Kirk shares his journey in handling forecasting, budgeting, and resource allocation in dynamic business environments.
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I'm always wondering what's the new SaaS metric that's going to come out.
0:03
You know, we've got Rule of 40, we've got the magic number,
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we've got semi-new ones like the Rose Formula,
0:09
which is just essentially ARR overhead count,
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but includes contractors as well as contractors and consultants become more
0:17
important.
0:17
And what I've realized is those metrics are important.
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What's more important is how you evaluate them.
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[MUSIC]
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Hello everyone, welcome to yet another episode of the Optimized Show,
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brought to you by Spamflow.
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I'm Adi, the Chief of Staff at Spamflow, and on today's episode,
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we are going to be talking about building a financial model that scales as you
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grow.
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And who better to talk about it than Kirk Kapilal,
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a seasoned professor with a strong track record in business modeling and aud
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iting
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at Deloitte KPMG and EY.
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Today, he's the Director of Strategic Finance and Drive Train,
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a financial planning and decision-making platform.
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Welcome, Kirk, it's my pleasure to host you today.
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Adi, absolutely pleasure to be here.
1:01
Thank you so much for having me.
1:03
So, part, to start off with, why don't you tell us a little bit about yourself
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and your experience in finance?
1:08
Definitely, yeah, finance always piqued my interest.
1:12
And going out of college, I got a job at Deloitte in their auditing team.
1:16
And auditing is obviously very important and focuses a lot on the historicals.
1:20
And the historicals are really important from a accounting perspective,
1:23
but what really grabbed my eye was forecasting and looking ahead.
1:28
How can we forecast out the model to make predictions, let's say, about revenue
1:32
or expenses and those sorts of things.
1:34
And so I found that opportunity at EY.
1:36
And so I went over to EY and really got into modeling,
1:40
creating complex models, and then found a very specific team at KPMG
1:44
that did financial modeling itself.
1:46
So it was specifically focused on the three statement models,
1:49
the income statement, the balance sheet statement of cash flows,
1:52
and then anything that might feed those in terms of schedules.
1:55
And I had some really good mentors there.
1:57
They helped me learn how to create models.
2:00
But then, of course, every consultant eventually leads to the private world
2:04
and drivetrain, which, by all intents and purposes, is the future of modeling.
2:09
Had an opportunity to be the director of strategic finance there.
2:13
And I interviewed, met with the team, saw the product.
2:16
And from an Excel perspective, I just couldn't imagine anything more efficient.
2:21
And so that's what made me make that jump there.
2:23
And so I'm still a lover of Excel, but at every point in a company's life cycle
2:28
they need to move to a tool.
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And I just couldn't think of a better one than drivetrain, hence my jumping
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there.
2:33
So, and I'm pretty sure you're the manager to talk about today's topic,
2:37
which is like building financial models at Skia, Ashigro.
2:40
And I'll talk typically what I'd like to do is, like, sort of dissect the topic
2:44
that we're talking about before we head into the different questions.
2:48
From your perspective, why is scalability important when you're building
2:52
financial models?
2:53
Yeah, no, that's a really good question.
2:55
So, I mean, there's a variety of ways to think about modeling.
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I like to break it out into three sort of major categories.
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One is people, the second is process, and the third is practice.
3:07
And so the people question is, how big is your team?
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How much time can they commit to these processes?
3:13
Process would be, you know, how currently are you updating your model?
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Actual is rolling the forecast, reforcast, and then practice, which is also
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known as industry.
3:21
And this will obviously determine your kind of model.
3:24
When we're thinking about scaling it, we're trying to make the people process
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and practice questions as easy to answer as possible, meaning how,
3:32
what's the fewest amount of people I can use to maximize my efforts in the
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process part?
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What's the fewest amount of processes I need to complete in order to create an
3:42
accurate forecast?
3:43
And then from a practice perspective, this changes from industry.
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If you're in the SaaS industry versus, you know, the biochemistry industry,
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your model is going to look a little bit different.
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But the goal is, at a scalable perspective, how do I simplify it
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for each of those different levels there?
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Sometimes in the beginning, that's Excel.
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For more, you know, seasoned companies, that's going to be something like a
4:06
tool.
