Research Computing Teams #143, 28 Oct 2022
Teams are having a hard time hiring - or even getting people to apply for their jobs. Whenever groups of research computing and data managers and leaders get together, this is a topic that comes up - I’ve heard it as a common refrain in the past year especially.
Unfortunately, the old approach of academic hiring - post a templated job description on a website and wait for the candidates to find the job and send in an application - doesn’t work any more. It doesn’t work anywhere particularly well, but it falls especially flat in our industry. You see this everywhere across academia; even what used to be highly competitive postdoc positions just aren’t being applied for.
We have to be more active in searching for job candidates today. That means a lot more work, but it’s upfront work which will make the hiring and onboarding earlier.
(We also have to be more active and put more work into retaining team members - I’ll talk about that next week)
The most immediate problem, and the one most commonly cited, is this: With the growth of interest in technical software, AI/ML, and data science, there is an increasing demand for the skillsets we need, but a limited supply of candidates. While our jobs have meaningful work, opportunities to learn and flexibility, we can’t offer the same salaries as industry (which are frequently 2x-3x of our salary bands).
And that’s certainly true - but even without the very recent rises in salary and demand, the old “post a job ad and wait for the applications to roll in” model is less and less relevant in our digitally connected age. Its biggest problem is that it can only possibly reach that small fraction of people who happen to have started an active job search right around the time your job ad went up. Even then it’s just one ad, probably not very well marketed, among a sea of others.
In the meantime, recruiters are actively contacting possible candidates, in every industry, before they even get to the point of actively looking. You probably know this already; if your LinkedIn page is even remotely up to date, you’re getting cold contacts fairly routinely. (If you’re not, and you’d like to be, email me). The junior people who are doing more hands-on work are getting inundated.
That doesn’t mean there’s nothing we can do. Quite the opposite! But it does mean we need to put in some effort.
Our jobs, if I may be so bold, are awesome. Yes, we have lower salaries; but people primarily driven by income have never really been drawn to research. We have meaningful work, flexibility, opportunities to learn in a wide range of fields, and we can contribute directly to work advancing the forefront of human knowledge. For on-campus jobs we have pretty bustling campuses teeming with activity and talks and events regularly available; for remote work we offer the comfort and flexibility of working from home while being part of an international research community.
But just like in research where we’ve all had to learn that the work does not speak for itself, neither do our job openings. We have to put the work in to speak, on behalf of the job opening, to the people most likely to be good candidates.
I’ve written elsewhere about job ads (#135, #136). I’ll assume that you have a good job ad, one that effectively conveys the positives and challenges of the job, that describes expectations about accomplishments, and that doesn’t list as requirements things you don’t actually require.
The next task then is to get that job ad in front of people you want to read it.
Understand the personae you’re trying to reach
To do that we need to figure out where those people might already be in their careers, what they’re reading, and how to get our ad into what they’re reading.
Our jobs are probably principally of interest to those with one foot already in the door of research or academia, so that narrows down things slightly. Who are the people, in and around the world of academia and research, who would have the combination of interests and prerequisite skills to be able to do this job with sufficient onboarding? Start coming up with some candidate personae - at least three - that would describe different situations and backgrounds of people who might make good candidates. Do not limit yourself to people on fairly traditional research computing and data paths - look a little beyond this.
Once you have these, for each candidate persona, where are those people likely to be? What would they be reading? The best way by far to find that information out is to talk to members of those groups (or people who were recently members) and just ask them. That includes members of your (or other) teams, if relevant. If you don’t have that knowledge, you’ll have to resort to trial-and-error:
- If one of your personae are soon-to-matriculate undergraduates, is it near graduation time for a relevant undergraduate program? Do you have contacts in that department who could tell you where to put out a job posting?
- If there are graduate programs that touch on what you’re doing, are there people you know teaching classes that could spread the word?
- Do people in your persona groups post questions on some online forum, or are their group slacks/discords that would be relevant?
