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Production-ready / Multimodal

GSAI · 2026 · 06 · 0025

AI Solution Brief

Turn enterprise content from a manual workshop into a brand-consistent, multi-channel, reviewable production line

An end-to-end AI content pipeline for marketing, e-commerce, education, and media teams — from Brief → multimodal generation → brand-consistency check → collaborative review → multi-channel publishing. A team of 5 outputs what 50 used to, with zero brand drift.

Book a callSee the capabilities
10 min read · v1.0 · updated Jun 2026
12×
Monthly throughput
Same headcount
96.2%
Brand consistency
Style Guide validation
8+
Channels in parallel
WeChat / TikTok / RED / IG / LinkedIn
-78%
Manual cost
Same quality of output
Creator Brain · Live
Generating
Inputs
Product DB
230 SKUs
Brand voice
Style v3.2
Channels
8 targets
文Copy图Image视Video牌Brand道
Creator Brain
Multimodal core
Multimodal output
Post copy
→ WeChat
Feed poster
→ TikTok
30s short
→ RED
Social variants
→ IG / LinkedIn
Brand Match96/100
Throughput
12×
Consistency
96%
Channels
8+
00/BACKGROUND

Content production is moving from manual workshops to industrial pipelines

ChatGPT / Midjourney / Sora dropped the cost of single-point generation to zero. The real enterprise pain isn't 'can we generate' — it's 'is it usable, on-brand, channel-ready, and reviewable'. Stacking point tools is not a pipeline. What content teams need is to wrap AI generation inside a full industrial flow: brand-consistent, collaboratively reviewed, multi-channel published.

CarriersCopy / long-image / short video / podcast / feed ads / social variants
TodayMultiple AI point-tools + Lark sheets + manual assembly
FailuresTone drift / duplicated work / channel adapt pain / no review system
GoalPipeline + brand lock + multimodal + multi-channel + reviewable
01/PROBLEM

Four old problems point AI tools can't solve

Gluing ChatGPT + Midjourney + CapCut + analytics doesn't yield a pipeline. The three sticky middle steps — assembly, review, brand-checking — actually got worse with point tools.

P-01 · Pain

One piece needs N variants — manual assembly explodes

A new SKU needs copy + hero image + detail long-image + TikTok script + RED post + Weibo card + IG variant. Each channel has its own size, length, and tone rules. Doing this combinatorially by hand: 3 people × 5 days per launch.

P-02 · Pain

Generic LLMs don't know your brand voice

ChatGPT writes in 'generic AI voice'; Midjourney paints in 'generic AI aesthetic'. Conversion suffers. Your brand's product points, tone, visual specs, and best-performing assets simply can't be fed into a generic model.

P-03 · Pain

Multi-version × multi-channel × multi-language drowns spreadsheets

One post in CN/EN/JA/KO × 6 channels × A/B = 48 variants. Version naming is manual, approval is via group chat, performance lives in 6 different consoles. Last quarter's best variant? Usually unfindable.

P-04 · Pain

AI mistakes are slower to fix than to redo

AI gets the product name wrong, slips a typo into the image, mispronounces the brand in voiceover. All caught by humans, line by line. Without a systematic review flow, every fix triggers a re-run — and the round-trip is slower than starting fresh.

Industry
Universal · e-commerce / edu / media / FMCG / B2B
Volume
Dozens to thousands of pieces per month
Today
Multiple AI tools + sheets + manual assembly
Goal
Pipeline + brand lock + multi-channel
02/SCENARIOS

One platform, five immediately landable content scenarios

We don't build 'another AI writing tool'. We absorb your existing content production loop. Five scenarios below share one foundation: brand DB + pipeline orchestration + review system + channel delivery.

