Machine Learning
前往频道在 Telegram
Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho
显示更多📈 Telegram 频道 Machine Learning 的分析概览
频道 Machine Learning (@machinelearning9) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 40 145 名订阅者,在 技术与应用 类别中位列第 3 364,并在 叙利亚 地区排名第 227 位。
📊 受众指标与增长动态
自 невідомо 创建以来,项目保持高速增长,吸引了 40 145 名订阅者。
根据 27 六月, 2026 的最新数据,频道保持稳定运转。过去 30 天订阅人数变化为 412,过去 24 小时变化为 5,整体触达仍然可观。
- 认证状态: 未认证
- 互动率 (ER): 平均受众互动率为 1.96%。内容发布后 24 小时内通常能获得 1.89% 的反应,占订阅者总量。
- 帖子覆盖: 每篇帖子平均可获得 785 次浏览,首日通常累积 760 次浏览。
- 互动与反馈: 受众积极参与,单帖平均反应数为 2。
- 主题关注点: 内容集中在 distance, insidead, gpu, learning, degree 等核心主题上。
📝 描述与内容策略
作者将该频道定位为表达主观观点的平台:
“Real Machine Learning — simple, practical, and built on experience.
Learn step by step with clear explanations and working code.
Admin: @HusseinSheikho || @Hussein_Sheikho”
凭借高频更新(最新数据采集于 28 六月, 2026),频道始终保持新鲜度与高覆盖。分析显示受众积极互动,使其成为 技术与应用 类别中的关键影响点。
40 145
订阅者
+524 小时
+1067 天
+41230 天
帖子存档
40 145
📌 Orchestrating a Dynamic Time-series Pipeline in Azure
🗂 Category: DATA ENGINEERING
🕒 Date: 2024-05-31 | ⏱️ Read time: 9 min read
Explore how to build, trigger, and parameterize a time-series data pipeline with ADF and Databricks,…
40 145
📌 Bringing Vision-Language Intelligence to RAG with ColPali
🗂 Category: LARGE LANGUAGE MODELS
🕒 Date: 2025-10-29 | ⏱️ Read time: 8 min read
Unlocking the value of non-textual contents in your knowledge base
40 145
Repost from Kaggle Data Hub
Is Your Crypto Transfer Secure?
Score Your Transfer analyzes wallet activity, flags risky transactions in real time, and generates downloadable compliance reports—no technical skills needed. Protect funds & stay compliant.
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40 145
📌 4 Techniques to Optimize Your LLM Prompts for Cost, Latency and Performance
🗂 Category: LARGE LANGUAGE MODELS
🕒 Date: 2025-10-29 | ⏱️ Read time: 8 min read
Learn how to greatly improve the performance of your LLM application
40 145
💡 SciPy: Scientific Computing in Python
SciPy is a fundamental library for scientific and technical computing in Python. Built on NumPy, it provides a wide range of user-friendly and efficient numerical routines for tasks like optimization, integration, linear algebra, and statistics.
import numpy as np
from scipy.optimize import minimize
# Define a function to minimize: f(x) = (x - 3)^2
def f(x):
return (x - 3)**2
# Find the minimum of the function with an initial guess
res = minimize(f, x0=0)
print(f"Minimum found at x = {res.x[0]:.4f}")
# Output:
# Minimum found at x = 3.0000
• Optimization: scipy.optimize.minimize is used to find the minimum value of a function.
• We provide the function (f) and an initial guess (x0=0).
• The result object (res) contains the solution in the .x attribute.
from scipy.integrate import quad
# Define the function to integrate: f(x) = sin(x)
def integrand(x):
return np.sin(x)
# Integrate sin(x) from 0 to pi
result, error = quad(integrand, 0, np.pi)
print(f"Integral result: {result:.4f}")
print(f"Estimated error: {error:.2e}")
# Output:
# Integral result: 2.0000
# Estimated error: 2.22e-14
• Numerical Integration: scipy.integrate.quad calculates the definite integral of a function over a given interval.
