MEGHA SINGHAL (Megha-singhal11)

Megha-singhal11

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MEGHA SINGHAL's repositories

ML_optimizers

It contains fun learning ml optimizers , captions and formula in easy to understand and learning format.

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Insurance_premium_prediction

This is a ML Project

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DL_ASSIGNMENT

ALL TYPES OF THEORY AND PRACTICAL BASED QUESTIONS ON DL, USEFUL FOR INTERVIEW AND QUICK REVISION

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ML_assignments

all detailed and comprehensive questions on ML, covering various topics, handy for quick interview revision.

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Python_assignments

All python basic and advance python questions, important for in depth learning.

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Core_Data_science_assignments_ppt

Here assignments are on each domain of Data Science include programming/practical assignments.

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ARRAY_QUESTIONS_INTERVIEW_SOLUTIONS

HERE ARE 8 QUESTIONS CONSITING ALL BASIC AND IMPORTANT CONCEPTS, PYTHON LANGUAGE USED, FOCUS ON REDUCING TIME COMPLEXITY, EXAMPLES AND COMPLETE ALGORITHM IS EXPLAINED.

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DSA_MOCK_TEST

PYTHON CODE SOLVED FOR MOVE ZEROS

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ML-LINEAR-REGRESSION---CALIFORNIA-HOUSING-DATASET

All Linear Regression models are used such as

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COMPLETE-EDA-AND-FEATURE-ENGINEERING

CALIFORNIA HOUSING PRICE DATA SET ANALYSIS

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https-d.docs.live.net-bad6180573c2657f-Documents-WHEN-20TO-20USE-20WHICH-20TEST.docx

When to use which test (z, t, chi-square, correlation and proportion test) while analyzing any dataset

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https-d.docs.live.net-bad6180573c2657f-Documents-covariance-20and-20variance.docx

statistics basic theoretical concepts for better performance at time of analyzing the data

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