蜜豆视频

Optimize Customer Journey Analytics and Analysis Workspace performance

Various factors can influence overall Customer Journey Analytics performance as well as the performance of a project within Analysis Workspace. In Workspace, you might get an error message that says

This query is too complex. Please review best practices for building Analysis Workspace queries.

These best practices discuss which factors might lead to this error and how to simplify the report/project.

Query factors query

These are the most common query factors that influence overall Customer Journey Analytics performance:

Factor
Definition
Influenced by
Optimization
Number of Freeform rows and columns
The total number of Freeform table cells in the project, calculated by rows * columns across all tables. Excludes hidden data sources. The guideline is 4000.
Reduce the number of columns in your table to only the most relevant data points. Reduce the number of rows in your table by adjusting the number of rows shown, applying a table filter, or applying a filter.
Used components
The total number of components used in the project. The guideline is 100.
The number of used components is not a direct influencer of performance. However, the complexity of those components will contribute to performance of the project. See optimizations in the 鈥淎dditional factors鈥 section below.
Longest date range
This factor displays the longest date range used the project. The guideline is 1 year.
Where possible, don鈥檛 pull in more data than you need. Narrow the panel calendar to the relevant dates for your analysis or use date range components (purple components) in your freeform tables. Date ranges used in a table override the panel date range. For example, you can add last month, last week and yesterday to the table columns to request those specific ranges of data. For more information on working with date ranges in Analysis Workspace, watch this video.

Additionally, minimize the number of year-over-year comparisons used in the project. When a year-over-year comparison is calculated, it looks across the full 13 months of data between the months of interest. This has the same impact as changing the panel date range to last 13 months.
Filter complexity
Intricate filters can have a significant impact on project performance.

Factors that add complexity to a filter (in descending order of impact) include:

  • Operators of 鈥渃ontains,鈥, 鈥渃ontains any of鈥, 鈥渕atches,鈥 鈥渟tarts with,鈥 or 鈥渆nds with鈥
  • Sequential filtering, especially when dimension restrictions (Within/After) are used
  • Number of unique dimension items within dimensions used in the filter (e.g., Page = 鈥楢鈥 when Page has 10 unique items will be faster than Page = 鈥楢鈥 when Page has 100000 unique items)
  • Number of different dimensions used (e.g., Page = 鈥楬ome鈥 and Page = 鈥楽earch results鈥 will be faster than eVar 1 = 鈥榬ed鈥 and eVar 2 = 鈥榖lue鈥)
  • Many OR operators (instead of AND)
  • Nested containers that vary in scope (e.g., 鈥淓vent鈥 inside of 鈥淪ession鈥 inside of 鈥淧erson鈥)

While some of the complexity factors cannot be prevented, look for opportunities to reduce the complexity of your filters. In general, the more specific you can be with your filter criteria, the better. For example:

  • With containers, using a single container at the top of the filter is faster than a series of nested containers.
  • With operators, 鈥渆quals鈥 is faster than 鈥渃ontains鈥, and 鈥渆quals any of鈥 is faster than 鈥渃ontains any of鈥.
  • With many criteria, AND operators is faster than a series of OR operators.

Look for opportunities to reduce many OR statements into a single 鈥渆quals any of鈥 statement.

Visualization complexity (filters, metrics, filters)
The type of visualization (e.g. fallout vs a freeform table) added to a project by itself does not influence project performance very much. It is the complexity of the visualization that adds to processing time.

Factors that add complexity to a visualization include:

  • Range of data requested
  • Number of filters applied; for instance, filters used as rows of a freeform table
  • Use of complex filters
  • Static item rows or columns in freeform tables
  • Filters applied to rows in freeform tables
  • Number of metrics included, especially calculated metrics that use filters
Data center capacity
The amount of reporting capacity you and other customers share within an 蜜豆视频 data center.
This is impacted by the number of concurrent queries made by your organization and other organizations within your data center.
Your organization is entitled to a set capacity and if the system is under a light load, 蜜豆视频 will shift more capacity to you, above and beyond your entitled allowance.
Number of concurrent queries
The number of queries that are being requested by your organization at the same time. Each organization is entitled to a minimum of 5 concurrent queries. If a report is taking a long time, typically it is due to the fact that it is in a queue with other reports. This means your organization is trying to run many concurrent requests against a specific data view.
Queries can come from API requests, reporting UIs (Analysis Workspace, Report Builder, etc.), scheduled projects, scheduled alerts, and concurrent users making reporting requests.
Spread your requests and schedules for the data view more evenly throughout the day. Also, shift your requests to off-peak times when possible. Monday mornings, Tuesday mornings, and the first of each month are peak reporting times.
Connection size
The amount of data collected into your Connection.
Consult with your implementation team or Customer Journey Analytics expert to determine if there are implementation improvements that can be made to improve overall experience in Customer Journey Analytics.
Complexity of dimension settings
Highly complex dimensions can have a significant impact on project performance, specifically dimensions or metrics based on complex custom fields.
Reduce the number of custom fields or create separate dimensions.
Dimensions with a lot of unique values
Also known as high-cardinality dimensions, these dimensions may impact reporting performance.
See high-cardinality dimensions
See high-cardinality dimensions

