Data Science Training Course in Ameerpet
The right start matters. Codegnan’s Data Science Course in Ameerpet blends classroom and online learning with real-world practice.
In just one month, you’ll master core tools like Python, ML, and AI, work on hands-on projects that strengthen your portfolio, and gain industry-recognised certification.
With lifetime access to updated learning resources and expert mentor support, you’ll be ready to apply data science skills confidently in real-world scenarios.
- English
- 200 Days
Become a Data Scientist
Talk to our Data Science Mentor and learn how our training programs in Ameerpet can help you become a Data Scientist and get a high-paying job.
800 Hours Instructor
Led Training
Self-Paced
Videos
Exercises
& Projects
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Certification
Flexible
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Course overview of Data Science training in Ameerpet
The Data Science Course in Ameerpet is a 1-month classroom and online training program designed to simplify complex concepts and give you practical skills. You will learn everything from Python basics to machine learning models required to become a data scientist, with real projects guiding your progress.
This program is perfect for students preparing for their first job, IT professionals aiming to add data skills, or anyone making a career switch. With real-time mentoring, project-based learning, and lifetime access to resources, you’ll build the confidence to apply data science in real-world scenarios.
- 1-month fast-track learning program
- 300+ hours of guided training
- The data science course fee is ₹1,00,000
- Hands-on projects built with real datasets
- Covers Python, ML, AI, and data visualisation tools
- Industry-recognised certificate on course completion
- Weekdays and weekend batch options are available with an online and offline mode of learning
- Lifetime access to updated materials
- Continuous support to solve your doubts anytime
Career scope for a Data Scientist in Ameerpet
Expanding demand in Hyderabad’s IT corridor
Hyderabad is home to fast-growing startups and global tech firms. With Ameerpet’s proximity to this hub, certified data scientists find continuous opportunities in MNCs, SaaS companies, and consulting firms.
Attractive salary prospects
Data science consistently ranks among the highest-paying careers in Hyderabad, with an average pay range of ₹4 lakhs - ₹25 lakhs. Professionals with skills in Python, ML, and analytics can command strong entry-level packages and enjoy quick salary hikes.
Opportunities across multiple industries
Every sector, including healthcare, retail, banking, telecom, and e-commerce, relies on data. This gives you the flexibility to explore different domains while staying in one high-demand career path and earn higher salaries.
Path to specialised roles
Once you master the fundamentals, you can move into niche areas like AI engineering, business analytics, deep learning, or MLOps. This broadens your career options beyond the role of data scientist.
Freelancing and consulting options
With project-based learning, you’ll have the skills to take on freelance work, short-term contracts, or consulting roles. Many small and mid-sized businesses prefer trained freelancers for data projects.
A future-proof career choice
As AI adoption accelerates, data scientists are central to innovation. Investing in this career now ensures long-term stability and relevance in an evolving job market.
Data Science Training Curriculum in Ameerpet
• Introduction to programming
• R or Python?
• Why Python for Data Science?
• Different job roles with Python
• Different Python IDEs
• Downloading and setting up python environment
Hands-On – Installing Python – IDLE
• Python input and output operations.
• Comments
• Variables, rules for naming variables
• Basic Data Types in Python
• Typecasting in python
Hands-On – Using comments, variables, data types, and typecasting in python program
● Arithmetic operators
● Assignment operators
● Comparison operators
● Logical operators
● Identity operators
● Membership Operators
● Bitwise Operators
Hands-On – Working with different data types in a program
• Creating strings
• String formatting
• Indexing
• Slicing
• String methods
Hands-On – Performing string operations
● Creating lists
● Properties of lists
● List indexing
● List slicing
● List of lists
● List Methods
● Adding, Updating & removing elements from lists
Hands-On – Slicing, Indexing, and using methods on lists
• Syntax to create tuples
• Tuple properties
• Indexing on tuples
• Slicing on tuples
• Tuple methods
Hands-On – Working with tuples
• Syntax for creating sets
• Updating sets
• Set operations and methods
• Difference between sets, lists and tuples
Hands-On – Performing set operations in a program
• Syntax for creating Dictionaries
• Storing data in dictionaries
