|| Machine Learning Certification Course

In a Machine Learning Training Course, you'll explore the foundational principles and practical applications of algorithms that enable computers to learn from data and make predictions or decisions autonomously. Topics typically include supervised learning, where algorithms are trained on labeled data to predict outcomes, and unsupervised learning, which involves discovering patterns and structures in unlabeled data. You'll also delve into reinforcement learning, where agents learn to make sequences of decisions through interaction with an environment. Practical skills in data preprocessing, model selection, evaluation, and optimization using tools like Python, TensorFlow, and scikit-learn are emphasized. By the end of the ML course, you'll be proficient in applying machine learning techniques to solve real-world problems across various industries, from healthcare and finance to natural language processing and computer vision.


The goal of an advanced Python for Machine Learning Course is to give students the know-how they need to solve machine learning challenges using Python programming. The course explores a wide range of machine learning methods and algorithms, assisting students in comprehending how to use Python to efficiently apply these solutions. The Machine Learning Landscape, which also lays the groundwork for later, more advanced subjects. The practical components of machine learning projects, such as data preprocessing, model selection, and evaluation, are covered in later courses. Comprehensive Machine Learning The project is especially concentrated on using the abilities acquired in a practical endeavor. Our Machine Learning course offers a comprehensive exploration of one of the most transformative technologies of our time. Through a blend of theoretical foundations and practical applications, participants will delve into the core concepts, algorithms, and techniques that power machine learning systems. From supervised and unsupervised learning to deep learning and reinforcement learning, students will gain a deep understanding of various machine learning paradigms and their real-world applications. Hands-on projects and coding exercises will enable participants to build and deploy machine learning models, analyze data, and derive valuable insights across diverse domains such as healthcare, finance, marketing, and more. Whether you're a beginner eager to enter the field or a seasoned professional seeking to enhance your skills, this course equips you with the knowledge and tools needed to harness the power of machine learning and drive innovation in today's data-driven world.



Machine Learning Fundamentals is an introductory course designed to provide students with a solid foundation in the principles and techniques of machine learning. The course covers a range of topics, from supervised and unsupervised learning to deep learning and reinforcement learning. Through a combination of lectures, hands-on exercises, and projects, students will gain practical experience in applying machine learning algorithms to solve real-world problems.



Please contact the nearest BIT training institute or send an email to inquiry@bitbaroda.com with any additional questions you may have regarding our Machine Learning training course. We offer a free demo by calling us at +91-9328994901. We offer top-notch Machine Learning classes in Vadodara-Sayajigunj, Vadodara - Waghodia Road, Vadodara - Manjalpur, Ahmedabad, Anand, and Nadiad.

|| Choose Machine Learning Course From BIT

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|| What will I learn?

  • Understand the basic concepts of machine learning, including supervised, unsupervised, and reinforcement learning.
  • Review essential mathematical concepts such as linear algebra (vectors, matrices), calculus (derivatives, gradients), and probability theory (Bayesian inference, distributions).
  • Learn techniques to clean, preprocess, and transform raw data into a format suitable for machine learning algorithms.
  • Explore methods for visualizing and understanding data distributions, correlations, and anomalies.
  • Classification: Logistic Regression, Decision Trees, Random Forests, Support Vector Machines (SVM), Neural Networks.
  • Regression: Linear Regression, Polynomial Regression, Ridge Regression, Lasso Regression. Clustering: K-Means, Hierarchical Clustering, DBSCAN.

|| What will I learn?

