Data Analyst vs Data Engineer vs Data Scientist β
Skills required to become a Data Analyst π
- Advanced Excel: Proficiency in Excel is crucial for data manipulation, analysis, and creating dashboards.
- SQL/Oracle: SQL is essential for querying databases to extract, manipulate, and analyze data.
- Python/R: Basic scripting knowledge in Python or R for data cleaning, analysis, and simple automations.
- Data Visualization: Tools like Power BI or Tableau for creating interactive reports and dashboards.
- Statistical Analysis: Understanding of basic statistical concepts to analyze data trends and patterns.
Skills required to become a Data Engineer: π
- Programming Languages: Strong skills in Python or Java for building data pipelines and processing data.
- SQL and NoSQL: Knowledge of relational databases (SQL) and non-relational databases (NoSQL) like Cassandra or MongoDB.
- Big Data Technologies: Proficiency in Hadoop, Hive, Pig, or Spark for processing and managing large data sets.
- Data Warehousing: Experience with tools like Amazon Redshift, Google BigQuery, or Snowflake for storing and querying large datasets.
- ETL Processes: Expertise in Extract, Transform, Load (ETL) tools and processes for data integration.
Skills required to become a Data Scientist: π
- Advanced Tools: Deep knowledge of R, Python, or SAS for statistical analysis and data modeling.
- Machine Learning Algorithms: Understanding and implementation of algorithms using libraries like scikit-learn, TensorFlow, and Keras.
- SQL and NoSQL: Ability to work with both structured and unstructured data using SQL and NoSQL databases.
- Data Wrangling & Preprocessing: Skills in cleaning, transforming, and preparing data for analysis.
- Statistical and Mathematical Modeling: Strong grasp of statistics, probability, and mathematical techniques for building predictive models.
- Cloud Computing: Familiarity with AWS, Azure, or Google Cloud for deploying machine learning models.
Bonus Skills Across All Roles:
- Data Visualization: Mastery in tools like Power BI and Tableau to visualize and communicate insights effectively.
- Advanced Statistics: Strong statistical foundation to interpret and validate data findings.
- Domain Knowledge: Industry-specific knowledge (e.g., finance, healthcare) to apply data insights in context.
- Communication Skills: Ability to explain complex technical concepts to non-technical stakeholders.
I have curated best 80+ top-notch Data Analytics Resources ππ
https://t.me/DataSimplifier
Like this post for more content like this πβ₯οΈ
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
Skills required to become a Data Analyst π
- Advanced Excel: Proficiency in Excel is crucial for data manipulation, analysis, and creating dashboards.
- SQL/Oracle: SQL is essential for querying databases to extract, manipulate, and analyze data.
- Python/R: Basic scripting knowledge in Python or R for data cleaning, analysis, and simple automations.
- Data Visualization: Tools like Power BI or Tableau for creating interactive reports and dashboards.
- Statistical Analysis: Understanding of basic statistical concepts to analyze data trends and patterns.
Skills required to become a Data Engineer: π
- Programming Languages: Strong skills in Python or Java for building data pipelines and processing data.
- SQL and NoSQL: Knowledge of relational databases (SQL) and non-relational databases (NoSQL) like Cassandra or MongoDB.
- Big Data Technologies: Proficiency in Hadoop, Hive, Pig, or Spark for processing and managing large data sets.
- Data Warehousing: Experience with tools like Amazon Redshift, Google BigQuery, or Snowflake for storing and querying large datasets.
- ETL Processes: Expertise in Extract, Transform, Load (ETL) tools and processes for data integration.
Skills required to become a Data Scientist: π
- Advanced Tools: Deep knowledge of R, Python, or SAS for statistical analysis and data modeling.
- Machine Learning Algorithms: Understanding and implementation of algorithms using libraries like scikit-learn, TensorFlow, and Keras.
- SQL and NoSQL: Ability to work with both structured and unstructured data using SQL and NoSQL databases.
- Data Wrangling & Preprocessing: Skills in cleaning, transforming, and preparing data for analysis.
- Statistical and Mathematical Modeling: Strong grasp of statistics, probability, and mathematical techniques for building predictive models.
- Cloud Computing: Familiarity with AWS, Azure, or Google Cloud for deploying machine learning models.
Bonus Skills Across All Roles:
- Data Visualization: Mastery in tools like Power BI and Tableau to visualize and communicate insights effectively.
- Advanced Statistics: Strong statistical foundation to interpret and validate data findings.
