Ditch Kaggle for a Second… Your Data Projects Need Better Context, Not Just Better Models

📰 Medium · AI

Move beyond Kaggle projects to add context to your data science work for better outcomes

intermediate Published 23 May 2026
Action Steps
  1. Assess your current data projects for contextual understanding
  2. Identify key stakeholders and their needs to inform project context
  3. Develop a framework to incorporate domain knowledge into your data work
  4. Apply contextual insights to improve model interpretability and explainability
  5. Collaborate with domain experts to validate and refine your approach
Who Needs to Know This

Data scientists and analysts can benefit from understanding the importance of context in data projects, while product managers and stakeholders can use this insight to inform project requirements and expectations

Key Insight

💡 Context is key to unlocking the full potential of data science projects

Share This
💡 Don't just focus on better models, add context to your data projects for better outcomes
Read full article → ← Back to Reads