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Data Analytics & AI | SQL Interviews | Power BI Resources

Data Analytics & AI | SQL Interviews | Power BI Resources

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πŸ”“Explore the fascinating world of Data Analytics & Artificial Intelligence πŸ’» Best AI tools, free resources, and expert advice to land your dream tech job. Admin: @coderfun Buy ads: https://telega.io/c/Data_Visual

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πŸ“ˆ Analytical overview of Telegram channel Data Analytics & AI | SQL Interviews | Power BI Resources

Channel Data Analytics & AI | SQL Interviews | Power BI Resources (@data_visual) in the English language segment is an active participant. Currently, the community unites 27 213 subscribers, ranking 7 206 in the Education category and 15 981 in the India region.

πŸ“Š Audience metrics and dynamics

Since its creation on Π½Π΅Π²Ρ–Π΄ΠΎΠΌΠΎ, the project has demonstrated rapid growth, gathering an audience of 27 213 subscribers.

According to the latest data from 14 June, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by 255 over the last 30 days and by 26 over the last 24 hours, overall reach remains high.

  • Verification status: Not verified
  • Engagement rate (ER): The average audience engagement rate is 3.99%. Within the first 24 hours after publication, content typically collects 0.72% reactions from the total number of subscribers.
  • Post reach: On average, each post receives 0 views. Within the first day, a publication typically gains 197 views.
  • Reactions and interaction: The audience actively supports content: the average number of reactions per post is 0.
  • Thematic interests: Content is focused on key topics such as |--, sql, learning, analytic, visualization.

πŸ“ Description and content policy

The author describes the resource as a platform for expressing subjective opinions:
β€œπŸ”“Explore the fascinating world of Data Analytics & Artificial Intelligence πŸ’» Best AI tools, free resources, and expert advice to land your dream tech job. Admin: @coderfun Buy ads: https://telega.io/c/Data_Visual”

Thanks to the high frequency of updates (latest data received on 15 June, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Education category.

27 213
Subscribers
+2624 hours
+527 days
+25530 days
Posts Archive
Decagon and OpenAI deliver high-performance, fully automated customer support at scale Launched in 2023, Decagon⁠(opens in a
Decagon and OpenAI deliver high-performance, fully automated customer support at scale Launched in 2023, Decagon⁠(opens in a new window) has quickly become a key player in automating customer support for companies like Curology, BILT, Duolingo, Eventbrite, Notion, and Substack. OpenAI’s models are crucial in their ability to deliver fast, reliable responsesβ€”without human intervention. From enterprises to tech-forward startups, Decagon helps businesses globally handle millions of support conversations without sacrificing quality or speed. The company uses a combination of OpenAI’s modelsβ€”including GPT-3.5, 4, 4o, 4 Turbo, and OpenAI o1-miniβ€”to deliver agentic bots that go beyond response generation and service the entire customer lifecycle.

Artificial intelligence.pdf7.06 MB

Oil bosses have big hopes for the AI boom Data centres are fuelling demand for natural gasβ€”for now This week 180,000 people d
Oil bosses have big hopes for the AI boom Data centres are fuelling demand for natural gasβ€”for now This week 180,000 people descended on Abu Dhabi to attend ADIPEC, the global oil-and-gas industry’s biggest annual gathering. This year’s focus, perhaps unsurprisingly, was the nexus of artificial intelligence (AI) and energy. On the eve of the jamboree Sultan Al Jaber, chief executive of ADNOC, the Emirati national oil giant, convened a private meeting of big tech and big energy bosses. A survey of some 400 energy, tech and finance bigwigs released in conjunction with the event concluded that AI is set to transform the energy business by boosting efficiency and cutting greenhouse-gas emissions.

