Fundamentals of Data Analytics with MsExcel

.
Average Income: 1,000,000 NGN


Start learning and earn this certification:
 12 Weeks of Learning
 Taught in English
 Project & Assessment
 Certification

This product is currently out of stock and unavailable.

SKU: N/A Category:

This comprehensive data analytics level 1 course focusing on Power BI and MS Excel involves covering fundamental concepts, practical skills, and advanced techniques. Here’s a structured outline for such a course:

Learning Objectives
In this course, you will learn:

  • Basic concepts and terminology of data analytics.
  • Process of data collection, storage, and retrieval.
  • Data cleaning and preprocessing techniques.
  • Common data analysis tools e.g. Excel, Python, or R.
  • Machine learning and its applications in data analytics.
  • Problem-solving skills to interpret and analyze data.



Course Modules

MODULE 1
    Introduction to Data Analytics
  • Lesson 1: Understanding Data Analytics and its Importance
  • Lesson 2: Overview of Data Analytics Lifecycle
  • Lesson 3: Introduction to Data Analytics Tools and Technologies

MODULE 2
    Data Collection and Preparation
  • Lesson 1: Data Collection Methods and Sources
  • Lesson 2: Data Cleaning and Preprocessing Techniques
  • Lesson 3: Exploratory Data Analysis (EDA)
  • Lesson 4: Data Integration and Transformation

MODULE 3
    Data Exploration and Visualization
  • Lesson 1: Introduction to Data Visualization Tools (e.g., Matplotlib, Seaborn, Tableau)
  • Lesson 2: Exploring Data Patterns and Trends
  • Lesson 3: Visualizing Data with Charts, Graphs, and Dashboards
  • Lesson 4: Best Practices for Data Visualization

MODULE 4
    Statistical Analysis for Data Analytics
  • Lesson 1: Descriptive Statistics (Mean, Median, Mode, Variance, Standard Deviation)
  • Lesson 2: Inferential Statistics (Hypothesis Testing, Confidence Intervals)
  • Lesson 3: Correlation and Regression Analysis
  • Lesson 4: Time Series Analysis

MODULE 5
    Predictive Analytics
  • Lesson 1: Introduction to Predictive Modeling
  • Lesson 2: Linear and Logistic Regression
  • Lesson 3: Decision Trees and Random Forests
  • Lesson 4: Model Evaluation and Validation Techniques

MODULE 6
    Machine Learning for Data Analytics
  • Lesson 1: Introduction to Machine Learning Algorithms
  • Lesson 2: Supervised, Unsupervised, and Semi-Supervised Learning
  • Lesson 3: Clustering Algorithms (K-Means, Hierarchical Clustering)
  • Lesson 4: Dimensionality Reduction Techniques (PCA, t-SNE)

MODULE 7
    Big Data Analytics
  • Lesson 1: Introduction to Big Data Technologies (Hadoop, Spark)
  • Lesson 2: Processing and Analyzing Big Data with Spark
  • Lesson 3: Working with Distributed Datasets
  • Lesson 4: Streaming Analytics with Apache Kafka

MODULE 8
    Data Mining and Pattern Recognition
  • Lesson 1: Introduction to Data Mining Techniques
  • Lesson 2: Association Rule Mining (Apriori Algorithm)
  • Lesson 3: Cluster Analysis (K-Means, DBSCAN)
  • Lesson 4: Anomaly Detection and Outlier Analysis

MODULE 9
    Text Analytics and Natural Language Processing (NLP)
  • Lesson 1: Introduction to Text Analytics
  • Lesson 2: Preprocessing Text Data (Tokenization, Stemming, Lemmatization)
  • Lesson 3: Sentiment Analysis
  • Lesson 4: Named Entity Recognition (NER) and Text Classification

MODULE 10
    Advanced Data Analytics Topics
  • Lesson 1: Deep Learning for Data Analytics
  • Lesson 2: Reinforcement Learning
  • Lesson 3: Graph Analytics
  • Lesson 4: Time Series Forecasting with Neural Networks

MODULE 11
    Data Ethics and Privacy
  • Lesson 1: Understanding Ethical Issues in Data Analytics
  • Lesson 2: Privacy Concerns and Data Protection Regulations (GDPR, CCPA)
  • Lesson 3: Ethical Decision Making in Data Analytics Projects
  • Conclusion
  • Project
  • Assessment

Reviews

There are no reviews yet.

Only logged in customers who have purchased this product may leave a review.

Shopping Cart