BOOKS - Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Me...
Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases - Alok Kumar June 19, 2020 PDF  BOOKS
ECO~19 kg CO²

3 TON

Views
12182

Telegram
 
Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases
Author: Alok Kumar
Year: June 19, 2020
Format: PDF
File size: PDF 4.5 MB
Language: English



Pay with Telegram STARS
What You'll Learn Understand the need for ensemble learning and its importance in modern machine learningUnderstand the concept of technology evolution and its impact on human survival and unityApply ensemble learning techniques to improve model performanceUse bagging bootstrapping and cross-validation methods to combine models and improve resultsLearn best practices for implementing ensemble concepts such as stacking and boostingUse popular libraries such as Keras Scikit Learn TensorFlow PyTorch and Microsoft LightGBM to apply ensemble learning in different data science problemsUnderstand recent advances in ensemble learning and their applications in real-world scenarios. Book Description: Ensemble Learning for AI Developers: Learn Bagging Stacking and Boosting Methods with Use Cases In today's fast-paced technological world, it is crucial for developers and data scientists to stay ahead of the curve when it comes to machine learning techniques.
Что вы узнаете Поймите необходимость обучения ансамблю и его важность в современном машинном обучении Поймите концепцию эволюции технологий и ее влияние на выживание и единство человека Применяйте методы обучения ансамблю для повышения производительности модели Используйте методы начальной загрузки и перекрестной проверки для объединения моделей и улучшения результатов Изучите лучшие практики для реализации концепций ансамбля, таких как стекинг и бустинг Используйте популярные библиотеки, такие как Keras Scikit arn TensorFlow PyTorch и Microsoft LightGBM для применения ансамблевого обучения в различных задачах науки о данных. Поймите последние достижения в ансамблевом обучении и их приложениях в реальных сценариях. Ensemble arning для разработчиков ИИ: изучите методы упаковки в мешки и повышения производительности с помощью сценариев использования В современном быстро развивающемся технологическом мире для разработчиков и специалистов по обработке данных крайне важно оставаться на опережение, когда речь идет о методах машинного обучения.
Ce que vous apprenez Comprendre la nécessité d'enseigner à un ensemble et son importance dans l'apprentissage automatique moderne Comprendre le concept de l'évolution de la technologie et son impact sur la survie et l'unité de l'homme Appliquer les méthodes d'apprentissage à un ensemble pour améliorer les performances du modèle Utiliser les techniques de chargement initial et de vérification croisée pour combiner les modèles et améliorer les résultats Apprendre les meilleures pratiques pour mettre en œuvre les concepts de l'ensemble, tels que l'empilement et le boosting Utilisez des bibliothèques populaires telles que Keras Scikit arn TensorFlow PyTorch et Microsoft LightGBM pour appliquer l'apprentissage d'ensemble à diverses tâches de science des données. Comprenez les dernières avancées de l'apprentissage d'ensemble et de leurs applications dans des scénarios réels. Ensemble arning pour les développeurs d'IA : explorez les méthodes d'emballage en sacs et d'amélioration de la productivité grâce à des scénarios d'utilisation Dans le monde technologique en évolution rapide d'aujourd'hui, il est essentiel que les développeurs et les professionnels du traitement des données restent en avance sur les techniques d'apprentissage automatique.
Lo que aprenderá Comprenda la necesidad de enseñar el conjunto y su importancia en el aprendizaje automático moderno Comprenda el concepto de la evolución de la tecnología y su impacto en la supervivencia y la unidad humana Aplique los métodos de aprendizaje del conjunto para mejorar el rendimiento del modelo Utilice los métodos de carga inicial y verificación cruzada para combinar modelos y mejorar los resultados Aprenda las mejores prácticas para implementar conceptos de conjunto, como Stack and Busting Utilice bibliotecas populares como Keras Scikit arn TensorFlow PyTorch y Microsoft LightGBM para aplicar el aprendizaje de conjunto en diferentes tareas de la ciencia de datos. Comprender los últimos avances en el aprendizaje de conjuntos y sus aplicaciones en escenarios reales. Ensemble arning para desarrolladores de IA: explore las técnicas de envasado en bolsas y aumente la productividad con escenarios de uso En el mundo tecnológico en rápida evolución de hoy en día, es fundamental que los desarrolladores y los profesionales del procesamiento de datos se mantengan a la vanguardia cuando se trata de técnicas de aprendizaje automático.