• Dictionaries keys and values
• Accessing the elements of dictionaries
• Dictionary methods
Hands-On – Creating dictionaries and using dictionaries methods
• Setting logic with conditional statements
• If statements
• If -else statements
• If-elif-else statements
Hands-On – Setting logic in programs using conditional statements
• Iterating with python loops
• while loop
• for loop
• range
• break
• continue
• pass
• enumerate
• zip
• assert
Hands-On – Iterating with loops in python
● Solving Level by Level Challenges
● Assignments to acquire Bronze and Silver Level badges
• Why List comprehension
• Syntax for list comprehension
• Syntax for dict comprehension
Hands-On – Using List and Dictionary comprehension
• What are Functions
• Modularity and code reusability
• Creating functions
• Calling functions
• Passing Arguments
• Positional Arguments
• Keyword Arguments
• Variable length arguments (*args)
• Variable Keyword length arguments (**kargs)
• Return keyword in python
• Passing function as argument
• Passing function in return
• Global and local variables
• Recursion
Hands-On – Creating our own functions,passing arguments and performing operations
• Lambda
• Lambda with filter
• Lambda with map
• Lambda with reduce
Hands-On – Working with lambda, filter,map and reduce in python
● Creating and using generators
Hands-On – Creating and using generators
• Creating modules
• Importing functions from different module
• Importing Variables from different modules
• Python builtin modules
Hands-On – Creating and importing Modules
• Creating packages
• Importing modules from package
• Different ways of importing modules and packages
• Working on Numpy,Pandas and Matplotlib
Hands-On – Creating and importing packages
• Syntax errors
• Logical errors
• Handling errors using try,except and finally
Hands-On – Handling Errors with try and except
• Creating classes & Objects
• Attributes and methods
• Understanding __init__ constructor method
• Class and instance attributes
• Different types of of methods
• Instance methods
• Class methods
• Static methods
• Inheritance
• Creating child and parent class
• Overriding parent methods
• The super() function
• Understanding Types of inheritance
• Single inheritance
• Multiple inheritance
• Multilevel inheritance
• Polymorphism
• Operator overloading
Hands-On – Creating classes, objects. Creating methods and attributes. Working with different methods. Using inheritance and polymorphism.
• date module
• time module
• datetime module
• time delta
• formatting date and time
• strftime()
• striptime()
Hands-On – working with date and time
• Understanding the use of regex
• re.search()
• re.compile()
• re.find()
• re.split()
• re.sub()
• Meta characters and their use
Hands-On – using a regular expression to search patterns
• Opening file
• Opening different file types
• Read,write,close files
• Opening files in different modes
Hands-On – Reading, Writing, Appending, opening and closing files.
● Introduction to APIs
● Accessing Public APIs
Hands-on – Accessing Public Weather APIs and People in Space API
• Installing BeautifulSoup
• Understanding web structures
• Chrome devtools
• request
• Scraping data from web using beautifulsoup
• scraping static websites
• Scraping dynamic websites using beautiful soup.
Hands-On – Scraping static and dynamic websites using beautifulsoup and selenium
- Introduction to Pandas, a Python library for data manipulation and analysis.
- Overview of NumPy, a fundamental package for scientific computing with Python.
- Explanation of key data structures in Pandas: Series and DataFrame.
- Hands-on exploration of data using Pandas to summarize, filter, and transform data.
- Data cleaning techniques, handling missing values, and dealing with outliers.
- Statistical analysis of data using NumPy functions.
- Introduction to data visualization and its importance in data analysis.
- Overview of Matplotlib, a popular plotting library in Python.
- Exploring different types of plots: line plots, scatter plots, bar plots, histogram, etc.
- Customizing plots with labels, titles, colors, and styles.
- Introduction to Seaborn, a Python data visualization library based on Matplotlib.
- Advanced plotting techniques with Seaborn: heatmaps, pair plots, and categorical plots.
- Introduction to Plotly, an interactive plotting library for creating web-based visualizations.
- Creating interactive and dynamic visualizations with Plotly.
Hands-on: lnstagram Reach Analysis
- Introduction to data bases.
- WhySQL?
- Execution of an SQL statement.
- Installing MySQL
- Load data.
- Use, Describe, Show table.
- Select.
- Limit, Offset.
- Order By.
- Distinct.
- Where, Comparison Operators, NULL.
- Logic Operators.
- Aggregate Functions: COUNT, MIN, MAX,AVG, SUM.
- Group By.
- Having.
- Order of Keywords.
- Join and Natural Join.
- Inner, Left, Right, and Outer Joins.
- Sub Queries/Nested Queries/Inner Queries.