4:06
So when we're thinking about scalability, we want to ease the burden on the
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financial team
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and finance and accounting in general.
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And so those are the three kind of major categories that I think about
4:16
and why it's so important to scale it in the right amount of time.
4:20
I mean, that's a very interesting perspective.
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I mean, like, you did touch upon how the journey of the company goes from Excel
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to something more advanced and complicated, right?
4:28
So to zoom in a little bit onto that, so how do you think financial models
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of early stage companies differ from those of late stage companies?
4:38
Yeah, yeah, really good question.
4:39
And it is a drastic change because, of course, in the beginning,
4:43
when you're starting a company, you likely do not have any revenue
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or much revenue at all, build models for several companies
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where they were forecasting their revenues two to three years out,
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but had expenses today.
4:55
So when we're thinking about a financial model from their perspective,
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they're likely thinking from a market perspective
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or a total addressable market perspective,
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meaning what's the total market out there that I could address?
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How much of that market might I be able to capture?
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And then how much of that addressable market that I could even capture
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is going to sign up to my product over all of the other products there.
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And that's a very high level answer.
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But, of course, eventually every company,
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if they're doing the right thing, they're going to start making revenue.
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And about six to 12 months in to them making revenue,
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their model has to change, right?
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And this will probably be the first change that they make
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from a modeling perspective or forecasting perspective,
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because now they have a base that they can work off,
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meaning they have a customer list.
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Those customers are paying the money.
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So it could be as simple as a P times Q model,
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where we're essentially taking the price of their product,
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the quantity of the product sold or the service given,
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and then forecasting it forward.
5:49
I've seen other methodologies where they use sales reps,
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assuming sales reps should be able to make $40,000 of sales per month or per
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year.
5:59
And then you just add sales reps as you want your revenue to grow,
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hoping that they meet their quotas
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and using that as sort of a forecast methodology.
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Expenses seem to find their place in the world based on revenue.
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This is why I typically talk about it based on revenue.
6:14
Financial modeling, by far the most difficult part of it,
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is getting the revenue piece right.
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If you get the revenue piece right,
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your expenses, they matter less,
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because you can control for your expenses.
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Revenue you can't control for, of course,
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otherwise you would likely have billions of dollars from month one.
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But expenses themselves, they land into place when you get your revenue right.
6:35
That's great in Saikou.
6:37
Just to take a step back and discuss financial modeling in general.
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So how do you think financial modeling has changed over the past few years
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in the context of new technology and, of course, AI?
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So I would say, conceptually, financial modeling hasn't changed that much.
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But methodically, it has changed substantially.
6:55
What I mean by that is this,
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the way people are thinking about forecasting likely hasn't changed.
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It's going to fall into one of those buckets I mentioned before
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based on industry, P times Q, total address for market,
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if you're a SaaS model, you're going to use the ARR, MRR corkscrew,
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and we can talk about that a little bit later.
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If you're an airplane company,
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you're going to use a number of seats or utilization or rent,
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or these sorts of things, those pieces are likely going to stay the same,
7:20
because those are very industry specific.
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What has changed a lot is obviously the technology has increased.
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And there's a lot of non-value ad processes in Excel modeling.
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Even though it's very quick and you have a lot of flexibility,
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what's not quick and what is really non-value ad is the process of going into
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NetSuite
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or your other ERP, downloading your actuals,
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formatting them and then putting them into your Excel model
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to then compare budget versus actual.
7:49
That process is something that 10-year-olds can do, right?
7:52
Everyone knows how to download Excel documents,
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and without much practice, you can start formatting them.
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What we want to do is eliminate those non-value ad processes
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by adding in a system that's going to do it for you.
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And this is the induction of FP&A tools that have come in
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to try and centralize a lot of your systems, your CRMs, your ERPs, your HRIS
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tools.
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And so one thing the Drivetrain does is it centralizes those data,
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allows you to create metrics off of that data,
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and then all updates these items.
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So essentially that data that you would have to manually pull yourself
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now is just automatically already flowing in at the hourly level,
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and you don't need to think about it anymore.
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Now you can either rest, which is much needed in the financing accounting world
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or spend time on real insights, drilling down into the data,
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finding correlations, finding perhaps causations,
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and making your forecast that much more accurate.