O que você vai aprender sobre a necessidade de ensinar o conjunto e sua importância no aprendizado moderno da máquina Entenda o conceito da evolução da tecnologia e seus efeitos na sobrevivência e unidade humana Aplique métodos de aprendizagem do conjunto para melhorar a produtividade do modelo Use técnicas de download inicial e verificação cruzada para combinar modelos e melhorar os resultados Estude as melhores práticas para implementar os conceitos do conjunto. como vidro e busting Use bibliotecas populares como Keras Scikit arn TensorFlow PyTorch e Microsoft LightGBM para aplicar a formação em conjunto em várias tarefas da ciência de dados. Entenda os avanços recentes na formação em conjunto e suas aplicações em cenários reais. Conjunto arning para desenvolvedores de IA: Estude as técnicas de embalagem em sacos e melhoria de produtividade com cenários de uso No mundo tecnológico em desenvolvimento moderno para desenvolvedores e especialistas em processamento de dados é essencial manter-se à frente quando se trata de técnicas de aprendizagem automática.
Cosa si impara La necessità di imparare l'insieme e la sua importanza nell'apprendimento automatico attuale Comprendere il concetto di evoluzione della tecnologia e i suoi effetti sulla sopravvivenza e sull'unità umana Utilizzare i metodi di apprendimento dell'insieme per migliorare le prestazioni del modello Utilizzare i metodi di caricamento iniziale e incrociato per combinare i modelli e migliorare i risultati Studia le migliori pratiche per implementare i concetti dell'insieme. come il vetro e il boosting Usate librerie popolari come Keras Scikit arn e Microsoft per applicare l'apprendimento completo a diversi obiettivi della scienza dei dati. Comprendere gli ultimi progressi nell'apprendimento di insieme e nelle loro applicazioni in scenari reali. Ensemble arning per gli sviluppatori di IA: studiare i metodi di imballaggio in sacchetti e migliorare la produttività attraverso scenari di utilizzo In un mondo tecnologico in continua evoluzione per gli sviluppatori e gli esperti di elaborazione dati, è fondamentale rimanere in anticipo quando si tratta di tecniche di apprendimento automatico.
Was e lernen Verstehen e die Notwendigkeit des Ensembletrainings und seine Bedeutung im modernen maschinellen rnen Verstehen e das Konzept der Technologieentwicklung und ihre Auswirkungen auf das Überleben und die Einheit des Menschen Wenden e Ensembletrainingsmethoden an, um die Modellleistung zu verbessern Verwenden e Bootstrap- und Cross-Check-Methoden, um Modelle zu kombinieren und Ergebnisse zu verbessern rnen e Best Practices, um Ensemblekonzepte umzusetzen, wie Stapeln und Boostern Verwenden e gängige Bibliotheken wie Keras Scikit arn TensorFlow PyTorch und Microsoft LightGBM, um Ensemble-Training in verschiedenen Data Science-Aufgaben anzuwenden. Verstehen e die neuesten Fortschritte im Ensemble-Training und ihre Anwendungen in realen Szenarien. Ensemble arning für KI-Entwickler: Beuteltechniken erlernen und Produktivität durch Anwendungsfälle steigern In der heutigen schnelllebigen Technologiewelt ist es für Entwickler und Datenwissenschaftler von entscheidender Bedeutung, bei Methoden des maschinellen rnens immer einen Schritt voraus zu sein.
