Armazenamento de Objetos

Vultr Object Storage – Armazenamento S3 para IA

Armazenamento de objetos escalável e compatível com S3, integrado às instâncias GPU da Vultr. Armazene datasets de treinamento, checkpoints e artefatos de produção de forma acessível.

Explore GPU Cloud →

Object Storage Features

🔌

S3-Compatible API

Drop-in replacement for AWS S3. Use boto3, rclone, s3cmd, MinIO client, or the AWS CLI with a single endpoint change — no code rewrite needed.

💰

Predictable Per-GB Pricing

Pay only for what you store. No per-request charges for standard GET/PUT operations. Ideal for large-scale ML dataset storage with high I/O frequency.

🌐

Global CDN Edge

Vultr's anycast CDN delivers static assets from 32+ global PoPs. Serve model inference responses, static ML artifacts, and API results at the edge.

🔒

Access Control & Encryption

Fine-grained S3 ACLs, bucket policies, and server-side AES-256 encryption. CORS configuration for web-facing API integrations.

GPU Instance Integration

Mount buckets via s3fs-fuse or stream data via boto3 directly from Vultr GPU instances. Co-located storage and compute minimize egress latency.

♾️

Unlimited Scalability

No object count limits. Store petabytes of training data, model weights, and checkpoints without pre-provisioning storage capacity.

Object Storage Pricing vs AWS S3 & GCS

FeatureVultrAWS S3Google Cloud
Storage (per GB/mo)~$0.020~$0.023 (S3 Standard)~$0.020 (Standard)
GET requests (10K)Free$0.004$0.004
PUT requests (1K)Free$0.005$0.005
Egress (per GB)~$0.01 (CDN)$0.09 (Internet)$0.08 (Internet)
S3 API CompatibleYesNativeVia XML API
GPU Co-locationYes (same DC)PartialPartial

AI & ML Storage Use Cases

🧠

ML Training Datasets

Store ImageNet, Common Crawl, or custom datasets. Stream multi-TB datasets directly to GPU training nodes using tf.data or PyTorch DataLoader with S3 connectors.

⚖️

Model Weight Storage

Centralize GGUF, safetensors, ONNX, and checkpoint files. Version model weights with bucket versioning and restore previous checkpoints instantly.

🎬

Generative AI Assets

Store raw video/audio for fine-tuning multimodal models. Serve generated images and videos via Vultr CDN to end users without bandwidth spikes.

💾

Database Backups

Automated PostgreSQL, MongoDB, and Redis backups to object storage. Lifecycle rules automatically archive old backups to cold storage tiers.

Quick Integration Examples

boto3 (Python)python
import boto3

s3 = boto3.client(
    "s3",
    endpoint_url="https://ewr1.vultrobjects.com",
    aws_access_key_id="YOUR_ACCESS_KEY",
    aws_secret_access_key="YOUR_SECRET_KEY",
)

# Upload dataset
s3.upload_file("dataset.tar.gz", "my-ml-bucket", "datasets/dataset.tar.gz")

# Stream to GPU instance
obj = s3.get_object(Bucket="my-ml-bucket", Key="models/llama3-70b.gguf")
data = obj["Body"].read()
rclone syncbash
# Configure rclone
rclone config create vultr s3 \
  provider=Other \
  endpoint=ewr1.vultrobjects.com \
  access_key_id=YOUR_KEY \
  secret_access_key=YOUR_SECRET

# Sync datasets to GPU instance
rclone sync vultr:my-ml-bucket/datasets ./datasets/ \
  --transfers=32 --checkers=16 --progress

Related Technical Guides

Related Infrastructure Pages

FAQ de Armazenamento de Objetos

Is Vultr Object Storage compatible with AWS S3?

Yes. Vultr Object Storage uses the S3-compatible API, meaning any tool that works with AWS S3 — boto3, rclone, s3fs, MinIO client, and AWS CLI — works natively with Vultr Object Storage with a simple endpoint change.

What are the pricing differences vs AWS S3?

Vultr Object Storage is significantly cheaper than AWS S3. Vultr charges per GB of storage with no per-request fees for standard operations, making it ideal for large ML dataset storage with frequent GPU instance access.

Can I mount Vultr Object Storage directly to a GPU instance?

Yes. You can mount Vultr Object Storage using s3fs-fuse or goofys, or access it via the S3-compatible API from Python (boto3) within training scripts. This enables streaming large datasets without local disk bottlenecks.

What data types are best suited for Vultr Object Storage?

ML training datasets, model weight files (GGUF, safetensors), inference artifacts, video assets for generative AI, database backups, and static website assets are all ideal for object storage.

Ready to Store AI Datasets on Vultr?

New accounts signed up via referral link may be eligible for promotional credits. Credits subject to Vultr's official program terms.