Since many of you were asking me to send Data Science Session
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This will help you to speed up your job hunting process ๐ช
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๐So we have come with a session for you!! ๐จ๐ปโ๐ป ๐ฉ๐ปโ๐ป
This will help you to speed up your job hunting process ๐ช
Register here
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Only limited free slots are available so Register Now
โค4
โ
Data Scientists in Your 20s โ Avoid This Trap ๐ซ๐ง
๐ฏ The Trap? โ Passive Learning
Feels like youโre learning but not truly growing.
๐ Example:
โฆ Watching endless ML tutorial videos
โฆ Saving notebooks without running or understanding
โฆ Joining courses but not coding models
โฆ Reading research papers without experimenting
End result?
โ No models built from scratch
โ No real data cleaning done
โ No insights or reports delivered
This is passive learning โ absorbing without applying. It builds false confidence and slows progress.
๐ ๏ธ How to Fix It:
1๏ธโฃ Learn by doing: Grab real datasets (Kaggle, UCI, public APIs)
2๏ธโฃ Build projects: Classification, regression, clustering tasks
3๏ธโฃ Document findings: Share explanations like youโre presenting to stakeholders
4๏ธโฃ Get feedback: Post code & reports on GitHub, Kaggle, or LinkedIn
5๏ธโฃ Fail fast: Debug models, tune hyperparameters, iterate frequently
๐ In your 20s, build practical data intuition โ not just theory or certificates.
Stop passive watching.
Start real modeling.
Start storytelling with data.
Thatโs how data scientists grow fast in the real world! ๐
๐ฌ Tap โค๏ธ if this resonates with you!
๐ฏ The Trap? โ Passive Learning
Feels like youโre learning but not truly growing.
๐ Example:
โฆ Watching endless ML tutorial videos
โฆ Saving notebooks without running or understanding
โฆ Joining courses but not coding models
โฆ Reading research papers without experimenting
End result?
โ No models built from scratch
โ No real data cleaning done
โ No insights or reports delivered
This is passive learning โ absorbing without applying. It builds false confidence and slows progress.
๐ ๏ธ How to Fix It:
1๏ธโฃ Learn by doing: Grab real datasets (Kaggle, UCI, public APIs)
2๏ธโฃ Build projects: Classification, regression, clustering tasks
3๏ธโฃ Document findings: Share explanations like youโre presenting to stakeholders
4๏ธโฃ Get feedback: Post code & reports on GitHub, Kaggle, or LinkedIn
5๏ธโฃ Fail fast: Debug models, tune hyperparameters, iterate frequently
๐ In your 20s, build practical data intuition โ not just theory or certificates.
Stop passive watching.
Start real modeling.
Start storytelling with data.
Thatโs how data scientists grow fast in the real world! ๐
๐ฌ Tap โค๏ธ if this resonates with you!
โค7๐ฅฐ4
AI vs ML vs Deep Learning ๐ค
Youโve probably seen these 3 terms thrown around like theyโre the same thing. Theyโre not.
AI (Artificial Intelligence): the big umbrella. Anything that makes machines โsmart.โ Could be rules, could be learning.
ML (Machine Learning): a subset of AI. Machines learn patterns from data instead of being explicitly programmed.
Deep Learning: a subset of ML. Uses neural networks with many layers (deep) powering things like ChatGPT, image recognition, etc.
Think of it this way:
AI = Science
ML = A chapter in the science
Deep Learning = A paragraph in that chapter.
Youโve probably seen these 3 terms thrown around like theyโre the same thing. Theyโre not.
AI (Artificial Intelligence): the big umbrella. Anything that makes machines โsmart.โ Could be rules, could be learning.
ML (Machine Learning): a subset of AI. Machines learn patterns from data instead of being explicitly programmed.
Deep Learning: a subset of ML. Uses neural networks with many layers (deep) powering things like ChatGPT, image recognition, etc.
Think of it this way:
AI = Science
ML = A chapter in the science
Deep Learning = A paragraph in that chapter.
โค3๐ฅ1๐1
Media is too big
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โค7
If I Were to Start My Data Science Career from Scratch, Here's What I Would Do ๐
1๏ธโฃ Master Advanced SQL
Foundations: Learn database structures, tables, and relationships.
Basic SQL Commands: SELECT, FROM, WHERE, ORDER BY.
Aggregations: Get hands-on with SUM, COUNT, AVG, MIN, MAX, GROUP BY, and HAVING.
JOINs: Understand LEFT, RIGHT, INNER, OUTER, and CARTESIAN joins.
Advanced Concepts: CTEs, window functions, and query optimization.
Metric Development: Build and report metrics effectively.
2๏ธโฃ Study Statistics & A/B Testing
Descriptive Statistics: Know your mean, median, mode, and standard deviation.
Distributions: Familiarize yourself with normal, Bernoulli, binomial, exponential, and uniform distributions.
Probability: Understand basic probability and Bayes' theorem.
Intro to ML: Start with linear regression, decision trees, and K-means clustering.
Experimentation Basics: T-tests, Z-tests, Type 1 & Type 2 errors.
A/B Testing: Design experimentsโhypothesis formation, sample size calculation, and sample biases.
3๏ธโฃ Learn Python for Data
Data Manipulation: Use pandas for data cleaning and manipulation.
Data Visualization: Explore matplotlib and seaborn for creating visualizations.
Hypothesis Testing: Dive into scipy for statistical testing.
Basic Modeling: Practice building models with scikit-learn.
4๏ธโฃ Develop Product Sense
Product Management Basics: Manage projects and understand the product life cycle.
Data-Driven Strategy: Leverage data to inform decisions and measure success.
Metrics in Business: Define and evaluate metrics that matter to the business.
