Binance Square

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mubashir50307
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#JaneStreet10AMDump #DataScience #Python #QuantTrading #MachineLearning Headline: 🚀 Decoding the Giants: The Jane Street 10AM Dump is Here! Caption: Are you ready to challenge the markets with the power of data? 📈💻 Jane Street, one of the most elite and mysterious quantitative trading firms in the world, has released its highly anticipated "10AM Dump" dataset. This isn't just raw data—it’s the secret language of high-frequency trading and market making. 🧠✨ For traders, data scientists, and Quant enthusiasts, this is a rare opportunity to peek under the hood of institutional-grade market dynamics. 🔥 Why does this matter? Market Insights: Uncover hidden liquidity patterns. Complex Features: Navigate hundreds of anonymous variables that drive price action. The Ultimate Challenge: Can you build a model that predicts the next move? ✅ Tools you’ll need to crack the code: Polars/Pandas: For high-performance data manipulation. LightGBM/XGBoost: For lightning-fast predictive modeling. Scikit-Learn: For robust machine learning pipelines. Whether you're looking to sharpen your Python skills or break into the world of Quant Finance, this dataset is your ultimate playground. 🛠️ The question is: Can you beat the benchmark? 🏆 Drop a "YES" in the comments if you’re diving into the data today! 👇
#JaneStreet10AMDump
#DataScience #Python #QuantTrading
#MachineLearning

Headline: 🚀 Decoding the Giants: The Jane Street 10AM Dump is Here!
Caption:

Are you ready to challenge the markets with the power of data? 📈💻

Jane Street, one of the most elite and mysterious quantitative trading firms in the world, has released its highly anticipated "10AM Dump" dataset. This isn't just raw data—it’s the secret language of high-frequency trading and market making. 🧠✨

For traders, data scientists, and Quant enthusiasts, this is a rare opportunity to peek under the hood of institutional-grade market dynamics.

🔥 Why does this matter?

Market Insights: Uncover hidden liquidity patterns.

Complex Features: Navigate hundreds of anonymous variables that drive price action.

The Ultimate Challenge: Can you build a model that predicts the next move?

✅ Tools you’ll need to crack the code:

Polars/Pandas: For high-performance data manipulation.

LightGBM/XGBoost: For lightning-fast predictive modeling.

Scikit-Learn: For robust machine learning pipelines.

Whether you're looking to sharpen your Python skills or break into the world of Quant Finance, this dataset is your ultimate playground. 🛠️

The question is: Can you beat the benchmark? 🏆

Drop a "YES" in the comments if you’re diving into the data today! 👇
Просто смотри в одну точку на середине видео!🎧Если вы сейчас тоже «залипли» и провалились в это видео вместе со мной — ставьте лайк! ✨🤍 Иногда полезно отвлечься от бесконечных графиков и цифр, чтобы не замылился глаз. Моя личная перезагрузка случилась прямо во время работы: пока я писала код на Python, я буквально провалилась в монитор. 🧘‍♀️ Строки в IDLE вдруг превратились в бесконечный коридор. Это состояние цифрового «зазеркалья» меня так поразило, что я просто обязана была его запечатлеть. 🌀🐍 #Binanse #python #programming #BinanceSquareTalks #биржа
Просто смотри в одну точку на середине видео!🎧Если вы сейчас тоже «залипли» и провалились в это видео вместе со мной — ставьте лайк! ✨🤍
Иногда полезно отвлечься от бесконечных графиков и цифр, чтобы не замылился глаз. Моя личная перезагрузка случилась прямо во время работы: пока я писала код на Python, я буквально провалилась в монитор. 🧘‍♀️
Строки в IDLE вдруг превратились в бесконечный коридор. Это состояние цифрового «зазеркалья» меня так поразило, что я просто обязана была его запечатлеть. 🌀🐍
#Binanse #python #programming #BinanceSquareTalks #биржа
Stop Chasing Freelance Gigs: The Developer’s Guide to the #WriteToEarnUpgradeHunting for online earning opportunities can often feel like a dead end. You trade hours of your time, writing code, scraping data, or building automated workflows, for a flat, one-time payout from a freelance client. It is a broken model that doesn't scale. But the creator economy in Web3 is shifting. Binance Square just rolled out its #WriteToEarnUpgrade, transforming the platform from a simple social feed into a built-in monetization engine. If you understand basic automation, data analysis, or AI, this is the ultimate playbook to stop hunting for clients and start building a passive income loop. Here is how it works, in plain English. 💰 What is the Write-To-Earn Upgrade? Traditional social media platforms pay you fractions of a penny for "views" or ad impressions. Binance Square’s new model pays you for action. When you publish a post on Binance Square, you can attach an interactive price widget or a "cashtag" (like $BTC or $SOL ). If a reader finds your post valuable, clicks that widget, and makes a trade, you automatically earn up to a 50% commission on their trading fees. You are no longer just a content creator; you are getting a direct cut of the market volume your insights generate. The payouts are settled weekly directly into your Funding Account in crypto. 🛠️ The Builder’s Playbook: Automating Your Income Most people will fail at this because they will just post random opinions. To actually generate value (and revenue), you need an edge. As builders, our edge is data and automation. Instead of writing another Python web scraper for a $50 freelance gig, you can build a system that feeds you daily, high-quality content to post. Here is the exact 3-step pipeline: 1. Automate the Data Gathering Stop manually reading charts. Use tools like n8n or a simple Python script to automatically pull data that regular traders miss. Example: Set up a scraper to monitor GitHub. When a major crypto project suddenly pushes hundreds of new code updates, that is a massive signal that an upgrade is coming. 2. Synthesize with AI Raw data is boring. Feed that scraped data into a Large Language Model (LLM) and prompt it to summarize the findings into a clean, easy-to-read market update. Example output: "Project X developers have been working overtime, pushing 300 code commits this week. History shows token price often reacts right before a major mainnet launch." 3. Publish & Connect the Widget Take that AI-assisted insight, format it nicely, and post it to Binance Square. The most crucial step is attaching the specific token's trading widget right below your text. Why This is the Ultimate 2026 Strategy By treating your content like an engineering project, you remove the emotion and scale your output. You are providing retail investors with hard, verifiable data that they do not have the technical skills to find themselves. When you provide actual value, readers trust your insights. When they trade based on those insights through your widgets, your automated data pipeline converts directly into yield. The days of begging for freelance contracts are over. Build the pipeline, share the alpha, and let the decentralized ecosystem pay you what your data is actually worth. 👇 Are you planning to use automation or AI to help generate your crypto research this year, or are you still doing it all manually? Let’s discuss in the comments! #WriteToEarnUpgrade #python #Automation #CryptoIncome #BinanceSquare

