No more typing reviews! Try our Samantha, our new voice AI agent.

Ably vs Lightning AI comparison

Sponsored
 

Comparison Buyer's Guide

Executive Summary

Review summaries and opinions

We asked business professionals to review the solutions they use. Here are some excerpts of what they said:
 

Categories and Ranking

Arctera Insight Platform
Sponsored
Average Rating
0
Number of Reviews
0
Ranking in other categories
Data Governance (61st), Compliance Management (31st)
Ably
Average Rating
9.0
Number of Reviews
4
Ranking in other categories
AWS Marketplace (35th)
Lightning AI
Average Rating
8.6
Number of Reviews
2
Ranking in other categories
AWS Marketplace (71st)
 

Featured Reviews

Use Arctera Insight Platform?
Leave a review
Uday Nagpure  - PeerSpot reviewer
Program Manager at Zinsat Technologies
Reduced manual work and built reliable real-time collaboration with serverless messaging
I love Ably for its advanced pub/sub messaging capabilities, which help us with messaging Delta Compression, allowing us to send only changes from previous messages instead of entire payloads every time. For example, if I have to say 'hi', instead of sending the whole payload, it only sends the change in the current payload, reducing bandwidth consumption and enabling high-frequency data streaming. This major change has made our clients really happy as they receive notifications and messages without latency. Additionally, if a client goes offline, Ably stores messages in history for up to 72 hours, allowing clients to query history and catch up on missed events, ensuring complete stream continuity. It also supports multi-protocol, using WebSockets and gracefully falling back to server-sent events and long polling as needed, including support for MQTT and IoT devices along with pub/sub control for easy migration.I appreciate the serverless integration that has the integrated native web hook, instantly triggering serverless functions such as AWS Lambda and Azure Function when specific real-time events occur. It also allows Kafka Connector for seamless ingestion of messages from Kafka topics to stream them out to millions of users in milliseconds.
Shravan Revanna - PeerSpot reviewer
Product Engineer at a non-profit with 51-200 employees
Rapid experimentation has transformed our AI prototyping and collaboration workflows
There are definitely a few areas where Lightning AI can improve. Overall, we have had a positive impact, but there are definitely a few areas it could enhance. One area is cost visibility and resource management. There are multiple teams running experiments, GPUs, and long-running sessions. It is not always obvious how much compute is being consumed and what the projected costs might be. More granular visibility and alerts would help the team manage usage proactively. Another area is workspace and project organization. As the number of experiments grows, it can become difficult to keep projects, notebooks, data sets, and test environments organized. Better lifecycle management could help achieve this and discoverability would be useful for larger teams. We have also encountered situations where long-running sessions or development environments needed more resilience. While this is not unique to Lightning AI, interruptions during model training and experimentation can be frustrating, especially when working with larger data sets. From an enterprise perspective, I think there is room to strengthen governance and operational control. Features around permissions, auditability, environment standardization, and usage policies become increasingly important as adoption expands across teams. I would particularly appreciate better support for moving successful experiments into production workflows. There could be better cost and resource visibility, stronger project and experiment organization, improved reliability for long-running sessions, stronger governance capabilities, and a smoother journey from experimentation to production. None of these are major blockers for us, but these are areas where the platform could become more valuable as the team and workload scale. A minor annoyance would be stronger project and experiment organization. When more data sets and more projects come into place, it becomes difficult to organize, and keeping them in a standardized way becomes slightly difficult. That is an area I wanted to highlight. There is not much of a pain point. There are a few minor suggestions I would mention, such as observability and experiment tracking at scale. When teams start running many experiments across different models, it becomes increasingly important to have a clear view of what changed and why performance improved or declined. That could be one area. Another area is cross-team discoverability. As AI adoption grows within an organization, valuable experiments and reusable components can be scattered. Better mechanisms for surfacing reusable workflows and templates would be beneficial. I would also appreciate continued investment in LLM and agent development workflows. The AI landscape is evolving rapidly. These suggestions come from the perspective of a team that is using the platform heavily. Most of the core capabilities work well today, which is why the feedback is more about helping the platform scale with a growing AI organization rather than fixing major shortcomings.
report
Use our free recommendation engine to learn which AWS Marketplace solutions are best for your needs.
902,894 professionals have used our research since 2012.
 

Top Industries

By visitors reading reviews
No data available
Construction Company
42%
Outsourcing Company
11%
Consumer Goods Company
7%
Comms Service Provider
7%
Construction Company
38%
University
15%
Manufacturing Company
9%
Outsourcing Company
6%
 

Company Size

By reviewers
Large Enterprise
Midsize Enterprise
Small Business
No data available
By reviewers
Company SizeCount
Small Business5
Midsize Enterprise3
Large Enterprise6
No data available
 

Questions from the Community

Ask a question
Earn 20 points
What needs improvement with Ably?
There is nothing much to be improved. The experience has been smooth so far, and I haven't run into any major gaps du...
What is your primary use case for Ably?
Ably's main use case is real-time messaging and event streaming. In our recent project, we used Ably to synchronize l...
What advice do you have for others considering Ably?
Everything is smooth and perfect. I would recommend taking advantage of Ably's documentation, which really helps spee...
Ask a question
Earn 20 points
 

Comparisons

 

Overview

Find out what your peers are saying about Dice, HailBytes, PeerSpot and others in AWS Marketplace. Updated: June 2026.
902,894 professionals have used our research since 2012.