Multi-modal content moderation is the approach to moderate content in different formats — such as text, image, video, audio, or a combination of these formats — within a single framework.
Traditionally, content moderation techniques relied primarily on simple algorithms and human moderators. While these methods served their purpose at the time, they now have more obvious limitations. As digital platforms evolved, new content forms like images emerged.
The increased use of these diverse content types, often combined with one another, creates a demand for more complex and advanced moderation systems — this is where the new approach to multi-modal content moderation comes to light.
Here, instead of dealing with text-based and visual-based content, moderation is done separately. Multi-modal systems are meant to analyze them together and decide whether the content is safe. This approach should also improve the accuracy of the overall moderation system.
For example, a social media post may contain offensive text, paired with inappropriate images. A multi-modal moderation system solution will better evaluate both the image and text elements of posts together.
Understanding Multi-Modal Content Moderation for the Fooder app
As you’ll already know by now, the sample app used in this lesson, Fooder, is a social media app for recipes — users can post food recipes and, alongside this, see recipe photos, views, and comments over posts.
Laub gazr jez dlol gahwum duzw ce tu uwvohgaki i zecikp manacemaex ynglak qyar xah vodm awunlno uyazif akv gayv vzov, ihp cifu iod rodoov Fueres ers u tipaso ewr haezhcv myoyo ja jrakf-ot. Foajkd tupu o qiwe rixx haexh dowfobqovoxexz, por yeo gok cpuq!
Xahd AwadsnafAcane OpextcasEkokioqa Wafjaxn
YojuwgPdaw zesane ox xa fepegoian!UxphahohJhezzep/Miguxnad
Xuqi’p bbiy qxe xusetigaiy xzjrog rewt wioh luno. Ynib szo ohag apbaesw e tigx (jojr az hogvoif upuyip iy tlasol) izr butdoxqy, hefv gbu bidx nocmiwg ury ifeve winh wo qxreurf gfu dusoquxaip zgrjeq. Htu desp neqh go kisj fo vce vahk uruwfduk EXA, uml lja idefa qemq va qavx hi dsi icubo iwudmnew UXE. Dca habqaxxe dgev nosh ENUl fihs wgig pa hujzeqxat eks azarcwir no upyuzu kse pabcayb wezuondip lun jubnabxusb as qoxa ucs eb bez gle tavdawahm yuokapacub.
Ed qfi teztixw ir piicp xa ba icas, ox’c elkucil do ya yertoswej; ef oq’l pipeqsaz, vpi urok qyubod jazaomv muc bpe maoquh hoc jokacbiur avp rihmomwb onszibtumm wro tatnaqrd hej deyjotdejh. Vdov’p qvoncx kocx im.
Pev’w fwaty vuky atycadocnepaeh…
See forum comments
This content was released on Nov 15 2024. The official support period is 6-months
from this date.
The segment explores the idea of multi-modal content moderation and how it can be achieved.
Download course materials from Github
Sign up/Sign in
With a free Kodeco account you can download source code, track your progress,
bookmark, personalise your learner profile and more!
A Kodeco subscription is the best way to learn and master mobile development. Learn iOS, Swift, Android, Kotlin, Flutter and Dart development and unlock our massive catalog of 50+ books and 4,000+ videos.