TL;DR: Focus on Marginal CPC vs CVR; Cut Losers, Push Winners; Use Placement Multipliers
To lower ACOS fast, concentrate on the relationship between your marginal Cost-Per-Click (CPC) and Conversion Rate (CVR). Quickly identify keywords and placements that drain your budget without delivering sales, and cut their bids aggressively. Conversely, increase bids on winning keywords to expand profitable sales volume. Use placement multipliers strategically to boost bids in high-conversion locations like top-of-search while suppressing spend where ROI is poor. AiHello’s AutoPilot automation handles these bid adjustments dynamically, saving manual effort and optimising for profitability 24/7.
Reducing ACOS quickly means maximising every dollar spent by precisely adjusting bids in line with actual conversion data. The core approach is to compare each keyword’s marginal cost-per-click (CPC) with its conversion rate (CVR), ensuring you’re only paying for traffic that converts into sales.
Marginal CPC vs CVR: For profitable ad spend, prioritise keywords and targets where the CVR (the percentage of clicks that result in sales) is high relative to the marginal CPC. If a target requires a high CPC to capture clicks but only converts occasionally, it’s driving up ACOS and dragging down campaign profitability.
Cut Losers: Immediately lower bids or pause keywords, search terms, or ad groups that have generated spend (clicks) with zero conversions or have ACOS well above your target. Focus especially on those that repeatedly miss the mark in both short (7-day) and long (30-day) windows. Push Winners: Conversely, increase bids for keywords and placements delivering conversions below your ACOS threshold, especially those with stable or improving CVR. This ensures budget flows to the most efficient growth drivers.
Placement Multipliers: Top-of-search placements typically convert better than product pages or rest-of-search, but may have higher CPCs. Use placement multipliers to boost high-performing positions and lower or remove modifiers from underperforming ones. Review placement data regularly and adjust with small increments for control.
AiHello’s AutoPilot leverages these principles through real-time automation, monitoring 50+ data points per bid adjustment, including historical performance, placement, CPC, CVR, and competition levels to keep ACOS in check and profitability high.
Identify Leaks: Find Spend with Zero Sales; 7-Day vs 30-Day Lookback Nuance
Optimal ACOS management begins with tracking wasted ad spend, what AiHello calls “leak detection.” This process isolates keywords, products, or placements that consume budget but deliver no sales, often a leading cause of inflated ACOS and lost profit.
Leak Finding: Use a “leak finder” table to highlight spend with zero sales by segment: keyword, search term, ad group, product, or placement. Start by pulling data for the last 7 days to catch fast-moving money pits, then widen out to 30 days to spot persistent underperformers that may be seasonal or slow-moving. Short vs. Long Lookback: The 7-day lookback zeroes in on urgent drains that need immediate bid cuts or pausing, especially relevant for aggressive optimisation or new campaigns. The 30-day lookback adds broader context, catching patterns missed in short windows but also avoiding the mistake of deactivating slow starters or seasonal winners prematurely.
Action Steps: For any target with spend (clicks) and zero sales across either time frame, aggressively cut bids or pause the target. If conversion rates are low but not zero, use a tiered approach: reduce bids first, monitor results, then pause if improvement doesn’t happen. Negative Keywords & Segmentation: Add negative keywords to block irrelevant traffic, segment by placement to focus budget only where conversions actually happen, and use regular leak analysis to ensure campaigns aren’t quietly bleeding money.
Smart automation like AiHello’s AutoPilot continually scans for leaks, letting you eliminate non-performers, reallocate budget to winners, and maintain a lean, profitable ad setup without manual intervention.
Automate Bid Decreases/Increases: Rules vs Machine Learning; Aggression Settings; Floors/Ceilings
Manual bid changes and basic rules can help when the spend is small, but they quickly break down at scale. Rules work on fixed thresholds (for example, “if ACOS > 40 per cent, reduce bid 15 per cent”), which makes them predictable but also rigid and blind to context like seasonality, competition shifts, or changing conversion rates. Machine learning systems like AiHello AutoPilot analyse trends over time and react to performance continuously, nudging bids up or down as data comes in instead of waiting for weekly spreadsheet reviews.
AiHello AutoPilot takes your target ACOS and automatically raises bids on keywords and targets that sit comfortably below that goal, while cutting bids where ACOS drifts too high, so performance gravitates around your target without constant human supervision. Bid aggression controls how fast AutoPilot moves from the current bid to the AI-suggested bid: higher aggression means faster jumps toward the suggestion, useful when ACOS is far from the target, while lower aggression keeps adjustments gradual when you want stability. Velocity settings then determine the size of each move, so a bid might go from 1.00 to 1.75 in one step with high velocity or creep from 1.00 to 1.25 with low velocity.
Floors and ceilings act as safety rails for the model. Max AutoPilot Bid lets you cap how high bids can climb, protecting you from sudden CPC spikes in competitive niches, while Min AutoPilot Bid ensures bids do not fall so low that you lose impressions on profitable search terms you still want to keep active. AiHello also uses minimum spend thresholds, so it waits for enough data (for example, a few dollars of spend per keyword) before cutting bids, which avoids turning off promising targets before they have a fair chance to convert. Together, ML-based adjustments, aggression dials, and hard guardrails give you a system that responds fast when ACOS is off track but still respects your risk tolerance and profit targets.
Placement Aware Bidding: Top of Search vs Product Pages, When Boosts Pay
On Amazon, where your ad appears can matter as much as what you bid. Top of Search typically has the highest click-through and conversion rates, but it also commands the highest CPCs, which can inflate ACOS if you pay for visibility without monitoring returns. Product Pages and the Rest of the Search often come with cheaper CPCs and lower intent traffic, which can either be a profitable remarketing channel or a leak, depending on the product and niche. The goal is not to push every placement equally, but to find where your combination of CPC and CVR produces the best profit per click.
