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Data Science & Machine Learning

Data Science & Machine Learning

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Join this channel to learn data science, artificial intelligence and machine learning with funny quizzes, interesting projects and amazing resources for free For collaborations: @love_data

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📈 تحلیل کانال تلگرام Data Science & Machine Learning

کانال Data Science & Machine Learning (@datasciencefun) در بخش زبانی انگلیسی بازیگری فعال است. در حال حاضر جامعه شامل 75 805 مشترک است و جایگاه 2 118 را در دسته آموزش و رتبه 4 300 را در منطقه الهند دارد.

📊 شاخص‌های مخاطب و پویایی

از زمان ایجاد در невідомо، پروژه رشد سریعی داشته و 75 805 مشترک جذب کرده است.

بر اساس آخرین داده‌ها در تاریخ 17 ژوئن, 2026، کانال فعالیت پایداری دارد. در ۳۰ روز گذشته تغییر اعضا برابر 903 و در ۲۴ ساعت گذشته برابر 2 بوده و همچنان دسترسی گسترده‌ای حفظ شده است.

  • وضعیت تأیید: تأیید نشده
  • نرخ تعامل (ER): میانگین تعامل مخاطب 3.39% است و در ۲۴ ساعت نخست پس از انتشار، محتوا معمولاً 1.40% واکنش نسبت به کل مشترکان کسب می‌کند.
  • دسترسی پست‌ها: هر پست به طور میانگین 2 573 بازدید دریافت می‌کند. در اولین روز معمولاً 1 064 بازدید جمع‌آوری می‌شود.
  • واکنش‌ها و تعامل: مخاطبان به‌طور فعال حمایت می‌کنند؛ میانگین واکنش به هر پست 4 است.
  • علایق موضوعی: محتوا بر موضوعات کلیدی مانند learning, accuracy, distribution, panda, dataset تمرکز دارد.

📝 توضیح و سیاست محتوایی

نویسنده این فضا را محل بیان دیدگاه‌های شخصی توصیف می‌کند:
Join this channel to learn data science, artificial intelligence and machine learning with funny quizzes, interesting projects and amazing resources for free For collaborations: @love_data

به لطف به‌روزرسانی‌های پرتکرار (آخرین داده در تاریخ 18 ژوئن, 2026)، کانال همواره به‌روز و دارای دسترسی بالاست. تحلیل‌ها نشان می‌دهد مخاطبان به‌طور فعال با محتوا تعامل دارند و آن را به نقطه اثرگذاری مهم در دسته آموزش تبدیل کرده‌اند.

75 805
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+224 ساعت
+1887 روز
+90330 روز
آرشیو پست ها
When you're getting started with machine learning, don't make the same mistake I made: Making ML my hammer and every problem a nail. Here are 3 things I had to learn the hard way. 1️⃣ It's all about the data. Early in my ML journey, I concentrated on machine learning because that was the "cool" stuff. Turns out, crappy data == crappy ML model. There's no substitute for spending hours profiling and exploring your data. Yes, I said hours. Machine learning is not for you if you don't enjoy spelunking into data. 2️⃣ Not actively talking yourself out of using machine learning. I see it all the time in my consulting work. Organizations want to use ML because it's cool. Because executives want to brag at conferences. Etc. Etc. However, successful real-world machine learning takes a lot of effort (i.e., it ain't cheap). Therefore, ML should be used when: A - There is an actual business ROI to be had. B - Human beings can't find the patterns in the data because of the size and complexity of the data/problem. C - Human beings can find the patterns in the data, but it would take too long and/or be cost-prohibitive (e.g., a large team is needed). You would be surprised how often skilled use of exploratory data analysis (EDA) gets the job done. Start there before going to ML. 3️⃣ You don't need every ML tool in your toolbox. In the early days, I wasted a lot of time switching between coding languages (e.g., Java, R, and Python) and ML algorithms. Thinking the latest technology or ML algorithm will solve your problems is tempting. In real-world business analytics, this isn't the case. A few relatively simple battle-tested techniques are all you need. Here are five that ANY professional can learn (e.g., no complex math). Regardless of role. Regardless of background: Decision trees Random forests K-means clustering DBSCAN clustering Naive Bayes Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624 Like if you need similar content 😄👍 Hope this helps you 😊

