Award winning Machine Learning Masterclass E-Learning Training with access to an online mentor via chat or email, final exam assessment and Practice Labs.
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Product description
Machine Learning Masterclass E-Learning
From programmer to ML/DL architect – master machine learning one step at a time!
Why choose this training?
In today's data-driven world, Machine Learning Architects are key to unlocking predictive AI. They analyze real-time data to automate and optimize workflows across industries, moving businesses from reactive to proactive decision-making.
This Machine Learning Masterclass E-Learning Training is your guide from ML programmer to advanced ML/DL architect. You'll gain a solid foundation in computation theory, algorithms, and real-world implementation of both machine learning and deep learning.
1 year of 24/7 access to interactive learning
Certificate of completion included
Hands-on exercises and progress tracking
This course includes four specialized tracks:
Track 1: ML Programmer
Track 2: DL Programmer
Track 3: ML Engineer
Track 4: ML Architect
Who should enroll?
Perfect for:
Programmers transitioning to ML experts
Data scientists looking to dive deeper into deep learning
AI enthusiasts eager to shape real-world solutions
Engineers building intelligent systems
IT professionals preparing for the AI-driven future
This learning path, with more than 100 hours of online content, is divided into the following four tracks:
Track 1: Machine Learning Programmer
In this track of the machine learning journey, the focus is linear regression, computational theory, and training sets.
Demo Machine Learning Masterclass Training
Content: E-learning courses
NLP for ML with Python: NLP Using Python & NLTK
Course: 1 Hour, 3 Minutes
Course Overview
Uses and Challenges of NLP
Terminologies and Steps of NLP
Parsing Approach and Parser Types
Corpus and Corpus Linguistic
Regular Expressions in Python
NLP Libraries
NLTK Setup
Components of NLP
Tokenization
Tokenization with NLTK
Stop Words with NLTK
Exercise: NLP Terminologies and Stopworks
NLP for ML with Python: Advanced NLP Using spaCy & Scikit-learn
Course: 41 Minutes
Course Overview
Stemming and Lemmatization
Synonyms and Antonyms with NLTK
Topic Extraction with LDA
NER and Standard Libraries
POS Tagging and NLTK Implementations
spaCy Framework
Analyzing and Processing Texts
Text Classification Using scikit-learn
Sentiment Analysis
Exercise: Sentiment Analysis with scikit-learn
Linear Algebra and Probability: Fundamentals of Linear Algebra
Course: 1 Hour, 41 Minutes
Course Overview
Linear Algebra and Machine Learning
Class of Spaces
Types of Vector Space
Linear Product Vector and Theorems
Vector Arithmetic
Vector Scalar Multiplication
Vector Norms
Matrix Arithmetic
Working with Matrix
Matrix Operations
Matrix Decomposition
Exercise: Vector Norms and Matrix Arithmetic
Linear Algebra & Probability: Advanced Linear Algebra
Course: 1 Hour, 44 Minutes
Course Overview
Matrix and PCA
Sparse Matrix
Tensor Arithmetic
Hadamard Product and Tensors
Singular-Value Decomposition
Reconstruct Rectangular Matrix Using SVD
Probability
Probability Basics and Propositions
Random Variable
Central Limit Theorem
Parameter Estimation and Gaussian Distribution
Binomial Distribution
Exercise: Tensor Arithmetic and Hadamard Product
Linear Regression Models: Introduction to Linear Regression
Course: 1 Hour, 19 Minutes
Course Overview
Statistical Tools and Regression
Reasons to Use Regression
Regression Loss: Least Square Error
Capturing Variance in Regression
Prediction Using Regression
Introduction to Deep Learning
The Architecture of Neural Networks
Neurons: The Building Blocks of a Neural Network
Linear Regression Using a Single Neuron
Training a Neural Network
Gradient Descent Optimization
Exercise: Introduction to Linear Regression
