Data-ScienceUsing Kaggle Data and Real World Data for Data Science and prediction in Python, R, Excel, Power BI, and Tableau.
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100 Days Of Ml CodeA day to day plan for this challenge. Covers both theoritical and practical aspects
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kushner eb5 censusJared Kushner and his partners used a program meant for job-starved areas to build a luxury skyscraper
Stars: ✭ 49 (+188.24%)
CodeCompilation of R and Python programming codes on the Data Professor YouTube channel.
Stars: ✭ 287 (+1588.24%)
ytprivYT metadata exporter
Stars: ✭ 28 (+64.71%)
ML-DS-GuideComplied Resources for learning Machine Learning & Data Science
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gan deeplearning4jAutomatic feature engineering using Generative Adversarial Networks using Deeplearning4j and Apache Spark.
Stars: ✭ 19 (+11.76%)
ml-bookCodice sorgente ed Errata Corrige del mio libro "A tu per tu col Machine Learning"
Stars: ✭ 16 (-5.88%)
DGFraud-TF2A Deep Graph-based Toolbox for Fraud Detection in TensorFlow 2.X
Stars: ✭ 84 (+394.12%)
k3aiA lightweight tool to get an AI Infrastructure Stack up in minutes not days. K3ai will take care of setup K8s for You, deploy the AI tool of your choice and even run your code on it.
Stars: ✭ 105 (+517.65%)
Statistical-Learning-using-RThis is a Statistical Learning application which will consist of various Machine Learning algorithms and their implementation in R done by me and their in depth interpretation.Documents and reports related to the below mentioned techniques can be found on my Rpubs profile.
Stars: ✭ 27 (+58.82%)
Wharton Stat 422 722The official class webpage for Statistics 422/722 taught at Wharton in the Spring of 2017
Stars: ✭ 14 (-17.65%)
blogpost codesRepo of my blogpost articles codes
Stars: ✭ 41 (+141.18%)
R-Learning-JourneySome of the projects i made when starting to learn R for Data Science at the university
Stars: ✭ 19 (+11.76%)
mljar-api-RR wrapper for MLJAR API
Stars: ✭ 16 (-5.88%)
Lotteryprediction🌝 Lottery prediction besides of following "law of proability","Probability: Independent Events", there are still "Saying "a Tail is due", or "just one more go, my luck is due to change" is called The Gambler's Fallacy" existed.
Stars: ✭ 202 (+1088.24%)
DatavisualizationTutorials on visualizing data using python packages like bokeh, plotly, seaborn and igraph
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Inspectdf🛠️ 📊 Tools for Exploring and Comparing Data Frames
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MiradorTool for visual exploration of complex data.
Stars: ✭ 186 (+994.12%)
primrosePrimrose modeling framework for simple production models
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metallicaRtR package of colour palettes based on Metallica studio album covers.
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HandysparkHandySpark - bringing pandas-like capabilities to Spark dataframes
Stars: ✭ 158 (+829.41%)
data science portfolioPortfolio of data science projects completed by me for academic, self learning, and hobby purposes.
Stars: ✭ 51 (+200%)
xgboost-smote-detect-fraudCan we predict accurately on the skewed data? What are the sampling techniques that can be used. Which models/techniques can be used in this scenario? Find the answers in this code pattern!
Stars: ✭ 59 (+247.06%)
Data-Science-SeriesFor all those who're struggling to find a good hands-on resource (with case studies) to master their Data Science skills, Here's all what you need!
Stars: ✭ 48 (+182.35%)
dqlab-career-trackA collection of scripts written to complete DQLab Data Analyst Career Track 📊
Stars: ✭ 53 (+211.76%)
dku-kaggle-class단국대 SW중심대학 2020년도 오픈소스SW설계 - 캐글뽀개기 수업 일정 및 강의자료
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gretel-python-clientThe Gretel Python Client allows you to interact with the Gretel REST API.
Stars: ✭ 28 (+64.71%)
NanodegreesNanodegree programs https://www.udacity.com/nanodegree
Stars: ✭ 21 (+23.53%)
assignerPopulation assignment analysis using R
Stars: ✭ 17 (+0%)
objectiv-analyticsPowerful product analytics for data teams, with full control over data & models.
Stars: ✭ 399 (+2247.06%)
schrutepyThe Entire Transcript from the Office in Tidy Format
Stars: ✭ 22 (+29.41%)
ScattertextBeautiful visualizations of how language differs among document types.
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KdepyKernel Density Estimation in Python
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DataScienceTutorials.jlA set of tutorials to show how to use Julia for data science (DataFrames, MLJ, ...)
Stars: ✭ 94 (+452.94%)
awesome-conformal-predictionA professionally curated list of awesome Conformal Prediction videos, tutorials, books, papers, PhD and MSc theses, articles and open-source libraries.
Stars: ✭ 998 (+5770.59%)
wildebeestFile processing pipelines
Stars: ✭ 86 (+405.88%)
XdaR package for exploratory data analysis
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SparkoraPowerful rapid automatic EDA and feature engineering library with a very easy to use API 🌟
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loonA Toolkit for Interactive Statistical Data Visualization
Stars: ✭ 45 (+164.71%)
SweetvizVisualize and compare datasets, target values and associations, with one line of code.
Stars: ✭ 1,851 (+10788.24%)
Data-Analyst-NanodegreeThis repo consists of the projects that I completed as a part of the Udacity's Data Analyst Nanodegree's curriculum.
Stars: ✭ 13 (-23.53%)
Spark R Notebooks R on Apache Spark (SparkR) tutorials for Big Data analysis and Machine Learning as IPython / Jupyter notebooks
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kanaSingle cell analysis in the browser
Stars: ✭ 81 (+376.47%)
KaggleKaggle Kernels (Python, R, Jupyter Notebooks)
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ML-CaPsuleML-capsule is a Project for beginners and experienced data science Enthusiasts who don't have a mentor or guidance and wish to learn Machine learning. Using our repo they can learn ML, DL, and many related technologies with different real-world projects and become Interview ready.
Stars: ✭ 177 (+941.18%)
Naive-Bayes-Evening-WorkshopCompanion code for Introduction to Python for Data Science: Coding the Naive Bayes Algorithm evening workshop
Stars: ✭ 23 (+35.29%)