- DML: INSERT
- DML: UPDATE, DELETE
- DML: CREATE,TABLE
- DDL: ALTER, ADD, MODIFY, DROP
- DDL: DROP TABLE, TRUNCATE, DELETE
- Data Control Language: GRANT, REVOKE
Hands-on – Storing and Analysing Scraped Dataset Using SQL
- Excel Introduction
- Workbook Window
- Create & Open Workbooks
- MS Excel Online
- Excel vs Google Sheets
- Office Button
- Ribbon and Tabs
- Features of Tabs
- Quick Access Toolbar
- Mini Toolbar
- Title, Help, Zoom, View
- Worksheet, Row, Column
- Moving on Worksheet
- Enter Data
- Select Data
- Delete Data
- Move Data
- Copy Paste Data
- Spell Check Insert Symbols
- Addition
- Sigma Addition
- Subtraction
- Calculate Average
- Sigma Average
- Fill Handle
- Fill Handle with Text
- Text with Numbers
- Fill Handle with Dates
- Create Formula open link
- Fill Handle in Formula
- Relative Referencing
- Absolute Referencing
- Instruction for Typing
- Excel IF
- If Function
- If with Calculations Excel COUNTIF Advanced If
- WHAT IF Analysis
- Introduction to Excel Charts
- Dynamic Advanced Charts
- Pivot Table with Dashboard
- Advanced Pivot Table Tips & Tricks
- Excel Macros
- Excel sumif
- Excel vlookup
- Excel ISNA
- Find & Remove Duplicates
- Create drop-down List
- Merge cells in Excel
- Building bar charts and line charts
- Creating pie charts and scatter plots
- Designing basic maps and geographic visualizations
- Using filters to subset data
- Sorting data by different criteria
- Applying quick filters for interactive exploration
- Adding labels, tooltips, and colors to visualizations
- Formatting axes and gridlines
- Customizing visual elements for better presentation
- Combining multiple visualizations into a dashboard
- Adding interactivity with filters and actions
- Arranging and organizing dashboard elements
- Publishing dashboards to Tableau Public or Tableau Server
- Embedding dashboards in websites or presentations
- Presenting and sharing dashboards effectively
- Overview of Power Bl and its features
- Understanding the Power Bl interface
- Connecting to data sources
- Importing and transforming data
- Creating bar charts and line charts
- Designing pie charts and scatter plots
- Building basic tables and matrices
- Using filters and slicers to subset data
- Adding interactivity to visualizations
- Sorting and formatting data
- Building interactive dashboards with multiple visualizations
- Adding filters and slicers for user interactivity
- Formatting and organizing dashboard elements
- Publishing reports to the Power Bl Service
- Sharing reports and dashboards with others
- Configuring security and access controls
Hands-on: lnstagram Reach Analysis
- Data- types of data
- A measure of central tendency – Mean-Median-Mode
- A measure of shape – Variance- Standard deviation, Range, IQR
- The measure of shape – Skewness, and kurtosis
- Covariance
- Correlation – Pearson correlation & Spearman’s rank correlation
- Probability – Events, Sample Space, Mutually exclusive events, Mutually exclusive events
- Classical and Conditional Probability
- Probability distribution – Discrete and Continuous
- Uniform Distribution
- Expected values, Variance, and means
- Gaussian/Normal Distribution
- Properties, mean, variance, empirical rule of normal distribution
- Standard normal distribution and Z-score
- Central Limit Theorem
- Hypothesis testing – Null and Alternate hypothesis Type – I and Type – II error
- Critical value, significance level, p-value
- One-tailed and two-tailed test
- T-test – one sample, two-sample, and paired t-test f-test
- One way and two way ANOVA
- Chi-Square test
- Introduction to Machine Learning and its types (supervised, unsupervised, reinforcement learning)
- Setting up the development environment {Python, Jupyter Notebook, libraries: NumPy, Pandas, Scikit-learn)
- Overview of the Machine Learning workflow and common data preprocessing techniques
- Definition of data science and its role in various industries.
- Explanation of the data science lifecycle and its key stages.
- Overview of the different types of data: structured, unstructured, and semi-structured.
- Discussion of the importance of data collection, data quality, and data preprocessing..
- Introduction to Data Engineering: Data cleaning, transformation, and integration
- Data cleaning and Handling missing values: Imputation, deletion, and outlier treatment
- Feature Engineering techniques: Creating new features, handling date and time variables, and encoding categorical variables
- Data Scaling and Normalization: Standardization, min-max scaling, etc.
- Dealing with categorical variables: One-hot encoding, label encoding, etc.
