aaaa12345
loading
It is a condensed emotional expression of the corporate policy

Machine Learning As a Competitive Advantage

Marimar Jimnez, a journalist with Spanish financial daily Cinco Das, sent me some questions for an article (SP) she published about the competitive advantages machine learning can give companies.Machine learning is, above all, a set of tools that allow a machine to iteratively learn from data and develop models that have not been specifically programmed by a person. Machine learnings capacity for disruption can provide a competitive advantage: the algorithms are adapted to the data and end up generating better predictions and results than those developed by people, so companies that use machine learning obtain greater efficiency, better performance, more agility and other previously impossible functions.

But as a tool, machine learning is not something that can simply be bought and installed, because it depends on the quality and accessibility of data, and therefore requires a data-centricity that for many companies is still not possible. In reality, a large part of what is called machine learning remains inflated expectations, unfulfilled promises and the unrealistic hopes of businesses that believe it will turn them into the company of the future. Developing the procedures that allow the collection and preparation of data is enormously complex.

Machine learning now faces an epidemic of misinformation. Only those companies able to orient themselves to the generation and processing of data will benefit from machine learning and turn them into real competitive advantages.Below my answers to Marimar Jimnez.

Q. Do you agree that data has become the main asset of companies? Why?

Why do General Electric or Siemens now define themselves as data companies?A. Data gives a competitive advantage in the machine learning environment.

Only companies able to obtain and maintain algorithms that are smarter and more powerful than their competitors will be here for the next decade, and the key to getting those algorithms is to have data to feed them. Its something weve been saying for a long time: if you do not direct your business to data, maximizing information intensity and working according to your level of permission, a competitor will appear that is able to do so and that provides its users with better products and services than you. Data becomes the fuel that drives your algorithm motor, but data alone is not enough: you have to know how to define objectives, prepare them, transform them, build models, evaluations, predictions guiding the company to data is just a first step, and those that follow are not as simple or trivial as many suggest.

Q. There is a lot of talk about big data, data analytics, machine learning, all as pieces of the same puzzle. Is the next big thing automatic learning?

How will it impact (or is it already impacting) on businesses? What can we expect from algorithms applied to business?A.

Machine learning has been the next big thing for a while now: this can be seen from the evolution of related tags on my website: I have been talking about this for some time, companies are engaged in it are undergoing major acquisitions, and network giants like Google, Amazon, Facebook, Apple or Microsoft are reorienting all their strategies around the issue. We have gone from seeing an algorithm as something with more computing power, more mathematical brute force than a person (Deep Blue beating Garry Kasparov) to seeing it as something capable of understanding human language better than many people (Watson winning at Jeopardy) and able to do things that no human has done thanks to deep learning (AlphaGo winning the world Go championships) or even to make better decisions than a human in situations of imperfect information (Libratus winning at poker).The point is not that a machine can now do what a person does, but that it can do it much better.

Companies that do not know how to take advantage of something like this will disappear.Q. UC Berkeley auto-learning expert Michael I.

Jordan, says more and more data increases the likelihood of making false connections. Is this a handicap for the advancement of data economy and how can it be avoided?A.

Under the right circumstances, everything correlates with everything. But this is the field in which machine learning stands out: many algorithms can be evaluated based on the results obtained and improvement processes applied to improve those results. Algorithms analyze data and extract rules to generate predictions, detect exceptions, isolate patterns as we feed algorithms with more data, they improve and can even come up with new hypothetical situations that have not happened previously, playing against themselves to improve the results obtained.

Data is obtained in scenarios of all kinds and are applied to the whole system: every time an autonomous vehicle drives by a certain place it contributes data that serves the whole fleet; algorithms are also able to learn from playing games like Grand Theft Auto to generate new situations that would not happen under normal conditions. The important thing is to understand the process: these are not rules or menus from programming to use: machine learning allows possibilities that surpass what we thought was a computer. Q.

What are the challenges facing corporations in this new economy, from a technological, cultural or other point of view?A. At this moment, the challenges are in guiding companies to generate data that can be analyzed.

If the only thing you generate when you sell a product is that, a sale, and you do not have more data on who bought it, their characteristics, or an evaluation of the product or its use, then the competition will put you out of business. But in addition to obtaining data (we all think we have data, but we dont), we must develop the capacities for its exploitation. In Amazon, human intuition is forbidden when making decisions: if you make a decision, show the data that justifies it.

Q. Are there companies born in the heat of big data and machine learning that would not exist were it not for these technologies? Give me an example.

What about a traditional company that is using data well?A. We are seeing acquisitions and movements: all the big players have carried out large acquisitions of machine learning companies, acquisitions that are a cross between acqui-hire (the acquisition to incorporate talent) and the direct application of capabilities to their processes.

All large companies are positioning themselves to incorporate these capabilities, these specialists, offering them environments in which they can develop. We are living through the beginnings of the biggest change that technology has caused, and the impact will be bigger than that of the internet itself.(En espaol, aqu)

GET IN TOUCH WITH Us
recommended articles
wen
I had a neighbor who had dentures since she was 18. Her own teeth were so crooked and her parents could not afford braces so she had them pulled. She loved her new '...
The suspect in the Pennsylvania police barrack ambush last week was added to the FBI's 10 most wanted list Friday as the search focuses in on the wooded area in the ...
The wiring diagram of single chip microcomputer 80C51 is shown in Figure 1. In Figure 1, position 4 shows the common anode for the tube. Use dynamic display and cycl...
Principle of three-stage dimming of the lamp_How to use TRIAC to dim the LED lamp and how to design the specific scheme? - Programmer SoughtAt present, non-energy-sa...
"To talk about smart grid, Jiangning District has gathered more than 300 enterprises, led by 12 listed enterprises such as NARI Group and Guodian Nanzi, covering the...
What is your policy on bath toys?We only have as many bath toys as can fit in one regular-sized mesh bag on the shower wall. I do not want them taking over the bathr...
Well graphic cards are not cheap, but you will always get ripped by people taking a look at your computer, there's no way around that unless you fix it yourself or h...
No it would not , as a pure black light bulb will not allow the light to come out, and it means it is same when it is on or off. So neither it makes the room lighter...
How to Repair Rain GuttersThis post may contain affiliate links. For more information see our disclosures here . Expert advice on downspout and gutter repairs. Stop ...
(source: Robert Institute of robotics, China)Yaskawa motoman-gp7 is a 6-axis vertical multi joint robot. Because of its combination with the small robot controller "...
no data
ADDRESS
Manhatthan
NY 1234 USA
master@weyes.cn
LINKS
Home
Services
Portfolio
Career
Contact us
PRODUCT
Chandelier
Wall Lamp
Table Lamp
Floor Lamp
Contact Us
+86 020-22139352
If you have a question, please contact at contact service@lifisher.com
Copyright © 2025 | Sitemap
Contact us
whatsapp
phone
email
Contact customer service
Contact us
whatsapp
phone
email
cancel
Customer service
detect