S-01

E-commerce SKU → multi-channel assets

E-com ops

Each SKU launch auto-produces copy + hero + detail + TikTok / RED / IG variants

Metric
Launch 5d → 1d
S-02

Short video script + storyboard + AI VO

Content / video

Topic → script → storyboard → AI voice-over → rough cut, humans only polish

Metric
Cost per video -65%
S-03

Private community / public-account content calendar

Community / new media

Weekly calendar → batch generation + brand lock + schedule + data return

Metric
Publish freq ×4
S-04

Multi-language global marketing localization

Global team

Core piece → CN/EN/JA/KO + per-market localization (not just translation)

Metric
Localization -80%
S-05

Course marketing + knowledge shorts

EdTech content

Curriculum → enrollment copy + intro long-image + 30s short + matching posters

Metric
Asset output +8×
03/CAPABILITIES

Three core capabilities, broken down with real UI

We zoom in on the three hardest-to-land parts of AI content (brand consistency, multimodal chaining, collaborative review). Each has a real UI, verifiable outputs, and a traceable accountability chain.

briefBrief · X-2026 Spring launch
AI-generated copy previewv3 · brand-locked

X-2026 Spring · weightless feel, 5 colorways in stock from ¥899. Tap to shop — members get 10% off.

#时尚活力#春季新款#会员优惠
Brand Lock
ToneVibrant ✓
Banned wordsClean ✓
Product factsMatch DB ✓
Visual specsBrand #FF7A59 ✓
Brand Match Score高匹配
94/ 100
Brand consistency
96.2%
Factual error rate
< 0.3%
C-0103-A · Brand Lock Engine

Brand Lock Engine

Make AI sound like you, not like ChatGPT

Inject your Style Guide (visual specs + tone of voice + banned words + must-use phrases) + product DB (SKU / claims / pricing / use cases) + best historical assets as constraints into every generation. Output is on-brand by default, not by edit.

  • Style Guide injection (tone / palette / fonts / banned / must-use)
  • Live product DB binding — verifies SKU / claims / price for factuality
  • Best historical assets as few-shot examples
  • Outputs include Brand Match Score + highlighted deviations
  • Style Guide learns continuously — review edits flow back
Pipeline nodescontext shared
Copy
Hero
Detail
Short video
Social
Multi-channel output6 / 8 ready
WeChat OA
1200×675 · long-image
TikTok / Douyin
9:16 · 30s short
RED / 小红书
1080×1440 · note
Instagram
1:1 / Story 9:16
LinkedIn
1200×627 · business
Weibo
1080×1080 · topic
Monthly throughput
12×
Channel coverage
8+
C-0203-B · Multi-modal Pipeline

Multi-modal Pipeline

Copy → poster → video → social variants, one connected flow

Not 4 disconnected tools — a single pipeline with shared context. The selling point picked by the copy node flows to the poster; the poster's visual style flows to the video; the video's keyframes spawn the social variants. Each node is independently editable, but global style stays in sync.

  • 5-format chained generation (copy / hero / long-image / video / social)
  • Upstream outputs become downstream context — style stays consistent
  • Re-run any node — downstream auto-rebuilds
  • 8+ channel adapters (size / length / tone / hashtag auto-adapt)
  • Node-level control — override any node's prompt independently
Version timeline
v1 draft
v2 ops review
v3 legal ✓
v4 published
Content preview (v4)

X-2026 Spring · weightless, 5 colorways. Members 10% off — tap to shop.

@brand: swap to spring hero
Approval
CreatorChen✓
OpsLi✓
LegalWang✓
ChannelTikTok / REDlive
Performance · 3 days post-publish +18 NPS
Impressions
12.4K
CTR
4.2%
Attributed GMV
$1,140
Review time
-55%
Attribution coverage
100%
C-0303-C · Review Workflow

Collaborative Review & Version Control

Draft → annotate → approve → publish, fully traced

Replace 'spreadsheets + group chat' review with one system. Every version is numbered, every edit attributed, every approval logged, every publish destination tracked. Performance data flows back to the original piece and feeds Brand Lock — the model gets more on-brand over time.

  • Auto version numbering + any-version diff
  • Inline annotations + @ collaboration + role permissions
  • Multi-stage approval flow (create → ops → legal → channel)
  • One-click multi-channel publish — adapts to each platform's API
  • Post-publish performance flows back to the source — feeds Brand Lock
04/ARCHITECTURE

An observable, intervenable AI content pipeline + multimodal architecture

We treat content production as a pipeline, not a black box. Each layer is independently swappable — models can shift from SaaS to self-hosted, channels can scale as needed.

5-stage pipeline

From Brief to multi-channel publish, every step is observable, intervenable, and replayable. Quality drops trace to a specific stage.

01
Brief structuring
Product · claims · channels · style intent

Structured intake of product, selling points, target channels, and style intent — landed via Brief DSL as a pipeline-consumable task spec.

