π Become an Agentic AI Builder β Free 12βWeek Certification by Ready Tensor
Ready Tensorβs Agentic AI Developer Certification is a free, project first 12βweek program designed to help you build and deploy real-world agentic AI systems. You'll complete three portfolio-ready projects using tools like LangChain, LangGraph, and vector databases, while deploying production-ready agents with FastAPI or Streamlit.
The course focuses on developing autonomous AI agents that can plan, reason, use memory, and act safely in complex environments. Certification is earned not by watching lectures, but by building β each project is reviewed against rigorous standards.
You can start anytime, and new cohorts begin monthly. Ideal for developers and engineers ready to go beyond chat prompts and start building true agentic systems.
π Apply now: https://www.readytensor.ai/agentic-ai-cert/
Ready Tensorβs Agentic AI Developer Certification is a free, project first 12βweek program designed to help you build and deploy real-world agentic AI systems. You'll complete three portfolio-ready projects using tools like LangChain, LangGraph, and vector databases, while deploying production-ready agents with FastAPI or Streamlit.
The course focuses on developing autonomous AI agents that can plan, reason, use memory, and act safely in complex environments. Certification is earned not by watching lectures, but by building β each project is reviewed against rigorous standards.
You can start anytime, and new cohorts begin monthly. Ideal for developers and engineers ready to go beyond chat prompts and start building true agentic systems.
π Apply now: https://www.readytensor.ai/agentic-ai-cert/
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Python Interview Questions:
Ready to test your Python skills? Letβs get started! π»
1. How to check if a string is a palindrome?
2. How to find the factorial of a number using recursion?
3. How to merge two dictionaries in Python?
4. How to find the intersection of two lists?
5. How to generate a list of even numbers from 1 to 100?
6. How to find the longest word in a sentence?
7. How to count the frequency of elements in a list?
8. How to remove duplicates from a list while maintaining the order?
9. How to reverse a linked list in Python?
10. How to implement a simple binary search algorithm?
Here you can find essential Python Interview Resourcesπ
https://t.me/DataSimplifier
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Ready to test your Python skills? Letβs get started! π»
1. How to check if a string is a palindrome?
def is_palindrome(s):
return s == s[::-1]
print(is_palindrome("madam")) # True
print(is_palindrome("hello")) # False
2. How to find the factorial of a number using recursion?
def factorial(n):
if n == 0 or n == 1:
return 1
return n * factorial(n - 1)
print(factorial(5)) # 120
3. How to merge two dictionaries in Python?
dict1 = {'a': 1, 'b': 2}
dict2 = {'c': 3, 'd': 4}
# Method 1 (Python 3.5+)
merged_dict = {**dict1, **dict2}
# Method 2 (Python 3.9+)
merged_dict = dict1 | dict2
print(merged_dict)4. How to find the intersection of two lists?
list1 = [1, 2, 3, 4]
list2 = [3, 4, 5, 6]
intersection = list(set(list1) & set(list2))
print(intersection) # [3, 4]
5. How to generate a list of even numbers from 1 to 100?
even_numbers = [i for i in range(1, 101) if i % 2 == 0]
print(even_numbers)
6. How to find the longest word in a sentence?
def longest_word(sentence):
words = sentence.split()
return max(words, key=len)
print(longest_word("Python is a powerful language")) # "powerful"
7. How to count the frequency of elements in a list?
from collections import Counter
my_list = [1, 2, 2, 3, 3, 3, 4]
frequency = Counter(my_list)
print(frequency) # Counter({3: 3, 2: 2, 1: 1, 4: 1})
8. How to remove duplicates from a list while maintaining the order?
def remove_duplicates(lst):
return list(dict.fromkeys(lst))
my_list = [1, 2, 2, 3, 4, 4, 5]
print(remove_duplicates(my_list)) # [1, 2, 3, 4, 5]
9. How to reverse a linked list in Python?
class Node:
def __init__(self, data):
self.data = data
self.next = None
def reverse_linked_list(head):
prev = None
current = head
while current:
next_node = current.next
current.next = prev
prev = current
current = next_node
return prev
# Create linked list: 1 -> 2 -> 3
head = Node(1)
head.next = Node(2)
head.next.next = Node(3)
# Reverse and print the list
reversed_head = reverse_linked_list(head)
while reversed_head:
print(reversed_head.data, end=" -> ")
