Review Process
A review process is a structured, recurring routine, daily, weekly and monthly, for examining your journalled trades and process metrics to extract lessons, judge decisions on quality rather than outcome, and decide concrete adjustments for the next period.
Quick answer: A review process is a structured, recurring routine, daily, weekly and monthly, for examining your journalled trades and process metrics to extract lessons, judge decisions on quality rather than outcome, and decide concrete adjustments for the next period.
In simple words
Keeping a journal is only half the job; the review is where it pays off. A review process is a regular habit of sitting down with your records and asking honest questions: did I follow my plan, which mistakes repeated, what actually made or lost money, and what one thing will I change? Done daily, weekly and monthly, it turns a pile of data into specific improvements. The key skill is judging your decisions by whether they were sound, not just by whether they won, so you learn the right lessons.
Purpose
This page describes how to run a disciplined review at each timescale, and warns against the trap of judging past decisions purely by their outcomes, so review produces genuine learning rather than misleading conclusions.
Visual explanation
Review Process
The review cycle: gather journal data, analyse process and outcomes, judge decision quality, decide one change, and apply it to the next period, then repeat.
Professional explanation
Review is the analysis stage of the feedback loop
The journal records data, but data does not improve anyone; the review is where recorded experience is converted into lessons and changes. A structured review process closes the feedback loop that deliberate practice requires by regularly asking what happened, why, and what to do differently. Crucially, review is deliberate and scheduled rather than casual, because ad hoc reflection after a bad day is dominated by emotion and recency, whereas a set routine examines the full sample calmly. The output of every review should be concrete: not a vague resolution to do better, but a specific, testable change to the process for the next period, which the following review will then evaluate.
The three timescales: daily, weekly, monthly
Effective review operates at nested timescales. The daily review, done at the close, grades each trade for plan adherence and captures fresh lessons and emotional notes while memory is accurate. The weekly review aggregates the week: adherence rate, mistakes that repeated, win rate and average R by setup, and whether size or routine drifted, producing one or two focus points for the coming week. The monthly review takes the widest lens: equity curve and drawdown, expectancy per strategy over a larger sample, progress on prior focus points, and any structural change to rules or instruments. Each timescale sees patterns the others miss, which is why a complete review process uses all three rather than only reacting day to day.
Resulting: judging decisions by outcomes is the core error
Annie Duke's term resulting names the mistake of evaluating a decision solely by how it turned out. In a probabilistic game, a good decision can lose and a bad decision can win over any short sample, so grading your process by the scoreboard teaches false lessons: you punish sound trades that happened to lose and reward reckless trades that happened to win. A disciplined review therefore separates two questions, was the decision sound given what I knew, and what was the outcome, and grades primarily on the first. This is uncomfortable because outcomes are vivid and decisions abstract, but it is the single most important habit that distinguishes a review that improves you from one that misleads you.
Distinguishing process errors from variance
A central task of review is sorting losses into two bins: those caused by process errors, breaking rules, poor sizing, taking setups outside the plan, and those that are simply variance, sound trades that lost because outcomes are probabilistic. This distinction determines the correct response. Process errors demand a change, a tightened rule, more friction, a habit adjustment. Variance demands no change at all; over-correcting after a normal losing trade is itself a mistake that breeds inconsistency. Reviewing with this lens prevents the two opposite failures: ignoring real leaks because a lucky win masked them, and constantly tinkering with a sound process because normal losses are mistaken for flaws.
Pattern-finding across the sample
The unique power of aggregated review is surfacing patterns invisible in any single trade. Grouping trades by setup reveals which have positive expectancy and which quietly bleed. Grouping by time of day, day-to-expiry, instrument, or your emotional state at entry can expose that losses concentrate in specific conditions, the first thirty minutes, expiry days, trades taken while angry, or after a win. Grouping by discipline grade often shows that A-graded trades are near breakeven variance while C-graded impulsive trades cause the real damage. These patterns are the highest-value output of review, because each one points to a specific, high-leverage change, cutting a losing subset or adding a rule, that memory could never have identified.
Turning review into a single next action
Reviews fail when they produce insight but no change, so the discipline is to convert each review into at most one or two concrete, prioritised actions for the next period, and to check progress on them at the following review. Trying to fix everything at once overloads limited attention and changes so many variables that you cannot tell what worked; changing one thing at a time keeps your process interpretable, mirroring the consistency principle. The best reviews read like a short experiment log: last period I focused on not taking setups outside the checklist, adherence rose from 70 to 88 percent, this period I will focus on cutting first-thirty-minute trades. Improvement compounds through this steady, single-threaded iteration.
