🔰 How to become a data scientist in 2025?
👨🏻💻 If you want to become a data science professional, follow this path! I've prepared a complete roadmap with the best free resources where you can learn the essential skills in this field.
🔢 Step 1: Strengthen your math and statistics!
✏️ The foundation of learning data science is mathematics, linear algebra, statistics, and probability. Topics you should master:
✅ Linear algebra: matrices, vectors, eigenvalues.
🔗 Course: MIT 18.06 Linear Algebra
✅ Calculus: derivative, integral, optimization.
🔗 Course: MIT Single Variable Calculus
✅ Statistics and probability: Bayes' theorem, hypothesis testing.
🔗 Course: Statistics 110
➖➖➖➖➖
🔢 Step 2: Learn to code.
✏️ Learn Python and become proficient in coding. The most important topics you need to master are:
✅ Python: Pandas, NumPy, Matplotlib libraries
🔗 Course: FreeCodeCamp Python Course
✅ SQL language: Join commands, Window functions, query optimization.
🔗 Course: Stanford SQL Course
✅ Data structures and algorithms: arrays, linked lists, trees.
🔗 Course: MIT Introduction to Algorithms
➖➖➖➖➖
🔢 Step 3: Clean and visualize data
✏️ Learn how to process and clean data and then create an engaging story from it!
✅ Data cleaning: Working with missing values and detecting outliers.
🔗 Course: Data Cleaning
✅ Data visualization: Matplotlib, Seaborn, Tableau
🔗 Course: Data Visualization Tutorial
➖➖➖➖➖
🔢 Step 4: Learn Machine Learning
✏️ It's time to enter the exciting world of machine learning! You should know these topics:
✅ Supervised learning: regression, classification.
✅ Unsupervised learning: clustering, PCA, anomaly detection.
✅ Deep learning: neural networks, CNN, RNN
🔗 Course: CS229: Machine Learning
➖➖➖➖➖
🔢 Step 5: Working with Big Data and Cloud Technologies
✏️ If you're going to work in the real world, you need to know how to work with Big Data and cloud computing.
✅ Big Data Tools: Hadoop, Spark, Dask
✅ Cloud platforms: AWS, GCP, Azure
🔗 Course: Data Engineering
➖➖➖➖➖
🔢 Step 6: Do real projects!
✏️ Enough theory, it's time to get coding! Do real projects and build a strong portfolio.
✅ Kaggle competitions: solving real-world challenges.
✅ End-to-End projects: data collection, modeling, implementation.
✅ GitHub: Publish your projects on GitHub.
🔗 Platform: Kaggle🔗 Platform: ods.ai
➖➖➖➖➖
🔢 Step 7: Learn MLOps and deploy models
✏️ Machine learning is not just about building a model! You need to learn how to deploy and monitor a model.
✅ MLOps training: model versioning, monitoring, model retraining.
✅ Deployment models: Flask, FastAPI, Docker
🔗 Course: Stanford MLOps Course
➖➖➖➖➖
🔢 Step 8: Stay up to date and network
✏️ Data science is changing every day, so it is necessary to update yourself every day and stay in regular contact with experienced people and experts in this field.
✅ Read scientific articles: arXiv, Google Scholar
✅ Connect with the data community:
🔗 Site: Papers with code
🔗 Site: AI Research at Google
👨🏻💻 If you want to become a data science professional, follow this path! I've prepared a complete roadmap with the best free resources where you can learn the essential skills in this field.
🔢 Step 1: Strengthen your math and statistics!
✏️ The foundation of learning data science is mathematics, linear algebra, statistics, and probability. Topics you should master:
✅ Linear algebra: matrices, vectors, eigenvalues.
🔗 Course: MIT 18.06 Linear Algebra
✅ Calculus: derivative, integral, optimization.
🔗 Course: MIT Single Variable Calculus
✅ Statistics and probability: Bayes' theorem, hypothesis testing.
🔗 Course: Statistics 110
➖➖➖➖➖
🔢 Step 2: Learn to code.
✏️ Learn Python and become proficient in coding. The most important topics you need to master are:
✅ Python: Pandas, NumPy, Matplotlib libraries
🔗 Course: FreeCodeCamp Python Course
✅ SQL language: Join commands, Window functions, query optimization.
