Research Director Operations
City of London, London / £60000 - £60000
INFO
£60000 - £60000
LOCATION
City of London, London
Permanent
RESEARCH DIRECTOR
UP TO £60,000
EC1V, LONDON (HYBRID)
THE COMPANY
Harnham is working with a boutique research agency that offers a range of research services to global clients. They are looking for a research and operations director.
THE ROLE
You will:
- Manage research projects in the operation process
- Manage vendors
- Design and review questionnaires, survey programming, project plans
- Oversee fieldwork
- Implement quality control measures to ensure data quality
- Assist the research team in interpreting data, report writing
- Manage a national and global research team
YOUR SKILLS AND EXPERIENCE
You will need to have:
- Proven experience in research project management.
- Experience programming international multi-market studies using Decipher
- Extensive experience with SPSS
- Experience with or interest in using Python, SQL or R
BENEFITS
You will get:
- Flexible working
- Travel opportunities
- Supportive and collaborative work environment
- Training and development
INTERVIEW PROCESS
The process looks like:
- 1st stage - Initial chat and CV run through
- 2nd stage - Task

SIMILAR
JOB RESULTS

What’s Ahead for 6G: What You Need to Know
+
The world of technology never ceases to amaze us while advancing every other year. And we’re on it again – the sixth-generation cellular network is already creating a buzz among tech industry leaders, governments, and headlines. Of course, 6G’s predecessor, 5G, is only at the initial stages of being rolled out in most parts of the world. So, why is the industry talking about 6G this fast, considering that 5G (the fastest wireless network to date) implementation is still new? This article explores just that.
6G is a cellular technology that could provide faster speeds and low latency wireless communications. It would use ultra-high frequencies to achieve this. 5G development saw the introduction of millimeter waves (MM), but 6G will further explore the use of waves with a wavelength less than a millimeter and frequencies of up to 1 THz compared to about 95 GHz used in 5G technology.
How Does 6G Differ from 5G?
Previously, we’ve talked about how 5G will transform smart cities, autonomous cars, decentralized networks (e.g., blockchain), and drones. With speeds of up to 1 Tbps and latency of less than a microsecond, 6G will enhance these applications in addition to revolutionizing communications, Virtual Reality (VR), and AI. Mobile edge computing (MEC) will also be much more seamless with 6G deployment. Another reason why 6G is everyone’s hype is its ability to send and receive frequencies at the same time without the need to split channels, as in 5G.
When to Expect a Functional 6G Wireless Network
The sixth-generation cellular technology is way away in years. We can expect the rollout for commercial use late this decade. Massive deployment may not happen until at least 2020. The infrastructure, electronics, and standards for 6G are yet to be defined or even invented. Nevertheless, various tech-savvy companies and government agencies have started research. Many of them are investing millions of dollars towards the same.
Who is on it?
Earlier in October 2020, a Washington-based group known as the Alliance for Telecommunications Industry Solutions formed a “Next G Alliance”. Companies such as AT&T, Facebook, T-Mobile, Qualcomm, US Inc., and South Korean tech giant Samsung Electronics are part of the alliance which aims to advance research and rollout of 6G.
Another name for the 6G development is Optipulse. According to the company, they are using a miniature chip, which is much faster at sending wireless data than 5G RF emitters. Optipulse has so far tested this technology and proven it to work up to 25 Gbps error-free.
The creator of massive MIMO, Tom Marzetta, currently works as the director of NYU Wireless. He is shaping the firm towards innovating the infrastructure needed for 6G. While acknowledging various design challenges, Tom is steering 6G research at NYU wireless. “We’re doing both experimental and theoretical 6G research.” He says that they’re working on the terahertz spectrum, which has a wavelength equal to one-tenth of that of a 5G millimeter wave.
Future for 6G
Remember that about a decade ago when B4G (Beyond 4G) was a common phrase? These were the initial stages of research on 5G. Today, you can now easily buy a 5G mobile phone, though it seemed mind-blowing then. We can view the B5G with the same lens in that we’re still at the early research work on 6G.
However, there are challenges ahead. Inventing semiconductors that process data at that frequency will prove challenging. Also, there are concerns about sub-millimeter waves. These include being tampered with or obstructed by water molecules in the atmosphere.
Can you imagine downloading 142 hours of Netflix movies in a matter of seconds? 6G has the potential to reach such unparalleled speeds.
At NextGen, we’re always up to date with all the emerging and developing industry standards. Our 50 years of experience gives us an edge in providing the telecom industry with top talents. You can get in touch with us today to learn more about our open jobs.

