Machine Learning Training in Vijayawada
- ⭐ 4.8 (2,203 Reviews) Rating on every verified platform
- Beginner to Advanced
- Hands On Projects
- Placement-Focused Curriculum
- Mentorship from Industry Experts
VIJAYAWADA
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Powerful Partnerships, Greater Impact
Building bridges between learning and real-world success.










50 days Instructor Led Training
Self-Paced Videos
Exercises & Projects
Authorized Certification
Flexible Schedule
Lifetime Access & Upgrade
247 Lifetime Support
Course Overview
Overview and Key Features of Machine Learning course in Vijayawada
Provides a quick overview of ML concepts with key features like hands-on projects, expert training, and career support.
This Machine Learning course in Vijayawada by codegnan comes with the objective of helping IT and non-IT individuals enter the world of machine learning. It starts from the very basics so no need to have prior knowledge about this subject.
Plus, here are some key features of the course that make it worth your time and money.
- Course duration: 1 month (30 days)
- Instructor-led classes for that extra support.
- Flexible time slots available for your convenience.
- 24×7 lifetime support and access to learning resources.
- Option of getting one-on-one training.
- Work on live projects.
- Get authorized certification by codegnan.
Career Growth
Career Scope for Machine Learning
in Vijayawada
Having Machine Learning as your skill can help you bag some of the highest salaries in India, even as a fresher. For example, the average salary of a machine learning engineer in India is around ₹8.8 LPA, that also for someone with 0-5 years of experience.
However, depending on a lot of factors, it can range anywhere between ₹3.0 to ₹20.7 LPA.
And if you are worried if you will be able to secure a job in this field or not, then you can search for machine learning engineering jobs in India and have a look at the long list of active jobs you can apply for.
1. Fundamentals of Machine Learning
Build a strong understanding of machine learning concepts, covering supervised, unsupervised, and reinforcement learning, preparing you for diverse real-world challenges.
2. Gain Project Execution Skills
Learn to execute end-to-end ML projects, from data engineering to model deployment, through practical, hands-on projects.
3. Proficiency in Python
Master Python and key data libraries (Pandas, NumPy), which are essential skills for data manipulation and model implementation.
4. Data Visualization
Develop practical data visualization skills using Matplotlib, Seaborn, and Plotly, that help you to communicate insights and make informed decisions based on data analysis.
Learning Path
What You’ll Learn
A step-by-step roadmap designed to take you from fundamentals to job-ready expertise.
- HTML, CSS, JavaScript
- Frontend Frameworks (React / Angular – as per curriculum)
- Core Java & Advanced Java
- Object-Oriented Programming (OOPs)
- Core Java & Advanced Java
- Object-Oriented Programming (OOPs)
- HTML, CSS, JavaScript
- Frontend Frameworks (React / Angular – as per curriculum)
- Core Java & Advanced Java
- Object-Oriented Programming (OOPs)
- HTML, CSS, JavaScript
- Frontend Frameworks (React / Angular – as per curriculum)
- Final Project & Certification
- HTML, CSS, JavaScript
- Frontend Frameworks (React / Angular – as per curriculum)
Understanding
Understand market needs and define product direction. Conduct research, analyze competitors, and establish product vision. Create MVP and development roadmap aligned with business goals.
Design and Prototyping
This quarter transforms strategy into product elements. The focus shifts to creating a foundation through design and features. We establish the architecture, develop functionalities, and create a user experience that meets needs.
Development and Testing
The refinement quarter focuses on validation. We release the beta version to users, gathering feedback on performance. This phase enhances features based on feedback and prepares the product for market demands.
Launch and Support
The culmination quarter focuses on market entry and operations. This phase ensures the product is ready through testing. We prepare launch strategies and support systems for a smooth transition.
You'll Have
Everything You Need to Become
Job-Ready
Industry-recognized certification, modern tools, real-world projects, and dedicated placement support — all in one complete program.
