HR Tech

With over 2 decades of industry experience, we’ve witnessed that AI success requires more than cutting-edge algorithms and sophisticated tools – it demands a structured end-to-end approach. We also found that 80% of our CxO friends are struggling with the lack of a clear AI implementation framework, regardless of their readiness and budget allocation. Furthermore, they have enough budgets to spend but are uncertain about where and how to invest.

In fact, a 2024 BCG survey found that 74% of companies have yet to see tangible value from their AI investments. Similarly, Gartner research indicates that 85% of AI projects fail due to unclear objectives, and a staggering 87% never even reach production, often yielding little to no impact [neurons-lab.com].

These shocking statistics underline the need for a robust AI implementation framework to bridge the gap between concept and real-world impact.

This article introduces Amzur’s six-step AI implementation framework, developed through years of hands-on experience, to ensure AI initiatives deliver on their promise. We’ll walk through each stage, from initial discovery to ongoing maintenance, explaining in detail how this structured AI framework drives success.

By following this proven approach, you can significantly benefit from AI investments, avoid analysis paralysis, and turn AI implementation ideas into tangible business value.

Amzur's AI Implementation Framework

Step 1: Discovery & Requirements Gathering

Every successful AI journey begins with a deep discovery phase. In our AI implementation framework, the first step is to clearly define objectives and success metrics. We collaborate with stakeholders to identify the business challenges to solve and what a successful outcome looks like. This involves analyzing existing workflows and data sources to ensure any AI solution aligns with your operations.

Unclear goals are the top reason AI projects fail – Gartner notes that 85% of AI projects fail due to unclear objectives and poor project management. That’s why we put heavy emphasis on this step.

We conduct workshops with your business and IT teams to ask the right questions: Which problems are we solving? How will we measure success? By establishing concrete success metrics (whether it’s reducing churn by X% or speeding up process Y by Z hours), we create a north star for the project.

This clarity at the outset builds a strong foundation of trust and alignment. Everyone from the CIO to the engineering team gains confidence that the AI initiative is tied to real business value. In short, Discovery is about ensuring the AI project is solving the right problem with stakeholder buy-in before a line of code is written.

Step 2: Data Engineering & Preparation

No AI implementation framework can succeed without quality data. Data is the fuel for AI implementation and success, and here we make sure it’s high-octane. In this step, our team delves into data engineering and preparation. We collect data from every nook and corner, including relevant internal and external sources. We gather structured and unstructured data and clean it to transform it into a usable format.

It’s often said that data scientists spend 80% of their time cleaning data because better data beats fancier algorithms. We find this true in practice – careful data preparation prevents the classic “garbage in, garbage out” scenario. This means handling missing or corrupt values, standardizing formats, and ensuring the data truly represents the problem space. We also perform Exploratory Data Analysis (EDA) for insights. During EDA, our experts sift through the data to uncover patterns, correlations, and outliers.

Equally important, we often gain new business insights from the EDA process – insights that can refine the problem statement or suggest quick wins. In this step, we establish a robust data foundation that helps prevent biases in AI implementation.

Download our whitepaper on how to address AI bias challenges

Step 3: Model Selection & Development

With objectives clear and quality data in hand, our AI implementation framework moves into model selection and development. This is where we turn concept into creation. Based on the problem requirements and data characteristics, we choose the appropriate modeling approach. Importantly, we don’t chase the flashiest algorithm for its own sake – we aim for the best AI framework and model that fits the use case.

For some projects, a straightforward machine learning model (like a regression or decision tree) might be ideal; for others, a state-of-the-art deep learning model or a fine-tuned transformer might be warranted. We weigh factors such as accuracy needs, interpretability, latency requirements, and the volume of data to determine the right model.

Once the model type is selected, our AI engineers develop or fine-tune the model in an iterative, agile manner. We often start by building a proof-of-concept model to validate the approach quickly. This might involve leveraging pre-trained models or well-established AI frameworks to accelerate development. Using these AI frameworks and libraries ensures we’re standing on the shoulders of proven technology while custom-crafting the solution to your data.

Throughout development, we maintain rigorous version control and documentation, treating models as critical code assets. We also keep the business context in focus: for example, if model explainability is important for stakeholder trust or regulatory compliance, we might opt for a simpler algorithm or use techniques to make a complex model’s decisions more transparent.

By the end of this phase, we have a working AI model (or set of models) that meets the defined objectives on our test data.

Here is our practical guide to AI model selection for tech and business leaders

Step 4: Testing & Validation

Even the smartest model is only as good as its validation. In our 6-step AI implementation framework, Testing & Validation is a critical checkpoint before any deployment. Here, we rigorously test the model against data it hasn’t seen to ensure it generalizes well and delivers the expected outcomes. This process starts with holding out a portion of data during the training phase for testing, as well as using cross-validation techniques to check consistency across different data subsets.

We examine key performance metrics (accuracy, precision/recall, F1-score, etc., depending on the project) to verify whether the model meets or exceeds the success criteria defined back in Step 1. If it doesn’t, this phase sends us back to refine the model or even reconsider data features – that’s the value of an iterative framework.

