Tensilica MathX DSP Family Training
版本 | 区域 | |
---|---|---|
10.3 | Online | ENROLL |
Other Versions | Online | EXPRESS INTERESTINQUIRE |
Length: 2 Days (16 hours)
Course Description
The focus of this training class is the Tensilica® MathX DSP Family.
This class provides an overview of the Tensilica MathX DSP architecture, instruction set, and programming model. It includes information on common Tensilica MathX DSP operations, how to write and optimize code, and how to use the advanced capabilities of the XT-CLANG C/C++ compiler. It provides essential skills necessary to develop and optimize baseband, radar/lidar, image processing, and neural network algorithms and kernels on the Tensilica MathX DSPs.
This class includes labs to give practical and hands-on experience with the DSP core, libraries, and software tools.
Learning Objectives
After completing this course, you will be able to:
- Understand the Tensilica MathX DSP architecture, instruction set, and programming model
- Write and optimize C/C++ programs for VLIW/SIMD machines like the Tensilica MathX DSPs
- Use the advanced capabilities of the XT-CLANG C/C++ compiler to generate efficient compiled code
- Use the library routines provided with the Tensilica MathX DSPs to accelerate your software development cycle
Software Used in This Course
- Tensilica Xtensa® Xplorer 10.2.3
- Tensilica Xtensa Software Tools RJ-2024.3
Software Release(s)
RJ-2024.3
Modules in this Course
- About This Course
- Tensilica MathX DSP Family Overview
- Application Performance
- Architecture Overview
- Instruction Set Highlights
- Data Handling
- Programming Styles
- The N-Programming Model
- Auto-Vectorization of Scalar C Code
- C Operators with Vector Types
- Intrinsics Use
- DSP Libraries
- Lab 3-1 – Vector Programming
- Programming Guidelines
- Lab 4-1 – Auto-Vectorization
- MathX DSP Family Instruction Overview
- Vector Element Operations
- Load and Store Operations
- Multiply Operations
- Lab 5-1 – Intrinsic Optimization
- Advanced Topics
- Vector Floating-Point
- Matrix Multiply
- Divide, Reciprocal, SQRT, RSQRT
- FIR Support
- FFT Support
- Gather/Scatter Support
- Lab 6-1 – Packed Matrix Multiplication
- Next Steps
- Q/A
Audience
- Software developers and firmware engineers writing and optimizing code for the MathX DSP Family
Prerequisites
You must have experience with or knowledge of the following:
- Programming in C for embedded processors or DSPs
Or, you must have completed the following courses:
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