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seasonality

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The repository provides an in-depth analysis and forecast of a time series dataset and summarizes the mathematical concepts required to have a deeper understanding of Holt-Winter's model. Also contains the implementation and analysis to time series anomaly detection using brutlag algorithm.

  • Updated Jun 28, 2020
  • Jupyter Notebook

Binary cat image/series classifier based on a deep neural network implemented from scratch using He Random initialization, Adam optimization, RELU and sigmoid activation with regularization

  • Updated Aug 30, 2019
  • Python
forecast-dengue-cases-dengai

Predicting disease spread, a DrivenData competition. I'am currently participating in this competition. I used it as submission for the second capstone project in the course 'Professional Certificate in Data Science' provided by Harvard University (HarvardX) on EDX.

  • Updated May 20, 2019
  • R

Crack spread is the price differential between crude oils and refined products. "Crack" refers to the catalyzing and heating process that results in the breaking down of the carbon bonds, hence the name "cracking". The spreads represent industry refining margins and lend insight into economic activities. The spreads are thought to be seasonal. The below code investigates a few crack spreads visually to establish such relationships.

  • Updated Nov 15, 2019
  • Jupyter Notebook

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