Featured Post

Efficient Duplicate Image Removal: Using ImageDeDup Python

Efficient Duplicate Image Removal: A Python Guide In this blog post, we will walk you through the process of identifying and removing duplicate images from your directories using Python. We will leverage perceptual hashing to find similar images and delete duplicates while keeping the largest file in the group. This solution is perfect for users who want to save disk space and keep their image collections organized. Why You Should Use This Code Over time, especially when dealing with large collections of images, duplicate files can accumulate. These duplicates take up unnecessary space on your system. Manually sifting through these images can be tedious, but with the help of Python, perceptual hashing, and concurrent processing, this task becomes much easier. Benefits: Efficient Duplicate Detection : By using perceptual hashing (PHash), the code compares images based on their v...

The End of the 3.5 Inch Floppy Continues


In a brief press release buried within Sony Japan's website, the company announced that they would be ending sales of the classic 3.5 inch floppy disk in the country in March of 2011. Sony introduced the size to the world in 1981, which saw its heyday in the 1990s. Sony has been one of the last major manufacturers to continue shipments of the disk type they helped develop, but had ended most worldwide sales in March of this year. The company's production of the 3.5 inch floppy ceased in 2009. Sony noted the demand, or a lack thereof, as the reason. The company's withdrawal is one of the final marks in the slow death of the floppy era.

Comments

Related Posts

Downloading icloud photos using icloudpd on linux, windows or mac

Is it possible to access 3G service on peak of Mount Everest? Yeah.......

System interface questions for requirement elicitation - Business analyst/System analyst

Give the print command over the internet to your near by printer.....with help of Google 'CLoud Print'

Microsoft Accuses Google Docs of Data Infidelity