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Data science/ML/AI

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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 13 667 suscriptores, ocupando la posición 9 391 en la categoría Tecnologías y Aplicaciones y el puesto 31 743 en la región India.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 13 667 suscriptores.

Según los últimos datos del 08 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 150, y en las últimas 24 horas de 4, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 7.97%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 2.27% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 1 089 visualizaciones. En el primer día suele acumular 310 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 09 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.

13 667
Suscriptores
+424 horas
+437 días
+15030 días
Archivo de publicaciones
60 Generative AI Project Ideas
60 Generative AI Project Ideas

📚 Data Science Riddle Why is data versioning(e.g., DVC, LakeFS) essential in ML workflows?
Anonymous voting

6 Steps of Data Cleaning Every Data Analyst Should Know
6 Steps of Data Cleaning Every Data Analyst Should Know

Instead of starting every project from scratch, use this template to build AI apps with structure and speed
Instead of starting every project from scratch, use this template to build AI apps with structure and speed

📚 Data Science Riddle In A/B testing, why is random assignment of users essential?
Anonymous voting

Parallelism In Databricks ⚡ 1️⃣ DEFINITION Parallelism = running many tasks 🏃‍♂️🏃‍♀️ at the same time (instead of one by one 🐢). In Databricks (via Apache Spark), data is split into 📦 partitions, and each partition is processed simultaneously across worker nodes 💻💻💻. 2️⃣ KEY CONCEPTS 🔹 Partition = one chunk of data 📦 🔹 Task = work done on a partition 🛠️ 🔹 Stage = group of tasks that run in parallel ⚙️ 🔹 Job = complete action (made of stages + tasks) 📊 3️⃣ HOW IT WORKS ✅ Step 1: Dataset ➡️ divided into partitions 📦📦📦 ✅ Step 2: Each partition ➡️ assigned to a worker 💻 ✅ Step 3: Workers run tasks in parallel ⏩ ✅ Step 4: Results ➡️ combined into final output 🎯 4️⃣ EXAMPLES # Increase parallelism by repartitioning df = spark.read.csv("/data/huge_file.csv") df = df.repartition(200) # ⚡ 200 parallel tasks # Spark DataFrame ops run in parallel by default 🚀 result = df.groupBy("category").count() # Parallelize small Python objects 📂 rdd = spark.sparkContext.parallelize(range(1000), numSlices=50) rdd.map(lambda x: x * 2).collect() # Parallel workflows in Jobs UI ⚡ # Independent tasks = run at the same time. 5️⃣ BEST PRACTICES ⚖️ Balance partitions → not too few, not too many 📉 Avoid data skew → partitions should be even 🗃️ Cache data if reused often 💪 Scale cluster → more workers = more parallelism ==================================================== 📌 SUMMARY Parallelism in Databricks = split data 📦 → assign tasks 🛠️ → run them at the same time ⏩ → faster results 🚀

📚 Data Science Riddle You train a CNN for image classification but loss stops decreasing early. What's your next step?
Anonymous voting

Feature Engineering: The Hidden Skill That Makes or Breaks ML Models Most people chase better algorithms. Professionals chase better features. Because no matter how fancy your model is, if the data doesn’t speak the right language. it won’t learn anything meaningful. 🔍 So What Exactly Is Feature Engineering? It’s not just cleaning data. It’s translating raw, messy reality into something your model can understand. You’re basically asking:
“How can I represent the real world in numbers, without losing its meaning?”
Example: ➖ “Date of birth” → Age (time-based insight) ➖ “Text review” → Sentiment score (emotional signal) ➖ “Price” → log(price) (stabilized distribution) Every transformation teaches your model how to see the world more clearly. ⚙️ Why It Matters More Than the Model You can’t outsmart bad features. A simple linear model trained on smartly engineered data will outperform a deep neural net trained on noise. Kaggle winners know this. They spend 80% of their time creating and refining features not tuning hyperparameters. Why? Because models don’t create intelligence, They extract it from what you feed them. 🧩 The Core Idea: Add Signal, Remove Noise Feature engineering is about sculpting your data so patterns stand out. You do that by: ✔️ Transforming data (scale, encode, log). ✔️ Creating new signals (ratios, lags, interactions). ✔️ Reducing redundancy (drop correlated or useless columns). Every step should make learning easier not prettier. ⚠️ Beware of Data Leakage Here’s the silent trap: using future information when building features. For example, when predicting loan default, if you include “payment status after 90 days,” your model will look brilliant in training and fail in production. Golden rule: 👉 A feature is valid only if it’s available at prediction time. 🧠 Think Like a Domain Expert Anyone can code transformations. But great data scientists understand context. They ask: ❔What actually influences this outcome in real life? ❔How can I capture that influence as a feature? When you merge domain intuition with technical precision, feature engineering becomes your superpower. ⚡️ Final Takeaway The model is the student. The features are the teacher. And no matter how capable the student if the teacher explains things poorly, learning fails.
Feature engineering isn’t preprocessing. It’s the art of teaching your model how to understand the world.