Stop Chasing Freelance Gigs: The Developer’s Guide to the #WriteToEarnUpgrade

Hunting for online earning opportunities can often feel like a dead end. You trade hours of your time, writing code, scraping data, or building automated workflows, for a flat, one-time payout from a freelance client. It is a broken model that doesn't scale.
But the creator economy in Web3 is shifting. Binance Square just rolled out its #WriteToEarnUpgrade, transforming the platform from a simple social feed into a built-in monetization engine.
If you understand basic automation, data analysis, or AI, this is the ultimate playbook to stop hunting for clients and start building a passive income loop. Here is how it works, in plain English.
💰 What is the Write-To-Earn Upgrade?
Traditional social media platforms pay you fractions of a penny for "views" or ad impressions. Binance Square’s new model pays you for action.
When you publish a post on Binance Square, you can attach an interactive price widget or a "cashtag" (like $BTC or $SOL ). If a reader finds your post valuable, clicks that widget, and makes a trade, you automatically earn up to a 50% commission on their trading fees. You are no longer just a content creator; you are getting a direct cut of the market volume your insights generate. The payouts are settled weekly directly into your Funding Account in crypto.
🛠️ The Builder’s Playbook: Automating Your Income
Most people will fail at this because they will just post random opinions. To actually generate value (and revenue), you need an edge. As builders, our edge is data and automation.
Instead of writing another Python web scraper for a $50 freelance gig, you can build a system that feeds you daily, high-quality content to post. Here is the exact 3-step pipeline:
1. Automate the Data Gathering
Stop manually reading charts. Use tools like n8n or a simple Python script to automatically pull data that regular traders miss.
Example: Set up a scraper to monitor GitHub. When a major crypto project suddenly pushes hundreds of new code updates, that is a massive signal that an upgrade is coming.
2. Synthesize with AI
Raw data is boring. Feed that scraped data into a Large Language Model (LLM) and prompt it to summarize the findings into a clean, easy-to-read market update.
Example output: "Project X developers have been working overtime, pushing 300 code commits this week. History shows token price often reacts right before a major mainnet launch."
3. Publish & Connect the Widget
Take that AI-assisted insight, format it nicely, and post it to Binance Square. The most crucial step is attaching the specific token's trading widget right below your text.
Why This is the Ultimate 2026 Strategy
By treating your content like an engineering project, you remove the emotion and scale your output. You are providing retail investors with hard, verifiable data that they do not have the technical skills to find themselves.
When you provide actual value, readers trust your insights. When they trade based on those insights through your widgets, your automated data pipeline converts directly into yield.
The days of begging for freelance contracts are over. Build the pipeline, share the alpha, and let the decentralized ecosystem pay you what your data is actually worth.

👇 Are you planning to use automation or AI to help generate your crypto research this year, or are you still doing it all manually? Let’s discuss in the comments!

#WriteToEarnUpgrade #python #Automation #CryptoIncome #BinanceSquare
Умные инструменты для фьючерсов 📈💻 Трейдинг на Binance становится еще интереснее, если добавить немного автоматизации. В видео запущен компактный монитор на Python, который помогает визуально соотносить движение графика с уровнями ликвидaции. Это наглядное пособие, как меняется запас прочности (Gap %) при выборе разных плеч. Когда под рукой есть такой расчет в реальном времени, торговать на фьючерсах гораздо спокойнее и осознаннее.🚀 $BTC #BinanceFutures #TradingTools #cryptoeducation #python #SmartTrading
Умные инструменты для фьючерсов 📈💻
Трейдинг на Binance становится еще интереснее, если добавить немного автоматизации. В видео запущен компактный монитор на Python, который помогает визуально соотносить движение графика с уровнями ликвидaции.
Это наглядное пособие, как меняется запас прочности (Gap %) при выборе разных плеч. Когда под рукой есть такой расчет в реальном времени, торговать на фьючерсах гораздо спокойнее и осознаннее.🚀
$BTC

