The more we learn...
The more we realize how little we knowπ€·π»ββοΈπ
The more we realize how little we knowπ€·π»ββοΈπ
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Excel Interview question π€ π³
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People often ask about the best programming languages to learn.
Ever notice why interviewers say you can code in any language of you choice in the general interviews?
Because programming language doesnβt matter.
What matters most is your ability to break down a problem into smaller parts, build logic in simple English, and solve it.
Learn logic building first! You can learn the syntax of various programming languages online in 5 minutes.
Ever notice why interviewers say you can code in any language of you choice in the general interviews?
Because programming language doesnβt matter.
What matters most is your ability to break down a problem into smaller parts, build logic in simple English, and solve it.
Learn logic building first! You can learn the syntax of various programming languages online in 5 minutes.
Learn Python in One day book pdf
Forwarded from Web Development CS JS Python JavaScript Hacking ReactJs Python django Flask CSS Frontend Backend Full Stack Java Node Pdf Books
The day you plant the seed is not the day you eat the fruit.
#motivation @javascript_resources @python_assets
#motivation @javascript_resources @python_assets
Learn Python in a structured way !!!
Here's a FREE ROADMAP & RESOURCES to learn them πππ
Here's a FREE ROADMAP & RESOURCES to learn them πππ
Websites to Learn Data Analytics for free.
Learn Data Analytics for free with these resources:
πΆ1. Excel: excel-practice-online.com
πΆ2. Tableau: tableau.com/learn/starter-β¦
πΆ3. PowerBi: powerbi.microsoft.com/en-us/learning/
πΆ4. SQL: w3schools.com
πΆ5. Python: freecodecamp.org/
Learn Data Analytics for free with these resources:
πΆ1. Excel: excel-practice-online.com
πΆ2. Tableau: tableau.com/learn/starter-β¦
πΆ3. PowerBi: powerbi.microsoft.com/en-us/learning/
πΆ4. SQL: w3schools.com
πΆ5. Python: freecodecamp.org/
Tableau
Author a Viz
Follow the activities to learn how to create visualizations and ask questions of your data using Tableau Desktop.
Complete Data Science Road Mapπ₯
with resourcesπ
1.Math and Statistics:
β’ Linear Algebra
β’ Calculus
β’ Probability
β’ Statistics
2.Languages:
β’ Python (
β’ NumPy,
β’ Pandas,
β’ Matplotlib,
β’ Seaborn )
β’ R
3. Data skills:
β’ Data Cleaning
β’ Exploratory Data Analysis
β’ Feature Engineering
4. Data Visualization:
β’ Matplotlib
β’ Seaborn
β’ Plotly
β’ Tableau
5.Machine Learning Basics:
β’ Supervised Learning
β’ Unsupervised Learning
β’ Regression
β’ Classification
β’ Clustering
6. ML Libraries:
β’ Scikit-Learn
β’ TensorFlow
β’ Keras
β’ PyTorch
7.Model Evaluation and Validation:
β’ Cross-Validation
β’ Hyperparameter Tuning
β’ Evaluation Metrics
8.Big Data Technologies:
β’ Apache Hadoop
β’ Apache Spark
9.Database:
β’ SQL Basics
β’ MySQL
β’ PostgreSQL
10.Deep Learning:
β’ Neural Networks
β’ CNN
β’ RNN
β’ Transfer Learning
11.Natural Language Processing (NLP):
β’ Tokenization
β’ Named Entity Recognition (NER)
β’ Sentiment Analysis
12.Time Series Analysis:
β’ Time Series Components
β’ Seasonal Decomposition
β’ Forecasting Methods
13.Model Deployment:
β’ Flask (for Python)
β’ Django (for Python)
β’ Docker
14.Version Control:
β’ Git
β’ GitHub
15. Cloud Platforms:
β’ AWS
β’ Azure
β’ GCP
16. Data Ethics and Privacy:
β’ Ethical Considerations
β’ Privacy Protection
17.Communication and Reporting:
β’ Data Storytelling
β’ Reporting Tools e.g.
- Jupyter Notebooks
- R Markdown
18.Continuous Learning:
β’ Stay Updated with Industry Trends
β’ Participate in Online Communities
β’ Join online Conferences
------------------- END --------------------
Some good resources to learn Data Science
Books:
β’ Python for Data Analysis
- by Wes McKinney
β’ Hands-On Machine Learning
- by AurΓ©lien GΓ©ron
β’ The Art of Data Science
- by Roger D. Peng and Elizabeth M.
