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Tag: Learning
BroadLink RM4 pro (2.4 GHz Wi-Fi Only) IR & RF Universal Remote, All in One Hub Code Learning Wi-Fi Remote Control for TV Air Conditioner, Curtain Motor, Works with Alexa, Google Home, IFTTT
Price: $44.99
(as of Nov 19,2024 16:38:11 UTC – Details)From the brand
About Us
Launched in 2013, BroadLink focuses on smart home control, bringing a convenient and smart lifestyle to over 2 million customers.
Users can control their appliances, lights through smart phones from anywhere, anytime.
We have been working in the field of smart universal remotes, smart bulbs and sensors for more than 10 years, bringing the smart home into a new era with real zero-setup, auto-networking and considerable affordable cost.
Broadlink RM4 pro
Mini Size, Maximum Control.
Empower Your IR & RF devices with Smart Control.
Smart Universal Remote
FastCon Smart Light Bulbs
Smart Wi-Fi Bulbs and Sensor
HIGH COMPATIBILITY – Support RF (433MHz) controlled devices such as curtain/shades motor, projector and light switch; Support 50,000+ IR controlled devices such as TV, STB, Air conditioner, Fan, Video Recorder, DVD and more; Does not work with Bluetooth. Supported devices library is constantly being updated by the cloud, so your RM4 pro is always compatible with newer devices. Option to program your devices and learn buttons if certain cloud data is unavailable.
APP CONTROL – Download “Broadlink” app in App Store and Google Play to configure and control Broadlink RM4 pro. Besides, if you have an Android phone integrates IR emitter itself, you can use it to control your IR devices from BroadLink App as a test, before you decide to buy our product. Note: RM4 pro only supports 5V 1A adapter and 2.4 GHz (not 5 GHz) Wi-Fi for configuration in the App.
VOICE CONTROL AND IFTTT – Compatible with Alexa to voice control your TV, STB, Air Conditioner and Fans, compatible with Google Home to voice control your Air Conditioner. Make sure the devices can be remotely controlled from external networks. In Amazon Alexa/Google Home/IFTTT Apps, enable the skill/service named BroadLink, link account and discover devices.
NEW FEATURES – Supports external Temperature and Humidity Sensor USB Cable (purchase separately), connect it to the RM4 pro, BroadLink App will show room’s temperature and humidity.
Checking Rolling Code in Advance – RM4 pro does not support RF Rolling Code control or learning. Please check the User Manual or Instruction before purchasing to make sure your RF device is NOT a Rolling Code. Generally, the remote control that needs to be paired for the first use is Rolling Code. If you are not sure, please provide us with the Brand and Model so we can check it for you.
PLEASE NOTE – IR signals can only be received in the absence of obstacles, please make sure there are no obstacles between the RM4 pro and your device. One-Year Warranty. Video Guide are available on our Amazon Brand Store and YouTube.Customers say
Customers have mixed opinions about the connectivity of the remote control. They mention it would not connect to their WiFi after hours of trying. Opinions are mixed on functionality, ease of setup, app quality, remote control, and documentation.
AI-generated from the text of customer reviews
Are you tired of juggling multiple remote controls for all your devices? The BroadLink RM4 pro (2.4 GHz Wi-Fi Only) IR & RF Universal Remote is here to simplify your life! This all-in-one hub allows you to control your TV, air conditioner, curtain motor, and more with just one device.With code learning capabilities, the BroadLink RM4 pro can easily learn the codes from your existing remotes, making it a breeze to set up and use. Plus, with its compatibility with Alexa, Google Home, and IFTTT, you can easily integrate it into your smart home setup for even more convenience.
Say goodbye to cluttered coffee tables and hello to streamlined control with the BroadLink RM4 pro. Upgrade your home entertainment experience today! #BroadLinkRM4pro #UniversalRemote #SmartHomeIntegration
#BroadLink #RM4 #pro #GHz #WiFi #Universal #Remote #Hub #Code #Learning #WiFi #Remote #Control #Air #Conditioner #Curtain #Motor #Works #Alexa #Google #Home #IFTTTThe Role of AI and Machine Learning in Data Center Monitoring
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