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Hey GuysπŸ‘‹,

The Average Salary Of a Data Scientist is 14LPA 

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We help you master the required skills.

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Essential Python Libraries for Data Analytics πŸ˜„πŸ‘‡

Python Free Resources: https://t.iss.one/pythondevelopersindia

1. NumPy:
- Efficient numerical operations and array manipulation.

2. Pandas:
- Data manipulation and analysis with powerful data structures (DataFrame, Series).

3. Matplotlib:
- 2D plotting library for creating visualizations.

4. Scikit-learn:
- Machine learning toolkit for classification, regression, clustering, etc.

5. TensorFlow:
- Open-source machine learning framework for building and deploying ML models.

6. PyTorch:
- Deep learning library, particularly popular for neural network research.

7. Django:
- High-level web framework for building robust, scalable web applications.

8. Flask:
- Lightweight web framework for building smaller web applications and APIs.

9. Requests:
- HTTP library for making HTTP requests.

10. Beautiful Soup:
- Web scraping library for pulling data out of HTML and XML files.

As a beginner, you can start with Pandas and Numpy libraries for data analysis. If you want to transition from Data Analyst to Data Scientist, then you can start applying ML libraries like Scikit-learn, Tensorflow, Pytorch, etc. in your data projects.

Share with credits: https://t.iss.one/sqlspecialist

Hope it helps :)
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mastering-react-native-beginners.pdf
5.9 MB
Mastering React Native
Sufyan bin Uzayr, 2023
Applied+Geospatial+Data+Science+with+Python.pdf
19.4 MB
Applied Geospatial Data Science with Python
David S. Jordan, 2023
NETWORK_SCIENCE___PYTHON.pdf
24.1 MB
Network Science with Python
David Knickerbocker, 2023
Create Graphical User Interfaces with Python (1).pdf
11.3 MB
βœ… Book : Create Graphical User  Interfaces with Python – How to build windows, buttons, and widgets for your Python projects

βœ… Download now πŸš€
Python Machine Learning Projects - 2023.pdf
6.7 MB
Python Machine Learning Projects
Deepali R. Vora, 2023
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Deep Learning with PyTorch

πŸ“š book
2301.04856.pdf
39.1 MB
Multimodal Deep Learning

This book is the result of a seminar in which we reviewed multimodal approaches and attempted to create a solid overview of the field, starting with the current state-of-the-art approaches in the two subfields of Deep Learning individually.
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Python Basics to Advanced Notes.pdf
8.7 MB
πŸ”° FREE HANDWRITTEN Python Basics to Advanced NotesπŸ“šπŸ‘¨πŸ»β€πŸ’»

React ❀️ for more like this
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Exploratory Data Analysis ( EDA)
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πŸš€ Top 10 Tools Data Scientists Love! 🧠

In the ever-evolving world of data science, staying updated with the right tools is crucial to solving complex problems and deriving meaningful insights.

πŸ” Here’s a quick breakdown of the most popular tools:

1. Python 🐍: The go-to language for data science, favored for its versatility and powerful libraries.
2. SQL πŸ› οΈ: Essential for querying databases and manipulating data.
3. Jupyter Notebooks πŸ““: An interactive environment that makes data analysis and visualization a breeze.
4. TensorFlow/PyTorch πŸ€–: Leading frameworks for deep learning and neural networks.
5. Tableau πŸ“Š: A user-friendly tool for creating stunning visualizations and dashboards.
6. Git & GitHub πŸ’»: Version control systems that every data scientist should master.
7. Hadoop & Spark πŸ”₯: Big data frameworks that help process massive datasets efficiently.
8. Scikit-learn 🧬: A powerful library for machine learning in Python.
9. R πŸ“ˆ: A statistical programming language that is still a favorite among many analysts.
10. Docker πŸ‹: A must-have for containerization and deploying applications.

Like if you need similar content πŸ˜„πŸ‘
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ML Engineer vs AI Engineer

ML Engineer / MLOps

-Focuses on the deployment of machine learning models.
-Bridges the gap between data scientists and production environments.
-Designing and implementing machine learning models into production.
-Automating and orchestrating ML workflows and pipelines.
-Ensuring reproducibility, scalability, and reliability of ML models.
-Programming: Python, R, Java
-Libraries: TensorFlow, PyTorch, Scikit-learn
-MLOps: MLflow, Kubeflow, Docker, Kubernetes, Git, Jenkins, CI/CD tools

AI Engineer / Developer

- Applying AI techniques to solve specific problems.
- Deep knowledge of AI algorithms and their applications.
- Developing and implementing AI models and systems.
- Building and integrating AI solutions into existing applications.
- Collaborating with cross-functional teams to understand requirements and deliver AI-powered solutions.
- Programming: Python, Java, C++
- Libraries: TensorFlow, PyTorch, Keras, OpenCV
- Frameworks: ONNX, Hugging Face
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