SlideShare a Scribd company logo
1 of 8
Download to read offline
Key to a Smarter Future: Leverage MLOps to
scale AI/ML
Mindfire Solutions is a 20+ years old, 650+
people software development and
testing services company with a global
clientele. We offer custom web and
mobile solutions for companies across all
major industries.
Many enterprises are cognizant of the transformative benefits of
AI/ML and, therefore, have been implementing the insights
gained from this technology to improve their output. However,
organizations face several challenges when it comes to the
scaling of their AI/ML models. Such problems usually arise due to
the lack of a standardized AI/ML workflow within the enterprise.
That is where MLOps comes into the picture. According to a
study
, 98% of the leaders in the IT industry believe that MLOps will give
their company a competitive edge and increase profitability. In
this article, we will understand why an enterprise should
leverage MLOps to scale AI/ML models.
What is MLOps?
MLOps or Machine Learning Operations provides organizations
with a standardized end-to-end solution to design, build,
manage, and test Al/ML models. Adopting this technology in
your organization can increase the product's quality, simplify
the management throughout the AI/ML lifecycle, and
automate the deployment of AI/ML models. Eventually, as the
technology upgrades, MLOps will be able to automate the
development of AI/ML models and eliminate any kind of human
intervention in the process.
AI/ML System Lifecycle
To get a better understanding of MLOps, let us understand a
little bit about AI/ML system lifecycle. There are several moving
parts involved in the AI/ML lifecycles, such as data ingestion,
data preparations, model training, model tuning, model
deployment, model monitoring, and much more.
Here is a list of teams and their responsibilities that are involved
throughout the AI/ML system lifecycle:
● Business Development or Product team: This team is tasked
with defining business development goals and KPIs.
● Data Engineering Team: The data engineering team takes
care of data acquisition and preparation relevant for the AI/ML
models.
● Data Science Team: Members of this team are responsible for
architecting AI/ML solutions and developing models.
● IT or DevOps Team: Deployments, monitoring, and testing are
handled by the DevOps team.
MLOps streamlines the whole AI/ML lifecycle and enables the
teams to work in sync at different stages of the lifecycle
Difference Between MLOps & DevOps
As the concept of MLOps is derived from DevOps, there are
several fundamental similarities between them. Both practices
enable IT teams to develop, test, deploy, and scale
applications in an efficient manner. However, there are a
couple of differences between MLOps and DevOps.
Here are some essential points that differentiate MLOps &
DevOps:
● Development: In DevOps, development refers to the process
of the creation of code for an application. On the other hand,
in MLOps, development means the codes that build and train
an ML/AL model.
● Monitoring: MLOps focuses on monitoring the AI/ML model
and eliminating data drift and model accuracy defects. In
DevOps, monitoring refers to overseeing the entire software
development lifecycle.
● Team Members: In DevOps, the team required to build
applications would mostly consist of software engineers. While in
MLOps or any AI/ML project, the team comprises software
engineers, data scientists, and AI/ML researchers.
How Can MLOps Add Value While Scaling AI/ML Models?
Here is how MLOps can help your business:
● Enhanced Productivity
The majority of executives working in the IT industry can agree that
implementing AI solutions from an idea stage can take at least nine
months, which makes it difficult for the organization to keep up with
the dynamic changes in the market.
On the other hand, with MLOps, businesses could take their AI solution
from the idea stage to the working model in just two to twelve weeks.
This would allow the companies to scale AI/ML faster without adding
more members to the team.
● Enhanced Reliability
Enterprises often spend a lot of resources on developing AI/ML
solutions, only to discover that 80% of them don't add value to
business after a period of time. In contrast, many studies have shown
that MLOps reduce the number of shelves by 30%. This is due to the
capabilities of MLOps to integrate constant monitoring and efficiency
tests in the workflow, which makes AI/ML solutions more reliable.
With MLOps, your IT team can automate critical monitoring and
testing tasks, allowing them to detect and resolve issues and leverage
the gained insights across the AI/ML lifecycle to improve the model’s
performance.
● Reduced Risk
Instead of making substantial investments for the governance of
the AI/ML models, many enterprises make the mistake of
undermining the risks their models pose and don’t have proper
procedures lined-up to mitigate them. This can cause significant
operational and financial damage to the company in the
event that any AI/ML models malfunction.
MLOps incorporates exhaustive risk-mitigation measures into the
lifecycle of AI/ML models. It offers reusable components that
reduce the possibility of errors. For example, a financial-services
company utilized MLOps practices to provide their IT team with
an auditable trail. This allowed them to pinpoint models that
were at risk and eluded severe damage to their models.
● Better Talent Retention
Retaining talent in the tech team of the organization is crucial
when it comes to scaling AI/ML efficiently. It is because
onboarding a new member and training them about their role
in the team can be time-consuming and might also cause
delays in the process. Also, without MLOps, top talent can
quickly become frustrated with monotonous tasks like data
cleansing and might feel alienated from their work.
That’s why MLOps can play a huge part in attracting and
retaining critical talent. Most of the technical talent is excited
about working with cutting-edge technology and tools like
MLOps that allow them to focus on solving complex analytics
problems and see the impact of their work in production.
Conclusion
MLOps can offer businesses a competitive edge by
accelerating the development of reliable AI/ML systems and
letting them scale with ease. It can also automate the
operational and synchronization aspects of the AI/ML lifecycle.
However, handling and supervising all the MLOps practices can
sometimes get overwhelming. That’s why it is advisable to
collaborate with a firm that can assist you in implementing
MLOps.
Mindfire Solution is an IT service provider that has successfully
implemented AI/ML algorithms for organizations around the
world at reduced development costs and timelines. With over
two decades of industry experience, Mindfire Solutions have
worked out best practices that add value to your business. Visit
Mindfire Solutions
to learn more about us.
Thanks You
Content Source: Quora
Contented by : Mindfire Solutions