🔗 Course: Stanford SQL Course
✅ Data structures and algorithms: arrays, linked lists, trees.
🔗 Course: MIT Introduction to Algorithms
➖➖➖➖➖
🔢 Step 3: Clean and visualize data
✏️ Learn how to process and clean data and then create an engaging story from it!
✅ Data cleaning: Working with missing values and detecting outliers.
🔗 Course: Data Cleaning
✅ Data visualization: Matplotlib, Seaborn, Tableau
🔗 Course: Data Visualization Tutorial
➖➖➖➖➖
🔢 Step 4: Learn Machine Learning
✏️ It's time to enter the exciting world of machine learning! You should know these topics:
✅ Supervised learning: regression, classification.
✅ Unsupervised learning: clustering, PCA, anomaly detection.
✅ Deep learning: neural networks, CNN, RNN
🔗 Course: CS229: Machine Learning
➖➖➖➖➖
🔢 Step 5: Working with Big Data and Cloud Technologies
✏️ If you're going to work in the real world, you need to know how to work with Big Data and cloud computing.
✅ Big Data Tools: Hadoop, Spark, Dask
✅ Cloud platforms: AWS, GCP, Azure
🔗 Course: Data Engineering
➖➖➖➖➖
🔢 Step 6: Do real projects!
✏️ Enough theory, it's time to get coding! Do real projects and build a strong portfolio.
✅ Kaggle competitions: solving real-world challenges.
✅ End-to-End projects: data collection, modeling, implementation.
✅ GitHub: Publish your projects on GitHub.
🔗 Platform: Kaggle🔗 Platform: ods.ai
➖➖➖➖➖
🔢 Step 7: Learn MLOps and deploy models
✏️ Machine learning is not just about building a model! You need to learn how to deploy and monitor a model.
✅ MLOps training: model versioning, monitoring, model retraining.
✅ Deployment models: Flask, FastAPI, Docker
🔗 Course: Stanford MLOps Course
➖➖➖➖➖
🔢 Step 8: Stay up to date and network
✏️ Data science is changing every day, so it is necessary to update yourself every day and stay in regular contact with experienced people and experts in this field.
✅ Read scientific articles: arXiv, Google Scholar
✅ Connect with the data community:
🔗 Site: Papers with code
🔗 Site: AI Research at Google
#ArtificialIntelligence #AI #MachineLearning #LargeLanguageModels #LLMs #DeepLearning #NLP #NaturalLanguageProcessing #AIResearch #TechBooks #AIApplications #DataScience #FutureOfAI #AIEducation #LearnAI #TechInnovation #AIethics #GPT #BERT #T5 #AIBook #data
❤8
✅ 5 Powerful Ways to Use Agentic AI 🤖
1️⃣ Prompt Routing
▪️ Agent decides how to handle your request:
⦁ Respond directly
⦁ Search internet/APIs
⦁ Check internal docs
⦁ Combine all strategies
2️⃣ Query Writing
▪️ Turns vague prompts into precise queries:
⦁ Build exact database/vector queries
⦁ Expand keywords
⦁ Convert to SQL/API calls
⦁ Optimize for relevance
3️⃣ Data Processing
▪️ Cleans & preps your data:
⦁ Remove inconsistencies
⦁ Reformat for clarity
⦁ Add context & metadata
⦁ Summarize large datasets
4️⃣ Tool Orchestration
▪️ Picks & connects tools smartly:
⦁ Choose best tool per task
⦁ Chain multiple tools together
⦁ Handle failures & adapt dynamically
5️⃣ Decision Support & Planning
▪️ Breaks complex goals into steps:
⦁ Smaller, doable actions
⦁ Simulate options
⦁ Recommend logical next moves
✨ Agentic AI = Smarter, Faster, Autonomous Systems
💬 Like ❤️ & Share if this helped!
