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Tag: Passive
AIYIMA A07 Premium TPA3255 Power Amplifier 300Wx2 HiFi Class D Audio Amp Mini 2 Channel Stereo Amplifier for Passive Speaker Desktop Bookshelf Home Theater System with DC 32V Power Adapter
Price:$89.99– $79.99
(as of Jan 31,2025 18:11:47 UTC – Details)From the brand
About AIYIMA AUDIO
Focus on audio products of Tube Amplifier ,Audio Amplifier,Preamp,DAC etc.
Our company Offer Design& Research and Development& Producing and Marketing ,OEM
We use the best components available in the design to satisfy your listening pleasure
❶ This AIYIMA A07 small Hifi stereo amplifier adopts Texas Instruments TPA3255 high-performance low-distortion high-power Class D stereo amp chip and NE5532 Dual op-amp chip,With lowest noise, distortion, clipping,Very Quiet,Runs Extremely Cool,Easy to set up. It’s a simple but powerful mini amp for your stereo home speaker amplifier system
❷ Max Power Output up to 600W ,A07 stereo receiver & amplifier home audio amp adopts TI TPA3255 high-performance Class-D power amplifier chip enabling true premium sound quality.TPA3255 features an advanced integrated feedback design and proprietary high-speed gate driver error correction (PurePath Ultra-HD),The device is operated in AD-mode, and can drive up to 2 x 315 W into 4-Ω load at 10% THD and 2 x 150 W unclipped into 8-Ω load.Exclusively designed for the customers who pursue HiFi sound
❸ 3.5 mm AUX Pre-out & RCA Audio output:3.5mm port is Full range frequency output,The “Pre-out” level is controlled by the volume control,it can go to any active device:Speakers,Amplifier,powered Subwoofer amp ect.To create the 2.1 channel home audio desktop speaker amp system)
❹ Delicate and unique,The A07 mini power audio amplifier use the NE5532 Dual Op amp chips can be upgraded and replaced, such as updating to OPA series,LM series,and MUSES series,which can meet the needs of more audiophiles.Can used as bookshelf speaker amp/desktop amplifier/passive speaker amp and so on;use our A07 home audio stereo amplifier, connected to your home audio speakers to form a perfect HIFI system, allowing you to liberate your ears in this noisy city
❺This A07 premium 2 channel audio component amplifiers package with a DC 32V 5A Power Adapter for free,you can upgraded the powerful power supply to get the maximum 300W x2 power output, such as 48V/10A(Cannot use industrial power supply,and please choose the correct passive speaker power adapter to use)
AIYIMA A07 premium stereo amplifier upgraded Compact and exquisite appearance,paired with well-known components such as Japanese ELNA capacitors,63V Filter Capacitors,WIMA capacitors, Audiophile grade components for high performance and excellent sound quality. Pair it with the T1 PRO to create a HiFi home audio systemCustomers say
Customers appreciate the good sound quality, power, and value for money of the electronic component amplifier. They mention it has a full soundstage with improved instrument delineation, and is easy to fit into their entertainment equipment area. Many find it impressive at the price. The small footprint makes it easy to fit into your entertainment area. Customers also like the performance and design. However, some have differing opinions on the build quality and volume control.
AI-generated from the text of customer reviews
Introducing the AIYIMA A07 Premium TPA3255 Power Amplifier – the ultimate audio upgrade for your home theater system! This mini 2 channel stereo amplifier delivers a powerful 300Wx2 output, thanks to its advanced TPA3255 Class D technology.Designed for passive speakers, this amplifier is perfect for desktop setups, bookshelf speakers, and small home theater systems. With its compact size and sleek design, the AIYIMA A07 is a versatile addition to any audio setup.
The AIYIMA A07 comes with a DC 32V power adapter for easy installation and setup. Simply connect your speakers, plug in the power adapter, and enjoy crystal-clear sound with deep bass and rich, detailed highs.
Upgrade your audio experience with the AIYIMA A07 Premium TPA3255 Power Amplifier – the perfect choice for audiophiles and music lovers alike. Order yours today and take your sound to the next level!