5๏ธโฃ Hone Soft Skills
Communication: Clearly explain data findings to technical and non-technical audiences.
Collaboration: Work effectively in teams.
Time Management: Prioritize and manage projects efficiently.
Self-Reflection: Regularly assess and improve your skills.
6๏ธโฃ Bonus: Basic Data Engineering
Data Modeling: Understand dimensional modeling and trade-offs in normalization vs. denormalization.
ETL: Set up extraction jobs, manage dependencies, clean and validate data.
Pipeline Testing: Conduct unit testing and ensure data quality throughout the pipeline.
I have curated the best interview resources to crack Data Science Interviews
๐๐
https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
Like if you need similar content ๐๐
1๏ธโฃ Master Advanced SQL
Foundations: Learn database structures, tables, and relationships.
Basic SQL Commands: SELECT, FROM, WHERE, ORDER BY.
Aggregations: Get hands-on with SUM, COUNT, AVG, MIN, MAX, GROUP BY, and HAVING.
JOINs: Understand LEFT, RIGHT, INNER, OUTER, and CARTESIAN joins.
Advanced Concepts: CTEs, window functions, and query optimization.
Metric Development: Build and report metrics effectively.
2๏ธโฃ Study Statistics & A/B Testing
Descriptive Statistics: Know your mean, median, mode, and standard deviation.
Distributions: Familiarize yourself with normal, Bernoulli, binomial, exponential, and uniform distributions.
Probability: Understand basic probability and Bayes' theorem.
Intro to ML: Start with linear regression, decision trees, and K-means clustering.
Experimentation Basics: T-tests, Z-tests, Type 1 & Type 2 errors.
A/B Testing: Design experimentsโhypothesis formation, sample size calculation, and sample biases.
3๏ธโฃ Learn Python for Data
Data Manipulation: Use pandas for data cleaning and manipulation.
Data Visualization: Explore matplotlib and seaborn for creating visualizations.
Hypothesis Testing: Dive into scipy for statistical testing.
Basic Modeling: Practice building models with scikit-learn.
4๏ธโฃ Develop Product Sense
Product Management Basics: Manage projects and understand the product life cycle.
Data-Driven Strategy: Leverage data to inform decisions and measure success.
Metrics in Business: Define and evaluate metrics that matter to the business.
5๏ธโฃ Hone Soft Skills
Communication: Clearly explain data findings to technical and non-technical audiences.
Collaboration: Work effectively in teams.
Time Management: Prioritize and manage projects efficiently.
Self-Reflection: Regularly assess and improve your skills.
6๏ธโฃ Bonus: Basic Data Engineering
Data Modeling: Understand dimensional modeling and trade-offs in normalization vs. denormalization.
ETL: Set up extraction jobs, manage dependencies, clean and validate data.
Pipeline Testing: Conduct unit testing and ensure data quality throughout the pipeline.
I have curated the best interview resources to crack Data Science Interviews
๐๐
https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
Like if you need similar content ๐๐
โค8๐ฅ1๐ค1
The key to starting your data science career:
โIt's not your education
โIt's not your experience
It's how you apply these principles:
1. Learn by working on real datasets
2. Build a portfolio of projects
3. Share your work and insights publicly
No one starts a data scientist, but everyone can become one.
If you're looking for a career in data science, start by:
โถ Watching tutorials and courses
โถ Reading expert blogs and papers
โถ Doing internships or Kaggle competitions
โถ Building end-to-end projects
โถ Learning from mentors and peers
You'll be amazed at how quickly youโll gain confidence and start solving real-world problems.
So, start today and let your data science journey begin!
React โค๏ธ for more helpful tips
โIt's not your education
โIt's not your experience
It's how you apply these principles:
1. Learn by working on real datasets
2. Build a portfolio of projects
3. Share your work and insights publicly
No one starts a data scientist, but everyone can become one.
If you're looking for a career in data science, start by:
โถ Watching tutorials and courses
โถ Reading expert blogs and papers
โถ Doing internships or Kaggle competitions
โถ Building end-to-end projects
โถ Learning from mentors and peers
You'll be amazed at how quickly youโll gain confidence and start solving real-world problems.
So, start today and let your data science journey begin!
React โค๏ธ for more helpful tips
โค5๐2
โ
Machine Learning A-Z: From Algorithm to Zenith! ๐ค๐ง
A: Algorithm - A step-by-step procedure used by a machine learning model to learn patterns from data.
B: Bias - A systematic error in a model's predictions, often stemming from flawed assumptions in the training data or the model itself.
C: Classification - A type of supervised learning where the goal is to assign data points to predefined categories.
D: Deep Learning - A subfield of machine learning that uses artificial neural networks with multiple layers (deep neural networks) to analyze data.
E: Ensemble Learning - A technique that combines multiple machine learning models to improve overall predictive performance.
F: Feature Engineering - The process of selecting, transforming, and creating relevant features from raw data to improve model performance.
G: Gradient Descent - An optimization algorithm used to find the minimum of a function (e.g., the error function of a machine learning model) by iteratively adjusting parameters.
H: Hyperparameter Tuning - The process of finding the optimal set of hyperparameters for a machine learning model to maximize its performance.
I: Imputation - The process of filling in missing values in a dataset with estimated values.
J: Jaccard Index - A measure of similarity between two sets, often used in clustering and recommendation systems.
K: K-Fold Cross-Validation - A technique for evaluating model performance by partitioning the data into k subsets and training/testing the model k times, each time using a different subset as the test set.
L: Loss Function - A function that quantifies the error between the predicted and actual values, guiding the model's learning process.
M: Model - A mathematical representation of a real-world process or phenomenon, learned from data.
N: Neural Network - A computer system inspired by the structure of the human brain, used for various machine learning tasks.
