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78 Machine Learning (ML) courses delivered Live Online

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Python Machine Learning Course, 1-Days, Online Attendance

By Pcw Courses Ltd

This Python Machine Learning online instructor led course is an excellent introduction to popular machine learning algorithms. -------------------------------------------------------------------------------- Python Machine Learning 2-day Course Prerequisites: Basic knowledge of Python coding is a pre-requisite. Who Should Attend? This course is an overview of machine learning and machine learning algorithms in Python SciKitLearn. Practical: * We cover the below listed algorithms, which is only a small collection of what is available. However, it will give you a good understanding, to plan your Machine Learning project * We create, experiment and run machine learning sample code to implement a short selected but representative list of available the algorithms.  Course Outline: Supervised Machine Learning: * Classification Algorithms: Naive Bayes, Decision Tree, Logistic Regression, K-Nearest Neighbors, Support Vector Machine * Regression Algorithms: Linear, Polynomial Unsupervised Machine Learning: * Clustering Algorithms: K-means clustering, Hierarchical Clustering * Dimension Reduction Algorithms: Principal Component Analysis Latent Dirichlet allocation (LDA) * Association Machine Learning Algorithms: Apriori, Euclat Other machine learning Algorithms: * Ensemble Methods ( Stacking, bagging, boosting ) Algorithms: Random Forest, Gradient Boosting * Reinforcement learning Algorithms: Q-Learning * Neural Networks and Deep Leaning Algorithms: Convolutional Network (CNN) Data Exploration and Preprocessing: * The first part of a Machine Learning project understands the data and the problem at hand. * Data cleaning, data transformation and data pre-processing are covered using Python functions to make data exploration and preprocessing relatively easy. What is included in this Python Machine Learning: * Python Machine Learning Certificate on completion   * Python Machine Learning notes * Practical Python Machine Learning exercises and code examples * After the course, 1 free, online session for questions or revision Python Machine Learning. * Max group size on this Python Machine Learning is 4. -------------------------------------------------------------------------------- REFUND POLICY No Refunds

Python Machine Learning Course, 1-Days, Online Attendance
Delivered Online6 hours, Jun 3rd, 10:00 + 15 more
£185

DevOps Foundation©

By Nexus Human

Duration 2 Days 12 CPD hours This course is intended for The target audience for the DevOps Foundation course includes Management, Operations, Developers, QA and Testing professionals such as: Individuals involved in IT development IT operations or IT service management. Individuals who require an understanding of DevOps principles. IT professionals working within, or about to enter, an Agile Service Design Environment The following IT roles: Automation Architects, Application Developers, Business Analysts, Business Managers, Business Stakeholders, Change Agents, Consultants, DevOps Consultants, DevOps Engineers, Infrastructure Architect, Integration Specialists, IT Directors, IT Managers, IT Operations, IT Team Leaders, Lean Coaches, Network Administrators, Operations Managers, Project Managers, Release Engineers, Software Developers, Software Tester/QA, System Administrators, Systems Engineers, System Integrators, Tool Providers. Overview The learning objectives for DevOps Foundation include an understanding of: DevOps objectives and vocabulary Benefits to the business and IT Principles and practices including Continuous Integration, Continuous Delivery, testing, security and the Three Ways DevOps relationship to Agile, Lean and ITSM Improved workflows, communication and feedback loops Automation practices including deployment pipelines and DevOps toolchains Scaling DevOps for the enterprise Critical success factors and key performance indicators Real-life examples and results The DevOps Foundation course provides a baseline understanding of key DevOps terminology to ensure everyone is talking the same language and highlights the benefits of DevOps to support organizational success. Learners will gain an understanding of DevOps, the cultural and professional movement that stresses communication, collaboration, integration, and automation to improve the flow of work between software developers and IT operations professionals. This course prepares you for the DevOps Foundation (DOFD) certification. EXPLORING DEVOPS * Defining DevOps * Why Does DevOps Matter? * CORE DEVOPS PRINCIPLES * The Three Ways * The First Way * The Theory of Constraints * The Second Way * The Third Way * Chaos Engineering * Learning Organizations KEY DEVOPS PRACTICES * Continuous Testing, Integration, Delivery, Deployment * Site Reliability & Resilience Engineering * DevSecOps * ChatOps * Kanban BUSINESS AND TECHNOLOGY FRAMEWORKS * Agile * ITSM * Lean * Safety Culture * Learning Organizations * Continuous Funding CULTURE, BEHAVIORS & OPERATING MODELS * Defining Culture * Cultural Debt * Behavioral Models * Organizational maturity models AUTOMATION & ARCHITECTING DEVOPS TOOLCHAINS * CI/CD * Cloud, Containers, and Microservices * AI and Machine Learning * Automation * DevOps Toolchains MEASUREMENT, METRICS, AND REPORTING * The Importance of Measurement * DevOps Metrics - Speed, Quality, Stability, Culture * Change lead/cycle time * Value Driven Metrics SHARING, SHADOWING AND EVOLVING * DevOps in the Enterprise * Roles * DevOps Leadership * Organizational Considerations * Getting Started * Challenges, Risks, and Critical Success Factors ADDITIONAL COURSE DETAILS: Nexus Humans DevOps Foundation (DevOps Institute) training program is a workshop that presents an invigorating mix of sessions, lessons, and masterclasses meticulously crafted to propel your learning expedition forward. This immersive bootcamp-style experience boasts interactive lectures, hands-on labs, and collaborative hackathons, all strategically designed to fortify fundamental concepts. Guided by seasoned coaches, each session offers priceless insights and practical skills crucial for honing your expertise. Whether you're stepping into the realm of professional skills or a seasoned professional, this comprehensive course ensures you're equipped with the knowledge and prowess necessary for success. While we feel this is the best course for the DevOps Foundation (DevOps Institute) course and one of our Top 10 we encourage you to read the course outline to make sure it is the right content for you. Additionally, private sessions, closed classes or dedicated events are available both live online and at our training centres in Dublin and London, as well as at your offices anywhere in the UK, Ireland or across EMEA.

