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Data Science & Machine Learning

Data Science & Machine Learning

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📈 Análisis del canal de Telegram Data Science & Machine Learning

El canal Data Science & Machine Learning (@datascienceinterviews) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 27 264 suscriptores, ocupando la posición 7 191 en la categoría Educación y el puesto 15 966 en la región India.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 27 264 suscriptores.

Según los últimos datos del 13 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 122, y en las últimas 24 horas de 25, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 0.57%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 0.60% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 154 visualizaciones. En el primer día suele acumular 163 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 1.
  • Intereses temáticos: El contenido se centra en temas clave como insidead, mining, pinix, learning, neo.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
The first channel on Telegram that offers exciting questions, answers, and tests in data science, artificial intelligence, machine learning, and programming languages. For promotions: @love_data

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 14 junio, 2026), el canal mantiene la vigencia y un amplio alcance. La analítica demuestra que la audiencia interactúa activamente con el contenido, lo que lo convierte en un punto de referencia dentro de la categoría Educación.

27 264
Suscriptores
+2524 horas
+247 días
+12230 días
Archivo de publicaciones
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Some important questions to crack data science interview Q. Describe how Gradient Boosting works. A. Gradient boosting is a type of machine learning boosting. It relies on the intuition that the best possible next model, when combined with previous models, minimizes the overall prediction error. If a small change in the prediction for a case causes no change in error, then next target outcome of the case is zero. Gradient boosting produces a prediction model in the form of an ensemble of weak prediction models, typically decision trees. Q. Describe the decision tree model. A. Decision Trees are a type of Supervised Machine Learning where the data is continuously split according to a certain parameter. The leaves are the decisions or the final outcomes. A decision tree is a machine learning algorithm that partitions the data into subsets. Q. What is a neural network? A. Neural networks are a set of algorithms, modeled loosely after the human brain, that are designed to recognize patterns. They interpret sensory data through a kind of machine perception, labeling or clustering raw input. They, also known as Artificial Neural Networks, are the subset of Deep Learning. Q. Explain the Bias-Variance Tradeoff A. The bias–variance tradeoff is the property of a model that the variance of the parameter estimated across samples can be reduced by increasing the bias in the estimated parameters. Q. What’s the difference between L1 and L2 regularization? A. The main intuitive difference between the L1 and L2 regularization is that L1 regularization tries to estimate the median of the data while the L2 regularization tries to estimate the mean of the data to avoid overfitting. That value will also be the median of the data distribution mathematically. ENJOY LEARNING 👍👍

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Data Science Concepts
Data Science Concepts

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Some important questions to crack data science interview Q. Describe how Gradient Boosting works. A. Gradient boosting is a type of machine learning boosting. It relies on the intuition that the best possible next model, when combined with previous models, minimizes the overall prediction error. If a small change in the prediction for a case causes no change in error, then next target outcome of the case is zero. Gradient boosting produces a prediction model in the form of an ensemble of weak prediction models, typically decision trees. Q. Describe the decision tree model. A. Decision Trees are a type of Supervised Machine Learning where the data is continuously split according to a certain parameter. The leaves are the decisions or the final outcomes. A decision tree is a machine learning algorithm that partitions the data into subsets. Q. What is a neural network? A. Neural networks are a set of algorithms, modeled loosely after the human brain, that are designed to recognize patterns. They interpret sensory data through a kind of machine perception, labeling or clustering raw input. They, also known as Artificial Neural Networks, are the subset of Deep Learning. Q. Explain the Bias-Variance Tradeoff A. The bias–variance tradeoff is the property of a model that the variance of the parameter estimated across samples can be reduced by increasing the bias in the estimated parameters. Q. What’s the difference between L1 and L2 regularization? A. The main intuitive difference between the L1 and L2 regularization is that L1 regularization tries to estimate the median of the data while the L2 regularization tries to estimate the mean of the data to avoid overfitting. That value will also be the median of the data distribution mathematically. ENJOY LEARNING 👍👍