10 Things you need to become an AI/ML engineer: 1. Framing machine learning problems 2. Weak supervision and active learning 3. Processing, training, deploying, inference pipelines 4. Offline evaluation and testing in production 5. Performing error analysis. Where to work next 6. Distributed training. Data and model parallelism 7. Pruning, quantization, and knowledge distillation 8. Serving predictions. Online and batch inference 9. Monitoring models and data distribution shifts 10. Automatic retraining and evaluation of models

©How fresher can get a job as a data scientist?© 1. Education: Obtain a degree in a relevant field such as computer science, statistics, mathematics, or data science. Consider pursuing additional certifications or specialized courses in data science to enhance your skills. 2. Build a strong foundation: Develop a strong understanding of key concepts in data science such as statistics, machine learning, programming languages (such as Python or R), and data visualization. 3. Hands-on experience: Gain practical experience by working on projects, participating in hackathons, or internships. Building a portfolio of projects showcasing your data science skills can be beneficial when applying for jobs. 4. Networking: Attend industry events, conferences, and meetups to network with professionals in the field. Networking can help you learn about job opportunities and make valuable connections. 5. Apply for entry-level positions: Look for entry-level positions such as data analyst, research assistant, or junior data scientist roles to gain experience and start building your career in data science. 6. Prepare for interviews: Practice common data science interview questions, showcase your problem-solving skills, and be prepared to discuss your projects and experiences related to data science. 7. Continuous learning: Data science is a rapidly evolving field, so it's important to stay updated on the latest trends, tools, and techniques. Consider taking online courses, attending workshops, or joining professional organizations to continue learning and growing in the field. Cracking the Data Science Interview 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍 Hope this helps you 😊

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Three different learning styles in machine learning algorithms: 1. Supervised Learning Input data is called training data and has a known label or result such as spam/not-spam or a stock price at a time. A model is prepared through a training process in which it is required to make predictions and is corrected when those predictions are wrong. The training process continues until the model achieves a desired level of accuracy on the training data. Example problems are classification and regression. Example algorithms include: Logistic Regression and the Back Propagation Neural Network. 2. Unsupervised Learning Input data is not labeled and does not have a known result. A model is prepared by deducing structures present in the input data. This may be to extract general rules. It may be through a mathematical process to systematically reduce redundancy, or it may be to organize data by similarity. Example problems are clustering, dimensionality reduction and association rule learning. Example algorithms include: the Apriori algorithm and K-Means. 3. Semi-Supervised Learning Input data is a mixture of labeled and unlabelled examples. There is a desired prediction problem but the model must learn the structures to organize the data as well as make predictions. Example problems are classification and regression. Example algorithms are extensions to other flexible methods that make assumptions about how to model the unlabeled data.

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A-Z of essential data science concepts A: Algorithm - A set of rules or instructions for solving a problem or completing a task. B: Big Data - Large and complex datasets that traditional data processing applications are unable to handle efficiently. C: Classification - A type of machine learning task that involves assigning labels to instances based on their characteristics. D: Data Mining - The process of discovering patterns and extracting useful information from large datasets. E: Ensemble Learning - A machine learning technique that combines multiple models to improve predictive performance. F: Feature Engineering - The process of selecting, extracting, and transforming features from raw data to improve model performance. G: Gradient Descent - An optimization algorithm used to minimize the error of a model by adjusting its parameters iteratively. H: Hypothesis Testing - A statistical method used to make inferences about a population based on sample data. I: Imputation - The process of replacing missing values in a dataset with estimated values. J: Joint Probability - The probability of the intersection of two or more events occurring simultaneously. K: K-Means Clustering - A popular unsupervised machine learning algorithm used for clustering data points into groups. L: Logistic Regression - A statistical model used for binary classification tasks. M: Machine Learning - A subset of artificial intelligence that enables systems to learn from data and improve performance over time. N: Neural Network - A computer system inspired by the structure of the human brain, used for various machine learning tasks. O: Outlier Detection - The process of identifying observations in a dataset that significantly deviate from the rest of the data points. P: Precision and Recall - Evaluation metrics used to assess the performance of classification models. Q: Quantitative Analysis - The process of using mathematical and statistical methods to analyze and interpret data. R: Regression Analysis - A statistical technique used to model the relationship between a dependent variable and one or more independent variables. S: Support Vector Machine - A supervised machine learning algorithm used for classification and regression tasks. T: Time Series Analysis - The study of data collected over time to detect patterns, trends, and seasonal variations. U: Unsupervised Learning - Machine learning techniques used to identify patterns and relationships in data without labeled outcomes. V: Validation - The process of assessing the performance and generalization of a machine learning model using independent datasets. W: Weka - A popular open-source software tool used for data mining and machine learning tasks. X: XGBoost - An optimized implementation of gradient boosting that is widely used for classification and regression tasks. Y: Yarn - A resource manager used in Apache Hadoop for managing resources across distributed clusters. Z: Zero-Inflated Model - A statistical model used to analyze data with excess zeros, commonly found in count data. 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 😊