O: Overfitting - A phenomenon where a model learns the training data too well, resulting in poor performance on unseen data.
P: Precision - A metric that measures the proportion of correctly predicted positive instances out of all instances predicted as positive.
Q: Q-Learning - A reinforcement learning algorithm used to learn an optimal policy by estimating the expected reward for each action in a given state.
R: Regression - A type of supervised learning where the goal is to predict a continuous numerical value.
S: Supervised Learning - A machine learning approach where an algorithm learns from labeled training data.
T: Training Data - The dataset used to train a machine learning model.
U: Unsupervised Learning - A machine learning approach where an algorithm learns from unlabeled data by identifying patterns and relationships.
V: Validation Set - A subset of the training data used to tune hyperparameters and monitor model performance during training.
W: Weights - Parameters within a machine learning model that are adjusted during training to minimize the loss function.
X: XGBoost (Extreme Gradient Boosting) - A highly optimized and scalable gradient boosting algorithm widely used in machine learning competitions and real-world applications.
Y: Y-Variable - The dependent variable or target variable that a machine learning model is trying to predict.
Z: Zero-Shot Learning - A type of machine learning where a model can recognize or classify objects it has never seen during training.
Tap โค๏ธ for more!
A: Algorithm - A step-by-step procedure used by a machine learning model to learn patterns from data.
B: Bias - A systematic error in a model's predictions, often stemming from flawed assumptions in the training data or the model itself.
C: Classification - A type of supervised learning where the goal is to assign data points to predefined categories.
D: Deep Learning - A subfield of machine learning that uses artificial neural networks with multiple layers (deep neural networks) to analyze data.
E: Ensemble Learning - A technique that combines multiple machine learning models to improve overall predictive performance.
F: Feature Engineering - The process of selecting, transforming, and creating relevant features from raw data to improve model performance.
G: Gradient Descent - An optimization algorithm used to find the minimum of a function (e.g., the error function of a machine learning model) by iteratively adjusting parameters.
H: Hyperparameter Tuning - The process of finding the optimal set of hyperparameters for a machine learning model to maximize its performance.
I: Imputation - The process of filling in missing values in a dataset with estimated values.
J: Jaccard Index - A measure of similarity between two sets, often used in clustering and recommendation systems.
K: K-Fold Cross-Validation - A technique for evaluating model performance by partitioning the data into k subsets and training/testing the model k times, each time using a different subset as the test set.
L: Loss Function - A function that quantifies the error between the predicted and actual values, guiding the model's learning process.
M: Model - A mathematical representation of a real-world process or phenomenon, learned from data.
N: Neural Network - A computer system inspired by the structure of the human brain, used for various machine learning tasks.
O: Overfitting - A phenomenon where a model learns the training data too well, resulting in poor performance on unseen data.
P: Precision - A metric that measures the proportion of correctly predicted positive instances out of all instances predicted as positive.
Q: Q-Learning - A reinforcement learning algorithm used to learn an optimal policy by estimating the expected reward for each action in a given state.
R: Regression - A type of supervised learning where the goal is to predict a continuous numerical value.
S: Supervised Learning - A machine learning approach where an algorithm learns from labeled training data.
T: Training Data - The dataset used to train a machine learning model.
U: Unsupervised Learning - A machine learning approach where an algorithm learns from unlabeled data by identifying patterns and relationships.
V: Validation Set - A subset of the training data used to tune hyperparameters and monitor model performance during training.
W: Weights - Parameters within a machine learning model that are adjusted during training to minimize the loss function.
X: XGBoost (Extreme Gradient Boosting) - A highly optimized and scalable gradient boosting algorithm widely used in machine learning competitions and real-world applications.
Y: Y-Variable - The dependent variable or target variable that a machine learning model is trying to predict.
Z: Zero-Shot Learning - A type of machine learning where a model can recognize or classify objects it has never seen during training.
Tap โค๏ธ for more!
โค11๐ฅ2
๐ Data Science Essentials: What Every Data Enthusiast Should Know!
1๏ธโฃ Understand Your Data
Always start with data exploration. Check for missing values, outliers, and overall distribution to avoid misleading insights.
2๏ธโฃ Data Cleaning Matters
Noisy data leads to inaccurate predictions. Standardize formats, remove duplicates, and handle missing data effectively.
3๏ธโฃ Use Descriptive & Inferential Statistics
Mean, median, mode, variance, standard deviation, correlation, hypothesis testingโthese form the backbone of data interpretation.
4๏ธโฃ Master Data Visualization
Bar charts, histograms, scatter plots, and heatmaps make insights more accessible and actionable.
5๏ธโฃ Learn SQL for Efficient Data Extraction
Write optimized queries (
6๏ธโฃ Build Strong Programming Skills
Python (Pandas, NumPy, Scikit-learn) and R are essential for data manipulation and analysis.
7๏ธโฃ Understand Machine Learning Basics
Know key algorithmsโlinear regression, decision trees, random forests, and clusteringโto develop predictive models.
8๏ธโฃ Learn Dashboarding & Storytelling
Power BI and Tableau help convert raw data into actionable insights for stakeholders.
๐ฅ Pro Tip: Always cross-check your results with different techniques to ensure accuracy!
Data Science Learning Series: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
DOUBLE TAP โค๏ธ IF YOU FOUND THIS HELPFUL!
1๏ธโฃ Understand Your Data
Always start with data exploration. Check for missing values, outliers, and overall distribution to avoid misleading insights.
2๏ธโฃ Data Cleaning Matters
Noisy data leads to inaccurate predictions. Standardize formats, remove duplicates, and handle missing data effectively.
3๏ธโฃ Use Descriptive & Inferential Statistics
Mean, median, mode, variance, standard deviation, correlation, hypothesis testingโthese form the backbone of data interpretation.
