L
localai.computer
ModelsGPUsSystemsBuildsOpenClawMethodology

Resources

  • Methodology
  • Submit Benchmark
  • About

Browse

  • AI Models
  • GPUs
  • PC Builds
  • AI News

Guides

  • OpenClaw Guide
  • How-To Guides

Legal

  • Privacy
  • Terms
  • Contact

© 2026 localai.computer. Hardware recommendations for running AI models locally.

ℹ️We earn from qualifying purchases through affiliate links at no extra cost to you. This supports our free content and research.

  1. Home
  2. Systems
  3. ASUS ROG G22CH (RTX 4070 Ti)

ASUS ROG G22CH (RTX 4070 Ti)

ASUSSFFRTX 4070 Ti · 12GB VRAM

Complete specifications and purchasing guidance for this pre-configured system.

Quick answer

ASUS ROG G22CH (RTX 4070 Ti) is best for teams that want a pre-configured path to local AI without building from parts.

Price

$2,799

CPU

Intel Core i7-13700F

GPU

RTX 4070 Ti

Memory

32GB


What's Inside
Hardware included with this configuration.
CPU
Intel Core i7-13700F
GPU
RTX 4070 Ti
Memory
32GB
Storage
1TB (1,024GB SSD)
Power supply
750W PSU
Discrete GPU included
Yes
Specifications
Technical details for deployment planning.
FieldDetails
ManufacturerASUS
CategoryPre-built system
Form factorSFF
Total VRAM / unified memory12GB
GPU cores (aggregate)7,680
Power / TDP750W
Noise levelQuiet
Dimensions180 x 389 x 410 mm
Warranty1 year
Release dateMar 20, 2023
Where to Buy
Pre-configured systems available from authorized retailers.
AmazonRecommended
Newegg

Note: Affiliate links help support LocalAI Computer. Prices may vary.

Upgrade Options
This chassis supports component upgrades for extended service life.

GPU, memory, and storage can be upgraded. Validate total wattage against the 750W PSU before installing higher-draw components.

Consider next-generation GPUs if you need additional throughput or VRAM for larger models.

System decision workflow

Check model requirementsValidate compatibilityCompare GPU optionsReview build plansOpen buying guides

Systems FAQ

Is ASUS ROG G22CH (RTX 4070 Ti) good for local AI workloads?

Use this page as a baseline for memory, GPU, and power. Then validate exact model and quantization fit in compatibility checks before buying.

How should I compare this system against other options?

Compare price, available memory, and power draw against other systems and GPU pages, then map that to your target model requirements.

What is the next step after reviewing system specs?

Open model requirements and compatibility routes to confirm whether your target models run at acceptable speed and memory headroom.