#BinanceFutures #TradingTools #cryptoeducation #python #SmartTrading
 Не надо ставить жильё на кон 🏠📉 Рынок не любит азартных строителей. Лучше заходить в крипту на свободные деньги, чтобы не пришлось потом объяснять близким, почему вместо кухни у вас теперь "перспективный альткоин". Берегите свои метры и не путайте инвестиции с ва-банком! #binan #Binance #python #crypto #Фьючерсы $BTC
 Не надо ставить жильё на кон 🏠📉 Рынок не любит азартных строителей. Лучше заходить в крипту на свободные деньги, чтобы не пришлось потом объяснять близким, почему вместо кухни у вас теперь "перспективный альткоин".
Берегите свои метры и не путайте инвестиции с ва-банком! #binan #Binance #python #crypto #Фьючерсы $BTC
Слышите писк? Это заходят большие деньги 💰🎧 На видео мой сканер на Python мониторит рынок в реальном времени. В окне Run бегут его отчеты. Главное здесь — показатель VOL (Объем). Он сравнивает текущую минуту с предыдущей: 🔹 100% — обычная активность. 🔹 823% (как по BNB) — всплеск объема в 8 раз за минуту! 🚀 Программа на Python пищит, как только видит такой скачок. Это помогает замечать движение капитала до того, как цена на графике улетит. Интересны ли такие видео для вас? #Binance #python #crypto2026 #video #Бинанс #биткоин
Слышите писк? Это заходят большие деньги 💰🎧
На видео мой сканер на Python мониторит рынок в реальном времени. В окне Run бегут его отчеты.
Главное здесь — показатель VOL (Объем). Он сравнивает текущую минуту с предыдущей:
🔹 100% — обычная активность.
🔹 823% (как по BNB) — всплеск объема в 8 раз за минуту! 🚀
Программа на Python пищит, как только видит такой скачок. Это помогает замечать движение капитала до того, как цена на графике улетит. Интересны ли такие видео для вас?
#Binance #python #crypto2026 #video #Бинанс #биткоин
Пишу код — создаю ритм 🎹⚡ Написала на Python скрипт, который «слышит» рынок. Как только $BTC идет вверх — мой трек взрывается басом! 📈 На видео: живой коннект кода и волатильности. Для меня крипта — это искусство и чистая энергия. 💻🎧 Как вам такой саунд-дизайн? 👇 #python #Cryptoart #BinanceSquare #BTC #sounddesign #Бинанс
Пишу код — создаю ритм 🎹⚡
Написала на Python скрипт, который «слышит» рынок. Как только $BTC идет вверх — мой трек взрывается басом! 📈
На видео: живой коннект кода и волатильности. Для меня крипта — это искусство и чистая энергия. 💻🎧
Как вам такой саунд-дизайн? 👇
#python #Cryptoart #BinanceSquare #BTC #sounddesign #Бинанс
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交易大作战:如何在 Binance 上挂单买 指定symbol?#python #美国加征关税 #BNBChain爆发 #加密市场回调 精明交易者从不裸奔进场!无论是限价单还是止损单,都得一步步精确执行,否则市场一波震荡,账户余额直接消失💨 🎯 目标: • 在 Binance 上用 CCXT 挂一个 BTC/USDT 限价单 • 目标买入价: $80000 • 止损单(可选):触发价 $75,000 🔽 代码如下 🔽 import ccxt from pprint import pprint # 初始化 Binance 交易所对象 exchange = ccxt.binance({ 'apiKey': 'KEY', # API Key 'secret': 'API_SECRET', # API Secret 'options': { 'defaultType': 'spot' # 交易类型:'spot' = 现货, 'future' = 合约 }}) # 交易参数 symbol = 'BTC/USDT' # 交易对 order_type = 'limit' # 限价单 side = 'buy' # 买入 amount = 0.003 # 购买 BTC 数量 order_price = 80000 # 限价单价格 # 止损单参数(可选) stop_params = { 'stopPrice': 75000, # 触发止损的价格 'type': 'STOP_LOSS_LIMIT', # 止损类型 'price': 74500, # 真实下单价格(避免滑点) 'timeInForce': 'GTC' # 订单有效期:GTC = 一直有效,直到成交 } try: # 下限价买单 limit_order = exchange.create_order(symbol, order_type, side, amount, order_price) pprint(limit_order) # 打印订单详情 # (可选)挂止损单,保护资金安全 # stop_order = exchange.create_order(symbol, 'STOP_LOSS_LIMIT', side, amount, stop_params['price'], stop_params) # pprint(stop_order) except Exception as err: print("❌ 交易失败:", err) # 处理异常 🔥 代码拆解 💡 1. 连接 Binance • 这段代码使用 ccxt.binance() 连接到 Binance,并指定 API Key • defaultType: 'spot' 代表在做现货交易,不是合约,当然也可以选合约! 💡 2. 挂 $80000 限价买单 • exchange.create_order(symbol, order_type, side, amount, order_price) • 这意味着只有 BTC 价格低于 80000 USDT,这个订单才会成交。 💡 3. 可选:止损单 • stopPrice: 75000  代表 BTC到 75,000 时触发止损 • price: 74500  代表 真实的卖出价,防止市场瞬间波动导致损失扩大。 📌 交易小Tips ✅ 永远设止损,市场是无情的,设置止损保护本金! ✅ 限价单比市价单更安全,不怕突然的价格剧烈波动。 ✅ 学会 CCXT API,自动化交易才是高手的路! 📢 关注我,持续分享交易技术! 🏆BOOMCOO0

交易大作战:如何在 Binance 上挂单买 指定symbol?

