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Best MLOps Platforms

Blue Bowen
BB
Researched and written by Blue Bowen

Machine learning operationalization (MLOps) platforms allow users to manage and monitor machine learning models as they are integrated into business applications. In addition, many of these tools facilitate the deployment of these models. With these tools, businesses can implement machine learning models and algorithms built by data scientists and developers. MLOps software automates deployment, monitors models' health, performance, and accuracy, and iterates on those models. Some tools provide features for doing this collaboratively. This enables businesses to scale machine learning across the company and make a tangible business impact.

Additionally, these products may provide security, provisioning, and governing capabilities to ensure that only those authorized to make version changes or deployment adjustments can do so. The tools can differ regarding what part of the machine learning journey or workflow they focus on, including explainability, hyper optimization, feature engineering, model risk, model selection, model monitoring, and experiment tracking.

These tools are usually language agnostic, so they can be successfully deployed no matter how an algorithm is built. However, some may focus specifically on languages like R or Python, among others. Some of these products are dedicated to tracking machine learning experiments to better understand the performance of models. In addition, some products provide the ability to augment users’ training datasets in order to improve model training.

Some MLOps solutions offer a way to manage all machine learning models across the entire business in a single location. Although similar to data science and machine learning platforms, this software differs since it focuses on the maintenance and monitoring of models instead of deployment.

To qualify for inclusion in the MLOps Platforms category, a product must:

Offer a platform to monitor and manage machine learning models
Allow users to integrate models into business applications across a company
Track the health and performance of deployed machine learning models
Provide a holistic management tool to better understand all models deployed across a business
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Best MLOps Platforms At A Glance

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Highest Performer:
Easiest to Use:
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G2 takes pride in showing unbiased reviews on user satisfaction in our ratings and reports. We do not allow paid placements in any of our ratings, rankings, or reports. Learn about our scoring methodologies.

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187 Listings in MLOps Platforms Available
(590)4.3 out of 5
7th Easiest To Use in MLOps Platforms software
View top Consulting Services for Vertex AI
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Entry Level Price:Pay As You Go
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Build, deploy, and scale machine learning (ML) models faster, with fully managed ML tools for any use case. Through Vertex AI Workbench, Vertex AI is natively integrated with BigQuery, Dataproc, a

    Users
    • Software Engineer
    • Data Scientist
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 41% Small-Business
    • 33% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Vertex AI Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    164
    Model Variety
    124
    Features
    116
    Machine Learning
    115
    Integrations
    86
    Cons
    Expensive
    71
    Learning Curve
    49
    Complexity
    47
    Complexity Issues
    44
    Performance Issues
    37
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Vertex AI features and usability ratings that predict user satisfaction
    8.2
    Ease of Use
    Average: 8.8
    8.8
    Scalability
    Average: 8.9
    8.2
    Metrics
    Average: 8.6
    8.3
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Google
    Company Website
    Year Founded
    1998
    HQ Location
    Mountain View, CA
    Twitter
    @google
    32,731,192 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    316,397 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Build, deploy, and scale machine learning (ML) models faster, with fully managed ML tools for any use case. Through Vertex AI Workbench, Vertex AI is natively integrated with BigQuery, Dataproc, a

Users
  • Software Engineer
  • Data Scientist
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 41% Small-Business
  • 33% Enterprise
Vertex AI Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
164
Model Variety
124
Features
116
Machine Learning
115
Integrations
86
Cons
Expensive
71
Learning Curve
49
Complexity
47
Complexity Issues
44
Performance Issues
37
Vertex AI features and usability ratings that predict user satisfaction
8.2
Ease of Use
Average: 8.8
8.8
Scalability
Average: 8.9
8.2
Metrics
Average: 8.6
8.3
Framework Flexibility
Average: 8.7
Seller Details
Seller
Google
Company Website
Year Founded
1998
HQ Location
Mountain View, CA
Twitter
@google
32,731,192 Twitter followers
LinkedIn® Page
www.linkedin.com
316,397 employees on LinkedIn®
(624)4.6 out of 5
Optimized for quick response
2nd Easiest To Use in MLOps Platforms software
View top Consulting Services for Databricks Data Intelligence Platform
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Databricks is the Data and AI company. More than 20,000 organizations worldwide — including Block, Comcast, Condé Nast, Rivian, Shell and over 60% of the Fortune 500 — rely on the Databricks Data Inte

    Users
    • Data Engineer
    • Data Scientist
    Industries
    • Information Technology and Services
    • Financial Services
    Market Segment
    • 47% Enterprise
    • 37% Mid-Market
    User Sentiment
    How are these determined?Information
    These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
    • Databricks Data Intelligence Platform is a unified, AI-native environment that combines data engineering, analytics, governance, and machine learning on top of the Lakehouse architecture.
    • Users like the platform's ability to handle large datasets, its collaborative notebooks for team collaboration, and its seamless integration of data engineering, analytics, and machine learning.
    • Reviewers mentioned that the initial setup can be confusing, the platform can be expensive if not monitored carefully, and it has a steep learning curve, especially for those new to distributed computing.
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Databricks Data Intelligence Platform Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Features
    263
    Ease of Use
    251
    Integrations
    176
    Collaboration
    140
    Easy Integrations
    137
    Cons
    Learning Curve
    97
    Expensive
    85
    Steep Learning Curve
    84
    Missing Features
    61
    UX Improvement
    57
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Databricks Data Intelligence Platform features and usability ratings that predict user satisfaction
    8.8
    Ease of Use
    Average: 8.8
    8.9
    Scalability
    Average: 8.9
    8.7
    Metrics
    Average: 8.6
    8.8
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    1999
    HQ Location
    San Francisco, CA
    Twitter
    @databricks
    82,768 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    13,070 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Databricks is the Data and AI company. More than 20,000 organizations worldwide — including Block, Comcast, Condé Nast, Rivian, Shell and over 60% of the Fortune 500 — rely on the Databricks Data Inte

