예제 #1
0
class AliasPseudonym(Pseudonym):
    """A pseudonym that introduces package aliases based on the supplied configuration."""

    CONFIGURATION_DEFAULT = {"package_name": None, "package_version": None, "index_url": None}
    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            Required("package_name"): str,
            Required("package_version"): SchemaAny(str, None),
            Required("index_url"): SchemaAny(str, None),
            Required("aliases"): Schema(
                [Schema({Required("package_name"): str, Required("package_version"): str, Required("index_url"): str})]
            ),
        }
    )

    @classmethod
    def should_include(cls, _: "PipelineBuilderContext") -> Generator[Dict[str, Any], None, None]:
        """Register self, never."""
        yield from ()
        return None

    def run(self, package_version: PackageVersion) -> Generator[Tuple[str, str, str], None, None]:
        """Create alternatives to packages based on the configuration supplied."""
        if (
            self.configuration["package_version"] is not None
            and self.configuration["package_version"] != package_version.locked_version
        ):
            yield from ()
            return

        if self.configuration["index_url"] is not None and self.configuration["index_url"] != package_version.index.url:
            yield from ()
            return

        yield from ((i["package_name"], i["package_version"], i["index_url"]) for i in self.configuration["aliases"])
예제 #2
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class SkipPackageStepPrescription(StepPrescription):
    """Skip package prescription step unit implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            Required("package_name"): SchemaAny(str, None),
            Required("match"): PRESCRIPTION_SKIP_PACKAGE_STEP_MATCH_ENTRY_SCHEMA,
            Required("multi_package_resolution"): bool,
            Required("run"): SchemaAny(PRESCRIPTION_SKIP_PACKAGE_STEP_RUN_SCHEMA, None),
            Required("prescription"): Schema({"run": bool}),
        }
    )

    def run(self, state: State, package_version: PackageVersion) -> None:
        """Run main entry-point for steps to skip packages."""
        if not self._index_url_check(self._index_url, package_version.index.url):
            return None

        if self._specifier and package_version.locked_version not in self._specifier:
            return None

        if self._develop is not None and package_version.develop != self._develop:
            return None

        if not self._run_state_with_initiator(state, package_version):
            return None

        try:
            self._run_base()
        finally:
            self._configuration["prescription"]["run"] = True

        raise SkipPackage
예제 #3
0
class SkipPackageSievePrescription(UnitPrescription):
    """Skip package prescription unit implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("package_name"):
        SchemaAny(str, None),
        Required("run"):
        SchemaAny(PRESCRIPTION_SKIP_PACKAGE_SIEVE_RUN_ENTRY_SCHEMA, None),
        Required("match"):
        PRESCRIPTION_SKIP_PACKAGE_SIEVE_MATCH_ENTRY_SCHEMA,
    })

    _logged = attr.ib(type=bool, kw_only=True, init=False, default=False)

    @staticmethod
    def is_sieve_unit_type() -> bool:
        """Check if this unit is of type sieve."""
        return True

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        if cls._should_include_base(builder_context):
            prescription: Dict[str, Any] = cls._PRESCRIPTION  # type: ignore
            if isinstance(prescription["match"], list):
                for item in prescription["match"]:
                    yield {
                        "package_name": item["package_name"],
                        "run": prescription.get("run"),
                        "match": item
                    }
            else:
                yield {
                    "package_name": prescription["match"]["package_name"],
                    "run": prescription.get("run"),
                    "match": prescription["match"],
                }
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Initialize this unit before each run."""
        self._logged = False
        super().pre_run()

    def run(
        self, _: Generator[PackageVersion, None, None]
    ) -> Generator[PackageVersion, None, None]:
        """Run main entry-point for sieves to filter and score packages."""
        if not self._logged:
            self._logged = True
            self._run_log()
            self._run_stack_info()

        raise SkipPackage
예제 #4
0
파일: sieve.py 프로젝트: tlegen-k/adviser
class SievePrescription(UnitPrescription):
    """Sieve base class implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            Required("package_name"): SchemaAny(str, None),
            Required("match"): PRESCRIPTION_SIEVE_MATCH_ENTRY_SCHEMA,
            Required("run"): SchemaAny(PRESCRIPTION_SIEVE_RUN_SCHEMA, None),
        }
    )

    _logged = attr.ib(type=bool, kw_only=True, init=False, default=False)
    _specifier = attr.ib(type=Optional[SpecifierSet], kw_only=True, init=False, default=None)
    _index_url = attr.ib(type=Optional[str], kw_only=True, init=False, default=None)

    @staticmethod
    def is_sieve_unit_type() -> bool:
        """Check if this unit is of type sieve."""
        return True

    @classmethod
    def should_include(cls, builder_context: "PipelineBuilderContext") -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        if cls._should_include_base(builder_context):
            prescription: Dict[str, Any] = cls._PRESCRIPTION  # type: ignore
            yield from cls._yield_should_include(prescription)
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Prepare before running this pipeline unit."""
        package_version = self.match_prescription.get("package_version", {})
        version_specifier = package_version.get("version")
        if version_specifier:
            self._specifier = SpecifierSet(version_specifier)
            self._specifier.prereleases = True

        self._index_url = package_version.get("index_url")
        self._logged = False
        super().pre_run()

    def run(self, package_versions: Generator[PackageVersion, None, None]) -> Generator[PackageVersion, None, None]:
        """Run main entry-point for sieves to filter and score packages."""
        for package_version in package_versions:
            if (not self._specifier or package_version.locked_version in self._specifier) and (
                not self._index_url or package_version.index.url == self._index_url
            ):
                if not self._logged:
                    self._logged = True
                    self._run_log()
                    self._run_stack_info()

                continue

            yield package_version
예제 #5
0
class SetScoreStep(Step):
    """A step that is setting score for packages."""

