Data Analytics
Dive into the world of Data Analytics – uncover insights, explore trends, and master data-driven decision making. Admin: @HusseinSheikho || @Hussein_Sheikho
Больше📈 Аналитический обзор Telegram-канала Data Analytics
Канал Data Analytics (@dataanalyticsx) языкового сегмента Английский является активным участником. Сейчас сообщество объединяет 28 942 подписчиков, занимая 4 736 место в категории Технологии и приложения и 22 805 место в регионе Россия.
📊 Показатели аудитории и динамика
С момента создания невідомо проект демонстрирует стремительный рост, собрав аудиторию из 28 942 подписчиков.
Согласно последним данным от 11 июня, 2026, канал показывает стабильную активность. За последние 30 дней изменение числа участников составило 493, а за последние 24 часа — 20, при этом общий охват остаётся высоким.
- Статус верификации: Не верифицирован
- Уровень вовлечённости (ER): Средний показатель вовлечённости аудитории составляет 3.86%. В первые 24 часа после публикации контент обычно набирает 0.99% реакций от общего числа подписчиков.
- Охват публикаций: В среднем каждый пост получает 1 118 просмотров. В течение первых суток публикация набирает 287 просмотров.
- Реакции и взаимодействия: Аудитория активно поддерживает контент: среднее количество реакций на один пост — 2.
- Тематические интересы: Контент сосредоточен на ключевых темах, таких как sellerflash, buybox, buyer, chaos, effortless.
📝 Описание и контентная политика
Автор описывает ресурс как площадку для выражения субъективного мнения:
“Dive into the world of Data Analytics – uncover insights, explore trends, and master data-driven decision making.
Admin: @HusseinSheikho || @Hussein_Sheikho”
Благодаря высокой частоте обновлений (последние данные получены 12 июня, 2026) канал поддерживает актуальность и высокий уровень охвата публикаций. Аналитика показывает, что аудитория активно взаимодействует с контентом, что делает его важной точкой влияния в категории Технологии и приложения.
import pandas as pd
s = pd.Series([10, 20, 30], index=[1, 2, 3])
print(s[1])
A. 10
B. 20
C. 30
D. KeyError
Correct answer: A.
2. What will this code output?
import pandas as pd
s = pd.Series([10, 20, 30])
print(s.iloc[1])
A. 10
B. 20
C. 30
D. IndexError
Correct answer: B.
3. What does this print?
import pandas as pd
df = pd.DataFrame({"a": [1, 2], "b": [3, 4]})
print(df.shape)
A. (4,)
B. (2, 2)
C. (1, 4)
D. (2,)
Correct answer: B.
4. What is returned by this expression?
df["a"]
A. DataFrame
B. Series
C. list
D. ndarray
Correct answer: B.
5. What does this code output?
import pandas as pd
df = pd.DataFrame({"a": [1, 2], "b": [3, 4]})
print(df[["a"]].shape)
A. (2,)
B. (1, 2)
C. (2, 1)
D. (4, 1)
Correct answer: C.
6. What is the result?
import pandas as pd
s = pd.Series([1, 2, 3])
print(s > 1)
A. [False, True, True]
B. Series of booleans
C. ndarray of booleans
D. True
Correct answer: B.
7. What does this code produce?
import pandas as pd
s = pd.Series([1, 2, 3])
print(s[s > 1])
A. Series [2, 3]
B. Series [False, True, True]
C. [2, 3]
D. IndexError
Correct answer: A.
8. What is the output?
import pandas as pd
df = pd.DataFrame({"a": [1, 2], "b": [3, 4]})
print(df.iloc[0, 1])
A. 1
B. 2
C. 3
D. 4
Correct answer: C.
9. What does this select?
df.loc[:, "a"]
A. First row
B. First column as Series
C. First column as DataFrame
D. Entire DataFrame
Correct answer: B.
10. What will this code output?
import pandas as pd
df = pd.DataFrame({"a": [1, 2, 3]})
print(len(df))
A. 1
B. 2
C. 3
D. Error
Correct answer: C.
11. What is returned?
df.values
A. Series
B. DataFrame
C. NumPy ndarray
D. list
Correct answer: C.
12. What does this code output?
import pandas as pd
df = pd.DataFrame({"a": [1, 2, 3]})
print(df.index)
A. [0, 1, 2]
B. list
C. RangeIndex
D. ndarray
Correct answer: C.
13. What is the result?
df.columns
A. list
B. Series
C. Index
D. dict
Correct answer: C.
