Data Analytics
前往频道在 Telegram
Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data
显示更多📈 Telegram 频道 Data Analytics 的分析概览
频道 Data Analytics (@sqlspecialist) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 109 740 名订阅者,在 技术与应用 类别中位列第 1 113,并在 印度 地区排名第 2 324 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 109 740 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 610,过去 24 小时变化为 45,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 2.51%。内容发布后 24 小时内通常能获得 1.12% 的反应,占订阅者总量。
- 帖子覆盖: 每篇帖子平均可获得 2 753 次浏览,首日通常累积 1 230 次浏览。
- 互动与反馈: 受众积极参与,单帖平均反应数为 7。
- 主题关注点: 内容集中在 row, sql, analytic, analyst, visualization 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:
“Perfect channel to learn Data Analytics
Learn SQL, Python, Alteryx, Tableau, Power BI and many more
For Promotions: @coderfun @love_data”
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。
109 740
订阅者
+4524 小时
+1667 天
+61030 天
帖子存档
109 730
Stories and metaphors that can make learning data analysis more engaging and memorable
👇👇
https://www.linkedin.com/posts/sql-analysts_learn-data-analysis-activity-7116671203175464960-mAqu?utm_source=share&utm_medium=member_android
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Stories and metaphors that can make learning data analysis more engaging and memorable
👇👇
https://www.linkedin.com/posts/sql-analysts_learn-data-analysis-with-fun-activity-7116668239794888704-xrUc?utm_source=share&utm_medium=member_android
Remembering these stories and metaphors can make data analysis concepts more vivid and easier to recall during your learning journey.
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As I got a few requests to share specific resume tips for freshers, so here you go:
1. Internships and Part-Time Jobs:
- When listing internships or part-time jobs, highlight relevant experiences that demonstrate skills applicable to the job you're applying for.
- Use bullet points to describe your role and responsibilities, focusing on accomplishments and contributions. Quantify your achievements whenever possible (e.g., "Increased website traffic by 30% through SEO optimization").
- If you have limited work experience, you can include volunteer work, freelance projects, or even personal projects that showcase relevant skills.
2. Volunteer Work and Extracurricular Activities:
- Emphasize leadership, teamwork, problem-solving, and other transferable skills gained through volunteer work and extracurricular activities.
- Describe your involvement and any specific achievements or projects within these activities.
- If you held leadership positions (e.g., club president, event coordinator), mention them to highlight your leadership abilities.
3. Tailor Your Resume:
- Customize your resume for each job application by carefully reading the job description and requirements.
- Focus on including experiences and skills that directly align with the specific job you're applying for.
- Use keywords from the job posting in your resume to increase its chances of passing through applicant tracking systems (ATS).
4. Professional Formatting:
- Maintain a clean and professional format throughout your resume.
- Use a legible font (e.g., Arial, Calibri) and an organized layout with clear headings.
- Ensure consistent formatting for bullet points, indentation, and spacing.
5. Proofread Thoroughly:
- Carefully proofread your resume to eliminate all typos, grammatical errors, and formatting issues.
- Consider asking a trusted friend, family member, or mentor to review it as well. Fresh eyes can catch mistakes you might overlook.
6. LinkedIn Profile:
- Include a link to your LinkedIn profile if you have one. Ensure that your LinkedIn profile is complete and presents you in a professional light.
- Customize your LinkedIn URL to include your name for a cleaner appearance (e.g., www.linkedin.com/in/yourname).
- Use a professional photo, write a compelling summary, and highlight your skills and experiences on your LinkedIn profile.
These tips will help you create a tailored and professional resume that effectively showcases your qualifications and skills, even as a fresher with limited work experience.
Hope it helps :)
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I got a lot of request from users asking for help in refining resume. So, I thought to some valuable tips in this post itself for everyone's benefit.
Here are some few key points to note while refining your resume:
Format and Design: Keep your resume clean and professional. Use a modern and easy-to-read font. Utilize clear headings and bullet points for a structured look.