    # Assign probability is used to "assign" a score to the package to simulate knowledge
    # coverage for packages resolved - 0.75 means ~75% of packages will have a score.
    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("multi_package_resolution"):
        bool,
        Required("package_name"):
        str,
        SchemaOptional("index_url"):
        SchemaAny(str, None),
        SchemaOptional("package_version"):
        SchemaAny(str, None),
        SchemaOptional("score"):
        SchemaAny(float, None),
    })
    CONFIGURATION_DEFAULT: Dict[str, Any] = {
        "index_url": None,
        "multi_package_resolution": False,
        "package_name": None,
        "package_version": None,
        "score": None,
    }

    @classmethod
    def should_include(
            cls, builder_context: "PipelineBuilderContext"
    ) -> Optional[Dict[str, Any]]:
        """Register self, never."""
        return None

    def pre_run(self) -> None:
        """Initialize this pipeline unit before each run."""
        if self.configuration["score"] is None:
            self.configuration["score"] = random.uniform(
                self.SCORE_MIN, self.SCORE_MAX)

        super().pre_run()

    def run(
        self, _: State, package_version: PackageVersion
    ) -> Optional[Tuple[Optional[float], Optional[List[Dict[str, str]]]]]:
        """Score the given package."""
        if (self.configuration["package_version"] is not None
                and package_version.locked_version !=
                self.configuration["package_version"]) or (
                    self.configuration["index_url"] is not None
                    and package_version.index.url !=
                    self.configuration["index_url"]):
            return None

        return self.configuration["score"], None
예제 #6
0
class MockScoreStep(Step):
    """A step that is mocking scoring of packages."""

    # Assign probability is used to "assign" a score to the package to simulate knowledge
    # coverage for packages resolved - 0.75 means ~75% of packages will have a score.
    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            SchemaOptional("package_name"): SchemaAny(str, None),
            SchemaOptional("assign_probability"): float,
            SchemaRequired("multi_package_resolution"): bool,
        }
    )
    CONFIGURATION_DEFAULT: Dict[str, Any] = {
        "package_name": None,
        "assign_probability": 0.75,
        "multi_package_resolution": False,
    }

    _score_history = attr.ib(type=Dict[Tuple[str, str, str], float], factory=dict, init=False)

    @classmethod
    def should_include(cls, builder_context: "PipelineBuilderContext") -> Generator[Dict[str, Any], None, None]:
        """Register self, never."""
        yield from ()
        return None

    def pre_run(self) -> None:
        """Initialize self, before each run."""
        self._score_history.clear()
        super().pre_run()

    def post_run(self) -> None:
        """Print the generated history after the run."""
        packages = {}  # type: Dict[Any, Any]
        for key, value in self._score_history.items():
            packages.setdefault(key[0], []).append((key, value))

        for key, value in packages.items():
            packages[key] = sorted(value, key=operator.itemgetter(1), reverse=True)  # type: ignore

        print("-" * 10, " Mock score report ", "-" * 10, file=sys.stderr)
        for key in sorted(packages):
            print(key, file=sys.stderr)
            for entry in packages[key]:
                print(f"{str((entry[0][1], entry[0][2])):>50} | {entry[1]:+f}", file=sys.stderr)
        print("-" * 40, file=sys.stderr)

    def run(
        self, _: State, package_version: PackageVersion
    ) -> Optional[Tuple[Optional[float], Optional[List[Dict[str, str]]]]]:
        """Score the given package regardless of the state."""
        # Using seed set to process on the adviser run affects this call - so adviser
        # with same seed set shared scores generated across runs.
        score = self._score_history.setdefault(
            package_version.to_tuple(),
            random.uniform(self.SCORE_MIN, self.SCORE_MAX)
            if random.random() <= self.configuration["assign_probability"]
            else 0.0,
        )
        return score, None
예제 #7
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class Step(Unit):
    """Step base class implementation.

    Configuration option `multi_package_resolution` states whether a step should be run if package
    is resolved multiple times for the same stack.
    """

    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("package_name"):
        SchemaAny(str, None),
        Required("multi_package_resolution"):
        bool
    })
    CONFIGURATION_DEFAULT: Dict[str, Any] = {
        "package_name": None,
        "multi_package_resolution": False
    }

    SCORE_MAX = 1.0
    SCORE_MIN = -1.0

    @staticmethod
    def is_step_unit_type() -> bool:
        """Check if this unit is of type step."""
        return True

    @abc.abstractmethod
    def run(
        self, state: State, package_version: PackageVersion
    ) -> Optional[Tuple[Optional[float], Optional[List[Dict[str, str]]]]]:
        """Run main entry-point for steps to filter and score packages."""
예제 #8
0
파일: strides.py 프로젝트: tlegen-k/adviser
class Stride1(Stride):
    """A testing stride implementation."""

    CONFIGURATION_DEFAULT = {
        "linus": {
            "residence": "oregon",
            "children": 3,
            "parents": ["nils", "anna"]
        },
        "package_name": None,
    }
    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("linus"):
        object,
        Required("package_name"):
        SchemaAny(str, None)
    })

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Check if this pipeline unit should be included in the pipeline configuration."""
        yield from ()
        return None

    def run(self,
            state: State) -> Optional[Tuple[float, List[Dict[str, str]]]]:
        """Run noop method."""
예제 #9
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class Wrap1(Wrap):
    """A testing wrap implementation."""

    CONFIGURATION_DEFAULT = {
        "thoth": [2018, 2019],
        "cities": ["Brno", "Bonn", "Boston", "Milan"],
        "package_name": None,
    }
    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("thoth"):
        object,
        Required("cities"):
        object,
        Required("package_name"):
        SchemaAny(str)
    })

    @classmethod
    def should_include(
            cls, builder_context: "PipelineBuilderContext"
    ) -> Optional[Dict[str, Any]]:
        """Check if this pipeline unit should be included in the pipeline configuration."""

    def run(self, state: State) -> None:
        """Run noop method."""
예제 #10
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class WrapPrescription(UnitPrescription):
    """Wrap base class implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("package_name"):
        SchemaAny(str, None),
        Optional("match"):
        PRESCRIPTION_WRAP_MATCH_ENTRY_SCHEMA,
        Required("run"):
        PRESCRIPTION_WRAP_RUN_SCHEMA,
        Required("prescription"):
        Schema({"run": bool}),
    })

