Moontower #311

In this issue:

  • AI leaves the hardest problems to humans
  • The triggering implication of arbitrage theory
  • options rapid fire
  • Nine Inch Noize

Friends,

A thought sparked by the digital id known as X…

AI anxiety takes many forms. Doomerism, FOMO, a sense that the value you may have associated with your efforts is now solved by power cycles, or simply being overwhelmed by its usefulness, making it difficult to triage.

AI forces us to price even more tradeoffs, mostly in the form of explore/exploit problems. In other words, lots of tasks became easier, leaving diabolically hard ones to focus on, namely, “what should I be doing?”

My answer is mostly to be doing more of what I’m doing faster. I admit this is incremental and I’m a little ashamed of that, but I’ve already told you I feel like I’m the American in 1920 who saw a car and thought, “I could use that to go buy food for my horse”.

If you do your work faster, you can do more work. I heard this is called Jevon’s Paradox, which is some economic idea that caught fire like “Baumol’s disease” or “network effects” or “EBITDA”.

Gemini defines Jevon’s paradox:

The Jevons paradox is an economic observation that increased efficiency in using a resource tends to increase, rather than decrease, its total consumption. Proposed by William Stanley Jevons in 1865 regarding coal use, it occurs because higher efficiency lowers the cost of using the resource, driving higher demand that outweighs the initial savings.

Well, ain’t that the truth. Don’t mind me, I’m just over here paying off “intention debts” when I should be…[trails off]. If you feel the same, I see you.


Money Angle

As I expected, the post how to get arbed with perfect info would trip people up. I didn’t expect confusion because I thought Professor Doug Costa, whose explanation is featured in that post, was itself confusing. But because the concept of replication is hard and feels like it violates the good. It’s triggering. It means you can know the truth and still get arbed. Again, this is why I call it the pons asinorum of finance.

A reader brought it up in our Discord so I’m going to share the discussion here as he felt like our back and forth helped.

Before getting to the conversation, let’s refresh the problem Doug set up:

A company issues contracts based on a provably fair coin. The contract pays $150 on heads, $75 on tails. It trades at $100. Interest rate is 0%.

You calculate the true expected value of the 110 call using the true probability of 50%.

It’s worth $20 because it has a 50% chance of being $40 in-the-money.

You pay $20 for it (but even if you paid a bit less for an unambiguously positive EV trade, this analysis will hold. I just want to stay with Professor’s example)

The dealer sells it to you, hedges with 8/15 of the underlying contract, and locks in $6.67 profit in both states. Pure arb.

You had perfect information about the true probability and you still got arbed. The dealer made money in all scenarios, trading the call at fair value with you.

Doug is showing how the real-world probability doesn’t matter to the derivatives trader if they can also trade the underlying. In this case, the underlying is mispriced, but the dealer doesn’t know that. All the dealer cares about is whether the relationship between the derivative price and the underlying price is mispriced. In this contrived example, the mispricing was more profitable than knowing the true probabilities.

And to add something Doug doesn’t mention…if the investor knew the stock was underpriced and bought that instead, they’d have a positive EV trade (the fair price of the stock is $112.50) but they are still worse off than the dealer who knows the relative value of the 2 securities is wrong and gets to make a profit in all scenarios.

This is a good place to insert the chat.

Reader: I see, so the main point is we can converge a spread by trading two things instead of betting on one.

Kris: In a world with no derivatives, you’re left with having to be good at guessing real-world probabilities, but derivatives are their own source of possible edge that doesn’t inherit from knowledge of the future but from relative mispricings between the derivative and the underlying.

It’s obvious that being able to handicap probabilities would be a source of edge, but it’s quite subtle that once you introduce derivatives and the idea of replication, there becomes a source of profit that doesn’t rely on such an ability.

Reader: Right, so it’s instructive in giving one more spread to look at. If you used a put in your example, then the dealer would lose because they’d be too short. Then a dealer that actually has no information and sells both sides ends up $0. This example is picking the (long) side where it wins.

Kris: Yeah, the underlying in this example is too cheap RELATIVE to the call option.

If the call option was $13.33, then from the vantage point of real-world probability, both the underlying and call are too cheap, but they are priced correctly with respect to each other.

Which makes the point — if a derivative and underlying are correctly priced to each other, then the real-world probability is not important to the dealer. The dealer only cares about the relative values.

You can just compute the Sharpe of buying one vs the other I suppose to see which is better (that’s one lens). The call is more underpriced in % terms, 3.33 when it’s worth 20. But it’s more volatile as it will lose all of its value when it loses.

I’d just stick them both in a Kelly calculator in Claude or something and whichever one it says bet more on is the better one lol.

There are some important implications here. And brain damage — investor brain and derivatives brain collision.

The goal is that derivativesbrainskill.md becomes something one calls as needed, like Neo downloading kung fu. But you don’t wanna get carried away with it and shoot it at everything in life. It’s this weird artificial thing that works in a replication context, but it’s also not artificial in that its violation presents hard cash arbitrage!

That’s the end of the chat, but let me add one more thing to make you feel better if it’s still foggy.

I’ve seen this subtlety trip up seasoned options traders where they take B-S pricing to mean that the forward for a stock is stock grown at the risk-free rate (RFR), but this is ONLY true in a world where you can trade the underlying AND the options. Outside the context of replication, you cannot make that assumption.

Struggling with this idea is entirely forgivable. I mean, the realization that you could use RFR as the discount rate was a revolutionary breakthrough. Bachelier figured out option pricing in the early 1900s, but he and his contemporaries were stumped by what rate to discount the payoffs.

Later academics wondered if you should use something like the required return from CAPM or something, but it was the whole idea that if you trade a derivative vs the underlying against one another, then you can have equivalent payoffs and therefore it’s riskless to go long one and short the other. If it’s riskless, then RFR is the appropriate discount rate.

Warren Buffett sees the necessity of agnostic dealers using the RFR to price options in arbitrage-free ways as an opportunity. He asserts that put options are overpriced because they use too low of a discount rate, but the dealers don’t care so long as they can trade the underlying, they can arb any other rate assumption. Again, so long as “they can trade the underlying.”

This single idea allows derivatives traders who know nothing about the fundamentals of securities to make money in a sea of people who do. It’s quite profound and not a small part behind why I think vol trading is easier than directional trading.


Money Angle for Masochists

Rapid-fire format today:

1) A reminder that trading vol is not trading a line on a chart

Selling vol when it’s high because it’s mean-reverting is not like selling a stock that is going to fall. Option performance depends not just on what happens to implied vol but on how much the stock moves. If it were as simple as selling an IV number before it went down, just sell equity options just before earnings come out. I’m 99.9% sure the implied vol is going to fall after the announcement.

Just remember:

If you are trading near-dated option just think “I’m not trading implied vol I’m trading straddles”. The further you go out in time, the more it’s like trading implied vol since those options are dominated by vega, not gamma and theta.

2) Avis stock

Ticker CAR has been squeezing higher as activist owners with locked up float collide with heavy short interest.

TradingView chart
Created with TradingView

As you might guess, I’m getting messages about the positive delta puts post.

Refreshing a perma-disclaimer: I’m not an advisor. You are responsible for your own actions.

3) ICYMI

Thursday’s post was especially well-received perhaps because it’s highly relevant for option sellers. Just to bring it to your attention again:

A devilish question for option sellers: Which VRP is higher?

It is a fuller response to the quote-tweet from a month ago:

To be blunt, if it were as easy as “sell vol when IV is high” you’d need to believe that option traders, a cohort known for being stupid, never noticed the obvious.

