Toolbox

Cybersecurity Governance, Risk, and Compliance

  • Quantifying and tracking risk across diverse technology assets, including cyber, OT, and supply chain.
  • Providing risk-informed recommendations and measuring control effectiveness.
  • Identifying, assessing, and mitigating risks to enhance security posture.

Decision Science and Data Analytics

  • Supporting leadership with data-driven risk insights for informed decision-making.
  • Applying statistical modeling, predictive analytics, and probabilistic analysis to cybersecurity challenges.
  • Developing interactive data visualizations to communicate complex risk data effectively.
  • Tools: Python, R, and SQL

Software Security and Development

  • Deep understanding of SDLC and SSDLC (Secure SDLC) principles.
  • Recommending and implementing mitigation strategies for security vulnerabilities.
  • Developing secure, scalable applications using different web frameworks including the MERN, and FARM stacks.
  • Conducting security testing and vulnerability assessments using industry-standard tools.

Leadership, Collaboration, and Continuous Learning

  • Experience leading cross-functional team of 60+ associates in a high-demand, customer facing role at a major retailer.
  • Balancing security requirements with business objectives to drive innovative and practical solutions.
  • Engaged in continuous learning through professional memberships and industry networking to advance cybersecurity best practices.

Certifications

ISC2 Certified in Cybersecurity
CompTIA CySA+
CompTIA PenTest+
OpenFAIR Foundation

Memberships

ISC2
Society of Information Risk Analysts
Women in Cybersecurity
Phi Theta Kappa
National Technical Honors Society

Most Recent

Advertising Dataset - Multiple Linear Regression

Analysis of an advertisement dataset with multi-channel ad spending and their effect on sales revenue using Multiple Linear Regression. Tools Used: Python (Pandas, NumPy, Matplotlib, Seaborn, Scikit-learn)

Multiple Linear Regression - Employee Satisfaction Level

Analysis of a large set of HR data on Kaggle.com by Faisal Qureshi to understand correlation and create a prediction model for response variable for 'Employee Satisfaction Level' in relation to given predictors. Statistical analysis was performed through Multiple Linear Regression with R programming in Kaggle Notebooks using R Markup.

Titanic Dataset - Machine Learning from Disaster Competition

Analysis of death in the titanic disaster in 1912, as a part of Kaggle competition to predict the likelihood of death of a passenger given background information. Tools Used: Python (Pandas, NumPy, Matplotlib, Seaborn, Scikit-learn)

Global CO2 Emission Dashboard

A visualization project on global CO2 emissions data. The analysis was performed visually on Tableau using publicly available dataset.

Sales Metrics Dashboard

A sales metrics dashboard created in Excel. This project utilizes various Excel features such as XLOOKUP, SUM, AVERAGE, MIN, MAX etc. Analysis is performed using Pivot Tables and visualized with pivot charts in an interactive dashboard.