SlideShare a Scribd company logo
MLOPs Using MLflow
Nagaraj Sengodan
Senior Technical Manager, HCL Technologies
Nitin Raj Soundararajan
Technical Consultant, Cognizant Worldwide Limited
Presenter
Nagaraj Sengodan is a Senior
Technical Manager in Data and
Analytics Practice at HCL
Technologies.
Nitin Raj Soundararajan is a
technical consultant focusing
on advanced data analytics,
data engineering, cloud scale
analytics and data science.
Agenda
MLOps
MLOps Process and stages.
Challenges
MLFlow
Components
Mapping with MLOps stages
Demo
Real-world example for mlflow
Q & A
MLOps
Why
Challenges
Reproducibility in ML models
ML Operations
Model Management
Tools and Technologies
MLOps
Software took months to
release; now it releases
daily.
How we deploy
software
From curve fitting to neural
networks…
How we use data +
maths to train models
Evolution of Software
Engineering from punch
card to Distributed version
control… Github!
How we write
software
Write
Software
Engineering
Deploy
DevOps
Train
ML Engineer
MLOps
Collaboration in Nature
Data Source
PREPARE DATA
Data Engineer
Data Repository
TRAIN MODEL
Modelling Pipeline
FEATURE TRAIN EVALUATE
RELEASE MODEL
Release Pipeline
DEPLOY APPROVE PROFILE
Data Scientist
Model Registry
ML Engineer
Data Pipeline
VALIDATE PACKAGE
Collect
MLOps – Life-Cycle
ML
Orchestration
ML Health
Business
Impact
Model
Governance
CI / CD
Machine Learning
Models
Business Value
Collaboration
Collaboration
MLOps
Productionizing
Machine Learning
Models
Life Cycle
Coding
Unit Test Cases
Peer –Review
Approval
Commit
Test Release
Prod Release
Software
Writing Code for specific requirement / functionality
Writing Unit test cases for each functionality and block to cover all boundary
condition
Peer review the code and make sure code meets the standard and best
practices
Code is approved to check-in to repository / version control
Approved code is merged with main / feature branch for release rollover.
Release the feature / main branch for Testing.
Move the Tested version to production.
Life Cycle
Coding
Unit Test Cases
Peer –Review
Approval
Commit
Test Release
Prod Release
Analyse Data
Data Preparation
Building Model
Evaluate the Model
Model Optimization
Deploy Model
Monitor and Re-Train
Software ML
Life Cycle
Coding
Unit Test Cases
Peer –Review
Approval
Commit
Test Release
Prod Release
Analyse Data
Data Preparation
Building Model
Evaluate the Model
Model Optimization
Deploy Model
Monitor and Re-Train
Software ML
Cover Functional
Requirements
Optimize Metrics
GOAL
Life Cycle
Coding
Unit Test Cases
Peer –Review
Approval
Commit
Test Release
Prod Release
Analyse Data
Data Preparation
Building Model
Evaluate the Model
Model Optimization
Deploy Model
Monitor and Re-Train
Software ML
Cover Functional
Requirements
Optimize Metrics
Depends on the Code Depends on Data, Choice of
algorithm, params, etc…
GOAL
QUALITY
Life Cycle
Analyse Data
Data Preparation
Building Model
Evaluate the Model
Model Optimization
Deploy Model
Monitor and Re-Train
Software ML
Cover Functional
Requirements
Optimize Metrics
Depends on the Code Depends on Data, Choice of
algorithm, params, etc…
GOAL
QUALITY
Mostly one tech stack Combinations of many
libraries and tools
TECHNOLOGY
Coding
Unit Test Cases
Peer –Review
Approval
Commit
Test Release
Prod Release
Life Cycle
Coding
Unit Test Cases
Peer –Review
Approval
Commit
Test Release
Prod Release
Analyse Data
Data Preparation
Building Model
Evaluate the Model
Model Optimization
Deploy Model
Monitor and Re-Train
Software ML
Cover Functional
Requirements
Optimize Metrics
Depends on the Code Depends on Data, Choice of
algorithm, params, etc…
GOAL
QUALITY
Mostly one tech stack Combinations of many
libraries and tools
TECHNOLOGY
Works deterministically Changing based on data…
OUTCOME
A platform for the Complete Machine
Learning Lifecycle
MLFlow Components
Machine Learning
lifecycle
MLflow Tracking - Record and query experiments: code, data, config, and
results
MLflow Projects - Package data science code in a format to reproduce runs
on any platform
MLflow Models - Deploy machine learning models in diverse serving
environments
MLflow Registry - Store, annotate, discover, and manage models in a
central repository
Mlflow Workflow
Models Tracking
Model Registry
V0
V1
V1
V2
V3
Mlflow Tracking
Tracking Server
Notebooks
Local Apps
Cloud Jobs
UI
API
Spark Data
Source
Parameters Metrics Artifacts
Metadata Models
Mlflow Projects
Project Spec
Local Execution
Remote Execution
Code
Config
Metadata
Mlflow Models
Mlflow Registry
Demo
# Enable MLflow Autologging
mlflow.keras.autolog()
X, y = get_training_data()opt = keras.optimizers.Adam(lr=params["learning_rate"],
beta_1=params["beta_1"],
beta_2=params["beta_2"],
epsilon=params["epsilon"]
model = Sequential()model.add(Dense(int(params["units"]), ...)
model.add(Dense(1))
model.compile(loss="mse", optimizer=opt)
rest = model.fit(X, y, epochs=50, batch_size=64, validation_split=.2)
What Next?
To get started with mlflow, just pip install mlflow
Docs and Tutorials mlflow.org
Session materials and demo
https://github.com/krsnagaraj/dataaisummit-mlflow
Connect with us
▪ https://uk.linkedin.com/in/nagarajsengodan
▪ https://www.linkedin.com/in/nitinrajs
Thank You
Feedback
Your feedback is important to us.
Don’t forget to rate
and review the sessions.