Placement Support
- Java Full Stack certification validated by industry experts
- Mock interviews with technical & HR rounds
- Placement assistance with hiring partner companies
Real-World Projects
- Java Full Stack certification validated by industry experts
- Mock interviews with technical & HR rounds
- Placement assistance with hiring partner companies
Tools You’ll Learn
- Java Full Stack certification validated by industry experts
- Mock interviews with technical & HR rounds
- Placement assistance with hiring partner companies
Industry-Recognized Certification
- Java Full Stack certification validated by industry experts
- Mock interviews with technical & HR rounds
- Placement assistance with hiring partner companies
Curriculum
Machine Learning Course Curriculum in Vijayawada
Covers ML fundamentals, algorithms, tools, and hands-on projects for practical learning.
- Aptitude: Number system – basics
- DSA: Program flow & dry run, basic loops
- Build: Git & GitHub basics, commit rules
- Lab: Java setup, print & input
- Build: CLI “Hello + Bio” app
- Soft: 30-sec introduction + pronunciation drill
- Aptitude: Number system – advanced
- DSA: If-else conditions
- Build: Variables & operators planning
- Lab: Calculator v1
- Build: Calculator v2 (menu-based)
- Soft: Speak 10 lines about yourself
- Aptitude: Percentages – part 1
- DSA: Loop problems (prime, palindrome)
- Build: Input validation planning
- Lab: Eligibility checker
- Build: Number games (prime/factorial)
- Soft: English basics – sentence formation
- Aptitude: Percentages – part 2
- DSA: Modular coding concept
- Build: Method structure planning
- Lab: Calculator refactor using methods
- Build: Utility menu application
- Soft: Confidence speaking (slow → clear)
- Aptitude: Ratio & proportion
- DSA: Arrays intro (max/min)
- Build: Array input planning
- Lab: Student marks analyzer
- Build: Topper, average & grade logic
- Soft: Introduce your project (60 sec)
- Aptitude test (Week 1 topics)
- Java basics coding exam
- Loops & arrays problems
- Review, fixes & Git push
- Soft: Interview etiquette basics
- Aptitude: Ratio & proportion – part 2
- DSA: Array practice
- Build: Class & object design planning
- Lab: BankAccount class v1
- Build: Deposit, withdraw & print balance
- Soft: Talk about family & education
- Aptitude: Averages – part 1
- DSA: Linear search
- Build: Constructor & encapsulation planning
- Lab: Private fields + constructors
- Build: Getters/setters with validation
- Soft: Speaking drills (past/present tense)
- Aptitude: Averages – part 2
- DSA: Sorting basics
- Build: Inheritance planning
- Lab: Savings & Current account classes
- Build: Method overriding
- Soft: HR questions (strength/weakness)
- Aptitude: Profit & loss – part 1
- DSA: Comparator thinking
- Build: Abstract class & interface plan
- Lab: Refactor to abstract classes
- Build: Implement interfaces (loose coupling)
- Soft: Mock HR answer (2 mins)
- Aptitude: Profit & loss – part 2
- DSA: Edge case handling
- Build: Exception flow planning
- Lab: try/catch, throw, throws
- Build: Custom exception (InsufficientBalance)
- Soft: Remove filler words while speaking
- Aptitude test
- OOP coding exam (incl. abstraction & interfaces)
- Exception handling task
- Review, fixes & Git push
- Soft: Self-intro + project explanation
- Aptitude: Time & work – part 1
- DSA: HashMap frequency counting
- Build: Collection selection planning
- Lab: ContactBook using ArrayList
- Build: ContactBook using HashMap
- Soft: Interview self-introduction (2 mins)
- Aptitude: Time & work – part 2
- DSA: HashMap patterns
- Build: Validation planning
- Lab: Search, update & delete contacts
- Build: Export simple report
- Soft: Listening & repeat exercise
- Aptitude: Speed & distance – part 1
- DSA: String problems (anagram, palindrome)
- Build: String utility planning
- Lab: Password checker
- Build: Username rules + tests
- Soft: Speak about your day (fluency)
- Aptitude: Speed & distance – part 2
- DSA: Debugging patterns
- Build: File I/O planning
- Lab: ToDo save & load
- Build: ToDo v2 (status, date)
- Soft: Workplace behavior & punctuality
- Aptitude: Mixtures – part 1
- DSA: Sorting + strings
- Build: Comparator planning
- Lab: Leaderboard module
- Build: Sort by score & date
- Soft: Project explanation practice
- Aptitude test
- Collections & strings coding exam
- File I/O task
- Review & Git push
- Soft: Mock HR (5 questions)
- Aptitude: Simple & compound interest
- DSA: Big-O, brute force vs optimized
- Build: Add complexity notes
