AI readiness is a longtime precedence for the Division of Protection workforce, together with preparation of the workforce to make use of and combine knowledge applied sciences and synthetic intelligence capabilities into skilled and warfighting practices. One problem with figuring out staff skilled in knowledge/AI areas is the dearth of formal certifications held by staff. Staff can develop related information and abilities utilizing non-traditional studying paths, and consequently civilian and federal organizations can overlook certified candidates. Staff could select to domesticate experience on their very own time with on-line assets, private tasks, books, and so forth., in order that they’re ready for open positions even once they lack a level or different conventional certification.
The SEI’s Synthetic Intelligence Division is working to handle this problem. We not too long ago partnered with the Division of the Air Power Chief Knowledge and AI Workplace (DAF CDAO) to develop a technique to determine and assess hidden workforce expertise for knowledge and AI work roles. The collaboration has had some important outcomes, together with (1) a Knowledge/AI Cyber Workforce Rubric (DACWR) for evaluation of abilities recognized throughout the DoD Cyberworkforce Framework, (2) prototype assessments that seize an information science pipeline (knowledge processing, mannequin creation, and reporting), and (3) a proof-of-concept platform, SkillsGrowth, for staff to construct profiles of their experience and evaluation efficiency and for managers to determine the info/AI expertise they want. We element beneath the advantages of those outcomes.
A Knowledge/AI Cyber Workforce Rubric to Enhance Usability of the DoD Cyber Workforce Growth Framework
The DoD Cyber Workforce Framework (DCWF) defines knowledge and AI work roles and “establishes the DoD’s authoritative lexicon based mostly on the work a person is performing, not their place titles, occupational sequence, or designator.” The DCWF gives consistency when defining job positions since totally different language could also be used for a similar knowledge and AI tutorial and business practices. There are 11 knowledge/AI work roles, and the DCWF covers a variety of AI disciplines (AI adoption, knowledge analytics, knowledge science, analysis, ethics, and so forth.), together with the information, abilities, talents, and duties (KSATs) for every work position. There are 296 distinctive KSATs throughout knowledge and AI work roles, and the variety of KSATs per work position varies from 40 (knowledge analyst) to 75 (AI check & analysis specialist), the place most KSATs (about 62 %) seem in a single work position. The KSAT descriptions, nonetheless, don’t distinguish ranges of efficiency or proficiency.
The information/AI cyber workforce rubric that we created builds on the DCWF, including ranges of proficiency, defining fundamental, intermediate, superior, and skilled proficiency ranges for every KSAT.
Determine 1: An Excerpt from the Rubric
Determine 1 illustrates how the rubric defines acceptable efficiency ranges in assessments for one of many KSATs. These proficiency-level definitions assist the creation of knowledge/AI work role-related assessments starting from conventional paper-and-pencil assessments to multimodal, simulation-based assessments. The rubric helps the DCWF to supply measurement choices {of professional} apply in these work roles whereas offering flexibility for future adjustments in applied sciences, disciplines, and so forth. Measurement towards the proficiency ranges may give staff perception into what they will do to enhance their preparation for present and future jobs aligned with particular work roles. The proficiency-level definitions may also assist managers consider job seekers extra constantly. To determine hidden expertise, it is very important characterize the state of proficiency of candidates with some affordable precision.
Addressing Challenges: Confirming What AI Staff Know
Potential challenges emerged because the rubric was developed. Staff want a method to exhibit the power to use their information, no matter the way it was acquired, together with via non-traditional studying paths comparable to on-line programs and on-the-job talent improvement. The evaluation course of and knowledge assortment platform that helps the evaluation should respect privateness and, certainly, anonymity of candidates – till they’re able to share info relating to their assessed proficiency. The platform ought to, nonetheless, additionally give managers the power to find wanted expertise based mostly on demonstrated experience and profession pursuits.
This led to the creation of prototype assessments, utilizing the rubric as their basis, and a proof-of-concept platform, SkillsGrowth, to supply a imaginative and prescient for future knowledge/AI expertise discovery. Every evaluation is given on-line in a studying administration system (LMS), and every evaluation teams units of KSATs into no less than one competency that displays every day skilled apply. The aim of the competency groupings is pragmatic, enabling built-in testing of a associated assortment of KSATs fairly than fragmenting the method into particular person KSAT testing, which could possibly be much less environment friendly and require extra assets. Assessments are meant for basic-to-intermediate stage proficiency.
4 Assessments for Knowledge/AI Job Expertise Identification
The assessments comply with a fundamental knowledge science pipeline seen in knowledge/AI job positions: knowledge processing, machine studying (ML) modeling and analysis, and outcomes reporting. These assessments are related for job positions aligned with the info analyst, knowledge scientist, or AI/ML specialist work roles. The assessments additionally present the vary of evaluation approaches that the DACWR can assist. They embody the equal of a paper-and-pencil check, two work pattern assessments, and a multimodal, simulation expertise for staff who might not be comfy with conventional testing strategies.