More Related Content

What's hot

Using MLOps to Bring ML to Production/The Promise of MLOps
Using MLOps to Bring ML to Production/The Promise of MLOpsUsing MLOps to Bring ML to Production/The Promise of MLOps
Using MLOps to Bring ML to Production/The Promise of MLOps
Weaveworks
 
MLflow: Infrastructure for a Complete Machine Learning Life Cycle
MLflow: Infrastructure for a Complete Machine Learning Life CycleMLflow: Infrastructure for a Complete Machine Learning Life Cycle
MLflow: Infrastructure for a Complete Machine Learning Life Cycle
Databricks
 
Ml ops intro session
Ml ops   intro sessionMl ops   intro session
Ml ops intro session
Avinash Patil
 
What is MLOps
What is MLOpsWhat is MLOps
What is MLOps
Henrik Skogström
 
Managing the Complete Machine Learning Lifecycle with MLflow
Managing the Complete Machine Learning Lifecycle with MLflowManaging the Complete Machine Learning Lifecycle with MLflow
Managing the Complete Machine Learning Lifecycle with MLflow
Databricks
 
Ml ops past_present_future
Ml ops past_present_futureMl ops past_present_future
Ml ops past_present_future
Nisha Talagala
 
ML-Ops how to bring your data science to production
ML-Ops  how to bring your data science to productionML-Ops  how to bring your data science to production
ML-Ops how to bring your data science to production
Herman Wu
 
MLFlow: Platform for Complete Machine Learning Lifecycle
MLFlow: Platform for Complete Machine Learning Lifecycle MLFlow: Platform for Complete Machine Learning Lifecycle
MLFlow: Platform for Complete Machine Learning Lifecycle
Databricks
 
Databricks Overview for MLOps
Databricks Overview for MLOpsDatabricks Overview for MLOps
Databricks Overview for MLOps
Databricks
 
MLOps.pptx
MLOps.pptxMLOps.pptx
MLOps.pptx
AllenPeter7
 
MLOps in action
MLOps in actionMLOps in action
MLOps in action
Pieter de Bruin
 
MLOps with Kubeflow
MLOps with Kubeflow MLOps with Kubeflow
MLOps with Kubeflow
Saurabh Kaushik
 
