AI & technology survey templates
Measure how people adopt, trust, and experience technology and AI products. These templates cover feature adoption, AI trust and safety perceptions, developer tools, and tech satisfaction — with AI follow-ups that capture nuanced attitudes toward new tech.
35 templates in AI & Technology
Entertainment Chatbot Engagement & Satisfaction Survey
Measures how often people use an entertainment chatbot (companionship, roleplay, humor, storytelling), what keeps them coming back, and where the experience falls flat — with an AI follow-up that reconstructs a specific memorable conversation to surface what actually made it feel fun, believable, or disappointing. Built for product and content teams shipping character or entertainment-focused AI experiences.
View templateFlight Booking Chatbot Usability & Trust Survey
Evaluates how well an airline or travel site's AI chatbot handles real booking, change, and support tasks — covering task completion, trust, and where users bail out to a human. An AI follow-up interview reconstructs exactly what happened in the respondent's most recent chatbot session, not just how they'd rate it in hindsight.
View templateDoctor Appointment Chatbot Experience Survey
Measures how well an AI scheduling chatbot helps patients book, reschedule, or get answers about medical appointments, covering task completion, trust, and friction points — with an AI follow-up interview that digs into the specific moment the chatbot helped or failed.
View templateAI Agent Output Review Burden and Trust Calibration Survey
Measures how much time and cognitive effort employees spend checking AI agent outputs, where trust is over- or under-calibrated, and what triggers a full manual re-check. An AI follow-up probes the last time output was wrong or nearly acted on unchecked.
View templateAI Tool Adoption in Research Teams
A survey studying how research teams evaluate, adopt, and integrate AI tools for data collection, analysis, and reporting. This instrument measures current tool usage, evaluation criteria, adoption barriers, training experiences, data quality perceptions, and team collaboration patterns.
View templateParticipant Comfort with AI Interviewers — Longitudinal Tracking Survey
A repeated-measures survey template designed to track how participant comfort, trust, and naturalness perceptions of AI interviewers evolve across multiple sessions. Administer at each study wave with consistent scaling to enable within-subjects change analysis.
View templateInterview Experience Study
A controlled comparison instrument for evaluating interview experiences across different moderator formats. This survey measures pre-interview expectations, embeds an interview session, and captures post-interview evaluations of comfort, quality, depth, trust, and willingness to participate again.
View templateAI Adoption in Higher Education
A research survey exploring how faculty and students adopt, perceive, and experience AI tools in higher education settings. Covers current usage patterns, perceived benefits and barriers, institutional policy awareness, training needs, and impact on teaching and learning outcomes.
View templateWarehouse Safety & Productivity Frontline Assessment
Captures frontline warehouse worker feedback on safety conditions, throughput changes, role clarity, and operational tools to identify improvement priorities and support OSHA compliance.
View templateVR Motion Sickness & Comfort Technique Assessment
Measures VR players' motion sickness susceptibility, symptom frequency, discomfort triggers, and comfort technique preferences to guide UX design decisions for virtual reality games and experiences.
View templateDeveloper Synthetic Data Adoption & Ethics Survey
Measures developer experience, tooling preferences, risk perceptions, and adoption intent for synthetic data. Designed for engineering and data science teams evaluating synthetic data readiness and ethical boundaries.
View templateWorkplace AI Adoption & Compliance Assessment
Measures employee AI tool usage patterns, shadow AI risks, policy awareness, and training needs to inform governance and safe-adoption strategies across the organization.
View templateAI Refusal Message Clarity & Tone Evaluation
A stimulus-comparison survey for UX researchers and AI product teams to evaluate the clarity, tone, and helpfulness of AI safety and refusal messages. Produces actionable data on user preferences and improvement priorities.
View templateShared Prompt Library: Discovery & Reuse Experience Survey
Assesses how users find, customize, and derive value from a shared AI prompt library. Use this to identify discovery friction, reuse patterns, and outcome perceptions to prioritize product improvements.
View templateEvaluation Fairness & Representation Perceptions Survey for Developers
Measures software developers' perceptions of fairness, bias, and representativeness in their evaluation practices. Ideal for engineering leadership and DEI teams seeking to identify gaps in evaluation methodology and build more inclusive processes.
View templateAI Error Reporting Friction & Trust Impact Survey
Measures how AI users experience error reporting workflows and how unresolved issues affect trust and future reporting intent. Designed for product and UX teams seeking to reduce reporting friction and improve AI reliability perceptions.
View templateAI Error Tolerance & Recovery Experience Survey
Measures user experiences with AI errors, recovery preferences, and resulting trust impact. Designed for AI product teams seeking to prioritize reliability improvements and reduce error-driven churn.
