An Artificial Neuron Network (ANN), popularly known as Neural Network is a computational model based on the structure and functions of biological neural networks. It is like an artificial human nervous system for receiving, processing, and transmitting information in terms of Computer Science.
Basically, there are 3 different layers in a neural network :
Input Layer (All the inputs are fed in the model through this layer)
Hidden Layers (There can be more than one hidden layers which are used for processing the inputs received from the input layers)
Output Layer (The data after processing is made available at the output layer)
Graph data can be used with a lot of learning tasks contain a lot rich relation data among elements. For example, modeling physics system, predicting protein interface, and classifying diseases require that a model learns from graph inputs. Graph reasoning models can also be used for learning from non-structural data like texts and images and reasoning on extracted structures.
Basically, there are 3 different layers in a neural network :
Input Layer (All the inputs are fed in the model through this layer)
Hidden Layers (There can be more than one hidden layers which are used for processing the inputs received from the input layers)
Output Layer (The data after processing is made available at the output layer)
Graph data can be used with a lot of learning tasks contain a lot rich relation data among elements. For example, modeling physics system, predicting protein interface, and classifying diseases require that a model learns from graph inputs. Graph reasoning models can also be used for learning from non-structural data like texts and images and reasoning on extracted structures.
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Here are some essential data science concepts from A to Z:
A - Algorithm: A set of rules or instructions used to solve a problem or perform a task in data science.
B - Big Data: Large and complex datasets that cannot be easily processed using traditional data processing applications.
C - Clustering: A technique used to group similar data points together based on certain characteristics.
D - Data Cleaning: The process of identifying and correcting errors or inconsistencies in a dataset.
E - Exploratory Data Analysis (EDA): The process of analyzing and visualizing data to understand its underlying patterns and relationships.
F - Feature Engineering: The process of creating new features or variables from existing data to improve model performance.
G - Gradient Descent: An optimization algorithm used to minimize the error of a model by adjusting its parameters.
H - Hypothesis Testing: A statistical technique used to test the validity of a hypothesis or claim based on sample data.
I - Imputation: The process of filling in missing values in a dataset using statistical methods.
J - Joint Probability: The probability of two or more events occurring together.
K - K-Means Clustering: A popular clustering algorithm that partitions data into K clusters based on similarity.
L - Linear Regression: A statistical method used to model the relationship between a dependent variable and one or more independent variables.
M - Machine Learning: A subset of artificial intelligence that uses algorithms to learn patterns and make predictions from data.
N - Normal Distribution: A symmetrical bell-shaped distribution that is commonly used in statistical analysis.
O - Outlier Detection: The process of identifying and removing data points that are significantly different from the rest of the dataset.
P - Precision and Recall: Evaluation metrics used to assess the performance of classification models.
Q - Quantitative Analysis: The process of analyzing numerical data to draw conclusions and make decisions.
R - Random Forest: An ensemble learning algorithm that builds multiple decision trees to improve prediction accuracy.
S - Support Vector Machine (SVM): A supervised learning algorithm used for classification and regression tasks.
T - Time Series Analysis: A statistical technique used to analyze and forecast time-dependent data.
U - Unsupervised Learning: A type of machine learning where the model learns patterns and relationships in data without labeled outputs.
V - Validation Set: A subset of data used to evaluate the performance of a model during training.
W - Web Scraping: The process of extracting data from websites for analysis and visualization.
X - XGBoost: An optimized gradient boosting algorithm that is widely used in machine learning competitions.
Y - Yield Curve Analysis: The study of the relationship between interest rates and the maturity of fixed-income securities.
Z - Z-Score: A standardized score that represents the number of standard deviations a data point is from the mean.
Credits: https://t.iss.one/free4unow_backup
Like if you need similar content 😄👍
A - Algorithm: A set of rules or instructions used to solve a problem or perform a task in data science.
B - Big Data: Large and complex datasets that cannot be easily processed using traditional data processing applications.
C - Clustering: A technique used to group similar data points together based on certain characteristics.
D - Data Cleaning: The process of identifying and correcting errors or inconsistencies in a dataset.
E - Exploratory Data Analysis (EDA): The process of analyzing and visualizing data to understand its underlying patterns and relationships.
F - Feature Engineering: The process of creating new features or variables from existing data to improve model performance.
G - Gradient Descent: An optimization algorithm used to minimize the error of a model by adjusting its parameters.
H - Hypothesis Testing: A statistical technique used to test the validity of a hypothesis or claim based on sample data.
I - Imputation: The process of filling in missing values in a dataset using statistical methods.
J - Joint Probability: The probability of two or more events occurring together.
K - K-Means Clustering: A popular clustering algorithm that partitions data into K clusters based on similarity.
L - Linear Regression: A statistical method used to model the relationship between a dependent variable and one or more independent variables.
M - Machine Learning: A subset of artificial intelligence that uses algorithms to learn patterns and make predictions from data.
N - Normal Distribution: A symmetrical bell-shaped distribution that is commonly used in statistical analysis.
O - Outlier Detection: The process of identifying and removing data points that are significantly different from the rest of the dataset.
P - Precision and Recall: Evaluation metrics used to assess the performance of classification models.
Q - Quantitative Analysis: The process of analyzing numerical data to draw conclusions and make decisions.
