# Why TensorWave?

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<figure><img src="/files/5M0kHIfgQPGvS81DJBzn" alt=""><figcaption><p>We believe that every business should have access to AI computing tools to their fullest potential.</p></figcaption></figure>

### Immediate Availability

Skip long queues and empty promises with other providers. Simply [contact us](https://tensorwave.com/book-a-call) and have your node up and running in just a few days.

### Easy Porting

AMD fully supports PyTorch, TensorFlow, Jax, Hugging Face and more standard ML libraries seamlessly. Many workflows include **0 code changes** to run on our infrastructure.

### Higher Performance / $ than NVIDIA

Compared to Nvidia's H100, the M1300X offers a better cost to performance ratio for all of your AI computing needs. MI300X offers 192GB of VRAM compared to 80GB so you can store larger models on a single GPU.

<figure><img src="/files/OfCOLyPUAWVmoh17LvaT" alt="" width="375"><figcaption></figcaption></figure>

{% hint style="info" %}
**Still not convinced?** Contact us on our [site](https://tensorwave.com/book-a-call) to test your workload for free today!
{% endhint %}

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