Hello and Welcome, here you can find most of the programming projects for my CS degree. Hopefully, I'll help you...
In my opinion the most interesting project is - Gait Analysis- IoT project
Also cool to look at:
- 234124-MatamFinalProject - Graphs calculator
- 236756-MachineLearningHW2 - K-nearest neighbors, decision trees, SVM using SGD and feature mapping
- 236756-MachineLearningHW3 - Linear regression implementation, evaluation and baseline, Ridge linear regression, lasso linear regression and polynomial fitting
- 236523-FinalProjectInBioinformatics - Gene expression analysis
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234114 - Introduction to Computer Science (IntroToCS)
- 234114-IntroToCSHW3 - Avoidance Tic-Tac-Toe
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234124 Introduction to Systems Programming (Matam)
- 234124-MatamHW1 - Map (Abstract data type implementation) , Election system implementation
- 234124-MatamHW2 - Building python interface for C module using SWIG
- 234124-MatamHW3 - Generics, operator overloading, exceptions, polymorphism
- 234124-MatamFinalProject - Graphs calculator - Too vast to fit in a sentence:)
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236319 Programming Languages
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234123 - Operating Systems
- 234123-OperatingSystemsHW1 - Shell, jobs list, signals
- 234123-OperatingSystemsHW2 - Adding a system call
- 234123-OperatingSystemsHW3 - Multi-threaded server using condition variables
- 234123-OperatingSystemsHW4 - Memory allocation (programming malloc)
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234118 - Computer Organization And Programming (Atam)
- 234118-ATAM_HW1 - Assembly basic questions
- 234118-ATAM_HW2 - Assmebly matrix mutilation, interrupts
- 234118-ATAM_HW3 - Hacking readelf, Linker scripts
- 234118-ATAM_HW4 - Building a debugger
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236523 - Introduction to Bioinformatics
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236332 - IoT project
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236756 - Machine learning
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HW1 - Data preparation: data imputation and cleaning, outlier detection, univariate feature exploration, missing data, feature selection
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HW2 - Includes 3 parts:
Part 1: k-nearest neighbors model implementation and selection, data normalization, model selection error anaylsis.
Part 2: decision trees (model visualization and selection)
Part 3: SVM implementation and optimization, solving SVM problems using stochastic gradient descent SGD, applying a feature mapping
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HW3 - Linear regression implementation, evaluation and baseline, Ridge linear regression, lasso linear regression, polynomial fitting, testing the models
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236781 - Deep learning