Charlie Yaris's repositories

macros_for_data_science

Used Keyboard Maestro to create quick shortcuts for essential data science functions.

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mastermind

See the new interactive web version of Mastermind written in Javascript using D3.js.

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2016_mlb_season

Used Scrapy to gather data on the 2016 MLB Season, and then practiced making visualizations with Pandas, Matplotlib, Seaborn and Plotly/Cufflinks.

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charities_in_the_united_states

Used scrapy to gather data on charities in the United States, and then practiced supervised machine learning with Scikit-learn.

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the_networks_of_war

A study of networks by war using data from the Correlations of War (COW) project.

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dsp

Metis Data Science Bootcamp - Official Prework Repository

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maryland_traffic_violations

Tableau project for General Assembly Data Analytics course. An in-depth analysis of 94,702 reckless drivers in the state of Maryland.

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mozilla_firefox

SQL project for General Assembly Data Analytics course. Queried survey data to group by each user's response to a single question.

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svelte-select

A select component for Svelte apps

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text_similarity_calculator

Input two texts an get a score on their overall similarity.

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trump_or_nixon

Practiced natural language processing with NLTK using Nixon quotes and the definitive list of President Trump’s lies. Then built a model with Naive Bayes classifier to predict who said each quote.

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us_prescription_drug_prices

Used Scrapy to gather data on US prescription drugs, and then practiced linear modeling with Sci-Kit Learn to predict the prices of prescription medications.

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