Search our articles
Search

Featured articles

Conversational Commerce Strategy

AI in CX Webinar Recap: Building a Conversational Commerce Strategy that Converts

By Gabrielle Policella
0 min read . By Gabrielle Policella

TL;DR:

  • Implement quickly and optimize continuously. Cornbread's rollout was three phases: audit knowledge base, launch, then refine. Stacy conducts biweekly audits and provides daily AI feedback to ensure responses are accurate and on-brand.
  • Simplify your knowledge base language. Before BFCM, Stacy rephrased all guidance documentation to be concise and straightforward so Shopping Assistant could deliver information quickly without confusion.
  • Use proactive suggested questions. Most of Cornbread's Shopping Assistant engagement comes from Suggested Product Questions that anticipate customer needs before they even ask.
  • Treat AI as another team member. Make sure the tone and language AI uses match what human agents would say to maintain consistent customer relationships.
  • Free up agents for high-value work. With AI handling straightforward inquiries, Cornbread's CX team expanded into social media support, launched a retail pop-up shop, and has more time for relationship-building phone calls.

Customer education has become a critical factor in converting browsers into buyers. For wellness brands like Cornbread Hemp, where customers need to understand ingredients, dosages, and benefits before making a purchase, education has a direct impact on sales. The challenge is scaling personalized education when support teams are stretched thin, especially during peak sales periods.

Katherine Goodman, Senior Director of Customer Experience, and Stacy Williams, Senior Customer Experience Manager, explain how implementing Gorgias's AI Shopping Assistant transformed their customer education strategy into a conversion powerhouse. 

In our second AI in CX episode, we dive into how Cornbread achieved a 30% conversion rate during BFCM, saving their CX team over four days of manual work.

Top learnings from Cornbread's conversational commerce strategy

1. Customer education drives conversions in wellness

Before diving into tactics, understanding why education matters in the wellness space helps contextualize this approach.

Katherine, Senior Director of Customer Experience at Cornbread Hemp, explains:

"Wellness is a very saturated market right now. Getting to the nitty-gritty and getting to the bottom of what our product actually does for people, making sure they're educated on the differences between products to feel comfortable with what they're putting in their body."

The most common pre-purchase questions Cornbread receives center around three areas: ingredients, dosages, and specific benefits. Customers want to know which product will help with their particular symptoms. They need reassurance that they're making the right choice.

What makes this challenging: These questions require nuanced, personalized responses that consider the customer's specific needs and concerns. Traditionally, this meant every customer had to speak with a human agent, creating a bottleneck that slowed conversions and overwhelmed support teams during peak periods.

2. Shopping Assistant provides education that never sleeps

Stacy, Senior Customer Experience Manager at Cornbread, identified the game-changing impact of Shopping Assistant:

"It's had a major impact, especially during non-operating hours. Shopping Assistant is able to answer questions when our CX agents aren't available, so it continues the customer order process."

A customer lands on your site at 11 PM, has questions about dosage or ingredients, and instead of abandoning their cart or waiting until morning for a response, they get immediate, accurate answers that move them toward purchase.

The real impact happens in how the tool anticipates customer needs. Cornbread uses suggested product questions that pop up as customers browse product pages. Stacy notes:

"Most of our Shopping Assistant engagement comes from those suggested product features. It almost anticipates what the customer is asking or needing to know."

Actionable takeaway: Don't wait for customers to ask questions. Surface the most common concerns proactively. When you anticipate hesitation and address it immediately, you remove friction from the buying journey.

3. Implementation follows a clear three-phase approach

One of the biggest myths about AI is that implementation is complicated. Stacy explains how Cornbread’s rollout was a straightforward three-step process: audit your knowledge base, flip the switch, then optimize.

"It was literally the flip of a switch and just making sure that our data and information in Gorgias was up to date and accurate." 

Here's Cornbread’s three-phase approach:

  1. Preparation. Before launching, Cornbread conducted a comprehensive audit of their knowledge base to ensure accuracy and completeness. This groundwork is critical because your AI is only as good as the information it has access to.
  2. Launch and training. After going live, the team met weekly with their Gorgias representative for three to four weeks. They analyzed engagements, reviewed tickets, and provided extensive AI feedback to teach Shopping Assistant which responses were appropriate and how to pull from the knowledge base effectively.
  3. Ongoing optimization. Now, Stacy conducts audits biweekly and continuously updates the knowledge base with new products, promotions, and internal changes. She also provides daily AI feedback, ensuring responses stay accurate and on-brand.

Actionable takeaway: Block out time for that initial knowledge base audit. Then commit to regular check-ins because your business evolves, and your AI should evolve with it.

Read more: AI in CX Webinar Recap: Turning AI Implementation into Team Alignment

4. Simple, concise language converts better

Here's something most brands miss: the way you write your knowledge base articles directly impacts conversion rates.

Before BFCM, Stacy reviewed all of Cornbread's Guidance and rephrased the language to make it easier for AI Agent to understand. 

"The language in the Guidance had to be simple, concise, very straightforward so that Shopping Assistant could deliver that information without being confused or getting too complicated," Stacy explains. When your AI can quickly parse and deliver information, customers get faster, more accurate answers. And faster answers mean more conversions.

Katherine adds another crucial element: tone consistency.

"We treat AI as another team member. Making sure that the tone and the language that AI used were very similar to the tone and the language that our human agents use was crucial in creating and maintaining a customer relationship."

As a result, customers often don't realize they're talking to AI. Some even leave reviews saying they loved chatting with "Ally" (Cornbread's AI agent name), not realizing Ally isn't human.

Actionable takeaway: Review your knowledge base with fresh eyes. Can you simplify without losing meaning? Does it sound like your brand? Would a customer be satisfied with this interaction? If not, time for a rewrite.