Linear Regression Models: Building Simple Regression Models with Scikit Learn and Keras
Course: 42 Minutes
Course Overview
Statistical Tools and Regression
Reasons to Use Regression
Regression Loss: Least Square Error
Capturing Variance in Regression
Prediction Using Regression
Introduction to Deep Learning
The Architecture of Neural Networks
Neurons: The Building Blocks of a Neural Network
Linear Regression Using a Single Neuron
Training a Neural Network
Gradient Descent Optimization
Exercise: Introduction to Linear Regression
Linear Regression Models: Multiple and Parsimonious Linear Regression
Course: 1 Hour, 11 Minutes
Course Overview
Understanding Multiple Regression
Kitchen Sink Regression
Training and Evaluating the Model
Preparing Data for a Neural Network
Building a Neural Network
Evaluating the Neural Network
Finding Correlations in a Dataset
Introducing Parsimonious Regression
Applying Parsimonious Regression with Scikit Learn
Exercise: Multiple Linear Regression
Linear Regression Models: An Introduction to Logistic Regression
Course: 58 Minutes
Course Overview
Introducing Logistic Regression
The Logistic Regression Curve
Logistic Regression and Classification
Logistic Regression vs. Linear Regression
Logistic Regression in Keras
Preparing Data for Logistic Regression
Classification using a Logistic Regression Model
Preparing Data for a Neural Network
Building and Evaluating the Keras Classifier
Exercise: An Introduction to Logistic Regression
Linear Regression Models: Simplifying Regression and Classification with Estimators
Course: 36 Minutes
Course Overview
Introducing Estimators
Preparing Data for a Linear Regressor Estimator
Training and Evaluating a Regressor Estimator
Preparing Data for a Linear Classifier Estimator
Training and Evaluating a Classifier Estimator
Exercise: Using TensorFlow Estimators
Computational Theory: Language Principle & Finite Automata Theory
Course: 45 Minutes
Course Overview
Theory of Computation
Computation Models
Automata Theory and Classes
Principles of Finite State Machine
Principles of Formal Languages and Automata Theory
Elements of Formal Language
Regular Expressions
Regular Grammar
Closure Properties of Regular Languages
Context-Free Grammar Features
Exercise: Computation Theory and Formal Language
Computational Theory: Using Turing, Transducers, & Complexity Classes
Course: 47 Minutes
Course Overview
Analytical Capabilities of Grammar
Normal Forms in Context-Free Grammar
Pushdown Automata
Turing Machines
Turing Machine Themes
Finite Transducers Types
Computation Limitations
Computational Complexity
P and NP Class
Recursively Enumerable Languages
Exercise: Turing Machines and Finite Transducers
Model Management: Building Machine Learning Models & Pipelines
Course: 32 Minutes
Course Overview
Machine Learning Algorithms and Models
Machine Learning Model Types
Machine Learning Model Development
Creating and Saving ML Models with scikit-learn
Models for Regression and Classification Management
Bayesian Methods: Implementing Bayesian Model and Computation with PyMC
Course: 48 Minutes
Course Overview
Bayesian Learning
Bayesian Model Types
Probabilistic Programming
Modeling with PyMC
Bayesian Data Analysis Process
Bayesian Data Analysis with PyMC
Bayesian Computation Methods
Markov Chain Simulation
Implementing Markov Chain Simulation
Finding Posterior Modes
Exercise: Bayesian Modeling with PyMC
Bayesian Methods: Advanced Bayesian Computation Model
Course: 52 Minutes
Course Overview
Bayesian Model and Linear Regression
Hierarchical Linear Model
Probability Model
Building Probability Models
Non-Linear Model
Gaussian Process
Mixture Model
Dirichlet Process Model
Bayesian Modeling with PyMC
Exercise: Implement Bayesian models
Reinforcement Learning: Essentials
Course: 30 Minutes
Course Overview
Reinforcement Learning Basics
Reinforcement Learning and Machine Learning
Reinforcement Learning Flow
State Change and Transition Process
Rewards and Reinforcement Learning