MLOps and Data Quality: Deploying Reliable ML Models in Production
MLOps and Data Quality: Deploying Reliable ML Models in ProductionMLOps and Data Quality: Deploying Reliable ML Models in Production
MLOps and Data Quality: Deploying Reliable ML Models in Production
Provectus
 
Pythonsevilla2019 - Introduction to MLFlow
Pythonsevilla2019 - Introduction to MLFlowPythonsevilla2019 - Introduction to MLFlow
Pythonsevilla2019 - Introduction to MLFlow
Fernando Ortega Gallego
 
Apply MLOps at Scale by H&M
Apply MLOps at Scale by H&MApply MLOps at Scale by H&M
Apply MLOps at Scale by H&M
Databricks
 
Experimentation to Industrialization: Implementing MLOps
Experimentation to Industrialization: Implementing MLOpsExperimentation to Industrialization: Implementing MLOps
Experimentation to Industrialization: Implementing MLOps
Databricks
 
MLflow: A Platform for Production Machine Learning
MLflow: A Platform for Production Machine LearningMLflow: A Platform for Production Machine Learning
MLflow: A Platform for Production Machine Learning
Matei Zaharia
 
MLOps with Azure DevOps
MLOps with Azure DevOpsMLOps with Azure DevOps
MLOps with Azure DevOps
Marco Parenzan
 
"Managing the Complete Machine Learning Lifecycle with MLflow"
"Managing the Complete Machine Learning Lifecycle with MLflow""Managing the Complete Machine Learning Lifecycle with MLflow"
"Managing the Complete Machine Learning Lifecycle with MLflow"
Databricks
 
Seamless MLOps with Seldon and MLflow
Seamless MLOps with Seldon and MLflowSeamless MLOps with Seldon and MLflow
Seamless MLOps with Seldon and MLflow
Databricks
 

What's hot (20)

Using MLOps to Bring ML to Production/The Promise of MLOps
Using MLOps to Bring ML to Production/The Promise of MLOpsUsing MLOps to Bring ML to Production/The Promise of MLOps
Using MLOps to Bring ML to Production/The Promise of MLOps
 
MLflow: Infrastructure for a Complete Machine Learning Life Cycle
MLflow: Infrastructure for a Complete Machine Learning Life CycleMLflow: Infrastructure for a Complete Machine Learning Life Cycle
MLflow: Infrastructure for a Complete Machine Learning Life Cycle
 
Ml ops intro session
Ml ops   intro sessionMl ops   intro session
Ml ops intro session
 
What is MLOps
What is MLOpsWhat is MLOps
What is MLOps
 
Managing the Complete Machine Learning Lifecycle with MLflow
Managing the Complete Machine Learning Lifecycle with MLflowManaging the Complete Machine Learning Lifecycle with MLflow
Managing the Complete Machine Learning Lifecycle with MLflow
 
Ml ops past_present_future
Ml ops past_present_futureMl ops past_present_future
Ml ops past_present_future
 
ML-Ops how to bring your data science to production
ML-Ops  how to bring your data science to productionML-Ops  how to bring your data science to production
ML-Ops how to bring your data science to production
 
MLFlow: Platform for Complete Machine Learning Lifecycle
MLFlow: Platform for Complete Machine Learning Lifecycle MLFlow: Platform for Complete Machine Learning Lifecycle
MLFlow: Platform for Complete Machine Learning Lifecycle
 
Databricks Overview for MLOps
Databricks Overview for MLOpsDatabricks Overview for MLOps
Databricks Overview for MLOps
 
MLOps.pptx
MLOps.pptxMLOps.pptx
MLOps.pptx
 
MLOps in action
MLOps in actionMLOps in action
MLOps in action
 
MLOps with Kubeflow
MLOps with Kubeflow MLOps with Kubeflow
MLOps with Kubeflow
 
MLOps and Data Quality: Deploying Reliable ML Models in Production
MLOps and Data Quality: Deploying Reliable ML Models in ProductionMLOps and Data Quality: Deploying Reliable ML Models in Production
MLOps and Data Quality: Deploying Reliable ML Models in Production
 