4๏ธโฃ Master Data Visualization
Bar charts, histograms, scatter plots, and heatmaps make insights more accessible and actionable.
5๏ธโฃ Learn SQL for Efficient Data Extraction
Write optimized queries (
SELECT, JOIN, GROUP BY, WHERE) to retrieve relevant data from databases.6๏ธโฃ Build Strong Programming Skills
Python (Pandas, NumPy, Scikit-learn) and R are essential for data manipulation and analysis.
7๏ธโฃ Understand Machine Learning Basics
Know key algorithmsโlinear regression, decision trees, random forests, and clusteringโto develop predictive models.
8๏ธโฃ Learn Dashboarding & Storytelling
Power BI and Tableau help convert raw data into actionable insights for stakeholders.
๐ฅ Pro Tip: Always cross-check your results with different techniques to ensure accuracy!
Data Science Learning Series: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
DOUBLE TAP โค๏ธ IF YOU FOUND THIS HELPFUL!
โค9
โ
Data Science Portfolio Tips ๐
A Data Science portfolio is your proof of skill โ it shows recruiters that you donโt just โknowโ concepts, but you can apply them to solve real problems. Hereโs how to build an impressive one:
๐น What to Include in Your Portfolio
โข 3โ5 Real Projects (end-to-end): e.g., data cleaning, EDA, ML modeling, evaluation, and conclusion
โข ReadMe Files: Clearly explain each project โ objectives, steps, and results
โข Visuals: Add graphs, dashboards, or screenshots
โข Code + Output: Well-commented Python code + output samples (charts/tables)
โข Domain Variety: Include projects from healthcare, finance, e-commerce, etc.
๐น Where to Host Your Portfolio
โข GitHub: Ideal for code, Jupyter Notebooks, version control
โ Use pinned repo section
โ Keep repos clean and organized
โ Add a main README linking to your best work
โข Notion: Great as a personal portfolio site
โ Link GitHub repos
โ Write project case studies
โ Embed visualizations or dashboards
โข PDF Portfolio: Best when applying for jobs
โ 1โ2 page summary of best projects
โ Add clickable links to GitHub/Notion/LinkedIn
โ Use as a โvisual resumeโ
๐น Tips for Impact
โข Use real-world datasets (Kaggle, UCI, etc.)
โข Donโt just copy tutorial projects
โข Write short blogs explaining your approach
โข Show your thought process, not just code
โ Goal: When a recruiter opens your profile, they should instantly see your value as a practical data scientist.
๐ React โค๏ธ if you found this helpful!
Data Science Learning Series:
https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D/998
Learn Python:
https://whatsapp.com/channel/0029VaiM08SDuMRaGKd9Wv0L
A Data Science portfolio is your proof of skill โ it shows recruiters that you donโt just โknowโ concepts, but you can apply them to solve real problems. Hereโs how to build an impressive one:
๐น What to Include in Your Portfolio
โข 3โ5 Real Projects (end-to-end): e.g., data cleaning, EDA, ML modeling, evaluation, and conclusion
โข ReadMe Files: Clearly explain each project โ objectives, steps, and results
โข Visuals: Add graphs, dashboards, or screenshots
โข Code + Output: Well-commented Python code + output samples (charts/tables)
โข Domain Variety: Include projects from healthcare, finance, e-commerce, etc.
๐น Where to Host Your Portfolio
โข GitHub: Ideal for code, Jupyter Notebooks, version control
โ Use pinned repo section
โ Keep repos clean and organized
โ Add a main README linking to your best work
โข Notion: Great as a personal portfolio site
โ Link GitHub repos
โ Write project case studies
โ Embed visualizations or dashboards
โข PDF Portfolio: Best when applying for jobs
โ 1โ2 page summary of best projects
โ Add clickable links to GitHub/Notion/LinkedIn
โ Use as a โvisual resumeโ
๐น Tips for Impact
โข Use real-world datasets (Kaggle, UCI, etc.)
โข Donโt just copy tutorial projects
โข Write short blogs explaining your approach
โข Show your thought process, not just code
โ Goal: When a recruiter opens your profile, they should instantly see your value as a practical data scientist.
๐ React โค๏ธ if you found this helpful!
Data Science Learning Series:
https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D/998
Learn Python:
https://whatsapp.com/channel/0029VaiM08SDuMRaGKd9Wv0L
โค5
๐ Top 10 Tools Data Scientists Love! ๐ง
In the ever-evolving world of data science, staying updated with the right tools is crucial to solving complex problems and deriving meaningful insights.
๐ Hereโs a quick breakdown of the most popular tools:
1. Python ๐: The go-to language for data science, favored for its versatility and powerful libraries.
2. SQL ๐ ๏ธ: Essential for querying databases and manipulating data.
3. Jupyter Notebooks ๐: An interactive environment that makes data analysis and visualization a breeze.
4. TensorFlow/PyTorch ๐ค: Leading frameworks for deep learning and neural networks.
5. Tableau ๐: A user-friendly tool for creating stunning visualizations and dashboards.
6. Git & GitHub ๐ป: Version control systems that every data scientist should master.
7. Hadoop & Spark ๐ฅ: Big data frameworks that help process massive datasets efficiently.
8. Scikit-learn ๐งฌ: A powerful library for machine learning in Python.
9. R ๐: A statistical programming language that is still a favorite among many analysts.
10. Docker ๐: A must-have for containerization and deploying applications.
In the ever-evolving world of data science, staying updated with the right tools is crucial to solving complex problems and deriving meaningful insights.
