GATE Data Science & AI 2026 Study Planner
Welcome to your personalized study planner for GATE Data Science and Artificial Intelligence (DA) 2026. This comprehensive tool will help you organize your preparation, track your progress, and maximize your study efficiency.
Your journey starts in April 2025 and continues until the exam in February 2026. With the right strategy and consistent effort, you'll be well-prepared to excel in the exam and secure admission to top universities.
About GATE DA
The Graduate Aptitude Test in Engineering (GATE) for Data Science and Artificial Intelligence (DA) is a prestigious national-level examination in India that tests the comprehensive understanding of various undergraduate subjects in engineering and science for admission to postgraduate programs in Indian institutes.
The GATE DA paper assesses candidates on:
- Probability and Statistics
- Linear Algebra
- Calculus and Optimization
- Programming, Data Structures and Algorithms
- Database Management and Warehousing
- Machine Learning
- Artificial Intelligence
- General Aptitude
Exam Pattern:
- Total Marks: 100
- Duration: 3 hours
- Question Types: Multiple Choice Questions (MCQs) and Numerical Answer Type (NAT)
- General Aptitude: 15% weightage
- Subject Questions: 85% weightage
- Negative Marking: For MCQs only (1/3 for 1-mark questions, 2/3 for 2-mark questions)
Your Preparation Journey
This planner is specifically designed for a B.Tech student graduating in June 2025, with a job requiring 8.5 hours daily and a morning gym routine. Your preparation will be structured in four key phases:
Foundation Phase (April - June 2025)
Build a strong foundation in the mathematical subjects that underpin Data Science and AI.
Programming & Database Phase (July - August 2025)
Leverage your existing Python and SQL knowledge while filling any gaps in these domains.
Advanced Topics (September - December 2025)
Focus on the core Data Science and AI topics that constitute the majority of the exam.
Revision & Mock Tests (January 2026)
Consolidate your knowledge and build exam temperament through intensive practice.
This planner includes:
- A daily schedule tailored to your constraints
- A subject-wise roadmap with hour allocations
- Curated free resources for each subject
- Progress tracking tools
- Note-taking functionality
- An interactive calendar
Your dedication today will shape your opportunities tomorrow!
Your Personalized Study Plan
Daily Schedule
Time | Activity |
---|---|
5:00 AM - 6:00 AM | Wake up, freshen up |
6:00 AM - 8:00 AM | Gym |
8:00 AM - 9:00 AM | Breakfast, get ready |
9:00 AM - 9:30 AM | Commute to work |
9:30 AM - 6:00 PM | Work (8.5 hours including breaks) |
6:00 PM - 8:30 PM | Commute back (arrive home by 8:30 PM) |
8:30 PM - 9:00 PM | Dinner, relax |
9:00 PM - 11:00 PM | Study (2 hours) |
11:00 PM - 5:00 AM | Sleep |
Time | Activity |
---|---|
8:00 AM - 9:00 AM | Wake up, breakfast |
9:00 AM - 1:00 PM | Study (4 hours) |
1:00 PM - 2:00 PM | Lunch break |
2:00 PM - 6:00 PM | Study (4 hours) |
6:00 PM - 8:00 PM | Gym/leisure |
8:00 PM - 10:00 PM | Study/revision (optional 2 hours) |
10:00 PM - 11:00 PM | Relax, sleep |
Study Hours Summary
Weekly Hours
- Weekdays: 5 days × 2 hours = 10 hours
- Weekends: 2 days × 8 hours = 16 hours
- Total per week: 26 hours
Monthly Hours
- Average weeks/month: 4.3
- Total per month: ~112 hours
Total Preparation
- April - December: ~936 hours
- January: ~112 hours
- Total: ~1048 hours
Subject-wise Roadmap
Subject | Hours Allocation | Percentage | Notes |
---|---|---|---|
Probability and Statistics | 100 hours | 10.6% | Foundation subject, high weightage |
Linear Algebra | 100 hours | 10.6% | Essential for ML/AI understanding |
Calculus and Optimization | 100 hours | 10.6% | Critical for gradient-based algorithms |
Programming, DS & Algorithms | 50 hours | 5.3% | Reduced due to existing Python knowledge |
Database Management | 50 hours | 5.3% | Reduced due to existing SQL knowledge |
Machine Learning | 175 hours | 18.6% | Emphasized due to high weightage |
Artificial Intelligence | 175 hours | 18.6% | Core focus area |
General Aptitude | 140 hours | 14.9% | 15% of GATE paper |
Buffer/Flexibility | 58 hours | 5.5% | For unexpected events/difficult topics |
Total | 948 hours | 100% | April 2025 - January 2026 |
Study Phases
Build a strong foundation in the mathematical subjects that underpin Data Science and AI.