#AIYIMA #A07 #Premium #TPA3255 #Power #Amplifier #300Wx2 #HiFi #Class #Audio #Amp #Mini #Channel #Stereo #Amplifier #Passive #Speaker #Desktop #Bookshelf #Home #Theater #System #32V #Power #Adapter,stereo soundMetra EHV-HDP1 High Performance VELOX Passive Premium HDMI® Cable (1 Meter)
Metra EHV-HDP1 High Performance VELOX Passive Premium HDMI® Cable (1 Meter)
Price : 89.00
Ends on : N/A
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Introducing the Metra EHV-HDP1 High Performance VELOX Passive Premium HDMI® Cable (1 Meter)!Experience unparalleled picture and sound quality with this premium HDMI cable from Metra. The EHV-HDP1 features high performance VELOX technology that ensures a flawless 4K Ultra HD viewing experience. With a length of 1 meter, this cable is perfect for connecting your devices without any signal loss or degradation.
Whether you’re streaming your favorite movies or playing the latest video games, the Metra EHV-HDP1 HDMI cable delivers crystal-clear video and immersive audio. Upgrade your home entertainment system with the best in HDMI technology. Trust Metra for all your HDMI cable needs.
Don’t settle for subpar performance – choose the Metra EHV-HDP1 High Performance VELOX Passive Premium HDMI® Cable for the ultimate viewing experience.
#Metra #EHVHDP1 #High #Performance #VELOX #Passive #Premium #HDMI #Cable #Meter,hdmiMicca MB42 Bookshelf Speakers for Home Theater Surround Sound, Stereo, and Passive Near Field Monitor, 2-Way (Black, Pair)
Price: $69.99
(as of Jan 31,2025 02:22:43 UTC – Details)
The MB42 is a demonstration of our designers’ love for the classic compact bookshelf speaker. Handsomely styled with simple contours and modern design cues, the MB42 is easy to place and blends into any room or decor. Its enhanced audio capability makes it a great fit with a wide range of usage scenarios, including living room stereo, home theater surround sound, office background music, or computer desktop sound.The Design
Our design starts with carefully picked drivers that mesh perfectly in the critical crossover overlap region. It incorporates a balanced woven carbon fiber woofer for enhanced transient and impactful bass, and a high performance silk dome tweeter for smooth treble and accurate imaging. The drivers are housed in a ported enclosure that delivers extended bass response with low distortion. A simple yet effective 6db/Octave crossover helps the drivers blend together for a smooth tonal balance.The Construction
The fabric front grills are easy to take off and put on. Leave them on for a classic look or take them off to show off the incredibly handsome drivers. Full size 5-way binding posts provide the full complement of speaker wire connectivity options. Hex screws are used throughout for assembly.Home Trial
Listen for yourself, try them in your home with your music. Place the MB42 along a wall or near a corner of the room for best results. They can be used on desks, book/wall shelves, or on speaker stands.Specifications
Woofer: 4″ Carbon Fiber, Rubber Surround
Tweeter: 0.75″ Silk Dome
Crossover: 6dB/Octave
Enclosure: Ported
Frequency Response: 60Hz-20kHz
Impedance: 4-8 Ohms
Sensitivity: 85dB 1W/1M
Power Handling: 75 Watts (Each)
Dimensions: 9.5″ (H) x 5.8″ (W) x 6.5″
The MB42 is a demonstration of our designers’ love for the classic compact bookshelf speaker. Handsomely styled with simple contours and modern design cues, the MB42 is easy to place and blends into any room or decor. Its enhanced audio capability makes it a great fit with a wide range of usage scenarios, including living room stereo, home theater surround sound, office background music, or computer desktop sound.
Our design starts with carefully picked drivers that mesh perfectly in the critical crossover overlap region. It incorporates a balanced woven carbon fiber woofer for enhanced transient and impactful bass, and a high performance silk dome tweeter for smooth treble and accurate imaging. The drivers are housed in a ported enclosure that delivers extended bass response with low distortion. A simple yet effective 6db/Octave crossover helps the drivers blend together for a smooth tonal balance.
The fabric front grills are easy to take off and put on. Leave them on for a classic look or take them off to show off the incredibly handsome drivers. Full size 5-way binding posts provide the full complement of speaker wire connectivity options. Hex screws are used throughout for assembly.
Home Trial – Listen for yourself, try them in your home with your music. Place the MB42 along a wall or near a corner of the room for best results. They can be used on desks, book/wall shelves, or on speaker stands.