R - Random Forest: An ensemble learning algorithm that builds multiple decision trees to improve prediction accuracy.
S - Support Vector Machine (SVM): A supervised learning algorithm used for classification and regression tasks.
T - Time Series Analysis: A statistical technique used to analyze and forecast time-dependent data.
U - Unsupervised Learning: A type of machine learning where the model learns patterns and relationships in data without labeled outputs.
V - Validation Set: A subset of data used to evaluate the performance of a model during training.
W - Web Scraping: The process of extracting data from websites for analysis and visualization.
X - XGBoost: An optimized gradient boosting algorithm that is widely used in machine learning competitions.
Y - Yield Curve Analysis: The study of the relationship between interest rates and the maturity of fixed-income securities.
Z - Z-Score: A standardized score that represents the number of standard deviations a data point is from the mean.
Credits: https://t.iss.one/free4unow_backup
Like if you need similar content 😄👍
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Top 10 Free AI Playgrounds For You to Try
Curious about the future of AI? AI playgrounds are interactive platforms where you can experiment with AI models to create text, code, art, and more. They provide hands-on experience with pre-trained models and visual tools, making it easy to explore AI concepts without complex setup.
1. Hugging Face Space
2. Google AI Test Kitchen
3. OpenAI Playground
4. Replit
5. Cohere
6. AI21 Labs
7. RunwayML
8. PyTorch Playground
9. TensorFlow Playground
10. Google Colaboratory
React ♥️ for more
Curious about the future of AI? AI playgrounds are interactive platforms where you can experiment with AI models to create text, code, art, and more. They provide hands-on experience with pre-trained models and visual tools, making it easy to explore AI concepts without complex setup.
1. Hugging Face Space
2. Google AI Test Kitchen
3. OpenAI Playground
4. Replit
5. Cohere
6. AI21 Labs
7. RunwayML
8. PyTorch Playground
9. TensorFlow Playground
10. Google Colaboratory
React ♥️ for more
❤3👍3
🤖 Complete AI Learning Roadmap 🧠
|-- Fundamentals
| |-- Mathematics
| | |-- Linear Algebra
| | |-- Calculus
| | |-- Probability & Statistics
| | └─ Discrete Mathematics
| |
| |-- Programming
| | |-- Python
| | |-- R (Optional)
| | └─ Data Structures & Algorithms
| |
| └─ Machine Learning Basics
| |-- Supervised Learning
| |-- Unsupervised Learning
| |-- Reinforcement Learning
| └─ Model Evaluation & Selection
|-- Supervised_Learning
| |-- Regression
| | |-- Linear Regression
| | |-- Polynomial Regression
| | └─ Regularization Techniques
| |
| |-- Classification
| | |-- Logistic Regression
| | |-- Support Vector Machines (SVM)
| | |-- Decision Trees
| | |-- Random Forests
| | └─ Naive Bayes
| |
| └─ Model Evaluation
| |-- Metrics (Accuracy, Precision, Recall, F1-Score)
| |-- Cross-Validation
| └─ Hyperparameter Tuning
|-- Unsupervised_Learning
| |-- Clustering
| | |-- K-Means Clustering
| | |-- Hierarchical Clustering
| | └─ DBSCAN
| |
| └─ Dimensionality Reduction
| |-- Principal Component Analysis (PCA)
| └─ t-distributed Stochastic Neighbor Embedding (t-SNE)
|-- Deep_Learning
| |-- Neural Networks Basics
| | |-- Activation Functions
| | |-- Loss Functions
| | └─ Optimization Algorithms
| |
| |-- Convolutional Neural Networks (CNNs)
| | |-- Image Classification
| | └─ Object Detection
| |
| |-- Recurrent Neural Networks (RNNs)
| | |-- Sequence Modeling
| | └─ Natural Language Processing (NLP)
| |
| └─ Transformers
| |-- Attention Mechanisms
| |-- BERT
| |-- GPT
|-- Reinforcement_Learning
| |-- Markov Decision Processes (MDPs)
| |-- Q-Learning
| |-- Deep Q-Networks (DQN)
| └─ Policy Gradient Methods
|-- Natural_Language_Processing (NLP)
| |-- Text Processing Techniques
| |-- Sentiment Analysis
| |-- Topic Modeling
| |-- Machine Translation
| └─ Language Modeling
|-- Computer_Vision
| |-- Image Processing Fundamentals
| |-- Image Classification
| |-- Object Detection
| |-- Image Segmentation
| └─ Image Generation
|-- Ethical AI & Responsible AI
| |-- Bias Detection and Mitigation
| |-- Fairness in AI
| |-- Privacy Concerns
| └─ Explainable AI (XAI)
|-- Deployment & Production
| |-- Model Deployment Strategies
| |-- Cloud Platforms (AWS, Azure, GCP)
| |-- Model Monitoring
| └─ Version Control
|-- Online_Resources
| |-- Coursera
| |-- Udacity
| |-- fast.ai
| |-- Kaggle
| └─ TensorFlow, PyTorch Documentation
React ❤️ if this helped you!