Subject | Hours | Monthly Breakdown | Key Topics |
---|---|---|---|
Probability and Statistics | 100 hours | ~33 hours/month | Probability axioms, Random variables, Distributions, Statistical testing |
Linear Algebra | 100 hours | ~33 hours/month | Vectors, Matrices, Eigenvalues, SVD, Linear transformations |
Calculus and Optimization | 100 hours | ~33 hours/month | Limits, Derivatives, Integrals, Optimization techniques |
General Aptitude | 36 hours | ~12 hours/month | Verbal ability, Numerical ability, Reasoning |
Phase 1 Strategy:
- Focus on building strong conceptual understanding
- Use visualization tools to grasp complex mathematical concepts
- Practice basic problem-solving daily
- Create concise notes with formulas and key concepts
- Weekly self-assessment through practice problems
Leverage your existing Python and SQL knowledge while filling any gaps in these domains.
Subject | Hours | Monthly Breakdown | Key Topics |
---|---|---|---|
Programming, DS & Algorithms | 50 hours | ~25 hours/month | Python specifics, Data structures, Search/Sort algorithms, Graph algorithms |
Database Management | 50 hours | ~25 hours/month | ER modeling, Relational algebra, SQL, Data warehousing, Normalization |
General Aptitude | 24 hours | ~12 hours/month | Continue with regular practice |
Buffer/Revision of Phase 1 | ~50 hours | ~25 hours/month | Revisit difficult math concepts, Practice more problems |
Phase 2 Strategy:
- Use your existing Python knowledge to focus on GATE-specific programming questions
- Implement key data structures and algorithms in Python
- Practice database design and optimization problems
- Create sample SQL queries for common database operations
- Begin integrating Phase 1 knowledge with programming applications
Focus on the core Data Science and AI topics that constitute the majority of the exam.
Subject | Hours | Monthly Breakdown | Key Topics |
---|---|---|---|
Machine Learning | 175 hours | ~44 hours/month |
September: Regression models, Classification basics October: SVM, Decision trees, Ensemble methods November: Neural networks, Deep learning December: Unsupervised learning, Dimensionality reduction |
Artificial Intelligence | 175 hours | ~44 hours/month |
September: Search algorithms (informed, uninformed) October: Logic, propositional & predicate November: Reasoning under uncertainty December: Advanced AI topics |
General Aptitude | 48 hours | ~12 hours/month | Continue regular practice with previous GATE questions |
Phase 3 Strategy:
- Connect mathematical foundations to ML/AI applications
- Implement key algorithms to reinforce understanding
- Practice derivations of important formulas
- Focus on understanding model behavior, advantages, and limitations
- Begin solving previous years' GATE questions on these topics
- Create flowcharts for complex algorithms
Consolidate your knowledge and build exam temperament through intensive practice.
Activity | Hours | Focus |
---|---|---|
Comprehensive Revision | 40 hours | Review of all subjects using concise notes and formula sheets |
Previous Year Questions | 30 hours | Systematic solving of previous GATE questions (CS/IT papers for similar topics) |
Mock Tests | 30 hours | Full-length mock tests under timed conditions |
Weak Areas Focus | 12 hours | Targeted practice for identified weak areas |
Phase 4 Strategy:
- Take at least 8-10 full-length mock tests
- Analyze each mock test to identify weak areas
- Focus on timing and accuracy
- Revise formulas and key concepts daily
- Practice question selection strategy (which questions to attempt first)
- Focus on maintaining peak mental and physical health
Study Tips & Strategies
- Use commute time for listening to educational podcasts or audiobooks
- Take short 5-minute breaks every 25 minutes of study (Pomodoro technique)
- Create concise notes and review them regularly
- Join online forums or study groups for collaborative learning
- Use visualization techniques for complex mathematical concepts
- Solve at least 5 practice problems daily
- Regularly review your progress and adjust your plan if needed
- Maintain a healthy sleep schedule and diet
- Use spaced repetition for better retention of concepts
- Set specific, achievable goals for each study session
- For ML/AI: Implement algorithms in Python to reinforce understanding
- For Mathematics: Practice derivations and create formula sheets
- For Algorithms: Visualize execution using flowcharts or animation tools
- For Databases: Practice SQL queries on actual database systems
- For Aptitude: Daily practice of at least 5 problems across different topics
- For Statistics: Use real-world examples to understand concepts
- For Linear Algebra: Utilize visualizations for eigenvalues and transformations
- For Calculus: Focus on interpreting derivatives and integrals geometrically
- Use your Python experience to quickly master programming topics
- Apply SQL knowledge to solve complex database problems efficiently
- Connect AI/ML theory to practical implementations you're familiar with
- Share your knowledge by teaching concepts to others (reinforces learning)
- Use your existing coding skills to implement algorithms from scratch
- Create practical projects that apply theoretical concepts
- Utilize your technical background to understand mathematical foundations quickly
- Don't skip fundamentals even if topics seem familiar
- Avoid marathon study sessions; consistency is more effective
- Don't neglect General Aptitude (15% of total marks)
- Beware of information overload; focus on understanding core concepts
- Don't ignore health and sleep; they directly impact learning efficiency
- Avoid last-minute cramming before the exam
- Don't waste time on very obscure topics with low probability of appearing
- Refrain from comparing your progress with others constantly
- Start each week by setting specific, measurable goals for that week
- Reserve Sunday evenings for weekly review and planning the next week
- Dedicate at least one weekday to reviewing previously studied material
- Practice at least 20 GATE-style questions every weekend
- Take one practice test or solve one previous year paper every two weeks
- Allocate time for regular fitness and relaxation
- Connect with study partners or mentors once a week for doubt clearing
- Rotate subjects throughout the week to maintain interest and prevent burnout
Free Study Resources
Below is a curated collection of free, high-quality resources accessible in India to help you prepare for each subject in the GATE DA 2026 syllabus.
