E-E-A-T CONTENT ENGINE

SEO content your clients accept and Google keeps ranking.

ProofWrite turns a keyword or a client link into a researched, cited, fact-checked article your clients can sign off on — at agency volume, not AI filler that gets sites penalized.

Start your free 3-article pilotYour Pilot starts when you generate your first article. No credit card required.
21 sources researched27 claims checked8 citations inserted
Per article like the draft shown here.
ProofWrite editor
Ready to publish

Draft article

Airtable vs Notion for content operations

Airtable is stronger when the team needs relational views, forms, and automation-heavy production tracking. Notion works better when briefs, research notes, and approvals need to live beside the editorial calendar.

In our test workspace, Airtable handled status rollups with less cleanup, while Notion made context easier for writers.

Sources

21

Keywords

39

Claims

27

86

SEO

91

AEO

84

GEO

Keyword coverage

airtable vs notioncontent operationseditorial calendarworkflow automation

Fact check

27 claims supported
8 citations inserted
1 stale pricing claim rewritten

Research inputs

Official docs and pricing pages9
Review and community sources12
Workflow test notesAdded

Why it holds up

ProofWrite researches first, writes second

ProofWrite is built around the inputs and agents that make SEO content worth publishing: research agents gather source material, writing agents build from approved evidence, citation agents connect claims to sources, and QA checks weak claims before publishing.

Input

Research

Write

Verify

Input

Start with real demand

Live keyword data and coverage targets define what the article needs to cover.

Research

Research agents build the evidence set

Official pages, reviews, discussions, files, and saved sources feed the draft.

Write

Writing agents add original value

Your notes, opinions, and firsthand context are woven into the article.

Verify

QA agents check before publishing

Claim checks, source additions, rewrites, and publish gates catch weak claims.

Who ProofWrite is for

Researched, fact-checked articles you can publish without risking the domain — not another chat window you have to babysit.

Link builders & niche-edit operators

Placements that don't bounce back. Drafts built around your client's link that read like genuine editorial and get accepted first pass, at 50-placements-a-month volume.

SEO & content agencies

Hand clients drafts you can defend — every claim checked, every source attached. The research packet is the proof your client signs off on.

In-house & multi-site operators

Scale content across your sites or your brand without scaling headcount.

Two ways to build

Build a standalone article around a client link, or start with your own site

ProofWrite supports the two real workflows SEO teams and agencies use every day.

Standalone Mode / For Link Builders & Agencies

Guest posts & niche edits built around the client link

Add the client URL and anchor text. ProofWrite plans the topic around the link, researches it, and writes a draft editors accept — not AI text wrapped around a placement.

Context around the link

The draft is planned around a relevant topic instead of forcing the link into a generic article.

Agency time saver

Move from client URL and anchor text to a complete draft without rebuilding the same workflow by hand.

See the guest post builder

Domain Mode / For Content Teams

Autopilot content engine for your own sites

Connect a site and ProofWrite's site-aware agents can learn the brand voice, analyze existing content, suggest article opportunities, and support internal linking for site-backed drafts.

Site-aware article setup

Use domain defaults and brand context instead of rebuilding the brief every time.

Internal linking support

Give each new article a better path into your existing content library.

Start with Domain Mode
Suggestions
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Fresh ideas every morning

AI analyzes your site and suggests topics you haven't covered yet.

Daily suggestions

Article ideas delivered every day

ProofWrite scans your niche daily and surfaces topics your competitors haven't covered, so you always have a qualified article opportunity ready.

Aware of your existing content

Suggestions are based on the pages your site already has, not random keywords.

Formats that rank

Reviews, guides, listicles, and comparisons — each mapped to a known search intent.

Gap detection

Topics you've already covered are filtered out. Only real content gaps remain.

One-click to project

Turn any suggestion into an active writing project in a single click.

Keyword research

Live keyword data

Search volumes, difficulty scores, and CPC data pulled directly inside ProofWrite — no separate tool required.

Real volume and competition data

Live numbers from Google. Target terms you can actually win.

Research while you write

Pull fresh keyword data from inside the editor, without switching tools.

Natural keyword density

ProofWrite maps required terms into the brief so coverage supports rankings without awkward stuffing.

You pick the must-have terms

Toggle any keyword as required, and it gets woven into the article during generation.

Keywords
Real Search Data
project managementResearch

Mode

Primary + Related

Keywords

200

project managementPrimary
49.5K35$24.06
project management institute
135.0K31$3.72
project management software
22.2K48$12.50
project tracking software
18.1K52$18.30
certified project manager
12.8K29$8.45
Research
0/4 sources
N

Notion

Researching product data...

