Data mining is the process of discovering hidden information within large and complex datasets and extracting meaningful patterns from this data.
By utilizing this process, we analyze complex data structures across various sectors, uncover unknown patterns, and transform them into actionable insights for business decisions. Through advanced algorithms, we optimize every stage of this process.

Data Preprocessing
In the initial step, we collect data from various sources and clean erroneous, incomplete, or inconsistent data to make it analyzable. Proper formatting at this stage is a critical detail to ensure the reliability of the dataset.

Feature Selection and Transformation
We enhance the speed and accuracy of analysis processes by identifying meaningful features and eliminating unnecessary data. For large datasets, we utilize data normalization and feature transformation processes.

Pattern Recognition
To uncover patterns within the data, we use classification, clustering, and association techniques. The machine learning and statistical models employed at this stage reveal the hidden structure of the data, forming a basis for inferential analyses.

Anomaly Detection
We identify abnormal or unexpected behaviors within systems. For cases like credit card fraud, anomaly detection allows us to detect issues at an early stage and provide solutions.

Forecasting and Predictive Modeling
By learning patterns from historical data, we predict future trends, enabling businesses to make more effective and foresighted decisions in their processes