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Today let's understand the fascinating world of Data Science from start. ## What is Data Science? Data science is an interdisciplinary field that uses scientific methods, processes, algorithms, and systems to extract knowledge and insights from structured and unstructured data. In simpler terms, data science involves obtaining, processing, and analyzing data to gain insights for various purposes¹². ### The Data Science Lifecycle The data science lifecycle refers to the various stages a data science project typically undergoes. While each project is unique, most follow a similar structure: 1. Data Collection and Storage: - In this initial phase, data is collected from various sources such as databases, Excel files, text files, APIs, web scraping, or real-time data streams. - The type and volume of data collected depend on the specific problem being addressed. - Once collected, the data is stored in an appropriate format for further processing. 2. Data Preparation: - Often considered the most time-consuming phase, data preparation involves cleaning and transforming raw data into a suitable format for analysis. - Tasks include handling missing or inconsistent data, removing duplicates, normalization, and data type conversions. - The goal is to create a clean, high-quality dataset that can yield accurate and reliable analytical results. 3. Exploration and Visualization: - During this phase, data scientists explore the prepared data to understand its patterns, characteristics, and potential anomalies. - Techniques like statistical analysis and data visualization are used to summarize the data's main features. - Visualization methods help convey insights effectively. 4. Model Building and Machine Learning: - This phase involves selecting appropriate algorithms and building predictive models. - Machine learning techniques are applied to train models on historical data and make predictions. - Common tasks include regression, classification, clustering, and recommendation systems. 5. Model Evaluation and Deployment: - After building models, they are evaluated using metrics such as accuracy, precision, recall, and F1-score. - Once satisfied with the model's performance, it can be deployed for real-world use. - Deployment may involve integrating the model into an application or system. ### Why Data Science Matters - Business Insights: Organizations use data science to gain insights into customer behavior, market trends, and operational efficiency. This informs strategic decisions and drives business growth. - Healthcare and Medicine: Data science helps analyze patient data, predict disease outbreaks, and optimize treatment plans. It contributes to personalized medicine and drug discovery. - Finance and Risk Management: Financial institutions use data science for fraud detection, credit scoring, and risk assessment. It enhances decision-making and minimizes financial risks. - Social Sciences and Public Policy: Data science aids in understanding social phenomena, predicting election outcomes, and optimizing public services. - Technology and Innovation: Data science fuels innovations in artificial intelligence, natural language processing, and recommendation systems. 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 😊

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6 Tips for Building a Robust Machine Learning Model 1. Understand the problem thoroughly before jumping into the model. ➝ Taking time to understand the problem helps build a solution aligned with business needs and goals. 2. Focus on feature engineering to improve accuracy. ➝ Well-engineered features make a big difference in model performance. Collaborating with data engineers on clean and well-structured data can simplify feature engineering. 3. Start simple, test assumptions, and iterate. ➝ Begin with straightforward models to test ideas quickly. Iteration and experimentation will lead to stronger results. 4. Keep track of versions for reproducibility. ➝ Documenting versions of data and code helps maintain consistency, making it easier to reproduce results. 5. Regularly validate your model with new data. ➝ Models should be updated and validated as new data becomes available to avoid performance degradation. 6. Always prioritize interpretability alongside accuracy. ➝ Building interpretable models helps stakeholders understand and trust your results, making insights more actionable. I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

