I Lost 3 Days of Code: Why Git Management Matters in Genspark Dev
Three days of code disappeared due to poor Git habits. This article documents the incident and a Git workflow to prevent code loss in Genspark projects.
by HDDH
A software engineer with 20 years of experience documenting no-code app development know-how with Genspark AI.
Three days of code disappeared due to poor Git habits. This article documents the incident and a Git workflow to prevent code loss in Genspark projects.
A well-maintained quick reference speeds up development. This article covers optimal structure and update timing for Genspark quick references.
Legacy code gets messy fast. This article covers step-by-step refactoring strategies using Genspark, from analysis through testing to incremental improvement.
Forgotten timeout handling can freeze your app for 30 seconds. This article covers why AI misses it and how to add proper timeout logic to Genspark-generated code.
Insufficient error handling causes production failures. This article covers practical patterns for adding robust error handling to Genspark-generated code.
UML diagrams catch bugs before code review. This article shows how to use Genspark for UML verification and consistency checking against specifications.
Losing data mid-AI development is devastating. This article covers the top 3 risks and simple backup strategies to prevent data loss.
Poorly designed APIs cause long-term maintenance pain. This article shows how to use Genspark to generate OpenAPI specs and clean REST implementations.
A context reset wiped 4 hours of work. This article documents the incident, what was lost, and a recovery manual to prevent it from happening to you.
Cursor Bugbot automates AI debugging in your IDE. This article covers its features, integration with Genspark, and 2025 trends in AI-assisted debugging.
AI writes code fast but not always correctly. This article covers essential knowledge for avoiding failure when using Genspark for code generation.
Database errors are costly. This article shows how to use Genspark for normalization, schema generation, and query optimization in real projects.