Unleashing LLM Training Efficiency: Multi-Token Prediction's Near-Zero Overhead

Written by cosmological | Published 2025/07/22
Tech Story Tags: multi-token-prediction | llm-training | training-efficiency | computational-overhead | next-token-prediction | model-scalability | fsdp | deep-learning-optimization

TLDRExplore Table S5 revealing multi-token prediction's remarkable training efficiency across LLM sizes (0.3B-13B), showing minimal overhead relative to next-token prediction—a solvable issue for even faster future training.via the TL;DR App

Table of Links

Abstract and 1. Introduction

2. Method

3. Experiments on real data

4. Ablations on synthetic data

5. Why does it work? Some speculation

6. Related work

7. Conclusion, Impact statement, Environmental impact, Acknowledgements and References

A. Additional results on self-speculative decoding

B. Alternative architectures

C. Training speeds

D. Finetuning

E. Additional results on model scaling behavior

F. Details on CodeContests finetuning

G. Additional results on natural language benchmarks

H. Additional results on abstractive text summarization

I. Additional results on mathematical reasoning in natural language

J. Additional results on induction learning

K. Additional results on algorithmic reasoning

L. Additional intuitions on multi-token prediction

M. Training hyperparameters

C. Training speeds

Authors:

(1) Fabian Gloeckle, FAIR at Meta, CERMICS Ecole des Ponts ParisTech and Equal contribution;

(2) Badr Youbi Idrissi, FAIR at Meta, LISN Université Paris-Saclayand and Equal contribution;

(3) Baptiste Rozière, FAIR at Meta;

(4) David Lopez-Paz, FAIR at Meta and a last author;

(5) Gabriel Synnaeve, FAIR at Meta and a last author.


This paper is available on arxiv under CC BY 4.0 DEED license.


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Published by HackerNoon on 2025/07/22