And finally, a reminder of the Moontower Review of option-based ETFs ISSB and ISBG:

This Week In The Options Trench


From My Actual Life

My wife tells me the internet is calling the Nine Inch Noize set last weekend the best in Coachella history. Nine Inch Noize is a mash-up of Nine Inch Nails and German DJ Boyz Noize

These are subjective things, of course, but I’m not surprised by the sentiment. I’ve seen NIN 3x in the past 3 years and the last 2 were with Boyz Noize on the Peel It Back Tour. I’m tired of raving about them. I don’t listen NIN regularly (well, more so now), but the recordings don’t do the in-person experience justice. You can watch YT clips to get a sense of the lasers and effects which are impossibly creative. The Coachella show was different than the tour shows so that’s something to appreciate of its own.

The tour shows have sections where it’s just Trent, sections with Trent and the band without the drummer (who by the way the alien Josh Freese), the full band, and then the tracks with Boyz Noize which thump real hard.

On Friday they dropped the first Nine Inch Noize album. The Pitchfork review is worth a read if any of this is interesting to you. It gives a lot of context not just to the album but the Peel It Back Tour as well.

🔗Pitchfork Album Review of Nine Inch Noize

The song I’m currently obsessed is an old one from the With Teeth LP. He opens his shows with it solo on the piano, which has a different feel than the recorded version. The recorded version has that velcro static fuzz sound that I f’n love, but it’s not for everyone.

Recorded version:

Live:

And my favorite cover of it has a beautiful orchestration and recording:

Stay groovy

☮️

Moontower Weekly Recap

Posts:

the bias of hedging on implied delta

Tweets

Before we get to today’s meat, here are 2 threads spurred by oil’s advance yesterday.

 

Delta is God

If you’re reading a Thursday Moontower, “you’ve heard the expression vega wounds but gamma kills.” It’s not quite so cut-and-dry. My pushback to that trope is the recent article vega’s finishing moveHowever, I’m sympathetic to “gamma kills” mantra. The running joke I’ve used to say on the desk has a similar energy:

“delta is the only greek”

I wouldn’t take this literally, the joke is bowing to the idea that if you have your hard deltas, ie your shares, pointing in the right direction, you tend to win. The Freudian reading of that statement is I’d rather be good at directional trading than a vol monk.

Today, we give delta its due. Delta is god.

No matter what you think it is, you never quite understand it. The best we can do is understand how it will harm or help us based on the thing we can’t know in advance, but know will affect our p/l — path.

While I’ve been meaning to write about this for awhile, this paraphrased question from a moontower user, bumped this post up the editorial queue:

“I’m backtesting delta-hedged straddles and I’m worried the vol I use to compute my hedge delta is ‘wrong.’ Does the choice of hedge vol bias my P&L, and if so, how?”

Pull up a chair, young Padawan.

I’m going to offer 3 perspectives.

  1. The quant answer.
  2. The quant who speaks “trader” answer
  3. The Moontower treatment

Finally, we’ll see how this idea applies to traders and investors who try to structure an options-like payoff to a trade without using options at all.

So much trader mindshare is fixated on delta-hedging for the same reason we are never happy with the quantity we trade in hindsight. The goal here is to create enough clarity that you can not only make better ex-ante decisions but make your peace with them regardless of the outcome.

Onwards.

The Quant Perspective

We’ll start with the mathematical approach. This is not my wheelhouse, so I’ll save my words for later sections, but if you can’t wait to curl up with notation, then this post is for you (h/t to the Moontower Discord where it surfaced).

I couldn’t help but print the acknowledgements section below. I don’t know stochastic calculus, but I suspect the people involved in this paper might.

Which Free Lunch Would You Like Today, Sir?: Delta Hedging, Volatility Arbitrage and Optimal Portfolios by Paul Wilmott & Riaz Ahmad

ABSTRACT

In this paper we examine the statistical properties of the profit to be made from hedging vanilla options that are mispriced by the market and/or hedged using a delta based on different volatilities. We derive formulas for the expected profit and the variance of profit for single options and for portfolios of options on the same underlying. We suggest several ways to choose optimal portfolios.

ACKNOWLEDGMENTS

We would like to thank Hyungsok Ahn and Ed Thorp for their input on the practical application of our results and on portfolio optimization and Peter Carr for his encyclopedic knowledge of the literature.

A Quant Who Talks Like A Trader

The next perspective is a bridge. In the incomparable book, Financial Hacking, quant Philip Maymin breaks things down in terms that your common option flow trader will understand.

On hedging to model (forecast) delta vs implied delta

The short-form intuition is this: you bought a call and hedged it. So you are betting on higher volatility. When volatility ends up higher, even if only for random reasons, you benefit, and when it ends up lower, you lose.

That intuition continues to hold even if you hedge at the wrong vol. If, for example, the true vol is 30 but you hedge to 20, you are just introducing noise. The slope between your P&L and the realized vol is still positive, but not as sharply defined.

Philip brings in the practical concerns of, well, having an employer to answer to who doesn’t like loud “noise”.

If you want to minimize your mark-to-market P&L, you may choose to hedge to the market even if you think the market volatility is wrong.

How do you trade-off these two risks, the mark-to-market risk versus the at-maturity risk? Ultimately, you probably will decide based on the maturity of the option you are hedging.

  • If the option will expire in a month or two, you will almost surely be able to weather any intermittent mark-to-market volatility, so you will lean towards hedging to model.
  • If the option will expire in many years, you will likely lean towards hedging to market, at least until the expiry gets closer.

And what do people do in practice? They hedge their bets on how to hedge. One common rule of thumb is to hedge halfway between the model and the market delta. Then you’re never exactly hedged, but you’re never too far away either.

The inability to hedge perfectly continuously impacts your trading by introducing random risk. This risk decreases if you hedge more frequently, but only as fast as the square root. Therefore, if you want to halve your risk, you have to hedge four times as often.

This is a fantastic observation to give a sense of proportion:

Noise from hedging a one-year option on a daily basis instead of continuously is about the same as one volatility point. If you make one volatility point in expected profit and the standard deviation of your profit is one volatility point, then your Sharpe ratio is about one.

And remember…the risk from not hedging continuously can be diversified away.

His final point here echoes what I wrote in a misconception about harvesting volatility.

Which brings us to…

The Moontower Treatment

The original paraphrased question once again:

“I’m backtesting delta-hedged straddles and I’m worried the vol I use to compute my hedge delta is ‘wrong.’ Does the choice of hedge vol bias my P&L, and if so, how?”

My dead-leg-on-the-toilet response:

Here’s the quick answer…the vol that generates your delta introduces bias that you discover after the fact but you can understand how the bias is correlated to your p/l in different scenarios.

For example, if you are long vol and the stock trends, you will wish you hedged on whatever delta was the “lowest” of the reasonable options you could have chosen from…so if the option is ITM you will have wanted to hedge deltas on a high vol, but if it was OTM you will have wish you hedged on a low vol!

I’ve never done this, but you could create a little cheatsheet matrix with:

  • option ITM or OTM
  • market trends or chops
  • preferred vol i wish i would have hedged on = “high” or “low”

By comparing that matrix to your strategy you can see which biases cause you to double down on your implicit exposure vs hedge it (for example, if you are long ITM options and vol expands in a trending market you will hedge on that desirable light delta…but you are already winning on vega so maybe this codependancy is too much “doubling” down which hurts extra if you were short that option)

Of course, I had to make the cheatsheet now that I got a moment to focus on the question. To start, I fed my response to Claude and it whipped something up. I did have to re-work some of its understanding.

[These are Gell-Mann amnesia moments, where it stumbles on things you know well, and wonder about what it tells you in domains you are less equipped to discern.]

Let’s begin with the cheatsheet, memorialized at https://delta-hedging.moontowermeta.com/:

The sheet is self-explanatory, but there are biases we can anticipate. It’s what I referred to as “the doubling-down” in my response to the reader.

Suppose you follow the rule:

“Hedge On Implied Delta”

IF:

[You buy an OTM option because you think IV < forecasted realized]

AND:

[Your vol signal is correct]

THEN:

[Your hedge ratios will be “light”…I buy OTM calls and sell too few shares]

THEREFORE:

If we trendyou will make “extra” p/l beyond the fact that you bought underpriced volatility. This is “doubling-down”.

