If I wanted to get my opportunity to interview at Google or Amazon for SDE roles in the next 6-8 months…
Here’s exactly how I’d approach it (I’ve taught this to 100s of students and followed it myself to land interviews at 3+ FAANGs):
► Step 1: Learn to Code (from scratch, even if you’re from non-CS background)
I helped my sister go from zero coding knowledge (she studied Biology and Electrical Engineering) to landing a job at Microsoft.
We started with:
- A simple programming language (C++, Java, Python — pick one)
- FreeCodeCamp on YouTube for beginner-friendly lectures
- Key rule: Don’t just watch. Code along with the video line by line.
Time required: 30–40 days to get good with loops, conditions, syntax.
► Step 2: Start with DSA before jumping to development
Why?
- 90% of tech interviews in top companies focus on Data Structures & Algorithms
- You’ll need time to master it, so start early.
Start with:
- Arrays → Linked List → Stacks → Queues
- You can follow the DSA videos on my channel.
- Practice while learning is a must.
► Step 3: Follow a smart topic order
Once you’re done with basics, follow this path:
1. Searching & Sorting
2. Recursion & Backtracking
3. Greedy
4. Sliding Window & Two Pointers
5. Trees & Graphs
6. Dynamic Programming
7. Tries, Heaps, and Union Find
Make revision notes as you go — note down how you solved each question, what tricks worked, and how you optimized it.
► Step 4: Start giving contests (don’t wait till you’re “ready”)
Most students wait to “finish DSA” before attempting contests.
That’s a huge mistake.
Contests teach you:
- Time management under pressure
- Handling edge cases
- Thinking fast
Platforms: LeetCode Weekly/ Biweekly, Codeforces, AtCoder, etc.
And after every contest, do upsolving — solve the questions you couldn’t during the contest.
► Step 5: Revise smart
Create a “Revision Sheet” with 100 key problems you’ve solved and want to reattempt.
Every 2-3 weeks, pick problems randomly and solve again without seeing solutions.
This trains your recall + improves your clarity.
Coding Projects:👇
https://whatsapp.com/channel/0029VazkxJ62UPB7OQhBE502
ENJOY LEARNING 👍👍
Here’s exactly how I’d approach it (I’ve taught this to 100s of students and followed it myself to land interviews at 3+ FAANGs):
► Step 1: Learn to Code (from scratch, even if you’re from non-CS background)
I helped my sister go from zero coding knowledge (she studied Biology and Electrical Engineering) to landing a job at Microsoft.
We started with:
- A simple programming language (C++, Java, Python — pick one)
- FreeCodeCamp on YouTube for beginner-friendly lectures
- Key rule: Don’t just watch. Code along with the video line by line.
Time required: 30–40 days to get good with loops, conditions, syntax.
► Step 2: Start with DSA before jumping to development
Why?
- 90% of tech interviews in top companies focus on Data Structures & Algorithms
- You’ll need time to master it, so start early.
Start with:
- Arrays → Linked List → Stacks → Queues
- You can follow the DSA videos on my channel.
- Practice while learning is a must.
► Step 3: Follow a smart topic order
Once you’re done with basics, follow this path:
1. Searching & Sorting
2. Recursion & Backtracking
3. Greedy
4. Sliding Window & Two Pointers
5. Trees & Graphs
6. Dynamic Programming
7. Tries, Heaps, and Union Find
Make revision notes as you go — note down how you solved each question, what tricks worked, and how you optimized it.
► Step 4: Start giving contests (don’t wait till you’re “ready”)
Most students wait to “finish DSA” before attempting contests.
That’s a huge mistake.
Contests teach you:
- Time management under pressure
- Handling edge cases
- Thinking fast
Platforms: LeetCode Weekly/ Biweekly, Codeforces, AtCoder, etc.
And after every contest, do upsolving — solve the questions you couldn’t during the contest.
► Step 5: Revise smart
Create a “Revision Sheet” with 100 key problems you’ve solved and want to reattempt.
