AI MLOPS Masters

Artificial Intelligence course in Hyderabad

Artificial Intelligence Course in Hyderabad

with

100% Placements & Internships

Artificial Intelligence Course in Hyderabad

Batch Details

Trainer NameBharath SreeRam
Trainer Experience25+Years
TimingsMonday to Saturday (Morning and evening)
Next Batch Date18-Feb-2026 AT 11:00 AM
Training ModesClassroom & Online
Call us at+91 9000360654
Email us ataimlopsmasters.in@gmail.com
For More Details atFor More Demo Details

 

Artificial Intelligence Institute In Hyderabad

Why choose us?

Artificial Intelligence Training In Hyderabad

Artificial Intelligence Curriculum

Module 1: Introduction to DevOps & MLOps
  • What is DevOps?

  • What is MLOps?

  • Difference: DevOps vs MLOps

  • Why transition from DevOps to MLOps?

  • Key tools & ecosystem overview
  • SDLC phases

  • ML project lifecycle (data, training, deployment, monitoring)

  • Challenges of ML in production

  • Mapping SDLC to ML lifecycle

  • Git basics (branching, merging, pull requests)

  • GitHub/GitLab for collaboration

  • Managing ML code vs data vs model versions

  • DVC (Data Version Control)

  • What is Docker?

  • Creating & running Docker containers

  • Docker for ML environments

  • Best practices for reproducibility

  • What is CI/CD?

  • Jenkins, GitHub Actions, GitLab CI

  • Build pipelines in DevOp

  • Automated testing strategies
  • Differences between CI/CD and ML pipelines

     

  • Testing ML code, data, and models

     

  • Automated retraining pipelines

     

  • Tools: Kubeflow, MLflow, Airflow

     

  • IaC basics: Terraform, Ansible

  • Cloud infrastructure provisioning

  • Reproducible ML environments

  • Multi-cloud deployments
  • AWS Sagemaker, Azure ML, GCP Vertex AI

  • Managed vs self-managed ML platforms

  • Pricing & scaling strategies

  • Hybrid & on-prem ML infrastructure
  • Data ingestion pipelines

  • Data cleaning & transformation

  • Batch vs real-time processing

  • Tools: Apache Kafka, Spark, Flink
  • Why track experiments?

  • MLflow tracking

  • Weights & Biases (W&B)

  • Comparing models & metrics

  • What is model packaging?

  • Building Docker images for ML models

  • REST API deployment (Flask, FastAPI)

  • gRPC for high-performance ML services

  • What is continuous training?

  • Detecting data drift

  • Automating retraining pipelines

  • Retraining frequency strategies

  • Monitoring servers & apps (DevOps)

  • Monitoring ML models in production

  • Key metrics: accuracy, latency, drift

  • Tools: Prometheus, Grafana, Evidently AI

  • Feature extraction pipelines

  • Feature versioning & storage

  • Online vs offline features

  • Feature stores (Feast, Tecton)

  • Data security & privacy

  • GDPR, HIPAA, SOC2 considerations

  • Role-based access in ML pipelines

  • Audit trails & compliance monitoring

  • What is orchestration?

     

  • Apache Airflow for ML pipelines

     

  • Kubeflow Pipelines basics

  • Dagster & Prefect overview
  • Batch serving vs real-time serving

  • Model inference APIs

  • Serverless deployment (AWS Lambda, GCP Cloud Functions)

  • Scalable serving with Kubernetes

  • Kubernetes basics (Pods, Services, Deployments)

  • Running ML workloads on Kubernetes

  • Helm charts for ML apps

  • Kubeflow on Kubernetes
  • What is hyperparameter optimization?

  • Manual vs automated tuning

  • Tools: Optuna, Ray Tune

  • Parallel & distributed tuning

  • Unit testing ML code

  • Testing datasets

  • Validating model outputs

  • End-to-end ML pipeline testing

  • Why explainability matters

  • SHAP, LIME, ELI5 tools

  • Explaining predictions to stakeholders

  • Interpretable ML in regulated industries

  • Understanding bias in ML

  • Metrics for fairness evaluation

  • Bias mitigation strategies

  • Case studies in ethical AI
  • What is drift?