If we chopyou will make less gamma scalping p/l than you would have with a heavier delta. The forgone p/l will be buffered by the fact that you were right on the vol being cheap.

In this case, hedging on the delta of the implied vol, is doubling down on your vol forecast in the event that we trend, and offsetting some p/l in the event that we chop.

💡Your choice of delta to hedge on begs you to wonder if a high realized vol forecast is more likely to coincide with trend or chop.


Most of the time, options embed a risk premium above the realized vol.

[The bridge between this idea and making money on selling options sways wildly and has a few missing planks. Many have died trying to find the treasure on the other side so take it easy Indiana Jones.]

That said, it’s understandable if you never want to buy an option. But sometimes you want an option like exposure, just like you might want an insurance policy. You want protection against a high-impact event even if you don’t think it will happen.

I discuss this in the Moontower community, where I prefer to hold BTC exposure as options rather than as a hard delta allocation (I actually use a blended approach, but the reasons aren’t germane to this post).

I pick my spots when I buy the options. My most recent call purchases feel validating because I thought the vol was cheap, so despite losing on direction, they were much better buys than the counterfactual of owning hard deltas.

[Welcome to vol trader cope. This is literally what life is like as a vol trader. I lost money but made the right decision. Yay. You only hope that your career lasts long enough to realize the sum of all the right decisions. The alternative of just guessing in a high-variance game and trying to get lucky is good too. If we focus on survivors. And we do. This is America after all.]

But what if you wanted to replicate the call exposure without actually buying the calls?

Replicating a Call When You Think It’s Overpriced

The closest neighbor to the term “portfolio insurance” in a database of vector embedding is “1987” (Did I put those fancy words in the right sequence? Who cares, you get the joke).

Don’t let that taint your mood going into this next section. You know that I know about that history. Calm down, we’ll extract the fruit from replication and point out the poison you can’t eat.

Step-by-step here.

You want BTC call exposure. You look at the options and think they’re overpriced. So you decide to skip the call and instead replicate it dynamically.

How?

You will be delta hedging in reverse. You’re assuming the posture of someone who sold a call and now needs to replicate it. An option market-maker who sells you a call must go out and manufacture it. If they can manufacture it for less than the price they sold it, they make a profit.

In this case, you are taking the role of call buyer, but instead of buying the call, you are going to try to manufacture it yourself, just like the market maker would have if you bought a call from them.

Mechanically, you’ll hold some BTC, intermittently rebalancing your position as spot moves, synthetically tracing the call’s payoff without paying the upfront premium.

How much is some?

You look up the delta of the call you would have bought, and you hold that much BTC.

How does intermittently rebalance work?

As BTC rises, delta increases, you buy more. As BTC falls, delta decreases, you sell some. You’re manufacturing the call’s convex payoff with a series of linear trades.

How often?

How often does a market-maker hedge? This is the question we’ve tackled many times. It’s a trade-off between the “noise” Maymin alludes to as you sample volatility. If you are a market-maker hedging a short option and the market trends, you’ll wish you hedged often (sampling a lower vol than experience from point-to-point).

If it chops, you’ll wish you hedged weekly, sampling a much lower vol than the daily ranges suggest. Both you and the market-maker face the same problem. You are both trying to manufacture an option whereby each time you trade you “sample” a realized volatility. The more you sample, the closer you get to the real vol. The less you sample, the more likely your replication strategy will differ from the real vol and you could get lucky or unlucky to the platonic (and non-existent) continuous vol.

The cost of this replication comes from the adjustments. To replicate a call, you buy more as the market rallies because the option for the strike you’re trying to mimic increases. You sell as the market falls. You are always buying high and selling low. The sum of those round-trips is your premium. You’re just paying it in installments instead of upfront. If you think these installments net of all transaction and slippage costs would exceed the call premium, you should just buy the call.

To feel good about this strategy, you’re rooting for the options to have been overpriced. If realized vol comes in lower than implied, your rebalancing costs less than the call premium would have. You built the same payoff for cheaper.

To determine how much stock you need to buy, you’re computing your delta at some vol, and that choice determines whether your delta is heavy or light. If you hedge at a high vol (say, the implied you think is too rich), you’re holding more BTC than you “should” — heavy delta. If you hedge at a lower vol (your realized estimate), you’re holding less — light delta.

The cheatsheet as an aid to your hedging strategy

The sheet has the posture of someone long an option, who by replicating is manufacturing an equivalent short option. They paid a premium upfront, but hope the sum of their gamma scalp stream exceeds the premium they paid. In other words, their replication posture is the opposite of yours. You are trying to replicate a long option because you think it will cost less than actually buying a call.

So you invert the logic of the sheet!

If BTC chops you want a light delta. Fewer round-trips means less friction eating into the savings you’re generating by not paying the full premium. If you are right about the IV being overpriced but you hedged using the implied delta, then you will suffer a bit because your delta will have been heavy. But this will partially offset the profitable decision to not buy the call outright. If you hedge on your “model” delta (ie the vol based on your realized forecast), then you are doubling down on your prediction that the vol is cheap in the event we chop.

Again, the idea of vol and its coincidence with trending or chopping is lurking beneath but now you are aware of it.

Restriking Your Synthetic Call

Say BTC has run from 70k to 90k. You’ve been replicating a 100k-strike call, but you want to “roll” it up, taking profit and starting fresh with a 130k-strike call.

You can just look up the 130k call at your chosen vol and adjust the delta to match. That will result in monetizing some of your BTC as the 130k call will have a lower delta than the 100k call.

Notice that if you don’t roll your 100k call is closer to ATM with the spot BTC now up to 90k. It has more gamma than your old deep ITM 90k call. More gamma means your rebalancing is more frequent and more costly. You’re “long” a more expensive option. There’s no free lunch. If you substitute your replicated call for a real call, that call’s theta will reflect the higher rebalancing costs you tried to avoid.

So….

What Makes You Wish You’d Just Bought The Call?

This question strikes at the heart of the Black-Scholes assumption of continuity.

Gaps.

The call buyer pays implied vol upfront and owns the path, for better or worse, for the duration of its life. If a stock gaps up 20% over the weekend, the call captures the full move. The gamma which you prepaid for, ensures your delta adjusts automatically.

The synthetic call you tried to manufacture missed buying deltas in the gap. You are not as long as you should be and to make it up you need to buy all your shortfall deltas up 12% as opposed to prices along the way.

Hard optionality is valuable and impossible to replicate. This is why Option Market Maker 101 class teaches you that the only way to hedge an OTM option is with another OTM option. Nobody knows what the SPX down 25% put is actually worth.* You can reason about a relatively tight put spread only because the error is bounded in proportion to the risk you know you are taking beforehand.

(Although we can reason that it commands a premium and likely trades for more than its actuarial value which is not really known. It’s all a bit circular. And you are still left to contend with the fact that the people, as a category, who buy those teenies know a lot more about vol trading than you. There is no non-vol trader buying that option. Also, this paragraph was written in invisible ink to reveal the VIX basis traders on the mailing list.)

Portfolio insurance failed because it was crowded thus blowing up the cost of put replication by feeding on itself. Meanwhile, the owners of the actual puts went on to start the trading firms you know of today.

how to get arbed with perfect information

The “Bridge of Asses”

📺Option Pricing Explained: No Arbitrage + Financial Mathematics from a Quant | 52 min watch

Doug Costa (SIG quant, former math professor, and the teacher I learned Black-Scholes from 25 years ago) builds no-arbitrage derivatives pricing from scratch using a binomial tree. No calculus, pure replication.

The thing I want to point you to is the profound role of the no-arbitrage axiom. It is the basis of derivatives replication and, by my assertion, represents the “bridge of asses” in investing education.

