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2Multi-Label · Content Personalization

Content Personalization

For each user, what content categories will they engage with in the next 30 days?

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A real-world example

For each user, what content categories will they engage with in the next 30 days?

Content platforms show the same trending articles to everyone or rely on simple tag-based matching. Users who read technology articles about AI infrastructure are shown generic tech news instead of the specific sub-topics they care about. Engagement drops, session duration shrinks, and ad revenue follows. For a major publisher with 50M monthly users, a 10% improvement in engagement translates to $8-12M in additional annual ad revenue.

How KumoRFM solves this

Relational intelligence for true personalization

Kumo models the full user-content-interaction graph — reading time, scroll depth, sharing behavior, and cross-user patterns — to predict which content categories each user will engage with next. It discovers that users who read AI infrastructure pieces also engage deeply with cloud architecture content, a connection invisible to tag-based systems that treat categories as independent.

From data to predictions

See the full pipeline in action

Connect your tables, write a PQL query, and get predictions with built-in explainability — all in minutes, not months.

1

Your data

The relational tables Kumo learns from

USERS

user_idage_groupsignup_date
U00125-342024-03-10
U00235-442023-09-22
U00318-242024-08-15

ARTICLE_VIEWS

view_iduser_idarticle_idcategoryread_sectimestamp
V001U001ART501Technology2452025-02-18
V002U001ART302Sports1802025-02-19
V003U002ART718Finance3122025-02-18
2

Write your PQL query

Describe what to predict in 2–3 lines — Kumo handles the rest

PQL
PREDICT LIST_DISTINCT(ARTICLE_VIEWS.CATEGORY, 0, 30, days)
FOR EACH USERS.USER_ID
3

Prediction output

Every entity gets a score, updated continuously

USER_IDCLASSSCORETIMESTAMP
U001Technology0.932025-03-12
U001Sports0.812025-03-12
U002Finance0.882025-03-12
4

Understand why

Every prediction includes feature attributions — no black boxes

User U001 (age 25-34, signed up 2024-03-10)

Predicted: Will engage with Technology content — score 0.93

Top contributing features

Technology articles read (30 days)

18 articles, avg 4.1 min

36% attribution

Graph neighbors' top category

82% also read Technology

25% attribution

Cross-category signal (Sports + Tech)

Sports-tech crossover pattern

18% attribution

Session depth (Technology)

3.2 articles per session

13% attribution

Share rate (Technology)

0.15 (3x platform avg)

8% attribution

Feature attributions are computed automatically for every prediction. No separate tooling required. Learn more about Kumo explainability

Bottom line: 2-4x engagement lift over rule-based personalization. For publishers with 50M+ monthly users, this translates to $8-12M in additional annual ad revenue.

Topics covered

content personalization AImulti-label classificationcontent recommendation engineuser engagement predictiongraph neural network contentKumoRFMpredictive query languagemedia personalizationcontent feed optimizationarticle recommendationreader engagement AIrelational deep learning

One Platform. One Model. Predict Instantly.

KumoRFM

Relational Foundation Model

Turn structured relational data into predictions in seconds. KumoRFM delivers zero-shot predictions that rival months of traditional data science. No training, feature engineering, or infrastructure required. Just connect your data and start predicting.

For critical use cases, fine-tune KumoRFM on your data using the Kumo platform and Data Science Agent for 30%+ higher accuracy than traditional models.

Book a demo and get a free trial of the full platform: data science agent, fine-tune capabilities, and forward-deployed engineer support.