Python

Step into the Future- Be an Industry ready Data Science Professional
Duration: 400 Hrs
100% Placement Assistance | 1000+ Hiring Partners
1977 Learners Enrolled
4.5/5

About Data Science & Machine Learning

This Data Science with Machine Learning certification course led by All Solutions India Technologies aims at helping you master all the l skills that are crucial in the field of Data Science with Machine Learning In this course, you will learn how to utilize python and python based functionalities for data analytical purposes. As well as work with real-world Kickstarter data to assess what makes a successful project via hands-on practice.

Key Features of Data Science & Machine Learning

400 Hrs of LIVE online training

LIVE mentoring & Doubt clarification sessions

100+ lab assignments

25 Hrs aptitude and logical reasoning

Interview preparation & Placement assistance

100% Money Back Guarantee

No questions asked refund*

Training Options

Live-Online

Duration: 400 Hrs
Limited Time – Hurry up!

Classroom Based

Duration: 400 Hrs
Limited Time – Hurry up!

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Benefits of Data Science & Machine Learning Course

DATA ANALYST

Maximum
Rs. 50 L
Average
Rs. 20 L
Minimum
Rs. 15 L

ANNUAL SALARY

HIRING COMPANIES

Course Curriculum

Advance AI

  • Encoder vs Decoder
  • Difference with PCA
  • KL Divergence
  • Variable Auto Encoders
  • Generators
  • Discriminator
  • DCGAN
  • Generative Adversarial Text to Image Synthesis
  • Style GAN
  • Soft and Hard Attention
  • Local and Global attention
  • Monotonic Alignment and Predictive Alignment
  • Multi headed Attention
  • Transformers

Deep LearningAI

  • Perceptron and relate it with Logistic Regression
  • Multiple layer Neural network
  • Similarities and Differences with Basic ML
  • Forward Propagation
  • Back Propagation Algorithm
  • Vanishing Gradient and Exploding Gradient
  • Non Linearity
  • Sigmoid / Tanh Function
  • Relu /Leaky Relu /Gelu
  • Softmax Function
  • Gradient Descent
  • Stochastic Gradient Descent
  • Momentum
  • AdaGrad
  • RMSProp
  • Adam/ Nadam
  • Tensors
  • Session, Placeholders and Variables
  • Hands on with Tensorflow
  • Graphs using Tensorboard
  • Why Keras
  • Sequential vs Functional
  • Model Creation
  • Difference between Tensorflow and Pytorch
  • Autograd
  • Graphs
  • Control Flow and Weight Sharing
  • Feed Forward Networks
  • Fully Connected Networks
  • Recurrent Neural Networks
  • Convolutional Networks
  • OpenCV
  • Convolution/ Filters/ Pooling
  • Back Propogation in CNN
  • Types Of CNN
  • FastRCNN, YOLO
  • ImageNet
  • Need of Transfer Learning
  • Freezing of Layers
  • Reusing of Structure
  • LeNet/ Alexnet
  • VGG 16/ 19
  • ResNet 34/101
  • Inception and Googlenet
  • Classical RNN
  • Vanishing Gradient
  • Exploding Gradient
  • LSTM/GRU
  • Bidirectional RNN
  • Lemmatization/ Stemming
  • Embedding
  • Vectorization
  • Glove
  • Nltk/Spacy

ML/AIOps and Big Data

  • Installation
  • All Necessary Commands
  • Permissions and Ownership
  • Tools and Packages
  • Docker Configuration
  • Docker Files
  • Continer Linking
  • Kubernetes Architecture
  • Kubectl Commands
  • Url Mapping
  • Function / Class based Views
  • ORM
  • Admin
  • AWS Server
  • S3 Buckets
  • Sagemaker
  • Build Train Deploy
  • Life Cycle
  • Local Repository
  • Add / Commit / Push / Pull
  • Merge
  • Stash

Advance Machine Learning

 
  • Logistic regression vs Linear Regression
  • Log Odds / Logit / Sigmoid Function
  • Optimization and Log Loss
  • Maximum Likelihood Estimation
  • Support Vectors and Hyperplanes
  • Hard margin vs Soft margin
  • Kernel Trick in non-Linear SVM
  • SVM Parameter Tuning
  • Optimization
  • Hinge Loss and Combined Loss
  • Lag Values
  • AutoRegression/ AutoCorrelation
  • Stationarity
  • ACF vs PACF Plots
  • Smoothing Time Series
  • Dicky Fuller Test
  • AR/ MA/ ARIMA/ SARIMA
  • Holdout Validation
  • K-fold cross Validation
  • Stratified Kfold
  • Cross_val_score
  • GridSearchCV
  • RandomizedSearchCV