As a reminder, since nobody clicks links, Wikipedia says the pons asinorum or “bridge of asses” is:

used metaphorically for a problem or challenge which acts as a test of critical thinking, referring to the “ass’ bridge’s” ability to separate capable and incapable reasoners

The notion of replication is the pons asinorum of investing education because it is:

the conceptual rails of looking at a web of branching future payoffs, seeing how they could be replicated, and measuring the cost of that replicating portfolio today. It is the formalization of finance’s deepest truth — you cannot eradicate risk, but only change its shape.

You could make an even stronger claim that it lies at the core of decision-making itself, as it formalizes opportunity cost.

And I say this without being able to appreciate its deeper impact. Doug pauses for a moment in the video to marvel: when you add no-arbitrage condition to the standard axioms of mathematics, he says, the entire field of financial engineering “blossoms” out.

His colleague frames the no-arbitrage axiom joyfully:

Either we get a formula [so we win mathematically]. Or it’s violated and we make free money. Either way, we win.

Towards the end of the video, Doug discusses reflexive pushbacks he’s encountered after teaching this.

“One piece of pushback is typically, well, maybe it’s just that with stock prices, you don’t really know the probabilities. So it’s just a matter of knowing the right probabilities— if you could really discover somehow what the true probabilities were, then it would be better to use them [than the risk neutral probabilities].”

Doug’s rebuttal shows how you would still be arbed.

“I’m going to give you an example to debunk that idea. And I call this example the coin flip contract. So I’m going to postulate that there’s a company, a corporation, that finances itself, not by selling stock, but by selling what they call coin flip contracts. And the corporation has gone to great trouble and expense to manufacture a perfect coin, meaning a coin that is exactly 50% to be heads and 50% to be tails every time it’s flipped. So the probabilities are always 1 half and 1 half guaranteed…

You can watch the video, but I paraphrased it here as well. Here’s how it works.

A company issues coin-flip contracts based on a provably fair coin. The contract pays $150 on heads, $75 on tails. These trade in a secondary market at $100. Interest rate is 0%.

So we know everything. The probabilities aren’t hidden or estimated. They’re printed on the coin: p = ½.

Now: what’s the no-arbitrage price of a 110-strike call on this contract?

p̂ = (100 − 75) / (150 − 75) = 

Call value = ⅓ × $40 + ⅔ × $0 = $13.33

Delta = (40 − 0) / (150 − 75) = 8/15 of a contract

Now suppose you say: I know better. The real probabilities are ½ and ½, and I’m not going to ignore them. Expected payoff is ½ × $40 = $20. So you buy the call from me at $20.

Here’s what I do next. I’m short the call. I immediately buy 8/15 of a contract to hedge.

Heads: My 8/15 position gains 8/15 × $50 = $26.67. Plus your $20 premium, I have $46.67. I owe you $40 (I have to buy the contract at $150 and sell it to you at $110). Net: +$6.67.

Tails: My 8/15 position loses 8/15 × $25 = $13.33. But I have your $20 premium. Net: +$6.67.

Every time. Both states. Guaranteed $6.67. I haven’t predicted anything. I don’t care what the coin does.

What did you get? Heads: gain $40 on the option, paid $20, net +$20. Tails: lose your $20 premium, net −$20. You’ve turned a coin flip into a coin flip — a $20 bet where you win or lose based on what the coin does.

If you try to hedge back? Doesn’t matter how you move delta. Win more on heads, lose more on tails. Move it down: vice versa. The best you can do is lock in a guaranteed $6.67 loss.

You had perfect information about the true probability….and you still got arbed buying the calls (you should have bought the contract!).

The market-maker doesn’t need a view on the coin, just the ability to trade the underlying and the derivative simultaneously. And acquiring the knowledge to cross the “bridge of asses.”


A random personal thought:

I suspect is kind of triggering for some people. It offends one’s sensibilities to think

that understanding derivative pricing ends up trumping knowledge about the true odds of things.

It’s like you spend all this time researching and learning and at the end of the day some market-maker knows just enough to not trade at the wrong price with you anyway. I’m overstating that reality, getting picked-off is real and market-makers are rightfully paranoid. But I guess that’s why I’m drawn to replication as a way of thinking. A trader is just looking for some free money when your bid or offer presents a contradiction. And that hunt makes all prices a little smarter, which, is a public good (but also a frustrating result for traders themselves, which is why the job is always uphill. A byproduct of your success is a smaller TAM).

Just to be thorough, this replication thing applies mostly to derivatives. The arb needs to be able to trade the derivative and the underlying and all advantage comes from the relationship between the two. The arb is useless without relative value.

Related learning:

🔗 Understanding Risk-Neutral Probability | Moontower

🖥️Moontower Presentation on Black Scholes “As a Trading Strategy” Slides

  • The slides for that presentation are based on this post: The Intuition Behind The Black-Scholes Equation
  • There’s also a video where I do this as a presentation for the Moontower Community. This is an unlisted vid so please don’t share widely:

[UPDATED]

As I expected, the post how to get arbed with perfect info would trip people up. I didn’t expect confusion because I thought Professor Doug Costa, whose explanation is featured in that post, was itself confusing. But because the concept of replication is hard and feels like it violates the good. It’s triggering. It means you can know the truth and still get arbed. Again, this is why I call it the pons asinorum of finance.

A reader brought it up in our Discord so I’m going to share the discussion here as he felt like our back and forth helped.

Before getting to the conversation, let’s refresh the problem Doug set up:

A company issues contracts based on a provably fair coin. The contract pays $150 on heads, $75 on tails. It trades at $100. Interest rate is 0%.

You calculate the true expected value of the 110 call using the true probability of 50%.

It’s worth $20 because it has a 50% chance of being $40 in-the-money.

You pay $20 for it (but even if you paid a bit less for an unambiguously positive EV trade, this analysis will hold. I just want to stay with Professor’s example)

The dealer sells it to you, hedges with 8/15 of the underlying contract, and locks in $6.67 profit in both states. Pure arb.

You had perfect information about the true probability and you still got arbed. The dealer made money in all scenarios, trading the call at fair value with you.

Doug is showing how the real-world probability doesn’t matter to the derivatives trader if they can also trade the underlying. In this case, the underlying is mispriced, but the dealer doesn’t know that. All the dealer cares about is whether the relationship between the derivative price and the underlying price is mispriced. In this contrived example, the mispricing was more profitable than knowing the true probabilities.

And to add something Doug doesn’t mention…if the investor knew the stock was underpriced and bought that instead, they’d have a positive EV trade (the fair price of the stock is $112.50) but they are still worse off than the dealer who knows the relative value of the 2 securities is wrong and gets to make a profit in all scenarios.

This is a good place to insert the chat.

Reader: I see, so the main point is we can converge a spread by trading two things instead of betting on one.

Kris: In a world with no derivatives, you’re left with having to be good at guessing real-world probabilities, but derivatives are their own source of possible edge that doesn’t inherit from knowledge of the future but from relative mispricings between the derivative and the underlying.

It’s obvious that being able to handicap probabilities would be a source of edge, but it’s quite subtle that once you introduce derivatives and the idea of replication, there becomes a source of profit that doesn’t rely on such an ability.

Reader: Right, so it’s instructive in giving one more spread to look at. If you used a put in your example, then the dealer would lose because they’d be too short. Then a dealer that actually has no information and sells both sides ends up $0. This example is picking the (long) side where it wins.

Kris: Yeah, the underlying in this example is too cheap RELATIVE to the call option.

If the call option was $13.33, then from the vantage point of real-world probability, both the underlying and call are too cheap, but they are priced correctly with respect to each other.

Which makes the point — if a derivative and underlying are correctly priced to each other, then the real-world probability is not important to the dealer. The dealer only cares about the relative values.

You can just compute the Sharpe of buying one vs the other I suppose to see which is better (that’s one lens). The call is more underpriced in % terms, 3.33 when it’s worth 20. But it’s more volatile as it will lose all of its value when it loses.

