Tibil Solutions Pvt. Ltd. - Jr. Data Scientist
Job Description
Location: Bangalore
Experience: 3+ Years
Work Mode: 5 Days Work From Office (WFO)
Company: Tibil Solutions
We are looking for a skilled Data Scientist with strong experience in classical machine learning, regression modeling, and statistical analysis . The ideal candidate should have hands-on experience working with structured/tabular datasets and be able to translate data insights into actionable business solutions.
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Key Responsibilities \n- \n
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Develop, train, and deploy machine learning models to solve business problems.
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Perform data cleaning, preprocessing, and feature engineering on structured datasets.
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Apply statistical techniques such as hypothesis testing, probability analysis, and correlation studies.
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Build and validate regression and predictive models using machine learning techniques.
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Analyze large datasets to extract actionable insights.
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Work closely with product, engineering, and business teams to understand requirements.
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Communicate model performance, insights, and recommendations to stakeholders in a clear and concise manner.
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Continuously improve models through experimentation and evaluation.
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3+ years of experience as a Data Scientist or in a similar role.
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Strong expertise in classical machine learning algorithms and regression modeling .
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Solid understanding of statistics including:
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Probability
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Statistical distributions
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Hypothesis testing
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Correlation analysis
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Proficiency in Python and key data science libraries:
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scikit-learn
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pandas
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NumPy
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Experience working with structured/tabular data .
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Strong analytical thinking and problem-solving skills .
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Ability to explain complex models and results to non-technical stakeholders .
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