Data Sources

Official Website

Trustpilot

Capterra

Reddit

Trust Signals

4.5
Trustpilot(12.8K)
4.6
Capterra(2.1K)

Trust Score

0

Excellent

Pros

Intuitive block-based editor

Excellent collaboration features

Flexible database system

Cons

Steep learning curve for advanced features

Can be slow with large databases

Product research

Research from multiple sources, not just Google

Research agents pull from official product pages, Reddit, X, YouTube, reviews, and saved sources before drafting.

Multi-source synthesis

Search results plus five review and community platforms combined into one research packet.

Aggregated trust scores

Ratings, review counts, and sentiment from every source rolled into one trust metric per product.

Reddit sentiment analysis

Real user opinions parsed and summarized, with bots and marketing threads filtered out.

Built for E-E-A-T

Claims are checked against authoritative sources so E-E-A-T signals are easier to show.

SEO readiness

Real-time SEO scoring for publish-ready drafts

SEO and QA agents check every draft for search visibility, answer coverage, structure, citations, and generic phrasing before you hit publish.

Live 0-100 scoring

SEO score updates with every keystroke. Weak spots in structure, media, and depth are flagged automatically.

AEO and GEO scoring

Separate scores for Answer Engine Optimization and Generative Search citations — not just classic Google ranking.

Generic phrasing checks

Repetitive patterns, filler, and default AI tone are caught before they weaken the article.

Brand voice matching

Upload writing samples so drafts follow your site's tone instead of a default voice.

Live Scoring
Demo article
0/100

SEO

Score

Re-scored on every edit you make

0

AEO

Score

0

GEO

Score

Scoring speed

Real-time

Depth

Keyword, structure, media etc.

Alerts

Gaps highlighted instantly

Score by pillarTarget: 85+
Keyword Coverage92
Question Headings85
Source Citations68
Content Structure78
Media Density45
Internal Links60

What moves the needle

Question headings, source citations, and quotable claims.

Built-in fact checking

Every claim gets a verdict

QA agents review article claims automatically. For any that need attention, pick one of three actions: verify, add a source, or rewrite.

Verify

Mark a claim as reviewed when you've confirmed it yourself.

Add source

Paste a URL and the system extracts supporting evidence automatically.

Rewrite

ProofWrite rewrites the claim to be accurate and grounded in research.

Fact Check
4 claims need attention
12 Cleared
4 Needs attention
Needs reviewPricing claim

Notion's Business plan costs $15 per user per month

Supported“Notion offers unlimited pages on free tier”
notion.com
Contradictory“Notion does not have an API”
notion.com/api

Every claim gets a verdict

Pricing, features, ratings, and policy claims are verified against your research data.

Research to ranking-ready draft

See how research becomes a publish-ready SEO article

Toggle the view to see how ProofWrite turns verified facts, keyword targets, trust signals, and source material into a structured article draft. More SEO article examples can be found in our blog.

Research-to-draft preview

Article window

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Why Practitioner-Led Insights Are Replacing Generic Ecommerce Advice

Why Practitioner-Led Insights Are Replacing Generic Ecommerce Advice

Generic ecommerce advice has a shelf life problem. "Improve your product pages," "build trust with customers," "use data to personalize"; these statements are technically true and practically useless. The store owner running 30 SKUs on Shopify and the enterprise team managing 300,000 SKUs on a headless stack face completely different problems, and the same blog post cannot solve both. What's changed is that practitioners, people actively running stores, managing ad budgets, and debugging crawl issues at 11pm, are now producing and sharing the specific, failure-tested knowledge that generic content never could.

This shift isn't just about tone or format. It reflects a structural change in how ecommerce operates. The technical complexity of modern online retail has outpaced the generalist's ability to describe it accurately.

The Gap Between Advice and Reality

For years, the dominant format for ecommerce education was the listicle: "10 ways to increase conversions," "5 email tactics that work." These posts served a purpose when the channel was simpler. Keyword research, a clean checkout flow, and decent product photography could carry a brand a long way.

That era is closing. McKinsey's research on next-generation ecommerce found that leading companies are twice as likely as laggards to make technology a top priority, treating it not as a support function but as the core of their commercial strategy. Technology is no longer something you bolt onto a working store. It is the store.

When the infrastructure becomes this technical, advice that doesn't account for it stops being advice. It becomes noise.