  • Understand the basic concepts of machine learning, including supervised, unsupervised, and reinforcement learning.
  • Review essential mathematical concepts such as linear algebra (vectors, matrices), calculus (derivatives, gradients), and probability theory (Bayesian inference, distributions).
  • Learn techniques to clean, preprocess, and transform raw data into a format suitable for machine learning algorithms.
  • Explore methods for visualizing and understanding data distributions, correlations, and anomalies.
  • Classification: Logistic Regression, Decision Trees, Random Forests, Support Vector Machines (SVM), Neural Networks.
  • Regression: Linear Regression, Polynomial Regression, Ridge Regression, Lasso Regression. Clustering: K-Means, Hierarchical Clustering, DBSCAN.

|| Requirements

  • Basic programming knowledge (preferably in Python)
  • Understanding of fundamental statistical concepts
  • Basic knowledge of linear algebra and calculus

|| Requirements

  • Basic programming knowledge (preferably in Python)
  • Understanding of fundamental statistical concepts
  • Basic knowledge of linear algebra and calculus

    Our Machine Learning course content is meticulously designed to provide a comprehensive understanding of the foundational principles and advanced techniques in the field. Beginning with an introduction to machine learning concepts, participants will explore topics such as supervised learning, unsupervised learning, and reinforcement learning. They will delve into various algorithms, including linear regression, logistic regression, decision trees, support vector machines, k-nearest neighbors, clustering algorithms, and neural networks. Moreover, participants will gain proficiency in model evaluation and validation techniques, feature engineering, dimensionality reduction, and hyperparameter tuning. Through hands-on projects and practical exercises, students will apply their knowledge to real-world datasets, honing their skills in data preprocessing, model building, and performance evaluation. Additionally, the course covers advanced topics like deep learning, natural language processing, and computer vision, enabling participants to tackle complex problems across diverse domains. By the end of the course, students will be equipped with the expertise to develop and deploy machine learning models effectively, driving innovation and solving challenging problems in various industries.


    Machine learning learning pathways ,machine learning roadmap ,python  , Advanced Python, sql ,mathematics ,data science and ML ,Project Development



    • Python Basic Building
    • Python Keywords and identifiers
    • Comments, indentation, statements
    • Variables and data types in Python
    • Standard Input and Output


    • Operators
    • Control flow: if else elif
    • Control flow: while loop
    • Control flow: for loop
    • Control flow: break & continue
    • Python Data Structures


    • Strings
    • Lists, Lists comprehension
    • Tuples, Sets
    • Dictionary, Dictionary Comprehension


    • Python Functions
    • Python Builtin Functions.
    • Python Userdefined Functions.
    • Python Recursion Functions.
    • Python Lambda Functions.
    • Python Exception Handling, 
    • Logging And Debugging


    • Exception Handling 
    • Custom Exception Handling
    • Logging With Python
    • Debugging With Python
    • Python OOPS
    • Python Objects And Classes
    • Python Constructors
    • Python Inheritance
    • Abstraction In Python
    • Polymorphism in Python
    • Encapsulation in Python


    • File Handling
    • Create 
    • Read
    • Write
    • Append

    • Introduction to NumPy
    • NumPy Array
    • Creating NumPy Array
    • Array Attributes, 
    • Array Methods
    • Array Indexing, 
    • Slicing Arrays
    • Array Operation
    • Iteration through Arrays


    • Introduction to Pandas
    • Pandas Series
    • Creating Pandas Series
    • Accessing Series Elements
    • Filtering a Series
    • Arithmetic Operations
    • Series Ranking and Sorting
    • Checking Null Values
    • Concatenate a Series


    • Data Frame Manipulation
    • Pandas Dataframe 
    • Introduction Dataframe Creation
    • Reading Data from Various Files
    • Understanding Data
    • Accessing Data Frame Elements using Indexing
    • Dataframe Sorting
    • Ranking in Dataframe
    • Dataframe Concatenation
    • Dataframe Joins
    • Dataframe Merge
    • Reshaping Dataframe
    • Pivot Tables, 
    • Cross Tables
    • Dataframe Operations


    • Checking Duplicates
    • Dropping Rows and Columns
    • Replacing Values
    • Grouping Dataframe
    • Missing Value Analysis & Treatment
    • Visualization using Matplotlib
    • Plot Styles & Settings
    • Line Plot, 
    • Multiline Plot
    • Matplotlib Subplots
    • Histogram, Boxplot
    • Pie Chart ,Scatter Plot
    • Visualization using Seaborn
    • Strip Plot ,Distribution Plot
    • Joint Plot, 
    • Violin Plot, 
    • Swarm Plot
    • Pair Plot,
    • Count Plot
    • Heatmap
    • Visualization using Plotly
    • Boxplot
    • Bubble Chart
    • Violin Plot
    • 3D Visualization


