AI in Quantitative Analysis

Anand Vemula · Kimesimuliwa na AI na Madison (kutoka Google)
Kitabu cha kusikiliza
Saa 3
Toleo kamili
Kimesimuliwa na AI
Ukadiriaji na maoni hayajahakikishwa  Pata Maelezo Zaidi
Je, ungependa sampuli ya Dakika 18? Sikiliza wakati wowote, hata ukiwa nje ya mtandao. 
Ongeza

Kuhusu kitabu hiki cha kusikiliza

AI in Quantitative Analysis explores the intersection of artificial intelligence and modern financial modeling. Structured into four comprehensive parts, the book guides readers from foundational concepts to advanced applications and ethical considerations in AI-driven quantitative finance.

Part I lays the groundwork, detailing the evolution of quantitative analysis and the integration of AI into financial systems. It covers essential mathematical and statistical principles, creating a solid base for understanding how AI models function in financial contexts.

Part II dives into core machine learning techniques, including supervised and unsupervised learning, time series modeling, and reinforcement learning. It explains how regression, classification, clustering, ARIMA, LSTM, Transformers, and policy gradient methods are used for price prediction, anomaly detection, and portfolio optimization.

Part III expands into sophisticated applications such as Natural Language Processing (NLP) for extracting sentiment and events from news and social media, Generative AI for simulating market scenarios and augmenting data, and Explainable AI tools like SHAP and LIME. It also discusses how AI enhances risk management, from fraud detection to credit scoring and stress testing.

Part IV focuses on practical implementation—highlighting programming languages (Python, R, Julia), machine learning libraries, backtesting tools, real-time data handling, deployment strategies, and MLOps in finance. The final chapter addresses critical ethical challenges, including bias, transparency, AI governance, and emerging technologies like quantum computing and neuromorphic architectures.

This book offers a detailed, application-rich guide for finance professionals, data scientists, and academics seeking to master the use of AI in quantitative financial research and decision-making.

Kuhusu mwandishi

AI in Quantitative Analysis explores the intersection of artificial intelligence and modern financial modeling. Structured into four comprehensive parts, the book guides readers from foundational concepts to advanced applications and ethical considerations in AI-driven quantitative finance.

Part I lays the groundwork, detailing the evolution of quantitative analysis and the integration of AI into financial systems. It covers essential mathematical and statistical principles, creating a solid base for understanding how AI models function in financial contexts.

Part II dives into core machine learning techniques, including supervised and unsupervised learning, time series modeling, and reinforcement learning. It explains how regression, classification, clustering, ARIMA, LSTM, Transformers, and policy gradient methods are used for price prediction, anomaly detection, and portfolio optimization.

Part III expands into sophisticated applications such as Natural Language Processing (NLP) for extracting sentiment and events from news and social media, Generative AI for simulating market scenarios and augmenting data, and Explainable AI tools like SHAP and LIME. It also discusses how AI enhances risk management, from fraud detection to credit scoring and stress testing.

Part IV focuses on practical implementation—highlighting programming languages (Python, R, Julia), machine learning libraries, backtesting tools, real-time data handling, deployment strategies, and MLOps in finance. The final chapter addresses critical ethical challenges, including bias, transparency, AI governance, and emerging technologies like quantum computing and neuromorphic architectures.

This book offers a detailed, application-rich guide for finance professionals, data scientists, and academics seeking to master the use of AI in quantitative financial research and decision-making.

Kadiria kitabu hiki cha kusikiliza

Tupe maoni yako.

Jinsi ya kupata kitabu cha kusikiliza

Simu mahiri na kompyuta vibao
Sakinisha programu ya Vitabu vya Google Play kwa ajili ya Android na iPad au iPhone. Itasawazishwa kiotomatiki kwenye akaunti yako na kukuruhusu usome vitabu mtandaoni au nje ya mtandao popote ulipo.
Kompyuta za kupakata na kompyuta
Unaweza kusoma vitabu vilivyonunuliwa kwenye Google Play kwa kutumia kivinjari wavuti cha kompyuta yako.