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Data Science & Machine Learning

Data Science & Machine Learning

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The first channel on Telegram that offers exciting questions, answers, and tests in data science, artificial intelligence, machine learning, and programming languages. For promotions: @love_data

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📈 Telegram kanali Data Science & Machine Learning analitikasi

Data Science & Machine Learning (@datascienceinterviews) Ingliz til segmentidagi kanali faol ishtirokchi. Hozirda hamjamiyat 27 265 obunachidan iborat bo'lib, Taʼlim toifasida 7 190-o'rinni va Hindiston mintaqasida 15 948-o'rinni egallagan.

📊 Auditoriya ko‘rsatkichlari va dinamika

невідомо sanasidan buyon loyiha tez o‘sib, 27 265 obunachiga ega bo‘ldi.

14 Iyun, 2026 dagi oxirgi ma’lumotlarga ko‘ra kanal barqaror faollikka ega. Oxirgi 30 kunda obunachilar soni 142 ga, so‘nggi 24 soatda esa 10 ga o‘zgardi va umumiy qamrov yuqori darajada qolmoqda.

  • Tasdiqlash holati: Tasdiqlanmagan
  • Jalb etish (ER): Auditoriya o‘rtacha 0.56% darajada jalb etiladi. Nashrdan keyingi dastlabki 24 soatda kontent odatda umumiy obunachilar sonining 0.53% ini tashkil etuvchi reaksiyalarni to‘playdi.
  • Post qamrovi: Har bir post o‘rtacha 152 marta ko‘riladi; birinchi sutkada odatda 144 ta ko‘rish yig‘iladi.
  • Reaksiyalar va o‘zaro ta’sir: Auditoriya faol: har bir postga o‘rtacha 1 ta reaksiya keladi.
  • Tematik yo‘nalishlar: Kontent insidead, mining, pinix, learning, neo kabi asosiy mavzularga jamlangan.

📝 Tavsif va kontent siyosati

Muallif resursni shaxsiy fikrni ifoda etish maydoni sifatida ta’riflaydi:
The first channel on Telegram that offers exciting questions, answers, and tests in data science, artificial intelligence, machine learning, and programming languages. For promotions: @love_data

Yuqori yangilanish chastotasi (oxirgi ma’lumot 15 Iyun, 2026 da olingan) sababli kanal doimo dolzarb va katta qamrovli bo‘lib qoladi. Analitika auditoriya kontent bilan faol hamkorlik qilishini, uni Taʼlim toifasidagi muhim ta’sir nuqtasiga aylantirishini ko‘rsatadi.

27 265
Obunachilar
+1024 soatlar
+407 kunlar
+14230 kunlar
Postlar arxiv
13. Data Capstone Project.zip194.87 MB

12. Python for Data Visualization - Geographical Plotting.zip89.30 MB

11. Python for Data Visualization - Plotly and Cufflinks.zip55.88 MB

10_Python_for_Data_Visualization_Pandas_Built_in_Data_Visualization.zip57.55 MB

9. Python for Data Visualization - Seaborn.zip173.60 MB

8. Python for Data Visualization - Matplotlib.zip123.77 MB

7. Python for Data Analysis - Pandas Exercises.zip83.85 MB

6. Python for Data Analysis - Pandas.zip207.69 MB

5. Python for Data Analysis - NumPy.zip127.40 MB

4. Python Crash Course.zip140.43 MB

3. Jupyter Overview.zip95.75 MB

2. Environment Set-Up.zip126.75 MB

1. Course Introduction.zip89.23 MB

SQL for Data Science - 10 June 2023.pdf5.10 MB

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Neural Networks and Deep Learning Neural networks and deep learning are integral parts of artificial intelligence (AI) and machine learning (ML). Here's an overview: 1.Neural Networks: Neural networks are computational models inspired by the human brain's structure and functioning. They consist of interconnected nodes (neurons) organized in layers: input layer, hidden layers, and output layer. Each neuron receives input, processes it through an activation function, and passes the output to the next layer. Neurons in subsequent layers perform more complex computations based on previous layers' outputs. Neural networks learn by adjusting weights and biases associated with connections between neurons through a process called training. This is typically done using optimization techniques like gradient descent and backpropagation. 2.Deep Learning : Deep learning is a subset of ML that uses neural networks with multiple layers (hence the term "deep"), allowing them to learn hierarchical representations of data. These networks can automatically discover patterns, features, and representations in raw data, making them powerful for tasks like image recognition, natural language processing (NLP), speech recognition, and more. Deep learning architectures such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Long Short-Term Memory networks (LSTMs), and Transformer models have demonstrated exceptional performance in various domains. 3.Applications Computer Vision: Object detection, image classification, facial recognition, etc., leveraging CNNs. Natural Language Processing (NLP) Language translation, sentiment analysis, chatbots, etc., utilizing RNNs, LSTMs, and Transformers. Speech Recognition: Speech-to-text systems using deep neural networks. 4.Challenges and Advancements: Training deep neural networks often requires large amounts of data and computational resources. Techniques like transfer learning, regularization, and optimization algorithms aim to address these challenges. LAdvancements in hardware (GPUs, TPUs), algorithms (improved architectures like GANs - Generative Adversarial Networks), and techniques (attention mechanisms) have significantly contributed to the success of deep learning. 5. Frameworks and Libraries: There are various open-source libraries and frameworks (TensorFlow, PyTorch, Keras, etc.) that provide tools and APIs for building, training, and deploying neural networks and deep learning models.

Date: 14/12/2023 Company name: Datanyze Role: ML Engineer Topic: ROC, K-Means, P-Value, Supervised and semi-Supervised ML 1. Explain how a ROC curve works. Answer: The ROC curve is a graphical representation of the contrast between true positive rates and the false positive rate at various thresholds. It’s often used as a proxy for the trade-off between the sensitivity of the model (true positives) vs the fall-out or the probability it will trigger a false alarm (false positives). 2. How can you select K for K-means Clustering? There are two kinds of methods that include direct methods and statistical testing methods: • Direct methods: It contains elbow and silhouette • Statistical testing methods: It has gap statistics. The silhouette is the most frequently used while determining the optimal value of k 3. What is P-value? P-values are used to make a decision about a hypothesis test. P-value is the minimum significant level at which you can reject the null hypothesis. The lower the p-value, the more likely you reject the null hypothesis. 4. What is Semi-supervised Machine Learning? Supervised learning uses data that is completely labeled, whereas unsupervised learning uses no training data. In the case of semi-supervised learning, the training data contains a small amount of labeled data and a large amount of unlabeled data.