Pythonsevilla2019 - Introduction to MLFlow
Pythonsevilla2019 - Introduction to MLFlowPythonsevilla2019 - Introduction to MLFlow
Pythonsevilla2019 - Introduction to MLFlow
 
Apply MLOps at Scale by H&M
Apply MLOps at Scale by H&MApply MLOps at Scale by H&M
Apply MLOps at Scale by H&M
 
Experimentation to Industrialization: Implementing MLOps
Experimentation to Industrialization: Implementing MLOpsExperimentation to Industrialization: Implementing MLOps
Experimentation to Industrialization: Implementing MLOps
 
MLflow: A Platform for Production Machine Learning
MLflow: A Platform for Production Machine LearningMLflow: A Platform for Production Machine Learning
MLflow: A Platform for Production Machine Learning
 
MLOps with Azure DevOps
MLOps with Azure DevOpsMLOps with Azure DevOps
MLOps with Azure DevOps
 
"Managing the Complete Machine Learning Lifecycle with MLflow"
"Managing the Complete Machine Learning Lifecycle with MLflow""Managing the Complete Machine Learning Lifecycle with MLflow"
"Managing the Complete Machine Learning Lifecycle with MLflow"
 
Seamless MLOps with Seldon and MLflow
Seamless MLOps with Seldon and MLflowSeamless MLOps with Seldon and MLflow
Seamless MLOps with Seldon and MLflow
 

Similar to MLOps Using MLflow

GDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in Practice
GDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in PracticeGDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in Practice
GDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in Practice
James Anderson
 
Continuous delivery for machine learning
Continuous delivery for machine learningContinuous delivery for machine learning
Continuous delivery for machine learning
Rajesh Muppalla
 
MLOPS By Amazon offered and free download
MLOPS By Amazon offered and free downloadMLOPS By Amazon offered and free download
MLOPS By Amazon offered and free download
pouyan533
 
Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...
Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...
Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...
All Things Open
 
AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)
AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)
AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)
dtz001
 
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full LifecycleMLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
Databricks
 
Scaling Ride-Hailing with Machine Learning on MLflow
Scaling Ride-Hailing with Machine Learning on MLflowScaling Ride-Hailing with Machine Learning on MLflow
Scaling Ride-Hailing with Machine Learning on MLflow
Databricks
 
Innovation morning data analytics + ai
Innovation morning data analytics + ai Innovation morning data analytics + ai
Innovation morning data analytics + ai
Claudia Angelelli
 
Managing the Machine Learning Lifecycle with MLflow
Managing the Machine Learning Lifecycle with MLflowManaging the Machine Learning Lifecycle with MLflow
Managing the Machine Learning Lifecycle with MLflow
Databricks
 
Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...
Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...
Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...
Aditya Bhattacharya
 
Certification Study Group - NLP & Recommendation Systems on GCP Session 5
Certification Study Group - NLP & Recommendation Systems on GCP Session 5Certification Study Group - NLP & Recommendation Systems on GCP Session 5
Certification Study Group - NLP & Recommendation Systems on GCP Session 5
gdgsurrey
 
Machine Learning Models in Production
Machine Learning Models in ProductionMachine Learning Models in Production
Machine Learning Models in Production
DataWorks Summit
 
What’s New with Databricks Machine Learning
What’s New with Databricks Machine LearningWhat’s New with Databricks Machine Learning
What’s New with Databricks Machine Learning
Databricks
 
DevOps for Machine Learning overview en-us
DevOps for Machine Learning overview en-usDevOps for Machine Learning overview en-us
DevOps for Machine Learning overview en-us
eltonrodriguez11
 
DevOps for DataScience
DevOps for DataScienceDevOps for DataScience
DevOps for DataScience
Stepan Pushkarev
 
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning ModelsApache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Anyscale
 
