In the words of Bjork’ 90s indie hit “Oh So Quiet” –It's, oh, so quiet Shhhh, Shhhh, It's, oh, so still Shhhh, Shhhh, You're all alone Shhh, Shhh And so peaceful until…Until… that is the question, and considering it is ‘peaceful’, it's probably best to review the minutes from the Fed as it is signalling that the quiet time is not far from ending soon.FOMC: The Pressure BuildsThe May 6th to 7th Federal Open Market Committee (FOMC) minutes reaffirmed the Fed’s cautious stance, with Chair Powell keeping to the “wait and see” script. But under the surface, the outlook has become more complicated as event risk is getting louder.Clearly, Trump’s Tariffs have created new complications for the Fed’s dual mandate.As the minutes note:“With uncertainty higher due to ‘larger and broader’ than expected tariffs, the Committee may ultimately face a more difficult trade-off between its price stability and full employment mandates.”And this was well before the Trade Court’s decision that the Liberation Day tariffs are illegal under the Economic Emergency Act of 1977, and then it was subsequently overturned 24 hours later by the appeals court.The Fed has flagged increased downside risk to real activity and now sees the probability of recession as nearly equal to its baseline forecast. At the same time, inflation risks for 2025 have been revised upward, though longer-term projections remain skewed to the upside, particularly as inflation expectations creep higher.Seen in these quotes from the minutes:“The staff continued to view the risks around the inflation forecast as skewed to the upside, with recent increases in some measures of inflation expectations raising the possibility that inflation would prove to be more persistent than the baseline projection assumed.”“Many participants reported that firms planned to partially or fully pass on tariff-related cost increases.”To paraphrase Milton Friedman, “Tariffs are not a tax on the sovereign, they are a tax on the consumer.” And this is what is being missed by government officials and the President himself.A counterargument to higher cost is that Fed officials suggested there is a chance of weakening demand, lower immigration driven housing inflation, and competitive pricing tactics. Which would feed back into the risk of recession as mentioned above, and signal that the US is entering a new stagflation era.Seen here:“Several argued that there might be less inflationary pressure for reasons such as reductions of tariff increases from ongoing trade negotiations, less tolerance for price increases by households, a weakening of the economy, reduced housing inflation pressures from lower immigration, or a desire by some firms to increase market share rather than raise prices.”On employment, the labour market remains tight but is potentially vulnerable to hiring pauses as policy and trade risks weigh.“The labour market was seen as ‘broadly in balance’ and the unemployment rate as ‘low.’”“Participants were concerned that tariff uncertainty could lead to a pause in hiring and the labour market to soften in the coming months.”Financial market signals were mixed. Several participants noted an unusual pattern: long-term Treasury yields rose even as the dollar weakened and equities sold off, raising concerns about shifting correlations and safe-haven perceptions.“Some participants commented on a change from the typical pattern... with longer-term Treasury yields rising and the dollar depreciating despite the decline in the prices of equities and other risky assets... [noting] that a durable shift... could have long-lasting implications for the economy.”Monetary framework discussions continue as well. The Fed appears to be reconsidering its post-COVID commitment to flexible average inflation targeting (FAIT). The minutes state:“Participants indicated that they thought it would be appropriate to reconsider the average inflation-targeting language in the Statement on Longer-Run Goals and Monetary Policy Strategy.”An interesting development is putting more rigidity into the mandate currently, suggesting the Fed is looking to ‘safeguard’ policy changes from external political forces.Where does this leave the US and the Fed in the short term? Don’t expect any near-term policy change, but the longer the Fed delays, the steeper the eventual rate cuts may need to be as the risks of a tariff-induced recession lead to the monetary brake being released.The consensus is that by January 2026, a possible 125 basis point will come out of the Federal funds rate, some even are forecasting 175 due to the need to stimulate the economy rather than restrict it. The consensus figure would see the Federal Funds rate landing on the terminal rate of 3.00% to 3.25%, the unknown is when, the size and velocity of reaching this point will be.It is oh so quiet, but it won’t be for long if the Fed is anything to go by.
It's oh so quiet, but for how long?

