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ChatGPT Team - Enterprise vs Cloud Security Connector for Zscaler comparison

 

Comparison Buyer's Guide

Executive SummaryUpdated on Mar 15, 2026

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

ChatGPT Team - Enterprise
Average Rating
8.6
Reviews Sentiment
5.5
Number of Reviews
16
Ranking in other categories
AI Writing Tools (2nd), AI Code Assistants (5th), Large Language Models (LLMs) (2nd), AI Proofreading Tools (2nd)
Cloud Security Connector fo...
Average Rating
8.4
Reviews Sentiment
8.2
Number of Reviews
5
Ranking in other categories
Internet Security (11th)
 

Mindshare comparison

ChatGPT Team - Enterprise and Cloud Security Connector for Zscaler aren’t in the same category and serve different purposes. ChatGPT Team - Enterprise is designed for Large Language Models (LLMs) and holds a mindshare of 8.7%, up 5.9% compared to last year.
Cloud Security Connector for Zscaler, on the other hand, focuses on Internet Security, holds 0.6% mindshare.
Large Language Models (LLMs) Mindshare Distribution
ProductMindshare (%)
ChatGPT Team - Enterprise8.7%
Google Gemini AI16.0%
Blackbox.ai16.0%
Other59.3%
Large Language Models (LLMs)
Internet Security Mindshare Distribution
ProductMindshare (%)
Cloud Security Connector for Zscaler0.6%
Cisco Umbrella30.0%
Zscaler Internet Access28.8%
Other40.599999999999994%
Internet Security
 

