CCNA – Implementing & Administering Cisco Solutions

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It’s a practical, market-friendly course — not just slides. This CCNA – Implementing & Administering Cisco Solutions helps you do that faster.

Aditi Narayan Senior Technical Mentor

Acquire Key Python Skills: Master Data Science, Earn Certification, Launch Your Dev Career! DevLustro Academy has carved out its niche as a forerunner in the Data Science domain, providing an all-encompassing product that ensures participants harness, interpret and utilize data in ways never before imagined. DevLustro Academy has carved out its niche as a forerunner in the Data Science domain, providing an all-encompassing product that ensures participants harness, interpret and utilize data in ways never before imagined. Course was selected for our collection of top-rated courses trusted by businesses worldwide.

Our Core Highlights

World Class Instructor
World Class Instructor Mentorship from global experts
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1:1 with Industry Expert Personalised coaching tailored to you
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Average Salary Hike 55% average hike for our alumni

Course Description

Acquire Key Python Skills: Master Data Science, Earn Certification, Launch Your Dev Career! Elysium Academy has carved out its niche as a forerunner in the Data Science domain, providing an all-encompassing product that ensures participants harness, interpret and utilize data in ways never before imagined. Elysium Academy has carved out its niche as a forerunner in the Data Science domain, providing an all-encompassing product that ensures participants harness, interpret and utilize data in ways never before imagined. Course was selected for our collection of top-rated courses trusted by businesses worldwide.

CCNA – Implementing & Administering Cisco Solutions

Cybersecurity and Networking Course

Course Details

Harness powerful libraries like NumPy and Pandas for data manipulation and analysis.

Visualize data effectively using Matplotlib and Seaborn.

Implement machine learning algorithms with Scikit-learn.

Explore deep learning techniques with TensorFlow.

Data Science is the mining infrastructure set-up that makes the data.

Scrubbing Data is where the data will be cleansed, and all the duplicate

Data Scientists understand that data and derive meaningful outcomes.

Data Science is the substructure on which Artificial Intelligence are built.

Course Goals

  • Master Python fundamentals, including variables, data types, loops, and functions.
  • Dive into advanced concepts such as object-oriented programming (OOP) and error handling.

Future Scope of this Course

  • Industry Based Projects
  • Recognized worldwide

Our Career Service

  • Personalized coordinator.
  • Trainer feedback.
  • Trainer availability post sessions.
  • Get your staff certified.
  • Certificate from governing bodies.

