Master Advanced Data Science -Data Scientist Aiml Experts Tm
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 13.06 GB | Duration: 31h 30m
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 13.06 GB | Duration: 31h 30m
Real-World Case Studies and Practical Applications in Data Science
What you'll learn
Data Science Sessions Part 1 & 2: Understand the foundational methodologies and approaches in data science.
Data Science vs Traditional Analysis: Compare modern data science techniques to traditional statistical methods.
Data Scientist Journey Parts 1 & 2: Explore the skills, roles, and responsibilities of a data scientist.
Data Science Process Overview Parts 1 & 2: Gain insights into the end-to-end data science process.
Introduction to Python for Data Science: Learn Python programming for data science tasks and analysis.
Python Libraries for Data Science: Master key Python libraries like Numpy, Pandas, and Matplotlib.
Introduction to R for Data Science: Get acquainted with R programming for statistical analysis.
Data Structures and Functions in Python & R: Handle and manipulate data efficiently using Python and R.
Introduction to Data Collection Methods: Understand various data collection techniques, including experimental methods.
Data Preprocessing (Parts 1 & 2): Clean and transform raw data to prepare it for analysis.
Exploratory Data Analysis (EDA): Detect outliers and anomalies to understand your data better.
Data Visualization Techniques: Choose the right visualization methods to represent data insights.
Tableau and Data Visualization: Utilize Tableau for advanced data visualization.
Inferential Statistics for Hypothesis Testing: Apply inferential statistics to test hypotheses and determine confidence intervals.
Introduction to Machine Learning: Learn the fundamentals of machine learning and its applications.
Unsupervised Learning (Clustering, DBSCAN, Dimensionality Reduction): Discover patterns and clusters in unlabeled datasets.
Supervised Learning (Regression, Classification, Decision Trees): Build and evaluate predictive models using labeled data.
Evaluation Metrics for Regression & Classification: Use various metrics to assess machine learning model performance.
Model Evaluation and Validation Techniques: Improve model robustness through bias-variance tradeoffs and validation techniques.
Ethical Challenges in Data Science: Address ethical concerns in data collection and model deployment.
Requirements
Anyone can learn this class it is very simple.
Description
This comprehensive Data Science Mastery Program is designed to equip learners with essential skills and knowledge across the entire data science lifecycle. The course covers key concepts, tools, and techniques in data science, from basic data collection and processing to advanced machine learning models. Here's what learners will explore:Core Data Science Fundamentals:Data Science Sessions Part 1 & 2 – Foundation of data science methodologies and approaches.Data Science vs Traditional Analysis – Comparing modern data science techniques to traditional statistical methods.Data Scientist Journey Parts 1 & 2 – Roles, skills, and responsibilities of a data scientist.Data Science Process Overview Parts 1 & 2 – An introduction to the step-by-step process in data science projects.Programming Essentials:Introduction to Python for Data Science – Python programming fundamentals tailored for data science tasks.Python Libraries for Data Science – In-depth exploration of key Python libraries like Numpy, Pandas, Matplotlib, and Seaborn.Introduction to R for Data Science – Learning the R programming language basics for statistical analysis.Data Structures and Functions in Python & R – Efficient data handling and manipulation techniques in both Python and R.Data Collection & Preprocessing:Introduction to Data Collection Methods – Understanding various data collection techniques, including experimental studies.Data Preprocessing – Cleaning, transforming, and preparing data for analysis (Parts 1 & 2).Exploratory Data Analysis (EDA) – Detecting outliers, anomalies, and understanding the underlying structure of data.Data Wrangling – Merging, transforming, and cleaning datasets for analysis.Handling Missing Data and Outliers – Techniques to manage incomplete or incorrect data.Visualization & Analysis:Data Visualization Techniques – Best practices for choosing the