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Full Stack MLOps Course For Beginners

Become an MLOps engineer in just 4 months through intensive hands-on training and learn how to build your own machine learning system from scratch.
Design Thinking
Domain Mastery
Real world case studies
upcoming cohorts
October 20, 2024
upcoming cohorts
Nov 20,2024
Tech you will Learn
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Program Overview

Become an MLOps expert with our comprehensive bootcamp, designed to give you the skills to manage and deploy machine learning models smoothly. With guidance from experienced mentors, you'll learn about CI/CD pipelines, model monitoring, and automated deployment. This online, self-paced program lets you study when it suits you best. Prepare for a rewarding career in the fast-growing field of MLOps with this practical and engaging learning experience.

Make A Life-Changing Career Choice
BIGGEST GROWING INDUSTRY
$349.6 Billion
Amount industry is set to grow by 2030
IN-DEMAND CAREER
45%
Growth in demand for Data Analysts in the next 5 years
MASSIVE JOB OPENINGS
1M+
Job openings and counting for Data Analysts worldwide.
HIGH ENTRY-LEVEL SALARY
₹8-14 LPA+
Current average CTC for entry-level Data Analysts in India.
HIGHLY PAID JOBS
$74K
Current average salary for data analysts worldwide according to Glassdoor. Huge year-on-year growth.
Don't Just Learn. Specialize.
India’s only course with industry specialization in banking and fianance.
50+
Banking case studies
10+
Porblem solving frameworks
Experience 360° deep specialized learning
50+
Assignments
10+
Industry Projects
100+
Hours of Leanring
Learn with Ai
Our program incorporates modern Gen AI based workflows for data science so that you are equipped with the tools of the future.
Made for working professionals
Enjoy flexible learning options. Go at your own pace or learn through live classes with industry experts.
Placement support from dedicated counselors
Mock interviews with senior industry leaders
Craft the perfect resume
Access our network of partner companies
India’s only course with industry specialization in banking and fianance.
50+
Banking case studies
10+
Porblem solving frameworks
Experience 360° deep specialized learning
50+
Assignments
10+
Industry Projects
100+
Hours of Leanring
Learn with Ai
Our program incorporates modern Gen AI based workflows for data science so that you are equipped with the tools of the future.
Made for working professionals
Enjoy flexible learning options. Go at your own pace or learn through live classes with industry experts.
Placement support from dedicated counselors
Mock interviews with senior industry leaders
Craft the perfect resume
Access our network of partner companies
What This Program Has To Offer
Key Features
Get industry specific training
Easy EMI option
7 day, no questions asked money back policy
30 day Pause
Dedicated student support
1:1 mentorship by industry experts
Get practical training by working on actual banking use cases
Learn through industry-approved learning frameworks
Deep Understanding of Analytics
Learn Data Manipulation & cleaning using Excel, SQL and Python
Statistical analysis
Data Visualization using Tableau, Power BI, Matplotlib and Seaborn
Learn Python and R for data analysis & automation
Database Management 
Machine Learning
Specialization in Banking & Finance
Learn core banking & finance concepts 
Master the different Fintech business models & their primary drivers
Understand how to apply data analytics to diverse Fintech products
Industry-tested Problem Solving Frameworks
Learn 15+ problem solving frameworks for finance
Be confident to tackle any problem at your job
Program Eligibility 
No prior coding experience required
Students with any graduate degree welcome
Basic computer literacy
Fundamental math skills
Curiosity and eagerness to learn
What You'll Learn
Core MLOPS You Will Learn
  1. Gain a thorough understanding of MLOps concepts and practices, enabling efficient management and deployment of ML models.
  2. Master techniques for collecting, storing, versioning, and validating data to ensure high data quality and integrity.
  3. Learn to track experiments, tune hyperparameters, and version models to develop high-performing ML solutions.
  4. Understand how to use containerization and orchestration tools to deploy models in scalable and reliable ways.
  5. Implement CI/CD pipelines to automate testing, validation, and deployment of models, ensuring continuous improvement.
  6. Set up systems to monitor and log model performance, detecting issues proactively and maintaining model accuracy.
  7. Ensure ethical AI practices and compliance with regulatory standards, maintaining transparency and accountability.
  8. Apply MLOps principles in a real-world project, demonstrating practical skills and readiness for industry challenges.
Mlops tools and platforms
  1. Kubeflow: Simplifies deploying ML workflows on Kubernetes, supporting all major ML frameworks.
  2. MLflow: Manages the ML lifecycle, including experimentation, reproducibility, and deployment with components like Tracking and Model Registry.
  3. TFX (TensorFlow Extended): Provides end-to-end ML pipeline management, from data ingestion to model deployment
  4. DVC (Data Version Control): Tracks large files, datasets, and models, ensuring reproducibility and collaboration.
  5. Seldon: Deploys, scales, and monitors ML models in production, offering features like canary deployments and drift detection.
  6. Docker: Containerizes ML applications for consistent environments and easier deployment across different platforms.
  7. Streamlit: An open-source app framework for creating custom ML tools and data science dashboards with minimal effort.
  8. Gradio: Allows quick creation of interactive demos and user interfaces for ML models, facilitating easy sharing and testing.
communication and business skills for MLOps
  1. Stakeholder Alignment: Ensure project goals align with business objectives through effective communication.
  2. Clear Documentation: Maintain comprehensive and accessible records of processes and workflows.
  3. Project Management: Plan, execute, and monitor MLOps initiatives to meet deadlines and standards.
  4. Data Presentation: Translate complex data insights into understandable information for non-technical audiences.
  5. Cross-Functional Collaboration: Coordinate seamlessly among data scientists, engineers, and business teams.
Problem Solving and Design Thinking Skills You Will Learn in MLOps
Problem Solving and Design Thinking Skills You Will Learn in MLOps
Curriculum Designed For
Banking & Finance
Module 1: Introduction to MLOps
3 Lectures

