Publisher's Synopsis
Build Reliable, Scalable, and Ethical AI Systems-From the Ground Up
Are you ready to move beyond AI theory and start building practical, production-ready solutions?
Whether you're a beginner looking for a roadmap or a developer stepping into the world of AI engineering, this guide provides everything you need to succeed in real-world AI projects.
This isn't just another book about machine learning models. It's a step-by-step blueprint for designing, deploying, monitoring, and maintaining AI systems that solve real problems and continue performing in dynamic environments.
What You'll Learn:
- Design AI systems with real-world impact
- Define clear goals, evaluate trade-offs, and select the right architectures based on your needs.
- Build clean, well-managed data pipelines
- Learn how to gather, prepare, and version your datasets for reproducibility and scale.
- Master model versioning, retraining, and automationKeep your models fresh and your pipelines efficient using tools like MLflow, DVC, and Airflow.
- Monitor drift and track performance with confidenceSet up metrics, alerts, and dashboards to detect issues before they impact users.
- Secure your AI workflows and ensure complianceProtect sensitive data, understand regulations like GDPR and HIPAA, and build with trust and transparency.
- Integrate human feedback and build ethical AIDesign feedback loops and human-in-the-loop systems that improve outcomes and reduce bias.
- Real-world case studies and applied best practices
- Tools and libraries cheat sheet (PyTorch, TensorFlow, FastAPI, etc.)
- Glossary of key AI engineering terms
- Model evaluation matrix and deployment checklists
- A complete appendix packed with resources, templates, and guides
- Aspiring AI and ML engineers
- Software developers transitioning into AI roles
- Technical team leads and project managers overseeing AI initiatives
- Anyone who wants to understand how to responsibly build and operate modern AI systems