Virtually no industry is immune to global disruption, as we all discovered during the pandemic. The question is: How can businesses today navigate these uncharted waters and find new pathways to profitability amid a sea of uncertainty?
Many companies utilize AI tools such as machine learning and heuristics to help them manage their operations and make data-driven plans, predictions and decisions. But the problem is that many of these tools depend on historical data, and given the unprecedented nature of today’s economic challenges, past performance is not a reliable indicator of future business outcomes.
To deal with today’s disruption and chart a course to profitability amid such immense uncertainty, companies must have AI tools that take into account their current business situations, challenges and constraints — and mathematical optimization is such a technology.
With mathematical optimization, you can:
By relying on models of your real-world business environment and running on the latest available data, mathematical optimization technologies help you explore and understand your business situation today, so you can react effectively to changing conditions and disruptions.
A mathematical optimization model is like a digital twin of your real-world business situation; it mirrors your actual business landscape and encapsulates your unique business processes and problems in a software environment.
Technically speaking, a mathematical optimization model is a mathematical representation of your real-world business problem that is made up of three key features:
To give you an example that was widespread during the Covid-19 pandemic, a hospital network whose business problem is equipment and facility capacity planning could create a model that captures that business problem’s:
This hospital network’s model would probably have millions or more decision variables and constraints, and these inputs could be adjusted at any time to accommodate changing conditions in the operating environment and shifts in supply and demand dynamics.
There are countless other challenging and critical business problems today, from food production to shipment routing to electric power generation and transmission to classroom seating assignments (while respecting social distancing), that can be captured in mathematical optimization models.
A mathematical optimization model is a dynamic digital representation of your current business situation, encompassing all the complexity and volatility that you are facing today.
The act of defining your business problem as a mathematical optimization model can enable you to attain a greater awareness of your business conditions and challenges, but how can that model actually be used to help you deal with disruption? To do this, you need to feed your model up-to-date data and integrate it with a mathematical optimization solver that:
With up-to-date data and a solver, a mathematical optimization model becomes much more than merely a representation of your business problem; it becomes an integral part of the solution to that problem.
Combining these three elements (your model, your data and a solver) in a mathematical optimization application gives you the power to:
By fusing your model with a mathematical optimization solver and fueling it with up-to-date data, you get visibility and control over your operational network. No matter how profoundly the business world changes, your mathematical optimization application has the flexibility and robustness to consistently deliver optimal solutions.
The unprecedented economic disruption triggered by Covid-19 set off a seismic shift in our business dynamics and data. Companies must continue to leverage AI tools to enable data-driven decision making, but they cannot solely rely on those tools (like machine learning) that use data from the past to make predictions about the future.
The most valuable AI tools for companies today are those — like mathematical optimization — that run on up-to-date data, encompass the present-day reality, and empower decision-makers to respond to disruption in the most efficient and effective manner possible.
To get started, imagine what it would mean to your organization to be able to model and understand your business situation today. Then, identify which business problems you have that could be addressed with mathematical optimization. From there, you can start to figure out how your organization can use mathematical optimization to deal with disruption and drive improved decision-making and business outcomes.
This article was originally published on Forbes.com here.
Chief Scientist and Chairman of the Board
Chief Scientist and Chairman of the Board
Dr. Rothberg has served in senior leadership positions in optimization software companies for more than twenty years. Prior to his role as Gurobi Chief Scientist and Chairman of the Board, Dr. Rothberg held the Gurobi CEO position from 2015 - 2022 and the COO position from the co-founding of Gurobi in 2008 to 2015. Prior to co-founding Gurobi, he led the ILOG CPLEX team. Dr. Edward Rothberg has a BS in Mathematical and Computational Science from Stanford University, and an MS and PhD in Computer Science, also from Stanford University. Dr. Rothberg has published numerous papers in the fields of linear algebra, parallel computing, and mathematical programming. He is one of the world's leading experts in sparse Cholesky factorization and computational linear, integer, and quadratic programming. He is particularly well known for his work in parallel sparse matrix factorization, and in heuristics for mixed integer programming.
Dr. Rothberg has served in senior leadership positions in optimization software companies for more than twenty years. Prior to his role as Gurobi Chief Scientist and Chairman of the Board, Dr. Rothberg held the Gurobi CEO position from 2015 - 2022 and the COO position from the co-founding of Gurobi in 2008 to 2015. Prior to co-founding Gurobi, he led the ILOG CPLEX team. Dr. Edward Rothberg has a BS in Mathematical and Computational Science from Stanford University, and an MS and PhD in Computer Science, also from Stanford University. Dr. Rothberg has published numerous papers in the fields of linear algebra, parallel computing, and mathematical programming. He is one of the world's leading experts in sparse Cholesky factorization and computational linear, integer, and quadratic programming. He is particularly well known for his work in parallel sparse matrix factorization, and in heuristics for mixed integer programming.
