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Tensorflow for Quantitative Finance: Transform Financial Analysis with TensorFlow
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Tensorflow for Quantitative Finance: Transform Financial Analysis with TensorFlow's Cutting-Edge Machine Learning Techniques (Python Libraries for Finance Book 5)
Author: Hayden Van Der Post
Year: June 2, 2024
Format: PDF
File size: PDF 3.4 MB
Language: English



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Book TensorFlow for Quantitative Finance: Transform Financial Analysis with TensorFlow's Cutting-Edge Machine Learning Techniques Introduction: In today's rapidly changing financial landscape, it is more crucial than ever to stay ahead of the curve when it comes to analyzing and modeling financial data. With the rise of machine learning and deep learning techniques, TensorFlow has emerged as a powerful tool for quantitative finance professionals to enhance their analytical skills and make data-driven decisions. This comprehensive guide, "TensorFlow for Quantitative Finance equips financial analysts, data scientists, and quantitative researchers with the knowledge and tools to apply TensorFlow's advanced capabilities to a wide range of financial applications, from predictive analytics to risk management and algorithmic trading. Chapter 1: Foundations of Machine Learning and Deep Learning in Finance The book begins by laying the foundation for machine learning and deep learning in finance, providing readers with a solid understanding of the underlying principles and concepts. It covers topics such as supervised and unsupervised learning, neural networks, and the importance of feature engineering in financial applications. Readers will learn how to preprocess financial data, select appropriate algorithms, and evaluate model performance. Chapter 2: Techniques for Financial Time Series Forecasting This chapter delves into the practical applications of machine learning and deep learning in time series forecasting, including techniques for predicting stock prices, market trends, and other financial metrics. Readers will discover how to implement popular algorithms such as ARIMA, LSTM, and CNNs using TensorFlow, and how to optimize their models for better performance.
Book TensorFlow для количественного финансирования: Преобразование финансового анализа с помощью передовых методов машинного обучения TensorFlow Введение: В современном быстро меняющемся финансовом ландшафте как никогда важно оставаться на опережение при анализе и моделировании финансовых данных. С ростом машинного обучения и методов глубокого обучения TensorFlow стал мощным инструментом для специалистов по количественным финансам для повышения их аналитических навыков и принятия решений на основе данных. Это всеобъемлющее руководство «TensorFlow для количественного финансирования» предоставляет финансовым аналитикам, специалистам по анализу данных и количественным исследователям знания и инструменты для применения передовых возможностей TensorFlow в широком спектре финансовых приложений, от предиктивной аналитики до управления рисками и алгоритмической торговли. Глава 1: Основы машинного обучения и глубокого обучения в финансах Книга начинается с того, что закладывает основу машинного обучения и глубокого обучения в финансах, предоставляя читателям твердое понимание основополагающих принципов и концепций. Он охватывает такие темы, как контролируемое и неконтролируемое обучение, нейронные сети и важность feature engineering в финансовых приложениях. Читатели узнают, как предварительно обработать финансовые данные, выбрать соответствующие алгоритмы и оценить эффективность модели. Глава 2: Методы прогнозирования финансовых временных рядов В этой главе рассматриваются практические применения машинного обучения и глубокого обучения в прогнозировании временных рядов, включая методы прогнозирования цен на акции, рыночных тенденций и других финансовых показателей. Читатели узнают, как реализовать популярные алгоритмы, такие как ARIMA, LSTM и CNN, используя TensorFlow, и как оптимизировать свои модели для повышения производительности.