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That's very interesting.
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I mean, since we work with a lot of finance leaders here that's been for as
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well,
8:49
and whenever we get to meet CFOs during the events that we host and these like
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that,
8:55
one of the major topics that comes up at least in between the discussions
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between the CFOs is like,
9:00
hey, what are the different financial modeling approaches that are out there,
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and like which one to choose considering the complexity, accuracy,
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strategic planning, and a bunch of other things.
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So like, how can financial leaders determine the most suitable strategy for
9:17
their companies,
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these and goals?
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Totally.
9:19
Yeah, and this is where that people process practice item that I was mentioned
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before,
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super important because you can make one level of detail model.
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If you have five people on your FBA team, you can make a much less detailed
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model
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if you only have one person or let's just say half a person,
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commonly, you know, FBA teams are built out of the accounting team by somebody
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just wants to take on the role.
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And so really it's a half role in the beginning.
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So from a people side, how many people do you have to really commit to this?
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A lot of tools are aiming to relinquish the need for adding FBA people so you
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can keep your team
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small, let's say two or three people.
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But even that's becoming difficult as, you know, sort of your capacity is being
10:01
lost
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and models are becoming more cumbersome.
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And so really what you're trying to answer is this question is,
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how complex do I want my model to be and therefore more accurate?
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And how simple do I want my model to be but not too simple that no one's going
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to believe in it.
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The extreme example would be just slapping on 10% at the end of each year and
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saying,
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I'm going to grow 10%.
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People are immediately going to look at that and say, why are you growing 10%?
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I need justification behind those numbers.
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The alternative is go down to the most deep level that you can by region, by
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industry,
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by segment, by product line, by price.
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And sometimes that can be more accurate but not so much more accurate that it's
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worth
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all the extra effort that you're going to put in.
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Right? So that's the process piece.
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The people, how big's my team, the process, how far am I going to make this
10:49
thing accurate?
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Where's the balance?
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Can I do, you know, 60% of the work to get 90% of the accuracy?
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And the extra 40% of the work's only going to give me that extra 10% of
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accuracy.
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And it's obviously a lot more effort throughout my month and I'm going to burn
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out my team.
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That's the balance that you want to find.
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And the practice piece we obviously spoke about when it comes to the industry.
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This is really going to determine, you know, especially in the SaaS industry,
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how you're going to model things out.
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Most, most industries have a pretty sound, let's just say, baseline of
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forecasting.
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For example, in the SaaS industry, it's the ARR corkscrew model or the ARR
11:27
waterfall,
11:28
where you're going to go from, you know, beginning ARR, contraction, expansion,
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churn,
11:33
new, and then ending ARR. That allows you insight into, you know, how are we,
11:38
you know,
11:39
forecasting SaaS at a more granular level, but not so granular that I'm losing
11:44
efficiency.
11:45
That's for SaaS. But then a total addressable market model might be used for
11:49
something in the
11:50
biochemistry sphere when you're talking about new pharmaceuticals or something
11:54
to that effect
11:55
coming up. And so they're very different, but they're also important to get
11:59
right.
12:00
So that, like you said, we can have a scalable model that is effective for my
12:04
company,
12:05
but not too much where I'm burning out the people that's working for me.
12:09
So that was very insightful, Gug. You did touch upon people's process and
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practice, right?
12:14
And basically how you select the strategy depends on the complexity and how far
12:18
you want to take
12:19
it in terms of the financial modeling. Now, when it comes to execution, so as
12:24
per the complexity
12:27
or like as per the requirements, what sort of tools or like strategies should
12:33
financial leaders
12:34
take in order to actually execute it and practice, right? So at what stage is
12:38
an excel enough?
12:39
And what stage do you really need like a complex tool that works with like a
12:43
bunch of other tools
12:44
that are using as well? Totally. Yeah. Well, I have a pretty strong opinion on
12:49
this. And I actually
12:50
just did a podcast with the SaaS CFO Ben Murray, where we actually aim to
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answer this exact question.
