Skip to Content
  • 오피스

    오피스

    미주
    • Atlanta
    • Austin
    • Bogota
    • Boston
    • Buenos Aires
    • Chicago
    • Dallas
    • Denver
    • Houston
    • Los Angeles
    • Mexico City
    • Minneapolis
    • Monterrey
    • Montreal
    • New York
    • Rio de Janeiro
    • San Francisco
    • Santiago
    • São Paulo
    • Seattle
    • Silicon Valley
    • Toronto
    • Washington, DC
    유럽, 중동, 아프리카
    • Amsterdam
    • Athens
    • Berlin
    • Brussels
    • Copenhagen
    • Doha
    • Dubai
    • Dusseldorf
    • Frankfurt
    • Helsinki
    • Istanbul
    • Johannesburg
    • Kyiv
    • Lisbon
    • London
    • Madrid
    • Milan
    • Munich
    • Oslo
    • Paris
    • Riyadh
    • Rome
    • Stockholm
    • Vienna
    • Warsaw
    • Zurich
    아시아, 호주
    • Bangkok
    • Beijing
    • Bengaluru
    • Brisbane
    • Ho Chi Minh City
    • Hong Kong
    • Jakarta
    • Kuala Lumpur
    • Manila
    • Melbourne
    • Mumbai
    • New Delhi
    • Perth
    • Seoul
    • Shanghai
    • Singapore
    • Sydney
    • Tokyo
    오피스 전체보기
  • 얼럼나이
  • 미디어 센터
  • 구독
  • 연락처
  • Korea | 한국어

    지역 및 언어 선택

    글로벌
    • Global (English)
    미주
    • Brazil (Português)
    • Argentina (Español)
    • Canada (Français)
    • Chile (Español)
    • Colombia (Español)
    유럽, 중동, 아프리카
    • France (Français)
    • DACH Region (Deutsch)
    • Italy (Italiano)
    • Spain (Español)
    • Greece (Elliniká)
    아시아, 호주
    • China (中文版)
    • Korea (한국어)
    • Japan (日本語)
  • Saved items (0)
    Saved items (0)

    You have no saved items.

    관심 있는 내용을 북마크하여 Red 폴더에 저장할 수 있습니다. Red 폴더 에서 저장된 내용을 읽거나 공유해보세요.

    Explore Bain Insights
  • 산업
    메인 메뉴

    산업

    • 우주항공, 방산 및 정부 서비스
    • 농업 관련 산업
    • 자동차
    • 화학
    • 인프라, 건설 및 건축 자재
    • 소비재
    • 금융 서비스
    • 헬스케어
    • 산업용 기계 및 장비
    • 미디어 및 엔터테인먼트
    • 금속
    • 광업
    • 석유 및 가스
    • 제지 및 패키징 산업
    • 사모펀드
    • 사회 및 공공 부문
    • 유통
    • 기술
    • 텔레콤
    • 운송
    • 여행·여가
    • 유틸리티 및 재생가능 에너지
  • 컨설팅 서비스
    메인 메뉴

    컨설팅 서비스

    • AI, 인사이트 및 솔루션
    • Customer Experience
    • Innovation
    • M&A
    • 운영
    • 조직
    • 사모펀드
    • 고객 전략 및 마케팅
    • 전략
    • ESG
    • Technology
    • 변화 혁신
  • Digital
  • 인사이트
  • 베인 소개
    메인 메뉴

    베인 소개

    • 업무 소개
    • 베인의 신념
    • 구성원 및 리더십 소개
    • 고객 성과
    • 주요 수상 경력
    • 글로벌 파트너사
    Further: Our global responsibility
    • 다양성과 포용
    • 사회 공헌 활동
    • Sustainability
    • World Economic Forum
    Learn more about Further
  • Careers
    메인 메뉴