The practitioners who are filling that gap aren't necessarily academics or consultants. They're operators who tried something, measured it, and can tell you exactly where it broke. That specificity is what makes their insights valuable.

How Consumer Behavior Became Too Complex for Generic Frameworks

Ask yourself: when did you last make a purchase decision that followed a clean, linear funnel? Awareness, consideration, purchase. The reality for most shoppers involves multiple devices, AI-generated summaries, peer reviews on Reddit, and a chatbot that either helps or frustrates before a single item reaches the cart.

TGM Research's 2026 ecommerce market guide captures the problem directly: "Dashboards can show you what customers did, but not why they did it or what they chose not to do." That gap between behavioral data and behavioral understanding is where generic advice falls apart. A framework built on aggregate patterns cannot explain why a specific customer segment abandons at the size selector but converts at the bundle offer.

The research framework that practitioners are increasingly using to close this gap involves three sequential steps: collecting behavioral data within the store (using tools that track clickstream activity and RFM signals, where RFM stands for Recency, Frequency, and Monetary value), grouping customers by those behavioral patterns, and then differentiating the content presented to each segment. Research by Adam Wasilewski, published in the journal Computer Standards & Interfaces, confirmed that generative AI applied to segmented customer clusters can produce significantly distinct product descriptions — though the same research noted that in 26.7% of cases, the differences were not statistically significant, which is a useful reminder that segmentation quality determines output quality.

The failure mode here is skipping the segmentation step. Applying a single AI-generated description to all customers is marginally better than a static description, but it misses the point entirely. The personalization only works when the underlying customer groupings are meaningful.

The AI Layer That Generic Advice Hasn't Caught Up To

Here's a question worth sitting with: if a shopper types a detailed query into ChatGPT and your product doesn't appear in the response, does your SEO strategy account for that?

Most generic ecommerce advice still treats search as a keyword-matching exercise. But Salesforce's 2026 ecommerce trends report describes a different reality: autonomous AI agents like Agentforce are now being deployed to help commerce teams scale personalization and increase efficiency, with commerce professionals who use AI reporting an average saving of 6.4 hours per week. The operational implication is that AI isn't just a content tool. It's becoming the infrastructure through which products are discovered, evaluated, and purchased.

TGM Research's analysis of agentic commerce makes the visibility shift explicit: buying decisions are increasingly influenced by AI agents that prioritize structured, machine-readable content over traditional emotional branding. A beautifully written brand story that lives inside a JavaScript-rendered React component may never be read by the AI making the recommendation.

This is exactly the kind of operational detail that practitioners surface and generalists miss. To understand how real teams are navigating these changes, it helps to listen to real-world ecommerce case studies from operators who have already run into these walls and rebuilt around them.

Answer Engine Optimization: What Practitioners Are Actually Doing

The most concrete example of practitioner knowledge replacing generic advice is the emergence of AEO, or Answer Engine Optimization. AEO refers to the practice of structuring product content so that AI platforms like ChatGPT, Gemini, and Google AI Overviews can accurately cite and recommend it.

Yotpo's Ben Salomon describes the shift plainly: "Answer Engine Optimization, or AEO, is where ecommerce discovery is heading, and it's the part your traditional SEO playbook quietly stopped covering about 18 months ago." He also notes that "the two-word keyword query is dying. Shoppers now type 18-word multi-clause prompts into ChatGPT." These aren't predictions. They're observations from someone watching citation data in real time.

The numbers support the urgency. Yotpo's analysis of AI Overview citations found that only 16.7% of sources cited in Google AI Overviews also appear in the top 10 organic search results. That means an entirely separate visibility game is being played, and most brands are not playing it.

The practitioner-level case study that illustrates the stakes: a brand whose top 30 SKUs (stock-keeping units, the individual product identifiers) previously dominated organic search results is now being bypassed by Google AI Overviews. ChatGPT recommends a competitor instead. The reason is technical: the competitor's product detail page (PDP) serves clean HTML with structured schema markup, while the brand's PDP renders its specifications through a JavaScript-based React shell. GPTBot and most large language model crawlers do not execute client-side JavaScript. If your product specifications only appear after React state loads, they are invisible to these crawlers.

The fix is auditable. Right-click any PDP and select "View Page Source" (not "Inspect"). If your product specifications, materials, dimensions, and pricing are absent from the raw HTML, they are absent from AI citations. Stripping JavaScript bottlenecks from PDPs, or ensuring server-side rendering for critical product attributes, is the kind of specific, verifiable action that practitioners share and generic advice never reaches.