Book TensorFlow pour le financement quantitatif : Transformer l'analyse financière avec les meilleures techniques d'apprentissage automatique TensorFlow Introduction : Dans le paysage financier actuel en évolution rapide, il est plus important que jamais de rester à l'avant-garde de l'analyse et de la modélisation des données financières. Avec la croissance de l'apprentissage automatique et des techniques d'apprentissage en profondeur, TensorFlow est devenu un outil puissant pour les professionnels de la finance quantitative afin d'améliorer leurs compétences analytiques et la prise de décisions basées sur les données. Ce guide complet « TensorFlow pour le financement quantitatif » fournit aux analystes financiers, aux analystes de données et aux chercheurs quantitatifs des connaissances et des outils pour appliquer les capacités avancées de TensorFlow dans un large éventail d'applications financières, de l'analyse prédictive à la gestion des risques et au trading algorithmique. Chapitre 1 : s bases de l'apprentissage automatique et de l'apprentissage profond en finance livre commence par jeter les bases de l'apprentissage automatique et de l'apprentissage profond en finance, en donnant aux lecteurs une bonne compréhension des principes et des concepts fondamentaux. Il couvre des sujets tels que l'apprentissage contrôlé et non contrôlé, les réseaux neuronaux et l'importance de l'ingénierie fonctionnelle dans les applications financières. s lecteurs apprendront à prétraiter les données financières, à choisir les algorithmes appropriés et à évaluer l'efficacité du modèle. Chapitre 2 : Méthodes de prévision des séries chronologiques financières Ce chapitre traite des applications pratiques de l'apprentissage automatique et de l'apprentissage profond dans la prévision des séries chronologiques, y compris les méthodes de prévision des prix des actions, des tendances du marché et d'autres indicateurs financiers. s lecteurs apprendront comment mettre en œuvre des algorithmes populaires comme ARIMA, LSTM et CNN en utilisant TensorFlow et comment optimiser leurs modèles pour améliorer leurs performances.
Book TensorFlow para financiación cuantitativa: Transformar el análisis financiero con técnicas avanzadas de machine learning TensorFlow Introducción: En el panorama financiero actual, que cambia rápidamente, es más importante que nunca mantenerse al frente en el análisis y modelado de datos financieros. Con el crecimiento del aprendizaje automático y las técnicas de aprendizaje profundo, TensorFlow se ha convertido en una poderosa herramienta para que los profesionales de finanzas cuantitativas mejoren sus habilidades analíticas y tomen decisiones basadas en datos. Esta guía integral «TensorFlow for Cuantitative Finance» proporciona a analistas financieros, analistas de datos e investigadores cuantitativos el conocimiento y las herramientas para aplicar las capacidades avanzadas de TensorFlow en una amplia gama de aplicaciones financieras, desde análisis predictivo hasta gestión de riesgos y comercio algorítmico. Capítulo 1: Fundamentos del aprendizaje automático y el aprendizaje profundo en finanzas libro comienza sentando las bases del aprendizaje automático y el aprendizaje profundo en finanzas, proporcionando a los lectores una sólida comprensión de los principios y conceptos subyacentes. Abarca temas como el aprendizaje controlado e incontrolado, las redes neuronales y la importancia de la ingeniería de características en las aplicaciones financieras. lectores aprenderán a pre-procesar los datos financieros, seleccionar los algoritmos apropiados y evaluar la eficacia del modelo. Capítulo 2: Métodos de predicción de series temporales financieras Este capítulo examina las aplicaciones prácticas del aprendizaje automático y el aprendizaje profundo en la predicción de series temporales, incluidos los métodos de predicción de precios de acciones, tendencias del mercado y otros indicadores financieros. lectores aprenderán a implementar algoritmos populares como ARIMA, LSTM y CNN usando TensorFlow, y cómo optimizar sus modelos para mejorar el rendimiento.
