Cyrus_Maina (Cyrus-Maina)

Cyrus-Maina

Geek Repo

Company:CCI Kenya

Location:Nairobi

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Cyrus_Maina's repositories

Grocery_store_sales_analysis

This analysis exhausts a grocery store's sales from 2020 to 2023 and provides business insights from the statistical methods applied.

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Lego_Themes_Database

This analysis aims to help you understand Lego's growth via themes released and number of products released from 1949 to date.

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Netflix_userbase

This analysis provides insights deducted from a fictitious Netflix userbase dataset.

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pharmacy_db_querying

A pharmacy has tasked us with business problems solvable by querying their Database. We drew insights and provided recommendations to the business problems.

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pizza_hut_sales

Our aim is to extract insights on how Pizza Hut can stay financially healthy, from their revenues and sales data.

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Profitable_Movies_analysis

This analysis assumes we have an investor for a customer who seeks our guidance on deciding in which genre should he venture to considering its profitability and low capital.

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Supplychain_database_analysis

This analysis deduces day to day insights of Herman Traders' supply chain operations, insights meant to streamline the operations to improve efficiency, increase profits and cut costs.

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Tele_Bank_Customer_Dataset

We analyze the customer dataset with the sole intention of extracting as many useful insights that may help the bank's shareholders make decisions that will keep them financially healthy.

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2020-Fortune_2000_companies

This repo wholesomely analyses fortune 2000 companies year 2020.It deducts aspects like profit ratios, correlations between variables, profitable/non-profitable companies and performs a regression analysis. It also groups insights into countries and continents.

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Castiglione_Hotel_DB_querying

We have this hotel business' database and business problems which we solve by querying the database. We then provide recommendations and insights.

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Complex_sakila_db_querying

We will employ various SQL techniques like UNION, CTE AND AGGREGATION FUNCTIONS to query the DB

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Cyrus-Maina

Database/datasets analysis utilizing SQL and Python and offering recommendations and insights that enhance your organization's decision-making process.

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exam_Scores_study_hours_analysis

An analysis on the correlation between exam scores and number of hours invested in studying and attempt at predicting student's scores from study hours

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fire_brigade_database

The database is of a fire brigade firm. It includes data such as members and equipment. We query it to gain beautiful insights that will help arrive data-driven decisions.

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motorbike_dealer_database_querying

The motorbike dealer tasked us with business problems along with the business database which we are to query and provide recommendations based on the problems.

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sakila_database_querying

The sakila DB is a fictional database for a rental DVD Store, used for educational purposes. We will query it to derive some basic insights

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scotch_whisky_analysis

This analysis provides insights on a scotch whisky dataset. Insights are such as correlation between ageing periods and their prices, mean and median prices of whisky categories e.g., Blended Malt Scotch Whisky. With such insights a new distiller or one seeking to expand will easily make decisions.

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SQL_online_shopping_database

We have an online shop database which is already clean. We will query it to gain insights that will enrich data-driven decision making.

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