• Professional Development
  • Medicine & Nursing
  • Arts & Crafts
  • Health & Wellbeing
  • Personal Development

126 Educators providing Courses delivered Live Online

IOMH - Institute of Mental Health

iomh - institute of mental health

London

The IOMH - Institute of Mental Health [https://iomh.co.uk/]is dedicated to empowering individuals to unlock their full potential and thrive in multiple areas of life. Whether you're seeking personal growth, professional development, or support in overcoming life's challenges, we have the resources and expertise to guide you on your transformative journey. Our Vision At the IOMH (Institute of Mental Health), we envision a world where every person is inspired to embrace change, overcome obstacles, motivate others, and find hope in the face of adversity. We believe that through education and support, individuals can tap into their inner strength and create meaningful transformations in all aspects of life. Our Mission Our mission is to break barriers and ignite the spark of possibility within you. We are committed to offering a diverse range of courses and programs that encompass various niches, allowing you to explore and excel in multiple areas of interest. Our skillfully crafted content, designed by specialists, provides you with the knowledge and skills you need to become a well-rounded and empowered individual. WHAT WE OFFER * Expert-Curated Courses: Our courses are developed by industry-leading experts. * Fully Accredited Courses and Study Materials: Ensure quality and credibility. * Business Team Training: Tailor-made programs for corporate teams. * Affordable Subscriptions: Flexible payment options to suit your budget. * Accredited Certifications: Validate your skills and expertise. * New Courses Monthly: Stay updated with the latest trends. * Flexible Learning: Learn at your own pace and convenience. * 24/7 Support: Dedicated assistance whenever you need it. OUR VISION AT THE IOMH (INSTITUTE OF MENTAL HEALTH), WE ENVISION A WORLD WHERE EVERY PERSON IS INSPIRED TO EMBRACE CHANGE, OVERCOME OBSTACLES, MOTIVATE OTHERS, AND FIND HOPE IN THE FACE OF ADVERSITY. WE BELIEVE THAT THROUGH EDUCATION AND SUPPORT, INDIVIDUALS CAN TAP INTO THEIR INNER STRENGTH AND CREATE MEANINGFUL TRANSFORMATIONS IN ALL ASPECTS OF LIFE. OUR VISION AT THE IOMH (INSTITUTE OF MENTAL HEALTH), WE ENVISION A WORLD WHERE EVERY PERSON IS INSPIRED TO EMBRACE CHANGE, OVERCOME OBSTACLES, MOTIVATE OTHERS, AND FIND HOPE IN THE FACE OF ADVERSITY. WE BELIEVE THAT THROUGH EDUCATION AND SUPPORT, INDIVIDUALS CAN TAP INTO THEIR INNER STRENGTH AND CREATE MEANINGFUL TRANSFORMATIONS IN ALL ASPECTS OF LIFE.

iStudy UK

istudy uk

We understand more than anyone how important it is for you to get the right qualifications at the right time. We also understand that when you have a lot to do, you might not always have the time free to go to a place of study. That is why we created this site, so you can take all the time you need to learn more about your chosen topics as well as be able to do the whole thing from home. We believe in empowering people by offering them opportunities to expand and extend their knowledge and skill set as well as giving them the support they need to achieve great things. With thousands of courses available and a team who will do just about anything to help you, it is safe to say that you will not find a better course provider on the internet and so we would love to work with you to make sure that you get the best experience and best results out of your education. WHAT WE DO Here at iStudy we provide a range of online training courses for those who want to gain new skills, and qualifications and update their knowledge. iStudy training courses are delivered entirely online through our sophisticated student learning portal. The student learning portal is an online learning management system that allows students to study for their courses online. This innovative technology means there is no need to attend any classes or take time off work to study. Professionally accredited courses All our courses are delivered in partnership with nationally recognised awarding bodies so be assured that what you learn with us matters when it comes to achieving your career goals. Study that suits you You do not have to give up your job or your life to get a new qualification, you can learn anytime, anywhere.

