University certificate
The world's largest artificial intelligence faculty”
Why study at TECH?
You will be able to design customized and intuitive user experiences through this 100% online university degree"
Computational Intelligence serves institutions to improve productivity in software development. Its tools have the ability to handle unstructured data, learn from past experiences and adapt to changes in dynamic environments. In addition, AI can predict potential application problems before they happen, allowing professionals to take preventative measures to avoid costly problems in the future. In this context, the most prestigious international IT companies are looking to actively incorporate Software Architecture specialists for QA Testing.
For this reason, TECH implements an innovative program for programmers to get the most out of optimization and performance management in AI tools. Designed by world-class experts, the curriculum will delve into programming algorithms to develop products with intelligent systems. The syllabus will also delve into the essential extensions for Visual Studio Code, today's most widely used source code editor. Moreover, the teaching materials will address the integration of AI in database management to detect possible failures and create unittests This is a university degree that has a diversity of audiovisual content in multiple formats and a network of real simulations to bring the development of the program closer to the reality of IT practice.
In order to achieve the proposed learning objectives, this program is taught through an online teaching methodology. In this way, professionals will be able to perfectly combine their work with their studies. In addition, you will enjoy a first-class teaching staff and multimedia academic materials of great pedagogical rigor such as master classes, interactive summaries or practical exercises. The only requirement for accessing the Virtual Campus is that students have an electronic device with Internet access, and can even use their cell phone.
You will gain a holistic perspective on how Machine Learning impacts and improves every stage of software development"
This Professional master’s degree in Artificial Intelligence in Programming contains the most complete and up-to-date program on the market. Its most notable features are:
- The development of practical cases presented by experts in Artificial Intelligence in programming
- The graphic, schematic, and practical contents with which they are created, provide scientific and practical information on the disciplines that are essential for professional practice
- Practical exercises where the self-assessment process can be carried out to improve learning
- Its special emphasis on innovative methodologies
- Theoretical lessons, questions to the expert, debate forums on controversial topics, and individual reflection assignments
- Content that is accessible from any fixed or portable device with an Internet connection
Are you looking to apply Transformational Models for natural language processing to your practice? Achieve it thanks to this innovative program"
The program’s teaching staff includes professionals from the field who contribute their work experience to this educational program, as well as renowned specialists from leading societies and prestigious universities.
The multimedia content, developed with the latest educational technology, will provide the professional with situated and contextual learning, i.e., a simulated environment that will provide immersive education programmed to learn in real situations.
This program is designed around Problem-Based Learning, whereby the professional must try to solve the different professional practice situations that arise during the academic year For this purpose, the students will be assisted by an innovative interactive video system created by renowned and experienced experts.
You will delve into the testing lifecycle, from the creation of test cases to the detection of bugs"
Relearning will enable you to learn with less effort and more performance, involving you more in your professional specialization"
Syllabus
This Professional master’s degree will provide graduates with a holistic approach, which will give them a significant advantage in IT development by equipping them with specific skills. To achieve this, the course will range from development environment preparation to software optimization and AI implementation in real projects. The syllabus will delve into aspects such as no-code design of interfaces, use of ChatGPT to optimize code or the application of Machine Learning in QA Testing. In this way, the graduates will implement innovative solutions in an effective way in various applications such as web and mobile projects.
Update your knowledge about Artificial Intelligence in Programming through innovative multimedia content"