1️⃣ Prompt Routing
▪️ Agent decides how to handle your request:
⦁ Respond directly
⦁ Search internet/APIs
⦁ Check internal docs
⦁ Combine all strategies
2️⃣ Query Writing
▪️ Turns vague prompts into precise queries:
⦁ Build exact database/vector queries
⦁ Expand keywords
⦁ Convert to SQL/API calls
⦁ Optimize for relevance
3️⃣ Data Processing
▪️ Cleans & preps your data:
⦁ Remove inconsistencies
⦁ Reformat for clarity
⦁ Add context & metadata
⦁ Summarize large datasets
4️⃣ Tool Orchestration
▪️ Picks & connects tools smartly:
⦁ Choose best tool per task
⦁ Chain multiple tools together
⦁ Handle failures & adapt dynamically
5️⃣ Decision Support & Planning
▪️ Breaks complex goals into steps:
⦁ Smaller, doable actions
⦁ Simulate options
⦁ Recommend logical next moves
✨ Agentic AI = Smarter, Faster, Autonomous Systems
💬 Like ❤️ & Share if this helped!
❤7👍2
Here are the top 5 machine learning projects that are suitable for freshers to work on:
1. Predicting House Prices: Build a machine learning model that predicts house prices based on features such as location, size, number of bedrooms, etc. This project will help you understand regression techniques and feature engineering.
2. Image Classification: Create a model that can classify images into different categories such as cats vs. dogs, fruits, or handwritten digits. This project will introduce you to convolutional neural networks (CNNs) and image processing.
3. Sentiment Analysis: Develop a sentiment analysis model that can classify text data as positive, negative, or neutral. This project will help you learn natural language processing techniques and text classification algorithms.
4. Credit Card Fraud Detection: Build a model that can detect fraudulent credit card transactions based on transaction data. This project will help you understand anomaly detection techniques and imbalanced classification problems.
5. Recommendation System: Create a recommendation system that suggests products or movies to users based on their preferences and behavior. This project will introduce you to collaborative filtering and recommendation algorithms.
Credits: https://news.1rj.ru/str/free4unow_backup
All the best 👍👍
1. Predicting House Prices: Build a machine learning model that predicts house prices based on features such as location, size, number of bedrooms, etc. This project will help you understand regression techniques and feature engineering.
2. Image Classification: Create a model that can classify images into different categories such as cats vs. dogs, fruits, or handwritten digits. This project will introduce you to convolutional neural networks (CNNs) and image processing.
3. Sentiment Analysis: Develop a sentiment analysis model that can classify text data as positive, negative, or neutral. This project will help you learn natural language processing techniques and text classification algorithms.
4. Credit Card Fraud Detection: Build a model that can detect fraudulent credit card transactions based on transaction data. This project will help you understand anomaly detection techniques and imbalanced classification problems.
5. Recommendation System: Create a recommendation system that suggests products or movies to users based on their preferences and behavior. This project will introduce you to collaborative filtering and recommendation algorithms.
Credits: https://news.1rj.ru/str/free4unow_backup
All the best 👍👍
❤7
📌 5 AI Agent Projects to Try This Weekend
🔹 1. Image Collage Generator with ChatGPT Agents
👉 Try it: Ask ChatGPT to collect benchmark images from this page
, arrange them into a 16:9 collage, and outline agent results in red.
📖 Guide: ChatGPT Agent
🔹 2. Language Tutor with Langflow
👉 Drag & drop flows in Langflow to generate texts, add words, and keep practice interactive.
📖 Guide: Langflow
🔹 3. Data Analyst with Flowise
👉 Use Flowise nodes to connect MySQL → SQL prompt → LLM → results.
📖 Guide: Flowise
🔹 4. Medical Prenoscription Analyzer with Grok 4
👉 Powered by Grok 4 + Firecrawl + Gradio UI.
📖 Guide: Grok 4
🔹 5. Custom AI Agent with LangGraph + llama.cpp
👉 Use llama.cpp with LangGraph’s ReAct agent + Tavily search + Python REPL.
📖 Guide: llama.cpp
Double Tap ❤️ for more
🔹 1. Image Collage Generator with ChatGPT Agents
👉 Try it: Ask ChatGPT to collect benchmark images from this page
, arrange them into a 16:9 collage, and outline agent results in red.
📖 Guide: ChatGPT Agent
🔹 2. Language Tutor with Langflow
👉 Drag & drop flows in Langflow to generate texts, add words, and keep practice interactive.
