Daniel C. Uzokwe Portfolio


Software Engineer and DevSecOps Specialist with 4+ years of experience transforming legacy logistics platforms through cloud-native automation, rigorous performance testing, and intelligent agentic workflows.

Daniel Uzokwe | DevSecOps & AI Automation Impact

Architecting AI-Assisted Developer Productivity

Software Engineer and DevSecOps Specialist with 4+ years of experience transforming legacy logistics platforms through cloud-native automation, rigorous performance testing, and intelligent agentic workflows.

🚀 Enterprise Impact & Scale

By strategically applying automation and AI integration, manual operational bottlenecks have been eliminated. The following metrics represent quantifiable improvements achieved within enterprise logistics, CPM applications, and infrastructure operations.

📈
47%

Coverage Increase

Boosted repository test coverage from 23% to 70% using automated generation workflows.

⏱️
~98%

Time Reduction

Reduced daily recurring manual on-call operations from ~5 minutes down to mere seconds.

👥
40+

Business Users

Enabled cross-functional teams with a Glean AI agent to resolve issues without IT tickets.

🔬 Case Study: Daily Test Improver

The Daily Test Improver is a B2B micro-SaaS architecture designed to solve a critical enterprise problem: stagnant code coverage. By leveraging an agentic testing workflow, this tool analyzed 40 distinct repositories, identified edge cases, and automatically delivered AI-generated JUnit/Jasmine test recommendations for human review.

Code Coverage Transformation

This bar chart illustrates the dramatic shift in code reliability across the engineering ecosystem before and after the implementation of the AI-assisted automated workflow. The agentic approach scaled testing efforts far beyond manual capacity.

Agentic Workflow Architecture

1

Repository Scan

GitHub Actions trigger containerized Node.js workers to fetch source code and analyze AST.

2

Gap Analysis

Identify missing edge cases, uncovered branches, and error states across Java/Angular codebases.

3

AI Generation

LLM integration generates valid, contextual test snippets tailored to the specific application logic.

4

Automated PR Creation

Formats recommendations into recurring GitHub issues and Pull Requests for engineering review.

🧠 Multidisciplinary Engineering Profile

Modern cloud infrastructure requires a balanced mastery of disparate domains. This visualization maps proficiency across five core disciplines required to successfully deploy resilient, observable, and AI-enhanced applications.

☁️ Backend & Cloud

Java, Python, Spring Boot, Microservices, Dapr, Azure, Kubernetes, Docker.

🤖 AI & Dev Productivity

Glean Agents, Agentic Testing workflows, AI-Assisted Test Generation.

🛡️ Testing & DevOps

JMeter, Selenium, GitHub Actions, Jenkins, DevSecOps, CodeQL, Vault.

📊 Data & Observability

Databricks, Grafana, Datadog, Dynatrace, SQL ecosystem.

🛠️ Technical Tooling Ecosystem

A comprehensive view of the technologies utilized across daily operations, platform modernizations, and AI tool development. The clustering indicates how these tools interact to form a cohesive DevSecOps pipeline, rendered via hardware-accelerated WebGL.

X-Axis: System Layer | Y-Axis: Operational Frequency | Bubble Size: Relative Experience Level

Data Visualization Portfolio | Daniel Uzokwe

Infographic built utilizing Tailwind CSS, Chart.js, and Plotly.js (WebGL). Rendered exclusively via HTML, CSS, and Canvas elements.