- Cross-validation and model evaluation techniques
- Hyperparameter tuning using
- GridSearchCV and RandomizedSearchCV Model selection and comparison
- Introduction to Regression: Definition, types, and use cases
- Linear Regression: Theory, cost function, gradient descent, residual analysis, Q-Q Plot, Interaction Terms, and assumptions
- Polynomial Regression: Adding polynomial terms, degree selection, and overfitting
- Lasso and Ridge Regression: Regularization techniques for controlling model complexity
- Evaluation metrics for regression models: Mean Squared Error (MSE), R-squared, and Mean Absolute Error (MAE)
Hands-On – House Price Prediction
- Introduction to Classification: Definition, types, and use cases
- Logistic Regression: Theory, logistic function, binary and multiclass classification
- Decision Trees: Construction, splitting criteria, pruning, and visualization
- Random Forests: Ensemble learning, bagging, and feature importance
- Evaluation metrics for classification models: Accuracy, Precision, Recall, Fl-score, and ROC curves
- Implementation of classification models using scikit-learn library
Hands-On – Heart Disease Detection & Food Order Prediction
- Support Vector Machines (SVM): Study SVM theory, different kernel functions (linear, polynomial, radial basis function), and the margin concept. Implement SVM classification and regression, and evaIuate the models.
- K-Nearest Neighbors (KNN): Understand the KNN algorithm, distance metrics, and the concept of Kin KNN. Implement KNN classification and regression, and evalu ate the models.
- Naive Bayes: Learn about the Naive Bayes algorithm, conditional probability, and Bayes1 theorem. Implement Naive Bayes classification, and evaluate the model1s performance
Hands-On – Contact Tracing & Sarcasm Detection
- Ada Boost: Boosting technique, weak learners, and iterative weight adjustment Gradient Boosting {XGBoost): Gradient boosting algorithm, Regularization, and hyper para meter tuning
- Evaluation and fine-tuning of ensemble models: Cross-validation, grid search, and model selection
- Handling imbalanced datasets: Techniques for dealing with class imbalance, such as oversampling and undersampling
Hands-On – Medical Insurance Price Prediction
- Introduction to Clustering: Definition, types, and use cases
- K-means Clustering: Algorithm steps, initialization methods, and elbow method for determining the number of clusters
- DBSCAN (Density-Based Spatial Clustering of Applications with Noise): Core points, density reachability, and epsilon-neighborhoods
- Evaluation of clustering algorithms: Silhouette score, cohesion, and separation met-rics
Hands-On – Credit Card Clustering
- Introduction to Dimensionality Reduction: Curse of dimensionality, feature ex traction, and feature selection
- Principal Component Analysis {PCA): Eigenvectors, eigenvalues, variance explained, and dimensionality reduction
- Implementation of PCA using scikit-learn library
Hands-On – MNIST Data
- Introduction to Recommendation Systems: Understand the concept of recommen- dation systems, different types (collaborative filtering, content-based, hybrid), and evaluation metrics.
- Collaborative Filtering: Explore collaborative filtering techniques, including
- user-based and item-based approaches, and implement a collaborative filtering model.
- Content-Based Filtering: Study content-based filtering methods, such as TF-1DF and cosine similarity, and build a content-based recommendation system.
Deployment and Future Directions: Discuss the deployment of recommendation systems and explore advanced topics in NLP and recommendation systems.
Hands-On – News Recommendation System
- Introduction to Reinforcement Learning: Agent, environment, state, action, and reward
- Markov Decision Processes {MOP): Markov property, transition probabilities, and vaIue functions
- Q-Learning algorithm: Exploration vs. exploitation, Q-table, and learning rate Hands-on reinforcement learning projects and exercises
Hands-On – Working with OpenAI Gym
- Introduction to Flask/ Stream lit web framework
- Creating a Flask/ Streamlit application for ML model deployment Integrating data preprocessing and ML model
- Designing a user-friendly web interface
Hands-On – Iterating with loops in python
- Building a web application for Machine Learning models: Creating forms, handling user input, and displaying results
- Deployment using AWS (Amazon Web Services): Setting up an AWS instance, con figuring security groups, and deploying the application
- Deployment using PythonAnywhere: Upleading Flask application files, configuring WSGI, and launching the application
- Work on a real-world Machine Learning project: Identify a problem, gather data, and define project scope
- Apply the learned concepts and algorithms: Data collection, preprocessing, model building, and evaluation
- Deployment of the project on AWS or PythonAnywhere: Showcase the developed application and share the project with others
- Presentation and discussion of the project: Demonstrate the project, explain design decisions, and receive feedback
- Introduction to NLP: Understand the basics of NLP, its applications, and chaIlenges.
