Description
Price: EUR0.00
(as of Jun 28, 2026 05:14:30 UTC – Details)
Unlock the potential of Generative AI with this Large Language Model production-ready playbook for seamless deployment, optimization, and scaling. This hands-on guide takes you beyond theory, offering expert strategies for integrating LLMs into real-world applications using retrieval-augmented generation (RAG), vector databases, PEFT, LoRA, and scalable inference architectures. Whether you’re an ML engineer, data scientist, or MLOps practitioner, you’ll gain the technical know-how to operationalize LLMs efficiently, reduce compute costs, and ensure rock-solid reliability in production.
What You’ll Learn:
Master LLM Fundamentals – Understand tokenization, transformer architectures, and the evolution linguistics to the creation of foundation models.RAG & Vector Databases – Augment model capabilities with real-time retrieval and memory-optimized embeddings.Training vs Fine-tuning – Learn how to train your own model as well as cutting edge techniques like Distillation, RLHF, PEFT, LoRA, and QLoRA for cost-effective adaptation.Prompt Engineering – Discover the quickly evolving world of prompt engineering and go beyond simple prompt and pray methods and learn how to implement structured outputs, complex workflows, and LLM agents.Scaling & Cost Optimization – Deploy LLMs into your favorite cloud of choice, on commodity hardware, Kubernetes clusters, and edge devices.Securing AI Workflows – Implement guardrails for hallucination mitigation, adversarial testing, and compliance monitoring.MLOps for LLMs – Learn all about LLMOps, automate model lifecycle management, retraining pipelines, and continuous evaluation.
Hands-on Projects Include:
Training a custom LLM from scratch – Build and optimize an industry-specific model.
AI-Powered VSCode Extension – Use LLMs to enhance developer productivity with intelligent code completion.
Deploying on Edge Devices – Run a lightweight LLM on a Raspberry Pi or Jetson Nano for real-world AI applications.
PLEASE NOTE: When you purchase this title, the accompanying PDF will be available in your Audible Library along with the audio.




Reviews
There are no reviews yet.