Foundations for Data Analytics Part 1
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Skills you'll gain
- Machine Learning Algorithms
- Programming Principles
- Algorithms
- Data Processing
- Data Manipulation
- Exploratory Data Analysis
- Data Visualization
- Data Preprocessing
- Data Structures
- Descriptive Statistics
- Computational Thinking
- Time Series Analysis and Forecasting
- Model Evaluation
- Unsupervised Learning
- Data Analysis
- Data Wrangling
- Data Cleansing
Tools you'll learn
Details to know
14 assignments
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There are 7 modules in this course
This course offers students an opportunity to learn fundamentals of computation required to understand and analyze real world data. The course helps students to work with modern data structures, apply data cleaning and data wrangling operations. The course covers conceptual and practical applications of probability and distribution, cluster analysis, text analysis and time series analysis.
This course is Part 1 of 2.
In this module, we will focus on Python programming fundamentals. The aim is to help you understand Python's basic syntax, data types, and operators, enabling the creation of simple programs. Additionally, we will cover the use of if statements, loops, and proper indentation to control program flow, fostering a foundational understanding of essential control structures in Python programming.
What's included
5 videos6 readings2 assignments1 discussion prompt
5 videosβ’Total 19 minutes
- Course Overviewβ’2 minutes
- Meet Your Facultyβ’1 minute
- Python Fundamentalsβ’8 minutes
- Control Structures Pt 1β’3 minutes
- Control Structures Pt 2β’6 minutes
6 readingsβ’Total 83 minutes
- Course Introductionβ’2 minutes
- Syllabus - Foundations of Data Analytics Part 1β’5 minutes
- Academic Integrityβ’1 minute
- Python Fundamentalsβ’40 minutes
- Control Structures Pt 1β’10 minutes
- Control Structures Pt 2β’25 minutes
2 assignmentsβ’Total 20 minutes
- Module 1 Assess Your Learning: Python Fundamentalsβ’10 minutes
- Module 1 Assess Your Learning: Control Structuresβ’10 minutes
1 discussion promptβ’Total 20 minutes
- Meet Your Fellow Learnersβ’20 minutes
In this module we will dive into the diverse landscape of Python data structures, including lists, dictionaries, sets, tuples, and arrays. By exploring real-world use cases, you will uncover the unique strengths and weaknesses of each data structure. You will gain insights into recognizing and understanding the characteristics of these structures, empowering you to make informed choices when tackling programming challenges. Through hands-on practice, you will develop the skills to select and apply the most suitable data structure to efficiently solve a wide range of problems, enhancing their proficiency in Python programming.
What's included
2 videos2 readings1 assignment
2 videosβ’Total 13 minutes
- List, Tuples, and Arraysβ’8 minutes
- Dictionariesβ’5 minutes
2 readingsβ’Total 200 minutes
- List, Tuples, and Arraysβ’170 minutes
- Dictionariesβ’30 minutes
1 assignmentβ’Total 10 minutes
- Module 2 Assess Your Learning: Lists, Tuples, Arrays & Dictionariesβ’10 minutes
In this module we will introduce DataFrames, a pivotal tool in data manipulation and analysis. You will grasp the fundamental concepts of DataFrames, learning how to create, manipulate, and access data efficiently. You will gain essential skills for basic data explorationβincluding summarizing data, indexing, and slicing, enabling them to extract meaningful insights. Furthermore, this module equips learners with the expertise to clean and preprocess data, covering handling missing values, filtering data, merging/joining datasets, and transforming data for analysis readiness. By the end of this module, you will harness DataFrames for advanced data analysis, mastering group-wise operations, aggregation, and statistical analysis.
What's included
3 videos3 readings2 assignments
3 videosβ’Total 19 minutes
- Introduction to DataFramesβ’9 minutes
- Data Cleaning and Transformationβ’5 minutes
- Data Aggregationβ’5 minutes
3 readingsβ’Total 195 minutes
- Introduction to DataFramesβ’160 minutes
- Data Cleaning and Transformationβ’10 minutes
- Data Aggregationβ’25 minutes
2 assignmentsβ’Total 20 minutes
- Module 3 Assess Your Learning: DataFramesβ’10 minutes
- Module 3 Assess Your Learning: Data Cleaning, Transformation and Aggregationβ’10 minutes
This module will equip you with a comprehensive toolkit for proficient data exploration and analysis. It covers the essential techniques and tools for effectively summarizing data sets, encompassing statistical summaries, data visualization, and data cleaning methods. You will learn how to identify and assess missing data, outliers, and anomalies, vital tasks during the initial exploratory phase of data analysis. Furthermore, you will develop the ability to uncover patterns, relationships, and trends within the data using various visualizations, including scatter plots, histograms, and correlation matrices, enabling you to extract valuable insights and make informed decisions from the data.
