BOOKS - Machine Learning and Deep Learning in Natural Language Processing
Machine Learning and Deep Learning in Natural Language Processing - Anitha S. Pillai and Roberto Tedesco 2024 PDF  BOOKS
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Machine Learning and Deep Learning in Natural Language Processing
Author: Anitha S. Pillai and Roberto Tedesco
Year: 2024
Format: PDF
File size: PDF 9.3 MB
Language: English



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Book Machine Learning and Deep Learning in Natural Language Processing Introduction: Natural Language Processing (NLP) is a subfield of Artificial Intelligence (AI) that focuses on the computational processing and comprehension of human languages, encompassing various techniques and algorithms to extract meaning and produce results. As a rapidly evolving field, NLP has the potential to revolutionize numerous industries, including healthcare, customer service, and entertainment. In this book, we delve into the realm of Machine Learning (ML) and Deep Learning (DL) in NLP, exploring their applications and advancements in natural language understanding, text analytics, and conversational agents. Our aim is to provide a comprehensive overview of current Neural Network techniques in NLP, highlighting their capabilities and limitations, as well as the challenges and opportunities in this exciting field.
Book Machine arning and Deep arning in Natural Language Processing Introduction: Natural Language Processing (NLP) - подраздел искусственного интеллекта (ИИ), который фокусируется на вычислительной обработке и понимании человеческих языков, охватывая различные методы и алгоритмы для извлечения смысла и получения результатов. Как быстро развивающаяся область, NLP может революционизировать многие отрасли, включая здравоохранение, обслуживание клиентов и развлечения. В этой книге мы углубимся в область машинного обучения (ML) и глубокого обучения (DL) в НЛП, исследуя их приложения и достижения в понимании естественного языка, текстовой аналитике и разговорных агентах. Наша цель - предоставить всесторонний обзор современных методов нейронной сети в НЛП, подчеркивая их возможности и ограничения, а также проблемы и возможности в этой захватывающей области.
Book Machine arning and Deep arning in Natural Language Processing Introduction : Natural Language Processing (NLP) - une sous-section de l'intelligence artificielle (IA) qui se concentre sur le traitement informatique et la compréhension des langues humaines, couvrant diverses méthodes et algorithmes pour le sens de l'extraction et de l'obtention de résultats En tant que domaine en évolution rapide, NLP peut révolutionner de nombreuses industries, y compris les soins de santé, le service à la clientèle et le divertissement. Dans ce livre, nous allons approfondir le domaine de l'apprentissage automatique (ML) et de l'apprentissage profond (DL) dans la PNL en explorant leurs applications et leurs réalisations dans la compréhension du langage naturel, l'analyse de texte et les agents de conversation. Notre objectif est de fournir un aperçu complet des méthodes modernes de réseau neuronal dans la PNL, en soulignant leurs capacités et leurs limites, ainsi que les défis et les possibilités dans ce domaine passionnant.
Book Machine arning and Deep arning in Natural Language Processing Introduction: Natural Language Processing (NLP) es una subsección de inteligencia artificial (IA) que se centra en el procesamiento computacional y comprender las lenguas humanas, abarcando diferentes métodos y algoritmos para extraer significado y obtener resultados. Como un área en rápida evolución, el NLP puede revolucionar muchas industrias, incluyendo la atención médica, el servicio al cliente y el entretenimiento. En este libro profundizaremos en el campo del aprendizaje automático (ML) y el aprendizaje profundo (DL) en la PNL, investigando sus aplicaciones y avances en la comprensión del lenguaje natural, análisis de texto y agentes de conversación. Nuestro objetivo es ofrecer una visión global de las técnicas modernas de red neuronal en la PNL, destacando sus capacidades y limitaciones, así como los desafíos y oportunidades en este apasionante campo.
Book Machine arning and Deep arning in Natural Language Processing Introspectivation: Natural Language Processing (NLP) - uma seção de inteligência artificial (IA) que se concentra no processamento e compreensão de linguagens humanas, abrangendo diferentes métodos e algoritmos para extrair sentido e produzir resultados. Como uma área em rápido desenvolvimento, o NLP pode revolucionar muitos setores, incluindo saúde, atendimento ao cliente e entretenimento. Neste livro, nós iremos nos aprofundar na área de aprendizado de máquina (ML) e aprendizado profundo (DL) na NLP, pesquisando seus aplicativos e avanços na compreensão da linguagem natural, análise de texto e agentes conversíveis. O nosso objetivo é fornecer uma revisão abrangente das técnicas modernas de rede neural no NPLP, destacando suas capacidades e limitações, assim como os desafios e oportunidades nesta área emocionante.
Book Machine arning and Deep arning in Naturale Language Processing Introduction: Naturale Language Processing (NLP) è una sezione di intelligenza artificiale (intelligenza artificiale) che si concentra sull'elaborazione e la comprensione dei linguaggi umani, coprendo metodi e algoritmi diversi per ottenere senso e risultati. In quanto un'area in rapida evoluzione, NLP può rivoluzionare molti settori, tra cui l'assistenza sanitaria, il servizio clienti e l'intrattenimento. In questo libro, approfondiremo il campo dell'apprendimento automatico (ML) e dell'apprendimento profondo (DL) nell'NLP, esplorando le loro applicazioni e i progressi nella comprensione del linguaggio naturale, nell'analisi testuale e negli agenti di conversazione. Il nostro obiettivo è quello di fornire una panoramica completa delle attuali tecniche di rete neurale nell'NDL, sottolineando le loro capacità e i loro limiti, così come le sfide e le opportunità in questo campo affascinante.
