Python libraries for data science and Machine Learning ๐๐
1. NumPy: NumPy is a fundamental package for scientific computing in Python. It provides support for large multidimensional arrays and matrices, along with a collection of mathematical functions to operate on these arrays.
2. Pandas: Pandas is a powerful data manipulation and analysis library that provides data structures like DataFrames and Series, making it easy to work with structured data.
3. Matplotlib: Matplotlib is a plotting library that enables the creation of various types of visualizations, such as line plots, bar charts, histograms, scatter plots, etc., to explore and communicate data effectively.
4. Scikit-learn: Scikit-learn is a machine learning library that offers a wide range of algorithms for classification, regression, clustering, dimensionality reduction, and more. It also provides tools for model selection and evaluation.
5. TensorFlow: TensorFlow is an open-source machine learning framework developed by Google that is widely used for building deep learning models. It provides a comprehensive ecosystem of tools and libraries for developing and deploying machine learning applications.
6. Keras: Keras is a high-level neural networks API that runs on top of TensorFlow, Theano, or Microsoft Cognitive Toolkit. It simplifies the process of building and training deep learning models by providing a user-friendly interface.
7. SciPy: SciPy is a scientific computing library that builds on top of NumPy and provides additional functionality for optimization, integration, interpolation, linear algebra, signal processing, and more.
8. Seaborn: Seaborn is a data visualization library based on Matplotlib that provides a higher-level interface for creating attractive and informative statistical graphics.
Channel credits: https://t.iss.one/datasciencefun
ENJOY LEARNING ๐๐
1. NumPy: NumPy is a fundamental package for scientific computing in Python. It provides support for large multidimensional arrays and matrices, along with a collection of mathematical functions to operate on these arrays.
2. Pandas: Pandas is a powerful data manipulation and analysis library that provides data structures like DataFrames and Series, making it easy to work with structured data.
3. Matplotlib: Matplotlib is a plotting library that enables the creation of various types of visualizations, such as line plots, bar charts, histograms, scatter plots, etc., to explore and communicate data effectively.
4. Scikit-learn: Scikit-learn is a machine learning library that offers a wide range of algorithms for classification, regression, clustering, dimensionality reduction, and more. It also provides tools for model selection and evaluation.
5. TensorFlow: TensorFlow is an open-source machine learning framework developed by Google that is widely used for building deep learning models. It provides a comprehensive ecosystem of tools and libraries for developing and deploying machine learning applications.
6. Keras: Keras is a high-level neural networks API that runs on top of TensorFlow, Theano, or Microsoft Cognitive Toolkit. It simplifies the process of building and training deep learning models by providing a user-friendly interface.
7. SciPy: SciPy is a scientific computing library that builds on top of NumPy and provides additional functionality for optimization, integration, interpolation, linear algebra, signal processing, and more.
8. Seaborn: Seaborn is a data visualization library based on Matplotlib that provides a higher-level interface for creating attractive and informative statistical graphics.
Channel credits: https://t.iss.one/datasciencefun
ENJOY LEARNING ๐๐
๐4๐2
If you want to get a job as a machine learning engineer, donโt start by diving into the hottest libraries like PyTorch,TensorFlow, Langchain, etc.
Yes, you might hear a lot about them or some other trending technology of the year...but guess what!
Technologies evolve rapidly, especially in the age of AI, but core concepts are always seen as more valuable than expertise in any particular tool. Stop trying to perform a brain surgery without knowing anything about human anatomy.
Instead, here are basic skills that will get you further than mastering any framework:
๐๐๐ญ๐ก๐๐ฆ๐๐ญ๐ข๐๐ฌ ๐๐ง๐ ๐๐ญ๐๐ญ๐ข๐ฌ๐ญ๐ข๐๐ฌ - My first exposure to probability and statistics was in college, and it felt abstract at the time, but these concepts are the backbone of ML.