Brands can verify their current AI citation standing through tools like Yotpo Discover, which provides a dashboard specifically for monitoring citation share within AI search results.

What Practitioners Know About Product Content That Surveys Confirm

A separate but related question: what actually builds trust on a digital shelf?

Salsify's consumer research found that half of consumers considered "high-quality images and detailed product descriptions" one of the top factors in their purchase decisions, and that brand trust on a digital shelf comes down to the robustness of the product detail page itself. Customer reviews, product images, ratings, and material details are the criteria shoppers use to decide whether a product fits their needs.

This aligns with what practitioners have been saying for years: the PDP is not a product listing. It is the primary trust-building surface in ecommerce. Generic advice treats it as a copywriting exercise. Practitioners treat it as a technical and editorial asset that must satisfy both human readers and machine crawlers simultaneously.

The practical implication is that PDP investment is not optional. Brands that serve thin, JavaScript-dependent product pages are losing on two fronts: human shoppers who can't find the information they need, and AI systems that can't read the information at all.

When Personalization Frameworks Break Down

Practitioners who have implemented AI-driven personalization at scale will tell you something that vendor marketing rarely does: the framework only works if the data inputs are clean and the segmentation is meaningful.

The three-step process described in the ScienceDirect research (collect behavioral data, segment by behavior, differentiate content by segment) sounds straightforward. In practice, each step has failure points. Behavioral tracking tools can miss sessions, misattribute traffic, or fail to capture mobile interactions accurately.

Segmentation algorithms can produce clusters that are statistically valid but commercially meaningless. And even when the segments are good, the content differentiation has to be tested, because the same research found that in roughly one in four cases, the AI-generated descriptions were not statistically distinct enough to matter.

The lesson practitioners draw from this is not that personalization doesn't work. It's that personalization requires ongoing maintenance, not a one-time setup. Segments drift as customer behavior changes. Content that was differentiated six months ago may be converging now. Generic advice treats personalization as a feature you turn on. Practitioners know it's a process you run continuously.

The practitioner community has also learned to be honest about what data can and cannot tell you. Behavioral analytics show patterns. They don't explain motivations. Qualitative research, customer interviews, and community listening (including platforms like Reddit, which Triple Whale's 2026 AI statistics report found accounts for approximately 39% of AI citations in ecommerce) fill the gaps that dashboards leave open.

The Structural Reason Practitioner Knowledge Travels Faster Now

Why is this shift happening now, rather than five years ago? The technical complexity of ecommerce has crossed a threshold where the gap between generic advice and operational reality is too wide to ignore. Brands that followed generic advice on SEO are now invisible to AI crawlers.

Brands that followed generic advice on personalization are running undifferentiated content to segmented audiences. The cost of bad advice has become visible in the data.

At the same time, the channels through which practitioners share knowledge have matured. Podcasts, community forums, and direct-to-operator content have made it easier for someone running a DTC (direct-to-consumer) brand to find another operator's post-mortem on a failed PDP migration than to find a consultant's whitepaper on the same topic. The post-mortem is more useful because it includes the specific error, the specific fix, and the specific outcome.

This is the core of why practitioner-led insights are replacing generic advice: specificity is the product. Not inspiration, not frameworks, not trend reports. Specificity about what broke, what fixed it, and what the numbers looked like before and after.

The most actionable next step for any ecommerce operator is to audit one PDP using View Page Source, check whether your product specifications appear in the raw HTML, and treat the answer as a proxy for your current AI visibility. If the specs aren't there, that's the first problem worth solving.

FAQs on Practitioner-Led Ecommerce Insights

Does AEO replace SEO entirely, or do both need to run in parallel?

They address different discovery surfaces and currently need to run in parallel, but they share some infrastructure. Traditional SEO still drives traffic from users who search Google and click organic results. AEO targets the citation layer: the sources that AI Overviews, ChatGPT, and Gemini pull from when generating answers.

Because only 16.7% of AI Overview citations overlap with organic top-10 results, optimizing for one does not automatically optimize for the other. The practical implication is that brands need structured schema markup, clean HTML rendering, and authoritative third-party mentions (including on platforms like Reddit) specifically for AI citation purposes, on top of their existing keyword and link-building work.

If my store is on a standard Shopify theme, am I automatically safe from the JavaScript rendering problem?

