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

29th - 30th July 2026 | Kathmandu, Nepal

International Conference on Data Mining and Machine Learning (ICDMM - 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 9 — Industry, Innovation and Infrastructure
SDG 12 — Responsible Consumption and Production
Explore All Session Tracks
Track 01
Advancements in Supervised Learning Techniques

This track focuses on the latest developments in supervised learning methodologies, emphasizing their application in engineering contexts. Researchers are invited to present novel algorithms and models that enhance predictive accuracy and efficiency.

Track 02
Unsupervised Learning for Complex Data Structures

This session explores the application of unsupervised learning techniques in identifying patterns within complex datasets. Contributions may include innovative clustering algorithms and their implications for engineering problems.

Track 03
Deep Learning Architectures in Engineering Applications

This track highlights the role of deep learning architectures in solving engineering challenges, including image and signal processing. Presentations should focus on novel neural network designs and their performance in real-world scenarios.

Track 04
Feature Extraction and Dimensionality Reduction Techniques

This session addresses the critical role of feature extraction and dimensionality reduction in enhancing model performance. Researchers are encouraged to share techniques that optimize data representation for machine learning tasks.

Track 05
Predictive Analytics in Engineering Decision-Making

This track examines the use of predictive analytics to inform engineering decision-making processes. Papers should discuss methodologies that leverage historical data to forecast future trends and outcomes.

Track 06
Anomaly Detection in Big Data Environments

This session focuses on the challenges and solutions related to anomaly detection in large-scale datasets. Contributions should highlight innovative approaches that improve the identification of outliers in engineering applications.

Track 07
Ensemble Methods for Enhanced Classification

This track investigates the effectiveness of ensemble methods in improving classification performance across various engineering domains. Researchers are invited to present empirical studies and theoretical advancements in this area.

Track 08
Association Rule Mining in Engineering Data

This session explores the application of association rule mining techniques to uncover hidden relationships within engineering datasets. Contributions should demonstrate practical applications and the impact of these findings on engineering practices.

Track 09
Regression Analysis for Engineering Predictions

This track focuses on the application of regression analysis in modeling and predicting engineering phenomena. Papers should present novel approaches and case studies that illustrate the utility of regression techniques.

Track 10
Knowledge Discovery in Engineering Systems

This session emphasizes the process of knowledge discovery from engineering data, highlighting methodologies that transform raw data into actionable insights. Researchers are encouraged to share their findings on effective data mining strategies.

Track 11
Data Preprocessing Techniques for Machine Learning

This track addresses the importance of data preprocessing in the machine learning pipeline, focusing on techniques that enhance data quality and model performance. Contributions should explore innovative methods for cleaning, transforming, and preparing data for analysis.

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.