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Python client for Synthera AI API

Project description

Synthera AI SDK

A Python SDK for accessing the Synthera AI API.

Installation

The package is compatible with Python 3.9-3.13.

pip install synthera

Changelog

0.2.10

Added

  • macro view support in views: condition simulations on GDP, CPI, and UNRATE paths using relative or absolute targets per curve and date

Changed

  • Increased default Client timeout to 90 seconds to accommodate the additional latency introduced by view-conditioned simulations.
  • Requests that time out are no longer retried. Previously, a timeout would trigger up to 5 retry attempts (with a 2-second wait between each). Timeouts now immediately raise a SyntheraClientError.
  • Renamed country to curve in SimulateResults methods: get_curve_yc_samples, get_curve_sample_at_t, plot_curve_sample_at_time, plot_curve_all_samples_at_time, plot_curve_sample_yield_curve_over_time.

0.2.9

Added

  • Request views parameter: optional yield-view constraints (point, range, min, max per curve/maturity) to filter scenarios by change in bps at end of horizon
  • Response metadata no_samples_returned and views_applied when views are used
  • SSL options on SyntheraClient: verify_ssl (default True) and ca_bundle (optional path). Environment variables SYNTHERA_API_VERIFY_SSL and SYNTHERA_API_CA_BUNDLE to override. Supports corporate proxies and custom CA bundles.

Changed

  • Model and simulate response metadata: tenors renamed to maturities.

0.2.8

Changed

  • Response data format: compressed feather & base64

0.2.7

Added

  • Request fallback_on_missing_date parameter
  • Request conditional_vol_factor parameter
  • version to Client and request headers

Changed

  • Request no_of_days parameter to no_days
  • Request no_of_samples parameter to no_samples
  • Model metadata simulation_steps to max_simulate_days
  • Model metadata conditional_steps to conditional_days
  • FixedIncome model_labels to get_model_labels
  • FixedIncome model_metadata to get_model_metadata
  • FixedIncome simulation_past_date to simulate
  • FixedIncome SimulationPastDateRestuls to SimulateResults

API Key

You are required to use an API key to access the Synthera AI API.

For ease of use, set as an environment variable: SYNTHERA_API_KEY:

export SYNTHERA_API_KEY=<api_key>

Or you can pass directly to the client.

SSL / TLS

SSL verification is configurable for environments (e.g. corporate proxies or custom CA bundles).

Constructor options:

  • verify_ssl — Enable or disable server certificate verification (default: True).
  • ca_bundle — Path to a CA bundle file for verification (optional). When set, this path is used instead of the default system trust store.

Environment variables (overridden by explicit constructor args):

  • SYNTHERA_API_VERIFY_SSL — Set to false, 0, or no (case-insensitive) to disable verification; any other value enables it.
  • SYNTHERA_API_CA_BUNDLE — Path to your CA bundle file (e.g. /path/to/ca-bundle.pem).

Example:

# Default: verify with system CA bundle
client = SyntheraClient(api_key="<api_key>")

# Disable verification (e.g. for testing)
client = SyntheraClient(api_key="<api_key>", verify_ssl=False)

# Use a custom CA bundle (e.g. for corporate proxies)
client = SyntheraClient(
    api_key="<api_key>",
    verify_ssl=True,
    ca_bundle="/path/to/your/ca-bundle.pem",
)

Or via environment:

export SYNTHERA_API_VERIFY_SSL=false
export SYNTHERA_API_CA_BUNDLE=/path/to/ca-bundle.pem

Getting Started

Import the Synthera client:

from synthera import SyntheraClient

Create a client:

client = SyntheraClient()

Show client version

client.version
# Output: 0.2.8

Check the connection works:

client.healthy()
# Output: True

Note: the health endpoint is open; the API key is not verified.

For more advanced connection options, pass arguments to the client:

SyntheraClient(
    api_key="<api_key>",
    host="<host>",
    port=<port>,
    timeout_secs=<timeout>, # default: 90 seconds
    verify_ssl=True,   # default; set False to disable SSL verification
    ca_bundle=None,    # optional path to CA bundle file
)
# Output: <SyntheraClient>

Fixed Income

To run Fixed Income Yield Curve simulation.