right visualization method to represent data.Tableau and Data Visualization – Leveraging advanced data visualization software.Inferential Statistics for Hypothesis Testing & Confidence Intervals – Key statistical concepts to test hypotheses.Machine Learning Mastery:Introduction to Machine Learning – Core concepts, types of learning, and their applications.Unsupervised Learning (Clustering, DBSCAN, Dimensionality Reduction) – Discovering patterns in unlabeled data.Supervised Learning (Regression, Classification, Decision Trees) – Building predictive models from labeled data.Evaluation Metrics for Regression & Classification – Techniques to evaluate model performance (e.g., accuracy, precision, recall).Model Evaluation and Validation Techniques – Methods for improving model robustness, including bias-variance tradeoffs.Advanced Topics in Data Science:Dimensionality Reduction (t-SNE) – Reducing complexity in high-dimensional datasets.Feature Engineering and Selection – Selecting the best features for machine learning models.SQL for Data Science – Writing SQL queries for data extraction and advanced querying techniques.Ethical Challenges in Data Science – Understanding the ethical implications in data collection, curation, and model deployment.Hands-on Applications & Case Studies:Data Science in Practice Case Study (Parts 1 & 2) – Real-world data science projects, combining theory with practical implementation.End-to-End Python & R for Data Science – Practical coding exercises to master Python and R in real data analysis scenarios.Working with Data Science Applications – Applying data science techniques in real-world situations.By the end of this program, learners will be equipped to handle end-to-end data science projects, including data collection, cleaning, visualization, statistical analysis, and building robust machine learning models. With hands-on projects, case studies, and a capstone, this course will provide a solid foundation in data science and machine learning, preparing learners for roles as data scientists and AI/ML professionals.
Overview
Section 1: Introduction
Lecture 1 Introduction
Section 2: Data Science Session 2
Lecture 2 Data Science Session 2
Section 3: Data Science Vs Traditional Analysis
Lecture 3 Data Science Vs Traditional Analysis
Section 4: Data Scientist Part1
Lecture 4 Data Scientist Part1
Section 5: Data Scientist Part2
Lecture 5 Data Scientist Part2
Section 6: Data Science Process Overview
Lecture 6 Data Science Process Overview
Section 7: Data Science Process Overview Part2
Lecture 7 Data Science Process Overview Part2
Section 8: Introduction to Python for Data Science
Lecture 8 Introduction to Python for Data Science
Section 9: Python Libraries for Data Science
Lecture 9 Python Libraries for Data Science
Section 10: Introduction to R for Data Science
Lecture 10 Introduction to R for Data Science
Section 11: R Programmig Basics AIML
Lecture 11 R Programmig Basics AIML
Section 12: Introduction to Python Programming
Lecture 12 Introduction to Python Programming
Section 13: Introduction to Python Programming Part2
Lecture 13 Introduction to Python Programming Part2
Section 14: Data Structures and Functions in Python
Lecture 14 Data Structures and Functions in Python
Section 15: End-to-End Python for AIML- Data Structures and Functions
Lecture 15 End-to-End Python for AIML- Data Structures and Functions
Section 16: Working with Libraries and Handling Files
Lecture 16 Working with Libraries and Handling Files
Section 17: Python Introduction to Numpy
Lecture 17 Python Introduction to Numpy
Section 18: Introduction to R Programming
Lecture 18 Introduction to R Programming
Section 19: Introduction to R Programming Part2
Lecture 19 Introduction to R Programming Part2
Section 20: Data Structures in R
Lecture 20 Data Structures in R
Section 21: Data Structures in R Part2
Lecture 21 Data Structures in R Part2
Section 22: R Programming
Lecture 22 R Programming
Section 23: R Programming Part2
Lecture 23 R Programming Part2
Section 24: Introduction to Data Collection Methods
Lecture 24 Introduction to Data Collection Methods
Section 25: Introduction to Data Collection Methods Experimental Studies
Lecture 25 Introduction to Data Collection Methods Experimental Studies
Section 26: Data Preprocessing
Lecture 26 Data Preprocessing
Section 27: Data Preprocessing Part2
Lecture 27 Data Preprocessing Part2