- Lab: Refactor old project
- Build: Add 5 test cases
- Soft: Clear speaking practice
- Aptitude: SI/CI – advanced
- DSA: Two pointer problems
- Build: Feature implementation planning
- Lab: Filter & sort in ToDo
- Build: README update
- Soft: Teamwork HR answers
- Aptitude: Data interpretation – part 1
- DSA: Sliding window problems
- Build: Performance optimization plan
- Lab: Optimize marks analyzer
- Build: Edge case pack
- Soft: Phone-call practice
- Aptitude: Data interpretation – part 2
- DSA: Sorting problems
- Build: Report module planning
- Lab: Reports in Contact/ToDo app
- Build: Export text reports
- Soft: Interview vocabulary
- Aptitude: Direction reasoning
- DSA: Binary search problems
- Build: Search integration planning
- Lab: Binary search on sorted data
- Build: Tests & documentation
- Soft: Project pitch (2 mins)
- Aptitude test
- DSA Pack-1 coding exam
- Optimization challenge
- Review & Git push
- Soft: Group discussion basics
- Aptitude: Blood relations
- DSA: Recursion basics
- Build: Recursion planning
- Lab: Recursion-based menu
- Build: Test cases
- Soft: Remove filler words
- Aptitude: Syllogisms
- DSA: Stack problems
- Build: Stack use-case planning
- Lab: Undo feature in ToDo
- Build: Bug-fix sprint
- Soft: Conflict handling HR Qs
- Aptitude: Coding-decoding
- DSA: Queue & deque
- Build: Queue simulation planning
- Lab: Token/queue simulator
- Build: Sample I/O & README
- Soft: Explain a challenge you solved
- Aptitude: Puzzles – part 1
- DSA: Linked list operations
- Build: Linked list class planning
- Lab: LL insert/delete/search
- Build: Mini tester
- Soft: Interview – why this course?
- Aptitude: Puzzles – part 2
- DSA: Mixed contest problems
- Build: Code review planning
- Lab: Clean code refactor
- Build: Tag release on Git
- Soft: GD practice round
- Aptitude test
- DSA Pack-2 coding exam
- Debugging round
- Review & Git push
- Soft: Mock HR
- Aptitude: Percentages – mixed
- DSA: Arrays revision
- Build: ER model planning
- Lab: DB schema (students/library)
- Build: MySQL setup & sample data
- Soft: Email writing basics
- Aptitude: Ratio – mixed
- DSA: Hashing revision
- Build: SELECT query planning
- Lab: SELECT & WHERE practice
- Build: 30-query drill
- Soft: Resume structure
- Aptitude: Averages – mixed
- DSA: String revision
- Build: Join planning
- Lab: INNER & LEFT joins
- Build: 20 joins drill
- Soft: Resume bullet writing
- Aptitude: Time & work – mixed
- DSA: Binary search revision
- Build: GROUP BY planning
- Lab: GROUP BY & HAVING
- Build: Report queries
- Soft: Self-intro using resume
- Aptitude: Speed & distance – mixed
- DSA: Stack revision
- Build: JDBC flow planning
- Lab: Connection & PreparedStatement
- Build: Simple CRUD
- Soft: Explain your project
- Aptitude test
- SQL & JDBC coding exam
- Schema design task
- Review & Git push
- Soft: HR round
- Aptitude: Reasoning – mixed
- DSA: Sliding window revision
- Build: DAO pattern planning
- Lab: Library CRUD using DAO
- Build: Validations & unit tests
- Soft: Speaking clarity drills
- Aptitude: Data interpretation – mixed
- DSA: Recursion revision
- Build: Service layer planning
- Lab: Service–DAO separation
- Build: Exception handling in JDBC
- Soft: Roleplay – student counselor talk
- Aptitude: Probability – part 1
- DSA: HashMap timed practice
- Build: Transaction flow planning
- Lab: Commit & rollback demo
- Build: Issue/return transaction flow
- Soft: Mock phone call (2 mins)
- Aptitude: Probability – part 2
- DSA: Two pointers timed
- Build: SQL injection demo planning
- Lab: Statement vs PreparedStatement
- Build: Secure query implementation
- Soft: Workplace etiquette
- Aptitude: Permutations
- DSA: Mixed timed practice
- Build: Reports feature planning
- Lab: Reports (top borrowers, fines)
- Build: Final polish + README
- Soft: Project explanation (2 mins)
- Aptitude test
- JDBC + DAO coding exam
- Transaction debugging task
- Review & Git push
- Soft: Group discussion
- Aptitude: Reasoning puzzles
- DSA: Arrays timed practice
- Build: Web basics planning
- Lab: Servlet lifecycle & first servlet
- Build: HTML form → servlet
- Soft: Polite question framing
- Aptitude: Syllogisms
- DSA: Strings timed practice
- Build: MVC architecture planning
- Lab: Servlet controller + JSP view
- Build: Input validation
- Soft: Speak about your project (60 sec)
- Aptitude: Direction sense
- DSA: Hashing timed practice
- Build: JDBC integration planning
- Lab: Login/register using JDBC
- Build: Dashboard page
- Soft: Interview – why Java?
