Codetown ::: a software developer's community
Pinterest has become a treasure trove of inspiration for millions of users around the world. Whether you're looking for recipe ideas, home decor inspiration, fashion tips, or DIY projects, Pinterest has it all. Among the countless pins and images that flood the platform, videos have emerged as an increasingly popular form of content. But what if you want to download Pinterest videos for offline viewing or to share with friends? In this article, we'll explore the world of Pinterest videos and show you how to download them.
Understanding Pinterest Videos
Pinterest videos offer a dynamic and engaging way to share ideas and information. From quick recipe tutorials to step-by-step DIY guides, these videos bring Pinterest's creativity to life. Whether you're a content creator looking to expand your reach or simply a Pinterest enthusiast, knowing how to download Pinterest videos can be a valuable skill.
Why Download Pinterest Videos?
There are several reasons why you might want to download Pinterest videos:
Offline Viewing: Downloading videos allows you to watch them without an internet connection. This is especially handy for travelers or those with limited data access.
Sharing: You might come across a video on Pinterest that you want to share with friends or on social media platforms. Downloading the video gives you the flexibility to do so.
Archiving: Some Pinterest videos contain valuable information or ideas that you want to save for future reference. Downloading ensures you have a copy at your disposal.
How to Download Pinterest Videos
Downloading Pinterest videos isn't as straightforward as it is on some other platforms, as Pinterest doesn't provide a built-in download feature. However, there are a few methods you can use to accomplish this task:
Third-Party Online Video Downloaders such as pinsaver.io
Pinterest Video Downloader Apps:
Screen Recording:
Respect Copyright and Terms of Use:
Codetown is a social network. It's got blogs, forums, groups, personal pages and more! You might think of Codetown as a funky camper van with lots of compartments for your stuff and a great multimedia system, too! Best of all, Codetown has room for all of your friends.
Created by Michael Levin Dec 18, 2008 at 6:56pm. Last updated by Michael Levin May 4, 2018.
Check out the Codetown Jobs group.

Kyra Mozley discusses the evolution of autonomous vehicle perception, moving beyond expensive manual labeling to an embedding-first architecture. She explains how to leverage foundation models like CLIP and SAM for auto-labeling, RAG-inspired search, and few-shot adapters. This talk provides engineering leaders a blueprint for building modular, scalable vision systems that thrive on edge cases.
By Kyra Mozley
In this series, we examine what happens after the proof of concept and how AI becomes part of the software delivery pipeline. As AI transitions from proof of concept to production, teams are discovering that the challenge extends beyond model performance to include architecture, process, and accountability. This transition is redefining what constitutes good software engineering.
By Arthur Casals
To prevent agents from obeying malicious instructions hidden in external data, all text entering an agent's context must be treated as untrusted, says Niv Rabin, principal software architect at AI-security firm CyberArk. His team developed an approach based on instruction detection and history-aware validation to protect against both malicious input data and context-history poisoning.
By Sergio De Simone
Introducing Claude Cowork: Anthropic's groundbreaking AI agent revolutionizing file management on macOS. With advanced automation capabilities, it enhances document processing, organizes files, and executes multi-step workflows. Users must be cautious of backup needs due to recent issues. Explore its potential for efficient office solutions while ensuring data integrity.
By Andrew Hoblitzell
Meta has revealed how it scales its Privacy-Aware Infrastructure (PAI) to support generative AI development while enforcing privacy across complex data flows. Using large-scale lineage tracking, PrivacyLib instrumentation, and runtime policy controls, the system enables consistent privacy enforcement for AI workloads like Meta AI glasses without introducing manual bottlenecks.
By Leela Kumili
© 2026 Created by Michael Levin.
Powered by
You need to be a member of Codetown to add comments!
Join Codetown