Temporal AI Audiolibro Por Ajit Singh arte de portada

Temporal AI

Mastering Time-Series with Foundation Models

Muestra de Voz Virtual

Prueba gratis de 30 días de Audible Standard

Prueba Standard gratis
Selecciona 1 audiolibro al mes de nuestra colección completa de más de 1 millón de títulos.
Es tuyo mientras seas miembro.
Obtén acceso ilimitado a los podcasts con mayor demanda.
Plan Standard se renueva automáticamente por $8.99 al mes después de 30 días. Cancela en cualquier momento.

Temporal AI

De: Ajit Singh
Narrado por: Virtual Voice
Prueba Standard gratis

$8.99 al mes después de 30 días. Cancela en cualquier momento.

Compra ahora por $8.90

Compra ahora por $8.90

Background images

Este título utiliza narración de voz virtual

Voz Virtual es una narración generada por computadora para audiolibros..
"Temporal AI: Mastering Time-Series with Foundation Models" is a comprehensive, practical-first guide designed to equip readers with the knowledge and skills to leverage cutting-edge AI techniques for time-series analysis and forecasting. The ability to understand and predict the future based on the past is one of the most critical challenges in data science. From forecasting energy demand to prevent blackouts, to predicting stock prices for financial stability, time-series data is the lifeblood of intelligent decision-making. This book is not merely a theoretical overview; it is a practical playbook for building real-world, time-aware AI solutions from the ground up.


Philosophy: From Theory to Tangible Skills

The core philosophy of this book is empowerment through application. I believe the most effective way to master complex technical subjects is by building tangible solutions. My guiding philosophy is empowerment through application. This book intentionally shifts the focus from abstract mathematical formalisms to the concrete skills required to develop functional applications. Consequently, this book prioritizes practical implementation over abstract theory. Every concept is introduced with the immediate goal of applying it. I simplify complex algorithms into understandable steps and focus on the "how-to" of developing robust, real-world applications, from data preprocessing to model deployment. Think of this book less as a traditional textbook and more as a builder's manual for the modern data scientist and AI engineer.


Key Features

1. Beginner to Advanced Trajectory: Carefully structured to cater to both undergraduate students new to the field and graduate students or professionals seeking to master advanced techniques.

2. Focus on Foundation Models: Dedicated coverage of the latest and most powerful Transformer-based architectures specifically adapted for time-series, such as PatchTST, TimeGPT, and TimesFM.

3. End-to-End Project Development: Teaches the complete lifecycle of a Temporal AI project: from problem formulation and data preparation to model training, evaluation, and finally, deployment as a live service.

4. Simple & Intuitive Algorithms: Complex algorithms are broken down into simple, easy-to-follow steps, prioritizing conceptual understanding for beginners.

5. Hands-On Practicals: Rich with code examples, exercises, and detailed case studies to reinforce learning and build a strong practical portfolio.


Key Takeaways

After working through this book, you will be able to:

1. Understand and preprocess any time-series dataset for modern AI models.

2. Implement and compare classical, deep learning, and foundation models for forecasting.

3. Build, train, and fine-tune Transformer-based models for various time-series tasks like forecasting and anomaly detection.

4. Design a complete system architecture for a real-world Temporal AI application.

5. Deploy your trained models as a REST API for integration into other applications.

6. Confidently tackle complex time-series challenges with a state-of-the-art toolkit.


Disclaimer: Earnest request from the Author.

Kindly go through the table of contents and refer kindle edition for a glance on the related contents.

Thank you for your kind consideration!
Informática Tecnología Aprendizaje automático Ciencia de datos Estudiante Criptomoneda
Todavía no hay opiniones