12:57
When does a company move from Excel to a stronger Fpna system? And the question
13:07
, let me just say
13:07
off the bat is not based off of dollar of earning. A lot of people will say,
13:12
you know, something to
13:13
the effect of if you have a million of ARR or 10 million of ARR, now you're
13:18
ready to, you know,
13:19
move to a tool that doesn't work. And I can tell you why. I've worked with some
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companies where
13:24
their products or services cost $100,000 just for that one product or service.
13:30
I've worked with
13:31
other companies where that same, you know, their equivalent of the product or
13:34
service is $2.99.
13:36
So if we're talking about $10 million of ARR, for one company, that's going to
13:40
be a lot more
13:41
transactions than another, obviously. And so the question isn't, I move based
13:46
on dollar amount.
13:47
The question is I move based on transaction amount. Once I reach a certain
13:52
number of transactions,
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which is essentially too cumbersome for my Fpna team to handle within Excel,
13:59
you know,
13:59
Excel has only got what is it? 1.04 million lines, right? There are some
14:04
companies that will
14:05
have that many transactions. It's time for you to move over even before that in
14:08
anticipation of this.
14:10
And I say this to a lot of companies. It's not usually too soon to move to a
14:16
tool. If you believe
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in your growth trajectory and you've reached a certain point where even with
14:21
one person,
14:22
the Excel modelings become too too cumbersome, it could be a good time to move
14:27
over to a tool.
14:28
Why? You're going to get there eventually and it's better to learn it upfront.
14:32
And what we've
14:32
seen a lot of the time is people in the industry are adding these tools like
14:37
drivetrain. And they're
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seeing, oh, hold on a second. Now I don't need to hire another Fpna analyst
14:43
because my modeling
14:44
has become so simple that I don't now need to go in to add another person
14:50
because all of this
14:51
can be managed by one person alone or two people alone, whatever the case may
14:55
be. So it's based
14:56
on a transaction amount, not on a dollar amount. And not only are you going to
15:01
save time on the
15:02
modeling piece, but it's going to be simpler as well. It's a double win there.
15:06
Of course,
15:06
you mentioned that one of the metrics that's going to be super important is to
15:09
transaction
15:10
about or rather than the volume amount. So what are some other key financial
15:14
metrics,
15:15
at least in the SaaS world, that finance leaders should consider? And how can
15:18
they be incorporated
15:19
into a financial model? Yeah. Well, at this point, I was talking with a
15:24
colleague about this as well.
15:26
I'm always wondering what's the new SaaS metric that's going to come out? You
15:29
know,
15:30
we've got rule of 40. We've got the magic number. We've got semi new ones like
15:34
the Rose formula,
15:35
which is just essentially ARR overhead count, but includes contractors as well
15:40
as contractors
15:41
and consultants become more important. And what I've realized is those metrics
15:46
are important.
15:47
What's more important is how you evaluate them. So you look at something like
15:53
ARR or MRR. I
15:54
mentioned before the ARR corkscrew model or the ARR waterfall. This is so
15:58
important to get right,
16:00
because if you get this right, you have a very predictable forecast and a very
16:03
predictable plan.
16:05
If you get it wrong, then you can throw away all your predictability. And as a
16:09
result,
16:10
you're probably going to overspend or underspend based on what your company can
16:12
do. So what that
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really means is this, you have a beginning ARR or MRR amount. And you take a
16:18
look at that at a
16:19
monthly level in January, let's just say it's 10,000. And then you've got two
16:23
expansion features.
16:24
One's code new ARR, one's code expansion ARR, new is truly new customers
16:29
expansion is maybe we have
16:30
customers upgrading to a premium service that we have. And then you have the
16:34
opposite of those,
16:34
which is contraction ARR, the opposite of expansion, or just churn, which is a
16:39
customer that's left
16:40
us. Now, the reason I highlight it's why it's so important to get this right is
16:44
because, you know,
16:45
a drivetrain, we've got a lot of customers and I don't know if two customers
16:48
actually calculate
16:49
this the same way. And these are very common metrics, but everyone does it a
16:52
little bit differently.
16:53
I've seen some customers that any customer that enters the door for them is new
16:58
ARR or new MRR.