I’d just stick them both in a Kelly calculator in Claude or something and whichever one it says bet more on is the better one lol.

There are some important implications here. And brain damage — investor brain and derivatives brain collision.

The goal is that derivativesbrainskill.md becomes something one calls as needed, like Neo downloading kung fu. But you don’t wanna get carried away with it and shoot it at everything in life. It’s this weird artificial thing that works in a replication context, but it’s also not artificial in that its violation presents hard cash arbitrage!

That’s the end of the chat, but let me add one more thing to make you feel better if it’s still foggy.

I’ve seen this subtlety trip up seasoned options traders where they take B-S pricing to mean that the forward for a stock is stock grown at the risk-free rate (RFR), but this is ONLY true in a world where you can trade the underlying AND the options. Outside the context of replication, you cannot make that assumption.

Struggling with this idea is entirely forgivable. I mean, the realization that you could use RFR as the discount rate was a revolutionary breakthrough. Bachelier figured out option pricing in the early 1900s, but he and his contemporaries were stumped by what rate to discount the payoffs.

Later academics wondered if you should use something like the required return from CAPM or something, but it was the whole idea that if you trade a derivative vs the underlying against one another, then you can have equivalent payoffs and therefore it’s riskless to go long one and short the other. If it’s riskless, then RFR is the appropriate discount rate.

Warren Buffett sees the necessity of agnostic dealers using the RFR to price options in arbitrage-free ways as an opportunity. He asserts that put options are overpriced because they use too low of a discount rate, but the dealers don’t care so long as they can trade the underlying, they can arb any other rate assumption. Again, so long as “they can trade the underlying.”

This single idea allows derivatives traders who know nothing about the fundamentals of securities to make money in a sea of people who do. It’s quite profound and not a small part behind why I think vol trading is easier than directional trading.

hungry eyes

I was at the Collective meet-up in Menlo Park this week (this was the 3rd time I’ve attended and it’s always a great way to connect with investors and just amazingly bright people. I always feel like an ape in this group, but that’s better than the opposite). Shannon, faciliator extraodinaire, gives guest prompts beforehand so they are prepared, including some fun ones like this icebreaker:

share a song that lifted their spirits and why

My answer is Hungry Eyes.

The backstory:

My friend Matt’s bachelor party was in Costa Rica in the early 2010s. We rented a dope house right on the beach. About 15 guys flew in for it. On arrival day, the first fellas claim the best rooms and all that. There’s that dynamic y’all know. Mixing your childhood friends with your college friends, work friends and so on. We’re pregaming before going out for the night and it just feels kinda tense.

Everone down’s the parting shot, the van’s here. We file out, take our seats. It’s quiet as we pull onto a bumpy road. Matt connects his phone to the van’s sound system and throws on a playlist.

That unmistakable sound of 80s kitsch.

Hungry Eyes. Vocals kick in, mood starts to change.

By the time we get to the hook, it’s a full-blown Almost Famous bus scene.

All was copacetic from that point. One of my favorite memories period.

the real Y2k event

About 15 years ago, I read Drew Magary’s sci-fi novel The Postmortal. The book imagines a society that has created a pill of immortality. Your aging stops at the moment in time when you take the pill although it’s still possible to get hit by a car and die.

Civilization reorganizes around this new technology. Marriage contracts have a shelf life of 20 years. This reminded me of Larry David and Cheryl’s tiff, where Larry gets yet another self-induced cold shoulder from his wife, pressing his case that “til death do us part” means he’s free to see other people in the afterlife.

I went to the internet for a reminder of other outputs from the Postmortal world:

  • The Rise of “End Specialists”: Due to severe overpopulation and the lack of natural deaths, the government creates specialized roles to handle population control, with characters like the protagonist, John Farrell, working as “End Specialists”.
  • Widespread Violence and Dystopia: Society breaks down as “Greenie” environmental terrorists and pro-death protesters target those who have taken the cure.
  • The “Cycle” Trend: People adopt hedonistic lifestyles, traveling excessively or changing careers, as they anticipate centuries of life ahead.
  • International Reaction: Countries like China ban the cure and tattoo citizens with their birthdates, while others, such as Russia, militarize their “postmortal” population.
  • The “Correction”: The novel, told through diary entries, news reports, and blog posts, follows the decline of civilization into a “pre-apocalyptic” state, culminating in the “Correction”.

I’m not a regular sci-fi reader, but I should be since I find this recipe of change one major assumption about how the world works and then see how it propagates quite fun. (I am about to re-read Brave New World!)

In the vein of that recipe, there’s a short story I’ve had swirling in the back of my head for a decade. It’s never gonna see the light of day because

a) it’s not a priority and

b) its premise is probably going to happen, spoiling the story

It’s the story of everyone’s private info being leaked on the web. Tax returns, bloodwork, nude photos, Nest footage, emails, DMs, location history. The real Y2K event.

The Postmortal model strongly influenced how I thought about it. There would be a minority of people, like the pro-death protesters who opted out of taking the pill, who were viewed as some anti-progress hippie. It would be the group of people who opted out of looking at other’s private data.

Think of it as a voluntary non-proliferation of grievance. I value whatever privacy remained as of 2026, I assume you do too. We are all adults. We agree to just not look. And society cleaves between the lookers and the ostriches. There’s a whole sci-fi book to be written about every aspect of this.

One of my favorite movies did a skit that would resemble dating in such a world. I love the moment when it “hits” Steve Guttenberg, “It says all that?”

The idea of a non-looker might have been remotely possible when there was friction to sorting and searching through petabytes of files.

But when it’s all leaked, that friction will be gone.

“Hey Claude, have any good friends talked shit about me?”

About a year ago, my family went on a CA gold rush tour at Marshall Gold Discovery Park in Coloma. Strong recommend by the way. The guide is an absolute treasure of historical knowledge. Anyway, you see how the indigenous lived in those lands before the settlers arrived. Touring the site, I was viscerally struck by the lack of privacy that their way of life entailed. Large families coexist in tight tent-like structures. I had to be the one who asked, not quite in these words but with a mix of diplomacy and subtle gestures, “Where did they screw?” As you might guess, tribes didn’t need to do a birds and bees talk. It’s more of a show without the tell.

As tech zooms forward, do social norms loop back to prehistory?

N² – n: why shorting is mathematically cursed

Recall the levered silver flows post where we see the quick math of levered ETFs. For a fund to maintain its mandated exposure, the amount of $$ worth of reference asset they need to trade at the close of the business day is:

x(x - 1) * percent change in the reference asset * prior day AUM

where x = leverage factor

examples of x:
x=2 double long 
x=-1 inverse ETF
x= 3 triple long
x= -2 double inverse

This isn’t just a levered ETF thing. The -1 leverage factor is exactly the same as just a vanilla short position. It’s a sneaky reason why the shorting is mathematically challenged.

The easiest way to think of this as an individual investor is to imagine you have an account value of $100. The account is holding $100 in cash, but it’s the proceeds from shorting a $100 stock (assume you don’t need any excess margin to maintain the short). If the stock falls to $50, your account value is now $150 (your cash + $50 mark-to-market profit on the short). You earned a 50% return on a 50% drop in the stock.

Now what?

If the stock falls another 50%, you make $25.

$25/$150 = 16.7%

If you want to maintain the same exposure so that you make 50% on your account on that second 50% drop, you would have needed to short more shares at $50.

How many more dollars’ worth of stock?

-1 (-1 -1) x -50% x $100 = -$100

You needed to sell an additional $100 worth of stock or 2 more shares at $50. Then on that last leg down, you would have made $25 on 3 shares total or $75.

$75 profit /$150 account value = 50% return

Learn more:

🔗 The difficulty with shorting and inverse positions.

Moontower #310

In this issue:

  • post-privacy: musings as we hear more about Mythos and quantum computing
  • N² – n: why shorting is mathematically cursed
  • math shortcuts traders know by heart
  • almost famous

Friends,

Post-Privacy

About 15 years ago, I read Drew Magary’s sci-fi novel The Postmortal. The book imagines a society that has created a pill of immortality. Your aging stops at the moment in time when you take the pill although it’s still possible to get hit by a car and die.

