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DOL English Platform - Discovery Log (Working Notes)

DomainsDOL EnglishProduct1.395 words7 min read
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Updated: 2026-02-15 Status: in-progress

  1. Sustainable learning habit (highest priority)
  2. Learning plan completion
  3. Score increase (when user takes mock tests)
  • User studies >= 4 days/week for 4 consecutive weeks.
  • Each valid day requires at least 1 completed + submitted exercise.
  • Streak is tracked as a motivation signal.
  • A day counts if user completes and submits any exercise.
  • No constraint on exercise difficulty, completion time, or accuracy.
  • If user misses 1 day after having streak, system grants exactly 1 freeze day.
  • If user still does not submit during freeze day, streak resets.
  • No extra freeze/rescue mechanism for now.
  • After submitting, user goes to Result page first.
  • Result page includes performance + explanations.
  • On exit, user can move to Practice Management (and/or exercise bank based on context).
  • Show recently completed exercise.
  • Provide recommendation options:
    • If result is weak: recommend easier corresponding practice.
    • If result is good: recommend 1 equivalent + 1 harder practice.
  • Also provide options to switch to other skills.
  • Chua dat: <20%
  • Can cai thien them: 20-59%
  • Kha: 60-80%
  • Gioi: 81-99%
  • Xuat sac: 100%
  • AI scoring can complete quickly (<1 minute) or slower (5-10 minutes).
  • While pending, user may:
    • Return to exercise bank, or
    • Go to Practice Management.
  • Practice Management must show pending-scoring item state.
  • While score is pending, recommendation must NOT use score.
  • Pending recommendation uses: level + topic + recent skill intent.
  • User gets options for equivalent exercises and switching skill.
  • When AI scoring is finished, create an in-app notification entry.
  • Show a small, non-blocking popover on screen (toast-like).
  • Popover actions:
    • Quick open to the newly scored result page.
    • Dismiss/close.
  • If user takes no action, popover auto-closes after a few seconds.
  • If user ignores the popover, do NOT repeat reminder.
  • Keep the result item only in Notification center for later access.
  • Self-study does not use a fixed, universal curriculum plan.
  • Completion status is goal-based and mock-test-based:
    • If mock score is below user’s target selected at onboarding -> not completed / not achieved yet.
    • If mock score reaches or exceeds onboarding target -> achieved learning goal.
  • Supporting progress signals:
    • Number of completed exercises in a time window.
    • Quality trend of exercise results over time.
    • Overall score trend from exercises and/or mock tests.
  • Product philosophy for success measurement: “Better every day.”
  • If later performance is better than earlier baseline, it is considered positive progress.
  • This discovery and product definition are for V2 (not V1 legacy).