Users
  • Data Engineer
  • Data Scientist
Industries
  • Information Technology and Services
  • Financial Services
Market Segment
  • 47% Enterprise
  • 37% Mid-Market
User Sentiment
How are these determined?Information
These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
  • Databricks Data Intelligence Platform is a unified, AI-native environment that combines data engineering, analytics, governance, and machine learning on top of the Lakehouse architecture.
  • Users like the platform's ability to handle large datasets, its collaborative notebooks for team collaboration, and its seamless integration of data engineering, analytics, and machine learning.
  • Reviewers mentioned that the initial setup can be confusing, the platform can be expensive if not monitored carefully, and it has a steep learning curve, especially for those new to distributed computing.
Databricks Data Intelligence Platform Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Features
263
Ease of Use
251
Integrations
176
Collaboration
140
Easy Integrations
137
Cons
Learning Curve
97
Expensive
85
Steep Learning Curve
84
Missing Features
61
UX Improvement
57
Databricks Data Intelligence Platform features and usability ratings that predict user satisfaction
8.8
Ease of Use
Average: 8.8
8.9
Scalability
Average: 8.9
8.7
Metrics
Average: 8.6
8.8
Framework Flexibility
Average: 8.7
Seller Details
Company Website
Year Founded
1999
HQ Location
San Francisco, CA
Twitter
@databricks
82,768 Twitter followers
LinkedIn® Page
www.linkedin.com
13,070 employees on LinkedIn®

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(121)4.4 out of 5
Optimized for quick response
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Watsonx.ai is part of the IBM watsonx platform that brings together new generative AI capabilities, powered by foundation models and traditional machine learning into a powerful studio spanning the AI

    Users
    • Consultant
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 37% Small-Business
    • 34% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • IBM watsonx.ai Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    50
    Model Variety
    20
    Features
    16
    Intuitive
    16
    AI Development
    15
    Cons
    Improvement Needed
    17
    Expensive
    13
    UX Improvement
    12
    Difficult Learning
    10
    Complexity
    9
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • IBM watsonx.ai features and usability ratings that predict user satisfaction
    8.8
    Ease of Use
    Average: 8.8
    9.2
    Scalability
    Average: 8.9
    9.0
    Metrics
    Average: 8.6
    8.5
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    IBM
    Company Website
    Year Founded
    1911
    HQ Location
    Armonk, NY
    Twitter
    @IBM
    714,504 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    328,966 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Watsonx.ai is part of the IBM watsonx platform that brings together new generative AI capabilities, powered by foundation models and traditional machine learning into a powerful studio spanning the AI

Users
  • Consultant
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 37% Small-Business
  • 34% Enterprise
IBM watsonx.ai Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
50
Model Variety
20
Features
16
Intuitive
16
AI Development
15
Cons
Improvement Needed
17
Expensive
13
UX Improvement
12
Difficult Learning
10
Complexity
9
IBM watsonx.ai features and usability ratings that predict user satisfaction
8.8
Ease of Use
Average: 8.8
9.2
Scalability
Average: 8.9
9.0
Metrics
Average: 8.6
8.5
Framework Flexibility
Average: 8.7
Seller Details
Seller
IBM
Company Website
Year Founded
1911
HQ Location
Armonk, NY
Twitter
@IBM
714,504 Twitter followers
LinkedIn® Page
www.linkedin.com
328,966 employees on LinkedIn®
(651)4.6 out of 5
Optimized for quick response
5th Easiest To Use in MLOps Platforms software
View top Consulting Services for Snowflake
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Entry Level Price:$2 Compute/Hour
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Snowflake makes enterprise AI easy, efficient and trusted. Thousands of companies around the globe, including hundreds of the world’s largest, use Snowflake’s AI Data Cloud to share data, build applic

    Users
    • Data Engineer
    • Data Analyst
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 45% Enterprise
    • 43% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Snowflake Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    95
    Features
    65
    Data Management
    61
    Integrations
    56
    Scalability
    56
    Cons
    Expensive
    47
    Cost
    27
    Cost Management
    23
    Learning Curve
    22
    Feature Limitations
    19
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Snowflake features and usability ratings that predict user satisfaction
    9.0
    Ease of Use
    Average: 8.8
    9.2
    Scalability
    Average: 8.9
    9.3
    Metrics
    Average: 8.6
    9.4
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    2012
    HQ Location
    San Mateo, CA
    Twitter
    @SnowflakeDB
    136 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    10,445 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Snowflake makes enterprise AI easy, efficient and trusted. Thousands of companies around the globe, including hundreds of the world’s largest, use Snowflake’s AI Data Cloud to share data, build applic

Users
  • Data Engineer
  • Data Analyst
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 45% Enterprise
  • 43% Mid-Market
Snowflake Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
95
Features
65
Data Management
61
Integrations
56
Scalability
56
Cons
Expensive
47
Cost
27
Cost Management
23
Learning Curve
22
Feature Limitations
19
Snowflake features and usability ratings that predict user satisfaction
9.0
Ease of Use
Average: 8.8
9.2
Scalability
Average: 8.9
9.3
Metrics
Average: 8.6
9.4
Framework Flexibility
Average: 8.7
Seller Details
Company Website
Year Founded
2012
HQ Location
San Mateo, CA
Twitter
@SnowflakeDB
136 Twitter followers
LinkedIn® Page
www.linkedin.com
10,445 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Detect product defects in real-time. Our solutions range from product bottling to meat-processing plants. Factory vision includes processing multiple camera-feeds in near real-time, fine-tuned ML mod

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Mid-Market
    • 50% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Visionify features and usability ratings that predict user satisfaction
    9.3
    Ease of Use
    Average: 8.8
    9.7
    Scalability
    Average: 8.9
    8.5
    Metrics
    Average: 8.6
    9.2
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Visionify
    Year Founded
    2022
    HQ Location
    Westminster, US
    LinkedIn® Page
    www.linkedin.com
    35 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Detect product defects in real-time. Our solutions range from product bottling to meat-processing plants. Factory vision includes processing multiple camera-feeds in near real-time, fine-tuned ML mod

