Mazely - Amazing Maze Game
Mazely is a simple but amazing maze game built with Flutter. It has 3 difficulty levels, Beginner, Intermediate and Advanced, having 40 puzzels each! So, you have a total of 120 puzzles to solve.
Challenge
The challenge was to build and interactive mobile game with native peformance and without any game engine. I built “Mazely” on top of the Flutter framework. No game engine, no more burden. It is simple, fast & performant.
Overview
Mazely is a simple but amazing maze game built with Flutter. It has 3 difficulty levels: Beginner, Intermediate and Advanced.
Each of the difficulty levels contains 40 stages each. So, the total number of stages is 120!! Stages are arranged according to adaptive difficulty. Difficulty increases as one continues to play along.
Players are rewarded with gems for completing each stage. Gems are then used to unlock new difficulty levels. You need to earn certain number of gems to move on to next difficulty level.
For helping people solve hard levels, hints are provided. Players can use hints to show solution for a particular stage.
Features
- 3 Difficulty Levels
- 120 Levels with Adaptive Difficulty
- Solution Hint
- Reward upon Solving Each Puzzle
- Cool Background Music
- Admob Integration
- Rating Options
- And much more…
Important Information About the App
- Time Line: 20th May, 2020 - 27th May, 2020
- Framework: Flutter
- Level Generator: Python
- Google Play: Mazely App
This game is suitable for people of all ages. Enjoy your free time with this beautiful and simple game. Reach out to me for more information about the app or it’s developement process. I’ll be happy to bring your idea to reality.
Related Posts
Dorao - Your Running Companion
Staying fit has now become more rewarding with Dorao. Track the distance you walk or run and complete challenges from your favorite stores or brands to get exciting offers in the form of …
Read moreRobust Multimodal Learning with Missing Modalities via Parameter-Efficient Adaptation
Missing modalities at test time can cause significant degradation in the performance of multimodal systems. In this paper, we presented a simple and parameter-efficient adaptation method for …
Read moreMMP: Towards Robust Multi-Modal Learning with Masked Modality Projection
In real-world applications, input modalities might be missing due to factors like sensor malfunctions or data constraints. Our recent paper addresses this challenge with a method called …
Read more