You can start here: Khan Academy Statistics and Probability - https://www.khanacademy.org/math/statistics-probability
๐๐ข๐ง๐๐๐ซ ๐๐ฅ๐ ๐๐๐ซ๐ ๐๐ง๐ ๐๐๐ฅ๐๐ฎ๐ฅ๐ฎ๐ฌ - Concepts like matrices, vectors, eigenvalues, and derivatives are fundamental to understanding how ml algorithms work. These are used in everything from simple regression to deep learning.
๐๐ซ๐จ๐ ๐ซ๐๐ฆ๐ฆ๐ข๐ง๐ - Should you learn Python, Rust, R, Julia, JavaScript, etc.? The best advice is to pick the language that is most frequently used for the type of work you want to do. I started with Python due to its simplicity and extensive library support, and it remains my go-to language for machine learning tasks.
You can start here: Automate the Boring Stuff with Python - https://automatetheboringstuff.com/
๐๐ฅ๐ ๐จ๐ซ๐ข๐ญ๐ก๐ฆ ๐๐ง๐๐๐ซ๐ฌ๐ญ๐๐ง๐๐ข๐ง๐ - Understand the fundamental algorithms before jumping to deep learning. This includes linear regression, decision trees, SVMs, and clustering algorithms.
๐๐๐ฉ๐ฅ๐จ๐ฒ๐ฆ๐๐ง๐ญ ๐๐ง๐ ๐๐ซ๐จ๐๐ฎ๐๐ญ๐ข๐จ๐ง:
Knowing how to take a model from development to production is invaluable. This includes understanding APIs, model optimization, and monitoring. Tools like Docker and Flask are often used in this process.
๐๐ฅ๐จ๐ฎ๐ ๐๐จ๐ฆ๐ฉ๐ฎ๐ญ๐ข๐ง๐ ๐๐ง๐ ๐๐ข๐ ๐๐๐ญ๐:
Familiarity with cloud platforms (AWS, Google Cloud, Azure) and big data tools (Spark) is increasingly important as datasets grow larger. These skills help you manage and process large-scale data efficiently.
You can start here: Google Cloud Machine Learning - https://cloud.google.com/learn/training/machinelearning-ai
I love frameworks and libraries, and they can make anyone's job easier.
But the more solid your foundation, the easier it will be to pick up any new technologies and actually validate whether they solve your problems.
Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624
All the best ๐๐
Yes, you might hear a lot about them or some other trending technology of the year...but guess what!
Technologies evolve rapidly, especially in the age of AI, but core concepts are always seen as more valuable than expertise in any particular tool. Stop trying to perform a brain surgery without knowing anything about human anatomy.
Instead, here are basic skills that will get you further than mastering any framework:
๐๐๐ญ๐ก๐๐ฆ๐๐ญ๐ข๐๐ฌ ๐๐ง๐ ๐๐ญ๐๐ญ๐ข๐ฌ๐ญ๐ข๐๐ฌ - My first exposure to probability and statistics was in college, and it felt abstract at the time, but these concepts are the backbone of ML.
You can start here: Khan Academy Statistics and Probability - https://www.khanacademy.org/math/statistics-probability
๐๐ข๐ง๐๐๐ซ ๐๐ฅ๐ ๐๐๐ซ๐ ๐๐ง๐ ๐๐๐ฅ๐๐ฎ๐ฅ๐ฎ๐ฌ - Concepts like matrices, vectors, eigenvalues, and derivatives are fundamental to understanding how ml algorithms work. These are used in everything from simple regression to deep learning.
๐๐ซ๐จ๐ ๐ซ๐๐ฆ๐ฆ๐ข๐ง๐ - Should you learn Python, Rust, R, Julia, JavaScript, etc.? The best advice is to pick the language that is most frequently used for the type of work you want to do. I started with Python due to its simplicity and extensive library support, and it remains my go-to language for machine learning tasks.
You can start here: Automate the Boring Stuff with Python - https://automatetheboringstuff.com/
๐๐ฅ๐ ๐จ๐ซ๐ข๐ญ๐ก๐ฆ ๐๐ง๐๐๐ซ๐ฌ๐ญ๐๐ง๐๐ข๐ง๐ - Understand the fundamental algorithms before jumping to deep learning. This includes linear regression, decision trees, SVMs, and clustering algorithms.