KQXSMN

kqxsmn

Quy định quay thử xổ số miền Nam - KQXSMN hàng ngày Xổ số miền Nam (XSMN) là một trong những hình thức xổ số phổ biến tại Việt Nam, thu hút đông đảo người chơi từ khắp các tỉnh thành trong khu vực miền Nam. Việc theo dõi kết quả xổ số miền Nam (KQXSMN) hàng ngày đã trở thành thói quen của rất nhiều người chơi. Đặc biệt, một trong những tính năng thú vị hiện nay là "quay thử xổ số". Đây là công cụ hỗ trợ giúp người chơi có thể dự đoán kết quả xổ số dựa trên các dữ liệu thống kê và thuật toán. Bài viết này sẽ giúp người đọc hiểu rõ hơn về quy định quay thử xổ số miền Nam và cách thức quay thử cũng như giá trị của kết quả này đối với người chơi. Bấm ngay: https://www.economiaediritto.it/gruppi/ket-qua-xo-so-mien-nam/ [https://www.economiaediritto.it/gruppi/ket-qua-xo-so-mien-nam/] https://abitu.net/events/topic/view/event_id/4172/topic_id/12463/post_id/42869 [https://abitu.net/events/topic/view/event_id/4172/topic_id/12463/post_id/42869] https://jobs.productmarketingalliance.com/company/hdc-2f10b01750ea [https://jobs.productmarketingalliance.com/company/hdc-2f10b01750ea] https://www.addonface.com/read-blog/82356 [https://www.addonface.com/read-blog/82356] https://diveadvisor.com/rofay19824/trung-thuong-xo-so-mien-nam---kqxsmn-chuan-xac-nhat [https://diveadvisor.com/rofay19824/trung-thuong-xo-so-mien-nam---kqxsmn-chuan-xac-nhat] 1. Quay thử xổ số miền Nam là gì? Quay thử xổ số miền Nam là một công cụ hỗ trợ dự đoán kết quả xổ số. Thay vì phải chờ đợi kết quả chính thức của KQXSMN, người chơi có thể sử dụng các trang web hoặc ứng dụng có tính năng quay thử để tham khảo những con số có khả năng trúng cao trong kỳ quay thưởng sắp tới. Dù không phải là kết quả chính thức, nhưng quay thử xổ số miền Nam mang lại sự tiện ích và giúp người chơi có thêm cơ sở để chọn số. XS MN hôm nay chuẩn xác nhất Hệ thống quay thử xổ số miền Nam thường dựa trên các thuật toán máy tính phức tạp, lấy dữ liệu từ những kết quả trước đó để phân tích và đưa ra các dãy số ngẫu nhiên. Mặc dù kết quả từ quay thử không mang tính chính xác tuyệt đối, nhưng vẫn giúp người chơi có được những dự đoán tham khảo, làm tăng thêm sự thú vị và hứng thú khi chơi xổ số. 2. Quy định và cách thức hoạt động của quay thử xổ số miền Nam Quay thử xổ số miền Nam hoạt động thông qua các quy tắc và thuật toán cụ thể. Dưới đây là một số quy định quan trọng liên quan đến tính năng quay thử xổ số: * Nguyên tắc quay thử: Quay thử xổ số miền Nam dựa trên các thuật toán ngẫu nhiên, kết hợp với dữ liệu từ các kỳ quay thưởng trước đó để dự đoán các con số có khả năng trúng trong các kỳ tiếp theo. Các thuật toán này thường do các chuyên gia lập trình xây dựng và được cập nhật liên tục dựa trên xu hướng của kết quả xổ số. * Cơ sở dữ liệu: Kết quả quay thử xổ số miền Nam thường dựa trên dữ liệu lịch sử của các kỳ quay thưởng trước. Hệ thống sẽ tổng hợp, phân tích tần suất xuất hiện của các con số, từ đó dự đoán ra những con số có khả năng xuất hiện cao trong kỳ quay tới. Dữ liệu càng đầy đủ và chi tiết, kết quả quay thử càng có tính chính xác cao. * Tính ngẫu nhiên: Mặc dù được xây dựng dựa trên dữ liệu thống kê, kết quả của quay thử xổ số miền Nam vẫn mang