    • EDA and Feature Engineering
    • Introduction of EDA
    • Dataframe Analysis using Groupby
    • Advanced Data Explorations

    • Working with SQL Using MySQL 
    • Work Bench / SQL Server"
    • USE, DESCRIBE, 
    • SHOW TABLES
    • SELECT, INSERT
    • UPDATE & DELETE
    • CREATE TABLE
    • ALTER: ADD, MODIFY, DROP
    • DROP TABLE, TRUNCATE, DELETE
    • LIMIT, OFFSET
    • ORDER BY
    • DISTINCT
    • WHERE Clause
    • HAVING Clause
    • Logical Operators
    • Aggregate Functions: COUNT, MIN, MAX, AVG, SUM
    • GROUP BY
    • SQL Primary And Foreign Key
    • Join and Natural Join
    • Inner, Left, Right and Outer joins


    • Advance SQL
    • Subqueries/Nested Queries/Inner Queries
    • SQL Function And Stored Procedures
    • SQL Window Function
    • CTE In SQL
    • Normalization In SQL

    • Basic Math
    • Linear Algebra
    • Probability
    • Calculus
    • Develop a comprehensive understanding of coordinate geometry and linear algebra.
    • Build a strong foundation in calculus, including limits, derivatives, and integrals.

    • Descriptive Statistics
    • Sampling Techniques
    • Measure of Central Tendency
    • Measure of Dispersion
    • Skewness and Kurtosis
    • Random Variables
    • Bassells Correction Method
    • Percentiles and Quartiles
    • Five Number Summary
    • Gaussian Distribution
    • Lognormal Distribution
    • Binomial Distribution
    • Bernoulli Distribution


    • Inferential Statistics
    • Standard Normal Distribution 
    • ZTest
    • TTest
    • ChiSquare Test
    • ANOVA / FTest
    • Introduction to Hypothesis Testing
    • Null Hypothesis
    • Alternet Hypothesis


    • Probability Theory
    • What is Probability?
    • Events and Types of Events
    • Sets in Probability
    • Probability Basics using Python
    • Conditional Probability
    • Expectation and Variance

    • Introduction to Machine Learning
    • Machine Learning Modelling Flow
    • "Supervised and Unsupervised 
    • Types of Machine Learning Algorithms


    • Linear Regression using OLS
    • Introduction of Linear Regression
    • Types of Linear Regression
    • OLS Model
    • Math behind Linear Regression
    • Decomposition Variability
    • Metrics to Evaluate Model
    • Feature Scaling
    • Feature Selection
    • Regularisation Techniques
    • Ridge Regression 
    • Lasso Regression
    • ElastivNet Regression


    • Optimisation Techniques
    • What is Optimisation?
    • Gradient Descent
    • Adagrad Algorithm
    • Adam Algorithm
    • Linear Regression with SGD
    • Prerequisites


    • Introduction to Stochastic Gradient Descent (SGD)
    • Preparation for SGD
    • Workflow of SGD
    • Implementation of SGD on Linear Regression


    • Logistic Regression
    • Maximum Likelihood Estimation
    • "Logistic Regression Using Sigmoid 
    • Activation Function"
    • Performance Metrics 
    • Confusion Matrix
    • Precision, Recall, F1Score
    • Receiver Operating Characteristic Curve


    • KNN
    • Euclidean Distance
    • Manhattan Distance
    • Implementation for KNN


    • SVM
    • Support Vector Regression
    • Support Vector Classification
    • Polynomial Kernel
    • Cost Function
    • GridSerchCV


