Underrated Telegram Channel for Data Analysts 👇👇
https://t.me/sqlspecialist
Here, you will get free tutorials to learn SQL, Python, Power BI, Excel and many more
Hope you guys will like it 😄
https://t.me/sqlspecialist
Here, you will get free tutorials to learn SQL, Python, Power BI, Excel and many more
Hope you guys will like it 😄
Telegram
Data Analytics
Perfect channel to learn Data Analytics
Learn SQL, Python, Alteryx, Tableau, Power BI and many more
For Promotions: @coderfun
Learn SQL, Python, Alteryx, Tableau, Power BI and many more
For Promotions: @coderfun
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8 FREE AI Courses by Google 🎓🚀 Learn, Grow, and Succeed
1. Introduction to Generative AI
→ An introductory course to explain what generative AI is.
→ You'll learn how AI is used and how it's different from machine learning.
🔗 Course Link
2. Image Generation
→ Discover how to train and deploy a model to generate images.
→ After completing this course, you will be awarded a badge.
🔗 Course Link
3. Responsible AI
→ It explains what responsible AI is and why it's important.
→ Learn the 7 AI principles.
🔗 Course Link
4. Large Language Models
→ Explore what large language models (LLM) are.
→ How you can use prompting tuning to enhance LLM performance.
🔗 Course Link
5. Transformer and BERT Models
→ Two essential AI models.
→ How it is to build the BERT model.
→ Upon completion, you will be awarded a badge.
🔗 Course Link
6. Attention Mechanism
→ Introduce you to the attention mechanism.
→ Find out how it can be applied to enhance AI tasks' performance.
🔗 Course Link
7. Generative AI Studio
→ Integrate AI into your apps.
→ Find out about Generative AI Studio, what it can do, and it's features.
🔗 Course Link
8. Image recognition
→ Learn how to create an AI that understands images.
→ Practical learning so that you can create your own by the end of the course.
🔗 Course Link
All the best 👍👍
#freecourses
1. Introduction to Generative AI
→ An introductory course to explain what generative AI is.
→ You'll learn how AI is used and how it's different from machine learning.
🔗 Course Link
2. Image Generation
→ Discover how to train and deploy a model to generate images.
→ After completing this course, you will be awarded a badge.
🔗 Course Link
3. Responsible AI
→ It explains what responsible AI is and why it's important.
→ Learn the 7 AI principles.
🔗 Course Link
4. Large Language Models
→ Explore what large language models (LLM) are.
→ How you can use prompting tuning to enhance LLM performance.
🔗 Course Link
5. Transformer and BERT Models
→ Two essential AI models.
→ How it is to build the BERT model.
→ Upon completion, you will be awarded a badge.
🔗 Course Link
6. Attention Mechanism
→ Introduce you to the attention mechanism.
→ Find out how it can be applied to enhance AI tasks' performance.
🔗 Course Link
7. Generative AI Studio
→ Integrate AI into your apps.
→ Find out about Generative AI Studio, what it can do, and it's features.
🔗 Course Link
8. Image recognition
→ Learn how to create an AI that understands images.
→ Practical learning so that you can create your own by the end of the course.
🔗 Course Link
All the best 👍👍
#freecourses
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Advanced AI and Data Science Interview Questions
1. Explain the concept of Generative Adversarial Networks (GANs). How do they work, and what are some of their applications?
2. What is the Curse of Dimensionality? How does it affect machine learning models, and what techniques can be used to mitigate its impact?
3. Describe the process of hyperparameter tuning in deep learning. What are some strategies you can use to optimize hyperparameters?
4. How does a Transformer architecture differ from traditional RNNs and LSTMs? Why has it become so popular in natural language processing (NLP)?
5. What is the difference between L1 and L2 regularization, and in what scenarios would you prefer one over the other?
6. Explain the concept of transfer learning. How can pre-trained models be used in a new but related task?
7. Discuss the importance of explainability in AI models. How do methods like LIME or SHAP contribute to model interpretability?
8. What are the differences between Reinforcement Learning (RL) and Supervised Learning? Can you provide an example where RL would be more appropriate?