    Careers

    • Work with Us
      Careers
      Work with Us
      • Find Your Place
      • Our Work Areas
      • Integrated Teams
      • Students
      • Internships & Programs
      • Recruiting Events
    • Life at Bain
      Careers
      Life at Bain
      • Blog: Inside Bain
      • Career Stories
      • Our People
      • Where We Work
      • Supporting Your Growth
      • Affinity Groups
      • Benefits
    • Impact Stories
    • Hiring Process
      Careers
      Hiring Process
      • What to Expect
      • Interviewing
    FIND JOBS
  • 오피스
    메인 메뉴

    오피스

    • 미주
      오피스
      미주
      • Atlanta
      • Austin
      • Bogota
      • Boston
      • Buenos Aires
      • Chicago
      • Dallas
      • Denver
      • Houston
      • Los Angeles
      • Mexico City
      • Minneapolis
      • Monterrey
      • Montreal
      • New York
      • Rio de Janeiro
      • San Francisco
      • Santiago
      • São Paulo
      • Seattle
      • Silicon Valley
      • Toronto
      • Washington, DC
    • 유럽, 중동, 아프리카
      오피스
      유럽, 중동, 아프리카
      • Amsterdam
      • Athens
      • Berlin
      • Brussels
      • Copenhagen
      • Doha
      • Dubai
      • Dusseldorf
      • Frankfurt
      • Helsinki
      • Istanbul
      • Johannesburg
      • Kyiv
      • Lisbon
      • London
      • Madrid
      • Milan
      • Munich
      • Oslo
      • Paris
      • Riyadh
      • Rome
      • Stockholm
      • Vienna
      • Warsaw
      • Zurich
    • 아시아, 호주
      오피스
      아시아, 호주
      • Bangkok
      • Beijing
      • Bengaluru
      • Brisbane
      • Ho Chi Minh City
      • Hong Kong
      • Jakarta
      • Kuala Lumpur
      • Manila
      • Melbourne
      • Mumbai
      • New Delhi
      • Perth
      • Seoul
      • Shanghai
      • Singapore
      • Sydney
      • Tokyo
    오피스 전체보기
  • 얼럼나이
  • 미디어 센터
  • 구독
  • 연락처
  • Korea | 한국어
    메인 메뉴

    지역 및 언어 선택

    • 글로벌
      지역 및 언어 선택
      글로벌
      • Global (English)
    • 미주
      지역 및 언어 선택
      미주
      • Brazil (Português)
      • Argentina (Español)
      • Canada (Français)
      • Chile (Español)
      • Colombia (Español)
    • 유럽, 중동, 아프리카
      지역 및 언어 선택
      유럽, 중동, 아프리카
      • France (Français)
      • DACH Region (Deutsch)
      • Italy (Italiano)
      • Spain (Español)
      • Greece (Elliniká)
    • 아시아, 호주
      지역 및 언어 선택
      아시아, 호주
      • China (中文版)
      • Korea (한국어)
      • Japan (日本語)
  • Saved items  (0)
    메인 메뉴
    Saved items (0)

    You have no saved items.

    관심 있는 내용을 북마크하여 Red 폴더에 저장할 수 있습니다. Red 폴더 에서 저장된 내용을 읽거나 공유해보세요.

    Explore Bain Insights
  • 산업
    • 산업

      • 우주항공, 방산 및 정부 서비스
      • 농업 관련 산업
      • 자동차
      • 화학
      • 인프라, 건설 및 건축 자재
      • 소비재
      • 금융 서비스
      • 헬스케어
      • 산업용 기계 및 장비
      • 미디어 및 엔터테인먼트
      • 금속
      • 광업
      • 석유 및 가스
      • 제지 및 패키징 산업
      • 사모펀드
      • 사회 및 공공 부문
      • 유통
      • 기술
      • 텔레콤
      • 운송
      • 여행·여가
      • 유틸리티 및 재생가능 에너지
  • 컨설팅 서비스
    • 컨설팅 서비스