#python #美国加征关税 #BNBChain爆发 #加密市场回调
精明交易者从不裸奔进场!无论是限价单还是止损单,都得一步步精确执行,否则市场一波震荡,账户余额直接消失💨
🎯 目标:
• 在 Binance 上用 CCXT 挂一个 BTC/USDT 限价单
• 目标买入价: $80000
• 止损单(可选):触发价 $75,000
🔽 代码如下 🔽
import ccxt
from pprint import pprint
# 初始化 Binance 交易所对象
exchange = ccxt.binance({
'apiKey': 'KEY', # API Key
'secret': 'API_SECRET', # API Secret
'options': {
'defaultType': 'spot' # 交易类型:'spot' = 现货, 'future' = 合约
}})
# 交易参数
symbol = 'BTC/USDT' # 交易对
order_type = 'limit' # 限价单
side = 'buy' # 买入
amount = 0.003 # 购买 BTC 数量
order_price = 80000 # 限价单价格
# 止损单参数(可选)
stop_params = {
'stopPrice': 75000, # 触发止损的价格
'type': 'STOP_LOSS_LIMIT', # 止损类型
'price': 74500, # 真实下单价格(避免滑点)
'timeInForce': 'GTC' # 订单有效期:GTC = 一直有效,直到成交
}
try:
# 下限价买单
limit_order = exchange.create_order(symbol, order_type, side, amount, order_price)
pprint(limit_order) # 打印订单详情
# (可选)挂止损单,保护资金安全
# stop_order = exchange.create_order(symbol, 'STOP_LOSS_LIMIT', side, amount, stop_params['price'], stop_params)
# pprint(stop_order)
except Exception as err:
print("❌ 交易失败:", err) # 处理异常

🔥 代码拆解
💡 1. 连接 Binance
• 这段代码使用 ccxt.binance() 连接到 Binance,并指定 API Key
• defaultType: 'spot' 代表在做现货交易,不是合约,当然也可以选合约!
💡 2. 挂 $80000 限价买单
• exchange.create_order(symbol, order_type, side, amount, order_price)
• 这意味着只有 BTC 价格低于 80000 USDT,这个订单才会成交。
💡 3. 可选:止损单
• stopPrice: 75000  代表 BTC到 75,000 时触发止损
• price: 74500  代表 真实的卖出价,防止市场瞬间波动导致损失扩大。
📌 交易小Tips
✅ 永远设止损,市场是无情的,设置止损保护本金!
✅ 限价单比市价单更安全,不怕突然的价格剧烈波动。
✅ 学会 CCXT API,自动化交易才是高手的路!

📢 关注我,持续分享交易技术! 🏆BOOMCOO0
أكمِل جميع المهام للحصول على حصّةٍ من 617,330 PYTH من مُكافآت الرموز المميزة. وسيحصل أفضل 100 صانع مُحتوى على لائحة صدارة* مشروع Pyth خلال 30 يوم على حصّةٍ تبلغ 70% من مُجمّع المُكافآت، وسيحصل جميع المُشاركين المؤهلين على حصّةٍ تبلغ 30% من مُجمّع المُكافآت. *للتأهّل للائحة صدارة المشروع، يجب أنّ تُكمل المهام 1 و 3 بالإضافة إلى المهمّة 5 أو 6 أو 7. للتأهل لمُجمّع المُكافآت، يجب أن تُكمل مهمّة المُتابعة الإضافية على X (المهمّة 2). ملاحظة: المهمّتين 2 و 4 لا تُساهمان في ترتيبك. الفترة: 2025- $PYTH #PythNetwork #python #PYTHonBinance
أكمِل جميع المهام للحصول على حصّةٍ من 617,330 PYTH من مُكافآت الرموز المميزة. وسيحصل أفضل 100 صانع مُحتوى على لائحة صدارة* مشروع Pyth خلال 30 يوم على حصّةٍ تبلغ 70% من مُجمّع المُكافآت، وسيحصل جميع المُشاركين المؤهلين على حصّةٍ تبلغ 30% من مُجمّع المُكافآت. *للتأهّل للائحة صدارة المشروع، يجب أنّ تُكمل المهام 1 و 3 بالإضافة إلى المهمّة 5 أو 6 أو 7. للتأهل لمُجمّع المُكافآت، يجب أن تُكمل مهمّة المُتابعة الإضافية على X (المهمّة 2). ملاحظة: المهمّتين 2 و 4 لا تُساهمان في ترتيبك.

الفترة: 2025-

$PYTH
#PythNetwork
#python #PYTHonBinance
In crypto it takes days to earn 100 usd and a second to lose 1000usd. I started in April with 3000k and today I have 60usd. I did my research, did copy trading, spot, futures you name it. At the end, I want to say, crypto is basically if you win I lose if you lose I win. There is nothing moral about trading crypto. It's basically us stealing money from each other. I'm glad I didn't take someone's money to enjoy being rich from other's suffering. May my 3000k be in the hands of someone who really needed it Goodbye sick hobby, goodbye sugar coated ugly intentions $BCH #btc #sol #python #crypto
In crypto it takes days to earn 100 usd and a second to lose 1000usd. I started in April with 3000k and today I have 60usd. I did my research, did copy trading, spot, futures you name it.
At the end, I want to say, crypto is basically if you win I lose if you lose I win. There is nothing moral about trading crypto. It's basically us stealing money from each other.

I'm glad I didn't take someone's money to enjoy being rich from other's suffering. May my 3000k be in the hands of someone who really needed it