- Named Entity Recognition (NER): Understand the various approaches and tools used for NER, such as rule-based systems, statistical models, and deep learning.
- Text Preprocessing: Learn about tokenization, stemming, lemmatization, stop word removal, and other techniques for text preprocessing.
- Text Representation: Explore techniques such as Bag-of-Words (BoW), TF-IDF, and word embeddings (e.g., Word2Vec, GloVe) for representing text data.
- Sequential Models: Introduction to RNN, LSTM, Hands on Keras LSTM
- Sentiment Analysis: Study sentiment analysis techniques, build a sentiment analysis model using supervised learning, and evaluate its performance.
Hands-On – Real Time Sentiment Analysis
- Introduction
- History of Deep Learning Perceptrons
- Multi-Level Perceptrons Representations
- Training Neural Networks Activation Functions
- Introduction
- Deep Learning
- Understanding Human Brain
- In-Depth Perceptrons
- Example for perceptron
- Multi Classifier
- Neural Networks
- Input Layer
- Output Layer
- Sigmoid Function
- Introduction to Tensorflow and Keras
- CPU vs GPU
- Introduction to Google collaboratory
- Training Neural Network
- Understanding Notations
- Activation Functions
- Hyperparameter tuning in keras
- Feed-Forward Networks
Online offline mode - Bidirectional RNN
- Understanding Dimensions
- Back Propagation
- Loss function
- SGD
- Regularization
- Training for batches
Hands-On – Facial Emotion Recognition
- Introduction to CNN
- Applications of CNN
- Idea behind CNN
- Understanding Images
- Understanding Videos
- Convolutions
- Striding and Padding
- Max Pooling
- Edges, Gradients, and Textures
- Understanding Channels
- Formulas
- Weight and Bias
- Feature Map
- Pooling
- Combining
- Introduction to RNNs
- Training RNNs
RNN Formula - Architecture
- Batch Data
- Simplified Notations
- Types of RNNs
- LSTM
- GRUs
- Training RNN
- One to many
- Vanishing Gradient problem
Hands-On – COVID-19 Cases Prediction
- Introduction to Generative Models:
- Understanding GANs {Generative Adversarial Networks)
- GAN Architecture
- GAN Training
- Evaluating GAN Performance
- GAN Variants and Applications
- Intro to OpenCV
- Reading and Writing Images
- Saving images
- Draw shapes using OpenCV
- Face detection and eye detection using OpenCV
- CNN with Keras
- VGG
Hands-On – Real Time Pose Estimator
- Dataset collection
- Data preprocessing
- Feature extraction
- Labeling
- Model selection
- Model training
- Model evaluation
- Real-time implementation
- Alert mechanism
- Continuous improvement
- Identify a reliable source for house price data
- Understand the website structure
- Perform web scraping
- Preprocess the scraped data
- Explore and preprocess additional data sources (if applicable)
- Define the problem
- Split the data
- Train the model
- Evaluate the model
- Fine-tune the model (optional)
- Deploy the model
- Continuously update the dataset and retrain the model
- Define chatbot goals and scope
- Gather training data
- Data preprocessing
- API integration
- Model customization
- User input handling
- Response generation
- Post-processing and filtering
- Error handling and fallback mechanisms
- Continuous improvement
- Data collection
- Data preprocessing
- Dataset augmentation
- Model architecture
- Training
- Model evaluation
- Fine-tuning
- Real-time inference
- Thresholding and alerts
- Model optimization
Languages & Tools Covered in Our Data Science Training in Ameerpet
We have handpicked some of the most widely regarded tools for our data science training program including Matplotlib, Seaborn, Plotly, MySQL, AWS, MS Excel, Power BI, Tableau, Jupyter, Numpy, Pandas, Scikit-learn and so much more. As you will begin to get the hang of the latest statistical and analytical technologies, no one can stop you from becoming a skilled data scientist.
Become a Data Science developer
Looking for “the best Data Science course near me” in Ameerpet?
Talk to our expert mentors and discover how Codegnan can help you land a high-paying job.
Real world Data Science projects you will build in the classroom
Real-Time Drowsiness Detection Alert System
Build a computer-vision pipeline to detect driver fatigue from live video; collect data, engineer features, train a model, and wire in a low-latency alert system for practical safety solutions.