- Aptitude: Data interpretation – mixed
- DSA: Stack timed practice
- Build: Session management planning
- Lab: Login/logout using session
- Build: Role-based pages
- Soft: HR answers (strength/weakness)
- Aptitude: Data tables
- DSA: Sliding window timed
- Build: JSTL planning
- Lab: JSTL loops & conditions
- Build: Reports JSP
- Soft: Mock technical introduction
- Aptitude test
- Servlet + JSP build exam
- Session handling task
- Review & Git push
- Soft: Group discussion
- Aptitude: Percentages – revision
- DSA: Binary search timed
- Build: IoC & DI planning
- Lab: Spring Core demo (beans, DI)
- Build: Service layer refactor thinking
- Soft: Explain DI in simple words
- Aptitude: Ratio – revision
- DSA: Arrays timed
- Build: Spring Boot project planning
- Lab: Boot setup + first REST API
- Build: Controller/service skeleton
- Soft: Explain REST API
- Aptitude: Averages – revision
- DSA: Hashing timed
- Build: DTO planning
- Lab: DTOs + validations
- Build: Error responses
- Soft: Project walkthrough
- Aptitude: Profit & loss – revision
- DSA: Strings timed
- Build: Entity & repository planning
- Lab: JPA entities + repositories
- Build: CRUD APIs
- Soft: Storytelling for confidence
- Aptitude: Time & work – revision
- DSA: Recursion timed
- Build: Business logic planning
- Lab: Service-layer rules
- Build: Postman testing
- Soft: Teamwork answer (STAR)
- Aptitude test
- Spring Boot CRUD exam
- API debugging task
- Review & Git push
- Soft: Mock HR
- Aptitude: DI – revision
- DSA: Two pointers timed
- Build: Relationship mapping plan
- Lab: OneToMany & ManyToOne
- Build: Seed data & tests
- Soft: Explain DB schema
- Aptitude: Reasoning – mixed
- DSA: Sliding window timed
- Build: Pagination planning
- Lab: Pagination & sorting APIs
- Build: Filters
- Soft: Mock technical questions
- Aptitude: Probability – revision
- DSA: Stack timed
- Build: Exception handler planning
- Lab: @ControllerAdvice implementation
- Build: Custom error responses
- Soft: Explain a bug you fixed
- Aptitude: Permutations – revision
- DSA: Arrays timed
- Build: Logging strategy planning
- Lab: Logging & profiles
- Build: Config cleanup
- Soft: Interview – why Spring?
