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The various performance criteria applied in this analysis include the probability of reaching the ultimate target, the costs, elapsed times and system vulnerability resulting from any intrusion. This Excel file contains all the logical, probabilistic and statistical data entered by a user, and required for the evaluation of the criteria. It also reports the results of all the computations.
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TwitterThis interactive sales dashboard is designed in Excel for B2C type of Businesses like Dmart, Walmart, Amazon, Shops & Supermarkets, etc. using Slicers, Pivot Tables & Pivot Chart.
The first column is the date of Selling. The second column is the product ID. The third column is quantity. The fourth column is sales types, like direct selling, are purchased by a wholesaler or ordered online. The fifth column is a mode of payment, which is online or in cash. You can update these two as per requirements. The last one is a discount percentage. if you want to offer any discount, you can add it here.
So, basically these are the four sheets mentioned above with different tasks.
However, a sales dashboard enables organizations to visualize their real-time sales data and boost productivity.
A dashboard is a very useful tool that brings together all the data in the forms of charts, graphs, statistics and many more visualizations which lead to data-driven and decision making.
Questions & Answers
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This data publication is part of the 'P³-Petrophysical Property Database' project, which was developed within the EC funded project IMAGE (Integrated Methods for Advanced Geothermal Exploration, EU grant agreement No. 608553) and consists of a scientific paper, a full report on the database, the database as excel and .csv files and additional tables for a hierarchical classification of the petrography and stratigraphy of the investigated rock samples (see related references). This publication here provides a hierarchical interlinked stratigraphic classification according to the chronostratigraphical units of the international chronostratigraphic chart of the IUGS v2016/04 (Cohen et al. 2013, updated) according to international standardisation. As addition to this IUGS chart, which is also documented in GeoSciML, stratigraphic IDs and parent IDs were included to define the direct relationships between the stratigraphic terms. The P³ database aims at providing easily accessible, peer-reviewed information on physical rock properties relevant for geothermal exploration and reservoir characterization in one single compilation. Collected data include hydraulic, thermophysical and mechanical properties and, in addition, electrical resistivity and magnetic susceptibility. Each measured value is complemented by relevant meta-information such as the corresponding sample location, petrographic description, chronostratigraphic age and, most important, original citation. The original stratigraphic and petrographic descriptions are transferred to standardized catalogues following a hierarchical structure ensuring intercomparability for statistical analysis, of which the stratigraphic catalogue is presented here. These chronostratigraphic units are compiled to ensure that formations of a certain age are connected to the corresponding stratigraphic epoch, period or erathem. Thus, the chronostratigraphic units are directly correlated to each other by their stratigraphic ID and stratigraphic parent ID and can thus be used for interlinked data assessment of the petrophysical properties of samples of an according stratigraphic unit.
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TwitterAnalyzing sales data is essential for any business looking to make informed decisions and optimize its operations. In this project, we will utilize Microsoft Excel and Power Query to conduct a comprehensive analysis of Superstore sales data. Our primary objectives will be to establish meaningful connections between various data sheets, ensure data quality, and calculate critical metrics such as the Cost of Goods Sold (COGS) and discount values. Below are the key steps and elements of this analysis:
1- Data Import and Transformation:
2- Data Quality Assessment:
3- Calculating COGS:
4- Discount Analysis:
5- Sales Metrics:
6- Visualization:
7- Report Generation:
Throughout this analysis, the goal is to provide a clear and comprehensive understanding of the Superstore's sales performance. By using Excel and Power Query, we can efficiently manage and analyze the data, ensuring that the insights gained contribute to the store's growth and success.
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his project involves the creation of an interactive Excel dashboard for SwiftAuto Traders to analyze and visualize car sales data. The dashboard includes several visualizations to provide insights into car sales, profits, and performance across different models and manufacturers. The project makes use of various charts and slicers in Excel for the analysis.
