AI That Works With
Your Data Architecture
Not Against It
Zero engineering lift. Production-ready in 14 days. Full transparency into every decision. Replenit integrates with your existing stack and delivers AI-powered customer decisions without the months of AI development.
Sound Familiar?
Data teams are stretched thin—maintaining pipelines, training models, and fielding requests. These challenges aren't unique to you.
Build vs Buy Dilemma
Internal AI projects take 6-12 months, compete for scarce engineering resources, and often get deprioritized. Meanwhile, the business waits.
Data Silos
Customer data scattered across CDP, warehouse, commerce platform, and ESP. No unified view means incomplete signals and missed opportunities.
Model Maintenance Burden
Constant retraining, drift monitoring, pipeline fixes. Your team spends more time maintaining models than building new capabilities.
Integration Complexity
Every new vendor means weeks of engineering work—custom connectors, data mapping, testing, monitoring. The backlog never shrinks.
Black Box Concerns
Vendor AI with no transparency. You can't explain decisions to stakeholders, debug issues, or validate that the model is doing what it claims.
Proving ROI
Hard to measure true incremental value of data initiatives. Attribution is murky, and the business questions whether the investment is worth it.
Simple Data Architecture
Connect your existing data sources. We handle the AI. Your engagement platforms deliver.
AI EngineNo data transformations, no schema mapping, no custom pipelines. Connect via standard APIs and webhooks—we handle the rest.
From Build to Integrate
Skip the AI development cycle. Connect your data and start receiving AI decisions in days.
Skip the model training, feature engineering, and pipeline building. Replenit's pre-trained models work out of the box with your data.
No custom ETL, no data transformations, no schema mapping. Connect via standard APIs and start receiving decisions immediately.
Every decision comes with reasoning. See exactly why the AI chose a specific timing, channel, or message for each customer.
No drift monitoring, no retraining schedules, no pipeline debugging. The system continuously learns and improves autonomously.
Your role evolves from pipeline builder to AI decision reviewer
Impact Where It Matters
Metrics that data teams care about—time, resources, and measurable outcomes.
Time to Production
14 days vs 6+ months
Skip the model development cycle entirely. Replenit's pre-trained AI works with your data immediately—no feature engineering, training, or validation required.
Engineering Hours
Zero ongoing maintenance
No pipelines to monitor, no models to retrain, no integrations to debug. After initial setup, Replenit runs autonomously without engineering intervention.
Data Utilization
All customer signals leveraged
Replenit synthesizes data from your CDP, commerce platform, and engagement tools. Every behavioral signal contributes to better decisions.
Model Accuracy
Continuous learning from outcomes
Models improve with every customer interaction. Real-time feedback loops ensure predictions get more accurate over time—without manual retraining.
Integration Complexity
Standard APIs, no custom work
Native integrations with major platforms. REST APIs for everything else. No custom connectors, no schema mapping, no ongoing integration maintenance.
Measurable ROI
Holdout testing proves value
Built-in control groups and holdout testing. Know exactly how much incremental revenue the AI generated—no attribution guesswork.
What You Won't Have to Build
Skip the 6-month AI project. Get production-ready AI in 14 days.
Zero Engineering Lift
No pipelines to build, no models to train, no infrastructure to manage. Connect your data sources and start receiving AI decisions in days, not months.
Full Transparency
Every decision is explainable. See exactly why the AI chose a specific timing, product, or channel. Debug issues, validate logic, and build stakeholder trust.
Works With Your Stack
Native integrations with Shopify, SAP, Salesforce, Klaviyo, and more. Standard APIs for everything else. No rip-and-replace, no migration projects.
Production-Grade AI
Battle-tested across millions of customers at enterprise brands. 99.9% uptime SLA. The same models, infrastructure, and reliability for every customer.
The Comparison
What it takes to build internally vs integrating Replenit
Questions Data Teams Ask
At minimum: customers (email, ID), products (SKU, category), and orders (customer ID, products, timestamp, revenue). Optionally: browsing behavior, email engagement, inventory levels. We work with whatever you have—no perfect data required. All data is ingested via API or webhooks, with batch import options available.
We offer multiple integration paths: Native connectors for major platforms (Shopify, SAP, Salesforce, Klaviyo, etc.), REST APIs for custom integrations, and webhook endpoints for real-time events. Data flows in, decisions flow out to your engagement platforms. Typical integration takes 1 day for native connectors, 3-5 days for custom API work.
We're SOC2 Type II certified and GDPR compliant. All data is encrypted at rest (AES-256) and in transit (TLS 1.3). We operate on major cloud providers with enterprise-grade security. Data residency options available for EU customers. We never sell or share your data—it's used exclusively to power your AI decisions.
Fully transparent. Every decision includes reasoning: why this customer, why this timing, why this product. You can inspect the signals that drove each decision, validate the logic, and export decision data to your warehouse for your own analysis. No black boxes.
Not after initial setup. Integration typically requires 4-8 hours of engineering time to connect data sources. After that, Replenit runs autonomously—no pipeline maintenance, no model retraining, no ongoing engineering work. Your team reviews decisions, not code.
Automatically. Our models continuously learn from new data and outcomes. There's no manual retraining schedule, no drift monitoring dashboards to watch. The system self-optimizes based on real-time feedback. You'll see model performance metrics in your dashboard, but you won't need to act on them.
Yes. We support data export via API, scheduled exports to cloud storage (S3, GCS, Azure Blob), and direct warehouse connectors (Snowflake, BigQuery, Databricks). Export decision logs, prediction data, and performance metrics on your schedule. Your data, your warehouse, your analysis.
Stop Building.
Start Deciding.
Talk to our engineering team about how Replenit integrates with your data architecture and delivers production-ready AI in 14 days.
Trusted by Data Teams at Leading Brands





Customer Lifecycle Moments
Explore how Replenit's AI agents optimize every stage of the customer journey