• It returns a tuple containing the integral result and an estimate of the absolute error.
from scipy.linalg import solve
# Solve the linear system Ax = b
# 3x + 2y = 12
# x - y = 1
A = np.array([[3, 2], [1, -1]])
b = np.array([12, 1])
solution = solve(A, b)
print(f"Solution (x, y): {solution}")
# Output:
# Solution (x, y): [2.8 1.8]
• Linear Algebra: scipy.linalg provides more advanced linear algebra routines than NumPy.
• solve(A, b) efficiently finds the solution vector x for a system of linear equations defined by a matrix A and a vector b.
from scipy import stats
# Create two independent samples
sample1 = np.random.normal(loc=5, scale=2, size=100)
sample2 = np.random.normal(loc=5.5, scale=2, size=100)
# Perform an independent t-test
t_stat, p_value = stats.ttest_ind(sample1, sample2)
print(f"T-statistic: {t_stat:.4f}")
print(f"P-value: {p_value:.4f}")
# Output (will vary):
# T-statistic: -1.7432
# P-value: 0.0829
• Statistics: scipy.stats is a powerful module for statistical analysis.
• ttest_ind calculates the T-test for the means of two independent samples.
• The p-value helps determine if the difference between sample means is statistically significant (a low p-value, e.g., < 0.05, suggests it is).
#SciPy #Python #DataScience #ScientificComputing #Statistics
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By: @DataScienceM ✨40 145
💡 Pandas Cheatsheet
A quick guide to essential Pandas operations for data manipulation, focusing on creating, selecting, filtering, and grouping data in a DataFrame.
1. Creating a DataFrame
The primary data structure in Pandas is the DataFrame. It's often created from a dictionary.
import pandas as pd
data = {'Name': ['Alice', 'Bob', 'Charlie'],
'Age': [25, 32, 28],
'City': ['New York', 'Paris', 'New York']}
df = pd.DataFrame(data)
print(df)
# Name Age City
# 0 Alice 25 New York
# 1 Bob 32 Paris
# 2 Charlie 28 New York
• A dictionary is defined where keys become column names and values become the data in those columns. pd.DataFrame() converts it into a tabular structure.
2. Selecting Data with .loc and .iloc
Use .loc for label-based selection and .iloc for integer-position based selection.
# Select the first row by its integer position (0)
print(df.iloc[0])
# Select the row with index label 1 and only the 'Name' column
print(df.loc[1, 'Name'])
# Output for df.iloc[0]:
# Name Alice
# Age 25
# City New York
# Name: 0, dtype: object
#
# Output for df.loc[1, 'Name']:
# Bob
• .iloc[0] gets all data from the row at index position 0.
• .loc[1, 'Name'] gets the data at the intersection of index label 1 and column label 'Name'.
3. Filtering Data
Select subsets of data based on conditions.
# Select rows where Age is greater than 27
filtered_df = df[df['Age'] > 27]
print(filtered_df)
# Name Age City
# 1 Bob 32 Paris
# 2 Charlie 28 New York
• The expression df['Age'] > 27 creates a boolean Series (True/False).
• Using this Series as an index df[...] returns only the rows where the value was True.
4. Grouping and Aggregating
The "group by" operation involves splitting data into groups, applying a function, and combining the results.
# Group by 'City' and calculate the mean age for each city
city_ages = df.groupby('City')['Age'].mean()
print(city_ages)
# City
# New York 26.5
# Paris 32.0
# Name: Age, dtype: float64
• .groupby('City') splits the DataFrame into groups based on unique city values.
• ['Age'].mean() then calculates the mean of the 'Age' column for each of these groups.
#Python #Pandas #DataAnalysis #DataScience #Programming
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By: @DataScienceM ✨40 145
Repost from Kaggle Data Hub
Is Your Crypto Transfer Secure?
Score Your Transfer analyzes wallet activity, flags risky transactions in real time, and generates downloadable compliance reports—no technical skills needed. Protect funds & stay compliant.
