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Assignment Task
This assignment consists of two deliverables, being:
• One code implementation (50%). The code file in Jupyter Notebook format and the relevant date set files should be contained within a folder named: Task 3-Your Name- Student_Number, the folder is then to be zipped and uploaded to blackboard.
• A report (50%). The report must be uploaded as a separate file.
Part I – PySpark source code (50%)
Important Note: For code reproduction, your code must be self-contained. That is, it should not require other libraries besides PySpark environment we have used in the workshops. The data files are packaged properly with your code file.
In this component, we need to utilise Python 3 and PySpark to complete the following data analysis tasks:
1. Exploratory data analysis
2. Recommendation engine
3. Classification
4. Clustering
Task I.1: Exploratory data analysis
This subtask requires you to explore your dataset by
• telling its number of rows and columns,
• doing the data cleaning (missing values or duplicated records) if necessary
• selecting 3 columns, and drawing 1 plot (e.g. bar chart, histogram, boxplot, etc.) for each to summarise it
Task I.2: Recommendation Engine
This subtask requires you to implement a recommender system on Collaborative filtering with Alternative Least Squares Algorithm. You need to include
• Model training and predictions
• Model evaluation using MSE
Task I.4: Clustering
This subtask requires you to implement a clustering system on K-means. You need to include
• Model training
• Model evaluation
Part II –Report (50%)
You are required to write a report to explain your design and implementation of the machine learning parts in your code, including the following topics:
• Introduction/summary/explanation to the ML algorithm/concepts
• The learning settings, such as how to prepare training/testing set, what are the key parameters and how you set them up
• Comments/evaluation for the models learned
Task I.3: Classification
This subtask requires you to implement a classification system on Logistic regression with the LogisticRegressionWithLBFGS class. You need to include
• Logistic Regression model training
• Model evaluation
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