14. What does this return?
df.dtypes
A. dict
B. Series
C. DataFrame
D. ndarray
Correct answer: B.
15. What is printed?
import pandas as pd
s = pd.Series([1, None, 3])
print(s.isna().sum())
A. 0
B. 1
C. 2
D. 3
Correct answer: B.
16. What does this code output?
import pandas as pd
s = pd.Series([1, None, 3])
print(s.dropna().values)
A. [1, None, 3]
B. [None]
C. [1, 3]
D. Error
Correct answer: C.
17. What does this expression return?
df.head(1)
A. First column
B. First row as Series
C. First row as DataFrame
D. Entire DataFrame
Correct answer: C.
18. What is the output?
import pandas as pd
df = pd.DataFrame({"a": [1, 2, 3]})
print(df.tail(1)["a"].iloc[0])
A. 1
B. 2
C. 3
D. Error
Correct answer: C.
19. What happens here?
df["c"] = df["a"] * 2
A. Raises KeyError
B. Modifies column a
C. Adds new column c
D. No effect
Correct answer: C.
20. What does this code output?
import pandas as pd
df = pd.DataFrame({"a": [1, 2, 3]})
print(df.sum().iloc[0])
A. 1
B. 3
C. 6
D. Error
Correct answer: C.
21. What does df.mean() return?
A. scalar
B. Series
C. DataFrame
D. ndarray
Correct answer: B.
22. What is the result?
df["a"].dtype
A. int
B. numpy.int64
C. object
D. float
Correct answer: B.
23. What does this code do?
df = df.rename(columns={"a": "x"})
A. Renames index
B. Renames column a to x
C. Deletes column a
D. Copies DataFrame only
Correct answer: B.
24. What does this expression return?
df.loc[df["a"] > 1, :]
A. Boolean Series
B. Filtered DataFrame
C. Filtered Series
D. Error
Correct answer: B.
25. What is printed?
import pandas as pd
df = pd.DataFrame({"a": [1, 2, 3]})
print(df.empty)
A. True
B. False
C. None
D. Error
Correct answer: B.
https://t.me/DataAnalyticsX 😱# Select products in 'Electronics' or 'Audio' categories
print("Products in Electronics or Audio:")
print(df_pl.filter(pl.col('category').is_in(['Electronics', 'Audio'])))
# Select products with price between 50 and 200 (inclusive)
print("\nProducts with price between 50 and 200:")
print(df_pl.filter(pl.col('price').is_between(50, 200)))
#### SQL
-- Select products in 'Electronics' or 'Audio' categories
SELECT *
FROM products
WHERE category IN ('Electronics', 'Audio');
-- Select products with price between 50 and 200 (inclusive)
SELECT *
FROM products
WHERE price BETWEEN 50 AND 200;# Create 'price_level' based on price and 'stock_status'
def get_price_level(price):
if price > 200:
return 'High'
elif price > 50:
return 'Medium'
else:
return 'Low'
def get_stock_status(stock):
if stock == 0:
return 'Out of Stock'
elif stock < 50:
return 'Low Stock'
else:
return 'In Stock'
result_pd = df_pd.assign(
price_level=df_pd['price'].apply(get_price_level),
stock_status=df_pd['stock_quantity'].apply(get_stock_status)
)[['product_name', 'price', 'price_level', 'stock_quantity', 'stock_status']]
print(result_pd)
#### polars
# Create 'price_level' based on price and 'stock_status'
result_pl = df_pl.select(
'product_name',
'price',
pl.when(pl.col('price') > 200).then(pl.lit('High'))
.when(pl.col('price') > 50).then(pl.lit('Medium'))
.otherwise(pl.lit('Low'))
.alias('price_level'),
'stock_quantity',
pl.when(pl.col('stock_quantity') == 0).then(pl.lit('Out of Stock'))
.when(pl.col('stock_quantity') < 50).then(pl.lit('Low Stock'))
.otherwise(pl.lit('In Stock'))
.alias('stock_status')
)
print(result_pl)
#### SQL
-- Create price_level and stock_status based on conditions
SELECT
product_name,
price,
CASE
WHEN price > 200 THEN 'High'
WHEN price > 50 THEN 'Medium'
ELSE 'Low'
END AS price_level,
stock_quantity,
CASE
WHEN stock_quantity = 0 THEN 'Out of Stock'
WHEN stock_quantity < 50 THEN 'Low Stock'
ELSE 'In Stock'
END AS stock_status
FROM products;
---
String Transformations in Select
#### pandas
# Select product_name in uppercase and first 3 characters of category
result_pd = df_pd.assign(