Introduction to MLOps offers a comprehensive overview of the core concepts and practices essential for managing and deploying machine learning models in production environments. It covers the unique aspects of MLOps, its benefits, and how it differs from traditional DevOps practices. Mastery of MLOps enables individuals to streamline ML workflows, enhance collaboration between data scientists and operations teams, and ensure the reliability and scalability of ML models, making it a crucial skill set for modern machine learning practitioners.

  • 1.1 Overview of MLOps:
    • MLOps (Machine Learning Operations) integrates machine learning with software engineering and operations to streamline the deployment, monitoring, and maintenance of ML models. MLOps ensures continuous integration, delivery, and automated deployment of ML models, fostering collaboration between data scientists and IT teams
  • 1.2 MLOps vs. DevOps:
    • While DevOps focuses on continuous integration and continuous delivery (CI/CD) for software applications, MLOps extends these principles to include data management, model training, validation, and deployment. MLOps deals with challenges specific to ML, such as versioning data and models, retraining models, and monitoring model performance.
  • 1.3 Benefits of MLOps:
    • Explore the advantages of adopting MLOps, including improved model reliability, scalability, and collaboration.MLOps enhances model reliability through continuous monitoring and automated testing, ensures scalability by leveraging cloud infrastructure and container orchestration, and fosters collaboration by integrating tools that streamline communication between data scientists and operations teams.
Module 2: Data Management for ML
3 Lectures

Data Management for ML focuses on the strategies and tools required for collecting, storing, versioning, and validating data, essential for ensuring data quality and integrity in machine learning projects. By mastering data management techniques, individuals can handle complex datasets, prepare data for model training, and maintain high standards of data quality, enabling them to derive actionable insights and build robust ML models.

