npatta01 / search-engine-workshop
Slides and notebook for the workshop on building a search system
☆22Updated 8 months ago
Related projects ⓘ
Alternatives and complementary repositories for search-engine-workshop
- Slides and notebook for the workshop on serving bert models in production☆24Updated 2 years ago
- Deploy A/B testing infrastructure in a containerized microservice architecture for Machine Learning applications.☆39Updated last year
- A PaaS End-to-End ML Setup with Metaflow, Serverless and SageMaker.☆37Updated 3 years ago
- The project completed for MLops Engineering Lab #1 by Team #1. See our wiki for more info☆16Updated 3 years ago
- 🛠 Python project template with unit tests, code coverage, linting, type checking, Makefile wrapper, and GitHub Actions.☆143Updated 7 months ago
- ShopME: An E2E fashion recommendation System☆20Updated last month
- Public repository for the Search with Machine Learning course taught by Daniel Tunkelang and Grant Ingersoll. Available at https://coris…☆51Updated last year
- Super Simple Similarities Service☆142Updated last year
- A repository that showcases how you can use ZenML with Git☆65Updated 3 months ago
- Production Machine Learning Pipeline for Text Classification with fastText☆32Updated 3 years ago
- Syllabus for Artificial Intelligence for Product Innovation Master of Engineering: https://ai.meng.duke.edu/degree☆33Updated last year
- Metaflow tutorials for ODSC West 2021☆65Updated 3 years ago
- Codes, scripts, and notebooks on various aspects of transformer models.☆27Updated last year
- Public repository for the "Data-Centric Deep Learning" course taught by Mike Wu and Andrew Maas. Available at https://corise.com/course/d…☆31Updated 3 months ago
- 🐍 Material for PyData Global 2021 Presentation: Effective Testing for Machine Learning Projects☆81Updated 2 years ago
- Best practices for engineering ML pipelines.☆37Updated 2 years ago
- A simple search engine to search medium stories built with streamlit and elasticsearch.☆40Updated 2 years ago
- Learn how to monitor ML systems to identify and mitigate sources of drift before model performance decay.☆76Updated 2 years ago
- Template for data pipelines, ML workflows, API dev and monitoring☆45Updated 10 months ago
- Slides and recordings of talks hosted by our community☆18Updated 5 months ago
- An efficient, to-the-point, and easy-to-use checklist to following when deploying an ML model into production.☆31Updated last year
- Materials for my 2021 NYU class on NLP and ML Systems (Master of Engineering).