Section 28: Introduction to Exploratory Data Analysis EDA
Lecture 28 Introduction to Exploratory Data Analysis EDA
Section 29: EDA- Detecting Outliers and Anomalies in Data
Lecture 29 EDA- Detecting Outliers and Anomalies in Data
Section 30: Data Visualization in Data Science
Lecture 30 Data Visualization in Data Science
Section 31: Choosing the Right Visualization for Data
Lecture 31 Choosing the Right Visualization for Data
Section 32: Introduction to Statistical Analysis for Data Science
Lecture 32 Introduction to Statistical Analysis for Data Science
Section 33: Inferential Statistics for Hypothesis Testing & Confidence Intervals
Lecture 33 Inferential Statistics for Hypothesis Testing & Confidence Intervals
Section 34: Introduction to Data Science Tools and Software
Lecture 34 Introduction to Data Science Tools and Software
Section 35: Tableau and Data Visualization
Lecture 35 Tableau and Data Visualization
Section 36: Data Wrangling in Data Science
Lecture 36 Data Wrangling in Data Science
Section 37: Data Wrangling & EDA in Data Science
Lecture 37 Data Wrangling & EDA in Data Science
Section 38: Data Integration & Transformation for Data Science
Lecture 38 Data Integration & Transformation for Data Science
Section 39: Handling Missing Data and Outliers
Lecture 39 Handling Missing Data and Outliers
Section 40: Introduction to Machine Learning
Lecture 40 Introduction to Machine Learning
Section 41: ML Unsupervised Learning
Lecture 41 ML Unsupervised Learning
Section 42: Supervised Learning- Regression
Lecture 42 Supervised Learning- Regression
Section 43: Evaluation Metrics for Regression Models
Lecture 43 Evaluation Metrics for Regression Models
Section 44: Supervised Learning- Classification in Machine Learning
Lecture 44 Supervised Learning- Classification in Machine Learning
Section 45: Supervised Learning- Decision Trees
Lecture 45 Supervised Learning- Decision Trees
Section 46: Unsupervised Learning- Clustering
Lecture 46 Unsupervised Learning- Clustering
Section 47: Unsupervised Learning DBSCAN Clustering
Lecture 47 Unsupervised Learning DBSCAN Clustering
Section 48: Unsupervised Learning- Dimensionality Reduction
Lecture 48 Unsupervised Learning- Dimensionality Reduction
Section 49: Unsupervised Learning- Dimensionality Reduction with t-SNE
Lecture 49 Unsupervised Learning- Dimensionality Reduction with t-SNE
Section 50: Model Evaluation and Validation Techniques
Lecture 50 Model Evaluation and Validation Techniques
Section 51: Model Evaluation- Bias-Variance Tradeoffs
Lecture 51 Model Evaluation- Bias-Variance Tradeoffs
Section 52: Introduction to Python Libraries for Data Science
Lecture 52 Introduction to Python Libraries for Data Science
Section 53: Introduction to Python Libraries for Data Science Part2
Lecture 53 Introduction to Python Libraries for Data Science Part2
Section 54: Introduction to R Libraries for Data Science
Lecture 54 Introduction to R Libraries for Data Science
Section 55: Introduction to R Libraries for Data Science Statistical Modeling
Lecture 55 Introduction to R Libraries for Data Science Statistical Modeling
Section 56: Introduction to SQL for Data Science
Lecture 56 Introduction to SQL for Data Science
Section 57: SQL Queries for Data Science
Lecture 57 SQL Queries for Data Science
Section 58: SQL and Advanced Queries Part1
Lecture 58 SQL and Advanced Queries Part1
Section 59: SQL and Advanced Queries Part2
Lecture 59 SQL and Advanced Queries Part2
Section 60: Data Science in Practice- Case Study
Lecture 60 Data Science in Practice- Case Study
Section 61: Data Science in Practice- Case Study Part2
Lecture 61 Data Science in Practice- Case Study Part2
Section 62: Introduction to Data Science Ethics
Lecture 62 Introduction to Data Science Ethics
Section 63: Ethical Challenges in Data Collection and Curation
Lecture 63 Ethical Challenges in Data Collection and Curation
Section 64: Data Science Project Lifecycle
Lecture 64 Data Science Project Lifecycle
Section 65: Feature Engineering and Selection
Lecture 65 Feature Engineering and Selection
Section 66: Application- Working with Data Science
Lecture 66 Application- Working with Data Science
Section 67: Application Working with Data Science
Lecture 67 Application Working with Data Science
Anyone who wants to learn future skills and become Data Scientist, Sr. Data Scientist, Ai Scientist, Ai Engineer, Ai Researcher & Ai Expert.