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Implementation of the Alberta Plan for AI Research - continual learning with meta-learned step-sizes

Project description

Alberta Framework

CI PyPI License Python 3.13+

A JAX-based research framework implementing components of The Alberta Plan for AI Research in the pursuit of building the foundations of Continual AI.

"The agents are complex only because they interact with a complex world... their initial design is as simple, general, and scalable as possible." — Sutton et al., 2022

Overview

The Alberta Framework provides foundational components for continual reinforcement learning research. Built on JAX for hardware acceleration, the framework emphasizes temporal uniformity every component updates at every time step, with no special training phases or batch processing.

Project Context

This framework is developed as part of my D.Eng. work focusing on the foundations of Continual AI. For more background and context see:

Roadmap

Depending on my research trajectory I may or may not implement components required for the plan. The current focus of this framework is the Step 1 Baseline Study, investigating the interaction between adaptive optimizers and online normalization.

Step Focus Status
1 Meta-learned step-sizes (IDBD, Autostep) Complete
2 Feature generation and testing Planned
3 GVF predictions, Horde architecture Planned
4 Actor-critic with eligibility traces Planned
5-6 Off-policy learning, average reward Planned
7-12 Hierarchical, multi-agent, world models Future

Installation

pip install alberta-framework

# With optional dependencies
pip install alberta-framework[gymnasium]  # RL environment support
pip install alberta-framework[dev]        # Development (pytest, ruff)

Requirements: Python >= 3.13, JAX >= 0.4, NumPy >= 2.0

Quick Start

import jax.random as jr
from alberta_framework import LinearLearner, IDBD, RandomWalkStream, run_learning_loop

# Non-stationary stream where target weights drift over time
stream = RandomWalkStream(feature_dim=10, drift_rate=0.001)

# Learner with IDBD meta-learned step-sizes
learner = LinearLearner(optimizer=IDBD())

# JIT-compiled training via jax.lax.scan
state, metrics = run_learning_loop(learner, stream, num_steps=10000, key=jr.key(42))

Core Components

Optimizers

Supervised Learning:

  • LMS: Fixed step-size baseline
  • IDBD: Per-weight adaptive step-sizes via gradient correlation (Sutton, 1992)
  • Autostep: Tuning-free adaptation with gradient normalization (Mahmood et al., 2012)

TD Learning:

  • TDIDBD: TD learning with per-weight adaptive step-sizes and eligibility traces (Kearney et al., 2019)
  • AutoTDIDBD: TD learning with AutoStep-style normalization for improved stability

Streams

Non-stationary experience generators implementing the ScanStream protocol:

  • RandomWalkStream: Gradual target drift
  • AbruptChangeStream: Sudden target switches
  • PeriodicChangeStream: Sinusoidal oscillation
  • DynamicScaleShiftStream: Time-varying feature scales

TD Learning

For temporal-difference learning with value function approximation:

from alberta_framework import TDLinearLearner, TDIDBD, run_td_learning_loop

learner = TDLinearLearner(optimizer=TDIDBD(trace_decay=0.9))
state, metrics = run_td_learning_loop(learner, td_stream, num_steps=10000, key=jr.key(42))

Gymnasium Integration

from alberta_framework.streams.gymnasium import collect_trajectory, learn_from_trajectory, PredictionMode
import gymnasium as gym

env = gym.make("CartPole-v1")
observations, targets = collect_trajectory(env, policy, num_steps=10000, mode=PredictionMode.REWARD)
state, metrics = learn_from_trajectory(learner, observations, targets)

Publication Tools

Multi-seed experiments with statistical analysis and publication-ready outputs:

from alberta_framework.utils import ExperimentConfig, run_multi_seed_experiment, pairwise_comparisons

results = run_multi_seed_experiment(configs, seeds=30, parallel=True)
significance = pairwise_comparisons(results, test="ttest", correction="bonferroni")

Documentation

Full documentation available at j-klawson.github.io/alberta-framework or build locally:

pip install alberta-framework[docs]
mkdocs serve  # http://localhost:8000

Contributing

Contributions are welcome, particularly for upcoming roadmap steps. Please ensure tests pass and follow the existing code style.

pytest tests/ -v

Citation

If you use this framework in your research, please cite:

@software{alberta_framework,
  title = {Alberta Framework: A JAX Implementation of Alberta Plan components},
  author = {Lawson, Keith},
  year = {2026},
  url = {https://github.com/j-klawson/alberta-framework}
}

Key References

@article{sutton2022alberta,
  title = {The Alberta Plan for AI Research},
  author = {Sutton, Richard S. and Bowling, Michael and Pilarski, Patrick M.},
  year = {2022},
  eprint = {2208.11173},
  archivePrefix = {arXiv}
}

@inproceedings{sutton1992idbd,
  title = {Adapting Bias by Gradient Descent: An Incremental Version of Delta-Bar-Delta},
  author = {Sutton, Richard S.},
  booktitle = {Proceedings of the AAAI Conference on Artificial Intelligence},
  year = {1992}
}

@inproceedings{mahmood2012autostep,
  title = {Tuning-free Step-size Adaptation},
  author = {Mahmood, A. Rupam and Sutton, Richard S. and Degris, Thomas and Pilarski, Patrick M.},
  booktitle = {IEEE International Conference on Acoustics, Speech and Signal Processing},
  year = {2012}
}

@inproceedings{kearney2019tidbd,
  title = {Learning Feature Relevance Through Step Size Adaptation in Temporal-Difference Learning},
  author = {Kearney, Alex and Veeriah, Vivek and Travnik, Jaden and Sutton, Richard S. and Pilarski, Patrick M.},
  booktitle = {International Conference on Machine Learning},
  year = {2019}
}

License

Apache License 2.0

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