Help > Performance in Analysis Workspace

Various factors can influence the performance of a project within Analysis Workspace. It鈥檚 important to know what those contributors are before you start building a project so that you can plan and build the project in the most optimal way. This section includes a list of factors that impact performance and optimizations you can make to ensure peak performance in Analysis Workspace.

Under Analysis Workspace > Help > Performance, you can see factors that impact your project鈥檚 performance, including network, browser, and project factors. For the most accurate results, allow the project to fully load before opening the Performance page.

  • The Current Project column displays the results for your current project and user environment.
  • The Guideline column displays 蜜豆视频鈥檚 recommended threshold for each factor.

Additionally, you can Download as CSV the performance contents to easily share with 蜜豆视频 Customer Care or your internal IT teams.

NOTE
The information on the Performance page varies each time the modal is opened, as factors are subject to change. Additionally, 蜜豆视频 will continue to refine the guidelines provided as more data becomes available.

Analysis Workspace performance showing the Network Factor, Current Project, and Guideline.

Network factors

Help > Performance network factors include:

Factor
Definition
Influenced by
Optimization
Connection to 蜜豆视频
蜜豆视频 sends in 10 test calls when the performance page is opened. This represents the percentage of those calls to 蜜豆视频 that succeed.
Local network issues or 蜜豆视频 issues will impact this factor.
Check status.adobe.com to verify if there are any known service issues. Then, validate your local network connection.
Internet bandwidth
Available for Google Chrome only. Your browser鈥檚 estimate of the bandwidth at your location. The guideline is 2.0MB/s.
Your local network connection will impact this factor.
Validate your local network connection.
Internet latency
蜜豆视频 sends in 10 test calls when the performance page is opened. This represents the amount of time it takes on average for each request to go to 蜜豆视频 and be returned. Put more simply, it is a measure of how fast the internet is between your location and 蜜豆视频. The guideline is < 1 second.
Local network issues, many open browser tabs, or 蜜豆视频 issues will impact this factor.
Check status.adobe.com to verify if there are any known service issues. Then, validate your local network connection and close unused browser tabs.

Browser factors

Help > Performance browser factors include:

Factor
Definition
Influenced by
Optimization
Computation speed
How fast your computer performs a processing test. The guideline is < 750ms.
Your hardware as well as concurrent programs will impact this factor.
Open your computer鈥檚 Task Manager (PC) or Activity Monitor (Mac) to determine if any programs can be closed. Then, close unused browser tabs or other programs.

If those actions do not help, discuss hardware details with your IT team.
Memory used
Available for Google Chrome only. Every Workspace tab in a Google Chrome browser shares 4GB of memory in total. This represents the percent of that memory allowance that is being consumed by the current project. The guideline is 3500 MB, which is the point at which Workspace will begin surfacing memory errors.
Working in multiple tabs or downloading 50000 rows of data will contribute to increased memory usage.
If you receive a memory error, close other Workspace tabs and/or run 50000 row downloads one-at-a-time.
Local storage used
Data stored locally to your computer for use in the browser. Each origin (e.g. experience.adobe.com) has an allowance of 10MB.
Analysis Workspace uses local storage for several functions, including to store auto-saved (existing) projects, user settings, and feature flags.
To ensure Analysis Workspace functions do not become disrupted, clear local storage for the experience.adobe.com domain.
Rendering speed
FPS stands for Frames per second, which is how many times per second the browser draws the page on your screen. 24 FPS is commonly what the human eye can observe; if FPS is lower than that, you will observe rendering issues in Workspace.
FPS is impacted by multitasking across many Workspace projects at once and size of the project being viewed. Other programs running on your computer may have an impact, such as streaming, background scanners, etc. Additionally, your hardware will impact this factor.
Open your computer鈥檚 Task Manager (PC) or Activity Monitor (Mac) to determine if any programs can be closed. Then, close unused browser tabs or other programs.