16:59
And if they leave, it's churn. But then I've got other customers where they
17:03
look at it like this,
17:04
since they give a three month free trial or a freemium sort of plan, those
17:08
sorts of things,
17:09
they do not count a customer that has entered within three months and left
17:12
within that same
17:13
three month period as either new or churn. They don't count them until the
17:16
fourth month, right?
17:17
And so this is obviously very business specific. You want to make sure that it
17:21
makes sense for
17:22
your business to get it right. Every product and service is a little bit
17:25
different and you
17:26
want to make sure you account for that. If you can get those pieces correct,
17:30
new churn,
17:31
expansion, contraction, you will have a very predictable SaaS model. Once you
17:37
've focused on those,
17:38
then worry about the other thing. Worry about your rule of 40, worry about your
17:42
magic numbers,
17:42
worry about your rose formulas. Those things are important and you can
17:45
definitely calculate those,
17:46
but you're not going to get any of the complicated sort of fun metrics, right?
17:51
Unless you get the
17:52
foundational ARR and MRR views correct. Undisturbed. Of course, you talked
17:58
about the four major
17:59
metrics that the financial leaders need to keep in mind before they start
18:01
building out the model.
18:03
But typically what I've seen, at least happened with a lot of companies, is
18:07
that when they're
18:07
starting out, at least in the early stages, they try to be a little bit more
18:12
scrappy, right? Like
18:13
rather than worry about scalability, they start up like, "Hey, you know what,
18:15
something's better
18:16
than nothing. So I'm just going to get started with this." And then sooner than
18:21
later, they actually
18:22
find out that, "Hey, you know what, it's not working." And then they try to
18:25
model and things
18:26
like that, right? So when you're starting out, or ask your building out your
18:29
financial model,
18:30
so how can financial leaders ensure that their models remain scalable as their
18:36
companies grow
18:37
and evolve? Yeah, well, I would say this. You're going to make your models more
18:40
scalable.
18:41
If you're doing things more or less right from the beginning. So how can you do
18:45
that? There's a lot
18:46
of great resources out there, right? On LinkedIn, you're going to find a
18:49
variety of items on how to,
18:51
you know, track your SaaS metrics properly, how to build a financial model. At
18:55
DriveTrain,
18:56
we have an endless blog full of methodologies and financial models that people
19:02
can download.
19:03
And then these are all in Google Sheets right now, where people can take them
19:07
over,
19:07
model out their SaaS business within those sheets, so that when they are
19:11
already jumped to a tool
19:12
like DriveTrain, they've already been thinking about it the right way. They've
19:15
been thinking about
19:16
it the way that systems interpret data. They've been thinking about it the way
19:19
that their business
19:20
and industry needs to interpret that data. So if you start small, let's just
19:24
say you downloaded
19:25
a DriveTrain Google Sheets model, and you're modeling out in that way. By the
19:31
time you get
19:32
to DriveTrain or to a tool like DriveTrain, you're already going to have been
19:35
doing it
19:35
right the whole time, that you know that the lift is not going to be that hard,
19:39
right? So get it
19:40
right from the beginning. If you're already in a little bit, refresh, right?
19:45
There's always a new
19:45
template that you can download, rethink it. Eventually, if you're going the
19:48
wrong way, the
19:49
person that turns back sooner and goes the correct way is the person that's
19:52
ahead, right? So just
19:53
get it right in the beginning, and then further down the line, you're going to
19:56
thank your past self
19:58
a lot when you have to then do a full implementation of a brand new system and
20:02
rethink how you're doing
20:03
your modeling. So, Kirk, we've been talking about what people should be doing
20:08
to build out the
20:08
scalable financial model, right? But now I just want to touch upon something
20:13
that they should not
20:14
be doing. So what are some common pitfalls to avoid when people build out their
20:18
financial models?
20:19
That's a really good question, and you probably saved people hours just by
20:25
asking the question.
20:26
So the biggest, by far, the largest pitfall that people fall into when they
20:31
want to do modeling
20:32
is they want to do the classic financial accounting methodology of getting it
20:38
right to the scent.
20:39
And in historicals, that very much matters. Auditors care about that, account
20:44
ants care about it,
20:45
they have to care about it. We're dealing with real historical numbers that
20:48
actually happen,
20:49
and we need to have a level of accuracy, a threshold that is much higher than
20:54
forecasting.