DevOps Foundation©
Delivered Online3 days, Jun 4th, 13:00 + 2 more
£1495

Certified Artificial Intelligence Practitioner

By Mpi Learning - Professional Learning And Development Provider

This course shows you how to apply various approaches and algorithms to solve business problems through AI and ML, follow a methodical workflow to develop sound solutions, use open-source, off-the-shelf tools to develop, test, and deploy those solutions, and ensure that they protect the privacy of users. This course includes hands-on activities for each topic area.

Certified Artificial Intelligence Practitioner
Delivered in-person, on-request, onlineDelivered Online & In-Person in Loughborough
£595

CertNexus Certified Artificial Intelligence Practitioner CAIP (AIP-210)

By Nexus Human

Duration 5 Days 30 CPD hours This course is intended for The skills covered in this course converge on four areas-software development, IT operations, applied math and statistics, and business analysis. Target students for this course should be looking to build upon their knowledge of the data science process so that they can apply AI systems, particularly machine learning models, to business problems. So, the target student is likely a data science practitioner, software developer, or business analyst looking to expand their knowledge of machine learning algorithms and how they can help create intelligent decisionmaking products that bring value to the business. A typical student in this course should have several years of experience with computing technology, including some aptitude in computer programming. This course is also designed to assist students in preparing for the CertNexus Certified Artificial Intelligence (AI) Practitioner (Exam AIP-210) certification Overview In this course, you will develop AI solutions for business problems. You will: Solve a given business problem using AI and ML. Prepare data for use in machine learning. Train, evaluate, and tune a machine learning model. Build linear regression models. Build forecasting models. Build classification models using logistic regression and k -nearest neighbor. Build clustering models. Build classification and regression models using decision trees and random forests. Build classification and regression models using support-vector machines (SVMs). Build artificial neural networks for deep learning. Put machine learning models into operation using automated processes. Maintain machine learning pipelines and models while they are in production Artificial intelligence (AI) and machine learning (ML) have become essential parts of the toolset for many organizations. When used effectively, these tools provide actionable insights that drive critical decisions and enable organizations to create exciting, new, and innovative products and services. This course shows you how to apply various approaches and algorithms to solve business problems through AI and ML, all while following a methodical workflow for developing data-driven solutions. SOLVING BUSINESS PROBLEMS USING AI AND ML * Topic A: Identify AI and ML Solutions for Business Problems * Topic B: Formulate a Machine Learning Problem * Topic C: Select Approaches to Machine Learning PREPARING DATA * Topic A: Collect Data * Topic B: Transform Data * Topic C: Engineer Features * Topic D: Work with Unstructured Data TRAINING, EVALUATING, AND TUNING A MACHINE LEARNING MODEL * Topic A: Train a Machine Learning Model * Topic B: Evaluate and Tune a Machine Learning Model BUILDING LINEAR REGRESSION MODELS * Topic A: Build Regression Models Using Linear Algebra * Topic B: Build Regularized Linear Regression Models * Topic C: Build Iterative Linear Regression Models BUILDING FORECASTING MODELS * Topic A: Build Univariate Time Series Models * Topic B: Build Multivariate Time Series Models BUILDING CLASSIFICATION MODELS USING LOGISTIC REGRESSION AND K-NEAREST NEIGHBOR * Topic A: Train Binary Classification Models Using Logistic Regression * Topic B: Train Binary Classification Models Using k-Nearest Neighbor * Topic C: Train Multi-Class Classification Models * Topic D: Evaluate Classification Models * Topic E: Tune Classification Models BUILDING CLUSTERING MODELS * Topic A: Build k-Means Clustering Models * Topic B: Build Hierarchical Clustering Models BUILDING DECISION TREES AND RANDOM FORESTS * Topic A: Build Decision Tree Models * Topic B: Build Random Forest Models BUILDING SUPPORT-VECTOR MACHINES * Topic A: Build SVM Models for Classification * Topic B: Build SVM Models for Regression BUILDING ARTIFICIAL NEURAL NETWORKS * Topic A: Build Multi-Layer Perceptrons (MLP) * Topic B: Build Convolutional Neural Networks (CNN) * Topic C: Build Recurrent Neural Networks (RNN) OPERATIONALIZING MACHINE LEARNING MODELS * Topic A: Deploy Machine Learning Models * Topic B: Automate the Machine Learning Process with MLOps * Topic C: Integrate Models into Machine Learning Systems MAINTAINING MACHINE LEARNING OPERATIONS * Topic A: Secure Machine Learning Pipelines * Topic B: Maintain Models in Production

