SML Roadmap

Statistics & Machine Learning combine reasoning, modeling, and domain knowledge to extract reliable insight from data.

This roadmap provides the core sequence for data acquisition, preparation, statistical analysis, modeling, and responsible AI practice.

SML Roadmap Progress:

0% Complete
# SML Topic Description
01 Basic Concepts Core terminology and data science foundations.
02 Data Life Cycle Flow from data creation to archival and reuse.
03 Data Collection Acquisition methods, quality, and source validation.
04 Data Storage Storage models, access patterns, and governance basics.
05 Data Cleaning Pre-processing, transformation, and quality fixes.
06 Data Analysis Descriptive and inferential analysis methods.
07 Data Visualization Charts, dashboards, and communication of findings.
08 Machine Learning Modeling fundamentals and supervised workflows.
09 Deep Learning Neural network basics and practical applications.
10 Ethical Issues Bias, privacy, governance, and responsible AI.

External Resources