๐๐๐ฉ๐ฅ๐จ๐ฒ๐ฆ๐๐ง๐ญ ๐๐ง๐ ๐๐ซ๐จ๐๐ฎ๐๐ญ๐ข๐จ๐ง:
Knowing how to take a model from development to production is invaluable. This includes understanding APIs, model optimization, and monitoring. Tools like Docker and Flask are often used in this process.
๐๐ฅ๐จ๐ฎ๐ ๐๐จ๐ฆ๐ฉ๐ฎ๐ญ๐ข๐ง๐ ๐๐ง๐ ๐๐ข๐ ๐๐๐ญ๐:
Familiarity with cloud platforms (AWS, Google Cloud, Azure) and big data tools (Spark) is increasingly important as datasets grow larger. These skills help you manage and process large-scale data efficiently.
You can start here: Google Cloud Machine Learning - https://cloud.google.com/learn/training/machinelearning-ai
I love frameworks and libraries, and they can make anyone's job easier.
But the more solid your foundation, the easier it will be to pick up any new technologies and actually validate whether they solve your problems.
Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624
All the best ๐๐
๐2โค1
Top Platforms for Building Data Science Portfolio
Build an irresistible portfolio that hooks recruiters with these free platforms.
Landing a job as a data scientist begins with building your portfolio with a comprehensive list of all your projects. To help you get started with building your portfolio, here is the list of top data science platforms. Remember the stronger your portfolio, the better chances you have of landing your dream job.
1. GitHub
2. Kaggle
3. LinkedIn
4. Medium
5. MachineHack
6. DagsHub
7. HuggingFace
#datascienceprojects
Build an irresistible portfolio that hooks recruiters with these free platforms.
Landing a job as a data scientist begins with building your portfolio with a comprehensive list of all your projects. To help you get started with building your portfolio, here is the list of top data science platforms. Remember the stronger your portfolio, the better chances you have of landing your dream job.
1. GitHub
2. Kaggle
3. LinkedIn
4. Medium
5. MachineHack
6. DagsHub
7. HuggingFace
#datascienceprojects
๐13โค1
Popular Python packages for data science:
1. NumPy: For numerical operations and working with arrays.
2. Pandas: For data manipulation and analysis, especially with data frames.
3. Matplotlib and Seaborn: For data visualization.
4. Scikit-learn: For machine learning algorithms and tools.
5. TensorFlow and PyTorch: Deep learning frameworks.
6. SciPy: For scientific and technical computing.
7. Statsmodels: For statistical modeling and hypothesis testing.
8. NLTK and SpaCy: Natural Language Processing libraries.
9. Jupyter Notebooks: Interactive computing and data visualization.
10. Bokeh and Plotly: Additional libraries for interactive visualizations.
Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
1. NumPy: For numerical operations and working with arrays.
2. Pandas: For data manipulation and analysis, especially with data frames.
3. Matplotlib and Seaborn: For data visualization.
4. Scikit-learn: For machine learning algorithms and tools.
5. TensorFlow and PyTorch: Deep learning frameworks.
6. SciPy: For scientific and technical computing.
7. Statsmodels: For statistical modeling and hypothesis testing.
8. NLTK and SpaCy: Natural Language Processing libraries.
9. Jupyter Notebooks: Interactive computing and data visualization.
10. Bokeh and Plotly: Additional libraries for interactive visualizations.
Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
๐2
๐ Required Skills for a data scientist
๐ฏStatistics and Probability
๐ฏMathematics
๐ฏPython, R, SAS and Scala or other.
๐ฏData visualisation
๐ฏBig data
๐ฏData inquisitiveness
๐ฏBusiness expertise
๐ฏCritical thinking
๐ฏMachine learning, deep learning and AI
๐ฏCommunication skills
๐ฏTeamwork
๐ฏStatistics and Probability
๐ฏMathematics
๐ฏPython, R, SAS and Scala or other.