๐ Hereโs a quick breakdown of the most popular tools:
1. Python ๐: The go-to language for data science, favored for its versatility and powerful libraries.
2. SQL ๐ ๏ธ: Essential for querying databases and manipulating data.
3. Jupyter Notebooks ๐: An interactive environment that makes data analysis and visualization a breeze.
4. TensorFlow/PyTorch ๐ค: Leading frameworks for deep learning and neural networks.
5. Tableau ๐: A user-friendly tool for creating stunning visualizations and dashboards.
6. Git & GitHub ๐ป: Version control systems that every data scientist should master.
7. Hadoop & Spark ๐ฅ: Big data frameworks that help process massive datasets efficiently.
8. Scikit-learn ๐งฌ: A powerful library for machine learning in Python.
9. R ๐: A statistical programming language that is still a favorite among many analysts.
10. Docker ๐: A must-have for containerization and deploying applications.
โค8
๐ Complete Python Syllabus Roadmap (Beginner to Expert) ๐
๐ฐ Beginner Level:
1. Intro to Python โ Installation, IDEs, first program (print("Hello World"))
2. Variables & Data Types โ int, float, string, bool, type casting
3. Operators โ Arithmetic, comparison, logical, assignment
4. Control Flow โ if-else, nested if, loops (for, while)
5. Functions โ def, parameters, return values, lambda functions
6. Data Structures โ Lists, Tuples, Sets, Dictionaries
7. Basic Projects โ Calculator, number guess game, to-do app
โ๏ธ Intermediate Level:
1. String Handling โ Slicing, formatting, string methods
2. File Handling โ Reading/writing .txt, .csv, and JSON files
3. Exception Handling โ try-except, finally, custom exceptions
4. Modules & Packages โ import, built-in & third-party modules (random, math)
5. OOP in Python โ Classes, objects, inheritance, polymorphism
6. Working with Dates & Time โ datetime, time module
7. Virtual Environments โ venv, pip, requirements.txt
๐ Expert Level:
1. NumPy & Pandas โ Arrays, DataFrames, data manipulation
2. Matplotlib & Seaborn โ Data visualization basics
3. Web Scraping โ requests, BeautifulSoup, Selenium
4. APIs & JSON โ Using REST APIs, parsing data
5. Python for Automation โ File automation, emails, web automation
6. Testing โ unittest, pytest, writing test cases
7. Python Projects โ Blog scraper, weather app, data dashboard
๐ก Bonus: Learn Git, Jupyter Notebook, Streamlit, and Flask for real-world projects.
๐ Tap โค๏ธ for more!
๐ฐ Beginner Level:
1. Intro to Python โ Installation, IDEs, first program (print("Hello World"))
2. Variables & Data Types โ int, float, string, bool, type casting
3. Operators โ Arithmetic, comparison, logical, assignment
4. Control Flow โ if-else, nested if, loops (for, while)
5. Functions โ def, parameters, return values, lambda functions
6. Data Structures โ Lists, Tuples, Sets, Dictionaries
7. Basic Projects โ Calculator, number guess game, to-do app
โ๏ธ Intermediate Level:
1. String Handling โ Slicing, formatting, string methods
2. File Handling โ Reading/writing .txt, .csv, and JSON files
3. Exception Handling โ try-except, finally, custom exceptions
4. Modules & Packages โ import, built-in & third-party modules (random, math)
5. OOP in Python โ Classes, objects, inheritance, polymorphism
6. Working with Dates & Time โ datetime, time module
7. Virtual Environments โ venv, pip, requirements.txt
๐ Expert Level:
1. NumPy & Pandas โ Arrays, DataFrames, data manipulation
2. Matplotlib & Seaborn โ Data visualization basics
3. Web Scraping โ requests, BeautifulSoup, Selenium
4. APIs & JSON โ Using REST APIs, parsing data
5. Python for Automation โ File automation, emails, web automation
6. Testing โ unittest, pytest, writing test cases
7. Python Projects โ Blog scraper, weather app, data dashboard
๐ก Bonus: Learn Git, Jupyter Notebook, Streamlit, and Flask for real-world projects.
๐ Tap โค๏ธ for more!
๐6โค2๐ฅ2
โ
Data Scientist Resume Checklist (2025) ๐๐
1๏ธโฃ Professional Summary
โข 2-3 lines summarizing experience, skills, and career goals.
โ๏ธ Example: "Data Scientist with 5+ years of experience developing and deploying machine learning models to solve complex business problems. Proficient in Python, TensorFlow, and cloud platforms."
2๏ธโฃ Technical Skills
โข Programming Languages: Python, R (list proficiency)
โข Machine Learning: Regression, Classification, Clustering, Deep Learning, NLP
โข Deep Learning Frameworks: TensorFlow, PyTorch, Keras
โข Data Visualization Tools: Tableau, Power BI, Matplotlib, Seaborn
โข Big Data Technologies: Spark, Hadoop (if applicable)
โข Databases: SQL, NoSQL
โข Cloud Technologies: AWS, Azure, GCP
โข Statistical Analysis: Hypothesis Testing, Time Series Analysis, Experimental Design
โข Version Control: Git
3๏ธโฃ Projects Section
โข 2-4 data science projects showcasing your skills. Include:
- Project name & brief description
- Problem addressed
- Technologies & algorithms used
- Key results & impact
- Link to GitHub repo/live demo (essential!)
โ๏ธ Quantify your achievements: "Improved model accuracy by 15%..."
4๏ธโฃ Work Experience (if any)
โข Company name, role, and duration.
โข Responsibilities and accomplishments, quantifying impact.
โ๏ธ Example: "Developed a fraud detection model that reduced fraudulent transactions by 20%."
5๏ธโฃ Education
โข Degree, University/Institute, Graduation Year.
โ๏ธ Highlight relevant coursework (statistics, ML, AI).