  • 1.1 Data Collection Methods:
    • Learn methods for efficiently collecting data from diverse sources such as databases, APIs, and streaming platforms.Efficient data collection is essential for obtaining comprehensive datasets that adequately represent the problem domain. Techniques such as web scraping, API data extraction, and real-time data streaming are commonly used in industries like e-commerce for gathering customer behavior data, in finance for collecting market data, and in healthcare for capturing patient records from IoT devices.
  • 1.2 Data Storage Systems:
    • Understand the importance of choosing appropriate data storage systems for different types of datasets and use cases.Effective data storage is crucial for maintaining the integrity, availability, and scalability of large datasets. Relational databases are commonly used in enterprise applications for structured data storage, while NoSQL databases are preferred for unstructured or semi-structured data storage in applications like social media platforms and IoT systems. Cloud storage solutions offer flexibility and scalability, making them suitable for storing diverse datasets in industries ranging from retail to entertainment.
  • 1.3 Data Versioning and Management:
    • Understand the importance of versioning data to track changes and ensure reproducibility in machine learning workflows.Data versioning is critical for maintaining a historical record of dataset changes, facilitating collaboration, reproducibility, and experimentation in machine learning projects. Version control systems like Git are widely used in software development and data science for tracking changes to code and datasets. Data versioning practices are essential in research, healthcare, and autonomous systems development, where reproducibility and auditability are paramount for ensuring data integrity and model reliability.

Module 3: Model Development and Training
3 Lectures

Model Development and Training covers the essential processes of experiment tracking, hyperparameter tuning, and model versioning. These practices are crucial for developing high-performing and reproducible machine learning models. By mastering these techniques, individuals can streamline the model development process, ensure consistency, and improve model performance, ultimately leading to more effective and reliable ML solutions.

  • 1.1 Experiment Tracking:
    • is vital in industries like pharmaceuticals for documenting drug efficacy, dosage levels, and treatment protocols, ensuring reproducibility and collaboration among researchers.
  • 1.2 Hyperparameter tuning:
    • is extensively used in e-commerce for optimizing recommendation systems, enhancing customer satisfaction, and driving sales through improved product recommendations.
  • 1.3 Model versioning:
    •  is crucial in autonomous vehicle development to maintain safety and performance under various driving conditions, allowing developers to track improvements, rollback changes, and ensure consistency across different iterations of the autonomous driving system.
Module 4: Model Deployment
3 Lectures

Model Deployment focuses on the processes and tools required to move machine learning models from development to production environments. This module covers model serving architectures, containerization, and deployment strategies to ensure models can be quickly and reliably deployed. By mastering these techniques, individuals can ensure that ML models are scalable, maintain high performance, and are easily accessible for real-world applications.

  • 1.1 Model Serving Architectures:
    • Learn about different architectures for serving ML models in production.Model serving architectures find application in various real-world scenarios, such as online streaming platforms, where recommendation models are deployed to personalize content recommendations for users, ensuring a seamless and engaging user experience.
  • 1.2 Containerization with Docker:
    • Understand how to use Docker for containerizing ML models to ensure portability and scalability.Containerization with Docker is extensively utilized in healthcare systems for deploying medical imaging models, enabling healthcare providers to efficiently analyze and diagnose medical images while ensuring scalability and interoperability across different healthcare facilities.
  • 1.3 Deployment Strategies::
    • Explore various strategies for deploying models to production environments.Deployment strategies are essential in finance for deploying fraud detection models to detect and prevent fraudulent activities in real-time transactions, ensuring financial security and compliance with regulatory standards.

Module 5: Continuous Integration and Continuous Deployment (CI/CD)
3 Lectures

CI/CD for ML projects involves designing and implementing automated pipelines that streamline the testing, validation, and deployment of models. This module covers the necessary steps to maintain continuous integration and continuous deployment, ensuring models are always up-to-date and performing optimally. Mastery of CI/CD practices enables individuals to automate repetitive tasks, reduce deployment time, and improve model reliability.

