EXCEEDS logo
Exceeds
Erdős Gergő

PROFILE

Erdős Gergő

During a two-month period, Gergo Erdos focused on foundational asset management for the kizsi2024/12I-H repository, preparing the groundwork for future machine learning features. He introduced binary Scratch project files and curated ML data assets, including object recognition and airplane-vs-house datasets, to accelerate onboarding and experimentation. Gergo’s approach emphasized repository hygiene and traceable version control, ensuring assets were well-organized and reusable across ML pipelines. While no application logic or user-facing features were released, his disciplined management of binary files and data governance using tools like Scratch and structured asset workflows laid a solid base for rapid prototyping and future development.

Overall Statistics

Feature vs Bugs

100%Features

Repository Contributions

2Total
Bugs
0
Commits
2
Features
2
Lines of code
0
Activity Months2

Work History

December 2024

1 Commits • 1 Features

Dec 1, 2024

December 2024 (kizsi2024/12I-H): Focused on data asset preparation to enable future ML-driven features. Delivered new ML data assets (binary files) in Hungarian contexts (gépi tanulás), including object recognition and airplane-vs-house examples. No application logic changes were required; assets are ready for experimentation and feature development in upcoming sprints. This groundwork supports faster ML iteration, better data governance, and longer-term business value through improved capability to test ML features with real data.

November 2024

1 Commits • 1 Features

Nov 1, 2024

November 2024: Focused on establishing onboarding/template groundwork in kizsi2024/12I-H by introducing initial Scratch assets. Key delivery includes three binary Scratch project/data files (chatgpt.sb3, clicker.sb3, ttnet 2.sb3) added without code changes, laying a foundation for rapid prototyping and templates. No code or user-facing features were released this month. Impact: accelerates onboarding and testing cycles, enabling contributors and QA to experiment with ready-to-use assets; keeps repository lean and well-organized. Technologies/skills demonstrated include asset management of binary Scratch files, repository hygiene, and commit traceability (example commit a9e9cd86641469646dbfa1a03721faef9c41430e).

Activity

Loading activity data...

Quality Metrics

Correctness60.0%
Maintainability60.0%
Architecture60.0%
Performance60.0%
AI Usage20.0%

Skills & Technologies

Programming Languages

No languages yet

Technical Skills

Machine Learning

Repositories Contributed To

1 repo

Overview of all repositories you've contributed to across your timeline

kizsi2024/12I-H

Nov 2024 Dec 2024
2 Months active

Languages Used

No languages

Technical Skills

Machine Learning

Generated by Exceeds AIThis report is designed for sharing and indexing