Civilization reorganizes around this new technology. Marriage contracts have a shelf life of 20 years. This reminded me of Larry David and Cheryl’s tiff, where Larry gets yet another self-induced cold shoulder from his wife, pressing his case that “til death do us part” means he’s free to see other people in the afterlife.

I went to the internet for a reminder of other outputs from the Postmortal world:

  • The Rise of “End Specialists”: Due to severe overpopulation and the lack of natural deaths, the government creates specialized roles to handle population control, with characters like the protagonist, John Farrell, working as “End Specialists”.
  • Widespread Violence and Dystopia: Society breaks down as “Greenie” environmental terrorists and pro-death protesters target those who have taken the cure.
  • The “Cycle” Trend: People adopt hedonistic lifestyles, traveling excessively or changing careers, as they anticipate centuries of life ahead.
  • International Reaction: Countries like China ban the cure and tattoo citizens with their birthdates, while others, such as Russia, militarize their “postmortal” population.
  • The “Correction”: The novel, told through diary entries, news reports, and blog posts, follows the decline of civilization into a “pre-apocalyptic” state, culminating in the “Correction”.

I’m not a regular sci-fi reader, but I should be since I find this recipe of change one major assumption about how the world works and then see how it propagates quite fun. (I am about to re-read Brave New World!)

In the vein of that recipe, there’s a short story I’ve had swirling in the back of my head for a decade. It’s never gonna see the light of day because

a) it’s not a priority and

b) its premise is probably going to happen, spoiling the story

It’s the story of everyone’s private info being leaked on the web. Tax returns, bloodwork, nude photos, Nest footage, emails, DMs, location history. The real Y2K event.

The Postmortal model strongly influenced how I thought about it. There would be a minority of people, like the pro-death protesters who opted out of taking the pill, who were viewed as some anti-progress hippie. It would be the group of people who opted out of looking at other’s private data.

Think of it as a voluntary non-proliferation of grievance. I value whatever privacy remained as of 2026, I assume you do too. We are all adults. We agree to just not look. And society cleaves between the lookers and the ostriches. There’s a whole sci-fi book to be written about every aspect of this.

One of my favorite movies did a skit that would resemble dating in such a world. I love the moment when it “hits” Steve Guttenberg, “It says all that?”

The idea of a non-looker might have been remotely possible when there was friction to sorting and searching through petabytes of files.

But when it’s all leaked, that friction will be gone.

“Hey Claude, have any good friends talked shit about me?”

About a year ago, my family went on a CA gold rush tour at Marshall Gold Discovery Park in Coloma. Strong recommend by the way. The guide is an absolute treasure of historical knowledge. Anyway, you see how the indigenous lived in those lands before the settlers arrived. Touring the site, I was viscerally struck by the lack of privacy that their way of life entailed. Large families coexist in tight tent-like structures. I had to be the one who asked, not quite in these words but with a mix of diplomacy and subtle gestures, “Where did they screw?” As you might guess, tribes didn’t need to do a birds and bees talk. It’s more of a show without the tell.

As tech zooms forward, do social norms loop back to prehistory?


Money Angle

I made this joke a couple weeks ago. Except for it wasn’t a joke. I really multiplied 25×35 this way while sitting at my desk.

To spell out the link to investing math:

What did we notice?

a * b = Mean² − MAD² (where MAD = mean absolute deviation)

As soon as numbers deviate from the mean, their product is dragged down, even if the mean is unchanged. More deviation, more drag. And what is deviation? Volatility.

Bridging middle school math to investing math

In investing, we compound, or multiply returns. So even if the mean of two returns is identical, the dispersion between them matters. Not just matters. It matters quadratically.

No dispersion: The arithmetic mean of (8, 8) is 8. The geometric mean of (8, 8) is √(8×8) = 8.

With dispersion: The arithmetic mean of (5, 11) is still 8. But the geometric mean of (5, 11) is √(5×11) = ~7.4.

If you earn 10% on an investment and then lose 10%, your mean return is 0, but your actual compounded (geometric) return is 1 − √(1.1 × 0.9) = −0.50%.

Now increase the volatility: earn 40%, lose 40%. Mean return is still 0. Compounded return? 1 − √(1.4 × 0.6) = −8.3%.

The drag on your returns is a function of squared deviation. Put simply:

Compounded Return = Average Return − σ²/2


How many unique pairs from N items?

N² – n shows up in investing as well!

Recall the levered silver flows post where we see the quick math of levered ETFs. For a fund to maintain its mandated exposure, the amount of $$ worth of reference asset they need to trade at the close of the business day is:

x(x - 1) * percent change in the reference asset * prior day AUM

where x = leverage factor

examples of x:
x=2 double long 
x=-1 inverse ETF
x= 3 triple long
x= -2 double inverse

This isn’t just a levered ETF thing. The -1 leverage factor is exactly the same as just a vanilla short position. It’s a sneaky reason why the shorting is mathematically challenged.

The easiest way to think of this as an individual investor is to imagine you have an account value of $100. The account is holding $100 in cash, but it’s the proceeds from shorting a $100 stock (assume you don’t need any excess margin to maintain the short). If the stock falls to $50, your account value is now $150 (your cash + $50 mark-to-market profit on the short). You earned a 50% return on a 50% drop in the stock.

Now what?

If the stock falls another 50%, you make $25.

$25/$150 = 16.7%

If you want to maintain the same exposure so that you make 50% on your account on that second 50% drop, you would have needed to short more shares at $50.

How many more dollars’ worth of stock?

-1 (-1 -1) x -50% x $100 = -$100

You needed to sell an additional $100 worth of stock or 2 more shares at $50. Then on that last leg down, you would have made $25 on 3 shares total or $75.

$75 profit /$150 account value = 50% return

Learn more:

🔗 The difficulty with shorting and inverse positions.


Money Angle for Masochists

People like little tricks. I published this article on X and it got over a thousand likes which is 3 standard dev engagement for me (probably. I’m going off feel.)

🧠Math Shortcuts Traders Know By Heart

A random smattering from it:

Straddle to Vol

Implied Correlation

Implied correlation ~ index variance / weighted average stock variance

Using implied vols instead:

Implied correlation ~ (index volatility / weighted average stock volatility)²

Example:

If the SPX is 15% vol and a typical stock in the index is 30% vol, implied correlation is (.15/.30)² = .25

The Moontower Rule of 70

This is related to the Rule of 72 but allows you to solve for the CAGR if you know how much your money has grown in X years.

CAGR = 70% * (doublings/years)

Example:

Your home is up 8x in 50 years.

What’s the CAGR?

8 is 3 doublings

70% * (3/50) = 4.2%

Doublings might sound like a complicated measure, but you should get up to 2¹⁰ as quickly as you know your multiplication table for 12s.

If something is up 50x, that’s somewhere between 2⁵ and 2⁶ or about 5.5 doublings.

And just like that, you can estimate log base-2 fairly quickly for any number up to 1024!


Finally I published this tool on the website to estimate slippage:

📱Square Root Impact Calculator

This Week In The Options Trench

Last week, we talked about trading as a business. This week, we talk about options market making.

Some of the topics here were covered in further depth in Thursday’s half rant/half insider look: market maker privilege


From My Actual Life

I was at the Collective meet-up in Menlo Park this week (this was the 3rd time I’ve attended and it’s always a great way to connect with investors and just amazingly bright people. I always feel like an ape in this group, but that’s better than the opposite). Shannon, faciliator extraodinaire, gives guest prompts beforehand so they are prepared, including some fun ones like this icebreaker:

share a song that lifted their spirits and why

My answer is Hungry Eyes.

