Hi, I’m Ali Ahmad
a
Data Analyst
Technical Project Manager
Software Manager
A seasoned Digital Solutions Consultant and Technical Project Manager with 20+ years of experience delivering secure, data-driven, and cloud-based solutions across telecom, finance, energy, and government sectors. Holding a Master’s in Computer Science (BIIT) and a BSc (Hons) in Economics & Management (IIUI), along with certifications in Software Product Management and Technical Leadership, he combines technical expertise with strategic vision. A Certified Information Systems Auditor (CISA), he has successfully led cross-functional teams and managed high-impact projects for organizations like Halliburton, Ufone, UBL, and PTA achieving significant improvements in efficiency, security, and user experience. Proficient in Power BI, SQL, Python, Tableau, and JIRA, he excels in aligning digital initiatives with business goals, conducting security audits, and driving digital transformation with measurable results.
What I Do
Data Analyst
I possess strong skills in data analysis, including the ability to collect, analyze, and interpret large datasets to extract actionable insights. My expertise extends to statistical techniques and programming languages such as SQL and Python, enabling me to conduct thorough analyses and derive meaningful conclusions. Additionally, I am proficient in utilizing data visualization tools to present findings in a clear and concise manner, facilitating effective communication of insights to stakeholders.
Business Intelligence
With experience as a Business Intelligence Specialist, I have honed my ability to transform raw data into valuable insights that drive strategic decision-making within organizations. My proficiency lies in data modeling, reporting, and dashboard creation, allowing me to provide comprehensive business insights to stakeholders at all levels. I am adept at leveraging various tools and technologies to ensure the delivery of actionable insights that contribute to organizational success.
Power BI Specialist
As a Power BI Specialist, I excel in utilizing Microsoft Power BI for data visualization and analysis purposes. My skills include designing interactive dashboards, creating robust data models, and performing advanced analytics to empower users with intuitive reports and visualizations. By leveraging Power BI, I facilitate informed decision-making processes across the organization, enabling stakeholders to gain valuable insights into business performance and trends.
My Portfolio
The Situation:
Adventure Works is a fictional global manufacturing company that produces cycling equipment and accessories, with activities stretching across three continents (North America, Europe, and Oceania). Our goal is to transform their raw data into meaningful insights and recommendations for management. More specifically, we need to:
- Track KPIs (sales, revenue, profit, returns)
- Compare regional performance
- Analyse product-level trends
- Identify high-value customers
The Data:
We’ve been given a collection of raw data (CSV files), which contain information about transactions, returns, products, customers, and sales territories in a total of eight tables, spanning from the years 2020 to 2022.
The Task: We are tasked with using solely Microsoft Power BI to:
- Connect and transform/shape the data in Power BI’s back-end using Power Query
- Build a relational data model, linking the 8 fact and dimension tables
- Create calculated columns and measures with DAX
- Design a multi-page interactive dashboard to visualize the data in Power BI’s front-end
The Process:
1. Connecting and Shaping the Data
Firstly, we imported the data into the Power Query editor to transform and clean it. The next process involved:
Removing Duplicates: Duplicate entries were removed from the dataset to ensure accurate analysis.
Handling Null or Missing Values: For some columns, missing values were replaced with defaults or averages. Null values in “key” columns were removed using filters.
Data Type Conversion: Columns were converted to appropriate data types to ensure consistency. Dates were converted to Date type, numerical columns to Decimal or Whole Numbers, and text columns to Text.
Column Splitting and Merging: Several columns were split to separate concatenated information, or merged to create a unified name (such as Customer Full Name).
Standardising Date Formats: All date columns were formatted consistently to facilitate time-based analysis. This step was important for ensuring accurate time-series analysis in Power BI.
Removing Unnecessary Columns: Irrelevant columns were removed to streamline the dataset. This helped focus the analysis on relevant information, reducing memory usage and improving performance.
2. Building a Relational Data Model
Secondly, we modeled the data to create a snowflake schema. This process involved creating relationships between the dimension and fact tables, ensuring cardinalities were one-to-many relationships.
Enabling active or inactive relationships, creating hierarchies for fields such as Geography (Continent-Country-Region) and Date (Start of Year-Start of Month-Start of Week-Date), and finally hiding the foreign keys from report view to ease the data analysis and visualization steps and reduce errors.

3. Creating Calculated Columns and Measures
Next, we used Power BI’s front-end formula language, DAX, to analyze our relational data model and create several calculated columns (for filtering) and measures (for aggregation), that we could later reference and use when analyzing and visualizing the data.
We used calculated columns to determine whether a customer is a parent (Yes/No), a customer’s income level (Very High/High/Average/Low), a customer’s priority status (Priority/ Standard), and the customer’s educational level (High School/ Undergrad/ Graduate).
The list of calculated measures is available below and includes key information on revenue, profit, orders, returns, and more.

4. Visualising the Data
The final step of the project was creating a multi-page interactive dashboard, including a range of visuals and KPIs that could serve management and lead to informed decision-making. We used several visuals and tools to demonstrate and visualize the data across the 4 report pages, including KPI cards, line and bar charts, matrices, gauge charts, maps, donut charts, and slicers. We made sure the report was fully interactive and simple to navigate, with icons used to enable filters, cancel filters, and guide users to each report page with ease. Features such as drill-through, bookmarks, parameters, and tooltips were also used throughout the dashboard, further enhancing its usefulness and impact on management.
Executive Dashboard: The first report page provides a high-level view of Adventure Works’ overall performance. We used card visuals to present Key Performance Indicators such as overall revenue, profit margins, total orders, and return rates. We also included additional cards to compare current and previous month performances, providing insights into recent trends, a line chart to visualize the trending revenue from 2020-2022 and highlight long-term performance, and presented the number of orders by product category to aid in understanding product sales distribution, and used a further table to display the top 10 products based on key indicators (total orders, revenue, and return rate).

