Python for Data Science Bootcamp

Understanding the importance of Python as a data science tool is crucial for anyone aspiring to leverage data effectively. This bootcamp is designed to equip you with the essential skills and knowledge needed to thrive in the field of data science. This bootcamp teaches the vital skills to manipulate data using pandas, perform statistical analyses, and create impactful visualizations. Learn to solve real-world business problems and prepare data for machine learning applications. Get ready for some challenging assessments in the Python bootcamp where you'll apply your skills to real-world scenarios, ensuring a rewarding learning experience.

$ 300.00 USD
$ 599.00 USD
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Level - Learnify X Webflow Template
Level : 
Beginner - Advanced
Duration - Learnify X Webflow Template
Duration : 
12 Weekends
Lessons - Learnify X Webflow Template
Lessons : 
213
Access - Learnify X Webflow Template
October, 26, 2024
Devices - Learnify X Webflow Template
Access From Any Computer, Tablet or Mobile
Course teacher

About the course

Starting with the Python essentials for data science, you’ll work through in-depth exercises that test your abilities. You’ll acquire hands-on experience with some of the most popular Python libraries for data science, including pandas, Seaborn, Matplotlib, scikit-learn, and many more. As you progress, you’ll be working with real-world datasets to acquire the statistical and machine learning techniques required to test hypothesis testing and build predictive models. You’ll also get to learn supervised learning with scikit-learn and apply your skills to a variety of projects. Start this bootcamp, grow your data science skills, and begin your journey to becoming a confident data scientist with Python.

Data scientists with Python skills are in high demand across industries and can command high salaries due to the scarcity of talent. According to IEEE Spectrum's latest survey, Python is the most popular programming language. According to www.talent.com, Data Scientists make an average of £55,061 per year in the United Kingdom. According to www.ziprecruiter.com, the average annual pay for a Python Data Scientist in the United States is $122,738 a year (this may vary from region to region) Reviewed by industry leaders, the course uses a project-based learning model to provide hands-on experience with the latest Python for Data Science tools.

Bootcamp Benefits

1. Gain relevant work experience on your CV through the Quantum Analytics Virtual Growth Internship Program and earn your accredited Data Science Certificate.
2. Get your first job as a Data Analyst Within 6 Months of Completing your training.
3. Get access to remote job opportunities as a Data Analyst or BI Analyst & earn in USD.
4. CV Review & LinkedIn Optimization
5. Job Search & Interview Preparation
6. On-the-Job Support (3 Months)
7. Work reference & recommendation letter from Quantum Analytics UK, US & Nigeria. And more!
And more!

What will you learn

1. Introduction to Python for Data Science

In the first module of the Python for Data Science course, learners will be introduced to the fundamental concepts of Python programming. The module begins with the basics of Python, covering essential topics like introduction to Python. Next, the module delves into working with Jupyter notebooks, a popular interactive environment for data analysis and visualization. Learners will learn how to set up Jupyter notebooks, create, run, and manage code cells, and integrate text and visualizations using Markdown. Additionally, the module will showcase real-life applications of Python in solving data-related problems. Learners will explore various data science projects and case studies where Python plays a crucial role, such as data cleaning, data manipulation, statistical analysis, and machine learning. By the end of this module, learners will have a good understanding of Python, be proficient in using Jupyter notebooks for data analysis, and comprehend how Python is used to address real-world data science challenges.

2. Data Wrangling with Python

By the end of this module, learners will acquire essential skills in working with various types of data. They will have a solid grasp of Python programming fundamentals, including data structures and libraries. They will be proficient in loading, cleaning, and transforming data, and will possess the ability to perform exploratory data analysis, employing data visualization techniques. They will also gain insights into basic statistical concepts, such as probability, distributions, and hypothesis testing.

3. Exploratory Data Analysis

By the end of this module, learners will gain a comprehensive understanding of statistical concepts, data exploration techniques, and visualization methods. Learners will develop the skills to identify patterns, outliers, and relationships in data, making informed decisions and formulating hypotheses. Ultimately, they will emerge with the ability to transform raw data into meaningful insights, effectively communicate their findings through data storytelling, and apply EDA across diverse real-world applications.

4. Data Pre-processing

By the end of this module, learners will acquire the essential skills to effectively transform raw and often messy data into a structured and suitable format for advanced analysis. They will master the techniques for handling missing values, identifying and dealing with outliers, encoding categorical variables, scaling and normalizing numerical features, and handling textual or unstructured data. Learners will also be proficient in detecting and addressing data inconsistencies, such as duplicates and errors. Learners will be able to treat data to make it suitable for further analysis. Upon completion of this module, Upon completion

5. Feature Engineering

By the end of this module, learners will develop a profound understanding of how to craft and enhance features to optimize the performance of machine learning models. They will be adept at identifying relevant variables, creating new features through techniques such as one-hot encoding, binning, and polynomial expansion, and extracting valuable information from existing data, like dates or text, using methods like feature extraction and text vectorization. Learners will also grasp the concept of feature scaling and normalization to ensure the consistency and comparability of feature ranges. With these skills, they will possess the ability to shape data effectively, amplifying its predictive power and contributing to the construction of robust, high-performing machine learning pipelines.

6. Introduction to Machine Learning

In this module, learners will unravel the magic of machine learning as they explore the significance of making predictions in various domains. They will gain a solid introduction to machine learning and its applications in different industries. The module will also cover essential concepts such as rule-based prediction and evaluation metrics, providing learners with a strong foundation for the rest of the bootcamp.

7. Evaluating Prediction Models

In this module, learners will delve into the intricacies of prediction models. They will explore evaluation metrics for both regression and classification models, gaining hands-on experience with practical implementations. The module will also cover data division techniques and benchmark performance, providing learners with a comprehensive understanding of how to effectively evaluate prediction models.

8. Linear and Logistics Regression

In this module, learners will embark on a comprehensive exploration of regression techniques. From understanding the principles of linear and logistic regression to their practical application, they will gain valuable insights into predictive modeling. With a focus on real-world scenarios, they will learn how to make predictions, interpret results, and optimize models.

9. Decision Trees

In this module, learners will navigate the intricate paths of decision trees. Decision trees offer a transparent yet powerful approach to classification and regression tasks. Learners will delve into the mechanisms of decision tree construction, learn to handle overfitting through pruning and regularization, and discover the art of fine-tuning decision trees for optimal results.

10. Introduction to Unsupervised Learning

In this module, learners will unlock the mysteries of unsupervised machine learning as they dive into clustering techniques. They will discover the power of KMeans and Density-Based Spatial Clustering of Applications with Noise (DBSCAN) in grouping similar data points together. They will also explore how unsupervised learning revolutionizes data exploration, customer segmentation, and anomaly detection.

11. Tableau for Data Science

Apply advanced visualization techniques in Tableau. . Master visualization techniques and design strategies to present key points through graphical storytelling.

What our students say

Python for Data Science Bootcamp review From Our Students

Jennifer J.
Jennifer J.
Data Scientist

I directly applied the concepts and skills I learned from the bootcamp to an exciting new project at work.

Okello D.
Okello D.
Data Analyst

I loved the supportive community at Quantum Analytics. The mentorship and guidance I received were invaluable, and I’m now confidently working as a data analyst.

Shanice B.
Shanice B.
Snr. Data Analyst

The data science bootcamp at Quantum Analytics was well-structured and comprehensive. I gained the skills needed to analyze data effectively and present my findings clearly

Natasha O.
Natasha O.
Jnr. Data Scientist

Quantum Analytics prepared me for the fast-paced world of data analytics. The skills I learned have been directly applicable in my day-to-day work as a data scientist.