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Common Mistakes Data Analysts Must Avoid ⚠️📊

Even experienced analysts can fall into these traps. Avoid these mistakes to ensure accurate, impactful analysis!

1️⃣ Ignoring Data Cleaning 🧹
Messy data leads to misleading insights. Always check for missing values, duplicates, and inconsistencies before analysis.

2️⃣ Relying Only on Averages 📉
Averages hide variability. Always check median, percentiles, and distributions for a complete picture.

3️⃣ Confusing Correlation with Causation 🔗
Just because two things move together doesn’t mean one causes the other. Validate assumptions before making decisions.

4️⃣ Overcomplicating Visualizations 🎨
Too many colors, labels, or complex charts confuse your audience. Keep it simple, clear, and focused on key takeaways.

5️⃣ Not Understanding Business Context 🎯
Data without context is meaningless. Always ask: "What problem are we solving?" before diving into numbers.

6️⃣ Ignoring Outliers Without Investigation 🔍
Outliers can signal errors or valuable insights. Always analyze why they exist before deciding to remove them.

7️⃣ Using Small Sample Sizes ⚠️
Drawing conclusions from too little data leads to unreliable insights. Ensure your sample size is statistically significant.

8️⃣ Failing to Communicate Insights Clearly 🗣️
Great analysis means nothing if stakeholders don’t understand it. Tell a story with data—don’t just dump numbers.

9️⃣ Not Keeping Up with Industry Trends 🚀
Data tools and techniques evolve fast. Keep learning SQL, Python, Power BI, Tableau, and machine learning basics.

Avoid these mistakes, and you’ll stand out as a reliable data analyst!

Share with credits: https://www.tg-me.com/sqlspecialist

Hope it helps :)



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Common Mistakes Data Analysts Must Avoid ⚠️📊

Even experienced analysts can fall into these traps. Avoid these mistakes to ensure accurate, impactful analysis!

1️⃣ Ignoring Data Cleaning 🧹
Messy data leads to misleading insights. Always check for missing values, duplicates, and inconsistencies before analysis.

2️⃣ Relying Only on Averages 📉
Averages hide variability. Always check median, percentiles, and distributions for a complete picture.

3️⃣ Confusing Correlation with Causation 🔗
Just because two things move together doesn’t mean one causes the other. Validate assumptions before making decisions.

4️⃣ Overcomplicating Visualizations 🎨
Too many colors, labels, or complex charts confuse your audience. Keep it simple, clear, and focused on key takeaways.

5️⃣ Not Understanding Business Context 🎯
Data without context is meaningless. Always ask: "What problem are we solving?" before diving into numbers.

6️⃣ Ignoring Outliers Without Investigation 🔍
Outliers can signal errors or valuable insights. Always analyze why they exist before deciding to remove them.

7️⃣ Using Small Sample Sizes ⚠️
Drawing conclusions from too little data leads to unreliable insights. Ensure your sample size is statistically significant.

8️⃣ Failing to Communicate Insights Clearly 🗣️
Great analysis means nothing if stakeholders don’t understand it. Tell a story with data—don’t just dump numbers.

9️⃣ Not Keeping Up with Industry Trends 🚀
Data tools and techniques evolve fast. Keep learning SQL, Python, Power BI, Tableau, and machine learning basics.

Avoid these mistakes, and you’ll stand out as a reliable data analyst!

Share with credits: https://www.tg-me.com/sqlspecialist

Hope it helps :)

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Telegram and Signal Havens for Right-Wing Extremists

Since the violent storming of Capitol Hill and subsequent ban of former U.S. President Donald Trump from Facebook and Twitter, the removal of Parler from Amazon’s servers, and the de-platforming of incendiary right-wing content, messaging services Telegram and Signal have seen a deluge of new users. In January alone, Telegram reported 90 million new accounts. Its founder, Pavel Durov, described this as “the largest digital migration in human history.” Signal reportedly doubled its user base to 40 million people and became the most downloaded app in 70 countries. The two services rely on encryption to protect the privacy of user communication, which has made them popular with protesters seeking to conceal their identities against repressive governments in places like Belarus, Hong Kong, and Iran. But the same encryption technology has also made them a favored communication tool for criminals and terrorist groups, including al Qaeda and the Islamic State.

That growth environment will include rising inflation and interest rates. Those upward shifts naturally accompany healthy growth periods as the demand for resources, products and services rise. Importantly, the Federal Reserve has laid out the rationale for not interfering with that natural growth transition.It's not exactly a fad, but there is a widespread willingness to pay up for a growth story. Classic fundamental analysis takes a back seat. Even negative earnings are ignored. In fact, positive earnings seem to be a limiting measure, producing the question, "Is that all you've got?" The preference is a vision of untold riches when the exciting story plays out as expected.

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