CertNexus Certified Artificial Intelligence Practitioner CAIP (AIP-210)
Delivered on-request, onlineDelivered Online
Price on Enquiry

AI-900T00 Microsoft Azure AI Fundamentals

By Nexus Human

Duration 1 Days 6 CPD hours This course is intended for The Azure AI Fundamentals course is designed for anyone interested in learning about the types of solution artificial intelligence (AI) makes possible, and the services on Microsoft Azure that you can use to create them. You don?t need to have any experience of using Microsoft Azure before taking this course, but a basic level of familiarity with computer technology and the Internet is assumed. Some of the concepts covered in the course require a basic understanding of mathematics, such as the ability to interpret charts. The course includes hands-on activities that involve working with data and running code, so a knowledge of fundamental programming principles will be helpful. This course introduces fundamentals concepts related to artificial intelligence (AI), and the services in Microsoft Azure that can be used to create AI solutions. The course is not designed to teach students to become professional data scientists or software developers, but rather to build awareness of common AI workloads and the ability to identify Azure services to support them. Prerequisites Prerequisite certification is not required before taking this course. Successful Azure AI Fundamental students start with some basic awareness of computing and internet concepts, and an interest in using Azure AI services. Specifically: * Experience using computers and the internet. * Interest in use cases for AI applications and machine learning models. * A willingness to learn through hands-on exp... 1 - FUNDAMENTAL AI CONCEPTS * Understand machine learning * Understand computer vision * Understand natural language processing * Understand document intelligence and knowledge mining * Understand generative AI * Challenges and risks with AI * Understand Responsible AI 2 - FUNDAMENTALS OF MACHINE LEARNING * What is machine learning? * Types of machine learning * Regression * Binary classification * Multiclass classification * Clustering * Deep learning * Azure Machine Learning 3 - FUNDAMENTALS OF AZURE AI SERVICES * AI services on the Azure platform * Create Azure AI service resources * Use Azure AI services * Understand authentication for Azure AI services 4 - FUNDAMENTALS OF COMPUTER VISION * Images and image processing * Machine learning for computer vision * Azure AI Vision 5 - FUNDAMENTALS OF FACIAL RECOGNITION * Understand Face analysis * Get started with Face analysis on Azure 6 - FUNDAMENTALS OF OPTICAL CHARACTER RECOGNITION * Get started with Vision Studio on Azure 7 - FUNDAMENTALS OF TEXT ANALYSIS WITH THE LANGUAGE SERVICE * Understand Text Analytics * Get started with text analysis 8 - FUNDAMENTALS OF QUESTION ANSWERING WITH THE LANGUAGE SERVICE * Understand question answering * Get started with the Language service and Azure Bot Service 9 - FUNDAMENTALS OF CONVERSATIONAL LANGUAGE UNDERSTANDING * Describe conversational language understanding * Get started with conversational language understanding in Azure 10 - FUNDAMENTALS OF AZURE AI SPEECH * Understand speech recognition and synthesis * Get started with speech on Azure 11 - FUNDAMENTALS OF AZURE AI DOCUMENT INTELLIGENCE * Explore capabilities of document intelligence * Get started with receipt analysis on Azure 12 - FUNDAMENTALS OF KNOWLEDGE MINING WITH AZURE COGNITIVE SEARCH * What is Azure Cognitive Search? * Identify elements of a search solution * Use a skillset to define an enrichment pipeline * Understand indexes * Use an indexer to build an index * Persist enriched data in a knowledge store * Create an index in the Azure portal * Query data in an Azure Cognitive Search index 13 - FUNDAMENTALS OF GENERATIVE AI * What is generative AI? * Large language models * What is Azure OpenAI? * What are copilots? * Improve generative AI responses with prompt engineering 14 - FUNDAMENTALS OF AZURE OPENAI SERVICE * What is generative AI * Describe Azure OpenAI * How to use Azure OpenAI * Understand OpenAI's natural language capabilities * Understand OpenAI code generation capabilities * Understand OpenAI's image generation capabilities * Describe Azure OpenAI's access and responsible AI policies 15 - FUNDAMENTALS OF RESPONSIBLE GENERATIVE AI * Plan a responsible generative AI solution * Identify potential harms * Measure potential harms * Mitigate potential harms * Operate a responsible generative AI solution ADDITIONAL COURSE DETAILS: Nexus Humans AI-900T00 - Microsoft Azure AI Fundamentals training program is a workshop that presents an invigorating mix of sessions, lessons, and masterclasses meticulously crafted to propel your learning expedition forward. This immersive bootcamp-style experience boasts interactive lectures, hands-on labs, and collaborative hackathons, all strategically designed to fortify fundamental concepts. Guided by seasoned coaches, each session offers priceless insights and practical skills crucial for honing your expertise. Whether you're stepping into the realm of professional skills or a seasoned professional, this comprehensive course ensures you're equipped with the knowledge and prowess necessary for success. While we feel this is the best course for the AI-900T00 - Microsoft Azure AI Fundamentals course and one of our Top 10 we encourage you to read the course outline to make sure it is the right content for you. Additionally, private sessions, closed classes or dedicated events are available both live online and at our training centres in Dublin and London, as well as at your offices anywhere in the UK, Ireland or across EMEA.

