会议信息
Rev-AI 2026: International Conference on Revolutionary Artificial Intelligence and Future Applications
https://rev-ai.org/
截稿日期:
2026-02-15
通知日期:
2026-04-15
会议日期:
2026-06-03
会议地点:
Varna, Bulgaria
浏览: 73   关注: 0   参加: 0

征稿
The Rev-AI 2026 Conference is the premier global event convening pioneering researchers, industry leaders, and visionary innovators to explore the frontier of artificial intelligence. This three-day conference, set in the dynamic and innovative city of Varna, will showcase paradigm-shifting research, transformative applications, and collaborative dialogues on the technologies that are redefining the future of intelligence. Attendees will have the unparalleled opportunity to engage with the minds spearheading the AI revolution, and network with a global community of experts. From foundational models that rethink cognition to AI-driven solutions for humanity's greatest challenges, REV-AI 2026 promises a comprehensive expedition into the next era of artificial intelligence.

We are thrilled to invite the global community to the 2026 International Conference on Revolutionary Artificial Intelligence and Future Applications, the definitive event for shaping the future of intelligent systems.

Why Attend?
Discover the Next Frontier: Explore paradigm-shifting research and foundational breakthroughs that move beyond incremental progress. Engage with Pioneers: Join visionary keynotes and thought-provoking panels led by the architects of the AI revolution. Network Globally: Connect with an international network of leading academics, industry researchers, and startup founders.. Shape the Future: Participate in interactive workshops and sessions that delve into the ethical, societal, and technical foundations of tomorrow's AI.

Highlights
Unveiling next-generation AI architectures that surpass current limitations. Exploring Human-AI collaboration and cognitive augmentation. Tackling the grand challenges of AI safety, governance, and alignment. Showcasing revolutionary applications in medicine, climate science, and space exploration.

Don't miss this unparalleled opportunity to be at the epicenter of the next AI revolution. We invite submissions on all topics related to revolutionary AI, with a special interest in, but not limited to:

    Foundational & Revolutionary AI Models

    Next-Generation Architectures (e.g., beyond Transformers, State Space Models, Neuro-Symbolic AI)
    AI for Scientific Discovery (AI4Sci)
    Causal AI & Reasoning
    Embodied AI and Active Perception
    Foundation Models for Multimodal Understanding
    Theoretical Limits of AI
    Parameter-Efficient Fine-Tuning (PEFT): Advanced methods including LoRA (Low-Rank Adaptation), Adapters, and Prompt Tuning for rapidly adapting massive models to new tasks with minimal computational overhead.
    QLoRA and Quantized PEFT: Techniques for fine-tuning quantized models (e.g., 4-bit) without performance degradation, enabling the adaptation of billion-parameter models on a single GPU.
    Conditional Computation & Mixture-of-Experts (MoE): Advanced routing algorithms, training stability for sparse models, and dynamic activation of model parts for extreme efficiency at scale.
    Mathematical Reformulations for Efficiency: Replacing core operations (e.g., attention mechanisms) with more computationally efficient approximations without loss of performance.
    State Space Models (SSMs) for Efficiency: Leveraging SSMs like Mamba for sequential data handling that is fundamentally faster and more memory-efficient than traditional Transformers.

    Training & Learning Process Optimization

    Efficient Fine-Tuning Paradigms: Novel approaches to LoRA (e.g., DoRA, VeRA) and fusion with other methods for greater efficiency and effectiveness.
    Fast Convergence Techniques: Novel optimizers, learning rate schedules, and training curricula that reduce total training time and computational cost.
    Gradient-Free & Few-Step Optimization: Exploring methods like Evolutionary Strategies for training where backpropagation is impractical.
    Sparse Training: Techniques to train a model with a sparse architecture from the very beginning, avoiding the expensive "train-then-prune" cycle.

