AI is shaking up our jobs. From coding scripts to whipping up images. But to power these clever tools, a plain laptop won’t cut it. You need a beefy GPU. That’s a Graphics Processing Unit.
Picking the right GPU server? It’s a maze of options and tech speak.
This guide boils it down in easy English. Whether you’re a student, startup lead, or researcher, it’ll steer you to solid choices. No money down the drain.
Note: If you want to buy a GPU server in Malaysia, VPS Malaysia is the best option to consider.
Know Your Goal: Training vs. Inference
Before you look at hardware specs, you must understand what you are actually doing with the AI. There are two main stages in AI projects, and they need different kinds of power.
Training (The Learning Phase)
Training is teaching the AI model. Think of it like showing a kid how to read a book. Takes lots of concentration and serious brainpower.
- What you need: The beefiest GPUs out there. Tons of VRAM memory. And blazing fast calc speeds.
- Recommended: High-end enterprise cards such as NVIDIA A100 or H100. You usually need them for this.
Inference (The Using Phase)
Inference is when the AI is already taught, and you are just asking it questions. This is like the child reading a sign on the street. It happens fast.
- What you need: You don’t need as much raw power as training. You need a card that can respond quickly (low latency).
- Recommended: Cheaper cards like the NVIDIA T4 or consumer cards like the RTX 4090 are often perfect for this.
The Heart of the Server: Choosing the GPU Card
The GPU card is the most important part of your server. It does 90% of the work. Here are the three main categories you will see in the market.
Consumer Cards (GeForce RTX 3090, 4090)
These are the cards gamers use. They are powerful and relatively cheap.
Pros: Great value for money. Very fast for single tasks.
Cons: They are not built to run 24/7 in a hot data center. They often have less memory than professional cards.
Best for: Students, small startups, and testing small models.
Entry-Level Professional (NVIDIA T4, L4, A10)
These cards are built for servers. They are very reliable and energy-efficient.
Pros: They use less electricity and are great for “Inference” (running chatbots or image recognizers).
Cons: They might be too slow for training huge models from scratch.
Best for: Running finished AI apps and websites.
High-End Enterprise (NVIDIA A100, H100)
These are the beasts of the AI world. They are incredibly expensive but necessary for big companies.
Pros: Massive memory and speed. They can talk to other GPUs very quickly to share work.
Cons: Very expensive to rent or buy.
Best for: Training massive models like ChatGPT or handling millions of users.
Why Video Memory (VRAM) is Critical
If you only look at one number, look at VRAM (Video RAM). This is the memory inside the GPU card.
AI models are heavy. For the model to run, everything has to fit in the VRAM. If yours is 20GB big, but the GPU only holds 16GB? It just won’t work. You’ll snag an “Out of Memory” error.
- Small Projects (16GB – 24GB VRAM): Good enough for learning, basic image creation, and small text models.
- Medium Projects (40GB – 48GB VRAM): Needed for pro jobs and tackling bigger text loads.
- Large Projects (80GB+ VRAM): Must-have for training LLMs or handling high-res video.
- Simple Rule: Always pad your memory estimates. Better to sit on 10GB extra than miss by 1GB.
Don’t Forget the Support Crew: CPU, RAM, and Storage
While the GPU is the star, it cannot work alone. If the other parts of your server are slow, your expensive GPU will sit idle waiting for data. This is called a “bottleneck.”
The Processor (CPU)
The CPU sends data over to the GPU. A slow CPU means the GPU just sits idle, waiting.
Tip: Pick a server with at least 4 CPU cores per GPU card. Got 2 GPUs? Aim for 8 cores minimum.
System Memory (RAM)
This is different from VRAM. This is the main memory of the computer.
Tip: A good rule of thumb: double your system RAM to match the GPU VRAM. If your GPU has 24GB VRAM, then the server needs at least 48GB system RAM.
Storage (Hard Drive)
AI involves reading thousands of files (images or text) very fast. Old spinning hard drives (HDDs) are too slow.
Tip: Always choose NVMe SSD storage. It is much faster than standard SSDs. If your storage is slow, your training will take twice as long, costing you more money in rental fees.
Internet Connection Speed
Are you downloading massive datasets? Some AI datasets are Terabytes in size.
If you rent a server with a slow internet connection, you might spend the first 24 hours just waiting for your data to download.
- Bandwidth Check: Aim for servers with at least 1 Gbps connection. That’s gigabit per second speeds.
- Data Limits: Some providers tack on fees if you move too much data. Look for unmetered or unlimited bandwidth plans. It’ll save you from nasty surprise bills.
Renting vs. Buying
Should you buy a physical server for your office, or rent one from the cloud?
Buying (On-Premise)
Good because: You pay once and own it forever. Your data never leaves your building.
Bad because: It is loud, hot, and uses a lot of electricity. If it breaks, you have to fix it.
Renting (Cloud/VPS)
Good because: You can start in minutes. If you need a better GPU next month, you just upgrade. You don’t pay for electricity or cooling.
Bad because: If you use it 24/7 for years, the rental fees can eventually cost more than buying.
For 90% of people, renting is the safer choice. It allows you to test your idea without spending thousands of dollars upfront.
Cost Management Tips
GPU servers are expensive. Here is how to keep your bill low:
- Turn it off: If you are renting by the hour, turn the server off when you sleep. You can save 50% of your bill just by doing this.
- Start Small: Don’t rent an A100 server ($4/hour) just to test a few lines of code. Start with a cheaper T4 or RTX server ($0.50/hour) to debug your code. Once your code works perfectly, then move to the big server for the real job.
- Use “Spot” Instances: Some providers offer “spare” capacity at a discount. The risk is that they might turn your server off if someone else needs it, but it can be 70% cheaper.
Summary Checklist
Before you order a server, ask yourself these 3 questions:
- Does the GPU have enough VRAM to hold my model? (Check the model size first.)
- Is the hard drive an NVMe SSD? (Do not accept HDD).
- Is the internet connection fast enough for my data?
Conclusion
Choosing the right GPU server is about balance. You don’t need the most expensive hardware for every project. First, figure out if you’re training the AI or just running inference. Then pick a GPU card with enough VRAM to fit your project snugly.
Watch the supporting bits like CPU and storage closely. It lets you put together a system that’s speedy, efficient, and easy on the wallet.
And remember, if you want to buy a GPU server in Malaysia, VPS Malaysia is the best choice to get started with reliable performance.