Probability and Statistics
Linear Algebra
Calculus and Optimization
Programming, Data Structures, and Algorithms
Database Management and Warehousing
Machine Learning
Artificial Intelligence
Mock Tests & Practice Papers
- GATE Overflow: Comprehensive question bank and discussions
- YouTube: GATE Academy free mock tests and solutions
- YouTube: MADE EASY free mock tests
- Testbook: Free GATE mock tests (limited access)
- GeeksforGeeks: GATE CS/IT practice questions (useful for overlapping topics)
Practice Strategies:
- Use CSE/IT papers for practicing overlapping topics like ML, programming, and databases
- Take timed tests to build exam temperament and time management skills
- Analyze mistakes thoroughly after each mock test
- Create a bank of frequently-appearing questions and concepts
- Practice both MCQs and numerical answer type questions
Online Forums & Communities
- GATE Overflow: Q&A platform for GATE aspirants
- Reddit: r/gatecse (useful for overlapping topics)
- Quora: GATE topic
- Facebook Groups: GATE aspirants community
- Kaggle: Discussion forums for Data Science topics
Study Group Formation Tips:
- Form a small study group (3-5 people) with similar goals and schedules
- Meet virtually once a week to discuss difficult topics
- Assign different subjects to members to create and share summaries
- Practice explaining concepts to each other (teaching reinforces learning)
- Conduct mock interviews and problem-solving sessions
Study Progress Tracker
Overall Progress
0 topics completed 0%
Weekly Goals
Hours Logged
Total Hours Logged: 0
Target: 936 hours
Topic Tracker
Study Notes
Your Notes
Note-Taking Tips
- Use the Cornell note-taking system: divide your notes into main points, details, and summary
- Create concise formula sheets for each mathematical subject
- Include examples to illustrate complex concepts
- Review and rewrite your notes periodically to reinforce learning
- Use diagrams, flowcharts, and mind maps for visual learning
- Highlight key definitions, formulas, and facts for quick revision
- Add page references to textbooks or online resources for deeper exploration
- Maintain a glossary of important terms and concepts
Study Calendar
Phase Overview
Phase 1
Apr - Jun 2025
Foundations
Phase 2
Jul - Aug 2025
Programming & Databases
Phase 3
Sep - Dec 2025
Advanced Topics
Phase 4
Jan 2026
Revision & Mock Tests
April 2025
Weekly Study Suggestions
- Introduction to Probability: Basic concepts, axioms, and properties
- Counting techniques: Permutations and combinations
- Vector spaces and subspaces basics
- Limits and continuity in calculus
- General Aptitude: Verbal ability practice
- Random variables and probability distributions
- Matrices, determinants, and eigenvalues
- Derivatives and applications
- Single variable optimization
- General Aptitude: Numerical ability practice
- Statistical hypothesis testing and confidence intervals
- Linear transformations and SVD
- Advanced optimization techniques
- General Aptitude: Analytical and logical reasoning
- Review of Phase 1 topics and practice problems
- Python programming: Data types, functions, and advanced features
- Basic data structures: Stacks, queues, linked lists
- Search algorithms: Linear and binary search
- Review of challenging topics from Phase 1
- General Aptitude: Regular practice
- Basic sorting algorithms and divide-and-conquer techniques
- ER modeling and relational model
- SQL queries and database design
- Data warehousing concepts
- Prepare for transition to ML and AI topics
- Supervised Learning: Regression models
- Classification basics: Logistic regression, k-NN
- Search algorithms in AI: Uninformed search
- Continue regular General Aptitude practice
- Support Vector Machines and Decision Trees
- Ensemble methods: Random forests, boosting
- Logic: Propositional and predicate logic
- Practice implementing ML algorithms
- Neural networks fundamentals
- Deep learning basics
- Reasoning under uncertainty
- Start solving previous GATE questions
- Unsupervised learning: Clustering algorithms
- Dimensionality reduction techniques
- Advanced AI topics and applications
- Begin systematic revision of all subjects
- Comprehensive revision of all subjects
- Practice with formula sheets and quick-recall techniques
- First round of full-length mock tests
- Identify and focus on weak areas
- Intensive practice of previous year questions
- Multiple mock tests under timed conditions
- Final revision of high-weightage topics
- Preparation strategy for exam day