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If I Were to Start My Data Science Career from Scratch, Here's What I Would Do 👇 1️⃣ Master Advanced SQL Foundations: Learn database structures, tables, and relationships. Basic SQL Commands: SELECT, FROM, WHERE, ORDER BY. Aggregations: Get hands-on with SUM, COUNT, AVG, MIN, MAX, GROUP BY, and HAVING. JOINs: Understand LEFT, RIGHT, INNER, OUTER, and CARTESIAN joins. Advanced Concepts: CTEs, window functions, and query optimization. Metric Development: Build and report metrics effectively. 2️⃣ Study Statistics & A/B Testing Descriptive Statistics: Know your mean, median, mode, and standard deviation. Distributions: Familiarize yourself with normal, Bernoulli, binomial, exponential, and uniform distributions. Probability: Understand basic probability and Bayes' theorem. Intro to ML: Start with linear regression, decision trees, and K-means clustering. Experimentation Basics: T-tests, Z-tests, Type 1 & Type 2 errors. A/B Testing: Design experiments—hypothesis formation, sample size calculation, and sample biases. 3️⃣ Learn Python for Data Data Manipulation: Use pandas for data cleaning and manipulation. Data Visualization: Explore matplotlib and seaborn for creating visualizations. Hypothesis Testing: Dive into scipy for statistical testing. Basic Modeling: Practice building models with scikit-learn. 4️⃣ Develop Product Sense Product Management Basics: Manage projects and understand the product life cycle. Data-Driven Strategy: Leverage data to inform decisions and measure success. Metrics in Business: Define and evaluate metrics that matter to the business. 5️⃣ Hone Soft Skills Communication: Clearly explain data findings to technical and non-technical audiences. Collaboration: Work effectively in teams. Time Management: Prioritize and manage projects efficiently. Self-Reflection: Regularly assess and improve your skills. 6️⃣ Bonus: Basic Data Engineering Data Modeling: Understand dimensional modeling and trade-offs in normalization vs. denormalization. ETL: Set up extraction jobs, manage dependencies, clean and validate data. Pipeline Testing: Conduct unit testing and ensure data quality throughout the pipeline. I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

New developers: whenever you work on something interesting, write it down in a document which you keep updating. This will be very helpful when you need to create a resume or have to talk about your achievements in an interview. (Or for college essays.) I can guarantee you that if you don't do this, you will forget half the interesting things you've done; and for a majority of us, our brains are experts in convincing us that we haven't really done anything interesting.

Coding and Aptitude Round before interview Coding challenges are meant to test your coding skills (especially if you are applying for ML engineer role). The coding challenges can contain algorithm and data structures problems of varying difficulty. These challenges will be timed based on how complicated the questions are. These are intended to test your basic algorithmic thinking. Sometimes, a complicated data science question like making predictions based on twitter data are also given. These challenges are hosted on HackerRank, HackerEarth, CoderByte etc. In addition, you may even be asked multiple-choice questions on the fundamentals of data science and statistics. This round is meant to be a filtering round where candidates whose fundamentals are little shaky are eliminated. These rounds are typically conducted without any manual intervention, so it is important to be well prepared for this round. Sometimes a separate Aptitude test is conducted or along with the technical round an aptitude test is also conducted to assess your aptitude skills. A Data Scientist is expected to have a good aptitude as this field is continuously evolving and a Data Scientist encounters new challenges every day. If you have appeared for GMAT / GRE or CAT, this should be easy for you. Resources for Prep: For algorithms and data structures prep,Leetcode and Hackerrank are good resources. For aptitude prep, you can refer to IndiaBixand Practice Aptitude. With respect to data science challenges, practice well on GLabs and Kaggle. Brilliant is an excellent resource for tricky math and statistics questions. For practising SQL, SQL Zoo and Mode Analytics are good resources that allow you to solve the exercises in the browser itself. Things to Note: Ensure that you are calm and relaxed before you attempt to answer the challenge. Read through all the questions before you start attempting the same. Let your mind go into problem-solving mode before your fingers do! In case, you are finished with the test before time, recheck your answers and then submit. Sometimes these rounds don’t go your way, you might have had a brain fade, it was not your day etc. Don’t worry! Shake if off for there is always a next time and this is not the end of the world.

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