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Expectations for a Sustainability Analyst include conducting research, analyzing data, developing sustainability strategies, and monitoring progress.
Conduct research on environmental issues and sustainability practices
Analyze data to identify trends and opportunities for improvement
Develop sustainability strategies and initiatives for the organization
Monitor and evaluate the progress of sustainability programs
Collabora...
posted on 28 Jul 2024
I applied via Naukri.com and was interviewed in Nov 2024. There were 3 interview rounds.
Tough and it will be by gorilla
I applied via Naukri.com and was interviewed in Oct 2023. There were 2 interview rounds.
I manage problems by identifying the root cause, developing a plan, and effectively communicating with the team.
Identify the root cause of the problem
Develop a plan to address the problem
Communicate the plan and expectations to the team
Monitor progress and make necessary adjustments
Provide support and guidance to team members
Evaluate the effectiveness of the solution
I applied via Approached by Company and was interviewed in May 2023. There were 4 interview rounds.
I applied via Walk-in and was interviewed in Nov 2023. There was 1 interview round.
posted on 2 Oct 2023
I applied via Naukri.com and was interviewed before Oct 2022. There were 4 interview rounds.
I was interviewed in Apr 2021.
Hyperparameters of XGBoost, Random Forest, and SVM can be tuned using techniques like grid search, random search, and Bayesian optimization.
For XGBoost, important hyperparameters to tune include learning rate, maximum depth, and number of estimators.
For Random Forest, important hyperparameters to tune include number of trees, maximum depth, and minimum samples split.
For SVM, important hyperparameters to tune include ke...
Hyperparameters are settings that control the behavior of machine learning algorithms.
Hyperparameters are set before training the model.
They control the learning process and affect the model's performance.
Examples include learning rate, regularization strength, and number of hidden layers.
Optimizing hyperparameters is important for achieving better model accuracy.
Ridge and LASSO are regularization techniques used in linear regression to prevent overfitting.
Ridge adds a penalty term to the sum of squared errors, which shrinks the coefficients towards zero but doesn't set them exactly to zero.
LASSO adds a penalty term to the absolute value of the coefficients, which can set some of them exactly to zero.
The geometric interpretation of Ridge is that it adds a constraint to the size...
Steps to fit a time series model
Identify the time series pattern
Choose a suitable model
Split data into training and testing sets
Fit the model to the training data
Evaluate model performance on testing data
Refine the model if necessary
Forecast future values using the model
RNN and CNN are neural network architectures used for different types of data.
RNN is used for sequential data like time series, text, speech, etc.
CNN is used for grid-like data like images, videos, etc.
RNN has feedback connections while CNN has convolutional layers.
RNN can handle variable length input while CNN requires fixed size input.
Both can be used for classification, regression, and generation tasks.
Answering a question on data and objective function for cost and revenue optimization case studies.
For cost optimization, look at data related to expenses, production costs, and resource allocation.
For revenue optimization, look at data related to sales, customer behavior, and market trends.
Objective function for cost optimization could be minimizing expenses while maintaining quality.
Objective function for revenue opt...
I was interviewed before Jul 2022.
Social media content creation assignment based on theme of liking
based on 2 reviews
Rating in categories
Amazon Sellers Services
Easyday Club
More Mega Store
Panda Retail Company