Featured Reviews

Neha Chhangani - PeerSpot reviewer
Business Analyst at a tech vendor with 10,001+ employees
Collaborative workspace has transformed our content creation and daily team productivity
There is scope for improvement in ChatGPT Team - Enterprise regarding more customization of team behavior. Teams often want even finer control over how the assistant responds, including industry-specific tones, branding voice, or response constraints that apply only to certain teams within the organization. While the shared workspace is powerful, deeper integration with internal enterprise systems could enhance accuracy and relevance. Current team history features are useful, but some teams want more granular control over what is shared or archived, especially when dealing with sensitive topics. More flexible memory settings at the project or chat level and better usage analytics would be beneficial. Admins often want richer insights into how the team is using the platform, not just overall usage but impact metrics tied to business outcomes. Real-time collaboration is great, but there is room to grow in how teams co-author and annotate AI outputs together. Additional improvements would include domain-specific models. Some teams operate in highly specialized domains and want models tuned to their field. The option to load domain-specific language packs or fine-tuned models within the enterprise environment would be valuable. Teams sometimes want clearer insight into why the assistant responded a certain way, especially on complex queries, so adding an explain-why feature with brief reasoning steps or confidence indicators for responses would improve understanding. For ultra-sensitive deployments, some organizations prefer tools that can run without cloud dependency, so having a secure on-premise or private cloud deployment option with the same collaboration compatibilities would be beneficial. Further improvements needed for ChatGPT Team - Enterprise include the AI better understanding inter-team context. This would involve recognizing when a query relates to a previous project or department-specific knowledge to reduce repeated explanations or clarifications. While it handles many languages, more robust enterprise-grade multilingual capabilities, including idiomatic expressions and regional business terminologies, would help global teams collaborate more effectively. Allowing the AI to tailor responses based on the user's role makes output more precise and immediately actionable. For highly sensitive projects, having a secure offline mode or on-premises deployment would increase adoption in regulated industries.
Vibin Thomas - PeerSpot reviewer
Team Lead, Technical Content Security at Valuepoint Systems
Unified cloud policies have improved zero-trust controls and simplified workload monitoring
A challenge faced during the initial implementation involved routing and application dependency. After routing cloud workload traffic through Cloud Security Connector for Zscaler, a few applications started failing because they depended on specific external services that were getting blocked due to strict policies or SSL inspection. To resolve this, traffic was analyzed using Zscaler logs, the exact domains and services being impacted were identified, and a controlled policy exception was created while maintaining overall security. This helped strike the right balance between security and application availability, which is very important in production environments. A key learning from this was that while Cloud Security Connector for Zscaler provides strong security control, proper policy tuning and understanding application behavior is critical for smooth deployment. Cloud Security Connector for Zscaler has had a very positive impact, especially in terms of security and operational efficiency. Before implementation, cloud workloads had direct internet access through the NAT gateway, which limited visibility and control over outbound traffic. After adopting Cloud Security Connector for Zscaler, all traffic was routed through Zscaler, giving centralized visibility and full policy enforcement. One improvement observed was a significant increase in threat detection. The ability to identify and block suspicious outbound connections that were previously not visible improved the overall security posture. From an operational perspective, troubleshooting became much faster. Instead of checking multiple cloud logs, Zscaler logs could be directly used to analyze traffic behavior, which reduced incident resolution time. The dependency on traditional firewall appliances in cloud environments was reduced, which simplified the architecture and lowered operational overhead. Additionally, for compliance-driven clients in banking, it helped meet audit requirements by providing detailed logs and consistent policy enforcement across both users and workloads. Measurable improvements were observed after implementing Cloud Security Connector for Zscaler. In terms of visibility and threat detection, a 25 to 35 percent increase in identifying suspicious outbound connections was seen that were previously not visible when traffic was going through NAT. From an operational standpoint, troubleshooting time reduced by 45 to 55 percent because Zscaler logs could be directly analyzed instead of checking multiple cloud logs. Dependence on additional security appliances in the cloud was also reduced, which helped lower operational overhead and simplified the architecture. In terms of compliance, better audit readiness was achieved with centralized logging and consistent policy enforcement across workloads and users. While Cloud Security Connector for Zscaler is a strong solution, one area that could be improved, especially for teams that are new, is configuring route tables, ensuring proper traffic flow, and avoiding asymmetric routing, which can be challenging, particularly in large or multi-VPC environments. More automated deployment options or guided configurations, especially for AWS or Azure, would simplify the onboarding process. Another area for improvement is better visibility at the cloud-native level, such as tighter integration with cloud logs or more context-aware insight for workload behavior, which would make troubleshooting even faster. Once properly implemented, it works efficiently and provides strong security and visibility. In addition to deployment simplicity, improvements around policy tuning and documentation would add significant value. From a policy perspective, when Zscaler policy is extended to cloud workloads, it sometimes requires careful fine-tuning to avoid impacting application dependency. More predefined templates or workload-specific policy recommendations would help teams implement it faster with fewer disruptions. In terms of documentation, while the existing guides are helpful, more step-by-step real-world deployment examples, especially for multi-VPC or hybrid environments, would make onboarding smoother for teams. Tighter integration guidance with cloud-native tools such as AWS logging or monitoring services would further improve troubleshooting and visibility. From a support standpoint, faster access to best practice recommendations or reference architecture would help teams avoid common misconfigurations during the initial setup.

Quotes from Members

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

Pros

"ChatGPT has positively impacted our organization by speeding up a lot of our processing time."
"The initial setup was very simple."
"I would rate ChatGPT a nine on a scale of one to ten."
"ChatGPT Team - Enterprise has helped us work smarter, not harder, and deliver better outcomes more quickly, with specific positive impacts including faster content and deliverables, better team alignment, smoother onboarding, higher quality outputs, and time saved on repetitive work."
"It provides details that previously took days or weeks to gather, and I can improve and get more insight on subjects with more accuracy."
"I have noticed clear time-saving benefits, particularly in documentation, code reviews, and internal knowledge sharing, and I estimate a 30 to 40 percent reduction in the time spent on repetitive technical tasks, which translates into faster time-to-market for features, improved marketing ROI through more experiments per quarter, and reduced agency spending via reusable content templates."
"From a cost-effective standpoint, the most immediate return on investment comes from saving time across high-value tasks, resulting in approximately a 40 to 60 percent reduction in manual effort and turnaround time, when translated into costs."
"Without ChatGPT Team - Enterprise, I wouldn't have been able to do a tenth of what I do currently."
"The solution is secure."
"Cloud Security Connector for Zscaler has had a very positive impact, especially in terms of security and operational efficiency."
"It is very useful ............visibility on the end-user,"
"Cloud Security Connector for Zscaler has positively impacted our organization by helping us in our cloud environment to connect our resources to Zscaler, ensuring that security policies are consistent with zero-trust access and increasing reliability by 28%."
"Cloud Security Connector for Zscaler has positively impacted my organization significantly, as we have consistent, enforced policies on all cloud traffic, reduced risk of data leakage, easier audits, and from an operational standpoint we have saved time not having to manage individual workload agents, which is a win both in security and efficiency."
 

