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Process Control

You can monitor the process performance using indicators and measurements, according to their business objectives. These indicators are constructed from basic measurements with high reusability in different contexts and processes: size, effort, reuse, productivity, errors, rework. Have access to a rich set of indicators covering a wide range of processes (management, engineering and process support). Through the use of "process control graphics" can analyze data generated at each iteration of project over time. These graphs allow discrimination "noise" from "signal" using very simple statistical techniques (based on a "normal" distribution, so the data must be "homogeneous"). Given the amount of data available it is important to discriminate information from simple "noise". This can be viewed directly "statistical signal" in the data to determine points in a data series that require "explanation" of its assignable cause variation. These cases are characterized by an unexpected change in the performance of the process. Also known as "assignable causes" because they can be identified, analyzed, and taken into account to prevent recurrence. May be due to:

  • Pressure dates

  • Lack of adherence to process

  • Planning of tasks on the thread

  • Uncontrolled inputs (eg, load error)

  • Errors "sampling"

You can employ two types of curves to display graphics signals on the variation of the data, as well as the magnitude of each variation:

  • Graph X: graph the variation around the average value of indicator values (+-3sigma bands indicating change)

  • Graph mR: the magnitude of change for each point

To improve the performance of your processes, the categorization of the variation in the data reported by the indicators is the first step to take. You can discern between different variation patterns, each with its implication including:

  • Points "dominant": a possible signal process (or fault data) that cause an overflow outside the natural statistical limits, given by + - 3 sigma variation from the mean

  • Points "moderate": signal a possible change process that moves the average natural boundary near the bottom or top

  • Points "weak": signal a possible process that causes a shift down, or up, the average

  • Points "near average": a possible signal that keeps the process close to the average performance

  • Points "ascendant": signal a possible change process that moves something the average downward or upward

As reality is complex and not everything in it is "white" or "black", you need a tool that provides a vision "nuanced" close to common sense. This can display signals such "fuzzy" in the data, complementary statistics. The technique differs from traditional logic in which an item can belong more than one set, ie its degree of membership is a value ranging from 0 (does not belong) to 1 (belongs "totally "), unlike traditional logic, where the membership value is 0 or 1. Thus, this logic can be used qualitatively close to nature languages, common sense, as "little", "high", "much", etc.. You can employ qualitative signals for:

  • Rate the level of statistical signal information (entropy level, or "temperature" of the data), to discriminate unstable stable processes incorporating the nuances

  • Rate any indicator in relation to a consolidated group organizational, to compare variations in qualitative terms, such as a sign identifying "diffuse" the change of ownership of a set of indicator value (considering their degree), for example the transition from set "very low" to qualify as "quite high"

  • Rate projects by their degree of belonging to different sets of volume of activity, to filter the repository for those projects that have more or less regardless of type activity

Measurements analyst has all the information necessary to determine past performance, current and future estimated that each indicator provides so we can support better decision-making and continuous improvement of processes available through graphics, rules of pattern analysis variation, filters and other facilities like comparing baseline and extrapolation or comparing individual series. You can access this type of analysis directly from the tools

Fig. Statistical signals and user defined baseline

Fig. 22. Normal Distribution

Data Quality

The quality of the information is based on the quality of the basic data with which measurements and indicators are built. As data quality we means complete, with valid values (not null), correct type (eg Date, Number), and is in the proper range (zero to N , a valid date, a valid name).

You can help ensure data quality as follows:

  • By entering certain mandatory fields

  • Monitoring a "data quality index" using the defined indicator. This indicator is calculated for each data import and individual field level obtained as a ratio between the number of field values considered correct vs. the number of values considered incomplete

Fig. 23. Example of variation of quality indicator data entry

The Context

The context is the quantitative / qualitative information associated with a graph / data of an indicator for a project / group in a period of time that gives it meaning and that it must always accompany them in order to be feasible its interpretation. This context is generated automatically by the application.

A summary of the numeric context information can be viewed directly on the data table. For example:

"Goal: Measure the number of defects in the process. Problems to know the quality level of the products elaborated and make the necessary adjustments to the process Formula: Ratio of defects found in Resol. Problems vs. total defects found QualityIndex: 0.6606 Created : 27 April 2017 RepositoryDate: 27 October 2016 12:03:04 am "

The complete context can be visualized with an inspector, and in addition to the numerical information it contains statistical graphs that allow analyzing the main graph of the panel, such as frequency histogram (sigmas), class intervals, re-scaled / Pareto range according to the type of graphic

Among the numerical information is available:

  • Average value of the data

  • Standard deviation

  • Quantitative / qualitative dispersion (gini)

  • Quantitative / qualitative diversity (theil)

  • Normal test

  • Temperature: qualitative according to the amount of information (signals) present in the data

  • Name of the procedure for obtaining the data

  • Indicator Formula

  • Quality Index

  • Repository Date

  • Project Type

  • Objective of the indicator

  • Algorithm used to obtain the data (SQL / IHDSL)

  • Project performance (qualitative)

  • Indicator process

  • Indicator unit of measure

  • Date of creation of the indicator

  • Indicator description

The components of the inspector context can be copied to the paste buffer so that they can be pasted into a sheet of objects on the board or on the desktop as individual elements (although they should always accompany the original data / graph in order not to lose meaning)

There are several types of context. A type of context, called "Global" is a set of events (dates) on a timeline. A special event is "Source" and can be used to filter data from that date. This context is generated and maintained by the user through "Global Notes".