    • Decision Trees
    • Decision Tree for Classification
    • Decision Tree for Regression
    • ID3 Algorithm
    • CART Algorithm
    • Entropy
    • Gini Index
    • Information Gain
    • Decision Tree: Regression
    • Mean Square Error
    • PrePruning and PostPruning


    • Naive Bayes
    • Introduction to Bayes Theorem
    • Explanation for naive bayes


    • Ensemble Technique
    • Bagging
    • Random Forest Classifier
    • Random Forest Regression
    • Random Forest – Why & How?
    • Feature Importance
    • Advantages & Disadvantages


    • Boosting
    • Bootstrap Aggregating
    • AdaBoost
    • XgBoost
    • Project For Random Forest
    • Project Penguin Classification
    • Project Texi Prediction


    • Kmeans Clustering
    • Prerequisites
    • Cluster Analysis
    • Kmeans
    • Implementation of Kmeans
    • Pros and Cons of Kmeans
    • Application of Kmeans
    • Elbow Method
    • Model building for Kmeans Clustering


    • Hierarchical Clustering
    • Types of Hierarchical Clustering
    • Dendrogram
    • Pros and Cons of Hierarchical Clustering
    • Model building for Hierarchical Clustering


    • DBSCAN Clustering
    • Introduction for DBSCAN Clustering
    • implementation of DBSCAN


    • Principal Components Analysis
    • Prerequisites
    • Introduction to PCA
    • Principal Component
    • Implementation of PCA
    • Case study
    • Applications of PCA
    • Project on PCA


    • Time Series Modelling
    • Understand Time Series Data
    • Visualising Time Series Components
    • Exponential Smoothing
    • ARIMA
    • SARIMA
    • SARIMAX
    • Project on Forecasting
    • Cloud Basics
    • ML on Cloud

    • Introduction of MLOps
    • What and why MLOps
    • MLOps fundamentals
    • MLOps vs DevOps
    • Why DevOps is not sufficient for MLOps
    • Challenges in traditional ML Pipeline
    • DevOps and MLOps tools and platform
    • What is SDLC?
    • Types of SDLC
    • Waterfall vs AGILE vs DevOps vs MLOps


    • MLOps Foundation
    • Fundamental of Linux for MLOps and data scientist
    • Important Linux Commands
    • Source code managements using GIT
    • GIT configuration and GIT commands
    • YAML for Configuration Writing
    • YAML vs JSON Schema
    • Docker for Containers
    • Docker Basic Command, Dockerhub, Dockerfile
    • Cloud Computing and Cloud Infrastructure
    • Cloud Service Provider- AWS, GCP, AZURE
    • Data Managements and Versioning with DVC
    • Monitoring, Alerting, Retraining With Grafana and
    • prometheus
    • Experiment tracking with MLFLOW
    • Model Serving With BENTOML


    • End to End project implementation with Deployment implementation with Deployment
    • Understanding Machine learning Workflow and Project Setup
    • Project Template Setup with GitHub
    • Modular workflow Introduction and Implementation
    • Understanding the Training Pipeline and Its Components


    • Data Ingestion, Data Transformation Model Trainer Model
    • Evaluation
    • Creating Prediction Pipeline and End Point Creation
    • Continues Integration, Continues Delivery and Continues
    • Training understanding and Project Deployment

    • Prompt Engineering
    • Why Prompt Engineering?
    • ChatGPT
    • Few Standard Definitions:
    • Label
    • Logic
    • Model Parameters (LLM Parameters)
    • Basic Prompts and Prompt Formatting
    • Elements of a Prompt:
    • Context
    • Task Specification
    • Constraints
    • General Tips for Designing Prompts:
    • Be Specific
    • Keep it Concise
    • Be Contextually Aware
    • Test and Iterate
    • Prompt Engineering Use Cases
    • Information Extraction
    • Text Summarization
    • Question Answering
    • Code Generation
    • Text Classification
    • Prompt Engineering Techniques
    • N-shot Prompting
    • Zero-shot Prompting
    • Chain-of-Thought (CoT) Prompting
    • Generated Knowledge Prompting

