AI & ML


Three reasons why AI, ML add value for SMMEs only if the basics are in place

26 July 2023 AI & ML

There is much chatter around artificial intelligence (AI) and the subfield of machine learning (ML), which can be confusing for SMME owners who may believe that they need to climb on the bandwagon. That’s why it’s time for a reality check.

When SAP first introduced the concept of the intelligent enterprise, it was defined as: “An intelligent, sustainable enterprise is one that consistently applies advanced technologies and best practices within agile, integrated business processes.”

ERP systems play a crucial role in enabling the intelligent enterprise. An intelligent enterprise is one that leverages data, analytics, and digital technologies to optimise its operations, but does this mean that AI is needed in the business?

ERP systems are designed to help SMMEs manage their operations and processes more efficiently by integrating various departments, automating routine tasks, and providing real-time data insights. While AI and ML can enhance these capabilities by analysing large volumes of data and predicting outcomes, their implementation can also be complex and expensive.

Advanced technologies like AI, ML and the Internet of Things (IoT) are powerful tools that can be used to solve a wide range of problems. “But to effectively leverage these technologies, it is critical to first have a solid ERP foundation in place to integrate data, infrastructure, and business processes. Without the basics in place, any business challenges that the organisation is trying to address will not be resolved.

Before SMMEs think of looking at AI, they need to build the basics, which include centralised data, automated tasks, technology integration and real-time insights that enable SMMEs to grow and be profitable. Here are three reasons why advanced technologies are useful and appropriate only when the basics are in place:

1. Quality data is essential.

AI and ML algorithms rely on large amounts of high-quality data to learn and make accurate predictions. If the data is incomplete, inconsistent, or inaccurate, the results of the AI or ML model will be similarly flawed. That’s why it’s crucial to have a robust data collection, management, and quality assurance process in place to ensure that the data is clean, reliable, and suitable for use in machine learning.

2. Infrastructure and computational resources.

AI and ML require a significant amount of computational power and infrastructure to run efficiently. Without proper infrastructure, including hardware and software, the algorithms will not be able to run quickly or accurately. Moreover, this can result in increased operational costs and decreased accuracy in decision making.

3. Business processes.

Sophisticated technologies must be integrated into existing business processes to be truly effective. Organisations must have a clear understanding of their business goals, the problems they are trying to solve, and the metrics they use to measure success. Without these foundational elements in place, AI and ML may be unable to provide meaningful insights or actionable recommendations.

AI and ML are terms that refer to the use of technology to model human intelligence. They are the current buzzwords, just as the cloud once was. That’s not to suggest that they are not powerful technologies, but simply to underline that they will not solve business issues if they are not deployed on top of an existing infrastructure that works. Much like ChatGPT, they will not provide all the answers people are looking for if they are not applied correctly, on top of operations that are running optimally, and in harmony with a well-designed ERP system.

There’s no doubt that businesses across all sectors will continue to embrace AI and ML technology over the coming years, transforming their core processes and business models to take advantage of machine learning for enhanced operations and greater cost efficiencies.

To make the best use of this technology, we suggest beginning by spending time on developing a use case that defines and articulates the problems or challenges that the business would like AI to solve, and then to ensure the processes and systems already in place are capable of capturing and tracking the data needed to derive real value from the technology.

Without ensuring this, the organisation will gain bragging rights with no value add. If the company does not have the processes and systems to drive efficiencies it will be unable to leverage the promise of the technology to grow the business and that means the project has failed.




Share this article:
Share via emailShare via LinkedInPrint this page

Further reading:

Analogue reservoir AI chip capable of real-time learning
Altron Arrow AI & ML
TDK Corporation has jointly developed a prototype of a reservoir AI chip using an analogue electronic circuit that mimics the cerebellum with Hokkaido University.

Read more...
Compact edge platform for AI
iCorp Technologies AI & ML
Built around the Qualcomm QCS6490 octa-core SoC, Quectel’s QuecPi Alpha delivers up to 12 TOPS of on-device AI performance.

Read more...
Axon NPU powers smarter edge
RF Design AI & ML
The nRF54LM20B from Nordic Semiconductor is an ultra-low-power wireless SoC that combines advanced edge AI capabilities with robust radio connectivity and rich peripheral support.

Read more...
FPGA platform designed for the edge
AI & ML
Sundance Multiprocessor Technology has introduced the SMT135-C, an Efinix Titanium Ti135 evaluation platform designed for edge computing, real-time control, and vision-centric workloads.

Read more...
AI-controlled swarms: Algorithmic warfare
Technews Publishing AI & ML
The rapid proliferation of Unmanned Aerial Systems (UAS), ranging from hobbyist quadcopters to sophisticated munitions-carrying military drones, has fundamentally altered the security landscape and come to the fore with the current war in the Middle East.

Read more...
Rugged AI PC for industry
Vepac Electronics AI & ML
Designed to operate where conventional systems fall short, the TB-7145-MVS compact industrial PC supports advanced machine inferencing, real-time data handling, and high-performance graphics workloads without compromise.

Read more...
South Africa’s first operational AI Factory
AI & ML
Altron launches South Africa’s first operational AI Factory delivering enterprise grade AI Infrastructure, platform and services.

Read more...
Industrial Copilot
Siemens South Africa AI & ML
With Siemens’ vision of Industrial Copilots along the entire value chain, the company wants to unlock this potential to improve human-machine collaboration and accelerate development and innovation cycles.

Read more...
NXP has expanded its MCX A Series
Altron Arrow AI & ML
NXP has significantly expanded its MCX A Series of Arm Cortex-M33 microcontrollers, doubling the portfolio with six new families aimed at industrial and IoT edge applications.

Read more...
AI-ready embedded SBC
AI & ML
The new Grinn GenioBoard SBC provides a production-ready implementation of a powerful eight-core MediaTek processor, backed by high-speed interfaces, a Linux distro, and CRA-ready security software.

Read more...









While every effort has been made to ensure the accuracy of the information contained herein, the publisher and its agents cannot be held responsible for any errors contained, or any loss incurred as a result. Articles published do not necessarily reflect the views of the publishers. The editor reserves the right to alter or cut copy. Articles submitted are deemed to have been cleared for publication. Advertisements and company contact details are published as provided by the advertiser. Technews Publishing (Pty) Ltd cannot be held responsible for the accuracy or veracity of supplied material.




© Technews Publishing (Pty) Ltd | All Rights Reserved