Data Science And Machine Learning Developer Certification
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.37 GB | Duration: 9h 51m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.37 GB | Duration: 9h 51m
Data Science | Machine Learning | Deep Learning | Keras | TensorFlow | Scikit
What you'll learn
Evaluate deep learning models using TensorFlow and Keras across various applications.
Identify and prepare raw data for analysis, modeling, and deployment in scalable ML workflows.
Apply supervised and unsupervised learning techniques to solve real-world prediction and classification tasks.
Develop end-to-end machine learning models using Python and open-source ML libraries.
Requirements
Exposure to coding (Python is helpful but not an absolute must).
Exposure to basic math (linear algebra is a plus but not required).
Description
Course Description:Are You Ready to Build Machine Learning Models That Work in the Real World?You’ve probably heard of machine learning, seen flashy headlines about AI beating humans at games or diagnosing diseases, and maybe even tried a few Python tutorials. But when it comes to actually building and deploying ML models that solve real business problems — it’s easy to get stuck. That’s where this course comes in.This is more than a course. It’s a complete, hands-on journey through the machine learning lifecycle — built for developers, analysts, and professionals who want to move from understanding theory to applying it with confidence.Whether you're looking to transition into a machine learning role, collaborate more effectively with data scientists, or lead a data-driven team, this course equips you with the tools, intuition, and experience to make an impact.Course OverviewThis course takes a practical approach to learning machine learning and deep learning. Rather than diving straight into math-heavy formulas or overly simplified toy problems, we focus on what you actually need to know to build intelligent systems — and how to do it using modern, open-source tools.Starting with the fundamentals of machine learning, you’ll explore how models learn, what makes them perform well (or poorly), and how to train and evaluate them using real-world data. You’ll work with classification algorithms like support vector machines and naive Bayes, and explore practical use cases such as admissions, forecasting, and outlier detection.As you advance, you’ll build deep learning models using TensorFlow and Keras — experimenting with architectures, layers, activation functions, and learning rates. You'll get hands-on experience with convolutional operations for image recognition, as well as transfer learning using pretrained models to boost performance on smaller datasets.You’ll also explore how to scale your models using pipelines and distributed systems, preparing you for real-world deployment challenges.What You Will LearnBy the end of this course, you will be able to:Develop end-to-end machine learning models using Python and open-source libraries like Scikit-learn, TensorFlow, and Keras.Apply supervised and unsupervised learning techniques to real-world datasets.Evaluate and fine-tune deep learning architectures including CNNs and pretrained models.Identify and prepare raw data for modeling, from feature engineering to training workflows.Scale your machine learning pipelines using cloud-based and distributed systems.What Makes This Course DifferentUnlike many theoretical or overly simplified machine learning courses, this one is designed around real-world use cases, industry-standard tools, and a strong emphasis on intuitive understanding. Every topic is built to be immediately applicable—not just academic. By the end of this course, you'll have written working code, developed practical workflows, and built a toolkit of reusable techniques.Here’s how this course stands apart:Hands-on from the start: You won’t just watch lectures—you actively write code, run experiments, and troubleshoot models.Focused on practical fundamentals: You learn topics like support vector machines, neural networks, and transfer learning through real-world examples, not abstract formulas.Built for modern ML roles: Whether you’re aiming to become a machine learning engineer, data scientist, or technical lead, this course prepares you with job-relevant skills.Uses professional-grade tools: You’ll work with TensorFlow, Keras, Scikit-learn, and other frameworks widely used in the machine learning industry.Ready to Get Started?If you’re looking for a course that goes beyond theory, teaches you how machine learning really works, and gets you building useful models right away — this is the course for you.Join now and start your journey toward becoming a skilled, job-ready machine learning practitioner. The future of AI isn’t just for PhDs — it’s for builders. Let’s get started.