Rainfall Prediction Model
Transform messy weather records into a short-term forecasting model. You’ll preprocess sensor data, engineer time features, evaluate models, and deploy a runnable predictor.
Custom AI Chatbot with OpenAI API
Design and deploy a conversational assistant using OpenAI, handle intents, integrate APIs, manage fallbacks, and tune responses for realistic user interactions.
House Price Forecasting with LSTM
Scrape real listings, prepare time-series data, and train LSTM models to forecast prices. Ship a simple web demo to showcase your forecasting pipeline.
Fire & Smoke Detection Using CNN
Train a robust CNN on augmented image datasets to spot fire/smoke in images and video. Focus on inference speed, threshold tuning, and alert logic.
Instagram Reach Analysis (EDA & Dashboards)
Clean social data, extract growth metrics, and build interactive dashboards that tell the story behind engagement and reach.
Why join Codegnan’s Data Science training course in Ameerpet
Compact one-month curriculum
Our program is designed to give you maximum learning in the minimum time. In just four weeks, you’ll cover Python, ML, and AI essentials while building projects under industry experts that demonstrate your skills.
Hands-on project experience
Learning Data Science at Codegnan goes beyond theory. Every concept from chatbots to prediction models is tied to practical projects that you can showcase as part of your portfolio.
Expert faculty guidance
Train under experienced mentors who have updated industry knowledge and can simplify complex topics. With live interaction and real-world insights, you get the kind of clarity that is important to launch an early-level job.
Lifetime access to learning
Your learning doesn’t end with the course. You’ll receive lifetime access to updated study material and resources, helping you refresh skills as tools and technologies evolve.
Flexible batches for all learners
Online and offline batches are available for students with flexible batch options. Whether you’re a student or a working professional, you’ll find a schedule that fits your lifestyle.
Career support through Job Accelerator
Although Data Science doesn’t include direct placement assistance, you can join our Job Accelerator Program to build resumes, practice interviews, and connect with promising opportunities through career guidance.
Become a certified Data Scientist in 1 month
You can become a certified data scientist in just one month with Codegnan’s classroom and online data science training in Ameerpet. The program combines expert mentoring, real-world projects, and authorised certification after course completion.
This gives you the confidence and skills to start applying data science professionally. Our experts provide hands-on training so that you get ready with the demanding industry skills early.
Codegnan Learners success
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What is the Data Science course fee in Ameerpet, Hyderabad?
The fee for Codegnan’s Data Science course in Ameerpet is ₹1,00,000. This discounted price is available for a limited period. It includes theory sessions, hands-on project support, certification, and lifetime access to updated study resources.
You can not only learn essential data science concepts from our expert but also implement them under expert guidance for better understanding.
Phone Number
Location
First Floor, 101, PANCOM Business Center, opp. to Chennai Shopping Mall, Nagarjuna Nagar colony, Ameerpet, Hyderabad, Telangana, 500073
Data Science Course FAQs
What is the duration of the Data Science course in Ameerpet?
The Data Science Course in Ameerpet is a 1-month fast-track training program with 300+ hours of instructor-led training. You can learn theoretical concepts with proper hands-on training during this period.
What is the fee for the Data Science course in Ameerpet?
The data science course fee in Ameerpet is ₹1,00,000, a discounted price available for a limited number of students. This course fee may vary with similar other courses based on factors like course syllabus, practical sessions, trainers’ expertise, etc.
Where is the Codegnan Ameerpet training center located?
The Codegnan Ameerpet campus is located on the First Floor, PANCOM Business Centre, Opposite Chennai Shopping Mall, Nagarjuna Nagar Colony, Ameerpet, Hyderabad – 500073.
What projects will I build in this Data Science course?
Students work on real projects like drowsiness detection, rainfall prediction, AI chatbots, house price forecasting, fire and smoke detection, and social media data analysis. These project works increase the value of your portfolio, showcasing your real talents to recruiters.
Will I receive a certificate after completing the Data Science course?
Yes, you will receive an industry-recognised Data Science course completion certificate that adds credibility to your resume and career profile. You can also enrol for advanced data science course with our certifications.
Does Codegnan provide placement support for Data Science training?
No, direct placement assistance is not included for the Data Science training course. However, students can join Codegnan’s Job Accelerator Program for resume building, interview prep, and career guidance.
Why choose Codegnan for Data Science training in Ameerpet?
Codegnan offers expert mentors, hands-on projects, lifetime learning access, flexible batch timings, and a practical approach that makes data science concepts easier to understand and apply.
