Gate Square “Creator Certification Incentive Program” — Recruiting Outstanding Creators!
Join now, share quality content, and compete for over $10,000 in monthly rewards.
How to Apply:
1️⃣ Open the App → Tap [Square] at the bottom → Click your [avatar] in the top right.
2️⃣ Tap [Get Certified], submit your application, and wait for approval.
Apply Now: https://www.gate.com/questionnaire/7159
Token rewards, exclusive Gate merch, and traffic exposure await you!
Details: https://www.gate.com/announcements/article/47889
Everyone understands the pain points of large model training iterations—data often starts at 10TB or more, and each update requires re-uploading everything. This process consumes a lot of time and storage costs.
Walrus has recently optimized this issue. The core improvement is the slice-level incremental update feature—only upload the changed data blocks, while keeping the rest unchanged. It sounds simple, but the results are indeed significant. In a real case, a 10TB training dataset iteration using this solution reduced the time from several hours to just 15 minutes. The cost savings are also substantial, with storage expenses reduced by 70%.
For small and medium-sized AI companies, this solution is particularly practical. It saves time, significantly reduces operational costs, improves data iteration efficiency, and lightens storage burdens. It seems like a great choice.