View Available Models

View the model labels:

client.fixed_income.get_model_labels()
# Example output: ['YieldGAN-Augur-15days-v0.1-Q42019', 'YieldGAN-Augur-15days-v0.1-Q42024']
Name Description
YieldGAN Model name
Augur Dataset used for training & inference
15days Maximum simulation days
v0.1-Q42019 Version (including training end period)

View Model Metadata

View the metadata for a model label:

client.fixed_income.get_model_metadata(model_label="YieldGAN-Augur-15days-v0.1-Q42024")
# Example output: ModelMetadata(model_label='YieldGAN-Augur-15days-v0.1-Q42024', dataset='Augur', universe='g3_par_curves', curve_labels=['USA', 'GBR', 'DEU'], start_date_training='2000-01-01', end_date_training='2025-01-01', max_simulate_days=15, conditional_days=15, maturities=[0.5, 1.0, 1.5, 2.0, 2.5, 3.0, 3.5, 4.0, 4.5, 5.0, 6.0, 7.0, 8.0, 9.0, 10.0, 12.0, 14.0, 16.0, 18.0, 20.0, 25.0, 30.0])
Name Description
model_label Unique identifier for the model
dataset Dataset model is trained on (e.g. Augur Labs)
universe Data universe used for training (e.g., g3_par_curves)
curve_labels List of yield curve identifiers included in the model
start_date_training Start date of the training data period (YYYY-MM-DD) (inclusive)
end_date_training End date of the training data period (YYYY-MM-DD) (exclusive)
max_simulate_days Maximum number of forward simulation days
conditional_days Number of conditional simulation days
maturities List of maturities (in years) for which yields are generated

Simulation

Prepare input parameters.

Parameter Type Description Values
model_label string Version of the model to use Valid model label: "YieldGAN-<dataset>-<max simulation days>-v<version>"
curve_labels list[string] List of yield curves labels to simulate, using ISO 3166-1 alpha-3 country codes List of curve names (e.g., ["USA", "GBR", "DEU"])
no_days integer Number of days to simulate forward from the reference date > 0 (e.g., 3, 30, 60, 120)
no_samples integer Number of paths to simulate > 0 (e.g., 100, 1024, 5000)
reference_date string Reference date for the generation (in the past) YYYY-MM-DD format
fallback_on_missing_date boolean Whether to fallback to an available date in the dataset true or false
conditional_vol_factor float Conditional volatility factor e.g. 0.1, 1.0, 10.0, 100
views object (optional) Optional constraints for scenarios yields: dict of curve_maturity (e.g. "USA_10.0Y") to yield view (point / range / min / max); macro: optional macro factor views (GDP / CPI / UNRATE) per curve and date

For example:

params = {
    "model_label": "YieldGAN-Augur-10days-v0.1-Q42024",
    "curve_labels": ["USA", "GBR"],
    "no_days": 15,
    "no_samples": 100,
    "reference_date": "2010-01-01",
    "fallback_on_missing_date": True,
    "conditional_vol_factor": 1.0,
}

With optional views to filter scenarios by yield change (in basis points) at the end of the simulation horizon:

params = {
    "model_label": "YieldGAN-Augur-10days-v0.1-Q42024",
    "curve_labels": ["USA", "GBR", "DEU"],
    "no_days": 30,
    "no_samples": 1000,
    "reference_date": "2010-01-01",
    "fallback_on_missing_date": True,
    "views": {
        "yields": {
            "USA_10.0Y": {"type": "range", "min_bp": 20, "max_bp": 25},
            "DEU_2.0Y": {"type": "point", "value_bp": 10, "tolerance_bp": 2},
        },
        "macro": None,
    },
}
# When views are applied, result.ndarray.shape[0] may be less than no_samples;
# use results.metadata["no_samples_returned"] for the actual count.