Module 1. Fundamentals of Artificial Intelligence
1.1. History of Artificial Intelligence
1.1.1. When Do We Start Talking About Artificial Intelligence?
1.1.2. References in Film
1.1.3. Importance of Artificial Intelligence
1.1.4. Technologies that Enable and Support Artificial Intelligence
1.2. Artificial Intelligence in Games
1.2.1. Game Theory
1.2.2. Minimax and Alpha-Beta Pruning
1.2.3. Simulation: Monte Carlo
1.3. Neural Networks
1.3.1. Biological Fundamentals
1.3.2. Computational Model
1.3.3. Supervised and Unsupervised Neural Networks
1.3.4. Simple Perceptron
1.3.5. Multilayer Perceptron
1.4. Genetic Algorithms
1.4.1. History
1.4.2. Biological Basis
1.4.3. Problem Coding
1.4.4. Generation of the Initial Population
1.4.5. Main Algorithm and Genetic Operators
1.4.6. Evaluation of Individuals: Fitness
1.5. Thesauri, Vocabularies, Taxonomies
1.5.1. Vocabulary
1.5.2. Taxonomy
1.5.3. Thesauri
1.5.4. Ontologies
1.5.5. Knowledge Representation: Semantic Web
1.6. Semantic Web
1.6.1. Specifications RDF, RDFS and OWL
1.6.2. Inference/ Reasoning
1.6.3. Linked Data
1.7. Expert systems and DSS
1.7.1. Expert Systems
1.7.2. Decision Support Systems
1.8. Chatbots and Virtual Assistants
1.8.1. Types of Assistants: Voice and Text Assistants
1.8.2. Fundamental Parts for the Development of an Assistant: Intents, Entities and Dialog Flow
1.8.3. Integrations: Web, Slack, Whatsapp, Facebook
1.8.4. Assistant Development Tools: Dialog Flow, Watson Assistant
1.9. AI Implementation Strategy
1.10. Future of Artificial Intelligence
1.10.1. Understand How to Detect Emotions Using Algorithms
1.10.2. Creating a Personality: Language, Expressions and Content
1.10.3. Trends of Artificial Intelligence
1.10.4. Reflections
Module 2. Data Types and Data Life Cycle
2.1. Statistics
2.1.1. Statistics: Descriptive Statistics, Statistical Inferences
2.1.2. Population, Sample, Individual
2.1.3. Variables: Definition, Measurement Scales
2.2. Types of Data Statistics
2.2.1. According to Type
2.2.1.1. Quantitative: Continuous Data and Discrete Data
2.2.1.2. Qualitative: Binomial Data, Nominal Data and Ordinal Data
2.2.2. According to their Shape
2.2.2.1. Numeric
2.2.2.2. Text:
2.2.2.3. Logical
2.2.3. According to its Source
2.2.3.1. Primary
2.2.3.2. Secondary
2.3. Life Cycle of Data
2.3.1. Stages of the Cycle
2.3.2. Milestones of the Cycle
2.3.3. FAIR Principles
2.4. Initial Stages of the Cycle
2.4.1. Definition of Goals
2.4.2. Determination of Resource Requirements
2.4.3. Gantt Chart
2.4.4. Data Structure
2.5. Data Collection
2.5.1. Methodology of Data Collection
2.5.2. Data Collection Tools
2.5.3. Data Collection Channels
2.6. Data Cleaning
2.6.1. Phases of Data Cleansing
2.6.2. Data Quality
2.6.3. Data Manipulation (with R)
2.7. Data Analysis, Interpretation and Evaluation of Results
2.7.1. Statistical Measures
2.7.2. Relationship Indices
2.7.3. Data Mining
2.8. Data Warehouse (Datawarehouse)
2.8.1. Elements that Comprise it
2.8.2. Design
2.8.3. Aspects to Consider
2.9. Data Availability
2.9.1. Access
2.9.2. Uses
2.9.3. Security/Safety
2.10. Regulatory Aspects
2.10.1. Data Protection Law
2.10.2. Good Practices
2.10.3. Other Normative Aspects
Module 3. Data in Artificial Intelligence
3.1. Data Science
3.1.1. Data Science
3.1.2. Advanced Tools for Data Scientists
3.2. Data, Information and Knowledge
3.2.1. Data, Information and Knowledge
3.2.2. Types of Data
3.2.3. Data Sources
3.3. From Data to Information
3.3.1. Data Analysis
3.3.2. Types of Analysis
3.3.3. Extraction of Information from a Dataset
3.4. Extraction of Information Through Visualization
3.4.1. Visualization as an Analysis Tool
3.4.2. Visualization Methods
3.4.3. Visualization of a Data Set
3.5. Data Quality
3.5.1. Quality Data
3.5.2. Data Cleaning
3.5.3. Basic Data Pre-Processing
3.6. Dataset
3.6.1. Dataset Enrichment
3.6.2. The Curse of Dimensionality
3.6.3. Modification of Our Data Set
3.7. Unbalance
3.7.1. Classes of Unbalance
3.7.2. Unbalance Mitigation Techniques
3.7.3. Balancing a Dataset
3.8. Unsupervised Models
3.8.1. Unsupervised Model
3.8.2. Methods
3.8.3. Classification with Unsupervised Models
3.9. Supervised Models
3.9.1. Supervised Model
3.9.2. Methods
3.9.3. Classification with Supervised Models
3.10. Tools and Good Practices
3.10.1. Good Practices for Data Scientists
3.10.2. The Best Model
3.10.3. Useful Tools
Module 4. Data Mining: Selection, Pre-Processing and Transformation
4.1. Statistical Inference
4.1.1. Descriptive Statistics vs. Statistical Inference
4.1.2. Parametric Procedures
4.1.3. Non-Parametric Procedures
4.2. Exploratory Analysis
4.2.1. Descriptive Analysis
4.2.2. Visualization
4.2.3. Data Preparation
4.3. Data Preparation
4.3.1. Integration and Data Cleaning
4.3.2. Normalization of Data
4.3.3. Transforming Attributes
4.4. Missing Values
4.4.1. Treatment of Missing Values
4.4.2. Maximum Likelihood Imputation Methods
4.4.3. Missing Value Imputation Using Machine Learning
4.5. Noise in the Data
4.5.1. Noise Classes and Attributes
4.5.2. Noise Filtering
4.5.3. The Effect of Noise
4.6. The Curse of Dimensionality
4.6.1. Oversampling
4.6.2. Undersampling
4.6.3. Multidimensional Data Reduction
4.7. From Continuous to Discrete Attributes
4.7.1. Continuous Data Vs. Discreet Data
4.7.2. Discretization Process
4.8. The Data
4.8.1. Data Selection
4.8.2. Prospects and Selection Criteria
4.8.3. Selection Methods
4.9. Instance Selection
4.9.1. Methods for Instance Selection
4.9.2. Prototype Selection
4.9.3. Advanced Methods for Instance Selection
4.10. Data Pre-Processing in Big Data Environments
Module 5. Algorithm and Complexity in Artificial Intelligence
5.1. Introduction to Algorithm Design Strategies
5.1.1. Recursion
5.1.2. Divide and Conquer
5.1.3. Other Strategies
5.2. Efficiency and Analysis of Algorithms
5.2.1. Efficiency Measures
5.2.2. Measuring the Size of the Input
5.2.3. Measuring Execution Time
5.2.4. Worst, Best and Average Case
5.2.5. Asymptotic Notation
5.2.6. Mathematical Analysis Criteria for Non-Recursive Algorithms
5.2.7. Mathematical Analysis of Recursive Algorithms
5.2.8. Empirical Analysis of Algorithms
5.3. Sorting Algorithms
5.3.1. Concept of Sorting
5.3.2. Bubble Sorting
5.3.3. Sorting by Selection