    In a Machine Learning course, training features related to project development typically include:


    • Data Collection and Preprocessing Techniques: Students learn how to gather and preprocess data for training models. This involves techniques such as data cleaning, handling missing values, outlier detection, normalization, and feature scaling.
    • Feature Engineering: Feature engineering is a crucial aspect of building effective machine learning models. Students learn various techniques for creating new features, transforming existing ones, handling categorical variables, and extracting meaningful information from raw data.
    • Model Selection: Students are introduced to a variety of machine learning algorithms and techniques, including supervised learning (e.g., regression, classification), unsupervised learning (e.g., clustering, dimensionality reduction), and ensemble methods (e.g., random forests, gradient boosting). They learn how to choose the most appropriate model for different types of problems and datasets.
    • Model Training and Evaluation: Students learn how to train machine learning models using training data and evaluate their performance using appropriate metrics. They understand the concepts of overfitting, underfitting, cross-validation, and hyperparameter tuning to ensure robust model performance.
    • Project-based Learning: Hands-on projects are integral to the course, allowing students to apply their knowledge and skills to real-world problems. They work on end-to-end machine learning projects, from data exploration and preprocessing to model building, evaluation, and deployment.
    • Tools and Libraries: Students gain proficiency in popular machine learning tools and libraries such as Python, scikit-learn, TensorFlow, and PyTorch. They learn how to use these tools effectively to implement machine learning algorithms, visualize data, and interpret model results.
    • Ethical Considerations: The course covers ethical considerations in machine learning, including fairness, bias, privacy, and transparency. Students learn about the ethical implications of their models and how to mitigate potential biases and risks.


    Overall, the training features in a Machine Learning course provide students with a comprehensive understanding of machine learning concepts and practical skills to tackle real-world problems effectively.

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|| Become An Expert Machine Learning

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|| Scope of Machine Learning.

In India, the scope of machine learning is significant and growing rapidly across various sectors. Here's a glimpse into how machine learning is being applied and its scope in India:

 

  • Healthcare: Machine learning is being used for medical image analysis, disease diagnosis, personalized treatment plans, drug discovery, and predictive analytics for patient outcomes. Indian startups and research institutions are actively involved in developing AI-powered healthcare solutions to address the country's healthcare challenges.
  •  Finance: In the finance sector, machine learning is applied for fraud detection, risk assessment, algorithmic trading, credit scoring, and customer relationship management. Indian banks, financial institutions, and fintech startups are leveraging machine learning to enhance operational efficiency, mitigate risks, and improve customer experience.
  • E-commerce: Machine learning algorithms power recommendation systems, personalized marketing, demand forecasting, supply chain optimization, and fraud prevention in the e-commerce industry. Indian e-commerce giants and startups are increasingly adopting AI and machine learning to drive sales, improve customer engagement, and streamline operations.
  • Education: Machine learning is transforming education in India through adaptive learning platforms, personalized tutoring systems, student performance analysis, and automated grading systems. Edtech startups in India are leveraging machine learning to offer scalable and personalized learning experiences to students across diverse educational levels and subjects.
  • Agriculture: Machine learning is being applied in precision agriculture for crop yield prediction, pest detection, soil health monitoring, and agricultural supply chain optimization. Indian agritech startups are developing AI-powered solutions to address challenges faced by farmers and improve agricultural productivity.
  • Manufacturing: In the manufacturing sector, machine learning is used for predictive maintenance, quality control, supply chain optimization, inventory management, and process automation. Indian manufacturing companies are embracing AI and machine learning technologies to enhance productivity, reduce downtime, and optimize resource utilization.
  • Smart Cities: Machine learning plays a crucial role in building smart cities in India by enabling intelligent transportation systems, energy management, waste management, urban planning, and public safety solutions. Indian cities are deploying AI-driven technologies to address urban challenges and improve the quality of life for residents.
  • Language and Speech Processing: With India's diverse linguistic landscape, machine learning is used for natural language processing (NLP), speech recognition, machine translation, and chatbots in various Indian languages. Indian startups and research organizations are developing AI-powered solutions to bridge the language barrier and facilitate communication in multilingual contexts.