๐ฏData visualisation
๐ฏBig data
๐ฏData inquisitiveness
๐ฏBusiness expertise
๐ฏCritical thinking
๐ฏMachine learning, deep learning and AI
๐ฏCommunication skills
๐ฏTeamwork
โค5
Essential Programming Languages to Learn Data Science ๐๐
1. Python: Python is one of the most popular programming languages for data science due to its simplicity, versatility, and extensive library support (such as NumPy, Pandas, and Scikit-learn).
2. R: R is another popular language for data science, particularly in academia and research settings. It has powerful statistical analysis capabilities and a wide range of packages for data manipulation and visualization.
3. SQL: SQL (Structured Query Language) is essential for working with databases, which are a critical component of data science projects. Knowledge of SQL is necessary for querying and manipulating data stored in relational databases.
4. Java: Java is a versatile language that is widely used in enterprise applications and big data processing frameworks like Apache Hadoop and Apache Spark. Knowledge of Java can be beneficial for working with large-scale data processing systems.
5. Scala: Scala is a functional programming language that is often used in conjunction with Apache Spark for distributed data processing. Knowledge of Scala can be valuable for building high-performance data processing applications.
6. Julia: Julia is a high-performance language specifically designed for scientific computing and data analysis. It is gaining popularity in the data science community due to its speed and ease of use for numerical computations.
7. MATLAB: MATLAB is a proprietary programming language commonly used in engineering and scientific research for data analysis, visualization, and modeling. It is particularly useful for signal processing and image analysis tasks.
Free Resources to master data analytics concepts ๐๐
Data Analysis with R
Intro to Data Science
Practical Python Programming
SQL for Data Analysis
Java Essential Concepts
Machine Learning with Python
Data Science Project Ideas
Join @free4unow_backup for more free resources.
ENJOY LEARNING๐๐
1. Python: Python is one of the most popular programming languages for data science due to its simplicity, versatility, and extensive library support (such as NumPy, Pandas, and Scikit-learn).
2. R: R is another popular language for data science, particularly in academia and research settings. It has powerful statistical analysis capabilities and a wide range of packages for data manipulation and visualization.
3. SQL: SQL (Structured Query Language) is essential for working with databases, which are a critical component of data science projects. Knowledge of SQL is necessary for querying and manipulating data stored in relational databases.
4. Java: Java is a versatile language that is widely used in enterprise applications and big data processing frameworks like Apache Hadoop and Apache Spark. Knowledge of Java can be beneficial for working with large-scale data processing systems.
5. Scala: Scala is a functional programming language that is often used in conjunction with Apache Spark for distributed data processing. Knowledge of Scala can be valuable for building high-performance data processing applications.
6. Julia: Julia is a high-performance language specifically designed for scientific computing and data analysis. It is gaining popularity in the data science community due to its speed and ease of use for numerical computations.
7. MATLAB: MATLAB is a proprietary programming language commonly used in engineering and scientific research for data analysis, visualization, and modeling. It is particularly useful for signal processing and image analysis tasks.
Free Resources to master data analytics concepts ๐๐
Data Analysis with R
Intro to Data Science
Practical Python Programming
SQL for Data Analysis
Java Essential Concepts
Machine Learning with Python
Data Science Project Ideas
Join @free4unow_backup for more free resources.
ENJOY LEARNING๐๐
๐7
๐"Key Python Libraries for Data Science:
Numpy: Core for numerical operations and array handling.
SciPy: Complements Numpy with scientific computing features like optimization.
Pandas: Crucial for data manipulation, offering powerful DataFrames.
Matplotlib: Versatile plotting library for creating various visualizations.
Keras: High-level neural networks API for quick deep learning prototyping.
TensorFlow: Popular open-source ML framework for building and training models.
Scikit-learn: Efficient tools for data mining and statistical modeling.
Seaborn: Enhances data visualization with appealing statistical graphics.
Statsmodels: Focuses on estimating and testing statistical models.
