NVIDIA Tesla P40 · 24GB VRAM

Pelayan GPU vLLM

Berikan model bahasa besar dengan kelajuan maksimum menggunakan vLLM pada perkakasan NVIDIA GPU khusus. API serasi OpenAI keluar dari kotak.

$ pip install vllm && vllm serve meta-llama/Llama-3-8B-Instruct --host 0.0.0.0
# Berjalan pada NVIDIA Tesla P40 (24GB)
Bersedia. _

Apakah {nama} pada GPU VPS?

vLLM adalah enjin pelayan LLM kelajuan tinggi yang menggunakan PagedAttention untuk pengurusan memori yang berkesan. Melaksanakan vLLM pada GPU VPS memberikan anda API LLM sedia untuk pengeluaran dengan prestasi optimum.

Kenapa {nama} pada VPS.org GPU

PagedAttention

Pengurusan memori GPU yang efisien untuk kelajuan laluan yang lebih tinggi.

Batching Terus

Pengendalikan permintaan berbilang secara serentak dengan penggunaan GPU optimum.

API OpenAI

Penggantian drop-in untuk titik akhir API OpenAI.

Sokongan Model

LLaMA, Mistral, Gemma, Qwen, dan 50+ model arsitektur.

Kes Guna {nama} Popular

Produksi LLM APIs
Chatbots lalu lintas tinggi
Pemprosesan teks berbilang
Berkhidmat LLM multi-penduduk
AI SaaS backends
Platform AI Enterprise

Spesifikasi GPU

GPUNVIDIA Tesla P40
VRAM24 GB GDDR5X
Warna CUDA3,840
FP3212 TFLOPS
INT847 TOPS
Memori BW346 GB/s
ArkitekturPascal (GP102)
LaluanBare-metal PCIe

Soalan Lazim

What is vLLM on a GPU VPS?

+

vLLM on a GPU VPS is a CUDA-accelerated deployment. vLLM is primarily an LLM-inference / chat workload. You will want fast random-access reads from disk to memory and enough VRAM for the model plus context window.

How do I set up vLLM on a GPU VPS?

+

Deploy a GPU VPS with the NVIDIA Tesla P40, SSH in, and run pip install vllm && vllm serve meta-llama/Llama-3-8B-Instruct --host 0.0.0.0. Your vLLM environment is ready in minutes with full GPU acceleration.

How much VRAM do I need for vLLM?

+

LLM inference VRAM scales with model parameters. A 7B model needs ~5-8 GB VRAM, 13B ~10-14 GB, 70B requires multi-GPU or quantization. Our 24 GB Tesla P40 comfortably runs 7B-13B models at full precision and 30B-class models with INT8 quantization.

Is vLLM GPU VPS billed hourly or monthly?

+

GPU VPS plans are billed monthly with no lock-in contracts and can be cancelled anytime. Contact us for current GPU pricing tiers.

Can I run other tools alongside vLLM?

+

Yes — you have full root on the GPU VPS. Run whatever fits inside the 24 GB VRAM and the available RAM / storage budget alongside vLLM.

Do I get full root on the vLLM GPU VPS?

+

Yes. Full root SSH on every GPU VPS — install drivers, swap CUDA versions, customize the environment for vLLM however you need.

Which CUDA version is installed for vLLM?

+

GPU VPSs ship with a recent CUDA runtime and the matching NVIDIA driver pre-installed. You can pin or upgrade CUDA versions as required by your vLLM workload.

Does my vLLM GPU VPS persist between sessions?

+

Yes — your vLLM GPU VPS is a long-running persistent server, not an ephemeral instance. Models, configs, and data stay on the SSD between sessions.

Where should I store data for my vLLM workload?

+

Keep working data on the VPS SSD for fast access during vLLM runs; back up finished artifacts (weights, generations, embeddings) off-server via snapshots or object storage for safety.

Can I scale my vLLM GPU VPS later?

+

Yes — plan upgrades are instant from your control panel; the GPU itself can be swapped to a larger tier on request. Your vLLM install carries over.

Are backups available for my GPU VPS?

+

Yes. Automated daily backups are an add-on; manual snapshots are free. Useful for long vLLM training runs where you want a checkpointable server state.

Is there a money-back guarantee on the GPU VPS?

+

Yes — 30-day money-back guarantee on every plan including GPU. Try vLLM on a GPU VPS risk-free.

Sedia untuk Jalankan {nama} pada GPU?

Letak pelayan GPU NVIDIA khusus dalam beberapa minit. Tiada tempahan, tiada panggilan jualan.

Lancarkan VPS Anda
Dari $2.0/mo