What is a UX/UI Designer?
A UX/UI Designer at S&P Global shapes how professionals analyze markets, assess risk, and make high-stakes financial decisions. Your work brings clarity to data-dense, information-rich workflows across our product portfolio—from Market Intelligence dashboards and Ratings workflows to post-trade platforms and Kensho’s AI-powered tools. You will craft interactions and interfaces that turn complex datasets, models, and corporate actions into intuitive, reliable experiences trusted by banks, asset managers, governments, and enterprises worldwide.
This role is critical because our customers operate in time-sensitive, accuracy-critical environments. Thoughtful UX reduces operational risk and accelerates insight; elegant UI increases adoption and trust. You’ll partner with product, engineering, data science, and subject-matter experts to translate intricate rules (e.g., ISO 20022), multi-step processes (e.g., corporate actions life cycle), and advanced analytics into experiences that are fast, accessible, and scalable. Expect to contribute to enterprise design systems, lead usability validation, and ship production-grade designs that power decisions with real-world impact.
You will thrive here if you enjoy solving wicked, domain-heavy problems: aligning business objectives with user needs, instrumenting measurable outcomes, and designing for performance, compliance, and accessibility at scale. The work is challenging and consequential—exactly the kind of challenge that builds exceptional product designers.
Getting Ready for Your Interviews
Your preparation should focus on three pillars: a crisp, outcome-driven portfolio narrative, structured problem solving under constraints, and fluency in enterprise/data-heavy UX. Build stories that show how you reduce complexity, align stakeholders, and measure impact. Be ready to move fluidly between strategy (why), craft (how), and execution (what and when).
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Role-related Knowledge (Technical/Domain Skills) – Interviewers look for mastery in interaction design, information architecture, design systems, accessibility (WCAG), prototyping, and usability testing. For S&P Global, you’ll stand out by demonstrating comfort with data visualization, error/edge states, and financial/enterprise contexts. Show real Figma files, your component logic, and how you design for scale.
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Problem-Solving Ability (How You Approach Challenges) – We assess your ability to frame ambiguous problems, identify constraints, generate options, and select tradeoffs with evidence. Narrate your thinking: how you define success metrics, run lean experiments, and converge on a solution that balances user value, feasibility, and business viability.
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Leadership (Influence Without Authority) – Strong candidates facilitate alignment, defend user-centered decisions with data, and guide teams through discovery and delivery. Demonstrate how you led workshops, resolved conflicts, and influenced product direction—especially when requirements, timelines, or compliance needs shifted.
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Culture Fit (Collaboration and Ambiguity) – Expect questions about cross-functional collaboration, working with PMs, engineers, and SMEs, and navigating complex regulatory/operational constraints. We value integrity, discovery, and partnership; show how you listen deeply, iterate quickly, and raise the bar for your team.
Interview Process Overview
You can expect a structured, portfolio-led process that tests how you think, communicate, and ship in a complex, data-rich environment. Rather than emphasizing trick questions, S&P Global focuses on the clarity of your problem framing, your design rationale, and your ability to partner with cross-functional teams. The pace is professional and deliberate; conversations often dive deep into information density, system constraints, and compliance.
The process is rigorous but fair. You’ll encounter a combination of portfolio review, craft-focused discussions, and product-thinking or case exercises that simulate real S&P Global challenges (e.g., workflows for corporate actions, AI-augmented analysis, or data-heavy dashboards). Expect interviewers to probe for impact evidence, ask you to walk through component-level decisions, and evaluate how you’d iterate based on usability insights and stakeholder feedback.
This visual timeline outlines the typical sequence—from initial screens to portfolio, craft, and cross-functional conversations. Use it to map when to deepen your portfolio story, when to prep for case prompts, and when to highlight collaboration and delivery. Keep your materials organized, confirm logistics early, and maintain concise follow-ups to stay aligned on next steps.
Deep Dive into Evaluation Areas
Portfolio Excellence & Craft Narrative
Your portfolio is the anchor. We assess how you frame the problem, navigate constraints, make tradeoffs, and measure outcomes. Prioritize depth over breadth and show end-to-end ownership: discovery, IA, interaction flows, states, validation, and post-launch learnings.