AI-900T00 Microsoft Azure AI Fundamentals
Delivered OnlineTwo days, Jun 14th, 13:00 + 3 more
£595

The Machine Learning Pipeline on AWS

By Nexus Human

Duration 4 Days 24 CPD hours This course is intended for This course is intended for: Developers Solutions Architects Data Engineers Anyone with little to no experience with ML and wants to learn about the ML pipeline using Amazon SageMaker Overview In this course, you will learn to: Select and justify the appropriate ML approach for a given business problem Use the ML pipeline to solve a specific business problem Train, evaluate, deploy, and tune an ML model using Amazon SageMaker Describe some of the best practices for designing scalable, cost-optimized, and secure ML pipelines in AWS Apply machine learning to a real-life business problem after the course is complete This course explores how to use the machine learning (ML) pipeline to solve a real business problem in a project-based learning environment. Students will learn about each phase of the pipeline from instructor presentations and demonstrations and then apply that knowledge to complete a project solving one of three business problems: fraud detection, recommendation engines, or flight delays. By the end of the course, students will have successfully built, trained, evaluated, tuned, and deployed an ML model using Amazon SageMaker that solves their selected business problem. MODULE 0: INTRODUCTION * Pre-assessment MODULE 1: INTRODUCTION TO MACHINE LEARNING AND THE ML PIPELINE * Overview of machine learning, including use cases, types of machine learning, and key concepts Overview of the ML pipeline Introduction to course projects and approach MODULE 2: INTRODUCTION TO AMAZON SAGEMAKER * Introduction to Amazon SageMaker * Demo: Amazon SageMaker and Jupyter notebooks * Hands-on: Amazon SageMaker and Jupyter notebooks MODULE 3: PROBLEM FORMULATION * Overview of problem formulation and deciding if ML is the right solution * Converting a business problem into an ML problem * Demo: Amazon SageMaker Ground Truth * Hands-on: Amazon SageMaker Ground Truth * Practice problem formulation * Formulate problems for projects MODULE 4: PREPROCESSING * Overview of data collection and integration, and techniques for data preprocessing and visualization Practice preprocessing Preprocess project data Class discussion about projects MODULE 5: MODEL TRAINING * Choosing the right algorithm Formatting and splitting your data for training Loss functions and gradient descent for improving your model Demo: Create a training job in Amazon SageMaker MODULE 6: MODEL EVALUATION * How to evaluate classification models * How to evaluate regression models * Practice model training and evaluation * Train and evaluate project models * Initial project presentations MODULE 7: FEATURE ENGINEERING AND MODEL TUNING * Feature extraction, selection, creation, and transformation * Hyperparameter tuning * Demo: SageMaker hyperparameter optimization * Practice feature engineering and model tuning * Apply feature engineering and model tuning to projects * Final project presentations MODULE 8: DEPLOYMENT * How to deploy, inference, and monitor your model on Amazon SageMaker Deploying ML at the edge Demo: Creating an Amazon SageMaker endpoint Post-assessment Course wrap-up ADDITIONAL COURSE DETAILS: Nexus Humans The Machine Learning Pipeline on AWS training program is a workshop that presents an invigorating mix of sessions, lessons, and masterclasses meticulously crafted to propel your learning expedition forward. This immersive bootcamp-style experience boasts interactive lectures, hands-on labs, and collaborative hackathons, all strategically designed to fortify fundamental concepts. Guided by seasoned coaches, each session offers priceless insights and practical skills crucial for honing your expertise. Whether you're stepping into the realm of professional skills or a seasoned professional, this comprehensive course ensures you're equipped with the knowledge and prowess necessary for success. While we feel this is the best course for the The Machine Learning Pipeline on AWS course and one of our Top 10 we encourage you to read the course outline to make sure it is the right content for you. Additionally, private sessions, closed classes or dedicated events are available both live online and at our training centres in Dublin and London, as well as at your offices anywhere in the UK, Ireland or across EMEA.

The Machine Learning Pipeline on AWS
Delivered on-request, onlineDelivered Online
Price on Enquiry

Certified Data Centre Environmental Sustainability Specialist (CDESS)

