Automation of Agency Sales Operations with AI Agent Hiway Raises ¥300 Million in Series A
Hiway secured ¥300M to expand an AI-native PRM/CRM that drafts responses and quotes for enterprises selling through agencies and partners.
Hiway raised approximately ¥300 million ($1.9 million) in a Series A round to expand its AI-native CRM focused on automating agency and partner sales operations, bringing total funding to ¥465 million ($3.0 million).
The product focus matters for B2B marketers and revenue teams that rely on indirect, multi-tier distribution, where inquiry handling, quote generation, and partner coordination often become operational bottlenecks that slow pipeline movement.
Table of contents
Jump to each section:
- What Hiway raised and what the product is built to do
- How the AI agent works in day-to-day agency sales workflows
- Competitive landscape: where Hiway fits vs CRM and partner tools
- Why this reflects a broader shift toward AI-run revenue operations
- What marketers and partner teams should pressure-test before adoption
What Hiway raised and what the product is built to do
Hiway raised approximately ¥300 million ($1.9 million) in Series A funding led by existing investor DNX Ventures, taking total funding to ¥465 million ($3.0 million). The company was founded in November 2021 and is based in Tokyo.
Hiway positions its product as a PRM/CRM layer for enterprises that sell through agencies and partners, particularly companies with multi-tier distribution structures and more than 10 agencies. An example customer cited is Box Japan.

How the AI agent works in day-to-day agency sales workflows
Hiway’s core workflow is centered on reducing manual work in inquiry response and quotation creation, especially when requests arrive across multiple channels like email, phone, and web forms.
Operationally, the AI agent parses inbound inquiries and structures key fields such as product name, model number, quantity, and delivery date. It then cross-references internal data sources including product master data, price lists, past quotations, knowledge, and customer and agency information to generate response proposals and quotation drafts.
Two implementation details are important for enterprise environments:
- Bidirectional sync with existing CRM/SFA systems, which suggests Hiway is aiming to coexist with incumbent systems rather than replace them outright.
- A built-in corporate database covering 5.4 million companies, which could support lead and account enrichment, but also introduces governance questions about how that data is maintained, updated, and matched to internal records.
Competitive landscape: where Hiway fits vs CRM and partner tools
Hiway competes in a crowded CRM-adjacent space where feature overlap is common across CRM, SFA, and partner management tools. In practice, enterprise buyers often evaluate these products based on how well they fit existing workflows and data architecture, not just AI features.
The competitive set includes:
- Salesforce and HubSpot, which can support workflows through automation, integrations, and partner ecosystem tooling, especially when paired with custom objects and quoting packages.
- Matsurika, a Japan-native CRM vendor, which may be evaluated by teams that prefer domestic vendor support and localization.
Hiway’s differentiation is less about being “another CRM” and more about concentrating on agency and partner-led operations where quoting and inquiry response are high-frequency and data-dependent. If the AI agent can reliably generate drafts from product and pricing masters, it may reduce turnaround time and standardize responses across distributed partner networks, a pain point that general-purpose CRMs often leave to custom process design.
Why this reflects a broader shift toward AI-run revenue operations
The announcement aligns with a wider move toward AI marketing automation and the convergence of marketing and sales operations. For B2B organizations, especially those selling through channel partners, the biggest constraint is often operational throughput, not lead volume.
Automating inquiry triage and quote drafting is a practical example of “AI in RevOps” that is easier to measure than top-of-funnel experimentation. Teams can track cycle time reduction, quote-to-close impact, and partner responsiveness consistency. This also signals a shift from AI as a standalone assistant to AI as an embedded workflow agent that sits inside existing systems of record and executes repetitive steps at scale.
What marketers and partner teams should pressure-test before adoption
For teams evaluating Hiway, the main questions are operational and risk-oriented:
- Data readiness: Are product masters, price lists, and quoting rules structured enough to be safely used for automated drafts?
- Human-in-the-loop design: What approval steps are required before responses and quotes go out, and how are exceptions handled?
- Integration scope: Which CRMs/SFAs are supported today, and what is the effort required to maintain bidirectional sync over time?
- Partner governance: If multiple agencies touch the same accounts, how does the system manage permissions, attribution, and audit trails?
If the organization relies on agencies as a growth channel, the value case will likely hinge on whether the tool can standardize partner execution while keeping pricing control, brand messaging, and compliance tight.