The A-Z of Data: Introduction to MLOps
The A-Z of Data: Introduction to MLOpsThe A-Z of Data: Introduction to MLOps
The A-Z of Data: Introduction to MLOps
DataPhoenix
 
AI for Software Engineering
AI for Software EngineeringAI for Software Engineering
AI for Software Engineering
Miroslaw Staron
 
What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?
Matei Zaharia
 
Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...
DataWorks Summit
 

Similar to MLOps Using MLflow (20)

GDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in Practice
GDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in PracticeGDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in Practice
GDG Cloud Southlake #3 Charles Adetiloye: Enterprise MLOps in Practice
 
Continuous delivery for machine learning
Continuous delivery for machine learningContinuous delivery for machine learning
Continuous delivery for machine learning
 
MLOPS By Amazon offered and free download
MLOPS By Amazon offered and free downloadMLOPS By Amazon offered and free download
MLOPS By Amazon offered and free download
 
Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...
Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...
Deployment Design Patterns - Deploying Machine Learning and Deep Learning Mod...
 
AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)
AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)
AllThingsOpen 2018 - Deployment Design Patterns (Dan Zaratsian)
 
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full LifecycleMLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
 
Scaling Ride-Hailing with Machine Learning on MLflow
Scaling Ride-Hailing with Machine Learning on MLflowScaling Ride-Hailing with Machine Learning on MLflow
Scaling Ride-Hailing with Machine Learning on MLflow
 
Innovation morning data analytics + ai
Innovation morning data analytics + ai Innovation morning data analytics + ai
Innovation morning data analytics + ai
 
Managing the Machine Learning Lifecycle with MLflow
Managing the Machine Learning Lifecycle with MLflowManaging the Machine Learning Lifecycle with MLflow
Managing the Machine Learning Lifecycle with MLflow
 
Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...
Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...
Aditya Bhattacharya - Enterprise DL - Accelerating Deep Learning Solutions to...
 
Certification Study Group - NLP & Recommendation Systems on GCP Session 5
Certification Study Group - NLP & Recommendation Systems on GCP Session 5Certification Study Group - NLP & Recommendation Systems on GCP Session 5
Certification Study Group - NLP & Recommendation Systems on GCP Session 5
 
Machine Learning Models in Production
Machine Learning Models in ProductionMachine Learning Models in Production
Machine Learning Models in Production
 
What’s New with Databricks Machine Learning
What’s New with Databricks Machine LearningWhat’s New with Databricks Machine Learning
What’s New with Databricks Machine Learning
 
DevOps for Machine Learning overview en-us
DevOps for Machine Learning overview en-usDevOps for Machine Learning overview en-us
DevOps for Machine Learning overview en-us
 
DevOps for DataScience
DevOps for DataScienceDevOps for DataScience
DevOps for DataScience
 
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning ModelsApache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
 
The A-Z of Data: Introduction to MLOps
The A-Z of Data: Introduction to MLOpsThe A-Z of Data: Introduction to MLOps
The A-Z of Data: Introduction to MLOps
 
AI for Software Engineering
AI for Software EngineeringAI for Software Engineering
AI for Software Engineering
 
What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?
 
Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...
 

More from Databricks

DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptx
Databricks
 
Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1
Databricks
 
Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2
Databricks
 
Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2
Databricks
 
Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4
Databricks
 
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
Databricks
 
Democratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized PlatformDemocratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized Platform
Databricks
 
Learn to Use Databricks for Data Science
Learn to Use Databricks for Data ScienceLearn to Use Databricks for Data Science
Learn to Use Databricks for Data Science
Databricks
 
Why APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML MonitoringWhy APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML Monitoring
Databricks
 
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch FixThe Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
Databricks
 
Stage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI IntegrationStage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI Integration
Databricks
 
Simplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorchSimplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorch
Databricks
 
Scaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on KubernetesScaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on Kubernetes
Databricks
 
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark PipelinesScaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
Databricks
 
Sawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature AggregationsSawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature Aggregations
Databricks
 
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen SinkRedis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Databricks
 
Re-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and SparkRe-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and Spark
Databricks
 