Objective: The primary goal of this project is to showcase the ability to manipulate and visualize car sales data effectively using Excel. The dashboard aims to provide:
Profit and Sales Analysis for each dealer. Sales Performance across various car models and manufacturers. Resale Value Analysis comparing prices and resale values. Insights into Retention Percentage by car models. Files in this Project: Car_Sales_Kaggle_DV0130EN_Lab3_Start.xlsx: The original dataset used to create the dashboard. dashboards.xlsx: The final Excel file that contains the complete dashboard with interactive charts and slicers. Key Visualizations: Average Price and Year Resale Value: A bar chart comparing the average price and resale value of various car models. Power Performance Factor: A column chart displaying the performance across different car models. Unit Sales by Model: A donut chart showcasing unit sales by car model. Retention Percentage: A pie chart illustrating customer retention by car model. Tools Used: Microsoft Excel for creating and organizing the visualizations and dashboard. Excel Slicers for interactive filtering. Charts: Bar charts, pie charts, column charts, and sunburst charts. How to Use: Download the Dataset: You can download the Car_Sales_Kaggle_DV0130EN_Lab3_Start.xlsx file from Kaggle and follow the steps to create a similar dashboard in Excel. Open the Dashboard: The dashboards.xlsx file contains the final version of the dashboard. Simply open it in Excel and start exploring the interactive charts and slicers.
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Vrinda Store: Interactive Ms Excel dashboardVrinda Store: Interactive Ms Excel dashboard Feb 2024 - Mar 2024Feb 2024 - Mar 2024 The owner of Vrinda store wants to create an annual sales report for 2022. So that their employees can understand their customers and grow more sales further. Questions asked by Owner of Vrinda store are as follows:- 1) Compare the sales and orders using single chart. 2) Which month got the highest sales and orders? 3) Who purchased more - women per men in 2022? 4) What are different order status in 2022?
And some other questions related to business. The owner of Vrinda store wanted a visual story of their data. Which can depict all the real time progress and sales insight of the store. This project is a Ms Excel dashboard which presents an interactive visual story to help the Owner and employees in increasing their sales. Task performed : Data cleaning, Data processing, Data analysis, Data visualization, Report. Tool used : Ms Excel The owner of Vrinda store wants to create an annual sales report for 2022. So that their employees can understand their customers and grow more sales further. Questions asked by Owner of Vrinda store are as follows:- 1) Compare the sales and orders using single chart. 2) Which month got the highest sales and orders? 3) Who purchased more - women per men in 2022? 4) What are different order status in 2022? And some other questions related to business. The owner of Vrinda store wanted a visual story of their data. Which can depict all the real time progress and sales insight of the store. This project is a Ms Excel dashboard which presents an interactive visual story to help the Owner and employees in increasing their sales. Task performed : Data cleaning, Data processing, Data analysis, Data visualization, Report. Tool used : Ms Excel Skills: Data Analysis · Data Analytics · ms excel · Pivot Tables
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This dataset provides a dynamic Excel model for prioritizing projects based on Feasibility, Impact, and Size.
It visualizes project data on a Bubble Chart that updates automatically when new projects are added.
Use this tool to make data-driven prioritization decisions by identifying which projects are most feasible and high-impact.
Organizations often struggle to compare multiple initiatives objectively.
This matrix helps teams quickly determine which projects to pursue first by visualizing:
Example (partial data):
| Criteria | Project 1 | Project 2 | Project 3 | Project 4 | Project 5 | Project 6 | Project 7 | Project 8 |
|---|---|---|---|---|---|---|---|---|
| Feasibility | 7 | 9 | 5 | 2 | 7 | 2 | 6 | 8 |
| Impact | 8 | 4 | 4 | 6 | 6 | 7 | 7 | 7 |
| Size | 10 | 2 | 3 | 7 | 4 | 4 | 3 | 1 |
| Quadrant | Description | Action |
|---|---|---|
| High Feasibility / High Impact | Quick wins | Top Priority |
| High Impact / Low Feasibility | Valuable but risky | Plan carefully |
| Low Impact / High Feasibility | Easy but minor value | Optional |
| Low Impact / Low Feasibility | Low return | Defer or drop |
Project_Priority_Matrix.xlsx. You can use this for:
- Portfolio management
- Product or feature prioritization
- Strategy planning workshops
Project_Priority_Matrix.xlsxFree for personal and organizational use.