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Be ready to go over:
- Problem framing and constraints: Who are the users? What rules, data, or compliance constraints shaped the work?
- Decision rationale: Why this IA? Why these components? How did testing inform iteration?
- Outcome metrics: Adoption, task completion, error reduction, time-on-task, support ticket trends.
- Advanced concepts (less common): Anticipatory design, progressive disclosure in data-dense UIs, scaling tokens across micro-frontends.
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Example questions or scenarios:
- “Walk us through a project where you simplified a data-heavy workflow. How did you validate the information hierarchy?”
- “Show a decision you reversed after research. What changed?”
- “Open a Figma file and explain how your components enable scale and speed for engineering.”
Interaction Design, IA, and Design Systems
We look for systems-level thinking: logical flows, resilient states, and componentized interfaces that scale across products and devices. Expect to discuss tokens, variants, accessibility, and performance impacts of your choices.
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Be ready to go over:
- Information architecture: Labeling, navigation models, and wayfinding for complex tasks.
- State management: Empty, loading, partial, error, and edge conditions.
- Design systems: Naming conventions, tokens, component governance, contribution workflows.
- Advanced concepts (less common): Cross-product theming, motion guidelines in regulated contexts, a11y for high-density tables/charts.
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Example questions or scenarios:
- “Redesign this table to support 50 columns, pinned headers, and inline editing. What patterns and safeguards do you apply?”
- “How do you encode accessibility in your components beyond color contrast?”
Research, Validation, and Evidence
Strong candidates demonstrate method agility: knowing when to run quick evaluative tests vs. deeper discovery, and how to turn findings into decisions. We value pragmatic rigor—right-sized research under real timelines.
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Be ready to go over:
- Method selection: Heuristics, usability testing, surveys, diary studies, analytics.
- Synthesis and decisions: Turning insights into requirements and backlog items.
- Measurement: Defining success metrics and instrumentation strategies.
- Advanced concepts (less common): Testing financial comprehension, quant UX in B2B, combining logs with moderated testing.
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Example questions or scenarios:
- “Describe a rapid test that meaningfully redirected your design within a sprint.”
- “How did you measure success post-launch, and what did you iterate?”
Domain Fluency: Financial, Post-Trade, and AI-Enabled Workflows
S&P Global products often involve corporate actions, market data, risk signals, and AI-assisted analysis. You don’t need to be a finance expert, but you must show curiosity, structured learning, and comfort designing with complex rules and data.
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Be ready to go over:
- Data semantics: What the data means for user decisions (e.g., event-level details, terms/conditions).
- Rules and standards: Constraints like ISO 20022, message flows, approvals.
- AI in UX: Promptable features, transparency, error handling, human-in-the-loop safeguards.
- Advanced concepts (less common): Designing for auditability, explainability, latency tradeoffs in streaming data.
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Example questions or scenarios:
- “How would you surface exceptions in a corporate actions processing UI without overwhelming users?”
- “Design a review flow for AI-suggested insights with clear provenance and override paths.”
Collaboration, Delivery, and Stakeholder Management
We evaluate how you align with PMs, engineers, and SMEs, manage scope, and deliver predictably. Communication quality and requirements clarity are as important as pixels.
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Be ready to go over:
- Workshops and alignment: Mapping ‘as-is’ and ‘to-be’ processes, prioritizing value.
- Handoffs and tickets: Specs, acceptance criteria, and partnering through QA/UAT.
- Risk management: Handling scope changes, compliance flags, and technical constraints.
- Advanced concepts (less common): Change management for design system adoption, SLA-aware UX for operations teams.
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Example questions or scenarios:
- “Describe a time you challenged scope and proposed an incremental solution that still delivered business value.”
- “How do you support UAT and ensure design intent in production?”
This word cloud highlights recurring themes—expect emphasis on portfolio storytelling, design systems, data-dense UI, research/validation, and cross-functional collaboration. Use it to prioritize your preparation: strengthen narratives around complex workflows, evidence-based iteration, and enterprise-scale componentry.