Every 2-3 weeks, pick problems randomly and solve again without seeing solutions.
This trains your recall + improves your clarity.
Coding Projects:👇
https://whatsapp.com/channel/0029VazkxJ62UPB7OQhBE502
ENJOY LEARNING 👍👍
❤2
DSA (Data Structures and Algorithms) Essential Topics for Interviews
1️⃣ Arrays and Strings
Basic operations (insert, delete, update)
Two-pointer technique
Sliding window
Prefix sum
Kadane’s algorithm
Subarray problems
2️⃣ Linked List
Singly & Doubly Linked List
Reverse a linked list
Detect loop (Floyd’s Cycle)
Merge two sorted lists
Intersection of linked lists
3️⃣ Stack & Queue
Stack using array or linked list
Queue and Circular Queue
Monotonic Stack/Queue
LRU Cache (LinkedHashMap/Deque)
Infix to Postfix conversion
4️⃣ Hashing
HashMap, HashSet
Frequency counting
Two Sum problem
Group Anagrams
Longest Consecutive Sequence
5️⃣ Recursion & Backtracking
Base cases and recursive calls
Subsets, permutations
N-Queens problem
Sudoku solver
Word search
6️⃣ Trees & Binary Trees
Traversals (Inorder, Preorder, Postorder)
Height and Diameter
Balanced Binary Tree
Lowest Common Ancestor (LCA)
Serialize & Deserialize Tree
7️⃣ Binary Search Trees (BST)
Search, Insert, Delete
Validate BST
Kth smallest/largest element
Convert BST to DLL
8️⃣ Heaps & Priority Queues
Min Heap / Max Heap
Heapify
Top K elements
Merge K sorted lists
Median in a stream
9️⃣ Graphs
Representations (adjacency list/matrix)
DFS, BFS
Cycle detection (directed & undirected)
Topological Sort
Dijkstra’s & Bellman-Ford algorithm
Union-Find (Disjoint Set)
10️⃣ Dynamic Programming (DP)
0/1 Knapsack
Longest Common Subsequence
Matrix Chain Multiplication
DP on subsequences
Memoization vs Tabulation
11️⃣ Greedy Algorithms
Activity selection
Huffman coding
Fractional knapsack
Job scheduling
12️⃣ Tries
Insert and search a word
Word search
Auto-complete feature
13️⃣ Bit Manipulation
XOR, AND, OR basics
Check if power of 2
Single Number problem
Count set bits
Coding Interview Resources: https://whatsapp.com/channel/0029VammZijATRSlLxywEC3X
ENJOY LEARNING 👍👍
1️⃣ Arrays and Strings
Basic operations (insert, delete, update)
Two-pointer technique
Sliding window
Prefix sum
Kadane’s algorithm
Subarray problems
2️⃣ Linked List
Singly & Doubly Linked List
Reverse a linked list
Detect loop (Floyd’s Cycle)
Merge two sorted lists
Intersection of linked lists
3️⃣ Stack & Queue
Stack using array or linked list
Queue and Circular Queue
Monotonic Stack/Queue
LRU Cache (LinkedHashMap/Deque)
Infix to Postfix conversion
4️⃣ Hashing
HashMap, HashSet
Frequency counting
Two Sum problem
Group Anagrams
Longest Consecutive Sequence
5️⃣ Recursion & Backtracking
Base cases and recursive calls
Subsets, permutations
N-Queens problem
Sudoku solver
Word search
6️⃣ Trees & Binary Trees
Traversals (Inorder, Preorder, Postorder)
Height and Diameter
Balanced Binary Tree
Lowest Common Ancestor (LCA)
Serialize & Deserialize Tree
7️⃣ Binary Search Trees (BST)
Search, Insert, Delete
Validate BST
Kth smallest/largest element
Convert BST to DLL
8️⃣ Heaps & Priority Queues
Min Heap / Max Heap
Heapify
Top K elements
Merge K sorted lists
Median in a stream
9️⃣ Graphs
Representations (adjacency list/matrix)
DFS, BFS
Cycle detection (directed & undirected)
Topological Sort
Dijkstra’s & Bellman-Ford algorithm
Union-Find (Disjoint Set)
10️⃣ Dynamic Programming (DP)
0/1 Knapsack
Longest Common Subsequence
Matrix Chain Multiplication
DP on subsequences
Memoization vs Tabulation
11️⃣ Greedy Algorithms
Activity selection
Huffman coding
Fractional knapsack
Job scheduling
12️⃣ Tries
Insert and search a word
Word search
Auto-complete feature
13️⃣ Bit Manipulation
XOR, AND, OR basics
Check if power of 2
Single Number problem
Count set bits
Coding Interview Resources: https://whatsapp.com/channel/0029VammZijATRSlLxywEC3X
ENJOY LEARNING 👍👍
❤2
Learning Python in 2025 is like discovering a treasure chest 🎁 full of magical powers! Here's why it's valuable:
1. Versatility 🌟: Python is used in web development, data analysis, artificial intelligence, machine learning, automation, and more. Whatever your interest, Python has an option for it.
