Skip to main content

Article Archive

Browse all published articles in Core Collection. Search by topic, author, or browse by volume and issue.

Latest Articles

Sort by:
Physics & AstronomyREVIEW ARTICLE

Advances in Quantum Computing Error Correction: A Systematic Review

Dr. Sarah Chen, Prof. James Wilson

Quantum error correction (QEC) is essential for achieving fault-tolerant quantum computation. This systematic review examines recent developments in QEC techniques, analysing their effectiveness across different qubit architectures including superconducting qubits, trapped ions, and topological qubits. We analyse over 150 papers published between 2021 and 2025, categorising approaches into surface codes, color codes, and concatenated codes. Our findings indicate that surface codes remain the most promising approach for near-term devices, while topological approaches show potential for longer-term scalability. Key findings include: (1) threshold error rates have improved by 40% over the past three years, (2) resource overhead for logical qubits has decreased significantly, and (3) hybrid classical-quantum approaches offer practical advantages for current NISQ devices.

quantum computingerror correctionsurface codesfault tolerance
April 30, 2026Vol. 1, Issue 1
00
Computer ScienceRESEARCH ARTICLE

Machine Learning Approaches in Drug Discovery: Current Trends and Future Perspectives

Dr. Maria Rodriguez, Dr. Ahmed Hassan

The integration of machine learning (ML) algorithms in pharmaceutical research has revolutionised the drug-discovery process. This paper presents a comprehensive analysis of current ML methodologies employed at various stages of drug development, from target identification to clinical-trial optimisation. We review deep-learning architectures for molecular property prediction, reinforcement learning for molecular generation, and graph neural networks for protein-ligand interaction modelling. Our analysis covers successful case studies including the discovery of novel antibiotics and antiviral therapeutics. The paper concludes with a discussion of remaining challenges, including data-quality issues, interpretability concerns, and regulatory considerations for AI-discovered drugs.

machine learningdrug discoverydeep learningpharmaceutical
April 30, 2026Vol. 1, Issue 1
00
Environmental ScienceRESEARCH ARTICLE

Quantifying Climate Change Impacts on Global Biodiversity: A Meta-Analysis

Prof. Emma Thompson, Dr. Li Wei

This meta-analysis synthesises data from 523 studies published between 2010 and 2025 to quantify the relationship between climate variables and biodiversity metrics across different ecosystems and taxonomic groups. Our analysis reveals that temperature increases of 1.5°C are associated with a 12% decline in species richness globally, with polar and tropical ecosystems showing the highest sensitivity. Marine ecosystems demonstrate faster response times compared to terrestrial systems. We identify critical thresholds beyond which ecosystem recovery becomes increasingly unlikely and propose a framework for prioritising conservation efforts under different climate scenarios.

climate changebiodiversitymeta-analysisconservation
April 30, 2026Vol. 1, Issue 1
00

Want to Contribute?

Core Collection welcomes high-quality research from all scientific disciplines. Submit your manuscript and join our growing community of researchers.

Author Guidelines