
Holy smokes! RTX 5070 and RTX 5060 Ti GPUs just got a price cut — grab these before they're gone
Right now, this Gainward RTX 5060 Ti GPU (16GB VRAM) is just £379 at Overclockers UK, saving you £20 on Nvidia's powerful mid-range graphics card. That's not all, as the Zotac RTX 5070 is now £45 off, with its price crashing to under £500.
This is the cheapest I've seen these GPUs yet, and considering the major performance gains they deliver (along with DLSS 4), you're getting a boatload of value if you're looking to upgrade your gaming PC. Act fast, as these graphics cards will be snatched off shelves at these prices.
Sporting 16GB GDDR7 video memory, 2572 MHz boost clock and all of Nvidia's latest AI features with DLSS 4, this Gainward RTX 5060 Ti Python III will help optimize gaming performance in the latest games, especially at 1080p and 1440p. Now with a £20 discount? It's even better.
If you're after a further boost in frame rates for AAA gaming, the Zotac RTX 5070 Solid OC will get you there, and now with a £45 price cut. Expect 12GB GDDR7 video memory and boost clock speeds at 2542 MHz.
Out of the pair, I'd personally recommend the RTX 5060 Ti for most people. Not to say the RTX 5070 is bad — there are noticeable uplifts in frame rates over the lower-end card and seeing it for over £40 under the MSRP fixes one of my biggest gripes with the GPU for gaming enthusiasts.
But given the margins in performance between the pair, you're definitely getting more bang for your buck in the mid-ranger. Whichever one you pick, though, you'll find stellar PC game performance at 1080p and 1440p through raw rendering, and with DLSS 4 AI trickery, you can see those frame rates start to skyrocket.
And with that multi-frame generation tech — using AI to take one rendered frame and predict the next 3 — you can get 4K path-traced gameplay on both that is comfortably over 100 FPS. None of it comes with that telltale image ghosting on fast-moving objects that you see when the machine learning algorithm is working overtime to predict.
Make no mistake about it. For PC gamers looking for a serious visual upgrade to their AAA titles, these are the best deals going right now. Don't miss it, as they'll sell out fast!
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