Scribe has raised a $75 million Series C round at a $1.3 billion post-money valuation as it looks to double down on its newest product, Scribe Optimize, designed to help enterprise customers answer the pressing question that’s defining their AI strategy: where precisely can automation and AI offer measurable returns? The equity investment was led by StepStone with support from Amplify Partners, Redpoint Ventures, Tiger Global, Morado Ventures and New York Life Ventures.
The company, founded in 2019 by CEO Jennifer Smith and CTO Aaron Podolny, was best known for Scribe Capture, which automatically transforms real employee activity into step-by-step “how-to” guides. With Optimize, Scribe is now moving past mere documentation to mapping how work actually flows across an organization — and figuring out where automation and AI agents should be applied first.

Because Calculating AI ROI Is The Battleground
Enterprises have scrambled to pilot AI, but CFOs want real returns now, not demos.
Consulting firms have been warning about the divide between experimentation and lasting value. McKinsey has projected that generative AI could contribute $2.6–$4.4 trillion per year to the world’s economy, but many companies continue to struggle to demonstrate lift on core KPIs affecting cycle time, throughput and cost-to-serve. Scribe is betting that this lack of clear visibility into workflows is the missing piece.
The company’s pitch is straightforward: You cannot automate what you do not understand. Optimize infers real user behavior to determine frequency, duration, variance and handoff of the tasks. That enables operations leaders to compare the impact scenarios — AI agents, RPA bots or simple process changes — and focus on those projects for which payback comes back the fastest instead of getting caught chasing the shiniest demo in yet another vendor call.
How Scribe Optimize Works to Map and Guide Automation
Scribe constructed Optimize from Scribe Capture, which creates shareable guides that include text and screenshots when people finish a workflow. Those micro-instructions reduce training time and tamp down tribal knowledge. Customers are reporting saving 35–42 hours per person per month and onboarding new hires 40% faster, showing how much redundant work is hidden in your daily processes.
Now Scribe synthesizes what it learns — across apps and with teams — to create a single layer of true work in front of you. The company says that it has captured more than 10 million workflows from 40,000 software applications and a total user pool of over 5 million professionals in teams inside 94% of the Fortune 500. With 78,000 paying organizations, Scribe says it can surface where automation will help most on real-world worksites rather than in lab conditions.
Think claims intake at insurance, quote-to-cash for SaaS, vendor onboarding in procurement and exception handling within finance. Optimize can measure where agents or bots can remove friction most effectively — for example, through automation around repetitive data entry, validation and status updates — while flagging edge cases that still require human judgment.
Funding Details and Scribe’s Go-to-Market Strategy
Scribe says its valuation is up some 5x since its prior round and that revenue more than doubled in the last year. The San Francisco company has about 120 employees and expects to double headcount within the next 12 months. Outside the U.S., its fastest-growing markets are the U.K., Canada, Australia and Europe.

The additional capital will accelerate development of Optimize and adjacent products, particularly analytics that connect workflow changes to financial results. Look for it to become more deeply integrated across the automation stack — RPA tools, AI agent platforms and enterprise systems of record — so recommendations can be made that can be acted upon and tracked without swivel-chair effort.
Competitive Landscape And Differentiation
Companies that specialize in process mining and task mining, among them Celonis, UiPath and Microsoft, have been pushing discovery for years. Scribe’s approach is to be a bottom-up, human-readable layer that creates documentation people actually use along with the data necessary to uncover where bottlenecks exist. The combination of “how-to” knowledge and ground-truth data may interest business teams that need both instruction and impact models.
The broader takeaway is obvious: AI’s impact potential is gargantuan, but value capture depends on discovery, change management and measurement. By revealing where time and errors actually aggregate — and by suggesting the next best automation — Scribe is positioning itself as a control tower for practical AI deployment rather than just another point tool.
Security and Governance Questions for Enterprises
When you capture and analyze user activity, it raises predictable questions about privacy, PII and compliance — especially in regulated industries or works council regions. Enterprises will search for granular permissions, audit trails, data anonymization (when relevant) and clear consent models as well as ways to specify the country in which their data resides. Scribe’s wide-reaching presence in the Fortune 500 indicates that it gets these needs, although governance execution will be key for worldwide rollouts.
What to Watch Next as Scribe Optimize Scales
Scribe Optimize’s true test will be in conversion: How often do those insights become live automations, and how soon do customers see the value?
Look out for example cases that measure:
- Cycle-time savings
- Error-rate improvements
- Labor-hour reductions associated with particular workflows
Interesting as well will be attach rates with top RPA and agent vendors as it extends beyond early AI-forward teams into finance, HR and actual operations en masse.
If Scribe can reliably pinpoint the “first 100 hours to automate” within the enterprise — and prove those hours give back something measurable in return — it will have earned its unicorn status not with hype, but instead with the most elusive deer in any AI hunting expedition today: ROI.