More Related Content

Similar to Key to a Smarter Future Leverage MLOps to scale AI ML.pdf

The State of Salesforce Report 2017
The State of Salesforce Report 2017The State of Salesforce Report 2017
The State of Salesforce Report 2017
Brianne Farrar
 
Map your best_route_to_product_value_ebook
Map your best_route_to_product_value_ebookMap your best_route_to_product_value_ebook
Map your best_route_to_product_value_ebook
dynamicscom
 

Similar to Key to a Smarter Future Leverage MLOps to scale AI ML.pdf (20)

MLOps - Getting Machine Learning Into Production
MLOps - Getting Machine Learning Into ProductionMLOps - Getting Machine Learning Into Production
MLOps - Getting Machine Learning Into Production
 
Agile PLM – A Comprehensive Solution for Manufacturers.docx
Agile PLM – A Comprehensive Solution for Manufacturers.docxAgile PLM – A Comprehensive Solution for Manufacturers.docx
Agile PLM – A Comprehensive Solution for Manufacturers.docx
 
MLOps – Applying DevOps to Competitive Advantage
MLOps – Applying DevOps to Competitive AdvantageMLOps – Applying DevOps to Competitive Advantage
MLOps – Applying DevOps to Competitive Advantage
 
PLM something-has-to-change
PLM something-has-to-changePLM something-has-to-change
PLM something-has-to-change
 
Agile Mumbai 2022 - Ashwinee Singh | Agile in AI or AI in Agile?
Agile Mumbai 2022 - Ashwinee Singh | Agile in AI or AI in Agile?Agile Mumbai 2022 - Ashwinee Singh | Agile in AI or AI in Agile?
Agile Mumbai 2022 - Ashwinee Singh | Agile in AI or AI in Agile?
 
Databricks for MLOps Presentation (AI/ML)
Databricks for MLOps Presentation (AI/ML)Databricks for MLOps Presentation (AI/ML)
Databricks for MLOps Presentation (AI/ML)
 
AI & ML: Driving the Next Generation of Innovation in DevOps and Workload Aut...
AI & ML: Driving the Next Generation of Innovation in DevOps and Workload Aut...AI & ML: Driving the Next Generation of Innovation in DevOps and Workload Aut...
AI & ML: Driving the Next Generation of Innovation in DevOps and Workload Aut...
 
