Specification of XC5VLX20T-2FFG323I | |
---|---|
Status | Active |
Series | Virtex?-5 LXT |
Package | Tray |
Voltage – Supply | 0.95V ~ 1.05V |
Mounting Type | Surface Mount |
Operating Temperature | -40°C ~ 100°C (TJ) |
Package / Case | 323-BBGA, FCBGA |
Supplier Device Package | 323-FCBGA (19×19) |
Number of LABs/CLBs | 1560 |
Number of Logic Elements/Cells | 19968 |
Total RAM Bits | 958464 |
Number of I/O | 172 |
Applications
The XC5VLX20T-2FFG323I is ideal for high-performance computing environments due to its advanced processing capabilities. It excels in applications such as artificial intelligence training, big data analytics, and cloud computing services. This device operates within a wide range of temperatures from -40°C to +85°C, ensuring reliability across various environmental conditions.
Key Advantages
1. High clock speed up to 600 MHz, providing superior computational performance.
2. Advanced memory interface supporting DDR4 at speeds up to 2667 MT/s, enhancing data throughput.
3. Energy-efficient design with power consumption optimized for extended operation without overheating.
4. Meets stringent industry certifications including ISO 9001 and CE marking for global compliance.
Frequently Asked Questions
Q1: Can the XC5VLX20T-2FFG323I handle high的工作loads?
A1: Yes, it is designed to manage high workloads efficiently, thanks to its robust architecture and high-speed memory interfaces.
Q2: Is this device compatible with existing systems?
A2: The XC5VLX20T-2FFG323I is backward-compatible with most current systems but may require software updates to fully utilize its features.
Q3: In which specific scenarios would I use this XC5VLX20T-2FFG323I?
A3: This device is particularly suited for scenarios requiring intensive computational tasks like machine learning models, large-scale simulations, and complex algorithmic processing.
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