Advancing

with

AI

Add a body paragraph text

Learn how we have transformed healthcare operations through intelligent AI-powered automation.

Healthcare

Unifying Data for

Actionable Insights

Discover how Narwal transformed a global industry leader’s data platform, harmonizing data across systems to enable advanced analytics, improve decision-making, and ensure scalability for 1M+ merchants worldwide.

Our Expertise

In today’s rapidly evolving digital landscape, organizations are turning to advanced AI frameworks to fuel innovation and stay ahead of the curve. Narwal’s AI service framework is built around five core pillars—Data Science & ML Engineering, Generative AI, Expert Agents, ML Operations, and AI Advisory & Strategy each bringing deep technical expertise and industry-specific capabilities. This end-to-end approach empowers enterprises to address complex challenges, optimize operations, and generate measurable business value across sectors such as payments, healthcare, retail, logistics, and manufacturing. 

Our Core Areas

1. Data Science & ML Engineering

At Narwal, we blend foundational data science with advanced machine learning to unlock actionable intelligence from data. Our team applies techniques such as deep learning, NLP, computer vision, and reinforcement learning to build models that are not only accurate but scalable and production-ready 

Leveraging AutoML, ensemble modeling, transfer learning, and drift detection, we tailor solutions that drive measurable outcomes ensuring transparency through Explainable AI (XAI) and performance optimization at every stage of the ML lifecycle. 

Our Offerings

Supervised Learning

Models trained on labeled data​

Unsupervised Learning

Discovering patterns without labels​

Natural Language Processing & Computer Vision

Understanding text and images​

Deep Learning & Reinforcement Learning

Neural nets & reward-based training​

Explainable AI

XAI, Transparent model decision reasoning​

Our Customized Approach

Ensemble Modeling Techniques

Combining multiple models’ predictions.

Enterprise Apps Testing company

Adoption of AutoML Practices

Automating ML pipeline creation​

Transfer Learning

Reusing knowledge across tasks​

Drifts Detection

Identifying data distribution shifts​

LLM-as-a-Judge & LLM-as-Guardrails

AI evaluating output and enforcing rules

Hallucination Analysis

Detecting model’s false outputs​

Our Value Proposition

80% Reduction in manual efforts.

25% Increase in revenue.

50% Improvement in productivity.

Supervised Learning

Models trained on labeled data​

Unsupervised Learning

Discovering patterns without labels​

Natural Language Processing & Computer Vision

Understanding text and images​

Deep Learning & Reinforcement Learning

Neural nets & reward-based training​

Explainable AI

XAI, Transparent model decision reasoning​

Ensemble Modeling Techniques

Combining multiple models’ predictions.

Enterprise Apps Testing company

Adoption of AutoML Practices

Automating ML pipeline creation​

Transfer Learning

Reusing knowledge across tasks​

Drifts Detection

Identifying data distribution shifts​

LLM-as-a-Judge & LLM-as-Guardrails

AI evaluating output and enforcing rules

Hallucination Analysis

Detecting model’s false outputs​

80% Reduction in manual efforts.

25% Increase in revenue.

50% Improvement in productivity.

2. Generative AI

Harness the potential of next-gen generative models to create human-like content, automate workflows, and power dynamic experiences. From large language models and multi-modal learning to prompt engineering and agentic orchestration, 

our capabilities enable businesses to deliver intelligent solutions that are creative, adaptive, and efficient, accelerating innovation across enterprise functions. 

Our Offerings

GenAI Models

Large AI models for text generation, analyzing images and multimodal reasoning tasks.​

RAG & Advanced RAG 

Generative AI enhanced by retrieved data.

Prompt Engineering

Designing prompts to guide AI output.​

Chains & Agents

Linked AI tasks and autonomous agents.​

Graphs

Graph structures powering generative AI.​

Our Customized Approach

Conversational Bots & Virtual Assistants

AI agents conversing and assisting users.​

Knowledge Bases, Graphs & Bots

Data stores and graphs powering access bots.​

RPA & Agentic Workflow Orchestrations

Automated bots orchestrating business workflows.​

Automated Code, Test and Data Generation

AI generating code, tests, and synthetic data.​

LLM FineTuning

Customizing LLMs on specific datasets.​

LLM-as-a-Judge & LLM-as-Guardrails

AI evaluating output and enforcing rules.​

Our Value Proposition

60% Reduction in response time.