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The GPT-4 model outperformed GPT-3 and GPT-3.5 language models
The GPT-4 model outperformed GPT-3 and GPT-3.5 language models

7 best Telegram Channels to break into data analytics and data science: 1. Data Science & Machine Learning - 𝐋𝐒𝐧𝐀: (https://t.me/datasciencefun) - Subscribers: ~48k 2. Python for Data Analysts - 𝐋𝐒𝐧𝐀: (https://t.me/pythonanalyst) - Subscribers: ~34.8k 3. SQL For Data Analytics - 𝐋𝐒𝐧𝐀: (https://t.me/sqlanalyst) - Subscribers: ~58.9k 4. Power BI & Tableau - 𝐋𝐒𝐧𝐀: (t.me/PowerBI_analyst) - Subscribers: ~36.1k 5. Artificial Intelligence - 𝐋𝐒𝐧𝐀: (https://t.me/machinelearning_deeplearning) - Subscribers: ~28.7k 6. Coding Interviews - 𝐋𝐒𝐧𝐀: (https://t.me/crackingthecodinginterview) - Subscribers: 38.6k 7. Data Science Interviews - 𝐋𝐒𝐧𝐀: (https://t.me/DataScienceInterviews) - Subscribers: ~12.5k These channels are maintained by various individuals and organizations, each offering valuable resources for learning and practicing data analytics and data science.

7 best GitHub repositories to break into data analytics and data science: 1. 100-Days-Of-ML-Code - 𝐋𝐒𝐧𝐀: (https://lnkd.in/dcftdA57) - π’π­πšπ«π¬: ~42k 2. awesome-datascience - 𝐋𝐒𝐧𝐀: (https://lnkd.in/dcFYYwx9) - π’π­πšπ«π¬: ~22.7k 3. Data-Science-For-Beginners - 𝐋𝐒𝐧𝐀: (https://lnkd.in/d_zZBadF) - π’π­πšπ«π¬: ~14.5k 4. data-science-interviews - 𝐋𝐒𝐧𝐀: (https://lnkd.in/dkN4RZjH) - π’π­πšπ«π¬: ~5.8k 5. Coding and ML System Design - 𝐋𝐒𝐧𝐀: (https://lnkd.in/gXFaaaQR) - π’π­πšπ«π¬: ~3.5k 6. Machine Learning Interviews from MAANG - 𝐋𝐒𝐧𝐀: https://lnkd.in/gq_huuZD - π’π­πšπ«π¬: 8.1k 7. data-science-ipython-notebooks - 𝐋𝐒𝐧𝐀: (https://lnkd.in/dPmQuPB9) - π’π­πšπ«π¬: ~27.2k These repositories are maintained by various individuals and organizations, each offering valuable resources for learning and practicing data analytics and data science.

Characteristics of a Data whisperer
Characteristics of a Data whisperer

The 'bias machine': How Google tells you what you want to hear "We're at the mercy of Google." Undecided voters in the US who
The 'bias machine': How Google tells you what you want to hear "We're at the mercy of Google." Undecided voters in the US who turn to Google may see dramatically different views of the world – even when they're asking the exact same question. Type in "Is Kamala Harris a good Democratic candidate", and Google paints a rosy picture. Search results are constantly changing, but last week, the first link was a Pew Research Center poll showing that "Harris energises Democrats". Next is an Associated Press article titled "Majority of Democrats think Kamala Harris would make a good president", and the following links were similar. But if you've been hearing negative things about Harris, you might ask if she's a "bad" Democratic candidate instead. Fundamentally, that's an identical question, but Google's results are far more pessimistic. "It's been easy to forget how bad Kamala Harris is," said an article from Reason Magazine in the top spot. Source-Link: BBC

Forecasting vs. Predictive Analytics: The Obama Example Analytics can influence elections, not just predict them. This articl
Forecasting vs. Predictive Analytics: The Obama Example Analytics can influence elections, not just predict them. This article explores how the Obama campaign used predictive analytics to outmaneuver traditional forecasting. Forecasting vs. Predictive Analytics Nate Silver’s forecasting predicted state outcomes, while Obama’s team used predictive analytics to score individual voters, targeting those most likely to be persuaded. Impact of Predictive Analytics The Obama campaign optimized interactions, avoiding β€œdo-not-disturb” voters and improving ad spending effectiveness by 18%. Conclusion Predictive analytics enables organizations to shape outcomes through personalized insights, distinguishing it from forecasting’s broad predictions.

