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The Pros & Cons of Flow & Packet Data - Part 2

Jay Botelho

What are the cons or challenges of Flow and Packet data?

Start with: The Pros and Cons of Flow and Packet Data - Part 1

While Flow data offers a high level of traffic visibility, it has little detail about what's actually flowing. For example, you can't see microbursts, or the amount of time an application spends churning on a request. It can also present complications for flow monitoring at the edge (small, remote offices), since many edge routers aren't full-featured enough to offer xFlow.

And although xFlow come "for free," it does put an extra processing load on the router, especially when the router is very busy, and this can lead to gaps in visibility when you need it most.

Finally, flow sampling is sometimes used to reduce the processing load on the router, making security detection much less effective since some flows, and perhaps the flows in question, may not be reported on due to sampling.

When it comes to Packet data, dedicated hardware and cabling are required between mirror ports on a router and a DPI application or appliance. This means there's more equipment to purchase, configure and maintain. Furthermore, when routers get busy the processing power required to mirror data can be reduced, resuling in some data not being mirrored, thereby reducing the effectiveness of the mirrored data. This can be addressed by using network taps or packet brokers, but this introduces even more hardware into the solution.

Packet data also requires specialized tools for analysis and a high level of expertise to be used effectively. To reap the benefits of packet data, organizations need to invest in solutions like protocol analyzers and have NetOps teams that understand how to use them. It also adds more complexity to network management, as network engineers need to be very aware of what data they want to monitor, and then ensure that the data mirroring they originally configure remains relevant as other network changes are made.

And the use of HTTPS and VPNs that create privacy tunneling is making packet payload analysis more challenging, often limited to specific instances where the keys for decryption are known for specific network flows.

What are some common ways to use Flow and Packet data to troubleshoot network performance?

The more complex underlying network problems are, the more sleuthing and expertise in protocol and packet analysis are needed. End-to-end visibility extrapolated from Flow and Packet data aids network troubleshooting at the most critical levels and sets the stage for further monitoring integrations that track application performance and sophisticated user experiences.

By using network monitoring solutions (like NPMD and NDR), finding the answers to common issues can be simplified. Here are four ways Packet and Flow data can help.

Topological Views

These views use Flow and Packet data to provide a comprehensive map of network performance. This helps Netops teams to identify infrastructure components in need of upgrading or replacement, and perform capacity planning. They also help when maintaining a real-time comprehensive device inventory, can trigger automatic device discovery, can help to proactively identify choke points on the network, and can be used to compare different performance metrics.

Flow Path Analysis

This is used to identify possible routes, hops, and network latency impacts across endpoints based on IP address. Packet and flow data allows Netops to identify issues caused by load balancing and to identify other issues caused by routing, such as sudden changes in network latency and poor performance of real-time protocols, typically voice and video.

Application Monitoring

Establishing performance baselines that can be used to monitor for abnormal traffic levels is crucial for application performance. Flow and Packet data allows NetOps to uncover insight into how the network is being used at the application level. For example, by identifying policy weaknesses that have allowed unwanted usage.

Intrusion Detection and Prevention Monitoring

Having insight into Flow and Packet data allows NetOps and SecOps to identify a known attack or type of attack based on its signature (signature-based). Teams can also identify deviations from the norm of network behaviors (anomaly-based) or the norms of protocol use (stateful protocol analysis).

Oftentimes, enterprises have seen Flow and Packet data as mutually exclusive — that one can be utilized without the need for the other — but the truth is that when combined NetOps teams can gain more complete visibility. This helps to protect against security threats, investigate alerts and ensure the overall performance of the network and applications.

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The Pros & Cons of Flow & Packet Data - Part 2

Jay Botelho

What are the cons or challenges of Flow and Packet data?

Start with: The Pros and Cons of Flow and Packet Data - Part 1

While Flow data offers a high level of traffic visibility, it has little detail about what's actually flowing. For example, you can't see microbursts, or the amount of time an application spends churning on a request. It can also present complications for flow monitoring at the edge (small, remote offices), since many edge routers aren't full-featured enough to offer xFlow.

And although xFlow come "for free," it does put an extra processing load on the router, especially when the router is very busy, and this can lead to gaps in visibility when you need it most.

Finally, flow sampling is sometimes used to reduce the processing load on the router, making security detection much less effective since some flows, and perhaps the flows in question, may not be reported on due to sampling.

When it comes to Packet data, dedicated hardware and cabling are required between mirror ports on a router and a DPI application or appliance. This means there's more equipment to purchase, configure and maintain. Furthermore, when routers get busy the processing power required to mirror data can be reduced, resuling in some data not being mirrored, thereby reducing the effectiveness of the mirrored data. This can be addressed by using network taps or packet brokers, but this introduces even more hardware into the solution.

