UI development

How AI Chatbots Have Recovered in eCommerce

9 months ago marked one of the biggest transitions in the way humans communicate that will become an irreversible change shortly in every industry. E-commerce is no exception, and the implications of Chat GPT and tools alike pose massive advantages for businesses that can leverage AI effectively.

Like anything new, there has to be the trial and error stage where businesses figure out how the tool fits into their processes. The first issue that immediately stands out with Chatbots is the generic and repetitive responses. If your site implements a Chatbot to manage customer support, how are you going to want the experience to be? For most business owners, the answer is a simple “Unlike anything they’ve ever seen before” which is great but we should also add “And can’t get anywhere else”.

What Happened With Chatbots in eCommerce at The Start (The Epic Fail)

In the early days of eCommerce Chatbots, rather than expediting processes, they ended up causing delays. Chatbots would struggle to locate information, resulting in sluggish responses that left customers feeling more frustrated than if they had waited for a human representative to assist them.

Even when Chatbots managed to provide fast responses, they frequently failed to address the specific questions customers posed. For instance, if a customer inquired about the precise location of their package, the chatbot might respond with a generic message like "Your package is in transit".

In their initial stages, Chatbots were limited in their ability to handle anything beyond basic requests. While they could handle queries like "How do I start a return?" they were incapable of handling more complex requests like "I'd like to check the status of an ongoing return."

The biggest downfall of these early-day Chatbots was their struggles to retain previously gathered information. If a customer was transferred to a human representative, that representative often had none of the information the chatbot had already collected.

Even today, Chatbots are not universally trusted. Under the Bot Disclosure Act implemented in California in July 2019, retailers are required to inform consumers when Chatbots are in use, with non-compliance resulting in fines of up to $2,500 per violation. 

What’s Changed?

We can’t come off talking about this Chatbot dystopia without telling you about the strides the technology has made in recent years. So with that said, here’s a look at what’s been going on: 

From a technological perspective, this is what’s gotten better: 

  1. Natural Language Processing (NLP): NLP lets Chatbots understand and interpret human language, which makes interactions feel more natural and meaningful.

  2. Machine Learning (ML): ML algorithms let Chatbots remember and learn from past interactions, which over time makes them more efficient. This is essential for personalization and handling any issues brought to light by customers.

  3. Chatbot Architectures: The design and development of Chatbots have evolved to include components like user interfaces, NLP engines, and ML algorithms, which make the Chatbots more powerful and enhance their responsiveness.

  4. Rule-Based vs. AI-Based Chatbots: Rule-based Chatbots use predefined rules to respond to queries, and AI-based Chatbots leverage NLP and ML to understand and respond to user queries. Match those up against each other, and AI Chatbots are the clear winner. 

  5. Best Practices: Developers now follow best practices in chatbot design, focusing on clear purposes, and the user experience, and prioritizing ongoing testing and refinement.

With this part covered, let’s shift to what these technological advancements have translated into:

  1. Human-Like Chatbots: Chatbots have become more human-like, thanks to the advancements in Natural Language Processing and machine learning algorithms. This makes interactions with Chatbots more relatable and user-friendly. Recall that in the past, Chatbots often provided generic and robotic responses.

  2. Deep Customer Insights: Modern Chatbots are designed to use deep customer insights to inform their responses. This is a fancy way of saying; they can analyze user data and give those personalized/relevant responses that companies want their users to have.

  3. Voice Bots: Voice bots (Siri, Alexa, etc.) have obviously become a massive deal since they also give a more natural and intuitive interface for users. Think about booking appointments, ordering food, or making reservations using voice commands. This was a massive improvement over text-only Chatbots.

  4. Improved Customer Satisfaction: Chatbots are now designed to create a sense of connection between the customer and the company instead of simply being a means to automate support services. They provide quick, personalized experiences that improve customer satisfaction and loyalty. In the past, as we know, Chatbots often left customers feeling disconnected and dissatisfied.

What a Successful Chatbot Implementation Looks Like

A few good examples of companies leveraging Chatbots effectively include Rawbank, Starbucks, and Lyft. To break down what each of these companies is doing as straightforwardly as possible, we’ll say that effective Chatbots can be recognized under three pillars:

  1. How it understands language

  2. How it personalizes the experience

  3. How it continues to get better

With Rawbank for example, it has over 50 different use cases which is what makes it so well regarded. With this amount of ground covered, it’d mean that there isn’t a whole lot users could throw at the system that it wouldn’t be able to handle. This brings me to the next point; how it personalizes.

We’ll use Starbucks for this one just because it’s super simple. The chatbot can access a customer's order history, it lets them customize things, it gives recommendations, and it’s a barista in your pocket. This is a system that’s going to set the standard for any local coffee shops now and guess what? The companies who leverage it better than others, will get more customers and retain them longer. 

Lastly, Lyft. They recognize that their market is heavily controlled by Uber - which puts a lot of pressure on them when it comes to the customer experience. At first glance, you can see that the Chatbot interface for Lyft closely resembles an iMessage chat which is certainly user-friendly, but how does it stand out? Well, Lyft beat Uber to market. Which has given them time to get some mileage on their Chatbot and optimize the user experience. 

The Takeaway

It’s no surprise that a lot of people’s knowledge and understanding of AI stops at Chat GPT. These Chatbot interfaces are setting a new standard for how people find and interact with information, which is now pouring over into the business world. Want to get behind the shift? Find out if your business is ready for AI today.

Written By Ben Brown

ISU Corp is an award-winning software development company, with over 17 years of experience in multiple industries, providing cost-effective custom software development, technology management, and IT outsourcing.