Goodbye sick hobby, goodbye sugar coated ugly intentions
$BCH #btc #sol #python #crypto
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Бичи
$PYTHIA – The Silent Killer Gem! 🐍💎 Everyone is chasing the hype, but the real millionaire chance is hidden in $PYTH ⚡ 🐍 Fast-growing community 🐍 Solid fundamentals + innovative ecosystem 🐍 Ready to coil up & STRIKE towards new ATHs 📈💥 👉 Early buyers = future millionaires. Don’t blink, don’t wait. #PYTHON #CryptoGems #MillionaireChance 🚀🌕 click here $PYTH to buy PYTH 0.1591 +1.01% #MarketPullback #RedSeptember
$PYTHIA – The Silent Killer Gem! 🐍💎
Everyone is chasing the hype, but the real millionaire chance is hidden in $PYTH ⚡
🐍 Fast-growing community
🐍 Solid fundamentals + innovative ecosystem
🐍 Ready to coil up & STRIKE towards new ATHs 📈💥
👉 Early buyers = future millionaires. Don’t blink, don’t wait.
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PYTH
0.1591
+1.01%
#MarketPullback #RedSeptember
D. E. A. L.#DEAL #russia #USA European Parliament Office in Ireland #EUROPE #ukraine #economics #CRYPTO #CAPITAL #WAR As of December 2025, Russia and China have a strong economic partnership, with bilateral trade exceeding $200 #billion. China is Russia's top trading partner, providing an economic lifeline amid Western sanctions—Russia exports discounted energy (oil/gas make up ~75% of its sales to China), while importing goods and tech. However, trade dipped ~10% from 2024 peaks due to frictions like Russian import curbs on Chinese cars to protect local industries. While Russia is increasingly reliant, it's a mutual strategic tie, not full subordination. "Appendage" may overstate it, but dependency is evident. 23:55 2025 Нижче — приклад Python-коду, згенерованого на основі наданого тобою аналізу, який: структурує ключові економічні твердження (торгівля РФ–КНР), моделює залежність Росії від Китаю, показує сценарний аналіз (що буде при падінні торгівлі), будує просту візуалізацію. Код аналітичний / ілюстративний, не прив’язаний до live-даних (бо ти вже дав узагальнений аналіз). 🔹 1. Структура даних + базові метрики залежності Копіювати код #python #DeAl import pandas as pd # Базові оцінки на грудень 2025 (з аналізу) data = { "year": [2023, 2024, 2025], "bilateral_trade_usd_billion": [180, 225, 203], # >200B з падінням ~10% "russia_energy_export_share_to_china": [0.68, 0.72, 0.75], "china_share_of_russia_total_trade": [0.32, 0.36, 0.39], "trade_growth_rate": [0.12, 0.25, -0.10] } df = pd.DataFrame(data) # Індекс залежності РФ від КНР # (частка торгівлі * частка енергоресурсів) df["dependency_index"] = ( df["china_share_of_russia_total_trade"] * df["russia_energy_export_share_to_china"] ) print(df) 🔹 2. Інтерпретація залежності (логічна модель) Копіювати код Python def interpret_dependency(index): if index < 0.15: return "Low dependency" elif index < 0.25: return "Moderate dependency" else: return "High dependency" df["dependency_level"] = df["dependency_index"].apply(interpret_dependency) print(df[["year", "dependency_index", "dependency_level"]]) 🔹 3. Сценарний аналіз: що буде при подальших санкціях Копіювати код Python def trade_scenario(current_trade, shock_percent): """ shock_percent: негативний % (наприклад -0.2 = -20%) """ return round(current_trade * (1 + shock_percent), 2) scenarios = { "baseline": 0.0, "sanctions_pressure": -0.15, "china_import_restrictions": -0.25, } current_trade = df.loc[df["year"] == 2025, "bilateral_trade_usd_billion"].iloc[0] scenario_results = { name: trade_scenario(current_trade, shock) for name, shock in scenarios.items() } print("Scenario outcomes (USD billion):") for k, v in scenario_results.items(): print(f"{k}: {v}") 🔹 4. Візуалізація тренду + залежності Копіювати код Python import matplotlib.pyplot as plt plt.figure() plt.plot(df["year"], df["bilateral_trade_usd_billion"], marker='o') plt.title("Russia–China Trade Volume (USD Billion)") plt.xlabel("Year") plt.ylabel("Trade Volume") plt.grid(True) plt.show() plt.figure() plt.plot(df["year"], df["dependency_index"], marker='o') plt.title("Russia Dependency Index on China") plt.xlabel("Year") plt.ylabel("Dependency Index") plt.grid(True) plt.show() 🔹 5. Аналітичний висновок (машинна логіка) Копіювати код Python latest = df.iloc[-1] if latest["dependency_index"] > 0.25 and latest["trade_growth_rate"] < 0: conclusion = ( "Russia is structurally dependent on China, " "but the relationship shows economic friction " "and asymmetry rather than full subordination." ) else: conclusion = "Economic partnership remains balanced." print("Conclusion:") print(conclusion) 📌 Що цей код відображає концептуально ✔️ Не “appendage”, але асиметрична залежність ✔️ Китай = економічний «lifeline» під санкціями ✔️ Падіння торгівлі ≠ кінець партнерства ✔️ Енергетична монозалежність — ключовий ризик РФ Якщо хочеш: 🔹 версію для Jupyter Notebook 🔹 додати CRYPTO / CAPITAL FLOWS 🔹 перекласти у quantitative risk model 🔹 оформити як EU policy brief / think-tank code — скажи, в якому форматі 👍#icrypto - index 6-8

D. E. A. L.

#DEAL #russia #USA European Parliament Office in Ireland #EUROPE #ukraine #economics #CRYPTO #CAPITAL #WAR As of December 2025, Russia and China have a strong economic partnership, with bilateral trade exceeding $200 #billion. China is Russia's top trading partner, providing an economic lifeline amid Western sanctions—Russia exports discounted energy (oil/gas make up ~75% of its sales to China), while importing goods and tech. However, trade dipped ~10% from 2024 peaks due to frictions like Russian import curbs on Chinese cars to protect local industries. While Russia is increasingly reliant, it's a mutual strategic tie, not full subordination. "Appendage" may overstate it, but dependency is evident.
23:55 2025 Нижче — приклад Python-коду, згенерованого на основі наданого тобою аналізу, який:
структурує ключові економічні твердження (торгівля РФ–КНР),
моделює залежність Росії від Китаю,
показує сценарний аналіз (що буде при падінні торгівлі),
будує просту візуалізацію.
Код аналітичний / ілюстративний, не прив’язаний до live-даних (бо ти вже дав узагальнений аналіз).
🔹 1. Структура даних + базові метрики залежності
Копіювати код
#python #DeAl
import pandas as pd