|-- Fundamentals
| |-- Mathematics
| | |-- Linear Algebra
| | |-- Calculus
| | |-- Probability & Statistics
| | └─ Discrete Mathematics
| |
| |-- Programming
| | |-- Python
| | |-- R (Optional)
| | └─ Data Structures & Algorithms
| |
| └─ Machine Learning Basics
| |-- Supervised Learning
| |-- Unsupervised Learning
| |-- Reinforcement Learning
| └─ Model Evaluation & Selection
|-- Supervised_Learning
| |-- Regression
| | |-- Linear Regression
| | |-- Polynomial Regression
| | └─ Regularization Techniques
| |
| |-- Classification
| | |-- Logistic Regression
| | |-- Support Vector Machines (SVM)
| | |-- Decision Trees
| | |-- Random Forests
| | └─ Naive Bayes
| |
| └─ Model Evaluation
| |-- Metrics (Accuracy, Precision, Recall, F1-Score)
| |-- Cross-Validation
| └─ Hyperparameter Tuning
|-- Unsupervised_Learning
| |-- Clustering
| | |-- K-Means Clustering
| | |-- Hierarchical Clustering
| | └─ DBSCAN
| |
| └─ Dimensionality Reduction
| |-- Principal Component Analysis (PCA)
| └─ t-distributed Stochastic Neighbor Embedding (t-SNE)
|-- Deep_Learning
| |-- Neural Networks Basics
| | |-- Activation Functions
| | |-- Loss Functions
| | └─ Optimization Algorithms
| |
| |-- Convolutional Neural Networks (CNNs)
| | |-- Image Classification
| | └─ Object Detection
| |
| |-- Recurrent Neural Networks (RNNs)
| | |-- Sequence Modeling
| | └─ Natural Language Processing (NLP)
| |
| └─ Transformers
| |-- Attention Mechanisms
| |-- BERT
| |-- GPT
|-- Reinforcement_Learning
| |-- Markov Decision Processes (MDPs)
| |-- Q-Learning
| |-- Deep Q-Networks (DQN)
| └─ Policy Gradient Methods
|-- Natural_Language_Processing (NLP)
| |-- Text Processing Techniques
| |-- Sentiment Analysis
| |-- Topic Modeling
| |-- Machine Translation
| └─ Language Modeling
|-- Computer_Vision
| |-- Image Processing Fundamentals
| |-- Image Classification
| |-- Object Detection
| |-- Image Segmentation
| └─ Image Generation
|-- Ethical AI & Responsible AI
| |-- Bias Detection and Mitigation
| |-- Fairness in AI
| |-- Privacy Concerns
| └─ Explainable AI (XAI)
|-- Deployment & Production
| |-- Model Deployment Strategies
| |-- Cloud Platforms (AWS, Azure, GCP)
| |-- Model Monitoring
| └─ Version Control
|-- Online_Resources
| |-- Coursera
| |-- Udacity
| |-- fast.ai
| |-- Kaggle
| └─ TensorFlow, PyTorch Documentation
React ❤️ if this helped you!
❤19
🤖 A-Z of Essential Artificial Intelligence Concepts 🧠
A: Agent - An entity that perceives its environment and acts upon it to achieve goals. 🎯
B: Backpropagation - An algorithm used to train neural networks by calculating gradients and updating weights. 🔄
C: Convolutional Neural Network (CNN) - A deep learning model particularly effective for processing images and videos. 👁️
D: Deep Learning - A subset of machine learning that utilizes artificial neural networks with multiple layers to analyze data. 🧠
E: Expert System - A computer system designed to emulate the decision-making ability of a human expert. 👩💻
F: Feature Extraction - The process of selecting and transforming relevant features from raw data for use in AI models. ⚙️
G: Generative Adversarial Network (GAN) - A type of neural network architecture used for generating new, realistic data samples. 🖼️
H: Heuristic - A problem-solving approach that uses practical methods and shortcuts to produce solutions that may not be optimal but are sufficient. 💡
I: Inference - The process of drawing conclusions from data using logical reasoning and AI algorithms. 🤔
J: Knowledge Representation - Methods used to encode knowledge in AI systems, such as rules, frames, and semantic networks. 📚
K: K-Nearest Neighbors (KNN) - A simple machine learning algorithm used for classification and regression based on proximity to other data points. 🏘️
L: LSTM (Long Short-Term Memory) - A type of recurrent neural network (RNN) architecture used for processing sequential data, such as time series and natural language. ⌚
M: Machine Learning (ML) - The study of algorithms that allow computer systems to improve their performance through experience. 📈
N: Natural Language Processing (NLP) - A field of AI focused on enabling computers to understand, interpret, and generate human language. 🗣️
O: Optimization - The process of finding the best parameters for an AI model to minimize errors and maximize performance. ✅
P: Perceptron - A basic unit of a neural network that takes inputs, applies weights, and produces an output. ➕
Q: Q-Learning - A reinforcement learning algorithm used to learn an optimal action-selection policy for any Markov decision process (MDP). 🕹️
R: Reinforcement Learning (RL) - A type of machine learning where an agent learns to make decisions by interacting with an environment and receiving rewards or penalties. 🎮