Key Responsibilities
You will own the end-to-end experience for features within one or more S&P Global products. Day to day, you will move between discovery (research, framing), definition (IA, flows), delivery (Figma specs, prototypes), and validation (usability, analytics). You’ll collaborate closely with product managers to refine requirements, with engineers to de-risk feasibility, and with data/AI teams to make complex insights understandable and actionable.
Typical responsibilities include:
- Lead portfolio-defining initiatives from exploration to launch, driving clarity on user goals, constraints, and metrics of success.
- Translate complex data and rules (e.g., corporate actions, entitlements, or AI-generated insights) into clear information hierarchies and workflows.
- Build and evolve design systems: tokens, components, patterns, documentation, and contribution guidelines.
- Prototype and test: validate hypotheses with users, run heuristic reviews, and iterate based on evidence.
- Deliver production-ready specs: responsive layouts, interaction details, error/edge cases, and accessibility criteria.
- Partner through release: support grooming, QA/UAT, bug triage, and post-launch measurement and iteration.
Expect to work on initiatives such as portfolio analytics dashboards, post-trade processing UX, self-service configuration tools, and AI-augmented workflows developed with Kensho and core product teams.
Role Requirements & Qualifications
This role blends craft excellence with systems thinking and domain curiosity. You’ll be evaluated on the depth of your design practice and your ability to deliver scalable, accessible, and high-trust experiences in enterprise contexts.
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Must-have technical skills
- Figma expertise: components/variants, tokens, auto-layout, libraries, prototyping.
- Interaction design & IA: complex flows, tables/charts, filters, multi-state handling.
- Accessibility (WCAG 2.1+): contrast, focus states, semantics, keyboard patterns.
- Usability testing & heuristics: plan, run, synthesize, and translate to decisions.
- Design systems: contribution workflows, governance, documentation.
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Must-have experience
- 4+ years (or commensurate) in product/UX design shipping web applications; portfolio with data-dense work.
- Proven collaboration with PM, Engineering, QA, and ideally Data/ML partners.
- Evidence of measurable impact (adoption, efficiency, quality, or revenue/risk metrics).
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Nice-to-have advantages
- Familiarity with financial services, post-trade workflows, or corporate actions.
- Understanding of ISO 20022 and regulated enterprise contexts.
- Comfort with analytics tools (e.g., Amplitude, GA), light SQL, or experimentation frameworks.
- Exposure to AI/ML product UX: explainability, safeguards, feedback loops.
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Soft skills that differentiate
- Structured communication, stakeholder facilitation, and clear decision rationales.
- Ownership mindset with bias for action and evidence-based iteration.
- Calm under ambiguity: ability to de-risk and move teams forward.
This compensation view reflects available, role-relevant salary signals for UX/UI and Product Design roles at S&P Global across levels and locations. Ranges vary by grade, market, and experience; for example, recent postings include a U.S. base range of $90,000–$135,000 for a Lead Product Designer, with total rewards that may include bonus and benefits. Use this as a calibration tool, not a single anchor—align expectations to your level and geography.
Common Interview Questions
Expect a balance of portfolio deep-dives, product-thinking prompts, and craft/detail questions. Prepare concise, evidence-backed answers and be ready to open real artifacts when asked.
Portfolio & Craft
This area validates your end-to-end process, decision quality, and measurable outcomes.
- Walk us through a project where you simplified a complex, data-heavy workflow. How did you validate your IA?
- Show us your component library. How did you design for scale and accessibility?
- Tell us about a time research changed your direction mid-sprint. What did you do next?
- How do you handle error, empty, and loading states in high-density interfaces?
- Share a time you balanced business pressure with user needs. What tradeoffs did you make?
Product Thinking & Case Exercises
We assess how you frame problems, prioritize, and define success.
- Given a corporate actions workflow with rising exceptions, how would you reduce errors without overwhelming the user?
- Design a dashboard for portfolio risk monitoring. What are the first three KPIs and why?
- How would you introduce an AI-assisted “insight” panel while maintaining user trust and control?
- In two weeks, what is MVP vs. V2 for a self-service configuration tool?