# Базові оцінки на грудень 2025 (з аналізу)
data = {
"year": [2023, 2024, 2025],
"bilateral_trade_usd_billion": [180, 225, 203], # >200B з падінням ~10%
"russia_energy_export_share_to_china": [0.68, 0.72, 0.75],
"china_share_of_russia_total_trade": [0.32, 0.36, 0.39],
"trade_growth_rate": [0.12, 0.25, -0.10]
}

df = pd.DataFrame(data)

# Індекс залежності РФ від КНР
# (частка торгівлі * частка енергоресурсів)
df["dependency_index"] = (
df["china_share_of_russia_total_trade"] *
df["russia_energy_export_share_to_china"]
)

print(df)
🔹 2. Інтерпретація залежності (логічна модель)
Копіювати код
Python
def interpret_dependency(index):
if index < 0.15:
return "Low dependency"
elif index < 0.25:
return "Moderate dependency"
else:
return "High dependency"

df["dependency_level"] = df["dependency_index"].apply(interpret_dependency)

print(df[["year", "dependency_index", "dependency_level"]])
🔹 3. Сценарний аналіз: що буде при подальших санкціях
Копіювати код
Python
def trade_scenario(current_trade, shock_percent):
"""
shock_percent: негативний % (наприклад -0.2 = -20%)
"""
return round(current_trade * (1 + shock_percent), 2)

scenarios = {
"baseline": 0.0,
"sanctions_pressure": -0.15,
"china_import_restrictions": -0.25,
}

current_trade = df.loc[df["year"] == 2025, "bilateral_trade_usd_billion"].iloc[0]

scenario_results = {
name: trade_scenario(current_trade, shock)
for name, shock in scenarios.items()
}

print("Scenario outcomes (USD billion):")
for k, v in scenario_results.items():
print(f"{k}: {v}")
🔹 4. Візуалізація тренду + залежності
Копіювати код
Python
import matplotlib.pyplot as plt

plt.figure()
plt.plot(df["year"], df["bilateral_trade_usd_billion"], marker='o')
plt.title("Russia–China Trade Volume (USD Billion)")
plt.xlabel("Year")
plt.ylabel("Trade Volume")
plt.grid(True)
plt.show()

plt.figure()
plt.plot(df["year"], df["dependency_index"], marker='o')
plt.title("Russia Dependency Index on China")
plt.xlabel("Year")
plt.ylabel("Dependency Index")
plt.grid(True)
plt.show()
🔹 5. Аналітичний висновок (машинна логіка)
Копіювати код
Python
latest = df.iloc[-1]

if latest["dependency_index"] > 0.25 and latest["trade_growth_rate"] < 0:
conclusion = (
"Russia is structurally dependent on China, "
"but the relationship shows economic friction "
"and asymmetry rather than full subordination."
)
else:
conclusion = "Economic partnership remains balanced."

print("Conclusion:")
print(conclusion)
📌 Що цей код відображає концептуально
✔️ Не “appendage”, але асиметрична залежність
✔️ Китай = економічний «lifeline» під санкціями
✔️ Падіння торгівлі ≠ кінець партнерства
✔️ Енергетична монозалежність — ключовий ризик РФ
Якщо хочеш:
🔹 версію для Jupyter Notebook
🔹 додати CRYPTO / CAPITAL FLOWS
🔹 перекласти у quantitative risk model
🔹 оформити як EU policy brief / think-tank code
— скажи, в якому форматі 👍#icrypto - index 6-8
O "Tranco" do Iene e o Bezerro de Ouro do Bitcoin 🇯🇵📈Enquanto aqui em Jaú a gente ajusta o código para o domingo, o Japão resolveu sacudir o mercado global. A notícia que acaba de sair na Binance News é um alerta de engenharia financeira pura: os títulos do governo japonês (JGBs) estão sob estresse e isso está 'desalavancando' o mundo. ​O que isso significa na prática? Quando a volatilidade do Iene sobe, o investidor que está pendurado em alavancagem no Bitcoin é o primeiro a cair. É o famoso 'bezerro de ouro' sendo testado pelo fogo da realidade. ​Por aqui, o trabalho no Node.js e Python ganha ainda mais sentido. No meio dessa turbulência vinda do Oriente, o que separa o resultado do ruído é a consistência da sua infraestrutura. Se o seu dashboard de candles não aguenta o repique de uma desalavancagem global, você não tem um sistema, tem uma aposta. ​O mercado de títulos do Japão virou o gatilho da vez. Para muitos, é motivo de pânico. Para quem constrói a própria ferramenta e entende que o 'tranco' faz parte do aprendizado, é apenas mais uma variável para o código processar. ​Menos barulho de Niterói, mais precisão de Jaú. O mercado exige respeito e o código exige suor. ​#BTC #BinanceNews #Finanças #Python #NodeJS #JauSP #Bitcoin #MercadoFinanceiro #Projeto50Mais