Users
No information available
Industries
No information available
Market Segment
  • 50% Mid-Market
  • 50% Enterprise
Visionify features and usability ratings that predict user satisfaction
9.3
Ease of Use
Average: 8.8
9.7
Scalability
Average: 8.9
8.5
Metrics
Average: 8.6
9.2
Framework Flexibility
Average: 8.7
Seller Details
Seller
Visionify
Year Founded
2022
HQ Location
Westminster, US
LinkedIn® Page
www.linkedin.com
35 employees on LinkedIn®
(17)4.6 out of 5
View top Consulting Services for Microsoft Fabric
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Microsoft Fabric is an end-to-end data platform that addresses every aspect of an organization’s analytics needs. Empower your data teams and business users with all the tools they need in a unifie

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 59% Enterprise
    • 24% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Microsoft Fabric Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    3
    Features
    3
    AI Capabilities
    1
    Analytics
    1
    Data Management
    1
    Cons
    Expensive
    2
    Lack of Guidance
    2
    Complexity
    1
    Learning Curve
    1
    Limited Customization
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Microsoft Fabric features and usability ratings that predict user satisfaction
    8.9
    Ease of Use
    Average: 8.8
    9.1
    Scalability
    Average: 8.9
    8.9
    Metrics
    Average: 8.6
    9.2
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    13,908,227 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    232,306 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

Microsoft Fabric is an end-to-end data platform that addresses every aspect of an organization’s analytics needs. Empower your data teams and business users with all the tools they need in a unifie

Users
No information available
Industries
No information available
Market Segment
  • 59% Enterprise
  • 24% Small-Business
Microsoft Fabric Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
3
Features
3
AI Capabilities
1
Analytics
1
Data Management
1
Cons
Expensive
2
Lack of Guidance
2
Complexity
1
Learning Curve
1
Limited Customization
1
Microsoft Fabric features and usability ratings that predict user satisfaction
8.9
Ease of Use
Average: 8.8
9.1
Scalability
Average: 8.9
8.9
Metrics
Average: 8.6
9.2
Framework Flexibility
Average: 8.7
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
13,908,227 Twitter followers
LinkedIn® Page
www.linkedin.com
232,306 employees on LinkedIn®
Ownership
MSFT
(183)4.4 out of 5
12th Easiest To Use in MLOps Platforms software
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Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Dataiku is the Universal AI Platform, giving organizations control over their AI talent, processes, and technologies to unleash the creation of analytics, models, and agents. Aggressively agnostic, it

    Users
    • Data Scientist
    • Data Analyst
    Industries
    • Financial Services
    • Pharmaceuticals
    Market Segment
    • 61% Enterprise
    • 21% Mid-Market
    User Sentiment
    How are these determined?Information
    These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
    • Dataiku is a data science platform that allows both technical and non-technical users to collaboratively build, deploy, and manage AI projects, with features such as visual workflows, AutoML, and support for Python, R, and SQL.
    • Reviewers frequently mention the platform's user-friendly interface, its ability to handle large datasets, the ease of use for non-technical users due to its low/no-code approach, and its strong integration and governance features.
    • Users reported issues such as a steep initial learning curve for beginners, high licensing costs for small companies or startups, performance issues with large projects, and complexities in handling parameterized or reusable workflows.
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Dataiku Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    80
    Features
    80
    Usability
    42
    Productivity Improvement
    41
    Easy Integrations
    40
    Cons
    Learning Curve
    41
    Steep Learning Curve
    25
    Slow Performance
    22
    Difficult Learning
    20
    Expensive
    20
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Dataiku features and usability ratings that predict user satisfaction
    8.7
    Ease of Use
    Average: 8.8
    9.0
    Scalability
    Average: 8.9
    8.5
    Metrics
    Average: 8.6
    8.5
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Dataiku
    Company Website
    Year Founded
    2013
    HQ Location
    New York, NY
    Twitter
    @dataiku
    23,046 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    1,542 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Dataiku is the Universal AI Platform, giving organizations control over their AI talent, processes, and technologies to unleash the creation of analytics, models, and agents. Aggressively agnostic, it

Users
  • Data Scientist
  • Data Analyst
Industries
  • Financial Services
  • Pharmaceuticals
Market Segment
  • 61% Enterprise
  • 21% Mid-Market
User Sentiment
How are these determined?Information
These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
  • Dataiku is a data science platform that allows both technical and non-technical users to collaboratively build, deploy, and manage AI projects, with features such as visual workflows, AutoML, and support for Python, R, and SQL.
  • Reviewers frequently mention the platform's user-friendly interface, its ability to handle large datasets, the ease of use for non-technical users due to its low/no-code approach, and its strong integration and governance features.
  • Users reported issues such as a steep initial learning curve for beginners, high licensing costs for small companies or startups, performance issues with large projects, and complexities in handling parameterized or reusable workflows.
Dataiku Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
80
Features
80
Usability
42
Productivity Improvement
41
Easy Integrations
40
Cons
Learning Curve
41
Steep Learning Curve
25
Slow Performance
22
Difficult Learning
20
Expensive
20
Dataiku features and usability ratings that predict user satisfaction
8.7
Ease of Use
Average: 8.8
9.0
Scalability
Average: 8.9
8.5
Metrics
Average: 8.6
8.5
Framework Flexibility
Average: 8.7
Seller Details
Seller
Dataiku
Company Website
Year Founded
2013
HQ Location
New York, NY
Twitter
@dataiku
23,046 Twitter followers
LinkedIn® Page
www.linkedin.com
1,542 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Organizations face increasing demands for high-powered analytics that produce fast, trustworthy results. Whether it’s providing teams of data scientists with advanced machine learning capabilities or

    Users
    • Student
    • Statistical Programmer
    Industries
    • Pharmaceuticals
    • Higher Education
    Market Segment
    • 34% Small-Business
    • 32% Enterprise
    User Sentiment
    How are these determined?Information
    These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
    • SAS Viya is a cloud-based analytics tool that supports multiple programming languages and offers data integration, data preparation, AI/ML solutions, and dashboard design capabilities.
    • Reviewers like the tool's ability to handle large datasets quickly, its integration of advanced analytics, AI, and machine learning into a single platform, and its cloud-native architecture that provides flexibility, scalability, and easy collaboration across teams.
    • Users mentioned that the initial setup and configuration can be complex, especially for organizations new to the platform, and some advanced features require significant technical expertise, making the learning curve steep for new users.
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • SAS Viya Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    184
    Features
    128
    Analytics
    111
    Data Analysis
    85
    Learning
    80
    Cons
    Learning Curve
    88
    Learning Difficulty
    88
    Complexity
    78
    Difficult Learning
    67
    Expensive
    63
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • SAS Viya features and usability ratings that predict user satisfaction
    8.1
    Ease of Use
    Average: 8.8
    8.5
    Scalability
    Average: 8.9
    8.8
    Metrics
    Average: 8.6
    8.3
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    1976
    HQ Location
    Cary, NC
    Twitter
    @SASsoftware
    61,782 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    18,025 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Organizations face increasing demands for high-powered analytics that produce fast, trustworthy results. Whether it’s providing teams of data scientists with advanced machine learning capabilities or