Contact Information: Include your name, phone number, professional email address, and LinkedIn profile (if applicable) at the top of the resume.
Summary or Objective: Write a concise summary or objective statement that highlights your career goals and what you bring to the table.
Professional Experience: List your work experience in reverse chronological order (most recent first). Use action verbs to describe your accomplishments and focus on quantifiable achievements.
Skills: Highlight relevant technical and soft skills. Tailor this section to the specific job you're applying for.
Education: Include your educational background, listing your most recent degree first. Mention any honors or relevant coursework.
Certifications and Training: If you have relevant certifications or training, list them here.
Projects or Portfolio: Showcase any significant projects or a portfolio of your work if it's relevant to the position.
Keywords: Customize your resume for each job application by incorporating keywords from the job posting. This can help your resume pass through applicant tracking systems (ATS).
Proofread: Carefully proofread your resume for grammar and spelling errors. Consider having someone else review it as well.
Tailor Each Resume: Customize your resume for each job application to emphasize the skills and experiences most relevant to that position.
Quantify Achievements: Whenever possible, use specific numbers or percentages to quantify your achievements. This adds credibility to your claims.
Use Action Words: Start bullet points with strong action verbs like "managed," "achieved," "led," etc.
Keep it Concise: Aim for a resume length of one page for less experienced candidates and up to two pages for more experienced professionals.
Update Regularly: Continuously update your resume to reflect your latest experiences and accomplishments.
Seek Feedback: Don't hesitate to seek feedback from mentors, career advisors, or professional colleagues to improve your resume.
Remember that your resume is your marketing tool, so it should effectively communicate your qualifications and value to potential employers. Tailoring it to each job application and staying up-to-date with current resume trends is crucial for success in 2023.
Hope it helps :)
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Free Certificates to become a data Analyst
👇👇
https://www.linkedin.com/posts/sql-analysts_freecertificates-dataanalysts-python-activity-7113004712412524545-Uw4k?utm_source=share&utm_medium=member_android
We are very close to 100 likes on this post and 1000 followers. Thank you all for your amazing support 😄❤️
Planning to have another similar post on more free certification for data analysis & data science field :)
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Here is a simplified SQL example that summarizes all the functions in one query:
Let's say we have a database of sales transactions and we want to find the top-selling products in the last month.
SELECT product_name, SUM(quantity_sold) AS total_sold
FROM sales
WHERE transaction_date >= DATE_SUB(NOW(), INTERVAL 1 MONTH)
GROUP BY product_name
HAVING total_sold > 100
ORDER BY total_sold DESC
LIMIT 10;
In this single query:
We SELECT the product names and the total quantity sold.
We retrieve data FROM the "sales" table.
We use WHERE to filter transactions from the last month.
We GROUP BY product name to group sales by product.
We HAVING to filter for products that have sold more than 100 units.
We ORDER BY total quantity sold in descending order.
Finally, we LIMIT the result to the top 10 products.
Preparation guide for SQL: https://t.me/free4unow_backup/536
SQL Interview Book: https://t.me/DataAnalystInterview/49
Hope it helps :)109 730
Top 10 SQL statements & functions used for data analysis
SELECT: To retrieve data from a database.
FROM: To specify the table or tables from which to retrieve data.
WHERE: To filter data based on specified conditions.
GROUP BY: To group rows with similar values into summary rows.
HAVING: To filter grouped data based on conditions.
ORDER BY: To sort the result set by one or more columns.
COUNT(): To count the number of rows or non-null values in a column.
SUM(): To calculate the sum of values in a numeric column.
AVG(): To calculate the average of values in a numeric column.
JOIN: To combine data from multiple tables based on a related column.
These SQL statements and functions are fundamental for data analysis and querying relational databases effectively.
