Free Download Applied Statistics with AI: Hypothesis Testing and Inference for Modern Models (Maths and AI Together) by Anshuman Mishra
English | October 2, 2025 | ISBN: N/A | ASIN: B0FTSR1HWB | 361 pages | EPUB | 0.52 Mb
Artificial Intelligence (AI) has become the backbone of modern technological innovation. From healthcare diagnostics to financial fraud detection, from language translation to autonomous vehicles, AI is transforming industries and shaping the future. However, at the heart of AI lies statistics-the science of data, uncertainty, and inference. Without statistics, AI would merely be a set of algorithms without the ability to reason, infer, or make reliable predictions.
This book, Applied Statistics with AI, is designed to bridge the gap between traditional statistics and modern artificial intelligence techniques. It introduces the essential concepts of statistical inference-such as estimation, hypothesis testing, and regression analysis-and shows how they are applied in AI models.
Many students, researchers, and even professionals in the AI domain often dive directly into machine learning libraries like TensorFlow, PyTorch, or Scikit-learn without deeply understanding the statistical principles that govern model behavior. This can lead to misinterpretation of results, poor decision-making, or overconfidence in models that are not statistically sound. This book addresses this critical gap by offering a comprehensive yet accessible exploration of applied statistics in the context of AI.
Why This Book is ImportantFoundation for Reliable AI:
AI models are often treated as black boxes. Without understanding hypothesis testing and statistical inference, it is impossible to evaluate whether the results of these models are statistically significant or simply random noise. This book provides tools to separate signal from noise.Bridging Theory and Practice:
Many statistics books are overly theoretical, while AI/ML books are often too practical without statistical rigor. This book combines both worlds-it introduces theory but immediately shows practical applications in AI datasets and models.Supports Academic Curriculum:
The structure of this book aligns with courses in BCA, BTech, MCA, MSc (Data Science/AI/CS), and even PhD-level research. It can be used as a textbook, reference book, or self-study guide.Empowers Professionals:
For data scientists, analysts, and industry professionals, this book provides statistical frameworks to validate AI-driven business decisions, ensuring that conclusions are based on evidence and not just algorithms.Encourages Research and Innovation:
Hypothesis testing and statistical inference are crucial for AI research, especially when publishing results or evaluating new algorithms. This book will help researchers design statistically robust experiments.
Who Will Benefit the Most from This Book?
This book is written with multiple audiences in mind:Students (BCA, BTech, MCA, MSc, MBA with AI/Analytics Specialization)Gain a clear and structured understanding of applied statistics.Learn how statistics integrates with AI, machine learning, and deep learning.Prepare for academic exams, competitive research, and industry-ready projects.Researchers (PhD Scholars, AI/ML Academics, Data Science Enthusiasts)Use statistical tools for designing robust experiments.Ensure reproducibility of results using proper hypothesis testing.Apply statistical inference to validate new AI models.Professionals (Data Scientists, AI Engineers, Industry Experts)Strengthen decision-making with statistically valid insights.Improve model evaluation techniques beyond accuracy and precision.Use statistical inference in A/B testing, customer behavior analysis, and risk modeling.
Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live
Links are Interchangeable - Single Extraction