โ๏ธ List any relevant certifications (e.g., AWS Certified Machine Learning).
6๏ธโฃ Publications/Presentations (Optional)
โข If you have any publications or conference presentations, include them.
7๏ธโฃ Soft Skills
โข Communication, problem-solving, critical thinking, collaboration, creativity
8๏ธโฃ Clean & Professional Formatting
โข Use a readable font and layout.
โข Keep it concise (ideally 1-2 pages).
โข Save as a PDF.
๐ก Customize your resume to each job description. Focus on the skills and experiences that are most relevant to the specific role. Showcase your ability to communicate complex technical concepts to non-technical audiences.
๐ Tap โค๏ธ if you found this helpful!
1๏ธโฃ Professional Summary
โข 2-3 lines summarizing experience, skills, and career goals.
โ๏ธ Example: "Data Scientist with 5+ years of experience developing and deploying machine learning models to solve complex business problems. Proficient in Python, TensorFlow, and cloud platforms."
2๏ธโฃ Technical Skills
โข Programming Languages: Python, R (list proficiency)
โข Machine Learning: Regression, Classification, Clustering, Deep Learning, NLP
โข Deep Learning Frameworks: TensorFlow, PyTorch, Keras
โข Data Visualization Tools: Tableau, Power BI, Matplotlib, Seaborn
โข Big Data Technologies: Spark, Hadoop (if applicable)
โข Databases: SQL, NoSQL
โข Cloud Technologies: AWS, Azure, GCP
โข Statistical Analysis: Hypothesis Testing, Time Series Analysis, Experimental Design
โข Version Control: Git
3๏ธโฃ Projects Section
โข 2-4 data science projects showcasing your skills. Include:
- Project name & brief description
- Problem addressed
- Technologies & algorithms used
- Key results & impact
- Link to GitHub repo/live demo (essential!)
โ๏ธ Quantify your achievements: "Improved model accuracy by 15%..."
4๏ธโฃ Work Experience (if any)
โข Company name, role, and duration.
โข Responsibilities and accomplishments, quantifying impact.
โ๏ธ Example: "Developed a fraud detection model that reduced fraudulent transactions by 20%."
5๏ธโฃ Education
โข Degree, University/Institute, Graduation Year.
โ๏ธ Highlight relevant coursework (statistics, ML, AI).
โ๏ธ List any relevant certifications (e.g., AWS Certified Machine Learning).
6๏ธโฃ Publications/Presentations (Optional)
โข If you have any publications or conference presentations, include them.
7๏ธโฃ Soft Skills
โข Communication, problem-solving, critical thinking, collaboration, creativity
8๏ธโฃ Clean & Professional Formatting
โข Use a readable font and layout.
โข Keep it concise (ideally 1-2 pages).
โข Save as a PDF.
๐ก Customize your resume to each job description. Focus on the skills and experiences that are most relevant to the specific role. Showcase your ability to communicate complex technical concepts to non-technical audiences.
๐ Tap โค๏ธ if you found this helpful!
โค6๐ฅ4
โ
Step-by-step guide to create a Data Science Portfolio ๐
โ 1๏ธโฃ Choose Your Tools & Skills
Decide what you want to showcase:
โข Programming languages: Python, R
โข Libraries: Pandas, NumPy, Scikit-learn, TensorFlow, PyTorch
โข Data visualization: Matplotlib, Seaborn, Plotly, Tableau
โข Big data tools (optional): Spark, Hadoop
โ 2๏ธโฃ Plan Your Portfolio Structure
Your portfolio should have:
โข Home Page โ Brief intro and your data science focus
โข About Me โ Skills, education, tools, and experience
โข Projects โ Detailed case studies with code and results
โข Blog or Articles (optional) โ Explain concepts or your learnings
โข Contact โ Email, LinkedIn, GitHub links
โ 3๏ธโฃ Build or Use Platforms to Showcase
Options:
โข Create your own website using HTML/CSS/React
โข Use GitHub Pages, Kaggle Profile, or Medium for blogs
โข Platforms like LinkedIn or personal blogs also work
โ 4๏ธโฃ Add 4โ6 Strong Projects
Include a mix of projects:
โข Data cleaning and preprocessing
โข Exploratory Data Analysis (EDA)
โข Machine Learning models (regression, classification, clustering)
โข Deep Learning projects (optional)
โข Data visualization dashboards or reports
โข Real-world datasets from Kaggle, UCI, or your own collection
For each project, include:
โข Problem statement and goal
โข Dataset description
โข Tools and techniques used
โข Code repository link (GitHub)
โข Key findings and visualizations
โข Challenges and how you solved them
โ 5๏ธโฃ Write Clear Documentation
โข Explain your thought process step-by-step
โข Use Markdown files or Jupyter Notebooks for code explanations
โข Add visuals like charts and graphs to support your findings
โ 6๏ธโฃ Deploy & Share Your Portfolio
โข Host your website on GitHub Pages, Netlify, or Vercel
โข Share your GitHub repo links
โข Publish notebooks on Kaggle or Google Colab
โ 7๏ธโฃ Keep Improving & Updating
โข Add new projects regularly
โข Refine old projects based on feedback
โข Share insights on social media or blogs
๐ก Pro Tips
โข Focus on storytelling with data โ explain why and how
โข Highlight your problem-solving and technical skills
โข Show end-to-end project workflow from data to insights
โข Include a downloadable resume and your contact info
๐ฏ Goal: Visitors should quickly see your skills, understand your approach to data problems, and know how to connect with you!