40% Improvement in overall productivity.

80% Reduction in manual effort for generating content.

53% Reduction in data cleansing and exploratory activities.

GenAI Models

Large AI models for text generation, analyzing images and multimodal reasoning tasks.​

RAG & Advanced RAG 

Generative AI enhanced by retrieved data.

Prompt Engineering

Designing prompts to guide AI output.​

Chains & Agents

Linked AI tasks and autonomous agents.​

Graphs

Graph structures powering generative AI.​

Conversational Bots & Virtual Assistants

AI agents conversing and assisting users.​

Knowledge Bases, Graphs & Bots

Data stores and graphs powering access bots.​

RPA & Agentic Workflow Orchestrations

Automated bots orchestrating business workflows.​

Automated Code, Test and Data Generation

AI generating code, tests, and synthetic data.​

LLM FineTuning

Customizing LLMs on specific datasets.​

LLM-as-a-Judge & LLM-as-Guardrails

AI evaluating output and enforcing rules.​

60% Reduction in response time.

40% Improvement in overall productivity.

80% Reduction in manual effort for generating content.

53% Reduction in data cleansing and exploratory activities.

3. Expert Agents

We develop intelligent autonomous agents that mimic human decision-making, handle multi-step tasks, and adapt to evolving contexts. Leveraging agentic RAG, multi-agent systems, and human-in-the-loop orchestration, our AI agents unlock 

new levels of efficiency and personalization whether for document processing, virtual assistance, or dynamic customer interactions.

Our Offerings

Agentic RAG

Autonomous retrieval-augmented generation​

Conversation Agents

AI systems engaging in conversations

Automation Agents

AI bots automating workflows

Multi-Agent Systems

Collaborative networks of AI agents​

MultiModal Agents

Agents handling text, images & audio​

Causal AI

AI uncovering cause‑effect links

Our Customized Approach

Intelligent Document Processing (IDP)

AI extracting structured data from docs​

Agent Orchestration

Coordinating tasks among AI agents​

Human-in-the-Loop AI (Reflection/ReAct)

AI refined through human feedback loops​

Multi-Agent Frameworks

Platforms for coordinating multiple AI agents​

Custom AutoGPT

Tailored autonomous GPT‑based agents​

Our Value Proposition

Advanced Human-AI Collaboration

Augment workforce efficiency with AI-powered automation. 

Adaptive Learning & Optimization

Continuously improve performance through real-time feedback. 

50% Faster Decision-Making

Automate complex workflows with AI-driven insights. 

40% Cost Reduction

Optimize operational costs by leveraging intelligent AI agents. 

60% Increase in Productivity

Reduce human intervention in repetitive tasks. 

80% Reduction in Manual Intervention

AI agents handle complex workflows autonomously. 

25% Increase in Customer Retention

AI-driven personalization enhances user engagement. 

30% Faster AI Model Deployment

Accelerate AI adoption with pre-trained Agentic AI models. 

70% Reduction in Data Processing Time

AI-driven knowledge retrieval and automation. 

AI-First Business Transformation

Move from traditional automation to self-learning AI-driven workflows.    

Agentic RAG

Autonomous retrieval-augmented generation​

Conversation Agents

AI systems engaging in conversations

Automation Agents

AI bots automating workflows

Multi-Agent Systems

Collaborative networks of AI agents​

MultiModal Agents

Agents handling text, images & audio​

Causal AI

AI uncovering cause‑effect links

Intelligent Document Processing (IDP)

AI extracting structured data from docs​

Agent Orchestration

Coordinating tasks among AI agents​

Human-in-the-Loop AI (Reflection/ReAct)

AI refined through human feedback loops​

Multi-Agent Frameworks

Platforms for coordinating multiple AI agents​

Custom AutoGPT

Tailored autonomous GPT‑based agents​

Advanced Human-AI Collaboration

Augment workforce efficiency with AI-powered automation. 