You’re aiming for targeted broadcasts - mass media but carefully aimed at groups that might contain strong candidates. This is much better than just putting up an ad and sending it to an email list you’re already on (since you aren’t likely the ideal candidate for this job, you already being on a list is actually evidence that it’s not a great fit). But there’s stronger approaches to move to next.
Directly contact individuals
The above targeted but still broadcast-based methods are better than nothing, but it’s important as much as possible to directly contact individuals wherever possible. How many email blasts to mailing lists do you delete unread, or after a cursory scan, each and every week? You’ve worked hard to get the job requisition open for your new position, and spent real effort hashing out your job ad. Sending a mailing list post exciting job opportunity is just adding another piece of email jetsam to the choppy, junk-filled seas of good candidates’ inboxes.
Start with your existing professional network, prioritizing people working in the field - including people managing the kind of work that would be done in this role, but especially including people you’d secretly like to hire for this job. In an individual email, ideally referencing something specific about them, tell them you’re hiring. Give them a cool one-sentence description of what this job is and why it’s different from a generic job of its sort. Tell them you know they’re really strong in this area, and ask them if they know anyone who you could contact about the job. They may well have people in their own network who are actively looking that you don’t know about; or they may have been thinking about new opportunities themselves.
(“Jonathan, are you suggesting poaching team members?” No, I’m not: because smart, driven, capable people aren’t quails; nor is letting someone know about a cool opportunity the same thing as hunting and trapping them.)
After those direct contacts from people in your network, will come directly contacting strangers who might be interested. The place to start there is with the personae descriptions you created above. That means searching online for people who might make good candidates, on the public web with your favourite search engine, and using paid tools like LinkedIn Recruiter Lite. (Yes, LinkedIn pro costs money, and more importantly, these approaches take time. But as a manager, you are in part a recruiter; that’s part of the job.)
Given your personae, it’s time to start crafting searches that will identify those people, and then sending the same kinds of emails you sent to your network. Short, customized emails, identifying the job, making the connection to things they do, and asking that since they’re quite knowledgeable about this sort of work if they know anyone who would be interested. The response rate for these emails will be much lower than in your network, but won’t be zero.
Your institution may have some internal recruitment people who can help with this. It may even be possible to get some budget for external recruiters. This isn’t a panacea - we’re hiring for super specialized roles - but people who do something day in and day out get good at it much faster than we can if we’re doing it in dribs and drabs. Find out from your organization, or HR, if such support is possible, and how much it would cost. (Multiple months of salary for the role is a common). The work you’ve already done in preparing persona will make it much easier to work with a recruiter.
Whether you’re putting in the time or paying for someone else to, this is a lot of work. Is there an easier way? Well, there’s good news and bad news…
Make it easier the next time
There are some things you can start doing now that won’t help right away for any current opening you have, but will make finding people easier for your next job opening. They all involve increasing the visibility of your team, and developing a bench of contacts and possible candidates. And they all have knock-on effects well beyond just hiring.
First, make sure your team’s work is as visible as possible. This is valuable for career development of your team members, for attracting possible clients and collaborators, and provides concrete things you can point to when describing how awesome working in your team is:
- Post success stories to a team (or organization, or institutional) website, and share widely. These success stories are real work to write up as they happen, but they are incredibly valuable. You can reuse them again and again in different advocacy contexts. Trust me on this; once you have a small library of them you will wonder how you ever managed before. A couple extra hours writing up an accomplishment is peanuts compared to the benefit you get. Make sure you get a visual of some sort and a good testimonial quote along with some text. The text doesn’t have to be particularly long! A few hundred words can be enough. Just make sure it focusses on the impact, not the details, of the work .
- Whatever knowledge-sharing activities happen in your organization - they are important, please encourage them - work on leveraging them to share that knowledge to the broader community. This could be blog posts, recorded talks, podcasts for the adventurous, whatever works for your team. Again, share far and wide.