Not necessarily. Standard Shopify themes render most content server-side, which is generally safe for crawlers. However, many merchants add third-party apps, custom sections, or headless components that inject product specifications, size guides, or variant details via JavaScript after page load.

These additions can create the same invisibility problem as a fully React-rendered PDP. The only reliable check is to view the page source directly and confirm that the specific attributes you want AI systems to cite (materials, dimensions, compatibility, pricing) are present in the raw HTML, not loaded dynamically.

How do you know when your customer segments have drifted enough to require re-segmentation?

There's no universal threshold, but practitioners typically watch for two signals: a drop in conversion rate within a segment that previously performed well, and an increase in the overlap between segments (meaning customers who were behaviorally distinct are now behaving similarly). Both suggest the original clustering no longer reflects actual behavior. Seasonal shifts, new product launches, and changes in traffic source mix are common triggers. Re-running segmentation quarterly is a reasonable baseline for stores with meaningful transaction volume, though stores with thinner data may need to rely more on qualitative signals like customer service patterns and return reasons.

Is community content like Reddit posts actually useful for AI citation, or is that a temporary quirk?

The 39% figure from Triple Whale's 2026 data reflects where AI systems currently find high-confidence, conversational product information. Reddit threads often contain detailed, unsponsored comparisons and use-case descriptions that AI models treat as credible. Whether this persists depends on how AI training and citation policies evolve, but the underlying reason it works is durable: AI systems favor content that answers specific questions in natural language, with multiple contributors validating the information. Brands that participate authentically in relevant communities, or that earn genuine mentions in those spaces, are building citation equity that is harder to replicate through on-site optimization alone.

References

  1. mckinsey.com, Five make-or-break truths about next-gen e-commerce
  2. sciencedirect.com, Harnessing generative AI for personalized E-commerce product descriptions: A framework and practical insights - ScienceDirect
  3. salsify.com, Ecommerce Data Shows How Consumer Expectations Have Changed
  4. salesforce.com, 10 Ecommerce Trends to Know in 2026
  5. triplewhale.com, AI in Ecommerce Statistics: 32 Stats Every Online Retailer Should Know in 2026
  6. yotpo.com, AEO AI Approach for Ecommerce Brands: 17 Tips
  7. tgmresearch.com, E-commerce Market Research in 2026

How ProofWrite compares

Generic AI tools write fluent text. ProofWrite coordinates research, writing, citation, scoring, and verification agents around the steps publishable SEO articles need.

Feature
ProofWrite
Other AI ToolsChatGPT
Research, citation, writing, and QA agents
Built-in fact check with one-click fixes
Client-deliverable: research packet + claim checks clients can review
Live SEO, AEO & GEO Scoring (0-100)
Link-builder mode: standalone articles built around a client link and anchor
Trust signal integration
Domain-trained brand voice & internal linking

Stop sending clients AI filler. Ship drafts they sign off on — and that hold through core updates.

Start your free 3-article pilot

Your Pilot starts when you generate your first article. No credit card required.

Free tools

Try before you sign up

Simple, Transparent Pricing

Choose the plan that fits your SEO publishing workflow. Scale up as your sites grow.

Annual plans include 2 months free. Paid plan usage limits still reset monthly.

Pilot

Prove it on your niche

$03 articles total

Your Pilot starts when you generate your first article. No credit card required.

Included: SEO, AEO & GEO scoring
Managed domains:1
Seats:1
Projects/month:3 total
Keyword research runs:10
Smart article rewrites:3
Max words/article:Unlimited
  • 3 articles total
  • 1 managed domain with domain defaults
  • Internal linking for site-backed articles
  • Keyword research (10 runs)
  • Automated product research
  • Trust signal analysis
  • YouTube evidence & review embeds
  • Brand voice & style
  • Fact check
Start Free 3-article Pilot

Starter

Freelancer / solo operator

$41/moSave 17%

$490 billed yearly

Monthly $49/mo

Excluding applicable taxes

Included: SEO, AEO & GEO scoring
Managed domains:1
Seats:1
Projects/month:10
Keyword research runs:50
Smart article rewrites:10
Max words/article:Unlimited
  • Everything in Pilot, plus:
  • Deep research mode
  • Domain-level site settings & internal linking
  • Freeform file sources (PDF, DOCX, TXT, MD)
  • Daily article suggestions for 1 site
  • Generated images (1 per article)
  • Email support
Most Popular