However, validation in our AI framework goes beyond just metrics. We conduct scenario testing and edge-case analysis: how does the model perform on atypical inputs or in extreme conditions?

For instance, if we built a computer vision model, we’d test images in low lighting or with unusual angles. If it’s a predictive analytics model, we check how stable its predictions are when certain variables spike or drop. We also incorporate A/B testing and user feedback when applicable.

This thorough validation step ensures we’re not deploying a “black box” and hoping for the best; we’re deploying a vetted and valid solution that we know will perform and provide value in the real world.

Learn more about the role of DevOps and AI in modern testing.

Step 5: Deployment & Integration

Now comes the moment of truth in the AI implementation framework – Deployment & Integration. This is where we deploy the validated model into production, making it accessible and useful to end-users or other systems. It’s a step where many AI projects stumble: a model might work in the lab but never make it into the business workflow. 

Amzur tackles deployment in a planned, DevOps-like fashion. From the project’s start, we consider how the model will integrate with your existing IT ecosystem, whether it’s your CRM, ERP, mobile app, or IoT devices.

By the time we reach this stage, we have a clear deployment plan: which infrastructure will host the model (cloud or on-premises), how it will interface with other software (e.g. via RESTful APIs or embedded libraries), and what throughput or latency is required for the application to be successful.

We package the AI model using modern best practices – often containerizing it with tools like Docker or using cloud ML deployment services – to ensure scalability and reliability. Our engineers work closely with your IT team to integrate the AI solution smoothly. This might involve setting up data pipelines so that new data flows to the model in real-time, or integrating the model’s outputs into a user-friendly dashboard for business users.

Role of Docker Containerization in CI/CD Pipeline security

We also implement necessary authentication, security, and compliance checks at this stage, so the AI system meets enterprise security standards and regulatory requirements. Deployment isn’t just a technical drop-off; it’s a holistic change management effort.

We provide training sessions or documentation to the end-users and IT staff on how to use and support the new AI-driven system. By making deployment a first-class citizen in the AI framework (rather than an afterthought), we ensure the brilliant model developed in Step 3 actually sees the light of day. At the end of Step 5, your AI solution is live, integrated, and delivering value within your operations – this is where AI starts paying dividends.

Step 6: Monitoring & Maintenance

The final step of our AI implementation framework distinguishes us as a one-off experiment from a lasting success: Monitoring & Maintenance. AI projects do not end at deployment – in fact, that’s where the real journey begins. Once the model is in production, we continuously monitor its performance against the defined success metrics and KPIs. This involves tracking predictions and outcomes over time and setting up alerts or dashboards for key performance indicators.

For example, if we deploy a customer churn prediction model, we monitor how accurate those predictions are month over month. If accuracy starts to drift downward, that’s a signal something has changed – perhaps consumer behavior has shifted or new competitors have emerged – and the model may need attention.

We also watch for data drift and model drift – situations where the input data or underlying patterns evolve away from what the model was trained on. When such changes are detected, our team proactively plans for model updates. Maintenance can include periodically retraining the model with fresh data, fine-tuning it, or even selecting a new model architecture if necessary.

The framework ensures we schedule these check-ins (for instance, quarterly model refreshes or automated retraining if performance dips below a threshold). Another critical aspect of monitoring is gathering user feedback in production. Users might discover new use cases or edge cases, and we feed that information back into improving the system.

We view AI as a living product – much like software gets version updates, your AI models get continuous improvement through maintenance cycles.

Moreover, Amzur’s team remains a partner in this phase, providing ongoing support and updates. We help audit the model’s decisions for fairness or errors over time, ensuring it continues to meet ethical and regulatory standards as they evolve. This step builds tremendous trust with our clients – they know that adopting AI isn’t a one-and-done deal, but a long-term strategic capability with Amzur by their side.

By including Monitoring & Maintenance in the AI framework, we ensure your AI solution keeps delivering value in the long run and adapts to new challenges. It’s a safeguard that the investment made in AI continues to yield returns and doesn’t fade into irrelevance after a few months.

Conclusion

In today’s competitive landscape, adopting AI can be transformative – but only if done with a comprehensive plan. Amzur’s 6-step AI implementation framework is a proven blueprint that covers the entire AI project lifecycle, from concept to creation and beyond.

Each step in this AI implementation framework builds on the previous, ensuring nothing is left to chance: we align AI strategy with your business goals, build on a solid data foundation, develop the right models, test them rigorously, deploy effectively, and maintain them for continuous improvement. This holistic approach embodies what the best AI frameworks in the industry emphasize – a balance of technical excellence, strategic alignment, and human oversight.

We stand ready as your AI implementation partner to guide you through each step, helping turn your AI concepts into reality and ensuring those innovations deliver lasting value. Trust Amzur to lead your AI journey from first idea to full-fledged success.

Book a 30-min AI Readiness Call

see how the framework maps to your organisation

Frequently Asked Questions

Author: Karthick Viswanathan
Director ATG & AI Practice
Technology leader with 20+ years of expertise in generative AI, SaaS, and product management. As Executive Director at Amzur Technologies, he drives innovation in AI, low-code platforms, and enterprise digital transformation.