๐ Double Tap โฅ๏ธ for more
โ 1๏ธโฃ Choose Your Tools & Skills
Decide what you want to showcase:
โข Programming languages: Python, R
โข Libraries: Pandas, NumPy, Scikit-learn, TensorFlow, PyTorch
โข Data visualization: Matplotlib, Seaborn, Plotly, Tableau
โข Big data tools (optional): Spark, Hadoop
โ 2๏ธโฃ Plan Your Portfolio Structure
Your portfolio should have:
โข Home Page โ Brief intro and your data science focus
โข About Me โ Skills, education, tools, and experience
โข Projects โ Detailed case studies with code and results
โข Blog or Articles (optional) โ Explain concepts or your learnings
โข Contact โ Email, LinkedIn, GitHub links
โ 3๏ธโฃ Build or Use Platforms to Showcase
Options:
โข Create your own website using HTML/CSS/React
โข Use GitHub Pages, Kaggle Profile, or Medium for blogs
โข Platforms like LinkedIn or personal blogs also work
โ 4๏ธโฃ Add 4โ6 Strong Projects
Include a mix of projects:
โข Data cleaning and preprocessing
โข Exploratory Data Analysis (EDA)
โข Machine Learning models (regression, classification, clustering)
โข Deep Learning projects (optional)
โข Data visualization dashboards or reports
โข Real-world datasets from Kaggle, UCI, or your own collection
For each project, include:
โข Problem statement and goal
โข Dataset description
โข Tools and techniques used
โข Code repository link (GitHub)
โข Key findings and visualizations
โข Challenges and how you solved them
โ 5๏ธโฃ Write Clear Documentation
โข Explain your thought process step-by-step
โข Use Markdown files or Jupyter Notebooks for code explanations
โข Add visuals like charts and graphs to support your findings
โ 6๏ธโฃ Deploy & Share Your Portfolio
โข Host your website on GitHub Pages, Netlify, or Vercel
โข Share your GitHub repo links
โข Publish notebooks on Kaggle or Google Colab
โ 7๏ธโฃ Keep Improving & Updating
โข Add new projects regularly
โข Refine old projects based on feedback
โข Share insights on social media or blogs
๐ก Pro Tips
โข Focus on storytelling with data โ explain why and how
โข Highlight your problem-solving and technical skills
โข Show end-to-end project workflow from data to insights
โข Include a downloadable resume and your contact info
๐ฏ Goal: Visitors should quickly see your skills, understand your approach to data problems, and know how to connect with you!
๐ Double Tap โฅ๏ธ for more
โค11๐ฅ3
โ
How to Apply for Data Science Jobs (Step-by-Step Guide) ๐๐ง
๐น 1. Build a Solid Portfolio
- 3โ5 real-world projects (EDA, ML models, dashboards, NLP, etc.)
- Host code on GitHub & showcase results with Jupyter Notebooks, Streamlit, or Tableau
- Projects ideas: Loan prediction, sentiment analysis, fraud detection, etc.
๐น 2. Create a Targeted Resume
- Highlight skills: Python, SQL, Pandas, Scikit-learn, Tableau, etc.
- Emphasize metrics: โImproved accuracy by 20% using Random Forestโ
- Add GitHub, LinkedIn & portfolio links
๐น 3. Build Your LinkedIn Profile
- Title: โAspiring Data Scientist | Python | Machine Learningโ
- Post about your projects, Kaggle solutions, or learning updates
- Connect with recruiters and data professionals
๐น 4. Register on Job Portals
- General: LinkedIn, Naukri, Indeed
- Tech-focused: Hirect, Kaggle Jobs, Analytics Vidhya Jobs
- Internships: Internshala, AICTE, HelloIntern
- Freelance: Upwork, Turing, Freelancer
๐น 5. Apply Smartly
- Target entry-level or internship roles
- Customize every application (donโt mass apply)
- Keep a tracker of where you applied
๐น 6. Prepare for Interviews
- Revise: Python, Stats, Probability, SQL, ML algorithms
- Practice SQL queries, case studies, and ML model explanations
- Use platforms like HackerRank, StrataScratch, InterviewBit
๐ก Bonus: Participate in Kaggle competitions & open-source data science projects to gain visibility!
๐ Tap โค๏ธ if you found this helpful!
๐น 1. Build a Solid Portfolio
- 3โ5 real-world projects (EDA, ML models, dashboards, NLP, etc.)
- Host code on GitHub & showcase results with Jupyter Notebooks, Streamlit, or Tableau
- Projects ideas: Loan prediction, sentiment analysis, fraud detection, etc.
๐น 2. Create a Targeted Resume
- Highlight skills: Python, SQL, Pandas, Scikit-learn, Tableau, etc.
- Emphasize metrics: โImproved accuracy by 20% using Random Forestโ
- Add GitHub, LinkedIn & portfolio links
๐น 3. Build Your LinkedIn Profile
- Title: โAspiring Data Scientist | Python | Machine Learningโ
- Post about your projects, Kaggle solutions, or learning updates
- Connect with recruiters and data professionals
๐น 4. Register on Job Portals
- General: LinkedIn, Naukri, Indeed
- Tech-focused: Hirect, Kaggle Jobs, Analytics Vidhya Jobs
- Internships: Internshala, AICTE, HelloIntern
- Freelance: Upwork, Turing, Freelancer
๐น 5. Apply Smartly
- Target entry-level or internship roles
- Customize every application (donโt mass apply)
- Keep a tracker of where you applied
๐น 6. Prepare for Interviews
- Revise: Python, Stats, Probability, SQL, ML algorithms
- Practice SQL queries, case studies, and ML model explanations
- Use platforms like HackerRank, StrataScratch, InterviewBit
๐ก Bonus: Participate in Kaggle competitions & open-source data science projects to gain visibility!