Read more: How to Write Guidance with the “When, If, Then” Framework

5. Black Friday results proved the strategy works under pressure

The real test of any CX strategy is how it performs under pressure. For Cornbread, Black Friday Cyber Monday 2025 proved that their conversational commerce strategy wasn't just working, it was thriving.

Over the peak season, Cornbread saw: 

  • Shopping Assistant conversion rate jumped from a 20% baseline to 30% during BFCM
  • First response time dropped from over two minutes in 2024 to just 21 seconds in 2025
  • Attributed revenue grew by 75%
  • Tickets doubled, but AI handled 400% more tickets compared to the previous year
  • CSAT scores stayed exactly in line with the previous year, despite the massive volume increase

Katherine breaks down what made the difference:

"Shopping Assistant popping up, answering those questions with the correct promo information helps customers get from point A to point B before the deal ends."

During high-stakes sales events, customers are in a hurry. They're comparing options, checking out competitors, and making quick decisions. If you can't answer their questions immediately, they're gone. Shopping Assistant kept customers engaged and moving toward purchase, even when human agents were swamped.

Actionable takeaway: Peak periods require a fail-safe CX strategy. The brands that win are the ones that prepare their AI tools in advance.

6. Strategic work replaces reactive tasks

One of the most transformative impacts of conversational commerce goes beyond conversion rates. What your team can do with their newfound bandwidth matters just as much.

With AI handling straightforward inquiries, Cornbread's CX team has evolved into a strategic problem-solving team. They've expanded into social media support, provided real-time service during a retail pop-up, and have time for the high-value interactions that actually build customer relationships.

Katherine describes phone calls as their highest value touchpoint, where agents can build genuine relationships with customers. “We have an older demographic, especially with CBD. We received a lot of customer calls requesting orders and asking questions. And sometimes we end up just yapping,” Katherine shares. “I was yapping with a customer last week, and we'd been on the call for about 15 minutes. This really helps build those long-term relationships that keep customers coming back."

That's the kind of experience that builds loyalty, and becomes possible only when your team isn't stuck answering repetitive tickets.

Stacy adds that agents now focus on "higher-level tickets or customer issues that they need to resolve. AI handles straightforward things, and our agents now really are more engaged in more complicated, higher-level resolutions."

Actionable takeaway: Stop thinking about AI only as a cost-cutting tool and start seeing it as an impact multiplier. The goal is to free your team to work on conversations that actually move the needle on customer lifetime value.

7. Continuous optimization for January and beyond

Cornbread isn't resting on their BFCM success. They're already optimizing for January, traditionally the biggest month for wellness brands as customers commit to New Year's resolutions.

Their focus areas include optimizing their product quiz to provide better data to both AI and human agents, educating customers on realistic expectations with CBD use, and using Shopping Assistant to spotlight new products launching in Q1.

Build your conversational commerce strategy now

The brands winning at conversational commerce aren't the ones with the biggest budgets or the largest teams. They're the ones who understand that customer education drives conversions, and they've built systems to deliver that education at scale.

Cornbread Hemp's success comes down to three core principles: investing time upfront to train AI properly, maintaining consistent optimization, and treating AI as a team member that deserves the same attention to tone and quality as human agents.

As Katherine puts it:

"The more time that you put into training and optimizing AI, the less time you're going to have to babysit it later. Then, it's actually going to give your customers that really amazing experience."

Watch the replay of the whole conversation with Katherine and Stacy to learn how Gorgias’s Shopping Assistant helps them turn browsers into buyers. 

{{lead-magnet-1}}

min read.
Make AI Sound More Human

Make AI Sound More Human: How to Avoid Robotic Replies in Customer Support

Learn how small tweaks can make AI sound human and build trust in customer support.
By Gorgias Team
0 min read . By Gorgias Team

TL;DR:

  • Train your AI on your brand voice. A clear voice guide that covers tone, style, and formality helps your AI sound more natural and aligned with your brand.
  • Add short delays before AI responds. A one- or two-second pause can make AI responses seem more thoughtful.
  • Avoid generic phrases. Swap out formal responses for on-brand language that sounds like a real person on your team.
  • Mention customer context in replies. Referencing order history or previous conversations makes AI sound more human and builds trust.
  • Balance automation with human support. Let customers know when they are speaking to AI and escalate to a human when needed to avoid frustration.

Your AI sounds like a robot, and your customers can tell.

Sure, the answer is right, but something feels off. The tone of voice is stiff. The phrases are predictable and generic. At most, it sounds copy-pasted. This may not be a big deal from your side of support. In reality, it’s costing you more than you think.

Recent data shows that 45% of U.S. adults find customer service chatbots unfavorable, up from 43% in 2022. As awareness of chatbots has increased, so have negative opinions of them. Only 19% of people say chatbots are helpful or beneficial in addressing their queries. The gap isn't just about capability. It's about trust. When AI sounds impersonal, customers disengage or leave frustrated.

Luckily, you don't need to choose between automation and the human touch. 

In this guide, we'll show you six practical ways to train your AI to sound natural, build trust, and deliver the kind of support your customers actually like.

1. Train your AI on your brand voice

The fastest way to make your AI sound more human is to teach it to sound like you. AI is only as good as the input you give it, so the more detailed your brand voice training, the more natural and on-brand your responses will be.

Start by building a brand voice guide. It doesn't need to be complicated, but it should clearly define how your brand communicates with customers. At minimum, include:

  • Tone: Is your brand warm and empathetic? Confident and cheeky? Straightforward and helpful?
  • Style: How does your brand write? What is your personality? Short or long sentences, contractions or not, punctuation choices, and overall rhythm.
  • Formality: Do you use slang? Emojis? Address customers as “you,” “y’all,” or something else?
  • Friendliness: How personable should your AI sound? Is it playful, or should responses stay neutral and professional?