- Domain Knowledge: Industry-specific knowledge (e.g., finance, healthcare) to apply data insights in context.
- Communication Skills: Ability to explain complex technical concepts to non-technical stakeholders.
I have curated best 80+ top-notch Data Analytics Resources ππ
https://t.me/DataSimplifier
Like this post for more content like this πβ₯οΈ
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
β€5
  π₯  VS Code Themes You Should Try
β€1
  Forwarded from Artificial Intelligence
The key to starting your AI career:
βIt's not your academic background
βIt's not previous experience
It's how you apply these principles:
1. Learn by building real AI models
2. Create a project portfolio
3. Make yourself visible in the AI community
No one starts off as an AI expert β but everyone can become one.
If you're aiming for a career in AI, start by:
βΆ Watching AI and ML tutorials
βΆ Reading research papers and expert insights
βΆ Doing internships or Kaggle competitions
βΆ Building and sharing AI projects
βΆ Learning from experienced ML/AI engineers
You'll be amazed how quickly you pick things up once you start doing.
So, start today and let your AI journey begin!
React β€οΈ for more helpful tips
βIt's not your academic background
βIt's not previous experience
It's how you apply these principles:
1. Learn by building real AI models
2. Create a project portfolio
3. Make yourself visible in the AI community
No one starts off as an AI expert β but everyone can become one.
If you're aiming for a career in AI, start by:
βΆ Watching AI and ML tutorials
βΆ Reading research papers and expert insights
βΆ Doing internships or Kaggle competitions
βΆ Building and sharing AI projects
βΆ Learning from experienced ML/AI engineers
You'll be amazed how quickly you pick things up once you start doing.
So, start today and let your AI journey begin!
React β€οΈ for more helpful tips
β€2
  AβZ list of programming languages
A β Assembly
Low-level language used to communicate directly with hardware.
B β BASIC
Beginnerβs All-purpose Symbolic Instruction Code β great for early learning.
C β C
Powerful systems programming language used in OS, embedded systems.
D β Dart
Used primarily for Flutter to build cross-platform mobile apps.
E β Elixir
Functional language for scalable, maintainable applications.
F β Fortran
One of the oldest languages, still used in scientific computing.
G β Go (Golang)
Developed by Google, known for its simplicity and performance.
H β Haskell
Purely functional language used in academia and finance.
I β Io
Minimalist prototype-based language with a small syntax.
J β Java
Versatile, object-oriented, used in enterprise, Android, and web apps.
K β Kotlin
Modern JVM language, official for Android development.
L β Lua
Lightweight scripting language often used in game development.
M β MATLAB
Designed for numerical computing and simulations.
N β Nim
Statically typed compiled language that is fast and expressive.
O β Objective-C
Used mainly for macOS and iOS development (pre-Swift era).
P β Python
Beginner-friendly, widely used in data science, web, AI, automation.
Q β Q#
Quantum programming language developed by Microsoft.
R β Ruby
Elegant syntax, used in web development (especially Rails framework).
S β Swift
Appleβs modern language for iOS, macOS development.
T β TypeScript
Superset of JavaScript adding static types, improving large-scale JS apps.
U β Unicon
Language combining goal-directed evaluation with object-oriented features.
V β V
Simple, fast language designed for safety and readability.
W β Wolfram Language
Used in Mathematica, powerful for symbolic computation and math.
X β Xojo
Cross-platform app development language with a VB-like syntax.
Y β Yorick
Used in scientific simulations and numerical computation.
Z β Zig
Low-level, safe language for systems programming, alternative to C.
React β€οΈ for more
A β Assembly
Low-level language used to communicate directly with hardware.
B β BASIC
Beginnerβs All-purpose Symbolic Instruction Code β great for early learning.
C β C
Powerful systems programming language used in OS, embedded systems.
D β Dart
Used primarily for Flutter to build cross-platform mobile apps.
E β Elixir
Functional language for scalable, maintainable applications.
F β Fortran
One of the oldest languages, still used in scientific computing.
G β Go (Golang)
Developed by Google, known for its simplicity and performance.
H β Haskell
Purely functional language used in academia and finance.
I β Io
Minimalist prototype-based language with a small syntax.
J β Java
Versatile, object-oriented, used in enterprise, Android, and web apps.
K β Kotlin
Modern JVM language, official for Android development.
L β Lua
Lightweight scripting language often used in game development.