S: Supervised Learning - A machine learning approach where an algorithm learns from labeled training data. 🏷️
T: Transfer Learning - A machine learning technique where a model trained on one task is repurposed on a second related task. ♻️
U: Unsupervised Learning - A machine learning approach where an algorithm learns from unlabeled data by identifying patterns and relationships. 🔍
V: Vision (Computer Vision) - A field of AI focused on enabling computers to "see" and interpret images and videos. 👁️
W: Word Embedding - A technique in NLP for representing words as vectors in a continuous space, capturing semantic relationships between words. ✍️
X: XAI (Explainable AI) - A set of methods aimed at making AI decision-making processes more transparent and understandable to humans. ❓
Y: YOLO (You Only Look Once) - A real-time object detection system widely used in computer vision applications. 🚗
Z: Zero-Shot Learning - A type of machine learning where a model can recognize objects or perform tasks it has never seen during training. ✨
React ❤️ for more
A: Agent - An entity that perceives its environment and acts upon it to achieve goals. 🎯
B: Backpropagation - An algorithm used to train neural networks by calculating gradients and updating weights. 🔄
C: Convolutional Neural Network (CNN) - A deep learning model particularly effective for processing images and videos. 👁️
D: Deep Learning - A subset of machine learning that utilizes artificial neural networks with multiple layers to analyze data. 🧠
E: Expert System - A computer system designed to emulate the decision-making ability of a human expert. 👩💻
F: Feature Extraction - The process of selecting and transforming relevant features from raw data for use in AI models. ⚙️
G: Generative Adversarial Network (GAN) - A type of neural network architecture used for generating new, realistic data samples. 🖼️
H: Heuristic - A problem-solving approach that uses practical methods and shortcuts to produce solutions that may not be optimal but are sufficient. 💡
I: Inference - The process of drawing conclusions from data using logical reasoning and AI algorithms. 🤔
J: Knowledge Representation - Methods used to encode knowledge in AI systems, such as rules, frames, and semantic networks. 📚
K: K-Nearest Neighbors (KNN) - A simple machine learning algorithm used for classification and regression based on proximity to other data points. 🏘️
L: LSTM (Long Short-Term Memory) - A type of recurrent neural network (RNN) architecture used for processing sequential data, such as time series and natural language. ⌚
M: Machine Learning (ML) - The study of algorithms that allow computer systems to improve their performance through experience. 📈
N: Natural Language Processing (NLP) - A field of AI focused on enabling computers to understand, interpret, and generate human language. 🗣️
O: Optimization - The process of finding the best parameters for an AI model to minimize errors and maximize performance. ✅
P: Perceptron - A basic unit of a neural network that takes inputs, applies weights, and produces an output. ➕
Q: Q-Learning - A reinforcement learning algorithm used to learn an optimal action-selection policy for any Markov decision process (MDP). 🕹️
R: Reinforcement Learning (RL) - A type of machine learning where an agent learns to make decisions by interacting with an environment and receiving rewards or penalties. 🎮
S: Supervised Learning - A machine learning approach where an algorithm learns from labeled training data. 🏷️
T: Transfer Learning - A machine learning technique where a model trained on one task is repurposed on a second related task. ♻️
U: Unsupervised Learning - A machine learning approach where an algorithm learns from unlabeled data by identifying patterns and relationships. 🔍
V: Vision (Computer Vision) - A field of AI focused on enabling computers to "see" and interpret images and videos. 👁️
W: Word Embedding - A technique in NLP for representing words as vectors in a continuous space, capturing semantic relationships between words. ✍️
X: XAI (Explainable AI) - A set of methods aimed at making AI decision-making processes more transparent and understandable to humans. ❓
Y: YOLO (You Only Look Once) - A real-time object detection system widely used in computer vision applications. 🚗
Z: Zero-Shot Learning - A type of machine learning where a model can recognize objects or perform tasks it has never seen during training. ✨
React ❤️ for more
❤6
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🚀 Agentic AI Developer Certification Program
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✅ | Chatbots
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👨💻 Learn to build:
✅ | Chatbots
✅ | AI Assistants
✅ | Multi-Agent Systems
⚡️ Master tools like LangChain, LangGraph, RAGAS, & more.