9. How do you handle imbalanced datasets in a classification problem? Discuss techniques like SMOTE, ADASYN, or cost-sensitive learning.
10. What is Bayesian Optimization, and how does it compare to grid search or random search for hyperparameter tuning?
11. Describe the steps involved in developing a recommendation system. What algorithms might you use, and how would you evaluate its performance?
12. Can you explain the concept of autoencoders? How are they used for tasks such as dimensionality reduction or anomaly detection?
13. What are adversarial examples in the context of machine learning models? How can they be used to fool models, and what can be done to defend against them?
14. Discuss the role of attention mechanisms in neural networks. How have they improved performance in tasks like machine translation?
15. What is a variational autoencoder (VAE)? How does it differ from a standard autoencoder, and what are its benefits in generating new data?
Like if you need similar content 😄👍
1. Explain the concept of Generative Adversarial Networks (GANs). How do they work, and what are some of their applications?
2. What is the Curse of Dimensionality? How does it affect machine learning models, and what techniques can be used to mitigate its impact?
3. Describe the process of hyperparameter tuning in deep learning. What are some strategies you can use to optimize hyperparameters?
4. How does a Transformer architecture differ from traditional RNNs and LSTMs? Why has it become so popular in natural language processing (NLP)?
5. What is the difference between L1 and L2 regularization, and in what scenarios would you prefer one over the other?
6. Explain the concept of transfer learning. How can pre-trained models be used in a new but related task?
7. Discuss the importance of explainability in AI models. How do methods like LIME or SHAP contribute to model interpretability?
8. What are the differences between Reinforcement Learning (RL) and Supervised Learning? Can you provide an example where RL would be more appropriate?
9. How do you handle imbalanced datasets in a classification problem? Discuss techniques like SMOTE, ADASYN, or cost-sensitive learning.
10. What is Bayesian Optimization, and how does it compare to grid search or random search for hyperparameter tuning?
11. Describe the steps involved in developing a recommendation system. What algorithms might you use, and how would you evaluate its performance?
12. Can you explain the concept of autoencoders? How are they used for tasks such as dimensionality reduction or anomaly detection?
13. What are adversarial examples in the context of machine learning models? How can they be used to fool models, and what can be done to defend against them?
14. Discuss the role of attention mechanisms in neural networks. How have they improved performance in tasks like machine translation?
15. What is a variational autoencoder (VAE)? How does it differ from a standard autoencoder, and what are its benefits in generating new data?
Like if you need similar content 😄👍
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Master AI (Artificial Intelligence) in 10 days 👇👇
#AI
Day 1: Introduction to AI
- Start with an overview of what AI is and its various applications.
- Read articles or watch videos explaining the basics of AI.
Day 2-3: Machine Learning Fundamentals
- Learn the basics of machine learning, including supervised and unsupervised learning.
- Study concepts like data, features, labels, and algorithms.
Day 4-5: Deep Learning
- Dive into deep learning, understanding neural networks and their architecture.
- Learn about popular deep learning frameworks like TensorFlow or PyTorch.
Day 6: Natural Language Processing (NLP)
- Explore the basics of NLP, including tokenization, sentiment analysis, and named entity recognition.
Day 7: Computer Vision
- Study computer vision, including image recognition, object detection, and convolutional neural networks.
Day 8: AI Ethics and Bias
- Explore the ethical considerations in AI and the issue of bias in AI algorithms.
Day 9: AI Tools and Resources
- Familiarize yourself with AI development tools and platforms.
- Learn how to access and use AI datasets and APIs.
Day 10: AI Project
- Work on a small AI project. For example, build a basic chatbot, create an image classifier, or analyze a dataset using AI techniques.
Free Resources: https://t.me/machinelearning_deeplearning
Share for more: https://t.me/datasciencefun
ENJOY LEARNING 👍👍
#AI
Day 1: Introduction to AI
- Start with an overview of what AI is and its various applications.
- Read articles or watch videos explaining the basics of AI.
