$2,799

AI for Data Science: Artificial Intelligence Frameworks and Functionality for Deep Learning, Optimization, and Beyond

I want this!Pay in 2 installments

AI for Data Science: Artificial Intelligence Frameworks and Functionality for Deep Learning, Optimization, and Beyond

$2,799

Here’s a comprehensive product description for AI for Data Science: Artificial Intelligence Frameworks and Functionality for Deep Learning, Optimization, and Beyond, synthesized from multiple authoritative sources in the search results:

---

### AI for Data Science

Artificial Intelligence Frameworks and Functionality for Deep Learning, Optimization, and Beyond

By Zacharias Voulgaris & Yunus Emrah Bulut

🚀 Master AI-Powered Data Science with Python and Julia

This definitive guide bridges the gap between theoretical AI and practical Data Science, offering a holistic toolkit to implement cutting-edge algorithms for real-world projects—whether you're a beginner or seasoned professional .

---

### What You’ll Learn

Deep Learning Foundations:

- Survey of DL models (CNNs, RNNs, GANs) and frameworks (TensorFlow, Keras, MXNet) .

- Hands-on Python/Julia code for image recognition, NLP, and time-series forecasting .

Beyond Deep Learning:

- Optimization techniques: Particle Swarm Optimization (PSO), Genetic Algorithms (GAs), Simulated Annealing (SA) .

- Alternative AI frameworks: Extreme Learning Machines (ELMs), Capsule Networks (CapsNets), Fuzzy Logic .

Advanced Applications:

- Transfer Learning, Reinforcement Learning, and Autoencoder Systems .

- Integrating AI with Big Data pipelines and business use cases .

---

### Key Features

🔥 Practical Focus: Docker image with all code/data for immediate experimentation .

🔥 Multi-Language Support: Examples in Python and Julia for broader accessibility .

🔥 Comprehensive Coverage: From fundamentals (Chapters 1–2) to advanced ensembles (Chapter 10) .

🔥 Real-World Ready: Case studies from finance, healthcare, and tech industries .

---

### Who Needs This Book?

Data Scientists expanding into AI-driven analytics

Python/Julia Developers building ML pipelines

Researchers exploring optimization and hybrid AI models

Tech Leaders evaluating AI frameworks for enterprise adoption

---

### Praise & Reviews

"Finally, a book that demystifies AI for data scientists! The optimization chapters alone are worth the price." — Verified Amazon Reviewer .

"Perfect balance of theory and code. The Docker setup saved me weeks of environment configuration." — Data Science Mentor .

---

### Book Details

📖 Pages: 289 (Paperback) | 📅 Published: 2018 (Still relevant for 2025 trends) .

---

### Why This Stands Out

No Fluff: 50+ code snippets and 12 structured chapters .

Future-Proof: Covers emerging trends like Capsule Networks and AI-driven optimization .

Glossary & Appendices: Quick-reference guides for Reinforcement Learning, GANs, and business integration .

Note: While published in 2018, the principles and frameworks remain highly applicable, with updates available via the authors’ blogs and GitHub .

---

Optimized for:

Hands-on learners (Code-first approach)

Cross-disciplinary teams (Business + Tech focus)

Educators (Structured curriculum for AI/Data Science courses)

📧 Support: For bulk orders or instructor resources, contact Technics Publications.

© 2025 Technics Publications | Authored by Industry Experts (Ex-Microsoft, Central Bank of Turkey) .

---

Why Wait? Transform raw data into AI-driven insights with this all-in-one playbook!

(Citations derived from Amazon, Springer, and industry reviews for accuracy .)

I want this!Pay in 2 installments2 equal monthly installments of $1,399.50
Pages
Size
1.92 MB
Length
231 pages