Join now ⤵️
https://go.readytensor.ai/cert-550-agentic-ai-certification
❤2👍1🔥1
Artificial Intelligence Projects! 💼🤖
Beginner-Level Projects 🏁
(Focus: Python, basic ML algorithms, libraries like scikit-learn)
1️⃣ Image Classification using MNIST dataset (digits recognition)
2️⃣ Spam Email Detection using NLP techniques (Naive Bayes Classifier)
3️⃣ Sentiment Analysis of movie reviews using NLTK library
4️⃣ Simple chatbot using rule-based approach
5️⃣ Iris Flower Classification using K-Nearest Neighbors
6️⃣ Loan Prediction using Logistic Regression
7️⃣ Titanic Survival Prediction
8️⃣ Handwritten Digit Recognition
9️⃣ Basic face detection using OpenCV
10️⃣ Music Genre Classification
Intermediate-Level Projects 🚀
(Focus: Deep learning, neural networks, TensorFlow/Keras, more advanced NLP/CV)
1️⃣ Image generation using Generative Adversarial Networks (GANs)
2️⃣ Object Detection using YOLO or SSD models
3️⃣ Neural Machine Translation using Sequence-to-Sequence models
4️⃣ Text Summarization using Transformers (e.g., BART, T5)
5️⃣ Building a recommendation system (collaborative filtering, content-based)
6️⃣ Time series forecasting (Stock price, weather prediction) with LSTMs
7️⃣ Chatbot with intent recognition and dialogue management (using Rasa or Dialogflow)
8️⃣ Facial Expression Recognition
9️⃣ Driver Drowsiness Detection System
10️⃣ Medical Image Analysis (disease detection in X-rays or MRI scans)
Advanced-Level Projects 🔥
(Focus: Cutting-edge research, complex architectures, deployment, real-world problems)
1️⃣ Developing a self-driving car simulation (using CARLA or similar)
2️⃣ AI-powered virtual assistant with advanced NLP capabilities
3️⃣ Implementing reinforcement learning algorithms for robotics control
4️⃣ Developing a system for detecting deepfakes using computer vision
5️⃣ Creating a personalized medicine platform using genomic data and machine learning
6️⃣ Building an AI-driven financial trading system
7️⃣ AI-powered fraud detection system for online transactions
8️⃣ Developing a system for automated code generation
9️⃣ Building a Generative model for Art Creation
10️⃣ Ethical AI Frameworks Implementation for bias detection and mitigation.
📂 Pro Tip: Document your code thoroughly on GitHub, showcasing model performance metrics, architecture decisions, and insights - highlight the business value of your work! 🙌
💬 React ❤️ for more AI project ideas!
Beginner-Level Projects 🏁
(Focus: Python, basic ML algorithms, libraries like scikit-learn)
1️⃣ Image Classification using MNIST dataset (digits recognition)
2️⃣ Spam Email Detection using NLP techniques (Naive Bayes Classifier)
3️⃣ Sentiment Analysis of movie reviews using NLTK library
4️⃣ Simple chatbot using rule-based approach
5️⃣ Iris Flower Classification using K-Nearest Neighbors
6️⃣ Loan Prediction using Logistic Regression
7️⃣ Titanic Survival Prediction
8️⃣ Handwritten Digit Recognition
9️⃣ Basic face detection using OpenCV
10️⃣ Music Genre Classification
Intermediate-Level Projects 🚀
(Focus: Deep learning, neural networks, TensorFlow/Keras, more advanced NLP/CV)
1️⃣ Image generation using Generative Adversarial Networks (GANs)
2️⃣ Object Detection using YOLO or SSD models
3️⃣ Neural Machine Translation using Sequence-to-Sequence models
4️⃣ Text Summarization using Transformers (e.g., BART, T5)
5️⃣ Building a recommendation system (collaborative filtering, content-based)
6️⃣ Time series forecasting (Stock price, weather prediction) with LSTMs
7️⃣ Chatbot with intent recognition and dialogue management (using Rasa or Dialogflow)
8️⃣ Facial Expression Recognition
9️⃣ Driver Drowsiness Detection System
10️⃣ Medical Image Analysis (disease detection in X-rays or MRI scans)
Advanced-Level Projects 🔥
(Focus: Cutting-edge research, complex architectures, deployment, real-world problems)
1️⃣ Developing a self-driving car simulation (using CARLA or similar)
2️⃣ AI-powered virtual assistant with advanced NLP capabilities
3️⃣ Implementing reinforcement learning algorithms for robotics control
4️⃣ Developing a system for detecting deepfakes using computer vision
5️⃣ Creating a personalized medicine platform using genomic data and machine learning
6️⃣ Building an AI-driven financial trading system
7️⃣ AI-powered fraud detection system for online transactions
8️⃣ Developing a system for automated code generation
9️⃣ Building a Generative model for Art Creation
10️⃣ Ethical AI Frameworks Implementation for bias detection and mitigation.
📂 Pro Tip: Document your code thoroughly on GitHub, showcasing model performance metrics, architecture decisions, and insights - highlight the business value of your work! 🙌
💬 React ❤️ for more AI project ideas!
❤3
🚀 AI Journey Contest 2025: Test your AI skills!
Join our international online AI competition. Register now for the contest! Award fund — RUB 6.5 mln!
Choose your track:
· 🤖 Agent-as-Judge — build a universal “judge” to evaluate AI-generated texts.
· 🧠 Human-centered AI Assistant — develop a personalized assistant based on GigaChat that mimics human behavior and anticipates preferences. Participants will receive API tokens and a chance to get an additional 1M tokens.
· 💾 GigaMemory — design a long-term memory mechanism for LLMs so the assistant can remember and use important facts in dialogue.
Why Join
Level up your skills, add a strong line to your resume, tackle pro-level tasks, compete for an award, and get an opportunity to showcase your work at AI Journey, a leading international AI conference.
How to Join
1. Register here: https://short-url.org/1b96D
2. Choose your track.
3. Create your solution and submit it by 30 October 2025.
🚀 Ready for a challenge? Join a global developer community and show your AI skills!
Join our international online AI competition. Register now for the contest! Award fund — RUB 6.5 mln!
Choose your track:
· 🤖 Agent-as-Judge — build a universal “judge” to evaluate AI-generated texts.
· 🧠 Human-centered AI Assistant — develop a personalized assistant based on GigaChat that mimics human behavior and anticipates preferences. Participants will receive API tokens and a chance to get an additional 1M tokens.
