Augmenting Data Quality and Model Reliability in Large-Scale Language and Code Models: A Hybrid Framework for Evaluation, Pretraining, and Retrieval-Augmented Techniques
Abstract
Background: The rapid expansion of large language models (LLMs) and code-generative models has transformed
research and industry practices across natural language processing, software engineering, and data-driven decision-making. Yet, the increasing scale of datasets and repeat data exposure introduces complex challenges in data quality, training set augmentation, model reliability, and downstream evaluation (Ding, 2019; Hernandez et al., 2022). Prior work has examined whether large-scale datasets are necessary for self-supervised pretraining (El-Nouby et al., 2021), explored the landscape of open-source engineering efforts (Han et al., 2021), and surveyed retrieval-augmented language models (Hu & Lu, 2024). However, integrated frameworks that connect data augmentation, rigorous quality validation, and evaluation tailored to LLMs remain underdeveloped.
Objective: This article proposes and thoroughly elaborates a hybrid, academically rigorous framework that synthesizes data augmentation best practices, AI-augmented data quality validation, retrieval-augmented model design, and robust evaluation metrics for LLMs and code models. It aims to bridge theoretical foundations with practical design choices and provide an interpretive, evidence-based roadmap for researchers and practitioners.
Methods: We synthesize perspectives from empirical case studies on training-data augmentation (Ding, 2019), scaling laws and interpretability of repeated data (Hernandez et al., 2022), debates on dataset scale for self-supervision (El-Nouby et al., 2021), and contemporary LLM evaluation challenges (Gao et al., 2024). From these sources we construct a layered methodology: (1) Source-level data curation and provenance tracing informed by record linkage principles (Herzog et al., 2007); (2) augmentation strategies balancing synthetic and human-authored instances (Ding, 2019); (3) hybrid validation combining rule-based checks and LLM-assisted anomaly detection (Malviya & Parate, 2025); (4) design patterns for retrieval-augmented pipelines (Hu & Lu, 2024); and (5) a multi-faceted evaluation protocol incorporating statistical, qualitative, and LLM-based evaluators (Gao et al., 2024; Wang et al., 2023).
Results: The resulting framework identifies trade-offs between dataset scale and diversity, quantifies danger zones where repeated data leads to overfitting or miscalibration (Hernandez et al., 2022), and recommends concrete validation procedures to detect provenance drift, duplication bias, and label noise. We also specify evaluation batteries for code synthesis models and medical-diagnostic LLM comparisons using ensemble judge designs (Fried et al., 2022; Caruccio et al., 2024).
Conclusions: By integrating augmentation, validation, retrieval, and evaluation, the framework supports more reliable, auditable, and interpretable LLM deployments. Theoretical implications include revised perspectives on necessary dataset scale, formalization of hybrid validation agents, and suggested directions for future empirical work. This synthesis provides a substantive foundation for reproducible research and practical deployment strategies for LLMs and code models.
Keywords
References
Similar Articles
- Dr. Leila Mansouri, Cloud Computing AsInfrastructural ESG Capital: Strategic Implications For Corporate Sustainability , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 11 (2025): Volume 02 Issue 11
- Dr. Andika Prasetyo, Siti Rahmawati, M.Sc., Rizky Maulana, Structured Teaching Framework Focused on Beginner-Level Software Development Skills , International Journal of Modern Computer Science and IT Innovations: Vol. 3 No. 04 (2026): Volume 03 Issue 04
- Mykola Nesvietaiev, Multisided Digital Platforms in the Sphere of Family Well-Being: Models for Balancing the Interests of Children, Parents, and Service Providers Under Regulatory Requirements for the Protection of Minors , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 03 (2025): Volume 02 Issue 03
- John A. Prescott, A Unified Framework for Time-Sensitive and Resilient In-Vehicle Communication: Integrating Automotive Ethernet, Wireless TSN, and IoTEnabled Vehicle Health Monitoring , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 08 (2025): Volume 02 Issue 08
- Dr. Nurul H. Zulkifli, Dr. Farah M. Rahimi, ACCOUNTABLE DATA AUTHORIZATION IN CLOUD ENVIRONMENTS: AN IDENTITY-BASED ENCRYPTION FRAMEWORK WITH EQUALITY TESTING , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 01 (2025): Volume 02 Issue 01
- Dr. Arjun S. Patel, Prof. Elena D. Petrovna, CONVERGENT DATABASE ARCHITECTURES: MULTI-MODEL DESIGN AND QUERY OPTIMIZATION IN NEWSQL SYSTEMS , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 02 (2025): Volume 02 Issue 02
- Ikenna Uzoma Ajere, Kennedy Oberhiri Obohwemu, Festus Ituah, Oluwafemi Emmanuel Ooju, Oladipo Vincent Akinmade, Solomon Atuman, Jennifer Adaeze Chukwu, Design, Simulation, and Performance Evaluation of a Hybrid Mobility Model for Search-and-Rescue Teams in Mobile Ad Hoc Networks , International Journal of Modern Computer Science and IT Innovations: Vol. 3 No. 03 (2026): Volume03 Issue03
- Dr. Sofia Duarte, Jiwon Park, SECURING LARGE-SCALE IOT NETWORKS: A FEDERATED TRANSFER LEARNING APPROACH FOR REAL-TIME INTRUSION DETECTION , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 06 (2025): Volume 02 Issue 06
- Dr. Mateo Alvarez, SaaS-Driven Digital Transformation and Customer Retention in Hospitality Ecosystems: A Multitheoretical and Socio-Technical Reinterpretation of Service Value Creation , International Journal of Modern Computer Science and IT Innovations: Vol. 2 No. 12 (2025): Volume 02 Issue 12
- Prof. Dr. Matthias Reinhardt, Cloud-Orchestrated Ensemble Deep Learning Architectures for Predictive Modeling of Cryptocurrency Market Dynamics: A Theoretical, Empirical, and Cyber-Physical Systems Perspective , International Journal of Modern Computer Science and IT Innovations: Vol. 3 No. 01 (2026): Volume 03 Issue 01
You may also start an advanced similarity search for this article.