Map: The second report page consisted of a map visual, an interactive representation of sales volume across different geographical locations. This offered insight into Adventure Works’ global sales distribution and worldwide reach.

Product Detail: The third report page focuses on detailed product-level analysis. It displayed detailed product information for the selected top 10 products from the Executive Dashboard, using the drill-through feature. It also included gauge charts presenting actual performance vs target performance of monthly orders, revenue, and profit, and included an interactive line chart to visualize potential profit adjustments when manipulating the price of the product, aiding in strategic decision-making regarding pricing strategies. This report page also included a line chart including key weekly product information on total orders, revenue, profit, returns, and return rate.

Customer Detail: The fourth and final report page provided a deeper insight into customer behavior and value. It used donut charts to break down customer groups into income level and occupation categories vs. total orders, helping in customer segmentation tactics, and used a matrix aided by KPI cards to identify high-value customers based on order and revenue contributions, aiding in identifying high-value customers and sales opportunities.

My Resume
Experience Background
Technical Project Manager
Jan 2019 – Feb 2025
• Led end-to-end delivery of digital solutions, leveraging cloud technologies and data analysis to optimize business performance and enhance user experiences.
• Developed comprehensive digital marketing strategies, utilizing advanced tools such as Facebook Ads Manager and SEMrush to maximize brand visibility and customer engagement.
• Managed cross-functional teams to deliver technical projects on time and within budget, ensuring alignment with business objectives and stakeholder expectations.
• Conducted in-depth data analysis using Power BI, Excel, and Tableau to generate actionable insights, optimize marketing strategies, and improve return on investment (ROI).
• Provided consultancy in Information Security Audits as a Certified Information Security Auditor (CISA), utilizing vulnerability assessment tools to ensure compliance with industry standards and enhance organizational security postures.
• Designed and implemented scalable cloud solutions, enhancing system efficiency and operational agility for clients across diverse industries.
• Delivered freelance data analysis projects, leveraging advanced data visualization techniques in Power BI, Excel, and Tableau to support data-driven decision-making for clients.
• Utilized Python and Jupyter Notebooks for advanced data analysis and automation tasks, enhancing productivity and analytical capabilities.
• Employed JIRA for agile project management, ensuring efficient workflow, task tracking, and stakeholder communication.
• Portfolio of completed projects and case studies is attached in the Project section.
Technical Manager
LMKR Pvt. Ltd. (Halliburton Project, Brazil) (2021 – Sept 2024 )
• Spearheaded the development and secure deployment of cloud-based applications for the energy sector, ensuring alignment with information security standards.
• Managed a cross-functional team to deliver scalable and secure solutions, reducing data processing risks by 30% and improving operational efficiency.
Data Science Intern
E-Soft Pvt Ltd (Jun 2018 - Aug 2018)
- Performed feature engineering by transforming raw data into features that can be used by ML
algorithms.
- Collaborated with product managers and engineers on data collection methods for improving
accuracy of predictions.
- Analyzed large datasets to uncover insights, trends, and patterns using Python.
Education Background
Masters in Computer Science
BIIT (Barani Institute of Information Technology)
BSc (Hons) in Economics & Management
IIUI (International Islamic University Islamabad)
Soft Skill
Leadership & Strategic Planning
Training and Development
Teamwork and Coordination
Recruiting & Onboarding
Communication & Presentation
Technical Skill
STATISTICS
MICROSOFT EXCEL
POWER BI
STRUCTURED QUERY LANGUAGE SQL
PYTHON
Certifications
Professional Data Analyst Certification Program
Analytix Camp (Jan 2024 – July 2024)
1. Proficient in Excel: Demonstrated ability to manipulate data, perform complex calculations, create pivot tables, and generate insightful visual.
2. Power BI Specialization: Capable of designing interactive dashboards and reports to visualize data trends and patterns, enabling stakeholders to make informed business decisions..
3. Proficient in SQL: Profound understanding of SQL querying language, adept at extracting and manipulating data from relational databases to conduct thorough data analysis and generate meaningful insights.
4. Strong foundation in Statistics: Possess a solid grasp of statistical concepts such as hypothesis testing, regression analysis, and probability theory, enabling accurate interpretation of data and formulation of data-driven recommendations.
5. Competent in Python: Proficient in utilizing Python programming language for data manipulation, analysis, and visualization tasks, leveraging libraries such as Pandas, NumPy, and Matplotlib to derive actionable insights from diverse datasets.
6. Comprehensive understanding of Data Analysis Methodologies: Equipped with a holistic understanding of various data analysis techniques and methodologies, including exploratory data analysis (EDA), and regression analysis, to extract actionable insights and drive business growth.
7. Effective Communication and Presentation Skills: Able to effectively communicate complex analytical findings to diverse stakeholders through clear and concise reports, presentations, and visualizations, facilitating informed decision-making processes across organizational levels.
Verification Link: Fahad Farooq Certification - Analytix Camp
Learning Git and Github
Linkedin Learning (Feb 2019)
Testimonial
Muhammad Abbas
Chief Executive OfficerPower BI Project Development
via Fiverr - Jan 30, 2025 - May 30, 2025I am pleased to commend Ali Ahmad for their outstanding dedication and achievements. They consistently exhibit a strong work ethic and enthusiasm for learning, contributing positively to our academic environment. Their willingness to take on challenges and their commitment to excellence are truly commendable. Ali Ahmad is not only a high achiever academically but also a supportive and collaborative member of our community. Their accomplishments serve as an inspiration to their peers and reflect their potential for continued success in the future.
Contact With Me