International Conference on

Data Science for Environmental and Climate Studies (ICDSECS-26)

Conference Date

9th Sep - 10th Sep 2026

Conference Venue

Toronto, Canada

Conference Mode

Hybrid Conference
Proudly organized by:- Science Leagues

"Join global experts in Data Science for Environmental and Climate Studies"

Registration Options

View all registration categories and choose the best fit.

Conference 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.

SDG 9
SDG 9 Industry, Innovation and Infrastructure
SDG 11
SDG 11 Sustainable Cities and Communities
SDG 12
SDG 12 Responsible Consumption and Production
SDG 13
SDG 13 Climate Action
SDG 15
SDG 15 Life on Land
SDG 16
SDG 16 Peace, Justice and Strong Institutions
SDG 17
SDG 17 Partnerships for the Goals
Track 01

Advanced Statistical Methods in Environmental Data Science

This track focuses on the application of advanced statistical techniques to analyze environmental data. Participants will explore innovative methods for addressing complex environmental challenges through rigorous statistical modeling.

Track 02

Machine Learning Applications in Climate Modeling

This session will delve into the integration of machine learning algorithms in climate modeling and prediction. Researchers will present case studies demonstrating the effectiveness of these techniques in enhancing climate forecasts.

Track 03

Big Data Analytics for Sustainable Development

This track emphasizes the role of big data analytics in promoting sustainable development initiatives. Discussions will center on data-driven strategies that address environmental sustainability challenges.

Track 04

Predictive Analytics for Environmental Risk Assessment

This session will explore the use of predictive analytics in assessing and managing environmental risks. Participants will share methodologies and findings that contribute to improved risk management practices.

Track 05

Statistical Modeling for Climate Change Impact Studies

This track focuses on statistical modeling techniques used to assess the impacts of climate change on various ecosystems. Researchers will present their findings on how these models inform policy and conservation efforts.

Track 06

Artificial Intelligence in Environmental Monitoring

This session will highlight the application of artificial intelligence in monitoring environmental changes. Attendees will discuss innovative AI solutions that enhance data collection and analysis in environmental studies.

Track 07

Simulation Techniques in Environmental Research

This track will cover simulation methodologies applied to environmental research scenarios. Participants will explore how simulations can provide insights into complex environmental systems and their dynamics.

Track 08

Data Science Innovations for Climate Resilience

This session will showcase innovative data science approaches aimed at enhancing climate resilience. Researchers will present their work on developing tools and frameworks that support adaptive strategies in vulnerable regions.

Track 09

Risk Analysis Frameworks in Environmental Decision-Making

This track will examine various risk analysis frameworks used in environmental decision-making processes. Participants will discuss the integration of quantitative and qualitative approaches to improve outcomes.

Track 10

Sustainability Research through Data-Driven Insights

This session will focus on how data-driven insights can inform sustainability research and practices. Researchers will share their findings on leveraging data science to promote sustainable environmental policies.

Track 11

Collaborative Approaches in Environmental Data Science

This track will explore collaborative methodologies in environmental data science research. Participants will discuss interdisciplinary partnerships that enhance data sharing and collective problem-solving.