Journal of Applied Generative Artificial Intelligence

JAGAI

About JAGAI

The Journal of Applied Generative Artificial Intelligence (JAGAI) publishes peer-reviewed applied research on generative AI, including model development, evaluation, deployment, and governance.

JAGAI prioritizes work with measurable outcomes, transparent evaluation, and ethical considerations.

Aims & Scope

JAGAI focuses on generative systems used in real workflows. Submissions should detail methodology, evaluation design, safety considerations, and practical deployment insights.

Topics of Interest

  • Generative models (text, image, audio, video, code) and applications
  • Retrieval-augmented generation, prompting methods, agentic workflows
  • Evaluation frameworks, benchmarks, and human-centered assessments
  • Model alignment, safety, robustness, and risk reduction
  • Bias analysis, fairness, and responsible generative AI practices
  • Copyright, provenance, watermarking, and content authenticity
  • Privacy-preserving generation and secure deployment architectures
  • Generative AI in education, healthcare, business, and public services
  • Human-AI collaboration and productivity in professional settings
  • Governance, policy, and organizational adoption strategies
  • Monitoring, incident response, and post-deployment auditing

Article Types

  • Applied research articles
  • Deployment and implementation studies
  • Evaluation and benchmarking papers
  • Responsible AI case studies and policy analyses
  • Surveys and tutorials (peer-reviewed)

Recent Articles

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