For marketers running time-sensitive promotions, the traditional ETL process of moving data to a lakehouse for analysis is too slow. By the time insights on campaign performance are available, the opportunity to adjust tactics (like changing a discount for the second half of a day-long sale) has already passed, directly impacting revenue and customer experience.

Related Insights

AI's most significant impact is not just campaign optimization but its ability to break down data silos. By combining loyalty, e-commerce, and in-store interaction data, retailers can create a holistic customer view, enabling truly adaptive and intelligent marketing across all channels.

It's tempting to postpone foundational work like data integration until the slower post-holiday period. However, the holiday sales surge provides the richest dataset for testing, learning, and setting up automations. Building this foundation during Q4 allows insights to compound, driving more sustainable growth throughout the following year.

Denodo's logical approach is significantly faster because it fetches only the specific query results needed for an analysis, rather than physically moving entire datasets into a central repository. This is analogous to getting a single cup of water from a pitcher instead of carrying the entire heavy pitcher, explaining a 75% reduction in integration time.

Cookie deprecation blinds ad platforms like Google and Meta to on-site conversion quality. Marketers can gain a significant performance edge by creating a feedback loop, pushing their attributed first-party data (like lifetime value and margins) back into the platforms' AI systems in near real-time.

In AI-native companies that ship daily, traditional marketing processes requiring weeks of lead time for releases are obsolete. Marketing teams can no longer be a gatekeeper saying "we're not ready." They must reinvent their workflows to support, not hinder, the relentless pace of development, or risk slowing the entire company down.

Beyond simple analysis, Claude 4.5 can ingest campaign data and generate a shareable, interactive dashboard. This tool visualizes key metrics like LTV:CAC, identifies trends, and provides specific, data-backed recommendations for budget reallocation. This elevates the AI from a data processor to a strategic business intelligence partner for marketers.

The primary reason multi-million dollar AI initiatives stall or fail is not the sophistication of the models, but the underlying data layer. Traditional data infrastructure creates delays in moving and duplicating information, preventing the real-time, comprehensive data access required for AI to deliver business value. The focus on algorithms misses this foundational roadblock.

Brands miss opportunities by testing product, packaging, and advertising in silos. Connecting these data sources creates a powerful feedback loop. For example, a consumer insight about desirable packaging can be directly incorporated into an ad campaign, but only if the data is unified.

The traditional approach of building a central data lake fails because data is often stale by the time migration is complete. The modern solution is a 'zero copy' framework that connects to data where it lives. This eliminates data drift and provides real-time intelligence without endless, costly migrations.

According to Salesforce's AI chief, the primary challenge for large companies deploying AI is harmonizing data across siloed departments, like sales and marketing. AI cannot operate effectively without connected, unified data, making data integration the crucial first step before any advanced AI implementation.

Marketing Campaign Optimization Fails When Data Integration Latency Exceeds the Decision Window | RiffOn