A Case Study on Reallocating Budget from Brand to Non-Brand Search
Many eCommerce brands assume rising CPCs and competition are the main reasons their PPC programs stop scaling.
In reality, the biggest issue we often see is poor campaign structure and inefficient budget allocation.
At 9 Digital Media, we recently analyzed several large PPC accounts and discovered a common pattern:
brands were overspending on branded search while underinvesting in non-brand acquisition campaigns.
Using a suite of AI tools, we rebuilt the campaign structures and reallocated budgets.
The result: significant revenue growth with minimal or even lower total spend.
The Problem
Across multiple accounts we analyzed, the issues were very similar:
- Campaign structures built years earlier
- Brand and Non-Brand campaigns blended together
- Overlapping keywords competing internally
- Limited negative keyword strategies
- Weak keyword clustering
- Shopping feeds lacking keyword coverage
- Budget allocations driven by habit rather than performance
In short, accounts were optimized for maintenance, not growth.
The AI-Driven Optimization Framework
To address this, we used approximately 10 AI-driven analysis tools and automation frameworks to rebuild the search programs.
These tools helped us:
1. Reorganize campaign structures
AI clustering models reorganized campaigns into cleaner brand vs non-brand frameworks.
AI models detected internal bidding conflicts across campaigns.
3. Build theme-based keyword clusters
Machine learning grouped keywords into tight thematic clusters, improving:
- Quality scores
- Ad relevance
- Landing page alignment
4. Advanced Search Query Report analysis
AI models processed massive SQR datasets to identify:
- profitable keyword clusters
- irrelevant query patterns
This allowed us to expand profitable themes and aggressively negate poor queries.
5. Improve keyword coverage
AI tools analyzed missing keyword gaps across campaigns and product categories.
6. Build stronger negative keyword frameworks
AI discovered irrelevant search patterns that human analysts often miss.
7. Optimize ad copy to landing pages
Natural language models analyzed landing pages and created more relevant ad copy variations.
8. Analyze Google Merchant Center feeds
AI models evaluated:
- SKU coverage
- keyword gaps in product titles
- product attribute optimization
9. Analyze historical seasonality
AI examined historical data to predict high-opportunity keyword clusters for upcoming seasonal campaigns.
10. Identify budget inefficiencies
Finally, AI models analyzed spend allocation across campaign types and identified where additional budget would produce incremental revenue.
The Strategic Change
The biggest insight from the AI analysis:
Brand campaigns were consuming too much budget while producing limited incremental growth.
So we reallocated budgets to non-brand acquisition campaigns to drive more customer acquisiton.
Remember that most Branded search spend is for demand capture and not demand generation!
Results Across Four Accounts
Client 1

| Category | Spend Change | Revenue Change |
|---|---|---|
| Brand | -41% | -6% |
| Non-Brand | +132% | +312% |
| Total | +5% | +19% |
Despite cutting brand spend significantly, total revenue grew nearly 20%.
Client 2

| Category | Spend Change | Revenue Change |
|---|---|---|
| Brand | -30% | -8% |
| Non-Brand | +167% | +589% |
| Total | +17% | +15% |
Non-brand campaigns scaled dramatically while overall spend increased only modestly.
Client 3

| Category | Spend Change | Revenue Change |
|---|---|---|
| Brand | -49% | -5% |
| Non-Brand | +107% | +308% |
| Total | -3% | +30% |
Total spend actually decreased, yet revenue increased 30%.
Client 4

| Category | Spend Change | Revenue Change |
|---|---|---|
| Brand | -46% | -10% |
| Non-Brand | +128% | +304% |
| Total | -2% | +20% |
Again, flat spend but significant revenue growth.
The Real Lesson
Most PPC accounts do not suffer from “competitors”
They suffer from inefficient allocation and outdated structures.
AI allows marketers to analyze millions of data points quickly and uncover opportunities that manual analysis often misses.
Final Thought
When properly implemented, AI in PPC is not about replacing marketers.
It is about empowering them to see patterns faster, restructure campaigns smarter, and invest budgets where incremental growth actually exists.
Contact us today for a free consultation.
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