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The decision to scale (increase the traded lot size of a specific EA) should be based on statistical evidence that indicates your EA has the potential to perform to certain expectations.
Equal weight should be given to the decision to scale, as to the initial decision to deploy an EA. This guide provides an indicative approach on how to put together and action your scaling plan.
Before You Start Your Scaling Plan
Important: this should be an individual plan that is consistent with your personal trading objectives, your EA portfolio, and your personal financial situation (including account size).
We are going to use a starting lot of 0.10 per trade in the examples in this document —you want to adjust this based on your own risk tolerance.
Whatever your chosen lot size start point, EA scaling should be a pre-planned incremental approach, scaling stepwise based on performance metrics you are seeing in your live trading account.
You should also have assessed the current margin usage of your EA portfolio exposure to ensure that any scaling and related increased margin requirements are appropriate to the size of your account.
Suggested Scaling Baseline Requirements
Scaling should only be performed when your EA is performing to what you deem to be a good standard. To make this judgment, you need to set some minimum performance standards.
The past performance of your EA is not a guarantee of future performance. If market conditions change, you must remain vigilant and continue to measure performance on an ongoing basis for every live EA you have.
You need to define the key metrics that are important to you.
Two important metrics to include are:
- The number of trades: to provide some evidence of reliability
- The period of time: to have had exposure to at least some variation in market conditions
Example of how you may lay your metrics out in a table:

Some may choose to include proximity to original expectations of other metrics, such as minimum win rate, average profit in winning trades, and average loss in those that go against you.
It should only be after your metrics are met that lot scaling begins on any specific EA.
Lot Size Scaling Ladder
Below is an example of a performance-based scaling plan assuming a 0.10-lot baseline.
Again, this is indicative. It provides a framework with clear review dates and an approach that illustrates incremental scaling. You must still define a regime that is right for your specific trading objectives.

Risk Guardrails
It is vital to keep an eye on your general account risks and have limits in place that guide your EA use.
Such limits must be constant across all stages of scaling and referenced beyond the risk of a single EA, but to your portfolio as a whole.:
Per-Trade Risk (Nominal)
Trade risk for any one trade should be seen in the context of account size and the dollar risk based on the risk parameters you have set for your EA.
Specify a maximum percentage of the account balance — a $200 loss is more impactful on a $1000 account compared to a $10,000 account.
Stick to what is right for you in terms of your tolerable risk level based on your trading objectives and financial situation. A common suggestion is a 1-2% risk of account equity per trade.
Total Open Exposure
Specifying maximum exposure in the number of EAs open at any time and those that use the same asset class is important for overall portfolio risk management.
There are tools you can use to monitor exposure risk generally, as well as those that can be used to indicate single asset exposure.
Margin Usage
It is always desirable that your set exit approaches and parameter levels are what your exits are based on. It should not be because your margin usage has meant you have moved into a margin call situation.
Specify a minimum level to adhere to and make sure that your account is sufficiently funded. If volatility or slippage rises (e.g., news events or illiquid sessions), reduce lot size temporarily.
Scaling Psychology – Managing “Big Numbers”
As lot sizes rise, your emotions may respond accordingly when you see the larger dollar amounts that your EA is generating.
If you are used to seeing an average profit of $100 and average loss of $50, and suddenly you are seeing significantly bigger numbers, it creates an emotional challenge where you may be tempted to do a “discretionary override”.
Although there are situations, such as major market events, overexposure in a specific asset, or VPS or account system problems, where such intervention may be considered, generally this would distort the actual performance evaluation of your EA and is not encouraged (unless it is pre-planned).
The table below presents some of the generally accepted challenges and offers suggestions on how to manage them.

Your Plan Into Action…
In practical terms, your scaling plan should have two components:
- The key parameters for action on your chosen key metrics
- Specified periodic review times to make your next scaling decision
This is not a race. Having systems in place facilitates creating the opportunity that scaling brings while still mitigating the risks.