Weekly News Digest: 11th – 15th July 2022 | Harnham Recruitment post
+
This is Harnham’s weekly news digest, the place to come for a quick breakdown of the week’s top news stories from the world of Data & Analytics.
Tech To Freedom: Five habits of insanely productive software engineers
Software Engineering is a very special expertise, not to mention that it boasts some of the highest salaries around. Of course, as with all roles, years of experience can make a software engineer more efficient, but Tech for Freedom identify five tips for boosting your productivity, even if you’re just starting out. Here are just a couple: Learning by doing: Technology is evolving very quickly, so for a software engineer there is no time to rest on their laurels, they must be constantly learning. The speed of industry developments means that professionals don’t tend to have time to read hundreds of articles or take numerous courses in order to learn something new, instead they are likely to jump into the deep end and learn by doing.
Asking for help
It would be impossible for any one person to know everything. So, one of the essential survival skills for software developers is knowing how to ask for help.You may have ten years’ worth of Python programming under your belt, but now you need to develop something using a special module/tool/framework that you have never used before. The most efficient way to solve your problem is to employ help from someone who does have the experience in that tool. A good engineer knows that titles like ‘junior’ and ‘senior’ do not hold much weight, every engineer, no matter what title they have, has a unique knowledge and experience.Read further insights here.
Wealth Professional: Financial firms can't agree on how to address climate risk
While the risk to financial firms from climate change is considered a top priority, Bloomberg’s poll of 100 executives from financial services firm shows that there is still some way to go to address it.The survey revealed that while 85 per cent of firms have begun to assess the impact of climate risk, there is no consensus on how it should be embedded into risk management frameworks. Of these, 37 per cent are still in the early stages of planning how to incorporate climate risk into models and governance.When asked about the results, Zane Van Dusen, Head of Risk & Investment analytics products at Bloomberg, said: "…even those who say they have a robust model will be making significant changes over the next few years as our understanding and consensus around climate risk grows… More and better data will go a long way toward improving firms' ability to manage climate risk."Find out the key sticking points for the respondents here
The New Statesman: How data can help revive our high streets in the age of online shopping
High streets and town centres across the UK have undergone substantial transformations in recent years. Falling footfall, lost revenues and mounting fixed business costs have had a negative impact on traditional ‘bricks and mortar’ retailers, triggering a large wave of insolvencies across the UK.At the University of Liverpool, researchers have been utilising data and advanced geospatial algorithms to provide various retail-related research outputs and data products. The work is essential for the systematic monitoring of the performance of UK retail centres, giving the team a better understanding about retail centre exposure to current societal and market driving forces. Which will then allow them to track and predict the evolutionary trajectories of any given high street. As a result, in Liverpool they have estimated two types of retail catchments: drive times and walking distances, and then created profiles of those catchments based on numerous measures including deprivation, exposure to internet sales and geodemographics. It is hoped that these tools will aid policymakers, at both a local and national level, in making the decisions that will help revive flagging high streets and level up communities across the UK.Read more here.
Technology Works: AI Reliably Predicts Structure of RNA Molecules
The three-dimensional structure of biomolecules is crucial to their function. Therefore, researchers are interested in knowing more about their spatial structure, and with the help of artificial intelligence (AI), bioinformaticians can already reliably predict the three-dimensional structure of a protein from its amino acid sequence.But for RNA molecules (ribonucleic acid) this technology is still very underdeveloped. Researchers at Ruhr-Universität Bochum have found a way to use AI to reliably predict the structure of certain RNA molecules from their nucleotide sequence.“Identifying these self-similarities in an RNA sequence is like a mathematical puzzle”, explained researcher Vivian Brandenburg. The biophysical model for this puzzle cannot consider the cellular environment of the RNA – in other words it cannot process everything around the RNA.This is where AI comes into the mix. The AI can learn subtle patterns from the cellular environment based on known structures. It could then incorporate these findings into its structural predictions. But for this learning process, the AI needs sufficient training data – and this is lacking.To solve the problem of missing training data, the team used a trick. By working with known RNA structural motifs, researchers used a ‘reverse gear’ to allow them to generate almost any number of nucleotide sequences from the energy models of these structures, that would fold into these spatial structures. With the help of this ‘inverse folding’ the researchers generated sequences and structures with which they could train the AI.Find out if the process worked here.We've loved seeing all the news from Data & Analytics in the past week, it’s a market full of exciting and dynamic opportunities.
To learn more about our work in this space, get in touch with us at info@harnham.com.