20:56
You do not need that on the forecasting side of the FP&A side. And if you do
21:00
focus on that,
21:01
you're going to end up on that spectrum on the right side that I was saying
21:05
before,
21:05
where you get so complex that your model to update it is two full days of
21:10
effort.
21:11
All of these systems worth of downloading, you're going to be spending two
21:14
hours formatting,
21:16
and I've fallen into this trap before, and I'm sure every finance leaders had
21:20
this trap
21:20
before, where they're forecasting at such a deep level because they want it to
21:23
be accurate,
21:24
that it ends up costing them two or three financial days a month. That is the
21:28
biggest pitfall to
21:29
avoid. If you can find the balance between this is concise enough, this is
21:34
complex enough,
21:35
and it will not charge my team three days across all of them and make them
21:40
stress out that they've
21:41
missed one sale that's going to break the whole model across a 42-tap model.
21:47
That's what you need
21:47
to focus on. If you can get that piece right, more or less you're likely going
21:51
to have avoided a lot
21:52
of the pitfalls because in Excel, especially having a single formula across
21:57
every single row is very
21:58
important. There's always going to be the need for a hard code somewhere for
22:02
some reason.
22:03
The smaller the model, the more simple the model, the more likely that's to
22:06
occur, but of course,
22:08
not too simple. Otherwise, people aren't going to trust your model at all. They
22:11
're going to think
22:11
it's just something you superfluously made in order to appease the CFO.
22:18
Super, thank you so much for that, Kirk. I mean, the thing you mentioned always
22:21
but I'm actually thinking you'll see a day for some of our listeners out there.
22:26
Of course, finally, I want to touch upon a few emerging brands in financial
22:30
modeling. What do
22:32
you think are some developments that happened recently that the finance leader
22:36
should be aware
22:37
about? I think everybody's a keyword or a hot word is AI. Everybody wants to
22:44
see how this
22:45
AI piece is going to layer on top of financial modeling to essentially improve
22:52
the process
22:52
and make it easier for FP&A teams to get more accurate results and make a model
23:00
quicker.
23:00
I do think from what we've seen, there's a lot of room for that. In financial
23:05
modeling,
23:06
you've got two pieces working together. There's the science piece of it, which
23:10
is the accounting
23:11
and finance. This is true accounting. You've got your income statement,
23:17
your balance sheet statement of CFO. That scientific piece of accounting is not
23:21
changing.
23:22
That part is where AI can really help because those scientific pieces is what
23:27
AI just excels at.
23:29
The other piece of it is the artistic piece. This is the creativity of how am I
23:35
thinking
23:35
about my model? I don't have to think about the SaaS industry in a specific way
23:40
. I don't have to
23:41
think about the airline industry in a specific way. That piece means that the
23:46
user is able to
23:47
create a financial model that makes sense for them or for their individual
23:52
company.
23:53
Where I think AI can help is on the first piece, on the scientific piece,
23:58
on the second piece, it can definitely make an attempt and add some value, but
24:02
it's going to be
24:02
much tougher to replace the time that people are spending on the financial
24:08
modeling there in that
24:09
case. One thing that it can do is let's just say you have a financial model and
24:16
you were to ask
24:18
some equivalent of chat GPT. Give me five takeaways about this model. Of course
24:23
, in the future,
24:24
we're going to be able to see answers such as you missed your budget likely
24:29
because or likely driven
24:31
by three of your five sales reps who didn't hit their quotas. Had each of your
24:36
sales reps
24:37
increased their quota by 10%, you would have exceeded budget by 20% or
24:41
something to that effect.
24:43
So these insights that we can draw from it, those will be extremely valuable
24:47
because rather than
24:48
spending all this manual effort to get those insights, AI is going to be able
24:52
to give it to us
24:53
really quickly, which will just essentially make the market substantially more
24:56
competitive because
24:57
now instead of three months down the line and increasing the quotas for your
25:01
sales reps because
25:02
you already know that they're at capacity, you can do it three months quicker.
