fbpx


Mentor Based

Streaming Data Processing with AI

Real-Time Intelligence: Harness AI for Streaming Data Processing

Enroll now for early access of e-LMS

MODE
Online/ e-LMS
TYPE
Mentor Based
LEVEL
Moderate
DURATION
3 Weeks

About

Participants will learn how to leverage AI for processing continuous data streams. The program covers stream processing platforms like Apache Kafka and Flink, machine learning models for real-time data, and predictive analytics for instant insights. Emphasis is placed on handling dynamic data at scale using AI.

Aim

To provide in-depth knowledge on how to process real-time data streams using AI technologies. This course focuses on building scalable systems that can ingest, process, and analyze streaming data, enabling instant decision-making in applications like finance, IoT, and e-commerce.

Program Objectives

  • Understand the fundamentals of streaming data and its applications in AI.
  • Learn to build scalable streaming pipelines using Kafka, Flink, or Spark Streaming.
  • Apply AI models for real-time analytics and anomaly detection.
  • Master techniques to ensure scalability and fault tolerance in streaming data systems.
  • Gain hands-on experience with real-time AI solutions.

Program Structure

  1. Introduction to Streaming Data and AI
    • What is Streaming Data?
    • Batch vs. Stream Processing
    • Applications of Streaming Data in AI (e.g., Financial Systems, Real-time Recommendations)
  2. Fundamentals of Data Stream Processing
    • Data Streams and Real-Time Processing Requirements
    • Overview of Stream Processing Architectures
    • Data Ingestion in Real Time (Kafka, Flume)
  3. Streaming Data Processing Tools and Frameworks
    • Apache Spark Streaming
    • Apache Flink for Real-Time Analytics
    • Other Tools: Storm, Heron, and Samza
  4. Data Preprocessing in Streaming Systems
    • Real-Time Data Cleaning and Transformation
    • Sliding Windows and Time-Based Processing
    • Aggregation Techniques for Streaming Data
  5. Machine Learning on Streaming Data
    • Incremental Learning Algorithms
    • Online Learning vs. Offline Learning
    • Stream Processing in AI: Spark MLlib, MOA (Massive Online Analysis)
  6. Deep Learning on Streaming Data
    • Real-Time Neural Network Architectures for Stream Data
    • Deploying Deep Learning Models on Streaming Frameworks
    • Use Cases (e.g., Real-Time Image Classification, Video Analytics)
  7. Natural Language Processing (NLP) on Streaming Data
    • Processing Live Text Streams (e.g., Social Media, News)
    • Real-Time Sentiment Analysis and Topic Detection
    • Stream Processing for NLP Tasks (BERT, GPT on Streaming Data)
  8. Streaming Data for Predictive Analytics
    • Real-Time Prediction Pipelines
    • Anomaly Detection in Streaming Data
    • Fraud Detection in Financial Data Streams
  9. Real-Time Data Visualization and Dashboards
    • Building Dashboards for Streaming Data (Grafana, Kibana)
    • Visualizing Real-Time AI Predictions
    • Monitoring and Alerting in Streaming Systems
  10. Scaling and Optimizing Streaming Systems
    • Handling High-Throughput and Low-Latency Requirements
    • Distributed Streaming Systems (Kubernetes, Docker)
    • Optimizing AI Models in Real-Time Systems
  11. Security and Privacy in Streaming Data
    • Ensuring Data Security in Streaming Systems
    • Data Privacy Challenges in Real-Time Processing
    • Handling Sensitive Data in Streaming AI Applications

Participant’s Eligibility

Data engineers, AI researchers, software developers, and data scientists focusing on real-time data and AI integration.

Program Outcomes

  • Expertise in building and deploying AI models for real-time data.
  • Mastery in streaming data processing using tools like Kafka and Flink.
  • Ability to scale and maintain AI models in live data environments.
  • Proficiency in building fault-tolerant data pipelines for instant decision-making.

Fee Structure

Fee:       INR 8,499             USD 112

We are excited to announce that we now accept payments in over 20 global currencies, in addition to USD. Check out our list to see if your preferred currency is supported. Enjoy the convenience and flexibility of paying in your local currency!

List of Currencies

Batches

Spring
Summer

Live

Autumn
Winter

FOR QUERIES, FEEDBACK OR ASSISTANCE

Contact Learner Support

Best of support with us

Phone (For Voice Call)


WhatsApp (For Call & Chat)

Key Takeaways

Program Deliverables

  • Access to e-LMS
  • Real Time Project for Dissertation
  • Project Guidance
  • Paper Publication Opportunity
  • Self Assessment
  • Final Examination
  • e-Certification
  • e-Marksheet

Future Career Prospects

  • Streaming Data Engineer
  • Real-Time AI Specialist
  • AI-Powered IoT Analyst
  • Real-Time Analytics Engineer
  • Data Streaming Architect
  • Predictive Analytics Engineer

Job Opportunities

  • Companies focused on real-time data processing in industries like finance, healthcare, IoT, and cybersecurity.
  • Startups building AI-driven streaming data solutions for dynamic environments.
  • Cloud providers offering real-time analytics and AI services.

Enter the Hall of Fame!

Take your research to the next level!

Publication Opportunity
Potentially earn a place in our coveted Hall of Fame.

Centre of Excellence
Join the esteemed Centre of Excellence.

Networking and Learning
Network with industry leaders, access ongoing learning opportunities.

Hall of Fame
Get your groundbreaking work considered for publication in a prestigious Open Access Journal (worth ₹20,000/USD 1,000).

Achieve excellence and solidify your reputation among the elite!


×

Related Courses

program_img

Python for Data Science

Recent Feedbacks In Other Workshops

Please prepare better material with both foundamentals on the topics and manifacturing processes. More It was not a good idea to just use existing slides from other presentations put together.
Other sources for informations should also be presented for self tuition

GC Faussone : 2025-01-23 at 10:09 pm

great knowledge about topic.


Mr. Pratik Bhagwan Jagtap : 2025-01-22 at 7:29 pm

In general, it seems to me that the professor knows his subject very well and knows how to explain More it well.
CARLOS OSCAR RODRIGUEZ LEAL : 2025-01-20 at 8:07 am

View All Feedbacks

Still have any Query?