📖 Guide: Langflow
🔹 3. Data Analyst with Flowise
👉 Use Flowise nodes to connect MySQL → SQL prompt → LLM → results.
📖 Guide: Flowise
🔹 4. Medical Prenoscription Analyzer with Grok 4
👉 Powered by Grok 4 + Firecrawl + Gradio UI.
📖 Guide: Grok 4
🔹 5. Custom AI Agent with LangGraph + llama.cpp
👉 Use llama.cpp with LangGraph’s ReAct agent + Tavily search + Python REPL.
📖 Guide: llama.cpp
Double Tap ❤️ for more
❤19🔥2👍1
✅ Roadmap To Learn Gen AI: Step-by-Step Guide
1• Grasp the Basics of AI
◦ Understand AI, ML, DL differences
◦ Learn types of AI: narrow, general, super
◦ Explore real-world AI applications
2• Learn Python for AI
◦ Master Python fundamentals
◦ Use libraries: NumPy, Pandas, Matplotlib
◦ Learn basic data preprocessing
3• Master Machine Learning Concepts
◦ Supervised vs. Unsupervised learning
◦ Regression, classification, clustering
◦ Overfitting, underfitting, bias-variance tradeoff
4• Dive Into Deep Learning
◦ Neural networks: forward & backpropagation
◦ Activation functions, loss functions
◦ Use TensorFlow or PyTorch
5• Understand Transformers
◦ Learn about self-attention mechanisms
◦ Understand encoder, decoder, positional encoding
◦ Study “Attention is All You Need” paper
6• Explore Language Modeling
◦ Learn tokenization & embeddings
◦ Understand masked vs. causal language models
◦ Study next-token prediction
7• Get Started with Models
◦ Learn how -2, -3, -4 work
◦ Explore OpenAI Playground
◦ Experiment with Chat
8• Learn About BERT and Encoder-Based Models
◦ Understand masked language modeling
◦ Use BERT for classification, QA tasks
◦ Explore Hugging Face Transformers
9• Dive Into Generative Models
◦ Study GANs, VAEs, Diffusion Models
◦ Understand use cases: image, audio, video
10• Practice Prompt Engineering
◦ Use zero-shot, few-shot, chain-of-thought prompting
◦ Learn how prompt structure affects output
◦ Experiment with different prompt styles
11• Build With OpenAI & Hugging Face
◦ Use OpenAI API (Chat, DALL·E, Whisper)
◦ Learn about Hugging Face Spaces & Models
◦ Deploy simple GenAI apps
12• Work With LangChain
◦ Build AI pipelines with LangChain
◦ Use agents, memory, tools
◦ Connect LLMs with external data sources
13• Create Real-World GenAI Projects
◦ Build AI content writers, chatbots
◦ Try text-to-image, text-to-code apps
◦ Use pre-built APIs to accelerate development
14• Learn RAG (Retrieval-Augmented Generation)
◦ Understand how LLMs retrieve/generate answers
◦ Use tools like LlamaIndex, Haystack
◦ Connect with vector databases (e.g., Pinecone)
15• Experiment with Fine-Tuning
◦ Learn difference between fine-tuning and prompt engineering
◦ Try LoRA, PEFT for efficient training
◦ Use domain-specific datasets
16• Explore Multi-Modal GenAI
◦ Work with tools like -4V, ChatGPT, LLaVA
◦ Learn image-to-text, text-to-image models
◦ Understand use cases in design, vision, more
17• Study Ethics & AI Safety
◦ Understand AI bias, explainability
◦ Explore safety practices & fairness
◦ Learn about responsible AI deployment
18• Build AI Agents & Workflows
◦ Use tools like Auto-, CrewAI, OpenAgents
◦ Create workflows for automation
◦ Deploy agents for real-world tasks
19• Join AI Communities
◦ Engage on Hugging Face, Discord, Reddit, Twitter
◦ Follow top AI researchers
◦ Contribute to open-source tools
20• Stay Updated & Keep Experimenting
◦ Read research papers, attend conferences
◦ Keep testing new APIs, models, frameworks
◦ Continuously build & share your work
👍 React ❤️ for more
1• Grasp the Basics of AI
◦ Understand AI, ML, DL differences
◦ Learn types of AI: narrow, general, super
◦ Explore real-world AI applications
2• Learn Python for AI
◦ Master Python fundamentals
◦ Use libraries: NumPy, Pandas, Matplotlib
◦ Learn basic data preprocessing
3• Master Machine Learning Concepts
