Difference between revisions of "ISED Departmental Data Strategy Placemat"

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('''Francais''': ) ('''Home Page''': [[ISED Data Strategy]])
+
('''Francais''': [[Stratégie ministérielle d'ISDE en matière de données]]) ('''Home Page''': [[ISED Data Strategy]])
 +
[[File:ThewayforwardplacematENG.png|none|frame]]
  
 
== ISED Departmental Data Strategy: The Way Forward ==
 
== ISED Departmental Data Strategy: The Way Forward ==
Line 8: Line 9:
 
=== Mission: ===
 
=== Mission: ===
 
By providing employees with the data, skills and tools they need, we will achieve excellence in serving Canadians and Canadian businesses.
 
By providing employees with the data, skills and tools they need, we will achieve excellence in serving Canadians and Canadian businesses.
 +
{|
 +
|
 +
==== Business Drivers ====
 +
* Enhanced service delivery
 +
* Evidence based policies, research and evaluation                                                                                                                 
 +
* Strengthened reporting capacity and story telling
 +
* Enriched internal services
  
{|
+
* Improved regulation and enforcement
!
+
|
!Laying the foundations
+
|
!Building the momentum
 
!Adopting a data culture
 
 
|-
 
|-
 
|
 
|
|Establishing ISED data-related leadership, enabled by launching the Chief Data Office and data governance structure, and identifying key data stewards & champions and the planning processes to manage data.
+
==== '''Goals''' ====
________________________
+
* Canadians and Canadian businesses are better informed and served
|Promoting a culture shift enabled by establishing data steward and champion networks and implementing and overseeing data processes.
+
* ISED adopts a data culture where data are discoverable, accessible, secure and of high quality
 +
* ISED's talent base is enhanced with new skills and experimentation is promoted
 +
* Public trust is honoured by ensuring that data are handled ethically and securely
 +
|
 +
|
 +
|}
  
_______________________
+
==== What are we doing? ====
|People value their data and treat it as an asset, enabled by monitoring the adoption of data processes and standards, and ensuring data access is facilitated by data stewards
+
There are six pillars of the ISED Data Strategy, each of which has high level initiatives in three phases of implementation; laying the foundation, building the momentum and adopting a data culture. The following table addresses each pillar by phase of implementation.
______________________
+
 
|-
+
== Data Governance ==
|'''Establish a Structure'''  
+
 
'''to Govern Data'''
+
=== Laying the foundations: '''Data-related leadership established''' ===
 +
* Chief Data Office
 +
* Data Governance Structure
 +
* Identify key data stewards & champions
 +
* Identify processes to manage data at enterprise level (sharing & storing protocols)
 +
 
 +
=== Building the momentum: Culture shift across ISED ===
 +
* Data Steward and Champion network established
 +
* Implement & oversee data processes
 +
 
 +
=== Adopting a data culture: People value their data and treat it as an asset ===
 +
* Monitor adoption of data processes & standards aligned with GoC
 +
* Data Stewards facilitate access to data
 +
 
 +
== Data Access ==
 +
 
 +
=== Laying the foundations: '''Data access challenges are well understood''' ===
 +
* Inventory & evaluation of data assets
 +
* Inventory data sharing agreements
 +
* Assessment of legislative & policy framework for data sharing
 +
 
 +
=== Building the momentum: '''Work on transformative data access initiatives''' ===
 +
* Develop common consent statement for data sharing
 +
* Create roadmap for a data sharing hub
 +
* Partner with Sectors to pilot data sharing and data integration Investigate data sharing opportunities across all levels of government
 +
 
 +
=== Adopting a data culture: '''ISED data are open by default''' ===
 +
* Launch common consent statement for data sharing & monitor data sharing
 +
* Deploy self-service data sharing hub
 +
* Expand data sharing to all levels of government
 +
 
 +
== Data Framework ==
 +
 
 +
=== Laying the foundations: '''Data framework and models are developed''' ===
 +
* Data standards, including Common Business Profile and dictionaries, developed and piloted Framework for ethical, secure use & storage of data developed
 +
* Detailed data models for collection, acquisition, processing and storage conceptualized and piloted
 +
 
 +
=== Building the momentum: '''Put in place data framework and models''' ===
 +
* Process to handle and use data are known
 +
* Quality assurance standards developed Data standards launched
 +
* Framework for ethical & secure data use implemented
 +
* Data models in place across the department
 +
 
 +
=== Adopting a data culture: '''Protection of data via privacy by design''' ===
 +
* Staff confidently conduct work with high quality data, with well-established data standards, definitions, and the privacy and security of Canada's data assured
 +
 
 +
== Talent ==
 +
 
 +
=== Laying the foundations: '''Baseline and identify skills gaps''' ===
 +
* Identify business needs
 +
* Assess data literacy
 +
* Identify data-related learning and development
 +
 