Raven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction QueriesRaven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction Queries
Databricks
 
Processing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache SparkProcessing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache Spark
Databricks
 
Massive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta LakeMassive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta Lake
Databricks
 

More from Databricks (20)

DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptx
 
Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1Data Lakehouse Symposium | Day 1 | Part 1
Data Lakehouse Symposium | Day 1 | Part 1
 
Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2
 
Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2Data Lakehouse Symposium | Day 2
Data Lakehouse Symposium | Day 2
 
Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4
 
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
5 Critical Steps to Clean Your Data Swamp When Migrating Off of Hadoop
 
Democratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized PlatformDemocratizing Data Quality Through a Centralized Platform
Democratizing Data Quality Through a Centralized Platform
 
Learn to Use Databricks for Data Science
Learn to Use Databricks for Data ScienceLearn to Use Databricks for Data Science
Learn to Use Databricks for Data Science
 
Why APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML MonitoringWhy APM Is Not the Same As ML Monitoring
Why APM Is Not the Same As ML Monitoring
 
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch FixThe Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
The Function, the Context, and the Data—Enabling ML Ops at Stitch Fix
 
Stage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI IntegrationStage Level Scheduling Improving Big Data and AI Integration
Stage Level Scheduling Improving Big Data and AI Integration
 
Simplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorchSimplify Data Conversion from Spark to TensorFlow and PyTorch
Simplify Data Conversion from Spark to TensorFlow and PyTorch
 
Scaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on KubernetesScaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on Kubernetes
 
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark PipelinesScaling and Unifying SciKit Learn and Apache Spark Pipelines
Scaling and Unifying SciKit Learn and Apache Spark Pipelines
 
Sawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature AggregationsSawtooth Windows for Feature Aggregations
Sawtooth Windows for Feature Aggregations
 
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen SinkRedis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
Redis + Apache Spark = Swiss Army Knife Meets Kitchen Sink
 
Re-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and SparkRe-imagine Data Monitoring with whylogs and Spark
Re-imagine Data Monitoring with whylogs and Spark
 
Raven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction QueriesRaven: End-to-end Optimization of ML Prediction Queries
Raven: End-to-end Optimization of ML Prediction Queries
 
Processing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache SparkProcessing Large Datasets for ADAS Applications using Apache Spark
Processing Large Datasets for ADAS Applications using Apache Spark
 
Massive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta LakeMassive Data Processing in Adobe Using Delta Lake
Massive Data Processing in Adobe Using Delta Lake
 

Recently uploaded

一比一原版(BU毕业证)波士顿大学毕业证成绩单
一比一原版(BU毕业证)波士顿大学毕业证成绩单一比一原版(BU毕业证)波士顿大学毕业证成绩单
一比一原版(BU毕业证)波士顿大学毕业证成绩单
ewymefz
 
Tabula.io Cheatsheet: automate your data workflows
Tabula.io Cheatsheet: automate your data workflowsTabula.io Cheatsheet: automate your data workflows
Tabula.io Cheatsheet: automate your data workflows
alex933524
 
社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .
NABLAS株式会社
 
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
correoyaya
 
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Subhajit Sahu
 
一比一原版(TWU毕业证)西三一大学毕业证成绩单
一比一原版(TWU毕业证)西三一大学毕业证成绩单一比一原版(TWU毕业证)西三一大学毕业证成绩单
一比一原版(TWU毕业证)西三一大学毕业证成绩单
ocavb
 
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
ewymefz
 
一比一原版(YU毕业证)约克大学毕业证成绩单
一比一原版(YU毕业证)约克大学毕业证成绩单一比一原版(YU毕业证)约克大学毕业证成绩单
一比一原版(YU毕业证)约克大学毕业证成绩单
enxupq
 
Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMI
AlejandraGmez176757
 
1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx
1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx
1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx
Tiktokethiodaily
 