Our unique owners’ mindset reduces development costs and fast-tracks timelines. We help craft the specifications of your project based on your company's needs, to produce the best ROI. Find out why startups, all the way to Fortune 500 companies like General Electric, Heinz, and many others have trusted us with their projects. Contact us here.

 
 

What You Need to Know About Machine Learning's Impact on Back-End and UI Development

In the rapidly evolving world of web development, certain advancements are reshaping how applications are built and experienced. Among some of the top developments is the integration of machine learning into back-end and UI development. Many factors contribute to this shift, but the most significant lie in the demand for automation, personalization, and interactivity between the platform and users. 

These days when someone visits a website they’re looking for quick access to something. When you load up Google or Chat GPT, there’s a search bar waiting for you. It’s no surprise that their infrastructures are powered by machine learning, and it should serve as a benchmark for the transformative impact of machine learning on web development. With that said, let’s look at it in action:

Machine Learning in the Insurance Industry

After looking at a report from McKinsey, it’s clear that the insurance industry will be one of the sectors greatly impacted by machine learning in web development. Instead of the traditional approach of "detect and repair," machine learning enables insurers to shift towards a "predict and prevent" model. This transformation impacts various aspects of the industry, but especially back-end and UI development. 

For example, McKinsey outlined that wearable data can be directly integrated with insurance carriers, or connected-home and auto data can be made available through platforms like Amazon, Apple, and Google. What that’s going to do for back-end development is driving the demand for well-rounded data processing and storage systems that are capable of handling real-time data at scale from devices.

On the front of UI development, machine learning is going to need to focus on creating interfaces that are not only visually pleasing but also highly intuitive. For instance, the interface can use interactions from the user to learn and adapt over time which will help with features such as personalizing content recommendations, creating a dynamic user interface, predictive user flow, and that’s just scratching the surface.

“How does this benefit a company's longevity?”

Over the past 3 years, fraud rates have gone up by 70%, risk management is a top priority for companies of all sizes, and website personalization (even for anonymous visitors) is a major draw for consumers.

Machine learning remediates the issues associated with all of this in a few ways. First of all, its ability to analyze data in real-time at scale is something that’s going to detect and prevent fraud like nothing else could. This goes back to the “predict and prevent” model, fraud prevention is all about detecting patterns and anomalies which can save companies from massive attacks.

When it comes to risk management, this is where data-driven machine learning models shine. They take into account multiple data sources and provide risk assessments that are much more efficient than manual analysis and historical data.

Lastly, the personalization aspect comes to life by analyzing user behavior and preferences which the machine learning models can then use to deliver highly tailored content.

When it comes to scalability and adaptability, machine learning is one of those things that truly excels. As data volumes and business complexities grow, the need for systems that can manage and process information at 10x the speed a team of people can becomes critical. 

Best Tools Use

What good would this information be without having actionables to implement it effectively? When it comes to leveraging machine learning in web development, having the right tools is crucial. Here are some of the best ones to use:

Gradio

This is a Python library that simplifies building user interfaces for machine learning models. It streamlines UI development and offers an easy-to-use interface for model visualization.

TensorFlow.js

TensorFlow.js is a library best for developing and training ML models in JavaScript. It can be used for both back-end and front-end development and can run in the browser or on Node.js.

TensorFlow

TensorFlow is also very popular for machine learning since it provides a JavaScript library that makes models more efficient. It can help when training and building your models, and you can even run your existing models with the help of the model converter in TensorFlow.js.

Scikit-learn

Scikit-learn is a great machine-learning library that’s used for machine-learning development in Python. Its tools are simple and efficient for data mining and data analysis.

Cortex

Cortex is an open-source platform used for deploying, managing, and scaling machine learning models. It’s going to let you deploy all types of models and is built on top of Kubernetes to support large-scale machine-learning workloads.

MLRun

This is a tool for model development and deployment. It runs in a variety of environments and supports tons of different programming languages such as Python, R, Java, and Go. It can help automate the entire machine learning workflow, with everything from data preparation to model deployment.

Keras

Keras is a high-level neural network API, written in Python and able to run on top of TensorFlow, CNTK, or Theano. It’s meant to enable fast experimentation with deep neural networks and can be used for both research and production.

PyTorch

PyTorch is an open-source machine learning library used for developing and training neural network-based deep learning models. It’s actually primarily been developed by Facebook's AI research group and can be used with Python as well as C++.

Hugging Face

Hugging Face is another open-source library, it provides models for natural language processing (NLP). It can be used for tasks such as text classification, answering questions, and even language translation.

OpenCV

OpenCV is an open-source computer vision library that can be used for image and video processing. It’s got tools for object detection, face recognition, and various other computer vision tasks.

The Takeaway

Machine learning is going to be the greatest driving force behind the future of technology and innovation. We can give you the tools, but without a proper strategy, you’re a gardener in a war. We want you to be the warriors in a garden of possibilities which is why ISU Corp is offering AI consulting services. With our expertise and experience in the realm of AI and machine learning, we can work closely with your organization to craft a tailored AI strategy that aligns with your objectives and needs to excel in your industry.

Written By Ben Brown

ISU Corp is an award-winning software development company, with over 17 years of experience in multiple industries, providing cost-effective custom software development, technology management, and IT outsourcing.

Our unique owners’ mindset reduces development costs and fast-tracks timelines. We help craft the specifications of your project based on your company's needs, to produce the best ROI. Find out why startups, all the way to Fortune 500 companies like General Electric, Heinz, and many others have trusted us with their projects. Contact us here.