    @staticmethod
    def is_wrap_unit_type() -> bool:
        """Check if this unit is of type wrap."""
        return True

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        if cls._should_include_base(builder_context):
            prescription: Dict[str, Any] = cls._PRESCRIPTION  # type: ignore
            yield from cls._yield_should_include_with_state(prescription)
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Prepare this pipeline unit before run."""
        self._prepare_justification_link(
            self.run_prescription.get("justification", []))
        super().pre_run()

    def run(self, state: State) -> None:
        """Run main entry-point for wrap units to filter and score packages."""
        if not self._run_state(state):
            return None

        prescription_conf = self._configuration["prescription"]

        if not prescription_conf["run"]:
            justification = self.run_prescription.get("justification")
            if justification:
                state.add_justification(justification)

            advised_manifest_changes = self.run_prescription.get(
                "advised_manifest_changes")
            if advised_manifest_changes:
                state.advised_manifest_changes.append(advised_manifest_changes)

        try:
            self._run_base()
        finally:
            prescription_conf["run"] = True
예제 #11
0
파일: base.py 프로젝트: tlegen-k/adviser
class AdviserTestCase:
    """A base class for implementing adviser's test cases."""

    data_dir = Path(os.path.dirname(os.path.realpath(__file__))) / "data"

    JUSTIFICATION_SAMPLE_1 = [
        {"message": "Justification sample 1", "type": "WARNING", "link": "https://thoth-station.ninja"},
        {"message": "Justification sample 1", "type": "INFO", "link": "https://thoth-station.ninja"},
        {"message": "Justification sample 1", "type": "ERROR", "link": "https://thoth-station.ninja"},
    ]

    JUSTIFICATION_SAMPLE_2 = [
        {
            "message": "Justification sample 2",
            "type": "INFO",
            "link": "https://thoth-station.ninja",
            "advisory": "Bark!",
        },
    ]

    JUSTIFICATION_SAMPLE_3 = [
        {
            "message": "Justification sample 2",
            "type": "INFO",
            "link": "https://thoth-station.ninja",
            "package_name": "tensorflow",
            "version_range": "<2.3>=",
        },
    ]

    _JUSTIFICATION_SCHEMA = Schema(
        [
            {
                "message": All(str, Length(min=1)),
                "type": SchemaAny("INFO", "WARNING", "ERROR", "LATEST", "CVE"),
                "link": All(str, Length(min=1)),
                SchemaOptional("advisory"): All(str, Length(min=1)),
                SchemaOptional("cve_id"): All(str, Length(min=1)),
                SchemaOptional("cve_name"): All(str, Length(min=1)),
                SchemaOptional("package_name"): All(str, Length(min=1)),
                SchemaOptional("version_range"): All(str, Length(min=1)),
            }
        ]
    )

    @classmethod
    def verify_justification_schema(cls, justification: Optional[List[Dict[str, Any]]]) -> bool:
        """Verify the justification schema is correct."""
        if justification is None:
            return True

        try:
            cls._JUSTIFICATION_SCHEMA(justification)
        except Invalid as exc:
            raise AdviserJustificationSchemaError(exc.msg) from exc
        else:
            return True
예제 #12
0
class BootPrescription(UnitPrescription):
    """Boot prescription implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            Required("package_name"): SchemaAny(str, None),
            Required("match"): SchemaAny(PRESCRIPTION_BOOT_MATCH_ENTRY_SCHEMA, None),
            Required("run"): PRESCRIPTION_BOOT_RUN_SCHEMA,
        }
    )

    @staticmethod
    def is_boot_unit_type() -> bool:
        """Check if this unit is of type boot."""
        return True

    @staticmethod
    def _yield_should_include(unit_prescription: Dict[str, Any]) -> Generator[Dict[str, Any], None, None]:
        """Yield for every entry stated in the match field."""
        match = unit_prescription.get("match", {})
        run = unit_prescription.get("run", {})
        if isinstance(match, list):
            for item in match:
                yield {"package_name": item.get("package_name"), "match": item, "run": run}
        else:
            yield {"package_name": match.get("package_name") if match else None, "match": match, "run": run}

    @classmethod
    def should_include(cls, builder_context: "PipelineBuilderContext") -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        if cls._should_include_base(builder_context):
            prescription: Dict[str, Any] = cls._PRESCRIPTION  # type: ignore
            yield from cls._yield_should_include(prescription)
            return None

        yield from ()
        return None

    def run(self) -> None:
        """Run main entry-point for boot units."""
        super()._run_base()
예제 #13
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class Stride2(Stride):
    """A testing stride implementation."""

    CONFIGURATION_DEFAULT = {"foo": None, "package_name": "thamos"}
    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("foo"):
        object,
        Required("package_name"):
        SchemaAny(str, None)
    })

    @classmethod
    def should_include(
            cls, builder_context: "PipelineBuilderContext"
    ) -> Optional[Dict[str, Any]]:
        """Check if this pipeline unit should be included in the pipeline configuration."""

    def run(self,
            state: State) -> Optional[Tuple[float, List[Dict[str, str]]]]:
        """Run noop method."""
예제 #14
0
class StridePrescription(UnitPrescription):
    """Stride base class implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            Required("package_name"): SchemaAny(str, None),
            Required("match"): PRESCRIPTION_STRIDE_MATCH_ENTRY_SCHEMA,
            Required("run"): PRESCRIPTION_STRIDE_RUN_SCHEMA,
            Required("prescription"): Schema({"run": bool}),
        }
    )

    @staticmethod
    def is_stride_unit_type() -> bool:
        """Check if this unit is of type stride."""
        return True

    @classmethod
    def should_include(cls, builder_context: "PipelineBuilderContext") -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        if cls._should_include_base(builder_context):
            prescription: Dict[str, Any] = cls._PRESCRIPTION  # type: ignore
            yield from cls._yield_should_include_with_state(prescription)
            return None

        yield from ()
        return None

    def run(self, state: State) -> None:
        """Run main entry-point for strides."""
        if not self._run_state(state):
            return None

        try:
            self._run_base()
        finally:
            self._configuration["prescription"]["run"] = True
예제 #15
0
class SolvedSieve(Sieve):
    """Filter out build time/installation errors of Python packages."""

