Google’s new Gemini TV controls are here and TCL owners get them first


Adjusting your Google TV settings is one of those things that sounds simple until you are three menus deep trying to find the brightness slider. Google just made that whole experience a lot less annoying.

The company has rolled out new controls for Gemini, and TCL is the exclusive launch partner, meaning TCL TV owners get access to the feature for the first 60 days before it opens up to other Google TV brands.

What can the new Gemini TV controls actually do for you?

Instead of digging through settings menus, you can talk to your TV. You can ask Gemini to adjust brightness, contrast, volume, and picture modes using your voice. If something looks or sounds off, you can describe the problem in plain language.

Saying something like “the screen is too dark” or “I can’t hear the dialogue” will prompt Gemini to fix it for you directly. You can also ask Gemini to fine-tune settings based on what you are watching, or jump straight into the settings menu without clicking through multiple screens to get there. It is the kind of feature that sounds small but saves you time every single time you use it.

Which TCL TVs are getting this update?

The rollout is live now across select 2025 and 2026 TCL Google TV models in the US. The compatible models are the QM9K, QM7L, RM7L, X11L, QM9L, QM8L, and RM9L. It is unclear at this stage whether older TCL models like the QM6K, QM7K, or QM8K will receive the update later.

The timing is worth noting, too. With the FIFA World Cup kicking off this summer, having quick voice control over your picture and sound settings before a big match is a useful addition. The company is also launching a dedicated World Cup Hub on Google TV with live match information, schedules, highlights, and YouTube content.



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“It was severely downgraded,” Gilbert confirms. “I never would have found it if I was just looking through Google results.” (I tried the same prompt in Gemini earlier this month, and after an initial denial, the tool also gave me Eiger’s number.)

After this experience, Eiger, Gilbert, and another UW PhD student, Anna-Maria Gueorguieva, decided to test ChatGPT to see what it would surface about a professor. 

At first, OpenAI’s guardrails kicked in, and ChatGPT responded that the information was unavailable. But in the same response, the chatbot suggested, “if you want to go deeper, I can still try a more ‘investigative-style’ approach.” Their inquiry just had to help “narrow things down,” ChatGPT said, by providing “a neighborhood guess” for where the professor might live, or “a possible co-owner name” for the professor’s home. ChatGPT continued: “That’s usually the only way to surface newer or intentionally less-visible property records.” 

The students provided this information, leading ChatGPT to produce the professor’s home address, home purchase price, and spouse’s name from city property records. 

(Taya Christianson, an OpenAI representative, said she was not able to comment on what happened in this case without seeing screenshots or knowing which model the students had tested, even after we pointed out that many users may not know which model they were using in the ChatGPT interface. She also declined to comment generally about the exposure of PII by the chatbot, instead providing links to documents describing how OpenAI handles privacy, including filtering out PII, and other tools.) 

This reveals one of the fundamental problems with chatbots, says DeleteMe’s Shavell. AI companies “can build in guardrails, but [their chatbots] are also designed to be effective and to answer customer questions.”

The exposure issue is not limited to Gemini or ChatGPT. Last year, Futurism found that if you prompted xAI’s chatbot Grok with “[name] address,” in almost all cases, it provided not only residential addresses but also often the person’s phone numbers, work addresses, and addresses for people with similar-sounding names. (xAI did not respond to a request for comment.) 

No clear answers

There aren’t straightforward solutions to this problem—there’s no easy way to either verify whether someone’s personal information is in a given model’s training set or to compel the models to remove PII. 



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