    Inference & Deployment Optimization

    Dynamic Neural Networks: Models that can adapt their inference path based on input complexity, slashing latency for "easier" tasks.
    Speculative Decoding & Lookahead Reasoning: Using smaller, faster models to "draft" responses verified by a larger model, dramatically accelerating LLM inference.
    Hardware-Aware Neural Compression: Co-designing compression techniques with specific hardware properties for maximal throughput.
    Merging and Consolidating LoRA Adapters: Methods for efficiently merging multiple fine-tuned LoRA adapters into a single, powerful model without catastrophic interference.

    Sustainable & Green AI

    Energy-Aware Model Design: Techniques to directly model, measure, and minimize the energy consumption of AI models.
    Carbon-Efficient Training: Scheduling and locating training jobs in data centers powered by renewable energy.
    The Green Impact of PEFT: Quantifying the massive reduction in computational resources and energy enabled by methods like LoRA and QLoRA.

    Unified Frameworks & Evaluation

    Multi-Objective Optimization Frameworks: New tools that simultaneously optimize for accuracy, latency, memory, energy, and robustness.
    Benchmarking Efficiency at Scale: Developing robust benchmarks for evaluating the optimization of massive models across diverse hardware.
    The Efficiency-Ability Trade-off: Theoretical and empirical studies on the relationship between a model's computational budget and its emergent capabilities.

    AI & Human Collaboration & Society

    Human-AI Teaming and Cognitive Augmentation
    AI for Creativity, Art, and Co-Creation
    AI-Driven Education and Personalized Learning
    The Future of Work and Economics in an AI-Dominant World
    AI for Governance and Public Policy
    Philosophical and Ethical Frameworks for AGI

    Conversational AI platforms such as:
    ChatGPT (OpenAI), Gemini (Google), Copilot (Microsoft), Claude (Anthropic), Meta AI (Meta), Grok (xAI) Leading Open-Weight Models: Llama (Meta), Mistral AI, Qwen (Alibaba)

    Major Chinese Platforms such as:
    DeepSeek, Ernie Bot (Baidu), Tongyi Qianwen (Alibaba), Zhipu AI

    Specialized Coding Assistants such as:
    GitHub Copilot, Replit CodeComplete, Amazon CodeWhisperer, Codium

    More related AI topics

    Next-Generation Model Architectures for Efficiency (e.g., Mixture-of-Experts, State Space Models)
    Low-Rank Adaptation (LoRA)
    Quantized Fine-Tuning and QLoRA
    Speculative Decoding and Advanced Inference Acceleration
    Conditional Computation and Dynamic Neural Networks
    Green AI: Energy-Aware Training and Sustainable Model Design
    Neural Architecture Search (NAS) and Automated Model Co-Design
    Hardware-Aware Compression and Ultra-Low-Bit Quantization
    Optimization for Edge-Cloud Hybrid Intelligence Systems
    Fast Convergence and Efficient Learning Algorithms
    Parameter-Efficient Fine-Tuning (PEFT)
    AI, Machine Learning, Deep Learning, Federated Learning and Creativity
    Innovations in AI Algorithm Development
    Natural Language Processing (LNP)
    Augmented Reality (AR), Virtual Reality (VR), and Extended reality (XR)
    Developing Trustworthy and Reliable AI Systems
    Intelligent Intrusion Detection Systems for Internet of Things (IoT) Applications
    Network Forensics Leveraging Intelligent Systems and Data Analytics
    Data Analytics Approaches for Privacy-by-Design in Smart Healthcare Systems
    Datasets, Benchmarks, and Open-Source Tools for Cybersecurity Applications
    Efficient Deep Learning Techniques for Resource-Constrained Environments
    Adversarial Machine Learning and Mitigation of Backdoor Attacks
    Blockchain Technologies for Strengthening Cybersecurity Frameworks
    Advanced Intelligent Solutions and Data Analytics for Enhancing Cloud and Edge Security
    Malware Detection and Vulnerability Assessment Using Intelligent Systems
    Intelligent Approaches for Detecting and Mitigating Misinformation
    Intelligent Systems for Detecting Cyber-Attacks Effectively
最后更新 Dou Sun 在 2026-02-01