- Arrange for as many opportunities as possible for your team members to give talks about their work; this has never been easier with the wide range of virtual events.
Next, as part of you and your team’s normal professional conversations with people, build a network, and keep a constantly updated list of people you’d be interested with working in the future. Get everyone in the team to contribute
- After conferences, talks, etc., make a team practice of flagging people who are doing interesting work. (If you have people who go to events or work on projects debrief the team afterwards regularly, which is a good and useful thing to do, this can be part of that). Make sure everyone knows not to be biased about what “good technical people” look like. Ask probing questions about people in groups who face bias in academia and tech, and make sure you uncover people quietly doing good work but aren’t showy about it.
- From that list and elsewhere, maintain a roster of interesting people, ping them quarterly or a couple times a year about relevant work the team’s doing and keep abreast of their own work
- Find out from them people they think are doing good work, and build your network transitively
People in research computing and data are disproportionately introverted, so some of the communications and networking tasks above may not come naturally. That’s ok; I wouldn’t have to keep advising people to do it if it came naturally. Managing people well and with professionalism takes work, some of it uncomfortable.
Finally, grow both your hiring muscles and your network by having a regular practice of hiring interns, summer students, co-op students, REUs, or whatever they’re called in your institution; not only does this improve processes around recruiting and hiring, it builds a network of smart capable motivated young people, people who have friends and networks of their own, who can apply for or at least help share the good work about your job.
Do you have questions about hiring, recruiting, onboarding, or retention? Send me an email (hit reply if this is in your inbox, or email me at jonathan@researchcomputingteams.org) or schedule a call.
With that, on to the roundup for this Hallowe’en weekend. I hope this week goes well for you and your team dismembers, your meetings are (re)animated, and you achieve all your ghouls.
Managing Teams
Group Dynamics: Very Loud (and Very Quiet) People - Ed Batista
This is a pretty common problem in research, in my experience - on average our teams tend towards the quiet, but it’s pretty common to have one or a few team members or visitors who are very talkative. Without meaning to — and without any ill intent necessary — an outlier on the talkative side will completely dominate group discussions. Similarly, if the team were tilted the other way, an outlier quiet person would go completely unheard. Either way, resentment can build up, on both sides (“Why does X always hog the discussion”/”Why does Y never contribute, do they think our team meeting is beneath them?”)
The approach I preferred early in my career, hoping the problem goes away, turns out not to work! The alternatives require intervention of some sort. Batista goes through the options:
- Raising the issue one-on-one with the outlier, pointing out the impact it’s having, and nudging them towards other behaviours (either actively making space for others to contribute, or preparing to contribute more themselves). This is a strong management 101 move, using the relationship you’ve built up to facilitate them developing new behaviours, for their own growth and that of the team.
- Direct intervention by the person (often you) who is facilitating and charing the meeting; (“Thanks, X. What do other people think?”/”Y, we haven’t heard from you yet; what are your thoughts?”). Good and important meeting charing skills.
- Group metadiscussions about how the group wants their discussions to happen. This is classic management 201 stuff, arranging for what’s basically a meeting retrospective, and getting the team to design structures to improve their own work.
- Structured meeting process - this can work well in connection with the group metadiscussions, or for meetings where you aren’t in a position to give feedback, intervention, or arrange for the group decision process,
Revisiting meta-analytic estimates of validity in personnel selection: Addressing systematic overcorrection for restriction of range - Sacket et al, J. Appl. Psych
One of the points I want to drive home in this newsletter is that people study what does and doesn’t work in management a lot; of course they do, there’s a lot riding on it! It’s not all opinions and just-so stories.
Here the authors do a metastudy looking at what most and least correlates with future job success for job candidates. Years of experience is a pretty definitive second-last of all the options. Boringly professional things like structured employment interviews and job knowledge tests are top.
