Learn Data Science Machine Learning And Neural Networks
Published 1/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.23 GB | Duration: 6h 58m
Published 1/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.23 GB | Duration: 6h 58m
Learn Machine Learning, Data Science, Neural Networks and Artificial Intelligence with Python and libraries
What you'll learn
Visualizing Data
Charts with matplotlib
Linear Algebra
Python Programming Language
Statistics
Probability
Bayes's Theorem, Distributions
Hypothesis and Inference
Gradient Descent
Stochastic Gradient Descent
Working with Data
Machine Learning
k-Nearest Neighbors
Naive Bayes
Simple Linear Regression, Multiple Regression and Logistic Regression
Decision Trees
Neural Networks
Clustering
Natural Language Processing
Network Analysis
Recommender Systems
MapReduce
Requirements
A bit of Python experience will come handy.
Description
Unlock the boundless potential of data by enrolling in our comprehensive course, "Mastering Machine Learning, Data Science, Neural Networks, and Artificial Intelligence with Python and Libraries." This meticulously crafted program is designed to empower individuals with the skills and knowledge needed to navigate the dynamic landscape of modern technology.Course Overview:In this immersive learning journey, participants will delve into the core principles of Machine Learning, Data Science, Neural Networks, and Artificial Intelligence using Python as the primary programming language. The course is structured to cater to both beginners and intermediate learners, ensuring a gradual progression from fundamental concepts to advanced applications.Key Highlights:Foundations of Machine Learning:Gain a solid understanding of machine learning fundamentals, algorithms, and models.Explore supervised and unsupervised learning techniques.Master feature engineering, model evaluation, and hyperparameter tuning.Data Science Essentials:Learn the art of extracting valuable insights from data.Acquire proficiency in data manipulation, cleaning, and exploratory data analysis.Harness the power of statistical analysis for informed decision-making.Neural Networks and Deep Learning:Dive into the realm of neural networks and deep learning architectures.Understand the mechanics of artificial neural networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs).Implement state-of-the-art deep learning models using Python libraries.Artificial Intelligence (AI) Applications:Explore the practical applications of AI in various industries.Work on real-world projects that simulate the challenges faced by AI professionals.Develop skills in natural language processing (NLP) and computer vision.Hands-On Python Programming:Enhance your Python programming skills to effectively implement machine learning algorithms.Leverage popular Python libraries such as NumPy, Pandas, Matplotlib, and Scikit-Learn.Gain proficiency in handling large datasets and deploying machine learning models.Why Choose Our Course?Comprehensive Curriculum: Our curriculum is meticulously curated to cover a wide spectrum of topics, ensuring a holistic understanding of machine learning, data science, neural networks, and artificial intelligence.Practical Applications: The course emphasizes hands-on learning through real-world projects, enabling participants to apply theoretical knowledge to practical scenarios.Expert Guidance: Learn from industry experts and seasoned professionals who bring a wealth of practical experience to the classroom.Career Opportunities: Equip yourself with in-demand skills sought by employers in the rapidly evolving fields of machine learning and artificial intelligence.Community and Networking: Connect with like-minded individuals, share insights, and build a valuable network within the data science and AI community.Embark on a transformative learning experience that will not only equip you with the skills to thrive in the world of machine learning and artificial intelligence but also position you as a proficient practitioner ready to tackle complex challenges in the data-driven era. Join us on this exciting journey to master the intricacies of Python, machine learning, data science, neural networks, and artificial intelligence!
Overview
Lecture 1 Introduction
Lecture 2 Hello from another VP
Lecture 3 Hello from another VP - 2
Lecture 4 Graphical Experience - 2
Section 1: Visualizing Data in Python
Lecture 5 Introduction
Lecture 6 Bar Charts
Lecture 7 Bar Charts - 2
Lecture 8 Bar Charts - 3
Lecture 9 Line Charts
Lecture 10 Scatterplots
Section 2: Linear Algebra
Lecture 11 Vectors
Lecture 12 Vectors - 2
Lecture 13 Vectors - 3
Lecture 14 Matrices
Lecture 15 Matrices - 2
Section 3: Statistics
Lecture 16 Introduction
Lecture 17 Statistics
Lecture 18 Central Tendencies
Lecture 19 Central Tendencies - 2
Lecture 20 Dispersion
Lecture 21 Correlation
Lecture 22 Correlation - 2
Section 4: Probability in Python
Lecture 23 Probability
Lecture 24 Dependence and Independence
Lecture 25 Conditional Probability
Lecture 26 Boy and Girl Probability
Lecture 27 Bayes Theorem
Lecture 28 Random Variables
Lecture 29 Continuous Distributions
Lecture 30 Normal Distribution
Lecture 31 Central Limit Theorem
Lecture 32 Central Limit Theorem - 2
Section 5: Inference and Hypothesis
Lecture 33 Hypothesis Testing and Coin Examples
Lecture 34 Coin Example
Lecture 35 Coin Example - 2
Lecture 36 Coin Example - 3
Lecture 37 Coin Example - 4
Lecture 38 Confidence Interval
Lecture 39 P-Hacking
Lecture 40 A/B Testing
Lecture 41 Bayesian Inference
Section 6: Gradient Descent
Lecture 42 Gradient Descent
Lecture 43 Estimating
Lecture 44 Estimating - 2
Lecture 45 Right Step Size
Lecture 46 Additional Details
Lecture 47 Stochastic Gradient Descent
Section 7: Data Exploration and Working with Data
Lecture 48 Data Exploration and Working with Data
Lecture 49 Two Dimensions
Lecture 50 Plenty of Dimensions
Lecture 51 Cleaning
Lecture 52 Cleaning - 2
Lecture 53 Manipulation
Lecture 54 Manipulation - 2
Lecture 55 Manipulation - 3
Lecture 56 Manipulation - 4
Lecture 57 Rescaling
Lecture 58 Rescaling - 2
Lecture 59 Dimensionality Reduction
Lecture 60 Dimensionality Reduction - 2
Lecture 61 Dimensionality Reduction - 3
Section 8: Introduction to Machine Learning
Lecture 62 Introduction to Machine Learning
Lecture 63 Over-fitting and Under-fitting
People who are interested in Python Programming Language,People who are interested in Machine Learning,People who are interested in Data Science,People who are interested in Artificial Intelligence,People who are interested in Neural Networks,People who are interested in Data Visualization