Pro

Boutique agency / multi-site

$116/moSave 17%

$1,390 billed yearly

Monthly $139/mo

Excluding applicable taxes

Included: SEO, AEO & GEO scoring
Managed domains:3
Seats:3
Projects/month:30
Keyword research runs:150
Smart article rewrites:60
Max words/article:Unlimited
  • Everything in Starter, plus:
  • Daily article suggestions for up to 3 sites
  • 3 team seats included
  • Generated images (up to 2 per article)
  • One-click WordPress publishing
  • Priority support

Business

Agency / team

$291/moSave 17%

$3,490 billed yearly

Monthly $349/mo

Excluding applicable taxes

Included: SEO, AEO & GEO scoring
Managed domains:10
Seats:Unlimited
Projects/month:80
Keyword research runs:400
Smart article rewrites:180
Max words/article:Unlimited
  • Everything in Pro, plus:
  • Daily article suggestions for up to 10 sites
  • Unlimited team seats included
  • Generated images (up to 4 per article)
  • Priority support

Plans include automated keyword and product research, trust signal analysis, SEO, AEO and GEO scoring, and fact-checked article drafting. Paid plan limits reset monthly.

Paid plan prices exclude applicable taxes. Need a custom plan? Contact us for enterprise pricing.

Frequently Asked Questions

How do you prevent hallucinations?

ProofWrite starts with research agents gathering live source material, trust signals, and your own inputs before drafting. The built-in fact checker then reviews claims against the available evidence, flags unsupported or contradictory claims, and lets you verify, add a source, or rewrite before publishing.

Do ProofWrite articles rank in Google?

ProofWrite written articles have ranked well and held through recent Google core updates. Recent updates have hit thin, undifferentiated 'SEO content' hardest while rewarding useful, original, evidence-backed content that demonstrates E-E-A-T — which is exactly what the research-and-verification pipeline is built to produce.

Can I manage multiple client sites in one account?

Yes. Use managed domains to keep each client site separate, with its own defaults, brand context, and internal linking. The number of managed domains scales with your plan, so agencies and multi-site operators can run several clients from one workspace.

Will guest-post drafts read naturally enough to get accepted by host sites?

That is the whole point of Standalone Mode. Drafts are planned around a relevant topic with the client link placed as a natural editorial reference, and the style engine strips the common LLM tells (repetitive structures, moralizing conclusions, telltale em dashes, words like 'delve') that get pitches rejected. The goal is a draft an editor accepts, not generic AI text built around a link.

Can my team work in the same workspace?

Yes. Paid plans include team seats so editors and writers can collaborate in one shared workspace (3 seats on Pro, unlimited seats on Business). Need more domains? Contact us for enterprise pricing.

Does the content require heavy editing?

The goal is a '95% ready' draft. Our style engine is explicitly tuned to avoid common LLM patterns: repetitive sentence structures, moralizing conclusions, telltale em dashes, words like 'delve', and generic AI slop. AI cannot entirely replace a human editor, but our drafts are structured to require polish, not a rewrite.

What article structures are supported?

ProofWrite is currently optimized for four specific intents: Commercial Reviews, 'Best-of' Listicles, How-to Guides, and Comparative Analysis. We also offer a Freeform mode for unstructured editorial pieces.

Which languages can ProofWrite write articles in?

Articles can be written in English, Spanish, French, German, Italian, Dutch, Portuguese, Danish, Norwegian, Finnish, Swedish, Romanian, or Polish.

How does the Pilot plan work?

Every new workspace gets a free 3-article Pilot. No credit card required, no automatic billing. Your Pilot starts when you generate your first article.

How do I publish my articles?

Edit inside the composer, then push to WordPress with one click or copy the article to your clipboard or export markdown for other CMSes.

Can I include my own expertise?

Yes. You can input raw notes, personal anecdotes, or specific contrarian takes into the brief. The AI is instructed to treat your inputs as primary source material, weaving them into the narrative rather than overriding them.

How does ProofWrite generate articles?

ProofWrite uses managed research, writing, citation, and QA agents tuned for researched, cited, fact-checked SEO articles. You focus on the topic, sources, and editorial direction rather than choosing a foundation model or prompting a blank chat.

Is my data private?

Yes. Your inputs and generated drafts remain isolated within your workspace. We use privacy-conscious AI provider APIs, meaning your data is not stored or used for model training by us or our providers.

Stop publishing noise

For agencies, link builders, and operators who can't afford to be wrong.
Ship drafts clients accept and that hold through core updates.

Start your free 3-article pilotYour Pilot starts when you generate your first article. No credit card required.
Research-Backed SEO Article Writer