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Important Topics to become a data scientist [Advanced Level] πŸ‘‡πŸ‘‡ 1. Mathematics Linear Algebra Analytic Geometry Matrix Vector Calculus Optimization Regression Dimensionality Reduction Density Estimation Classification 2. Probability Introduction to Probability 1D Random Variable The function of One Random Variable Joint Probability Distribution Discrete Distribution Normal Distribution 3. Statistics Introduction to Statistics Data Description Random Samples Sampling Distribution Parameter Estimation Hypotheses Testing Regression 4. Programming Python: Python Basics List Set Tuples Dictionary Function NumPy Pandas Matplotlib/Seaborn R Programming: R Basics Vector List Data Frame Matrix Array Function dplyr ggplot2 Tidyr Shiny DataBase: SQL MongoDB Data Structures Web scraping Linux Git 5. Machine Learning How Model Works Basic Data Exploration First ML Model Model Validation Underfitting & Overfitting Random Forest Handling Missing Values Handling Categorical Variables Pipelines Cross-Validation(R) XGBoost(Python|R) Data Leakage 6. Deep Learning Artificial Neural Network Convolutional Neural Network Recurrent Neural Network TensorFlow Keras PyTorch A Single Neuron Deep Neural Network Stochastic Gradient Descent Overfitting and Underfitting Dropout Batch Normalization Binary Classification 7. Feature Engineering Baseline Model Categorical Encodings Feature Generation Feature Selection 8. Natural Language Processing Text Classification Word Vectors 9. Data Visualization Tools BI (Business Intelligence): Tableau Power BI Qlik View Qlik Sense 10. Deployment Microsoft Azure Heroku Google Cloud Platform Flask Django Join @datasciencefun to learning important data science and machine learning concepts ENJOY LEARNING πŸ‘πŸ‘

Enjoy our content? Advertise on this channel and reach a highly engaged audience! πŸ‘‰πŸ» It's easy with Telega.io. As the leadi
Enjoy our content? Advertise on this channel and reach a highly engaged audience! πŸ‘‰πŸ» It's easy with Telega.io. As the leading platform for native ads and integrations on Telegram, it provides user-friendly and efficient tools for quick and automated ad launches. ⚑️ Place your ad here in three simple steps: 1 Sign up 2 Top up the balance in a convenient way 3 Create your advertising post If your ad aligns with our content, we’ll gladly publish it. Start your promotion journey now!

Any person learning deep learning or artificial intelligence in particular, know that there are ultimately two paths that the
Any person learning deep learning or artificial intelligence in particular, know that there are ultimately two paths that they can go: 1. Computer vision 2. Natural language processing. I outlined a roadmap for computer vision I believe many beginners will find helpful. πŸ‘‡πŸ‘‡ Artificial Intelligence

Day 26: Reinforcement Learning - Concept: Learning through interaction. - Implementation: Q-learning. - Evaluation: Reward function, policy. Day 27: Bayesian Networks - Concept: Probabilistic graphical models. - Implementation: Conditional dependencies. - Evaluation: Inference, learning. Day 28: Hidden Markov Models (HMM) - Concept: Time series analysis. - Implementation: Transition probabilities. - Evaluation: Viterbi algorithm. Day 29: Feature Selection Techniques - Concept: Improving model performance. - Implementation: Filter, wrapper methods. - Evaluation: Feature importance. Day 30: Hyperparameter Optimization - Concept: Model tuning. - Implementation: Grid search, random search. - Evaluation: Cross-validation. Share this channel with your real friends: https://t.me/datasciencefun Like if you want me to continue this series πŸ˜„β€οΈ ENJOY LEARNING πŸ‘πŸ‘