      • AI, 인사이트 및 솔루션
      • Customer Experience
      • Innovation
      • M&A
      • 운영
      • 조직
      • 사모펀드
      • 고객 전략 및 마케팅
      • 전략
      • ESG
      • Technology
      • 변화 혁신
  • Digital
  • 인사이트
  • 베인 소개
    • 베인 소개

      • 업무 소개
      • 베인의 신념
      • 구성원 및 리더십 소개
      • 고객 성과
      • 주요 수상 경력
      • 글로벌 파트너사
      Further: Our global responsibility
      • 다양성과 포용
      • 사회 공헌 활동
      • Sustainability
      • World Economic Forum
      Learn more about Further
  • Careers
    최근 검색어
      최근 방문 페이지

      Content added to saved items

      Saved items (0)

      Removed from saved items

      Saved items (0)

      Brief

      Synthetic Customers Earn Their Stripes

      Synthetic Customers Earn Their Stripes

      AI-generated buyers are already shaping real product and marketing decisions.

      글 Andy Pierce, Laura Beaudin, Nitin Gupta, Vinoth Rajasekar, Colleen Lin, Basma Abdel Motaal, and Hamish Nairn

      • 읽기 소요시간
      }

      Brief

      Synthetic Customers Earn Their Stripes
      en
      한눈에 보기
      • Companies are using synthetic customers to accelerate product development, test marketing, and train frontline teams.
      • Organizations that build synthetic customers should rely on their first-party data rather than on vendors’ third-party data.
      • Improving model accuracy allows teams to test more variables, eliminate weak ideas earlier, and focus human research where it matters most.
      • Large language models still lack true empathy, leaving a vital role for human judgment.

      Synthetic customers—AI-generated representations of real customers—have reached an inflection point that goes beyond qualitative exploration toward structured, repeatable, and accurate quantitative insights. These proxies can come in the form of one-to-one digital twins of customers or segment-based personas derived from a mix of internal company data (such as transactional, behavioral, demographic, and voice-of-the-customer research data) and external sources (product reviews and social media scraping).

      Demand for continuous, always-on insights about product or service performance has outgrown the limits of traditional research methods. Concerns around speed, cost, and risk reduction have spurred adoption of digital proxies that emulate human behavior, preferences, and decision making. For example, US Bank has used synthetic audiences to understand how high-net-worth households and other customer segments think about financial topics, test messaging, and refine creative campaigns before launch. Retailer Target tests products and promotions on synthetic audiences to simulate how various consumers would respond to them before live testing on websites.

      Market leaders that can iterate quickly, test more ideas, and kill weak concepts early consistently outperform those tied to slow, episodic, siloed insight cycles.

      Where traditional research falls short

      Traditional research remains valuable in many situations but is increasingly constrained. Conjoint and discrete choice models are limited by the number of price points, features, or interaction effects that can feasibly be tested. Teams finish studies wishing they had tested more, or wanting to extrapolate beyond what was tested, which slows learning and introduces uncertainty.

      Human-based survey research has encountered other problems in recent years. The volume of fraud has increased, and participant engagement has become more variable, which forces researchers to recruit larger samples or deploy costly quality control measures just to get usable data. Bot contamination of surveys has forced constant upgrades. Moreover, the classic issue of people saying one thing but doing another persists. And in business-to-business (B2B) markets, there may be too few key customers, such as CFOs in a single industry, to reliably sample.

      How synthetic customers perform

      It’s not surprising, then, that many product, strategy, and marketing teams are using off-the-shelf AI tools to gather qualitative insights around new features, pricing, and messaging. However, these tools often lack grounding in proprietary customer data, statistical validation, or clear governance. Fortunately, recent generations of large language models (LLMs) demonstrate stronger reasoning, more stable trade-offs, and better alignment with human decision patterns in structured tasks.