5.3.4. Sorting by Insertion
5.3.5. Merge Sort
5.3.6. Quick Sort
5.4. Algorithms with Trees
5.4.1. Tree Concept
5.4.2. Binary Trees
5.4.3. Tree Paths
5.4.4. Representing Expressions
5.4.5. Ordered Binary Trees
5.4.6. Balanced Binary Trees
5.5. Algorithms Using Heaps
5.5.1. Heaps
5.5.2. The Heapsort Algorithm
5.5.3. Priority Queues
5.6. Graph Algorithms
5.6.1. Representation
5.6.2. Traversal in Width
5.6.3. Depth Travel
5.6.4. Topological Sorting
5.7. Greedy Algorithms
5.7.1. Greedy Strategy
5.7.2. Elements of the Greedy Strategy
5.7.3. Currency Exchange
5.7.4. Traveler’s Problem
5.7.5. Backpack Problem
5.8. Minimal Path Finding
5.8.1. The Minimum Path Problem
5.8.2. Negative Arcs and Cycles
5.8.3. Dijkstra's Algorithm
5.9. Greedy Algorithms on Graphs
5.9.1. The Minimum Covering Tree
5.9.2. Prim's Algorithm
5.9.3. Kruskal’s Algorithm
5.9.4. Complexity Analysis
5.10. Backtracking
5.10.1. Backtracking
5.10.2. Alternative Techniques
Module 6. Intelligent Systems
6.1. Agent Theory
6.1.1. Concept History
6.1.2. Agent Definition
6.1.3. Agents in Artificial Intelligence
6.1.4. Agents in Software Engineering
6.2. Agent Architectures
6.2.1. The Reasoning Process of an Agent
6.2.2. Reactive Agents
6.2.3. Deductive Agents
6.2.4. Hybrid Agents
6.2.5. Comparison
6.3. Information and Knowledge
6.3.1. Difference between Data, Information and Knowledge
6.3.2. Data Quality Assessment
6.3.3. Data Collection Methods
6.3.4. Information Acquisition Methods
6.3.5. Knowledge Acquisition Methods
6.4. Knowledge Representation
6.4.1. The Importance of Knowledge Representation
6.4.2. Definition of Knowledge Representation According to Roles
6.4.3. Knowledge Representation Features
6.5. Ontologies
6.5.1. Introduction to Metadata
6.5.2. Philosophical Concept of Ontology
6.5.3. Computing Concept of Ontology
6.5.4. Domain Ontologies and Higher-Level Ontologies
6.5.5. How to Build an Ontology?
6.6. Ontology Languages and Ontology Creation Software
6.6.1. Triple RDF, Turtle and N
6.6.2. RDF Schema
6.6.3. OWL
6.6.4. SPARQL
6.6.5. Introduction to Ontology Creation Tools
6.6.6. Installing and Using Protégé
6.7. Semantic Web
6.7.1. Current and Future Status of the Semantic Web
6.7.2. Semantic Web Applications
6.8. Other Knowledge Representation Models
6.8.1. Vocabulary
6.8.2. Global Vision
6.8.3. Taxonomy
6.8.4. Thesauri
6.8.5. Folksonomy
6.8.6. Comparison
6.8.7. Mind Maps
6.9. Knowledge Representation Assessment and Integration
6.9.1. Zero-Order Logic
6.9.2. First-Order Logic
6.9.3. Descriptive Logic
6.9.4. Relationship between Different Types of Logic
6.9.5. Prolog: Programming Based on First-Order Logic
6.10. Semantic Reasoners, Knowledge-Based Systems and Expert Systems
6.10.1. Concept of Reasoner
6.10.2. Reasoner Applications
6.10.3. Knowledge-Based Systems
6.10.4. MYCIN: History of Expert Systems
6.10.5. Expert Systems Elements and Architecture
6.10.6. Creating Expert Systems
Module 7. Machine Learning and Data Mining
7.1. Introduction to Knowledge Discovery Processes and Basic Concepts of Machine Learning
7.1.1. Key Concepts of Knowledge Discovery Processes
7.1.2. Historical Perspective of Knowledge Discovery Processes
7.1.3. Stages of the Knowledge Discovery Processes
7.1.4. Techniques Used in Knowledge Discovery Processes
7.1.5. Characteristics of Good Machine Learning Models
7.1.6. Types of Machine Learning Information
7.1.7. Basic Learning Concepts
7.1.8. Basic Concepts of Unsupervised Learning
7.2. Data Exploration and Pre-processing
7.2.1. Data Processing
7.2.2. Data Processing in the Data Analysis Flow
7.2.3. Types of Data
7.2.4. Data Transformations
7.2.5. Visualization and Exploration of Continuous Variables
7.2.6. Visualization and Exploration of Categorical Variables
7.2.7. Correlation Measures
7.2.8. Most Common Graphic Representations
7.2.9. Introduction to Multivariate Analysis and Dimensionality Reduction
7.3. Decision Trees
7.3.1. ID Algorithm
7.3.2. Algorithm C
7.3.3. Overtraining and Pruning
7.3.4. Analysis of Results
7.4. Evaluation of Classifiers
7.4.1. Confusion Matrixes
7.4.2. Numerical Evaluation Matrixes
7.4.3. Kappa Statistic
7.4.4. ROC Curves
7.5. Classification Rules
7.5.1. Rule Evaluation Measures
7.5.2. Introduction to Graphic Representation
7.5.3. Sequential Overlay Algorithm
7.6. Neural Networks
7.6.1. Basic Concepts
7.6.2. Simple Neural Networks
7.6.3. Backpropagation Algorithm
7.6.4. Introduction to Recurrent Neural Networks
7.7. Bayesian Methods
7.7.1. Basic Probability Concepts
7.7.2. Bayes' Theorem
7.7.3. Naive Bayes
7.7.4. Introduction to Bayesian Networks
7.8. Regression and Continuous Response Models
7.8.1. Simple Linear Regression
7.8.2. Multiple Linear Regression
7.8.3. Logistic Regression
7.8.4. Regression Trees
7.8.5. Introduction to Support Vector Machines (SVM)
7.8.6. Goodness-of-Fit Measures
7.9. Clustering
7.9.1. Basic Concepts
7.9.2. Hierarchical Clustering
7.9.3. Probabilistic Methods
7.9.4. EM Algorithm
7.9.5. B-Cubed Method
7.9.6. Implicit Methods
7.10. Text Mining and Natural Language Processing (NLP)
7.10.1. Basic Concepts
7.10.2. Corpus Creation
7.10.3. Descriptive Analysis
7.10.4. Introduction to Feelings Analysis
Module 8. Neural networks, the basis of Deep Learning
8.1. Deep Learning
8.1.1. Types of Deep Learning
8.1.2. Applications of Deep Learning
8.1.3. Advantages and Disadvantages of Deep Learning
8.2. Surgery
8.2.1. Sum
8.2.2. Product
8.2.3. Transfer
8.3. Layers
8.3.1. Input Layer
8.3.2. Cloak
8.3.3. Output layer
8.4. Union of Layers and Operations
8.4.1. Architecture Design
8.4.2. Connection between Layers
8.4.3. Forward Propagation
8.5. Construction of the First Neural Network
8.5.1. Network Design
8.5.2. Establish the Weights
8.5.3. Network Training
8.6. Trainer and Optimizer
8.6.1. Optimizer Selection
8.6.2. Establishment of a Loss Function
8.6.3. Establishing a Metric
8.7. Application of the Principles of Neural Networks
8.7.1. Activation Functions
8.7.2. Backward Propagation
8.7.3. Parameter Adjustment
8.8. From Biological to Artificial Neurons
8.8.1. Functioning of a Biological Neuron
8.8.2. Transfer of Knowledge to Artificial Neurons
8.8.3. Establish Relations between the Two
8.9. Implementation of MLP (Multilayer Perceptron) with Keras
