Reimagining Discovery
Finalizing adding finding aids, designing for how to display heirarchical items from Finding Aids and CURIOSity. Add in CURIOSity items to index, add in document type to eyebrow on front end. Confirm LLM selection and system prompts through team testing. Finalize front end in preparation for release to QA in Sprint 7.
Vision
Revolutionize how researchers, students, and the global community access and explore Harvard's extensive collections, making all kinds of information easily discoverable and accessible.
Project Goals
- Enhance user experience
- Improve discovery and accessibility of special and archival collections and all types of digital collections including but not limited to image, text, audio, video, born digital, immersive (3d, XR, VR, MR), GIS, etc.
- Integrate distinct digital collections discovery platforms, including developing a new one
- Investigate and use AI-powered tools to enhance user experience and metadata
Problem and Value Statements
Problem Statement
Since its founding, Harvard Library has been a guardian of the University’s memory and a gateway to the world's knowledge. We currently host an array of discovery systems that use different design approaches, organizational priorities, and technology standards. Scholars and the public expect to be able to find trustworthy information and discover resources easily regardless of the system that is managing and providing access to it.
Solution Business Value
By enabling rich cross-collection search, this project will offer end users intuitive, contextual discovery of special collections, archives and digital collections, through a mix of conversational interfaces, browsing that emphasizes the visual nature of materials when appropriate, and recommendations for similar or related resources, all informed by ongoing user research.
Alignment with Harvard Library Multi-Year Goals and Objectives
This projects aligns with FY 24 HL Goals:
- Diversify and expand access to knowledge
Maximize the breadth of tangible and digital collections across Harvard and peer institutions, for the benefit of all partners
Increase our focus on acquiring, accessing, and creating digital content that is accessible to all, as open as possible, and permits creative uses of collections as data
Invest in open access infrastructure and services that support equitable, sustainable models for scholarly communication and open knowledge
Scope
In Scope
- Cross collection search for special and archival collections, focusing on the end user experience and making clear the relationships between archival objects/items and larger collections
- Incorporate AI/ML technologies to offer natural language search, and generative AI features like summarization, while retaining baseline search and browse functions
- Access to digital content, and act as a replacement HOLLIS for Images and Harvard Digital Collections, extending their use cases to meet project goals: full text searching, born digital, GIS, A/V
- Reimagine metadata pipeline using new technologies from AI/ML
Out of Scope
- Discovery and access to licensed resources (articles, databases) and general collections
Deliverables and Work Products
Key Tasks and Outcomes
Sprints | Outcome | Responsible Parties |
---|---|---|
Sprint 1 | Gained foundational understanding of back end, and established collaboration practices with each other and other HUIT and LTS colleagues. Demo was not recorded. | Technical Project Team |
Sprint 2 | Investigated front end frameworks and decided on React, diagramed a draft front end architecture, and "made real" step 3 (semantic retrieval) in order to help begin the front end work. See recording of demo here. | Technical Project Team |
Sprint 3 | Initialize front end development (big win: to work with fastapi for semantic retrieval), finish deploy of semantic retrieval, and experiment with one LLM generative feature and finish indexing the Finding Aids. See recording of demo here. | Technical Project Team |
Sprint 4 | Continuing work on front end, making it deployable on dev and finishing back end generative AI features work. Planning for usability testing. See recorded demo here. | Technical Project Team |
Sprint 5 | Fix the data issues with Finding Aids, add new set to index and investigate adding CURIOSity items to index. Finalize front end work and create end to end testing. By end of sprint, estimate when usability can begin. See a recording of the demo here. | Technical Project Team |
Sprint 6 | Finalizing adding finding aids to index, designing for how to display hierarchical items from Finding Aids and CURIOSity. Add in CURIOSity items to index, add in document type to eyebrow on front end. Confirm LLM selection and system prompts through team testing. Finalize front end in preparation for release to QA in Sprint 7. See a recording of the demo here. | Technical Project Team |
Sprint 7 | Finalize and release Collections Explorer alpha to QA so that usability testing can begin in Sprint 8. See a recording of demo here. | Technical Project Team |
Sprint 8 | Onboard technical lead, demo confidence score investigation on front end, begin technical approach discussions and research for data pipeline, conduct usability tests of QA. See recording of demo here. | Technical Project Team |
Sprint 9 | Solidifying designs for data pipeline, making decision for vector database and scaling considerations based on estimates of metadata records and fulltext. Begin work on front end components for re-use. Usability analysis will be completed for design changes to "production" Collections Explorer. See recording of demo here. | Technical Project Team |
Sprint 10 | Set up Airflow locally and deploy code; develop baseline for testing relevancy in Q3; continue to work on front end components and remediate accessibility. See recording of demo here. | Technical Project Team |
Sprint 11 | Re-design "Results" page for Collections Explorer based on usability results. Start migration to NextJS for front end. Evaluate the 2 narrowed down choices for vector database and demo creation of an embedding document and retrieval in one of the vendor products. Deploy Airflow to our development environment. See recording of demo here. | Technical Project Team |
Definition of Done
Discovery platform, including access to digital assets, is released on production environment and in use by Harvard constituents and the public.
