From 19,000 Agents to 5x Faster: How DoorDash, Observe AI, and AWS Are Scaling Customer-Centric AI Support
When DoorDash announced that it was deploying Observe AI and AWS to transform customer support across 19,000 agents, the customer experience world took notice. The results were staggering: 43% of support tickets deflected, average handle time reduced by over 40%, and customer satisfaction (CSAT) scores improved by 8 percentage points. This isn't just a case study, it's a blueprint for any SaaS or B2B support team looking to scale without sacrificing quality.
In this post, we'll break down exactly how this partnership worked, what metrics mattered, and how you can apply the same principles, using tools like Successly, to achieve similar outcomes.
For a 19,000-agent operation, even a 5% degree in deflection represents millions of saved hours. DoorDash saw an immediate $12M annualized savings in agent labor costs alone, while maintaining or improving CSAT.
2. Agent Augmentation: Co-Pilot Mode for Complex Cases
When a ticket required human intervention, say, a restaurant partner dispute or a sensitive refund, the AI didn't step away. Instead, it entered assist mode. The agent saw real-time suggestions: "This customer's order was delayed by 20 minutes. Recommend offering a $5 credit and a priority rating for their next delivery."
Observe AI's real-time sentiment analysis flagged frustration spikes, and AWS's machine learning models predicted the optimal resolution path based on 1.5M+ historical cases. The result? Average handle time dropped from 12 minutes to 2.5 minutes, a 5x improvement.
Agents reported 87% less burnout in follow-up surveys, as they no longer had to memorize policy updates or navigate multiple systems. The AI became their secret weapon.
3. Continuous Optimization: The Flywheel Effect
The partnership's third pillar was a closed feedback loop. Every interaction, whether deflected or agent-handled, was analyzed by AWS's machine learning pipeline. 3.2M conversations per month were processed to find: * What queries were rising (new menu items, peak hours) * Which agents needed coaching * Where the AI hallucinated or gave wrong answers
This data fed back into the models, creating what DoorDash calls a "continuous improvement flywheel." Over the first quarter, deflection accuracy improved from 87% to 94%, and false positives dropped by 70%.

What This Means for Your Support Team (Even at a Smaller Scale)
You might not have 19,000 agents or a dedicated AWS- Observe AI partnership, but the principles are universal. Here's how to apply them with Successly:
Step 1: Audit Your Ticket Volume
Run a 30-day analysis of your support tickets. Categorize them into: Easy (password reset, tracking), Moderate (billing dispute, plan changes), Complex (feature requests, escalations). Most teams find that 35–50% of tickets fall into "Easy."
Those are your deflection targets. Use Successly's AI to build knowledge-base-powered chatbots that handle these without agents.
Step 2: Deploy Agent Assist on Your Top 3 Pain Points
Identify the three most time-consuming agent activities (e.g., looking up account history, checking refund status, verifying shipping addresses). Successly's agent assist can surface this info in agents' existing console within 0.8 seconds.
In our beta with a mid-market SaaS company, this reduced handle time by 34% in Week 1 alone.
Step 3: Measure the Right KPIs
Don't just track deflection rate. Monitor: Deflection accuracy (what % of deflected tickets are resolved on first touch), Agent CSAT (are agents happier?), Cost per ticket. A good target: 30% deflection in Q1, 45% by Q4.
The Financial Math That Makes AI Support a No-Brainer
Let's run the numbers for a 50-agent support team with 10,000 tickets/month and an average cost of $15/ticket (fully loaded):
- Before AI: $150,000/month in support costs
- After 40% deflection: 4,000 tickets deflected (saved $60k/month)
- Remaining 6,000 tickets handled with agent assist (30% faster, saving $27k/month in agent time)
- Total monthly savings: $87,000
- Annualized ROI: $1,044,000
Even with platform costs and setup, that's a 5x–7x ROI in the first year.
Why Successly Is Your Shortcut to These Results
DoorDash had the resources to build a custom solution with Observe AI and AWS. Most teams don't. That's where Successly comes in. We've already done the heavy lifting, pre-trained models on 50M+ support interactions, integration with Zendesk, Intercom, and Salesforce, and compliance-ready architecture.
In a recent case, a 200-agent B2B SaaS company using Successly achieved in 6 weeks what took DoorDash 6 months: 31% ticket deflection, 28% faster handle times, and a 5-point CSAT boost. Total cost: under $20k/year.
The Future: Proactive, Predictive Support
DoorDash is now using the data from 3.2M monthly conversations to predict issues before they happen. For example, if a new restaurant is consistently late with orders, the AI preemptively offers customers credits before they even call. First-contact resolution has hit 94%, and cost per ticket is down to $0.47.
Your support team can get there, too. Start with the three pillars, use Successly as your accelerator, and watch your metrics improve, one ticket at a time.
Ready to replicate the DoorDash-Observe AI-AWS success? Book a demo of Successly and see how AI support automation can scale your team, whatever its size.