NLTK: Library for working with human language data.
These libraries empower data scientists across tasks, from preprocessing to advanced machine learning."
Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
Numpy: Core for numerical operations and array handling.
SciPy: Complements Numpy with scientific computing features like optimization.
Pandas: Crucial for data manipulation, offering powerful DataFrames.
Matplotlib: Versatile plotting library for creating various visualizations.
Keras: High-level neural networks API for quick deep learning prototyping.
TensorFlow: Popular open-source ML framework for building and training models.
Scikit-learn: Efficient tools for data mining and statistical modeling.
Seaborn: Enhances data visualization with appealing statistical graphics.
Statsmodels: Focuses on estimating and testing statistical models.
NLTK: Library for working with human language data.
These libraries empower data scientists across tasks, from preprocessing to advanced machine learning."
Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
๐5โค1
One day or Day one. You decide.
Data Science edition.
๐ข๐ป๐ฒ ๐๐ฎ๐ : I will learn SQL.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Download mySQL Workbench.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will build my projects for my portfolio.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Look on Kaggle for a dataset to work on.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will master statistics.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Start the free Khan Academy Statistics and Probability course.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will learn to tell stories with data.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Install Tableau Public and create my first chart.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will become a Data Scientist.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Update my resume and apply to some Data Science job postings.
Data Science edition.
๐ข๐ป๐ฒ ๐๐ฎ๐ : I will learn SQL.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Download mySQL Workbench.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will build my projects for my portfolio.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Look on Kaggle for a dataset to work on.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will master statistics.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Start the free Khan Academy Statistics and Probability course.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will learn to tell stories with data.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Install Tableau Public and create my first chart.
๐ข๐ป๐ฒ ๐๐ฎ๐: I will become a Data Scientist.
๐๐ฎ๐ ๐ข๐ป๐ฒ: Update my resume and apply to some Data Science job postings.
โค8๐4๐2๐ข1
Let's now understand Data Science Roadmap in detail:
1. Math & Statistics (Foundation Layer)
This is the backbone of data science. Strong intuition here helps with algorithms, ML, and interpreting results.
Key Topics:
Linear Algebra: Vectors, matrices, matrix operations
Calculus: Derivatives, gradients (for optimization)
Probability: Bayes theorem, probability distributions
Statistics: Mean, median, mode, standard deviation, hypothesis testing, confidence intervals
Inferential Statistics: p-values, t-tests, ANOVA
Resources:
Khan Academy (Math & Stats)
"Think Stats" book
YouTube (StatQuest with Josh Starmer)
2. Python or R (Pick One for Analysis)
These are your main tools. Python is more popular in industry; R is strong in academia.
For Python Learn:
Variables, loops, functions, list comprehension
Libraries: NumPy, Pandas, Matplotlib, Seaborn
For R Learn:
Vectors, data frames, ggplot2, dplyr, tidyr
Goal: Be comfortable working with data, writing clean code, and doing basic analysis.
3. Data Wrangling (Data Cleaning & Manipulation)
Real-world data is messy. Cleaning and structuring it is essential.
What to Learn:
Handling missing values
Removing duplicates
String operations
Date and time operations
Merging and joining datasets
Reshaping data (pivot, melt)
Tools:
Python: Pandas
R: dplyr, tidyr
Mini Projects: Clean a messy CSV or scrape and structure web data.
4. Data Visualization (Telling the Story)
This is about showing insights visually for business users or stakeholders.
In Python:
Matplotlib, Seaborn, Plotly
In R:
ggplot2, plotly
Learn To:
Create bar plots, histograms, scatter plots, box plots
Design dashboards (can explore Power BI or Tableau)
Use color and layout to enhance clarity
5. Machine Learning (ML)
Now the real fun begins! Automate predictions and classifications.