Users
  • Student
  • Statistical Programmer
Industries
  • Pharmaceuticals
  • Higher Education
Market Segment
  • 34% Small-Business
  • 32% Enterprise
User Sentiment
How are these determined?Information
These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
  • SAS Viya is a cloud-based analytics tool that supports multiple programming languages and offers data integration, data preparation, AI/ML solutions, and dashboard design capabilities.
  • Reviewers like the tool's ability to handle large datasets quickly, its integration of advanced analytics, AI, and machine learning into a single platform, and its cloud-native architecture that provides flexibility, scalability, and easy collaboration across teams.
  • Users mentioned that the initial setup and configuration can be complex, especially for organizations new to the platform, and some advanced features require significant technical expertise, making the learning curve steep for new users.
SAS Viya Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
184
Features
128
Analytics
111
Data Analysis
85
Learning
80
Cons
Learning Curve
88
Learning Difficulty
88
Complexity
78
Difficult Learning
67
Expensive
63
SAS Viya features and usability ratings that predict user satisfaction
8.1
Ease of Use
Average: 8.8
8.5
Scalability
Average: 8.9
8.8
Metrics
Average: 8.6
8.3
Framework Flexibility
Average: 8.7
Seller Details
Company Website
Year Founded
1976
HQ Location
Cary, NC
Twitter
@SASsoftware
61,782 Twitter followers
LinkedIn® Page
www.linkedin.com
18,025 employees on LinkedIn®
(88)4.3 out of 5
11th Easiest To Use in MLOps Platforms software
Save to My Lists
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Azure Machine Learning Studio is a GUI-based integrated development environment for constructing and operationalizing Machine Learning workflow on Azure.

    Users
    • Software Engineer
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 39% Enterprise
    • 34% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Azure Machine Learning Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    11
    Features
    7
    Efficiency
    6
    Machine Learning
    5
    Deployment Ease
    4
    Cons
    Expensive
    4
    Learning Curve
    4
    Integration Issues
    3
    UX Improvement
    3
    Cost
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Azure Machine Learning features and usability ratings that predict user satisfaction
    8.5
    Ease of Use
    Average: 8.8
    9.2
    Scalability
    Average: 8.9
    8.3
    Metrics
    Average: 8.6
    9.2
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    13,908,227 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    232,306 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

Azure Machine Learning Studio is a GUI-based integrated development environment for constructing and operationalizing Machine Learning workflow on Azure.

Users
  • Software Engineer
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 39% Enterprise
  • 34% Small-Business
Azure Machine Learning Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
11
Features
7
Efficiency
6
Machine Learning
5
Deployment Ease
4
Cons
Expensive
4
Learning Curve
4
Integration Issues
3
UX Improvement
3
Cost
2
Azure Machine Learning features and usability ratings that predict user satisfaction
8.5
Ease of Use
Average: 8.8
9.2
Scalability
Average: 8.9
8.3
Metrics
Average: 8.6
9.2
Framework Flexibility
Average: 8.7
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
13,908,227 Twitter followers
LinkedIn® Page
www.linkedin.com
232,306 employees on LinkedIn®
Ownership
MSFT
(51)4.7 out of 5
9th Easiest To Use in MLOps Platforms software
Save to My Lists
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    TrueFoundry is a cloud-native PaaS that enables enterprise teams to experiment as well as productionize advanced ML and LLM workflows on their own cloud/on-prem infra with full data privacy and securi

    Users
    No information available
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 49% Mid-Market
    • 35% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • TrueFoundry Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    36
    Customer Support
    28
    Deployment Ease
    23
    User Interface
    20
    Setup Ease
    14
    Cons
    Missing Features
    8
    Deployment Issues
    4
    Performance Issues
    3
    Software Bugs
    3
    Complexity Issues
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • TrueFoundry features and usability ratings that predict user satisfaction
    8.9
    Ease of Use
    Average: 8.8
    9.3
    Scalability
    Average: 8.9
    8.1
    Metrics
    Average: 8.6
    8.4
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    2021
    HQ Location
    San Francisco, California
    LinkedIn® Page
    www.linkedin.com
    81 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

TrueFoundry is a cloud-native PaaS that enables enterprise teams to experiment as well as productionize advanced ML and LLM workflows on their own cloud/on-prem infra with full data privacy and securi

Users
No information available
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 49% Mid-Market
  • 35% Small-Business
TrueFoundry Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
36
Customer Support
28
Deployment Ease
23
User Interface
20
Setup Ease
14
Cons
Missing Features
8
Deployment Issues
4
Performance Issues
3
Software Bugs
3
Complexity Issues
2
TrueFoundry features and usability ratings that predict user satisfaction
8.9
Ease of Use
Average: 8.8
9.3
Scalability
Average: 8.9
8.1
Metrics
Average: 8.6
8.4
Framework Flexibility
Average: 8.7
Seller Details
Company Website
Year Founded
2021
HQ Location
San Francisco, California
LinkedIn® Page
www.linkedin.com
81 employees on LinkedIn®
(54)4.6 out of 5
4th Easiest To Use in MLOps Platforms software
Save to My Lists
Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Experiment tracker purpose-built for foundation model training. With Neptune, you can monitor thousands of per-layer metrics—losses, gradients, and activations—at any scale. Visualize them with no

