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The complete information about the journal
✓ Established JournalApplied AI and Machine Learning Journal (AIML) is a peer-reviewed, open-access scholarly journal dedicated to publishing high-quality original research papers, review articles, and case studies in the fields of artificial intelligence (AI) and machine learning (ML). The journal aims to advance theoretical foundations, innovative methodologies, and real-world applications of intelligent systems that contribute to technological and scientific progress.
AIML serves as an interdisciplinary academic platform for academics, researchers, and practitioners to exchange ideas, foster collaboration, and disseminate cutting-edge research findings. The journal covers a broad range of topics, including deep learning, natural language processing, computer vision, robotics, data analytics, and intelligent decision support systems, reflecting the rapidly evolving landscape of AI and ML research.
By encouraging global scholarly contributions, Applied AI and Machine Learning Journal (AIML) seeks to promote the ethical, responsible, and sustainable development of artificial intelligence and machine learning technologies. The journal aims to bridge theory and practice by supporting research that delivers meaningful technological innovation and positive societal impact at local, national, and global levels.
3124-9167
Biannual (2 issues per year)
December and June
Online
English
admin@goodwoodpub.com
AIML is published biannual (2 issues per year), with regular issues released in December and June.
AIML requires that all manuscripts be written in English. Authors are encouraged to use clear, concise, and academically appropriate language, with proper grammar and spelling to ensure clarity and international readability.
AIML publishes peer-reviewed scholarly manuscripts that make significant contributions to both academic literature and professional practice. The journal accepts the following types of submissions:
Research articles present original theoretical or empirical studies demonstrating methodological rigor, analytical depth, and clear contributions to academic literature and/or professional practice. Submissions employing quantitative, qualitative, mixed-methods, or replication approaches are welcomed.
Review articles provide a systematic and critical synthesis of existing literature on topics relevant to the journal's scope. These articles should identify conceptual, methodological, or empirical gaps and offer clear directions for future research.
All published articles must comply with ethical research and publication standards and are subject to a double-blind peer-review process.
Applied AI and Machine Learning Journal is published by Goodwood Publishing, an Indonesian academic publisher committed to disseminating high-quality and impactful scholarly research to the global academic community.
All submitted manuscripts are screened for plagiarism using professional plagiarism detection software to ensure originality and compliance with academic integrity standards. The software commonly used for screening plagiarism is Turnitin to maintain the highest publication ethics.
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Journal history information is currently not available for this publication.