Topics:
Supervised Learning: Linear Regression, Logistic Regression, Decision Trees, Random Forests, SVM
Unsupervised Learning: Clustering (K-means), PCA
Model Evaluation: Accuracy, Precision, Recall, F1-score, ROC-AUC
Cross-validation, Hyperparameter tuning
Libraries:
scikit-learn, xgboost
Practice On:
Kaggle datasets, Titanic survival, House price prediction
6. Deep Learning & NLP (Advanced Level)
Push your skills to the next level. Essential for AI, image, and text-based tasks.
Deep Learning:
Neural Networks, CNNs, RNNs
Frameworks: TensorFlow, Keras, PyTorch
NLP (Natural Language Processing):
Text preprocessing (tokenization, stemming, lemmatization)
TF-IDF, Word Embeddings
Sentiment Analysis, Topic Modeling
Transformers (BERT, GPT, etc.)
Projects:
Sentiment analysis from Twitter data
Image classifier using CNN
7. Projects (Build Your Portfolio)
Apply everything you've learned to real-world datasets.
Types of Projects:
EDA + ML project on a domain (finance, health, sports)
End-to-end ML pipeline
Deep Learning project (image or text)
Build a dashboard with your insights
Collaborate on GitHub, contribute to open-source
Tips:
Host projects on GitHub
Write about them on Medium, LinkedIn, or personal blog
8. โ Apply for Jobs (You're Ready!)
Now, you're prepared to apply with confidence.
Steps:
Prepare your resume tailored for DS roles
Sharpen interview skills (SQL, Python, case studies)
Practice on LeetCode, InterviewBit
Network on LinkedIn, attend meetups
Apply for internships or entry-level DS/DA roles
Keep learning and adapting. Data Science is vast and fast-movingโstay updated via newsletters, GitHub, and communities like Kaggle or Reddit.
Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624
Credits: https://whatsapp.com/channel/0029Va4QUHa6rsQjhITHK82y
Like if you need similar content ๐๐
Hope this helps you ๐
1. Math & Statistics (Foundation Layer)
This is the backbone of data science. Strong intuition here helps with algorithms, ML, and interpreting results.
Key Topics:
Linear Algebra: Vectors, matrices, matrix operations
Calculus: Derivatives, gradients (for optimization)
Probability: Bayes theorem, probability distributions
Statistics: Mean, median, mode, standard deviation, hypothesis testing, confidence intervals
Inferential Statistics: p-values, t-tests, ANOVA
Resources:
Khan Academy (Math & Stats)
"Think Stats" book
YouTube (StatQuest with Josh Starmer)
2. Python or R (Pick One for Analysis)
These are your main tools. Python is more popular in industry; R is strong in academia.
For Python Learn:
Variables, loops, functions, list comprehension
Libraries: NumPy, Pandas, Matplotlib, Seaborn
For R Learn:
Vectors, data frames, ggplot2, dplyr, tidyr
Goal: Be comfortable working with data, writing clean code, and doing basic analysis.
3. Data Wrangling (Data Cleaning & Manipulation)
Real-world data is messy. Cleaning and structuring it is essential.
What to Learn:
Handling missing values
Removing duplicates
String operations
Date and time operations
Merging and joining datasets
Reshaping data (pivot, melt)
Tools:
Python: Pandas
R: dplyr, tidyr
Mini Projects: Clean a messy CSV or scrape and structure web data.
4. Data Visualization (Telling the Story)
This is about showing insights visually for business users or stakeholders.
In Python:
Matplotlib, Seaborn, Plotly
In R:
ggplot2, plotly
Learn To:
Create bar plots, histograms, scatter plots, box plots
Design dashboards (can explore Power BI or Tableau)
Use color and layout to enhance clarity
5. Machine Learning (ML)
Now the real fun begins! Automate predictions and classifications.
Topics:
Supervised Learning: Linear Regression, Logistic Regression, Decision Trees, Random Forests, SVM
Unsupervised Learning: Clustering (K-means), PCA
Model Evaluation: Accuracy, Precision, Recall, F1-score, ROC-AUC
Cross-validation, Hyperparameter tuning
Libraries:
scikit-learn, xgboost
Practice On:
Kaggle datasets, Titanic survival, House price prediction
6. Deep Learning & NLP (Advanced Level)
Push your skills to the next level. Essential for AI, image, and text-based tasks.
