Full Stack Data Science & Machine Learning BootCamp Course
- Description
- Curriculum
- FAQ
- Reviews
Welcome to the Full Stack Data Science & Machine Learning BootCamp Course, the only course you need to learn Foundation skills and get into data science.
At over 40+ hours, this Python course is without a doubt the most comprehensive data science and machine learning course available online. Even if you have zero programming experience, this course will take you from beginner to mastery. Here’s why:
-
The course is taught by the lead instructor at the PwC, India’s leading in-person programming bootcamp.
-
In the course, you’ll be learning the latest tools and technologies that are used by data scientists at Google, Amazon, or Netflix.
-
This course doesn’t cut any corners, there are beautiful animated explanation videos and real-world projects to build.
-
The curriculum was developed over a period of three years together with industry professionals, researchers and student testing and feedback.
-
To date, I’ve taught over 10000+ students how to code and many have gone on to change their lives by getting jobs in the industry or starting their own tech startup.
-
You’ll save yourself over $12,000 by enrolling, but get access to the same teaching materials and learn from the same instructor and curriculum as our in-person programming bootcamp.
We’ll take you step-by-step through video tutorials and teach you everything you need to know to succeed as a data scientist and machine learning professional.
The course includes over 40+ hours of HD video tutorials and builds your programming knowledge while solving real-world problems.
In the curriculum, we cover a large number of important data science and machine learning topics, such as:
MACHINE LEARNING –
Regression: Simple Linear Regression, , SVR, Decision Tree , Random Forest,
Clustering: K-Means, Hierarchical Clustering Algorithms
Classification: Logistic Regression, Kernel SVM, Naive Bayes, Decision Tree Classification, Random Forest Classification
Natural Language Processing: Bag-of-words model and algorithms for NLP
DEEP LEARNING –
Artificial Neural Networks, Convolutional Neural Networks, Recurrent Neural Networks, Long short term Memory, Vgg16 , Transfer learning, Web Based Flask Application.
Moreover, the course is packed with practical exercises that are based on real-life examples. So not only will you learn the theory, but you will also get some hands-on practice building your own models.
By the end of this course, you will be fluently programming in Python and be ready to tackle any data science project. We’ll be covering all of these Python programming concepts:
PYTHON –
-
Data Types and Variables
-
String Manipulation
-
Functions
-
Objects
-
Lists, Tuples and Dictionaries
-
Loops and Iterators
-
Conditionals and Control Flow
-
Generator Functions
-
Context Managers and Name Scoping
-
Error Handling
Power BI –
-
What is Power BI and why you should be using it.
-
To import CSV and Excel files into Power BI Desktop.
-
How to use Merge Queries to fetch data from other queries.
-
How to create relationships between the different tables of the data model.
-
All about DAX including using the COUTROWS, CALCULATE, and SAMEPERIODLASTYEAR functions.
-
All about using the card visual to create summary information.
-
How to use other visuals such as clustered column charts, maps, and trend graphs.
-
How to use Slicers to filter your reports.
-
How to use themes to format your reports quickly and consistently.
-
How to edit the interactions between your visualizations and filter at visualization, page, and report level.
By working through real-world projects you get to understand the entire workflow of a data scientist which is incredibly valuable to a potential employer.
Sign up today, and look forward to:
-
178+ HD Video Lectures
-
30+ Code Challenges and Exercises
-
Fully Fledged Data Science and Machine Learning Projects
-
Programming Resources and Cheatsheets
-
Our best selling 12 Rules to Learn to Code eBook
-
$12,000+ data science & machine learning bootcamp course materials and curriculum
-
5Introduction to statistics and Measures of central tendenciesVideo lesson
-
6The Central Limit Theorem (CLT): Understanding Sampling and DistributionVideo lesson
-
7Exploring Distributions and Correlations: Statistical Analysis in PythonVideo lesson
-
8PDF & CDF and Hypothesis TestingVideo lesson
-
9Time Series Analysis & ForecastingVideo lesson
-
10Probability Theory and Statistical AnalysisVideo lesson
-
11Capstone Project - UK Road Accident Analysis : Part - 1Video lesson
-
12Capstone Project - UK Road Accident : Part -2Video lesson
-
13Logistic Regression in Machine Learning: Theory, Implementation, and ApplicationVideo lesson
-
14Word Embedding Techniques in Machine Learning: Bag-of-Words, TF-IDF, Word2VecVideo lesson
-
15Text Cleaning and Preprocessing for Machine Learning: Analyzing Amazon ReviewsVideo lesson
-
16Linear Regression in Machine Learning: Theory, Implementation, and ApplicationsVideo lesson
-
17Decision Tree Classifier and Regression in Machine Learning: TheoryVideo lesson
-
18MACHINE LEARNING - Geometric Intuition of Ensembles Models and Flask ProjectVideo lesson
-
19MACHINE LEARNING - Data Analysis on Loan Approval StatusVideo lesson
-
20MACHINE LEARNING - Unsupervised Learning Algorithms K means Cluster TechniquesVideo lesson
-
33Introduction to SQL - SQL Syntax and Download MySQLVideo lesson
-
34RDBMS - Data Integrity, Database NormalizationVideo lesson
-
35Data Definition Language (DDL)Video lesson
-
36Data Manipulation language (DML)Video lesson
-
37Data Control Languages (DCL) and Domain ConstraintsVideo lesson
-
38Filtering Data and SET Operators in SQLVideo lesson
-
39Conditional Expressions in SQLVideo lesson
-
40Grouping DataVideo lesson
-
41Joining Multiple Tables (JOINS)Video lesson
-
42SQL RANK FunctionsVideo lesson
-
43SQL Triggers and Stored ProceduresVideo lesson
-
44SQL Capstone Project 1 : Data Analytics on Movie Reviews in SQLVideo lesson
-
45DEEP LEARNING - Introduction to Neural Networks and Basics of MLP, BACKPROPVideo lesson
-
46DEEP LEARNING - In Depth Understanding of RNN and LSTM with ExamplesVideo lesson
-
47DEEP LEARNING - Intuition Behind the Computer Vision and CNN AlgorithmVideo lesson
-
48DEEP LEARNING - Convolutional Neural Networks with Pizza and CIFAR ProjectsVideo lesson
-
49DEEP LEARNING - Practical Examples on Transfer Learning for Vgg16 ModelVideo lesson
-
50DEEP LEARNING - Web Based Flask Framework for Wild Animal Recognition with CNNVideo lesson
-
51Introduction to Excel WorkbookVideo lesson
-
52Hands on Excel Cells and RangesVideo lesson
-
53Basic Formulae - Logical OperatorsVideo lesson
-
54Excel - Lookup and Reference FormulaeVideo lesson
-
55Excel - Logical FormulaeVideo lesson
-
56Text and Statistical FormulaeVideo lesson
-
57Excel - Date & Time FormulaeVideo lesson
-
58Excel - Sorting & FilteringVideo lesson
-
59Dynamic Charts With ExamplesVideo lesson
-
60Derive Insights with Pivot TablesVideo lesson

External Links May Contain Affiliate Links read more