Key Findings
What the survey data shows across the full sample (N=101).
-
1
The sample skews heavily toward early adopters / power users, not a representative cross-section of the general Vietnamese office workforce.
82.2% of respondents use AI "Hàng ngày" (Daily), and only 1% "Rất hiếm khi / Chưa từng" (Rarely/Never) - the non-user branch (path B) has just n=1/101. This sits far above the broader market baseline
↗ Market Research - Gen Z: 40% daily; general office workers far lower, with the original PRD citing 19% daily AI use among Vietnamese office workers
↗ PRD. The gap likely comes from the distribution channel (personal networks and AI community groups). Every barrier and pricing figure below reflects people who already use AI regularly - the "rarely/never used" segment remains unvalidated, and interviews need to close that gap.
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2
Subscription dominates pay-per-task when asked directly: 73.3% chose Subscription, only 11.9% Pay-per-task, 14.9% Prepaid Credits.
This is the first direct test of the pay-per-task hypothesis from market research
↗ Market Research ("willingness to pay per completed document" was an open, unvalidated question). Result: pay-per-task as the
primary pricing model is not strongly supported in this sample.
-
3
But most respondents are still willing to pay per task once given a concrete price point (Q7).
Only 30.7% chose "not willing to pay per task, prefer subscription" and 8.9% "not willing to pay for an AI tool at all" (39.6% combined reject per-task entirely). The remaining 60.4% gave a specific price they'd pay per task (most common: 5,000-10,000 VND at 22.8%). Even within the group that chose Subscription in Q6, 46 of 74 people (62%) still gave a reasonable per-task price in Q7 instead of flatly refusing. Pay-per-task doesn't beat subscription as the primary model, but it has a place as an add-on / hybrid - not fully rejected.
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4
Concern about company data leakage (47.5%) and concern about AI eroding independent thinking (47.5%) are the two largest barriers, tied for first.
Both outrank the price barrier ($20/month too high: 44.6%) and prompt-related barriers (not knowing how to ask: 22.8%; needing multiple back-and-forth turns: 37.6%; shallow AI answers: 26.7%). This is a sample that already uses AI daily - they keep using it while carrying both concerns in parallel, not concerns severe enough to make them stop.
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5
Claude has the highest average rating among tools evaluated (4.42/5) but far lower usage than ChatGPT and Gemini.
66% have used Claude vs. 98% for ChatGPT and 94% for Gemini. This lines up directly with the "retention driven by lock-in, not quality" finding in market research
↗ Market Research: ChatGPT/Gemini win on reach (habit/integration), Claude wins on perceived quality but hasn't won on adoption.
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6
Task-by-role data shows a clear signal for Skill-first design.
TA/HR (n=25, the largest group) concentrates heavily on matching CVs to JDs (76%), writing JDs (72%), and extracting CV data (68%) - exactly the priority Skills market research already proposed. Job Seekers (n=15) focus on optimizing a CV against a JD (73.3%), tied with automated multi-platform job search (66.7%) and mock interviews (66.7%) - automated job search shouldn't be dropped, since it's a fundamentally different Skill (sourcing/aggregation, not content generation). This is the first quantitative evidence backing the task inventory.
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7
"Productivity" framing beats "peace of mind" framing decisively: 85.1% vs. 14.9%.
Consistent across nearly every role (TA/HR 22 vs. 3, Marketing 15 vs. 4, Sales 8 vs. 1, Job Seeker 13 vs. 2). A strong quantitative signal for positioning messaging.
-
8
17 of 101 respondents (16.8%) self-entered "Other" for their role (Q1) - IT/Dev/QA, Purchasing, Logistics, Design, Legal, Project Manager, ERP consultant, Supply Chain.
Most of this group sits outside Klerio's target audience (non-technical office workers: TA/HR, Marketing, Admin, Sales, Job Seeker, Accounting, Manager) - likely leakage from the personal-network distribution channel, not a signal to expand the role taxonomy.
Surprising / Unexpected
Findings that ran against expectations set by prior research.
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1
Pay-per-task loses decisively to subscription in the direct question (11.9% vs. 73.3%).