    Users
    No information available
    Industries
    • Computer Software
    • Biotechnology
    Market Segment
    • 43% Mid-Market
    • 41% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • neptune.ai Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    18
    Customer Support
    16
    Easy Integrations
    11
    Features
    10
    User Interface
    10
    Cons
    Missing Features
    11
    Lack of Tools
    3
    Dashboard Limitations
    2
    API Issues
    1
    Complexity
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • neptune.ai features and usability ratings that predict user satisfaction
    9.1
    Ease of Use
    Average: 8.8
    8.9
    Scalability
    Average: 8.9
    8.3
    Metrics
    Average: 8.6
    9.1
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2017
    HQ Location
    Warsaw, PL
    Twitter
    @neptune_ai
    7,273 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    111 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Experiment tracker purpose-built for foundation model training. With Neptune, you can monitor thousands of per-layer metrics—losses, gradients, and activations—at any scale. Visualize them with no

Users
No information available
Industries
  • Computer Software
  • Biotechnology
Market Segment
  • 43% Mid-Market
  • 41% Small-Business
neptune.ai Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
18
Customer Support
16
Easy Integrations
11
Features
10
User Interface
10
Cons
Missing Features
11
Lack of Tools
3
Dashboard Limitations
2
API Issues
1
Complexity
1
neptune.ai features and usability ratings that predict user satisfaction
9.1
Ease of Use
Average: 8.8
8.9
Scalability
Average: 8.9
8.3
Metrics
Average: 8.6
9.1
Framework Flexibility
Average: 8.7
Seller Details
Year Founded
2017
HQ Location
Warsaw, PL
Twitter
@neptune_ai
7,273 Twitter followers
LinkedIn® Page
www.linkedin.com
111 employees on LinkedIn®
(45)4.3 out of 5
15th Easiest To Use in MLOps Platforms software
View top Consulting Services for Amazon SageMaker
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Amazon SageMaker is a fully-managed service that enables developers and data scientists to quickly and easily build, train, and deploy machine learning models at any scale. Amazon SageMaker removes al

    Users
    No information available
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 33% Enterprise
    • 33% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Amazon SageMaker Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Features
    4
    AI Integration
    3
    Easy Integrations
    3
    Integrations
    3
    AI Capabilities
    2
    Cons
    Expensive
    4
    Complexity
    2
    Complexity Issues
    2
    Complex Interface
    1
    Cost
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Amazon SageMaker features and usability ratings that predict user satisfaction
    8.4
    Ease of Use
    Average: 8.8
    9.4
    Scalability
    Average: 8.9
    10.0
    Metrics
    Average: 8.6
    8.3
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2006
    HQ Location
    Seattle, WA
    Twitter
    @awscloud
    2,236,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    143,584 employees on LinkedIn®
    Ownership
    NASDAQ: AMZN
Product Description
How are these determined?Information
This description is provided by the seller.

Amazon SageMaker is a fully-managed service that enables developers and data scientists to quickly and easily build, train, and deploy machine learning models at any scale. Amazon SageMaker removes al

Users
No information available
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 33% Enterprise
  • 33% Mid-Market
Amazon SageMaker Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Features
4
AI Integration
3
Easy Integrations
3
Integrations
3
AI Capabilities
2
Cons
Expensive
4
Complexity
2
Complexity Issues
2
Complex Interface
1
Cost
1
Amazon SageMaker features and usability ratings that predict user satisfaction
8.4
Ease of Use
Average: 8.8
9.4
Scalability
Average: 8.9
10.0
Metrics
Average: 8.6
8.3
Framework Flexibility
Average: 8.7
Seller Details
Year Founded
2006
HQ Location
Seattle, WA
Twitter
@awscloud
2,236,464 Twitter followers
LinkedIn® Page
www.linkedin.com
143,584 employees on LinkedIn®
Ownership
NASDAQ: AMZN
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Weights & Biases is the AI developer platform to build AI applications and models with confidence. ML engineers and AI developers use W&B Weave and W&B Models to coordinate all LLMops and

    Users
    No information available
    Industries
    • Research
    • Computer Software
    Market Segment
    • 51% Small-Business
    • 28% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Weights & Biases Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    13
    Features
    7
    Data Visualization
    5
    Easy Integrations
    5
    Efficiency
    3
    Cons
    Performance Issues
    6
    Missing Features
    5
    Slow Performance
    3
    Lack of Guidance
    2
    Lack of Tools
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Weights & Biases features and usability ratings that predict user satisfaction
    8.9
    Ease of Use
    Average: 8.8
    8.3
    Scalability
    Average: 8.9
    8.9
    Metrics
    Average: 8.6
    8.6
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2017
    HQ Location
    San Francisco, California, United States
    LinkedIn® Page
    www.linkedin.com
    319 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Weights & Biases is the AI developer platform to build AI applications and models with confidence. ML engineers and AI developers use W&B Weave and W&B Models to coordinate all LLMops and

Users
No information available
Industries
  • Research
  • Computer Software
Market Segment
  • 51% Small-Business
  • 28% Mid-Market
Weights & Biases Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
13
Features
7
Data Visualization
5
Easy Integrations
5
Efficiency
3
Cons
Performance Issues
6
Missing Features
5
Slow Performance
3
Lack of Guidance
2
Lack of Tools
2
Weights & Biases features and usability ratings that predict user satisfaction
8.9
Ease of Use
Average: 8.8
8.3
Scalability
Average: 8.9
8.9
Metrics
Average: 8.6
8.6
Framework Flexibility
Average: 8.7
Seller Details
Year Founded
2017
HQ Location
San Francisco, California, United States
LinkedIn® Page
www.linkedin.com
319 employees on LinkedIn®
(318)4.8 out of 5
10th Easiest To Use in MLOps Platforms software
Save to My Lists
Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Saturn Cloud is a portable AI platform that installs securely in any cloud account. Access the best GPUs with no Kubernetes configuration or DevOps, enable AI/ML teams to develop, deploy, and manage M