Attribution is appreciated if you share or adapt this file.
Author: [Asjad]
Contact: [m.asjad2000@gmail.com]
Compatible With: Microsoft Excel 2019+ / Office 365
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To create the dataset, the top 10 countries leading in the incidence of COVID-19 in the world were selected as of October 22, 2020 (on the eve of the second full of pandemics), which are presented in the Global 500 ranking for 2020: USA, India, Brazil, Russia, Spain, France and Mexico. For each of these countries, no more than 10 of the largest transnational corporations included in the Global 500 rating for 2020 and 2019 were selected separately. The arithmetic averages were calculated and the change (increase) in indicators such as profitability and profitability of enterprises, their ranking position (competitiveness), asset value and number of employees. The arithmetic mean values of these indicators for all countries of the sample were found, characterizing the situation in international entrepreneurship as a whole in the context of the COVID-19 crisis in 2020 on the eve of the second wave of the pandemic. The data is collected in a general Microsoft Excel table. Dataset is a unique database that combines COVID-19 statistics and entrepreneurship statistics. The dataset is flexible data that can be supplemented with data from other countries and newer statistics on the COVID-19 pandemic. Due to the fact that the data in the dataset are not ready-made numbers, but formulas, when adding and / or changing the values in the original table at the beginning of the dataset, most of the subsequent tables will be automatically recalculated and the graphs will be updated. This allows the dataset to be used not just as an array of data, but as an analytical tool for automating scientific research on the impact of the COVID-19 pandemic and crisis on international entrepreneurship. The dataset includes not only tabular data, but also charts that provide data visualization. The dataset contains not only actual, but also forecast data on morbidity and mortality from COVID-19 for the period of the second wave of the pandemic in 2020. The forecasts are presented in the form of a normal distribution of predicted values and the probability of their occurrence in practice. This allows for a broad scenario analysis of the impact of the COVID-19 pandemic and crisis on international entrepreneurship, substituting various predicted morbidity and mortality rates in risk assessment tables and obtaining automatically calculated consequences (changes) on the characteristics of international entrepreneurship. It is also possible to substitute the actual values identified in the process and following the results of the second wave of the pandemic to check the reliability of pre-made forecasts and conduct a plan-fact analysis. The dataset contains not only the numerical values of the initial and predicted values of the set of studied indicators, but also their qualitative interpretation, reflecting the presence and level of risks of a pandemic and COVID-19 crisis for international entrepreneurship.
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TwitterHello Everyone, I made this Finance Dashboard in Power BI with the Finance Excel Workbook provided by Microsoft on their Website. Problem Statement The goal of this Power BI Dashboard is to analyze the financial performance of a company using the provided Microsoft Sample Data. To create a visually appealing dashboard that provides an overview of the company's financial metrics enabling stakeholders to make informed business decisions. Sections in the Report Report has multiple section's from where you can manage the data, like : • Report data can be sliced by Segments, Country and Year to show particular data. - Report Contain Two Navigation Page one is overview and other is sales dashboard page for better visualisation of data. - Report Contain all the important data. - Report Contain different chart and bar garph for different section .
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📊 Bank Transaction Analytics Dashboard – SQL + Excel
🔹 Overview
This project focuses on Bank Transaction Analysis using a combination of SQL scripts and Excel dashboards. The goal is to provide insights into customer spending patterns, payment modes, suspicious transactions, and overall financial trends.
The dataset and analysis files can help learners and professionals understand how SQL and Excel can be used together for business decision-making, customer behavior tracking, and data-driven insights.