Packet data also requires specialized tools for analysis and a high level of expertise to be used effectively. To reap the benefits of packet data, organizations need to invest in solutions like protocol analyzers and have NetOps teams that understand how to use them. It also adds more complexity to network management, as network engineers need to be very aware of what data they want to monitor, and then ensure that the data mirroring they originally configure remains relevant as other network changes are made.

And the use of HTTPS and VPNs that create privacy tunneling is making packet payload analysis more challenging, often limited to specific instances where the keys for decryption are known for specific network flows.

What are some common ways to use Flow and Packet data to troubleshoot network performance?

The more complex underlying network problems are, the more sleuthing and expertise in protocol and packet analysis are needed. End-to-end visibility extrapolated from Flow and Packet data aids network troubleshooting at the most critical levels and sets the stage for further monitoring integrations that track application performance and sophisticated user experiences.

By using network monitoring solutions (like NPMD and NDR), finding the answers to common issues can be simplified. Here are four ways Packet and Flow data can help.

Topological Views

These views use Flow and Packet data to provide a comprehensive map of network performance. This helps Netops teams to identify infrastructure components in need of upgrading or replacement, and perform capacity planning. They also help when maintaining a real-time comprehensive device inventory, can trigger automatic device discovery, can help to proactively identify choke points on the network, and can be used to compare different performance metrics.

Flow Path Analysis

This is used to identify possible routes, hops, and network latency impacts across endpoints based on IP address. Packet and flow data allows Netops to identify issues caused by load balancing and to identify other issues caused by routing, such as sudden changes in network latency and poor performance of real-time protocols, typically voice and video.

Application Monitoring

Establishing performance baselines that can be used to monitor for abnormal traffic levels is crucial for application performance. Flow and Packet data allows NetOps to uncover insight into how the network is being used at the application level. For example, by identifying policy weaknesses that have allowed unwanted usage.

Intrusion Detection and Prevention Monitoring

Having insight into Flow and Packet data allows NetOps and SecOps to identify a known attack or type of attack based on its signature (signature-based). Teams can also identify deviations from the norm of network behaviors (anomaly-based) or the norms of protocol use (stateful protocol analysis).

Oftentimes, enterprises have seen Flow and Packet data as mutually exclusive — that one can be utilized without the need for the other — but the truth is that when combined NetOps teams can gain more complete visibility. This helps to protect against security threats, investigate alerts and ensure the overall performance of the network and applications.

Hot Topics

The Latest

Misaligned architecture can lead to business consequences, with 93% of respondents reporting negative outcomes such as service disruptions, high operational costs and security challenges ...

A Gartner analyst recently suggested that GenAI tools could create 25% time savings for network operational teams. Where might these time savings come from? How are GenAI tools helping NetOps teams today, and what other tasks might they take on in the future as models continue improving? In general, these savings come from automating or streamlining manual NetOps tasks ...

IT and line-of-business teams are increasingly aligned in their efforts to close the data gap and drive greater collaboration to alleviate IT bottlenecks and offload growing demands on IT teams, according to The 2025 Automation Benchmark Report: Insights from IT Leaders on Enterprise Automation & the Future of AI-Driven Businesses from Jitterbit ...

A large majority (86%) of data management and AI decision makers cite protecting data privacy as a top concern, with 76% of respondents citing ROI on data privacy and AI initiatives across their organization, according to a new Harris Poll from Collibra ...

According to Gartner, Inc. the following six trends will shape the future of cloud over the next four years, ultimately resulting in new ways of working that are digital in nature and transformative in impact ...

2020 was the equivalent of a wedding with a top-shelf open bar. As businesses scrambled to adjust to remote work, digital transformation accelerated at breakneck speed. New software categories emerged overnight. Tech stacks ballooned with all sorts of SaaS apps solving ALL the problems — often with little oversight or long-term integration planning, and yes frequently a lot of duplicated functionality ... But now the music's faded. The lights are on. Everyone from the CIO to the CFO is checking the bill. Welcome to the Great SaaS Hangover ...

Regardless of OpenShift being a scalable and flexible software, it can be a pain to monitor since complete visibility into the underlying operations is not guaranteed ... To effectively monitor an OpenShift environment, IT administrators should focus on these five key elements and their associated metrics ...

An overwhelming majority of IT leaders (95%) believe the upcoming wave of AI-powered digital transformation is set to be the most impactful and intensive seen thus far, according to The Science of Productivity: AI, Adoption, And Employee Experience, a new report from Nexthink ...

Overall outage frequency and the general level of reported severity continue to decline, according to the Outage Analysis 2025 from Uptime Institute. However, cyber security incidents are on the rise and often have severe, lasting impacts ...

In March, New Relic published the State of Observability for Media and Entertainment Report to share insights, data, and analysis into the adoption and business value of observability across the media and entertainment industry. Here are six key takeaways from the report ...