Practical example
Illustrative example (Indian market)
In a weekly review of thirty Nifty and Bank Nifty trades, a trader tallies plan adherence at 73 percent and lists the seven deviations. Applying the resulting discipline, they find four of their losing trades were A-graded, sound trades that simply lost, so they leave the process untouched there. But the three worst losses were all C-graded impulsive entries taken after an earlier loss, a clear revenge-trading pattern and a genuine process error. Rather than overhaul everything, they set one action: a rule to stop trading after two losses, plus closing the live profit box that triggers the impulse. The next weekly review checks whether the rule held and whether the C-graded cluster shrank, keeping the change measurable.
Grouping a month of trades by day-to-expiry, an NSE trader discovers their Bank Nifty expiry-day scalps have strongly negative expectancy from theta and slippage while their earlier-in-the-week trades are positive. The monthly review turns this single pattern into one decision, stop trading the expiry-day subset, which no daily reaction to individual trades had revealed.
Advantages
- Converts journal data into concrete, testable improvements
- Counters resulting by grading decisions on quality, not just outcome
- Separates process errors that need fixing from variance that does not
- Surfaces patterns across the sample that single trades hide
- Produces prioritised single actions so improvement stays interpretable
Limitations
- Review needs honest, complete journal data to draw on
- Small samples make aggregated conclusions unreliable, so patience is required
- Judging decision quality is harder than reading outcomes and can be done wrong
- Emotional bias can distort review unless it is scheduled and structured
- Review improves an existing process but cannot supply an edge that is absent
Why it matters in practice
- The review is where improvement actually happens; the journal without review is inert data
- A structured review is what lets a trader iterate deliberately rather than react emotionally
Common mistakes
- Keeping a journal but rarely running a structured review
- Resulting: grading decisions by whether they won rather than whether they were sound
- Over-correcting after normal losing trades caused by variance, not error
- Ignoring real process leaks because a lucky win masked them
- Producing vague resolutions instead of one concrete, testable change
- Reviewing only after bad days, when emotion and recency dominate
Professional usage
Structured review is standard practice on professional desks and in trading coaching. Regular sessions dissect trades against the playbook, distinguish execution errors from variance, and analyse performance in risk-normalised units over large samples so conclusions are statistically grounded. Reviews are scheduled rather than emotional, focus on decision quality independent of outcome, and end with specific, prioritised adjustments that the next review evaluates. The professional stance is explicitly iterative and humble: review improves the process incrementally and never claims that better review guarantees profit, only that it is how skill is built and leaks are found.
Key takeaways
- Review is where journal data becomes improvement; schedule it, do not wing it
- Run daily, weekly and monthly reviews, each revealing different patterns
- Avoid resulting: judge decisions on quality given what you knew, not on outcome
- Separate process errors that need a fix from variance that needs none
- End every review with one concrete, prioritised action for the next period
Frequently asked questions
What is a trading review process?
How often should I review my trading?
What is resulting in trading?
How do I judge a trade if the outcome is noisy?
How do I tell a process error from bad luck?
What should a weekly review cover?
What should a monthly review cover?
Why should review be scheduled rather than casual?
What patterns should I look for in review?
Why shouldn't I change my strategy after every loss?
How many changes should come out of a review?
How do I stop a review from being just venting?
Why does resulting feel so natural?
Can I over-review my trading?
What sample size do I need for review conclusions?
How does review connect to my trading journal?
Should reviews focus on winners or losers?
What is the output of a good review?
Does reviewing guarantee I will improve?
How long should a review take?
What is the first habit to build for reviewing?
Voice search & related questions
Natural-language questions people ask about Review Process.
How do I review my trades properly?
What is resulting in trading?
How often should I review my trading?
Should I change my strategy after a losing day?
How do I know if a loss was a mistake or bad luck?
What should come out of a review?
Sources & references
- Zerodha Varsity — Trading psychology
- Daniel Kahneman — Thinking, Fast and Slow (decisions vs outcomes)
- SEBI — Investor education and F&O studies
Last reviewed 12 July 2026. Educational content only — not investment advice. Markets and rules change; verify current conventions with SEBI, NSE/BSE and your broker.