OK, I'll definitely take a beating from all of you for having gone so long between my survey posts and now. I won't even go into the details but between some crazy work schedules, multiple sinus problems and even migraines... well, I've been a bit behind. Let's just say that April/May were rough at best. I'm feeling better and well, now I'm trying to catch up. I had really gotten the blogging bug in March but I completely lost it in April. But, this tipping point series is in dire need of lots of explaining so I'm really hoping to get a few posts done in this area for sure!

First, I started the discussion around this in a few surveys:

Survey/Question 1

Q1 was described as this: if a table has 1 million rows at 20 rows per page (50,000 pages), at what percentage (roughly) of the data would a nonclustered index no longer be used. Blogged here. Here's what the survey said as of today:

And, for Q1 the correct result (Between 0-2% of the rows) is actually the best result (but, by no means the overwhelming majority at only 28%). However, often people just "think" the answer is very small. So... I did a few more questions/surveys. 

Survey/Question 2

Q2 was described as this: if a table has 1 million rows at 100 rows per page (10,000 pages), at what percentage (roughly) of the data would a nonclustered index no longer be used. Blogged here. Here's what the survey said as of today:

And, for Q2 the correct result (Less than .5% of the rows) is actually at a tie for the best (but, again, even a small percentage at only 22%). Again, often people just "think" the answer is very small. So... I did one more question/survey. 

Survey/Question 3

Q3 was described as this: if a table has 1 million rows at 2 rows per page (500,000 pages), at what percentage (roughly) of the data would a nonclustered index no longer be used. Blogged here. Here's what the survey said as of today:

And, for Q3 the correct result (Between 10-20% of the rows) is actually NOT the highest answer. And, this is even more convincing that there's confusion around what's going on and why.

The Tipping Point

What is the tipping point?

It's the point where the number of rows returned is "no longer selective enough". SQL Server chooses NOT to use the nonclustered index to look up the corresponding data rows and instead performs a table scan.

When does the tipping point occur?

It depends... it's MOSTLY tied to the number of pages in the table. Generally, around 30% of the number of PAGES in the table is about where the tipping point occurs. However, parallelism, some server settings (processor affinity and I/O affinity), memory and table size - all can have an impact. And, since it can vary - I typically estimate somewhere between 25% and 33% as a rough tipping point (and, you'll see from a bunch of my examples, that number is not EXACT). Then, I translate that into rows.

Math for Tipping Point Query 3: If a table has 500,000 pages then 25% = 125,000 and 33% = 166,000. So, somewhere between 125,000 and 166,000 ROWS the query will tip. Turning that into a percentage 125,000/1million = 12.5% and 166,000/1million = 16.6%. So, if a table has 500,000 pages (and 1 million rows) then queries that return less than 12.5% of the data are likely to USE the nonclustered index to lookup the data and queries over 16.6% of the data are LIKELY to use a table scan. For this table, that percentage seems "reasonable". But, most of us say that the tipping point happens at a much lower percentage... why? Because row size - which determines table size (and therefore pages) is really what has the greatest impact. So, let's look at Tipping Point Query 2... 

Math for Tipping Point Query 2: If a table has 10,000 pages then 25% = 2,500 and 33% = 3,333. So, somewhere between 2,500 and 3,333 ROWS the query will tip. Turning that into a percentage 2,500/1million = .25% and 3,333/1million = .33% (not even 1%). So, if a table has only 10,000 pages (and 1 million rows) then queries that return less than a quarter of 1% of the data are likely to USE the nonclustered index to lookup the data and queries over one third of one percent are LIKELY to use a table scan. For this table, that percentage seems really low BUT, at the same time it makes sense (to a point) that a small table would be scanned... but, for less than 1%. 1% is NOT selective enough. For small tables, it might not matter all that much (they're small, they fit in cache, etc.) but for bigger tables - it might be a big performance problem. 

Math for Tipping Point Query 1: If a table has 50,000 pages then 25% = 12,500 and 33% = 16,666. So, somewhere between 12,500 and 16,666 ROWS the query will tip. Turning that into a percentage 12,500/1million = 1.25% and 16,666/1million = 1.66% (under 2%). So, if a table has 50,000 pages (and 1 million rows) then queries that return less than 1.25% of the data are likely to USE the nonclustered index to lookup the data and queries over 1.66% are LIKELY to use a table scan. Again, this seems like a low number. Again, for small tables, it might not matter all that much (they're small, they fit in cache, etc.) but as tables get larger and larger - it CAN be a big performance problem. 

Why is the tipping point interesting?

  • It shows that narrow (non-covering) nonclustered indexes have fewer uses than often expected (just because a query has a column in the WHERE clause doesn't mean that SQL Server's going to use that index)
  • It happens at a point that's typically MUCH earlier than expected... and, in fact, sometimes this is a VERY bad thing!
  • Only nonclustered indexes that do not cover a query have a tipping point. Covering indexes don't have this same issue (which further proves why they're so important for performance tuning)
  • You might find larger tables/queries performing table scans when in fact, it might be better to use a nonclustered index. How do you know, how do you test, how do you hint and/or force... and, is that a good thing?

Real example of an interesting tipping point

Earlier today, I went on facebook and twitter and gave the following information - very vaguely - and I asked "why" is Q2 so much slower than Q1 if Q2 returns only 10 more rows. Same table and no hints (other than MAXDOP)...