O "Tranco" do Iene e o Bezerro de Ouro do Bitcoin 🇯🇵📈

Enquanto aqui em Jaú a gente ajusta o código para o domingo, o Japão resolveu sacudir o mercado global. A notícia que acaba de sair na Binance News é um alerta de engenharia financeira pura: os títulos do governo japonês (JGBs) estão sob estresse e isso está 'desalavancando' o mundo.
​O que isso significa na prática? Quando a volatilidade do Iene sobe, o investidor que está pendurado em alavancagem no Bitcoin é o primeiro a cair. É o famoso 'bezerro de ouro' sendo testado pelo fogo da realidade.
​Por aqui, o trabalho no Node.js e Python ganha ainda mais sentido. No meio dessa turbulência vinda do Oriente, o que separa o resultado do ruído é a consistência da sua infraestrutura. Se o seu dashboard de candles não aguenta o repique de uma desalavancagem global, você não tem um sistema, tem uma aposta.
​O mercado de títulos do Japão virou o gatilho da vez. Para muitos, é motivo de pânico. Para quem constrói a própria ferramenta e entende que o 'tranco' faz parte do aprendizado, é apenas mais uma variável para o código processar.
​Menos barulho de Niterói, mais precisão de Jaú. O mercado exige respeito e o código exige suor.
#BTC #BinanceNews #Finanças #Python #NodeJS #JauSP #Bitcoin #MercadoFinanceiro #Projeto50Mais
investing just $500-$1000 today 💵... With Python's massive potential, that investment could grow 10x, 30x, or even 50x! 📈💥 Why Python? * Small supply 🤏 * Growing hype 🔥 * Explosive chart setup 🚀 Python isn't just a coin, it's your ticket to wealth in 2025! 🌟 $PYTH {spot}(PYTHUSDT) $0.1627 -6.38% #python #cryptomillionaire #Binance 🌕
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* Small supply 🤏
* Growing hype 🔥
* Explosive chart setup 🚀
Python isn't just a coin, it's your ticket to wealth in 2025! 🌟
$PYTH

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Unlocking the Power of PythonWhy Python is the Must-Learn Programming Language in 2025? Getting started looking to enhance your programming expertise? No matter how you are as a developer (new to development or a veteran),this is the language that will change the game for you, and you can't afford to never learn it. #TariffPause #PYTHonBinance Python's rise in popularity is no accident. Thanks to its ease of use, its accessibility in integration , and to a robust community, it is the developers' tool of choice all over the world. In this article, we'll dive into why Python is one of the most powerful programming languages and how it can transform your development journey. What Makes Python So Special? Python is frequently called the "Swiss Army knife" of programming languages, i.e., a language capable of providing with any tool and solution a developer needs to produce a desired result. In data analytics, machine learning, web, and automation, Python has been king, because of its unique effectiveness. Let's explore why this language is so in demand. 1. Simplicity and Readability #Python syntax is simple and straightforward to type, and one is reasonably able to start writing code even if has little experience in programming. On the contrary to the other languages with complex syntax and verbose syntax, Python is very easy to learn. Due to its simplicity and limited footprint, it is possible to have nontechnical participants also read and participate in the project. 2. Unmatched Versatility One of Python's biggest strengths is its versatility. No matter what you are accomplishing, be building a website, analyzing, creating an AI, etc., Python is always around. With the help of libraries and frameworks (e.g., Django, Flask, NumPy, TensorFlow) the number of possible potentials is practically unbounded. The utility of Python has made it in some area indispensable for all the programmers needing to move around various domains and fields. 3. Strong Community and Support Due to Python's extensible collaborative ecosystem, there are abundant tutorials, documentation, and libraries, each designed for a particular purpose of keeping the development process as close as possible to its essence. Whether you're stuck on a problem or looking to share your knowledge, Python's active community is always ready to help. 4. Ideal for Web Development Python's role in web development is unparalleled. Traditionally, well-known paradigms like Django and Flask would help us to make secure, scalable, and high-functionality web applications in a short period and easy way. These tools reduce the time required to develop a product, and therefore companies are able to deploy the website faster and making fewer errors. Why Python is Dominating Data Science and Machine Learning By MediumPython has become the programming language of the day of the data scientist, of artificial intelligence (AI) and of machine learning. If you're looking to break into these fields, mastering Python is a must. Here's why: Data Science: Python offers a vast number of libraries for data manipulation (e.g., Pandas, NumPy) and data visualisation (e.g., Matplotlib). These software tools allow data scientists to select and explore from the universes biggest data set sample directly. Machine Learning and AI: Python is a leader in ML and AI development. Thanks to the installation of the instruments, including TensorFlow, Keras and Scikit-learn, it has been possible to model and implement the models in a straightforward way with a shorter time to execute. Automation: Save Time and Boost Efficiency Automation is the solution to produce efficiency improvements and Python is, at the maximum, one of the leaders in automation. Because of its intuitive grammar and rich, advanced libraries like Selenium for web scraping and OpenPyXL for Excel automation it's very easy to automate tasks. However, in any automated tasks or web data extraction, Python can make you more productive. Career Opportunities with Python The demand for Python developers is skyrocketing. According to Stack Overflow's Developer Survey, Python is one of the most wanted and desired programming languages. Whether you're looking to become a web developer, data scientist, or software engineer, Python opens doors to lucrative and exciting career opportunities. The Future of Python: Endless Possibilities By LinkedinPython's growth shows no signs of slowing down. Both data-driven and knowledge-driven, artificial intelligence (AI) and automation are, in reality, power-house behind all the industries, and in the future, Python will be a leader in the technological innovation fields. Because community posts are permanent and innovation is ongoing, Python has an easy route to become an important participant in the computational landscape for the coming years. Python is not only a programming language, but a gateway to a world of possibilities. No matter if you are building the next generation of tech companies or using data to solve hard problems in the world, Python is the weapon in your arsenal. Due to convenience, its flexibility, and the richness of its libraries, it is one of the most promising present solutions in the world within the point of view of developers and companies. Don't wait to unlock the power of Python today and start shaping the future of technology!

Unlocking the Power of Python

Why Python is the Must-Learn Programming Language in 2025?