Deep Learning:
Neural Networks, CNNs, RNNs
Frameworks: TensorFlow, Keras, PyTorch
NLP (Natural Language Processing):
Text preprocessing (tokenization, stemming, lemmatization)
TF-IDF, Word Embeddings
Sentiment Analysis, Topic Modeling
Transformers (BERT, GPT, etc.)
Projects:
Sentiment analysis from Twitter data
Image classifier using CNN
7. Projects (Build Your Portfolio)
Apply everything you've learned to real-world datasets.
Types of Projects:
EDA + ML project on a domain (finance, health, sports)
End-to-end ML pipeline
Deep Learning project (image or text)
Build a dashboard with your insights
Collaborate on GitHub, contribute to open-source
Tips:
Host projects on GitHub
Write about them on Medium, LinkedIn, or personal blog
8. โ Apply for Jobs (You're Ready!)
Now, you're prepared to apply with confidence.
Steps:
Prepare your resume tailored for DS roles
Sharpen interview skills (SQL, Python, case studies)
Practice on LeetCode, InterviewBit
Network on LinkedIn, attend meetups
Apply for internships or entry-level DS/DA roles
Keep learning and adapting. Data Science is vast and fast-movingโstay updated via newsletters, GitHub, and communities like Kaggle or Reddit.
Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624
Credits: https://whatsapp.com/channel/0029Va4QUHa6rsQjhITHK82y
Like if you need similar content ๐๐
Hope this helps you ๐
๐11โค6
Roadmap to become a Data Scientist:
๐ Learn Python & R
โ๐ Learn Statistics & Probability
โ๐ Learn SQL & Data Handling
โ๐ Learn Data Cleaning & Preprocessing
โ๐ Learn Data Visualization (Matplotlib, Seaborn, Power BI/Tableau)
โ๐ Learn Machine Learning (Supervised, Unsupervised)
โ๐ Learn Deep Learning (Neural Nets, CNNs, RNNs)
โ๐ Learn Model Deployment (Flask, Streamlit, FastAPI)
โ๐ Build Real-world Projects & Case Studies
โโ Apply for Jobs & Internships
React โค๏ธ for more
๐ Learn Python & R
โ๐ Learn Statistics & Probability
โ๐ Learn SQL & Data Handling
โ๐ Learn Data Cleaning & Preprocessing
โ๐ Learn Data Visualization (Matplotlib, Seaborn, Power BI/Tableau)
โ๐ Learn Machine Learning (Supervised, Unsupervised)
โ๐ Learn Deep Learning (Neural Nets, CNNs, RNNs)
โ๐ Learn Model Deployment (Flask, Streamlit, FastAPI)
โ๐ Build Real-world Projects & Case Studies
โโ Apply for Jobs & Internships
React โค๏ธ for more
๐10โค8๐ฅ2
10 Machine Learning Concepts You Must Know
โ Supervised vs Unsupervised Learning โ Understand the foundation of ML tasks
โ Bias-Variance Tradeoff โ Balance underfitting and overfitting
โ Feature Engineering โ The secret sauce to boost model performance
โ Train-Test Split & Cross-Validation โ Evaluate models the right way
โ Confusion Matrix โ Measure model accuracy, precision, recall, and F1
โ Gradient Descent โ The algorithm behind learning in most models
โ Regularization (L1/L2) โ Prevent overfitting by penalizing complexity
โ Decision Trees & Random Forests โ Interpretable and powerful models
โ Support Vector Machines โ Great for classification with clear boundaries
โ Neural Networks โ The foundation of deep learning
React with โค๏ธ for detailed explained
Data Science & Machine Learning Resources: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
ENJOY LEARNING ๐๐
โ Supervised vs Unsupervised Learning โ Understand the foundation of ML tasks
โ Bias-Variance Tradeoff โ Balance underfitting and overfitting
โ Feature Engineering โ The secret sauce to boost model performance
โ Train-Test Split & Cross-Validation โ Evaluate models the right way
โ Confusion Matrix โ Measure model accuracy, precision, recall, and F1
โ Gradient Descent โ The algorithm behind learning in most models
โ Regularization (L1/L2) โ Prevent overfitting by penalizing complexity
โ Decision Trees & Random Forests โ Interpretable and powerful models
โ Support Vector Machines โ Great for classification with clear boundaries
โ Neural Networks โ The foundation of deep learning
React with โค๏ธ for detailed explained
Data Science & Machine Learning Resources: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
ENJOY LEARNING ๐๐
โค4๐2
Interview QnAs For ML Engineer
1.What are the various steps involved in an data analytics project?