Technical Leadership
I don’t want to know whose fault it is - Jonathan Hall
Blameless isn’t only for incident reports/postmortems! As a technical leader, the responsibility for the structure and context in which a mistake happened is yours. Assigning blame for something that went wrong short circuits the real work that has to happen, improving the structure and context. And besides,
Except perhaps in some cases of malicious action, no single person is ever at fault.
Product Management and Working with Research Communities
How to work with difficult stakeholders - Neil Turner
The context here is product user experience, but the approaches here are pretty widely applicable:
- Keep track of the various players in your community - those that have high/low influence on your outcomes and high/low interest in the day to day of your work, and treat them at least according to this two-by-two matrix (high influence/high interest: manage closely; high/low: keep satisfied; low/high: keep informed; low/low: monitor)
- Find common goals with them
- Agree on roles and responsibilties
- Use a RACI matrix to handle decision and information flows
- Earn their trust
- Show, don’t tell - true whether you’re talking about prototypes or drafts or anything else; this minimizes miscommunication
- Use their language for things (ditto)
- Work with difficult stakeholders individually (this prevents a number of problems)
- Don’t shy away from conflict when it needs to happen
Research Software Development
How to Build Software like an SRE - Brandon Willit
When I started my career, research software was command line tools that one launched, they ran to completion, and then were done.
Now that we have long running services that people depend on, a lot of teams are struggling with writing code that supports good uptime. That means predictability.
Willit describes how SRE teams write software, and maybe counterintuitively, he describes a fail fast approach; don’t do fallbacks, don’t do heroics to retry failed steps - fail fast and cleanly, leaving a predictable and easy to understand and replicate error.
Hacks to Help Open Source Leadership Support Inclusion - Jennifer Riggins
Almost all of diversity, equity, inclusion, and belonging work is hard, time-consuming people work. But, Riggins says, that doesn’t mean we can’t use some tooling to make that important work easier for open source maintainers:
- Measure things, so you can use tools to track them over time - event diversity, who’s contributing, etc
- Use tools like GitHub Achievement Badges to incentivize the inclusive behaviour you want to see
- Use bots to promote inclusive language (several are listed)
- Have a strong code of conduct, and use some tools to help make it easier to nudge the behaviour you want to see (Drupal has been using this to good effect)
- Have a strong onboarding plan for new contributors, and use existing onboarding automation tools to support that
Emerging Technologies and Practices
PDEBENCH: An Extensive Benchmark for Scientific Machine Learning - Takomoto et al
PDEBench GitHub Repository - Takomoto et al
I’m pretty late to this game, but I’m really excited about how far things have gone in deep learning for PDEs. Being able to tweak a parameter and instantly see updated simulation results is what I imagined 2020s-era simulation would be back when I was an undergrad in the 1990s.
Moving from craftwork to science, from one-offs towards widely usable tools, means creating benchmarks and rigorously testing approaches. Here’s a first benchmark, comprising problems those of us who have spent years in the PDEs world will recognize, for developing such future work.
Random
Cool set of short case studies of large-scale migrations.
Cool bash for bioinformatics online tutorial, for a very specific use case - running DNAnexus pipelines. Note how it’s possible to get really deep really quickly when the material is for a specific use case; yet a lot of the material could still be incorporated into other tutorials.
The HTTP crash course nobody asked for.
This is pretty neat - run cloud style data pipelines (including ML pipelines) on top of Slurm (but also Airflow, Argo, Kubeflow, Argo) with Soopervisor.
I’m having fun going through Xanadu’s Quantum Codebook tutorial. I’m learning a lot, for sure, but also on a meta level admiring the technical and pedagogical work that’s gone into the resources. It’s quite nicely done.
That’s it…
And that’s it for another week. Let me know what you thought, or if you have anything you’d like to share about the newsletter or management. Just email me or reply to this newsletter if you get it in your inbox.