 +
=== Building the momentum: '''Our workforce begins to transform''' ===
 +
* Develop career path & data competencies
 +
* Upskill and retrain new and existing staff
 +
* Recruitment strategy based on required data skills
  
_____________
+
=== Adopting a data culture: '''We have trained people to reach our goals''' ===
|'''Formalize departmental data governance structure'''  
+
* Ongoing recruitment & development
* ISED data governance structure is created, with defined roles, responsibilities and accountabilities established and broadly communicated.
+
* Talent retention initiative
* Oversight for ethical use and management of data at all levels. Data stewards, individually and collectively, operationalize the use of data, data standards, and make data discoverable, with key issues raised to SDDOC for resolution and decision making; with strategic direction and guidance provided by DMC.
+
* Data as core competency for career development
* Chief Data Office champions overall implementation of ISED Data Strategy providing support to advance data and analytics capabilities.
 
  
_______________________
+
== Innovation ==
|'''Democratize governance over data'''
 
* Strong understanding of the roles and accountabilities of operational, strategic and executive levels of governance, and solid methods for interacting between groups and the Chief Data Office.
 
* Data strategy implementation undertaken with key partner collaboration (e.g., pillar and topic-specific working groups), building on the relationship between data and digital. Implementation is governed within the established departmental data governance structure.
 
* Performance indicators to measure success of strategy implementation defined and communicated.
 
_______________________
 
|'''Data is formally governed at ISED'''
 
* Data-related guidelines are embedded in departmental processes and structures, with associated data decisions taken at appropriate levels.
 
* Department wide management and governance of data aligns with ISED Data Strategy vision and drivers, and Federal initiatives.
 
* Performance indicators tracked to demonstrate progress and value of investment.
 
  
_______________________
+
=== Laying the foundations: '''Foundation for change is established''' ===
|-
+
* Early opportunities identified
| rowspan="2" |'''Operationalize'''  
+
* First data analytics pilots undertaken
'''Data Governance'''
+
* Success stories shared
  
'''via Data Stewardship'''
+
=== Building the momentum: '''Experimentation begins to yield results''' ===
 +
* Roll-out successful pilots to other sectors
 +
* Continue to communicate approaches and use cases
 +
* Identify mechanism for making decisions on proposed innovative solutions
  
_____________
+
=== Adopting a data culture: '''Innovation becomes common business practice''' ===
|'''Identify data stewards'''  
+
* Initiate departmental analytics support
* Chief Data Office  identifies possible data stewardship models for ISED, acknowledging diversity  of sectors. Model for departmental data stewardship developed and  implemented. Collaborating with the CDO, sectors nominate data stewards based  on identified data steward model.
+
* Develop Free Agent data talent matching service (data-skilled talent pool for short-term work)
* Data stewards made aware  of their role and provided with targeted training, supported by the CDO.
+
* Establish data science pipeline
* CDO conducts initial  identification of existing data-related guidelines and processes to manage  data at the departmental level (i.e., data sharing and storing protocols,  data standards, data lifecycle management and data quality).
 
|'''Form data steward network'''
 
* Establish data steward  network for sharing knowledge, best practices and expertise related to data.
 
* Data stewards actively  participate in CDO development of data-related guidelines and processes  (e.g., departmental data standards, data quality requirements, and framework  for the ethical use of data), and make recommendations for improvements to the CDO.
 
* Support further development and enhancements to the ISED Data Catalogue to ensure appropriate  access, use and interpretation of sector data.
 
|'''Operationalize data stewards'''
 
* Data stewards champion,  uphold and monitor adherence to guidelines and processes within their sector,  communicating regularly and raising data-related issues within the Data  Steward Network and the Chief Data Office.
 
* Data stewards ensure the  ethical and secure use and management of data, and promote the sharing of  their sector data to align with the strategic vision of the ISED Data  Strategy.
 
* Data Steward Network  regularly meets and raises any implementation challenges with the CDO.
 
|-
 
|'''Identify departmental oversight''' '''over  data'''
 
* Chief Data Office works  with key members of the ISED Data Governance Community to raise awareness of  the departmental data governance structure, and the need for programs to  consider data-related issues and concerns in projects and processes.
 
* CDO works across the  department to determine data governance implementation required for various  data-related processes and initiatives under the Data Access, Data Framework,  Talent, Innovation, and Technology pillars of the ISED Data Strategy.
 
  
______________________
+
== Technology ==
|'''Implement governance over departmental data'''
 
* Employ the identified  governance of departmental data initiatives, ensuring that decisions on data  are made at the appropriate level through departmental data governance  channels.
 
