At a Glance
- Tasks: Lead complex data science and AI projects, ensuring timely delivery and stakeholder engagement.
- Company: Join Inference Group, a dynamic tech startup revolutionising data and AI for businesses.
- Benefits: Enjoy training opportunities, access to cutting-edge technology, and a fun, innovative work culture.
- Why this job: Make a real impact in a fast-growing consultancy while collaborating with industry experts.
- Qualifications: 7+ years in project management, with strong data science and cloud expertise required.
- Other info: Ideal for proactive individuals eager to shape the future of technology and consulting.
The predicted salary is between 48000 - 84000 £ per year.
Who are Inference Group? Are you ready to be a part of a company that’s redefining the future of data and AI? Welcome to Inference Group, where we’re not just a tech startup – we’re a team of passionate innovators dedicated to empowering businesses through the transformative power of data, machine learning, and AI. At Inference Group, we’re on a mission to help businesses unlock their true potential and drive sustainable growth. As we rapidly expand, we’re looking for like-minded, creative technical experts who want to make a real impact. Here, you’ll work alongside leading experts in data, AI, and technology, guiding clients to harness the full potential of their data.
We believe in making the most out of our journey. If you’re ambitious, innovative, and eager to contribute to the early stages of a dynamic consultancy, we’d love to have you on board. Together, we’ll explore the limitless opportunities of data and AI, driving excellence and having a lot of fun along the way. Join us and be a part of something extraordinary.
We are seeking an experienced Senior Technical Project Manager to lead the delivery of complex data science, machine learning, and analytics projects for our clients. In this role, you will orchestrate cross-functional teams to build and deploy technical solutions at scale. You will be the on point person ensuring projects are delivered on time and within scope, all while managing technical risks and keeping stakeholders (both internal and client-side) fully engaged. This is a high-impact, client-facing role suited for a candidate with a consulting mindset who can balance technical depth with business acumen. If you have a passion for translating innovative AI ideas into real-world solutions and excel at guiding teams through delivery complexity, we want to hear from you.
Your key responsibilities will be:
- Lead end-to-end project delivery: Plan, execute, and oversee data and AI projects from inception through production deployment. Ensure project goals, scope, and timelines are clearly defined and met.
- Coordinate cross-functional teams: Manage and align the efforts of data scientists, ML engineers, data engineers, cloud architects, and business analysts. Foster teamwork and clear communication among diverse technical and non-technical members to achieve shared objectives.
- Client and stakeholder management: Serve as the primary liaison for client stakeholders, building trust and managing expectations. Translate business requirements into technical tasks and ensure the delivered solution addresses the client’s needs.
- Leverage cloud and MLOps best practices: Guide teams in architecting and implementing solutions on GCP (and other cloud platforms as needed), utilizing services and tools (e.g. BigQuery, Vertex AI, Cloud Storage) to ensure scalability and reliability. Champion MLOps practices such as CI/CD pipelines for ML, automated testing, and model monitoring to enable robust, sustainable deployments.
- Risk management and problem-solving: Proactively identify and mitigate technical risks and blockers throughout the project lifecycle. For example, anticipate challenges like data quality issues, model performance shortfalls, or integration hurdles with legacy systems, and develop contingency plans to address them.
- Agile project governance: Apply appropriate project management methodologies (Agile/Scrum or hybrid approaches) to track progress and adapt to changes. Run sprint planning, stand-ups, and retrospectives when applicable, and maintain project tracking tools (e.g. JIRA or similar) for transparency.
- Ensure delivery excellence: Uphold high standards for project deliverables and outcomes. This includes reviewing work to ensure it meets quality expectations, aligns with the solution architecture, and complies with any regulatory or security requirements. Drive continuous improvement by capturing lessons learned and best practices for future projects.
- Mentorship and leadership: Provide guidance and mentorship to team members. Help develop junior project managers or coordinators, share knowledge of AI project delivery, and contribute to a culture of learning and innovation within Inference Group.
- Support growth and innovation: Work closely with account directors and the sales team in scoping new engagements, contributing to proposals, and identifying opportunities to expand our work with existing clients. Bring a consulting perspective to suggest innovative solutions and ensure client satisfaction, potentially leading to repeat business.
This role provides a unique opportunity for a proactive and driven individual to take their consulting career to the next level. We are looking for applicants who have:
- Proven Project Management Experience: 7+ years of experience managing technology projects (with at least 3+ years specifically leading data science, machine learning, or advanced analytics initiatives). Demonstrated success in delivering complex projects on schedule and within budget.
- Technical Background in Data/AI: Strong understanding of the data science lifecycle and machine learning concepts. While you don’t need to be an ML developer, you should be comfortable discussing model training, data pipelines, and deployment workflows with technical experts.
- Cloud Expertise: Hands-on experience delivering projects on cloud platforms, such as Google Cloud Platform. Familiarity with GCP’s data and ML ecosystem (BigQuery, Dataflow, Vertex AI, etc.) is a big plus. Experience with other cloud platforms (AWS/Azure) and hybrid cloud environments is beneficial.
- MLOps and Data Engineering Knowledge: Working knowledge of MLOps practices and tools – e.g., version control for data/models, CI/CD for machine learning, containerization (Docker, Kubernetes), and pipeline orchestration. Understanding of data engineering principles (ETL/ELT processes, data warehousing) to oversee data pipeline development.
- Leadership and Team Management: Excellent leadership skills with a track record of leading cross-functional teams of 5-15+ members. Ability to motivate team members, resolve conflicts, and make informed decisions to keep the project moving forward.
