| Management number | 231974898 | Release Date | 2026/06/18 | List Price | US$8.62 | Model Number | 231974898 | ||
|---|---|---|---|---|---|---|---|---|---|
| Category | |||||||||
Unlock the power of Generative AI on the Edge. Master the art of deploying Small Language Models (SLMs) on smartphones, IoT devices, and embedded systems.Book Description: The era of relying solely on massive cloud-based data centers is ending. A quiet revolution is taking place in the world of Artificial Intelligence: the rise of the Small Language Model (SLM). Tiny Transformers is the definitive guide for engineers ready to break the "Memory Wall" and bring server-grade intelligence to the palm of a user's hand.Written by Akash Kumar Nayak, a software developer and technical writer committed to democratization of AI, this book bridges the gap between high-level deep learning theory and bare-metal execution. Whether you are building a privacy-first medical chatbot, a latency-critical voice assistant, or an offline coding companion, this guide provides the mathematical foundations and production-ready code you need to succeed.What You Will Learn: This practical, hands-on companion takes you through the entire pipeline of On-Device AI, from architecture selection to final deployment.The SLM Revolution: Understand why the industry is pivoting from trillion-parameter giants to efficient 3B-7B parameter models like Phi-3, Gemma, Llama 3, and Mistral.Architectural Efficiency: Master modern techniques like Grouped-Query Attention (GQA), Sliding Window Attention, and Mixture of Experts (MoE) to fit long contexts into limited RAM.Advanced Quantization: Go beyond basic INT8. Dive deep into 4-bit quantization (GPTQ, AWQ), K-Quants, and the GGUF format ecosystem to run models on consumer hardware without losing accuracy.Pruning & Sparsity: Learn to implement 2:4 Structured Sparsity (Wanda) to leverage the hardware acceleration of modern mobile NPUs like Qualcomm Snapdragon and MediaTek.Efficient Fine-Tuning: Personalize models directly on the edge using LoRA, QLoRA, and DoRA, minimizing memory usage while maximizing task-specific performance.Hardware Acceleration: Unlock the full potential of Neural Processing Units (NPUs), DSPs, and the Apple Neural Engine using heterogeneous computing strategies.Production Deployment: Profiling with Perfetto, managing thermal throttling, and securing your IP with encryption.Who This Book Is For:Machine Learning Engineers seeking to optimize Transformers for inference speed and memory efficiency.Mobile Developers (iOS/Android) wanting to integrate Generative AI directly into apps using CoreML, TFLite, or ExecuTorch.Embedded Systems Architects designing for the constraints of battery life, thermal limits, and memory bandwidth.Technical Stack Covered:Frameworks: PyTorch, TensorFlow, ONNX Runtime, llama.cpp.Algorithms: LoRA, QLoRA, Speculative Decoding, PagedAttention.Hardware Focus: Apple Silicon (M-Series/A-Series), NVIDIA Jetson, Qualcomm Hexagon, Google Edge TPU.Why Buy This Book? "Compression" is not synonymous with "compromise". Tiny Transformers proves that with the right optimization strategies, you can deploy models that are small enough to run offline but smart enough to reason, code, and chat. Join the decentralized AI future today.Scroll up and grab your copy to start mastering On-Device AI! Read more
| ASIN | B0GFFNGRGM |
|---|---|
| ISBN13 | 979-8242978607 |
| Language | English |
| Publisher | Independently published |
| Dimensions | 7 x 0.55 x 10 inches |
| Item Weight | 1.2 pounds |
| Print length | 243 pages |
| Publication date | January 7, 2026 |
If you notice any omissions or errors in the product information on this page, please use the correction request form below.
Correction Request Form