Our Training Program Benefits

  • Hands on assignment
  • Curriculum that focuses on the learner.
  • Live, interactive training by DevLustro experts.
  • Curriculum aligned with current industry practices.
  • Portfolio / project support for real-world use.
01Chapter-1 Getting Started
  • 01.01History and Features of Python
  • 01.02Basic Syntax
  • 01.03Variables and Data Types
  • 01.04Operators
  • 01.05Conditional, Loop & Control Statements
  • 01.06Functions
  • 01.07Random Modules
  • 01.08Data Science
  • 01.09Data Science vs. Data Scientist
  • 01.10Future scope of data scientist
  • 01.11How to link python with DS
  • 01.12Data Mining
  • 01.13Data Sets
  • 01.14Python packages
  • 01.15Data Collections
  • 01.16Data Preprocessing
  • 01.17Data Visualization
  • 01.18Data Modelling
  • 01.19Pandas
  • 01.20Numpy
  • 01.21Scipy
  • 01.22Sckit
  • 01.23NLTK
  • 01.24Pandas
  • 01.25Numpy
  • 01.26Scipy
  • 01.27Sckit-Learn
  • 01.28NLTK
  • 01.29Matplot
  • 01.30Keras
  • 01.31Tensorflow
  • 01.32PyTorch
02Chapter-2 Data Collection and Preprocess
  • 02.01Numpy
  • 02.02Create Numpy arrays
  • 02.03Numpy operations
  • 02.04Numpy for statistical operations
  • 02.05Handling Missing/Fill-na/Replace Values
  • 02.06Drop Column/row
  • 02.07Label Encoding
  • 02.08One-Hot Encoding
  • 02.09Reshaping
  • 02.10Data operations
  • 02.11Data frame creations
  • 02.12Statistical functions in data operations
  • 02.13Merging and joining data frame
  • 02.14Concatenate
  • 02.15What is Data Normalization?
  • 02.16Standard Scalar
  • 02.17Min-Max Scalar
  • 02.18Hands on standard scalar
  • 02.19Hands on min-max scalar
  • 02.20How to collect input data
  • 02.21Read CSV Data
  • 02.22Read JSON Data
  • 02.23Read XLS Data
  • 02.24Read HTML Contents
  • 02.25View Data
03Chapter-3 Visualizations
  • 03.01Plotting with matplotlib
  • 03.02Bar charts
  • 03.03Pie charts
  • 03.04Scatter plots
  • 03.05Box plots
  • 03.06Histogram
  • 03.07Bubble Chart
  • 03.08Heat maps
  • 03.09Graph/line graph
  • 03.10Geographical data
  • 03.11Plotting with seaborn
  • 03.12Histogram with grid
  • 03.13Distplot
  • 03.14Pairplot
  • 03.15Scatter plots
  • 03.16Box plots
  • 03.17Lmplots
  • 03.18Histogram
  • 03.19Challenge: Visualize titanic dataset
  • 03.20Feature Extraction
  • 03.21Feature Selection
  • 03.22Pairplot
  • 03.23Scatter plots
  • 03.24Box plots
  • 03.25Lmplots
  • 03.26Histogram
  • 03.27Challenge: Visualize titanic dataset
04Chapter-4 Machine Learning
  • 04.01Al vs ML vs DL
  • 04.02Application of machine learning
  • 04.03How do machine learns
  • 04.04Types of Machine learning
  • 04.05Supervised Learning
  • 04.06Un-supervised Learning
  • 04.07What is Native Bayes?
  • 04.08Types of Naive Bayes
  • 04.09IRIS Classification
  • 04.10Data Processing
  • 04.11Train and create model
  • 04.12Performance Estimation
  • 04.13Analyse and create confusion matrix
  • 04.14Ordinary Least Square and Regression Errors
  • 04.15Data Processing
  • 04.16Train and Test Model
  • 04.17Test the model and Predict Y Values
  • 04.18R-Squared and its Importance
  • 04.19Score and Get coefficients
  • 04.20Calculate RMSE (Root Mean Squared Error)
  • 04.21Plot the predictions
  • 04.22Ordinary Least Square and Regression Errors
  • 04.23Data Processing
  • 04.24Train and Test Model
  • 04.25Test the model and Predict Y Values
  • 04.26R-Squared and its Importance
  • 04.27Score and Get coefficients
  • 04.28Calculate RMSE (Root Mean Squared Error)
  • 04.29Plot the predictions
  • 04.30Ordinary Least Square and Regression Errors
  • 04.31Data Processing
  • 04.32Train and Test Model
  • 04.33Test the model and Predict Y Values
  • 04.34R-Squared and its Importance
  • 04.35Score and Get coefficients
  • 04.36Calculate RMSE (Root Mean Squared Error)
  • 04.37Plot the predictions
  • 04.38What is SVM?
  • 04.39SVM kernel types
  • 04.40Problem: IRIS Classification
  • 04.41Data Processing
  • 04.42Train and create model
  • 04.43Performance Estimation
  • 04.44Analyse and create confusion matrix
05Chapter-5 Algorithms
  • 05.01What is Logistic Regression?
  • 05.02Problem: Heart Disease Prediction
  • 05.03Build Model
  • 05.04Performance Estimation
  • 05.05Analyse and create confusion matrix
  • 05.06What is decision tree?
  • 05.07Decision Tree Parameters
  • 05.08Problem: IRIS Classification
  • 05.09Data Processing
  • 05.10Train and create model
  • 05.11Evaluate Model
  • 05.12What is random forest?
  • 05.13Ensemble Learning
  • 05.14Bagging and Boosting Classifiers
  • 05.15Problem: Cardio Vascular Disease
  • 05.16lmplementation
  • 05.17Evaluate Model
  • 05.18Class
  • 05.19Objects
  • 05.20Constructors
  • 05.21Constructors
  • 05.22Encapsulation
  • 05.23Inheritance
  • 05.24Polymorphism
  • 05.25Super and this Keyword
  • 05.26Abstraction
  • 05.27Inheritance
  • 05.28What is KNN?
  • 05.29KNN parameters
  • 05.30Problem: Cardio Vascular Disease
  • 05.31Data collection and preprocessing
  • 05.32lmplementation
  • 05.33Evaluate Model
06Chapter-6 Evaluation Metrics
  • 06.01Evaluate Accuracy
  • 06.02Classification metrics
  • 06.03What is Threshold and PHAPTER Adjusting Thresholds
  • 06.04AUC ROC Curve
  • 06.05Why to reduce dimensions and Importance of PCA?
  • 06.06Steps to calculate PCA
  • 06.07Implementation of PCA
  • 06.08Visualization
  • 06.09What is Ridge regression?
  • 06.10Implement Ridge Regression
  • 06.11Plot Ridge Regression Line