By Nexus Human

Duration 5 Days 30 CPD hours This course is intended for The primary audience for this course is any IT, facilities or data centre professional who works in and around the data centre and has the responsibility to achieve and improve efficiency and environmental sustainability, whilst maintaining the availability and manageability of the data centre. Overview After completion of the course the participant will be able to: Understand the impact of data centres on the environment Describe the various environmental/energy management standards Understand the purpose and goals of the legally binding international treaties on climate change Implement various sustainable performance metrics and how to use them in the data centre environment Manage data centre environmental sustainability using international standards Set up the measurement, monitoring and reporting of energy usage Use power efficiency indicators in a variety of data centre designs Use best practices for energy savings in the electrical infrastructure and in the mechanical (cooling) infrastructure Use best practices for energy savings for the ICT equipment and data storage Understand the importance of water management and waste management Understand the different ways to use sustainable energy in the data centre Get practical tips and innovative ideas to make a data centre more sustainable The CDESS© course is aimed at providing knowledge of the standards and guidelines related to environmental sustainability, and how to move your data centre (existing or new) to a more environmentally sustainable design and operations. IMPACT OF DATA CENTRES ON THE ENVIRONMENT * Predictions in 2010 * Current situation * Outlook and commitments WHAT IS ENVIRONMENTAL SUSTAINABILITY * The importance of sustainability * Senior management commitment * Environmental sustainability framework * Sustainability policies * Performance standards and metrics * Information policies * Transparency * Awareness * Service charging models ENVIRONMENTAL MANAGEMENT * Environmental sustainability framework (ISO 14001) * Standards and guidelines ? ISO 50001 / ISO 30134 * Measurement and categories * Baselining * Trend analysis * Reporting POWER EFFIðCIENCY INDICATORS * Various eðfficiency indicators * Power Usage Effectiveness (PUE) * PUE measurement levels * Factors affecting PUE * Measurement points and intervals * PUE in mixed source environments * Measuring PUE in a mixed-use building * PUE reporting * Impact of PUE after optimising IT load ELECTRICAL ENERGY SAVINGS (ELECTRICAL) * Identifying the starting point for saving energy * Sizing of power * DC power * Generators * UPS systems * Power Factor (PF) * Energy savings on lighting ELECTRICAL ENERGY SAVINGS (MECHANICAL) * Energy savings on the cooling infrastructure * Temperature and humidity setpoints * Various energy eðcient cooling technologies * Energy savings on the airflow * Liquid cooling * Energy reusage * PUE, ERE/ERF and Control Volume ELECTRICAL ENERGY SAVINGS (ICT) * Procurement * IT equipment energy eðfficiency * ITEEsv, SMPE, SMPO * IT equipment utilisation * Server virtualisation * Open compute project ELECTRICAL ENERGY SAVINGS (DATA STORAGE) * Data management * Data storage management * Data storage equipment effiðciency WATER MANAGEMENT * Water Usage Effectiveness (WUE) * Improving WUE * Water usage at the power generation source * Energy Water Intensity Factor (EWIF) WASTE MANAGEMENT * Waste management policies * Life-cycle assessment (Cradle to the grave) * 3 R?s for waste management * Reduce * Reuse * Second-hand market * Recycle SUSTAINABLE ENERGY USAGE * Sustainable energy sources * Power purchase agreements * Energy attribute certificates * Renewable Energy Factor (REF) * Matching renewable energy supply and demand * Sustainable energy storage * Carbon trading AUTOMATED ENVIRONMENTAL MANAGEMENT SYSTEMS * Use of AI and machine learning * Load migration * Data Centre Infrastructure Management (DCIM) solutions

Certified Data Centre Environmental Sustainability Specialist (CDESS)
Delivered Online6 days, Jun 17th, 07:00 + 1 more
£1500

EXIN BCS Artificial Intelligence Foundation

By Nexus Human

Duration 3 Days 18 CPD hours This course is intended for The EXIN BCS Artificial Intelligence Foundation certification is focused on individuals with an interest in, (or need to implement) AI in an organization, especially those working in areas such as science, engineering, knowledge engineering, finance, education or IT services. Overview You will be able to Describe how Artificial (AI) is Part of 'Universal Design', and 'The Fourth Industrial Revolution' Demonstrate Understanding of the Artificial Intelligence (AI) Intelligen Agent Description Explain the Benefits of Artificial Intelligence (AI) Describe how we Learn from Data - Functionality, Software and Hardware Demonstrate an Understanding that Artificial Intelligence (AI) (in Particular, Machine Learning (ML)) will Drive Humans and Machines to Work Together Describe a ''Learning from Experience'' Agile Approach to Projects Candidates should be able to demonstrate a knowledge and understanding in the application of ethical and sustainable Artificial Intelligence (AI):- Human-centric Ethical and Sustainable Human and Artificial Intelligence (AI) ETHICAL AND SUSTAINABLE HUMAN AND ARTIFICIAL INTELLIGENCE (AI) * Recall the General Definition of Human and Artificial Intelligence (AI) * Describe what are Ethics and Trustworthy Artificial Intelligence (AI) * Describe the Three Fundamental Areas of Sustainability and the United Nationïs Seventeen Sustainability Goals * Describe how Artificial Intelligence (AI) is Part of 'Universal Design', and 'The Fourth Industrial Revolution' * Understand that Machine Learning (ML) is a Significant Contribution to the Growth of Artificial Intelligence (AI) ARTIFICIAL INTELLIGENCE (AI) AND ROBOTICS * Demonstrate Understanding of the Artificial Intelligence (AI) Intelligent Agent Description * Describe what a Robot is * Describe what an intelligent Robot is APPLYING THE BENEFITS OF ARTIFICIAL INTELLIGENCE (AI) ? CHALLENGES AND RISKS * Describe how Sustainability Relates to Human-Centric Ethical Artificial Intelligence (AI) and how our Values will Drive our use of Artificial Intelligence (AI) and will Change Humans, Society and Organizations * Explain the Benefits of Artifical Intelligence (AI) * Describe the Challenges of Artificial Intelligence (AI) Projects * Demonstrate Understanding of the Risks of Artificial Intelligence (AI) Projects * List Opportunities for Artificial Intelligence (AI) * Identify a Typical Funding Source for Artificial Intelligence (AI) Projects and Relate to the NASA Technology Readiness Levels (TRLs) STARTING ARTIFICIAL INTELLIGENCE (AI): HOW TO BUILD A MACHINE LEARNING (ML) TOOLBOX ? THEORY AND PRACTICE * Describe how we Learn from Data - Functionality, Software and Hardware * Recall which Rypical, Narrow Artificial Intelligence (AI) Capability is Useful in Machine Learning (ML9 and Artificial Intelligence (AI) AgentsïFunctionality THE MANAGEMENT, ROLES AND RESPONSIBILITIES OF HUMANS AND MACHINES * Demonstrate an Understanding that Artificial Intelligence (AI) (in Particular, Machine Learning (ML)) will Drive Humans and Machines to Work Together * List Future Directions of Humans and Machines Working Together * Describe a ''Learning from Experience'' Agile Approach to Projects