2. Ease of Learning 📚: Python's syntax is as clear as a sunny day!☀️ Its simple and readable syntax makes it beginner-friendly, perfect for aspiring programmers of all levels.
3. Community Support 🤝: Python has a vast community of programmers ready to help! Whether you're stuck on a problem or looking for guidance, there are countless forums, tutorials, and resources to tap into.
4. Job Opportunities 💼: Companies are constantly seeking Python wizards to join their ranks! From tech giants to startups, the demand for Python skills is abundant.🔥
5. Future-proofing 🔮: With its widespread adoption and continuous growth, learning Python now sets you up for success in the ever-evolving world of tech.
6. Fun Projects 🎉: Python makes coding feel like brewing potions! From creating games 🎮 to building robots 🤖, the possibilities are endless.
So grab your keyboard and embark on a Python adventure! It's not just learning a language, it's unlocking a world of endless possibilities.
1. Versatility 🌟: Python is used in web development, data analysis, artificial intelligence, machine learning, automation, and more. Whatever your interest, Python has an option for it.
2. Ease of Learning 📚: Python's syntax is as clear as a sunny day!☀️ Its simple and readable syntax makes it beginner-friendly, perfect for aspiring programmers of all levels.
3. Community Support 🤝: Python has a vast community of programmers ready to help! Whether you're stuck on a problem or looking for guidance, there are countless forums, tutorials, and resources to tap into.
4. Job Opportunities 💼: Companies are constantly seeking Python wizards to join their ranks! From tech giants to startups, the demand for Python skills is abundant.🔥
5. Future-proofing 🔮: With its widespread adoption and continuous growth, learning Python now sets you up for success in the ever-evolving world of tech.
6. Fun Projects 🎉: Python makes coding feel like brewing potions! From creating games 🎮 to building robots 🤖, the possibilities are endless.
So grab your keyboard and embark on a Python adventure! It's not just learning a language, it's unlocking a world of endless possibilities.
❤4
📊 Top 10 Data Analytics Concepts Everyone Should Know 🚀
1️⃣ Data Cleaning 🧹
Removing duplicates, fixing missing or inconsistent data.
👉 Tools: Excel, Python (Pandas), SQL
2️⃣ Descriptive Statistics 📈
Mean, median, mode, standard deviation—basic measures to summarize data.
👉 Used for understanding data distribution
3️⃣ Data Visualization 📊
Creating charts and dashboards to spot patterns.
👉 Tools: Power BI, Tableau, Matplotlib, Seaborn
4️⃣ Exploratory Data Analysis (EDA) 🔍
Identifying trends, outliers, and correlations through deep data exploration.
👉 Step before modeling
5️⃣ SQL for Data Extraction 🗃️
Querying databases to retrieve specific information.