Specifications: Woofer: 4″ Carbon Fiber, Rubber Surround; Tweeter: 0.75″ Silk Dome; Crossover: 6dB/Octave; Enclosure: Ported; Frequency Response: 60Hz-20kHz
Impedance: 4-8 Ohms; Sensitivity: 85dB 1W/1M; Power Handling: 75 Watts (Each); Dimensions: 9.5″ (H) x 5.8″ (W) x 6.5″Customers say
Customers appreciate the speakers for their good sound quality and value for money. They find the speakers to be a decent size that easily fills a fairly large room with high-quality sound. The speakers are well-made and solidly glued. Customers also like the functionality, highs, and clarity of the speakers.
AI-generated from the text of customer reviews
Upgrade your home theater experience with the Micca MB42 Bookshelf Speakers! These sleek black speakers are perfect for surround sound, stereo, and passive near field monitoring. With a 2-way design, these speakers deliver crystal clear sound quality for an immersive audio experience.Whether you’re watching movies, listening to music, or gaming, these speakers will take your entertainment to the next level. The compact size makes them ideal for smaller spaces, while still providing powerful and dynamic sound.
Don’t settle for mediocre sound quality – invest in the Micca MB42 Bookshelf Speakers and transform your home theater setup today! Available in a pair, these speakers are a must-have for any audio enthusiast.
#Micca #MB42 #Bookshelf #Speakers #Home #Theater #Surround #Sound #Stereo #Passive #Field #Monitor #2Way #Black #Pair,stereo soundHighwings 4K Display Port to HDMI Adapter, Uni-Directional DP 1.2 Computer to HDMI 2.0 Screen, Display Port to HDMI Adapter (Male to Female), SR Anti-Break, No Latch, for Dell HP AMD NVIDIA, Passive
Price:$12.99– $8.99
(as of Jan 29,2025 13:10:23 UTC – Details)From the brand
Highwings 8K/4K HDMI Cable
16K DP /4K DP to HDMI Cable
2 Pack 8K/4K HDMI Cable
Capture/Reader/Audio cable
Micro/Mini/HDMI Adapter&Cable
Highwings Adapter cable
4K UHD and AUDIO SYNC: Supports up to 4K@30Hz resolution with backward compatibility for 1440P/2K@60Hz and 1080P Full HD. (BE SURE to NOTE: The product is passive. Also, Dock-stations are not supported) Ensures synchronized high-definition audio and video for an immersive streaming or gaming experience
UNI-DIRECTIONAL DISPLAYPORT to HDMI ADAPTER: is designed for one-way conversion from DisplayPort source to HDMI display only. It does not support HDMI to DisplayPort conversion, so it is not suitable for HDMI source devices
WIDE COMPATIBILITY: Perfect for graphics card (AMD, NVIDIA), desktops (HP, Dell, Lenovo) with Display Port connections, this cable delivers vibrant, realistic 4K resolution and smooth 3D visuals to large screens. (Note: Monitor – to – Monitor/ TV connection is not supported. The monitor has no data output function. A data output source is required)
DURABLE DESIGN: The SR Flexible Strength Design, 24K gold-plated ports, latch-free and military-grade tensile nylon can ensure that this USB-C to HDMI adapter withstand up to 25,000 flex times and accurately transmits signals, greatly extending use life
NOTE1: Please ensure that the display resolution and refresh rate settings are consistent to avoid abnormal display; High-resolution data transmission will cause the chip to heat up, please don’t worry too much
Note2: Microsoft Windows, Mac OS X, and PC laptops with DP ports must support “DisplayPort Alternate Mode”. This is a passive adapter with a built-in advanced conversion chip that converts DisplayPort signals to HDMI signals. It is not bidirectional and is only for use with DisplayPort computers/laptops to HDMI monitors. It will not work with devices like Fire TV Stick, XBOX, etc., that have HDMI output ports.
Note3:Customers say
Customers find the adapter useful and well-made. They appreciate its functionality, build quality, and compatibility with various devices like HP Elitedesk mini PCs and spare monitors. Many find it easy to use, with good picture quality and length. However, some customers have differing opinions on signal strength and value for money.