      Our work with a leading consumer technology company illustrates the step change in performance and accuracy that synthetic customers can produce when paired with their own first-party proprietary data. The team backtested synthetic output against a prior large-scale quantitative conjoint study, using the original research as ground truth. We built digital twins from historical respondent-level data and ran the same tasks used in the original study, excluding the study itself from the training inputs. The digital twins replicated about 90% of key outcomes from the original research, including the following (see Figures 1 and 2):

      • identification of the most influential features that drive customer choices;
      • preference share for most of the products tested;
      • correct portfolio-level decisions about which products to launch or retain; and
      • preliminary price sensitivity curves that showed promise.
      Figure 1
      Synthetic customers of a consumer technology company match the preferences of human customers on most product features
      visualization

      Notes: Average feature importance based on conjoint results; LLM used is Gemini 3.0; n=1,500

      Source: Bain & Company
      Figure 2
      Synthetic customers also mirror human customers in their brand preferences
      visualization

      Notes: LLM used is Gemini 3.0; n= 1,500

      Source: Bain & Company

      Similar results emerged when we tested synthetic customers against an existing human consumer survey exploring attitudes, usage, and behavior around GLP-1 drugs. We generated synthetic respondents using demographic and attitudinal inputs and evaluated their responses across closed-ended questions, as well as questions answered along a five-point scale. The synthetic outputs tracked closely with human responses, with variance increasing only when prompt questions were more ambiguous.

      The results reinforce that what you ask the LLM to do matters, but synthetic customers are increasingly reliable for quantitative use cases. And using proprietary first-party data to enrich what’s available from third parties adds nuance and reliability. 

      Looking ahead, synthetic customers have the potential to reshape the entire marketing process and the product development lifecycle. Specifically, for product development, they will add value in several ways:

      • extend prior pricing and conjoint research by testing new price points, bundles, or feature combinations without restarting fieldwork;
      • refine and stress-test at the customer segment level, exploring how segments respond to changes in product, pricing, or messaging before a company commits to new studies;
      • screen early concepts, features, and messaging to rapidly narrow the options so human research focuses on the highest-value questions; and
      • enable low-risk testing for hard-to-reach segments before engaging with a scarce pool of human customers.               

      The same principles shaping marketing in consumer industries also apply in B2B contexts. For instance, synthetic customer use cases can include prepping sales teams using simulated buyer personas and interactive avatars to help teams rehearse objections, refine value propositions, and test messaging.

      For a global services firm, we built synthetic personas based on several years of Net Promoter® loyalty data collected from its clients. With the same data, we concurrently ran traditional statistical (latent class) segmentation methods and landed in a similar place. Once personas were created, we trained the LLM on third-party data and published articles for proper context. Sales teams then could practice pitching to value-conscious CIOs and other executive personas. The models were scaled and distributed across their global offices within weeks.   

      To get started, augment rather than replace

      Our experience building synthetic customer capabilities across a range of industries shows that it’s most effective to start by augmenting, not replacing, existing research methods. Leading organizations first deploy synthetic customers as an augmentation layer to narrow options, pressure test assumptions, and focus human research on the highest-value questions, or to build proofs of concept that show accuracy.

      Success here will depend on treating synthetic customers as a capability, not a tool, which means owning how the company defines personas, simulates decisions, and validates outputs across use cases. Specifically: 

      • Backtest to prove reliability. This ensures the rest of the organization will support insights that are synthetically generated.
      • Proprietary data matters most. The data and context that ground these models—such as historical customer research, pricing and sales data, segmentation attributes, and voice-of-customer inputs—matter more than the choice of model.
      • Balance build vs. buy. Most vendors focus on qualitative or lightly structured use cases and can support early experimentation. However, organizations seeking decision-grade applications increasingly combine vendor tools with internally built models to retain control over data, logic, and learning. No off-the-shelf solution currently meets all requirements.
      • Adapt the operating model. Using synthetic customers requires changes in workflows, decision rights, and governance. Research teams, for instance, will need to ask questions differently so as to provide better input to synthetic audiences. Organizations must rethink how insights are generated and how research, product, and marketing teams collaborate.

