MSc Data Analysis for Business Intelligence · Data Analyst · Manchester, UK 🇬🇧
I'm a data analyst with an MSc in Data Analysis for Business Intelligence (University of Leicester), passionate about turning complex datasets into clear, actionable insights.
- 🔍 Specialising in time series analysis, clustering, data migration, and business intelligence dashboards
- 🗄️ Strong SQL skills (intermediate–advanced) — joins, window functions, CTEs, query optimisation, stored procedures
- ⚡ Currently learning PySpark on Databricks (Azure) — building big data processing skills
- 🤖 Recently exploring AI agents and their real-world applications in social impact
- 📊 Comfortable working across the full analytics pipeline — from raw data to polished visualisation
- 🌍 Based in Manchester, UK — open to hybrid and remote roles
- 💼 Actively seeking Data Analyst roles
Languages & Libraries
Visualisation & BI
Tools & Platforms
MSc Dissertation · University of Leicester
Analysed 2 years of FTSE 100 price data using time series clustering and PCA to uncover hidden stock behavioural patterns. Applied KMeans, Hierarchical, and DBSCAN clustering with full validation metrics.
Python yfinance Scikit-learn PCA KMeans DBSCAN Hierarchical Clustering Time Series
Power BI · IEA Open Data
Interactive dashboard visualising global electric vehicle adoption trends — sales, stock, and market penetration across countries and years using IEA open data.
Power BI Data Visualisation IEA Data Business Intelligence
Tableau · Python · Sales Analytics
Analysed 6 months of coffee shop transaction data to uncover revenue drivers, peak trading hours, and category performance. Built an interactive Tableau dashboard enabling management to plan promotions and resource allocation.
Key findings: £504K total sales · 10 AM peak hour · Espresso drinks top category · Morning hours drive ~35% of daily revenue
Python Pandas Tableau Data Cleaning Sales Analytics Dashboard
SQL · MSSQLSERVER · SSMS · Business Intelligence
End-to-end SQL analysis of Brazil's Olist e-commerce dataset (2016–2018) covering 97,919 orders. Investigated sales trends, delivery performance, and customer satisfaction to surface actionable business insights.
Key findings: 76% on-time delivery · 4/5 avg review score · Electronics & beauty drive ~35% of revenue · 15% repeat customer rate
SQL MSSQLSERVER SSMS Data Analysis E-commerce Business Intelligence
AI Agents · Social Impact
Multi-agent AI pipeline that assesses risk and generates personalised action plans for vulnerable individuals — integrating postcode lookup, service recommendations, and HTML/PDF plan generation.
Python Google ADK AI Agents pdfkit Social Impact
Python · Exploratory Data Analysis · Healthcare
In-depth exploratory analysis of the UCI Heart Disease dataset (920 records, 14 variables) to identify clinical and demographic risk factors across four disease severity levels — including univariate, bivariate, and multivariate analysis with a full visualisation suite.
Key findings: Severity rises sharply after age 60 · Max heart rate strongly inversely correlated with severity · ST depression is the most predictive feature
Python Pandas Matplotlib Seaborn EDA Healthcare Analytics
Python · Data Wrangling · Pipeline Design
Professional-grade data cleaning pipeline for a real-world Brazilian healthcare appointments dataset. Standardised schema, corrected datatypes, handled datetime formatting with timezone awareness, and produced an analysis-ready dataset for downstream EDA, ML, and BI workflows.
Python Pandas Data Cleaning Data Engineering Healthcare
I'm actively looking for Data Analyst roles — if you're hiring or just want to chat data, feel free to reach out!