tính ngẫu nhiên và không phải lúc nào cũng phản ánh chính xác kết quả xổ số thực tế. Do đó, người chơi cần xem quay thử như một công cụ tham khảo thay vì một kết quả chính xác 100%. * Tần suất quay thử: Quay thử xổ số miền Nam có thể thực hiện nhiều lần trong ngày. Người chơi có thể thử quay nhiều lần để so sánh và tìm ra những dãy số phù hợp với dự đoán của mình. Tuy nhiên, cần lưu ý rằng việc quay thử không ảnh hưởng đến kết quả chính thức của xổ số. 3. Lợi ích của việc quay thử xổ số miền Nam Quay thử xổ số miền Nam mang lại nhiều lợi ích cho người chơi, đặc biệt là những ai muốn có thêm thông tin để lựa chọn con số. Dưới đây là một số lợi ích mà công cụ này mang lại: * Cơ sở tham khảo: Mặc dù không phải là kết quả chính thức, nhưng quay thử xổ số miền Nam giúp người chơi có thêm cơ sở để tham khảo trước khi quyết định mua vé số. Việc xem xét các con số dự đoán từ quay thử có thể giúp người chơi cảm thấy tự tin hơn trong lựa chọn của mình. * Tiết kiệm thời gian: Quay thử xổ số giúp người chơi có thể dự đoán nhanh chóng mà không cần phải tự phân tích dữ liệu hay theo dõi kết quả của nhiều kỳ quay trước đó. Hệ thống sẽ tự động tính toán và đưa ra kết quả dự đoán chỉ trong vài giây, giúp tiết kiệm thời gian đáng kể. * Tăng hứng thú khi chơi xổ số: Với tính năng quay thử, người chơi có thể thử nhiều lần để xem những con số may mắn có trùng khớp với kỳ vọng của mình hay không. Điều này không chỉ tạo thêm sự hứng thú mà còn giúp người chơi có thêm trải nghiệm giải trí thú vị hơn. * Giảm áp lực: Việc chơi xổ số thường tạo ra một số áp lực cho người chơi, đặc biệt là khi họ không biết nên chọn con số nào để mua vé. Quay thử xổ số giúp giảm bớt áp lực này, cho phép người chơi cảm thấy thoải mái hơn khi có thêm những gợi ý về dãy số có thể mang lại may mắn. 4. Những lưu ý khi sử dụng tính năng quay thử xổ số miền Nam Mặc dù quay thử xổ số miền Nam là một công cụ hữu ích, người chơi vẫn cần lưu ý một số điểm sau để không gặp phải những hiểu lầm hoặc thất vọng: Xem thêm: https://mycableengineering.com/activity-feed/userId/11866 [https://mycableengineering.com/activity-feed/userId/11866] https://www.egresadosudistrital.edu.co/virtualcourses/forums/users/gildu16 [https://www.egresadosudistrital.edu.co/virtualcourses/forums/users/gildu16] https://forum.repetier.com/profile/gildu16 [https://forum.repetier.com/profile/gildu16] https://official.link/gildu16 [https://official.link/gildu16] https://sumuri.com/users/pexey98089/ [https://sumuri.com/users/pexey98089/] * Kết quả quay thử không phải kết quả chính thức: Điều quan trọng mà người chơi cần nhớ là kết quả quay thử chỉ mang tính tham khảo và không phải là kết quả xổ số chính thức. Vì vậy, không nên phụ thuộc hoàn toàn vào kết quả quay thử để chọn số mà hãy kết hợp với các phương pháp khác như phân tích cá nhân hoặc dựa vào kinh nghiệm. * Không có phương pháp nào đảm bảo trúng thưởng: Dù là quay thử hay các phương pháp phân tích khác, không có phương pháp nào có thể đảm bảo trúng thưởng 100%. Xổ số vẫn là một trò chơi may rủi, và việc trúng thưởng phụ thuộc phần lớn vào sự may mắn của người chơi. * Sử dụng nguồn quay thử uy tín: Trên thị trường hiện nay có rất nhiều