Market research treated this as an unvalidated hypothesis that could still win
↗ Market Research; the survey data leans heavily toward subscription instead. This is the single most important finding from this run, and needs careful discussion before locking in the primary MVP pricing model.
-
2
Concern about "reduced independent thinking" (cognitive dependency) is exactly as high as concern about data leakage (47.5% each).
Market research frames Privacy Guard as the primary differentiator, but the data shows the fear of AI making users lazier thinkers is just as large. This is a second, independent axis of concern the product/positioning doesn't yet answer clearly - Privacy Guard addresses axis 1, not axis 2.
-
3
Q10 (reasons for churn / not using AI) surfaces this exact "cognitive erosion" theme in respondents' own words.
Multiple open-text answers mention "brain rot," reduced focus, AI giving sycophantic answers with no critical pushback, and noticing themselves getting lazier. This isn't noise - it's a clearly recurring theme in the open text that reinforces the 47.5% figure from Q4.
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4
Only 1 of 101 respondents fell into path B ("rarely / never used AI").
The entire Label B content of Q4 and Framing B of Q5 (designed specifically for non-users) went essentially untested by this run. Understanding the non-user / light-user segment needs a different distribution channel next time, or interviews to cover the gap.
So What for Klerio
Product and positioning implications, and the open hypotheses behind them.
Pay-per-task lost the direct question - but "why" is still an open hypothesis
Three competing explanations
- Unfamiliarity bias - no Vietnamese AI tool currently offers clear pay-as-you-go; the market is subscription/freemium across the board ↗ Market Research, so users default to what they know because they haven't seen the real benefit of pay-as-you-go.
- Habit / status-quo bias - ChatGPT Plus, Netflix, Spotify are all subscriptions; this is the default mental model for "paying for an app," not necessarily a considered comparison of the two models.
- Volume-confidence / loss-aversion - the sample is power users (82% daily); confident they'll use it a lot, so a flat subscription fee feels safe ("no risk of losing money"), while pay-per-task risks feeling expensive at high usage.
If hypothesis 3 is correct, pay-per-task could still win specifically with light / occasional users - a segment the survey barely has data on (path B is n=1). See the suggested interview questions below.
Product & positioning implications
-
→
Worth considering: a hybrid Prepaid → auto-suggest Subscription model.
Users top up and pay per use (solving the light user's fear of "paying for a subscription but barely using it"); once usage crosses a threshold, the system proactively suggests switching to a subscription because it's cheaper. Addresses both fears at once - light users fearing a wasted subscription, heavy users fearing pay-per-task adding up - without asking the user to do the math.
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→
Positioning should lead with "productivity" (do more, faster, better), not "peace of mind."
Consistent with the market research insight on workplace AI stigma (fear of being seen as lazy/incompetent)
↗ Market Research, plus a new layer: users want AI to make them
more productive, not more rested. "Skills help you work faster, more, and better" should be the primary message axis.
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→
Klerio needs a second messaging/product axis alongside Privacy Guard: the fear of "AI dependency eroding thinking."
Skill-first framing is itself a partial answer - the user still supplies expert input, the AI isn't thinking 100% for them - but this needs to be stated explicitly in messaging, not left implicit.
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→
3 roles have the strongest quantitative evidence for a first launch: TA/HR, Job Seeker, Marketing.
Priority Skills - TA/HR (JD writing, CV screening, CV data extraction), Job Seeker (CV optimization, automated multi-platform job search, mock interview), Marketing (product copywriting, document summarization, market research briefs). All three have large n and the highest task-selection rates in the sample (TA/HR n=25, Marketing n=19, Job Seeker n=15 - 58.4% of the sample combined). Top recruitment priority for the next round of deep interviews.
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→
Do not expand the role taxonomy into IT/Tech.
This group sits outside the target audience despite being the most common "Other" entry. Distribution-channel noise, not a market opportunity.
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→
Mobile-first still holds, but not absolutely.
63.4% use "both, depending on the situation," only 1% mobile-only, 35.6% desktop-only. Prioritize solid responsiveness on both rather than a mobile-only design.
Open Questions
Unresolved gaps this run couldn't answer.
