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Hybrid Event

7th - 8th October 2026 | Sao Paulo, Brazil

International Conference on Applied Machine Learning for Scientific Applications (ICAML-SA - 26)

4

Days

4

Hrs

07

Min

02

Sec

Call For Paper

The (ICAML-SA) is dedicated to advancing research excellence by bringing together leading scholars, scientists, and professionals from across the globe. It provides a platform for the dissemination of high-quality research and innovative methodologies.

With a strong focus on Computational Science,Data Science, the conference promotes research that contributes to academic depth, practical insights, and interdisciplinary knowledge integration.

Authors are invited to submit papers addressing, but not limited to, the following areas:

01
Applied machine learning in scientific fields
02
Case studies of ML in scientific research
03
Real-world applications of machine learning
04
Machine learning for experimental data analysis
05
AI techniques for scientific modeling
06
Data-driven decision-making in science
07
Machine learning for predictive maintenance
08
Applications of ML in environmental science
09
Machine learning in social science research
10
AI for optimizing scientific workflows
11
Challenges in applying ML to science
12
Ethics of machine learning applications
13
Machine learning for data-driven discoveries
14
AI in computational biology applications
15
Interdisciplinary approaches to applied ML
16
Machine learning for sensor data analysis
17
AI for enhancing research reproducibility
18
Future trends in applied machine learning
19
Collaborative research using machine learning
20
Machine learning for scientific visualization

Peer Review Process

All submissions evaluated through structured peer-review to ensure academic rigor. Accepted papers may be considered for high-quality journals.

Registration Details

Secure your participation early. Limited slots are allocated on a first-come, first-served basis.

Publication Opportunities

High-quality submissions prioritized for publication in recognized journals and proceedings.

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.