· 💾 GigaMemory — design a long-term memory mechanism for LLMs so the assistant can remember and use important facts in dialogue.
Why Join
Level up your skills, add a strong line to your resume, tackle pro-level tasks, compete for an award, and get an opportunity to showcase your work at AI Journey, a leading international AI conference.
How to Join
1. Register here: https://short-url.org/1b96D
2. Choose your track.
3. Create your solution and submit it by 30 October 2025.
🚀 Ready for a challenge? Join a global developer community and show your AI skills!
👍2❤1
The key to starting your AI career:
❌It's not your academic background
❌It's not previous experience
It's how you apply these principles:
1. Learn by building real AI models
2. Create a project portfolio
3. Make yourself visible in the AI community
No one starts off as an AI expert — but everyone can become one.
If you're aiming for a career in AI, start by:
⟶ Watching AI and ML tutorials
⟶ Reading research papers and expert insights
⟶ Doing internships or Kaggle competitions
⟶ Building and sharing AI projects
⟶ Learning from experienced ML/AI engineers
You'll be amazed how quickly you pick things up once you start doing.
So, start today and let your AI journey begin!
React ❤️ for more helpful tips
❌It's not your academic background
❌It's not previous experience
It's how you apply these principles:
1. Learn by building real AI models
2. Create a project portfolio
3. Make yourself visible in the AI community
No one starts off as an AI expert — but everyone can become one.
If you're aiming for a career in AI, start by:
⟶ Watching AI and ML tutorials
⟶ Reading research papers and expert insights
⟶ Doing internships or Kaggle competitions
⟶ Building and sharing AI projects
⟶ Learning from experienced ML/AI engineers
You'll be amazed how quickly you pick things up once you start doing.
So, start today and let your AI journey begin!
React ❤️ for more helpful tips
❤13👏1
🚀 Agent.ai Challenge is LIVE!
No-code AI agent builder backed by Dharmesh Shah (HubSpot).
🏆 Prizes: $50,000 total
• $30K – Innovation Award
• $20K – Marketing Award
• Weekly Top 100 shoutouts
✅ Open to *everyone*
🤖 Build real AI projects
🌍 Get visibility + expert feedback
👉 Register now: shorturl.at/q9lfF
Double Tap ❤️ for more AI Challenges
No-code AI agent builder backed by Dharmesh Shah (HubSpot).
🏆 Prizes: $50,000 total
• $30K – Innovation Award
• $20K – Marketing Award
• Weekly Top 100 shoutouts
✅ Open to *everyone*
🤖 Build real AI projects
🌍 Get visibility + expert feedback
👉 Register now: shorturl.at/q9lfF
Double Tap ❤️ for more AI Challenges
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✅ The Only AI Cheatsheet You’ll Need to Get Started in 2025 🤖📚
🔹 1. What is AI?
AI simulates human intelligence in machines that can think, learn & decide.
🔹 2. Main Fields of AI:
⦁ Machine Learning (ML) – Learning from data
⦁ Deep Learning – Neural nets like the brain
⦁ Natural Language Processing (NLP) – Language understanding
⦁ Computer Vision – Image & video analysis
⦁ Robotics – Physical AI systems
⦁ Expert Systems – Rule-based decisions
🔹 3. Types of Learning:
⦁ Supervised Learning – Labeled data
⦁ Unsupervised Learning – Pattern discovery
⦁ Reinforcement Learning – Learning via rewards & punishments
🔹 4. Common Algorithms:
⦁ Linear Regression
⦁ Decision Trees
⦁ K-Means Clustering
⦁ Support Vector Machines
⦁ Neural Networks
🔹 5. Popular Tools & Libraries:
⦁ Python (most used)
⦁ TensorFlow, PyTorch, Scikit-learn, OpenCV, NLTK
🔹 6. Real-World Applications:
⦁ Chatbots (e.g. ChatGPT)
⦁ Voice Assistants
⦁ Self-driving Cars
⦁ Facial Recognition
⦁ Medical Diagnosis
⦁ Stock Prediction
🔹 7. Key AI Concepts:
⦁ Model Training & Testing
⦁ Overfitting vs Underfitting
⦁ Bias & Variance
⦁ Accuracy, Precision, Recall
⦁ Confusion Matrix
🔹 8. Ethics in AI:
⦁ Bias in data
⦁ Privacy concerns
⦁ Responsible AI development
💬 Tap ❤️ for detailed explanations of key concepts!
🔹 1. What is AI?
AI simulates human intelligence in machines that can think, learn & decide.