Let's start with the topics we gonna cover in this 30 Days of Data Science Series, We will primarily focus on learning Data Science and Machine Learning Algorithms Day 1: Linear Regression - Concept: Predict continuous values. - Implementation: Ordinary Least Squares. - Evaluation: R-squared, RMSE. Day 2: Logistic Regression - Concept: Binary classification. - Implementation: Sigmoid function. - Evaluation: Confusion matrix, ROC-AUC. Day 3: Decision Trees - Concept: Tree-based model for classification/regression. - Implementation: Recursive splitting. - Evaluation: Accuracy, Gini impurity. Day 4: Random Forest - Concept: Ensemble of decision trees. - Implementation: Bagging. - Evaluation: Out-of-bag error, feature importance. Day 5: Gradient Boosting - Concept: Sequential ensemble method. - Implementation: Boosting. - Evaluation: Learning rate, number of estimators. Day 6: Support Vector Machines (SVM) - Concept: Classification using hyperplanes. - Implementation: Kernel trick. - Evaluation: Margin maximization, support vectors. Day 7: k-Nearest Neighbors (k-NN) - Concept: Instance-based learning. - Implementation: Distance metrics. - Evaluation: k-value tuning, distance functions. Day 8: Naive Bayes - Concept: Probabilistic classifier. - Implementation: Bayes' theorem. - Evaluation: Prior probabilities, likelihood. Day 9: k-Means Clustering - Concept: Partitioning data into k clusters. - Implementation: Centroid initialization. - Evaluation: Inertia, silhouette score. Day 10: Hierarchical Clustering - Concept: Nested clusters. - Implementation: Agglomerative method. - Evaluation: Dendrograms, linkage methods. Day 11: Principal Component Analysis (PCA) - Concept: Dimensionality reduction. - Implementation: Eigenvectors, eigenvalues. - Evaluation: Explained variance. Day 12: Association Rule Learning - Concept: Discover relationships between variables. - Implementation: Apriori algorithm. - Evaluation: Support, confidence, lift. Day 13: DBSCAN (Density-Based Spatial Clustering of Applications with Noise) - Concept: Density-based clustering. - Implementation: Epsilon, min samples. - Evaluation: Core points, noise points. Day 14: Linear Discriminant Analysis (LDA) - Concept: Linear combination for classification. - Implementation: Fisher's criterion. - Evaluation: Class separability. Day 15: XGBoost - Concept: Extreme Gradient Boosting. - Implementation: Tree boosting. - Evaluation: Regularization, parallel processing. Day 16: LightGBM - Concept: Gradient boosting framework. - Implementation: Leaf-wise growth. - Evaluation: Speed, accuracy. Day 17: CatBoost - Concept: Gradient boosting with categorical features. - Implementation: Ordered boosting. - Evaluation: Handling of categorical data. Day 18: Neural Networks - Concept: Layers of neurons for learning. - Implementation: Backpropagation. - Evaluation: Activation functions, epochs. Day 19: Convolutional Neural Networks (CNNs) - Concept: Image processing. - Implementation: Convolutions, pooling. - Evaluation: Feature maps, filters. Day 20: Recurrent Neural Networks (RNNs) - Concept: Sequential data processing. - Implementation: Hidden states. - Evaluation: Long-term dependencies. Day 21: Long Short-Term Memory (LSTM) - Concept: Improved RNN. - Implementation: Memory cells. - Evaluation: Forget gates, output gates. Day 22: Gated Recurrent Units (GRU) - Concept: Simplified LSTM. - Implementation: Update gate. - Evaluation: Performance, complexity. Day 23: Autoencoders - Concept: Data compression. - Implementation: Encoder, decoder. - Evaluation: Reconstruction error. Day 24: Generative Adversarial Networks (GANs) - Concept: Generative models. - Implementation: Generator, discriminator. - Evaluation: Adversarial loss. Day 25: Transfer Learning - Concept: Pre-trained models. - Implementation: Fine-tuning. - Evaluation: Domain adaptation.