  
_________________________
+
=== Laying the foundations: '''Higher organizational awareness of existing solutions''' ===
|'''Monitor adherence to data governance'''  
+
* Determine technology requirements
* Data-related  considerations are built into departmental initiatives, strategies and  processes, and are governed appropriately at the right level through the  right channels.
+
* Establish technology strategy
* Data standards are  adhered to and monitored regularly across ISED. Data are managed ethically  and supported by strong data quality frameworks.
+
* Experiment with technology solutions for data (management, sharing, creation, data analytics)
* ISED staff respect data processes and standards and are accountable through the formal governance  structure. Skills and competencies related to data are developed and needed  tools are available.
+
* Roadmap for Client Relationship Management (CRM)
________________________
 
|}
 
Business Drivers:
 
• Enhanced service delivery
 
• Evidence based policies, research and evaluation
 
• Strengthened reporting capacity and story telling
 
• Enriched internal services
 
• Improved regulation and enforcement
 
Goals:
 
• Canadians and Canadian businesses are better informed and served
 
• ISED adopts a data culture where data are discoverable, accessible, secure and of high quality
 
• ISED's talent base is enhanced with new skills and experimentation is promoted
 
• Public trust is honoured by ensuring that data are handled ethically and securely
 
What are we doing?
 
There are six pillars of the ISED Data Strategy, each of which has high level initiatives in three phases of implementation; laying the foundation, building the momentum and adopting a data culture. The following table addresses each pillar by phase of implementation.
 
  
Laying the foundation Building the momentum Adopting a data culture
+
=== Building the momentum: '''New tools and processes put in place''' ===
Data governance Data-related leadership established
+
* Implement technology strategy
• Chief Data Office
+
* Business processes for use of new technologies
• Data Governance Structure
+
* On-site storage, common data software suite
• Identify key data stewards & champions
+
* Business analytics tools available
• Identify processes to manage data at enterprise level (sharing & storing protocols) Culture shift across ISED
 
• Data Steward and Champion network established
 
• Implement & oversee data processes People value their data and treat it as an asset
 
  
• Monitor adoption of data processes & standards aligned with GoC
+
=== Adopting a data culture: '''Internal technology keeps pace with innovation''' ===
• Data Stewards facilitate access to data
+
* Integrated suite of IT tools for data and analytics
Data Access Data access challenges are well understood
+
* Departmental Client Relationship Management with Common Business Profile
• Inventory & valuation of data assets
+
* Continual evaluation of Next Generation technology with new tech use on demand
• Inventory data sharing agreements
 
• Assessment of legislative & policy framework for data sharing Work on transformative data access initiatives
 
• Develop common consent statement for data sharing | Create roadmap for a data sharing hub
 
• Partner with Sectors to pilot data sharing and data integration Investigate data sharing opportunities across all levels of government ISED data are open by default
 
• Launch common consent statement for data sharing & monitor data sharing
 
• Deploy self-service data sharing hub
 
• Expand data sharing to all levels of government
 
Data Framework Data framework and models are developed
 
• Data standards, including Common Business Profile and dictionaries, developed and piloted Framework for ethical, secure use & storage of data developed
 
• Detailed data models for collection, acquisition, processing and storage conceptualized and piloted Put in place data framework and models
 
• Process to handle and use data are known
 
• Quality assurance standards developed Data standards launched
 
• Framework for ethical & secure data use implemented
 
• Data models in place across the department Protection of data via privacy by design
 
• Staff confidently conduct work with high quality data, with well-established data standards, definitions, and the privacy and security of Canada's data assured
 
Talent Baseline and identify skills gaps
 
• Identify business needs
 
• Assess data literacy
 
• Identify data-related learning and development Our workforce begins to transform
 
• Develop career path & data competencies
 
• Upskill and retrain new and existing staff
 
• Recruitment strategy based on required data skills We have trained people to reach our goals
 
• Ongoing recruitment & development
 
• Talent retention initiative
 
• Data as core competency for career development
 
Innovation Foundation for change is established
 
• Early opportunities identified
 
• First data analytics pilots undertaken
 
• Success stories shared Experimentation begins to yield results
 
• Roll-out successful pilots to other sectors
 
• Continue to communicate approaches and use cases
 
• Identify mechanism for making decisions on proposed innovative solutions Innovation becomes common business practice
 
• Initiate departmental analytics support
 
• Develop Free Agent data talent matching service (data-skilled talent pool for short-term work)
 
• Establish data science pipeline
 
Technology Higher organizational awareness of existing solutions
 
• Determine technology requirements
 
• Establish technology strategy
 
• Experiment with technology solutions for data (management, sharing, creation, data analytics)
 
• Roadmap for Client Relationship Management (CRM) New tools and processes put in place
 
• Implement technology strategy
 
• Business processes for use of new technologies
 
• On-site storage, common data software suite
 
• Business analytics tools available Internal technology keeps pace with innovation  
 
Integrated suite of IT tools for data and analytics
 
Departmental Client Relationship Management with Common Business Profile
 
Continual evaluation of Next Generation technology with new tech use on demand
 

Latest revision as of 15:16, 13 January 2021

(Francais: Stratégie ministérielle d'ISDE en matière de données) (Home Page: ISED Data Strategy)

ThewayforwardplacematENG.png

ISED Departmental Data Strategy: The Way Forward

Vision:

ISED leverages the power of data to foster a growing, competitive and knowledge based economy.