HR Tech Archives » Amzur Technologies

Services Offered: App Development, Cloud Migration, QA Testing, ML

Industry: HR Tech

Introduction

In today’s recruitment industry, digital transformation focuses on bringing operational-level changes by significantly reducing infrastructure maintenance and seamlessly scaling the platform. To solve diverse recruitment challenges, including changing hiring needs, increased volumes of candidates, and handling virtual interviews, eTeki underwent a digital transformation by collaborating with Amzur Technologies to ensure security, scalability, and fault tolerance while optimizing cost.
eTeki-Logo-interviewer

Client Overview

In the recruitment industry, database management and enhanced candidate experience are imperative. eTeki – a leading online recruitment service provider, wanted to develop a video-based recruitment-as-a-service platform that can considerably save time and cost for employers and candidates.

The customer wanted to improve their Product to Market time, affected by a Product Information Management (PIM) system that was split across various platforms. They approached Amzur to build an integrated solution that promises the PIM environment on the AWS cloud platform, enabling fast end-to-end product onboarding and simpler asset management.

Challenges

The recruitment industry must deal with heaps of data and effective management. However, the traditional talent assessment and acquisition practices would take up more time and lead to a bad candidate experience.

eTeki struggled with numerous challenges including,

A poor data modeling and data storage system

Expensive & time-consuming data backup solutions

Instances running at higher capacity resulted in increased operational costs

Issues with security for managing databases & instances

Hence, the customer was looking for a strategic partner to help them build and manage their recruitment platform with customized BI reports.

Solution

The PIM environment acts as the mainstay for any interview business & Amzur was successful in helping eTeki build the PIM environment on AWS enabling fast end-to-end product onboarding and simpler asset management. Our operations include provisioning, upgrading, and managing the infrastructure for PIM AWS Accounts in all environments (TST, QA, and PROD).

Features of our solution:

Infrastructure built using Infrastructure as Code (IaC) templates

Adherence to IT Service Management (ITSM) practices, Security standards, and AWS best practices

Automated Deployment

Agile standards followed for Infrastructure development

Solution Highlights:

Redefined Backup Solution For Shared File System:

Infrastructure built using Infrastructure as Code (IaC) templates

Contents protected against failures with AWS Elastic File System (EFS)

Quick restoration from backup content at a file level to provide cost savings

On-demand backups could be utilized whenever needed

Cost Optimization (Reservation & VPC Endpoints)

Amzur assessed the usage of instances deployed, downsized them, and changed to another instance to right-size the capacity

Replaced the older instance types with new instance types

Compute Cloud (EC2) and Amazon Simple Storage Service (S3)

Introduced Virtual Private Cloud (VPC) endpoints to secure the data transfer between Amazon Elastic

Data is now transferred from EC2 to S3 over a private network of AWS

Improved performance of the PIM due to migrating to Nitro-based instances as well as cost savings

Improved Security and Automation

Proposed AWS Secrets Manager to enhance the security of the keys/secrets stored while eliminating manual effort for password management

The solution uses Key Management to enable a secure mode of communication. This method protects the secret with an encryption key from KMS and performs password rotation automatically regularly.

Automated Monitoring Reports for Resource Utilization and Elastic Load Balancer (ELB) Alarms

ML Service

Apart from AWS cloud solutions, Amzur leveraged Machine Learning algorithms to make candidate assessment more effective.

Matching tech interviewer profiles against job requirements, recommending or suggesting a minimum of 5 best interviewers & migrating the service to cloud-based sage maker.

Developing and automating generic / custom reports required for business users to get more insights into customer engagement (BI reports)

Ensuring Quality of eTeki

We adopted a risk-based agile application testing strategy backed by shift left and shift right approach to ensure testing from the early stages of software development. Our QA team leveraged all modern testing tools like Selenium/Cucumber/Katalon with Java/Python/C#, SonarQube/SonarLint, JIRA/Redmine, and WAVE and NVIDIA to check the compatibility, responsiveness, and functionality of the eTeki application.

Our testing services improved the interviewing capacity of eTeki to 1000 interviews per month without any process disruptions.

Benefits:

Reduced Product-to-Market time from 10 days to 10 minutes

Backup duration reduced from 48 hours to 2 hours with AWS Backup service

Improved performance of the PIM due to migrating to Nitro-based instances and 50% cost savings due to the reserved instance purchase

Overall solution has given at least 85% savings per month

Conclusion

Time is invaluable. Especially in the recruitment industry, delayed hiring and bad hires can impact project development and business growth. Hence, every company needs a tailor-made solution that can help them assess and evaluate tech resources in real time.

eTeki approached us with numerous challenges, and our AWS cloud solution helped them overcome those challenges with a customized and scalable video interviewing platform. Our solution has been helping them through live video streaming, customization, and automation of promotional as well as transaction-related emails to customers.

Experience a tailored approach to unlocking success aligned with your goals.

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