FPGA Softcore Processors and IP Acquisition

Coursera Courses ↗ · Coursera

Open Course on Coursera

Free to audit · Opens on Coursera

FPGA Softcore Processors and IP Acquisition

Coursera · Beginner ·🛠️ AI Tools & Apps ·1mo ago
This course will introduce you to all aspects of development of Soft Processors and Intellectual Property (IP) in FPGA design. You will learn the extent of Soft Processor types and capabilities, how to make your own Soft Processor in and FPGA, including how to design the hardware and the software for a Soft Processor. You will learn how to add IP blocks and custom instructions to your Soft Processor. After the Soft Processor is made, you learn how to verify the design using simulation and an internal logic analyzer. Once complete you will know how to create and use Soft Processors and IP, a very useful skill. This course consists of 4 modules, approximately 1 per week for 4 weeks. Each module will include an hour or two of video lectures, reading assignments, discussion prompts, and an end of module assessment. This course includes specific hardware and software requirements. Please review the FAQ below for complete details.
Watch on Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

Most AI Tools in 2026 Are Overcomplicated — Here’s What Actually Seems Useful
Cut through the noise of overcomplicated AI tools and focus on what's truly useful for business growth in 2026
Medium · AI
When to Make an AI Skill, When Not To, and How to Steal One from Your Own Chat
Learn when to build an AI skill and how to repurpose existing ones to maximize usage and efficiency
Medium · AI
Antigravity is Dead Long Live Antigravity.
Learn about Google's latest announcements on Antigravity 2.0 and the discontinuation of Gemini CLI, and how they impact developers
Dev.to · Antonio Cardenas
I Built an AI Journal Because My Brain Wouldn’t Switch Off
Learn how to apply AI to personal productivity by building an AI journal to calm your mind and increase focus
Medium · Startup
Up next
AI Dev 26 x SF: Emma McGrattan: Engineering the Context Layer
DeepLearningAI
Watch →