    CONFIGURATION_DEFAULT = {"package_name": None, "without_error": True}
    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("package_name"):
        SchemaAny(str, None),
        Required("without_error"):
        bool
    })
    _JUSTIFICATION_LINK = jl("buildtime_error")

    _messages_logged = attr.ib(type=Set[Tuple[str, str, str]],
                               factory=set,
                               init=False)

    @classmethod
    def should_include(
            cls, builder_context: "PipelineBuilderContext"
    ) -> Optional[Dict[str, Any]]:
        """Include solved pipeline sieve for adviser or Dependency Monkey on pipeline creation."""
        if not builder_context.is_included(cls):
            return {}

        return None

    def pre_run(self) -> None:
        """Initialize this pipeline unit before each run."""
        self._messages_logged.clear()
        super().pre_run()

    def run(
        self, package_versions: Generator[PackageVersion, None, None]
    ) -> Generator[PackageVersion, None, None]:
        """Filter out packages based on build time/installation issues.."""
        for package_version in package_versions:
            package_tuple = package_version.to_tuple()

            try:
                has_error = self.context.graph.has_python_solver_error(
                    package_version.name,
                    package_version.locked_version,
                    package_version.index.url,
                    os_name=self.context.project.runtime_environment.
                    operating_system.name,
                    os_version=self.context.project.runtime_environment.
                    operating_system.version,
                    python_version=self.context.project.runtime_environment.
                    python_version,
                )
            except NotFoundError as exc:
                _LOGGER.debug(
                    "Removing package %r as it was not solved: %s",
                    package_tuple,
                    str(exc),
                )
                continue

            if has_error and self.configuration["without_error"]:
                if package_tuple not in self._messages_logged:
                    self._messages_logged.add(package_tuple)
                    message = f"Removing package {package_tuple} due to build time error in the software environment"
                    _LOGGER.warning("%s - see %s", message,
                                    self._JUSTIFICATION_LINK)
                    self.context.stack_info.append({
                        "type":
                        "WARNING",
                        "message":
                        message,
                        "link":
                        self._JUSTIFICATION_LINK,
                    })
                continue

            yield package_version
예제 #16
0
class AddPackageStepPrescription(StepPrescription):
    """Add package prescription step unit implementation."""

    CONFIGURATION_SCHEMA: Schema = Schema(
        {
            Required("package_name"): SchemaAny(str, None),
            Required("match"): PRESCRIPTION_ADD_PACKAGE_STEP_MATCH_ENTRY_SCHEMA,
            Required("multi_package_resolution"): bool,
            Required("run"): SchemaAny(PRESCRIPTION_ADD_PACKAGE_STEP_RUN_SCHEMA, None),
            Required("prescription"): Schema({"run": bool}),
        }
    )

    def run(self, state: State, package_version: PackageVersion) -> None:
        """Run main entry-point for steps to skip packages."""
        if not self._index_url_check(self._index_url, package_version.index.url):
            return None

        if self._specifier and package_version.locked_version not in self._specifier:
            return None

        if self._develop is not None and package_version.develop != self._develop:
            return None

        if not self._run_state_with_initiator(state, package_version):
            return None

        add_package_version = self.run_prescription["package_version"]
        add_package_version_name = add_package_version["name"]
        add_package_version_version = add_package_version["locked_version"][2:]
        add_package_version_index_url = add_package_version["index_url"]
        add_package_version_develop = add_package_version["develop"]

        add_package_version_tuple = (
            add_package_version_name,
            add_package_version_version,
            add_package_version_index_url,
        )

        resolved = state.resolved_dependencies.get(add_package_version_name)
        if resolved:
            if resolved == add_package_version_tuple:
                _LOGGER.debug(
                    "%s: Not adding package %r as it is already in the resolved listing",
                    self.get_unit_name(),
                    add_package_version_tuple,
                )
            else:
                _LOGGER.debug(
                    "%s: Not adding package %r as another package %r is already present in the resolved listing",
                    self.get_unit_name(),
                    add_package_version_tuple,
                    resolved,
                )

            return None

        runtime_env = self.context.project.runtime_environment
        py_ver = runtime_env.python_version.replace(".", "")
        # XXX: this could be moved to thoth-common
        solver_name = f"solver-{runtime_env.operating_system.name}-{runtime_env.operating_system.version}-py{py_ver}"
        if not self.context.graph.python_package_version_exists(
            add_package_version_name,
            add_package_version_version,
            add_package_version_index_url,
            solver_name=solver_name,
        ):
            _LOGGER.debug(
                "%s: Not adding package %r as the given package was not solved by %r",
                self.get_unit_name(),
                add_package_version_tuple,
                solver_name,
            )
            return None

        try:
            if not self.context.graph.is_python_package_index_enabled(add_package_version_index_url):
                _LOGGER.debug(
                    "%s: Not adding package %r as index %r is not enabled",
                    self.get_unit_name(),
                    add_package_version_tuple,
                    add_package_version_index_url,
                )
                return None
        except NotFoundError:
            _LOGGER.debug(
                "%s: Not adding package %r as index %r is not known to the resolver",
                self.get_unit_name(),
                add_package_version_tuple,
                add_package_version_index_url,
            )
            return None

        try:
            self._run_base()
        finally:
            self._configuration["prescription"]["run"] = True

        pv = PackageVersion(
            name=add_package_version_name,
            version=add_package_version["locked_version"],
            index=Source(add_package_version_index_url),
            develop=add_package_version_develop,
        )
        self.context.register_package_version(pv)
        state.add_unresolved_dependency(add_package_version_tuple)
예제 #17
0
class GenerateScoreStep(Step):
    """A step that is assigning scores in a deterministic way.

