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Large Numerical Models from a Business Perspective : LNM, a Parallel Universe to LLM / by Srinivas Kilambi, Mahesh Banavar.

Springer Nature - Synthesis Collection of Technology (R0) eBook Collection 2026 Available online

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Format:
Book
Author/Creator:
Kilambi, Srinivas.
Series:
Synthesis Lectures on Technology Management & Entrepreneurship, 1933-9798
Language:
English
Subjects (All):
Mathematical models.
Social sciences--Mathematics.
Social sciences.
Business--Data processing.
Business.
Business information services.
Information technology--Management.
Information technology.
Mathematical Modeling and Industrial Mathematics.
Mathematics in Business, Economics and Finance.
Business Analytics.
Business Information Systems.
Business Process Management.
Local Subjects:
Mathematical Modeling and Industrial Mathematics.
Mathematics in Business, Economics and Finance.
Business Analytics.
Business Information Systems.
Business Process Management.
Physical Description:
1 online resource (155 pages)
Edition:
1st ed. 2026.
Place of Publication:
Cham : Springer Nature Switzerland : Imprint: Springer, 2026.
Summary:
Large Language Models (LLMs) have disruptively changed the world of AI for good and their adoption is near universal. However, how many know that they have a big limitation while processing large numerical quantitative business datasets usually found in ERPs as 1000s of tables. LLMs cannot process 100s of spreadsheets or tables at one time and when they try, they either fail to run or generate inaccurate predictions at best. The authors of this book propose LNMs or Large Numerical Models as a parallel universe to LLMs. LNMs are designed and built for numerical datasets and they offer some significant advantages over LLMs such as very accurate predictions, no hallucinations, improvement in business outcomes and ability to deliver in a "cold start" environment. LNMs are vertically curated and can run on a CPU as opposed to energy guzzling GPUs or water consuming cooling systems that LLMs need. This book introduces LNMs, it's underlying structure and SXI. SXI is to LNM as GPT is to LLMs, the underlying core science and technology. The authors also present specific applications of LNMs in healthcare, fintech, wireless, supplychain, marketing campaigns. Finally, the authors introduce their current research area of LLNMs. LLNM combines both LLM and LNM and has significant potential advantages over either LLM or LNMs. In addition, this book: Describes methods to design ML/AI algorithms based on Large Numerical Models (LNMs) Provides solutions to analyze large datasets with respect to a target variable Includes various case studies to demonstrate the use of the algorithms in different fields as financial and supply chain.
Contents:
Introduction
Motivation
LNM and LLNMs: Theory and Practice
SXI: Score-Correlate-Improve
Case studies
Conclusions.
Notes:
Description based on publisher supplied metadata and other sources.
ISBN:
3-032-14869-3
9783032148698
OCLC:
1569124381

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