10% OFF

ON THE TOTAL FEE

Input this Professional Credit at checkout for a max $30.00 offset.

FAST10

10% OFF

ON THE TOTAL FEE

Input this Professional Credit at checkout for a max $30.00 offset.

FAST10
** Fraud Prevention Notice      Be cautious of scams involving cloned emails and fake phone numbers requesting conference or journal fees. Only make payments via Science Net's official event platform and notify us immediately at [email protected] if you suspect fraud.

Hybrid Event

3rd - 4th July 2026 | Frankfurt, Germany

International Conference on Deep Reinforcement Learning and Data Science (ICDRLDS - 26)

4

Days

4

Hrs

07

Min

02

Sec

Conference Program

Session Tracks

SDG Wheel

Aligned with

UN Sustainable Development Goals

This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.

Why it matters

SDG 4 — Quality Education
SDG 8 — Decent Work and Economic Growth
SDG 9 — Industry, Innovation and Infrastructure
SDG 11 — Sustainable Cities and Communities
SDG 16 — Peace, Justice and Strong Institutions
Explore All Session Tracks
Track 01
Advancements in Deep Reinforcement Learning Algorithms

This track focuses on the latest developments in deep reinforcement learning algorithms, including policy gradients and actor-critic methods. Researchers are invited to present innovative approaches that enhance the efficiency and effectiveness of these algorithms.

Track 02
Deep Q-Networks and Their Applications

This session will explore the theoretical foundations and practical applications of deep Q-networks in various domains. Contributions that demonstrate novel implementations or improvements in DQN methodologies are highly encouraged.

Track 03
Robotics and Deep Reinforcement Learning

This track highlights the integration of deep reinforcement learning techniques in robotics, emphasizing real-world applications and challenges. Papers that showcase successful robotic implementations or novel algorithms tailored for robotic systems are welcome.

Track 04
Game Theory and Deep Reinforcement Learning

This session examines the intersection of game theory and deep reinforcement learning, focusing on strategic decision-making in multi-agent environments. Contributions that analyze competitive and cooperative scenarios using DRL frameworks are encouraged.

Track 05
Simulation Environments for Reinforcement Learning

This track addresses the design and utilization of simulation environments for training reinforcement learning agents. Papers that propose new environments or enhance existing ones to facilitate RL research are invited.

Track 06
Reward Optimization Techniques in Reinforcement Learning

This session focuses on innovative strategies for reward optimization in reinforcement learning frameworks. Researchers are encouraged to present methods that improve reward shaping and enhance agent performance.

Track 07
Exploration Strategies in Deep Reinforcement Learning

This track delves into exploration strategies that enhance the learning capabilities of deep reinforcement learning agents. Contributions that propose novel exploration techniques or analyze their impact on agent performance are welcome.

Track 08
Adaptive Agents in Dynamic Environments

This session explores the development of adaptive agents capable of functioning in dynamic and uncertain environments using deep reinforcement learning. Papers that demonstrate adaptability and resilience in agent design are encouraged.

Track 09
Multi-Agent Deep Reinforcement Learning

This track focuses on the challenges and advancements in multi-agent deep reinforcement learning systems. Contributions that address coordination, communication, and competition among agents are highly sought after.

Track 10
Real-Time Applications of Deep Reinforcement Learning

This session highlights the application of deep reinforcement learning in real-time systems across various industries. Researchers are invited to present case studies or frameworks that demonstrate the practical utility of DRL in time-sensitive environments.

Track 11
Hierarchical Reinforcement Learning Approaches

This track examines hierarchical reinforcement learning methodologies that decompose complex tasks into manageable subtasks. Papers that propose novel hierarchical structures or demonstrate their effectiveness in various applications are encouraged.

2026 UPDATE

Consistent Academic Support

Science Net ensures that research activities continue without interruption in the current global situation. Participants can engage through digital and hybrid conference formats.