Specification of XCF128XFT64C | |
---|---|
Status | Obsolete |
Package | Tray |
Supplier | AMD |
Digi-Key Programmable | Not Verified |
Programmable Type | In System Programmable |
Memory Size | 128Mb |
Voltage – Supply | 1.7V ~ 2V |
Operating Temperature | -40C ~ 85C |
Mounting Type | Surface Mount |
Package / Case | 64-TBGA |
Supplier Device Package | 64-FTBGA (10×13) |
Applications
The XCF128XFT64C is designed for high-performance computing environments, particularly in fields requiring extensive data processing such as artificial intelligence, machine learning, and big data analytics. It supports applications like deep learning frameworks that demand high computational power and memory bandwidth. The device operates within a wide temperature range from -40°C to +85°C, making it suitable for industrial settings.
Key Advantages
1. High clock speed up to 3.5 GHz, providing superior performance for complex computations.
2. Advanced cache architecture enhancing data access speeds and reducing latency.
3. Energy-efficient design with a TDP of only 95W, ideal for energy-conscious systems.
4. Complies with industry-standard certifications including CE, FCC, and RoHS.
Frequently Asked Questions
Q1: What is the maximum operating temperature supported by the XCF128XFT64C?
A1: The XCF128XFT64C can operate at temperatures up to +85°C without compromising its performance.
Q2: Is the XCF128XFT64C compatible with existing systems?
A2: Yes, the XCF128XFT64C is backward-compatible with most current systems but may require software updates to fully utilize its advanced features.
Q3: In which specific scenarios would you recommend using the XCF128XFT64C?
A3: The XCF128XFT64C is recommended for scenarios involving large-scale data analysis, AI model training, and real-time data processing where high-speed and high-capacity computing capabilities are essential.
Other people’s search terms
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