The backstory:

My friend Matt’s bachelor party was in Costa Rica in the early 2010s. We rented a dope house right on the beach. About 15 guys flew in for it. On arrival day, the first fellas claim the best rooms and all that. There’s that dynamic y’all know. Mixing your childhood friends with your college friends, work friends and so on. We’re pregaming before going out for the night and it just feels kinda tense.

Everone down’s the parting shot, the van’s here. We file out, take our seats. It’s quiet as we pull onto a bumpy road. Matt connects his phone to the van’s sound system and throws on a playlist.

That unmistakable sound of 80s kitsch.

Hungry Eyes. Vocals kick in, mood starts to change.

By the time we get to the hook, it’s a full-blown Almost Famous bus scene.

All was copacetic from that point. One of my favorite memories period.

Such a great prompt Shannon!

Stay groovy

☮️

 

Moontower Weekly Recap

Posts:

not all averages are created equal

What did we notice?

a * b = Mean² − MAD² (where MAD = mean absolute deviation)

As soon as numbers deviate from the mean, their product is dragged down — even if the mean is unchanged. More deviation, more drag. And what is deviation? Volatility.

Bridging middle school math to investing math

In investing, we compound, or multiply returns. So even if the mean of two returns is identical, the dispersion between them matters. Not just matters. It matters quadratically.

No dispersion: The arithmetic mean of (8, 8) is 8. The geometric mean of (8, 8) is √(8×8) = 8.

With dispersion: The arithmetic mean of (5, 11) is still 8. But the geometric mean of (5, 11) is √(5×11) = ~7.4.

If you earn 10% on an investment and then lose 10%, your mean return is 0, but your actual compounded (geometric) return is 1 − √(1.1 × 0.9) = −0.50%.

Now increase the volatility: earn 40%, lose 40%. Mean return is still 0. Compounded return? 1 − √(1.4 × 0.6) = −8.3%.

The drag on your returns is a function of squared deviation. Put simply:

Compounded Return = Average Return − σ²/2

From Text ➡️ Dashboards

We’ll start with some useful resources for the learners, then move to material for traders ready to do stuff.

CME Trading Simulator

While looking up data on CME’s website I came across this amazing, 100% free learning environment with live ticking data:

https://www.cmegroup.com/education/practice/about-the-trading-simulator

My demo vid:

Implied Forwards and Jensen (not Huang)

As I mentioned a few weeks ago, I’ve been re-publishing educational posts on X Articles which serves as spaced repetition practice for long-time readers or just bringing them to the attention of new readers who would be better served by a steady IV drip (no pun) of archival posts than attempting to raw dog the compendium.

These are 2 I think you’ll like:

From Text ➡️ Dashboards

I bought silver a year ago because of Alexander Campbell’s substack. He does a great job showing his thinking behind ideas with data and charts. This alone is helpful because it reveals “these are the datasets a smart guy pays attention to”.

AI tools are shortening the distance between “Hey, that’s neat, I should add that to my dashboard” and like actually adding it to your dashboard. Even if you stink at the world’s most popular coding tool —- Excel (see Will Claude Eat Excel?)

I used one of Alexander’s recent posts to whip up a silver dashboard. I’ll explain what I did, what I added, and share it with you so you can duplicate it as your own starting template. But the broader lesson is that agents are going to make all content “interactive”, we’re just not used to those patterns. Yet.

It is just another staple in my belief that as the cost of inference approaches zero the value of unique data increases. At one time oil was used for light and warmth. But when the automobile was born it claimed the largest cut of the barrel. If data is oil, more people everday are unlocking the ability to “refine” it by transforming it, building new logic and visualizations.

Let’s get to creating the dashboard.

One giant disclaimer:

Expectations are everything. AI is not going to one-shot this project. I’d estimate it reduced a 6 hour task to 90 minutes. Indulge my parental tone for a sec. It would be a mistake to permit this to let you work less in the spirit of that stupid Genspark AI Super Bowl ad. Instead, you should see this as “I can do 4x as many projects as I could before.” This may sound like hustle-porn (you know it when you see it, right?) but if that’s your attitude I offer 2 observations:

  1. You probably don’t like your work. If you do, then giant increases in productivity allow you to get even closer to the the best parts of your work.
  2. Regardless, this goldilocks period will end, everyone will know how to use the 21st century calculator, and 4x as productive will become the new baseline. Red queen. A very smart guy who used to work with me (he was the one who did a lot of the math and technical stuff that we’d need) works in real estate now. I suspect he’s in the top 1% of nerd in that industry. He recently applied for a job and failed a test that was intended to deomonstrate how resourceful he was in the context of AI tools. Knowing him as well I do, I found this shocking because he’s the kind of person that always does well on formal exams. Granted, he admits he’s not not using AI as much more than a google replacement. That this exam exists and a person like him failed, suggests the goldilocks period may already be drawing to a close. It’s not like real estate companies are living on the bleeding edge either.

On a positive note, I think you learn just as much in the compressed time as if you spent 6 hours. Instead of fumbling around with semicolons and syntax you learn how the internet is stitched together and how technologies talk to each other. Embrace manager mode.

Enough of that, moving on to the meat.

Step 1

Give Claude Alexander’s post Silver Moon.

Tell Claude to generate a dashboard in Google sheets inspired by all the arguments in the article. Examples include:

  • SOFR Rate — funding cost baseline for carry trades
  • Funding Rate — broker-specific borrowing cost (SOFR + spread)
  • ETF Prices — SLV, GLD, UUP, SIL, SILJ for cross-asset context
  • Derived Spot — London silver price via SLV ÷ oz/share
  • Futures Curve — next 5 liquid contracts with live prices
  • Expiry & DTE — days to expiration for roll timing
  • Basis — futures premium/discount to spot ($, %)
  • Annualized Carry — implied yield from contango/backwardation
  • Shanghai Premium — China price vs COMEX (arbitrage signal)
  • COMEX Inventory — registered/eligible silver (physical supply)
  • COT Positioning — commercial vs speculative positioning (sentiment)
  • SLV Shares Outstanding — ETF creation/redemption flows
  • SLV Oz in Trust — physical silver backing
  • Implied Volatility — options market fear/complacency

There are 2 key features that operate the sheet

Control Tab

We include a control tab for sourcing the relevant data. All of Alexander’s sources were public but whether you can automatically connect to them is another matter.

That’s why I like ot have a control tab which triages which sources are MANUAL, API, or SCRAPED.

Google App Scripts

This is the equivalent of VBA behind Google Sheets but it’s in Javascript which Claude will happily write for you whether you want to wire the sheet up to APIs or scrape.

Step 3

Troubleshoot. Claude’s sheet gets you 75% of the way in moments and then you spend 90 minutes on this step.

Most of the scraping failed. Sometime because Claude referenced a stale website. But even when you update the correct URL you quickly find that financial data websites tend to lockdown the ability to scrape.

I worked through each data source, iterating with Claude to find automatic (and free) solutions or writing AppScripts usually falling back to “manual” when necessary.

Finally, as I made changes to the spreadsheet there’s the expected debugging and tracing of formulas that happen whenever you delete stuff from a sheet someone else (in this case a bot) made. Pound ref and N/A always show up for a gangbang.

Step 4

Add spice to taste.

Alexander + Claude leapfrogged a lot of work. But there’s still plenty of room for your own judgement and creativity.

For example, when it comes to COT I use the fantastic tools on the CME website which aggregate both futures and options positioning.

I also added leveraged ETF tickers and logic that estimates how much silver there is to buy/sell based on their daily rebalances and even a first pass at computing market impact (see appendix).

Finally, I included a placeholder picture to compute the implied term structure from the SLV options term structure by backing out hard-to-borrow rates.

from moontower data infra

The google sheet is mostly self-explanatory but even if you get stuck just use Gemini in sheets or the Claude extension in a browser to mentor you along.

