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Data science and machine learning hub Python, SQL, stats, ML, deep learning, projects, PDFs, roadmaps and AI resources. For beginners, data scientists and ML engineers 👉 https://rebrand.ly/bigdatachannels DMCA: @disclosure_bds Contact: @mldatascientist

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📈 Análisis del canal de Telegram Data science/ML/AI

El canal Data science/ML/AI (@datascience_bds) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 13 674 suscriptores, ocupando la posición 9 380 en la categoría Tecnologías y Aplicaciones y el puesto 31 607 en la región India.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 13 674 suscriptores.

Según los últimos datos del 10 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 143, y en las últimas 24 horas de 2, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 8.09%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 2.22% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 1 106 visualizaciones. En el primer día suele acumular 304 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 5.
  • Intereses temáticos: El contenido se centra en temas clave como panda, learning, row, api, ethic.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
Data science and machine learning hub Python, SQL, stats, ML, deep learning, projects, PDFs, roadmaps and AI resources. For beginners, data scientists and ML engineers 👉 https://rebrand.ly/bigdatachannels DMCA: @disclosure_bds Contact: @mldatasci...

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 11 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 Tecnologías y Aplicaciones.

13 674
Suscriptores
+224 horas
+217 días
+14330 días
Archivo de publicaciones
Practitioner's Guide to Data Science by Hui Lin and Ming Li

Data Scientist Roadmap | |-- 1. Basic Foundations | |-- a. Mathematics | | |-- i. Linear Algebra | | |-- ii. Calculus | | |-- iii. Probability | | `-- iv. Statistics | | | |-- b. Programming | | |-- i. Python | | | |-- 1. Syntax and Basic Concepts | | | |-- 2. Data Structures | | | |-- 3. Control Structures | | | |-- 4. Functions | | | `-- 5. Object-Oriented Programming | | | | | `-- ii. R (optional, based on preference) | | | |-- c. Data Manipulation | | |-- i. Numpy (Python) | | |-- ii. Pandas (Python) | | `-- iii. Dplyr (R) | | | `-- d. Data Visualization | |-- i. Matplotlib (Python) | |-- ii. Seaborn (Python) | `-- iii. ggplot2 (R) | |-- 2. Data Exploration and Preprocessing | |-- a. Exploratory Data Analysis (EDA) | |-- b. Feature Engineering | |-- c. Data Cleaning | |-- d. Handling Missing Data | `-- e. Data Scaling and Normalization | |-- 3. Machine Learning | |-- a. Supervised Learning | | |-- i. Regression | | | |-- 1. Linear Regression | | | `-- 2. Polynomial Regression | | | | | `-- ii. Classification | | |-- 1. Logistic Regression | | |-- 2. k-Nearest Neighbors | | |-- 3. Support Vector Machines | | |-- 4. Decision Trees | | `-- 5. Random Forest | | | |-- b. Unsupervised Learning | | |-- i. Clustering | | | |-- 1. K-means | | | |-- 2. DBSCAN | | | `-- 3. Hierarchical Clustering | | | | | `-- ii. Dimensionality Reduction | | |-- 1. Principal Component Analysis (PCA) | | |-- 2. t-Distributed Stochastic Neighbor Embedding (t-SNE) | | `-- 3. Linear Discriminant Analysis (LDA) | | | |-- c. Reinforcement Learning | |-- d. Model Evaluation and Validation | | |-- i. Cross-validation | | |-- ii. Hyperparameter Tuning | | `-- iii. Model Selection | | | `-- e. ML Libraries and Frameworks | |-- i. Scikit-learn (Python) | |-- ii. TensorFlow (Python) | |-- iii. Keras (Python) | `-- iv. PyTorch (Python) | |-- 4. Deep Learning | |-- a. Neural Networks | | |-- i. Perceptron | | `-- ii. Multi-Layer Perceptron | | | |-- b. Convolutional Neural Networks (CNNs) | | |-- i. Image Classification | | |-- ii. Object Detection | | `-- iii. Image Segmentation | | | |-- c. Recurrent Neural Networks (RNNs) | | |-- i. Sequence-to-Sequence Models | | |-- ii. Text Classification | | `-- iii. Sentiment Analysis | | | |-- d. Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRU) | | |-- i. Time Series Forecasting | | `-- ii. Language Modeling | | | `-- e. Generative Adversarial Networks (GANs) | |-- i. Image Synthesis | |-- ii. Style Transfer | `-- iii. Data Augmentation | |-- 5. Big Data Technologies | |-- a. Hadoop | | |-- i. HDFS | | `-- ii. MapReduce | | | |-- b. Spark | | |-- i. RDDs | | |-- ii. DataFrames | | `-- iii. MLlib | | | `-- c. NoSQL Databases | |-- i. MongoDB | |-- ii. Cassandra | |-- iii. HBase | `-- iv. Couchbase | |-- 6. Data Visualization and Reporting | |-- a. Dashboarding Tools | | |-- i. Tableau | | |-- ii. Power BI | | |-- iii. Dash (Python) | | `-- iv. Shiny (R) | | | |-- b. Storytelling with Data | `-- c. Effective Communication | |-- 7. Domain Knowledge and Soft Skills | |-- a. Industry-specific Knowledge | |-- b. Problem-solving | |-- c. Communication Skills | |-- d. Time Management | `-- e. Teamwork | `-- 8. Staying Updated and Continuous Learning |-- a. Online Courses |-- b. Books and Research Papers |-- c. Blogs and Podcasts |-- d. Conferences and Workshops `-- e. Networking and Community Engagement