Think of your AI as a character. Samantha Gagliardi, Associate Director of Customer Experience at Rhoback, described their approach as building an AI persona:

"I kind of treat it like breaking down an actor. I used to sing and perform for a living — how would I break down the character of Rhoback? How does Rhoback speak? What age are they? What makes the most sense?" 

Next step

✅ Create a brand voice guide with tone, style, formality, and example phrases.

2. Delay responses to mimic human behavior

Humans associate short pauses with thinking, so when your AI responds too quickly, it instantly feels unnatural.

Adding small delays helps your AI feel more like a real teammate.

Where to add response delays:

  • Before sharing info that would realistically take a moment to look up, e.g., order history
  • Before confirming an action like issuing a refund or applying a discount
  • Transitioning or escalating between steps or agents
  • Emotional messages, like customer complaints and product quality issues

Even a one- to two-second pause can make a big difference in a robotic or human-sounding AI.

Next step

✅ Add instructions in your AI’s knowledge base to include short response delays during key moments.

3. Avoid generic phrasing and canned language

Generic phrases make your AI sound like... well, AI. Customers can spot a copy-pasted response immediately — especially when it's overly formal.

That doesn't mean you need to be extremely casual. It means being true to your brand. Whether your voice is professional or conversational, the goal is the same: sound like a real person on your team.

Here's how to replace robotic phrasing with more brand-aligned responses:

Generic Phrase

More Natural Alternative

“We apologize for the inconvenience.”

“Sorry about that, we’re working on it now.” (friendly)
“Apologies for the trouble. We’re resolving this ASAP.” (professional)

“Your satisfaction is our top priority.”

“We want to make sure this works for you.” (friendly)
“Let us know how we can make this right.” (professional)

“Please be advised…”

“Just a quick heads up…” (friendly)
“For your reference…” (professional)

“Your request has been received.”

“Got it. Thanks for reaching out.” (friendly)
“We’ve received your request and will follow up shortly.” (professional)

“I will now review your request.”

“Let me take a quick look.” (friendly)
“I’m reviewing the details now.” (professional)

Next step

✅ Identify your five most common inquiries and give your AI a rewritten example response for each.

4. Use context to inform answers

One of the biggest tells that a response is AI-generated? It ignores what's already happened.

When your AI doesn't reference order history or past conversations, customers are forced to repeat themselves. Repetition can lead to frustration and can quickly turn a good customer experience into a bad one.

Great AI uses context to craft replies that feel personalized and genuinely helpful.

Here's what good context looks like in AI responses:

  • Order awareness: The AI knows the customer placed an order yesterday and provides an accurate delivery estimate without asking for the order number again.
  • Conversation continuity: If the customer reached out earlier that week from a different support channel, the AI references that interaction or picks up where things left off.
  • Customer type: First-time shopper? VIP? The AI adjusts tone and detail level accordingly.

Tools like Gorgias AI Agent automatically pull in customer and order data, so replies feel human and contextual without sacrificing speed.

Next step

✅ Add instructions that prompt your AI to reference order details and/or past conversations in its replies, so customers feel acknowledged.

5. Balance automation with human handoff

Customers just want help. They don't care whether it comes from a human or AI, as long as it's the right help. But if you try to trick them, it backfires fast. AI that pretend to be human often give customers the runaround, especially when the issue is complex or emotional.

A better approach is to be transparent. Solve what you can, and hand off anything else to an agent as needed.

When to disclose that the customer is talking to AI:

  • You can disclose it at the start of the conversation, or include a disclaimer in your chat widget, contact page, or help center to let customers know AI may assist
  • When the customer asks to speak to a human or expresses frustration
  • If the AI cannot fulfill the request and needs to escalate
  • Anytime the AI is making decisions, like issuing refunds or processing cancellations
  • When transitioning from AI to a human agent

For more on this topic, check out our article: Should You Tell Customers They're Talking to AI?

Next step

✅ Set clear rules for when your AI should escalate to a human and include handoff messaging that sets expectations and preserves context.

6. Add intentional imperfections to sound human

We're giving you permission to break the rules a little bit. The most human-sounding AI doesn't follow perfect grammar or structure. It reflects the messiness of real dialogue.

People don't speak in flawless sentences every time. We pause, rephrase, cut ourselves off, and throw in the occasional emoji or "uh." When AI has an unpredictable cadence, it feels more relatable and, in turn, more human.

What an imperfect AI could look like: 

  • Vary sentence length and structure. Some short and choppy, others long. 
  • Add subtle grammatical “mistakes” like sentence fragments or informal punctuation. 
  • Mix in casual phrasing or idioms where appropriate. 
  • Avoid mechanical-sounding transitions. 
  • Occasionally use filler phrases like "kinda," "just checking," or "I think."

These imperfections give your AI a more believable voice.

Next step

✅ Add instructions for your AI that permit variation in grammar, tone, and sentence structure to mimic real human speech.

Natural-sounding AI is easier to set up than you think

Human-sounding AI doesn’t require complex prompts or endless fine-tuning. With the right voice guidelines, small tone adjustments, and a few smart instructions, your AI can sound like a real part of your team.

Book a demo of Gorgias AI Agent and see for yourself.

{{lead-magnet-2}}

5 min read.

