Challenge: achieving data-efficient post-training of Large Language Models is a key research question.
Approach: They propose a taxonomy of data-efficient LLM post-training methods from a data-centric perspective.
Outcome: The proposed methods cover data selection, data quality enhancement, synthetic data generation, data distillation and compression, and self-evolving data ecosystems.

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A Survey of Post-Training Scaling in Large Language Models (2025.acl-long)

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Challenge: Large language models (LLMs) have demonstrated proficiency in understanding and generating human natural languages.
Approach: They propose a framework for scaling large language models using supervised fine-tuning, RLxF and test-time compute methodologies.
Outcome: The proposed model can be used to understand and generate human natural languages.
On LLMs-Driven Synthetic Data Generation, Curation, and Evaluation: A Survey (2024.findings-acl)

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Challenge: Large Language Models (LLMs) provide a data-centric solution to alleviate limitations of real-world data with synthetic data generation.
Approach: They propose a generic workflow for LLM-driven synthetic data generation.
Outcome: The proposed workflows highlight gaps in existing research and outline avenues for future studies.
The Data Frontier for Large Language Models: Selection, Synthesis, and Tools (2026.acl-tutorials)

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Challenge: acquiring and curating high-quality training data remains a significant bottleneck . acquiring such high-quality data is a key challenge for researchers and practitioners .
Approach: This tutorial provides a comprehensive and practical guide to the state-of-the-art in data research directions for LLMs.
Outcome: The tutorial covers methods for curating the most valuable information from vast, noisy datasets and the synthetic data revolution.
Data and Model Centric Approaches for Expansion of Large Language Models to New languages (2025.emnlp-tutorials)

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Challenge: Existing LLMs mainly support English alongside a handful of high resource languages . this leaves a major gap for most low-resource languages despite increasing pace of research .
Approach: This tutorial examines approaches to expand the language coverage of LLMs . they look at tokenizer training, pre-training, instruction tuning, alignment, evaluation, etc.
Outcome: This tutorial examines approaches to expand the language coverage of LLMs . it provides an efficient and viable path to bring LLM technologies to low-resource languages .
Large Language Models for Data Annotation and Synthesis: A Survey (2024.emnlp-main)

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Challenge: Existing surveys focus on LLMs' specific utility for data annotation and synthesis.
Approach: They propose to use large language models to generate annotations from raw data . they also propose to review learning strategies for models utilizing LLM-generated annotations .
Outcome: The proposed models can be used to improve the efficacy of machine learning models by generating and labeling raw data with relevant information.
From Selection to Generation: A Survey of LLM-based Active Learning (2025.acl-long)

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Challenge: Large Language Models (LLMs) have been used for selection and training of data for active learning.
Approach: They propose an intuitive taxonomy that categorizes LLM-based active learning techniques and discuss the transformative roles they can play in the active learning loop.
Outcome: The proposed model can generate entirely new data instances and provide more cost-effective annotations with fewer labeled data instances.
A Survey of Reinforcement Learning for Large Language Models under Data Scarcity: Challenges and Solutions (2026.acl-long)

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Challenge: Existing research on reinforcement learning for LLMs under data scarcity has not been unified.
Approach: They propose a top-up hierarchical framework built around three complementary perspectives: data-centric, training-centric and framework-centric.
Outcome: The proposed framework provides a clear conceptual foundation for understanding the design space of data-efficient RL for large language models and to guide researchers working in this emerging area.
Data Augmentation using LLMs: Data Perspectives, Learning Paradigms and Challenges (2024.findings-acl)

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Challenge: Data augmentation (DA) is a key technique for enhancing model performance by diversifying training examples without the need for additional data collection.
Approach: They examine various strategies that utilize LLMs for data augmentation, including a novel exploration of learning paradigms where LLM-generated data is used for diverse forms of further training.
Outcome: The proposed approach addresses the primary open challenges faced by LLMs in the field of large language models and aims to serve as a comprehensive guide for researchers and practitioners.
Harnessing Large Language Models as Post-hoc Correctors (2024.findings-acl)

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Challenge: Recent advances in Large Language Models (LLMs) have demonstrated their effectiveness in a wide range of tasks, including machine translation and commonsense reasoning.
Approach: They propose a training-free framework that can work as a post-hoc corrector to propose corrections for ML models.
Outcome: The proposed framework improves the performance of a number of models by up to 39% on text analysis and the challenging molecular predictions.
Large Language Models for Generative Recommendation: A Survey and Visionary Discussions (2024.lrec-main)

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Challenge: Large language models (LLMs) have revolutionized the field of natural language processing but are not fully able to leverage the generative power of LLM.
Approach: They examine the progress, methods, and future directions of large language models . they examine what generative recommendation is, why RS should advance to generative recommendations .
Outcome: The proposed approach can be simplified to generate recommendations from the entire pool of items.

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