You've been using a 30-pip trailing stop for as long as you can remember. It feels professional, manageable and relatively safe.
But during volatile sessions, you see your winners get stopped out prematurely, while low-volatility winners drift back and hit stops that are relatively too tight.
Same 30 pips, different market contexts, but inconsistent in the protection of profit and overall results.
The Fixed-Pip Fallacy?
Traders gravitate toward fixed pip trailing stops because they feel concrete and calculable. The approach is easy to execute, readily automated through platforms like MetaTrader, and aligns with how most people naturally think about profit and loss.
But this simplicity masks a fundamental problem.
A twenty-five pip move in EURUSD during the London open represents an entirely different market event than the same move during the Asian session. The context matters, yet the fixed-pip approach treats them identically.
This becomes even more problematic when you consider different currency pairs. GBPJPY might have an average true range of thirty pips on an hourly chart, while EURGBP shows only ten. The same trailing stop applied to both instruments ignores the reality that volatility varies dramatically across pairs.
Timeframe introduces yet another layer of complexity. Take AUDUSD as an example: a ten-pip move on a four-hour chart barely registers as meaningful price action, but on a five-minute chart it represents a significant swing. The fixed-pip method treats these scenarios as equivalent.
The natural response might be to use something more sophisticated, like an ATR multiple. This accounts for your chosen timeframe, the instrument's normal volatility, and even session differences. But it brings its own complications.
When do you measure the ATR? Do you use the value at entry, knowing it might be distorted by sessional effects? Or do you make it dynamic, which becomes far more complex to implement in practice?
Perhaps there's another way forward that doesn't rely on abstract measures of volatility but instead responds directly to the movement of price in relation to the trade you're actually in—accounting for your lot size and the profit you've already captured.
Maximum Give Back: The Percentage Approach
Instead of asking "how do I protect profit after fifty pips," ask "how do I protect profit after giving back a certain percentage of open gains."
Consider a maximum give-back threshold of 40%. When your trade is up one hundred pips, the trailing stop activates if price retraces forty pips from peak, locking in a minimum of sixty pips.
But when that same trade reaches two hundred fifty pips of profit, the stop adjusts, and now it activates at a one-hundred-pip pullback, securing at least one hundred fifty pips. The stop distance scales naturally with the magnitude of the win you're sitting on.
This creates a logical asymmetry that fixed pip approaches miss entirely. Small winners receive tighter protection. Big winners get room to breathe.
The approach adapts automatically to what the market is actually giving you in real time, without requiring you to predict anything in advance.
You don't need to maintain a reference table where EURUSD gets thirty pips and GBPJPY gets sixty. You don't need different standards for different instruments at all.
The same 40% logic works whether the average true range is high or low, whether volatility is expanding or contracting. It is designed to be more adaptive to regime changes than fixed-pip stops, potentially requiring less manual recalibration as it's responding to the trade itself rather than to abstract measures of what the instrument normally does.
The market tells you how much it's willing to move in your direction, and you protect that information proportionally. Nothing more complicated than that.
Key Parameters to Specify in Your System:
- Maximum Give Back Percent: 30-50% is typical, but is dependent on how much profit retracement you can tolerate.
- Minimum Profit to Activate: In dollar amount or an ATR multiple form entry. This prevents premature exits on tiny winners, e.g., if it has moved 5 pips at 40% that would mean you are only locking in a 3-pip profit.
- Update Frequency: Potentially every bar. More frequent, but there may be issues if there is a limited ability to look at the market (if using some sort of automation, this could be programmed).
Is Maximum Giveback Always the Optimum Trail?
As with many approaches, results can be highly dependent on underlying market conditions. It is important to be balanced.
The table below summarises some observations when maximum giveback has been used as part of automated exits.