Hope it helps :)
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Top 10 Python functions that are commonly used in data analysis
import pandas as pd: This function is used to import the Pandas library, which is essential for data manipulation and analysis.
read_csv(): This function from Pandas is used to read data from CSV files into a DataFrame, a primary data structure for data analysis.
head(): It allows you to quickly preview the first few rows of a DataFrame to understand its structure.
describe(): This function provides summary statistics of the numeric columns in a DataFrame, such as mean, standard deviation, and percentiles.
groupby(): It's used to group data by one or more columns, enabling aggregation and analysis within those groups.
pivot_table(): This function helps in creating pivot tables, allowing you to summarize and reshape data for analysis.
fillna(): Useful for filling missing values in a DataFrame with a specified value or a calculated one (e.g., mean or median).
apply(): This function is used to apply custom functions to DataFrame columns or rows, which is handy for data transformation.
plot(): It's part of the Matplotlib library and is used for creating various data visualizations, such as line plots, bar charts, and scatter plots.
merge(): This function is used for combining two or more DataFrames based on a common column or index, which is crucial for joining datasets during analysis.
These functions are essential tools for any data analyst working with Python for data analysis tasks.
Hope it helps :)
109 730
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109 730
Top 10 Excel functions for data analysis
SUMIF/SUMIFS: Sum values based on specified conditions, allowing you to aggregate data selectively.
AVERAGE: Calculate the average of a range of numbers, useful for finding central tendencies.
COUNT/COUNTIF/COUNTIFS: Count the number of cells that meet specific criteria, helping with data profiling.
MAX/MIN: Find the maximum or minimum value in a dataset, useful for identifying extremes.
IF/IFERROR: Perform conditional calculations and handle errors in data gracefully.
VLOOKUP/HLOOKUP: Search for a value in a table and return related information, aiding data retrieval.
PivotTables: Dynamically summarize and analyze data, making it easier to draw insights.
INDEX/MATCH: Retrieve data based on criteria, providing more flexible lookup capabilities than VLOOKUP.
TEXT and DATE Functions: Manipulate text strings and work with date values effectively.
Statistical Functions (e.g., AVERAGEIFS, STDEV, CORREL): Perform advanced statistical analysis on your data.
These functions form the foundation for many data analysis tasks in Excel and are essential for anyone working data regularly.
109 730
🗂The order of operations used in MS Excel while evaluating formulas
MS Excel follows a standard math protocol to evaluate a formula.
This protocol is called “order of operations” – PEMDAS –
~Parentheses
~Exponents
~Multiplication
~Division
~Addition
~Subtraction
MS Excel also applies some customization to handle the formula syntax.
The order in which MS Excel performs calculations can affect the return value of the formula.
First of all, Excel evaluates any expressions in parentheses.
As we have seen in mathematical formulae too, parentheses essentially override the normal order of operations. It prioritizes certain operations.
Next, Excel resolves cell references like A1 (cell address). It evaluates range references like A1:A10, making them arrays of values.
It also performs range operations like a union (comma) and an intersection (space).
Next, Excel performs –
-Exponentiation
-Negation
-% conversions
-Multiplication and division
-Addition and subtraction
-Concatenation
-Logical operators
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Stepwise guide to work on data analysis projects
👇👇
Choose a Topic: Select an area of interest.
Find a Dataset: Locate relevant data.
Data Exploration: Understand the data's structure.
Data Cleaning: Address missing data and outliers.
Exploratory Data Analysis (EDA): Discover patterns and relationships.
Hypotheses: Formulate questions to answer.
Data Analysis: Apply statistical or ML methods.
Visualize Results: Create clear visualizations.
Interpret Findings: Explain what you've discovered.
Conclusion: Summarize key insights.
Communication: Present results effectively.
Share Your Work: Showcase on platforms.
Feedback and Iterate: Learn and improve.