trang web và ứng dụng cung cấp tính năng quay thử xổ số miền Nam, nhưng không phải nguồn nào cũng đáng tin cậy. Người chơi nên chọn những trang web uy tín, có danh tiếng tốt và đã được nhiều người sử dụng để đảm bảo tính chính xác và minh bạch của kết quả. * Quản lý tài chính hợp lý: Việc tham gia xổ số là hình thức giải trí, nhưng nếu không quản lý tài chính tốt, người chơi có thể gặp rủi ro về kinh tế. Do đó, dù sử dụng quay thử hay không, người chơi cần biết cách kiểm soát số tiền bỏ ra cho việc chơi xổ số, tránh việc lạm dụng dẫn đến các hậu quả tiêu cực. 5. Ứng dụng quay thử xổ số miền Nam trong thực tế Hiện nay, nhiều người chơi xổ số miền Nam đã tích cực sử dụng các công cụ quay thử trước khi chọn số. Họ thường kết hợp việc xem kết quả quay thử với các phương pháp khác như phân tích thống kê, theo dõi tần suất xuất hiện của các con số hoặc dựa vào những quan niệm cá nhân để chọn số. Việc sử dụng quay thử xổ số đã trở thành một phần không thể thiếu của nhiều người chơi lâu năm. Một số người cho rằng quay thử giúp họ cảm thấy tự tin hơn trong việc chọn con số, trong khi những người khác coi đây là một hình thức giải trí thêm trước khi tham gia vào cuộc chơi chính thức. XSKTMN hôm nay chuẩn xác Bên cạnh đó, nhiều trang web và ứng dụng cung cấp các công cụ quay thử xổ số còn kèm theo các tính năng thống kê chi tiết, giúp người chơi dễ dàng nắm bắt được xu hướng của các con số qua từng kỳ quay thưởng. Tại đây: https://www.transdairy.net/members/gildu16/profile/ [https://www.transdairy.net/members/gildu16/profile/] https://associationfrancaisedescephalees.fr/forums/users/gildu16 [https://associationfrancaisedescephalees.fr/forums/users/gildu16] https://www.belrea.edu/employer/gildu16/ [https://www.belrea.edu/employer/gildu16/] https://www.crowdlending.es/usuarios/gildu16/ [https://www.crowdlending.es/usuarios/gildu16/] https://samutprakan.mol.go.th/forums/users/gildu16 [https://samutprakan.mol.go.th/forums/users/gildu16] 6. Tương lai của quay thử xổ số miền Nam Với sự phát triển của công nghệ và nhu cầu ngày càng cao từ phía người chơi, quay thử xổ số miền Nam đang ngày càng hoàn thiện và trở nên phổ biến hơn. Các nhà phát triển công nghệ đang không ngừng cải tiến các thuật toán dự đoán và cập nhật dữ liệu để mang đến cho người chơi những kết quả quay thử chính xác hơn. Trong tương lai, có thể quay thử xổ số sẽ được tích hợp với các công cụ trí tuệ nhân tạo (AI) hoặc học máy (machine learning) để phân tích dữ liệu và dự đoán kết quả với độ chính xác cao hơn. Điều này hứa hẹn sẽ mang lại trải nghiệm tốt hơn cho người chơi và làm tăng thêm sự hấp dẫn cho trò chơi xổ số. Kết luận Quay thử xổ số miền Nam là một công cụ hữu ích giúp người chơi có thêm cơ sở tham khảo trước khi chọn số. Mặc dù kết quả quay thử không phải là kết quả chính thức và không đảm bảo trúng thưởng, nhưng tính năng này vẫn mang lại nhiều lợi ích và giúp người chơi cảm thấy tự tin hơn khi tham gia vào trò chơi. Tuy nhiên, người chơi cần nhớ rằng xổ số vẫn là trò chơi may rủi và không nên quá phụ thuộc vào các công cụ dự đoán. Quan trọng hơn hết, hãy coi xổ số là một hình thức giải trí và luôn quản lý tài chính một cách hợp lý khi tham gia.