    Users
    • Data Scientist
    • Student
    Industries
    • Computer Software
    • Higher Education
    Market Segment
    • 82% Small-Business
    • 12% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Saturn Cloud Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    44
    Setup Ease
    26
    GPU Performance
    21
    Free Services
    16
    User Interface
    15
    Cons
    Limited Hours
    8
    Missing Features
    8
    Expensive
    7
    Limited Storage
    5
    Complexity Issues
    4
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Saturn Cloud features and usability ratings that predict user satisfaction
    9.4
    Ease of Use
    Average: 8.8
    9.5
    Scalability
    Average: 8.9
    9.3
    Metrics
    Average: 8.6
    9.1
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    2018
    HQ Location
    New York, US
    Twitter
    @saturn_cloud
    3,263 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    38 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Saturn Cloud is a portable AI platform that installs securely in any cloud account. Access the best GPUs with no Kubernetes configuration or DevOps, enable AI/ML teams to develop, deploy, and manage M

Users
  • Data Scientist
  • Student
Industries
  • Computer Software
  • Higher Education
Market Segment
  • 82% Small-Business
  • 12% Mid-Market
Saturn Cloud Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
44
Setup Ease
26
GPU Performance
21
Free Services
16
User Interface
15
Cons
Limited Hours
8
Missing Features
8
Expensive
7
Limited Storage
5
Complexity Issues
4
Saturn Cloud features and usability ratings that predict user satisfaction
9.4
Ease of Use
Average: 8.8
9.5
Scalability
Average: 8.9
9.3
Metrics
Average: 8.6
9.1
Framework Flexibility
Average: 8.7
Seller Details
Company Website
Year Founded
2018
HQ Location
New York, US
Twitter
@saturn_cloud
3,263 Twitter followers
LinkedIn® Page
www.linkedin.com
38 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Airflow is a platform designed to programmatically author, schedule and monitor workflows with command line and GUI administration.

    Users
    • Data Engineer
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 46% Mid-Market
    • 30% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Apache Airflow Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    27
    User Interface
    14
    Flexibility
    12
    Easy Integrations
    10
    Automation
    9
    Cons
    Difficult Setup
    9
    Learning Curve
    9
    Steep Learning Curve
    8
    Learning Difficulty
    6
    Interface Complexity
    5
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Airflow features and usability ratings that predict user satisfaction
    8.3
    Ease of Use
    Average: 8.8
    8.8
    Scalability
    Average: 8.9
    7.9
    Metrics
    Average: 8.6
    8.8
    Framework Flexibility
    Average: 8.7
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    66,153 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,351 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Airflow is a platform designed to programmatically author, schedule and monitor workflows with command line and GUI administration.

Users
  • Data Engineer
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 46% Mid-Market
  • 30% Enterprise
Apache Airflow Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
27
User Interface
14
Flexibility
12
Easy Integrations
10
Automation
9
Cons
Difficult Setup
9
Learning Curve
9
Steep Learning Curve
8
Learning Difficulty
6
Interface Complexity
5
Apache Airflow features and usability ratings that predict user satisfaction
8.3
Ease of Use
Average: 8.8
8.8
Scalability
Average: 8.9
7.9
Metrics
Average: 8.6
8.8
Framework Flexibility
Average: 8.7
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
66,153 Twitter followers
LinkedIn® Page
www.linkedin.com
2,351 employees on LinkedIn®

Learn More About MLOps Platforms

What are MLOps Platforms?

MLOps solutions apply tools and resources to ensure that machine learning projects are run properly and efficiently, including data governance, model management, and model deployment.

The amount of data being produced within companies is increasing rapidly. Businesses are realizing its importance and are leveraging this accumulated data to gain a competitive advantage. Companies are turning their data into insights to drive business decisions and improve product offerings. With machine learning, users are enabled to mine vast amounts of data. Whether structured or unstructured, it uncovers patterns and helps make data-driven predictions.

One crucial aspect of the machine learning process is the development, management, and monitoring of machine learning models. Users leverage MLOps Platforms to manage and monitor machine learning models as they are integrated into business applications. 

Although MLOps capabilities can come together in software products or platforms, it is fundamentally a methodology. When data scientists, data engineers, developers, and other business stakeholders collaborate and ensure that the data is properly managed and mined for meaning, they need MLOps to ensure that teams are aligned, and that machine learning projects are tracked and can be reproduced.

What Types of MLOps Platforms Exist?

Not all MLOps Platforms are created equal. These tools allow developers and data scientists to manage and monitor machine learning models. However, they differ in terms of the data types supported, as well as the method and manner of deployment. 

Cloud

With the ability to store data in remote servers and easily access them, businesses can focus less on building infrastructure and more on their data, both in terms of how to derive insights from it as well as to ensure its quality. These platforms allow them to train and deploy the models in the cloud. This also helps when these models are being built into various applications, as it provides easier access to change and tweak the models which have been deployed.

On-premises

Cloud is not always the answer, as it is not always a viable solution. Not all data experts have the luxury of working in the cloud for a number of reasons, including data security and latency issues. In cases like health care, strict regulations such as HIPAA require data to be secure. Therefore, on-premises solutions can be vital for some professionals, such as those in the healthcare industry and government sector, where privacy compliance is stringent and sometimes vital.

Edge

Some platforms allow for spinning up algorithms on the edge, which consists of a mesh network of data centers that process and store data locally prior to being sent to a centralized storage center or cloud. Edge computing optimizes cloud computing systems to avoid disruptions or slowing in the sending and receiving of data. 

What are the Common Features of MLOps Platforms?

The following are some core features within MLOps Platforms that can be useful to users:

Model training: Feature engineering is the process of transforming raw data into features that better represent the underlying problem to the predictive models. It is a key step in building a model and results in improved model accuracy on unseen data. Building a model requires training it by feeding it data. Training a model is the process whereby the proper values are determined for all the weights and the bias from the inputted data. Two key methods used for this purpose are supervised learning and unsupervised learning. The former is a method in which the input is labeled, whereas the latter deals with unlabeled data.

Model management: The process does not end once the model is released. Businesses must monitor and manage their models to ensure they remain accurate and updated. Model comparison allows users to quickly compare models to a baseline or to a previous result to determine the quality of the model built. Many of these platforms also have tools for tracking metrics, such as accuracy and loss. It can help with recording, cataloging, and organizing all machine learning models deployed across the business. Not all models are meant for all users. Therefore, some tools allow for provisioning users based on authorization to both deploy and iterate upon machine learning models.