 

Overall, the scope of machine learning in India is vast and encompasses diverse industries and applications. With growing investments, research initiatives, and collaborations, India is poised to leverage machine learning technologies to drive innovation, economic growth, and societal development.

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|| Some Prominent Companies  in India that use Machine Learning

Many companies in India are leveraging machine learning across various industries to improve processes, enhance customer experiences, and drive innovation. Some notable examples include:

 

  • Flipkart: One of India's largest e-commerce platforms, Flipkart utilizes machine learning for product recommendations, personalized marketing, fraud detection, supply chain optimization, and demand forecasting.

  • Amazon India: Amazon India employs machine learning algorithms for various purposes, including product recommendations, search relevance, inventory management, customer service automation, and delivery route optimization.

  • Paytm: Paytm, a leading digital payments and financial services company, integrates machine learning into its platform for fraud prevention, risk management, customer segmentation, and personalized offers.

  • Ola: Ola, a prominent ride-hailing service in India, uses machine learning for dynamic pricing, route optimization, demand prediction, driver allocation, and customer support automation.

  • Zomato: Zomato, a popular food delivery and restaurant discovery platform, applies machine learning techniques for personalized recommendations, menu analysis, delivery time estimation, and customer sentiment analysis.

  • Reliance Jio: Reliance Jio, a telecommunications company, employs machine learning for network optimization, customer analytics, churn prediction, targeted advertising, and content recommendation on its digital platforms.

  • Tata Consultancy Services (TCS): TCS, one of India's largest IT services firms, offers machine learning solutions to its clients across industries, including banking, retail, healthcare, and manufacturing, for tasks such as predictive maintenance, risk assessment, and customer segmentation.

  • Infosys: Infosys provides machine learning services to global clients for business process automation, predictive analytics, anomaly detection, and personalized marketing, leveraging its expertise in AI and data science.

  • Wipro: Wipro delivers machine learning solutions for enterprises in areas such as predictive maintenance, supply chain optimization, customer experience enhancement, and fraud detection, helping clients drive digital transformation initiatives.

  • HDFC Bank: HDFC Bank, one of India's largest private sector banks, utilizes machine learning for credit risk assessment, fraud detection, customer segmentation, personalized marketing campaigns, and chatbot-based customer service.

 

 

|| Machine Learning Career Option.

In India, machine learning offers a wide range of career options and abundant job opportunities across various sectors. Some prominent career paths and job roles in machine learning include:

 

  • Data Scientist: Data scientists analyze large datasets to extract insights and make data-driven decisions. They use machine learning algorithms and statistical techniques to uncover patterns, trends, and correlations in data. Data scientists are in high demand across industries such as finance, healthcare, e-commerce, and telecommunications.
  • Machine Learning Engineer: Machine learning engineers design, develop, and deploy machine learning models and systems. They work on tasks such as feature engineering, model training, optimization, and scaling for production environments. Machine learning engineers are essential for building AI-powered applications, recommendation systems, and predictive analytics platforms.
  • AI Researcher: AI researchers focus on advancing the state-of-the-art in machine learning and artificial intelligence. They conduct research in areas such as deep learning, natural language processing, computer vision, and reinforcement learning. AI researchers often work in academia, research institutions, or corporate research labs.
  • AI Product Manager: AI product managers oversee the development and implementation of AI-powered products and solutions. They collaborate with cross-functional teams to define product requirements, prioritize features, and drive product strategy. AI product managers need a strong understanding of both technical and business aspects of AI.
  • Business Analyst/Data Analyst: Business analysts and data analysts use machine learning techniques to derive insights from data and inform business decision-making. They perform tasks such as data preprocessing, exploratory data analysis, and reporting to support strategic planning and operational efficiency.
  • AI Ethics and Policy Expert: With the increasing adoption of AI and machine learning, there is a growing need for professionals specializing in AI ethics, fairness, transparency, and policy. AI ethics experts work on issues related to bias mitigation, privacy protection, and responsible AI deployment.
  • Consultant/Advisor: Consultants and advisors provide strategic guidance to organizations on adopting and implementing machine learning solutions. They assess business requirements, recommend suitable AI technologies, and help companies integrate machine learning into their workflows effectively.
  • Freelancer/Independent Contractor: Many machine learning professionals choose to work as freelancers or independent contractors, offering their expertise to multiple clients on a project basis. Freelancers may work on diverse projects ranging from data analysis and model development to AI strategy consulting.

