Iain Smith
Learner -
(8)
5
Portals
Categories
Data analysis

Skills

Algorithms 4 Cluster analysis 4 Artificial neural networks 3 Convolutional neural networks 3 Data analysis 3 Github 3 Pandas (python package) 3 Python (programming language) 3 Time series 3 Accounts receivable 2 Packaging and labeling 2 Rstudio 2 Decision tree learning 1 Outliers 1

Achievements

Latest feedback

Recent projects

MacEwan University: Department of Mathematics and Statistics
MacEwan University: Department of Mathematics and Statistics
Edmonton, Alberta, Canada

Level UP-Clustering of Covid data (part 1 of 2)

positions available: 1 The students will clean the Covid data collected from OUR WORLD in DATA and implement a clustering algorithm for Covid data in R based on existing libraries.

Matches 1
Category Computer science - general + 1
Closed
MacEwan University: Department of Mathematics and Statistics
MacEwan University: Department of Mathematics and Statistics
Edmonton, Alberta, Canada

Level UP-Clustering of Covid data (part 2 of 2)

positions available: 1 The student will apply decision trees to explain the COVID data clustering. The student will interpret the results and write a report.

Matches 1
Category Computer science - general + 1
Closed
MacEwan University: Department of Computer Science
MacEwan University: Department of Computer Science
Edmonton, Alberta, Canada

Level UP-Analyzing factors that cause Car speeding Phase 1

positions available: 2 This analysis used data from speed zones and traffic signs using methods such as functional data clustering algorithms. In this project, we will 1. Determine indicators associated with a car speeding such as known police zones, how enforcement is done in these areas and unknown information about the day (weather, holiday, sporting events) that may or may not affect the data. 2. Apply functional data clustering and model-based clustering algorithms

Matches 1
Category Databases + 3
Closed
MacEwan University: Department of Computer Science
MacEwan University: Department of Computer Science
Edmonton, Alberta, Canada

Level UP-Analyzing factors that cause Car speeding Phase 2

positions available: 2 This analysis used data from speed zones and traffic signs using methods such as functional data clustering algorithms. In this project, we will 1. Determine indicators associated with a car speeding such as known police zones, how enforcement is done in these areas and unknown information about the day (weather, holiday, sporting events) that may or may not affect the data. 2. Apply functional data clustering and model-based clustering algorithms

Matches 1
Category Databases + 3
Closed