i
Sutherland Global Services
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Data can be extracted from various sources like databases, APIs, flat files, etc. and transformed using ETL tools before loading into BI.
Identify data sources and their accessibility
Choose appropriate ETL tool for data extraction and transformation
Design data model and schema for BI
Load data into BI using ETL tool
Validate and verify data accuracy and completeness
Top trending discussions
NER training using deep learning
I approach assignments by breaking them down into smaller tasks, setting deadlines, and regularly checking progress.
Break down the assignment into smaller tasks to make it more manageable
Set deadlines for each task to stay on track
Regularly check progress to ensure everything is on schedule
Seek feedback from colleagues or supervisors to improve the quality of work
I applied via Job Fair and was interviewed in May 2024. There were 3 interview rounds.
They gave a span of 3 days to build an AI-powered webapp
I have experience working with cloud technologies such as AWS, Azure, and Google Cloud Platform.
Experience in setting up and managing virtual machines, storage, and networking in cloud environments
Knowledge of cloud services like EC2, S3, RDS, and Lambda
Experience with cloud-based data processing and analytics tools like AWS Glue and Google BigQuery
Developed a predictive model for customer churn in a telecom company
Collected and cleaned customer data from various sources
Performed exploratory data analysis to identify key factors influencing churn
Built and fine-tuned machine learning models to predict customer churn
Challenges included imbalanced data, feature engineering, and model interpretability
posted on 6 May 2024
I applied via Recruitment Consulltant and was interviewed in Apr 2024. There was 1 interview round.
I applied via Campus Placement
Bulb and switch puzzle
Rope burning and length question
posted on 7 Oct 2023
Basic DP, Array Questions
I applied via Naukri.com and was interviewed in Mar 2023. There were 2 interview rounds.
Supervised learning is a type of machine learning where the algorithm learns from labeled data to make predictions or decisions.
Supervised learning requires labeled data, where the input and output variables are known.
The algorithm learns from the labeled data to make predictions or decisions on new, unseen data.
Examples include classification, regression, and prediction tasks.
Popular algorithms include decision trees,
I applied via Recruitment Consulltant and was interviewed before Aug 2023. There were 2 interview rounds.
Easy array questions.
Developed a machine learning model to predict customer churn for a telecom company.
Used Python and scikit-learn to preprocess data and build the model
Performed feature engineering to improve model performance
Evaluated model using metrics like accuracy, precision, and recall
posted on 12 Aug 2021
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