    This unit can be used to measure assigning score in a deterministic way across multiple runs without
    a need to store all the score for packages.
    """

    # Assign probability is used to "assign" a score to the package to simulate knowledge
    # coverage for packages resolved - 0.75 means ~75% of packages will have a score.
    CONFIGURATION_SCHEMA: Schema = Schema({
        SchemaOptional("assign_probability"):
        float,
        SchemaOptional("buffer_size"):
        int,
        SchemaOptional("package_name"):
        SchemaAny(str, None),
        SchemaOptional("seed"):
        int,
        SchemaRequired("multi_package_resolution"):
        bool,
    })
    CONFIGURATION_DEFAULT: Dict[str, Any] = {
        "assign_probability": 0.75,
        "buffer_size": 1024,
        "multi_package_resolution": False,
        "package_name": None,
        "seed": 42,
    }

    _history = attr.ib(type=Dict[Tuple[str, str, str], float],
                       factory=dict,
                       init=False)
    _buffer = attr.ib(type=List[float], factory=list, init=False)
    _idx = attr.ib(type=int, default=0, init=False)

    def pre_run(self) -> None:
        """Initialize this pipeline units before each run."""
        self._history.clear()
        self._idx = 0

        if not self._buffer:
            state = random.getstate()
            random.seed(self.configuration["seed"])
            self._buffer = [0.0] * self.configuration["buffer_size"]
            for i in range(self.configuration["buffer_size"]):
                self._buffer[i] = (
                    random.uniform(self.SCORE_MIN, self.SCORE_MAX) if
                    random.random() <= self.configuration["assign_probability"]
                    else 0.0)
            random.setstate(state)

        super().pre_run()

    def post_run(self) -> None:
        """Print the generated scores on finish to stdout."""
        pprint(self._history)

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Register self, never."""
        yield from ()
        return None

    def run(
        self, _: State, package_version: PackageVersion
    ) -> Optional[Tuple[Optional[float], Optional[List[Dict[str, str]]]]]:
        """Score the given package."""
        package_tuple = package_version.to_tuple()
        score = self._history.get(package_tuple)

        if score is not None:
            return score, None

        idx = self._idx
        self._idx = (self._idx + 1) % self.configuration["buffer_size"]
        self._history[package_tuple] = self._buffer[idx]
        return self._buffer[idx], None
예제 #18
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class Unit(metaclass=abc.ABCMeta):
    """A base class for implementing pipeline units - strides and steps."""

    _CONTEXT: Optional[Context] = None
    CONFIGURATION_SCHEMA: Schema = Schema(
        {Required("package_name"): SchemaAny(str, None)})
    CONFIGURATION_DEFAULT: Dict[str, Any] = {"package_name": None}

    unit_run = attr.ib(type=bool, default=False, kw_only=True)
    _configuration = attr.ib(type=Dict[str, Any], kw_only=True)

    _RE_CAMEL2SNAKE = re.compile("(?!^)([A-Z]+)")
    _AICOE_PYTHON_PACKAGE_INDEX_URL = "https://tensorflow.pypi.thoth-station.ninja/index/"
    _VALIDATE_UNIT_CONFIGURATION_SCHEMA = bool(
        int(os.getenv("THOTH_ADVISER_VALIDATE_UNIT_CONFIGURATION_SCHEMA", 1)))
    _DATA_DIR = os.path.join(os.path.dirname(os.path.realpath(__file__)),
                             "data")

    @classmethod
    def get_unit_name(cls) -> str:
        """Get name of the unit."""
        return cls.__name__

    @staticmethod
    def is_boot_unit_type() -> bool:
        """Check if the unit is of type boot."""
        return False

    @staticmethod
    def is_pseudonym_unit_type() -> bool:
        """Check if the unit is of type pseudonym."""
        return False

    @staticmethod
    def is_sieve_unit_type() -> bool:
        """Check if the unit is of type sieve."""
        return False

    @staticmethod
    def is_step_unit_type() -> bool:
        """Check if the unit is of type step."""
        return False

    @staticmethod
    def is_stride_unit_type() -> bool:
        """Check if the unit is of type step."""
        return False

    @staticmethod
    def is_wrap_unit_type() -> bool:
        """Check if the unit is of type wrap."""
        return False

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        raise NotImplementedError(
            f"Please implement method to register pipeline unit {cls.get_unit_name()!r} to pipeline configuration"
        )

    @classmethod
    @contextmanager
    def assigned_context(cls, context: Context) -> Generator[None, None, None]:
        """Assign context to all units."""
        try:
            cls._CONTEXT = context
            yield
        finally:
            cls._CONTEXT = None

    def __attrs_post_init__(self) -> None:
        """Initialize post-init attributes."""
        # Initialize unit_run always to False so the pipeline unit JSON report can be reused across
        # multiple pipeline unit runs.
        self.unit_run = False

    @_configuration.default
    def _initialize_default_configuration(self) -> Dict[str, Any]:
        """Initialize default unit configuration based on declared class' default configuration."""
        return dict(self.CONFIGURATION_DEFAULT)

    @property
    def context(self) -> Context:
        """Get context in which the unit runs in."""
        if self._CONTEXT is None:
            raise ValueError(
                "Requesting resolver context outside of resolver run")

        return self._CONTEXT

    @property
    def name(self) -> str:
        """Get name of this pipeline unit."""
        return self.__class__.__name__

    @property
    def configuration(self) -> Dict[str, Any]:
        """Get configuration of instantiated pipeline unit."""
        return self._configuration

    def update_configuration(self, configuration_dict: Dict[str, Any]) -> None:
        """Set configuration for a pipeline unit.

