Arul Bharathi

Arul Bharathi

Mentor
5.0
(30 reviews)
US$25.00
For every 15 mins
52
Sessions/Jobs
ABOUT ME
Principal Machine Learning Scientist, Data Science Leader (10+ years)
Principal Machine Learning Scientist, Data Science Leader (10+ years)

Principal Data Scientist / Applied Machine Learning Engineer with over 10 years of experience exploring, analyzing, and researching financial, real-estate and user behaviour data to procure insights, prescribe recommendations, build models, design experiments and deploy scalable machine learning applications.

English
Pacific Time (US & Canada) (-08:00)
Joined December 2017
EXPERTISE
4 years experience | 16 endorsements
Data Scientist / Applied Machine Learning Engineer with more than five years of experience in exploring, analyzing, and researching finan...
Data Scientist / Applied Machine Learning Engineer with more than five years of experience in exploring, analyzing, and researching financial, real-estate and user behavior data to procure insights, prescribe recommendations, build models, design experiments and deploy scalable machine learning applications. ML Competencies: Data Cleaning, Data Wrangling, Data Exploration, Data Analysis, Data Validation, Feature Extraction, Experiment Design, Feature Engineering, Feature Selection, Hypothesis Testing, Model Building - Regression, Classification, Clustering, Recommendation Engines, Model Performance Tuning, Model Evaluation, Visualization and Reporting ML Engineering Expertise: Big Data ETL Pipelines, ML/DL Inference Pipeline Design & Development, Feature Store Design, Feature Extraction & Transformation Pipeline Design, Model Packaging & API Development, Serverless ML API Development
3 years experience | 8 endorsements
Vision-based: Image Classification, Image Regression, Image Segmentation, Image Ranking, Image Similarity, Image Recommendation, Image St...
Vision-based: Image Classification, Image Regression, Image Segmentation, Image Ranking, Image Similarity, Image Recommendation, Image Style Transfer, Image Enhancement NLP- based: Text Classification, Text Representations, Named Entity Recognition, Text Description Mining
4 years experience | 2 endorsements
4 years experience | 14 endorsements
3 years experience | 1 endorsement
Proficient experience in RDDs, Dataframes and Spark Core advanced programming .
Proficient experience in RDDs, Dataframes and Spark Core advanced programming .

REVIEWS FROM CLIENTS

5.0
(30 reviews)
Lyndsie Daniels
Lyndsie Daniels
October 2021
Arul is the reason i am passing my class and doing so well, i am so thankful for all his help and expertise knowledge. returning customer as well
Kwaku N Boateng
Kwaku N Boateng
October 2021
Helped out a great deal on my R work project, much appreciated Arul!. Would definitely use again. :) Thanks mann.
oma
oma
September 2021
he is helpful
Lyndsie Daniels
Lyndsie Daniels
September 2021
I am so thankful for Arul, he was so patient and explained everything to where it was simple to understand. I learned more in an hour session from Arul about R studio than I would've trying to google or watch videos. He was very nice and saved me from a mental breakdown lol. will be hiring again, he knows what he is doing
Rose Matthews
Rose Matthews
September 2021
Great help with R!
John Lee
John Lee
September 2021
Great!
FA
FA
March 2020
very helpful!
Maria Gil
Maria Gil
March 2020
Super helpful! Took the time to explain everything step by step. I left the session actually learning something and understanding what I was doing.
Da Yin
Da Yin
December 2019
Arul was very helpful with my R function. Thanks Arul
sagar pandya
sagar pandya
December 2019
Arul has done a fantastic job. he resolve my queries. and also briefly explain to me as well.
SOCIAL PRESENCE
GitHub
Google-Analytics-Consumer-Revenue-Prediction
Jupyter Notebook
2
0
CollaborativeFiltering
Collaborative Filtering Using Min Hash and LSH
Python
0
0
EMPLOYMENTS
Data Scientist & Applied Machine Learning Engineer
Realtor.com
2018-01-01-Present
• Created scalable and optimized SQL queries to retrieve and aggregate terabytes of data from AWS Athena data lakes • Performed Consumer ...
• Created scalable and optimized SQL queries to retrieve and aggregate terabytes of data from AWS Athena data lakes • Performed Consumer Behavior Modelling using Tree-based Model Interpretation and singled out key variables impacting Consumer Churn • Trained and deployed PyTorch CNN models(ResNext, ResNet, VGG16) using AWS SageMaker
Python
Machine learning
Statistics
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Python
Machine learning
Statistics
Data Science
Deep Learning
Data science in python
PyTorch
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Senior Developer (Business Intelligence & Data Analytics)
Bank of New York Mellon
2013-05-01-2017-07-01
• Drove data analytic applications that involve metric reporting of financial and performance metrics of the firm. • Mined and analyzed m...
• Drove data analytic applications that involve metric reporting of financial and performance metrics of the firm. • Mined and analyzed massive sets of Workforce Analytics data to identify the key trends of employee engagement for increasing operational efficiency and workforce performance. • Analysed the trends of telecom, travel, infrastructure, and technology expenses incurred by the firm and predicted actionable insights to reduce the overall expense quotient of the firm. • Developed queries and maintained database architecture for My Dashboard, an application that is used by the employees and clients across the worldwide branches of BNY Mellon. • Won the BNY - Best of Class Award for successfully developing My Dashboard application and delivering it to numerous clients across the world. • Knowledge-engineered actionable insights by mining financial and performance data to ensure efficient operation and functioning of the proper business sectors. • Took care of End to End Delivery, Technical Support, and Documentation.
Python
Java
Angular
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Python
Java
Angular
Spring
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PROJECTS
Rival Check Cross Correlator for Locating Strategic Defense Bases Using Supervised LearningView Project
2017
The need of machine learning in the defence planning and strategies is increasing day by day due to the increasing amount of breaches and...
The need of machine learning in the defence planning and strategies is increasing day by day due to the increasing amount of breaches and decimations caused by terrorist forces. A myriad of military bases, temporary campaigns, base camps etc. are being targeted and attacked by several terrorist forces. The common problem in the warfare and tumultuous international borders is the frequent and violent intrusion and breaches upon the temporary / permanent military and army bases. Though they are successful in their individual task to identify the safest or the effective base, a combined location that embraces both effectiveness and vulnerability is invalid using a present analyzing and classification technology. This problem is due to the presence of collinearity between the parameters that determine both effectiveness and vulnerability. A military base location can be both effective and vulnerable at the same time, a location that does not provide sufficient effectiveness to perform military operation. To combat this problem, in this paper we propose an algorithm that identifies the two rival parameters (effectiveness and vulnerability) and cross correlates them one by one for checking collinearity between them. Additionally, after identifying the collinear combinations, the Rival Check Cross Correlation Algorithm eliminates those collinear combinations, thereby providing unambiguous combinations of effective variables.
Machine learning
AI
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Machine learning
AI
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