reversed_head = reversed_head.next
10. How to implement a simple binary search algorithm?
def binary_search(arr, target):
low, high = 0, len(arr) - 1
while low <= high:
mid = (low + high) // 2
if arr[mid] == target:
return mid
elif arr[mid] < target:
low = mid + 1
else:
high = mid - 1
return -1
print(binary_search([1, 2, 3, 4, 5, 6, 7], 4)) # 3
Here you can find essential Python Interview Resourcesπ
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Hope it helps :)
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Top 20 AI Concepts You Should Know
1 - Machine Learning: Core algorithms, statistics, and model training techniques.
2 - Deep Learning: Hierarchical neural networks learning complex representations automatically.
3 - Neural Networks: Layered architectures efficiently model nonlinear relationships accurately.
4 - NLP: Techniques to process and understand natural language text.
5 - Computer Vision: Algorithms interpreting and analyzing visual data effectively
6 - Reinforcement Learning: Distributed traffic across multiple servers for reliability.
7 - Generative Models: Creating new data samples using learned data.
8 - LLM: Generates human-like text using massive pre-trained data.
9 - Transformers: Self-attention-based architecture powering modern AI models.
10 - Feature Engineering: Designing informative features to improve model performance significantly.
11 - Supervised Learning: Learns useful representations without labeled data.
12 - Bayesian Learning: Incorporate uncertainty using probabilistic model approaches.
13 - Prompt Engineering: Crafting effective inputs to guide generative model outputs.
14 - AI Agents: Autonomous systems that perceive, decide, and act.
15 - Fine-Tuning Models: Customizes pre-trained models for domain-specific tasks.
16 - Multimodal Models: Processes and generates across multiple data types like images, videos, and text.
17 - Embeddings: Transforms input into machine-readable vector formats.
18 - Vector Search: Finds similar items using dense vector embeddings.
19 - Model Evaluation: Assessing predictive performance using validation techniques.
20 - AI Infrastructure: Deploying scalable systems to support AI operations.
Artificial intelligence Resources: https://whatsapp.com/channel/0029VaoePz73bbV94yTh6V2E
AI Jobs: https://whatsapp.com/channel/0029VaxtmHsLikgJ2VtGbu1R
Hope this helps you βΊοΈ
1 - Machine Learning: Core algorithms, statistics, and model training techniques.
2 - Deep Learning: Hierarchical neural networks learning complex representations automatically.
3 - Neural Networks: Layered architectures efficiently model nonlinear relationships accurately.
4 - NLP: Techniques to process and understand natural language text.
5 - Computer Vision: Algorithms interpreting and analyzing visual data effectively
6 - Reinforcement Learning: Distributed traffic across multiple servers for reliability.
7 - Generative Models: Creating new data samples using learned data.
8 - LLM: Generates human-like text using massive pre-trained data.
9 - Transformers: Self-attention-based architecture powering modern AI models.
10 - Feature Engineering: Designing informative features to improve model performance significantly.
11 - Supervised Learning: Learns useful representations without labeled data.
12 - Bayesian Learning: Incorporate uncertainty using probabilistic model approaches.
13 - Prompt Engineering: Crafting effective inputs to guide generative model outputs.
14 - AI Agents: Autonomous systems that perceive, decide, and act.
15 - Fine-Tuning Models: Customizes pre-trained models for domain-specific tasks.
16 - Multimodal Models: Processes and generates across multiple data types like images, videos, and text.
17 - Embeddings: Transforms input into machine-readable vector formats.
18 - Vector Search: Finds similar items using dense vector embeddings.
19 - Model Evaluation: Assessing predictive performance using validation techniques.
20 - AI Infrastructure: Deploying scalable systems to support AI operations.
Artificial intelligence Resources: https://whatsapp.com/channel/0029VaoePz73bbV94yTh6V2E
AI Jobs: https://whatsapp.com/channel/0029VaxtmHsLikgJ2VtGbu1R
Hope this helps you βΊοΈ
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π§ Technologies for Data Science, Machine Learning & AI!
