvement,
statistical inference (SIR) and bayesian methods for inverting physical models applied to analysing images,
optimisation problems for generating digital elevation models.
Part II : telescopic imagery of the Universe
Image formation in astronomy,
High contrast imaging,
Aperture synthesis imaging,
image reconstruction. Basics of linear transforms (PCA), optimization/estimation methods, and Bayesian inference. Sylvain DOUTE 2 2nd year of master Lecture Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Final exam international.cic_tsukuba@grenoble-inp.fr
The core of the course will focus on the following aspects:
– color theory, interaction between light an matter
– spectral unmixing with linear and non linear mixing models
– dimension reduction and sparse representations
– classification of hyperspectral data
– anomaly detection
– high performance computing
The course will also include basic notions of physics and vision, which are important to understand and take into account when designing an algorithm (for instance, spectral unmixing is a source separation problem, but not all source separation techniques are suited to this problem).
http://phelma.grenoble-inp.fr/en/studies/multi-and-hyperspectral-methods-in-image-processing-wpmtmhm7 Multispectral imaging consists in acquiring several images of the same scene using tens of narrow (e.g. 10 nm) and contiguous spectral bands (e.g. higher than 100 nm) in the visible range (380-780 nm). This enables to characterize objects by their color appearance or by their spectral reflectance function and to study the influence of lighting conditions, viewing geometry, sensor sensibility and material properties on color appearance. This course will cover the main issues related to the acquisition, the processing and the visualization of multispectral images. A variety of study cases (e.g. food industry, medical imaging, automotive industry, cultural heritage) will illustrate this course.
Refining the concept, hyperspectral imaging, also called imaging spectroscopy, consists in acquiring simultaneously hundreds of images of the same scene using hundreds of narrow and contiguous spectral bands. This enables a fine description of the materials that are observed. This field is blooming in a number of applications, from planetary exploration to material sciences in industry, from quality control to astrophysics, from biomedical imaging to airborne and satellite remote sensing. This course will cover the main issues related to the signal and image processing challenges raised by these data and cover the whole chain, from basic notions in instrumentations to a variety of applications (the applications being addressed during the lab sessions). Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique The core of the course will focus on the following aspects:
color theory, interaction between light an matter
spectral unmixing with linear and non linear mixing models
dimension reduction and sparse representations
classification of hyperspectral data
anomaly detection
high performance computing
The course will also include basic notions of physics and vision, which are important to understand and take into account when designing an algorithm (for instance, spectral unmixing is a source separation problem, but not all source separation techniques are suited to this problem). Basics in digital signal and image processing. Jocelyn Chanussot 2 2nd year of master Lecture Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Final exam international.cic_tsukuba@grenoble-inp.fr
Introduction to the statistical learning theory and prediction (regression/classification)
* Review of Models/Algorithms for supervised/unsupervised learning
* Illustration de ces algorithmes sur différents jeux de données on different dataset
(intelligence artificielle, Bioinformatics, vision, etc …)
http://phelma.grenoble-inp.fr/en/studies/5pmsast6-machine-statistical-learning-wpmbdas9 Introduction to the statistical learning theory and prediction (regression/classification)
Review of Models/Algorithms for supervised/unsupervised learning
Illustration of these algorithms on different dataset
(Artificial Intelligence, Bioinformatics, vision, etc …) Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique * General introduction to the statistical learning theory and prediction (regression/classification)
* Generative approaches: Gaussian discriminant analysis, naïve Bayes hypothesis
* Discriminative approaches: logistic regression
* Prototype approaches: support vector machines (SVM)
* Unsupervised classification (kmeans and mixture model)
* Dictionnary learning / Sparse reconstruction
* Source separation Basic elements of probability/statistics, filtering Florent Chatelain 3 2nd year of master Lecture Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Written exam international.cic_tsukuba@grenoble-inp.fr
* Digital images and representations
* Image quality improvment
* Image restauration and filtering
* Contours extraction
* Image segmentation
* Visual perception
* Colour images
3 lab sessions: 2x3h to illustrate some basic image processing methods + 1x3h to study an iris recognition algorithm
http://phelma.grenoble-inp.fr/en/studies/image-processing-first-level-5pmbipb8 Introduction to the basis techniques of image processing Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique Numerical images and representations
Image improvement
Image restoration and filtering
Contour extraction
Threshold, segmentation and classification
Visual perception
Digital color images Basic notions of signal processing
Basic notions of Matlab programming Alice Caplier 4 1st year of master Lecture Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Continuous assessment international.cic_tsukuba@grenoble-inp.fr
Aspects covered in class will include:
– pronunciation, intonation, voice projection, body language
– language work including: general and specialised vocabulary in context; use of appropriate tenses, connectors and register in oral & written discourse
– adequate use of professional presentation tools for slide and poster design
– insights into the history of research and the development of technologies (and their presentation based on scientific sources)
– listening-comprehension, note-taking and abstract writing practice
– ethical considerations in research
http://phelma.grenoble-inp.fr/en/studies/english-masters-ii-wpmcang2 This course description applies to several M2R programmes. Our aim will be:
– to improve oral/written comprehension and speaking skills through regular practice
– to master professional presentation tools (using adequately designed slides and posters) and discuss research findings using clear, accurate language
– to improve note-taking and reporting skills, to be able to structure and write-up an abstract
– to work as a team on joint projects
– to learn to convince others of the value of one’s research interests and to answer questions constructively, taking into account the specificity of once’s audience
– to understand the value of sharing a joint technical and scientific culture in a multicultural context Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique Aspects covered in class will include:
– pronunciation, intonation, voice projection, body language
– language work including: general and specialised vocabulary in context; use of appropriate tenses, connectors and register in oral & written discourse
– adequate use of professional presentation tools for slide and poster design
– insights into the history of research and the development of technologies (and their presentation based on scientific sources)
– listening-comprehension, note-taking and abstract writing practice
– ethical considerations in research Minimum entrance level: B1
B2 level required to obtain the grade of Master
All students will take the Bulats test at the end of the semester to certify their B2 level Laurence Pierret, Veronique Beguin 2 2nd year of master Tutoring Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Continuous assessment international.cic_tsukuba@grenoble-inp.fr
* Introduction
* Bayesian estimators
* Priori choice
* Approximate Bayesian inference
** Deterministic approximation methods
** Stochastic approximation methods
* Case study: Bayesian inference for speech recognition
http://phelma.grenoble-inp.fr/en/studies/bayesian-methods-for-data-image-analysis-wpmtbmd7 The aim is to introduce fundamentals on Bayesian inference, and to develop applications in the framework of image and signal processing. Grenoble INP Institute of Engineering Univ. Grenoble Alpes Grenoble – Polygone scientifique * Introduction
* Bayesian estimators
* Priori choice
* Approximate Bayesian inference
** Deterministic approximation methods
** Stochastic approximation methods
* Case study: Bayesian inference for speech recognition Basic notion in both estimation and detection theory Olivier Michel, Hacheme Ayasso, Florent Chatelain 2 2nd year of master Lecture Course content can evolve at any time before the start of the course. It is strongly recommended to discuss with the course contact about the detailed program.
Please consider the following deadlines for inbound mobility to Grenoble:
– April 1st, 2020 for Full Year (September to June) and Fall Semester (September to January) intake ;
– September 1st, 2020 for Spring Semester intake (February – June). Written exam international.cic_tsukuba@grenoble-inp.fr