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
ukgaet
 
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
axoqas
 
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
NABLAS株式会社
 
一比一原版(CBU毕业证)卡普顿大学毕业证成绩单
一比一原版(CBU毕业证)卡普顿大学毕业证成绩单一比一原版(CBU毕业证)卡普顿大学毕业证成绩单
一比一原版(CBU毕业证)卡普顿大学毕业证成绩单
nscud
 
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
ewymefz
 
SOCRadar Germany 2024 Threat Landscape Report
SOCRadar Germany 2024 Threat Landscape ReportSOCRadar Germany 2024 Threat Landscape Report
SOCRadar Germany 2024 Threat Landscape Report
SOCRadar
 
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Subhajit Sahu
 
一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单
ewymefz
 
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
John Andrews
 
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdfCh03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
haila53
 

Recently uploaded (20)

一比一原版(BU毕业证)波士顿大学毕业证成绩单
一比一原版(BU毕业证)波士顿大学毕业证成绩单一比一原版(BU毕业证)波士顿大学毕业证成绩单
一比一原版(BU毕业证)波士顿大学毕业证成绩单
 
Tabula.io Cheatsheet: automate your data workflows
Tabula.io Cheatsheet: automate your data workflowsTabula.io Cheatsheet: automate your data workflows
Tabula.io Cheatsheet: automate your data workflows
 
社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .
 
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
 
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
 
一比一原版(TWU毕业证)西三一大学毕业证成绩单
一比一原版(TWU毕业证)西三一大学毕业证成绩单一比一原版(TWU毕业证)西三一大学毕业证成绩单
一比一原版(TWU毕业证)西三一大学毕业证成绩单
 
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
 
一比一原版(YU毕业证)约克大学毕业证成绩单
一比一原版(YU毕业证)约克大学毕业证成绩单一比一原版(YU毕业证)约克大学毕业证成绩单
一比一原版(YU毕业证)约克大学毕业证成绩单
 
Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMI
 
1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx
1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx
1.Seydhcuxhxyxhccuuxuxyxyxmisolids 2019.pptx
 
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
 
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
 
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
 
一比一原版(CBU毕业证)卡普顿大学毕业证成绩单
一比一原版(CBU毕业证)卡普顿大学毕业证成绩单一比一原版(CBU毕业证)卡普顿大学毕业证成绩单
一比一原版(CBU毕业证)卡普顿大学毕业证成绩单
 
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
 
SOCRadar Germany 2024 Threat Landscape Report
SOCRadar Germany 2024 Threat Landscape ReportSOCRadar Germany 2024 Threat Landscape Report
SOCRadar Germany 2024 Threat Landscape Report
 
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
 
一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单
 
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
 
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdfCh03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
 

