





Skullgirls is a fast-paced 2-D fighting game that puts players in control of fierce warriors in an extraordinary Dark Deco world. Featuring all-new game systems which test the skills of veteran fighting game fans while also making the genre enjoyable and accessible to newcomers.
Skullgirls is a modern take on classic arcade fighters with a hand-drawn high-definition twist. It’s a one-of-a-kind, action-packed competition complete with awesome combos and an intriguing backstory.
Skullgirls is a modern take on classic arcade fighters with a hand-drawn high-definition twist. It’s a one-of-a-kind, action-packed competition complete with awesome combos and an intriguing backstory.
key Features:
- Classic six-button play gives each character a huge variety of attacks and special moves
- Variable Tag Battle system allows players to pit different size teams of one, two or three characters against one another
- Custom Assists let you outfit your team with a huge variety of attacks for nearly endless strategic possibilities
- A Robust Anti-Infinite Combo system keeps competitive play free of abusive tactics
GGPO test branch update [16512]
Sick of these yet? Almost done, I promise. :^)
In response to useful replays sent to me today, I made two small adjustments designed to help recovering from your game being either starved for opponent inputs, or behind by more than 14 frames, work better. Hopefully they don't make the rest of it work worse!
As usual, any problems, send me replays with -ggposhowinfo !
Title screen build ID 16512
[ 2020-05-06 08:07:47 CET ] [Original Post]
Minimum Setup
- OS: Ubuntu 15.04 / Fedora 22 / SteamOS
- Processor: Dual-core CPUMemory: 2 GB RAM
- Memory: 2 GB RAM
- Graphics: Intel HD3000*Network: Broadband Internet connection
- Storage: 14 GB available spaceAdditional Notes: *MESA drivers 1.6.0 and 1.6.1 are not supported. please update to 1.6.2.
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