Adaptive Learning & Optimization

Continuously improve performance through real-time feedback. 

50% Faster Decision-Making

Automate complex workflows with AI-driven insights. 

40% Cost Reduction

Optimize operational costs by leveraging intelligent AI agents. 

60% Increase in Productivity

Reduce human intervention in repetitive tasks. 

80% Reduction in Manual Intervention

AI agents handle complex workflows autonomously. 

25% Increase in Customer Retention

AI-driven personalization enhances user engagement. 

30% Faster AI Model Deployment

Accelerate AI adoption with pre-trained Agentic AI models. 

70% Reduction in Data Processing Time

AI-driven knowledge retrieval and automation. 

AI-First Business Transformation

Move from traditional automation to self-learning AI-driven workflows.    

4. ML Operations

Our MLOps solutions ensure that AI models are not only built, but efficiently deployed, monitored, and optimized at scale. By automating pipelines and integrating tools like Kubeflow, MLFlow, and Langfuse, we enable faster iterations, robust version control, and

proactive monitoring empowering businesses to maintain high-performing ML systems in real-time production environments. 

Our Offerings

End-to-End Pipeline Automation

Automated orchestration of ML workflows​

Automated Model Monitoring (Drifts Detection), Retraining & Optimization

Periodic model monitoring, retraining & tuning 

LLMOps

Managing LLM deployment & operations​

AgentOps 

Agent Monitoring: Tracking autonomous agent performance​

FinOps

Billing: Optimizing ML infrastructure costs ​

Observability

Unified logs, metrics & traces​

Our Customized Approach

Human-in-the-Loop (Agentic)

Combining AI automation with human oversight​

Tailored Pipeline Design

Custom ML workflow architecture​

Multi-Step Workflow Orchestration & Management

Coordinated versioned multi‑step ML workflows​

Machine Learning Quality Analysis

Assessing ML model performance & quality​

Model Hub

Centralized model storage & versioning​

Our Value Proposition

80% Reduction in manual efforts.

50% Improvement in productivity.

90% Reduction in time by automating MLOps activities.

End-to-End Pipeline Automation

Automated orchestration of ML workflows​

Automated Model Monitoring (Drifts Detection), Retraining & Optimization

Periodic model monitoring, retraining & tuning 

LLMOps

Managing LLM deployment & operations​

AgentOps 

Agent Monitoring: Tracking autonomous agent performance​

FinOps

Billing: Optimizing ML infrastructure costs ​

Observability

Unified logs, metrics & traces​

Human-in-the-Loop (Agentic)

Combining AI automation with human oversight​

Tailored Pipeline Design

Custom ML workflow architecture​

Multi-Step Workflow Orchestration & Management

Coordinated versioned multi‑step ML workflows​

Machine Learning Quality Analysis

Assessing ML model performance & quality​

Model Hub

Centralized model storage & versioning​

80% Reduction in manual efforts.

50% Improvement in productivity.

90% Reduction in time by automating MLOps activities.

5. AI Advisory & Strategy

Narwal’s advisory services bridge the gap between vision and execution. We guide enterprises in building ethical, scalable, and compliant AI strategies—tailored to business goals and industry standards. 

With a business-first mindset, we help define roadmaps, identify impactful use cases, and enable sustainable AI adoption for long-term growth and transformation. 

Our Offerings

AI Readiness Assessment

Assessing organization’s AI readiness​

AI Strategy and Roadmap Development

Planning AI objectives and roadmap​

Use Case Identification and Prioritization

Selecting and ranking AI use cases​

AI Technology Selection

Selecting AI tools and platforms​

AI Ethics and Regulatory Compliance

Ensuring ethical AI and legal compliance​

Performance Monitoring and Optimization

Tracking and tuning AI performance​

Our Customized Approach

Business-First Approach

Aligning AI with business goals​

Domain Expertise

Leveraging industry‑specific knowledge

Ethical AI Framework

Guidelines for responsible AI use

Change Management

Managing organization‑wide AI adoption

Outcome Measurement

Evaluating impact of AI initiatives

Our Value Proposition

~50% Cost Reduction 

~50% reduction by automating repetitive tasks. 