🔹 2. Main Fields of AI:
⦁ Machine Learning (ML) – Learning from data
⦁ Deep Learning – Neural nets like the brain
⦁ Natural Language Processing (NLP) – Language understanding
⦁ Computer Vision – Image & video analysis
⦁ Robotics – Physical AI systems
⦁ Expert Systems – Rule-based decisions
🔹 3. Types of Learning:
⦁ Supervised Learning – Labeled data
⦁ Unsupervised Learning – Pattern discovery
⦁ Reinforcement Learning – Learning via rewards & punishments
🔹 4. Common Algorithms:
⦁ Linear Regression
⦁ Decision Trees
⦁ K-Means Clustering
⦁ Support Vector Machines
⦁ Neural Networks
🔹 5. Popular Tools & Libraries:
⦁ Python (most used)
⦁ TensorFlow, PyTorch, Scikit-learn, OpenCV, NLTK
🔹 6. Real-World Applications:
⦁ Chatbots (e.g. ChatGPT)
⦁ Voice Assistants
⦁ Self-driving Cars
⦁ Facial Recognition
⦁ Medical Diagnosis
⦁ Stock Prediction
🔹 7. Key AI Concepts:
⦁ Model Training & Testing
⦁ Overfitting vs Underfitting
⦁ Bias & Variance
⦁ Accuracy, Precision, Recall
⦁ Confusion Matrix
🔹 8. Ethics in AI:
⦁ Bias in data
⦁ Privacy concerns
⦁ Responsible AI development
💬 Tap ❤️ for detailed explanations of key concepts!
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Artificial Intelligence pinned «🚀 Agent.ai Challenge is LIVE! No-code AI agent builder backed by Dharmesh Shah (HubSpot). 🏆 Prizes: $50,000 total • $30K – Innovation Award • $20K – Marketing Award • Weekly Top 100 shoutouts ✅ Open to *everyone* 🤖 Build real AI projects 🌍 Get…»
✅ Types of Machine Learning Algorithms 🤖📊
1️⃣ Supervised Learning
Supervised learning means the model learns from labeled data — that is, data where both the input and the correct output are already known.
👉 Example: If you give a machine a bunch of emails marked as “spam” or “not spam,” it will learn to classify new emails based on that.
🔹 You “supervise” the model by showing it the correct answers during training.
📌 Common Uses:
• Spam detection
• Loan approval prediction
• Disease diagnosis
• Price prediction
🔧 Popular Supervised Algorithms:
• Linear Regression – Predicts continuous values (like house prices)
• Logistic Regression – For binary outcomes (yes/no, spam/not spam)
• Decision Trees – Splits data into branches like a flowchart to make decisions
• Random Forest – Combines many decision trees for better accuracy
• SVM (Support Vector Machine) – Finds the best line or boundary to separate classes
• k-Nearest Neighbors (k-NN) – Classifies data based on the “closest” examples
• Naive Bayes – Uses probability to classify, often used in text classification
• Gradient Boosting (XGBoost, LightGBM) – Builds strong models step by step
• Neural Networks – Mimics the human brain, great for complex tasks like images or speech
2️⃣ Unsupervised Learning
Unsupervised learning means the model is given data without labels and asked to find patterns on its own.
👉 Example: Imagine giving a machine a bunch of customer shopping data with no categories. It might group similar customers based on what they buy.
🔹 There’s no correct output provided — the model must figure out the structure.
📌 Common Uses:
• Customer segmentation
• Market analysis
• Grouping similar products
• Detecting unusual behavior (anomalies)
🔧 Popular Unsupervised Algorithms:
• K-Means Clustering – Groups data into k similar clusters
• Hierarchical Clustering – Builds nested clusters like a tree
• DBSCAN – Clusters data based on how close points are to each other
• PCA (Principal Component Analysis) – Reduces complex data into fewer dimensions (used for visualization or speeding up models)
• Autoencoders – A special type of neural network that learns to compress and reconstruct data (used in image noise reduction, etc.)
3️⃣ Reinforcement Learning (RL)
Reinforcement learning is like training a pet with rewards and punishments.
👉 The model (called an agent) learns by interacting with its environment. Every action it takes gets a reward or penalty, helping it learn the best strategy over time.
📌 Common Uses:
• Game-playing AI (like AlphaGo or Chess bots)
• Robotics
• Self-driving cars
• Stock trading bots
🔧 Key Concepts:
• Agent – The learner or decision-maker
• Environment – The world the agent interacts with
• Action – What the agent does
• Reward – Feedback received (positive or negative)
• Policy – Strategy the agent follows to take actions
• Value Function – Predicts future rewards
🔧 Popular RL Algorithms:
• Q-Learning – Learns the value of actions for each state
• Deep Q Networks (DQN) – Combines Q-learning with deep learning for complex environments
• PPO (Proximal Policy Optimization) – A stable algorithm for learning policies
• Actor-Critic – Combines two strategies to improve learning performance
💡 Beginner Tip:
Start with Supervised Learning. Try simple projects like predicting prices or classifying emails. Then explore Unsupervised Learning and Reinforcement Learning as you get more confident.
👍 Double Tap ♥️ for more
1️⃣ Supervised Learning
Supervised learning means the model learns from labeled data — that is, data where both the input and the correct output are already known.
👉 Example: If you give a machine a bunch of emails marked as “spam” or “not spam,” it will learn to classify new emails based on that.
🔹 You “supervise” the model by showing it the correct answers during training.