Brief DSLIntent captureProduct DB refChannel matrix
OutputStructured brief + channel requirements matrix
02
Generate (multimodal)
Text / image / video / voice chained

Copy → hero → long-image → video → social, a multi-node DAG sharing context. Each node routes to the best model; context flows between nodes for style consistency.

Multi-model routingOrchestration DAGContext passingNode override
OutputMultimodal drafts + node-level metadata
03
Brand Lock validation
Style Guide / product DB / visual specs

Rules engine + LLM self-check + visual similarity check against Style Guide / product DB / banned words / visual specs — output is a Brand Match Score and a deviation report.

Rules engineLLM self-checkVisual similarityFactual cross-check
OutputBrand Match Score + deviation report
04
Review (collaborative)
Versions · annotations · approvals · trail

Auto version numbering + inline annotations + multi-stage approval DAG. Approval trails trace every edit, every approver, every model version.

Version controlCollaborative OTRBACApproval DAG
OutputFinal version + audit chain
05
Publish (multi-channel)
8+ channels parallel + performance return

One-click publish to 8+ channels, adapters auto-fit each API. Post-publish data (impressions / CTR / conversion / GMV) returns to the source and feeds Brand Lock.

Channel adaptersMedia CDNPerformance returnAttribution
OutputPublish receipt + performance data + attribution
5-layer architecture

5-layer architecture

五层各司其职、可独立替换演进。任何一层都可以从 SaaS 切到自部署,从 GPT 切到 Claude / DeepSeek,从微信切到 X 等任意渠道。

Application
Web workbench · mobile · Lark / DingTalk / Slack plugins · Open API
Orchestration
Prompt templates · Style Guide injection · multimodal DAG · channel adapters
Model
Text (GPT/Claude/DeepSeek) · Image (SD/MJ) · Video (Sora/Runway) · Voice (ElevenLabs/CosyVoice)
Data
Style Guide DB · Product DB · Asset library · channel return · attribution
Channel
WeChat / Weibo / TikTok / RED / IG / LinkedIn / X APIs + media CDN
05/SCENARIOS IN ACTION

Three representative scenarios, anonymized

Three abstracted, anonymized scenarios to help you judge what the platform can land in your organization.

FMCG / Beauty

Large FMCG brand · 200+ marketing assets / month

Onboarded 230 SKUs + Style Guide. A 5-person content team's output grew from 60 to 240 pieces per month; brand consistency from 70% to 96%.

Throughput
×4
Consistency
70% → 96%
Team size
Same 5
E-commerce / SaaS

E-commerce SaaS · multi-channel SKU automation

100+ merchant tenants — every new SKU auto-generates copy + hero + detail + TikTok / RED / IG variants.

Launch cycle
5d → 1d
Per-account output
×6
Channels
8+
EdTech

EdTech platform · course marketing + knowledge shorts

Courses DB + instructor voice onboarded. Each new course auto-spawns enrollment poster + intro long-image + 30s short + 15s vertical with AI voice-over.

Asset output
×8
Per-course cost
-72%
Instructors
50+

Representative anonymized scenarios; actual project data is delivered separately under partner NDA.

06/SECURITY

Brand assets stay in; generated content is compliant and traceable

Content security spans brand assets, user data, and generation compliance. All three are first-class.

S-01

On-premise deployment

Full on-prem / hybrid / domestic stack supported. Style Guides, product DBs, generation history all stay inside — never flow to third-party training.

S-02

Brand asset isolation

Each tenant's Style Guide / product DB / asset library is independently encrypted; never enters cross-tenant training or shared pools.

S-03

AIGC compliance markers

Generated content automatically carries AIGC labels (per PRC AIGC regulations) — supports watermarking and metadata embedding.

S-04

Sensitive-word & compliance check

Industry sensitive lexicons + policy rules + sensitive-topic auto-block. Every piece must pass before publish.

S-05

Copyright compliance

Training data provenance traceable; image / video can use self-hosted models to avoid commercial copyright risk; reference assets auto-checked against rights libraries.

S-06

Operation audit

Who generated what, who approved what, where it published, what it earned — fully logged and exportable for compliance.

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Wavesteam Technology

An end-to-end AI content production platform — brand-consistent generation, multimodal pipeline, collaborative review, and multi-channel publishing for marketing, e-commerce, education, and media teams.

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