Cons

"In terms of improvements needed for ChatGPT Team - Enterprise, accuracy still requires enhancement in complex or high-domain specific scenarios, particularly architecture and security topics."
"Filtering the database based on indexes is difficult in Rockset and should be simplified."
"I would not recommend ChatGPT as a standalone product. I think it could be beneficial when used alongside other tools, but as a standalone solution, its accuracy cannot be entirely trusted."
"They have room for improvements in search as sometimes it gives out wrong information."
"The information base of ChatGPT has to grow because, in some cases, it does not include information about my city."
"Citation accuracy and source attribution is also an area that could be enhanced in literature review and academic writing."
"If you ask it the same question twice, it gives you a slightly different answer, which even a human being does unless it memorizes something."
"One area where ChatGPT Team - Enterprise can be improved is hallucinations."
"The connectivity could be faster."
"If there are any issues at the network level, such as users working from home, then it is very hard to catch up with them and resolve issues on the end-user machine."
"While Cloud Security Connector for Zscaler is a strong solution, one area that could be improved, especially for teams that are new, is configuring route tables, ensuring proper traffic flow, and avoiding asymmetric routing, which can be challenging, particularly in large or multi-VPC environments."
"I did not rate it higher simply because there is room for even more seamless cloud-native integration and a few user experience refinements."
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Top Industries

By visitors reading reviews
Comms Service Provider
11%
Computer Software Company
11%
Manufacturing Company
8%
University
6%
Construction Company
22%
Manufacturing Company
13%
Insurance Company
12%
Financial Services Firm
9%
 

Company Size

By reviewers
Large Enterprise
Midsize Enterprise
Small Business
By reviewers
Company SizeCount
Small Business10
Midsize Enterprise3
Large Enterprise7
No data available
 

Questions from the Community

What needs improvement with ChatGPT?
In terms of improvements needed for ChatGPT Team - Enterprise, accuracy still requires enhancement in complex or high-domain specific scenarios, particularly architecture and security topics. Respo...
What is your primary use case for ChatGPT?
My primary use case for ChatGPT Team - Enterprise is supporting day-to-day work across engineering, products, QA, and customer support teams, mainly using it for code assistance, technical document...
What advice do you have for others considering ChatGPT?
ChatGPT Team - Enterprise is deployed in my organization through a secure public cloud-based SaaS model, accessed via authenticated enterprise accounts, integrating into my existing workflows and t...
What is your experience regarding pricing and costs for Cloud Security Connector for Zscaler?
The experience with pricing, setup cost, and licensing for Cloud Security Connector for Zscaler is definitely competitive. They provide us a good cost, and since we obtained it through AWS Marketpl...
What needs improvement with Cloud Security Connector for Zscaler?
I feel that they are doing great with Cloud Security Connector for Zscaler. If I need to suggest an improvement, it would be to simplify the steep learning curve, as it can be complex for newcomers...
What is your primary use case for Cloud Security Connector for Zscaler?
In our current organization, we have been using Cloud Security Connector for Zscaler by Maiden Edge, Maidenhead Bridge for almost two and a half years. They are providing us specialized virtual app...
 

Also Known As

Rockset
No data available
 

Overview

 

Sample Customers

1. Adobe 2. Cisco 3. Comcast 4. DoorDash 5. Expedia 6. Facebook 7. GitHub 8. IBM 9. Lyft 10. Microsoft 11. Netflix 12. Oracle 13. Pinterest 14. Reddit 15. Salesforce 16. Slack 17. Spotify 18. Square 19. Target 20. Twitter 21. Uber 22. Verizon 23. Visa 24. Walmart 25. Yelp 26. Zoom 27. Airbnb 28. Dropbox 29. eBay 30. Google 31. LinkedIn 32. Amazon
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