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.
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
π° FREE HANDWRITTEN Python Basics to Advanced Notesππ¨π»βπ»
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React β€οΈ for more like this
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π Top 10 Tools Data Scientists Love! π§
In the ever-evolving world of data science, staying updated with the right tools is crucial to solving complex problems and deriving meaningful insights.
π Hereβs a quick breakdown of the most popular tools:
1. Python π: The go-to language for data science, favored for its versatility and powerful libraries.
2. SQL π οΈ: Essential for querying databases and manipulating data.
3. Jupyter Notebooks π: An interactive environment that makes data analysis and visualization a breeze.
4. TensorFlow/PyTorch π€: Leading frameworks for deep learning and neural networks.
5. Tableau π: A user-friendly tool for creating stunning visualizations and dashboards.
6. Git & GitHub π»: Version control systems that every data scientist should master.
7. Hadoop & Spark π₯: Big data frameworks that help process massive datasets efficiently.
8. Scikit-learn π§¬: A powerful library for machine learning in Python.
9. R π: A statistical programming language that is still a favorite among many analysts.
10. Docker π: A must-have for containerization and deploying applications.
Like if you need similar content ππ
In the ever-evolving world of data science, staying updated with the right tools is crucial to solving complex problems and deriving meaningful insights.
π Hereβs a quick breakdown of the most popular tools:
1. Python π: The go-to language for data science, favored for its versatility and powerful libraries.
2. SQL π οΈ: Essential for querying databases and manipulating data.
3. Jupyter Notebooks π: An interactive environment that makes data analysis and visualization a breeze.
4. TensorFlow/PyTorch π€: Leading frameworks for deep learning and neural networks.
5. Tableau π: A user-friendly tool for creating stunning visualizations and dashboards.
6. Git & GitHub π»: Version control systems that every data scientist should master.
7. Hadoop & Spark π₯: Big data frameworks that help process massive datasets efficiently.
8. Scikit-learn π§¬: A powerful library for machine learning in Python.
9. R π: A statistical programming language that is still a favorite among many analysts.
10. Docker π: A must-have for containerization and deploying applications.
Like if you need similar content ππ
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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
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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Practical Python Dat... by Ashwin Pajankar.pdf
4.8 MB
Practical Python Data Visualization
ΠΠ²ΡΠΎΡ: Ashwin Pajankar
ΠΠ²ΡΠΎΡ: Ashwin Pajankar
https_coderbooks_ruIntroduction_to_Data_Science_Data_Analysis_and.pdf
73.6 MB
Introduction to Data Science
ΠΠ²ΡΠΎΡ: Rafael A. Irizarry
ΠΠ²ΡΠΎΡ: Rafael A. Irizarry
SQL-Cheat-Sheet.pdf
142.1 KB
SQL-Cheat-Sheet.pdf
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