- Aptitude: Mixed mock
- DSA: Mixed timed practice
- Build: API checklist planning
- Lab: API testing checklist
- Build: Swagger & README
- Soft: Resume project bullets
- Aptitude test
- Spring Boot advanced exam
- Feature build + debug
- Review & Git push
- Soft: Group discussion
- Aptitude: Reasoning
- DSA: Hashing timed practice
- Build: Security fundamentals planning
- Lab: Spring Security configuration
- Build: Protect sample endpoint
- Soft: Explain authentication vs authorization
- Aptitude: Data interpretation
- DSA: String timed practice
- Build: JWT flow planning
- Lab: Login & register APIs
- Build: Token generation & validation
- Soft: Mock HR (5 questions)
- Aptitude: Probability
- DSA: Stack timed practice
- Build: Roles & permissions planning
- Lab: ADMIN / USER roles
- Build: Secure role-based APIs
- Soft: Confidence & eye contact drills
- Aptitude: Mixed
- DSA: Sliding window timed
- Build: Testing strategy planning
- Lab: JUnit basics
- Build: MockMvc smoke tests
- Soft: Project deep-dive explanation
- Aptitude: Mixed
- DSA: Binary search timed
- Build: Deployment planning
- Lab: Backend deployment (basic)
- Build: Env variables & CORS
- Soft: Professional messaging
- Aptitude test
- Spring Security + JWT exam
- Debug authentication issues
- Review & Git push
- Soft: Mock interview
- Aptitude: Percentages
- DSA: Arrays timed practice
- Build: HTML structure planning
- Lab: Forms & tables
- Build: Responsive basics
- Soft: Spoken English (daily routine)
- Aptitude: Ratio
- DSA: Hashing timed practice
- Build: CSS layout planning
- Lab: Flexbox & layouts
- Build: Simple landing page
- Soft: Phone interview practice
- Aptitude: Averages
- DSA: Strings timed practice
- Build: JS logic planning
- Lab: DOM manipulation & events
- Build: Fetch API demo
- Soft: Introduce your technical skills
- Aptitude: Time & work
- DSA: Stack timed practice
- Build: React fundamentals planning
- Lab: Components & props
- Build: Small UI screens
- Soft: HR – why should we hire you?
- Aptitude: Speed & distance
- DSA: Sliding window timed
- Build: State management planning
- Lab: State & controlled forms
- Build: Validations
- Soft: 2-minute continuous speaking
- Aptitude test
- Frontend + React mini-app exam
- UI bug fixing task
- Review & Git push
- Soft: Group discussion
- Aptitude: Data interpretation
- DSA: Two pointers timed
- Build: Routing planning
- Lab: React Router
- Build: Layout & navigation
- Soft: Resume final formatting
- Aptitude: Reasoning
- DSA: Hashing timed
- Build: Auth UI planning
- Lab: Login & signup UI
- Build: API integration
- Soft: Mock HR (5 questions)
- Aptitude: Probability
- DSA: Strings timed
- Build: Token storage planning
- Lab: Axios interceptors
- Build: Secure API calls
- Soft: Explain your project (3 mins)
- Aptitude: Mixed
- DSA: Sliding window timed
- Build: Protected route planning
- Lab: Role-based routes
- Build: Conditional UI
- Soft: Technical interview – Java
- Aptitude: Mixed
- DSA: Stack timed
- Build: Data table planning
- Lab: Tables with pagination
- Build: Filters & search
- Soft: Technical interview – SQL
- Aptitude test
- Full-stack auth feature exam
- Debug integration issues
- Review & Git push
- Soft: Mock interview
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: CRM module planning
- Lab: CRM backend module
- Build: Initial UI screens
- Soft: Client-style communication
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Validation planning
- Lab: Backend validations
- Build: UI validations
- Soft: Group discussion practice
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Reports planning
- Lab: Reports UI
- Build: Report APIs
- Soft: Stress-handling interview Q
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: File upload planning
- Lab: Backend upload API
- Build: UI upload flow
- Soft: “Tell me about a failure”
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Deployment planning
- Lab: Backend deployment
- Build: Frontend deploy + CORS
- Soft: Project demo script
- Aptitude test
- CRM capstone checkpoint
- Bug fixing & refactor
- Review & Git push
- Soft: Mock HR
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Prompting rules & patterns
- Lab: Prompt templates (hint → plan → test)
- Build: Test-case generator feature
- Soft: Explain AI feature simply
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Resume AI feature planning
- Lab: Resume bullet improver API
- Build: Frontend integration
- Soft: Project + AI pitch