  • Detecting drift in production

  • Statistical & ML-based drift detection

  • Drift handling automation

  • Why A/B test models?

  • Experiment design

  • Canary deployments

Tools for A/B testing

  • Centralized model storage

  • Versioning models in registry

  • Promoting models across environments

  • Tools: MLflow Registry, SageMaker Model Registry

  • Securing DevOps pipelines

  • Securing ML data & models

  • Model poisoning attacks

  • Secrets management (Vault, KMS)
  • ML at the edge (IoT devices)

  • Challenges of edge inference

  • TensorRT, ONNX Runtime

  • Use cases in real-time analytics

  • Horizontal vs vertical scaling

  • Auto-scaling ML services

  • Distributed ML training

  • Spark MLlib, Horovod, Ray

  • Tracking ML pipeline costs

  • Spot instances & autoscaling

  • Cost-effective data storage

  • Monitoring cloud bills

  • Streaming data processing

  • Real-time feature pipelines

  • Low-latency model serving

  • Tools: Kafka Streams, Flink, Ray Serv
  • Pre-trained models in pipelines

  • Fine-tuning workflows

  • Deployment of transfer learning models

  • Reducing training costs with TL
  • Managing GPU workloads

  • Scaling DL training

  • TensorFlow Extended (TFX)

  • PyTorch Lightning for production
  • What is AutoML?

  • H2O.ai, Google AutoML, Auto-Sklearn

  • Automating ML pipelines

  • Trade-offs of AutoML

  • Quantization, pruning, distillation

  • Optimizing inference speed

  • Reducing model size for deployment

  • Tools: TensorRT, ONNX
  • Why multi-cloud MLOps?

  • Challenges of hybrid clouds

  • Tools for portability

  • Disaster recovery strategies

  • Kubeflow Pipelines deep dive

  • Katib for hyperparameter tuning

  • KFServing for model deployment

  • Advanced pipeline management

  • What is DataOps?

  • DataOps vs MLOps

  • DataOps tools (Great Expectations, Deequ)

  • End-to-end data quality pipelines
  • Integrating LLMs in pipelines

  • Fine-tuning GPT models

  • Serving large language models (LLMs)

  • Challenges in GenAI operations

  • What is observability?

  • Metrics, logs, and traces in ML

  • Tools: Arize AI, Fiddler AI

  • Detecting anomalies in production
  • Defining responsible AI

  • AI ethics frameworks

  • Governance practices in MLOps

  • Regulatory compliance

  • Multi-metric monitoring

  • Alerting & anomaly detection

  • Self-healing ML pipelines

  • Case study: real-time fraud detection
  • Case study: E-commerce recommendation system

  • Case study: Banking fraud detection

  • Case study: Healthcare predictive analytics

  • Lessons from industry adoption

  • What is serverless ML?

  • FaaS in ML pipelines

  • AWS Lambda, GCP Cloud Run

  • Pros & cons of serverless MLOps
  • Building scalable ML APIs

  • API gateways (Kong, Apigee)

  • Rate limiting & authentication

  • Versioning APIs

  • Advanced CI/CD workflows

  • Blue-green deployment for ML models

  • Rollback strategies for ML pipelines

  • Multi-stage pipeline execution
  • Roles in MLOps: Data Engineer, ML Engineer, DevOps Engineer

  • Communication best practices

  • Agile & Scrum in MLOps

  • Cross-functional collaboration
  • From data ingestion → model training → deployment → monitoring

     

  • Toolchain selection

     

  • Orchestration setup

  • Hands-on project
  • MLflow vs Kubeflow

  • TFX vs Airflow

  • W&B vs Arize AI

  • Choosing the right stack
  • MLOps roles & responsibilities

  • Skills required (DevOps + ML)

  • Salary trends in India & abroad

  • Certifications & career roadmap

  • Real-world ML project deployment

  • End-to-end CI/CD + CT pipeline

  • Documentation & presentation

  • Final evaluation & feedback

Artificial Intelligence Trainer Details

INSTRUCTOR

Bharath Sreeram

Expert & Lead Instructor

25+ Years Experience

About the tutor:

Bharath Sreeram brings 25 years of deep, hands-on experience in building intelligent systems that work reliably in the real world. His strengths lie in ML model training, end-to-end MLOps lifecycle management, and enterprise-grade implementations of ML and MLOps using Azure Databricks with PySpark, Azure Machine Learning, and ML model deployment on Azure Kubernetes Service (AKS). His career reflects not just technical excellence, but a lifelong commitment to evolving with technology and sharing that knowledge meaningfully.