The major difference isn’t likely to be an increased win rate. It is about keeping more of your runners during high-volatility price moves rather than donating them back to the market.
It may not always be the best approach, as different strategies often merit different exit approaches.
There are two obvious scenarios where fixed pips may still be worth consideration.
- Very short-term scalping (sub-20 pip targets)
- News trading, where you want instant hard stops
Integrating Maximum Giveback With Your System
You may have other complementary exit filters in place that you already use. Remember, the ideal is often a combination of exits, with whichever is triggered first.
There is no reason why this approach will not work well with approaches such as set stops, take profits and partial closes (where you simply use maximum Giveback in the remainder as well as time-based exits.
Final Thoughts
To use fixed-pip trailing stops irrespective of instrument pricing, volatility, timeframe, and sessional considerations is the trading equivalent of wearing the same jacket in summer and winter.
Maximum Give Back trailing adjusts to the ‘market weather’. It won't make bad trades good, but it could help stop you from cutting your best trades short just because your stop was designed for average conditions.
The market doesn't trade in averages but has specific likely moves dependent on context. Your exits should not be average either.

Multi-Timeframe (MTF) analysis is not just about checking the trend on the daily before trading on the hourly; ideally, it involves examining and aligning context, structure, and timing so that every trade is placed with purpose.
When done correctly, MTF analysis can filter market noise, may help with timing of entry, and assist you in trading with the trending “tide,” not against it.
Why Multi-Timeframe Analysis Matters
Every setup exists within a larger market story, and that story may often define the probability of a successful trade outcome.
Single-timeframe trading leads to the trading equivalent of tunnel vision, where the series of candles in front of you dominate your thinking, even though the broader trend might be shifting.
The most common reason traders may struggle is a false confidence based on a belief they are applying MTF analysis, but in truth, it’s often an ad-hoc, glance, not a structured process.
When signals conflict, doubt creeps in, and traders hesitate, entering too late or exiting too early.
A systematic MTF process restores clarity, allowing you to execute with more conviction and consistency, potentially offering improved trading outcomes and providing some objective evidence as to how well your system is working.
Building Your Timeframe Hierarchy
Like many effective trading approaches, the foundation of a good MTF framework lies in simplicity. The more complex an approach, the less likely it is to be followed fully and the more likely it may impede a potential opportunity.
Three timeframes are usually enough to capture the full picture without cluttering up your chart’s technical picture with enough information to avoid potential contradiction in action.
Each timeframe tells a different part of the story — you want the whole book, not just a single chapter.

Scalpers might work on H1-M15-M5, while longer-term traders might prefer H4-H1-H15.
The key is consistency in approach to build a critical mass of trades that can provide evidence for evaluation.
When all three timeframes align, the probability of at least an initial move in your desired direction may increase.
An MTF breakout will attract traders whose preference for primary timeframe may be M15 AND hourly, AND 4-hourly, so increasing potential momentum in the move simply because more traders are looking at the same breakout than if it occurred on a single timeframe only.
Applying MTF Analysis
A robust system is built on clear, unambiguous statements within your trading plan.
Ideally, you should define what each timeframe contributes to your decision-making process:
- Trend confirmed
- Structure validated
- Entry trigger aligned
- Risk parameters clear
When you enter on a lower timeframe, you are gaining some conviction from the higher one. Use the lower timeframe for fine-tuning and risk control, but if the higher timeframe flips direction, your bias must flip too.
Your original trading idea can be questioned and a decision made accordingly as to whether it is a good decision to stay in the trade or, as a minimum action, trail a stop loss to lock in any gains made to date.
Putting MTF into Action
So, if the goal is to embed MTF logic into your trade decisions, some step-by-step guidance may be useful on how to make this happen
1. Define Your Timeframe Stack
Decide which three timeframes form your trading style-aligned approach.
The key here is that as a starting point, you must “plant your flag” in one set, stick to it and measure to see how well or otherwise it works.
Through doing this, you can refine based on evidence in the future.
One tip I have heard some traders suggest is that the middle timeframe should be at least two times your primary timeframe, and the slowest timeframe at least four times.
2. Build and Use a Checklist
Codify your MTF logic into a repeatable routine of questions to ask, particularly in the early stages of implementing this as you develop your new habit.
Your checklist might include:
- Is the higher-timeframe trend aligned?
- Is the structure supportive?
- Do I have a valid trigger?
- Is risk clearly defined?
This turns MTF from a concept into a practical set of steps that are clear and easy to action.
3. Consider Integrating MTF Into Open Trade Management
MTF isn’t just for entries; it can also be used as part of your exit decision-making.
If your higher timeframe begins showing early signs of reversal, that’s a prompt to exit altogether, scale out through a partial close or tighten stops.
By managing trades through the same multi-timeframe approach that you used to enter, you maintain logical consistency across the entire lifecycle of the trade.
Final Action
Start small. Choose one instrument, one timeframe set, and one strategy to apply it to.
Observe the clarity it adds to your decisions and outcomes. Once you see a positive impact, you have evidence that it may be worth rolling out across other trading strategies you use in your portfolio.
Final Thought
Multi-Timeframe Analysis is not a trading strategy on its own. It is a worthwhile consideration in ALL strategies.
It offers a wider lens through which you see the market’s true structure and potential strength of conviction.
Through aligning context, structure, and execution, you move from chasing an individual group of candles to trading with a more robust support for a decision.
Recent Articles

