Hyper-Targeted
AI - DRIVEN MARKETING
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AI-Driven for insights and automation
Katchit uses Artificial Intelligence to create hyper-personalized marketing experiences that maximize engagement and conversion. Algorithms that learn from audience behavior and adjust campaigns in real-time.
Applications
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AI-Powered Programmatic Ads
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Real-Time Content
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Ultra-Precise Targeting
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Dynamic Video & Ad Content
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AI-Driven Product
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Adaptive Experiences
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AI-Optimized A/B Testing
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Predictive Analytics for Marketing
How AI adapts content based on real-time emotion analysis
The Digital Brain
HOW OUR LLM EVOLVES

User Data
Information about the user, including age, location, flow, attention level, and interaction patterns across different touchpoints.
Age
Locations
Flow & Attention Level
Product Data
Details on viewed products, viewing time, click-through rate (CTR), and call-to-action (CTA) interactions.
Viewed products
Viewing Time
CTR & CTA
Emotion Data
Detected emotions, emotional correlations with user data, and emotional responses linked to product data.
Detected Emotions
Emotions p/ user data
Emotions p/ product data

Adjusting Hyper-Targeted Content
Content is personalized based on user data emotions and behavior, increasing engagement and conversions.
Identifying Patterns and Brand Interactions
The LLM detects trends and consumption patterns, helping brands better understand their customers.
Collecting Essential Data for Continuous Analysis
Relevant data is stored for ongoing optimization and insights.
Data Collected Per Machine
500K+
User Profiles Analyzed Daily
Age, location, attention levels, and interaction patterns are continuously processed to refine targeting.
1M+
Interactions Logged Per Day
Tracking viewed products, viewing time, click-through rate (CTR), and call-to-action (CTA) responses.
750k+
Emotions Detected
Analyzing facial expressions and engagement levels to optimize content and user experience.
93%
Accuracy
AI-powered analytics ensure content delivery is precise, relevant, and engaging for each user.