📌 Common Uses:
• Spam detection
• Loan approval prediction
• Disease diagnosis
• Price prediction
🔧 Popular Supervised Algorithms:
• Linear Regression – Predicts continuous values (like house prices)
• Logistic Regression – For binary outcomes (yes/no, spam/not spam)
• Decision Trees – Splits data into branches like a flowchart to make decisions
• Random Forest – Combines many decision trees for better accuracy
• SVM (Support Vector Machine) – Finds the best line or boundary to separate classes
• k-Nearest Neighbors (k-NN) – Classifies data based on the “closest” examples
• Naive Bayes – Uses probability to classify, often used in text classification
• Gradient Boosting (XGBoost, LightGBM) – Builds strong models step by step
• Neural Networks – Mimics the human brain, great for complex tasks like images or speech
2️⃣ Unsupervised Learning
Unsupervised learning means the model is given data without labels and asked to find patterns on its own.
👉 Example: Imagine giving a machine a bunch of customer shopping data with no categories. It might group similar customers based on what they buy.
🔹 There’s no correct output provided — the model must figure out the structure.
📌 Common Uses:
• Customer segmentation
• Market analysis
• Grouping similar products
• Detecting unusual behavior (anomalies)
🔧 Popular Unsupervised Algorithms:
• K-Means Clustering – Groups data into k similar clusters
• Hierarchical Clustering – Builds nested clusters like a tree
• DBSCAN – Clusters data based on how close points are to each other
• PCA (Principal Component Analysis) – Reduces complex data into fewer dimensions (used for visualization or speeding up models)
• Autoencoders – A special type of neural network that learns to compress and reconstruct data (used in image noise reduction, etc.)
3️⃣ Reinforcement Learning (RL)
Reinforcement learning is like training a pet with rewards and punishments.
👉 The model (called an agent) learns by interacting with its environment. Every action it takes gets a reward or penalty, helping it learn the best strategy over time.
📌 Common Uses:
• Game-playing AI (like AlphaGo or Chess bots)
• Robotics
• Self-driving cars
• Stock trading bots
🔧 Key Concepts:
• Agent – The learner or decision-maker
• Environment – The world the agent interacts with
• Action – What the agent does
• Reward – Feedback received (positive or negative)
• Policy – Strategy the agent follows to take actions
• Value Function – Predicts future rewards
🔧 Popular RL Algorithms:
• Q-Learning – Learns the value of actions for each state
• Deep Q Networks (DQN) – Combines Q-learning with deep learning for complex environments
• PPO (Proximal Policy Optimization) – A stable algorithm for learning policies
• Actor-Critic – Combines two strategies to improve learning performance
💡 Beginner Tip:
Start with Supervised Learning. Try simple projects like predicting prices or classifying emails. Then explore Unsupervised Learning and Reinforcement Learning as you get more confident.
👍 Double Tap ♥️ for more
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📌So we have come with a session for you!! 👨🏻💻 👩🏻💻
This will help you to speed up your job hunting process 💪
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✅ Must-Know AI Tools & Platforms (Beginner to Pro) 🤖🛠️
🔹 For Machine Learning & Data Science
• TensorFlow – Google’s open-source ML library for deep learning
• PyTorch – Flexible & beginner-friendly deep learning framework
• Scikit-learn – Best for classic ML (classification, regression, clustering)
• Keras – High-level API to build neural networks fast
🔹 For Natural Language Processing (NLP)
• Hugging Face Transformers – Pretrained models for text, chatbots, translation
• spaCy – Fast NLP for entity recognition & parsing
• NLTK – Basics like tokenization & sentiment analysis
🔹 For Computer Vision
• OpenCV – Image processing & object detection
• YOLO – Real-time object detection
• MediaPipe – Face & hand tracking made easy
🔹 For Generative AI
• Chat / -4 – Text generation, coding, brainstorming
• DALL·E, Midjourney – AI-generated images & art
• Runway ML – AI video editing & creativity tools
🔹 For Robotics & Automation
• ROS – Framework to build robot software
• UiPath, Automation Anywhere – Automate repetitive tasks
🔹 For MLOps & Deployment
• Docker – Package & deploy AI apps
• Kubernetes – Scale models in production
• MLflow – Track & manage ML experiments
💡 Tip: Start small—pick one category, build a mini-project & share it online!
👍 Tap ❤️ if you found this helpful!
🔹 For Machine Learning & Data Science
• TensorFlow – Google’s open-source ML library for deep learning
• PyTorch – Flexible & beginner-friendly deep learning framework
• Scikit-learn – Best for classic ML (classification, regression, clustering)
• Keras – High-level API to build neural networks fast
🔹 For Natural Language Processing (NLP)
• Hugging Face Transformers – Pretrained models for text, chatbots, translation
• spaCy – Fast NLP for entity recognition & parsing
• NLTK – Basics like tokenization & sentiment analysis
🔹 For Computer Vision
• OpenCV – Image processing & object detection
• YOLO – Real-time object detection
• MediaPipe – Face & hand tracking made easy
🔹 For Generative AI
• Chat / -4 – Text generation, coding, brainstorming
• DALL·E, Midjourney – AI-generated images & art
• Runway ML – AI video editing & creativity tools
🔹 For Robotics & Automation
• ROS – Framework to build robot software
• UiPath, Automation Anywhere – Automate repetitive tasks
🔹 For MLOps & Deployment
• Docker – Package & deploy AI apps
• Kubernetes – Scale models in production
• MLflow – Track & manage ML experiments
💡 Tip: Start small—pick one category, build a mini-project & share it online!
👍 Tap ❤️ if you found this helpful!
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