There are no reviews yet. Be the first to send feedback to the community and the maintainers!
monigo
MoniGo is a performance monitoring library for Go apps, offering real-time insights into service-level and function-level metrics. With an intuitive UI, it enables developers to track and optimize performance. Get your Go app's dashboard up in just 10 seconds!VR-for-Education-
Tinder-clone-Frontend
OCE-React
NASA-Earth-Observatory-Natural-Event-Tracker
TwitterUI-CodeChella
django-web-app
StayCall
Discover your ideal home away from home. Create unforgettable memories with StayCall.Bank-Marketing-Campaign-Predictive-Analysis
Problem Statement All bank marketing campaigns are dependent on customers’ huge electronic data. The size of these data sources is impossible for a human analyst to come up with interesting information that will help in the decision-making process. Data mining models are completely helping in the performance of these campaigns. The purpose is increasing the campaign effectiveness by identifying the main characteristics that affect a success (the deposit subscribed by the client) based on a handful of algorithms that we will test (e.g. Logistic Regression, Random Forests, Decision Trees and others). With the experimental results we will demonstrate the performance of the models by statistical metrics like accuracy, sensitivity, precision, recall, etc. We the higher scoring of these metrics, we will be able to judge the success of these models in predicting the best campaign contact with the clients for subscribing deposit. The aim of the marketing campaign was to get customers to subscribe to a bank term deposit product. Whether they did this or not is variable ‘y’ in the data set. The bank in question is considering how to optimize this campaign in future. What would your recommendations to the marketing manager be?Go-Lang-Resources
Hey Folks 🖐🏻, I'm maintaining this repository to keep track of all the resources I've used to learn Go LangTinder-clone-Backend-withoutPass
Network-Analysis-of-Game-of-Thrones
DataScience Hackathon - " A Network Analysis of Game of Thrones" Team Details: Yash Chauhan and Vidhi Bhavsar Contact.no: 9925877996 Email: [email protected] Our Tasks (1) First load the dataset (2) Time for some Network of Thrones (3) Populate the network with the DataFrame (4) The most important character in Game of Thrones (5) The evolution of character importance (6) What's up with Stannis Baratheon? (7) What does Google PageRank tell us about GoT? (8) Correlation between different measures (9) ConclusionLove Open Source and this site? Check out how you can help us