What's included
2 videos2 readings1 assignment
2 videosβ’Total 14 minutes
- Data Exploration Techniquesβ’5 minutes
- Visualization Methods for Pattern Recognitionβ’9 minutes
2 readingsβ’Total 102 minutes
- Data Exploration Techniquesβ’100 minutes
- Visualization Methods for Pattern Recognitionβ’2 minutes
1 assignmentβ’Total 10 minutes
- Module 4 Assess Your Learning: Visualization Methods for Pattern Recognitionβ’10 minutes
In this module, we will delve into the fundamental concepts of clustering, a critical component of data analysis and pattern recognition. You will learn to recognize the importance of clustering and its role in identifying meaningful groups within data. You will explore key concepts, including data similarity, distance metrics, and the objective of grouping similar data points together. Additionally, the module equips you with the skills to assess the quality of clustering results through evaluation metrics like silhouette score and Dunn index, as well as visual inspection of clustering plots. By the end of this module, you will be proficient in understanding, applying, and evaluating clustering techniques for effective data analysis and pattern recognition.
What's included
4 videos4 readings2 assignments
4 videosβ’Total 24 minutes
- Clustering Techniquesβ’4 minutes
- Pattern Recognition using Clustering Techniquesβ’3 minutes
- Understanding Clustering Fundamentalsβ’7 minutes
- Cluster Validityβ’11 minutes
4 readingsβ’Total 135 minutes
- Clustering Techniquesβ’30 minutes
- Pattern Recognition using Clustering Techniquesβ’30 minutes
- Understanding Clustering Fundamentalsβ’15 minutes
- Cluster Validityβ’60 minutes
2 assignmentsβ’Total 20 minutes
- Module 5 Assess Your Learning: Clustering Techniquesβ’10 minutes
- Module 5 Assess Your Learning: Cluster Validityβ’10 minutes
This module will provide you with a comprehensive exploration of clustering algorithms, enabling proficiency in this crucial data analysis technique. You will identify various clustering algorithms, such as k-means, hierarchical clustering, and DBSCAN, along with their underlying principles and assumptions. The expertise you will gain will help you determine the most suitable clustering algorithm based on data characteristics and objectives, and you will learn to implement these algorithms using programming languages like Python and tools such as scikit-learn. The clustering quality can be evaluated using internal and external validation methods, as discussed in Week 5.
What's included
4 videos4 readings3 assignments
4 videosβ’Total 14 minutes
- K-Means Clusteringβ’6 minutes
- Hierarchical Clusteringβ’4 minutes
- DBSCANβ’2 minutes
- Choosing Appropriate Clustering Algorithmsβ’2 minutes
4 readingsβ’Total 4 minutes
- K-Means Clusteringβ’1 minute
- Hierarchical Clusteringβ’1 minute
- DBSCANβ’1 minute
- Choosing Appropriate Clustering Algorithmsβ’1 minute
3 assignmentsβ’Total 30 minutes
- Module 6 Assess Your Learning: K-Means Clusteringβ’10 minutes
- Module 6 Assess Your Learning: Hierarchical Clusteringβ’10 minutes
- Module 6 Assess Your Learning: DBSCANβ’10 minutes
In this module, you will explore the realm of time series data, gaining a comprehensive understanding of its characteristics, components (trend, seasonality, and noise), and prevalent sources across diverse domains. Through effective visualization techniques and descriptive statistics, you will acquire the skills to recognize patterns and trends within time series data.
What's included
4 videos5 readings3 assignments
4 videosβ’Total 17 minutes
- Time Series Analysisβ’2 minutes
- Components of Time Seriesβ’3 minutes
- Visual Analytics of Time Seriesβ’5 minutes
- Time Series Data Techniquesβ’7 minutes
5 readingsβ’Total 20 minutes
- Time Series Analysisβ’1 minute
- Components of Time Seriesβ’3 minutes
- Visual Analytics of Time Seriesβ’3 minutes
- Time Series Data Techniquesβ’3 minutes
- Congratulations!β’10 minutes
3 assignmentsβ’Total 30 minutes
- Module 7 Assess Your Learning: Time Series Analysisβ’10 minutes
- Module 7 Assess Your Learning: Visual Analytics of Time Seriesβ’10 minutes
- Module 7 Assess Your Learning: Time Series Data Techniquesβ’10 minutes
Instructor
Offered by
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- Status: PreviewN
Northeastern University
Course
- Status: Free Trial
Course
- Status: Free TrialL
LearnQuest
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- Status: Free TrialJ
John Wiley & Sons
Course
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