M β MATLAB
Designed for numerical computing and simulations.
N β Nim
Statically typed compiled language that is fast and expressive.
O β Objective-C
Used mainly for macOS and iOS development (pre-Swift era).
P β Python
Beginner-friendly, widely used in data science, web, AI, automation.
Q β Q#
Quantum programming language developed by Microsoft.
R β Ruby
Elegant syntax, used in web development (especially Rails framework).
S β Swift
Appleβs modern language for iOS, macOS development.
T β TypeScript
Superset of JavaScript adding static types, improving large-scale JS apps.
U β Unicon
Language combining goal-directed evaluation with object-oriented features.
V β V
Simple, fast language designed for safety and readability.
W β Wolfram Language
Used in Mathematica, powerful for symbolic computation and math.
X β Xojo
Cross-platform app development language with a VB-like syntax.
Y β Yorick
Used in scientific simulations and numerical computation.
Z β Zig
Low-level, safe language for systems programming, alternative to C.
React β€οΈ for more
β€4
  β
 Data Analytics Roadmap for Freshers in 2025 ππ 
1οΈβ£ Understand What a Data Analyst Does
π Analyze data, find insights, create dashboards, support business decisions.
2οΈβ£ Start with Excel
π Learn:
β Basic formulas
β Charts & Pivot Tables
β Data cleaning
π‘ Excel is still the #1 tool in many companies.
3οΈβ£ Learn SQL
π§© SQL helps you pull and analyze data from databases.
Start with:
β SELECT, WHERE, JOIN, GROUP BY
π οΈ Practice on platforms like W3Schools or Mode Analytics.
4οΈβ£ Pick a Programming Language
π Start with Python (easier) or R
β Learn pandas, matplotlib, numpy
β Do small projects (e.g. analyze sales data)
5οΈβ£ Data Visualization Tools
π Learn:
β Power BI or Tableau
β Build simple dashboards
π‘ Start with free versions or YouTube tutorials.
6οΈβ£ Practice with Real Data
π Use sites like Kaggle or Data.gov
β Clean, analyze, visualize
β Try small case studies (sales report, customer trends)
7οΈβ£ Create a Portfolio
π» Share projects on:
β GitHub
β Notion or a simple website
π Add visuals + brief explanations of your insights.
8οΈβ£ Improve Soft Skills
π£οΈ Focus on:
β Presenting data in simple words
β Asking good questions
β Thinking critically about patterns
9οΈβ£ Certifications to Stand Out
π Try:
β Google Data Analytics (Coursera)
β IBM Data Analyst
β LinkedIn Learning basics
π Apply for Internships & Entry Jobs
π― Titles to look for:
β Data Analyst (Intern)
β Junior Analyst
β Business Analyst
π¬ React β€οΈ for more!
1οΈβ£ Understand What a Data Analyst Does
π Analyze data, find insights, create dashboards, support business decisions.
2οΈβ£ Start with Excel
π Learn:
β Basic formulas
β Charts & Pivot Tables
β Data cleaning
π‘ Excel is still the #1 tool in many companies.
3οΈβ£ Learn SQL
π§© SQL helps you pull and analyze data from databases.
Start with:
β SELECT, WHERE, JOIN, GROUP BY
π οΈ Practice on platforms like W3Schools or Mode Analytics.
4οΈβ£ Pick a Programming Language
π Start with Python (easier) or R
β Learn pandas, matplotlib, numpy
β Do small projects (e.g. analyze sales data)
5οΈβ£ Data Visualization Tools
π Learn:
β Power BI or Tableau
β Build simple dashboards
π‘ Start with free versions or YouTube tutorials.
6οΈβ£ Practice with Real Data
π Use sites like Kaggle or Data.gov
β Clean, analyze, visualize
β Try small case studies (sales report, customer trends)
7οΈβ£ Create a Portfolio
π» Share projects on:
β GitHub
β Notion or a simple website
π Add visuals + brief explanations of your insights.
8οΈβ£ Improve Soft Skills
π£οΈ Focus on:
β Presenting data in simple words
β Asking good questions
β Thinking critically about patterns
9οΈβ£ Certifications to Stand Out
π Try:
β Google Data Analytics (Coursera)
β IBM Data Analyst
β LinkedIn Learning basics
π Apply for Internships & Entry Jobs
π― Titles to look for:
β Data Analyst (Intern)
β Junior Analyst
β Business Analyst
π¬ React β€οΈ for more!