Have a great weekend, and good luck in the coming week with your research computing team,
Jonathan
About This Newsletter
Research computing - the intertwined streams of software development, systems, data management and analysis - is much more than technology. It’s teams, it’s communities, it’s product management - it’s people. It’s also one of the most important ways we can be supporting science, scholarship, and R&D today.
So research computing teams are too important to research to be managed poorly. But no one teaches us how to be effective managers and leaders in academia. We have an advantage, though - working in research collaborations have taught us the advanced management skills, but not the basics.
This newsletter focusses on providing new and experienced research computing and data managers the tools they need to be good managers without the stress, and to help their teams achieve great results and grow their careers.
Jobs Leading Research Computing Teams
This week’s new-listing highlights are below; the full listing of 189 jobs is, as ever, available on the job board.
Quantum Readiness Delivery Lead - National Quantum Computing Centre, Didcot UK
The National Quantum Computing Centre (NQCC) is a new research institution, funded through UK Research and Innovation, which is dedicated to accelerating the development of quantum computing by addressing the challenges of scaling up the technology. The Centre will work with businesses, government and the research community to deliver quantum computing capabilities for the UK and support the growth of the emerging industry. The NQCC will give assured and direct access to early prototype machines for developers and promote the formation of a strong UK-based quantum computing supply chain.
Lead Bioinformatician - UK Health Security Agency, London UK
At the United Kingdom Health Security Agency (UKHSA) our mission is to provide health security for the nation by protecting from infectious disease and external hazards. This role will be responsible for leadership of the bioinformatics function within the HCAI, Fungal, AMR, AMU & Sepsis Division. The postholder will have responsibility for setting the strategic direction of the function within the wider Division as a member of the Leadership and Management Group.
Principal Research Product Manager - Privacy Preserving AI - Microsoft, Richmond WA USA
We are looking for a Researcher Product Manager to shape our long-term research strategy and enable product impact. You will work closely with research and engineering teams across Microsoft to identify research opportunities, drive organizational alignment, and communication our cutting-edge research agenda both internally and externally. You will play a critical role in shaping our cross-disciplinary research strategy spanning several critical technology areas such as privacy preserving machine learning, and NLP.
Director - AI Tech Ops - Novo Nordisk, Lexington MA USA
Recognized as a key leader in Novo Nordisk’s Data Science efforts, the Director of AI Tech Ops will drive activities around the comprehensive integration of AI and Data Science activities within the larger technical ecosystem at Novo Nordisk. These responsibilities will include ownership of MLOps activities, interaction and coordination with IT on behalf of the AI and Analytics Organization, and ensuring that the appropriate technology stack exists and is organized for the delivery of successful solutions. The individual will be a recognized expert in AI and ML systems, tools, approaches and technologies for a variety of applications, including cloud architectures, cloud engineering, software engineering, and AGILE development practices.
Manager, qLab Operations, Quantum City - University of Calgary, Calgary AB CA
The University of Calgary (UCalgary) is creating a vibrant quantum economic and scientific hub based in Calgary - Quantum City - leveraging the leading quantum science and technology programs of Campus Alberta institutions and a burgeoning UCalgary innovation ecosystem. Quantum City outputs will include specialized infrastructure, qLab, to support university research and company agendas. This is a key leadership position within the qLab.
Manager, Information System Security, HPC - University of Toronto, Toronto ON CA
The Manager, Information Systems Security provides strategic leadership and management for SciNet’s Information Security Program which includes the security of data centres, network perimeter, and enterprise systems, including on-prem and cloud systems, hardware and software architecture, as well as managing risk and privacy assessments, incident response and investigation, and outreach and awareness. The Manager provides strategic and tactical planning, evaluation, design, development, implementation, and overall management and support of SciNet’s Information Security Program, with the goal to protect and improve cybersecurity infrastructure, posture, and culture to minimize risk of compromise, and in managing security controls required, in the support of teaching, learning and research, and services to staff, faculty and students.