As a mentor, Bharath teaches with heart and humility. He takes time to understand each learner’s journey, breaks down complex ideas with clarity, and connects learning to real industry challenges. His guidance goes beyond tools and pipelines—he builds confidence, inspires curiosity, and prepares learners to step into AI Engineer, MLOps Engineer, and Data Scientist roles with skill, purpose, and belief in themselves.

What truly sets Bharath apart is the way he teaches—with patience, empathy, and a genuine desire to see learners succeed. He simplifies complex concepts, connects learning to real industry challenges, and mentors students as individuals, not just professionals. Under his guidance, learners don’t just gain technical skills—they gain confidence, clarity, and the courage to step into roles like AI Engineer, MLOps Engineer, and Data Scientist fully prepared and inspired.

Why Join Our Artificial Intelligence Institute In Hyderabad

Key Points

Learn from industry professionals with 25+ years of combined experience in Artificial Intelligence, Machine Learning, and Data Science. Our expert trainers use real-world AI case studies to deliver hands-on, job-ready learning, ensuring you gain practical skills beyond theory.

Our program emphasizes hands-on labs, real-time projects, and practical case studies. Instead of just learning concepts, you actively implement them—building the confidence to solve real-world challenges effectively.

The course is designed around the latest industry standards and trends, ensuring your skills stay aligned with what companies are actively looking for. This keeps your expertise relevant and in demand in the job market.

Gain hands-on expertise in popular Artificial Intelligence and Machine Learning tools such as TensorFlow, PyTorch, Scikit-learn, Pandas, NumPy, MLflow, and MLOps platforms. The training also covers AI workflows on leading cloud platforms like AWS, Azure, and GCP, ensuring you become job-ready with strong, tool-based AI expertise.

We offer both classroom and online training options, with flexible weekday and weekend batches. This allows you to balance your learning comfortably alongside work or academic commitments.

Our trainers provide step-by-step guidance to help you crack global certifications. Mock exams, study material, and doubt-clearing sessions are included. You will feel fully prepared for certification success.

We support you with resume preparation, mock interviews, and end-to-end placement guidance. Our dedicated placement team connects you with top recruiters and continues to support you until you successfully land your desired role.

Get high-quality training at a competitive fee structure, with easy EMI payment options available. This makes industry-level education affordable and accessible for everyone.

Join a community of successful alumni placed in top companies. Connect with industry professionals, gain valuable career referrals, and stay supported through a strong network even after completing the course.

What is Artificial Intelligence ?

Objectives of the Artificial Intelligence Course In Hyderabad

Objectives of the DevOps to MLOps Course In Hyderabad

Prerequisites of Artificial Intelligence

prerequisites of artificial intelligence
Who should learn DevOps to MLOps Course

Who should learn Artificial Intelligence Course

Artificial Intelligence in Hyderabad

Course Outline

Learn the fundamentals of Artificial Intelligence, key workflows, and how automation supports scalable AI-driven projects across industries.

Master Git and GitHub to manage Artificial Intelligence code, datasets, and experiments effectively. Learn best practices for team collaboration on AI models and pipelines, along with branching strategies that support smooth model development and deployment.

Build automated pipelines for Artificial Intelligence models using CI/CD tools like Jenkins, GitLab CI/CD, and GitHub Actions. Learn to integrate data and code validation to ensure faster, reliable, and consistent AI model delivery.

Learn Docker for packaging Artificial Intelligence models and Kubernetes for scaling AI deployments. Understand how containerization improves reproducibility, efficiency, and reliability, and practice deploying AI services on clustered environments.

Use tools like MLflow, DVC, and TensorBoard for Artificial Intelligence model versioning and experiment tracking. Learn effective hyperparameter tuning techniques and gain hands-on experience in monitoring model performance across different datasets.

