Nitin Gupta is a LinkedIn creator based in Delhi, India with 6,662 followers, focused on Tech Trends, Coding Tutorials, and Project Management Tips content. Posts average 61 likes and 1.1% engagement.
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Profile Highlights
A quick glance at some key stats
6,662Total Followers
62Avg Likes
11Avg Comments
1.1%Avg Eng.
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Engagement Over Time
Visualization of how my engagement on posts has evolved
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My Activity & Engagement Calendar
Visualizing posting frequency and audience engagement over the last 6 months
Influencer Activity & Engagement Calendar
Visualizing posting frequency and audience engagement over the last 6 months
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Most Engaged Posts
My Top 3 posts with the highest engagement
Nitin GuptaSenior Data & Analytics Engineer @ Zinnia
The biggest risk after a LEFT JOIN?
π Putting a WHERE condition on the right table.
This turns your LEFT JOIN into an INNER JOIN, and most people don't even notice.
Example:
SELECT *
FROM customers c
LEFT JOIN orders o
Β Β ON c.id = o.customer_id
WHERE o.order_date > '2024-01-01';
π€ This looks like a LEFT JOINβ¦
but that WHERE o.order_date removes all customers with no orders, killing the purpose of the left join.
β Fix: Move the filter into the JOIN condition:
LEFT JOIN orders o
Β Β ON c.id = o.customer_id
Β AND o.order_date > '2024-01-01';
This is one of the most common SQL bugs. Have you seen this happen in production? π
Nitin GuptaSenior Data & Analytics Engineer @ Zinnia
A tiny SQL mistake that silently kills performance. β οΈ
This query looks fine but forces a full table scan:
SELECT * FROM orders WHERE DATE(created_at) = '2024-12-10';
Why? Applying DATE() makes the filter non-sargable, so indexes/partitions can't be used.
β Use this instead: WHERE created_at >= '2024-12-10' AND created_at < '2024-12-11';
Small change β huge improvement.
Have you caught this in production before?
Nitin GuptaSenior Data & Analytics Engineer @ Zinnia
RIGHT JOIN isn't wrong. It's just unnecessary in most production SQL.
From my experience:
π LEFT JOIN + table swap covers almost everything
π INNER JOIN handles the rest
π RIGHT JOIN mostly adds confusion
Every time I see a RIGHT JOIN in a query, I have to mentally reverse it. And that's where mistakes creep in. π€―
Most teams quietly avoid it - not because it's incorrect, but because it feels risky and hard to read.
Do you still use RIGHT JOIN anywhere?