 

|| Job Roles and Salary

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|| Average Salary for Machine Learning Professionals.

As of my last update in January 2022, the average salary for machine learning professionals in India can vary based on factors such as experience, skill set, industry, and location. However, I can provide you with a general idea based on available data:

 

  • Entry-Level Positions (0-2 years of experience):
  • Machine Learning Engineer: ₹500,000 - ₹1,000,000 per year
  • Data Scientist: ₹600,000 - ₹1,200,000 per year.
  • Mid-Level Positions (2-5 years of experience):
  • Machine Learning Engineer: ₹800,000 - ₹1,800,000 per year
  • Data Scientist: ₹1,000,000 - ₹2,500,000 per year
  • Senior-Level Positions (5+ years of experience):
  • Machine Learning Engineer: ₹1,500,000 - ₹3,500,000 per year
  • Data Scientist: ₹2,000,000 - ₹5,000,000 per year

These figures are approximate and can vary depending on factors such as the specific company, location (e.g., salaries may be higher in cities like Bangalore, Mumbai, or Hyderabad compared to smaller cities), and the candidate's qualifications and negotiation skills.

 

|| Top Hiring Companies

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|| The Placement Opportunities for Machine Learning Professionals in India 

In India, the demand for professionals skilled in machine learning is rapidly growing across various industries, offering abundant placement opportunities for aspiring candidates. With the country emerging as a global technology hub, numerous companies, ranging from established tech giants to innovative startups, are actively seeking talent proficient in machine learning. Industries such as e-commerce, finance, healthcare, cybersecurity, and manufacturing are increasingly leveraging machine learning techniques to drive innovation and gain competitive advantage. Roles such as machine learning engineer, data scientist, AI researcher, and business analyst are in high demand, offering lucrative salaries and career growth prospects. Additionally, India's vibrant startup ecosystem provides ample opportunities for machine learning enthusiasts to work on cutting-edge projects and contribute to groundbreaking innovations. As businesses continue to prioritize data-driven decision-making, the demand for machine learning talent in India is expected to soar, making it an opportune time for individuals to pursue careers in this dynamic and rapidly evolving field. 


Tech giants like Google, Microsoft, Amazon, and IBM have established a significant presence in India and continuously recruit machine learning talent for their research, development, and product teams. Additionally, Indian-based companies such as Flipkart, Ola, Paytm, and Zomato are increasingly investing in machine learning to enhance their products and services, thereby creating more opportunities for professionals in this field. Furthermore, consulting firms and research organizations also offer avenues for machine learning professionals to apply their skills in solving complex problems across various domains. Overall, the placement opportunities for machine learning professionals in India are diverse, promising, and continually expanding as businesses across industries recognize the importance of harnessing data-driven insights for competitive advantage and innovation.

|| Empowering Your Career Transition From Learning To Leading

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Megha Bhatt

Megha Bhatt, an ML Engineer at Cognizant, demonstrates prowess by leveraging unique tools such as Alteryx for advanced data blending and Google BigQuery for large-scale data analytics. Her adept use of these cutting-edge tools contributes to innovative and efficient data analysis.

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Darshna Dave

Darshna Dave, excelling as a Data Analyst at Deepak Foundation post-IT institute, showcases expertise in unique tools such as KNIME for data analytics workflows, Apache Superset for interactive data visualization, and RapidMiner for advanced predictive analytics.

