Open to data analyst & SQL roles

I turn raw data into clear, actionable insights.

I’m Simon Niyomugabo, a data analyst and SQL developer who loves building clean datasets, insightful dashboards, and analytics workflows that actually move business metrics.

SQL · PostgreSQL · MySQL Power BI · Excel Data Cleaning & ETL Dashboarding & Reporting
Focused on SQL‑first analytics Strong interest in business impact

About

Who I am and how I think about data.

A bit about me

I’m Simon Niyomugabo — a Data Analyst and SQL Developer who turns complex data into clear, actionable insights. I specialize in SQL, Power BI, and Python, and I build analytics solutions that help teams make smarter, faster decisions. I take pride in solving real business problems with clean data, strong logic, and meaningful visualizations.

My favorite work sits at the intersection of SQL, analytics, and business impact—whether that’s understanding why customers churn, where revenue is leaking, or which products are quietly driving growth.

How I like to work

I approach problems by first clarifying the question, then exploring the data, and only then building dashboards or reports. I value reproducible workflows, clean SQL, and documentation that others can follow.

Ask good questions first Make data trustworthy Explain insights clearly Automate repeatable work

Skills

Tools and capabilities I use to deliver insights.

Technical skills

SQL (PostgreSQL, MySQL, SQL Server) Complex joins & subqueries CTEs & window functions Data cleaning & transformation Database design & normalization Indexing & query optimization Excel (PivotTables, Power Query) Power BI / dashboarding Basic Python for analysis (Pandas)

Analytics & soft skills

Exploratory data analysis Churn & cohort analysis Business metrics & KPIs Storytelling with data Stakeholder communication Attention to detail Problem‑solving mindset Documentation & reproducibility

Projects

Realistic, SQL‑driven analytics work with clear business outcomes.

End‑to‑end analytics pipeline

Retail Sales Performance Dashboard

Built a complete analytics workflow to evaluate sales performance across regions, product categories, and time periods. Cleaned and transformed raw CSV data using SQL, then visualized insights in Power BI.

Focus: understanding where revenue is growing, where it’s leaking, and how seasonality affects demand.

SQL (CTEs & window functions) Data cleaning & transformation Power BI Sales analytics

Impact: Identified seasonal demand patterns and uncovered a 12% revenue opportunity by optimizing inventory for high‑growth regions.

SQL Retail Sales Analysis

Retail Sales SQL Analysis

A complete SQL analytics case study exploring retail sales, customer behavior, and product performance using a multi‑table SQLite database. Includes 15 business‑focused queries, clear insights, and a fully reproducible workflow.

  • 15 SQL queries covering revenue, customers, and product trends
  • Multi-table relational database (customers, orders, products, items)
  • Business insights: LTV, repeat purchases, monthly revenue, category performance
View on GitHub
Customer analytics

Customer Churn Prediction & Behavior Analysis

Analyzed customer subscription data to identify churn drivers. Used SQL to clean and segment customers, then performed churn analysis and built a simple predictive view.

Focus: understanding which behaviors and patterns signal that a customer is likely to leave.

SQL joins & segmentation Exploratory data analysis Churn cohorts Visualization

Impact: Revealed that customers with low engagement in the first 30 days were 3.4× more likely to churn, helping shape a targeted retention strategy.

Data quality & automation

Automated SQL Data Cleaning System

Developed a reusable SQL script library to clean messy datasets: remove duplicates, standardize formats, validate data types, and flag anomalies before analysis.

Focus: making data reliable and analysis‑ready with minimal manual effort.

Stored procedures Data validation rules Normalization Automation

Impact: Reduced manual data‑cleaning time by 80%, enabling faster reporting cycles for analytics teams.

Database design

E‑commerce Database Design & Optimization

Designed a relational database schema for an online store, including tables for customers, orders, products, and transactions. Implemented indexing and normalization to improve performance.

Focus: creating a scalable, analytics‑friendly data model that supports both operations and reporting.

ERD modeling SQL schema design Indexing & optimization Data integrity constraints

Impact: Improved query performance by 40% and ensured reliable data for analytics and reporting.

Contact

Let’s talk about data, dashboards, and SQL.

If you’re looking for someone who enjoys working directly with SQL, cleaning data, and building clear analytics outputs, I’d be happy to connect.

I’m especially interested in roles focused on data analytics, BI, and SQL‑heavy workflows where I can help teams make better decisions with trustworthy data.

Prefer email or LinkedIn—happy to share more details, walk through these projects, or discuss how I think about data.

Links are placeholders—update them with your real email, LinkedIn, and GitHub.