AI Chatbot Not Working? 7 Common Issues and How to Fix Them

If your AI chatbot is looping, escalating too fast, or giving wrong answers, here’s how to fix it.
By Christelle Agustin
0 min read . By Christelle Agustin

TL;DR:

  • If your AI is giving wrong answers or getting stuck, it’s likely due to missing or conflicting knowledge. Ensure your AI is trained with up-to-date documents and add guardrails to prevent off-topic replies.
  • Loops and escalations usually mean your escalation rules aren’t specific enough. Define when AI should step in, when it should hand over, and create “escape phrases” that trigger human takeover.
  • Customers still want human help. Always offer a path to a real person and make sure your agents get full conversation context when a handoff happens.
  • Inconsistent tone between AI and agents can make disjointed experiences. Align your brand voice across all support channels and choose tools that let you customize AI tone.
  • AI works best when its role is clearly defined. Decide which topics it can handle, train it using real conversations, and review performance regularly to fine-tune your setup.

You’ve chosen your AI tool and turned it on, hoping you won’t have to answer another WISMO question. But now you’re here. Why is AI going in circles? Why isn’t it answering simple questions? Why does it hand off every conversation to a human agent?

Conversational AI and chatbots thrive on proper training and data. Like any other team member on your customer support team, AI needs guidance. This includes knowledge documents, policies, brand voice guidelines, and escalation rules. So, if your AI has gone rogue, you may have skipped a step.

In this article, we’ll show you the top seven AI issues, why they happen, how to fix them, and the best practices for AI setup. 

{{lead-magnet-1}}

1. AI sends the wrong answer — with confidence

AI can only be as accurate as the information you feed it. If your AI is confidently giving customers incorrect answers, it likely has a gap in its knowledge or a lack of guardrails.

Insufficient knowledge can cause AI to pull context from similar topics to create an answer, while the lack of guardrails gives it the green light to compose an answer, correct or not.

How to fix it: 

  • Update the AI knowledge base. Create a new document that covers the affected topic in its entirety. To ensure AI follows every step, write your instructions in a when/if/then format.
  • Define topics that AI should not handle. As a preventive measure, specify the topics the AI should skip and hand over to a human agent. For example, add words such as ‘disappointed’, ‘bad’, and ‘unacceptable’ to your AI off-limit list, so that human agents automatically handle negative-intent tickets.

2. Customer is stuck in an AI loop 

This is one of the most frustrating customer service issues out there. Left unfixed, you risk losing 29% of customers

If your AI is putting customers through a never-ending loop, it’s time to review your knowledge docs and escalation rules.

How to fix it:

  • Double-check for conflicts in knowledge. You may have provided multiple resolutions for the same issue across different knowledge sources, such as uploaded documents, website pages, and in-app instructions.
  • Add “escape routes”. Choose a set of phrases that automatically escalate conversations from AI to your support team. For example, “it’s not working” or “I already tried that”.
  • Set a max number of failed interactions before escalation. Opt for a one-fail-and-escalate approach for every conversation, or specify the number of failed interactions for certain topics.

3. AI escalates too quickly, even for easy questions

It can be frustrating when AI can’t do the bare minimum, like automate WISMO tickets. This issue is likely due to missing knowledge or overly broad escalation rules.

How to fix it:

  • Train AI on your FAQs and common issues. Which customer questions do you repeatedly receive? Create a document that lists out every question and its answer.
  • Update vague escalation rules. AI works best with specificity. For example, if you told it to escalate conversations about “returns,” it may even escalate frequently asked questions about return eligibility.

4. Customers can’t find a way to reach a human

One in two customers still prefer talking to a human to an AI, according to Katana. Limiting them to AI-only support could risk a sale or their relationship. 

The top live chat apps clearly display options to speak with AI or a human agent. If your tool doesn’t have this, refine your AI-to-human escalation rules.

How to fix it:

  • Set phrases to trigger escalation. In your knowledge docs, define which phrases should tell AI to hand a conversation over to your support team. For example, “I want to talk to someone” or “Can I talk to a human?”
  • Add a visible option to connect with a human. This can be a button in your chat widget, a note in your contact page, or even a link in your website footer. At minimum, give customers an easy-to-find way to reach a real person.

5. Handoff happens — but the agent gets no context

If your agents are asking customers to repeat themselves, you’ve already lost momentum. One of the fastest ways to break trust is by making someone explain their issue twice. This happens when AI escalates without passing the conversation history, customer profile, or even a summary of what’s already been attempted.

How to fix it:

  • Use rules to auto-tag conversations based on AI activity. Set up logic to tag tickets when certain conditions are met — like when AI attempted a specific action, couldn't resolve the issue, or triggered escalation.
  • Audit your escalated tickets. Look for patterns where context is missing, and adjust the AI-to-human transition logic accordingly.
  • Use an AI platform that provides automated ticket summaries. Choose a tool like Gorgias that provides a quick overview of every ticket.

6. The tone between AI and agent is jarring

Sure, conversational AI has near-perfect grammar, but if its tone is entirely different from your agents’, customers can be put off.

This mismatch usually comes from not settling on an official customer support tone of voice. AI might be pulling from marketing copy. Agents might be winging it. Either way, inconsistency breaks the flow.

How to fix it:

  • Create shared brand voice guidelines. Align tone, formality, and language rules across both AI scripts and agent responses.
  • Define emojis and punctuation use. A consistent visual style helps conversations feel smoother and more human.
  • Use AI tools that allow tone control. Choose platforms that let you customize the voice and personality of your AI to match your brand.
  • Train your agents with examples of ideal tone. Give your team brand voice examples of how conversations should continue when handed off.

7. You haven’t defined what AI should actually handle

When AI is underperforming, the problem isn’t always the tool. Many teams launch AI without ever mapping out what it's actually supposed to do. So it tries to do everything (and fails), or it does nothing at all.

