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Trend and assortment intelligence for fashion brands, with AI agents

Enstyle helps designers, merchandisers and planners make better assortment decisions by validating trend signals using consumer insights, competitive intelligence and hindsighting.

Trend and assortment intelligence for fashion brands, with AI agents

AI-supported trend sensing, consumer insight, and assortment planning helping design, merchandising, and buying teams align before decisions are locked in.

 No disconnected tools  ✕   No guesswork

Bring inspiration, demand, and performance into a shared context. Reduce noise, focus on what matters, and let learning compound over time.

How fashion decisions evolve with AI

Every season, fashion teams make millions of decisions while building a line, most of them manually and without full context. Design, merchandising, buying, pricing, and allocation still happen in stages, across different tools and teams, with assumptions passed along rather than tested. What should improve from season to season often resets, leading to repeated debates and line plans that look balanced on paper but struggle once they hit the floor.

Enstyle brings those decisions back together using AI to connect learning across the process. Line structure, option count, depth, and pricing are considered in context, informed not only by past performance, but also by aspirational trends, consumer insights, and how the market is adopting them. The aim is not to automate creative or commercial judgment, but to reduce noise, so teams can focus on the few decisions that can actually shape the season.

our data sources

Enstyle data across inspiration, consumer, and market

Enstyle’s intelligence is built on public data and a constant read of how fashion is moving. AI agents follow global fashion media, runways, and cultural references to understand how ideas take shape and gain momentum. Consumer behaviour — from search patterns to social conversation — adds a clear signal of what is resonating in real time. This perspective is grounded in the market through ongoing analysis of hundreds of fashion brands, allowing adoption to be tracked and anticipated across competitors, aspirational labels, and niche players.

Armani Exchange logo
Tom Ford logo
Valentino logo
Tommy Hilfiger logo
BAPE logo
Ralph Lauren logo
Aime Leon Dore logo
Abercrombie & Fitch logo
Louis Vuitton logo
A$AP Rocky logo
Adidas logo
R13 logo
Chanel logo
Dolce&Gabbana logo
Barboza logo
Armani Exchange logo
Tom Ford logo
Valentino logo
Tommy Hilfiger logo
BAPE logo
Ralph Lauren logo
Aime Leon Dore logo
Abercrombie & Fitch logo
Louis Vuitton logo
A$AP Rocky logo
Adidas logo
R13 logo
Chanel logo
Dolce&Gabbana logo
Barboza logo
Armani Exchange logo
Tom Ford logo
Valentino logo
Tommy Hilfiger logo
BAPE logo
Ralph Lauren logo
Aime Leon Dore logo
Abercrombie & Fitch logo
Louis Vuitton logo
A$AP Rocky logo
Adidas logo
R13 logo
Chanel logo
Dolce&Gabbana logo
Barboza logo
Armani Exchange logo
Tom Ford logo
Valentino logo
Tommy Hilfiger logo
BAPE logo
Ralph Lauren logo
Aime Leon Dore logo
Abercrombie & Fitch logo
Louis Vuitton logo
A$AP Rocky logo
Adidas logo
R13 logo
Chanel logo
Dolce&Gabbana logo
Barboza logo
How AI supports better planning decisions

The traditional planning process, made more effective with Al

Enstyle approaches planning as a continuous flow rather than a series of handovers. Decisions are shaped by the full picture — what sold last season, which trends are building or fading, how consumers are responding, and how the market is evolving in general. Enstyle AI assistants work quietly in the background, learning as the line takes shape and helping teams explore better-balanced options at scale. They do not replace creative or commercial judgment, but add clarity and context before decisions are signed off, so each season builds on the last instead of starting over.

Grid of nine t-shirts in three columns labeled with increasing dollar signs- single dollar for yellow, blue, red shirts in top row; two dollars for middle row with pink and red shirts and a pink shirt crossed out; three dollars for teal, maroon, and light gray shirts with gray crossed out in bottom row.

Analyse sales performance

AI reviews what was bought, priced, merchandised, and sold in detail to understand what truly drove performance. Demand issues are separated from product issues and execution effects such as timing, depth, or distribution. This gives teams a clear, shared view of last season, grounded in reality rather than assumption.

