Python Data Analysis with Iris Dataset | Data Science, plotting & graphing
Learn to analyze a dataset in Python using Pandas and MatPlotLib PyPlot. Graph the attributes on scatter plots, histograms and box plots. In part 2 of this Data Science series we'll use this training data to predict or identify an unknown item given its attributes using KNN. RELATED VIDEOS ► Numpy Intro: • Python: NUMPY | Numerical Python Arrays Tu... ► Numpy Intro Jupyter nb: • NUMPY Arrays Tutorial in Jupyter with exam... ► Pandas Intro: • Python: Pandas Tutorial | Intro to DataFrames ► Pandas Import Data: • Python Pandas - How to IMPORT/read & EXPOR... ► Pandas Selecting & Filtering: • Python Pandas: Select, SLICE & FILTER Data... ► Pandas Time Series: • Python Pandas - Working with TIME & Date S... ► Pandas and MatPlotLib: • Python Pandas: Plotting Data with Matplotlib ► Matplotlib Intro: • Python: Intro to Visualization with Matplo... Code: https://github.com/joeyajames/Python/... Twitter: / joejamesusa Subscribe: https://bit.ly/like-this-channel #Python #Pandas #DataScience

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