Book per il finanziamento quantitativo: Conversione dell'analisi finanziaria con procedure avanzate di apprendimento automatico Introduzione: in un panorama finanziario in continua evoluzione, è più importante che mai rimanere in anticipo nell'analisi e nella simulazione dei dati finanziari. Con l'aumento dell'apprendimento automatico e delle tecniche di apprendimento approfondito, il TensorFlow è diventato un potente strumento per la finanza quantitativa per migliorare le loro competenze analitiche e prendere decisioni basate sui dati. Questo ampio manuale di finanziamento quantitativo fornisce agli analisti finanziari, agli esperti di analisi dei dati e ai ricercatori quantitativi le conoscenze e gli strumenti necessari per sfruttare le opportunità avanzate di un'ampia gamma di applicazioni finanziarie, dagli analisti predittivi alla gestione dei rischi e al commercio algoritmico. Capitolo 1: basi dell'apprendimento automatico e dell'apprendimento approfondito della finanza Il libro inizia con ciò che pone le basi dell'apprendimento automatico e dell'apprendimento profondo della finanza, fornendo ai lettori una chiara comprensione dei principi e dei concetti fondamentali. Include argomenti quali l'apprendimento controllato e non controllato, le reti neurali e l'importanza della feature engineering nelle applicazioni finanziarie. I lettori sapranno come predisporre i dati finanziari, scegliere gli algoritmi appropriati e valutare l'efficacia del modello. Capitolo 2: Metodi di previsione delle serie di tempo finanziarie Questo capitolo affronta le applicazioni pratiche dell'apprendimento automatico e l'apprendimento approfondito nella previsione delle serie temporali, compresi i metodi di previsione dei prezzi azionari, le tendenze del mercato e altri indicatori finanziari. I lettori impareranno come implementare gli algoritmi più popolari come ARIMA, LSTM e CNN utilizzando il TensorFlow e come ottimizzare i loro modelli per migliorare la produttività.
Book TensorFlow for Quantitative Finance: Transforming Financial Analysis with Advanced Machine arning TensorFlow Einführung: In der sich schnell verändernden Finanzlandschaft von heute ist es wichtiger denn je, bei der Analyse und Modellierung von Finanzdaten immer einen Schritt voraus zu sein. Mit dem Aufstieg von maschinellem rnen und Deep-arning-Techniken ist TensorFlow zu einem leistungsstarken Werkzeug für quantitative Finanzprofis geworden, um ihre analytischen Fähigkeiten und datengesteuerten Entscheidungen zu verbessern. Dieser umfassende itfaden „TensorFlow for Quantitative Finance“ bietet Finanzanalysten, Datenwissenschaftlern und quantitativen Forschern das Wissen und die Werkzeuge, um die fortschrittlichen Fähigkeiten von TensorFlow in einer Vielzahl von Finanzanwendungen anzuwenden, von der prädiktiven Analyse über das Risikomanagement bis hin zum algorithmischen Handel. Kapitel 1: Grundlagen des maschinellen rnens und Deep arning im Finanzwesen Das Buch beginnt damit, die Grundlagen des maschinellen rnens und Deep arning im Finanzwesen zu legen und den sern ein solides Verständnis der zugrunde liegenden Prinzipien und Konzepte zu vermitteln. Es behandelt Themen wie kontrolliertes und unkontrolliertes rnen, neuronale Netze und die Bedeutung von Feature Engineering in Finanzanwendungen. Die ser lernen, wie sie Finanzdaten vorverarbeiten, geeignete Algorithmen auswählen und die Wirksamkeit des Modells bewerten. Kapitel 2: Methoden zur Vorhersage von Finanzzeitreihen Dieses Kapitel untersucht die praktischen Anwendungen von maschinellem rnen und Deep arning bei der Vorhersage von Zeitreihen, einschließlich Methoden zur Vorhersage von Aktienkursen, Markttrends und anderen Finanzkennzahlen. Die ser lernen, beliebte Algorithmen wie ARIMA, LSTM und CNN mit TensorFlow zu implementieren und ihre Modelle zu optimieren, um die istung zu verbessern.