Czego się nauczysz Zrozumieć potrzebę szkolenia zespołu i jego znaczenie w nowoczesnym uczeniu maszynowym Zrozumieć koncepcję ewolucji technologii i jej wpływ na przetrwanie i jedność człowieka Zastosuj metody szkolenia zespołu w celu poprawy wydajności modelu Użyj metod kołowania i walidacji krzyżowej, aby połączyć modele i poprawić wyniki Ucz się najlepszych praktyk w celu wdrożenia koncepcji zespołu. takie jak układanie i zwiększanie Wykorzystaj popularne biblioteki, takie jak Keras Scikit arn TensorFlow PyTorch i Microsoft, aby zastosować uczenie zespołu do różnych zadań w zakresie nauki o danych. Zrozumieć najnowsze postępy w uczeniu się zespołu i ich zastosowania w scenariuszach rzeczywistych. Ensemble arning for AI Developers: arn Bagging and Productivity Techniques with Use Cases W dzisiejszym świecie technologii o szybkim tempie kluczowe znaczenie dla programistów i naukowców zajmujących się danymi ma utrzymanie się przed krzywą w zakresie technik uczenia maszynowego.
מה תלמד תבין את הצורך באימוני אנסמבל וחשיבותו בלמידת מכונה מודרנית תבין את מושג האבולוציה הטכנולוגית והשפעתה על הישרדות האדם ואחדותו תיישם שיטות אימון אנסמבל לשיפור ביצועי מודל השתמש בשיטות אימות ושיטות אימות-צולב לשילוב מודלים ושיפור Expects Experimate כגון ערימה והגברת השימוש בספריות פופולריות כגון Kras Scikit arch TensorFlow PyTorch ו-Microsoft LightGBM כדי ליישם למידה על מגוון משימות במדעי המידע. להבין את ההתקדמות האחרונה בלמידה אחידה ואת היישומים שלהם בתרחישים בעולם האמיתי. Ensemble arning for AI Developers: arch Bagging and Productivity Techniques with Use Cases in the Fast-Process Technology world, זה קריטי למפתחים ומדעני נתונים להקדים את העקומה בכל הנוגע לשיטות למידת מכונה.''
Öğrenecekleriniz Topluluk eğitimine olan ihtiyacı ve modern makine öğrenimindeki önemini anlayın Teknoloji evrimi kavramını ve bunun insan yaşamı ve birliği üzerindeki etkisini anlayın Model performansını iyileştirmek için topluluk eğitim yöntemlerini uygulayın Modelleri birleştirmek ve sonuçları iyileştirmek için önyükleme ve çapraz doğrulama yöntemlerini kullanın Topluluk kavramlarını uygulamak için en iyi uygulamaları öğrenin. Yığınlama ve güçlendirme gibi Keras Scikit arn TensorFlow PyTorch ve Microsoft LightGBM gibi popüler kütüphaneleri, topluluk öğrenimini çeşitli veri bilimi görevlerine uygulamak için kullanın. Topluluk öğrenimindeki en son gelişmeleri ve gerçek dünya senaryolarındaki uygulamalarını anlayın. AI Geliştiricileri için Topluluk Öğrenme: Kullanım Durumlarıyla Torbalama ve Verimlilik Tekniklerini Öğrenin Günümüzün hızlı tempolu teknoloji dünyasında, makine öğrenme teknikleri söz konusu olduğunda, geliştiricilerin ve veri bilimcilerinin eğrinin önünde kalması çok önemlidir.
ما ستتعلمه فهم الحاجة إلى التدريب الجماعي وأهميته في التعلم الآلي الحديث فهم مفهوم تطور التكنولوجيا وتأثيرها على بقاء الإنسان ووحدته تطبيق أساليب تدريب جماعية لتحسين أداء النموذج استخدام أساليب التمهيد والتحقق من الصحة للجمع بين النماذج وتحسين النتائج تعلم أفضل الممارسات لتنفيذ مفاهيم المجموعة. مثل تكديس وتعزيز استخدام المكتبات الشهيرة مثل Keras Scikit arn TensorFlow PyTorch و Microsoft LightGBM لتطبيق تعلم المجموعات على مجموعة متنوعة من مهام علم البيانات. افهم أحدث التطورات في تعلم المجموعات وتطبيقاتها في سيناريوهات العالم الحقيقي. التعلم الجماعي لمطوري الذكاء الاصطناعي: تعلم تقنيات التعبئة والإنتاجية مع حالات الاستخدام في عالم التكنولوجيا سريع الخطى اليوم، من المهم للمطورين وعلماء البيانات البقاء في صدارة المنحنى عندما يتعلق الأمر بتقنيات التعلم الآلي.