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Interview Q generator planning
- Lab: Generate questions from project
- Build: Store & review history
- Soft: Mock technical round
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Notes summarizer planning
- Lab: Text summarization feature
- Build: Error handling & UX
- Soft: Fluency speaking drill
- Aptitude: Mixed
- DSA: Mixed timed practice
- Build: Search-my-notes planning
- Lab: Simple RAG-style search
- Build: Improve relevance
- Soft: Negotiation basics
- Aptitude test
- AI feature integration exam
- Debug & improve AI output
- Review & Git push
- Soft: Mock interview
- Aptitude: Mixed mock
- DSA: Contest-style problems
- Build: Debugging strategy planning
- Lab: Logs, breakpoints & tracing
- Build: Fix 5 real bugs
- Soft: HR rapid-fire questions
- Aptitude: Mixed
- DSA: Contest-style problems
- Build: Performance thinking planning
- Lab: Optimize slow APIs
- Build: Indexing & pagination fixes
- Soft: Strengths discussion
- Aptitude: Mixed
- DSA: Contest-style problems
- Build: Clean architecture planning
- Lab: Refactor layers
- Build: Code review checklist
- Soft: Group discussion
- Aptitude: Mixed
- DSA: Contest-style problems
- Build: Coding round planning
- Lab: Timed coding round
- Build: Review & improvements
- Soft: Technical interview – Spring
- Aptitude: Mixed
- DSA: Contest-style problems
- Build: Interview strategy planning
- Lab: Mock tech interview
- Build: Improve weak areas
- Soft: Technical interview – React
- Aptitude full mock
- Mega technical exam
- Debugging challenge
- Review & Git push
- Soft: Final HR mock
- Aptitude: Speed test
- DSA: Weak-pattern revision
- Build: Portfolio structure planning
- Lab: GitHub cleanup & READMEs
- Build: Deploy links & screenshots
- Soft: Demo speaking practice
- Aptitude: Mixed
- DSA: Company-style problems
- Build: Demo video planning
- Lab: Record demo v1
- Build: Improve & re-record
- Soft: Mock interview final
- Aptitude: Mixed
- DSA: Final contest
- Build: Interview prep planning
- Lab: System design basics
- Build: Capstone improvements
- Soft: Tricky HR questions
- Aptitude: Light
- DSA: Light practice
- Build: Job application planning
- Lab: Resume & LinkedIn final
- Build: Apply to jobs & track
- Soft: Professional follow-ups
- Capstone presentation
- Project walkthrough
- Technical Q&A
- HR interaction
- Feedback session
- Individual feedback
- Placement roadmap
- Next 30-day action plan
- Certification discussion
Become a Machine Learning developer
Talk to our expert Machine Learning and learn how our training programs in Vijayawada can help you become a Machine Learning developer and get a high-paying job.
Your Assistant will Call you in 5Min
- Not just videos — a career operating system.
Your Personal LMS Platform
Everything you need to learn, practice, track, and get placed — in one place.
Over Advantage
Why Our Placement System Creates Job-Ready Developers
A Structured, Interview-Focused Training Model Designed for Real Industry Success
Placement-Oriented Training That Converts Skills Into Jobs
🔴 The Challenge
Many students learn concepts but struggle with interviews due to lack of practical exposure, communication skills, and structured preparation.
🟢 Our Approach
We combine industry-driven curriculum, real-world coding practice, soft skills training, and mock interviews to ensure students are fully prepared for hiring processes.
We don’t just teach concepts — we train you to crack interviews.
What This Means:
- Curriculum designed based on current industry demand
- Strong focus on problem-solving & real-world scenarios
- Regular coding challenges & performance assessments
- Resume-building & LinkedIn optimization sessions
- Mock interviews (Technical + HR rounds)
- Soft skills & communication training
Dedicated Career Acceleration Team
🔴 The Challenge
🟢 Our Support System
What This Means:
- Dedicated placement assistance team
- Interview opportunities with 70–100+ hiring partners
- Company-specific interview preparation
- Job referrals & walk-in updates
- Career guidance even after course completion
- Support for freshers & career switchers
Placement-Oriented Training That Converts Skills Into Jobs
🔴 The Challenge
Many learners quit due to confusion, lack of feedback, or no guidance.
🟢 Our Mentorship Model
Experienced trainers provide continuous guidance, structured feedback, and one-on-one mentorship sessions.
You’re never learning alone — we guide you at every step.