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Book TensorFlow for Quantitative Finance: Transforming Financial Analysis with Advanced Machine arning TensorFlow Giriş: Günümüzün hızla değişen finansal ortamında, finansal verilerin analiz ve modellenmesinde eğrinin önünde kalmak her zamankinden daha önemlidir. Makine öğreniminin ve derin öğrenme tekniklerinin yükselişiyle TensorFlow, nicel finans profesyonellerinin analitik becerilerini ve veri odaklı karar verme becerilerini geliştirmeleri için güçlü bir araç haline gelmiştir. Bu kapsamlı "TensorFlow for Quantitative Finance" kılavuzu, finansal analistlere, veri bilimcilere ve nicel araştırmacılara, TensorFlow'un gelişmiş yeteneklerini, tahmine dayalı analitikten risk yönetimine ve algoritmik ticarete kadar çok çeşitli finansal uygulamalarda uygulamak için bilgi ve araçlar sağlar. Bölüm 1: Finansta Makine Öğrenimi ve Derin Öğrenmenin Temelleri Kitap, finansta makine öğrenimi ve derin öğrenmenin temelini atarak başlar ve okuyuculara temel ilkeler ve kavramlar hakkında sağlam bir anlayış sağlar. Denetlenen ve denetlenmeyen öğrenme, sinir ağları ve finansal uygulamalarda özellik mühendisliğinin önemi gibi konuları kapsar. Okuyucular, finansal verilerin önceden işlenmesini, uygun algoritmaların seçilmesini ve modelin etkinliğini değerlendirmeyi öğreneceklerdir. Bölüm 2: Finansal Zaman Serisi Tahmin Teknikleri Bu bölüm, hisse senedi fiyatlarını, piyasa eğilimlerini ve diğer finansal ölçümleri tahmin etme yöntemleri de dahil olmak üzere, zaman serisi tahminlerinde makine öğrenimi ve derin öğrenmenin pratik uygulamalarını tartışmaktadır. Okuyucular, TensorFlow kullanarak ARIMA, LSTM ve CNN gibi popüler algoritmaların nasıl uygulanacağını ve performanslarını artırmak için modellerini nasıl optimize edeceklerini öğreneceklerdir.
كتاب تدفق الموترات للتمويل الكمي: تحويل التحليل المالي باستخدام موتر التعلم الآلي المتقدم مقدمة: في المشهد المالي سريع التغير اليوم، من المهم أكثر من أي وقت مضى البقاء في طليعة المنحنى في تحليل البيانات المالية ونمذجتها. مع ظهور تقنيات التعلم الآلي والتعلم العميق، أصبح TensorFlow أداة قوية لمحترفي التمويل الكمي لتعزيز مهاراتهم التحليلية واتخاذ القرارات القائمة على البيانات. يوفر دليل «TensorFlow للتمويل الكمي» الشامل للمحللين الماليين وعلماء البيانات والباحثين الكميين المعرفة والأدوات لتطبيق قدرات TensorFlow المتقدمة عبر مجموعة واسعة من التطبيقات المالية، من التحليلات التنبؤية إلى إدارة المخاطر إلى التداول الخوارزمي. الفصل 1: أساسيات التعلم الآلي والتعلم العميق في التمويل يبدأ الكتاب بوضع الأساس للتعلم الآلي والتعلم العميق في التمويل، وتزويد القراء بفهم قوي للمبادئ والمفاهيم التأسيسية. يغطي موضوعات مثل التعلم الخاضع للإشراف وغير الخاضع للإشراف، والشبكات العصبية، وأهمية هندسة الميزات في التطبيقات المالية. سيتعلم القراء كيفية معالجة البيانات المالية مسبقًا واختيار الخوارزميات المناسبة وتقييم فعالية النموذج. الفصل 2: تقنيات التنبؤ بسلسلة الوقت المالي يناقش هذا الفصل التطبيقات العملية للتعلم الآلي والتعلم العميق في التنبؤ بالسلسلة الزمنية، بما في ذلك طرق التنبؤ بأسعار الأسهم واتجاهات السوق والمقاييس المالية الأخرى. سيتعلم القراء كيفية تنفيذ الخوارزميات الشائعة مثل ARIMA و LSTM و CNN باستخدام TensorFlow، وكيفية تحسين نماذجهم لتحسين الأداء.

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