EXIN BCS Artificial Intelligence Foundation
Delivered on-request, onlineDelivered Online
Price on Enquiry

Machine Learning Essentials with Python (TTML5506-P)

By Nexus Human

Duration 3 Days 18 CPD hours This course is intended for This course is geared for attendees with solid Python skills who wish to learn and use basic machine learning algorithms and concepts Overview This 'skills-centric' course is about 50% hands-on lab and 50% lecture, with extensive practical exercises designed to reinforce fundamental skills, concepts and best practices taught throughout the course. Topics Covered: This is a high-level list of topics covered in this course. Please see the detailed Agenda below Getting Started & Optional Python Quick Refresher Statistics and Probability Refresher and Python Practice Probability Density Function; Probability Mass Function; Naive Bayes Predictive Models Machine Learning with Python Recommender Systems KNN and PCA Reinforcement Learning Dealing with Real-World Data Experimental Design / ML in the Real World Time Permitting: Deep Learning and Neural Networks Machine Learning Essentials with Python is a foundation-level, three-day hands-on course that teaches students core skills and concepts in modern machine learning practices. This course is geared for attendees experienced with Python, but new to machine learning, who need introductory level coverage of these topics, rather than a deep dive of the math and statistics behind Machine Learning. Students will learn basic algorithms from scratch. For each machine learning concept, students will first learn about and discuss the foundations, its applicability and limitations, and then explore the implementation and use, reviewing and working with specific use casesWorking in a hands-on learning environment, led by our Machine Learning expert instructor, students will learn about and explore:Popular machine learning algorithms, their applicability and limitationsPractical application of these methods in a machine learning environmentPractical use cases and limitations of algorithms GETTING STARTED * Installation: Getting Started and Overview * LINUX jump start: Installing and Using Anaconda & Course Materials (or reference the default container) * Python Refresher * Introducing the Pandas, NumPy and Scikit-Learn Library STATISTICS AND PROBABILITY REFRESHER AND PYTHON PRACTICE * Types of Data * Mean, Median, Mode * Using mean, median, and mode in Python * Variation and Standard Deviation PROBABILITY DENSITY FUNCTION; PROBABILITY MASS FUNCTION; NAIVE BAYES * Common Data Distributions * Percentiles and Moments * A Crash Course in matplotlib * Advanced Visualization with Seaborn * Covariance and Correlation * Conditional Probability * Naive Bayes: Concepts * Bayes? Theorem * Naive Bayes * Spam Classifier with Naive Bayes PREDICTIVE MODELS * Linear Regression * Polynomial Regression * Multiple Regression, and Predicting Car Prices * Logistic Regression * Logistic Regression MACHINE LEARNING WITH PYTHON * Supervised vs. Unsupervised Learning, and Train/Test * Using Train/Test to Prevent Overfitting * Understanding a Confusion Matrix * Measuring Classifiers (Precision, Recall, F1, AUC, ROC) * K-Means Clustering * K-Means: Clustering People Based on Age and Income * Measuring Entropy * LINUX: Installing GraphViz * Decision Trees: Concepts * Decision Trees: Predicting Hiring Decisions * Ensemble Learning * Support Vector Machines (SVM) Overview * Using SVM to Cluster People using scikit-learn RECOMMENDER SYSTEMS * User-Based Collaborative Filtering * Item-Based Collaborative Filtering * Finding Similar Movie * Better Accuracy for Similar Movies * Recommending movies to People * Improving your recommendations KNN AND PCA * K-Nearest-Neighbors: Concepts * Using KNN to Predict a Rating for a Movie * Dimensionality Reduction; Principal Component Analysis (PCA) * PCA with the Iris Data Set REINFORCEMENT LEARNING * Reinforcement Learning with Q-Learning and Gym DEALING WITH REAL-WORLD DATA * Bias / Variance Tradeoff * K-Fold Cross-Validation * Data Cleaning and Normalization * Cleaning Web Log Data * Normalizing Numerical Data * Detecting Outliers * Feature Engineering and the Curse of Dimensionality * Imputation Techniques for Missing Data * Handling Unbalanced Data: Oversampling, Undersampling, and SMOTE * Binning, Transforming, Encoding, Scaling, and Shuffling EXPERIMENTAL DESIGN / ML IN THE REAL WORLD * Deploying Models to Real-Time Systems * A/B Testing Concepts * T-Tests and P-Values * Hands-on With T-Tests * Determining How Long to Run an Experiment * A/B Test Gotchas CAPSTONE PROJECT * Group Project & Presentation or Review DEEP LEARNING AND NEURAL NETWORKS * Deep Learning Prerequisites * The History of Artificial Neural Networks * Deep Learning in the TensorFlow Playground * Deep Learning Details * Introducing TensorFlow * Using TensorFlow * Introducing Keras * Using Keras to Predict Political Affiliations * Convolutional Neural Networks (CNN?s) * Using CNN?s for Handwriting Recognition * Recurrent Neural Networks (RNN?s) * Using an RNN for Sentiment Analysis * Transfer Learning * Tuning Neural Networks: Learning Rate and Batch Size Hyperparameters * Deep Learning Regularization with Dropout and Early Stopping * The Ethics of Deep Learning * Learning More about Deep Learning ADDITIONAL COURSE DETAILS: Nexus Humans Machine Learning Essentials with Python (TTML5506-P) training program is a workshop that presents an invigorating mix of sessions, lessons, and masterclasses meticulously crafted to propel your learning expedition forward. This immersive bootcamp-style experience boasts interactive lectures, hands-on labs, and collaborative hackathons, all strategically designed to fortify fundamental concepts. Guided by seasoned coaches, each session offers priceless insights and practical skills crucial for honing your expertise. Whether you're stepping into the realm of professional skills or a seasoned professional, this comprehensive course ensures you're equipped with the knowledge and prowess necessary for success. While we feel this is the best course for the Machine Learning Essentials with Python (TTML5506-P) course and one of our Top 10 we encourage you to read the course outline to make sure it is the right content for you. Additionally, private sessions, closed classes or dedicated events are available both live online and at our training centres in Dublin and London, as well as at your offices anywhere in the UK, Ireland or across EMEA.