β€2π₯°1
  Here are some commonly asked SQL interview questions along with brief answers:
1. What is SQL?
- SQL stands for Structured Query Language, used for managing and manipulating relational databases.
2. What are the types of SQL commands?
- SQL commands can be broadly categorized into four types: Data Definition Language (DDL), Data Manipulation Language (DML), Data Control Language (DCL), and Transaction Control Language (TCL).
3. What is the difference between CHAR and VARCHAR data types?
- CHAR is a fixed-length character data type, while VARCHAR is a variable-length character data type. CHAR will always occupy the same amount of storage space, while VARCHAR will only use the necessary space to store the actual data.
4. What is a primary key?
- A primary key is a column or a set of columns that uniquely identifies each row in a table. It ensures data integrity by enforcing uniqueness and can be used to establish relationships between tables.
5. What is a foreign key?
- A foreign key is a column or a set of columns in one table that refers to the primary key in another table. It establishes a relationship between two tables and ensures referential integrity.
6. What is a JOIN in SQL?
- JOIN is used to combine rows from two or more tables based on a related column between them. There are different types of JOINs, including INNER JOIN, LEFT JOIN, RIGHT JOIN, and FULL JOIN.
7. What is the difference between INNER JOIN and OUTER JOIN?
- INNER JOIN returns only the rows that have matching values in both tables, while OUTER JOIN (LEFT, RIGHT, FULL) returns all rows from one or both tables, with NULL values in columns where there is no match.
8. What is the difference between GROUP BY and ORDER BY?
- GROUP BY is used to group rows that have the same values into summary rows, typically used with aggregate functions like SUM, COUNT, AVG, etc., while ORDER BY is used to sort the result set based on one or more columns.
9. What is a subquery?
- A subquery is a query nested within another query, used to return data that will be used in the main query. Subqueries can be used in SELECT, INSERT, UPDATE, and DELETE statements.
10. What is normalization in SQL?
- Normalization is the process of organizing data in a database to reduce redundancy and dependency. It involves dividing large tables into smaller tables and defining relationships between them to improve data integrity and efficiency.
Around 90% questions will be asked from sql in data analytics interview, so please make sure to practice SQL skills using websites like stratascratch. βΊοΈπͺ
1. What is SQL?
- SQL stands for Structured Query Language, used for managing and manipulating relational databases.
2. What are the types of SQL commands?
- SQL commands can be broadly categorized into four types: Data Definition Language (DDL), Data Manipulation Language (DML), Data Control Language (DCL), and Transaction Control Language (TCL).
3. What is the difference between CHAR and VARCHAR data types?
- CHAR is a fixed-length character data type, while VARCHAR is a variable-length character data type. CHAR will always occupy the same amount of storage space, while VARCHAR will only use the necessary space to store the actual data.
4. What is a primary key?
- A primary key is a column or a set of columns that uniquely identifies each row in a table. It ensures data integrity by enforcing uniqueness and can be used to establish relationships between tables.
5. What is a foreign key?
- A foreign key is a column or a set of columns in one table that refers to the primary key in another table. It establishes a relationship between two tables and ensures referential integrity.
6. What is a JOIN in SQL?
- JOIN is used to combine rows from two or more tables based on a related column between them. There are different types of JOINs, including INNER JOIN, LEFT JOIN, RIGHT JOIN, and FULL JOIN.
7. What is the difference between INNER JOIN and OUTER JOIN?
- INNER JOIN returns only the rows that have matching values in both tables, while OUTER JOIN (LEFT, RIGHT, FULL) returns all rows from one or both tables, with NULL values in columns where there is no match.
8. What is the difference between GROUP BY and ORDER BY?
- GROUP BY is used to group rows that have the same values into summary rows, typically used with aggregate functions like SUM, COUNT, AVG, etc., while ORDER BY is used to sort the result set based on one or more columns.
9. What is a subquery?
- A subquery is a query nested within another query, used to return data that will be used in the main query. Subqueries can be used in SELECT, INSERT, UPDATE, and DELETE statements.
10. What is normalization in SQL?
- Normalization is the process of organizing data in a database to reduce redundancy and dependency. It involves dividing large tables into smaller tables and defining relationships between them to improve data integrity and efficiency.
Around 90% questions will be asked from sql in data analytics interview, so please make sure to practice SQL skills using websites like stratascratch. βΊοΈπͺ
β€2
  Product team cases where a #productteams improved content discovery
Case: Netflix and Personalized Content Recommendations
Problem: Netflix wanted to improve user engagement by enhancing content discovery and reducing churn.
