New Book: Building Disruptive AI & LLM Technology from Scratch
This e guide choices new advances in game-changing AI and LLM utilized sciences constructed by GenAItechLab.com. Written in straightforward English, it is best suited to engineers, builders, data scientists, analysts, consultants and anyone with an analytic background concerned in starting a occupation in AI. The emphasis is on scalable enterprise choices, easy to implement, however outperforming distributors every in time interval of velocity and prime quality, by various orders of magnitude.
Each topic comes with GitHub hyperlinks, full Python code, datasets, illustrations, and real-life case analysis, along with from Fortune 100 agency. A variety of the supplies is obtainable as enterprise duties with decision, that may help you assemble sturdy capabilities and improve your occupation. You don’t need pricey GPU and cloud bandwidth to implement them: an abnormal laptop computer laptop works.
Half I: Hallucination-Free LLM with Precise-Time Super-Tuning
Focuses on extreme effectivity in-memory agentic multi-LLMs for expert prospects and enterprise, with real-time fine-tuning, self-tuning, no weight, no teaching, no latency, no hallucinations, no GPU. Constructed from scratch, leading to replicable outcomes, leveraging explainable AI, adopted by Fortune 100. With a consider delivering concise, exhaustive, associated, and in-depth search outcomes, references, and hyperlinks. See moreover the half on 31 choices to significantly improve RAG/LLM effectivity.
Half II: Outperforming Neural Nets and Primary AI
Discusses related large-scale methods moreover benefiting from a lightweight nonetheless additional surroundings pleasant construction. It choices LLMs for clustering, classification, and taxonomy creation, leveraging the data graphs embedded in and retrieved from the enter corpus when crawling. Then, in chapters 7 and eight, I consider tabular data synthetization, presenting methods akin to NoGAN, that significantly outperform neural networks, along with the simplest evaluation metric. The methodology in chapter 9 applies to most AI points. It offers a generic instrument to reinforce any current construction relying on gradient descent, akin to deep neural networks.
Half III: Enhancements in Statistical AI
Comprises a assortment of methods you’ll be able to mix in any AI system to boost effectivity. Primarily based totally on a up to date technique to statistical AI, they cowl probabilistic vector search, sampling outdoor the comment differ, sturdy random amount generators, math-free gradient descent, beating the gradual statistical convergence of parameter estimates dictated by the Central Prohibit Theorem, exact geospatial interpolation for non-smooth methods, and additional. Surroundings pleasant chunking and indexing for LLMs is the topic of chapter 10. Lastly, chapter 15 reveals the fitting approach to optimize shopping for and promoting strategies to continually outperform the stock market.
See contents and get your copy
Revealed in October 2024 by GenAItechLab.com, 193 pages. Comprises glossary, index, bibliography, dozens of illustrations and tables, and assorted clickable references every internal and exterior. Easy to browse in Chrome, Edge or any PDF viewer. Get your copy, proper right here. See desk of contents, proper right here.
Author
Vincent Granville is a pioneering GenAI scientist and machine finding out skilled, co-founder of Information Science Central (acquired by a publicly traded agency in 2020), Chief AI Scientist at MLTechniques.com and GenAItechLab.comformer VC-funded authorities, author (Elsevier) and patent proprietor — one related to LLM. Vincent’s earlier firm experience consists of Visa, Wells Fargo, eBay, NBC, Microsoft, and CNET. Observe Vincent on LinkedIn.