8.9.1. Definition of the Network Structure
8.9.2. Model Compilation
8.9.3. Model Training
8.10. Fine Tuning Hyperparameters of Neural Networks
8.10.1. Selection of the Activation Function
8.10.2. Set the Learning Rate
8.10.3. Adjustment of Weights
Module 9. Deep Neural Networks Training
9.1. Gradient Problems
9.1.1. Gradient Optimization Techniques
9.1.2. Stochastic Gradients
9.1.3. Weight Initialization Techniques
9.2. Reuse of Pre-Trained Layers
9.2.1. Learning Transfer Training
9.2.2. Feature Extraction
9.2.3. Deep Learning
9.3. Optimizers
9.3.1. Stochastic Gradient Descent Optimizers
9.3.2. Optimizers Adam and RMSprop
9.3.3. Moment Optimizers
9.4. Learning Rate Programming
9.4.1. Automatic Learning Rate Control
9.4.2. Learning Cycles
9.4.3. Smoothing Terms
9.5. Overfitting
9.5.1. Cross Validation
9.5.2. Regularization
9.5.3. Evaluation Metrics
9.6. Practical Guidelines
9.6.1. Model Design
9.6.2. Selection of Metrics and Evaluation Parameters
9.6.3. Hypothesis Testing
9.7. Transfer Learning
9.7.1. Learning Transfer Training
9.7.2. Feature Extraction
9.7.3. Deep Learning
9.8. Data Augmentation
9.8.1. Image Transformations
9.8.2. Synthetic Data Generation
9.8.3. Text Transformation
9.9. Practical Application of Transfer Learning
9.9.1. Learning Transfer Training
9.9.2. Feature Extraction
9.9.3. Deep Learning
9.10. Regularization
9.10.1. L and L
9.10.2. Regularization by Maximum Entropy
9.10.3. Dropout
Module 10. Model Customization and Training with TensorFlow
10.1. TensorFlow
10.1.1. Use of the TensorFlow Library
10.1.2. Model Training with TensorFlow
10.1.3. Operations with Graphics in TensorFlow
10.2. TensorFlow and NumPy
10.2.1. NumPy Computing Environment for TensorFlow
10.2.2. Using NumPy Arrays with TensorFlow
10.2.3. NumPy Operations for TensorFlowGraphics
10.3. Model Customization and Training Algorithms
10.3.1. Building Custom Models with TensorFlow
10.3.2. Management of Training Parameters
10.3.3. Use of Optimization Techniques for Training
10.4. TensorFlow Features and Graphics
10.4.1. Functions with TensorFlow
10.4.2. Use of Graphs for Model Training
10.4.3. Graphics Optimization with TensorFlowOperations
10.5. Loading and Preprocessing Data with TensorFlow
10.5.1. Loading Data Sets with TensorFlow
10.5.2. Preprocessing Data with TensorFlow
10.5.3. Using TensorFlowTools for Data Manipulation
10.6. The API tfdata
10.6.1. Using the tfdataAPI for Data Processing
10.6.2. Construction of Data Streams with tfdata
10.6.3. Using thetfdata API for Model Training
10.7. The TFRecord Format
10.7.1. Using the TFRecordAPI for Data Serialization
10.7.2. TFRecord File Upload with TensorFlow
10.7.3. Using TFRecord Files for Model Training
10.8. Keras Preprocessing Layers
10.8.1. Using the Keras Preprocessing API
10.8.2. Preprocessing Pipelined Construction with Keras
10.8.3. Using the Keras Preprocessing API for Model Training
10.9. The TensorFlow Datasets Project
10.9.1. Using TensorFlow Datasets for Data Loading
10.9.2. Preprocessing Data with TensorFlow Datasets
10.9.3. Using TensorFlow Datasets for Model Training
10.10. Building a Deep Learning App with TensorFlow
10.10.1. Practical Application
10.10.2. Building a Deep Learning App with TensorFlow
10.10.3. Model Training with TensorFlow
10.10.4. Use of the Application for the Prediction of Results
Module 11. Deep Computer Vision with Convolutional Neural Networks
11.1. The Visual Cortex Architecture
11.1.1. Functions of the Visual Cortex
11.1.2. Theories of Computational Vision
11.1.3. Models of Image Processing
11.2. Convolutional Layers
11.2.1. Reuse of Weights in Convolution
11.2.2. Convolution D
11.2.3. Activation Functions
11.3. Grouping Layers and Implementation of Grouping Layers with Keras
11.3.1. Pooling and Striding
11.3.2. Flattening
11.3.3. Types of Pooling
11.4. CNN Architecture
11.4.1. VGG Architecture
11.4.2. AlexNet Architecture
11.4.3. Architecture ResNet
11.5. Implementing a CNN ResNet- using Keras
11.5.1. Weight Initialization
11.5.2. Input Layer Definition
11.5.3. Output Definition
11.6. Use of Pre-trained Keras Models
11.6.1. Characteristics of Pre-trained Models
11.6.2. Uses of Pre-trained Models
11.6.3. Advantages of Pre-trained Models
11.7. Pre-trained Models for Transfer Learning
11.7.1. Transfer Learning
11.7.2. Transfer Learning Process
11.7.3. Advantages of Transfer Learning
11.8. Deep Computer Vision Classification and Localization
11.8.1. Image Classification
11.8.2. Localization of Objects in Images
11.8.3. Object Detection
11.9. Object Detection and Object Tracking
11.9.1. Object Detection Methods
11.9.2. Object Tracking Algorithms
11.9.3. Tracking and Localization Techniques
11.10. Semantic Segmentation
11.10.1. Deep Learning for Semantic Segmentation
11.10.2. Edge Detection
11.10.3. Rule-based Segmentation Methods
Module 12. Natural Language Processing (NLP) with Natural Recurrent Networks (NRN) and Attention
12.1. Text Generation Using RNN
12.1.1. Training an RNN for Text Generation
12.1.2. Natural Language Generation with RNN
12.1.3. Text Generation Applications with RNN
12.2. Training Data Set Creation
12.2.1. Preparation of the Data for Training an RNN
12.2.2. Storage of the Training Dataset
12.2.3. Data Cleaning and Transformation
12.2.4. Sentiment Analysis
12.3. Classification of Opinions with RNN
12.3.1. Detection of Themes in Comments
12.3.2. Sentiment Analysis with Deep Learning Algorithms
12.4. Encoder-decoder Network for Neural Machine Translation
12.4.1. Training an RNN for Machine Translation
12.4.2. Use of an Encoder-decoder Network for Machine Translation
12.4.3. Improving the Accuracy of Machine Translation with RNNs
12.5. Attention Mechanisms
12.5.1. Application of Care Mechanisms in RNN
12.5.2. Use of Care Mechanisms to Improve the Accuracy of the Models
12.5.3. Advantages of Attention Mechanisms in Neural Networks
12.6. Transformer Models
12.6.1. Using TransformerModels for Natural Language Processing
12.6.2. Application of Transformer Models for Vision
12.6.3. Advantages of Transformer Models
12.7. Transformers for Vision
12.7.1. Use of Transformer Models for Vision
12.7.2. Image Data Preprocessing
12.7.3. Training a Transformers Model for Vision