Deploy Artificial Intelligence models as REST APIs, microservices, and serverless functions, and learn to deploy them on AWS SageMaker, Azure Machine Learning, and Google Cloud AI Platform using scalable release strategies like A/B testing and canary deployments.

Implement production monitoring for Artificial Intelligence models using tools like Prometheus and Grafana. Learn anomaly detection, model drift monitoring, and alerting to ensure reliable and scalable AI systems.

Automate Artificial Intelligence retraining workflows, testing, and data pipelines, while learning to scale AI workloads using cloud-native tools and apply cost-optimization strategies for handling large datasets efficiently.

Work on real-time Artificial Intelligence projects using hands-on labs and cloud-based tools. Solve practical business use cases and present end-to-end AI solutions that demonstrate automation, scalability, and real-world impact.

Artificial Intelligence Course In Hyderabad

Modes

Classroom Training

Online Training

Corporate Training

Artificial Intelligence Coaching In Hyderabad

Career Opportunities

01

Artificial Intelligence Engineer

AI Engineers design, build, and deploy intelligent systems using machine learning and deep learning models. They work on real-world applications such as recommendation systems, automation platforms, and intelligent analytics solutions.

02

Machine Learning Engineer

Machine Learning Engineers focus on developing, training, and optimizing ML models. Their role involves working with large datasets, selecting algorithms, improving model accuracy, and deploying scalable ML solutions into production environments.

03

Data Scientist

Data Scientists use Artificial Intelligence and advanced analytics to extract insights from structured and unstructured data. They help businesses make data-driven decisions by building predictive models and solving complex business problems.

04

NLP Engineer

Natural Language Processing Engineers build AI systems that understand and process human language. They work on applications such as chatbots, voice assistants, sentiment analysis, and document automation systems.

05

Computer Vision Engineer

Computer Vision Engineers develop AI solutions that analyze images and videos. Their work includes facial recognition, medical imaging, object detection, and video analytics used in industries like healthcare, security, and retail.

06

AI Consultant / AI Specialist

AI Consultants help organizations identify opportunities to apply Artificial Intelligence effectively. They design AI strategies, guide implementation, and ensure AI solutions align with business goals across different domains.

Skills Developed

Continuous Integration & Deployment for ML

You’ll master building CI/CD pipelines not just for code, but also for ML models. This ensures smooth and automated delivery of models into production environments.

Model Monitoring & Performance Tracking

Skills in monitoring deployed models, tracking drift, and ensuring accuracy over time are developed. This helps keep ML systems reliable in real-world use.

Data Pipeline Management

You will learn to design and manage scalable data pipelines. These pipelines handle data ingestion, preprocessing, and transformation critical for machine learning workflows.

Cloud & Containerization Skills

Training builds expertise in Docker, Kubernetes, and cloud platforms like AWS, Azure, and GCP. These skills help you deploy and scale ML models in production environments.

Automation & Orchestration

You’ll develop automation skills for tasks like model retraining, testing, and deployment. Orchestration tools help maintain consistency across ML workflows.

Collaboration & Workflow Integration

Strong collaboration skills are fostered, bridging Data Science and DevOps teams. You’ll learn to integrate workflows across coding, data, and production systems effectively.

Artificial Intelligence Coaching In Hyderabad

Career Opportunities

01

Artificial Intelligence Engineer

AI Engineers design, build, and deploy intelligent systems using machine learning and deep learning models. They work on real-world applications such as recommendation systems, automation platforms, and intelligent analytics solutions.

02

Machine Learning Engineer

Machine Learning Engineers focus on developing, training, and optimizing ML models. Their role involves working with large datasets, selecting algorithms, improving model accuracy, and deploying scalable ML solutions into production environments.

03

Data Scientist

Data Scientists use Artificial Intelligence and advanced analytics to extract insights from structured and unstructured data. They help businesses make data-driven decisions by building predictive models and solving complex business problems.

04

NLP Engineer

Natural Language Processing Engineers build AI systems that understand and process human language. They work on applications such as chatbots, voice assistants, sentiment analysis, and document automation systems.