◦ Supervised vs. Unsupervised learning
◦ Regression, classification, clustering
◦ Overfitting, underfitting, bias-variance tradeoff
4• Dive Into Deep Learning
◦ Neural networks: forward & backpropagation
◦ Activation functions, loss functions
◦ Use TensorFlow or PyTorch
5• Understand Transformers
◦ Learn about self-attention mechanisms
◦ Understand encoder, decoder, positional encoding
◦ Study “Attention is All You Need” paper
6• Explore Language Modeling
◦ Learn tokenization & embeddings
◦ Understand masked vs. causal language models
◦ Study next-token prediction
7• Get Started with Models
◦ Learn how -2, -3, -4 work
◦ Explore OpenAI Playground
◦ Experiment with Chat
8• Learn About BERT and Encoder-Based Models
◦ Understand masked language modeling
◦ Use BERT for classification, QA tasks
◦ Explore Hugging Face Transformers
9• Dive Into Generative Models
◦ Study GANs, VAEs, Diffusion Models
◦ Understand use cases: image, audio, video
10• Practice Prompt Engineering
◦ Use zero-shot, few-shot, chain-of-thought prompting
◦ Learn how prompt structure affects output
◦ Experiment with different prompt styles
11• Build With OpenAI & Hugging Face
◦ Use OpenAI API (Chat, DALL·E, Whisper)
◦ Learn about Hugging Face Spaces & Models
◦ Deploy simple GenAI apps
12• Work With LangChain
◦ Build AI pipelines with LangChain
◦ Use agents, memory, tools
◦ Connect LLMs with external data sources
13• Create Real-World GenAI Projects
◦ Build AI content writers, chatbots
◦ Try text-to-image, text-to-code apps
◦ Use pre-built APIs to accelerate development
14• Learn RAG (Retrieval-Augmented Generation)
◦ Understand how LLMs retrieve/generate answers
◦ Use tools like LlamaIndex, Haystack
◦ Connect with vector databases (e.g., Pinecone)
15• Experiment with Fine-Tuning
◦ Learn difference between fine-tuning and prompt engineering
◦ Try LoRA, PEFT for efficient training
◦ Use domain-specific datasets
16• Explore Multi-Modal GenAI
◦ Work with tools like -4V, ChatGPT, LLaVA
◦ Learn image-to-text, text-to-image models
◦ Understand use cases in design, vision, more
17• Study Ethics & AI Safety
◦ Understand AI bias, explainability
◦ Explore safety practices & fairness
◦ Learn about responsible AI deployment
18• Build AI Agents & Workflows
◦ Use tools like Auto-, CrewAI, OpenAgents
◦ Create workflows for automation
◦ Deploy agents for real-world tasks
19• Join AI Communities
◦ Engage on Hugging Face, Discord, Reddit, Twitter
◦ Follow top AI researchers
◦ Contribute to open-source tools
20• Stay Updated & Keep Experimenting
◦ Read research papers, attend conferences
◦ Keep testing new APIs, models, frameworks
◦ Continuously build & share your work
👍 React ❤️ for more
❤12👍2👏1
🏆 – AI/ML Engineer
Stage 1 – Python Basics
Stage 2 – Statistics & Probability
Stage 3 – Linear Algebra & Calculus
Stage 4 – Data Preprocessing
Stage 5 – Exploratory Data Analysis (EDA)
Stage 6 – Supervised Learning
Stage 7 – Unsupervised Learning
Stage 8 – Feature Engineering
Stage 9 – Model Evaluation & Tuning
Stage 10 – Deep Learning Basics
Stage 11 – Neural Networks & CNNs
Stage 12 – RNNs & LSTMs
Stage 13 – NLP Fundamentals
Stage 14 – Deployment (Flask, Docker)
Stage 15 – Build projects
Stage 1 – Python Basics
Stage 2 – Statistics & Probability
Stage 3 – Linear Algebra & Calculus
Stage 4 – Data Preprocessing
Stage 5 – Exploratory Data Analysis (EDA)
Stage 6 – Supervised Learning
Stage 7 – Unsupervised Learning
Stage 8 – Feature Engineering
Stage 9 – Model Evaluation & Tuning
Stage 10 – Deep Learning Basics
Stage 11 – Neural Networks & CNNs
Stage 12 – RNNs & LSTMs
Stage 13 – NLP Fundamentals
Stage 14 – Deployment (Flask, Docker)
Stage 15 – Build projects
❤6
Master Artificial Intelligence in 10 days with free resources 😄👇
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.