Courses matching "machine learning"

Show all 89

Python Machine Learning, online instructor-led

4.6(12)

By PCWorkshops

Python Machine Learning algorithms can derive trends (learn) from data and make predictions on data by extrapolating on existing trends. Companies can take advantage of this to gain insights and ultimately improve business. Using Python Machine Learning scikit-learn, practice how to use Python Machine Learning algorithms to perform predictions on data. Learn the below listed algorithms, a small collection of available Python Machine Learning algorithms.

Python Machine Learning, online instructor-led
Delivered OnlineFlexible Dates
£185

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 OnlineFlexible Dates
Price on Enquiry

Machine Learning Essentials for Scala Developers (TTML5506-S)

By Nexus Human

Duration 3 Days 18 CPD hours This course is intended for This course is geared for experienced Scala developers who are new to the world of machine learning and are eager to expand their skillset. Professionals such as data engineers, data scientists, and software engineers who want to harness the power of machine learning in their Scala-based projects will greatly benefit from attending. Additionally, team leads and technical managers who oversee Scala development projects and want to integrate machine learning capabilities into their workflows can gain valuable insights from this course Overview Working in a hands-on learning environment led by our expert instructor you'll: Grasp the fundamentals of machine learning and its various categories, empowering you to make informed decisions about which techniques to apply in different situations. Master the use of Scala-specific tools and libraries, such as Breeze, Saddle, and DeepLearning.scala, allowing you to efficiently process, analyze, and visualize data for machine learning projects. Develop a strong understanding of supervised and unsupervised learning algorithms, enabling you to confidently choose the right approach for your data and effectively build predictive models Gain hands-on experience with neural networks and deep learning, equipping you with the know-how to create advanced applications in areas like natural language processing and image recognition. Explore the world of generative AI and learn how to utilize GPT-Scala for creative text generation tasks, broadening your skill set and making you a more versatile developer. Conquer the realm of scalable machine learning with Scala, learning the secrets to tackling large-scale data processing and analysis challenges with ease. Sharpen your skills in model evaluation, validation, and optimization, ensuring that your machine learning models perform reliably and effectively in any situation. Machine Learning Essentials for Scala Developers is a three-day course designed to provide a solid introduction to the world of machine learning using the Scala language. Throughout the hands-on course, you?ll explore a range of machine learning algorithms and techniques, from supervised and unsupervised learning to neural networks and deep learning, all specifically crafted for Scala developers. Our expert trainer will guide you through real-world, focused hands-on labs designed to help you apply the knowledge you gain in real-world scenarios, giving you the confidence to tackle machine learning challenges in your own projects. You'll dive into innovative tools and libraries such as Breeze, Saddle, DeepLearning.scala, GPT-Scala (and Generative AI with Scala), and TensorFlow-Scala. These cutting-edge resources will enable you to build and deploy machine learning models for a wide range of projects, including data analysis, natural language processing, image recognition and more. Upon completing this course, you'll have the skills required to tackle complex projects and confidently develop intelligent applications. You?ll be able to drive business outcomes, optimize processes, and contribute to innovative projects that leverage the power of data-driven insights and predictions. Introduction to Machine Learning and Scala Learning Outcome: Understand the fundamentals of machine learning and Scala's role in this domain. What is Machine Learning? Machine Learning with Scala: Advantages and Use Cases Supervised Learning in Scala Learn the basics of