        If setting configuration fails due to schema checks, configuration are kept in an invalid state.
        """
        self.configuration.update(configuration_dict)
        if self._VALIDATE_UNIT_CONFIGURATION_SCHEMA and self.CONFIGURATION_SCHEMA:
            _LOGGER.debug("Validating configuration for pipeline unit %r",
                          self.name)
            try:
                self.CONFIGURATION_SCHEMA(self.configuration)
            except Exception as exc:
                _LOGGER.exception(
                    "Failed to validate schema for pipeline unit %r: %s",
                    self.name,
                    str(exc),
                )
                raise PipelineUnitConfigurationSchemaError(str(exc))

    def to_dict(self) -> Dict[str, Any]:
        """Turn this pipeline unit into its dictionary representation."""
        return {
            "name": self.name,
            "configuration": self.configuration,
            "unit_run": self.unit_run
        }

    @classmethod
    def is_aicoe_release(cls, package_version: PackageVersion) -> bool:
        """Check if the given package-version is AICoE release."""
        return bool(
            package_version.index.url.startswith(
                cls._AICOE_PYTHON_PACKAGE_INDEX_URL))

    @classmethod
    def get_aicoe_configuration(
            cls, package_version: PackageVersion) -> Optional[Dict[str, Any]]:
        """Get AICoE specific configuration encoded in the AICoE index URL."""
        if not package_version.index.url.startswith(
                cls._AICOE_PYTHON_PACKAGE_INDEX_URL):
            return None

        index_url = package_version.index.url[
            len(cls._AICOE_PYTHON_PACKAGE_INDEX_URL):]
        conf_parts = index_url.strip("/").split(
            "/")  # the last is always "simple"

        if len(conf_parts) == 3:
            # No OS specific release - e.g. manylinux compliant release.
            if not conf_parts[0].startswith("manylinux"):
                _LOGGER.error(
                    "Failed to parse a platform tag, unknown AICoE Index URL: %r",
                    package_version.index.url)
                return None

            return {
                "os_name": None,
                "os_version": None,
                "configuration": conf_parts[1],
                "platform_tag": conf_parts[0],
            }
        elif len(conf_parts) == 5:
            # TODO: We have dropped OS-specific builds, so this can go away in future releases...
            if conf_parts[0] != "os":
                _LOGGER.error(
                    "Failed to parse operating system specific URL of AICoE index: %r",
                    package_version.index.url)
                return None

            return {
                "os_name": conf_parts[1],
                "os_version": conf_parts[2],
                "configuration": conf_parts[3],
                "platform_tag": None,
            }

        _LOGGER.warning(
            "Failed to parse AICoE specific package source index configuration: %r",
            package_version.index.url,
        )
        return None

    @staticmethod
    def get_base_image(
            base_image: str,
            *,
            raise_on_error: bool = False) -> Optional[Tuple[str, str]]:
        """Return information about base image used."""
        parts = base_image.split(":", maxsplit=1)
        if len(parts) != 2:
            if raise_on_error:
                raise ParseBaseImageError(
                    f"Cannot determine Thoth s2i version information from {base_image}, "
                    "recommendations specific for ABI used will not be taken into account"
                )

            return None

        thoth_s2i_image_name, thoth_s2i_image_version = parts
        if thoth_s2i_image_version.startswith("v"):
            # Not nice as we always prefix with "v" but do not store it with "v" in the database
            # (based on env var exported and detected in Thoth's s2i).
            thoth_s2i_image_version = thoth_s2i_image_version[1:]

        return thoth_s2i_image_name, thoth_s2i_image_version

    def pre_run(self) -> None:  # noqa: D401
        """Called before running any pipeline unit with context already assigned.

        This method should not raise any exception.
        """
        self.unit_run = False

    def post_run(self) -> None:  # noqa: D401
        """Called after the resolution is finished.

        This method should not raise any exception.
        """

    def post_run_report(self, report):
        # type:('Unit', Union[Report, DependencyMonkeyReport]) -> None
        """Post-run method run after the resolving has finished - this method is called only if resolving with a report.
예제 #19
0
class TensorFlowAPISieve(Sieve):
    """A sieve that makes sure the right TensorFlow release is used based on user's API usage."""

    CONFIGURATION_SCHEMA: Schema = Schema(
        {Required("package_name"): SchemaAny(str)})
    CONFIGURATION_DEFAULT = {"package_name": "tensorflow"}
    _LINK_API = jl("tf_api")
    _LINK_NO_API = jl("tf_no_api")
    _PACKAGES_AFFECTED = ("tensorflow", "tensorflow-gpu", "intel-tensorflow",
                          "tensorflow-cpu")

    _messages_logged = attr.ib(type=Set[str], factory=set, init=False)
    _no_api_logged = attr.ib(type=bool, default=False, init=False)
    _acceptable_releases = attr.ib(type=Optional[Set[str]],
                                   default=None,
                                   init=False)

    def pre_run(self) -> None:
        """Initialize this pipeline unit before each run."""
        self._messages_logged.clear()
        self._acceptable_releases = None
        self._no_api_logged = False
        super().pre_run()

    def _pre_compute_releases(self) -> None:
        """Pre-compute releases that match library usage supplied by the user."""
        with open(os.path.join(self._DATA_DIR, "tensorflow", "api.json"),
                  "r") as api_file:
            known_api = json.load(api_file)

        self._acceptable_releases = set()
        tf_api_used = set(
            i for i in ((self.context.library_usage.get("report") or {}
                         ).get("tensorflow") or [])  # type: ignore
        )
        for tf_version, tf_api in known_api.items():
            if tf_api_used.issubset(tf_api):
                self._acceptable_releases.add(tf_version)

    @classmethod
    def should_include(
            cls, builder_context: "PipelineBuilderContext"
    ) -> Optional[Dict[str, Any]]:
        """Register this pipeline unit for adviser library usage is provided."""
        if not builder_context.is_adviser_pipeline(
        ) or not builder_context.library_usage:
            return None

        if builder_context.recommendation_type in (RecommendationType.LATEST,
                                                   RecommendationType.TESTING):
            # Use any TensorFlow for testing purposes or when resolving latest stack.
            return None

        if "tensorflow" not in (builder_context.library_usage.get("report")
                                or {}):
            return None

