18 124 680 książek w 176 językach
Jednak się nie przyda? Nic nie szkodzi! Możesz zwrócić produkty nawet do 30 dni
Bon prezentowy to zawsze dobry pomysł. Obdarowany może za bon prezentowy wybrać cokolwiek z naszej oferty.
Nawet do 30 dni na zwrot
What if you could build your own language model completely from scratch?
No APIs.
No prebuilt architectures.
No black boxes.
Just code, mathematics, and a system that learns because you designed it to.
The Practical Guide to Small Language Models is not another book about using AI tools it is a deep, hands-on journey into how modern transformers actually work. Every layer, every equation, and every design decision is exposed, implemented, and understood.
Starting from first principles, this book takes you from raw numerical computation to a fully functioning language model capable of generating coherent text. Along the way, you will build the core systems behind today's most powerful AI attention mechanisms, positional encodings, normalization layers, and complete transformer architectures without hiding behind abstraction.
This is where theory meets real engineering.
Instead of focusing on billion-parameter models that require massive infrastructure, this book is centered on what truly matters for modern builders: small, efficient language models. Systems you can train yourself. Systems you can experiment with. Systems you can fully understand and control.
By the end, you won't just know how transformers work you will have built and trained your own.
More importantly, you will gain the ability to break down complex architectures, rebuild transformer systems from the ground up, train models on real-world datasets, optimize for performance and efficiency, and extend your models beyond their original design.
This book is for those who refuse to treat AI as a black box.
For developers who want depth.
For engineers who want control.
For builders who want to create not just consume.
If you're ready to move beyond using AI and start engineering it, this is where you begin.
About the Author
Noble Brick is a technology-focused author and AI systems practitioner with a strong emphasis on deep learning, transformer architectures, and practical machine learning engineering. With extensive experience working across neural network design, model optimization, and Python-based AI systems, his work centers on breaking down complex concepts into clear, implementation-driven frameworks.
His approach combines theoretical rigor with real-world engineering, helping developers move beyond surface-level understanding and build AI systems from first principles. This book reflects a commitment to clarity, precision, and practical mastery in modern artificial intelligence
Cześć! Jestem Libroamiko, Twój doradca książkowy.
Jak mogę Ci pomóc?