25:05
Imagine that
25:06
multiplied by all of the other insights that could come out of financial
25:09
modeling and you have a
25:11
very competitive market accelerating very quickly. I also foresee this as a
25:16
result,
25:16
having less people in the FP&A space. Even though at drivetrain, we've
25:20
typically seen FP&A,
25:22
CRO or any sort of revenue operations and HR teams using our tool, I do foresee
25:31
in the distant
25:32
future, less people using that due to AI. It's not there yet, but I can see
25:36
that coming.
25:37
Got it. So you just touched upon a few things that you see are going to be
25:41
future developments
25:42
as well. It's a how can finance leaders stay informed and adapt to these
25:46
evolving trends to
25:48
you know, at the lake or stay ahead of the curve? I would say the best answer
25:52
to that is keep up
25:53
to date with the people that are really interested in it. For example, I
25:57
mentioned earlier the SASEFO
25:59
Ben Murray, he loves it. We've got the FP&A guy. He's posting stuff constantly
26:03
about all of these
26:06
different types of models. A lot of these guys are very much SASE based as well
26:10
. At drivetrain,
26:11
we have an unlimited list of blogs. Just go take a look through them. You won't
26:15
believe how much
26:16
you're going to learn. Even if there's things that you think you already know,
26:20
there's this great
26:20
quote that says it's the job of great teachers to return us to the simple
26:24
truths that we are
26:25
so reluctant to accept. These blogs are filled with great information. And if
26:31
you take a look at
26:31
them, you're going to learn something out of them. If you keep your finger on
26:35
the pulse of the
26:35
industry, you're not going to get distracted by bad modeling practices or you
26:40
're not going to miss
26:41
the key insights that come out and you'll very much be a part of it. If you're
26:45
a part of it and
26:46
you know what's going on in the industry, you're setting yourself up for
26:49
success when you do have
26:50
to jump to a tool or create a more complex model. Got it. So I think we have
26:54
come to the end of the
26:55
episode and usually Kirk, what we like doing as funful as ending the episode a
27:01
little bit of
27:01
liberty. So recently I watched this movie called Dune and the main character
27:07
basically,
27:09
Paul Atreides. So he gets his power to sort of like see multiple futures all at
27:15
once. They call
27:16
him the quesad Haryg or Lisa and Haryg, but something like that. So what would
27:20
you do if you can get
27:22
that power? Like maybe there's a shift in your brain with like AI or something
27:25
like that. So
27:26
what would you do if you see multiple futures all at once? What would I do if I
27:32
could see
27:32
the future? Is that what you mean? Yeah, so I mean that we're talking about
27:35
financial planning
27:36
and analysis. So what if you could see into the future and like see model it
27:40
out all at once,
27:42
like right in your head? I think what I would do is I would, if I had the
27:47
capability of doing this,
27:49
is I would model out every single public company on earth in my mind based on
27:56
my forecast and
27:59
compare it to what actually happens, then evaluate where I went wrong and why.
28:07
Because
28:07
what normally happens is nobody questions things when they go right. When your
28:11
forecast
28:12
you're accurate, everyone goes, yeah, you were meant to make it accurate. What
28:16
people are really
28:16
interested in is finding a pattern of why we get it wrong. And so I would love
28:21
to find a unifying
28:22
answer to the most common reasons people get it wrong. Are we overestimating?
28:27
Are we underestimating?
28:28
Why are we doing that? And how can we model just a little bit better? This is
28:33
great book called
28:35
Tetlock Cole, the University of Pennsylvania called Super Forecasters. And he
28:40
tracks people that are
28:42
essentially have a higher ability to forecast than others. And so I'm imagining
28:47
my
28:47
Paul Atreides mind being one of those super forecasters. And I think that would
28:51
be the
28:52
best way that I could put my powers to good use. Super. Thank you so much for
28:55
joining us today,
28:56
Kirk. It's been a pleasure to host you and understand what the future of
28:59
finance holds for all of us.
29:01
What an amazing episode. I'm sure our audience will have learned a lot about
29:05
building a financial
29:06
model that scales as growth. You can of course connect with Kirk on LinkedIn to
29:10
continue the
29:11
conversation. Check out the episode description for his LinkedIn and any
29:14
additional resources
29:15
that you need. Until next time, stay informed, stay inspired and keep thriving
29:19
in your national
29:20
journey. Thank you for tuning in.