About the Journal
International Journal of Machine Learning and Artificial Intelligence (IJMLAI)
The International Journal of Machine Learning and Artificial Intelligence (IJMLAI) stands as a premier scholarly publication at the forefront of research in the fields of machine learning (ML) and artificial intelligence (AI). IJMLAI serves as an influential platform for researchers, practitioners, and enthusiasts to explore the ever-evolving landscape of ML and AI, disseminate cutting-edge research, and advance the frontiers of intelligent computing.
Mission: IJMLAI's mission is to foster excellence in machine learning and artificial intelligence by providing a global platform for knowledge exchange, collaboration, and innovation. Our core objectives include:
-
Advancing AI and ML: Promoting groundbreaking research that pushes the boundaries of AI and ML, driving technological progress.
-
Knowledge Dissemination: Facilitating the sharing of knowledge, best practices, and emerging trends in the field.
-
Interdisciplinary Collaboration: Encouraging cross-disciplinary synergy, recognizing the integral role of AI and ML in diverse domains.
-
Ethical and Responsible AI: Emphasizing research integrity and the ethical use of AI technologies for the betterment of society.
Key Focus Areas: IJMLAI welcomes contributions from a broad spectrum of topics within the domains of machine learning and artificial intelligence. Our primary focus areas encompass, but are not limited to:
-
Machine Learning Algorithms:
- Development of novel ML algorithms and techniques
- Supervised, unsupervised, and reinforcement learning
- Deep learning and neural networks
-
Artificial Intelligence Applications:
- Natural language processing and understanding
- Computer vision and image recognition
- Robotics and autonomous systems
-
Data Science and Big Data:
- Data mining and knowledge discovery
- Big data analytics and visualization
- Data-driven decision-making
-
Ethical AI and Responsible Machine Learning:
- AI bias and fairness
- Transparency and interpretability in AI
- AI for societal good and ethical AI practices
Publication Format: IJMLAI offers a versatile platform for scholarly contributions, including:
- Research Papers: Original research articles presenting innovative findings, methodologies, and insights.
- Review Articles: Comprehensive surveys of current research trends and developments in AI and ML.
- Technical Notes: Concise reports on novel techniques, tools, or experimental results.
- Case Studies: In-depth examinations of real-world applications and their impact on society.
- Editorials: Thoughtful reflections on emerging issues, trends, and challenges in the fields of AI and ML.
Audience: The International Journal of Machine Learning and Artificial Intelligence (IJMLAI) is designed to cater to a diverse and global audience, including:
- Researchers and Practitioners: Eager to share their research, collaborate, and stay updated on the latest advancements in AI and ML.
- Academics and Educators: Seeking authoritative resources to support teaching and learning in these domains.
- Industry Professionals: Leveraging AI and ML to drive innovation, efficiency, and competitiveness.
- Policymakers and Ethicists: Engaging with ethical considerations and implications of AI and ML technologies.
IJMLAI is a dynamic and inclusive forum for researchers, practitioners, and stakeholders who are passionate about advancing knowledge, innovation, and ethical practices in the fields of machine learning and artificial intelligence. Join us on this exciting journey of exploration, collaboration, and discovery as we shape the future of intelligent computing and its profound impact on society.
Abstracting and Indexing
- Emerging Sources Citation Index (in the process)
- Scopus
- Indian Citation Index
- ROAD: the Directory of Open Access scholarly Resources
- Research Gate
- Google Scholar
- Academia Database
- DPI Digital Library
Note: If your article is selected, there is an open access fee of $1500 USD, which may be waived based on the paper's quality.