β’ Data Science from Scratch
-by Joel Grus
Blogs:
β’ Towards Data Science
β’ KDnuggets
β’ R-bloggers
β’ Flowingdata
β’ Analytics Vidhya
YouTube Channel
β― Python β Corey Schafer
β― SQL β Joey Blue
β― Excel β ExcelIsFun
β― PowerBI β Guy in a Cube
β― Tableau β Tableau Tim
β― Mathematics β 3Blue1Brown
β― Statistics β statquest
β― Data Analyst β AlexTheAnalyst
β― ML, DL β sentdex
Podcasts:
β’ Data Science at Home
β’ Talking Machines
β’ O'Reilly Data Science Podcast
β’ Linear Digressions
β’ DataFramed
Community and Forums:
Stack Overflow
Reddit - r/datascience:
Documentation and Guides:
1.Scikit-Learn Documentation:
Official documentation for the Scikit-Learn library.
2.Pandas Documentation: Official documentation for the Pandas library.
with resourcesπ
1.Math and Statistics:
β’ Linear Algebra
β’ Calculus
β’ Probability
β’ Statistics
2.Languages:
β’ Python (
β’ NumPy,
β’ Pandas,
β’ Matplotlib,
β’ Seaborn )
β’ R
3. Data skills:
β’ Data Cleaning
β’ Exploratory Data Analysis
β’ Feature Engineering
4. Data Visualization:
β’ Matplotlib
β’ Seaborn
β’ Plotly
β’ Tableau
5.Machine Learning Basics:
β’ Supervised Learning
β’ Unsupervised Learning
β’ Regression
β’ Classification
β’ Clustering
6. ML Libraries:
β’ Scikit-Learn
β’ TensorFlow
β’ Keras
β’ PyTorch
7.Model Evaluation and Validation:
β’ Cross-Validation
β’ Hyperparameter Tuning
β’ Evaluation Metrics
8.Big Data Technologies:
β’ Apache Hadoop
β’ Apache Spark
9.Database:
β’ SQL Basics
β’ MySQL
β’ PostgreSQL
10.Deep Learning:
β’ Neural Networks
β’ CNN
β’ RNN
β’ Transfer Learning
11.Natural Language Processing (NLP):
β’ Tokenization
β’ Named Entity Recognition (NER)
β’ Sentiment Analysis
12.Time Series Analysis:
β’ Time Series Components
β’ Seasonal Decomposition
β’ Forecasting Methods
13.Model Deployment:
β’ Flask (for Python)
β’ Django (for Python)
β’ Docker
14.Version Control:
β’ Git
β’ GitHub
15. Cloud Platforms:
β’ AWS
β’ Azure
β’ GCP
16. Data Ethics and Privacy:
β’ Ethical Considerations
β’ Privacy Protection
17.Communication and Reporting:
β’ Data Storytelling
β’ Reporting Tools e.g.
- Jupyter Notebooks
- R Markdown
18.Continuous Learning:
β’ Stay Updated with Industry Trends
β’ Participate in Online Communities
β’ Join online Conferences
------------------- END --------------------
Some good resources to learn Data Science
Books:
β’ Python for Data Analysis
- by Wes McKinney
β’ Hands-On Machine Learning
- by AurΓ©lien GΓ©ron
β’ The Art of Data Science
- by Roger D. Peng and Elizabeth M.
β’ Data Science from Scratch
-by Joel Grus
Blogs:
β’ Towards Data Science
β’ KDnuggets
β’ R-bloggers
β’ Flowingdata
β’ Analytics Vidhya
YouTube Channel
β― Python β Corey Schafer
β― SQL β Joey Blue
β― Excel β ExcelIsFun
β― PowerBI β Guy in a Cube
β― Tableau β Tableau Tim
β― Mathematics β 3Blue1Brown
β― Statistics β statquest
β― Data Analyst β AlexTheAnalyst
β― ML, DL β sentdex
Podcasts:
β’ Data Science at Home
β’ Talking Machines
β’ O'Reilly Data Science Podcast
β’ Linear Digressions
β’ DataFramed
Community and Forums:
Stack Overflow
Reddit - r/datascience:
Documentation and Guides:
1.Scikit-Learn Documentation:
Official documentation for the Scikit-Learn library.
2.Pandas Documentation: Official documentation for the Pandas library.
π1