      Leading organizations already benefit from initial learnings in the form of faster iterations, richer data and insights, and increasingly accurate in-market outcomes. Over time, synthetic customers will likely become a reusable decision infrastructure, embedding institutional learning and compounding advantage. As adoption and use cases scale, synthetic customers will function as an always-on insights platform across product, marketing, and customer experience. The cumulative depth of proprietary data and learning embedded in these systems could become a durable competitive advantage.

      저자
      • Headshot of Andy Pierce
        Andy Pierce
        파트너, Chicago
      • Headshot of Laura Beaudin
        Laura Beaudin
        파트너, San Francisco
      • Headshot of Nitin Gupta
        Nitin Gupta
        부파트너, Seattle
      • Headshot of Vinoth Rajasekar
        Vinoth Rajasekar
        Expert Associate Partner, Washington, DC
      • Headshot of Colleen Lin
        Colleen Lin
        Expert Associate Partner, San Francisco
      • Headshot of Basma Abdel Motaal
        Basma Abdel Motaal
        Practice Director, Dubai
      • Headshot of Hamish Nairn
        Hamish Nairn
        파트너, San Francisco
      문의하기
      관련 산업
      • 뱅킹
      관련 컨설팅 서비스
      • 고객 전략 및 마케팅
      • Customer Experience
      • Go-to-Market Strategy
      CMO Insights
      AI Won’t Just Cut Costs, It Will Reinvent the Customer Experience

      Beyond efficiency, AI helps create a more personalized experience that delivers a triple play of customer loyalty, employee engagement, and revenue growth.

      자세히 보기
      CMO Insights
      The 2026 Retail Executive Agenda

      Here are letters to the C-suite to help strengthen strategy, catalyze collaboration, and expand value creation in the AI age.

      자세히 보기
      뱅킹
      From Hype to Hard Value: Stablecoin and the Great Rewiring of Wholesale Banking

      Stablecoins and other forms of digital money such as tokenized deposits have shifted from speculative instruments to strategic liquidity tools in wholesale banking.

      자세히 보기
      Customer Experience
      The Customer Loyalty Metrics That Matter Most for B2B Companies

      Mining customers’ perceptions of the brand, account relationships, and joint projects inform the best next actions to foster loyalty and long-term growth.

      자세히 보기
      CMO Insights
      The New Growth Equation for Tech Services

      As AI and geopolitical change upend the status quo, service providers face a stark choice—transform or fall behind.

      자세히 보기
      First published in 5월 2026
      태그
      • 고객 전략 및 마케팅
      • 뱅킹
      • CMO Insights
      • Customer Experience
      • Go-to-Market Strategy

      프로젝트 사례

      전략 A Bold New Strategy Restores a Bank to a Leadership Position

      See more related case studies

      Digital A European Banking Giant Rises to the Fintech Challenge

      See more related case studies

      Digital A Traditional Bank Pursues Digital in a Nontraditional Way

      See more related case studies

      베인에 궁금하신 점이 있으신가요?

      베인은 주저 없이 변화를 마주할 줄 아는 용감한 리더들과 함께합니다. 그리고, 이들의 담대한 용기는 고객사의 성공으로 이어집니다.

      급변하는 비즈니스 환경에서 살아남기 위한 선도자의 시각. 월간 Bain Insights에서 글로벌 비즈니스의 핵심 이슈를 확인하십시오.

      *개인정보 정책을 읽었으며 그 내용에 동의합니다.

      Privacy Policy를 읽고 동의해주십시오.
      Bain & Company
      문의하기 환경정책 Accessibility 이용약관 개인정보 보호 쿠키 사용 정책 Sitemap Log In

      © 1996-2026 Bain & Company, Inc.

      문의하기

      무엇을 도와드릴까요?

      • 프로젝트 문의
      • 채용 정보
      • 언론
      • 제휴 문의
      • 연사 초청
      오피스 전체보기