CLCVDCLGMar 20, 2025

Distributed LLMs and Multimodal Large Language Models: A Survey on Advances, Challenges, and Future Directions

arXiv:2503.16585v113 citationsh-index: 17Has Code
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners working on scalable and privacy-preserving AI systems, though it is incremental as a survey rather than presenting new methods.

This survey paper examines distributed computing strategies to address scalability and privacy challenges in training and deploying large language models (LLMs) and multimodal LLMs (MLLMs), reviewing advancements in distributed training, inference, fine-tuning, and deployment while identifying gaps and future research directions.

Language models (LMs) are machine learning models designed to predict linguistic patterns by estimating the probability of word sequences based on large-scale datasets, such as text. LMs have a wide range of applications in natural language processing (NLP) tasks, including autocomplete and machine translation. Although larger datasets typically enhance LM performance, scalability remains a challenge due to constraints in computational power and resources. Distributed computing strategies offer essential solutions for improving scalability and managing the growing computational demand. Further, the use of sensitive datasets in training and deployment raises significant privacy concerns. Recent research has focused on developing decentralized techniques to enable distributed training and inference while utilizing diverse computational resources and enabling edge AI. This paper presents a survey on distributed solutions for various LMs, including large language models (LLMs), vision language models (VLMs), multimodal LLMs (MLLMs), and small language models (SLMs). While LLMs focus on processing and generating text, MLLMs are designed to handle multiple modalities of data (e.g., text, images, and audio) and to integrate them for broader applications. To this end, this paper reviews key advancements across the MLLM pipeline, including distributed training, inference, fine-tuning, and deployment, while also identifying the contributions, limitations, and future areas of improvement. Further, it categorizes the literature based on six primary focus areas of decentralization. Our analysis describes gaps in current methodologies for enabling distributed solutions for LMs and outline future research directions, emphasizing the need for novel solutions to enhance the robustness and applicability of distributed LMs.

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