π Data Science
βͺοΈ Python β The go-to language for Data Science
βͺοΈ R β Statistical Computing and Graphics
βͺοΈ Pandas β Data Manipulation & Analysis
βͺοΈ NumPy β Numerical Computing
βͺοΈ Matplotlib / Seaborn β Data Visualization
βͺοΈ Jupyter Notebooks β Interactive Development Environment
π€ Machine Learning
βͺοΈ Scikit-learn β Classical ML Algorithms
βͺοΈ TensorFlow β Deep Learning Framework
βͺοΈ Keras β High-Level Neural Networks API
βͺοΈ PyTorch β Deep Learning with Dynamic Computation
βͺοΈ XGBoost β High-Performance Gradient Boosting
βͺοΈ LightGBM β Fast, Distributed Gradient Boosting
π§ Artificial Intelligence
βͺοΈ OpenAI GPT β Natural Language Processing
βͺοΈ Transformers (Hugging Face) β Pretrained Models for NLP
βͺοΈ spaCy β Industrial-Strength NLP
βͺοΈ NLTK β Natural Language Toolkit
βͺοΈ Computer Vision (OpenCV) β Image Processing & Object Detection
βͺοΈ YOLO (You Only Look Once) β Real-Time Object Detection
πΎ Data Storage & Databases
βͺοΈ SQL β Structured Query Language for Databases
βͺοΈ MongoDB β NoSQL, Flexible Data Storage
βͺοΈ BigQuery β Googleβs Data Warehouse for Large Scale Data
βͺοΈ Apache Hadoop β Distributed Storage and Processing
βͺοΈ Apache Spark β Big Data Processing & ML
π Data Engineering & Deployment
βͺοΈ Apache Airflow β Workflow Automation & Scheduling
βͺοΈ Docker β Containerization for ML Models
βͺοΈ Kubernetes β Container Orchestration
βͺοΈ AWS Sagemaker / Google AI Platform β Cloud ML Model Deployment
βͺοΈ Flask / FastAPI β APIs for ML Models
π§ Tools & Libraries for Automation & Experimentation
βͺοΈ MLflow β Tracking ML Experiments
βͺοΈ TensorBoard β Visualization for TensorFlow Models
βͺοΈ DVC (Data Version Control) β Versioning for Data & Models
React β€οΈ for more
π Data Science
βͺοΈ Python β The go-to language for Data Science
βͺοΈ R β Statistical Computing and Graphics
βͺοΈ Pandas β Data Manipulation & Analysis
βͺοΈ NumPy β Numerical Computing
βͺοΈ Matplotlib / Seaborn β Data Visualization
βͺοΈ Jupyter Notebooks β Interactive Development Environment
π€ Machine Learning
βͺοΈ Scikit-learn β Classical ML Algorithms
βͺοΈ TensorFlow β Deep Learning Framework
βͺοΈ Keras β High-Level Neural Networks API
βͺοΈ PyTorch β Deep Learning with Dynamic Computation
βͺοΈ XGBoost β High-Performance Gradient Boosting
βͺοΈ LightGBM β Fast, Distributed Gradient Boosting
π§ Artificial Intelligence
βͺοΈ OpenAI GPT β Natural Language Processing
βͺοΈ Transformers (Hugging Face) β Pretrained Models for NLP
βͺοΈ spaCy β Industrial-Strength NLP
βͺοΈ NLTK β Natural Language Toolkit
βͺοΈ Computer Vision (OpenCV) β Image Processing & Object Detection
βͺοΈ YOLO (You Only Look Once) β Real-Time Object Detection
πΎ Data Storage & Databases
βͺοΈ SQL β Structured Query Language for Databases
βͺοΈ MongoDB β NoSQL, Flexible Data Storage
βͺοΈ BigQuery β Googleβs Data Warehouse for Large Scale Data
βͺοΈ Apache Hadoop β Distributed Storage and Processing
βͺοΈ Apache Spark β Big Data Processing & ML
π Data Engineering & Deployment
βͺοΈ Apache Airflow β Workflow Automation & Scheduling
βͺοΈ Docker β Containerization for ML Models
βͺοΈ Kubernetes β Container Orchestration
βͺοΈ AWS Sagemaker / Google AI Platform β Cloud ML Model Deployment
βͺοΈ Flask / FastAPI β APIs for ML Models
π§ Tools & Libraries for Automation & Experimentation
βͺοΈ MLflow β Tracking ML Experiments
βͺοΈ TensorBoard β Visualization for TensorFlow Models
βͺοΈ DVC (Data Version Control) β Versioning for Data & Models
React β€οΈ for more
β€9
π Machine Learning Cheat Sheet π
1. Key Concepts:
- Supervised Learning: Learn from labeled data (e.g., classification, regression).