Regression Based evaluation

  • MSE/MAE
  • R2/Adjusted R2

Classification Based evaluation

  • Confusion Matrix
  • Precision/ Sensitivity/ Specificity/ F1 Score
  • AUC/ ROC
  • AIC and BIC
  • Random Forest
  • AdaBoost
  • Gradient Boosting
  • XGBoost
  • Blending/ Stacking
  • Clustering
  • Anomaly Detection
  • Association Rules
  • Dimensional Reduction
  • KMeans
  • Heirarchical
  • DBScan
  • Spectral Clustering
  • GMM
  • Eigen Values and Eigen Vectors
  • Principal Component
  • PCA
  • Advance Dimension Reduction Techniques

Machine Learning

  • Difference Between AI, ML and DL
  • Applications of Machine Learning
  • Categorization of Machine Learning
  • Supervised / Unsupervised / Semi Supervised
  • Parametric vs Non Parametric
  • Geometric/ Rule Based/ Gaussian
  • Flow Operation (Pipelining)
  • Sklearn Usage
  • Null Values Imputation
  • Outlier Detection
  • Encoding
  • Label Encoder
  • Ordinal Encoding
  • One Hot Encoding
  • Scaling
  • Binarizer
  • MinMaxScaling
  • Normalizer (L1 and L2)
  • StandardScaler
  • Imbalance Dataset
  • Univariate/ Bivariate/ Multivariate Analysis
  • Filter Methods
  • Wrapper Methods
  • Embedding
  • Dimensional Reduction
  • Data Cleaning
  • Train/ Test Split
  • Basic Modeling
  • Bias and Variance
  • Evaluation Metrics
  • Cross validation
  • Criteria to Select Models
  • Ensembling
  • Assumptions
  • Introduction to Linear Regression
  • Predictions using Dot product
  • Multiple Linear Regression
  • Cost Function (Sum of Square Error)
  • Gradient Descent based approach
  • Introduction to Polynomial Regression
  • When to use Polynomial regression
  • Evaluation based on RMSE/ R2
  • Introduction to Decision tree
  • Decision Tree Classification / Regression
  • Types of Decision Tree techniques (ID3 / CART)
  • Optimization and Pruning
  • Introduction to KNN algorithm
  • KNN Classifier vs Regressor
  • How to select the best k
  • Conditional Probability and Bayes Theorem
  • Naive Bayes
  • Burnoulli / Multinomial
  • Gaussian Implementation

Business Analytics and Intelligence

  • Measures of Central Tendency
  • Distributions
  • PDF/ CDF
  • Central Limit Theorem
  • Parametric and non parametric Tests
  • Z test/ T test
  • Chi2 test
  • p-Value
  • F test
  • One way ANOVA, Two Way ANOVA
  • MANOVA
  • Visualization
  • Dashboard
  • DAX
  • Measures
  • M Language
  • Power Query
  • R Studio
  • Basic Data Structures in R
  • Vectors and DataFrames
  • Distributions
  • Regression Analysis
  • Classification

Python and LibrariesAnalytics and Intelligence

  • Strings and Basic Data Structures
  • Strings
  • List and Tuples
  • Sets and Dictionaries
  • Control
  • Statements
  • Conditions
  • While and For Loop
  • Adv Loops
  • Functions
  • Basic Functions
  • Nested Functions
  • Recursive Functions
  • Object Oriented Programming
  • Basics of OOPS
  • Inheritance
  • Polymorphism
  • Composition
  • Linked Lists
  • Trees
  • Stacks and Queues
  • Graphs
  • Searching
  • Sorting
  • Basic Numpy
  • Indexing/ Slicing
  • Broadcasting
  • Appending/ Inserting on Axis
  • Mathematical and Statistical operations
  • Advance Numpy
  • Sort/ Conditions
  • Transpose operations
  • Joining/ Splitting
  • Linear Algebra
  • Introduction
  • Data Extraction
  • Series/ DataFrame Creations
  • Indexing and Slicing
  • Grouping and Merging
  • Conditions/ Grouping/ Imputation
  • Append/ Concat/ Merge/ Join
  • DateTime Functionalities and Resampling
  • Window Functions
  • Excel and Sql Functions
  • Pivot table/ Crosstab/ Melt
  • Sql with Pandas
  • Scatterplots/ Barplots/ Histograms/ Density Plots
  • 3D plots
  • Boxplotting and Outlier Detection
  • Visualizing Linear Relationships
  • Customization of Matplotlib
  • Subplotting
  • Seaborn and Plotly

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At All Solutions India, we value the trust of our students immensely. If you feel that a course does not meet your expectations, we offer a 7-day money-back guarantee. Just send us a refund request via email within 7 days of purchase and we will refund 100% of your payment, no questions asked!
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  1. Drop an email on info@allsolutionsindia.com with a subject “Online course refund | Course name”. (Please do not forget to send it from the registered email id)
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  3. Ensure that the email is received within seven days of batch start date. [Example: if batch starts on 28 th Oct’20, you should send the refund email on or before 04th Nov’20 midnight]
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