📚 Data Science Riddle You have messy CSVs arriving daily. What's your first production step?
Anonymous voting

3 Common Questions About Data and Analytics
3 Common Questions About Data and Analytics

🚀 Databricks Tip: REPLACE vs MERGE When updating Delta tables, you’ve got two powerful options: 🔹 REPLACE TABLE … ON 📚 Like throwing away the entire library and rebuilding it. - Drops the old table & recreates it. - Schema + data = fully replaced. - ⚡ Super fast but destructive (old data gone). - ✅ Best for full refreshes or schema changes. 🔹 MERGE 📖 Like updating only the books that changed. - Works row by row. - Updates, inserts, or deletes specific records. - 🔍 Preserves unchanged data. - ✅ Best for incremental updates or CDC (Change Data Capture). ⚖️ Key Difference - REPLACE = Start fresh with a new table. - MERGE = Surgically update rows without losing the rest. 👉 Rule of thumb: Use REPLACE for full rebuilds, Use MERGE for incremental upserts. #Databricks #DeltaLake

🤖 AI that creates AI: ASI-ARCH finds 106 new SOTA architectures ASI-ARCH — experimental ASI that autonomously researches and
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🤖 AI that creates AI: ASI-ARCH finds 106 new SOTA architectures ASI-ARCH — experimental ASI that autonomously researches and designs neural nets. It hypothesizes, codes, trains & tests models. 💡 Scale: 1,773 experiments → 20,000+ GPU-hours. Stage 1 (20M params, 1B tokens): 1,350 candidates beat DeltaNet. Stage 2 (340M params): 400 models → 106 SOTA winners. Top 5 trained on 15B tokens vs Mamba2 & Gated DeltaNet. 📊 Results: PathGateFusionNet: 48.51 avg (Mamba2: 47.84, Gated DeltaNet: 47.32). BoolQ: 60.58 vs 60.12 (Gated DeltaNet). Consistent gains across tasks. 🔍 Insights: Prefers proven tools (gating, convs), refines them iteratively. Ideas come from: 51.7% literature, 38.2% self-analysis, 10.1% originality. SOTA share: self-analysis ↑ to 44.8%, literature ↓ to 48.6%. 📎 Project page | Arxiv | GitHub #AI #ML #Research #ASIARCH@datascience_bds

📚 Data Science Riddle Your object detection model misses small objects. Easiest fix?
Anonymous voting

LLM Cheatsheet
LLM Cheatsheet

📚 Data Science Riddle Why do we use Batch Normalization?
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Basic SQL Commands
Basic SQL Commands

Excel Vs SQL Vs Python
Excel Vs SQL Vs Python

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Statistical Moments (M1, M2) for Data Analysis Here are 5 curated PDFs diving into the mean (M1), variance (M2), and their applications in crafting research questions and sourcing data. A channel member requested resources on this topic and we delivered. If you have a topic you want resources on let us know, and we’ll make it happen! @datascience_bds

📚 Data Science Riddle Model Accuracy improves after dropping half the features. Why?
Anonymous voting