Machine Learning Essentials with Python (TTML5506-P)
Delivered on-request, onlineDelivered Online
Price on Enquiry

Python With Data Science

By Nexus Human

Duration 2 Days 12 CPD hours This course is intended for Audience: Data Scientists, Software Developers, IT Architects, and Technical Managers. Participants should have the general knowledge of statistics and programming Also familiar with Python Overview ? NumPy, pandas, Matplotlib, scikit-learn ? Python REPLs ? Jupyter Notebooks ? Data analytics life-cycle phases ? Data repairing and normalizing ? Data aggregation and grouping ? Data visualization ? Data science algorithms for supervised and unsupervised machine learning Covers theoretical and technical aspects of using Python in Applied Data Science projects and Data Logistics use cases. PYTHON FOR DATA SCIENCE * ? Using Modules * ? Listing Methods in a Module * ? Creating Your Own Modules * ? List Comprehension * ? Dictionary Comprehension * ? String Comprehension * ? Python 2 vs Python 3 * ? Sets (Python 3+) * ? Python Idioms * ? Python Data Science ?Ecosystem? * ? NumPy * ? NumPy Arrays * ? NumPy Idioms * ? pandas * ? Data Wrangling with pandas' DataFrame * ? SciPy * ? Scikit-learn * ? SciPy or scikit-learn? * ? Matplotlib * ? Python vs R * ? Python on Apache Spark * ? Python Dev Tools and REPLs * ? Anaconda * ? IPython * ? Visual Studio Code * ? Jupyter * ? Jupyter Basic Commands * ? Summary APPLIED DATA SCIENCE * ? What is Data Science? * ? Data Science Ecosystem * ? Data Mining vs. Data Science * ? Business Analytics vs. Data Science * ? Data Science, Machine Learning, AI? * ? Who is a Data Scientist? * ? Data Science Skill Sets Venn Diagram * ? Data Scientists at Work * ? Examples of Data Science Projects * ? An Example of a Data Product * ? Applied Data Science at Google * ? Data Science Gotchas * ? Summary DATA ANALYTICS LIFE-CYCLE PHASES * ? Big Data Analytics Pipeline * ? Data Discovery Phase * ? Data Harvesting Phase * ? Data Priming Phase * ? Data Logistics and Data Governance * ? Exploratory Data Analysis * ? Model Planning Phase * ? Model Building Phase * ? Communicating the Results * ? Production Roll-out * ? Summary REPAIRING AND NORMALIZING DATA * ? Repairing and Normalizing Data * ? Dealing with the Missing Data * ? Sample Data Set * ? Getting Info on Null Data * ? Dropping a Column * ? Interpolating Missing Data in pandas * ? Replacing the Missing Values with the Mean Value * ? Scaling (Normalizing) the Data * ? Data Preprocessing with scikit-learn * ? Scaling with the scale() Function * ? The MinMaxScaler Object * ? Summary DESCRIPTIVE STATISTICS COMPUTING FEATURES IN PYTHON * ? Descriptive Statistics * ? Non-uniformity of a Probability Distribution * ? Using NumPy for Calculating Descriptive Statistics Measures * ? Finding Min and Max in NumPy * ? Using pandas for Calculating Descriptive Statistics Measures * ? Correlation * ? Regression and Correlation * ? Covariance * ? Getting Pairwise Correlation and Covariance Measures * ? Finding Min and Max in pandas DataFrame * ? Summary DATA AGGREGATION AND GROUPING * ? Data Aggregation and Grouping * ? Sample Data Set * ? The pandas.core.groupby.SeriesGroupBy Object * ? Grouping by Two or More Columns * ? Emulating the SQL's WHERE Clause * ? The Pivot Tables * ? Cross-Tabulation * ? Summary DATA VISUALIZATION WITH MATPLOTLIB * ? Data Visualization ? What is matplotlib? ? Getting Started with matplotlib ? The Plotting Window ? The Figure Options ? The matplotlib.pyplot.plot() Function ? The matplotlib.pyplot.bar() Function ? The matplotlib.pyplot.pie () Function ? Subplots ? Using the matplotlib.gridspec.GridSpec Object ? The matplotlib.pyplot.subplot() Function ? Hands-on Exercise ? Figures ? Saving Figures to File ? Visualization with pandas ? Working with matplotlib in Jupyter Notebooks ? Summary DATA SCIENCE AND ML ALGORITHMS IN SCIKIT-LEARN * ? Data Science, Machine Learning, AI? * ? Types of Machine Learning * ? Terminology: Features and Observations * ? Continuous and Categorical Features (Variables) * ? Terminology: Axis * ? The scikit-learn Package * ? scikit-learn Estimators * ? Models, Estimators, and