- Unsupervised Learning: Discover patterns in unlabeled data (e.g., clustering, dimensionality reduction).
- Reinforcement Learning: Learn by interacting with an environment to maximize reward.
2. Common Algorithms:
- Linear Regression: Predict continuous values.
- Logistic Regression: Binary classification.
- Decision Trees: Simple, interpretable model for classification and regression.
- Random Forests: Ensemble method for improved accuracy.
- Support Vector Machines: Effective for high-dimensional spaces.
- K-Nearest Neighbors: Instance-based learning for classification/regression.
- K-Means: Clustering algorithm.
- Principal Component Analysis(PCA)
3. Performance Metrics:
- Classification: Accuracy, Precision, Recall, F1-Score, ROC-AUC.
- Regression: Mean Absolute Error (MAE), Mean Squared Error (MSE), R^2 Score.
4. Data Preprocessing:
- Normalization: Scale features to a standard range.
- Standardization: Transform features to have zero mean and unit variance.
- Imputation: Handle missing data.
- Encoding: Convert categorical data into numerical format.
5. Model Evaluation:
- Cross-Validation: Ensure model generalization.
- Train-Test Split: Divide data to evaluate model performance.
6. Libraries:
- Python: Scikit-Learn, TensorFlow, Keras, PyTorch, Pandas, Numpy, Matplotlib.
- R: caret, randomForest, e1071, ggplot2.
7. Tips for Success:
- Feature Engineering: Enhance data quality and relevance.
- Hyperparameter Tuning: Optimize model parameters (Grid Search, Random Search).
- Model Interpretability: Use tools like SHAP and LIME.
- Continuous Learning: Stay updated with the latest research and trends.
π Dive into Machine Learning and transform data into insights! π
Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624
All the best ππ
1. Key Concepts:
- Supervised Learning: Learn from labeled data (e.g., classification, regression).
- Unsupervised Learning: Discover patterns in unlabeled data (e.g., clustering, dimensionality reduction).
- Reinforcement Learning: Learn by interacting with an environment to maximize reward.
2. Common Algorithms:
- Linear Regression: Predict continuous values.
- Logistic Regression: Binary classification.
- Decision Trees: Simple, interpretable model for classification and regression.
- Random Forests: Ensemble method for improved accuracy.
- Support Vector Machines: Effective for high-dimensional spaces.
- K-Nearest Neighbors: Instance-based learning for classification/regression.
- K-Means: Clustering algorithm.
- Principal Component Analysis(PCA)
3. Performance Metrics:
- Classification: Accuracy, Precision, Recall, F1-Score, ROC-AUC.
- Regression: Mean Absolute Error (MAE), Mean Squared Error (MSE), R^2 Score.
4. Data Preprocessing:
- Normalization: Scale features to a standard range.
- Standardization: Transform features to have zero mean and unit variance.
- Imputation: Handle missing data.
- Encoding: Convert categorical data into numerical format.
5. Model Evaluation:
- Cross-Validation: Ensure model generalization.
- Train-Test Split: Divide data to evaluate model performance.
6. Libraries:
- Python: Scikit-Learn, TensorFlow, Keras, PyTorch, Pandas, Numpy, Matplotlib.
- R: caret, randomForest, e1071, ggplot2.
7. Tips for Success:
- Feature Engineering: Enhance data quality and relevance.
- Hyperparameter Tuning: Optimize model parameters (Grid Search, Random Search).
- Model Interpretability: Use tools like SHAP and LIME.
- Continuous Learning: Stay updated with the latest research and trends.
π Dive into Machine Learning and transform data into insights! π
Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624
All the best ππ
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