Here ya go:

🔗silver_dashboard

vega’s finishing move

“Vega wounds, gamma kills” is an esoteric expression that’s still common enough that you can google it and return a bunch of hits. It’s a reasonable acknowledgement of realized vol p/l being quadratic with respect to how large a stock move is.

I’ve recently been cross-posting my writing on how this works on X since they’ve been pushing their Articles functionality.*

* A lot of people (and bots) are boosting these. I am treating these releases as a spaced repetition exercise for long-time readers. Analytics show very high engagement so X must be signal-boosting them. This is a 1-year chart. The recent spike is Articles:
A lot of people cry about the growth of Articles longform on X but twitter is a long way from the community it used to be anyway, so don’t really care as much if I’m burning the house for warmth in the eyes of diehards. Although I don’t think I am since the reason I came to twitter in the first place was to find stuff to read and learn not hot takes. It's different things to different people and when they suppressed Substack it shifted the appeal for me. This is some re-alignment, albeit on their terms. Fine. It's a reasonable negotiation. 

The Articles I’ve posted on the theme of non-linearity in options

This last one is about the “gamma” of vega. For OTM options, the vega of the option, its sensitivity to changes in IV, itself changes. We call that second-order sensitivity volga. Volga is to vega as gamma is to delta.

I don’t have a dedicated post on vanna I’ll cover it briefly right now.

Vanna

The definition of vanna you are most familiar with is change in delta due to change volYou have heard of this because of dealer flow discourse. For example, if dealers are long calls and hedged with short shares, as vol declines on a rally, their long option deltas shrink. If this happens faster than their long gamma increases their net delta, then they will have stock to buy to rebalance to neutral.

But vanna has an alternate definition. One that dominates our understanding of trading skew:

the change in vega for a change in underlying

If you are short puts on a risk reversal as the stock falls, you get shorter vol and vice versa. Your vega changes as the spot moves.


I suspect the “gamma kills” idea is popular because it’s a common experience. Option volume is dominated by near-dated expiries where gamma and theta dominate the p/l. Most people will simply never feel what it’s like to be wrecked or celebrated by volga or by a delta-hedged skew position. They might know what it’s like to get crushed to vega directly, but even that will be less familiar than realized vol-driven performance, given typical trade duration.

But I can tell you that my most memorable p/ls have all had vanna and volga at the scene. 2020 was especially dramatic in this regard as an explosion in vols led to position sizes exploding and finding myself sitting on a growing pile of vega that varied from “increasing in demand” to “panic bid”.

Qualitatively, the repricing of vega is significant because vega is illiquid. You can delta-hedge your way to a replication of a relatively short-dated option. In a sense, the volume in the underlying itself is a form of liquidity for options even if the options themselves are illiquid. But this idea extending to a long-dated option is only theoretical. In practice, if you are short a long-dated straddle that doubles in value, the mark and its accompanying hit to your capital may leave you in a forced position. You don’t have the luxury of manufacturing that vol via delta-hedges for a year.

This will be exacerbated if you were short, say 100k 1-year vega, but because of vol exploding you find that you are now short 200k vega. Maybe you can stomach the p/l hit due to vega, but you might not be able to hold the new position size. If Street Fighter’s Vega had Mortal Kombat finishing moves, they would be called vanna and volga.

The recent silver move has been so crazy that vega p/l has dominated realized p/l (realized p/l is the tug of war between gamma p/l from the equation at the opening of the post and theta). It’s an outstanding case study in how higher-order effects are fundamental to understanding options.

We’ll begin with a classic “trap” trade.

Imagine back on Dec 31st, with SLV at $64.44, you bought put and sold call on the 60/100 risk reversal delta neutral with the plan to hedge the delta at the close each day.

This position starts:

  • Long vega
  • Long gamma
  • Paying theta (you laid out extrinsic option premium)
  • The 60 put you buy is 59.6% IV, the 100 call you sell is 78.7% IV

The risk reversal would have cost you $2.89 of option premium since the put is much closer to at-the-money.

💡I used the Moontower Attribution Visualizer to compile data for this article

What happens between when you opened the trade and the snapshot I took this past Tuesday, 1/27/26, when the stock has risen to $97.09 and the options still have over 3 weeks to expiry?

This daily hedged risk reversal has lost $.82 net.

You are short gamma albeit less gamma than you were long when you initiated the trade because the ATM vol is so much higher!

More things to note:

The IV on your long strike: 59.6% → 99.6% or 40 vol points!

The IV on your short strike: 78.7% → 99.4% or 25 vol points.

You won on the vega spread between the options.

So why did you lose money? Was it the realized vol? That seems suspect, after all, you were long gamma at the start of a big move. You’re short gamma now, yes, but it’s not even that much.

The clue is right there in the table:

You went from long 5 cents of vega to short almost 14 cents of vega as your short strike is now at-the-money.

Yes, the vol on your short strike went up much less than the IV of your short strike, BUT it went up when the vega of that strike was much larger than the vega of the strike you were long.

In short, you were getting shorter vol as vol was ripping higher. The vega p/l totally swamps the realized p/l:

from a long option holder point of view of a daily delta-hedged position

Here’s a snapshot from the interim on 1/13/2026, when the stock had rallied almost to the midpoint of the 60 and 100 strikes.

The 60 put you own has gone up over 7 points, and the 100 strike you are short barely budged from the elevated vol from the original skew. You are up $.37 on the hedged position…but your risk is changing quickly. You are now short vega, flat gamma, and collecting theta.

Wait, you are collecting theta without being short gamma.

Technically your gamma is very slightly short, but the point stands — in fact, if the 60 put IV was a bit lower you could even be long gamma and collecting theta. 

New option traders will brag about such a favorable greek profile. An experienced trader knows that the ratio is an indication that you are simply short a premium IV and premium IVs happen near the prices where hell breaks loose. As I’ve said many times…the skew just tells you where the bodies are:

In sum,

Despite these options not being “long-dated” their performance has been dominated by IV. In this case, mostly through vanna which is best seen at the interim.

  • Despite the 60 put vol increasing 7 points, the vega of the option halved as it was now much further from ATM (it went from being a -33 delta put to -9 delta by 1/13/26)
  • Meanwhile, the 100 call’s vega doubled due to it becoming closer to ATM (it went from a 9 delta call to 21 delta).
  • Note that volga is not playing much of a role in 100 call vega doubling. The change in option vega can’t be due to IV increasing. Why? Because IV didn’t change on the 100 strike during the rally from $64.44 to $78.60!

From the vol convexity article, we know ATM options have no volga. In fact, ATM vega is insensitive to vol level and holding DTE constant, it only depends on the spot price!

But OTM options have a lot of vega to gain if IV increases since IV ripping higher makes all OTM options look closer to ATM as they are “less far away”. Their delta increases (vanna) and their vega increases (volga). In the above example, the 100 call IV did not rip higher by 1/13/26, so we couldn’t see volga in action. The vol only roofed on the strike once the option was close to ATM.

To give volga its due, we should zoom in on Monday when Feb SLV vol ripped higher on silver popping 10% (before giving back nearly half its gain).

We’ll look at a call nearly 14% OTM with less than a month til expiry.

The $1.33 of hedged option p/l for that call is only partially explained by the initial vega of .033 and a vol change of 26 points. The difference could be explained by the fact that the average vega of the call as vol (and stock) increased was probably closer to .05.

26 vol points x .05 vega = $1.30

Since the stock only rose by 6%, we can safely guess that the 50% increase in the vega of the option is mostly driven by volga.

Gamma is not the only killer. Any position that grows faster than the underlying changes contains risk that is not seen in a snapshot. That delta hedged vertical spread or risk reversal might look gamma, theta, and vega neutral today but that profile gets battered as soon the clock ticks and the waves start coming in. The snapshot neutrality is dangerous because it can easily lull you into thinking your risk is smaller than it really is.

Ask anyone who bought an SLV and nat gas 1×2 call spread because “the skew was fat” or because they are “long gamma, collecting theta” how that’s working out?