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Bayesian Data Analysis
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New Data Scientists - When you learn, it's easy to get distracted by Machine Learning & Deep Learning terms like "XGBoost", "Neural Networks", "RNN", "LSTM" or Advanced Technologies like "Spark", "Julia", "Scala", "Go", etc.

Don't get bogged down trying to learn every new term & technology you come across.

Instead, focus on foundations.
- data wrangling
- visualizing
- exploring
- modeling
- understanding the results.

The best tools are often basic, Build yourself up. You'll advance much faster. Keep learning!
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5 misconceptions about data analytics (and what's actually true):

โŒ The more sophisticated the tool, the better the analyst
โœ… Many analysts do their jobs with "basic" tools like Excel

โŒ You're just there to crunch the numbers
โœ… You need to be able to tell a story with the data

โŒ You need super advanced math skills
โœ… Understanding basic math and statistics is a good place to start

โŒ Data is always clean and accurate
โœ… Data is never clean and 100% accurate (without lots of prep work)

โŒ You'll work in isolation and not talk to anyone
โœ… Communication with your team and your stakeholders is essential
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Don't stress too much on which tools to learn first.

Pickup 2-3 tools and master them. Skills are transferable.

For eg- If you can create an amazing dashboard in Power BI, you can make similar impressive dashboard in Tableau as well.

If you can run efficient queries in MySQL, it's going to be nearly same in PostgreSQL as well.

If you can manipulate fields in Excel, you can do the same stuff in Google Sheets as well.

Continuity is the key ๐Ÿ˜„

Never stop Learning โค๏ธ
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๐Ÿ”ฐ Data Science Roadmap for Beginners 2025
โ”œโ”€โ”€ ๐Ÿ“˜ What is Data Science?
โ”œโ”€โ”€ ๐Ÿง  Data Science vs Data Analytics vs Machine Learning
โ”œโ”€โ”€ ๐Ÿ›  Tools of the Trade (Python, R, Excel, SQL)
โ”œโ”€โ”€ ๐Ÿ Python for Data Science (NumPy, Pandas, Matplotlib)
โ”œโ”€โ”€ ๐Ÿ”ข Statistics & Probability Basics
โ”œโ”€โ”€ ๐Ÿ“Š Data Visualization (Matplotlib, Seaborn, Plotly)
โ”œโ”€โ”€ ๐Ÿงผ Data Cleaning & Preprocessing
โ”œโ”€โ”€ ๐Ÿงฎ Exploratory Data Analysis (EDA)
โ”œโ”€โ”€ ๐Ÿง  Introduction to Machine Learning
โ”œโ”€โ”€ ๐Ÿ“ฆ Supervised vs Unsupervised Learning
โ”œโ”€โ”€ ๐Ÿค– Popular ML Algorithms (Linear Reg, KNN, Decision Trees)
โ”œโ”€โ”€ ๐Ÿงช Model Evaluation (Accuracy, Precision, Recall, F1 Score)
โ”œโ”€โ”€ ๐Ÿงฐ Model Tuning (Cross Validation, Grid Search)
โ”œโ”€โ”€ โš™๏ธ Feature Engineering
โ”œโ”€โ”€ ๐Ÿ— Real-world Projects (Kaggle, UCI Datasets)
โ”œโ”€โ”€ ๐Ÿ“ˆ Basic Deployment (Streamlit, Flask, Heroku)
โ”œโ”€โ”€ ๐Ÿ” Continuous Learning: Blogs, Research Papers, Competitions

Join our WhatsApp channel: https://whatsapp.com/channel/0029Va8v3eo1NCrQfGMseL2D

Like for more โค๏ธ
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To start with Machine Learning:

   1. Learn Python
   2. Practice using Google Colab
   

Take these free courses:

https://t.iss.one/datasciencefun/290

If you need a bit more time before diving deeper, finish the Kaggle tutorials.

At this point, you are ready to finish your first project: The Titanic Challenge on Kaggle.

If Math is not your strong suit, don't worry. I don't recommend you spend too much time learning Math before writing code. Instead, learn the concepts on-demand: Find what you need when needed.

From here, take the Machine Learning specialization in Coursera. It's more advanced, and it will stretch you out a bit.

The top universities worldwide have published their Machine Learning and Deep Learning classes online. Here are some of them:

https://t.iss.one/datasciencefree/259

Many different books will help you. The attached image will give you an idea of my favorite ones.

Finally, keep these three ideas in mind:

1. Start by working on solved problems so you can find help whenever you get stuck.
2. ChatGPT will help you make progress. Use it to summarize complex concepts and generate questions you can answer to practice.
3. Find a community on LinkedIn or ๐• and share your work. Ask questions, and help others.

During this time, you'll deal with a lot. Sometimes, you will feel it's impossible to keep up with everything happening, and you'll be right.

Here is the good news:

Most people understand a tiny fraction of the world of Machine Learning. You don't need more to build a fantastic career in space.

Focus on finding your path, and Write. More. Code.

That's how you win.โœŒ๏ธโœŒ๏ธ
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๐Ÿ”ฅ Data Science Roadmap 2025

Step 1: ๐Ÿ Python Basics
Step 2: ๐Ÿ“Š Data Analysis (Pandas, NumPy)
Step 3: ๐Ÿ“ˆ Data Visualization (Matplotlib, Seaborn)
Step 4: ๐Ÿค– Machine Learning (Scikit-learn)
Step 5: ๏ฟฝ Deep Learning (TensorFlow/PyTorch)
Step 6: ๐Ÿ—ƒ๏ธ SQL & Big Data (Spark)
Step 7: ๐Ÿš€ Deploy Models (Flask, FastAPI)
Step 8: ๐Ÿ“ข Showcase Projects
Step 9: ๐Ÿ’ผ Land a Job!