๐ Tap โค๏ธ if you found this helpful!
โค13๐1
โ
AI Career Paths & Skills to Master ๐ค๐๐ผ
๐น 1๏ธโฃ Machine Learning Engineer
๐ง Role: Build & deploy ML models
๐ง Skills: Python, TensorFlow/PyTorch, Data Structures, SQL, Cloud (AWS/GCP)
๐น 2๏ธโฃ Data Scientist
๐ง Role: Analyze data & create predictive models
๐ง Skills: Statistics, Python/R, Pandas, NumPy, Data Viz, ML
๐น 3๏ธโฃ NLP Engineer
๐ง Role: Chatbots, text analysis, speech recognition
๐ง Skills: spaCy, Hugging Face, Transformers, Linguistics basics
๐น 4๏ธโฃ Computer Vision Engineer
๐ง Role: Image/video processing, facial recognition, AR/VR
๐ง Skills: OpenCV, YOLO, CNNs, Deep Learning
๐น 5๏ธโฃ AI Product Manager
๐ง Role: Oversee AI product strategy & development
๐ง Skills: Product Mgmt, Business Strategy, Data Analysis, Basic ML
๐น 6๏ธโฃ Robotics Engineer
๐ง Role: Design & program industrial robots
๐ง Skills: ROS, Embedded Systems, C++, Path Planning
๐น 7๏ธโฃ AI Research Scientist
๐ง Role: Innovate new AI models & algorithms
๐ง Skills: Advanced Math, Deep Learning, RL, Research papers
๐น 8๏ธโฃ MLOps Engineer
๐ง Role: Deploy & manage ML models at scale
๐ง Skills: Docker, Kubernetes, MLflow, CI/CD, Cloud Platforms
๐ก Pro Tip: Start with Python & math, then specialize!
๐ Tap โค๏ธ for more!
๐น 1๏ธโฃ Machine Learning Engineer
๐ง Role: Build & deploy ML models
๐ง Skills: Python, TensorFlow/PyTorch, Data Structures, SQL, Cloud (AWS/GCP)
๐น 2๏ธโฃ Data Scientist
๐ง Role: Analyze data & create predictive models
๐ง Skills: Statistics, Python/R, Pandas, NumPy, Data Viz, ML
๐น 3๏ธโฃ NLP Engineer
๐ง Role: Chatbots, text analysis, speech recognition
๐ง Skills: spaCy, Hugging Face, Transformers, Linguistics basics
๐น 4๏ธโฃ Computer Vision Engineer
๐ง Role: Image/video processing, facial recognition, AR/VR
๐ง Skills: OpenCV, YOLO, CNNs, Deep Learning
๐น 5๏ธโฃ AI Product Manager
๐ง Role: Oversee AI product strategy & development
๐ง Skills: Product Mgmt, Business Strategy, Data Analysis, Basic ML
๐น 6๏ธโฃ Robotics Engineer
๐ง Role: Design & program industrial robots
๐ง Skills: ROS, Embedded Systems, C++, Path Planning
๐น 7๏ธโฃ AI Research Scientist
๐ง Role: Innovate new AI models & algorithms
๐ง Skills: Advanced Math, Deep Learning, RL, Research papers
๐น 8๏ธโฃ MLOps Engineer
๐ง Role: Deploy & manage ML models at scale
๐ง Skills: Docker, Kubernetes, MLflow, CI/CD, Cloud Platforms
๐ก Pro Tip: Start with Python & math, then specialize!
๐ Tap โค๏ธ for more!
โค11
๐ค ๐๐๐ถ๐น๐ฑ ๐๐ ๐๐ด๐ฒ๐ป๐๐: ๐๐ฅ๐๐ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ถ๐ผ๐ป ๐ฃ๐ฟ๐ผ๐ด๐ฟ๐ฎ๐บ
Join ๐ญ๐ฑ,๐ฌ๐ฌ๐ฌ+ ๐น๐ฒ๐ฎ๐ฟ๐ป๐ฒ๐ฟ๐ ๐ณ๐ฟ๐ผ๐บ ๐ญ๐ฎ๐ฌ+ ๐ฐ๐ผ๐๐ป๐๐ฟ๐ถ๐ฒ๐ building intelligent AI systems that use tools, coordinate, and deploy to production.
โ 3 real projects for your portfolio
โ Official certification + badges
โ Learn at your own pace
๐ญ๐ฌ๐ฌ% ๐ณ๐ฟ๐ฒ๐ฒ. ๐ฆ๐๐ฎ๐ฟ๐ ๐ฎ๐ป๐๐๐ถ๐บ๐ฒ.
๐๐ป๐ฟ๐ผ๐น๐น ๐ต๐ฒ๐ฟ๐ฒ โคต๏ธ
https://go.readytensor.ai/cert-549-agentic-ai-certification
Double Tap โฅ๏ธ For More Free Resources
Join ๐ญ๐ฑ,๐ฌ๐ฌ๐ฌ+ ๐น๐ฒ๐ฎ๐ฟ๐ป๐ฒ๐ฟ๐ ๐ณ๐ฟ๐ผ๐บ ๐ญ๐ฎ๐ฌ+ ๐ฐ๐ผ๐๐ป๐๐ฟ๐ถ๐ฒ๐ building intelligent AI systems that use tools, coordinate, and deploy to production.
โ 3 real projects for your portfolio
โ Official certification + badges
โ Learn at your own pace
๐ญ๐ฌ๐ฌ% ๐ณ๐ฟ๐ฒ๐ฒ. ๐ฆ๐๐ฎ๐ฟ๐ ๐ฎ๐ป๐๐๐ถ๐บ๐ฒ.
๐๐ป๐ฟ๐ผ๐น๐น ๐ต๐ฒ๐ฟ๐ฒ โคต๏ธ
https://go.readytensor.ai/cert-549-agentic-ai-certification
Double Tap โฅ๏ธ For More Free Resources
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