Best practice is to pull placement reports and compare ACOS and ROAS separately for Top of Search, Product Pages, and Rest of Search, then tune multipliers accordingly. If Top of Search is delivering strong ROAS, you can justify multipliers of 50 per cent, 100 per cent, or more, while keeping base bids lower so you do not overspend on weaker placements. Conversely, if Product Pages show poor conversion and high ACOS, you can reduce the multiplier or set it to zero to avoid cannibalising spend. Some brands even split structures into search-focused and product page-focused campaigns, using high multipliers on the winning placement and zero multipliers elsewhere for clean control.
AiHello AutoPilot integrates with Amazon’s placement controls and can adjust bids in a way that reflects performance by placement instead of treating all impressions the same. Using AiHello, you can lean into a “placement matrix” mindset: high CVR and acceptable CPC earns a boost, low CVR or bloated CPC earns a cut. Over time, this placement-aware bidding compounds efficiency, pushing more of your budget into the placements that actually lower ACOS instead of just increasing visibility.
Budget Reallocation: Shift to Converting Targets, Cap Experiments
Bids handle efficiency at the click level, but budgets decide which parts of your account get the oxygen to scale. A common pattern in underperforming accounts is overfunded testing campaigns and underfunded winners, which leads to high ACOS despite some targets being very profitable. A simple fix is to separate spend into “performance” campaigns for proven keywords and “research” campaigns for discovery and testing, then progressively move budget from research to performance as data accumulates.
Start by mapping your campaigns into quadrants based on ACOS and volume: high volume / low ACOS (scale), low volume / low ACOS (nurture), high volume / high ACOS (fix or trim), low volume / high ACOS (cut or heavily restrict). Increase daily budgets on high-volume, low ACOS campaigns so they do not go dark mid-day, and pull budget away from low-volume, high ACOS campaigns that primarily exist to test ideas. For experiments, apply strict budget caps and clear exit criteria, such as shutting off a test if it spends a set amount without a sale or if ACOS stays above a defined threshold across a 14 to 30-day window.
AiHello helps automate this budget reallocation loop by continuously tracking ACOS, conversions, and spend across campaigns and product targets, then surfacing where more budget can safely drive profit and where money is being burned. You can pair this with AutoPilot’s bid logic so that budgets and bids are pulling in the same direction: winners get both higher bids and more budget, while losers get bid cuts and eventual budget reductions. This system-level view turns your account into a living portfolio where capital flows naturally toward the most efficient, profitable opportunities.
AiHello Playbook: Template Settings for 3 Common Scenarios (High ACOS, Scaling, Launch)
Because AiHello revolves around target ACOS and automated bid optimisation, you can standardise configurations into a few practical “playbooks.” When ACOS is too high, and profitability is under pressure, set a conservative target ACOS, increase bid aggression down so bids drop quickly on non-performers, and keep bid aggression up modestly to avoid chasing expensive clicks. Combine this with relatively tight max bid ceilings and a higher minimum spend threshold, so AutoPilot waits for meaningful data before making big cuts but does not allow bids to spike beyond what your margins can handle.
For scaling profitable campaigns, keep target ACOS at a level that maintains margin but gives breathing room, then raise bid aggression up so AutoPilot can push bids more boldly on low ACOS, high CVR terms. Relax max bid ceilings slightly, and increase daily budgets on these winners to avoid throttling. At the same time, leave bid aggression down moderate so that if a keyword temporarily drifts above target ACOS, the system corrects without overreacting and killing momentum. This setup is designed for brands that want to grow volume while keeping a predictable profit envelope.
For new product launches, the goal shifts from pure efficiency to data collection and ranking. Here, you can set a higher target ACOS, accept that you will pay more initially, and use lower bid aggression up so AutoPilot scales cautiously as it learns which terms convert. Floors can be lower to spread impressions across more keywords and ASIN targets, while ceilings keep you from overpaying on unproven traffic. Once data shows clear winners and losers, you can transition that product from a launch configuration into the scaling or profit mode templates above, tightening target ACOS and tuning aggression accordingly. Across all three scenarios, the common thread is using AiHello’s quadrants of impact and efficiency to decide whether AutoPilot should prioritise cutting ACOS fast, capturing more upside, or buying data to inform the next phase.
- Assets: “Leak finder” table; example bid curves; placement matrix.
Start AutoPilot with ACOS target; book 15‑min audit.
FAQs
What if ACOS is high due to price or inventory issues?
Bid automation like AiHello AutoPilot optimises clicks and conversions within your current setup, but high ACOS from low prices or stockouts requires separate fixes. Low pricing erodes margins per sale, making even efficient ads unprofitable. Use AiHello’s Repricer to raise prices automatically when you hold the Buy Box, balancing competitiveness with better ACOS. Inventory shortages force reliance on ads alone, spiking ACOS until organic rank recovers; restock promptly, pause low-margin campaigns temporarily, and lower bids during disruptions to control spend.
How aggressive can I be with bid automation?
AiHello AutoPilot lets you dial aggression from conservative to very aggressive via customizable settings for bid changes up and down. Set bid aggression up to 150% for rapid increases on winners (e.g., jumping from $1 to $1.75 in high-velocity steps) or dial to 50% for gradual scaling to minimise risk. Bid aggression down at 100%+ cuts losers fast when ACOS exceeds target, but pair with minimum spend thresholds (e.g., $3 per keyword) to avoid premature pauses. Start moderate, monitor for 7-14 days, then ramp up as data confirms stability.