12.8. Hugging Face’s TransformersLibrary
12.8.1. Using the Hugging Face’s TransformersLibrary
12.8.2. Hugging Face’s TransformersLibrary App
12.8.3. Advantages of Hugging Face’s Transformers Library
12.9. Other Transformers Libraries. Comparison
12.9.1. Comparison between different TransformersLibraries
12.9.2. Use of the other Transformers Libraries
12.9.3. Advantages of the other Transformers Libraries
12.10. Development of an NLP Application with RNN and Attention. Practical Application
12.10.1. Development of a Natural Language Processing Application with RNN and Attention
12.10.2. Use of RNN, Attention Mechanisms and Transformers Models in the Application
12.10.3. Evaluation of the Practical Application
Module 13. Autoencoders, GANs, and Diffusion Models
13.1. Representation of Efficient Data
13.1.1. Dimensionality Reduction
13.1.2. Deep Learning
13.1.3. Compact Representations
13.2. PCA Realization with an Incomplete Linear Automatic Encoder
13.2.1. Training Process
13.2.2. Implementation in Python
13.2.3. Use of Test Data
13.3. Stacked Automatic Encoders
13.3.1. Deep Neural Networks
13.3.2. Construction of Coding Architectures
13.3.3. Use of Regularization
13.4. Convolutional Autoencoders
13.4.1. Design of Convolutional Models
13.4.2. Convolutional Model Training
13.4.3. Results Evaluation
13.5. Automatic Encoder Denoising
13.5.1. Application of Filters
13.5.2. Design of Coding Models
13.5.3. Use of Regularization Techniques
13.6. Sparse Automatic Encoders
13.6.1. Increasing Coding Efficiency
13.6.2. Minimizing the Number of Parameters
13.6.3. Using Regularization Techniques
13.7. Variational Automatic Encoders
13.7.1. Use of Variational Optimization
13.7.2. Unsupervised Deep Learning
13.7.3. Deep Latent Representations
13.8. Generation of Fashion MNIST Images
13.8.1. Pattern Recognition
13.8.2. Image Generation
13.8.3. Deep Neural Networks Training
13.9. Generative Adversarial Networks and Diffusion Models
13.9.1. Content Generation from Images
13.9.2. Modeling of Data Distributions
13.9.3. Use of Adversarial Networks
13.10. Implementation of the Models
13.10.1. Practical Application
13.10.2. Implementation of the Models
13.10.3. Use of Real Data
13.10.4. Results Evaluation
Module 14. Bio-Inspired Computing
14.1. Introduction to Bio-Inspired Computing
14.1.1. Introduction to Bio-Inspired Computing
14.2. Social Adaptation Algorithms
14.2.1. Bio-Inspired Computation Based on Ant Colonies
14.2.2. Variants of Ant Colony Algorithms
14.2.3. Particle Cloud Computing
14.3. Genetic Algorithms
14.3.1. General Structure
14.3.2. Implementations of the Major Operators
14.4. Space Exploration-Exploitation Strategies for Genetic Algorithms
14.4.1. CHC Algorithm
14.4.2. Multimodal Problems
14.5. Evolutionary Computing Models (I)
14.5.1. Evolutionary Strategies
14.5.2. Evolutionary Programming
14.5.3. Algorithms Based on Differential Evolution
14.6. Evolutionary Computation Models (II)
14.6.1. Evolutionary Models Based on Estimation of Distributions (EDA)
14.6.2. Genetic Programming
14.7. Evolutionary Programming Applied to Learning Problems
14.7.1. Rules-Based Learning
14.7.2. Evolutionary Methods in Instance Selection Problems
14.8. Multi-Objective Problems
14.8.1. Concept of Dominance
14.8.2. Application of Evolutionary Algorithms to Multi-Objective Problems
14.9. Neural Networks (I)
14.9.1. Introduction to Neural Networks
14.9.2. Practical Example with Neural Networks
14.10. Neural Networks (II)
14.10.1. Use Cases of Neural Networks in Medical Research
14.10.2. Use Cases of Neural Networks in Economics
14.10.3. Use Cases of Neural Networks in Artificial Vision
Module 15. Artificial Intelligence: Strategies and Applications
15.1. Financial Services
15.1.1. The Implications of Artificial Intelligence (AI) in Financial Services. Opportunities and Challenges
15.1.2. Case Uses
15.1.3. Potential Risks Related to the Use of AI
15.1.4. Potential Future Developments/uses of AI
15.2. Implications of Artificial Intelligence in the Healthcare Service
15.2.1. Implications of AI in the Healthcare Sector. Opportunities and Challenges
15.2.2. Case Uses
15.3. Risks Related to the Use of AI in the Health Service
15.3.1. Potential Risks Related to the Use of AI
15.3.2. Potential Future Developments/uses of AI
15.4. Retail
15.4.1. Implications of AI in Retail. Opportunities and Challenges
15.4.2. Case Uses
15.4.3. Potential Risks Related to the Use of AI
15.4.4. Potential Future Developments/uses of AI
15.5. Industry
15.5.1. Implications of AI in Industry. Opportunities and Challenges
15.5.2. Case Uses
15.6. Potential risks related to the use of AI in industry
15.6.1. Case Uses
15.6.2. Potential Risks Related to the Use of AI
15.6.3. Potential Future Developments/uses of AI
15.7. Public Administration
15.7.1. AI implications for public administration. Opportunities and Challenges
15.7.2. Case Uses
15.7.3. Potential Risks Related to the Use of AI
15.7.4. Potential Future Developments/uses of AI
15.8. Educational
15.8.1. AI Implications for Education. Opportunities and Challenges
15.8.2. Case Uses
15.8.3. Potential Risks Related to the Use of AI
15.8.4. Potential Future Developments/uses of AI
15.9. Forestry and Agriculture
15.9.1. Implications of AI in Forestry and Agriculture. Opportunities and Challenges
15.9.2. Case Uses
15.9.3. Potential Risks Related to the Use of AI
15.9.4. Potential Future Developments/uses of AI
15.10 Human Resources
15.10.1. Implications of AI for Human Resources Opportunities and Challenges
15.10.2. Case Uses
15.10.3. Potential Risks Related to the Use of AI
15.10.4. Potential Future Developments/uses of AI
Module 16. Improving Software Development Productivity with AI
16.1. Prepare a Suitable Development Environment
16.1.1. Selection of Essential Tools for AI Development
16.1.2. Configuration of the Chosen Tools
16.1.3. Implementation of CI/CD Pipelines Adapted to AI Projects
16.1.4. Efficient Management of Dependencies and Versions in Development Environments
16.2. Essential AI Extensions for Visual Studio Code
16.2.1. Exploring and Selecting AI Extensions for Visual Studio Code
16.2.2. Integration of Static and Dynamic Analysis Tools in the SDI