12. Evidence options for “user is improving” (V2)

Phần tiêu đề “12. Evidence options for “user is improving” (V2)”
  • Improvement can be recognized through one or multiple evidence tracks:
    • Track A: 2 consecutive mock tests with score improvement.
    • Track B: average score of this week compared to last week.
    • Track C: average score of this month compared to last month.
    • Track D: average score of this 3-month cycle compared to previous 3-month cycle.
    • Track E: at least 5 recent learning days/attempts show an upward trend without sharp drop.
  • “No sharp drop” rule is hybrid:
    • Use both percentage-based and program-scale thresholds.
    • System applies the stricter condition.
  • Rollout strategy:
    • Start with shared threshold baseline for all programs.
    • After 4 weeks of real usage data, calibrate thresholds per program (IELTS/TOEIC/SAT).
  • Each program has a hard maximum target ceiling.
  • User cannot select a target above that program ceiling.
  • Example:
    • IELTS max target = 9.0.
    • User cannot set 10.0.
  • Each program should also define:
    • minimum selectable target
    • fixed step size for target selection
  • Goal question appears in first-time onboarding right after registration.
  • Goal selection is optional (user can skip to reduce signup friction).
  • If user skips and has no goal:
    • they cannot compare results against target.
    • target-based progress comparison is unavailable.
  • User can return later to set/update goal.
  • Product should use non-forced nudges to encourage goal completion over time.
  • For users without goal:
    • remove only goal-comparison layer and target-gap metrics.
    • keep normal learning analytics:
      • exercise activity statistics
      • score/result trend over time
      • progression signal (improving or stagnating)
      • diligence/consistency usage indicators
    • users can still understand whether they are improving from practice history.
  • Diligence metric in V2 is hybrid:
    • active submission days per week
    • completed exercises per week
    • active learning time per week
  • Initial rollout weight:
    • 40% active submission days
    • 40% completed exercises
    • 20% active learning time
  • Active learning time counting rule:
    • Count only when user has real interactions (click/type/scroll/audio interactions).
    • Auto-pause when inactivity is detected to avoid idle/background inflation.
  • User experience preference:
    • Inactivity timeout should be lenient (not too strict) to avoid interrupting normal study flow.
  • V2 timeout selection:
    • Auto-pause active learning time after 90 seconds of inactivity.
  • Resume behavior:
    • Active time resumes automatically on the first new user interaction.
  • Use multiple lightweight UI encouragement patterns (not forced):
    • Profile completion percentage pattern:
      • completing onboarding/goal selection increases profile completion toward 100%.
    • Profile-area subtle attention marker:
      • light visual indicator to drive curiosity and click-through.
      • indicator is removed once user completes goal selection.
    • Achievement mechanic:
      • user receives an achievement badge after selecting goal.
    • Practice Management reminder:
      • in goal-related section, remind user they have not set goal yet and show value unlock messaging.
  • Overall tone: encourage and reward, not block or force.
  • Goal-selection achievement strategy:
    • Main “goal selected” badge is granted one time only.
    • No milestone logic for later goal updates (removed for simplicity).
  • Goal update feedback behavior:
    • When user updates target later, show a quick confirmation popover:
      • “Mục tiêu của bạn đã được thay đổi.”
  • Operational boundary by learning mode:
    • CS/Teacher intervention applies to course-management mode only.
    • Self-study mode is fully automated (no human intervention workflow).

16. Self-study retention nudges and reactivation (V2)

Phần tiêu đề “16. Self-study retention nudges and reactivation (V2)”
  • Reactivation should be staged by inactivity severity:
    • stage 1: user loses streak
    • stage 2: user has not studied for 1 week
    • stage 3: user has not studied for 1 month
    • stage 4: long-term dormant milestone (1 year)
  • Each stage has its own dedicated reminder type (optimized per stage).
  • Stage reminders are one-time triggers at each milestone (not daily repetitive reminders).
  • Additional periodic reminder:
    • if user remains inactive for longer term, send recurring reminder every 3 months.
  • Stage overlap assumption:
    • “lost streak” and “1 week inactive” are treated as sequential milestones in timeline, not simultaneous collisions.
  • Primary objective for all stages:
    • remind user about platform and motivate return to studying.
  • CTA strategy is diversified to avoid boredom:
    • explore new exercises
    • quick practice
    • start practicing now
    • other discovery/engagement actions related to learning content
  • Default reminder channels (initial V2):
    • email
    • web browser push notification
    • Zalo message
  • Channel control:
    • user can configure notification settings and enable/disable channels.
  • Delivery note:
    • for now, simultaneous push across available channels is acceptable.
  • Content personalization by inactivity duration:
    • streak-loss reminder: include lightweight recap of recent exercises, then comeback prompt.
    • 1-week+ inactivity: prioritize new/trending exercises because old personal data may be stale.
  • Message frequency cap during inactive periods:
    • Maximum 1 reminder notification per day.
  • Reactivation reset rule:
    • once user returns and completes 1 exercise, reactivation chain resets immediately and a new streak begins.
  • Measurement priority:
    • strict reactivation success metrics are not a current priority.
  • For the recurring 3-month reminder cycle, should it continue forever until user returns, or stop after a maximum number of attempts?