  • 06.12Lasso Regression or L1 Penalty
  • 06.13lmplement lasso Regression
  • 06.14Plot lasso Regression Line
  • 06.15What is over fitting?
  • 06.16How to avoid over fitting?
  • 06.17What is under fitting?
  • 06.18How to avoid under fitting?
  • 06.19What is Cross Validation?
  • 06.20How Cross Validation Works
  • 06.21Prepare for Cross Validation
  • 06.22Parameter and implementation of Cross Validation
  • 06.23Understand the results of Cross Validation)
  • 06.24Hands On - Analyse the Result
07Chapter-7 Hypertunning Model and Clustering
  • 07.01What is Hyper parameter Tuning?
  • 07.02Grid Search and Randomized Search Approach
  • 07.03GridSearchCV Parameters Explained
  • 07.04Create GirdSearchCV Object
  • 07.05Fit data to GridSearchCV
  • 07.06Understand GridSearchCV Results
  • 07.07GridSearchCV using Logistic Regression
  • 07.08GridSearchCV using Support Vector
  • 07.09Randomized Search using random forest
  • 07.10Select Best Model
  • 07.11Randomized Search
  • 07.12Model Selection Summary
  • 07.13What is Clustering?
  • 07.14How the clusters are formed?
  • 07.15Problem Understanding: Customer Segmentation
  • 07.16Get, Visualize and Normalize the data
  • 07.17Import KMeans and Understand Parameters
  • 07.18Understanding KMeans++ Initialization Method
  • 07.19Create Clusters
  • 07.20Visualize and create different number of clusters
  • 07.21Understand Elbow Method to Decide number of Cluster
  • 07.22Implement Elbow Method
08Chapter-8 NLP and Recommendation System
  • 08.01What is NLP
  • 08.02Application of NLP
  • 08.03Remove punctuation
  • 08.04Tokenize
  • 08.05Remove stop words
  • 08.06Stem words
  • 08.07Lemmatize
  • 08.08Padding
  • 08.09Part of Speech Tagging
  • 08.10Name Entity Relationship
  • 08.11Sentiment Analysis
  • 08.12Read and preprocess data
  • 08.13NLP techniques
  • 08.14Tokenization
  • 08.15Tokens to vectors
  • 08.16Naive Bayes
  • 08.17Logistic Regression
  • 08.18Sentiment Analysis
  • 08.19Evaluate Metrics
  • 08.20What is Recommendation System?
  • 08.21How Do Recommendation Works?
  • 08.22Types of Recommendation
  • 08.23What is Content based recommendation?
  • 08.24Advantages and drawbacks
  • 08.25Hands on Content based recommendation code
  • 08.26What is Collaborative filtering?
  • 08.27Advantages and drawbacks
  • 08.28Kinds of collaborative filtering
  • 08.29Hands on collaborative filtering code
  • 08.30What is hybrid recommendation?
  • 08.31Advantages and Drawbacks
09Chapter-8 NLP and Recommendation System
  • 09.01What is NLP
  • 09.02Application of NLP
  • 09.03Remove punctuation
  • 09.04Tokenize
  • 09.05Remove stop words
  • 09.06Stem words
  • 09.07Lemmatize
  • 09.08Padding
  • 09.09Part of Speech Tagging
  • 09.10Name Entity Relationship
  • 09.11Sentiment Analysis
  • 09.12Read and preprocess data
  • 09.13NLP techniques
  • 09.14Tokenization
  • 09.15Tokens to vectors
  • 09.16Naive Bayes
  • 09.17Logistic Regression
  • 09.18Sentiment Analysis
  • 09.19Evaluate Metrics
  • 09.20What is Recommendation System?
  • 09.21How Do Recommendation Works?
  • 09.22Types of Recommendation
  • 09.23What is Content based recommendation?
  • 09.24Advantages and drawbacks
  • 09.25Hands on Content based recommendation code
  • 09.26What is Collaborative filtering?
  • 09.27Advantages and drawbacks
  • 09.28Kinds of collaborative filtering
  • 09.29Hands on collaborative filtering code
  • 09.30What is hybrid recommendation?
  • 09.31Advantages and Drawbacks
10Chapter-9 Deep Learning
  • 10.01What is Neuron and Artificial Neural Network?
  • 10.02How Artificial Neural Network works?
  • 10.03What is Keras and Tensorflow?
  • 10.04What is a Tensor in Tensorflow?
  • 10.05Installing Keras, backend and Tensorflow
  • 10.06Keras Model Building and Steps
  • 10.07Layers - Overview and Parameters
  • 10.08Activation Functions
  • 10.09Layers - Softmax Activation Function
  • 10.10What is a Loss Function?
  • 10.11Cross Entropy Loss Functions
  • 10.12Optimization - What is it?
  • 10.13Optimization - Gradient Descent
  • 10.14Initializers - Vanishing and Exploding Gradient Problem
  • 10.15Layers - Initializers explained
  • 10.16Problem Understanding: Disease Prediction
  • 10.17Read and process the data
  • 10.18Define the Keras Neural Network Model
  • 10.19Compile the Keras Neural Network Model
  • 10.20Evaluate the result
11Chapter-10 Projects
  • 11.01Problem understanding: Loan Approval Prediction
  • 11.02&nbspRead and preprocess data
  • 11.03Data splitting
  • 11.04Classification - Naïve Bayes
  • 11.05Classification – Support Vector Machine
  • 11.06Classification - Random Forest
  • 11.07Classification - Logistic Regression
  • 11.08Train the model
  • 11.09Evaluate performance metrics
  • 11.10Problem Understanding : Zomato Restaurant Review
  • 11.11Read and preprocess data
  • 11.12Data Splitting
  • 11.13Classification - Naïve Bayes (Multinomial)
  • 11.14Classification - Support Vector Machine
  • 11.15Classification - Random Forest
  • 11.16Classification – Decision Tree
  • 11.17Classification - Logistic Regression
  • 11.18Train the model
  • 11.19Evaluate performance metrics
  • 11.20Visualization using matplotlib and seaborn
  • 11.21Problem Understanding : Product Recommendation
  • 11.22Read and preprocess data
  • 11.23Collaborative filtering
  • 11.24Content based filtering
  • 11.25Recommend the product
  • 11.26Evaluate metrics