Experteer for ICMA: Applied Machine Learning. Smart Process Automation with AI
Experteer for ICMA: Applied Machine Learning. Smart Process Automation with AIExperteer for ICMA: Applied Machine Learning. Smart Process Automation with AI
Experteer for ICMA: Applied Machine Learning. Smart Process Automation with AI
 
[DSC Europe 22] Why you need to think about MLOps at the beginning of your pr...
[DSC Europe 22] Why you need to think about MLOps at the beginning of your pr...[DSC Europe 22] Why you need to think about MLOps at the beginning of your pr...
[DSC Europe 22] Why you need to think about MLOps at the beginning of your pr...
 
The State of Salesforce Report 2017
The State of Salesforce Report 2017The State of Salesforce Report 2017
The State of Salesforce Report 2017
 
Machine Learning: The First Salvo of the AI Business Revolution
Machine Learning: The First Salvo of the AI Business RevolutionMachine Learning: The First Salvo of the AI Business Revolution
Machine Learning: The First Salvo of the AI Business Revolution
 
Technovision
TechnovisionTechnovision
Technovision
 
Mark Edmondson slides
Mark Edmondson   slidesMark Edmondson   slides
Mark Edmondson slides
 
What is PLM360 Whitepaper_0828.pdf
What is PLM360 Whitepaper_0828.pdfWhat is PLM360 Whitepaper_0828.pdf
What is PLM360 Whitepaper_0828.pdf
 
Course 2 Machine Learning Data LifeCycle in Production - Week 1
Course 2   Machine Learning Data LifeCycle in Production - Week 1Course 2   Machine Learning Data LifeCycle in Production - Week 1
Course 2 Machine Learning Data LifeCycle in Production - Week 1
 
Agile Corporation for MIT
Agile Corporation for MITAgile Corporation for MIT
Agile Corporation for MIT
 
Map your best_route_to_product_value_ebook
Map your best_route_to_product_value_ebookMap your best_route_to_product_value_ebook
Map your best_route_to_product_value_ebook
 
Experiment Management for the Enterprise
Experiment Management for the EnterpriseExperiment Management for the Enterprise
Experiment Management for the Enterprise
 
ModelOps and its Operationalization for Secure and Reliable AI
ModelOps and its Operationalization for Secure and Reliable AIModelOps and its Operationalization for Secure and Reliable AI
ModelOps and its Operationalization for Secure and Reliable AI
 
Don’t rage against the RPA machine. Why the real robotics revolution requires...
Don’t rage against the RPA machine. Why the real robotics revolution requires...Don’t rage against the RPA machine. Why the real robotics revolution requires...
Don’t rage against the RPA machine. Why the real robotics revolution requires...
 

More from Mindfire LLC

More from Mindfire LLC (20)

Adoption of Cloud Computing in Healthcare to Improves Patient Care Coordinati...
Adoption of Cloud Computing in Healthcare to Improves Patient Care Coordinati...Adoption of Cloud Computing in Healthcare to Improves Patient Care Coordinati...
Adoption of Cloud Computing in Healthcare to Improves Patient Care Coordinati...
 
Adoption of Cloud Computing in Healthcare to Improves Patient Care Coordination
Adoption of Cloud Computing in Healthcare to Improves Patient Care CoordinationAdoption of Cloud Computing in Healthcare to Improves Patient Care Coordination
Adoption of Cloud Computing in Healthcare to Improves Patient Care Coordination
 
Challenges and Risks of Web 3.0 — A New Digital World Order
Challenges and Risks of Web 3.0 — A New Digital World OrderChallenges and Risks of Web 3.0 — A New Digital World Order
Challenges and Risks of Web 3.0 — A New Digital World Order
 