Grid of nine gray t-shirts arranged in three columns under dollar signs representing pricing tiers, with sparkle icons highlighting certain shirts.

Spot gaps and upside

Using the learnings, AI agents quickly explore what an optimised version of the season could have looked like under real constraints. Structural gaps, missed demand, and imbalances in breadth, depth, and price are made visible without weeks of manual work, helping teams refine planning principles and buy rules for future collections.

Diagram comparing three plain t-shirts on the left with three styled t-shirts on the right, showing correct and incorrect matches with checkmarks and a cross.

Build the next collection

AI supports line planning by exploring different demand scenarios and ranking product options by fashion relevance and desirability. Designers,  merchants, and planners use this context to balance the line, make trade-offs, and decide what to commit to with full visibility into risk, opportunity, and impact.

ENSTYLE AI ASSISTANTS

meet aidrian and the team

+

Aidrian leads a team of intelligent agents trained to speak the language of fashion. They work across roles and seniority, understand context and tasks quickly, and support both visual and written work. From analysing runway imagery, collections, and competitive assortments to tracking social conversation and consumer signals, it helps teams move faster with clarity — whether shaping ideas, validating decisions, or answering complex questions in real time.

HOW AI IMPROVES results

Gain a deeper understanding of consumer trends and how to act on them before finalising product decisions.

The impact comes from two simple shifts. First, brands gain clarity on which trends and signals are worth backing, helping them focus on the right ideas at the right time. Second, teams are warned early about decisions that add risk, such as overcommitting to trends that are weak, already peaking, or repeating last season's mistakes.

+ 3-10%
Full-price sell-through
+ 15-30%
Margin efficiency
- 40-70%
Manual efforts
Testimonials

Trusted by many users

Used by fashion teams across design, merchandising and planning

Enstyle brings clarity to our work and keeps the team aligned around the same decisions.
Serga Kiesser
Creative Director
Enstyle validates consumer interest and eliminates guesswork before production.
Jerry Kaye
Designer & Principle
A way for designers to explore trends through the lens of what can become product.
Kathryn McCarron
Founder & Creative Director
KEY AI-DRIVEN CAPABILITIES

Enstyle's core capabilities for fashion assortment planning

Enstyle researches and develops its capabilities in close connection with real fashion planning workflows. Our work is shaped by a combination of hands-on industry experience and deep expertise in fashion technology, allowing us to understand not only what to build, but why it matters to designers, merchandisers, and buyers. This perspective also defines how we use AI — grounded in what is technically possible today and focused on improving how planning decisions are made in practice.

Hindsighting

What it does

Reviews at last season as it actually played out, what was bought, priced, exposed, and sold, to see what worked and what did not.

Why it matters

Demand issues can be separated from product and execution effects, helping teams avoid misreading results and base future decisions on evidence rather than assumption.

Consumer insights

What it does

Follows consumer signals across search, social, and markets to understand what is resonating and how demand is shifting.

Why it matters

Design and planning decisions are grounded in real consumer demand rather than assumption, helping teams align collections with what people actually want.

Trend sensing

What it does

Tracks how trends have performed in the past and how they are developing now, across runways, media, culture, and consumers.

Why it matters

Fashion trend insight becomes a practical input for planning, supporting better timing, relevance, and alignment in the assortment line.

Competitive intelligence

What it does

Breaks down competitor assortments to show what others are offering, at what prices, and with which attributes across the market.

Why it matters

Teams gain a clearer view of where the brand is aligned, overexposed, or missing opportunity in the competitive landscape.

Scenario-based assortment

What it does

Allows teams to explore different versions of the line — adjusting option count, depth, and pricing — before committing to a final buy.

Why it matters

Assumption-led debates are reduced, late-stage changes become less frequent, and confidence in the final line improves.

Product and design ranking

What it does

Helps compare and prioritise product and design options based on how well they fit the line and how likely they are to perform.

Why it matters

Teams can focus attention on the options most likely to perform, while retaining full creative and commercial control.

resources

Ideas, insight, and updates from inside Enstyle

A growing collection of articles, newsletters, Threads, Wraps, product updates, and case studies — focused on how collections are planned, decisions are tested, and lines improve over time. Made for designers and merchandisers who want clear thinking, not noise.