Here are 5 amazing AI projects with free datasets: https://bit.ly/3ZVDjR1
Throughout the 10 days, it's important to practice what you learn through coding and practical exercises. Additionally, consider reading AI-related books and articles, watching online courses, and participating in AI communities and forums to enhance your learning experience.
Free Books and Courses to Learn Artificial Intelligence
👇👇
Introduction to AI Free Udacity Course
Introduction to Prolog programming for artificial intelligence Free Book
Introduction to AI for Business Free Course
Artificial Intelligence: Foundations of Computational Agents Free Book
Learn Basics about AI Free Udemy Course
(4.4 Star ratings out of 5)
Amazing AI Reverse Image Search
(4.7 Star ratings out of 5)
13 AI Tools to improve your productivity: https://news.1rj.ru/str/crackingthecodinginterview/619
4 AI Certifications for Developers: https://news.1rj.ru/str/datasciencefun/1375
Join @free4unow_backup for more free courses
ENJOY LEARNING👍👍
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.
Here are 5 amazing AI projects with free datasets: https://bit.ly/3ZVDjR1
Throughout the 10 days, it's important to practice what you learn through coding and practical exercises. Additionally, consider reading AI-related books and articles, watching online courses, and participating in AI communities and forums to enhance your learning experience.
Free Books and Courses to Learn Artificial Intelligence
👇👇
Introduction to AI Free Udacity Course
Introduction to Prolog programming for artificial intelligence Free Book
Introduction to AI for Business Free Course
Artificial Intelligence: Foundations of Computational Agents Free Book
Learn Basics about AI Free Udemy Course
(4.4 Star ratings out of 5)
Amazing AI Reverse Image Search
(4.7 Star ratings out of 5)
13 AI Tools to improve your productivity: https://news.1rj.ru/str/crackingthecodinginterview/619
4 AI Certifications for Developers: https://news.1rj.ru/str/datasciencefun/1375
Join @free4unow_backup for more free courses
ENJOY LEARNING👍👍
❤9
For those who feel like they're not learning much and feeling demotivated. You should definitely read these lines from one of the book by Andrew Ng 👇
No one can cram everything they need to know over a weekend or even a month. Everyone I
know who’s great at machine learning is a lifelong learner. Given how quickly our field is changing,
there’s little choice but to keep learning if you want to keep up.
How can you maintain a steady pace of learning for years? If you can cultivate the habit of
learning a little bit every week, you can make significant progress with what feels like less effort.
Everyday it gets easier but you need to do it everyday ❤️
No one can cram everything they need to know over a weekend or even a month. Everyone I
know who’s great at machine learning is a lifelong learner. Given how quickly our field is changing,
there’s little choice but to keep learning if you want to keep up.
How can you maintain a steady pace of learning for years? If you can cultivate the habit of
learning a little bit every week, you can make significant progress with what feels like less effort.
Everyday it gets easier but you need to do it everyday ❤️
❤9🔥3
Media is too big
VIEW IN TELEGRAM
OnSpace Mobile App builder: Idea → AppStore → Profit.
👉https://onspace.ai/?via=tg_ggpt
With OnSpace, you can turn your idea into a real iOS or Android app in AppStore/PlayStore.
What will you get:
- Create app by chatting with AI
- Real-time app demo.
- Add payments and monetize like in-app-purchase and Stripe.
- Functional login & signup.
- Database + dashboard in minutes.
- Preview, download, and publish to AppStore.