supervised learning and how to apply it using Scala. Supervised Learning: Regression and Classification Linear Regression in Scala Logistic Regression in Scala Unsupervised Learning in Scala Understand unsupervised learning and how to apply it using Scala. Unsupervised Learning:Clustering and Dimensionality Reduction K-means Clustering in Scala Principal Component Analysis in Scala Neural Networks and Deep Learning in Scala Learning Outcome: Learn the basics of neural networks and deep learning with a focus on implementing them in Scala. Introduction to Neural Networks Feedforward Neural Networks in Scala Deep Learning and Convolutional Neural Networks Introduction to Generative AI and GPT in Scala Gain a basic understanding of generative AI and GPT, and how to utilize GPT-Scala for natural language tasks. Generative AI: Overview and Use Cases Introduction to GPT (Generative Pre-trained Transformer) GPT-Scala: A Library for GPT in Scala Reinforcement Learning in Scala Understand the basics of reinforcement learning and its implementation in Scala. Introduction to Reinforcement Learning Q-learning and Value Iteration Reinforcement Learning with Scala Time Series Analysis using Scala Learn time series analysis techniques and how to apply them in Scala. Introduction to Time Series Analysis Autoregressive Integrated Moving Average (ARIMA) Models Time Series Analysis in Scala Natural Language Processing (NLP) with Scala Gain an understanding of natural language processing techniques and their application in Scala. Introduction to NLP: Techniques and Applications Text Processing and Feature Extraction NLP Libraries and Tools for Scala Image Processing and Computer Vision with Scala Learn image processing techniques and computer vision concepts with a focus on implementing them in Scala. Introduction to Image Processing and Computer Vision Feature Extraction and Image Classification Image Processing Libraries for Scala Model Evaluation and Validation Understand the importance of model evaluation and validation, and how to apply these concepts using Scala. Model Evaluation Metrics Cross-Validation Techniques Model Selection and Tuning in Scala Scalable Machine Learning with Scala Learn how to handle large-scale machine learning problems using Scala. Challenges of Large-Scale Machine Learning Data Partitioning and Parallelization Distributed Machine Learning with Scala Machine Learning Deployment and Production Understand the process of deploying machine learning models into production using Scala. Deployment Challenges and Best Practices Model Serialization and Deserialization Monitoring and Updating Models in Production Ensemble Learning Techniques in Scala Discover ensemble learning techniques and their implementation in Scala. Introduction to Ensemble Learning Bagging and Boosting Techniques Implementing Ensemble Models in Scala Feature Engineering for Machine Learning in Scala Learn advanced feature engineering techniques to improve machine learning model performance in Scala. Importance of Feature Engineering in Machine Learning Feature Scaling and Normalization Techniques Handling Missing Data and Categorical Features Advanced Optimization Techniques for Machine Learning Understand advanced optimization techniques for machine learning models and their application in Scala. Gradient Descent and Variants Regularization Techniques (L1 and L2) Hyperparameter Tuning Strategies

Machine Learning Essentials for Scala Developers (TTML5506-S)
Delivered OnlineFlexible Dates
Price on Enquiry

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 OnlineFlexible Dates
Price on Enquiry

Cloudera Introduction to Machine Learning with Spark ML and MLlib

By Nexus Human

Duration 1 Days 6 CPD hours This course is intended for Software Engineers Overview The objective of this course is to learn the key language concepts to machine learning, Spark MLlib, and Spark ML. This course will teach you the key language concepts to machine learning, Spark MLlib, and Spark ML. The course includes coverage of collaborative filtering, clustering, classification, algorithms, and data volume. This course will teach you the key language concepts to machine learning, Spark MLlib, and Spark ML. The course includes coverage of collaborative filtering, clustering, classification, algorithms, and data volume.