- 1The entire path B (rarely/never used AI) has almost no data (n=1). This is an important segment for understanding "why 81%+ know about AI but don't all use it regularly" (the paradox raised in the survey's own intro). Interviews should actively recruit this group.
- 2Accounting/Finance has only n=1 - not enough to say anything about this group, despite being one of the survey's 8 official roles. Needs more responses or interview coverage.
- 3Unclear how willingness to pay changes when tied to a specific Skill (Q7 asked about price in general, not tied to one Skill) - interviews can dig into this with real-Skill scenarios.
- 4Unclear whether "cognitive dependency" is a theoretical worry or a lived experience - Q10 gives quotes suggesting it's real ("noticing myself getting lazier"), but interviews are needed to understand the depth and specific context.
- 5Should responses from out-of-target roles (IT/Tech, Legal, Logistics, ERP, Supply Chain...) be excluded from the main analysis in the next run? Run #1 kept all N=101 to avoid losing data, but this needs a decision before the data is used to lock in product decisions.
Interview Follow-ups
Goal: distinguish the 3 competing hypotheses behind subscription's decisive win (unfamiliarity / habit / volume-confidence), and test reactions to the hybrid prepaid → auto-suggest-subscription idea.
- 1Test unfamiliarity bias: "Have you ever used a tool that charges 'pay for what you use' (top up, then top up again once it runs out)? In what area?" - a "never" answer supports unfamiliarity bias.
- 2Test the reason for choosing subscription (open-ended): "Why did you choose a fixed monthly fee over paying per use before? Did you actually compare the two options, or was it just the familiar choice?" - distinguishes habit bias from real deliberation.
- 3Test volume-confidence / loss-aversion (two-sided scenario): "Do you worry that with a subscription, if you use it lightly that month, you're wasting money? Conversely, if you paid per use and used it a lot, would you worry it costs more than a subscription?" - see which fear dominates.
- 4Direct scenario test: "If you had two options for the same AI tool: (A) 300,000 VND/month unlimited use, or (B) about 8,000 VND per completed task, pay for what you use - which would you choose, and why?" - forces a real comparison instead of an abstract answer.
- 5Test the light-user segment (especially valuable if recruiting from path B): "If you were just starting to use an AI tool and didn't know yet whether you'd use it a lot or a little, would you want to start with a fixed fee or top-up-as-you-go? Why?"
- 6Concept test for the hybrid model: "Imagine a tool where you top up in advance and pay for what you use; if the system sees your usage growing, it proactively suggests switching to a monthly plan because it would be cheaper for that level of use - what do you think of this idea? Is it appealing enough to make you try a new tool built this way?"
Full Data
Details
Full survey data behind the findings above. Role names, answer options, and open-text quotes are kept in the original Vietnamese wording shown to respondents.
Sample Overview
101
Total respondents
Collected Jun 19 - Jul 2, 2026
61.4%
Filled on mobile
device_type, auto-detected
63.4%
Use "both" devices for AI
q8_device, self-reported habit
99.0%
On branching path A
Already using AI (path B n=1)
Role (q1_role)
| Role | n | % |
| Tuyển dụng (TA) / Nhân sự (HR) | 25 | 24.8% |
| Marketing / Content Creator / SEO | 19 | 18.8% |
| Khác (self-entered) | 17 | 16.8% |
| Đang tìm việc (Job Seeker) | 15 | 14.9% |
| Sales / Phát triển kinh doanh | 9 | 8.9% |
| Quản lý (Manager / CEO / Founder) | 8 | 7.9% |
| Hành chính / Trợ lý / Thư ký | 7 | 6.9% |
| Kế toán / Tài chính / Kiểm toán | 1 | 1.0% |
"Khác" (17) breakdown: IT/Dev/QA (5), Kỹ sư (2), Purchasing, Chuyên viên nghiệp vụ, Project Manager, Pháp chế, Logistics, Design, Tư vấn triển khai ERP, Quản lý chuỗi cung ứng & Vận hành.