MLOps Using MLflow

  • 1. MLOPs Using MLflow Nagaraj Sengodan Senior Technical Manager, HCL Technologies Nitin Raj Soundararajan Technical Consultant, Cognizant Worldwide Limited
  • 2. Presenter Nagaraj Sengodan is a Senior Technical Manager in Data and Analytics Practice at HCL Technologies. Nitin Raj Soundararajan is a technical consultant focusing on advanced data analytics, data engineering, cloud scale analytics and data science.
  • 3. Agenda MLOps MLOps Process and stages. Challenges MLFlow Components Mapping with MLOps stages Demo Real-world example for mlflow Q & A
  • 5. Why
  • 6. Challenges Reproducibility in ML models ML Operations Model Management Tools and Technologies
  • 7. MLOps Software took months to release; now it releases daily. How we deploy software From curve fitting to neural networks… How we use data + maths to train models Evolution of Software Engineering from punch card to Distributed version control… Github! How we write software Write Software Engineering Deploy DevOps Train ML Engineer MLOps
  • 8. Collaboration in Nature Data Source PREPARE DATA Data Engineer Data Repository TRAIN MODEL Modelling Pipeline FEATURE TRAIN EVALUATE RELEASE MODEL Release Pipeline DEPLOY APPROVE PROFILE Data Scientist Model Registry ML Engineer Data Pipeline VALIDATE PACKAGE Collect
  • 9. MLOps – Life-Cycle ML Orchestration ML Health Business Impact Model Governance CI / CD Machine Learning Models Business Value Collaboration Collaboration MLOps Productionizing Machine Learning Models
  • 10. Life Cycle Coding Unit Test Cases Peer –Review Approval Commit Test Release Prod Release Software Writing Code for specific requirement / functionality Writing Unit test cases for each functionality and block to cover all boundary condition Peer review the code and make sure code meets the standard and best practices Code is approved to check-in to repository / version control Approved code is merged with main / feature branch for release rollover. Release the feature / main branch for Testing. Move the Tested version to production.
  • 11. Life Cycle Coding Unit Test Cases Peer –Review Approval Commit Test Release Prod Release Analyse Data Data Preparation Building Model Evaluate the Model Model Optimization Deploy Model Monitor and Re-Train Software ML
  • 12. Life Cycle Coding Unit Test Cases Peer –Review Approval Commit Test Release Prod Release Analyse Data Data Preparation Building Model Evaluate the Model Model Optimization Deploy Model Monitor and Re-Train Software ML Cover Functional Requirements Optimize Metrics GOAL
  • 13. Life Cycle Coding Unit Test Cases Peer –Review Approval Commit Test Release Prod Release Analyse Data Data Preparation Building Model Evaluate the Model Model Optimization Deploy Model Monitor and Re-Train Software ML Cover Functional Requirements Optimize Metrics Depends on the Code Depends on Data, Choice of algorithm, params, etc… GOAL QUALITY
  • 14. Life Cycle Analyse Data Data Preparation Building Model Evaluate the Model Model Optimization Deploy Model Monitor and Re-Train Software ML Cover Functional Requirements Optimize Metrics Depends on the Code Depends on Data, Choice of algorithm, params, etc… GOAL QUALITY Mostly one tech stack Combinations of many libraries and tools TECHNOLOGY Coding Unit Test Cases Peer –Review Approval Commit Test Release Prod Release
  • 15. Life Cycle Coding Unit Test Cases Peer –Review Approval Commit Test Release Prod Release Analyse Data Data Preparation Building Model Evaluate the Model Model Optimization Deploy Model Monitor and Re-Train Software ML Cover Functional Requirements Optimize Metrics Depends on the Code Depends on Data, Choice of algorithm, params, etc… GOAL QUALITY Mostly one tech stack Combinations of many libraries and tools TECHNOLOGY Works deterministically Changing based on data… OUTCOME
  • 16. A platform for the Complete Machine Learning Lifecycle
  • 17. MLFlow Components Machine Learning lifecycle MLflow Tracking - Record and query experiments: code, data, config, and results MLflow Projects - Package data science code in a format to reproduce runs on any platform MLflow Models - Deploy machine learning models in diverse serving environments MLflow Registry - Store, annotate, discover, and manage models in a central repository
  • 18. Mlflow Workflow Models Tracking Model Registry V0 V1 V1 V2 V3
  • 19. Mlflow Tracking Tracking Server Notebooks Local Apps Cloud Jobs UI API Spark Data Source Parameters Metrics Artifacts Metadata Models
  • 20. Mlflow Projects Project Spec Local Execution Remote Execution Code Config Metadata
  • 23. Demo # Enable MLflow Autologging mlflow.keras.autolog() X, y = get_training_data()opt = keras.optimizers.Adam(lr=params["learning_rate"], beta_1=params["beta_1"], beta_2=params["beta_2"], epsilon=params["epsilon"] model = Sequential()model.add(Dense(int(params["units"]), ...) model.add(Dense(1)) model.compile(loss="mse", optimizer=opt) rest = model.fit(X, y, epochs=50, batch_size=64, validation_split=.2)
  • 24. What Next? To get started with mlflow, just pip install mlflow Docs and Tutorials mlflow.org Session materials and demo https://github.com/krsnagaraj/dataaisummit-mlflow Connect with us ▪ https://uk.linkedin.com/in/nagarajsengodan ▪ https://www.linkedin.com/in/nitinrajs
  • 26. Feedback Your feedback is important to us. Don’t forget to rate and review the sessions.