With optional macro views to condition simulations on GDP, CPI, and UNRATE paths:

params = {
    "model_label": "YieldGAN-Augur-10days-v0.1-Q42024",
    "curve_labels": ["USA", "GBR", "DEU"],
    "no_days": 15,
    "no_samples": 1000,
    "reference_date": "2010-01-01",
    "views": {
        "macro": {
            "GDP": {
                # Relative: USA GDP 10 bp above its conditional value on 2010-01-05
                "USA": [{"date": "2010-01-05", "type": "delta_bp", "value": 10}],
                # Absolute: DEU GDP pinned to a specific level on 2010-01-10
                "DEU": [{"date": "2010-01-10", "type": "target_amount", "value": 3_000_000_000_000.0}],
            },
            "CPI": {
                # Relative: USA CPI index +1.5 points above conditional on 2010-01-05
                "USA": [{"date": "2010-01-05", "type": "delta_ip", "value": 1.5}],
                # Absolute: GBR CPI pinned to a specific index level
                "GBR": [{"date": "2010-01-05", "type": "target_ip", "value": 115.0}],
            },
            "UNRATE": {
                # Relative: USA unemployment rate -0.5 pp below conditional
                "USA": [{"date": "2010-01-05", "type": "delta_pp", "value": -0.5}],
                # Absolute: DEU unemployment rate pinned to 5.0%
                "DEU": [{"date": "2010-01-05", "type": "target_rate", "value": 5.0}],
            },
        }
    },
}

Each macro factor (GDP, CPI, UNRATE) maps curve labels to a list of dated entries. Multiple dates can be specified per curve. Unspecified dates carry forward the last known conditional value.

Factor Entry type Semantic
GDP delta_bp Relative: target = cond × (1 + value / 100). Value in basis points.
GDP target_amount Absolute: target GDP amount in local currency (e.g. USD).
CPI delta_ip Relative: target = cond + value. Value in index points.
CPI target_ip Absolute: target CPI index level.
UNRATE delta_pp Relative: target = cond + value. Value in percentage points.
UNRATE target_rate Absolute: target unemployment rate in % (e.g. 5.0 means 5.0%).

Run simulation directly:

results = client.fixed_income.simulate(params=params)
# Output: SimulateResults

View yield curves labels:

results.names
# Example output: ['USA', 'GBR']

View yield curve dataframe column names:

results.column_names
# Output: ['IDX', 'SAMPLE', 'YC_0', 'YC_1', ...]

View a specific yield curve dataframe, e.g. for USA:

results.dataframes["USA"]
# Output: pandas.DataFrame

View all yield curves in a single numpy ndarray (order is same as names):

results.ndarray
# Output: ndarray of shape (samples, countries, days, columns)

View request metadata:

results.metadata
# Output: dict

When views are applied, metadata includes no_samples_returned (number of scenarios after filtering) and views_applied; results.ndarray.shape[0] matches no_samples_returned.

Simulate Results

The SimulateResults object provides several utility and plotting methods for analyzing and visualizing outputs.

Utility Methods

Get dates:

results.get_dates()
# Output: [Timestamp('2010-01-01 00:00:00'), ...]

Get yield curve column indices:

results.get_yc_indices()
# Output: [2, 3, 4, ...]

Get all yield curve samples (as ndarray):

results.get_yc_samples()
# Output: ndarray of shape (samples, countries, days, maturities)

Get all samples for a specific curve:

results.get_curve_yc_samples("USA")
# Output: ndarray of shape (samples, days, maturities)

Get a single sample for a curve:

results.get_yc_sample("USA", sample_num=0)
# Output: ndarray of shape (days, maturities)

Get a single sample at a specific time index:

results.get_curve_sample_at_t("USA", time_idx=1, sample_num=0)
# Output: ndarray of shape (maturities,)

Plotting Methods

All plotting methods return a matplotlib Figure. Set show_plot=True to display immediately (non-Jupyter environments).

Plot a single sample for a curve at a specific time:

results.plot_curve_sample_at_time("USA", time_idx=1, sample_num=0, show_plot=True)
# Output: matplotlib.figure.Figure

Plot all samples for a curve at a specific time:

results.plot_curve_all_samples_at_time("USA", time_idx=1, show_plot=True)
# Output: matplotlib.figure.Figure

Plot a single sample's yield curve evolution over time (3D):

results.plot_curve_sample_yield_curve_over_time("USA", sample_num=0, show_plot=True)
# Output: matplotlib.figure.Figure

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