It’s important to remember that support automation isn’t “set it and forget it.” It needs to know its playing field and boundaries.

How to fix it:

AI should handle

AI should escalate to a human

Order tracking (“Where’s my package?”)

Upset, frustrated, or emotional customers

Return and refund policy questions

Billing problems or refund exceptions

Store hours, shipping rates, and FAQs

Technical product or troubleshooting issues

Simple product questions

Complex or edge‑case product questions

Password resets

Multi‑part or multi‑issue requests

Pre‑sale questions with clear, binary answers

Anything where a wrong answer risks churn

How to set up AI that actually works

Once you’ve addressed the obvious issues, it’s important to build a setup that works reliably. These best practices will help your AI deliver consistently helpful support.

1. Define clear AI boundaries

Start by deciding what AI should and shouldn’t handle. Let it take care of repetitive tasks like order tracking, return policies, and product questions. Anything complex or emotionally sensitive should go straight to your team.

2. Train it using real customer conversations

Use examples from actual tickets and messages your team handles every day. Help center articles are a good start, but real interactions are what help AI learn how customers actually ask questions.

3. Set up fallback triggers

Create rules that tell your AI when to escalate. These might include customer frustration, low confidence in the answer, or specific phrases like “talk to a person.” The goal is to avoid infinite loops and to hand things off before the experience breaks down.

4. Make sure agents receive full context

When a handoff happens, your agents should see everything the AI did. That includes the full conversation, relevant customer data, and any actions it has already attempted. This helps your team respond quickly and avoid repeating what the customer just went through. 

An easy way to keep order history, customer data, and conversation history in one place is by using a conversational commerce tool like Gorgias.

5. Keep tone and voice consistent

A jarring shift in tone between AI and agent makes the experience feel disconnected. Align aspects such as formality, punctuation, and language style so the transition from AI to human feels natural.

6. Review handoffs regularly

Look at recent escalations each week. Identify where the AI struggled or handed off too early or too late. Use those insights to improve training, adjust boundaries, and strengthen your automation flows.

If your AI chatbot isn’t working the way you expected, it’s probably not because the technology is broken. It’s because it hasn’t been given the right rules.

AI that works your way and knows when to escalate

When you set AI up with clear responsibilities, it becomes a powerful extension of your team.

Want to see what it looks like when AI is set up the right way?

Try Gorgias AI Agent. It’s conversational AI built with smart automation, clean escalations, and ecommerce data in its core — so your customers get faster answers and your agents stay focused.

Get started with Gorgias AI Agent →

min read.
Create powerful self-service resources
Capture support-generated revenue
Automate repetitive tasks

Further reading

Thank You Interns

Thank you, interns!

By
1 min read.
0 min read . By

At Gorgias we've been very fortunate to work with some amazing people who did their internship with us:

Amit Poonia
Astrid Parmentier
Emilie Drouin
Hadrien de Lamotte
Ram Goli

Thank you all for your work!

Their contributions big and small make an indispensable part of what Gorgias is today and what it will be in the future. We are very grateful for their hard work, and we want to continue working with them after they finish their studies. To make returning more attractive for them, we've decided to take into account their stock option vesting period if they ever decide to return as full-time employees.

What exactly does this mean?

Interns that decide to return to Gorgias within a limited amount of time and choose to take our stock options offer upon the start of their full-time employment will have an accelerated schedule of their stock option vesting period. The offer will be judged case by case with our board's approval.

Let's take the example from our friends at Cockroach Labs (which this decision was inspired from):

For example, our standard option vesting schedule is that 25% of the stock options vests after 12 months of service from an employee’s start date (the “cliff”), and the remaining option vests in equal installments over the following 36 months of continuous service. However, if an intern spent four months with us, on their hire date, they would only have eight months until they hit their one-year cliff date and vest 25%.

We hope that by doing so, we're showing that we're taking their time seriously and we show our intention to work with them beyond their internship.

No items found.
Announcing The Recharge Integration

Announcing the ReCharge integration

By Astrid Parmentier
1 min read.
0 min read . By Astrid Parmentier

Recharge is the most popular subscription app in the Shopify app store and is the preferred solution for Shopify Plus stores. Over 10,000 Shopify merchants chose ReCharge to help sell products on a recurring basis, including stores like Dr. Axe, Hubble Contacts, and 5 Hour Energy.

The challenge is, when a customer has an issue with their subscription, the support team needs to jump between their helpdesk, Shopify and the ReCharge platform to fix the problem. This negatively impacts response time. Agents end up wasting hours per week going to ReCharge to skip a box for a customer, edit a subscription, etc. One of the key advantages of using Gorgias is to manage all your customer support in one place. A few months ago, our customer Darn Good Yarn asked us to build an integration with ReCharge. They no longer wanted to switch between ReCharge, Shopify and their helpdesk. This was completely aligned with our vision, so we decided to build it.

Today, we're excited to announce we've partnered with ReCharge to launch this integration.

Here are the key benefits:

  1. Display ReCharge subscriptions next to support tickets.
  2. Edit ReCharge subscriptions in one click from your helpdesk: refund charges, skip monthly payments or cancel subscriptions from Gorgias
  3. When a customer ask to edit their subscription, you can send them an auto-response with the link to manage the subscription.

“Gorgias gives us a holistic view of our customers. This way we can provide them with fast and personalized help”
Nicole Snow, DarnGoodYarn

Let’s take the example of Averill John. She wants to cancel her subscription to the Yummy Box and has just sent an email to your support.

Here is how your helpdesk looks like:

You can see that Astrid has been assigned to this ticket and that this ticket is tagged “Ambassador”. It means that Averill is one of your super loyal customers.