NVIDIA delivered a resounding answer to AI bubble concerns this morning, reporting third-quarter earnings that surpassed Wall Street expectations and signalling sustained momentum in AI infrastructure spending.
The chip giant posted adjusted earnings of $1.30 per share on revenue of $57.01 billion, beating analyst estimates of $1.26 EPS on $54.92 billion.
Revenue surged 62% year-over-year, with the critical data centre segment delivering $51.2 billion against expectations of $49 billion.

More importantly, NVIDIA projected fourth-quarter revenue of approximately $65 billion, significantly above the $61.66 billion consensus, indicating demand for AI accelerators shows no signs of cooling.
The company's next-generation Blackwell architecture is seeing unprecedented demand from cloud providers building out massive AI infrastructure. CEO Jensen Huang simply stated: "Blackwell sales are off the charts, and cloud GPUs are sold out."
NVIDIA shares had declined nearly 8% in November as prominent investors raised concerns about AI valuations. Peter Thiel's Thiel Macro completely exited its approximately $100 million position, while SoftBank divested $5.8 billion in holdings.
However, the continued capital expenditure by Big Tech customers — Microsoft alone spent nearly $35 billion in its most recent quarter, with roughly half allocated to chips — suggests the buildout phase is far from complete.
Beyond data centres, NVIDIA’s gaming revenue reached $4.3 billion (up 30% year-over-year), professional visualisation generated $760 million (up 56%), and automotive/robotics sales hit $592 million (up 32%).
The near-term trajectory remains strong, with the company continuing to capture the lion's share of AI chip demand in a market showing no signs of saturation.
Experts Split on Bitcoin's Trajectory
Bitcoin is at a vital inflection point, trading around $92,300 after briefly dipping below $90,000 for the first time in seven months.
The pressure stems from retail selling, leveraged trading liquidations, and institutional positioning, creating an environment where experts are split as to whether this is the end of the cycle or just a healthy pullback.

Glassnode data show approximately 65,200 BTC—valued at roughly $6.08 billion—was sold at a loss within 24 hours, indicating capitulation among short-term holders who bought near recent highs.
Yet, while retail investors panic-sell, wallets holding at least 1,000 BTC have increased to 1,384, a four-month high. Over 102,000 whale transactions exceeding $100,000 and 29,000 transactions over $1 million have been made this week, potentially making this the most active whale week of 2025.

This accumulation pattern during fear-driven selloffs has historically preceded medium-term recoveries (though past performance offers no guarantees).
For now, the market remains on a knife's edge, with high volatility seemingly the only certainty.
Fed Still Faces Divide as Data Starts Flowing
The Federal Reserve stands at a crossroads heading into its December 9-10 meeting, with internal divisions threatening to derail what was considered a near-certain third consecutive rate cut.
The released minutes of the October FOMC exposed strongly differing views within the Fed about the December policy decision, with many suggesting no more cuts are needed through the end of 2025.
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Complicating things further is the data pause from the recent 44-day government shutdown. The Labor Department announced that October and November employment data won't be released until December 16 — six days after the FOMC meeting concludes — depriving the Fed of crucial labor market information.
Fed Chair Jerome Powell stated that a December rate cut is "far from a foregone conclusion," and there is "a growing chorus" among officials to "at least wait a cycle" before cutting again.
This represents the highest level of internal discord during Powell's tenure, with predictions of potentially four or five dissents at the December meeting — the most since 1992.
The December meeting will reveal whether the Fed can maintain the credibility needed to navigate a U.S. economy caught between stubborn inflation and (seemingly) weak labour market.
Every data release and Fed official comment between now and then will move markets as investors search for clues about the Fed’s next move.