  • 1.1 CI/CD Pipelines for ML:
    • Learn how to design and implement CI/CD pipelines specifically for machine learning projects.CI/CD pipelines for ML are crucial in industries like autonomous driving, where updates to perception models need to be seamlessly integrated into production vehicles to ensure safety and performance.
  • 1.2 Automated Testing and Validation:
    • Explore techniques for automating the testing and validation of ML models.Automated testing and validation techniques are extensively used in healthcare for validating medical diagnosis models, ensuring accuracy and reliability in clinical decision-making processes.
  • 1.3 Continuous Deployment
    • understand the process of continuously deploying updated models to production environments.Continuous deployment practices are vital in e-commerce for deploying product recommendation models, ensuring that users receive personalized recommendations based on the latest data, enhancing user experience and engagement.
Module 6: Monitoring and Logging
3 Lectures

Monitoring and Logging teaches techniques for setting up systems to continuously track model performance and log relevant metrics. Continuous monitoring is crucial for detecting issues such as model drift, performance degradation, and data inconsistencies. By mastering these techniques, individuals can ensure that models maintain high accuracy and reliability over time, enabling proactive maintenance and timely updates.

  • 1.1 Monitoring Techniques:
    • Learn how to set up monitoring systems to track model performance in production.Monitoring techniques are crucial in healthcare for monitoring patient risk prediction models, ensuring timely intervention and patient safety.
  • 1.2 Logging Best Practices:
    • Understand the best practices for logging model metrics and performance data.Logging best practices are widely applied in finance for logging trading algorithm performance metrics, enabling risk assessment and compliance monitoring.
  • 1.3 Model Drift Detection:
    • Explore methods for detecting and addressing model drift to maintain accuracy.Model drift detection is essential in manufacturing for detecting deviations in quality control models, ensuring product consistency and minimizing defects.
Module 7: Model Maintenance and Governance
3 Lectures

Model Maintenance and Governance covers strategies for ongoing model maintenance, retraining, and ensuring ethical AI practices. This module emphasizes the importance of maintaining and updating models to keep them relevant and compliant with regulatory standards. By mastering these techniques, individuals can ensure that their ML models are ethical, transparent, and continuously improving.