Why Django is The Go-To Framework For Python.pdf
Why Django is The Go-To Framework For Python.pdfWhy Django is The Go-To Framework For Python.pdf
Why Django is The Go-To Framework For Python.pdf
 
Thriving in an Age of Tech Disruption.pdf
Thriving in an Age of Tech Disruption.pdfThriving in an Age of Tech Disruption.pdf
Thriving in an Age of Tech Disruption.pdf
 
Advantages Of Using Django Framework To Build Scalable.pdf
Advantages Of Using Django Framework To Build Scalable.pdfAdvantages Of Using Django Framework To Build Scalable.pdf
Advantages Of Using Django Framework To Build Scalable.pdf
 
Utilizing Machine Learning In Banking To Prevent Fraud.pdf
Utilizing Machine Learning In Banking To Prevent Fraud.pdfUtilizing Machine Learning In Banking To Prevent Fraud.pdf
Utilizing Machine Learning In Banking To Prevent Fraud.pdf
 
How Blockchain In Supply Chain Can Help Overcome.pdf
How Blockchain In Supply Chain Can Help Overcome.pdfHow Blockchain In Supply Chain Can Help Overcome.pdf
How Blockchain In Supply Chain Can Help Overcome.pdf
 
Challenges of IT Outsourcing for CEOs of Small.pdf
Challenges of IT Outsourcing for CEOs of Small.pdfChallenges of IT Outsourcing for CEOs of Small.pdf
Challenges of IT Outsourcing for CEOs of Small.pdf
 
Is JMeter The Best Performance Testing Tool.pdf
Is JMeter The Best Performance Testing Tool.pdfIs JMeter The Best Performance Testing Tool.pdf
Is JMeter The Best Performance Testing Tool.pdf
 
Is Codeless Automation Testing Revolutionizing the Testing Industry.pdf
Is Codeless Automation Testing Revolutionizing the Testing Industry.pdfIs Codeless Automation Testing Revolutionizing the Testing Industry.pdf
Is Codeless Automation Testing Revolutionizing the Testing Industry.pdf
 
Where Do I Hire A Dedicated Team Of Python Developers Online.pdf
Where Do I Hire A Dedicated Team Of Python Developers Online.pdfWhere Do I Hire A Dedicated Team Of Python Developers Online.pdf
Where Do I Hire A Dedicated Team Of Python Developers Online.pdf
 
Primary concerns of CTOs with IT Outsourcing.pdf
Primary concerns of CTOs with IT Outsourcing.pdfPrimary concerns of CTOs with IT Outsourcing.pdf
Primary concerns of CTOs with IT Outsourcing.pdf
 
Evolution of virtualized healthcare models.pdf
Evolution of virtualized healthcare models.pdfEvolution of virtualized healthcare models.pdf
Evolution of virtualized healthcare models.pdf
 
Adopting Blockchain in Healthcare to solve complex data issues & improve cust...
Adopting Blockchain in Healthcare to solve complex data issues & improve cust...Adopting Blockchain in Healthcare to solve complex data issues & improve cust...
Adopting Blockchain in Healthcare to solve complex data issues & improve cust...
 
Delivering Better Healthcare Services with Edge AI.pdf
Delivering Better Healthcare Services with Edge AI.pdfDelivering Better Healthcare Services with Edge AI.pdf
Delivering Better Healthcare Services with Edge AI.pdf
 
React’s suitability to develop Geospatial solutions.pdf
React’s suitability to develop Geospatial solutions.pdfReact’s suitability to develop Geospatial solutions.pdf
React’s suitability to develop Geospatial solutions.pdf
 
How has React become the preferred choice to.pdf
How has React become the preferred choice to.pdfHow has React become the preferred choice to.pdf
How has React become the preferred choice to.pdf
 
An SEO optimized website is best charged up.pdf
An SEO optimized website is best charged up.pdfAn SEO optimized website is best charged up.pdf
An SEO optimized website is best charged up.pdf
 