A market bubble occurs when asset prices rise far beyond any reasonable valuation.
It is driven by speculation, emotion, and the belief that prices will continue rising indefinitely.
For traders, the challenge is more about finding a way to manage a bubble, rather than just identifying that one exists.
By their very nature, bubbles can persist far longer than any logical analysis suggests. There are opportunities as they develop, but timing their peak is virtually impossible.
Understanding their characteristics and having a systematic way of managing bubbles in your trading strategy is worth considering for any trader.
What is a Bubble?
Market bubbles have distinct features that separate them from normal bull markets or even overvalued conditions for a particular asset:
Dramatic Price Appreciation Disconnected From Fundamentals
In a bubble, traditional valuation metrics become meaningless.
Company or asset fundamentals that usually matter to market participants are ignored in the hope of what might be.
Cash flow, profit margins, competitive positioning, and (in some cases) producing revenue may be dismissed.
Widespread Participation And "This Time Is Different" Narratives
Bubbles require mass market participation.
When every headline you see or article you read references "this time is different," or "the old rules don't apply anymore," it is a sign that the collective psychology has shifted from normal caution.
Social media may begin to explode with ever more frequent success stories, and for the individual trader, the fear of missing out becomes increasingly overwhelming.
Credit and Leverage Fuelling Demand
Bubbles are typically accompanied by easier credit conditions.
When interest rates are lowered and investors are confident in general economic conditions, any spare cash is put to work.
In stock or other market bubbles, you may see retail traders maxing out credit cards to buy call options, with the put/call ratio becoming increasingly distorted.
This leverage often amplifies the rise and the eventual fall, making the risk even more acute and potentially damaging to trader capital.
Vertical Price Charts in Final Stages
One of the telltale signs of a bubble's final phase is a parabolic price chart.
Prices seem to go up daily, and every minor pullback is short-lived (creating more buying pressure).
This is the euphoria stage. It is where the greatest danger is.
The fear of missing out on further moves is at its highest, and a logical willingness to take profit off the table diminishes in the minds of ever more excited traders.
New participants may continue to enter solely for the way the price is appreciating. Entering into the move only understanding that what they are buying is going up, so they want to join in too.
Bubble vs. Overvalued: Key Differences
Not every expensive market is a bubble. Several characteristics distinguish a bubble from a simpler and far less dangerous overvaluation:
Elevated Valuations With Reasoned Fundamental Justification
An overvalued market has stretched valuations, but can point to real supporting factors (at least to some degree).
Examples include strong earnings growth, low interest rates, disruption in service or productivity, and providing genuine temporary value.
Even if prices respond to less obvious immediate influencing factors, such as international events, policy changes, and supply issues, the fact that some factors justify continued positive sentiment (even if somewhat unfulfilled) is a positive sign.
Linear or Steady Uptrend
Overvalued markets tend to grind higher with a more sustainable trend rather than a vertical spike. There are normal corrections along the way, even if the highs and lows of a fluctuation are higher.
Reasonable Participation Levels
There is evidence of institutional investors buying on any dips, but common retracements last days or even weeks.
Retail participation exists but isn't frenzied and plastered all over social media every day or referenced in mainstream media consistently.
Some Scepticism Still Exists
There will be some legitimate and contrary opinions about valuations. Major financial media will present both bearish and bullish cases when a stock is discussed.
Trading Strategies for Potential Bubble Management
Here is the scenario: You bought early in the up move, you are now in profit, but some of the bubble signs are beginning to show up in your thinking.
Tiered Profit-Taking Strategies
Don't try to pick the top. As an alternative approach, begin to scale out systematically with partial closes. This will alleviate the potential for FOMO creeping in.
You could stage this with set points, e.g. sell 30% when you've doubled, another 30% when you've tripled, 20% when conditions clearly show evidence of entering bubble territory and, having banked a substantial profit already, you keep the final 20% with a trailing stop for the final run if it happens.
Trailing Stops With Wider Bands to Accommodate Volatility
Let’s assume you see the merit in some form of trial stop. In bubble conditions, normal stop distances will get you whipsawed out. Use percentage-based trailing stops or ATR multiples with enough room to accommodate bigger intraday moves.
For example, if your norm is to trail your stop 1.5 x ATR behind price at the end of every candle, then in increasingly volatile conditions during a parabolic move, consider 2,5 x ATR to allow room to move while still offering protection against price collapse.
Reduce Position Sizing and Leverage
The temptation in bubbles is to maximise gains by increasing your margin and entering more and more positions in one asset.
High leverage and significant single asset exposure in bubble conditions is a potential death sentence to trading capital.
Recognising the added risks you are contemplating before entry is critical. Combining this with an approach that reduces position sizing and increases margin requirements is consistent with good trading practice as risk increases.
Planned and Rigid Exits
Before buying, you should have already made decisions on what exit approaches you should take and the parameters at which they will be executed,
Having the exit plan as you enter can limit the chance of getting trapped by greed. Neglecting this and focusing on the opportunity alone can be disastrous.
Never Assume You Can Time the Top
It is usually a big mistake if you believe you will recognise the exact top and exit perfectly. Let’s be frank, even if you hit it lucky once, you won't be able to every time — no one does.
Recognise Behavioural Biases That May Affect Your Judgment
Bubbles can create powerful psychological forces.
Anchoring bias may mean that you fixate on peak prices. Confirmation bias makes you seek information supporting your bullish view and ignore opposing evidence. Recency bias makes you believe the recent trend will continue indefinitely.
The indisputable key to any bias management is awareness and honesty that some markets may just not be for you (or if they are, to proceed with extreme and continuous caution).
Psychological Preparation for Rapid Reversals
Mentally rehearse the worst scenario and clarity of planned action, e.g., “if it drops 10% in three days, I will ….”.
Having thought through your response and armed with unambiguous exits in advance will make execution easier when emotions run high and begin to dominate.
Final Thoughts
Extreme valuations, little fundamental underpinning, parabolic price action, and universal bullishness should be part of your bubble identification checklist and flag that your bubble action plan should be implemented.
If you are already in, or tempted to be so, then approach bubbles with honesty, awareness of your trading self and extraordinary discipline to follow through, as predicting what and when things may dramatically turn is close to impossible.
Never forget you are not smarter than the market, but you can (potentially) be smarter than many traders by planning and doing the right thing.

