Accenture
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I applied via Recruitment Consulltant and was interviewed in Apr 2024. There were 3 interview rounds.
Genral and technical aptitude test
By creating a structured onboarding process, utilizing technology for efficiency, and leveraging a team of trainers.
Develop a comprehensive onboarding program with clear objectives and timelines.
Utilize technology such as online training modules and virtual onboarding sessions.
Assign a team of trainers to handle different aspects of the onboarding process.
Implement a buddy system where existing employees mentor new hir...
I applied via Company Website and was interviewed in Nov 2024. There were 2 interview rounds.
Logical, Verbal, reasoning 90 mins
I applied via Naukri.com and was interviewed in Aug 2024. There were 2 interview rounds.
Evaluation metrics for classification are used to assess the performance of a classification model.
Common evaluation metrics include accuracy, precision, recall, F1 score, and ROC-AUC.
Accuracy measures the proportion of correctly classified instances out of the total instances.
Precision measures the proportion of true positive predictions out of all positive predictions.
Recall measures the proportion of true positive p...
L1 and L2 regression are regularization techniques used in machine learning to prevent overfitting.
L1 regression adds a penalty equivalent to the absolute value of the magnitude of coefficients.
L2 regression adds a penalty equivalent to the square of the magnitude of coefficients.
L1 regularization can lead to sparse models, while L2 regularization tends to shrink coefficients towards zero.
L1 regularization is also know...
Random forest is an ensemble learning algorithm that builds multiple decision trees and combines their predictions.
Random forest creates multiple decision trees using bootstrapping and feature randomization.
Each tree in the random forest is trained on a subset of the data and features.
The final prediction is made by averaging the predictions of all the trees (regression) or taking a majority vote (classification).
I am a dedicated and passionate Machine Learning Engineer with a strong background in computer science and data analysis.
Experienced in developing machine learning models for various applications
Proficient in programming languages such as Python, R, and Java
Skilled in data preprocessing, feature engineering, and model evaluation
Strong understanding of algorithms and statistical concepts
Excellent problem-solving and ana
I applied via Referral and was interviewed in Sep 2024. There was 1 interview round.
I applied via Recruitment Consulltant and was interviewed in Jan 2022. There were 2 interview rounds.
I applied via LinkedIn and was interviewed in Jun 2024. There were 4 interview rounds.
Machine learning - Code K-Means
Machine Learning - Code Neural Network
L1 and L2 regression are regularization techniques used in machine learning to prevent overfitting by adding penalty terms to the loss function.
L1 regression adds the absolute values of the coefficients as penalty term (Lasso regression)
L2 regression adds the squared values of the coefficients as penalty term (Ridge regression)
L1 regularization can lead to sparse models with some coefficients being exactly zero
L2 regul...
AUC (Area Under the Curve) is a metric that measures the performance of a classification model. ROC (Receiver Operating Characteristic) is a graphical representation of the AUC.
AUC is a single scalar value that represents the area under the ROC curve.
ROC curve is a plot of the true positive rate against the false positive rate for different threshold values.
AUC ranges from 0 to 1, where a higher value indicates better ...
Parameter of random forest is the number of trees in the forest.
Number of trees in the forest affects model performance
Higher number of trees can lead to overfitting
Commonly tuned parameter in random forest algorithms
p, d, q values are parameters used in ARIMA time series models to determine the order of differencing and moving average components.
p represents the number of lag observations included in the model (autoregressive order)
d represents the degree of differencing needed to make the time series stationary
q represents the number of lagged forecast errors included in the model (moving average order)
For example, in an ARIMA(1,
I applied via Referral and was interviewed before Feb 2023. There were 2 interview rounds.
I have worked on projects related to image recognition, natural language processing, and predictive analytics using machine learning.
Developed a deep learning model for image recognition using convolutional neural networks
Implemented a sentiment analysis system using natural language processing techniques
Built a predictive analytics model for customer churn prediction in a telecom company
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