product_name_upper=df_pd['product_name'].str.upper(),
category_prefix=df_pd['category'].str.slice(0, 3)
)[['product_name', 'product_name_upper', 'category', 'category_prefix']]
print(result_pd)
#### polars
# Select product_name in uppercase and first 3 characters of category
result_pl = df_pl.select(
'product_name',
pl.col('product_name').str.to_uppercase().alias('product_name_upper'),
'category',
pl.col('category').str.slice(0, 3).alias('category_prefix')
)
print(result_pl)
#### SQL
-- Select product_name in uppercase and first 3 characters of category
SELECT
product_name,
UPPER(product_name) AS product_name_upper,
category,
SUBSTRING(category, 1, 3) AS category_prefix -- Or LEFT(category, 3) in some SQL dialects
FROM products;
---
Selecting with Advanced Filtering (IN, BETWEEN equivalents)
#### pandas
# Select products in 'Electronics' or 'Audio' categories
print("Products in Electronics or Audio:")
print(df_pd[df_pd['category'].isin(['Electronics', 'Audio'])])
# Select products with price between 50 and 200 (inclusive)
print("\nProducts with price between 50 and 200:")
print(df_pd[df_pd['price'].between(50, 200)])
#### polarsimport pandas as pd
data = {
'product_id': [101, 102, 103, 104, 105, 106, 107, 108],
'product_name': ['Laptop', 'Mouse', 'Keyboard', 'Monitor', 'Webcam', 'Microphone', 'Speakers', 'Charger'],
'category': ['Electronics', 'Electronics', 'Electronics', 'Electronics', 'Peripherals', 'Peripherals', 'Audio', 'Accessories'],
'price': [1200.00, 25.00, 75.00, 300.00, 50.00, 80.00, 150.00, 15.00],
'stock_quantity': [50, 200, 150, 70, 100, 60, 40, 0]
}
df_pd = pd.DataFrame(data)
#### polars
import polars as pl
data = {
'product_id': [101, 102, 103, 104, 105, 106, 107, 108],
'product_name': ['Laptop', 'Mouse', 'Keyboard', 'Monitor', 'Webcam', 'Microphone', 'Speakers', 'Charger'],
'category': ['Electronics', 'Electronics', 'Electronics', 'Electronics', 'Peripherals', 'Peripherals', 'Audio', 'Accessories'],
'price': [1200.00, 25.00, 75.00, 300.00, 50.00, 80.00, 150.00, 15.00],
'stock_quantity': [50, 200, 150, 70, 100, 60, 40, 0]
}
df_pl = pl.DataFrame(data)
#### SQL (Conceptual Table Structure and Data)
-- CREATE TABLE products (
-- product_id INT PRIMARY KEY,
-- product_name VARCHAR(255),
-- category VARCHAR(255),
-- price DECIMAL(10, 2),
-- stock_quantity INT
-- );
-- INSERT INTO products VALUES
-- (101, 'Laptop', 'Electronics', 1200.00, 50),
-- (102, 'Mouse', 'Electronics', 25.00, 200),
-- (103, 'Keyboard', 'Electronics', 75.00, 150),
-- (104, 'Monitor', 'Electronics', 300.00, 70),
-- (105, 'Webcam', 'Peripherals', 50.00, 100),
-- (106, 'Microphone', 'Peripherals', 80.00, 60),
-- (107, 'Speakers', 'Audio', 150.00, 40),
-- (108, 'Charger', 'Accessories', 15.00, 0);
---
Creating New Columns with Expressions (SELECT col1, col2 + col3 AS new_col)
#### pandas
# Select 'product_name', 'price', and calculate 'total_inventory_value'
result_pd = df_pd.assign(
total_inventory_value=df_pd['price'] * df_pd['stock_quantity'],
discounted_price=df_pd['price'] * 0.9
)[['product_name', 'price', 'total_inventory_value', 'discounted_price']]
print(result_pd)
#### polars
# Select 'product_name', 'price', and calculate 'total_inventory_value'
result_pl = df_pl.select(
'product_name',
'price',
(pl.col('price') * pl.col('stock_quantity')).alias('total_inventory_value'),
(pl.col('price') * 0.9).alias('discounted_price')
)
print(result_pl)
#### SQL
-- Select product_name, price, and calculate total_inventory_value and discounted_price
SELECT
product_name,
price,
price * stock_quantity AS total_inventory_value,
price * 0.9 AS discounted_price
FROM products;
---
Conditional Column Creation (CASE WHEN equivalent)
#### pandas
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