招聘
Problem statement
As AI agents handle increasingly complex, long-running development tasks, a critical challenge has emerged: managing limited context windows across multiple agent sessions. In continuous development scenarios—where agents work on the same codebase over days or weeks—agents must maintain coherence, recall previous decisions, and avoid redundant work within strict token constraints.
Current approaches often focus on isolated sessions or rely on pre-computed retrieval (RAG). However, optimal performance requires thoughtful strategies across the entire agent lifecycle: pre-session preparation, intra-session dynamic retrieval, and post-session persistence. At Bosch Lund, where we work extensively with multi-agent systems, understanding which context management strategies provide the best balance of continuity, performance, and efficiency is crucial for production-ready agentic systems.
Proposed solution
This thesis investigates context management techniques across all three lifecycle stages in continuous development scenarios. The goal is to evaluate and compare different approaches, allowing flexibility and discovery throughout the research.
Pre-session strategies: Initialization approaches (project docs, previous summaries), selective vs. comprehensive loading, preparation overhead vs. effectiveness trade-offs.
Intra-session strategies: Just-in-time retrieval (dynamic file loading, targeted fetching), context refresh mechanisms, navigation and discovery during execution.
Post-session strategies: Summary generation (compression, selective preservation), memory extraction and persistence, formats enabling future continuity.
Implementation and evaluation:
- Design and implement 2-3 strategies at each lifecycle stage
- Benchmark on realistic multi-session development tasks
- Measure continuity, quality, token efficiency, and coherence
- Analyze which combinations work best under different conditions
Possible extensions (if time permits):
- Investigate sub-agent architectures for parallel context handling
- Explore hybrid strategies combining pre-computed and just-in-time approaches
- Analyze how findings generalize across different types of agentic tasks
You will shape the research direction based on your discoveries and interests during the project.
In order to be successful in the project:
- Master student(s) in Computer Science, Software Engineering, AI/Machine Learning, or Data Science
- Passionate about Generative AI, large language models (LLMs) and surrounding technologies
- Experienced with Python programming and comfortable working with APIs
- Interested in software engineering practices and agent-based systems
- Analytical with strong problem-solving skills and an interest in empirical research
- Self-driven and able to work independently while collaborating with the team
- Curious about emerging AI technologies and eager to contribute to cutting-edge research
Supervisors: Samuel Peltomaa, Staffan Lindgren
Scope: We encourage to have a team of 2 master thesis students working on the thesis.
At Bosch, we shape the future by inventing high-quality technologies and services that spark enthusiasm and enrich people’s lives. Our promise to our associates is rock-solid: we grow together, we enjoy our work, and we inspire each other. Join in and feel the difference.
Bosch R&D Center Lund stands for modern development in cutting edge technology in the areas of connectivity, security, mobility solutions and AI. We are growing rapidly and looking for people to join us on our mission to become the Bosch Group’s 1st address for secure connected mobility solutions. We are working on a range of interesting projects, with a particular focus on software development for the automotive industry, electrical bicycles and Internet of Things.
Total Views
0
Apply Clicks
0
Mock Applicants
0
Scraps
0
Similar Jobs

Engineering Services Practitioner
Accenture ·

Engineering Services Practitioner
Accenture ·

Project Engineering Professional
Leidos · 2 Locations

Asset & Wealth Management - Marcus Feature Engineering - Vice President - Hyderabad
Goldman Sachs · Hyderabad, Telangana, India

Engineering Services Practitioner
Accenture ·
About Bosch

Bosch
PublicRobert Bosch GmbH is a multinational engineering and technology company that develops automotive components, industrial technology, consumer goods, and energy solutions. The company operates across multiple sectors including mobility solutions, industrial technology, consumer goods, and building technologies.
10,001+
Employees
Gerlingen
Headquarters
Reviews
3.7
10 reviews
Work Life Balance
3.2
Compensation
3.8
Culture
4.1
Career
4.3
Management
2.9
72%
Recommend to a Friend
Pros
Great people and team environment
Career development and learning opportunities
Good compensation and benefits
Cons
Poor work-life balance expectations
Management issues and favoritism
Lack of clear policies
Salary Ranges
711 data points
Senior/L5
Senior/L5 · Business Development Manager - Press
1 reports
$175,455
total / year
Base
$152,570
Stock
-
Bonus
-
$175,455
$175,455
Interview Experience
7 interviews
Difficulty
2.4
/ 5
Duration
14-28 weeks
Offer Rate
71%
Experience
Positive 14%
Neutral 86%
Negative 0%
Interview Process
1
Application Review
2
Recruiter Screen
3
Technical Interview Round 1
4
Technical Interview Round 2
5
HR Round/Salary Negotiation
6
Offer Extended
Common Questions
Technical Knowledge
Coding/Algorithm
Behavioral/STAR
Past Experience
Project-based Assessment
News & Buzz
Bosch Forecasts Tough 2026, Postpones Margin Goal Amid Tariff and Price Pressure - News and Statistics - IndexBox
Source: IndexBox
News
·
5w ago
Germany’s industrial engine sputters as Bosch axes 20,000 jobs - politico.eu
Source: politico.eu
News
·
5w ago
Zealandia expands distribution with Van Den Bosch - Pet Food Processing
Source: Pet Food Processing
News
·
5w ago
Bosch Profits Plummet: What Are the Company's Biggest Challenges? - marketscreener.com
Source: marketscreener.com
News
·
5w ago