Solution: Using a product outcome mindset, Netflix's product team developed a recommendation algorithm that analyzed user viewing behavior and preferences to offer personalized content suggestions.
Outcome: Netflix saw a significant increase in user engagement, with the personalized recommendations leading to higher watch times and reduced churn.
Learn more: You can read about Netflix's recommendation system in various articles and research papers, such as "Netflix Recommendations: Beyond the 5 stars" (by Netflix).
Case: Spotify and Music Discovery
Problem: Spotify users were overwhelmed by the vast music library and struggled to discover new music.
Solution: Spotify's product team used data-driven insights to create personalized playlists like "Discover Weekly" and "Release Radar," tailored to users' listening habits.
Outcome: The personalized playlists increased user engagement, time spent on the platform, and the likelihood of users discovering and enjoying new music.
Link: Learn more about Spotify's approach to music discovery in articles like "How Spotify Discover Weekly and Release Radar Playlist Work" (by The Verge).
Case: Netflix and Personalized Content Recommendations
Problem: Netflix wanted to improve user engagement by enhancing content discovery and reducing churn.
Solution: Using a product outcome mindset, Netflix's product team developed a recommendation algorithm that analyzed user viewing behavior and preferences to offer personalized content suggestions.
Outcome: Netflix saw a significant increase in user engagement, with the personalized recommendations leading to higher watch times and reduced churn.
Learn more: You can read about Netflix's recommendation system in various articles and research papers, such as "Netflix Recommendations: Beyond the 5 stars" (by Netflix).
Case: Spotify and Music Discovery
Problem: Spotify users were overwhelmed by the vast music library and struggled to discover new music.
Solution: Spotify's product team used data-driven insights to create personalized playlists like "Discover Weekly" and "Release Radar," tailored to users' listening habits.
Outcome: The personalized playlists increased user engagement, time spent on the platform, and the likelihood of users discovering and enjoying new music.
Link: Learn more about Spotify's approach to music discovery in articles like "How Spotify Discover Weekly and Release Radar Playlist Work" (by The Verge).
β€2
  Bookmark these sites FOREVER!!!
β― HTML β learn-html
β― CSS β css-tricks
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β― Python β realpython
β― C β learn-c
β― C++ β fluentcpp
β― Java β baeldung
β― SQL β sqlbolt
β― Go β learn-golang
β― Kotlin β studytonight
β― Swift β codewithchris
β― C# β learncs
β― PHP β learn-php
β― DSA β techdevguide .withgoogle
β― HTML β learn-html
β― CSS β css-tricks
β― JavaScript β javascript .info
β― Python β realpython
β― C β learn-c
β― C++ β fluentcpp
β― Java β baeldung
β― SQL β sqlbolt
β― Go β learn-golang
β― Kotlin β studytonight
β― Swift β codewithchris
β― C# β learncs
β― PHP β learn-php
β― DSA β techdevguide .withgoogle
β€4
  π Data Analytics β Key Concepts for Beginners π
1οΈβ£ What is Data Analytics?
β The process of examining data sets to draw conclusions using tools, techniques, and statistical models.
2οΈβ£ Types of Data Analytics:
- Descriptive: What happened?
- Diagnostic: Why did it happen?
- Predictive: What could happen?
- Prescriptive: What should we do?
3οΈβ£ Common Tools:
- Excel
- SQL
- Python (Pandas, NumPy)
- R
- Tableau / Power BI
- Google Data Studio
4οΈβ£ Basic Skills Required:
- Data cleaning & preprocessing
- Data visualization
- Statistical analysis
- Querying databases
- Business understanding
5οΈβ£ Key Concepts:
- Data types (numerical, categorical)
- Mean, median, mode
- Correlation vs causation
- Outliers & missing values
- Data normalization
6οΈβ£ Important Libraries (Python):
- Pandas (data manipulation)
- Matplotlib / Seaborn (visualization)
- Scikit-learn (machine learning)
- Statsmodels (statistical modeling)
7οΈβ£ Typical Workflow:
Data Collection β Cleaning β Analysis β Visualization β Reporting
π‘ Tip: Always ask the right business question before jumping into analysis.
π¬ Tap β€οΈ for more!
1οΈβ£ What is Data Analytics?
β The process of examining data sets to draw conclusions using tools, techniques, and statistical models.