The Continuing Relevance of Manual Testing.pdf
The Continuing Relevance of Manual Testing.pdfThe Continuing Relevance of Manual Testing.pdf
The Continuing Relevance of Manual Testing.pdf
 

Recently uploaded

CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
VishalKumarJha10
 

Recently uploaded (20)

10 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 202410 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 2024
 
%in Lydenburg+277-882-255-28 abortion pills for sale in Lydenburg
%in Lydenburg+277-882-255-28 abortion pills for sale in Lydenburg%in Lydenburg+277-882-255-28 abortion pills for sale in Lydenburg
%in Lydenburg+277-882-255-28 abortion pills for sale in Lydenburg
 
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
 
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
 
8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students
 
Chinsurah Escorts ☎️8617697112 Starting From 5K to 15K High Profile Escorts ...
Chinsurah Escorts ☎️8617697112  Starting From 5K to 15K High Profile Escorts ...Chinsurah Escorts ☎️8617697112  Starting From 5K to 15K High Profile Escorts ...
Chinsurah Escorts ☎️8617697112 Starting From 5K to 15K High Profile Escorts ...
 
Announcing Codolex 2.0 from GDK Software
Announcing Codolex 2.0 from GDK SoftwareAnnouncing Codolex 2.0 from GDK Software
Announcing Codolex 2.0 from GDK Software
 
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
Direct Style Effect Systems -The Print[A] Example- A Comprehension AidDirect Style Effect Systems -The Print[A] Example- A Comprehension Aid
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Models
 
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
 
Exploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdfExploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdf
 
The Top App Development Trends Shaping the Industry in 2024-25 .pdf
The Top App Development Trends Shaping the Industry in 2024-25 .pdfThe Top App Development Trends Shaping the Industry in 2024-25 .pdf
The Top App Development Trends Shaping the Industry in 2024-25 .pdf
 
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park %in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
 
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
 
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
 
SHRMPro HRMS Software Solutions Presentation
SHRMPro HRMS Software Solutions PresentationSHRMPro HRMS Software Solutions Presentation
SHRMPro HRMS Software Solutions Presentation
 
Architecture decision records - How not to get lost in the past
Architecture decision records - How not to get lost in the pastArchitecture decision records - How not to get lost in the past
Architecture decision records - How not to get lost in the past
 