Getting started looking to enhance your programming expertise? No matter how you are as a developer (new to development or a veteran),this is the language that will change the game for you, and you can't afford to never learn it.
#TariffPause #PYTHonBinance
Python's rise in popularity is no accident. Thanks to its ease of use, its accessibility in integration , and to a robust community, it is the developers' tool of choice all over the world. In this article,
we'll dive into why Python is one of the most powerful programming languages and how it can transform your development journey.
What Makes Python So Special?
Python is frequently called the "Swiss Army knife" of programming languages, i.e., a language capable of providing with any tool and solution a developer needs to produce a desired result.
In data analytics, machine learning, web, and automation, Python has been king, because of its unique effectiveness. Let's explore why this language is so in demand.
1. Simplicity and Readability
#Python syntax is simple and straightforward to type, and one is reasonably able to start writing code even if has little experience in programming.
On the contrary to the other languages with complex syntax and verbose syntax, Python is very easy to learn. Due to its simplicity and limited footprint, it is possible to have nontechnical participants also read and participate in the project.
2. Unmatched Versatility
One of Python's biggest strengths is its versatility. No matter what you are accomplishing, be building a website, analyzing, creating an AI, etc., Python is always around.
With the help of libraries and frameworks (e.g., Django, Flask, NumPy, TensorFlow) the number of possible potentials is practically unbounded. The utility of Python has made it in some area indispensable for all the programmers needing to move around various domains and fields.
3. Strong Community and Support
Due to Python's extensible collaborative ecosystem, there are abundant tutorials, documentation, and libraries, each designed for a particular purpose of keeping the development process as close as possible to its essence.
Whether you're stuck on a problem or looking to share your knowledge, Python's active community is always ready to help.
4. Ideal for Web Development
Python's role in web development is unparalleled. Traditionally, well-known paradigms like Django and Flask would help us to make secure, scalable, and high-functionality web applications in a short period and easy way.
These tools reduce the time required to develop a product, and therefore companies are able to deploy the website faster and making fewer errors.
Why Python is Dominating Data
Science and Machine Learning
By MediumPython has become the programming language of the day of the data scientist, of artificial intelligence (AI) and of machine learning. If you're looking to break into these fields, mastering Python is a must. Here's why:
Data Science:
Python offers a vast number of libraries for data manipulation (e.g., Pandas, NumPy) and data visualisation (e.g., Matplotlib). These software tools allow data scientists to select and explore from the universes biggest data set sample directly.
Machine Learning and AI:
Python is a leader in ML and AI development. Thanks to the installation of the instruments, including TensorFlow, Keras and Scikit-learn, it has been possible to model and implement the models in a straightforward way with a shorter time to execute.
Automation:
Save Time and Boost Efficiency
Automation is the solution to produce efficiency improvements and Python is, at the maximum, one of the leaders in automation. Because of its intuitive grammar and rich, advanced libraries like Selenium for web scraping and OpenPyXL for Excel automation it's very easy to automate tasks. However, in any automated tasks or web data extraction, Python can make you more productive.
Career Opportunities with Python

The demand for Python developers is skyrocketing. According to Stack Overflow's Developer Survey, Python is one of the most wanted and desired programming languages. Whether you're looking to become a web developer, data scientist, or software engineer, Python opens doors to lucrative and exciting career opportunities.
The Future of Python: Endless Possibilities
By LinkedinPython's growth shows no signs of slowing down. Both data-driven and knowledge-driven, artificial intelligence (AI) and automation are, in reality, power-house behind all the industries, and in the future, Python will be a leader in the technological innovation fields.
Because community posts are permanent and innovation is ongoing, Python has an easy route to become an important participant in the computational landscape for the coming years.
Python is not only a programming language, but a gateway to a world of possibilities. No matter if you are building the next generation of tech companies or using data to solve hard problems in the world, Python is the weapon in your arsenal.
Due to convenience, its flexibility, and the richness of its libraries, it is one of the most promising present solutions in the world within the point of view of developers and companies.
Don't wait to unlock the power of Python today and start shaping the future of technology!
·
--
Бичи
i think this is the best time to buy and stakes pyth coin afew dayes it will go up to 3 usdt$XRP #python #xrp $BNB
i think this is the best time to buy and stakes pyth coin
afew dayes it will go up to 3 usdt$XRP #python #xrp $BNB
#Python 🔻 Short Setup (agar 0.25 se rejection confirm hoti hai) Entry Zone: 0.232 – 0.245 Stop Loss (SL): 0.262 (resistance ke thoda upar) Take Profit (TP): TP1: 0.205 TP2: 0.188 TP3: 0.165 (agar zyada dump aaya) Risk/Reward: safe side 1:2+ --- 🔼 Long Setup (sirf retracement ke baad) Entry Zone: 0.188 – 0.200 (jab candle is zone me support banaye) Stop Loss (SL): 0.175 Take Profit (TP): TP1: 0.225 TP2: 0.245 TP3: 0.260 (agar breakout hua) Risk/Reward: safe side 1:2+
#Python
🔻 Short Setup (agar 0.25 se rejection confirm hoti hai)

Entry Zone: 0.232 – 0.245

Stop Loss (SL): 0.262 (resistance ke thoda upar)

Take Profit (TP):

TP1: 0.205

TP2: 0.188

TP3: 0.165 (agar zyada dump aaya)

Risk/Reward: safe side 1:2+

---

🔼 Long Setup (sirf retracement ke baad)

Entry Zone: 0.188 – 0.200 (jab candle is zone me support banaye)

Stop Loss (SL): 0.175

Take Profit (TP):

TP1: 0.225

TP2: 0.245

TP3: 0.260 (agar breakout hua)

Risk/Reward: safe side 1:2+
S
PYTHUSDT
Затворена
PNL
+5,37USDT
·
--
Бичи
Разпределение на моите активи
USDT
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Others
73.49%
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