On the right, you can see the ReCharge account data of Averill. Here, Averill has a monthly subscription to the Yummy Box and will be charged on the 15th of October.

Astrid can skip the October charge in one-click on the “Skip charge on subscription” button. It will immediately set the action within ReCharge. Response time? Less than 1 minute!

If you're already a Gorgias customer, head to your account and go to Integrations to connect ReCharge. If not, you can create an account here and get started in a few minutes.

No items found.
New Integration

Announcing the Aircall integration

By
1 min read.
0 min read . By

One of the key advantages of using Gorgias is to provide a unified support experience to your customers across all channels. A few months ago, some of our customers asked us to build a phone integration. Traditional helpdesk integrations simply log calls as tickets. We wanted to go one step further and associate the phone call with the right customer.

Today, we're excited to announce we've partnered with Aircall to build this integration.

Aircall arms small-to-medium sized business (SMBs) with a phone system built for modern business. With zero hardware to manage, dozens of integration options to explore, and the ability to add local numbers in more than 40 countries, support teams can easily provide phone support in minutes.

Here are the benefits of this new integration:

  • When a customer calls your company in Aircall, it creates a ticket in Gorgias and automatically matches it with the corresponding Shopify customer. This way, your staff can edit orders while they are on the phone with the customer.
  • Your team sees all previous interactions they had with each customer, under their timeline.
  • Get omni-channel statistics. Gorgias stats include Aircall phone data. For instance, you can monitor if you're getting more return requests over the phone or through Facebook Messenger.

If you're already a Gorgias customer, head to your account and go to Integrations to connect Aircall. If not, you can create an account here and get started in a few minutes.

No items found.
Shopify Plus Partner

We're joining the Shopify Plus Technology Partner Program

By
1 min read.
0 min read . By

Today, we’re thrilled to announce we’re joining the Shopify Plus Technology partner program.

Over the past few months, we’ve worked with some incredible Shopify Plus merchants like Darn Good Yarn, Fjallraven and Frichti, who serve tens of thousands of customers every month. What they all had in common was a shared commitment to maximizing the efficiency of the customer service team to keep delivering high-quality support as they grow.

We’ve worked with other technology partners, like LoyaltyLion, in order to provide merchants with a holistic view of their customers when they respond to them in an effort to continue delivering best-in-class support interactions. We’ve also worked with the Plus team to leverage the latest features of the Shopify Plus API, to allow agents to create customized solutions for their customers, For example, creating personalized gift cards based on support conversations. Also, check out the guide we wrote comparing Shopify and Shopify Plus for an idea of the additional functionality and benefits ecommerce business owners get when they upgrade to Shopify Plus.

Using our technology, we’re proud to announce that our Shopify Plus customers have managed to improve their support request treatment time by 30%.

By joining the Technology Partner Program, we’re excited to take our collaboration with Shopify Plus and Shopify Plus merchants to the next level, by further enabling more customers to improve their customer service.

"We are glad to welcome Gorgias to the Shopify Plus Technology Partner Program. We’re particularly excited about how they’re helping our merchants provide efficient & personalized customer support, and hope they can help more of them."
Jamie Sutton, Head of Technology Partnerships, Shopify Plus
No items found.
We're Integrating With LoyaltyLion

We're integrating with LoyaltyLion!

By
1 min read.
0 min read . By

Great news! Today, we're announcing a new integration with LoyaltyLion. LoyaltyLion is a digital loyalty framework that gives ecommerce stores innovative ways to engage and retain customers.

Our mutual customer Darn Good Yarn uses it to successfully increase customer retention. When they switched from Freshdesk to Gorgias to manage customer support, they wanted to leverage their loyalty program for customer support.

We used their feedback to build the integration with LoyaltyLion, which they have been using for a couple months in beta. Today, we're excited to make it available to all our users.

What is the LoyaltyLion integration?

Here are some of the benefits of this integration:

  • Display how many points a customer has when they contact your support team
  • When you respond to customer support requests, award loyalty points to customers directly in Gorgias
  • Include the customer's personal referral url in your responses. This way, if they are happy about your support, they'll refer their friends to your store.

alt

Overall, this allows your team to use your loyalty program for customer service.

"We love being able to issue our customers loyalty points directly from Gorgias! It's a great way to boost efficiency and also customer retention."

Chloe Kesler, Customer Support manager at Darn Good Yarn

How can I use the LoyaltyLion Integration?

The integration is immediately available on your Gorgias account. If you don't have an account, you can create one here. Then, follow the instructions in our documentation and you can get started!

No items found.
Customer Support To Increase Sales

How to leverage customer support to increase sales?

By
14 min read.
0 min read . By

Most customers are loyal to brands because they know what level of service they can expect. As a result, providing an above-average customer experience is key to increase repeat in sales.

It’s relatively easy to provide great support when you get started with your store: your team gets a few dozens of support requests a day, and they respond to them almost instantly. The thing is, this level of service is very hard to maintain as you scale. Response time usually drops, and most brands start using standardized macros to keep up with the pace, which is a poor customer experience.

Your sales have increased, good. Now, you need to get your customer support up to speed

alt


Source: Gorgias customers during the Thanksgiving peak

At Gorgias, we’ve been chatting with 400 stores over the past year, and we’ve seen a lot of them working on crossing this “chasm”.

This post shares learning on how you can build a customer support organization that will scale with your business, and provide best-in-class customer service, which will drive customer retention.

Step 1: Run an audit of your support organization

A good place to start is to list the most common reasons customers are contacting you about. Go ahead and manually classify 200 tickets from your support inbox. This should take you about an hour. You can build categories from scratch, or use this spreadsheet of the most common requests for e-commerce companies we built.


alt
Most frequent support requests in e-commerce. Source: Gorgias customers


Now, you should be able to understand what problems are causing the most pain to customers.