Deputy Director, Operations and Delivery, EPCC - University of Edinburgh, Edinburgh UK
We are looking for an exceptional individual to support EPCC’s Director in the successful operation and delivery of all of EPCC’s activities. This is a new role with a broad remit across the whole of the centre and which will be focussed on strategy setting and delivery in close collaboration with the Director, as well as supporting day-to-day operational matters working with the Director of Operations. The Deputy Director will have a broad skill set, experience of working collaboratively with senior members of staff in previous roles, and of engaging proactively with senior external stakeholders. The role will be based at the Bayes Centre in central Edinburgh but with regular meetings at EPCC’s Advanced Computing Facility data centre and travel to meetings with our stakeholders and partners in the UK and Europe
Research Project Manager, Foundational AI - The Alan Turing Institute, London UK
The role of the Research Project Manager is to co-ordinate and support work within Foundational AI Research and will include administering a portfolio of high impact research projects, as well as overseeing, planning, organising and communicating the activities generated by those projects. The post holder will work with the Programme Director, Deputy Directors and academic researchers as well as the Programme Manager to coordinate each research project from concept to implementation.
Quantum Programme Manager - University of Edinborugh, Edinburgh UK
The School of Informatics, University of Edinburgh, invites applications for a Quantum Programme Manager on the project “Quantum Computing Platform for NISQ Era Commercial Applications” funded by Innovate UK. This is a multidisciplinary collaborative project involving stakeholders in industry and academia. The successful candidate will provide programme management and work alongside a team of researchers and scientists conducting leading UK research into hardware testing for emerging scalable quantum devices.
Head of Research Informatics - University of Oxford, Oxford UK
You will lead the implementation and management of research informatics capabilities across the Institute, carrying out collaborative projects with stakeholders, line manage informaticians, data scientists, web developers and programmers on a day-to-day basis to further the Research Informatics SRF and platform as well as the Institute’s research priorities.
Responsible AI - Data Science Manager - The Mom PRoject, Various USA
As a Responsible AI Data Science Manager, you’ll be highly experienced in building state of the art models to solve difficult business challenges and you’ll be growing your team leadership and mentoring skills. But you’ll also have at least two years’ experience looking at responsible aspects such as AI model Fairness, Transparency, Explainability, Robustness, Soundness and Privacy – preferably gained in a client-facing environment. You’ll be a key player helping to deliver outstanding work for our Responsible AI clients.
Executive Manager, National AI Centre - CSIRO, Sydney AU
As the Executive Manager (NAIC), your role is to lead and co-ordinate the operational and strategic execution of the National AI Centre objectives. The role closely partners with the Centre Director in the effective delivery of mission, outcomes, strategy, operational management and governance of the Centre. This senior role facilitates the strategic development of organisational capability and direction, is responsible for initiating and implementing organisational governance and continuous improvement, and has oversight of the human and financial resources. The Executive Manager (NAIC) will establish and coordinate the Centre’s activities, focusing on internal and external stakeholder orchestration to enable operational delivery of the Centre’s strategic mission and objectives.
Tech Lead Manager, Machine Learning Research, Reinforcement Learning - Nuro, Mountain View CA USA
Nuro is a robotics start-up whose mission is to accelerate the benefits of robotics for everyday life. You will be mainly responsible for leading a team to drive the technical progress of RL planner, defining long/medium/short term milestones, coordinating and allocating resources and people to work towards the milestones, understanding technical details and challenges to help unblock the team, helping and growing the team members, communicating and collaborating with other teams to define roadmaps to deploy the model onto our vehicle.
Associate Director Omics Data Science, Bioinformatics and AI-driven Precision Medicine - Sanofi, Cambridge MA USA or Frankfurt DE or Paris FR
We are seeking a Director of Omics Data Science specializing in Bioinformatics and AI-driven Precision Medicine to lead a team within the Omics Data Science (ODS) group. The successful candidate will report to the Senior Director of Omics data science group, will manage a team of AI-driven precision medicine scientists, and will work closely with all Precision Medicine groups at Sanofi R&D.
