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DataSpoof

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📈 Análisis del canal de Telegram DataSpoof

El canal DataSpoof (@dataspoof) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 16 133 suscriptores, ocupando la posición 12 548 en la categoría Educación y el puesto 26 541 en la región India.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 16 133 suscriptores.

Según los últimos datos del 22 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de -144, y en las últimas 24 horas de -5, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 7.89%. Durante las primeras 24 horas tras publicar, el contenido suele obtener N/A% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 0 visualizaciones. En el primer día suele acumular 0 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 0.
  • Intereses temáticos: El contenido se centra en temas clave como api, llm, pipeline, +9183182, engineer.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
Learn Data Science https://dataspoof4081.graphy.com/membership Artificial Intelligence Machine Learning Data Science Deep learning Computer vision NLP Big data

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 23 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.

16 133
Suscriptores
-524 horas
-277 días
-14430 días
Archivo de publicaciones
DataSpoof
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Which of the following is statements is false
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Regression line can be drawn in which of the following plots
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Overfitting is a major problem for neural networks. Which of the following can help prevent overfitting?
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In regression analysis, if the independent variable is measured in kilograms, the dependent variable
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Sensitivity in confusion matrix is
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photo content

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If the correlation coefficient is a positive value, then the slope of the regression line
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If the coefficient of determination is equal to 1, then the correlation coefficient
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In a regression analysis if r squared = 1, then
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Sum of squared error can never be
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In regression analysis, the variable that is being predicted is the
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The coefficient of correlation
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The coefficient of correlation
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Some interview questions related to Data science 1- what is difference between structured data and unstructured data. 2- what is multicollinearity.and how to remove them 3- which algorithms you use to find the most correlated features in the datasets. 4- define entropy 5- what is the workflow of principal component analysis 6- what are the applications of principal component analysis not with respect to dimensionality reduction 7- what is the Convolutional neural network. Explain me its working

DataSpoof
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Python_Complete_cheatsheet.pdf2.37 MB

DataSpoof
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TLA: Twitter Linguistic Analysis - TLA is built using PyTorch, Transformers and several other state of the art machine learni
TLA: Twitter Linguistic Analysis - TLA is built using PyTorch, Transformers and several other state of the art machine learning techniques and it aims to expedite and structure the cumbersome process of collecting, labeling, and analyzing data from Twitter for a corpus of languages while providing detailed labeled datasets for all the languages. $ pip install TLAF https://github.com/tusharsarkar3/TLA

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Make sure to follow us on our instagram page. Where we post each topics I carousel post www.instagram.com/dataspoof
Make sure to follow us on our instagram page. Where we post each topics I carousel post www.instagram.com/dataspoof

DataSpoof
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Feature Scaling is one of the most useful and necessary transformations to perform on a training dataset, since with very few exceptions, ML algorithms do not fit well to datasets with attributes that have very different scales. Let's talk about it 🧵 There are 2 very effective techniques to transform all the attributes of a dataset to the same scale, which are: ▪️ Normalization ▪️ Standardization The 2 techniques perform the same task, but in different ways. Moreover, each one has its strengths and weaknesses. Normalization (min-max scaling) is very simple: values are shifted and rescaled to be in the range of 0 and 1. This is achieved by subtracting each value by the min value and dividing the result by the difference between the max and min value. In contrast, Standardization first subtracts the mean value (so that the values always have zero mean) and then divides the result by the standard deviation (so that the resulting distribution has unit variance). More about them: ▪️Standardization doesn't frame the data between the range 0-1, which is undesirable for some algorithms. ▪️Standardization is robust to outliers. ▪️Normalization is sensitive to outliers. A very large value may squash the other values in the range 0.0-0.2. Both algorithms are implemented in the Scikit-learn Python library and are very easy to use. Check below Google Colab code with a toy example, where you can see how each technique works. https://colab.research.google.com/drive/1DsvTezhnwfS7bPAeHHHHLHzcZTvjBzLc?usp=sharing Check below spreadsheet, where you can see another example, step by step, of how to normalize and standardize your data. https://docs.google.com/spreadsheets/d/14GsqJxrulv2CBW_XyNUGoA-f9l-6iKuZLJMcc2_5tZM/edit?usp=drivesdk Well, the real benefit of feature scaling is when you want to train a model from a dataset with many features (e.g., m > 10) and these features have very different scales (different orders of magnitude). For NN this preprocessing is key. Enable gradient descent to converge faster

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