Cloudera Introduction to Machine Learning with Spark ML and MLlib
Delivered OnlineFlexible Dates
Price on Enquiry

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 Loughborough or UK Wide or OnlineFlexible Dates
£595

DP-090T00: Implementing a Machine Learning Solution with Microsoft Azure Databricks

By Nexus Human

Duration 1 Days 6 CPD hours This course is intended for This course is designed for data scientists with experience of Python who need to learn how to apply their data science and machine learning skills on Azure Databricks. Overview After completing this course, you will be able to: Provision an Azure Databricks workspace and cluster Use Azure Databricks to train a machine learning model Use MLflow to track experiments and manage machine learning models Integrate Azure Databricks with Azure Machine Learning Azure Databricks is a cloud-scale platform for data analytics and machine learning. In this course, students will learn how to use Azure Databricks to explore, prepare, and model data; and integrate Databricks machine learning processes with Azure Machine Learning. Introduction to Azure Databricks Getting Started with Azure Databricks Working with Data in Azure Databricks Training and Evaluating Machine Learning Models Preparing Data for Machine Learning Training a Machine Learning Model Managing Experiments and Models Using MLflow to Track Experiments Managing Models Managing Experiments and Models Using MLflow to Track Experiments Managing Models Integrating Azure Databricks and Azure Machine Learning Tracking Experiments with Azure Machine Learning Deploying Models

DP-090T00: Implementing a Machine Learning Solution with Microsoft Azure Databricks
Delivered OnlineFlexible Dates
Price on Enquiry

Python Machine Learning Course, 1-Days, Online Attendance

4.6(12)

By PCWorkshops

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 OnlineFlexible Dates
£185

Google Cloud Platform Big Data and Machine Learning Fundamentals

By Nexus Human

Duration 1 Days 6 CPD hours This course is intended for This class is intended for the following: Data analysts, Data scientists, Business analysts getting started with Google Cloud Platform. Individuals responsible for designing pipelines and architectures for data processing, creating and maintaining machine learning and statistical models, querying datasets, visualizing query results and creating reports. Executives and IT decision makers evaluating Google Cloud Platform for use by data scientists. Overview This course teaches students the following skills:Identify the purpose and value of the key Big Data and Machine Learning products in the Google Cloud Platform.Use Cloud SQL and Cloud Dataproc to migrate existing MySQL and Hadoop/Pig/Spark/Hive workloads to Google Cloud Platform.Employ BigQuery and Cloud Datalab to carry out interactive data analysis.Train and use a neural network using TensorFlow.Employ ML APIs.Choose between different data processing products on the Google Cloud Platform. This course introduces participants to the Big Data and Machine Learning capabilities of Google Cloud Platform (GCP). It provides a quick overview of the Google Cloud Platform and a deeper dive of the data processing capabilities. Introducing Google Cloud Platform Google Platform Fundamentals Overview. Google Cloud Platform Big Data Products. Compute and Storage Fundamentals CPUs on demand (Compute Engine). A global filesystem (Cloud Storage). CloudShell. Lab: Set up a Ingest-Transform-Publish data processing pipeline. Data Analytics on the Cloud Stepping-stones to the cloud. Cloud SQL: your SQL database on the cloud. Lab: Importing data into CloudSQL and running queries. Spark on Dataproc. Lab: Machine Learning Recommendations with Spark on Dataproc. Scaling Data Analysis Fast random access. Datalab. BigQuery. Lab: Build machine learning dataset. Machine Learning Machine Learning with TensorFlow. Lab: Carry out ML with TensorFlow Pre-built models for common needs. Lab: Employ ML APIs. Data Processing Architectures Message-oriented architectures with Pub/Sub. Creating pipelines with Dataflow. Reference architecture for real-time and batch data processing. Summary Why GCP? Where to go from here Additional Resources Additional course details: Nexus Humans Google Cloud Platform Big Data and Machine Learning 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 Google Cloud Platform Big Data and Machine Learning 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.

