Search Results for author: Vijayaraghavan Murali

Found 7 papers, 1 papers with code

Multi-line AI-assisted Code Authoring

no code implementations6 Feb 2024 Omer Dunay, Daniel Cheng, Adam Tait, Parth Thakkar, Peter C Rigby, Andy Chiu, Imad Ahmad, Arun Ganesan, Chandra Maddila, Vijayaraghavan Murali, Ali Tayyebi, Nachiappan Nagappan

In this paper, we present how we scaled the product from displaying single-line suggestions to multi-line suggestions.

Learning to Learn to Predict Performance Regressions in Production at Meta

no code implementations8 Aug 2022 Moritz Beller, Hongyu Li, Vivek Nair, Vijayaraghavan Murali, Imad Ahmad, Jürgen Cito, Drew Carlson, Ari Aye, Wes Dyer

Catching and attributing code change-induced performance regressions in production is hard; predicting them beforehand, even harder.

counterfactual regression

Improving Code Autocompletion with Transfer Learning

no code implementations12 May 2021 Wen Zhou, Seohyun Kim, Vijayaraghavan Murali, Gareth Ari Aye

Software language models have achieved promising results predicting code completion usages, and several industry studies have described successful IDE integrations.

Code Completion Transfer Learning

Programmatically Interpretable Reinforcement Learning

no code implementations ICML 2018 Abhinav Verma, Vijayaraghavan Murali, Rishabh Singh, Pushmeet Kohli, Swarat Chaudhuri

Unlike the popular Deep Reinforcement Learning (DRL) paradigm, which represents policies by neural networks, PIRL represents policies using a high-level, domain-specific programming language.

Car Racing reinforcement-learning +1

Neural Sketch Learning for Conditional Program Generation

1 code implementation ICLR 2018 Vijayaraghavan Murali, Letao Qi, Swarat Chaudhuri, Chris Jermaine

We study the problem of generating source code in a strongly typed, Java-like programming language, given a label (for example a set of API calls or types) carrying a small amount of information about the code that is desired.

Cannot find the paper you are looking for? You can Submit a new open access paper.