~25% Revenue Growth

~25% increase by identifying new revenue opportunities and improving sales effectiveness.

40% Increased Operational Efficiency

Improved efficiency by 40% by minimizing downtime and increasing productivity.

40% Improved Decision-Making

Helped businesses make better-informed decisions, improving outcomes by 40%.

20% Enhanced Customer Experience

Improved retention rate by 20% as clients observed significant increases in customer satisfaction and loyalty.

Innovation & Competitive Advantage

Drive product differentiation, create new business models, and sustain a competitive edge in the market.

AI Readiness Assessment

Assessing organization’s AI readiness​

AI Strategy and Roadmap Development

Planning AI objectives and roadmap​

Use Case Identification and Prioritization

Selecting and ranking AI use cases​

AI Technology Selection

Selecting AI tools and platforms​

AI Ethics and Regulatory Compliance

Ensuring ethical AI and legal compliance​

Performance Monitoring and Optimization

Tracking and tuning AI performance​

Business-First Approach

Aligning AI with business goals​

Domain Expertise

Leveraging industry‑specific knowledge

Ethical AI Framework

Guidelines for responsible AI use

Change Management

Managing organization‑wide AI adoption

Outcome Measurement

Evaluating impact of AI initiatives

~50% Cost Reduction 

~50% reduction by automating repetitive tasks. 

~25% Revenue Growth

~25% increase by identifying new revenue opportunities and improving sales effectiveness.

40% Increased Operational Efficiency

Improved efficiency by 40% by minimizing downtime and increasing productivity.

40% Improved Decision-Making

Helped businesses make better-informed decisions, improving outcomes by 40%.

20% Enhanced Customer Experience

Improved retention rate by 20% as clients observed significant increases in customer satisfaction and loyalty.

Innovation & Competitive Advantage

Drive product differentiation, create new business models, and sustain a competitive edge in the market.

How We Deliver Value

Assessment & Planning

Understanding our client's business objectives, challenges, and data landscape. Through collaborative discussions, we identify key areas where AI can add value and define clear objectives for the project.

Model Development

We build customized AI models using advanced algorithms.

Integration & Deployment

We seamlessly integrate solutions into existing systems.

Continuous Improvement

We monitor and optimize models for ongoing value.

Business Impact Choosing Narwal

90%

Average Confidence Score/ Solution Accuracy​

42%

Average Reduction in Manual Effort ​

23%

Average Productivity Improvement​

30M+

Estimated Realized
Value​

What else can we help you with?

Share your needs and requirements with us, and we’ll craft a tailored solution to simplify your life.

Request a Consultation session Today!

Download your free resources here

Download Our Brochure for a Comprehensive Insight into Our Services, Solutions, and Commitment to Excellence

Request a Consultation Session Today!

FAQs

What is Generative AI, and why is it important?

Generative AI refers to algorithms capable of creating new content—such as text, images, or music—by learning patterns from existing data. It is important because it drives innovation and creativity, reduces the time and cost of content creation, and enables highly personalized user experiences. At Narwal, we leverage Generative AI to enhance product offerings, automate creative processes, and provide personalized content, driving both customer engagement and operational efficiency. 

What are some examples of AI use cases implemented by Narwal?

Narwal has successfully implemented various AI use cases across industries, including: 

  • Kerberoasting Attack Detection: Enhancing cybersecurity by accurately identifying and prioritizing potential threats.  
  • Customer Service Optimization: Deploying AI-driven chatbots to improve response times and customer satisfaction.  
  • Job Request Prioritization: Using machine learning to streamline recruitment processes and boost revenue in staffing agencies.  
  • Intelligent Document Analyzer: Enabling document summarization and retrieval of information from text, tables, and images across multiple documents, including financial statements, legal and contract documents, knowledge articles, and manuals. This solution ensures great accuracy, ambiguity resolution, context-aware responses, and multilingual support within the private environment of the client.  
  • Healthcare Automation: Automating administrative tasks in hospitals to improve productivity, allowing more focus on patient care.  

