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Ten Technology Enablers Shaping the Future of 6G Wireless

A guide to ten technological components — from THz communications and AI/ML to reconfigurable intelligent surfaces — poised to define 6G wireless networks. What Attendees will Learn Which frequencies 6G will use — Unde...

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Ten Technology Enablers Shaping the Future of 6G Wireless
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A guide to ten technological components — from THz communications and AI/ML to reconfigurable intelligent surfaces — poised to define 6G wireless networks.

What Attendees will Learn

  1. Which frequencies 6G will use — Understand why THz bands (above 100 GHz) and the7–24 GHz range are under consideration, what challenges CMOS technology faces at sub-THz frequencies, and how new semiconductor approaches aim to close the output-power gap for future link budgets.
  2. How AI/ML and joint communications and sensing reshape the air interface — how auto encoder-based end-to-end learning can replace traditional signal-processing blocks, and how a single waveform may serve both data transmission and radar-like environmental sensing.
  3. What reconfigurable intelligent surfaces and photonics bring to the radio environment— Explore how programmable metamaterial panels can steer and shape electromagnetic waves, and how visible light communications and all-photonics networks extend capacity and lower latency.
  4. How ultra-massive MIMO, full-duplex, and new network topologies enable a true 3D“network of networks” — Understand how antenna arrays with vastly more elements, simultaneously transmit/receive on the same frequency, and non-terrestrial nodes converge to deliver ubiquitous, high-capacity 6G coverage.

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Source

IEEE Spectrum AI - content.knowledgehub.wiley.com

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