Description
You will apply statistical modeling and machine learning techniques to drive data insights.
Responsibilities
- Perform statistical analysis, including hypothesis testing (T-Test, Z-Test) and regression modeling (Linear, Logistic).
- Develop and implement forecasting models using techniques like Exponential Smoothing and ARIMA.
- Build and evaluate classification models using Decision Trees and SVM.
- Utilize ML frameworks to build and deploy predictive models.
Required Skills
- 5+ years of experience in data science or a related analytical field.
- Proficiency in Python and PySpark for large-scale data processing.
- Experience with statistical software such as SAS and SPSS.
- Hands-on experience with ML frameworks: TensorFlow, PyTorch, Scikit-learn, CNTK, Keras, or MXNet.
- Familiarity with probabilistic graph models and statistical computing.
- Knowledge of distance metrics (Hamming, Euclidean, Manhattan Distance).
- Ability to apply core statistical concepts including probability and hypothesis testing.