  • 1.1 Model Maintenance:
    • Learn strategies for regularly maintaining and updating ML models to ensure ongoing performance.Model maintenance strategies are crucial in the retail industry for updating demand forecasting models to adapt to changing market trends and consumer behavior.
  • 1.2 Retraining Models:
    • Explore techniques for automating the retraining of models based on new data.Retraining models techniques are extensively used in telecommunications for automating the retraining of customer churn prediction models, ensuring accuracy and reliability in customer retention strategies.
  • 1.3 Ethical AI and Compliance:
    • Understand the principles of ethical AI and how to ensure compliance with regulatory standards.Ethical AI and compliance principles are vital in healthcare for ensuring patient privacy and confidentiality in medical diagnosis models, complying with HIPAA regulations and ethical guidelines.
Industry Case Studies
You'll Work On
Advanced Fraud Detection Techniques in Banking
Learn the skills and knowledge to detect fraudulent activities in credit card transactions, ensuring financial security for banking institutions and customers.
Skills Learned:
Data Preprocessing
Feature Engineering
Model Evaluation
Anomaly Detection Techniques
Operational Efficiency Optimization in Banking
Develop the tools and techniques to forecast call volumes in banking call centers, improving resource allocation and enhancing customer service efficiency.
Skills Learned:
Time Series Forecasting
Model Evaluation
Operational Optimization Techniques
Customer Segmentation Strategies for Banking Marketing
Learn how to segment bank customers based on their behavior and demographics to optimize marketing campaigns for targeted customer engagement and retention.
Skills Learned:
Data Visualization
Clustering Algorithms
Customer Profiling techniques
Sales Prediction and Optimization in Banking
Learn how to predict sales performance and optimize sales strategies for banking products and services that drive revenue growth and customer acquisition.
Skills Learned:
Predictive Modeling
Sales forecasting
Model Interpretation Techniques
Real-time ATM Fraud Detection in Banking
Equip yourself with the skills to detect fraudulent activities in ATM transactions, safeguarding banking institutions and customers from financial losses.
Skills Learned:
Data Preprocessing
Model Evaluation
Anomaly Detection Techniques
Predictive Modeling for Loan Default Prediction in Banking
Predict loan default probabilities that enable banks to assess credit risk and make informed lending decisions.
Skills Learned:
Feature engineering
Risk Assessment
Model Evaluation Techniques
Predictive Analytics for Customer Lifetime Value Estimation
Learn how to estimate the lifetime value of bank customers, facilitating targeted marketing strategies and personalized customer experiences.
Skills Learned:
Customer Segmentation
Predictive modeling
Model Evaluation
Personalized Cross-Selling Recommendations in Banking
Gain the skills to build recommendation systems for cross-selling banking products and services based on customer behavior and preferences.
Skills Learned:
Collaborative Filtering
Recommendation Algorithms
Customer Profiling Techniques
Machine Learning for Mortgage Risk Assessment in Banking
Learn the tools to assess mortgage loan risks, enabling banks to make informed lending decisions and manage credit risk effectively.
Skills Learned:
Feature Selection
Risk Modeling
Credit Scoring Techniques
"
“The team was thrilled with the quality of instruction provided. We have requests from teams from other departments to undertake the training as well.”
Avinash Purohit
DGM, Canara Bank
Is This Bootcamp Right For You?
Are you looking for a career change?
Do you want to switch from your current job to a more lucrative career as a data analyst in finance ?
Do you want a promotion?
Are you a banking or finance professional looking to upgrade your career with the most sought after skill in today’s market - data analytics?
Are you a beginner to data analytics?
Are you a recent graduate looking for a comprehensive program to teach you everything you need to know to launch your career as a data analyst in the financial sector?

If you answered "Yes" to any of these questions, SkillCamper's Data Analyst Bootcamp is the perfect fit for you!

Try a free Masterclass
Alumni Success Stories

From career switchers to college grads, we have helped a diverse range of learners kickstart & progress rapidly in their data science careers. 

“I decided to shift my career to Data Science.”

After joining SkillCamper’s Data Science Bootcamp my confidence has increased because of the 1:1 attention I got from mentors that helped me cope with the new field. My doubts were resolved easily and the instructors are great!
Fatema Rampurawala
Graduate in BSC-IT

 “I have received a lot of help from the cohort.”

Everybody is collaborative and we help each other in getting clearer understanding when we are stuck. SkillCamper fosters a supportive environment where every question is valued, ensuring that no one feels left behind.
Pragati Jha
Public Relations Professional

“I feel 85-90% confident about sitting in an interview.”

SkillCamper’s soft skills training and placement support has been a huge help. The Data Science Bootcamp was a great learning experience and I’m eager to start applying these skills at my job. 
Supriya K
Final Year Student
SkillCamper Is Made For Working Professionals.

You don’t need to quit your job to learn in-demand skills and upgrade your career. Go at your own pace and get 1:1 support from mentors, program advisors and career experts all dedicated to helping you succeed.

SkillCamper

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& Courses

Other Bootcamps & Degree Programs

Online Certification
Program

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16 weeks course

No time limit

20-60 weeks course

3-4 weeks course

1:1 Mentorship

No learner support

1:1 support may or may not be available

No learner support

Access to industry experts

No access to any mentor

Access to industry may or may not be available

No access to industry experts

Live classes with experts

No live classes

Live classes only

No live classes

Dedicated academic counselors to ensure you complete course requirements

No accountability

Accountability through assignments and grading

Limited accountability

15-20 hours of time commitment per week - designed for working professionals

No time commitment

Full-time commitment - not made for working professionals

8-10 hours per week of time commitment - suited to working professionals

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Learn on a cutting-edge AI learning platform. Get mentored by industry experts with decades of experience, on a platform designed for ease and personalized learning journeys. It is excellence in learning, made accessible.