Agents in Reinforcement Learning
Types of Reinforcement Learning Environment
OpenAI
Exercise: Reinforcement Learning Elements
Reinforcement Learning: Tools & Frameworks
Course: 35 Minutes
Course Overview
Reinforcement Learning Types
Reinforcement Learning with Keras and Python
Markov Decision Process
Q-Learning Concepts
TensorFlow Installation
Reinforcement Learning and TensorFlow
Q-learning and Python
Exercise: Reinforcement Learning with Python
Math for Data Science & Machine Learning
Course: 1 Hour, 2 Minutes
Course Overview
Work with Vectors
Basis and Projection of Vectors
Work with Matrices
Matrix Multiplication
Matrix Division
Linear Transformations
Gaussian Elimination
Determinants
Orthogonal Matrices
Eigenvalues
Eigenvectors
Pseudo Inverse
Exercise: Math for Data Science and Machine Learning
Building ML Training Sets: Introduction
Course: 1 Hour, 10 Minutes
Course Overview
Loading and Exploring a Dataset
The Binarizer
The MinMaxScaler
The StandardScaler
The Normalizer
The MaxAbsScaler
Label Encoding
One-Hot Encoding
Exercise: Building ML Training Sets
Building ML Training Sets: Preprocessing Datasets for Linear Regression
Course: 51 Minutes
Course Overview
Loading and Analyzing a Dataset
Scaling and Encoding the Data
Analyzing the Effects of Preprocessing
Standardizing Continuous Data
Exercise: Preprocessing Data for Regression
Building ML Training Sets: Preprocessing Datasets for Classification
Course: 44 Minutes
Course Overview
Loading and Scaling a Dataset
Spotting Correlations in a Dataset
Principal Component Analysis
Normalizing a Dataset
Exercise: Processing Data for Classification
Linear Models & Gradient Descent: Managing Linear Models
Course: 48 Minutes
Course Overview
Linear Model and its Classification
Linear Modeling Approach
Generalized Linear Model
ANOVA and ANCOVA
Linear Model Implementation
Bias, Variance and Regularization
Ensemble Techniques
Bagging Implementation
Implementing Boosting Algorithm
Exercise: Linear Models and Ensemble
Linear Models & Gradient Descent: Gradient Descent and Regularization
Course: 54 Minutes
Course Overview
Types of Linear Regression
Simple and Multiple Regression
Implementing Simple Regression
Implementing Multiple Regression
Gradient Descent and Types
Gradient Descent Optimization Algorithms
Implementing Gradient Descent
Implementing Mini Batch Gradient Descent
Regularization Types
Implementing L1 & L2 Regularization
Exercise: Regression and Gradient Descent
Online Mentor
You can reach your Mentor by entering chats or submitting an email.
Final Exam assessment
Estimated duration: 90 minutes
Practice Labs: Machine Learning Programming with Python (estimated duration: 8 hours)
Perform ML programming tasks with Python, such as splitting data and standardizing data, and classification using nearest neighbors and ridge regression. Then, test your skills by answering assessment questions after performing principal component analysis, visualizing correlations, training a naive Bayes model and a support vector machine model. This lab provides access to several tools commonly used in ML, including: o Microsoft Excel 2016, Visual Studio Code, Anaconda, Jupyter Notebook + JupyterHub, Pandas, NumPy, SiPy, Seaborn Library, Spyder IDE
Track 2: Deep Learning Programmer
In this track of the machine learning journey, the focus is neural networks, CNNs, RNNs, and ML algorithms. Content: E-learning courses
Getting Started with Neural Networks: Biological & Artificial Neural Networks
Course: 59 Minutes
Course Overview
Neural Network Fundamentals
Biological Neural Network
Artificial Neural Network Structure
Neural Network Architecture
Computational Models in Neural Networks
Neurons Interconnection
Threshold Functions and Artificial Neural Networks
Implementing Neural Networks
Building Neural Network Models
Use Cases of Artificial Neural Network
Exercise: Implement Neural Networks