Q1: SELECT * FROM table WHERE colx < 597420 OPTION (MAXDOP 1)

  • returns 197,419 rows
  • takes 116,031 ms (1 minute, 52 seconds)
  • 1,197,700 logical reads, 5 physical reads, 137,861 read-ahead reads
  • 7,562 ms CPU time

    Q2: SELECT * FROM table WHERE colx < 597430 OPTION (MAXDOP 1)

  • returns 197,429 rows
  • takes 244,094 ms (4 minutes, 4 seconds)
  • 801,685 logical reads, 1410 physical reads, 801,678 read-ahead reads
  • 9,188 ms CPU time

There were lots of great guesses... but, it's the tipping point. SQL Server chose to "tip" the second query because it was "over the line". But, it's important to realize that there are cases when that's NOT a good idea. And, what are your options?

In SQL Server 2005 - the only option is to force the nonclustered index to be used:

Q2: SELECT * FROM table WITH (INDEX (NCInd)) WHERE colx < 597430 OPTION (MAXDOP 1)

But, this can be TERRIBLY bad on some machines where the IOs could be a lot faster (and where data might already be in cache). These specific numbers are exactly that - specific to this HARDWARE (and, I chose not-so-optimal HW in this case to highlight this problem). And, depending on what number you use (what if this is a parameter in sps?) you might force SQL Server to do WAY more IOs by forcing the index than allowing the tipping point to do its job. But, depending on your hardware (and/or what you know to be in cache at the time of execution), it might be better to force an index instead of letting SQL Server choose. So, should I force the index? Be careful, if you're wrong - it could take more time and actually be slower.

In SQL Server 2008 - there's a new hint - FORCESEEK:

Q2: SELECT * FROM table WITH (INDEX (FORCESEEK)) WHERE colx < 597430 OPTION (MAXDOP 1)

FORCESEEK is better because it doesn't tie you to a particular index directly but it also doesn't let SQL Server tip to a table scan. However, just like forcing an index - you can be wrong!

So, what should you do? It depends. If you know your data well and you do some extensive testing you might consider using a hint (there are some clever things you can do programmatically in sps, I'll try and dedicate a post to this soon). However, a much better choice (if at all possible) is to consider covering (that's really my main point :). In my queries, covering is unrealistic because my queries want all columns (the evil SELECT *) but, if your queries are narrower AND they are high-priority, you are better off with a covering index (in many cases) over a hint because an index which covers a query, never tips.

That's the answer to the puzzle for now but there's definitely a lot more to dive into. The Tipping Point can be a very good thing - and it usually works well. But, if you're finding that you can force an index and get better performance you might want to do some investigating and see if it's this. Then consider how likely a hint is to help and now you know where you can focus.

Thanks for reading,
kt

OK, so this is interesting. I've got a few answers to my last survey (Tipping Point Query #1) and well, there's a good mix of answers (and, yes, some are correct! ;)). Be sure to go back and review that last post so that you can evaluate it and these two tipping point questions completely. So, now I want to see if people really know the basis of "the tipping point".

Try these two:

Tipping Point Query #2

Table1 (t1) has 1 million rows at 100 rows per page. The table has 10,000 pages. A nonclustered index exists (on name) but it does not cover the query. At what percentage (of the table) is this nonclustered index no longer selective enough to use:

Tipping Point Query #3

Table2 (t2) has 1 million rows at 2 rows per page. The table has 500,000 pages. A nonclustered index exists (on name) but it does not cover the query. At what percentage (of the table) is this nonclustered index no longer selective enough to use:

OK, so I'd really love to see quite a few responses to these *3* "tipping point" questions. I PROMISE to do a nice long (and detailed) post for what is the actual tipping point AND the answers to all three of these questions. I'll explain the math as well as how you can generalize "what is selective enough" so that you can better create your nonclustered indexes!!!

Thanks for reading - and responding to these brain teasers!!

Cheers,
kt

PS - It's snowing here (ah...again)... maybe I'll spend the day creating brain teasers??! Do you guys like this kind of a post? (well, I suppose you won't really know until I post the answer part of it... but, just in general??). I think it's pretty cool. But, don't worry, I won't (nor will Paul) make all of my posts surveys. But, I think this is a really good one. I'm anxious to see if the asnwers come in correctly for these two as well! Have at it!

Along the same lines of improving database design and getting better performance on SQL Server (which [IMO] DOES take an experienced SQL Server database developer - but, we'll talk more about "whose job this really is" in many more posts and probably even a RunAs - which Richard and I just setup to record on Thursday (Mar 12)), I started thinking about how I could convince people of why they NEED a database developer. So, I thought I'd ask this VERY important question...

What percentage of data IS selective enough to use a nonclustered index which doesn't cover the query... in other words (just in case you're not entirely sure of what I mean :)), think of indexes in the back of a book... if you need to go to the back of the book to reference a bunch of data (this is called a [bookmark] lookup in SQL Server), there's a point where the randomness of the lookups (especially if you think in terms of many rows on a page) becomes too expensive. For example, imagine that the index is customer name and the data (the book) is customer orders - and, each page (of this rather weird book ;)), has 20 orders on it. Doing a query to lookup customer number 12's orders might be really easy (if they only have only a few orders) BUT, what if the query is "show me all of the orders for people that have an 'e' in their name". First, the number of people have have an 'e' in their name is probably better than 50% (that's TOTALLY a guess) and, if there's 20 orders per page then a lookup from the index into the book would require SQL Server to touch every page roughly 10 times. If the table has 50,000 pages (therefore 1 million rows - at 20 rows per page), then to find the 500,000 rows (remember, I'm estimating half), SQL Server would have to do 500,000 bookmark lookups. For a table with only 50,000 pages that's terribly expensive.

So, here's the question - what's the tipping point? When is a nonclustered index on customer name NOT going to be used to lookup rows of sales orders? I'm going to use a survey to see what you think and then within a week, I'll give the specific SQL Server math AND a query you can run within your own DBs to see EVERY one of your table's "tipping points". It's really interesting and I think will really help you to understand why SQL Server might not be using those nonclustered indexes.............

Cheers,
kt

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