On this subsequent part, we define a number of of the assessments for knowledge/AI job expertise identification:
- The Technical Abilities Evaluation assesses Python scripting, querying, and knowledge ingestion. It accomplishes this utilizing a piece pattern check in a digital sandbox. The check taker should test and edit simulated personnel and tools knowledge, create a database, and ingest the info into tables with particular necessities. As soon as the info is ingested, the check taker should validate the database. An automatic grader gives suggestions (e.g., if a desk identify is inaccurate, if knowledge will not be correctly formatted for a given column, and so forth.). As proven in Determine 2 beneath, the evaluation content material mirrors real-world duties which are related to the first work duties of a DAF knowledge analyst or AI specialist.
Determine 2: Making a Database within the Technical Abilities Evaluation
- The Modeling and Simulation Evaluation assesses KSATs associated to knowledge evaluation, machine studying, and AI implementation. Just like the Technical Abilities Evaluation, it makes use of a digital sandbox surroundings (Determine 3). The primary job within the Modeling and Simulation Evaluation is to create a predictive upkeep mannequin utilizing simulated upkeep knowledge. Check takers use Python to construct and consider machine studying fashions utilizing the scikit-learn library. Check takers could use no matter fashions they need, however they have to obtain particular efficiency thresholds to obtain the very best rating. Automated grading gives suggestions upon answer submission. This evaluation displays fundamental modeling and analysis that might be carried out by staff in knowledge science, AI/ML specialist, and probably knowledge analyst-aligned job positions.
Determine 3: Making ready Mannequin Creation within the Modeling and Simulation Evaluation
- The Technical Communication Evaluation focuses on reporting outcomes and visualizing knowledge, concentrating on each technical and non-technical audiences. Additionally it is aligned with knowledge analyst, knowledge scientist, and different associated work roles and job positions (Determine 4). There are 25 questions, and these are framed utilizing three query sorts – a number of selection, assertion choice to create a paragraph report, and matching. The query content material displays frequent knowledge analytic and knowledge science practices like explaining a time period or end in a non-technical means, choosing an applicable option to visualize knowledge, and making a small story from knowledge and outcomes.
Determine 4: Making a Paragraph Report within the Technical Communications Evaluation
- EnGauge, a multimodal expertise, is another method to the Technical Abilities and Technical Communication assessments that gives analysis in an immersive surroundings. Check takers are evaluated utilizing practical duties in contexts the place staff should make selections about each the technical and interpersonal necessities of the office. Staff work together with simulated coworkers in an workplace surroundings the place they interpret and current knowledge, consider outcomes, and current info to coworkers with totally different experience (Determine 5). The check taker should assist the simulated coworkers with their analytics wants. This evaluation method permits staff to point out their experience in a piece context.
Determine 5: Working with a Simulated Coworker within the EnGauge Multimodal Evaluation
A Platform for Showcasing and Figuring out Knowledge/AI Job Expertise
We developed the SkillsGrowth platform to additional help each staff in showcasing their expertise and managers in figuring out staff who’ve obligatory abilities. SkillsGrowth is a proof-of-concept system, constructing on open-source software program, that gives a imaginative and prescient for the way these wants may be met. Staff can construct a resume, take assessments to doc their proficiencies, and price their diploma of curiosity in particular abilities, competencies, and KSATs. They will seek for roles on websites like USAJOBS.
SkillsGrowth is designed to exhibit instruments for monitoring the KSAT proficiency ranges of staff in real-time and for evaluating these KSAT proficiency ranges towards the KSAT proficiencies required for jobs of curiosity. SkillsGrowth can also be designed to assist use circumstances comparable to managers looking out resumes for particular abilities and KSAT proficiencies. Managers may also assess their groups’ knowledge/AI readiness by viewing present KSAT proficiency ranges. Staff may also entry assessments, which might then be reported on a resume.
Briefly, we suggest to assist the DCWF via the Knowledge/AI Cyber Workforce Rubric and its operationalization via the SkillsGrowth platform. Staff can present what they know and ensure what they know via assessments, with the info managed in a means that respects privateness issues. Managers can discover the hidden knowledge/AI expertise they want, gauge the info/AI talent stage of their groups and extra broadly throughout DoD.
SkillsGrowth thus demonstrates how a sensible profiling and evaluative system may be created utilizing the DCWF as a basis and the CWR as an operationalization technique. Assessments throughout the DACWR are based mostly on present skilled practices, and operationalized via SkillsGrowth, which is designed to be an accessible, easy-to-use system.
Determine 6: Checking Private and Job KSAT Proficiency Alignment in SkillsGrowth
Looking for Mission Companions for Knowledge/AI Job Expertise Identification
We at the moment are at a stage of readiness the place we’re in search of mission companions to iterate, validate, and broaden this effort. We wish to work with staff and managers to enhance the rubric, evaluation prototypes, and the SkillsGrowth platform. There’s additionally alternative to construct out the set of assessments throughout the info/AI roles in addition to to create superior variations of the present evaluation prototypes.
There’s a lot potential to make figuring out and creating job candidates more practical and environment friendly to assist AI and mission readiness. If you’re considering our work or partnering with us, please ship an e-mail to information@sei.cmu.edu.
Measuring information, abilities, capacity, and job success for knowledge/AI work roles is difficult. It is very important take away obstacles in order that the DoD can discover the info/AI expertise it wants for its AI readiness objectives. This work creates alternatives for evaluating and supporting AI workforce readiness to attain these objectives.