Getting Started with Neural Networks: Perceptrons & Neural Network Algorithms
Course: 45 Minutes
Course Overview
Perceptrons
Single Layer Perceptron Training Model
Multilayer Perceptrons
Linear and Non-Linear Functions
Implement Perceptrons with Python
Backpropagation
Activation Functions
Perceptron Classifier
Exercise: Implement Perceptrons
Building Neural Networks: Development Principles
Course: 1 Hour, 21 Minutes
Course Overview
Artificial Neural Network Processing Components
Learning and Training in Artificial Neural Network
Cluster Analysis in Artificial Neural Network
Neural Network Building Blocks
Perceptron to Deep Neural Network
Model and Hyperparameter
Classification with Neural Networks
Deep Learning Frameworks
Neural Network Categorization
Neural Network Computational Model
Exercise: ANN Training and Classification
Building Neural Networks: Artificial Neural Networks Using Frameworks
Course: 1 Hour, 55 Minutes
Course Overview
Neural Network Building Components8
Evolutionary Algorithms and Gradient Descent
Build Neural Networks
Building Neural Networks with PyTorch
Object Image Classification
Learning Rates and Deep Learning Optimization
Optimizing Speed
Dense Network Tuning Using Hyperas
Linear Model with Estimators
Neural Network for Predictions
Optimization Approach for Predictions
Exercise: Build Neural Networks
Training Neural Networks: Implementing the Learning Process
Course: 1 Hour, 40 Minutes
Course Overview
Perceptrons and Neural Networks
Perceptron Learning Algorithm
Learning Rules in Neural Networks
Supervised and Unsupervised Learning
Neural Network Algorithms
Data Preparation For Neural Networks
ANN Training Process in Python
Algorithms to Train Neural Networks
Backpropagation in Python
Classification Algorithm for Learning
Regularization in Multilayer Perceptrons
Exercise: Implement ANN Learning
Training Neural Networks: Advanced Learning Algorithms
Exercise: Implement RNN Using TensorFlow and Caffe
ML Algorithms: Multivariate Calculation & Algorithms
Course: 39 Minutes
Course Overview
Multivariate Calculus
Function Representation
Gradient and Derivative
Product and Chain Rule
Partial Differentiation
Linear Algebra
Gradient and Jacobian Matrix
Taylor's Theorem and Local Minima
Exercise: Multivariate Operations for Calculus
ML Algorithms: Machine Learning Implementation Using Calculus & Probability
Course: 31 Minutes
Course Overview
Probability and Machine Learning
Chain and Bayes Rules
Variance and Random Vectors
Estimation Parameters
Deep Learning and Calculus
R and Calculus
Calculus in Python
Series Expansion in Python
Exercise: Derivatives and Integrals with SymPy
Predictive Modeling: Predictive Analytics & Exploratory Data Analysis
Course: 41 Minutes
Course Overview
Predictive Analytics
Analytical Base Table
Business Problems and Predictive Modeling
Predictive Modeling with Python
Exploratory Data Analysis
Dataset and Variables Types
Missing Values and Outlier Management
Exercise: Predictive Modeling with Python
Predictive Modeling: Implementing Predictive Models Using Visualizations
Course: 42 Minutes
Course Overview
Feature Selection Algorithm
Predictive Models
Scatter Plots
Pearson's Correlation
Boxplot
Boxplot Using Python
Crosstab Using Python
Statistical Concepts for Predictive Models
Tree-Based Method
Best Practices for Predictive Modeling
Exercise: Implement Boxplots and Scatter Plots
Online Mentor
You can reach your Mentor by entering chats or submitting an email.
Final Exam assessment
Estimated duration: 90 minutes
Practice Labs: Deep Learning Programming with Python (estimated duration: 8 hours)
Perform DL programming tasks with Python, such as performing series expansion and calculus, and work with TensorFlow and scikit-image. Then, test your skills by answering assessment questions after loading a data set for hierarchical clustering and k-means clustering, and train a model using random forests and gradient boosting.
