نبذة عني
Data Scientist familiar with gathering, cleaning and organizing data for use by technical and non-technical personnel. Advanced understanding of statistical, algebraic and other analytical techniques. Highly organized, m…
Data Scientist familiar with gathering, cleaning and organizing data for use by technical and non-technical personnel. Advanced understanding of statistical, algebraic and other analytical techniques. Highly organized, motivated and diligent with significant background in ML and Data Analysis.
الخبرة
ML INTERN
Data Scientist familiar with gathering, cleaning and organizing data for use by technical and non-technical personnel. Advanced
understanding of statistical, algebraic and other analytical techniques. Highly organized, motivated and diligent with significant
background in ML and Data Analysis.
Machine Learning Intern
Conducting Exploratory Data Analysis (EDA) to gain insights into the dataset.
Visualizing data distributions.
Identifying correlations between variables.
Understanding the underlying patterns in the data.
Creating new features or transforming existing ones to improve model performance.
Applying scaling, normalization, one-hot encoding categorical variables, and generating new features through domain knowledge.
Implementing machine learning models using libraries like scikit-learn, TensorFlow, or PyTorch.
Experimenting with different algorithms such as linear regression, decision trees, random forests, or deep learning architectures.
Fine-tuning model hyperparameters to optimize performance.
Using techniques like grid search, random search, or Bayesian optimization.
Assessing model performance using cross-validation techniques to ensure generalizability.
Splitting the data into training, validation, and test sets.
Evaluating models on unseen data to avoid overfitting.
Data Analyst
Cleaning raw data by removing duplicates, handling missing values, and ensuring data consistency.
Preparing data for analysis by organizing it into a structured format suitable for analysis.
Conducting exploratory data analysis to understand the characteristics and patterns present in the data.
Visualizing data distributions.
Identifying outliers.
Exploring relationships between variables.
Performing statistical analysis to derive insights from the data.
Calculating descriptive statistics such as mean, median, and standard deviation.
Conducting hypothesis testing to validate assumptions or make inferences about the data.
Creating visualizations such as charts, graphs, and dashboards to communicate findings effectively.
Using tools like Matplotlib, Seaborn, or Tableau to visualize trends, patterns, and relationships in the data.
Leveraged statistical methods to analyze complex data sets, resulting in a 30% increase in operational efficiency through the identification of key performance trends and actionable insights.