Model deployment: The deployment of machine learning models is the process of making the models available in production environments, where they provide predictions to other software systems. Some tools allow users to manage model artifacts and track which models are deployed in production. Methods of deployments take the form of REST APIs, GUI for on-demand analysis, and more.

Metrics: Users can control model usage and performance in production. This helps track how the models are performing.

What are the Benefits of MLOps Platforms?

Through the use of MLOps Platforms, data scientists can gain visibility into their machine learning endeavors. This helps them better understand what is and isn’t working, and they are provided with the tools necessary to fix problems if and when they arise. With these tools, experts prepare and enrich their data, leverage machine learning libraries, and deploy their algorithms into production.

Share data insights: Users are enabled to share data, models, dashboards, or other related information with collaboration-based tools to foster and facilitate teamwork.

Simplify and scale data science: Pre-trained models and out-of-the-box pipelines tailored to specific tasks help streamline the process. These platforms efficiently help scale experiments across many nodes to perform distributed training on large datasets.

Experiment better: Before a model is pushed to production, data scientists spend a significant amount of time working with the data and experimenting to find an optimal solution. MLOps Platforms facilitate this experimentation through data visualization, data augmentation, and data preparation tools. Different types of layers and optimizers for deep learning are also used in experimentation, which are algorithms or methods used to change the attributes of neural networks such as weights and learning rate to reduce the losses.

Who Uses MLOps Platforms?

Data scientists are in high demand, but there is a shortage in the number of skilled professionals available. The skillset is varied and vast (for example, there is a need to understand a vast array of algorithms, advanced mathematics, programming skills, and more); therefore, such professionals are difficult to come by and command high compensation. To tackle this issue, platforms are increasingly including features that make it easier to develop AI solutions, such as drag-and-drop capabilities and prebuilt algorithms.

In addition, for data science projects to initiate, it is key that the broader business buys into these projects. The more robust platforms provide resources that give nontechnical users the ability to understand the models, the data involved, and the aspects of the business which have been impacted.

Data engineers: With robust data integration capabilities, data engineers tasked with the design, integration, and management of data use these platforms to collaborate with data scientists and other stakeholders within the organization.

Citizen data scientists: Especially with the rise of more user-friendly features, citizen data scientists who are not professionally trained but have developed data skills are increasingly turning to MLOps to bring AI into their organization.

Professional data scientists: Expert data scientists take advantage of these platforms to scale data science operations across the lifecycle, simplifying the process of experimentation to deployment, speeding up data exploration and preparation, as well as model development and training.

Business stakeholders: Business stakeholders use these tools to gain clarity into the machine learning models and better understand how they tie in with the broader business and its operations.

What are the Alternatives to MLOps Platforms?

Alternatives to MLOps Platforms can replace this type of software, either partially or completely:

Data science and machine learning platforms: Depending on the use case, businesses might consider data science and machine learning platforms. This software provides a platform for the full end-to-end development of machine learning models and can provide more robust features around operationalizing these algorithms.

Machine learning software: MLOps Platforms are great for the full-scale monitoring and managing of models, whether that be for computer vision, natural language processing (NLP), and more. However, in some cases, businesses may want a solution that is more readily available off the shelf, which they can use in a plug-and-play fashion. In such a case, they can consider machine learning software, which will involve less setup time and development costs.

Many different types of machine learning algorithms perform various tasks and functions. These algorithms may consist of more specific machine learning algorithms, such as association rule learning, Bayesian networks, clustering, decision tree learning, genetic algorithms, learning classifier systems, and support vector machines, among others. This helps organizations looking for point solutions.

Software Related to MLOps Platforms

Related solutions that can be used together with MLOps Platforms include:

Data preparation software: Data preparation software helps companies with their data management. These solutions allow users to discover, combine, clean, and enrich data for simple analysis. Although MLOps Platforms offer data preparation features, businesses might opt for a dedicated preparation tool.

Data warehouse software: Most companies have a large number of disparate data sources, and to best integrate all their data, they implement a data warehouse. Data warehouses house data from multiple databases and business applications, allowing business intelligence and analytics tools to pull all company data from a single repository. 

Data labeling software: To achieve supervised learning off the ground, it is key to have labeled data. Putting in place a systematic, sustained labeling effort can be aided by data labeling software, which provides a toolset for businesses to turn unlabeled data into labeled data and build corresponding AI algorithms.

Natural language processing (NLP) software: NLP allows applications to interact with human language using a deep learning algorithm. NLP algorithms input language and give a variety of outputs based on the learned task. NLP algorithms provide voice recognition and natural language generation (NLG), which converts data into understandable human language. Some examples of NLP uses include chatbots, translation applications, and social media monitoring tools that scan social media networks for mentions.

Challenges with MLOps Platforms

Software solutions can come with their own set of challenges. 

Data requirements: For most AI algorithms, a great deal of data is required to make it learn the needful. Users need to train machine learning algorithms using techniques such as reinforcement learning, supervised learning, and unsupervised learning to build a truly intelligent application.

Skill shortage: There is also a shortage of people who understand how to build these algorithms and train them to perform the actions they need. The common user cannot simply fire up AI software and have it solve all their problems.

Algorithmic bias: Although the technology is efficient, it is not always effective and is marred with various types of biases in the training data, such as race or gender biases. For example, since many facial recognition algorithms are trained on datasets with primarily white male faces, others are more likely to be falsely identified by the systems.

Which Companies Should Buy MLOps Platforms?

The implementation of AI can have a positive impact on businesses across a host of different industries. Here are a handful of examples:

Financial services: The use of AI in financial services is prolific, with banks using it for everything from developing credit score algorithms to analyzing earnings documents to spot trends. With MLOps Plat, data science teams can build models with company data and deploy them to both internal and external applications.

Healthcare: Within healthcare, businesses can use these platforms to better understand patient populations, such as predicting in-patient visits and developing systems that can match people with relevant clinical trials. In addition, as the process of drug discovery is particularly costly and takes a significant amount of time, healthcare organizations are using data science to speed up the process, using data from past trials, research papers, and more.

Retail: In retail, especially e-commerce, personalization rules supreme. The top retailers are leveraging these platforms to provide customers with highly personalized experiences based on factors such as previous behavior and location. With machine learning in place, these businesses can display highly relevant material and catch the attention of potential customers.