        # Include this pipeline unit in configurations for various builds.
        included_units = builder_context.get_included_sieves(cls)
        if len(included_units) >= len(cls._PACKAGES_AFFECTED):
            return None

        return {
            "package_name": cls._PACKAGES_AFFECTED[len(included_units)],
        }

    def run(
        self, package_versions: Generator[PackageVersion, None, None]
    ) -> Generator[PackageVersion, None, None]:
        """Use specific TensorFlow release based on library usage as supplied by the user."""
        if self._acceptable_releases is None:
            self._pre_compute_releases()

        if not self._acceptable_releases:
            if not self._no_api_logged:
                self._no_api_logged = True
                msg = "No TensorFlow symbols API found in the database that would match TensorFlow symbols used"
                _LOGGER.warning("%s - see %s", msg, self._LINK_NO_API)
                self.context.stack_info.append({
                    "type": "WARNING",
                    "message": msg,
                    "link": self._LINK_NO_API,
                })

            yield from package_versions
            return

        for package_version in package_versions:
            version = ".".join(
                map(str, package_version.semantic_version.release[:2]))
            if version in self._acceptable_releases:
                yield package_version
            elif version not in self._messages_logged:
                self._messages_logged.add(version)
                msg = (
                    f"Removing TensorFlow {package_version.to_tuple()!r} as it does not provide required symbols "
                    f"in the exposed API")
                _LOGGER.warning("%s - see %s", msg, self._LINK_API)
                self.context.stack_info.append({
                    "type": "WARNING",
                    "message": msg,
                    "link": self._LINK_API
                })
예제 #20
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class StepPrescription(UnitPrescription):
    """Step base class implementation.

    Configuration option `multi_package_resolution` states whether a step should be run if package
    is resolved multiple times for the same stack.
    """

    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("package_name"):
        SchemaAny(str, None),
        Required("match"):
        PRESCRIPTION_STEP_MATCH_ENTRY_SCHEMA,
        Required("multi_package_resolution"):
        bool,
        Required("run"):
        PRESCRIPTION_STEP_RUN_SCHEMA,
        Required("prescription"):
        Schema({"run": bool}),
    })

    SCORE_MAX = 1.0
    SCORE_MIN = -1.0

    _specifier = attr.ib(type=Optional[SpecifierSet],
                         kw_only=True,
                         init=False,
                         default=None)
    _index_url = attr.ib(type=Optional[str],
                         kw_only=True,
                         init=False,
                         default=None)
    _develop = attr.ib(type=Optional[bool],
                       kw_only=True,
                       init=False,
                       default=None)

    @staticmethod
    def is_step_unit_type() -> bool:
        """Check if this unit is of type step."""
        return True

    @staticmethod
    def _yield_should_include(
        unit_prescription: Dict[str, Any]
    ) -> Generator[Dict[str, Any], None, None]:
        """Yield for every entry stated in the match field."""
        match = unit_prescription["match"]
        run = unit_prescription["run"]
        prescription_conf = {"run": False}
        if isinstance(match, list):
            for item in match:
                yield {
                    "package_name":
                    item["package_version"].get("name"),
                    "multi_package_resolution":
                    run.get("multi_package_resolution", False),
                    "match":
                    item,
                    "run":
                    run,
                    "prescription":
                    prescription_conf,
                }
        else:
            yield {
                "package_name":
                match["package_version"].get("name"),
                "multi_package_resolution":
                run.get("multi_package_resolution", False),
                "match":
                match,
                "run":
                run,
                "prescription":
                prescription_conf,
            }

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Check if the given pipeline unit should be included in the given pipeline configuration."""
        if cls._should_include_base(builder_context):
            prescription: Dict[str, Any] = cls._PRESCRIPTION  # type: ignore
            yield from cls._yield_should_include(prescription)
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Prepare before running this pipeline unit."""
        package_version = self.match_prescription.get("package_version", {})
        version_specifier = package_version.get("version")
        if version_specifier:
            self._specifier = SpecifierSet(version_specifier)

        self._index_url = package_version.get("index_url")
        self._prepare_justification_link(
            self.run_prescription.get("justification", []))
        self._develop = package_version.get("develop")
        super().pre_run()

    def run(
        self, state: State, package_version: PackageVersion
    ) -> Optional[Tuple[Optional[float], Optional[List[Dict[str, str]]]]]:
        """Run main entry-point for steps to filter and score packages."""
        if not self._index_url_check(self._index_url,
                                     package_version.index.url):
            return None

        if self._specifier and package_version.locked_version not in self._specifier:
            return None

        if self._develop is not None and package_version.develop != self._develop:
            return None

        if not self._run_state_with_initiator(state, package_version):
            return None

        prescription_conf = self._configuration["prescription"]

        try:
            self._run_base()

            score = self.run_prescription.get("score")
            if not prescription_conf["run"]:
                justification = self.run_prescription.get("justification")
                return score, justification

            # Provide justification just once per prescription.
            return score, None
        finally:
            prescription_conf["run"] = True
예제 #21
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class SolvedSieve(Sieve):
    """Filter out build time/installation errors of Python packages."""

    CONFIGURATION_DEFAULT = {"package_name": None, "without_error": True}
    CONFIGURATION_SCHEMA: Schema = Schema({
        Required("package_name"):
        SchemaAny(str, None),
        Required("without_error"):
        bool
    })
    _JUSTIFICATION_LINK = jl("install_error")

    _messages_logged = attr.ib(type=Set[Tuple[str, str, str]],
                               factory=set,
                               init=False)
    _packages_filtered = attr.ib(
        factory=_default_dict_factory,
        init=False,
    )