Mission:

By providing employees with the data, skills and tools they need, we will achieve excellence in serving Canadians and Canadian businesses.

Business Drivers

  • Enhanced service delivery
  • Evidence based policies, research and evaluation
  • Strengthened reporting capacity and story telling
  • Enriched internal services
  • Improved regulation and enforcement

Goals

  • Canadians and Canadian businesses are better informed and served
  • ISED adopts a data culture where data are discoverable, accessible, secure and of high quality
  • ISED's talent base is enhanced with new skills and experimentation is promoted
  • Public trust is honoured by ensuring that data are handled ethically and securely

What are we doing?

There are six pillars of the ISED Data Strategy, each of which has high level initiatives in three phases of implementation; laying the foundation, building the momentum and adopting a data culture. The following table addresses each pillar by phase of implementation.

Data Governance

Laying the foundations: Data-related leadership established

  • Chief Data Office
  • Data Governance Structure
  • Identify key data stewards & champions
  • Identify processes to manage data at enterprise level (sharing & storing protocols)

Building the momentum: Culture shift across ISED

  • Data Steward and Champion network established
  • Implement & oversee data processes

Adopting a data culture: People value their data and treat it as an asset

  • Monitor adoption of data processes & standards aligned with GoC
  • Data Stewards facilitate access to data

Data Access

Laying the foundations: Data access challenges are well understood

  • Inventory & evaluation of data assets
  • Inventory data sharing agreements
  • Assessment of legislative & policy framework for data sharing

Building the momentum: Work on transformative data access initiatives

  • Develop common consent statement for data sharing
  • Create roadmap for a data sharing hub
  • Partner with Sectors to pilot data sharing and data integration Investigate data sharing opportunities across all levels of government

Adopting a data culture: ISED data are open by default

  • Launch common consent statement for data sharing & monitor data sharing
  • Deploy self-service data sharing hub
  • Expand data sharing to all levels of government

Data Framework

Laying the foundations: Data framework and models are developed

  • Data standards, including Common Business Profile and dictionaries, developed and piloted Framework for ethical, secure use & storage of data developed
  • Detailed data models for collection, acquisition, processing and storage conceptualized and piloted

Building the momentum: Put in place data framework and models

  • Process to handle and use data are known
  • Quality assurance standards developed Data standards launched
  • Framework for ethical & secure data use implemented
  • Data models in place across the department

Adopting a data culture: Protection of data via privacy by design

  • Staff confidently conduct work with high quality data, with well-established data standards, definitions, and the privacy and security of Canada's data assured

Talent

Laying the foundations: Baseline and identify skills gaps

  • Identify business needs
  • Assess data literacy
  • Identify data-related learning and development

Building the momentum: Our workforce begins to transform

  • Develop career path & data competencies
  • Upskill and retrain new and existing staff
  • Recruitment strategy based on required data skills

Adopting a data culture: We have trained people to reach our goals

  • Ongoing recruitment & development
  • Talent retention initiative
  • Data as core competency for career development

Innovation

Laying the foundations: Foundation for change is established

  • Early opportunities identified
  • First data analytics pilots undertaken
  • Success stories shared

Building the momentum: Experimentation begins to yield results

  • Roll-out successful pilots to other sectors
  • Continue to communicate approaches and use cases
  • Identify mechanism for making decisions on proposed innovative solutions

Adopting a data culture: Innovation becomes common business practice

  • Initiate departmental analytics support
  • Develop Free Agent data talent matching service (data-skilled talent pool for short-term work)
  • Establish data science pipeline

Technology

Laying the foundations: Higher organizational awareness of existing solutions

  • Determine technology requirements
  • Establish technology strategy
  • Experiment with technology solutions for data (management, sharing, creation, data analytics)
  • Roadmap for Client Relationship Management (CRM)

Building the momentum: New tools and processes put in place

  • Implement technology strategy
  • Business processes for use of new technologies
  • On-site storage, common data software suite
  • Business analytics tools available

Adopting a data culture: Internal technology keeps pace with innovation

  • Integrated suite of IT tools for data and analytics
  • Departmental Client Relationship Management with Common Business Profile
  • Continual evaluation of Next Generation technology with new tech use on demand