Sponsored By WaybienAds
40 145
📌 “Systems thinking helps me put the big picture front and center”
🗂 Category: AUTHOR SPOTLIGHTS
🕒 Date: 2025-10-30 | ⏱️ Read time: 6 min read
Shuai Guo on deep research agents, analytical AI vs LLM-based agents, and systems thinking
40 145
📌 Build LLM Agents Faster with Datapizza AI
🗂 Category: AGENTIC AI
🕒 Date: 2025-10-30 | ⏱️ Read time: 8 min read
Intro Organizations are increasingly investing in AI as these new tools are adopted in everyday…
40 145
🤖🧠 MiniMax-M2: The Open-Source Revolution Powering Coding and Agentic Intelligence
🗓️ 30 Oct 2025
📚 AI News & Trends
Artificial intelligence is evolving faster than ever, but not every innovation needs to be enormous to make an impact. MiniMax-M2, the latest release from MiniMax-AI, demonstrates that efficiency and power can coexist within a streamlined framework. MiniMax-M2 is an open-source Mixture of Experts (MoE) model designed for coding tasks, multi-agent collaboration and automation workflows. With ...
#MiniMaxM2 #OpenSource #MachineLearning #CodingAI #AgenticIntelligence #MixtureOfExperts
40 145
🤖🧠 MLOps Basics: A Complete Guide to Building, Deploying and Monitoring Machine Learning Models
🗓️ 30 Oct 2025
📚 AI News & Trends
Machine Learning models are powerful but building them is only half the story. The true challenge lies in deploying, scaling and maintaining these models in production environments – a process that requires collaboration between data scientists, developers and operations teams. This is where MLOps (Machine Learning Operations) comes in. MLOps combines the principles of DevOps ...
#MLOps #MachineLearning #DevOps #ModelDeployment #DataScience #ProductionAI
40 145
📌 Building a Rules Engine from First Principles
🗂 Category: ALGORITHMS
🕒 Date: 2025-10-30 | ⏱️ Read time: 17 min read
How recasting propositional logic as sparse algebra leads to an elegant and efficient design
40 145
🤖🧠 Reflex: Build Full-Stack Web Apps in Pure Python — Fast, Flexible and Powerful
🗓️ 29 Oct 2025
📚 AI News & Trends
Building modern web applications has traditionally required mastering multiple languages and frameworks from JavaScript for the frontend to Python, Java or Node.js for the backend. For many developers, switching between different technologies can slow down productivity and increase complexity. Reflex eliminates that problem. It is an innovative open-source full-stack web framework that allows developers to ...
#Reflex #FullStack #WebDevelopment #Python #OpenSource #WebApps
40 145
📌 Automating Data Pipelines with Python & GitHub Actions
🗂 Category: DATA ENGINEERING
🕒 Date: 2024-05-30 | ⏱️ Read time: 10 min read
A simple (and free) way to run data workflows
40 145
📌 What 10 Years at Uber, Meta and Startups Taught Me About Data Analytics
🗂 Category: CAREER ADVICE
🕒 Date: 2024-05-30 | ⏱️ Read time: 11 min read
Advice for Data Scientists and Managers
40 145
Repost from Machine Learning with Python
This channels is for Programmers, Coders, Software Engineers.
0️⃣ Python
1️⃣ Data Science
2️⃣ Machine Learning
3️⃣ Data Visualization
4️⃣ Artificial Intelligence
5️⃣ Data Analysis
6️⃣ Statistics
7️⃣ Deep Learning
8️⃣ programming Languages
✅ https://t.me/addlist/8_rRW2scgfRhOTc0
✅ https://t.me/Codeprogrammer
40 145
📌 Interpretable Features in Large Language Models
🗂 Category: LARGE LANGUAGE MODELS
🕒 Date: 2024-05-30 | ⏱️ Read time: 9 min read
And other interesting tidbits from the new Anthropic Paper
40 145
📌 PyTorch Introduction – Training a Computer Vision Algorithm
🗂 Category: ARTIFICIAL INTELLIGENCE
🕒 Date: 2024-05-30 | ⏱️ Read time: 11 min read
In this post of the PyTorch Introduction, we’ll learn how to train a computer vision…
40 145
📌 Computing Minimum Sample Size for A/B Tests in Statsmodels: How and Why
🗂 Category: DATA SCIENCE
🕒 Date: 2024-05-31 | ⏱️ Read time: 11 min read
A deep-dive into how and why Statsmodels uses numerical optimization instead of closed-form formulas
40 145
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