Last week brought some relief as markets found support following the retreat from record highs... with the recent crypto crash being a notable exception.
Bitcoin Breaks Below $100K
Crypto markets are under significant pressure after Bitcoin crashed through the psychological $100,000 level. Currently trading around $94,650, Bitcoin has fallen to its lowest point since May. The $94,000 level appears critical; if it fails, we could see Bitcoin slip back into the $80,000 range and potentially enter bear market territory.
Fed Minutes and Rate Cut Signals
The Federal Reserve minutes are due this week, and they could provide crucial insight into the timing of rate cuts in 2026. Markets have already priced in a likely December cut, but the January 2026 cut that was initially expected may be in jeopardy. Pay attention to the Fed speakers scheduled throughout the week—their comments could help clarify the path forward on monetary policy.
Strong Earnings Season Winds Down
We're in the final stretch of what's been an exceptionally strong earnings season, with 82% of companies beating EPS expectations and 76% surpassing revenue forecasts. This week features some heavyweight reports, most notably Nvidia reporting Wednesday after the bell. Major retailers Target and Walmart will cap things off, giving us a clear picture of consumer health heading into the holidays.
Market Insights
Watch Mike Smith's analysis for the week ahead in markets
Key Economic Events
Stay up to date with the upcoming economic events for the week.