The steps involved in a data analytics project are:
Data collection
Data cleansing
Data pre-processing
EDA
Creation of train test and validation sets
Model creation
Hyperparameter tuning
Model deployment
2. Explain Star Schema.
Star schema is a data warehousing concept in which all schema is connected to a central schema.
3. What is root cause analysis?
Root cause analysis is the process of tracing back of occurrence of an event and the factors which lead to it. Itโs generally done when a software malfunctions. In data science, root cause analysis helps businesses understand the semantics behind certain outcomes.
4. Define Confounding Variables.
A confounding variable is an external influence in an experiment. In simple words, these variables change the effect of a dependent and independent variable. A variable should satisfy below conditions to be a confounding variable :
Variables should be correlated to the independent variable.
Variables should be informally related to the dependent variable.
For example, if you are studying whether a lack of exercise has an effect on weight gain, then the lack of exercise is an independent variable and weight gain is a dependent variable. A confounder variable can be any other factor that has an effect on weight gain. Amount of food consumed, weather conditions etc. can be a confounding variable.
Data Science & Machine Learning Resources: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
ENJOY LEARNING ๐๐
1.What are the various steps involved in an data analytics project?
The steps involved in a data analytics project are:
Data collection
Data cleansing
Data pre-processing
EDA
Creation of train test and validation sets
Model creation
Hyperparameter tuning
Model deployment
2. Explain Star Schema.
Star schema is a data warehousing concept in which all schema is connected to a central schema.
3. What is root cause analysis?
Root cause analysis is the process of tracing back of occurrence of an event and the factors which lead to it. Itโs generally done when a software malfunctions. In data science, root cause analysis helps businesses understand the semantics behind certain outcomes.
4. Define Confounding Variables.
A confounding variable is an external influence in an experiment. In simple words, these variables change the effect of a dependent and independent variable. A variable should satisfy below conditions to be a confounding variable :
Variables should be correlated to the independent variable.
Variables should be informally related to the dependent variable.
For example, if you are studying whether a lack of exercise has an effect on weight gain, then the lack of exercise is an independent variable and weight gain is a dependent variable. A confounder variable can be any other factor that has an effect on weight gain. Amount of food consumed, weather conditions etc. can be a confounding variable.
Data Science & Machine Learning Resources: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D
ENJOY LEARNING ๐๐
๐8
9 things every beginner programmer should stop doing:
โ Copy-pasting code without understanding it
โฉ Skipping the fundamentals to learn advanced stuff
๐ Rewriting the same code instead of reusing functions
๐ฆ Ignoring file/folder structure in projects
โ ๏ธ Not handling errors or exceptions
๐ง Memorizing syntax instead of learning logic
โณ Waiting for the โperfect ideaโ to start coding
๐ Jumping between tutorials without building anything
๐ค Giving up too early when things get hard
#coding #tips
โ Copy-pasting code without understanding it
โฉ Skipping the fundamentals to learn advanced stuff
๐ Rewriting the same code instead of reusing functions
๐ฆ Ignoring file/folder structure in projects
โ ๏ธ Not handling errors or exceptions
๐ง Memorizing syntax instead of learning logic
โณ Waiting for the โperfect ideaโ to start coding
๐ Jumping between tutorials without building anything
๐ค Giving up too early when things get hard
#coding #tips
๐6