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Live Interaction

Self paced

Course Fee

₹ 75,000

₹ 50,000

Curriculum & Course Materials

Live coding environment

AI-based learning platform

100+ hours of instruction

20+ assignments

10+ banking & finance case studies

Banking & finance domain focused curriculum

Capstone projects

Live Classes

Limited

Flexible study options

Cancel anytime in first 7 days, full refund

Mentors

15+ hours of sessions with industry veterans & experts

Personalized mentorship by course instructors

Unlimited 1:1 doubt solving sessions

Career Support

Personalized placement assistance

1:1 mock interviews with industry experts

Soft-skills training module

Essential digital tools for digital workplace module

Interview preparation module

Masterclass on resume building & LinkedIn

Access to curated companies & jobs

Live Interaction

Self paced

Course Fee

$1000

$750

Curriculum & Course Materials

Live coding environment

AI-based learning platform

100+ hours of instruction

20+ assignments

10+ banking & finance case studies

Banking & finance domain focused curriculum

Capstone projects

Live Classes

Limited

Flexible study options

Cancel anytime in first 7 days, full refund

Mentors

15+ hours of sessions with industry veterans & experts

Personalized mentorship by course instructors

Unlimited 1:1 doubt solving sessions

Career Support

Personalized placement assistance

1:1 mock interviews with industry experts

Soft-skills training module

Essential digital tools for digital workplace module

Interview preparation module

Masterclass on resume building & LinkedIn

Access to curated companies & jobs

Frequently Asked Questions
What technologies will I learn in the Data Science bootcamps?
You will learn Python, R, SQL, Power BI, Tableau, Excel, Pandas, Numpy, Matplotlib, Seaborn, and PySpark.
Can I start with no prior experience in Data Science?
Yes, our programs are designed for both beginners and those looking to deepen their knowledge. We offer fundamental courses as well as advanced bootcamps.
What is the duration of your Data Science bootcamps?
Our bootcamps are designed to be completed in 4 months with a focus on real-world applications in the banking and finance sectors.
How is the curriculum for the Data Science bootcamp structured?
The curriculum includes hands-on projects, case studies focused on the banking and finance industry, and courses on core data analysis tools and techniques.
Will I have access to the course materials after the bootcamp is over?
Yes, you will have lifetime access to all course materials, which you can refer to at any time to refresh your knowledge or tackle new challenges.
 What type of job support do you provide after completing the course?
We offer comprehensive placement assistance, including resume building, mock interviews, and leveraging our network of industry partners.
How do you prepare students for the job market?
We equip students with industry-relevant skills, help craft winning resumes, and provide mock interview practice with experienced mentors.
Do you guarantee a job after completing the course?
While we do not guarantee a job, we provide extensive support to help you become highly competitive in the job market.
 Can you help me find a job in any specific industry?
Our job assistance is generalized; we prepare you for a variety of roles in the data science field rather than focusing on specific industries.
What is the cost of the Data Science bootcamp?
The cost varies depending on the program. Our full bootcamp is priced between ₹50,000 and ₹75,000, depending on whether you choose self-paced or live instruction.
 Are scholarships available for the courses?
Yes, we offer scholarships that can cover up to 70% of the tuition fees, making our courses more accessible to a wider range of students.
What is included in the course fee?
The fee includes access to all course materials, live coding sessions, AI-based learning platform, case studies, capstone projects, and mentorship from industry experts.
What payment options are available for the course fees?
We offer flexible payment options, including easy EMIs, and you can cancel anytime in the first 7 days for a full refund.
Is financial aid or other support available aside from scholarships?
While our primary financial support is through scholarships, our enrollment advisors can also assist you with payment plans and financing options to help manage the cost of your education.
SkillCamper Learner Support

Talk to program advisors.
We are here to help you anytime you need.