Stakeholders
Executive Stakeholders | Title |
---|---|
Martha Whitehead | VP for Harvard Library and University Librarian |
Stu Snydman | AUL & Managing Director for Library Technology Services |
Salwa Ismail | AUL for Discovery and Access (Jan. 2025) |
Tom Hyry | AUL for Archives and Special Collections |
The Library Stakeholders are acting as an extended project team, meeting weekly to help inform and prioritize the work.
Library Stakeholders | Title |
---|---|
Amy Deschenes | Head of UX and Digital Accessibility |
Kai Fay | Discovery & Access Strategic Projects Manager |
Adrien Hilton | Director of Technical Services for Archives and Special Collections |
Chelcie Rowell | Associate Head of Digital Collections Discovery |
Shalimar Fojas White | Herman & Joan Suit Librarian, Fine Arts Library |
Student interns, as needed | Harvard grad and undergraduate students |
Technical Project Team
Team Member | Title | Project Role(s) |
---|---|---|
Katie Amaral | Technical Project Lead | Developer, Architecture (LTS) |
Enrique Diaz | Manager of Library Software Engineering | Product Owner (LTS) |
Doug Simon | Senior Digital Library Software Engineer | Developer (LTS) |
JJ Chen | Digital Library Data Engineer | Developer (LTS) |
Maura Meagher | Associate UX Developer | Developer (LTS) |
Carolyn Caizzi | Senior IT Project Manager | Project Manager/ Scrum Lead (LTS) |
Meg McMahon | UX Researcher | UX Researcher/Designer (HL) |
Estimated Schedule
Project is managed by using the Scrum framework and these phases/milestones will be adjusted. Below is a a high level schedule. See more detailed view of project tasks here.
Phase | Phase Start | Phase End | Completion Milestone |
---|---|---|---|
1 | July 2024 | September 2024 | Natural language discovery platform with generative AI features for discovering digitized, special and archival collections is built and released to QA for testing. |
2 | October 2024 | December 2024 | Platform is tested by end users and improvements are recommended. Research into scaling platform for production is completed. Data pipeline is scoped and work begins. Design process for digitized collections (images) component is completed. |
3 | January 2025 | March 2025 | Data pipeline and digitized collections components begin to be built. Decision to soft launch discovery platform is made depending on data pipeline. |
4 | April 2025 | June 2025 | Cont. building data pipeline and digitized collections components. Platform is monitored for costs and analytics are gathered and reviewed to plan for full launch September 2025. |
5-12 | Years 2-3 will build out full text search integration, more types of digital collection discovery, and access, as well as continuously improve the platform. Investigation into and possible rollout of workflows for using AI to improve quality of metadata. |
Assumptions, Constraints, Dependencies, and Risks
Project Assumptions
- Stakeholders either have or have identified the appropriate subject matter experts to advise on prioritization of work and other project matters
- Stakeholders will have made available the time required to participate in project activities and to complete tasks as requested
- Project sponsor and other stakeholders are empowered to make the decision required for the project to be a success
- Project sponsor will provide written approval to move forward with system development when requested as part of incremental/iterative system demonstrations
Project Constraints
- Scope - Flexible (all types of digital collections depends on unknowns)
- Time - Fixed 3 year project
- Cost - Fixed 3 year budget
Project Dependencies
- ArcLight implementation project
- Media Presentation Service upgrade
- LibraryCloud reimagine or defining a new data pipeline
- DRS Futures project
- Rapidly changing LLM industry
Project Risks
Description | Plan | Impact | Owner |
---|---|---|---|
Rapidly changing Generative AI space | Build system to be flexible, swap out models easily | Cost, trust | Technical Project Team |
Library metadata quality is varied and semantic retrieval works with unstructured data | See if metadata fields can help the quality of embeddings; experiment with different embedding models, focusing on full text content and multi-modal models for digital images | Quality of retrieval | Metadata creators and Technical Project Team |
Unexpected changes to other library systems like Aeon, JSTOR Forum | Account for and expect changes from external systems in design of data pipeline | Timeline delays | Technical Project Team |
Staff capacity to support work of the project | Meeting weekly with stakeholders to ensure there is enough time to plan for bouts of work that include time from broader staff | Overall project success | Library Stakeholders |
Acceptance
Accepted by: Library Stakeholders August 8 2024
Prepared by: Carolyn Caizzi
Effective Date: August 9 2024