16.2.3. Automation of Repetitive Tasks with Specific Extensions
16.2.4. Customization of the Development Environment to Improve Efficiency
16.3. No-code Design of User Interfaces with AI Elements
16.3.1. No-code Design Principles and Their Application to User Interfaces
16.3.2. Incorporation of AI Elements in the Visual Design of Interfaces
16.3.3. Tools and Platforms for No-code Creation of Intelligent Interfaces
16.3.4. Evaluation and Continuous Improvement of No-code Interfaces with AI
16.4. Code Optimization using ChatGPT
16.4.1. Identifying Duplicate Code
16.4.2. Refactor
16.4.3. Create Readable Code
16.4.4. Understanding What Code Does
16.4.5. Improving Variable and Function Names
16.4.6. Automatic Documentation Creation
16.5. Repository Management with AI
16.5.1. Automation of Version Control Processes with AI Techniques
16.5.2. Conflict Detection and Automatic Resolution in Collaborative Environments
16.5.3. Predictive Analysis of Changes and Trends in Code Repositories
16.5.4. Improved Organization and Categorization of Repositories using AI
16.6. Integration of AI in Database Management
16.6.1. Query and Performance Optimization Using AI Techniques
16.6.2. Predictive Analysis of Database Access Patterns
16.6.3. Implementation of Recommender Systems to Optimize Database Structure
16.6.4. Monitoring and Proactive Detection of Potential Problems in Databases
16.7. Fault Finding and Creation of Unit Tests with AI
16.7.1. Automatic Generation of Test Cases Using AI Techniques
16.7.2. Early Detection of Vulnerabilities and Bugs using Static Analysis with AI
16.7.3. Improving Test Coverage by Identifying Critical Areas with AI
16.8. Pair Programming with GitHub Copilot
16.8.1. Integration and Effective Use of GitHub Copilot in Pair ProgrammingSessions
16.8.2. Integration Improvements in Communication and Collaboration between Developers with GitHub Copilot
16.8.3. Integration Strategies for Making the Most of Code Hints Generated by GitHub Copilot
16.8.4. Integration Case Studies and Best Practices in AI-assisted Pair Programming
16.9. Automatic Translation between Programming Languages
16.9.1. Programming Language Specific Machine Translation Tools and Services
16.9.2. Adapting Machine Translation Algorithms to Development Contexts
16.9.3. Improving Interoperability between Different Languages by Machine Translation
16.9.4. Assessing and Mitigating Potential Challenges and Limitations of Machine Translation
16.10. Recommended AI Tools to Improve Productivity
16.10.1. Comparative Analysis of AI Tools for Software Development
16.10.2. Integration of AI Tools in Workflows
16.10.3. Automation of Routine Tasks with AI Tools
16.10.4. Evaluating and Selecting Tools Based on Context and Project Requirements
Module 17. Software Architecture with AI
17.1. Optimization and Performance Management in AI Tools
17.1.1. Performance Analysis and Profiling in AI Tools
17.1.2. Algorithm Optimization Strategies and AI Models
17.1.3. Implementation of Caching and Parallelization Techniques to Improve Performance
17.1.4. Tools and Methodologies for Continuous Real-Time Performance Monitoring
17.2. Scalability in AI Applications
17.2.1. Design of Scalable Architectures for AI Applications
17.2.2. Implementation of Partitioning and Load Distribution Techniques
17.2.3. Workflow and Workload Management for Scalable Systems
17.2.4. Strategies for Horizontal and Vertical Expansion in Variable Demand Environments
17.3. Maintainability of AI Applications
17.3.1. Design Principles to Facilitate Maintainability in AI Projects
17.3.2. Specific Documentation Strategies for AI Models and Algorithms
17.3.3. Implementation of Unit and Integration Tests to Facilitate Maintenance
17.3.4. Methods for Refactoring and Continuous Improvement in Systems with AI Components
17.4. Design of Large-Scale Systems
17.4.1. Architectural Principles for the Design of Large-Scale Systems
17.4.2. Decomposition of Complex Systems into Microservices
17.4.3. Implementation of Specific Design Patterns for Distributed Systems
17.4.4. Strategies for Complexity Management in Large-Scale Architectures with AI Components
17.5. Large-Scale Data Warehousing for AI Tools
17.5.1. Selection of Scalable Data Warehousing Technologies
17.5.2. Designing Database Schemas for Efficient Management of Large Data Volumes
17.5.3. Partitioning and Replication Strategies in Massive Data Storage Environments
17.5.4. Implementation of Data Management Systems to Ensure Integrity and Availability in AI Projects
17.6. Data Structures with AI
17.6.1. Adaptation of Classical Data Structures for Use in AI Algorithms
17.6.2. Designing and Optimizing Specific Data Structures for Machine Learning Models
17.6.3. Integration of Efficient Data Structures in Data Intensive Systems
17.6.4. Strategies for Real-Time Data Manipulation and Storage in AI Data Structures
17.7. Programming Algorithms for AI Products
17.7.1. Development and Implementation of Application-Specific Algorithms for AI Applications
17.7.2. Algorithm Selection Strategies according to Problem Type and Product Requirements
17.7.3. Adaptation of Classical Algorithms for Integration into Artificial Intelligence Systems
17.7.4. Evaluation and Comparison of Performance between Different Algorithms in AI Development Contexts
17.8. Design Patterns for AI Development
17.8.1. Identification and Application of Common Design Patterns in Projects with AI Components
17.8.2. Development of Specific Patterns for the Integration of Models and Algorithms into Existing Systems
17.8.3. Pattern Implementation Strategies for Improving Reusability and Maintainability in AI Projects
17.8.4. Case Studies and Best Practices in the Application of Design Patterns in AI Architectures
17.9. Implementation of Clean Architecture
17.9.1. Fundamental Principles and Concepts of Clean Architecture
17.9.2. Adaptation of Clean Architecture to Projects with AI Components
17.9.3. Implementation of Layers and Dependencies in Systems with Clean Architecture
17.9.4. Benefits and Challenges of Implementing Clean Architecture in AI Software Development
17.10. Secure Software Development in Web Applications with AI
17.10.1. Principles of Security in Software Development with AI Components