GUROBI NEWSLETTER
Latest news and releases
Choose the evaluation license that fits you best, and start working with our Expert Team for technical guidance and support.
Request free trial hours, so you can see how quickly and easily a model can be solved on the cloud.
Cookie | Duration | Description |
---|---|---|
_biz_flagsA | 1 year | A Cloudflare cookie set to record users’ settings as well as for authentication and analytics. |
_biz_pendingA | 1 year | A Cloudflare cookie set to record users’ settings as well as for authentication and analytics. |
_biz_sid | 30 minutes | This cookie is set by Bizible, to store the user's session id. |
ARRAffinity | session | ARRAffinity cookie is set by Azure app service, and allows the service to choose the right instance established by a user to deliver subsequent requests made by that user. |
ARRAffinitySameSite | session | This cookie is set by Windows Azure cloud, and is used for load balancing to make sure the visitor page requests are routed to the same server in any browsing session. |
BIGipServersj02web-nginx-app_https | session | NGINX cookie |
cookielawinfo-checkbox-advertisement | 1 year | Set by the GDPR Cookie Consent plugin, this cookie is used to record the user consent for the cookies in the "Advertisement" category . |
cookielawinfo-checkbox-analytics | 11 months | This cookie is set by GDPR Cookie Consent plugin. The cookie is used to store the user consent for the cookies in the category "Analytics". |
cookielawinfo-checkbox-functional | 11 months | The cookie is set by GDPR cookie consent to record the user consent for the cookies in the category "Functional". |
cookielawinfo-checkbox-necessary | 11 months | This cookie is set by GDPR Cookie Consent plugin. The cookies is used to store the user consent for the cookies in the category "Necessary". |
cookielawinfo-checkbox-others | 11 months | This cookie is set by GDPR Cookie Consent plugin. The cookie is used to store the user consent for the cookies in the category "Other. |
cookielawinfo-checkbox-performance | 11 months | This cookie is set by GDPR Cookie Consent plugin. The cookie is used to store the user consent for the cookies in the category "Performance". |
CookieLawInfoConsent | 1 year | Records the default button state of the corresponding category & the status of CCPA. It works only in coordination with the primary cookie. |
elementor | never | This cookie is used by the website's WordPress theme. It allows the website owner to implement or change the website's content in real-time. |
JSESSIONID | session | New Relic uses this cookie to store a session identifier so that New Relic can monitor session counts for an application. |
viewed_cookie_policy | 11 months | The cookie is set by the GDPR Cookie Consent plugin and is used to store whether or not user has consented to the use of cookies. It does not store any personal data. |
Cookie | Duration | Description |
---|---|---|
__cf_bm | 30 minutes | This cookie, set by Cloudflare, is used to support Cloudflare Bot Management. |
_biz_nA | 1 year | Bizible sets this cookie to remember users’ settings as well as for authentication and analytics. |
_biz_uid | 1 year | This cookie is set by Bizible, to store user id on the current domain. |
_hjAbsoluteSessionInProgress | 30 minutes | Hotjar sets this cookie to detect a user's first pageview session, which is a True/False flag set by the cookie. |
_mkto_trk | 2 years | This cookie is set by Marketo. This allows a website to track visitor behavior on the sites on which the cookie is installed and to link a visitor to the recipient of an email marketing campaign, to measure campaign effectiveness. Tracking is performed anonymously until a user self-identifies by submitting a form. |
bcookie | 1 year | LinkedIn sets this cookie from LinkedIn share buttons and ad tags to recognize browser ID. |
bscookie | 1 year | LinkedIn sets this cookie to store performed actions on the website. |
doc_langsBB | 1 year | Documentation system cookie |
doc_version | 1 year | Documentation system cookie |
lang | session | LinkedIn sets this cookie to remember a user's language setting. |
lidc | 1 day | LinkedIn sets the lidc cookie to facilitate data center selection. |
UserMatchHistory | 1 month | LinkedIn sets this cookie for LinkedIn Ads ID syncing. |
whova_client_id | 10 years | Event agenda system cookie |
Cookie | Duration | Description |
---|---|---|
_gat_UA-5909815-1 | 1 minute | A variation of the _gat cookie set by Google Analytics and Google Tag Manager to allow website owners to track visitor behaviour and measure site performance. The pattern element in the name contains the unique identity number of the account or website it relates to. |
Cookie | Duration | Description |
---|---|---|
_an_uid | 7 days | 6Sense Cookie |
_BUID | 1 year | This cookie, set by Bizible, is a universal user id to identify the same user across multiple clients’ domains. |
_ga | 2 years | The _ga cookie, installed by Google Analytics, calculates visitor, session and campaign data and also keeps track of site usage for the site's analytics report. The cookie stores information anonymously and assigns a randomly generated number to recognize unique visitors. |
_ga_* | 1 year 1 month 4 days | Google Analytics sets this cookie to store and count page views. |
_gat_UA-* | 1 minute | Google Analytics sets this cookie for user behaviour tracking. |