- Full tutorial on YouTube and within 1 day customer service
🫵It’s your shortcut from concept to cash flow.
👉https://onspace.ai/?via=tg_ggpt
With OnSpace, you can turn your idea into a real iOS or Android app in AppStore/PlayStore.
What will you get:
- Create app by chatting with AI
- Real-time app demo.
- Add payments and monetize like in-app-purchase and Stripe.
- Functional login & signup.
- Database + dashboard in minutes.
- Preview, download, and publish to AppStore.
- Full tutorial on YouTube and within 1 day customer service
🫵It’s your shortcut from concept to cash flow.
❤6
✅ 50 Must-Know Generative AI Concepts for Interviews 🎨🤖
📍 Generative AI Basics
1. What is Generative AI?
2. Generative AI vs Traditional AI
3. Applications of Generative AI
4. Diffusion Models vs GANs
5. Text, Image, Audio, Code Generation
📍 Large Language Models (LLMs)
6. What is a Language Model?
7. , BERT, T5 – key differences
8. Prompt Engineering
9. Zero-shot, Few-shot, Fine-tuning
10. Tokenization & Attention Mechanism
📍 Foundational Concepts
11. Transformers
12. Self-Attention
13. Positional Encoding
14. Pre-training & Fine-tuning
15. Loss Functions in Language Models (e.g., Cross-Entropy)
📍 Image Generation
16. GANs (Generative Adversarial Networks)
17. StyleGAN / CycleGAN
18. Diffusion Models (e.g., DALL·E, Stable Diffusion)
19. CLIP (Contrastive Language-Image Pretraining)
20. Text-to-Image Models
📍 Audio & Video Generation
21. Text-to-Speech (TTS)
22. Voice Cloning
23. AI Music Generation
24. Video Generation with AI
25. Deepfakes & Synthetic Media
📍 Evaluation & Safety
26. Evaluating LLMs (BLEU, ROUGE, perplexity)
27. Hallucinations in LLMs
28. Content Filtering & Safety Layers
29. Jailbreaks & Model Misuse
30. Red Teaming in AI
📍 Popular Tools & Platforms
31. OpenAI (Chat, DALL·E)
32. Google ChatGPT
33. Anthropic Claude
34. Meta Llama
35. Hugging Face Transformers
📍 Use Cases in Industries
36. Marketing & Content Generation
37. Customer Support (AI Chatbots)
38. Education (Tutors, Summarizers)
39. Healthcare (Medical Report Generation)
40. Coding (Code Assistants like Copilot)
📍 Fine-Tuning & Customization
41. LoRA (Low-Rank Adaptation)
42. RLHF (Reinforcement Learning from Human Feedback)
43. Retrieval-Augmented Generation (RAG)
44. Embeddings & Vector DBs (e.g., FAISS, Pinecone)
45. System vs User Prompts in LLMs
📍 Ethics & Future
46. AI Copyright & Ownership
47. Bias & Fairness in Generative Models
48. AI Watermarking & Detection
49. Responsible Deployment
50. Future of Human-AI Collaboration
📍 Generative AI Basics
1. What is Generative AI?
2. Generative AI vs Traditional AI
3. Applications of Generative AI
4. Diffusion Models vs GANs
5. Text, Image, Audio, Code Generation
📍 Large Language Models (LLMs)