17.10.2. Identifying and Mitigating Potential Vulnerabilities in AI Models and Algorithms
17.10.3. Implementation of Secure Development Practices in Web Applications with Artificial Intelligence Functionalities
17.10.4. Strategies for the Protection of Sensitive Data and Prevention of Attacks in AI Projects
Module 18. Web Projects with AI
18.1. Preparation of the Working Environment for Web Development with AI
18.1.1. Configuration of Web Development Environments for Projects with Artificial Intelligence
18.1.2. Selection and Preparation of Essential Tools for AI Web Development
18.1.3. Integration of Specific Libraries and Frameworks for Web Projects with Artificial Intelligence
18.1.4. Implementation of Best Practices in the Configuration of Collaborative Development Environments
18.2. Workspace Creation for AI Projects
18.2.1. Effective Design and Organization of Workspaces for Web Projects with Artificial Intelligence Components
18.2.2. Use of Project Management and Version Control Tools in the Workspace
18.2.3. Strategies for Efficient Collaboration and Communication in the Development Team
18.2.4. Adaptation of the Workspace to the Specific Needs of AI Web Projects
18.3. Design Patterns in AI Products
18.3.1. Identification and Application of Common Design Patterns in User Interface with Artificial Intelligence Components
18.3.2. Development of Specific Patterns to Improve User Experience in Web Projects with AI
18.3.3. Integration of Design Patterns in the Overall Architecture of AI Web Projects
18.3.4. Evaluation and Selection of Adequate Design Patterns according to the Project Context
18.4. Frontend Development with AI
18.4.1. Integration of AI Models into the Presentation Layer of Web Projects
18.4.2. Development of Adaptive User Interfaces with Artificial Intelligence Elements
18.4.3. Implementation of Natural Language Processing (NLP) Functionalities in the Frontend
18.4.4. Strategies for Performance Optimization in Frontend Development with AI
18.5. Database Creation
18.5.1. Selection of Database Technologies for Web Projects with Artificial Intelligence
18.5.2. Design of Database Schemas for Storing and Managing AI-Related Data
18.5.3. Implementation of Efficient Storage Systems for Large Volumes of Data Generated by AI Models
18.5.4. Strategies for the Security and Protection of Sensitive Data in AI Web Project Databases
18.6. Back-End Development with AI
18.6.1. Integration of AI Services and Models in the Backend Business Logic
18.6.2. Development of Specific APIs and Endpoints for Communication between the Frontend and AI Components
18.6.3. Implementation of Data Processing and Decision Making Logic in the Backend with Artificial Intelligence
18.6.4. Strategies for Scalability and Performance in the Backend Development of Web Projects with AI
18.7. Optimizing Your Web Deployment Process
18.7.1. Automating Web Project Build and Deployment Processes with AI
18.7.2. Implementing CI/CD Pipelines Tailored to Web Applications with Artificial Intelligence Components
18.7.3. Strategies for Efficient Release and Upgrade Management in Continuous Deployments
18.7.4. Post-Deployment Monitoring and Analysis for Continuous Process Improvement
18.8. AI in Cloud Computing
18.8.1. Integration of Artificial Intelligence Services in Cloud Computing Platforms
18.8.2. Development of Scalable and Distributed Solutions using Cloud Services with AI Capabilities
18.8.3. Strategies for Efficient Resource and Cost Management in Cloud Environments with AI-enabled Web Applications
18.8.4. Evaluation and Comparison of Cloud Service Providers for AI-enabled Web Projects
18.9. Creating an AI-enabled Project for LAMP Environments
18.9.1. Adaptation of Web Projects based on the LAMP Stack to include Artificial Intelligence Components
18.9.2. Integration of AI-specific Libraries and Frameworks in LAMP Environments
18.9.3. Development of AI Functionalities Complementing the Traditional LAMP Architecture
18.9.4. Strategies for Optimization and Maintenance in Web Projects with AI in LAMP Environments
18.10. Creating an AI-enabled Project for MEVN Environments
18.10.1. Integration of MEVN Stack Technologies and Tools with AI Components
18.10.2. Development of Modern and Scalable Web Applications in MEVN Environments with AI Capabilities
18.10.3. Implementation of Data Processing and Machine Learning functionalities in MEVN projects
18.10.4. Strategies for Imrpoving Performance and Security Enhancement of AI-enabled Web Applications in MEVN Environments
Module 19. AI-enabled Mobile Applications
19.1. Preparation of Working Environment for Mobile Development with AI
19.1.1. Configuration of Mobile Development Environments for Projects with Artificial Intelligence
19.1.2. Selection and Preparation of Specific Tools for Mobile Application Development with AI
19.1.3. Integration of AI Libraries and Frameworks in Mobile Development Environments
19.1.4. Configuration of Emulators and Real Devices for Testing Mobile Applications with AI Components
19.2. Creating a Workspace with GitHub Copilot
19.2.1. Integration of GitHub Copilot in Mobile Development Environments
19.2.2. Effective Use of GitHub Copilot for Code Generation in AI Projects
19.2.3. Strategies for Developer Collaboration when using GitHub Copilot in the Workspace
19.2.4. Best Practices and Limitations in the Use of GitHub Copilot in Mobile Application Development with AI
19.3. Firebase Configuration
19.3.1. Initial Configuration of a Firebase Project for Mobile Development
19.3.2. Firebase Integration in Mobile Applications with Artificial Intelligence Functionalities
19.3.3. Use of Firebase Services as a Database, Authentication and Notifications in AI Projects
19.3.4. Strategies for Real-Time Data and Event Management in Firebase-enabled Mobile Applications
19.4. Concepts of Clean Architecture, DataSources, Repositories
19.4.1. Fundamental Principles of Clean Architecture in Mobile Development with AI
19.4.2. Implementation of DataSources and Repositories Layers in Clean Architectures
19.4.3. Design and Structuring of Components in Mobile Projects with a Focus on Clean Architecture