Track 3: Machine Learning Engineer
In this track of the machine learning journey, the focus is predictive modeling and analytics, ml modeling, and ml architecting. Content: E-learning collections
Predictive Modelling Best Practices: Applying Predictive Analytics
Course: 1 Hour, 27 Minutes
Course Overview
The Predictive Modeling Process
Statistical Concepts for Predictive Modeling
Regression Techniques for Predictive Analytics
Commonly Used Models for Predictive Analytics
Survival Analysis for Customer Churn
Market Basket Analysis
Data Clustering Models
Random Forests
Probabilistic Graphical Models
Classification Models
Best Practices for Predictive Modeling
Exercise: Applying Predictive Analytics Models
Planning AI Implementation
Course: 45 Minutes
Course Overview
Setting Expectations
Challenges of AI
The Importance of Training
The Need for Data and Algorithms
Understanding the Human Problem
Developing Organizational Capability
Management Challenges
Avoiding AI Pitfalls
Developing a Strategy
Data Quality
AI Needs and Tools
Exercise: Describe AI Planning Considerations
Automation Design & Robotics
Course: 36 Minutes
Course Overview
Automation Overview
Automation Targets
Display Status
Human-Computer Collaboration
Human Intervention
Software Testing Automation
Task Runners in Software Design and Development
DevOps and Automated Deployment
Software Design Patterns for Robotics
Process Automation Using Robotics
Modern Robotics and AI Designs
Exercise: Applying Automation and Robotics Design
ML/DL in the Enterprise: Machine Learning Modeling, Development, & Deployment
Course: 1 Hour, 5 Minutes
Course Overview
Challenges of Machine Learning
Machine Learning Process Stages
Machine Learning Development Lifecycle
Machine Learning Workflow
Machine Learning Training Process
Machine Learning Platforms
Machine Learning Data Modelling and Processing
H2O Machine Learning Environment
Data Source Management
Machine Learning Pipeline
Git Code Movement
Exercise: Machine Learning Training Processes
ML/DL in the Enterprise: Machine Learning Infrastructure & Metamodel
Course: 54 Minutes
Course Overview
Infrastructure for Data and Process
Machine Learning and Data Pipeline
Machine Learning Models
Machine Learning Visualization
Machine Learning Frameworks and Tools
Working with H
Model Metadata and Governance
Risk Mitigation
Exercise: Build Data Pipelines and Visualization
Enterprise Services: Enterprise Machine Learning with AWS
Course: 1 Hour, 14 Minutes
Course Overview
Cloud and Machine Learning
Machine Learning Workflow Comparison
AWS Machine Learning Tools and Capabilities
Cloud Machine Learning Implementation Comparison
Generating Machine Learning Objects and Prediction
Amazon Machine Learning Console
Amazon SageMaker Architecture
Using Amazon SageMaker
Lex, Polly, and Transcribe
Amazon SageMaker Neo
Augmented Manifest in Amazon SageMaker
Amazon SageMaker Model Tuning
Amazon SageMaker Automatic Tuning
Course Summary
Enterprise Services: Machine Learning Implementation on Microsoft Azure
Course: 1 Hour, 13 Minutes
Course Overview
Azure Machine Learning Tools and Capabilities
Comparing Azure ML Studio and Azure ML Service
Creating & Configuring Azure ML Service Workspace
Building ML Pipelines with Azure ML Service
Working with Azure ML Studio
Using Azure ML Service Visual Interface
Working with Azure Open Datasets
Azure MLOps
Azure ML R Notebooks
Pipelines with Azure Data Lake and Azure ML
CI/CD for Machine Learning with Azure Pipeline
Using Microsoft DevLabs Extension
Course Summary
Enterprise Services: Machine Learning Implementation on Google Cloud Platform
Course: 1 Hour, 2 Minutes
Course Overview
GCP Machine Learning Tools and Capabilities
Google Cloud Platform ML Capabilities
Training and Job Execution with GCloud and Console
You can reach your Mentor by entering chats or submitting an email.
Final Exam assessment
Estimated duration: 90 minutes
Practice Labs: Architecting ML/DL Apps with Python (estimated duration: 8 hours)
Perform architecting tasks such as binning data, imputing values, performing cross validation, and evaluating a classification model. Then, test your skills by answering assessment questions after validating a model, tuning parameters, refactoring a machine learning model, and saving and loading models using Python.