Predictors * ? Common Distance Metrics * ? The Euclidean Metric * ? The LIBSVM format * ? Scaling of the Features * ? The Curse of Dimensionality * ? Supervised vs Unsupervised Machine Learning * ? Supervised Machine Learning Algorithms * ? Unsupervised Machine Learning Algorithms * ? Choose the Right Algorithm * ? Life-cycles of Machine Learning Development * ? Data Split for Training and Test Data Sets * ? Data Splitting in scikit-learn * ? Hands-on Exercise * ? Classification Examples * ? Classifying with k-Nearest Neighbors (SL) * ? k-Nearest Neighbors Algorithm * ? k-Nearest Neighbors Algorithm * ? The Error Rate * ? Hands-on Exercise * ? Dimensionality Reduction * ? The Advantages of Dimensionality Reduction * ? Principal component analysis (PCA) * ? Hands-on Exercise * ? Data Blending * ? Decision Trees (SL) * ? Decision Tree Terminology * ? Decision Tree Classification in Context of Information Theory * ? Information Entropy Defined * ? The Shannon Entropy Formula * ? The Simplified Decision Tree Algorithm * ? Using Decision Trees * ? Random Forests * ? SVM * ? Naive Bayes Classifier (SL) * ? Naive Bayesian Probabilistic Model in a Nutshell * ? Bayes Formula * ? Classification of Documents with Naive Bayes * ? Unsupervised Learning Type: Clustering * ? Clustering Examples * ? k-Means Clustering (UL) * ? k-Means Clustering in a Nutshell * ? k-Means Characteristics * ? Regression Analysis * ? Simple Linear Regression Model * ? Linear vs Non-Linear Regression * ? Linear Regression Illustration * ? Major Underlying Assumptions for Regression Analysis * ? Least-Squares Method (LSM) * ? Locally Weighted Linear Regression * ? Regression Models in Excel * ? Multiple Regression Analysis * ? Logistic Regression * ? Regression vs Classification * ? Time-Series Analysis * ? Decomposing Time-Series * ? Summary LAB EXERCISES * Lab 1 - Learning the Lab Environment * Lab 2 - Using Jupyter Notebook * Lab 3 - Repairing and Normalizing Data * Lab 4 - Computing Descriptive Statistics * Lab 5 - Data Grouping and Aggregation * Lab 6 - Data Visualization with matplotlib * Lab 7 - Data Splitting * Lab 8 - k-Nearest Neighbors Algorithm * Lab 9 - The k-means Algorithm * Lab 10 - The Random Forest Algorithm

Python With Data Science
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Merchanttraveller Excursions

merchanttraveller excursions

London

After leaving the UK in 2010 and embarking on a backpacking trip to Indonesia alone spending 12 days in the forest with three local guides. Wanda, Bendy and Ping yes that was their names travelling through the forest and camping at a new spot each night. Which added some life-changing experiences for me a nieve 17-18-year-old alone in a foreign country with me not knowing any part of the local language. When I got back to the UK I decided on this as a hopeful career path which I am still working toward now. I decided I wanted to work in the travel industry, where my passion in life truly lies. So I came back to the UK after that trip and immediately planned for other journeys. Still living with family I decided to explore a bit of Latin America which I really enjoyed the culture the idea of working out here was overwhelming. So in 2011, I went to Costa Rica. But where the trips truly took an expedition type feel was when planning from start to finish around 8 months prior to going away. I planned and prepared for a journey to the Darien gap Panama-Colombia border region. Which went as best as could in this region. I then began planning my return to head to Guyana where we canoed a river we, meaning myself 2 local guides travelled for 11.5 days and travelled 288km to be exact. I knew that my dream job would now be to work as an expedition leader where I could live out my passion for leading in remote and exciting places. I now had an abundance of remote travel experience and the required knowledge and soon the qualifications that it takes to do this. But I was still without the valuable experience required to teach and lead people in remote places. I have now done my ML training so that I would soon have the qualification to make this a career choice of mine.