If a specific type of request is above 10% of requests, then it’s a good candidate for optimization. For instance, if you’re getting a lot of “where is my order” questions, here are a few things you can do to deflect those:

  • Add a tracking section for customers to track their package on your site. Aftership can help here.
  • Send updates to customers about issues with delivery, through SMS or email.

Now that you have a good understanding of the reasons customers are contacting you for, you can map the customer journey, and identify what actions your agents need to take to respond to tickets.

Later, you can use this for training purposes, and to identify optimization opportunities.

At Piper, we basically studied the whole customer journey and tried to identify all reasons why someone could contact us (based on previous history). This helped us quickly identify where customers were "blocked"

Finally, let’s analyze the efficiency of your team. Of course, every business is different, but you can use this table to figure out how efficient your agents are compared to other stores. A good metric to track it is ticket closed per month. Just make sure that satisfaction remains consistent.

alt

Related: Learn more about the impact of live chat on sales. And see how Gorgias live chat can help you turn more browsers into buyers with chat campaigns.

Step 2: Figure out how you can improve the customer experience

Now, let’s work on creating “wow moments” for your customers. If you manage to exceed customers expectations when they contact you, you’re most likely to increase their loyalty and have them refer your store to their friends.

Here are a few ways you can create “wow moments”.

Make it easy for customers to contact you

You should be where your customers are. For example, if you have a Facebook page with a large audience, consider it as a real customer support channel. The point is, you should provide the same level of assistance across all support channels that your customer will use.

Also, don't be afraid to contact customers first, especially when they have items in their shopping cart. Offering help or a discount code at the right time could make the difference between a sale and an abandoned cart.

Example: providing high quality support on Facebook
70% of customers consider Facebook as a live chat support. To maximize customer satisfaction, your response time should be no more than 1 min. You’ll then be listed as a very responsive page, which will encourage your customers to respond.

alt

You can also leverage public posts to build relationship with your customers. Another easy way to facilitate customer communication is to remove the need for customers to repeat themselves. On your support platform, make sure your merge Facebook conversations with email tickets. This way, if the customer switches channel, your team will have access to the context of what the customer said before.

Related: Check out our trends and best practices for customer support.

Personalize every interaction with customer support

You should leverage every data point you have about the customer to personalize the way you communicate with them:
For how long they have been a customer
Their order preference
Their location
The days of the “we value your business” are over.

Always go an extra mile for your customers. If the customer asks for the status of their order, don’t respond only with the tracking number. Go get the order status on UPS so the customer doesn’t have to do it themselves when they’ll receive your email in the subway with poor network connection.

alt

Another good thing to do is to use a specific tone with your customer, that matches the brand image you want to convey.

If you’re into gifs, you can use them to build a brand tone your own set of gifs, designed for your own brand, and use them in your support emails. You can hire an illustrator on Upwork for that, or build them yourself.

Related: Tips to respond to angry customer emails.

Step 3: Give your team the “ironman suit” for support

Now that you know the level of support you aim at giving your customers, and you know what actions your agents need to take to get the delivery info, create an RMAs, etc., you can start optimizing the process for them.

Display rich customer profiles for your agents

To personalize messages, your agents need to have access to customer data. You can leverage the standard Shopify integration from your help desk as a starting point.

Though, it can be relevant to connect other data points to your help desk:

  • Display fulfillment data. Shippo is great for that
  • Inventory data: Stitch, display inventory to the reps
  • NPS responses
  • Responses to last promotions

If you’re on Zendesk, enabling the Shopify integration is a good start: it shows how much the customer has spent, and the past orders.

Some Gorgias customers have pretty advanced widgets that display data from Shopify, Stitch & Shipstation. This way, all the customer information is available.

Empower your reps to perform actions from support conversations

You can create custom widgets for your help desk, so that your agents can trigger actions from your help desk. Here are the most helpful actions:

  • Create a coupon
  • Place a replacement order
  • Cancelling an order
  • Create an RMA

This is a bit more tricky to implement. You need to build a custom app with buttons that will trigger actions - there are some good tutorials for Zendesk, Freshdesk & Help Scout. At Gorgias, we’ve built integrations with Stitch, Shipstation to embed these actions in the product, and enable you to add your own.

Other 3rd party apps like Chargedesk enable you to refund customers in one click.

alt

Step 4: Track your progress

Our goal here is to improve the customer experience to drive sales. A good way to track the efficiency of your support work is to compare the behavior of customers that have been in contact with customer support from those who have not.

Shopify helps you easily to this. You can create an integration between your help desk and Shopify to tag customers who reach out to support, using the Shopify API. Say you add a “customer_support” tag to them.

alt

Then, you can use Shopify statistics to monitor how the cohort of customers who have been in touch with your support team behaves, and assess the impact of your efforts with customer support.

alt

Another way to proceed is to tag orders that generated a support tickets. This way, if you work on improving delivery notifications, you can monitor the impact.

Final thoughts

Building a scalable support team that provides an amazing customer experience takes time.

Try to test different “wow moments”, iterate on the way you personalize messages, on the tone you’re using, and always track your progress. Among the teams we surveyed, several mentioned they managed to increase sales repeat by 30% after implementing these tactics.

Want to learn more about how customer support can improve your conversion rate and lead to more purchases? Check out our guides to ecommerce upselling and Shopify abandoned cart recovery.

Celery Gorgias

Celery + Gorgias

By
1 min read.
0 min read . By

Celery just released their API on Github, currently in beta. Here are some of the cool stuff you can do with it in Gorgias.