👉 Focus on SELECT, JOIN, GROUP BY, WHERE
6️⃣ Hypothesis Testing ⚖️
Making decisions using sample data (A/B testing, p-value, confidence intervals).
👉 Useful in product or marketing experiments
7️⃣ Correlation vs Causation 🔗
Just because two things are related doesn’t mean one causes the other!
8️⃣ Data Modeling 🧠
Creating models to predict or explain outcomes.
👉 Linear regression, decision trees, clustering
9️⃣ KPIs & Metrics 🎯
Understanding business performance indicators like ROI, retention rate, churn.
🔟 Storytelling with Data 🗣️
Translating raw numbers into insights stakeholders can act on.
👉 Use clear visuals, simple language, and real-world impact
❤️ React for more
1️⃣ Data Cleaning 🧹
Removing duplicates, fixing missing or inconsistent data.
👉 Tools: Excel, Python (Pandas), SQL
2️⃣ Descriptive Statistics 📈
Mean, median, mode, standard deviation—basic measures to summarize data.
👉 Used for understanding data distribution
3️⃣ Data Visualization 📊
Creating charts and dashboards to spot patterns.
👉 Tools: Power BI, Tableau, Matplotlib, Seaborn
4️⃣ Exploratory Data Analysis (EDA) 🔍
Identifying trends, outliers, and correlations through deep data exploration.
👉 Step before modeling
5️⃣ SQL for Data Extraction 🗃️
Querying databases to retrieve specific information.
👉 Focus on SELECT, JOIN, GROUP BY, WHERE
6️⃣ Hypothesis Testing ⚖️
Making decisions using sample data (A/B testing, p-value, confidence intervals).
👉 Useful in product or marketing experiments
7️⃣ Correlation vs Causation 🔗
Just because two things are related doesn’t mean one causes the other!
8️⃣ Data Modeling 🧠
Creating models to predict or explain outcomes.
👉 Linear regression, decision trees, clustering
9️⃣ KPIs & Metrics 🎯
Understanding business performance indicators like ROI, retention rate, churn.
🔟 Storytelling with Data 🗣️
Translating raw numbers into insights stakeholders can act on.
👉 Use clear visuals, simple language, and real-world impact
❤️ React for more
❤7
Hey guys!
I’ve been getting a lot of requests from you all asking for solid Data Analytics projects that can help you boost resume and build real skills.
So here you go —
These aren’t just “for practice,” they’re portfolio-worthy projects that show recruiters you’re ready for real-world work.
1. Sales Performance Dashboard
Tools: Excel / Power BI / Tableau
You’ll take raw sales data and turn it into a clean, interactive dashboard. Show key metrics like revenue, profit, top products, and regional trends.
Skills you build: Data cleaning, slicing & filtering, dashboard creation, business storytelling.
2. Customer Churn Analysis
Tools: Python (Pandas, Seaborn)
Work with a telecom or SaaS dataset to identify which customers are likely to leave and why.
Skills you build: Exploratory data analysis, visualization, correlation, and basic machine learning.
3. E-commerce Product Insights using SQL
Tools: SQL + Power BI
Analyze product categories, top-selling items, and revenue trends from a sample e-commerce dataset.
Skills you build: Joins, GROUP BY, aggregation, data modeling, and visual storytelling.
4. HR Analytics Dashboard
Tools: Excel / Power BI
Dive into employee data to find patterns in attrition, hiring trends, average salaries by department, etc.
Skills you build: Data summarization, calculated fields, visual formatting, DAX basics.
5. Movie Trends Analysis (Netflix or IMDb Dataset)
Tools: Python (Pandas, Matplotlib)
Explore trends across genres, ratings, and release years. Great for people who love entertainment and want to show creativity.
Skills you build: Data wrangling, time-series plots, filtering techniques.
6. Marketing Campaign Analysis
Tools: Excel / Power BI / SQL
Analyze data from a marketing campaign to measure ROI, conversion rates, and customer engagement. Identify which channels or strategies worked best and suggest improvements.