_gcl_au | 3 months | Provided by Google Tag Manager to experiment advertisement efficiency of websites using their services. |
_gd_session | 4 hours | This cookie is used for collecting information on users visit to the website. It collects data such as total number of visits, average time spent on the website and the pages loaded. |
_gd_visitor | 2 years | This cookie is used for collecting information on the users visit such as number of visits, average time spent on the website and the pages loaded for displaying targeted ads. |
_gid | 1 day | Installed by Google Analytics, _gid cookie stores information on how visitors use a website, while also creating an analytics report of the website's performance. Some of the data that are collected include the number of visitors, their source, and the pages they visit anonymously. |
_hjFirstSeen | 30 minutes | Hotjar sets this cookie to identify a new user’s first session. It stores the true/false value, indicating whether it was the first time Hotjar saw this user. |
_hjIncludedInSessionSample_* | 2 minutes | Hotjar cookie that is set to determine if a user is included in the data sampling defined by a site's daily session limit. |
_hjRecordingEnabled | never | Hotjar sets this cookie when a Recording starts and is read when the recording module is initialized, to see if the user is already in a recording in a particular session. |
_hjRecordingLastActivity | never | Hotjar sets this cookie when a user recording starts and when data is sent through the WebSocket. |
_hjSession_* | 30 minutes | Hotjar cookie that is set when a user first lands on a page with the Hotjar script. It is used to persist the Hotjar User ID, unique to that site on the browser. This ensures that behavior in subsequent visits to the same site will be attributed to the same user ID. |
_hjSessionUser_* | 1 year | Hotjar cookie that is set when a user first lands on a page with the Hotjar script. It is used to persist the Hotjar User ID, unique to that site on the browser. This ensures that behavior in subsequent visits to the same site will be attributed to the same user ID. |
_hjTLDTest | session | To determine the most generic cookie path that has to be used instead of the page hostname, Hotjar sets the _hjTLDTest cookie to store different URL substring alternatives until it fails. |
6suuid | 2 years | 6Sense Cookie |
AnalyticsSyncHistory | 1 month | LinkedIn cookie |
BE_CLA3 | 1 year 1 month 4 days | BrightEdge sets this cookie to enable data aggregation, analysis and report creation to assess marketing effectiveness and provide solutions for SEO, SEM and website performance. |
CONSENT | 2 years | YouTube sets this cookie via embedded youtube-videos and registers anonymous statistical data. |
dj | 10 years | DemandJump cookie |
djaimid.a28e | 2 years | DemandJump cookiean |
djaimses.a28e | 30 minutes | DemandJump cookie |
li_gc | 5 months 27 days | LinkedIn Cookie |
ln_or | 1 day | LinkedIn Cookie |
vuid | 2 years | Vimeo installs this cookie to collect tracking information by setting a unique ID to embed videos to the website. |
Cookie | Duration | Description |
---|---|---|
__adroll | 1 year 1 month | This cookie is set by AdRoll to identify users across visits and devices. It is used by real-time bidding for advertisers to display relevant advertisements. |
__adroll_fpc | 1 year | AdRoll sets this cookie to target users with advertisements based on their browsing behaviour. |
__adroll_shared | 1 year 1 month | Adroll sets this cookie to collect information on users across different websites for relevant advertising. |
__ar_v4 | 1 year | This cookie is set under the domain DoubleClick, to place ads that point to the website in Google search results and to track conversion rates for these ads. |
_fbp | 3 months | This cookie is set by Facebook to display advertisements when either on Facebook or on a digital platform powered by Facebook advertising, after visiting the website. |
_te_ | session | Adroll cookie |
fr | 3 months | Facebook sets this cookie to show relevant advertisements to users by tracking user behaviour across the web, on sites that have Facebook pixel or Facebook social plugin. |
IDE | 1 year 24 days | Google DoubleClick IDE cookies are used to store information about how the user uses the website to present them with relevant ads and according to the user profile. |
li_sugr | 3 months | LinkedIn sets this cookie to collect user behaviour data to optimise the website and make advertisements on the website more relevant. |
test_cookie | 15 minutes | The test_cookie is set by doubleclick.net and is used to determine if the user's browser supports cookies. |
VISITOR_INFO1_LIVE | 5 months 27 days | A cookie set by YouTube to measure bandwidth that determines whether the user gets the new or old player interface. |
YSC | session | YSC cookie is set by Youtube and is used to track the views of embedded videos on Youtube pages. |
yt-remote-connected-devices | never | YouTube sets this cookie to store the video preferences of the user using embedded YouTube video. |
yt-remote-device-id | never | YouTube sets this cookie to store the video preferences of the user using embedded YouTube video. |
yt.innertube::nextId | never | This cookie, set by YouTube, registers a unique ID to store data on what videos from YouTube the user has seen. |
yt.innertube::requests | never | This cookie, set by YouTube, registers a unique ID to store data on what videos from YouTube the user has seen. |