Track 4: Machine Learning Architect
In this track of the machine learning journey, the focus is applied predictive modeling, CNNs and RNNs, and ML algorithms. Content: E-learning collections
Applied Predictive Modeling
Course: 1 Hour, 8 Minutes
Course Overview
Overview of Predictive Modeling
Exploratory Data Analysis
Overview of Regression Methods
Linear Regression in Python
Logistic Regression in Python
Overview of Clustering Methods
Hierarchical Clustering in Python
K-Means Clustering in Python
Overview of Decision Trees and Random Forests
Decision Trees in Python
Random Forests in Python
Exercise: Apply Predictive Models
Implementing Deep Learning: Practical Deep Learning Using Frameworks & Tools
Course: 1 Hour
Course Overview
Comparing DL and ML
ML/DL Workflow
Deep Learning Network Components
DL/ML Frameworks
Recurrent CNN with Caffe
Autoencoders and PyTorch
Deep Neural Network Implementation
Platform and Framework Comparison
Selecting the Right ML/DL Frameworks
Challenges of Debugging Deep Learning Networks
Exercise: Using DL Frameworks and Tools
Implementing Deep Learning: Optimized Deep Learning Applications
Course: 43 Minutes
Course Overview
Computational Graph and Deep Learning
Accelerating Architectures
GPU Interfaces
TFX and Pipeline Components for ML Pipelines
Setting up TFX
Build TFX Pipeline
Using TFMA
Practical Consideration for DL Build and Train
Deep Learning Parameters
Exercise: Optimizing Deep Learning Applications
Applied Deep Learning: Unsupervised Data
Course: 1 Hour, 28 Minutes
Course Overview
Deep Learning to Model NLP and Audio Analysis
Recurrent Neural Network Architectures
Unsupervised Learning Challenges in Deep Learning
Generative and Discriminative Classifiers
Types of Generative Models
PixelCNN Setup
Differences between MLP, CNN, and RNN
ResNet for Computer Vision
Encoders and Autoencoders
Exercise: RNN and ResNet
Applied Deep Learning: Generative Adversarial Networks and Q-Learning
Course: 45 Minutes
Course Overview
Implement Autoencoder Using Keras
Implementing Generative Adversarial Networks
Building GAN Model Using Python and Keras
Generative Adversarial Network Challenges
Deep Reinforcement Learning
Deep RL and Deep Learning Comparison
Generative Adversarial Network Variations
Deep Q-Learning
Deep Q-Learning in Python
Exercise: Implementing GAN and Deep Q-Learning
Advanced Reinforcement Learning: Principles
Course: 1 Hour, 13 Minutes
Course Overview
Reinforcement Learning Concepts
Comparing Reinforcement and Machine Learning
Reinforcement Learning Use Cases
Reinforcement Learning Terms and Workflow
Reinforcement Learning Implementation Approaches
Reinforcement Learning Algorithms
Markov Decision Process and Its Variants
Markov Reward Process and Value Functions
Markov Decision Process Toolbox Capabilities
Exercise: Reinforcement Learning and MDP Toolbox
Advanced Reinforcement Learning: Implementation
Course: 1 Hour, 35 Minutes
Course Overview
Installing the Markov Decision Process Toolbox
Rewards and Discounts
Multi-Armed Bandit Problem
Dynamic Programming and Bellman Equation
Reinforcement Learning Agent and Its Components
Reinforcement Learning with OpenAI Gym and Keras
Reinforcement Learning Taxonomy by OpenAI
Deep Q-Learning Implementation
Training DNN Using Reinforcement Learning
Exercise: Implementing Deep Q-Learning
ML/DL Best Practices: Machine Learning Workflow Best Practices
Course: 53 Minutes
Course Overview
Installing the Markov Decision Process Toolbox
Rewards and Discounts
Multi-Armed Bandit Problem
Dynamic Programming and Bellman Equation
Reinforcement Learning Agent and Its Components
Reinforcement Learning with OpenAI Gym and Keras
Reinforcement Learning Taxonomy by OpenAI
Deep Q-Learning Implementation
Training DNN Using Reinforcement Learning
Exercise: Implementing Deep Q-Learning
ML/DL Best Practices: Building Pipelines with Applied Rules
Course: 1 Hour, 4 Minutes
Course Overview
Troubleshooting Deep Learning and Using Checklists
ML Technical Challenges and Best Practices
Case Study to Analyze Impacts of Best Practices
Deployment Challenges and Patterns
Case Study of Deployment Approaches
Architecting and Building ML Pipelines
Rules for Building Machine Learning Pipelines
Feature Engineering Rules
Training-Serving Skew
Rules for Managing Optimization Refinement
ML Project Checklists for Project Managers
Course Summary
Research Topics in ML and DL
Course: 42 Minutes
Course Overview
Prevent Neural Networks from Overfitting
Multi-Label Learning Algorithms
Deep Residual Learning for Image Recognition
Transferable Features in Deep Neural Networks
Large-Scale Video Classification
Common Objects in Context
Generative Adversarial Nets
Scalable Nearest Neighbor Algorithms
Face Alignment with Ensemble of Regression Trees
Learning Deep Features for Scene Recognition
Extreme Learning Machine (ELM)
Exercise: Recognize Research Topics in ML and DL
Deep Learning with Keras
Course: 1 Hour, 56 Minutes
Course Overview
Neural Networks
Introduction to Keras
Keras Backend
Set up Keras
Model Types in Keras
Keras Layers
Regression Classification
Image Classification
Keras Metrics
Jupyter Notebooks
Dataset for Neural Network
Explore Your Dataset
Data Preparation
Compiling the Model
Training and Testing Neural Networks
Evaluate the Model
Making Predictions
Exercise: Using a Neural Network
Online Mentor
You can reach your Mentor by entering chats or submitting an email.