Chapter-1 Getting Started

Introduction to PythonHistory and Features of PythonBasic SyntaxVariables and Data TypesOperatorsConditional, Loop & Control StatementsFunctionsRandom ModulesIntroduction to Data ScienceData ScienceData Science vs. Data ScientistFuture scope of data scientistHow to link python with DSBasic Terminologies of DSData MiningData SetsPython packagesData CollectionsData PreprocessingData VisualizationData ModellingInstallation of PackagesPandasNumpyScipySckitNLTKPython Scientific LibrariesPandasNumpyScipySckit-LearnNLTKMatplotKerasTensorflowPyTorch

Chapter-2 Data Collection and Preprocess

Introduction to NumpyNumpyCreate Numpy arraysNumpy operationsNumpy for statistical operationsData PreprocessingHandling Missing/Fill-na/Replace ValuesDrop Column/rowLabel EncodingOne-Hot EncodingReshapingData operationsData frame creationsStatistical functions in data operationsMerging and joining data frameConcatenateData NormalizationWhat is Data Normalization?Standard ScalarMin-Max ScalarHands on standard scalarHands on min-max scalarData CollectionHow to collect input dataRead CSV DataRead JSON DataRead XLS DataRead HTML ContentsView Data

Chapter-3 Visualizations

Matplotlib VisualizationPlotting with matplotlibBar chartsPie chartsScatter plotsBox plotsHistogramBubble ChartHeat mapsGraph/line graphGeographical dataSeaborn VisualizationPlotting with seabornHistogram with gridDistplotPairplotScatter plotsBox plotsLmplotsHistogramChallenge: Visualize titanic datasetFeature EngineeringFeature ExtractionFeature SelectionEDAPairplotScatter plotsBox plotsLmplotsHistogramChallenge: Visualize titanic dataset