View templateGenerative AI Trust, Safety & Guardrail Preferences Survey
Measures consumer trust in generative AI tools, perceived safety risks, transparency expectations, and guardrail preferences to inform responsible AI product design and policy.
View templateOn-Device AI Training: Consumer Trust & Privacy Perceptions
Measures consumer awareness, trust, privacy concerns, and adoption intentions regarding on-device AI training. Designed for product, UX, and privacy teams seeking to understand how users perceive and evaluate local AI learning features.
View templateAI Transparency, Control & Recourse Assessment
Measures user attitudes toward AI transparency, desired controls, and recourse expectations. Designed for product teams assessing trust gaps and prioritizing AI governance improvements.
View templateEdge AI Governance & Monitoring Maturity Assessment
Assesses organizational readiness across edge AI governance, monitoring, risk, and MLOps practices. Designed for AI/ML leaders, DevOps, and compliance stakeholders to benchmark maturity and prioritize investment.
View templateData Labeling QA, Bias & Instruction Clarity Audit
An operational audit survey for data labeling teams, measuring instruction clarity, bias mitigation practices, QA rigor, and workflow bottlenecks over the last 30 days. Designed for labelers, reviewers, and QA leads.
View templateAI Content Watermark Perception & Trust Survey
Measures consumer awareness, trust, acceptability, and behavioral intentions regarding AI content provenance watermarks, designed for technology policy researchers and platform designers evaluating labeling strategies.
View templateDeveloper Content Filter False Positive Impact Assessment
Assess how content filter false positives affect developer productivity, workflow disruption, and tool adoption decisions. Designed for developer experience researchers and tooling teams seeking actionable improvement priorities from software practitioners.
View templateAR Virtual Try-On Realism & Purchase Confidence Study
Measures perceived realism, fit accuracy, and purchase confidence for augmented reality try-on features. Designed for e-commerce UX researchers seeking to identify AR experience gaps that drive returns and reduce conversion.
View templateCreator AI Adoption, Ethics & Disclosure Survey
Measures AI tool adoption rates, usage barriers, quality-speed tradeoffs, and credit/disclosure norms among media creators across disciplines. Suitable for creative industry researchers and platform teams studying the creator-AI relationship.
View templateAI Changelog Clarity & Adoption Impact Survey
Measures how users perceive the clarity, usefulness, and behavioral impact of AI product changelogs. Designed for product and developer experience teams seeking to optimize release communication and drive feature adoption.
View templateRed Team Program Effectiveness Assessment
Collects structured stakeholder feedback on red-team risk coverage, report quality, and remediation follow-through to identify actionable program improvements across security, engineering, and leadership functions.
View templateAI Bug Bounty: Scope, Fairness & Incentive Evaluation
An internal stakeholder survey evaluating scope clarity, decision fairness, and incentive effectiveness in your AI bug bounty program over the past 6 months to guide program improvements.
View templateAI Model Card Usability & Developer Trust Survey
Measures how ML/AI practitioners engage with model cards, evaluate documented limitations, and how documentation quality shapes trust and adoption decisions across deployment contexts.
View templateAI Governance & Risk Controls Readiness Assessment
Measures organizational readiness across AI policy clarity, approval workflows, risk tiering, and control maturity. Designed for cross-functional teams involved in AI development, deployment, or oversight.
View templateAI Feature Adoption & Value Perception Survey
Measures user interest, perceived value, adoption barriers, and willingness to pay for AI-powered product features. Designed for SaaS product teams prioritizing their AI roadmap based on user feedback.
View templateAI Disclosure & Transparency Expectations Survey
Measures consumer expectations for AI transparency across products and services, capturing preferred disclosure methods, acceptability thresholds, and trust drivers to inform product labeling and policy decisions.
View templateAI-Assisted Feature Adoption & Trust Survey
Measures user adoption, satisfaction, trust, and pain points with AI-assisted product features. Use it to capture actionable feedback that informs product roadmap and feature prioritization decisions.
View templateAI Agent Autonomy, Escalation & Control Preferences Survey
Measures user expectations for AI agent autonomy, preferred escalation and handoff mechanisms, permissible actions, spending thresholds, and risk concerns. Designed for UX researchers and product teams building agentic AI workflows.
View templateFrequently asked questions
- How do I survey users about AI features?
- Ask about trust, usefulness, clarity of AI behavior, and where it saved or cost time. These templates structure those dimensions and use AI follow-ups to capture specific moments of delight or friction.
- Can I measure technology adoption?
- Yes — the category includes adoption and feature-awareness templates that track who is using what, why non-adopters hold back, and what would move them.
- Are these useful for AI trust and safety research?
- They are — templates cover perceived reliability, transparency, and comfort with AI decisions, giving product and policy teams structured signal on user trust.
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