19.4.4. Benefits and Challenges of Implementing Clean Architecture in Mobile Applications with AI
19.5. Authentication Screen Creation
19.5.1. Design and Development of User Interfaces for Authentication Screens in Mobile Applications with AI
19.5.2. Integration of Authentication Services with Firebase in the Login Screen
19.5.3. Use of Security and Data Protection Techniques in the Authentication Screen
19.5.4. Personalization and Customization of the User Experience on the Authentication Screen
19.6. Dashboardand Navigation Creation
19.6.1. Dashboard Design and Development with Artificial Intelligence Elements
19.6.2. Implementation of Efficient Navigation Systems in Mobile Applications with AI
19.6.3. Integration of AI Functionalities in the Dashboard to Improve User Experience
19.7. Creation of Listing Screen
19.7.1. Development of User Interfaces for AI-enabled Mobile Application Listing Displays
19.7.2. Integration of Recommendation and Filtering Algorithms in the Listing Screen
19.7.3. Use of Design Patterns for Effective Data Presentation in the Listing Screen
19.7.4. Strategies for Efficient Real-Time Data Loading in the Listing Screen
19.8. Creating Detail Screen
19.8.1. Design and Development of Detailed User Interfaces for the Presentation of Specific Information
19.8.2. Integration of AI Functionalities to Enrich the Detail Screen
19.8.3. Implementation of Interactions and Animations in the Detail Screen
19.8.4. Strategies for Performance Optimization in Loading and Detail Display in AI-enabled Mobile Applications
19.9. Creating Settings Screen
19.9.1. Development of User Interfaces for Configuration and Settings in AI-enabled Mobile Applications
19.9.2. Integration of Custom Settings Related to AI Components
19.9.3. Implementing Customization Options and Preferences in the Configuration Screen
19.9.4. Strategies for Usability and Clarity in the Presentation of Options in the Settings Screen
19.10. Creating Icons, Splash and Graphic Resources for Your App with AI
19.10.1. Designing and Creating Attractive Icons to Represent Your AI Mobile Application
19.10.2. Developing Splash Screens with Impressive Visual Elements
19.10.3. Selection and Adaptation of Graphic Resources to Enhance the Aesthetics of the Mobile Application
19.10.4. Strategies for Consistency and Visual Branding in AI Application Graphics Elements
Module 20. AI for QA Testing
20.1. Testing Life Cycle
20.1.1. Description and Understanding of the Testing Life Cycle in Software Development
20.1.2. Phases of the Testing Life Cycle and Its Importance for Quality Assurance
20.1.3. Integration of Artificial Intelligence in Different Stages of the Testing Life Cycle
20.1.4. Strategies for Continuous Improvement of the Testing Life Cycle using AI
20.2. Test Cases and Bug Detection
20.2.1. Effective Test Case Design and Writing in the QA Testing Context
20.2.2. Identification of Bugs and Errors during Test Case Execution
20.2.3. Application of Early Bug Detection Techniques using Static Analysis
20.2.4. Use of Artificial intelligence Tools for the Automatic Identification of Bugs in Test Cases
20.3. Types of Testing
20.3.1. Exploration of Different Types of Testing in the QA Domain
20.3.2. Unit, Integration, Functional, and Acceptance Testing: Characteristics and Applications
20.3.3. Strategies for the Selection and Appropriate Combination of Testing Types in AI Projects
20.3.4. Adaptation of Conventional Testing Types to Projects with Artificial Intelligence Components
20.4. Creating a Test Plan
20.4.1. Designing and Structuring a Comprehensive Test Plan
20.4.2. Identifying Requirements and Test Scenarios in AI Projects
20.4.3. Strategies for Manual and Automated Test Planning
20.4.4. Continuous Evaluation and Adjustment of the Test Plan as the Project Develops
20.5. AI Bug Detection and Reporting
20.5.1. Implementation of Automatic Bug Detection Techniques using Machine Learning Algorithms
20.5.2. Use of Artificial Intelligence Tools for Dynamic Code Analysis in Search of Possible Errors
20.5.3. Strategies for Automatic Generation of Detailed Reports on AI-Detected Bugs
20.5.4. Effective Collaboration between Development and QA Teams in the Management of AI-Detected Bugs
20.6. Creation of Automated Testing with AI
20.6.1. Development of Automated Test Scripts for Projects with AI Components
20.6.2. Integration of AI-based Test Automation Tools
20.6.3. Use of Machine Learning Algorithms for Dynamic Generation of Automated Test Cases
20.6.4. Strategies for Efficient Execution and Maintenance of Automated Test Cases in AI Projects
20.7. API Testing
20.7.1. Fundamental Concepts of API Testing and Its Importance in QA
20.7.2. Development of Tests for API Verification in Environments with Artificial Intelligence Components
20.7.3. Strategies for Data and Results Validation in API Testing with AI
20.7.4. Use of Specific Tools for API Testing in Artificial Intelligence Projects
20.8. AI Tools for Web Testing
20.8.1. Exploring Artificial Intelligence Tools for Test Automation in Web Environments
20.8.2. Integration of Element Recognition and Visual Analysis Technologies in Web Testing
20.8.3. Strategies for Automatic Detection of Changes and Performance Problems in Web Applications using AI
20.8.4. Evaluation of Specific Tools for Improving Efficiency in Web Testing with AI
20.9. Mobile Testing Using AI
20.9.1. Development of Testing Strategies for Mobile Applications with Artificial Intelligence Components
20.9.2. Integration of Specific Testing Tools for AI-based Mobile Platforms
20.9.3. Use of Machine Learning Algorithms for the Detection of Performance Problems in Mobile Apps
20.9.4. Strategies for the Validation of Specific Mobile Application Interfaces and Functions using AI
20.10. QA Tools with AI
20.10.1. Exploration of QA Tools and Platforms that Incorporate Artificial Intelligence Functionalities
20.10.2. Evaluation of Tools for Efficient Test Management and Execution in AI Projects
20.10.3. Use of Machine Learning Algorithms for Test Case Generation and Optimization
20.10.4. Strategies for Effective Selection and Adoption of QA Tools with AI Capabilities
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