Data Science Roadmap
Data Science Roadmap

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1. How can we deal with problems that arise when the data flows in from a variety of sources? There are many ways to go about dealing with multi-source problems. However, these are done primarily to solve the problems of: Identifying the presence of similar/same records and merging them into a single recordRe-structuring the schema to ensure there is good schema integration 2. Where is Time Series Analysis used? Since time series analysis (TSA) has a wide scope of usage, it can be used in multiple domains. Here are some of the places where TSA plays an important role: Statistics Signal processing Econometrics Weather forecasting Earthquake prediction Astronomy Applied science 3. What are the ideal situations in which t-test or z-test can be used? It is a standard practice that a t-test is used when there is a sample size less than 30 and the z-test is considered when the sample size exceeds 30 in most cases. 4. What is the usage of the NVL() function? The NVL() function is used to convert the NULL value to the other value. The function returns the value of the second parameter if the first parameter is NULL. If the first parameter is anything other than NULL, it is left unchanged. This function is used in Oracle, not in SQL and MySQL. Instead of NVL() function, MySQL have IFNULL() and SQL Server have ISNULL() function. 5. What is the difference between DROP and TRUNCATE commands? If a table is dropped, all things associated with that table are dropped as well. This includes the relationships defined on the table with other tables, access privileges, and grants that the table has, as well as the integrity checks and constraints. However, if a table is truncated, there are no such problems as mentioned above. The table retains its original structure and the data is dropped.

Proficiency in data science skills by job role
Proficiency in data science skills by job role

Ultimate Guide to Data Science Roles and Responsibilities 👇👇 https://datasimplifier.com/data-science-roles/

Data Science isn't easy! It’s the field that turns raw data into meaningful insights and predictions. To truly excel in Data Science, focus on these key areas: 0. Understanding the Basics of Statistics: Master probability, distributions, and hypothesis testing to make informed decisions. 1. Mastering Data Preprocessing: Clean, transform, and structure your data for effective analysis. 2. Exploring Data with Visualizations: Use tools like Matplotlib, Seaborn, and Tableau to create compelling data stories. 3. Learning Machine Learning Algorithms: Get hands-on with supervised and unsupervised learning techniques, like regression, classification, and clustering. 4. Mastering Python for Data Science: Learn libraries like Pandas, NumPy, and Scikit-learn for data manipulation and analysis. 5. Building and Evaluating Models: Train, validate, and tune models using cross-validation, performance metrics, and hyperparameter optimization. 6. Understanding Deep Learning: Dive into neural networks and frameworks like TensorFlow or PyTorch for advanced predictive modeling. 7. Staying Updated with Research: The field evolves fast—keep up with the latest methods, research papers, and tools. 8. Developing Problem-Solving Skills: Data science is about solving real-world problems, so practice by tackling real datasets and challenges. 9. Communicating Results Effectively: Learn to present your findings in a clear and actionable way for both technical and non-technical audiences. Data Science is a journey of learning, experimenting, and refining your skills. 💡 Embrace the challenge of working with messy data, building predictive models, and uncovering hidden patterns. ⏳ With persistence, curiosity, and hands-on practice, you'll unlock the power of data to change the world! Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624 Credits: https://t.me/datasciencefun Like if you need similar content 😄👍 Hope this helps you 😊 #datascience

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❓ What will this code output and why? ❗️ Answer: 6. Explanation: 1. In the outer_func function, x is created with the value 2
❓ What will this code output and why? ❗️ Answer: 6. Explanation: 1. In the outer_func function, x is created with the value 2. 2. Next, the inner_func function is declared, it does not remember the value of x or y immediately, but will receive it only when it is used. 3. x becomes equal to x + 2, i.e. 4, y is declared with the value 2 4. the return block (x(4) + y(2) = 6) is executed. 5. Despite declaring the value y = 3, the inner_func function will be called only after returning the value y = 2. Therefore, the output will be 6.

Here are 50 Python interview questions for 2024: 1. What is Python? 2. What are Python’s key features? 3. What is the difference between Python 2 and Python 3? 4. Explain Python’s dynamic typing. 5. What are Python’s built-in data types? 6. What is the difference between a list and a tuple in Python? 7. What are Python decorators? 8. What is a Python generator? How does it differ from a normal function? 9. Explain the Global Interpreter Lock (GIL) in Python. 10. How does Python handle memory management? 11. What is the difference between shallow copy and deep copy in Python? 12. What is Python's lambda function? 13. What is the difference between “is” and “==” in Python? 14. How do you handle exceptions in Python? 15. What are Python's modules and packages? 16. Explain Python’s “with” statement. 17. What is Python's init.py file used for? 18. How is Python's pass statement used? 19. What is Python’s *args and **kwargs? 20. What are Python’s list comprehensions? 21. What is Python’s garbage collection mechanism? 22. Explain Python’s @staticmethod, @classmethod, and instance methods. 23. What are Python’s sets, and how do they differ from lists? 24. How do you implement multithreading in Python? 25. What is the difference between multithreading and multiprocessing in Python? 26. What is Python’s dir() function used for? 27. How is Python’s zip() function used? 28. What are Python's data structures like dictionaries, sets, and tuples? 29. What is Python’s enumerate() function? 30. Explain Python’s scope resolution (LEGB) rule. 31. What is Python’s filter(), map(), and reduce()? 32. What is the difference between Python’s deepcopy and copy()? 33. What is the use of Python’s yield statement? 34. How do you work with files in Python? 35. What is Python’s collections module? 36. Explain Python’s context manager and with statement. 37. What is Python’s sys module used for? 38. What is the purpose of Python’s itertools module? 39. What are Python’s metaclasses? 40. Explain Python’s super() function. 41. How do you use Python’s regular expressions module (re)? 42. What is Python’s random module used for? 43. Explain Python’s virtual environment (venv). 44. What are Python’s iterators and iterables? 45. What is Python’s isinstance() function? 46. How do you test Python code? 47. What are Python’s comprehensions (list, set, dictionary)? 48. Explain the use of Python’s json module. 49. What is Python’s time module used for? 50. Explain Python’s logging module. Here you can find essential Python Interview Resources👇 https://topmate.io/analyst/907371 Like this post for more resources like this 👍♥️ Hope it helps :)