What This Means:
- One-on-one mentorship from experienced trainers
- Regular doubt-clearing sessions
- Code reviews & performance feedback
- Personal learning roadmap guidance
- Continuous support throughout the course
Certification That Validates Real Skills
🔴 The Challenge
Generic certificates don’t reflect actual industry readiness.
🟢 Our Mentorship Model
Our Java Full Stack certification reflects hands-on project work and real technical capability.
What This Means:
- Industry-recognized Java Full Stack Certification
- Validates technical & practical skills
- Adds strong value to resume & LinkedIn profile
- Boosts credibility during interviews
Your Journey
Your Journey At Codegnan
Daily Practice, hands-on projects and consistent feedback – your growth depends on the energy and effort you bring in every single day.
- First Class
- Daily Practice & Weekly Challenges
- Real-World Projects
- Career Readiness Review (CRPR)
- Placement Support
- Interviews & Offers
Machine Learning Projects (3 Projects) you will work on
Each section of the curriculum is taught with hands-on implementations, but apart from that, you get to work on multiple projects that help you assess your overall learnings. Here are some project topics under the course and their learning objectives.
1. Real - Time Rain Prediction
Predict real-time rain using live weather data, covering the end-to-end ML workflow and deployment.
Skills used: Data Collection, Model Training, Model Evaluation, Application Deployment
Led By Kishor Sir
Senior Mentor who have experience of 20 Years.
2. Netflix Recommendation System
Create a recommendation system for Netflix, focusing on feature engineering and personalized recommendations.
Skills used: Dataset Exploration, Feature Engineering, Building Recommendation Models.
Led By Kishor Sir
Senior Mentor who have experience of 20 Years.
3. GDP/ House/ Stock Price Prediction
Predict GDP/ house/ stock prices by integrating web scraping, data preprocessing, and model deployment.
Skills used: Web Scraping, Data Preprocessing, Model Training, Model Deployment, Data Visualization, Feature Engineering.
Led By Kishor Sir
Senior Mentor who have experience of 20 Years.
Who is This Machine Learning Course For?
Wondering if this course is a right fit for you or not? Then, let us share our ideal candidate base and how this course can help them.
01
1. College Students/Fresh Graduates
The course provides a comprehensive understanding, enabling you to tackle real-world problems making you an attractive candidate for data analyst, machine learning engineer, or data scientist positions. So it is great for you to get a competitive edge over your peers as you enter the job market.
02
2. Beginner Developers/Engineers
The course equips you with the essential skills to contribute to ML projects, making you a valuable asset in software development teams and opening doors to specialized ML roles.
03
3. IT Professionals
This course will help professionals acquire proficiency in Python, data engineering, and model deployment, enabling them to leverage ML for data analysis and decision-making in IT projects. The course teaches them ML techniques to improve system efficiency and problem-solving.
04
4. Anyone Interested in Machine Learning
This course is structured and covers the entire ML workflow. From data preprocessing to model deployment, you'll gain practical skills and a deep understanding of algorithms. Making it equally ideal for self-learners and enthusiasts looking to explore or transition into the exciting field of machine learning.
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Recently Placed Students
Kolla Pavan Kalyan
Trainee - IAM Engineer
09-04-2026
Date
Hyderabad
Location
JFS-HYD-024
Batch no.
Arun Teja Pattabhi
Programmer Analyst Trainee
09-04-2026
Date
Hyderabad
Location
JFS-HYD-039
Batch no.
CH NAGA VENKATA SAI
Programmer Analyst Trainee
09-04-2026
Date
Vijayawada
Location
JFS-VIJ-024
Batch no.
Mannam Nivas
Trainee Software Engineer
09-04-2026
Date
Hyderabad
Location
JFS-HYD-038
Batch no.
Mummaneni Manasa Lalitha
Programmer Analyst Trainee
09-04-2026
Date
Hyderabad
Location
JFS-HYD-039
Batch no.
Job Roles
Career Roles After This Course
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Java Full Stack Developer
Java Full Stack Developer
Java Full Stack Developer
Frontend Developer
Software Engineer
Students Placed with this Course
Real student placement outcomes
learning platform transforms students into industry-ready professionals.
Learn from certified Java experts in Hyderabad
Learn directly from experienced industry professionals who guide you at every step.