𝐅𝐫𝐨𝐦 πƒπšπ­πš 𝐭𝐨 πƒπžπ©π₯𝐨𝐲𝐦𝐞𝐧𝐭: 𝐊𝐞𝐲 𝐒𝐀𝐒π₯π₯𝐬 π€πœπ«π¨π¬π¬ πƒπšπ­πš 𝐚𝐧𝐝 πŒπ‹ 𝐑𝐨π₯𝐞𝐬. πŸ“ πƒπšπ­πš π€π§πšπ₯𝐲𝐬𝐭 (Avg salary for a fresher: 6-8 LPA) 1. Excel 2. SQL (80% of the interview will be on expertise in SQL) 3. Python (Basic to intermediate knowledge required) 4. Data visualization tool (Most common: Tableau/PowerBI) 5. Statistics (Basic to intermediate) πŸ“ πƒπšπ­πš π’πœπ’πžπ§π­π’π¬π­ (Avg salary for a fresher: 10-15 LPA) 1. Excel, SQL, Python, Tableau/PowerBI, Statistics (All data analyst skills) 2. Mathematics (Linear algebra, Calculus) 3. Machine learning (Scikit-learn: Supervised, Unsupervised, Recommender systems, Timeseries modelling) 4. Deep learning (TensorFlow, PyTorch) 5. NLP (NLTK, spacy, gensim) πŸ“ πƒπšπ­πš π„π§π π’π§πžπžπ« (Avg salary for a fresher: 9-12 LPA) 1. Big data tools (Hadoop, Spark, Hive) 2. Python, Java or Scala 3. Data pipeline automation 4. SQL & NoSQL databases 5. ETL tools & Data warehousing (Apache Nifi, Talend, Airflow) 6. Cloud computing (AWS, Azure, GCP) πŸ“ πŒπ‹ π„π§π π’π§πžπžπ« (Avg salary for a fresher: 10-12 LPA) 1. Cloud platforms (AWS, Azure, GCP) 2. Machine learning 3. DevOps & CI/CD 4. Version control 5. Code optimization & Tuning πŸ“ πŒπ‹πŽπ©π¬ π„π§π π’π§πžπžπ« (Avg salary for a fresher: 8-10 LPA) 1. CI/CD for ML Pipelines 2. Docker, Kubernetes & Container orchestration 3. Monitoring & Logging (Prometheus, Grafana, ELK stack: Elasticsearch, Logstash, Kibana) 4. Model versioning & Governance (MLflow, DVC) 5. Infrastructure as code (IaC): Teraform, CloudFormation, Ansible 6. API development & Integration 7. Automated testing for data validation, model performance & pipeline integrity I have curated best 80+ top-notch Data Analytics Resources πŸ‘‡πŸ‘‡ https://topmate.io/analyst/861634 Hope this helps you 😊

Why Python is a Must-Have Skill? If you're diving into programming or data science, mastering Python is essential! Its versatility and simplicity make it the go-to language across industries. β—† Powerful and Versatile From web development to data analysis, Python’s broad libraries and frameworks adapt to almost any project. β—† Data-Driven Python, combined with libraries like Pandas and NumPy, allows you to analyze and manipulate datasets efficiently. β—† Automate the Boring Stuff Automate repetitive tasks, streamline workflows, and boost productivity with Python’s easy-to-use scripts. β—† AI and Machine Learning With frameworks like TensorFlow and Scikit-learn, Python is at the forefront of AI, enabling you to build predictive models and explore deep learning. β—† Readable and Beginner-Friendly Python’s simple syntax makes it easy to learn, even for beginners, without sacrificing power and functionality. β—† Community Support Backed by a massive global community, Python is constantly evolving, with new libraries and resources available at your fingertips. I have curated the best interview resources to crack Python Interviews πŸ‘‡πŸ‘‡ https://topmate.io/analyst/907371 Hope you'll like it Like this post if you need more resources like this πŸ‘β€οΈ

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