
Apple Slashes 2024 M4 Mac Mini Price Below Black Friday, Feels Like a Surprise Clearout Sale on Amazon
The Mac Mini blew away the computing world when it debuted in 2005 — a Mac desktop computer with all of the processing power and cool features of its larger siblings, but at a fraction of the size. In a time when huge desktop towers were still common, the Mac Mini showed that bigger most definitely does not always mean better.
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Fast forward 20 years, and the Mac Mini is doing it all over again. The most recent redesign of the Mini dropped last year, and it's somehow smaller and even faster than ever. Now with Apple's formidable M4 chip as its processor, this is unquestionably the best Mac Mini yet, and if you head to Amazon right now, you'll also find it's priced to move at just $499, a 17% drop from its already reasonable retail price of $599.
Smaller Body, Bigger Brain
The 2024 iteration of the Mac Mini is a dream come true for anyone who values a neat, minimalist desk layout. It's just 5 by 5 inches — an inch and a half smaller than the original, and less than half the size of the previous design — and now for your convenience it has ports both in the front of the unit and the back, Two USB-C ports and a headphone jack are at the front of the machine, and three Thunderbolt 4 ports, an HDMI port, and a gigabit Ethernet connection reside in the back with the power cable.
All those connections mean the 2024 M4 Mac Mini can be the centerpiece of up to 3 displays — two Thunderbolt connections with up to 6K resolution at 60Hz and a third Thunderbolt with up to 5K resolution, or a third with 4K resolution through the HDMI port. With the Mini taking up next to no desk space, you can go wild with the displays, and the WiFi 6E and Bluetooth 5.3 connections will make whatever you're watching come through flawlessly.
Pure Power
The 2024 M4 Mac Mini is valued for its compact size and vast array of connections, but the real selling point is the power. The 10-core M4 CPU pushes data with incredible speed and efficiency — it's up to 13 times faster than the fastest Intel-based Mac Mini. And now with a 16-core neural engine built in, you'll get to experience Apple Intelligence and all of its vast power.
The 2024 M4 Mac Mini has set the bar yet again for compact desktop computing, shrinking its footprint even further while exponentially increasing its speed and power. With Amazon taking $100 off the price, the M4 Mac Mini is an absolute steal at just $499.
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Interoperability means more than connecting dashboards or sharing alerts. It's about ensuring that identity security posture management (ISPM) and identity threat detection and response (ITDR) systems share data, context and workflows in real time, across both human and machine identities. Gartner recommends a 'system of systems' approach, built on identity fabric principles, to support zero trust and intelligent automation. This means breaking down technical and organizational silos so prevention and detection teams operate from a unified, continuously updated single source of truth for identity data—a concept Gartner identifies as foundational for modern identity security. This trusted, authoritative data layer enables faster, more accurate decisions and ensures that every team acts on the same intelligence. When ISPM and ITDR interoperate, and when human and AI teammates collaborate based on shared reference points, blind spots shrink and attackers have fewer seams to exploit. 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