Learning in infinite dimension with neural operators.
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Updated
Nov 4, 2024 - Python
Learning in infinite dimension with neural operators.
This repository is the official implementation of the paper Convolutional Neural Operators for robust and accurate learning of PDEs
Library to collect NSE data in pandas dataframe
Set of PowerShell scripts to maintain D365FFO (Dynamics 365 for Finance and Operations)
An option payoff visualizer that allows you to add and customize strategies and visualize their payoffs. Site built with React, Material UI and D3.
Learned coupled inversion for carbon sequestration monitoring and forecasting with Fourier neural operators
A simple real-time Open Interest & Strategy Profit and Loss Visualizer for Indian Benchmark Indices and F&O Stocks inspired by Sensibull. The app is built with React, Material UI, D3 and Node.
This repository contains the machine learning projects completed for the class "Deep Learning in Scientific Computing" taught at ETH jointly by Siddhartha Mishra and Benjamin Moseley in Spring 2024. The description of the tasks can be found in the PDFs.
Using Finvasia Shoonya api for NSE, BSE, NFO trading using php
A comprehensive dashboard for monitoring stocks, including equities and futures and options (F&O) instruments
FnO Trading Bot in Typescript.
My solutions for the Artifficial Intelligence for Scientific Computing class at ETH Zurich
The deployed web app of HistoricalOptions.in
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