05

Computer Vision Engineer

Computer Vision Engineers develop AI solutions that analyze images and videos. Their work includes facial recognition, medical imaging, object detection, and video analytics used in industries like healthcare, security, and retail.

06

AI Consultant / AI Specialist

AI Consultants help organizations identify opportunities to apply Artificial Intelligence effectively. They design AI strategies, guide implementation, and ensure AI solutions align with business goals across different domains.

Artificial Intelligence Course Online Certifications

DevOps, MLOps Training

Companies that Hire From Amazon Masters

Artificial Intelligence Course Training In Hyderabad
Benefits

The course delivers practical AI experience through live projects and case studies, exposing learners to real-world AI and MLOps pipelines and preparing them for industry from day one.

Learn directly from professionals with real-world experience in Artificial Intelligence, MLOps, and model deployment, ensuring training aligned with current industry standards and demands.

The program covers core AI concepts to advanced MLOps workflows, including CI/CD, automation, model deployment, monitoring, and scalable AI systems in production.

This course prepares you for high-demand AI roles like MLOps Engineer, Cloud ML Specialist, and AI DevOps Consultant, with complete resume and interview support.

Gain hands-on experience with industry-standard AI tools like Docker, Kubernetes, MLflow, TensorFlow, and major cloud platforms, enabling you to confidently handle real-world AI projects.

Earn globally recognized Artificial Intelligence certifications that enhance your career prospects and unlock job opportunities in both Indian and international markets.

Artificial Intelligence Placement Opportunities

Artificial Intelligence Market Trend

Artificial Intelligence Market Trend: Rapid MLOps Adoption

Enterprises are increasingly adopting MLOps to efficiently manage AI and machine learning pipelines, driven by the need for automation, scalability, and faster deployment of AI models in production environments.

AI Integration with Cloud Platforms

Leading cloud providers like AWS, Azure, and GCP offer specialized AI and MLOps services, enabling enterprises to implement AI solutions faster and driving higher demand for skilled professionals.

Growing Demand for AI-Powered Automation

AI-driven automation is transforming model training, testing, and monitoring. As industries adopt Artificial Intelligence, MLOps tools are becoming essential for improving efficiency, accuracy, and reducing manual effort.

Rise in AI Model Governance and Compliance

Stricter data privacy regulations are driving enterprises to adopt explainable AI and robust model governance. AI and MLOps frameworks are evolving to ensure compliance, security, and transparency across industries like finance and healthcare.

Increased Collaboration in Artificial Intelligence

AI and MLOps bridge the gap between data scientists and IT/DevOps teams, fostering faster innovation cycles and delivering more reliable, production-ready AI solutions.

 
 

Expanding Use of Artificial Intelligence Across Industries

Industries such as retail, finance, healthcare, and e-commerce are increasingly adopting AI. Applications range from fraud detection to personalized recommendations, driving higher demand and market growth for AI solutions.

Surge in Open-Source AI Tools

Open-source platforms like MLflow, Kubeflow, and TensorFlow Extended are accelerating AI adoption. Enterprises favor these tools for their flexibility, customization, and cost-effective deployment of AI solutions.

 
 

Rising Job Opportunities in Artificial Intelligence

Demand for skilled AI professionals is growing rapidly. Roles such as AI Engineer, MLOps Specialist, and Cloud AI Engineer are becoming highly sought-after across industries.

What is driving the AI market growth?

Rapid adoption of AI across industries for automation, efficiency, and decision-making drives growth.

Finance, healthcare, retail, e-commerce, and manufacturing are leading AI adoption.

MLOps streamlines AI model deployment, monitoring, and scalability in production.

Cloud platforms like AWS, Azure, and GCP enable faster, cost-effective AI deployment.

Yes, tools like MLflow, Kubeflow, and TensorFlow Extended are widely adopted.

AI Engineer, MLOps Specialist, Cloud AI Engineer, and AI DevOps Consultant

AI enhances automation, predictive analytics, personalization, and operational efficiency.

AI adoption is global, with strong demand in India, the US, Europe, and emerging markets.

Stricter data privacy laws require explainable, secure, and compliant AI models.

Growing AI-powered automation, cross-industry applications, and cloud integration will shape the future.

 

Enroll in DevOps To MLOps Training in Hyderabad