Overview
Section 1: Introduction to Machine Learning
Lecture 1 Welcome and Course Goals
Lecture 2 Introduction to Machine Learning
Lecture 3 Getting Started with Your First Python Lab
Lecture 4 Analyzing Rainfall Data Using Pandas
Lecture 5 Navigating Data Structures with Pandas
Lecture 6 Loading and Preparing Data in Python
Lecture 7 Analyzing Flight Data with Pandas
Lecture 8 Visualizing Car Data with Matplotlib and Pandas
Lecture 9 Mastering Data Visualization in Python
Lecture 10 Comparing Seaborn and Matplotlib for Visualization
Lecture 11 Data Visualization with Matplotlib and Seaborn
Lecture 12 Understanding Statistical Measures for Exploratory Data Analysis
Lecture 13 Exploratory Data Analysis Overview
Lecture 14 Preparing Data with Scikit-Learn and PCA
Lecture 15 Applying Linear Regression with Scikit-Learn
Lecture 16 Modelling Tips with Linear Regression in Python
Lecture 17 Building Predictive Models Using Linear Regression and Gradient Descent
Lecture 18 Solving Real-World Problems with Regularized Linear Regression
Lecture 19 Implementing L1 and L2 Regularization Using Scikit-Learn
Lecture 20 Predicting Binary Outcomes with Logistic Regression
Lecture 21 Labs: Section 1
Section 2: Working with Real-World Data and Classifiers
Lecture 22 Understanding Support Vector Machines in Practice
Lecture 23 Evaluation Metrics, ROC Curves, and Naive Bayes Classification
Lecture 24 Classification: Accuracy, Precision, Recall, and Related Metrics
Lecture 25 Classifying College Admissions with Support Vector Machines (SVMs)
Lecture 26 Predicting College Admissions with Support Vector Machines
Lecture 27 Understanding and Applying Decision Trees for Classification and Regression
Lecture 28 Enhancing Model Performance with Random Forests
Lecture 29 Decision Trees and Random Forests in Practice
Lecture 30 Building a Decision Tree on the Prosper Loan Dataset
Lecture 31 Classifying Income Levels with Naïve Bayes
Lecture 32 Introduction to Unsupervised Learning and K-Means Clustering
Lecture 33 Principal Component Analysis (PCA) for Dimensionality Reduction
Lecture 34 Introduction to Principal Component Analysis
Lecture 35 Clustering Car Data with K-Means
Lecture 36 Exploring Wine Data Using PCA
Lecture 37 Labs: Section 2
Section 3: Exploring Deep Learning Concepts and Tools
Lecture 38 Introduction to Deep Learning and the Modern AI Landscape
Lecture 39 Exploring Linear Models in TensorFlow Playground
Lecture 40 Visualizing Neural Networks and Understanding Hyperparameters
Lecture 41 Introduction to TensorFlow
Lecture 42 Understanding TensorFlow Sessions
Lecture 43 Exploring TensorFlow’s Low-Level API
Lecture 44 TensorFlow Tensors and Sessions
Lecture 45 Linear Models in TensorFlow
Lecture 46 Implementing Linear Models with TensorFlow and Gradient Descent
Lecture 47 Implementing Linear Regression Using Low-Level TensorFlow APIs
Lecture 48 TensorFlow High-Level API and Estimators
Lecture 49 Understanding TensorFlow Estimators
Lecture 50 Applying Estimator and Keras APIs to Linear Models
Lecture 51 Keras API Documentation
Lecture 52 Exploring Hidden Layers with Complex Datasets
Lecture 53 Building and Training Deep Neural Networks with Low-Level and Keras APIs
Lecture 54 Modeling Iris Flower Classification with Estimator and Keras APIs
Lecture 55 Understanding Multilayer Perceptrons, Optimization, and Activation in Neural Net
Lecture 56 Labs: Section 3
Section 4: Section 4: Learning Image Processing with Convolutions
Lecture 57 Understanding Convolutional Neural Networks (CNNs)
Lecture 58 Building CNNs with TensorFlow
Lecture 59 Pooling Layers and Padding in CNNs
Lecture 60 Visualizing Training with TensorBoard
Lecture 61 Labs: Section 4
Section 5: Leveraging Pretrained Models with Transfer Learning
Lecture 62 Transfer Learning and Pretrained Models
Lecture 63 Recurrent Neural Networks in TensorFlow
Lecture 64 Understanding LSTM Networks
Lecture 65 Architecting Deep Learning Workflows with Keras and TensorFlow
Lecture 66 Labs: Section 5
Section 6: Building a Machine Learning Pipeline
Lecture 67 Scaling Machine Learning with TensorFlow and Distributed Systems
Lecture 68 Mastering Feature Engineering for Machine Learning
Lecture 69 Building Full ML Pipelines: From Data Exploration to Prediction
Lecture 70 A Guide to Monitoring Machine Learning Models in Production
Lecture 71 Labs: Section 6
Section 7: Closing Remarks
Lecture 72 Course Reflection and Continued Learning
Aspiring Data Scientists & ML Engineers: Developers and recent graduates looking to transition into machine learning roles or launch a career in data science.,Technical Professionals Enhancing ML Knowledge: Software engineers, information architects, and developers who want to deepen their understanding of ML/DL to better collaborate with data teams.,Analytics & BI Professionals: Business analysts and analytics managers seeking to apply data science techniques and lead ML-driven projects more effectively.,AI & ML Practitioners Upskilling: Working professionals in AI/ML aiming to formalize their skills, build scalable models, and stay current with industry tools.