Google Cloud Platform Big Data and Machine Learning Fundamentals
Delivered OnlineFlexible Dates
Price on Enquiry

DP-100T01 Designing and Implementing a Data Science Solution on Azure

By Nexus Human

Duration 4 Days 24 CPD hours This course is intended for This course is designed for data scientists with existing knowledge of Python and machine learning frameworks like Scikit-Learn, PyTorch, and Tensorflow, who want to build and operate machine learning solutions in the cloud. Overview Learn how to operate machine learning solutions at cloud scale using Azure Machine Learning. This course teaches you to leverage your existing knowledge of Python and machine learning to manage data ingestion and preparation, model training and deployment, and machine learning solution monitoring in Microsoft Azure. Learn how to operate machine learning solutions at cloud scale using Azure Machine Learning. This course teaches you to leverage your existing knowledge of Python and machine learning to manage data ingestion and preparation, model training and deployment, and machine learning solution monitoring with Azure Machine Learning and MLflow. Prerequisites Creating cloud resources in Microsoft Azure. Using Python to explore and visualize data. Training and validating machine learning models using common frameworks like Scikit-Learn, PyTorch, and TensorFlow. Working with containers AI-900T00: Microsoft Azure AI Fundamentals is recommended, or the equivalent experience. 1 - Design a data ingestion strategy for machine learning projects Identify your data source and format Choose how to serve data to machine learning workflows Design a data ingestion solution 2 - Design a machine learning model training solution Identify machine learning tasks Choose a service to train a machine learning model Decide between compute options 3 - Design a model deployment solution Understand how model will be consumed Decide on real-time or batch deployment 4 - Design a machine learning operations solution Explore an MLOps architecture Design for monitoring Design for retraining 5 - Explore Azure Machine Learning workspace resources and assets Create an Azure Machine Learning workspace Identify Azure Machine Learning resources Identify Azure Machine Learning assets Train models in the workspace 6 - Explore developer tools for workspace interaction Explore the studio Explore the Python SDK Explore the CLI 7 - Make data available in Azure Machine Learning Understand URIs Create a datastore Create a data asset 8 - Work with compute targets in Azure Machine Learning Choose the appropriate compute target Create and use a compute instance Create and use a compute cluster 9 - Work with environments in Azure Machine Learning Understand environments Explore and use curated environments Create and use custom environments 10 - Find the best classification model with Automated Machine Learning Preprocess data and configure featurization Run an Automated Machine Learning experiment Evaluate and compare models 11 - Track model training in Jupyter notebooks with MLflow Configure MLflow for model tracking in notebooks Train and track models in notebooks 12 - Run a training script as a command job in Azure Machine Learning Convert a notebook to a script Run a script as a command job Use parameters in a command job 13 - Track model training with MLflow in jobs Track metrics with MLflow View metrics and evaluate models 14 - Perform hyperparameter tuning with Azure Machine Learning Define a search space Configure a sampling method Configure early termination Use a sweep job for hyperparameter tuning 15 - Run pipelines in Azure Machine Learning Create components Create a pipeline Run a pipeline job 16 - Register an MLflow model in Azure Machine Learning Log models with MLflow Understand the MLflow model format Register an MLflow model 17 - Create and explore the Responsible AI dashboard for a model in Azure Machine Learning Understand Responsible AI Create the Responsible AI dashboard Evaluate the Responsible AI dashboard 18 - Deploy a model to a managed online endpoint Explore managed online endpoints Deploy your MLflow model to a managed online endpoint Deploy a model to a managed online endpoint Test managed online endpoints 19 - Deploy a model to a batch endpoint Understand and create batch endpoints Deploy your MLflow model to a batch endpoint Deploy a custom model to a batch endpoint Invoke and troubleshoot batch endpoints

DP-100T01 Designing and Implementing a Data Science Solution on Azure
Delivered OnlineFlexible Dates
£1,785