배울 내용은 앙상블 교육의 필요성과 현대 기계 학습의 중요성을 이해하고 기술 진화의 개념과 인간 생존 및 통일성에 미치는 영향을 이해하여 모델 성능을 향상시킵니다. 앙상블 개념을 구현하는 모범 사례를 배우십시오. 누적 및 강화와 같은 Keras Scikit arn TensorFlow PyTorch 및 Microsoft LightGBM과 같은 인기있는 라이브러리를 사용하여 다양한 데이터 과학 작업에 앙상블 학습을 적용하십시오. 실제 시나리오에서 앙상블 학습의 최신 발전 및 응용 프로그램을 이해하십시오. AI 개발자를위한 앙상블 학습: 사용 사례가 포함 된 배깅 및 생산성 기술 오늘날의 빠르게 진행되는 기술 세계에서 개발자와 데이터 과학자는 머신 러닝 기술과 관련하여 앞서 나가는 것이 중요합니다.
あなたが学ぶこと現代の機械学習におけるアンサンブルトレーニングの必要性とその重要性を理解する技術進化の概念と人間の生存と団結への影響を理解するモデル性能を向上させるためにアンサンブルトレーニング方法を適用するモデルを組み合わせてアウトカムを改善するためにブートストラップとクロスバリデーション方法を使用してください。スタッキングやブーストなどKeras Scikit arn TensorFlow PyTorchやMicrosoft LightGBMなどの一般的なライブラリを使用して、さまざまなデータサイエンスのタスクにアンサンブル学習を適用します。アンサンブル学習の最新の進歩と実際のシナリオでのアプリケーションを理解する。AI開発者向けのアンサンブル学習:ユースケースでバギングと生産性のテクニックを学ぶ今日のペースの速いテクノロジーの世界では、開発者やデータサイエンティストが機械学習のテクニックに関しては、カーブの先を行くことが重要です。
了解合奏學習的必要性及其在現代機器學習中的重要性了解技術進化的概念及其對人類生存和團結的影響應用合奏學習方法提高模型性能使用引導和交叉驗證方法結合模型並改進結果學習最佳實踐以實現合奏概念, 使用流行的庫,如Keras Scikit arn TensorFlow PyTorch和Microsoft LightGBM將合奏學習應用於各種數據科學任務。了解合奏學習的最新進展及其在真實場景中的應用。針對AI開發人員的Ensemble arning:在當今快速發展的技術世界中,在機器學習技術方面保持領先地位至關重要。

You may also be interested in:

SAP List Viewer (ALV) A Practical Guide for ABAP Developers
Python (2nd Edition) Learn Python in a day and be a professional This book makes coding with Python easy Python for Beginners Learn to code with Python
Python (2nd Edition) Learn Python in a day and be a professional This book makes coding with Python easy Python for Beginners Learn to code with Python
DevOps Tools for Java Developers Best Practices from Source Code to Production Containers
Engineering Secure Devices A Practical Guide for Embedded System Architects and Developers
MASTERING DART AND PYTHON PROGRAMMING: A COMPREHENSIVE GUIDE FOR INTERMEDIATE DEVELOPERS - 2 BOOKS IN 1
Engineering Secure Devices A Practical Guide for Embedded System Architects and Developers
.NET MAUI for C# Developers: Build cross-platform mobile and desktop applications
The Imposter|s Roadmap Essential skills and practices for self-taught professional developers
Learning in the Age of Digital and Green Transition: Proceedings of the 25th International Conference on Interactive Collaborative Learning (ICL2022), … (Lecture Notes in Networks and Systems, 6
Learn Java Programming A Definitive Crash Course For Beginners to Learn Java Fast. Secrets, Tips and Tricks to Programming with Java Code and The Fundamentals to Creating Your First Program
Learn Spanish with stories (B2) : Un cafe en Buenos Aires - Spanish upper intermediate advanced : Una aventura con sabor a tango (Learn … stories in Spanish, historias en espanol)
Modernizing Enterprise Java A Concise Cloud Native Guide for Developers (Early Release)
Building Your Next Big Thing with Google Cloud Platform: A Guide for Developers and Enterprise Architects
Machine Learning for Beginners A Math Guide to Mastering Deep Learning and Business Application. Understand How Artificial Intelligence, Data Science, and Neural Networks Work Through Real Examples
Building Machine Learning Systems Using Python Practice to Train Predictive Models and Analyze Machine Learning Results