๐Ÿ”“ Pro Tip: Compete on Kaggle

#datascience
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Source codes for data science projects ๐Ÿ‘‡๐Ÿ‘‡

1. Build chatbots:
https://dzone.com/articles/python-chatbot-project-build-your-first-python-pro

2. Credit card fraud detection:
https://www.kaggle.com/renjithmadhavan/credit-card-fraud-detection-using-python

3. Fake news detection
https://data-flair.training/blogs/advanced-python-project-detecting-fake-news/

4.Driver Drowsiness Detection
https://data-flair.training/blogs/python-project-driver-drowsiness-detection-system/

5. Recommender Systems (Movie Recommendation)
https://data-flair.training/blogs/data-science-r-movie-recommendation/

6. Sentiment Analysis
https://data-flair.training/blogs/data-science-r-sentiment-analysis-project/

7. Gender Detection & Age Prediction
https://www.pyimagesearch.com/2020/04/13/opencv-age-detection-with-deep-learning/

๐—˜๐—ก๐—๐—ข๐—ฌ ๐—Ÿ๐—˜๐—”๐—ฅ๐—ก๐—œ๐—ก๐—š๐Ÿ‘๐Ÿ‘
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Python Important Star Patterns.
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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. โœ… 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-movingโ€”stay 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 ๐Ÿ˜„๐Ÿ‘

Hope this helps you ๐Ÿ˜Š
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๐Ÿค” The latest video dives deep into the MOST in-demand skill this year.

Watch Now: https://youtu.be/GuQHC2_pPxc?feature=shared

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Some essential concepts every data scientist should understand:

### 1. Statistics and Probability
- Purpose: Understanding data distributions and making inferences.
- Core Concepts: Descriptive statistics (mean, median, mode), inferential statistics, probability distributions (normal, binomial), hypothesis testing, p-values, confidence intervals.

### 2. Programming Languages
- Purpose: Implementing data analysis and machine learning algorithms.
- Popular Languages: Python, R.
- Libraries: NumPy, Pandas, Scikit-learn (Python), dplyr, ggplot2 (R).

### 3. Data Wrangling
- Purpose: Cleaning and transforming raw data into a usable format.
- Techniques: Handling missing values, data normalization, feature engineering, data aggregation.

### 4. Exploratory Data Analysis (EDA)
- Purpose: Summarizing the main characteristics of a dataset, often using visual methods.
- Tools: Matplotlib, Seaborn (Python), ggplot2 (R).
- Techniques: Histograms, scatter plots, box plots, correlation matrices.

### 5. Machine Learning
- Purpose: Building models to make predictions or find patterns in data.
- Core Concepts: Supervised learning (regression, classification), unsupervised learning (clustering, dimensionality reduction), model evaluation (accuracy, precision, recall, F1 score).
- Algorithms: Linear regression, logistic regression, decision trees, random forests, support vector machines, k-means clustering, principal component analysis (PCA).

### 6. Deep Learning
- Purpose: Advanced machine learning techniques using neural networks.
- Core Concepts: Neural networks, backpropagation, activation functions, overfitting, dropout.
- Frameworks: TensorFlow, Keras, PyTorch.

### 7. Natural Language Processing (NLP)
- Purpose: Analyzing and modeling textual data.
- Core Concepts: Tokenization, stemming, lemmatization, TF-IDF, word embeddings.
- Techniques: Sentiment analysis, topic modeling, named entity recognition (NER).

### 8. Data Visualization
- Purpose: Communicating insights through graphical representations.
- Tools: Matplotlib, Seaborn, Plotly (Python), ggplot2, Shiny (R), Tableau.
- Techniques: Bar charts, line graphs, heatmaps, interactive dashboards.

### 9. Big Data Technologies
- Purpose: Handling and analyzing large volumes of data.
- Technologies: Hadoop, Spark.
- Core Concepts: Distributed computing, MapReduce, parallel processing.

### 10. Databases
- Purpose: Storing and retrieving data efficiently.
- Types: SQL databases (MySQL, PostgreSQL), NoSQL databases (MongoDB, Cassandra).
- Core Concepts: Querying, indexing, normalization, transactions.

### 11. Time Series Analysis
- Purpose: Analyzing data points collected or recorded at specific time intervals.
- Core Concepts: Trend analysis, seasonal decomposition, ARIMA models, exponential smoothing.

### 12. Model Deployment and Productionization
- Purpose: Integrating machine learning models into production environments.
- Techniques: API development, containerization (Docker), model serving (Flask, FastAPI).
- Tools: MLflow, TensorFlow Serving, Kubernetes.

### 13. Data Ethics and Privacy
- Purpose: Ensuring ethical use and privacy of data.
- Core Concepts: Bias in data, ethical considerations, data anonymization, GDPR compliance.

### 14. Business Acumen
- Purpose: Aligning data science projects with business goals.
- Core Concepts: Understanding key performance indicators (KPIs), domain knowledge, stakeholder communication.

### 15. Collaboration and Version Control
- Purpose: Managing code changes and collaborative work.
- Tools: Git, GitHub, GitLab.
- Practices: Version control, code reviews, collaborative development.

Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624

ENJOY LEARNING ๐Ÿ‘๐Ÿ‘
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