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Include solved pipeline sieve for adviser or Dependency Monkey on pipeline creation."""
        if not builder_context.is_included(cls):
            yield {}
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Initialize this pipeline unit before each run."""
        self._messages_logged.clear()
        self._packages_filtered.clear()
        super().pre_run()

    def post_run(self) -> None:
        """Post-run method for wrapping up the work."""
        for package_name, package_items in sorted(
                self._packages_filtered.items(), key=operator.itemgetter(0)):
            for index_url, version in sorted(package_items.items(),
                                             key=operator.itemgetter(0)):
                self.context.stack_info.append({
                    "type":
                    "WARNING",
                    "message":
                    f"The following versions of {package_name!r} from {index_url!r} were "
                    "removed due to installation issues in the target environment: "
                    + ", ".join(version),
                    "link":
                    self._JUSTIFICATION_LINK,
                })

    def run(
        self, package_versions: Generator[PackageVersion, None, None]
    ) -> Generator[PackageVersion, None, None]:
        """Filter out packages based on build time/installation issues.."""
        for package_version in package_versions:
            package_tuple = package_version.to_tuple()

            try:
                has_error = self.context.graph.has_python_solver_error(
                    package_version.name,
                    package_version.locked_version,
                    package_version.index.url,
                    os_name=self.context.project.runtime_environment.
                    operating_system.name,
                    os_version=self.context.project.runtime_environment.
                    operating_system.version,
                    python_version=self.context.project.runtime_environment.
                    python_version,
                )
            except NotFoundError as exc:
                _LOGGER.debug(
                    "Removing package %r as it was not solved: %s",
                    package_tuple,
                    exc,
                )
                continue

            if has_error and self.configuration["without_error"]:
                if package_tuple not in self._messages_logged:
                    self._messages_logged.add(package_tuple)
                    message = (
                        f"Removing package {package_tuple} due to installation time error in the software environment"
                    )
                    _LOGGER.warning("%s - see %s", message,
                                    self._JUSTIFICATION_LINK)
                    self._packages_filtered[package_tuple[0]][
                        package_tuple[2]].append(package_tuple[1])
                continue

            yield package_version
예제 #22
0
class SolverRulesSieve(Sieve):
    """A sieve for filtering out Python packages that have rules assigned."""

    CONFIGURATION_DEFAULT = {"package_name": None}
    CONFIGURATION_SCHEMA: Schema = Schema(
        {Required("package_name"): SchemaAny(str, None)})
    _JUSTIFICATION_LINK = jl("rules")

    _messages_logged = attr.ib(type=Set[Tuple[str, str, str]],
                               factory=set,
                               init=False)

    @classmethod
    def should_include(
        cls, builder_context: "PipelineBuilderContext"
    ) -> Generator[Dict[str, Any], None, None]:
        """Include pipeline sieve."""
        if not builder_context.is_included(cls):
            yield {}
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Initialize this pipeline unit before each run."""
        self._messages_logged.clear()
        super().pre_run()

    def run(
        self, package_versions: Generator[PackageVersion, None, None]
    ) -> Generator[PackageVersion, None, None]:
        """Filter out packages that have rules assigned."""
        for package_version in package_versions:
            package_tuple = package_version.to_tuple()

            solver_rules = (
                # Rules specific to index.
                self.context.graph.get_python_package_version_solver_rules_all(
                    package_version.name,
                    package_version.locked_version,
                    package_version.index.url,
                ) +
                # Rules agnostic to index.
                self.context.graph.get_python_package_version_solver_rules_all(
                    package_version.name,
                    package_version.locked_version,
                ))

            if solver_rules:
                if package_tuple not in self._messages_logged:
                    for solver_rule in solver_rules:
                        self._messages_logged.add(package_tuple)
                        message = f"Removing package {package_tuple} based on solver rule configured: {solver_rule}"
                        _LOGGER.warning("%s - see %s", message,
                                        self._JUSTIFICATION_LINK)
                        self.context.stack_info.append({
                            "type":
                            "WARNING",
                            "message":
                            message,
                            "link":
                            self._JUSTIFICATION_LINK,
                        })

                continue

            yield package_version
예제 #23
0
class SolverRulesSieve(Sieve):
    """A sieve for filtering out Python packages that have rules assigned."""

    CONFIGURATION_DEFAULT = {"package_name": None}
    CONFIGURATION_SCHEMA: Schema = Schema({Required("package_name"): SchemaAny(str, None)})
    _JUSTIFICATION_LINK = jl("rules")

    _rules_logged = attr.ib(type=Set[int], factory=set, init=False)
    _messages_logged = attr.ib(type=Set[Tuple[int, str, str, str]], factory=set, init=False)

    @classmethod
    def should_include(cls, builder_context: "PipelineBuilderContext") -> Generator[Dict[str, Any], None, None]:
        """Include pipeline sieve."""
        if not builder_context.is_included(cls):
            yield {}
            return None

        yield from ()
        return None

    def pre_run(self) -> None:
        """Initialize this pipeline unit before each run."""
        self._rules_logged.clear()
        self._messages_logged.clear()
        super().pre_run()

    def run(self, package_versions: Generator[PackageVersion, None, None]) -> Generator[PackageVersion, None, None]:
        """Filter out packages that have rules assigned."""
        for package_version in package_versions:
            package_tuple = package_version.to_tuple()

            solver_rules = (
                # Rules specific to index.
                self.context.graph.get_python_package_version_solver_rules_all(
                    package_version.name,
                    package_version.locked_version,
                    package_version.index.url,
                )
                +
                # Rules agnostic to index.
                self.context.graph.get_python_package_version_solver_rules_all(
                    package_version.name,
                    package_version.locked_version,
                )
            )

            if not solver_rules:
                yield package_version
                continue

            for solver_rule in solver_rules:
                rule_id, version_range, index_url, description = solver_rule

                message_logged_entry: Tuple[int, str, str, str] = (
                    rule_id,
                    package_tuple[0],
                    package_tuple[1],
                    package_tuple[2],
                )
                if message_logged_entry not in self._messages_logged:
                    self._messages_logged.add(message_logged_entry)
                    _LOGGER.warning(
                        "Removing package %r based on solver rule configured: %s",
                        package_tuple,
                        description,
                    )

                if rule_id in self._rules_logged:
                    continue

                self._rules_logged.add(rule_id)

                message = f"Removing package {package_tuple[0]!r}"
                message += f" in versions {version_range!r}" if version_range else " in all versions"
                message += f" from index {index_url!r}" if index_url else " from all registered indexes"
                message += f" based on rule: {description}"
                self.context.stack_info.append(
                    {
                        "type": "WARNING",
                        "message": message,
                        "link": self._JUSTIFICATION_LINK,
                    }
                )