If those actions do not help, discuss hardware details with your IT team.

Project factors

Help > Performance project factors include:

Factor
Definition
Optimization
Number of queries
The total number of queries (requests) made to 蜜豆视频 to retrieve data that is displayed in the project. Queries include ranked requests for tables, anomaly detection, sparklines, components shown in the left rail, and more. Excludes collapsed panels and visualizations. The guideline is 100.
Simplify your project where possible by splitting out data into several projects that serve a specific purpose or group of stakeholders. Use tags to organize projects into themes, and use direct linking to create an internal table of contents so that stakeholders can more easily find what they need.
Expanded panels (out of total panels)
The number of expanded panels out of the total number of panels in the project. The guideline is 5.
After taking steps to simplify your project, collapse panels in your project that do not need to viewed on load. When the project is opened, only expanded panels will be processed. Collapsed panels will not be processed until the user expands them.
Expanded visualizations (out of total visualizations)
The number of expanded tables and visualizations out of the total in the project, including hidden data sources. The guideline is 15.
After taking steps to simplify your project, collapse visualizations in your project that do not need to be viewed on load. Prioritize the visuals that are most important to the consumer of the report and break out supporting visuals into a separate, more detailed panel or project if needed.
Number of freeform cells
See the 鈥淨uery factors鈥 table above.
Used components
See the 鈥淨uery factors鈥 table above.
Longest date range
See the 鈥淨uery factors鈥 table above.

Request factors

Help > Performance request factors

Use the following diagram and terms to learn how requests are processed and the various factors that influence processing times:

NOTE
Recommended guidelines for these factors are based on a complexity score of Medium for reporting requests.

Request processing diagram

Request processing

Request processing terms

Factor
Definition
Optimization
Average request time

The time required from when the request is initiated to when it is complete. The guideline is 15 seconds.

In the Request processing diagram above, the request time represents the full process, from Analysis Workspace request initiated to Analysis Workspace request complete.

Longest request time

The time required from when the request is initiated to when it is complete.

In the Request processing diagram above, the request time represents the full process, from Analysis Workspace request initiated to Analysis Workspace request complete.

Average lookup time

Because Analysis Workspace stores only the hash for any strings that are used in any segments, each time you process a project, Lookups are performed to match the hashes with the appropriate values. The guideline is under 2 seconds.

This can be a resource-intensive process, depending on the number of values that could potentially match the hash.

In the Request processing diagram above, the lookup time is represented in the Lookups phase (at the time of Request Engine processing phase).

If requests are slowing down here, it is probably due to having too many string segments in you project, or having strings with overly generic values that have too many potential matches.
Average queue time

The total time waiting in queue before requests are processed. The guideline is 5 seconds.

In the Request processing diagram above, the queue time is represented in the Request Engine queue phase and Server queue phase.

If requests are slowing down here, it may be due to too many requests running simultaneously in your organization. Try running the request at an off-peak time.
Average server processing time

The average amount of time it takes to process the request.

In the Request processing diagram above, the average server processing time is represented in the Server queue phase and Server processing phase. The guideline is 10 seconds

If requests are slowing down here, it is likely that the project has overly long date ranges or complex visualizations. Try shortening your project date range in order to decrease processing times.
Complexity

Not all requests require the same amount of time to process. Request complexity can help provide a general idea about the time required to process the request. The guideline is Medium or lower.

Possible values include:

  • Low
  • Medium
  • High

This value is influenced by the values in the following columns:

  • Month boundaries
  • Columns
  • Segments
Month boundaries
The number of months that are included in a request. More month boundaries adds to the complexity of the request. The guideline is 6 or fewer.
If requests are slowing down here, it may be because the month boundaries in your project are too large. Try reducing the number of months.
Columns
The number of metrics and breakdowns in the request. More columns adds to the complexity of the request. The guideline is 10 or fewer.
If requests are slowing down here, it may be because there are too many columns in your project. Try reducing the number of columns.
Segments
The number of segments applied to the request. More segments adds to the complexity of the request. The guideline is 5 or fewer.
If requests are slowing down here, it may be because there are too many segments in your project. Try reducing the number of segments.
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