Overview of Machine Learning for Business Leaders
Computers & Technology → Technology
- Author Chris Kambala
- Published July 31, 2019
- Word count 520
Introduction
Machine Learning has garnered a significant share of recent press coverage in both tech and main street media. It is inextricably intertwined with, and central to, discussion and dialogue on topics ranging from big data in general to Facebook’s threat to privacy, Boston Dynamics creepy robotics, and Google’s exploitation of artificial intelligence for good and ill. As such, it is easy to view machine learning as either sinister or magical — neither of which is true. For today’s business leader, an objective and actionable understanding of machine learning is as important as an actionable understanding of finance and financial management.
In this article, we provide an overview of machine learning for business leaders: what it is and how to think about its applicability to your business.
What machine learning is
Machine learning (ML) is a data-driven system development paradigm. ML systems leverage data models, data analysis and feedback to define and refine algorithms to improve model accuracy and system results.
ML systems work by analyzing data to detect patterns or by applying predefined rules to:
Categorize or catalog like objects
Predict likely outcomes or actions based on identified patterns
Identify unknown patterns and relationships
Detect anomalous or unexpected behaviors
Different algorithms learn in different ways. But in general, as new data are provided to the ML system the system "learns" and the algorithm’s performance improves over time.
Problems suited to machine learning
ML, like other software development paradigms, is not one-size-fits-all — some approaches are better suited to particular classes of problems and not suitable for others.
Machine learning is particularly suited to problems where:
Logical rules are unavailable or insufficient to describe the environment — but actionable rules can be intuited
Next actions are varied and the best action depends on conditions that cannot be identified in advance
Understanding why an outcome is suggested is not as important as the accuracy of the outcome
The data is problematic for traditional analytic methods
Now that you know what machine learning is and how to identify problems that lend themselves to ML solutions, let’s explore the steps to define and conduct an ML project.
How to plan and execute a machine learning project
Well executed ML systems follow these recommended steps:
Define Problem
Prepare Data
Evaluate Algorithms
Improve Results
Present Results
These steps, while seemingly generic and common to traditional software system development, require the perspective and attention gained from experience with ML system development.
The best way to approach machine learning system development is to work through an ML project end-to-end and cover the key steps with an experienced guide or team. Every step, from loading data, summarizing data, evaluating algorithms, making initial predictions, refining and presenting results is improved by experience — much like an ML system.
Accordingly, your first project should be viewed as a learning process to understand the mechanics of machine learning, calibrate your expectations and provide a perspective for setting expectations, interpreting and presenting results from dynamic, learning systems. After tackling your first project with the expert assistance you will be prepared to spot and sponsor the next, more consequential machine learning opportunity.
We provide a full range of custom software development services to assist Clients with solutions to their most important business and operational challenges. Our solution architects, developers, designers and engineers work with you to define, design and deliver exactly what your business needs.
Article source: https://articlebiz.comRate article
Article comments
There are no posted comments.
Related articles
- WhatsApp Business API: Revolutionizing Brand-Customer Communication
- GPT AI: Revolutionizing Business Content Creation
- Why should you hire a certified Odoo implementation partner
- Where Can I Get a Passport Photo?
- Top 10 Tips for Maximizing Order Fulfillment in Dynamics 365 Business Central
- Why We Need Unbiased News in Politics
- Tech Risk Management - Collaboration across 3 lines!
- Future-Proof Your Business with Cutting-Edge Blockchain Development Consulting
- Getting Through the Maze: Stockholm's Economics Dissertation Writing Services
- Unleash Epic Soundscapes: Portable Bluetooth Speaker 90W Review!
- Discover the Revolutionary Power of No-Code Technology!
- How Salesforce Community Cloud Can Transform Your Customer Experience – VALiNTRY360
- Cybersecurity in the Age of IoT: Protecting Connected Devices
- 80% of AI decision makers are worried about data privacy and security
- Top 10 Ways Production Scheduling in Business Central Transforms Manufacturing
- Analyzing Software Development Salaries Across the EU and Key Strategies for IT Companies to Attract Talent in 2024
- The Ever-Evolving World of Computer Technology: What You Need to Know
- How Collaborating with a Software Development Company Can Propel Your Business Forward
- How to Convert Files to PDF for Free: A Comprehensive Guide
- The Future of Immersive Technology: How Virtual Reality Headsets Are Transforming Entertainment and Education
- Sunseeker Hosts Lawn Banquet Showcasing Their Latest Innovation
- GoPDF An Online PDF Editor Releases Mobiles Apps Compatible with iOS & Android: A Faster Solution for PDF Editing
- The Best AI Logo Generators in 2024
- Why Contract to Hire Staffing Could Be the Perfect Solution for Your Business
- Adapting to Rising Parcel Rates in 2024 with Business Central and Order Ship Express
- Zoviz Launches New Solutions Day by Day to Users as An AI Logo Maker
- Generative AI across Sectors: How different industries are Leveraging Its Power
- Is Your Finance Strategy Ready for ERP Software?
- A Beginner's Guide to Starting a Career in Web3
- The Benefits of Cloud Computing: Selecting the Right Provider and Key Considerations for Migration