Director, Implementation and Special Products, Clinical Informatics - BC Provincial Health Services Agency, Vancouver BC CA
The Director, Implementation and Special Projects, Clinical Informatics is responsible for the delivery and successful implementation of all transformational clinical information systems projects and initiatives at PHSA. The role reports to the Chief Clinical Information Officer (CCIO), is a key member of the clinical informatics senior leadership team and leads the engagement, implementation and sustainment planning with the health authority executives, local stakeholders, IMITS, various implementation project teams, including Clinical & Systems Transformation (CST), and HA site implementation directors and transformation leaders.
Manager, Applied Science, Amazon Braket - Amazon, New York NY USA
As an Applied Scientist in the Amazon Braket team, you will develop advanced software solutions for construction, compilation, simulation, and optimization of quantum computing programs in the cloud. You will play a key role in shaping the development roadmap of the service, and evangelizing new features and capabilities. You will also have the opportunity to create white papers, write blogs, build demos and generate other reusable collateral that can be used by our customers.
Senior Manager - One U Data Science Hub - University of Utah, Salt Lake City UT USA
The Senior Vice President for Health Sciences Research Unit ( SVPHS Research Unit) and the Office of the Vice President for Research ( VPR ) are seeking a Senior Manager (Research Development Associate III ) to develop, organize, and oversee all administrative aspects of a new campus-wide strategic research initiative: the One U Data Science Program). The One U Data Science Program is designed to enhance research and infrastructure in data science through the creation of two cross-campus initiatives: the Data Science and Ethics of Technology ( DATASET ) Initiative and the Data Exploration and Learning for Precision Health Intelligence ( DELPHI ) Initiative.
Operations Manager, Data Team, Primary Care Health Sciences - University of Oxford, Oxford UK
We are seeking to employ an enthusiastic individual with experience in operations management, ideally in the area of healthcare data, medical statistics, epidemiology or a related discipline. The successful applicant will oversee projects through their whole lifetime, and will have excellent communication and problem solving skills. They will develop the capability and functioning of the teams and have line management responsibilities where required. Responsibilities will include proactive and inventive operational management of the Data Team; working with the Data Team to develop detailed data delivery plans for all studies and ensure their delivery and success; collaborate with the Chief Data Officer to support the management of the data, providing impact advice and carefully monitoring data quality and working with Data Team colleagues and investigators to develop, maintain and improve systems and procedures that will ensure data requests are clearly defined and the data extracts produced meet the requirements of the approved study protocol and statistical analysis plan.
Senior Lead Quantum Computing Engineer - Prudential, Newark NJ USA
Reporting to Global Technology’s Chief Architect, the Quantum Computing Senior Lead Software Engineer will evaluate, pilot, and evolve its approach to harnessing emerging Quantum Computing techniques, across its asset management and insurance capabilities. Responsibilities range from development of low-level Proof-of-concepts on existing quantum computing platforms under development in industry and academia, to more complex, cloud-based capabilities involving hybrid quantum-classical algorithms, run on quantum simulators and/or cloud platforms (e.g. AWS Braket). The ideal candidate is a full-stack developer with a DevOps mindset, with proficiency in both front-end and back-end development and has some background or experience in Quantum Computing.
Research IT Software Engineer Lead - University of Manchester, Manchester UK
This role combines the best of two worlds: the ability to run and shape the software development activity of a cutting-edge group of probabilistic and machine learning researchers at a world leading institution, while also allowing you to allowing you to help lead the Research Software Engineering (RSE) service at The University of Manchester. Half of the role requires you to demonstrate people, project and technical leadership with the other half requiring you to practice a high standard of research software engineering.