Hey Guys Welcome to CSE Study, Today I am providing you GATE 2024 Data Science and AI Syllabus PDF.
IISc, Bengaluru, is conducting the GATE 2024 examination, and this year GATE Data Science and Artificial Intelligence Paper should plan their studies by the GATE Data Science and AI Syllabus 2024.
Table of Contents
About GATE
The GATE (Graduate Aptitude Test in Engineering) exam is a standardized test for measuring the aptitude of candidates for various post-graduate education programs (e.g. Master’s and Doctoral programs) in engineering and technology.
Gate Exam conducted by IISc Bangallore and 7 old IITs
- IIT Delhi
- IIT Roorkee
- IIT Kanpur
- IIT Bmbay
- IIT Madras
- IIT Kharagpur
- IIT Guwahhati
GATE Data Science and Artificial Intelligence Syllabus 2024
Below is the given syllabus in written format and PDF Format Both
- Probability and Statistics
- Linear Algebra
- Calculus and Optimization
- Programming, Data Structures, and Algorithms
- Database Management and Warehousing
- Machine Learning
- AI (Artificial Intelligence)
Subject | Details |
---|---|
Linear Algebra | Vector space, subspaces, linear dependence and independence of vectors, matrices, projection matrix, orthogonal matrix, idempotent matrix, partition matrix and their properties, quadratic forms, systems of linear equations and solutions; Gaussian elimination, eigenvalues and eigenvectors, determinant, rank, nullity, projections, LU decomposition, singular value decomposition. |
Probability and Statistics | Counting (permutation and combinations), probability axioms, Sample space, events, independent events, mutually exclusive events, marginal, conditional and joint probability, Bayes Theorem, conditional expectation and variance, mean, median, mode and standard deviation, correlation, and covariance, random variables, discrete random variables and probability mass functions, uniform, Bernoulli, binomial distribution, Continuous random variables and probability distribution function, uniform, exponential, Poisson, normal, standard normal, t-distribution, chi-squared distributions, cumulative distribution function, Conditional PDF, Central limit theorem, confidence interval, z-test, t-test, chi-squared test. |
Calculus and Optimization | Functions of a single variable, limit, continuity and differentiability, Taylor series, maxima and minima, optimisation involving a single variable. |
Programming, Data Structures and Algorithms | Programming in Python, basic data structures: stacks, queues, linked lists, trees, hash tables; Search algorithms: linear search and binary search, basic sorting algorithms: selection sort, bubble sort and insertion sort; divide and conquer: merge sort, quicksort; introduction to graph theory; basic graph algorithms: traversals and shortest path. |
Database Management and Warehousing | Database Management and WarehousingER-model, relational model: relational algebra, tuple calculus, SQL, integrity constraints, normal form, file organisation, indexing, data types, data transformation such as normalisation, discretisation, sampling, compression; data warehouse modelling: schema for multidimensional data models, concept hierarchies, measures: categorisation and computations. |
Machine Learning | (i) Supervised Learning: regression and classificaƟon problems, simple linear regression, mulƟple linear regression, ridge regression, logisƟc regression, k-nearest neighbour, naive Bayes classifier, linear discriminant analysis, support vector machine, decision trees, bias variance trade-off, cross-validaƟon methods such as leave-one-out (LOO) cross-validaƟon, k-folds crossvalidaƟon, mulƟ-layer perceptron, feed-forward neural network; (ii) Unsupervised Learning: clustering algorithms, k-means/k-medoid, hierarchical clustering, top-down, boƩom-up: single-linkage, mulƟplelinkage, dimensionality reducƟon, principal component analysis. |
AI | Search: informed, uninformed, adversarial; logic, propositional, predicate; reasoning under uncertainty topics – conditional independence representation, exact inference through variable elimination, and approximate inference through sampling |
GATE 2024 DA Exam Pattern
Paper Name | GATE Data Science and Artificial Intelligence Paper |
Paper Code | DA |
Type of Questions | MCQs, MSQs, and NATS |
Section | General Aptitude + Data Science and AI |
GATE DA Paper Marks Distribution | General Aptitude: 15 Marks Data Science and AI Subject Questions: 85 Mark |
Negative Marking | For a 1-mark MCQ, an incorrect answer will result in a deduction of 1/3 mark. For a 2-mark MCQ, an incorrect answer will lead to a deduction of 2/3 marks. There is no penalty for incorrect responses to MSQ or NAT questions. |
GATE 2024 Data Science and AI Syllabus PDF Download
Some Important Link
Official Telegram | Click Here |
GATE 2023 Question Paper With Solution of CSE/IT | Click Here |
Telegram For CSE MCQs | Click Here |
You Tube | Click Here |
Download CSE/IT GATE Syllabus | Click Here |
Related Link
- Best Programming Language for Machine Learning 2023
- Computer Science And Engineering
- Details Syllabus of SSC MTS 2023
- Create website and earn money in India
- [PDF] KVS PGT Computer Science Syllabus Download 2023
- 5 Best Movies for Computer Science Students
- Important Topics DRDO CEPTAM Computer Science
- MCQs of Computer Science & Engineering