Chapter-4 Machine Learning

Machine LearningAl vs ML vs DLApplication of machine learningHow do machine learnsTypes of Machine learningSupervised LearningUn-supervised LearningNaive BayesWhat is Native Bayes?Types of Naive BayesIRIS ClassificationData ProcessingTrain and create modelPerformance EstimationAnalyse and create confusion matrixSimple Linear RegressionOrdinary Least Square and Regression ErrorsData ProcessingTrain and Test ModelTest the model and Predict Y ValuesR-Squared and its ImportanceScore and Get coefficientsCalculate RMSE (Root Mean Squared Error)Plot the predictionsSimple Linear RegressionOrdinary Least Square and Regression ErrorsData ProcessingTrain and Test ModelTest the model and Predict Y ValuesR-Squared and its ImportanceScore and Get coefficientsCalculate RMSE (Root Mean Squared Error)Plot the predictionsSimple Linear RegressionOrdinary Least Square and Regression ErrorsData ProcessingTrain and Test ModelTest the model and Predict Y ValuesR-Squared and its ImportanceScore and Get coefficientsCalculate RMSE (Root Mean Squared Error)Plot the predictionsSupport Vector MachineWhat is SVM?SVM kernel typesProblem: IRIS ClassificationData ProcessingTrain and create modelPerformance EstimationAnalyse and create confusion matrix

Chapter-5 Algorithms

Logistic RegressionWhat is Logistic Regression?Problem: Heart Disease PredictionBuild ModelPerformance EstimationAnalyse and create confusion matrixDecision TreeWhat is decision tree?Decision Tree ParametersProblem: IRIS ClassificationData ProcessingTrain and create modelEvaluate ModelRandom ForestWhat is random forest?Ensemble LearningBagging and Boosting ClassifiersProblem: Cardio Vascular DiseaselmplementationEvaluate ModelClassObjectsConstructorsConstructorsEncapsulationInheritancePolymorphismSuper and this KeywordAbstractionInheritanceNearest NeighborWhat is KNN?KNN parametersProblem: Cardio Vascular DiseaseData collection and preprocessinglmplementationEvaluate Model

Chapter-6 Evaluation Metrics

Evaluate Classification metricsEvaluate AccuracyClassification metricsWhat is Threshold and PHAPTER Adjusting ThresholdsAUC ROC CurveDimension ReductionWhy to reduce dimensions and Importance of PCA?Steps to calculate PCAImplementation of PCAVisualizationRegressionWhat is Ridge regression?Implement Ridge RegressionPlot Ridge Regression LineLasso Regression or L1 Penaltylmplement lasso RegressionPlot lasso Regression LineOver fitting and under fittingWhat is over fitting?How to avoid over fitting?What is under fitting?How to avoid under fitting?Cross ValidationWhat is Cross Validation?How Cross Validation WorksPrepare for Cross ValidationParameter and implementation of Cross ValidationUnderstand the results of Cross Validation)Hands On - Analyse the Result

Chapter-7 Hypertunning Model and Clustering

Hyper Tuning for modelWhat is Hyper parameter Tuning?Grid Search and Randomized Search ApproachGridSearchCV Parameters ExplainedCreate GirdSearchCV ObjectFit data to GridSearchCVUnderstand GridSearchCV ResultsImplementation of hypertuningGridSearchCV using Logistic RegressionGridSearchCV using Support VectorRandomized Search using random forestSelect Best ModelRandomized SearchModel Selection SummaryClusteringWhat is Clustering?How the clusters are formed?Problem Understanding: Customer SegmentationGet, Visualize and Normalize the dataImport KMeans and Understand ParametersUnderstanding KMeans++ Initialization MethodCreate ClustersVisualize and create different number of clustersUnderstand Elbow Method to Decide number of ClusterImplement Elbow Method

Chapter-8 NLP and Recommendation System

NLPWhat is NLPApplication of NLPRemove punctuationTokenizeRemove stop wordsStem wordsLemmatizePaddingPart of Speech TaggingName Entity RelationshipSentiment AnalysisBuild our spam detectorRead and preprocess dataNLP techniquesTokenizationTokens to vectorsNaive BayesLogistic RegressionSentiment AnalysisEvaluate MetricsRecommendation SystemWhat is Recommendation System?How Do Recommendation Works?Types of RecommendationContent Based RecommendationWhat is Content based recommendation?Advantages and drawbacksHands on Content based recommendation codeCollaborative FilteringWhat is Collaborative filtering?Advantages and drawbacksKinds of collaborative filteringHands on collaborative filtering codeHybrid Recommendation SystemWhat is hybrid recommendation?Advantages and Drawbacks

