Personal details

Tushar G. - Remote back-end developer

Tushar G.

Based in: 🇮🇳 India
Timezone: Chennai (UTC+5.5)

Summary

I have good knowledge of predictive analysis, machine learning methodologies, modeling and cluster analysis of large datasets. I am proficient in utilizing SQL in RDBMS concepts. Experience in project documentation (functional and technical), developers and assisting team with project reports and status reports. Highly motivated learner with great team working skills Strong interpersonal, leadership and customer service skills.

I have published paper at BMVC 2017: https://arxiv.org/abs/1710.05158
Deep Learning Blogger: https://medium.com/@tushar20
Technical Skills: Tools: Lucene, Latex, Eclipse
Languages: Java, C, C++, R, Python
Machine Learning Libraries: TensorFlow, Scikit-Learn, Theano, Keras
Relational Database Management Systems: MySQL
Web framework: HTML, CSS, JavaScript

Work Experience

Senior Software Engineer
Grab | Jul 2021 - Present
MySQL
Python 3
Apache Kafka
Microservices
Go (Golang)
AWS (Amazon Web Services)
  • Worked on whitelisting pipeline to scale it to processes millions of request efficiently.
  • Lead a team of 2 engineers to deliver offline pay later product for SG users. The product enables grab toincrease MTV by 25%.
  • Lead a team of 5 engineers to deliver a highly scalable Pay later feature for MY users. The feature enablesGrab to onboard 10 million new users to Pay Later product.
  • Mentored multiple juniors about good engineering practices and multiple engineering initiatives.
  • Received The Grab Way award for bring in top 5% performer in Grab.
  • Technical skills: Golang, AWS, Mysql, Mongo, Redis, Kafka, Aerospike
Product Engineer
Cashfree.com | Mar 2019 - Present
MySQL
Python 3
Go (Golang)
Handling product

Education

Indian Institute of Technology Mandi
Bachelor's degreeComputer Science
Aug 2013 - Jun 2017

Personal Projects

BrainSegNet : A Segmentation Network for Human Brain Fiber Tractography Data into Anatomically Meaningful ClustersIconOpenNewWindows
2017
Deep Learning
The segregation of brain fiber tractography data into distinct and anatomically meaningful clusters can help to comprehend the complex brain structure and early investigation and management of various neural disorders. We propose a novel stacked bidirectional long short-term memory(LSTM) based segmentation network, (BrainSegNet) for human brain fiber tractography data classification. We perform a two-level hierarchical classification a) White vs Grey matter (Macro) and b) White matter clusters (Micro). BrainSegNet is trained over three brain tractography data having over 250,000 fibers each. Our experimental evaluation shows that our model achieves state-of-the-art results. We have performed inter as well as intra class testing over three patient's brain tractography data and achieved a high classification accuracy for both macro and micro levels both under intra as well as inter brain testing scenario.
Santander Customer SatisfactionIconOpenNewWindows
2016
Machine Learning
Python 3
Ranked 48 on kaggle out of 5123 participants. From frontline support teams to C-suites, customer satisfaction is a key measure of success. Unhappy customers don't stick around. What's more, unhappy customers rarely voice their dissatisfaction before leaving. To identify dissatisfied customers early in their relationship. Doing so would allow Santander to take proactive steps to improve a customer's happiness before it's too late. In this competition, you'll work with hundreds of anonymized features to predict if a customer is satisfied or dissatisfied with their banking experience.