Frequency (q2_frequency)
| Frequency | n | % |
| Hàng ngày (Daily) | 83 | 82.2% |
| Vài lần một tuần (A few times/week) | 17 | 16.8% |
| Rất hiếm khi / Chưa từng (Rarely / Never) | 1 | 1.0% |
Tool Satisfaction (Q3, path A only, n=100)
| Tool | % have used | Avg rating (of users) |
| ChatGPT | 98.0% | 4.00 |
| Gemini | 94.0% | 3.76 |
| Claude | 66.0% | 4.42 |
| Microsoft Copilot | 59.0% | 3.25 |
| NotebookLM | 55.0% | 3.64 |
| DeepSeek | 45.0% | 3.13 |
| Grok | 43.0% | 3.14 |
| Tool nội bộ (FPT/Viettel...) | 40.0% | 3.17 |
| Perplexity | 39.0% | 3.10 |
| Tool Việt Nam (AI Hay, 1Office...) | 32.0% | 3.31 |
Barriers (Q4, multi-select, % of N=101)
| Barrier | n | % |
| Lo ngại rò rỉ dữ liệu quan trọng của công ty | 48 | 47.5% |
| Lo lắng lạm dụng AI làm giảm tư duy độc lập | 48 | 47.5% |
| Gói $20/tháng quá cao so với nhu cầu | 45 | 44.6% |
| Không chắc kết quả từ AI đáng tin cậy | 38 | 37.6% |
| Phải trao đổi qua lại nhiều lượt mới ra output hoàn chỉnh | 38 | 37.6% |
| AI thường trả kết quả sơ sài/"lười" sau nhiều lượt chat | 27 | 26.7% |
| Không biết cách đặt câu hỏi để ra kết quả chất lượng | 23 | 22.8% |
| Tôi không gặp vấn đề gì với dịch vụ AI đang dùng | 12 | 11.9% |
| Khác (tự điền) | 2 | 2.0% |
Tasks by Role (Q5, top tasks where n ≥ 5)
Tuyển dụng (TA) / Nhân sự (HR) - n=25
- Đối chiếu CV với JD để sàng lọc ứng viên - 76.0%
- Soạn bản mô tả công việc (JD) chuẩn - 72.0%
- Tự động trích xuất thông tin từ CV vào database - 68.0%
- Thiết kế tin tuyển dụng và poster tuyển dụng - 68.0%
- Automation workflow sau họp - 68.0%
Marketing / Content Creator / SEO - n=19
- Viết mô tả sản phẩm/dịch vụ từ thông số kỹ thuật thô - 52.6%
- Tóm tắt tài liệu/báo cáo dài - 52.6%
- Nghiên cứu thị trường và đối thủ cạnh tranh - 47.4%
- Lên Marketing Brief/Creative Brief - 47.4%
- Viết kịch bản video ngắn (TikTok/Reels) - 47.4%
Đang tìm việc (Job Seeker) - n=15
- Tối ưu CV khớp với JD cụ thể - 73.3%
- Tìm kiếm việc làm tự động trên nhiều sàn - 66.7%
- Luyện phỏng vấn thử (Mock Interview) - 66.7%
- Kiểm tra mức độ tương thích CV với ATS - 46.7%
- Tóm tắt báo cáo ngành để chuẩn bị kiến thức - 40.0%
Sales / Phát triển kinh doanh - n=9
- Soạn báo giá và hợp đồng mẫu nhanh chóng - 77.8%
- Soạn email chào hàng (Cold Email) - 66.7%
- Automation workflow sau họp - 55.6%
- Tóm tắt hồ sơ năng lực đối tác - 44.4%
- Phân tích phản hồi khách hàng sau demo - 33.3%
Quản lý (Manager/CEO/Founder) - n=8
- Viết biên bản họp - 87.5%
- Dashboard tóm tắt KPI/Tài chính - 75.0%
- Tóm tắt tài liệu đầu tư/báo cáo thị trường - 75.0%
- Bản tin tóm tắt tin tức ngành (Daily Intel) - 62.5%
- Automation workflow sau họp - 62.5%
Hành chính / Trợ lý / Thư ký - n=7
- Dịch thuật tài liệu giữ nguyên định dạng - 71.4%
- Viết biên bản họp - 71.4%
- Automation workflow sau họp - 57.1%
- Soạn email giao tiếp nội bộ/đối ngoại - 57.1%
- Tóm tắt và phân loại tài liệu văn phòng - 57.1%
Kế toán/Tài chính (n=1) and individual "Khác" groups (mostly n=1): too small to draw conclusions, noted qualitatively only.
