demir.ai Dataset Operations

Overview

demir.ai Dataset Operations

With this application, you can have the empty values (nan/null) deleted or filled before giving your dataset to machine learning algorithms, you can access visual or numerical information about your dataset and have more detailed information about your attributes.

The application is written in Python programming language, Flask framework is used in the backend, Html is used in the frontent. Pandas framework is used to navigate over the dataset, all numerical operations on the dataset were written by me and no ready-made functions were used, while the plots were created from scratch by me using the Opencv framework.

Before running the application, you can install the necessary packages for the application with the following command.

pip3 install -r requirements.txt

You can launch the web application with the following command, and then you can use the application by going to http://localhost:5000/.

python3 main.py

With this web application, you can delete rows or columns with empty values (nan/null) on your dataset or fill these empty values in three different ways.

  • Null value (nan) operations you can do on your dataset with demir.ai Dataset Operations:

    • Column-based deletion of null data (nan/null)
    • Row-based deletion of null data (nan/null)
    • Filling in blank data by mean, median and mode

Again, thanks to this web application, you can reach visual or numerical results about your dataset and have detailed information about your dataset.

  • Information you can learn about your dataset with demir.ai Dataset Operations:

    • Mean of columns
    • Median of columns
    • Mode of columns
    • Frequency of columns
    • Interquartile range value (IQR) of columns
    • Outliers of columns
    • Five number summary of columns
    • Box Chart of columns
    • Variance and standard deviation of columns

Null value (nan/null) operations

  • Column-based deletion of null data (nan/null): The number of nulls is calculated for each column, then the percentage of nulls is calculated and if this percentage is greater than the percentage the user enters, this column is deleted.

  • Row-based deletion of null data (nan/null): The number of nulls is calculated for each line, and if this number of nulls is greater than the number entered by the user, this line is deleted.

  • Filling in blank data by mean, median and mode:

    • Mean: The sum of the non-blank values of the columns is taken and divided by the total number of non-blank values, the average obtained is written instead of the empty values.

    • Median: The median is calculated according to the non-blank values in the columns, and then this median value is written instead of the empty columns.

    • Mode: The mode is calculated according to the non-blank values in the columns, and then this mode value is written instead of the empty columns

Information you can learn about your dataset

  • Mean of columns: The mean is calculated for each column separately and the column mean information is presented to the user.

  • Median of columns: The median is calculated for each column separately and the column median information is presented to the user.

  • Mode of columns: The mode is calculated for each column separately and the column mode information is presented to the user.

  • Frequency of columns: Frequency is calculated for each column and the frequency information of the columns is presented to the user. In this section, frequency visualization is also done by creating a bar plot from scratch with Opencv.

  • Interquartile range value (IQR) of columns: Q1 and Q3 values are found for each column, then the IQR value of the columns is found with Q3-Q1 and presented to the user.

  • Outliers of columns: If the data in the column is less than (Q1-IQR * 1.5) and greater than (Q3+IQR * 1.5), it is called outlier and this information is presented to the user.

  • Five number summary of columns: Minimum, Q1, median, Q3 and Maximum values are calculated and presented to the user.

  • Box Chart of columns: After finding the minimum, Q1, median, Q3 and maximum values for each column, a box chart is created from scratch with Opencv and this chart is presented to the user.

  • Variance and standard deviation of columns: The variance and standard deviation for each column are calculated and presented to the user.

Application video

demirai.mp4
Owner
Ahmet Furkan DEMIR
Hi, my name is Ahmet Furkan DEMIR. I study computer engineering at Necmettin Erbakan University.
Ahmet Furkan DEMIR
DataVisualization - The evolution of my arduino and python journey. New level of competence achieved

DataVisualization - The evolution of my arduino and python journey. New level of competence achieved

1 Jan 03, 2022
Automate the case review on legal case documents and find the most critical cases using network analysis

Automation on Legal Court Cases Review This project is to automate the case review on legal case documents and find the most critical cases using netw

Yi Yin 7 Dec 28, 2022
Analysis and plotting for motor/prop/ESC characterization, thrust vs RPM and torque vs thrust

esc_test This is a Python package used to plot and analyze data collected for the purpose of characterizing a particular propeller, motor, and ESC con

Alex Spitzer 1 Dec 28, 2021
A Jupyter - Three.js bridge

pythreejs A Python / ThreeJS bridge utilizing the Jupyter widget infrastructure. Getting Started Installation Using pip: pip install pythreejs And the

Jupyter Widgets 844 Dec 27, 2022
Parallel t-SNE implementation with Python and Torch wrappers.