2οΈβ£ Types of Data Analytics:
- Descriptive: What happened?
- Diagnostic: Why did it happen?
- Predictive: What could happen?
- Prescriptive: What should we do?
3οΈβ£ Common Tools:
- Excel
- SQL
- Python (Pandas, NumPy)
- R
- Tableau / Power BI
- Google Data Studio
4οΈβ£ Basic Skills Required:
- Data cleaning & preprocessing
- Data visualization
- Statistical analysis
- Querying databases
- Business understanding
5οΈβ£ Key Concepts:
- Data types (numerical, categorical)
- Mean, median, mode
- Correlation vs causation
- Outliers & missing values
- Data normalization
6οΈβ£ Important Libraries (Python):
- Pandas (data manipulation)
- Matplotlib / Seaborn (visualization)
- Scikit-learn (machine learning)
- Statsmodels (statistical modeling)
7οΈβ£ Typical Workflow:
Data Collection β Cleaning β Analysis β Visualization β Reporting
π‘ Tip: Always ask the right business question before jumping into analysis.
π¬ Tap β€οΈ for more!
β€4
  Hey guys,
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π€ Top AI Technologies & Their Real-World Uses ππ‘
πΉ Machine Learning (ML)
1. Predictive Analytics
2. Fraud Detection
3. Product Recommendations
4. Stock Market Forecasting
5. Image & Speech Recognition
6. Spam Filtering
7. Autonomous Vehicles
8. Sentiment Analysis
πΉ Natural Language Processing (NLP)
1. Chatbots & Virtual Assistants
2. Language Translation
3. Text Summarization
4. Voice Commands
5. Sentiment Analysis
6. Email Categorization
7. Resume Screening
8. Customer Support Automation
πΉ Computer Vision
1. Facial Recognition
2. Object Detection
3. Medical Imaging
4. Traffic Monitoring
5. AR/VR Integration
6. Retail Shelf Analysis
7. License Plate Recognition
8. Surveillance Systems
πΉ Robotics
1. Industrial Automation
2. Warehouse Management
3. Medical Surgery
4. Agriculture Robotics
5. Military Drones
6. Delivery Robots
7. Disaster Response
8. Home Cleaning Bots
πΉ Generative AI
1. Text Generation (e.g. Chat)
2. Image Generation (e.g. DALLΒ·E, Midjourney)
3. Music & Voice Synthesis
4. Code Generation
5. Video Creation
6. Digital Art & NFTs
7. Content Marketing
8. Personalized Learning
πΉ Reinforcement Learning
1. Game AI (Chess, Go, Dota)
2. Robotics Navigation
3. Portfolio Management
4. Smart Traffic Systems
5. Personalized Ads
6. Drone Flight Control
7. Warehouse Automation
8. Energy Optimization
π Tap β€οΈ for more! .
πΉ Machine Learning (ML)
1. Predictive Analytics
2. Fraud Detection
3. Product Recommendations
4. Stock Market Forecasting
5. Image & Speech Recognition
6. Spam Filtering
7. Autonomous Vehicles
8. Sentiment Analysis
πΉ Natural Language Processing (NLP)
1. Chatbots & Virtual Assistants
2. Language Translation
3. Text Summarization
4. Voice Commands
5. Sentiment Analysis
6. Email Categorization
7. Resume Screening
8. Customer Support Automation
πΉ Computer Vision
1. Facial Recognition
2. Object Detection
3. Medical Imaging
4. Traffic Monitoring
5. AR/VR Integration
6. Retail Shelf Analysis
7. License Plate Recognition
8. Surveillance Systems
πΉ Robotics
1. Industrial Automation
2. Warehouse Management
3. Medical Surgery
4. Agriculture Robotics
5. Military Drones
6. Delivery Robots
7. Disaster Response
8. Home Cleaning Bots
πΉ Generative AI
1. Text Generation (e.g. Chat)
2. Image Generation (e.g. DALLΒ·E, Midjourney)
3. Music & Voice Synthesis
4. Code Generation
5. Video Creation
6. Digital Art & NFTs
7. Content Marketing
8. Personalized Learning
πΉ Reinforcement Learning
1. Game AI (Chess, Go, Dota)
2. Robotics Navigation
3. Portfolio Management
4. Smart Traffic Systems
5. Personalized Ads
6. Drone Flight Control
7. Warehouse Automation
8. Energy Optimization
π Tap β€οΈ for more! .
β€8