Display customer information

When you receive an email from a customer, you can connect your Celery account and see customer information (orders, shipping address, etc.). Here’s what it looks like:


Customer info from Celery

To configure it, grab your Celery access_token, head to integrations, and add an HTTP integration using this URL:
https://api.trycelery.com/v2/orders?buyer.email={ticket.requester.email}

Then you can customize the sidebar to only show the Celery data you need to respond to customers. Click the cog and simply drag and drop elements you want to show.

Select the data you want to show about your customers

Refunds, order change... without leaving tickets

Celery’s API enables you to perform a few actions from your favorite helpdesk:

  • Edit an order
  • Cancel an order
  • Issue a refund
  • Create a coupon

Here’s an example of how you can cancel an order from Gorgias itself. Say you already have a macro to cancel an order. Add an HTTP action to it, in this case:
https://api.trycelery.com/v2/orders/{ticket.requester.customer.data[0].number}/order_cancel

Then, when you use this macro and send it to the customer, it will automatically cancel the last order at the same time:

Action in celery from Gorgias

We hope this integration with Celery can save you time. If you'd like to try Celery with Gorgias, shoot us a note! At support@gorgias.com.

PostgreSQL Backup

PostgreSQL backup with pghoard & kubernetes

By Alex Plugaru
2 min read.
0 min read . By Alex Plugaru

TLDR: https://github.com/xarg/pghoard-k8s

This is a small tutorial on how to do incremental backups using pghoard for your PostgreSQL (I assume you’re running everything in Kubernetes). This is intended to help people to get started faster and not waste time finding the right dependencies, etc..


pghoard is a PostgreSQL backup daemon that incrementally backups your files on a object storage (S3, Google Cloud Storage, etc..).
For this tutorial what we’re trying to achieve is to upload our PostgreSQL to S3.

First, let’s create our docker image (we’re using the alpine:3.4 image cause it’s small):


FROM alpine:3.4

ENV REPLICA_USER "replica"
ENV REPLICA_PASSWORD "replica"

RUN apk add --no-cache \
   bash \
   build-base \        
   python3 \
   python3-dev \
   ca-certificates \
   postgresql \
   postgresql-dev \
   libffi-dev \
   snappy-dev
RUN python3 -m ensurepip && \
   rm -r /usr/lib/python*/ensurepip && \
   pip3 install --upgrade pip setuptools && \
   rm -r /root/.cache && \
   pip3 install boto pghoard


COPY pghoard.json /pghoard.json.template
COPY pghoard.sh /

CMD /pghoard.sh

REPLICA_USER and REPLICA_PASSWORD env vars will be replaced later in your Kubernetes conf by whatever your config is in production, I use those values to test locally using docker-compose.

The config pghoard.json which tells where to get your data from and where to upload it and how:

{
   "backup_location": "/data",
   "backup_sites": {
       "default": {
           "active_backup_mode": "pg_receivexlog",
           "basebackup_count": 2,
           "basebackup_interval_hours": 24,
           "nodes": [
               {
                   "host": "YOUR-PG-HOST",
                   "port": 5432,
                   "user": "replica",
                   "password": "replica",
                   "application_name": "pghoard"
               }
           ],
           "object_storage": {
               "aws_access_key_id": "REPLACE",
               "aws_secret_access_key": "REPLACE",
               "bucket_name": "REPLACE",
               "region": "us-east-1",
               "storage_type": "s3"
           },
           "pg_bin_directory": "/usr/bin"
       }
   },
   "http_address": "127.0.0.1",
   "http_port": 16000,
   "log_level": "INFO",
   "syslog": false,
   "syslog_address": "/dev/log",
   "syslog_facility": "local2"
}

Obviously replace the values above with your own. And read pghoard docs for more config explanation.

Note: Make sure you have enough space in your /data; use a Google Persistent Volume if you DB is very big.

Launch script which does 2 things:

  1. Replaces our ENV variables with the right username and password for our replication (make sure you have enough connections for your replica user)
  2. Launches the pghoard daemon.

#!/usr/bin/env bash

set -e

if [ -n "$TESTING" ]; then
   echo "Not running backup when testing"
   exit 0
fi

cat /pghoard.json.template | sed "s/\"password\": \"replica\"/\"password\": \"${REPLICA_PASSWORD}\"/" | sed "s/\"user\": \"replica\"/\"password\": \"${REPLICA_USER}\"/" > /pghoard.json
pghoard --config /pghoard.json


Once you build and upload your image to gcr.io you’ll need a replication controller to start your pghoard daemon pod:

apiVersion: v1
kind: ReplicationController
metadata:
 name: pghoard
spec:
 replicas: 1
 selector:
   app: pghoard
 template:
   metadata:
     labels:
       app: pghoard
   spec:
       containers:
       - name: pghoard
         env:
           - name: REPLICA_USER
             value: "replicant"
           - name: REPLICA_PASSWORD
             value: "The tortoise lays on its back, its belly baking in the hot sun, beating its legs trying to turn itself over. But it can't. Not with out your help. But you're not helping."
         image: gcr.io/your-project/pghoard:latest

The reason I use a replication controller is because I want the pod to restart if it fails, if a simple pod is used it will stay dead and you’ll not have backups.

Future to do:

  • Monitoring (are you backups actually done? if not, do you receive a notification?)
  • Stats collection.
  • Encryption of backups locally and then uploaded to the cloud (this is supported by pghoard).

Hope it helps, stay safe and sleep well at night.

Again, repo with the above: https://github.com/xarg/pghoard-k8s

Building delightful customer interactions starts in your inbox

Registered! Get excited, some awesome content is on the way! 📨
Oops! Something went wrong while submitting the form.
A hand holds an envelope that has a webpage coming out of it next to stars and other webpages