Faraday Monthly Consolidated Sales Report - August 2015
HSINCHU, TAIWAN -September 7, 2015 -- Faraday Technology Corporation (TAIEX: 3035) ("Faraday") today announced that consolidated revenues for August 2015 totaled NT$505,745 thousands, 12.29% up from the same period last year.
August Consolidated Sales Report (Unit: NT$ thousand)
| Consolidated Revenues | 2015 | 2014 | YoY Change |
| August | 505,745 | 450,378 | 12.29% |
Note: Year 2015 consolidated revenue figures have not been audited.
About Faraday Technology Corporation
Faraday Technology Corporation is a leading silicon IP and fabless ASIC vendor. The company's broad silicon IP portfolio includes Cell Library, Memory Compiler, ARM-compliant CPUs, DDRI/II/III, MPEG4, H.264, USB 2.0, 10/100 Ethernet, Serial ATA, and PCI Express. With 2014 consolidated revenue of US$190 million, Faraday is one of the largest fabless ASIC companies in the Asia-Pacific region, and it also has a significant presence in other world-wide markets. Headquartered in Taiwan, Faraday has service and support offices around the world, including the U.S., Japan, Europe, and China. For more information, please visit : www.faraday-tech.com
Related Semiconductor IP
- Multi-channel Ultra Ethernet TSS Transform Engine
- Configurable CPU tailored precisely to your needs
- Ultra high-performance low-power ADC
- HiFi iQ DSP
- CXL 4 Verification IP
Related News
- GUC Monthly Sales Report - August 2024
- GUC Monthly Sales Report – August 2025
- GUC Monthly Sales Report - August 2015
- UMC Reports Sales for August 2015
Latest News
- ASICLAND Partners with Daegu Metropolitan City to Advance Demonstration and Commercialization of Korean AI Semiconductors
- SEALSQ and Lattice Collaborate to Deliver Unified TPM-FPGA Architecture for Post-Quantum Security
- SEMIFIVE Partners with Niobium to Develop FHE Accelerator, Driving U.S. Market Expansion
- TASKING Delivers Advanced Worst-Case Timing Coupling Analysis and Mitigation for Multicore Designs
- Efficient Computer Raises $60 Million to Advance Energy-Efficient General-Purpose Processors for AI