Hope it helps :)
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7⃣ Baby Steps to Start with Data Analytics
https://www.linkedin.com/posts/sql-analysts_dataanalysts-dataanalytics-dataanalysissteps-activity-7114542778914680833-4u3v
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Resume tips for someone applying for a Data Analyst role
As I got so many requests in dm who needed some tips to improve their resume, so here you go 😄👇
Tailor Your Resume:
Customize your resume for each job application. Highlight skills and experiences that align with the specific job requirements mentioned in the job posting.
Clear and Concise Summary(optional):
Include a brief, clear summary or objective statement at the beginning of your resume to convey your career goals and what you can offer as a Data Analyst.
Highlight Relevant Skills:
Emphasize technical skills such as SQL, Python, data visualization tools (e.g., Tableau, Power BI), statistical analysis, and data cleaning techniques.
Showcase Data Projects:
Include a section highlighting specific data analysis projects you've worked on. Describe the problem, your approach, tools used, and the outcomes or insights gained.
Quantify Achievements:
Whenever possible, use quantifiable metrics to showcase your accomplishments. For example, mention how your analysis led to a specific percentage increase in revenue or efficiency improvement
Education and Certifications:
List your educational background, including degrees, institutions, and graduation dates. Mention relevant certifications or online courses related to data analysis.
Work Experience:
Detail your relevant work experience, including company names, job titles, and dates. Highlight responsibilities and achievements that demonstrate your data analysis skills.
Keywords and Buzzwords:
Use relevant keywords and industry-specific buzzwords in your resume, as many employers use applicant tracking systems (ATS) to scan resumes for key terms.
Use Action Verbs:
Start bullet points with strong action verbs (e.g., "analyzed," "implemented," "developed") to describe your contributions and responsibilities.
Formatting and Readability:
Keep your resume clean and well-organized. Use a professional font and maintain consistent formatting throughout. Avoid excessive jargon.
Include a LinkedIn Profile:
If you have a LinkedIn profile, consider adding a link to it on your resume. Make sure your LinkedIn profile is complete and showcases your data analysis skills.
Proofread Carefully:
Review your resume for spelling and grammatical errors. Ask a friend or colleague to proofread it as well. Attention to detail is crucial in data analysis.
Keep it to the Point:
Aim for a concise resume that is typically one to two pages long. Focus on what's most relevant to the job you're applying for.
Remember that your resume is your first opportunity to make a strong impression on potential employers. Tailoring it to the job and showcasing your skills and achievements effectively can significantly increase your chances of landing a Data Analyst position.
Hope it helps :)
109 730
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109 730
SQL Interview Book
👇👇
https://t.me/DataAnalystInterview/49
Data Analyst Jobs
👇👇
https://t.me/jobs_SQL
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Top 5 Interview Questions for Data Analyst
👇👇
Can you explain the difference between INNER JOIN and LEFT JOIN in SQL? Provide an example.
Answer: INNER JOIN returns only the rows where there is a match in both tables, while LEFT JOIN returns all rows from the left table and the matched rows from the right table. For example, if we have two tables 'Employees' and 'Departments,' an INNER JOIN would return employees who belong to a department, while a LEFT JOIN would return all employees and their department information, if available.
How would you read a CSV file into a Pandas DataFrame using Python?
Answer: You can use the pandas.read_csv() function to read a CSV file into a DataFrame.
What is Alteryx, and how can it be used in data preparation and analysis? Share an example of a workflow you've created with Alteryx.
Answer: Alteryx is a data preparation and analytics tool. It allows users to build data workflows visually. For example, I've used Alteryx to create a data cleansing workflow that removes duplicates, handles missing values, and transforms data into a usable format. This streamlined the data preparation process and saved time.
How do you handle missing data in a Pandas DataFrame? Explain some common methods for data imputation.
Answer: Missing data can be handled using methods like df.dropna() to remove rows with missing values, or df.fillna() to fill missing values with a specified value or a calculated statistic like the mean or median. For example, to fill missing values with the mean of a column:
df['column_name'].fillna(df['column_name'].mean(), inplace=True)
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