The "Annotations" allow to create specific context, associated to points of a line graph, for example to indicate possible explanations of causes of statistical variation of the data directly on the graph. These annotations can be viewed / hidden as labels. Other types of automatically generated labels indicate context of statistical and diffuse variation (signals)

The context is maintained by adding an indicator to the Board, and is persisted in the baseline of the same

Fig. 24. Context associated with a particular indicator

Activity Systems

In Improvekit we return to the primordial philosophy of object orientation, which is to be based on mental models. In the framework of the system, we do it using the Activity Systems. Activity theory helps explain how social artifacts and social organization mediate social action.
        
The goal of Activity Theory is understanding the mental capabilities of a single individual. However, it rejects the isolated individuals as insufficient unit of analysis, analyzing the cultural and technical aspects of human actions. Activity theory is most often used to describe actions in a socio-technical system through six related elements of a conceptual system expanded by more nuanced theories:

  • Object-orientedness : the objective of the activity system. Object refers to the objectiveness of the reality; items are considered objective according to natural sciences but also have social and cultural properties.

  • Subject or internalization : actors engaged in the activities; the traditional notion of mental processes

  • Community or externalization : social context; all actors involved in the activity system

  • Tools or tool mediation : the artifacts (or concepts) used by actors in the system. Tools influence actor-structure interactions, they change with accumulating experience. In addition to physical shape, the knowledge also evolves. Tools are influenced by culture, and their use is a way for the accumulation and transmission of social knowledge. Tools influence both the agents and the structure. In improvekit we also consider tools as "edge objects" (entities that can link communities together as they allow different groups to collaborate in a common task)     

  • Division of labor : social strata, hierarchical structure of activity, the division of activities among actors in the system     

  • Rules : conventions, guidelines and rules regulating activities in the system

The data sources, and certain indicators, contain metadata to represent the components of the related activity system, in particular, the instruments, operations and intervening actors.

Activity patterns

Self-constructed graphical formalism which is a socio-technical systemic view that relates the following components in a solution pattern from the signals and other clues in the data:

  • context: the general context present in the story, derived from each indicator.

For Example:     Summary of the general context: Tasks with duration exceeded: measure the volume of tasks that exceed the established time limit to determine bottlenecks and corrective actions; Task Type Activity Volume (Monthly) - Measure task size regardless of effort (quarterly);  Activity Volume: Measure project performance based on estimated task size.

  • the problem (as contradictions / tensions): problems can be expressed as contradictions / tensions in the activity system. The contradictions are entered by the user (a series of possible defaults contradictions derived from the data are suggested, including internal stresses to a component of the system, stresses between two components, due to changes, with other activity systems, or predefined from parameters (such as baseline thresholds, number of actors, roles, workflow, etc.).

For example:    ActivitySystem Tasks with exceeded duration @ Improvement of Processes and Tools;  ActivitySystem Task type Activity Volume (monthly) @Improvement of Processes and Tools;  ActivitySystem @ Activity Volume Process and Tool Improvement

  • the causes: they are defined based on the patterns detected in the data, such as statistical signals, diffuse signals, etc.

For example: Tasks with duration exceeded: measure the volume of tasks that exceed the established time limit to determine bottlenecks and corrective actions.
    Process stability:  Stable process Values fluctuate around an average of 34.0000 with September 13, 2019 10.0000 and maximum minimum values January 17, 2020 68.0000. it is not normal distribution. The kurtosis is of the peak type and straight symmetry.
        Patterns:  The values have a "slightly low" degree of dispersion and "0..2" diversity.

  • questions, arguments: defined by the user, for example from situational questions (what, how, when, where)

  • possible solutions: defined by the user, for example from past experiences of innovation

It is used in Story to explain / argue the set and is based on the theory of Activity Systems and Patterns

Fig. 25. An activity system under analysis

Categories

You can explore the indicator repository in a structured way by using categories. These categories represent dimensions or aspects used to represent reality from a business point of view.

Using categories not only facilitates navigation through the repository, but also focuses on the goals of your organization: increase productivity, improve quality, and reduce rework. But you may also need to view the repository from another point of view, from a general aspect that allows you to visualize basic attributes of your processes, such as effort.

If you need it, you can define intelligent categories using the IHDSL language. In this way, a "smart folder" of indicators (and projects) can be assembled and updated dynamically according to the result of the defined query (for example, you could define a query that shows all the indicators of a certain variation, or projects of a certain type )

Activity

Measures and indicators for number and ratio of items open and closed

Activity System

Measures and indicators for number and ratio of items open and closed

Average

Average and Deviation indicators

Average-Activity System

Average and Deviation indicators - Metadata de Sistemas de Actividad (instrument,operations,actors)

Bar Charts

Group indicators (bar chart). An unlimited data grouping can be show

Bar Charts-Activity System

Group indicators (bar chart with effort by critic subprocesses)

Bar Charts-People-Activity System

Defects

Measures and indicators for defects and failures

Effort

Measures and indicators for effort in critic subprocessess

Estimations

Deviation and Duration Measurements of Project Iterations

Examples

Lean-Activity System

Measures and indicators for number and ratio of items open and closed

Pie Charts

Group measurements (pie charts). Up to 5 data groupings are displayed, Others and Total. In this category, the user JIRA Dashboard filters also appear.

Pie Charts-Activity System

Group measurements (pie charts). Up to 5 data groupings are displayed, Others and Total. In this category, the user JIRA Dashboard filters also appear.

Quality indicators (defined by process)

Requirements

Specific measurements of the Requirements process

  • No labels