Senior Mentor
Kishor Kumar
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Senior Mentor
Kishor Kumar
Know More
Senior Mentor
Kishor Kumar
Know More
Senior Mentor
Kishor Kumar
Know More
Senior Mentor
Kishor Kumar
Know More
Senior Mentor
Kishor Kumar
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Student Reviews
Their Success, Our Pride
Real feedback from those who made it.
4.01LPA
Learning Python at Codegnan has been a game-changer for me! The hands-on approach and real-world projects made concepts crystal clear. Special thanks to Pooja ma'am—her mentorship, patience, caring towards each and every student and deep knowledge made every session engaging and impactful..
- Shaik Ayesha Yasmeen
3.65LPA
Learning Python at Codegnan has been a game-changer for me! The hands-on approach and real-world projects made concepts crystal clear. Special thanks to Pooja ma'am—her mentorship, patience, caring towards each and every student and deep knowledge made every session engaging and impactful..
- Chennamsetty Gopi Krishna
3.25LPA
Learning Python at Codegnan has been a game-changer for me! The hands-on approach and real-world projects made concepts crystal clear. Special thanks to Pooja ma'am—her mentorship, patience, caring towards each and every student and deep knowledge made every session engaging and impactful..
- Reshma Vuyyuru




Fees
Machine Learning Course Training
Fees in Vijayawada— Get 20% off
The fee of the machine learning course in Vijayawada by codegnan is only ₹10,000, for both online and in-classroom modes, which is nothing compared to how much you are expected to pay for a high-value course like machine learning.
Besides, you also get lifetime free access and updates on the learning materials and job placement assistance. Which increases the value of the course manyfold.
However, if the price still seems out of your budget, you can avail of a limited-period offer of a 20% discount and get the course for the effective price of only ₹8,000.
Phone Number
Location
40-5-19/16, Prasad Naidu Complex, P.B.Siddhartha Busstop, Moghalrajpuram, Vijayawada, Andhra Pradesh 520010
Frequently asked questions
1. What is the eligibility criteria for the machine learning course of codegnan?
There are no such criteria for enrolling in codegnan’s machine learning course. Anyone with school-level graduation and upwards is eligible for these courses. However, for a course like machine learning, knowing the basics of coding and programming languages like Python can certainly help you grasp the concepts better.
2. What are the fees of the machine learning course offered by codegnan?
The fee for codegnan’s machine learning course is ₹10,000 for both online and offline modes. However, with an additional discount, you can get it for as low as ₹8,000 as well.
3. What certification will I receive upon completion of the course?
Upon completing the course, you will get an authorized certificate from codegnan. This certification is acknowledged in tech companies across the globe, especially by the ones that are in association with codegnan.
4. What is the duration of this machine learning course in Vijayawada?
The duration of the machine learning course in Vijayawada by codegnan is 30 days or 1 month. Hence, whether you are a fresh graduate who wants to maximize your final semester or someone who wants to transition into tech jobs, this brief course can help you achieve that.
5. Are there any prerequisites of this Machine Learning course in Vijayawada?
No, there are no such prerequisites for this Machine Learning course in Vijayawada by codegnan. The minimum educational qualification for enrolling in this course is school graduation with any stream. But there are some sections that require haveing a basic idea of Python, but again, it is not a must.
6. Is this course suitable for a person from a non-technical background?
Yes, since it revolves around the fundamentals of machine learning and gives you hands-on training, individuals without a non-technical background can also pursue it.
7. What are the job opportunities after this machine learning course from codegnan?
Here are some job opportunities you can bag after completing this course, even if you are from a non-technical background- data analyst, machine learning engineer, NLP engineer, data engineer, web developer with ML integration, reinforcement learning developer, data scientist, recommendation system developer, and AI consultant.
8. Is Python necessary for machine learning?
You don’t have to be proficient in Python to enroll in this machine learning course. But knowing the basics of it is enough for you to start.
9. Can I learn machine learning in 6 months?
Yes, you can learn machine learning in 6 months or less. codegnan’s machine learning course is only 1 month long, including the time of working on the projects.
10. Does codegnan offer online and classroom training for machine learning courses in Vijayawada?
Still have questions?
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