6 Data Science Applications
6 Data Science Applications

Drag, Drop, Analyze: The Rise of No-Code Data Science No-code or low-code functionalities in data science have gained signifi
Drag, Drop, Analyze: The Rise of No-Code Data Science No-code or low-code functionalities in data science have gained significant traction in recent years. These solutions are well-proven and matured, and they make data science more accessible to a wider range of people. No-code or low-code data science solutions can be very rewarding. "The first and most important benefit is that they can lead to better forms of collaboration," Mierswa underscores. "Everyone can understand visual workflows or models if they are explained, however, not everyone is a computer scientist or programmer, and not everyone can understand code." So, in order to collaborate effectively, you need to understand what assets the team is collectively producing. "Data science is, at the end of the day, a team sport. You need people who understand the business problems, whether or not they can code, as coding may not be their daily business." 🔗 Read more

Data Scientist vs Data Engineer vs Data Analyst
Data Scientist vs Data Engineer vs Data Analyst

The Top 5 Machine Learning Libraries in Python A Gentle Introduction to the Top Python Libraries used in Applied Machine Learning Rating ⭐️: 4.4 out 5 Students 👨‍🎓 : 103,885 Duration ⏰ : 1hr 27min of on-demand video Created by 👨‍🏫: Mike West 🔗 Course Link #Python #Libraries #Machine_Learning #programming ➖➖➖➖➖➖➖➖➖➖➖➖➖➖ 👉Join @datascience_bds for more👈

Best YouTube Playlists for Data Science ▶️ Python 🔗 Playlist Link ▶️ SQL 🔗 Playlist Link ▶️ Data Analysis 🔗 Playlist Link
Best YouTube Playlists for Data Science ▶️ Python 🔗 Playlist Link ▶️ SQL 🔗 Playlist Link ▶️ Data Analysis 🔗 Playlist Link ▶️ Data Analyst 🔗 Playlist Link ▶️ Linear Algebra 🔗 Playlist Link ▶️ Calculus 🔗 Playlist Link ▶️ Statistics 🔗 Playlist Link ▶️ Machine Learning 🔗 Playlist Link ▶️ Deep Learning 🔗 Playlist Link ▶️ Excel Power Query 🔗 Playlist Link ▶️ Ruby 🔗 Playlist Link ▶️ Microsoft Excel 🔗 Playlist Link

Deep Learning by MAGNUS EKMAN

Beyond Jupyter Notebooks Build your own Data science platform with Docker & Python Rating ⭐️: 4.7 out 5 Students 👨‍🎓 : 5,018 Duration ⏰ : 1hr 26min of on-demand video Created by 👨‍🏫: Joshua Görner 🔗 Course Link #data_science #Jupyter #python #Docker ➖➖➖➖➖➖➖➖➖➖➖➖➖➖ 👉Join @datascience_bds for more👈

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What they are afraid of!
What they are afraid of!

