-
₦0.00 Free
-
37 Lessons( 10 week )
- Month 1-2: Foundations of Data Science
- 1. Overview of Data Science 0 minute
- 2. Python Basics for Data Science 0 minute
- 3. Jupyter Notebooks 0 minute
- Month 3-4: Data Wrangling and Feature Engineering
- 1. Handling Large Datasets with Pandas 0 minute
- 2. Time Series Data in Pandas 0 minute
- 3. Data Cleaning and Best Practices 0 minute
- Month 5: Advanced Topics in Data Science
- 1. Ensemble Methods (Random Forests, Gradient Boosting) 0 minute
- 2. Support Vector Machines (SVM) 0 minute
- 3. Neural Networks and Deep Learning 0 minute
- Month 6: Real-world Applications and Projects and Deployment.
- 1. Build a model to predict stock prices using historical data 0 minute
- 2. Create a weather prediction model based on meteorological data. 0 minute
- 3. Predict the outcome of a sports event using historical game statistics. 0 minute
- Month 6: Real-world Applications and Projects and Deployment.
- 1. Sentiment analysis on product reviews or social media comments. 0 minute
- 2. Text summarization tool using NLP techniques. 0 minute
- 3. Build a chatbot that can understand and respond to user queries. 0 minute
- Month 6: Real-world Applications and Projects and Deployment.
- 1. Create an image classification model for recognizing objects in images. 0 minute
- 2. Build a facial recognition system. 0 minute
- Month 6: Real-world Applications and Projects and Deployment.
- 1. Build a movie or music recommendation system 0 minute
- 2. Develop a personalized news recommendation engine. 0 minute
- 3. Create a recommendation system for an e-commerce platform. 0 minute
- Week 3-4: Advanced Python for Data Science
- 1. Advanced Python Programming Techniques 0 minute
- 2. NumPy and Advanced Array Manipulation 0 minute
- 3. Pandas for Data Manipulation 0 minute
- Week 5-6: Data Visualization and Exploration
- 1. Data Visualization with Matplotlib and Seaborn 0 minute
- 2. Interactive Visualizations with Plotly 0 minute
- 3. Exploratory Data Analysis (EDA) Techniques 0 minute
- Week 3-4: Feature Engineering and Dimensionality Reduction
- 1. Feature Engineering Techniques 0 minute
- 2. Handling Categorical Data in Machine Learning 0 minute
- 3. Dimensionality Reduction with PCA and t-SNE 0 minute
- Week 5-6: Model Building and Evaluation
- 1. Introduction to Machine Learning Algorithms 0 minute
- 2. • Model Training and Evaluation 0 minute
- Week 3-4: Natural Language Processing (NLP) and Text Mining
- 1. Introduction to NLP 0 minute
- 2. Text Preprocessing and Feature Extraction 0 minute
- 3. Sentiment Analysis and Named Entity Recognition 0 minute
- Week 5-6: Big Data and Cloud Computing
- 1. Introduction to Big Data (Hadoop, Spark) 0 minute
- 2. Cloud Platforms for Data Science (AWS, Google Cloud, Azure) 0 minute
- 3. Data Pipelining 0 minute
Date :
February 18, 2024
Language :
English
Meet Your Teacher
Related Courses
No courses found!