- Agile and Project Process Skills: Proficiency in project management methodologies (Scrum/Agile, Kanban, and traditional project management as needed). Capable of tailoring your approach to suit project and client context. Certification such as PMP, PRINCE2, or Agile/Scrum Master is a plus, but proven skills are most important.
- Stakeholder Engagement: Exceptional communication and interpersonal skills. Able to interface effectively with both technical teams and C-level/business stakeholders. Experience in a client-facing role or consulting environment is highly valued – you can manage client expectations, conduct presentations or demos, and ensure stakeholder buy-in at various project stages.
- Problem-Solving and Adaptability: Adept at analytical thinking and creative problem-solving. Comfortable dealing with ambiguity and rapidly changing requirements. You should be able to prioritize tasks, manage multiple workstreams, and adjust plans when new challenges arise.
- Educational Background: Bachelor’s or Master’s degree in a relevant field (Computer Science, Data Science, Engineering, Information Systems, or similar). Equivalent work experience in managing technical projects will also be considered. Continuous learning (through courses, certifications, staying up-to-date with industry trends) is expected.
We are looking for dedicated people who are both passionate about project delivery and technology while having the empathy to succeed in client consulting.
Preferred Qualifications:
- Consulting Experience: Prior experience in a consulting firm or managing projects for external clients. Understanding of the dynamics of consulting engagements, including scope management and delivering under defined contracts/SoWs.
- Advanced Cloud & Data Certs: Certifications such as Google Professional Cloud Architect or Machine Learning Engineer, or similar certifications on AWS/Azure, demonstrating depth of cloud knowledge. Project management certifications (PMP, PMI-ACP, etc.) are nice to have as well.
- Domain Knowledge: Experience with data privacy, governance, and compliance aspects in AI projects (e.g., handling sensitive data, model bias/fairness considerations). Any domain-specific expertise (e.g., in retail, finance, supply chain analytics) that can help contextualize AI solutions for clients is a plus.
- Tooling and Tech: Familiarity with tools and platforms commonly used in data & AI projects, such as: version control (Git), collaboration tools (Confluence, Slack), ML lifecycle tools (MLflow, Kubeflow), and DevOps infrastructure (CI/CD pipelines, Terraform for infrastructure-as-code on cloud).
- Big Data & Analytics: Experience with big data technologies (Spark, Hadoop) or real-time data streaming (Kafka) in the context of analytics projects. This demonstrates ability to manage projects dealing with large-scale data and high-throughput systems.
- Entrepreneurial Mindset: A proactive, self-starter attitude that fits a scale-up culture. Willingness to take ownership beyond the job description, contribute ideas to improve our services, and adapt to the evolving needs of a growing company.
We are a young small company, growing quickly and are looking to hire people at this stage who will be our future leaders. We have access to the latest technology, and will provide training in these and certifications to help you grow, this is a rapidly changing environment and we want our clients to know that we have the most up to date skills and experience to help them deliver. If you like our mission, if you support our values, we encourage you to apply.
Senior Technical Project Manager employer: Inference Group
Contact Detail:
Inference Group Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Senior Technical Project Manager
✨Tip Number 1
Familiarise yourself with the latest trends in data science and AI. Being able to discuss current technologies and methodologies will show your passion and expertise during interviews, making you a more attractive candidate.
✨Tip Number 2
Network with professionals in the field of project management and AI. Attend industry events or join online forums to connect with others who can provide insights or even referrals to opportunities at Inference Group.
✨Tip Number 3
Prepare to demonstrate your leadership skills through real-life examples. Be ready to share specific instances where you've successfully managed cross-functional teams and delivered complex projects on time and within budget.
✨Tip Number 4
Research Inference Group's recent projects and case studies. Understanding their work will allow you to tailor your discussions and show how your experience aligns with their mission and values during the interview process.
We think you need these skills to ace Senior Technical Project Manager
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in project management, particularly in data science and machine learning. Use specific examples that demonstrate your ability to lead complex projects and manage cross-functional teams.
Craft a Compelling Cover Letter: In your cover letter, express your passion for data and AI, and explain why you want to work at Inference Group. Mention how your skills align with their mission and values, and provide examples of how you've successfully managed similar projects in the past.
Showcase Your Technical Skills: Include any relevant technical skills or certifications related to cloud platforms, MLOps, and data engineering in your application. Highlight your familiarity with tools like GCP, BigQuery, and CI/CD practices, as these are crucial for the role.
Demonstrate Leadership Experience: Provide examples of your leadership experience in managing teams and client relationships. Discuss how you've motivated team members and resolved conflicts, as well as your approach to stakeholder engagement and communication.
How to prepare for a job interview at Inference Group
✨Showcase Your Project Management Experience
Be prepared to discuss your previous project management roles in detail. Highlight specific projects where you successfully led cross-functional teams, focusing on your ability to deliver complex data science and AI initiatives on time and within budget.
✨Demonstrate Technical Knowledge
Brush up on your understanding of the data science lifecycle and machine learning concepts. Be ready to engage in technical discussions about model training, data pipelines, and deployment workflows, as this will show your capability to communicate effectively with technical experts.
✨Emphasise Stakeholder Management Skills
Prepare examples of how you've built trust and managed expectations with clients and stakeholders in past roles. This is crucial for a client-facing position, so be ready to discuss how you translate business requirements into technical tasks.
✨Familiarise Yourself with Agile Methodologies
Since the role involves applying Agile project governance, make sure you can discuss your experience with Agile methodologies like Scrum or Kanban. Be ready to explain how you've adapted your approach to suit different project contexts and client needs.