Final Exam assessment
Estimated duration: 90 minutes
Practice Labs: Architecting Advanced ML/DL Apps with Python (estimated duration: 8 hours)
Perform advanced ML/DL app architecture tasks using Python, such as loading a data set to train a simple multilayer perceptron (MLP), a Convolutional Neural Network (CNN) and an LSTM model. Then, test your skills by answering assessment questions after performing image and text classification using CNN.
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Specifications
Article number
118085180
SKU
118085180
Language
English
Qualifications of the Instructor
Certified
Course Format and Length
Teaching videos with subtitles, interactive elements and assignments and tests
Lesson duration
100 Hours
Assesments
The assessment tests your knowledge and application skills of the topics in the learning pathway. It is available 365 days after activation.
Online mentor
You will have 24/7 access to an online mentor for all your specific technical questions on the study topic. The online mentor is available 365 days after activation, depending on the chosen Learning Kit.
Online Virtuele labs
Receive 12 months of access to virtual labs corresponding to traditional course configuration. Active for 365 days after activation, availability varies by Training
Progress monitoring
Access to Material
365 days
Technical Requirements
Computer or mobile device, Stable internet connections Web browsersuch as Chrome, Firefox, Safari or Edge.
Support or Assistance
Helpdesk and online knowledge base 24/7
Certification
Certificate of participation in PDF format
Price and costs
Course price at no extra cost
Cancellation policy and money-back guarantee
We assess this on a case-by-case basis
Award Winning E-learning
Tip!
Provide a quiet learning environment, time and motivation, audio equipment such as headphones or speakers for audio, account information such as login details to access the e-learning platform.
Heeft u vragen over dit product of hulp nodig bij het bestellen? Onze AI-chatbot is 24/7 beschikbaar, of neem contact op via [email protected] of bel +31 36 760 1019
Heeft u vragen over dit product of hulp nodig bij het bestellen? Onze AI-chatbot is 24/7 beschikbaar, of neem contact op via [email protected] of bel +31 36 760 1019
Award winning Machine Learning Masterclass E-Learning Training with access to an...
€1.208,79€999,00
Specifications
Article number
118085180
SKU
118085180
Language
English
Qualifications of the Instructor
Certified
Course Format and Length
Teaching videos with subtitles, interactive elements and assignments and tests
Lesson duration
100 Hours
Assesments
The assessment tests your knowledge and application skills of the topics in the learning pathway. It is available 365 days after activation.
Online mentor
You will have 24/7 access to an online mentor for all your specific technical questions on the study topic. The online mentor is available 365 days after activation, depending on the chosen Learning Kit.
Online Virtuele labs
Receive 12 months of access to virtual labs corresponding to traditional course configuration. Active for 365 days after activation, availability varies by Training
Progress monitoring
Access to Material
365 days
Technical Requirements
Computer or mobile device, Stable internet connections Web browsersuch as Chrome, Firefox, Safari or Edge.
Support or Assistance
Helpdesk and online knowledge base 24/7
Certification
Certificate of participation in PDF format
Price and costs
Course price at no extra cost
Cancellation policy and money-back guarantee
We assess this on a case-by-case basis
Award Winning E-learning
Tip!
Provide a quiet learning environment, time and motivation, audio equipment such as headphones or speakers for audio, account information such as login details to access the e-learning platform.
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