Day 2-3: Machine Learning Fundamentals
- Learn the basics of machine learning, including supervised and unsupervised learning.
- Study concepts like data, features, labels, and algorithms.
Day 4-5: Deep Learning
- Dive into deep learning, understanding neural networks and their architecture.
- Learn about popular deep learning frameworks like TensorFlow or PyTorch.
Day 6: Natural Language Processing (NLP)
- Explore the basics of NLP, including tokenization, sentiment analysis, and named entity recognition.
Day 7: Computer Vision
- Study computer vision, including image recognition, object detection, and convolutional neural networks.
Day 8: AI Ethics and Bias
- Explore the ethical considerations in AI and the issue of bias in AI algorithms.
Day 9: AI Tools and Resources
- Familiarize yourself with AI development tools and platforms.
- Learn how to access and use AI datasets and APIs.
Day 10: AI Project
- Work on a small AI project. For example, build a basic chatbot, create an image classifier, or analyze a dataset using AI techniques.
Free Resources: https://t.me/machinelearning_deeplearning
Share for more: https://t.me/datasciencefun
ENJOY LEARNING 👍👍
👍6❤2
Basic skills needed for ai engineer
1. Programming Skills (Essential)
Learn Python (most widely used in AI).
Basics of libraries like NumPy, Pandas (for data handling).
Understanding of loops, functions, OOPs concepts.
2. Mathematics & Statistics (Basic Level)
Linear Algebra (Vectors, Matrices, Dot Product).
Probability & Statistics (Mean, Variance, Standard Deviation).
Basic Calculus (Derivatives, Integrals – useful for ML models)
3. Machine Learning Fundamentals
Understand what Supervised & Unsupervised Learning are.
Learn about Regression, Classification, and Clustering.
Introduction to Neural Networks and Deep Learning.
4. Data Handling & Processing
How to collect, clean, and process data for AI models.
Using Pandas & NumPy to manipulate datasets.
5. AI Libraries & Frameworks
Learn Scikit-learn for ML models.
Introduction to TensorFlow or PyTorch for Deep Learning.
1. Programming Skills (Essential)
Learn Python (most widely used in AI).
Basics of libraries like NumPy, Pandas (for data handling).
Understanding of loops, functions, OOPs concepts.
2. Mathematics & Statistics (Basic Level)
Linear Algebra (Vectors, Matrices, Dot Product).
Probability & Statistics (Mean, Variance, Standard Deviation).
Basic Calculus (Derivatives, Integrals – useful for ML models)
3. Machine Learning Fundamentals
Understand what Supervised & Unsupervised Learning are.
Learn about Regression, Classification, and Clustering.
Introduction to Neural Networks and Deep Learning.
4. Data Handling & Processing
How to collect, clean, and process data for AI models.
Using Pandas & NumPy to manipulate datasets.
5. AI Libraries & Frameworks
Learn Scikit-learn for ML models.
Introduction to TensorFlow or PyTorch for Deep Learning.
👍5
Python is more popular than other programming languages because:
1. Easy to Learn and Use
2. Versatility (Used everywhere in various tech field)
3. Huge Community & Support
4. Cross-Platform Compatibility (works on windows, macos, linux and even on mobile operating system)
5. Strong Industry Adoption
6. Rich Ecosystem & Libraries (Examples: Django (web), TensorFlow (AI), PyGame (game development), and BeautifulSoup (web scraping).)
7. Support for AI & Machine Learning
Free Python Resources: https://whatsapp.com/channel/0029VaiM08SDuMRaGKd9Wv0L
1. Easy to Learn and Use
2. Versatility (Used everywhere in various tech field)
3. Huge Community & Support
4. Cross-Platform Compatibility (works on windows, macos, linux and even on mobile operating system)
5. Strong Industry Adoption
6. Rich Ecosystem & Libraries (Examples: Django (web), TensorFlow (AI), PyGame (game development), and BeautifulSoup (web scraping).)
7. Support for AI & Machine Learning
Free Python Resources: https://whatsapp.com/channel/0029VaiM08SDuMRaGKd9Wv0L
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