Skills you build: Data blending, KPI calculation, segmentation, and actionable insights.
7. Financial Expense Analysis & Budget Forecasting
Tools: Excel / Power BI / Python
Work on a company’s expense data to analyze spending patterns, categorize expenses, and create a forecasting model to predict future budgets.
Skills you build: Time series analysis, forecasting, budgeting, and financial storytelling.
Pick 2–3 projects. Don’t just show the final visuals — explain your process on LinkedIn or GitHub. That’s what sets you apart.
Data Analytics Projects: https://whatsapp.com/channel/0029VbAbnvPLSmbeFYNdNA29
Like for more useful content ❤️
I’ve been getting a lot of requests from you all asking for solid Data Analytics projects that can help you boost resume and build real skills.
So here you go —
These aren’t just “for practice,” they’re portfolio-worthy projects that show recruiters you’re ready for real-world work.
1. Sales Performance Dashboard
Tools: Excel / Power BI / Tableau
You’ll take raw sales data and turn it into a clean, interactive dashboard. Show key metrics like revenue, profit, top products, and regional trends.
Skills you build: Data cleaning, slicing & filtering, dashboard creation, business storytelling.
2. Customer Churn Analysis
Tools: Python (Pandas, Seaborn)
Work with a telecom or SaaS dataset to identify which customers are likely to leave and why.
Skills you build: Exploratory data analysis, visualization, correlation, and basic machine learning.
3. E-commerce Product Insights using SQL
Tools: SQL + Power BI
Analyze product categories, top-selling items, and revenue trends from a sample e-commerce dataset.
Skills you build: Joins, GROUP BY, aggregation, data modeling, and visual storytelling.
4. HR Analytics Dashboard
Tools: Excel / Power BI
Dive into employee data to find patterns in attrition, hiring trends, average salaries by department, etc.
Skills you build: Data summarization, calculated fields, visual formatting, DAX basics.
5. Movie Trends Analysis (Netflix or IMDb Dataset)
Tools: Python (Pandas, Matplotlib)
Explore trends across genres, ratings, and release years. Great for people who love entertainment and want to show creativity.
Skills you build: Data wrangling, time-series plots, filtering techniques.
6. Marketing Campaign Analysis
Tools: Excel / Power BI / SQL
Analyze data from a marketing campaign to measure ROI, conversion rates, and customer engagement. Identify which channels or strategies worked best and suggest improvements.
Skills you build: Data blending, KPI calculation, segmentation, and actionable insights.
7. Financial Expense Analysis & Budget Forecasting
Tools: Excel / Power BI / Python
Work on a company’s expense data to analyze spending patterns, categorize expenses, and create a forecasting model to predict future budgets.
Skills you build: Time series analysis, forecasting, budgeting, and financial storytelling.
Pick 2–3 projects. Don’t just show the final visuals — explain your process on LinkedIn or GitHub. That’s what sets you apart.
Data Analytics Projects: https://whatsapp.com/channel/0029VbAbnvPLSmbeFYNdNA29
Like for more useful content ❤️
❤5
7 Essential Data Science Techniques to Master 👇
Machine Learning for Predictive Modeling
Machine learning is the backbone of predictive analytics. Techniques like linear regression, decision trees, and random forests can help forecast outcomes based on historical data. Whether you're predicting customer churn, stock prices, or sales trends, understanding these models is key to making data-driven predictions.
Feature Engineering to Improve Model Performance
Raw data is rarely ready for analysis. Feature engineering involves creating new variables from your existing data that can improve the performance of your machine learning models. For example, you might transform timestamps into time features (hour, day, month) or create aggregated metrics like moving averages.
Clustering for Data Segmentation
Unsupervised learning techniques like K-Means or DBSCAN are great for grouping similar data points together without predefined labels. This is perfect for tasks like customer segmentation, market basket analysis, or anomaly detection, where patterns are hidden in your data that you need to uncover.