Introduction to Data Science [R20DS501] DIGITAL NOTES

Few years ago I was learning about transformers and was writing down some notes for myself. Now I come accross those notes and decided to share some part of it here in case any of you find it useful. Most famous transformers 1. BERT (Bidirectional Encoder Representations from Transformers): BERT is a pre-trained transformer model developed by Google. It has achieved state-of-the-art results in various NLP tasks, such as question answering, sentiment analysis, and text classification. 2. GPT (Generative Pre-trained Transformer): GPT is a series of transformer-based models developed by OpenAI. GPT-3, the most recent version, is a highly influential model known for its impressive language generation capabilities. It has been used in various creative applications, including text completion, language translation, and dialogue generation. 3. Transformer-XL: Transformer-XL is a transformer-based model developed by researchers at Google. It addresses the limitation of standard transformers by incorporating a recurrence mechanism to capture longer-term dependencies in the input sequence. It has been successful in tasks that require modeling long-range context, such as language modeling. 4. T5 (Text-to-Text Transfer Transformer): T5, developed by Google, is a versatile transformer model capable of performing a wide range of NLP tasks. It follows a "text-to-text" framework, where different tasks are cast as text generation problems. T5 has demonstrated strong performance across various benchmarks and has been widely adopted in the NLP community. 5. RoBERTa (Robustly Optimized BERT Pretraining Approach): RoBERTa is a variant of BERT developed by Facebook AI. It addresses some limitations of the original BERT model by tweaking the training setup and introducing additional data. RoBERTa has achieved improved performance on several NLP tasks, including text classification and named entity recognition. BERT vs RoBERTa vs DistilBERT vs ALBERT BERT - created by Google, 2018, question answering, summarization, and sequence classification, has 12 Encoders stacked, baseline to others. RoBERTa - created by Facebook, 2019. literally same architecture as BERT, but improves on BERT by carefully and intelligently optimizing the training hyperparameters for BERT. It's trained on larger data, bigger vocabulary size and longer sentences. It overperforms BERT. DistilBERT - created by Hugging Face, October 2019. roughly same general architecture as BERT, but smaller, only 6 Encoders. Distilbert is 40% smaller (40% less parameters) than the original BERT-base model, is 60% faster than it, and retains 95+% of its functionality. ALBERT (A Light BERT) - published/introduced at around the same time as Distilbert. 18x less parameters than BERT, trained 1.7x faster. It doesn't have tradeoff in performance while DistilBERT has it at small extent. This comes from just the core difference in the way the Distilbert and Albert experiments are structured. Distilbert is trained in such a way to use BERT as the teacher for its training/distillation process. Albert, on the other hand, is trained from scratch like BERT. Better yet, Albert outperforms all previous models including BERT, Roberta, Distilbert, and XLNet. Note: Training speed is not so important to end-users because all those are pre-trained transformer models. Still, in some cases we will need to fine-tune models using our own datasets, which is where speed is important. Also smaller and faster models like DistilBERT and ALBERT can be advantageous when there is not enough memory or computational power.

Top 9 Analytics terms for beginners
Top 9 Analytics terms for beginners

SQL for Data Analysis: Solving real-world problems with data A simple & concise mySQL course (applicable to any SQL), perfect for data analysis, data science, business intelligence. Rating ⭐️: 4.3 out 5 Students 👨‍🎓 : 47,690 Duration ⏰ : 1hr 57min of on-demand video Created by 👨‍🏫: Max SQL 🔗 Course Link #data_analytics #data #SQL #programming ➖➖➖➖➖➖➖➖➖➖➖➖➖➖ 👉Join @datascience_bds for more👈

Data Science Enthusiast
Data Science Enthusiast

Python Data Science Handbook Python Data Science Handbook: full text in Jupyter Notebooks. This repository contains the entire Python Data Science Handbook, in the form of (free!) Jupyter notebooks. Creator: Jake Vanderplas Stars⭐️: 39k Fork: 17.1K Repo: https://github.com/jakevdp/PythonDataScienceHandbook ➖➖➖➖➖➖➖➖➖➖➖➖➖➖ Join @github_repositories_bds for more cool data science materials. *This channel belongs to @bigdataspecialist group

SQL Roadmap for Data Analyst
SQL Roadmap for Data Analyst

Introducing Data Science by DAVY CIELEN ARNO D. B. MEYSMAN MOHAMED ALI

What is Data Draft
What is Data Draft

Data science/ML/AI - Estadísticas y analítica del canal de Telegram @datascience_bds