These use cases showcase Narwal’s expertise in delivering AI solutions that drive business value. 

What industries does Narwal serve with its AI solutions?

Narwal serves a wide range of industries with its AI solutions, including Finance, Healthcare, Retail, and Manufacturing. We provide tailored AI offerings that address specific challenges, such as fraud detection in finance, predictive maintenance in manufacturing, personalized customer experiences in retail, and enhanced patient care and device security in healthcare. Our industry-specific solutions ensure that clients receive targeted support to overcome their unique challenges. 

What are some key metrics that demonstrate the effectiveness of Narwal's AI solutions?

The effectiveness of Narwal’s AI solutions is demonstrated through key metrics such as a 50-60% average improvement in productivity, a 90% reduction in manual efforts, and a 90% accuracy rate in solutions. These metrics highlight the significant impact of our AI-driven implementations in optimizing operations and enhancing decision-making capabilities. 

How does Narwal ensure the scalability of its AI solutions?

Narwal designs AI solutions with scalability in mind, leveraging cloud platforms such as Azure, AWS, and GCP. We use containerization and microservices architectures to ensure that our AI models can scale seamlessly as business requirements evolve. This approach allows for efficient resource management and rapid deployment of AI solutions across different environments, supporting clients’ growth objectives. 

What technologies and models does Narwal use in its AI solutions?

Narwal employs a wide range of technologies and models to deliver cutting-edge AI solutions, including: 

  • Machine Learning Models: Light GBM, Random Forest, Gradient Boosting, SVM. 
  • Deep Learning Models: Convolutional Neural Networks (CNNs), Long Short-Term Memory Networks (LSTMs). 
  • Generative AI Models: Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and Large Language Models (LLMs) like GPT from OpenAI, Mistral, and Llama models. 

These technologies enable us to create tailored solutions that meet specific business needs across various industries. 

How does Narwal ensure data security and privacy in its AI solutions?

Narwal ensures data security and privacy through a multi-layered approach that includes secure data access, encryption, privacy safeguards, and adherence to ethical AI practices. We implement robust data governance frameworks to maintain data integrity and reliability across our AI solutions. Our approach complies with industry standards and regulations, ensuring that our clients’ data remains secure and their AI initiatives are trustworthy. 

What is Narwal's process for implementing AI solutions?

Narwal follows a structured process for implementing AI solutions, which includes the following steps: 

  • Business Problem Identification: Understanding the client’s needs and defining the problem statement. 
  • Data Collection and Preparation: Gathering relevant data and preparing it for analysis. 
  • Model Development and Training: Building and training AI models to address the identified problems. 
  • Validation and Fine-Tuning: Testing models and refining them to ensure optimal performance. 
  • Deployment: Integrating the models into the client’s environment. 
  • Continuous Monitoring and Optimization: Regularly monitoring the models’ performance and making necessary adjustments. 

This comprehensive approach ensures that our AI solutions are effective, scalable, and aligned with our clients’ business objectives. 

How does Narwal address AI model fairness and bias?

Narwal is committed to ensuring fairness and minimizing bias in AI models. We employ rigorous testing and validation processes to identify and mitigate potential biases. We use techniques such as diverse data collection, bias detection, and data augmentation. Algorithms like Adversarial Debiasing and Fair Classification help mitigate bias during model training, while tools like SHAPLEY enhance explainability. Our models are designed to be fair and ethical, adhering to industry standards and regulatory guidelines to foster trust and equity in AI applications.

What is Narwal's approach to implementing Generative AI solutions?

Narwal’s approach to implementing Generative AI solutions involves understanding the unique business context and desired outcomes. We start with data collection and preparation, followed by model selection—choosing the right Generative AI model based on the business objective to achieve the desired results. Our AI engineers have extensive experience building AI solutions using tools like OpenAI and cloud platforms such as AWS, Azure, and GCP, which include complex LLM models like GPT, Llama, and Gemini. After training the model on relevant datasets, we deploy it within the client’s infrastructure and continuously monitor and refine it to ensure it meets performance benchmarks and business goals.