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🌳 What is a Decision Tree? 🌳 Imagine you're trying to figure out what to eat for dinner. 🍕🥗🍔 A decision tree is like a flowchart that helps you make choices based on yes/no questions: Are you in the mood for something light? Yes ➡️ Salad 🥗 No ➡️ Are you craving something cheesy? Yes ➡️ Pizza 🍕 No ➡️ Burger 🍔 That's the essence of how decision trees work in machine learning! 🤖 In Machine Learning Terms: Nodes: Questions (e.g., Is the price > $50?) Branches: Possible answers (e.g., Yes/No) Leaves: Final decisions or predictions (e.g., "Expensive" or "Affordable") 📊 They're used for tasks like: ✅ Classifying emails as spam or not. ✅ Predicting if a customer will buy a product. ✅ Diagnosing diseases in healthcare. 🎯 Why are they Awesome? Simple to understand (even for non-techies). Visual and interpretable (you can see the logic behind predictions). Great for small-to-medium datasets. ⚡️ Limitations: They can "overfit" (become too specific). Not the best for very large datasets or complex problems. 🛠 Pro Tip: To handle overfitting, use Random Forests 🌲🌲 or Gradient Boosted Trees 🚀—advanced versions of decision trees. What do you think about decision trees? Drop your 🌳 below if you love their simplicity!

🚨Data Science Interview Questions 1. How many cars are there in Chennai? How do u structurally approach coming up with that number? 2. Multiple Linear Regression? 3. OLS vs MLE? 4. R2 vs Adjusted R2? During Model Development which one do we consider? 5. Lift chart, drift chart 6. Sigmoid Function in Logistic regression 7. ROC what is it? AUC and Differentiation? 8. Linear Regression from Multiple Linear Regression 9. P-Value what is it and its significance? What does P in P-Value stand for? What is Hypothesis Testing? Null hypothesis vs Alternate Hypothesis? 10. Bias Variance Trade off? 11. Over fitting vs Underfitting in Machine learning? 12. Estimation of Multiple Linear Regression 13. Forecasting vs Prediction difference? Regression vs Time Series? 14. p,d,q values in ARIMA models 1. What will happen if d=0 2. What is the meaning of p,d,q values? 15. Is your data for Forecasting Uni or multi-dimensional? 16. How to find the nose to start with in a Decision tree. 17. TYPES of Decision trees - CART vs C4.5 vs ID3 18. Genie index vs entropy 19. Linear vs Logistic Regression 20. Decision Trees vs Random Forests 21. Questions on liner regression, how it works and all 22. Asked to write some SQL queries 23. Asked about past work experience 24. Some questions on inferential statistics (hypothesis testing, sampling techniques) 25. Some questions on table (how to filter, how to add calculated fields etc) 26. Why do u use Licensed Platform when other Open source packages are available? 27. What certification Have u done? 28. What is a Confidence Interval? 29. What are Outliers? How to Detect Outliers? 30. How to Handle Outliers?

What are the main parameters of the random forest model? max_depth: Longest Path between root node and the leaf min_sample_split: The minimum number of observations needed to split a given node max_leaf_nodes: Conditions the splitting of the tree and hence, limits the growth of the trees min_samples_leaf: minimum number of samples in the leaf node n_estimators: Number of trees max_sample: Fraction of original dataset given to any individual tree in the given model max_features: Limits the maximum number of features provided to trees in random forest model