Multicore t-SNE This is a multicore modification of Barnes-Hut t-SNE by L. Van der Maaten with python and Torch CFFI-based wrappers. This code also wo

Dmitry Ulyanov 1.7k Jan 09, 2023
Tools for writing, submitting, debugging, and monitoring Storm topologies in pure Python

Petrel Tools for writing, submitting, debugging, and monitoring Storm topologies in pure Python. NOTE: The base Storm package provides storm.py, which

AirSage 247 Dec 18, 2021
I'm doing Genuary, an aritifiacilly generated month to build code that make beautiful things

Genuary 2022 I'm doing Genuary, an aritifiacilly generated month to build code that make beautiful things. Every day there is a new prompt for making

Joaquín Feltes 1 Jan 10, 2022
ICS-Visualizer is an interactive Industrial Control Systems (ICS) network graph that contains up-to-date ICS metadata

ICS-Visualizer is an interactive Industrial Control Systems (ICS) network graph that contains up-to-date ICS metadata (Name, company, port, user manua

QeeqBox 2 Dec 13, 2021
This tool is designed to help administrators get an overview of their Active Directory structure.

This tool is designed to help administrators get an overview of their Active Directory structure. In the group view you can see all elements of an AD (OU, USER, GROUPS, COMPUTERS etc.). In the user v

deexno 2 Oct 30, 2022
ScisorWiz: Differential Isoform Visualizer for Long-Read RNA Sequencing Data

ScisorWiz: Vizualizer for Differential Isoform Expression README ScisorWiz is a linux-based R-package for visualizing differential isoform expression

Alexander Stein 6 Oct 04, 2022
Python code for solving 3D structural problems using the finite element method

3DFEM Python 3D finite element code This python code allows for solving 3D structural problems using the finite element method. New features will be a

Rémi Capillon 6 Sep 29, 2022
🎨 Python Echarts Plotting Library

pyecharts Python ❤️ ECharts = pyecharts English README 📣 简介 Apache ECharts (incubating) 是一个由百度开源的数据可视化,凭借着良好的交互性,精巧的图表设计,得到了众多开发者的认可。而 Python 是一门富有表达

pyecharts 13.1k Jan 03, 2023
✅ Today I Learn

Today I Learn EDA numpy_100ex numpy_0~10 airline_satisfaction_prediction BERT_naver_movie_classification NLP_prepare NLP_Tweet_Emotion_Recognition tex

Yeonghoo_Ahn 3 Dec 15, 2022
Realtime Viewer Mandelbrot set with Python and Taichi (cpu, opengl, cuda, vulkan, metal)

Mandelbrot-set-Realtime-Viewer- Realtime Viewer Mandelbrot set with Python and Taichi (cpu, opengl, cuda, vulkan, metal) Control: "WASD" - movement, "

22 Oct 31, 2022
Fast visualization of radar_scenes based on oleschum/radar_scenes

RadarScenes Tools About This python package provides fast visualization for the RadarScenes dataset. The Open GL based visualizer is smoother than ole

Henrik Söderlund 2 Dec 09, 2021
Data Visualizer for Super Mario Kart (SNES)

Data Visualizer for Super Mario Kart (SNES)

MrL314 21 Nov 20, 2022
Pretty Confusion Matrix

Pretty Confusion Matrix Why pretty confusion matrix? We can make confusion matrix by using matplotlib. However it is not so pretty. I want to make con

Junseo Ko 5 Nov 22, 2022
Simple CLI python app to show a stocks graph performance. Made with Matplotlib and Tiingo.

stock-graph-python Simple CLI python app to show a stocks graph performance. Made with Matplotlib and Tiingo. Tiingo API Key You will need to add your

Toby 3 May 14, 2022
🐍PyNode Next allows you to easily create beautiful graph visualisations and animations

PyNode Next A complete rewrite of PyNode for the modern era. Up to five times faster than the original PyNode. PyNode Next allows you to easily create

ehne 3 Feb 12, 2022
Piglet-shaders - PoC of custom shaders for Piglet

Piglet custom shader PoC This is a PoC for compiling Piglet fragment shaders usi

6 Mar 10, 2022