Data Analytics
Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data
Ko'proq ko'rsatish📈 Telegram kanali Data Analytics analitikasi
Data Analytics (@sqlspecialist) Ingliz til segmentidagi kanali faol ishtirokchi. Hozirda hamjamiyat 109 760 obunachidan iborat bo'lib, Texnologiyalar & Aralashmalar toifasida 1 116-o'rinni va Hindiston mintaqasida 2 331-o'rinni egallagan.
📊 Auditoriya ko‘rsatkichlari va dinamika
невідомо sanasidan buyon loyiha tez o‘sib, 109 760 obunachiga ega bo‘ldi.
26 Iyun, 2026 dagi oxirgi ma’lumotlarga ko‘ra kanal barqaror faollikka ega. Oxirgi 30 kunda obunachilar soni 579 ga, so‘nggi 24 soatda esa 1 ga o‘zgardi va umumiy qamrov yuqori darajada qolmoqda.
- Tasdiqlash holati: Tasdiqlanmagan
- Jalb etish (ER): Auditoriya o‘rtacha 2.58% darajada jalb etiladi. Nashrdan keyingi dastlabki 24 soatda kontent odatda umumiy obunachilar sonining 0.93% ini tashkil etuvchi reaksiyalarni to‘playdi.
- Post qamrovi: Har bir post o‘rtacha 2 827 marta ko‘riladi; birinchi sutkada odatda 1 016 ta ko‘rish yig‘iladi.
- Reaksiyalar va o‘zaro ta’sir: Auditoriya faol: har bir postga o‘rtacha 7 ta reaksiya keladi.
- Tematik yo‘nalishlar: Kontent row, sql, analytic, analyst, visualization kabi asosiy mavzularga jamlangan.
📝 Tavsif va kontent siyosati
Muallif resursni shaxsiy fikrni ifoda etish maydoni sifatida ta’riflaydi:
“Perfect channel to learn Data Analytics
Learn SQL, Python, Alteryx, Tableau, Power BI and many more
For Promotions: @coderfun @love_data”
Yuqori yangilanish chastotasi (oxirgi ma’lumot 27 Iyun, 2026 da olingan) sababli kanal doimo dolzarb va katta qamrovli bo‘lib qoladi. Analitika auditoriya kontent bilan faol hamkorlik qilishini, uni Texnologiyalar & Aralashmalar toifasidagi muhim ta’sir nuqtasiga aylantirishini ko‘rsatadi.
TOTALYTD calculates the year-to-date total for a measure. It's useful for comparing cumulative values such as sales or expenses across different time frames.
- Advanced DAX functions and scenarios: DAX offers various advanced functions for complex calculations. For example, RANKX ranks values dynamically based on specified criteria, enabling you to determine the ranking of products by sales volume or customers by satisfaction score.
Real-world scenerios:
- Time intelligence functions: Let's say you want to analyze monthly sales trends and compare them year-over-year. You can use TOTALYTD to calculate the total sales up to the current month for each year. This allows you to see if sales are increasing or decreasing compared to the same period in previous years.
- Advanced DAX functions and scenarios: Suppose you're analyzing customer churn rates and want to identify high-value customers at risk of leaving. Using RANKX, you can rank customers based on their lifetime value or purchase frequency. This helps prioritize retention efforts on customers most valuable to the business.
- Row context vs. filter context: DAX calculations in Power BI are evaluated within either row context or filter context, depending on the context in which they are used. Understanding the difference between these contexts is crucial for writing accurate and efficient DAX formulas.
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Hope it helps :)reduce, collect).
total_sum = squared_rdd.reduce(lambda x, y: x + y)
3. PySpark:
- Python API for Spark:
- PySpark allows you to use Spark capabilities within Python.
from pyspark.sql import SparkSession
spark = SparkSession.builder.appName("example").getOrCreate()
- DataFrames in PySpark:
- A distributed collection of data organized into named columns.
# Create a DataFrame from a CSV file
df = spark.read.csv("file.csv", header=True, inferSchema=True)
4. Spark SQL:
- Structured Query Language:
- Allows querying structured data using SQL queries.
df.createOrReplaceTempView("my_table")
result = spark.sql("SELECT * FROM my_table WHERE age > 21")
5. Spark Machine Learning (MLlib):
- Machine Learning Library:
- Provides scalable machine learning algorithms.
from pyspark.ml.regression import LinearRegression
# Example linear regression
lr = LinearRegression(featuresCol="features", labelCol="label")
model = lr.fit(training_data)
- Integration with Scikit-Learn:
- Use Spark for distributed training with scikit-learn API.
from pyspark.ml import Estimator
class SparkMLlibEstimator(Estimator):
def fit(self, dataset):
# Distributed training logic
return trained_model
It's essential to note that this topic is a bit advanced and may be considered optional for data analysts.
While understanding Spark can be highly beneficial for handling large-scale data processing, analysts may choose to explore it based on the specific requirements and complexity of their data tasks.
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Hope it helps :)
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