Chen David
Data scientist
נתניה, ישראל
פרילנסר
שפות
עברית
שפת אם
אנגלית
שליטה טובה
תחומי התמחות
טכנולוגיה
120 ₪
לשעה
רשתות ��צביות - Neural Networks
-
Power BI
Data Analyst-Fraud detection
Extracted insights using complex SQL queries from
large relational databases. Created dashboards with
Power BI, Tableau, and Excel. Detected data anomalies
and contributed to operational decision-making
Extracted insights using complex SQL queries from
large relational databases. Created dashboards with
Power BI, Tableau, and Excel. Detected data anomalies
and contributed to operational decision-making
עיבוד שפה טבעית - NLP
Data science Intern
Ruppin Academic Center, in collaboration wit Lev Hasharon Mental
Health Center
- Built a machine learning pipeline to predict patient readmissions within
30 and 90 days using real clinical data.
-Cleaned, processed, and structured and unstructured medical data using
Python.
-Performed statistical analysis, hypothesis testing, and feature engineering
based on demographic and clinical variables to improve model performance.
-Built and optimized machine learning models including Logistic
Regression, Random Forest, and XGBoost.
-Applied advanced NLP techniques (BERT) to analyze admission and
discharge notes written by physicians.
-Authoring an academic article intended for publication
Ruppin Academic Center, in collaboration wit Lev Hasharon Mental
Health Center
- Built a machine learning pipeline to predict patient readmissions within
30 and 90 days using real clinical data.
-Cleaned, processed, and structured and unstructured medical data using
Python.
-Performed statistical analysis, hypothesis testing, and feature engineering
based on demographic and clinical variables to improve model performance.
-Built and optimized machine learning models including Logistic
Regression, Random Forest, and XGBoost.
-Applied advanced NLP techniques (BERT) to analyze admission and
discharge notes written by physicians.
-Authoring an academic article intended for publication
תכנות ופיתוח תוכנה
120 ₪
לשעה
DB - MSSQL, SQL Server
Data Analyst-Fraud detection
Extracted insights using complex SQL queries from
large relational databases. Created dashboards with
Power BI, Tableau, and Excel. Detected data anomalies
and contributed to operational decision-making
Extracted insights using complex SQL queries from
large relational databases. Created dashboards with
Power BI, Tableau, and Excel. Detected data anomalies
and contributed to operational decision-making
BI, Data Science, Big Data
Data science Intern
Ruppin Academic Center, in collaboration wit Lev Hasharon Mental
Health Center
- Built a machine learning pipeline to predict patient readmissions within
30 and 90 days using real clinical data.
-Cleaned, processed, and structured and unstructured medical data using
Python.
-Performed statistical analysis, hypothesis testing, and feature engineering
based on demographic and clinical variables to improve model performance.
-Built and optimized machine learning models including Logistic
Regression, Random Forest, and XGBoost.
-Applied advanced NLP techniques (BERT) to analyze admission and
discharge notes written by physicians.
-Authoring an academic article intended for publication
Ruppin Academic Center, in collaboration wit Lev Hasharon Mental
Health Center
- Built a machine learning pipeline to predict patient readmissions within
30 and 90 days using real clinical data.
-Cleaned, processed, and structured and unstructured medical data using
Python.
-Performed statistical analysis, hypothesis testing, and feature engineering
based on demographic and clinical variables to improve model performance.
-Built and optimized machine learning models including Logistic
Regression, Random Forest, and XGBoost.
-Applied advanced NLP techniques (BERT) to analyze admission and
discharge notes written by physicians.
-Authoring an academic article intended for publication
Python
Data science Intern
Ruppin Academic Center, in collaboration wit Lev Hasharon Mental
Health Center
- Built a machine learning pipeline to predict patient readmissions within
30 and 90 days using real clinical data.
-Cleaned, processed, and structured and unstructured medical data using
Python.
-Performed statistical analysis, hypothesis testing, and feature engineering
based on demographic and clinical variables to improve model performance.
-Built and optimized machine learning models including Logistic
Regression, Random Forest, and XGBoost.
-Applied advanced NLP techniques (BERT) to analyze admission and
discharge notes written by physicians.
-Authoring an academic article intended for publication
Ruppin Academic Center, in collaboration wit Lev Hasharon Mental
Health Center
- Built a machine learning pipeline to predict patient readmissions within
30 and 90 days using real clinical data.
-Cleaned, processed, and structured and unstructured medical data using
Python.
-Performed statistical analysis, hypothesis testing, and feature engineering
based on demographic and clinical variables to improve model performance.
-Built and optimized machine learning models including Logistic
Regression, Random Forest, and XGBoost.
-Applied advanced NLP techniques (BERT) to analyze admission and
discharge notes written by physicians.
-Authoring an academic article intended for publication