Three Reasons AI-Powered Platforms Fail
If you’ve found yourself thinking, “There’s an AI-powered solution for everything these days,” you’re not far off.
Today, more than 37% of organizations have implemented artificial intelligence (AI) in some form, and it is estimated that by 2021, 80% of emerging technologies will have AI foundations.
When successfully executed, AI is a powerful tool for businesses and consumers alike. It can help businesses scale faster by automating time-consuming processes, create deeper connections with customers through hyper-personalized interactions, make smarter business decisions with access to real-time data from across an organization, plus so much more.
But time and time again, we read about promising AI-powered startups coming up short, shutting down their businesses because they’ve failed to build meaningful AI solutions for the problems they hoped to solve.
After 10-plus years of leveraging AI, machine learning and natural language processing to build and grow successful AI-powered platforms, I’ve identified three key areas where most startups and businesses go wrong when building AI-powered platforms.
Automating The Wrong Functions
First and foremost, businesses must have a clear idea of exactly what they want to replace with machines. If you shoot for the moon before understanding gravity, you’re not going to get very far.
When it comes to building AI-powered platforms, you have to build up to solving the big-picture problem by first automating lots of small functions and tasks. Often, businesses automate the wrong things and end up creating technology that is unable to deliver on its promise.
Start by studying the industry to understand the most mundane, time-consuming, human-intensive or manual processes of a task or function; focus on areas like repetitive tasks, data entry, common requests, etc. This is where your automation work should begin.
It is paramount that the foundational elements of an AI-powered platform are consistently operating with 100% accuracy before moving on to building the next layer of automation.
Overlooking Critical Early Hires
It’s a given you need to hire strong data scientists and technologists experienced in AI, machine learning and natural language processing, and many businesses are following this protocol: Job postings for AI-related roles grew 14% year over year prior to the Covid-19 outbreak in early March 2020.
Where they often go wrong, however, is not prioritizing hiring experts in the field(s) they are automating to work alongside the technologists. To build a successful AI-powered platform, engineers must work closely with industry experts to incorporate human intelligence into their automation.
Successful automation of tasks requires a clear understanding of the nuances related to completing each task; applying this filter will make or break the effectiveness of an AI solution.
Prioritizing Growth Over Everything
Sure, hyper-growth is something every startup founder strives for and most investors encourage. But when you’re building an AI-powered platform, it’s crucial to strike a healthy balance between growing quickly and building tools strong enough to service that growth.
“Move fast and break things” isn’t an appropriate motto for AI-powered startups. If you grow too quickly, you’ll create an imbalance of resources and end up relying too much on human capital rather than machines. This is both unsustainable and disingenuous: Selling one thing and delivering another is never an acceptable business practice.
There are no shortcuts in building reliable, effective AI-powered platforms, and we’re only just beginning to realize the power of AI in business and our everyday lives. As more and more AI-powered platforms come to market employing best-in-class practices for building effective AI solutions, we’ll see significant enhancements in the way we do business, interact with brands and create efficiencies in every part of our lives.
This article originally appeared on forbes.com To read the full article and see the images, click here.
Nastel Technologies helps companies achieve flawless delivery of digital services powered by middleware. Nastel delivers Middleware Management, Monitoring, Tracking and Analytics to detect anomalies, accelerate decisions, and enable customers to constantly innovate. To answer business-centric questions and provide actionable guidance for decision-makers, Nastel’s Navigator X fuses:
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