Key to a Smarter Future Leverage MLOps to scale AI ML.pdf

  • 1. Key to a Smarter Future: Leverage MLOps to scale AI/ML Mindfire Solutions is a 20+ years old, 650+ people software development and testing services company with a global clientele. We offer custom web and mobile solutions for companies across all major industries.
  • 2. Many enterprises are cognizant of the transformative benefits of AI/ML and, therefore, have been implementing the insights gained from this technology to improve their output. However, organizations face several challenges when it comes to the scaling of their AI/ML models. Such problems usually arise due to the lack of a standardized AI/ML workflow within the enterprise. That is where MLOps comes into the picture. According to a study , 98% of the leaders in the IT industry believe that MLOps will give their company a competitive edge and increase profitability. In this article, we will understand why an enterprise should leverage MLOps to scale AI/ML models. What is MLOps? MLOps or Machine Learning Operations provides organizations with a standardized end-to-end solution to design, build, manage, and test Al/ML models. Adopting this technology in your organization can increase the product's quality, simplify the management throughout the AI/ML lifecycle, and automate the deployment of AI/ML models. Eventually, as the technology upgrades, MLOps will be able to automate the development of AI/ML models and eliminate any kind of human intervention in the process.
  • 3. AI/ML System Lifecycle To get a better understanding of MLOps, let us understand a little bit about AI/ML system lifecycle. There are several moving parts involved in the AI/ML lifecycles, such as data ingestion, data preparations, model training, model tuning, model deployment, model monitoring, and much more. Here is a list of teams and their responsibilities that are involved throughout the AI/ML system lifecycle: ● Business Development or Product team: This team is tasked with defining business development goals and KPIs. ● Data Engineering Team: The data engineering team takes care of data acquisition and preparation relevant for the AI/ML models. ● Data Science Team: Members of this team are responsible for architecting AI/ML solutions and developing models. ● IT or DevOps Team: Deployments, monitoring, and testing are handled by the DevOps team. MLOps streamlines the whole AI/ML lifecycle and enables the teams to work in sync at different stages of the lifecycle
  • 4. Difference Between MLOps & DevOps As the concept of MLOps is derived from DevOps, there are several fundamental similarities between them. Both practices enable IT teams to develop, test, deploy, and scale applications in an efficient manner. However, there are a couple of differences between MLOps and DevOps. Here are some essential points that differentiate MLOps & DevOps: ● Development: In DevOps, development refers to the process of the creation of code for an application. On the other hand, in MLOps, development means the codes that build and train an ML/AL model. ● Monitoring: MLOps focuses on monitoring the AI/ML model and eliminating data drift and model accuracy defects. In DevOps, monitoring refers to overseeing the entire software development lifecycle. ● Team Members: In DevOps, the team required to build applications would mostly consist of software engineers. While in MLOps or any AI/ML project, the team comprises software engineers, data scientists, and AI/ML researchers.
  • 5. How Can MLOps Add Value While Scaling AI/ML Models? Here is how MLOps can help your business: ● Enhanced Productivity The majority of executives working in the IT industry can agree that implementing AI solutions from an idea stage can take at least nine months, which makes it difficult for the organization to keep up with the dynamic changes in the market. On the other hand, with MLOps, businesses could take their AI solution from the idea stage to the working model in just two to twelve weeks. This would allow the companies to scale AI/ML faster without adding more members to the team. ● Enhanced Reliability Enterprises often spend a lot of resources on developing AI/ML solutions, only to discover that 80% of them don't add value to business after a period of time. In contrast, many studies have shown that MLOps reduce the number of shelves by 30%. This is due to the capabilities of MLOps to integrate constant monitoring and efficiency tests in the workflow, which makes AI/ML solutions more reliable. With MLOps, your IT team can automate critical monitoring and testing tasks, allowing them to detect and resolve issues and leverage the gained insights across the AI/ML lifecycle to improve the model’s performance.
  • 6. ● Reduced Risk Instead of making substantial investments for the governance of the AI/ML models, many enterprises make the mistake of undermining the risks their models pose and don’t have proper procedures lined-up to mitigate them. This can cause significant operational and financial damage to the company in the event that any AI/ML models malfunction. MLOps incorporates exhaustive risk-mitigation measures into the lifecycle of AI/ML models. It offers reusable components that reduce the possibility of errors. For example, a financial-services company utilized MLOps practices to provide their IT team with an auditable trail. This allowed them to pinpoint models that were at risk and eluded severe damage to their models. ● Better Talent Retention Retaining talent in the tech team of the organization is crucial when it comes to scaling AI/ML efficiently. It is because onboarding a new member and training them about their role in the team can be time-consuming and might also cause delays in the process. Also, without MLOps, top talent can quickly become frustrated with monotonous tasks like data cleansing and might feel alienated from their work.
  • 7. That’s why MLOps can play a huge part in attracting and retaining critical talent. Most of the technical talent is excited about working with cutting-edge technology and tools like MLOps that allow them to focus on solving complex analytics problems and see the impact of their work in production. Conclusion MLOps can offer businesses a competitive edge by accelerating the development of reliable AI/ML systems and letting them scale with ease. It can also automate the operational and synchronization aspects of the AI/ML lifecycle. However, handling and supervising all the MLOps practices can sometimes get overwhelming. That’s why it is advisable to collaborate with a firm that can assist you in implementing MLOps. Mindfire Solution is an IT service provider that has successfully implemented AI/ML algorithms for organizations around the world at reduced development costs and timelines. With over two decades of industry experience, Mindfire Solutions have worked out best practices that add value to your business. Visit Mindfire Solutions to learn more about us.
  • 8. Thanks You Content Source: Quora Contented by : Mindfire Solutions