Chapter-8 NLP and Recommendation System

NLPWhat is NLPApplication of NLPRemove punctuationTokenizeRemove stop wordsStem wordsLemmatizePaddingPart of Speech TaggingName Entity RelationshipSentiment AnalysisBuild our spam detectorRead and preprocess dataNLP techniquesTokenizationTokens to vectorsNaive BayesLogistic RegressionSentiment AnalysisEvaluate MetricsRecommendation SystemWhat is Recommendation System?How Do Recommendation Works?Types of RecommendationContent Based RecommendationWhat is Content based recommendation?Advantages and drawbacksHands on Content based recommendation codeCollaborative FilteringWhat is Collaborative filtering?Advantages and drawbacksKinds of collaborative filteringHands on collaborative filtering codeHybrid Recommendation SystemWhat is hybrid recommendation?Advantages and Drawbacks

Chapter-9 Deep Learning

Deep LearningWhat is Neuron and Artificial Neural Network?How Artificial Neural Network works?What is Keras and Tensorflow?What is a Tensor in Tensorflow?Installing Keras, backend and TensorflowOptimizationKeras Model Building and StepsLayers - Overview and ParametersActivation FunctionsLayers - Softmax Activation FunctionWhat is a Loss Function?Cross Entropy Loss FunctionsOptimization - What is it?Optimization - Gradient DescentDeep Neural LayersInitializers - Vanishing and Exploding Gradient ProblemLayers - Initializers explainedProblem Understanding: Disease PredictionRead and process the dataDefine the Keras Neural Network ModelCompile the Keras Neural Network ModelEvaluate the result

Chapter-10 Projects

Project on Application of data science Part 1Problem understanding: Loan Approval Prediction&nbspRead and preprocess dataData splittingClassification - Naïve BayesClassification – Support Vector MachineClassification - Random ForestClassification - Logistic RegressionTrain the modelEvaluate performance metricsProject on Application of data science Part 2Problem Understanding : Zomato Restaurant ReviewRead and preprocess dataNLPData SplittingClassification - Naïve Bayes (Multinomial)Classification - Support Vector MachineClassification - Random ForestClassification – Decision TreeClassification - Logistic RegressionTrain the modelEvaluate performance metricsVisualization using matplotlib and seabornProject on Application of data science Part 3Problem Understanding : Product RecommendationRead and preprocess dataCollaborative filteringContent based filteringRecommend the productEvaluate metrics

what is elysium academys python course for data science?

DevLustro Academy's Python course for data science is a comprehensive program designed to teach the fundamentals of Python programming and its application in data science.

What are the prerequisites for enrolling in the Python course for data science?

There are no specific prerequisites for enrolling in the Python course for data science. However, a basic understanding of programming concepts and mathematics would be beneficial.

Are there any practical projects or assignments included in the Python course for data science?

Yes, upon successful completion of the course, you will receive a certificate from DevLustro Academy, which can be a valuable addition to your resume.

Will I receive a certificate upon completion of the Python course for data science?

Yes, upon successful completion of the course, you will receive a certificate from DevLustro Academy, which can be a valuable addition to your resume.

How can I enroll in the Python course for data science at DevLustro Academy?

You can enroll in the course by visiting DevLustro Academy's website and following the enrollment process outlined for the Python course for data science.

How can I get started with machine learning in Python at DevLustro Academy?

To get started with machine learning in Python, you can:Learn the basics of machine learning algorithms and concepts.Explore the Scikit-learn library and its documentation.Work on hands-on projects and tutorials to apply machine learning techniques to real-world datasets.

Where can I find support and guidance for Python and data science projects at DevLustro Academy?

At DevLustro Academy, you can reach out to instructors, mentors, or fellow learners for support and guidance. Additionally, online forums, community groups, and social media platforms can be valuable resources for getting help, sharing ideas, and collaborating on projects.

What is Python, and why is it crucial for data science at DevLustro Academy?

Python is a versatile, high-level programming language known for its simplicity and readability. It's crucial for data science at DevLustro Academy because it offers a rich ecosystem of libraries and tools specifically designed for data analysis, visualization, and machine learning.

What resources are available for learning Python for data science at DevLustro Academy?

DevLustro Academy offers various resources for learning Python for data science, including:Instructor-led training courses with experienced faculty.Self-paced online courses and tutorials.Practical workshops and projects.Access to educational materials, books, and online platforms like Coursera, Udemy, and DataCamp.

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CCNA – Implementing & Administering Cisco Solutions

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