Home | Connectors | SharePoint | SharePoint - Prodigy Integration and Automation
Data flow: SharePoint ? Prodigy
Teams can store source documents, images, PDFs, and transcripts in SharePoint document libraries and push selected content into Prodigy for labeling. This is useful when business users already manage regulated or sensitive content in SharePoint and data science teams need controlled access to approved files for model training.
Business value: Reduces duplicate file storage, improves governance, and prevents annotation teams from working on outdated or unauthorized content.
Data flow: Prodigy ? SharePoint
After labeling is completed in Prodigy, exported annotations, review reports, and dataset snapshots can be saved back to SharePoint for business review, audit, and retention. This supports traceability for regulated use cases where stakeholders need to see what was labeled, when, and by whom.
Business value: Improves compliance, supports model governance, and gives non technical stakeholders visibility into training data preparation.
Data flow: SharePoint ? Prodigy
Business teams can submit labeling requests through a SharePoint list or form, including project details, data source links, label schema, priority, and due date. A workflow can then route approved requests to Prodigy projects for annotation setup.
Business value: Creates a structured intake process, reduces ad hoc requests, and improves prioritization across AI initiatives.
Data flow: Prodigy ? SharePoint
Annotated samples, edge cases, and review summaries can be published to SharePoint team sites for subject matter experts to validate labels. This is especially useful when domain experts are not regular Prodigy users but need to approve taxonomy decisions or resolve ambiguous cases.
Business value: Improves label quality, speeds up expert review, and makes collaboration easier for non technical reviewers.
Data flow: SharePoint ? Prodigy
Organizations working with vendors, contractors, or external annotators can use SharePoint permissions to control which files are exposed to Prodigy and which outputs are returned. This is valuable when training data contains confidential customer records, internal documents, or proprietary product information.
Business value: Strengthens data security, simplifies partner collaboration, and supports least privilege access practices.
Data flow: Prodigy ? SharePoint ? Prodigy
Prodigy can identify uncertain samples that need human review, and those samples can be published to a SharePoint queue for business experts to inspect. Once reviewed, the decisions can be sent back into Prodigy to refine the labeling model and improve future sample selection.
Business value: Reduces labeling effort, improves model accuracy faster, and creates a repeatable human in the loop workflow.
Data flow: SharePoint ? Prodigy
SharePoint can serve as the central repository for labeling guidelines, taxonomy definitions, examples, and policy documents that Prodigy annotators reference during project setup and execution. This helps ensure consistent labeling across teams and projects.
Business value: Improves annotation consistency, reduces training time for annotators, and supports scalable AI operations across departments.
Data flow: Prodigy ? SharePoint
Annotation progress, throughput, quality metrics, and backlog status from Prodigy can be published into SharePoint pages or lists for leadership reporting. This gives program managers and business owners a simple way to monitor AI project delivery without logging into the annotation tool.
Business value: Improves transparency, supports project governance, and helps teams manage AI delivery against business timelines.