Machine Learning in Production: Master the art of delivering robust Machine Learning solutions with MLOps (English Edition)
Machine Learning With Python 3 books in 1 Hands-On Learning for Beginners+An in-Depth Guide Beyond the Basics+A Practical Guide for Experts
Deep Learning for Data Architects: Unleash the power of Python|s deep learning algorithms (English Edition)
Dynamics of a Social Language Learning Community: Beliefs, Membership and Identity (Psychology of Language Learning and Teaching, 9) (Volume 9)
Agricultural Informatics Automation Using the IoT and Machine Learning (Advances in Learning Analytics for Intelligent Cloud-IoT Systems)
Machine Learning for Business The Ultimate Artificial Intelligence & Machine Learning for Managers, Team Leaders and Entrepreneurs
Learning Google Cloud Vertex AI: Build, deploy, and manage machine learning models with Vertex AI (English Edition)
Quantum AI Machine Learning and Deep Learning for Everyone A Beginners Guide to Unlocking Business Opportunities by Leveraging the power of AI in Quantum Age
Lifelong Learning, the Arts and Community Cultural Engagement in the contemporary university: International Perspectives (Universities and Lifelong Learning MUP)
Serverless Machine Learning with Amazon Redshift ML: Create, train, and deploy machine learning models using familiar SQL commands
Quantum AI Machine Learning and Deep Learning for Everyone A Beginners Guide to Unlocking Business Opportunities by Leveraging the power of AI in Quantum Age
Applied Machine Learning and High-Performance Computing on AWS: Accelerate the development of machine learning applications following architectural best practices
Teacher Education in Computer-Assisted Language Learning: A Sociocultural and Linguistic Perspective (Advances in Digital Language Learning and Teaching)
Constructivism Reconsidered in the Age of Social Media: New Directions for Teaching and Learning, Number 144 (J-B TL Single Issue Teaching and Learning)
Artificial Intelligence For Business How Your Company Can Make More Profit with Machine Learning, Data Science, Big Data, and Deep Learning
Java Deep Learning Projects: Implement 10 real-world deep learning applications using Deeplearning4j and open source APIs
Machine Learning for Data Streams with Practical Examples in MOA (Adaptive Computation and Machine Learning series)
Building Scalable Deep Learning Pipelines on AWS Develop, Train, and Deploy Deep Learning Models
Learning PyTorch 2.0, Second Edition Utilize PyTorch 2.3 and CUDA 12 to experiment neural networks and Deep Learning models
Reinforcement Learning with TensorFlow: A beginner|s guide to designing self-learning systems with TensorFlow and OpenAI Gym
Deep Learning for the Life Sciences Applying Deep Learning to Genomics, Microscopy, Drug Discovery, and More First Edition
Machine Learning Master Machine Learning Fundamentals for Beginners, Business Leaders and Aspiring Data Scientists
Personality as a Factor Affecting the Use of Language Learning Strategies: The Case of University Students (Second Language Learning and Teaching)
Learning PyTorch 2.0, Second Edition Utilize PyTorch 2.3 and CUDA 12 to experiment neural networks and Deep Learning models