- How do you define and instrument success metrics pre-launch?
Research & Validation
Your ability to right-size methods and make decisions with evidence.
- What lightweight test would you run to validate a new filtering pattern?
- Describe how you triangulate analytics with qualitative feedback.
- How do you recruit representative users in B2B contexts?
- Tell us about a heuristic issue you found that data didn’t show.
- How do you document and socialize research learnings?
Collaboration & Delivery
We look for influence, alignment, and consistent execution.
- Describe a workshop you facilitated to align ‘as-is’ and ‘to-be’ processes.
- How do you ensure engineering understands interaction intent during handoff?
- Share a time you managed scope creep and preserved product value.
- How do you support QA/UAT to maintain design quality?
- When stakeholders disagree, how do you move forward?
Domain & Data-Dense UI
Your comfort with semantics, compliance, and information scale.
- How would you design table interactions for 10k+ rows with inline editing and audit trails?
- What accessibility pitfalls are common in dense financial dashboards?
- How do ISO 20022 constraints influence UX decisions?
- How do you present AI confidence or provenance to end users?
- Describe progressive disclosure for complex terms and conditions.
Use this interactive module to practice by category, refine your pacing, and pressure-test your narratives. We recommend answering out loud, timing your responses, and iterating on clarity and evidence.
Frequently Asked Questions
Q: How difficult is the interview, and how much time should I prepare?
Allocate 2–3 weeks for focused prep: sharpen your top two portfolio stories, rehearse a 10–12 minute walkthrough, and practice a data-dense case. Difficulty is moderate to high, with deeper dives on systems thinking and validation rather than trick questions.
Q: What makes successful candidates stand out?
Clear problem framing, strong component-level reasoning, and evidence of impact. Those who communicate tradeoffs crisply, show real artifacts (Figma, research notes), and navigate ambiguity with stakeholders typically excel.
Q: What is the culture like?
Guided by Integrity, Discovery, and Partnership, teams value curiosity and collaboration. You’ll work cross-functionally, often with data/AI teams and domain experts, to build high-trust, high-utility products.
Q: What is the typical timeline?
Timelines vary by team and location, but most processes move from screen to onsite rounds within a few weeks. Keep your materials share-ready and follow up professionally if timelines slip.
Q: Is the role remote or on-site?
S&P Global supports a range of arrangements depending on team and location, including hybrid options. Confirm expectations with your recruiter early.
Q: What portfolio format works best?
A web portfolio plus live Figma works well. Ensure sensitive content is redacted and have offline backups in case of network or permission issues.
Other General Tips
- Lead with outcomes: Quantify impact (e.g., “Reduced exception handling time by 28%”); anonymize where needed. Impact signals decision quality.
- Show your work: Bring research plans, synthesis artifacts, IA diagrams, and component specs. This proves rigor beyond polished screens.
- Design for scale: Explain how components, tokens, and patterns scale across products and edge cases. Show before/after simplifications.
- Anticipate constraints: Address performance, accessibility, localization, and compliance in your rationale. Preemptively de-risk.
- Own the handoff: Demonstrate tickets/specs with acceptance criteria, as-built diffs, and how you partnered through QA/UAT.
- Rehearse the case: Practice a 30–45 minute whiteboard or Figma case on data-dense workflows. Timebox, state assumptions, and prioritize.
Summary & Next Steps
This UX/UI Designer opportunity at S&P Global places you at the center of mission-critical, data-intensive products that professionals rely on to make confident decisions. You will transform complexity into clarity, evolve enterprise design systems, and partner across disciplines—including AI teams at Kensho—to deliver experiences that matter.
Focus your preparation on three fronts: a tight, evidence-backed portfolio narrative; systems-level craft (IA, components, accessibility); and structured product thinking under constraints. Practice data-dense cases, rehearse your tradeoff rationale, and prepare to show your actual Figma and research artifacts.
You’re ready to succeed. Use the modules above to practice, refine your stories, and approach each conversation with clarity and confidence. Explore more insights and interactive prep on Dataford to sharpen your edge—and step into your interviews prepared to demonstrate the value only you can deliver.