AI-generated from the text of customer reviews
Introducing the Highwings 4K Display Port to HDMI Adapter!Are you looking to connect your computer to a high-definition screen with ease? Look no further than the Uni-Directional DP 1.2 Computer to HDMI 2.0 Screen Adapter from Highwings. This adapter allows you to effortlessly connect your Display Port-enabled device to an HDMI display, making it perfect for presentations, gaming, and more.
With a male to female connection, the Highwings adapter is compatible with a wide range of devices including Dell, HP, AMD, and NVIDIA computers. Plus, the adapter features SR Anti-Break technology and a no latch design, ensuring a secure and reliable connection every time.
Experience stunning 4K resolution and crystal-clear audio with the Highwings Display Port to HDMI Adapter. Don’t settle for average, upgrade to Highwings today!
#Highwings #DisplayPort #HDMIAdapter #4KDisplay #TechEssentials
#Highwings #Display #Port #HDMI #Adapter #UniDirectional #Computer #HDMI #Screen #Display #Port #HDMI #Adapter #Male #Female #AntiBreak #Latch #Dell #AMD #NVIDIA #Passive,displayportA systematic review of passive data for remote monitoring in psychosis and schizophrenia
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Passive data collection methods are increasingly being used in the field of mental health to remotely monitor symptoms and behaviors of individuals with psychosis and schizophrenia. In this post, we will conduct a systematic review of the current literature on the use of passive data for remote monitoring in these populations.Passive data collection refers to the continuous and unobtrusive monitoring of individuals using sensors and other technology to gather information about their daily activities, movements, and interactions. This data can provide valuable insights into the progression of symptoms, medication adherence, and overall well-being of individuals with psychosis and schizophrenia.
Several studies have explored the use of passive data collection methods such as smartphone sensors, wearable devices, and smart home technology to monitor symptoms and behaviors in individuals with psychosis and schizophrenia. These studies have shown promising results in terms of early detection of relapse, predicting hospitalizations, and improving outcomes through personalized interventions.
However, challenges remain in terms of privacy concerns, data security, and the integration of passive data into existing clinical workflows. Additional research is needed to further validate the effectiveness of passive data for remote monitoring in psychosis and schizophrenia, as well as to explore the potential barriers and facilitators to its implementation in clinical practice.
Overall, the use of passive data for remote monitoring in psychosis and schizophrenia holds great promise for improving the care and outcomes of individuals with these conditions. By conducting a systematic review of the current literature, we can better understand the current state of research in this area and identify key areas for future investigation and implementation.
Tags:
- Passive data monitoring
- Remote monitoring in psychosis
- Schizophrenia research
- Systematic review of passive data
- Mental health monitoring
- Remote sensing technology
- Psychosis and schizophrenia studies
- Data collection in mental health
- Wearable technology in mental health
- Remote patient monitoring
#systematic #review #passive #data #remote #monitoring #psychosis #schizophrenia
Dropshipping E-Commerce Business: A Step by Step Guide for Beginners Who Want to Make Money Online Selling on Amazon FBA, Shopify and eBay. Create Your Passive Income and Find Your Financial Freedom
Price: $4.17
(as of Jan 25,2025 14:58:43 UTC – Details)
Language : English
ISBN-10 : 1801693730
ISBN-13 : 978-1801693738
Item Weight : 11.6 ounces
Dimensions : 5.98 x 0.39 x 9.02 inches
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By following these steps, you can create a successful dropshipping e-commerce business and find your financial freedom. So what are you waiting for? Start your journey to passive income today!
#Dropshipping #ECommerce #Business #Step #Step #Guide #Beginners #Money #Online #Selling #Amazon #FBA #Shopify #eBay #Create #Passive #Income #Find #Financial #Freedom,business 101 for data professionalsCreative Pebble 2.0 USB-Powered Desktop Speakers with Far-Field Drivers and Passive Radiators for PCs and Laptops (White)
Price:$24.99– $18.99
(as of Jan 24,2025 06:19:40 UTC – Details)
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Introducing the Creative Pebble 2.0 USB-Powered Desktop Speakers – the perfect audio solution for your PC or laptop! These sleek and stylish speakers feature far-field drivers and passive radiators, delivering clear and powerful sound for an immersive listening experience.With a convenient USB power source, these speakers are easy to set up and use – simply plug them into your device and enjoy high-quality audio without the need for additional power cords. The white color adds a modern touch to any desktop or workspace, making them both functional and aesthetically pleasing.
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