About the YouTube Priority Flagger program (original) (raw)

The YouTube Priority Flagger program helps provide robust tools to government agencies and non-governmental organizations (NGOs). These agencies and NGOs are particularly effective at telling YouTube about content that violates our Community Guidelines.

The YouTube Priority Flagger program includes:

Program eligibility

Government agencies and NGOs are eligible to participate in the YouTube Priority Flagger program. Ideal candidates:

Certain organizations, including organizations from countries/regions where there’s a history of human rights abuses or speech suppression, may be subject to further review.

How to join the YouTube Priority Flagger program

If you represent an NGO or Government agency, get in touch with your local point of contact at YouTube or Google.

Tip: Before becoming a Priority Flagger, participants from governments and NGOs must attend a YouTube training to learn about our Community Guidelines and enforcement processes.

Program requirements

The Priority Flagger program exists to help enforce our Community Guidelines. Participants must:

All participants in the Priority Flagger program are subject to a non-disclosure agreement (NDA).

YouTube reserves the right to refuse participation in the program, modify program requirements, or suspend the program at our sole discretion.

Flag review process

YouTube content moderators review videos flagged by Priority Flaggers according to YouTube’s Community Guidelines. Content reported by Priority Flaggers is not automatically removed or subject to any differential policy treatment — the same standards apply for flags received from other users. But, because of their high degree of accuracy, our teams prioritize flags from Priority Flaggers for review.

The Priority Flagger program exists exclusively for the reporting of possible Community Guideline violations. It is not a flow for reporting content that may violate local law. Requests based on local law can be filed following the instructions here.

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