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Shubham Ambike

Shubham Ambike, excelling as a Digital MIS Executive at Alois post-Business Analytics course, showcases expertise in tools like Microsoft Excel, Power BI, and Google Analytics. His adept use of these tools contributes to efficient data management and analysis. Congratulations on his placement.

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Mehul Sirohi

Mehul Sirohi, excelling as a Data Associate at Numerator post learning Data Analytics course, skillfully employs unique tools such as Alteryx for data blending, Jupyter Notebooks for interactive data analysis, and Looker for intuitive data visualization. His mastery of these advanced tools contributes to Numerator's data processing success.

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Pratik Shah

Pratik Shah excels in Data Processing at NielsenIQ after studying a Full-Stack Data science course from BIT. Proficient in tools like Excel, SQL, and Python, Pratik ensures precise and efficient data handling. Congratulations on his placement, which showcases his expertise in essential data processing tools.

|| Get Machine Learning Certification

Three easy steps will unlock your Machine Learning Certification:


  • Finish the online / offline course of Machine Learning Course and the Assignment
  • Take on and successfully complete a number of industry-based Projects
  • Pass the Machine Learning certification exam


The certificate for this Machine Learning course will be sent to you through our learning management system, where you can also download it. Add  a link to your certificate to your CV or LinkedIn profile.

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|| Frequently asked question

A Machine Learning Course teaches participants the fundamental concepts, techniques, and applications of machine learning, a subset of artificial intelligence focused on building algorithms that can learn from data and make predictions or decisions without explicit programming.

This course is suitable for individuals interested in pursuing a career in machine learning, data science, or related fields. It caters to beginners with little to no background in machine learning as well as professionals looking to expand their knowledge and skills in this area.

Most reputable Machine Learning courses offer a certificate of completion that can be shared on your resume or LinkedIn profile. However, it's essential to check the accreditation and recognition of the issuing institution before enrolling.

Yes, many Machine Learning courses are available online, offering flexibility in terms of timing and location. Online courses often include video lectures, interactive coding exercises, and discussion forums to facilitate learning.

Yes, Machine Learning courses typically include hands-on projects and case studies to apply the techniques learned in real-world scenarios. This practical experience is crucial for developing proficiency and building a portfolio to showcase to potential employers.

BIT offers a wide range of programs catering to various interests and career paths. These may include academic courses, vocational training, professional development, and more. Please visit our website – www.bitbaroda.com or contact our admissions office at M.9328994901 for a complete list of programs.

For any questions or assistance regarding the enrolment process, admissions requirements, or program details, please don't hesitate to reach out to our friendly admissions team. Please visit our website – www.bitbaroda.com or contact our admissions office at M.9328994901 for a complete list of programs or Visit Our Centers – Sayajigunj, Waghodia Road, Manjalpur in Vadodara, Anand, Nadiad, Ahmedabad

BIT prides itself on providing high-quality education, personalized attention, and hands-on learning experiences. Our dedicated faculty, state-of-the-art facilities, industry partnerships, and commitment to student success make us a preferred choice for students seeking a rewarding educational journey.

BIT committed to supporting students throughout their academic journey. We offer a range of support services, including academic advising, tutoring, career counselling, and wellness resources. Our goal is to ensure that every student has the tools and support they need to succeed.

You will need: A computer with internet access Python installed on your system (preferably Anaconda distribution) IDE or code editor (such as Jupyter Notebook, VS Code, or PyCharm) Libraries such as NumPy, pandas, Matplotlib, Scikit-learn, TensorFlow/Keras (installation instructions will be provided)

After completing the course, you might consider taking more advanced courses, participating in workshops, or working on more complex projects. You could also explore specializations in areas such as natural language processing, computer vision, or reinforcement learning.

Projects can range from simple applications of ML algorithms to real-world problems, such as: Building a spam email classifier. Predicting housing prices. Developing recommendation systems. Implementing a simple neural network for image recognition.
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