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Modern MLOPs model - The practical approach for winning organizations

Why MLOps model with its best practices spells good news for all organizations?

MLOps framework –  The convergence of ML, DevOps and Data Engineering

Enterprises are revitalizing their offerings with the adoption of intelligent technologies.

MLOps is the most promising and hot trend of the digital world!

The new model!

Many organizations struggle with extended model deployment schedules that take a month or longer to deploy a single model. Increasing the ML budgets and leveraging artificial intelligence (AI), Machine Learning (ML), and automation enables you to sustain growth and generate higher value.

Here’s all you need to learn about MLOps and why it’s the key to producing maximum business value from machine learning. Machine Learning only delivers value once models get into production. However, businesses often underrate the challenges of moving ML to production—relying only on their workforce.

The outcome? They fail to see the expected results from their ML projects, resulting in lost revenue and wasted resources.

ML is an ever-evolving, iterative system that requires its own unique framework. Leveraging MLOps to scale AI/ML production gives the company a competitive edge to maximize profitability, and ensures maximum performance. By formulating your MLOps transformation strategy, you can achieve application delivery and operational efficiency at high speed.

The key to success while deploying MLOps practices is to measure your workflows and digital business impact. We follow the industry best practices to help firms extract maximum value from their models in an agile and automated way.

MLOPs – The primer for your AI Strategy

Organizations often struggle with operationalizing their ML initiatives due to privacy, security, and data considerations. Therefore, data and analytics heads should choose a clear and step-by-step approach to measure value and expand their AI initiatives. The main focus is to accelerate the velocity at which the proofs of concept (POCs) can move into production.

ML is the most used AI method, and the AI-based capabilities help improve operationalization across all maturity levels. AI-driven organizations need MLOps because it enables them to eliminate most of the challenges on the path to AI with ROI. In addition, it strengthens the process of managing the machine learning lifecycle through automation and flexibility.

Organizations that are planning for AI/ML initiatives should

  • Develop an ML operationalization pipeline concerning development, deployment, and adoption challenges in advance
  • Use DevOps best practices for improved collaboration and communication between the teams
  • Adopt AI techniques and MLOps to operationalize all models

Data and analytics leaders find difficulties choosing the right tools and best practices during ML initiatives. A successful strategy requires careful consideration while selecting the tools. In addition, the AI workflow needs the flexibility to fit into various iterative model validation and regulation cycles before it’s ready for integration.

Sun Technologies’ AI roadmap

How is MLOps different from DevOps?

It is inevitable that organizations adopting DevOps principles and tooling achieve massive success in their software delivery. As we advance, enterprises that choose to embrace MLOps principles will manage the development and operationalization efficiently and generate greater ROI.

DevOps mainly aims to lessen a system’s development life cycle with automation of processes, continuous delivery, and continuous feedback. On the other hand, MLOps is the process of automating and operationalizing ML applications and workflows. Both DevOps and MLOps aim to produce software in an iterative and fault-tolerant workflow, however in MLOps, that software also has an ML element.

In a nutshell, you can assume MLOps as a specialized subset of DevOps for machine learning applications that streamlines the machine learning life cycle from start to end.

What are the key differences between DevOps and MLOps

DevOps

MLOps

  • Fix bugs with code
  • Develop a generic application
  • General set of libraries for particular use cases
  • Validation is through unit testing
  • Continuous integration and continuous deployment
  • Fix bugs with code/data model/ model retraining
  • Develop a model to feed inferences
  • High scope of tools, languages, and libraries
  • Validation is through model performance
  • CI/CD with Continuous Training is also available

MLOps is not a different concept. It is DevOps for ML applications/projects and pipelines. Simply put, it is a strategic approach to solve thorny practical challenges in taking ML models to production.

MLOps framework to streamline ML lifecycle

A flexible AI strategy boosts AI models’ performance, scalability, interpretability, and reliability and delivers the best value of AI investments. Companies that successfully deploy AI methodologies leverage multiple roles and have a higher ratio of success rate at their AI initiatives. In addition, AI generates the best value when aligned with strategic priorities.

So, how to get started with MLOPs? Are you planning to develop your own MLOPs framework or invest in an MLOPs platform and integrate it? The answer is, it depends! By analyzing the stakeholder’s time, workforce, and requirements, organizations on their data science journey can decide on this. With the right ML strategy and production-first approach, ML teams can make a game-changing impact on the business. 

