The 10 Best Examples Of Low-Code And No-Code AI
The 10 Best Examples Of Low-Code And No-Code AI

The 10 Best Examples Of Low-Code And No-Code AI

Thank you for reading my latest article?The 10 Best Examples Of Low-Code And No-Code AI.?Here at?LinkedIn?and at?Forbes?I regularly write about management and technology trends.

To read my future articles simply join my network here or click 'Follow'. Also feel free to connect with me via?Twitter,??Facebook,?Instagram,?Slideshare?or?YouTube.

---------------------------------------------------------------------------------------------------------------

Artificial intelligence (AI) can transform just about any business – from providing customers with products and services they really want to streamlining internal processes.

The barriers to entry can seem intimidating, however, from investment in infrastructure to training and recruiting the skilled workforce needed to put everything together.

This is why the emergence of a new generation of no-code/low-code AI tools and platforms is so exciting. Today, if you know where to look, then just about anyone can dive in and start creating applications that leverage machine learning in innovative ways. From designing web services and customer-facing apps to coordinating sales and marketing campaigns, it’s easier than ever to get started with AI.

What is low-code/ no-code AI?

These terms are simply used to refer to tools that allow anyone to create AI applications without having to get their hands dirty writing technical code. AI can be useful to anyone in just about any job – from doctors and lawyers to marketers, teachers, and project managers. Many of these people will not have the technical skills needed to write code or the spare time to learn them.

No-code/ low-code solutions typically operate in one of two ways: Either via a drag-and-drop interface, where users simply choose the elements they want to include in their application and put them together using a visual interface, or through a wizard, where users answer questions and select options from drop-down menus.

If you already know how to code, it’s often possible to tweak and fine-tune the results in order to create applications that operate in a more specific way. So some basic knowledge of the structure and syntax of computer code is always helpful!

Here’s an overview of some of the tools on the market which aim to open up the AI revolution to everybody. Some of these are designed for people with no experience whatsoever, while some are most useful for people who already have a background in ML but want to reduce the tedious and routine element involved with preparing data and designing algorithms.

Amazon SageMaker

Amazon has extensive experience building and deploying ML models into consumer-facing use cases, and SageMaker aims to let anyone take advantage of that expertise. It’s easy to leap straight in using SageMaker Jumpstart, which gives users a selection of templates for the most popular types of ML apps that businesses are likely to benefit from.

Akkio

This service promises to let you start deploying AI in 10 minutes without any coding or data science skills. It enables the creation of AI-powered workflows with a focus on enabling them to be quickly deployed and assessed. It also boasts a strong suite of integrations, including industry-standard data platforms like Snowflake and marketing tools like Hubspot and Salesforce.

Apple CreateML

Apple's solution offers simple drag-and-drop functionality that makes it simple to create iOS applications involving recommendation, classification, image recognition, and text processing. Data can be collected using your iPhone camera and microphone, and if you have a Mac computer with a GPU, you can use its power to speed up and enhance the training process.

DataRobot

This is another cloud-based platform that offers tools to automate data prep as well as building and deploying algorithms, with dedicated models for industrial use cases ranging from banking and retail to healthcare, manufacturing, and public sector bodies. One interesting feature is its focus on explainable AI, which aims to inspire trust in the insights and decisions it produces by making its methods understandable to humans.

Google AutoML

Ok, so Google’s first no-code AI solution isn't for complete beginners, as some understanding of ML is recommended. But users can get started with a simple graphical interface and jump straight into experimenting with its computer vision and natural language processing capabilities. Everything runs in Google Cloud, so it will be familiar to anyone who has used other Google productivity tools.

Google Teachable Machine

Teachable Machine is possibly even more beginner-friendly than AutoML, with simple, straightforward tutorials that can guide you through the process of training algorithms to classify and categorize data – one of the most elementary use cases for ML and AI. Perhaps most useful as a teaching aid for getting to grips with the basics before jumping into one of the other platforms more aimed at creating operational applications.

Microsoft Lobe

A simple tool for training image recognition algorithms. Microsoft developed Lobe to enable users to get to grips with the basics, with a platform that automatically selects the models that are most likely to be successful depending on the user’s workload. No coding experience is required, and if users outgrow it, they can move on to Azure AI, Microsoft’s more advanced ML framework.

Nanonets

This is an AI platform specifically designed to automate and speed up the process of extracting structured or semi-structured data from documents. If your business spends time and money on costly and time-consuming processes involving importing data from forms, text documents and suchlike, this could be exactly what you are looking for. Thanks to its implementation of ML, it learns from its mistakes to become increasingly accurate at finding the information you need.??

ObviouslyAI

Another platform that aims to let anyone simply plug in their data – in whatever format they happen to have it – and immediately start to reap the benefits of AI-powered analytics. It offers templates for time series analysis (predicting the value of variables at a given time based on known past performance), predicting churn, risk scoring, fraud detection, and identifying cross-selling opportunities.?

PyCaret

This is a library for the programming language Python and, as such, requires a little more technical knowledge than some of the other tools listed here. It still classifies itself as low-code, though, as it provides a number of pre-configured functions and wrappers that vastly simplify the task of data preparation, analytics, and model training.

To stay on top of the latest on AI and other new and emerging business and tech trends, make sure to subscribe to?my newsletter, follow me on?Twitter,?LinkedIn, and?YouTube, and check out my books ‘Data Strategy: How To Profit From A World Of Big Data, Analytics And Artificial Intelligence’ and ‘Business Trends in Practice, which just won the 2022 Business Book of the Year award.

---------------------------------------------------------------------------------------------------------------

About Bernard Marr

Bernard Marr is a world-renowned futurist, influencer and thought leader in the field of business and technology. He is the author of?21 best-selling books?(and winner of the?2022 Business Book of the Year?award), writes a regular column for Forbes and advises and coaches many of the world’s best-known organisations. He has over 2 million social media followers, over 1.2 million newsletter subscribers and was ranked by LinkedIn as one of the top 5 business influencers in the world and the No 1 influencer in the UK.

No alt text provided for this image
Rezaul Karim

Deputy General Manager

1 年

Bernard Marr thank you very much for sharing, such wonderful topic. We are awaiting to know/use, the next level of AI and ChatGPT. Only the future can say, how to move or when to move throught using AI. Lets wait to know the power AI and ChatGPT, because its already started. Thank you once again for the topics.

回复
Luiz Gustavo Bemfica

Sales Manager @ ioasys ? part of Alpargatas

1 年
Jack Huang

5C~15C Superior Fast Charge+50C~220C Discharge NMC/NCM/LFP/LiFePo4/LTO/SIB Battery In EV Or Energy Storage System, Isolated Bidrection ACDC/DCDC Power, Microinverters,Inverter,Panel,Powerwall Mounted,UPS,15KW PDU Hub

1 年

thanks for your information and invitation

回复

Thank you, Bernard Marr, for including us on the list?? Here at Akkio we are committed to building a future where AI works for everyone - this is just the beginning.

Alastair McKechnie FInstRE

NATO Allied Land Command, Izmir

1 年

I did a Msater in Knowledge Engineering in 1994, I had an old 286 computer with a floppy disk. For my dissertation I wrote a neural network that learned to recognise mass spectrometry images, for a limited domain- proof o concept. It took 24 hours per learning cycle, and about three months to complete. That was breaking ground in those days, now achieved in half a heart beat with modern apps….. and we are only just beginning to see it’s power. Fascinating stuff

要查看或添加评论,请登录

社区洞察

其他会员也浏览了