Time Series Forecasting
Predicting future events based on historical data is one of the most common tasks in data science. Time series forecasting methods like ARIMA, Exponential Smoothing, or Facebook Prophet allow you to capture seasonal trends, cycles, and long-term patterns in time-dependent data.
Natural Language Processing (NLP)
NLP techniques are used to analyze and extract insights from text data. Key applications include sentiment analysis, topic modeling, and named entity recognition (NER). NLP is particularly useful for analyzing customer feedback, reviews, or social media data.
Dimensionality Reduction with PCA
When working with high-dimensional data, reducing the number of variables without losing important information can improve the performance of machine learning models. Principal Component Analysis (PCA) is a popular technique to achieve this by projecting the data into a lower-dimensional space that captures the most variance.
Anomaly Detection for Identifying Outliers
Detecting unusual patterns or anomalies in data is essential for tasks like fraud detection, quality control, and system monitoring. Techniques like Isolation Forest, One-Class SVM, and Autoencoders are commonly used in data science to detect outliers in both supervised and unsupervised contexts.
Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
Machine Learning for Predictive Modeling
Machine learning is the backbone of predictive analytics. Techniques like linear regression, decision trees, and random forests can help forecast outcomes based on historical data. Whether you're predicting customer churn, stock prices, or sales trends, understanding these models is key to making data-driven predictions.
Feature Engineering to Improve Model Performance
Raw data is rarely ready for analysis. Feature engineering involves creating new variables from your existing data that can improve the performance of your machine learning models. For example, you might transform timestamps into time features (hour, day, month) or create aggregated metrics like moving averages.
Clustering for Data Segmentation
Unsupervised learning techniques like K-Means or DBSCAN are great for grouping similar data points together without predefined labels. This is perfect for tasks like customer segmentation, market basket analysis, or anomaly detection, where patterns are hidden in your data that you need to uncover.
Time Series Forecasting
Predicting future events based on historical data is one of the most common tasks in data science. Time series forecasting methods like ARIMA, Exponential Smoothing, or Facebook Prophet allow you to capture seasonal trends, cycles, and long-term patterns in time-dependent data.
Natural Language Processing (NLP)
NLP techniques are used to analyze and extract insights from text data. Key applications include sentiment analysis, topic modeling, and named entity recognition (NER). NLP is particularly useful for analyzing customer feedback, reviews, or social media data.
Dimensionality Reduction with PCA
When working with high-dimensional data, reducing the number of variables without losing important information can improve the performance of machine learning models. Principal Component Analysis (PCA) is a popular technique to achieve this by projecting the data into a lower-dimensional space that captures the most variance.
Anomaly Detection for Identifying Outliers
Detecting unusual patterns or anomalies in data is essential for tasks like fraud detection, quality control, and system monitoring. Techniques like Isolation Forest, One-Class SVM, and Autoencoders are commonly used in data science to detect outliers in both supervised and unsupervised contexts.
Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
❤2
9 advanced coding project ideas to level up your skills:
🛒 E-commerce Website — manage products, cart, payments
🧠 AI Chatbot — integrate NLP and machine learning
🗃️ File Organizer — automate file sorting using scripts
📊 Data Dashboard — build interactive charts with real-time data
📚 Blog Platform — full-stack project with user authentication
📍 Location Tracker App — use maps and geolocation APIs
🏦 Budgeting App — analyze income/expenses and generate reports
📝 Markdown Editor — real-time preview and formatting
🔍 Job Tracker — store, filter, and search job applications
#coding #projects
🛒 E-commerce Website — manage products, cart, payments
🧠 AI Chatbot — integrate NLP and machine learning
🗃️ File Organizer — automate file sorting using scripts
📊 Data Dashboard — build interactive charts with real-time data
📚 Blog Platform — full-stack project with user authentication
📍 Location Tracker App — use maps and geolocation APIs
🏦 Budgeting App — analyze income/expenses and generate reports
📝 Markdown Editor — real-time preview and formatting
🔍 Job Tracker — store, filter, and search job applications
#coding #projects
❤4🐳1
Complete Data Science Roadmap
👇👇
1. Introduction to Data Science
- Overview and Importance
- Data Science Lifecycle
- Key Roles (Data Scientist, Analyst, Engineer)
2. Mathematics and Statistics
- Probability and Distributions
- Descriptive/Inferential Statistics
- Hypothesis Testing
- Linear Algebra and Calculus Basics
3. Programming Languages
- Python: NumPy, Pandas, Matplotlib
- R: dplyr, ggplot2
- SQL: Joins, Aggregations, CRUD
4. Data Collection & Preprocessing
- Data Cleaning and Wrangling
- Handling Missing Data
- Feature Engineering
5. Exploratory Data Analysis (EDA)
- Summary Statistics
- Data Visualization (Histograms, Box Plots, Correlation)
6. Machine Learning
- Supervised (Linear/Logistic Regression, Decision Trees)
- Unsupervised (K-Means, PCA)
- Model Selection and Cross-Validation
7. Advanced Machine Learning
- SVM, Random Forests, Boosting
- Neural Networks Basics
8. Deep Learning
- Neural Networks Architecture
- CNNs for Image Data
- RNNs for Sequential Data
9. Natural Language Processing (NLP)
- Text Preprocessing
- Sentiment Analysis
- Word Embeddings (Word2Vec)
10. Data Visualization & Storytelling
- Dashboards (Tableau, Power BI)
- Telling Stories with Data
11. Model Deployment
- Deploy with Flask or Django
- Monitoring and Retraining Models
12. Big Data & Cloud
- Introduction to Hadoop, Spark
- Cloud Tools (AWS, Google Cloud)
13. Data Engineering Basics
- ETL Pipelines
- Data Warehousing (Redshift, BigQuery)
14. Ethics in Data Science
- Ethical Data Usage
- Bias in AI Models
15. Tools for Data Science
- Jupyter, Git, Docker
16. Career Path & Certifications
- Building a Data Science Portfolio
Like if you need similar content 😄👍
👇👇
1. Introduction to Data Science
- Overview and Importance
- Data Science Lifecycle
- Key Roles (Data Scientist, Analyst, Engineer)
2. Mathematics and Statistics
- Probability and Distributions
- Descriptive/Inferential Statistics
- Hypothesis Testing
- Linear Algebra and Calculus Basics
3. Programming Languages
- Python: NumPy, Pandas, Matplotlib
- R: dplyr, ggplot2
- SQL: Joins, Aggregations, CRUD
4. Data Collection & Preprocessing
- Data Cleaning and Wrangling
- Handling Missing Data
- Feature Engineering
5. Exploratory Data Analysis (EDA)
- Summary Statistics
- Data Visualization (Histograms, Box Plots, Correlation)
6. Machine Learning
- Supervised (Linear/Logistic Regression, Decision Trees)
- Unsupervised (K-Means, PCA)
- Model Selection and Cross-Validation
7. Advanced Machine Learning
- SVM, Random Forests, Boosting
- Neural Networks Basics
8. Deep Learning
- Neural Networks Architecture
- CNNs for Image Data
- RNNs for Sequential Data
9. Natural Language Processing (NLP)
- Text Preprocessing
- Sentiment Analysis
- Word Embeddings (Word2Vec)
10. Data Visualization & Storytelling
- Dashboards (Tableau, Power BI)
- Telling Stories with Data
11. Model Deployment
- Deploy with Flask or Django
- Monitoring and Retraining Models
12. Big Data & Cloud
- Introduction to Hadoop, Spark
- Cloud Tools (AWS, Google Cloud)
13. Data Engineering Basics
- ETL Pipelines
- Data Warehousing (Redshift, BigQuery)
14. Ethics in Data Science
- Ethical Data Usage
- Bias in AI Models
15. Tools for Data Science
- Jupyter, Git, Docker
16. Career Path & Certifications
- Building a Data Science Portfolio
Like if you need similar content 😄👍
❤4