Daehaknaeil_Banner Format
대학내일 · 대학내일_배너형
- 가격 정보가 없어 예산 산정 신뢰도가 낮습니다.
📡 Media Info
📋 Description
Ads exposed on the proprietary platform 'Daehaknaeil Homepage,' which publishes digital editions of Daehaknaeil magazine articles and digital content (Facebook, YouTube, etc.). It consists of a SET of a top banner at the top of the homepage and a bottom banner, and is displayed responsively according to the usage environment.
🎯 Targeting
디바이스: 모바일, PC
👥 Audience
대학생 타겟을 만나보세요!
📍 Placement
소재: 배너, 디바이스: 모바일, PC
📊 KPI Metrics
대학내일_배너형 대학내일 매거진 기사의 디지털 발행 및 디지털(페이스북, 유튜브 등) 콘텐츠를 게재하는 자체 플랫폼 '대학내일 홈페이지'에 노출되는 광고입니다., 홈페이지 상단 위치 탑배너와 하단 배너가 SET로 구성되어 있으며 반응형 홈페이지로 이용환경에 맞춤 노출됩니다.
📐 Ad Specs
소재 유형: 배너 / 디바이스: PC, 모바일
⚠️ Limitations
- 가격 정보가 없어 예산 산정 신뢰도가 낮습니다.
🏷️ Tags
Connected hubs for this product
Frequently asked questions
What kind of campaign is this product suited for?
This product from 대학내일 is mainly reviewed in a 동영상/OTT context. Current review note: 가격 정보가 없어 예산 산정 신뢰도가 낮습니다.
How do I confirm pricing and minimum budget?
The public pricing text currently shown is Pricing not available. The minimum budget reference is -, and the source check date is 2026-03-24.
Which targeting and placements matter most?
Start with targeting: 디바이스: 모바일, PC. Then review audience: 대학생 타겟을 만나보세요!. Placement context: 소재: 배너, 디바이스: 모바일, PC.
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