Unicorn Operations: An Intro to MLOps | Harnham US Recruitment post
+
If the wheels of technology seem to be spinning faster than ever before, they are. But instead of separate circles, it’s more like the magic rings trick in which the magician links them all together to perform. In layman’s terms, that would be Machine Learning (ML) Ops. Rather than the unicorn employee – everything a company desires in an individual rolled into one – this unicorn practice employs and is built upon three technologies that are used to operationalize businesses to keep those wheels turning. If DevOps was the sheriff of 2021, then ML Ops is the new sheriff in town.What is Machine Learning Operations (ML Ops)?It seems self-explanatory as a combination of machine learning and operations, but the technology behind it delves a bit deeper. It is a collaboration of engineering practices designed by Data Scientists, Operations, and Data Engineers using machine learning, model development, deployment, and data management to wrangle the enormous amounts of Data businesses now must navigate to gain actionable insights for their business.But where ML Ops shines is in its deployment capabilities. After all, once the business makes their decision based on actionable insights from the Data, then the next step is to implement it and put it into play. It is the de facto operations product lifecycle, the wheel that keeps the business moving forward. Ultimately, its goal is to automate the Machine Learning lifecycle from modelling to implementation to retraining once new Data gets into the mix. Because there will always be new Data and the world is not one-size-fits-all.4 ML Ops Pipeline StepsOne of the elements of MLOps lifecycle systems automation is that of continuous learning and retraining. Think of it like this. If you know the movie War Games, J.O.S.H.U.A knows how to play the games, but he doesn’t understand them; the whys and the hows. When it comes to the end of the movie and the game (spoiler alert), he has ‘learned’ human behavior and must make the decision to stop the game. Granted, he was an 80s realized version of early Artificial Intelligence, but ultimately, he was a machine who learned. Machine Learning can expand its knowledge base to integrate Data and model validation, that is part of the draw of ML Ops. Not only can Data and Operations professionals address complexities of deployments but they can create predefined steps to emulate and consider factors such as company size, project, and Machine Learning capabilities and complexities.Data Ingestion – Takes Data in and determines through which pipeline it should continue. What Data will be used in training? Which for validation sets? And which should be combined into one multi-streamed dataset.Data Validation – Once the Data has been taken in, the role of Data validation is to see if there are any anomalies. This focus not only lets you know how your Data has changed over time.Data Preparation – Data is cleaned and prepared to fit into the right format so your model can follow it. At this stage, also, Data may be combined with domain knowledge featuring engineering to build new features and solutions.Model Training – At the core of the pipeline is Model training which uses ingested Data to help launch trainings in sequence or parallel to determine what might be needed for a production model as well. There are three ways to launch such models and they include:Embedded in an appOn and IoT deviceIn a specialized dedicated web service using remote procedure call (RP), for example.Where Do We Go From Here?MLOps isn’t the only technology predicated on learning and driving an automated pipeline that will free up Data professionals to focus on the bigger picture. Though built on DevOps principles and in collaboration with a long unsiloed team of both technical and non-technical professionals, ML Ops has grown in popularity over the years and shows no sign of slowing down any time soon. As Open-Source networks emerge and ML Ops teams get created to help navigate this new technology, it will only continue to grow and reach new heights. Businesses who understand and develop these strategies now will have their foot firmly in the future and head and shoulders above their competition.If you’re interested in Digital Analytics, Machine Learning, or Robotics just to name a few, Harnham may have a role for you. Check out our latest MLOps jobs or contact one of our expert consultants to learn more. For our West Coast Team, contact us at (415) 614 – 4999 or send an email to sanfraninfo@harnham.com. For our Arizona Team, contact us at (602) 562 7011 or send an email to phoenixinfo@harnham.com. For our Mid-West and East Coast teams contact us at (212) 796-6070 or send an email to newyorkinfo@harnham.com.

CAN’T FIND THE RIGHT OPPORTUNITY?
STILL LOOKING?
If you can’t see what you’re looking for right now, send us your CV anyway – we’re always getting fresh new roles through the door.