Businesses of all sizes need to consider

  • Leveraging AI expertise by building multidisciplinary fusion teams that blend technology and other types of domain expertise
  • Business requirements of the use cases: Will your AI-based application include large data sets that may require distributed processing? 
  • Resource utilization: Do you need more experts, and how will you share the work? Ensure timely and faster delivery with proper task and role alignment 
  • Functional requirements: Gather the data from your current ML team to move faster
  • Implementation requirements: How are you planning to deploy your application-on one cloud, multi-cloud, hybrid, on-prem? 
  • Data flow: Analyzing the source and destination of the data.
  • Innovation: Addressing data pipeline automation and analyzing the future trends around infrastructure and technology 

Sun Technologies’ production-driven MLOps process enables you to establish a systematic process that ensures project alignment to business goals and maximizes the possibility of deployment to production.

We blend various AI techniques to:

  • Enhance the efficiency of learning
  • Broaden the maturity of continuous learning
  • Simplify and solve business challenges more efficiently

Sun Technologies' MLOPs Architecture

Accelerated transformation – To where and how?

The development phase begins with figuring out a business problem for a Machine Learning project. Further, data and analytics experts, domain professionals, and business leaders should closely work together to determine business requirements, challenges, performance accelerators, and desired business results.

For enterprises just beginning with ML, selecting a problem with less complexity and essential data is a suitable approach. Because if the problem is too challenging, it may need adequate technical expertise, and as a result, it costs an enormous amount of time and effort.

Sun Technologies allows businesses to focus their approach in a specific direction with the proven ML methodology and ensures

  • Scalability of the model in generating business value
  • Well-defined operating characteristics
  • Optimal predictive performance
  • Complete documentation and end-to-end testing
  • Operational efficiency
  • Enhanced decision-making capabilities
  • Reduced cost
  • Improved customer experience

Does your organization really need MLOps? 

Here are a few points that will help you decide when you need to go for MLOps.

  • If you are facing challenges in maintaining various tools, languages, and frameworks that you’re using for data science
  • You have maximized your investment in ML, but it is taking a very long time to deploy a new model to production
  • If you are in need of managing multiple pipelines tracking experiment and model versions
  • When there is a need for frequent retraining and redeployment
  • You have multiple models in your list but can’t easily track everything    
  • You are running ML in a hybrid environment (multi-cloud, hybrid on-premises, hybrid cloud, and on-premises).
  • You are managing different data workloads—anything from the legacy batch.       
  • Your DevOps team is continuously monitoring the performance of your typical applications, but not your ML applications
  • Your ML applications are monitored but not continuously
  • If you are not able to generate the expected ROI with your ML projects

Gain lighting speed with ML: Effective MLOps implementation with Sun Technologies

As the whole world move towards data-driven approach nowadays, the organizations’ success is defined by not only the adoption of ML but also whether they could deliver with maximum value compared to their competitors. Significantly, the industries that generate large volumes of data must find ways to offer the best with top quality and velocity.

Leverage Sun Technologies’ competitive edge to create yours. Transform your data into action with our cloud-based MLOps solutions.

  • Business Objective is our focal point

With our advanced technical methodologies’ we help our customers achieve tremendous success. We cover everything, from assisting organizations in solving all business challenges to generating revenue by optimizing infrastructure and automation processes.

  • DevOps expertise to enrich the delivery

Our DevOps team uses CI/CD, micro services architecture, and cloud solutions for Big Data and MLOps. We have certified and experienced consultants for managing Ansible, Terraform, Docker Swarm, Kubernetes, and OpenShift technologies. In addition, we have expertise in both public clouds, such as Amazon Web Services(AWS), Microsoft Azure, SonarQube, Google Cloud, and on-premise environments. 

  • AI/ML as our Accelerators

We leverage AI/ML to reduce human error, increase processing speed, and improve precision in industries. With our AI-powered scriptless test automation tool, we help organizations deliver in high speed and quality. In addition to that, our well-defined AI and data science team offer consulting services to find the best AI/ML solution according to your business requirements.

  • Leverage best practices  

Our proven, tried-and-tested framework and models fasten data science projects’ deployment into enterprise architecture.  We use industry best practices to realize and compare the options available for cloud and tool selection. 

Conclusion

You must develop a flexible and reusable data pipeline to absorb and maintain data from multiple sources with different structures. A flexible AI strategy boosts the performance, scalability, and reliability of AI models while dispatching the absolute value of AI investments. Therefore, you should use MLOps as one of the essential key takeaways toward establishing AI engineering.

Consider the following three things when you plan for an AI initiative.

  • Define AI business goals clearly
  • Evaluate the value derived from AI initiatives
  • Look for a trusted and skilled Service provider to help manage your AI initiative development and deployment in case, if you don’t have the expertise

Get in touch with us today to achieve new heights!

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