Shukla, AnmolTravasso, AaronManogaran, Harish BabuSisodia, Pallavi KishorLi, Yuze2023-03-102023-03-102022-01-08http://hdl.handle.net/10919/114078The primary objective of the project is to build a state-of-the-art system to search and retrieve relevant information effectively from a large corpus of electronic theses and dissertations. The system is targeted towards documents such as academic textbooks, dissertations and theses where the information available is enormous, compared to websites or blogs, which the conventional search engines are equipped to handle effectively. The entire work involved in developing the system has been divided into five areas such as data management (Team-1, Curator); search and retrieval (Team-2, User); object detection and topic analysis (Team-3, Objects & Topics); language models, classification, summarization and segmentation (Team-4, Classification & Summarization); and lastly integration (Team-5, Integration). The teams and their operations are structured in a way to mirror an environment of a company working on new product development. The Integration (INT) team focuses on one of the important aspects such as setting up work environments with all requirements for the teams, integrating the work done by the other four teams, and deploying suitable Docker containers for seamless operation (workflow) along with maintaining the cluster infrastructure. The INT team archives this distribution of code and containers on the Virginia Tech Docker Container Registry and deploys it on the Virginia Tech CS Cloud. The INT team also guides team evaluations of prospective container components and workflows. Additionally, the team implements continuous integration and continuous deployment to enable seamless integration, building and testing of code as they are developed. Furthermore, the team works on setting up a workflow management system that employs Apache Airflow to automate creating, scheduling, and monitoring of workflows. We have created customized containers for each team based on their individual requirements. We have developed a workflow management system using Apache Airflow that creates and manages workflows to achieve the goals of each team such as indexing, object detection, segmentation, summarization, and classification. We have also implemented a Continuous Integration and Continuous Deployment (CI/CD) pipeline to automatically create, test and deploy the updated image whenever a new push is made to a Git repository. Additionally, we extended our support to other teams in troubleshooting the issues they faced in deployment. Our current cluster statistics (i.e., Kubernetes Resource Definitions) are: 45 deployments, 40 ingresses, 39 pods, 180 services, and 13 secrets. Lastly, the INT team would like to express its gratitude to the work of the INT-2020 team and the predecessors who have done substantial work upon which we built. We would like to acknowledge here their significant contribution.en-USAttribution 4.0 InternationalInformation Storage and RetrievalDeveloper OperationsCloud InfrastructureUser ExperienceWorkflow AutomationCS5604 Fall 2022 - Team 5 INTPresentation