How to Buy MLOps Platforms

Requirements Gathering (RFI/RFP) for MLOps Platforms

If a company is just starting out and looking to purchase their first data science and machine learning platform, or wherever a business is in its buying process, g2.com can help select the best option.

The first step in the buying process must involve a careful look at one’s company data. As a fundamental part of the data science journey involves data engineering (i.e., data collection and analysis), businesses must ensure that their data quality is high and the platform in question can adequately handle their data, both in terms of format as well as volume. If the company has amassed a lot of data, they must look for a solution that can grow with the organization. Users should think about the pain points and jot them down; these should be used to help create a checklist of criteria. Additionally, the buyer must determine the number of employees who will need to use this software, as this drives the number of licenses they are likely to buy.

Taking a holistic overview of the business and identifying pain points can help the team springboard into creating a checklist of criteria. The checklist serves as a detailed guide that includes both necessary and nice-to-have features, including budget, features, number of users, integrations, security requirements, cloud or on-premises solutions, and more.

Depending on the scope of the deployment, it might be helpful to produce an RFI, a one-page list with a few bullet points describing what is needed from a data science platform.

Compare MLOps Platforms

Create a long list

From meeting the business functionality needs to implementation, vendor evaluations are an essential part of the software buying process. For ease of comparison, after all demos are complete, it helps to prepare a consistent list of questions regarding specific needs and concerns to ask each vendor.

Create a short list

From the long list of vendors, it is helpful to narrow down the list of vendors and come up with a shorter list of contenders, preferably no more than three to five. With this list in hand, businesses can produce a matrix to compare the features and pricing of the various solutions.

Conduct demos

To ensure the comparison is thoroughgoing, the user should demo each solution on the short list with the same use case and datasets. This will allow the business to evaluate like for like and see how each vendor stacks up against the competition.

Selection of MLOps Platforms

Choose a selection team

Before getting started, creating a winning team that will work together throughout the entire process, from identifying pain points to implementation, is crucial. The software selection team should consist of organization members with the right interest, skills, and time to participate in this process. A good starting point is to aim for three to five people who fill roles such as the main decision maker, project manager, process owner, system owner, or staffing subject matter expert, as well as a technical lead, IT administrator, or security administrator. In smaller companies, the vendor selection team may be smaller, with fewer participants multitasking and taking on more responsibilities.

Negotiation

Just because something is written on a company’s pricing page does not mean it is fixed (although some companies will not budge). It is imperative to open up a conversation regarding pricing and licensing. For example, the vendor may be willing to give a discount for multi-year contracts or for recommending the product to others.

Final decision

After this stage, and before going all in, it is recommended to roll out a test run or pilot program to test adoption with a small sample size of users. If the tool is well used and well received, the buyer can be confident that the selection was correct. If not, it might be time to go back to the drawing board.

What Do MLOps Platforms Cost?

As mentioned above, MLOps Platforms come as both on-premises and cloud solutions. Pricing between the two might differ, with the former often coming with more upfront costs related to setting up the infrastructure. 

As with any software, these platforms are frequently available in different tiers, with the more entry-level solutions costing less than the enterprise-scale ones. The former will often not have as many features and may have caps on usage. Vendors may have tiered pricing, in which the price is tailored to the users’ company size, the number of users, or both. This pricing strategy may come with some degree of support, which might be unlimited or capped at a certain number of hours per billing cycle.

Once set up, they do not often require significant maintenance costs, especially if deployed in the cloud. As these platforms often come with many additional features, businesses looking to maximize the value of their software can contract third-party consultants to help them derive insights from their data and get the most out of the software.

Return on Investment (ROI)

Businesses decide to deploy MLOps Platforms to derive some degree of ROI. As they are looking to recoup the losses from the software, it is critical to understand its costs. As mentioned above, these platforms are typically billed per user, sometimes tiered depending on the company size. More users will typically translate into more licenses, which means more money.

Users must consider how much is spent and compare that to what is gained, both in terms of efficiency as well as revenue. Therefore, businesses can compare processes between pre- and post-deployment of the software to better understand how processes have been improved and how much time has been saved. They can even produce a case study (either for internal or external purposes) to demonstrate the gains they have seen from their use of the platform.

Implementation of MLOps Platforms

How are MLOps Platforms Implemented?

Implementation differs drastically depending on the complexity and scale of the data. In organizations with vast amounts of data in disparate sources (e.g., applications, databases, etc.), it is often wise to utilize an external party, whether an implementation specialist from the vendor or a third-party consultancy. With vast experience under their belts, they can help businesses understand how to connect and consolidate their data sources and how to use the software efficiently and effectively.

Who is Responsible for MLOps Platforms Implementation?

It may require a lot of people, or many teams, to properly deploy a data science platform, including data engineers, data scientists, and software engineers. This is because, as mentioned, data can cut across teams and functions. As a result, it is rare that one person or even one team has a complete understanding of all of a company’s data assets. With a cross-functional team in place, a business can begin to piece together their data and begin the journey of data science, starting with proper data preparation and management.

What Does the Implementation Process Look Like for MLOps Platforms?

In terms of implementation, it is typical for the platform deployment to begin in a limited fashion and subsequently roll out in a broader fashion. For example, a retail brand might decide to A/B test their use of a personalization algorithm for a limited number of visitors to their site to better understand how it is performing. If the deployment is successful, the data science team can present their findings to their leadership team (which might be the CTO, depending on the structure of the business).

If the deployment was not successful, the team could go back to the drawing board, attempting to figure out what went wrong. This will involve examining the training data, as well as the algorithms used. If they try again, yet nothing seems to be successful (i.e., the outcome is faulty or there is no improvement in predictions), the business might need to go back to basics and review their data as a whole.

When Should You Implement MLOps Platforms?

As previously mentioned, data engineering, which involves preparing and gathering data, is a fundamental feature of data science projects. Therefore, businesses must prioritize getting their data in order, ensuring that there are no duplicate records or misaligned fields. Although this sounds basic, it is anything but. Faulty data as an input will result in faulty data as an output.