Ashwin Agrawal

Ashwin Agrawal

ABOUT ME
Developer at R Organisation-Google Summer of code and Quantitative Research Consultant at World Quant LLC (algo trading)
Developer at R Organisation-Google Summer of code and Quantitative Research Consultant at World Quant LLC (algo trading)

R Developer- Google Summer of Code in R organisation for statistical computing r- Research Consultant at World Quant- Algo trading-Developed several sophisticated trading signals for trading in US, European and Asian markets in python and expression.
Data structures and Algorithms in advanced C++ and C, Advanced Machine learning in R.
Always ready to help and contribute:)

Hindi, English
Chennai (+05:30)
Joined July 2017
EXPERTISE
1 year experience
Selected for second time consecutive for google summer of code 2018 under R project for statistical computing
Selected for second time consecutive for google summer of code 2018 under R project for statistical computing
2 years experience
SOCIAL PRESENCE
GitHub
Technical-Indicators-In-C-
C++ codes of different technical indicators in financial markets
C++
3
0
BiodiversitydatacleaningGSoC17
Biodiversitydatacleaning
HTML
2
0
Stack Overflow
569 Reputation
0
2
13
EMPLOYMENTS
Data Science Software Developer
Myntra
2018-06-01-Present
Develop and build Machine Learning/Deep learning solutions
Develop and build Machine Learning/Deep learning solutions
Python
R
Pandas
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Python
R
Pandas
Apache Spark
Deep Learning
Theano
Data science in python
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PROJECTS
Classification model for bank telemarketing (Data mining, Feature Selection)View Project
2016
1) The research is based on data related with direct marketing campaigns of a Portuguese banking institution. The marketing campaigns wer...
1) The research is based on data related with direct marketing campaigns of a Portuguese banking institution. The marketing campaigns were based on phone calls. Often, more than one contact to the same client was required, in order to access if the product (bank term deposit) would be ('yes') or not ('no') subscribed. 2) The goal is to classify whether a client will subscribe a term deposit (yes/no).
R
Machine Learning
Big Data
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R
Machine Learning
Big Data
Neural Networks
Random forest
Deep Learning
Feature selection
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Predicting air pollution levels (PM10) in a designated city using Machine Learning algorithms.
2017
1) The project was based on building a robust predictive model using different machine learning algorithms and time series analysis for f...
1) The project was based on building a robust predictive model using different machine learning algorithms and time series analysis for future prediction of air pollution levels. 2) Different machine learning algorithms were applied (Random Forest, SVM, Neural Network, Deep Neural Networks).
R
Neural Networks
Random forest
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R
Neural Networks
Random forest
Deep Learning
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