Data-Driven Optimization for Machine Learning Applications - Interactive curriculae of TU Ilmenau
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| module properties Data-Driven Optimization for Machine Learning Applications in degree program Diplom Elektrotechnik und Informationstechnik 2021 | |
|---|---|
| module number | 200135 |
| examination number | 220491 |
| department | Department of Computer Science and Automation |
| ID of group | 2212 (Simulation and Optimal Processes) |
| module leader | Prof. Dr. Pu Li |
| term | summer term only |
| language | Englisch |
| credit points | 5 |
| on-campus program (h) | 45 |
| self-study (h) | 105 |
| obligation | elective module |
| exam | examination performance with multiple performances |
| details of the certificate | Das Modul Data-Driven Optimization for Machine Learning Applications mit der Prüfungsnummer 220491 schließt mit folgenden Leistungen ab:
Programmieraufgaben als Hausbeleg |
| link to Moodle course | |
| teacher | Dr. rer. nat. habil. Abebe Geletu |
| signup details for alternative examinations | Dieses Modul enthält mindestens eine alternative semesterbegleitende Abschlussleistung. Bitte beachten Sie, dass diese in der Regel schon zu Beginn des Semesters, in dem diese angeboten wird, angemeldet werden muss. This module contains at least one alternative exam part. Please note that this must usually be registered at the beginning of the semester in which it is offered. |
| maximum number of participants | |
| previous knowledge and experience | BSc level. Basic linear algebra and computer programming skills are advantageous. |
| learning outcome | The students know and can explain
They can implement
The students learn the theory, models, methods, and algorithms of the corresponding subjects in the lectures. In the exercises, they are activated to solve example tasks. In project tasks, they analyze, solve, and evaluate programming problems. |
| content | 1. Introduction - Motivation, Data-driven versus Model-driven appraoch, importance of data-driven optimization; overview of optimization problems arising in machine learning applications; 2. Preiminaries - linear algebra; convex sets convex functions; gradient, sub-gradient, hessian matrix; 3. Programming basics (Python, R, Matlab); data loading and preprocessing; 4. Unconstrained optimization for machine learning: regularization-meaning and relevance; regression problems; neural networks and back-propagation of errors; optimization methods for deep learning ; 5. Uncostrained Optimiztion Algorithms; 5A: First-order algorithms - gradient descent, accelerated gradient descent, stochastic gradient descent, conjugate gradient methods, coordinate descent; R and Python implementations; sub-gradient methods (optional); 5B. Second-order algorithms: The Newton Method; quasi-Newton methods; LBFGS; R and Python implementations; 6. Constrained Optimization Methods for Machine Learning - the interior point method; face-recongintion with supprot vector machine using Python, Scikit-Learn and OpenCV ;Matrix factorization methods for pattern recognition- SVD, PCA, non-negative matrix factorization (NMF); Matlab and Python Scikit-Learn implementations; Proximal-Point Algorithms: proximal gradient methods; alternating direction of multupliers (ADMM); 7. Bayesian Optimization methods for Machine Learning; 8. Optimization algorithms in Deep Learning Tools TensorFlow, Kerays, pyTorch |
| media of instruction and technical requirements for education and examination in case of online participation | Lecture Slides, PC Pools, Machine Learning Tools and Libraries |
| literature / references | Bottou, Léon; Curtis Frank E., Nocedal, Jorge: Optimization Methods for Large-Scale Machine Learning. SIAM Review, 60(2), 223-311. Emrouznejad, Ali (ed.): Big Data Optimization: Recent developments and challenges. Volume 18, Studies in Big Data Series, Springer, 2016. Geron, Aurelien: Hands-on machine learning with scikit-learn, Keras & TensorFlow, 2nd Ed. O'Reilly, 2019. Goodfellow, Ian; Bengio, Yoshua; Courville, Aaron: Deep Learning. The MIT Press, 2017. |
| evaluation of teaching | |

