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Analysis

Community Detection on a Pharma Clinical-Trial Investigator Graph

FreeVerified credential2 weeksIntermediate

Overview

What this challenge is about.

You receive a pre-fetched dump of around 15,000 trials from a public registry covering oncology over the last 10 years and a mapping of trials to investigator names + institutions. Construct an investigator graph (nodes = investigators, edges = co-authorship on a trial). Apply Louvain and Leiden community detection; pick one based on a modularity-vs-stability comparison. Label the top 30 communities with descriptive summaries (specialty, geography, throughput). Build a visual atlas (interactive Gephi or Streamlit) and write a methodology memo for medical-affairs leadership.

CredentialBlockchain-anchored
ShareableLinkedIn-ready
LanguageEnglish
PaceSelf-paced

The Brief

What you'll do, and what you'll demonstrate.

Map the global oncology investigator landscape with graph-based community detection to accelerate trial-site selection.

Earning criteria — what you'll demonstrate

  • Construct meaningful graphs from public registry data
  • Apply Louvain and Leiden community-detection algorithms
  • Characterize communities qualitatively and quantitatively
  • Visualize large graphs for non-technical stakeholders

Program Fit

Where this fits in your program.

Sharpens the same skills your degree expects you to demonstrate.

Skills

Skills you'll demonstrate.

Each one shows up on your verified credential.

Careers

Roles this prepares you for.

Real titles. Real skill bridges. Pick the one closest to your trajectory.

Data Scientist

Mapping a real-world domain via graph community-detection and shipping a stakeholder-ready atlas is exactly the day-one work of a data scientist at any pharma-AI firm.

This challenge sharpens

  • community-detection
  • graph-analysis
  • network-visualization

Data Engineer

Building reproducible graph-construction pipelines from messy public data is core data-engineering work in knowledge-intensive companies.

This challenge sharpens

  • graph-analysis
  • python
  • community-detection

Applied AI Scientist

Combining algorithmic choices (Louvain vs. Leiden) with operational delivery (atlas + memo) is the applied-AI-scientist craft for analytics-heavy teams.

This challenge sharpens

  • louvain
  • leiden
  • community-detection

One more thing

You can put a credential on your CV by Friday.

Community Detection on a Pharma Clinical-Trial Investigator Graph | Ewance Challenge