Pricing & Payment Model (Q6-7)
| q6_payment_model (n=101) |
| Subscription | 74 | 73.3% |
| Prepaid Credits | 15 | 14.9% |
| Pay-per-task | 12 | 11.9% |
| q7_price_range (n=101) |
| Không sẵn sàng trả theo task, prefer subscription | 31 | 30.7% |
| 5.000đ - 10.000đ | 23 | 22.8% |
| Trên 20.000đ | 16 | 15.8% |
| Dưới 5.000đ | 12 | 11.9% |
| 10.000đ - 20.000đ | 10 | 9.9% |
| Không sẵn sàng trả tiền cho AI tool | 9 | 8.9% |
Cross-tab (within the 74 who chose Subscription in Q6): 28 (37.8%) also chose "prefer subscription / not willing per-task" in Q7 - consistent; 46 (62.2%) still gave a specific per-task price (16 chose 5-10k, 9 chose <5k, 8 chose >20k, 6 chose 10-20k, 7 chose "not willing to pay for AI tool" generally).
Positioning (Q9, n=101)
85.1%
"Nâng cao năng suất" (Productivity)
86 respondents
14.9%
"Tâm trí thảnh thơi" (Peace of mind)
15 respondents
By role (n≥5): TA/HR 22 productivity / 3 peace-of-mind; Marketing 15/4; Job Seeker 13/2; Sales 8/1; Manager 7/1; Admin 6/1. Pattern consistent across every role - none leans toward "peace of mind."
Open Responses (Q10-11, themes)
Q10 - Reasons for churn / not using AI (39/101 answered, 38.6% fill rate)
- •Security / legal concerns: "Lộ thông tin", "Rò rỉ dữ liệu cá nhân và công việc", "Tính pháp lý", "Tính bảo mật thông tin".
- •Reduced thinking / AI dependency (recurring theme): "Khi thấy bản thân bị lười và bị suy giảm tư duy", "AI đưa ra ý kiến nịnh hót và không có tư duy phản biện", "Bào mòn quá trình tư duy, làm dopamine nền cao, lười não".
- •Output quality/reliability: "AI không hiểu câu hỏi", "thông tin được tổng hợp chưa đúng với thực tế", "Những thông tin không kiếm được, AI sẽ tự bịa".
- •Prompt friction/context: "Phải mô tả rất nhiều, sửa câu lệnh nhiều lần AI mới hiểu được", "đòi access quá nhiều, lẫn lộn context với các conversation khác".
- •Price / free-tier limits: "hết token", "Trả phí! Trích xuất thông tin cá nhân", "giới hạn token ở những gói free và thời gian chờ khá lâu".
- •No real churn reason (satisfied users): "chưa", "Ko có", "Sẽ vẫn tiếp tục dùng", "AI giúp cho công việc năng suất hơn... chưa có ý định dừng dùng AI".
Q11 - Wishlist / what respondents want AI to do (26/101 answered, 25.7% fill rate)
- •Full weekly automation/workflow: "Một automation workflow hoàn chỉnh cho job của mình từ thứ Hai đến thứ Sáu... chỉ cần nhìn màn hình xem AI làm tất cả".
- •Less tool/tab switching: "tận dụng được ưu điểm của từng tool với từng mục đích khác nhau mà không cần chuyển tab quá nhiều".
- •Industry-specific sourcing/search: "Search CV ứng viên trên LinkedIn", "Sử dụng AI để tìm kiếm ứng viên tiềm năng", "Phát hiện data discrepancy giữa các CRM systems".
- •Document/formatting groundwork: "chỉnh sửa căn lề, file word, excel, dò tài liệu, tìm kiếm thông tin uy tín".
- •Less need for detailed prompting: "Trợ lý thông minh, không cần prompt quá chi tiết mà có thể hiểu được ý của mình".
- •Satisfied, no wishlist yet: "Chưa có, hiện tại mình thấy AI rất hữu ích", "Cũng chưa biết nữa ạ, thấy như giờ là cũng khá ok".
Sources
Where this data comes from.