6. What is a Language Model?
7. , BERT, T5 – key differences
8. Prompt Engineering
9. Zero-shot, Few-shot, Fine-tuning
10. Tokenization & Attention Mechanism
📍 Foundational Concepts
11. Transformers
12. Self-Attention
13. Positional Encoding
14. Pre-training & Fine-tuning
15. Loss Functions in Language Models (e.g., Cross-Entropy)
📍 Image Generation
16. GANs (Generative Adversarial Networks)
17. StyleGAN / CycleGAN
18. Diffusion Models (e.g., DALL·E, Stable Diffusion)
19. CLIP (Contrastive Language-Image Pretraining)
20. Text-to-Image Models
📍 Audio & Video Generation
21. Text-to-Speech (TTS)
22. Voice Cloning
23. AI Music Generation
24. Video Generation with AI
25. Deepfakes & Synthetic Media
📍 Evaluation & Safety
26. Evaluating LLMs (BLEU, ROUGE, perplexity)
27. Hallucinations in LLMs
28. Content Filtering & Safety Layers
29. Jailbreaks & Model Misuse
30. Red Teaming in AI
📍 Popular Tools & Platforms
31. OpenAI (Chat, DALL·E)
32. Google ChatGPT
33. Anthropic Claude
34. Meta Llama
35. Hugging Face Transformers
📍 Use Cases in Industries
36. Marketing & Content Generation
37. Customer Support (AI Chatbots)
38. Education (Tutors, Summarizers)
39. Healthcare (Medical Report Generation)
40. Coding (Code Assistants like Copilot)
📍 Fine-Tuning & Customization
41. LoRA (Low-Rank Adaptation)
42. RLHF (Reinforcement Learning from Human Feedback)
43. Retrieval-Augmented Generation (RAG)
44. Embeddings & Vector DBs (e.g., FAISS, Pinecone)
45. System vs User Prompts in LLMs
📍 Ethics & Future
46. AI Copyright & Ownership
47. Bias & Fairness in Generative Models
48. AI Watermarking & Detection
49. Responsible Deployment
50. Future of Human-AI Collaboration
❤10
7 Best Chrome Extensions for Agentic AI
#1. Magical
Automate entire workflows with AI triggers & actions — no manual clicks.
Best for: End-to-end automation across multiple web apps.
💡 Use Cases: Data entry → CRM sync → report export → all on autopilot.
#2. Merlin AI
Your universal browser copilot — summarize, write, and automate anywhere.
Best for: In-browser tasks, summaries & AI drafting.
💡 Use Cases: Summarize YouTube, draft replies, or research inline.
#3. Zapier Agents
AI agents that connect 8,000+ apps to automate complex workflows.
Best for: Multi-agent, cross-app business automation.
💡 Use Cases: CRM updates, lead enrichment, marketing approvals.
#4. Recall
Your second brain — search everything you’ve read, watched, or saved.
Best for: Knowledge recall & research continuity.
💡 Use Cases: Find past insights, retrieve web pages, build context graphs.
#5. BrowserAgent
Local, private automation — run AI agents fully offline.
Best for: Developers & privacy-focused automation.
💡 Use Cases: Web scraping, testing, and JS/TS agent workflows.
#6. Taskade AI
Collaborative AI agents for projects, research & creative ops.
Best for: Team workflows & AI-powered content pipelines.
💡 Use Cases: Research bots, task automation, editorial review.
#7. Perplexity AI
Autonomous research with verified sources & fast AI browsing.
Best for: Deep research and fact-checked answers.
💡 Use Cases: Academic research, market analysis, content synthesis.
#1. Magical
Automate entire workflows with AI triggers & actions — no manual clicks.
Best for: End-to-end automation across multiple web apps.
💡 Use Cases: Data entry → CRM sync → report export → all on autopilot.
#2. Merlin AI
Your universal browser copilot — summarize, write, and automate anywhere.
Best for: In-browser tasks, summaries & AI drafting.
💡 Use Cases: Summarize YouTube, draft replies, or research inline.
#3. Zapier Agents
AI agents that connect 8,000+ apps to automate complex workflows.
Best for: Multi-agent, cross-app business automation.
💡 Use Cases: CRM updates, lead enrichment, marketing approvals.
#4. Recall
Your second brain — search everything you’ve read, watched, or saved.
Best for: Knowledge recall & research continuity.
💡 Use Cases: Find past insights, retrieve web pages, build context graphs.
#5. BrowserAgent
Local, private automation — run AI agents fully offline.
Best for: Developers & privacy-focused automation.
💡 Use Cases: Web scraping, testing, and JS/TS agent workflows.
#6. Taskade AI
Collaborative AI agents for projects, research & creative ops.
Best for: Team workflows & AI-powered content pipelines.
💡 Use Cases: Research bots, task automation, editorial review.
#7. Perplexity AI
Autonomous research with verified sources & fast AI browsing.
Best for: Deep research and fact-checked answers.
💡 Use Cases: Academic research, market analysis, content synthesis.
❤8