🔹 Contents
The dataset includes the following resources:
📂 SQL Scripts:
Create & Insert tables
15 Basic Queries
15 Advanced Queries
📂 CSV File:
Bank Transaction Analytics.csv (main dataset)
📂 Excel Charts:
Pie, Bar, Column, Line, Doughnut charts
Final Interactive Dashboard
📂 Screenshots:
Query outputs, Charts, and Final Dashboard visualization
📂 PDF Reports:
Project Report
Dashboard Report
📄 README.md:
Complete documentation and step-by-step explanation
🔹 Key Insights
26–35 age group spent the most across categories.
Amazon identified as the top merchant.
NetBanking showed the highest share compared to POS/UPI.
Travel & Shopping emerged as dominant categories.
🔹 Applications
Detecting suspicious transactions.
Understanding customer behavior.
Identifying top merchants and categories.
Building business intelligence dashboards.
🔹 How to Use
Download the dataset and SQL scripts.
Run Bank_Transaction_Analytics.SQL to create and insert data.
Execute the queries (Basic + Advanced) for insights.
Open Excel files to explore interactive charts and dashboards.
Refer to Project Report PDF for documentation.
🔹 Author
👩💻 Created by: Prachi Singh
GitHub: Bank Transaction Analytics Dashboard(https://github.com/prachi-singh-ds/Bank-Transaction-Analytics-Dashboard)
⚡This project is a complete SQL + Excel integration case study and is suitable for Data Science, Business Analytics, and Data Engineering portfolios.
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IBM HR Analytics Dashboard Using Excel
🌟 Project Overview This project features a dynamic HR analytics dashboard built using IBM's HR dataset and Excel. The dashboard provides insights into employee demographics, job satisfaction, work-life balance, and turnover rates, enabling data-driven decision-making in human resources management.
✨ Key Highlights
🎛️ Interactive Filters: Explore insights by gender, department, overtime status, job satisfaction, job involvement, and attrition. Dynamic slicers allow for filtering and drilling into specific subsets of data.
📊 Visualizations:
Bar Charts: Gender distribution, monthly income, and business travel patterns by department and job role. Pie Chart: Breakdown of employee job satisfaction levels. Radar Chart: Work-life balance analysis based on marital status. Line Graph: Training time by department.
📌 Top Metrics:
Total Employees: 1,470 (60% Male, 40% Female). Turnover Rate: 16% overall, with insights segmented by gender and department. Job Satisfaction: Visualized on a 4-point scale. Focus Areas: Employee attrition patterns by demographics and job roles. Departmental differences in income, training time, and job satisfaction. Work-life balance analysis based on marital status and job involvement.
🎯 Purpose
The dashboard serves as a tool for HR managers, analysts, and stakeholders to: - Understand key workforce trends. - Identify areas of improvement in job satisfaction and work-life balance. - Analyze factors influencing employee attrition.
💡 Why Excel?
This project demonstrates the power of Excel as a tool for creating interactive dashboards with rich visualizations, making it accessible to HR professionals without advanced technical skills.
💬 Let’s Discuss! I’d love to hear your feedback on this project! Share your thoughts, suggestions, or questions in the comments below. Let’s discuss ways to enhance the dashboard or dive deeper into HR analytics insights! 😊
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Graph and download economic data for Dow Jones Industrial Average (DJIA) from 2015-12-02 to 2025-12-01 about stock market, average, industry, and USA.
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Graph and download economic data for Canadian Dollars to U.S. Dollar Spot Exchange Rate (EXCAUS) from Jan 1971 to Nov 2025 about Canada, exchange rate, currency, rate, and USA.
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The various performance criteria applied in this analysis include the probability of reaching the ultimate target, the costs, elapsed times and system vulnerability resulting from any intrusion. This Excel file contains all the logical, probabilistic and statistical data entered by a user, and required for the evaluation of the criteria. It also reports the results of all the computations.