Book Machine arning and Deep arning in Natural Language Processing Einführung: Natural Language Processing (NLP) ist ein Teilgebiet der künstlichen Intelligenz (KI), das sich auf die computergestützte Verarbeitung und das Verständnis menschlicher Sprachen konzentriert und verschiedene Methoden und Algorithmen umfasst, um Bedeutung zu gewinnen und Ergebnisse zu erzielen. Als sich schnell entwickelnder Bereich hat NLP das Potenzial, viele Branchen zu revolutionieren, einschließlich Gesundheitswesen, Kundenservice und Unterhaltung. In diesem Buch werden wir tiefer in das Gebiet des maschinellen rnens (ML) und des tiefen rnens (DL) im NLP eintauchen und ihre Anwendungen und Fortschritte im Verständnis natürlicher Sprache, Textanalyse und Konversationsagenten untersuchen. Unser Ziel ist es, einen umfassenden Überblick über aktuelle neuronale Netzwerktechniken im NLP zu geben und deren Möglichkeiten und Grenzen sowie Herausforderungen und Chancen in diesem spannenden Bereich hervorzuheben.
Book Machine arning i Deep arning in Natural Language Processing Wprowadzenie: Natural Language Processing (NLP) to podsekcja sztucznej inteligencji (AI), która koncentruje się na obliczeniowym przetwarzaniu i zrozumieniu języków ludzkich, obejmująca różne metody i algorytmy, aby wyodrębnić znaczenie i wyniki. Jako booming field, NLP ma potencjał do rewolucjonizacji wielu branż, w tym opieki zdrowotnej, obsługi klienta, i rozrywki. W tej książce zagłębiamy się w dziedzinę uczenia maszynowego (ML) i głębokiego uczenia się (DL) w NLP, badając ich zastosowania i postępy w zrozumieniu języka naturalnego, analityce tekstowej i agencjach konwersacyjnych. Naszym celem jest kompleksowy przegląd obecnych technik sieci neuronowych w NLP, podkreślając ich możliwości i ograniczenia, a także wyzwania i możliwości w tej ekscytującej dziedzinie.
Book Machine Arning and Deep Arning in Natural Language Processing Introduction: Natural Language Processing (NLP) הוא תת-סעיף של בינה מלאכותית המתמקד בעיבוד והבנה של שפות אנושיות. כתחום פורח, ל-NLP יש פוטנציאל לחולל מהפכה בתעשיות רבות, כולל שירותי בריאות, שירות לקוחות ובידור. בספר זה, אנו מתעמקים בתחום של למידת מכונה (ML) ולמידה עמוקה (DL) ב-NLP, חוקרים את היישומים שלהם ומתקדמים בהבנת שפה טבעית, ניתוח טקסט וסוכני שיחה. מטרתנו היא לספק סקירה מקיפה של טכניקות הרשת העצבית הנוכחיות ב-NLP, תוך הדגשת היכולות והמגבלות שלהם, כמו גם אתגרים והזדמנויות בתחום מרגש זה.''
Doğal Dil İşlemede Kitap Makine Öğrenimi ve Derin Öğrenme Giriş: Doğal Dil İşleme (NLP), anlamı çıkarmak ve sonuç üretmek için çeşitli yöntemleri ve algoritmaları kapsayan, hesaplamalı işleme ve insan dillerinin anlaşılmasına odaklanan yapay zekanın (AI) bir alt bölümüdür. Gelişen bir alan olarak NLP, sağlık, müşteri hizmetleri ve eğlence dahil olmak üzere birçok endüstride devrim yapma potansiyeline sahiptir. Bu kitapta, NLP'deki makine öğrenimi (ML) ve derin öğrenme (DL) alanına girerek, doğal dil anlama, metin analizi ve konuşma aracılarındaki uygulamalarını ve ilerlemelerini araştırıyoruz. Amacımız, NLP'deki mevcut sinir ağı tekniklerine kapsamlı bir genel bakış sağlamak, yeteneklerini ve sınırlamalarını ve bu heyecan verici alandaki zorlukları ve fırsatları vurgulamaktır.
التعلم الآلي للكتاب والتعلم العميق في معالجة اللغة الطبيعية مقدمة: معالجة اللغة الطبيعية (NLP) هي قسم فرعي من الذكاء الاصطناعي (AI) يركز على المعالجة الحسابية وفهم اللغات البشرية، ويغطي طرقًا وخوارزميات مختلفة لاستخراج المعنى وإنتاج النتائج. كمجال مزدهر، فإن NLP لديها القدرة على إحداث ثورة في العديد من الصناعات، بما في ذلك الرعاية الصحية وخدمة العملاء والترفيه. في هذا الكتاب، نتعمق في مجال التعلم الآلي (ML) والتعلم العميق (DL) في NLP، واستكشاف تطبيقاتهم والتقدم في فهم اللغة الطبيعية وتحليلات النصوص ووكلاء المحادثة. هدفنا هو تقديم نظرة عامة شاملة على تقنيات الشبكة العصبية الحالية في NLP، وتسليط الضوء على قدراتها وقيودها بالإضافة إلى التحديات والفرص في هذا المجال المثير.
自然語言處理介紹:自然語言處理(NLP)是人工智能(AI)的子部分,專註於人類語言的計算處理和理解,涵蓋了提取和獲取意義的各種方法和算法結果。作為一個快速發展的領域,NLP可以徹底改變許多行業,包括醫療保健,客戶服務和娛樂。在本書中,我們將深入研究NLP中的機器學習(ML)和深度學習(DL)領域,研究它們在自然語言理解,文本分析和口語代理方面的應用和進步。我們的目標是全面概覽NLP中現代神經網絡技術,強調它們在這個激動人心的領域的能力和局限性以及挑戰和機遇。

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